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AI for Drug Discovery & Development

Accelerate Drug Discovery and Development with AI-Driven Efficiency

April 2 - 4, 2025 ALL TIMES EDT

The AI for Drug Discovery and Development track explores the transformative impact of artificial intelligence and machine learning across the entire drug development lifecycle. This track offers a broad perspective on how AI technologies are reshaping biopharma workflows, from initial discovery through to clinical application and market entry. Speakers will delve into the role of AI in enhancing disease understanding, optimizing target identification, and integrating human expertise with advanced algorithms to refine drug design and precision medicine. The track will highlight innovative AI-driven methodologies and their practical applications, comparing these cutting-edge approaches with traditional drug discovery processes. Attendees will gain insights into how AI and machine learning are not only accelerating the pace of drug development but also improving the efficacy of therapeutic interventions and personalizing treatments. By examining real-world case studies and success stories, this track will showcase how AI is driving significant advancements in drug discovery, offering actionable strategies to bridge the gap between innovative technologies and proven drug development practices.

Wednesday, April 2

8:00 amRegistration Open and Morning Coffee

9:00 amRecommended Pre-Conference Workshops and Symposia*

On Wednesday, April 2, 2025, Cambridge Healthtech Institute is pleased to offer five pre-conference Workshops scheduled across two time slots (9:00 am–12:00 pm and 1:15–4:15 pm) and three Symposia from 9:00 am–4:20 pm. All are designed to be instructional, interactive, and provide in-depth information on a specific topic. They allow for one-on-one interaction and provide a great way to explain more technical aspects that would otherwise not be covered during the main conference tracks that take place Thursday–Friday.

*Separate registration required. See details on the Symposia here and details on the Workshops here.

4:40 pm

Organizer's Remarks

Cindy Crowninshield, Executive Event Director, Cambridge Healthtech Institute

4:45 pm PLENARY KEYNOTE INTRODUCTION:Explainable AI in Drug Discovery

Kshitij Kumar, CEO & Founder, CLOVERTEX

4:55 pm PLENARY KEYNOTE PANEL DISCUSSION:

From Bytes to Breakthroughs: Next-Generation AI Driving the Future of Life Sciences and Healthcare

PANEL MODERATOR:

Abbie Celniker, PhD, Partner, Third Rock Ventures LLC

Next-Generation AI has the potential to revolutionize life sciences by delivering unprecedented insights, automation, and efficiency. But what will those industry transformations look like? This keynote panel convenes leaders from biopharma, healthcare, and emerging tech who are applying AI—generative models and beyond—to accelerate drug discovery, diagnostics, and patient care. Panelists will share real-world case studies, discuss overcoming both technical and organizational challenges, and explore how AI is evolving from predictive tools to autonomous, decision-making systems. Look beyond the hype to uncover where AI is making a tangible impact today and where the next frontiers of innovation lie.

PANELISTS:

Tala Fakhouri, PhD, MPH, Associate Director for Data Science and AI Policy, FDA (participating virtually)

Per Greisen, PhD, President, BioMap

Sofia Guerra, Vice President, Bessemer Venture Partners

Subha Madhavan, PhD, Vice President and Head, AI/ML, Quantitative and Digital Sciences, Pfizer Inc.

Sonya Makhni, MD, Medical Director, Mayo Clinic Platform

6:10 pmWelcome Reception in the Exhibit Hall with Poster Viewing (Sponsorship Opportunity Available)

The Bio-IT Kickoff Reception is a reunion—reconnect with friends, explore cutting-edge research, and celebrate innovation! Enjoy poster presentations, networking, and vote for the Best of Show and Poster awards.

7:25 pmClose of Day

Thursday, April 3

7:00 amRegistration and Morning Coffee

8:00 am

Organizer's Remarks

Allison Proffitt, Editorial Director, Bio-IT World and Clinical Research News

8:05 am PLENARY KEYNOTE INTRODUCTION:Build for Now & the Future: 8 Critical Pillars for Your Enterprise AI Strategy 

Jesse Cugliotta, Global Industry GTM Lead, Healthcare & Life Sciences, Snowflake, Inc.

