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
Finance at Q2 operates on enterprise data that lives across a complex, multi-system landscape — Snowflake and beyond. This role exists because that data is not yet consistently usable. The Finance Data Architect closes that gap by owning two interconnected capabilities: building and governing finance-ready semantic models and curated datasets drawn from Q2's full data estate, and authoring the AI workflow infrastructure — skills files, agent prompts, MCP context layers, and documentation — that allows Finance to execute complex, recurring processes repeatably and at scale.
This is a builder role, not a consumer role. The right candidate has done this work before: translating messy, distributed enterprise data into trusted, finance-ready outputs, and standing up agentic workflow patterns that hold up under real business conditions. The role sits within Finance and partners closely with Data/Architecture, Enterprise Solutions, and AI Enablement functions across Q2.
RESPONSIBILITIES
Finance Data Engineering & Semantic Modeling
Map, connect, and rationalize Finance-relevant data across Q2's full data estate — Snowflake and distributed upstream sources — establishing canonical source alignment and lineage documentation for each Finance domain
Design and maintain curated datasets purpose-built for Finance consumption: expense forecasting inputs, revenue and COGS drivers, headcount and compensation, and other key reporting and planning inputs
Partner with FP&A, Accounting, and FinOps stakeholders to define semantic models that encode metric definitions, dimensionality, calculation logic, and source-of-truth alignment in a form downstream systems and AI agents can reliably consume
Establish and drive adherence of naming standards, data quality checks, refresh cadences, and model documentation as part of a Finance semantic layer contract
Build lightweight validation and reconciliation processes that drive trust and adoption across Finance data consumers
Build trust through auditability of modeled data
AI Workflow Infrastructure & MCP Layer Ownership
Own the Finance MCP layer: design and maintain the context, definitions, guardrails, and grounding structures that enable AI agents to operate accurately within Finance workflows
Author and version markdown-based skills, agent prompts, and workflow files that operationalize recurring Finance tasks — variance narratives, forecast driver updates, close support analyses, executive dashboard refresh, earnings narrative updates, and others as the library grows
Create and maintain a Finance AI artifact library: reusable prompts, golden examples, known failure modes, troubleshooting guidance, and acceptance criteria
Establish versioning standards and metadata practices (ownership, approval status, context dependencies) for all Finance AI artifacts
Partner with enterprise AI Enablement teams to ensure agents and tools are grounded in approved semantic definitions and operate within Finance governance guardrails
Cross-Functional Partnership & Enablement
Serve as the connective layer between Finance and Q2's enterprise data ecosystem; align with Data/Architecture and Enterprise Solutions on upstream transformations, governance standards, and canonical source decisions
Drive adoption through documentation, demos, and stakeholder enablement — translating technical outputs into Finance-accessible language and practice
Identify and surface process improvement and automation opportunities across Finance workflows, bringing forward use cases grounded in data and feasibility
Flexible mindset to operate with ambiguity while continuing to drive teams forward
Continuously learn and evolve as applied technologies mature and new technologies arise.
EXPERIENCE AND KNOWLEDGE
Required
Bachelor’s degree in Finance, Accounting, Analytics, Information Systems, or related field plus 5–7 years of relevant experience; advanced degree with 3–5 years; or equivalent demonstrated experience
Proven ability to navigate and rationalize distributed enterprise data environments — not just Snowflake-native work, but connecting and harmonizing data across multiple source systems
Strong SQL capability and hands-on experience working in Snowflake or equivalent cloud data warehouse environments
Demonstrated experience building semantic models, curated datasets, or data layer contracts that translate raw enterprise data into business-facing outputs
Demonstrated ability to design and structure AI workflow infrastructure: including building prompt libraries, authoring agent skills or context files, or structuring MCP / retrieval-grounding layers OR a proven track record of rapidly acquiring and applying emerging technical capabilities in a production environment
Exceptional written communication and documentation skills, including the ability to write for both technical and non-technical audiences
Proven cross-functional influence as an individual contributor — earns trust through technical credibility and clear communication, not organizational authority
Preferred
Finance domain depth in FP&A, expense forecasting, or revenue modeling in a SaaS or public-company environment
Familiarity with enterprise planning and reporting tools (Anaplan, Power BI, Tableau) and experience designing semantic layers that feed them accurately
Experience building internal documentation systems, playbooks, or knowledge bases in a markdown-first environment
Exposure to AI evaluation frameworks: prompt quality assessment, hallucination reduction patterns, agent guardrail design, or output validation
Comfort operating in an environment where the tooling is established but the patterns are still being built — a builder’s orientation, not an implementer’s
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