Develop Successful Deep Learning Project with this 10 Steps formula
Prodramp
Following are the 10 steps you can follow for a Deep Learning project success.
- Understand & Define The problem: Understand the problem first and then define it clearly and you are ready now
- Prepare your data: It’s all about your data, make sure it ready for the real problems
- Choosing right method: You will not get it right at first time, still you need something to be on right track
- Applying Baseline Approach: Use subset of the problem and use simple estimator to get feet wet
- Using Appropriate Architecture: It’s like selecting adequate weapon depending to the fight you are in
- Appropriate Training Strategy: Choose the best fit training strategy and apply hyperparameter tuning
- Stop Overfitting with Regularization: Build real learning solution, not the one which cheat through learning
- Enhance through Augmentation: Add various data into the mix to enhance your results
- Add Model Interpretability: Stay away from Black box results by adding proper model understanding
- Deploy and Monitor Model: Consume your model with its deployment and monitor it
== Video Timeline == (00:00) Content Intro (01:25) 1. Understand & Define The problem (03:03) 2. Prepare your data (04:45) 3. Choosing right method (07:00) 4. Applying Baseline Approach (08:08) 5. Using Appropriate Architecture (10:20) 6. Appropriate Training Strategy (13:20) 7. Stop Overfitting with Regularization (14:50) 8. Enhance through Augmentation (16:50) 9. Add Model Interpretability (18:20) 10. Deploy and Monitor Model (21:15) Conclusion
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Content Creator: Avkash Chauhan (@avkashchauhan) https://www.linkedin.com/in/avkashchauhan
Tags: #generativeart #stabilitydiffusion #blender3d #chatgpt #promptengineering #llm #stabilityai ... https://www.youtube.com/watch?v=jeebpmeiA1E
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