speaker detail

Nikhil Rana

AI Consultant at Google Cloud

company logo

Nikhil is an applied data science professional with over a decade of experience developing and implementing Machine Learning, Deep Learning, and NLP-based solutions for various industries, such as Finance and FMCG. He is passionate about using data science to solve real-world problems and is always looking for new ways to use data to positively impact the world.

The future of enterprise AI hinges on customized language models optimized for specific domains. Small Language Models (SLMs) are more computationally efficient, requiring less memory and storage, and are often more effective during inference. Training and deploying SLMs is cost-effective, making them accessible to a broader range of businesses and ideal for edge computing applications. SLMs are more adaptable to specialized applications and can be fine-tuned for specific tasks more efficiently than larger models. In this session, we will explore the potential of fine-tuning SLMs, such as Gemma, to develop an AI-powered medical chatbot that can assist patients and healthcare providers by answering general medical questions about diseases, health conditions, and treatment options, as well as summarizing complex medical documents or articles with ease.

Read More

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

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

We use cookies essential for this site to function well. Please click to help us improve its usefulness with additional cookies. Learn about our use of cookies in our Privacy Policy & Cookies Policy.

Show details