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Junior Data Analyst
Location
United States
Posted
121 days ago
Salary
0
Seniority
Junior
Job Description
Junior Data Analyst
Hypersonix Inc.
• Translate business requirements to analytical outputs in the form of dashboards • summarize ML outputs to actionable insights • Supports data exploration and profiling, and works closely with DE team to build data models • Mentors/trains junior analysts to grow their expertise • Work with cross-functional teams to deliver the outcomes • Coordinates with DE/SE to perform data validation and compares against client control totals • Coordinates with DS team (as required) to conduct analytical QA on DS outputs • Captures client requirements from BRDs and works closely with product managers to get them fleshed out • Reviews analytical outputs and prepares insights to present to customers • Leverages domain and data understanding to drive insights and build intelligence dashboards
Job Requirements
- SQL
- Should be able to extract data and analysis through Python, R or any other supporting language.
- Should be able to process and generate insights from large data sets.
- AI/ML concepts- He/she should understand statistical model outputs, who could infer DS output, and can use that knowledge to generate insights in the form of dashboards.
- Expertise in creating and generating insights through Dashboards using any BI Tool
- Expected to act independently to deliver projects to schedule, budget and scope; support provided as required and requested, and is self-driven and motivated
- Very strong verbal and written communication skills
- Ecom/Retail domain knowledge is plus
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