Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Track Continuation #15

Open
kabirnagpal opened this issue Jul 9, 2020 · 7 comments
Open

Track Continuation #15

kabirnagpal opened this issue Jul 9, 2020 · 7 comments
Labels
enhancement New feature or request

Comments

@kabirnagpal
Copy link
Owner

We want to take the repository forward to 14 Weeks that will roughly account for 100 Days.

  • Deep Learning Code shall be included

  • NLP processing and code shall be included

  • Project links need to be included.

@kabirnagpal
Copy link
Owner Author

@tarushi98 @l-ightmare @radioactive11 @subhankar01 @Ramitphi
Please discuss the curriculum.

@kabirnagpal kabirnagpal added the enhancement New feature or request label Jul 10, 2020
@tarushi98
Copy link
Contributor

tarushi98 commented Jul 10, 2020

I feel in deep learningl we should cover 5 topics and give each topic two weeks .
For eg: if one topic is introduction to neural networks , in which we cover what they are, how to lay the basic structure in tf, activation functions , loss functions , etc. We can distribute this in two weeks.
We can make one topic be NLP in this. This will acct for 10 weeks

This will give us 4 weeks for projects , in which we can cover projects like recommendation sys. If we want to give one week to each project then we will have to look for four projects.

@kabirnagpal
Copy link
Owner Author

kabirnagpal commented Jul 10, 2020

@tarushi98 Please give a detail of weeks like

  • Week 9:
  • Week 10:

Like that

@tarushi98
Copy link
Contributor

tarushi98 commented Jul 16, 2020

@kabirnagpal @radioactive11 @subhankar01 @Ramitphi @l-ightmare
Kabir , discussed an idea for the Deep Learning track. Check it out and let's discuss what all can be added.
We have thought of covering it this way:

  1. Explaining few basics by coding the Dog Cat classifier in either Keras or fastai or both
    2)Discussing preprocessing methods for NLP and implementing one Application.
  2. One implementation each of LSTM and RNN.
    These all can be covered for 2 weeks each.
    @kabirnagpal If I forgot something, please add.

@kabirnagpal
Copy link
Owner Author

  1. Week 9: NLP processing methods
  2. Week 10: Deep Learning ( explanation of concepts using a simple classifier in Keras or FastAI )
  3. Week 11: NLP using Deep Learning ( intro to RNN )

Please reply here on the thread and recommend ideas and changes
@tarushi98 @radioactive11 @subhankar01 @l-ightmare @Ramitphi

@kabirnagpal
Copy link
Owner Author

@charansoneji

@kabirnagpal
Copy link
Owner Author

kabirnagpal commented Jul 19, 2020

  1. week 9: Open CV and Yolo @l-ightmare @radioactive11
  2. week 10: MNIST, Cat Dog @charansoneji @subhankar01 @Ramitphi
  3. week 11: Transfer Learning, RNN: COVID @tarushi98 @kabirnagpal
  4. Week 12: NLP: preprocessing, glove, summarisation
  5. week 13: Embedding layers, FASTAI, Bert: optional
  6. week 14: Gans
  7. week 15: deployment: fast API

Project: Face recognition, Recommendation systems, Neural Style
@tarushi98 @radioactive11 @subhankar01 @Ramitphi @charansoneji @l-ightmare

Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
enhancement New feature or request
Projects
None yet
Development

No branches or pull requests

2 participants