513 lines
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Markdown
513 lines
31 KiB
Markdown
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title="Confronting theoretical design with observed performances"
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date=2022-09-26
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*During the past years, we have thought a lot about possible design decisions and
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their theoretical trade-offs for Garage. In particular, we pondered the impacts
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of data structures, networking methods, and scheduling algorithms.
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Garage worked well enough for our production
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cluster at Deuxfleurs, but we also knew that people started to experience some
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unexpected behaviors, which motivated us to start a round of benchmarks and performance
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measurements to see how Garage behaves compared to our expectations.
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This post presents some of our first results, which cover
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3 aspects of performance: efficient I/O, "myriads of objects", and resiliency,
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reflecting the high-level properties we are seeking.*
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<!-- more -->
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---
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## ⚠️ Disclaimer
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The results presented in this blog post must be taken with a (critical) grain of salt due to some
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limitations that are inherent to any benchmarking endeavor. We try to reference them as
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exhaustively as possible here, but other limitations might exist.
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Most of our tests were made on _simulated_ networks, which by definition cannot represent all the
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diversity of _real_ networks (dynamic drop, jitter, latency, all of which could be
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correlated with throughput or any other external event). We also limited
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ourselves to very small workloads that are not representative of a production
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cluster. Furthermore, we only benchmarked some very specific aspects of Garage:
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our results are not an evaluation of the performance of Garage as a whole.
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For some benchmarks, we used Minio as a reference. It must be noted that we did
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not try to optimize its configuration as we have done for Garage, and more
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generally, we have significantly less knowledge of Minio's internals compared to Garage, which could lead
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to underrated performance measurements for Minio. It must also be noted that
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Garage and Minio are systems with different feature sets. For instance, Minio supports
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erasure coding for higher data density and Garage doesn't, Minio implements
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way more S3 endpoints than Garage, etc. Such features necessarily have a cost
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that you must keep in mind when reading the plots we will present. You should consider
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Minio's results as a way to contextualize Garage's numbers, to justify that our improvements
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are not simply artificial in the light of existing object storage implementations.
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The impact of the testing environment is also not evaluated (kernel patches,
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configuration, parameters, filesystem, hardware configuration, etc.). Some of
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these parameters could favor one configuration or software product over another.
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Especially, it must be noted that most of the tests were done on a
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consumer-grade PC with only a SSD, which is different from most
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production setups. Finally, our results are also provided without statistical
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tests to validate their significance, and might have insufficient ground
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to be claimed as reliable.
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When reading this post, please keep in mind that **we are not making any
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business or technical recommendations here, and this is not a scientific paper
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either**; we only share bits of our development process as honestly as
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possible.
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Make your own tests if you need to take a decision,
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remember to read [benchmarking crimes](https://gernot-heiser.org/benchmarking-crimes.html)
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and to remain supportive and caring with your peers ;)
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## About our testing environment
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We made a first batch of tests on
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[Grid5000](https://www.grid5000.fr/w/Grid5000:Home), a large-scale and flexible
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testbed for experiment-driven research in all areas of computer science,
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which has an
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[open access program](https://www.grid5000.fr/w/Grid5000:Open-Access).
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During our tests, we used part of the following clusters:
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[nova](https://www.grid5000.fr/w/Lyon:Hardware#nova),
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[paravance](https://www.grid5000.fr/w/Rennes:Hardware#paravance), and
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[econome](https://www.grid5000.fr/w/Nantes:Hardware#econome), to make a
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geo-distributed topology. We used the Grid5000 testbed only during our
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preliminary tests to identify issues when running Garage on many powerful
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servers. We then reproduced these issues in a controlled environment
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outside of Grid5000, so don't be
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surprised then if Grid5000 is not always mentioned on our plots.
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To reproduce some environments locally, we have a small set of Python scripts
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called [`mknet`](https://git.deuxfleurs.fr/Deuxfleurs/mknet) tailored to our
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needs[^ref1]. Most of the following tests were run locally with `mknet` on a
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single computer: a Dell Inspiron 27" 7775 AIO, with a Ryzen 5 1400, 16GB of
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RAM and a 512GB SSD. In terms of software, NixOS 22.05 with the 5.15.50 kernel is
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used with an ext4 encrypted filesystem. The `vm.dirty_background_ratio` and
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`vm.dirty_ratio` have been reduced to `2` and `1` respectively: with default
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values, the system tends to freeze under heavy I/O load.
