Enterprise AI Architect

Radwell International, Inc.
Willingboro, United States of America
27 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Shift work
Languages
English
Experience level
Intermediate
Compensation
$ 185K

Job location

Willingboro, United States of America

Tech stack

Java
API
Artificial Intelligence
Amazon Web Services (AWS)
Tomcat
Azure
Bootstrap
Cloud Computing
Continuous Integration
Data Architecture
Information Engineering
Data Infrastructure
Relational Databases
DevOps
E-Procurement
Elasticsearch
Graph Database
Spring
PostgreSQL
MariaDB
Metadata
Metadata Standards
Microsoft SQL Server
MySQL
Nginx
Node.js
NoSQL
Open Source Technology
Redis
Cloud Services
Azure
Salesforce
Software Deployment
Software Engineering
Management of Software Versions
Enterprise Search
Apache OpenOffice
Genesys
React
Multi-Agent Systems
Prompt Engineering
IT Architecture
Togaf
Data Layers
AI Platforms
Deployment Automation
Epicor ERP
Enterprise Integration
GraphQL
Machine Learning Operations
Virtual Agents
Api Design
REST
Software Version Control
Devsecops
Api Management
Key Vault
Databricks
Microservices

Job description

Radwell is accelerating its AI journey to drive automation, augmentation, and innovation across commercial, digital, operations, and data domains. As the Enterprise AI Architect, you will serve as a hands-on technical leader and strategic influencer by owning the end-to-end AI architecture and enabling production-grade AI solutions that transform Radwell's business. This is a critical role that combines deep technical expertise with architectural vision and leadership to operationalize AI at scale.

  • The end-to-end AI architecture will span across data foundations, existing platforms for CRM ERP, contact center, MLOps/ModelOps/LLMOps, governance, security, and solution design to scale AI products and agents that materially impact revenue growth, margin, efficiency, and customer experience. You will work cross-functionally with Digital & eCommerce, Sales/ISR/OSR, Operations, Finance/AR, Procurement, Marketing, and the Data & AI CoE, including tight collaboration with rest of the organization. Radwell has an adopted Enterprise AI Reference Architecture plus reusable reference code and delivery playbooks.

Grounded in Radwell's strategic AI framework, the architect is expected to design platforms and solutions that enable measurable outcomes such as:

  • Direct impact on enterprise transformation and board-level priorities.
  • Shapes Radwell's AI reference architecture, governance, and delivery model.
  • Drives measurable outcomes in AR recovery, ISR automation, procurement, Operations, marketing, pricing, and digital commerce.
  • Acts as a bridge between strategy and execution, ensuring AI initiatives deliver tangible ROI.
  • AR cash recovery agent: Reduce past-due AR from ~40% to <5% through AI-enabled workflows and decisioning
  • Inbound ISR customer inquiries agent: Achieve 80%+ AI augmentation for routine inquiries, with seamless human-in-the-loop transitions
  • Automated Procurement & Demand Planning agents: Target 80%+ automation for repetitive tasks, supplier follow-ups, and inventory actions
  • Digital Marketing automation: Enable 90%+ content generation and personalization at scale while preserving brand voice and compliance
  • Dynamic pricing models: Optimize elasticity using demand signals and inventory positions; operationalize controlled experimentation and guardrails.
  • Punchout/eProcurement analytics & agents: Scale from ~75 to 150+ customers with site/location-level accountability and automated OSR reporting
  • AI-generated product assets: Establish pipelines to generate/upgrade images/videos for tens of millions of SKUs with quality and metadata standards., 1) Enterprise AI Architecture (Strategic Ownership)
  • Define and maintain Radwell's Enterprise AI Reference Architecture (GenAI + Agentic AI + ML + analytics), aligned to an Azure-first strategy and Radwell's application landscape.
  • Establish and enforce architecture standards for:
  • RAG / enterprise search (knowledge ingestion, chunking strategy, grounding, citations)
  • Vector/embedding approach (data ownership, tenancy, lifecycle, retention)
  • Agentic workflows (tool use, orchestration, approvals, human-in-the-loop)
  • Model governance (routing, versioning, evaluation, deprecation, rollbacks)
  • Own architecture decisions for AI across core platforms: ERP (e.g., Epicor P21 / other ERPs), Salesforce, Genesys, eCommerce, and internal apps.
  1. Hands-On Delivery Leadership (Build & Ship)
  • Personally lead design and build reference implementations that teams can reuse (starter kits, SDKs, templates, CI/CD patterns).
  • Partner with product + engineering to deliver AI solutions for prioritized Radwell use cases such as:
  • Pricing intelligence & optimization
  • Parts identification from unstructured content (emails, PDFs, tickets)
  • Customer support automation (Genesys + knowledge + next-best-action)
  • Demand forecasting & inventory optimization
  • Sales enablement / quote assistants integrated with CRM/ERP Provide technical leadership through architecture reviews, pairing, and escalation handling; ensure delivery quality from prototype
  • production.
  1. AI Platform Engineering: MLOps /AIOps/ LLMOps (Production Readiness)
  • Design and implement MLOps/LLMOps pipelines: prompt/model versioning, automated evaluation, model registry, deployment strategies, rollback mechanisms.
  • Define AI observability standards: response quality, latency, error rates, grounding accuracy, drift, cost and token consumption, safety events.
  • Drive FinOps for AI: model selection, caching, batching, throttling, routing, and cost guardrails tied to budgets and business value.
  1. Data Foundations, Governance & Responsible AI (Risk + Trust)
  • Partner with Data Engineering on AI-ready foundations: data quality, lineage, metadata, MDM, access controls, and domain-aligned data products.
  • Establish Responsible AI practices:
  • PII handling/redaction, secure prompt & data policies, audit trails
  • Security-by-design (least privilege, secrets management, isolation)
  • Safety controls and human approvals for high-impact actions
  • Coordinate with Security/Compliance on vendor and platform governance.
  1. Technical Leadership Across Teams (Enablement)
  • Mentor engineers and architects across the US and Bengaluru ISSC; raise AI engineering maturity.
  • Produce and maintain high-quality technical artifacts: architecture diagrams, reference code, standards, decision records, and runbooks.
  • Act as a trusted advisor to executives on AI tradeoffs, build/buy decisions, and delivery sequencing.

