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671 lines
22 KiB
TypeScript
671 lines
22 KiB
TypeScript
import { createLogger } from '@sim/logger'
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import { getErrorMessage, toError } from '@sim/utils/errors'
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import OpenAI from 'openai'
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import type { ChatCompletionCreateParamsStreaming } from 'openai/resources/chat/completions'
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import { env } from '@/lib/core/config/env'
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import { createPinnedFetch, validateUrlWithDNS } from '@/lib/core/security/input-validation.server'
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import type { StreamingExecution } from '@/executor/types'
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import { MAX_TOOL_ITERATIONS } from '@/providers'
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import { formatMessagesForProvider } from '@/providers/attachments'
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import { getCachedProviderClient } from '@/providers/client-cache'
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import { getProviderDefaultModel, getProviderModels } from '@/providers/models'
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import { createStreamingExecution } from '@/providers/streaming-execution'
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import { adaptOpenAIChatToolSchema } from '@/providers/tool-schema-adapter'
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import { enrichLastModelSegmentFromChatCompletions } from '@/providers/trace-enrichment'
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import type {
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Message,
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ProviderConfig,
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ProviderRequest,
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ProviderResponse,
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TimeSegment,
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} from '@/providers/types'
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import { ProviderError } from '@/providers/types'
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import {
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calculateCost,
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prepareToolExecution,
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prepareToolsWithUsageControl,
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sumToolCosts,
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} from '@/providers/utils'
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import { checkForForcedToolUsage, createReadableStreamFromVLLMStream } from '@/providers/vllm/utils'
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import { useProvidersStore } from '@/stores/providers'
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import { executeTool } from '@/tools'
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const logger = createLogger('VLLMProvider')
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const VLLM_VERSION = '1.0.0'
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export const vllmProvider: ProviderConfig = {
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id: 'vllm',
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name: 'vLLM',
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description: 'Self-hosted vLLM with OpenAI-compatible API',
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version: VLLM_VERSION,
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models: getProviderModels('vllm'),
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defaultModel: getProviderDefaultModel('vllm'),
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async initialize() {
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if (typeof window !== 'undefined') {
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logger.info('Skipping vLLM initialization on client side to avoid CORS issues')
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return
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}
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const baseUrl = (env.VLLM_BASE_URL || '').replace(/\/$/, '')
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if (!baseUrl) {
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logger.info('VLLM_BASE_URL not configured, skipping initialization')
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return
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}
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try {
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const headers: Record<string, string> = {
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'Content-Type': 'application/json',
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}
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if (env.VLLM_API_KEY) {
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headers.Authorization = `Bearer ${env.VLLM_API_KEY}`
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}
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const response = await fetch(`${baseUrl}/v1/models`, { headers })
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if (!response.ok) {
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await response.text().catch(() => {})
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useProvidersStore.getState().setProviderModels('vllm', [])
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logger.warn('vLLM service is not available. The provider will be disabled.')
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return
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}
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const data = (await response.json()) as { data: Array<{ id: string }> }
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const models = data.data.map((model) => `vllm/${model.id}`)
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this.models = models
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useProvidersStore.getState().setProviderModels('vllm', models)
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logger.info(`Discovered ${models.length} vLLM model(s):`, { models })
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} catch (error) {
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logger.warn('vLLM model instantiation failed. The provider will be disabled.', {
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error: getErrorMessage(error, 'Unknown error'),
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})
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}
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},
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executeRequest: async (
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request: ProviderRequest
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): Promise<ProviderResponse | StreamingExecution> => {
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logger.info('Preparing vLLM request', {
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model: request.model,
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hasSystemPrompt: !!request.systemPrompt,
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hasMessages: !!request.messages?.length,
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hasTools: !!request.tools?.length,
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toolCount: request.tools?.length || 0,
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hasResponseFormat: !!request.responseFormat,
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stream: !!request.stream,
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})
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const userProvidedEndpoint = request.azureEndpoint
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const baseUrl = (userProvidedEndpoint || env.VLLM_BASE_URL || '').replace(/\/$/, '')
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if (!baseUrl) {
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throw new Error('VLLM_BASE_URL is required for vLLM provider')
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}
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/**
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* A user-supplied endpoint is attacker-controlled: validate it against the
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* central SSRF guard and pin the connection to the resolved IP to defeat DNS
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* rebinding. The operator-configured `VLLM_BASE_URL` is trusted and left
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* unvalidated, mirroring the Azure providers.
