import type { StreamFn } from "@mariozechner/pi-agent-core"; import type { Context, Model, SimpleStreamOptions } from "@mariozechner/pi-ai"; import { describe, expect, it, vi } from "vitest"; import { applyExtraParamsToAgent, resolveExtraParams } from "./pi-embedded-runner.js"; import { log } from "./pi-embedded-runner/logger.js"; describe("resolveExtraParams", () => { it("returns undefined with no model config", () => { const result = resolveExtraParams({ cfg: undefined, provider: "zai", modelId: "glm-4.7", }); expect(result).toBeUndefined(); }); it("returns params for exact provider/model key", () => { const result = resolveExtraParams({ cfg: { agents: { defaults: { models: { "openai/gpt-4": { params: { temperature: 0.7, maxTokens: 2048, }, }, }, }, }, }, provider: "openai", modelId: "gpt-4", }); expect(result).toEqual({ temperature: 0.7, maxTokens: 2048, }); }); it("ignores unrelated model entries", () => { const result = resolveExtraParams({ cfg: { agents: { defaults: { models: { "openai/gpt-4": { params: { temperature: 0.7, }, }, }, }, }, }, provider: "openai", modelId: "gpt-4.1-mini", }); expect(result).toBeUndefined(); }); it("returns per-agent params when agentId matches", () => { const result = resolveExtraParams({ cfg: { agents: { list: [ { id: "risk-reviewer", params: { cacheRetention: "none" }, }, ], }, }, provider: "anthropic", modelId: "claude-opus-4-6", agentId: "risk-reviewer", }); expect(result).toEqual({ cacheRetention: "none" }); }); it("merges per-agent params over global model defaults", () => { const result = resolveExtraParams({ cfg: { agents: { defaults: { models: { "anthropic/claude-opus-4-6": { params: { temperature: 0.5, cacheRetention: "long", }, }, }, }, list: [ { id: "risk-reviewer", params: { cacheRetention: "none" }, }, ], }, }, provider: "anthropic", modelId: "claude-opus-4-6", agentId: "risk-reviewer", }); expect(result).toEqual({ temperature: 0.5, cacheRetention: "none", }); }); it("preserves higher-precedence agent parallelToolCalls override across alias styles", () => { const result = resolveExtraParams({ cfg: { agents: { defaults: { models: { "openai/gpt-4.1": { params: { parallel_tool_calls: true, }, }, }, }, list: [ { id: "main", params: { parallelToolCalls: false, }, }, ], }, }, provider: "openai", modelId: "gpt-4.1", agentId: "main", }); expect(result).toEqual({ parallel_tool_calls: false, }); }); it("ignores per-agent params when agentId does not match", () => { const result = resolveExtraParams({ cfg: { agents: { list: [ { id: "risk-reviewer", params: { cacheRetention: "none" }, }, ], }, }, provider: "anthropic", modelId: "claude-opus-4-6", agentId: "main", }); expect(result).toBeUndefined(); }); }); describe("applyExtraParamsToAgent", () => { function createOptionsCaptureAgent() { const calls: Array<(SimpleStreamOptions & { openaiWsWarmup?: boolean }) | undefined> = []; const baseStreamFn: StreamFn = (_model, _context, options) => { calls.push(options as (SimpleStreamOptions & { openaiWsWarmup?: boolean }) | undefined); return {} as ReturnType; }; return { calls, agent: { streamFn: baseStreamFn }, }; } function buildAnthropicModelConfig(modelKey: string, params: Record) { return { agents: { defaults: { models: { [modelKey]: { params }, }, }, }, }; } function runResponsesPayloadMutationCase(params: { applyProvider: string; applyModelId: string; model: | Model<"openai-responses"> | Model<"openai-codex-responses"> | Model<"openai-completions"> | Model<"anthropic-messages">; options?: SimpleStreamOptions; cfg?: Record; extraParamsOverride?: Record; payload?: Record; }) { const payload = params.payload ?? { store: false }; const baseStreamFn: StreamFn = (model, _context, options) => { options?.onPayload?.(payload, model); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, params.cfg as Parameters[1], params.applyProvider, params.applyModelId, params.extraParamsOverride, ); const context: Context = { messages: [] }; void agent.streamFn?.(params.model, context, params.options ?? {}); return payload; } function runParallelToolCallsPayloadMutationCase(params: { applyProvider: string; applyModelId: string; model: Model<"openai-completions"> | Model<"openai-responses"> | Model<"anthropic-messages">; cfg?: Record; extraParamsOverride?: Record; payload?: Record; }) { const payload = params.payload ?? {}; const baseStreamFn: StreamFn = (model, _context, options) => { options?.onPayload?.(payload, model); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, params.cfg as Parameters[1], params.applyProvider, params.applyModelId, params.extraParamsOverride, ); const context: Context = { messages: [] }; void agent.streamFn?.