Please double check you have the right level of experience and qualifications by reading the full overview of this opportunity below.
Title : GenAI Engineer - Agentic AI & Cloud Engineering
Location
: Rockville, MD or McLean, VA
Target Start Date :
ASAP
Type : contract
Pay
Rate : DOE
We are seeking a hands-on GenAI Engineer to help design, build, and productionize enterprise AI solutions focused on agentic systems, LLM-powered workflows, and intelligent automation platforms. This role is centered on building scalable AI tools and frameworks that transform proof-of-concepts into production-ready applications across the organization.
The ideal candidate combines strong software engineering fundamentals with deep hands-on experience building AI agents, RAG pipelines, MCP integrations, and cloud-native GenAI applications. This is an engineering-first role for someone who actively codes, architects solutions, and thrives in fast-moving AI environments.
This position contributes throughout the software development lifecycle, from architecture and prototyping through deployment, optimization, and operational support.
Key ResponsibilitiesGenAI & Agentic System Development
Design and build LLM-powered agent systems using frameworks such as:
LangChain
LangGraph
AWS Strands Agents SDK
or equivalent agent orchestration platforms
Develop and productionize:
AI assistants
autonomous and semi-autonomous agents
intelligent workflow automation tools
MCP-integrated systems
RAG-based enterprise search and retrieval solutions
Build agent harness architectures that combine:
LLM reasoning
deterministic execution
tool orchestration
structured output validation
guardrails and fallback handling
Implement:
agent memory and context management
tool routing and orchestration
API integrations
vector search and retrieval workflows
secure execution tracing and auditing
Partner with teams to take POCs and experimental AI concepts into production-scale initiatives
Help drive internal adoption of AI tooling and identify opportunities to expand GenAI capabilities across engineering teams
AI Platform Engineering & Cloud Infrastructure
Build scalable AI applications and services on AWS cloud infrastructure
Develop backend services and APIs supporting agent workflows and AI tooling
Engineer cloud-native AI solutions leveraging:
AWS Bedrock
Lambda
Step Functions
S3
EMR
EKS/ECS
API Gateway
Contribute to CI/CD pipelines, infrastructure automation, observability, and deployment processes
Ensure secure handling of enterprise and sensitive data within AI systems and workflows
Data & Retrieval Engineering
Build and optimize retrieval pipelines supporting GenAI applications and RAG architectures
Develop SQL and Python-based processing for large-scale datasets and retrieval workflows
Work with high-volume cloud data environments and distributed processing systems
Support structured and unstructured data ingestion for AI-powered applications
Required Technical SkillsGenerative AI & Agentic Systems
Hands-on experience building:
AI agents
agentic workflows
LLM-powered applications
RAG pipelines
Strong understanding of:
prompt engineering
memory architectures
context management
tool usage and orchestration
verification and guardrail patterns
Experience integrating with foundation models such as:
Anthropic Claude
OpenAI models
Amazon Nova
or equivalent LLM platforms
Experience communicating with and integrating:
MCP servers
APIs
external tools
enterprise data sources
Programming & Software Engineering
Strong hands-on coding ability in:
Python (primary)
SQL
Ability to write:
modular
maintainable
production-quality code
Experience with:
REST APIs
backend engineering
automation frameworks
test automation
CI/CD pipelines
Cloud & Infrastructure
Strong AWS experience including:
Bedrock
Lambda
S3
EMR
Step Functions
CloudWatch
EKS/ECS
Experience with:
Docker
Kubernetes
Infrastructure as Code
GitLab CI / Jenkins / GitHub Actions
AI Engineering Tooling
Experience using AI-assisted engineering tools such as:
Amazon Q Developer
GitHub Copilot
Claude
ChatGPT
Familiarity with AI-assisted software development workflows and rapid prototyping approaches
What Success Looks Like
Deeply hands-on with GenAI engineering
Comfortable building systems from concept through production deployment
Strong technical depth with the ability to rapidly experiment and iterate
Able to bridge AI concepts, engineering implementation, and scalable enterprise adoption
Thrives in highly collaborative, innovation-focused environments
Nice to Have
Vector databases:
Pinecone
FAISS
OpenSearch
Model tuning / fine-tuning:
LoRA
PEFT
managed tuning platforms
Observability tooling:
Grafana
Prometheus
ELK stack
Experience working in regulated or enterprise-scale environments
Education & Experience
Bachelor’s degree in Computer Science, Engineering, Data Science, Information Systems, or related field
Experience building enterprise-grade software solutions and cloud-native applications
Strong communication and collaboration skills
Ability to work in fast-paced, rapidly evolving technical environments
Welcome to ConsultNet, a premier national provider of technology talent and solutions. Our expertise spans across project services, contract-to-hire, direct search, and managed services onshore, nearshore, and hybrid. For over 25 years, we have connected thousands of consultants with meaningful roles through a personal, communication-driven approach, partnering with a diverse client base to build high-performing teams and create lasting impact. Our comprehensive service offerings cover a wide range of technology and engineering positions across key markets nationwide. xsgimln Learn more at
.
We champion equality and inclusivity, proudly supporting an Equal Opportunity Employer policy. We welcome applicants regardless of Race, Color, Religion, Sex, Sexual Orientation, Gender Identity, National Origin, Age, Genetic Information, Disability, Protected Veteran Status, or any other status protected by law.