Data Analytics Engineer - Job Description
Chicago based position - not eligible for remote work
Who We Are
We are a new technology company that takes the burden out of cross-community workforce collaboration to power up pathways to meaningful employment, mobility, and prosperity. STEAMe's platform unites all partners to support learners, reduce stop outs, and ensure employers get people with the right skills into the right jobs at the right time.
The Role
As a Data Analytics Engineer at STEAMe, you will sit at the intersection of analytics, data engineering, and emerging AI-powered workflows. You'll be responsible for building reliable data pipelines, transforming data for analysis, and delivering high-quality dashboards and reports that drive product, operational, and customer insights.
Working closely with product, engineering, customer success, and business stakeholders, you'll own data transformations, support analytics architecture, and help evolve how STEAMe uses data - including experimenting with LLM-assisted analysis and prompt-based workflows to surface insights more efficiently.
This is an excellent opportunity for someone who enjoys working across the full data lifecycle - from ingestion and modeling to visualization and insight delivery, - in a fast-paced startup environment.
Key Responsibilities
Partner with cross-functional teams to understand business objectives and translate them into scalable data models, metrics, and analytics solutionsDesign, build, and maintain data transformations and lightweight ETL pipelines using SQL and PythonDevelop and maintain curated analytics tables and semantic layers to support reporting and dashboardsCreate and manage dashboards and reports in BI tools (e.g., Tableau, Looker, Power BI) for internal teams and external partnersEnsure data accuracy, consistency, and reliability across analytics outputsSupport and evolve data architecture by collaborating with engineering on source systems, data flows, and integrationsWrite Python scripts for data preparation, automation, and analytics workflowsExperiment with and develop LLM-enabled workflows, including prompt design, to extract insights, summarize data, or support internal analytics use casesExperiment with AI tools to deliver new methodologies and optimize workflowsDocument data models, pipelines, metrics definitions, and analytics best practicesTroubleshoot data quality issues and proactively identify opportunities to improve data processes and performanceRequirements
Bachelor's degree in Analytics, Computer Science, Engineering, Statistics, Economics, Mathematics, or a related field (or equivalent experience)3-6 years of experience in analytics, analytics engineering, or a data engineering-adjacent roleStrong proficiency in SQL and PythonExperience building and maintaining data pipelines, transformations, or ETL processesHands-on experience with BI and visualization tools (e.g., Tableau, Looker, Power BI)Solid understanding of data modeling concepts and analytics best practicesAbility to communicate clearly with both technical and non-technical stakeholdersComfortable working in a fast-moving startup environment with evolving requirements
Preferred Qualifications
Experience with cloud data platforms (e.g., AWS, GCP, or Azure)Familiarity with modern analytics stacks (e.g., dbt or similar transformation tools)Experience working with SaaS platforms or in edtech / workforce development environmentsExposure to data orchestration tools and APIsExperience using or designing LLM-powered analytics workflows or prompt-based tools
Environmental Job Requirements & Working Conditions
This position is based in Chicago, ILSTEAMe is a Hybrid work environment, with 3 days work from home and 2 days in-office work
STEAMe is committed to building a diverse team and fostering an inclusive culture, and is proud to be an equal opportunity employer. We embrace and encourage our employees' differences in race, religion, color, national origin, gender, family status, sexual orientation, gender identity, gender expression, age, veteran status, disability, pregnancy, medical conditions, and other characteristics.