📊 Handling Skewed Data: Practical Techniques for Better Models🚀
Join us for a live session on March 19 at 11 AM PDT with Ammar Asim, Data Engineer Trainee at Data Science Dojo. Learn how skewed datasets impact models and insights, explore resampling techniques like SMOTE, normalization, and stratified sampling, and get hands-on Python demos to apply these methods effectively.
🔗 RSVP now to secure your spot:
hubs.la/Q0380Zf10
What we will cover:
- Gain a deep understanding of how skewed datasets impact machine learning models and analytical outcomes.
- Step-by-step Python implementations of techniques to address data skewness, including normalization and transformation methods, resampling approaches like SMOTE, and stratified sampling.
- Breakdown of the theoretical foundations behind these methods to understand how to apply them effectively in real-world scenarios and when to use each approach for optimal results.
- Explore how language models deal with imbalanced text data, techniques for managing rare words and underrepresented topics, and bias mitigation strategies in NLP models.
#DataScience #MachineLearning #AIModels #DataPreprocessing #SkewedDataset #Python #AI