Maverick Monk🔥🛡️

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Maverick Monk🔥🛡️

Maverick Monk🔥🛡️

@RavananPerry

Couch researcher

Evergreen, Co شامل ہوئے Eylül 2017
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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Avi Chawla
Avi Chawla@_avichawla·
CPU vs GPU vs TPU vs NPU vs LPU, explained visually: 5 hardware architectures power AI today. Each one makes a fundamentally different tradeoff between flexibility, parallelism, and memory access. > CPU It is built for general-purpose computing. A few powerful cores handle complex logic, branching, and system-level tasks. It has deep cache hierarchies and off-chip main memory (DRAM). It's great for operating systems, databases, and decision-heavy code, but not that great for repetitive math like matrix multiplications. > GPU Instead of a few powerful cores, GPUs spread work across thousands of smaller cores that all execute the same instruction on different data. This is why GPUs dominate AI training. The parallelism maps directly to the kind of math neural networks need. > TPU They go one step further with specialization. The core compute unit is a grid of multiply-accumulate (MAC) units where data flows through in a wave pattern. Weights enter from one side, activations from the other, and partial results propagate without going back to memory each time. The entire execution is compiler-controlled, not hardware-scheduled. Google designed TPUs specifically for neural network workloads. > NPU This is an edge-optimized variant. The architecture is built around a Neural Compute Engine packed with MAC arrays and on-chip SRAM, but instead of high-bandwidth memory (HBM), NPUs use low-power system memory. The design goal is to run inference at single-digit watt power budgets, like smartphones, wearables, and IoT devices. Apple Neural Engine and Intel's NPU follow this pattern. > LPU (Language Processing Unit) This is the newest entrant, by Groq. The architecture removes off-chip memory from the critical path entirely. All weight storage lives in on-chip SRAM. Execution is fully deterministic and compiler-scheduled, which means zero cache misses and zero runtime scheduling overhead. The tradeoff is that it provides limited memory per chip, which means you need hundreds of chips linked together to serve a single large model. But the latency advantage is real. AI compute has evolved from general-purpose flexibility (CPU) to extreme specialization (LPU). Each step trades some level of generality for efficiency. The visual below maps the internal architecture of all five side by side, and it was inspired by ByteByteGo's post on CPU vs GPU vs TPU. I expanded it to include two more architectures that are becoming central to AI inference today. 👉 Over to you: Which of these 5 have you actually worked with or deployed on? ____ Find me → @_avichawla Every day, I share tutorials and insights on DS, ML, LLMs, and RAGs.
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Dhairya
Dhairya@dkare1009·
Most $1000 AI/ML courses don't teach you how to actually build. These 16 repos do. These repos include real projects, working code, and step-by-step guides to help you build actual skills. P.S. I share such repos and tutorials with 200K+ AI/ML Engineers here: lnkd.in/dcibJhzQ 1:// Machine Learning for beginners by Microsoft (84.3k ⭐) lnkd.in/gggwDP9h 2:// 100 days of ML coding (49.8k ⭐) lnkd.in/gyBQF3dv 3:// All algorithms implemented in Python (219k ⭐) lnkd.in/gdeUgjsi 4:// Mathematics for Machine Learning (15.1k ⭐) lnkd.in/g_TYTu5J 5:// Made with ML (46.7k ⭐) lnkd.in/gMvyzFgK 6:// 60+ implementations of Deep Learning papers (65.9k ⭐) lnkd.in/gR4aC2GQ 7:// Neural Networks: Zero to Hero (20.8k ⭐) lnkd.in/gnusqKFa 8:// Hands-On LLMs book (23.4k ⭐) lnkd.in/gT3diSRV 9:// Prompt Engineering guide (71.5k ⭐) lnkd.in/gmYzhDY7 10:// AI Agents for Beginners by Microsoft (53.9k ⭐) lnkd.in/ghGHGiMk 11:// Generative AI Agent techniques (20.5k ⭐) lnkd.in/gq-c7URx 12:// RAG techniques (25.9k ⭐) lnkd.in/g5j3ksRA 13:// Data Science to learn and apply for real world problems (28.6k ⭐) lnkd.in/gFXr4msv 14:// Awesome Natural Language Processing (18.2k ⭐) lnkd.in/gW9jBJcM 15:// Awesome Reinforcement Learning (9.6k ⭐) lnkd.in/gyXtXQhc 16:// All Reinforcement Learning algorithms from scratch (1.4k ⭐) lnkd.in/g8SdWKJU
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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Neo Kim
Neo Kim@systemdesignone·
I struggled with AI engineering until I learned these 10 concepts (not joking): 1 How RAG Works ↳ newsletter.systemdesign.one/p/how-rag-works 2 LLM Concepts - A Deep Dive ↳ newsletter.systemdesign.one/p/llm-concepts 3 How to Design an AI Agent ↳ newsletter.systemdesign.one/p/how-do-ai-ag… 4 What is Reinforcement Learning ↳ newsletter.systemdesign.one/p/what-is-rein… 5 Context Engineering vs Prompt Engineering ↳ newsletter.systemdesign.one/p/context-engi… 6 Context Engineering 101 ↳ newsletter.systemdesign.one/p/what-is-cont… 7 AI Coding Workflow 101 ↳ newsletter.systemdesign.one/p/ai-coding-wo… 8 How ChatGPT Apps Work ↳ newsletter.systemdesign.one/p/apps-in-chat… 9 How AI Agents Work ↳ newsletter.systemdesign.one/p/ai-agents-ex… 10 How MCP Works ↳ newsletter.systemdesign.one/p/how-mcp-works What else should make this list? —— 👋 PS - Want my System Design Playbook for FREE? Join my newsletter with 200K+ software engineers: → newsletter.systemdesign.one/join ——— 💾 Save this for later & RT to help others learn AI engineering. 👤 Follow @systemdesignone + turn on notifications.
