// 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 Verifiable Compute for Decentralized Neural Networks Using Zero Knowledge Proofs and Rust

Introduction The convergence of three powerful trends—decentralized computation, neural network inference, and zero‑knowledge proofs (ZKPs)—is reshaping how we think about trust, privacy, and scalability on the blockchain. Imagine a network where participants can collectively train or infer on a neural model, yet no single party learns the raw data, and every computation can be cryptographically verified without revealing the underlying inputs or weights. Achieving this vision requires solving two intertwined problems: ...

March 9, 2026 · 12 min · 2495 words · martinuke0

Building Distributed Rate Limiters with Redis and the Token Bucket Algorithm

Introduction In modern web services, protecting APIs from abuse, ensuring fair resource allocation, and maintaining a predictable quality‑of‑service are non‑negotiable requirements. Rate limiting—the practice of restricting how many requests a client can make in a given time window—addresses these concerns. While a simple in‑process limiter works for monolithic applications, today’s micro‑service ecosystems demand a distributed solution that works across multiple instances, data centers, and even cloud regions. This article walks you through the complete design and implementation of a distributed rate limiter built on Redis using the Token Bucket algorithm. We’ll cover the theory behind token buckets, why Redis is a natural fit, practical implementation details, edge‑case handling, scaling strategies, and real‑world patterns you can adopt immediately. ...

March 9, 2026 · 12 min · 2544 words · martinuke0

Architecting Real-Time Data Pipelines with Kafka and Flink for High-Throughput Systems

Introduction In the era of digital transformation, organizations increasingly rely on real‑time insights to drive decision‑making, personalize user experiences, and detect anomalies instantly. Building a pipeline that can ingest, process, and deliver massive streams of data with sub‑second latency is no longer a luxury—it’s a necessity for high‑throughput systems such as e‑commerce platforms, IoT telemetry, fraud detection engines, and ad‑tech networks. Two open‑source projects dominate the modern streaming stack: Apache Kafka – a distributed, durable log that excels at high‑throughput ingestion and decoupling of producers and consumers. Apache Flink – a stateful stream processing engine designed for exactly‑once semantics, low latency, and sophisticated event‑time handling. When combined, Kafka and Flink provide a powerful foundation for real‑time data pipelines that can scale to billions of events per day while preserving data integrity and offering rich analytical capabilities. ...

March 9, 2026 · 13 min · 2682 words · martinuke0

Scaling Distributed Systems with Rust and WebAssembly for High‑Performance Cloud‑Native Applications

Introduction The demand for cloud‑native applications that can handle massive workloads with low latency has never been higher. Companies are racing to build services that scale horizontally, stay resilient under failure, and make optimal use of modern hardware. Two technologies have emerged as strong enablers of this new wave: Rust – a systems programming language that guarantees memory safety without a garbage collector, delivering performance comparable to C/C++ while providing a modern developer experience. WebAssembly (Wasm) – a portable binary instruction format originally designed for browsers, now evolving into a universal runtime for sandboxed, high‑performance code across servers, edge nodes, and embedded devices. When combined, Rust and WebAssembly give architects a powerful toolset for building distributed systems that are both fast and secure. This article dives deep into how you can leverage these technologies to: ...

March 9, 2026 · 13 min · 2721 words · martinuke0

Optimizing Local Inference: A Practical Guide to Running Small Language Models on WebGPU

Introduction The rapid democratization of large language models (LLMs) has sparked a new wave of interest in local inference—running models directly on a user’s device rather than relying on remote APIs. While cloud‑based inference offers virtually unlimited compute, it introduces latency, privacy concerns, and recurring costs. For many web‑centric applications—interactive chat widgets, code assistants embedded in IDEs, or offline documentation tools—running a small language model entirely in the browser is an attractive alternative. ...

March 9, 2026 · 17 min · 3596 words · martinuke0
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