Files
simstudioai--sim/apps/sim/providers/azure-openai/index.ts
T
wehub-resource-sync d25d482dc2
Publish CLI Package / publish-npm (push) Waiting to run
Publish Python SDK / publish-pypi (push) Waiting to run
Publish TypeScript SDK / publish-npm (push) Waiting to run
CI / Migrate Dev DB (push) Has been skipped
CI / Detect Version (push) Has been cancelled
CI / Migrate DB (push) Has been cancelled
CI / Build Dev ECR (./docker/app.Dockerfile, ECR_APP) (push) Has been cancelled
CI / Build Dev ECR (./docker/db.Dockerfile, ECR_MIGRATIONS) (push) Has been cancelled
CI / Build Dev ECR (./docker/pii.Dockerfile, ECR_PII) (push) Has been cancelled
CI / Build Dev ECR (./docker/realtime.Dockerfile, ECR_REALTIME) (push) Has been cancelled
CI / Deploy Trigger.dev (Dev) (push) Has been cancelled
CI / Build AMD64 (./docker/app.Dockerfile, ECR_APP, ghcr.io/simstudioai/simstudio) (push) Has been cancelled
CI / Build AMD64 (./docker/db.Dockerfile, ECR_MIGRATIONS, ghcr.io/simstudioai/migrations) (push) Has been cancelled
CI / Build AMD64 (./docker/pii.Dockerfile, ECR_PII, ghcr.io/simstudioai/pii) (push) Has been cancelled
CI / Build AMD64 (./docker/realtime.Dockerfile, ECR_REALTIME, ghcr.io/simstudioai/realtime) (push) Has been cancelled
CI / Build ARM64 (GHCR Only) (./docker/app.Dockerfile, ghcr.io/simstudioai/simstudio) (push) Has been cancelled
CI / Build ARM64 (GHCR Only) (./docker/db.Dockerfile, ghcr.io/simstudioai/migrations) (push) Has been cancelled
CI / Build ARM64 (GHCR Only) (./docker/pii.Dockerfile, ghcr.io/simstudioai/pii) (push) Has been cancelled
CI / Build ARM64 (GHCR Only) (./docker/realtime.Dockerfile, ghcr.io/simstudioai/realtime) (push) Has been cancelled
CI / Create GHCR Manifests (ghcr.io/simstudioai/migrations) (push) Has been cancelled
CI / Create GHCR Manifests (ghcr.io/simstudioai/pii) (push) Has been cancelled
CI / Create GHCR Manifests (ghcr.io/simstudioai/realtime) (push) Has been cancelled
CI / Create GHCR Manifests (ghcr.io/simstudioai/simstudio) (push) Has been cancelled
CI / Check Docs Changes (push) Has been cancelled
CI / Process Docs (push) Has been cancelled
CI / Create GitHub Release (push) Has been cancelled
CI / Test and Build (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 13:20:55 +08:00

717 lines
23 KiB
TypeScript

import { createLogger } from '@sim/logger'
import { getErrorMessage, toError } from '@sim/utils/errors'
import { AzureOpenAI } from 'openai'
import type {
ChatCompletion,
ChatCompletionContentPart,
ChatCompletionCreateParamsBase,
ChatCompletionCreateParamsStreaming,
ChatCompletionMessageParam,
ChatCompletionTool,
ChatCompletionToolChoiceOption,
} from 'openai/resources/chat/completions'
import type { ReasoningEffort } from 'openai/resources/shared'
import { env } from '@/lib/core/config/env'
import { createPinnedFetch, validateUrlWithDNS } from '@/lib/core/security/input-validation.server'
import type { StreamingExecution } from '@/executor/types'
import { MAX_TOOL_ITERATIONS } from '@/providers'
import { prepareProviderAttachments } from '@/providers/attachments'
import {
checkForForcedToolUsage,
createReadableStreamFromAzureOpenAIStream,
extractApiVersionFromUrl,
extractBaseUrl,
extractDeploymentFromUrl,
isChatCompletionsEndpoint,
isResponsesEndpoint,
} from '@/providers/azure-openai/utils'
import { getProviderDefaultModel, getProviderModels } from '@/providers/models'
import { executeResponsesProviderRequest } from '@/providers/openai/core'
import { createStreamingExecution } from '@/providers/streaming-execution'
import { adaptOpenAIChatToolSchema } from '@/providers/tool-schema-adapter'
import { enrichLastModelSegmentFromChatCompletions } from '@/providers/trace-enrichment'
import type {
FunctionCallResponse,
ProviderConfig,
ProviderRequest,
ProviderResponse,
TimeSegment,
} from '@/providers/types'
import { ProviderError } from '@/providers/types'
import {
calculateCost,
prepareToolExecution,
prepareToolsWithUsageControl,
sumToolCosts,
} from '@/providers/utils'
import { executeTool } from '@/tools'
const logger = createLogger('AzureOpenAIProvider')
/**
* Executes a request using the chat completions API.
