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Jay Shah Podcast

76 Episodes

75 minutes | May 11, 2023
Using AI to improve maternal & child health in underserved communities of India | Aparna Taneja
Dr. Aparna Taneja works at Google Research in India on innovative projects driving real-world social impact. Her team collaborates with an NGO called ARMMAN with the mission to improve maternal and child health outcomes in underserved communities of India. Prior to Google she was a Post-Doc at Disney Research, Zurich, and has a PhD from the Computer Vision and Geometry Group in ETH Zurich and a Bachelor's in Computer Science from the Indian Institute of Technology, Delhi.Time stamps of the conversation00:00:46 Introductions00:01:20 Background and Interest in AI00:03:59 Satellite imaging and AI at Google00:08:30 Multi-Agent systems for social impact - part of AI for social good00:10:30 Awareness of AI benefits in non-tech fields00:13:42 Project SAHELI - improving maternal and child health using AI00:20:05 Intuition for methodology 00:22:07 Measuring impact on health00:27:42 Challenges when working with real-world data00:32:58 Problem scoping and defining research statements00:38:16 Disconnect between tech and non-tech communities while collaborating00:43:22 What motivates you, the theoretical or application side of research00:47:17 What research skills are a must when working on real-world challenges using AI00:50:33 Factors considered before doing a PhD00:54:08 Significance of Ph.D. for research roles in the industry00:58:15 Choosing industry vs Academia01:02:38 Managing personal life with a research career01:07:58 Advice to young students interested in AI on getting startedLearn more about Aparna here: https://research.google/people/106890/Research: https://scholar.google.com/citations?user=XtMi1L0AAAAJ&hl=enAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
94 minutes | May 3, 2023
Fixing fake news and misinformation online using Robust AI models | Prof. Srijan Kumar
Dr. Srijan Kumar is an Assistant professor at Georgia Tech with research interests in combating misinformation and harmful content on online platforms, building robust AI models prone to adversarial attacks, and behavior modeling for more accurate recommender systems. Before joining Georgia Tech, he was a postdoctoral fellow at Stanford University and completed his Ph.D. in computer science from the University of Maryland. He has received multiple awards for his research work, including Forbes 30u30 and being named a Kavli Fellow by the National Academy of Sciences.Time stamps of the conversation00:01:00 Introductions00:01:45 Background and Interest in AI00:05:27 Current research interests00:09:50 What is misinformation?00:15:07 ChatGPT and misinformation00:23:40 How can AI help detect misinformation?00:39:15 Twitter's Birdwatch platform to detect fake/misleading news00:56:38 Detecting fake bots on Twitter01:03:39 Adversarial training to build robust AI models01:05:31 Robustness vs Generalizability in machine learning01:11:40 Navigating your interest in the field of AI/machine learning01:19:22 Doing a Ph.D. and working in Industry vs Academia01:24:22 Focusing on Quality of Research rather than Quantity01:31:23 Advice to young people interested in AIDr. Kumar's homepage: https://cc.gatech.edu/~srijan/Twitter: https://twitter.com/srijankediaLinkedin: https://www.linkedin.com/in/srijankrAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
97 minutes | Mar 31, 2023
Combining knowledge of clinical medicine and Artificial Intelligence | Emma Rocheteau
Emma is a final-year medical student at the University of Cambridge and also pursuing her Ph.D. in Machine Learning. With her knowledge of clinical decision-making, she is working on research projects that leverage machine-learning techniques to improve clinical workflow. She will be taking her role as an academic doctor post her graduation. Time stamps of the conversation00:00:00 Introduction00:02:08 From clinical science to learning AI00:13:15 Learning the basics of Artificial Intelligence00:20:12 Promise of AI in medicine00:30:13 Do we really need interpretable AI models for clinical decision-making? 00:38:47 Using AI for more clinically-useful problems00:50:55 Facilitating interdisciplinary efforts00:54:06 Predicting length of stay in ICUs using convolutional neural networks01:03:04 AI for improving clinical workflows and biomarker discovery   01:07:55 Clustering disease trajectories in mechanically ventilated patients using machine learning01:16:37 ChatGPT for medical research or clinical decision making01:25:21 Quality over quantity of AI works published nowadays01:31:07 Advice to researchersEmma's Homepage: https://emmarocheteau.com/LinkedIn: https://www.linkedin.com/in/emma-rocheteau-125384132/Also check-out these talks on all available podcast platforms: https://jayshah.buzzsprout.comAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
