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[DOCS] Add intro tutorial (apache#45)
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""" | ||
Get Started with NNVM | ||
===================== | ||
**Author**: `Tianqi Chen <https://tqchen.github.io/>`_ | ||
This article is an introductory tutorial to workflow in NNVM. | ||
""" | ||
import nnvm.compiler | ||
import nnvm.symbol as sym | ||
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###################################################################### | ||
# Declare Computation | ||
# ------------------- | ||
# We start by describing our need using computational graph. | ||
# Most deep learning frameworks use computation graph to describe | ||
# their computation. In this example, we directly use | ||
# NNVM's API to construct the computational graph. | ||
# | ||
# .. note:: | ||
# | ||
# In a typical deep learning compilation workflow, | ||
# we can get the models from :any:`nnvm.frontend` | ||
# | ||
# The following code snippet describes :math:`z = x + \sqrt{y}` | ||
# and creates a nnvm graph from the description. | ||
# We can print out the graph ir to check the graph content. | ||
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x = sym.Variable("x") | ||
y = sym.Variable("y") | ||
z = sym.elemwise_add(x, sym.sqrt(y)) | ||
compute_graph = nnvm.graph.create(z) | ||
print("-------compute graph-------") | ||
print(compute_graph.ir()) | ||
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###################################################################### | ||
# Compile | ||
# ------- | ||
# We can call :any:`nnvm.compiler.build` to compile the graph. | ||
# The build function takes a shape parameter which specifies the | ||
# input shape requirement. Here we only need to pass in shape of ``x`` | ||
# and the other one will be inferred automatically by NNVM. | ||
# | ||
# The function returns three values. ``deploy_graph`` contains | ||
# the final compiled graph structure. ``lib`` is a :any:`tvm.module.Module` | ||
# that contains compiled CUDA functions. We do not need the ``params`` | ||
# in this case. | ||
shape = (4,) | ||
deploy_graph, lib, params = nnvm.compiler.build( | ||
compute_graph, target="cuda", shape={"x": shape}, dtype="float32") | ||
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###################################################################### | ||
# We can print out the IR of ``deploy_graph`` to understand what just | ||
# happened under the hood. We can find that ``deploy_graph`` only | ||
# contains a single operator ``tvm_op``. This is because NNVM | ||
# automatically fused the operator together into one operator. | ||
# | ||
print("-------deploy graph-------") | ||
print(deploy_graph.ir()) | ||
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###################################################################### | ||
# Let us also peek into content of ``lib``. | ||
# Typically a compiled TVM CUDA module contains a host module(lib) | ||
# and a device module(``lib.imported_modules[0]``) that contains the CUDA code. | ||
# We print out the the generated device code here. | ||
# This is exactly a fused CUDA version of kernel that the graph points to. | ||
# | ||
print("-------deploy library-------") | ||
print(lib.imported_modules[0].get_source()) | ||
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###################################################################### | ||
# Deploy and Run | ||
# -------------- | ||
# Now that we have have compiled module, let us run it. | ||
# We can use :any:`graph_runtime <tvm.contrib.graph_runtime.create>` | ||
# in tvm to create a deployable :any:`GraphModule <tvm.contrib.graph_runtime.GraphModule>`. | ||
# We can use the :any:`set_input <tvm.contrib.graph_runtime.GraphModule.set_input>`, | ||
# :any:`run <tvm.contrib.graph_runtime.GraphModule.run>` and | ||
# :any:`get_output <tvm.contrib.graph_runtime.GraphModule.get_output>` function | ||
# to set the input, execute the graph and get the output we need. | ||
# | ||
import tvm | ||
import numpy as np | ||
from tvm.contrib import graph_runtime, util | ||
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module = graph_runtime.create(deploy_graph, lib, tvm.gpu(0)) | ||
x_np = np.array([1, 2, 3, 4]).astype("float32") | ||
y_np = np.array([4, 4, 4, 4]).astype("float32") | ||
