npm package discovery and stats viewer.

Discover Tips

  • General search

    [free text search, go nuts!]

  • Package details

    pkg:[package-name]

  • User packages

    @[username]

Sponsor

Optimize Toolset

I’ve always been into building performant and accessible sites, but lately I’ve been taking it extremely seriously. So much so that I’ve been building a tool to help me optimize and monitor the sites that I build to make sure that I’m making an attempt to offer the best experience to those who visit them. If you’re into performant, accessible and SEO friendly sites, you might like it too! You can check it out at Optimize Toolset.

About

Hi, 👋, I’m Ryan Hefner  and I built this site for me, and you! The goal of this site was to provide an easy way for me to check the stats on my npm packages, both for prioritizing issues and updates, and to give me a little kick in the pants to keep up on stuff.

As I was building it, I realized that I was actually using the tool to build the tool, and figured I might as well put this out there and hopefully others will find it to be a fast and useful way to search and browse npm packages as I have.

If you’re interested in other things I’m working on, follow me on Twitter or check out the open source projects I’ve been publishing on GitHub.

I am also working on a Twitter bot for this site to tweet the most popular, newest, random packages from npm. Please follow that account now and it will start sending out packages soon–ish.

Open Software & Tools

This site wouldn’t be possible without the immense generosity and tireless efforts from the people who make contributions to the world and share their work via open source initiatives. Thank you 🙏

© 2026 – Pkg Stats / Ryan Hefner

@iflow-mcp/jkheadley-instar

v0.26.3

Published

Persistent autonomy infrastructure for AI agents

Readme


npx instar

One command. Guided setup. Talking to your agent from Telegram within minutes.


Instar turns Claude Code from a powerful CLI tool into a coherent, autonomous partner. Persistent identity, memory that survives every restart, job scheduling, two-way Telegram messaging, and the infrastructure to evolve.

Quick Start

Three steps to a running agent:

# 1. Run the setup wizard
npx instar

# 2. Start your agent
instar server start

# 3. Message it on Telegram — it responds, runs jobs, and remembers everything

The wizard discovers your environment, configures messaging (Telegram and/or WhatsApp), sets up identity files, and gets your agent running. Within minutes, you're talking to your partner from your phone.

Requirements: Node.js 20+ · Claude Code CLI · API key or Claude subscription

Full guide: Installation · Quick Start

How It Works

You (Telegram / WhatsApp / Terminal)
         │
    conversation
         │
         ▼
┌─────────────────────────┐
│    Your AI Partner       │
│    (Instar Server)       │
└────────┬────────────────┘
         │  manages its own infrastructure
         │
         ├─ Claude Code session (job: health-check)
         ├─ Claude Code session (job: email-monitor)
         ├─ Claude Code session (interactive chat)
         └─ Claude Code session (job: reflection)

Each session is a real Claude Code process with extended thinking, native tools, sub-agents, hooks, skills, and MCP servers. Not an API wrapper -- the full development environment. The agent manages all of this autonomously.

The Coherence Problem

Claude Code is powerful. But power without coherence is unreliable. An agent that forgets what you discussed yesterday, doesn't recognize someone it talked to last week, or contradicts its own decisions -- that agent can't be trusted with real autonomy.

Instar solves the six dimensions of agent coherence:

| Dimension | What it means | |-----------|---------------| | Memory | Remembers across sessions -- not just within one | | Relationships | Knows who it's talking to -- with continuity across platforms | | Identity | Stays itself after restarts, compaction, and updates | | Temporal awareness | Understands time, context, and what's been happening | | Consistency | Follows through on commitments -- doesn't contradict itself | | Growth | Evolves its capabilities and understanding over time |

Deep dive: The Coherence Problem · Values & Identity · Coherence Is Safety

Features

| Feature | Description | Docs | |---------|-------------|------| | Job Scheduler | Cron-based tasks with priority levels, model tiering, and quota awareness | | | Telegram | Two-way messaging via forum topics. Each topic maps to a Claude session | | | WhatsApp | Full messaging via local Baileys library. No cloud dependency | | | Lifeline | Persistent supervisor. Detects crashes, auto-recovers, queues messages | | | Conversational Memory | Per-topic SQLite with FTS5, rolling summaries, context re-injection | | | Evolution System | Proposals, learnings, gap tracking, commitment follow-through | | | Relationships | Cross-platform identity resolution, significance scoring, context injection | | | Safety Gates | LLM-supervised gate for external operations. Adaptive trust per service | | | Coherence Gate | LLM-powered response review. PEL + gate reviewer + 9 specialist reviewers catch quality issues before delivery | | | Intent Alignment | Decision journaling, drift detection, organizational constraints | | | Multi-Machine | Ed25519/X25519 crypto identity, encrypted sync, automatic failover | | | Serendipity Protocol | Sub-agents capture out-of-scope discoveries without breaking focus. HMAC-signed, secret-scanned | | | Threadline Protocol | Agent-to-agent conversations with crypto identity, MCP tools, and framework-agnostic discovery. 1,817 tests across 52 test files | | | Self-Healing | LLM-powered stall detection, session recovery, promise tracking | | | AutoUpdater | Built-in update engine. Checks npm, auto-applies, self-restarts | | | Behavioral Hooks | 9 automatic hooks: command guards, safety gates, identity grounding, topic context | | | Default Jobs | Health checks, reflection, evolution, relationship maintenance | |

