Job Closed
This listing is no longer active.
Impact starts with intelligence.
Senior Data Engineer – Data Platform, Analytics
Location
United States
Posted
112 days ago
Salary
$135K - $165K / year
Seniority
Senior
Job Description
Senior Data Engineer – Data Platform, Analytics
Worldly
• Collaborate with stakeholders across the organization to design and implement scalable, cloud-based data solutions, integrating generative AI to drive innovation. • Work closely with cross-functional stakeholders (finance, product, marketing, customer support, tech, data science) to enable trusted data products for internal decision making and external-facing tools. • Take a leading role in the development of a data lake resource to complement our existing data warehouse. • Work with AWS services, automation tools, machine learning, and generative AI to enhance efficiency, stability, security, and performance. • Operate and evolve our Postgres data warehouse: schema design, performance tuning, indexing, access controls, etc. • Build analytics-ready datasets supporting sustainability measurement, supply-chain insights, and business metrics. • Deploy and maintain multiple instances of Cube.dev semantic layers with standardized configuration, CI/CD workflows, and governance practices. • Support integration and deployment of genAI-enabled workflows, especially NLP-based use cases (classification, extraction, normalization, embeddings/similarity). • In collaboration with data scientists, research and develop practical transition plans for evolving selected relational/warehouse data structures into a graph-based knowledgebase.
Job Requirements
- 5+ years of professional experience in data engineering, analytics engineering, or data platform engineering.
- Advanced SQL expertise and strong experience with relational databases, especially Postgres.
- Strong Python development skills applied to data pipelines, automation, and operational tooling.
- Strong Git-based development practices (branching, PRs, code review).
- Demonstrated experience developing and supporting DBT transformations and operational workflows.
- Hands-on experience building AWS ingestion/ETL workflows using services such as S3, IAM, Glue, Lambda, CloudFormation (or other IaC), and AppFlow.
- Practical DevOps experience: CI/CD pipelines, Git/GitHub workflows, and containerization fundamentals (Docker).
- Experience with analytics data modeling and metric definition practices.
- Experience implementing automated monitoring/alerting and data quality controls for pipelines and critical datasets.
- Experience operating production data systems (including data quality tests, regression checks, validation frameworks, incident triage, root-cause analysis, runbooks, reliability improvements).
- Experience working closely with analytics teams and cross-functional stakeholders; familiarity with Jira/Confluence and Agile delivery.
- Familiarity with data security practices (PII protection, encryption controls, access management).
Benefits
- Medical, Dental, and Vision Insurance are offered through multiple PPO options. Worldly covers 90% employee premium and 60% spouse/dependent premium.
- Company-sponsored 401k with up to 4% match for US employees.
- Incentive Stock Options.
- 100% Parental Paid Leave.
- Unlimited PTO.
- 12 paid company holidays.
- Earn a competitive salary and performance-based bonuses.
- Use the office stipend to get the supplies you need—combat Zoom fatigue with no-meeting Fridays.
- Flexible time off. Take the time you need to recharge. Our culture encourages team members to explore and rest to be their best selves.
- Join the culture committee, coffee chats, or a variety of other interest groups.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Design and implement lakehouse architecture using open-source technologies • Build and optimize ClickHouse deployments for high-performance analytical workloads • Develop custom data transforms and ETL/ELT pipelines using well-supported open-source tools • Create data models that bridge our Postgres application databases with ClickHouse analytics layer • Partner with product and engineering to define data models that serve both analytical and operational needs • Write specifications before writing code—defining contracts, schemas, and expected behaviors upfront • Use AI-assisted coding tools daily to accelerate development and reduce toil • Establish data quality frameworks and observability across the pipeline • Optimize for performance, cost, and reliability at scale
Senior Data Engineer
FriendsuranceWe believe that dealing with insurance should bring a smile to your face
• Design and implement a new and well-architected data platform, utilizing market-leading technologies and Platforms (DataBricks, Snowflake, etc.) • Help accelerate our ongoing migration from legacy data systems (MS SQL, SSIS, SSAS, SSRS) to the new platform • Ingest and aggregate data from both internal and external data sources to build our datasets • Help with data-related engineering topics to enable reporting and dashboarding • Improve the productivity of data analysts and enable a higher degree of self-service • Build data pipelines and data-powered products • Work closely with cross-functional tech teams and drive excellence in our engineering, planning, and architecture • Inspire, guide, and teach professionals in the data team and beyond, about valuable trends and best practices in data engineering • Participate in machine learning, data science, and AI initiatives together with other professional team members • Support our amazing culture where we care about our customers and a productive and healthy team atmosphere.
• Design, build, and own scalable data platforms on Google Cloud • Drive end-to-end data solutions, defining best practices, and mentoring team members • Work closely with stakeholders, analysts, and data scientists to deliver reliable, high-performance data pipelines and analytics platforms
• Analysis, Design, implementation, and maintenance pipelines that produce business-critical data reliably and efficiently using cloud technologies. • Develop new ETLs (Extract, Transform, Load), using the current Apache Airflow. • Propose new initiatives to improve performance, scalability, reliability, and overall robustness. • Collect, process, and clean data from different sources using Python & SQL. • Work side by side with the main Architects and Developers to create and ensure best practices and guidelines are being used properly by all projects. • Assess and communicate effectively the effort for required developments. • Discover new data sources to improve new and existing data pipelines. • Be in charge of building and maintaining data pipelines and data models for new and existing projects. • Maintain detailed documentation of your work and changes to support data quality and governance. • Provide feedback and expert points of view as needed to help all data initiatives in the company. • Improve the quality of existing and new data processes (ETL), incorporating statistical process control, and creating alerts when anomalies are received from data sources at every step of the pipeline. • Create benchmark control of execution times for every pipeline, to control and identify potential availability issues.