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## Efficient I/O
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The main purpose of an object storage system is to store and retrieve objects
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across the network, and the faster these two functions can be accomplished,
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the more efficient the system as a whole will be. For this analysis, we focus on
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2 aspects of performance. First, since many applications can start processing a file
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before receiving it completely, we will evaluate the time-to-first-byte (TTFB)
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on `GetObject` requests, i.e. the duration between the moment a request is sent
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and the moment where the first bytes of the returned object are received by the client.
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Second, we will evaluate generic throughput, to understand how well
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Garage can leverage the underlying machine's performance.
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**Time-to-First-Byte** - One specificity of Garage is that we implemented S3
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web endpoints, with the idea to make it a platform of choice to publish
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static websites. When publishing a website, TTFB can be directly observed
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by the end user, as it will impact the perceived reactivity of the page being loaded.
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Up to version 0.7.3, time-to-first-byte on Garage used to be relatively high.
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This can be explained by the fact that Garage was not able to handle data internally
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at a smaller granularity level than entire data blocks, which are up to 1MB chunks of a given object
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(a size which [can be configured](https://garagehq.deuxfleurs.fr/documentation/reference-manual/configuration/#block-size)).
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Let us take the example of a 4.5MB object, which Garage will split by default into four 1MB blocks and one 0.5MB block.
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With the old design, when you were sending a `GET`
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request, the first block had to be _fully_ retrieved by the gateway node from the
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storage node before it starts to send any data to the client.
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With Garage v0.8, we added a data streaming logic that allows the gateway
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to send the beginning of a block without having to wait for the full block to be received from
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the storage node. We can visually represent the difference as follow:
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<center>
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<img src="schema-streaming.png" alt="A schema depicting how streaming improves the delivery of a block" />
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</center>
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As our default block size is only 1MB, the difference should be marginal on
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fast networks: it takes only 8ms to transfer 1MB on a 1Gbps network,
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adding at most 8ms of latency to a `GetObject` request (assuming no other
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data transfer is happening in parallel). However,
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on a very slow network, or a very congested link with many parallel requests
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handled, the impact can be much more important: on a 5Mbps network, it takes at least 1.6 seconds
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to transfer our 1MB block, and streaming will heavily improve user experience.
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We wanted to see if this theory holds in practice: we simulated a low latency
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but slow network using `mknet` and did some requests with block streaming (Garage v0.8 beta) and
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without (Garage v0.7.3). We also added Minio as a reference. To
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benchmark this behavior, we wrote a small test named
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[s3ttfb](https://git.deuxfleurs.fr/Deuxfleurs/mknet/src/branch/main/benchmarks/s3ttfb),
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whose results are shown on the following figure:
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![Plot showing the TTFB observed on Garage v0.8, v0.7 and Minio](ttfb.png)
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Garage v0.7, which does not support block streaming, gives us a TTFB between 1.6s
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and 2s, which matches the time required to transfer the full block which we calculated above.
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On the other side of the plot, we can see Garage v0.8 with a very low TTFB thanks to the
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streaming feature (the lowest value is 43ms). Minio sits between the two
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Garage versions: we suppose that it does some form of batching, but smaller
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than our initial 1MB default.
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**Throughput** - As soon as we publicly released Garage, people started
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benchmarking it, comparing its performances to writing directly on the
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filesystem, and observed that Garage was slower (eg.
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[#288](https://git.deuxfleurs.fr/Deuxfleurs/garage/issues/288)). To improve the
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situation, we did some optimizations, such as putting costly processing like hashing on a dedicated thread,
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and many others
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([#342](https://git.deuxfleurs.fr/Deuxfleurs/garage/pulls/342),
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[#343](https://git.deuxfleurs.fr/Deuxfleurs/garage/pulls/343)), which led us to
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version 0.8 "Beta 1". We also noticed that some of the logic we wrote
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to better control resource usage
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and detect errors, including semaphores and timeouts, was artificially limiting
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performances. In another iteration, we made this logic less restrictive at the
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cost of higher resource consumption under load
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([#387](https://git.deuxfleurs.fr/Deuxfleurs/garage/pulls/387)), resulting in
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version 0.8 "Beta 2". Finally, we currently do multiple `fsync` calls each time we
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write a block. We know that this is expensive and did a test build without any
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`fsync` call ([see the
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commit](https://git.deuxfleurs.fr/Deuxfleurs/garage/commit/432131f5b8c2aad113df3b295072a00756da47e7))
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that will not be merged, only to assess the impact of `fsync`. We refer to it
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as `no-fsync` in the following plot.
