| """ |
| NetCDF reader/writer module. |
| |
| This module is used to read and create NetCDF files. NetCDF files are |
| accessed through the `netcdf_file` object. Data written to and from NetCDF |
| files are contained in `netcdf_variable` objects. Attributes are given |
| as member variables of the `netcdf_file` and `netcdf_variable` objects. |
| |
| This module implements the Scientific.IO.NetCDF API to read and create |
| NetCDF files. The same API is also used in the PyNIO and pynetcdf |
| modules, allowing these modules to be used interchangeably when working |
| with NetCDF files. |
| |
| Only NetCDF3 is supported here; for NetCDF4 see |
| `netCDF4-python <http://unidata.github.io/netcdf4-python/>`__, |
| which has a similar API. |
| |
| """ |
|
|
| |
| |
| |
| |
|
|
| |
| |
| |
| |
| |
| |
| |
|
|
|
|
| __all__ = ['netcdf_file', 'netcdf_variable'] |
|
|
|
|
| import warnings |
| import weakref |
| from operator import mul |
| from platform import python_implementation |
|
|
| import mmap as mm |
|
|
| import numpy as np |
| from numpy import frombuffer, dtype, empty, array, asarray |
| from numpy import little_endian as LITTLE_ENDIAN |
| from functools import reduce |
|
|
|
|
| IS_PYPY = python_implementation() == 'PyPy' |
|
|
| ABSENT = b'\x00\x00\x00\x00\x00\x00\x00\x00' |
| ZERO = b'\x00\x00\x00\x00' |
| NC_BYTE = b'\x00\x00\x00\x01' |
| NC_CHAR = b'\x00\x00\x00\x02' |
| NC_SHORT = b'\x00\x00\x00\x03' |
| NC_INT = b'\x00\x00\x00\x04' |
| NC_FLOAT = b'\x00\x00\x00\x05' |
| NC_DOUBLE = b'\x00\x00\x00\x06' |
| NC_DIMENSION = b'\x00\x00\x00\n' |
| NC_VARIABLE = b'\x00\x00\x00\x0b' |
| NC_ATTRIBUTE = b'\x00\x00\x00\x0c' |
| FILL_BYTE = b'\x81' |
| FILL_CHAR = b'\x00' |
| FILL_SHORT = b'\x80\x01' |
| FILL_INT = b'\x80\x00\x00\x01' |
| FILL_FLOAT = b'\x7C\xF0\x00\x00' |
| FILL_DOUBLE = b'\x47\x9E\x00\x00\x00\x00\x00\x00' |
|
|
| TYPEMAP = {NC_BYTE: ('b', 1), |
| NC_CHAR: ('c', 1), |
| NC_SHORT: ('h', 2), |
| NC_INT: ('i', 4), |
| NC_FLOAT: ('f', 4), |
| NC_DOUBLE: ('d', 8)} |
|
|
| FILLMAP = {NC_BYTE: FILL_BYTE, |
| NC_CHAR: FILL_CHAR, |
| NC_SHORT: FILL_SHORT, |
| NC_INT: FILL_INT, |
| NC_FLOAT: FILL_FLOAT, |
| NC_DOUBLE: FILL_DOUBLE} |
|
|
| REVERSE = {('b', 1): NC_BYTE, |
| ('B', 1): NC_CHAR, |
| ('c', 1): NC_CHAR, |
| ('h', 2): NC_SHORT, |
| ('i', 4): NC_INT, |
| ('f', 4): NC_FLOAT, |
| ('d', 8): NC_DOUBLE, |
|
|
| |
| |
| ('l', 4): NC_INT, |
| ('S', 1): NC_CHAR} |
|
|
|
|
| class netcdf_file: |
| """ |
| A file object for NetCDF data. |
| |
| A `netcdf_file` object has two standard attributes: `dimensions` and |
| `variables`. The values of both are dictionaries, mapping dimension |
| names to their associated lengths and variable names to variables, |
| respectively. Application programs should never modify these |
| dictionaries. |
| |
| All other attributes correspond to global attributes defined in the |
| NetCDF file. Global file attributes are created by assigning to an |
| attribute of the `netcdf_file` object. |
| |
| Parameters |
| ---------- |
| filename : string or file-like |
| string -> filename |
| mode : {'r', 'w', 'a'}, optional |
| read-write-append mode, default is 'r' |
| mmap : None or bool, optional |
| Whether to mmap `filename` when reading. Default is True |
| when `filename` is a file name, False when `filename` is a |
| file-like object. Note that when mmap is in use, data arrays |
| returned refer directly to the mmapped data on disk, and the |
| file cannot be closed as long as references to it exist. |
| version : {1, 2}, optional |
| version of netcdf to read / write, where 1 means *Classic |
| format* and 2 means *64-bit offset format*. Default is 1. See |
| `here <https://docs.unidata.ucar.edu/nug/current/netcdf_introduction.html#select_format>`__ |
| for more info. |
| maskandscale : bool, optional |
| Whether to automatically scale and/or mask data based on attributes. |
