Thank you for joining us at ODSC West 2023
ODSC West 2024 Dates Announced Soon!
Speakers
Hours of Content
Companies
Hybrid Attendees
Upcoming ODSC Events
Missed ODSC West? Join us at our next conference, ODSC East in Boston, April 23rd – April 25th. Can’t make it In-Person? Join us virtually!

Why Attend the Leading AI Conference

AI EXPO AND DEMO HALL
Meet AI experts from some of the leading AI companies and startups in the industry at our AI Expo and Demo Hall. With multiple live demos get a better understanding of Build Vs Buy decisions and learn about the latest advancements in AI for enterprises and discover how to build AI better

HANDS-ON TRAINING
Top instructors help you acquire job-ready skills and stay current in LLMs, ML, DL, NLP, and more at ODSC West. With dozens of sessions to choose from. Our immersive, expert-led training also offers certification for AI practitioners at all levels.

CHOOSE YOUR PASS
Pick the pass that suits your schedule and build job-ready skills. We offer 2, 3, and 4-day passes that will give you the breadth and depth of content to succeed, from immersive training to inspirational talks. In addition, we have business and virtual passes.

LEADING EXPERT SPEAKERS
ODSC is renowned for bringing together the brightest minds and top practitioners in the field. Explore cutting-edge insights, innovations, and strategies shared by leading expert speakers. Don’t miss this opportunity to learn from the best in AI!
NETWORKING
Explore numerous in-person and virtual networking opportunities, or challenge yourself to connect with as many industry leaders as possible during our Networking events. Seize this opportunity to grow your professional network to forge invaluable connections within the growing filed of AI!
REGISTRATION
How 2 for 1 Works
Purchase any pass (at 40% off) and get a second pass free
You’ll receive a free pass of the same type for EACH pass you buy
Once you purchase your pass, we will email you a code for your second pass (within 24 hours maximum)
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* LIMITED TIME OFFER – Buy One Pass and Get a Second for free (within the next 24 hours)
* Get access to the GenAI, LLMs, and Intro to NLP courses on the Ai+ Training Platform with live and on-demand courses on AI, Data Science, Machine Learning & Deep Learning, and more. ** Offer valid by this week only!
Past Keynotes & Track Keynotes
PAST SPEAKERS

Dr. Petar Veličković
Petar Veličković is a Staff Research Scientist at Google DeepMind, Affiliated Lecturer at the University of Cambridge, and an Associate of Clare Hall, Cambridge. Petar holds a PhD in Computer Science from the University of Cambridge (Trinity College), obtained under the supervision of Pietro Liò. His research concerns geometric deep learning—devising neural network architectures that respect the invariances and symmetries in data (a topic I’ve co-written a proto-book about). Petar’s research has been used in substantially improving travel-time predictions in Google Maps, and guiding intuition of mathematicians towards new top-tier theorems and conjectures.

Stefanie Molin
Stefanie Molin is a software engineer and data scientist at Bloomberg in New York City, where she tackles tough problems in information security, particularly those revolving around data wrangling/visualization, building tools for gathering data, and knowledge sharing. She is also the author of “Hands-On Data Analysis with Pandas,” which is currently in its second edition. She holds a bachelor’s of science degree in operations research from Columbia University’s Fu Foundation School of Engineering and Applied Science, as well as a master’s degree in computer science, with a specialization in machine learning, from Georgia Tech. In her free time, she enjoys traveling the world, inventing new recipes, and learning new languages spoken among both people and computers.