* Used when the endpoint URL indicates chat completions.
*/
async function executeChatCompletionsRequest(
request: ProviderRequest,
azureEndpoint: string,
azureApiVersion: string,
deploymentName: string,
pinnedFetch?: typeof fetch
): Promise<ProviderResponse | StreamingExecution> {
logger.info('Using Azure OpenAI Chat Completions API', {
model: request.model,
endpoint: azureEndpoint,
deploymentName,
apiVersion: azureApiVersion,
hasSystemPrompt: !!request.systemPrompt,
hasMessages: !!request.messages?.length,
hasTools: !!request.tools?.length,
toolCount: request.tools?.length || 0,
hasResponseFormat: !!request.responseFormat,
stream: !!request.stream,
})
const azureOpenAI = new AzureOpenAI({
apiKey: request.apiKey!,
apiVersion: azureApiVersion,
endpoint: azureEndpoint,
...(pinnedFetch ? { fetch: pinnedFetch } : {}),
})
const allMessages: ChatCompletionMessageParam[] = []
if (request.systemPrompt) {
allMessages.push({
role: 'system',
content: request.systemPrompt,
})
}
if (request.context) {
allMessages.push({
role: 'user',
content: request.context,
})
}
if (request.messages) {
for (const message of request.messages) {
if (!message.files?.length || message.role !== 'user') {
allMessages.push(message as ChatCompletionMessageParam)
continue
}
const attachments = prepareProviderAttachments(message.files, 'azure-openai')
const nonImage = attachments.find((a) => a.contentType !== 'image')
if (nonImage) {
throw new Error(
`File "${nonImage.filename}" (${nonImage.mimeType}) requires the Azure OpenAI Responses API endpoint; chat-completions deployments support images only`
)
}
const parts: ChatCompletionContentPart[] = []
if (message.content) parts.push({ type: 'text', text: message.content })
for (const a of attachments) {
parts.push({ type: 'image_url', image_url: { url: a.remoteUrl ?? a.dataUrl ?? '' } })
}
const { files: _files, ...rest } = message
allMessages.push({ ...rest, content: parts } as ChatCompletionMessageParam)
}
}
const tools: ChatCompletionTool[] | undefined = request.tools?.length
? request.tools.map((tool) => adaptOpenAIChatToolSchema(tool))
: undefined
const payload: ChatCompletionCreateParamsBase & { verbosity?: string } = {
model: deploymentName,
messages: allMessages,
}
if (request.temperature !== undefined) payload.temperature = request.temperature
if (request.maxTokens != null) payload.max_completion_tokens = request.maxTokens
if (request.reasoningEffort !== undefined && request.reasoningEffort !== 'auto')
payload.reasoning_effort = request.reasoningEffort as ReasoningEffort
if (request.verbosity !== undefined && request.verbosity !== 'auto')
payload.verbosity = request.verbosity
if (request.responseFormat) {
payload.response_format = {
type: 'json_schema',
json_schema: {
name: request.responseFormat.name || 'response_schema',
schema: request.responseFormat.schema || request.responseFormat,
strict: request.responseFormat.strict !== false,
},
}
logger.info('Added JSON schema response format to Azure OpenAI request')
}
let preparedTools: ReturnType<typeof prepareToolsWithUsageControl> | null = null
if (tools?.length) {
preparedTools = prepareToolsWithUsageControl(tools, request.tools, logger, 'azure-openai')
const { tools: filteredTools, toolChoice } = preparedTools
if (filteredTools?.length && toolChoice) {
payload.tools = filteredTools as ChatCompletionTool[]
payload.tool_choice = toolChoice as ChatCompletionToolChoiceOption
logger.info('Azure OpenAI request configuration:', {
toolCount: filteredTools.length,
toolChoice:
typeof toolChoice === 'string'
? toolChoice
: toolChoice.type === 'function'
? `force:${toolChoice.function.name}`
: toolChoice.type === 'tool'
? `force:${toolChoice.name}`
: toolChoice.type === 'any'
? `force:${toolChoice.any?.name || 'unknown'}`
: 'unknown',
model: deploymentName,
})
}
}
const providerStartTime = Date.now()
const providerStartTimeISO = new Date(providerStartTime).toISOString()
try {
if (request.stream && (!tools || tools.length === 0)) {
logger.info('Using streaming response for Azure OpenAI request')
const streamingParams: ChatCompletionCreateParamsStreaming = {
...payload,
stream: true,
