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Top rated online AI, Data Science, and ML course

Top rated online AI, Data Science, and ML course

Application closes 18th Jun 2026

Distinctive features

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    AI-assisted coding

    Leverage AI-assisted coding tools to write and debug Python faster, including access to OpenAI APIs and Codex for hands-on practice at no additional cost.

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    Next-gen modules

    The upgraded curriculum is now infused with GPT-5, Codex for advanced code generation, LangChain, and LangGraph for building modern AI workflows and agentic systems.

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Program Outcomes

Elevate your career in AI, Data Science and ML

Build proficiency in advanced topics like Agentic AI, LLM Orchestration, and RAG

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    Explain how AI evolved from prediction models to language models and autonomous agents

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    Write effective prompts, detect hallucinations, and use AI coding assistants to write and debug Python

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    Given a business question, choose the right ML approach, apply it, and assess if results are trustworthy

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    Connect LLMs to external data using RAG to ground outputs in real data and assess pipeline performance

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    Build AI systems that plan a sequence of steps, use external tools, and complete tasks autonomously

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    Design pipelines where multiple AI agents collaborate, divide work, recover from errors, and boost performance

Earn a certificate of completion from MIT IDSS

  • #1 in World Universities

    #1 in World Universities

    QS World University Rankings, 2025

  • #1 in AI and Data Science

    #1 in AI and Data Science

    QS World University Rankings by Subject, 2025

  • #2 in National Universities

    #2 in National Universities

    U.S. News & World Report Rankings, 2024-2025

Key program highlights

Why choose the AI and Data Science program

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    Learn from MIT faculty

    Learn from the vast knowledge of MIT AI, Data Science and Machine Learning faculty through recorded sessions.

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    AI-assisted coding

    Build AI and data science skills using AI-assisted coding tools like GitHub Copilot and ChatGPT to write, debug, and learn Python through hands-on practice.

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    Advanced AI-infused curriculum

    Explore advanced modules on emerging topics including prompt engineering, retrieval-augmented generation (RAG), and next-generation model architectures.

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    Personalized mentorship sessions

    Benefit from personalized weekend mentorship by experienced AI, Data Science and ML practitioners from leading global organizations.

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    Dedicated program support

    Connect with dedicated program managers to assist with queries and guide you throughout the course.

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    Build Real-World Expertise

    Work on 4 hands-on projects and explore 10+ real-world case studies to strengthen your practical skills and demonstrate your AI and Data Science capabilities.

Skills you will learn

Agentic AI

Prompt Engineering

Retrieval-Augmented Generation (RAG)

Multi-Agent Systems

LLM Orchestration

Prompt Optimization

AI-Assisted Coding

LLM Evaluation

AI Workflow Design

Generative AI Applications

Agentic AI

Prompt Engineering

Retrieval-Augmented Generation (RAG)

Multi-Agent Systems

LLM Orchestration

Prompt Optimization

AI-Assisted Coding

LLM Evaluation

AI Workflow Design

Generative AI Applications

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  • Overview
  • Curriculum
  • Projects
  • Tools
  • Certificate
  • Faculty
  • Mentors
  • Reviews
  • Fees
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This program is ideal for

Professionals ready to advance their skills in AI, Data Science, and Machine Learning

View Batch Profile

  • Career Starters in AI and Data Science

    Individuals seeking a structured foundation in AI and Data Science to build job-ready technical capabilities and a strong professional credential.

  • Early-Career Professionals in Data and Technology

    With a foundation in data science or software development, seeking to deepen technical expertise and design end-to-end AI workflows.

  • Tech Innovators and AI Practitioners

    Responsible for building, integrating, or scaling AI solutions, seeking expertise in system design, multi-agent orchestration, and implementation.

  • Professionals Building Next-Generation AI Systems

    Aiming to use advanced frameworks like GenAI, LangChain, and multi-agent systems to build reliable, scalable, real-world AI applications.

Program Curriculum

Designed by MIT faculty, the curriculum covers key concepts in Generative AI, Agentic AI, Data Science, and Machine Learning. Learn from experts through a structured, hands-on learning experience that builds the technical intuition and strategic judgment needed to translate data and AI into measurable business impact.

