Head of Engineering

fully flexible
Work set-up: 
Full Remote
Contract: 
Experience: 
Senior (5-10 years)

Offer summary

Qualifications:

Experience leading AI/ML engineering teams in the financial services industry., Strong background in AI-native software engineering and agentic architectures., Knowledge of MLOps automation, observability, and large-scale cloud platforms like AWS., Understanding of financial regulations, security compliance, and data systems in banking, insurance, or asset management..

Key responsibilities:

  • Hire, onboard, and develop AI architects and engineers, promoting continuous learning.
  • Oversee the design and implementation of AI engineering solutions, ensuring high quality and compliance.
  • Automate engineering workflows using autonomous AI agents and maintain reference architectures.
  • Drive engineering excellence by establishing KPIs, improving processes, and ensuring high system performance.

Neurons Lab logo
Neurons Lab Research Scaleup https://www.neurons-lab.com/

Job description

🚀 About the Project

Lead, scale, and continuously reinvent an AI‑native engineering organisation by empowering a high‑leverage team of AI architects and engineers and automating repeatable engineering workflows with autonomous AI agents, that turns breakthrough ideas into resilient, production‑grade agentic AI systems across both client work and the company’s own product portfolio for global financial‑services institutions (banking, insurance, investment management) spanning use‑cases customer support agents, internal productivity assistants, documents workflow automation and others compounding revenue, IP leverage, and long‑term strategic advantage.

🎯 Objective & KPIs

Build a self‑sustaining AI‑native engineering function that delivers high‑quality, compliant, and reusable agentic solutions for FSI clients while maximising automation and team leverage.

KPIs:

  • Mean lead‑time from prototype commit to production ≤ 5 days.

  • ≥ 50 % internal engineering workflows fully automated by autonomous AI agents (baseline FY‑2025 audit).

  • ≥ 75 % codecomponent reuse across new projects.

  • Production model accuracy ≥ 90 %, latency < 5 s, Codacy grade upgraded from B → A.

  • Maintain 0.3750.5 FTE as billable hours allocation at the client’s projects

    • 🗂 Areas of Responsibility
      1. Talent & Capability Building
      • Hire, onboard, and retain A‑player AI Architects and AI engineers

      • Empower AI architects and engineers with clear decision rights, context, and AI‑native tooling so they can execute autonomously and at speed.

      • Implement a skills‑matrix and personalised growth plans; coach next‑generation tech leads.

      • Make decisions on promotion based on performance reviews anchored in objective contribution metrics.

      • Promote a culture of continuous learning (regular Agentic AI dojo, conference sponsorships, internal certifications).

      • Provide technical oversight through senior AI Architects across all client engagements; sign off on architecture and go‑live readiness while mentoring them to own delivery.

      • Staff projects with the right talent mix; optimise utilisation of core team members

        • 2. Engineering Excellence & AI‑Native Quality
          • Update, automate, and collect AI engineering health indicators including solution accuracy, latency, model drift, cost efficiency, and code quality via a fully instrumented MLOps telemetry stack (CICD, feature store, observability, drift alerts).

          • Establish and iterate the AI‑native SDLC: LLM‑assisted coding & test generation, agentic design patterns, self‑healing pipelines, prompt‑ops, red‑teaming, security & compliance

          • Orchestrate autonomous AI agents to automate internal engineering and business routines such as environment provisioning, compliance evidence capture, cost optimisation, and status reporting.

          • Maintain reference architectures and reusable component libraries; achieve ≥75% code reuse across all new work.

          • Convert learnings from services projects into IP that reduces future build effort by > 40 %.

          • Own the design, packaging, and optimisation of Neurons Lab solutions

            • 🛠 Skills
              • AI‑native software engineering & agentic architectures

              • MLOps automation and observability

              • Large‑scale AWS (SageMaker, Bedrock, EKS) optimisation

              • Regulatory & security compliance for FSI

              • Organisational design and talent development

              • KPI‑driven process improvement

              • Strategic thinking & systems‑level problem‑solving

                • 📚 Knowledge
                  • Core‑banking, insurance, and asset‑management data flows & systems

                  • LLM orchestration patterns and prompt engineering best practices

                  • Foundations of traditional machine learning and ML models training from scratch

                  • Financial‑services regulatory frameworks

                  • AWS Marketplace packaging and Advanced‑Tier Partner requirements

                  • Code‑quality measurement (e.g., Codacy) and secure SDLC principles

                    • 📈 Experience
                      • Led AIML engineering teams 15 → 50 + in FSI domain while maintaining velocity

                      • Delivered production agentic AI systems with ≥ 90 % accuracy & < 5 s latency

                      • Deployed autonomous AI agents that automated ≥ 40 % of engineeringbusiness processes

                      • Established, maintained and improved engineering standards and quality measures

Required profile

Experience

Level of experience: Senior (5-10 years)
Industry :
Research
Spoken language(s):
English
Check out the description to know which languages are mandatory.

Other Skills

  • Systems Thinking
  • Strategic Thinking

Head of Technology Related jobs