stream_options: { include_usage: true },
}
const streamResponse = await azureOpenAI.chat.completions.create(
streamingParams,
request.abortSignal ? { signal: request.abortSignal } : undefined
)
const streamingResult = createStreamingExecution({
model: request.model,
providerStartTime,
providerStartTimeISO,
timing: { kind: 'simple', segmentName: request.model },
initialTokens: { input: 0, output: 0, total: 0 },
initialCost: { input: 0, output: 0, total: 0 },
createStream: ({ output, finalizeTiming }) =>
createReadableStreamFromAzureOpenAIStream(streamResponse, (content, usage) => {
output.content = content
output.tokens = {
input: usage.prompt_tokens,
output: usage.completion_tokens,
total: usage.total_tokens,
}
const costResult = calculateCost(
request.model,
usage.prompt_tokens,
usage.completion_tokens
)
output.cost = {
input: costResult.input,
output: costResult.output,
total: costResult.total,
}
finalizeTiming()
}),
})
return streamingResult
}
const initialCallTime = Date.now()
const originalToolChoice = payload.tool_choice
const forcedTools = preparedTools?.forcedTools || []
let usedForcedTools: string[] = []
let currentResponse = (await azureOpenAI.chat.completions.create(
payload,
request.abortSignal ? { signal: request.abortSignal } : undefined
)) as ChatCompletion
const firstResponseTime = Date.now() - initialCallTime
let content = currentResponse.choices[0]?.message?.content || ''
const tokens = {
input: currentResponse.usage?.prompt_tokens || 0,
output: currentResponse.usage?.completion_tokens || 0,
total: currentResponse.usage?.total_tokens || 0,
}
const toolCalls: FunctionCallResponse[] = []
const toolResults: Record<string, unknown>[] = []
const currentMessages = [...allMessages]
let iterationCount = 0
let modelTime = firstResponseTime
let toolsTime = 0
let hasUsedForcedTool = false
const timeSegments: TimeSegment[] = [
{
type: 'model',
name: request.model,
startTime: initialCallTime,
endTime: initialCallTime + firstResponseTime,
duration: firstResponseTime,
},
]
enrichLastModelSegmentFromChatCompletions(
timeSegments,
currentResponse,
currentResponse.choices[0]?.message?.tool_calls,
{ model: request.model, provider: 'azure_openai' }
)
const firstCheckResult = checkForForcedToolUsage(
currentResponse,
originalToolChoice ?? 'auto',
logger,
forcedTools,
usedForcedTools
)
hasUsedForcedTool = firstCheckResult.hasUsedForcedTool
usedForcedTools = firstCheckResult.usedForcedTools
while (iterationCount < MAX_TOOL_ITERATIONS) {
if (currentResponse.choices[0]?.message?.content) {
content = currentResponse.choices[0].message.content
}
const toolCallsInResponse = currentResponse.choices[0]?.message?.tool_calls
if (!toolCallsInResponse || toolCallsInResponse.length === 0) {
break
}
logger.info(
`Processing ${toolCallsInResponse.length} tool calls (iteration ${iterationCount + 1}/${MAX_TOOL_ITERATIONS})`
)
const toolsStartTime = Date.now()
const toolExecutionPromises = toolCallsInResponse.map(async (toolCall) => {
const toolCallStartTime = Date.now()
const toolName = toolCall.function.name
try {
const toolArgs = JSON.parse(toolCall.function.arguments)
const tool = request.tools?.find((t) => t.id === toolName)
if (!tool) return null
const { toolParams, executionParams } = prepareToolExecution(tool, toolArgs, request)
const result = await executeTool(toolName, executionParams, {
signal: request.abortSignal,
})
const toolCallEndTime = Date.now()
return {
toolCall,
toolName,
toolParams,
result,
startTime: toolCallStartTime,
endTime: toolCallEndTime,
duration: toolCallEndTime - toolCallStartTime,
}
} catch (error) {
const toolCallEndTime = Date.now()
logger.error('Error processing tool call:', { error, toolName })
return {
toolCall,
toolName,
toolParams: {},
result: {
success: false,
output: undefined,
error: getErrorMessage(error, 'Tool execution failed'),
},
startTime: toolCallStartTime,
endTime: toolCallEndTime,
duration: toolCallEndTime - toolCallStartTime,
}
}
})
const executionResults = await Promise.allSettled(toolExecutionPromises)
currentMessages.push({
role: 'assistant',
content: null,
tool_calls: toolCallsInResponse.map((tc) => ({
id: tc.id,
type: 'function',