| Default is False. |
| |
| Notes |
| ----- |
| The major advantage of this module over other modules is that it doesn't |
| require the code to be linked to the NetCDF libraries. This module is |
| derived from `pupynere <https://bitbucket.org/robertodealmeida/pupynere/>`_. |
| |
| NetCDF files are a self-describing binary data format. The file contains |
| metadata that describes the dimensions and variables in the file. More |
| details about NetCDF files can be found `here |
| <https://www.unidata.ucar.edu/software/netcdf/guide_toc.html>`__. There |
| are three main sections to a NetCDF data structure: |
| |
| 1. Dimensions |
| 2. Variables |
| 3. Attributes |
| |
| The dimensions section records the name and length of each dimension used |
| by the variables. The variables would then indicate which dimensions it |
| uses and any attributes such as data units, along with containing the data |
| values for the variable. It is good practice to include a |
| variable that is the same name as a dimension to provide the values for |
| that axes. Lastly, the attributes section would contain additional |
| information such as the name of the file creator or the instrument used to |
| collect the data. |
| |
| When writing data to a NetCDF file, there is often the need to indicate the |
| 'record dimension'. A record dimension is the unbounded dimension for a |
| variable. For example, a temperature variable may have dimensions of |
| latitude, longitude and time. If one wants to add more temperature data to |
| the NetCDF file as time progresses, then the temperature variable should |
| have the time dimension flagged as the record dimension. |
| |
| In addition, the NetCDF file header contains the position of the data in |
| the file, so access can be done in an efficient manner without loading |
| unnecessary data into memory. It uses the ``mmap`` module to create |
| Numpy arrays mapped to the data on disk, for the same purpose. |
| |
| Note that when `netcdf_file` is used to open a file with mmap=True |
| (default for read-only), arrays returned by it refer to data |
| directly on the disk. The file should not be closed, and cannot be cleanly |
| closed when asked, if such arrays are alive. You may want to copy data arrays |
| obtained from mmapped Netcdf file if they are to be processed after the file |
| is closed, see the example below. |
| |
| Examples |
| -------- |
| To create a NetCDF file: |
| |
| >>> from scipy.io import netcdf_file |
| >>> import numpy as np |
| >>> f = netcdf_file('simple.nc', 'w') |
| >>> f.history = 'Created for a test' |
| >>> f.createDimension('time', 10) |
| >>> time = f.createVariable('time', 'i', ('time',)) |
| >>> time[:] = np.arange(10) |
| >>> time.units = 'days since 2008-01-01' |
| >>> f.close() |
| |
| Note the assignment of ``arange(10)`` to ``time[:]``. Exposing the slice |
| of the time variable allows for the data to be set in the object, rather |
| than letting ``arange(10)`` overwrite the ``time`` variable. |
| |
| To read the NetCDF file we just created: |
| |
| >>> from scipy.io import netcdf_file |
| >>> f = netcdf_file('simple.nc', 'r') |
| >>> print(f.history) |
| b'Created for a test' |
| >>> time = f.variables['time'] |
| >>> print(time.units) |
| b'days since 2008-01-01' |
| >>> print(time.shape) |
| (10,) |
| >>> print(time[-1]) |
| 9 |
| |
| NetCDF files, when opened read-only, return arrays that refer |
| directly to memory-mapped data on disk: |
| |
| >>> data = time[:] |
| |
| If the data is to be processed after the file is closed, it needs |
| to be copied to main memory: |
| |
| >>> data = time[:].copy() |
| >>> del time |
| >>> f.close() |
| >>> data.mean() |
| 4.5 |
| |
| A NetCDF file can also be used as context manager: |
| |
| >>> from scipy.io import netcdf_file |
| >>> with netcdf_file('simple.nc', 'r') as f: |
| ... print(f.history) |