Pre-Work

Concepts Covered

- AI Landscape - Introduction To AI - Key AI Terminology And Workflows - Real-World AI Applications Across Industries - Evolution From Classical ML To GenAI And Autonomous Agents

Week 1: AI, GenAI, and Agentic AI Landscape

Concepts Covered

- AI Landscape - Introduction to AI - Key AI Terminology and Workflows - Real-World AI Applications Across Industries - Evolution from Classical ML to GenAI and Autonomous Agents

Week 2: LLMs and Prompt Engineering

Concepts Covered

- Foundations of Gen AI - Foundation Models and In-Context Learning - Prompt Engineering - LLM Training and Output Generation Mechanisms - Business Applications of LLMs - Prompt Engineering Techniques for Accuracy and Efficiency

Week 3: AI-Assisted Python Coding

Concepts Covered

- How AI Coding Assistants Generate Python Code - Accelerating Python Development With AI Tools - Debugging and Evaluating AI-Generated Code - Effective Prompt Design for Python Problem-Solving - Security and Efficiency Considerations in AI-Generated Code

Week 4: AI-Assisted Exploratory Analysis

Concepts Covered

- Data Exploration – Structured Data - Clustering Techniques: K-Means, K-Medoids, Gaussian Mixture Models - Dimensionality Reduction: PCA, t-SNE - Pattern Extraction From Structured Data - Visualization Of High-Dimensional Data

Week 5: Project 1

Work on a real-world challenge by applying skills learned throughout the program, leveraging industry-relevant tools and technologies to maximize outcomes.

Week 6: Predictive Modeling With Regression

Concepts Covered

- Prediction Methods – Regression - Fundamentals of Supervised Learning - Linear Regression for Numerical Prediction - Model Validation and Statistical Assumption Testing - Performance Metrics for Regression Models

Week 7: Building Decision Systems With AI

Concepts Covered

- Decision Systems - Classification With Decision Trees - Ensemble Methods: Random Forest - Classification Metrics and Model Evaluation - GenAI-Based Text Classification

Week 8: AI-Powered Recommendation Systems

Concepts Covered

- Recommendation Systems - Rank-Based Recommendations - Content-Based Filtering - Collaborative Filtering - Building Personalized Recommendation Engines With GenAI

Week 9: Project 2

Work on a real-world challenge by applying skills learned throughout the program, leveraging industry-relevant tools and technologies to maximize outcomes.

Week 10: Learning Break

Learning breaks are structured pauses to consolidate concepts, complete pending work, and reinforce understanding before progressing further.

Week 11: Building Context-Aware AI Workflows

Concepts Covered

- Transformers - Transformer Architecture and Self-Attention Mechanism - Multimodal Applications of Transformer Models - External Knowledge Sources for LLM Accuracy - Data Chunking and Embeddings for Retrieval - Building and Evaluating RAG Pipelines

Week 12: Prompt Optimization and Evaluation

Concepts Covered

- Evaluation of Gen AI Content - Text Evaluation Metrics: ROUGE and BERTScore - LLM-as-a-Judge Evaluation Methodology - Hallucination Detection Through Consistency Checks - Prompt Optimization for Model Reliability

Week 13: Project 3

Work on a real-world challenge by applying skills learned throughout the program, leveraging industry-relevant tools and technologies to maximize outcomes.

Week 14: Designing and Building Agentic AI Workflows

Concepts Covered

- Reinforcement Learning and Introduction to Agents - Reinforcement Learning Fundamentals: States, Actions, Rewards - Q-Learning and Policy Gradient Algorithms - Reactive LLMs vs. Autonomous AI Agents - Agent Architecture: Memory, Planning, Tool Use - Building Single-Agent Systems for Business Problems

Week 15: Orchestrating Multi-Agent Systems

Concepts Covered

- Multi-Agent Collaboration Frameworks - Dynamic Work Routing Across Agents - Adaptive RAG in Multi-Agent Workflows - Error Handling and Uncertainty Management - Performance Evaluation: Tool Accuracy and Handoff Reliability

Week 16: Project 4

Work on a real-world challenge by applying skills learned throughout the program, leveraging industry-relevant tools and technologies to maximize outcomes.

