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Post Graduate Program in AI and Machine Learning

Shaping the next wave of AI pioneers

  • Learn from the #3 ranked U.S. engineering institute
  • Gain insights on AI and ML from top Berkeley faculty
  • Earn Post Graduate Program certificate from Berkeley Executive Education
  • Weekly Live sessions with domain experts for applications and insights
Work Experience

Unlock Your Potential

Upcoming application deadline: Invalid liquid data

Program Overview

The Post Graduate Program in AI and Machine Learning by Berkeley Executive Education is designed for professionals seeking to build expertise in AI, Machine Learning, and GenAI. This hands-on, interdisciplinary AI/ML course covers everything from SQL, Python and data analysis to advanced topics like Neural Networks, Deep Learning, Natural Language Processing, Computer Vision, Reinforcement Learning, MLOps, and Cloud Deployment. Whether you’re starting out or advancing your AI career, this program delivers real-world tools, frameworks, and applications to help you lead in the age of AI.

2027

AI Talent Demand to Double by 2027
Source : Deloitte-Nasscom Report 2024

$17 billion

India’s AI market is projected to touch $17 billion by 2027
Source: NASSCOM-BCG Report
 ABOUT UNIVERSITY OF CALIFORNIA, BERKELEY AND THE BERKELEY COLLEGE OF ENGINEERING

ABOUT UNIVERSITY OF CALIFORNIA, BERKELEY AND THE BERKELEY COLLEGE OF ENGINEERING

The University of California is a public research university in Berkeley, California. It was founded in 1868 and serves as the flagship campus of the 10 campuses and 6 medical centers of the University of California. Berkeley has since grown to instruct over 45,000 students annually in approximately 350 undergraduate and graduate degree programs covering numerous disciplines. Berkeley ranks among the top three in the U.S. News & World Report Best Global Universities Rankings.

Berkeley Engineering is ranked among the top three engineering schools in the world because it offers dynamic, interdisciplinary, hands-on education. It challenges conventional thinking and values creativity and imagination. Its students and faculty are driven by social commitment and the desire to change the world. It is a village of entrepreneurs and collaborators within the big city of a renowned public university.

  • #3 In Best U.S. Engineering Schools (Source: US News & World Report,2025)

  • #110+ Nobel Laureates including faculty, researchers and alumni (Source: news.berkeley.edu)

Program Highlights

Program Highlights Ranking

Ranked #3 in Best U.S. Engineering Schools by U.S. News & world report

Program Highlights Recorded Lectures

Taught by UC Berkeley Faculty through Weekly Recorded Lectures

Program Highlights Certificate

Earn ‘Post Graduate Program’ certificate from UC Berkeley Executive Education

Program Highlights AI and ML industry experts

Weekly live sessions & hands-on application by top AI and ML domain experts

Program Highlights Capstone Project

2-Week Capstone Project for Real-World AI and ML challenges

Program Highlights Tools and libraries

Virtual lab access with 25+ Tools and libraries

Program Highlights Career Services

Career Services – IIMJobs Pro access, resume builder tool, career prep modules

Note: Domain expert is the Program Leader responsible for conducting the live sessions during weekends.

Learning Outcomes

Gain future-ready expertise in Artificial Intelligence and Machine Learning through a hands-on, application-driven AI/ML program. From core tools like Python and SQL to advanced topics such as Deep Learning, Natural Language Processing, and Generative AI, this program equips you to solve real-world challenges and demonstrate your skills with confidence.

Learning Outcomes Develop a strong foundation

Foundational Knowledge


Develop a strong understanding of core ML/AI concepts and select optimal ML models for diverse business scenarios

Learning Outcomes Learn from Berkeley’s globally renowned faculty

Faculty-Led Learning


Learn from Berkeley’s globally renowned faculty and earn a verified digital certificate from Berkeley Executive Education

Learning Outcomes Engage with industry experts

Industry Engagement


Interact with leading domain experts to explore the technical and strategic business applications of ML/AI

Learning Outcomes Implement the complete ML data science lifecycle

Practical Implementation


Apply the full ML/data science lifecycle to develop real-world solutions for organizational challenges

Learning Outcomes Discover innovative applications

Generative AI Innovations


Discover cutting-edge applications of generative AI to enhance business transformation and operational efficiency

Learning Outcomes Build a professional, market-ready GitHub portfolio

Evaluating Gen AI Models


Analyze generative AI models such as ChatGPT and test their efficacy

Modules

This pillar builds a strong base in machine learning and artificial intelligence by introducing key concepts, statistical fundamentals, and data analytics principles. Through real-world case contexts and hands-on experience with industry-standard tools like Python, Jupyter, and pandas, you will learn how to analyze, visualize, and derive business insights from data.

Module 1: Introduction to Machine Learning

Get introduced to the fundamentals of Machine Learning, including key types, real-world applications, and the model-building process, with a focus on supervised and unsupervised learning.

