Engineering Lead Manager, Data Science in London - Index Exchange

WorksHub
City of London
1 month ago
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Experience and Knowledge Requirements

Experience with data preparation and cleaning as well as data enrichment.

Knowledge of big data stack including Kafka, Hadoop, Spark, Scala, and Airflow, as well as data warehouse technologies such as Vertica.

Knowledge of BI tools like Looker and/or Redash will be very...


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