opencode/packages/llm/test/llm.test.ts
James Long 8c94e9005f
chore: merge dev into v2 (#34788)
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2026-07-01 17:12:00 -04:00

199 lines
8.2 KiB
TypeScript

import { describe, expect, test } from "bun:test"
import { CacheHint, LLM, LLMResponse } from "../src"
import * as OpenAIChat from "../src/protocols/openai-chat"
import * as OpenAIResponses from "../src/protocols/openai-responses"
import { LLMRequest, Message, Model, ToolCallPart, ToolChoice, ToolDefinition, ToolResultPart } from "../src/schema"
const chatRoute = OpenAIChat.route
const responsesRoute = OpenAIResponses.route
describe("llm constructors", () => {
test("builds canonical schema classes from ergonomic input", () => {
const request = LLM.request({
id: "req_1",
model: Model.make({ id: "fake-model", provider: "fake", route: chatRoute }),
system: "You are concise.",
prompt: "Say hello.",
})
expect(request).toBeInstanceOf(LLMRequest)
expect(request.model).toBeInstanceOf(Model)
expect(request.messages[0]).toBeInstanceOf(Message)
expect(request.system).toEqual([{ type: "text", text: "You are concise." }])
expect(request.messages[0]?.content).toEqual([{ type: "text", text: "Say hello." }])
expect(request.generation).toBeUndefined()
expect(request.tools).toEqual([])
})
test("updates requests without spreading schema class instances", () => {
const base = LLM.request({
id: "req_1",
model: Model.make({ id: "fake-model", provider: "fake", route: chatRoute }),
prompt: "Say hello.",
})
const updated = LLM.updateRequest(base, {
generation: { maxTokens: 20 },
messages: [...base.messages, Message.assistant("Hi.")],
})
expect(updated).toBeInstanceOf(LLMRequest)
expect(updated.id).toBe("req_1")
expect(updated.model).toEqual(base.model)
expect(updated.generation).toEqual({ maxTokens: 20 })
expect(updated.messages.map((message) => message.role)).toEqual(["user", "assistant"])
})
test("keeps request options separate from route defaults", () => {
const request = LLM.request({
model: Model.make({
id: "fake-model",
provider: "fake",
route: chatRoute.with({
generation: { maxTokens: 100, temperature: 1 },
providerOptions: { openai: { store: false, metadata: { model: true } } },
http: { body: { metadata: { model: true } }, headers: { "x-shared": "model" }, query: { model: "1" } },
}),
}),
prompt: "Say hello.",
generation: { temperature: 0 },
providerOptions: { openai: { store: true, metadata: { request: true } } },
http: { body: { metadata: { request: true } }, headers: { "x-shared": "request" }, query: { request: "1" } },
})
expect(request.generation).toEqual({ temperature: 0 })
expect(request.providerOptions).toEqual({ openai: { store: true, metadata: { request: true } } })
expect(request.http).toEqual({
body: { metadata: { request: true } },
headers: { "x-shared": "request" },
query: { request: "1" },
})
})
test("updates canonical requests from the request datatype", () => {
const base = LLM.request({
id: "req_1",
model: Model.make({ id: "fake-model", provider: "fake", route: chatRoute }),
prompt: "Say hello.",
})
const updated = LLMRequest.update(base, { messages: [...base.messages, Message.assistant("Hi.")] })
expect(updated).toBeInstanceOf(LLMRequest)
expect(updated.id).toBe("req_1")
expect(LLMRequest.input(updated).id).toBe("req_1")
expect(updated.messages.map((message) => message.role)).toEqual(["user", "assistant"])
expect(LLMRequest.update(updated, {})).toBe(updated)
})
test("updates canonical models from the model datatype", () => {
const base = Model.make({
id: "fake-model",
provider: "fake",
route: chatRoute,
})
const updated = Model.update(base, {
route: responsesRoute,
defaults: { generation: { maxTokens: 20 } },
compatibility: { toolSchema: "gemini" },
})
const updatedInput = Model.input(updated)
expect(updated).toBeInstanceOf(Model)
expect(String(updated.id)).toBe("fake-model")
