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Attend all scheduled classes, whether online or in-person, to gain in-depth knowledge and hands-on experience. Engage actively in lectures, discussions, and practical exercises to maximize your learning outcomes.
Work on hands-on assignments and projects to apply the concepts learned in real-world scenarios. Successfully complete the capstone project, demonstrating your ability to implement AI solutions.
Take the final assessment or evaluation to showcase your skills and understanding of AI concepts. Upon successfully completing the training and evaluation, receive an AI Certification to validate your expertise and boost your career.
Learning Path
Day 1: Introduction to AI and Python
30 Min: Overview of Artificial Intelligence and Python set
○ What is AI and the difference between AI, ML and DL?
○ Key AI concepts and applications across industries
○ Python Setup
Hour 1.30:
○ Introduction to Jupyter Notebook
○ Python basics for AI: Data structures, loops, and functions
Day 2: Data Handling and Preprocessing
Hour 1: Understanding Data
○ Types of data: Structured and unstructured (Only Basics)
○ Data exploration using pandas
○ Data visualization with Matplotlib and Seaborn
Hour 2: Data Preprocessing
○ Handling missing values and outliers
○ Scaling and normalization of data
○ Hands-on: Preparing a dataset for machine learning
Day 3: Introduction to Machine Learning
Hour 1: Fundamentals of Machine Learning
○ What is Machine Learning?
○ Types: Supervised and unsupervised learning
○ Key algorithms and use cases
Hour 2: Hands-On: Simple Regression Model
○ Building a Linear Regression model using scikit-learn
○ Interpreting model output and performance metrics
Day 4: Supervised Learning with Python
Hour 1: Classification Mode
○ Introduction to classification: Logistic Regression, Decision Tre
○ Evaluation metrics: Accuracy, Precision, Recall, F1 Score
Hour 2: Hands-On: Building a Classification
○ Implementing a Decision Tree classifier with scikit-lea
○ Evaluating and visualizing classification results.
Day 5: Advanced Supervised Learning Techniques
Hour 1: Ensemble Methods
○ Random Forest and Gradient Boosting
○ Advantages of ensemble methods in machine learning
Hour 2: Hands-On: Random Forest Classification
○ Building and tuning a Random Forest model using scikit-learn
○ Interpreting feature importance
Day 6: Unsupervised Learning with Python
Hour 1: Understanding Clustering
○ What is clustering?
○ Key algorithms: K-Means, Hierarchical Clustering
Hour 2: Hands-On: Clustering Exercise
○ Implementing K-Means clustering with scikit-learn
○ Visualizing clusters using Matplotlib
Day 7: Dimensionality Reduction and Feature Engineering
Hour 1: Dimensionality Reduction Techniques
○ Principal Component Analysis (PCA)
○ Benefits of dimensionality reduction in machine learning
Hour 2: Hands-On: PCA in Python
○ Applying PCA to a dataset using scikit-learn
○ Visualizing reduced dimensions
Day 8: Working with Time Series Data
Hour 1: Introduction to Time Series
○ Understanding time series data
○ Components: Trend, seasonality, and residuals
Hour 2: Hands-On: Time Series Analysis
○ Using Python libraries like pandas and Matplotlib for time series
visualization
○ Building a simple forecasting model
Day 9: Ethical AI and Business Applications
Hour 1: Ethical Considerations in AI
○ Understanding bias in machine learning models
○ Data privacy and security
Hour 2: AI in Business
○ Real-world applications of AI in finance, healthcare, and manufacturing
○ Group activity: Brainstorming AI use cases in participants’ organizations
Day 10: Capstone Project and Assessment
Hour 1: Capstone Project Implementation
○ Participants work on a project using Python and scikit-learn
○ Examples: Predicting employee churn, analyzing sales trends
Hour 2: Project Presentation and Feedback
○ Teams or individuals present their projects
○ Instructor feedback and group discussion
Completion Certification
○ Participants who complete the course and capstone project will receive a
certificate of completion, which they can add to their resumes or Linked
profile
Shaping the Future: Guiding Minds and Innovating with Excellence in AI Education!
Our AI instructors bring 5–12 years of hands-on expertise in teaching and applying advanced machine learning, data analysis, and data visualization techniques. With a proven track record of building and deploying AI models across various industries, they are passionate about simplifying complex concepts for learners. Their in-depth knowledge, combined with a practical, project-driven approach, ensures every student gains the skills needed to excel in real-world AI applications. Whether you’re a beginner or looking to advance your career, their guidance will inspire and empower your AI journey.
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