34 KiB
v0.3.1 Cut F — 멀티모달 vision AI Implementation Plan
For agentic workers: REQUIRED SUB-SKILL: Use superpowers:subagent-driven-development (recommended) or superpowers:executing-plans to implement this plan task-by-task. Steps use checkbox (
- [ ]) syntax for tracking.
Goal: F24 — Ollama vision 모델 (gemma3 family default) 활용. 이미지 + raw_text 결합 prompt → title/summary/tags 자동 생성. Capability detection (app launch + manual refresh) + InferenceProvider 확장 + AiWorker 통합 + Configure UI dropdown.
Architecture: isVisionCapable(model) pure 함수 가 family/families/name 기반으로 vision 가능 모델 판정. refreshVisionCache(deps) 가 /api/tags 호출 후 settings 에 cache. AiWorker 가 note.media.length > 0 && visionModel 둘 다 충족 시 vision path (5MB cap + base64 변환). Configure UI 가 cache 기반 dropdown + manual refresh.
Tech Stack: undici/fetch (Ollama API), Node fs/promises (이미지 base64 변환), Electron IPC, React 19 + zustand 5, vitest 4 + RTL.
선행 문서:
docs/superpowers/specs/2026-05-09-v031-cut-f-design.md— source spec (Cut F 정정 반영: 단위 679, 실제 SettingsService API, 'skipped' enum 미도입, fallback 미구현)docs/superpowers/specs/2026-04-25-dogfood-feedback.md— F24docs/superpowers/strategy/v028plus-roadmap.md— Cut F 위치
File Structure
Create:
src/main/services/VisionDetect.ts—isVisionCapable(model)pure +refreshVisionCache(deps)async (Ollama /api/tags)src/main/ai/visionPrompt.ts—buildVisionPrompt(text, todayKst, dueCandidates, vocab)puresrc/renderer/inbox/components/settings/VisionSection.tsx— AI 제공자 섹션 안 또는 별도 sub-section. dropdown + 다시 감지 버튼tests/unit/VisionDetect.test.ts— isVisionCapable 5 + refreshVisionCache 4tests/unit/visionPrompt.test.ts— buildVisionPrompt 2 (text only / image-only fallback)tests/unit/AiWorker.vision.test.ts— vision path 3 (text-only / vision body / 5MB cap)tests/unit/VisionSection.test.tsx— UI 1 (dropdown + 다시 감지)
Modify:
src/main/services/SettingsService.ts— zod schema vision_model / vision_capable_cache / vision_cache_at + 4 메서드src/main/ai/InferenceProvider.ts—GenerateInput.images?: Array<{ base64: string; mime: string }>+generate(input, opts?: { visionModel?: string | null })src/main/ai/LocalOllamaProvider.ts—generatebody 에images필드 (vision path) + 모델 분기src/main/ai/AiWorker.ts—note.media + visionModelvision path + 5MB cap + base64 변환. 생성자에settings: SettingsService의존성 추가src/main/ipc/settingsApi.ts— 3 IPC:settings:get-vision-models/settings:set-vision-model/settings:refresh-vision-cachesrc/preload/index.ts— 3 bridgesrc/shared/types.ts—getSettings()반환에 vision_* 3 필드 + InboxApi 3 메서드src/main/index.ts—void refreshVisionCache(...)whenReady 안 + AiWorker 생성자에 settings 주입src/renderer/inbox/components/settings/AiProviderSection.tsx또는 SettingsPage — VisionSection 마운트tests/unit/SettingsService.test.ts— vision 4 메서드 round-triptests/unit/LocalOllamaProvider.test.ts— vision body 분기 회귀tests/unit/AiWorker.test.ts— 기존 mock 에 settings stub 추가 (생성자 변경)package.json— version 0.3.0 → 0.3.1docs/superpowers/specs/2026-04-25-dogfood-feedback.md— F24 promoted
단위 목표
679 (v0.3.0) → 약 701 (+22), typecheck 0.
Task 1: VisionDetect — isVisionCapable + refreshVisionCache
Files:
- Create:
src/main/services/VisionDetect.ts - Create:
tests/unit/VisionDetect.test.ts
isVisionCapable(model) pure 함수 — family/families/name hints 기반 판정. refreshVisionCache(deps) async — /api/tags 호출 후 capable 추출 + settings cache 저장. fetch 주입 가능 (테스트).
