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Executive Diploma

AI & Data Science

Executive Diploma

AI & Data Science

Executive Diploma

  • EMI Options
    EMI Options:
    Yes
  • Certification:
    Yes
  • Mode
    Mode:
    Live Online
  • Duration
    Duration:
    12 months / 48 weeks
  • Online Sessions
    Online Sessions:
    96 (60-90 min each)
  • Efforts:
    4-6 hours / week
  • Classes
    Classes:
    Weekends / Weekdays
  • Assignments:
    Yes
  • Quizzes:
    Yes
  • Projects
    Projects:
    Yes

About Program

Curriculum

Duration:  12 Months Course (48 weeks/ 96 sessions of 60-90 minutes each)

– Allows for in-depth theoretical understanding, extensive hands-on experience, and the opportunity for advanced research and specialization within the field of AI and Data Science.

Chapters & Topics

Weeks 1-2: Introduction to AI and Data Science

– 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

Weeks 3-4: Python Fundamentals

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

Weeks 5-6: Python Data Structures

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

Weeks 7-8: Python Deep Dive

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

Weeks 9-10: Python Frameworks Library for Data Science & Analysis

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

Weeks 11-12: Data Analysis

– 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

Weeks 13-16: Data Visualization with Tableau

– 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

Weeks 17-20: Probability and Statistics

– 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

Weeks 21-24: Machine Learning (ML) Fundamentals

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

Weeks 25-28: Machine Learning (ML) Advanced

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

Weeks 29-32: Generative AI

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

Weeks 33-36: Deep Learning with Keras and TensorFlow

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

Weeks 37-39: Convolutional Neural Networks (CNNs)

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

Weeks 40-42: Recurrent Neural Networks (RNNs) & NLP

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

Weeks 43-45: Reinforcement Learning

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

Weeks 46-48: Big Data for Data Science

– 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

Tools & Technologies You Will Learn in this Course,
Aligning with Industry Standards

– 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

Bonus Module (Job / Professional Readiness)

– 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

Assessment, Evaluation & Certification

– 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, Networking and Lifelong Learning

– 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

Foundation Certificate and Advanced Certificate Course Plus

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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