User Tools

Site Tools


Introduction to AI:

1. Foundations of AI:

  1. Overview of artificial intelligence
  2. History and evolution of AI
  3. AI applications in various domains

2. Problem Solving and Search:

  1. Problem-solving methodologies
  2. Search algorithms (e.g., depth-first, breadth-first, A*)
  3. Heuristic search and informed search

3. Knowledge Representation:

  1. Predicate logic and propositional logic
  2. Semantic networks and frames
  3. Ontologies and knowledge graphs

4. Machine Learning Basics:

  1. Supervised, unsupervised, and reinforcement learning
  2. Training data, features, and labels
  3. Model evaluation and performance metrics

Machine Learning and Deep Learning:

5. Supervised Learning:

  1. Linear regression
  2. Classification algorithms (e.g., logistic regression, decision trees)
  3. Support vector machines
  4. Neural networks and deep learning

6. Unsupervised Learning:

  1. Clustering algorithms (e.g., K-means, hierarchical clustering)
  2. Dimensionality reduction (e.g., PCA)
  3. Association rule mining

7. Reinforcement Learning:

  1. Markov decision processes (MDPs)
  2. Q-learning and policy gradients
  3. Deep reinforcement learning
  4. Applications in robotics and gaming

Natural Language Processing (NLP):

8. NLP Fundamentals:

  1. Text preprocessing (tokenization, stemming, lemmatization)
  2. Named entity recognition (NER)
  3. Part-of-speech tagging

9. Text Classification and Sentiment Analysis:

  1. Document classification
  2. Sentiment analysis techniques
  3. Text summarization

10. Machine Translation and Language Generation:

  1. Machine translation models (e.g., Seq2Seq)
  2. Language generation with recurrent and transformer models
  3. Chatbots and conversational AI

Computer Vision:

11. Image Processing:

  1. Image enhancement and filtering
  2. Feature extraction (e.g., edge detection)
  3. Object detection and image segmentation

12. Convolutional Neural Networks (CNNs):

  1. CNN architecture and components
  2. Transfer learning with pre-trained CNNs
  3. Image recognition and classification

13. Object Recognition and Tracking:

  1. Object detection frameworks (e.g., YOLO, Faster R-CNN)
  2. Object tracking algorithms
  3. Image-based localization and mapping

AI Ethics and Applications:

14. Ethical AI and Bias:

  1. Bias in AI algorithms
  2. Fairness, transparency, and accountability
  3. Ethical AI design and guidelines

15. AI in Healthcare and Medicine:

  1. Medical image analysis
  2. Disease diagnosis and prediction
  3. Drug discovery and personalized medicine

16. AI in Autonomous Systems:

  1. Autonomous vehicles
  2. Drone technology and applications
  3. Robotics and automation

Advanced AI Topics:

17. Deep Learning Architectures:

  1. Generative adversarial networks (GANs)
  2. Recurrent neural networks (RNNs)
  3. Transformers and attention mechanisms

18. AI for Natural Language Understanding:

  1. Question answering systems
  2. Coreference resolution
  3. Contextual embeddings (e.g., BERT)

19. AI Research and Projects:

  1. Research methodologies in AI
  2. AI project development and implementation
  3. Capstone projects and research papers
products/ict/ai/courses_list.txt · Last modified: 2023/09/23 03:20 by wikiadmin