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Machine Learning Engineer- Cloud Deployment (Remote)

Capital Group

📍 Irvine, California, US0🕐 27 giorni fa
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Descrizione

We value your talents, traditions, and uniqueness—and we’re committed to fostering a strong sense of belonging in a respectful workplace. We believe that belonging leads to better outcomes and a stronger community of associates united by our mission. Integrity, Client Focus, Diverse Perspectives, Long-Term Thinking, and Community. “Your performance will be reviewed annually, and your compensation will be designed to motivate and reward the value that you provide. You’ll receive a competitive salary, bonuses and benefits. Your company-funded retirement contribution will factor in salary and variable pay, including bonuses. “Enjoy generous time-away and health benefits from day one, with the opportunity for flexible work options Receive 2-for-1 matching gifts for your charitable contributions and the opportunity to secure annual grants for the organizations you love Access on-demand professional development resources that allow you to hone existing skills and learn new ones “I can succeed as a Senior Machine Learning Engineer at Capital Group.” You will join our Machine Learning Engineering team to build the next generation of AI products at Capital Group — including agentic systems, LLM-powered workflows, and the platform that ensures they are safe, governed, and reliable in production. You will operate at the intersection of production ML, GenAI and agentic workflows, and governed data infrastructure. In this high-impact role, you will help define how enterprise-grade AI systems are designed, deployed, and operated. You will work with a high degree of autonomy, mentor junior engineers, and drive engineering standards across projects built on Databricks, AWS, and agent-based architectures. What You Will Do AI Infrastructure & Production Systems You architect and operate end-to-end production AI systems — designing, building, deploying, monitoring, and managing the full lifecycle of ML and GenAI workloads You develop production-grade cloud-native environments optimized for AI/ML model training, serving, and orchestration You establish and evangelize engineering standards, reference patterns, and reusable platform components for AI services across the firm You design scalable inference pipelines, including retraining loops, drift detection, evaluation harnesses, and observability Agentic Workflows & GenAI You build agentic systems with multi-step reasoning, orchestration, and tool/function calling, including MCP-based integrations You develop evaluation harnesses, traces, and replay tooling so agent behavior is observable and continuously improvable You apply advanced prompt engineering, evaluation frameworks, guardrails, and human-in-the-loop patterns to deliver reliable LLM-powered features You drive the agentic SDLC, defining how agents are designed, tested, evaluated, deployed, and monitored as first-class production assets Databricks & AWS Platform Engineering You build solutions on Databricks (Unity Catalog, MLflow, Spark) and AWS, leveraging native AI capabilities for model training, serving, and governance You use Infrastructure as Code to provision and manage cloud-native, scalable, and secure environments You integrate with vector stores, graph databases, Redis, DynamoDB, and ElastiCache to enable retrieval, memory, and state for AI applications ML Engineering & Delivery You build REST and streaming APIs to expose ML and agentic capabilities to downstream products and platforms You apply advanced prompt engineering, RAG patterns, fine-tuning, and model selection aligned to specific use cases You optimize performance, cost, and computational efficiency across distributed compute workloads You develop and tune ML models and perform data cleaning, feature engineering, preprocessing, and exploratory analysis Governance, Risk & Collaboration You embed data lineage, access controls, audit trails, and responsible AI practices into every system you build You partner with product, business, and data teams to translate ambiguous problems into well-scoped agentic solutions You lead code reviews, set engineering standards, mentor junior engineers, and propose scalable solutions “I am the person Capital Group is looking for.” You have 7+ years of professional software engineering with strong proficiency in Python and core software engineering fundamentals You have experience building and operating production ML systems end-to-end, including deployment, monitoring, and lifecycle management You have hands-on experience with AWS and/or Databricks, including native AI/ML capabilities and Infrastructure as Code You have experience integrating GenAI and LLMs using advanced prompt engineering and evaluation techniques You have experience developing APIs (REST and streaming endpoints) and familiarity with MCP (Model Context Protocol) You have strong ML fundamentals, including algorithms, evaluation metrics, and model tuning You have a bachelor’s degree in information technology
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