| b'Created for a test' |
| |
| """ |
| def __init__(self, filename, mode='r', mmap=None, version=1, |
| maskandscale=False): |
| """Initialize netcdf_file from fileobj (str or file-like).""" |
| if mode not in 'rwa': |
| raise ValueError("Mode must be either 'r', 'w' or 'a'.") |
|
|
| if hasattr(filename, 'seek'): |
| self.fp = filename |
| self.filename = 'None' |
| if mmap is None: |
| mmap = False |
| elif mmap and not hasattr(filename, 'fileno'): |
| raise ValueError('Cannot use file object for mmap') |
| else: |
| self.filename = filename |
| omode = 'r+' if mode == 'a' else mode |
| self.fp = open(self.filename, f'{omode}b') |
| if mmap is None: |
| |
| |
| |
| mmap = (not IS_PYPY) |
|
|
| if mode != 'r': |
| |
| mmap = False |
|
|
| self.use_mmap = mmap |
| self.mode = mode |
| self.version_byte = version |
| self.maskandscale = maskandscale |
|
|
| self.dimensions = {} |
| self.variables = {} |
|
|
| self._dims = [] |
| self._recs = 0 |
| self._recsize = 0 |
|
|
| self._mm = None |
| self._mm_buf = None |
| if self.use_mmap: |
| self._mm = mm.mmap(self.fp.fileno(), 0, access=mm.ACCESS_READ) |
| self._mm_buf = np.frombuffer(self._mm, dtype=np.int8) |
|
|
| self._attributes = {} |
|
|
| if mode in 'ra': |
| self._read() |
|
|
| def __setattr__(self, attr, value): |
| |
| |
| try: |
| self._attributes[attr] = value |
| except AttributeError: |
| pass |
| self.__dict__[attr] = value |
|
|
| def close(self): |
| """Closes the NetCDF file.""" |
| if hasattr(self, 'fp') and not self.fp.closed: |
| try: |
| self.flush() |
| finally: |
| self.variables = {} |
| if self._mm_buf is not None: |
| ref = weakref.ref(self._mm_buf) |
| self._mm_buf = None |
| if ref() is None: |
| |
| self._mm.close() |
| else: |
| |
| |
| warnings.warn( |
| "Cannot close a netcdf_file opened with mmap=True, when " |
| "netcdf_variables or arrays referring to its data still " |
| "exist. All data arrays obtained from such files refer " |
| "directly to data on disk, and must be copied before the " |
| "file can be cleanly closed. " |
| "(See netcdf_file docstring for more information on mmap.)", |
| category=RuntimeWarning, stacklevel=2, |
| ) |
| self._mm = None |
| self.fp.close() |
| __del__ = close |
|
|
| def __enter__(self): |
| return self |
|
|
| def __exit__(self, type, value, traceback): |
| self.close() |
|
|
| def createDimension(self, name, length): |
| """ |
| Adds a dimension to the Dimension section of the NetCDF data structure. |
| |
| Note that this function merely adds a new dimension that the variables can |
| reference. The values for the dimension, if desired, should be added as |
| a variable using `createVariable`, referring to this dimension. |
| |
| Parameters |
| ---------- |
| name : str |
| Name of the dimension (Eg, 'lat' or 'time'). |
| length : int |
| Length of the dimension. |
| |
| See Also |
| -------- |
| createVariable |
| |
| """ |
| if length is None and self._dims: |
| raise ValueError("Only first dimension may be unlimited!") |
|
|
| self.dimensions[name] = length |
| self._dims.append(name) |
|
|
| def createVariable(self, name, type, dimensions): |
| """ |
| Create an empty variable for the `netcdf_file` object, specifying its data |
| type and the dimensions it uses. |
| |
| Parameters |
| ---------- |
| name : str |
| Name of the new variable. |
| type : dtype or str |
| Data type of the variable. |
| dimensions : sequence of str |
| List of the dimension names used by the variable, in the desired order. |
| |
| Returns |
| ------- |
| variable : netcdf_variable |
| The newly created ``netcdf_variable`` object. |
| This object has also been added to the `netcdf_file` object as well. |
| |
| See Also |
| -------- |
| createDimension |
| |
| Notes |
| ----- |
| Any dimensions to be used by the variable should already exist in the |
| NetCDF data structure or should be created by `createDimension` prior to |
