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new housekeeper plugin in osimis images
author | Alain Mazy <am@osimis.io> |
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date | Mon, 09 May 2022 15:02:06 +0200 |
parents | c29ac12e3160 |
children | 3e8a3a900e9e |
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.. _scalability: Scalability of Orthanc ====================== .. contents:: Overview -------- One of the most common question about Orthanc is: *"How many DICOM instances can be stored by Orthanc?"* The source code of Orthanc imposes no such hard limit by itself. At the time of writing, we know that Orthanc is being used in production in hospitals with more than 15TB of data, 125,000 studies and around 50 millions of instances (please `get in touch with us <https://www.orthanc-server.com/static.php?page=contact>`__ if you can share other testimonials). Other users have even reported more than 28TB of data. Here are links to some testimonials that were published on the `Orthanc Users <https://groups.google.com/forum/#!forum/orthanc-users>`__ discussion group: `1 <https://groups.google.com/d/msg/orthanc-users/-L0D1c2y6rw/KmWnwEijAgAJ>`__, `2 <https://groups.google.com/d/msg/orthanc-users/-L0D1c2y6rw/nLXxtYzuCQAJ>`__, `3 <https://groups.google.com/d/msg/orthanc-users/s5-XlgA2BEY/ZpYagqBwAAAJ>`__, `4 <https://groups.google.com/d/msg/orthanc-users/A4hPaJo439s/NwR6zk9FCgAJ>`__, `5 <https://groups.google.com/d/msg/orthanc-users/Z5cLwbVgJc0/SxVzxF7ABgAJ>`__, `6 <https://groups.google.com/d/msg/orthanc-users/6tGNOqlUk-Q/vppkAYnFAQAJ>`__... The stress is actually put on the underlying database engine, and on the storage area (check out :ref:`orthanc-storage`). As explained in the :ref:`troubleshooting section <troubleshooting>`, the built-in SQLite database engine should be replaced by an enterprise-ready database engine once Orthanc must store several hundreds of thousands of DICOM instances (check out the :ref:`postgresql` and :ref:`mysql`). It is also true that the performance of Orthanc in the presence of large databases has continuously improved over time, especially when it comes to the speed of :ref:`DICOM C-FIND <dicom-find>`. .. _scalability-setup: Recommended setup for best performance -------------------------------------- Here is a generic setup that should provide best performance in the presence of large databases: * Make sure to use the latest release of Orthanc (1.11.0 at the time of writing) running on a GNU/Linux distribution. * We suggest to use the latest release of the :ref:`PostgreSQL plugin <postgresql>` to store the database index (4.0 at the time of writing). Make sure that ``EnableIndex`` is set to ``true``. * Make sure that :ref:`run-time debug assertions <troubleshooting>` are turned off. A warning will show in the logs if this is not the case. Note that all pre-built binaries provided by Osimis are correctly configured in that respect. * We suggest to use the default filesystem storage area. Of course, make sure that the filesystem is properly backed up, and that technologies such as RAID are enabled. Make sure that the option ``EnableStorage`` of the PostgreSQL plugins is set to ``false``. * Obviously, the PostgreSQL database should be stored on a high-speed drive (SSD). This is less important for the storage area. * It may be useful to store the PostgreSQL database on another drive than the storage area. This should improve the use of the available bandwidth to the disks. * If your Orthanc instance is performing a lot of IO requests in parallel e.g because many clients are reading/writing DICOM files at the same time, you should consider using an :ref:`object storage <object-storage>` plugin to store your files. * The :ref:`Orthanc configuration file <configuration>` should have the following values for performance-related options (but make sure to understand their implications): * ``StorageCompression = false`` * ``LimitFindResults = 100`` * ``LimitFindInstances = 100`` * ``KeepAlive = true`` * ``TcpNoDelay = true`` * ``StorageAccessOnFind = Never`` * Consider adding ``SaveJobs = false`` * Since Orthanc 1.9.2 and PostgreSQL plugins 4.0: By default, the PostgreSQL index plugin uses 1 single connection to the PostgreSQL database. You can have multiple connections by setting the ``IndexConnectionsCount`` to a higher value (for instance ``5``) in the ``PostgreSQL`` section of the configuration