About
Here's What You'll Need (Basic Qualifications) • Ph.D. in a quantitative STEM field (technology, engineering, and mathematics) with 0-2 years of professional experience, or a Master's degree plus • 5-8 years of relevant professional experience required. • Experience with optimization (combinatorial, discrete, convex, etc.) preferred but not required. • Background in bioinformatics preferred but not required. • Experience delivering data science projects analyzing and modeling scientific engineering data, preferably in an industry setting. • Outstanding communication skills (verbal, written and remote). • Demonstrated experience in collecting, cleaning, and analyzing large and/or unstructured datasets and effectively communicating insights. • Fluency in Python, especially the data scientific stack (Jupyter/Pandas/scikit-learn) and machine learning libraries • Familiarity with best practices in software development, including Amazon Web Services, Docker, version control (Git), and documentation. • Working knowledge of relational databases (e.g., PostgreSQL). • bility to manage multiple projects and effectively collaborate in a dynamic, cross-functional environment. • Proficiency in English (verbal and/or written) required due to global collaboration needs
Key Responsibilities
Model Development: Design, train, and tune machine learning models (unsupervised/supervised) and statistical algorithms to detect anomalies. System Monitoring: Implement real-time monitoring of data streams and system logs to identify deviations from expected behavior. Data Analysis & Investigation: Analyze large, complex datasets to investigate root causes of flagged anomalies. lert Optimization: Reduce false positives by tuning detection thresholds, ensuring high-accuracy alerts. Collaboration: Work with product management, data engineers and IT teams to implement data quality, security, and automated detection pipelines Data Techniques: Strong understanding of statistical analysis, data mining, and feature engineering.
Languages
- English
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