Job Closed
This listing is no longer active.
Life Changing Service
Analytics Engineer Intern
Location
Utah
Posted
7 days ago
Salary
0
Seniority
Entry Level
Job Description
Analytics Engineer Intern
Pennant
• Support the data and analytics team in transforming raw data into meaningful insights • Assist in building and maintaining data pipelines under guidance from senior team members • Support data cleaning, transformation, and validation processes • Help document data sources, transformations, and workflows • Work with team members to understand basic business requirements • Assist in developing simple data models • Support creation and maintenance of dashboards and reports • Participate in team meetings, code reviews, and knowledge-sharing sessions • Collaborate with cross-functional teams including IT, HR, Finance, and Operations • Learn and apply best practices in analytics engineering, data modeling, and data governance.
Job Requirements
- No prior professional experience required
- Basic understanding of SQL or willingness to learn
- Familiarity with Excel or similar data tools
- Interest in data engineering, analytics, or business intelligence
- Exposure to or willingness to learn: dbt, Snowflake or cloud data platforms, Tableau or other data visualization tools
- Strong problem-solving and analytical thinking skills
- High attention to detail and data accuracy
- Strong communication skills and willingness to ask questions
- Ability to work both independently and in a collaborative team environment
- Demonstrated curiosity and passion for learning new technologies.
Benefits
- Professional development opportunities
- Hands-on experience with modern data tools
- Collaboration and team meetings
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
Data Analyst Engineer
AvengaA global IT engineering and consulting company specializing in custom software development.
• Design, develop, and maintain high-quality dashboards and reports in Power BI tailored to business needs. • Perform efficient data queries and modeling in SQL and Databricks, ensuring data integrity and performance. • Collaborate on data integration and governance processes across multiple data sources. • Interact with sales, operations, and support teams to understand their processes and translate them into actionable BI solutions. • Support automation and optimization initiatives for reporting to minimize operational overhead. • Document data processes, business definitions, and reporting best practices.
• Take ownership of meaningful metrics and data products, from definition through adoption. • Build and maintain dbt models that define how we measure the business. • Design and maintain dashboards used by growth, finance, and operations to make day-to-day decisions. • Improve data quality through testing, monitoring, and validation. • Enable self-serve analytics so teams can answer their own questions and move faster.
Senior Analytics Engineer
OmieImpulsione a economia do Brasil, seja um Omielover! #VemPraOmie https://carreirasomie.gupy.io/
• Structure and evolve the corporate analytics layer, transforming data already available on the platform into reliable, organized, metrics-oriented assets. • Analytics Modeling & Metrics: Develop and evolve dimensional and metric-driven models. • Define and standardize corporate KPIs. • Build data marts oriented to business domains. • Define and maintain a semantic layer for consumption by BI tools and analytical applications. • Document business rules and metric calculations. • Solution and Data Product Development: Design and evolve data products based on certified metrics. • Create analytics-ready datasets for consumption. • Establish reliable data foundations to support AI initiatives and predictive models. • Collaborate with business areas in designing data-driven solutions. • Quality, Governance & Performance: Implement quality tests in the analytics layer. • Ensure traceability and consistency of metrics. • Ensure adequate performance for analytical consumption. • Strategic Engagement: Work closely with Product, Operations and Finance to define strategic metrics.
• dbt at Fora: project structure, conventions, CI/CD, tests, contracts, documentation, and performance. • Data models across bronze, silver, and gold layers. • The semantic layer (dbt MetricFlow or equivalent): metric definitions, dimensions, governance, and adoption. • Production operation of the transformation layer: jobs, dependencies, failures, retries, alerts, environments, and release hygiene. • Python tooling for validation, dbt utilities, lightweight automation, and integrations. • Data quality, test coverage, and observability for modeled tables. • Partnership with Risk & Analytics to formalize business metrics currently spread across SQL, Tableau, and analyst knowledge.