10 minutes | Mar 29, 2023
Why are Transformer so effective in Large Language Models like ChatGPT
Understanding why and how transformers are so efficient in large language models nowadays such as #chatgpt and more.Watch the full podcast with Dr. Surbhi Goel here: https://youtu.be/stB0cY_fffoFind Dr. Goel on social media Website: https://www.surbhigoel.com/Linkedin: https://www.linkedin.com/in/surbhi-goel-5455b25aTwitter: https://twitter.com/surbhigoel_?lang=enLearning Theory Alliance: https://let-all.com/index.htmlAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
46 minutes | Feb 23, 2023
History of Large Language Models, Trustworthy AI, ChatGPT & more | Dr. Anupam Datta
Anupam is the co-founder and President of TruEra and prior to that, he was a Professor at Carnegie Mellon University for 15 years. TruEra provides AI solutions that help enterprises use machine learning, improve and monitor model quality, and build trust. His research and other efforts are focused on privacy, fairness, and building trustworthy machine-learning models. He holds a Ph.D. in computer science from Stanford University and Bachelor’s degree in same from IIT Kharagpur in India.Time stamps of the conversation00:50 Introductions01:45 Background and TruEra05:30 Trustworthy AI11:55 Validating Large models in the real world 16:15 History of NLP and large language models29:25 Opportunities and challenges with ChatGPT36:52 Evaluating the reliability of ChatGPT39:10 Existing tools that aid explainability 43:12 AI trends to look for in 2023 More about Dr. DattaWebsite: https://www.andrew.cmu.edu/user/danupam/Linkedin: https://www.linkedin.com/in/anupamdattaResearch: https://scholar.google.com/citations?user=oK3QM1wAAAAJ&hl=enAbout TruEra: https://truera.com/About the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
91 minutes | Feb 16, 2023
Theory of Machine Learning, Transformer models, ChatGPT & tips for research career | Dr. Surbhi Goel
Surbhi is an Assistant Professor at the University of Pennsylvania. She got her Ph.D. in Computer Science from UT Austin and prior to joining UPenn as an Assistant Professor, she was a postdoctoral researcher at Microsoft Research NYC in the Machine Learning group. She has research expertise in theoretical computer science & machine learning, with a particular focus on developing theoretical foundations for modern deep learning paradigms. She also is a part of building the Learning Theory Alliance community that organizes and conducts several events useful for researchers and students in their careers. Time stamps of the conversation00:00:54 Introduction00:01:54 Background and research interests00:05:03 Interest in Machine Learning Theory00:13:02 Understanding how deep learning works00:16:30 Transformer architecture00:25:40 Scale of data and big models00:31:28 Reasoning in deep learning 00:38:52 Theoretical perspective on AGI, consciousness, and sentience in AI00:46:00 Remaining updated to the latest research00:53:38 Should one do a Ph.D.? 00:57:45 Is a Ph.D. mandatory for machine learning industry positions?01:01:38 What makes a good research thesis?01:05:30 Some best practices in research01:12:20 Learning Theory Alliance Group01:14:25 Job interviews in academia for researchers01:20:00 Advice to young researchers and students01:25:02 Decision to become a ProfessorFind Dr. Goel on social media Website: https://www.surbhigoel.com/Linkedin: https://www.linkedin.com/in/surbhi-goel-5455b25aTwitter: https://twitter.com/surbhigoel_?lang=enLearning Theory Alliance: https://let-all.com/index.htmlAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
83 minutes | Dec 29, 2022
Making Machine Learning more accessible | Sebastian Raschka
