AI Integration Engineer

MedlytixRoswell, GA
2d

About The Position

We're seeking an AI Integration Engineer with a strong data engineering foundation to design and build the data infrastructure that powers our AI-driven automation and business intelligence initiatives. This role sits at the intersection of data engineering, API development, and AI, focusing on creating robust data exchange systems and multi-agent AI workflows that replace legacy processes. You'll build systems where AI agents and humans collaborate through bidirectional work delegation-both for our internal operations and the client solutions we deliver.

Requirements

  • Data Engineering: 3+ years of experience with modern data stack (dbt, Airflow, Spark, etc.)
  • API Development: Strong proficiency in Python and similar languages for API development
  • Database Expertise: Deep knowledge of SQL and NoSQL databases (PostgreSQL, MongoDB, Redis, etc.)
  • Cloud Platforms: Experience with AWS, GCP, or Azure data and AI services
  • API Technologies: REST, GraphQL, gRPC, WebSockets, message queues (Kafka, RabbitMQ)
  • AI/ML Familiarity: Understanding of LLM APIs (OpenAI, Anthropic, etc.), prompt engineering, RAG systems, and vector databases (Pinecone, Weaviate, Chroma)

Nice To Haves

  • Experience with AI agent frameworks (LangChain, LlamaIndex, Pydantic AI, AutoGen, CrewAI)
  • Knowledge of API management platforms (Kong, Apigee, AWS API Gateway)
  • Familiarity with containerization and orchestration (Docker, Kubernetes)
  • Experience with event-driven architectures and microservices
  • Understanding of data security, encryption, and compliance requirements (GDPR, HIPAA, PHI, etc.)
  • Background in DataOps, MLOps, or DevOps practices
  • Familiarity with WASM based tools and design patterns.

Responsibilities

  • Design, develop, and maintain scalable RESTful for data exchange between systems
  • Build real-time data pipelines and streaming architectures to support AI agent operations
  • Implement API gateways, rate limiting, authentication, and security best practices
  • Create comprehensive API documentation and integration guides for internal and external stakeholders
  • Monitor API performance, optimize response times, and ensure high availability
  • Integrate and orchestrate AI agents (LLMs, ML models, autonomous agents) into business workflows
  • Design and implement agent-to-agent communication protocols and data handoffs
  • Build middleware and connectors to enable AI agents to access enterprise data sources
  • Develop feedback loops and monitoring systems for AI agent performance
  • Create automated workflows that combine multiple AI capabilities (RAG systems, function calling, multi-agent systems)
  • Maintain and optimize data warehouses, data lakes, and vector databases
  • Build ETL/ELT pipelines that prepare data for AI consumption
  • Implement data quality checks, validation, and governance frameworks
  • Design data models that support both analytical queries and AI agent operations
  • Manage structured and unstructured data storage solutions
  • Collaborate with BI teams to expose data through APIs for dashboards and reporting
  • Build data APIs that serve real-time metrics and KPIs
  • Create data aggregation services that support analytical workloads
  • Enable self-service data access through well-documented APIs and MCP servers
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