Junior Data Engineer

Kent Street
1 month ago
Applications closed

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Junior Data Engineer

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Senior Data Engineer

Big Data :
Are you excited about taking your technical career to new heights with a full-time, W-2 role as a consultant in a dynamic and rapidly growing company? If you are, let's get in touch - your interest is the first step to starting the conversation.
What This Role Requires:
· 1-4 years of programming experience after your degree

  • Must have coding experience in both Python and SQL
  • It is preferred that you have experience in at least one of the following additional languages: Java, C#, C++, Scala
  • Familiarity with Big Data technology in cloud and on-premises environments: Hadoop, HDFS, Spark, NoSQL Databases, Hive, MongoDB, Airflow, Kafka, AWS, Azure, Dockers or Snowflake
  • Good understanding of object-oriented programming (OOP) principles & concepts
  • Familiarity with advanced SQL techniques
  • Familiarity with data visualization tools such as Tableau or Power BI
  • Familiarity with Apache Flink or Apache Storm
  • Understanding of DevOps practices and tools for (CI/CD) pipelines.
  • Awareness of data security best practices and compliance requirements (e.g., GDPR, HIPA).
    To Qualify:
  • You should be willing to relocate anywhere in the US on a client project-to-project basis, as this is an onsite, in-office position.
  • Strong English communication skills, both written and verbal.
  • Bachelor’s Degree in Computer Science, Information Systems, Electrical Engineering, Mathematics, or a related quantitative field.
  • What’s In It For YOU?
  • Gain valuable, career-enhancing experience working with our Fortune 1,000 clients.
  • Receive relocation support for training and project assignments, as required.
  • Enjoy comprehensive W2 employee benefits.
  • Access full coverage medical, dental, and vision insurance.
  • Qualify for 401K eligibility after one year of employment.
  • Benefit from basic life/AD&D and dependent disability (short/long term) coverage

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