Title: AI/ML Engineer
Number of Openings: 2
Location: Malvern PA (1st Choice); Charlotte NC (2nd Choice); Dallas TX 75248 (3rd Choice)
3 days on-site required in one of these 3 locations
Core Responsibilities
- Agentic AI & MCP Integration: Implement agentic frameworks (e.g. LangGraph AutoGen) and Model Context Protocol (MCP) for secure tool orchestration.
- Generative AI Development: Build LLM-based applications with RAG structured output and evaluation frameworks.
- AWS ML Engineering: Deploy models using SageMaker pipelines ECS/ECR Lambda; manage CI/CD and monitoring.
- Security & Identity: Integrate Okta/JWT token for API and service authentication; enforce token validation and claims.
- Governance : Deliver artifacts required by MDLC/MPLC (Model Documents Data Dictionary Monitoring Plan).
- Collaboration: Partner with PO and business stakeholders to align solutions with objectives.
Responsibilities
- Design develop and optimize complex data pipelines using machine learning engineering best practices to ensure scalability efficiency and reliability.
- Develop and implement robust MLOps pipeline to support the deployment monitoring and lifecycle management of AI/ML models in production environments.
- Integrate and maintain data and model pipelines proactively diagnosing data quality issues and documenting assumptions.
- Collaborate closely with data scientists to validate model-ready datasets and ensure thorough accurate feature documentation.
- Conduct exploratory data analysis and discovery on raw data sources incorporating business context to support model development.
- Track data lineage and perform root cause analysis during early-stage exploration or issue resolution.
- Partner with internal stakeholders to understand business processes and translate them into scalable analytical solutions.
- Develop and maintain model monitoring scripts investigate alerts and coordinate timely resolutions.
- Act as a subject matter expert in machine learning engineering on cross-functional teams contributing to high-impact initiatives.
- Stay current with advancements in AI/ML and evaluate their applicability to business challenges.
Qualifications
- Bachelors degree in Computer Science Engineering or related field (Masters preferred).
- 6 years of experience across Artificial Intelligence (AI) / Machine Learning (ML) engineering data engineering and MLOps implementation including:
- o Designing and deploying production-grade ML systems.
- o Building scalable data pipelines and ML workflows.
- o Managing model lifecycle in cloud environments.
- Proficient in Python and familiar with ML frameworks such as TensorFlow PyTorch and Scikit-learn.
- Strong understanding and experience in AWS Machine Learning Stack including:
- AWS SageMaker
- AWS Glue
- AWS Bedrock
- AWS Data Pipelines
- AWS Lambda Functions
- Experience with Generative AI model development builing LLM based applications with RAG.
- Experience implementing agentic frameworks (e.g. LangGraph AutoGen) and Model Context Protocol (MCP) for orchestration.
- Knowledge of React UI GraphDB and GenAI model performance evaluation
- Experience with CI/CD containerization (e.g. Docker) and orchestration tools (e.g. Kubernetes).
- Solid grasp of software engineering principles including testing version control (e.g. Git) and security.
- Familiarity with the Machine Learning Development Lifecycle (MDLC) and best practices for reproducibility and scalability.
- Strong communication and collaboration skills with experience working across technical and business teams.
- Ability to anticipate ambiguity and devise scalable solutions to address it.
Required Skills:
Agentic AIAWSArtificial Intelligence
Title: AI/ML EngineerNumber of Openings: 2Location: Malvern PA (1st Choice); Charlotte NC (2nd Choice); Dallas TX 75248 (3rd Choice)3 days on-site required in one of these 3 locations Core Responsibilities Agentic AI & MCP Integration: Implement agentic frameworks (e.g. LangGraph AutoGen) and Model...
Title: AI/ML Engineer
Number of Openings: 2
Location: Malvern PA (1st Choice); Charlotte NC (2nd Choice); Dallas TX 75248 (3rd Choice)
3 days on-site required in one of these 3 locations
Core Responsibilities
- Agentic AI & MCP Integration: Implement agentic frameworks (e.g. LangGraph AutoGen) and Model Context Protocol (MCP) for secure tool orchestration.
- Generative AI Development: Build LLM-based applications with RAG structured output and evaluation frameworks.
- AWS ML Engineering: Deploy models using SageMaker pipelines ECS/ECR Lambda; manage CI/CD and monitoring.
- Security & Identity: Integrate Okta/JWT token for API and service authentication; enforce token validation and claims.
- Governance : Deliver artifacts required by MDLC/MPLC (Model Documents Data Dictionary Monitoring Plan).
- Collaboration: Partner with PO and business stakeholders to align solutions with objectives.
Responsibilities
- Design develop and optimize complex data pipelines using machine learning engineering best practices to ensure scalability efficiency and reliability.
- Develop and implement robust MLOps pipeline to support the deployment monitoring and lifecycle management of AI/ML models in production environments.
- Integrate and maintain data and model pipelines proactively diagnosing data quality issues and documenting assumptions.
- Collaborate closely with data scientists to validate model-ready datasets and ensure thorough accurate feature documentation.
- Conduct exploratory data analysis and discovery on raw data sources incorporating business context to support model development.
- Track data lineage and perform root cause analysis during early-stage exploration or issue resolution.
- Partner with internal stakeholders to understand business processes and translate them into scalable analytical solutions.
- Develop and maintain model monitoring scripts investigate alerts and coordinate timely resolutions.
- Act as a subject matter expert in machine learning engineering on cross-functional teams contributing to high-impact initiatives.
- Stay current with advancements in AI/ML and evaluate their applicability to business challenges.
Qualifications
- Bachelors degree in Computer Science Engineering or related field (Masters preferred).
- 6 years of experience across Artificial Intelligence (AI) / Machine Learning (ML) engineering data engineering and MLOps implementation including:
- o Designing and deploying production-grade ML systems.
- o Building scalable data pipelines and ML workflows.
- o Managing model lifecycle in cloud environments.
- Proficient in Python and familiar with ML frameworks such as TensorFlow PyTorch and Scikit-learn.
- Strong understanding and experience in AWS Machine Learning Stack including:
- AWS SageMaker
- AWS Glue
- AWS Bedrock
- AWS Data Pipelines
- AWS Lambda Functions
- Experience with Generative AI model development builing LLM based applications with RAG.
- Experience implementing agentic frameworks (e.g. LangGraph AutoGen) and Model Context Protocol (MCP) for orchestration.
- Knowledge of React UI GraphDB and GenAI model performance evaluation
- Experience with CI/CD containerization (e.g. Docker) and orchestration tools (e.g. Kubernetes).
- Solid grasp of software engineering principles including testing version control (e.g. Git) and security.
- Familiarity with the Machine Learning Development Lifecycle (MDLC) and best practices for reproducibility and scalability.
- Strong communication and collaboration skills with experience working across technical and business teams.
- Ability to anticipate ambiguity and devise scalable solutions to address it.
Required Skills:
Agentic AIAWSArtificial Intelligence
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