Join our team as a Data Engineer and you will help leading consumer brands use data and technology to discover insights, improve decision-making and transform their businesses.
Stackline is looking for a data engineer to build high-quality, scalable and resilient distributed systems. You will need to analyze data to ensure business requirements are met, identifying inconsistencies in the data and optimize/support current processes.
As a Data Engineer you will need your experience building data pipelines from dozens of sources and API’s as we process, ingest and cleanse over a billion data points each week. You will be working closely with Data Scientists, Software Engineers and Product Managers. This is a very hands-on software engineering role, where a large part of your time is spent writing code with the remainder spent on designing and architecting systems.
We're looking for engineers to come in ready to design, build and deploy robust data extraction systems while trouble shooting and resolving critical infrastructure bottlenecks.
Minimum Qualifications
Preferred Qualifications
Benefits and Perks:
It’s important that each and every employee feels they are supported and can complete their life’s best work today and in the future. As part of that, we are committed to doing our part in addressing pay gaps and discrepancies by providing pay transparency for all of our roles. Actual salaries are just one component of the compensation package and may vary above or below the range based on job-related knowledge, skills, experience, geographical location, and performance. The pay range for the Data Engineer II position located in Seattle is $135,000 - $165,000 per year. Other rewards may include annual bonuses, short- and long-term incentives, and other team-specific awards. In addition, we provide a robust benefits and perks package that includes:
Please mention you found this job on AI Jobs. It helps us get more startups to hire on our site. Thanks and good luck!
Understand the required skills and qualifications, anticipate the questions you may be asked, and study well-prepared answers using our sample responses.
Data Engineer Q&A's