14 February 2022
Introducing a free academic plan for research teams — our small token of support for graduate students and faculty members

The increasing complexity in machine learning models and datasets is a challenge not just for industry but also for academia. In response, top universities are investing heavily in high-performance computing systems to further scale their research infrastructures. Some are building GPU servers at enterprise-scale — Stanford Research Computing Center, for example, operates more than 2,200 HPC servers with 50,000 CPU cores and 2,040 GPUs.
While universities and departments are continuously increasing GPU resources, machine learning researchers are still suffering from the challenges that are also common in the industry:
To help academic research teams tackle these challenges, we are introducing a free academic plan dedicated to faculty members and graduate students. Just as we are serving ML practitioners and enterprise customers, our goal with the new plan is to empower research teams at universities with a scalable modern workflow but with zero maintenance overheads. Specifically, we have three objectives in mind.






During our closed beta, we met hundreds of masters and Ph.D students from top university research labs here in Korea, and some of these labs have already integrated VESSL into their research workflows.
Though different in scale, our very first customer, the Graduate School of AI at KAIST has been using VESSL since the summer of 2021 to manage 100 HPC servers and 500 GPUs.
Several research teams at Seoul National University and Korea University approached VESSL to deploy hybrid clusters.
While most of our academic users are currently based in Korea, we are looking to expand our network globally.
Our free academic plan includes the following features and benefits:
If you are a graduate student or faculty member eligible for our free academic plan, apply by filling in the application form. Our team will schedule an online product demo and help you get started. To learn more about us, watch our guides on YouTube or check out our docs.
Try our product!
Build, train, and deploy models faster at scale with fully managed infrastructure, tools, and workflows.