# set input to the graph module | ||
module.set_input(x=x_np, y=y_np) | ||
# run forward computation | ||
module.run() | ||
# get the first output | ||
out = module.get_output(0, out=tvm.nd.empty(shape)) | ||
print(out.asnumpy()) | ||
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###################################################################### | ||
# Provide Model Parameters | ||
# ------------------------ | ||
# Most deep learning models contains two types of inputs: parameters | ||
# that remains fixed during inference and data input that need to | ||
# change for each inference task. It is helpful to provide these | ||
# information to NNVM. Let us assume that ``y`` is the parameter | ||
# in our example. We can provide the model parameter information | ||
# by the params argument to :any:`nnvm.compiler.build`. | ||
# | ||
deploy_graph, lib, params = nnvm.compiler.build( | ||
compute_graph, target="cuda", shape={"x": shape}, params={"y": y_np}) | ||
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###################################################################### | ||
# This time we will need params value returned by :any:`nnvm.compiler.build`. | ||
# NNVM applys optimization to pre-compute the intermediate values in | ||
# the graph that can be determined by parameters. In this case | ||
# :math:`\sqrt{y}` can be pre-computed. The pre-computed values | ||
# are returned as new params. We can print out the new compiled library | ||
# to confirm that the fused kernel only now contains add. | ||
# | ||
print("-----optimized params-----") | ||
print(params) | ||
print("-------deploy library-------") | ||
print(lib.imported_modules[0].get_source()) | ||
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###################################################################### | ||
# Save the Deployed Module | ||
# ------------------------ | ||
# We can save the ``deploy_graph``, ``lib`` and ``params`` separately | ||
# and load them back later. We can use :any:`tvm.module.Module` to export | ||
# the compiled library. ``deploy_graph`` is saved in json format and ``params`` | ||
# is serialized into a bytearray. | ||
# | ||
temp = util.tempdir() | ||
path_lib = temp.relpath("deploy.so") | ||
lib.export_library(path_lib) | ||
with open(temp.relpath("deploy.json"), "w") as fo: | ||
fo.write(deploy_graph.json()) | ||
with open(temp.relpath("deploy.params"), "wb") as fo: | ||
fo.write(nnvm.compiler.save_param_dict(params)) | ||
print(temp.listdir()) | ||
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###################################################################### | ||
# We can load the module back. | ||
loaded_lib = tvm.module.load(path_lib) | ||
loaded_json = open(temp.relpath("deploy.json")).read() | ||
loaded_params = bytearray(open(temp.relpath("deploy.params"), "rb").read()) | ||
module = graph_runtime.create(loaded_json, loaded_lib, tvm.gpu(0)) | ||
params = nnvm.compiler.load_param_dict(loaded_params) | ||
# directly load from byte array | ||
module.load_params(loaded_params) | ||
module.run(x=x_np) | ||
# get the first output | ||
out = module.get_output(0, out=tvm.nd.empty(shape)) | ||
print(out.asnumpy()) | ||
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###################################################################### | ||
# Deploy using Another Language | ||
# ----------------------------- | ||
# We use python in this example for demonstration. | ||
# We can also deploy the compiled modules with other languages | ||
# supported by TVM such as c++, java, javascript. | ||
# The graph module itself is fully embedded in TVM runtime. | ||
# | ||
# The following block demonstrates how we can directly use TVM's | ||
# runtime API to execute the compiled module. | ||
# You can find similar runtime API in TVMRuntime of other languages. | ||
# | ||
fcreate = tvm.get_global_func("tvm.graph_runtime.create") | ||
ctx = tvm.gpu(0) | ||
gmodule = fcreate(loaded_json, loaded_lib, ctx.device_type, ctx.device_id) | ||
set_input, get_output, run = gmodule["set_input"], gmodule["get_output"], gmodule["run"] | ||
set_input("x", tvm.nd.array(x_np)) | ||
gmodule["load_params"](loaded_params) | ||
run() | ||
out = tvm.nd.empty(shape) | ||
get_output(0, out) | ||
print(out.asnumpy()) |
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