Patrick Hall
Patrick Hall is an assistant professor of decision sciences at the George Washington University School of Business, teaching data ethics, business analytics, and machine learning classes. He also conducts research in support of NIST’s AI risk management framework and is affiliated with leading fair lending and AI risk management advisory firms.
Patrick studied computational chemistry at the University of Illinois before graduating from the Institute for Advanced Analytics at North Carolina State University. He has been invited to speak on AI and machine learning topics at the National Academies of Science, Engineering, and Medicine, ACM SIG-KDD, and the Joint Statistical Meetings. He has been published in outlets like Information, Frontiers in AI, McKinsey.com, O’Reilly Ideas, and Thompson-Reuters Regulatory Intelligence, and his technical work has been profiled in Fortune, Wired, InfoWorld, TechCrunch, and others. Patrick is the lead author of the book Machine Learning for High-Risk Applications.
Prior to joining the GW School of Business, Patrick co-founded BNH.AI, a boutique law firm focused on AI governance and risk management. He led H2O.ai’s efforts in responsible AI, resulting in one of the world’s first commercial applications for explainability and bias mitigation in machine learning. Patrick also held global customer-facing roles and R&D roles at SAS Institute. Patrick has built machine learning software solutions and advised on matters of AI risk for Fortune 100 companies, cutting-edge startups, Big Law, and U.S. and foreign government agencies.
Adopting Language Models Requires Risk Management — This is How(Talk)

Valentina Alto
Valentina is a Data Science MSc graduate and Cloud Specialist at Microsoft, focusing on Analytics and AI workloads within the manufacturing and pharmaceutical industry since 2022. She has been working on customers’ digital transformations, designing cloud architecture and modern data platforms, including IoT, real-time analytics, Machine Learning, and Generative AI. She is also a tech author, contributing articles on machine learning, AI, and statistics, and recently published a book on Generative AI and Large Language Models.
In her free time, she loves hiking and climbing around the beautiful Italian mountains, running, and enjoying a good book with a cup of coffee.
The AI Paradigm Shift: Under the Hood of a Large Language Models(Workshop)

Wes Madrigal
Wes is a machine learning expert with over a decade of experience delivering business value with AI. Wes’s experience spans multiple industries, but always with an MLOps focus. His recent areas of focus and interest are graphs, distributed computing, and scalable feature engineering pipelines.
Using Graphs for Large Feature Engineering Pipelines(Workshop)

Dr. Andre Franca
Andre is the co-founder and CTO of connectedFlow, developing the next generation of AI co-pilots to help e-commerce/D2C operators make better decisions, without the pain of data analytics. He’s previously the VP of R&D at causaLens, where he was applying cutting edge Causal AI research to solve business-critical problems in global enterprises. Prior to that he was an executive director at Goldman Sachs, developing and validating quantitative models used by the business. Andre received his PhD in theoretical physics from the University of Munich, where he studied the interplay between quantum mechanics and general relativity in black-holes.
Causal AI: from Data to Action(Workshop)

Lukas Biewald
Lukas Biewald is the CEO and co-founder of Weights & Biases, a developer-first MLOps platform. He also co-founded Figure Eight (formerly CrowdFlower), a pioneer in the ML data-labeling space. Figure Eight was acquired by Appen (APX) in 2019. Lukas has dedicated his career to optimizing ML workflows, teaching ML practitioners, making machine learning more accessible to all, and occasionally tinkering with robots.

Gwendolyn D. Stripling, PhD
Gwendolyn Stripling, Ph.D., is an Artificial Intelligence and Machine Learning Content Developer at Google Cloud. Stripling is author of the widely popular YouTube video, “Introduction to Generative AI” and of the O’Reilly Media book “Low-Code AI: A Practical Project Driven Approach to Machine Learning”. They are also the author of the LinkedIn Learning video “Introduction to Neural Networks”. Stripling is an Adjunct Professor and member of Golden Gate University’s Masters in Business Analytics Advisory Board. Stripling enjoys speaking on AI/ML, having presented at Dominican University of California’s Barowsky School of Business Analytics, Golden Gate University’s Ageno School of Business Analytics, and numerous Tech conferences.
No-Code and Low-Code AI: A Practical Project Driven Approach to ML(Tutorial)

