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provided that the following conditions are + met: + + * Redistributions of source code must retain the above copyright + notice, this list of conditions and the following disclaimer. + + * Redistributions in binary form must reproduce the above + copyright notice, this list of conditions and the following + disclaimer in the documentation and/or other materials provided + with the distribution. + + * Neither the name of the NetworkX Developers nor the names of its + contributors may be used to endorse or promote products derived + from this software without specific prior written permission. + + THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS + "AS IS" AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT + LIMITED TO, THE IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR + A PARTICULAR PURPOSE ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT + OWNER OR CONTRIBUTORS BE LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, + SPECIAL, EXEMPLARY, OR CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT + LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, + DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER CAUSED AND ON ANY + THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY, OR TORT + (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE + OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE. diff --git a/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/INSTALLER b/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/INSTALLER new file mode 100644 index 0000000000000000000000000000000000000000..a1b589e38a32041e49332e5e81c2d363dc418d68 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/INSTALLER @@ -0,0 +1 @@ +pip diff --git a/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/METADATA b/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/METADATA new file mode 100644 index 0000000000000000000000000000000000000000..eced53b9c3691a3123c8b1ca1abfb3e882985b47 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/psutil-6.1.1.dist-info/METADATA @@ -0,0 +1,548 @@ +Metadata-Version: 2.1 +Name: psutil +Version: 6.1.1 +Summary: Cross-platform lib for process and system monitoring in Python. +Home-page: https://github.com/giampaolo/psutil +Author: Giampaolo Rodola +Author-email: g.rodola@gmail.com +License: BSD-3-Clause +Keywords: ps,top,kill,free,lsof,netstat,nice,tty,ionice,uptime,taskmgr,process,df,iotop,iostat,ifconfig,taskset,who,pidof,pmap,smem,pstree,monitoring,ulimit,prlimit,smem,performance,metrics,agent,observability +Platform: Platform Independent +Classifier: Development Status :: 5 - Production/Stable +Classifier: Environment :: Console +Classifier: Environment :: Win32 (MS Windows) +Classifier: Intended Audience :: Developers +Classifier: Intended Audience :: Information Technology +Classifier: Intended Audience :: System Administrators +Classifier: License :: OSI Approved :: BSD License +Classifier: Operating System :: MacOS :: MacOS X +Classifier: Operating System :: Microsoft :: Windows :: Windows 10 +Classifier: Operating System :: Microsoft :: Windows :: Windows 7 +Classifier: Operating System :: Microsoft :: Windows :: Windows 8 +Classifier: Operating System :: Microsoft :: Windows :: Windows 8.1 +Classifier: Operating System :: Microsoft :: Windows :: Windows Server 2003 +Classifier: Operating System :: Microsoft :: Windows :: Windows Server 2008 +Classifier: Operating System :: Microsoft :: Windows :: Windows Vista +Classifier: Operating System :: Microsoft +Classifier: Operating System :: OS Independent +Classifier: Operating System :: POSIX :: AIX +Classifier: Operating System :: POSIX :: BSD :: FreeBSD +Classifier: Operating System :: POSIX :: BSD :: NetBSD +Classifier: Operating System :: POSIX :: BSD :: OpenBSD +Classifier: Operating System :: POSIX :: BSD +Classifier: Operating System :: POSIX :: Linux +Classifier: Operating System :: POSIX :: SunOS/Solaris +Classifier: Operating System :: POSIX +Classifier: Programming Language :: C +Classifier: Programming Language :: Python :: 2 +Classifier: Programming Language :: Python :: 2.7 +Classifier: Programming Language :: Python :: 3 +Classifier: Programming Language :: Python :: Implementation :: CPython +Classifier: Programming Language :: Python :: Implementation :: PyPy +Classifier: Programming Language :: Python +Classifier: Topic :: Software Development :: Libraries :: Python Modules +Classifier: Topic :: Software Development :: Libraries +Classifier: Topic :: System :: Benchmark +Classifier: Topic :: System :: Hardware :: Hardware Drivers +Classifier: Topic :: System :: Hardware +Classifier: Topic :: System :: Monitoring +Classifier: Topic :: System :: Networking :: Monitoring :: Hardware Watchdog +Classifier: Topic :: System :: Networking :: Monitoring +Classifier: Topic :: System :: Networking +Classifier: Topic :: System :: Operating System +Classifier: Topic :: System :: Systems Administration +Classifier: Topic :: Utilities +Requires-Python: >=2.7, !=3.0.*, !=3.1.*, !=3.2.*, !=3.3.*, !=3.4.*, !=3.5.* +Description-Content-Type: text/x-rst +License-File: LICENSE +Provides-Extra: dev +Requires-Dist: abi3audit ; extra == 'dev' +Requires-Dist: black ; extra == 'dev' +Requires-Dist: check-manifest ; extra == 'dev' +Requires-Dist: coverage ; extra == 'dev' +Requires-Dist: packaging ; extra == 'dev' +Requires-Dist: pylint ; extra == 'dev' +Requires-Dist: pyperf ; extra == 'dev' +Requires-Dist: pypinfo ; extra == 'dev' +Requires-Dist: pytest-cov ; extra == 'dev' +Requires-Dist: requests ; extra == 'dev' +Requires-Dist: rstcheck ; extra == 'dev' +Requires-Dist: ruff ; extra == 'dev' +Requires-Dist: sphinx ; extra == 'dev' +Requires-Dist: sphinx-rtd-theme ; extra == 'dev' +Requires-Dist: toml-sort ; extra == 'dev' +Requires-Dist: twine ; extra == 'dev' +Requires-Dist: virtualenv ; extra == 'dev' +Requires-Dist: vulture ; extra == 'dev' +Requires-Dist: wheel ; extra == 'dev' +Provides-Extra: test +Requires-Dist: pytest ; extra == 'test' +Requires-Dist: pytest-xdist ; extra == 'test' +Requires-Dist: setuptools ; extra == 'test' + +| |downloads| |stars| |forks| |contributors| |coverage| +| |version| |py-versions| |packages| |license| +| |github-actions-wheels| |github-actions-bsd| |appveyor| |doc| |twitter| |tidelift| + +.. |downloads| image:: https://img.shields.io/pypi/dm/psutil.svg + :target: https://pepy.tech/project/psutil + :alt: Downloads + +.. |stars| image:: https://img.shields.io/github/stars/giampaolo/psutil.svg + :target: https://github.com/giampaolo/psutil/stargazers + :alt: Github stars + +.. |forks| image:: https://img.shields.io/github/forks/giampaolo/psutil.svg + :target: https://github.com/giampaolo/psutil/network/members + :alt: Github forks + +.. |contributors| image:: https://img.shields.io/github/contributors/giampaolo/psutil.svg + :target: https://github.com/giampaolo/psutil/graphs/contributors + :alt: Contributors + +.. |github-actions-wheels| image:: https://img.shields.io/github/actions/workflow/status/giampaolo/psutil/.github/workflows/build.yml.svg?label=Linux%2C%20macOS%2C%20Windows + :target: https://github.com/giampaolo/psutil/actions?query=workflow%3Abuild + :alt: Linux, macOS, Windows + +.. |github-actions-bsd| image:: https://img.shields.io/github/actions/workflow/status/giampaolo/psutil/.github/workflows/bsd.yml.svg?label=FreeBSD,%20NetBSD,%20OpenBSD + :target: https://github.com/giampaolo/psutil/actions?query=workflow%3Absd-tests + :alt: FreeBSD, NetBSD, OpenBSD + +.. |appveyor| image:: https://img.shields.io/appveyor/build/giampaolo/psutil/master.svg?maxAge=3600&label=Windows%20(py2) + :target: https://ci.appveyor.com/project/giampaolo/psutil + :alt: Windows (Appveyor) + +.. |coverage| image:: https://coveralls.io/repos/github/giampaolo/psutil/badge.svg?branch=master + :target: https://coveralls.io/github/giampaolo/psutil?branch=master + :alt: Test coverage (coverall.io) + +.. |doc| image:: https://readthedocs.org/projects/psutil/badge/?version=latest + :target: https://psutil.readthedocs.io/en/latest/ + :alt: Documentation Status + +.. |version| image:: https://img.shields.io/pypi/v/psutil.svg?label=pypi + :target: https://pypi.org/project/psutil + :alt: Latest version + +.. |py-versions| image:: https://img.shields.io/pypi/pyversions/psutil.svg + :alt: Supported Python versions + +.. |packages| image:: https://repology.org/badge/tiny-repos/python:psutil.svg + :target: https://repology.org/metapackage/python:psutil/versions + :alt: Binary packages + +.. |license| image:: https://img.shields.io/pypi/l/psutil.svg + :target: https://github.com/giampaolo/psutil/blob/master/LICENSE + :alt: License + +.. |twitter| image:: https://img.shields.io/twitter/follow/grodola.svg?label=follow&style=flat&logo=twitter&logoColor=4FADFF + :target: https://twitter.com/grodola + :alt: Twitter Follow + +.. |tidelift| image:: https://tidelift.com/badges/github/giampaolo/psutil?style=flat + :target: https://tidelift.com/subscription/pkg/pypi-psutil?utm_source=pypi-psutil&utm_medium=referral&utm_campaign=readme + :alt: Tidelift + +----- + +Quick links +=========== + +- `Home page `_ +- `Install `_ +- `Documentation `_ +- `Download `_ +- `Forum `_ +- `StackOverflow `_ +- `Blog `_ +- `What's new `_ + + +Summary +======= + +psutil (process and system utilities) is a cross-platform library for +retrieving information on **running processes** and **system utilization** +(CPU, memory, disks, network, sensors) in Python. +It is useful mainly for **system monitoring**, **profiling and limiting process +resources** and **management of running processes**. +It implements many functionalities offered by classic UNIX command line tools +such as *ps, top, iotop, lsof, netstat, ifconfig, free* and others. +psutil currently supports the following platforms: + +- **Linux** +- **Windows** +- **macOS** +- **FreeBSD, OpenBSD**, **NetBSD** +- **Sun Solaris** +- **AIX** + +Supported Python versions are **2.7**, **3.6+** and +`PyPy `__. + +Funding +======= + +While psutil is free software and will always be, the project would benefit +immensely from some funding. +Keeping up with bug reports and maintenance has become hardly sustainable for +me alone in terms of time. +If you're a company that's making significant use of psutil you can consider +becoming a sponsor via `GitHub Sponsors `__, +`Open Collective `__ or +`PayPal `__ +and have your logo displayed in here and psutil `doc `__. + +Sponsors +======== + +.. image:: https://github.com/giampaolo/psutil/raw/master/docs/_static/tidelift-logo.png + :width: 200 + :alt: Alternative text + +`Add your logo `__. + +Example usages +============== + +This represents pretty much the whole psutil API. + +CPU +--- + +.. code-block:: python + + >>> import psutil + >>> + >>> psutil.cpu_times() + scputimes(user=3961.46, nice=169.729, system=2150.659, idle=16900.540, iowait=629.59, irq=0.0, softirq=19.42, steal=0.0, guest=0, guest_nice=0.0) + >>> + >>> for x in range(3): + ... psutil.cpu_percent(interval=1) + ... + 4.0 + 5.9 + 3.8 + >>> + >>> for x in range(3): + ... psutil.cpu_percent(interval=1, percpu=True) + ... + [4.0, 6.9, 3.7, 9.2] + [7.0, 8.5, 2.4, 2.1] + [1.2, 9.0, 9.9, 7.2] + >>> + >>> for x in range(3): + ... psutil.cpu_times_percent(interval=1, percpu=False) + ... + scputimes(user=1.5, nice=0.0, system=0.5, idle=96.5, iowait=1.5, irq=0.0, softirq=0.0, steal=0.0, guest=0.0, guest_nice=0.0) + scputimes(user=1.0, nice=0.0, system=0.0, idle=99.0, iowait=0.0, irq=0.0, softirq=0.0, steal=0.0, guest=0.0, guest_nice=0.0) + scputimes(user=2.0, nice=0.0, system=0.0, idle=98.0, iowait=0.0, irq=0.0, softirq=0.0, steal=0.0, guest=0.0, guest_nice=0.0) + >>> + >>> psutil.cpu_count() + 4 + >>> psutil.cpu_count(logical=False) + 2 + >>> + >>> psutil.cpu_stats() + scpustats(ctx_switches=20455687, interrupts=6598984, soft_interrupts=2134212, syscalls=0) + >>> + >>> psutil.cpu_freq() + scpufreq(current=931.42925, min=800.0, max=3500.0) + >>> + >>> psutil.getloadavg() # also on Windows (emulated) + (3.14, 3.89, 4.67) + +Memory +------ + +.. code-block:: python + + >>> psutil.virtual_memory() + svmem(total=10367352832, available=6472179712, percent=37.6, used=8186245120, free=2181107712, active=4748992512, inactive=2758115328, buffers=790724608, cached=3500347392, shared=787554304) + >>> psutil.swap_memory() + sswap(total=2097147904, used=296128512, free=1801019392, percent=14.1, sin=304193536, sout=677842944) + >>> + +Disks +----- + +.. code-block:: python + + >>> psutil.disk_partitions() + [sdiskpart(device='/dev/sda1', mountpoint='/', fstype='ext4', opts='rw,nosuid'), + sdiskpart(device='/dev/sda2', mountpoint='/home', fstype='ext', opts='rw')] + >>> + >>> psutil.disk_usage('/') + sdiskusage(total=21378641920, used=4809781248, free=15482871808, percent=22.5) + >>> + >>> psutil.disk_io_counters(perdisk=False) + sdiskio(read_count=719566, write_count=1082197, read_bytes=18626220032, write_bytes=24081764352, read_time=5023392, write_time=63199568, read_merged_count=619166, write_merged_count=812396, busy_time=4523412) + >>> + +Network +------- + +.. code-block:: python + + >>> psutil.net_io_counters(pernic=True) + {'eth0': netio(bytes_sent=485291293, bytes_recv=6004858642, packets_sent=3251564, packets_recv=4787798, errin=0, errout=0, dropin=0, dropout=0), + 'lo': netio(bytes_sent=2838627, bytes_recv=2838627, packets_sent=30567, packets_recv=30567, errin=0, errout=0, dropin=0, dropout=0)} + >>> + >>> psutil.net_connections(kind='tcp') + [sconn(fd=115, family=, type=, laddr=addr(ip='10.0.0.1', port=48776), raddr=addr(ip='93.186.135.91', port=80), status='ESTABLISHED', pid=1254), + sconn(fd=117, family=, type=, laddr=addr(ip='10.0.0.1', port=43761), raddr=addr(ip='72.14.234.100', port=80), status='CLOSING', pid=2987), + ...] + >>> + >>> psutil.net_if_addrs() + {'lo': [snicaddr(family=, address='127.0.0.1', netmask='255.0.0.0', broadcast='127.0.0.1', ptp=None), + snicaddr(family=, address='::1', netmask='ffff:ffff:ffff:ffff:ffff:ffff:ffff:ffff', broadcast=None, ptp=None), + snicaddr(family=, address='00:00:00:00:00:00', netmask=None, broadcast='00:00:00:00:00:00', ptp=None)], + 'wlan0': [snicaddr(family=, address='192.168.1.3', netmask='255.255.255.0', broadcast='192.168.1.255', ptp=None), + snicaddr(family=, address='fe80::c685:8ff:fe45:641%wlan0', netmask='ffff:ffff:ffff:ffff::', broadcast=None, ptp=None), + snicaddr(family=, address='c4:85:08:45:06:41', netmask=None, broadcast='ff:ff:ff:ff:ff:ff', ptp=None)]} + >>> + >>> psutil.net_if_stats() + {'lo': snicstats(isup=True, duplex=, speed=0, mtu=65536, flags='up,loopback,running'), + 'wlan0': snicstats(isup=True, duplex=, speed=100, mtu=1500, flags='up,broadcast,running,multicast')} + >>> + +Sensors +------- + +.. code-block:: python + + >>> import psutil + >>> psutil.sensors_temperatures() + {'acpitz': [shwtemp(label='', current=47.0, high=103.0, critical=103.0)], + 'asus': [shwtemp(label='', current=47.0, high=None, critical=None)], + 'coretemp': [shwtemp(label='Physical id 0', current=52.0, high=100.0, critical=100.0), + shwtemp(label='Core 0', current=45.0, high=100.0, critical=100.0)]} + >>> + >>> psutil.sensors_fans() + {'asus': [sfan(label='cpu_fan', current=3200)]} + >>> + >>> psutil.sensors_battery() + sbattery(percent=93, secsleft=16628, power_plugged=False) + >>> + +Other system info +----------------- + +.. code-block:: python + + >>> import psutil + >>> psutil.users() + [suser(name='giampaolo', terminal='pts/2', host='localhost', started=1340737536.0, pid=1352), + suser(name='giampaolo', terminal='pts/3', host='localhost', started=1340737792.0, pid=1788)] + >>> + >>> psutil.boot_time() + 1365519115.0 + >>> + +Process management +------------------ + +.. code-block:: python + + >>> import psutil + >>> psutil.pids() + [1, 2, 3, 4, 5, 6, 7, 46, 48, 50, 51, 178, 182, 222, 223, 224, 268, 1215, + 1216, 1220, 1221, 1243, 1244, 1301, 1601, 2237, 2355, 2637, 2774, 3932, + 4176, 4177, 4185, 4187, 4189, 4225, 4243, 4245, 4263, 4282, 4306, 4311, + 4312, 4313, 4314, 4337, 4339, 4357, 4358, 4363, 4383, 4395, 4408, 4433, + 4443, 4445, 4446, 5167, 5234, 5235, 5252, 5318, 5424, 5644, 6987, 7054, + 7055, 7071] + >>> + >>> p = psutil.Process(7055) + >>> p + psutil.Process(pid=7055, name='python3', status='running', started='09:04:44') + >>> p.pid + 7055 + >>> p.name() + 'python3' + >>> p.exe() + '/usr/bin/python3' + >>> p.cwd() + '/home/giampaolo' + >>> p.cmdline() + ['/usr/bin/python3', 'main.py'] + >>> + >>> p.ppid() + 7054 + >>> p.parent() + psutil.Process(pid=4699, name='bash', status='sleeping', started='09:06:44') + >>> p.parents() + [psutil.Process(pid=4699, name='bash', started='09:06:44'), + psutil.Process(pid=4689, name='gnome-terminal-server', status='sleeping', started='0:06:44'), + psutil.Process(pid=1, name='systemd', status='sleeping', started='05:56:55')] + >>> p.children(recursive=True) + [psutil.Process(pid=29835, name='python3', status='sleeping', started='11:45:38'), + psutil.Process(pid=29836, name='python3', status='waking', started='11:43:39')] + >>> + >>> p.status() + 'running' + >>> p.create_time() + 1267551141.5019531 + >>> p.terminal() + '/dev/pts/0' + >>> + >>> p.username() + 'giampaolo' + >>> p.uids() + puids(real=1000, effective=1000, saved=1000) + >>> p.gids() + pgids(real=1000, effective=1000, saved=1000) + >>> + >>> p.cpu_times() + pcputimes(user=1.02, system=0.31, children_user=0.32, children_system=0.1, iowait=0.0) + >>> p.cpu_percent(interval=1.0) + 12.1 + >>> p.cpu_affinity() + [0, 1, 2, 3] + >>> p.cpu_affinity([0, 1]) # set + >>> p.cpu_num() + 1 + >>> + >>> p.memory_info() + pmem(rss=10915840, vms=67608576, shared=3313664, text=2310144, lib=0, data=7262208, dirty=0) + >>> p.memory_full_info() # "real" USS memory usage (Linux, macOS, Win only) + pfullmem(rss=10199040, vms=52133888, shared=3887104, text=2867200, lib=0, data=5967872, dirty=0, uss=6545408, pss=6872064, swap=0) + >>> p.memory_percent() + 0.7823 + >>> p.memory_maps() + [pmmap_grouped(path='/lib/x8664-linux-gnu/libutil-2.15.so', rss=32768, size=2125824, pss=32768, shared_clean=0, shared_dirty=0, private_clean=20480, private_dirty=12288, referenced=32768, anonymous=12288, swap=0), + pmmap_grouped(path='/lib/x8664-linux-gnu/libc-2.15.so', rss=3821568, size=3842048, pss=3821568, shared_clean=0, shared_dirty=0, private_clean=0, private_dirty=3821568, referenced=3575808, anonymous=3821568, swap=0), + pmmap_grouped(path='[heap]', rss=32768, size=139264, pss=32768, shared_clean=0, shared_dirty=0, private_clean=0, private_dirty=32768, referenced=32768, anonymous=32768, swap=0), + pmmap_grouped(path='[stack]', rss=2465792, size=2494464, pss=2465792, shared_clean=0, shared_dirty=0, private_clean=0, private_dirty=2465792, referenced=2277376, anonymous=2465792, swap=0), + ...] + >>> + >>> p.io_counters() + pio(read_count=478001, write_count=59371, read_bytes=700416, write_bytes=69632, read_chars=456232, write_chars=517543) + >>> + >>> p.open_files() + [popenfile(path='/home/giampaolo/monit.py', fd=3, position=0, mode='r', flags=32768), + popenfile(path='/var/log/monit.log', fd=4, position=235542, mode='a', flags=33793)] + >>> + >>> p.net_connections(kind='tcp') + [pconn(fd=115, family=, type=, laddr=addr(ip='10.0.0.1', port=48776), raddr=addr(ip='93.186.135.91', port=80), status='ESTABLISHED'), + pconn(fd=117, family=, type=, laddr=addr(ip='10.0.0.1', port=43761), raddr=addr(ip='72.14.234.100', port=80), status='CLOSING')] + >>> + >>> p.threads() + [pthread(id=5234, user_time=22.5, system_time=9.2891), + pthread(id=5237, user_time=0.0707, system_time=1.1)] + >>> + >>> p.num_threads() + 4 + >>> p.num_fds() + 8 + >>> p.num_ctx_switches() + pctxsw(voluntary=78, involuntary=19) + >>> + >>> p.nice() + 0 + >>> p.nice(10) # set + >>> + >>> p.ionice(psutil.IOPRIO_CLASS_IDLE) # IO priority (Win and Linux only) + >>> p.ionice() + pionice(ioclass=, value=0) + >>> + >>> p.rlimit(psutil.RLIMIT_NOFILE, (5, 5)) # set resource limits (Linux only) + >>> p.rlimit(psutil.RLIMIT_NOFILE) + (5, 5) + >>> + >>> p.environ() + {'LC_PAPER': 'it_IT.UTF-8', 'SHELL': '/bin/bash', 'GREP_OPTIONS': '--color=auto', + 'XDG_CONFIG_DIRS': '/etc/xdg/xdg-ubuntu:/usr/share/upstart/xdg:/etc/xdg', + ...} + >>> + >>> p.as_dict() + {'status': 'running', 'num_ctx_switches': pctxsw(voluntary=63, involuntary=1), 'pid': 5457, ...} + >>> p.is_running() + True + >>> p.suspend() + >>> p.resume() + >>> + >>> p.terminate() + >>> p.kill() + >>> p.wait(timeout=3) + + >>> + >>> psutil.test() + USER PID %CPU %MEM VSZ RSS TTY START TIME COMMAND + root 1 0.0 0.0 24584 2240 Jun17 00:00 init + root 2 0.0 0.0 0 0 Jun17 00:00 kthreadd + ... + giampaolo 31475 0.0 0.0 20760 3024 /dev/pts/0 Jun19 00:00 python2.4 + giampaolo 31721 0.0 2.2 773060 181896 00:04 10:30 chrome + root 31763 0.0 0.0 0 0 00:05 00:00 kworker/0:1 + >>> + +Further process APIs +-------------------- + +.. code-block:: python + + >>> import psutil + >>> for proc in psutil.process_iter(['pid', 'name']): + ... print(proc.info) + ... + {'pid': 1, 'name': 'systemd'} + {'pid': 2, 'name': 'kthreadd'} + {'pid': 3, 'name': 'ksoftirqd/0'} + ... + >>> + >>> psutil.pid_exists(3) + True + >>> + >>> def on_terminate(proc): + ... print("process {} terminated".format(proc)) + ... + >>> # waits for multiple processes to terminate + >>> gone, alive = psutil.wait_procs(procs_list, timeout=3, callback=on_terminate) + >>> + +Windows services +---------------- + +.. code-block:: python + + >>> list(psutil.win_service_iter()) + [, + , + , + , + ...] + >>> s = psutil.win_service_get('alg') + >>> s.as_dict() + {'binpath': 'C:\\Windows\\System32\\alg.exe', + 'description': 'Provides support for 3rd party protocol plug-ins for Internet Connection Sharing', + 'display_name': 'Application Layer Gateway Service', + 'name': 'alg', + 'pid': None, + 'start_type': 'manual', + 'status': 'stopped', + 'username': 'NT AUTHORITY\\LocalService'} + +Projects using psutil +===================== + +Here's some I find particularly interesting: + +- https://github.com/google/grr +- https://github.com/facebook/osquery/ +- https://github.com/nicolargo/glances +- https://github.com/aristocratos/bpytop +- https://github.com/Jahaja/psdash +- https://github.com/ajenti/ajenti +- https://github.com/home-assistant/home-assistant/ + +Portings +======== + +- Go: https://github.com/shirou/gopsutil +- C: https://github.com/hamon-in/cpslib +- Rust: https://github.com/rust-psutil/rust-psutil +- Nim: https://github.com/johnscillieri/psutil-nim + + + diff --git a/openflamingo/lib/python3.10/site-packages/requests/__init__.py b/openflamingo/lib/python3.10/site-packages/requests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..051cda1340effaa0706b46dd68ac002ceda3d45c --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/__init__.py @@ -0,0 +1,184 @@ +# __ +# /__) _ _ _ _ _/ _ +# / ( (- (/ (/ (- _) / _) +# / + +""" +Requests HTTP Library +~~~~~~~~~~~~~~~~~~~~~ + +Requests is an HTTP library, written in Python, for human beings. +Basic GET usage: + + >>> import requests + >>> r = requests.get('https://www.python.org') + >>> r.status_code + 200 + >>> b'Python is a programming language' in r.content + True + +... or POST: + + >>> payload = dict(key1='value1', key2='value2') + >>> r = requests.post('https://httpbin.org/post', data=payload) + >>> print(r.text) + { + ... + "form": { + "key1": "value1", + "key2": "value2" + }, + ... + } + +The other HTTP methods are supported - see `requests.api`. Full documentation +is at . + +:copyright: (c) 2017 by Kenneth Reitz. +:license: Apache 2.0, see LICENSE for more details. +""" + +import warnings + +import urllib3 + +from .exceptions import RequestsDependencyWarning + +try: + from charset_normalizer import __version__ as charset_normalizer_version +except ImportError: + charset_normalizer_version = None + +try: + from chardet import __version__ as chardet_version +except ImportError: + chardet_version = None + + +def check_compatibility(urllib3_version, chardet_version, charset_normalizer_version): + urllib3_version = urllib3_version.split(".") + assert urllib3_version != ["dev"] # Verify urllib3 isn't installed from git. + + # Sometimes, urllib3 only reports its version as 16.1. + if len(urllib3_version) == 2: + urllib3_version.append("0") + + # Check urllib3 for compatibility. + major, minor, patch = urllib3_version # noqa: F811 + major, minor, patch = int(major), int(minor), int(patch) + # urllib3 >= 1.21.1 + assert major >= 1 + if major == 1: + assert minor >= 21 + + # Check charset_normalizer for compatibility. + if chardet_version: + major, minor, patch = chardet_version.split(".")[:3] + major, minor, patch = int(major), int(minor), int(patch) + # chardet_version >= 3.0.2, < 6.0.0 + assert (3, 0, 2) <= (major, minor, patch) < (6, 0, 0) + elif charset_normalizer_version: + major, minor, patch = charset_normalizer_version.split(".")[:3] + major, minor, patch = int(major), int(minor), int(patch) + # charset_normalizer >= 2.0.0 < 4.0.0 + assert (2, 0, 0) <= (major, minor, patch) < (4, 0, 0) + else: + warnings.warn( + "Unable to find acceptable character detection dependency " + "(chardet or charset_normalizer).", + RequestsDependencyWarning, + ) + + +def _check_cryptography(cryptography_version): + # cryptography < 1.3.4 + try: + cryptography_version = list(map(int, cryptography_version.split("."))) + except ValueError: + return + + if cryptography_version < [1, 3, 4]: + warning = "Old version of cryptography ({}) may cause slowdown.".format( + cryptography_version + ) + warnings.warn(warning, RequestsDependencyWarning) + + +# Check imported dependencies for compatibility. +try: + check_compatibility( + urllib3.__version__, chardet_version, charset_normalizer_version + ) +except (AssertionError, ValueError): + warnings.warn( + "urllib3 ({}) or chardet ({})/charset_normalizer ({}) doesn't match a supported " + "version!".format( + urllib3.__version__, chardet_version, charset_normalizer_version + ), + RequestsDependencyWarning, + ) + +# Attempt to enable urllib3's fallback for SNI support +# if the standard library doesn't support SNI or the +# 'ssl' library isn't available. +try: + try: + import ssl + except ImportError: + ssl = None + + if not getattr(ssl, "HAS_SNI", False): + from urllib3.contrib import pyopenssl + + pyopenssl.inject_into_urllib3() + + # Check cryptography version + from cryptography import __version__ as cryptography_version + + _check_cryptography(cryptography_version) +except ImportError: + pass + +# urllib3's DependencyWarnings should be silenced. +from urllib3.exceptions import DependencyWarning + +warnings.simplefilter("ignore", DependencyWarning) + +# Set default logging handler to avoid "No handler found" warnings. +import logging +from logging import NullHandler + +from . import packages, utils +from .__version__ import ( + __author__, + __author_email__, + __build__, + __cake__, + __copyright__, + __description__, + __license__, + __title__, + __url__, + __version__, +) +from .api import delete, get, head, options, patch, post, put, request +from .exceptions import ( + ConnectionError, + ConnectTimeout, + FileModeWarning, + HTTPError, + JSONDecodeError, + ReadTimeout, + RequestException, + Timeout, + TooManyRedirects, + URLRequired, +) +from .models import PreparedRequest, Request, Response +from .sessions import Session, session +from .status_codes import codes + +logging.getLogger(__name__).addHandler(NullHandler()) + +# FileModeWarnings go 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maintain connections. +""" + +import os.path +import socket # noqa: F401 +import typing +import warnings + +from urllib3.exceptions import ClosedPoolError, ConnectTimeoutError +from urllib3.exceptions import HTTPError as _HTTPError +from urllib3.exceptions import InvalidHeader as _InvalidHeader +from urllib3.exceptions import ( + LocationValueError, + MaxRetryError, + NewConnectionError, + ProtocolError, +) +from urllib3.exceptions import ProxyError as _ProxyError +from urllib3.exceptions import ReadTimeoutError, ResponseError +from urllib3.exceptions import SSLError as _SSLError +from urllib3.poolmanager import PoolManager, proxy_from_url +from urllib3.util import Timeout as TimeoutSauce +from urllib3.util import parse_url +from urllib3.util.retry import Retry +from urllib3.util.ssl_ import create_urllib3_context + +from .auth import _basic_auth_str +from .compat import basestring, urlparse +from .cookies import extract_cookies_to_jar +from .exceptions import ( + ConnectionError, + ConnectTimeout, + InvalidHeader, + InvalidProxyURL, + InvalidSchema, + InvalidURL, + ProxyError, + ReadTimeout, + RetryError, + SSLError, +) +from .models import Response +from .structures import CaseInsensitiveDict +from .utils import ( + DEFAULT_CA_BUNDLE_PATH, + extract_zipped_paths, + get_auth_from_url, + get_encoding_from_headers, + prepend_scheme_if_needed, + select_proxy, + urldefragauth, +) + +try: + from urllib3.contrib.socks import SOCKSProxyManager +except ImportError: + + def SOCKSProxyManager(*args, **kwargs): + raise InvalidSchema("Missing dependencies for SOCKS support.") + + +if typing.TYPE_CHECKING: + from .models import PreparedRequest + + +DEFAULT_POOLBLOCK = False +DEFAULT_POOLSIZE = 10 +DEFAULT_RETRIES = 0 +DEFAULT_POOL_TIMEOUT = None + + +try: + import ssl # noqa: F401 + + _preloaded_ssl_context = create_urllib3_context() + _preloaded_ssl_context.load_verify_locations( + extract_zipped_paths(DEFAULT_CA_BUNDLE_PATH) + ) +except ImportError: + # Bypass default SSLContext creation when Python + # interpreter isn't built with the ssl module. + _preloaded_ssl_context = None + + +def _urllib3_request_context( + request: "PreparedRequest", + verify: "bool | str | None", + client_cert: "typing.Tuple[str, str] | str | None", + poolmanager: "PoolManager", +) -> "(typing.Dict[str, typing.Any], typing.Dict[str, typing.Any])": + host_params = {} + pool_kwargs = {} + parsed_request_url = urlparse(request.url) + scheme = parsed_request_url.scheme.lower() + port = parsed_request_url.port + + # Determine if we have and should use our default SSLContext + # to optimize performance on standard requests. + poolmanager_kwargs = getattr(poolmanager, "connection_pool_kw", {}) + has_poolmanager_ssl_context = poolmanager_kwargs.get("ssl_context") + should_use_default_ssl_context = ( + _preloaded_ssl_context is not None and not has_poolmanager_ssl_context + ) + + cert_reqs = "CERT_REQUIRED" + if verify is False: + cert_reqs = "CERT_NONE" + elif verify is True and should_use_default_ssl_context: + pool_kwargs["ssl_context"] = _preloaded_ssl_context + elif isinstance(verify, str): + if not os.path.isdir(verify): + pool_kwargs["ca_certs"] = verify + else: + pool_kwargs["ca_cert_dir"] = verify + pool_kwargs["cert_reqs"] = cert_reqs + if client_cert is not None: + if isinstance(client_cert, tuple) and len(client_cert) == 2: + pool_kwargs["cert_file"] = client_cert[0] + pool_kwargs["key_file"] = client_cert[1] + else: + # According to our docs, we allow users to specify just the client + # cert path + pool_kwargs["cert_file"] = client_cert + host_params = { + "scheme": scheme, + "host": parsed_request_url.hostname, + "port": port, + } + return host_params, pool_kwargs + + +class BaseAdapter: + """The Base Transport Adapter""" + + def __init__(self): + super().