Commit Graph

4 Commits

Author SHA1 Message Date
Will Miao
26c9ade1c9 feat(agent): optimize base model prompt — grouped display, comprehensive mapping rules, filename inference
- agent_service._format_base_models: output bullet list instead of
  JSON array for cleaner LLM parsing
- prompt.md mapping section: replace 14-row HF→CivitAI table with
  compact rule set covering 14 mapping paths including new entries
  for HiDream-ai, OnomaAIResearch/Illustrious, ideogram-ai/ideogram,
  Tongyi-MAI/Z-Image-Turbo, and Wan-AI/Wan2.*
- base_model extraction instruction: add guidance to infer from
  model filename, YAML tags, and README body text when YAML
  frontmatter has no explicit base_model:
2026-07-05 15:45:17 +08:00
Will Miao
646f1ddfb1 refactor(agent): align 'Agent' naming to 'AI/LLM' to match current implementation
- locales/en.json: 'Enrich Metadata (Agent)' -> 'Enrich Metadata (AI)'
- Rename SKILL.md -> prompt.md with backward compat in skill_registry.py
- JS context menu action IDs: enrich-hf-agent -> enrich-hf-llm
- HTML template data-action attributes synced to match
- docstring cleanup: 'agent skill' -> 'skill pipeline' / 'feature'
2026-07-04 14:06:50 +08:00
Will Miao
63785f82b5 refactor(agent): consolidate skill definition into single SKILL.md with YAML frontmatter
Merge skill.yaml (metadata) and prompt.md (prompt template) into a
single SKILL.md file with YAML frontmatter, matching the agent-skill
convention used by opencode and Claude Code.

- Add frontmatter parser (_parse_skill_file) to SkillRegistry
- Remove skill.yaml, prompt.md, empty skills/__init__.py
- Remove obsolete load_handler method
- Update tests for new format and cleaned-up fields
2026-07-02 21:29:02 +08:00
Will Miao
cf898da193 feat(agent): add LLM-powered metadata enrichment system with AgentCLI and PostProcessor
Introduce an agent skill framework for LLM-driven metadata enrichment:

- AgentCLI (py/agent_cli/): in-process wrappers around internal services
  using standard relative imports, eliminating the need for sys.path hacks
- LLMService: centralized BYOK (bring-your-own-key) LLM client supporting
  OpenAI, Ollama, and custom OpenAI-compatible endpoints
- PostProcessor: deterministic engine that applies LLM output via AgentCLI
  (replaces old handler.py + _BASE_MODEL_ALIASES approach)
- SkillRegistry: filesystem-based skill discovery (skill.yaml + prompt.md)
- AgentService: orchestrates skill execution with WebSocket progress
- Frontend AgentManager: WebSocket listeners, skill execution, config UI
- Context menu entries (single + bulk) for "Enrich Metadata (Agent)"
- Settings UI for AI Provider configuration (BYOK)
- Full i18n support across 9 locales

Bug fixes found during review:
- aiohttp.web.json_response: status_code= -> status=
- settings_modal cancelEditApiKey: wrong argument position
- AgentManager.isLlmConfigured: allow Ollama without API key
- PostProcessor._merge_tags: lowercase all tags to match TagUpdateService
2026-07-02 21:27:01 +08:00