autoskill
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El autoskill analiza tu actividad en pantalla a través del demonio local screenpipe para identificar flujos de trabajo de investigación repetidos y proponer nuevas habilidades de automatización. Coincide patrones con habilidades existentes y redacta nuevas o composiciones para flujos no cubiertos, ejecutando la detección localmente y enviando solo resúmenes editados al LLM. Úsalo cuando quieras que Claude analice tus patrones reales de trabajo y sugiera habilidades de automatización relevantes basadas en tu comportamiento.
Instalación rápida
Claude Code
Recomendadonpx skills add K-Dense-AI/claude-scientific-skills -a claude-code/plugin add https://github.com/K-Dense-AI/claude-scientific-skillsgit clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/autoskillCopia y pega este comando en Claude Code para instalar esta habilidad
Documentación
autoskill
Requires a running screenpipe daemon. This skill has no alternate data source — it reads exclusively from the local screenpipe HTTP API (default
http://localhost:3030). If the daemon isn't running,run()raisesScreenpipeUnreachablewith install instructions.
Network access & environment variables. This skill makes authenticated HTTP requests to (a) the user's local screenpipe daemon on loopback, and (b) the user-configured LLM backend — one of
http://localhost:1234/v1(LM Studio, default),https://api.anthropic.com(opt-in Claude), or a user-supplied BYOK Foundry gateway. The skill reads three environment variables —SCREENPIPE_TOKEN,ANTHROPIC_API_KEY,FOUNDRY_API_KEY— and uses each only to authenticate to the single endpoint its name implies. No other network destinations, no telemetry, no data egress to any third party.
Overview
Turn the user's own workflow history — captured passively by the local screenpipe daemon — into new skills. This skill is on-demand: the user invokes it with a time window, it queries screenpipe's local HTTP API, clusters repeated workflow patterns, compares each pattern against the existing skills in this repo, and produces a staged folder of proposals the user can review, edit, and promote.
When to Use This Skill
Invoke this skill when the user asks to:
- "Analyze my last 4 hours / day / week and propose new skills."
- "Look at what I've been doing and tell me what's not covered yet."
- "Draft a skill from my recent workflow."
- "Find composition recipes for workflows I repeat."
Do not invoke it for one-off questions about screenpipe itself, for real-time screen queries, or without an explicit user request — the skill analyzes sensitive local content and must stay explicitly user-triggered.
Privacy Posture
- Screenpipe handles app/window filtering at capture time. Install a starter deny-list by copying
references/screenpipe-config.yamlinto the user's screenpipe config. Sensitive apps (password managers, messaging, banking) are never OCR'd in the first place. - Raw OCR never leaves the machine.
scripts/fetch_window.pypulls data over localhost HTTP.scripts/cluster.pyreduces the timeline to app/duration/title summaries.scripts/redact.pystrips emails, API keys, bearer tokens, and phone numbers as defense-in-depth before any cluster summary reaches the LLM. - LLM backend defaults to
local. The recommended setup is LM Studio runningGemma-4-31B-it— strong reasoning at a size that fits on most workstation GPUs, and no data ever leaves your machine. Cloud backends (claude,foundry) are opt-in and documented inconfig.yamlfor users who explicitly want them. Detection and embeddings always run locally regardless of backend choice. - Dry-run mode (
--plan) prints the exact timeline that will be analyzed before any LLM call. - TLS for localhost (optional, for corporate policy): see
references/https-proxy.mdfor the Caddy pattern.
Prerequisites
1. Screenpipe daemon
Either install the official release or build from source. Either way the daemon binds HTTP on localhost:3030 by default.
From source (recommended if you want the CLI daemon without the desktop GUI):
git clone --depth 1 https://github.com/mediar-ai/screenpipe.git
cd screenpipe
cargo build -p screenpipe-engine --release
# System deps (macOS): cmake + full Xcode.app (not just Command Line Tools).
# brew install cmake
# # if xcodebuild plug-ins error: sudo xcodebuild -runFirstLaunch
./target/release/screenpipe doctor # confirm permissions + ffmpeg
./target/release/screenpipe record --disable-audio --use-pii-removal
First run will prompt for macOS Screen Recording permission. Grant it and relaunch.
2. Screenpipe API token
The local API now requires bearer auth. Retrieve your token and export it:
export SCREENPIPE_TOKEN=$(screenpipe auth token)
(Or set screenpipe.token directly in config.yaml — env var is preferred since it keeps secrets out of version control.)
3. Python environment
Via pipenv from the repo root:
pipenv install httpx pyyaml sentence-transformers
The embedding model (sentence-transformers/all-MiniLM-L6-v2, ~80 MB) downloads on first run.
4. Local LLM (default path) — LM Studio
- Install LM Studio.
- Download
Gemma-4-31B-it(or another strong reasoning model; adjustlocal.modelinconfig.yaml). - Load it via the CLI for headless use (no GUI required):
lms load gemma-4-31b-it --context-length 131072 --gpu max -y
lms status # confirm server running on :1234
5. Cloud LLM backends (optional, opt-in)
Only if you explicitly opt out of local:
claude: setANTHROPIC_API_KEY, flipbackend: claudeinconfig.yaml.foundry: setFOUNDRY_API_KEY, flipbackend: foundry, setfoundry.endpointto your corporate gateway URL.
