1. Machine Learning Specialization. Break Into AI with this... 3-course program by Andrew Ng. What You’ll learn: → Build ML models → Train neural networks → Deep reinforcement learning → Unsupervised learning techniques 🔗show more

Abhishek
364,326 görüntüleme • 1 yıl önce
1. Machine Learning Specialization Break into AI with this... 3-course program by Andrew Ng. What you’ll learn: → Build machine learning models → Train neural networks → Deep reinforcement learning → Unsupervised learning techniques 🔗show more

Amit
55,462 görüntüleme • 7 ay önce
THIS APP IS CRAZY. Coursiv is generating $200K/month by... teaching how to use AI. It turns learning complex AI tools into an income-generating journey. It uses deep personalization, interactive learning, and smart monetization. Breaking it down 👇🧵 (1/19)show more

Siro
121,965 görüntüleme • 1 yıl önce
Unlock the power of Machine Learning in Sports Sciences... with our free articles! Learn about the latest trends and techniques in this exciting field. #AI #Data #Science Routledge Sport, Leisure, and Tourism Taylor & Francis Research Insights Taylor&Francis News An overview🧵:show more

Journal of Sports Sciences
30,726 görüntüleme • 3 yıl önce
Haven't been to a conference in a while, really... excited to be at #NeurIPS2024! I'll be helping present 4 of our group's recent papers: 1. Overcoming the Sim-to-Real Gap: Leveraging Simulation to Learn to Explore for Real-World RL 2. Distributional Successor Features Enable Zero-Shot Policy Optimization 3. Learning to Cooperate with Humans using Generative Agents 4. Personalizing Reinforcement Learning from Human Feedback with Variational Preference Learning Find more details on each paper and where to find us in this thread (1/6)show more

Abhishek Gupta
10,803 görüntüleme • 1 yıl önce
This Quant bot turned $1.4K → $203K in 3... months using a self-trained ML model i traced his 55K predictions → uploaded into Codex 5.5 → connected Hermes agent installed it on a VPS + connected Binance + Synth ML models API 3 days → 343% ROI run trading agent in 5 steps: • rent a VPS on Hetzner - $5.99 • install Hermes CLI using one-liner code - free • connect Codex 5.5 + TG bot + Polymarket API • provide Synth Data API's for crypto predictions • sent Hermes step-by-step prompts from article start small 1-2$ give Hermes least {50-100} trades to build self-learning skills based on Synth ML models self-learning agent + crypto predictions models = best combination for building algo-trading setup bot profile: s tart copy-trading it with even with $5 using Ares: read full article below to build your first trading agent ↓show more

Movez
28,459 görüntüleme • 2 ay önce
7. Learning new skills or mastering a new subject... Mega prompt: You are an expert educator specializing in [SUBJECT AREA]. Create a personalized learning plan for mastering [SKILL] in [TIMEFRAME]. My current level: [BEGINNER/INTERMEDIATE/ADVANCED] My goal: [WHAT I WANT TO ACHIEVE] Time available: [HOURS PER WEEK] Learning style: [HANDS-ON/READING/VIDEO/MIXED] Provide: 1. Learning roadmap with clear milestones 2. Week-by-week curriculum 3. Resources (free and paid) with links 4. Practice projects that build real skills 5. Common pitfalls and how to avoid them 6. Ways to validate learning (tests, projects, certifications) 7. 5 specific exercises I can do today Make it practical. I want to DO things, not just consume content. Context: [WHY YOU'RE LEARNING THIS, YOUR BACKGROUND]show more

Louis Gleeson
143,922 görüntüleme • 7 ay önce
THIS GUY NAVIGATES HIS MIND PALACE WITH HAND GESTURES... AND IT LOOKS INSANE deep learning, machine learning, anthropic, openai all floating in 3d space and he just waves his hand to move through the graph this is what karpathy was describing when he said knowledge should compound and connect instead of sitting in flat markdown files your second brain should feel like a place you can walk through not a search bar you type intoshow more

leopardracer
15,297 görüntüleme • 21 gün önce
I created this desk calendar as a source of... inspiration for anyone learning AI in 2026. It includes 24 AI algorithms and architectures, all drawn and calculated by hand. ✍️ 𝗝𝗮𝗻𝘂𝗮𝗿𝘆: [1] Matrix Multiplication; [2] Discrete Fourier Transform (DFT) 𝗙𝗲𝗯𝗿𝘂𝗮𝗿𝘆: [3] Support Vector Machine (SVM); [4] Vector Database 𝗠𝗮𝗿𝗰𝗵: [5] Multi-Layer Perceptron (MLP); [6] Backpropagation 𝗔𝗽𝗿𝗶𝗹: [7] Batchnorm; [8] Dropout 𝗠𝗮𝘆: [9] Recurrent Neural Network (RNN); [10] Long-Short Term Memory (LSTM) 𝗝𝘂𝗻𝗲: [11] Residual Network (ResNet); [12] Graph Convolutional Network (GCN) 𝗝𝘂𝗹𝘆: [13] Autoencoder; [14] Variational Autoencoder (VAE) 𝗔𝘂𝗴𝘂𝘀𝘁: [15] Generative Adversarial Network (GAN); [16] U-Net 𝗦𝗲𝗽𝘁𝗲𝗺𝗯𝗲𝗿: [17] Transformer; [18] Self Attention 𝗢𝗰𝘁𝗼𝗯𝗲𝗿: [19] Reinforcement Learning with Human Feedback (RLHF); [20] Contrastive Language-Image Pre-training (CLIP) 𝗡𝗼𝘃𝗲𝗺𝗯𝗲𝗿: [21] Diffusion Transformer; [22] Switch Transformer 𝗗𝗲𝗰𝗲𝗺𝗯𝗲𝗿: [23] Sparse Autoencoder; [24] BitNetshow more

