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apache--tvm/python/tvm/relax/backend/contrib/tensorrt.py
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chore: import upstream snapshot with attribution
2026-07-13 13:36:25 +08:00

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Python

# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
# under the License.
"""Pattern table and partitioning for the TensorRT BYOC backend.
The composite name of each pattern is "tensorrt.<op>", matching the runtime
converter registered under the same name (the converters are keyed by
"tensorrt." + op_name). ``partition_for_tensorrt`` carves the matched subgraphs
out of the module and annotates them for the ``tensorrt`` codegen.
"""
from collections.abc import Mapping
from tvm.ir import IRModule
from tvm.relax.dpl.pattern import DFPattern, is_op, wildcard
from tvm.relax.transform import FuseOpsByPattern, MergeCompositeFunctions
from ..pattern_registry import get_patterns_with_prefix, register_patterns
Pattern = tuple[str, DFPattern, Mapping[str, DFPattern]]
def _op_pattern(composite_name: str, op_name: str, num_args: int) -> Pattern:
"""A pattern matching a single op called with ``num_args`` wildcard arguments."""
args = [wildcard() for _ in range(num_args)]
return (composite_name, is_op(op_name)(*args), {})
def _tensorrt_patterns() -> list[Pattern]:
patterns: list[Pattern] = []
# Activations and unary elementwise ops (single tensor argument).
for composite, op in [
("tensorrt.nn.relu", "relax.nn.relu"),
("tensorrt.sigmoid", "relax.sigmoid"),
("tensorrt.tanh", "relax.tanh"),
("tensorrt.exp", "relax.exp"),
("tensorrt.log", "relax.log"),
("tensorrt.sqrt", "relax.sqrt"),
("tensorrt.abs", "relax.abs"),
("tensorrt.negative", "relax.negative"),
("tensorrt.sin", "relax.sin"),
("tensorrt.cos", "relax.cos"),
("tensorrt.atan", "relax.atan"),
("tensorrt.ceil", "relax.ceil"),
("tensorrt.floor", "relax.floor"),
("tensorrt.erf", "relax.erf"),
("tensorrt.nn.softmax", "relax.nn.softmax"),
("tensorrt.nn.batch_flatten", "relax.nn.batch_flatten"),
("tensorrt.expand_dims", "relax.expand_dims"),
("tensorrt.squeeze", "relax.squeeze"),
("tensorrt.transpose", "relax.permute_dims"),
("tensorrt.layout_transform", "relax.layout_transform"),
("tensorrt.nn.max_pool2d", "relax.nn.max_pool2d"),
("tensorrt.nn.avg_pool2d", "relax.nn.avg_pool2d"),
("tensorrt.nn.max_pool3d", "relax.nn.max_pool3d"),
("tensorrt.nn.avg_pool3d", "relax.nn.avg_pool3d"),
("tensorrt.nn.adaptive_avg_pool2d", "relax.nn.adaptive_avg_pool2d"),
("tensorrt.sum", "relax.sum"),
("tensorrt.prod", "relax.prod"),
("tensorrt.max", "relax.max"),
("tensorrt.min", "relax.min"),
("tensorrt.mean", "relax.mean"),
("tensorrt.concatenate", "relax.concat"),
("tensorrt.split", "relax.split"),
]:
patterns.append(_op_pattern(composite, op, 1))
# Binary elementwise ops (two tensor arguments).
for composite, op in [
("tensorrt.add", "relax.add"),
("tensorrt.subtract", "relax.subtract"),
("tensorrt.multiply", "relax.multiply"),
("tensorrt.divide", "relax.divide"),
("tensorrt.power", "relax.power"),
("tensorrt.maximum", "relax.maximum"),
("tensorrt.minimum", "relax.minimum"),
]:
patterns.append(_op_pattern(composite, op, 2))
# Convolutions and matmul (data + weight).
for composite, op in [
("tensorrt.nn.conv1d", "relax.nn.conv1d"),
("tensorrt.nn.conv2d", "relax.nn.conv2d"),
("tensorrt.nn.conv3d", "relax.nn.conv3d"),
("tensorrt.nn.conv2d_transpose", "relax.nn.conv2d_transpose"),
("tensorrt.nn.conv3d_transpose", "relax.nn.conv3d_transpose"),
("tensorrt.nn.batch_matmul", "relax.matmul"),
("tensorrt.reshape", "relax.reshape"),
]:
patterns.append(_op_pattern(composite, op, 2))
# layer_norm (data, gamma, beta) and clip (data, min, max).
patterns.append(_op_pattern("tensorrt.nn.layer_norm", "relax.nn.layer_norm", 3))
patterns.append(_op_pattern("tensorrt.clip", "relax.clip", 3))
# strided_slice is called either with or without the optional strides argument.
patterns.append(_op_pattern("tensorrt.strided_slice", "relax.strided_slice", 5))
patterns.append(_op_pattern("tensorrt.strided_slice", "relax.strided_slice", 4))
return patterns
register_patterns(_tensorrt_patterns())
def partition_for_tensorrt(mod: IRModule) -> IRModule:
"""Partition the module, offloading TensorRT-supported subgraphs.
Parameters
----------
mod : tvm.ir.IRModule
The module to partition. Bind model parameters (e.g. via
``relax.transform.BindParams``) before calling this so that weights are
available to TensorRT as constants.
Returns
-------
mod : tvm.ir.IRModule
The module with TensorRT-supported subgraphs grouped into composite
functions annotated for the ``tensorrt`` codegen.
"""
patterns = get_patterns_with_prefix("tensorrt")
mod = FuseOpsByPattern(patterns, bind_constants=True, annotate_codegen=False)(mod)
mod = MergeCompositeFunctions()(mod)
return mod