Great Learning
Great Learning is a global ed-tech company for professional and higher education. In this wiki, it appears as the delivery collaborator for MIT Professional Education’s Applied AI and Data Science Program [src-060].
Key facts
- Type: Ed-tech company / program delivery partner
- Source role: Collaborator delivering the MIT Applied AI and Data Science Program with MIT Professional Education [src-060]
- Scale claim in brochure: 13 million+ learners from over 170 countries [src-060]
- Partner positioning: Programs developed with institutions such as MIT Professional Education, Johns Hopkins University, The University of Texas at Austin, Northwestern School of Professional Studies, Deakin University, and Great Lakes Institute of Management [src-060]
- Program role: Application screening, program manager support, industry mentorship, live mentored sessions, and learner-success infrastructure [src-060]
What it does
The brochure positions Great Learning as the operational and mentorship layer around MIT Professional Education’s curriculum. Learners receive program-manager support, mentored learning sessions, application screening, and access to data science and machine learning mentors from industry [src-060].
Related
- See also: MIT Professional Education, MIT Applied AI and Data Science Program, Data Science & AI Bootcamp
Source references
- [src-060] MIT Professional Education / Great Learning — “MIT Applied AI and Data Science Program Brochure” (2025-12)
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