pipeline-orchestratorlisted
Install: claude install-skill baronguyen001/ai-automation-skills
# Pipeline Orchestrator
Use this skill when an automation job is really a chain of steps - scrape, then run it through an AI model, then send an alert - and you want each step to retry on transient failure and the whole run to resume from the last good step. It is a generic, dependency-light runner: stages are ordinary functions, and state is checkpointed to a JSON file so a 429 in the AI step never forces a full re-scrape.
## When to invoke
- User says: "chain these steps" / "scrape then summarize then notify" / "make the pipeline resumable" / "retry between stages"
- Code in the conversation uses: a script that does fetch -> transform -> deliver in sequence and fails partway through.
## When NOT to invoke
- The work is a single call with no real stages.
- The user needs a distributed DAG engine (Airflow, Temporal) with workers and a scheduler, not a single-process chain.
## Concrete example
User input:
```text
My nightly job scrapes a board, asks Gemini to summarize, then pushes Telegram. If Gemini rate-limits, don't re-scrape.
```
Output:
```python
# Copy assets/pipeline.py into your project, then:
from pipeline import run_pipeline
def scrape(_): return fetch_board() # your scraper
def summarize(rows): return gemini_summary(rows) # your AI step
def alert(text): return send_telegram(text) # see telegram-alerter
# checkpoints after each stage; a crash in summarize resumes there, not at scrape
result = run_pipeline([scrape, summarize, alert], sta