| creating the NetCDF variable. |
| |
| """ |
| shape = tuple([self.dimensions[dim] for dim in dimensions]) |
| shape_ = tuple([dim or 0 for dim in shape]) |
|
|
| type = dtype(type) |
| typecode, size = type.char, type.itemsize |
| if (typecode, size) not in REVERSE: |
| raise ValueError(f"NetCDF 3 does not support type {type}") |
|
|
| |
| data = empty(shape_, dtype=type.newbyteorder("B")) |
| self.variables[name] = netcdf_variable( |
| data, typecode, size, shape, dimensions, |
| maskandscale=self.maskandscale) |
| return self.variables[name] |
|
|
| def flush(self): |
| """ |
| Perform a sync-to-disk flush if the `netcdf_file` object is in write mode. |
| |
| See Also |
| -------- |
| sync : Identical function |
| |
| """ |
| if hasattr(self, 'mode') and self.mode in 'wa': |
| self._write() |
| sync = flush |
|
|
| def _write(self): |
| self.fp.seek(0) |
| self.fp.write(b'CDF') |
| self.fp.write(array(self.version_byte, '>b').tobytes()) |
|
|
| |
| self._write_numrecs() |
| self._write_dim_array() |
| self._write_gatt_array() |
| self._write_var_array() |
|
|
| def _write_numrecs(self): |
| |
| for var in self.variables.values(): |
| if var.isrec and len(var.data) > self._recs: |
| self.__dict__['_recs'] = len(var.data) |
| self._pack_int(self._recs) |
|
|
| def _write_dim_array(self): |
| if self.dimensions: |
| self.fp.write(NC_DIMENSION) |
| self._pack_int(len(self.dimensions)) |
| for name in self._dims: |
| self._pack_string(name) |
| length = self.dimensions[name] |
| self._pack_int(length or 0) |
| else: |
| self.fp.write(ABSENT) |
|
|
| def _write_gatt_array(self): |
| self._write_att_array(self._attributes) |
|
|
| def _write_att_array(self, attributes): |
| if attributes: |
| self.fp.write(NC_ATTRIBUTE) |
| self._pack_int(len(attributes)) |
| for name, values in attributes.items(): |
| self._pack_string(name) |
| self._write_att_values(values) |
| else: |
| self.fp.write(ABSENT) |
|
|
| def _write_var_array(self): |
| if self.variables: |
| self.fp.write(NC_VARIABLE) |
| self._pack_int(len(self.variables)) |
|
|
| |
| def sortkey(n): |
| v = self.variables[n] |
| if v.isrec: |
| return (-1,) |
| return v._shape |
| variables = sorted(self.variables, key=sortkey, reverse=True) |
|
|
| |
| for name in variables: |
| self._write_var_metadata(name) |
| |
| |
| self.__dict__['_recsize'] = sum([ |
| var._vsize for var in self.variables.values() |
| if var.isrec]) |
| |
| for name in variables: |
| self._write_var_data(name) |
| else: |
| self.fp.write(ABSENT) |
|
|
| def _write_var_metadata(self, name): |
| var = self.variables[name] |
|
|
| self._pack_string(name) |
| self._pack_int(len(var.dimensions)) |
| for dimname in var.dimensions: |
| dimid = self._dims.index(dimname) |
| self._pack_int(dimid) |
|
|
| self._write_att_array(var._attributes) |
|
|
| nc_type = REVERSE[var.typecode(), var.itemsize()] |
| self.fp.write(nc_type) |
|
|
| if not var.isrec: |
| vsize = var.data.size * var.data.itemsize |
| vsize += -vsize % 4 |
| else: |
| try: |
| vsize = var.data[0].size * var.data.itemsize |
| except IndexError: |
| vsize = 0 |
| rec_vars = len([v for v in self.variables.values() |
| if v.isrec]) |
| if rec_vars > 1: |
| vsize += -vsize % 4 |
| self.variables[name].__dict__['_vsize'] = vsize |
| self._pack_int(vsize) |
|
|
| |
| self.variables[name].__dict__['_begin'] = self.fp.tell() |
| self._pack_begin(0) |
|
|
| def _write_var_data(self, name): |
| var = self.variables[name] |
|
|
| |
| the_beguine = self.fp.tell() |
| self.fp.seek(var._begin) |
| self._pack_begin(the_beguine) |
| self.fp.seek(the_beguine) |
|
|
| |
| if not var.isrec: |
| self.fp.write(var.data.tobytes()) |
| count = var.data.size * var.data.itemsize |
| self._write_var_padding(var, var._vsize - count) |
| else: |
| |
| if self._recs > len(var.data): |
| shape = (self._recs,) + var.data.shape[1:] |
| |
| |
| try: |
| var.data.resize(shape) |