__init__() + + def send( + self, request, stream=False, timeout=None, verify=True, cert=None, proxies=None + ): + """Sends PreparedRequest object. Returns Response object. + + :param request: The :class:`PreparedRequest ` being sent. + :param stream: (optional) Whether to stream the request content. + :param timeout: (optional) How long to wait for the server to send + data before giving up, as a float, or a :ref:`(connect timeout, + read timeout) ` tuple. + :type timeout: float or tuple + :param verify: (optional) Either a boolean, in which case it controls whether we verify + the server's TLS certificate, or a string, in which case it must be a path + to a CA bundle to use + :param cert: (optional) Any user-provided SSL certificate to be trusted. + :param proxies: (optional) The proxies dictionary to apply to the request. + """ + raise NotImplementedError + + def close(self): + """Cleans up adapter specific items.""" + raise NotImplementedError + + +class HTTPAdapter(BaseAdapter): + """The built-in HTTP Adapter for urllib3. + + Provides a general-case interface for Requests sessions to contact HTTP and + HTTPS urls by implementing the Transport Adapter interface. This class will + usually be created by the :class:`Session ` class under the + covers. + + :param pool_connections: The number of urllib3 connection pools to cache. + :param pool_maxsize: The maximum number of connections to save in the pool. + :param max_retries: The maximum number of retries each connection + should attempt. Note, this applies only to failed DNS lookups, socket + connections and connection timeouts, never to requests where data has + made it to the server. By default, Requests does not retry failed + connections. If you need granular control over the conditions under + which we retry a request, import urllib3's ``Retry`` class and pass + that instead. + :param pool_block: Whether the connection pool should block for connections. + + Usage:: + + >>> import requests + >>> s = requests.Session() + >>> a = requests.adapters.HTTPAdapter(max_retries=3) + >>> s.mount('http://', a) + """ + + __attrs__ = [ + "max_retries", + "config", + "_pool_connections", + "_pool_maxsize", + "_pool_block", + ] + + def __init__( + self, + pool_connections=DEFAULT_POOLSIZE, + pool_maxsize=DEFAULT_POOLSIZE, + max_retries=DEFAULT_RETRIES, + pool_block=DEFAULT_POOLBLOCK, + ): + if max_retries == DEFAULT_RETRIES: + self.max_retries = Retry(0, read=False) + else: + self.max_retries = Retry.from_int(max_retries) + self.config = {} + self.proxy_manager = {} + + super().__init__() + + self._pool_connections = pool_connections + self._pool_maxsize = pool_maxsize + self._pool_block = pool_block + + self.init_poolmanager(pool_connections, pool_maxsize, block=pool_block) + + def __getstate__(self): + return {attr: getattr(self, attr, None) for attr in self.__attrs__} + + def __setstate__(self, state): + # Can't handle by adding 'proxy_manager' to self.__attrs__ because + # self.poolmanager uses a lambda function, which isn't pickleable. + self.proxy_manager = {} + self.config = {} + + for attr, value in state.items(): + setattr(self, attr, value) + + self.init_poolmanager( + self._pool_connections, self._pool_maxsize, block=self._pool_block + ) + + def init_poolmanager( + self, connections, maxsize, block=DEFAULT_POOLBLOCK, **pool_kwargs + ): + """Initializes a urllib3 PoolManager. + + This method should not be called from user code, and is only + exposed for use when subclassing the + :class:`HTTPAdapter `. + + :param connections: The number of urllib3 connection pools to cache. + :param maxsize: The maximum number of connections to save in the pool. + :param block: Block when no free connections are available. + :param pool_kwargs: Extra keyword arguments used to initialize the Pool Manager. + """ + # save these values for pickling + self._pool_connections = connections + self._pool_maxsize = maxsize + self._pool_block = block + + self.poolmanager = PoolManager( + num_pools=connections, + maxsize=maxsize, + block=block, + **pool_kwargs, + ) + + def proxy_manager_for(self, proxy, **proxy_kwargs): + """Return urllib3 ProxyManager for the given proxy. + + This method should not be called from user code, and is only + exposed for use when subclassing the + :class:`HTTPAdapter `. + + :param proxy: The proxy to return a urllib3 ProxyManager for. + :param proxy_kwargs: Extra keyword arguments used to configure the Proxy Manager. + :returns: ProxyManager + :rtype: urllib3.ProxyManager + """ + if proxy in self.proxy_manager: + manager = self.proxy_manager[proxy] + elif proxy.lower().startswith("socks"): + username, password = get_auth_from_url(proxy) + manager = self.proxy_manager[proxy] = SOCKSProxyManager( + proxy, + username=username, + password=password, + num_pools=self._pool_connections, + maxsize=self._pool_maxsize, + block=self._pool_block, + **proxy_kwargs, + ) + else: + proxy_headers = self.proxy_headers(proxy) + manager = self.proxy_manager[proxy] = proxy_from_url( + proxy, + proxy_headers=proxy_headers, + num_pools=self._pool_connections, + maxsize=self._pool_maxsize, + block=self._pool_block, + **proxy_kwargs, + ) + + return manager + + def cert_verify(self, conn, url, verify, cert): + """Verify a SSL certificate. This method should not be called from user + code, and is only exposed for use when subclassing the + :class:`HTTPAdapter `. + + :param conn: The urllib3 connection object associated with the cert. + :param url: The requested URL. + :param verify: Either a boolean, in which case it controls whether we verify + the server's TLS certificate, or a string, in which case it must be a path + to a CA bundle to use + :param cert: The SSL certificate to verify. + """ + if url.lower().startswith("https") and verify: + conn.cert_reqs = "CERT_REQUIRED" + + # Only load the CA certificates if 'verify' is a string indicating the CA bundle to use. + # Otherwise, if verify is a boolean, we don't load anything since + # the connection will be using a context with the default certificates already loaded, + # and this avoids a call to the slow load_verify_locations() + if verify is not True: + # `verify` must be a str with a path then + cert_loc = verify + + if not os.path.exists(cert_loc): + raise OSError( + f"Could not find a suitable TLS CA certificate bundle, " + f"invalid path: {cert_loc}" + ) + + if not os.path.isdir(cert_loc): + conn.ca_certs = cert_loc + else: + conn.ca_cert_dir = cert_loc + else: + conn.cert_reqs = "CERT_NONE" + conn.ca_certs = None + conn.ca_cert_dir = None + + if cert: + if not isinstance(cert, basestring): + conn.cert_file = cert[0] + conn.key_file = cert[1] + else: + conn.cert_file = cert + conn.key_file = None + if conn.cert_file and not os.path.exists(conn.cert_file): + raise OSError( + f"Could not find the TLS certificate file, " + f"invalid path: {conn.cert_file}" + ) + if conn.key_file and not os.path.exists(conn.key_file): + raise OSError( + f"Could not find the TLS key file, invalid path: {conn.key_file}" + ) + + def build_response(self, req, resp): + """Builds a :class:`Response ` object from a urllib3 + response. This should not be called from user code, and is only exposed + for use when subclassing the + :class:`HTTPAdapter ` + + :param req: The :class:`PreparedRequest ` used to generate the response. + :param resp: The urllib3 response object. + :rtype: requests.Response + """ + response = Response() + + # Fallback to None if there's no status_code, for whatever reason. + response.status_code = getattr(resp, "status", None) + + # Make headers case-insensitive. + response.headers = CaseInsensitiveDict(getattr(resp, "headers", {})) + + # Set encoding. + response.encoding = get_encoding_from_headers(response.headers) + response.raw = resp + response.reason = response.raw.reason + + if isinstance(req.url, bytes): + response.url = req.url.decode("utf-8") + else: + response.url = req.url + + # Add new cookies from the server. + extract_cookies_to_jar(response.cookies, req, resp) + + # Give the Response some context. + response.request = req + response.connection = self + + return response + + def build_connection_pool_key_attributes(self, request, verify, cert=None): + """Build the PoolKey attributes used by urllib3 to return a connection. + + This looks at the PreparedRequest, the user-specified verify value, + and the value of the cert parameter to determine what PoolKey values + to use to select a connection from a given urllib3 Connection Pool. + + The SSL related pool key arguments are not consistently set. As of + this writing, use the following to determine what keys may be in that + dictionary: + + * If ``verify`` is ``True``, ``"ssl_context"`` will be set and will be the + default Requests SSL Context + * If ``verify`` is ``False``, ``"ssl_context"`` will not be set but + ``"cert_reqs"`` will be set + * If ``verify`` is a string, (i.e., it is a user-specified trust bundle) + ``"ca_certs"`` will be set if the string is not a directory recognized + by :py:func:`os.path.isdir`, otherwise ``"ca_certs_dir"`` will be + set. + * If ``"cert"`` is specified, ``"cert_file"`` will always be set. If + ``"cert"`` is a tuple with a second item, ``"key_file"`` will also + be present + + To override these settings, one may subclass this class, call this + method and use the above logic to change parameters as desired. For + example, if one wishes to use a custom :py:class:`ssl.SSLContext` one + must both set ``"ssl_context"`` and based on what else they require, + alter the other keys to ensure the desired behaviour. + + :param request: + The PreparedReqest being sent over the connection. + :type request: + :class:`~requests.models.PreparedRequest` + :param verify: + Either a boolean, in which case it controls whether + we verify the server's TLS certificate, or a string, in which case it + must be a path to a CA bundle to use. + :param cert: + (optional) Any user-provided SSL certificate for client + authentication (a.k.a., mTLS). This may be a string (i.e., just + the path to a file which holds both certificate and key) or a + tuple of length 2 with the certificate file path and key file + path. + :returns: + A tuple of two dictionaries. The first is the "host parameters" + portion of the Pool Key including scheme, hostname, and port. The + second is a dictionary of SSLContext related parameters. + """ + return _urllib3_request_context(request, verify, cert, self.poolmanager) + + def get_connection_with_tls_context(self, request, verify, proxies=None, cert=None): + """Returns a urllib3 connection for the given request and TLS settings. + This should not be called from user code, and is only exposed for use + when subclassing the :class:`HTTPAdapter `. + + :param request: + The :class:`PreparedRequest ` object to be sent + over the connection. + :param verify: + Either a boolean, in which case it controls whether we verify the + server's TLS certificate, or a string, in which case it must be a + path to a CA bundle to use. + :param proxies: + (optional) The proxies dictionary to apply to the request. + :param cert: + (optional) Any user-provided SSL certificate to be used for client + authentication (a.k.a., mTLS). + :rtype: + urllib3.ConnectionPool + """ + proxy = select_proxy(request.url, proxies) + try: + host_params, pool_kwargs = self.build_connection_pool_key_attributes( + request, + verify, + cert, + ) + except ValueError as e: + raise InvalidURL(e, request=request) + if proxy: + proxy = prepend_scheme_if_needed(proxy, "http") + proxy_url = parse_url(proxy) + if not proxy_url.host: + raise InvalidProxyURL( + "Please check proxy URL. It is malformed " + "and could be missing the host." + ) + proxy_manager = self.proxy_manager_for(proxy) + conn = proxy_manager.connection_from_host( + **host_params, pool_kwargs=pool_kwargs + ) + else: + # Only scheme should be lower case + conn = self.poolmanager.connection_from_host( + **host_params, pool_kwargs=pool_kwargs + ) + + return conn + + def get_connection(self, url, proxies=None): + """DEPRECATED: Users should move to `get_connection_with_tls_context` + for all subclasses of HTTPAdapter using Requests>=2.32.2. + + Returns a urllib3 connection for the given URL. This should not be + called from user code, and is only exposed for use when subclassing the + :class:`HTTPAdapter `. + + :param url: The URL to connect to. + :param proxies: (optional) A Requests-style dictionary of proxies used on this request. + :rtype: urllib3.ConnectionPool + """ + warnings.warn( + ( + "`get_connection` has been deprecated in favor of " + "`get_connection_with_tls_context`. Custom HTTPAdapter subclasses " + "will need to migrate for Requests>=2.32.2. Please see " + "https://github.com/psf/requests/pull/6710 for more details." + ), + DeprecationWarning, + ) + proxy = select_proxy(url, proxies) + + if proxy: + proxy = prepend_scheme_if_needed(proxy, "http") + proxy_url = parse_url(proxy) + if not proxy_url.host: + raise InvalidProxyURL( + "Please check proxy URL. It is malformed " + "and could be missing the host." + ) + proxy_manager = self.proxy_manager_for(proxy) + conn = proxy_manager.connection_from_url(url) + else: + # Only scheme should be lower case + parsed = urlparse(url) + url = parsed.geturl() + conn = self.poolmanager.connection_from_url(url) + + return conn + + def close(self): + """Disposes of any internal state. + + Currently, this closes the PoolManager and any active ProxyManager, + which closes any pooled connections. + """ + self.poolmanager.clear() + for proxy in self.proxy_manager.values(): + proxy.clear() + + def request_url(self, request, proxies): + """Obtain the url to use when making the final request. + + If the message is being sent through a HTTP proxy, the full URL has to + be used. Otherwise, we should only use the path portion of the URL. + + This should not be called from user code, and is only exposed for use + when subclassing the + :class:`HTTPAdapter `. + + :param request: The :class:`PreparedRequest ` being sent. + :param proxies: A dictionary of schemes or schemes and hosts to proxy URLs. + :rtype: str + """ + proxy = select_proxy(request.url, proxies) + scheme = urlparse(request.url).scheme + + is_proxied_http_request = proxy and scheme != "https" + using_socks_proxy = False + if proxy: + proxy_scheme = urlparse(proxy).scheme.lower() + using_socks_proxy = proxy_scheme.startswith("socks") + + url = request.path_url + if url.startswith("//"): # Don't confuse urllib3 + url = f"/{url.lstrip('/')}" + + if is_proxied_http_request and not using_socks_proxy: + url = urldefragauth(request.url) + + return url + + def add_headers(self, request, **kwargs): + """Add any headers needed by the connection. As of v2.0 this does + nothing by default, but is left for overriding by users that subclass + the :class:`HTTPAdapter `. + + This should not be called from user code, and is only exposed for use + when subclassing the + :class:`HTTPAdapter `. + + :param request: The :class:`PreparedRequest ` to add headers to. + :param kwargs: The keyword arguments from the call to send(). + """ + pass + + def proxy_headers(self, proxy): + """Returns a dictionary of the headers to add to any request sent + through a proxy. This works with urllib3 magic to ensure that they are + correctly sent to the proxy, rather than in a tunnelled request if + CONNECT is being used. + + This should not be called from user code, and is only exposed for use + when subclassing the + :class:`HTTPAdapter `. + + :param proxy: The url of the proxy being used for this request. + :rtype: dict + """ + headers = {} + username, password = get_auth_from_url(proxy) + + if username: + headers["Proxy-Authorization"] = _basic_auth_str(username, password) + + return headers + + def send( + self, request, stream=False, timeout=None, verify=True, cert=None, proxies=None + ): + """Sends PreparedRequest object. Returns Response object. + + :param request: The :class:`PreparedRequest ` being sent. + :param stream: (optional) Whether to stream the request content. + :param timeout: (optional) How long to wait for the server to send + data before giving up, as a float, or a :ref:`(connect timeout, + read timeout) ` tuple. + :type timeout: float or tuple or urllib3 Timeout object + :param verify: (optional) Either a boolean, in which case it controls whether + we verify the server's TLS certificate, or a string, in which case it + must be a path to a CA bundle to use + :param cert: (optional) Any user-provided SSL certificate to be trusted. + :param proxies: (optional) The proxies dictionary to apply to the request. + :rtype: requests.Response + """ + + try: + conn = self.get_connection_with_tls_context( + request, verify, proxies=proxies, cert=cert + ) + except LocationValueError as e: + raise InvalidURL(e, request=request) + + self.cert_verify(conn, request.url, verify, cert) + url = self.request_url(request, proxies) + self.add_headers( + request, + stream=stream, + timeout=timeout, + verify=verify, + cert=cert, + proxies=proxies, + ) + + chunked = not (request.body is None or "Content-Length" in request.headers) + + if isinstance(timeout, tuple): + try: + connect, read = timeout + timeout = TimeoutSauce(connect=connect, read=read) + except ValueError: + raise ValueError( + f"Invalid timeout {timeout}. Pass a (connect, read) timeout tuple, " + f"or a single float to set both timeouts to the same value." + ) + elif isinstance(timeout, TimeoutSauce): + pass + else: + timeout = TimeoutSauce(connect=timeout, read=timeout) + + try: + resp = conn.urlopen( + method=request.method, + url=url, + body=request.body, + headers=request.headers, + redirect=False, + assert_same_host=False, + preload_content=False, + decode_content=False, + retries=self.max_retries, + timeout=timeout, + chunked=chunked, + ) + + except (ProtocolError, OSError) as err: + raise ConnectionError(err, request=request) + + except MaxRetryError as e: + if isinstance(e.reason, ConnectTimeoutError): + # TODO: Remove this in 3.0.0: see #2811 + if not isinstance(e.reason, NewConnectionError): + raise ConnectTimeout(e, request=request) + + if isinstance(e.reason, ResponseError): + raise RetryError(e, request=request) + + if isinstance(e.reason, _ProxyError): + raise ProxyError(e, request=request) + + if isinstance(e.reason, _SSLError): + # This branch is for urllib3 v1.22 and later. + raise SSLError(e, request=request) + + raise ConnectionError(e, request=request) + + except ClosedPoolError as e: + raise ConnectionError(e, request=request) + + except _ProxyError as e: + raise ProxyError(e) + + except (_SSLError, _HTTPError) as e: + if isinstance(e, _SSLError): + # This branch is for urllib3 versions earlier than v1.22 + raise SSLError(e, request=request) + elif isinstance(e, ReadTimeoutError): + raise ReadTimeout(e, request=request) + elif isinstance(e, _InvalidHeader): + raise InvalidHeader(e, request=request) + else: + raise + + return self.build_response(request, resp) diff --git a/openflamingo/lib/python3.10/site-packages/requests/certs.py b/openflamingo/lib/python3.10/site-packages/requests/certs.py new file mode 100644 index 0000000000000000000000000000000000000000..be422c3e91e43bacf60ff3302688df0b28742333 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/certs.py @@ -0,0 +1,17 @@ +#!/usr/bin/env python + +""" +requests.certs +~~~~~~~~~~~~~~ + +This module returns the preferred default CA certificate bundle. There is +only one — the one from the certifi package. + +If you are packaging Requests, e.g., for a Linux distribution or a managed +environment, you can change the definition of where() to return a separately +packaged CA bundle. +""" +from certifi import where + +if __name__ == "__main__": + print(where()) diff --git a/openflamingo/lib/python3.10/site-packages/requests/compat.py b/openflamingo/lib/python3.10/site-packages/requests/compat.py new file mode 100644 index 0000000000000000000000000000000000000000..095de1b6cae2f460174af54efa975411645f40c6 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/compat.py @@ -0,0 +1,94 @@ +""" +requests.compat +~~~~~~~~~~~~~~~ + +This module previously handled import compatibility issues +between Python 2 and Python 3. It remains for backwards +compatibility until the next major version. +""" + +import importlib +import sys + +# ------------------- +# Character Detection +# ------------------- + + +def _resolve_char_detection(): + """Find supported character detection libraries.""" + chardet = None + for lib in ("chardet", "charset_normalizer"): + if chardet is None: + try: + chardet = importlib.import_module(lib) + except ImportError: + pass + return chardet + + +chardet = _resolve_char_detection() + +# ------- +# Pythons +# ------- + +# Syntax sugar. +_ver = sys.version_info + +#: Python 2.x? +is_py2 = _ver[0] == 2 + +#: Python 3.x? +is_py3 = _ver[0] == 3 + +# json/simplejson module import resolution +has_simplejson = False +try: + import simplejson as json + + has_simplejson = True +except ImportError: + import json + +if has_simplejson: + from simplejson import JSONDecodeError +else: + from json import JSONDecodeError + +# Keep OrderedDict for backwards compatibility. +from collections import OrderedDict +from collections.abc import Callable, Mapping, MutableMapping +from http import cookiejar as cookielib +from http.cookies import Morsel +from io import StringIO + +# -------------- +# Legacy Imports +# -------------- +from urllib.parse import ( + quote, + quote_plus, + unquote, + unquote_plus, + urldefrag, + urlencode, + urljoin, + urlparse, + urlsplit, + urlunparse, +) +from urllib.request import ( + getproxies, + getproxies_environment, + parse_http_list, + proxy_bypass, + proxy_bypass_environment, +) + +builtin_str = str +str = str +bytes = bytes +basestring = (str, bytes) +numeric_types = (int, float) +integer_types = (int,) diff --git a/openflamingo/lib/python3.10/site-packages/requests/help.py b/openflamingo/lib/python3.10/site-packages/requests/help.py new file mode 100644 index 0000000000000000000000000000000000000000..8fbcd6560a8fe2c8a07e3bd1441a81e0db9cb689 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/help.py @@ -0,0 +1,134 @@ +"""Module containing bug report helper(s).""" + +import json +import platform +import ssl +import sys + +import idna +import urllib3 + +from . import __version__ as requests_version + +try: + import charset_normalizer +except ImportError: + charset_normalizer = None + +try: + import chardet +except ImportError: + chardet = None + +try: + from urllib3.contrib import pyopenssl +except ImportError: + pyopenssl = None + OpenSSL = None + cryptography = None +else: + import cryptography + import OpenSSL + + +def _implementation(): + """Return a dict with the Python implementation and version. + + Provide both the name and the version of the Python implementation + currently running. For example, on CPython 3.10.3 it will return + {'name': 'CPython', 'version': '3.10.3'}. + + This function works best on CPython and PyPy: in particular, it probably + doesn't work for Jython or IronPython. Future investigation should be done + to work out the correct shape of the code for those platforms. + """ + implementation = platform.python_implementation() + + if implementation == "CPython": + implementation_version = platform.python_version() + elif implementation == "PyPy": + implementation_version = "{}.{}.{}".format( + sys.pypy_version_info.major, + sys.pypy_version_info.minor, + sys.pypy_version_info.micro, + ) + if sys.pypy_version_info.releaselevel != "final": + implementation_version = "".join( + [implementation_version, sys.pypy_version_info.releaselevel] + ) + elif implementation == "Jython": + implementation_version = platform.python_version() # Complete Guess + elif implementation == "IronPython": + implementation_version = platform.python_version() # Complete Guess + else: + implementation_version = "Unknown" + + return {"name": implementation, "version": implementation_version} + + +def info(): + """Generate information for a bug report.""" + try: + platform_info = { + "system": platform.system(), + "release": platform.release(), + } + except OSError: + platform_info = { + "system": "Unknown", + "release": "Unknown", + } + + implementation_info = _implementation() + urllib3_info = {"version": urllib3.__version__} + charset_normalizer_info = {"version": None} + chardet_info = {"version": None} + if charset_normalizer: + charset_normalizer_info = {"version": charset_normalizer.__version__} + if chardet: + chardet_info = {"version": chardet.__version__} + + pyopenssl_info = { + "version": None, + "openssl_version": "", + } + if OpenSSL: + pyopenssl_info = { + "version": OpenSSL.__version__, + "openssl_version": f"{OpenSSL.SSL.OPENSSL_VERSION_NUMBER:x}", + } + cryptography_info = { + "version": getattr(cryptography, "__version__", ""), + } + idna_info = { + "version": getattr(idna, "__version__", ""), + } + + system_ssl = ssl.OPENSSL_VERSION_NUMBER + system_ssl_info = {"version": f"{system_ssl:x}" if system_ssl is not None else ""} + + return { + "platform": platform_info, + "implementation": implementation_info, + "system_ssl": system_ssl_info, + "using_pyopenssl": pyopenssl is not None, + "using_charset_normalizer": chardet is None, + "pyOpenSSL": pyopenssl_info, + "urllib3": urllib3_info, + "chardet": chardet_info, + "charset_normalizer": charset_normalizer_info, + "cryptography": cryptography_info, + "idna": idna_info, + "requests": { + "version": requests_version, + }, + } + + +def main(): + """Pretty-print the bug information as JSON.""" + print(json.dumps(info(), sort_keys=True, indent=2)) + + +if __name__ == "__main__": + main() diff --git a/openflamingo/lib/python3.10/site-packages/requests/hooks.py b/openflamingo/lib/python3.10/site-packages/requests/hooks.py new file mode 100644 index 0000000000000000000000000000000000000000..d181ba2ec2e55d274897315887b78fbdca757da8 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/hooks.py @@ -0,0 +1,33 @@ +""" +requests.hooks +~~~~~~~~~~~~~~ + +This module provides the capabilities for the Requests hooks system. + +Available hooks: + +``response``: + The response generated from a Request. +""" +HOOKS = ["response"] + + +def default_hooks(): + return {event: [] for event in HOOKS} + + +# TODO: response is the only one + + +def dispatch_hook(key, hooks, hook_data, **kwargs): + """Dispatches a hook dictionary on a given piece of data.""" + hooks = hooks or {} + hooks = hooks.get(key) + if hooks: + if hasattr(hooks, "__call__"): + hooks = [hooks] + for hook in hooks: + _hook_data = hook(hook_data, **kwargs) + if _hook_data is not None: + hook_data = _hook_data + return hook_data diff --git a/openflamingo/lib/python3.10/site-packages/requests/sessions.py b/openflamingo/lib/python3.10/site-packages/requests/sessions.py new file mode 100644 index 0000000000000000000000000000000000000000..b387bc36df7bc064b502adcb3c1a4527dd401fda --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/requests/sessions.py @@ -0,0 +1,831 @@ +""" +requests.sessions +~~~~~~~~~~~~~~~~~ + +This module provides a Session object to manage and persist settings across +requests (cookies, auth, proxies). +""" +import os +import sys +import time +from collections import OrderedDict +from datetime import timedelta + +from ._internal_utils import to_native_string +from .adapters import HTTPAdapter +from .auth import _basic_auth_str +from .compat import Mapping, cookielib, urljoin, urlparse +from .cookies import ( + RequestsCookieJar, + cookiejar_from_dict, + extract_cookies_to_jar, + merge_cookies, +) +from .exceptions import ( + ChunkedEncodingError, + ContentDecodingError, + InvalidSchema, + TooManyRedirects, +) +from .hooks import default_hooks, dispatch_hook + +# formerly defined here, reexposed here for backward compatibility +from .models import ( # noqa: F401 + DEFAULT_REDIRECT_LIMIT, + REDIRECT_STATI, + PreparedRequest, + Request, +) +from .status_codes import codes +from .structures import CaseInsensitiveDict +from .utils import ( # noqa: F401 + DEFAULT_PORTS, + default_headers, + get_auth_from_url, + get_environ_proxies, + get_netrc_auth, + requote_uri, + resolve_proxies, + rewind_body, + should_bypass_proxies, + to_key_val_list, +) + +# Preferred clock, based on which one is more accurate on a given system. +if sys.platform == "win32": + preferred_clock = time.perf_counter +else: + preferred_clock = time.time + + +def merge_setting(request_setting, session_setting, dict_class=OrderedDict): + """Determines appropriate setting for a given request, taking into account + the explicit setting on that request, and the setting in the session. If a + setting is a dictionary, they will be merged together using `dict_class` + """ + + if session_setting is None: + return request_setting + + if request_setting is None: + return session_setting + + # Bypass if not a dictionary (e.g. verify) + if not ( + isinstance(session_setting, Mapping) and isinstance(request_setting, Mapping) + ): + return request_setting + + merged_setting = dict_class(to_key_val_list(session_setting)) + merged_setting.update(to_key_val_list(request_setting)) + + # Remove keys that are set to None. Extract keys first to avoid altering + # the dictionary during iteration. + none_keys = [k for (k, v) in merged_setting.items() if v is None] + for key in none_keys: + del merged_setting[key] + + return merged_setting + + +def merge_hooks(request_hooks, session_hooks, dict_class=OrderedDict): + """Properly merges both requests and session hooks. + + This is necessary because when request_hooks == {'response': []}, the + merge breaks Session hooks entirely. + """ + if session_hooks is None or session_hooks.get("response") == []: + return request_hooks + + if request_hooks is None or request_hooks.get("response") == []: + return session_hooks + + return merge_setting(request_hooks, session_hooks, dict_class) + + +class SessionRedirectMixin: + def get_redirect_target(self, resp): + """Receives a Response. Returns a redirect URI or ``None``""" + # Due to the nature of how requests processes redirects this method will + # be called at least once upon the original response and at least twice + # on each subsequent redirect response (if any). + # If a custom mixin is used to handle this logic, it may be advantageous + # to cache the redirect location onto the response object as a private + # attribute. + if resp.is_redirect: + location = resp.headers["location"] + # Currently the underlying http module on py3 decode headers + # in latin1, but empirical evidence suggests that latin1 is very + # rarely used with non-ASCII characters in HTTP headers. + # It is more likely to get UTF8 header rather than latin1. + # This causes incorrect handling of UTF8 encoded location headers. + # To solve this, we re-encode the location in latin1. + location = location.encode("latin1") + return to_native_string(location, "utf8") + return None + + def should_strip_auth(self, old_url, new_url): + """Decide whether Authorization header should be removed when redirecting""" + old_parsed = urlparse(old_url) + new_parsed = urlparse(new_url) + if old_parsed.hostname != new_parsed.hostname: + return True + # Special case: allow http -> https redirect when using the standard + # ports. This isn't specified by RFC 7235, but is kept to avoid + # breaking backwards compatibility with older versions of requests + # that allowed any redirects on the same host. + if ( + old_parsed.scheme == "http" + and old_parsed.port in (80, None) + and new_parsed.scheme == "https" + and new_parsed.port in (443, None) + ): + return False + + # Handle default port usage corresponding to scheme. + changed_port = old_parsed.port != new_parsed.port + changed_scheme = old_parsed.scheme != new_parsed.scheme + default_port = (DEFAULT_PORTS.get(old_parsed.scheme, None), None) + if ( + not changed_scheme + and old_parsed.port in default_port + and new_parsed.port in default_port + ): + return False + + # Standard case: root URI must match + return changed_port or changed_scheme + + def resolve_redirects( + self, + resp, + req, + stream=False, + timeout=None, + verify=True, + cert=None, + proxies=None, + yield_requests=False, + **adapter_kwargs, + ): + """Receives a Response. Returns a generator of Responses or Requests.""" + + hist = [] # keep track of history + + url = self.get_redirect_target(resp) + previous_fragment = urlparse(req.url).fragment + while url: + prepared_request = req.copy() + + # Update history and keep track of redirects. + # resp.history must ignore the original request in this loop + hist.append(resp) + resp.history = hist[1:] + + try: + resp.content # Consume socket so it can be released + except (ChunkedEncodingError, ContentDecodingError, RuntimeError): + resp.raw.read(decode_content=False) + + if len(resp.history) >= self.max_redirects: + raise TooManyRedirects( + f"Exceeded {self.max_redirects} redirects.", response=resp + ) + + # Release the connection