Finished with the feature selection and model training for the Capstone 2 project of #mlzoomcamp @DataTalksClub Now will start the engineering part.

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Finished with the feature selection and model training for the Capstone 2 project of #mlzoomcamp @DataTalksClub Now will start the engineering part.
Completed the Exploratory Data Analysis of the dataset for Capstone 2 project in the #mlzoomcamp @DataTalksClub .
It appears God head my prayers and the deadlines for all 3 events were extended. A big thank you to the team of #mlzoomcamp @DataTalksClub
Got to know while searching our slack channel at #mlzoomcamp @DataTalksClub that we can combine the Capstone2 with the competition. At least the most time consuming parts of the project : EDA & model training can be done same for both project & competition and save ample time
Trying my hand at forecasting with time series analysis 📈. Lot of new things to learn 🤖 and excited about it . But time ⏰ is short and the submission dates approaches 😨 in #mlzoomcamp @DataTalksClub
Now its time ⏰ for the Capstone 2, the Article and the Kaggle competition in the #mlzoomcamp @DataTalksClub. The most daunting 😨 thing about that is there is only a week for accomplishing all 3 tasks. I hope to God there is a possible way for drawing all these to a close🙏
Wrapping up the capstone 1 project for #mlzoomcamp @DataTalksClub for submission. Have a lot to do in so little time
CNN Model Training for Image Classification Project
Finished with the model training for my Capstone 1 project for #mlzoomcamp @DataTalksClub. Trained and tuned models with various combinations of CNN model architecture (with or without extra inner layers) and adjusted learning rates & inner layer size & more to get best model.