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AI & Analytics for today’s business challenges.
Senior Data Scientist – NQC Reduction, Manufacturing Quality
Location
United States
Posted
156 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Scientist – NQC Reduction, Manufacturing Quality
Tiger Analytics
• Analyze large-scale manufacturing data, including **sensor, batch, recipe, and production line data** • Develop analytics solutions to identify **defects, scrap, rework, and process deviations** • Perform **root cause analysis** and **multivariate process analysis** to uncover drivers of quality issues • Build **anomaly and defect detection models** to proactively identify process failures • Partner with manufacturing, quality, and operations teams to translate findings into actionable improvements • Deliver measurable outcomes such as **cost reduction, waste minimization, and quality improvement**
Job Requirements
- 10+ years** of experience in applied data science or advanced analytics
- 5+ years** of hands-on experience in **manufacturing, quality, or process optimization analytics**
- Proven experience working with **manufacturing process data** and **quality outcome data**
- Demonstrated track record of delivering **measurable business impact**
Benefits
- This position offers an excellent opportunity for significant career development in a fast-growing and challenging entrepreneurial environment with a high degree of individual responsibility.
- Tiger Analytics provides equal employment opportunities to applicants and employees without regard to race, color, religion, age, sex, sexual orientation, gender identity/expression, pregnancy, national origin, ancestry, marital status, protected veteran status, disability status, or any other basis as protected by federal, state, or local law.***
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