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Nainsi Dwivedi
Nainsi Dwivedi@NainsiDwiv50980·
Most people learning AI in 2026 are watching random YouTube videos. Meanwhile, a full AI curriculum just dropped — from prompting → transformers → agentic LLMs → evaluation. And it's all FREE. Here’s the complete roadmap (don’t lose this): CS50x 2025 AI Lecture — lnkd.in/qyFKmevZ AI and Prompt Engineering — lnkd.in/qNV_FNDF Introduction to Generative AI — lnkd.in/gpvypG5h Prompt Engineering — lnkd.in/qiYx_Uhf System Prompts and RAG — lnkd.in/q3tZbNpS When and How to Use GenAI — lnkd.in/qKGfHvSv GenAI in Teaching and Learning — lnkd.in/gD_Nb3EJ 5 Step Prompting Guide — lnkd.in/gcPNxevW Transformer Fundamentals — lnkd.in/gaaRDexT Transformer Models + Practical Tricks — lnkd.in/qy4FUwNY Transformers → Large Language Models — lnkd.in/gsPiCrEU How LLMs Are Trained — lnkd.in/qvHJvgqP Tuning & Adaptation — lnkd.in/g6kqtPKR Reasoning in LLMs — lnkd.in/gAACSU66 Agentic LLMs — lnkd.in/gVm6js9z Evaluation: what “good” really means — lnkd.in/gJhbFQ4s Recap + What’s trending now — lnkd.in/g5JMNTSf Free Courses: Generative AI for Beginners — lnkd.in/dTPBrQb4 NVIDIA Developer Program — lnkd.in/ejMfdtuS ML & AI Training (FREE tracks) — lnkd.in/eUP8zNik This is basically: Prompting → RAG → Transformers → LLMs → Agents → Evaluation → Production Everything in one place. Bookmark this before it disappears. Retweet to save someone 100+ hours of searching.
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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Vikas Singh
Vikas Singh@vikas_ai_·
Here are the 5 best GitHub repositories to learn AI Engineering in 2026: 1. Awesome Machine Learning github.com/josephmisiti/a… 2. Full Stack Deep Learning github.com/full-stack-dee… 3. LangChain github.com/langchain-ai/l… 4. LlamaIndex github.com/run-llama/llam… 5. Hugging Face Transformers github.com/huggingface/tr… Comment "Git" if you find this helpful. Repost so others can benefit.
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Leonard Rodman
Leonard Rodman@RodmanAi·
20 Backend Development Full Courses for 2026: 1. Git youtube.com/watch?v=zTjRZN… 2. Java + Spring Boot youtube.com/playlist?list=… 3. Node.js youtube.com/watch?v=f2EqEC… 4. REST API youtube.com/playlist?list=… 5. GraphQL API youtube.com/watch?v=UYQSVH… 6. gRPC youtube.com/watch?v=MCwgV9… 7. Webhooks youtube.com/watch?v=41NOoE… 8. Authentication youtube.com/watch?v=WPiqND… 9. Payment Gateway Integration youtube.com/playlist?list=… 10. Stripe Payment Integration youtube.com/watch?v=fgbEwV… 11. PayPal Integration youtube.com/watch?v=DNM9Fd… 12. PhonPe Integration youtube.com/playlist?list=… 13. Razorpay Integration youtube.com/watch?v=w3ogBC… 14. Express.js youtube.com/watch?v=nH9E25… 15. Kafka youtube.com/watch?v=B7CwU_… 16. Redis youtube.com/watch?v=-Ai7GD… 17. Docker youtube.com/watch?v=RqTEHS… 18. Kubernetes youtube.com/watch?v=2T86xA… 19. Design Patterns youtube.com/playlist?list=… 20. Backend Complete Course youtube.com/watch?v=g09Poi…
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Sadhguru
Sadhguru@SadhguruJV·
Once you see the limitations in which you exist, a natural longing to Go Beyond them arises – and that is your biggest fortune. #SadhguruQuotes
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Google Research
Google Research@GoogleResearch·
Introducing TurboQuant: Our new compression algorithm that reduces LLM key-value cache memory by at least 6x and delivers up to 8x speedup, all with zero accuracy loss, redefining AI efficiency. Read the blog to learn how it achieves these results: goo.gle/4bsq2qI
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Kshitij Mishra | AI & Tech
Kshitij Mishra | AI & Tech@DAIEvolutionHub·
Best GitHub Repos to Learn AI From Scratch in 2026: Most people trying to learn AI in 2026 are stuck in tutorial hell. Random videos. No structure. No real depth. Meanwhile, these GitHub repos can take you from zero → building real AI systems (for FREE): Andrej Karpathy – Neural Networks: Zero to Hero github.com/karpathy/nn-ze… Hugging Face Transformers github.com/huggingface/tr… fast.ai Practical Deep Learning (fastbook) github.com/fastai/fastbook Made With ML github.com/GokuMohandas/M… ML Systems Design github.com/chiphuyen/mach… Awesome Generative AI Guide github.com/aishwaryanr/aw… Dive into Deep Learning github.com/d2l-ai/d2l-en Stop consuming. Start building. Bookmark this before you forget.
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Shruti Codes@Shruti_0810

