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Thin pybind11 wrapper for NVTX wrappers -- with some bells and whistles attached.

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PyNVTX

A thin python wrapper for the nvToolsExt (NVTX) library, using pybind11. This wrapper is meant to be as thin as possible -- so only provides minimal support. Currently supported features are:

  1. NVTX annotations: nvtxRangePushA and nvtxRangePop
  2. Function decorator: PyNVTX.annotate
  3. Automatic decorator generation PyNVTX.annotate_all_methods(<class name>)

Installation

Ensure that the nvcc is in your PATH -- or alternatively ensure that the CUDAHOME environment variable points to your local CUDA install. To install, either

pip install PyNVTX

or clone this repo and

python setup.py install

This Won't Break If You Don't Have CUDA

You know what would suck? If including PyNVTX required CUDA to be installed? Why? There are loads of applications that support CUDA, if available. And default to the CPU-only version otherwise. PyNVTX is the same. If nvcc in not in your PATH (nor in your CUDAHOME), then you'll see this warning:

 *** WARNING: The nvcc binary could not be located in your $PATH. Either add it to your path, or set $CUDAHOME

(note that it will not warn you if you're installing with pip) and PyNVTX will still install (it just won't do anything). You can check if a local version of PyNVTX has been built with CUDA support by checking:

PyNVTX.cuda_enabled # True if compiled with CUDA support

NVTX Markers (nvtxRangePushA / nvtxRangePop)

import PyNVTX as nvtx

nvtx.RangePushA("Doing some work")

# code to time goes here

nvtx.RangePop()

Function Decorator

The PyNVTX.annotate will put RangePushA and RangePop the the beginning and of the function call:

import PyNVTX as nvtx

@nvtx.annotate("test_function")
def test():
    # You code goes here

Automatic Instrumentation

The PyNVTX.annotate_all_methods will automatically decorate all methods in a class, as well as all methods it inherits. A guard prevents accidentally decorating any method twice. Eg.:

import PyNVTX as nvtx

class MyClassA(object):
    def __init__(self):
        pass

    def f(self):
        pass

class MyClassB(MyClassA):
    def __init__(self):
        pass

    def g(self):
        pass


nvtx.annotate_all_methods(MyClassB)

Will instrument MyClassB's __init__, as well as f and g, but not MyClassA's __init__.

Adding a class/method name to PyNVTX.REGISTRY will prevent it from being instrumented by PyNVTX.annotate_all_methods. For example:

nvtx.REGISTRY.add(MyClassB, "f") # note the method name is a string
nvtx.annotate_all_methods(MyClassB)

will not instrument f.

Example Code

To get you started, take a look at test/test-nvtx.py