co-mono/packages/coding-agent/test/model-resolver.test.ts
Mario Zechner 19f3c23f6d Fix PR #689: Add changelog attribution, coding-agent changelog, fix test types, add provider to test suites
- Fix ai/CHANGELOG.md: add PR link and author attribution
- Add coding-agent/CHANGELOG.md entry for vercel-ai-gateway provider
- Fix model-resolver.test.ts: use anthropic-messages API type to match generated models
- Add vercel-ai-gateway to test suites: tokens, abort, empty, context-overflow, unicode-surrogate, tool-call-without-result, image-tool-result, total-tokens, image-limits
2026-01-13 16:46:00 +01:00

236 lines
8.7 KiB
TypeScript

import type { Model } from "@mariozechner/pi-ai";
import { describe, expect, test } from "vitest";
import { defaultModelPerProvider, findInitialModel, parseModelPattern } from "../src/core/model-resolver.js";
// Mock models for testing
const mockModels: Model<"anthropic-messages">[] = [
{
id: "claude-sonnet-4-5",
name: "Claude Sonnet 4.5",
api: "anthropic-messages",
provider: "anthropic",
baseUrl: "https://api.anthropic.com",
reasoning: true,
input: ["text", "image"],
cost: { input: 3, output: 15, cacheRead: 0.3, cacheWrite: 3.75 },
contextWindow: 200000,
maxTokens: 8192,
},
{
id: "gpt-4o",
name: "GPT-4o",
api: "anthropic-messages", // Using same type for simplicity
provider: "openai",
baseUrl: "https://api.openai.com",
reasoning: false,
input: ["text", "image"],
cost: { input: 5, output: 15, cacheRead: 0.5, cacheWrite: 5 },
contextWindow: 128000,
maxTokens: 4096,
},
];
// Mock OpenRouter models with colons in IDs
const mockOpenRouterModels: Model<"anthropic-messages">[] = [
{
id: "qwen/qwen3-coder:exacto",
name: "Qwen3 Coder Exacto",
api: "anthropic-messages",
provider: "openrouter",
baseUrl: "https://openrouter.ai/api/v1",
reasoning: true,
input: ["text"],
cost: { input: 1, output: 2, cacheRead: 0.1, cacheWrite: 1 },
contextWindow: 128000,
maxTokens: 8192,
},
{
id: "openai/gpt-4o:extended",
name: "GPT-4o Extended",
api: "anthropic-messages",
provider: "openrouter",
baseUrl: "https://openrouter.ai/api/v1",
reasoning: false,
input: ["text", "image"],
cost: { input: 5, output: 15, cacheRead: 0.5, cacheWrite: 5 },
contextWindow: 128000,
maxTokens: 4096,
},
];
const allModels = [...mockModels, ...mockOpenRouterModels];
describe("parseModelPattern", () => {
describe("simple patterns without colons", () => {
test("exact match returns model with undefined thinking level", () => {
const result = parseModelPattern("claude-sonnet-4-5", allModels);
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
test("partial match returns best model with undefined thinking level", () => {
const result = parseModelPattern("sonnet", allModels);
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
test("no match returns undefined model and thinking level", () => {
const result = parseModelPattern("nonexistent", allModels);
expect(result.model).toBeUndefined();
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
});
describe("patterns with valid thinking levels", () => {
test("sonnet:high returns sonnet with high thinking level", () => {
const result = parseModelPattern("sonnet:high", allModels);
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.thinkingLevel).toBe("high");
expect(result.warning).toBeUndefined();
});
test("gpt-4o:medium returns gpt-4o with medium thinking level", () => {
const result = parseModelPattern("gpt-4o:medium", allModels);
expect(result.model?.id).toBe("gpt-4o");
expect(result.thinkingLevel).toBe("medium");
expect(result.warning).toBeUndefined();
});
test("all valid thinking levels work", () => {
for (const level of ["off", "minimal", "low", "medium", "high", "xhigh"]) {
const result = parseModelPattern(`sonnet:${level}`, allModels);
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.thinkingLevel).toBe(level);
expect(result.warning).toBeUndefined();
}
});
});
describe("patterns with invalid thinking levels", () => {
test("sonnet:random returns sonnet with undefined thinking level and warning", () => {
const result = parseModelPattern("sonnet:random", allModels);
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toContain("Invalid thinking level");
expect(result.warning).toContain("random");
