Ziak / Independent AI Engineering Lab

Forging AI that pulls the future forward.

Ziak is a solo AI engineering lab. We build frontier tools, experiments, and systems at the edge of what's possible, without the noise.

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Our portfolio

Our tools don't just enter markets. They define them.

Cognitive Engine Alpha

A reinforcement learning agent capable of autonomous resource allocation in simulated edge environments. Uses neural symbolic architecture to reason about unseen parameters.

PythonPyTorchRust
Website

Quantum Key Protocol

Theoretical framework and simulation tool for quantum key distribution (QKD) over dynamic fiber networks suffering from intermittent noise and decibel loss.

GoQiskitNext.js
Website

Xeno-Vision Pipeline

High-throughput computer vision pipeline for detecting anomalies in high-speed satellite imagery in raw binary form, built primarily for low-earth-orbit deployments.

C++TensorRTOpenCV
Website
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Research Lab

Living research, always evolving. A transparent look into our experimental models.

01

Dark Data Scraper

Unstructured dark web data aggregator using localized BERT transformers to categorize threat intelligence instantly.

Prototype
02

LLM Self-Reflection Loops

Testing if iterative self-reflection inside confined execution environments improves structural code generation accuracy in deep learning models.

Active
03

Temporal Graph Embeddings

Mapping financial transaction networks via spatial-temporal graph structures to proactively identify laundering clusters.

Active
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Insights

Thoughts on AI, engineering, systems design, and working at the frontier.

01

Designing The Ziak Identity

A retrospective on branding an AI lab focused on monolithic structures and zero-gravity UI concepts.

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02

Scaling Distributed Neural Networks

An analysis of parallelizing weight updates across globally disjointed nodes via asynchronous federated learning.

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03

Why Rust is the Default for AI Systems Engineering

Memory safety and concurrency are not luxuries when building massive infrastructure for language models.

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