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*
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* `allowHttp` is enabled because self-hosted vLLM is frequently served over
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* plain HTTP; this only relaxes the protocol requirement — the private/reserved
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* IP blocklist and blocked-port checks still apply, so SSRF protection is intact.
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*/
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let pinnedFetch: typeof fetch | undefined
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let pinnedIP: string | undefined
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if (userProvidedEndpoint) {
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const validation = await validateUrlWithDNS(userProvidedEndpoint, 'vLLM endpoint', {
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allowHttp: true,
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})
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if (!validation.isValid) {
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logger.warn('Blocked SSRF attempt via vLLM endpoint', {
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endpoint: userProvidedEndpoint,
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error: validation.error,
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})
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throw new Error(`Invalid vLLM endpoint: ${validation.error}`)
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}
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if (!validation.resolvedIP) {
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throw new Error('Invalid vLLM endpoint: could not resolve a pinnable IP address')
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}
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pinnedIP = validation.resolvedIP
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pinnedFetch = createPinnedFetch(pinnedIP)
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}
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const apiKey = request.apiKey || env.VLLM_API_KEY || 'empty'
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const vllm = getCachedProviderClient(
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`vllm::${apiKey}::${baseUrl}::${pinnedIP ?? 'no-pin'}`,
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() =>
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new OpenAI({
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apiKey,
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baseURL: `${baseUrl}/v1`,
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...(pinnedFetch ? { fetch: pinnedFetch } : {}),
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})
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)
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const allMessages: Message[] = []
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if (request.systemPrompt) {
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allMessages.push({
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role: 'system',
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content: request.systemPrompt,
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})
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}
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if (request.context) {
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allMessages.push({
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role: 'user',
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content: request.context,
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})
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}
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if (request.messages) {
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allMessages.push(...request.messages)
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}
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const formattedMessages = formatMessagesForProvider(allMessages, 'vllm') as Message[]
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const tools = request.tools?.length
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? request.tools.map((tool) => adaptOpenAIChatToolSchema(tool))
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: undefined
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const payload: any = {
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model: request.model.replace(/^vllm\//, ''),
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messages: formattedMessages,
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}
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if (request.temperature !== undefined) payload.temperature = request.temperature
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if (request.maxTokens != null) payload.max_completion_tokens = request.maxTokens
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if (request.responseFormat) {
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payload.response_format = {
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type: 'json_schema',
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json_schema: {
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name: request.responseFormat.name || 'response_schema',
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schema: request.responseFormat.schema || request.responseFormat,
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strict: request.responseFormat.strict !== false,
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},
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}
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logger.info('Added JSON schema response format to vLLM request')
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}
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let preparedTools: ReturnType<typeof prepareToolsWithUsageControl> | null = null
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let hasActiveTools = false
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if (tools?.length) {
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preparedTools = prepareToolsWithUsageControl(tools, request.tools, logger, 'vllm')
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const { tools: filteredTools, toolChoice } = preparedTools
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if (filteredTools?.length && toolChoice) {
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payload.tools = filteredTools
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payload.tool_choice = toolChoice
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hasActiveTools = true
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logger.info('vLLM request configuration:', {
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toolCount: filteredTools.length,
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toolChoice:
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typeof toolChoice === 'string'
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? toolChoice
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: toolChoice.type === 'function'
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? `force:${toolChoice.function.name}`
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: 'unknown',
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model: payload.model,
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})
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}
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}
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const providerStartTime = Date.now()
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const providerStartTimeISO = new Date(providerStartTime).toISOString()
