How can you scale A/B testing for personalization and recommendation with large datasets?
A/B testing is a powerful method to compare the effectiveness of different versions of a product or service, such as a website, an app, or a recommendation system. However, when you have large datasets and complex personalization algorithms, A/B testing can become challenging and costly. How can you scale A/B testing for personalization and recommendation with large datasets? Here are some tips and best practices to help you.
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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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Lavanya MAI/ML Engineer | Data Analyst | Python | SQL | Power BI | Excel | Machine Learning & NLP Enthusiast
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Sanjeeb TiwaryData-driven problem solver with a passion for turning complex challenges into tangible business outcomes.