
Alex Araujo
Salesforce - Principal Engineer

Aman Khan
Group Product Manager

Amit Nene
Tech Lead Manager


Atindriyo Sanyal
Galileo - Co-Founder

Augusto Acioli Vanderley
OLX - Software Engineer

Avesh Singh
Databricks - ML Software Engineer

Cezar Steinz
Via - Lead of ML Operations

Charna Parkey
Kaskada - VP of Product

Chip Huyen
Stanford University - Lecturer

Cody Creco
Prescient AI - CTO and Co-Founder

Daniel Kristjansson
Spotify - Principal Consultant
%20copy.png)
David Aronchick
Microsoft - Manager Azure Innovations

David Liu
Twitter - Machine Learning Engineer

Davor Bonaci
Kaskada - CEO

Fabio Buso
VP of Engineering


Jim Dowling
CEO & Co-Founder


Josh Tobin
Gantry - Co-Founder and CEO

Laurel Orr
Stanford University - PostDoc

Mani Parkhe
Databricks - ML/AI Platform Engineer

Mark Roy
AWS - Principal ML Architect

Mike Klaczynski
Snowflake - Sr. Mgr Technology Alliances - ML & DSci

Moritz Meister
Head of Feature Store Engineering


Nicholas Marcott
Staff Software Engineer


Nicholas Pinckernell
Comcast - Distinguished Engineer, ML

Patrick Dougherty
Rasgo - Co-founder and CTO

Patrick Urbanke
getML - Co-Founder and CTO

Rekha Bachwani
Director of ML Engineering
Disney Streaming
Rekha Bachwani
Disney Streaming - Senior Principal Engineer

