Skip to content

Data Engineer – Analytics
Company | Meta |
---|
Location | Menlo Park, CA, USA |
---|
Salary | $212275 – $235400 |
---|
Type | Full-Time |
---|
Degrees | Bachelor’s |
---|
Experience Level | Senior |
---|
Requirements
- Requires a Bachelor’s degree (or foreign degree equivalent) in Computer Science, Engineering, Computer Information Systems, Mathematics, Statistics, Data Analytics, Applied Sciences, or a related field, and five years of work experience in the job offered or in a computer-related occupation.
- Alternatively, the employer will accept seven years of work experience in the job offered or a computer-related occupation as equivalent to the Bachelor’s degree and five years of work experience.
- Any suitable combination of education, training, or experience is acceptable.
- Requires five years of experience in the following:
- 1. Features, design, and use-case scenarios across a big data or data warehouse ecosystem
- 2. Custom ETL design, implementation, and maintenance
- 3. Schema design and dimensional data modeling
- 4. Writing SQL statements
- 5. Analyzing data to identify deliverables, gaps, and inconsistencies
- 6. Managing and communicating data warehouse plans to internal clients, AND
- 7. Python.
Responsibilities
- Design, model, and implement data warehousing activities to deliver the data foundation that drives impact through informed decision making.
- Design, build and launch collections of sophisticated data models and visualizations that support multiple use cases across different products or domains.
- Collaborate with engineers, product managers and data scientists to understand data needs, representing key data insights visually in a meaningful way.
- Define and manage SLA for all data sets in allocated areas of ownership.
- Create and contribute to frameworks that improve the efficacy of logging data, while working with data infrastructure to triage issues and resolve.
- Determine and implement the security model based on privacy requirements, confirm safeguards are followed, address data quality issues, and evolve governance processes within allocated areas of ownership.
- Solve challenging data integration problems utilizing optimal ETL patterns, frameworks, query techniques, and sourcing from structured and unstructured data sources.
- Optimize pipelines, dashboards, frameworks, and systems to facilitate easier development of data artifacts.
- Influence product and cross-functional teams to identify data opportunities to drive impact.
- Work on problems of diverse scope where analysis of data requires evaluation of identifiable factors.
- Demonstrate good judgment in selecting methods and techniques for obtaining solutions.
Preferred Qualifications
No preferred qualifications provided.