Browse 22 articles on AI engineering, machine learning, LLMs, MLOps, and modern software development. Written by Misha Lubich, AI Engineer & Technical Leader with experience at Apple, GitHub, and cutting-edge AI startups.
Model Context Protocol is the default shape for tools, data, and agents to talk. But 'works in Cursor on my laptop' is not the same as 'safe behind the corporate gateway at scale.' Here's the engineering checklist for MCP in real systems in 2026.
Category: AI Architecture | Reading time: 3 min | Tags: MCP, API Design, Security, Agents, Production
Industry reports and engineering threads in 2026 all say the same uncomfortable thing: coding agents are everywhere, yet teams still only fully hand off a tiny slice of work. Here's what that gap means for how we design reviews, harnesses, and careers.
Category: Engineering Culture | Reading time: 3 min | Tags: Agentic AI, Claude, Engineering Leadership, AI Tools, Process
Hot takes declared RAG dead. Long-context models were supposed to replace it. But in early 2026, Cursor is shipping RAG pipelines, engineers are still optimizing chunking, and retrieval is evolving — not dying. Here's what's actually happening.
Category: AI Architecture | Reading time: 4 min | Tags: RAG, Long Context, LLM, Architecture
After 6 months of using Cursor as my primary IDE, my velocity has tripled. Here's my setup, workflows, and the features that make traditional editors feel broken.
Category: AI Products | Reading time: 2 min | Tags: Cursor, AI Coding, Developer Tools, IDE, Productivity
CrewAI, AutoGen, and LangGraph promise autonomous agent teams. I deployed all three to production. Here's the unvarnished truth about what works and what's pure marketing.
Category: AI Architecture | Reading time: 2 min | Tags: CrewAI, Multi-Agent, AutoGen, LangGraph, Production
I've tried every AI coding CLI — Aider, Mentat, GPT-Engineer. Claude Code is the first one I trust to make changes across a real codebase without supervision.
Category: AI Products | Reading time: 2 min | Tags: Claude Code, Anthropic, Terminal, AI Coding, Developer Tools
We've gotten incredibly good at building AI systems. We're still terrible at knowing whether they actually work. Evals are the bottleneck nobody's fixing.
Category: MLOps | Reading time: 2 min | Tags: Evaluation, Testing, Quality, MLOps, Best Practices
90% of 'AI-powered' startups are solutions searching for problems. The graveyard of AI products is full of technically brilliant ideas that nobody needed.
Category: AI Products | Reading time: 2 min | Tags: Product, Startups, Strategy, Market Fit
Every company will need fine-tuned models within 18 months. The problem is that 95% of fine-tuning efforts fail because teams treat it like training from scratch.
Category: AI Architecture | Reading time: 2 min | Tags: Fine-Tuning, LLM, Training, Best Practices