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This generates gpu kernel analysis output from nsys rep. Will call nsys
stats -r cuda_gpu_kern_trace, get non-overlapped gpu cycles, then generate
csv and html output for analysis
"""
import argparse
import logging
import os
import shlex
import regex as re
logger = logging.getLogger(__name__)
# helper data class for annotating kernels
def load_engine_model():
"""returns engine_model built from all json files in the current dir"""
import glob
import json
engine_model = {}
json_files = glob.glob(os.path.join(os.path.dirname(__file__) or ".", "*.json"))
for fname in json_files:
with open(fname, encoding="utf-8") as f:
engine_model.update(json.load(f))
return engine_model
class GPUTrace2Graph:
"""
Parses output of nsys report, generates csv and bar chart output
"""
def __init__(self):
import pandas as pd # avoid importing till needed
self.pd = pd
self.pd.options.mode.copy_on_write = True
# helper functions for generating trace->summary csvs
def gen_nonoverlapped_sum_from_gputrace(self, in_file, out_file):
logger.info("loading %s", in_file)
df = self.pd.read_csv(
in_file, usecols=["Start (ns)", "Duration (ns)", "Device", "Strm", "Name"]
)
df["End (ns)"] = df["Start (ns)"] + df["Duration (ns)"]
df = self.sum_non_overlapping_intervals(df)
# get ready to print table with elapsed times per kernel
df["Instances"] = 1
df_sum = df.groupby("Name", as_index=False).agg(
{"Elapsed Time (ns)": "sum", "Duration (ns)": "sum", "Instances": "size"}
)
# generate csv
df_sum["Total Time (sec)"] = df_sum["Duration (ns)"] / 1e9
df_sum["Elapsed Time (sec)"] = df_sum["Elapsed Time (ns)"] / 1e9
df_sum = df_sum.sort_values(by="Elapsed Time (sec)", ascending=False)
df_sum[["Elapsed Time (sec)", "Total Time (sec)", "Instances", "Name"]].to_csv(
out_file, index=False
)
def sum_non_overlapping_intervals(self, df):
"""
returns new sorted df with Elapsed Time (ns) column using
vectorized operations
"""
logger.info("sorting %s trace records by start time", str(df.shape))
# Sort by start time and reset index
df = df.sort_values(by="Start (ns)").reset_index(drop=True)
# Initialize elapsed time as duration
df["Elapsed Time (ns)"] = df["Duration (ns)"]
# Get numpy arrays for faster operations
starts = df["Start (ns)"].values
ends = df["End (ns)"].values
# Keep track of current interval end
current_end = ends[0]
display_units = max(1, int(len(df) / 100))
# Update current_end for overlapping intervals
for i in range(1, len(df)):
if i % display_units == 0:
print(f"processing trace: {int(i/len(df) * 100)} %", end="\r")
if starts[i] <= current_end:
if ends[i] > current_end:
# Partial overlap
df.iloc[i, df.columns.get_loc("Elapsed Time (ns)")] = (
ends[i] - current_end
)
current_end = ends[i]
else:
# Complete overlap
df.iloc[i, df.columns.get_loc("Elapsed Time (ns)")] = 0
else:
# No overlap
current_end = ends[i]
return df
# functions for generating html files
def make_html(self, df, output_dir, title):
"""make html graph from df"""
import plotly.express as px
if df.empty:
return
output_name = os.path.join(output_dir, "result")
if not title:
title = "Model_Engine"
x = "Model_Engine"
y = "Elapsed Time (sec)"
color = "Category"
""" generate kernel mapping table """
# Sort Model_Engine categories by last field after underscore
df["Model_Engine"] = self.pd.Categorical(
df["Model_Engine"],
sorted(df["Model_Engine"].unique(), key=lambda x: x.split("_")[-1]),
)
df[["Model_Engine", color, "Instances", "Name", y]].sort_values(
by=color
).to_csv(f"{output_name}.csv", index=False)
graph = px.histogram(
df.round(2),
x=x,
y=y,
title=(f"{y} for {title}"),
color=color,
text_auto=True,
)
# wrap x axis labels
graph.update_xaxes(automargin=True)
graph.write_html(f"{output_name}.html")
"""
Generate data table with columns per Model_Engine into result.html
"""
pivot_df = df.pivot_table(
values="Elapsed Time (sec)",
index="Category",
columns="Model_Engine",
aggfunc="sum",
observed=False,
).round(2)
# Add sum row at bottom
pivot_df.loc["total_elapsed_sec"] = pivot_df.sum()
pivot_df.fillna("").to_html("temp.html")
with (
open(f"{output_name}.html", "a", encoding="utf-8") as outfile,
open("temp.html", encoding="utf-8") as infile,
):
outfile.write(infile.read())
os.remove("temp.html")
print(
f"Finished generating: \n"
f" {output_name}.html for stack bar chart \n"
f" {output_name}.csv for Kernel-Category mapping"
)
def anno_gpu_kernname(self, df, mapping):
"""add "Category" column"""
def anno_gpu_kernname_helper(name):
for kern_name, val in mapping.items():
if re.search(kern_name, name):
return val
df["Category"] = df["Name"].apply(anno_gpu_kernname_helper)
def make_nongpu_row(self, df, nongpu_sec):
"""this will append non-gpu time entry at end of df"""
nongpu_row = self.pd.DataFrame([df.iloc[-1]])
nongpu_row["Category"] = nongpu_row["Name"] = "CPU(non-GPU)"
nongpu_row["Instances"] = 1
nongpu_row["Elapsed Time (sec)"] = nongpu_sec
return nongpu_row
def is_valid_file(self, base_file):
"""asserts if base_file is non-existent or is empty"""
assert (
os.path.isfile(base_file) and os.path.getsize(base_file) > 0
), f"{base_file} doesn't exist or is empty"
def should_gen_file(self, new_file, base_file):
"""figure out if new file should be generated from base_file"""
self.is_valid_file(base_file)
if (
os.path.exists(new_file)
and (os.path.getmtime(new_file) > os.path.getmtime(base_file))
and (os.path.getsize(base_file) > 0)
):
logger.info("reusing %s", new_file)
return False
else:
logger.info("generating %s", new_file)
return True
def gen_sum_file(self, file, nsys_cmd):
"""
generates sum file from nsys trace with times per kernel and
returns the name of the sum file
"""
import subprocess
file_dir = os.path.dirname(file)
file_name = os.path.basename(file)
if not file_dir:
file_dir = "."
