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### Description * based on design document & following InferenceSession's run implementation, implemented TrainingSession.runTrainStep ### Motivation and Context * Adding web bindings for training #### Related work * #16521 allowed for training artifacts to be built * #17333 added interfaces for training * #17474 allowed for training package to be built + added training backend to web package * #17891 implementation for createTrainingSession on the TypeScript side **[SHOULD BE MERGED IN BEFORE THIS PR]** --------- Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com> Co-authored-by: Ashwini Khade <askhade@microsoft.com>
558 lines
21 KiB
TypeScript
558 lines
21 KiB
TypeScript
// Copyright (c) Microsoft Corporation. All rights reserved.
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// Licensed under the MIT License.
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import {Env, InferenceSession, Tensor} from 'onnxruntime-common';
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import {SerializableModeldata, SerializableSessionMetadata, SerializableTensorMetadata, TensorMetadata} from './proxy-messages';
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import {setRunOptions} from './run-options';
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import {setSessionOptions} from './session-options';
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import {dataLocationStringToEnum, getTensorElementSize, isGpuBufferSupportedType, logLevelStringToEnum, tensorDataTypeEnumToString, tensorDataTypeStringToEnum, tensorTypeToTypedArrayConstructor} from './wasm-common';
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import {getInstance} from './wasm-factory';
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import {allocWasmString, checkLastError} from './wasm-utils';
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let ortEnvInitialized = false;
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/**
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* get the input/output count of the session.
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* @param sessionHandle the handle representing the session. should be non-zero.
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* @returns a tuple including 2 numbers, representing the input count and output count.
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*/
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const getSessionInputOutputCount = (sessionHandle: number): [number, number] => {
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const wasm = getInstance();
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const stack = wasm.stackSave();
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try {
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const dataOffset = wasm.stackAlloc(8);
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const errorCode = wasm._OrtGetInputOutputCount(sessionHandle, dataOffset, dataOffset + 4);
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if (errorCode !== 0) {
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checkLastError('Can\'t get session input/output count.');
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}
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return [wasm.HEAP32[dataOffset / 4], wasm.HEAP32[dataOffset / 4 + 1]];
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} finally {
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wasm.stackRestore(stack);
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}
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};
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/**
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* initialize ORT environment.
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* @param numThreads SetGlobalIntraOpNumThreads(numThreads)
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* @param loggingLevel CreateEnv(static_cast<OrtLoggingLevel>(logging_level))
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*/
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const initOrt = (numThreads: number, loggingLevel: number): void => {
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const errorCode = getInstance()._OrtInit(numThreads, loggingLevel);
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if (errorCode !== 0) {
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checkLastError('Can\'t initialize onnxruntime.');
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}
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};
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/**
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* intialize runtime environment.
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* @param env passed in the environment config object.
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*/
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export const initRuntime = async(env: Env): Promise<void> => {
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// init ORT
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initOrt(env.wasm.numThreads!, logLevelStringToEnum(env.logLevel));
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if (!BUILD_DEFS.DISABLE_WEBGPU) {
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// init JSEP if available
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// eslint-disable-next-line @typescript-eslint/no-require-imports, @typescript-eslint/no-var-requires
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const initJsep = require('./jsep/init').init;
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await initJsep(getInstance(), env);
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}
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ortEnvInitialized = true;
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};
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/**
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* valid data locations for input/output tensors.
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*/
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type SupportedTensorDataLocationForInputOutput = 'cpu'|'cpu-pinned'|'gpu-buffer';
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type IOBindingState = {
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/**
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* the handle of IO binding.
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*/
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readonly handle: number;
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/**
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* the preferred location for each output tensor.
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*
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* value is one of 'cpu', 'cpu-pinned', 'gpu-buffer'.
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*/
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readonly outputPreferredLocations: readonly SupportedTensorDataLocationForInputOutput[];
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/**
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* enum value of the preferred location for each output tensor.