| except ValueError: |
| dtype = var.data.dtype |
| var.__dict__['data'] = np.resize(var.data, shape).astype(dtype) |
|
|
| pos0 = pos = self.fp.tell() |
| for rec in var.data: |
| |
| |
| |
| if not rec.shape and (rec.dtype.byteorder == '<' or |
| (rec.dtype.byteorder == '=' and LITTLE_ENDIAN)): |
| rec = rec.byteswap() |
| self.fp.write(rec.tobytes()) |
| |
| count = rec.size * rec.itemsize |
| self._write_var_padding(var, var._vsize - count) |
| pos += self._recsize |
| self.fp.seek(pos) |
| self.fp.seek(pos0 + var._vsize) |
|
|
| def _write_var_padding(self, var, size): |
| encoded_fill_value = var._get_encoded_fill_value() |
| num_fills = size // len(encoded_fill_value) |
| self.fp.write(encoded_fill_value * num_fills) |
|
|
| def _write_att_values(self, values): |
| if hasattr(values, 'dtype'): |
| nc_type = REVERSE[values.dtype.char, values.dtype.itemsize] |
| else: |
| types = [(int, NC_INT), (float, NC_FLOAT), (str, NC_CHAR)] |
|
|
| |
| if isinstance(values, (str, bytes)): |
| sample = values |
| else: |
| try: |
| sample = values[0] |
| except TypeError: |
| sample = values |
|
|
| for class_, nc_type in types: |
| if isinstance(sample, class_): |
| break |
|
|
| typecode, size = TYPEMAP[nc_type] |
| dtype_ = f'>{typecode}' |
| |
| dtype_ = 'S' if dtype_ == '>c' else dtype_ |
|
|
| values = asarray(values, dtype=dtype_) |
|
|
| self.fp.write(nc_type) |
|
|
| if values.dtype.char == 'S': |
| nelems = values.itemsize |
| else: |
| nelems = values.size |
| self._pack_int(nelems) |
|
|
| if not values.shape and (values.dtype.byteorder == '<' or |
| (values.dtype.byteorder == '=' and LITTLE_ENDIAN)): |
| values = values.byteswap() |
| self.fp.write(values.tobytes()) |
| count = values.size * values.itemsize |
| self.fp.write(b'\x00' * (-count % 4)) |
|
|
| def _read(self): |
| |
| magic = self.fp.read(3) |
| if not magic == b'CDF': |
| raise TypeError(f"Error: {self.filename} is not a valid NetCDF 3 file") |
| self.__dict__['version_byte'] = frombuffer(self.fp.read(1), '>b')[0] |
|
|
| |
| self._read_numrecs() |
| self._read_dim_array() |
| self._read_gatt_array() |
| self._read_var_array() |
|
|
| def _read_numrecs(self): |
| self.__dict__['_recs'] = self._unpack_int() |
|
|
| def _read_dim_array(self): |
| header = self.fp.read(4) |
| if header not in [ZERO, NC_DIMENSION]: |
| raise ValueError("Unexpected header.") |
| count = self._unpack_int() |
|
|
| for dim in range(count): |
| name = self._unpack_string().decode('latin1') |
| length = self._unpack_int() or None |
| self.dimensions[name] = length |
| self._dims.append(name) |
|
|
| def _read_gatt_array(self): |
| for k, v in self._read_att_array().items(): |
| self.__setattr__(k, v) |
|
|
| def _read_att_array(self): |
| header = self.fp.read(4) |
| if header not in [ZERO, NC_ATTRIBUTE]: |
| raise ValueError("Unexpected header.") |
| count = self._unpack_int() |
|
|
| attributes = {} |
| for attr in range(count): |
| name = self._unpack_string().decode('latin1') |
| attributes[name] = self._read_att_values() |
| return attributes |
|
|
| def _read_var_array(self): |
| header = self.fp.read(4) |
| if header not in [ZERO, NC_VARIABLE]: |
| raise ValueError("Unexpected header.") |
|
|
| begin = 0 |
| dtypes = {'names': [], 'formats': []} |
| rec_vars = [] |
| count = self._unpack_int() |
| for var in range(count): |
| (name, dimensions, shape, attributes, |
| typecode, size, dtype_, begin_, vsize) = self._read_var() |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| if shape and shape[0] is None: |
| rec_vars.append(name) |
| |
| |
| self.__dict__['_recsize'] += vsize |
| if begin == 0: |
| begin = begin_ |
| dtypes['names'].append(name) |
| dtypes['formats'].append(str(shape[1:]) + dtype_) |
|
|
| |
| if typecode in 'bch': |
| actual_size = reduce(mul, (1,) + shape[1:]) * size |
| padding = -actual_size % 4 |
| if padding: |
