Prasanth Ganesan
@prash030
Scientist at @StanfordMed. Previously AI research fellow at NIH @nlm_lhc. Forbes 30 under 30. Signal processing and Machine learning. Views are my own.
ID: 319589130
https://med.stanford.edu/profiles/prasanth-ganesan 18-06-2011 11:29:17
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        An introductory talk by Christopher Manning Christopher Manning on “Large Language Models in 2025 – How much understanding and intelligence?” at the Workshop on a Public AI Assistant to Worldwide Knowledge at Stanford University, covering 3 eras of LLMs, RAG, Agents, DeepSeek-R1, using LLMs, ….
                        
                    
                    
                    
                
        
        
        
        
        Can LLMs learn to reason better by "cheating"?🤯 Excited to introduce #cheatsheet: a dynamic memory module enabling LLMs to learn + reuse insights from tackling previous problems 🎯Claude3.5 23% ➡️ 50% AIME 2024 🎯GPT4o 10% ➡️ 99% on Game of 24 Great job Mirac Suzgun w/ awesome
                        
                    
                    
                    
                
        🎉 Proud moment! I-SENSE Faculty Fellow Dr. Behnaz Ghoraani, a leader in biomedical data science & smart health tech, is FAU’s Scholar of the Year! Honored at the 56th Honors Convocation for groundbreaking research improving global health. 🌍❤️ #FAU #Innovation #GoOwls
                        
                    
                    
                    
                
        Happening now: Stanford Biodesign New Arrhythmia Technologies Retreat at #SanDiego ! Opening remarks from Paul J Wang, MD Sanjiv Narayan . Great talks coming up!
                        
                    
                    
                    
                
        Why do we need #AI in #cardiacEP ? AI models can do tasks beyond humans' capability. Learning features unknown to humans, forecasting, automated remote monitoring, etc. Need more collaborative efforts to bring AI into practice. Great talk by Tina Baykaner! Stanford Biodesign
                        
                    
                    
                    
                
        Great reminders from Sanjiv Narayan re: Mapping in the current era - we still have work to do! * EGMs ≠ Action Potentials * How to we compare across #AI models? Very tough to do * with implementation of AI, outcome & workflow need better synchronization #StanfordBiodesign2025