HARNESSING AI FOR DRUG DISCOVERY: FROM INFRASTRUCTURE TO IMPLEMENTATION

8:15 am PLENARY KEYNOTE PRESENTATION:

Data and Computing Infrastructure for the Life Sciences: Best Practices, Observations, and Lessons Learned

Chris Dwan, Independent Consultant, Dwan, LLC

This talk will provide practical, real-world advice based on Dwan's quarter century of experience designing and implementing high-performance computing and large-scale data systems for health care and the life sciences. Topics will include network architectures, cloud vs. "terrestrial" infrastructure, practical data strategies, information security, quality and compliance from R&D to the clinic, differentiated computing platforms, human and organizational factors, and of course AI.

8:45 am PLENARY KEYNOTE PRESENTATION:

Generative AI, Aging Research and Robotics as a Platform for Drug Discovery: From Hype to Clinical Efficacy

Alex Zhavoronkov, PhD, Founder & CEO, Insilico Medicine

9:15 amSession Q&A

9:30 amCoffee Break in the Exhibit Hall with Poster Viewing (Sponsorship Opportunity Available)

Start your morning with coffee, connections, and cutting-edge research! Enjoy poster presentations, network in the Exhibit Hall, vote for awards, and a chance at a fabulous raffle prize!

10:15 amOrganizer's Welcome Remarks

AI AND DATA INTEGRATION FOR ENHANCED R&D

10:20 am Chairperson's Remarks

Ingrid Fernandez, PhD, Health and Life Sciences Vertical Lead, Hewlett-Packard Enterprise

10:25 am

Unleashing Innovation: Harnessing AI and Data Platforms for R&D

Bridget Behringer, Oncology E2E Business Partner Lead, R&D IT, AstraZeneca Pharmaceuticals

This presentation explores how AI and data platforms can enhance the landscape of research and development, with an ultimate goal to reduce timelines, increase probability of success, and better predict which patients are most likely to benefit from our medicines. We will describe the robust data foundation we have built and the prerequisites for deploying AI at scale.

10:45 am

Tech-Enhanced Preclinical Animal Logistics for Accelerated Drug Development

Tatjana Uffelmann, Senior Scientist, Novartis BioMedical Research

Preparing animal license applications is often slow and complex—but that’s changing. With the help of GenAI and a smart, continuously learning system, the process is becoming faster, more efficient, and fully aligned with regulatory standards—accelerating research and innovation in preclinical development.

11:05 am

Causal AI & Mechanostics—Increasing Probability of R&D Success from Concept to Clinic

Simon Beaulah, Senior Vice President, Healthcare & Head of US Operations, PrecisionLife

This presentation will explore how Causal AI and mechanistic patient stratification enhance R&D success in precision medicine, focusing on complex, chronic diseases. Attendees will learn how these technologies drive the discovery of personalized treatments and innovative diagnostics for unmet medical needs. We’ll discuss strategies for identifying novel targets aligned with patient biology, designing faster, more successful clinical trials, and connecting patients to effective therapies based on their disease mechanisms.

11:25 am

DrugX: Artificial Intelligence-Based Platform for Drug Repurposing

Kamal Rawal, PhD, Professor and Head, Center for Computational Biology and Bioinformatics, Amity University

