

UNICOM Technologies Inc
Specialist II - Data Science
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Specialist II - Data Science, requiring a hybrid work arrangement (2-3 days onsite in Irvine, CA and 1 day in Downtown LA). The contract length is unspecified, with a pay rate of "unknown." Key skills include Generative AI, AWS services, and strong Python development. A Bachelor’s or Master’s in a relevant field is required, along with experience in data engineering, backend services, and MLOps. Preferred certifications include AWS Certified Solutions Architect or AWS Certified Machine Learning - Specialty.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
Unknown
-
🗓️ - Date
June 10, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
Hybrid
-
📄 - Contract
Unknown
-
🔒 - Security
Unknown
-
📍 - Location detailed
Los Angeles Metropolitan Area
-
🧠 - Skills detailed
#Data Ingestion #Classification #HBase #API (Application Programming Interface) #Data Enrichment #Microservices #Cloud #Amazon Neptune #Logging #Graph Databases #Indexing #Data Governance #Compliance #Redis #Scala #"ETL (Extract #Transform #Load)" #AWS (Amazon Web Services) #Computer Science #Docker #Knowledge Graph #Big Data #Observability #Data Pipeline #Langchain #OpenSearch #Python #Data Quality #Security #Data Access #Automated Testing #ML (Machine Learning) #Databases #Apache Spark #Spark (Apache Spark) #Data Science #Data Engineering #Deployment #Databricks #AI (Artificial Intelligence) #DynamoDB #Kubernetes #Metadata #Monitoring
Role description
Senior AI Engineer - Generative AI & Data Platform (AWS)
Hybrid
• 2-3 days per week onsite at the client’s Irvine CA office
• 1 day per week onsite at the client’s Downtown Los Angeles office
• 1 day remote
Position Overview
We are seeking a highly skilled Senior AI Engineer to lead the design, development, and operationalization of a production-grade Generative AI and Data Platform on AWS. This role will be responsible for building scalable AI solutions that leverage Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), vector search, knowledge graphs, and governed data pipelines.
The ideal candidate will have deep expertise across the complete AI lifecycle, including data ingestion, knowledge engineering, embeddings generation, retrieval systems, backend API development, MLOps, and production deployment. This individual will work closely with product, engineering, and platform teams to enable AI-powered capabilities in customer-facing applications while helping evolve the organization toward agentic AI architectures.
Key Responsibilities 1. Generative AI Platform Development & Integration
• Design, build, and operationalize LLM-powered applications using:
• Retrieval-Augmented Generation (RAG)
• Embedding pipelines
• Prompt orchestration frameworks
• Evaluation and experimentation frameworks
• Develop and optimize vector search solutions using Amazon OpenSearch.
• Design and implement graph-based knowledge systems using Amazon Neptune to support:
• Relationship modeling
• Knowledge lineage
• Explainability
• Knowledge discovery
• Integrate supporting AWS services including:
• Amazon ElastiCache (Redis) for caching and session management
• Amazon DynamoDB for low-latency, scalable data access
• Build agentic AI workflows using frameworks such as:
• LangGraph
• AutoGen
• CrewAI
• Equivalent agent orchestration frameworks
• Implement LLM application frameworks including:
• LangChain
• LlamaIndex
• Establish standards for:
• Tool integration
• Context management
• Shared memory patterns
• MCP-style architectures and context-sharing mechanisms
• Evaluate and optimize:
• Model performance
• Retrieval effectiveness
• Latency
• Cost efficiency
• Context window utilization
1. Data Engineering & Knowledge Management
• Design and develop scalable data pipelines using Databricks and Apache Spark.
• Build and maintain:
• Data ingestion pipelines
• Data transformation workflows
• Document processing pipelines
• Metadata enrichment processes
• Embedding generation and indexing workflows
• Implement document preparation techniques including:
• Chunking strategies
• Metadata tagging
• Semantic enrichment
• Ensure high standards of data quality through:
• Validation frameworks
• Completeness checks
• Consistency monitoring
• Data observability
• Implement data governance controls including:
• Data classification
• Access management
• Retention policies
• Auditability
• Lineage tracking
1. Backend Services & API Engineering
• Design and develop scalable backend services exposing AI platform capabilities.
