Capital One Company Culture

In the numbers-driven world of fintech, there’s still plenty of room for people, and getting the scoop on the daily experience from a few team members at Capital One demonstrates that. “A key principle in our culture is lifting each other up and knowing that we each play an important role within Capital One,” Renee McKeon, vice president of experience design, said. Meanwhile, Dave Rodgers, credit card division unit manager, identified “a community of support” as a vital element to the remote experience. And, as a communications leader, Cynthia Puryear found that a strong culture means applying considerate ethos outside of work, too: “Capital One is great at giving us paths and choices to focus on work-life balance.”

At a glance

FOSTERING INCLUSIVITY

Belonging cultivated through the 30,000-plus associates involved in Business Resource Groups

INVESTED IN THE FUTURE

Yearly 3% contribution of annual benefits salary to employees’ 401(k)s

AMPLE OOO TIME

PTO complemented by 14 paid holidays

AWARD-WINNING EXPERIENCE

One of 100 honorees on Built In’s “Best Large Companies to Work For” list in 2022

Recently posted jobs

6 Hours AgoSaved
Hybrid
Bengaluru, Bengaluru Urban, Karnataka, IND
Fintech • Machine Learning • Payments • Software • Financial Services
Lead full-stack engineering across distributed microservices: design, develop, test, deploy and support solutions. Drive serverless and container initiatives, improve build/deployment pipelines, mentor engineers, debug cross-stack issues, and lead strategic technical projects.
6 Hours AgoSaved
Hybrid
3 Locations
Fintech • Machine Learning • Payments • Software • Financial Services
Lead and deliver large-scale technical programs and platforms, identify and mitigate technical risks, drive cross-functional alignment across product, engineering, design and data science, ensure execution and accountability, and deliver business impact using Agile practices.
6 Hours AgoSaved
Hybrid
3 Locations
Fintech • Machine Learning • Payments • Software • Financial Services
Build, deploy, and maintain production ML and AI systems (including LLMs, RAG, similarity search, guardrails, observability). Partner with cross-functional teams to design data pipelines, fine-tune models, monitor performance, and apply Responsible/Explainable AI best practices while contributing technical vision and roadmap for risk-focused AI products.