Open framework · Agent Method Execution Protocol
Turn methodologies into executable agent protocols.
AMEP packages a human methodology as a deterministic, auditable protocol that an agent runs — not a prompt it reads. Each method pack is a small Python kernel plus schemas, a CLI, trace memory, and a conservative claim-state vocabulary.
Open source · Preparing for release
Why a prompt isn’t enough
Prompts are flexible but weakly binding. Workflows fix order but can’t carry a methodology’s judgment and downgrades. Tools extend reach but never say when, why, or how far. AMEP is the layer in between.
Prompt
Flexible, but no stable state, versioning, audit, or failure protocol.
Workflow
Stable order, but it describes sequence — not a method’s judgment criteria.
AMEP method pack
Repeatable, verifiable, auditable, versionable — a methodology compiled into a protocol.
The method-pack model
Every pack is decomposed into the same twelve layers and runs a bidirectional loop: the agent generates forward, the pack audits backward, and the coupling step revises the next action.
- 01 Intent contract
- 02 Input contract
- 03 Domain vocabulary
- 04 Action rules
- 05 Constraint rules
- 06 Audit rules
- 07 Output schema
- 08 Memory rules
- 09 Tool permission
- 10 Failure protocol
- 11 Iteration loop
- 12 Boundary policy
Bidirectional loop
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→ Forward
The agent proposes, drafts, formalizes, calls tools.
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← Backward audit
The pack traces gaps, requires witnesses, flags risks, marks what cannot be claimed.
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↻ Coupling update
Backward pressure revises the next forward action; gaps become tasks.
Five method packs
One umbrella protocol, five disciplines. RigorLoop is the reference implementation; the others share its I/O flow, trace memory, and claim-state discipline.
RigorLoop
The reference pack. A bidirectional rigor-audit protocol for mathematical and research agents: claim normalization, gap registers, a citation ledger, and Lean formalization-prep — with conservative claim states instead of overclaiming.
View source ↗ Creation · RoutingGCPR-CreativeOps
Turns a creative, product, research, or strategy task into a GCPR seven-tuple, diagnoses self/problem state, routes a creation strategy (sketch / refine / dimension-lift / …), runs an iterative operation loop, and projects the result back into a feasible domain.
View source ↗ Causal · PredictionFDCS-CausalOps
Cross-scale, context-sensitive dynamic causal modeling with bounded virtual interventions and a scale-horizon uncertainty guard that downgrades predictions beyond observer capacity — no false precision.
View source ↗ MetacognitionCognitiveDeconstructionOps
A metacognitive pack: routes a minimal sufficient set of reasoning modules, strips a concept to its origin-point candidate, recompiles it, and integrates the module outputs into one reconstruction.
View source ↗ Strategy · World-rulesBoundlessStrategyOps
Hypergame and world-rule reasoning: identifies the game, extracts real vs. false rules, classifies the user’s deeper intent, and routes a safe, lawful, non-coercive strategy class — with handoffs to the other packs.
View source ↗Not a prompt. Not a skill file.
A skill is a way to package and load a capability into an agent. A method pack is the deterministic, audited engine underneath. You can expose a pack through a skill — but the pack is what runs.
Deterministic & tested
The kernel runs without any LLM call. A unit-test suite across the five packs keeps behavior reproducible — not a prompt that drifts run to run.
Auditable by design
Append-only JSONL trace memory, a conservative claim-state vocabulary, and structured audit findings. Every run leaves an inspectable trail.
Schema-enforced
Outputs are validated against JSON schemas at runtime, and every pack implements the same 12-layer method-pack contract.
Runtime-agnostic
Runs as a local CLI inside any agent — Claude Code, Codex, and others — or standalone. Pure-stdlib Python, no platform lock-in.
Quickstart
Each pack is a self-contained, dependency-free Python package. Run one as a CLI and it writes a structured artifact bundle plus an audit trail.
git clone https://github.com/kakon77777-commits/amep
cd amep/packs/boundless-strategyops
# route a real task — deterministic, offline, no API key
PYTHONPATH=src python -m boundless_strategyops.cli \
run --input "I want to build an AI tool but can't position it"
# -> output/strategy_report.md, strategy_route.json, safety_note.md, … From a methodology you read to a protocol an agent runs.
AMEP is part of the EVEMISS Technology open-source layer — infrastructure for disciplined, auditable agentic work.