AI config · agent orchestration

Agents that know
when the work is done.

Finta assembles a quality-scored catalog of 2,500+ agents, skills and commands into a ready-to-run config for 19 AI assistants — then forges self-verifying agent loops with guardrails, on-disk memory and human escalation.

No build. No account. One HTML file away.
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Platform

Everything between “blank repo” and “agent that ships”

A wizard for the setup, a forge for the execution layer. Both run as static pages — open a file, get to work.

Quality-scored catalog

Every agent, skill and command carries a 0–100 score from source reputation, content depth and curation tier. Only items ≥ 65 surface by default.

19 assistants, one wizard

Claude Code, Cursor, Copilot, Windsurf, Codex, Gemini, Aider and 12 more — the same 5-minute wizard generates the right config format for each.

Loop engineering

New: forge agents that run a verified loop — observe, decide, execute, verify — and stop on a provable goal instead of drifting forever.

Guardrails by default

Iteration caps, stagnation detection after 3 flat rounds, time/token budgets and rollback on regression — enforced in code, not prose.

Memory on disk

Permanent memory, an incident buffer purged on resolution, and an exchange bus that sub-agents read and write to coordinate.

Human-to-loop

Five escalation triggers — ambiguity, irreversible actions, sensitive data, subjective judgment, exhausted budget — hand control back to you.

New · Loop Forge

From static personas to executable loops

A persona file tells an agent who to be. A loop tells it how to finish. Loop Forge generates the full execution architecture — orchestrator, config, memory, scoring grid and a runnable Python loop runner.

THE VERIFIED CYCLE

BOOTSTRAP CONTEXT CLARIFY? LOOP DESIGN EXECUTE VERIFY RESOLVED · HTL

Doubt above 10%? The agent asks instead of guessing. A bug? One diagnosis, one atomic fix, max 3 retries, then a regression test before it counts as resolved.

5 loop profiles

Turn-by-turn, goal-driven, temporal, proactive, or simplified with human validation — picked by a 3-question decision tree, not a single hardcoded mode.

Two-mode verification

Deterministic criteria (tests pass, CI green) and soft criteria (matches the spec, validated once with you) — never a blind pass/fail boolean.

4 orchestration patterns

Single agent, parallel fan-out, sequential chain, or mixed — with an exchange bus file that every sub-agent reads and writes.

Runnable output

Not just markdown: a ZIP with AGENT.md, loop.config.json, scoring grid, memory files, structure validators and a Python loop runner with the guardrails built in.

Forge your loop agent
Workflow

Three steps, five minutes

01

Answer

Pick a profile — Fast, Advanced or Deep — and describe your stack, team and workflow.

02

Generate

Finta selects the best-scored agents, skills and commands for your context and builds a bootstrap prompt plus a file-tree preview.

03

Paste

Paste the prompt into your AI assistant once. It installs the config without overwriting anything already in your project.

Catalog

Curated from the best public sources

Twelve-plus sources, each scored and tiered — plus Finta’s own sport-science and coaching agents you won’t find anywhere else.

anthropics27 skills · ⭐ 127kOfficial
wshobson66 agents · ⭐ 36kCurated
antigravity1,446 skills · ⭐ 39kCommunity
composio28 skills · ⭐ 62kCurated
avivl108 agentsCurated
voltagent144 agents · ⭐ 9.2kCommunity
alirezarezvani215 skills · ⭐ 16kCurated
finta30+ agents · sport scienceOriginal

Ready in five minutes.

Open the wizard, answer a few questions, paste one prompt. Your assistant does the rest.