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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Matt Dancho (Business Science)
AI Engineering Toolkit A curated list of 100+ LLM libraries and frameworks for training, fine-tuning, building, evaluating, deploying, RAG, and AI Agents. 100% Open Source
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Swapna Kumar Panda
Swapna Kumar Panda@swapnakpanda·
FREE Mathematics Courses for Beginners in 2026: 1. Prealgebra youtube.com/playlist?list=… 2. Precalculus youtube.com/playlist?list=… 3. Algebra youtube.com/playlist?list=… 4. Calculus youtube.com/playlist?list=… 5. Calculus youtube.com/playlist?list=… 6. Linear Algebra youtube.com/playlist?list=… 7. Linear Algebra youtube.com/playlist?list=… 8. Geometry youtube.com/playlist?list=… 9. Trigonometry youtube.com/playlist?list=… 10. Statistics youtube.com/playlist?list=… 11. Probability youtube.com/playlist?list=… 12. Probability & Statistics youtube.com/playlist?list=… 13. Limits youtube.com/playlist?list=… 14. Derivatives youtube.com/playlist?list=… 15. Integrals youtube.com/playlist?list=…
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Utkarsh Sharma
Utkarsh Sharma@techxutkarsh·
This GitHub repo isn’t a tutorial dump. It contains 28 production-ready AI projects you can actually use. Here’s what you’ll find inside: Machine Learning Projects → Airbnb price prediction → Flight fare calculator → Student performance tracker AI for Healthcare → Chest disease detection → Heart disease prediction → Diabetes risk analyzer Generative AI Applications → Live Gemini chatbot → Working medical assistant → Document analysis tool Computer Vision Projects → Hand tracking system → Medicine recognition app → OpenCV implementations Data Analysis Dashboards → E-commerce insights → Restaurant analytics → Cricket performance tracker And 10 advanced projects coming soon: → Deepfake detection → Brain tumor classification → Driver drowsiness alert system This isn’t just code files. These are end-to-end, working applications. Explore the Repo here: github.com/KalyanM45/AI-P… Save it for later. Repost ♻️ if you’re building with AI. Check my profile for more AI resources 👋
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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Vaishnavi
Vaishnavi@_vmlops·
If you're prepping for AI/ML engineer interviews, bookmark this now A free GitHub repo with 300+ Q&As covering: ◾️ LLM fundamentals ◾️ RAG pipelines ◾️ AI agents & MCP ◾️ Fine-tuning (LoRA, QLoRA, RLHF) ◾️ Vector DBs & embeddings ◾️ LLMOps & production AI ◾️ AI safety & ethics ◾️ System design questions covers roles like AI engineer, LLMOps, MLOps, AI solutions architect and more github.com/amitshekhariit…
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Maverick Monk🔥🛡️ ری ٹویٹ کیا
Nainsi Dwivedi
Nainsi Dwivedi@NainsiDwiv50980·
Most software engineers are ~2 weeks away from understanding the entire AI frontier. They just don’t know it yet. Here’s the actual roadmap — papers, videos, and resources that matter (no fluff): Start Here (Your Foundation) → Neural Networks → LLM series (best single intro) → Build a LLM from Scratch → Karpathy: Zero to Hero Survey Papers (Read first, then go deep) → LLM Survey (2024) → Post-Training Survey (2024) → Agent Survey (2023) → Prompt Engineering Survey (2024) → Context Engineering Survey (2025) These give you the map of the entire field in a few hours. Foundational Papers (Must Read) → Transformers — the paper that started everything (2017) → Scaling Laws / GPT-3 — why bigger models work (2020) → RLHF — how ChatGPT was aligned (2022) → LoRA — cheap fine-tuning (2021) → DPO — alignment without reward models (2023) → MoE — how frontier models scale (2024) Read these and you understand modern AI architecture. Reasoning & Planning (Where frontier models compete) → AlphaZero / MuZero — RL from zero knowledge → Chain-of-Thought / Tree-of-Thought / Graph-of-Thought → DeepSeek R1 — RL-only reasoning breakthrough → ARC-Prize — measuring real intelligence This is where o1-style models come from. Real-World Applications → Llama 3 — Meta’s frontier OSS model → DeepSeek v3 — SOTA at ultra-low cost → SWE-Agent / OpenHands — AI writing production code This is AI actually doing work. Videos Worth Your Time → Andrej Karpathy — Zero to Hero → 3Blue1Brown — math intuition for deep learning → Noam Brown — planning in reasoning models → Build an LLM from scratch (full walkthrough) The AI frontier isn’t gated by a PhD. It’s gated by ~2 weeks of focused curiosity. Save this. Study it. You're closer than you think.
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Utkarsh Sharma
Utkarsh Sharma@techxutkarsh·
BREAKING: MIT just mass released their Al library for free. (Links included) I went through these and honestly... this is better than most paid courses I've seen. Here's the full list of books: Foundations 1. Foundations of Machine Learning Core algorithms explained. Theory meets practice. 2. Understanding Deep Learning Neural networks demystified. Visual explanations included. 3. Machine Learning Systems Production-ready architecture. System design principles. Advanced Techniques 4. Algorithms for ML Computational thinking simplified. Decision-making frameworks. 5. Deep Learning The definitive textbook. Covers everything deeply. Reinforcement Learning 6. RL Basics (Sutton & Barto) The classic. Agent training fundamentals. 7. Distributional RL Beyond expected rewards. Advanced theory. 8. Multi-Agent Systems Agents working together. Coordination and competition. 9. Long Game Al Strategic agent design. Future-focused thinking. Ethics & Probability 10. Fairness in ML Bias detection. Responsible Al practices. 11. Probabilistic ML (Part 1 & 2) Links: lnkd.in/gkuXuexa Most people pay thousands for bootcamps that teach half of this. Bookmark it. Start anywhere. Just start. Repost for others Follow for more insights on Al Agents. MIT's books on Al Foundations 1. Foundations of Machine Learning - lnkd.in/gytjT5HC 2. Understanding Deep Learning - lnkd.in/dgcB68Qt 3. Machine Learning Systems - lnkd.in/dkiGZisg Advanced Techniques 4. Algorithms for ML - algorithmsbook.com 5. Deep Learning - lnkd.in/g2efT6DK Reinforcement Learning 6. RL Basics (Sutton & Barto) - lnkd.in/guxqxcZZ 7. Distributional RL - lnkd.in/d4eNP-pe 8. Multi-Agent Systems - marl-book.com 9. Long Game Al - lnkd.in/g-WtzvwX Ethics & Probability 10. Fairness in ML - fairmlbook.org 11. Probabilistic ML (Part 1) - lnkd.in/g-isbdjj 12. Probabilistic ML (Part 2) - lnkd.in/gJE9fy4w
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Kshitij Mishra | AI & Tech
Kshitij Mishra | AI & Tech@DAIEvolutionHub·
This will save you 50+ hours if you use Claude Code. Most people use it like a chatbot. Power users build systems with it. Here are 9 GitHub repos that turn Claude into a real dev teammate: Superpowers github.com/obra/superpowe… Awesome Claude Code github.com/hesreallyhim/a… GSD (Get Shit Done) github.com/gsd-build/get-… Claude Mem github.com/thedotmack/cla… UI UX Pro Max github.com/nextlevelbuild… n8n-MCP github.com/czlonkowski/n8… Obsidian Skills github.com/kepano/obsidia… LightRAG github.com/hkuds/lightrag Everything Claude Code github.com/affaan-m/every… Steal these. Ship faster. Look 10x smarter than everyone else.
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Shruti Codes@Shruti_0810

