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Technical Architect – AI, ML & Intelligent Applications

Role Overview

A Technical Architect (TA) – AI & ML drives end-to-end design, development, and deployment of intelligent, AI-powered solutions across cloud and hybrid environments. This role combines enterprise application architecture with advanced AI/ML engineering, Generative AI, and agentic systems design.

The TA acts as a customer-facing technical leader, responsible for translating business problems into scalable AI-powered architectures, enabling data-driven decision-making, automation, and intelligent workflows.

This role spans pre-sales, discovery, solution design, build, deployment, and optimization, with a strong emphasis on Microsoft Azure AI ecosystem.

Key Responsibilities:

Architecture & Solution Design

  • Lead architecture for AI-first enterprise applications, including:
    • Machine Learning systems
    • Generative AI (LLMs, copilots, agents)
    • Predictive analytics platforms
  • Design scalable, secure, and cost-optimized architectures using Azure services
  • Translate business use cases into AI/ML pipelines, data models, and intelligent workflows
  • Define multi-agent orchestration architectures (Semantic Kernel / CrewAI / Azure AI Foundry)

AI/ML & Data Engineering

  • Design and oversee:
    • Model training, evaluation, deployment (MLOps)
    • Data ingestion and transformation pipelines
  • Implement:
    • Feature engineering pipelines
    • Model monitoring, drift detection, and retraining strategies
  • Guide teams on ML frameworks (PyTorch, TensorFlow, Scikit-learn)

Generative AI & Agentic Systems

  • Architect enterprise-grade solutions with:
    • Azure OpenAI / GPT models
    • RAG (Retrieval-Augmented Generation)
    • Copilot-style experiences (chat, voice, agents)
  • Design:
    • Memory systems (vector DBs, Cosmos DB)
    • AI orchestration workflows
  • Build autonomous agent systems for:
    • Reporting
    • Workflow automation
    • Decision augmentation

Cloud & Platform Engineering

  • Lead deployment of AI solutions on:
    • Azure AI Foundry / Azure ML
    • Azure Functions, AKS, App Services
  • Ensure:
    • High availability, scalability, and performance
    • Secure model serving and API layers

DevOps, MLOps & Governance

  • Implement:
    • CI/CD pipelines for AI/ML workloads
    • Model lifecycle management
  • Define governance around:
    • AI ethics and responsible AI
    • Data privacy and regulatory compliance (SOC2 readiness, audit logs)
  • Enable:
    • Monitoring, observability, anomaly detection

Client Engagement & Leadership

  • Lead:
    • Discovery workshops
    • AI solution envisioning sessions
  • Present to:
    • C-level executives and stakeholders
  • Support:
    • Proposal development, estimations, and technical documentation
  • Mentor engineering teams on AI architecture best practices

Technical Skills

Core Architecture

  • Deep understanding of:
    • Distributed systems
    • Microservices and API-first design
    • Event-driven architectures

AI / ML / Data

  • Strong experience in:
    • Machine Learning lifecycle (training → deployment → monitoring)
    • Deep learning fundamentals
    • NLP, computer vision (preferred)
  • Hands-on with:
    • Azure ML, Azure AI Services, Azure OpenAI
    • Databricks / Synapse / Fabric
  • Experience with:
    • Vector databases (Azure AI Search, Pinecone, Redis)
    • RAG architectures

Programming & Frameworks

  • Proficiency in:
    • Python (mandatory)
    • .NET ecosystem (C#) for enterprise apps
  • Experience with:
    • FastAPI / Flask
    • LangChain / Semantic Kernel / CrewAI
  • Familiarity with:
    • REST APIs, GraphQL

Cloud & DevOps

  • Strong expertise in Azure:
    • Azure ML, AKS, Functions, Logic Apps
  • Experience with:
    • CI/CD pipelines (Azure DevOps / GitHub Actions)
    • Docker, Kubernetes
  • Knowledge of:
    • Infrastructure-as-Code (Bicep, Terraform)

Data & Storage

  • Experience with:
    • SQL, NoSQL (Cosmos DB, MongoDB)
    • Data Lakes and Warehouses
  • Understanding of:
    • Real-time data processing

Security & Governance

  • Knowledge of:
    • Identity & Access (Azure AD)
    • Data security & encryption
    • Responsible AI frameworks

Non-Technical Skills

  • Strong consulting mindset with client-facing experience
  • Ability to:
    • Translate business needs into AI solutions
    • Communicate complex AI concepts to non-technical stakeholders
  • Proven leadership in:
    • Driving architecture decisions
    • Managing cross-functional teams
  • Excellent:
    • Presentation skills
    • Documentation and storytelling

Certifications (Preferred)

  • Azure Solutions Architect Expert
  • Azure AI Engineer Associate
  • Azure Data Scientist Associate
  • Microsoft Fabric / Data Engineering Certifications
  • AWS ML Specialty (optional)

Experience Requirements

  • 7+ years in software architecture / enterprise applications
  • 3+ years in AI/ML or data-driven solutions
  • Proven experience delivering:
    • AI-powered enterprise systems
    • Cloud-native scalable solutions

Nice to Have

  • Experience with:
    • Multi-agent AI systems
    • Conversational AI (chat + voice + avatars)
    • Power Platform + AI integrations
    • Teams / Copilot integrations
  • Exposure to:
    • Enterprise SaaS (multi-tenancy, RBAC, billing)
    • Compliance systems (audit logs, SOC2 readiness)
Job Category: Solution Architect PreSales AI ml
Job Type: Full Time Contractual
Job Location: Pakistan Anywhere

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