ERM - Rina María Cabrera / Capgemini | North América External Resource Manager Tel.: +1 888 229 2961 Email: rina.cabrera@capgemini.com
ML Data Infrastructure Engineer
Location
United States
Posted
3 days ago
Salary
0
Seniority
Mid Level
No structured requirement data.
Job Description
ML Data Infrastructure Engineer
Redolent, Inc
Role Description - Design and implement scalable data processing pipelines for ML training and validation - Build and maintain feature stores with support for both batch and real-time features - Develop data quality monitoring, validation, and testing frameworks - Create systems for dataset versioning, lineage tracking, and reproducibility - Implement automated data documentation and discovery tools - Design efficient data storage and access patterns for ML workloads - Partner with data scientists to optimize data preparation workflows Qualifications - 7+ years of software engineering experience, with 3+ years in data infrastructure - Strong expertise in GCP's data and ML infrastructure: - BigQuery for data warehousing - Dataflow for data processing - Cloud Storage for data lakes - Vertex AI Feature Store - Cloud Composer (managed Airflow) - Dataproc for Spark workloads - Deep expertise in data processing frameworks (Spark, Beam, Flink) - Experience with feature stores (Feast, Tecton) and data versioning tools - Proficiency in Python and SQL - Experience with data quality and testing frameworks - Knowledge of data pipeline orchestration (Airflow, Dagster) Requirements - Experience with streaming systems (Kafka, Kinesis) - Experience with GCP-specific security and IAM best practices - Knowledge of Cloud Logging and Cloud Monitoring for data pipelines - Familiarity with Cloud Build and Cloud Deploy for CI/CD - Experience with streaming systems (Pub/Sub, Dataflow) - Knowledge of ML metadata management systems - Familiarity with data governance and security requirements - Experience with dbt or similar data transformation tools
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
• Collaborate in the design, development and maintenance of robust backend applications and services to serve ML inferences (FastAPI/Flask or Node.js) • Build and optimize pipelines for real-time or batch inference processing • Deploy, monitor and optimize the performance of models in production, ensuring low latency and high availability • Contribute to the design of distributed systems capable of supporting intensive machine learning workloads • Deploy AI services using containerized infrastructure (Docker/Kubernetes) • Operate in cloud-based environments such as AWS • Work closely with Data Scientists and ML Engineers to translate research models into production-ready services • Support the identification and integration of emerging technologies to improve system performance and the end-user experience.
• Define and drive the technical roadmap for personalization and recommender systems, prioritizing roadmap items to meet business goals and defining short-term vision for the team. • Propose and deliver R&D that directly shapes roadmaps, multiple projects, and long-term deliverables. Models are used over the long term by multiple products and teams. • Design and lead the development of software used by multiple teams, ensuring long-term maintainability, scalability, and adaptability. • Ensure complex, multi-service personalization products meet SLAs and provide correct results over time. • Adapt systems to changing business needs and resolve multi-product, multi-team service incidents. • Establish and enforce experimentation best practices, including A/B testing frameworks, offline evaluation methodology, and metrics design across personalization surfaces. • Lead team meetings, ensure the team's progress on the roadmap, and make technical decisions that unblock projects. • Manage stakeholders' expectations with data-driven narratives and communicate effectively with senior leadership to align on strategy and track progress. • Drive organizational efficiency and business impact by implementing new technologies and processes. • Foster a collaborative and high-performance team culture. • Mentor senior and mid-level scientists, setting high code quality standards and best practices for the team. • Stay current with advances in recommender systems, LLMs for personalization, and representation learning, bringing relevant advances into production when they deliver measurable improvement.
Machine Learning Engineer, CX Intelligence
CoinbaseWe're building an open financial system for the world.
• Architect multi-agent systems using advanced orchestration frameworks (LangGraph, Google ADK) to automate complex customer support procedures end-to-end. • Build and scale integrations using Model Context Protocol (MCP) to connect LLMs with internal Coinbase APIs, databases, and third-party tooling. • Develop automated "LLM-as-a-judge" evaluation pipelines to monitor, measure, and improve the performance of non-deterministic AI agents in production. • Implement RAG, fine-tuning, and prompt engineering techniques to ensure chatbot responses are grounded, accurate, and compliant with Coinbase policies. • Ship production-ready Python services that are resilient, low-latency, and capable of handling Coinbase-scale traffic across asynchronous microservices. • Partner with Conversation Design and Product to translate complex business logic into executable agent procedures within the decentralized architecture.
Senior Machine Learning Engineer
harrison.aiOn a mission to raise the standard of healthcare for millions of patients every day. Through our clinical Al solutions.
• Develop AI algorithms, prototypes and solutions for healthcare, with a focus on foundation models and self-supervised learning; • Optimise models and training pipelines for accuracy, scale and rapid experimentation; • Follow agile methodology and software engineering best practice, focussing on test-driven development, rapid prototyping, validation and iteration; • Provide regular technical and other progress reports relevant to projects, and ensure all progression is properly documented; • Engage with the literature to benchmark against and adopt state-of-the-art techniques and algorithms; • Rigorously evaluate generative AI models, and partner closely with teams training models at scale; • Contribute to a culture of excellence, helping to solve problems as they arise, instil a culture of best practice, integrity and agility, as well as champion the Harrison mission internally and externally.



