Job Closed
This listing is no longer active.
Continuous, autonomous pentesting, powered by NodeZero. Are your systems secure? Don't wait for a breach to find out!
Senior Product Analytics Developer
Location
United States
Posted
121 days ago
Salary
$150K - $180K / year
Seniority
Senior
Job Description
Senior Product Analytics Developer
Horizon3.ai
• Design, build, and maintain scalable data pipelines that extract, transform, and load (ETL/ELT) data from various internal and external systems • Develop efficient and reliable data models that support reporting and analytics needs across business functions • Implement data quality checks and monitoring to ensure accuracy, completeness, and consistency of critical datasets • Manage and optimize data storage solutions (e.g. data warehouses, data lakes), ensuring scalability, security, and performance • Partner closely with analysts and business stakeholders to understand their data needs and deliver well-documented, high-quality data assets • Work with Engineering teams to instrument new data sources and drive data-driven culture across the organization • Develop automated processes for data ingestion, transformation, and validation; implement monitoring to proactively detect issues • Provide insights via easily digestible visualizations in Tableau and ad-hoc
Job Requirements
- Bachelor’s degree or equivalent in Computer Science, Engineering, Information Systems, or a related field
- 4+ years of experience in data engineering or a related field
- Hands-on experience designing and building scalable data pipelines and data models
- Experience working in fast-paced environments and collaborating across multiple business functions
- Experience with translating stakeholder requirements into analytics readouts
Benefits
- Health, vision & dental insurance for you and your family
- Flexible vacation policy
- Generous parental leave
- Equity package in the form of stock options
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
• We are looking for a Lead Analytics Engineer to join our data team. • Reporting to the Hiring Manager, you will be responsible for applying data engineering best practices to analytics code to transform, test, and document data. • You will provide clean and organized data sets to end users. • You will be provide expert code reviews and mentorship to other engineers in the data space • You will be responsible for building and maintaining composable data models, as well as optimizing SQL query performance for the models you build. • You will transform raw data into business insights, working closely with stakeholders and developing analyses to answer critical business questions. • You will create data visualizations and help stakeholders explore and understand the data visualization tools available to them.
Analytics Engineer, Lifecycle Efficiency
InstacartInstacart invites the world to share love through food. This is how homemade is made.
• Design, build, and maintain robust, production-grade data models (e.g., in dbt) that power incentives, promotions, and lifecycle analytics, including standardized fact/dimension tables and a consistent metrics layer. • Partner with Data Engineering to model source data from multiple systems (e.g., marketing platforms, event streams, transactional data) and implement efficient, auditable ELT patterns in a modern cloud warehouse. • Define and operationalize KPI and metric definitions for marketing efficiency and ROI; enable self-serve analytics in BI tools by implementing clean, documented semantic models and LookML (or equivalent). • Set and enforce data quality standards with automated testing, lineage, documentation, and monitoring to ensure stakeholders can trust dashboards and analyses used to manage millions in annual spend. • Collaborate with Product, Marketing, and Engineering to scope requirements, prioritize a roadmap, and deliver high-impact datasets for experimentation, attribution, cohorting, and lifecycle performance reporting. • Continuously improve performance, reliability, and cost efficiency of pipelines and queries; drive best practices in version control, code review, and CI/CD for analytics engineering.
• Define and evolve analytics modeling standards, architectural patterns, and semantic layers across domains • Drive data mesh enablement across analytics • Own data governance for analytics, including data privacy • Design and maintain data contracts, SLAs, and SLOs for analytics datasets • Own and continuously improve CI/CD, developer experience, and observability for analytics • Optimise analytics performance and cost across transformation and BI layers • Act as the technical escalation point and mentor for Analytics Engineers
Analytics Engineer II
Khan Academy TürkçeHerkese, her yerde, dünya standartlarında, ücretsiz eğitim... #HerŞeyiÖğrenebilirsin www.khanacademy.org.tr
• Design, build, and maintain dbt models that transform raw event- and entity-level data into curated, analytics-ready datasets. • Develop, document, and test semantic and reporting layers in Looker (LookML). • Partner with Analysts and cross-functional stakeholders to ensure consistent metric definitions and accurate data pipelines. • Contribute to data modeling best practices, including naming conventions, incremental strategies, and schema evolution. • Implement data quality tests and validation checks to ensure reliability of production datasets. • Monitor and troubleshoot data issues, coordinating fixes with Data Infrastructure and Engineering.



