AI Data Innovation Engineer, Data Innovation and Tools Rationalization
Company: U.S. Bank
Location: Minneapolis
Posted on: April 1, 2026
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Job Description:
At U.S. Bank, we’re on a journey to do our best. Helping the
customers and businesses we serve to make better and smarter
financial decisions and enabling the communities we support to grow
and succeed. We believe it takes all of us to bring our shared
ambition to life, and each person is unique in their potential. A
career with U.S. Bank gives you a wide, ever-growing range of
opportunities to discover what makes you thrive at every stage of
your career. Try new things, learn new skills and discover what you
excel at—all from Day One. Job Description We are seeking a highly
skilled AI Data Innovation Engineer to join the Data Innovation and
Tools Rationalization team within the Enterprise Data Office. This
role plays a critical hands?on role in advancing the adoption of
AI?enabled data capabilities by prototyping, validating, and
operationalizing reusable AI Data patterns and enablement
frameworks aligned with the Enterprise Data Strategy. The role
focuses on accelerating AI readiness, enabling safe and scalable
adoption, and reducing friction across teams through disciplined
experimentation, platform integration, and enterprise?scale AI
enablement. About the Data Innovation and Tools Rationalization
Team We are the innovation and tooling engine for the Enterprise
Data Office, focused on reusable patterns, accelerators, and tool
rationalization that reduce friction and speed up delivery and
adoption of governed data products. Vision | Make data products and
AI capabilities easier to build, safer to deploy, and faster to
adopt across the bank. Mission | Deliver reusable data product
patterns, accelerators, and clear integration pathways that help
teams ship data products faster while enabling safer AI adoption
and reducing technology sprawl through disciplined tool evaluation
and rationalization. Values | In addition to U.S. Bank core values,
we prioritize: Head high : We build with excellence. Our work is
intentional, high?quality, and designed to last, so we are always
proud of what we deliver and comfortable standing behind it.
Accountability Over Activity : We take end?to?end accountability,
from problem framing through delivery, adoption, and outcomes.
Strategic Intelligence : We think in systems, anticipate downstream
impact, and collaborate to win as a pod, not as individuals.
Relentless Craft : We are passionate about the work we do. Our
drive comes from curiosity, purpose, and a genuine love of building
impactful solutions. About the Role The AI Innovation Engineer is a
senior individual contributor responsible for advancing enterprise
AI capabilities from a data and data product standpoint. This role
sits at the intersection of enterprise data products, AI
enablement, and platform innovation, acting as a force multiplier
for teams adopting AI?enabled data products across the Enterprise
Data Office and broader organization. Unlike traditional model
development or research?focused roles, this position focuses on
prototyping, validating, and operationalizing AI capabilities that
are tightly coupled to governed enterprise data products, including
standardized semantic models, feature representations, and reusable
data interfaces. The AI Innovation Engineer works hands?on to
ensure that AI solutions are built on trusted data foundations and
can be safely reused, integrated, and scaled across platforms. The
ideal candidate brings strong technical depth across modern data
platforms and AI technologies, paired with a practical
understanding of enterprise data products and operating models.
This role plays a critical part in accelerating AI readiness,
reducing fragmentation across AI implementations, and ensuring that
innovative AI capabilities are delivered through consistent,
well?governed data products aligned with the Enterprise Data
Strategy. Key Activities Key responsibilities include: Prototype
and validate AI capabilities that leverage governed enterprise data
products , including standardized semantic models, shared feature
representations, and reusable data interfaces. Develop and evolve
reusable AI enablement patterns such as Snowpark workloads, Cortex
AI functions, retrieval?augmented generation methods, and
agent?based approaches aligned with enterprise data platforms.
Support data product AI readiness by partnering with data engineers
and product teams to ensure data assets are structured, documented,
and optimized for AI use cases. Translate experimental AI solutions
into reference implementations, reusable patterns, and adoption
guidance that can be safely reused across teams. Partner with data
governance, risk, and control teams to ensure responsible AI
alignment , documenting guardrails, constraints, and handoff
artifacts required for scaling. Collaborate closely with the AI
Center of Excellence to integrate validated AI patterns into
enterprise AI experiences , including Chat USB. Evaluate and
experiment with emerging AI tools, frameworks, and platform
capabilities, conducting technical proofs of concept and
comparative assessments. Identify recurring friction points in AI
adoption and design scalable, data?centric solutions that reduce
complexity and risk. Document project outcomes, usage patterns,
limitations, and operational considerations to support enterprise
rollout and enablement. Work closely with data engineers, analytics
engineers, architects, and data product owners to align AI
solutions with enterprise data strategy and platform standards .