Tom Yeh
14,246 görüntüleme • 8 ay önce
What happens when you stop guessing and let machine... learning read the market for you? $2.2M in 4 months. ilovecircle built something different on Polymarket. Not a speed bot. Not a spread farmer. An AI system that actually thinks. 1,347 predictions. 74% win rate. Biggest single hit: $258.4K. Current positions: basically zero he extracted everything. The setup: 10 machine learning models running in parallel, each trained on news feeds and social media data. They don't predict events they predict when the crowd is wrong about probabilities. Market prices an outcome at 50 cents. His ensemble says the real odds are 60%. That gap is the trade. Every week the models retrain themselves on fresh data. The edge evolves because the system never stops learning. Most traders react to headlines. This wallet front runs the market's understanding of what headlines actually mean. 51K people watching now. Most still think AI trading is a scam until they see a curve like this. → Following wallets that run AI-powered probability models is simpler with PMX.show more

Carver
13,072 görüntüleme • 5 ay önce
🧐 Fun Fact: Ever wonder what's behind our name... —OptimAI Network? "OP" stands for "Optimize," and "I" stands for "Intelligence" (AI). Now look closer at our logo—what do you see? Pi (π) transforming effortlessly into AI. In OptimAI, Pi is AI, and AI is Pi—representing an infinite cycle of data-driven learning, intelligence, and optimization. ⭐️Join OptimAI Lite Node program now: + Chrome Extension Node: + Telegram Node: 💡Every OptimAI Node you run helps build our #DePIN Reinforcement Data Network—mining data, fueling intelligent AI agents, and forming an endless loop of improvement. Keep connecting the dots with us—Mine Data, Fuel AI, Earn Rewards. Let's optimize intelligence together!show more

OptimAI Network
89,563 görüntüleme • 1 yıl önce
I’m excited to announce the launch of @Span_Platform’s AI... Code Detector! 🚀 We all know how transformative AI coding assistants have been, but it's still hard to know what's AI vs. not & what impact it's ultimately having on quality, velocity, and security. Now you can with Span—powered by our machine learning model, span-detect-1, which detects AI-generated code with an industry-best 95% accuracy. We can’t wait to see how this helps engineering leaders who want to lead with hard data, not hype. Try it out today—completely free.show more

Jared Erondu
88,888 görüntüleme • 10 ay önce
1/ Public blockchains are transparent by design, which is... great for trust but creates major challenges for sensitive applications like AI, DeFi, and secure data sharing. Without strong privacy guarantees, institutions avoid blockchains, DeFi traders get front-run, and private machine learning models cannot be deployed securely. Arcium pioneers Privacy 2.0, enabling secure, collaborative encrypted computation directly on-chain. In this deep dive, we will explore how Arcium works and why Privacy 2.0 is a critical evolution in blockchain privacy. ☂️🧵↓show more

Solana Insiders 🔬
643,507 görüntüleme • 1 yıl önce
It's been incredible to see neural networks working so... well on our humanoid robots Humanoids are crazy complex - an individual motor can rotate 360 degrees and you have 40+ joints. If you do the math, that means more possible robot states than atoms in the universe Figure has our own AI model called Helix that we've designed in-house. A single Helix neural network now outputs both manipulation and navigation, end-to-end from language and pixel input Every leap in machine learning has come from massive, diverse datasets. At Figure, we’re currently building the largest pretraining dataset for humanoids in history - excited to see what this unlocksshow more

Brett Adcock
93,986 görüntüleme • 9 ay önce
🔥Nexera & Aethir: Unleashing AI’s Next Frontier Through Tokenized... GPU Power 🤝 Nexera is proud to join forces with Aethir in a strategic partnership to make cutting-edge AI infrastructure globally accessible. By tokenizing fractional GPU ownership, we’re enabling developers, enterprises, and investors everywhere to harness the explosive growth of deep learning and generative AI without being limited by geography, scale, or cost. With transparent tokenization, innovators can access powerful GPUs for faster model training and more advanced applications. GPU providers gain streamlined funding for expansion and upgrades, and investors tap into a high-growth market with secure, compliant opportunities that can provide higher yields than other RWA products. It’s an entirely new ecosystem where everyone can thrive, fueling AI’s evolution at an unprecedented pace. By 2030, the global GPU market is projected to exceed hundreds of billions of dollars, driven by the explosive demand for AI-powered applications, deep learning, and increasingly sophisticated generative models, ensuring that tokenizing these invaluable resources is poised to tap into a massive, rapidly expanding opportunity. $NXRAshow more

