About the role
As passionate about our people as we are about our mission.
Why Join Q2?
Q2 is a leading provider of digital banking and lending solutions to banks, credit unions, alternative finance companies, and fintechs in the U.S. and internationally. Our mission is simple: build strong and diverse communities through innovative financial technology—and we do that by empowering our people to help create success for our customers.
What Makes Q2 Special?
Being as passionate about our people as we are about our mission. We celebrate our employees in many ways, including our “Circle of Awesomeness” award ceremony and day of employee celebration among others! We invest in the growth and development of our team members through ongoing learning opportunities, mentorship programs, internal mobility, and meaningful leadership relationships. We also know that nothing builds trust and collaboration like having fun. We hold an annual Dodgeball for Charity event at our Q2 Stadium in Austin, inviting other local companies to play, and community organizations we support to raise money and awareness together.
SUMMARY
The Machine Learning Engineer provides hands-on expertise in designing, implementing, and scaling AI solutions, while collaborating with cross-functional teams to advance machine learning capabilities and support business innovation.
Build and deploy AI agents powered by LLMs, including tool use, retrieval, memory, and orchestration workflows.
Create robust eval frameworks to benchmark agent performance, safety, reliability, and cost efficiency.
Integrate LLM agents with external tools, APIs, and MCP-based systems to enable action-taking and context-aware automation.
Fine-tune and customize foundation models for domain-specific use cases using modern adaptation techniques.
Monitor and improve production AI systems through experimentation, guardrails, and continuous performance optimization.
RESPONSIBILITIES
Design, build, and optimize AI agents using LLMs, prompt engineering, retrieval, memory, tool use, and multi-step reasoning to solve real-world workflows and business problems.
Develop and maintain evaluation pipelines (Evals) to measure agent quality, including accuracy, task completion, hallucination rate, tool-calling correctness, latency, cost, and safety.
Integrate agents with tools and systems through APIs, MCP, databases, vector stores, and internal platforms so agents can reliably access context, perform actions, and operate in production environments.
Fine-tune and adapt LLMs using techniques such as supervised fine-tuning, instruction tuning, LoRA/PEFT, and preference optimization to improve domain performance, reliability, and response quality.
Deploy, monitor, and improve agent systems in production by implementing guardrails, observability, experimentation, feedback loops, and continuous model/prompt updates based on user and eval data.
EXPERIENCE AND KNOWLEDGE
Bachelor’s degree in related field and 5–8 years relevant experience
Proven experience in ML model development and deployment
Strong knowledge of statistics, optimization, probability theory, and experimental methodologies
Proficiency in programming languages such as Python, R, or Java
Experience with ML frameworks/libraries (TensorFlow, PyTorch, scikit-learn)
Familiarity with cloud platforms and scalable computing resources
Strong analytical, problem-solving, and collaboration skills
This position requires fluent written and oral communication in English.
Applicants must be authorized to work for any employer in the U.S. We are unable to sponsor or take over sponsorship of an employment Visa at this time.
Health & Wellness
Hybrid Work Opportunities
Flexible Time Off
Career Development & Mentoring Programs
Health & Wellness Benefits, including competitive health insurance offerings and generous paid parental leave for eligible new parents
Community Volunteering & Company Philanthropy Programs
Employee Peer Recognition Programs – “You Earned it”
Click here to find out more about the benefits we offer.
Our Culture & Commitment:
We’re proud to foster a supportive, inclusive environment where career growth, collaboration, and wellness are prioritized. And our benefits go beyond healthcare—offering resources for physical, mental, and professional well-being. Click here to find out more about the benefits we offer. Q2 employees are encouraged to give back through volunteer work and nonprofit support through our Spark Program (see more). We believe in making an impact—in the industry and in the community.
We are an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability, genetic information, or veteran status.
Applicants in California or Washington State may not be exempt from federal and state overtime requirements
Skills & Tags
Aplyr's read
Q2 empowers banks and credit unions with cutting-edge digital solutions, attracting tech-savvy professionals focused on innovation and customer engagement.
What's promising
- •Q2's digital banking solutions are crucial for financial institutions adapting to modern consumer expectations.
- •The company is actively expanding its workforce, indicating growth and demand for its services.
- •Q2's focus on customer engagement and operational efficiency aligns with industry trends towards digital transformation.
What to watch
- •The competitive fintech landscape poses challenges for Q2 to maintain its market position.
- •Limited public information about Q2's financial health and long-term sustainability.
- •Potential regulatory changes in financial services could impact Q2's operations.
Why Q2
- •Q2 specializes in digital banking solutions tailored for banks and credit unions.
- •The company's hiring of diverse roles suggests a multidisciplinary approach to innovation.
- •Q2's solutions enhance both customer engagement and operational efficiency, a dual focus not all fintechs prioritize.
Aplyr’s read is generated by AI from public sources. Was it useful?
About Q2
Q2 is a financial technology company that provides digital banking solutions for banks and credit unions, enabling them to enhance their customer engagement and operational efficiency.
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