3D Deep Learning Foundations — Course Syllabus

Reference syllabus for the 3D Deep Learning Foundations course delivered by the 3D Geodata Academy. It defines the learning objectives, audience, technical requirements, the module-by-module program, the assessment scheme, the results indicators and the legal terms of purchase.

"Code PointNet from scratch in PyTorch, train on real point clouds and understand every component — the foundation of modern 3D AI."

1. Course Overview

DimensionDetails
FormatSelf-paced online course delivered through the 3D Geodata Academy LMS.
Price€297 (excl. VAT). See section 7 for the legal payment terms.
Learning Objectives
  • Map the 3D DL landscape: Understand classification, segmentation, detection and point-based vs voxel-based tradeoffs. (M1)
  • Build PointNet from scratch: Code T-Net, shared MLPs and max pooling, and grasp why permutation invariance is the whole game. (M2)
  • Train, infer and evaluate: Build a custom Dataset class, train a working model and run production-grade inference. (M3, M4)
Target AudiencePython developers with NumPy skills and vague neural network awareness who want to build PointNet from scratch in PyTorch and understand every line of it.
PrerequisitesWorking Python notions help. Watch the prerequisites primer →
Estimated DurationApproximately 12 hours of focused work. Fully asynchronous.
AccessDirect enrolment via the 3D Geodata Academy. A 14-day legal cooling-off period applies.
Accessibility & DisabilityAll courses are open to learners with disabilities. A dedicated referent reviews each request to put the right pedagogical and technical adjustments in place. Referent: Dr. Florent Poux — howto@learngeodata.eu.
ContactDr. Florent Poux — howto@learngeodata.eu
3D Geodata Academy
A note from Dr. Florent PouxI wrote this course for the version of me who spent a weekend reading the PointNet paper and still could not explain the max pooling trick. If you have been there, this is the course that would have saved me that weekend and the twenty that came after.

2. Technical Stack & Pedagogical Means

3. Course Structure

ModuleTitle & Focus
M13D Deep Learning Methods
Classification, segmentation, detection and the point vs voxel decision.
M2PointNet Fundamentals
Understand PointNet at the block level, from T-Net to max pooling.
M3PointNet Data Pipeline
Build the data layer with a custom PyTorch Dataset class.
M4PointNet in Production
The full engineering loop: creation, training, inference and evaluation.
Why this structure, Dr. Florent PouxEach of the 4 modules ends with a quiz, and the quizzes are cumulative. Don't skip a module just because you think you know it. The gaps you didn't know you had show up in the final quiz.

M1 — 3D Deep Learning Methods

Classification, segmentation, detection and the point vs voxel decision.

M2 — PointNet Fundamentals

Understand PointNet at the block level, from T-Net to max pooling.

M3 — PointNet Data Pipeline

Build the data layer with a custom PyTorch Dataset class.

Mid-course checkpoint, Dr. Florent PouxWhen you reach M3 — PointNet Data Pipeline, stop and apply what you've learned to a dataset you actually care about. The back half of the course goes faster when the first half sits on a real example, not a toy one.

M4 — PointNet in Production

The full engineering loop: creation, training, inference and evaluation.

Expert tip — Dr. Florent PouxCode the T-Net before you copy any repo. Writing the alignment module yourself takes an afternoon and teaches you more about PointNet than a week of paper reading.

4. Assessment, Certificate & Grading

This is a standalone course: there is no project to defend and no oral examination. Evaluation is fully quiz-based, automated through the LMS.

StageActivityValidation
Before the courseOptional positioning quiz to calibrate prior knowledge.Informative — no minimum score.
During the courseEnd-of-module quiz (one per module, 10 to 15 questions).Score ≥ 70 % per quiz.
End of the courseFinal quiz covering all modules.Score ≥ 80 %.

Conditions to obtain the certificate

Grading scale

Successful learners receive the course certificate (PDF + verifiable digital badge) and join the Alumni registry.

Accessibility & disability: all evaluations can be adapted (extended time, alternative formats, oral or written substitution, screen-reader friendly versions) on request to the disability referent howto@learngeodata.eu.

5. Course Results & Quality Indicators

3D Geodata Academy publishes its course performance indicators transparently. Figures below cover this course and are updated at the end of each session.

IndicatorCurrent ResultTarget
Number of enrolled learnersData being consolidatedContinuous growth
Satisfaction rateData being consolidated> 95 %
Success rate (certificate obtained)Data being consolidated> 85 %
Drop-out / interruption rateData being consolidated< 5 %
Recommendation rateData being consolidated> 90 %

Indicators consolidated from in-LMS quizzes and end-of-course satisfaction surveys. Last update: April 2026.

6. Next Step

This course gives you the operational base. To go further with structured mentorship and a wider curriculum, secure your spot below or join the 3D AI Accelerator.

The 3D AI Accelerator adds direct mentorship with Dr. Florent Poux, full access to the complete course library (20+ courses), monthly analytics on the 3D spatial AI ecosystem, curated research papers and the private job board with reviews and notes on which roles are worth pursuing.

© 2026 3D Geodata Academy. Reference document 3DGA-SYL-3DDLF-V1.