Introduction

Ngeodesic provides safety guardrails for AI with enhanced performance. Our Micro-LM (micro language model) sidecars act as a Layer 2 for AI: improving efficiency and reliability, enforcing determinism, auditability, and compliance — all while letting large language models remain fluent and flexible. For GitHub repos, you can visit:

Warp->Detect->Denoise (WDD)

Warp → Detect → Denoise (WDD) is a patented pipeline for making noisy latent spaces deterministic and auditable. It first warps embeddings into a stable geometry, then detects true signals with calibrated filters, and finally denoises phantom attractors. The result: reproducible PASS/ABSTAIN decisions with clear traces — turning stochastic LLM (large language model) outputs into predictable, safe, enterprise-grade behavior.

NGF Warped vs Flat Paths

Micro-LMs

Micro-LMs are lightweight, domain-specific companions to LLMs that provide determinism, safety, and auditability. They focus on a narrow set of primitives (e.g., DeFi actions, ARC puzzles), mapping prompts into PASS or ABSTAIN with verifiers and traces. The LLM handles fluency, while the micro-LM enforces guardrails and compliance — the best of both worlds.

Micro-LM Sidecar

A Micro-LM Sidecar can be thought of as a Layer 2 for AI: it doesn’t replace the large language model, but it sits alongside it to improve performance, add safety guardrails, determinism, and auditability. In AI, the LLM is like Layer 1: broad, powerful, but stochastic and sometimes unsafe. A Micro-LM Sidecar is like Layer 2: lightweight, domain-specific, enforcing determinism and safety guardrails, but still “anchored” to the LLM’s fluency and reasoning power.

Request Cycle

User  LLM  /decide {prompt, context, policy}
                            SBERT  PCA  map  θ  guards
                     {approve|reject|abstain, reason, plan, trace_id}
  • LLM explains/asks confirm

  • User confirms

  • LLM → /execute {trace_id, plan}

  • Sidecar re-checks guards → tools (if OK) → finalize trace

Workstream Breakdown

Note

Status icons legend — ✅ Built • 🟡 Partial • 🔴 Planning

Workstream

Component

Status

% Effort

% Done

Description

WDD R&D

WDD

30%

30%

Research, math, validation of Warp → Detect → Denoise (ngf-alpha, DeFi/ARC, proofs).

Core pipeline (R&D)

Micro-LM

15%

13%

SBERT → PCA prototyping, thresholds, datasets.

Core pipeline (Engineering)

Micro-LM

20%

17%

Engineering impl. of SBERT → PCA/θ, integration with WDD-lite.

Domain guards

Micro-LM

10%

8%

HF / LTV / oracle freshness verifiers.

Plans & policies

Micro-LM

5%

4%

Primitive specs, per-class thresholds, policy defaults.

Quickstart harness

Micro-LM

5%

4%

In-process run + JSON outputs.

Tests & canaries

Micro-LM

🟡

5%

3%

Smoke cases, threshold checks.

API layer

Sidecar

🔴

4%

0%

/decide, /execute, schemas.

Orchestrator glue

Sidecar

🔴

2%

0%

Routing, retries, caches.

Observability

Sidecar

🔴

2%

0%

Logs, metrics, /healthz & /version.

Audit trail

Sidecar

🟡

1%

0.3%

Structured traces, IDs.

Ops safety

Sidecar

🟡

1%

0.2%

Warmup, kill-switch, double-gate at execute.

Total % Done ≈ 85% (±5%).

Our first pilots are:

  • ARC Micro-LM → reasoning stress test (Abstraction & Reasoning Corpus).

  • DeFi Micro-LM → finance primitives with verifiers for safety and risk control.

If you are a researcher, developer, or just curious about deterministic AI reasoning, this guide will help you get started quickly.