- Step 1: failing test —
tests/unit/VisionDetect.test.ts:
import { describe, it, expect, vi } from 'vitest';
import { isVisionCapable, refreshVisionCache } from '../../src/main/services/VisionDetect.js';
describe('isVisionCapable', () => {
it('family=gemma3 → true', () => {
expect(isVisionCapable({ name: 'gemma3:12b', details: { family: 'gemma3' } })).toBe(true);
});
it('families=[llava] → true', () => {
expect(isVisionCapable({ name: 'llava-13b', details: { families: ['llava'] } })).toBe(true);
});
it('name hint "vision" → true', () => {
expect(isVisionCapable({ name: 'custom-vision-7b' })).toBe(true);
});
it('text-only family=gemma → false', () => {
expect(isVisionCapable({ name: 'gemma4:e4b', details: { family: 'gemma' } })).toBe(false);
});
it('no hints + unknown family → false', () => {
expect(isVisionCapable({ name: 'mistral:7b', details: { family: 'mistral' } })).toBe(false);
});
});
describe('refreshVisionCache', () => {
it('happy path — capable 추출 + settings cache 저장', async () => {
const settings = {
isAiEnabled: vi.fn(async () => true),
setVisionCapableCache: vi.fn(async () => {})
};
const fetchImpl = vi.fn(async () => ({
ok: true,
status: 200,
json: async () => ({
models: [
{ name: 'gemma4:e4b', details: { family: 'gemma' } },
{ name: 'gemma3:12b-vision', details: { family: 'gemma3' } },
{ name: 'llava:13b', details: { families: ['llava'] } }
]
})
})) as unknown as typeof fetch;
const r = await refreshVisionCache({
settings: settings as never,
endpoint: 'http://localhost:11434',
fetchImpl
});
expect(r).toEqual({ ok: true, models: ['gemma3:12b-vision', 'llava:13b'] });
expect(settings.setVisionCapableCache).toHaveBeenCalledWith(['gemma3:12b-vision', 'llava:13b'], expect.any(Date));
});
it('ai_disabled → 스킵', async () => {
const settings = {
isAiEnabled: vi.fn(async () => false),
setVisionCapableCache: vi.fn(async () => {})
};
const r = await refreshVisionCache({ settings: settings as never, endpoint: 'http://x' });
expect(r).toEqual({ ok: false, reason: 'ai_disabled' });
expect(settings.setVisionCapableCache).not.toHaveBeenCalled();
});
it('http error → ok:false', async () => {
const settings = {
isAiEnabled: vi.fn(async () => true),
setVisionCapableCache: vi.fn(async () => {})
};
const fetchImpl = vi.fn(async () => ({
ok: false,
status: 500,
json: async () => ({})
})) as unknown as typeof fetch;
const r = await refreshVisionCache({ settings: settings as never, endpoint: 'http://x', fetchImpl });
expect(r).toMatchObject({ ok: false });
expect(settings.setVisionCapableCache).not.toHaveBeenCalled();
});
it('unreachable → ok:false', async () => {
const settings = {
isAiEnabled: vi.fn(async () => true),
setVisionCapableCache: vi.fn(async () => {})
};
const fetchImpl = vi.fn(async () => { throw new Error('ECONNREFUSED'); }) as unknown as typeof fetch;
const r = await refreshVisionCache({ settings: settings as never, endpoint: 'http://x', fetchImpl });
expect(r).toMatchObject({ ok: false });
});
});
- Step 2: implementation —
src/main/services/VisionDetect.ts:
import type { SettingsService } from './SettingsService.js';
const VISION_FAMILIES = new Set(['gemma3', 'llava', 'llama3.2-vision', 'minicpm-v', 'pixtral']);
const VISION_NAME_HINTS = ['vision', 'vl', 'multimodal', 'gemma3'];
export interface OllamaModel {
name: string;
details?: { family?: string; families?: string[] };
}
export function isVisionCapable(model: OllamaModel): boolean {
if (model.details?.family && VISION_FAMILIES.has(model.details.family)) return true;
if (model.details?.families?.some((f) => VISION_FAMILIES.has(f))) return true;
const lower = model.name.toLowerCase();
return VISION_NAME_HINTS.some((h) => lower.includes(h));
}
export interface RefreshDeps {
settings: SettingsService;
endpoint: string;
now?: () => Date;
fetchImpl?: typeof fetch;
}
export async function refreshVisionCache(
deps: RefreshDeps
): Promise<{ ok: true; models: string[] } | { ok: false; reason: string }> {
if (!(await deps.settings.isAiEnabled())) {
return { ok: false, reason: 'ai_disabled' };
}
const fetchFn = deps.fetchImpl ?? fetch;
let body: { models?: OllamaModel[] };
try {
const r = await fetchFn(`${deps.endpoint}/api/tags`);
if (!r.ok) return { ok: false, reason: `tags http ${r.status}` };
body = (await r.json()) as { models?: OllamaModel[] };
} catch (e) {
return { ok: false, reason: `unreachable: ${(e as Error).message}` };
}
const capable = (body.models ?? []).filter(isVisionCapable).map((m) => m.name);
const now = deps.now ? deps.now() : new Date();
await deps.settings.setVisionCapableCache(capable, now);
return { ok: true, models: capable };
}
- Step 3: PASS + commit
npm run typecheck
npx vitest run tests/unit/VisionDetect.test.ts
git add src/main/services/VisionDetect.ts tests/unit/VisionDetect.test.ts
git commit -m "feat(v031): VisionDetect — isVisionCapable + refreshVisionCache (fetch 주입)"
Task 2: SettingsService — vision_model / vision_capable_cache + 4 메서드
Files:
- Modify:
src/main/services/SettingsService.ts - Modify:
tests/unit/SettingsService.test.ts
zod schema 확장 + 4 메서드 추가 (Cut E sync_* 패턴).