Self-Paced Modules

Self-Paced Modules

This module is designed to build practical capability in applying Generative AI and Agentic AI using the Claude ecosystem in real-world contexts. Learners build the ability to design, execute, and evaluate AI-driven workflows for real-world applications, supported by ~5 hours of structured learning.

- Design and Execute AI Workflows - Design and Execute AI Workflows

Build a foundational understanding of deep learning concepts and neural network architectures used in modern AI systems.

- Introduction to Deep Learning - Building Blocks of Neural Networks - Training Neural Networks - Digit Recognition

Learn how AI systems process and interpret visual information using advanced computer vision techniques.

- Drawbacks of ANN - Building Blocks of Convolutional Neural Networks - Training Convolutional Neural Networks - Image Detection

Explore the principles of building fair, transparent, and responsible AI systems across real-world applications.

- Introduction to AI Lifecycle - Introduction to Bias and Its Examples - Introduction to Causality and Privacy - Interconnections and Domains - Interdependency and Feedback in AI Systems

Understand the fundamentals of time-series data analysis and forecasting for temporal decision-making.

- Recognize why Time Series is a unique data modality that requires special techniques for analysis - Describe the components of a Time Series - Identification and estimation of Time Series components - Application of simple methods for Time Series Forecasting

Sample Case Studies

Apply your learning through real-world case studies guided by global industry experts. Please note: All case studies and projects outlined are indicative and subject to change.

Supply Chain Disruption Response Assistant

SUPPLY CHAIN Detect shipment delays and inventory shortfalls, analyze downstream order impact, and recommend rerouting actions to improve operational resilience. Tools and Concepts: Prompt Engineering, LLMs, AI Agents, Supply Chain Analytics, Decision Systems, Workflow Automation

Clinical Trial Protocol Feasibility Review

HEALTHCARE Analyze clinical trial protocols against regulatory requirements and generate structured go/no-go recommendation reports for new drug candidates. Tools and Concepts: Advanced Prompt Engineering, LLMs, Regulatory Analysis, Document Reasoning, Evaluation Frameworks, Decision Systems

AI-Assisted Data Cleaning for Retail Sales

RETAIL Build and debug Python-based data cleaning pipelines for retail sales data to ensure accurate and reliable inputs for downstream analysis and reporting. Tools and Concepts: AI Coding Assistants, Python, Data Cleaning, Prompt Design, Data Preprocessing, Debugging, Data Quality Assurance

Customer Segmentation for a Retail Bank

FINANCE Analyze transaction, demographic, and product data to identify customer segments for targeted cross-sell and retention strategies. Tools and Concepts: EDA, K-Means, Gaussian Mixture Models, PCA, Clustering, Feature Engineering, Data Visualization

Quick-Commerce Order Volume Drivers

RETAIL Identify key drivers of daily order volume to support decisions on store placement, promotions, and delivery service levels. Tools and Concepts: EDA, Linear Regression, Predictive Modeling, Feature Analysis, Statistical Modeling, Business Insights

Loan Application Risk Triage

FINANCE Classify loan applications into approve, manual review, or reject using structured financial data and free-text analysis to automate decisions and flag borderline cases. Tools and Concepts: Decision Trees, Random Forest, GenAI Text Classification, Classification Models, Feature Engineering, Model Evaluation, Risk Modeling

E-Commerce Next-Best-Product Recommendations

RETAIL Generate personalized product recommendations using browsing, cart, and purchase behavior to improve discovery and cross-sell performance. Tools and Concepts: Rank-Based Recommendations, Content-Based Filtering, Collaborative Filtering, Recommender Systems, User Behavior Modeling, Personalization Algorithms

Employee HR Policy Assistant

HR Retrieve and generate policy-compliant answers to employee queries on leave, reimbursements, and benefits using organizational knowledge sources. Tools and Concepts: Retrieval-Augmented Generation (RAG), Chunking, Embeddings, Vector Databases, Information Retrieval, LLM Grounding, Question Answering Systems