Drug repurposing offers a promising avenue for rapidly identifying existing therapeutics for new indications, reducing the time and cost associated with traditional drug development. This study presents a robust multimodal pipeline designed to streamline the drug repurposing process. By integrating diverse computational techniques, we constructed and analyzed extensive networks from datasets encompassing 4,136 drug targets and 24,554 drug interactions. Utilizing tools such as Cell Designer, Cytoscape, and DrugX, we mapped complex relationships between drugs, their targets, and associated interactions, providing a comprehensive overview of potential repurposing candidates. Our platform, comprising 11 specialized modules, systematically employs specific datasets, algorithms, and scoring systems to identify, evaluate, and rank potential drug candidates. The networks generated—such as Drug-CoV, Drug-Drug, Drug-Side-Effect, and Drug-Human—were critical in predicting drug properties and understanding their interactions within biological systems. The DrugX tool, specifically, enabled the detailed assessment of drug side effects and their similarity to target disease symptoms, further refining candidate selection. This platform not only enhances the efficiency of drug repurposing efforts but also provides a scalable framework that can be applied across various therapeutic areas. By leveraging artificial intelligence and network-based analysis, our approach accelerates the identification of viable drug candidates, facilitating faster transitions from discovery to clinical application.

11:45 amSession Q&A with Speakers
11:55 am From Data to Decisions: Accelerating Lab Efficiency with AI Conversations & IoT-Enabled Automation 

Aditya Saharay, Principal, Life Sciences Consulting, EPAM

Discover how IoT cloud platforms like Elemental Machines integrate with LIMS and ELN to transform lab workflows. Using EPAM’s Lab IoT Integrator, labs can connect environmental monitoring, equipment data and informatics systems for smarter decisions. Learn how automated data capture, contextual alerts and dynamic process management boost efficiency, compliance and resource optimization—empowering labs to operate with greater precision and agility.

12:10 pm Advancing AI for Drug Discovery: Causal Embeddings, Knowledge Graphs & Multiomics Integration 

Venkatesh Moktali, Director, Product Management Discovery, Digital Insights Base, QIAGEN

AI-driven approaches are transforming drug discovery by extracting causal insights from literature, integrating knowledge graphs, and leveraging multiomics data to uncover novel therapeutic opportunities. This session will explore how causal embeddings enhance KG-RAG workflows and AI/ML applications, enabling more precise drug repurposing and target identification. We will also discuss how multiomics data integration supports systematic gene ranking and biomarker discovery, combining manually curated and NLP-enriched knowledge graphs for deeper biological insights. Through real-world applications, we’ll highlight how AI-powered data integration can accelerate discovery and improve decision-making in drug development.

12:25 pm Industrializing Scientific Data

Simon Meffan-Main, General Manager, TetraScience

The future of AI in pharma isn't about billion-dollar supercomputing and massive models – it's about becoming good at what it takes to organize, engineer, and prepare scientific data for AI and analytics. Simon will walk through what that takes to achieve next-generation scientific data management, the hard lessons we’ve learned building a scientific data platform. The talk will also explore case stories of how better-prepared data leads to better lab automation and accelerated scientific outcomes.

12:55 pmSession Break and Transition to Lunch

1:05 pm LUNCHEON PRESENTATION: AI That Works: Practical Applications for Smarter Drug Discovery Workflows 

Bishoy Youssef, Solutions Architect, Integrant

AI adoption in drug discovery often stalls due to fragmented data, poor integration, and unrealistic expectations. This session explores three real-world AI solutions—retrosynthesis planning, agentic assistants, and image recognition—that help R&D IT teams automate workflows and enhance decision-making. We’ll share lessons learned and how each module works.

1:35 pmRefreshment Break in the Exhibit Hall with Poster Viewing (Sponsorship Opportunity Available)

Bio-IT's hall is bigger than ever—one break won’t cut it! Enjoy dessert and coffee after lunch, explore booths and posters, vote for awards, and participate in our raffle for a chance to win a prize!