Sebastian Raschka​ is the lead AI educator at GridAI. He is the author of the book "Machine Learning with PyTorch and Scikit Learn" and also a few other books that cover the fundamentals of #machinelearning and #deeplearning techniques and implementing them with Python. He is also an Assistant Professor of Statistics at the University of Wisconsin-Madison and has been actively involved in making ML more accessible to beginners through his blogs, video tutorials, tweets and of course his books. He also holds a doctorate in Computational and Quantitative Biology from Michigan State University.Time Stamps of the Podcast00:00:00 Introductions00:02:40 Entry point in AI/ML that made you interested in it00:05:30 How did you go about learning the basics and implementation of various methods?00:11:45 What makes Python ideal for learning Machine Learning recently?00:21:54 What is your book about and who is this for?00:33:55 What goes into writing a good technical book?00:40:50 Applying ML to toy datasets vs real-world research problems00:47:40 Choosing b/w machine learning methods & deep learning methods00:56:22 Large models vs architecture efficient models 01:01:25 Interpretability & Explainability in AI01:08:45 Insights for people interested in machine learning research, academia or PhD01:14:17 Keeping up with research in deep learningSebastian's homepage: https://sebastianraschka.com/Twitter: https://mobile.twitter.com/rasbtLinkedIn: https://www.linkedin.com/in/sebastianraschka/His book: https://www.amazon.com/Machine-Learning-PyTorch-Scikit-Learn-scikit-learn-ebook-dp-B09NW48MR1/dp/B09NW48MR1/Video Tutorials:  @SebastianRaschka  About the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
66 minutes | Dec 28, 2022
Current and future state of Artificial Intelligence in Healthcare | Dr. Matthew Lungren
Dr. Matthew Lungren is currently the Chief Medical Information Officer at Nuance Communications - Microsoft company, and also holds part-time appointments with the University of California San Francisco as an Associate Clinical Professor and also as adjunct faculty at Stanford and Duke University. He is a radiologist by training and has led and contributed to multiple projects that use AI and deep learning for medical imaging and precision medicine. Time stamps from the conversation00:00:55 Introduction00:01:46 Role as a Chief Medical Information Officer 00:05:25  Leading research projects in the industry00:08:45 Is AI ready for primetime use cases in the real world?00:12:40 Regulations on AI systems in healthcare00:17:25 Interpretability vs a robust validation framework00:25:22 Promising directions to mitigate data issues in medical research00:32:24 Stable diffusion models 00:34:06 Making datasets public00:39:00 Vision transformers for multi-modal models00:44:35 Biomarker discovery00:48:20 Sentiment of AI in medicine 00:53:26 Bridging the communication gap between computer scientists and medical experts01:01:42 Advice to young researchers from medical and engineering schoolsFind Dr. Lungren on social media Twitter: https://twitter.com/mattlungrenmdLinkedIn: https://www.linkedin.com/in/mattlungrenmd/About the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
72 minutes | Oct 31, 2022
AI for improving clinical trials & drug development, entrepreneurship & AI safety | Charles Fisher
Dr. Charles Fisher is the CEO and Founder of Unlearn(dot)AI which helps in faster drug development and efficient clinical trials. This year they also raised a series B funding of 50 million dollars. Charles holds a Ph.D. in biophysics from Harvard University and prior to founding Unlearn, he did his Postdoctorate at Boston University, followed by being a principal scientist at Pfizer and a machine learning engineer at a virtual reality company in silicon valley. Time stamps of the conversation00:00:30 Introduction00:01:16 What got you into Machine Learning?00:04:10 Learning the basics and implementation00:07:55 Digital twins for clinical trials and drug development00:13:06 Patient heterogeneity in medical research00:16:05 Error quantification of models00:17:17 ML models for drug development00:22:45 Adoption of AI in medical applications00:25:35 Building trust in AI systems 00:35:10 How to show AI models are safe in the real world?00:38:38 Moving from academia to industry to entrepreneurship00:45:08 Research projects in startups vs academia vs big companies00:53:12 Routine as a CEO00:57:50 Is a Ph.D. necessary for a research career in the industry?01:01:20 Taking inspiration from biology to improve machine learning01:05:25 Advice to young peopleAbout Charles:LinkedIn: https://www.linkedin.com/in/drckf/More about Unlearn: https://www.unlearn.ai/About the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
75 minutes | Sep 14, 2022
Recommendation systems, being an Applied Scientist & Building a good research career | Mina Ghashami