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*A note about `fsync`: for performance reasons, operating systems often do not
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write directly to the disk when a process creates or updates a file in your
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filesystem. Instead, the write is kept in memory, and flushed later in a batch
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with other writes. If a power loss occurs before the OS has time to flush
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data to disk, some writes will be lost. To ensure that a write is effectively
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written to disk, the
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[`fsync(2)`](https://man7.org/linux/man-pages/man2/fsync.2.html) system call must be used,
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which effectively blocks until the file or directory on which it is called has been flushed from volatile
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memory to the persistent storage device. Additionally, the exact semantic of
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`fsync` [differs from one OS to another](https://mjtsai.com/blog/2022/02/17/apple-ssd-benchmarks-and-f_fullsync/)
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and, even on battle-tested software like Postgres, it was
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["done wrong for 20 years"](https://archive.fosdem.org/2019/schedule/event/postgresql_fsync/).
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Note that on Garage, we are still working on our `fsync` policy and thus, for
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now, you should expect limited data durability in case of power loss, as we are
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aware of some inconsistencies on this point (which we describe in the following
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and plan to solve).*
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To assess performance improvements, we used the benchmark tool
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[minio/warp](https://github.com/minio/warp) in a non-standard configuration,
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adapted for small-scale tests, and we kept only the aggregated result named
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"cluster total". The goal of this experiment is to get an idea of the cluster
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performance with a standardized and mixed workload.
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![Plot showing IO performances of Garage configurations and Minio](io.png)
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Minio, our reference point, gives us the best performances in this test.
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Looking at Garage, we observe that each improvement we made had a visible
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impact on performances. We also note that we have a progress margin in
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terms of performances compared to Minio: additional benchmarks, tests, and
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monitoring could help us better understand the remaining gap.
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## A myriad of objects
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Object storage systems do not handle a single object but huge numbers of them:
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Amazon claims to handle trillions of objects on their platform, and Red Hat
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tout Ceph as being able to handle 10 billion objects. All these
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objects must be tracked efficiently in the system to be fetched, listed,
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removed, etc. In Garage, we use a "metadata engine" component to track them.
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For this analysis, we compare different metadata engines in Garage and see how
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well the best one scales to a million objects.
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**Testing metadata engines** - With Garage, we chose not to store metadata
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directly on the filesystem, like Minio for example, but in a specialized on-disk
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B-Tree data structure; in other words, in an embedded database engine. Until now,
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the only supported option was [sled](https://sled.rs/), but we started having
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serious issues with it - and we were not alone
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([#284](https://git.deuxfleurs.fr/Deuxfleurs/garage/issues/284)). With Garage
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v0.8, we introduce an abstraction semantic over the features we expect from our
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database, allowing us to switch from one metadata back-end to another without touching
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the rest of our codebase. We added two additional back-ends: LMDB
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(through [heed](https://github.com/meilisearch/heed)) and SQLite
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(using [Rusqlite](https://github.com/rusqlite/rusqlite)). **Keep in mind that they
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are both experimental: contrarily to sled, we have yet to run them in production
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for a significant time.**
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Similarly to the impact of `fsync` on block writing, each database engine we use
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has its own `fsync` policy. Sled flushes its writes every 2 seconds by
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default (this is
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[configurable](https://garagehq.deuxfleurs.fr/documentation/reference-manual/configuration/#sled-flush-every-ms)).