AI-DRIVEN TARGET DISCOVERY AND OPTIMIZATION

2:25 pm Chairperson's Remarks

Dave Anstey, Vice President Sales & Business Development, Vice President of Pharma Business Development, Genomenon

2:30 pm

Active Learning for Efficient Target Discovery

Evan Maltz, PhD, Biological Data Scientist, Tessel Biosciences

Tesselogic is a new active learning framework to accelerate target discovery in any disease model, from cancer cell lines to complex, organotypic cultures of patient-derived cells. We can identify top targets with as little as 3% of the cost and effort of genome-wide screening. We have applied our approach to target discovery for lung disease in house and benchmarked it on >1,000 screens from the BioGRID ORCS database across 31 tissues of origin.

2:50 pm

Living in Uncertainty: Applying Active Learning to Drug Discovery

Kian Tan, PhD, Director, Novartis Institutes for BioMedical Research (NIBR)

The SynTech group at Novartis focuses on leveraging synthesis and technology to impact drug discovery. This talk will illustrate our application of automation and machine learning to accelerate the design-make-test-analyze cycle. Particular emphasis will be placed on how we utilize models and active learning techniques in molecular design, as well as our efforts to democratize these tools within the medicinal chemistry community.

3:10 pm

The Era of Quantum AI: Unlocking drug discovery with Quantum, AI and Physics

Andrea De Souza, Chief Corporate Development Officer, Qubit Pharmaceuticals

Advancements in artificial intelligence and quantum science, coupled with high-performance and quantum computing promise to transform the drug discovery process. At Qubit Pharmaceuticals, we aim to power quantum chemistry at scale for accurate molecular design.  We will share our experience integrating physics, AI and quantum technologies for the discovery of novel therapeutics with a focus on small molecule therapeutics for immunology and RNA.  Seems fitting that in 2025, the UN Designated Year of Quantum Science and Technology, we have pioneered with a large global team to move beyond density functional theory and integrate proprietary high resolution quantum chemistry data with AI and exascale compute. As we launch our first foundational model, we continue on our journey to increase computational precision with speed and accuracy.

3:30 pm

Accelerating Drug Discovery and Biomarker Mapping through the Convergence of Quantum Computing and AI

Christopher Lundy, Senior Principal Enterprise Architect, Chief Quantum AI Officer, FindInfinite Labs

This presentation examines how merging quantum computing with AI can revolutionize drug discovery and biomarker mapping in the biopharmaceutical industry. By leveraging quantum computing's immense computational, AI's predictive capabilities, and a new biological framework developed by FindInfinite Labs, we can overcome current limitations in biological computations and accelerate the development of new therapies while at the same time use new predictive and quantum AI models to accelerate our understanding of the complex nature of life.

3:50 pmSession Q&A with Speakers
4:00 pm Accelerating AI-Driven Drug Discovery with Wet/Dry Lab Integration

Sandy Li, Head of Scientific AI/ML Market Strategy, Strategy, Benchling

​​As AI-driven innovation becomes integral to biopharmaceutical R&D, the ability to seamlessly integrate these technologies will be critical in the first-to-market race. This AI advancement presents an opportunity for biopharma to rethink and rebuild their digital infrastructure—transforming experimental data into AI-ready datasets while enhancing data accessibility, interpretability, and insight generation.

Discover how Benchling enables the seamless integration of dry and wet lab workflows, breaking down data silos and empowering broader scientific teams with AI/ML capabilities to accelerate drug discovery.

4:30 pmBest of Show Awards Reception in the Exhibit Hall with Poster Viewing (Sponsorship Opportunity Available)

Unwind with colleagues at our lively reception! Explore posters, vote for the best, network with exhibitors, enjoy a drink, and try to win a raffle prize. Celebrate Best of Show winners!

5:45 pmClose of Day

Friday, April 4

7:00 amRegistration Open and Morning Coffee

7:00 amQuick Bytes & Networking Breakfast—Lifted Rooftop Restaurant & Bar (Sponsorship Opportunity Available)

Start your morning with ‘Quick Bytes & Networking’! Enjoy a cozy restaurant-style setting, quick bites, and speed networking. Connect, converse, and energize your Bio-IT experience before the plenary keynote!