(params.model, context, {}); return payload; } function runAnthropicHeaderCase(params: { cfg: Record; modelId: string; options?: SimpleStreamOptions; }) { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, params.cfg, "anthropic", params.modelId); const model = { api: "anthropic-messages", provider: "anthropic", id: params.modelId, } as Model<"anthropic-messages">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, params.options ?? {}); expect(calls).toHaveLength(1); return calls[0]?.headers; } it("does not inject reasoning when thinkingLevel is off (default) for OpenRouter", () => { // Regression: "off" is a truthy string, so the old code injected // reasoning: { effort: "none" }, causing a 400 on models that require // reasoning (e.g. deepseek/deepseek-r1). const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { model: "deepseek/deepseek-r1" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, undefined, "openrouter", "deepseek/deepseek-r1", undefined, "off", ); const model = { api: "openai-completions", provider: "openrouter", id: "deepseek/deepseek-r1", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]).not.toHaveProperty("reasoning"); expect(payloads[0]).not.toHaveProperty("reasoning_effort"); }); it("injects reasoning.effort when thinkingLevel is non-off for OpenRouter", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = {}; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "openrouter", "openrouter/auto", undefined, "low"); const model = { api: "openai-completions", provider: "openrouter", id: "openrouter/auto", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.reasoning).toEqual({ effort: "low" }); }); it("removes legacy reasoning_effort and keeps reasoning unset when thinkingLevel is off", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { reasoning_effort: "high" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "openrouter", "openrouter/auto", undefined, "off"); const model = { api: "openai-completions", provider: "openrouter", id: "openrouter/auto", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]).not.toHaveProperty("reasoning_effort"); expect(payloads[0]).not.toHaveProperty("reasoning"); }); it("does not inject effort when payload already has reasoning.max_tokens", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { reasoning: { max_tokens: 256 } }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "openrouter", "openrouter/auto", undefined, "low"); const model = { api: "openai-completions", provider: "openrouter", id: "openrouter/auto", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]).toEqual({ reasoning: { max_tokens: 256 } }); }); it("does not inject reasoning.effort for x-ai/grok models on OpenRouter (#32039)", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { reasoning_effort: "medium" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, undefined, "openrouter", "x-ai/grok-4.1-fast", undefined, "medium", ); const model = { api: "openai-completions", provider: "openrouter", id: "x-ai/grok-4.1-fast", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]).not.toHaveProperty("reasoning"); expect(payloads[0]).not.toHaveProperty("reasoning_effort"); }); it("removes unsupported function.strict from xAI tool payloads", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tools: [ { type: "function", function: { name: "write", parameters: { type: "object", properties: {} }, strict: false, }, }, ], }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "xai", "grok-4.1-fast"); const model = { api: "openai-completions", provider: "xai", id: "grok-4.1-fast", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.tools).toEqual([ { type: "function", function: { name: "write", parameters: { type: "object", properties: {} }, }, }, ]); }); it("injects parallel_tool_calls for openai-completions payloads when configured", () => { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "nvidia-nim", applyModelId: "moonshotai/kimi-k2.5", cfg: { agents: { defaults: { models: { "nvidia-nim/moonshotai/kimi-k2.5": { params: { parallel_tool_calls: false, }, }, }, }, }, }, model: { api: "openai-completions", provider: "nvidia-nim", id: "moonshotai/kimi-k2.5", } as Model<"openai-completions">, }); expect(payload.parallel_tool_calls).toBe(false); }); it("injects parallel_tool_calls for openai-responses payloads when configured", () => { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", cfg: { agents: { defaults: { models: { "openai/gpt-5": { params: { parallelToolCalls: true, }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload.parallel_tool_calls).toBe(true); }); it("does not inject parallel_tool_calls for unsupported APIs", () => { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-6", cfg: { agents: { defaults: { models: { "anthropic/claude-sonnet-4-6": { params: { parallel_tool_calls: false, }, }, }, }, }, }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-6", } as Model<"anthropic-messages">, }); expect(payload).not.toHaveProperty("parallel_tool_calls"); }); it("lets runtime override win across alias styles for parallel_tool_calls", () => { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "nvidia-nim", applyModelId: "moonshotai/kimi-k2.5", cfg: { agents: { defaults: { models: { "nvidia-nim/moonshotai/kimi-k2.5": { params: { parallel_tool_calls: true, }, }, }, }, }, }, extraParamsOverride: { parallelToolCalls: false, }, model: { api: "openai-completions", provider: "nvidia-nim", id: "moonshotai/kimi-k2.5", } as Model<"openai-completions">, }); expect(payload.parallel_tool_calls).toBe(false); }); it("lets null runtime override suppress inherited parallel_tool_calls