back into the pool. + resp.close() + + # Handle redirection without scheme (see: RFC 1808 Section 4) + if url.startswith("//"): + parsed_rurl = urlparse(resp.url) + url = ":".join([to_native_string(parsed_rurl.scheme), url]) + + # Normalize url case and attach previous fragment if needed (RFC 7231 7.1.2) + parsed = urlparse(url) + if parsed.fragment == "" and previous_fragment: + parsed = parsed._replace(fragment=previous_fragment) + elif parsed.fragment: + previous_fragment = parsed.fragment + url = parsed.geturl() + + # Facilitate relative 'location' headers, as allowed by RFC 7231. + # (e.g. '/path/to/resource' instead of 'http://domain.tld/path/to/resource') + # Compliant with RFC3986, we percent encode the url. + if not parsed.netloc: + url = urljoin(resp.url, requote_uri(url)) + else: + url = requote_uri(url) + + prepared_request.url = to_native_string(url) + + self.rebuild_method(prepared_request, resp) + + # https://github.com/psf/requests/issues/1084 + if resp.status_code not in ( + codes.temporary_redirect, + codes.permanent_redirect, + ): + # https://github.com/psf/requests/issues/3490 + purged_headers = ("Content-Length", "Content-Type", "Transfer-Encoding") + for header in purged_headers: + prepared_request.headers.pop(header, None) + prepared_request.body = None + + headers = prepared_request.headers + headers.pop("Cookie", None) + + # Extract any cookies sent on the response to the cookiejar + # in the new request. Because we've mutated our copied prepared + # request, use the old one that we haven't yet touched. + extract_cookies_to_jar(prepared_request._cookies, req, resp.raw) + merge_cookies(prepared_request._cookies, self.cookies) + prepared_request.prepare_cookies(prepared_request._cookies) + + # Rebuild auth and proxy information. + proxies = self.rebuild_proxies(prepared_request, proxies) + self.rebuild_auth(prepared_request, resp) + + # A failed tell() sets `_body_position` to `object()`. This non-None + # value ensures `rewindable` will be True, allowing us to raise an + # UnrewindableBodyError, instead of hanging the connection. + rewindable = prepared_request._body_position is not None and ( + "Content-Length" in headers or "Transfer-Encoding" in headers + ) + + # Attempt to rewind consumed file-like object. + if rewindable: + rewind_body(prepared_request) + + # Override the original request. + req = prepared_request + + if yield_requests: + yield req + else: + resp = self.send( + req, + stream=stream, + timeout=timeout, + verify=verify, + cert=cert, + proxies=proxies, + allow_redirects=False, + **adapter_kwargs, + ) + + extract_cookies_to_jar(self.cookies, prepared_request, resp.raw) + + # extract redirect url, if any, for the next loop + url = self.get_redirect_target(resp) + yield resp + + def rebuild_auth(self, prepared_request, response): + """When being redirected we may want to strip authentication from the + request to avoid leaking credentials. This method intelligently removes + and reapplies authentication where possible to avoid credential loss. + """ + headers = prepared_request.headers + url = prepared_request.url + + if "Authorization" in headers and self.should_strip_auth( + response.request.url, url + ): + # If we get redirected to a new host, we should strip out any + # authentication headers. + del headers["Authorization"] + + # .netrc might have more auth for us on our new host. + new_auth = get_netrc_auth(url) if self.trust_env else None + if new_auth is not None: + prepared_request.prepare_auth(new_auth) + + def rebuild_proxies(self, prepared_request, proxies): + """This method re-evaluates the proxy configuration by considering the + environment variables. If we are redirected to a URL covered by + NO_PROXY, we strip the proxy configuration. Otherwise, we set missing + proxy keys for this URL (in case they were stripped by a previous + redirect). + + This method also replaces the Proxy-Authorization header where + necessary. + + :rtype: dict + """ + headers = prepared_request.headers + scheme = urlparse(prepared_request.url).scheme + new_proxies = resolve_proxies(prepared_request, proxies, self.trust_env) + + if "Proxy-Authorization" in headers: + del headers["Proxy-Authorization"] + + try: + username, password = get_auth_from_url(new_proxies[scheme]) + except KeyError: + username, password = None, None + + # urllib3 handles proxy authorization for us in the standard adapter. + # Avoid appending this to TLS tunneled requests where it may be leaked. + if not scheme.startswith("https") and username and password: + headers["Proxy-Authorization"] = _basic_auth_str(username, password) + + return new_proxies + + def rebuild_method(self, prepared_request, response): + """When being redirected we may want to change the method of the request + based on certain specs or browser behavior. + """ + method = prepared_request.method + + # https://tools.ietf.org/html/rfc7231#section-6.4.4 + if response.status_code == codes.see_other and method != "HEAD": + method = "GET" + + # Do what the browsers do, despite standards... + # First, turn 302s into GETs. + if response.status_code == codes.found and method != "HEAD": + method = "GET" + + # Second, if a POST is responded to with a 301, turn it into a GET. + # This bizarre behaviour is explained in Issue 1704. + if response.status_code == codes.moved and method == "POST": + method = "GET" + + prepared_request.method = method + + +class Session(SessionRedirectMixin): + """A Requests session. + + Provides cookie persistence, connection-pooling, and configuration. + + Basic Usage:: + + >>> import requests + >>> s = requests.Session() + >>> s.get('https://httpbin.org/get') + + + Or as a context manager:: + + >>> with requests.Session() as s: + ... s.get('https://httpbin.org/get') + + """ + + __attrs__ = [ + "headers", + "cookies", + "auth", + "proxies", + "hooks", + "params", + "verify", + "cert", + "adapters", + "stream", + "trust_env", + "max_redirects", + ] + + def __init__(self): + #: A case-insensitive dictionary of headers to be sent on each + #: :class:`Request ` sent from this + #: :class:`Session `. + self.headers = default_headers() + + #: Default Authentication tuple or object to attach to + #: :class:`Request `. + self.auth = None + + #: Dictionary mapping protocol or protocol and host to the URL of the proxy + #: (e.g. {'http': 'foo.bar:3128', 'http://host.name': 'foo.bar:4012'}) to + #: be used on each :class:`Request `. + self.proxies = {} + + #: Event-handling hooks. + self.hooks = default_hooks() + + #: Dictionary of querystring data to attach to each + #: :class:`Request `. The dictionary values may be lists for + #: representing multivalued query parameters. + self.params = {} + + #: Stream response content default. + self.stream = False + + #: SSL Verification default. + #: Defaults to `True`, requiring requests to verify the TLS certificate at the + #: remote end. + #: If verify is set to `False`, requests will accept any TLS certificate + #: presented by the server, and will ignore hostname mismatches and/or + #: expired certificates, which will make your application vulnerable to + #: man-in-the-middle (MitM) attacks. + #: Only set this to `False` for testing. + self.verify = True + + #: SSL client certificate default, if String, path to ssl client + #: cert file (.pem). If Tuple, ('cert', 'key') pair. + self.cert = None + + #: Maximum number of redirects allowed. If the request exceeds this + #: limit, a :class:`TooManyRedirects` exception is raised. + #: This defaults to requests.models.DEFAULT_REDIRECT_LIMIT, which is + #: 30. + self.max_redirects = DEFAULT_REDIRECT_LIMIT + + #: Trust environment settings for proxy configuration, default + #: authentication and similar. + self.trust_env = True + + #: A CookieJar containing all currently outstanding cookies set on this + #: session. By default it is a + #: :class:`RequestsCookieJar `, but + #: may be any other ``cookielib.CookieJar`` compatible object. + self.cookies = cookiejar_from_dict({}) + + # Default connection adapters. + self.adapters = OrderedDict() + self.mount("https://", HTTPAdapter()) + self.mount("http://", HTTPAdapter()) + + def __enter__(self): + return self + + def __exit__(self, *args): + self.close() + + def prepare_request(self, request): + """Constructs a :class:`PreparedRequest ` for + transmission and returns it. The :class:`PreparedRequest` has settings + merged from the :class:`Request ` instance and those of the + :class:`Session`. + + :param request: :class:`Request` instance to prepare with this + session's settings. + :rtype: requests.PreparedRequest + """ + cookies = request.cookies or {} + + # Bootstrap CookieJar. + if not isinstance(cookies, cookielib.CookieJar): + cookies = cookiejar_from_dict(cookies) + + # Merge with session cookies + merged_cookies = merge_cookies( + merge_cookies(RequestsCookieJar(), self.cookies), cookies + ) + + # Set environment's basic authentication if not explicitly set. + auth = request.auth + if self.trust_env and not auth and not self.auth: + auth = get_netrc_auth(request.url) + + p = PreparedRequest() + p.prepare( + method=request.method.upper(), + url=request.url, + files=request.files, + data=request.data, + json=request.json, + headers=merge_setting( + request.headers, self.headers, dict_class=CaseInsensitiveDict + ), + params=merge_setting(request.params, self.params), + auth=merge_setting(auth, self.auth), + cookies=merged_cookies, + hooks=merge_hooks(request.hooks, self.hooks), + ) + return p + + def request( + self, + method, + url, + params=None, + data=None, + headers=None, + cookies=None, + files=None, + auth=None, + timeout=None, + allow_redirects=True, + proxies=None, + hooks=None, + stream=None, + verify=None, + cert=None, + json=None, + ): + """Constructs a :class:`Request `, prepares it and sends it. + Returns :class:`Response ` object. + + :param method: method for the new :class:`Request` object. + :param url: URL for the new :class:`Request` object. + :param params: (optional) Dictionary or bytes to be sent in the query + string for the :class:`Request`. + :param data: (optional) Dictionary, list of tuples, bytes, or file-like + object to send in the body of the :class:`Request`. + :param json: (optional) json to send in the body of the + :class:`Request`. + :param headers: (optional) Dictionary of HTTP Headers to send with the + :class:`Request`. + :param cookies: (optional) Dict or CookieJar object to send with the + :class:`Request`. + :param files: (optional) Dictionary of ``'filename': file-like-objects`` + for multipart encoding upload. + :param auth: (optional) Auth tuple or callable to enable + Basic/Digest/Custom HTTP Auth. + :param timeout: (optional) How long to wait for the server to send + data before giving up, as a float, or a :ref:`(connect timeout, + read timeout) ` tuple. + :type timeout: float or tuple + :param allow_redirects: (optional) Set to True by default. + :type allow_redirects: bool + :param proxies: (optional) Dictionary mapping protocol or protocol and + hostname to the URL of the proxy. + :param hooks: (optional) Dictionary mapping hook name to one event or + list of events, event must be callable. + :param stream: (optional) whether to immediately download the response + content. Defaults to ``False``. + :param verify: (optional) Either a boolean, in which case it controls whether we verify + the server's TLS certificate, or a string, in which case it must be a path + to a CA bundle to use. Defaults to ``True``. When set to + ``False``, requests will accept any TLS certificate presented by + the server, and will ignore hostname mismatches and/or expired + certificates, which will make your application vulnerable to + man-in-the-middle (MitM) attacks. Setting verify to ``False`` + may be useful during local development or testing. + :param cert: (optional) if String, path to ssl client cert file (.pem). + If Tuple, ('cert', 'key') pair. + :rtype: requests.Response + """ + # Create the Request. + req = Request( + method=method.upper(), + url=url, + headers=headers, + files=files, + data=data or {}, + json=json, + params=params or {}, + auth=auth, + cookies=cookies, + hooks=hooks, + ) + prep = self.prepare_request(req) + + proxies = proxies or {} + + settings = self.merge_environment_settings( + prep.url, proxies, stream, verify, cert + ) + + # Send the request. + send_kwargs = { + "timeout": timeout, + "allow_redirects": allow_redirects, + } + send_kwargs.update(settings) + resp = self.send(prep, **send_kwargs) + + return resp + + def get(self, url, **kwargs): + r"""Sends a GET request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + kwargs.setdefault("allow_redirects", True) + return self.request("GET", url, **kwargs) + + def options(self, url, **kwargs): + r"""Sends a OPTIONS request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + kwargs.setdefault("allow_redirects", True) + return self.request("OPTIONS", url, **kwargs) + + def head(self, url, **kwargs): + r"""Sends a HEAD request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + kwargs.setdefault("allow_redirects", False) + return self.request("HEAD", url, **kwargs) + + def post(self, url, data=None, json=None, **kwargs): + r"""Sends a POST request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param data: (optional) Dictionary, list of tuples, bytes, or file-like + object to send in the body of the :class:`Request`. + :param json: (optional) json to send in the body of the :class:`Request`. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + return self.request("POST", url, data=data, json=json, **kwargs) + + def put(self, url, data=None, **kwargs): + r"""Sends a PUT request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param data: (optional) Dictionary, list of tuples, bytes, or file-like + object to send in the body of the :class:`Request`. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + return self.request("PUT", url, data=data, **kwargs) + + def patch(self, url, data=None, **kwargs): + r"""Sends a PATCH request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param data: (optional) Dictionary, list of tuples, bytes, or file-like + object to send in the body of the :class:`Request`. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + return self.request("PATCH", url, data=data, **kwargs) + + def delete(self, url, **kwargs): + r"""Sends a DELETE request. Returns :class:`Response` object. + + :param url: URL for the new :class:`Request` object. + :param \*\*kwargs: Optional arguments that ``request`` takes. + :rtype: requests.Response + """ + + return self.request("DELETE", url, **kwargs) + + def send(self, request, **kwargs): + """Send a given PreparedRequest. + + :rtype: requests.Response + """ + # Set defaults that the hooks can utilize to ensure they always have + # the correct parameters to reproduce the previous request. + kwargs.setdefault("stream", self.stream) + kwargs.setdefault("verify", self.verify) + kwargs.setdefault("cert", self.cert) + if "proxies" not in kwargs: + kwargs["proxies"] = resolve_proxies(request, self.proxies, self.trust_env) + + # It's possible that users might accidentally send a Request object. + # Guard against that specific failure case. + if isinstance(request, Request): + raise ValueError("You can only send PreparedRequests.") + + # Set up variables needed for resolve_redirects and dispatching of hooks + allow_redirects = kwargs.pop("allow_redirects", True) + stream = kwargs.get("stream") + hooks = request.hooks + + # Get the appropriate adapter to use + adapter = self.get_adapter(url=request.url) + + # Start time (approximately) of the request + start = preferred_clock() + + # Send the request + r = adapter.send(request, **kwargs) + + # Total elapsed time of the request (approximately) + elapsed = preferred_clock() - start + r.elapsed = timedelta(seconds=elapsed) + + # Response manipulation hooks + r = dispatch_hook("response", hooks, r, **kwargs) + + # Persist cookies + if r.history: + # If the hooks create history then we want those cookies too + for resp in r.history: + extract_cookies_to_jar(self.cookies, resp.request, resp.raw) + + extract_cookies_to_jar(self.cookies, request, r.raw) + + # Resolve redirects if allowed. + if allow_redirects: + # Redirect resolving generator. + gen = self.resolve_redirects(r, request, **kwargs) + history = [resp for resp in gen] + else: + history = [] + + # Shuffle things around if there's history. + if history: + # Insert the first (original) request at the start + history.insert(0, r) + # Get the last request made + r = history.pop() + r.history = history + + # If redirects aren't being followed, store the response on the Request for Response.next(). + if not allow_redirects: + try: + r._next = next( + self.resolve_redirects(r, request, yield_requests=True, **kwargs) + ) + except StopIteration: + pass + + if not stream: + r.content + + return r + + def merge_environment_settings(self, url, proxies, stream, verify, cert): + """ + Check the environment and merge it with some settings. + + :rtype: dict + """ + # Gather clues from the surrounding environment. + if self.trust_env: + # Set environment's proxies. + no_proxy = proxies.get("no_proxy") if proxies is not None else None + env_proxies = get_environ_proxies(url, no_proxy=no_proxy) + for k, v in env_proxies.items(): + proxies.setdefault(k, v) + + # Look for requests environment configuration + # and be compatible with cURL. + if verify is True or verify is None: + verify = ( + os.environ.get("REQUESTS_CA_BUNDLE") + or os.environ.get("CURL_CA_BUNDLE") + or verify + ) + + # Merge all the kwargs. + proxies = merge_setting(proxies, self.proxies) + stream = merge_setting(stream, self.stream) + verify = merge_setting(verify, self.verify) + cert = merge_setting(cert, self.cert) + + return {"proxies": proxies, "stream": stream, "verify": verify, "cert": cert} + + def get_adapter(self, url): + """ + Returns the appropriate connection adapter for the given URL. + + :rtype: requests.adapters.BaseAdapter + """ + for prefix, adapter in self.adapters.items(): + if url.lower().startswith(prefix.lower()): + return adapter + + # Nothing matches :-/ + raise InvalidSchema(f"No connection adapters were found for {url!r}") + + def close(self): + """Closes all adapters and as such the session""" + for v in self.adapters.values(): + v.close() + + def mount(self, prefix, adapter): + """Registers a connection adapter to a prefix. + + Adapters are sorted in descending order by prefix length. + """ + self.adapters[prefix] = adapter + keys_to_move = [k for k in self.adapters if len(k) < len(prefix)] + + for key in keys_to_move: + self.adapters[key] = self.adapters.pop(key) + + def __getstate__(self): + state = {attr: getattr(self, attr, None) for attr in self.__attrs__} + return state + + def __setstate__(self, state): + for attr, value in state.items(): + setattr(self, attr, value) + + +def session(): + """ + Returns a :class:`Session` for context-management. + + .. deprecated:: 1.0.0 + + This method has been deprecated since version 1.0.0 and is only kept for + backwards compatibility. New code should use :class:`~requests.sessions.Session` + to create a session. This may be removed at a future date. + + :rtype: Session + """ + return Session() diff --git a/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/__init__.cpython-310.pyc b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..8eeeae6aba52c9d5a7c42fd867889e1b0e66c67d Binary files /dev/null and b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/__init__.cpython-310.pyc differ diff --git a/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/flax.cpython-310.pyc b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/flax.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..4cafc074a19990bc4f5632c2e6f6c960fb8b2a77 Binary files /dev/null and b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/flax.cpython-310.pyc differ diff --git a/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/mlx.cpython-310.pyc b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/mlx.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..a9fe13c742ca044cbda9da93eaef033a7503b7ab Binary files /dev/null and b/openflamingo/lib/python3.10/site-packages/safetensors/__pycache__/mlx.cpython-310.pyc differ diff --git a/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/INSTALLER b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/INSTALLER new file mode 100644 index 0000000000000000000000000000000000000000..a1b589e38a32041e49332e5e81c2d363dc418d68 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/INSTALLER @@ -0,0 +1 @@ +pip diff --git a/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/METADATA b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/METADATA new file mode 100644 index 0000000000000000000000000000000000000000..368b35159cb032a63af2522bc4b94f01d2b09831 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/METADATA @@ -0,0 +1,212 @@ +Metadata-Version: 2.1 +Name: tokenizers +Version: 0.13.3 +Summary: Fast and Customizable Tokenizers +Home-page: https://github.com/huggingface/tokenizers +Author: Anthony MOI +Author-email: anthony@huggingface.co +License: Apache License 2.0 +Keywords: NLP tokenizer BPE transformer deep learning +Classifier: Development Status :: 5 - Production/Stable +Classifier: Intended Audience :: Developers +Classifier: Intended Audience :: Education +Classifier: Intended Audience :: Science/Research +Classifier: License :: OSI Approved :: Apache Software License +Classifier: Operating System :: OS Independent +Classifier: Programming Language :: Python :: 3 +Classifier: Programming Language :: Python :: 3.5 +Classifier: Programming Language :: Python :: 3.6 +Classifier: Programming Language :: Python :: 3.7 +Classifier: Programming Language :: Python :: 3.8 +Classifier: Programming Language :: Python :: 3.9 +Classifier: Programming Language :: Python :: 3.10 +Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence +Description-Content-Type: text/markdown +Provides-Extra: dev +Requires-Dist: pytest ; extra == 'dev' +Requires-Dist: requests ; extra == 'dev' +Requires-Dist: numpy ; extra == 'dev' +Requires-Dist: datasets ; extra == 'dev' +Requires-Dist: black (==22.3) ; extra == 'dev' +Provides-Extra: docs +Requires-Dist: sphinx ; extra == 'docs' +Requires-Dist: sphinx-rtd-theme ; extra == 'docs' +Requires-Dist: setuptools-rust ; extra == 'docs' +Provides-Extra: testing +Requires-Dist: pytest ; extra == 'testing' +Requires-Dist: requests ; extra == 'testing' +Requires-Dist: numpy ; extra == 'testing' +Requires-Dist: datasets ; extra == 'testing' +Requires-Dist: black (==22.3) ; extra == 'testing' + +

+
+ +
+

+

+ + Build + + + GitHub + +

+
+ +# Tokenizers + +Provides an implementation of today's most used tokenizers, with a focus on performance and +versatility. + +Bindings over the [Rust](https://github.com/huggingface/tokenizers/tree/master/tokenizers) implementation. +If you are interested in the High-level design, you can go check it there. + +Otherwise, let's dive in! + +## Main features: + + - Train new vocabularies and tokenize using 4 pre-made tokenizers (Bert WordPiece and the 3 + most common BPE versions). + - Extremely fast (both training and tokenization), thanks to the Rust implementation. Takes + less than 20 seconds to tokenize a GB of text on a server's CPU. + - Easy to use, but also extremely versatile. + - Designed for research and production. + - Normalization comes with alignments tracking. It's always possible to get the part of the + original sentence that corresponds to a given token. + - Does all the pre-processing: Truncate, Pad, add the special tokens your model needs. + +### Installation + +#### With pip: + +```bash +pip install tokenizers +``` + +#### From sources: + +To use this method, you need to have the Rust installed: + +```bash +# Install with: +curl https://sh.rustup.rs -sSf | sh -s -- -y +export PATH="$HOME/.cargo/bin:$PATH" +``` + +Once Rust is installed, you can compile doing the following + +```bash +git clone https://github.com/huggingface/tokenizers +cd tokenizers/bindings/python + +# Create a virtual env (you can use yours as well) +python -m venv .env +source .env/bin/activate + +# Install `tokenizers` in the current virtual env +pip install setuptools_rust +python setup.py install +``` + +### Load a pretrained tokenizer from the Hub + +```python +from tokenizers import Tokenizer + +tokenizer = Tokenizer.from_pretrained("bert-base-cased") +``` + +### Using the provided Tokenizers + +We provide some pre-build tokenizers to cover the most common cases. You can easily load one of +these using some `vocab.json` and `merges.txt` files: + +```python +from tokenizers import CharBPETokenizer + +# Initialize a tokenizer +vocab = "./path/to/vocab.json" +merges = "./path/to/merges.txt" +tokenizer = CharBPETokenizer(vocab, merges) + +# And then encode: +encoded = tokenizer.encode("I can feel the magic, can you?") +print(encoded.ids) +print(encoded.tokens) +``` + +And you can train them just as simply: + +```python +from tokenizers import CharBPETokenizer + +# Initialize a tokenizer +tokenizer = CharBPETokenizer() + +# Then train it! +tokenizer.train([ "./path/to/files/1.txt", "./path/to/files/2.txt" ]) + +# Now, let's use it: +encoded = tokenizer.encode("I can feel the magic, can you?") + +# And finally save it somewhere +tokenizer.save("./path/to/directory/my-bpe.tokenizer.json") +``` + +#### Provided Tokenizers + + - `CharBPETokenizer`: The original BPE + - `ByteLevelBPETokenizer`: The byte level version of the BPE + - `SentencePieceBPETokenizer`: A BPE implementation compatible with the one used by SentencePiece + - `BertWordPieceTokenizer`: The famous Bert tokenizer, using WordPiece + +All of these can be used and trained as explained above! + +### Build your own + +Whenever these provided tokenizers don't give you enough freedom, you can build your own tokenizer, +by putting all the different parts you need together. +You can check how we implemented the [provided tokenizers](https://github.com/huggingface/tokenizers/tree/master/bindings/python/py_src/tokenizers/implementations) and adapt them easily to your own needs. + +#### Building a byte-level BPE + +Here is an example showing how to build your own byte-level BPE by putting all the different pieces +together, and then saving it to a single file: + +```python +from tokenizers import Tokenizer, models, pre_tokenizers, decoders, trainers, processors + +# Initialize a tokenizer +tokenizer = Tokenizer(models.BPE()) + +# Customize pre-tokenization and decoding +tokenizer.pre_tokenizer = pre_tokenizers.ByteLevel(add_prefix_space=True) +tokenizer.decoder = decoders.ByteLevel() +tokenizer.post_processor = processors.ByteLevel(trim_offsets=True) + +# And then train +trainer = trainers.BpeTrainer( + vocab_size=20000, + min_frequency=2, + initial_alphabet=pre_tokenizers.ByteLevel.alphabet() +) +tokenizer.train([ + "./path/to/dataset/1.txt", + "./path/to/dataset/2.txt", + "./path/to/dataset/3.txt" +], trainer=trainer) + +# And Save it +tokenizer.save("byte-level-bpe.tokenizer.json", pretty=True) +``` + +Now, when you want to use this tokenizer, this is as simple as: + +```python +from tokenizers import Tokenizer + +tokenizer = Tokenizer.from_file("byte-level-bpe.tokenizer.json") + +encoded = tokenizer.encode("I can feel the magic, can you?") +``` diff --git a/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/WHEEL b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/WHEEL new file mode 100644 index 0000000000000000000000000000000000000000..2d1b4b87130cdd6e713250ed45eec87c87d0405f --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/tokenizers-0.13.3.dist-info/WHEEL @@ -0,0 +1,6 @@ +Wheel-Version: 1.0 +Generator: bdist_wheel (0.40.0) +Root-Is-Purelib: false +Tag: cp310-cp310-manylinux_2_17_x86_64 +Tag: cp310-cp310-manylinux2014_x86_64 + diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.cuh b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.cuh new file mode 100644 index 0000000000000000000000000000000000000000..34f8ae9cb77bbaa8cb4dd25e0cb86632db9ad05d --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.cuh @@ -0,0 +1,1467 @@ +/*! +************************************************************************************************** +* Deformable DETR +* Copyright (c) 2020 SenseTime. All Rights Reserved. +* Licensed under the Apache License, Version 2.0 [see LICENSE for details] +************************************************************************************************** +* Modified from https://github.com/chengdazhi/Deformable-Convolution-V2-PyTorch/tree/pytorch_1.0.0 +************************************************************************************************** +*/ + +#include + +#include +#include + +#include +#include +#include + +#include +#include + +#include + +#define CUDA_KERNEL_LOOP(i, n) \ + for (int i = blockIdx.x * blockDim.x + threadIdx.x; \ + i < (n); \ + i += blockDim.x * gridDim.x) + + +at::Tensor ms_deform_attn_cuda_forward( + const at::Tensor &value, + const at::Tensor &spatial_shapes, + const at::Tensor &level_start_index, + const at::Tensor &sampling_loc, + const at::Tensor &attn_weight, + const int im2col_step) +{ + AT_ASSERTM(value.is_contiguous(), "value tensor has to be contiguous"); + AT_ASSERTM(spatial_shapes.is_contiguous(), "spatial_shapes tensor has to be contiguous"); + AT_ASSERTM(level_start_index.is_contiguous(), "level_start_index tensor has to be contiguous"); + AT_ASSERTM(sampling_loc.is_contiguous(), "sampling_loc tensor has to be contiguous"); + AT_ASSERTM(attn_weight.is_contiguous(), "attn_weight tensor has to be contiguous"); + + AT_ASSERTM(value.type().is_cuda(), "value must be a CUDA tensor"); + AT_ASSERTM(spatial_shapes.type().is_cuda(), "spatial_shapes must be a CUDA tensor"); + AT_ASSERTM(level_start_index.type().is_cuda(), "level_start_index must be a CUDA tensor"); + AT_ASSERTM(sampling_loc.type().is_cuda(), "sampling_loc must be a CUDA tensor"); + AT_ASSERTM(attn_weight.type().is_cuda(), "attn_weight must be a CUDA tensor"); + + const int batch = value.size(0); + const int spatial_size = value.size(1); + const int num_heads = value.size(2); + const int channels = value.size(3); + + const int num_levels = spatial_shapes.size(0); + + const int num_query = sampling_loc.size(1); + const int num_point = sampling_loc.size(4); + + const int im2col_step_ = std::min(batch, im2col_step); + + AT_ASSERTM(batch % im2col_step_ == 0, "batch(%d) must divide im2col_step(%d)", batch, im2col_step_); + + auto output = at::zeros({batch, num_query, num_heads, channels}, value.options()); + + const int batch_n = im2col_step_; + auto output_n = output.view({batch/im2col_step_, batch_n, num_query, num_heads, channels}); + auto per_value_size = spatial_size * num_heads * channels; + auto per_sample_loc_size = num_query * num_heads * num_levels * num_point * 2; + auto per_attn_weight_size = num_query * num_heads * num_levels * num_point; + for (int n = 0; n < batch/im2col_step_; ++n) + { + auto columns = output_n.select(0, n); + AT_DISPATCH_FLOATING_TYPES(value.type(), "ms_deform_attn_forward_cuda", ([&] { + ms_deformable_im2col_cuda(at::cuda::getCurrentCUDAStream(), + value.data() + n * im2col_step_ * per_value_size, + spatial_shapes.data(), + level_start_index.data(), + sampling_loc.data() + n * im2col_step_ * per_sample_loc_size, + attn_weight.data() + n * im2col_step_ * per_attn_weight_size, + batch_n, spatial_size, num_heads, channels, num_levels, num_query, num_point, + columns.data()); + + })); + } + + output = output.view({batch, num_query, num_heads*channels}); + + return output; +} + + +std::vector ms_deform_attn_cuda_backward( + const at::Tensor &value, + const at::Tensor &spatial_shapes, + const at::Tensor &level_start_index, + const at::Tensor &sampling_loc, + const at::Tensor &attn_weight, + const at::Tensor &grad_output, + const int im2col_step) +{ + + AT_ASSERTM(value.is_contiguous(), "value tensor has to be contiguous"); + AT_ASSERTM(spatial_shapes.is_contiguous(), "spatial_shapes tensor has to be