Experis

Machine Learning/GenAI Engineer

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Machine Learning/GenAI Engineer in Boston, MA, lasting 12+ months at $75-85/hr. Requires 10+ years in software engineering, 3+ years in ML/GenAI, expertise in API integration, cloud deployments, and vector databases.
🌎 - Country
United States
πŸ’± - Currency
$ USD
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πŸ’° - Day rate
680
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πŸ—“οΈ - Date
November 11, 2025
πŸ•’ - Duration
More than 6 months
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🏝️ - Location
On-site
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πŸ“„ - Contract
W2 Contractor
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πŸ”’ - Security
Unknown
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πŸ“ - Location detailed
Boston, MA
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🧠 - Skills detailed
#ML (Machine Learning) #Kubernetes #Prometheus #Grafana #Java #Computer Science #C++ #Oracle #AWS (Amazon Web Services) #GitHub #.Net #Cloud #Databases #Python #Microservices #RDF (Resource Description Framework) #Deployment #Programming #Scala #Snowflake #S3 (Amazon Simple Storage Service) #Neo4J #SageMaker #Knowledge Graph #DevOps #Langchain #AI (Artificial Intelligence) #Docker #Model Evaluation #Lambda (AWS Lambda) #Logging #Observability
Role description
Location: Boston, MA Duration: 12+ months Rate: $75-85/hr W2 We are looking for a Senior Machine Learning Engineer (Integration Specialist) to produce research models and GenAI workflows into scalable services. Our team is the first in the organization to deliver AI solutions, and the pipelines and best practices you establish will be adopted by other teams. This role is ideal for a strong software engineer (10+ years of experience with 3+ years in ML/GenAI) who enjoys deployment, integration, and scaling, rather than research. The Expertise We’re Looking For β€’ Bachelor’s or Master’s in Computer Science, Artificial Intelligence, Machine Learning, or related field. β€’ 10+ years of software engineering experience in APIs, cloud deployments, and system integration. β€’ 3+ years in ML engineering, with 2+ years in agentic or multi-agent systems. β€’ Proven must have experience building and deploying RAG pipelines using embedding models and vector search. β€’ Must have hands-on experience with vector databases such as FAISS, Pinecone, Weaviate, or Milvus. β€’ Must have experience with agent orchestration frameworks (LangChain, CrewAI, LangGraph, AutoGen etc ). β€’ Strong background in cloud-native software engineering and microservices architecture. β€’ Concrete understanding of traditional ML models and their usecses. β€’ Programming: Advanced Python skills; familiarity with C++, Java, or .NET is a plus. β€’ Cloud Platforms: Proficiency with AWS services (S3, Lambda, ECS, SageMaker, etc.). β€’ Databases: Experience with Oracle, Snowflake, vector databases, and knowledge graphs (e.g., Neo4j, RDF/SPARQL). β€’ DevOps: CI/CD pipelines, Docker, Kubernetes, GitHub Actions. β€’ AI Ethics: Understanding of Responsible AI principles and ability to identify and mitigate ethical risks. β€’ Good to have if you have exposure or worked on tools which aid for continuous model evaluation and alerting. β€’ Stay updated with the latest advancements in Machine Learning world and integrate them into projects. β€’ Communicate complex technical concepts to non-technical stakeholders. The Skills You Bring β€’ Integration expertise: You can take research outputs and turn them into production-ready APIs and applications. β€’ ML/GenAI awareness: You understand which types of models are used for which problems, and can connect them effectively to real-world data. β€’ System design: You know how to containerize, scale, and monitor services. β€’ Engineering discipline: You bring CI/CD, versioning, and logging best practices to ML/GenAI deployment. β€’ Experience building observability systems for agent performance tracking (e.g., Prometheus, Grafana, OpenTelemetry). β€’ Strong grasp of AI safety, fairness, and governance. β€’ Ability to research, evaluate, and implement emerging tools and frameworks. β€’ Demonstrated success in proof-of-concept development, experimentation, optimization, and production deployment. β€’ Proficiency in designing scalable, distributed systems and cloud-native applications. β€’ Collaborative mindset with strong communication and problem-solving skills. The Value You Deliver β€’ You establish pipelines and frameworks that allow research models to move seamlessly into production. β€’ You enable RAG-based apps and agentic workflows to be deployed reliably. β€’ You ensure services are scalable, secure, and easy to integrate across teams. β€’ You provide clarity on how different ML models fit different business problems. β€’ Learning from and sharing knowledge and skills with your peers to enhance the team’s total impact to the organization.