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  3. Deep Learning for Computer Vision (LTAT.02.028)
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Deep Learning for Computer Vision 2024/25 spring

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Homework submission

Please review the following rules before submitting your assignment:

  1. Please, submit only .ipynb that you extract from the Colaboratory.
  2. Run your homework exercises before submitting (output should be present, preferably restart the kernel and press run all the cells).
  3. Do not change the description of tasks in red (even if there is a typo|mistake|etc).
  4. Please, make sure to avoid unnecessary long printouts.
  5. Each task should be solved right under the question of the task and not elsewhere.
  6. Solutions to both regular and bonus exercises should be submitted in one IPYNB file.

Note: The late days will be used automatically if you submit after the deadline unless you let us know in advance.

The following is the schedule for homeworks

This schedule can change (check Slack for the updates):

Homework #Assignment dateDeadline (23:59)
HW01February 19March 9
HW02March 12March 30
HW03April 2April 20

HW1 - CNNs in depth (Deadline: 09.03.2025)

This submission is closed

Project: dataset (Deadline: 23.03.2025)

This submission is closed

HW2 - Hands-on object detection and segmentation (Deadline: 30.03.2025)

This submission is closed

HW3 - Vision Transformers (Deadline: 20.04.2025)

This submission is closed

Project: Participation in Kaggle competitions (Deadline: 18.05.2025)

This submission is closed

Project: Final Project Presentation (Deadline: 28.05.2025)

Please, add your slides (as Google Slides) to this folder: https://drive.google.com/drive/folders/1T2llhlMuiLMEUpw0OtuHe3NA_njLYN-Y?usp=sharing

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