function: {
name: tc.function.name,
arguments: tc.function.arguments,
},
})),
})
for (const settledResult of executionResults) {
if (settledResult.status === 'rejected' || !settledResult.value) continue
const { toolCall, toolName, toolParams, result, startTime, endTime, duration } =
settledResult.value
timeSegments.push({
type: 'tool',
name: toolName,
startTime: startTime,
endTime: endTime,
duration: duration,
})
let resultContent: Record<string, unknown>
if (result.success) {
toolResults.push(result.output as Record<string, unknown>)
resultContent = result.output as Record<string, unknown>
} else {
resultContent = {
error: true,
message: result.error || 'Tool execution failed',
tool: toolName,
}
}
toolCalls.push({
name: toolName,
arguments: toolParams,
startTime: new Date(startTime).toISOString(),
endTime: new Date(endTime).toISOString(),
duration: duration,
result: resultContent,
success: result.success,
})
currentMessages.push({
role: 'tool',
tool_call_id: toolCall.id,
content: JSON.stringify(resultContent),
})
}
const thisToolsTime = Date.now() - toolsStartTime
toolsTime += thisToolsTime
const nextPayload = {
...payload,
messages: currentMessages,
}
if (typeof originalToolChoice === 'object' && hasUsedForcedTool && forcedTools.length > 0) {
const remainingTools = forcedTools.filter((tool) => !usedForcedTools.includes(tool))
if (remainingTools.length > 0) {
nextPayload.tool_choice = {
type: 'function',
function: { name: remainingTools[0] },
}
logger.info(`Forcing next tool: ${remainingTools[0]}`)
} else {
nextPayload.tool_choice = 'auto'
logger.info('All forced tools have been used, switching to auto tool_choice')
}
}
const nextModelStartTime = Date.now()
currentResponse = (await azureOpenAI.chat.completions.create(
nextPayload,
request.abortSignal ? { signal: request.abortSignal } : undefined
)) as ChatCompletion
const nextCheckResult = checkForForcedToolUsage(
currentResponse,
nextPayload.tool_choice ?? 'auto',
logger,
forcedTools,
usedForcedTools
)
hasUsedForcedTool = nextCheckResult.hasUsedForcedTool
usedForcedTools = nextCheckResult.usedForcedTools
const nextModelEndTime = Date.now()
const thisModelTime = nextModelEndTime - nextModelStartTime
timeSegments.push({
type: 'model',
name: request.model,
startTime: nextModelStartTime,
endTime: nextModelEndTime,
duration: thisModelTime,
})
enrichLastModelSegmentFromChatCompletions(
timeSegments,
currentResponse,
currentResponse.choices[0]?.message?.tool_calls,
{ model: request.model, provider: 'azure_openai' }
)
modelTime += thisModelTime
if (currentResponse.choices[0]?.message?.content) {
content = currentResponse.choices[0].message.content
}
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 (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: 'auto',
stream: true,
stream_options: { include_usage: true },
}
const streamResponse = await azureOpenAI.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, finalizeTiming }) =>
createReadableStreamFromAzureOpenAIStream(streamResponse, (content, usage) => {
output.content = content
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,
}
finalizeTiming()
}),
})
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
logger.error('Error in Azure OpenAI chat completions request:', {
error,
duration: totalDuration,
})
throw new ProviderError(toError(error).message, {
startTime: providerStartTimeISO,
endTime: providerEndTimeISO,
duration: totalDuration,
})
}
}
/**
* Azure OpenAI provider configuration
*/
export const azureOpenAIProvider: ProviderConfig = {
id: 'azure-openai',
name: 'Azure OpenAI',
description: 'Microsoft Azure OpenAI Service models',
version: '1.0.0',
models: getProviderModels('azure-openai'),
defaultModel: getProviderDefaultModel('azure-openai'),
executeRequest: async (
request: ProviderRequest
): Promise<ProviderResponse | StreamingExecution> => {
const userProvidedEndpoint = request.azureEndpoint
const azureEndpoint = userProvidedEndpoint || env.AZURE_OPENAI_ENDPOINT
if (!azureEndpoint) {
throw new Error(
'Azure OpenAI endpoint is required. Please provide it via azureEndpoint parameter or AZURE_OPENAI_ENDPOINT environment variable.'
