

Pentangle Tech Services | P5 Group
Gen AI Specialist
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a "Gen AI Specialist" on a contract basis, offering a competitive pay rate. Key skills include experience with LLMs, AI-driven systems, and automation frameworks. A Bachelor's in Engineering or Computer Science is required.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
Unknown
-
ποΈ - Date
November 13, 2025
π - Duration
Unknown
-
ποΈ - Location
Unknown
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
Peachtree City, GA
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π§ - Skills detailed
#Databases #GCP (Google Cloud Platform) #Datasets #Docker #AI (Artificial Intelligence) #Cloud #Langchain #Security #Compliance #AWS (Amazon Web Services) #Azure #ML (Machine Learning) #Process Automation #SageMaker #Automation #AWS SageMaker #Computer Science
Role description
Job Description & Skill Requirement:
Core Responsibilities
β’ Design and build advanced AI-driven systems utilizing LLMs (e.g., Azure OpenAI GPT
Models, Claude, Llama, Mistral, Gemini, and open-source models) for tasks such as text
understanding, generation, summarization, and contextual reasoning within engineering
workflows.
β’ Architect and deploy agentic pipelines (multi-agent systems, autonomous LLM agents,
chain-of-thought/reasoning systems) for process automation, decision support, and
engineering knowledge orchestration.
β’ Develop and implement Advanced Retrieval-Augmented Generation (RAG) solutions β
combining LLMs with vector databases, search engines, and enterprise knowledge sources
for high-fidelity document analysis and Q&A.
β’ End-to-End automation of complex human-in-the-loop processes by chaining LLMs, expert
systems, and external tools using orchestration frameworks (such as LangChain,
LlamaIndex, Haystack, CrewAI, etc.).
β’ Evaluate, select, and integrate modern and emerging AI tools, APIs, and infrastructure
(LLMOps, vector stores, document loaders, prompt management, agents frameworks, etc).
β’ Fine-tune, deploy, and monitor LLMs on private/in-house datasets to solve unique domain
challenges and maintain compliance/privacy.
β’ Stay current with the fast-evolving AI landscape (open weights, small/efficient models,
guardrails, synthetic data, evaluation techniques, multimodal models, etc.), and bring new
approaches into the organization.
Preferred:
β’ Experience optimizing for model cost, latency, reliability, and scaling in production.
β’ Understanding of privacy, security, and compliance in LLM/AI applications (PII scrubbers,
access controls, audit trails).
β’ Experience orchestrating multi-agent/agentic workflows (CrewAI, AutoGen, OpenAgents,
etc.).
β’ Familiarity with CI/CD for AI pipelines, containerization (Docker), and cloud AI services
(Azure ML, AWS Sagemaker, GCP Vertex).
Qualification:
β’ Bachelorβs in Electrical, Electronics, Computer science or Mechanical Engineering
Job Description & Skill Requirement:
Core Responsibilities
β’ Design and build advanced AI-driven systems utilizing LLMs (e.g., Azure OpenAI GPT
Models, Claude, Llama, Mistral, Gemini, and open-source models) for tasks such as text
understanding, generation, summarization, and contextual reasoning within engineering
workflows.
β’ Architect and deploy agentic pipelines (multi-agent systems, autonomous LLM agents,
chain-of-thought/reasoning systems) for process automation, decision support, and
engineering knowledge orchestration.
β’ Develop and implement Advanced Retrieval-Augmented Generation (RAG) solutions β
combining LLMs with vector databases, search engines, and enterprise knowledge sources
for high-fidelity document analysis and Q&A.
β’ End-to-End automation of complex human-in-the-loop processes by chaining LLMs, expert
systems, and external tools using orchestration frameworks (such as LangChain,
LlamaIndex, Haystack, CrewAI, etc.).
β’ Evaluate, select, and integrate modern and emerging AI tools, APIs, and infrastructure
(LLMOps, vector stores, document loaders, prompt management, agents frameworks, etc).
β’ Fine-tune, deploy, and monitor LLMs on private/in-house datasets to solve unique domain
challenges and maintain compliance/privacy.
β’ Stay current with the fast-evolving AI landscape (open weights, small/efficient models,
guardrails, synthetic data, evaluation techniques, multimodal models, etc.), and bring new
approaches into the organization.
Preferred:
β’ Experience optimizing for model cost, latency, reliability, and scaling in production.
β’ Understanding of privacy, security, and compliance in LLM/AI applications (PII scrubbers,
access controls, audit trails).
β’ Experience orchestrating multi-agent/agentic workflows (CrewAI, AutoGen, OpenAgents,
etc.).
β’ Familiarity with CI/CD for AI pipelines, containerization (Docker), and cloud AI services
(Azure ML, AWS Sagemaker, GCP Vertex).
Qualification:
β’ Bachelorβs in Electrical, Electronics, Computer science or Mechanical Engineering






