CourseVerdict

HarvardX Professional Certificate in Data Science vs MIT 6.S191 Introduction to Deep Learning

Same Bayesian formula, same rubric — so the difference in scores reflects the difference in the courses, not the difference in how we evaluated them.

Harvard University (edX, PH125.x series by Rafael Irizarry) · AI & ML Courses

HarvardX Professional Certificate in Data Science

3.8/ 5 · 42 opinions
26 positive9 neutral7 negative/ 42 total

Massachusetts Institute of Technology (introtodeeplearning.com) · AI & ML Courses

MIT 6.S191 Introduction to Deep Learning

4.3/ 5 · 33 opinions
21 positive8 neutral4 negative/ 33 total

Per-criterion

Content quality3.6 / 5

Nine-course breadth — R, visualisation, probability, inference, productivity tools, wrangling, linear regression, machine learning, capstone. Reviewers flag the Machine Learning course as poorly scaffolded with sharp difficulty jumps; the capstone is the strongest component.

Instructor3.5 / 5

Rafael Irizarry is a respected biostatistician (Simply Statistics, dsbook) and the content is academically solid. Pedagogically reviewers note examples pitched above true-beginner level and short videos that often defer to outside resources for depth.

Value for money3.9 / 5

One-time $792 for verified certificates across 9 courses (often discounted to ~$441), or free audit for everything except graded assignments and the certificate. Reviewers call paid accountability the main value lever, plus a modest Harvard CV signal.

Support3.1 / 5

Self-paced edX experience — no live TA, no office hours, peer-graded capstone with inconsistent feedback. HN and blog reviewers consistently report supplementing the lectures with DataCamp, YouTube and Stack Overflow rather than course forums.

Real-world use3.3 / 5

Produces a real portfolio artefact (MovieLens recommender plus a self-chosen project) and a working R toolchain — RStudio, tidyverse, git. The honest gap is zero Python and zero SQL coverage; reviewers explicitly recommend pairing it before applying for analyst roles.

Content quality4.4 / 5

Reviewers consistently praise that the curriculum is refreshed annually and reaches modern topics — Transformers, generative modeling, LLMs, AI for science — that older courses do not cover. The honest catch is that depth is sacrificed for breadth in eight lectures.

Instructor4.2 / 5

Alexander Amini is described as clear, energetic and good at building intuition from first principles. The recurring caveat is the rotating-lecturer format — multiple reviewers wish Amini taught every lecture rather than alternating with guests and co-instructors.

Value for money5.0 / 5

Completely free — lectures on YouTube, slides on introtodeeplearning.com, labs on GitHub, runnable in free Google Colab. No paywall on any core material. The optional MIT Professional Certificate is not the path most reviewers take.

Support3.4 / 5

There is no official forum for online learners. Reviewers credit the GitHub issue tracker as the de facto Q&A channel, but multiple 2024-2025 issues report unresolved bugs in the PyTorch Sequential labs and outdated Colab dependencies.

Real-world use4.0 / 5

Three Colab labs (music generation, vision, LLMs) are short but hands-on in both TensorFlow and PyTorch. Reviewers note this is a foundation, not a job-ready portfolio — you finish with intuition and small projects, not a deployed model.

Scoring methodology applies identically to every course on the site — see the formula.