AR

Solutions Architect/Engineer - Data & Agentic AI Solutions

Artech Infosystems Private Limited
Remote60-65 LPA Posted 3 Jun 2026
FULL TIME
snowflake
Adf
Databricks

Job Description

JOB TITLE- Solutions Architect/Engineer - Data & Agentic AI Solutions

Role Summary

Client is seeking a highly technical, Agentic AI Solutions Architect/Engineer with deep expertise in Data Platforms, Cloud Architecture, AI/ML Operations, and Agentic AI solution implementation.

This role is not a traditional delivery-only Data Architect role.

The ideal candidate must be able to:

  • Operate effectively in highly ambiguous environments
  • Rapidly transform incomplete client requirements into structured technical solutions
  • Build assumptions, workload models, LOE estimates, and delivery approaches
  • Interface directly with Sales, Clients, Delivery, and Practice Leadership
  • Prototype and operationalize modern data and AI architectures
  • Support pre-sales, RFP responses, and technical solutioning
  • Create reusable accelerators, frameworks, and implementation patterns

The role combines:

  • Data & AI Solution Architecture
  • Forward Deployment Engineering
  • Technical Consulting
  • Solutioning & Estimation
  • Client Engagement
  • Prototype & Accelerator Development

This individual will work closely with:

  • Practice Leads
  • Solutions Architects
  • Proposal Managers
  • Pricing Analysts
  • Delivery Teams
  • Sellers and Client Stakeholders

What Success Looks Like

Successful candidates are able to:

  • Take vague business requirements and rapidly create structure, assumptions, and solution direction
  • Build end-to-end data and AI implementation strategies with minimal guidance
  • Clearly communicate architecture concepts to both technical and business stakeholders
  • Develop practical LOE models and staffing approaches aligned to delivery realities
  • Operate independently under tight timelines and incomplete information
  • Build trust with sellers, practice leads, and clients through responsiveness, ownership, and communication
  • Create reusable IP and technical accelerators for the Data Intelligence Practice

Key Responsibilities

1. Forward Deployment Engineering & Client Solutioning

  • Partner directly with clients, sellers, and practice leadership to understand business challenges and technical requirements
  • Rapidly design and prototype scalable data and AI solutions
  • Translate incomplete or evolving client requirements into actionable architecture and delivery plans
  • Conduct technical discovery workshops and architecture whiteboarding sessions
  • Support client demonstrations, proof-of-concepts, pilot implementations, and modernization initiatives
  • Design and operationalize cloud-native and AI-enabled data platforms
  • Troubleshoot and resolve architecture, integration, and deployment issues during solution development

2. Data Platform & AI Architecture

  • Design modern data platforms using:
  • Snowflake
  • Databricks
  • Azure Synapse
  • Microsoft Fabric
  • AWS Data Services
  • Lakehouse / Medallion Architectures
  • Data Mesh Patterns
  • Design scalable ingestion, transformation, orchestration, and analytics frameworks
  • Implement metadata-driven and self-healing pipeline concepts
  • Design lineage, governance, and cataloging approaches using:
  • Microsoft Purview
  • Collibra
  • Alation
  • Snowflake Horizon
  • Design secure, compliant architectures aligned with enterprise governance requirements
  • Implement AI-ready data architectures for:
  • RAG systems
  • Agentic AI frameworks
  • Vector databases
  • LLM integrations
  • Semantic search
  • AI orchestration frameworks

3. Agentic AI & AI Enablement

  • Build and operationalize AI workflows using:
  • OpenAI
  • Azure OpenAI
  • Claude
  • Gemini
  • LangChain
  • LangGraph
  • Semantic Kernel
  • Vector databases
  • Support development of:
  • AI agents
  • AI copilots
  • Retrieval Augmented Generation (RAG)
  • AI orchestration pipelines
  • Autonomous workflows
  • Participate in AI governance, observability, prompt engineering, and model evaluation activities
  • Develop reusable AI accelerators and implementation templates

4. Pre-Sales, Estimation & Commercial Solutioning

  • Participate in RFP, RFI, and proposal response development
  • Build:
  • Assumptions frameworks
  • Workload models
  • Staffing models
  • LOE estimates
  • Delivery approaches
  • Pricing support inputs
  • Collaborate with:
  • Proposal Management
  • Pricing Analysts
  • Recruiting
  • Delivery Leadership
  • Translate technical architectures into delivery staffing and operational models
  • Support architecture reviews, proposal reviews, and red team reviews
  • Participate in technical orals and client solution presentations

5. Practice Development & IP Creation

  • Build reusable:
  • Architecture templates
  • Estimation frameworks
  • Accelerators
  • Governance models
  • Technical playbooks
  • AI implementation patterns
  • Support development of the Data Intelligence Center of Excellence (COE)
  • Contribute to GTM strategy and packaged service offerings
  • Collaborate with Marketing on technical collateral and case studies

Required/Desired Technical Skills

Cloud & Data Platforms

  • Azure Data Factory (ADF)
  • Azure Synapse
  • Databricks
  • Snowflake
  • Microsoft Fabric
  • AWS Data Services (Glue, Redshift, Athena, Lambda, EMR)
  • Data Lakes / Lakehouse architectures
  • Kafka / Event Streaming

AI / ML / Agentic AI

  • OpenAI / Azure OpenAI
  • LangChain / LangGraph
  • RAG architectures
  • Vector databases
  • AI orchestration frameworks
  • Prompt engineering
  • LLM integration patterns
  • AI observability concepts

Engineering & DevOps

  • Python
  • SQL
  • PySpark
  • APIs & Microservices
  • Terraform
  • CI/CD pipelines
  • GitHub / Azure DevOps
  • Docker / Kubernetes

Governance & Security

  • RBAC / IAM
  • Data lineage
  • Metadata management
  • Data governance frameworks
  • Enterprise security and compliance standards

Required Experience

  • 8–15 years of experience in Data Engineering, Cloud Architecture, Analytics, AI/ML, or Solution Architecture
  • Strong hands-on implementation experience in enterprise data platforms
  • Experience supporting client-facing consulting or pre-sales activities
  • Experience building technical proposals, architecture diagrams, and implementation approaches
  • Experience of working directly with business stakeholders and enterprise clients
  • Experience operating in ambiguous, fast-moving consulting environments
  • Experience estimating projects and supporting staffing / LOE models

Required Skills

Join WhatsApp Channel