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LLM Engineering

50 articles

TLDR: A pretrained LLM is a generalist. Fine-tuning makes it a specialist. Supervised Fine-Tuning (SFT) teaches it your domain's language through labeled examples. LoRA does the same with 99% fewer tr

  • PagedAttention & KV-Cache Optimization: How vLLM Handles Large Scale Inference
  • ANN Index Types Explained: When to Choose Flat, HNSW, IVF, or IVF-PQ
  • RAG vs Fine-Tuning: When to Use Each (and When to Combine Them)
  • Fine-Tuning LLMs with LoRA and QLoRA: A Practical Deep-Dive
  • Build vs Buy: Deploying Your Own LLM vs Using ChatGPT, Gemini, and Claude APIs
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System Design Interview Prep

72 articles

TLDR: Stale reads return superseded data from replicas that haven't yet applied the latest write. Cascading failures turn one overloaded node into a cluster-wide collapse through retry storms and redi

  • System Design: Designing a Financial Ledger with Double-Entry Constraints
  • High-Level Design: Building a Real-Time Ad Click Aggregator at Scale
  • High-Level Design: Scaling a Concert Ticket Booking System under Flash Load
  • System Design: Designing an Autonomous AI Coding Agent (Devin at Scale)
  • System Design for Agentic AI Systems: From Distributed Systems Principles to Production
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Agentic AI: LangChain and LangGraph

16 articles

TLDR: LLMs are stateless β€” every API call starts fresh. LangChain memory classes (Buffer, Window, Summary, SummaryBuffer) explicitly inject history into each call, and RunnableWithMessageHistory is th

  • LangChain Tools and Agents: The Classic Agent Loop
  • LangChain RAG: Retrieval-Augmented Generation in Practice
  • LangChain Memory: Conversation History and Summarization
  • LangChain 101: Chains, Prompts, and LLM Integration
  • From LangChain to LangGraph: When Agents Need State Machines
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