Continuously refine AI assets based on feedback, usage data, and
evolving enterprise needs. Influence data?centric AI adoption
through hands?on expertise, technical credibility, and clearly
articulated patterns rather than formal authority. This role
requires strong communication and collaboration skills, along with
the ability to work effectively with stakeholders across data,
technology, governance, and product teams. The successful candidate
will bring strong technical fluency across modern data platforms,
analytics tools, cloud capabilities, and emerging AI technologies,
contributing to the Enterprise Data Strategy through hands?on
innovation and enablement. Core Competencies: Knowledge : Strong
understanding of enterprise data products and how they enable
analytics and AI use cases, including semantic models, shared
feature representations, and reusable data interfaces. Solid
understanding of modern data and AI enablement concepts, including
retrieval?augmented generation, prompt orchestration, agent?based
patterns, and model integration approaches grounded in governed
data assets. Familiarity with enterprise data ecosystems and shared
platform operating models, including how data products are built,
governed, and reused at scale. Ability to assess tradeoffs across
AI tools, data platforms, and architectural approaches, balancing
innovation with scalability, security, and governance. Strong
analytical and problem?solving skills, with the ability to work
effectively in ambiguous or emerging problem spaces. Comfortable
operating as a senior individual contributor who influences
outcomes through technical credibility rather than formal
authority. Strong communicator able to engage effectively with data
engineers, platform teams, governance partners, and AI
practitioners. Technical Competence: Hands?on experience working
with modern data platforms such as Snowflake and Databricks, with
the ability to leverage data products as inputs to AI?enabled
workflows. Experience developing AI?enabled solutions using Python
and SQL, including prototyping, validation, and integration with
enterprise data assets. Familiarity with Snowpark workloads, Cortex
AI functions, or similar data?native AI capabilities, with an
emphasis on reuse and standardization. Experience implementing
retrieval and semantic enrichment patterns that connect AI
capabilities to governed enterprise data products. Understanding
data quality, observability, security, and governance
considerations as they relate to AI readiness and responsible
adoption. Familiarity with cloud?native services and APIs used to
prototype and operationalize AI?enabled data solutions. Experience
documenting technical approaches, usage patterns, limitations, and
handoff guidance to support enterprise adoption and scale. Exposure
to CI/CD and deployment patterns for experimental and
production?ready AI workloads is a plus. Basic Qualifications
Bachelor’s Degree in a quantitative field such as computer science,
engineering, data science, mathematics, or statistics. 7-10 years
of experience across AI enablement, data engineering, analytics
engineering, platform enablement, or data product roles. Preferred
Skills Demonstrated experience influencing adoption of shared
platforms, tools, or standards in a large enterprise environment.
AI/ML Model development experience Demonstrated experience
prototyping and validating AI capabilities built on enterprise data
products, including standardized semantic models and shared data
interfaces. Experience developing reusable AI enablement patterns
such as Snowpark workloads, Cortex AI functions,
retrieval?augmented generation methods, or agent?based approaches.
Technically proficient in model life cycle management, portfolio
management, financial/budget management, and roadmap planning
Proven track record of designing reusable components or standards
adopted by multiple teams. Experience working across Snowflake,
Databricks, and cloud ecosystems (Azure, AWS, or GCP). Experience
working in regulated or large-scale enterprise environments
preferred. Strong organizational skills with the ability to manage
multiple initiatives concurrently. Deep understanding of banking
and financial institution terms. Knowledge of banking regulation
and requirements for regulatory reporting. Strong analytical,
organizational, problem-solving, and project management skills.
Hands-on experience with programming languages such as Python and
SQL. Proficiency with big data technologies including Hadoop, Hive,
and Spark. Expertise in visual analytics tools such as Power BI,
Tableau, or equivalent platforms. Experience with Power Platform
tools such as Power Automate and Power Apps Proven track record in
automating and optimizing ETL processes at scale. Excellent written
and verbal communication skills for documenting technical processes
and engaging with cross-functional teams and present to senior
management. The role offers a hybrid/flexible schedule, which means
there's an in-office expectation of 3 or more days per week and the
flexibility to work outside the office location for the other days.
If there’s anything we can do to accommodate a disability during
any portion of the application or hiring process, please refer to
our disability accommodations for applicants . Benefits: Our
approach to benefits and total rewards considers our team members’
whole selves and what may be needed to thrive in and outside work.
That's why our benefits are designed to help you and your family
boost your health, protect your financial security and give you
peace of mind. Our benefits include the following: Healthcare
(medical, dental, vision) Basic term and optional term life
insurance Short-term and long-term disability Pregnancy disability
and parental leave 401(k) and employer-funded retirement plan Paid
vacation (from two to five weeks depending on salary grade and
tenure) Up to 11 paid holiday opportunities Adoption assistance
Sick and Safe Leave accruals of one hour for every 30 worked, up to
80 hours per calendar year unless otherwise provided by law Review
our full benefits available by employment status here . U.S. Bank
is an equal opportunity employer. We consider all qualified
applicants without regard to race, religion, color, sex, national
origin, age, sexual orientation, gender identity, disability or
veteran status, and other factors protected under applicable law.
E-Verify U.S. Bank participates in the U.S. Department of Homeland
Security E-Verify program in all facilities located in the United
States and certain U.S. territories. The E-Verify program is an
Internet-based employment eligibility verification system operated
by the U.S. Citizenship and Immigration Services. Learn more about
the E-Verify program . The salary range reflects figures based on
the primary location, which is listed first. The actual range for
the role may differ based on the location of the role. In addition
to salary, U.S. Bank offers a comprehensive benefits package,
including incentive and recognition programs, equity stock purchase
401(k) contribution and pension (all benefits are subject to
eligibility requirements). Pay Range: $133,365.00 - $156,900.00
U.S. Bank will consider qualified applicants with arrest or
conviction records for employment. U.S. Bank conducts background
checks consistent with applicable local laws, including the Los
Angeles County Fair Chance Ordinance and the California Fair Chance
Act as well as the San Francisco Fair Chance Ordinance. U.S. Bank
is subject to, and conducts background checks consistent with the
requirements of Section 19 of the Federal Deposit Insurance Act
(FDIA). In addition, certain positions may also be subject to the
requirements of FINRA, NMLS registration, Reg Z, Reg G, OFAC, the
NFA, the FCPA, the Bank Secrecy Act, the SAFE Act, and/or federal
guidelines applicable to an agreement, such as those related to
ethics, safety, or operational procedures. Applicants must be able
to comply with U.S. Bank policies and procedures including the Code
of Ethics and Business Conduct and related workplace conduct and
safety policies. Posting may be closed earlier due to high volume
of applicants.
Keywords: U.S. Bank, Minneapolis , AI Data Innovation Engineer, Data Innovation and Tools Rationalization, IT / Software / Systems , Minneapolis, Minnesota