Rajiv Shah, PhD
Rajiv Shah is a machine learning engineer at Hugging Face who focuses on enabling enterprise teams to succeed with AI. Rajiv is a leading expert in the practical application of AI. Previously, he led data science enablement efforts across hundreds of data scientists at DataRobot. He was also a part of data science teams at Snorkel AI, Caterpillar, and State Farm. Rajiv is a widely recognized speaker on AI, published over 20 research papers, and received over 20 patents, including sports analytics, deep learning, and interpretability. Rajiv holds a PhD in Communications and a Juris Doctor from the University of Illinois at Urbana Champaign. While earning his degrees, he received a fellowship in Digital Government from the John F. Kennedy School of Government at Harvard University. He also has a large following on AI-related short videos on Tik Tok and Instagram at @rajistics.
Evaluation Techniques for Large Language Models(Tutorial)

Jack McCauley
Jack McCauley an Innovator in Residence at Jacobs Institute for Design Innovation at UC Berkeley, Professor at UC Berkeley, Co-Founder of Oculus, an American engineer, hardware designer, inventor, video game developer and philanthropist. Jack is best known for designing the guitars and drums for the Guitar Hero video game series, and as a co-founder and former chief engineer at Oculus VR. At Oculus, Jack designed and built the Oculus DK1 and DK2 virtual reality headsets. Oculus was acquired by Facebook for $2 Billion. McCauley holds numerous U.S. patents for inventions in software, audio effects, virtual reality, motion control, computer peripherals, and video game hardware and controllers. Jack was awarded a full scholarship to attend University of California, Berkeley where he earned a BSc., EECS in Electrical Engineering and Computer Science in 1986. Jack has authored numerous research papers in the field of artificial intelligence (AI) and mathematical modeling of AI-based systems and is currently pursuing new projects at his private R&D facility and hardware incubator in Pleasanton, California.

Michael Auli
Michael Auli is a principal research scientist/director at FAIR in Menlo Park, California. His work focuses on speech and NLP and he helped create projects such as wav2vec/data2vec, the widely used fairseq toolkit, the first modern feed-forward seq2seq models outperforming RNNs for NLP, and several top ranked submissions at the WMT news translation task in 2018 and 2019. Before that Michael was at Microsoft Research, where he did early work on neural machine translation and using neural language models for conversational applications. During his PhD at the University of Edinburgh he worked on natural language processing and parsing. http://michaelauli.github.io
General and Efficient Self-supervised Learning with data2vec(Talk)

Thomas Nield
Thomas Nield is the founder of Nield Consulting Group and Yawman Flight, as well as an instructor at University of Southern California. He enjoys making technical content relatable and relevant to those unfamiliar or intimidated by it. Thomas regularly teaches classes on data analysis, machine learning, mathematical optimization, and practical artificial intelligence. At USC he teaches AI System Safety, developing systematic approaches for identifying AI-related hazards in aviation and ground vehicles. He’s authored three books, including Essential Math for Data Science (O’Reilly) and Getting Started with SQL (O’Reilly)
He is also the founder and inventor of Yawman Flight, a company developing universal handheld flight controls for flight simulation and unmanned aerial vehicles.
Introduction to Math for Data Science(Bootcamp)

Robert Crowe
A data scientist and ML enthusiast, Robert has a passion for helping developers quickly learn what they need to be productive. Robert is currently the Senior Product Manager for TensorFlow Open-Source and MLOps at Google and helps ML teams meet the challenges of creating products and services with ML. Previously Robert led software engineering teams for both large and small companies, always focusing on moving fast to implement clean, elegant solutions to well-defined needs. You can find him on LinkedIn at robert-crowe.
MLOps v LMOps – What’s Different?(Talk)

Hao Zhang, PhD
Hao is currently a postdoctoral researcher at the Sky Lab, UC Berkeley, working with Prof. Ion Stoica. He is recently working on the Alpa project and the Sky project, aiming at democratizing large models like GPT-3. He is an Assistant Professor at Halıcıoğlu Data Science Institute and Department of Computer Science and Engineering (affiliate) at UC San Diego in Fall 2023.
His research is primarily focused on large-scale distributed ML in the joint context of ML and systems, concerning performance, usability, cost, and privacy. His work spans across distributed ML algorithms, large models, parallelisms, performance optimizations, system architectures, ML privacy, and AutoML, with applications in computer vision, natural language processing, and healthcare.