Architecture
screenpipe daemon (user-installed)
│ HTTP on localhost:3030
▼
scripts/fetch_window.py → normalized timeline events
scripts/redact.py → regex scrub (defense-in-depth)
scripts/cluster.py → sessions + clusters (local only)
scripts/match_skills.py → top-k vs existing 135 skills (local embeddings)
scripts/synthesize.py → LLM judge: reuse / compose / novel
│
▼
~/.autoskill/proposed/<timestamp>/ (default; override with --out)
├── report.md
├── composition-recipes/<name>/SKILL.md
└── new-skills/<name>/SKILL.md
scripts/promote.py → user-approved proposal → scientific-skills/<name>/
Workflow
The skill ships a unified CLI at scripts/autoskill.py with three subcommands:
python scripts/autoskill.py doctor --config config.yaml --skills-dir ../
python scripts/autoskill.py run --start ... --end ... --config config.yaml
python scripts/autoskill.py promote --proposed ~/.autoskill/proposed/<ts> --skills-dir ../ --name <skill>
0. Preflight with doctor
Before a full run, verify every dependency in one shot:
python scripts/autoskill.py doctor \
--config scientific-skills/autoskill/config.yaml \
--skills-dir scientific-skills
The report covers config (backend choice valid), skills_dir (exists), screenpipe (reachable + authed), and llm (LM Studio serving or API key present). Non-zero exit on any failure, with the offending line marked error.
1. Run the pipeline
export SCREENPIPE_TOKEN=$(screenpipe auth token)
python scripts/autoskill.py run \
--start "2026-04-17T00:00:00Z" \
--end "2026-04-17T23:59:59Z" \
--config scientific-skills/autoskill/config.yaml \
--skills-dir scientific-skills
Proposals land in ~/.autoskill/proposed/<timestamp>/ by default, keeping experimental output out of the skills repo. Pass --out PATH to override.
Internally:
- Fetch —
fetch_windowpaginates screenpipe's/searchendpoint, normalizes events to{ts, app, window_title, text, content_type}. - Redact —
redactscrubs emails, API keys, bearer tokens, phones from OCR text and window titles as defense-in-depth over screenpipe's own PII removal. - Cluster —
segment_sessionssplits on idle gaps (default 10 min) and drops short sessions;cluster_sessionsgroups sessions by app-signature and keeps clusters of sizemin_cluster_size(default 2). - Match —
load_skill_descriptionsreads frontmatter from everySKILL.mdinscientific-skills/;top_k_matchesranks each cluster against all skills using localsentence-transformersembeddings (cosine similarity). - Synthesize —
synthesizeprompts the configured LLM backend to classify each cluster asreuse,compose, ornoveland emit a SKILL.md body where appropriate. - Report — writes
<out_dir>/<ts>/report.md, plusnew-skills/<name>/SKILL.mdorcomposition-recipes/<name>/SKILL.mdfor each proposal.
Add --dry-run to stop after clustering; this skips the LLM (and the sentence-transformers load), writing only plan.md for inspection.
2. Review and promote
Open ~/.autoskill/proposed/<ts>/report.md, edit drafts in place, delete anything you don't want. Then:
python scripts/autoskill.py promote \
--proposed ~/.autoskill/proposed/2026-04-17T14-30-00 \
--skills-dir scientific-skills \
--name zotero-pubmed-helper
promote moves the directory into scientific-skills/<name>/, refusing to overwrite an existing skill. Exits non-zero with a friendly error if the proposal isn't found or the target already exists.
Configuration
See config.yaml for the full shape. Default values (local-first):
backend: local
local:
endpoint: http://localhost:1234/v1 # LM Studio's Developer server
model: Gemma-4-31B-it
screenpipe:
url: http://localhost:3030 # or https://screenpipe.local via Caddy
cluster:
min_session_minutes: 5
idle_gap_minutes: 10
min_cluster_size: 2
To opt into a cloud backend:
backend: claude # or foundry
claude:
model: claude-opus-4-7
Composition recipes vs new skills
- compose: the LLM judged that chaining existing skills covers the workflow. The emitted SKILL.md is intentionally thin — frontmatter + a "Workflow" section that invokes existing skills in order. The same agent runtime that discovered the skill can then invoke it end-to-end.
- novel: no combination of existing skills covers it. A fuller SKILL.md is drafted, still following repo conventions (frontmatter, Overview, When to Use, Workflow). The user should always review new-skill drafts before promoting.
Testing
The skill is covered by a small pytest suite at tests/. Each script is unit-tested in isolation with dependency injection (mock HTTP transport, stub backend, stub embedder):
cd scientific-skills/autoskill
python -m pytest tests/ -v
Composition with other skills in this repo
The autoskill's embedding index covers all 135 sibling skills. Workflows that look like scientific writing will match scientific-writing / literature-review / citation-management; figure work will match scientific-schematics / generate-image / infographics; slide prep matches scientific-slides / pptx; etc. When a cluster scores high against two or three sibling skills the emitted composition recipe names them explicitly, so the user's future agent invocations use the optimized paths already documented in this repo.
Repositorio GitHub
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