CAGE: 1ZW34 | UEI: XWBNKNN7AYL9 | NAICS: 541511 · 541512 | SAM.gov Active | Small Business
TQW Solutions delivers AI systems that work in the real world — not just the lab. We specialize in production-grade, mission-critical AI for government and defense environments where failure is not an option. Our Zero-Gap methodology closes the gap between research and deployment, delivering verified, audit-ready solutions with demonstrated 95% production accuracy.
Trained directly under Kent Beck in Extreme Programming — year 2000. Architected one of Canada's first full CI/CD deployments on a 40-person mission-critical healthcare system. Zero-defect delivery discipline on every engagement.
Built to solve the problem that kills most AI projects: the gap between research and production. Proven in live algorithmic trading where a bug costs real money in milliseconds. What you test is exactly what ships — every time.
Private 8-node cluster — AMD Ryzen 7950X, 128GB RAM, RTX 4090 per node. No cloud dependency. No data exposure. Air-gap capable. Distributed training, simulation and backtesting available on-demand for every engaged project.
Tier-1 global RoRo logistics operations generate massive volumes of work orders logged across dozens of terminals — sparse, short-text entries, often just two to four words, written in English, Spanish, and French, saturated with localized jargon and cryptic abbreviations. The mission: classify every work order into a unified corporate taxonomy of 400+ distinct classes, in real time, at enterprise scale.
Standard RAG and LLM architectures were evaluated and failed — stalling at 70% accuracy. Three compounding factors made this problem exceptionally hard:
generative models lack the domain grounding to resolve cryptic terminal abbreviations;
hard taxonomy boundaries require precise discrimination, not generation — LLMs hallucinate at these edges;
severe class imbalance across 400 categories meant the model saw thousands of examples of common work orders and almost none of rare but operationally critical ones.
No off-the-shelf architecture handles all three simultaneously. The client's own expert-estimated ceiling for human performance on this dataset: 80%.
TQW Solutions applied a methodology no generalist AI vendor could replicate: transferring deep expertise in high-frequency financial time-series classification — where signal is sparse, noise is extreme, and precision is non-negotiable — directly into the maritime domain.
The result was a custom Zero-Gap semantic classifier: a specialized ensemble model with smart sampling to manage class imbalance, engineered specifically to succeed where generalized LLMs fail. Fully deployed in a production Azure environment. Zero manual intervention.
Production accuracy: 95%+ — surpassing the client's expert-estimated performance ceiling of 80% and every LLM baseline evaluated.
By integrating the classifier directly into the corporation's central enterprise system, TQW eliminated operational data silos and delivered a real-time Common Operating Picture (COP) across operations, finance, and executive leadership — transforming chaotic field data into reliable, audit-ready business intelligence.