• Build secure, reusable APIs and microservices for enterprise applications.
• Establish best practices for:
• API design
• Versioning
• Reliability
• Retry mechanisms
• Circuit breakers
• Idempotent operations
• Enable platform reusability across multiple teams and business applications.
1. MLOps, Deployment & Operational Excellence
• Design and maintain CI/CD pipelines for AI, ML, and data workloads.
• Deploy and manage production systems using:
• Docker
• Kubernetes
• Implement deployment strategies including:
• Blue-Green Deployments
• Canary Releases
• Rollback Mechanisms
• Feature Flagging
• Ensure platform reliability through:
• Monitoring
• Logging
• Alerting
• Observability
• Cost tracking
• Data freshness monitoring
• Implement:
• Secrets management
• Role-based access controls
• Least-privilege security practices
• Continuously optimize platform performance, scalability, and cost.
1. LLM Evaluation, Observability & Quality Engineering
• Define and measure AI quality metrics including:
• Grounding/Faithfulness
• Retrieval relevance
• Response consistency
• Hallucination rates
• Latency
• Cost per request
• Build and maintain:
• Prompt versioning frameworks
• Offline evaluation pipelines
• Automated testing processes
• Continuous improvement workflows
• Drive AI quality improvements through experimentation and monitoring.
1. AI Security, Governance & Compliance
• Implement secure AI solutions with:
• Authentication
• Authorization
• Access controls
• Data protection mechanisms
• Establish responsible AI guardrails.
• Ensure compliance with organizational and industry standards related to:
• AI safety
• Privacy
• Governance
• Monitoring
• Auditability
Required Qualifications Education
Bachelor’s or Master’s degree in:
• Computer Science
• Data Science
• Artificial Intelligence
• Machine Learning
• Related technical discipline
Required Technical Skills Generative AI & LLMs
• Strong hands-on experience building production-grade Generative AI solutions.
• Expertise in:
• Retrieval-Augmented Generation (RAG)
• Embeddings
• Prompt engineering
• Retrieval optimization
AWS Cloud
Hands-on expertise with:
• Amazon OpenSearch (Vector Search)
• Amazon Neptune
• Amazon DynamoDB
• Amazon ElastiCache (Redis)
LLM Frameworks
Experience with:
• LangChain
• LlamaIndex
Agentic AI Frameworks
Hands-on experience with:
• LangGraph
• AutoGen
• CrewAI
• Similar agent orchestration frameworks
Data Engineering
Strong experience with:
• Databricks
• Apache Spark
• Large-scale data pipelines
• Embedding pipelines
Backend Engineering
• Strong Python development experience.
• Experience building scalable APIs and microservices.
• Strong understanding of distributed systems and service-oriented architectures.
Platform Engineering
Experience with:
• CI/CD pipelines
• Docker
• Kubernetes
• Production AI deployments
Preferred Qualifications
• Experience with AI evaluation and observability platforms.
• Experience implementing AI governance and compliance frameworks.
• Advanced Kubernetes and MLOps experience.
• Familiarity with:
• Model Context Protocol (MCP)
• Agent-based architectures
• Multi-agent systems
• Knowledge graph ecosystems
Domain Experience
Preferred experience in one or more of the following:
• AI/ML Platform Engineering
• Generative AI Applications
• Enterprise AI Platforms
• Data Platforms & Big Data Engineering
• Knowledge Management Systems
Certifications (Preferred)
One or more AWS certifications:
• AWS Certified Solutions Architect
• AWS Certified Machine Learning - Specialty
• AWS Certified Data Engineer
Soft Skills
• Strong analytical and problem-solving abilities.
• Excellent communication and stakeholder management skills.
• Ability to explain complex AI concepts to technical and non-technical audiences.
• Collaborative and cross-functional mindset.
• Strong ownership mentality with proactive execution.
• Ability to thrive in fast-paced, evolving environments.
