In our season six finale, we dive deeper into how artificial intelligence (AI) is shaping the future of drug discovery and scientific research. With remarkable scale and speed, AI models parse through complex datasets and confirm or generate hypotheses, which can help scientists accelerate R&D. In this episode, co-host Danielle Mandikian welcomes Aviv Regev, Head of gRED, and Jure Leskovec, Professor of Computer Science at Stanford University, to talk about foundation models and autonomous agents. Together, they explore the opportunities and challenges of applying AI in drug discovery, including balancing innovation with scientific rigor and the evolving role of scientists. They also discuss how AI is reshaping the future of research — from building more biologically meaningful models to advancing agent-based systems and lab automation.
Read the full text transcript at www.gene.com/stories/foundation-models-and-agents
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In our season six finale, we dive deeper into how artificial intelligence (AI) is shaping the future of drug discovery and scientific research. With remarkable scale and speed, AI models parse through complex datasets and confirm or generate hypotheses, which can help scientists accelerate R&D. In this episode, co-host Danielle Mandikian welcomes Aviv Regev, Head of gRED, and Jure Leskovec, Professor of Computer Science at Stanford University, to talk about foundation models and autonomous agents. Together, they explore the opportunities and challenges of applying AI in drug discovery, including balancing innovation with scientific rigor and the evolving role of scientists. They also discuss how AI is reshaping the future of research — from building more biologically meaningful models to advancing agent-based systems and lab automation.
Read the full text transcript at www.gene.com/stories/foundation-models-and-agents
S4E08: Learning from Vaccines: Training our Immune System to Fight Cancer
Two Scientists Walk Into a Bar
44 minutes 55 seconds
3 years ago
S4E08: Learning from Vaccines: Training our Immune System to Fight Cancer
When we consider how a vaccine works, we typically think about vaccines that prevent infectious disease like flu or measles. But another type, known as therapeutic vaccines, may be able to treat diseases even after they’ve taken hold in the body – including cancer and viral infections. Similar to preventative vaccines, these therapeutic cancer vaccines work by promoting an immune response. Cancer vaccines are an emerging approach that have the potential to train the immune system to better seek out and destroy cancer cells. Co-host Danielle Mandikian sits down with Lélia Delamarre, Director and Distinguished Scientist, Cancer Immunology, and Ina Rhee, Executive Group Medical Director, Oncology Early Clinical Development, to discuss the fascinating science behind cancer vaccines as well as current challenges and opportunities.
Read the full text transcript at https://www.gene.com/stories/learning-from-vaccines-training-our-immune-system-to-fight-cancer
Two Scientists Walk Into a Bar
In our season six finale, we dive deeper into how artificial intelligence (AI) is shaping the future of drug discovery and scientific research. With remarkable scale and speed, AI models parse through complex datasets and confirm or generate hypotheses, which can help scientists accelerate R&D. In this episode, co-host Danielle Mandikian welcomes Aviv Regev, Head of gRED, and Jure Leskovec, Professor of Computer Science at Stanford University, to talk about foundation models and autonomous agents. Together, they explore the opportunities and challenges of applying AI in drug discovery, including balancing innovation with scientific rigor and the evolving role of scientists. They also discuss how AI is reshaping the future of research — from building more biologically meaningful models to advancing agent-based systems and lab automation.
Read the full text transcript at www.gene.com/stories/foundation-models-and-agents