8:00 am

Organizer's Remarks

Cindy Crowninshield, Executive Event Director, Cambridge Healthtech Institute

8:05 am

Innovative Practices Awards: Excellence in Technological Innovation

Allison Proffitt, Editorial Director, Bio-IT World and Clinical Research News

Since 2003, Bio-IT World has hosted an elite awards program with the goal of highlighting outstanding examples of how technology innovations and strategic initiatives are being applied to advance life sciences research. The 2025 Innovative Practices Awards winners represent excellence in innovation in the areas of informatics, pre-competitive collaboration, clinical and health IT, and genomics. Companies driving the winning entries include Genmab, Genedata, NHS England, IQVIA, Pistoia Alliance, Regeneron, and Quris-AI. For more details about the Awards, visit www.bioitworldexpo.com/innovativepractices.

8:20 am PLENARY KEYNOTE PRESENTATION:

The Longitude Prize on ALS: A Groundbreaking Global Prize Harnessing the Power of AI to Drive Treatment for ALS

Tris Dyson, Founder, Challenge Works

Jeffrey D. Rothstein, MD, PhD, Professor, Neurology and Neuroscience; Director, Brain Science Institute, Johns Hopkins University

The Longitude Prize series brings together the brightest minds to solve the world's most challenging innovation problems. The Longitude Prize on ALS, launching in June 2025, will bring together computational biologists, neurodegenerative researchers and AI-driven biotech globally to uncover novel therapeutic targets for ALS. 

ADVANCING DRUG DISCOVERY AND HEALTHCARE THROUGH DATA-DRIVEN INNOVATION: FROM GENOMICS TO THERAPEUTICS

8:35 am PLENARY KEYNOTE INTRODUCTION:Shaping the Next Era of Precision Health with Multiomics and AI-Driven Predictive Insights

Rami Mehio, Vice President, Head of Global Software and Informatics, Illumina, Inc.

8:45 am PLENARY KEYNOTE PRESENTATION:

Scaling Genomic Medicine: Transforming Newborn Screening through Informatics and Innovation

Robert C. Green, MD, MPH, Professor and Director of Genomes2People Research, Mass General Brigham, Broad Institute, Ariadne Labs, and Harvard Medical School

The BabySeq Project has pioneered the integration of genomic sequencing into newborn and childhood screening, uncovering unexpected risk variants and transforming healthcare delivery. This keynote explores the groundbreaking progress in genomic medicine, featuring real-world stories of families impacted by these discoveries. Learn about the informatics challenges and innovative solutions required to scale genomic screening for national and global implementation, reshaping the future of precision medicine.

9:15 am PLENARY KEYNOTE PRESENTATION:

Unlocking the Power of Machine Learning and Data-at-Scale to Deliver with Speed the Best Therapeutic Candidates

Justin M. Scheer, PhD, Vice President In Silico Discovery & Head, Molecular Computational Team, Johnson & Johnson Innovative Medicine

The challenges of high costs, lengthy timelines, and significant attrition have prompted our industry to integrate AI/ML into all aspects of the business. This presentation highlights J&J's strategic investments in AI/ML technologies to enhance the drug discovery processes, including molecule design and optimization. By investing in these technologies with a modality agnostic approach, J&J aims to tackle the hardest targets in drug discovery, ultimately increasing the success rate of delivering better molecules faster.

9:45 amCoffee Break in the Exhibit Hall with Poster Competition Winners Announced (Sponsorship Opportunity Available)

Bio-IT is all about connections! Explore booths, award-winning posters, and network with clients, colleagues, and exhibitors. Grab coffee, build relationships, and stay for a chance to win a raffle prize!