- Step 1: zod schema 확장 —
src/main/services/SettingsService.ts:
const SettingsSchema = z.object({
ollama: OllamaSettingsSchema.optional(),
ai_enabled: z.boolean().optional(),
onboarding_completed: z.boolean().optional(),
sync_repo_url: z.string().nullable().optional(),
sync_auto_enabled: z.boolean().optional(),
sync_interval_min: z.number().int().min(5).optional(),
// v0.3.1 Cut F — vision 모델 (이미지 분석). null/없음 = 비활성.
vision_model: z.string().nullable().optional(),
vision_capable_cache: z.array(z.string()).optional(),
vision_cache_at: z.string().optional()
}).strict();
- Step 2: 4 메서드 추가 (
setSyncIntervalMin다음):
async getVisionModel(): Promise<string | null> {
const s = await this.load();
return s.vision_model ?? null;
}
async setVisionModel(value: string | null): Promise<void> {
const current = await this.load();
const next: Settings = { ...current, vision_model: value };
await this.persist(next);
}
async getVisionCapableCache(): Promise<{ models: string[]; at: string | null }> {
const s = await this.load();
return { models: s.vision_capable_cache ?? [], at: s.vision_cache_at ?? null };
}
async setVisionCapableCache(models: string[], now: Date): Promise<void> {
const current = await this.load();
const next: Settings = { ...current, vision_capable_cache: models, vision_cache_at: now.toISOString() };
await this.persist(next);
}
- Step 3: failing test —
tests/unit/SettingsService.test.ts의 마지막 describe (Cut E sync) 다음에 추가:
describe('v0.3.1 Cut F — vision settings', () => {
it('getVisionModel() 기본 null', async () => {
expect(await svc.getVisionModel()).toBeNull();
});
it('setVisionModel / getVisionModel round-trip + null clear', async () => {
await svc.setVisionModel('gemma3:12b-vision');
expect(await svc.getVisionModel()).toBe('gemma3:12b-vision');
await svc.setVisionModel(null);
expect(await svc.getVisionModel()).toBeNull();
});
it('getVisionCapableCache() 기본 빈 배열 + null at', async () => {
expect(await svc.getVisionCapableCache()).toEqual({ models: [], at: null });
});
it('setVisionCapableCache 저장 + at ISO', async () => {
const at = new Date('2026-05-10T05:00:00Z');
await svc.setVisionCapableCache(['gemma3:12b', 'llava:13b'], at);
const r = await svc.getVisionCapableCache();
expect(r.models).toEqual(['gemma3:12b', 'llava:13b']);
expect(r.at).toBe('2026-05-10T05:00:00.000Z');
});
});
- Step 4: PASS + commit
npm run typecheck
npx vitest run tests/unit/SettingsService.test.ts
git add src/main/services/SettingsService.ts tests/unit/SettingsService.test.ts
git commit -m "feat(v031): SettingsService.{getVisionModel,setVisionModel,getVisionCapableCache,setVisionCapableCache}"
Task 3: visionPrompt + InferenceProvider 인터페이스 확장
Files:
- Create:
src/main/ai/visionPrompt.ts - Modify:
src/main/ai/InferenceProvider.ts - Create:
tests/unit/visionPrompt.test.ts
buildVisionPrompt(text, todayKst, dueCandidates, vocab) pure — 이미지 + raw_text 결합 시나리오. 빈 text 도 처리 ("(이미지만 있음)" placeholder).
