Master of Science (MSc) in Artificial Intelligence and Data Science

Course Duration: 2 years

Semester 1

  • Foundations of Artificial Intelligence
    • Introduction to AI concepts, history, and applications
    • Machine learning basics: algorithms, supervised and
      unsupervised learning
    • Probability and statistics for data science
  • Data Mining and Analytics
    • Data preprocessing and cleaning
    • Exploratory data analysis
    • Clustering and association rule mining
  • Programming for Data Science
    • Python programming fundamentals
    • Data manipulation with Pandas
    • Visualization with Matplotlib and Seaborn
  • Mathematics for Machine Learning
    • Linear algebra essentials
    • Calculus and optimization
    • Probability theory

Semester 2:

  • Advanced Machine Learning
    • Deep learning fundamentals
    • Neural networks architectures
    • Convolutional and recurrent neural networks
  • Big Data Technologies
    • Introduction to distributed computing
    • Hadoop and MapReduce
    • Spark for large-scale data processing
  • Natural Language Processing
    • Text preprocessing and tokenization
    • Sentiment analysis and language modeling
    • Neural network approaches to NLP
  • Ethics in AI and Data Science
    • Legal and ethical considerations in AI
    • Bias and fairness in algorithms
    • Privacy and data protection regulations

Semester 3:

  • Advanced Data Science
    • Time series analysis
    • Feature engineering and selection
    • Model evaluation and ensemble methods
  • Reinforcement Learning
    • Markov decision processes
    • Q-learning and policy gradients
    • Applications in robotics and gaming
  • Cloud Computing for AI
    • Cloud platforms (AWS, GCP, Azure)
    • Deploying and scaling AI models
    • Serverless computing for AI applications
  • Capstone Project Preparation
    • Research methods and project design
    • Proposal writing and project planning

Semester 4:

  • Capstone Project
    • Work on a substantial AI or data science project
    • Implementing and evaluating a solution
    • Writing a thesis and presenting findings
  • Internship (or Electives)
    • Optional internship in industry or research
    • Alternatively, choose from advanced elective courses:
      ▪ Computer vision
      ▪ Bayesian methods in AI
      ▪ Graphical models
      ▪ Healthcare analytics
  • Professional Development
    • Job search strategies
    • Interview preparation
    • Networking and career pathways in AI and data science

Note: This curriculum blends theoretical knowledge with hands-on experience, preparing students for careers in AI and data science across various industries. It’s essential to incorporate practical projects, internships, and networking opportunities to enhance real-world skills and employability. Additionally, this curriculum aligns with the evolving landscape of AI and data science, emphasizing ethics, big data technologies, and advanced machine learning concepts.

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