azhurkevich commented on code in PR #22131:
URL: https://github.com/apache/beam/pull/22131#discussion_r940467262


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sdks/python/apache_beam/ml/inference/tensorrt_inference.py:
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@@ -0,0 +1,281 @@
+#
+# 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.
+#
+
+# pytype: skip-file
+
+import logging
+import sys
+from typing import Any
+from typing import Dict
+from typing import Iterable
+from typing import Optional
+from typing import Sequence
+from typing import Tuple
+
+import numpy as np
+
+import tensorrt as trt
+from apache_beam.io.filesystems import FileSystems
+from apache_beam.ml.inference.base import ModelHandler
+from apache_beam.ml.inference.base import PredictionResult
+from cuda import cuda
+
+TRT_LOGGER = trt.Logger(trt.Logger.INFO)
+
+logging.basicConfig(level=logging.INFO)
+logging.getLogger("TensorRTEngineHandlerNumPy").setLevel(logging.INFO)
+log = logging.getLogger("TensorRTEngineHandlerNumPy")
+
+
+def _load_engine(engine_path):
+  file = FileSystems.open(engine_path, 'rb')
+  runtime = trt.Runtime(TRT_LOGGER)
+  engine = runtime.deserialize_cuda_engine(file.read())
+  assert engine
+  return engine
+
+
+def _load_onnx(onnx_path):
+  builder = trt.Builder(TRT_LOGGER)
+  network = builder.create_network(
+      flags=1 << int(trt.NetworkDefinitionCreationFlag.EXPLICIT_BATCH))
+  parser = trt.OnnxParser(network, TRT_LOGGER)
+  with FileSystems.open(onnx_path) as f:
+    if not parser.parse(f.read()):
+      log.error("Failed to load ONNX file: %s", onnx_path)
+      for error in range(parser.num_errors):
+        log.error(parser.get_error(error))
+      sys.exit(1)
+  return network, builder
+
+
+def _build_engine(network, builder):
+  config = builder.create_builder_config()
+  runtime = trt.Runtime(TRT_LOGGER)
+  plan = builder.build_serialized_network(network, config)
+  engine = runtime.deserialize_cuda_engine(plan)
+  builder.reset()
+  return engine
+
+
+def _validate_inference_args(inference_args):
+  """Confirms that inference_args is None.
+
+  TensorRT engines do not need extra arguments in their execute_v2() call.
+  However, since inference_args is an argument in the RunInference interface,
+  we want to make sure it is not passed here in TensorRT's implementation of
+  RunInference.
+  """
+  if inference_args:
+    raise ValueError(
+        'inference_args were provided, but should be None because TensorRT '
+        'engines do not need extra arguments in their execute_v2() call.')
+
+
+def ASSERT_DRV(args):
+  """CUDA error checking."""
+  err, ret = args[0], args[1:]
+  if isinstance(err, cuda.CUresult):
+    if err != cuda.CUresult.CUDA_SUCCESS:
+      raise RuntimeError("Cuda Error: {}".format(err))
+  else:
+    raise RuntimeError("Unknown error type: {}".format(err))
+  # Special case so that no unpacking is needed at call-site.
+  if len(ret) == 1:
+    return ret[0]
+  return ret
+
+
+class TensorRTEngine:
+  def __init__(self, engine: trt.ICudaEngine):
+    """Implementation of the TensorRTEngine class which handles
+    allocations associated with TensorRT engine.
+
+    Example Usage::
+
+      TensorRTEngine(engine)
+
+    Args:
+      engine: trt.ICudaEngine object that contains TensorRT engine
+    """
+    self.engine = engine
+    self.context = engine.create_execution_context()
+    self.inputs = []
+    self.outputs = []
+    self.gpu_allocations = []
+    self.cpu_allocations = []
+    """Setup I/O bindings."""
+    for i in range(self.engine.num_bindings):
+      name = self.engine.get_binding_name(i)
+      dtype = self.engine.get_binding_dtype(i)
+      shape = self.engine.get_binding_shape(i)
+      size = trt.volume(shape) * dtype.itemsize
+      allocation = ASSERT_DRV(cuda.cuMemAlloc(size))
+      binding = {
+          'index': i,
+          'name': name,
+          'dtype': np.dtype(trt.nptype(dtype)),
+          'shape': list(shape),
+          'allocation': allocation,
+          'size': size
+      }
+      self.gpu_allocations.append(allocation)
+      if self.engine.binding_is_input(i):
+        self.inputs.append(binding)
+      else:
+        self.outputs.append(binding)
+
+    assert self.context
+    assert len(self.inputs) > 0
+    assert len(self.outputs) > 0
+    assert len(self.gpu_allocations) > 0
+
+    for output in self.outputs:
+      self.cpu_allocations.append(np.zeros(output['shape'], output['dtype']))
+    # Create CUDA Stream.
+    self.stream = ASSERT_DRV(cuda.cuStreamCreate(0))
+
+  def get_engine_attrs(self):
+    """Returns TensorRT engine attributes."""
+    return (
+        self.engine,
+        self.context,
+        self.inputs,
+        self.outputs,
+        self.gpu_allocations,
+        self.cpu_allocations,
+        self.stream)
+
+
+class TensorRTEngineHandlerNumPy(ModelHandler[np.ndarray,
+                                              PredictionResult,
+                                              TensorRTEngine]):
+  def __init__(self, min_batch_size: int, max_batch_size: int, **kwargs):
+    """Implementation of the ModelHandler interface for TensorRT.
+
+    Example Usage::
+
+      pcoll | RunInference(
+          TensorRTEngineHandlerNumPy(
+            min_batch_size=1,
+            max_batch_size=1,
+            engine_path="my_uri"))
+
+    Args:
+      min_batch_size: minimum accepted batch size.
+      max_batch_size: maximum accepted batch size.
+      kwargs: Additional arguments like 'engine_path' and 'onnx_path' are
+        currently supported.
+
+    See https://docs.nvidia.com/deeplearning/tensorrt/api/python_api/
+    for details
+    """
+    self.min_batch_size = min_batch_size
+    self.max_batch_size = max_batch_size
+    if 'engine_path' in kwargs:
+      self.engine_path = kwargs.get('engine_path')
+    elif 'onnx_path' in kwargs:
+      self.onnx_path = kwargs.get('onnx_path')
+
+    trt.init_libnvinfer_plugins(TRT_LOGGER, namespace="")
+
+  def batch_elements_kwargs(self):
+    """Sets min_batch_size and max_batch_size of a TensorRT engine."""
+    return {
+        'min_batch_size': self.min_batch_size,
+        'max_batch_size': self.max_batch_size
+    }
+
+  def load_model(self) -> TensorRTEngine:
+    """Loads and initializes a TensorRT engine for processing."""
+    engine = _load_engine(self.engine_path)
+    return TensorRTEngine(engine)
+
+  def load_onnx(self) -> Tuple[trt.INetworkDefinition, trt.Builder]:
+    """Loads and parses an onnx model for processing."""
+    return _load_onnx(self.onnx_path)
+
+  def build_engine(
+      self, network: trt.INetworkDefinition,
+      builder: trt.Builder) -> TensorRTEngine:
+    """Build an engine according to parsed/created network."""
+    engine = _build_engine(network, builder)
+    return TensorRTEngine(engine)
+
+  def run_inference(

Review Comment:
   @yeandy When you are talking about multi-GPU. What are you envisioning as a 
workflow? Do you want to split TRT model between multiple-GPUs? Or if it is a 
multi-GPU machine you want to selected a specific one and use it for inference? 



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