- Step 1: failing test —
tests/unit/visionPrompt.test.ts:
import { describe, it, expect } from 'vitest';
import { buildVisionPrompt } from '../../src/main/ai/visionPrompt.js';
describe('buildVisionPrompt', () => {
it('text + 이미지 시 메모 본문 포함', () => {
const r = buildVisionPrompt('회의 메모', '2026-05-10', ['2026-05-10'], ['회의']);
expect(r).toContain('회의 메모');
expect(r).toContain('2026-05-10');
expect(r).toContain('회의');
});
it('빈 text → "(이미지만 있음)" placeholder', () => {
const r = buildVisionPrompt('', '2026-05-10', [], []);
expect(r).toContain('(이미지만 있음)');
});
});
- Step 2: implementation —
src/main/ai/visionPrompt.ts:
/**
* v0.3.1 Cut F — 멀티모달 vision prompt. 이미지 + raw_text 결합 분석 후
* title/summary/tags/due_date JSON 응답 요청. 빈 raw_text 도 처리.
*/
export function buildVisionPrompt(
text: string,
todayKst: string,
dueCandidates: string[],
vocab: string[]
): string {
return `다음 메모와 첨부 이미지를 종합 분석해 한국어로 요약하세요.
메모 본문 (비어 있을 수 있음):
${text || '(이미지만 있음)'}
이미지 분석 시 주요 시각적 정보 (텍스트, 사람, 장면) 도 포함해 요약하세요.
출력 JSON: { "title": "...", "summary": "...", "tags": [...], "due_date": "..." }
오늘: ${todayKst}
가능한 due 후보: ${dueCandidates.join(', ')}
빈출 태그: ${vocab.slice(0, 20).join(', ')}`;
}
- Step 3: InferenceProvider 인터페이스 확장 —
src/main/ai/InferenceProvider.ts:
export interface GenerateInput {
text: string;
todayKst: string;
dueDateCandidates: string[];
vocab?: string[];
// v0.3.1 Cut F — 멀티모달 vision (옵션). LocalOllamaProvider 가 visionModel 과 함께 처리.
images?: Array<{ base64: string; mime: string }>;
}
export interface GenerateOptions {
visionModel?: string | null;
}
export interface InferenceProvider {
generate(input: GenerateInput, opts?: GenerateOptions): Promise<AiResponse>;
// ... 기존 abort / generateRaw
}
(기존 호출자는 opts 미전달이라 호환 — vision path off.)
- Step 4: PASS + commit
npm run typecheck
npx vitest run tests/unit/visionPrompt.test.ts
git add src/main/ai/visionPrompt.ts src/main/ai/InferenceProvider.ts tests/unit/visionPrompt.test.ts
git commit -m "feat(v031): buildVisionPrompt + GenerateInput.images + GenerateOptions.visionModel"
Task 4: LocalOllamaProvider — vision path
Files:
- Modify:
src/main/ai/LocalOllamaProvider.ts - Modify:
tests/unit/LocalOllamaProvider.test.ts
generate(input, opts) 가 opts.visionModel + input.images 둘 다 있으면 vision body 생성 (model = visionModel, prompt = buildVisionPrompt, body.images = base64 array). 그 외는 기존 text-only path.
- Step 1: failing test — 기존
LocalOllamaProvider.test.ts의 적절한 describe 안:
describe('vision path (v0.3.1 Cut F)', () => {
it('opts.visionModel + input.images 둘 다 있으면 vision body', async () => {
let captured: { model?: string; prompt?: string; images?: string[] } = {};
const undici = await import('undici');
const requestSpy = vi.spyOn(undici, 'request').mockImplementation(async (_url, init) => {
captured = JSON.parse(init?.body as string);
return {
statusCode: 200,
body: { json: async () => ({ response: '{"title":"t","summary":"s","tags":[],"due_date":null}' }) }
} as never;
});
const provider = new LocalOllamaProvider({ endpoint: 'http://x', model: 'gemma4:e4b' });
await provider.generate(
{ text: 'hi', todayKst: '2026-05-10', dueDateCandidates: [], images: [{ base64: 'AAAA', mime: 'image/png' }] },
{ visionModel: 'gemma3:12b-vision' }
);
expect(captured.model).toBe('gemma3:12b-vision');
expect(captured.prompt).toContain('이미지');
expect(captured.images).toEqual(['AAAA']);
requestSpy.mockRestore();
});
it('visionModel 있어도 images 없으면 text-only path', async () => {
let captured: { model?: string; images?: unknown } = {};
const undici = await import('undici');
const requestSpy = vi.spyOn(undici, 'request').mockImplementation(async (_url, init) => {
captured = JSON.parse(init?.body as string);
return {
statusCode: 200,
body: { json: async () => ({ response: '{"title":"t","summary":"s","tags":[],"due_date":null}' }) }