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*/
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readonly outputPreferredLocationsEncoded: readonly number[];
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};
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/**
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* tuple elements are: InferenceSession ID; inputNamesUTF8Encoded; outputNamesUTF8Encoded; bindingState
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*/
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type SessionMetadata = [
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inferenceSessionId: number, inputNamesUTF8Encoded: number[], outputNamesUTF8Encoded: number[],
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bindingState: IOBindingState|null
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];
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const activeSessions = new Map<number, SessionMetadata>();
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export const isOrtEnvInitialized = (): boolean => ortEnvInitialized;
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/**
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* allocate the memory and memcpy the model bytes, preparing for creating an instance of InferenceSession.
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* @returns a 2-elements tuple - the pointer and size of the allocated buffer
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*/
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export const createSessionAllocate = (model: Uint8Array): [number, number] => {
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const wasm = getInstance();
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const modelDataOffset = wasm._malloc(model.byteLength);
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if (modelDataOffset === 0) {
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throw new Error(`Can't create a session. failed to allocate a buffer of size ${model.byteLength}.`);
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}
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wasm.HEAPU8.set(model, modelDataOffset);
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return [modelDataOffset, model.byteLength];
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};
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/**
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* create an inference session using the prepared buffer containing the model data.
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* @param modelData a 2-elements tuple containing the pointer and size of the model data buffer.
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* @param options an optional session options object.
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* @returns a 3-elements tuple containing [session handle, input names, output names]
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*/
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export const createSessionFinalize =
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(modelData: SerializableModeldata, options?: InferenceSession.SessionOptions): SerializableSessionMetadata => {
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const wasm = getInstance();
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let sessionHandle = 0;
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let sessionOptionsHandle = 0;
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let ioBindingHandle = 0;
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let allocs: number[] = [];
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const inputNamesUTF8Encoded = [];
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const outputNamesUTF8Encoded = [];
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try {
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[sessionOptionsHandle, allocs] = setSessionOptions(options);
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sessionHandle = wasm._OrtCreateSession(modelData[0], modelData[1], sessionOptionsHandle);
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if (sessionHandle === 0) {
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checkLastError('Can\'t create a session.');
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}
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const [inputCount, outputCount] = getSessionInputOutputCount(sessionHandle);
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const inputNames = [];
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const outputNames = [];
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const outputPreferredLocations: SupportedTensorDataLocationForInputOutput[] = [];
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for (let i = 0; i < inputCount; i++) {
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const name = wasm._OrtGetInputName(sessionHandle, i);
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if (name === 0) {
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checkLastError('Can\'t get an input name.');
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}
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inputNamesUTF8Encoded.push(name);
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inputNames.push(wasm.UTF8ToString(name));
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}
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for (let i = 0; i < outputCount; i++) {
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const name = wasm._OrtGetOutputName(sessionHandle, i);
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if (name === 0) {
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checkLastError('Can\'t get an output name.');
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}
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outputNamesUTF8Encoded.push(name);
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const nameString = wasm.UTF8ToString(name);
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outputNames.push(nameString);
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if (!BUILD_DEFS.DISABLE_WEBGPU) {
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const location = typeof options?.preferredOutputLocation === 'string' ?
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options.preferredOutputLocation :
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options?.preferredOutputLocation?.[nameString] ?? 'cpu';
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if (location !== 'cpu' && location !== 'cpu-pinned' && location !== 'gpu-buffer') {
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throw new Error(`Not supported preferred output location: ${location}.`);
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}
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outputPreferredLocations.push(location);
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}
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}
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// use IO binding only when at least one output is preffered to be on GPU.
