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See which tool calls have zero checks Code Block Selector - Visual Studio Marketplace Prometheus dependency graph — interactive showcase | Riftmap Show HN: I made a vi-like modal keyboard plugin for Figma GitHub - run-llama/liteparse: A fast, helpful, and open-source document parser GitHub - dalemyers/Roar: A macOS CLI tool for notifications GitHub - district-solutions/open-agent-tools-coder: Enables small-to-large self-hosted ai models to use local source code when running tool-calling agentic workloads. We actively data mine 20,900+ (2+ TB) popular github repos using large and small ai models to create reuseable: json, markdown and parquet files for local-first tool-calling models. GitHub - progapandist/stripeek: A local TUI proxy for real-time Stripe API debugging, built for navigating complex payloads fast. GitHub - sir1st/hermes-desktop: All-in-one cross-platform desktop app for Hermes Agent — bundles Python + hermes-agent + hermes-web-ui GitHub - astefanutti/shaderbang: Shebang for Shaders Show HN: Generate Claude Code Workflows using Spec Driven Development approach GitHub - nixys/nxs-universal-chart: The Helm chart you can use to install any of your applications into Kubernetes/OpenShift Show HN: AI agents for UK GDAD PCF roles and their skills The Two Pillars: Mixer Mode and Meta-Software in the Reorganization of Software Work After AI GitHub - JaiCode08/teleport-env What 1,000+ Harness Experiments Taught Me About Self-Improving Agents Show HN: Liiists, a Markdown-first, iOS and CLI list app SwiperTab – Get this Extension for 🦊 Firefox (en-US) GitHub - kouhxp/fftext: Summarize, explain, fact-check, or translate any text, URL, or file. No GPU. No cloud. One command GitHub - sweetpad-dev/sweetpad: Develop Swift/iOS projects using VSCode GitHub - dogmaticdev/IRON: IRON a.k.a. Intermediate Representation Object Notation is a Interpreter/Database that is used to create Programming Languages. GitHub - sjhalani7/vaen: Package your AI coding harness into a portable .agent file, and share it across repos, teams, & the community without ever having to copy-paste instructions, skills, MCP config, or secrets. Show HN: Gandalf the Grader Show HN: Citadeld – replay any CI failure locally from a single file GitHub - tdortman/cuSBF: High-Performance GPU Super Bloom Filter coral-ai/claude-code-token-xray at main · Coral-Bricks-AI/coral-ai GitHub - ulyssestenn/funes: Funes is a Git-based framework for LLM-managed knowledge work: an AI Librarian ingests raw sources, builds an interlinked Markdown knowledge base, and uses it to produce cited reports, analyses, and other outputs. 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GitHub - mrdanielcasper/CoreTex: A UNIX-inspired, biomimetic, flat-file AI harness and knowledge engine. GitHub - clemg/pierre-github: Pierre's diffs.com and trees.software for Github GitHub - lyriks-io/unspaghettit: Behavior-driven AI development without prompt spaghetti. GitHub - sofumel/claude-handoff-revive: Resume Claude Code work after rate/usage/context limits without replaying the prior transcript. Auto-saves at 90%/95% usage. Plugin-installable, 10 languages. GitHub - dotexorg/saferpc: Typed, end-to-end encrypted RPC over any bidirectional channel. GitHub - BeeZeeAgent/beezee: Agent harness orchestration Legato Next.js Boilerplate for Internal Tools · CoreUI GitHub - clark-labs-inc/clark-hash: Clark Hash, 32x smaller searchable sketches for embeddings GitHub - ZeroPointRepo/youtube-mcp: The fastest YouTube transcript + YouTube search MCP for AI agents. Try for free. 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GitHub - Chrilleweb/dotenv-diff: Validate environment variable usage in your codebase GitHub - Lumen-Labs/brainapi2: BrainAPI is a knowledge graph–powered AI memory layer that transforms unstructured data into structured knowledge, enabling intelligent search, recommendations, and contextual memory for AI agents and applications. GitHub - familiar-software/familiar: Let AI watch you work. Familiar lets your AI update its memory, skills, and knowledge by watching your screen. GitHub - skorotkiewicz/rudo: A small, elegant dock for Wayland GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. make sidebar/address bar rounded corner toggleable
Building Your Own Coding Agent on Top of zot
Patric Eckhart · 2026-06-17 · via Show HN

How zot ships its internals as importable Go packages, so you can write a working coding agent harness in about a hundred lines.