} as never;
});
const provider = new LocalOllamaProvider({ endpoint: 'http://x', model: 'gemma4:e4b' });
await provider.generate(
{ text: 'hi', todayKst: '2026-05-10', dueDateCandidates: [] },
{ visionModel: 'gemma3:12b-vision' }
);
expect(captured.model).toBe('gemma4:e4b');
expect(captured.images).toBeUndefined();
requestSpy.mockRestore();
});
it('opts 미전달 → 기존 text-only (회귀)', async () => {
let captured: { model?: string; images?: unknown } = {};
const undici = await import('undici');
const requestSpy = vi.spyOn(undici, 'request').mockImplementation(async (_url, init) => {
captured = JSON.parse(init?.body as string);
return {
statusCode: 200,
body: { json: async () => ({ response: '{"title":"t","summary":"s","tags":[],"due_date":null}' }) }
} as never;
});
const provider = new LocalOllamaProvider({ endpoint: 'http://x', model: 'gemma4:e4b' });
await provider.generate({ text: 'hi', todayKst: '2026-05-10', dueDateCandidates: [] });
expect(captured.model).toBe('gemma4:e4b');
expect(captured.images).toBeUndefined();
requestSpy.mockRestore();
});
});
(기존 LocalOllamaProvider.test.ts 의 mock 패턴 따름. test file 의 imports + vi.mock 은 그대로 사용.)
- Step 2: implementation —
LocalOllamaProvider.generatebody 분기:
import { buildVisionPrompt } from './visionPrompt.js';
// ...
async generate(input: GenerateInput, opts?: GenerateOptions): Promise<AiResponse> {
const useVision = !!opts?.visionModel && (input.images?.length ?? 0) > 0;
const model = useVision ? opts!.visionModel! : this.model;
const prompt = useVision
? buildVisionPrompt(input.text, input.todayKst, input.dueDateCandidates, input.vocab ?? [])
: buildPrompt(input.text, input.todayKst, input.dueDateCandidates, input.vocab ?? []);
this.abortController = new AbortController();
const timer = setTimeout(() => this.abortController?.abort(), this.timeoutMs);
try {
const body: Record<string, unknown> = {
model,
prompt,
format: 'json',
stream: false,
options: { temperature: this.temperature, num_predict: this.numPredict }
};
if (useVision) {
body.images = input.images!.map((i) => i.base64);
}
const res = await request(`${this.endpoint}/api/generate`, {
method: 'POST',
headers: { 'content-type': 'application/json' },
body: JSON.stringify(body),
signal: this.abortController.signal
});
// ... 기존 parse
} finally {
// ...
}
}
- Step 3: PASS + commit
npm run typecheck
npx vitest run tests/unit/LocalOllamaProvider.test.ts
git add src/main/ai/LocalOllamaProvider.ts tests/unit/LocalOllamaProvider.test.ts
git commit -m "feat(v031): LocalOllamaProvider vision path (visionModel + images → body.images base64)"
Task 5: AiWorker — vision integration + 5MB cap + settings 의존성
Files:
- Modify:
src/main/ai/AiWorker.ts - Modify:
tests/unit/AiWorker.test.ts - Create:
tests/unit/AiWorker.vision.test.ts
AiWorker 가 note.media + visionModel 조건에서 base64 변환 (5MB cap) + provider.generate 에 images + visionModel 전달. 생성자에 settings: SettingsService 의존성 추가.
-
Step 1: AiWorker 생성자 변경 — settings 파라미터 추가.
src/main/index.ts의 인스턴스 생성도 갱신. -
Step 2: AiWorker.processJob 갱신:
import { readFile } from 'node:fs/promises';
// 클래스 안 generate 호출 직전:
const visionModel = await this.settings.getVisionModel();
let images: Array<{ base64: string; mime: string }> | undefined;
if (visionModel && note.media.length > 0) {
images = await Promise.all(
note.media.map(async (m) => {
const buf = await readFile(this.mediaStore.absolutePath(m.relPath));
if (buf.byteLength > 5 * 1024 * 1024) {
throw new Error(`image ${m.relPath} exceeds 5MB cap`);
}
return { base64: buf.toString('base64'), mime: m.mime };
})
);
}
const res = await this.holder.get().generate(
{ text: note.rawText, images, todayKst: todayIso, dueDateCandidates: candidates, vocab },
{ visionModel: visionModel ?? undefined }
);
mediaStore: MediaStore 도 AiWorker 생성자에 신규 파라미터 (현재 없으면 추가; main 에서 주입).