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let bindingState: IOBindingState|null = null;
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if (!BUILD_DEFS.DISABLE_WEBGPU && outputPreferredLocations.some(l => l === 'gpu-buffer')) {
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ioBindingHandle = wasm._OrtCreateBinding(sessionHandle);
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if (ioBindingHandle === 0) {
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checkLastError('Can\'t create IO binding.');
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}
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bindingState = {
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handle: ioBindingHandle,
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outputPreferredLocations,
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outputPreferredLocationsEncoded: outputPreferredLocations.map(l => dataLocationStringToEnum(l)),
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};
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}
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activeSessions.set(sessionHandle, [sessionHandle, inputNamesUTF8Encoded, outputNamesUTF8Encoded, bindingState]);
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return [sessionHandle, inputNames, outputNames];
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} catch (e) {
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inputNamesUTF8Encoded.forEach(buf => wasm._OrtFree(buf));
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outputNamesUTF8Encoded.forEach(buf => wasm._OrtFree(buf));
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if (ioBindingHandle !== 0) {
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wasm._OrtReleaseBinding(ioBindingHandle);
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}
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if (sessionHandle !== 0) {
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wasm._OrtReleaseSession(sessionHandle);
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}
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throw e;
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} finally {
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wasm._free(modelData[0]);
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if (sessionOptionsHandle !== 0) {
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wasm._OrtReleaseSessionOptions(sessionOptionsHandle);
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}
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allocs.forEach(alloc => wasm._free(alloc));
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}
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};
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/**
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* create an instance of InferenceSession.
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* @returns the metadata of InferenceSession. 0-value handle for failure.
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*/
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export const createSession =
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(model: Uint8Array, options?: InferenceSession.SessionOptions): SerializableSessionMetadata => {
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const modelData: SerializableModeldata = createSessionAllocate(model);
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return createSessionFinalize(modelData, options);
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};
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export const releaseSession = (sessionId: number): void => {
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const wasm = getInstance();
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const session = activeSessions.get(sessionId);
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if (!session) {
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throw new Error(`cannot release session. invalid session id: ${sessionId}`);
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}
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const [sessionHandle, inputNamesUTF8Encoded, outputNamesUTF8Encoded, ioBindingState] = session;
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if (ioBindingState) {
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wasm._OrtReleaseBinding(ioBindingState.handle);
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}
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wasm.jsepUnregisterBuffers?.(sessionId);
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inputNamesUTF8Encoded.forEach(buf => wasm._OrtFree(buf));
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outputNamesUTF8Encoded.forEach(buf => wasm._OrtFree(buf));
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wasm._OrtReleaseSession(sessionHandle);
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activeSessions.delete(sessionId);
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};
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export const prepareInputOutputTensor =
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(tensor: TensorMetadata|null, tensorHandles: number[], allocs: number[], sessionId: number, index: number):
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void => {
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if (!tensor) {
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tensorHandles.push(0);
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return;
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}
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const wasm = getInstance();
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const dataType = tensor[0];
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const dims = tensor[1];
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const location = tensor[3];
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let rawData: number;
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let dataByteLength: number;
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if (dataType === 'string' && location === 'gpu-buffer') {
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throw new Error('String tensor is not supported on GPU.');
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}
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if (location === 'gpu-buffer') {
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const gpuBuffer = tensor[2].gpuBuffer as GPUBuffer;
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const elementSizeInBytes = getTensorElementSize(tensorDataTypeStringToEnum(dataType))!;
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dataByteLength = dims.reduce((a, b) => a * b, 1) * elementSizeInBytes;
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rawData = wasm.jsepRegisterBuffer(sessionId, index, gpuBuffer, dataByteLength);
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} else {
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const data = tensor[2];
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if (Array.isArray(data)) {
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// string tensor
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dataByteLength = 4 * data.length;
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rawData = wasm._malloc(dataByteLength);
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allocs.push(rawData);
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let dataIndex = rawData / 4;
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for (let i = 0; i < data.length; i++) {
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if (typeof data[i] !== 'string') {
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throw new TypeError(`tensor data at index ${i} is not a string`);
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}
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wasm.HEAPU32[dataIndex++] = allocWasmString(data[i], allocs);
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}
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} else {
