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Applied AI and Data Science Program
Application closes 20th Nov 2025
Distinctive features
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Low-code approach
Build AI and data science workflows with minimal coding using intuitive tools. Perfect for professionals looking to advance their proficiency in AI without deep programming experience.
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GenAI-infused curriculum
Covers the latest in Generative AI: Transformers, RAG, Prompt Engineering, and Agentic AI. Designed for real-world business applications.
Unlock real-world impact
Elevate your career in AI and data science
Build your AI and data science proficiency with the latest GenAI tools.
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Apply AI and data science to solve real-world business problems
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Learn to apply techniques across domains such as NLP, GenAI, Computer Vision, and Recommendation Systems.
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Learn effective data representation for predictive modeling
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Create an industry-ready ePortfolio
Earn a certificate of completion from MIT Professional Education
Key program highlights
Why choose the Applied AI and Data Science Program
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Live online sessions with MIT faculty
Engage in live online sessions with renowned MIT faculty for interactive insights.
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Low-code approach
Build AI and data science skills using low-code tools and techniques, enabling hands-on learning without heavy coding.
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Latest AI tech stack
Explore the latest Generative AI models, including Prompt Engineering and RAG modules.
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Personalized mentorship by experts
Benefit from weekly online mentorship from Data Science and AI industry experts.
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Build an industry portfolio
Work on 50+ case studies, projects, and a capstone project solving real business problems with AI.
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Earn a globally recognized credential
Earn 16 CEUs and a certificate of completion from MIT Professional Education upon completion.
Skills you will learn
PYTHON
DATA ANALYSIS
DATA VISUALIZATION
MACHINE LEARNING
ARTIFICIAL INTELLIGENCE
COMPUTER VISION
DEEP LEARNING
GENERATIVE AI & PROMPT ENGINEERING
RETRIEVAL AUGMENTED GENERATION
AGENTIC AND ETHICAL AI
PYTHON
DATA ANALYSIS
DATA VISUALIZATION
MACHINE LEARNING
ARTIFICIAL INTELLIGENCE
COMPUTER VISION
DEEP LEARNING
GENERATIVE AI & PROMPT ENGINEERING
RETRIEVAL AUGMENTED GENERATION
AGENTIC AND ETHICAL AI
view more
Build your AI and data science proficiency
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86% Execs Report
AI critical to firms
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11.5 Mn+
Jobs in data by 2026
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69% Global Leaders
Say AI #1 for growth
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$103.5 Bn
Analytics market size
- Overview
- Learning Journey
- Curriculum
- Projects
- Tools
- Certificate
- Faculty
- Mentors
- Career support
- Fees
- FAQ
This program is ideal for
Data professionals and managers seeking AI-driven insights
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Extracting Insights from Data
Professionals seeking to uncover patterns, extract actionable insights from large data sets, and build robust AI and Data Science solutions.
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Driving Strategic Impact
Professionals aiming to leverage AI and data science for business strategies, improve decision-making, and lead AI and Generative AI initiatives.
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Building AI Expertise
Those interested in strengthening their understanding of AI, generative AI, and machine learning through hands-on projects and expert-led learning.
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Deepening Technical Skills
Professionals with a background in technical management, business intelligence analysis, data science management, IT, management consulting, or business management, including data science and AI enthusiasts.
Syllabus designed for professionals
Designed by MIT faculty, the curriculum for the MIT Professional Education Applied AI and Data Science Program (formerly known as the Applied Data Science Program: Leveraging AI for Effective Decision-Making) equips you with the skills, knowledge, and confidence to excel in the industry. It covers key technologies, including artificial intelligence, machine learning, deep learning, recommendation systems, ChatGPT, applied data science with Python, generative AI, and more. The curriculum ensures you are well-prepared to contribute to artificial intelligence and data science initiatives in any organization.
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Low-Code
Approach
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Live Online Sessions
by MIT Faculty
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10+
Emerging Tools and Technologies
Self-Paced Module | Ethical and Responsible AI
In this module, you will delve into the critical ethical considerations that underpin the entire AI lifecycle through practical insights and real-world examples.
Introduction to AI Lifecycle
Introduction to Bias and Its Examples
Introduction to Causality and Privacy
Interconnections and Domains
Interdependency and Feedback in AI Systems
Pre-Work: Introduction to Data Science and AI
This module is designed to help you get the most out of the program. We begin an introduction to foundational topics in Python programming, statistics, the Data Science lifecycle, and the evolution of AI and Generative AI. This module is designed to prepare all learners, regardless of prior experience, to confidently engage with the comprehensive curriculum ahead.