- Step 3: failing test —
tests/unit/AiWorker.vision.test.ts:
import { describe, it, expect, beforeEach, vi } from 'vitest';
import { writeFile, mkdtemp, mkdir, rm } from 'node:fs/promises';
import { tmpdir } from 'node:os';
import { join } from 'node:path';
import Database from 'better-sqlite3';
import { runMigrations } from '../../src/main/db/migrations/index.js';
import { NoteRepository } from '../../src/main/repository/NoteRepository.js';
import { AiWorker } from '../../src/main/ai/AiWorker.js';
import { MediaStore } from '../../src/main/services/MediaStore.js';
describe('AiWorker — vision path (v0.3.1 Cut F)', () => {
let db: Database.Database;
let repo: NoteRepository;
let workDir: string;
let mediaStore: MediaStore;
beforeEach(async () => {
db = new Database(':memory:');
db.pragma('foreign_keys = ON');
runMigrations(db);
repo = new NoteRepository(db);
workDir = await mkdtemp(join(tmpdir(), 'inkling-vision-'));
mediaStore = new MediaStore(workDir);
});
afterEach(async () => {
db.close();
await rm(workDir, { recursive: true, force: true });
});
it('visionModel + media 있음 → provider.generate 가 images + opts 받음', async () => {
const { id } = repo.create({ rawText: '이미지 메모' });
const mediaPath = join(workDir, 'media', id, '1.png');
await mkdir(join(workDir, 'media', id), { recursive: true });
await writeFile(mediaPath, Buffer.from([0x89, 0x50, 0x4e, 0x47])); // 4 bytes PNG-ish
repo.insertMedia([{ noteId: id, kind: 'image', relPath: `media/${id}/1.png`, mime: 'image/png', bytes: 4 }]);
const generate = vi.fn(async () => ({ title: 't', summary: 's', tags: [], dueDate: null }));
const provider = { name: 'fake', generate, abort: () => {} };
const settings = {
getVisionModel: vi.fn(async () => 'gemma3:12b-vision'),
isAiEnabled: vi.fn(async () => true)
} as unknown as never;
const worker = new AiWorker(/* ...deps with settings + mediaStore + repo + holder = { get: () => provider } */);
await worker['processJob']({ noteId: id, attempts: 0, nextRunAt: '' });
expect(generate).toHaveBeenCalledWith(
expect.objectContaining({ images: expect.any(Array) }),
expect.objectContaining({ visionModel: 'gemma3:12b-vision' })
);
const callArg = generate.mock.calls[0]![0] as { images: Array<{ base64: string; mime: string }> };
expect(callArg.images).toHaveLength(1);
expect(callArg.images[0]!.mime).toBe('image/png');
});
it('visionModel 없으면 text-only (회귀)', async () => {
const { id } = repo.create({ rawText: 'just text' });
const generate = vi.fn(async () => ({ title: 't', summary: 's', tags: [], dueDate: null }));
const provider = { name: 'fake', generate, abort: () => {} };
const settings = {
getVisionModel: vi.fn(async () => null),
isAiEnabled: vi.fn(async () => true)
} as unknown as never;
const worker = new AiWorker(/* ... */);
await worker['processJob']({ noteId: id, attempts: 0, nextRunAt: '' });
expect(generate).toHaveBeenCalledWith(
expect.not.objectContaining({ images: expect.anything() }),
expect.any(Object)
);
});
it('5MB 초과 이미지 → throw → ai_status=failed', async () => {
const { id } = repo.create({ rawText: 'big image' });
const mediaPath = join(workDir, 'media', id, '1.png');
await mkdir(join(workDir, 'media', id), { recursive: true });
await writeFile(mediaPath, Buffer.alloc(6 * 1024 * 1024)); // 6 MB
repo.insertMedia([{ noteId: id, kind: 'image', relPath: `media/${id}/1.png`, mime: 'image/png', bytes: 6 * 1024 * 1024 }]);
const generate = vi.fn(async () => ({ title: 't', summary: 's', tags: [], dueDate: null }));
const settings = {
getVisionModel: vi.fn(async () => 'gemma3:12b-vision'),
isAiEnabled: vi.fn(async () => true)
} as unknown as never;
const worker = new AiWorker(/* ... */);
await worker['processJob']({ noteId: id, attempts: 0, nextRunAt: '' });
// 5MB cap 초과 throw → AiWorker 의 attempts 증가 분기 → ai_status='failed'
const note = repo.findById(id);
expect(['failed', 'pending']).toContain(note!.aiStatus); // attempts 모두 소진 시 'failed'; 첫 시도 throw 시 'pending' 유지 가능 — 구현 의존
});
});
(NOTE: 정확한 AiWorker 생성자 인자 — 기존 test 의 setup 패턴 따라 deps 전체 stub 구성. 위 코드는 outline; 실수행자가 기존 AiWorker.test.ts setup 참고하여 정확한 deps 구조 채움.)