contiguous"); + AT_ASSERTM(level_start_index.is_contiguous(), "level_start_index tensor has to be contiguous"); + AT_ASSERTM(sampling_loc.is_contiguous(), "sampling_loc tensor has to be contiguous"); + AT_ASSERTM(attn_weight.is_contiguous(), "attn_weight tensor has to be contiguous"); + AT_ASSERTM(grad_output.is_contiguous(), "grad_output tensor has to be contiguous"); + + AT_ASSERTM(value.type().is_cuda(), "value must be a CUDA tensor"); + AT_ASSERTM(spatial_shapes.type().is_cuda(), "spatial_shapes must be a CUDA tensor"); + AT_ASSERTM(level_start_index.type().is_cuda(), "level_start_index must be a CUDA tensor"); + AT_ASSERTM(sampling_loc.type().is_cuda(), "sampling_loc must be a CUDA tensor"); + AT_ASSERTM(attn_weight.type().is_cuda(), "attn_weight must be a CUDA tensor"); + AT_ASSERTM(grad_output.type().is_cuda(), "grad_output must be a CUDA tensor"); + + const int batch = value.size(0); + const int spatial_size = value.size(1); + const int num_heads = value.size(2); + const int channels = value.size(3); + + const int num_levels = spatial_shapes.size(0); + + const int num_query = sampling_loc.size(1); + const int num_point = sampling_loc.size(4); + + const int im2col_step_ = std::min(batch, im2col_step); + + AT_ASSERTM(batch % im2col_step_ == 0, "batch(%d) must divide im2col_step(%d)", batch, im2col_step_); + + auto grad_value = at::zeros_like(value); + auto grad_sampling_loc = at::zeros_like(sampling_loc); + auto grad_attn_weight = at::zeros_like(attn_weight); + + const int batch_n = im2col_step_; + auto per_value_size = spatial_size * num_heads * channels; + auto per_sample_loc_size = num_query * num_heads * num_levels * num_point * 2; + auto per_attn_weight_size = num_query * num_heads * num_levels * num_point; + auto grad_output_n = grad_output.view({batch/im2col_step_, batch_n, num_query, num_heads, channels}); + + for (int n = 0; n < batch/im2col_step_; ++n) + { + auto grad_output_g = grad_output_n.select(0, n); + AT_DISPATCH_FLOATING_TYPES(value.type(), "ms_deform_attn_backward_cuda", ([&] { + ms_deformable_col2im_cuda(at::cuda::getCurrentCUDAStream(), + grad_output_g.data(), + value.data() + n * im2col_step_ * per_value_size, + spatial_shapes.data(), + level_start_index.data(), + sampling_loc.data() + n * im2col_step_ * per_sample_loc_size, + attn_weight.data() + n * im2col_step_ * per_attn_weight_size, + batch_n, spatial_size, num_heads, channels, num_levels, num_query, num_point, + grad_value.data() + n * im2col_step_ * per_value_size, + grad_sampling_loc.data() + n * im2col_step_ * per_sample_loc_size, + grad_attn_weight.data() + n * im2col_step_ * per_attn_weight_size); + + })); + } + + return { + grad_value, grad_sampling_loc, grad_attn_weight + }; +} + +const int CUDA_NUM_THREADS = 1024; +inline int GET_BLOCKS(const int N, const int num_threads) +{ + return (N + num_threads - 1) / num_threads; +} + + +template +__device__ scalar_t ms_deform_attn_im2col_bilinear(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + } + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + return val; +} + + +template +__device__ void ms_deform_attn_col2im_bilinear(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c, + const scalar_t &top_grad, + const scalar_t &attn_weight, + scalar_t* &grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + const scalar_t top_grad_value = top_grad * attn_weight; + scalar_t grad_h_weight = 0, grad_w_weight = 0; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + grad_h_weight -= hw * v1; + grad_w_weight -= hh * v1; + atomicAdd(grad_value+ptr1, w1*top_grad_value); + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + grad_h_weight -= lw * v2; + grad_w_weight += hh * v2; + atomicAdd(grad_value+ptr2, w2*top_grad_value); + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + grad_h_weight += hw * v3; + grad_w_weight -= lh * v3; + atomicAdd(grad_value+ptr3, w3*top_grad_value); + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + grad_h_weight += lw * v4; + grad_w_weight += lh * v4; + atomicAdd(grad_value+ptr4, w4*top_grad_value); + } + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + *grad_attn_weight = top_grad * val; + *grad_sampling_loc = width * grad_w_weight * top_grad_value; + *(grad_sampling_loc + 1) = height * grad_h_weight * top_grad_value; +} + + +template +__device__ void ms_deform_attn_col2im_bilinear_gm(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c, + const scalar_t &top_grad, + const scalar_t &attn_weight, + scalar_t* &grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + const scalar_t top_grad_value = top_grad * attn_weight; + scalar_t grad_h_weight = 0, grad_w_weight = 0; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + grad_h_weight -= hw * v1; + grad_w_weight -= hh * v1; + atomicAdd(grad_value+ptr1, w1*top_grad_value); + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + grad_h_weight -= lw * v2; + grad_w_weight += hh * v2; + atomicAdd(grad_value+ptr2, w2*top_grad_value); + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + grad_h_weight += hw * v3; + grad_w_weight -= lh * v3; + atomicAdd(grad_value+ptr3, w3*top_grad_value); + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + grad_h_weight += lw * v4; + grad_w_weight += lh * v4; + atomicAdd(grad_value+ptr4, w4*top_grad_value); + } + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + atomicAdd(grad_attn_weight, top_grad * val); + atomicAdd(grad_sampling_loc, width * grad_w_weight * top_grad_value); + atomicAdd(grad_sampling_loc + 1, height * grad_h_weight * top_grad_value); +} + + +template +__global__ void ms_deformable_im2col_gpu_kernel(const int n, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *data_col) +{ + CUDA_KERNEL_LOOP(index, n) + { + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + scalar_t *data_col_ptr = data_col + index; + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + scalar_t col = 0; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const scalar_t *data_value_ptr = data_value + (data_value_ptr_init_offset + level_start_id * qid_stride); + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + col += ms_deform_attn_im2col_bilinear(data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col) * weight; + } + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + } + } + *data_col_ptr = col; + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; + __shared__ scalar_t cache_grad_attn_weight[blockSize]; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + if (tid == 0) + { + scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; + int sid=2; + for (unsigned int tid = 1; tid < blockSize; ++tid) + { + _grad_w += cache_grad_sampling_loc[sid]; + _grad_h += cache_grad_sampling_loc[sid + 1]; + _grad_a += cache_grad_attn_weight[tid]; + sid += 2; + } + + + *grad_sampling_loc = _grad_w; + *(grad_sampling_loc + 1) = _grad_h; + *grad_attn_weight = _grad_a; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; + __shared__ scalar_t cache_grad_attn_weight[blockSize]; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockSize/2; s>0; s>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + } + __syncthreads(); + } + + if (tid == 0) + { + *grad_sampling_loc = cache_grad_sampling_loc[0]; + *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; + *grad_attn_weight = cache_grad_attn_weight[0]; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v1(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + if (tid == 0) + { + scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; + int sid=2; + for (unsigned int tid = 1; tid < blockDim.x; ++tid) + { + _grad_w += cache_grad_sampling_loc[sid]; + _grad_h += cache_grad_sampling_loc[sid + 1]; + _grad_a += cache_grad_attn_weight[tid]; + sid += 2; + } + + + *grad_sampling_loc = _grad_w; + *(grad_sampling_loc + 1) = _grad_h; + *grad_attn_weight = _grad_a; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + if (tid + (s << 1) < spre) + { + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; + } + } + __syncthreads(); + } + + if (tid == 0) + { + *grad_sampling_loc = cache_grad_sampling_loc[0]; + *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; + *grad_attn_weight = cache_grad_attn_weight[0]; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + if (tid + (s << 1) < spre) + { + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; + } + } + __syncthreads(); + } + + if (tid == 0) + { + atomicAdd(grad_sampling_loc, cache_grad_sampling_loc[0]); + atomicAdd(grad_sampling_loc + 1, cache_grad_sampling_loc[1]); + atomicAdd(grad_attn_weight, cache_grad_attn_weight[0]); + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_gm(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear_gm( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + grad_sampling_loc, grad_attn_weight); + } + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +void ms_deformable_im2col_cuda(cudaStream_t stream, + const scalar_t* data_value, + const int64_t* data_spatial_shapes, + const int64_t* data_level_start_index, + const scalar_t* data_sampling_loc, + const scalar_t* data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t* data_col) +{ + const int num_kernels = batch_size * num_query * num_heads * channels; + const int num_actual_kernels = batch_size * num_query * num_heads * channels; + const int num_threads = CUDA_NUM_THREADS; + ms_deformable_im2col_gpu_kernel + <<>>( + num_kernels, data_value, data_spatial_shapes, data_level_start_index, data_sampling_loc, data_attn_weight, + batch_size, spatial_size, num_heads, channels, num_levels, num_query, num_point, data_col); + + cudaError_t err = cudaGetLastError(); + if (err != cudaSuccess) + { + printf("error in ms_deformable_im2col_cuda: %s\n", cudaGetErrorString(err)); + } + +} + +template +void ms_deformable_col2im_cuda(cudaStream_t stream, + const scalar_t* grad_col, + const scalar_t* data_value, + const int64_t * data_spatial_shapes, + const int64_t * data_level_start_index, + const scalar_t * data_sampling_loc, + const scalar_t * data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t* grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int num_threads = (channels > CUDA_NUM_THREADS)?CUDA_NUM_THREADS:channels; + const int num_kernels = batch_size * num_query * num_heads * channels; + const int num_actual_kernels = batch_size * num_query * num_heads * channels; + if (channels > 1024) + { + if ((channels & 1023) == 0) + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + else + { + ms_deformable_col2im_gpu_kernel_gm + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + } + else{ + switch(channels) + { + case 1: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 2: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 4: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 8: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 16: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 32: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 64: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 128: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 256: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 512: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 1024: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + default: + if (channels < 64) + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + else + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + } + } + cudaError_t err = cudaGetLastError(); + if (err != cudaSuccess) + { + printf("error in ms_deformable_col2im_cuda: %s\n", cudaGetErrorString(err)); + } + +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.h b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.h new file mode 100644 index 0000000000000000000000000000000000000000..fbcf4543e66bb1162f42ce2ae57e1bac92243cb4 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_attn_cuda.h @@ -0,0 +1,29 @@ +/*! +************************************************************************************************** +* Deformable DETR +* Copyright (c) 2020 SenseTime. All Rights Reserved. +* Licensed under the Apache License, Version 2.0 [see LICENSE for details] +************************************************************************************************** +* Modified from https://github.com/chengdazhi/Deformable-Convolution-V2-PyTorch/tree/pytorch_1.0.0 +************************************************************************************************** +*/ + +#pragma once +#include + +at::Tensor ms_deform_attn_cuda_forward( + const at::Tensor &value, + const at::Tensor &spatial_shapes, + const at::Tensor &level_start_index, + const at::Tensor &sampling_loc, + const at::Tensor &attn_weight, + const int im2col_step); + +std::vector ms_deform_attn_cuda_backward( + const at::Tensor &value, + const at::Tensor &spatial_shapes, + const at::Tensor &level_start_index, + const at::Tensor &sampling_loc, + const at::Tensor &attn_weight, + const at::Tensor &grad_output, + const int im2col_step); diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_im2col_cuda.cuh b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_im2col_cuda.cuh new file mode 100644 index 0000000000000000000000000000000000000000..c0db0c88c9db2c09d7f601937ea0f6ac480913bf --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/deformable_detr/cuda/ms_deform_im2col_cuda.cuh @@ -0,0 +1,1327 @@ +/*! +************************************************************************** +* Deformable DETR +* Copyright (c) 2020 SenseTime. All Rights Reserved. +* Licensed under the Apache License, Version 2.0 [see LICENSE for details] +************************************************************************** +* Modified from DCN (https://github.com/msracver/Deformable-ConvNets) +* Copyright (c) 2018 Microsoft +************************************************************************** +*/ + +#include +#include +#include + +#include +#include + +#include + +#define CUDA_KERNEL_LOOP(i, n) \ + for (int i = blockIdx.x * blockDim.x + threadIdx.x; \ + i < (n); \ + i += blockDim.x * gridDim.x) + +const int CUDA_NUM_THREADS = 1024; +inline int GET_BLOCKS(const int N, const int num_threads) +{ + return (N + num_threads - 1) / num_threads; +} + + +template +__device__ scalar_t ms_deform_attn_im2col_bilinear(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + } + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + return val; +} + + +template +__device__ void ms_deform_attn_col2im_bilinear(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c, + const scalar_t &top_grad, + const scalar_t &attn_weight, + scalar_t* &grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + const scalar_t top_grad_value = top_grad * attn_weight; + scalar_t grad_h_weight = 0, grad_w_weight = 0; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + grad_h_weight -= hw * v1; + grad_w_weight -= hh * v1; + atomicAdd(grad_value+ptr1, w1*top_grad_value); + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + grad_h_weight -= lw * v2; + grad_w_weight += hh * v2; + atomicAdd(grad_value+ptr2, w2*top_grad_value); + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + grad_h_weight += hw * v3; + grad_w_weight -= lh * v3; + atomicAdd(grad_value+ptr3, w3*top_grad_value); + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + grad_h_weight += lw * v4; + grad_w_weight += lh * v4; + atomicAdd(grad_value+ptr4, w4*top_grad_value); + } + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + *grad_attn_weight = top_grad * val; + *grad_sampling_loc = width * grad_w_weight * top_grad_value; + *(grad_sampling_loc + 1) = height * grad_h_weight * top_grad_value; +} + + +template +__device__ void ms_deform_attn_col2im_bilinear_gm(const scalar_t* &bottom_data, + const int &height, const int &width, const int &nheads, const int &channels, + const scalar_t &h, const scalar_t &w, const int &m, const int &c, + const scalar_t &top_grad, + const scalar_t &attn_weight, + scalar_t* &grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int h_low = floor(h); + const int w_low = floor(w); + const int h_high = h_low + 1; + const int w_high = w_low + 1; + + const scalar_t lh = h - h_low; + const scalar_t lw = w - w_low; + const scalar_t hh = 1 - lh, hw = 1 - lw; + + const int w_stride = nheads * channels; + const int h_stride = width * w_stride; + const int h_low_ptr_offset = h_low * h_stride; + const int h_high_ptr_offset = h_low_ptr_offset + h_stride; + const int w_low_ptr_offset = w_low * w_stride; + const int w_high_ptr_offset = w_low_ptr_offset + w_stride; + const int base_ptr = m * channels + c; + + const scalar_t w1 = hh * hw, w2 = hh * lw, w3 = lh * hw, w4 = lh * lw; + const scalar_t top_grad_value = top_grad * attn_weight; + scalar_t grad_h_weight = 0, grad_w_weight = 0; + + scalar_t v1 = 0; + if (h_low >= 0 && w_low >= 0) + { + const int ptr1 = h_low_ptr_offset + w_low_ptr_offset + base_ptr; + v1 = bottom_data[ptr1]; + grad_h_weight -= hw * v1; + grad_w_weight -= hh * v1; + atomicAdd(grad_value+ptr1, w1*top_grad_value); + } + scalar_t v2 = 0; + if (h_low >= 0 && w_high <= width - 1) + { + const int ptr2 = h_low_ptr_offset + w_high_ptr_offset + base_ptr; + v2 = bottom_data[ptr2]; + grad_h_weight -= lw * v2; + grad_w_weight += hh * v2; + atomicAdd(grad_value+ptr2, w2*top_grad_value); + } + scalar_t v3 = 0; + if (h_high <= height - 1 && w_low >= 0) + { + const int ptr3 = h_high_ptr_offset + w_low_ptr_offset + base_ptr; + v3 = bottom_data[ptr3]; + grad_h_weight += hw * v3; + grad_w_weight -= lh * v3; + atomicAdd(grad_value+ptr3, w3*top_grad_value); + } + scalar_t v4 = 0; + if (h_high <= height - 1 && w_high <= width - 1) + { + const int ptr4 = h_high_ptr_offset + w_high_ptr_offset + base_ptr; + v4 = bottom_data[ptr4]; + grad_h_weight += lw * v4; + grad_w_weight += lh * v4; + atomicAdd(grad_value+ptr4, w4*top_grad_value); + } + + const scalar_t val = (w1 * v1 + w2 * v2 + w3 * v3 + w4 * v4); + atomicAdd(grad_attn_weight, top_grad * val); + atomicAdd(grad_sampling_loc, width * grad_w_weight * top_grad_value); + atomicAdd(grad_sampling_loc + 1, height * grad_h_weight * top_grad_value); +} + + +template +__global__ void ms_deformable_im2col_gpu_kernel(const int n, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *data_col) +{ + CUDA_KERNEL_LOOP(index, n) + { + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + scalar_t *data_col_ptr = data_col + index; + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + scalar_t col = 0; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const scalar_t *data_value_ptr = data_value + (data_value_ptr_init_offset + level_start_id * qid_stride); + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + col += ms_deform_attn_im2col_bilinear(data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col) * weight; + } + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + } + } + *data_col_ptr = col; + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; + __shared__ scalar_t cache_grad_attn_weight[blockSize]; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + if (tid == 0) + { + scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; + int sid=2; + for (unsigned int tid = 1; tid < blockSize; ++tid) + { + _grad_w += cache_grad_sampling_loc[sid]; + _grad_h += cache_grad_sampling_loc[sid + 1]; + _grad_a += cache_grad_attn_weight[tid]; + sid += 2; + } + + + *grad_sampling_loc = _grad_w; + *(grad_sampling_loc + 1) = _grad_h; + *grad_attn_weight = _grad_a; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + __shared__ scalar_t cache_grad_sampling_loc[blockSize * 2]; + __shared__ scalar_t cache_grad_attn_weight[blockSize]; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockSize/2; s>0; s>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + } + __syncthreads(); + } + + if (tid == 0) + { + *grad_sampling_loc = cache_grad_sampling_loc[0]; + *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; + *grad_attn_weight = cache_grad_attn_weight[0]; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v1(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + if (tid == 0) + { + scalar_t _grad_w=cache_grad_sampling_loc[0], _grad_h=cache_grad_sampling_loc[1], _grad_a=cache_grad_attn_weight[0]; + int sid=2; + for (unsigned int tid = 1; tid < blockDim.x; ++tid) + { + _grad_w += cache_grad_sampling_loc[sid]; + _grad_h += cache_grad_sampling_loc[sid + 1]; + _grad_a += cache_grad_attn_weight[tid]; + sid += 2; + } + + + *grad_sampling_loc = _grad_w; + *(grad_sampling_loc + 1) = _grad_h; + *grad_attn_weight = _grad_a; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + if (tid + (s << 1) < spre) + { + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; + } + } + __syncthreads(); + } + + if (tid == 0) + { + *grad_sampling_loc = cache_grad_sampling_loc[0]; + *(grad_sampling_loc + 1) = cache_grad_sampling_loc[1]; + *grad_attn_weight = cache_grad_attn_weight[0]; + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + +template +__global__ void ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + extern __shared__ int _s[]; + scalar_t* cache_grad_sampling_loc = (scalar_t*)_s; + scalar_t* cache_grad_attn_weight = cache_grad_sampling_loc + 2 * blockDim.x; + unsigned int tid = threadIdx.x; + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + *(cache_grad_sampling_loc+(threadIdx.x << 1)) = 0; + *(cache_grad_sampling_loc+((threadIdx.x << 1) + 1)) = 0; + *(cache_grad_attn_weight+threadIdx.x)=0; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + cache_grad_sampling_loc+(threadIdx.x << 1), cache_grad_attn_weight+threadIdx.x); + } + + __syncthreads(); + + for (unsigned int s=blockDim.x/2, spre=blockDim.x; s>0; s>>=1, spre>>=1) + { + if (tid < s) { + const unsigned int xid1 = tid << 1; + const unsigned int xid2 = (tid + s) << 1; + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + s]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1]; + if (tid + (s << 1) < spre) + { + cache_grad_attn_weight[tid] += cache_grad_attn_weight[tid + (s << 1)]; + cache_grad_sampling_loc[xid1] += cache_grad_sampling_loc[xid2 + (s << 1)]; + cache_grad_sampling_loc[xid1 + 1] += cache_grad_sampling_loc[xid2 + 1 + (s << 1)]; + } + } + __syncthreads(); + } + + if (tid == 0) + { + atomicAdd(grad_sampling_loc, cache_grad_sampling_loc[0]); + atomicAdd(grad_sampling_loc + 1, cache_grad_sampling_loc[1]); + atomicAdd(grad_attn_weight, cache_grad_attn_weight[0]); + } + __syncthreads(); + + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +__global__ void ms_deformable_col2im_gpu_kernel_gm(const int n, + const scalar_t *grad_col, + const scalar_t *data_value, + const int64_t *data_spatial_shapes, + const int64_t *data_level_start_index, + const scalar_t *data_sampling_loc, + const scalar_t *data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t *grad_value, + scalar_t *grad_sampling_loc, + scalar_t *grad_attn_weight) +{ + CUDA_KERNEL_LOOP(index, n) + { + int _temp = index; + const int c_col = _temp % channels; + _temp /= channels; + const int sampling_index = _temp; + const int m_col = _temp % num_heads; + _temp /= num_heads; + const int q_col = _temp % num_query; + _temp /= num_query; + const int b_col = _temp; + + const scalar_t top_grad = grad_col[index]; + + int data_weight_ptr = sampling_index * num_levels * num_point; + int data_loc_w_ptr = data_weight_ptr << 1; + const int grad_sampling_ptr = data_weight_ptr; + grad_sampling_loc += grad_sampling_ptr << 1; + grad_attn_weight += grad_sampling_ptr; + const int grad_weight_stride = 1; + const int grad_loc_stride = 2; + const int qid_stride = num_heads * channels; + const int data_value_ptr_init_offset = b_col * spatial_size * qid_stride; + + for (int l_col=0; l_col < num_levels; ++l_col) + { + const int level_start_id = data_level_start_index[l_col]; + const int spatial_h_ptr = l_col << 1; + const int spatial_h = data_spatial_shapes[spatial_h_ptr]; + const int spatial_w = data_spatial_shapes[spatial_h_ptr + 1]; + const int value_ptr_offset = data_value_ptr_init_offset + level_start_id * qid_stride; + const scalar_t *data_value_ptr = data_value + value_ptr_offset; + scalar_t *grad_value_ptr = grad_value + value_ptr_offset; + + for (int p_col=0; p_col < num_point; ++p_col) + { + const scalar_t loc_w = data_sampling_loc[data_loc_w_ptr]; + const scalar_t loc_h = data_sampling_loc[data_loc_w_ptr + 1]; + const scalar_t weight = data_attn_weight[data_weight_ptr]; + + const scalar_t h_im = loc_h * spatial_h - 0.5; + const scalar_t w_im = loc_w * spatial_w - 0.5; + if (h_im > -1 && w_im > -1 && h_im < spatial_h && w_im < spatial_w) + { + ms_deform_attn_col2im_bilinear_gm( + data_value_ptr, spatial_h, spatial_w, num_heads, channels, h_im, w_im, m_col, c_col, + top_grad, weight, grad_value_ptr, + grad_sampling_loc, grad_attn_weight); + } + data_weight_ptr += 1; + data_loc_w_ptr += 2; + grad_attn_weight += grad_weight_stride; + grad_sampling_loc += grad_loc_stride; + } + } + } +} + + +template +void ms_deformable_im2col_cuda(cudaStream_t stream, + const scalar_t* data_value, + const int64_t* data_spatial_shapes, + const int64_t* data_level_start_index, + const scalar_t* data_sampling_loc, + const scalar_t* data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t* data_col) +{ + const int num_kernels = batch_size * num_query * num_heads * channels; + const int num_actual_kernels = batch_size * num_query * num_heads * channels; + const int num_threads = CUDA_NUM_THREADS; + ms_deformable_im2col_gpu_kernel + <<>>( + num_kernels, data_value, data_spatial_shapes, data_level_start_index, data_sampling_loc, data_attn_weight, + batch_size, spatial_size, num_heads, channels, num_levels, num_query, num_point, data_col); + + cudaError_t err = cudaGetLastError(); + if (err != cudaSuccess) + { + printf("error in ms_deformable_im2col_cuda: %s\n", cudaGetErrorString(err)); + } + +} + +template +void ms_deformable_col2im_cuda(cudaStream_t stream, + const scalar_t* grad_col, + const scalar_t* data_value, + const int64_t * data_spatial_shapes, + const int64_t * data_level_start_index, + const scalar_t * data_sampling_loc, + const scalar_t * data_attn_weight, + const int batch_size, + const int spatial_size, + const int num_heads, + const int channels, + const int num_levels, + const int num_query, + const int num_point, + scalar_t* grad_value, + scalar_t* grad_sampling_loc, + scalar_t* grad_attn_weight) +{ + const int num_threads = (channels > CUDA_NUM_THREADS)?CUDA_NUM_THREADS:channels; + const int num_kernels = batch_size * num_query * num_heads * channels; + const int num_actual_kernels = batch_size * num_query * num_heads * channels; + if (channels > 1024) + { + if ((channels & 1023) == 0) + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v2_multi_blocks + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + else + { + ms_deformable_col2im_gpu_kernel_gm + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + } + else{ + switch(channels) + { + case 1: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 2: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 4: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 8: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 16: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 32: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 64: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 128: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 256: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 512: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + case 1024: + ms_deformable_col2im_gpu_kernel_shm_blocksize_aware_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + break; + default: + if (channels < 64) + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v1 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + else + { + ms_deformable_col2im_gpu_kernel_shm_reduce_v2 + <<>>( + num_kernels, + grad_col, + data_value, + data_spatial_shapes, + data_level_start_index, + data_sampling_loc, + data_attn_weight, + batch_size, + spatial_size, + num_heads, + channels, + num_levels, + num_query, + num_point, + grad_value, + grad_sampling_loc, + grad_attn_weight); + } + } + } + cudaError_t err = cudaGetLastError(); + if (err != cudaSuccess) + { + printf("error in ms_deformable_col2im_cuda: %s\n", cudaGetErrorString(err)); + } + +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_kernel.