Title: Senior AI Solution Architect
Company Name: Mega Consultants (BD) Ltd.
Vacancy: 3
Age: Na
Job Location: Dhaka (Baridhara)
Salary: Tk. 30000 (Monthly)
Experience: --
Published: 2026-05-19
Application Deadline: 2026-05-19
Education:
Requirements: --
Skills Required:
Additional Requirements:
Responsibilities & Context:
We are seeking a highly skilled Senior AI Solution Architect with deep, hands-on expertise across the Microsoft Azure ecosystem and modern generative AI platforms. In this role, you will act as the ultimate technical authority bridging business requirements and cutting-edge AI capabilities. You will collaborate with cross-functional teams to translate ambiguous challenges into scalable, maintainable, and secure AI solutions. Your primary mandate will be to design and deliver end-to-end intelligent systems spanning cloud infrastructure, multi-modal AI databases, LLM-integrated microservices, and production-grade DevOps pipelines — that directly power our next-generation enterprise products.
Core Responsibilities
Azure Cloud Infrastructure & Platform Engineering
Architect and manage secure, compliant, and highly scalable Azure-based cloud infrastructure aligned with enterprise standards.
Design multi-region, high-availability, and fault-tolerant environments using Azure VNets, AKS, App Service, and Azure API Management.
Govern cloud expenditure and optimize resource utilization using Azure Cost Management and architectural best practices.
Generative AI Microservices Development
Design, build, and implement production-ready generative AI microservices using Azure AI Foundry, Microsoft Fabric, and Azure AI Search.
Develop modular, containerized AI services enabling seamless integration of LLMs into business workflows.
Evaluate and onboard emerging Azure AI services to align product roadmaps with evolving technologies.
AI Database Architecture & Engineering
Design polyglot persistence strategies combining Knowledge Graphs (GraphDB / Neo4j), relational databases, vector stores, NoSQL databases, and full-text search engines.
Construct and maintain high-performance vector databases (Azure AI Search, Qdrant, Weaviate) optimized for semantic retrieval.
Implement graph-based knowledge representations for complex entity-relationship reasoning in AI pipelines.
Define robust data modeling, advanced indexing, and query optimization strategies across heterogeneous database systems.
AI Solution Architecture & LLM Integration
Design connection layers between LLMs (GPT-4o, Claude, Gemini, OSS models) and enterprise databases, including RAG pipelines and agentic memory systems.
Architect and deploy AI agent platforms supporting multi-agent orchestration, tool usage, and long-horizon execution.
Establish prompt engineering patterns, context management strategies, and LLM evaluation frameworks.
Lead technical discovery sessions, architecture reviews, and proof-of-concept (PoC) engagements.
Backend Service & API Development
Design and implement high-throughput RESTful and event-driven APIs connecting AI microservices, databases, and front-end systems.
Develop resilient backend services in Python or Node.js using clean architecture and domain-driven design principles.
Enforce API governance standards covering versioning, authentication (OAuth2/API keys), rate limiting, and observability.
DevOps & Production Environment Engineering
Engineer and maintain automated CI/CD pipelines (Azure DevOps / GitHub Actions) for AI deployments and infrastructure changes.
Implement Infrastructure-as-Code (IaC) using Terraform or Bicep for reproducible environments.
Establish monitoring, alerting, and incident response workflows using Azure Monitor, Application Insights, or equivalent tools.
Drive security-by-design across SDLC with secrets management, RBAC, and continuous vulnerability scanning.