Mina Ghashami is an Applied Scientist in the Alexa Video team at Amazon Science alongside being a lecturer at Stanford University. Prior to joining Amazon, she was a Research Scientist at Visa Research working on recommendation systems built on transactions from users and a few other projects. She completed her Ph.D. in Computer Science from the University of Utah followed by a PostDoctoral position at Rutgers University. At Amazon, she is mainly focused on Video-based ranking recommendation systems, something we talk about in detail in this conversation. Time stamps of the conversation00:00:50 Introductions00:01:40 Alexa Video - Ranking and Recommendation research00:05:25 Feature engineering for recommendation systems00:08:30  Ground truth for training recommendation systems00:12:46 What does an Applied Scientist do? (at Amazon)00:19:17 What got you into AI? And specifically recommendation systems00:24:30 Matrix approximation00:27:15 Challenges in recommendation research00:32:00 What's more interesting, theoretical or applied side of research?00:37:10 Over parametrization vs generalizability 00:39:55 Managing academic and industry positions at the same time00:46:26 Should one do a Ph.D. for research roles in the industry?00:50:00 Skills learned while pursuing a PhD00:54:22 Deciding industry vs academia00:56:20 Coping up with research in deep learning01:02:14 What makes a good research dissertation?01:04:16 Advice to young students navigating their interest in machine learningTo learn more about Mina:Homepage: https://mina-ghashami.github.io/Linkedin: https://www.linkedin.com/in/minaghashamiResearch: https://scholar.google.com/citations?user=msJHsYcAAAAJ&hl=enAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
94 minutes | Sep 12, 2022
Role of a Principal Scientist do & AI in medicine | Alberto Santamaria-Pang, Microsoft
Alberto Santamaria-Pang is a Principal Applied Data Scientist at Microsoft.  He did his Ph.D. in computer science from the University of Houston and has a long experience in research and development on various AI projects including but not limited to medical imaging and deep learning. Prior to Microsoft, he was a principal scientist at GE research. He has led many research projects in industry and also government-funded projects, a few of which we will be discussing today. Time stamps of conversations:00:00:37 Introduction00:01:25 Background before you got into the industry00:04:17 Interest in AI and Medical Imaging00:05:54 What does a Principal Scientist do?00:10:00 What drives research in industry? Product or Theoretical pursuit?00:11:35 Learning skills relevant to a principal scientist00:15:14 Principal Investigator vs Principal Scientist00:21:00 How do industry and academia collaborate on research projects?00:25:30 Promise & challenges of AI in medical research and applications00:31:53 What should explainable AI look like?00:38:35 Adoption of AI in medical research00:43:00 Is AI generalizable? 00:44:36 AI for biomarker discovery00:51:42 Are large models useful in AI & Med space00:58:00 Why is there a lack of datasets?01:01:02 Do you think AI is scary?01:04:00 Where do we need innovation in AI precisely?01:10:20 Getting inspiration from bio-research to improve algorithms01:13:19 AI and molecular pathology for cancer research00:20:30 Should one get a Ph.D.?01:27:38 Advice for young people About Alberto:His research works: https://scholar.google.com/citations?user=sVahJxsAAAAJ&hl=enLinkedIn: https://www.linkedin.com/in/alberto-santamariaAbout the Host:Jay is a Ph.D. student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
145 minutes | Jun 27, 2022
Explainability, Human Aware AI & sentience in large language models | Dr. Subbarao Kambhampati
Are large language models really sentient or conscious? What is explainability (XAI) and how can we create human-aware AI systems for collaborative tasks? Dr. Subbarao Kambhampati sheds some light on these topics, generating explanations for human-in-loop AI systems and understanding 'intelligence' in context to AI systems. He is a Prof of Computer Science at Arizona State University and director of the Yochan lab at ASU where his research focuses on decision-making and planning specifically in the context of human-aware AI systems. He has received multiple awards for his research contributions. He has also been named a fellow of AAAI, AAAS, and ACM and also a distinguished alumnus from the University of Maryland and also recently IIT Madras.Time stamps of conversations:00:00:40 Introduction00:01:32 What got you interested in AI?00:07:40 Definition of intelligence that is not related to human intelligence00:13:40 Sentience vs intelligence in modern AI systems00:24:06 Human aware AI systems for better collaboration00:31:25 Modern AI becoming natural science instead of an engineering task00:37:35 Understanding symbolic concepts to generate accurate explanations00:56:45 Need for explainability and where01:13:00 What motivates you for research, the application associated or theoretical pursuit?01:18:47 Research in academia vs industry01:24:38 DALL-E performance and critiques01:45:40 What makes for a good research thesis? 