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AES - DE - Generative AI Application Developers
Job in
India, Henry County, Tennessee, USA
Listed on 2026-06-04
Listing for:
Zensar Technologies
Full Time
position Listed on 2026-06-04
Job specializations:
-
IT/Tech
Systems Engineer, AI Engineer, Cloud Computing, Cybersecurity
Job Description & How to Apply Below
QUICK FACTS
Engagement Zensar at Client (Client Site)
Location Hybrid / On-site - Client Engineering Hubs Seniority Mid to Senior (4-8 years)
Employment Full-Time Contract with conversion path Growth PathMCP Build → Internal AI Platform Engineering
KEY RESPONSIBILITIES
MCP Server Design & Development
* Design and implement MCP (Model Context Protocol) servers in Python, exposing enterprise tools and internal APIs as Claude-accessible resources and tool calls
* Build MCP integrations for Client's existing internal stack - Jira, Git Hub, Confluence, Salesforce, internal data APIs, and custom microservices
* Implement both SSE (HTTP/streaming) and stdio transport modes depending on deployment context, and advise teams on when to use each
* Design robust tool schemas - well-defined input/output contracts, clear tool descriptions that guide Claude's reasoning and usage
* Write test suites for MCP servers - unit tests, integration tests with MCP Inspector, and end-to-end validation with Claude Desktop
Authentication, Security & API Integration
* Implement OAuth 2.0 flows (Authorization Code, Client Credentials, PKCE) for secure MCP server authentication - following the MCP authorization spec
* Integrate with identity providers (Okta, Azure AD, Google) to enable SSO-based access control on MCP servers
* Design and implement API gateway patterns for MCP backends - rate limiting, scoped token management, audit logging
* Ensure MCP servers meet enterprise security standards - secrets management (Vault, AWS Secrets Manager), TLS, least-privilege access
* Build adapters for REST, Graph
QL, and gRPC-based internal APIs, abstracting complexity behind clean MCP tool interfaces
Platform Engineering (Growth Path)
* Contribute to the design of Client's internal AI platform - a shared infrastructure layer for deploying, discovering, and managing MCP servers at scale
* Build developer-facing tooling: CLI utilities, SDK wrappers, scaffolding templates that make it fast for Client engineering teams to build new MCP integrations
* Implement observability for the MCP layer - structured logging, distributed tracing, dashboards (Datadog, Grafana) to monitor AI tool usage across teams
* Design multi-tenant MCP deployment patterns - namespace isolation, per-team credential scoping, usage quotas
* Work with Client's platform team to containerize and deploy MCP servers on Kubernetes, with CI/CD pipelines and Git Ops workflows
Collaboration & Enablement
* Act as the technical MCP subject-matter expert for Client's engineering teams - running office hours, reviewing integration designs, unblocking builders
* Collaborate with Endpoint AI Support Engineers (Role ZEN-RBK-ENG-01) to ensure seamless end-to-end experience from user machine to MCP server
* Write technical documentation, integration guides, and architecture decision records (ADRs) for all MCP infrastructure
* Participate in Client's AI working group - contributing insights from the integration layer to shape overall AI strategy
REQUIRED SKILLS & EXPERIENCE
Backend Engineering
* 4+ years of Python backend development - FastAPI, Flask, or similar async frameworks; clean, testable, production-grade code
* Strong REST API design skills - resource modeling, HTTP semantics, versioning, pagination, error standards (RFC 7807)
* Experience consuming and building integrations with third-party APIs (SaaS platforms, internal microservices)
* Proficiency with async Python (asyncio, httpx) - critical for MCP server performance
* Node.js/Type Script familiarity is a strong plus - the MCP SDK has first-class Type Script support
Authentication & Security
* Deep understanding of OAuth 2.0 - grant types, token introspection, refresh flows, scopes
* Experience integrating with OAuth/OIDC identity providers in production:
Okta, Azure AD, or Google Workspace
* JWT handling - signing, validation, claims inspection, expiry management
* Secure secrets management - environment variables, secrets vaults, never hardcoded credentials
Infrastructure & Dev Ops
* Containerization with Docker - writing production Dockerfiles, multi-stage builds, image optimization
* Kubernetes basics - Deployments, Services, Config Maps, Secrets, Ingress; comfortable reading and writing YAML manifests
* CI/CD experience - Git Hub Actions, Git Lab CI, or similar; automated testing and deployment pipelines
* Cloud-native mindset - AWS, GCP, or Azure; familiarity with managed services (Lambda, Cloud Run, ECS)
AI & MCP Ecosystem
* Working knowledge of MCP (Model Context Protocol) - understanding of the protocol primitives: tools, resources, prompts, sampling
* Experience with the Anthropic Python SDK or Claude API - making API calls, handling streaming responses, function calling/tool use
* Awareness of LLM integration patterns - prompt engineering basics, context management, tool result handling
* Familiarity with agent frameworks (Lang Chain, Llama Index, or similar) is a plus
NICE TO HAVE
* Prior experience building MCP servers - even personal/open-source projects are highly…
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