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A global AI consulting firm is seeking a highly skilled Machine Learning Engineer to develop scalable AI solutions. In this role, you will maintain machine learning pipelines, collaborate with teams, and design workflows on AWS. The successful candidate will have over 5 years of experience in deploying ML systems and strong expertise in LLMs and AWS AI services. Proficiency in Python is essential, along with advanced English skills for global collaboration. This position is full-time and remote, allowing for flexibility in work location.
Onebridge, a Marlabs Company, is a global AI and Data Analytics Consulting Firm that empowers organizations worldwide to drive better outcomes through data and technology. Since 2005, we have partnered with some of the largest healthcare, life sciences, financial services, and government entities across the globe. We have an exciting opportunity for a highly skilled Machine Learning Engineer to join our innovative and dynamic team.
Employment Type : Full Time
Location : Brazil - Remote
Industry : IT & Services.
This position requires advanced communication skills in English, both written and verbal.
As a Machine Learning Engineer, you are responsible for turning complex data and business challenges into scalable, high-impact AI solutions. You thrive in environments where experimentation meets engineering rigor, and you take pride in building systems that work reliably in the real world. You are the kind of person who enjoys staying ahead of industry trends—especially in LLMs and generative AI—and bringing that knowledge into practical, production‑ready workflows. You're excited by the opportunity to shape modern ML pipelines end‑to‑end, collaborate deeply with cross‑functional teams, and continuously refine how AI drives value across an organization.
Develop and maintain scalable, reproducible machine learning pipelines across preprocessing, training, deployment, and monitoring.
Build and optimize LLM‑based solutions, including RAG approaches, embeddings, and semantic search capabilities.
Collaborate closely with product and engineering teams to translate business needs into strong ML / AI system designs.
Prototype and deploy ML and deep learning models for transformation, ranking, prediction, and other applied use cases.
Design native workflows on AWS using Lambda, Step Functions, SageMaker, Bedrock, AgentCore, and related services.
Implement observability and monitoring tools to ensure reliability, stability, and compliance of models in production.
5+ years of experience in Machine Learning, with a proven track record deploying end‑to‑end ML / AI systems in production.
Hands‑on experience with AWS AI / ML services including SageMaker, Bedrock, Lambda, and Step Functions, along with MLOps best practices.
Strong knowledge of LLMs, RAG architectures, embeddings, and vector databases.
Proficiency in Python and ML / DL frameworks such as PyTorch and scikit‑learn, familiarity with transformer‑based models.
Solid understanding of model deployment, containerization, and monitoring.
Experience with data engineering for ML workflows (feature pipelines, schema versioning, data quality controls).
Advanced English proficiency for communication with a global, distributed team.