Skip to main content

HPC Plotter and profiler for benchmarking data made for JAX

Project description

JAX HPC Profiler

JAX HPC Profiler is a tool designed for benchmarking and visualizing performance data in high-performance computing (HPC) environments. It provides functionalities to generate, concatenate, and plot CSV data from various runs.

Table of Contents

Introduction

JAX HPC Profiler allows users to:

  1. Generate CSV files containing performance data.
  2. Concatenate multiple CSV files from different runs.
  3. Plot the performance data for analysis.

Installation

To install the package, run the following command:

pip install jax-hpc-profiler

Generating CSV Files Using the Timer Class

To generate CSV files, you can use the Timer class provided in the jax_hpc_profiler.timer module. This class helps in timing functions and saving the timing results to CSV files.

Example Usage

import jax
from jax_hpc_profiler import Timer

def fcn(m, n, k):
    return jax.numpy.dot(m, n) + k

timer = Timer(save_jaxpr=True)
m = jax.numpy.ones((1000, 1000))
n = jax.numpy.ones((1000, 1000))
k = jax.numpy.ones((1000, 1000))

timer.chrono_jit(fcn, m, n, k)
for i in range(10):
    timer.chrono_fun(fcn, m, n, k)

meta_data = {
  "function": "fcn",
  "precision": "float32",
  "x": 1000,
  "y": 1000,
  "z": 1000,
  "px": 1,
  "py": 1,
  "backend": "NCCL",
  "nodes": 1
}
extra_info = {
    "done": "yes"
}

timer.report("examples/profiling/test.csv", **meta_data,  extra_info=extra_info)

timer.report has sensible defaults and this is the API for the Timer class:

  • csv_filename: The path to the CSV file to save the timing data (required).
  • function: The name of the function being timed (required).
  • x: The size of the input data in the x dimension (required).
  • y: The size of the input data in the y dimension (by default same as x).
  • z: The size of the input data in the z dimension (by default same as x).
  • precision: The precision of the data (default: "float32").
  • px: The number of partitions in the x dimension (default: 1).
  • py: The number of partitions in the y dimension (default: 1).
  • backend: The backend used for computation (default: "NCCL").
  • nodes: The number of nodes used for computation (default: 1).
  • md_filename: The path to the markdown file containing the compiled code and other information (default: {csv_folder}/{x}{px}{py}{backend}{precision}_{function}.md).
  • extra_info: Additional information to include in the report (default: {}

px and py are used to specify the data decomposition. For example, if you have a 2D array of size 1000x1000 and you partition it into 4 parts (2x2), you would set px=2 and py=2.
they can also be used in a single device run to specify batch size.

Some decomposition parameters are generated and that are specific to 3D data decomposition.
slab_yz if the distributed axis is the y-axis.
slab_xy if the distributed axis is the x-axis.
pencils if the distributed axis are the x and y axes.

Multi-GPU Setup

In a multi-GPU setup, the times are automatically averaged across ranks, providing a single performance metric for the entire setup.

CSV Structure

The CSV files should follow a specific structure to ensure proper processing and concatenation. The directory structure should be organized by GPU type, with subdirectories for the number of GPUs and the respective CSV files.

Example Directory Structure

root_directory/
├── gpu_1/
│   ├── 2/
│   │   ├── method_1.csv
│   │   ├── method_2.csv
│   │   └── method_3.csv
│   ├── 4/
│   │   ├── method_1.csv
│   │   ├── method_2.csv
│   │   └── method_3.csv
│   └── 8/
│       ├── method_1.csv
│       ├── method_2.csv
│       └── method_3.csv
└── gpu_2/
    ├── 2/
    │   ├── method_1.csv
    │   ├── method_2.csv
    │   └── method_3.csv
    ├── 4/
    │   ├── method_1.csv
    │   ├── method_2.csv
    │   └── method_3.csv
    └── 8/
        ├── method_1.csv
        ├── method_2.csv
        └── method_3.csv

Concatenating Files from Different Runs

The plot function expects the directory to be organized as described above, but with the different number of GPUs together in the same directory. The concatenate function can be used to concatenate the CSV files from different runs into a single file.

