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February 05 – 07 , 2018

PGConf.Russia 2018

PGConf.Russia is a leading Russian PostgreSQL international conference, annually taking together more than 500 PostgreSQL professionals from Russia and other countries — core and software developers, DBAs and IT-managers. The 3-day program includes training workshops presented by leading PostgreSQL experts, more than 40 talks, panel discussions and a lightning talk session.

Thems

  • PostgreSQL at the cutting edge of technology: big data, internet of things, blockchain
  • New features in PostgreSQL and around: PostgreSQL ecosystem development
  • PostgreSQL in business software applications: system architecture, migration issues and operating experience
  • Integration of PostgreSQL to 1C, GIS and other software application systems.
  • more than
    0 participants
  • 0 speakers
  • 0
    minutes of conversation
  • 54 talks
  • offline
    format

Talks

Talks archive

PGConf.Russia 2018
  • Alexey Klyukin
    Alexey Klyukin Zalando SE
    Alexander Kukushkin
    Alexander Kukushkin Zalando SE

    Patroni is a Python application to create high-availability PostgreSQL clusters based on the streaming replication. It is used by Red Hat, IBM Compose, Zalando and many other companies. This tutorial will highlight Patroni architecture, provide attendees with hands-on experience of configuring high-availability PostgreSQL clusters with Patroni, describe how to take advantage of numerous additional features and give an opportunity to learn more about common mistakes related to running Patroni and its troubleshooting.

    In order to take most out of the Patroni tutorial one needs a laptop with git, vagrant and virtual box installed.

    Vagrant can be obtained from https://www.vagrantup.com Virtualbox is at https://www.vagrantup.com

    Alternatively, one can install your Linux distribution packages (or use homebrew on Mac).

    Once Vagrant and Virtualbox are installed one can run the Patroni VM by issuing the following commands:

    $ git clone https://github.com/alexeyklyukin/patroni-training
    $ cd patroni-training
    $ vagrant up
    

    When the setup concludes Patroni box can be accessed via ssh using vagrant ssh command.

  • Andrey Zubkov
    Andrey Zubkov ООО "Пармалогика"

    This report is about my PostgreSQL extension pg_profile. This extension all you need to create periodic statistics snapshots and to keep them. You can build a report on one or many serial snapshots. This report will contain statistics information about database workload in specified time period. It is very useful to start investigation on performance degragation or excessive resoure consumption in the past.

  • Ivan Panchenko
    Ivan Panchenko PostgresPro

    Tutorial will show specifics of server programming in these languages. I will present practical examples and compare the features of these languages in PostgreSQL environment from the viewpoint of solving practical tasks.

  • Konstantin Knignik
    Konstantin Knignik PostgresPro

    PostgreSQL looks very competitive with other mainstream databases on OLTP workload (execution of large number of simple queries). But on OLAP queries, requiring processing of larger volumes of data, DBMS-es oriented on analytic queries processing can provide an order of magnitude better speed. The following factors limit Postgres OLAP performance:

    • Unpacking tuple overhead (tuple_deform)
    • Interpretation overhead (Postgres executor has to interpret query execution plan)
    • Abstraction penalty (support of abstract data types)
    • Pull model overhead (operators are pulling tuples from heap page one-by-one, resulting numerous repeated accesses to the page)
    • MVCC overhead (extra per-tuple storage + visibility check cost)

    All this issues can be solved using vectorized executor, which proceed bulk of values at once. In this presentation I will show how vector operations can be implemented in Postgres as standard Postgres extension, not affecting Postgres core. The approach is based on introducing special types: tile types, which can be used instead of normal (scalar) types and implement vector operations. Postgres extension mechanism, such as UDT (user-defined type), FDW (foreign data wrappers), executor hooks are used to let users work with vectorized tables almost in the same way as with normal tables. But more than 10 times faster because of vector operations.

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