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Installation Guide
It's advisable to create a virtual environment using Python 3.10.2.
# Create a virtual environment
$ python3 -m venv chakra_env
# Activate the virtual environment
$ source chakra_env/bin/activate
With the virtual environment activated, install the Chakra package using pip.
# Install package from source
$ pip install .
# Install latest from GitHub
$ pip install https://github.com/mlcommons/chakra/archive/refs/heads/main.zip
# Install specific revision from GitHub
$ pip install https://github.com/mlcommons/chakra/archive/ae7c671db702eb1384015bb2618dc753eed787f2.zip
Installing PARAM is necessary for Chakra to function properly as it imports essential components from it.
$ git clone [email protected]:facebookresearch/param.git
$ cd param/et_replay
$ git checkout 7b19f586dd8b267333114992833a0d7e0d601630
$ pip install .
To uninstall Chakra, use the following command within the virtual environment.
$ pip uninstall chakra
Merge Chakra host execution trace and Chakra device execution trace to encode GPU operators into the output execution trace.
$ chakra_trace_link \
--chakra-host-trace /path/to/chakra_host_trace \
--chakra-device-trace /path/to/chakra_device_trace \
--output-file /path/to/chakra_host_device_trace.json
Converts the execution traces from chakra_trace_link
into traces in the protobuf format. It is responsible for identifying and encoding dependencies for simulation as well. The converter is designed for any downstream simulators that take Chakra execution traces in the protobuf format. It takes an input file in another format and generates a Chakra execution trace output in the protobuf format.
$ chakra_converter PyTorch \
--input /path/to/chakra_host_device_trace.json \
--output /path/to/chakra_trace \
[--simulate] \
- --input: Path to the input file containing the merged Chakra host and device traces in JSON format.
- --output: Path to the output file where the converted Chakra trace will be saved in protobuf format.
- --simulate: (Optional) Enable simulation of operators after the conversion for validation and debugging purposes. This option allows simulation of traces without running them through a simulator. Users can validate the converter or simulator against actual measured values using tools like chrome://tracing or https://perfetto.dev/. Read the duration of the timeline and compare the total execution time against the final simulation time of a trace. Disabled by default because it takes a long time.
The Execution Trace Feeder (et_feeder) is a C++ library designed to feed Chakra traces into any compatible C++ simulator. This library specifically provides dependency-free nodes to a simulator, which must import the feeder as a library. Currently, ASTRA-sim is the only simulator that supports this trace feeder. Below are the commands to run execution traces on ASTRA-sim:
$ git clone --recurse-submodules [email protected]:astra-sim/astra-sim.git
$ cd astra-sim
$ git checkout Chakra
$ git submodule update --init --recursive
$ cd extern/graph_frontend/chakra/
$ git checkout main
$ cd -
$ ./build/astra_analytical/build.sh -c
$ cd extern/graph_frontend/chakra/
$ python -m chakra.et_generator.et_generator\
--num_npus <num_npus>
$ cd -
$ ./run.sh
This tool visualizes execution traces in various formats. Here is an example command:
$ chakra_visualizer \
--input_filename /path/to/chakra_et
--output_filename /path/to/output.[graphml|pdf|dot]
Provides a readable JSON format of execution traces:
$ chakra_jsonizer \
--input_filename /path/to/chakra_et \
--output_filename /path/to/output_json
Visualizes the execution timeline of traces. This tool serves as a reference implementation for visualizing the simulation of Chakra traces. After simulating Chakra traces, you can visualize the timeline of operator executions. Update the simulator to present when operators are issued and completed. Below is the format needed:
issue,<dummy_str>=npu_id,<dummy_str>=curr_cycle,<dummy_str>=node_id,<dummy_str>=node_name
callback,<dummy_str>=npu_id,<dummy_str>=curr_cycle,<dummy_str>=node_id,<dummy_str>=node_name
...
You can visualize the timeline with the command below.
$ chakra_timeline_visualizer \
--input_filename /path/to/input.csv \
--output_filename /path/to/output.json \
--num_npus 4 \
--npu_frequency 1.5GHz
You can open the output file with chrome://tracing
.
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