Renan Cruz
Wildlife Studios - ML Engineering Manager

Richa Sachdev
Vanguard - ML Engineering Manager

Ritesh Agrawal
Varo Bank - Senior ML Engineer

Robert Lock
Bosch - Project Lead Feature Store

Shawn Ramirez
Shelf Engine - Head of Data Science

Taimur Rashid
Redis - Chief Business Development Officer

Viral Parikh
Varo Bank - Head of AI/ML

Weiping Peng
Salesforce - Principal Architect

Yaron Haviv
Iguazio - Co-Founder and CTO
- Oct 12, 03:30 PM UTC · 30 min · Kickoff
› Kick-off
Jim Dowling will talk about the featurestore.org community and kickstart the event.
- Oct 12, 03:45 PM UTC · 30 min · Presentation
› Jukebox : Spotify's Feature Infrastructure
The team at Spotify talk about the challenges by when building a central feature infrastructure at a highly autonomous organization.
- Oct 12, 04:20 PM UTC · 30 min · Presentation
› Hopsworks Feature Store: Fast, Fresh Data for AI at Scale
The Hopsworks team will present how to leverage the Feature Store to make real-time predictions, with low-latency and at scale.
- Oct 12, 04:55 PM UTC · 30 min · Presentation
› Building Feature Store for Multi-tenant and Multi-App in Salesforce
The team at Salesforce discuses how the company leverages from the Feature Store to build a collaborative environment across teams.
- Oct 12, 05:30 PM UTC · 30 min · Presentation
› Feature Store: The Heart of Your Operational ML Pipeline
Yaron Haviv from Iguazio talks how the feature store supports real-time and batch use cases across training and serving environments.
- Oct 12, 06:05 PM UTC · 30 min · Presentation
› Twitter's Management of ML Features in Dynamic Environments
David Liu talks about how Twitter solved challenges of collaboration and shareability with a centralized feature store.
- Oct 12, 06:40 PM UTC · 30 min · Panel
› Panel Discussion - Solving the Hardest Problems at Scale
Spotify, Salesforce, Twitter, Hopsworks, and Iguazio will discuss the significant role of feature stores as a company scales.
- Oct 12, 07:30 PM UTC · 30 min · Presentation
› Build Models Faster, and Serve Predictions at Scale, using Amazon SageMaker Feature Store
Mark Roy from Amazon talks how SageMaker can help to accelerate the ML lifecycle, providing low-latency and high throughput inference.
- Oct 12, 08:05 PM UTC · 30 min · Presentation
› Creating and Operating ML Models from Event-based Data Using Feature Stores and Feature Engines
The teams from Kaskada and Redis will focus on how iterate on amazing ML models with event-based data.
- Oct 12, 08:40 PM UTC · 30 min · Presentation
› Databricks Feature Store Co-designed with a Data and MLOps Platform
The team at Databricks talk about the motivations and use cases of feature stores across different industries.
- Oct 12, 09:15 PM UTC · 30 min · Presentation
› Taming the Beast: Building Scalable Features in the Wild at Prescient
The Rasgo and Prescient team will talk about the best setup, and what’s involved in getting features/models to be production-ready.
- Oct 12, 09:50 PM UTC · 30 min · Presentation
› Feature Store: the Heart of the MLOps Framework
Richa Sachdev from Vanguard discusses the role of the feature store for MLOps for a successful analytical journey.
- Oct 12, 10:25 PM UTC · 30 min · Panel
› Panel Discussion - Who Benefits from the Feature Store?
AWS, Databricks, Rasgo, Kaskada, Vanguard and Shelf Engine will dive into the specific benefits for data science and MLOps.
- Oct 13, 03:30 PM UTC · 25 min · Kickoff
› Kick-off
Jim Dowling will talk about the featurestore.org community and kickstart the event.
- Oct 13, 03:45 PM UTC · 25 min · Presentation
› Being ‘Data Centric’ is the Future of Machine Learning
Atindriyo Sanyal from Galileo talks about data centric aspects of machine learning.
- Oct 13, 04:20 PM UTC · 25 min · Presentation
› Feature Stores and Evaluation Stores: Better Together
Josh Tobin from Gantry talks about the evaluation store and why to combine it with the feature store for more robust ML systems.
- Oct 13, 04:55 PM UTC · 25 min · Presentation
› The SAME Project: A Cloud Native Approach to Reproducible Machine Learning
David Aronchick from Microsoft presents the Self-Assembling Machine Learning Environment, a new Kubernetes and Kubeflow project.
- Oct 13, 05:30 PM UTC · 25 min · Presentation
› The Coming Wave of Self-Supervised Embedding Ecosystems
Laurel Orr from Stanford discusses the challenges and opportunities with supporting embedding pipelines in feature store.
- Oct 13, 06:05 PM UTC · 25 min · Presentation
› Why Relational Learning Matters - Automated Feature Engineering on Relational Data and Time Series
Patrick Urbanke from getML talks about how relational learning can be used to automate feature engineering, reducing time and costs.
- Oct 13, 06:40 PM UTC · 25 min · Panel
› Panel Discussion - The Future of Feature Stores
Chip Huyen from Stanford chairs this panel with Microsoft, Stanford, getML, Galileo, and Gantry.
- Oct 13, 07:30 PM UTC · 25 min · Presentation
› A Software Development Ecosystem that Makes Developers Happy
Robert Lock from Bosch discusses why companies shouldn't build their own solution when a software already exists as PaaS.
- Oct 13, 08:00 PM UTC · 25 min · Presentation
› Feature Store at Varo: Why, How and Lessons Learned
The team at Varo walks through the evolution of the feature store, from the ontological challenges to key functionalities.
- Oct 13, 08:30 PM UTC · 25 min · Presentation
› A Query-Based Feature Store at OLX
Augusto Acioli from OLX presents a feature store where Data Scientists can create their online feature using queries.
- Oct 13, 09:00 PM UTC · 25 min · Presentation
› Palette at Scale
The team at Uber talk about the advances of the Palette Feature Store that enables Feature Management at scale.
- Oct 13, 09:30 PM UTC · 25 min · Presentation
› Feature Store at Via: Implementation, Difficulties and ROI
Cezar Steinz presents the ROI of the feature store according to the platform and models implementation at Via.
- Oct 13, 10:00 PM UTC · 25 min · Presentation
› Better Gaming Experiences with Machine Learning and the Hopsworks Feature Store
Renan from Wildlife Studios will discuss how the Hopsworks Feature Store is helping them scale a centralized ML platform.
- Oct 13, 10:25 PM UTC · 25 min · Panel
› Panel Discussion - Feature Store: Build or Buy?
Uber, Bosch, Varo, OLX, Via and Wildlife Studios will discuss about what to consider when buying or building a feature store for ML.