| dtypes['names'].append('_padding_%d' % var) |
| dtypes['formats'].append('(%d,)>b' % padding) |
|
|
| |
| data = None |
| else: |
| |
| a_size = reduce(mul, shape, 1) * size |
| if self.use_mmap: |
| data = self._mm_buf[begin_:begin_+a_size].view(dtype=dtype_) |
| data.shape = shape |
| else: |
| pos = self.fp.tell() |
| self.fp.seek(begin_) |
| data = frombuffer(self.fp.read(a_size), dtype=dtype_ |
| ).copy() |
| data.shape = shape |
| self.fp.seek(pos) |
|
|
| |
| self.variables[name] = netcdf_variable( |
| data, typecode, size, shape, dimensions, attributes, |
| maskandscale=self.maskandscale) |
|
|
| if rec_vars: |
| |
| if len(rec_vars) == 1: |
| dtypes['names'] = dtypes['names'][:1] |
| dtypes['formats'] = dtypes['formats'][:1] |
|
|
| |
| if self.use_mmap: |
| buf = self._mm_buf[begin:begin+self._recs*self._recsize] |
| rec_array = buf.view(dtype=dtypes) |
| rec_array.shape = (self._recs,) |
| else: |
| pos = self.fp.tell() |
| self.fp.seek(begin) |
| rec_array = frombuffer(self.fp.read(self._recs*self._recsize), |
| dtype=dtypes).copy() |
| rec_array.shape = (self._recs,) |
| self.fp.seek(pos) |
|
|
| for var in rec_vars: |
| self.variables[var].__dict__['data'] = rec_array[var] |
|
|
| def _read_var(self): |
| name = self._unpack_string().decode('latin1') |
| dimensions = [] |
| shape = [] |
| dims = self._unpack_int() |
|
|
| for i in range(dims): |
| dimid = self._unpack_int() |
| dimname = self._dims[dimid] |
| dimensions.append(dimname) |
| dim = self.dimensions[dimname] |
| shape.append(dim) |
| dimensions = tuple(dimensions) |
| shape = tuple(shape) |
|
|
| attributes = self._read_att_array() |
| nc_type = self.fp.read(4) |
| vsize = self._unpack_int() |
| begin = [self._unpack_int, self._unpack_int64][self.version_byte-1]() |
|
|
| typecode, size = TYPEMAP[nc_type] |
| dtype_ = f'>{typecode}' |
|
|
| return name, dimensions, shape, attributes, typecode, size, dtype_, begin, vsize |
|
|
| def _read_att_values(self): |
| nc_type = self.fp.read(4) |
| n = self._unpack_int() |
|
|
| typecode, size = TYPEMAP[nc_type] |
|
|
| count = n*size |
| values = self.fp.read(int(count)) |
| self.fp.read(-count % 4) |
|
|
| if typecode != 'c': |
| values = frombuffer(values, dtype=f'>{typecode}').copy() |
| if values.shape == (1,): |
| values = values[0] |
| else: |
| values = values.rstrip(b'\x00') |
| return values |
|
|
| def _pack_begin(self, begin): |
| if self.version_byte == 1: |
| self._pack_int(begin) |
| elif self.version_byte == 2: |
| self._pack_int64(begin) |
|
|
| def _pack_int(self, value): |
| self.fp.write(array(value, '>i').tobytes()) |
| _pack_int32 = _pack_int |
|
|
| def _unpack_int(self): |
| return int(frombuffer(self.fp.read(4), '>i')[0]) |
| _unpack_int32 = _unpack_int |
|
|
| def _pack_int64(self, value): |
| self.fp.write(array(value, '>q').tobytes()) |
|
|
| def _unpack_int64(self): |
| return frombuffer(self.fp.read(8), '>q')[0] |
|
|
| def _pack_string(self, s): |
| count = len(s) |
| self._pack_int(count) |
| self.fp.write(s.encode('latin1')) |
| self.fp.write(b'\x00' * (-count % 4)) |
|
|
| def _unpack_string(self): |
| count = self._unpack_int() |
| s = self.fp.read(count).rstrip(b'\x00') |
| self.fp.read(-count % 4) |
| return s |
|
|
|
|
| class netcdf_variable: |
| """ |
| A data object for netcdf files. |
| |
| `netcdf_variable` objects are constructed by calling the method |
| `netcdf_file.createVariable` on the `netcdf_file` object. `netcdf_variable` |
| objects behave much like array objects defined in numpy, except that their |
| data resides in a file. Data is read by indexing and written by assigning |
| to an indexed subset; the entire array can be accessed by the index ``[:]`` |
| or (for scalars) by using the methods `getValue` and `assignValue`. |
| `netcdf_variable` objects also have attribute `shape` with the same meaning |
| as for arrays, but the shape cannot be modified. There is another read-only |
