Responsibilities
- Build and maintain scalable data science pipelines and workflows using modern tools and frameworks.
- Implement MLOps practices to ensure model reproducibility, monitoring, and lifecycle management.
- Collaborate with data engineering teams to ensure data quality, accessibility, and pipeline reliability.
- Deploy models into production environments and monitor performance over time.
- Develop and maintain code libraries, documentation, and best practices for data science work.
- Identify high-value opportunities where advanced analytics can drive business outcomes.
- Evaluate and recommend new tools, technologies, and approaches to enhance data science capabilities.
- Lead proof-of-concept initiatives to demonstrate the value of innovative analytical approaches.
- Establish standards and frameworks for data science work across the organization
- Design, develop, and deploy predictive and prescriptive models to address key business challenges in manufacturing, supply chain, quality, and operations.
- Build machine learning models for demand forecasting, production optimization, predictive maintenance, quality prediction, and yield improvement.
- Develop statistical models to identify root causes of process variations, defects, and operational inefficiencies.
- Create optimization algorithms for resource allocation, production scheduling, and inventory management.
- Apply natural language processing and computer vision techniques where applicable to manufacturing use cases.
- Conduct A/B testing and experimental design to validate hypotheses and measure impact of interventions.
- Partner with business stakeholders across manufacturing, operations, supply chain, quality, and maintenance to understand requirements and pain points.
- Work closely with data engineers, analysts, and IT teams to integrate data science solutions into business processes.
Basic qualifications
- Bachelor’s degree in Computer Science, Data Science, Statistics, or a related field, along with at least 5 years of experience
- + Non-degree considered if 12+ years of related experience along with a high school diploma or GED
Preferred qualifications
- 6 years of relevant project experience in successfully launching, planning, and executing data science projects, including statistical analysis, data engineering, and data visualization.
- Experience leading projects that apply ML and data science to business functions.
- Fluency in multiple programming languages and statistical analysis tools such as Python, C++, JavaScript, R, SAS, Excel, SQL, MATLAB, SPSS.
- Knowledge of statistical and data mining techniques such as GLM/regression, random forest, boosting, trees, text mining, hierarchical clustering, deep learning, CNN, RNN.
- Strong understanding of AI, its potential roles in solving business problems, and the future trajectory of generative AI models.
- MS in quantitative discipline (Computer Science, Data Science, Statistics or related fields).
- Knowledge of Six Sigma, Lean Manufacturing, or related process improvement methodologies.
- Experience with predictive maintenance, quality analytics, or process optimization in manufacturing.
- Familiarity with IIoT platforms and edge computing.
- Experience with computer vision applications for quality inspection or process monitoring.
- Publications or presentations at data science conferences or in peer-reviewed journals.
- Certifications in cloud platforms (Azure, AWS) or data science specializations.
Benefits
Crown offers an excellent wage and benefits package for full-time employees including Health/Dental/Vision/Prescription Drug Plan, Flexible Benefits Plan, 401K Retirement Savings Plan, Life and Disability Benefits, Paid Parental Leave, Paid Holidays, Paid Vacation, Tuition Reimbursement, and much more.
EOE Veterans/Disabilities
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