Senior Data Scientist

Posted 3 Days Ago
Easy Apply
Be an Early Applicant
2 Locations
In-Office
159K-225K Annually
Senior level
Artificial Intelligence • Sales • Business Intelligence • Financial Services
The Intelligence Layer for Modern Banks
The Role
Seeking a Senior Data Scientist to develop personalized financial insights and predictive models, enhance recommendation systems, and collaborate with cross-functional teams.
Summary Generated by Built In
About Monstro

Monstro is an AI-native fintech platform reimagining how people and institutions manage money. We’re building a modern foundation for financial decision-making—combining intelligence, automation, and elegant design to help users make smarter choices with confidence.
Our team includes experienced builders from leading fintech, wealth management, and technology companies, united by a shared goal: to create a category-defining product that transforms how financial insight is delivered and acted on.

About the Role

We're looking for an experienced Senior Data Scientist join our founding team and help design and build the intelligence at the heart of our platform. You'll develop the models that transform complex, interconnected financial data into personalized insights and recommendations that help users take control of their financial lives. This role sits at the intersection of cutting-edge ML research and real-world product impact—your work will directly shape how millions of people understand and act on their finances.

What You'll Do

Personalization & Recommendation Systems 

Design and build recommendation systems that deliver tailored financial insights and next-best-actions to users. Develop models that learn from user behavior, financial patterns, and life events to surface relevant, timely recommendations. Balance personalization with diversity to help users discover opportunities they wouldn't find on their own.

Predictive Modeling & Forecasting 

Build predictive models that anticipate user needs, identify risks, and surface opportunities across their financial landscape. Apply time-series techniques to forecast trends, detect anomalies, and model financial trajectories. Develop early warning systems that help users stay ahead of potential issues.

Causal Inference & Experimentation 

Design and analyze experiments to measure the impact of product changes and model improvements. Apply causal inference methods—A/B testing, quasi-experimental designs, and observational techniques—to understand what drives outcomes and inform product strategy. Establish rigorous experimentation practices across the organization.

NLP & Unstructured Data 

Extract insights from unstructured financial data—documents, communications, and text sources—using NLP techniques. Build models for entity extraction, classification, and semantic understanding that enrich our data assets and power intelligent features.

Feature Engineering & Model Development 

Partner with Data Engineers to define and build features that power ML models. Work with event-driven data pipelines and feature stores to ensure models have access to real-time, high-quality features. Iterate rapidly on model architectures, balancing accuracy with interpretability and latency requirements.

Model Deployment & Production ML 

Collaborate with ML Engineers and Data Engineers to deploy models to production. Design for scale, monitoring, and graceful degradation. Establish feedback loops that enable continuous model improvement based on real-world performance.

Mentorship & Collaboration 

Mentor junior data scientists and analysts, raising the bar for scientific rigor across the team. Collaborate with product managers, designers, and engineers to translate business problems into data science solutions. Communicate complex findings to technical and non-technical stakeholders.

What We're Looking For
  • 7+ years of experience in data science, machine learning, or a related quantitative field
  • Advanced degree (MS or PhD) in Statistics, Computer Science, Economics, or a related quantitative discipline
  • Strong proficiency in Python and SQL
  • Deep expertise in machine learning—supervised and unsupervised methods, deep learning, and model evaluation
  • Experience building recommendation systems or personalization engines
  • Solid foundation in statistics, experimental design, and causal inference
  • Experience with time-series analysis and forecasting techniques
  • Familiarity with NLP techniques and working with unstructured data
  • Experience with ML frameworks (PyTorch, TensorFlow, scikit-learn)
  • Hands-on experience with Apache Spark for large-scale data processing
  • Understanding of production ML—model deployment, monitoring, and iteration
  • Strong communication skills with the ability to translate technical concepts for diverse audiences
  • Genuine curiosity and passion for using data to solve meaningful problems
Nice to Have
  • Background in fintech, wealth management, or financial services
  • Experience with reinforcement learning or multi-armed bandits for optimization
  • Familiarity with Apache ecosystem tools (Kafka, Flink, Airflow)
  • Experience with feature stores and real-time feature serving
  • Understanding of financial data, regulations, and privacy requirements
  • Experience deploying models within enterprise or on-premise environments

 

Note: This role will be hybrid for those in the NYC metro or remote for those in the Denver metro area (but with the expectation of periodic in-person collaboration). For exceptionally strong candidates, we are open to considering other US locations. Please note that final compensation will be based on factors including role level, candidate experience, skills, performance, and internal equity. 

Compensation Range (New York City): $182,000 – $225,000 
Compensation Range (Denver Metro): $159,000 – $198,000


Ready to Build With Us?

If you’re excited to contribute to a high-bar team building something meaningful, we love to hear from you!

Top Skills

Spark
Python
PyTorch
Scikit-Learn
SQL
TensorFlow
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The Company
HQ: New York, New York
24 Employees
Year Founded: 2021

What We Do

Monstro is the intelligence layer for modern banks—built to power AI-driven sales, service, and growth.

We help financial institutions deliver 24/7 financial guidance that builds trust, drives smarter data sharing, and unlocks personalized product growth.
As clients succeed, banks reclaim their place at the center of their clients’ financial lives—boosting revenue, loyalty, and operational efficiency.

Based in New York City, Monstro is a stealth BankTech platform backed by leaders in fintech, AI, and wealth management—building what’s next in intelligent banking infrastructure.

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