injection", () => { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "nvidia-nim", applyModelId: "moonshotai/kimi-k2.5", cfg: { agents: { defaults: { models: { "nvidia-nim/moonshotai/kimi-k2.5": { params: { parallel_tool_calls: true, }, }, }, }, }, }, extraParamsOverride: { parallelToolCalls: null, }, model: { api: "openai-completions", provider: "nvidia-nim", id: "moonshotai/kimi-k2.5", } as Model<"openai-completions">, }); expect(payload).not.toHaveProperty("parallel_tool_calls"); }); it("warns and skips invalid parallel_tool_calls values", () => { const warnSpy = vi.spyOn(log, "warn").mockImplementation(() => undefined); try { const payload = runParallelToolCallsPayloadMutationCase({ applyProvider: "nvidia-nim", applyModelId: "moonshotai/kimi-k2.5", cfg: { agents: { defaults: { models: { "nvidia-nim/moonshotai/kimi-k2.5": { params: { parallelToolCalls: "false", }, }, }, }, }, }, model: { api: "openai-completions", provider: "nvidia-nim", id: "moonshotai/kimi-k2.5", } as Model<"openai-completions">, }); expect(payload).not.toHaveProperty("parallel_tool_calls"); expect(warnSpy).toHaveBeenCalledWith("ignoring invalid parallel_tool_calls param: false"); } finally { warnSpy.mockRestore(); } }); it("normalizes thinking=off to null for SiliconFlow Pro models", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { thinking: "off" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, undefined, "siliconflow", "Pro/MiniMaxAI/MiniMax-M2.5", undefined, "off", ); const model = { api: "openai-completions", provider: "siliconflow", id: "Pro/MiniMaxAI/MiniMax-M2.5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toBeNull(); }); it("keeps thinking=off unchanged for non-Pro SiliconFlow model IDs", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { thinking: "off" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, undefined, "siliconflow", "deepseek-ai/DeepSeek-V3.2", undefined, "off", ); const model = { api: "openai-completions", provider: "siliconflow", id: "deepseek-ai/DeepSeek-V3.2", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toBe("off"); }); it("maps thinkingLevel=off to Moonshot thinking.type=disabled", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = {}; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "moonshot", "kimi-k2.5", undefined, "off"); const model = { api: "openai-completions", provider: "moonshot", id: "kimi-k2.5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "disabled" }); }); it("maps non-off thinking levels to Moonshot thinking.type=enabled and normalizes tool_choice", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tool_choice: "required" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "moonshot", "kimi-k2.5", undefined, "low"); const model = { api: "openai-completions", provider: "moonshot", id: "kimi-k2.5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "enabled" }); expect(payloads[0]?.tool_choice).toBe("auto"); }); it("disables thinking instead of broadening pinned Moonshot tool_choice", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tool_choice: { type: "tool", name: "read" }, }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "moonshot", "kimi-k2.5", undefined, "low"); const model = { api: "openai-completions", provider: "moonshot", id: "kimi-k2.5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "disabled" }); expect(payloads[0]?.tool_choice).toEqual({ type: "tool", name: "read" }); }); it("respects explicit Moonshot thinking param from model config", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = {}; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; const cfg = { agents: { defaults: { models: { "moonshot/kimi-k2.5": { params: { thinking: { type: "disabled" }, }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "moonshot", "kimi-k2.5", undefined, "high"); const model = { api: "openai-completions", provider: "moonshot", id: "kimi-k2.5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "disabled" }); }); it("applies Moonshot payload compatibility to Ollama Kimi cloud models", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tool_choice: "required" }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "ollama", "kimi-k2.5:cloud", undefined, "low"); const model = { api: "openai-completions", provider: "ollama", id: "kimi-k2.5:cloud", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "enabled" }); expect(payloads[0]?.tool_choice).toBe("auto"); }); it("maps thinkingLevel=off for Ollama Kimi cloud models through Moonshot compatibility", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = {}; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "ollama", "kimi-k2.5:cloud", undefined, "off"); const model = { api: "openai-completions", provider: "ollama", id: "kimi-k2.5:cloud", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "disabled" }); }); it("disables thinking instead of broadening pinned Ollama Kimi cloud tool_choice", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tool_choice: { type: "function", function: { name: "read" } }, }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "ollama", "kimi-k2.5:cloud", undefined, "low"); const model = { api: "openai-completions", provider: "ollama", id: "kimi-k2.5:cloud", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.thinking).toEqual({ type: "disabled" }); expect(payloads[0]?.tool_choice).toEqual({ type: "function", function: { name: "read" }, }); }); it("does not rewrite tool schema for kimi-coding (native Anthropic format)", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tools: [ { name: "read", description: "Read file", input_schema: { type: "object", properties: { path: { type: "string" } }, required: ["path"], }, }, ], tool_choice: { type: "tool", name: "read" }, }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "kimi-coding", "k2p5", undefined, "low"); const model = { api: "anthropic-messages", provider: "kimi-coding", id: "k2p5", baseUrl: "https://api.kimi.com/coding/", } as Model<"anthropic-messages">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.tools).toEqual([ { name: "read", description: "Read file", input_schema: { type: "object", properties: { path: { type: "string" } }, required: ["path"], }, }, ]); expect(payloads[0]?.tool_choice).toEqual({ type: "tool", name: "read" }); }); it("does not rewrite anthropic tool schema for non-kimi endpoints", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tools: [ { name: "read", description: "Read file", input_schema: { type: "object", properties: {} }, }, ], }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "anthropic", "claude-sonnet-4-6", undefined, "low"); const model = { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-6", baseUrl: "https://api.anthropic.com", } as Model<"anthropic-messages">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.tools).toEqual([ { name: "read", description: "Read file", input_schema: { type: "object", properties: {} }, }, ]); }); it("uses explicit compat metadata for anthropic tool payload normalization", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { tools: [ { name: "read", description: "Read file", input_schema: { type: "object", properties: {} }, }, ], }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent( agent, undefined, "custom-anthropic-proxy", "proxy-model", undefined, "low", ); const model = { api: "anthropic-messages", provider: "custom-anthropic-proxy", id: "proxy-model", compat: { requiresOpenAiAnthropicToolPayload: true, }, } as unknown as Model<"anthropic-messages">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.tools).toEqual([ { type: "function", function: { name: "read", description: "Read file", parameters: { type: "object", properties: {} }, }, }, ]); }); it("removes invalid negative Google thinkingBudget and maps Gemini 3.1 to thinkingLevel", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { contents: [ { role: "user", parts: [ { text: "describe image" }, { inlineData: { mimeType: "image/png", data: "ZmFrZQ==", }, }, ], }, ], config: { thinkingConfig: { includeThoughts: true, thinkingBudget: -1, }, }, }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "atproxy", "gemini-3.1-pro-high", undefined, "high"); const model = { api: "google-generative-ai", provider: "atproxy", id: "gemini-3.1-pro-high", } as Model<"google-generative-ai">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); const thinkingConfig = ( payloads[0]?.config as { thinkingConfig?: Record } | undefined )?.thinkingConfig; expect(thinkingConfig).toEqual({ includeThoughts: true, thinkingLevel: "HIGH", }); expect( ( payloads[0]?.contents as | Array<{ parts?: Array<{ inlineData?: { mimeType?: string; data?: string } }> }> | undefined )?.[0]?.parts?.[1]?.inlineData, ).toEqual({ mimeType: "image/png", data: "ZmFrZQ==", }); }); it("keeps valid Google thinkingBudget unchanged", () => { const payloads: Record[] = []; const baseStreamFn: StreamFn = (_model, _context, options) => { const payload: Record = { config: { thinkingConfig: { includeThoughts: true, thinkingBudget: 2048, }, }, }; options?.onPayload?.(payload, _model); payloads.push(payload); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; applyExtraParamsToAgent(agent, undefined, "atproxy", "gemini-3.1-pro-high", undefined, "high"); const model = { api: "google-generative-ai", provider: "atproxy", id: "gemini-3.1-pro-high", } as Model<"google-generative-ai">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(payloads).toHaveLength(1); expect(payloads[0]?.config).toEqual({ thinkingConfig: { includeThoughts: true, thinkingBudget: 2048, }, }); }); it("adds OpenRouter attribution headers to stream options", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "openrouter", "openrouter/auto"); const model = { api: "openai-completions", provider: "openrouter", id: "openrouter/auto", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, { headers: { "X-Custom": "1" } }); expect(calls).toHaveLength(1); expect(calls[0]?.headers).toEqual({ "HTTP-Referer": "https://openclaw.ai", "X-Title": "OpenClaw", "X-Custom": "1", }); }); it("passes configured websocket transport through stream options", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai-codex/gpt-5.3-codex": { params: { transport: "websocket", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai-codex", "gpt-5.3-codex"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.3-codex", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("websocket"); }); it("passes configured websocket transport through stream options for openai-codex gpt-5.4", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai-codex/gpt-5.4": { params: { transport: "websocket", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai-codex", "gpt-5.4"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.4", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("websocket"); }); it("defaults Codex transport to auto (WebSocket-first)", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "openai-codex", "gpt-5.3-codex"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.3-codex", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("auto"); }); it("defaults OpenAI transport to auto (WebSocket-first)", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "openai", "gpt-5"); const model = { api: "openai-responses", provider: "openai", id: "gpt-5", } as Model<"openai-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("auto"); expect(calls[0]?.openaiWsWarmup).toBe(false); }); it("lets runtime options override OpenAI default transport", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "openai", "gpt-5"); const model = { api: "openai-responses", provider: "openai", id: "gpt-5", } as Model<"openai-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, { transport: "sse" }); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("sse"); }); it("allows disabling OpenAI websocket warm-up via model params", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai/gpt-5": { params: { openaiWsWarmup: false, }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai", "gpt-5"); const model = { api: "openai-responses", provider: "openai", id: "gpt-5", } as Model<"openai-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.openaiWsWarmup).toBe(false); }); it("lets runtime options override configured OpenAI websocket warm-up", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai/gpt-5": { params: { openaiWsWarmup: false, }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai", "gpt-5"); const model = { api: "openai-responses", provider: "openai", id: "gpt-5", } as Model<"openai-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, { openaiWsWarmup: true, } as unknown as SimpleStreamOptions); expect(calls).toHaveLength(1); expect(calls[0]?.openaiWsWarmup).toBe(true); }); it("allows forcing Codex transport to SSE", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai-codex/gpt-5.3-codex": { params: { transport: "sse", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai-codex", "gpt-5.3-codex"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.3-codex", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("sse"); }); it("lets runtime options override configured transport", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai-codex/gpt-5.3-codex": { params: { transport: "websocket", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai-codex", "gpt-5.3-codex"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.3-codex", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, { transport: "sse" }); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("sse"); }); it("falls back to Codex default transport when configured value is invalid", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "openai-codex/gpt-5.3-codex": { params: { transport: "udp", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "openai-codex", "gpt-5.3-codex"); const model = { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.3-codex", } as Model<"openai-codex-responses">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.transport).toBe("auto"); }); it("disables prompt caching for non-Anthropic Bedrock models", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "amazon-bedrock", "amazon.nova-micro-v1"); const model = { api: "openai-completions", provider: "amazon-bedrock", id: "amazon.nova-micro-v1", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.cacheRetention).toBe("none"); }); it("keeps Anthropic Bedrock models eligible for provider-side caching", () => { const { calls, agent } = createOptionsCaptureAgent(); applyExtraParamsToAgent(agent, undefined, "amazon-bedrock", "us.anthropic.claude-sonnet-4-5"); const model = { api: "openai-completions", provider: "amazon-bedrock", id: "us.anthropic.claude-sonnet-4-5", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.cacheRetention).toBeUndefined(); }); it("passes through explicit cacheRetention for Anthropic Bedrock models", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = { agents: { defaults: { models: { "amazon-bedrock/us.anthropic.claude-opus-4-6-v1": { params: { cacheRetention: "long", }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "amazon-bedrock", "us.anthropic.claude-opus-4-6-v1"); const model = { api: "openai-completions", provider: "amazon-bedrock", id: "us.anthropic.claude-opus-4-6-v1", } as Model<"openai-completions">; const context: Context = { messages: [] }; void agent.streamFn?.