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Abhishek Sharma

Head of Modelling and Data Science

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Abhishek Sharma is a seasoned data scientist with more than 13 years of experience spanning various domains. He currently leads the Generative AI solutions practice at Merkle, where he oversees teams developing machine learning-powered solutions to optimize business workflows. Abhishek is dedicated to mentoring the next generation of data science professionals and promoting a culture of knowledge sharing.

The field of Generative AI has seen rapid advancements, yet the challenge remains in effectively measuring and validating these systems’ outputs. This session provides a comprehensive overview of the evaluation techniques that are pivotal for Generative AI systems, particularly those involving retrieval-augmented generation (RAG). We will dive into the intricacies of retrieval evaluation, discussing key metrics that help assess the relevance and accuracy of information retrieved by AI. Following this, we transition into evaluating generative aspects, exploring how these metrics ensure the generated content meets the desired standards of coherence and relevance.

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Managing and scaling ML workloads have never been a bigger challenge in the past. Data scientists are looking for collaboration, building, training, and re-iterating thousands of AI experiments. On the flip side ML engineers are looking for distributed training, artifact management, and automated deployment for high performance

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Managing and scaling ML workloads have never been a bigger challenge in the past. Data scientists are looking for collaboration, building, training, and re-iterating thousands of AI experiments. On the flip side ML engineers are looking for distributed training, artifact management, and automated deployment for high performance

Read More

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