NodeBook Private Limited

Data Science with Artificial Intelligence

Data Science with Artificial Intelligence

This comprehensive 3-month AI course will provide students with a deep understanding of artificial
intelligence, machine learning, deep learning, and natural language processing (NLP). The course will
include theoretical concepts, hands-on coding exercises, and practical projects to ensure students are
well-prepared to work in the field of AI.

No prior knowledge is required. Learning will start from scratch.

Course Title Data Science with Artificial Intelligence
Days per week Sundays only
Number of hours per week 3 hours per week
Total study time 8 classes – 24 credit hours (2 Months)
  • Introduction to AI and its history
  • AI Ethics and Responsible AI
  •  Introduction to Machine Learning & Data Science
  •  Data Preprocessing
  •  Types of Machine Learning: Supervised, Unsupervised, Reinforcement
  •  The Machine Learning Workflow
  •  Python and libraries for Machine Learning
  •  Regression
  •  Model Evaluation and Metrics
  •  Unsupervised Learning and Clustering
  •  Neural Networks and Deep Learning
  •  Convolutional Neural Networks (CNNs)
  •  Natural Language Processing (NLP)
  •  Advanced Topics in AI

Software to be learn:
•  Google Colab
•  Jupyter Nodebook

Week 1-2: Introduction to Artificial Intelligence & Data Preprocessing
• Introduction to AI and its history
• The AI revolution: Current applications and impact
• Overview of the course structure and expectations
• AI Ethics and Responsible AI
• AI Challenges: Bias, fairness, transparency
• AI in Society: Legal and ethical considerations
• Data Cleaning
• Exploratory Data Analysis

Week 3-4: Machine Learning Basics
• Introduction to Machine Learning
• Types of Machine Learning: Supervised, Unsupervised, Reinforcement
• The Machine Learning Workflow
• Python and libraries for Machine Learning
• Linear Regression
• Logistic Regression
• Model Evaluation and Metrics
• Hands-on: Building a Simple Linear Regression Model

Week 5-6: Unsupervised Learning and Clustering
• Unsupervised Learning Concepts
• Clustering Algorithms: K-Means, Hierarchical, DBSCAN Dimensionality Reduction: PCA
• Recommender Systems Anomaly Detection
• Hands-on: Implementing K-Means Clustering
Week 7-8: Neural Networks and Deep Learning
• Introduction to Neural Networks Perceptrons and Activation Functions Backpropagation
• Building a Feedforward Neural Network from Scratch
• Deep Learning Architectures: Convolutional Neural Networks (CNNs)
• Image Classification Transfer Learning
• Hands-on: Building a CNN for Image Classification
Week 9-10: Natural Language Processing (NLP)
• Introduction to NLP Text Preprocessing
• Bag-of-Words and TF-IDF Sentiment Analysis
• Word Embeddings: Word2Vec, GloVe Sequence-to-Sequence Models Named Entity Recognition
(NER)
• Hands-on: Building a Sentiment Analysis Model

Week 11-12: Advanced Topics in AI
• Reinforcement Learning Basics Markov Decision Processes (MDPs) Q-Learning
• Deep Reinforcement Learning
• AI in Real-World Applications: Healthcare, Finance, Autonomous Vehicles
• AI Trends and Future Directions
• Final Project Presentations and Showcase

Students will complete hands-on projects throughout the course, including implementing clustering
algorithms, creating a CNN for image classification, developing a sentiment analysis model, and working
on a reinforcement learning project. In the final project, students will choose an AI application and
develop a solution using the knowledge acquired during the course.

Overview

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Trainer Info

Mehwish Alam – Trainer Nodebook Private Limited
Experienced data scientist, Microsoft Ambassador, Stanford Section Leader. Skilled in Azure, ML, Python, R. Expertise in data modeling, ML algorithms. B.S. Computer Science from NED University.

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