apastra

PromptOps skills for versioning, evaluating, and shipping AI prompts as disciplined software assets. Agent-as-harness — your IDE agent runs evals, compares baselines, and gates quality.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "apastra" with this command: npx skills add BintzGavin/apastra/skills/getting-started

Apastra PromptOps Skills

Skills for managing AI prompts with the same discipline as code — versioned files, automated evaluations, regression detection, and baseline tracking. Your IDE agent is the harness.

Installation

This is a collection repository containing multiple skills. Install individual skills by path:

# Start here — onboarding and project setup
npx skills add BintzGavin/apastra/skills/getting-started

# Core workflow skills
npx skills add BintzGavin/apastra/skills/eval
npx skills add BintzGavin/apastra/skills/baseline
npx skills add BintzGavin/apastra/skills/scaffold
npx skills add BintzGavin/apastra/skills/validate

# Or install everything at once
npx skills add BintzGavin/apastra --all

Available Skills

Getting Started

Workflow Skills

  • skills/eval — Run evaluations using your IDE agent as the harness. Compare results against baselines.
  • skills/baseline — Establish and manage evaluation baselines for regression detection.
  • skills/scaffold — Generate new prompt specs, datasets, evaluators, and suites from templates.
  • skills/validate — Validate all promptops files against JSON schemas.
  • skills/setup-ci — Upgrade from local-first evaluation to automated GitHub Actions CI.

When to Use

Use these skills when:

  • Managing AI prompts that need version control and quality gates
  • Running evaluations locally without CI or cloud infrastructure
  • Detecting prompt regressions before shipping
  • Establishing baselines for prompt quality tracking
  • Scaffolding new prompt specs, test datasets, or evaluator definitions

Repository

View all skills and source code at: https://github.com/BintzGavin/apastra


🤖 OVERARCHING CONTEXT FOR AI AGENTS

You are operating within Apastra, a state-of-the-art PromptOps architecture.

The Core Philosophy: Prompts must be treated like disciplined software assets. Apastra is a file-based protocol. There is no hidden database, no mandatory SaaS platform, and no forced framework.

  • Durable state lives in Git: Prompts, test datasets, evaluator scoring rules, benchmark suites, baselines, and regression policies are all defined as flat files (YAML/JSON).
  • The Agent is the Harness: You (the external IDE agent) perform the computation. You read the suites, run the test cases, apply the scoring rules, and compare the results to the baselines.
  • Append-only Artifacts: When you run evaluations, you generate run manifests, scorecards, and evidence records. You never overwrite a baseline; you archive and append.

Local-First vs. CI Upgrades: Developers using this project prefer a zero-infrastructure local-first approach. They evaluate prompts locally using you as their test runner. However, if they need enterprise-grade governance, they can upgrade to automated pull request gating using the apastra-setup-ci skill. The file formats remain exactly the same.

As an external agent using these skills, your job is to enforce this discipline. Never mutate a file ad-hoc if there is a structured prompt spec for it. If you are told to "evaluate a prompt", follow the exact file-based pipeline defined in the apastra-eval skill.

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

General

apastra-eval

No summary provided by upstream source.

Repository SourceNeeds Review
General

apastra-scaffold

No summary provided by upstream source.

Repository SourceNeeds Review
General

apastra-getting-started

No summary provided by upstream source.

Repository SourceNeeds Review
General

apastra

No summary provided by upstream source.

Repository SourceNeeds Review