Most "AI coding agent" projects spend 90% of their code on plumbing: streaming protocol parsing, provider auth, tool schemas, a file sandbox, a system prompt. The interesting 10% (what your agent actually does) gets buried. zot flips that ratio. It hands you the plumbing as importable Go packages so you can write a working harness in about a hundred lines.

This article walks through coil, a tiny harness built on zot, and shows how the pieces fit together.

What zot gives you

zot ships its internals as ordinary Go packages under github.com/patriceckhart/zot/packages/...:

  • provider: clients for Anthropic, OpenAI (Chat Completions and Responses), Gemini, and more, all behind one provider.Client interface.
  • core: the agent loop, tool registry, and event stream.
  • agent: helpers like a sane default system prompt builder.
  • agent/tools: ready-made read, write, edit, and bash tools plus a path sandbox.

You import what you need and ignore the rest. There is no daemon, no config format you have to adopt, no TUI you are forced to render.

The whole harness

Here is the core of coil. The shape is the same for any harness you build.

prov := env("COIL_PROVIDER", "anthropic")
model := env("COIL_MODEL", defaultModel(prov))
client := newClient(prov, apiKey(prov))
 
sb := tools.NewSandbox(cwd)
sb.Lock() // confine file tools to the current directory
 
reg := core.NewRegistry(
    &tools.ReadTool{CWD: cwd, Sandbox: sb},
    &tools.WriteTool{CWD: cwd, Sandbox: sb},
    &tools.EditTool{CWD: cwd, Sandbox: sb},
    &tools.BashTool{CWD: cwd, Sandbox: sb},
)
 
system := zotagent.BuildSystemPrompt(zotagent.SystemPromptOpts{
    CWD: cwd,
    Custom: "You are coil, a small coding agent harness. Be concise.",
})
 
ag := core.NewAgent(client, model, system, reg)
ag.MaxSteps = 20

Four building blocks: a provider client, a tool registry, a system prompt, and an agent that ties them together.

Picking a provider

Every provider is constructed the same way and returns the same interface, so swapping models is a one-line change:

func newClient(name, key string) provider.Client {
    switch name {
    case "anthropic":
        return provider.NewAnthropic(key, "")
    case "openai":
        return provider.NewOpenAI(key, "")
    case "gemini", "google":
        return provider.NewGemini(key, "")
    default:
        panic("unknown provider: " + name)
    }
}

Because the agent loop only talks to provider.Client, your harness does not care whether the bytes on the wire are Anthropic's Messages format or OpenAI's Chat Completions format. zot normalizes streaming, tool calls, and usage for you.

Tools and the sandbox

Tools are just values that implement zot's tool interface. The built-in ones cover the common cases, and the sandbox keeps file access honest:

sb := tools.NewSandbox(cwd)
sb.Lock() // reads and writes outside cwd are rejected

Adding your own tool is the same pattern as the built-ins: implement the interface, register it. The model sees its JSON schema and can call it like any other.

Running the loop

zot's agent emits a stream of typed events. You decide how to render them. A CLI just prints; a TUI would draw. coil prints:

ag.Prompt(ctx, prompt, nil, func(ev core.AgentEvent) {
    switch e := ev.(type) {
    case core.EvTextDelta:
        fmt.Print(e.Delta)
    case core.EvToolCall:
        fmt.Printf("\n[tool] %s %s\n", e.Name, string(e.Args))
    case core.EvError:
        fmt.Fprintf(os.Stderr, "\nerror: %v\n", e.Err)
    }
})

That callback is the entire UI layer. The agent handles the request, parses tool calls, runs the registered tools, feeds results back, and loops until the model is done or MaxSteps is reached.

Why build your own instead of using the TUI

zot has a full interactive TUI, so why write a harness at all? Because a custom harness lets you:

  • Hard-code a workflow (one-shot prompts, batch jobs, CI checks) instead of an interactive session.
  • Lock down the tool set and sandbox to exactly what a task needs.
  • Embed agent behavior inside a larger Go program.
  • Pin a system prompt and persona without user-visible configuration.

You get zot's battle-tested provider and tool layer while keeping full control of the surface your users (or your CI pipeline) actually touch.

Want your own vibe? Build your own TUI on top of it and make it yours.

Getting started

go mod init yourharness
go get github.com/patriceckhart/zot

Then copy the four-block skeleton above, register the tools you want, write your system prompt, and run. You will have a working agent before you finish your coffee, and every line you add from there is about your product, not about reimplementing streaming parsers.

That is the point of building on zot: spend your effort on the 10% that makes your agent yours.

References