December 8-9 Virtual Event Now Accepting Call for Proposals
SAN MATEO, CA – November 2, 2020 - Alluxio, the developer of open source cloud data orchestration software, today announced the second annual Data Orchestration Summit to be held virtually on December 8 – 9, 2020. The speaker lineup spans cloud, data and AI/ML visionaries, including Professor Ion Stoica of UC Berkeley’s RISELab, Parviz Peiravi of Intel, and Mike Fagan of Comcast.
The two day event is an open source community event focused on the key data engineering challenges and solutions around building cloud-native or hybrid cloud data and AI platforms using the latest technologies such as Alluxio, Apache Spark, Apache Airflow, Presto, Tensorflow and Kubernetes. The Summit brings together data engineers, architects, cloud engineers, data scientists and industry thought leaders who are solving data problems at the intersection of cloud, ML/AI and data.
“In its second year, the Data Orchestration Summit is becoming the top venue where the ‘who’s who’ of practitioners and leaders in Cloud-Native Data and AI come together to share innovations, best practices, and insights about what’s on the horizon,” said Haoyuan Li, founder and CEO, Alluxio. “2020 has been unprecedented in many ways. We look forward to bringing together the top minds to share challenges and successes in a collaborative, virtual setting.”
Attendees will hear from companies, including Alibaba, Comcast, Electronic Arts, Facebook, Google, ING Bank, Playtika, Rakuten, Robinhood, Shopee, and Tencent about their data architectures, real-world use cases, live demos, and practitioner best practices. This event also brings together creators of open source technologies and leaders in cloud and data technologies to discuss the latest solutions to today’s biggest data problems, including Platinum sponsors Alluxio and Intel, and Premier sponsors Amazon, Kyligence, and Starburst Data.
Call for Proposals
Alluxio is inviting practitioners and thought leaders to submit speaking proposals here.
To register for the Data Orchestration Summit, visit here.
Tweet this: @Alluxio announces second annual #DataOrchestrationSummit #cloud #AI #Data https://bit.ly/34GDzZ9
About Alluxio
Alluxio, a leading provider of the high performance data platform for analytics and AI, accelerates time-to-value of data and AI initiatives and maximizes infrastructure ROI. Uniquely positioned at the intersection of compute and storage systems, Alluxio has a universal view of workloads on the data platform across stages of a data pipeline. This enables Alluxio to provide high performance data access regardless of where the data resides, simplify data engineering, optimize GPU utilization, and reduce cloud and storage costs. With Alluxio, organizations can achieve magnitudes faster model training and serving without the need for specialized storage, and build AI infrastructure on existing data lakes. Backed by leading investors, Alluxio powers technology, internet, financial services, and telecom companies, including 9 out of the top 10 internet companies globally. To learn more, visit www.alluxio.io.
Media Contact:
Beth Winkowski
Winkowski Public Relations, LLC for Alluxio
978-649-7189
beth@alluxio.com
.png)
News & Press
AMSTERDAM, NETHERLANDS, JUNE 10, 2025 — In today’s confusing and messy enterprise software market, innovative technology solutions that realize real customer results are hard to come by. As an industry analyst firm that focuses on enterprise digital transformation and the disruptive vendors that support it, Intellyx interacts with numerous innovators in the enterprise IT marketplace.
Alluxio, supplier of open source virtual distributed file systems, announced Alluxio Enterprise AI 3.6. This delivers capabilities for model distribution, model training checkpoint writing optimization, and enhanced multi-tenancy support. It can, we’re told, accelerate AI model deployment cycles, reduce training time, and ensure data access across cloud environments. The new release uses Alluxio Distributed Cache to accelerate model distribution workloads; by placing the cache in each region, model files need only be copied from the Model Repository to the Alluxio Distributed Cache once per region rather than once per server.