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LMDB default to an `fsync` on each write, which on early tests led to
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abysmal performance. We thus added 2 flags,
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[MDB\_NOSYNC](http://www.lmdb.tech/doc/group__mdb__env.html#ga5791dd1adb09123f82dd1f331209e12e)
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and
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[MDB\_NOMETASYNC](http://www.lmdb.tech/doc/group__mdb__env.html#ga5021c4e96ffe9f383f5b8ab2af8e4b16),
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to deactivate `fsync` entirely. On SQLite, it is also possible to deactivate `fsync` with
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`pragma synchronous = off`, but we have not started any optimization work on it yet:
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our SQLite implementation currently still calls `fsync` for all write operations. Additionally, we are
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using these engines through Rust bindings that do not support async Rust,
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with which Garage is built, which has an impact on performance as well.
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**Our comparison will therefore not reflect the raw performances of
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these database engines, but instead, our integration choices.**
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Still, we think it makes sense to evaluate our implementations in their current
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state in Garage. We designed a benchmark that is intensive on the metadata part
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of the software, i.e. handling large numbers of tiny files. We chose again
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`minio/warp` as a benchmark tool, but we
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configured it with the smallest possible object size it supported, 256
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bytes, to put pressure on the metadata engine. We evaluated sled twice:
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with its default configuration, and with a configuration where we set a flush
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interval of 10 minutes (longer than the test) to disable `fsync`.
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*Note that S3 has not been designed for workloads that store huge numbers of small objects;
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a regular database, like Cassandra, would be more appropriate. This test has
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only been designed to stress our metadata engine and is not indicative of
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real-world performances.*
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![Plot of our metadata engines comparison with Warp](db_engine.png)
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Unsurprisingly, we observe abysmal performances with SQLite, as it is the engine we did not put work on yet,
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and that still does an `fsync` for each write. Garage with the `fsync`-disabled LMDB backend performs twice better than
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with sled in its default version and 60% better than the "no `fsync`" sled version in our
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benchmark. Furthermore, and not depicted on these plots, LMDB uses way less
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disk storage and RAM; we would like to quantify that in the future. As we are
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only at the very beginning of our work on metadata engines, it is hard to draw
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strong conclusions. Still, we can say that SQLite is not ready for production
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workloads, and that LMDB looks very promising both in terms of performances and resource
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usage, and is a very good candidate for being Garage's default metadata engine in
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future releases, once we figure out the proper `fsync` tuning. In the future, we will need to define a data policy for Garage to help us
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arbitrate between performance and durability.
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*To `fsync` or not to `fsync`? Performance is nothing without reliability, so we
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need to better assess the impact of possibly losing a write after it has been validated.
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Because Garage is a distributed system, even if a node loses its write due to a
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power loss, it will fetch it back from the 2 other nodes that store it. But rare
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situations can occur where 1 node is down and the 2 others validate the write and then
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lose power before having time to flush to disk. What is our policy in this case? For storage durability,
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we are already supposing that we never lose the storage of more than 2 nodes,
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so should we also make the hypothesis that we won't lose power on more than 2 nodes at the same
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time? What should we do about people hosting all of their nodes at the same
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place without an uninterruptible power supply (UPS)? Historically, it seems that Minio developers also accepted
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some compromises on this side
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([#3536](https://github.com/minio/minio/issues/3536),
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[HN Discussion](https://news.ycombinator.com/item?id=28135533)). Now, they seem to
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use a combination of `O_DSYNC` and `fdatasync(3p)` - a derivative that ensures
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only data and not metadata is persisted on disk - in combination with
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`O_DIRECT` for direct I/O
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([discussion](https://github.com/minio/minio/discussions/14339#discussioncomment-2200274),
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[example in Minio source](https://github.com/minio/minio/blob/master/cmd/xl-storage.go#L1928-L1932)).*
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**Storing a million objects** - Object storage systems are designed not only
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for data durability and availability but also for scalability, so naturally,
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some people asked us how scalable Garage is. If giving a definitive answer to this
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question is out of the scope of this study, we wanted to be sure that our
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metadata engine would be able to scale to a million objects. To put this
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target in context, it remains small compared to other industrial solutions:
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Ceph claims to scale up to [10 billion objects](https://www.redhat.com/en/resources/data-solutions-overview),
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which is 4 orders of magnitude more than our current target. Of course, their
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benchmarking setup has nothing in common with ours, and their tests are way
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more exhaustive.
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We wrote our own benchmarking tool for this test,
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[s3billion](https://git.deuxfleurs.fr/Deuxfleurs/mknet/src/branch/main/benchmarks/s3billion)[^ref2].