| attribute `dimensions`, whose value is the tuple of dimension names. |
| |
| All other attributes correspond to variable attributes defined in |
| the NetCDF file. Variable attributes are created by assigning to an |
| attribute of the `netcdf_variable` object. |
| |
| Parameters |
| ---------- |
| data : array_like |
| The data array that holds the values for the variable. |
| Typically, this is initialized as empty, but with the proper shape. |
| typecode : dtype character code |
| Desired data-type for the data array. |
| size : int |
| Desired element size for the data array. |
| shape : sequence of ints |
| The shape of the array. This should match the lengths of the |
| variable's dimensions. |
| dimensions : sequence of strings |
| The names of the dimensions used by the variable. Must be in the |
| same order of the dimension lengths given by `shape`. |
| attributes : dict, optional |
| Attribute values (any type) keyed by string names. These attributes |
| become attributes for the netcdf_variable object. |
| maskandscale : bool, optional |
| Whether to automatically scale and/or mask data based on attributes. |
| Default is False. |
| |
| |
| Attributes |
| ---------- |
| dimensions : list of str |
| List of names of dimensions used by the variable object. |
| isrec, shape |
| Properties |
| |
| See also |
| -------- |
| isrec, shape |
| |
| """ |
| def __init__(self, data, typecode, size, shape, dimensions, |
| attributes=None, |
| maskandscale=False): |
| self.data = data |
| self._typecode = typecode |
| self._size = size |
| self._shape = shape |
| self.dimensions = dimensions |
| self.maskandscale = maskandscale |
|
|
| self._attributes = attributes or {} |
| for k, v in self._attributes.items(): |
| self.__dict__[k] = v |
|
|
| def __setattr__(self, attr, value): |
| |
| |
| try: |
| self._attributes[attr] = value |
| except AttributeError: |
| pass |
| self.__dict__[attr] = value |
|
|
| def isrec(self): |
| """Returns whether the variable has a record dimension or not. |
| |
| A record dimension is a dimension along which additional data could be |
| easily appended in the netcdf data structure without much rewriting of |
| the data file. This attribute is a read-only property of the |
| `netcdf_variable`. |
| |
| """ |
| return bool(self.data.shape) and not self._shape[0] |
| isrec = property(isrec) |
|
|
| def shape(self): |
| """Returns the shape tuple of the data variable. |
| |
| This is a read-only attribute and can not be modified in the |
| same manner of other numpy arrays. |
| """ |
| return self.data.shape |
| shape = property(shape) |
|
|
| def getValue(self): |
| """ |
| Retrieve a scalar value from a `netcdf_variable` of length one. |
| |
| Raises |
| ------ |
| ValueError |
| If the netcdf variable is an array of length greater than one, |
| this exception will be raised. |
| |
| """ |
| return self.data.item() |
|
|
| def assignValue(self, value): |
| """ |
| Assign a scalar value to a `netcdf_variable` of length one. |
| |
| Parameters |
| ---------- |
| value : scalar |
| Scalar value (of compatible type) to assign to a length-one netcdf |
| variable. This value will be written to file. |
| |
| Raises |
| ------ |
| ValueError |
| If the input is not a scalar, or if the destination is not a length-one |
| netcdf variable. |
| |
| """ |
| if not self.data.flags.writeable: |
| |
| |
| |
| |
| |
| raise RuntimeError("variable is not writeable") |
|
|
| self.data[:] = value |
|
|
| def typecode(self): |
| """ |
| Return the typecode of the variable. |
| |
| Returns |
| ------- |
| typecode : char |
| The character typecode of the variable (e.g., 'i' for int). |
| |
| """ |
| return self._typecode |
|
|
| def itemsize(self): |
| """ |
| Return the itemsize of the variable. |
| |
| Returns |
| ------- |
| itemsize : int |
| The element size of the variable (e.g., 8 for float64). |
