

Neutrino Advisory, an Inc 5000 Company
Senior AI Engineer
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Senior AI Engineer with a contract length of "unknown," offering a pay rate of "unknown." It requires strong experience in Generative AI, AWS, and expertise in OpenSearch, Neptune, and Databricks. Certifications in AWS are mandatory.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
Unknown
-
ποΈ - Date
June 19, 2026
π - Duration
Unknown
-
ποΈ - Location
Unknown
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
Irvine, CA
-
π§ - Skills detailed
#Programming #Compliance #AWS (Amazon Web Services) #Monitoring #Python #Indexing #Data Ingestion #Data Privacy #Data Pipeline #Deployment #Metadata #OpenSearch #Data Governance #Data Engineering #Amazon Neptune #DynamoDB #Observability #Security #ML (Machine Learning) #Spark (Apache Spark) #Apache Spark #API (Application Programming Interface) #Databricks #Computer Science #Classification #Kubernetes #Graph Databases #Data Science #Docker #Redis #HBase #Databases #Scala #AI (Artificial Intelligence) #Data Access #Data Quality #Langchain #"ETL (Extract #Transform #Load)"
Role description
We are seeking a Senior AI Engineer to design, build, and scale a production-grade Generative AI and Data Platform on AWS. The role focuses on enabling LLM-powered capabilities through vector search, graph-based knowledge systems, and governed data pipelines.
The ideal candidate will own end-to-end delivery across the AI lifecycle, including:
β’ Data ingestion and knowledge curation
β’ Embeddings and retrieval systems
β’ Backend services and APIs
β’ CI/CD pipelines and deployment
This role will closely partner with product and engineering teams to operationalize AI capabilities in externally facing applications and drive evolution toward agentic AI systems.
Key Responsibilities:
1. GenAI Enablement & Integration
Build and operationalize LLM-powered applications using:
β’ Retrieval-Augmented Generation (RAG)
β’ Embeddings pipelines
β’ Prompt orchestration and evaluation frameworks
Design and implement vector search systems using Amazon OpenSearch
Develop graph-based knowledge systems using Amazon Neptune for relationships, lineage, and explainability
Integrate supporting infrastructure:
β’ Amazon ElastiCache (Redis) for session state and caching
β’ DynamoDB for scalable, low-latency data access
Implement agentic workflows using frameworks such as:
β’ LangGraph, AutoGen, CrewAI (or equivalent)
Integrate with LLM frameworks like:
β’ LangChain, LlamaIndex (tool calling, retrieval orchestration, context management)
Define standards for:
β’ Tool integration
β’ Context-sharing patterns (MCP-style designs)
Evaluate LLM models and retrieval strategies across:
β’ Latency
β’ Cost
β’ Accuracy
β’ Context limitations
1. Data Pipelines & Knowledge Engineering
Design and build scalable data pipelines using Databricks and Apache Spark
Implement:
β’ Data ingestion and transformation pipelines
β’ Document processing (chunking, metadata tagging)
β’ Embedding generation and indexing
Ensure high data quality standards:
β’ Validation, completeness, consistency, monitoring
Implement data governance frameworks:
β’ Data classification and access controls
β’ Retention policies
β’ Auditability and lineage tracking
1. Backend Services & APIs
Develop backend services exposing AI capabilities through secure and scalable APIs
Define best practices for:
β’ API contracts and versioning
β’ Reliability (retry logic, circuit breakers, idempotency)
Enable reusability of platform capabilities across teams and applications
1. Deployment, MLOps & Operational Excellence
Build and manage CI/CD pipelines for AI and data workloads
Deploy production systems using:
β’ Docker (containerization)
β’ Kubernetes (orchestration)
Implement deployment strategies:
β’ Blue/green deployments
β’ Canary releases
β’ Rollback strategies
β’ Feature flags
Ensure system reliability through:
β’ Monitoring (latency, failures, cost, data freshness)
β’ Alerting and observability
β’ Secrets management and least-privilege access
Optimize platform performance and cost
1. LLM Observability, Evaluation & Quality
Define and track GenAI quality metrics:
β’ Grounding / faithfulness
β’ Retrieval relevance
β’ Response consistency
β’ Latency and cost per request
Implement:
β’ Prompt/version tracking
β’ Offline evaluation pipelines
β’ Continuous improvement workflows
1. LLM Security, Safety & Compliance
Implement secure AI systems with:
β’ Access control and authentication
β’ Data protection policies
β’ Responsible AI guardrails
Ensure compliance with best practices in:
β’ AI safety
β’ Data privacy
β’ Monitoring and auditability
Required Skills:
Strong experience in Generative AI / LLM systems (RAG, embeddings, prompt engineering)
Hands-on experience with AWS ecosystem
Expertise in:
β’ OpenSearch (vector search)
β’ Neptune (graph databases)
β’ DynamoDB and Redis (ElastiCache)
Experience with:
β’ LangChain / LlamaIndex
β’ Agentic AI frameworks (LangGraph, AutoGen, CrewAI)
Strong programming skills (Python preferred)
Experience with Databricks and Apache Spark
Solid understanding of:
β’ Data pipelines
β’ Distributed systems
β’ API design
Qualifications:
Bachelorβs or Masterβs degree in:
β’ Computer Science / Data Science / AI / related field
Proven experience building production-grade AI platforms and systems
Strong background in end-to-end AI/ML lifecycle delivery
AWS Certified Solutions Architect, AWS Certified Machine Learning Specialty OR AWS Data Engineer Certification
We are an equal opportunity employer and value diversity at our company. We do not discriminate on the basis of race, religion, color, national origin, sex, gender, gender expression, sexual orientation, age, marital status, veteran status, or disability status. We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform crucial job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.