Banking Customer Service Copilot

FINANCE Evaluate and optimize a customer service assistant to deliver accurate, compliant, and consistent responses grounded in verified internal knowledge sources. Tools and Concepts: RAG, ROUGE, BERTScore, LLM-as-a-Judge, Prompt Optimization, Evaluation Metrics, Hallucination Detection, Response Validation, LLM Reliability

Autonomous SaaS Support Triage Agent

TECH Monitor support requests, classify intent, retrieve relevant customer context and resolutions, and draft contextual response recommendations for review. Tools and Concepts: AI Agents, Intent Classification, RAG, Email Processing, Context Retrieval, Workflow Automation, Response Generation

Competitive Market Intelligence Platform

RETAIL Collect and analyze competitor and market data using multiple agents, then consolidate insights into executive-ready reports. Tools and Concepts: Multi-Agent Systems, Adaptive RAG, Sentiment Analysis, Data Aggregation, Information Retrieval, Report Generation, Workflow Orchestration

Projects and Case Studies

Engage in projects and real-world case studies using emerging tools and technologies across sectors

  • AI-Assisted

    Coding

  • 10+

    case studies

  • Advanced AI

    Modules and Concepts

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RETAIL

Customer Personality Segmentation

Description

Analyze customer purchase and demographic data to identify distinct behavioral segments that enable personalized loyalty programs and targeted promotions.

Skills you will learn

  • EDA
  • K-Means
  • Gaussian Mixture Models
  • PCA
  • Clustering
  • Dimensionality Reduction
  • Feature Engineering
  • Customer Analytics
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MEDIA

OTT Platform Content Recommendation Engine

Description

Build a recommendation engine using viewing behavior and content metadata to improve discovery, increase watch time, and reduce churn.

Skills you will learn

  • Rank-Based Recommendations
  • Content-Based Filtering
  • Collaborative Filtering
  • Recommender Systems
  • User Behavior Analysis
  • Ranking Models
  • Personalization Algorithms
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LEGAL

RAG-Based Legal Contract Review Assistant

Description

Build a contract review assistant that retrieves and analyzes clauses from internal contract repositories to support faster, more consistent legal review.

Skills you will learn

  • Retrieval-Augmented Generation (RAG)
  • Chunking
  • Embeddings
  • Vector Databases
  • Document Analysis
  • Information Retrieval
  • LLM Grounding
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FINANCE

Multi-Agent Financial Research Assistant

Description

Build a multi-agent system that gathers, analyzes, and synthesizes financial data from filings, internal research, and external sources into structured sector briefings.

Skills you will learn

  • Multi-Agent Systems
  • Adaptive RAG
  • Web Search
  • Sentiment Analysis
  • Information Retrieval
  • Orchestration
  • Tool Use
  • Evaluation Metrics
  • Handoff Reliability

Languages and Tools covered

Build a solid foundation in popular/advanced tools and frameworks top employers seek

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    Python

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    Google Colab

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    VS Code (Visual Studio Code)

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    OpenAI

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    ChatGPT

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    LangChain

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    LangGraph

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    Claude

Earn a certificate of completion from MIT IDSS

Certificate from the MIT School of Engineering and IDSS upon successful completion of the program

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    World #1

    MIT ranks #1 in World Universities – QS World University Rankings, 2025

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    U.S. #2

    MIT ranks #2 among National Universities – U.S. News & World Report Rankings, 2024–2025

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* Image for illustration only. Certificate subject to change.

Program Faculty

  • Stefanie Jegelka - Faculty Director

    Stefanie Jegelka

    Associate Professor, EECS and IDSS

    Expert in algorithms and optimization for AI.

    Pioneer advancing theoretical machine learning foundations.

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  • Munther Dahleh - Faculty Director

    Munther Dahleh

    William A. Coolidge Professor, EECS and IDSS; Founding Director, IDSS

    Trailblazer in robust control and computational design.

    Director propelling interdisciplinary research and innovation.

    Know More
  • Caroline Uhler - Faculty Director

    Caroline Uhler

    Professor, EECS and IDSS

    Expert in computational biology, statistics, and systems.

    Award-winning scholar relentlessly driving transformative data insights.