(model, context, {}); expect(calls).toHaveLength(1); expect(calls[0]?.cacheRetention).toBe("long"); }); it("adds Anthropic 1M beta header when context1m is enabled for Opus/Sonnet", () => { const { calls, agent } = createOptionsCaptureAgent(); const cfg = buildAnthropicModelConfig("anthropic/claude-opus-4-6", { context1m: true }); applyExtraParamsToAgent(agent, cfg, "anthropic", "claude-opus-4-6"); const model = { api: "anthropic-messages", provider: "anthropic", id: "claude-opus-4-6", } as Model<"anthropic-messages">; const context: Context = { messages: [] }; // Simulate pi-agent-core passing apiKey in options (API key, not OAuth token) void agent.streamFn?.(model, context, { apiKey: "sk-ant-api03-test", // pragma: allowlist secret headers: { "X-Custom": "1" }, }); expect(calls).toHaveLength(1); expect(calls[0]?.headers).toEqual({ "X-Custom": "1", // Includes pi-ai default betas (preserved to avoid overwrite) + context1m "anthropic-beta": "fine-grained-tool-streaming-2025-05-14,interleaved-thinking-2025-05-14,context-1m-2025-08-07", }); }); it("does not add Anthropic 1M beta header when context1m is not enabled", () => { const cfg = buildAnthropicModelConfig("anthropic/claude-opus-4-6", { temperature: 0.2, }); const headers = runAnthropicHeaderCase({ cfg, modelId: "claude-opus-4-6", options: { headers: { "X-Custom": "1" } }, }); expect(headers).toEqual({ "X-Custom": "1" }); }); it("skips context1m beta for OAuth tokens but preserves OAuth-required betas", () => { const calls: Array = []; const baseStreamFn: StreamFn = (_model, _context, options) => { calls.push(options); return {} as ReturnType; }; const agent = { streamFn: baseStreamFn }; const cfg = { agents: { defaults: { models: { "anthropic/claude-sonnet-4-6": { params: { context1m: true, }, }, }, }, }, }; applyExtraParamsToAgent(agent, cfg, "anthropic", "claude-sonnet-4-6"); const model = { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-6", } as Model<"anthropic-messages">; const context: Context = { messages: [] }; // Simulate pi-agent-core passing an OAuth token (sk-ant-oat-*) as apiKey void agent.streamFn?.(model, context, { apiKey: "sk-ant-oat01-test-oauth-token", // pragma: allowlist secret headers: { "X-Custom": "1" }, }); expect(calls).toHaveLength(1); const betaHeader = calls[0]?.headers?.["anthropic-beta"] as string; // Must include the OAuth-required betas so they aren't stripped by pi-ai's mergeHeaders expect(betaHeader).toContain("oauth-2025-04-20"); expect(betaHeader).toContain("claude-code-20250219"); expect(betaHeader).not.toContain("context-1m-2025-08-07"); }); it("merges existing anthropic-beta headers with configured betas", () => { const cfg = buildAnthropicModelConfig("anthropic/claude-sonnet-4-5", { context1m: true, anthropicBeta: ["files-api-2025-04-14"], }); const headers = runAnthropicHeaderCase({ cfg, modelId: "claude-sonnet-4-5", options: { apiKey: "sk-ant-api03-test", // pragma: allowlist secret headers: { "anthropic-beta": "prompt-caching-2024-07-31" }, }, }); expect(headers).toEqual({ "anthropic-beta": "prompt-caching-2024-07-31,fine-grained-tool-streaming-2025-05-14,interleaved-thinking-2025-05-14,files-api-2025-04-14,context-1m-2025-08-07", }); }); it("ignores context1m for non-Opus/Sonnet Anthropic models", () => { const cfg = buildAnthropicModelConfig("anthropic/claude-haiku-3-5", { context1m: true }); const headers = runAnthropicHeaderCase({ cfg, modelId: "claude-haiku-3-5", options: { headers: { "X-Custom": "1" } }, }); expect(headers).toEqual({ "X-Custom": "1" }); }); it("forces store=true for direct OpenAI Responses payloads", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload.store).toBe(true); }); it("forces store=true for azure-openai provider with openai-responses API (#42800)", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "azure-openai", applyModelId: "gpt-5-mini", model: { api: "openai-responses", provider: "azure-openai", id: "gpt-5-mini", baseUrl: "https://myresource.openai.azure.com/openai/v1", } as unknown as Model<"openai-responses">, }); expect(payload.store).toBe(true); }); it("injects configured OpenAI service_tier into Responses payloads", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { serviceTier: "priority", }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload.service_tier).toBe("priority"); }); it("preserves caller-provided service_tier values", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { serviceTier: "priority", }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, payload: { store: false, service_tier: "default", }, }); expect(payload.service_tier).toBe("default"); }); it("injects fast-mode payload defaults for direct OpenAI Responses", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { fastMode: true, }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, payload: { store: false, }, }); expect(payload.reasoning).toEqual({ effort: "low" }); expect(payload.text).toEqual({ verbosity: "low" }); expect(payload.service_tier).toBe("priority"); }); it("preserves caller-provided OpenAI payload fields when fast mode is enabled", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", extraParamsOverride: { fastMode: true }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, payload: { reasoning: { effort: "medium" }, text: { verbosity: "high" }, service_tier: "default", }, }); expect(payload.reasoning).toEqual({ effort: "medium" }); expect(payload.text).toEqual({ verbosity: "high" }); expect(payload.service_tier).toBe("default"); }); it("injects service_tier=auto for Anthropic fast mode on direct API-key models", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-5", extraParamsOverride: { fastMode: true }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-5", baseUrl: "https://api.anthropic.com", } as unknown as Model<"anthropic-messages">, payload: {}, }); expect(payload.service_tier).toBe("auto"); }); it("injects service_tier=standard_only for Anthropic fast mode off", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-5", extraParamsOverride: { fastMode: false }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-5", baseUrl: "https://api.anthropic.com", } as unknown as Model<"anthropic-messages">, payload: {}, }); expect(payload.service_tier).toBe("standard_only"); }); it("preserves caller-provided Anthropic service_tier values", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-5", extraParamsOverride: { fastMode: true }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-5", baseUrl: "https://api.anthropic.com", } as unknown as Model<"anthropic-messages">, payload: { service_tier: "standard_only", }, }); expect(payload.service_tier).toBe("standard_only"); }); it("does not inject Anthropic fast mode service_tier for OAuth auth", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-5", extraParamsOverride: { fastMode: true }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-5", baseUrl: "https://api.anthropic.com", } as unknown as Model<"anthropic-messages">, options: { apiKey: "sk-ant-oat-test-token", }, payload: {}, }); expect(payload).not.toHaveProperty("service_tier"); }); it("does not inject Anthropic fast mode service_tier for proxied base URLs", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "anthropic", applyModelId: "claude-sonnet-4-5", extraParamsOverride: { fastMode: true }, model: { api: "anthropic-messages", provider: "anthropic", id: "claude-sonnet-4-5", baseUrl: "https://proxy.example.com/anthropic", } as unknown as Model<"anthropic-messages">, payload: {}, }); expect(payload).not.toHaveProperty("service_tier"); }); it("applies fast-mode defaults for openai-codex responses without service_tier", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai-codex", applyModelId: "gpt-5.4", extraParamsOverride: { fastMode: true }, model: { api: "openai-codex-responses", provider: "openai-codex", id: "gpt-5.4", baseUrl: "https://chatgpt.com/backend-api", } as unknown as Model<"openai-codex-responses">, payload: { store: false, }, }); expect(payload.reasoning).toEqual({ effort: "low" }); expect(payload.text).toEqual({ verbosity: "low" }); expect(payload).not.toHaveProperty("service_tier"); }); it("does not inject service_tier for non-openai providers", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "azure-openai-responses", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "azure-openai-responses/gpt-5.4": { params: { serviceTier: "priority", }, }, }, }, }, }, model: { api: "openai-responses", provider: "azure-openai-responses", id: "gpt-5.4", baseUrl: "https://example.openai.azure.com/openai/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("service_tier"); }); it("does not inject service_tier for proxied openai base URLs", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { serviceTier: "priority", }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://proxy.example.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("service_tier"); }); it("does not inject service_tier for openai provider routed to Azure base URLs", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { serviceTier: "priority", }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://example.openai.azure.com/openai/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("service_tier"); }); it("warns and skips service_tier injection for invalid serviceTier values", () => { const warnSpy = vi.spyOn(log, "warn").mockImplementation(() => undefined); try { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5.4", cfg: { agents: { defaults: { models: { "openai/gpt-5.4": { params: { serviceTier: "invalid", }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5.4", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("service_tier"); expect(warnSpy).toHaveBeenCalledWith("ignoring invalid OpenAI service tier param: invalid"); } finally { warnSpy.mockRestore(); } }); it("does not force store for OpenAI Responses routed through non-OpenAI base URLs", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://proxy.example.