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The benchmark procedure consists in
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concurrently sending a defined number of tiny objects (8192 objects of 16
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bytes by default) and measuring the wall clock time to the last object upload. This step is then repeated a given
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number of times (128 by default) to effectively create a target number of
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objects on the cluster (1M by default). On our local setup with 3
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nodes, both Minio and Garage with LMDB were able to achieve this target. In the
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following plot, we show how much time it took Garage and Minio to handle
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each batch.
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Before looking at the plot, **you must keep in mind some important points regarding
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the internals of both Minio and Garage**.
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Minio has no metadata engine, it stores its objects directly on the filesystem.
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Sending 1 million objects on Minio results in creating one million inodes on
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the storage server in our current setup. So the performances of the filesystem
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probably have a substantial impact on the observed results.
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In our precise setup, we know that the
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filesystem we used is not adapted at all for Minio (encryption layer, fixed
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number of inodes, etc.). Additionally, we mentioned earlier that we deactivated
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`fsync` for our metadata engine in Garage, whereas Minio has some `fsync` logic here slowing down the
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creation of objects. Finally, object storage is designed for big objects, for which the
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costs measured here are negligible. In the end, again, we use Minio only as a
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reference point to understand what performance budget we have for each part of our
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software.
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Conversely, Garage has an optimization for small objects. Below 3KB, a separate file is
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not created on the filesystem but the object is directly stored inline in the
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metadata engine. In the future, we plan to evaluate how Garage behaves at scale with
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objects above 3KB, which we expect to be way closer to Minio, as it will have to create
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at least one inode per object. For now, we limit ourselves to evaluating our
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metadata engine and focus only on 16-byte objects.
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![Showing the time to send 128 batches of 8192 objects for Minio and Garage](1million-both.png)
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It appears that the performances of our metadata engine are acceptable, as we
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have a comfortable margin compared to Minio (Minio is between 3x and 4x times
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slower per batch). We also note that, past the 200k objects mark, Minio's
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time to complete a batch of inserts is constant, while on Garage it still increases on the observed range.
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It could be interesting to know if Garage's batch completion time would cross Minio's one
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for a very large number of objects. If we reason per object, both Minio's and
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Garage's performances remain very good: it takes respectively around 20ms and
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5ms to create an object. In a real-world scenario, at 100 Mbps, the upload of a 10MB file takes
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800ms, and goes up to 8sec for a 100MB file: in both cases
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handling the object metadata would be only a fraction of the upload time. The
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only cases where a difference would be noticeable would be when uploading a lot of very
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small files at once, which again would be an unusual usage of the S3 API.
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Let us now focus on Garage's metrics only to better see its specific behavior:
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![Showing the time to send 128 batches of 8192 objects for Garage only](1million.png)
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Two effects are now more visible: 1., batch completion time increases with the
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number of objects in the bucket and 2., measurements are scattered, at least
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more than for Minio. We expected this batch completion time increase to be logarithmic,
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but we don't have enough data points to conclude confidently it is the case: additional
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measurements are needed. Concerning the observed instability, it could
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be a symptom of what we saw with some other experiments on this setup,
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which sometimes freezes under heavy I/O load. Such freezes could lead to
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request timeouts and failures. If this occurs on our testing computer, it might
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occur on other servers as well: it would be interesting to better understand this
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issue, document how to avoid it, and potentially change how we handle I/O
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internally in Garage. But still, this was a very heavy test that will probably not be encountered in
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many setups: we were adding 273 objects per second for 30 minutes straight!
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|
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To conclude this part, Garage can ingest 1 million tiny objects while remaining
|
|
usable on our local setup. To put this result in perspective, our production
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|
cluster at [deuxfleurs.fr](https://deuxfleurs) smoothly manages a bucket with
|
|
116k objects. This bucket contains real-world production data: it is used by our Matrix instance
|
|
to store people's media files (profile pictures, shared pictures, videos,
|
|
audio files, documents...). Thanks to this benchmark, we have identified two points
|
|
of vigilance: the increase of batch insert time with the number of existing
|
|
objects in the cluster in the observed range, and the volatility in our measured data that
|
|
could be a symptom of our system freezing under the load. Despite these two
|
|
points, we are confident that Garage could scale way above 1M objects, although
|
|
that remains to be proven.
