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Director – AI & Innovation

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  • Posted 18 hours ago
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Job Description

Job Description

We are looking for a Director – AI & Innovation who is, above all, a builder. You will define and

execute the company-wide AI strategy, architect and ship production-grade agentic systems, and

personally write code every week. This is not a strategy-only role- you will be in the codebase.

You will lead a small, high-trust team of two- an ML Engineer and a Vibe Coder (a product-minded

engineer fluent in vibe coding tools). Small team size is intentional: we compound velocity through

great tooling, open-source, and tight architectural discipline, not headcount.

You report directly to the CPTO and operate with the authority and accountability of a founding

engineer.

Required Skills

[We are looking for a Director – AI & Innovation who is, above all, a builder. You will define and execute the company-wide AI strategy, architect and ship production-grade agentic systems, and personally write code every wee]

Additional Information

What You'll Do

  • Agentic AI Systems Design & Engineering
  • Architect and build multi-agent systems that orchestrate the core workflows of 1Source,

1Data, and 1Xcess- RFQ generation, supplier discovery, price benchmarking, BOM parsing,

and inventory matching.

  • Design agent graphs using frameworks such as LangGraph, CrewAI, or AutoGen- defining

agent roles, tool registries, state machines, escalation paths, and human-in-the-loop

checkpoints.

  • Build and maintain MCP (Model Context Protocol) servers that expose internal

data and business logic as structured, composable tools consumable by AI agents and

external LLM clients.

  • Define tool schemas, function signatures, and capability registries so that agents across all

products can discover and invoke capabilities reliably and safely.

  • Implement guardrails, retry logic, fallback strategies, and audit logging for every agentic

workflow- production agents must be observable and recoverable.

  • GenAI Engineering
  • Build RAG pipelines for datasheet extraction, BOM parsing, RFQ drafting, and supplier

communication- grounding LLMs proprietary component data.

  • Design and manage embedding strategies: choose the right embedding models, chunk

sizes, retrieval architectures (hybrid dense-sparse search), and re-ranking layers for each

use case.

  • Fine-tune and adapt open-source LLMs (Llama 3, Mistral, Phi, Qwen, or equivalents) for

domain-specific tasks- component classification, part number normalisation, lifecycle

prediction from text.

  • Build prompt engineering systems that are version-controlled, evaluated, and reproducible-

not ad-hoc prompts left in notebooks.

  • Evaluate and integrate frontier model APIs (OpenAI, Anthropic, Gemini) alongside self-

hosted open-source models based on cost, latency, and capability trade-offs.

  • Classical ML & Predictive Intelligence
  • Build and deploy classical ML models for pricing signal detection, demand forecasting, lead

time prediction, lifecycle risk scoring, and inventory age risk- using gradient boosting, time-

series models, and clustering techniques.

  • Own the full ML lifecycle: feature engineering, model training, offline evaluation, A/B testing,

production monitoring, drift detection, and retraining pipelines.

  • Make principled decisions on when to use a simple statistical model versus a large LLM-

optimising for cost, latency, and explainability at every layer.

  • MCP, Tools & Integrations
  • Design and maintain the MCP server layer that exposes#39;s business capabilities

(pricing lookups, supplier scoring, BOM analysis, RFQ status) as callable tools for internal

agents and external AI clients.

  • Define a coherent tool taxonomy across all products- ensuring agents can compose tools

from 1Source, 1Data, and 1Xcess without tight coupling or redundancy.

  • Build integration connectors for distributor APIs, ERP systems, and data feeds that are

agentic-friendly- structured outputs, error contracts, and rate-limit-aware retry logic.

  • Stay ahead of the MCP ecosystem: evaluate new servers, contribute open-source tooling

where it benefits the platform, and ensure's stack is composable with the broader AI

ecosystem.

  • MLOps, Infrastructure & Open-Source Stack on AWS
  • Own the end-to-end MLOps stack on AWS: SageMaker for model training and hosting,

Lambda and ECS for lightweight inference, S3 and RDS for data persistence, and

CloudWatch for observability.

  • Prefer open-source tooling at every layer: MLflow for experiment tracking, Qdrant or

Weaviate for vector search, Airflow or Prefect for pipeline orchestration, Ollama for local

inference, and Hugging Face for model management.

  • Build containerised inference services (Docker, Kubernetes / EKS) with autoscaling, blue-

green deployment, and latency SLAs- every production model must have a runbook.

  • Implement model monitoring: track prediction drift, data drift, latency percentiles, and

business KPI alignment- automated alerts before humans notice degradation.

  • Drive cloud cost discipline: choose self-hosted open-source over paid APIs wherever

performance is equivalent; benchmark and document every trade-off.

  • Vibe Coding & Engineering Culture
  • Actively use and champion AI-assisted development tools- Cursor, GitHub Copilot,

Windsurf, Bolt, or equivalents- and set the standard for how the team uses them to ship

faster.

  • Guide the Vibe Coder in translating product requirements into working AI-assisted

prototypes and production-ready components- from idea to demo in hours.

  • Evaluate and onboard new vibe coding and AI dev tooling as the ecosystem evolves; what

is state-of-the-art today will be table stakes in six months.

  • Create a culture where shipping beats theorising: every model, every agent, every pipeline

is measured against a business KPI within its first sprint in production.

  • Company-Wide AI Strategy & Leadership
  • Define the multi-year AI roadmap fori- identifying where agentic AI, fine-tuned LLMs,

and classical ML create the most durable business value across all products.

  • Partner with the SVP of Data Products, VP of Sourcing Products, and CPTO to embed AI

capabilities into core product workflows- you are the connective tissue between product

ambition and technical reality.

  • Champion responsible AI: define evaluation frameworks, bias checks, and guardrails for all

agentic systems before they touch production data.

  • Represent AI strategy and technical credibility to investors, enterprise customers, and

technology partners when required.

  • Recruit, mentor, and develop the ML Engineer and Vibe Coder- setting a high bar for craft,

velocity, and continuous learning.

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About Company

Job ID: 147211075