

Aegistech
Site AI Engineer
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Site AI Engineer with a contract length of over 6 months, offering a pay rate of "unknown". It requires 4-6+ years in AI engineering, experience in construction or heavy process industries, and expertise in Python, SQL, and ETL design.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
909
-
ποΈ - Date
July 2, 2026
π - Duration
More than 6 months
-
ποΈ - Location
Hybrid
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
Fort Myers, FL
-
π§ - Skills detailed
#Airflow #Lean #GitHub #Infrastructure as Code (IaC) #Databricks #Python #REST (Representational State Transfer) #GraphQL #Scala #Data Integration #Leadership #GIT #AI (Artificial Intelligence) #SQL (Structured Query Language) #SharePoint #Programming #Automation #Azure #Cloud #ChatGPT #"ETL (Extract #Transform #Load)" #Alation #Stories #DevOps #Data Science #AWS (Amazon Web Services) #Data Engineering #Azure DevOps #Consulting #API (Application Programming Interface)
Role description
This position can be consulting or contract-to-hire or full-time. Candidates must be in the local geographic area as the position is hybrid 4-days in the office. This is a LONG-TERM project! Great opportunity with terrific company!
Responsibilities
β’ Opportunity hunting and workflow redesign β Lead Lean/Six Sigma discovery workshops; map value streams, assess process and data maturity, and log low-effort/high-impact AI use cases
β’ Process and data maturity assessment β Evaluate each job siteβs current workflows and underlying data; surface gaps that block AI adoption and develop phased improvement plans with Operations Excellence to establish the right process baseline before deploying agents
β’ Assess the market solutions β Evaluate off-the-shelf and platform tools; launch pilots, measure impact, and scale wins
β’ Rapid AI-agent builds β Convert user stories into production-ready agents in Copilot Studio/Power Apps/Automate, ChatGPT Enterprise, or code-first frameworks within days; wire them to Teams/SharePoint on the front end and Databricks Lakehouse or other sources on the back end
β’ Enterprise-grade engineering & LLMOps β Build RAG pipelines backed by Delta tables, Unity Catalog, and Databricks Vector Search; automate infra with GitHub Actions / Posit; monitor latency, cost, adoption, and drift
β’ .Data integrations β Partner with Data Engineering to design and maintain ETL pipelines, API integrations, and event-driven connectors feeding RAG and agents
β’ Cross-cloud orchestration β Blend OpenAI, Azure OpenAI, and AWS Bedrock behind secure custom connectors; package agents for seamless rollout
β’ Change enablement β Train crews, gather feedback, iterate, and track adoption and ROI metrics; apply influence model principles to embed agents into daily routines and SOPs, and track behavior change KPIs
β’ Stakeholder communication β Brief project leadership and clients on agent impact in clear business terms; contribute use cases and playbooks for βConstruction Site of the Future.
β’ βEscalation & hand-off β Draft clear user stories, data specs, and acceptance criteria for any complex solution that requires the central AI Solution Engineers or Data Engineering / Data Science team to lean in
Qualification:
β’ 4β6+ years in AI engineering/full-stack data applications or data science, including 2+ years building a production LLM/RAG solution
β’ Bachelorβs in CS, Engineering, Physics, or a related field; Masterβs preferred
β’ Prior hands-on work in construction or heavy process industries (manufacturing, oil & gas, chemicals) is a significant plus
β’ Demonstrated process excellence background (Lean/Six Sigma Green Belt or equivalent) with experience diagnosing process and data gaps and supporting change management plans with Operations Excellence
β’ Strong facilitation and communication skills
β’ Hands-on expertise with Copilot Studio, Power Apps/Automate, custom connectors, and CoE Toolkit governance
β’ Programming & data stack: Python, SQL, Databricks Lakehouse, vector store
β’ DevOps & IaC: GitHub Actions (or Azure DevOps) and Posit Workbench/Connect automation or comparable CI/CD tooling; strong Git/GitHub workflow discipline
β’ Integration & ETL skills: Foundational understanding of ETL/ELT design, Airflow or Databricks Workflows, and REST/GraphQL API development; proven collaboration with Data Engineering on source-to-lake and lake-to-agent pipeline
β’ Willing and able to travel and work on an active jobsite
This position can be consulting or contract-to-hire or full-time. Candidates must be in the local geographic area as the position is hybrid 4-days in the office. This is a LONG-TERM project! Great opportunity with terrific company!
Responsibilities
β’ Opportunity hunting and workflow redesign β Lead Lean/Six Sigma discovery workshops; map value streams, assess process and data maturity, and log low-effort/high-impact AI use cases
β’ Process and data maturity assessment β Evaluate each job siteβs current workflows and underlying data; surface gaps that block AI adoption and develop phased improvement plans with Operations Excellence to establish the right process baseline before deploying agents
β’ Assess the market solutions β Evaluate off-the-shelf and platform tools; launch pilots, measure impact, and scale wins
β’ Rapid AI-agent builds β Convert user stories into production-ready agents in Copilot Studio/Power Apps/Automate, ChatGPT Enterprise, or code-first frameworks within days; wire them to Teams/SharePoint on the front end and Databricks Lakehouse or other sources on the back end
β’ Enterprise-grade engineering & LLMOps β Build RAG pipelines backed by Delta tables, Unity Catalog, and Databricks Vector Search; automate infra with GitHub Actions / Posit; monitor latency, cost, adoption, and drift
β’ .Data integrations β Partner with Data Engineering to design and maintain ETL pipelines, API integrations, and event-driven connectors feeding RAG and agents
β’ Cross-cloud orchestration β Blend OpenAI, Azure OpenAI, and AWS Bedrock behind secure custom connectors; package agents for seamless rollout
β’ Change enablement β Train crews, gather feedback, iterate, and track adoption and ROI metrics; apply influence model principles to embed agents into daily routines and SOPs, and track behavior change KPIs
β’ Stakeholder communication β Brief project leadership and clients on agent impact in clear business terms; contribute use cases and playbooks for βConstruction Site of the Future.
β’ βEscalation & hand-off β Draft clear user stories, data specs, and acceptance criteria for any complex solution that requires the central AI Solution Engineers or Data Engineering / Data Science team to lean in
Qualification:
β’ 4β6+ years in AI engineering/full-stack data applications or data science, including 2+ years building a production LLM/RAG solution
β’ Bachelorβs in CS, Engineering, Physics, or a related field; Masterβs preferred
β’ Prior hands-on work in construction or heavy process industries (manufacturing, oil & gas, chemicals) is a significant plus
β’ Demonstrated process excellence background (Lean/Six Sigma Green Belt or equivalent) with experience diagnosing process and data gaps and supporting change management plans with Operations Excellence
β’ Strong facilitation and communication skills
β’ Hands-on expertise with Copilot Studio, Power Apps/Automate, custom connectors, and CoE Toolkit governance
β’ Programming & data stack: Python, SQL, Databricks Lakehouse, vector store
β’ DevOps & IaC: GitHub Actions (or Azure DevOps) and Posit Workbench/Connect automation or comparable CI/CD tooling; strong Git/GitHub workflow discipline
β’ Integration & ETL skills: Foundational understanding of ETL/ELT design, Airflow or Databricks Workflows, and REST/GraphQL API development; proven collaboration with Data Engineering on source-to-lake and lake-to-agent pipeline
β’ Willing and able to travel and work on an active jobsite






