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Senior Analytics Engineer
Location
United States
Posted
111 days ago
Salary
0
Seniority
Senior
Job Description
Senior Analytics Engineer
Fleetio
• Enable self-service analytics for all team members by designing clean, intuitive data models and metrics through dbt, empowering employees to make informed, data-driven decisions. • Develop and refine custom data pipelines that ingest data from operational systems to our analytics platform, handling both streaming and batch data using third-party tooling and homegrown solutions. • Maintain and optimize the data platform infrastructure, focusing on data quality, ELT efficiency, and platform hygiene. • Architect and implement key components of the analytics infrastructure, such as BI, semantic layers, and a foundational data warehouse. • Develop and maintain streaming data pipelines from various databases and data sources. • Collaborate across business units to understand data needs and ensure the required data is collected, modeled, and available to team members. • Document best practices and coach/advise other data analysts, product managers, engineers, etc. on data modeling, SQL query optimization & reusability, etc. Keep our data platform tidy by managing roles and permissions and deprecating old projects.
Job Requirements
- 5+ years of experience with a proven track record in data or analytics engineering.
- Experience transforming raw data into clean models using standard tools of the modern data stack and a deep understanding of ELT and data modeling concepts.
- Proficiency in python and orchestration tooling like prefect or dagster.
- Experience in designing, building, and administering modern data pipelines and data warehouses.
- Experience with dbt.
- Experience with semantic layers like cube or metricflow.
- Experience with Snowflake, BigQuery, or Redshift.
- Experience with version control tools such as Github or Gitlab.
- Experience with ELT tools such as Stitch or Fivetran.
- Experience with CI/CD and IaaC tooling such as github Actions and Terraform.
- Experience with business intelligence solutions (Metabase, Looker, Tableau, Periscope, Mode)
- Excellent communication and project management skills with a customer service focused mindset.
- Be sure to mention "coffee" in your application so we know you read this.
Benefits
- Multiple health/dental coverage options (100% coverage for employee, 50% for family)
- Vision insurance
- Incentive stock options
- 401(k) match of 4%
- PTO - 4 weeks (increases at year two!)
- 12 company holidays + 2 floating holidays
- Parental leave - birthing parent (16 weeks paid) non-birthing (4 weeks paid)
- FSA & HSA options
- Short and long term disability (short term 100% paid)
- Community service funds
- Professional development funds
- Wellbeing fund - $150 quarterly
- Business expense stipend - $125 quarterly
- Mac laptop + new hire equipment stipend
- Fully stocked kitchen with tons of drinks & snacks (BHM only)
- Remote working friendly since 2012 #LI-REMOTE
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