- Introduction to the World of Data
- Introduction to Python
- Introduction to Generative AI
- Applications of Data Science and AI
- Data Science Lifecycle
- Mathematics and Statistics behind DS and AI
- History of DS and AI
Weeks 1-2: Foundations of AI
In this module, you will establish the essential programming and statistical foundations crucial for your journey in data science using:
- Python for Data Science(NumPy & Pandas)
- Python for Visualization
- Inferential Statistics
- Hypothesis Testing
Week 3: Data Analysis and Visualization
In this module, you will learn hypothesis testing, dimensionality reduction, network analysis, and various clustering algorithms with practical applications.
- Hypothesis testing and practical applications
- Dimensionality reduction using PCA and t-SNE
- Network Analysis
- Different types of clustering algorithms
Week 4: Machine Learning
In this module, you will build foundational machine learning models and understand their evaluation.
- Maximum Likelihood, Bayesian Estimators & formulation
- Linear Regression & Assumptions
- Cross-validation & Bootstrapping
- Classification using Logistic Regression & KNN)
- Gaussian Models
Week 5: Revision Break
A dedicated break week to consolidate learning and catch up on pending coursework.
Week 6: Practical Data Science
In this module, you will apply real-world techniques in classification, ensemble learning, and forecasting.
- Introduction to Decision Tree
- Entropy & Information Gain
- Ensemble Learning - Bagging, Bootstrapping, and Random Forests
- Time Series Forecasting
Week 7: Deep Learning
In this module, you will explore neural networks and their applications in computer vision and language processing.
- Introduction to Deep Learning
- Filters/Convolutions, Pooling, and Max-Pooling
- Architecture of CNN
- Transfer Learning and Augmentation
- Encoder Decoder Architecture
- Token-based Processing, Attention Mechanism & Positional Encodings
Week 8: Recommendation Systems
In this module, you will design intelligent systems for personalization using a variety of recommendation techniques.
- Introduction to the Recommendations
- Content-Based Recommendation Systems
- Collaborative Filtering & Singular Value Thresholding
- Matrix Estimation Meets Content-Based
- Matrix Estimation Over Time
Week 9: Project Week
In this module, you will work independently on a hands-on project that allows you to apply program concepts to a domain of your choice.
Week 10: Generative AI Foundations
In this module, you will understand the architecture, evolution, and foundations of Generative AI.
- Origins of Generating New Data
- Generative AI as a Matrix Estimation Problem
- LLM as a Probabilistic Model for Sequence Completion
- Prompt Engineering
Week 11: Business Applications of Generative AI
In this module, you will learn how Generative AI and Agentic AI can drive business transformation.
- Natural Language Tasks with Generative AI
- Summarization, Classification and Generation
- Retrieval Augmented Generation (RAG)
- Agentic AI
Weeks 12–14: Capstone Project
For your Capstone Project, you will solve a real-world business challenge using techniques from across the program. Projects are guided and evaluated by mentors and reviewed by industry experts.
Work on hands-on projects and case studies
Engage in practical projects and program-specific case studies using emerging tools and technologies across sectors
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50+
Case Studies
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2 Projects
Industry-Relevant
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Capstone Project
Hands-on Learning
Master in-demand AI and Data Science tools
Benefit from hands-on experience with 10+ top AI and Data Science low-code tools
Earn a Professional Certificate in Applied AI & Data Science
Get a certificate of completion from MIT Professional Education and showcase it to your network
* Image for illustration only. Certificate subject to change.
Learn from MIT faculty
Interact with our mentors
Interact with dedicated and experienced AI and data science experts who will guide you through your learning journey
Get industry-ready with dedicated career support
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Get dedicated career support
Access personalized guidance to strengthen your professional brand.
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1-on-1 career sessions
Interact with industry professionals to gain actionable career insights.
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Resume & LinkedIn profile review
Showcase your strengths with a polished, market-ready profile
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Build your project portfolio
Build an industry-ready portfolio to showcase your skills
Course fees
The course fee is 3,900 USD
Advance your career
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Apply AI and data science to solve real-world business problems
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Learn to apply techniques across domains such as NLP, GenAI, Computer Vision, and Recommendation Systems.
-
Learn effective data representation for predictive modeling
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Create an industry-ready ePortfolio
Registration process
Our registrations close once the requisite number of participants enroll for the upcoming batch. Apply early to secure your seat.
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1. Fill application form
Register by completing the online application form.
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2. Application screening
A panel from Great Learning will assess your application based on academics, work experience, and motivation.