});
test("gpt-4o:invalid returns gpt-4o with undefined thinking level and warning", () => {
const result = parseModelPattern("gpt-4o:invalid", allModels);
expect(result.model?.id).toBe("gpt-4o");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toContain("Invalid thinking level");
});
});
describe("OpenRouter models with colons in IDs", () => {
test("qwen3-coder:exacto matches the model with undefined thinking level", () => {
const result = parseModelPattern("qwen/qwen3-coder:exacto", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
test("openrouter/qwen/qwen3-coder:exacto matches with provider prefix", () => {
const result = parseModelPattern("openrouter/qwen/qwen3-coder:exacto", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.model?.provider).toBe("openrouter");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
test("qwen3-coder:exacto:high matches model with high thinking level", () => {
const result = parseModelPattern("qwen/qwen3-coder:exacto:high", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.thinkingLevel).toBe("high");
expect(result.warning).toBeUndefined();
});
test("openrouter/qwen/qwen3-coder:exacto:high matches with provider and thinking level", () => {
const result = parseModelPattern("openrouter/qwen/qwen3-coder:exacto:high", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.model?.provider).toBe("openrouter");
expect(result.thinkingLevel).toBe("high");
expect(result.warning).toBeUndefined();
});
test("gpt-4o:extended matches the extended model with undefined thinking level", () => {
const result = parseModelPattern("openai/gpt-4o:extended", allModels);
expect(result.model?.id).toBe("openai/gpt-4o:extended");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toBeUndefined();
});
});
describe("invalid thinking levels with OpenRouter models", () => {
test("qwen3-coder:exacto:random returns model with undefined thinking level and warning", () => {
const result = parseModelPattern("qwen/qwen3-coder:exacto:random", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toContain("Invalid thinking level");
expect(result.warning).toContain("random");
});
test("qwen3-coder:exacto:high:random returns model with undefined thinking level and warning", () => {
const result = parseModelPattern("qwen/qwen3-coder:exacto:high:random", allModels);
expect(result.model?.id).toBe("qwen/qwen3-coder:exacto");
expect(result.thinkingLevel).toBeUndefined();
expect(result.warning).toContain("Invalid thinking level");
expect(result.warning).toContain("random");
});
});
describe("edge cases", () => {
test("empty pattern matches via partial matching", () => {
// Empty string is included in all model IDs, so partial matching finds a match
const result = parseModelPattern("", allModels);
expect(result.model).not.toBeNull();
expect(result.thinkingLevel).toBeUndefined();
});
test("pattern ending with colon treats empty suffix as invalid", () => {
const result = parseModelPattern("sonnet:", allModels);
// Empty string after colon is not a valid thinking level
// So it tries to match "sonnet:" which won't match, then tries "sonnet"
expect(result.model?.id).toBe("claude-sonnet-4-5");
expect(result.warning).toContain("Invalid thinking level");
});
});
});
describe("default model selection", () => {
test("ai-gateway default is opus 4.5", () => {
expect(defaultModelPerProvider["vercel-ai-gateway"]).toBe("anthropic/claude-opus-4.5");
});
test("findInitialModel selects ai-gateway default when available", async () => {
const aiGatewayModel: Model<"anthropic-messages"> = {
id: "anthropic/claude-opus-4.5",
name: "Claude Opus 4.5",
api: "anthropic-messages",
provider: "vercel-ai-gateway",
baseUrl: "https://ai-gateway.vercel.sh",
reasoning: true,
input: ["text", "image"],
cost: { input: 5, output: 15, cacheRead: 0.5, cacheWrite: 5 },
contextWindow: 200000,
maxTokens: 8192,
};
const registry = {
getAvailable: async () => [aiGatewayModel],
} as unknown as Parameters<typeof findInitialModel>[0]["modelRegistry"];
const result = await findInitialModel({
scopedModels: [],
isContinuing: false,
modelRegistry: registry,
});
expect(result.model?.provider).toBe("vercel-ai-gateway");
expect(result.model?.id).toBe("anthropic/claude-opus-4.5");
});
});