expect(updated.route).toBe(responsesRoute)
expect(updated.defaults?.generation).toEqual({ maxTokens: 20 })
expect(updated.compatibility).toEqual({ toolSchema: "gemini" })
expect(updatedInput.defaults).toBe(updated.defaults)
expect(updatedInput.compatibility).toBe(updated.compatibility)
expect(String(updatedInput.provider)).toBe("fake")
expect(Model.update(updated, {})).toBe(updated)
})
test("carries model defaults and compatibility through route model selection", () => {
const model = chatRoute.model({
id: "kimi-k2",
defaults: {
limits: { context: 128_000, output: 8_192 },
generation: { maxTokens: 1_024, stop: ["END"] },
providerOptions: { openai: { parallelToolCalls: false } },
http: { body: { extra_body: true } },
},
compatibility: { toolSchema: "moonshot" },
})
const request = LLM.request({ model, prompt: "Say hello." })
expect(request.model.defaults?.limits).toEqual({ context: 128_000, output: 8_192 })
expect(request.model.defaults?.generation).toEqual({ maxTokens: 1_024, stop: ["END"] })
expect(request.model.defaults?.providerOptions).toEqual({ openai: { parallelToolCalls: false } })
expect(request.model.defaults?.http).toEqual({ body: { extra_body: true } })
expect(request.model.compatibility).toEqual({ toolSchema: "moonshot" })
expect(request.generation).toBeUndefined()
expect(request.providerOptions).toBeUndefined()
expect(request.http).toBeUndefined()
})
test("builds tool choices from names and tools", () => {
const tool = ToolDefinition.make({ name: "lookup", description: "Lookup data", inputSchema: { type: "object" } })
expect(tool).toBeInstanceOf(ToolDefinition)
expect(ToolChoice.make("lookup")).toEqual(new ToolChoice({ type: "tool", name: "lookup" }))
expect(ToolChoice.named("required")).toEqual(new ToolChoice({ type: "tool", name: "required" }))
expect(ToolChoice.make(tool)).toEqual(new ToolChoice({ type: "tool", name: "lookup" }))
})
test("builds tool choice modes from reserved strings", () => {
expect(ToolChoice.make("auto")).toEqual(new ToolChoice({ type: "auto" }))
expect(ToolChoice.make("none")).toEqual(new ToolChoice({ type: "none" }))
expect(ToolChoice.make("required")).toEqual(new ToolChoice({ type: "required" }))
expect(
LLM.request({
model: Model.make({
id: "fake-model",
provider: "fake",
route: chatRoute,
}),
prompt: "Use tools if needed.",
toolChoice: "required",
}).toolChoice,
).toEqual(new ToolChoice({ type: "required" }))
})
test("builds assistant tool calls and tool result messages", () => {
const call = ToolCallPart.make({ id: "call_1", name: "lookup", input: { query: "weather" } })
const result = ToolResultPart.make({ id: "call_1", name: "lookup", result: { temperature: 72 } })
expect(Message.assistant([call]).content).toEqual([call])
expect(Message.tool(result).content).toEqual([
{ type: "tool-result", id: "call_1", name: "lookup", result: { type: "json", value: { temperature: 72 } } },
])
})
test("builds chronological text-only system updates separately from the initial system prompt", () => {
const update = Message.system([
{ type: "text", text: "Use parameterized SQL.", cache: new CacheHint({ type: "ephemeral" }) },
])
const request = LLM.request({
model: Model.make({ id: "fake-model", provider: "fake", route: chatRoute }),
system: "Initial operator prompt.",
messages: [Message.user("Review this."), update],
})
expect(update).toBeInstanceOf(Message)
expect(update).toEqual({
role: "system",
content: [{ type: "text", text: "Use parameterized SQL.", cache: { type: "ephemeral" } }],
})
expect(request.system).toEqual([{ type: "text", text: "Initial operator prompt." }])
expect(request.messages.map((message) => message.role)).toEqual(["user", "system"])
})
test("extracts output text from response events", () => {
expect(
LLMResponse.text({
events: [
{ type: "text-delta", id: "text-0", text: "hi" },
{ type: "finish", reason: "stop" },
],
}),
).toBe("hi")
})
})