10:30 amOrganizer's Remarks

INNOVATIONS IN AI FOR DRUG DISCOVERY: FROM PATENTS TO BIOMOLECULAR TARGETS

10:35 am

Chairperson's Remarks

Christopher Southan, PhD, Honorary Professor, Deanery of Biomedical Sciences, University of Edinburgh

10:40 am

Mining the First Fruits of AI Drug Discovery from Patents

Christopher Southan, PhD, Honorary Professor, Deanery of Biomedical Sciences, University of Edinburgh

After “talking the talk,” AI-centric drug discovery companies (AIDDCs) are now “walking the walk” by not only progressing lead molecules to clinical trials but also disclosing novel chemical series for drug targets in published patents. This presentation outlines the mining of these documents using open sources to provide a valuable snapshot of what data AIDDCs are actually generating. Example filings include WO2022106857 from Exscientia (targeting MALT1), WO2020039209 from BenevolentAI (targeting TRK), WO2021155253 from Atomwise (targeting ANAT), and WO2021219089 from Insilico Medicine (targeting Cov2 M-protease). This presentation will demonstrate how open extraction resources were used to map selected AI-generated compounds into PubChem, exploring the novelty of their chemical and target neighborhoods.

11:00 am

PatentMiner: AI-Powered Patent Data Extraction

Dimitar Yonchev, PhD, Data Engineer, Roche

Large-scale information extraction from patent publications in the pharma and biotech domain is fundamental for early R&D, yet remains a challenging and expensive process due to the inherent complexity of IP documents. We have developed the PatentMiner—an AI-powered scientific software for efficient extraction of tables from oligonucleotide drug patents. It combines a specialist computer vision model for OCR and document extractions with a generalist multimodal LLM-based QC, rule-based QC, and automated post-processing. The lightweight app design allows for easy human-in-the-loop interaction and significantly reduces time and cost for extracting data from oligonucleotide patents in early discovery projects.

11:20 am

Unlocking the Potential of AI for High-Throughput Immunotherapy Drug Discovery through RNA Splicing

Alyssa Fronk, PhD, Director of Computational Biology, Computational Biology, Envisagenics, Inc.

Envisagenics' SpliceCore platform leverages advanced AI to accelerate immunotherapy drug discovery by identifying novel, tumor-specific epitopes arising through RNA splicing. This innovative approach focuses on splicing events that drive tumor progression and generate new therapeutic targets. Supported by comprehensive case studies and experimental validation, SpliceCore demonstrates robust predictive capabilities, offering a powerful tool for discovering safe, highly specific epitopes. SpliceCore represents a significant advancement in the development of next-generation immunotherapies.

11:40 am

RNA-Based Drugs Targeting an Evolutionarily Young Long Non-Coding RNA Discovered from GWAS Have the Potential to Replace Insulin and GLP-1 Receptor Agonists in a Nonhuman-Primate Model

Leonard Lipovich, PhD, Department of Biology, College of Science, Mathematics, and Technology, Wenzhou-Kean University; Shenzhen Huayuan Biological Science Research Institute, Shenzhen Huayuan Biotechnology Co. Ltd.; Center for Molecular Medicine and Genetics, School of Medicine, Wayne State University

The majority of human genes do not encode proteins and are not conserved in evolution beyond mammals. Nevertheless, drug discovery has historically focused on conserved, protein-coding targets and their pathways. This talk presents cutting-edge research on RNA-based drugs targeting an evolutionarily young long non-coding RNA (lncRNA) identified through Genome-Wide Association Studies. These innovative therapeutics demonstrate early potential to replace insulin and GLP-1 receptor agonists in managing diabetes within a nonhuman primate model. The presentation highlights the discovery process and translational significance of lncRNA-targeted drugs, heralding a novel approach to treating metabolic disorders and advancing precision medicine.