# Walk through trace and get the total non-overlapped time
nsys_stats_file = os.path.join(file_dir, f"{file_name}_cuda_gpu_trace.csv")
sum_file = os.path.join(file_dir, f"{file_name}_cuda_gpu_kernel_tracesum.csv")
if self.should_gen_file(nsys_stats_file, file):
cmd = [
nsys_cmd,
"stats",
"-r",
"cuda_gpu_trace",
file,
"-o",
f"{file_dir}/{file_name}",
]
cmd_str = shlex.join(cmd)
logger.info("+ %s", cmd_str)
# estimate time based on calibrated 240M/min
file_size_mb = os.path.getsize(file) / 1e6
logger.info(
"nsys stats for %.2f MB file expected to take %.2f min",
file_size_mb,
file_size_mb / 240,
)
try:
subprocess.run(cmd, check=True)
except (FileNotFoundError, subprocess.CalledProcessError) as e:
logger.error(
"'%s' failed: %s. Use --nsys_cmd to specify nsys path", cmd_str, e
)
exit(1)
logger.info("generating non-overalapped sum %s", sum_file)
self.gen_nonoverlapped_sum_from_gputrace(nsys_stats_file, sum_file)
self.is_valid_file(sum_file)
logger.info("Finished generating %s", sum_file)
return sum_file
def gen_graph(self, in_file, out_dir, title, nsys_cmd, engine_model):
"""generates graph and csv file from in_file into out_dir"""
# Initialize an empty DataFrame to store combined data
combined_df = self.pd.DataFrame()
for idx, (file, engine, model, total_sec) in enumerate(in_file):
file_dir = os.path.dirname(file)
file_name = os.path.basename(file)
if not file_dir:
file_dir = "."
sum_file = self.gen_sum_file(file, nsys_cmd)
# read kernel summary file
df = self.pd.read_csv(sum_file)
# annotate kernel to their categories
assert engine_model.get(engine), f"engine {engine} unknown"
assert engine_model[engine].get(model), f"model {model} unknown"
# remove nsys-rep from file_name for shorter x-label
file_name = file_name.replace(".nsys-rep", "")
df["Model_Engine"] = f"{model}_{engine}_{file_name}_{idx}"
self.anno_gpu_kernname(df, engine_model[engine][model])
# patch in non-gpu time
gpu_sec = round(df["Elapsed Time (sec)"].sum(), 1)
total_sec = round(float(total_sec), 1)
if total_sec < gpu_sec:
logger.warning(
"Elapsed sec %.2f < GPU sec %.2f resetting Elapsed sec ",
total_sec,
gpu_sec,
)
total_sec = gpu_sec
nongpu_row = self.make_nongpu_row(df, total_sec - gpu_sec)
df = self.pd.concat([df, nongpu_row], ignore_index=True)
combined_df = self.pd.concat([combined_df, df], ignore_index=True)
if out_dir is None:
out_dir = "."
else:
os.makedirs(out_dir, exist_ok=True)
# generate html file
self.make_html(combined_df, out_dir, title)
def parse_tuple(s):
return tuple(s.split(","))
def main():
logging.basicConfig(
format=("%(asctime)s - %(levelname)s - %(message)s"), level=logging.INFO
)
parser = argparse.ArgumentParser(
description=(
"Process nsys rep and generate kernel non-overlapped cycles. \n"
"Example:\n"
"gputrc2graph.py --in_file d1.nsys-rep,sglang,llama,100 \n"
"d2.nsys-rep,sglang,gpt-oss,102 "
'--out_dir results/ --title "Model=gpt-oss SGLANG chart"'
),
formatter_class=argparse.RawDescriptionHelpFormatter,
)
# load supported engine_model
engine_model_supported = load_engine_model()
# Get a string representation of supported engine/model combinations
engine_model_supported_str = ", ".join(
f"{engine}:[{', '.join(models.keys())}]"
for engine, models in engine_model_supported.items()
)
parser.add_argument(
"--in_file",
type=parse_tuple,
nargs="+",
help=(
"list of (nsys-rep, engine, model, elapsed_nonprofiled_sec) "
"separated by space. Elapsed_nonprofiled_sec is runtime without "
"profiling used to calculate non-gpu time. Specify 0 to use "
"elapsed time from nsys-rep but that might inflate non-gpu time. "
f"Available engine:[model] are: {engine_model_supported_str} "
f"Example: --infile d1.nsys-rep,sglan,llama,100 "
"d2.nsys-rep,sglang,gpt-oss,102"
),
required=True,
)
parser.add_argument("--out_dir", help=("output dir for result.csv/html"))
parser.add_argument("--title", help=("title for html chart"))
parser.add_argument(
"--nsys_cmd",
help=("nsys cmd, e.g. /usr/bin/nsys, Default: nsys"),
default="nsys",
)
args = parser.parse_args()
gputrace = GPUTrace2Graph()
gputrace.gen_graph(
args.in_file, args.out_dir, args.title, args.nsys_cmd, engine_model_supported
)
if __name__ == "__main__":
main()
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