Certified Skill Diploma in Artificial Intelligence and Machine Learning

65,000

Description

DURATION  11 MONTHS 

Paper 01

Communicative English

Paper 02

Foundations of Artificial Intelligence

Paper 03

Mathematics for AI & ML

Paper 04

Core Machine Learning

Paper 05

Deep Learning and Neural Networks

Paper 06

Natural Language Processing (NLP)

Paper 07

AI in Real-World Applications

Paper 08

Ethics, Governance, and Future of AI

Paper 09

Machine Learning Lab (Practical)

Paper 10

Deep Learning & AI Lab (Practical)

 

Paper 01: Communicative English

  • Focuses on developing Practical language skills
  • Development of listening ,speaking,& writing skill in real-life situations

Paper 02: Foundations of Artificial Intelligence

  • What is AI? Definitions and scope
  • History and evolution of AI
  • Types of AI (Narrow, General, Super AI)
  • Intelligent agents and environments
  • AI problem solving: Search algorithms, State-space
  • Applications of AI in different sectors

Paper 03: Mathematics for AI & ML

  • Linear Algebra: Vectors, Matrices, Eigenvalues
  • Probability and Statistics: Distributions, Bayes Theorem
  • Calculus: Derivatives, Gradients (used in optimization)
  • Optimization techniques in ML
  • Random variables and Markov decision processes

Paper 04: Core Machine Learning

  • Supervised learning: Regression, Classification
  • Unsupervised learning: Clustering, Dimensionality Reduction
  • Model selection and evaluation
  • Feature engineering and preprocessing
  • Algorithms: KNN, SVM, Naive Bayes, Decision Trees, Random Forest
  • Ensemble learning: Bagging, Boosting

Paper 05: Deep Learning and Neural Networks

  • Neural network architecture
  • Forward and backward propagation
  • Convolutional Neural Networks (CNNs)
  • Recurrent Neural Networks (RNNs), LSTM
  • Transfer Learning and Fine-tuning
  • Use cases: Vision, Speech, NLP

Paper 06: Natural Language Processing (NLP)

  • Text processing and feature extraction (TF-IDF, word embeddings)
  • Sentiment analysis, text classification
  • Language models and tokenization
  • Transformers and BERT basics
  • Chatbots and question answering systems

Paper 07: AI in Real-World Applications

  • AI in healthcare, finance, manufacturing, marketing
  • Robotics and autonomous systems
  • AI for cybersecurity
  • AI in education and smart cities
  • Industry use cases and success stories

Paper 08: Ethics, Governance, and Future of AI

  • Ethics in AI and responsible AI design
  • Bias and discrimination in AI systems
  • Data privacy and legal considerations
  • Explainable AI (XAI)
  • AI governance and regulation
  • The future of AI: Risks, promises, and job impact

PRACTICAL PAPERS

Paper 09: Machine Learning Lab

  • Python and Jupyter Notebook usage
  • Data loading, cleaning, and visualization (Pandas, Matplotlib)
  • Building and tuning ML models using Scikit-learn
  • Model deployment using Flask or Streamlit
  • Mini projects: Fraud detection, recommendation system

Paper 10: Deep Learning & AI Lab

  • Deep learning frameworks: TensorFlow/Keras
  • Building CNNs for image classification
  • Creating RNNs for time series or text data
  • NLP hands-on with HuggingFace/Transformers
  • Final capstone project (student’s choice or provided use case)