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_kernel.cu new file mode 100644 index 0000000000000000000000000000000000000000..87ed89052873813153786bd416a981d3e5279af9 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_kernel.cu @@ -0,0 +1,383 @@ +#include "cuda_kernel.h" + +////////////////////////////////////////////////////////////////////////////////////////////////// +////////////////////////////////////////////////////////////////////////////////////////////////// + +__global__ void index_max_cuda_kernel( + float *index_vals, // [batch_size, 32, num_block] + int *indices, // [batch_size, num_block] + float *max_vals, // [batch_size, A_num_block * 32] + float *max_vals_scatter, // [batch_size, 32, num_block] + long batch_size, + long A_num_block, + long B_num_block, + long num_block +) { + + long batch_idx = blockIdx.x; + + long thread_idx = threadIdx.x; + long num_thread = blockDim.x; + + extern __shared__ float buffer[]; + int *max_buffer = (int*)buffer; + + for (int i = 0; i < A_num_block * 32; i = i + num_thread) { + int idx = i + thread_idx; + if (idx < A_num_block * 32) { + max_buffer[idx] = -1e8; + } + } + __syncthreads(); + + int *indices_pt = &indices[batch_idx * num_block]; + float *index_vals_pt = &index_vals[batch_idx * num_block * 32]; + + for (int idx_start = 0; idx_start < 32 * num_block; idx_start = idx_start + num_thread) { + int idx = idx_start + thread_idx; + int A_block_idx = indices_pt[idx % num_block] / B_num_block; + atomicMax(&max_buffer[A_block_idx * 32 + idx / num_block], (int)(index_vals_pt[idx] * 1000)); + } + __syncthreads(); + + float *max_vals_pt = &max_vals[batch_idx * A_num_block * 32]; + for (int i = 0; i < A_num_block * 32; i = i + num_thread) { + int idx = i + thread_idx; + if (idx < A_num_block * 32) { + max_vals_pt[idx] = (float)max_buffer[idx] / 1000.; + } + } + + float *max_vals_scatter_pt = &max_vals_scatter[batch_idx * num_block * 32]; + for (int idx_start = 0; idx_start < 32 * num_block; idx_start = idx_start + num_thread) { + int idx = idx_start + thread_idx; + int A_block_idx = indices_pt[idx % num_block] / B_num_block; + max_vals_scatter_pt[idx] = (float)max_buffer[A_block_idx * 32 + idx / num_block] / 1000.; + } + +} + +__global__ void mm_to_sparse_cuda_kernel( + float *dense_A, // [batch_size, A_num_block, dim, 32] + float *dense_B, // [batch_size, B_num_block, dim, 32] + int *indices, // [batch_size, num_block] + float *sparse_C, // [batch_size, num_block, 32, 32] + long batch_size, + long A_num_block, + long B_num_block, + long dim, + long num_block +) { + + long batch_idx = blockIdx.y; + long block_idx = blockIdx.x * blockDim.y + threadIdx.y; + + long thread_idx = threadIdx.x; + + __shared__ float buffer[4096]; + float *A_buffer = &buffer[threadIdx.y * 1024]; // [2, 8, 32] + float *B_buffer = &buffer[threadIdx.y * 1024 + 512]; // [2, 8, 32] + + long batch_idx__block_idx = batch_idx * num_block + block_idx; + + long AB_block_idx = indices[batch_idx__block_idx]; + float *dense_A_pt = &dense_A[(batch_idx * A_num_block + AB_block_idx / B_num_block) * dim * 32]; + float *dense_B_pt = &dense_B[(batch_idx * B_num_block + AB_block_idx % B_num_block) * dim * 32]; + + int reg_1_idx = thread_idx / 8; // [0000000011111111222222223333333344444444555555556666666677777777] + int reg_2_idx = thread_idx % 8; // [0123456701234567012345670123456701234567012345670123456701234567] + + float reg_1[8]; + float reg_2[8]; + + float reg_array[16] = {0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0}; + + #pragma unroll + for (int i = 0; i < 4; i++) { + A_buffer[i * 64 + thread_idx] = dense_A_pt[i * 64 + thread_idx]; + B_buffer[i * 64 + thread_idx] = dense_B_pt[i * 64 + thread_idx]; + } + + __syncthreads(); + + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[i] = A_buffer[reg_1_idx * 4 + i]; + reg_2[i] = B_buffer[reg_2_idx * 4 + i]; + } + + for (int dim_stride = 1; dim_stride < (dim / 8); dim_stride++) { + + #pragma unroll + for (int i = 0; i < 4; i++) { + A_buffer[(dim_stride % 2) * 256 + i * 64 + thread_idx] = dense_A_pt[dim_stride * 256 + i * 64 + thread_idx]; + B_buffer[(dim_stride % 2) * 256 + i * 64 + thread_idx] = dense_B_pt[dim_stride * 256 + i * 64 + thread_idx]; + } + + #pragma unroll + for (int mini_dim_idx = 1; mini_dim_idx < 8; mini_dim_idx++) { + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[(mini_dim_idx % 2) * 4 + i] = A_buffer[((dim_stride - 1) % 2) * 256 + mini_dim_idx * 32 + reg_1_idx * 4 + i]; + reg_2[(mini_dim_idx % 2) * 4 + i] = B_buffer[((dim_stride - 1) % 2) * 256 + mini_dim_idx * 32 + reg_2_idx * 4 + i]; + } + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[((mini_dim_idx - 1) % 2) * 4 + i] * reg_2[((mini_dim_idx - 1) % 2) * 4 + j]; + } + } + } + + __syncthreads(); + + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[i] = A_buffer[(dim_stride % 2) * 256 + reg_1_idx * 4 + i]; + reg_2[i] = B_buffer[(dim_stride % 2) * 256 + reg_2_idx * 4 + i]; + } + + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[4 + i] * reg_2[4 + j]; + } + } + + } + + #pragma unroll + for (int mini_dim_idx = 1; mini_dim_idx < 8; mini_dim_idx++) { + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[(mini_dim_idx % 2) * 4 + i] = A_buffer[256 + mini_dim_idx * 32 + reg_1_idx * 4 + i]; + reg_2[(mini_dim_idx % 2) * 4 + i] = B_buffer[256 + mini_dim_idx * 32 + reg_2_idx * 4 + i]; + } + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[((mini_dim_idx - 1) % 2) * 4 + i] * reg_2[((mini_dim_idx - 1) % 2) * 4 + j]; + } + } + } + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[4 + i] * reg_2[4 + j]; + } + } + __syncthreads(); + + float *C_buffer = &buffer[threadIdx.y * 1024]; // [32, 32] + + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + C_buffer[(reg_2_idx * 4 + j) * 32 + reg_1_idx * 4 + i] = reg_array[i * 4 + j]; + } + } + __syncthreads(); + + float *sparse_C_pt = &sparse_C[batch_idx__block_idx * 1024]; + + #pragma unroll + for (int i = 0; i < 16; i++) { + sparse_C_pt[i * 64 + thread_idx] = C_buffer[i * 64 + thread_idx]; + } + +} + +__global__ void sparse_dense_mm_cuda_kernel( + float *sparse_A, // [batch_size, num_block, 32, 32] + int *indices, // [batch_size, num_block] + float *dense_B, // [batch_size, B_num_block, dim, 32] + float *dense_C, // [batch_size, A_num_block, dim, 32] + long batch_size, + long A_num_block, + long B_num_block, + long dim, + long num_block +) { + + long batch_idx = blockIdx.y; + long block_idx = blockIdx.x * blockDim.y + threadIdx.y; + + long thread_idx = threadIdx.x; + + __shared__ float buffer[6144]; + float *A_buffer = &buffer[threadIdx.y * 3072]; // [32, 32] + float *B_buffer = &buffer[threadIdx.y * 3072 + 1024]; // [32, 64] + + long batch_idx__block_idx = batch_idx * num_block + block_idx; + + float *sparse_A_pt = &sparse_A[batch_idx__block_idx * 1024]; + #pragma unroll + for (int i = 0; i < 8; i++) { + A_buffer[i * 128 + thread_idx] = sparse_A_pt[i * 128 + thread_idx]; + } + + long AB_block_idx = indices[batch_idx__block_idx]; + float *dense_B_pt = &dense_B[(batch_idx * B_num_block + AB_block_idx % B_num_block) * 32 * dim]; + float *dense_C_pt = &dense_C[(batch_idx * A_num_block + AB_block_idx / B_num_block) * 32 * dim]; + + // [0000000011111111222222223333333344444444555555556666666677777777] + // [0123456701234567012345670123456701234567012345670123456701234567] + int reg_1_idx = thread_idx / 8; + int reg_2_idx = thread_idx % 8; + + float reg_1[8]; + float reg_2[8]; + + float reg_array[16]; + + for (int dim_stride = 0; dim_stride < dim; dim_stride = dim_stride + 64) { + + #pragma unroll + for (int i = 0; i < 16; i++) { + B_buffer[i * 128 + thread_idx] = dense_B_pt[dim_stride * 32 + i * 128 + thread_idx]; + } + + #pragma unroll + for (int i = 0; i < 16; i++) { + reg_array[i] = 0; + } + + __syncthreads(); + + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[i] = B_buffer[(reg_1_idx * 4 + i) * 32]; + reg_2[i] = A_buffer[reg_2_idx * 4 + i]; + } + + #pragma unroll + for (int mini_dim_idx = 1; mini_dim_idx < 32; mini_dim_idx++) { + #pragma unroll + for (int i = 0; i < 4; i++) { + reg_1[(mini_dim_idx % 2) * 4 + i] = B_buffer[(reg_1_idx * 4 + i) * 32 + mini_dim_idx]; + reg_2[(mini_dim_idx % 2) * 4 + i] = A_buffer[mini_dim_idx * 32 + reg_2_idx * 4 + i]; + } + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[((mini_dim_idx - 1) % 2) * 4 + i] * reg_2[((mini_dim_idx - 1) % 2) * 4 + j]; + } + } + } + + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + reg_array[i * 4 + j] += reg_1[4 + i] * reg_2[4 + j]; + } + } + + __syncthreads(); + + float *C_buffer = &buffer[threadIdx.y * 3072 + 1024]; // [64, 32] + + #pragma unroll + for (int i = 0; i < 4; i++) { + #pragma unroll + for (int j = 0; j < 4; j++) { + C_buffer[(reg_1_idx * 4 + i) * 32 + reg_2_idx * 4 + j] = reg_array[i * 4 + j]; + } + } + __syncthreads(); + + #pragma unroll + for (int i = 0; i < 16; i++) { + atomicAdd(&dense_C_pt[dim_stride * 32 + i * 128 + thread_idx], C_buffer[i * 128 + thread_idx]); + } + __syncthreads(); + + } + +} + + +__global__ void reduce_sum_cuda_kernel( + float *sparse_A, // [batch_size, num_block, 32, 32] + int *indices, // [batch_size, num_block] + float *dense_C, // [batch_size, A_num_block, 32] + long batch_size, + long A_num_block, + long B_num_block, + long num_block +) { + + long batch_idx = blockIdx.y; + long block_idx = blockIdx.x * blockDim.y + threadIdx.y; + + long thread_idx = threadIdx.x; + + long batch_idx__block_idx = batch_idx * num_block + block_idx; + + long AB_block_idx = indices[batch_idx__block_idx]; + float *sparse_A_pt = &sparse_A[batch_idx__block_idx * 1024]; + + float reg_array[16]; + float value = 0; + + #pragma unroll + for (int i = 0; i < 8; i++) { + reg_array[i] = sparse_A_pt[i * 32 + thread_idx]; + } + #pragma unroll + for (int stride = 8; stride < 32; stride = stride + 8) { + #pragma unroll + for (int i = 0; i < 8; i++) { + reg_array[(stride + i) % 16] = sparse_A_pt[(stride + i) * 32 + thread_idx]; + } + #pragma unroll + for (int i = 0; i < 8; i++) { + value = value + reg_array[(stride - 8 + i) % 16]; + } + } + #pragma unroll + for (int i = 0; i < 8; i++) { + value = value + reg_array[8 + i]; + } + + float *dense_C_pt = &dense_C[(batch_idx * A_num_block + AB_block_idx / B_num_block) * 32]; + + atomicAdd(&dense_C_pt[thread_idx], value); + +} + +__global__ void scatter_cuda_kernel( + float *dense_A, // [batch_size, A_num_block, 32] + int *indices, // [batch_size, num_block] + float *sparse_C, // [batch_size, num_block, 32, 32] + long batch_size, + long A_num_block, + long B_num_block, + long num_block +) { + + long batch_idx = blockIdx.y; + long block_idx = blockIdx.x * blockDim.y + threadIdx.y; + + long thread_idx = threadIdx.x; + + long batch_idx__block_idx = batch_idx * num_block + block_idx; + + long AB_block_idx = indices[batch_idx__block_idx]; + float *dense_A_pt = &dense_A[(batch_idx * A_num_block + AB_block_idx / B_num_block) * 32]; + float *sparse_C_pt = &sparse_C[(batch_idx * num_block + block_idx) * 1024]; + + float value = dense_A_pt[thread_idx]; + + #pragma unroll + for (int i = 0; i < 32; i++) { + sparse_C_pt[i * 32 + thread_idx] = value; + } + +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_launch.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_launch.cu new file mode 100644 index 0000000000000000000000000000000000000000..ba2a0cacfe614e75e06d2dde80dc77a6e8a4ec1a --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/cuda_launch.cu @@ -0,0 +1,154 @@ +#include +#include +#include "cuda_launch.h" +#include "cuda_kernel.h" +#include + +////////////////////////////////////////////////////////////////////////////////////////////////// +////////////////////////////////////////////////////////////////////////////////////////////////// + +std::vector index_max_kernel( + at::Tensor index_vals, // [batch_size, 32, num_block] + at::Tensor indices, // [batch_size, num_block], + int A_num_block, + int B_num_block +) { + int batch_size = indices.size(0); + int num_block = indices.size(1); + + at::Tensor max_vals = at::zeros({batch_size, A_num_block * 32}, index_vals.options()); + at::Tensor max_vals_scatter = at::zeros({batch_size, 32, num_block}, index_vals.options()); + + dim3 threads(256); + dim3 blocks(batch_size); + int shared_mem = A_num_block * 32 * sizeof(float); + + index_max_cuda_kernel<<>>( + index_vals.data_ptr(), + indices.data_ptr(), + max_vals.data_ptr(), + max_vals_scatter.data_ptr(), + batch_size, + A_num_block, + B_num_block, + num_block + ); + + return {max_vals, max_vals_scatter}; +} + +at::Tensor mm_to_sparse_kernel( + at::Tensor dense_A, // [batch_size, A_num_block, dim, 32] + at::Tensor dense_B, // [batch_size, B_num_block, dim, 32] + at::Tensor indices // [batch_size, num_block] +) { + int batch_size = dense_A.size(0); + int A_num_block = dense_A.size(1); + int B_num_block = dense_B.size(1); + int dim = dense_A.size(2); + int num_block = indices.size(1); + + at::Tensor sparse_C = at::zeros({batch_size, num_block, 32, 32}, dense_A.options()); + + dim3 threads(64, 4); + dim3 blocks(num_block / 4, batch_size); + + mm_to_sparse_cuda_kernel<<>>( + dense_A.data_ptr(), + dense_B.data_ptr(), + indices.data_ptr(), + sparse_C.data_ptr(), + batch_size, + A_num_block, + B_num_block, + dim, + num_block + ); + + return sparse_C; +} + +at::Tensor sparse_dense_mm_kernel( + at::Tensor sparse_A, // [batch_size, num_block, 32, 32] + at::Tensor indices, // [batch_size, num_block] + at::Tensor dense_B, // [batch_size, B_num_block, dim, 32] + int A_num_block +) { + int batch_size = sparse_A.size(0); + int num_block = sparse_A.size(1); + int B_num_block = dense_B.size(1); + int dim = dense_B.size(2); + + at::Tensor dense_C = at::zeros({batch_size, A_num_block, dim, 32}, dense_B.options()); + + dim3 threads(128, 2); + dim3 blocks(num_block / 2, batch_size); + + sparse_dense_mm_cuda_kernel<<>>( + sparse_A.data_ptr(), + indices.data_ptr(), + dense_B.data_ptr(), + dense_C.data_ptr(), + batch_size, + A_num_block, + B_num_block, + dim, + num_block + ); + + return dense_C; +} + +at::Tensor reduce_sum_kernel( + at::Tensor sparse_A, // [batch_size, num_block, 32, 32] + at::Tensor indices, // [batch_size, num_block] + int A_num_block, + int B_num_block +) { + int batch_size = sparse_A.size(0); + int num_block = sparse_A.size(1); + + at::Tensor dense_C = at::zeros({batch_size, A_num_block, 32}, sparse_A.options()); + + dim3 threads(32, 4); + dim3 blocks(num_block / 4, batch_size); + + reduce_sum_cuda_kernel<<>>( + sparse_A.data_ptr(), + indices.data_ptr(), + dense_C.data_ptr(), + batch_size, + A_num_block, + B_num_block, + num_block + ); + + return dense_C; +} + +at::Tensor scatter_kernel( + at::Tensor dense_A, // [batch_size, A_num_block, 32] + at::Tensor indices, // [batch_size, num_block] + int B_num_block +) { + int batch_size = dense_A.size(0); + int A_num_block = dense_A.size(1); + int num_block = indices.size(1); + + at::Tensor sparse_C = at::zeros({batch_size, num_block, 32, 32}, dense_A.options()); + + dim3 threads(32, 4); + dim3 blocks(num_block / 4, batch_size); + + scatter_cuda_kernel<<>>( + dense_A.data_ptr(), + indices.data_ptr(), + sparse_C.data_ptr(), + batch_size, + A_num_block, + B_num_block, + num_block + ); + + return sparse_C; +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/torch_extension.cpp b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/torch_extension.cpp new file mode 100644 index 0000000000000000000000000000000000000000..60c9262b779270a6e95ae54f53a67daa6d740a9e --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/mra/torch_extension.cpp @@ -0,0 +1,78 @@ +#include +#include +#include "cuda_launch.h" +#include + +std::vector index_max( + at::Tensor index_vals, + at::Tensor indices, + int A_num_block, + int B_num_block +) { + return index_max_kernel( + index_vals, + indices, + A_num_block, + B_num_block + ); +} + +at::Tensor mm_to_sparse( + at::Tensor dense_A, + at::Tensor dense_B, + at::Tensor indices +) { + return mm_to_sparse_kernel( + dense_A, + dense_B, + indices + ); +} + +at::Tensor sparse_dense_mm( + at::Tensor sparse_A, + at::Tensor indices, + at::Tensor dense_B, + int A_num_block +) { + return sparse_dense_mm_kernel( + sparse_A, + indices, + dense_B, + A_num_block + ); +} + +at::Tensor reduce_sum( + at::Tensor sparse_A, + at::Tensor indices, + int A_num_block, + int B_num_block +) { + return reduce_sum_kernel( + sparse_A, + indices, + A_num_block, + B_num_block + ); +} + +at::Tensor scatter( + at::Tensor dense_A, + at::Tensor indices, + int B_num_block +) { + return scatter_kernel( + dense_A, + indices, + B_num_block + ); +} + +PYBIND11_MODULE(TORCH_EXTENSION_NAME, m) { + m.def("index_max", &index_max, "index_max (CUDA)"); + m.def("mm_to_sparse", &mm_to_sparse, "mm_to_sparse (CUDA)"); + m.def("sparse_dense_mm", &sparse_dense_mm, "sparse_dense_mm (CUDA)"); + m.def("reduce_sum", &reduce_sum, "reduce_sum (CUDA)"); + m.def("scatter", &scatter, "scatter (CUDA)"); +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda.cu new file mode 100644 index 0000000000000000000000000000000000000000..571d5a8a8307e95aac689eb3c9333d1ad350c7de --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda.cu @@ -0,0 +1,187 @@ +#include +#include + +#define MIN_VALUE (-1e38) + +template +__global__ void kernel_forward( + const int B, const int T, const int C, const F *__restrict__ const _w, const F *__restrict__ const _u, + const F *__restrict__ const _k, const F *__restrict__ const _v, F *__restrict__ const _y +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset = _b * T * C + _c; + + F u = _u[_c]; + F w = _w[_c]; + const F *__restrict__ const k = _k + _offset; + const F *__restrict__ const v = _v + _offset; + F *__restrict__ const y = _y + _offset; + + // aa and bb are running sums divided by exp(pp) (to avoid overflow) + F aa = 0, bb = 0, pp = MIN_VALUE; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const F kk = k[ii]; + const F vv = v[ii]; + + F ww = u + kk; + F p = max(pp, ww); + F e1 = exp(pp - p); + F e2 = exp(ww - p); + y[ii] = (e1 * aa + e2 * vv) / (e1 * bb + e2); + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } +} + +template +__global__ void kernel_forward_with_state( + const int B, const int T, const int C, const F *__restrict__ const _w, const F *__restrict__ const _u, + const F *__restrict__ const _k, const F *__restrict__ const _v, F *__restrict__ const _y, F *__restrict__ const _s +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset_s = _b * C * 3 + _c * 3; + const int _offset = _b * T * C + _c; + + F u = _u[_c]; + F w = _w[_c]; + const F *__restrict__ const k = _k + _offset; + const F *__restrict__ const v = _v + _offset; + F *__restrict__ const y = _y + _offset; + F *__restrict__ const s = _s + _offset_s; + + // aa and bb are running sums divided by exp(pp) (to avoid overflow) + F aa = s[0], bb = s[1], pp = s[2]; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const F kk = k[ii]; + const F vv = v[ii]; + + F ww = u + kk; + F p = max(pp, ww); + F e1 = exp(pp - p); + F e2 = exp(ww - p); + y[ii] = (e1 * aa + e2 * vv) / (e1 * bb + e2); + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } + s[0] = aa; + s[1] = bb; + s[2] = pp; +} + +template +__global__ void kernel_backward( + const int B, const int T, const int C, const F *__restrict__ const _w, const F *__restrict__ const _u, + const F *__restrict__ const _k, const F *__restrict__ const _v, const F *__restrict__ const _y, + const F *__restrict__ const _gy, F *__restrict__ const _gw, F *__restrict__ const _gu, F *__restrict__ const _gk, + F *__restrict__ const _gv +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset = _b * T * C + _c; + + F u = _u[_c]; + F w = _w[_c]; + const F *__restrict__ const k = _k + _offset; + const F *__restrict__ const v = _v + _offset; + const F *__restrict__ const y = _y + _offset; + const F *__restrict__ const gy = _gy + _offset; + F *__restrict__ const gk = _gk + _offset; + F *__restrict__ const gv = _gv + _offset; + + F q[Tmax], r[Tmax]; + + F gw = 0, gu = 0, aa = 0, bb = 0, ga = 0, gb = 0, pp = MIN_VALUE; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const F kk = k[ii]; + const F vv = v[ii]; + const F yy = y[ii]; + + F ww = u + kk; + F p = max(pp, ww); + F e1 = exp(pp - p); + F e2 = exp(ww - p); + const F qq = gy[ii] / (e1 * bb + e2); + gw += (ga - gb * yy) * e1 * qq; + gu += (vv - yy) * e2 * qq; + q[i] = qq; + r[i] = ww - p; + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + ga = e1 * (aa + ga); + gb = e1 * (bb + gb); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } + const int _offsetBC = _b * C + _c; + _gw[_offsetBC] = gw * _w[_c]; // multiply by w because of w -> -exp(w) in python forward() + _gu[_offsetBC] = gu; + + aa = 0, bb = 0, pp = MIN_VALUE; + for (int i = T - 1; i >= 0; i--) { + const int ii = i * C; + const F kk = k[ii]; + const F vv = v[ii]; + const F yy = y[ii]; + const F qq = q[i]; + const F rr = r[i]; + + F e1 = qq * exp(rr); + F e2 = exp(kk + pp); + gk[ii] = e1 * (vv - yy) + e2 * (aa * vv + bb); + gv[ii] = e1 + e2 * aa; + + const F ww = w + pp; + const F www = rr - u - kk; + const F p = max(ww, www); + e1 = exp(ww - p); + e2 = qq * exp(www - p); + aa = e1 * aa + e2; + bb = e1 * bb - e2 * yy; + pp = p; + } +} + +void cuda_forward(int B, int T, int C, float *w, float *u, float *k, float *v, float *y) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_forward<<>>(B, T, C, w, u, k, v, y); +} + +void cuda_forward_with_state(int B, int T, int C, float *w, float *u, float *k, float *v, float *y, float *s) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_forward_with_state<<>>(B, T, C, w, u, k, v, y, s); +} + +void cuda_backward(int B, int T, int C, float *w, float *u, float *k, float *v, float *y, float *gy, float *gw, float *gu, float *gk, float *gv) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_backward<<>>(B, T, C, w, u, k, v, y, gy, gw, gu, gk, gv); +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda_bf16.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda_bf16.cu new file mode 100644 index 0000000000000000000000000000000000000000..042cb4aba1db98be5916aea1de86a7fed0b6510d --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/rwkv/wkv_cuda_bf16.cu @@ -0,0 +1,186 @@ +#include +#include +#include "ATen/ATen.h" +#define MIN_VALUE (-1e38) +typedef at::BFloat16 bf16; + +__global__ void kernel_forward_bf16( + const int B, const int T, const int C, const float *__restrict__ const _w, const bf16 *__restrict__ const _u, + const bf16 *__restrict__ const _k, const bf16 *__restrict__ const _v, bf16 *__restrict__ const _y +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset = _b * T * C + _c; + + float u = float(_u[_c]); + float w = _w[_c]; + const bf16 *__restrict__ const k = _k + _offset; + const bf16 *__restrict__ const v = _v + _offset; + bf16 *__restrict__ const y = _y + _offset; + + // aa and bb are running sums divided by exp(pp) (to avoid overflow) + float aa = 0, bb = 0, pp = MIN_VALUE; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const float kk = float(k[ii]); + const float vv = float(v[ii]); + + float ww = u + kk; + float p = max(pp, ww); + float e1 = exp(pp - p); + float e2 = exp(ww - p); + y[ii] = bf16((e1 * aa + e2 * vv) / (e1 * bb + e2)); + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } +} + +__global__ void kernel_forward_with_state_bf16( + const int B, const int T, const int C, const float *__restrict__ const _w, const bf16 *__restrict__ const _u, + const bf16 *__restrict__ const _k, const bf16 *__restrict__ const _v, bf16 *__restrict__ const _y, + float *__restrict__ const _s +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset_s = _b * C * 3 + _c * 3; + const int _offset = _b * T * C + _c; + + float u = float(_u[_c]); + float w = _w[_c]; + const bf16 *__restrict__ const k = _k + _offset; + const bf16 *__restrict__ const v = _v + _offset; + bf16 *__restrict__ const y = _y + _offset; + float *__restrict__ const s = _s + _offset_s; + + // aa and bb are running sums divided by exp(pp) (to avoid overflow) + float aa = s[0], bb = s[1], pp = s[2]; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const float kk = float(k[ii]); + const float vv = float(v[ii]); + + float ww = u + kk; + float p = max(pp, ww); + float e1 = exp(pp - p); + float e2 = exp(ww - p); + y[ii] = bf16(e1 * aa + e2 * vv) / (e1 * bb + e2); + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } + s[0] = aa; + s[1] = bb; + s[2] = pp; +} + +__global__ void kernel_backward_bf16( + const int B, const int T, const int C, const float *__restrict__ const _w, const bf16 *__restrict__ const _u, + const bf16 *__restrict__ const _k, const bf16 *__restrict__ const _v, const bf16 *__restrict__ const _y, + const bf16 *__restrict__ const _gy, bf16 *__restrict__ const _gw, bf16 *__restrict__ const _gu, + bf16 *__restrict__ const _gk, bf16 *__restrict__ const _gv +) { + const int idx = blockIdx.x * blockDim.x + threadIdx.x; + const int _b = idx / C; + const int _c = idx % C; + const int _offset = _b * T * C + _c; + + float u = float(_u[_c]); + float w = _w[_c]; + const bf16 *__restrict__ const k = _k + _offset; + const bf16 *__restrict__ const v = _v + _offset; + const bf16 *__restrict__ const y = _y + _offset; + const bf16 *__restrict__ const gy = _gy + _offset; + bf16 *__restrict__ const gk = _gk + _offset; + bf16 *__restrict__ const gv = _gv + _offset; + + float q[Tmax], r[Tmax]; + + float gw = 0, gu = 0, aa = 0, bb = 0, ga = 0, gb = 0, pp = MIN_VALUE; + for (int i = 0; i < T; i++) { + const int ii = i * C; + const float kk = float(k[ii]); + const float vv = float(v[ii]); + const float yy = float(y[ii]); + + float ww = u + kk; + float p = max(pp, ww); + float e1 = exp(pp - p); + float e2 = exp(ww - p); + const float qq = float(gy[ii]) / (e1 * bb + e2); + gw += (ga - gb * yy) * e1 * qq; + gu += (vv - yy) * e2 * qq; + q[i] = qq; + r[i] = ww - p; + + ww = w + pp; + p = max(ww, kk); + e1 = exp(ww - p); + e2 = exp(kk - p); + ga = e1 * (aa + ga); + gb = e1 * (bb + gb); + aa = e1 * aa + e2 * vv; + bb = e1 * bb + e2; + pp = p; + } + const int _offsetBC = _b * C + _c; + _gw[_offsetBC] = bf16(gw * _w[_c]); // multiply by w because of w -> -exp(w) in python forward() + _gu[_offsetBC] = bf16(gu); + + aa = 0, bb = 0, pp = MIN_VALUE; + for (int i = T - 1; i >= 0; i--) { + const int ii = i * C; + const float kk = float(k[ii]); + const float vv = float(v[ii]); + const float yy = float(y[ii]); + const float qq = q[i]; + const float rr = r[i]; + + float e1 = qq * exp(rr); + float e2 = exp(kk + pp); + gk[ii] = bf16(e1 * (vv - yy) + e2 * (aa * vv + bb)); + gv[ii] = bf16(e1 + e2 * aa); + + const float ww = w + pp; + const float www = rr - u - kk; + const float p = max(ww, www); + e1 = exp(ww - p); + e2 = qq * exp(www - p); + aa = e1 * aa + e2; + bb = e1 * bb - e2 * yy; + pp = p; + } +} + +void cuda_forward_bf16(int B, int T, int C, float *w, bf16 *u, bf16 *k, bf16 *v, bf16 *y) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_forward_bf16<<>>(B, T, C, w, u, k, v, y); +} + +void cuda_forward_with_state_bf16(int B, int T, int C, float *w, bf16 *u, bf16 *k, bf16 *v, bf16 *y, float *s) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_forward_with_state_bf16<<>>(B, T, C, w, u, k, v, y, s); +} + +void cuda_backward_bf16(int B, int T, int C, float *w, bf16 *u, bf16 *k, bf16 *v, bf16 *y, bf16 *gy, bf16 *gw, bf16 *gu, bf16 *gk, bf16 *gv) { + dim3 threadsPerBlock( min(C, 32) ); // requires --maxrregcount 60 for optimal performance + assert(B * C % threadsPerBlock.x == 0); + dim3 numBlocks(B * C / threadsPerBlock.x); + kernel_backward_bf16<<>>(B, T, C, w, u, k, v, y, gy, gw, gu, gk, gv); +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common.h b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common.h new file mode 100644 index 0000000000000000000000000000000000000000..e5085c88dd3ea9a12eec264a8c48946bf2b80b23 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common.h @@ -0,0 +1,10 @@ + +#define min(a, b) ((a)<(b)?(a):(b)) +#define max(a, b) ((a)>(b)?(a):(b)) +#define ceil_divide(a, b) ((a)/(b)+((a)%(b)!=0)) +#define select(cond, a, b) ((cond)?(a):(b)) +#define PI 3.141592 +#define EPSILON 1e-8 +#define MAX_VAL 1e12 +#define MIN_VAL -1e12 +#define EMPTY_VALUE -1 diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda.h b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda.h new file mode 100644 index 0000000000000000000000000000000000000000..97030870649a2fdac58cb26cf966e8f5c8cc7909 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda.h @@ -0,0 +1,9 @@ + +#define MAX_THREADS_PER_BLOCK 1024 +#define OPTIMAL_THREADS_PER_BLOCK 256 +#define WARP_SIZE 32 +#define MAX_NUM_BLOCK_X 2147483647 +#define MAX_NUM_BLOCK_Y 65535 +#define MAX_NUM_BLOCK_Z 65535 +#define MAX_SHARED_MEM_PER_BLOCK 48000 +#define FULL_MASK 0xffffffff diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda_device.h b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda_device.h new file mode 100644 index 0000000000000000000000000000000000000000..6674f93afdc25ab35c5d83881d00028bcf2989fc --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/common_cuda_device.h @@ -0,0 +1,79 @@ + +#include "common.h" + +template +__device__ int set_insert(T *set, int set_size, T value) { + int slot = value % set_size; + int start_slot = slot; + while (true) { + T prev = atomicCAS(&set[slot], EMPTY_VALUE, value); + if (prev == EMPTY_VALUE || prev == value) { + return slot; + } + slot = (slot + 1) % set_size; + if (slot == start_slot) { + return -1; + } + } + return -1; +} + +template +__device__ int set_lookup(T *set, int set_size, T value) { + int slot = value % set_size; + int start_slot = slot; + while (true) { + if (set[slot] == value) { + return slot; + } + slot = (slot + 1) % set_size; + if (slot == start_slot) { + return -1; + } + } + return -1; +} + +template +__device__ void init_buffer(T init_value, T *buffer, int buffer_size, int num_threads, int thread_id) { + __syncthreads(); + for (int i = 0; i < buffer_size; i = i + num_threads) { + int offset_idx = i + thread_id; + if (offset_idx < buffer_size) { + buffer[offset_idx] = init_value; + } + } + __syncthreads(); +} + +template +__device__ void copy_data(T *src_pt, T *dist_pt, int data_length, int num_threads, int thread_id) { + __syncthreads(); + for (int i = 0; i < data_length; i = i + num_threads) { + int offset_idx = i + thread_id; + if (offset_idx < data_length) { + dist_pt[offset_idx] = src_pt[offset_idx]; + } + } + __syncthreads(); +} + +template +__device__ void init_buffer_nonblocking(T init_value, T *buffer, int buffer_size, int num_threads, int thread_id) { + for (int i = 0; i < buffer_size; i = i + num_threads) { + int offset_idx = i + thread_id; + if (offset_idx < buffer_size) { + buffer[offset_idx] = init_value; + } + } +} + +template +__device__ void copy_data_nonblocking(T *src_pt, T *dist_pt, int data_length, int num_threads, int thread_id) { + for (int i = 0; i < data_length; i = i + num_threads) { + int offset_idx = i + thread_id; + if (offset_idx < data_length) { + dist_pt[offset_idx] = src_pt[offset_idx]; + } + } +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation.cu new file mode 100644 index 0000000000000000000000000000000000000000..c6b13e6cb5f53c9c62e51d2c399a14d14dab7037 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation.cu @@ -0,0 +1,588 @@ +// File from https://github.com/mlpen/YOSO/blob/main/encoders/backbones/efficient_attentions/yoso/yoso_v1/cuda/fast_lsh_cumulation.cu + +#include +#include +#include "fast_lsh_cumulation.h" +#include "fast_lsh_cumulation_cuda.h" +#include "common_cuda.h" +#include "common.h" +#include +////////////////////////////////////////////////////////////////////////////////////////////////// +////////////////////////////////////////////////////////////////////////////////////////////////// + +std::vector fast_hash_ver1_kernel( + at::Tensor query_mask, + at::Tensor query_vector, + at::Tensor key_mask, + at::Tensor key_vector, + int num_hash_f, + int hash_code_len, + bool use_cuda +) { + + int batch_size = query_vector.size(0); + int num_query = query_vector.size(1); + int num_key = key_vector.size(1); + int vector_dim = query_vector.size(2); + + int num_hash_per_part = vector_dim / hash_code_len; + int num_part = max(1, ceil_divide(num_hash_f, num_hash_per_part)); + + at::Tensor Dmat = 2 * at::randint(0, 2, {batch_size, 3, num_part, vector_dim}, query_mask.options()) - 1; + at::Tensor query_hash_code = at::zeros({batch_size, num_query, num_hash_f}, query_mask.options()); + at::Tensor key_hash_code = at::zeros({batch_size, num_key, num_hash_f}, key_mask.options()); + + int *query_mask_ptr = query_mask.data_ptr(); + float *query_vector_ptr = query_vector.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + float *key_vector_ptr = key_vector.data_ptr(); + + int *Dmat_ptr = Dmat.data_ptr(); + + int *query_hash_code_ptr = query_hash_code.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + + if (use_cuda) { + { + dim3 threads(vector_dim); + dim3 blocks(num_part, num_query, batch_size); + int shared_mem = vector_dim * sizeof(float); + fast_hash_ver1_cuda_kernel<<>>( + query_mask_ptr, + query_vector_ptr, + Dmat_ptr, + query_hash_code_ptr, + batch_size, + num_query, + vector_dim, + num_part, + num_hash_f, + hash_code_len + ); + } + { + dim3 threads(vector_dim); + dim3 blocks(num_part, num_key, batch_size); + int shared_mem = vector_dim * sizeof(float); + fast_hash_ver1_cuda_kernel<<>>( + key_mask_ptr, + key_vector_ptr, + Dmat_ptr, + key_hash_code_ptr, + batch_size, + num_key, + vector_dim, + num_part, + num_hash_f, + hash_code_len + ); + } + } + + return {query_hash_code, key_hash_code}; + +} + +at::Tensor lsh_cumulation_ver1_kernel( + at::Tensor query_mask, + at::Tensor query_hash_code, + at::Tensor key_mask, + at::Tensor key_hash_code, + at::Tensor value, + int hashtable_capacity, + bool use_cuda +) { + + int batch_size = query_hash_code.size(0); + int num_hash_f = query_hash_code.size(2); + + int num_query = query_hash_code.size(1); + int num_key = key_hash_code.size(1); + int value_dim = value.size(2); + + at::Tensor hashtable_value = at::empty({batch_size, num_hash_f, hashtable_capacity, WARP_SIZE}, value.options()); + at::Tensor cumulation_value = at::zeros({batch_size, num_query, value_dim}, value.options()); + + if (use_cuda) { + int threads_x = WARP_SIZE; + int threads_y = OPTIMAL_THREADS_PER_BLOCK / WARP_SIZE; + int block_x_step1 = num_key / threads_y; + int block_x_step2 = num_query / threads_y; + int block_y = batch_size; + + dim3 threads(threads_x, threads_y); + dim3 blocks_step1(block_x_step1, block_y); + dim3 blocks_step2(block_x_step2, block_y); + + int *query_mask_ptr = query_mask.data_ptr(); + int *query_hash_code_ptr = query_hash_code.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + float *value_ptr = value.data_ptr(); + float *hashtable_value_ptr = hashtable_value.data_ptr(); + float *cumulation_value_ptr = cumulation_value.data_ptr(); + + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + + cudaMemset(hashtable_value_ptr, 0, (batch_size * num_hash_f * hashtable_capacity * WARP_SIZE) * sizeof(float)); + + lsh_cumulation_ver1_step1_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + value_ptr, + hashtable_value_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key, + value_dim, + value_offset + ); + + lsh_cumulation_ver1_step2_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + hashtable_value_ptr, + cumulation_value_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query, + value_dim, + value_offset + ); + } + + } + + return cumulation_value; + +} + +at::Tensor lsh_weighted_cumulation_ver1_kernel( + at::Tensor query_mask, + at::Tensor query_hash_code, + at::Tensor query_weight, + at::Tensor key_mask, + at::Tensor key_hash_code, + at::Tensor key_weight, + at::Tensor value, + int hashtable_capacity, + bool use_cuda +) { + + int batch_size = query_hash_code.size(0); + int num_hash_f = query_hash_code.size(2); + + int num_query = query_hash_code.size(1); + int num_key = key_hash_code.size(1); + int value_dim = value.size(2); + int weight_dim = query_weight.size(2); + + at::Tensor hashtable_value = at::zeros({batch_size, num_hash_f, hashtable_capacity, WARP_SIZE}, value.options()); + at::Tensor cumulation_value = at::zeros({batch_size, num_query, value_dim}, value.options()); + + if (use_cuda) { + int threads_x = WARP_SIZE; + int threads_y = OPTIMAL_THREADS_PER_BLOCK / WARP_SIZE; + int block_x_step1 = num_key / threads_y; + int block_x_step2 = num_query / threads_y; + int block_y = batch_size; + + dim3 threads(threads_x, threads_y); + dim3 blocks_step1(block_x_step1, block_y); + dim3 blocks_step2(block_x_step2, block_y); + + int *query_mask_ptr = query_mask.data_ptr(); + int *query_hash_code_ptr = query_hash_code.data_ptr(); + float *query_weight_ptr = query_weight.