jobs in Artech Infosystems Private Limited

Artech Infosystems Private Limited Hiring! Full Time Solutions Architect-Engineer - Data - Agentic AI Solutions in , Earn up to SGD 541,667 - Ricebowl

Solutions Architect-Engineer - Data - Agentic AI Solutions

Artech Infosystems Private Limited

SGD500,000 - SGD541,667 Per Month

Remote

Share
Save

Working Location

  • Remote Singapore

Job Description

Responsibilities

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

Important Information

Never provide your bank or credit card details when applying for jobs. Do not transfer any money or complete unrelated online surveys. If you see something suspicious, Report this Job ad.

Learn More