Quick Summary
About Prove As the world moves to a mobile-first economy, businesses need to modernize how they acquire, engage with and enable consumers. Prove’s phone-centric identity tokenization and passive cryptographic authentication solutions reduce friction, enhance security and privacy across all…
Statistical & ML Modeling Develop, validate, and tune statistical and machine learning models that solve complex business problems. Partner with engineers to ensure models are designed with production deployment in mind.
Education & Experience 5+ years of experience applying machine learning and statistics to business problems. Master’s or PhD in Statistics, Computer Science, Data Science, or related field (or equivalent experience).
As the world moves to a mobile-first economy, businesses need to modernize how they acquire, engage with and enable consumers. Prove’s phone-centric identity tokenization and passive cryptographic authentication solutions reduce friction, enhance security and privacy across all digital channels, and accelerate revenues while reducing operating expenses and fraud losses. Over 1,000 enterprise customers use Prove’s platform to process 20 billion customer requests annually across industries, including banking, lending, healthcare, gaming, crypto, e-commerce, marketplaces, and payments. For the latest updates from Prove, follow us on LinkedIn.
Prove is driving the future of digital identity. We are looking for Provers who know how to make an impact. We’re talking self-starting professionals who thrive in a fast-paced environment, process information quickly, and make intelligent decisions. The work is challenging and requires not only smart but natural curiosity and tenacity. Teamwork is also important to us – we work together and play together.
Prove has big plans, and we’re excited about the future. If this sounds like the place for you – come join our team!
Requirements
~1 min read- Education & Experience
- 5+ years of experience applying machine learning and statistics to business problems.
- Master’s or PhD in Statistics, Computer Science, Data Science, or related field (or equivalent experience).
- Prior exposure to production ML environments and workflows.
- Technical Skills
- Strong proficiency in Python (pandas, scikit-learn, PyTorch/TensorFlow).
- Strong background in statistical methods (supervised/unsupervised learning, classification models, etc.), experimental design, and data visualization (Looker) and storytelling.
- Strong proficiency in SQL (Snowflake) with an ability to work with raw data and collaborate with data engineering teams to optimize data pipelines.
- Proficiency with cloud platforms (AWS).
- Solid understanding of APIs, model deployment processes, and monitoring practices.
- Familiarity with other programming languages such as R, Java, and Go.
- Soft Skills
- Excellent communication skills with ability to bridge technical and business contexts.
- Strong problem-solving and proactive ownership mindset.
- Comfort working in cross-functional teams with engineers, product managers, and business leaders.
- Ability to balance quick iterations with building long-term scalable solutions.
We are seeking a Senior Data Scientist who combines strong expertise in statistical analysis and applied machine learning with practical experience in production-oriented workflows. This role is not just about building models in isolation—you will partner closely with Senior Machine Learning Engineers to ensure models are production-ready, monitored, and continuously improved.
You’ll focus on generating insights, developing models, and proactively collaborating in monitoring deployed algorithms. Beyond the technical, you’ll help identify opportunities for model-driven enhancements and business and customer recommendations based on real-world performance.
Responsibilities
~1 min read- →Statistical & ML Modeling
- →Develop, validate, and tune statistical and machine learning models that solve complex business problems.
- →Partner with engineers to ensure models are designed with production deployment in mind.
- →Design experiments and evaluate models using robust statistical methodologies.
- →Build and maintain dashboards that proactively monitor product efficacy and distribute key insights across product and customer domains.
- →Production Awareness & Monitoring
- →Collaborate with ML engineers on deployment pipelines, APIs, and infrastructure.
- →Proactively monitor deployed models for drift, accuracy, and reliability.
- →Provide insights and business recommendations based on model performance in production.
- →Recommend retraining or refinement strategies in response to performance changes.
- →Business Impact & Strategy
- →Translate model results into actionable recommendations for both product and business teams.
- →Identify opportunities for model improvements that drive up-sell, revenue growth, and cost reduction.
- →Communicate results clearly to both technical and non-technical stakeholders.
- →Collaboration & Leadership
- →Work side-by-side with Senior Machine Learning Engineers to ensure smooth handoff from research to deployment.
- →Mentor team in best practices for applied ML and production readiness.
- →Contribute to evolving data science standards and playbooks that prioritize operational impact.
What We Offer
~3 min readLocation & Eligibility
Listing Details
- Posted
- May 15, 2026
- First seen
- May 15, 2026
- Last seen
- May 19, 2026
Posting Health
- Days active
- 3
- Repost count
- 0
- Trust Level
- 71%
- Scored at
- May 19, 2026
Signal breakdown
Please let Prove know you found this job on Jobera.
3 other jobs at Prove
View all →Explore open roles at Prove.
Stay ahead of the market
Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.
No spam. Unsubscribe at any time.
