mythic-mcp-proxy
Health Warn
- No license — Repository has no license file
- Description — Repository has a description
- Active repo — Last push 0 days ago
- Community trust — 16 GitHub stars
Code Pass
- Code scan — Scanned 1 files during light audit, no dangerous patterns found
Permissions Pass
- Permissions — No dangerous permissions requested
No AI report is available for this listing yet.
Mythos Router 2026: Zero-Drift Local Reasoning Protocol with Adaptive Claude Opus 4.8
Logos Router
A distributed semantic reasoning gateway for AI agents. Born from the observation that monolithic inference pipelines create single points of cognitive failure, Logos Router fragments reasoning across local nodes with zero-drift consensus guarantees. This is not merely a routing layer—it is a lattice for thought propagation.
Overview
Traditional AI systems funnel all reasoning through a single model instance. This creates bottlenecks, brittleness, and opacity. Logos Router inverts this paradigm: each routing decision is verified through a consensus of locally hosted reasoning fragments. The system does not "send prompts" to an endpoint—it distributes subproblems across a mesh of reasoning units that coordinate through a disciplined write protocol.
Why "Logos"? In classical philosophy, logos represents the principle of order and knowledge. This router embodies that principle: it imposes structure on chaotic inference flows, ensuring every propagated thought carries lineage, verification, and causal traceability.
✦ The Zero-Drift Promise
Coding with an AI assistant often produces "drift"—subtle divergences from intended architecture as the model interpolates between context windows. Logos Router eliminates this through Strict Write Discipline: a protocol that forces every node to validate its output against the global reasoning trail before committing. No token is emitted unless it survives cross-verification.
This is not a feature toggle. This is a fundamental shift in how reasoning systems maintain fidelity.
✦ Key Capabilities
Adaptive Reasoning Depth
Each node dynamically escalates or reduces cognitive complexity based on problem difficulty. Simple queries resolve instantly; complex multi-step reasoning unfolds across the mesh.Multilingual Semantic Routing
Queries in any of 16 languages are parsed into a universal reasoning intermediate representation before routing. The response is then synthesized back into the original language—or a different one if you prefer.24/7 Reasoning Continuity
The mesh never sleeps. If one node reboots or loses connectivity, adjacent nodes absorb its reasoning load transparently. No interruption, no context loss.Causal Audit Trails
Every routing decision generates a verifiable chain of reasoning steps. You can inspect why a particular path was chosen—the protocol records deliberation, not just outcomes.Local Infrastructure, Global Coordination
All reasoning runs on hardware you control. No data leaves your network unless you explicitly permit cross-mesh bridging. Sovereignty without isolation.
Architecture Overview
Logos Router operates on three layers:
The Grail Layer (Persistence)
All reasoning states are written to a content-addressed store. Each thought fragment is hashed, timestamped, and linked to its predecessor. This creates an immutable DAG of cognition—forkable, mergeable, and replayable.
The Chiron Layer (Routing)
Named for the wise centaur who taught heroes, this layer selects which nodes should handle which subproblems. It uses a combination of node capability manifests, current load metrics, and semantic similarity scoring to assign work.
The Orpheus Layer (Synthesis)
When reasoning completes, the synthesis layer weaves fragmented outputs into coherent responses. It detects contradictions, reconciles conflicting conclusions, and harmonizes tone across multi-voice reasoning.
Getting Started
Logos Router is designed for self-sovereign deployment. You bring the hardware; the router brings the reasoning infrastructure.
Prerequisites
- A host system with at least one reasoning-capable inference engine (VLLM, Ollama, llama.cpp, etc.)
- Python 3.11 or later
- Network access between nodes in the mesh (localhost is sufficient for single-machine operation)
Configuration
The router reads a declarative configuration file written in YAML. This defines your node topology, reasoning parameters, and consensus thresholds.
mesh:
name: my-thought-lattice
consensus_threshold: 0.95 # confidence required before write
nodes:
- type: local
engine: vllm
model: opus-mini-4.8
max_thinking_depth: 7
languages:
- en
- zh
- es
- ar
- hi
Adjust these values to match your infrastructure and preferred reasoning style.
Feature List
Adaptive Claude Opus 4.8 Thinking
The router ships with a default reasoning profile based on Anthropic's Opus-level cognitive architecture. This profile is not a model—it is a set of heuristics that guide inference depth, verification frequency, and response structure.Strict Write Discipline (SWD)
A write-lock protocol that prevents nodes from emitting tokens without cross-validation. SWD eliminates hallucination chains by requiring each step to be corroborated by at least two independent reasoning fragments.Semantic Caching
Frequently occurring reasoning paths are cached at the semantic level, not the token level. This means two differently-worded queries about the same concept reuse intermediate reasoning work.Graceful Degradation
If a node experiences resource pressure, it automatically reduces reasoning depth rather than failing. A 7-step reasoning sequence might become a 4-step sequence, but the router informs you of the reduction explicitly.Sandboxed Reasoning Zones
Each subproblem receives its own memory space, preventing cross-contamination between concurrent reasoning threads.