)
}
let pinnedFetch: typeof fetch | undefined
if (userProvidedEndpoint) {
const validation = await validateUrlWithDNS(userProvidedEndpoint, 'azureEndpoint')
if (!validation.isValid) {
logger.warn('Blocked SSRF attempt via azureEndpoint', {
endpoint: userProvidedEndpoint,
error: validation.error,
})
throw new Error(`Invalid Azure OpenAI endpoint: ${validation.error}`)
}
if (!validation.resolvedIP) {
throw new Error('Invalid Azure OpenAI endpoint: could not resolve a pinnable IP address')
}
pinnedFetch = createPinnedFetch(validation.resolvedIP)
}
const apiKey = request.apiKey
if (!apiKey) {
throw new Error('API key is required for Azure OpenAI.')
}
// Check if the endpoint is a full chat completions URL
if (isChatCompletionsEndpoint(azureEndpoint)) {
logger.info('Detected chat completions endpoint URL')
// Extract the base URL for the SDK (it needs just the host, not the full path)
const baseUrl = extractBaseUrl(azureEndpoint)
// Try to extract deployment from URL, fall back to model name
const urlDeployment = extractDeploymentFromUrl(azureEndpoint)
const deploymentName = urlDeployment || request.model.replace('azure/', '')
// Try to extract api-version from URL, fall back to request param or env or default
const urlApiVersion = extractApiVersionFromUrl(azureEndpoint)
const azureApiVersion =
urlApiVersion ||
request.azureApiVersion ||
env.AZURE_OPENAI_API_VERSION ||
'2024-07-01-preview'
logger.info('Chat completions configuration:', {
originalEndpoint: azureEndpoint,
baseUrl,
deploymentName,
apiVersion: azureApiVersion,
})
return executeChatCompletionsRequest(
{ ...request, apiKey },
baseUrl,
azureApiVersion,
deploymentName,
pinnedFetch
)
}
// Check if the endpoint is already a full responses API URL
if (isResponsesEndpoint(azureEndpoint)) {
logger.info('Detected full responses endpoint URL, using it directly')
const deploymentName = request.model.replace('azure/', '')
// Use the URL as-is since it's already complete
return executeResponsesProviderRequest(
{ ...request, apiKey },
{
providerId: 'azure-openai',
providerLabel: 'Azure OpenAI',
modelName: deploymentName,
endpoint: azureEndpoint,
headers: {
'Content-Type': 'application/json',
'OpenAI-Beta': 'responses=v1',
'api-key': apiKey,
},
logger,
fetch: pinnedFetch,
}
)
}
// Default: base URL provided, construct the responses API URL
logger.info('Using base endpoint, constructing Responses API URL')
const azureApiVersion =
request.azureApiVersion || env.AZURE_OPENAI_API_VERSION || '2024-07-01-preview'
const deploymentName = request.model.replace('azure/', '')
const apiUrl = `${azureEndpoint.replace(/\/$/, '')}/openai/v1/responses?api-version=${azureApiVersion}`
return executeResponsesProviderRequest(
{ ...request, apiKey },
{
providerId: 'azure-openai',
providerLabel: 'Azure OpenAI',
modelName: deploymentName,
endpoint: apiUrl,
headers: {
'Content-Type': 'application/json',
'OpenAI-Beta': 'responses=v1',
'api-key': apiKey,
},
logger,
fetch: pinnedFetch,
}
)
},
}