Data Engineer

Charlotte, North Carolina
US$170000 - US$180000 per annum

Data Engineer
Private Equity
Charlotte, NC
$170,000 - 180,000

THE COMPANY:

A top private equity firm that leads in algorithmic trading in the real estate space with assets under management of around $13 billion. They are one of the top providers in single-family rental homes, with over 41,000 homes in the fastest-growing metro markets in the U.S. They are committed to doubling their portfolio size in the next year.

THE ROLE - Data Engineer
As a Senior Data Engineer, you will develop data pipelines, ingrate 3rd party applications, and work closing with data science teams performing statistical analysis using Python. You will update/design the cloud data platform to handle the new real estate data coming in for the data science teams to perform statistical analysis. Your responsibilities will include:

  • Design and optimize data pipelines
  • Design and optimize cloud-based data warehouse solutions for SQL and NoSQL data sources
  • Design solutions that are highly scalability
  • Work with application and data science teams
  • Be able to present to technical and non-technical stakeholders

YOU WILL NEED:

  • Commercial experience with SQL and NO SQL databases
  • Expert at integrating 3rd party APIs into a cloud-based data warehouse
  • Expert in one or more cloud services like AWS or Azure
  • Experience with Snowflake
  • Expert with Python
  • Experience with Juptyer notebooks is a plus

THE BENEFITS:

  • $170,000 - $180,000 base
  • Annual bonus
  • Health benefits
  • 401K
  • PTO and sick time off

HOW TO APPLY

Please register your interest by sending your resume to Jacob Ragland via the Apply link on this page.

KEYWORDS

Data Engineer, AWS, Azure, Snowflake, Python, NoSQL, SQL, Juptyer notebook, data warehouse, ETL, ELT, cloud, MongoDB, S3, real estate, teamwork

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Charlotte, North Carolina
US$170000 - US$180000 per annum
  1. Permanent
  2. Big Data

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