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EA AI & Data Architect Lead

Neos Networks
Reading
1 day ago
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Overview

Location: Havant or Reading (Hybrid – 2/3 days per week)

Type: Full-time | Permanent | Hybrid

Are you ready to shape the future of AI at Neos Networks? We're looking for a visionary AI & Data Architect Lead to drive the development of next-generation AI-first architecture across our telecom platforms, operations, and customer services.

This is a strategic, hands-on leadership role where you'll integrate LLMs, intelligent data pipelines, and multi-agent orchestration into enterprise workflows—powering automation, improving reliability, and unlocking new customer value.

What You’ll Be Doing
  • Lead integration of LLMs, GenAI, MLOps, and secure AI solutions
  • Drive DevOps excellence with CI/CD, IaC, GitOps
  • Manage cross-functional DevOps & Data Engineering teams
  • Collaborate on our 5-year AI strategy alongside senior leadership
What You’ll Bring
  • Deep expertise in AI/ML, LLMs, and cloud-native infrastructure (AWS, Azure)
  • Strong knowledge of telecom data domains (OSS/BSS, CRM, etc.)
  • Hands-on experience with Python, Kubernetes, GitLab, open-source ML stacks
  • Certifications in cloud, enterprise architecture, or AI (desirable)

Ready to lead the AI transformation at Neos Networks? Apply online or reach out to for more info.


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