Module 2: Fundamentals of Statistics and Distribution Functions

Understand how data behaves by exploring the fundamentals of statistics—learning how to summarize, interpret, and draw insights from data through distribution patterns, variability, and sampling methods.

Module 3: Introduction to Data Analytics

Gain a foundational understanding of data analytics and its key types—descriptive, diagnostic, predictive, and prescriptive. Learn how these approaches are applied to solve real-world business problems effectively.

Module 4: Fundamentals of Data Analytics

Learn how to prepare and refine data for analysis through effective cleaning and manipulation using Pandas. Build intuitive visualizations with Matplotlib and Seaborn to uncover insights and tell compelling data stories.

Module 5: Practical Applications I

Gain hands-on experience through Python-based assignments and real-world projects focused on data handling, cleaning, and exploratory data analysis to strengthen your foundational analytics skills.

This pillar offers an in-depth exploration of key machine learning techniques, including clustering, regression, classification, feature engineering, and time series forecasting. With a strong focus on hands-on learning, the module equips learners with the tools and insights needed to design, evaluate, and deploy robust ML solutions across diverse business contexts.

Module 6: Clustering and Principal Component Analysis

Explore unsupervised learning techniques like K-means and hierarchical clustering, while learning how dimensionality reduction through PCA can simplify complex datasets for more effective analysis.

Module 7: Linear and Multiple Regressions

Learn how to model relationships between variables using simple and multiple linear regression, and evaluate model performance with key metrics like R² and RMSE for informed, data-driven predictions.

Module 8: Feature Engineering and Overfitting

Explore methods to refine data, including handling missing values, encoding categorical variables, and scaling features, while ensuring models avoid overfitting or underfitting for optimal predictive performance.

Module 9: Model Selection and Regularization Optimize predictive performance through techniques such as cross-validation and grid search for fine-tuning models, while Lasso and Ridge regression help control complexity and prevent overfitting.

Module 10: Time Series Analysis and Forecasting

Deep dive into techniques to identify patterns in sequential data, capturing trends and seasonality while leveraging models like ARIMA and Exponential Smoothing for accurate future predictions.

Module 11: Practical Application II

Hands-on learning through case studies and mini projects, integrating exploratory data analysis (EDA) with modeling pipelines to apply theoretical concepts in real-world scenarios.

Module 12: Classification and k-Nearest Neighbors

Explore binary classification and the k-NN algorithm, leveraging distance metrics for pattern recognition while emphasizing model evaluation to ensure accurate and reliable predictions.

Module 13: Logistic Regression

Delve into the mathematical foundation of classification, using the sigmoid function for probability estimation while employing evaluation metrics like the confusion matrix and ROC-AUC to assess model performance.

Module 14: Decision Trees

Understand the CART algorithm for structured decision-making, utilizing measures like Gini Index and Entropy to optimize splits while addressing overfitting challenges to enhance model reliability.

Module 15: Gradient Descent and Optimization

Learn to refine model accuracy by minimizing cost functions, exploring batch and stochastic gradient descent techniques to optimize learning efficiency and convergence speed.

Module 16: Classifying Nonlinear Features

Explore advanced techniques like polynomial features and kernel methods to transform data, enabling models to capture complex relationships beyond linear separability for improved classification accuracy.

Module 17: Practical Application III

Prepare for capstone projects through structured assignments, guiding learners in executing comprehensive machine learning projects that consolidate their skills and knowledge.

These advanced modules delves into cutting-edge techniques in deep learning, generative AI, and recommendation systems. Participants will design and deploy robust ML solutions, fine-tune neural networks, and explore LLM-powered applications through hands-on projects. The capstone project ties it all together with real-world problem solving and implementation.

Module 18: Natural Language Processing

Learn the foundational techniques for extracting insights from text, equipping learners with the skills to process, analyze, and structure language data for effective machine learning applications.

Module 19: Recommendation System

Explore intelligent methods for personalized suggestions, leveraging user preferences and data-driven techniques to enhance relevance and accuracy in predictive recommendations.

Module 20: Ensemble Techniques

Get introduced to advanced methods that combine multiple models to enhance predictive accuracy and robustness, leveraging approaches like bagging and boosting to create powerful algorithms for superior decision-making.

Module 21: Deep Neural Networks I

Introduction to the foundational concepts of neural architectures, exploring structured learning through layered networks and efficient signal propagation to enable complex pattern recognition and decision-making.

Module 22: Deep Neural Networks II

Get exposed to the advanced learning techniques, refining model accuracy through backpropagation while exploring the power of convolutional neural networks (CNNs) and real-world applications of deep learning.

Module 23: Introduction to Generative AI

Master the fundamentals of AI-driven content creation, covering generative models, GANs, and the transformative impact of large language models (LLMs) and deep learning architectures.

