About Attain
Built for consumers and companies, alike.
Klover’s engineering team powers one of the fastest-growing fintech platforms in the U.S., supporting over one million active users each month. Our systems process and move more than $1.5 billion annually, enabling real-time access to financial tools, rewards, and services that help people improve their day-to-day lives.
As part of this team, you’ll help design, build, and scale the systems that underpin Klover’s core products and platform. You’ll work on high-impact, production-grade systems that prioritize reliability, security, and performance, and that integrate with a broad ecosystem of internal and external services. The work you do will directly shape how users interact with Klover’s products, access their money, and experience transparent, low-fee financial services.
Klover engineers collaborate closely with colleagues across backend, frontend, data science, and product teams to deliver scalable, high-quality solutions for a rapidly growing user base. You’ll have the opportunity to work with modern technologies and architectures while helping define and evolve the next generation of inclusive, data-powered financial products—building systems and interfaces that emphasize reliability, privacy, and performance at scale.
About the role
Attain is seeking a Senior/Staff Data Scientist to support the growing needs of our suite of B2C financial services. This role will be highly hands-on, focused on building, improving, validating, and deploying predictive models that power consumer decisioning and business optimization across our app portfolio.
You will work on advanced machine learning and statistical modeling problems, including cash-flow based credit decisioning for our earned wage advance product, Klover, as well as consumer behavior modeling, transaction categorization, paycheck detection, fraud scoring, churn prediction, and other high-impact predictive modeling use cases. The ideal candidate combines strong quantitative fundamentals with practical experience building models and analytical systems from scratch.
Attain Office Hybrid Schedule:
- Chicago, IL: 4 days in-office; 1 day remote
What a typical week might look like
- Hands-on development of ML and statistical models at the core of our EWA product, with a focus on fast, rigorous, and high-quality execution
- Build and improve predictive models across consumer decisioning, consumer behavior modeling, fraud, churn, transaction intelligence, and other business-critical use cases
- Own the full model development lifecycle, including data exploration, feature engineering, model training, validation, deployment, monitoring, and retraining
- Develop reusable modeling pipelines, analytical tools, and production-quality code to support scalable data science work
- Apply strong statistical and mathematical judgment to model evaluation, calibration, robustness testing, and business impact measurement
- Collaborate with data analysts, engineers, product managers, and business stakeholders to deliver ML models with quality, efficiency, and precision
- Identify new areas where data science, predictive modeling, and optimization can improve product and business outcomes
Preferred Qualifications
- 5+ years of direct experience working as a Data Scientist, Machine Learning Scientist, Model Developer, Applied Scientist, Economist, or similar role on relevant business problems
- Strongly preferred: Master's, or Ph.D. in a STEM field such as Computer Science, Statistics, Economics, Mathematics, Engineering, Physics, Operations Research, or a related quantitative field
- Demonstrated ability to apply critical thinking, causal inference, abstract reasoning, and generalization to complex, ambiguous business and technical problems
- Strong expertise developing, validating, deploying, and monitoring machine learning models in production
- Experience with AI/ML-assisted development tools and MLOps practices, including experience working with large language models (LLMs) or autonomous agents for code generation and model refinement
- Experience with predictive modeling, consumer behavior modeling, risk modeling, credit decisioning, fraud modeling, churn modeling, or other high-impact applied ML use cases
- Solid foundation in statistics, probability, mathematics, and machine learning fundamentals
- Strong Python coding skills, with the ability to build models, pipelines, and analytical tools from scratch
- Strong SQL skills and experience working with large, messy, real-world datasets
- Experience with feature engineering, model evaluation, calibration, monitoring, retraining, and model performance diagnostics
- Experience with cloud computing services or platforms; GCP preferred
- Familiarity with version control, peer code review, and collaborative software development practices
- Demonstrated ability to learn new technologies, applications, and modeling approaches quickly
- Willingness to roll up your sleeves and wear multiple hats across data science, analytics, modeling, and technical execution based on business needs
- Strong written and verbal communication skills, including the ability to explain technical topics to both technical and non-technical audiences
We’re excited to hear from you.
At Attain, we are passionate about finding people to continuously help us grow our organization. We encourage you to apply, even if your experience doesn’t match every detail of the job description. If we don’t see something that immediately fits, we will keep your resume on file for future opportunities.
Skills Required
- 5+ years of experience as a Data Scientist or similar role
- Master's or Ph.D. in a STEM field such as Computer Science, Statistics, Economics, Mathematics
- Strong expertise in machine learning model development and deployment
- Proven Python coding skills for model and pipeline development
- Strong SQL skills with experience in large datasets
Attain Compensation & Benefits Highlights
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Healthcare Strength — Benefit listings consistently include medical, dental, and vision coverage alongside an Employee Assistance Program, mindfulness tools, and optional protections like life, disability, accident, critical illness, and hospital indemnity. This breadth indicates robust core health support and ancillary coverage options.
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Wellbeing & Lifestyle Benefits — Perks such as an annual wellness stipend, mindfulness/meditation tool, pet insurance, commuter benefits, charitable donation match, team/company outings, home‑office stipend, and phone/internet reimbursement are highlighted. These offerings extend support beyond insurance to everyday wellness and remote‑work needs.
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Equity Value & Accessibility — A stock option program and company equity are explicitly advertised. This provides potential ownership upside as part of total compensation.
Attain Insights
What We Do
Attain is the most trusted and comprehensive source for permissioned, real-time purchase data in the United States. By connecting directly with over 10 million consumers, Attain delivers unmatched accuracy and scale across audience activation, insights, and in-flight optimization, and measurement, helping marketers tie every dollar of media to real-world sales outcomes. Attain’s portfolio of owned and operated apps, spanning financial wellness and shopping rewards, empowers consumers to receive everyday value in exchange for the explicit permission to use their data for research, insights, and targeted advertising.
Why Work With Us
At Attain, your contribution will help us build a more equitable and efficient data sharing ecosystem—whether helping consumers access modern financial services or businesses leverage data to achieve better outcomes. You’ll have the opportunity to work directly with hands-on leaders and mission-driven individuals everyday.
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Attain Offices
Hybrid Workspace
Employees engage in a combination of remote and on-site work.
Hybrid, we love to have the team in person because we pride ourselves on our amazing people, but understand that the world has changed. We have flexibility and always focus on our employees health and well-being.

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