Senior Data Science Engineer

BerkleyChesterfield, MO
16d

About The Position

As a Senior Data Science Engineer , you’ll leverage our extensive data assets to deliver actionable insights and next-generation analytical products. You’ll work at the intersection of data engineering, machine learning, and AI, helping us build solutions that drive measurable business impact. This role combines hands-on technical work with project leadership and mentorship responsibilities. You’ll design and improve application infrastructure, write production-quality code, support predictive modeling, and lead cross-functional projects. If you’re passionate about building scalable analytics solutions and mentoring others, we want to hear from you.

Requirements

  • 4–7 years in data science, software/ML engineering, or related roles.
  • 1–3 years building solutions with generative AI models.
  • 1–3 years developing AI solutions in Azure and/or Databricks.
  • Proficiency in SQL, Python, and Version control tools (GitHub, Bitbucket).
  • Strong understanding of: Statistical and machine learning algorithms. Natural Language Processing (NLP). Deploying and scaling analytics solutions.
  • Familiarity with: ETL processes, data engineering, and data mining. Large-scale databases and data warehouses. Docker and API development.
  • Strong grasp of data visualization best practices.
  • History of leading technical projects using agile methodologies
  • Ability to communicate complex concepts clearly.
  • Curious, self-motivated, analytical, and driven to solve complex business problems.
  • Ability to manage multiple priorities under tight deadlines.
  • Bachelor’s or Advanced degrees in data science, computer science, mathematics, statistics, engineering, physics, or other sciences (or college degree with significant technical experience in a corporate setting).
  • Strong background in advanced mathematics, statistics, computer science, and/or data science.

Responsibilities

  • Develop and deliver high-quality code, data analysis, and visualizations using best practices.
  • Lead projects to automate analytical workflows and deploy predictive models.
  • Engineer solutions for model development, testing, and deployment.
  • Collaborate with Sr. Data Scientist to update or train new predictive models.
  • Collaborate with internal and external stakeholders to provide analysis, reports, and data products.
  • Define and maintain best practices for: Using Azure and Databricks for data science. Building and deploying generative AI applications
  • Act as a liaison between Advanced Analytics and other technical teams across W.R. Berkley.
  • Serve as a project lead, managing timelines, deliverables, and communication.
  • Monitor production applications in Cloud and Kubernetes environments for performance and reliability.
  • Mentor junior team members and promote knowledge sharing.
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