Module 24: Capstone Project

The Capstone Project guides learners through the end-to-end execution of a real-world data science challenge, from problem scoping and exploratory analysis to model development and deployment, demonstrating applied expertise.

Tools and Libraries

Assignments

Assignments Visualization

Predictive Analytics


Predict customer coupon acceptance by analyzing visual patterns and probability distributions.

Assignments CRISP DS Framework

CRISP DS Framework


Analyze factors influencing used car prices and provide insights to guide dealership pricing strategies.

Assignments Compare Classifiers

Compare Classifiers


Compare the performance of various classification models using a bank marketing dataset.

Who Is This Program For?

This program equips learners with essential knowledge and hands-on experience in AI and ML, empowering them to confidently step into one of today’s most dynamic and in-demand career paths. Ideal for individuals with a background in technology or mathematics, it bridges theory with real-world application to help you thrive in this fast-evolving field.

  • Data scientists and data analysts: Looking to advance their skills in cutting-edge AI and ML techniques and tools.

  • Software engineers: Seeking to transition into AI and ML roles or enhance their existing projects with AI capabilities.

  • Business analysts and consultants: Aiming to leverage AI to drive data-driven insights and decision-making.

  • Product managers and product owners: Seeking to incorporate AI and ML into product development and strategy

Note: Basic knowledge of math and exposure to programming is required

Program Faculty

BH-PGPAIML.IN Faculty Gabriel Gomes
Gabriel Gomes

Researcher and Lecturer with the Mechanical Engineering Department and the Institute of Transportation Studies at Berkeley

ACADEMIC AFFILIATION & EDUCATION
- Lecturer and researcher in Mechanical Engineering and the Institute of Transportation Studies, UC Berkeley
- Ph.D. in Automatic Cont...

BH-PGPAIML.IN Faculty Joshua Hug
Joshua Hug

Associate Teaching Professor with the Department of Electrical Engineering and Computer Sciences at Berkeley

ACADEMIC AFFILIATION & EDUCATION
- Lecturer in Electrical Engineering and Computer Sciences, UC Berkeley since 2014
Former lecturer at Princeton University (2011–2014)...

Certificate

Certificate

Participants who successfully complete at least 80% of the program requirements, including the capstone project, will receive a verified digital certificate of completion from Berkeley Executive Education.

The digital certificate will be emailed to participants using the name provided during registration.

Note: All certificate images are for illustrative purposes only and may be subject to change at the discretion of Berkeley.

This online certificate program does not grant academic credit or a degree from Berkeley

Emeritus Career Services Benefits

Career Services Included IIMJobs Pro subscription for 6 months

IIMJobs Pro subscription for 6 months

  • Spotlight and profile boost for applied jobs

  • Chat with recruiters who shortlist your profile

  • Access to job insights

Career Services Included Resume-builder tool

Resume-builder tool

  • 6-month access to DIY resume builder

  • Auto resume creator with optimization suggestions

  • Unlimited resume iterations within the duration

Career Services Included Career preparation modules

Career preparation modules

  • Resume and Cover Letter Essentials

  • Maximizing LinkedIn and Job Search Strategy

  • Interview Preparation and Personal Branding

Note: -

Berkeley Executive Education or Emeritus do not promise or guarantee a job or progression in your current job. Career Services is only offered as a service that empowers you to manage your career proactively. The Career Services mentioned here are offered by Emeritus. Berkeley Executive Education is NOT involved in any way and makes no commitments regarding the Career Services mentioned here.

Registration for this program is done through Emeritus. You can contact us at Berkeley-india@emeritus.org

  • This program is open for enrolments for residents of India only.

FAQs

This program is taught by both Berkeley faculty and domain experts. Weekly recorded videos are by Berkeley faculty and weekly live sessions are conducted by domain experts. A few weeks will not have recorded lectures and will only have live sessions by domain experts.

Assignments will be graded by industry practitioners who support participants in their learning journeys and/or by the Emeritus grading team.

An assignment that is not submitted by the due date is late. Late assignments will be accepted until one week after the program end date, which is published on the program home page.

This program is designed with some of the best faculty to cover relevant topics in a manner that creates positive career outcomes. Additionally, we provide a 6-month IIMJobs Pro Membership with access to job insights, recruiter actions, profile boosts, and an AI-powered resume builder. Career prep modules on resumes, LinkedIn profile optimization, job navigation and interview preparation are also provided.

Upon, successful completion of the program, you will receive a smart digital certificate. This can be shared with friends, family, schools or potential employers. You can use it in your cover letter and resume and/or display it on your LinkedIn profile.

You will have access to the online learning platform and all the videos and program materials for 12 months following the program end date. Access to the learning platform is restricted to registered participants per the terms of agreement.

Yes, the qualifying mark is 80%.

Early registrations are encouraged. Seats fill up quickly!

Flexible payment options are available.

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