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Python Data Engineer

Identify Solutions
Liverpool
4 days ago
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Want to engineer world-class realtime Data for a Unicorn $200m scale-up?

If you love making a big real-life impact with Data in Python & Airflow, you may be interested in this Data Engineer role with a Unicorn scale-up, where you'd build highly accurate product tracking platforms to power live insights for the world's most reputable businesses.

Your work will benefit 10k+ users as you build core algorithms & ETL pipelines to distribute & aggregate data, & you'll have flexibility to build APIs & fullstack too, if you like!

You’ll be at the forefront of data quality, building new features & improving data stores integrations; optimising system performance & ensuring high availability & reliability.

£65-78k salary + Bonus + Healthcare + Life Insurance + Death in service + 25 days' holiday

100% remote or you’re welcome at the London offices anytime.

What we need
  • Strong Python / Airflow / ETL pipelines experience
  • Streaming & big data tech (Kafka, Spark)
  • Interest in Scala or other JVM languages

Want more info? Get inn touch for an informal conversation!


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