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Data Engineer (Remote) USA

Remotestar
Cambridge
1 week ago
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Overview

Job role: Data Engineer


Years of Experience: 7+


Location: Anywhere in USA


Work Type: Remote


At RemoteStar, we are hiring for one of our clients, a rapidly growing company focused on digital transformation in the financial services space.


Qualifications


  • 7+ years of experience in application development (Python, SQL, Scala, or Java)
  • 4+ years working with public cloud platforms (AWS, Azure, or Google Cloud)
  • 4+ years with distributed data/computing tools like Spark, MapReduce, Hadoop, Hive, EMR, Kafka, Gurobi, or MySQL
  • 4+ years working on real-time data and streaming applications
  • 4+ years implementing NoSQL databases (MongoDB, Cassandra)
  • 4+ years in data warehousing (Redshift or Snowflake)
  • 4+ years of experience with UNIX/Linux and shell scripting
  • 2+ years of experience with Agile engineering practices


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