import { parseModelPrefix, makeModelId, providerLabel } from '../src/features/providers/types'; import { _internals } from '../src/features/providers/streamHelpers'; describe('parseModelPrefix', () => { test('matches openrouter / anthropic / gemini prefixes', () => { expect(parseModelPrefix('openrouter:anthropic/claude-3.5-sonnet')).toEqual({ provider: 'openrouter', model: 'anthropic/claude-3.5-sonnet', }); expect(parseModelPrefix('anthropic:claude-3-5-sonnet-20241022')).toEqual({ provider: 'anthropic', model: 'claude-3-5-sonnet-20241022', }); expect(parseModelPrefix('gemini:gemini-2.0-flash-exp')).toEqual({ provider: 'gemini', model: 'gemini-2.0-flash-exp', }); }); test('returns null for local engine model ids', () => { expect(parseModelPrefix('gemma4:e2b')).toBeNull(); expect(parseModelPrefix('llama-3.2:8b')).toBeNull(); expect(parseModelPrefix('google/gemma-4-e4b')).toBeNull(); }); test('returns null for empty / undefined input', () => { expect(parseModelPrefix('')).toBeNull(); expect(parseModelPrefix(undefined as any)).toBeNull(); }); test('makeModelId round-trips with parseModelPrefix', () => { const id = makeModelId('openrouter', 'meta/llama-3.3-70b'); expect(id).toBe('openrouter:meta/llama-3.3-70b'); expect(parseModelPrefix(id)).toEqual({ provider: 'openrouter', model: 'meta/llama-3.3-70b' }); }); test('providerLabel returns Korean-friendly labels', () => { expect(providerLabel('openrouter')).toBe('OpenRouter'); expect(providerLabel('anthropic')).toBe('Anthropic'); expect(providerLabel('gemini')).toBe('Gemini'); }); }); describe('Anthropic event → OpenAI SSE conversion', () => { const conv = _internals.anthropicEventToOpenAI; test('content_block_delta with text emits OpenAI chunk', () => { const out = conv('content_block_delta', '{"delta":{"type":"text_delta","text":"안녕"}}'); expect(out).toBeTruthy(); expect(out).toContain('"content":"안녕"'); expect(out).toMatch(/^data: /); expect(out!.endsWith('\n\n')).toBe(true); }); test('non-delta events (message_start, content_block_start, etc.) are ignored', () => { expect(conv('message_start', '{}')).toBeNull(); expect(conv('content_block_start', '{}')).toBeNull(); expect(conv('message_stop', '{}')).toBeNull(); }); test('malformed JSON returns null', () => { expect(conv('content_block_delta', 'not json')).toBeNull(); expect(conv('content_block_delta', '{')).toBeNull(); }); test('empty text field returns null (no zero-length chunks)', () => { expect(conv('content_block_delta', '{"delta":{"type":"text_delta","text":""}}')).toBeNull(); expect(conv('content_block_delta', '{"delta":{}}')).toBeNull(); }); }); describe('Gemini event → OpenAI SSE conversion', () => { const conv = _internals.geminiEventToOpenAI; test('extracts text from candidates[0].content.parts', () => { const out = conv(null, '{"candidates":[{"content":{"parts":[{"text":"안녕"}],"role":"model"}}]}'); expect(out).toBeTruthy(); expect(out).toContain('"content":"안녕"'); expect(out).toMatch(/^data: /); }); test('joins multiple parts into one chunk', () => { const out = conv(null, '{"candidates":[{"content":{"parts":[{"text":"안"},{"text":"녕"}]}}]}'); expect(out).toContain('"content":"안녕"'); }); test('returns null when candidates missing / empty', () => { expect(conv(null, '{}')).toBeNull(); expect(conv(null, '{"candidates":[]}')).toBeNull(); expect(conv(null, '{"candidates":[{"content":{}}]}')).toBeNull(); }); test('malformed JSON returns null', () => { expect(conv(null, 'not json')).toBeNull(); }); test('empty text returns null', () => { expect(conv(null, '{"candidates":[{"content":{"parts":[{"text":""}]}}]}')).toBeNull(); }); });