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dataByteLength = data.byteLength;
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rawData = wasm._malloc(dataByteLength);
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allocs.push(rawData);
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wasm.HEAPU8.set(new Uint8Array(data.buffer, data.byteOffset, dataByteLength), rawData);
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}
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}
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const stack = wasm.stackSave();
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const dimsOffset = wasm.stackAlloc(4 * dims.length);
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try {
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let dimIndex = dimsOffset / 4;
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dims.forEach(d => wasm.HEAP32[dimIndex++] = d);
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const tensor = wasm._OrtCreateTensor(
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tensorDataTypeStringToEnum(dataType), rawData, dataByteLength, dimsOffset, dims.length,
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dataLocationStringToEnum(location));
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if (tensor === 0) {
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checkLastError(`Can't create tensor for input/output. session=${sessionId}, index=${index}.`);
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}
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tensorHandles.push(tensor);
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} finally {
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wasm.stackRestore(stack);
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}
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};
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/**
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* perform inference run
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*/
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export const run = async(
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sessionId: number, inputIndices: number[], inputTensors: TensorMetadata[], outputIndices: number[],
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outputTensors: Array<TensorMetadata|null>, options: InferenceSession.RunOptions): Promise<TensorMetadata[]> => {
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const wasm = getInstance();
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const session = activeSessions.get(sessionId);
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if (!session) {
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throw new Error(`cannot run inference. invalid session id: ${sessionId}`);
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}
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const [sessionHandle, inputNamesUTF8Encoded, outputNamesUTF8Encoded, ioBindingState] = session;
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const inputCount = inputIndices.length;
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const outputCount = outputIndices.length;
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let runOptionsHandle = 0;
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let runOptionsAllocs: number[] = [];
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const inputTensorHandles: number[] = [];
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const outputTensorHandles: number[] = [];
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const inputOutputAllocs: number[] = [];
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const beforeRunStack = wasm.stackSave();
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const inputValuesOffset = wasm.stackAlloc(inputCount * 4);
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const inputNamesOffset = wasm.stackAlloc(inputCount * 4);
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const outputValuesOffset = wasm.stackAlloc(outputCount * 4);
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const outputNamesOffset = wasm.stackAlloc(outputCount * 4);
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try {
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[runOptionsHandle, runOptionsAllocs] = setRunOptions(options);
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// create input tensors
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for (let i = 0; i < inputCount; i++) {
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prepareInputOutputTensor(inputTensors[i], inputTensorHandles, inputOutputAllocs, sessionId, inputIndices[i]);
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}
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// create output tensors
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for (let i = 0; i < outputCount; i++) {
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prepareInputOutputTensor(
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outputTensors[i], outputTensorHandles, inputOutputAllocs, sessionId, inputCount + outputIndices[i]);
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}
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let inputValuesIndex = inputValuesOffset / 4;
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let inputNamesIndex = inputNamesOffset / 4;
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let outputValuesIndex = outputValuesOffset / 4;
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let outputNamesIndex = outputNamesOffset / 4;
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for (let i = 0; i < inputCount; i++) {
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wasm.HEAPU32[inputValuesIndex++] = inputTensorHandles[i];
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wasm.HEAPU32[inputNamesIndex++] = inputNamesUTF8Encoded[inputIndices[i]];
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}
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for (let i = 0; i < outputCount; i++) {
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wasm.HEAPU32[outputValuesIndex++] = outputTensorHandles[i];
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wasm.HEAPU32[outputNamesIndex++] = outputNamesUTF8Encoded[outputIndices[i]];
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}
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if (!BUILD_DEFS.DISABLE_WEBGPU && ioBindingState) {
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const {handle, outputPreferredLocations, outputPreferredLocationsEncoded} = ioBindingState;
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if (inputNamesUTF8Encoded.length !== inputCount) {
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throw new Error(`input count from feeds (${
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inputCount}) is expected to be always equal to model's input count (${inputNamesUTF8Encoded.length}).`);
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}
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// process inputs
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for (let i = 0; i < inputCount; i++) {
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const index = inputIndices[i];
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const errorCode = await wasm._OrtBindInput(handle, inputNamesUTF8Encoded[index], inputTensorHandles[i]);
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if (errorCode !== 0) {
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checkLastError(`Can't bind input[${i}] for session=${sessionId}.`);
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}
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}
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// process pre-allocated outputs
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for (let i = 0; i < outputCount; i++) {
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const index = outputIndices[i];
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const location = outputTensors[i]?.[3]; // undefined means output is not pre-allocated.