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|
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## In an unpredictable world, stay resilient
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|
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Supporting a variety of real-world networks and computers, especially ones that
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|
were not designed for software-defined storage or even for server purposes, is the
|
|
core value proposition of Garage. For example, our production cluster is
|
|
hosted [on refurbished Lenovo Thinkcentre Tiny desktop computers](https://guide.deuxfleurs.fr/img/serv_neptune.jpg)
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|
behind consumer-grade fiber links across France and Belgium (if you are reading this,
|
|
congratulation, you fetched this webpage from it!). That's why we are very
|
|
careful that our internal protocol (referred to as "RPC protocol" in our documentation)
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|
remains as lightweight as possible. For this analysis, we quantify how network
|
|
latency and number of nodes in the cluster impact the duration of the most
|
|
important kinds of S3 requests.
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|
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|
**Latency amplification** - With the kind of networks we use (consumer-grade
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|
fiber links across the EU), the observed latency between nodes is in the 50ms range.
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|
When latency is not negligible, you will observe that request completion
|
|
time is a factor of the observed latency. That's to be expected: in many cases, the
|
|
node of the cluster you are contacting cannot directly answer your request, and
|
|
has to reach other nodes of the cluster to get the data. Each
|
|
of these sequential remote procedure calls - or RPCs - adds to the final S3 request duration, which can quickly become
|
|
expensive. This ratio between request duration and network latency is what we
|
|
refer to as *latency amplification*.
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|
|
|
For example, on Garage, a `GetObject` request does two sequential calls: first,
|
|
it fetches the descriptor of the requested object from the metadata engine, which contains a reference
|
|
to the first block of data, and then only in a second step it can start retrieving data blocks
|
|
from storage nodes. We can therefore expect that the
|
|
request duration of a small `GetObject` request will be close to twice the
|
|
network latency.
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|
|
|
We tested the latency amplification theory with another benchmark of our own named
|
|
[s3lat](https://git.deuxfleurs.fr/Deuxfleurs/mknet/src/branch/main/benchmarks/s3lat)
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|
which does a single request at a time on an endpoint and measures the response
|
|
time. As we are not interested in bandwidth but latency, all our requests
|
|
involving objects are made on tiny files of around 16 bytes. Our benchmark
|
|
tests 5 standard endpoints of the S3 API: ListBuckets, ListObjects, PutObject, GetObject and
|
|
RemoveObject. Here are the results:
|
|
|
|
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|
![Latency amplification](amplification.png)
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|
|
|
As Garage has been optimized for this use case from the very beginning, we don't see
|
|
any significant evolution from one version to another (Garage v0.7.3 and Garage
|
|
v0.8.0 Beta 1 here). Compared to Minio, these values are either similar (for
|
|
ListObjects and ListBuckets) or significantly better (for GetObject, PutObject, and
|
|
RemoveObject). This can be easily explained by the fact that Minio has not been designed with
|
|
environments with high latencies in mind. Instead, it is expected to run on clusters that are built
|
|
in a singe data center. In a multi-DC setup, different clusters could then possibly be interconnected with their asynchronous
|
|
[bucket replication](https://min.io/docs/minio/linux/administration/bucket-replication.html?ref=docs-redirect)
|
|
feature.
|
|
|
|
*Minio also has a [multi-site active-active replication system](https://blog.min.io/minio-multi-site-active-active-replication/)
|
|
but it is even more sensitive to latency: "Multi-site replication has increased
|
|
latency sensitivity, as Minio does not consider an object as replicated until
|
|
it has synchronized to all configured remote targets. Replication latency is
|
|
therefore dictated by the slowest link in the replication mesh."*
|
|
|
|
|
|
**A cluster with many nodes** - Whether you already have many compute nodes
|
|
with unused storage, need to store a lot of data, or are experimenting with unusual
|
|
system architectures, you might be interested in deploying over a hundred Garage nodes.
|
|
However, in some distributed systems, the number of nodes in the cluster will
|
|
have an impact on performance. Theoretically, our protocol, which is inspired by distributed
|
|
hash tables (DHT), should scale fairly well, but until now, we never took the time to test it
|
|
with a hundred nodes or more.