    Know More
  • Devavrat Shah - Faculty Director

    Devavrat Shah

    Andrew (1956) and Erna Viterbi Professor, EECS and IDSS

    Renowned expert in large-scale network inference.

    Award-winning innovator in data-driven decisions.

    Know More
  • John N. Tsitsiklis - Faculty Director

    John N. Tsitsiklis

    Clarence J. Lebel Professor, Dept. of Electrical Engineering & Computer Science (EECS) at MIT

    Leader in optimization, control, and learning.

    Renowned scholar with multiple prestigious accolades.

    Know More

Program Mentors

Interact with dedicated and experienced industry experts who will guide you in your learning & career journey

  •  Jagan Chidella  - Mentor

    Jagan Chidella linkin icon

    Information Technology Specialist III (Principal Enterprise Architect) at California Department of Technology.
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  •  Aishwarya Krishna Allada  - Mentor

    Aishwarya Krishna Allada

    Senior Data Scientist
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  •  Anuj Saboo  - Mentor

    Anuj Saboo linkin icon

    Business Intelligence & Data Science Manager at BAT.
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  •  Reza Bagheri  - Mentor

    Reza Bagheri

    Data Scientist
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  •  Osama Sidahmed  - Mentor

    Osama Sidahmed linkin icon

    Data Scientist III at Fortra.
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  •  Venugopal Adep  - Mentor

    Venugopal Adep linkin icon

    AI Product Leader - General Manager at Jio Platforms Limited (JPL).
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  •  Chetan Jangamashetti  - Mentor

    Chetan Jangamashetti

    Product Data Scientist
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  •  Sriharsha Ramaraju  - Mentor

    Sriharsha Ramaraju linkin icon

    Senior Data Scientist at Psychiatry-UK.
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  •  Mohammad Raahemi  - Mentor

    Mohammad Raahemi linkin icon

    Data Scientist at Canada Border Services Agency.
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  •  Abhishek Kumar Mishra  - Mentor

    Abhishek Kumar Mishra linkin icon

    Manager - Data Science & ML Ops at Collinson.
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  •  Saurabh Kango  - Mentor

    Saurabh Kango linkin icon

    Manager Data and AI programs at Meta.
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Learners review

Learners review

  • learner image
    Watch story

    "The people behind the program were amazing, I believe this was best part of the program"

    The favourite part was the hackathon competition, where we had to combine everything that we had learnt and build the model

    Arlindo Almada

    ,

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    Watch story

    " Mentors help you understand difficult concepts and complete the course"

    Studying this course has placed me in a better position to offer good counseling in my field. I am going to stretch myself to work as a Data Scientist in the business industry. I see this opportunity as a dream come true.

    Berthy Buah

    STMIE Coordinator , Ghana Education Service

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    Watch story

    "Building Confidence in Big Data Management Without Prior Experience"

    Joined the program to learn handling big data and exceeded expectations. Gained valuable skills in Python and Machine Learning. Highly recommend it for anyone starting their data analytics journey!

    Chun Wing Ip

    Student , University Of Sydney

Course Fees

The course fee is USD 2,500

Invest in your career

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    Learn from world-renowned MIT IDSS faculty and top industry leaders

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    Build an impressive portfolio with 3 projects and 50+ case studies

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    Get personalized assistance with a dedicated Program Manager from Great Learning

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    Earn a certificate of completion from MIT IDSS and 8.0 Continuing Education Units (CEUs)

Take the next step

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Application Closes: 18th Jun 2026

Application Closes: 18th Jun 2026

Talk to our advisor for offers & course details

Application Process

The program follows a simple 3-step application process. The step-by-step process is outlined below.

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    1. Fill application form

    Apply by filling a simple online application form.

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    2. Application Screening

    A panel from Great Learning will review your application to determine your fit for the program your fit for the program.

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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.

Batch start date

Delivered in Collaboration with:

MIT Institute for Data, Systems, and Society (IDSS) is collaborating with online education provider Great Learning to offer AI and Data Science: Leveraging Responsible AI, Data and Statistics for Practical Impact. 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

Got more questions? Talk to us

Connect with our advisors and get your queries resolved

Speak with our expert +1 617 539 7216 or email to ai-ds.mit.idss@mygreatlearning.com

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