-
Step 4: 기존 AiWorker.test.ts mock 갱신 — 생성자에
settings/mediaStore파라미터 추가됨. 모든 기존 test 의 worker 생성 site 에 stub 추가. -
Step 5: PASS + commit
npm run typecheck
npx vitest run tests/unit/AiWorker.test.ts tests/unit/AiWorker.vision.test.ts
git add src/main/ai/AiWorker.ts \
src/main/index.ts \
tests/unit/AiWorker.test.ts \
tests/unit/AiWorker.vision.test.ts
git commit -m "feat(v031): AiWorker vision integration — note.media + visionModel + 5MB cap"
Task 6: types + IPC + preload
Files:
- Modify:
src/shared/types.ts—getSettings()반환에 vision_model / vision_capable_cache / vision_cache_at + InboxApi 3 메서드 - Modify:
src/main/ipc/settingsApi.ts— 3 IPC handler - Modify:
src/preload/index.ts— 3 bridge - Create:
tests/unit/vision-ipc.test.ts
3 채널:
settings:get-vision-models→{ models: string[]; at: string | null; selected: string | null }(cache 결과 + 현재 선택)settings:set-vision-model(value: string | null) →{ ok: true }settings:refresh-vision-cache→{ ok: true; models: string[] } | { ok: false; reason: string }(refreshVisionCache 호출)
상세 패턴은 Cut E sync IPC 와 동일.
-
Step 1: types + Step 2: failing test + Step 3: handlers + Step 4: preload bridges — Cut E sync-ipc 패턴 그대로
-
Step 5: PASS + commit
git add src/shared/types.ts src/main/ipc/settingsApi.ts src/preload/index.ts tests/unit/vision-ipc.test.ts
git commit -m "feat(v031): vision IPC + preload (get-vision-models / set / refresh)"
Task 7: VisionSection UI + AI 제공자 섹션 통합
Files:
- Create:
src/renderer/inbox/components/settings/VisionSection.tsx - Modify:
src/renderer/inbox/components/settings/AiProviderSection.tsx또는 SettingsPage — 마운트 - Create:
tests/unit/VisionSection.test.tsx
dropdown (cache 기반) + 다시 감지 버튼 + 마지막 감지 시각 표시. dropdown 변경 시 setVisionModel 호출. 다시 감지 → refreshVisionCache IPC + dropdown 갱신.
// 핵심 구조 (Cut E SyncSection 패턴)
const [models, setModels] = useState<string[]>([]);
const [at, setAt] = useState<string | null>(null);
const [selected, setSelected] = useState<string | null>(null);
const [busy, setBusy] = useState<'select' | 'refresh' | null>(null);
useEffect(() => {
void (async () => {
const r = await inboxApi.getVisionModels();
setModels(r.models);
setAt(r.at);
setSelected(r.selected);
})();
}, []);
async function onSelect(value: string) {
setBusy('select');
await inboxApi.setVisionModel(value === '' ? null : value);
setSelected(value === '' ? null : value);
setBusy(null);
}
async function onRefresh() {
setBusy('refresh');
const r = await inboxApi.refreshVisionCache();
setBusy(null);
if (r.ok) {
const cache = await inboxApi.getVisionModels();
setModels(cache.models);
setAt(cache.at);
}
}
UI:
<select value={selected ?? ''} onChange={(e) => void onSelect(e.target.value)} aria-label="이미지 분석 모델">
<option value="">(비활성)</option>
{models.map((m) => <option key={m} value={m}>{m}</option>)}
</select>
<button onClick={() => void onRefresh()} disabled={busy === 'refresh'}>
{busy === 'refresh' ? '감지 중…' : '다시 감지'}
</button>
{at !== null && <span>마지막 감지: {new Date(at).toLocaleString('ko-KR')}</span>}
- Step 1-5: 컴포넌트 + test + 마운트 + commit
git add src/renderer/inbox/components/settings/VisionSection.tsx \
src/renderer/inbox/components/settings/AiProviderSection.tsx \
tests/unit/VisionSection.test.tsx
git commit -m "feat(v031): VisionSection — dropdown + 다시 감지 + 마지막 감지 시각"
Task 8: main process — refreshVisionCache 자동 호출 + AiWorker settings 주입
Files:
- Modify:
src/main/index.ts
whenReady 안 (Ollama provider 준비 후) void refreshVisionCache(...) fire-and-forget 호출. AiWorker 생성자에 settings + mediaStore 주입.