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + float *key_weight_ptr = key_weight.data_ptr(); + float *value_ptr = value.data_ptr(); + float *hashtable_value_ptr = hashtable_value.data_ptr(); + float *cumulation_value_ptr = cumulation_value.data_ptr(); + + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + for (int weight_idx = 0; weight_idx < weight_dim; weight_idx++) { + + cudaMemset(hashtable_value_ptr, 0, (batch_size * num_hash_f * hashtable_capacity * WARP_SIZE) * sizeof(float)); + + lsh_weighted_cumulation_ver1_step1_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + key_weight_ptr, + value_ptr, + hashtable_value_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key, + value_dim, + weight_dim, + value_offset, + weight_idx + ); + + lsh_weighted_cumulation_ver1_step2_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + query_weight_ptr, + hashtable_value_ptr, + cumulation_value_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query, + value_dim, + weight_dim, + value_offset, + weight_idx + ); + } + } + + } + + return cumulation_value; + +} + +at::Tensor lsh_weighted_cumulation_ver2_kernel( + at::Tensor query_mask, + at::Tensor query_hash_code, + at::Tensor query_weight, + at::Tensor key_mask, + at::Tensor key_hash_code, + at::Tensor key_weight, + at::Tensor value, + int hashtable_capacity, + bool use_cuda +) { + + int batch_size = query_hash_code.size(0); + int num_hash_f = query_hash_code.size(2); + + int num_query = query_hash_code.size(1); + int num_key = key_hash_code.size(1); + int value_dim = value.size(2); + int weight_dim = query_weight.size(2); + + at::Tensor count_sort_table = at::zeros({batch_size, num_hash_f, hashtable_capacity}, query_hash_code.options()); + at::Tensor key_sorted_idxes = at::zeros({batch_size, num_hash_f, num_key}, query_hash_code.options()); + at::Tensor query_info = at::zeros({batch_size, num_query, 2, num_hash_f}, query_hash_code.options()); + at::Tensor cumulation_value = at::zeros({batch_size, num_query, value_dim}, value.options()); + + if (use_cuda) { + + int *query_mask_ptr = query_mask.data_ptr(); + int *query_hash_code_ptr = query_hash_code.data_ptr(); + float *query_weight_ptr = query_weight.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + float *key_weight_ptr = key_weight.data_ptr(); + float *value_ptr = value.data_ptr(); + + int *count_sort_table_ptr = count_sort_table.data_ptr(); + int *key_sorted_idxes_ptr = key_sorted_idxes.data_ptr(); + int *query_info_ptr = query_info.data_ptr(); + + float *cumulation_value_ptr = cumulation_value.data_ptr(); + + { + dim3 threads_step13(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks_step13(num_key / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + dim3 threads_step2(min(hashtable_capacity, OPTIMAL_THREADS_PER_BLOCK)); + dim3 blocks_step2(num_hash_f, batch_size); + int shared_mem = hashtable_capacity * sizeof(float); + count_sort_step1_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key + ); + count_sort_step2_cuda_kernel<<>>( + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity + ); + count_sort_step3_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + count_sort_table_ptr, + key_sorted_idxes_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key + ); + } + { + dim3 threads(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks(num_query / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + extract_query_info_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + count_sort_table_ptr, + query_info_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query + ); + } + { + dim3 threads(WARP_SIZE, OPTIMAL_THREADS_PER_BLOCK / WARP_SIZE); + dim3 blocks(num_query, num_hash_f, batch_size); + int shared_mem = (weight_dim + WARP_SIZE) * sizeof(float); + lsh_weighted_cumulation_ver2_step2_cuda_kernel<<>>( + query_mask_ptr, + query_info_ptr, + key_sorted_idxes_ptr, + query_weight_ptr, + key_weight_ptr, + value_ptr, + cumulation_value_ptr, + batch_size, + num_hash_f, + num_query, + num_key, + value_dim, + weight_dim + ); + } + } + + return cumulation_value; + +} + +at::Tensor lsh_weighted_cumulation_ver3_kernel( + at::Tensor query_mask, + at::Tensor query_hash_code, + at::Tensor query_weight, + at::Tensor key_mask, + at::Tensor key_hash_code, + at::Tensor key_weight, + at::Tensor value, + int hashtable_capacity, + bool use_cuda +) { + + int batch_size = query_hash_code.size(0); + int num_hash_f = query_hash_code.size(2); + + int num_query = query_hash_code.size(1); + int num_key = key_hash_code.size(1); + int value_dim = value.size(2); + int weight_dim = query_weight.size(2); + + at::Tensor count_sort_table = at::zeros({batch_size, num_hash_f, hashtable_capacity}, query_hash_code.options()); + at::Tensor query_sorted_idxes = at::zeros({batch_size, num_hash_f, num_query}, query_hash_code.options()); + at::Tensor key_info = at::zeros({batch_size, num_key, 2, num_hash_f}, query_hash_code.options()); + at::Tensor cumulation_value = at::zeros({batch_size, num_query, value_dim}, value.options()); + + if (use_cuda) { + + int *query_mask_ptr = query_mask.data_ptr(); + int *query_hash_code_ptr = query_hash_code.data_ptr(); + float *query_weight_ptr = query_weight.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + float *key_weight_ptr = key_weight.data_ptr(); + float *value_ptr = value.data_ptr(); + + int *count_sort_table_ptr = count_sort_table.data_ptr(); + int *query_sorted_idxes_ptr = query_sorted_idxes.data_ptr(); + int *key_info_ptr = key_info.data_ptr(); + + float *cumulation_value_ptr = cumulation_value.data_ptr(); + + { + dim3 threads_step13(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks_step13(num_query / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + dim3 threads_step2(min(hashtable_capacity, OPTIMAL_THREADS_PER_BLOCK)); + dim3 blocks_step2(num_hash_f, batch_size); + int shared_mem = hashtable_capacity * sizeof(float); + count_sort_step1_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query + ); + count_sort_step2_cuda_kernel<<>>( + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity + ); + count_sort_step3_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + count_sort_table_ptr, + query_sorted_idxes_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query + ); + } + { + dim3 threads(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks(num_key / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + extract_query_info_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + count_sort_table_ptr, + key_info_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key + ); + } + { + dim3 threads(WARP_SIZE, OPTIMAL_THREADS_PER_BLOCK / WARP_SIZE); + dim3 blocks(num_key, num_hash_f, batch_size); + int shared_mem = (weight_dim + value_dim + WARP_SIZE) * sizeof(float); + lsh_weighted_cumulation_ver3_step2_cuda_kernel<<>>( + query_sorted_idxes_ptr, + key_mask_ptr, + key_info_ptr, + query_weight_ptr, + key_weight_ptr, + value_ptr, + cumulation_value_ptr, + batch_size, + num_hash_f, + num_query, + num_key, + value_dim, + weight_dim + ); + } + } + + return cumulation_value; + +} + +at::Tensor lsh_weighted_cumulation_ver4_kernel( + at::Tensor query_mask, + at::Tensor query_hash_code, + at::Tensor query_weight, + at::Tensor key_mask, + at::Tensor key_hash_code, + at::Tensor key_weight, + at::Tensor value, + int hashtable_capacity, + bool use_cuda +) { + + int batch_size = query_hash_code.size(0); + int num_hash_f = query_hash_code.size(2); + + int num_query = query_hash_code.size(1); + int num_key = key_hash_code.size(1); + int value_dim = value.size(2); + int weight_dim = query_weight.size(2); + + at::Tensor count_sort_table = at::zeros({batch_size, num_hash_f, hashtable_capacity}, query_hash_code.options()); + at::Tensor query_sorted_idxes = at::zeros({batch_size, num_hash_f, num_query}, query_hash_code.options()); + at::Tensor key_info = at::zeros({batch_size, num_key, 2, num_hash_f}, query_hash_code.options()); + at::Tensor cumulation_value = at::zeros({batch_size, num_query, value_dim}, value.options()); + + if (use_cuda) { + + int *query_mask_ptr = query_mask.data_ptr(); + int *query_hash_code_ptr = query_hash_code.data_ptr(); + float *query_weight_ptr = query_weight.data_ptr(); + int *key_mask_ptr = key_mask.data_ptr(); + int *key_hash_code_ptr = key_hash_code.data_ptr(); + float *key_weight_ptr = key_weight.data_ptr(); + float *value_ptr = value.data_ptr(); + + int *count_sort_table_ptr = count_sort_table.data_ptr(); + int *query_sorted_idxes_ptr = query_sorted_idxes.data_ptr(); + int *key_info_ptr = key_info.data_ptr(); + + float *cumulation_value_ptr = cumulation_value.data_ptr(); + + { + dim3 threads_step13(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks_step13(num_query / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + dim3 threads_step2(min(hashtable_capacity, OPTIMAL_THREADS_PER_BLOCK)); + dim3 blocks_step2(num_hash_f, batch_size); + int shared_mem = hashtable_capacity * sizeof(float); + count_sort_step1_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query + ); + count_sort_step2_cuda_kernel<<>>( + count_sort_table_ptr, + batch_size, + num_hash_f, + hashtable_capacity + ); + count_sort_step3_cuda_kernel<<>>( + query_mask_ptr, + query_hash_code_ptr, + count_sort_table_ptr, + query_sorted_idxes_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_query + ); + } + { + dim3 threads(num_hash_f, max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f)); + dim3 blocks(num_key / max(1, OPTIMAL_THREADS_PER_BLOCK / num_hash_f), batch_size); + extract_query_info_cuda_kernel<<>>( + key_mask_ptr, + key_hash_code_ptr, + count_sort_table_ptr, + key_info_ptr, + batch_size, + num_hash_f, + hashtable_capacity, + num_key + ); + } + { + dim3 threads(WARP_SIZE, OPTIMAL_THREADS_PER_BLOCK / WARP_SIZE); + dim3 blocks(num_key, batch_size); + int shared_mem = (weight_dim + value_dim + 2 * num_hash_f) * sizeof(float); + lsh_weighted_cumulation_ver4_step2_cuda_kernel<<>>( + query_sorted_idxes_ptr, + key_mask_ptr, + key_info_ptr, + query_weight_ptr, + key_weight_ptr, + value_ptr, + cumulation_value_ptr, + batch_size, + num_hash_f, + num_query, + num_key, + value_dim, + weight_dim + ); + } + } + + return cumulation_value; + +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.cu b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.cu new file mode 100644 index 0000000000000000000000000000000000000000..ebc6260dd6db3ecaf8cb7b35c3c1a6e1ab3851dc --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.cu @@ -0,0 +1,825 @@ +// File from https://github.com/mlpen/YOSO/blob/main/encoders/backbones/efficient_attentions/yoso/yoso_v1/cuda/fast_lsh_cumulation_cuda.cu + +#include "fast_lsh_cumulation_cuda.h" +#include "common_cuda_device.h" +#include "common_cuda.h" +#include "common.h" +#include +////////////////////////////////////////////////////////////////////////////////////////////////// +////////////////////////////////////////////////////////////////////////////////////////////////// + +inline __device__ void fast_hadamard_transform(float *vector_buffer, int vector_dim, int dim_idx) { + int stride = vector_dim / 2; + while (stride > (WARP_SIZE / 2)) { + __syncthreads(); + int sign = 1 - ((dim_idx / stride) % 2) * 2; + float val1 = vector_buffer[dim_idx]; + float val2 = vector_buffer[dim_idx + sign * stride]; + __syncthreads(); + vector_buffer[dim_idx] = float(sign) * val1 + val2; + stride = stride / 2; + } + + float val = vector_buffer[dim_idx]; + #pragma unroll + for (stride = (WARP_SIZE / 2); stride > 0; stride = stride / 2) { + int sign = 1 - ((dim_idx / stride) % 2) * 2; + val = float(sign) * val + __shfl_xor_sync(FULL_MASK, val, stride); + } + vector_buffer[dim_idx] = val; +} + +__global__ void fast_hash_ver1_cuda_kernel( + int *mask, // [batch_size, num_vector] + float *vector, // [batch_size, num_vector, vector_dim] + int *Dmat, // [batch_size, 3, num_part, vector_dim] + int *hash_code, // [batch_size, num_vector, num_hash_f] + int batch_size, + int num_vector, + int vector_dim, + int num_part, + int num_hash_f, + int hash_code_len +) { + + int batch_idx = blockIdx.z; + int vector_idx = blockIdx.y; + int part_idx = blockIdx.x; + + int dim_idx = threadIdx.x; + + int batch_idx__vector_idx = batch_idx * num_vector + vector_idx; + if (mask[batch_idx__vector_idx] == 0) { + return; + } + + extern __shared__ float buffer[]; + float *vector_buffer = buffer; + + vector_buffer[dim_idx] = vector[batch_idx__vector_idx * vector_dim + dim_idx]; + + vector_buffer[dim_idx] = vector_buffer[dim_idx] * (float)Dmat[((batch_idx * 3 + 0) * num_part + part_idx) * vector_dim + dim_idx]; + fast_hadamard_transform(vector_buffer, vector_dim, dim_idx); + vector_buffer[dim_idx] = vector_buffer[dim_idx] * (float)Dmat[((batch_idx * 3 + 1) * num_part + part_idx) * vector_dim + dim_idx]; + fast_hadamard_transform(vector_buffer, vector_dim, dim_idx); + vector_buffer[dim_idx] = vector_buffer[dim_idx] * (float)Dmat[((batch_idx * 3 + 2) * num_part + part_idx) * vector_dim + dim_idx]; + fast_hadamard_transform(vector_buffer, vector_dim, dim_idx); + + int num_hash_per_part = vector_dim / hash_code_len; + if (hash_code_len == 8 || hash_code_len == 16) { + int code = select(vector_buffer[dim_idx] > 0, 1 << (dim_idx % hash_code_len), 0); + for (int offset = 1; offset < hash_code_len; offset = offset * 2) { + code += __shfl_xor_sync(FULL_MASK, code, offset); + } + if (dim_idx % hash_code_len == 0) { + int hash_f_idx = part_idx * num_hash_per_part + dim_idx / hash_code_len; + if (hash_f_idx < num_hash_f) { + hash_code[batch_idx__vector_idx * num_hash_f + hash_f_idx] = code; + } + } + } else { + vector_buffer[dim_idx] = select(vector_buffer[dim_idx] > 0, 1 << (dim_idx % hash_code_len), 0); + __syncthreads(); + if (dim_idx < num_hash_per_part) { + int code = 0; + for (int i = 0; i < hash_code_len; i++) { + code += vector_buffer[dim_idx * hash_code_len + i]; + } + int hash_f_idx = part_idx * num_hash_per_part + dim_idx; + if (hash_f_idx < num_hash_f) { + hash_code[batch_idx__vector_idx * num_hash_f + hash_f_idx] = code; + } + } + } +} + +__global__ void lsh_cumulation_ver1_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + float *value, // [batch_size, num_key, value_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key, + int value_dim, + int offset_warp +) { + + int warp_thread_idx = threadIdx.x; + + int batch_idx = blockIdx.y; + int key_idx = blockIdx.x * blockDim.y + threadIdx.y; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + if (num_hash_f > WARP_SIZE) { + float warp_value = value[batch_idx__key_idx * value_dim + offset_warp + warp_thread_idx]; + for (int hash_f_start = 0; hash_f_start < num_hash_f; hash_f_start = hash_f_start + WARP_SIZE) { + int warp_hashcode = key_hash_code[batch_idx__key_idx * num_hash_f + hash_f_start + warp_thread_idx]; + #pragma unroll + for (int hash_f_offset = 0; hash_f_offset < WARP_SIZE; hash_f_offset++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_offset); + int hashtable_idx = (batch_idx * num_hash_f + (hash_f_start + hash_f_offset)) * hashtable_capacity + current_hashcode; + atomicAdd(&hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx], warp_value); + } + } + } else { + float warp_value = value[batch_idx__key_idx * value_dim + offset_warp + warp_thread_idx]; + int warp_hashcode = 0; + if (warp_thread_idx < num_hash_f) { + warp_hashcode = key_hash_code[batch_idx__key_idx * num_hash_f + warp_thread_idx]; + } + for (int hash_f_idx = 0; hash_f_idx < num_hash_f; hash_f_idx++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_idx); + int hashtable_idx = (batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + current_hashcode; + atomicAdd(&hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx], warp_value); + } + } + +} + +__global__ void lsh_cumulation_ver1_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query, + int value_dim, + int offset_warp +) { + + int warp_thread_idx = threadIdx.x; + + int batch_idx = blockIdx.y; + int query_idx = blockIdx.x * blockDim.y + threadIdx.y; + + int batch_idx__query_idx = batch_idx * num_query + query_idx; + if (query_mask[batch_idx__query_idx] == 0) { + return; + } + + if (num_hash_f > WARP_SIZE) { + float warp_value = 0; + for (int hash_f_start = 0; hash_f_start < num_hash_f; hash_f_start = hash_f_start + WARP_SIZE) { + int warp_hashcode = query_hash_code[batch_idx__query_idx * num_hash_f + hash_f_start + warp_thread_idx]; + #pragma unroll + for (int hash_f_offset = 0; hash_f_offset < WARP_SIZE; hash_f_offset++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_offset); + int hashtable_idx = (batch_idx * num_hash_f + (hash_f_start + hash_f_offset)) * hashtable_capacity + current_hashcode; + warp_value = warp_value + hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx]; + } + } + cumulation_value[batch_idx__query_idx * value_dim + offset_warp + warp_thread_idx] = warp_value / float(num_hash_f); + } else { + float warp_value = 0; + int warp_hashcode = 0; + if (warp_thread_idx < num_hash_f) { + warp_hashcode = query_hash_code[batch_idx__query_idx * num_hash_f + warp_thread_idx]; + } + for (int hash_f_idx = 0; hash_f_idx < num_hash_f; hash_f_idx++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_idx); + int hashtable_idx = (batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + current_hashcode; + warp_value = warp_value + hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx]; + } + cumulation_value[batch_idx__query_idx * value_dim + offset_warp + warp_thread_idx] = warp_value / float(num_hash_f); + } + +} + +__global__ void lsh_weighted_cumulation_ver1_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key, + int value_dim, + int weight_dim, + int offset_warp, + int weight_idx +) { + + int warp_thread_idx = threadIdx.x; + + int batch_idx = blockIdx.y; + int key_idx = blockIdx.x * blockDim.y + threadIdx.y; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + if (num_hash_f > WARP_SIZE) { + float warp_value = key_weight[batch_idx__key_idx * weight_dim + weight_idx] * value[batch_idx__key_idx * value_dim + offset_warp + warp_thread_idx]; + for (int hash_f_start = 0; hash_f_start < num_hash_f; hash_f_start = hash_f_start + WARP_SIZE) { + int warp_hashcode = key_hash_code[batch_idx__key_idx * num_hash_f + hash_f_start + warp_thread_idx]; + #pragma unroll + for (int hash_f_offset = 0; hash_f_offset < WARP_SIZE; hash_f_offset++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_offset); + int hashtable_idx = (batch_idx * num_hash_f + (hash_f_start + hash_f_offset)) * hashtable_capacity + current_hashcode; + atomicAdd(&hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx], warp_value); + } + } + } else { + float warp_value = key_weight[batch_idx__key_idx * weight_dim + weight_idx] * value[batch_idx__key_idx * value_dim + offset_warp + warp_thread_idx]; + int warp_hashcode = 0; + if (warp_thread_idx < num_hash_f) { + warp_hashcode = key_hash_code[batch_idx__key_idx * num_hash_f + warp_thread_idx]; + } + for (int hash_f_idx = 0; hash_f_idx < num_hash_f; hash_f_idx++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_idx); + int hashtable_idx = (batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + current_hashcode; + atomicAdd(&hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx], warp_value); + } + } + +} + +__global__ void lsh_weighted_cumulation_ver1_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query, + int value_dim, + int weight_dim, + int offset_warp, + int weight_idx +) { + + int warp_thread_idx = threadIdx.x; + + int batch_idx = blockIdx.y; + int query_idx = blockIdx.x * blockDim.y + threadIdx.y; + + int batch_idx__query_idx = batch_idx * num_query + query_idx; + if (query_mask[batch_idx__query_idx] == 0) { + return; + } + + if (num_hash_f > WARP_SIZE) { + float warp_value = 0; + for (int hash_f_start = 0; hash_f_start < num_hash_f; hash_f_start = hash_f_start + WARP_SIZE) { + int warp_hashcode = query_hash_code[batch_idx__query_idx * num_hash_f + hash_f_start + warp_thread_idx]; + #pragma unroll + for (int hash_f_offset = 0; hash_f_offset < WARP_SIZE; hash_f_offset++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_offset); + int hashtable_idx = (batch_idx * num_hash_f + (hash_f_start + hash_f_offset)) * hashtable_capacity + current_hashcode; + warp_value = warp_value + hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx]; + } + } + float warp_weight = query_weight[batch_idx__query_idx * weight_dim + weight_idx]; + cumulation_value[batch_idx__query_idx * value_dim + offset_warp + warp_thread_idx] += warp_weight * warp_value / float(num_hash_f); + } else { + float warp_value = 0; + int warp_hashcode = 0; + if (warp_thread_idx < num_hash_f) { + warp_hashcode = query_hash_code[batch_idx__query_idx * num_hash_f + warp_thread_idx]; + } + for (int hash_f_idx = 0; hash_f_idx < num_hash_f; hash_f_idx++) { + int current_hashcode = warp_hashcode; + current_hashcode = __shfl_sync(FULL_MASK, current_hashcode, hash_f_idx); + int hashtable_idx = (batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + current_hashcode; + warp_value = warp_value + hashtable_value[hashtable_idx * WARP_SIZE + warp_thread_idx]; + } + float warp_weight = query_weight[batch_idx__query_idx * weight_dim + weight_idx]; + cumulation_value[batch_idx__query_idx * value_dim + offset_warp + warp_thread_idx] += warp_weight * warp_value / float(num_hash_f); + } + +} + +__global__ void count_sort_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key +) { + + int batch_idx = blockIdx.y; + int key_idx = blockIdx.x * blockDim.y + threadIdx.y; + int hash_f_idx = threadIdx.x; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + int hash_code = key_hash_code[batch_idx__key_idx * num_hash_f + hash_f_idx]; + atomicAdd(&count_sort_table[(batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + hash_code], 1); + +} + +__global__ void count_sort_step2_cuda_kernel( + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int batch_size, + int num_hash_f, + int hashtable_capacity +) { + + int batch_idx = blockIdx.y; + int hash_f_idx = blockIdx.x; + + int num_threads = blockDim.x; + int thread_id = threadIdx.x; + + int batch_idx__hash_f_idx = batch_idx * num_hash_f + hash_f_idx; + + extern __shared__ float buffer[]; + int *table_buffer = (int*)buffer; + + if (thread_id == 0) { + table_buffer[0] = 0; + } + copy_data(&count_sort_table[batch_idx__hash_f_idx * hashtable_capacity], &table_buffer[1], hashtable_capacity - 1, num_threads, thread_id); + + for (int table_idx_start = 0; table_idx_start < hashtable_capacity; table_idx_start = table_idx_start + num_threads) { + int thread_value = table_buffer[table_idx_start + thread_id]; + int next_thread_value = 0; + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + next_thread_value = __shfl_up_sync(FULL_MASK, thread_value, offset); + if (thread_id % WARP_SIZE >= offset) { + thread_value = thread_value + next_thread_value; + } + } + table_buffer[table_idx_start + thread_id] = thread_value; + } + __syncthreads(); + + if (hashtable_capacity > WARP_SIZE) { + if (thread_id < WARP_SIZE) { + for (int table_idx_start = WARP_SIZE; table_idx_start < hashtable_capacity; table_idx_start = table_idx_start + WARP_SIZE) { + table_buffer[table_idx_start + thread_id] += table_buffer[table_idx_start - 1]; + } + } + } + + copy_data(table_buffer, &count_sort_table[batch_idx__hash_f_idx * hashtable_capacity], hashtable_capacity, num_threads, thread_id); + +} + + +__global__ void count_sort_step3_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int *key_sorted_idxes, // [batch_size, num_hash_f, num_key] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key +) { + + int batch_idx = blockIdx.y; + int key_idx = blockIdx.x * blockDim.y + threadIdx.y; + int hash_f_idx = threadIdx.x; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + int batch_idx__hash_f_idx = batch_idx * num_hash_f + hash_f_idx; + + int hash_code = key_hash_code[batch_idx__key_idx * num_hash_f + hash_f_idx]; + int sort_idx = atomicAdd(&count_sort_table[batch_idx__hash_f_idx * hashtable_capacity + hash_code], 1); + key_sorted_idxes[batch_idx__hash_f_idx * num_key + sort_idx] = key_idx; + +} + +__global__ void extract_query_info_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int *query_info, // [batch_size, num_query, 2, num_hash_f] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query +) { + + int batch_idx = blockIdx.y; + int query_idx = blockIdx.x * blockDim.y + threadIdx.y; + int hash_f_idx = threadIdx.x; + + int batch_idx__query_idx = batch_idx * num_query + query_idx; + if (query_mask[batch_idx__query_idx] == 0) { + return; + } + + int hash_code = query_hash_code[batch_idx__query_idx * num_hash_f + hash_f_idx]; + int batch_idx__hash_f_idx__hash_code = (batch_idx * num_hash_f + hash_f_idx) * hashtable_capacity + hash_code; + + int key_offset = select(hash_code == 0, 0, count_sort_table[batch_idx__hash_f_idx__hash_code - 1]); + int key_count = count_sort_table[batch_idx__hash_f_idx__hash_code] - key_offset; + + query_info[batch_idx__query_idx * 2 * num_hash_f + hash_f_idx] = key_offset; + query_info[(batch_idx__query_idx * 2 + 1) * num_hash_f + hash_f_idx] = key_count; + +} + +__global__ void lsh_weighted_cumulation_ver2_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_info, // [batch_size, num_query, 2, num_hash_f] + int *key_sorted_idxes, // [batch_size, num_hash_f, num_key] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +) { + + int batch_idx = blockIdx.z; + int hash_f_idx = blockIdx.y; + int query_idx = blockIdx.x; + + int num_threads = blockDim.y * blockDim.x; + int thread_id = threadIdx.y * blockDim.x + threadIdx.x; + + int num_warps = blockDim.y; + int warp_idx = threadIdx.y; + int warp_thread_idx = threadIdx.x; + + int batch_idx__query_idx = batch_idx * num_query + query_idx; + if (query_mask[batch_idx__query_idx] == 0) { + return; + } + + int key_offset = query_info[batch_idx__query_idx * 2 * num_hash_f + hash_f_idx]; + int key_count = query_info[(batch_idx__query_idx * 2 + 1) * num_hash_f + hash_f_idx]; + + if (key_count == 0) { + return; + } + + extern __shared__ float buffer[]; + + if (key_count == 1) { + if (warp_idx == 0) { + int key_idx = key_sorted_idxes[(batch_idx * num_hash_f + hash_f_idx) * num_key + key_offset]; + int batch_idx__key_idx = batch_idx * num_key + key_idx; + float weight = 0; + for (int weight_offset = 0; weight_offset < weight_dim; weight_offset = weight_offset + WARP_SIZE) { + int weight_dim_idx = weight_offset + warp_thread_idx; + float val = query_weight[batch_idx__query_idx * weight_dim + weight_dim_idx] * key_weight[batch_idx__key_idx * weight_dim + weight_dim_idx]; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + val += __shfl_xor_sync(FULL_MASK, val, offset); + } + weight = weight + val; + } + weight = weight / float(num_hash_f); + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + int value_dim_idx = value_offset + warp_thread_idx; + float val = value[batch_idx__key_idx * value_dim + value_dim_idx]; + atomicAdd(&cumulation_value[batch_idx__query_idx * value_dim + value_dim_idx], weight * val); + } + } + } else { + float *weight_buffer = buffer; + int *key_idxes_buffer = (int*)&buffer[weight_dim]; + + copy_data_nonblocking(&query_weight[batch_idx__query_idx * weight_dim], weight_buffer, weight_dim, num_threads, thread_id); + + while (key_count > 0) { + int work_size = min(WARP_SIZE, key_count); + copy_data_nonblocking(&key_sorted_idxes[(batch_idx * num_hash_f + hash_f_idx) * num_key + key_offset], key_idxes_buffer, work_size, num_threads, thread_id); + __syncthreads(); + for (int work_offset = 0; work_offset < WARP_SIZE; work_offset = work_offset + num_warps) { + int work_idx = work_offset + warp_idx; + if (work_idx < key_count) { + int key_idx = key_idxes_buffer[work_idx]; + int batch_idx__key_idx = batch_idx * num_key + key_idx; + float weight = 0; + for (int weight_offset = 0; weight_offset < weight_dim; weight_offset = weight_offset + WARP_SIZE) { + int weight_dim_idx = weight_offset + warp_thread_idx; + float val = weight_buffer[weight_dim_idx] * key_weight[batch_idx__key_idx * weight_dim + weight_dim_idx]; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + val += __shfl_xor_sync(FULL_MASK, val, offset); + } + weight = weight + val; + } + weight = weight / float(num_hash_f); + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + int value_dim_idx = value_offset + warp_thread_idx; + float val = value[batch_idx__key_idx * value_dim + value_dim_idx]; + atomicAdd(&cumulation_value[batch_idx__query_idx * value_dim + value_dim_idx], weight * val); + } + } + } + key_count = key_count - work_size; + key_offset = key_offset + work_size; + } + } + +} + +__global__ void lsh_weighted_cumulation_ver3_step2_cuda_kernel( + int *query_sorted_idxes, // [batch_size, num_hash_f, num_query] + int *key_mask, // [batch_size, num_key] + int *key_info, // [batch_size, num_key, 2, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +) { + + int batch_idx = blockIdx.z; + int hash_f_idx = blockIdx.y; + int key_idx = blockIdx.x; + + int num_threads = blockDim.y * blockDim.x; + int thread_id = threadIdx.y * blockDim.x + threadIdx.x; + + int num_warps = blockDim.y; + int warp_idx = threadIdx.y; + int warp_thread_idx = threadIdx.x; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + int query_offset = key_info[batch_idx__key_idx * 2 * num_hash_f + hash_f_idx]; + int query_count = key_info[(batch_idx__key_idx * 2 + 1) * num_hash_f + hash_f_idx]; + + if (query_count == 0) { + return; + } + + extern __shared__ float buffer[]; + + if (query_count == 1) { + if (warp_idx == 0) { + int query_idx = query_sorted_idxes[(batch_idx * num_hash_f + hash_f_idx) * num_query + query_offset]; + int batch_idx__query_idx = batch_idx * num_query + query_idx; + float weight = 0; + for (int weight_offset = 0; weight_offset < weight_dim; weight_offset = weight_offset + WARP_SIZE) { + int weight_dim_idx = weight_offset + warp_thread_idx; + float val = key_weight[batch_idx__key_idx * weight_dim + weight_dim_idx] * query_weight[batch_idx__query_idx * weight_dim + weight_dim_idx]; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + val += __shfl_xor_sync(FULL_MASK, val, offset); + } + weight = weight + val; + } + weight = weight / float(num_hash_f); + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + int value_dim_idx = value_offset + warp_thread_idx; + float val = value[batch_idx__key_idx * value_dim + value_dim_idx]; + atomicAdd(&cumulation_value[batch_idx__query_idx * value_dim + value_dim_idx], weight * val); + } + } + } else { + float *weight_buffer = buffer; + float *value_buffer = &buffer[weight_dim]; + int *query_idxes_buffer = (int*)&buffer[weight_dim + value_dim]; + + copy_data_nonblocking(&key_weight[batch_idx__key_idx * weight_dim], weight_buffer, weight_dim, num_threads, thread_id); + copy_data_nonblocking(&value[batch_idx__key_idx * value_dim], value_buffer, value_dim, num_threads, thread_id); + + while (query_count > 0) { + int work_size = min(WARP_SIZE, query_count); + copy_data_nonblocking(&query_sorted_idxes[(batch_idx * num_hash_f + hash_f_idx) * num_query + query_offset], query_idxes_buffer, work_size, num_threads, thread_id); + __syncthreads(); + for (int work_offset = 0; work_offset < WARP_SIZE; work_offset = work_offset + num_warps) { + int work_idx = work_offset + warp_idx; + if (work_idx < query_count) { + int query_idx = query_idxes_buffer[work_idx]; + int batch_idx__query_idx = batch_idx * num_query + query_idx; + float weight = 0; + for (int weight_offset = 0; weight_offset < weight_dim; weight_offset = weight_offset + WARP_SIZE) { + int weight_dim_idx = weight_offset + warp_thread_idx; + float val = weight_buffer[weight_dim_idx] * query_weight[batch_idx__query_idx * weight_dim + weight_dim_idx]; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + val += __shfl_xor_sync(FULL_MASK, val, offset); + } + weight = weight + val; + } + weight = weight / float(num_hash_f); + for (int value_offset = 0; value_offset < value_dim; value_offset = value_offset + WARP_SIZE) { + int value_dim_idx = value_offset + warp_thread_idx; + float val = value_buffer[value_dim_idx]; + atomicAdd(&cumulation_value[batch_idx__query_idx * value_dim + value_dim_idx], weight * val); + } + } + } + query_count = query_count - work_size; + query_offset = query_offset + work_size; + } + } + +} + +__global__ void lsh_weighted_cumulation_ver4_step2_cuda_kernel( + int *query_sorted_idxes, // [batch_size, num_hash_f, num_query] + int *key_mask, // [batch_size, num_key] + int *key_info, // [batch_size, num_key, 2, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +) { + + int batch_idx = blockIdx.y; + int key_idx = blockIdx.x; + + int num_threads = blockDim.y * blockDim.x; + int thread_id = threadIdx.y * blockDim.x + threadIdx.x; + + int num_warps = blockDim.y; + int warp_idx = threadIdx.y; + int warp_thread_idx = threadIdx.x; + + int batch_idx__key_idx = batch_idx * num_key + key_idx; + if (key_mask[batch_idx__key_idx] == 0) { + return; + } + + extern __shared__ float buffer[]; + float *weight_buffer = buffer; + float *value_buffer = &buffer[weight_dim]; + int *key_info_buffer = (int*)&buffer[weight_dim + value_dim]; + + copy_data_nonblocking(&key_weight[batch_idx__key_idx * weight_dim], weight_buffer, weight_dim, num_threads, thread_id); + copy_data_nonblocking(&value[batch_idx__key_idx * value_dim], value_buffer, value_dim, num_threads, thread_id); + copy_data_nonblocking(&key_info[batch_idx__key_idx * 2 * num_hash_f], key_info_buffer, 2 * num_hash_f, num_threads, thread_id); + + int *query_offset_buffer = key_info_buffer; + int *query_count_buffer = &key_info_buffer[num_hash_f]; + + const int hashtable_size = 1024 + OPTIMAL_THREADS_PER_BLOCK; + __shared__ int hashtable_query[hashtable_size]; + __shared__ int hashtable_count[hashtable_size]; + __shared__ int inserted_query[hashtable_size]; + __shared__ int query_counter[1]; + + int hash_f_idx_base = 0; + + while (true) { + + init_buffer_nonblocking(EMPTY_VALUE, hashtable_query, hashtable_size, num_threads, thread_id); + init_buffer_nonblocking(0, hashtable_count, hashtable_size, num_threads, thread_id); + init_buffer_nonblocking(EMPTY_VALUE, inserted_query, hashtable_size, num_threads, thread_id); + init_buffer_nonblocking(0, query_counter, 1, num_threads, thread_id); + __syncthreads(); + + while (hash_f_idx_base < num_hash_f) { + + int hash_f_idx = hash_f_idx_base + warp_idx; + int batch_idx__hash_f_idx = batch_idx * num_hash_f + hash_f_idx; + + int stop_flag = 0; + + int query_offset = query_offset_buffer[hash_f_idx]; + int query_count = query_count_buffer[hash_f_idx]; + + while (query_count > 0) { + + int work_size = min(query_count, WARP_SIZE); + + // try inserting query to set and check whether the query is new + int found_new_query = 0; + int query_idx = -1; + if (warp_thread_idx < work_size) { + query_idx = query_sorted_idxes[batch_idx__hash_f_idx * num_query + query_offset + warp_thread_idx]; + int slot = set_insert(hashtable_query, hashtable_size, query_idx); + if (slot >= 0) { + found_new_query = atomicAdd(&hashtable_count[slot], 1) == 0; + } + } + + // compute cumulative offset + int position_offset = found_new_query; + int next_position_offset = 0; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + next_position_offset = __shfl_up_sync(FULL_MASK, position_offset, offset); + if (thread_id % WARP_SIZE >= offset) { + position_offset = position_offset + next_position_offset; + } + } + + // get the inserted query list end index + int inserted_query_base = 0; + if (thread_id % WARP_SIZE == WARP_SIZE - 1) { + inserted_query_base = atomicAdd(query_counter, position_offset); + } + inserted_query_base = __shfl_sync(FULL_MASK, inserted_query_base, WARP_SIZE - 1); + + // insert new queries to list + int insert_idx = inserted_query_base + position_offset - 1; + if (found_new_query) { + inserted_query[insert_idx] = query_idx; + } + + // remove inserted queries from list + query_offset_buffer[hash_f_idx] += work_size; + query_count_buffer[hash_f_idx] -= work_size; + query_offset += work_size; + query_count -= work_size; + + // if list is almost full, stop inserting + if (inserted_query_base + OPTIMAL_THREADS_PER_BLOCK > hashtable_size) { + stop_flag = 1; + break; + } + + } + + if (stop_flag) { + break; + } + + hash_f_idx_base = hash_f_idx_base + num_warps; + + } + + __syncthreads(); + + int num_distint_query = query_counter[0]; + + if (num_distint_query > 0) { + for (int idx_base = 0; idx_base < num_distint_query; idx_base = idx_base + num_warps) { + int idx = idx_base + warp_idx; + if (idx < num_distint_query) { + int query_idx = inserted_query[idx]; + int batch_idx__query_idx = batch_idx * num_query + query_idx; + + int slot = set_lookup(hashtable_query, hashtable_size, query_idx); + int duplicate_count = hashtable_count[slot]; + + float weight = 0; + for (int weight_idx_base = 0; weight_idx_base < weight_dim; weight_idx_base = weight_idx_base + WARP_SIZE) { + int weight_dim_idx = weight_idx_base + warp_thread_idx; + float val = weight_buffer[weight_dim_idx] * query_weight[batch_idx__query_idx * weight_dim + weight_dim_idx]; + #pragma unroll + for (int offset = 1; offset < WARP_SIZE; offset = offset << 1) { + val += __shfl_xor_sync(FULL_MASK, val, offset); + } + weight = weight + val; + } + + weight = (float)duplicate_count * weight / float(num_hash_f); + + for (int value_idx_base = 0; value_idx_base < value_dim; value_idx_base = value_idx_base + WARP_SIZE) { + int value_dim_idx = value_idx_base + warp_thread_idx; + float val = value_buffer[value_dim_idx]; + atomicAdd(&cumulation_value[batch_idx__query_idx * value_dim + value_dim_idx], weight * val); + } + } + } + } else { + + // all computation is completed if num_distint_query == 0 + break; + + } + + __syncthreads(); + + } + +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.h b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.h new file mode 100644 index 0000000000000000000000000000000000000000..b2adc0f735358d0fcb6a056e7d19ba745977e129 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_cuda.h @@ -0,0 +1,157 @@ +__global__ void fast_hash_ver1_cuda_kernel( + int *mask, // [batch_size, num_vector] + float *vector, // [batch_size, num_vector, vector_dim] + int *Dmat, // [3, num_part, vector_dim] + int *hash_code, // [batch_size, num_vector, num_hash_f] + int batch_size, + int num_vector, + int vector_dim, + int num_part, + int num_hash_f, + int hash_code_len +); + +__global__ void lsh_cumulation_ver1_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + float *value, // [batch_size, num_key, value_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, value_dim] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key, + int value_dim, + int offset_warp +); + +__global__ void lsh_cumulation_ver1_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query, + int value_dim, + int offset_warp +); + +__global__ void lsh_weighted_cumulation_ver1_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key, + int value_dim, + int weight_dim, + int offset_warp, + int weight_idx +); + +__global__ void lsh_weighted_cumulation_ver1_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *hashtable_value, // [batch_size, num_hash_f, hashtable_capacity, WARP_SIZE] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query, + int value_dim, + int weight_dim, + int offset_warp, + int weight_idx +); + +__global__ void count_sort_step1_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key +); + +__global__ void count_sort_step2_cuda_kernel( + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int batch_size, + int num_hash_f, + int hashtable_capacity +); + +__global__ void count_sort_step3_cuda_kernel( + int *key_mask, // [batch_size, num_key] + int *key_hash_code, // [batch_size, num_key, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int *key_sorted_idxes, // [batch_size, num_hash_f, num_key] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_key +); + +__global__ void extract_query_info_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_hash_code, // [batch_size, num_query, num_hash_f] + int *count_sort_table, // [batch_size, num_hash_f, hashtable_capacity] + int *query_info, // [batch_size, num_query, 2, num_hash_f] + int batch_size, + int num_hash_f, + int hashtable_capacity, + int num_query +); + +__global__ void lsh_weighted_cumulation_ver2_step2_cuda_kernel( + int *query_mask, // [batch_size, num_query] + int *query_info, // [batch_size, num_query, 2, num_hash_f] + int *key_sorted_idxes, // [batch_size, num_hash_f, num_key] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +); + +__global__ void lsh_weighted_cumulation_ver3_step2_cuda_kernel( + int *query_sorted_idxes, // [batch_size, num_hash_f, num_query] + int *key_mask, // [batch_size, num_key] + int *key_info, // [batch_size, num_key, 2, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +); + +__global__ void lsh_weighted_cumulation_ver4_step2_cuda_kernel( + int *query_sorted_idxes, // [batch_size, num_hash_f, num_query] + int *key_mask, // [batch_size, num_key] + int *key_info, // [batch_size, num_key, 2, num_hash_f] + float *query_weight, // [batch_size, num_query, weight_dim] + float *key_weight, // [batch_size, num_key, weight_dim] + float *value, // [batch_size, num_key, value_dim] + float *cumulation_value, // [batch_size, num_query, value_dim] + int batch_size, + int num_hash_f, + int num_query, + int num_key, + int value_dim, + int weight_dim +); diff --git a/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_torch.cpp b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_torch.cpp new file mode 100644 index 0000000000000000000000000000000000000000..e150a2be604b28f600ab345a8cc9e97819cca416 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/kernels/yoso/fast_lsh_cumulation_torch.cpp @@ -0,0 +1,128 @@ +#include +#include +#include "fast_lsh_cumulation.h" +#include "common_cuda.h" +#include + +std::vector fast_hash( + at::Tensor query_mask, + at::Tensor query_vector, + at::Tensor key_mask, + at::Tensor key_vector, + int num_hash_f, + int hash_code_len, + bool use_cuda, + int version +) { + return fast_hash_ver1_kernel( + query_mask, + query_vector, + key_mask, + key_vector, + num_hash_f, + hash_code_len, + use_cuda + ); +} + +at::Tensor lsh_cumulation( + at::Tensor query_mask, // [batch_size, num_query] + at::Tensor query_hash_code, // [batch_size, num_query, num_hash_f] + at::Tensor key_mask, // [batch_size, num_key] + at::Tensor key_hash_code, // [batch_size, num_key, num_hash_f] + at::Tensor value, // [batch_size, num_key, value_dim] + int hashtable_capacity, + bool use_cuda, + int version +) { + return lsh_cumulation_ver1_kernel( + query_mask, + query_hash_code, + key_mask, + key_hash_code, + value, + hashtable_capacity, + use_cuda + ); +} + +at::Tensor lsh_weighted_cumulation( + at::Tensor query_mask, // [batch_size, num_query] + at::Tensor query_hash_code, // [batch_size, num_query, num_hash_f] + at::Tensor query_weight, // [batch_size, num_query, weight_dim] + at::Tensor key_mask, // [batch_size, num_key] + at::Tensor key_hash_code, // [batch_size, num_key, num_hash_f] + at::Tensor key_weight, // [batch_size, num_key, weight_dim] + at::Tensor value, // [batch_size, num_key, value_dim] + int hashtable_capacity, + bool use_cuda, + int version +) { + if (version == 1) { + return lsh_weighted_cumulation_ver1_kernel( + query_mask, + query_hash_code, + query_weight, + key_mask, + key_hash_code, + key_weight, + value, + hashtable_capacity, + use_cuda + ); + } else if (version == 2) { + return lsh_weighted_cumulation_ver2_kernel( + query_mask, + query_hash_code, + query_weight, + key_mask, + key_hash_code, + key_weight, + value, + hashtable_capacity, + use_cuda + ); + } else if (version == 3) { + return lsh_weighted_cumulation_ver3_kernel( + query_mask, + query_hash_code, + query_weight, + key_mask, + key_hash_code, + key_weight, + value, + hashtable_capacity, + use_cuda + ); + } else if (version == 4) { + return lsh_weighted_cumulation_ver4_kernel( + query_mask, + query_hash_code, + query_weight, + key_mask, + key_hash_code, + key_weight, + value, + hashtable_capacity, + use_cuda + ); + } else { + return lsh_weighted_cumulation_ver3_kernel( + query_mask, + query_hash_code, + query_weight, + key_mask, + key_hash_code, + key_weight, + value, + hashtable_capacity, + use_cuda + ); + } +} + +PYBIND11_MODULE(TORCH_EXTENSION_NAME, m) { + m.def("fast_hash", &fast_hash, "Fast Hash (CUDA)"); + m.def("lsh_cumulation", &lsh_cumulation, "LSH Cumulation (CUDA)"); + m.def("lsh_weighted_cumulation", &lsh_weighted_cumulation, "LSH Weighted Cumulation (CUDA)"); +} diff --git a/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/configuration_fnet.py b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/configuration_fnet.py new file mode 100644 index 0000000000000000000000000000000000000000..9efa06487756ddad5edda75a7dde98b12d729851 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/configuration_fnet.py @@ -0,0 +1,121 @@ +# coding=utf-8 +# Copyright 2021 Google AI and The HuggingFace Inc. team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +""" FNet model configuration""" + +from ...configuration_utils import PretrainedConfig +from ...utils import logging + + +logger = logging.get_logger(__name__) + +FNET_PRETRAINED_CONFIG_ARCHIVE_MAP = { + "google/fnet-base": "https://huggingface.co/google/fnet-base/resolve/main/config.json", + "google/fnet-large": "https://huggingface.co/google/fnet-large/resolve/main/config.json" + # See all FNet models at https://huggingface.co/models?filter=fnet +} + + +class FNetConfig(PretrainedConfig): + r""" + This is the configuration class to store the configuration of a [`FNetModel`]. It is used to instantiate an FNet + model according to the specified arguments, defining the model architecture. Instantiating a configuration with the + defaults will yield a similar configuration to that of the FNet + [google/fnet-base](https://huggingface.co/google/fnet-base) architecture. + + Configuration objects inherit from [`PretrainedConfig`] and can be used to control the model outputs. Read the + documentation from [`PretrainedConfig`] for more information. + + + Args: + vocab_size (`int`, *optional*, defaults to 32000): + Vocabulary size of the FNet model. Defines the number of different tokens that can be represented by the + `inputs_ids` passed when calling [`FNetModel`] or [`TFFNetModel`]. + hidden_size (`int`, *optional*, defaults to 768): + Dimension of the encoder layers and the pooler layer. + num_hidden_layers (`int`, *optional*, defaults to 12): + Number of hidden layers in the Transformer encoder. + intermediate_size (`int`, *optional*, defaults to 3072): + Dimension of the "intermediate" (i.e., feed-forward) layer in the Transformer encoder. + hidden_act (`str` or `function`, *optional*, defaults to `"gelu_new"`): + The non-linear activation function (function or string) in the encoder and pooler. If string, `"gelu"`, + `"relu"`, `"selu"` and `"gelu_new"` are supported. + hidden_dropout_prob (`float`, *optional*, defaults to 0.1): + The dropout probabilitiy for all fully connected layers in the embeddings, encoder, and pooler. + max_position_embeddings (`int`, *optional*, defaults to 512): + The maximum sequence length that this model might ever be used with. Typically set this to something large + just in case (e.g., 512 or 1024 or 2048). + type_vocab_size (`int`, *optional*, defaults to 4): + The vocabulary size of the `token_type_ids` passed when calling [`FNetModel`] or [`TFFNetModel`]. + initializer_range (`float`, *optional*, defaults to 0.02): + The standard deviation of the truncated_normal_initializer for initializing all weight matrices. + layer_norm_eps (`float`, *optional*, defaults to 1e-12): + The epsilon used by the layer normalization layers. + use_tpu_fourier_optimizations (`bool`, *optional*, defaults to `False`): + Determines whether to use TPU optimized FFTs. If `True`, the model will favor axis-wise FFTs transforms. + Set to `False` for GPU/CPU hardware, in which case n-dimensional FFTs are used. + tpu_short_seq_length (`int`, *optional*, defaults to 512): + The sequence length that is expected by the model when using TPUs. This will be used to initialize the DFT + matrix only when *use_tpu_fourier_optimizations* is set to `True` and the input sequence is shorter than or + equal to 4096 tokens. + + Example: + + ```python + >>> from transformers import FNetConfig, FNetModel + + >>> # Initializing a FNet fnet-base style configuration + >>> configuration = FNetConfig() + + >>> # Initializing a model (with random weights) from the fnet-base style configuration + >>> model = FNetModel(configuration) + + >>> # Accessing the model configuration + >>> configuration = model.config + ```""" + model_type = "fnet" + + def __init__( + self, + vocab_size=32000, + hidden_size=768, + num_hidden_layers=12, + intermediate_size=3072, + hidden_act="gelu_new", + hidden_dropout_prob=0.1, + max_position_embeddings=512, + type_vocab_size=4, + initializer_range=0.02, + layer_norm_eps=1e-12, + use_tpu_fourier_optimizations=False, + tpu_short_seq_length=512, + pad_token_id=3, + bos_token_id=1, + eos_token_id=2, + **kwargs, + ): + super().__init__(pad_token_id=pad_token_id, bos_token_id=bos_token_id, eos_token_id=eos_token_id, **kwargs) + + self.vocab_size = vocab_size + self.max_position_embeddings = max_position_embeddings + self.hidden_size = hidden_size + self.num_hidden_layers = num_hidden_layers + self.intermediate_size = intermediate_size + self.hidden_act = hidden_act + self.hidden_dropout_prob = hidden_dropout_prob + self.initializer_range = initializer_range + self.type_vocab_size = type_vocab_size + self.layer_norm_eps = layer_norm_eps + self.use_tpu_fourier_optimizations = use_tpu_fourier_optimizations + self.tpu_short_seq_length = tpu_short_seq_length diff --git a/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/convert_fnet_original_flax_checkpoint_to_pytorch.py b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/convert_fnet_original_flax_checkpoint_to_pytorch.py new file mode 100644 index 0000000000000000000000000000000000000000..f77a44874ae42919ccbdb32d35e8272074d80acc --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/convert_fnet_original_flax_checkpoint_to_pytorch.py @@ -0,0 +1,157 @@ +# coding=utf-8 +# Copyright 2021 The HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Convert FNet checkpoint.""" + + +import argparse + +import torch +from flax.training.checkpoints import restore_checkpoint + +from transformers import FNetConfig, FNetForPreTraining +from transformers.utils import logging + + +logging.set_verbosity_info() + + +def convert_flax_checkpoint_to_pytorch(flax_checkpoint_path, fnet_config_file, save_path): + # Initialise PyTorch model + config = FNetConfig.from_json_file(fnet_config_file) + print(f"Building PyTorch model from configuration: {config}") + fnet_pretraining_model = FNetForPreTraining(config) + + checkpoint_dict = restore_checkpoint(flax_checkpoint_path, None) + pretrained_model_params = checkpoint_dict["target"] + + # Embeddings + # Position IDs + state_dict = fnet_pretraining_model.state_dict() + + position_ids = state_dict["fnet.embeddings.position_ids"] + new_state_dict = {"fnet.embeddings.position_ids": position_ids} + # Embedding Layers + new_state_dict["fnet.embeddings.word_embeddings.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["word"]["embedding"] + ) + new_state_dict["fnet.embeddings.position_embeddings.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["position"]["embedding"][0] + ) + new_state_dict["fnet.embeddings.token_type_embeddings.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["type"]["embedding"] + ) + new_state_dict["fnet.embeddings.projection.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["hidden_mapping_in"]["kernel"] + ).T + new_state_dict["fnet.embeddings.projection.bias"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["hidden_mapping_in"]["bias"] + ) + new_state_dict["fnet.embeddings.LayerNorm.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["layer_norm"]["scale"] + ) + new_state_dict["fnet.embeddings.LayerNorm.bias"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["layer_norm"]["bias"] + ) + + # Encoder Layers + for layer in range(config.num_hidden_layers): + new_state_dict[f"fnet.encoder.layer.{layer}.fourier.output.LayerNorm.weight"] = torch.tensor( + pretrained_model_params["encoder"][f"encoder_{layer}"]["mixing_layer_norm"]["scale"] + ) + new_state_dict[f"fnet.encoder.layer.{layer}.fourier.output.LayerNorm.bias"] = torch.tensor( + pretrained_model_params["encoder"][f"encoder_{layer}"]["mixing_layer_norm"]["bias"] + ) + + new_state_dict[f"fnet.encoder.layer.{layer}.intermediate.dense.weight"] = torch.tensor( + pretrained_model_params["encoder"][f"feed_forward_{layer}"]["intermediate"]["kernel"] + ).T + new_state_dict[f"fnet.encoder.layer.{layer}.intermediate.dense.bias"] = torch.tensor( + pretrained_model_params["encoder"][f"feed_forward_{layer}"]["intermediate"]["bias"] + ) + + new_state_dict[f"fnet.encoder.layer.{layer}.output.dense.weight"] = torch.tensor( + pretrained_model_params["encoder"][f"feed_forward_{layer}"]["output"]["kernel"] + ).T + new_state_dict[f"fnet.encoder.layer.{layer}.output.dense.bias"] = torch.tensor( + pretrained_model_params["encoder"][f"feed_forward_{layer}"]["output"]["bias"] + ) + + new_state_dict[f"fnet.encoder.layer.{layer}.output.LayerNorm.weight"] = torch.tensor( + pretrained_model_params["encoder"][f"encoder_{layer}"]["output_layer_norm"]["scale"] + ) + new_state_dict[f"fnet.encoder.layer.{layer}.output.LayerNorm.bias"] = torch.tensor( + pretrained_model_params["encoder"][f"encoder_{layer}"]["output_layer_norm"]["bias"] + ) + + # Pooler Layers + new_state_dict["fnet.pooler.dense.weight"] = torch.tensor(pretrained_model_params["encoder"]["pooler"]["kernel"]).T + new_state_dict["fnet.pooler.dense.bias"] = torch.tensor(pretrained_model_params["encoder"]["pooler"]["bias"]) + + # Masked LM Layers + new_state_dict["cls.predictions.transform.dense.weight"] = torch.tensor( + pretrained_model_params["predictions_dense"]["kernel"] + ).T + new_state_dict["cls.predictions.transform.dense.bias"] = torch.tensor( + pretrained_model_params["predictions_dense"]["bias"] + ) + new_state_dict["cls.predictions.transform.LayerNorm.weight"] = torch.tensor( + pretrained_model_params["predictions_layer_norm"]["scale"] + ) + new_state_dict["cls.predictions.transform.LayerNorm.bias"] = torch.tensor( + pretrained_model_params["predictions_layer_norm"]["bias"] + ) + new_state_dict["cls.predictions.decoder.weight"] = torch.tensor( + pretrained_model_params["encoder"]["embedder"]["word"]["embedding"] + ) + new_state_dict["cls.predictions.decoder.bias"] = torch.tensor( + pretrained_model_params["predictions_output"]["output_bias"] + ) + new_state_dict["cls.predictions.bias"] = torch.tensor(pretrained_model_params["predictions_output"]["output_bias"]) + + # Seq Relationship Layers + new_state_dict["cls.seq_relationship.weight"] = torch.tensor( + pretrained_model_params["classification"]["output_kernel"] + ) + new_state_dict["cls.seq_relationship.bias"] = torch.tensor( + pretrained_model_params["classification"]["output_bias"] + ) + + # Load State Dict + fnet_pretraining_model.load_state_dict(new_state_dict) + + # Save PreTrained + print(f"Saving pretrained model to {save_path}") + fnet_pretraining_model.save_pretrained(save_path) + + +if __name__ == "__main__": + parser = argparse.ArgumentParser() + # Required parameters + parser.add_argument( + "--flax_checkpoint_path", default=None, type=str, required=True, help="Path to the TensorFlow checkpoint path." + ) + parser.add_argument( + "--fnet_config_file", + default=None, + type=str, + required=True, + help=( + "The config json file corresponding to the pre-trained FNet model. \n" + "This specifies the model architecture." + ), + ) + parser.add_argument("--save_path", default=None, type=str, required=True, help="Path to the output model.") + args = parser.parse_args() + convert_flax_checkpoint_to_pytorch(args.flax_checkpoint_path, args.fnet_config_file, args.save_path) diff --git a/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/modeling_fnet.py b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/modeling_fnet.py new file mode 100644 index 0000000000000000000000000000000000000000..45042147761d5699f47b7d7e1a0a1ad9e445aa16 --- /dev/null +++ b/openflamingo/lib/python3.10/site-packages/transformers/models/fnet/modeling_fnet.py @@ -0,0 +1,1196 @@ +# coding=utf-8 +# Copyright 2021 Google Research and The HuggingFace Inc. team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +""" PyTorch FNet model.""" + +import warnings +from dataclasses import dataclass +from functools import partial +from typing import Optional, Tuple, Union + +import torch +import torch.utils.checkpoint +from torch import nn +from torch.nn import BCEWithLogitsLoss, CrossEntropyLoss, MSELoss + +from ...utils import is_scipy_available + + +if is_scipy_available(): + from scipy import linalg + +from ...activations import ACT2FN +from ...modeling_outputs import ( + BaseModelOutput, + BaseModelOutputWithPooling, + MaskedLMOutput, + ModelOutput, + MultipleChoiceModelOutput, + NextSentencePredictorOutput, + QuestionAnsweringModelOutput, + SequenceClassifierOutput, + TokenClassifierOutput, +) +from ...modeling_utils import PreTrainedModel +from ...pytorch_utils import apply_chunking_to_forward +from ...utils import ( + add_code_sample_docstrings, + add_start_docstrings, + add_start_docstrings_to_model_forward, + logging, + replace_return_docstrings, +) +from .configuration_fnet import FNetConfig + + +logger = logging.get_logger(__name__) + +_CHECKPOINT_FOR_DOC = "google/fnet-base" +_CONFIG_FOR_DOC = "FNetConfig" + +FNET_PRETRAINED_MODEL_ARCHIVE_LIST = [ + "google/fnet-base", + "google/fnet-large" + # See all FNet models at https://huggingface.co/models?filter=fnet +] + + +# Adapted from https://github.com/google-research/google-research/blob/master/f_net/fourier.py +def _two_dim_matmul(x, matrix_dim_one, matrix_dim_two): + """Applies 2D matrix multiplication to 3D input arrays.""" + seq_length = x.shape[1] + matrix_dim_one = matrix_dim_one[:seq_length, :seq_length] + x = x.type(torch.complex64) + return torch.einsum("bij,jk,ni->bnk", x, matrix_dim_two, matrix_dim_one) + + +# # Adapted from https://github.com/google-research/google-research/blob/master/f_net/fourier.py +def two_dim_matmul(x, matrix_dim_one, matrix_dim_two): + return _two_dim_matmul(x, matrix_dim_one, matrix_dim_two) + + +# Adapted from https://github.com/google-research/google-research/blob/master/f_net/fourier.py +def fftn(x): + """ + Applies n-dimensional Fast Fourier Transform (FFT) to input array. + + Args: + x: Input n-dimensional array. + + Returns: + n-dimensional Fourier transform of input n-dimensional array. + """ + out = x + for axis in reversed(range(x.ndim)[1:]): # We don't need to apply FFT to last axis + out = torch.fft.fft(out, axis=axis) + return out + + +class FNetEmbeddings(nn.Module): + """Construct the embeddings from word, position and token_type embeddings.""" + + def __init__(self, config): + super().__init__() + self.word_embeddings = nn.Embedding(config.vocab_size, config.hidden_size, padding_idx=config.pad_token_id) + self.position_embeddings = nn.Embedding(config.max_position_embeddings, config.hidden_size) + self.token_type_embeddings = nn.Embedding(config.type_vocab_size, config.hidden_size) + + # self.LayerNorm is not snake-cased to stick with TensorFlow model variable name and be able to load + # any TensorFlow checkpoint file + self.LayerNorm = nn.LayerNorm(config.hidden_size, eps=config.layer_norm_eps) + # NOTE: This is the project layer and will be needed. The original code allows for different embedding and different model dimensions. + self.projection = nn.Linear(config.hidden_size, config.hidden_size) + self.dropout = nn.Dropout(config.hidden_dropout_prob) + + # position_ids (1, len position emb) is contiguous in memory and exported when serialized + self.register_buffer( + "position_ids", torch.arange(config.max_position_embeddings).expand((1, -1)), persistent=False + ) + + self.register_buffer( + "token_type_ids", torch.zeros(self.position_ids.size(), dtype=torch.long), persistent=False + ) + + def forward(self, input_ids=None, token_type_ids=None, position_ids=None, inputs_embeds=None): + if input_ids is not None: + input_shape = input_ids.size() + else: + input_shape = inputs_embeds.size()[:-1] + + seq_length = input_shape[1] + + if position_ids is None: + position_ids = self.position_ids[:, :seq_length] + + # Setting the token_type_ids to the registered buffer in constructor where it is all zeros, which usually occurs + # when its auto-generated, registered buffer helps users when tracing the model without passing token_type_ids, solves + # issue #5664 + if token_type_ids is None: + if hasattr(self, "token_type_ids"): + buffered_token_type_ids = self.token_type_ids[:, :seq_length] + buffered_token_type_ids_expanded = buffered_token_type_ids.expand(input_shape[0], seq_length) + token_type_ids = buffered_token_type_ids_expanded + else: + token_type_ids = torch.zeros(input_shape, dtype=torch.long, device=self.position_ids.device) + + if inputs_embeds is None: + inputs_embeds = self.word_embeddings(input_ids) + token_type_embeddings = self.token_type_embeddings(token_type_ids) + + embeddings = inputs_embeds + token_type_embeddings + + position_embeddings = self.position_embeddings(position_ids) + embeddings += position_embeddings + embeddings = self.LayerNorm(embeddings) + embeddings = self.projection(embeddings) + embeddings = self.dropout(embeddings) + return embeddings + + +class FNetBasicFourierTransform(nn.Module): + def __init__(self, config): + super().__init__() + self._init_fourier_transform(config) + + def _init_fourier_transform(self, config): + if not config.use_tpu_fourier_optimizations: + self.fourier_transform = partial(torch.fft.fftn, dim=(1, 2)) + elif config.max_position_embeddings <= 4096: + if is_scipy_available(): + self.register_buffer( + "dft_mat_hidden", torch.tensor(linalg.dft(config.hidden_size), dtype=torch.complex64) + ) + self.register_buffer( + "dft_mat_seq", torch.tensor(linalg.dft(config.tpu_short_seq_length), dtype=torch.complex64) + ) + self.fourier_transform = partial( + two_dim_matmul, matrix_dim_one=self.dft_mat_seq, matrix_dim_two=self.dft_mat_hidden + ) + else: + logging.warning( + "SciPy is needed for DFT matrix calculation and is not found. Using TPU optimized fast fourier" + " transform instead." + ) + self.fourier_transform = fftn + else: + self.fourier_transform = fftn + + def forward(self, hidden_states): + # NOTE: We do not use torch.vmap as it is not integrated into PyTorch stable versions. + # Interested users can modify the code to use vmap from the nightly versions, getting the vmap from here: + # https://pytorch.org/docs/master/generated/torch.vmap.html. Note that fourier transform methods will need + # change accordingly. + + outputs = self.fourier_transform(hidden_states).real + return (outputs,) + + +class FNetBasicOutput(nn.Module): + def __init__(self, config): + super().__init__() + self.LayerNorm = nn.LayerNorm(config.hidden_size, eps=config.layer_norm_eps) + + def forward(self, hidden_states, input_tensor): + hidden_states = self.LayerNorm(input_tensor + hidden_states) + return hidden_states + + +class FNetFourierTransform(nn.Module): + def __init__(self, config): + super().