FREE ACCESS
5,000–10,000 jobs/day

See all jobs on JobTailor
Search thousands of fresh jobs every day.
Discover
- Fresh listings
- Fast filters
- No subscription required
Create a free account and start exploring right away.

Data Analyst, GenAI Specialist – Enterprise AI
GE HealthCare. Support AI and analytics initiatives through exploratory data analysis (EDA), statistical analysis, data wrangling, and practical application of low-code/no-code generative AI tools to improve IT business processes .
Posted 5/8/2026full-timeRemote • Illinois • 🇺🇸 United StatesJunior💰 $70,400 - $105,600 per yearWebsite
Tech Stack
Tools & technologiesAWSAzureCloudPandasPythonSQLTableau
About the role
Key responsibilities & impact- Support AI and analytics initiatives through exploratory data analysis (EDA), statistical analysis, data wrangling, and practical application of low-code/no-code generative AI tools to improve IT business processes
- Work closely with Data Scientists, AI Engineers, business stakeholders, and process owners to prepare high-quality datasets, uncover insights, validate assumptions, and identify opportunities to automate, simplify, and accelerate work
- Extract, join, and transform data from multiple sources using SQL and/or data tools
- Clean and preprocess structured and semi-structured data
- Build and maintain analysis-ready datasets to support feature engineering, model development, and business reporting needs
- Apply data quality checks and document findings
- Perform EDA to understand data structure, relationships, distributions, anomalies, and business context
- Create visualizations and summaries to communicate insights
- Conduct descriptive and basic inferential statistical analyses and assist in measurement design and KPI definition
- Use low-code/no-code GenAI tools to improve efficiency, speed, and quality in IT business processes
- Design and implement GenAI-enabled solutions, create prompts, reusable workflows, and lightweight AI assistants
- Work in technical teams focused on analytics solutions and maintain well-structured documentation
Requirements
What you’ll need- Bachelor’s degree (or equivalent practical experience) in a quantitative or technical field such as Statistics, Mathematics, Economics, Computer Science, Data Science, Engineering, Information Systems, or similar
- 0-3 years of relevant work experience
- Familiarity with SQL for querying and manipulating data, including joins, aggregations, and filters
- Working knowledge of Python for data analysis, such as pandas/tidyverse and basic scripting
- Understanding of foundational statistics including distributions, summary statistics, correlation, and basic hypothesis testing concepts
- Strong attention to detail and comfort working with messy, incomplete, or evolving datasets and business requirements
- Experience with data visualization tools such as Tableau or Power BI and/or Python visualization libraries
- Demonstrated interest in applying generative AI tools to business workflows and process improvement
- Hands-on familiarity with one or more enterprise GenAI platforms or adjacent workflow tools is preferred, including Microsoft 365 Copilot, Copilot Studio, Power Automate, ChatGPT Enterprise, custom GPTs, Claude, or similar solutions
- Exposure to cloud platforms such as AWS or Azure is a plus
- Familiarity with ML/AI concepts including features, labels, training versus inference data, and evaluation metrics is preferred.
- Experience using Git and writing reproducible notebooks, documentation, or workflow playbooks is a plus
Benefits
Comp & perks- medical, dental, vision
- paid time off
- 401(k) plan with employee and company contribution opportunities
- life, disability, and accident insurance
- tuition reimbursement
ATS Keywords
✓ Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
SQLPythonpandastidyversedata visualizationstatistical analysisdata wranglingexploratory data analysisfeature engineeringKPI definition
Soft Skills
attention to detailcommunicationcollaborationproblem-solvingadaptabilitycritical thinkingorganizational skillscreativityanalytical thinkingtime management