AI & Data Science

DURATION

12 months / 48 weeks

ONLINE SESSIONS

96 (60-90 min each)

MODE

Live Online

About Course

Curriculum

Chapters & Topics

– Scope and Significance of AI and Data Science Across Diverse Industries
– Distinctions between AI Engineers, Software Engineers, and Data Scientists
– Future in AI, Machine learning, and Data Science
– Generative AI, LLM (Large Language Models), and Image Generation

– Data Types & Operators, Control Structures – If-Elif Statement
– Control Structures – For Loop
– Control Structures – While loop
– String Functions and Operations

– Comprehensive Study of Lists and their Function
– Understanding Tuples and their Functionality
– Exploring Dictionary and its Functions
– Leveraging Sets for Unique Data Handling

– Mastering Python Functions and their Application
– Understanding Functional Arguments and their Implementations
– Learning Robust Error Handling Techniques
– Understanding Regular Expressions (Regex) for Pattern Matching

– Introduction to NumPy: Numeric Computing with Python
– Exploring NumPy Broadcasting for Efficient Array Operations
– Introduction to Pandas
– Pandas Functionality for Data Analysis and Manipulation

– Data Storytelling with Matplotlib
– Exploratory Data Analysis (EDA) Techniques and Approaches
– Exploring Databases, Different Models and Use Cases
– Understanding NoSQL Databases and MongoDB, and its Benefits in Data Analysis

– Introduction to Tableau and Data Visualization Techniques (Charts, Heat Maps, Tree Maps, and Box Plots)
– Interactive Dashboards, Compelling Data Stories, Blending and Joining
– Advanced Analytics and Forecasting (Trend Lines, Clustering, and Predictive Modeling etc.)
– Recap, Project, Assessment and Certification

– Probability and Types of Events
– Types of Statistics (Descriptive & Inferential); Types of Data (Qualitative, Qunatitative, & Outliers)
– Measure of Central Tendency – Mean, Mode, Median,
– Measure of Spread – Range, Variance, Standard Deviation and IQR, Hypothesis Testing

– Introduction to Machine Learning
– Types of Machine Learning: Supervised, Unsupervised, and Reinforcement
– Linear Regression
– Logistic Regression

– Evaluation Metrics
– Decision Trees, Random Forests
– Support Vector Machines (SVM)
– Dimentionality Reduction using Principal Component Analysis (PCA)

– Core Principles of Generative AI, Prompt Engineering and ChatGPT
– Large Language Models (LLM)
– Generative Adversarial Networks (GANs)
– Recap, Project, Assessment and Certification

– Introduction to Neural Networks, Activation functions
– Backpropagation, Training neural networks
– Introduction to TensorFlow, Model Optimization
– Logging training metrics in Keras

– Understanding the Architecture of CNNs
– Image Recognition and Classification using CNNs
– Transfer Learning with Pre-trained Models

– Exploring the Concepts of RNNs and their Applications
– Implementing RNNs in NLP and Web Scraping
– Text Preprocessing and Sentiment Analysis using RNNs

– Introduction to Reinforcement Learning and its Applications
– Understanding Markov Decision Processes (MDP)
– Implementing Q-learning and Deep Q Networks (DQNs)

– Introduction to Big Data Technologies (Hadoop and Spark)
– RESTful APIs for Model Deployment
– Hands-on experience with Cloud Platforms like AWS, GCP, or Azure
– Recap, Project, Assessment and Certification

– Programming and Development Environments: Python, and Jupyter
– Data Manipulation and Analysis: NumPy, and Pandas
– Data Visualization: Matplotlib, and Tableau
– Databases: MongoDB
– Scientific Computing: SciPy
– Machine Learning and Deep Learning: Scikit-Learn, Keras, Tensorflow, and BERT
– Big Data and Distributed Computing: Hadoop, Spark, and Apache Kafka
– AI and Language Models: ChatGPT, and Prompt Engineering
– Model Deployment: RESTful APIs
– Cloud Platforms: Amazon Web Services (AWS), Google Cloud Platform (GCP), and Microsoft Azure

– Soft Skills Development
– Networking strategies and building a professional online presence
– Address Specific Career Goals and Valuable Advice for Navigating the Job Market
– Professional Resume and Interview Preperation
– Job Assistance through Medh Placement Cell

– Weekly Quizzes to Gauge Comprehension of Key Concepts
– Practical Hands-on Assignments and Thorough Evaluation
– Active Engagement in Group Discussions
– Capstone Project
– Certification Upon Program Completion

– Medh Alumini Status and Networking Opportunities
– Access to an Extensive ‘Medh Alumni Network’ for Professional Connections and Mentorship
– Career Advancement Resources and Job Opportunities within the ‘Medh Alumni Community’
– Continued Learning through ‘Medh-Alumni-Exclusive’ Webinars and Industry Insights
– Networking Events to Foster Connections with Fellow Alumni and Industry Professionals

Note: This curriculum is subject to minor modifications based on the class progress and feedback. Each course is designed to incorporate a mix of interactive activities, case studies, role plays, and reflective exercises to cater to the specific needs and developmental milestones of the respective age group.

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FAQs

The primary focus of the course is to provide participants with a comprehensive understanding of artificial intelligence and data science, including advanced concepts, methodologies, and practical applications, to prepare them for leadership roles in these domains.

Candidates should typically hold a bachelor’s degree in a relevant field and have a foundational understanding of mathematics, statistics, and programming concepts. Prior work experience in a related field may also be encouraged.

The course will cover advanced topics such as machine learning, deep learning, natural language processing, data analysis, predictive modeling, AI ethics, and governance. Participants will also gain practical experience with industry-relevant projects and case studies.

The course is typically delivered through a combination of online lectures, practical assignments, and interactive sessions. Participants are expected to dedicate approximately 4-6 hours per week to accommodate learning and completion of assignments.

Upon successful completion, participants will be awarded an internationally recognized Executive Diploma in AI with Data Science, validating their advanced expertise and practical skills in these fields.

The comprehensive curriculum and practical focus of the course prepare professionals for leadership roles, strategic decision-making positions, and specialized roles in data-driven organizations, enhancing their career prospects in the industry.

The course will offer opportunities for participants to engage with industry experts, peers, and mentors, facilitating valuable networking opportunities within the AI and data science community.

Participants will develop advanced expertise in AI and data science, gaining the skills to lead AI initiatives, develop and implement advanced AI algorithms, and contribute to strategic decision-making processes within organizations.

Yes, the course includes hands-on industry-relevant projects and case studies, allowing participants to apply advanced AI and data science concepts to real-world scenarios, enhancing their practical skills and problem-solving abilities.

The course’s in-depth curriculum and hands-on approach prepare participants for further specialization and advanced learning in AI and data science, providing a solid foundation for pursuing advanced roles and career development in these rapidly growing fields.

Note: If you have any other questions or concerns not covered in the FAQs, please feel free to contact our support team, and we’ll be happy to assist you!

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12 Months Course

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AI & Data Science