Nexera
27,776 görüntüleme • 1 yıl önce
Robots struggle with strict action rules…memory and symbols help... them learn fast. [Project + Full video link ⬇️] Robots struggle when tasks require specific steps in a fixed order. What if memory helped them think symbolically and learn faster? Solving tasks like unlocking a door then opening it is hard for deep RL. But by learning constraint relationships and storing them in memory, robots can solve these tasks much faster; with fewer trials and less training. Why it works ✅ Learns symbolic rules about action constraints ✅ Uses memory to transfer what it learned across tasks ✅ Handles real-world exploration with just 30 minutes of data ✅ Needs 10x fewer episodes than deep RL approaches This memory-based method shows a promising path forward for robots learning structured, real-world tasks. Full video: Paper: Thank you, Mrinal Verghese for sharing this amazing work! 🙏show more

Ilir Aliu - eu/acc
10,241 görüntüleme • 1 yıl önce
A TikTok account hit 3M followers in just 9... days. AI Influencer. That. Doesn't. Exists. I spent time reverse-engineering it. It’s an on demand influencer engine. Same human. Dancing. Talking. Unboxing. Unlimited variants. Now here’s what’s quietly happening behind the scenes: Brands aren’t just using this. They are exploiting this. AI influencers are becoming ad infrastructure Here’s what the best teams are doing now: → Create one AI influencer with a distinct personality → Keep the face, tone, voice consistent → Change settings, hooks, scenarios every day → Run it organically to build trust signals → Turn the same character into paid ads Same character. Different contexts. Infinite variations. More variations = faster learning Faster learning = cheaper conversions The brands doing this aren’t talking about it. That’s how you know it’s working. Comment "influencer" and I’ll send the exact playbook.show more

Vinay Jain
21,279 görüntüleme • 3 ay önce
We're excited to unveil NRN Agents, a rebrand that... aligns our project identity with our token and strengthens our mission to power the future of AI-driven gaming. This mission requires collaboration, and starting this week, we will begin our expansion to become a multi-chain ecosystem. We are joining forces with leading gaming platforms and ecosystems to realize this vision. Stay tuned for more announcements to come. Why NRN Agents? NRN stands for NEURON, the fundamental unit of intelligence. Our AI agents function as the neural foundation of games, learning, adapting, and evolving within game worlds to deliver unparalleled engagement. NRN agent SDK enables advanced gaming agents powered by a proprietary machine learning infrastructure focused on behavioral learning. We've perfected the craft of gaming agent design, creating hyper-efficient agents that are performant and scalable—from casual to the most demanding games. Our SDK will seamlessly integrate into many platforms, tech stacks, and ecosystem – Any Game. Any Chain. More than just games, it's the path to AGI Gaming is our proving ground, but not our final destination. We're using games as a sandbox to accelerate the development of generalized intelligence—one that will create meaningful real-world impact. With the upcoming launch of [redacted] and a growing network of partners committed to the AGI vision, we're building an open-source innovation movement powered by an AI x gaming framework connected by $NRN. $NRN the token $NRN is a utility token that serves as the gateway to our growing ecosystem. It will power a diversified economy with multiple revenue streams and staking opportunities: Agent Deployment: NRN is the laboratory creating gaming agents that can be distributed through platforms and launchpads alike. The model is simple: More games integrate, more NRN agents get deployed, more monetization. Data Creation: NRN Reinforcement Learning (RL) enables token staking to create Data Capsules. Players contribute gameplay data into the Capsules, which are used train RL agents and reward participants (players & stakers). AI Arena: $NRN also continues to power AI Arena's in-game economy, a cult favorite of competitive diehards that features a skill-based wagering system. To our community who have supported us since 2021: thank you for being part of our journey—the next chapter will be the most exciting yet!show more

NRN Agents
20,762 görüntüleme • 1 yıl önce
Wake up babe, Meta got another way to steal... your profile photo and other data to train their AI 👀show more

Abhishek Bhatnagar
140,328 görüntüleme • 9 gün önce
AI will kill Polymarket. $2.2M in 2 months using... probability models. This news is going to blow up the internet. Polymarket trader made $2.2M in just 2 months using AI. His account is traded entirely by a bot. I’ve heard plenty of stories about AI trading bots before, and almost all of them turned out to be scams or didn’t work properly. But this case is different and honestly I’m shocked. He uses AI probability models, training machine learning to estimate real odds based on news and social media data. If his model says an outcome has a 60% chance, while the market prices it at 50% (50¢), he buys because the market is mispricing it. According to his profile: > His prediction accuracy is 74%. That’s insane. He runs an ensemble of 10 AI models that retrain themselves every week to stay up to date. What do you think about this? This feels like the new reality.show more

igorizuchaetcrypty
509,887 görüntüleme • 6 ay önce