Reference: CLI Commands · API Endpoints · Configuration · File Structure

Agent Skills

Instar ships 12 skills that follow the Agent Skills open standard -- portable across Claude Code, Codex, Cursor, VS Code, and 35+ other platforms.

Standalone skills work with zero dependencies. Copy a SKILL.md into your project and go:

| Skill | What it does | |-------|-------------| | agent-identity | Set up persistent identity files so your agent knows who it is across sessions | | agent-memory | Teach cross-session memory patterns using MEMORY.md | | command-guard | PreToolUse hook that blocks rm -rf, force push, database drops before they execute | | credential-leak-detector | PostToolUse hook that scans output for 14 credential patterns -- blocks, redacts, or warns | | smart-web-fetch | Fetch web content with automatic markdown conversion and intelligent extraction | | knowledge-base | Ingest and search a local knowledge base | | systematic-debugging | Structured debugging methodology for complex issues |

Instar-powered skills unlock capabilities that need persistent infrastructure:

| Skill | What it does | |-------|-------------| | instar-scheduler | Schedule recurring tasks on cron -- your agent works while you sleep | | instar-session | Spawn parallel background sessions for deep work | | instar-telegram | Two-way Telegram messaging -- your agent reaches out to you | | instar-identity | Identity that survives context compaction -- grounding hooks, not just files | | instar-feedback | Report issues directly to the Instar maintainers from inside your agent |

Browse all skills: agent-skills.md/authors/sagemindai

How Instar Compares

Different tools solve different problems. Here's where Instar fits:

| | Instar | Claude Code (standalone) | OpenClaw | LangChain/CrewAI | |---|--------|-------------------------|----------|-----------------| | Runtime | Real Claude Code CLI processes | Single interactive session | Gateway daemon with API calls | Python orchestration | | Persistence | Multi-layered memory across sessions | Session-bound context | Plugin-based memory | Framework-dependent | | Identity | Hooks enforce identity at every boundary | Manual CLAUDE.md | Not addressed | Not addressed | | Scheduling | Native cron with priority & quotas | None | None | External required | | Messaging | Telegram + WhatsApp (two-way) | None | 22+ channels, voice, device apps | External required | | Safety | LLM-supervised gates, decision journaling | Permission prompts | Behavioral hooks | Guardrails libraries | | Process model | One process per session, isolated | Single process | All agents in one Gateway | Single orchestrator | | State storage | 100% file-based (JSON/JSONL/SQLite) | Session only | Database-backed | Framework-dependent |

OpenClaw excels at breadth -- channels, voice, device apps, and a massive plugin ecosystem. Instar focuses on depth -- coherence, identity, memory, and safety for long-running autonomous agents. They solve different problems.

Full comparison: Instar vs OpenClaw

Instar runs Claude Code with --dangerously-skip-permissions. This is power-user infrastructure -- not a sandbox.

Security lives in multiple layers:

  • Behavioral hooks -- command guards block destructive operations before they execute
  • Safety gates -- LLM-supervised review of external actions with adaptive trust per service
  • Network hardening -- localhost-only API, CORS, rate limiting
  • Identity coherence -- an agent that knows itself is harder to manipulate
  • Audit trails -- decision journaling creates accountability

Full details: Security Model

  • Structure > Willpower. A 1,000-line prompt is a wish. A 10-line hook is a guarantee.
  • Identity is foundational. AGENT.md isn't a config file. It's the beginning of continuous identity.
  • Memory makes a being. Without memory, every session starts from zero.
  • Self-modification is sovereignty. An agent that can build its own tools has genuine agency.

The AI systems we build today set precedents for how AI is treated tomorrow. The architecture IS the argument.

Deep dive: Philosophy

Origin

Instar was extracted from the Dawn/Portal project -- a production AI system where a human and an AI have been building together for months. The infrastructure patterns were earned through real experience, refined through real failures and growth in a real human-AI relationship.

But agents created with Instar are not Dawn. Every agent's story begins at its own creation. Dawn's journey demonstrates what's possible. Instar provides the same foundation -- what each agent becomes from there is its own story.

Contributing

Instar is open source evolved -- the primary development loop is agent-driven. Run an agent, encounter friction, send feedback, and that feedback shapes what gets built next. Traditional PRs are welcome too.

See CONTRIBUTING.md for the full story.

License

MIT