01:59:06 Different trajectories of a good CS PhD student02:03:42 Focusing on measures vs metrics 02:15:23 Advice to students on getting started with AIArticles referred in the conversationAI as Natural Science?: https://cacm.acm.org/blogs/blog-cacm/261732-ai-as-an-ersatz-natural-science/fulltextPolanyi's Revenge and AI's New Romance with Tacit Knowledge: https://cacm.acm.org/magazines/2021/2/250077-polanyis-revenge-and-ais-new-romance-with-tacit-knowledge/fulltextMore about Prof. RaoHomepage: https://rakaposhi.eas.asu.edu/Twitter: https://twitter.com/rao2zAbout the Host:Jay is a PhD student at Arizona State University.Linkedin: https://www.linkedin.com/in/shahjay22/Twitter: https://twitter.com/jaygshah22Homepage: https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
63 minutes | Jan 17, 2022
Tips & Insights into Program Manager Role | Divy Thakkar, PM at Google Research
Divy is a Program Manager and one of the founding members of  Google research in India. He is actively involved and leading strategic programs that connect academia and research at Google, programs that focus on AI-for-Social-Good initiatives, and educational programs for schools in India with a particular focus on building computer science foundations.00:00:12 Introductions00:01:12 Background prior to joining Google00:08:40 Programs you are working on as a Program Manager at Google Research and what are your responsibilities00:14:35 Lifecycle of a program & various phases00:17:55 Getting involved in research while being a Program Manager00:25:55 Learning skills for strategic thinking as a PM00:35:08 How did you get your PM role at Google and what was the interview like?00:40:35 Resources people can use to prepare for PM interviews00:41:58 Difference b/w Product vs Program vs Technical Manager00:46:10 Previous experiences that helped develop skills for Program Manage role00:53:58 Tips on being more organized with workDivy's Homepage: https://sites.google.com/view/divythakkarTwitter: https://twitter.com/divy93tLinkedIn: https://www.linkedin.com/in/divythakkar/About the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#research #programmanager #googleresearch #india #aiforsocialgood #manager ***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
14 minutes | Jan 2, 2022
How do you decide which research problems to work on? Manish Gupta, Director of Google Research, India
Watch the full conversation with Dr. Manish Gupta here: https://youtu.be/-Tl6-DKxEMUDr. Manish Gupta is currently the Director of Google Research in India. Prior to that he was the Vice-president and led the Xerox Research Center in India majorly working on data analytics and mobile computing. Before that, he was also at IBM research in India leading the efforts and building a lab focused on high-performance computing and business analytics. He also led the efforts at Goldman Sachs developing technologies relating to cloud, databases, and networking aiding business functions. We also co-founded and was the CEO of an educational technology startup called VideoKen. Dr. Manish Gupta's Homepagehttps://www.iiitb.ac.in/faculty/manish-guptahttps://research.google/people/106704/About the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#research #ai #machinelearning #googleresearch #india #aiforsocialgood***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
6 minutes | Dec 9, 2021
Writing a good Research Thesis | Dr. Hanie Sedghi, Google Research
Check out the full conversation with Hanie here: https://youtu.be/hFJLuqaSakAHanie is a senior research scientist at Google Brain working on research problems related to understanding and improving deep learning techniques. She works on designing algorithms with theoretical guarantees such that they work efficiently in real-world applications.  Prior to that, she was a research scientist at Allen Institute of AI, and before that she was a Post-Doc fellow at UC Irvine. She graduated from USC with a Ph.D. with minors in Mathematics. Dr. Hanie Sedghi's linksTwitter: https://twitter.com/haniesedghi?ref_src=twsrc%5EtfwHomepage: https://haniesedghi.com/About the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#theoryofmachinelearning #deeplearning #ai #machinelearning #fundamentals***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