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try {
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if (request.stream && (!tools || tools.length === 0 || !hasActiveTools)) {
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logger.info('Using streaming response for vLLM request')
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const streamingParams: ChatCompletionCreateParamsStreaming = {
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...payload,
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stream: true,
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stream_options: { include_usage: true },
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}
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const streamResponse = await vllm.chat.completions.create(
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streamingParams,
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request.abortSignal ? { signal: request.abortSignal } : undefined
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)
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const streamingResult = createStreamingExecution({
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model: request.model,
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providerStartTime,
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providerStartTimeISO,
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timing: { kind: 'simple', segmentName: request.model },
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initialTokens: { input: 0, output: 0, total: 0 },
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initialCost: { input: 0, output: 0, total: 0 },
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createStream: ({ output, finalizeTiming }) =>
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createReadableStreamFromVLLMStream(streamResponse, (content, usage) => {
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let cleanContent = content
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if (cleanContent && request.responseFormat) {
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cleanContent = cleanContent.replace(/```json\n?|\n?```/g, '').trim()
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}
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output.content = cleanContent
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output.tokens = {
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input: usage.prompt_tokens,
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output: usage.completion_tokens,
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total: usage.total_tokens,
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}
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const costResult = calculateCost(
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request.model,
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usage.prompt_tokens,
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usage.completion_tokens
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)
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output.cost = {
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input: costResult.input,
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output: costResult.output,
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total: costResult.total,
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}
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finalizeTiming()
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}),
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})
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return streamingResult
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}
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const initialCallTime = Date.now()
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const originalToolChoice = payload.tool_choice
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const forcedTools = preparedTools?.forcedTools || []
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let usedForcedTools: string[] = []
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let hasUsedForcedTool = false
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let currentResponse = await vllm.chat.completions.create(
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payload,
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request.abortSignal ? { signal: request.abortSignal } : undefined
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)
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const firstResponseTime = Date.now() - initialCallTime
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let content = currentResponse.choices[0]?.message?.content || ''
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if (content && request.responseFormat) {
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content = content.replace(/```json\n?|\n?```/g, '').trim()
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}
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const tokens = {
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input: currentResponse.usage?.prompt_tokens || 0,
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output: currentResponse.usage?.completion_tokens || 0,
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total: currentResponse.usage?.total_tokens || 0,
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}
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const toolCalls = []
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const toolResults: Record<string, unknown>[] = []
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const currentMessages = [...formattedMessages]
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let iterationCount = 0
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let modelTime = firstResponseTime
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let toolsTime = 0
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const timeSegments: TimeSegment[] = [
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{
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type: 'model',
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name: request.model,
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startTime: initialCallTime,
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endTime: initialCallTime + firstResponseTime,
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duration: firstResponseTime,
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},
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]
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if (originalToolChoice) {
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const forcedResult = checkForForcedToolUsage(
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currentResponse,
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originalToolChoice,
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forcedTools,
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usedForcedTools
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)
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hasUsedForcedTool = forcedResult.hasUsedForcedTool
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usedForcedTools = forcedResult.usedForcedTools
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}
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while (iterationCount < MAX_TOOL_ITERATIONS) {
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if (currentResponse.choices[0]?.message?.content) {
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content = currentResponse.choices[0].message.content
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if (request.responseFormat) {
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content = content.replace(/```json\n?|\n?```/g, '').trim()