|
|
|
|
This test was run directly on Grid5000 with 6 physical servers spread
|
|
in 3 locations in France: Lyon, Rennes, and Nantes. On each server, we ran up
|
|
to 65 instances of Garage simultaneously, for a total of 390 nodes. The
|
|
network between physical servers is the dedicated network provided by
|
|
the Grid5000 community. Nodes on the same physical machine communicate directly
|
|
through the Linux network stack without any limitation. We are aware that this is a
|
|
weakness of this test, but we still think that this test can be relevant as, at
|
|
each step in the test, each instance of Garage has 83% (5/6) of its connections
|
|
that are made over a real network. To measure performances for each cluster size, we used
|
|
[s3lat](https://git.deuxfleurs.fr/Deuxfleurs/mknet/src/branch/main/benchmarks/s3lat)
|
|
again:
|
|
|
|
|
|
![Impact of response time with bigger clusters](complexity.png)
|
|
|
|
Up to 250 nodes, we observed response times that remain constant. After this threshold,
|
|
results become very noisy. By looking at the server resource usage, we saw
|
|
that their load started to become non-negligible: it seems that we are not
|
|
hitting a limit on the protocol side, but have simply exhausted the resource
|
|
of our testing nodes. In the future, we would like to run this experiment
|
|
again, but on many more physical nodes, to confirm our hypothesis. For now, we
|
|
are confident that a Garage cluster with 100+ nodes should work.
|
|
|
|
|
|
## Conclusion and Future work
|
|
|
|
During this work, we identified some sensitive points on Garage,
|
|
on which we will have to continue working: our data durability target and interaction with the
|
|
filesystem (`O_DSYNC`, `fsync`, `O_DIRECT`, etc.) is not yet homogeneous across
|
|
our components; our new metadata engines (LMDB, SQLite) still need some testing
|
|
and tuning; and we know that raw I/O performances (GetObject and PutObject for large objects) have a small
|
|
improvement margin.
|
|
|
|
At the same time, Garage has never been in better shape: its next version (version 0.8) will
|
|
see drastic improvements in terms of performance and reliability. We are
|
|
confident that Garage is already able to cover a wide range of deployment needs, up
|
|
to over a hundred nodes and millions of objects.
|
|
|
|
In the future, on the performance aspect, we would like to evaluate the impact
|
|
of introducing an SRPT scheduler
|
|
([#361](https://git.deuxfleurs.fr/Deuxfleurs/garage/issues/361)), define a data
|
|
durability policy and implement it, make a deeper and larger review of the
|
|
state of the art (Minio, Ceph, Swift, OpenIO, Riak CS, SeaweedFS, etc.) to
|
|
learn from them and, lastly, benchmark Garage at scale with possibly multiple
|
|
terabytes of data and billions of objects on long-lasting experiments.
|
|
|
|
In the meantime, stay tuned: we have released
|
|
[a first release candidate for Garage v0.8](https://git.deuxfleurs.fr/Deuxfleurs/garage/releases/tag/v0.8.0-rc1),
|
|
and are already working on several features for the next version.
|
|
For instance, we are working on a new layout that will have enhanced optimality properties,
|
|
as well as a theoretical proof of correctness
|
|
([#296](https://git.deuxfleurs.fr/Deuxfleurs/garage/pulls/296)). We are also
|
|
working on a Python SDK for Garage's administration API
|
|
([#379](https://git.deuxfleurs.fr/Deuxfleurs/garage/pulls/379)), and we will
|
|
soon officially introduce a new API (as a technical preview) named K2V
|
|
([see K2V on our doc for a primer](https://garagehq.deuxfleurs.fr/documentation/reference-manual/k2v/)).
|
|
|
|
|
|
## Notes
|
|
|
|
[^ref1]: Yes, we are aware of [Jepsen](https://github.com/jepsen-io/jepsen)'s
|
|
existence. Jepsen is far more complex than our set of scripts, but
|
|
it is also way more versatile.
|
|
|
|
[^ref2]: The program name contains the word "billion", although we only tested Garage
|
|
up to 1 million objects: this is not a typo, we were just a little bit too
|
|
enthusiastic when we wrote it ;)
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