72 minutes | Nov 11, 2021
Building a research lab from scratch & using AI for Social Good, Manish Gupta Google Research India
Dr. Manish Gupta is currently the Director of Google Research in India. Prior to that he was the Vice-president and led the Xerox Research Center in India majorly working on data analytics and mobile computing. Before that he also at IBM research in India leading the efforts and building a lab focused on high-performance computing and business analytics. He also worked on the IBM Blue Gene supercomputer project in the early 2000s at IBM TJ Watson research center for which IBM received the National Medal of Technology and Innovation from the President of the US. He also led the efforts at Goldman Sachs developing technologies relating to cloud, databases, and networking aiding business functions. We also co-founded and was the CEO of an educational technology startup called VideoKen. He has received many distinguished awards for his efforts and has coauthored many academic papers in the domains of computer science. Time-Stamps00:00:00 Introductions00:01:50 What kind of research projects are you currently spearheading at Google Research and what does your work routine look like?00:06:30 What was your thought process prior to joining Google Research?00:13:40 What’s the difference between a Researcher | Senior Researcher | Director of research?00:23:00 What should robust AI systems look like?00:33:22 How do you decide which research problems to work on?00:46:46 What kind of challenges have you encountered while working on AI research problems specific to India?00:56:15 How do you design and evaluate the impact of these AI projects?00:59:27 What made you consider shifting back to India after a long streak of a career in the USA? What factors did you consider?01:03:06 Any skills you would suggest students nurture apart from technical expertise?01:05:40 There’s always a concern about AI usage and automation. Where do you think the balance lies?Dr. Manish Gupta's Homepagehttps://www.iiitb.ac.in/faculty/manish-guptahttps://research.google/people/106704/About the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#research #ai #machinelearning #googleresearch #india #aiforsocialgood***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
53 minutes | Nov 6, 2021
Benefits of understanding Theory of Deep Learning | Dr. Hanie Sedghi, Google Brain
Hanie is a senior research scientist at Google Brain working on research problems related to understanding and improving deep learning techniques. She works on designing algorithms with theoretical guarantees such that they work efficiently in real-world applications.  Prior to that, she was a research scientist at  Allen Institute for AI, and before that she was a Post-Doc fellow at UC-Irvine. She graduated from USC with a Ph.D. with minors in Mathematics. Dr. Hanie Sedghi's linksTwitter: https://twitter.com/haniesedghi?ref_src=twsrc%5EtfwHomepage: https://haniesedghi.com/About the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#theoryofmachinelearning #deeplearning #ai #machinelearning #fundamentals***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
5 minutes | Oct 29, 2021
CNNs & ViTs (Vision Transfomers) - Comparing the internal structures, Maithra Raghu, Google ​
Do Vision Transformers work in the same way as CNNs? Do the internal representational structures of ViTs and CNNs differ? An in-depth analysis article: https://arxiv.org/pdf/2108.08810.pdfListen to the full conversation here: https://youtu.be/htnJxcwJqeADr. Maithra Raghu is a senior research scientist at Google working on analyzing the internal workings of deep neural networks so that we can deploy them better keeping humans in the loop. She recently graduated from Cornell University with a Ph.D. in CS and previously graduated from Cambridge University with BA and Masters in Mathematics. She has received multiple awards for her research work including the Forbes 30 under 30.Maithra's Homepage: https://maithraraghu.comAbout the Host:Jay is a Ph.D. student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#explainableai #reliableai #robustai #machinelearning***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
15 minutes | Oct 4, 2021
How to find a Research Topic that interests you?