file. This will improve concurrency. Check out :ref:`the explanation below <multiple-writers>`. * Since Orthanc 1.9.2 and PostgreSQL plugins 4.0: If you have an hospital-wide VNA deployment, you could consider to deploy multiple Orthanc servers sharing the same PostgreSQL database. A typical scenario is having one "writer" Orthanc server that handles the ingesting of DICOM instances, and multiple "reader" Orthanc servers with features such as DICOMweb or viewers. * From Orthanc 1.11.0: you have the ability to add more :ref:`main DICOM tags <main-dicom-tags>` in the Orthanc Index to speed up C-Find, ``tools/find``, DICOMWeb QIDO-RS, WADO-RS and especially WADO-RS Retrieve Metadata. * Make sure to carefully :ref:`read the logs <log>` in ``--verbose`` mode, especially at the startup of Orthanc. The logs may contain very important information regarding performance. * Make sure to read guides about the `tuning of PostgreSQL <https://wiki.postgresql.org/wiki/Performance_Optimization>`__. * Make sure to enable the `Autovacuum Daemon <https://www.postgresql.org/docs/current/routine-vacuuming.html>`__ of PostgreSQL, or to periodically run the ``VACUUM`` SQL command on the PostgreSQL database in order to `reclaim the storage space <https://www.postgresql.org/docs/current/sql-vacuum.html>`__ that is occupied by rows that have been deleted from the database (e.g. in a cron job). * You might also be interested in checking the options related to :ref:`security <security>`. * Consider using filesystems that are known to achieve high performance, such as `XFS <https://en.wikipedia.org/wiki/XFS>`__ or `Btrfs <https://en.wikipedia.org/wiki/Btrfs>`__ on GNU/Linux distributions. * If you need to grow the storage area as more space becomes needed, you can consider the following solutions: - Move the storage area to another disk partition, and update the ``StorageDirectory`` :ref:`configuration option <configuration>` accordingly. - :ref:`Replicate <replication>` your current instance of Orthanc onto another instance of Orthanc with a larger storage area. - On GNU/Linux distributions, check out `LVM (Logical Volume Manager) <https://en.wikipedia.org/wiki/Logical_Volume_Manager_(Linux)>`__. - On Microsoft Windows, check out the so-called "`Storage Spaces <https://docs.microsoft.com/en-us/windows-server/storage/storage-spaces/overview>`__". - Another approach is to use `MinIO <https://docs.min.io/>`__ in distributed mode in conjunction with the :ref:`AWS S3 plugin <minio>` for Orthanc. * If using the :ref:`DICOMweb server plugin <dicomweb-server-config>`, consider setting configuration option ``StudiesMetadata`` to ``MainDicomTags``. * If using PostgreSQL as a managed cloud service by Microsoft Azure, make sure to reduce the verbosity of the logs. If logging is not minimal, Osimis has observed an impact on performance. .. _scalability-memory: Controlling memory usage ------------------------ The absence of memory leaks in Orthanc is verified thanks to `valgrind <https://valgrind.org/>`__. On GNU/Linux systems, you might however `observe a large memory consumption <https://groups.google.com/d/msg/orthanc-users/qWqxpvCPv8g/47wnYyhOCAAJ>`__ in the "resident set size" (VmRSS) of the application, notably if you upload multiple large DICOM files using the REST API. This large memory consumption comes from the fact that the embedded HTTP server is heavily multi-threaded, and that many so-called `memory arenas <https://sourceware.org/glibc/wiki/MallocInternals>`__ are created by the glibc standard library (up to one per thread). As a consequence, if each one of the 50 threads in the HTTP server of Orthanc (default value of the ``HttpThreadsCount`` option) allocates at some point, say, 50MB, the total memory usage reported as "VmRSS" can grow up to 50 threads x 50MB = 2.5GB, even if the Orthanc threads properly free all the buffers. .. highlight:: bash A possible solution to reducing this memory usage is to ask glibc to limit the number of "memory arenas" that are used by the Orthanc process. On GNU/Linux, this can be controlled by setting the environment variable ``MALLOC_ARENA_MAX``. For instance, the following bash command-line would use one single arena that is shared by all the threads in Orthanc:: $ MALLOC_ARENA_MAX=1 ./Orthanc Obviously, this restrictive setting will use minimal memory, but will result in contention among the threads. A good compromise