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573 points huntaub | 2 comments | | HN request time: 0.464s | source

Hey HN, I’m Hunter the founder of Regatta Storage (https://regattastorage.com). Regatta Storage is a new cloud file system that provides unlimited pay-as-you-go capacity, local-like performance, and automatic synchronization to S3-compatible storage. For example, you can use Regatta to instantly access massive data sets in S3 with Spark, Pytorch, or pandas without paying for large, local disks or waiting for the data to download.

Check out an overview of how the service works here: https://www.youtube.com/watch?v=xh1q5p7E4JY, and you can try it for free at https://regattastorage.com after signing up for an account. We wanted to let you try it without an account, but we figured that “Hacker News shares a file system and S3 bucket” wouldn’t be the best experience for the community.

I built Regatta after spending nearly a decade building and operating at-scale cloud storage at places like Amazon’s Elastic File System (EFS) and Netflix. During my 8 years at EFS, I learned a lot about how teams thought about their storage usage. Users frequently told me that they loved how simple and scalable EFS was, and -- like S3 -- they didn’t have to guess how much capacity they needed up front.

When I got to Netflix, I was surprised that there wasn’t more usage of EFS. If you looked around, it seemed like a natural fit. Every application needed a POSIX file system. Lots of applications had unclear or spikey storage needs. Often, developers wanted their storage to last beyond the lifetime of an individual instance or container. In fact, if you looked across all Netflix applications, some ridiculous amount of money was being spent on empty storage space because each of these local drives had to be overprovisioned for potential usage.

However, in many cases, EFS wasn’t the perfect choice for these workloads. Moving workloads from local disks to NFS often encountered performance issues. Further, applications which treated their local disks as ephemeral would have to manually “clean up” left over data in a persistent storage system.

At this point, I realized that there was a missing solution in the cloud storage market which wasn’t being filled by either block or file storage, and I decided to build Regatta.

Regatta is a pay-as-you-go cloud file system that automatically expands with your application. Because it automatically synchronizes with S3 using native file formats, you can connect it to existing data sets and use recently written file data directly from S3. When data isn’t actively being used, it’s removed from the Regatta cache, so you only pay for the backing S3 storage. Finally, we’re developing a custom file protocol which allows us to achieve local-like performance for small-file workloads and Lustre-like scale-out performance for distributed data jobs.

Under the hood, customers mount a Regatta file system by connecting to our fleet of caching instances over NFSv3 (soon, our custom protocol). Our instances then connect to the customer’s S3 bucket on the backend, and provide sub-millisecond cached-read and write performance. This durable cache allows us to provide a strongly consistent, efficient view of the file system to all connected file clients. We can perform challenging operations (like directory renaming) quickly and durably, while they asynchronously propagate to the S3 bucket.

We’re excited to see users share our vision for Regatta. We have teams who are using us to build totally serverless Jupyter notebook servers for their AI researchers who prefer to upload and share data using the S3 web UI. We have teams who are using us as a distributed caching layer on top of S3 for low-latency access to common files. We have teams who are replacing their thin-provisioned Ceph boot volumes with Regatta for significant savings. We can’t wait to see what other things people will build and we hope you’ll give us a try at regattastorage.com.

We’d love to get any early feedback from the community, ideas for future direction, or experiences in this space. I’ll be in the comments for the next few hours to respond!

1. ragulpr ◴[] No.42176558[source]
Love this idea! Biggest hurdle though have been to have predictable Auth&IO across multiple Python/Scala versions and all other things (Spark, orchestrators, CLI's of teams of varying types of OS etc etc) add to that access logs.

SF3s/boto/botocore versions x Scala/Spark x parquet x iceberg x k8s etc readers own assumptions makes reading from S3 alone a maintenance and compatibility nightmare.

Will the mounted system _really_ be accessible as local fs and seen as such to all running processes? No surprises? No need for python specific filesystem like S3Fs?

If so then you will win 100% I wouldn't even care about speed/cost if it's up to par with s3

replies(1): >>42176673 #
2. huntaub ◴[] No.42176673[source]
Yeah, that's exactly right. I had some... experiences with Spark recently, that convinced me that this is something that could really help. I also really like the idea that organizations can continue to use S3 as the source of truth for their data (as you mention, it means that you can continue to use Access Logs, which would capture all usage of your S3 bucket across your applications).

> Will the mounted system _really_ be accessible as local fs and seen as such to all running processes? No surprises? No need for python specific filesystem like S3Fs?

Ha, well it depends on what you mean by surprises. We won't have a Python-specific file system. Our client is going to come in two flavors. Today, you can mount Regatta over NFSv3 (which we wrap in TLS to make it secure). This works for some workloads, but doesn't provide like-for-like performance with EBS. Over the next month, we plan to release the "custom protocol" that I wrote about above, that we expect to send to customers in the form of a FUSE file system.

Either way, it should be one package, you shouldn't need to worry about versioning, and it will appear as a real, local file system. :D