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if (location) {
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// output is pre-allocated. bind the tensor.
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const errorCode = wasm._OrtBindOutput(handle, outputNamesUTF8Encoded[index], outputTensorHandles[i], 0);
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if (errorCode !== 0) {
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checkLastError(`Can't bind pre-allocated output[${i}] for session=${sessionId}.`);
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}
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} else {
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// output is not pre-allocated. reset preferred location.
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const errorCode =
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wasm._OrtBindOutput(handle, outputNamesUTF8Encoded[index], 0, outputPreferredLocationsEncoded[index]);
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if (errorCode !== 0) {
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checkLastError(`Can't bind output[${i}] to ${outputPreferredLocations[i]} for session=${sessionId}.`);
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}
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}
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}
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}
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let errorCode: number;
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if (!BUILD_DEFS.DISABLE_WEBGPU && ioBindingState) {
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errorCode = await wasm._OrtRunWithBinding(
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sessionHandle, ioBindingState.handle, outputCount, outputValuesOffset, runOptionsHandle);
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} else {
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errorCode = await wasm._OrtRun(
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sessionHandle, inputNamesOffset, inputValuesOffset, inputCount, outputNamesOffset, outputCount,
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outputValuesOffset, runOptionsHandle);
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}
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if (errorCode !== 0) {
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checkLastError('failed to call OrtRun().');
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}
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const output: TensorMetadata[] = [];
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for (let i = 0; i < outputCount; i++) {
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const tensor = wasm.HEAPU32[outputValuesOffset / 4 + i];
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if (tensor === outputTensorHandles[i]) {
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// output tensor is pre-allocated. no need to copy data.
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output.push(outputTensors[i]!);
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continue;
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}
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const beforeGetTensorDataStack = wasm.stackSave();
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// stack allocate 4 pointer value
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const tensorDataOffset = wasm.stackAlloc(4 * 4);
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let keepOutputTensor = false;
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let type: Tensor.Type|undefined, dataOffset = 0;
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try {
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const errorCode = wasm._OrtGetTensorData(
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tensor, tensorDataOffset, tensorDataOffset + 4, tensorDataOffset + 8, tensorDataOffset + 12);
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if (errorCode !== 0) {
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checkLastError(`Can't access output tensor data on index ${i}.`);
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}
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let tensorDataIndex = tensorDataOffset / 4;
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const dataType = wasm.HEAPU32[tensorDataIndex++];
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dataOffset = wasm.HEAPU32[tensorDataIndex++];
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const dimsOffset = wasm.HEAPU32[tensorDataIndex++];
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const dimsLength = wasm.HEAPU32[tensorDataIndex++];
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const dims = [];
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for (let i = 0; i < dimsLength; i++) {
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dims.push(wasm.HEAPU32[dimsOffset / 4 + i]);
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}
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wasm._OrtFree(dimsOffset);
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const size = dims.reduce((a, b) => a * b, 1);
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type = tensorDataTypeEnumToString(dataType);
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const preferredLocation = ioBindingState?.outputPreferredLocations[outputIndices[i]];
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if (type === 'string') {
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if (preferredLocation === 'gpu-buffer') {
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throw new Error('String tensor is not supported on GPU.');
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}
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const stringData: string[] = [];
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let dataIndex = dataOffset / 4;
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for (let i = 0; i < size; i++) {
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const offset = wasm.HEAPU32[dataIndex++];
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const maxBytesToRead = i === size - 1 ? undefined : wasm.HEAPU32[dataIndex] - offset;
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stringData.push(wasm.UTF8ToString(offset, maxBytesToRead));
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}
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output.push([type, dims, stringData, 'cpu']);
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|
} else {
|
|
// If a certain output's preferred location is GPU but the tensor is empty, we still need to create a CPU
|
|
// tensor for it. There is no mapping GPU buffer for an empty tensor.
