Data Engineer II

DailyPay
Belfast
4 days ago
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Applications processed via employer's online application form

DailyPay provides an industry-leading earned wage access platform that gives your employ...

DailyPay, Inc. is transforming the way people get paid. As the industry’s leading on-demand pay solution, DailyPay uses an award-winning technology platform to help America’s top employers build stronger relationships with their employees. This voluntary employee benefit enables workers everywhere to feel more motivated to work harder and stay longer on the job, while supporting their financial well-being outside of the workplace.

DailyPay is headquartered in New York City, with operations throughout the United States as well as in Belfast. For more information, visitDailyPay's Press Center.

The Role:

DailyPay is looking for a Data Engineer II to join our Data Engineering Team. The DataEngineering Team is responsible for building the data infrastructure that underpins our dataanalytics and data products that are used cross-functionally inside the company (sales,marketing, operations, engineering, etc.) as well as by DailyPay partner companies. The teamalso ingests internal and external data to help provide insights about the payroll industry ingeneral, as well as about personal finance and financial wellbeing.

If this opportunity excites you, we encourage you to apply even if you do not meet all of the qualifications.

How You Will Make an Impact:
  • Build and maintain company’s ETL and data pipelines
  • Produce, support and maintain data reports, analytics, metrics and dashboards forinternal and external use
  • Design and implement data testing and scaling capabilities
  • Maintain and optimize monitoring and alerting for company’s ETL and data pipelines,data warehouse, and analytics infrastructure
  • Optimize database performance while reducing warehouse costs and development times
  • Participate in code approvals and PR review process for company-wide analyticsengineering efforts
What You Bring to The Team:
  • 5+ years SQL experience; expert SQL capability
  • 1+ years of dbt experience preferred
  • Familiarity with BI tools such as Tableau, Looker, or similar
  • Excellent presentation and communication skills
  • Experience in Data Architecture for Dimensional Models, Data Lakes and DataLakehouses
  • Experience of working in an event-driven architecture environment and cloud platforms(e.g, AWS, Azure, GCP)
  • Experience with Snowflake, Redshift, and ETL tools like Fivetran or Stitch is a plus
Nice to Haves:
  • Python experience is a plus
What We Offer:
  • Competitive compensation
  • Opportunity for equity ownership
  • Private health insurance option
  • Employee Resource Groups
  • Fun company outings and events

#BI-Hybrid #LI-Hybrid

Pay Transparency. DailyPay takes a market-based approach to compensation, which may vary depending on your location. Additionally, this role may be eligible for variable incentive compensation in addition to stock options. Where a candidate fits within the compensation range for a role is based on their demonstrated experience, qualifications, skills and internal equity.

Belfast Compensation Range

DailyPay does not accept and will not review unsolicited resumes from search firms.

DailyPay is committed to fostering an inclusive, equitable culture of belonging, grounded in empathy and respect, which values openness to opinions, awareness of lived experiences, fair treatment and access for all. We strive to build and develop diverse teams to create an organisation where innovation thrives, where the full potential of each person is engaged, and their views, beliefs and values are integrated into our ways of working.

We are an equal opportunities employer and welcome applications from all sections of the community.

Applications processed via employer's online application form


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