- Step 1: imports + 호출 —
src/main/index.ts:
import { refreshVisionCache } from './services/VisionDetect.js';
// whenReady 안, AiWorker.start() 직후 또는 직전
const ollama = providerHolder.get();
void refreshVisionCache({
settings: settingsSvc,
endpoint: (ollama as LocalOllamaProvider).endpoint, // 또는 SettingsService 의 ollama 설정에서 가져옴
}).catch(() => {});
(LocalOllamaProvider 의 endpoint 가 private 이면 settings 에서 가져옴 또는 provider 에 getter 추가.)
-
Step 2: AiWorker 생성자 인자 갱신
-
Step 3: typecheck + PASS + commit
npm run typecheck
npx vitest run
git add src/main/index.ts
git commit -m "feat(v031): main — refreshVisionCache whenReady + AiWorker settings/mediaStore 주입"
Task 9: dogfood promoted + version bump + release commit
- F24 promoted 마킹 (
docs/superpowers/specs/2026-04-25-dogfood-feedback.md):
## F24. 멀티모달 vision (✅ promoted v0.3.1 Cut F)
**상태:** ✅ promoted v0.3.1 Cut F — Ollama vision 모델 (gemma3 family default) 활용. capability detection (app launch + manual refresh) + Configure UI dropdown + AiWorker vision integration (5MB cap + base64 변환). 자동 fallback (caption → text) deferred v0.3.2+.
- package.json: 0.3.0 → 0.3.1 + package-lock.json
- full unit + typecheck
git add docs/superpowers/specs/2026-04-25-dogfood-feedback.md package.json package-lock.json
git commit -m "chore(release): v0.3.1 — Cut F (멀티모달 vision AI)"
Self-Review Checklist (수행자: 모든 task 완료 후 1회 점검)
- Spec coverage: §3 Capability Detection (Task 1) / §3-2 SettingsService (Task 2) / §3-3 main wiring (Task 8) / §3-4 UI (Task 7) / §4 Provider (Tasks 3-4) / §5 AiWorker (Task 5) / §6 image-only fallback ('skipped' enum 미도입 → 기존 'failed' 분기 활용)
- Single write path 강제 (Cut C/D/E 정책): 본 cut 은 새 데이터 path 추가 없음 —
notes_fts/note_revisions/note_tagsmutation 없음 (vision 결과는 기존updateAiResultpath 활용 → 이미 검증됨). 회귀 검사 4-path invariant 유지. - Type 일관성:
GenerateInput.images↔GenerateOptions.visionModel↔ AiWorker 호출 ↔ LocalOllamaProvider body 모두 동일 shape - 단위 카운트: VisionDetect 9 (5+4) + SettingsService 4 + visionPrompt 2 + LocalOllamaProvider 3 + AiWorker 3 + IPC 3-5 + UI 1 = 약 25-27 신규. 목표 22 달성
Risk
- vision 모델 한국어 정확도: gemma3 family 가 한국어 약하면 다른 family 추천 갱신 (메모리 정책). dogfood 검증 필요
- Ollama 가 vision images 무시 (모델 misclassify): capability detection false-positive — 사용자가 dropdown 에서 다른 모델 선택해 우회. 자동 fallback 미구현 (YAGNI)
- base64 메모리 폭주: 5MB cap 적용. 다중 이미지 시 N×5MB = 메모리 누적 — vision 호출 후 image array 즉시 GC. 본 cut 의 dogfood 규모 (메모당 < 3 이미지) 무시
- capability detection 실패 silent: 첫 launch 시 network 실패 → cache 빈 채로 진행. 사용자가 설정 페이지에서 "다시 감지" 클릭 → 직접 trigger 가능
- AiWorker 생성자 변경: 기존 test 모두 mock 갱신 필요 (typecheck 가 catch). 누락 시 typecheck red
- F23 OFF (ai_enabled=false) 시 자동 OFF: refreshVisionCache 가 ai_enabled 체크 → ai_disabled 분기. AiWorker 의 vision path 진입 자체가 ai_enabled=true 가정 — F23 OFF 시 vision path 미도달 (자명)
- e2e: Cut C/D/E 와 동일 — 본 cut 미수행, main 머지 후 검증