12:00 pmSession Q&A with Speakers
12:10 pm Accelerating Drug Discovery with AWS and NVIDIA

Aniket Deshpande, Global Business Development Lead, Healthcare, NVIDIA

Ariella Sasson, Worldwide Specialist SA Leader for Data & AI, HCLS, Amazon Web Services (AWS)

Please join us for a joint session on how AWS and NVIDIA are working together to accelerate drug discovery workloads. Attendees will learn how biopharma solutions like NVIDIA BioNeMo™, NVIDIA NIM™ and NIM™ Agent Blueprints on AWS, can help companies discover and develop drugs faster—and at a lower cost. We will cover joint solutions for common drug discovery workloads like running large scale omics using AWS HealthOmics with NIM, streamlining AI workload and GPU orchestration using Run.ai and Amazon SageMaker HyperPod, and training protein and fine-tuning frontier language models (fLMs) using DGX Cloud on AWS. Learn from real-world success stories, such as Amgen and the Arc Institute, who leverage these technologies to train state-of-the-art protein language models (pLMs) and BioLLMs, driving innovation in drug discovery.

12:40 pm

From LLMs to Multi-Agent Systems: Advancing AI-Powered R&D in Pharma and Biotech

David Walker, Vice President, Life Sciences Business, Quantori

The integration of large language models (LLMs) into pharmaceutical and biotech research and development (R&D) has undergone significant evolution. What began as single-model implementations has now expanded into multi-agent AI systems that collaborate to extract insights from molecular, textual, and multimodal biomedical data. This session will explore the latest strategic implementations of LLMs in pharma R&D, highlighting how multi-agent approaches enhance data analysis, hypothesis generation, and decision support. We'll discuss key advancements, practical applications, and the impact these AI-driven systems have on streamlining workflows and accelerating drug development.

1:10 pmSession Break and Transition to Lunch

1:20 pm LUNCHEON PRESENTATION: Decoding Disease Biology with AI: The Future of Preclinical R&D

Casandra Mangroo, Senior Vice President, Product & Science, BenchSci

Drug discovery faces a critical challenge: the growing complexity of disease biology. We generate vast amounts of data, but human analysis is overwhelmed, leading to delays and hindering progress. AI offers a solution. By applying AI to unravel disease mechanisms, we can analyze vast datasets to create an unbiased map of the underlying biology, empowering scientists to discover novel insights and accelerate R&D. Furthermore, AI can optimize the entire preclinical pipeline, from target identification to translational workflows, ensuring clinical success. This approach accelerates research, reduces costs, and ultimately leads to the development of more effective therapies.

1:50 pmRefreshment Break in the Exhibit Hall with Last Chance for Poster Viewing (Sponsorship Opportunity Available)

Feeling tired? Recharge during the final Networking Exhibit Hall break! Visit booths, explore posters, connect with peers, and turn in your Game Cards for a chance to win a raffle prize.

DRIVING AI INNOVATION: BEST PRACTICES FOR IMPLEMENTATION IN BIOPHARMA

2:30 pm

Chairperson's Remarks

Srivatsan Nagaraja, Founder, Vidya Seva

2:35 pm

Unlocking AI Potential: Best Practices for Implementation and Management

Dimitris K. Agrafiotis, PhD, Director, Digital, Analytics, and AI, Arsenal Capital Partners

Julie Bryant, Chief Strategy Officer & Founder, Rancho BioSciences

Vinod Das, R&D Drug Innovation, AI Solutions, Bayer Pharmaceuticals

Petrina Kamya, PhD, Global Head of AI Platforms & Vice President, Insilico Medicine; President, Insilico Medicine Canada

Srivatsan Nagaraja, Founder, Vidya Seva

As AI transforms drug discovery, development, and precision medicine, understanding the business operations behind these advancements is essential. This session will cover critical aspects such as AI tool selection, project scoping, budget management, and prioritization amid evolving regulations. Gain insights from real-world case studies on successful AI deployment, with strategies to navigate regulatory risks while ensuring cost-effectiveness. Join us for a dynamic discussion to harness AI’s full potential in life sciences innovation.

4:05 pmClose of Conference







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