Deep Learning Courses
course
Explainable AI (XAI) Basics
Beginner
Acquired skills: Explainable AI Fundamentals, XAI Methods and Concepts, Ethical AI Principles, AI Transparency Awareness
course
Feature Scaling and Normalization in Python
Beginner
Acquired skills: Feature Scaling, Mean-Centering, Standardization, Normalization (L1, L2, Max), Whitening and Decorrelation, Preprocessing Pipelines, Data Leakage Prevention
course
Mathematical Foundations of Neural Networks
Advanced
Acquired skills: Neural Network Theory, Linear Algebra for Deep Learning, Activation Function Analysis, Approximation Theory, Expressivity of Neural Networks
course
RAG Theory Essentials
Intermediate
Acquired skills: Retrieval-Augmented Generation Fundamentals, Semantic Retrieval Concepts, Document Chunking and Indexing, Vector Search Theory, RAG Pipeline Architecture, Knowledge Integration in LLMs, RAG Evaluation Metrics, Failure Analysis in RAG, RAG System Design Patterns
course
Transfer Learning Essentials with Python
Beginner
Acquired skills: Transfer Learning Fundamentals, Fine-tuning Pre-trained Models, Transfer Learning in CV, Transfer Learning in NLP
course
Transformers Theory Essentials
Advanced
2 STUDYING NOW
Acquired skills: Transformer Architecture Theory, Self-Attention Mechanism, Positional Encoding Concepts, Autoregressive Generation, Sampling Strategies, LLM Failure Modes, Information Theory in NLP
course
Zero-Shot and Few-Shot Generalization
Advanced
Acquired skills: Theoretical Foundations of Zero-Shot Generalization, Latent Space Reasoning, In-Context Learning Theory, Prompt-Based Generalization, Limits of LLM Generalization
course
Attention Mechanisms Theory
Advanced
Acquired skills: Attention Mechanisms Theory, Neural Network Architecture Analysis, Inductive Bias Reasoning, Model Scaling Concepts, Failure Mode Diagnosis
course
Continual Learning and Catastrophic Forgetting
Advanced
Acquired skills: Continual Learning Theory, Catastrophic Forgetting Analysis, Optimization in Neural Networks, Stability–Plasticity Trade-Offs, Parameter Space Geometry, Theoretical Limits of Learning
course
Deep Generative Models with Python
Advanced
1 STUDYING NOW
Acquired skills: Generative AI , VAEs , GANs , Transformers , Diffusion Models , Evaluation Metrics for Generative AI
course
Diffusion Models and Generative Foundations
Advanced
Acquired skills: Diffusion Model Theory, Markov Chains in Generative Modeling, Variational Inference & ELBO, Score Matching, Stochastic Differential Equations (SDEs), ODE Formulations in Generative Models
course
Generative Adversarial Networks Basics
Intermediate
Acquired skills: GAN Fundamentals, Adversarial Training Concepts, Mathematical Formulation of GANs, Understanding GAN Variants, Analyzing GAN Training Challenges
Embrace the fascination of Tech Skills! Our AI-assistant provides real-time feedback, personalized hints, and error explanations, empowering you to learn with confidence.
With Workspaces, you can create and share projects directly on our platform. We've prepared templates for your convenience
Take control of your career development and commence your path into mastering the latest technologies
Real-world projects elevate your portfolio, showcasing practical skills to impress potential employers










Deep Learning Courses: Key Info and Questions
1. | Introduction to Neural Networks with Python | ||
2. | Introduction to NLP with Python | ||
3. | Introduction to TensorFlow | ||
4. | Recurrent Neural Networks with Python | ||
5. | Prompt Engineering Basics |