| |
| """ |
| return self._size |
|
|
| def __getitem__(self, index): |
| if not self.maskandscale: |
| return self.data[index] |
|
|
| data = self.data[index].copy() |
| missing_value = self._get_missing_value() |
| data = self._apply_missing_value(data, missing_value) |
| scale_factor = self._attributes.get('scale_factor') |
| add_offset = self._attributes.get('add_offset') |
| if add_offset is not None or scale_factor is not None: |
| data = data.astype(np.float64) |
| if scale_factor is not None: |
| data = data * scale_factor |
| if add_offset is not None: |
| data += add_offset |
|
|
| return data |
|
|
| def __setitem__(self, index, data): |
| if self.maskandscale: |
| missing_value = ( |
| self._get_missing_value() or |
| getattr(data, 'fill_value', 999999)) |
| self._attributes.setdefault('missing_value', missing_value) |
| self._attributes.setdefault('_FillValue', missing_value) |
| data = ((data - self._attributes.get('add_offset', 0.0)) / |
| self._attributes.get('scale_factor', 1.0)) |
| data = np.ma.asarray(data).filled(missing_value) |
| if self._typecode not in 'fd' and data.dtype.kind == 'f': |
| data = np.round(data) |
|
|
| |
| if self.isrec: |
| if isinstance(index, tuple): |
| rec_index = index[0] |
| else: |
| rec_index = index |
| if isinstance(rec_index, slice): |
| recs = (rec_index.start or 0) + len(data) |
| else: |
| recs = rec_index + 1 |
| if recs > len(self.data): |
| shape = (recs,) + self._shape[1:] |
| |
| |
| try: |
| self.data.resize(shape) |
| except ValueError: |
| dtype = self.data.dtype |
| self.__dict__['data'] = np.resize(self.data, shape).astype(dtype) |
| self.data[index] = data |
|
|
| def _default_encoded_fill_value(self): |
| """ |
| The default encoded fill-value for this Variable's data type. |
| """ |
| nc_type = REVERSE[self.typecode(), self.itemsize()] |
| return FILLMAP[nc_type] |
|
|
| def _get_encoded_fill_value(self): |
| """ |
| Returns the encoded fill value for this variable as bytes. |
| |
| This is taken from either the _FillValue attribute, or the default fill |
| value for this variable's data type. |
| """ |
| if '_FillValue' in self._attributes: |
| fill_value = np.array(self._attributes['_FillValue'], |
| dtype=self.data.dtype).tobytes() |
| if len(fill_value) == self.itemsize(): |
| return fill_value |
| else: |
| return self._default_encoded_fill_value() |
| else: |
| return self._default_encoded_fill_value() |
|
|
| def _get_missing_value(self): |
| """ |
| Returns the value denoting "no data" for this variable. |
| |
| If this variable does not have a missing/fill value, returns None. |
| |
| If both _FillValue and missing_value are given, give precedence to |
| _FillValue. The netCDF standard gives special meaning to _FillValue; |
| missing_value is just used for compatibility with old datasets. |
| """ |
|
|
| if '_FillValue' in self._attributes: |
| missing_value = self._attributes['_FillValue'] |
| elif 'missing_value' in self._attributes: |
| missing_value = self._attributes['missing_value'] |
| else: |
| missing_value = None |
|
|
| return missing_value |
|
|
| @staticmethod |
| def _apply_missing_value(data, missing_value): |
| """ |
| Applies the given missing value to the data array. |
| |
| Returns a numpy.ma array, with any value equal to missing_value masked |
| out (unless missing_value is None, in which case the original array is |
| returned). |
| """ |
|
|
| if missing_value is None: |
| newdata = data |
| else: |
| try: |
| missing_value_isnan = np.isnan(missing_value) |
| except (TypeError, NotImplementedError): |
| |
| missing_value_isnan = False |
|
|
| if missing_value_isnan: |
| mymask = np.isnan(data) |
| else: |
| mymask = (data == missing_value) |
|
|
| newdata = np.ma.masked_where(mymask, data) |
|
|
| return newdata |
|
|
|
|
| NetCDFFile = netcdf_file |
| NetCDFVariable = netcdf_variable |
|
|