Hasty Briefsbeta

Hand-picked selection of articles on AI fundamentals/concepts

13 days ago
  • #AI Fundamentals
  • #Machine Learning
  • #Neural Networks
  • A curated selection of articles covering AI fundamentals, from building neural networks to training and evaluating results.
  • Key algorithms and architectures include Linear/Logistic Regression, k-Nearest Neighbors, SVMs, Decision Trees, GANs, Diffusion Models, and Reinforcement Learning.
  • Important data and training concepts: Data Sampling, Regularization, Gradient Descent, Loss Functions, Fine-tuning, and Distributed Training.
  • Vision-related topics: Vision Transformers (ViT), Receptive Fields, Residual Networks, and GPT-4o Image Generation.
  • NLP fundamentals: Word Embeddings, Transformers, LLMs, RAG, Tokenization, and Machine Translation.
  • Multimodal models like BERT, GPT, LLaMA, Gemini, and specialized tools such as Toolformer and Visual ChatGPT.
  • Evaluation methods, MLOps, On-Device AI (Model Compression, Federated Learning), and miscellaneous topics like PyTorch vs. TensorFlow.