Example Usage

jax-hpc-profiler concat /path/to/root_directory /path/to/output

And the output will be:

out_directory/
├── gpu_1/
│   ├── method_1.csv
│   ├── method_2.csv
│   └── method_3.csv
└── gpu_2/
    ├── method_1.csv
    ├── method_2.csv
    └── method_3.csv

Plotting CSV Data

You can plot the performance data using the plot command. The plotting command provides various options to customize the plots.

Usage

jax-hpc-profiler plot -f <csv_files> [options]

Options

  • -f, --csv_files: List of CSV files to plot (required).
  • -g, --gpus: List of number of GPUs to plot.
  • -d, --data_size: List of data sizes to plot.
  • -fd, --filter_pdims: List of pdims to filter (e.g., 1x4 2x2 4x8).
  • -ps, --pdim_strategy: Strategy for plotting pdims. This argument can be multiple ones (plot_all, plot_fastest, slab_yz, slab_xy, pencils).
    • plot_all: Plot every decomposition.
    • plot_fastest: Plot the fastest decomposition.
  • -pr, --precision: Precision to filter by. This argument can be multiple ones (float32, float64).
  • -fn, --function_name: Function names to filter. This argument can be multiple ones.
  • -pt, --plot_times: Time columns to plot (jit_time, min_time, max_time, mean_time, std_time, last_time). Note: You cannot plot memory and time together.
  • -pm, --plot_memory: Memory columns to plot (generated_code, argument_size, output_size, temp_size). Note: You cannot plot memory and time together.
  • -mu, --memory_units: Memory units to plot (KB, MB, GB, TB).
  • -fs, --figure_size: Figure size.
  • -o, --output: Output file (if none then only show plot).
  • -db, --dark_bg: Use dark background for plotting.
  • -pd, --print_decompositions: Print decompositions on plot (experimental).
  • -b, --backends: List of backends to include. This argument can be multiple ones.
  • -sc, --scaling: Scaling type (Weak, Strong).
  • -l, --label_text: Custom label for the plot. You can use placeholders: %decomposition% (or %p%), %precision% (or %pr%), %plot_name% (or %pn%), %backend% (or %b%), %node% (or %n%), %methodname% (or %m%).

Examples

The repository includes examples for both profiling and plotting.

Profiling Example

See the examples/profiling directory for profiling examples, including function.py, test.csv, and the generated markdown report.

Plotting Example

See the examples/plotting directory for plotting examples, including generator.py, sample_data1.csv, sample_data2.csv, and sample_data3.csv.

a multi GPU example comparing distributed FFT can be found here jaxdecomp-bechmarks

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

jax_hpc_profiler-0.2.12.tar.gz (53.5 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

jax_hpc_profiler-0.2.12-py3-none-any.whl (40.9 kB view details)

Uploaded Python 3

File details

Details for the file jax_hpc_profiler-0.2.12.tar.gz.

File metadata

  • Download URL: jax_hpc_profiler-0.2.12.tar.gz
  • Upload date:
  • Size: 53.5 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.12.9

File hashes

Hashes for jax_hpc_profiler-0.2.12.tar.gz
Algorithm Hash digest
SHA256 9793283029e0e96ddbb9c897ded638c5e8d16fd220431d7fc69a6531b0685f7e
MD5 66f584aed370b137a0a03bfdb8a8b0ae
BLAKE2b-256 b29a84566b475578fe54b0b3bde3c49db532f7f0a9d9ca125f350a58d247f169

See more details on using hashes here.

Provenance

The following attestation bundles were made for jax_hpc_profiler-0.2.12.tar.gz:

Publisher: python-publish.yml on ASKabalan/jax-hpc-profiler

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file jax_hpc_profiler-0.2.12-py3-none-any.whl.

File metadata

File hashes

Hashes for jax_hpc_profiler-0.2.12-py3-none-any.whl
Algorithm Hash digest
SHA256 72d12bb700b42d6e937320b2b9263b97efa06048575433b1024e3b59a2506a0c
MD5 05c8c3166e62f2f632f07685f13abde4
BLAKE2b-256 05ba8813537ed3c05261f1163e5efbe03cfe75a72473eeda929cff72b6a4889b

See more details on using hashes here.

Provenance

The following attestation bundles were made for jax_hpc_profiler-0.2.12-py3-none-any.whl:

Publisher: python-publish.yml on ASKabalan/jax-hpc-profiler

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page