Mandatory Skills Checklist
Candidates must demonstrate hands-on production experience in:
✓ Generative AI / LLMs (RAG, Embeddings, Prompt Engineering)
✓ AWS Cloud Services (OpenSearch, Neptune, DynamoDB, Redis/ElastiCache)
✓ Vector Search & Retrieval Systems
✓ Knowledge Graphs / Graph Databases (Amazon Neptune)
✓ LangChain and/or LlamaIndex
✓ Agentic AI Frameworks (LangGraph, AutoGen, CrewAI)
✓ Databricks & Apache Spark
✓ Python Backend Development & API Engineering
✓ Production Deployment using Docker and Kubernetes
✓ AI Platform Architecture and End-to-End Delivery
Senior AI Engineer - Generative AI & Data Platform (AWS)
Hybrid
• 2-3 days per week onsite at the client’s Irvine CA office
• 1 day per week onsite at the client’s Downtown Los Angeles office
• 1 day remote
Position Overview
We are seeking a highly skilled Senior AI Engineer to lead the design, development, and operationalization of a production-grade Generative AI and Data Platform on AWS. This role will be responsible for building scalable AI solutions that leverage Large Language Models (LLMs), Retrieval-Augmented Generation (RAG), vector search, knowledge graphs, and governed data pipelines.
The ideal candidate will have deep expertise across the complete AI lifecycle, including data ingestion, knowledge engineering, embeddings generation, retrieval systems, backend API development, MLOps, and production deployment. This individual will work closely with product, engineering, and platform teams to enable AI-powered capabilities in customer-facing applications while helping evolve the organization toward agentic AI architectures.
Key Responsibilities 1. Generative AI Platform Development & Integration
• Design, build, and operationalize LLM-powered applications using:
• Retrieval-Augmented Generation (RAG)
• Embedding pipelines
• Prompt orchestration frameworks
• Evaluation and experimentation frameworks
• Develop and optimize vector search solutions using Amazon OpenSearch.
• Design and implement graph-based knowledge systems using Amazon Neptune to support:
• Relationship modeling
• Knowledge lineage
• Explainability
• Knowledge discovery
• Integrate supporting AWS services including:
• Amazon ElastiCache (Redis) for caching and session management
• Amazon DynamoDB for low-latency, scalable data access
• Build agentic AI workflows using frameworks such as:
• LangGraph
• AutoGen
• CrewAI
• Equivalent agent orchestration frameworks
• Implement LLM application frameworks including:
• LangChain
• LlamaIndex
• Establish standards for:
• Tool integration
• Context management
• Shared memory patterns
• MCP-style architectures and context-sharing mechanisms
• Evaluate and optimize:
• Model performance
• Retrieval effectiveness
• Latency
• Cost efficiency
• Context window utilization
1. Data Engineering & Knowledge Management
• Design and develop scalable data pipelines using Databricks and Apache Spark.
• Build and maintain:
• Data ingestion pipelines
• Data transformation workflows
• Document processing pipelines
• Metadata enrichment processes
• Embedding generation and indexing workflows
• Implement document preparation techniques including:
• Chunking strategies
• Metadata tagging
• Semantic enrichment
• Ensure high standards of data quality through:
• Validation frameworks
• Completeness checks
• Consistency monitoring
• Data observability
• Implement data governance controls including:
• Data classification
• Access management
• Retention policies
• Auditability
• Lineage tracking
1. Backend Services & API Engineering
• Design and develop scalable backend services exposing AI platform capabilities.
• Build secure, reusable APIs and microservices for enterprise applications.
• Establish best practices for:
• API design
• Versioning
• Reliability
• Retry mechanisms
• Circuit breakers
• Idempotent operations
• Enable platform reusability across multiple teams and business applications.
1. MLOps, Deployment & Operational Excellence
• Design and maintain CI/CD pipelines for AI, ML, and data workloads.