|
|
if (preferredLocation === 'gpu-buffer' && size > 0) {
|
|
const gpuBuffer = wasm.jsepGetBuffer(dataOffset);
|
|
const elementSize = getTensorElementSize(dataType);
|
|
if (elementSize === undefined || !isGpuBufferSupportedType(type)) {
|
|
throw new Error(`Unsupported data type: ${type}`);
|
|
}
|
|
|
|
// do not release the tensor right now. it will be released when user calls tensor.dispose().
|
|
keepOutputTensor = true;
|
|
|
|
output.push([
|
|
type, dims, {
|
|
gpuBuffer,
|
|
download: wasm.jsepCreateDownloader(gpuBuffer, size * elementSize, type),
|
|
dispose: () => {
|
|
wasm._OrtReleaseTensor(tensor);
|
|
}
|
|
},
|
|
'gpu-buffer'
|
|
]);
|
|
} else {
|
|
const typedArrayConstructor = tensorTypeToTypedArrayConstructor(type);
|
|
const data = new typedArrayConstructor(size);
|
|
new Uint8Array(data.buffer, data.byteOffset, data.byteLength)
|
|
.set(wasm.HEAPU8.subarray(dataOffset, dataOffset + data.byteLength));
|
|
output.push([type, dims, data, 'cpu']);
|
|
}
|
|
}
|
|
} finally {
|
|
wasm.stackRestore(beforeGetTensorDataStack);
|
|
if (type === 'string' && dataOffset) {
|
|
wasm._free(dataOffset);
|
|
}
|
|
if (!keepOutputTensor) {
|
|
wasm._OrtReleaseTensor(tensor);
|
|
}
|
|
}
|
|
}
|
|
|
|
if (ioBindingState) {
|
|
wasm._OrtClearBoundOutputs(ioBindingState.handle);
|
|
}
|
|
|
|
return output;
|
|
} finally {
|
|
wasm.stackRestore(beforeRunStack);
|
|
|
|
inputTensorHandles.forEach(v => wasm._OrtReleaseTensor(v));
|
|
outputTensorHandles.forEach(v => wasm._OrtReleaseTensor(v));
|
|
inputOutputAllocs.forEach(p => wasm._free(p));
|
|
|
|
if (runOptionsHandle !== 0) {
|
|
wasm._OrtReleaseRunOptions(runOptionsHandle);
|
|
}
|
|
runOptionsAllocs.forEach(p => wasm._free(p));
|
|
}
|
|
};
|
|
|
|
/**
|
|
* end profiling
|
|
*/
|
|
export const endProfiling = (sessionId: number): void => {
|
|
const wasm = getInstance();
|
|
const session = activeSessions.get(sessionId);
|
|
if (!session) {
|
|
throw new Error('invalid session id');
|
|
}
|
|
const sessionHandle = session[0];
|
|
|
|
// profile file name is not used yet, but it must be freed.
|
|
const profileFileName = wasm._OrtEndProfiling(sessionHandle);
|
|
if (profileFileName === 0) {
|
|
checkLastError('Can\'t get an profile file name.');
|
|
}
|
|
wasm._OrtFree(profileFileName);
|
|
};
|
|
|
|
export const extractTransferableBuffers = (tensors: readonly SerializableTensorMetadata[]): ArrayBufferLike[] => {
|
|
const buffers: ArrayBufferLike[] = [];
|
|
for (const tensor of tensors) {
|
|
const data = tensor[2];
|
|
if (!Array.isArray(data) && 'buffer' in data) {
|
|
buffers.push(data.buffer);
|
|
}
|
|
}
|
|
return buffers;
|
|
};
|