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload.store).toBe(false); }); it("does not force store for OpenAI Responses when baseUrl is empty", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "", } as unknown as Model<"openai-responses">, }); expect(payload.store).toBe(false); }); it("strips store from payload for models that declare supportsStore=false", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "azure-openai-responses", applyModelId: "gpt-4o", model: { api: "openai-responses", provider: "azure-openai-responses", id: "gpt-4o", name: "gpt-4o", baseUrl: "https://example.openai.azure.com/openai/v1", reasoning: false, input: ["text"], cost: { input: 0, output: 0, cacheRead: 0, cacheWrite: 0 }, contextWindow: 128_000, maxTokens: 16_384, compat: { supportsStore: false }, } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("store"); }); it("strips store from payload for non-OpenAI responses providers with supportsStore=false", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "custom-openai-responses", applyModelId: "gemini-2.5-pro", model: { api: "openai-responses", provider: "custom-openai-responses", id: "gemini-2.5-pro", name: "gemini-2.5-pro", baseUrl: "https://gateway.ai.cloudflare.com/v1/account/gateway/openai", reasoning: false, input: ["text"], cost: { input: 0, output: 0, cacheRead: 0, cacheWrite: 0 }, contextWindow: 1_000_000, maxTokens: 65_536, compat: { supportsStore: false }, } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("store"); }); it("keeps existing context_management when stripping store for supportsStore=false models", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "custom-openai-responses", applyModelId: "gemini-2.5-pro", model: { api: "openai-responses", provider: "custom-openai-responses", id: "gemini-2.5-pro", name: "gemini-2.5-pro", baseUrl: "https://gateway.ai.cloudflare.com/v1/account/gateway/openai", reasoning: false, input: ["text"], cost: { input: 0, output: 0, cacheRead: 0, cacheWrite: 0 }, contextWindow: 1_000_000, maxTokens: 65_536, compat: { supportsStore: false }, } as unknown as Model<"openai-responses">, payload: { store: false, context_management: [{ type: "compaction", compact_threshold: 12_345 }], }, }); expect(payload).not.toHaveProperty("store"); expect(payload.context_management).toEqual([{ type: "compaction", compact_threshold: 12_345 }]); }); it("auto-injects OpenAI Responses context_management compaction for direct OpenAI models", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://api.openai.com/v1", contextWindow: 200_000, } as unknown as Model<"openai-responses">, }); expect(payload.context_management).toEqual([ { type: "compaction", compact_threshold: 140_000, }, ]); }); it("does not auto-inject OpenAI Responses context_management for Azure by default", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "azure-openai-responses", applyModelId: "gpt-4o", model: { api: "openai-responses", provider: "azure-openai-responses", id: "gpt-4o", baseUrl: "https://example.openai.azure.com/openai/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("context_management"); }); it("allows explicitly enabling OpenAI Responses context_management compaction", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "azure-openai-responses", applyModelId: "gpt-4o", cfg: { agents: { defaults: { models: { "azure-openai-responses/gpt-4o": { params: { responsesServerCompaction: true, responsesCompactThreshold: 42_000, }, }, }, }, }, }, model: { api: "openai-responses", provider: "azure-openai-responses", id: "gpt-4o", baseUrl: "https://example.openai.azure.com/openai/v1", } as unknown as Model<"openai-responses">, }); expect(payload.context_management).toEqual([ { type: "compaction", compact_threshold: 42_000, }, ]); }); it("preserves existing context_management payload values", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, payload: { store: false, context_management: [{ type: "compaction", compact_threshold: 12_345 }], }, }); expect(payload.context_management).toEqual([{ type: "compaction", compact_threshold: 12_345 }]); }); it("allows disabling OpenAI Responses context_management compaction via model params", () => { const payload = runResponsesPayloadMutationCase({ applyProvider: "openai", applyModelId: "gpt-5", cfg: { agents: { defaults: { models: { "openai/gpt-5": { params: { responsesServerCompaction: false, }, }, }, }, }, }, model: { api: "openai-responses", provider: "openai", id: "gpt-5", baseUrl: "https://api.openai.com/v1", } as unknown as Model<"openai-responses">, }); expect(payload).not.toHaveProperty("context_management"); }); it.each([ { name: "with openai-codex provider config", run: () => runResponsesPayloadMutationCase({ applyProvider: "openai-codex", applyModelId: "codex-mini-latest", model: { api: "openai-codex-responses", provider: "openai-codex", id: "codex-mini-latest", baseUrl: "https://chatgpt.com/backend-api/codex/responses", } as Model<"openai-codex-responses">, }), }, { name: "without config via provider/model hints", run: () => runResponsesPayloadMutationCase({ applyProvider: "openai-codex", applyModelId: "codex-mini-latest", model: { api: "openai-codex-responses", provider: "openai-codex", id: "codex-mini-latest", baseUrl: "https://chatgpt.com/backend-api/codex/responses", } as Model<"openai-codex-responses">, options: {}, }), }, ])( "does not force store=true for Codex responses (Codex requires store=false) ($name)", ({ run }) => { expect(run().store).toBe(false); }, ); });