Recursive Compounding
Language and thought evolve together
MRCF—the Meyman Recursive Cognition Framework™—is FERZ's proprietary methodology for structuring inquiry, accelerating clarity, and aligning cognitive effort with scalable insight.
It transforms vague reasoning and unstructured questioning into a disciplined method for recursive thinking. Built on ten foundational principles of recursive language-thought dynamics, MRCF offers a system for elevating the quality of questions, prompts, and decisions—across AI systems, human teams, and hybrid workflows.
MRCF is a meta-cognitive methodology that structures thought into a four-tiered loop of inquiry—Descriptive → Analytical → Strategic → Ontological—and governs that loop through deterministic principles of linguistic precision, intellectual agency, and contextual calibration.
MRCF powers alignment, not by imposing answers, but by structuring the questions that lead to them.
Most AI risks—and human reasoning errors—don't come from bad data. They come from unstructured inquiry.
Whether it's a compliance failure, a hallucinated model response, or a strategic blind spot, the root cause is often a breakdown in the structure of questions, not the content of answers.
This is not "prompt engineering." This is recursive cognition engineering—with precision, purpose, and auditability.
At the heart of MRCF is a recursive loop of inquiry modes:
Tier | Mode | Sample Question | Function |
---|---|---|---|
1. Descriptive | What is? | What is the policy's structure? | Ground the facts and terms |
2. Analytical | Why/How? | Why did it fail? How is it linked? | Uncover patterns and relationships |
3. Strategic | What should? | What should we change? | Enable intervention and planning |
4. Ontological | What does it mean? | What are the ethical implications? | Anchor purpose, values, and identity |
This loop repeats—driving refinement, expansion, or resolution based on linguistic clarity and user intent.
Language and thought evolve together
Clarity is governance
Structured questions unlock structured insights
Effort is leverage
Oversimplification erodes cognition
Match complexity to audience and frame
Explore the full theory → The Recursive Loop of Language and Thought (2025)
MRCF provides a deterministic architecture for fine-tuning, prompt chaining, and rubric-based scoring in large language models.
Result: LLMs that don't just respond well—but think well within a governed cognitive loop.
Design domain-aligned, multi-stage prompts with recursive scaffolding for LLMs, copilots, and research tools.
Embed inquiry principles into compliance workflows and audit systems for consistent, tier-aligned traceability.
Power question-answer pipelines, dashboards, or UI flows with tier-aware feedback and structured reasoning prompts.
Deliver team workshops and executive coaching to internalize recursive inquiry across roles and disciplines.
Create more effective prompts with less iteration and better results
Generate outputs with more coherent and logical reasoning
Enable traceable and productive human-AI conversations
Maintain high standards in critical decision-making processes
Implement ethical reflection at scale without losing nuance
MRCF is a proprietary cognitive methodology developed and maintained by FERZ LLC. It integrates theoretical foundations from linguistics, cognitive science, AI governance, and philosophical systems design.
Custom implementations are available under licensing and consulting agreements.
Contact us to learn more about MRCF-based training and integration.
Compress unstructured knowledge into AI-readable, verifiable structures.
Return to the main methodologies index.