

Senior AI Engineer Lead
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Senior AI Engineer Lead, remote for 12+ months, with a pay rate of "unknown." Key skills include Python, CI/CD, AI/ML frameworks, and experience with GenAI solutions. Familiarity with enterprise integrations, observability tools, and Terraform is preferred.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
-
ποΈ - Date discovered
September 25, 2025
π - Project duration
More than 6 months
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ποΈ - Location type
Remote
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π - Contract type
Unknown
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π - Security clearance
Unknown
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π - Location detailed
United States
-
π§ - Skills detailed
#Terraform #GitLab #Langchain #Observability #Data Engineering #Documentation #Infrastructure as Code (IaC) #Monitoring #GitHub #Workday #React #Agile #Leadership #AI (Artificial Intelligence) #ML (Machine Learning) #Cloud #Strategy #Databases #GCP (Google Cloud Platform) #Python #Logging
Role description
AI Pod Team Lead β GenAI & RAG Solutions
Remote (US-Based) | 12+ Months (Extension Likely) | Full-Time, 40 hrs/week
Overview
We are partnering with a Fortune 500 healthcare organization that is accelerating AI delivery across its business units. They are building a dedicated AI Pod team focused on Generative AI (GenAI) and Retrieval-Augmented Generation (RAG) use cases, with more than 90 opportunities identified on GCP alone. This is a hands-on leadership role where you will shape end-to-end AI solutions, drive prioritization of use cases, and deliver measurable value in fast-paced, agile increments.
What Youβll Do
β’ Lead a 5-person pod to design, build, and deploy AI Agents, Chatbots, and Assistants using frameworks like LangChain, LangGraph, CrewAI, and Google ADK.
β’ Implement RAG architecture, observability, and responsible AI practices.
β’ Deliver full-stack solutions (Python, JS/TS, React, Node.js).
β’ Ensure CI/CD, infrastructure as code (Terraform), and monitoring are in place.
β’ Work closely with business stakeholders to prioritize and align delivery with use cases.
β’ Drive integrations across enterprise platforms (Salesforce, Workday, ServiceNow, O365, Gleam).
β’ Take proof-of-concepts to production-ready solutions.
β’ Bring an end-to-end perspective, integrating all components into a unified solution rather than leaving each engineer to solve only their part.
What Weβre Looking For
β’ Hands-on leader with the ability to both guide the team and dive deep into coding/architecture.
β’ Strong experience in Python, CI/CD (GitHub/GitLab), and AI/ML frameworks.
β’ Familiarity with LLMs/APIs such as Gemini, Claude, OpenAI, or Llama; and vector databases (Pinecone, AlloyDB, PGVector).
β’ Background in building and scaling AI Agents/Assistants with GenAI frameworks.
β’ Knowledge of observability and monitoring tools (LangSmith, Arize, GCP cloud logging).
β’ Integration expertise with large enterprise tools (especially Salesforce).
β’ Bonus: Terraform, front-end/UI skills (React/Node.js), or data engineering.
Expectations
β’ Sprint-based execution with measurable velocity.
β’ Ramp-up and deliver value within the first 2β3 months.
β’ Ability to translate complex business requirements into production-grade AI solutions.
β’ Strong documentation, communication, and mentorship skills.
β’ Curious, adaptable, and eager to drive innovation at scale.
Why Join?
β’ Work on 90+ AI use cases across multiple domains.
β’ Be part of the first AI Pod with the opportunity to grow into multiple future pods.
β’ Collaborate with top engineers while helping shape enterprise AI strategy.
β’ Long-term project (12 months, with likely extension for years).
AI Pod Team Lead β GenAI & RAG Solutions
Remote (US-Based) | 12+ Months (Extension Likely) | Full-Time, 40 hrs/week
Overview
We are partnering with a Fortune 500 healthcare organization that is accelerating AI delivery across its business units. They are building a dedicated AI Pod team focused on Generative AI (GenAI) and Retrieval-Augmented Generation (RAG) use cases, with more than 90 opportunities identified on GCP alone. This is a hands-on leadership role where you will shape end-to-end AI solutions, drive prioritization of use cases, and deliver measurable value in fast-paced, agile increments.
What Youβll Do
β’ Lead a 5-person pod to design, build, and deploy AI Agents, Chatbots, and Assistants using frameworks like LangChain, LangGraph, CrewAI, and Google ADK.
β’ Implement RAG architecture, observability, and responsible AI practices.
β’ Deliver full-stack solutions (Python, JS/TS, React, Node.js).
β’ Ensure CI/CD, infrastructure as code (Terraform), and monitoring are in place.
β’ Work closely with business stakeholders to prioritize and align delivery with use cases.
β’ Drive integrations across enterprise platforms (Salesforce, Workday, ServiceNow, O365, Gleam).
β’ Take proof-of-concepts to production-ready solutions.
β’ Bring an end-to-end perspective, integrating all components into a unified solution rather than leaving each engineer to solve only their part.
What Weβre Looking For
β’ Hands-on leader with the ability to both guide the team and dive deep into coding/architecture.
β’ Strong experience in Python, CI/CD (GitHub/GitLab), and AI/ML frameworks.
β’ Familiarity with LLMs/APIs such as Gemini, Claude, OpenAI, or Llama; and vector databases (Pinecone, AlloyDB, PGVector).
β’ Background in building and scaling AI Agents/Assistants with GenAI frameworks.
β’ Knowledge of observability and monitoring tools (LangSmith, Arize, GCP cloud logging).
β’ Integration expertise with large enterprise tools (especially Salesforce).
β’ Bonus: Terraform, front-end/UI skills (React/Node.js), or data engineering.
Expectations
β’ Sprint-based execution with measurable velocity.
β’ Ramp-up and deliver value within the first 2β3 months.
β’ Ability to translate complex business requirements into production-grade AI solutions.
β’ Strong documentation, communication, and mentorship skills.
β’ Curious, adaptable, and eager to drive innovation at scale.
Why Join?
β’ Work on 90+ AI use cases across multiple domains.
β’ Be part of the first AI Pod with the opportunity to grow into multiple future pods.
β’ Collaborate with top engineers while helping shape enterprise AI strategy.
β’ Long-term project (12 months, with likely extension for years).