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Generative AI Engineer

Centrilogic

2 - 5 years

Hyderabad

Posted: 04/04/2026

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Job Description

AI Engineer AI Managed Services & Development


About Centrilogic

Centrilogic is a global provider of Cloud, Data, AI, and Managed Services. We help organizations modernize their systems, adopt secure and scalable AI/ML architectures, and operationalize intelligent platforms that drive measurable business outcomes.


Position Summary

The AI Engineer AI Managed Services & Development is a production-focused engineering role responsible for supporting, operating, and enhancing AI platforms and LLM-powered applications built on Microsoft Azure AI Foundry, Azure OpenAI, and the wider Azure ecosystem.

This position is centered around AI Managed Servicesensuring reliability, security, performance, cost-efficiency, and governance of customer AI workloadswhile also contributing to light-to-moderate development and enhancement work in Python to improve operational efficiency and enable continuous evolution of AI solutions.


Key Responsibilities


AI Managed Services Operations

  • Monitor and support AI agents, LLM workloads, vector/RAG pipelines, and microservices in production.
  • Maintain managed service expectations and SLAs across availability, performance, response times, and issue resolution.
  • Perform incident triage, troubleshooting, debugging, and root cause analysis (RCA).
  • Support model and prompt lifecycle activities: drift detection, prompt updates, embedding refresh, evaluation, and version control.
  • Apply Responsible AI practices including jailbreak protection, prompt injection defense, content filtering, and compliance guardrails.
  • Analyze telemetry, logs, metrics, and safety signals to proactively identify and mitigate risks.
  • Assist with onboarding new AI agents and use cases into Centrilogics Managed Services framework.
  • Contribute to runbooks, SOPs, and knowledge articles for operational excellence.


Development & Enhancement Work

  • Build small tooling, automations, scripts, and enhancements using Python to improve service reliability and speed.
  • Implement bug fixes, minor feature improvements, monitoring utilities, and workflow optimizations.
  • Integrate applications and services with Azure AI Foundry and Azure AI services.
  • Support safe deployments through CI/CD pipelines (GitHub Actions or Azure DevOps) and environment promotion.


Azure Cloud & Platform Responsibilities

  • Operate AI workloads across Azure Functions, App Services, containers/AKS, API Management, Azure AI Search, and data stores (e.g., Cosmos DB, Azure SQL).
  • Implement and maintain platform observability: logging, tracing, alerting, cost monitoring, and operational analytics dashboards.
  • Support cloud security requirements including Key Vault, managed identities, RBAC/ABAC, encryption, private endpoints, and identity controls.
  • Follow best practices for scalability, resilience, and operational readiness.


FinOps & Operational Reporting

  • Monitor token usage, compute cost, scaling patterns, and LLM consumption trends.
  • Provide recommendations for cost optimization and performance improvements.
  • Contribute input to Monthly Service Reviews (MSRs) and Quarterly Business Reviews (QBRs) with Service Delivery Managers.


Client Engagement & Collaboration

  • Communicate operational insights, incidents, and improvements in a clear, business-friendly manner.
  • Partner with Cloud, Data, Security, and Development teams to ensure stable and secure AI operations.
  • Participate in architecture reviews and operational readiness assessments for AI deployments.


Required Skills & Experience

  • 35 years of experience in application development, cloud operations, or production support (managed services experience is a plus).
  • Proficiency in Python for troubleshooting, tooling, automations, and minor feature updates.
  • Hands-on experience with:
  • Microsoft Azure AI Foundry
  • Azure OpenAI and/or Azure Cognitive Services
  • Azure App Services, Functions, containers/AKS (exposure acceptable), and API integrations
  • Logging/monitoring tools and platform observability concepts
  • Understanding of RAG architectures, embeddings, vector databases, and prompt engineering fundamentals (practitioner-level familiarity).
  • Experience with CI/CD (GitHub Actions or Azure DevOps) and cloud security best practices.
  • Familiarity with incident management, RCA, and service delivery workflows (ITIL exposure is beneficial).


Preferred Experience

  • Experience supporting AI/ML or cloud workloads in production environments.
  • Exposure to Salesforce, Genesys Cloud, SQL Server, Oracle, or Microsoft Fabric.
  • Experience with Microsoft Agent Framework, Semantic Kernel, LangChain, or autonomous agent patterns.
  • Knowledge of enterprise networking, observability tools, and SRE concepts.


Certifications

Required (or achieved within 6 months):

  • Microsoft Certified: Azure AI Administrator (or Azure AI Engineer Associate accepted)


Nice to Have:

  • Azure Developer Associate
  • Azure Solutions Architect Expert
  • Additional AI/ML or cloud security certifications


Education

  • Bachelors degree in computer science, Engineering, Data Science, or equivalent practical experience.

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