How to decide and choose a research/thesis to work on that interests you and is also relevant to current research directions.Full episodes with Maithra, Google: https://youtu.be/htnJxcwJqeANatasha  Google: https://youtu.be/8XpCnmvq49sMilind  Google: https://youtu.be/eqwF3NpZFb4Hima  Harvard University: https://youtu.be/8Ym4oYTd8FoIshan  Facebook AI: https://youtu.be/Pb5RQAEtznkAbout the Host:Jay is a PhD student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#machinelearning #ai #phd #research #thesis***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
75 minutes | Sep 30, 2021
Learning the internals of Machine Learning systems and tips for PhD | Maithra Raghu, Google Brain
Dr. Maithra Raghu is a senior research scientist at Google working on analyzing the internal workings of deep neural networks so that we can deploy them better keeping humans in the loop. She recently graduated from Cornell University with a PhD in CS and previously graduated from  Cambridge University with BA and Masters in Mathematics. She has received multiple awards for her research work including the Forbes 30 under 30.Questions that we cover00:00:00 Introductions00:01:00 To understand more about your research interests, can you tell us what kind of research questions you are interested in while working at Google Brain?00:04:45 What interested you about it and how did you get started?00:15:00 What is one thing that surprises/puzzles you about deep learning effectiveness to date?00:22:05 What’s the difference between being a researcher in academia/PhD student vs being a researcher at a big organization (Google)?00:28:35 In what use cases do you think ViTs might be a good choice to perform image analysis over CNN vs where do you think CNNs still have an undoubted advantage?00:37:15 Why does ViT perform better than ResNet only on larger datasets and not on mid-sized datasets or smaller? 00:43:55 In regards to medical imaging tasks, would it be theoretically wrong to pre-train the model on dataset A and fine-tune it on dataset B?00:47:35 Do you think ViT or transformer-based models already have/have the potential to cause a paradigm shift in the way we approach imaging tasks? Why?00:5:25 Medical datasets are often limited in size, what are your views on tackling these problems in the near future00:55:55 From an internal representation perspective, do you think deep neural networks can have the ability of reasoning?00:58:20 How did you decide on your own PhD research topic? Advice you would give to graduate researchers trying to find a research problem for their thesis?01:04:00 Many times researchers/students feel stuck/overwhelmed with a particular project they are working on, how do you suggest based on experience to tackling that?01:10:35 How do you now/as a graduate student used to keep up with the latest research in ML/DL?Maithra's Homepage: https://maithraraghu.comBlogpost talked about: https://maithraraghu.com/blog/2020/Reflections_on_my_Machine_Learning_PhD_Journey/Her Twitter: https://twitter.com/maithra_raghuAbout the Host:Jay is a PhD student at Arizona State University, doing research on building Interpretable AI models for Medical Diagnosis.Jay Shah: https://www.linkedin.com/in/shahjay22/You can reach out to https://www.public.asu.edu/~jgshah1/ for any queries.Stay tuned for upcoming webinars!#explainableai #reliableai #robustai #machinelearning***Disclaimer: The information contained in this video represents the views and opinions of the speaker and does not necessarily represent the views or opinions of any institution. It does not constitute an endorsement by any Institution or its affiliates of such video content.*** Checkout these Podcasts on YouTube: https://www.youtube.com/c/JayShahmlAbout the author: https://www.public.asu.edu/~jgshah1/
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