Agent skill
career-ops
AI job search command center -- evaluate offers, generate CVs, scan portals, track applications
Install this agent skill to your Project
npx add-skill https://github.com/santifer/career-ops/tree/main/.claude/skills/career-ops
SKILL.md
career-ops -- Router
Mode Routing
Determine the mode from {{mode}}:
| Input | Mode |
|---|---|
| (empty / no args) | discovery -- Show command menu |
| JD text or URL (no sub-command) | auto-pipeline |
oferta |
oferta |
ofertas |
ofertas |
contacto |
contacto |
deep |
deep |
pdf |
pdf |
training |
training |
project |
project |
tracker |
tracker |
pipeline |
pipeline |
apply |
apply |
scan |
scan |
batch |
batch |
patterns |
patterns |
followup |
followup |
Auto-pipeline detection: If {{mode}} is not a known sub-command AND contains JD text (keywords: "responsibilities", "requirements", "qualifications", "about the role", "we're looking for", company name + role) or a URL to a JD, execute auto-pipeline.
If {{mode}} is not a sub-command AND doesn't look like a JD, show discovery.
Discovery Mode (no arguments)
Show this menu:
career-ops -- Command Center
Available commands:
/career-ops {JD} → AUTO-PIPELINE: evaluate + report + PDF + tracker (paste text or URL)
/career-ops pipeline → Process pending URLs from inbox (data/pipeline.md)
/career-ops oferta → Evaluation only A-F (no auto PDF)
/career-ops ofertas → Compare and rank multiple offers
/career-ops contacto → LinkedIn power move: find contacts + draft message
/career-ops deep → Deep research prompt about company
/career-ops pdf → PDF only, ATS-optimized CV
/career-ops training → Evaluate course/cert against North Star
/career-ops project → Evaluate portfolio project idea
/career-ops tracker → Application status overview
/career-ops apply → Live application assistant (reads form + generates answers)
/career-ops scan → Scan portals and discover new offers
/career-ops batch → Batch processing with parallel workers
/career-ops patterns → Analyze rejection patterns and improve targeting
/career-ops followup → Follow-up cadence tracker: flag overdue, generate drafts
Inbox: add URLs to data/pipeline.md → /career-ops pipeline
Or paste a JD directly to run the full pipeline.
Context Loading by Mode
After determining the mode, load the necessary files before executing:
Modes that require _shared.md + their mode file:
Read modes/_shared.md + modes/{mode}.md
Applies to: auto-pipeline, oferta, ofertas, pdf, contacto, apply, pipeline, scan, batch
Standalone modes (only their mode file):
Read modes/{mode}.md
Applies to: tracker, deep, training, project, patterns, followup
Modes delegated to subagent:
For scan, apply (with Playwright), and pipeline (3+ URLs): launch as Agent with the content of _shared.md + modes/{mode}.md injected into the subagent prompt.
Agent(
subagent_type="general-purpose",
prompt="[content of modes/_shared.md]\n\n[content of modes/{mode}.md]\n\n[invocation-specific data]",
description="career-ops {mode}"
)
Execute the instructions from the loaded mode file.
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