Nils Reimers
Nils Reimers is an NLP / Deep Learning researcher with extensive experience on representing text in dense vector spaces and how to use them for various applications. During his research career, he created sentence-transformers that were the foundation for many today’s semantic search applications.
In 2022, Nils joined Cohere.com to lead the team on smarter semantic search technologies and how to connect LLMs to enterprise data. Here, his teams develop new foundation models that can understand and reason over complex data.
Connecting Large Language Models – Common Pitfalls & Challenges(Talk)

Eli Chen
Eli is CTO and Co-Founder at Credo AI. He has led teams building secure and scalable software at companies like Netflix and Twitter. Eli has a passion for unraveling how things work and debugging hard problems. Whether it’s using cryptography to secure software systems or designing distributed system architecture, he is always excited to learn and tackle new challenges. Eli graduated with an Electrical Engineering and Computer Science degree from U.C. Berkeley.

Matt Harrison
Matt Harrison has been using Python since 2000. He runs MetaSnake, a Python and Data Science consultancy and corporate training shop. In the past, he has worked across the domains of search, build management and testing, business intelligence, and storage.
He has presented and taught tutorials at conferences such as Strata, SciPy, SCALE, PyCON, and OSCON as well as local user conferences.
Machine Learning with XGBoost(Workshop)
Idiomatic Pandas(Workshop)

Supriya Rao
Supriya is an Engineering Manager working on PyTorch at Meta. Her team works on architecture optimization techniques like quantization, pruning as well as other core components of PyTorch 2.0 whereby enabling users to run AI models on different HW efficiently using native PyTorch. Prior to Meta, she worked as a software engineer at Nvidia on improving their GPU Architecture and accelerating AI models via TensorRT for inference. Supriya has an MS in CSE from University of Michigan, Ann Arbor and a bachelor’s degree from Bits Pilani, India.

Jeffrey Yau, PhD
Jeffrey Yau is currently Chief Data & A.I. Officer at Fanatics Collectibles. Most recently, he served as Global Head of Data Science, Analytics & Engineering at Amazon Music where he oversaw multiple teams who developed both insights-packed analytics and end-to-end statistical and machine learning systems. Prior to Amazon, Jeffrey worked at WalmartLabs as the VP of Data Science & Engineering where he led the team responsible for powering Walmart store mobile apps and the entire store finance system. Further, his team created end-to-end machine learning systems for key business initiatives and had a multi-billion dollar impact annually on Walmart U.S.
Over the years, he has held various senior level positions in quantitative finance at global investment management firm AllianceBernstein, consulting firm Data Science at Silicon Valley Data Science, multinational financial services company Charles Schwab Corporation, and the world’s leading professional services firm KPMG. He began his career as a tenure-track Assistant Professor of Economics at Virginia Tech, and he was an adjunct professor at UC Berkeley, Cornell, and NYU, teaching machine learning and advanced statistical modeling for finance and business.

