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@techNmak: Google. Amazon. Microsoft. Netflix. 300+ real ML system design case studies from ~80 companies. I found a repo that bre…

X AI KOLs Timeline · 19h ago Cached

A tweet promoting a GitHub repository containing over 300 real ML system design case studies from major companies like Google, Amazon, Microsoft, and Netflix, aiming to teach how production ML systems are actually built.

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#learning-resource

@vivekgalatage: An Introduction to Distributed Systems by Kyle Kingsbury https://github.com/aphyr/distsys-class…

X AI KOLs Timeline · 2d ago Cached

Kyle Kingsbury shares a free outline for a 16-32 hour distributed systems fundamentals class, covering theory, algorithms, and practical production concerns, with optional labwork via Maelstrom.

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#learning-resource

@tetsuoai: The entire core of a neural network on four cards. Neuron, forward pass, activations, backprop. Learn these four and yo…

X AI KOLs Timeline · 5d ago Cached

A set of four cards covering the core concepts of neural networks: neuron, forward pass, activations, and backpropagation, aimed at helping learners understand how models from perceptrons to transformers work.

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#learning-resource

@neural_avb: TIL about "GPU Mode" They got a youtube series to learn CUDA. Plus a github repo with slides/notebooks. Some lectures a…

X AI KOLs Timeline · 5d ago Cached

GPU Mode is a learning resource featuring a YouTube series, GitHub repo with slides/notebooks, and a practice website for mastering CUDA programming.

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#learning-resource

@WWTLitee: Recommending an awesome thing: codecrafters-io/build-your-own-x Currently 513k+ Stars Simply put, it's a guide to building everything — you can build whatever you want. It's not a tool, but a collection of learning paths for "building wheels from scratch". Write your own database, browser...

X AI KOLs Timeline · 2026-06-09 Cached

Introducing the codecrafters-io/build-your-own-x repository, a collection of tutorials for building various technologies from scratch, helping developers understand underlying principles through hands-on practice.

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#learning-resource

@mylifcc: Can you understand Multi-Agent Swarms even while asleep? Just found an amazing open-source course: AI Engineering from Scratch (v1.0 just released) 503 lessons / 20 phases, from Linear Algebra to...

X AI KOLs Timeline · 2026-06-09 Cached

Introduces an open-source course called 'AI Engineering from Scratch', containing 503 lessons, covering from linear algebra to autonomous swarms, with special emphasis on Agent Engineering and Multi-Agent phases.

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#learning-resource

@syuggupta: Best resource to learn rl from scratch

X AI KOLs Timeline · 2026-06-08 Cached

A tweet recommending the 'Hands-on Modern RL' website as the best resource to learn reinforcement learning from scratch, with a link to a chapter on BipedalWalker.

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#learning-resource

@techNmak: This is the best way to learn how LLMs work. Interactive. 3D. Step-by-step. Covers: → Embedding → Layer Norm → Self-Att…

X AI KOLs Timeline · 2026-06-05 Cached

An interactive 3D step-by-step guide to learning how LLMs work, covering key transformer concepts like embedding, self-attention, and softmax. It recommends a visual approach over reading papers.

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#learning-resource

@LearnWithBrij: MASTER SYSTEM DESIGN SYSTEM DESIGN MASTER TREE │ ├── 1. Fundamentals │ ├── What is System Design │ ├── Functional Requi…

X AI KOLs Timeline · 2026-06-03 Cached

A comprehensive system design master tree covering fundamentals through real-world applications, including architecture patterns, databases, caching, messaging systems, API design, and deployment strategies. Intended as a structured learning guide for software engineers.

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@DanKornas: Want to understand Claude Code? Study the harness, not just the prompts. claude-code-from-scratch is a Python learning …

X AI KOLs Timeline · 2026-05-26 Cached

A Python learning repo that reverse-engineers Claude Code-style agent architecture through 23 incremental sessions, covering planning, subagents, context management, and more.

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#learning-resource

@777BHAVYA: if u want to study llms end to end be it from each componets in llm from the vaswani till now incliding quantization st…

X AI KOLs Timeline · 2026-05-25 Cached

A tweet recommends the Language AI Handbook, a free online resource that covers LLM components from classical NLP to modern transformers, quantization, RL, and safety.

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#learning-resource

@FakeMaidenMaker: Full-Stack AI Engineer Roadmap: From Zero to Math, LLMs, and Agents – Covers Everything. There’s tons of AI material online, but it's all fragmented—one article on fine-tuning, another agent demo, every search yields "Build a RAG in 5 minutes" fast food. A coherent system from math to LLM to agent is nearly impossible to find.

X AI KOLs Timeline · 2026-05-23 Cached

A free, open-source AI engineering curriculum that covers math, LLMs, and agents across 20 phases and 435 lessons in Python, TypeScript, Rust, and Julia, designed to fill gaps in fragmented AI tutorials.

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#learning-resource

@wsl8297: When learning AI, the scariest part is getting stuck at "understanding the theory" and freezing when it's time to write code — not knowing where to start, and unable to find decent practice projects. I unearthed a practical treasure trove on GitHub: AI-Project-Gallery. It collects 30+ high-quality AI projects, covering classic topics like house price prediction and disease classification, as well as hot applications like Gemini chatbot and document generator...

X AI KOLs Timeline · 2026-05-12 Cached

This post shares a curated GitHub repository containing over 30 practical AI projects, covering domains from regression to generative AI, with many end-to-end examples, suitable for learners and developers.

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#learning-resource

@astaxie: Today the group discussed how to learn Harness. For Harness Engineering, I'm studying these two resources: 1. https://github.com/walkinglabs/learn-harness-engineering… to understand the core mechanisms of each Harness…

X AI KOLs Timeline · 2026-05-09 Cached

A project-based course repository on Harness Engineering for AI coding agents, covering environment setup, state management, verification, and control mechanisms to make AI coding agents work reliably. The course synthesizes best practices from OpenAI and Anthropic on building effective harnesses for long-running agents.

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