Data Scientist

Expert In Recruitment Solutions

Atlanta, GA

JOB DETAILS
SKILLS
Acquisition Strategy, Amazon Web Services (AWS), Analysis Skills, Artificial Intelligence (AI), Bayesian Networks, Best Practices, Bioinformatics, Communication Skills, Computer Science, Cross-Functional, Data Analysis, Data Mining, Data Modeling, Data Quality, Data Science, Data Sets, Data Visualization, Docker, Documentation, English Language, Experiment Design, Git, Information Technology & Information Systems, Information/Data Security (InfoSec), Machine Learning, Manufacturing, Manufacturing/Industrial Processes, Mathematics, Model Validation, Monte Carlo Method, Multitasking, Operations Research, PostgreSQL, Presentation/Verbal Skills, Project Evaluation, Project/Program Management, Quality Control, Relational Databases (RDBMS), Root Cause Analysis, Scientific Research, Software Development, Software Engineering, Source Code/Configuration Management (SCM), Statistical Algorithms, Statistical Modeling, Statistics, Time Tracking, Writing Skills
LOCATION
Atlanta, GA
POSTED
17 days ago
Here's What You'll Do:
Support a wide variety of analytical, quality control, and manufacturing processes through advanced data analysis and visualization, statistical modeling, and Bayesian experimental design
Apply advanced techniques such as constrained optimization, machine learning, and Monte Carlo simulations to solve complex challenges including schedule optimization and batch generation
Identify high-impact opportunities by leveraging and applying the latest advances in computer science and operations research, continuously staying at the forefront of the field
Partner closely with cross-functional business and product stakeholders to iteratively align on project goals across the full lifecycle spanning data acquisition, modeling strategy, validation, deployment, and monitoring
Collaborate deeply with data scientists, engineers, research scientists, statisticians, and manufacturing teams to drive integrated, scalable solutions
Champion and implement data science and software engineering best practices to ensure robustness, reproducibility, and scalability of solutions
Communicate complex analytical findings clearly and effectively to both technical and non-technical audiences, internally and externally
Explore and integrate emerging Generative AI capabilities to enhance modeling approaches, accelerate experimentation, and unlock new efficiencies across manufacturing and development workflows

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).
Ability 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.
  • Alert 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.

About the Company

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Expert In Recruitment Solutions