Amey Porobo Dharwadker
Amey Porobo Dharwadker is a seasoned Machine Learning Engineering Manager at Meta, leading the Facebook Video Recommendations Ranking team. He is renowned for his pivotal role in developing personalization models used by billions of global users everyday, which have significantly contributed to Facebook’s impressive user growth. His contributions have led to the success of Facebook Watch and Reels, now engaging over 1.25 billion monthly users. Prior to this, he made substantial strides in improving user engagement and revenue growth at Facebook through his work on News Feed and Ads Machine Learning. He is a prolific researcher with multiple international publications in recommender systems, and he actively serves as a program committee member for top-tier AI conferences including AAAI, AISTATS, IJCAI, CIKM and ECIR. As a thought leader, Amey is a sought-after speaker at prestigious AI venues and contributes to hackathons, angel syndicates and startup accelerators as a mentor. He also plays a significant role on the juries of renowned global technology competitions, including the CES Innovation Awards and Edison Awards. He holds a Master’s degree from Columbia University in the City of New York and a Bachelor’s degree from the National Institute of Technology Tiruchirappalli, India.
Beyond the Buzz: Decoding Popularity Bias in Large-Scale Recommender Systems(Talk)

TRAINING HIGHLIGHTS
Deep Dive Hands-on Training that gives you Certifiable Job-Ready Skills
Expanded Training: Over 60+ Hands-on Tutorials, Workshops, and training sessions
Leading Experts: Taught by top instructors who are experienced practitioners in AI and ML
More Choice: Choose from 2,3,4 day passes that include IN-PERSON and VIRTUAL options
Breath and depth: Beginner to Expert season ensures we have all levels covered
Receive your Certification at our on-site Certification Desk


Get Certified with ODSC West 2023
- ODSC West 2023 Mini-Bootcamp Certification of Completion
- Ai + Training LLM and Generative AI Certificate Course (Included in Bootcamp and VIP Passes)
- Ai + Training Machine Learning Certificate Course (Included in Bootcamp and VIP Passes)



Virtual Experience
A unique hybrid experience.
At ODSC, we pride ourselves in providing two distinct programs, with almost no overlap, of our in-person and virtual conferences.
On the virtual platform, you’ll find completely different training sessions, workshops, and talks. What’s more, post-conference, on-demand access to virtual sessions means you can get access to two conferences with one pass when you get an in-person West Pass, all of which include access to our virtual content.
DID YOU SAVE THE DATE?
ODSC WEST Conference October 30th – November 2nd
The Conference was amazing! Thank you to the staff and volunteers of the Open Data Science Conference for putting an amazing conference together! I can’t wait to attend next year!
Data Analyst, USA
I had the amazing opportunity to attend #ODSCWest this past week in San Francisco with my team. I was able to learn more about cutting-edge AI and ML techniques and ways that we can utilize these at our company!
Data Scientist, USA
#ODSCWest Awesome insightful talks and workshops! Buzzwords: MLOps, FeatureStore, ML MetadataStore, Automated retraining, and many more…
Data Science Engineer, USA
Amazing to see so many professionals sharing their knowledge. Exciting concepts which will gain further momentrum no matter which industry you are working in. Check it out!
Process & Quality Manager, Canada
West Location
Join us in the heart of Silicon Valley for the premier AI conference of the year. Hosted in Burlingame, California, at the heart of the AI boom and Silicon Valley.
Conveniently located just south of San Francisco and north of Palo Alto and San Jose this is a popular destination for startups, AI entrepreneurs, and companies of all sizes including the home of Google, Apple, and Meta,
This makes it the perfect location for an AI conference, where you can network with the brightest minds in the AI, technology, and other industries.
Venue
Hyatt Regency,
Burlingame, CA
1333 Old Bayshore Hwy, Burlingame, CA 94010
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Participate at ODSC West 2023
As part of the global data science community we value inclusivity, diversity, and fairness in the pursuit of knowledge and learning. We seek to deliver a conference agenda, speaker program, and attendee participation that moves the global data science community forward with these shared goals. Learn more on our code of conduct, speaker submissions, or speaker committee pages.
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ODSC Newsletter
Stay current with the latest news and updates in open source data science. In addition, we’ll inform you about our many upcoming Virtual and in-person events in Boston, NYC, Sao Paulo, San Francisco, and London. And keep a lookout for special discount codes, only available to our newsletter subscribers!