We are seeking a Full Stack Engineer with 5+ years of experience to design and
deliver end-to-end AI-powered applications, with a specific focus on deploying
and operationalizing Agentic Workflows in production. You will bridge the gap
between front-end user experiences and backend AI systems — building the
interfaces, APIs, data pipelines, and orchestration layers that bring
autonomous AI agents to life for enterprise users.
KEY RESPONSIBILITIES
Frontend Development
Design, build, and deploy full-stack web applications that expose agentic AI
capabilities to end users via intuitive interfaces.
Develop responsive, accessible UIs using React, Next.js, or Vue.js that
visualize agent reasoning steps, tool usage, and streaming outputs.
Implement real-time UI patterns (WebSockets, Server-Sent Events) to surface
live agent progress and intermediate results to users.
Build agent configuration and prompt management consoles for business users
to interact with and tune agentic systems.
Design component libraries and design systems that support multi-agent
interaction patterns, chat interfaces, and workflow dashboards.
Backend & Agentic Workflow Engineering
Build and deploy agentic workflow orchestration layers using LangGraph,
AutoGen, CrewAI, or custom orchestration frameworks.
Design and implement RESTful and GraphQL APIs that expose agent capabilities
to front-end applications and third-party integrations.
Develop backend services in Node.js and/or Python to manage agent state,
session memory, and tool-call execution pipelines.
Implement human-in-the-loop (HITL) approval workflows, escalation triggers,
and audit trails within agentic pipelines.
Build and manage MCP (Model Context Protocol) server integrations to expose
databases, APIs, and enterprise data as agent tools.
Integrate vector databases (Pinecone, Weaviate, pgvector) and knowledge
graph layers to support RAG - grounded agent responses.
Deployment & DevOps
Deploy agentic systems on cloud platforms (AWS / GCP / Azure) using
containerized services (Docker, Kubernetes, ECS/GKE).
Build CI/CD pipelines for full-stack applications and agent workflows with
automated testing, staging gates, and rollback support.
Implement observability stacks (logging, tracing, metrics) for both frontend
interactions and backend agent execution chains.
Manage infrastructure as code (Terraform, Pulumi) for repeatable, auditable
agentic system deployments.
Security, Governance & Quality
Apply security best practices for AI-powered applications: API
authentication, rate limiting, prompt injection defense, and output
validation.
Implement role-based access control (RBAC) and audit logging for agentic
workflows in regulated or enterprise environments.
Write comprehensive unit, integration, and end-to-end tests for both UI
components and agentic backend services.
REQUIRED SKILLS & EXPERIENCE
5+ years of full-stack engineering experience delivering production
applications.
Proven experience deploying at least one agentic AI workflow or LLM-powered
application to production.
Strong proficiency in React or Next.js (frontend) and Node.js and/or Python
(backend).
Experience with RESTful API design, GraphQL, and microservices architecture.
Familiarity with at least one agent orchestration framework:
LangChain/LangGraph, AutoGen, CrewAI, or Semantic Kernel.
Hands-on experience with SQL and NoSQL databases; understanding of vector
database concepts for RAG pipelines.
Solid understanding of streaming data patterns for real-time AI output
rendering (SSE, WebSockets).
Experience with containerization (Docker) and deployment on major cloud
platforms (AWS / GCP / Azure).
Proficiency with Git-based workflows, code reviews, and trunk-based
development practices.
Strong communication skills to collaborate across data science, AI
engineering, product, and business stakeholder teams.
NICE TO HAVE
Experience with Kubernetes, Helm, or GitOps-based deployment patterns for
scalable agent infrastructure.
Familiarity with MCP (Model Context Protocol) server design and tool-use
integration patterns.
Exposure to LLM evaluation frameworks (RAGAS, Promptfoo, or LLM-as-judge)
and agent testing strategies.
Experience with data lineage, metadata management, or enterprise data
catalog platforms.
Knowledge of fine-tuning workflows and model serving (vLLM, TGI, Ollama) for
self-hosted LLMs.
Contributions to open-source AI tooling or developer experience projects.
WHAT WE OFFER
Opportunity to work at the frontier of applied Agentic AI — building real
enterprise products, not prototypes.
Cross-functional teams combining AI researchers, data engineers, and product
designers.
Competitive salary, flexible working arrangements, and access to top-tier AI
tooling and infrastructure.
Continuous learning culture with investment in training, certifications, and
conference participation.