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}
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}
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const toolCallsInResponse = currentResponse.choices[0]?.message?.tool_calls
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enrichLastModelSegmentFromChatCompletions(
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timeSegments,
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currentResponse,
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toolCallsInResponse,
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{ model: request.model, provider: 'vllm' }
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)
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if (!toolCallsInResponse || toolCallsInResponse.length === 0) {
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break
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}
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logger.info(
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`Processing ${toolCallsInResponse.length} tool calls (iteration ${iterationCount + 1}/${MAX_TOOL_ITERATIONS})`
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)
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const toolsStartTime = Date.now()
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const toolExecutionPromises = toolCallsInResponse.map(async (toolCall) => {
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const toolCallStartTime = Date.now()
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const toolName = toolCall.function.name
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try {
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const toolArgs = JSON.parse(toolCall.function.arguments)
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const tool = request.tools?.find((t) => t.id === toolName)
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if (!tool) return null
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const { toolParams, executionParams } = prepareToolExecution(tool, toolArgs, request)
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const result = await executeTool(toolName, executionParams, {
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signal: request.abortSignal,
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})
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const toolCallEndTime = Date.now()
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return {
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toolCall,
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toolName,
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toolParams,
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result,
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startTime: toolCallStartTime,
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endTime: toolCallEndTime,
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duration: toolCallEndTime - toolCallStartTime,
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}
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} catch (error) {
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const toolCallEndTime = Date.now()
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logger.error('Error processing tool call:', { error, toolName })
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return {
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toolCall,
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toolName,
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toolParams: {},
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result: {
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success: false,
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output: undefined,
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error: getErrorMessage(error, 'Tool execution failed'),
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},
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startTime: toolCallStartTime,
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endTime: toolCallEndTime,
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duration: toolCallEndTime - toolCallStartTime,
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}
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}
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})
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const executionResults = await Promise.allSettled(toolExecutionPromises)
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currentMessages.push({
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role: 'assistant',
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content: null,
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tool_calls: toolCallsInResponse.map((tc) => ({
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id: tc.id,
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type: 'function',
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function: {
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name: tc.function.name,
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arguments: tc.function.arguments,
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},
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})),
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})
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for (const settledResult of executionResults) {
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if (settledResult.status === 'rejected' || !settledResult.value) continue
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const { toolCall, toolName, toolParams, result, startTime, endTime, duration } =
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settledResult.value
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timeSegments.push({
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type: 'tool',
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name: toolName,
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startTime: startTime,
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endTime: endTime,
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duration: duration,
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toolCallId: toolCall.id,
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})
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let resultContent: any
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if (result.success && result.output) {
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toolResults.push(result.output)
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resultContent = result.output
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} else {
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resultContent = {
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error: true,
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message: result.error || 'Tool execution failed',
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tool: toolName,
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}
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}
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toolCalls.push({
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name: toolName,
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arguments: toolParams,
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startTime: new Date(startTime).toISOString(),
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endTime: new Date(endTime).toISOString(),
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duration: duration,
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result: resultContent,
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success: result.success,
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})
