You're facing pressure to speed up model building. How do you balance it with thorough feature engineering?
In the fast-paced world of data science, the pressure to deliver predictive models quickly can often clash with the need for thorough feature engineering. As a data scientist, you might find yourself torn between the demands for speed and the pursuit of accuracy. Feature engineering is the process of selecting, modifying, or creating variables, known as features, that will be used to train a machine learning model. It's a critical step because the quality and relevance of these features can significantly impact the model's performance. Balancing rapid model development with detailed feature engineering requires a strategic approach, prioritizing efficiency without compromising on the integrity of your model.
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Tavishi JaglanData Science Manager @Publicis Sapient | 4xGoogle Cloud Certified | Gen AI | LLM | RAG | Graph RAG | LangChain | ML |…
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Harsh DhimanData Scientist @ EY | Data & AI | Technology Consulting | Forecasting | Predictive Maintenance
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Khushboo AlviSenior AI Engineer| Data Scientist |Top Data Science Voice| IIT Delhi| IET Lucknow| Generative AI | LLM | NLP |Deep…