• Deploy and manage production systems using:
• Docker
• Kubernetes
• Implement deployment strategies including:
• Blue-Green Deployments
• Canary Releases
• Rollback Mechanisms
• Feature Flagging
• Ensure platform reliability through:
• Monitoring
• Logging
• Alerting
• Observability
• Cost tracking
• Data freshness monitoring
• Implement:
• Secrets management
• Role-based access controls
• Least-privilege security practices
• Continuously optimize platform performance, scalability, and cost.
1. LLM Evaluation, Observability & Quality Engineering
• Define and measure AI quality metrics including:
• Grounding/Faithfulness
• Retrieval relevance
• Response consistency
• Hallucination rates
• Latency
• Cost per request
• Build and maintain:
• Prompt versioning frameworks
• Offline evaluation pipelines
• Automated testing processes
• Continuous improvement workflows
• Drive AI quality improvements through experimentation and monitoring.
1. AI Security, Governance & Compliance
• Implement secure AI solutions with:
• Authentication
• Authorization
• Access controls
• Data protection mechanisms
• Establish responsible AI guardrails.
• Ensure compliance with organizational and industry standards related to:
• AI safety
• Privacy
• Governance
• Monitoring
• Auditability
Required Qualifications Education
Bachelor’s or Master’s degree in:
• Computer Science
• Data Science
• Artificial Intelligence
• Machine Learning
• Related technical discipline
Required Technical Skills Generative AI & LLMs
• Strong hands-on experience building production-grade Generative AI solutions.
• Expertise in:
• Retrieval-Augmented Generation (RAG)
• Embeddings
• Prompt engineering
• Retrieval optimization
AWS Cloud
Hands-on expertise with:
• Amazon OpenSearch (Vector Search)
• Amazon Neptune
• Amazon DynamoDB
• Amazon ElastiCache (Redis)
LLM Frameworks
Experience with:
• LangChain
• LlamaIndex
Agentic AI Frameworks
Hands-on experience with:
• LangGraph
• AutoGen
• CrewAI
• Similar agent orchestration frameworks
Data Engineering
Strong experience with:
• Databricks
• Apache Spark
• Large-scale data pipelines
• Embedding pipelines
Backend Engineering
• Strong Python development experience.
• Experience building scalable APIs and microservices.
• Strong understanding of distributed systems and service-oriented architectures.
Platform Engineering
Experience with:
• CI/CD pipelines
• Docker
• Kubernetes
• Production AI deployments
Preferred Qualifications
• Experience with AI evaluation and observability platforms.
• Experience implementing AI governance and compliance frameworks.
• Advanced Kubernetes and MLOps experience.
• Familiarity with:
• Model Context Protocol (MCP)
• Agent-based architectures
• Multi-agent systems
• Knowledge graph ecosystems
Domain Experience
Preferred experience in one or more of the following:
• AI/ML Platform Engineering
• Generative AI Applications
• Enterprise AI Platforms
• Data Platforms & Big Data Engineering
• Knowledge Management Systems
Certifications (Preferred)
One or more AWS certifications:
• AWS Certified Solutions Architect
• AWS Certified Machine Learning - Specialty
• AWS Certified Data Engineer
Soft Skills
• Strong analytical and problem-solving abilities.
• Excellent communication and stakeholder management skills.
• Ability to explain complex AI concepts to technical and non-technical audiences.
• Collaborative and cross-functional mindset.
• Strong ownership mentality with proactive execution.
• Ability to thrive in fast-paced, evolving environments.
Mandatory Skills Checklist
Candidates must demonstrate hands-on production experience in:
✓ Generative AI / LLMs (RAG, Embeddings, Prompt Engineering)
✓ AWS Cloud Services (OpenSearch, Neptune, DynamoDB, Redis/ElastiCache)
✓ Vector Search & Retrieval Systems
✓ Knowledge Graphs / Graph Databases (Amazon Neptune)
✓ LangChain and/or LlamaIndex
✓ Agentic AI Frameworks (LangGraph, AutoGen, CrewAI)
✓ Databricks & Apache Spark
✓ Python Backend Development & API Engineering
✓ Production Deployment using Docker and Kubernetes
✓ AI Platform Architecture and End-to-End Delivery






