// 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.

Optimizing Distributed Task Queues for High Performance Large Language Model Inference Systems

Introduction Large Language Models (LLMs) such as GPT‑4, LLaMA, and Claude have moved from research prototypes to production‑grade services that power chatbots, code assistants, and enterprise knowledge bases. In a production environment the inference workload is fundamentally different from training: Low latency is critical – users expect sub‑second responses for interactive use cases. Throughput matters – batch processing of millions of requests per day is common in analytics pipelines. Resource utilization must be maximized – GPUs/TPUs are expensive, and idle hardware directly translates to cost overruns. At the heart of any high‑performance LLM inference service lies a distributed task queue that routes requests from front‑end APIs to back‑end workers that execute the model on specialized hardware. Optimizing that queue is often the single biggest lever for improving latency, throughput, and reliability. ...

March 7, 2026 · 12 min · 2386 words · martinuke0

Event Sourcing and CQRS: Building Resilient Data Architectures for Modern Distributed Systems

Table of Contents Introduction Core Concepts 2.1. What Is Event Sourcing? 2.2. What Is CQRS? Why Combine Event Sourcing and CQRS? Designing a Resilient Architecture 4.1. Event Store Selection 4.2. Command Side Design 4.3. Query Side Design 4.4. Event Publishing & Messaging Practical Implementation Example 5.1. Domain Model: Order Management 5.2. Command Handlers 5.3. Event Handlers & Projections 5.4. Sample Code (C# with EventStoreDB & MediatR) Operational Concerns 6.1. Event Versioning & Schema Evolution 6.2. Idempotency & Exactly‑Once Processing 6.3. Consistency Models 6.4. Testing Strategies 6.5. Monitoring & Observability Real‑World Case Studies Best‑Practice Checklist Conclusion Resources Introduction Modern distributed systems must cope with high traffic volumes, evolving business rules, and ever‑changing infrastructure. Traditional CRUD‑centric designs often become brittle under these pressures: they mix read and write concerns, hide domain intent, and make scaling unpredictable. ...

March 7, 2026 · 9 min · 1907 words · martinuke0

The Rise of Small Language Models: Optimizing Local Inference for Edge Device Privacy

Table of Contents Introduction From Giant to Petite: Why Small LMs Matter 2.1. The Scaling Paradox 2.2. Edge‑centric Use Cases Privacy at the Edge: The Core Motivation Technical Toolbox for Optimizing Small LMs 4.1. Quantization 4.2. Pruning & Structured Sparsity 4.3. Knowledge Distillation 4.4. Efficient Architectures 4.5. Hybrid Approaches Practical Walk‑through: Deploying a 7 B Model on a Raspberry Pi 4 5.1. Environment Setup 5.2. Model Selection & Compression 5.3. Running Inference with ONNX Runtime 5.4. Benchmark Results Ecosystem of Tools & Frameworks Real‑World Deployments & Success Stories Open Challenges & Future Directions Conclusion Resources Introduction Large language models (LLMs) such as GPT‑4, Claude, and LLaMA have reshaped natural language processing (NLP) by demonstrating unprecedented capabilities in generation, reasoning, and code synthesis. Yet the very size that fuels their performance—hundreds of billions of parameters—poses a logistical nightmare for on‑device deployment. ...

March 6, 2026 · 12 min · 2449 words · martinuke0

Building the Future of Global Workforce Management: Lessons from Deel’s Activity Feed

Introduction The pandemic‑era shift to remote and distributed teams has turned people platforms from niche HR tools into the central nervous system of modern enterprises. Companies now need a single pane of glass that can hire, onboard, pay, and manage compliance for workers spread across dozens of jurisdictions. One of the most visible manifestations of this new reality is the activity feed—the stream of notifications, alerts, and status updates that keep every stakeholder informed in real time. Deel’s public “Notification Hub” (the activity feed you see after logging into their platform) is a compelling example of how a well‑engineered feed can become a productivity multiplier for a global workforce. ...

March 6, 2026 · 14 min · 2888 words · martinuke0

Mastering Claude Code: Advanced Workflows for Production-Ready AI Development in 2026

Mastering Claude Code: Advanced Workflows for Production-Ready AI Development in 2026 In the fast-evolving world of AI-assisted coding, Claude Code stands out as a terminal-native powerhouse from Anthropic, enabling developers to write, refactor, and orchestrate complex projects with unprecedented project awareness. This isn’t just another code completion tool—it’s a full-fledged AI collaborator that thrives on structured prompts, custom agents, and workflow orchestration. Drawing from cutting-edge repositories and real-world implementations, this guide reimagines Claude Code best practices for 2026, blending plan-execute-refine cycles, sub-agent delegation, and Git-integrated safety nets to supercharge your productivity.[1][2] ...

March 6, 2026 · 7 min · 1345 words · martinuke0
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