__init__() + self.self = FNetBasicFourierTransform(config) + self.output = FNetBasicOutput(config) + + def forward(self, hidden_states): + self_outputs = self.self(hidden_states) + fourier_output = self.output(self_outputs[0], hidden_states) + outputs = (fourier_output,) + return outputs + + +# Copied from transformers.models.bert.modeling_bert.BertIntermediate with Bert->FNet +class FNetIntermediate(nn.Module): + def __init__(self, config): + super().__init__() + self.dense = nn.Linear(config.hidden_size, config.intermediate_size) + if isinstance(config.hidden_act, str): + self.intermediate_act_fn = ACT2FN[config.hidden_act] + else: + self.intermediate_act_fn = config.hidden_act + + def forward(self, hidden_states: torch.Tensor) -> torch.Tensor: + hidden_states = self.dense(hidden_states) + hidden_states = self.intermediate_act_fn(hidden_states) + return hidden_states + + +# Copied from transformers.models.bert.modeling_bert.BertOutput with Bert->FNet +class FNetOutput(nn.Module): + def __init__(self, config): + super().__init__() + self.dense = nn.Linear(config.intermediate_size, config.hidden_size) + self.LayerNorm = nn.LayerNorm(config.hidden_size, eps=config.layer_norm_eps) + self.dropout = nn.Dropout(config.hidden_dropout_prob) + + def forward(self, hidden_states: torch.Tensor, input_tensor: torch.Tensor) -> torch.Tensor: + hidden_states = self.dense(hidden_states) + hidden_states = self.dropout(hidden_states) + hidden_states = self.LayerNorm(hidden_states + input_tensor) + return hidden_states + + +class FNetLayer(nn.Module): + def __init__(self, config): + super().__init__() + self.chunk_size_feed_forward = config.chunk_size_feed_forward + self.seq_len_dim = 1 # The dimension which has the sequence length + self.fourier = FNetFourierTransform(config) + self.intermediate = FNetIntermediate(config) + self.output = FNetOutput(config) + + def forward(self, hidden_states): + self_fourier_outputs = self.fourier(hidden_states) + fourier_output = self_fourier_outputs[0] + + layer_output = apply_chunking_to_forward( + self.feed_forward_chunk, self.chunk_size_feed_forward, self.seq_len_dim, fourier_output + ) + + outputs = (layer_output,) + + return outputs + + def feed_forward_chunk(self, fourier_output): + intermediate_output = self.intermediate(fourier_output) + layer_output = self.output(intermediate_output, fourier_output) + return layer_output + + +class FNetEncoder(nn.Module): + def __init__(self, config): + super().__init__() + self.config = config + self.layer = nn.ModuleList([FNetLayer(config) for _ in range(config.num_hidden_layers)]) + self.gradient_checkpointing = False + + def forward(self, hidden_states, output_hidden_states=False, return_dict=True): + all_hidden_states = () if output_hidden_states else None + + for i, layer_module in enumerate(self.layer): + if output_hidden_states: + all_hidden_states = all_hidden_states + (hidden_states,) + + if self.gradient_checkpointing and self.training: + + def create_custom_forward(module): + def custom_forward(*inputs): + return module(*inputs) + + return custom_forward + + layer_outputs = torch.utils.checkpoint.checkpoint(create_custom_forward(layer_module), hidden_states) + else: + layer_outputs = layer_module(hidden_states) + + hidden_states = layer_outputs[0] + + if output_hidden_states: + all_hidden_states = all_hidden_states + (hidden_states,) + + if not return_dict: + return tuple(v for v in [hidden_states, all_hidden_states] if v is not None) + + return BaseModelOutput(last_hidden_state=hidden_states, hidden_states=all_hidden_states) + + +# Copied from transformers.models.bert.modeling_bert.BertPooler with Bert->FNet +class FNetPooler(nn.Module): + def __init__(self, config): + super().__init__() + self.dense = nn.Linear(config.hidden_size, config.hidden_size) + self.activation = nn.Tanh() + + def forward(self, hidden_states: torch.Tensor) -> torch.Tensor: + # We "pool" the model by simply taking the hidden state corresponding + # to the first token. + first_token_tensor = hidden_states[:, 0] + pooled_output = self.dense(first_token_tensor) + pooled_output = self.activation(pooled_output) + return pooled_output + + +# Copied from transformers.models.bert.modeling_bert.BertPredictionHeadTransform with Bert->FNet +class FNetPredictionHeadTransform(nn.Module): + def __init__(self, config): + super().__init__() + self.dense = nn.Linear(config.hidden_size, config.hidden_size) + if isinstance(config.hidden_act, str): + self.transform_act_fn = ACT2FN[config.hidden_act] + else: + self.transform_act_fn = config.hidden_act + self.LayerNorm = nn.LayerNorm(config.hidden_size, eps=config.layer_norm_eps) + + def forward(self, hidden_states: torch.Tensor) -> torch.Tensor: + hidden_states = self.dense(hidden_states) + hidden_states = self.transform_act_fn(hidden_states) + hidden_states = self.LayerNorm(hidden_states) + return hidden_states + + +class FNetLMPredictionHead(nn.Module): + def __init__(self, config): + super().__init__() + self.transform = FNetPredictionHeadTransform(config) + + # The output weights are the same as the input embeddings, but there is + # an output-only bias for each token. + self.decoder = nn.Linear(config.hidden_size, config.vocab_size) + + self.bias = nn.Parameter(torch.zeros(config.vocab_size)) + self.decoder.bias = self.bias + + def forward(self, hidden_states): + hidden_states = self.transform(hidden_states) + hidden_states = self.decoder(hidden_states) + return hidden_states + + def _tie_weights(self): + # To tie those two weights if they get disconnected (on TPU or when the bias is resized) + self.bias = self.decoder.bias + + +class FNetOnlyMLMHead(nn.Module): + def __init__(self, config): + super().__init__() + self.predictions = FNetLMPredictionHead(config) + + def forward(self, sequence_output): + prediction_scores = self.predictions(sequence_output) + return prediction_scores + + +# Copied from transformers.models.bert.modeling_bert.BertOnlyNSPHead with Bert->FNet +class FNetOnlyNSPHead(nn.Module): + def __init__(self, config): + super().__init__() + self.seq_relationship = nn.Linear(config.hidden_size, 2) + + def forward(self, pooled_output): + seq_relationship_score = self.seq_relationship(pooled_output) + return seq_relationship_score + + +# Copied from transformers.models.bert.modeling_bert.BertPreTrainingHeads with Bert->FNet +class FNetPreTrainingHeads(nn.Module): + def __init__(self, config): + super().__init__() + self.predictions = FNetLMPredictionHead(config) + self.seq_relationship = nn.Linear(config.hidden_size, 2) + + def forward(self, sequence_output, pooled_output): + prediction_scores = self.predictions(sequence_output) + seq_relationship_score = self.seq_relationship(pooled_output) + return prediction_scores, seq_relationship_score + + +class FNetPreTrainedModel(PreTrainedModel): + """ + An abstract class to handle weights initialization and a simple interface for downloading and loading pretrained + models. + """ + + config_class = FNetConfig + base_model_prefix = "fnet" + supports_gradient_checkpointing = True + + def _init_weights(self, module): + """Initialize the weights""" + if isinstance(module, nn.Linear): + # Slightly different from the TF version which uses truncated_normal for initialization + # cf https://github.com/pytorch/pytorch/pull/5617 + module.weight.data.normal_(mean=0.0, std=self.config.initializer_range) + # NOTE: Original code uses same initialization as weights for biases as well. + if module.bias is not None: + module.bias.data.zero_() + elif isinstance(module, nn.Embedding): + module.weight.data.normal_(mean=0.0, std=self.config.initializer_range) + if module.padding_idx is not None: + module.weight.data[module.padding_idx].zero_() + elif isinstance(module, nn.LayerNorm): + module.bias.data.zero_() + module.weight.data.fill_(1.0) + + def _set_gradient_checkpointing(self, module, value=False): + if isinstance(module, FNetEncoder): + module.gradient_checkpointing = value + + +@dataclass +class FNetForPreTrainingOutput(ModelOutput): + """ + Output type of [`FNetForPreTraining`]. + + Args: + loss (*optional*, returned when `labels` is provided, `torch.FloatTensor` of shape `(1,)`): + Total loss as the sum of the masked language modeling loss and the next sequence prediction + (classification) loss. + prediction_logits (`torch.FloatTensor` of shape `(batch_size, sequence_length, config.vocab_size)`): + Prediction scores of the language modeling head (scores for each vocabulary token before SoftMax). + seq_relationship_logits (`torch.FloatTensor` of shape `(batch_size, 2)`): + Prediction scores of the next sequence prediction (classification) head (scores of True/False continuation + before SoftMax). + hidden_states (`tuple(torch.FloatTensor)`, *optional*, returned when `output_hidden_states=True` is passed or when `config.output_hidden_states=True`): + Tuple of `torch.FloatTensor` (one for the output of the embeddings + one for the output of each layer) of + shape `(batch_size, sequence_length, hidden_size)`. Hidden-states of the model at the output of each layer + plus the initial embedding outputs. + """ + + loss: Optional[torch.FloatTensor] = None + prediction_logits: torch.FloatTensor = None + seq_relationship_logits: torch.FloatTensor = None + hidden_states: Optional[Tuple[torch.FloatTensor]] = None + + +FNET_START_DOCSTRING = r""" + This model is a PyTorch [torch.nn.Module](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) sub-class. Use + it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and + behavior. + + Parameters: + config ([`FNetConfig`]): Model configuration class with all the parameters of the model. + Initializing with a config file does not load the weights associated with the model, only the + configuration. Check out the [`~PreTrainedModel.from_pretrained`] method to load the model weights. +""" + +FNET_INPUTS_DOCSTRING = r""" + Args: + input_ids (`torch.LongTensor` of shape `({0})`): + Indices of input sequence tokens in the vocabulary. + + Indices can be obtained using [`AutoTokenizer`]. See [`PreTrainedTokenizer.encode`] and + [`PreTrainedTokenizer.__call__`] for details. + + [What are input IDs?](../glossary#input-ids) + token_type_ids (`torch.LongTensor` of shape `({0})`, *optional*): + Segment token indices to indicate first and second portions of the inputs. Indices are selected in `[0, + 1]`: + + - 0 corresponds to a *sentence A* token, + - 1 corresponds to a *sentence B* token. + + [What are token type IDs?](../glossary#token-type-ids) + position_ids (`torch.LongTensor` of shape `({0})`, *optional*): + Indices of positions of each input sequence tokens in the position embeddings. Selected in the range `[0, + config.max_position_embeddings - 1]`. + + [What are position IDs?](../glossary#position-ids) + + inputs_embeds (`torch.FloatTensor` of shape `({0}, hidden_size)`, *optional*): + Optionally, instead of passing `input_ids` you can choose to directly pass an embedded representation. This + is useful if you want more control over how to convert *input_ids* indices into associated vectors than the + model's internal embedding lookup matrix. + output_hidden_states (`bool`, *optional*): + Whether or not to return the hidden states of all layers. See `hidden_states` under returned tensors for + more detail. + return_dict (`bool`, *optional*): + Whether or not to return a [`~utils.ModelOutput`] instead of a plain tuple. +""" + + +@add_start_docstrings( + "The bare FNet Model transformer outputting raw hidden-states without any specific head on top.", + FNET_START_DOCSTRING, +) +class FNetModel(FNetPreTrainedModel): + """ + + The model can behave as an encoder, following the architecture described in [FNet: Mixing Tokens with Fourier + Transforms](https://arxiv.org/abs/2105.03824) by James Lee-Thorp, Joshua Ainslie, Ilya Eckstein, Santiago Ontanon. + + """ + + def __init__(self, config, add_pooling_layer=True): + super().__init__(config) + self.config = config + + self.embeddings = FNetEmbeddings(config) + self.encoder = FNetEncoder(config) + + self.pooler = FNetPooler(config) if add_pooling_layer else None + + # Initialize weights and apply final processing + self.post_init() + + def get_input_embeddings(self): + return self.embeddings.word_embeddings + + def set_input_embeddings(self, value): + self.embeddings.word_embeddings = value + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=BaseModelOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.LongTensor] = None, + token_type_ids: Optional[torch.LongTensor] = None, + position_ids: Optional[torch.LongTensor] = None, + inputs_embeds: Optional[torch.FloatTensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[tuple, BaseModelOutput]: + output_hidden_states = ( + output_hidden_states if output_hidden_states is not None else self.config.output_hidden_states + ) + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + if input_ids is not None and inputs_embeds is not None: + raise ValueError("You cannot specify both input_ids and inputs_embeds at the same time") + elif input_ids is not None: + input_shape = input_ids.size() + batch_size, seq_length = input_shape + elif inputs_embeds is not None: + input_shape = inputs_embeds.size()[:-1] + batch_size, seq_length = input_shape + else: + raise ValueError("You have to specify either input_ids or inputs_embeds") + + if ( + self.config.use_tpu_fourier_optimizations + and seq_length <= 4096 + and self.config.tpu_short_seq_length != seq_length + ): + raise ValueError( + "The `tpu_short_seq_length` in FNetConfig should be set equal to the sequence length being passed to" + " the model when using TPU optimizations." + ) + + device = input_ids.device if input_ids is not None else inputs_embeds.device + + if token_type_ids is None: + if hasattr(self.embeddings, "token_type_ids"): + buffered_token_type_ids = self.embeddings.token_type_ids[:, :seq_length] + buffered_token_type_ids_expanded = buffered_token_type_ids.expand(batch_size, seq_length) + token_type_ids = buffered_token_type_ids_expanded + else: + token_type_ids = torch.zeros(input_shape, dtype=torch.long, device=device) + + embedding_output = self.embeddings( + input_ids=input_ids, + position_ids=position_ids, + token_type_ids=token_type_ids, + inputs_embeds=inputs_embeds, + ) + encoder_outputs = self.encoder( + embedding_output, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + sequence_output = encoder_outputs[0] + + pooler_output = self.pooler(sequence_output) if self.pooler is not None else None + + if not return_dict: + return (sequence_output, pooler_output) + encoder_outputs[1:] + + return BaseModelOutputWithPooling( + last_hidden_state=sequence_output, + pooler_output=pooler_output, + hidden_states=encoder_outputs.hidden_states, + ) + + +@add_start_docstrings( + """ + FNet Model with two heads on top as done during the pretraining: a `masked language modeling` head and a `next + sentence prediction (classification)` head. + """, + FNET_START_DOCSTRING, +) +class FNetForPreTraining(FNetPreTrainedModel): + _tied_weights_keys = ["cls.predictions.decoder.bias", "cls.predictions.decoder.weight"] + + def __init__(self, config): + super().__init__(config) + + self.fnet = FNetModel(config) + self.cls = FNetPreTrainingHeads(config) + + # Initialize weights and apply final processing + self.post_init() + + def get_output_embeddings(self): + return self.cls.predictions.decoder + + def set_output_embeddings(self, new_embeddings): + self.cls.predictions.decoder = new_embeddings + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @replace_return_docstrings(output_type=FNetForPreTrainingOutput, config_class=_CONFIG_FOR_DOC) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + next_sentence_label: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, FNetForPreTrainingOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*): + Labels for computing the masked language modeling loss. Indices should be in `[-100, 0, ..., + config.vocab_size]` (see `input_ids` docstring) Tokens with indices set to `-100` are ignored (masked), the + loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]` + next_sentence_label (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for computing the next sequence prediction (classification) loss. Input should be a sequence pair + (see `input_ids` docstring) Indices should be in `[0, 1]`: + + - 0 indicates sequence B is a continuation of sequence A, + - 1 indicates sequence B is a random sequence. + kwargs (`Dict[str, any]`, optional, defaults to *{}*): + Used to hide legacy arguments that have been deprecated. + + Returns: + + Example: + + ```python + >>> from transformers import AutoTokenizer, FNetForPreTraining + >>> import torch + + >>> tokenizer = AutoTokenizer.from_pretrained("google/fnet-base") + >>> model = FNetForPreTraining.from_pretrained("google/fnet-base") + >>> inputs = tokenizer("Hello, my dog is cute", return_tensors="pt") + >>> outputs = model(**inputs) + >>> prediction_logits = outputs.prediction_logits + >>> seq_relationship_logits = outputs.seq_relationship_logits + ```""" + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + sequence_output, pooled_output = outputs[:2] + prediction_scores, seq_relationship_score = self.cls(sequence_output, pooled_output) + + total_loss = None + if labels is not None and next_sentence_label is not None: + loss_fct = CrossEntropyLoss() + masked_lm_loss = loss_fct(prediction_scores.view(-1, self.config.vocab_size), labels.view(-1)) + next_sentence_loss = loss_fct(seq_relationship_score.view(-1, 2), next_sentence_label.view(-1)) + total_loss = masked_lm_loss + next_sentence_loss + + if not return_dict: + output = (prediction_scores, seq_relationship_score) + outputs[2:] + return ((total_loss,) + output) if total_loss is not None else output + + return FNetForPreTrainingOutput( + loss=total_loss, + prediction_logits=prediction_scores, + seq_relationship_logits=seq_relationship_score, + hidden_states=outputs.hidden_states, + ) + + +@add_start_docstrings("""FNet Model with a `language modeling` head on top.""", FNET_START_DOCSTRING) +class FNetForMaskedLM(FNetPreTrainedModel): + _tied_weights_keys = ["cls.predictions.decoder.bias", "cls.predictions.decoder.weight"] + + def __init__(self, config): + super().__init__(config) + + self.fnet = FNetModel(config) + self.cls = FNetOnlyMLMHead(config) + + # Initialize weights and apply final processing + self.post_init() + + def get_output_embeddings(self): + return self.cls.predictions.decoder + + def set_output_embeddings(self, new_embeddings): + self.cls.predictions.decoder = new_embeddings + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=MaskedLMOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, MaskedLMOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*): + Labels for computing the masked language modeling loss. Indices should be in `[-100, 0, ..., + config.vocab_size]` (see `input_ids` docstring) Tokens with indices set to `-100` are ignored (masked), the + loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`. + """ + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + sequence_output = outputs[0] + prediction_scores = self.cls(sequence_output) + + masked_lm_loss = None + if labels is not None: + loss_fct = CrossEntropyLoss() # -100 index = padding token + masked_lm_loss = loss_fct(prediction_scores.view(-1, self.config.vocab_size), labels.view(-1)) + + if not return_dict: + output = (prediction_scores,) + outputs[2:] + return ((masked_lm_loss,) + output) if masked_lm_loss is not None else output + + return MaskedLMOutput(loss=masked_lm_loss, logits=prediction_scores, hidden_states=outputs.hidden_states) + + +@add_start_docstrings( + """FNet Model with a `next sentence prediction (classification)` head on top.""", + FNET_START_DOCSTRING, +) +class FNetForNextSentencePrediction(FNetPreTrainedModel): + def __init__(self, config): + super().__init__(config) + + self.fnet = FNetModel(config) + self.cls = FNetOnlyNSPHead(config) + + # Initialize weights and apply final processing + self.post_init() + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @replace_return_docstrings(output_type=NextSentencePredictorOutput, config_class=_CONFIG_FOR_DOC) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + **kwargs, + ) -> Union[Tuple, NextSentencePredictorOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for computing the next sequence prediction (classification) loss. Input should be a sequence pair + (see `input_ids` docstring). Indices should be in `[0, 1]`: + + - 0 indicates sequence B is a continuation of sequence A, + - 1 indicates sequence B is a random sequence. + + Returns: + + Example: + + ```python + >>> from transformers import AutoTokenizer, FNetForNextSentencePrediction + >>> import torch + + >>> tokenizer = AutoTokenizer.from_pretrained("google/fnet-base") + >>> model = FNetForNextSentencePrediction.from_pretrained("google/fnet-base") + >>> prompt = "In Italy, pizza served in formal settings, such as at a restaurant, is presented unsliced." + >>> next_sentence = "The sky is blue due to the shorter wavelength of blue light." + >>> encoding = tokenizer(prompt, next_sentence, return_tensors="pt") + >>> outputs = model(**encoding, labels=torch.LongTensor([1])) + >>> logits = outputs.logits + >>> assert logits[0, 0] < logits[0, 1] # next sentence was random + ```""" + + if "next_sentence_label" in kwargs: + warnings.warn( + "The `next_sentence_label` argument is deprecated and will be removed in a future version, use" + " `labels` instead.", + FutureWarning, + ) + labels = kwargs.pop("next_sentence_label") + + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + pooled_output = outputs[1] + + seq_relationship_scores = self.cls(pooled_output) + + next_sentence_loss = None + if labels is not None: + loss_fct = CrossEntropyLoss() + next_sentence_loss = loss_fct(seq_relationship_scores.view(-1, 2), labels.view(-1)) + + if not return_dict: + output = (seq_relationship_scores,) + outputs[2:] + return ((next_sentence_loss,) + output) if next_sentence_loss is not None else output + + return NextSentencePredictorOutput( + loss=next_sentence_loss, + logits=seq_relationship_scores, + hidden_states=outputs.hidden_states, + ) + + +@add_start_docstrings( + """ + FNet Model transformer with a sequence classification/regression head on top (a linear layer on top of the pooled + output) e.g. for GLUE tasks. + """, + FNET_START_DOCSTRING, +) +class FNetForSequenceClassification(FNetPreTrainedModel): + def __init__(self, config): + super().__init__(config) + self.num_labels = config.num_labels + self.fnet = FNetModel(config) + + self.dropout = nn.Dropout(config.hidden_dropout_prob) + self.classifier = nn.Linear(config.hidden_size, config.num_labels) + + # Initialize weights and apply final processing + self.post_init() + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=SequenceClassifierOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, SequenceClassifierOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for computing the sequence classification/regression loss. Indices should be in `[0, ..., + config.num_labels - 1]`. If `config.num_labels == 1` a regression loss is computed (Mean-Square loss), If + `config.num_labels > 1` a classification loss is computed (Cross-Entropy). + """ + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + pooled_output = outputs[1] + pooled_output = self.dropout(pooled_output) + logits = self.classifier(pooled_output) + + loss = None + if labels is not None: + if self.config.problem_type is None: + if self.num_labels == 1: + self.config.problem_type = "regression" + elif self.num_labels > 1 and (labels.dtype == torch.long or labels.dtype == torch.int): + self.config.problem_type = "single_label_classification" + else: + self.config.problem_type = "multi_label_classification" + + if self.config.problem_type == "regression": + loss_fct = MSELoss() + if self.num_labels == 1: + loss = loss_fct(logits.squeeze(), labels.squeeze()) + else: + loss = loss_fct(logits, labels) + elif self.config.problem_type == "single_label_classification": + loss_fct = CrossEntropyLoss() + loss = loss_fct(logits.view(-1, self.num_labels), labels.view(-1)) + elif self.config.problem_type == "multi_label_classification": + loss_fct = BCEWithLogitsLoss() + loss = loss_fct(logits, labels) + if not return_dict: + output = (logits,) + outputs[2:] + return ((loss,) + output) if loss is not None else output + + return SequenceClassifierOutput(loss=loss, logits=logits, hidden_states=outputs.hidden_states) + + +@add_start_docstrings( + """ + FNet Model with a multiple choice classification head on top (a linear layer on top of the pooled output and a + softmax) e.g. for RocStories/SWAG tasks. + """, + FNET_START_DOCSTRING, +) +class FNetForMultipleChoice(FNetPreTrainedModel): + def __init__(self, config): + super().__init__(config) + + self.fnet = FNetModel(config) + self.dropout = nn.Dropout(config.hidden_dropout_prob) + self.classifier = nn.Linear(config.hidden_size, 1) + + # Initialize weights and apply final processing + self.post_init() + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, num_choices, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=MultipleChoiceModelOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, MultipleChoiceModelOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for computing the multiple choice classification loss. Indices should be in `[0, ..., + num_choices-1]` where `num_choices` is the size of the second dimension of the input tensors. (See + `input_ids` above) + """ + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + num_choices = input_ids.shape[1] if input_ids is not None else inputs_embeds.shape[1] + + input_ids = input_ids.view(-1, input_ids.size(-1)) if input_ids is not None else None + token_type_ids = token_type_ids.view(-1, token_type_ids.size(-1)) if token_type_ids is not None else None + position_ids = position_ids.view(-1, position_ids.size(-1)) if position_ids is not None else None + inputs_embeds = ( + inputs_embeds.view(-1, inputs_embeds.size(-2), inputs_embeds.size(-1)) + if inputs_embeds is not None + else None + ) + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + pooled_output = outputs[1] + + pooled_output = self.dropout(pooled_output) + logits = self.classifier(pooled_output) + reshaped_logits = logits.view(-1, num_choices) + + loss = None + if labels is not None: + loss_fct = CrossEntropyLoss() + loss = loss_fct(reshaped_logits, labels) + + if not return_dict: + output = (reshaped_logits,) + outputs[2:] + return ((loss,) + output) if loss is not None else output + + return MultipleChoiceModelOutput(loss=loss, logits=reshaped_logits, hidden_states=outputs.hidden_states) + + +@add_start_docstrings( + """ + FNet Model with a token classification head on top (a linear layer on top of the hidden-states output) e.g. for + Named-Entity-Recognition (NER) tasks. + """, + FNET_START_DOCSTRING, +) +class FNetForTokenClassification(FNetPreTrainedModel): + def __init__(self, config): + super().__init__(config) + self.num_labels = config.num_labels + + self.fnet = FNetModel(config) + + self.dropout = nn.Dropout(config.hidden_dropout_prob) + self.classifier = nn.Linear(config.hidden_size, config.num_labels) + + # Initialize weights and apply final processing + self.post_init() + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=TokenClassifierOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + labels: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, TokenClassifierOutput]: + r""" + labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*): + Labels for computing the token classification loss. Indices should be in `[0, ..., config.num_labels - 1]`. + """ + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + sequence_output = outputs[0] + + sequence_output = self.dropout(sequence_output) + logits = self.classifier(sequence_output) + + loss = None + if labels is not None: + loss_fct = CrossEntropyLoss() + # Only keep active parts of the loss + loss = loss_fct(logits.view(-1, self.num_labels), labels.view(-1)) + + if not return_dict: + output = (logits,) + outputs[2:] + return ((loss,) + output) if loss is not None else output + + return TokenClassifierOutput(loss=loss, logits=logits, hidden_states=outputs.hidden_states) + + +@add_start_docstrings( + """ + FNet Model with a span classification head on top for extractive question-answering tasks like SQuAD (a linear + layers on top of the hidden-states output to compute `span start logits` and `span end logits`). + """, + FNET_START_DOCSTRING, +) +class FNetForQuestionAnswering(FNetPreTrainedModel): + def __init__(self, config): + super().__init__(config) + + self.num_labels = config.num_labels + + self.fnet = FNetModel(config) + self.qa_outputs = nn.Linear(config.hidden_size, config.num_labels) + + # Initialize weights and apply final processing + self.post_init() + + @add_start_docstrings_to_model_forward(FNET_INPUTS_DOCSTRING.format("batch_size, sequence_length")) + @add_code_sample_docstrings( + checkpoint=_CHECKPOINT_FOR_DOC, + output_type=QuestionAnsweringModelOutput, + config_class=_CONFIG_FOR_DOC, + ) + def forward( + self, + input_ids: Optional[torch.Tensor] = None, + token_type_ids: Optional[torch.Tensor] = None, + position_ids: Optional[torch.Tensor] = None, + inputs_embeds: Optional[torch.Tensor] = None, + start_positions: Optional[torch.Tensor] = None, + end_positions: Optional[torch.Tensor] = None, + output_hidden_states: Optional[bool] = None, + return_dict: Optional[bool] = None, + ) -> Union[Tuple, QuestionAnsweringModelOutput]: + r""" + start_positions (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for position (index) of the start of the labelled span for computing the token classification loss. + Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence + are not taken into account for computing the loss. + end_positions (`torch.LongTensor` of shape `(batch_size,)`, *optional*): + Labels for position (index) of the end of the labelled span for computing the token classification loss. + Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence + are not taken into account for computing the loss. + """ + return_dict = return_dict if return_dict is not None else self.config.use_return_dict + + outputs = self.fnet( + input_ids, + token_type_ids=token_type_ids, + position_ids=position_ids, + inputs_embeds=inputs_embeds, + output_hidden_states=output_hidden_states, + return_dict=return_dict, + ) + + sequence_output = outputs[0] + + logits = self.qa_outputs(sequence_output) + start_logits, end_logits = logits.split(1, dim=-1) + start_logits = start_logits.squeeze(-1).contiguous() + end_logits = end_logits.squeeze(-1).contiguous() + + total_loss = None + if start_positions is not None and end_positions is not None: + # If we are on multi-GPU, split add a dimension + if len(start_positions.size()) > 1: + start_positions = start_positions.squeeze(-1) + if len(end_positions.size()) > 1: + end_positions = end_positions.squeeze(-1) + # sometimes the start/end positions are outside our model inputs, we ignore these terms + ignored_index = start_logits.size(1) + start_positions = start_positions.clamp(0, ignored_index) + end_positions = end_positions.clamp(0, ignored_index) + + loss_fct = CrossEntropyLoss(ignore_index=ignored_index) + start_loss = loss_fct(start_logits, start_positions) + end_loss = loss_fct(end_logits, end_positions) + total_loss = (start_loss + end_loss) / 2 + + if not return_dict: + output = (start_logits, end_logits) + outputs[2:] + return ((total_loss,) + output) if total_loss is not None else output + + return QuestionAnsweringModelOutput( + loss=total_loss, start_logits=start_logits, end_logits=end_logits, hidden_states=outputs.hidden_states + ) diff --git a/openflamingo/lib/python3.10/site-packages/transformers/models/speecht5/__pycache__/processing_speecht5.cpython-310.pyc b/openflamingo/lib/python3.10/site-packages/transformers/models/speecht5/__pycache__/processing_speecht5.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..cc33a3c9e50260b60a26705aead63f40e5d13234 Binary files /dev/null and b/openflamingo/lib/python3.10/site-packages/transformers/models/speecht5/__pycache__/processing_speecht5.cpython-310.pyc differ