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VP, Product & Technology AI Solutions Product Manager

Job in Austin, Travis County, Texas, 78719, USA
Listing for: LPL Financial Services
Part Time position
Listed on 2026-06-03
Job specializations:
  • IT/Tech
    Systems Engineer, IT Project Manager, Cloud Computing, Cybersecurity
Job Description & How to Apply Below
Where Ambition Meets Innovation

Build a career that matches all your initiative with an impressive dose of innovation. From cutting-edge resources and a collaborative environment to the freedom to make an impact and more, you'll find the ingredients you need at LPL Financial to shape your success while helping clients pursue their financial goals.

Job Overview:

The Vice President, Product and Tech AI Solutions Product Manager will lead the modernization of LPL's Product Development Lifecycle (PDLC) and Software Development Lifecycle (SDLC) through practical AI-enabled workflows with humans in control.

Reporting to the Senior Vice President of AI Business Solutions, this product leader will deliver a clear roadmap and adoption plan across product management, engineering, Dev Ops, architecture, quality engineering, security, and governance. The role focuses on accelerating value velocity by empowering product managers, reducing late-cycle churn, shortening review queues, improving developer experience, and increasing release stability.

This leader will partner closely with the Technology teams that build and operate platforms and tools and will be accountable for measurable improvements in cycle time, rework, review turnaround time, production stability, and incident prevention.

This is a hybrid role that requires the candidate to be onsite in either our Fort Mill SC, NYC, or Austin TX hub at least 3 days a week.

Responsibilities:

* Modernization

Roadmap:

Own a roadmap that improves speed, quality, and predictability across discovery, build, test, release, and learning. Translate priorities into sequenced pilots, lightweight standards, and tooling requirements that engineering teams can implement and run.

* AI-Assisted Workflows With Human Review:
Introduce AI where it removes drafting and synthesis work, then require human review and edits before outputs become decisions or artifacts. Examples include turning discovery notes into a first PRD draft, proposing acceptance criteria from a user journey, drafting architecture decision templates, summarizing a service's behavior from code and runbooks, drafting unit tests that engineers validate, and drafting release notes that an accountable owner approves.

* Requirements and Artifact Quality:
Standardize a small set of lightweight artifacts and quality checks that reduce late-cycle churn. Focus on common causes of rework: unclear problem statements, missing edge cases, missing data handling constraints, and acceptance criteria that cannot be tested.

* Decision and Review Throughput:
Partner with architecture, security, and compliance teams to reduce time spent in review queues. Improve review speed by tightening inputs, capturing context up front, and using consistent templates.

* Developer Experience Improvements:
Partner with Dev Ops and platform teams to reduce friction in the build and release process. Focus on faster local setup, fewer manual steps to ensure safe shipping, clearer service ownership, and documentation engineers can trust during an outage.

* Release Readiness and Change Control:
Improve how teams prepare releases so work is not left to the end. Align with Dev Ops, QE, and governance partners on what must be true before a release is approved, and ensure teams can produce that evidence as they build.

* Code and System Documentation:
Improve code and system understanding by keeping service documentation current and tied to repositories and runtime behavior.

* Measurement and Instrumentation:
Partner with Technology and Business Reporting and Analytics to establish baselines and targets for lead time, cycle time, review turnaround, defect escape, change failure rate, production incident rate, mean time to restore, rework, and onboarding time.

* Pilot to Scale:
Run fast-cycle pilots that show results within weeks. Define success criteria up front, publish results, scale successful patterns through engineering partners, and shut down pilots that add work without improving delivery.

* Tooling and Vendor Alignment:
Define requirements for tooling based on workflow needs, auditability, access controls, and integration with existing platforms. Partner with procurement and risk teams to evaluate vendors and prevent shadow tooling or data handling issues.

* Cross-Functional Operating Rhythm:
Establish a regular cadence with product, engineering, Dev Ops, security, compliance, and risk leaders to surface what is slowing delivery, make decisions, and track adoption.

What are we looking for?

* Product Management Excellence:
Proven ability to define product vision, build roadmaps, prioritize backlogs, and drive adoption for internal products and workflows.

* Delivery Systems Expertise:
Deep understanding of PDLC and SDLC failure modes in real organizations, including how unclear intent, slow reviews, and weak artifacts create churn.

* Developer Experience and Reliability:
Ability to prioritize improvements that reduce toil, improve release confidence, and prevent recurring…
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