AI Researcher, AI.x

Charles Schwab Inc.San Francisco, CA
$180,000 - $230,000Onsite

About The Position

As an AI Researcher within Schwab’s AI Strategy & Transformation (AI.x) organization, you’ll operate at the intersection of advanced applied research and production‑grade AI systems that support millions of investors, advisors, and employees. This role is designed for researchers who want their work to ship, scale, and deliver measurable impact in real environments—where latency, reliability, cost, and regulatory considerations matter as much as model performance. In this role, you’ll take ideas from early problem formulation through modeling, evaluation, deployment, and iteration, contributing directly to LLM and Agentic-based systems used across the enterprise. Your work will include designing and operating large‑language‑model‑based and agent‑driven systems, establishing robust evaluation and monitoring practices, and improving performance under real‑world constraints. You’ll collaborate closely with platform engineers, product partners, and risk stakeholders to ensure solutions are accurate, observable, safe, and reliable in a regulated financial services environment. Success in this role is measured by production impact and sustained system quality—not novelty alone. Over time, your contributions will help shape Schwab’s AI standards and best practices, influence how AI is responsibly deployed at scale, and strengthen the firm’s long‑term AI capabilities.

Requirements

  • Master’s degree or higher in Computer Science, Machine Learning, Mathematics, Physics, or a related field, or equivalent practical experience.
  • 7+ years of experience building, deploying, and operating machine learning or AI systems using Python in production environments.
  • Demonstrated experience delivering GenAI or LLM‑powered applications that are actively used by clients or internal teams.
  • Strong grounding in data analysis (Python, SQL, Pandas), experimentation, and evaluation, with the ability to assess model quality, reliability, and trade‑offs under real constraints.
  • Experience working cross‑functionally with engineering, product, and other stakeholders to move complex technical work from concept to production.

Nice To Haves

  • Experience designing or operating agentic‑based or orchestrated AI systems, including tool‑enabled or multi‑step workflows.
  • Familiarity with AI evaluation, monitoring, or reliability practices that support long‑running production systems.
  • Experience operating AI solutions in regulated, high‑stakes, or risk‑sensitive environments.
  • Technical leadership or mentoring experience, including influencing standards, patterns, or best practices across teams.

Responsibilities

  • Designing and operating large‑language‑model‑based and agent‑driven systems
  • Establishing robust evaluation and monitoring practices
  • Improving performance under real‑world constraints
  • Collaborating closely with platform engineers, product partners, and risk stakeholders to ensure solutions are accurate, observable, safe, and reliable in a regulated financial services environment
  • Taking ideas from early problem formulation through modeling, evaluation, deployment, and iteration

Benefits

  • bonus or incentive opportunities
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