Workonomics | Senior Data Engineer

Workonomics
London
2 months ago
Applications closed

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Company| Cybersecurity, Threat Intelligence, B2B SaaS

Size| 60 people total (10 in London and growing)

Role| Data Engineer

Level| Senior

Areas| Data Engineering, Data Platforms, Data Architecture

Skills| Python, SQL, Dagster / Databricks / Snowflake, AWS

Based| London (Zone 1)

Hybrid| 2-3 days a week in-office

Offer| up to £120k base + equity


Hi


Workonomics are partnering with a startup who aresolving one of the most pervasive problems in cybersecurity today.


Founded in 2023, they're building aB2B SaaSplatform to help security teams ensure their deployed solutions are actually protecting their organisations against real threats.


They launched their flagship platform just 6 months after the company was founded, andcrossed the $1 million ARR milestone while still in stealth mode.


They recentlyraised £20m Series Aand are now growing their team in London.


They're seeking aSenior Data Engineertocontribute to the build of a brand new Data Platform. The vision is to enable the company to become more data-driven and build not only for today’s needs, but for future needs too.


You’ll enjoy and succeed in this role if you are a Senior Data Engineer who:


  • is proficient withPythonandSQL
  • has solid experience in data platforms, e.g.Dagster,Databricks,Snowflake
  • has been involved in large data engineering / architecture initiatives
  • loves working in startups - bringing ideas into production while clearing uncertainties
  • is an independent learner, passionate about translating business needs into data models


Bonus points for experience with:


  • various databases, e.g.NoSQL,Graph
  • data streaming, e.gKafka,Airflow
  • theAWSecosystem
  • SlackGIFs, emojis, and memes


If this sounds like you, please hit apply for more specifics about the company and role.

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