May be modified from time to time. Other duties, tasks, and work may be assigned.

METRICS

Complete assigned sprint commitments and project deadlines as agreed and described in regular meetings or through other project planning efforts. Effectively accomplish and adhere to development standards, policies, and quality. Enterprise AI Architect will be measured on the quality, accuracy and timeliness of code releases and on how effectively they accomplish their tasks when compared to the set objectives., The environment is an open office environment. It may be necessary from time to time to travel to other offices, plants and inventory warehouse environments relative to the requirements of the position. Dress attire is casual but professional in an office setting. All employees are required to wear Security access card and encouraged to wear apparel with company logo. All employees must always adhere to Safety Policies.

Requirements

Do you have experience in Software deployment?, Do you have a High school diploma or GED?, * Proven track record as a hands-on technical leader (coding, designing, reviewing, and shipping).

  • Ability to influence across engineering and business stakeholders with clear technical communication.
  • Strong executive communication, stakeholder management, and governance leadership.
  • Demonstrated ability to drive outcomes in complex enterprise environments (ERP/CRM/contact center integrations).
  • Builder mindset: can create structure from ambiguity and scale with speed.
  • Customer/value obsessed: ties engineering work directly to measurable business results.
  • Faster, safer AI delivery across teams due to consistent patterns and strong technical leadership.

KNOWLEDGE & SKILLS REQUIRED

  • Strong experience in enterprise integration across major platforms (ERP/CRM/contact center/eCommerce) and modern patterns (API-first, event-driven).

  • Practical expertise in:

  • GenAI patterns: RAG, embeddings, prompt engineering, agent/tool use, evaluation

  • Production engineering: CI/CD, DevSecOps, observability, SRE mindset

  • Data architecture: lake/lakehouse concepts, governance, metadata, MDM

  • Azure AI ecosystem: Azure OpenAI, Azure AI Studio/Azure ML, Databricks/Synapse/Fabric, API Management, Key Vault, Entra ID.

  • Experience with vector databases and enterprise search platforms; semantic layers / knowledge graphs.

  • Experience with agent orchestration frameworks (e.g., Semantic Kernel, LangChain/LangGraph or equivalent).

  • Strong background in modern product engineering: Agile delivery, microservices, APIs, event-driven patterns.

  • Hands-on understanding of Cloud, DevOps, CI/CD, Observability/AIOps, and security fundamentals.

  • 10+ years experience with REST, GraphQL, API design patterns, scalable containerized systems, and microservices.

  • 10+ years or mastery in Java and/or Node.js, React, Bootstrap, and experience with multiple open-source technologies like Spring, Tomcat, Nginx, Elastic Search, etc.

  • 10+ years strong knowledge of relational databases (e.g., Microsoft SQL, MariaDB, PostgreSQL, MySQL), NoSQL databases (e.g., Redis, columnar, GraphDB), and cloud services (e.g., Azure, AWS)., * High School Diploma or equivalent required

  • 12+ years of software engineering/architecture experience with 3+ years delivering AI/ML and/or GenAI solutions in production.

  • Experience building Data Engineering / AI/ML teams and operationalizing MLOps.

  • Experience in distribution/MRO, pricing, supply chain, or customer experience transformation.

  • 3-5 high-value AI use cases live in production with measurable impact (margin lift, revenue, productivity, CX improvements).

  • A working LLMOps/MLOps pipeline with evaluation, monitoring, safety controls, and cost governance.

CERTIFICATES, LICENSES, REGISTRATIONS

  • TOGAF Certification
  • Microsoft Certified: Azure Solutions Architect Expert

PHYSICAL DEMANDS

  • Continuous sitting and typing for extended periods.
  • Lifting requirements include occasional lifting of up to 25 pounds
  • Frequent walking or standing may be required at times

Benefits & conditions

Pulled from the full job description

  • 401(k)
  • Health insurance
  • Paid time off
  • Vision insurance
  • Dental insurance
  • Life insurance
  • Disability insurance, This is an exempt position, which requires a work schedule that will achieve the results and objectives identified by the company. Generally, the schedule for this position will be 8:00am-5:00pm, Monday through Friday, with one hour for lunch. Nights and weekends may be worked as required based on current project and implementation needs, deadlines, and workload. Employee is expected to begin work on time and adhere to accepted time-off policies., The recruiting base salary range for this full time position is $140,000.00 - $185,000.00 /year. Within the range, individual pay is determined by factors, including job-related skills, experience, and relevant education or training. Additionally, this role is bonus-eligible, with a target bonus percentage that provides an opportunity to earn even more based on company performance.

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