Artificial Intelligence Engineer Intern(Applied GenAI)

NetMind.AI
London
2 months ago
Applications closed

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Senior Artificial Intelligence Engineer (LLMs / AI Agents)

Job Description

At NetMind.ai, we’re building the next-generation AI/ML platform powered by a global decentralized GPU infrastructure. Our mission is to deliver the simplest and most accessible generative AI solutions on the market and democratize access to AI technology globally. Our AI services range from inference model APIs, training and fine-tuning, GPU clusters, agentic workflows, to AI consulting—empowering organizations of all sizes and AI developers to seamlessly adopt AI in diverse industries. If you’re passionate about building 0-to-1 AI products, thrive in fast-moving environments, and can bridge deep technical expertise with customer-driven innovation, join us as we shape the future of decentralized AI computing.


We are looking for a "Builder"—not a researcher. You will work directly with our Business Development team to translate client needs into functional Proof of Concepts (PoCs). Your goal is to build impressive, working demos at lightning speed using the latest AI tools.

This is a pure Applied AI role. We don't need you to train models from scratch; we need you to masterfully orchestrate existing LLMs and tools to solve real business problems.


Responsibilities:

  • Rapid Prototyping: Build functional web-based AI demos from "zero to one" within days (or hours) to sup...

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