AI engineer

Robotics Technologies LLC
Dallas, United States of America
2 days ago

Role details

Contract type
Temporary contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Dallas, United States of America

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Systems Engineering
Confluence
JIRA
Automation of Tests
Azure
Cloud Computing
Continuous Integration
Data Architecture
Data Manipulation Languages
Github
Python
OAuth
Object-Oriented Software Development
Performance Tuning
Role-Based Access Control
SQL Databases
Systems Integration
Retrieval-Augmented Generation
Large Language Models
Multi-Agent Systems
Prompt Engineering
Software Security
Generative AI
Backend
FastAPI
Containerization
Integration Tests
Kubernetes
Information Technology
Low Latency
Playwright
Atlassian Tools
Machine Learning Operations
REST
Automation Anywhere
Docker
Databricks

Job description

The candidate should be able to serve as the lead technical contributor for designing and deploying enterprise-grade AI systems. This role demands a senior AI engineer who can handle high-level architectural design and hands-on implementation of complex agentic workflows. The candidate will be responsible for building the "AIObserve" ecosystem, ensuring that probabilistic AI outputs are translated into deterministic, secure, and high-value business outcomes.

Core Responsibilities

  • Architecting Agentic Systems: Design and implement multi-agent systems using the Model Context Protocol (MCP) to enable seamless tool-calling across platforms like Atlassian and GitHub.
  • Enterprise RAG Implementation: Lead the development of sophisticated Retrieval-Augmented Generation (RAG) layers, integrating vector databases like Milvus with enterprise knowledge bases (Jira/Confluence).
  • Orchestration & Workflow Automation: Build and optimize backend services using FastAPI and Azure Bot Service to handle real-time message routing and automated ticket fulfillment.
  • High-Privilege Automation: Develop secure browser automation scripts using Python and Playwright to handle complex tasks such as RBAC validation and post-true-up process automation.
  • Security & RBAC Engineering: Engineer robust Role-Based Access Control (RBAC) within AI agents to ensure high-privilege operations are executed safely and within compliance.
  • Performance Tuning: Optimize system latency to ensure AI responses and backend acknowledgments meet strict enterprise thresholds (<7 seconds).
  • Architecting Observability Pipelines: Design and implement end-to-end telemetry for AI agents. This includes capturing not just system logs, but also LLM-specific traces (latency, token usage, and "hallucination" scores) to provide a 360-degree view of system health
  • LLMOps Infrastructure: Own the deployment lifecycle, including CI/CD for prompt engineering, automated testing of RAG retrieval accuracy, and monitoring for "model drift" in production.
  • Cross-functional Collaboration: Working with product managers, data scientists, and business stakeholders to translate needs into AI solutions.

Requirements

Do you have experience in Systems engineering?, Do you have a Bachelor's degree in statistics?, * BS/Advanced degree in quantitative fields: Computer Science, Data Science, Engineering, Business Analytics, Math/Statistics, or a related field

  • 7+ years of experience in applied AI engineering or related role with 2+ years in agentic development, and/or with a combination of context/prompt engineering
  • Expert-level Python proficiency with emphasis on modular, object-oriented code, strict typing, and rigorous unit/integration testing for production
  • Experience with building both conversational agents and workflow agentic processes in production
  • Applied experience with multiple LLM stacks/frameworks (e.g., OpenAI, Claude, Gemini, RAG pipelines), and agent orchestration systems (e.g., LangGraph, AutoGen, CrewAI, or LangChain building collaborative autonomous and complex AI workflows
  • Demonstrated comfort with prompt design strategies (chain-of-thought, few-shot) and context window optimization to ensure high-quality LLM outputs
  • Familiarity with cloud platforms (AWS/Azure), REST APIs, and containerization (Docker, K8s)
  • Experience implementing and managing Vector Databases (e.g., Pinecone, Milvus, Weaviate) for RAG (Retrieval-Augmented Generation) pipelines.
  • Experience with Azure bot services, Fast API, OAuth for API security is recommended.
  • Proficiency in Databricks and SQL (DDL/DML) driving scalable data architecture and holistically integrating prompt designs, vector databases, and memory strategies to deliver advanced LLM solutions
  • Experience developing and applying state-of-the-art techniques for optimizing training and inference software to improve hardware utilization, latency, throughput, and cost
  • Passion for staying abreast of the latest AI research and AI systems, and judiciously applying novel techniques in production
  • Excellent communication and presentation skills, with the ability to articulate complex AI concepts to peers

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