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3. Join program
After a final review, you will receive an offer for a seat in the upcoming cohort of the program.
Eligibility
- Exposure to computer programming and a high school-level knowledge of Statistics and Mathematics
Batch start date
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Online · To be announced
Admissions Open
Frequently asked questions
What is the duration of the Applied AI and Data Science Program by MIT Professional Education?
Who will teach this Applied AI and Data Science Program?
What are the prerequisites for enrolling in the program?
For this Applied AI and Data Science Program, the applicant should have:
- Basic exposure to computer programming languages
- High school–level knowledge of statistics and mathematics
Can you provide details about the curriculum and course structure of MIT Professional Education's Applied AI and Data Science Program?
The Applied AI and Data Science Program is a 14-week program structured to provide a comprehensive learning experience. The curriculum includes:
- Modules on ChatGPT and Generative AI.
- Foundation courses to build essential knowledge
- Core courses covering key AI and data science concepts
- Project submissions to apply learning in practical scenarios
- Capstone projects for solving real-world problems
- Self-paced modules on ChatGPT and Generative AI to explore emerging technologies
Will I receive a certificate upon completing the program?
How is the MIT Professional Education Applied AI and Data Science Program different from other data science courses?
The Applied AI and Data Science Program by MIT Professional Education stands out for several reasons:
- Offered by MIT Professional Education: Build on seventy years of leadership in engineering, technology, and scientific education.
- Learn from MIT faculty: Participate in live virtual sessions by MIT Faculty from the convenience of your home.
- Balanced theoretical and practical learning: Understand the value of data through both conceptual and hands-on learning.
- AI- and ML-focused projects: Work on case studies and projects that demonstrate how AI can inform data-driven decision-making.
- Career support: Benefit from one-on-one career sessions, resume and LinkedIn review, and an e-portfolio showcasing hands-on projects and the capstone.
- Mentorship by industry experts: Gain guidance on applying concepts taught in the course to real-world scenarios.
- Certificate of Completion: Receive a Certificate of Completion from MIT Professional Education upon successful completion of the program.
What kind of projects or case studies will be included in the program?
Sample hands-on projects
Healthcare
- Brain Tumor Image Classifier
- Building a binary classification model to detect Pituitary Tumors in MRI scans.
Asset Management
- Network Stock Portfolio Optimization
- Use network analysis and clustering techniques to construct optimized stock portfolios aimed at outperforming market indices like the S&P 500.
Sample Capstone projects
BFSI
- Loan Default Prediction
- Build a classification model to predict clients who are likely to default on their loans. Give recommendations to the bank on important features to consider while approving a loan.
Marketing
- Marketing Campaign Analysis
- Apply dimensionality reduction techniques like PCA and t-SNE, along with clustering algorithms such as K-Means and K-Medoids, to uncover meaningful patterns in customer behavior.
Who are the faculty members and instructors who will teach this Applied AI and Data Science Program?
The program features mentorship from Data Science and Machine Learning experts through live and personalized mentored learning sessions.
The program mentors are industry leaders and experts from leading companies like Google, Apple, Amazon, Microsoft, Ford, and more. These program mentors coach you to work on hands-on projects to apply theories to real-world challenges through live and personalized mentored learning sessions. This will help you use and analyze data in the real world and build industry-ready data science skills.
Note: Program faculty is subject to change.
What is the program fee for the Applied AI and Data Science program by MIT Professional Education?
The total program fee is USD 3900.
What is the application process for this course?
Step 1: Register by completing the online application form.
Step 2: A panel from Great Learning will assess your application based on academics, work experience, and motivation.
Step 3: After a final review, you will receive an offer for a seat in the upcoming cohort of the program.
Will I get any assistance during the program?
What if my question is not covered here?
If you have any other questions, please contact Great Learning through:
Phone: +1 617 468 7899
email: adsp.mit@mygreatlearning.com
Delivered in Collaboration with:
MIT Professional Education is collaborating with online education provider Great Learning to offer Applied AI and Data Science Program. This program leverages MIT's leadership in innovation, science, engineering, and technical disciplines developed over years of research, teaching, and practice. Great Learning collaborates with institutions to manage enrollments (including all payment services and invoicing), technology, and participant support. Accessibility
Batch Profile
The PGP-Data Science class consists of working professionals from excellent organizations and backgrounds maintaining an impressive diversity across work experience, roles and industries.
Batch Industry Diversity
Batch Work Experience Distribution
Batch Education Diversity
The PGP-Data Science learners come from some of the leading organizations.