Applied AI/ML Engineer
Indexed description
- Master's degree in a quantitative discipline such as Statistics, Engineering, Sciences, or equivalent practical experience.
- 3 years of experience using analytics to solve product or business problems, coding (e.g., Python, R, SQL), querying databases or statistical analysis, or a relevant PhD degree.
- Experience working in a financial, audit, or highly regulated domain where deterministic accuracy and auditability are paramount.
- Experience in full-stack development for end-to-end machine learning solutions.
- Experience building Agentic tools and systems (production-ready, not POCs).
- Experience in classical ML modeling (e.g., time-series forecasting, tree-based models) alongside modern Large Language Model (LLM)/Generative AI tooling.
- Expertise in developing and deploying AI/ML models and utilizing modern observability/monitoring tools to track performance, latency, and model drift.
- Excellent communication and storytelling skills, with a proven ability to translate complex technical architectures and probabilistic model behaviors to executive finance leadership.
As an Applied AI and ML Engineer in Finance Data and Analytics (DnA) team, you will lead the technical strategy, design, and deployment of end-to-end AI/ML and agentic solutions to transform legacy finance processes into AI-native workflows. You will operate at the intersection of advanced machine learning and product-driven transformation. You will not just build models, design self-sustaining, self-correcting agentic systems that partner with finance Googlers to drive unprecedented efficiency across Google's finance organization.
Responsibilities
- Lead the technical design of multi-agent workflows, utilizing a various toolkit (ML and Gemini LLMs) to solve complex, multi-layered financial problems.
- Build, prototype, and scale end-to-end AI agents. Outline system architectures that prioritize reliability, usability, and auditability ensuring clear human-in-the-loop interfaces for finance professionals.
- Take prototypes from isolated testing environments to scaled production systems. Design and deploy high-availability model endpoints with health checks, error handling, retries, and fallback mechanisms.
- Implement evaluation frameworks and guardrails to eliminate logical errors, hallucinations, and biases in automated financial decision-making.
- Partner closely with Product Managers, Engineers, and Finance stakeholders to translate ambiguous finance problems into concrete technical specifications. Act as a self-sustaining technical leader who helps unblock system integration hurdles in partnership with Engineering teams.
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