// TODO: I’m martinuke0

Welcome to my corner of the internet. This website is a personal blog which I use as a platform to document my learning journey and showcase it for the world to see.

Scaling Real‑Time Agentic Workflows with Distributed Message Queues and Rust Optimization

Introduction Artificial‑intelligence agents are rapidly moving from isolated “assistant” prototypes to agentic workflows—chains of autonomous components that collaborate, react to events, and produce business‑critical outcomes in real time. Think of a fleet of trading bots that ingest market data, a set of customer‑support AI agents that route tickets, or a robotics swarm that processes sensor streams and coordinates actions. These workloads share three demanding characteristics: Low latency – decisions must be made within milliseconds to seconds. High throughput – thousands to millions of messages per second. Reliability & fault tolerance – a single failing agent must not cascade into a system outage. To meet these constraints, many organizations turn to distributed message queues (Kafka, NATS, RabbitMQ, Pulsar, etc.) as the backbone for decoupling producers (the agents) from consumers (the processing workers). Yet the choice of language and runtime matters just as much. Rust—with its zero‑cost abstractions, strict memory safety, and native async support—has emerged as a compelling platform for building high‑performance, low‑latency consumers and producers. ...

March 23, 2026 · 12 min · 2537 words · martinuke0

Optimizing Small Language Models for Local Edge Inference: A Guide to Quantized Architecture

Introduction Large language models (LLMs) have transformed natural‑language processing (NLP) across research and industry. Yet the majority of breakthroughs still rely on cloud‑based GPUs or specialized accelerators. For many applications—smartphones, wearables, industrial sensors, and autonomous drones—sending data to the cloud is impractical due to latency, privacy, or connectivity constraints. Edge inference solves this problem by running models locally, but it also imposes strict limits on memory, compute, and power consumption. ...

March 23, 2026 · 10 min · 2054 words · martinuke0

Beyond Chatbots: Optimizing Local LLMs with Liquid Neural Networks and WebGPU Acceleration

Table of Contents Introduction Why Local LLMs Matter Today Liquid Neural Networks: A Primer 3.1 Core Concepts 3.2 Benefits for Sequential Modeling WebGPU: The Next‑Generation Browser GPU API 4.1 How WebGPU Differs from WebGL 4.2 Performance Characteristics Relevant to LLMs Marrying Liquid Neural Networks with WebGPU 5.1 Architectural Overview 5.2 Data Flow and Memory Management Practical Implementation Guide 6.1 Setting Up the Development Environment 6.2 Implementing a Liquid RNN Cell in WebGPU 6.3 Running a Small‑Scale LLM Locally 6.4 Benchmarking and Profiling Real‑World Use Cases Challenges and Mitigation Strategies Future Outlook Conclusion Resources Introduction Large language models (LLMs) have transformed the way we interact with computers, powering everything from conversational agents to code assistants. Yet, most deployments still rely on cloud‑based inference, a model that raises latency, privacy, and cost concerns. As hardware accelerators become more capable and browsers expose low‑level GPU APIs, a new frontier emerges: running sophisticated LLM inference locally, optimized with cutting‑edge neural architectures such as liquid neural networks and accelerated via WebGPU. ...

March 23, 2026 · 5 min · 1015 words · martinuke0

Architecting Scalable Microservices with Python and Event Driven Design Patterns

Introduction In the era of cloud‑native development, microservices have become the de‑facto standard for building large‑scale, maintainable systems. Yet, simply breaking a monolith into independent services does not automatically guarantee scalability, resilience, or agility. The way these services communicate—how they exchange data and react to change—often determines whether the architecture will thrive under load or crumble at the first spike. Event‑driven design patterns provide a powerful, loosely‑coupled communication model that complements microservices perfectly. By emitting and reacting to events, services can evolve independently, scale horizontally, and maintain strong consistency where needed while embracing eventual consistency elsewhere. ...

March 23, 2026 · 13 min · 2634 words · martinuke0

Understanding Random Walks: Theory, Simulation, and Real-World Applications

Introduction A random walk is one of the most fundamental stochastic processes in probability theory. At its core, it describes a path that consists of a succession of random steps. Despite its deceptively simple definition, the random walk model underpins a surprisingly wide range of phenomena—from the diffusion of particles in physics to stock‑price dynamics in finance, from the spread of diseases in epidemiology to algorithmic techniques in computer science. ...

March 23, 2026 · 8 min · 1636 words · martinuke0
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