What are the responsibilities and job description for the AI/MLSolution Architect position at Jobs via Dice?
Dice is the leading career destination for tech experts at every stage of their careers. Our client, HAN IT Staffing Inc., is seeking the following. Apply via Dice today!
Role: AI/ML Solution Architect
Location: Piscataway, NJ - Hybrid
Contract position
Role Overview
The Solution Architect is responsible for designing the end-to-end technology architecture for the CEC platform, ensuring it delivers a scalable, secure, AI-native, and integrated solution across Wealth, Health, and Career segments.
This role translates business vision and product requirements into a cohesive technical architecture, integrating data, AI/ML, GenAI, and enterprise systems into a unified Advisory Operating System.
Key Responsibilities 1. End-to-End Solution Architecture
Define the overall architecture blueprint for CEC, including:
Frontend (UX/UI, co-pilot interfaces)Backend services and APIs
Data platform and pipelines AI/ML and GenAI components
Ensure alignment with enterprise architecture standards
Role: AI/ML Solution Architect
Location: Piscataway, NJ - Hybrid
Contract position
Role Overview
The Solution Architect is responsible for designing the end-to-end technology architecture for the CEC platform, ensuring it delivers a scalable, secure, AI-native, and integrated solution across Wealth, Health, and Career segments.
This role translates business vision and product requirements into a cohesive technical architecture, integrating data, AI/ML, GenAI, and enterprise systems into a unified Advisory Operating System.
Key Responsibilities 1. End-to-End Solution Architecture
Define the overall architecture blueprint for CEC, including:
Frontend (UX/UI, co-pilot interfaces)Backend services and APIs
Data platform and pipelines AI/ML and GenAI components
Ensure alignment with enterprise architecture standards
- AI-Native Architecture Design architecture for: ML-based Truth Engine (deterministic models) GenAI layer (LLMs, co-pilot, RAG pipelines) Ensure clear separation between predictive models and generative AI Enable real-time decisioning and signal processing
- Data & Integration Architecture Define integration patterns for: Internal systems (CRM, data warehouses, research platforms) External data sources (market, regulatory signals) Ensure seamless flow of data into the Golden Record Design APIs and event-driven architectures for scalability and flexibility
- Technology Selection & Standards Evaluate and select technology stack, tools, and frameworks Define architecture principles, design patterns, and standardsEnsure use of cloud-native and microservices-based architectures
- Scalability, Performance & Resilience Design for high performance, scalability, and availability. Implement caching, load balancing, and fault-tolerant mechanisms Optimize the system for large-scale data processing and concurrent users
- Security, Governance & Compliance Ensure architecture adheres to: Data security and privacy standards, AI governance and explainability requirements. Enable auditability, traceability, and regulatory compliance