ONLINE COURSE

Applied Generative AI for Digital Transformation

Inquiring For
Work Experience

Overview

This 8-week online program from MIT Professional Education provides professionals with practical tools to apply generative AI across business functions. Designed for leaders, managers, and professionals from diverse industries, it emphasizes real-world use cases, automation, prompt engineering, and ethical implementation. 

Why enroll in this course?

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Drive digital transformation in your organization by applying the core principles of generative AI to real-world business challenges

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Use prompt engineering to automate workflows, boost efficiency, and streamline everyday tasks across teams. 

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Build an AI-ready culture by understanding ethical considerations, governance risks, and responsible implementation strategies

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Explore tools like ChatGPT and other emerging GenAI platforms to enhance productivity and unlock innovation

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Join two live sessions with MIT instructors, plus up to eight interactive sessions with industry experts, learning facilitators, and global peers

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Gain access to curated supplementary resources that deepen your understanding and extend your learning beyond the core modules. 

What will you learn?

  • Learn about the history, development, and current applications of generative AI.

  • Learn the diverse applications of generative AI across fields such as art, biology, emotional support, and learning.

  • Understand and implement prompt engineering to improve productivity.

  • Learn strategies for automating organizational workflows with generative AI.

  • Understand the dynamics of reinforcement learning and the power of data search in generative AI.

  • Manage the ethics, compliance, and risks involved in utilizing generative AI.

  • Understand how generative AI can unlock new digital transformation opportunities for your organization.

  • Identify your organization’s technological and cultural needs to effectively leverage artificial intelligence.

Course outline

The Applied Generative AI for Digital Transformation program explores how generative AI technology creates original and innovative content, driving an organization's digital transformation. Integrating technical expertise with management insights, ethical considerations, and human factors, this 8-week program offers a holistic understanding of digital transformation strategies powered by artificial intelligence.

Who is this online course for?

  • Senior leaders in charge of making decisions regarding generative AI initiatives in their organizations.

  • Technology leaders seeking to master the latest best practices for adopting and optimizing generative AI systems to enhance business outcomes.

  • Senior and mid-career executives interested in the potential applications of generative AI in their organizations.

  • Innovation managers, sales and product managers, and marketing and CX professionals seeking to leverage generative AI to create new products, content, and personalized customer experiences.

  • Venture capital, private equity, and/or pension fund investors interested in the investment opportunities created by generative AI.

  • Professionals from all industries and sectors interested in joining a dynamic learning ecosystem.

Prerequisites: No prior background in analytics, computer science, coding or machine learning is required.

Instructors

MPE - Faculty - John R. Williams
Prof. John R. Williams

Professor of Information Engineering, Civil and Environmental Engineering and Director of MIT Geospatial Data Center, and a faculty member in the Center for Computational Science and Engineering part of the Schwarzman School of Computer Science

MPE - Faculty - Abel Sanchez
Dr. Abel Sanchez

Executive Director of MIT’s Geospatial Data Center, Research Scientist; Center for Complex Engineering Systems, Sociotechnical Systems Research Center, under the Schwarzman School of Computer Science

Faculty contributor

MPE - Faculty - Armando Solar Lezama
Prof. Armando Solar-Lezama

Professor in MIT’s Department of Electrical Engineering and Computer Science; Head of Computer-Assisted Programming Group and Associate Director and COO of MIT Computer Science and Artificial Intelligence Laboratory

Industry contributors

MPE - Faculty - Jacob Depriest
Jacob Depriest

Deputy Chief Security Officer

MPE - Faculty - Susan Doniz
Susan Doniz

Chief Information Officer and Senior Vice President of Information Technology and Data Analytics

MPE - Faculty - Katie M Lewis
Katie M. Lewis

Generative AI Researcher at Runway

MPE - Faculty - Mark Schwartz
Mark Schwartz

CIO and Enterprise Strategist

Past participants profile

Work Experience

Work Experience

Top Industries

Top Industries

Top Countries

Top Countries

Participant testimonials

This course is excellent for learning about the fundamentals of generative AI. It covers various concepts such as limitations, applications to your workplace organization (i.e., tech and business rela...
MPE - Alumni - Ariane Nissenbaum
Ariane Nissenbaum
Senior Associate Scientist,
NanoVation Therapeutics
Enrolling in the MIT Applied Generative AI for Digital Transformation program has been a transformative experience for me, both personally and professionally. Coming from the IT solutions and services...
Alumni - Vineet Gulati
Vineet Gulati
Senior Client Partner,
Infobahn Softworld Inc
As a technology executive who has witnessed the rapid evolution of AI, I highly recommend MIT's Applied Generative AI for Digital Transformation course for its comprehensive and practical approach to ...
Alumni - Martin Limbach
Martin Limbach
Geschäftsführer (Managing Director),
PwC Solutions GmbH
Certificate

Certificate

All the participants who successfully complete their program will receive an MIT Professional Education Certificate of Completion, as well as Continuing Education Units (CEUs)*.

To obtain CEUs, complete the accreditation confirmation, which is available at the end of the course. CEUs are calculated for each course based on the number of learning hours.

*The Continuing Education Unit (CEU) is defined as 10 contact hours of ongoing learning to indicate the amount of time they have devoted to a non-credit/non-degree professional development program.

To understand whether or not these CEUs may be applied toward professional certification, licensing requirements, or other required training or continuing education hours, please consult your training department or licensing authority directly.

Didn't find what you were looking for? Schedule a call with one of our Program Advisors or call us at +1 857 7668188.

Register now and boost your professional trajectory.

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