blob: 83126b50b37974a6c643d5561849e73b2cd90590 [file] [log] [blame]
// Copyright 2018 The Chromium OS Authors. All rights reserved.
// Use of this source code is governed by a BSD-style license that can be
// found in the LICENSE file.
#include "ml/model_impl.h"
#include "ml/request_metrics.h"
#include <utility>
#include <base/bind.h>
#include <base/bind_helpers.h>
#include <tensorflow/contrib/lite/context.h>
#include <tensorflow/contrib/lite/interpreter.h>
#include <tensorflow/contrib/lite/kernels/register.h>
namespace ml {
using ::chromeos::machine_learning::mojom::CreateGraphExecutorResult;
using ::chromeos::machine_learning::mojom::GraphExecutor;
using ::chromeos::machine_learning::mojom::GraphExecutorRequest;
using ::chromeos::machine_learning::mojom::ModelRequest;
// Base name for UMA metrics related to CreateGraphExecutor calls
constexpr char kMetricsNameBase[] = "CreateGraphExecutorResult";
ModelImpl::ModelImpl(const std::map<std::string, int>& required_inputs,
const std::map<std::string, int>& required_outputs,
std::unique_ptr<tflite::FlatBufferModel> model,
ModelRequest request)
: required_inputs_(required_inputs),
required_outputs_(required_outputs),
model_(std::move(model)),
binding_(this, std::move(request)) {}
void ModelImpl::set_connection_error_handler(
base::Closure connection_error_handler) {
binding_.set_connection_error_handler(std::move(connection_error_handler));
}
int ModelImpl::num_graph_executors_for_testing() const {
return graph_executors_.size();
}
void ModelImpl::CreateGraphExecutor(
GraphExecutorRequest request, const CreateGraphExecutorCallback& callback) {
RequestMetrics<CreateGraphExecutorResult> request_metrics(kMetricsNameBase);
request_metrics.StartRecordingPerformanceMetrics();
if (model_ == nullptr) {
LOG(ERROR) << "Null model provided.";
callback.Run(CreateGraphExecutorResult::MODEL_INTERPRETATION_ERROR);
request_metrics.RecordRequestEvent(
CreateGraphExecutorResult::MODEL_INTERPRETATION_ERROR);
return;
}
// Instantiate interpreter.
tflite::ops::builtin::BuiltinOpResolver resolver;
std::unique_ptr<tflite::Interpreter> interpreter;
const TfLiteStatus resolve_status =
tflite::InterpreterBuilder(*model_, resolver)(&interpreter);
if (resolve_status != kTfLiteOk || !interpreter) {
LOG(ERROR) << "Could not resolve model ops.";
callback.Run(CreateGraphExecutorResult::MODEL_INTERPRETATION_ERROR);
request_metrics.RecordRequestEvent(
CreateGraphExecutorResult::MODEL_INTERPRETATION_ERROR);
return;
}
// Allocate memory for tensors.
if (interpreter->AllocateTensors() != kTfLiteOk) {
callback.Run(CreateGraphExecutorResult::MEMORY_ALLOCATION_ERROR);
request_metrics.RecordRequestEvent(
CreateGraphExecutorResult::MEMORY_ALLOCATION_ERROR);
return;
}
// Add graph executor and schedule its deletion on pipe closure.
graph_executors_.emplace_front(required_inputs_, required_outputs_,
std::move(interpreter), std::move(request));
graph_executors_.front().set_connection_error_handler(
base::Bind(&ModelImpl::EraseGraphExecutor, base::Unretained(this),
graph_executors_.begin()));
callback.Run(CreateGraphExecutorResult::OK);
request_metrics.FinishRecordingPerformanceMetrics();
request_metrics.RecordRequestEvent(CreateGraphExecutorResult::OK);
}
void ModelImpl::EraseGraphExecutor(
const std::list<GraphExecutorImpl>::const_iterator it) {
graph_executors_.erase(it);
}
} // namespace ml