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Maverick Monk🔥🛡️ ری ٹویٹ کیا
ZARA
ZARA@HeyZaraKhan·
Become a Claude Certified Architect Here is the complete resource list in one place: Link to join: anthropic.skilljar.com/claude-certifi… Training courses: anthropic.skilljar.com (13 free courses) Cookbook: github.com/anthropics/ant… Exam Guide: share.google/0eqIbebzRMUt8K… Practice questions: claudecertifications.com (free) MCP documentation: modelcontextprotocol.io (free) API documentation: docs.anthropic.com (free) Partner Network: anthropic.com/partners (free to join) Personal Playbook someone created after the exam: drive.google.com/file/d/1luC0rn…
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ZARA@HeyZaraKhan

🚨BREAKING: Anthropic just open-sourced a powerful new framework for building AI agents and made it publicly available in a GitHub directory. It’s called “Skills” and it redefines how we work with Claude. Instead of repeating prompts, developers can now create reusable “skills” that package instructions, workflows, and logic into a single unit. A Skill = a structured capability an AI can reliably execute. For example: • Analyze datasets and generate reports • Create structured documents • Automate multi-step workflows • Execute internal business processes Each skill is: • Modular, reusable across projects • Versioned, continuously improvable • Dynamically loaded, used only when needed This solves key problems in today’s AI systems: → Repetitive prompting → Inconsistent outputs → Limited scalability The bigger shift: From: “Prompt engineering” To: “Programmable, reusable AI systems” This is a foundational step toward more reliable, production-ready AI agents. If you're building with AI, this is worth your attention.

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