hireVouch is a premier recruitment and digital transformation solutions company dedicated to helping organizations find and retain top-tier talent. With a focus on hiring the right
Data Scientist
Location
United States
Posted
3 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Scientist
hireVouch
Role Description As a Senior Data Scientist, you will play a pivotal role in our data science efforts, with responsibilities including, but not limited to, the following: - Advanced Analytics: Apply state-of-the-art data science techniques to analyze and extract meaningful insights from vast and diverse datasets. - Predictive Modeling: Develop and implement advanced predictive models to forecast key risk factors relevant to insurance and potentially other use cases. - Collaboration: Collaborate closely with our data engineers, product managers, and other business stakeholders to translate data insights into actionable strategies and solutions. - Data Visualization: Create compelling data visualizations and reports to communicate findings effectively to both technical and non-technical audiences. - Research and Innovation: Stay at the forefront of data science research, exploring new methodologies and technologies to drive innovation within the company. Qualifications - 3-5 years proven track record as a Data Scientist working with large datasets (e.g., millions of rows), from prototyping to business impact, analytics and ML use cases. - Deep understanding of machine learning and statistical methods with their underlying theory and math. - Demonstrated experience in building, deploying, and showing business value from predictive models and data products. - Highly proficient in Python. - Proficiency in SQL databases, understanding schemas, and data types. - Real-world experience with at least one distributed data platform (preferably Spark). - Solid software development experience, including translating ML models into production software, especially in collaboration with other engineers. - MS or PhD in a quantitative discipline, especially Statistics, Math, or similar. - Strong communication skills. Requirements - Deep Learning, especially Transformers. - Experience with GLMs, including for actuarial frequency applications. - Boosting algorithms (CatBoost, XGBoost, etc.). - Experience with distributed machine-learning frameworks, like Spark, etc. - Creating data pipelines for analytics or ML applications. - Experience using AWS (EC2, EMR, S3, etc.) or similar cloud provider (Google, Azure, etc.). - Resourceful self-starter and team player with strong leadership skills. - Uncompromising attention to details. - Proven ability to be creative and resourceful in a fast-paced, entrepreneurial environment. - Must be comfortable working independently. - React well and quickly to frequent project demands and requirement changes. - Excellent analytical, troubleshooting, and problem-solving skills. - Strong written and communication skills and positive attitude working with customers and partners.
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Cross Border Talents🌎 Your international recruitment partner for hard to find professionals and jobs all over the globe.
• Build and own the company's data function from the ground up • Audit and improve existing data infrastructure, tooling, and processes • Lead a lean data team while remaining hands-on with analysis • Leverage AI to automate workflows and increase team productivity • Analyze large datasets to answer strategic business questions • Deliver investment-grade analyses, dashboards, and executive briefings • Establish data governance, reporting standards, and analytical best practices • Partner with Product, Finance, Operations, and Leadership to drive business decisions • Continuously improve the company's AI-enabled data capabilities