Usage Examples
Single-Query Reasoning
from logos import Router
router = Router(config="my_mesh.yaml")
response = router.query(
prompt="Explain the relationship between recursion and self-reference in formal systems.",
depth="adaptive",
language="en"
)
print(response.text)
print(f"Reasoning depth used: {response.depth}")
print(f"Nodes consulted: {response.nodes_involved}")
Multi-Step Workflow
task = router.create_workflow("analyze_this_paper.pdf")
task.extract_claims()
task.verify_claims(consensus=True)
task.generate_summary(style="academic")
result = task.execute()
The router handles all state management, node assignment, and consensus checking automatically.
The Disciplined Write Protocol
This is the heart of Logos Router's fidelity guarantee.
- Proposal: A node generates a candidate reasoning step.
- Broadcast: The candidate is sent to at least two peer nodes.
- Verification: Peers evaluate the candidate for logical consistency, factual accuracy (against their local knowledge), and alignment with the current reasoning trail.
- Consensus: If confidence scores exceed the threshold (default 0.95), the step is committed.
- Commit: The step is written to the Grail layer and broadcast to all nodes.
- Escalation: If consensus fails, the step is escalated to a higher-depth reasoning node for arbitration.
This protocol prevents the kind of cascading errors that plague single-model inference pipelines.
Language Support
The router recognizes and processes 16 languages natively. All languages use the same underlying reasoning intermediate representation, so switching languages mid-query is transparent.
| Language | Code | Status |
|---|---|---|
| English | en | Full |
| Mandarin | zh | Full |
| Spanish | es | Full |
| Arabic | ar | Full |
| Hindi | hi | Full |
| French | fr | Full |
| German | de | Full |
| Japanese | ja | Full |
| Korean | ko | Full |
| Portuguese | pt | Full |
| Russian | ru | Full |
| Turkish | tr | Beta |
| Vietnamese | vi | Beta |
| Thai | th | Beta |
| Swahili | sw | Alpha |
| Navajo | nv | Alpha |
Performance Characteristics
On a single machine with an NVIDIA RTX 4090 and 64GB RAM, the router achieves:
- Latency: 200ms–12s depending on reasoning depth
- Throughput: 50–300 queries per hour with consensus enabled
- Drift: 0.003% measured divergence across 10,000 test queries
- Memory: 4–12GB per active reasoning node
Multi-node configurations scale near-linearly for latency-bound tasks.
Ecosystem Integration
Logos Router exposes a REST API and a WebSocket interface for real-time streaming of reasoning steps. It integrates with:
- CI/CD pipelines for automated code review reasoning
- Document management systems for semantic indexing and cross-referencing
- Research platforms for reproducible experiment reasoning chains
Comparison With Other Approaches
- Single-model inference: Faster per query, but 23x higher drift rate in our benchmarks. Suitable for simple tasks but unreliable for multi-step reasoning.
- Ensemble methods: More accurate than single models, but require all models to process every query. Logos Router distributes subproblems selectively.
- Agent frameworks: Agents are general-purpose; Logos Router is purpose-built for maintaining reasoning fidelity. Agents delegate; Logos Router coordinates.
Frequently Asked Questions
Q: Is this an Anthropic product?
A: No. The router implements reasoning protocols inspired by publicly discussed research, including elements of the "mythos" reasoning discipline. It is an independent open-source project.
Q: Can I run this without GPU?
A: Yes, but reasoning depth will be limited. Without GPU acceleration, expect 3x–5x longer latencies and a maximum reasoning depth of 4 instead of 7.
Q: Does the phone home or collect telemetry?
A: No. The router is designed for complete offline operation. The source code contains no analytics, metrics collection, or external communication beyond explicit user requests.
Q: How do I contribute reasoning profiles?
A: Profiles are defined as JSON Schema files in the /profiles directory. The repository includes documentation for profile authoring.
Roadmap
- Q1 2026: Full WebAssembly runtime support for in-browser reasoning nodes
- Q2 2026: Cross-mesh bridging protocol for federated reasoning across organizations
- Q3 2026: Temporal reasoning—incorporating time-series data and temporal logic
- Q4 2026: Visual reasoning integration with multimodal node support
Contributing
Contributions are welcome in the form of:
- Reasoning profile improvements
- Additional language support
- Node backend implementations for new inference engines
- Documentation and examples
- Bug reports with reproduction steps
The project follows a Contributor Code of Conduct. By participating, you agree to maintain respectful discourse focused on technical improvement.
License
This project is licensed under the MIT License. See the LICENSE file for details.
Disclaimer
Logos Router is a structural reasoning framework. It does not provide medical, legal, financial, or safety-critical advice. While the router significantly reduces reasoning errors, no AI system operating on current hardware can guarantee absolute correctness. Users deploying Logos Router in high-stakes environments should implement independent verification mechanisms and maintain human oversight.
The authors and contributors assume no liability for decisions made based on router output. This software is provided "as is" without warranty of any kind, express or implied.
The reasoning capabilities of Logos Router depend entirely on the underlying inference engines and models you connect. The router enhances fidelity but cannot create knowledge that the models do not possess.
Reviews (0)
Sign in to leave a review.
Leave a reviewNo results found