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Data Analyst I
Company | Energy Solutions |
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Location | New York, NY, USA |
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Salary | $65000 – $85000 |
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Type | Full-Time |
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Degrees | |
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Experience Level | Junior, Mid Level |
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Requirements
- Technical degree preferred but not required
- Minimum 2 years’ experience in related work
- Experience developing analytical dashboards using BI tools, preferably Tableau
- Proficiency with SQL or other database querying language
- Working knowledge of building analytical models using a programming language, such as R or Python, preferably with Python
- Knowledge of basic data warehousing principles
- Knowledge of ETL design
- Capable of working independently and working with non-technical managers
- Can work with fast or changing deadlines in a fast-paced environment
- Enthusiastic about data and analytics, learning new techniques and skills, and working with data scientists and engineers
Responsibilities
- Develop, maintain, and own analytical models and dashboards for internal and external clients
- Prepare reports that communicate trends, patterns, and forecasts to inform business decisions
- Translate quantitative data into visual reports for non-technical audiences and provide clear analysis of the data
- Responsible for the quality and accuracy of data analyses; work with data engineers and other team members to establish QA systems and standards and flag data errors
- Assist with the development and tracking key performance metrics
- Assist data engineering team in troubleshooting based upon your knowledge of the program data and compliance requirements
- Coordinate cross-functionally across various teams to support data analytics and streamline data pipelines
- Identify areas where improvements in data analytics processes and/or tools can bring more value to clients
- Exemplify highest quality output and best practices around data analytics, dashboarding, and reporting
Preferred Qualifications
- Enthusiastic about data and analytics, learning new techniques and skills, and working with data scientists and engineers