onnxruntime/js/web/lib/wasm/session-handler-inference.ts
Yang Gu c5f3952b68
[js/webgpu] Introduce trace support (#18928)
This is to leverage console.timeStamp to add a single marker to
browsers' (only Chromium and Firefox support it) performance tool. With
this support, we can dump both CPU and GPU timestamps, and use
post-processing tool to clearly understand the calibrated timeline. A
demo tool can be found at https://github.com/webatintel/ort-test, and
more detailed info can be found at

https://docs.google.com/document/d/1TuVxjE8jnELBXdhI4QGFgMnUqQn6Q53QA9y4a_dH688/edit.
2024-01-03 10:13:17 -08:00

132 lines
4.6 KiB
TypeScript

// Copyright (c) Microsoft Corporation. All rights reserved.
// Licensed under the MIT License.
import {readFile} from 'node:fs/promises';
import {InferenceSession, InferenceSessionHandler, SessionHandler, Tensor, TRACE_FUNC_BEGIN, TRACE_FUNC_END} from 'onnxruntime-common';
import {SerializableInternalBuffer, TensorMetadata} from './proxy-messages';
import {copyFromExternalBuffer, createSession, endProfiling, releaseSession, run} from './proxy-wrapper';
import {isGpuBufferSupportedType} from './wasm-common';
export const encodeTensorMetadata = (tensor: Tensor, getName: () => string): TensorMetadata => {
switch (tensor.location) {
case 'cpu':
return [tensor.type, tensor.dims, tensor.data, 'cpu'];
case 'gpu-buffer':
return [tensor.type, tensor.dims, {gpuBuffer: tensor.gpuBuffer}, 'gpu-buffer'];
default:
throw new Error(`invalid data location: ${tensor.location} for ${getName()}`);
}
};
export const decodeTensorMetadata = (tensor: TensorMetadata): Tensor => {
switch (tensor[3]) {
case 'cpu':
return new Tensor(tensor[0], tensor[2], tensor[1]);
case 'gpu-buffer': {
const dataType = tensor[0];
if (!isGpuBufferSupportedType(dataType)) {
throw new Error(`not supported data type: ${dataType} for deserializing GPU tensor`);
}
const {gpuBuffer, download, dispose} = tensor[2];
return Tensor.fromGpuBuffer(gpuBuffer, {dataType, dims: tensor[1], download, dispose});
}
default:
throw new Error(`invalid data location: ${tensor[3]}`);
}
};
export class OnnxruntimeWebAssemblySessionHandler implements InferenceSessionHandler {
private sessionId: number;
inputNames: string[];
outputNames: string[];
async fetchModelAndCopyToWasmMemory(path: string): Promise<SerializableInternalBuffer> {
// fetch model from url and move to wasm heap. The arraybufffer that held the http
// response is freed once we return
const response = await fetch(path);
if (response.status !== 200) {
throw new Error(`failed to load model: ${path}`);
}
const arrayBuffer = await response.arrayBuffer();
return copyFromExternalBuffer(new Uint8Array(arrayBuffer));
}
async loadModel(pathOrBuffer: string|Uint8Array, options?: InferenceSession.SessionOptions): Promise<void> {
TRACE_FUNC_BEGIN();
let model: Parameters<typeof createSession>[0];
if (typeof pathOrBuffer === 'string') {
if (typeof process !== 'undefined' && process.versions && process.versions.node) {
// node
model = await readFile(pathOrBuffer);
} else {
// browser
// fetch model and copy to wasm heap.
model = await this.fetchModelAndCopyToWasmMemory(pathOrBuffer);
}
} else {
model = pathOrBuffer;
}
[this.sessionId, this.inputNames, this.outputNames] = await createSession(model, options);
TRACE_FUNC_END();
}
async dispose(): Promise<void> {
return releaseSession(this.sessionId);
}
async run(feeds: SessionHandler.FeedsType, fetches: SessionHandler.FetchesType, options: InferenceSession.RunOptions):
Promise<SessionHandler.ReturnType> {
TRACE_FUNC_BEGIN();
const inputArray: Tensor[] = [];
const inputIndices: number[] = [];
Object.entries(feeds).forEach(kvp => {
const name = kvp[0];
const tensor = kvp[1];
const index = this.inputNames.indexOf(name);
if (index === -1) {
throw new Error(`invalid input '${name}'`);
}
inputArray.push(tensor);
inputIndices.push(index);
});
const outputArray: Array<Tensor|null> = [];
const outputIndices: number[] = [];
Object.entries(fetches).forEach(kvp => {
const name = kvp[0];
const tensor = kvp[1];
const index = this.outputNames.indexOf(name);
if (index === -1) {
throw new Error(`invalid output '${name}'`);
}
outputArray.push(tensor);
outputIndices.push(index);
});
const inputs =
inputArray.map((t, i) => encodeTensorMetadata(t, () => `input "${this.inputNames[inputIndices[i]]}"`));
const outputs = outputArray.map(
(t, i) => t ? encodeTensorMetadata(t, () => `output "${this.outputNames[outputIndices[i]]}"`) : null);
const results = await run(this.sessionId, inputIndices, inputs, outputIndices, outputs, options);
const resultMap: SessionHandler.ReturnType = {};
for (let i = 0; i < results.length; i++) {
resultMap[this.outputNames[outputIndices[i]]] = outputArray[i] ?? decodeTensorMetadata(results[i]);
}
TRACE_FUNC_END();
return resultMap;
}
startProfiling(): void {
// TODO: implement profiling
}
endProfiling(): void {
void endProfiling(this.sessionId);
}
}