"I can succeed as a Lead AI Platform Engineer at Capital Group."
As a Lead AI Platform Engineer, you will serve as a technical SME and lead workstreams to design, build, and operate the foundational components of Capital Group's enterprise AI platform, enabling secure, scalable, and responsible development and deployment of advanced AI and agentic solutions. You will work across the full stack-from data ingestion and vector databases to orchestration, agent frameworks, and user-facing APIs-empowering teams to deliver innovative AI-powered experiences.
You will collaborate with security, FinOps, and engineering peers, as well as data scientists and ML engineers, to deliver robust, enterprise-ready AI capabilities. Your work will span the integration of cloud-native services, orchestration frameworks, agentic architecture, and responsible AI guardrails. You will play a critical role in the design and implementation of solutions based on the Model Context Protocol (MCP) and AI Gateway patterns. Additionally, you will mentor and lead cross-functional initiatives, guiding engineers and stakeholders to deliver impactful solutions and foster a collaborative, inclusive culture.
"I am the person Capital Group is looking for."
You can build and maintain AI platform services :
- Develop data ingestion pipelines, feature stores, and ML workflows
- Integrate vector databases, knowledge graphs, and model registries with governance
- Implement automated ML-Ops pipelines for training, evaluation, and deployment
- Design model serving infrastructure for real-time and batch inference and orchestrate agentic workflows using modular, extensible frameworks
- Enable agentic workflows and secure connectivity using MCP and AI Gateway patterns
- Integrate with agent orchestrators and support for agent-to-agent communication protocols
You ensure observability and responsible AI :
Monitor model performance, data quality, and lineageImplement logging, alerting, and rollback mechanismsApply explainability, fairness, and compliance guardrailsYou have experience with embedding security and compliance :
Integrate encryption, IAM, and audit loggingSupport compliance with regulatory and internal policies (e.g., GDPR, SOC 2, Responsible AI frameworks)Champion security, privacy, and regulatory adherence in partnership with InfoSecYou drive operational excellence :
Apply SRE and FinOps practices for reliability and cost optimizationSet best practices for infrastructure automation and scalabilityYou collaborate and enable teams :
Lead cross- functional workstreams with data scientists and ML engineers to deliver platform solutionsDevelop APIs, SDKs, and self-service tools for rapid experimentationProduce clear documentation, runbooks and architectural diagramsRequired Qualifications
You have a bachelor's degree in computer science, Engineering or a related technical field or relevant experience.You have 8+ years of leading general platform technology build experience or large, distributed systems with ability to drive architectural decisions and influence platform strategy.You have 3+ years of experience building, operating AI / ML platformsYou have demonstrated hands-on experience with MLOps tools and ML frameworksYou have experience with vector databases and knowledge graph technologiesYou possess proven experience leading technical teams and delivering enterprise-scale AI / ML platforms.You have experience with agentic AI frameworks and orchestration toolsYou are proficient in designing and implementing solutions based on the Model Context Protocol (MCP) and AI Gateway patternsYou have experience coding in Python and / or other languages commonly used in AI / ML engineeringYou have experience with cloud platforms and container orchestrationYou understand AI observability, model monitoring, and responsible AI practicesYou have experience implementing security, privacy, and compliance controls in AI / ML environmentsPreferred Qualifications
Experience in regulated industries (e.g., financial services) and navigating governance, risk, and compliance for AIFamiliarity with AI-specific observability toolsExperience with agent orchestrators, agent-to-agent communication, and multi-agent systemsExposure to AI guardrails and responsible AI frameworks (e.g., explainability, bias detection)Experience with cost optimization and FinOps for AI / ML workloadsFamiliarity with Agile and DevSecOps practices in AI / ML environmentsExperience defining platform roadmaps and aligning with business objectives.Southern California Base Salary Range : $173,211-$277,138
New York Base Salary Range : $183,613-$293,781
In addition to a highly competitive base salary, per plan guidelines, restrictions and vesting requirements, you also will be eligible for an individual annual performance bonus, plus Capital's annual profitability bonus plus a retirement plan where Capital contributes 15% of your eligible earnings.
You can learn more about our compensation and benefits here .
Temporary positions in Canada and the United States are excluded from the above mentioned compensation and benefit plans.We are an equal opportunity employer, which means we comply with all federal, state and local laws that prohibit discrimination when making all decisions about employment. As equal opportunity employers, our policies prohibit unlawful discrimination on the basis of race, religion, color, national origin, ancestry, sex (including gender and gender identity), pregnancy, childbirth and related medical conditions, age, physical or mental disability, medical condition, genetic information, marital status, sexual orientation, citizenship status, AIDS / HIV status, political activities or affiliations, military or veteran status, status as a victim of domestic violence, assault or stalking or any other characteristic protected by federal, state or local law.