Postrelease
Talks
Talks archive
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Valentine Gogichashvili ZalandoSince its launch in 2008, Zalando has grown with tremendous speed. The road from startup to multinational corporation has been full of challenges, especially for Zalando's technology team. Distributed across Berlin, Helsinki, Dublin and Dortmund — and nearly 900 professionals strong — Zalando Technology still plans to expand by adding 1,000 more developers through the end of 2016. This rapid growth has showed us that we need to be very flexible about developing processes and organizational structures, so we can scale and experiment. In March 2015, our team adopted Radical Agility: a tech management strategy that emphasizes Autonomy, Purpose, and Mastery, with trust as the glue holding it all together. To make autonomy possible, teams can now choose their own technology stacks for the products they own. Microservices, speaking with each other using RESTful APIs, promise to minimize the costs of integration between autonomous teams. Isolated AWS accounts, run on top of our own open-source Platform as a Service (called STUPS.io), give each autonomous team enough hardware to experiment and introduce new features without breaking our entire system.
One small issue with having microservices isolated in their individual AWS accounts: Our teams keep local data for themselves. In this environment, building an ETL process for data analyses, or integrating data from different services, becomes quite challenging. PostgreSQL's new logical replication features, however, now make it possible to stream all the data changes from the isolated databases to the data integration system so that it can collect this data, represent it in different forms, and prepare it for analysis.
In this talk, I will discuss Zalando's open-source data collection prototype, which uses PostgreSQL's logical replication streaming capabilities to collect data from various PostgreSQL databases and recreate it for different formats and systems (Data Lake, Operational Data Store, KPI calculation systems, automatic process monitoring). The audience will come away with new ideas for how to use Postgres streaming replication in a microservices environment.
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Ronan Dunklau DaliboMulticorn is a generic Foreign Data Wrapper which goal is to simplify development of FDWs by writing them in Python.
We will see:
- what is an FDW what Multicorn is trying to solve how to use it, with a brief tour of the FDWs shipping with Multicorn.
- how to write your own FDW in python, including the new 9.5 IMPORT FOREIGN SCHEMA api.
- the internals: what Multicorn is doing for you behind the scenes, and what it doesn't
After a presentation of FDWs in general, and what the Multicorn extension really is, we will take a look at some of the FDWs bundled with Multicorn.
Then, a complete tour of the Multicorn API will teach you how to write a FDW in python, including the following features:
- using the table definition
- WHERE clauses push-down
- output columns restrictions
- influencing the planner
- writing to a foreign table
- IMPORT FOREIGN SCHEMA
- ORDER BY clauses pushdown
- transaction management
This will be a hands-on explanation, with code snippets allowing you to build your own FDW in python from scratch.
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Марат Фаттахов BARS group
Dmitry Boikov BARS groupFirst working on Oracle, we could not ignore appearance and growth of PostgreSQL. I will describe how we came to PostgreSQL and share some experience of migrating a large medical system.
- developing a code converter;
- packages migration;
- our patches solving some of the migration problems.
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