We are seeking a Senior AI Engineer to design, build, and scale a production-grade Generative AI and Data Platform on AWS. The role focuses on enabling LLM-powered capabilities through vector search, graph-based knowledge systems, and governed data pipelines.
The ideal candidate will own end-to-end delivery across the AI lifecycle, including:
β’ Data ingestion and knowledge curation
β’ Embeddings and retrieval systems
β’ Backend services and APIs
β’ CI/CD pipelines and deployment
This role will closely partner with product and engineering teams to operationalize AI capabilities in externally facing applications and drive evolution toward agentic AI systems.
Key Responsibilities:
1. GenAI Enablement & Integration
Build and operationalize LLM-powered applications using:
β’ Retrieval-Augmented Generation (RAG)
β’ Embeddings pipelines
β’ Prompt orchestration and evaluation frameworks
Design and implement vector search systems using Amazon OpenSearch
Develop graph-based knowledge systems using Amazon Neptune for relationships, lineage, and explainability
Integrate supporting infrastructure:
β’ Amazon ElastiCache (Redis) for session state and caching
β’ DynamoDB for scalable, low-latency data access
Implement agentic workflows using frameworks such as:
β’ LangGraph, AutoGen, CrewAI (or equivalent)
Integrate with LLM frameworks like:
β’ LangChain, LlamaIndex (tool calling, retrieval orchestration, context management)
Define standards for:
β’ Tool integration
β’ Context-sharing patterns (MCP-style designs)
Evaluate LLM models and retrieval strategies across:
β’ Latency
β’ Cost
β’ Accuracy
β’ Context limitations
1. Data Pipelines & Knowledge Engineering
Design and build scalable data pipelines using Databricks and Apache Spark
Implement:
β’ Data ingestion and transformation pipelines
β’ Document processing (chunking, metadata tagging)
β’ Embedding generation and indexing
Ensure high data quality standards:
β’ Validation, completeness, consistency, monitoring
Implement data governance frameworks:
β’ Data classification and access controls
β’ Retention policies
β’ Auditability and lineage tracking
1. Backend Services & APIs
Develop backend services exposing AI capabilities through secure and scalable APIs
Define best practices for:
β’ API contracts and versioning
β’ Reliability (retry logic, circuit breakers, idempotency)
Enable reusability of platform capabilities across teams and applications
1. Deployment, MLOps & Operational Excellence
Build and manage CI/CD pipelines for AI and data workloads
Deploy production systems using:
β’ Docker (containerization)
β’ Kubernetes (orchestration)
Implement deployment strategies:
β’ Blue/green deployments
β’ Canary releases
β’ Rollback strategies
β’ Feature flags
Ensure system reliability through:
β’ Monitoring (latency, failures, cost, data freshness)
β’ Alerting and observability
β’ Secrets management and least-privilege access
Optimize platform performance and cost
1. LLM Observability, Evaluation & Quality
Define and track GenAI quality metrics:
β’ Grounding / faithfulness
β’ Retrieval relevance
β’ Response consistency
β’ Latency and cost per request
Implement:
β’ Prompt/version tracking
β’ Offline evaluation pipelines
β’ Continuous improvement workflows
1. LLM Security, Safety & Compliance
Implement secure AI systems with:
β’ Access control and authentication
β’ Data protection policies
β’ Responsible AI guardrails
Ensure compliance with best practices in:
β’ AI safety
β’ Data privacy
β’ Monitoring and auditability
Required Skills:
Strong experience in Generative AI / LLM systems (RAG, embeddings, prompt engineering)
Hands-on experience with AWS ecosystem
Expertise in:
β’ OpenSearch (vector search)
β’ Neptune (graph databases)
β’ DynamoDB and Redis (ElastiCache)
Experience with:
β’ LangChain / LlamaIndex
β’ Agentic AI frameworks (LangGraph, AutoGen, CrewAI)
Strong programming skills (Python preferred)
Experience with Databricks and Apache Spark
Solid understanding of:
β’ Data pipelines
β’ Distributed systems
β’ API design
Qualifications:
Bachelorβs or Masterβs degree in:
β’ Computer Science / Data Science / AI / related field
Proven experience building production-grade AI platforms and systems
Strong background in end-to-end AI/ML lifecycle delivery
AWS Certified Solutions Architect, AWS Certified Machine Learning Specialty OR AWS Data Engineer Certification
We are an equal opportunity employer and value diversity at our company. We do not discriminate on the basis of race, religion, color, national origin, sex, gender, gender expression, sexual orientation, age, marital status, veteran status, or disability status. We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform crucial job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.






