abhisheks008 / DL-Simplified

Deep Learning Simplified is an Open-source repository, containing beginner to advance level deep learning projects for the contributors, who are willing to start their journey in Deep Learning. Devfolio URL, https://devfolio.co/projects/deep-learning-simplified-f013
https://quine.sh/repo/abhisheks008-DL-Simplified-499023976
MIT License
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IoT Components Analysis using DL #504

Open abhisheks008 opened 2 months ago

abhisheks008 commented 2 months ago

Deep Learning Simplified Repository (Proposing new issue)

:red_circle: Project Title : IoT Components Analysis using DL
:red_circle: Aim : The aim is to analyze the components using deep learning methods.
:red_circle: Dataset : https://www.kaggle.com/datasets/yashpatawarijain/iot-components-images
:red_circle: Approach : Try to use 3-4 algorithms to implement the models and compare all the algorithms to find out the best fitted algorithm for the model by checking the accuracy scores. Also do not forget to do a exploratory data analysis before creating any model.


📍 Follow the Guidelines to Contribute in the Project :


:red_circle::yellow_circle: Points to Note :


:white_check_mark: To be Mentioned while taking the issue :


Happy Contributing 🚀

All the best. Enjoy your open source journey ahead. 😎

tushtithakur commented 1 month ago

Hi , I'm excited to contribute to this project. Could you please assign me? Looking forward to getting started! @abhisheks008

Full name : Tushti Thakur GitHub Profile Link : https://github.com/tushtithakur Email ID : tushtithakur1234@gmail.com Approach for this Project : Implement different deep learning algorithms using the dataset, evaluate it and compare performance. What is your participant role? GSSoC 2024

abhisheks008 commented 1 month ago

Hi @tushtithakur wait for the induction session to complete by today evening, after that issues will be assigned to the contributors.

tushtithakur commented 1 month ago

@abhisheks008 Sure sir, I'll wait for the induction session to be completed. Thank you for the update!

Subhranil2004 commented 1 month ago

Hi @abhisheks008 , I am willing to contribute to this issue! Please assign me to it.

chelsi-k commented 1 month ago

Hi, I'd like to work on this issue. Full name : Chelsi Kothari GitHub Profile Link : https://github.com/chelsi-k Email ID : chelsikothari@gmail.com Participant ID (if applicable): Approach for this Project :

  1. Leveraging pre-trained models like ResNet or EfficientNet to improve accuracy and reduce training time.
  2. Using YOLO to detect different objects, and annotate them using bounding boxes. What is your participant role? GSSoC 2024 Contributor
abhisheks008 commented 1 month ago

Hi @Subhranil2004 and @chelsi-k I have gone through both of your approaches. I found out that Chelsi's approach is bit brief than the other one. Hence going with @chelsi-k.

Issue assigned to you @chelsi-k

@Subhranil2004 you can check out other issues present here in the repo. If you find all the issues are alloted, wait for some time, I'll create some new issues. I hope you understand.

Subhranil2004 commented 1 month ago

Hi @Subhranil2004 and @chelsi-k I have gone through both of your approaches. I found out that Chelsi's approach is bit brief than the other one. Hence going with @chelsi-k.

Issue assigned to you @chelsi-k

@Subhranil2004 you can check out other issues present here in the repo. If you find all the issues are alloted, wait for some time, I'll create some new issues. I hope you understand.

I could have elaborated about my approach if you would have asked...anyways, I'll check the other issues.

abhisheks008 commented 1 month ago

Hi @Subhranil2004 and @chelsi-k I have gone through both of your approaches. I found out that Chelsi's approach is bit brief than the other one. Hence going with @chelsi-k. Issue assigned to you @chelsi-k @Subhranil2004 you can check out other issues present here in the repo. If you find all the issues are alloted, wait for some time, I'll create some new issues. I hope you understand.

I could have elaborated about my approach if you would have asked...anyways, I'll check the other issues.

Sorry for that mate. After all it's a competition, you should've represented your approach in a better way in the first place.