Get the most out of your mobile & CTV advertising with competitive programmatic auctions and comprehensive reporting.
Full-Stack Data Scientist
Location
United States
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
Full-Stack Data Scientist
Nimbus
• Lead Data Analytics & Modeling: Drive data initiatives using both traditional machine learning and emergent AI technologies. Focus on pragmatic, non-generic applications that empower human decision-making and optimize our platform. • Data Pipeline Engineering: Work closely with the core engineering team to design, build, and maintain scalable data pipelines that support ML tooling, analytics, and high-velocity ad delivery systems. • Cross-Functional Collaboration: Leverage your software engineering proficiency to translate data science concepts into production-ready architecture, ensuring seamless integration between data models and backend systems. • Experimentation & Optimization: Design, evaluate, and operationalize experimentation frameworks for auction, pricing, and yield optimization. Building scalable methods to measure impact, validate model performance, and improve revenue driving decision systems. • Model Production & Monitoring: Productionize forecasting and optimization models by building backtesting, monitoring, and guardrail systems that ensure outputs are reliable, explainable, and safe to deploy in high output and delivery environments.
Job Requirements
- Strong data analytics capabilities with a proven track record of handling high-volume, Big Data environments.
- Deep understanding of Machine Learning principles and application.
- Strong understanding of AI, specifically regarding agent deployment, maintenance, and practical usage.
- Hands-on experience architecting and working within cloud environments, specifically AWS.
- Comfortable reading and writing production-level code. Proficiency in Python is required; experience with backend languages like Go is a significant plus.
- A strong commitment to engineering best practices, including rigorous logging, documentation, and debugging.
- Experience building optimization or decisioning systems in extremely high volume environments.
- Excellent teamwork and communication skills, with the ability to articulate complex technical concepts to a lean, highly capable team.
- A self-starter mindset with the ability to adapt to new technologies and learn quickly in a fast-paced ad-tech landscape.
Benefits
- Fully remote work flexibility
- Comprehensive health insurance packages
- High level of project ownership and autonomy
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