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currentMessages.push({
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role: 'tool',
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tool_call_id: toolCall.id,
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content: JSON.stringify(resultContent),
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})
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}
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const thisToolsTime = Date.now() - toolsStartTime
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toolsTime += thisToolsTime
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const nextPayload = {
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...payload,
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messages: currentMessages,
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}
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if (typeof originalToolChoice === 'object' && hasUsedForcedTool && forcedTools.length > 0) {
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const remainingTools = forcedTools.filter((tool) => !usedForcedTools.includes(tool))
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if (remainingTools.length > 0) {
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nextPayload.tool_choice = {
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type: 'function',
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function: { name: remainingTools[0] },
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}
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logger.info(`Forcing next tool: ${remainingTools[0]}`)
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} else {
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nextPayload.tool_choice = 'auto'
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logger.info('All forced tools have been used, switching to auto tool_choice')
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}
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}
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const nextModelStartTime = Date.now()
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currentResponse = await vllm.chat.completions.create(
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nextPayload,
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request.abortSignal ? { signal: request.abortSignal } : undefined
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)
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|
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if (nextPayload.tool_choice && typeof nextPayload.tool_choice === 'object') {
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const forcedResult = checkForForcedToolUsage(
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currentResponse,
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nextPayload.tool_choice,
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forcedTools,
|
|
usedForcedTools
|
|
)
|
|
hasUsedForcedTool = forcedResult.hasUsedForcedTool
|
|
usedForcedTools = forcedResult.usedForcedTools
|
|
}
|
|
|
|
const nextModelEndTime = Date.now()
|
|
const thisModelTime = nextModelEndTime - nextModelStartTime
|
|
|
|
timeSegments.push({
|
|
type: 'model',
|
|
name: request.model,
|
|
startTime: nextModelStartTime,
|
|
endTime: nextModelEndTime,
|
|
duration: thisModelTime,
|
|
})
|
|
|
|
modelTime += thisModelTime
|
|
|
|
if (currentResponse.choices[0]?.message?.content) {
|
|
content = currentResponse.choices[0].message.content
|
|
if (request.responseFormat) {
|
|
content = content.replace(/```json\n?|\n?```/g, '').trim()
|
|
}
|
|
}
|
|
|
|
if (currentResponse.usage) {
|
|
tokens.input += currentResponse.usage.prompt_tokens || 0
|
|
tokens.output += currentResponse.usage.completion_tokens || 0
|
|
tokens.total += currentResponse.usage.total_tokens || 0
|
|
}
|
|
|
|
iterationCount++
|
|
}
|
|
|
|
if (iterationCount === MAX_TOOL_ITERATIONS) {
|
|
enrichLastModelSegmentFromChatCompletions(
|
|
timeSegments,
|
|
currentResponse,
|
|
currentResponse.choices[0]?.message?.tool_calls,
|
|
{ model: request.model, provider: 'vllm' }
|
|
)
|
|
}
|
|
|
|
if (request.stream) {
|
|
logger.info('Using streaming for final response after tool processing')
|
|
|
|
const accumulatedCost = calculateCost(request.model, tokens.input, tokens.output)
|
|
|
|
const streamingParams: ChatCompletionCreateParamsStreaming = {
|
|
...payload,
|
|
messages: currentMessages,
|
|
tool_choice: 'none',
|
|
stream: true,
|
|
stream_options: { include_usage: true },
|
|
}
|
|
const streamResponse = await vllm.chat.completions.create(
|
|
streamingParams,
|
|
request.abortSignal ? { signal: request.abortSignal } : undefined
|
|
)
|
|
|
|
const streamingResult = createStreamingExecution({
|
|
model: request.model,
|
|
providerStartTime,
|
|
providerStartTimeISO,
|
|
timing: {
|
|
kind: 'accumulated',
|
|
modelTime,
|
|
toolsTime,
|
|
firstResponseTime,
|
|
iterations: iterationCount + 1,
|
|
timeSegments,
|
|
},
|
|
initialTokens: {
|
|
input: tokens.input,
|
|
output: tokens.output,
|
|
total: tokens.total,
|
|
},
|
|
initialCost: {
|
|
input: accumulatedCost.input,
|
|
output: accumulatedCost.output,
|
|
total: accumulatedCost.total,
|
|
},
|
|
toolCalls:
|
|
toolCalls.length > 0
|
|
? {
|
|
list: toolCalls,
|
|
count: toolCalls.length,
|
|
}
|
|
: undefined,
|
|
createStream: ({ output }) =>
|
|
createReadableStreamFromVLLMStream(streamResponse, (content, usage) => {
|
|
let cleanContent = content
|
|
if (cleanContent && request.responseFormat) {
|
|
cleanContent = cleanContent.replace(/```json\n?|\n?```/g, '').trim()
|
|
}
|
|
|
|
output.content = cleanContent
|
|
output.tokens = {
|
|
input: tokens.input + usage.prompt_tokens,
|
|
output: tokens.output + usage.completion_tokens,
|
|
total: tokens.total + usage.total_tokens,
|
|
}
|
|
|
|
const streamCost = calculateCost(
|
|
request.model,
|
|
usage.prompt_tokens,
|
|
usage.completion_tokens
|
|
)
|
|
const tc = sumToolCosts(toolResults)
|
|
output.cost = {
|
|
input: accumulatedCost.input + streamCost.input,
|
|
output: accumulatedCost.output + streamCost.output,
|
|
toolCost: tc || undefined,
|
|
total: accumulatedCost.total + streamCost.total + tc,
|
|
}
|
|
}),
|
|
})
|
|
|
|
return streamingResult
|
|
}
|
|
|
|
const providerEndTime = Date.now()
|
|
const providerEndTimeISO = new Date(providerEndTime).toISOString()
|
|
const totalDuration = providerEndTime - providerStartTime
|
|
|
|
return {
|
|
content,
|
|
model: request.model,
|
|
tokens,
|
|
toolCalls: toolCalls.length > 0 ? toolCalls : undefined,
|
|
toolResults: toolResults.length > 0 ? toolResults : undefined,
|
|
timing: {
|
|
startTime: providerStartTimeISO,
|
|
endTime: providerEndTimeISO,
|
|
duration: totalDuration,
|
|
modelTime: modelTime,
|
|
toolsTime: toolsTime,
|
|
firstResponseTime: firstResponseTime,
|
|
iterations: iterationCount + 1,
|
|
timeSegments: timeSegments,
|
|
},
|
|
}
|
|
} catch (error) {
|
|
const providerEndTime = Date.now()
|
|
const providerEndTimeISO = new Date(providerEndTime).toISOString()
|
|
const totalDuration = providerEndTime - providerStartTime
|
|
|
|
let errorMessage = toError(error).message
|
|
let errorType: string | undefined
|
|
let errorCode: number | undefined
|
|
|
|
if (error && typeof error === 'object' && 'error' in error) {
|
|
const vllmError = error.error as any
|
|
if (vllmError && typeof vllmError === 'object') {
|
|
errorMessage = vllmError.message || errorMessage
|
|
errorType = vllmError.type
|
|
errorCode = vllmError.code
|
|
}
|
|
}
|
|
|
|
logger.error('Error in vLLM request:', {
|
|
error: errorMessage,
|
|
errorType,
|
|
errorCode,
|
|
duration: totalDuration,
|
|
})
|
|
|
|
throw new ProviderError(errorMessage, {
|
|
startTime: providerStartTimeISO,
|
|
endTime: providerEndTimeISO,
|
|
duration: totalDuration,
|
|
})
|
|
}
|
|
},
|
|
}
|