might be to use 5 arenas:: $ MALLOC_ARENA_MAX=5 ./Orthanc Memory allocation on GNU/Linux is a complex topic. There are other options available as environment variables that could also reduce memory consumption (for instance, ``MALLOC_MMAP_THRESHOLD_`` would bypass arenas for large memory blocks such as DICOM files). Check out the `manpage <http://man7.org/linux/man-pages/man3/mallopt.3.html>`__ of ``mallopt()`` for more information. **Status:** * Since **Orthanc 1.8.2**, the global configuration ``MallocArenaMax`` automatically sets ``MALLOC_MMAP_THRESHOLD_`` (defaults to ``5``) during the startup of Orthanc. * The ``jodogne/orthanc`` and ``jodogne/orthanc-plugins`` Docker images automatically set ``MALLOC_ARENA_MAX`` to ``5`` **since release 1.6.1** (cf. `changeset <https://github.com/jodogne/OrthancDocker/commit/bd7e9f4665ce8dd6892f82a148cabe8ebcf1c7d9>`__). * The ``osimis/orthanc`` images automatically set ``MALLOC_ARENA_MAX`` to ``5`` **since release 20.12.2**. .. _scalability-limitations: Known limitations ----------------- Exclusive access to the DB in Orthanc <= 1.9.1 ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ Orthanc was originally designed as a mini-DICOM server in 1-to-1 relation with a SQLite database. Until **Orthanc 1.9.1**, because of this original design, the internal code accessing the DB was affected by a strong limitation: Inside a single Orthanc process, there was no concurrent access to the DB. One solution to avoid this limitation was to have multiple Orthanc accessing the same DB (works only for MySQL and PostgreSQL) as presented in this `sample <https://bitbucket.org/osimis/orthanc-setup-samples/src/master/docker/multiple-orthancs-on-same-db/>`__. However, this solution was only robust if there was **one single "writer" Orthanc server** (i.e. only one Orthanc was modifying the database). Indeed, the core of Orthanc <= 1.9.1 did not support the replay of database transactions, which is necessary to deal with conflicts between several instances of Orthanc that would simultaneously write to the database. Concretely, in Orthanc <= 1.9.1, when connecting multiple Orthanc to a single database by setting ``Lock`` to ``false``, there should only be one instance of Orthanc acting as a writer and all the other instances of Orthanc acting as readers only. Be careful to set the option ``SaveJobs`` to ``false`` in the configuration file of all the instances of Orthanc acting as readers (otherwise the readers would also modify the database). Some issues reported in our bug tracker are related this limitation: `issue 83 <https://bugs.orthanc-server.com/show_bug.cgi?id=83>`__, `issue 121 <https://bugs.orthanc-server.com/show_bug.cgi?id=121>`__, `issue 151 <https://bugs.orthanc-server.com/show_bug.cgi?id=151>`__. This limitation has disappeared with Orthanc 1.9.2 and PostgreSQL/MySQL plugins 4.0, were the database engine was fully rewritten. .. _multiple-writers: Concurrent accesses to the DB in Orthanc >= 1.9.2 ^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^ In **Orthanc 1.9.2 and PostgreSQL/MySQL plugins 4.0**, the database engine of Orthanc was rewritten from scratch to allow multiple writers/readers to share the same database. This new feature necessitated a full refactoring of the database engine, so as to replay transactions in the case of collisions between concurrent transactions to the database. Furthermore, one Orthanc server can also manage several connections to PostgreSQL or MySQL, in order to improve performance by adding concurrency. Read-only database transactions are also distinguished from read-write transactions in order for the database engine to further optimize the patterns of access. Summarizing, the **multiple readers/writers** is now possible. Here is a drawing representing a possible deployment with 4 Orthanc servers, all sharing the same DICOM images, with some servers handling multiple connections to a PostgreSQL database for higher throughput: .. image:: ../images/2021-04-22-MultipleWriters.png :align: center :width: 500px Care must be taken to the following aspects: * Orthanc 1.9.2 must be combined with a database plugin that supports multiple writers. This is the case of the PostgreSQL and MySQL plugins with version >= 4.0. The built-in SQLite database **does not** support multiple writers. * Concurrent access can result in so-called `non-serializable transactions <https://en.wikipedia.org/wiki/Isolation_(database_systems)#Serializable>`__ if two separate database transactions modify the database at the same time (cf. ``ErrorCode_DatabaseCannotSerialize`` in the source code of Orthanc). Orthanc will **automatically replay such transactions** a certain number of times (waiting 100ms more between each retry), until the transactions succeed. The plugins provide an option to control the maximum number of retries. If the maximum number of retries is exceeded, the ``503 Service Unavailable`` HTTP error is raised (server overloaded because of unsuccessful retries of concurrent transactions). * If a higher-level application **modifies metadata and/or attachments** in the presence of multiple writers, Orthanc provides a :ref:`revision mechanism <revisions>` to prevent concurrent updates. * Thanks to this support of concurrent accesses, it is possible to put a **load balancer** on the top of the REST API of Orthanc. All the DICOM resources (patients, studies, series and instances) are indeed shared by all the instances of Orthanc connected to the same underlying database. As an application, this might be of great help if multiple viewers must connect to Orthanc. In `Kubernetes <https://kubernetes.io/>`__, concurrent accesses also make it possible to manage a set of replicas of Orthanc (e.g. as `deployment <https://kubernetes.io/docs/concepts/workloads/controllers/deployment/>`__). There are however some caveats if using a load balancer or Kubernetes replicas, notably: - Each Orthanc instance maintains its own list of jobs. Therefore, the ``/jobs`` route will return only the jobs of the responding Orthanc. - The ``/modalities`` or the ``/peers`` are also private to each instance of Orthanc in the cluster, as soon as the respective options ``DicomModalitiesInDatabase`` and ``OrthancPeersInDatabase`` are set to ``true``. If you need to use such primitives in your application, you have three possibilities: (1) Introduce a distinguished Orthanc server that is responsible to take care of all the jobs (including modalities and peers), (2) create an :ref:`Orthanc plugin <plugins>` (e.g. using :ref:`Python <python-plugin>`) that queries all the Orthanc in the cluster and that aggregates all of their answers, or (3) do the same using a higher-level framework (such as Node.js). Latency ^^^^^^^ For some queries to the database, Orthanc performs several small SQL requests. For instance, a request to a route like ``/studies/{id}`` can trigger 6 SQL queries. Given these round-trips between Orthanc and the DB server, it's important for the **network latency to be as small as possible**. For instance, if your latency is 20ms, a single request to ``/studies/{id}`` might take 120ms. Typically, a latency of 1-4 ms is expected to have correct performances. As a consequence, if deploying Orthanc in a cloud infrastructure, make sure that the DB server and Orthanc VMs are located in the **same datacenter**. Note that most of the time-consuming queries have already been optimized, and that future versions of Orthanc SDK might aggregate even more SQL requests. Starting with Orthanc 1.9.2, and PostgreSQL/MySQL index plugins 4.0, Orthanc can also be configured to handle **multiple connections to the database server** by setting the ``IndexConnectionsCount`` to a value greater than ``1``. This allows concurrent accesses to the database, which avoids to sequentially wait for a database transaction to be concluded before starting another one. Having multiple connections makes the latency problem much less important. Slow deletions ^^^^^^^^^^^^^^ Deleting large studies can take much time, because removing a large number of files from a filesystem can be an expensive operation (which might sound counter-intuitive). This is especially true with HDD drives, that can be much slower than SSD (`an user has reported <https://groups.google.com/g/orthanc-users/c/1lga0oFCHN4/m/jF1inrc4AgAJ>`__ a 20 times speedup by switching from HDD to SSD). If switching from HDD to SDD is not applicable, it is possible to create an :ref:`storage area plugin <creating-plugins>` that delays the actual deletion from the filesystem. The plugin would maintain a queue (e.g. as a SQLite database) of files to be removed. The actual deletion from the filesystem would be done asynchronously in a separate thread. We are looking for funding from the industry to implement such a plugin.