Senior AI Engineer

AEJ Consulting
united kingdom
10 months ago
Applications closed

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Join a fast-growing SaaS company at the forefront of AI innovation. As a Senior AI Engineer, you will play a key role in designing, developing, and deploying advanced AI solutions while contributing to the company’s technology strategy. Collaborating with cross-functional teams, you will identify AI opportunities, shape the product roadmap, and ensure scalable, cost-efficient solutions.Key Responsibilities: * Develop and enhance AI solutions, integrating them into broader systems. * Identify AI-driven business opportunities and contribute to the AI roadmap. * Lead the development of intelligent features for future products. * Design scalable, reliable, and efficient AI architectures. * Make strategic technology decisions to support business goals. * Develop cost models and assess AI feasibility. * Address risks, including governance and compliance challenges. * Support AI strategy development, documentation, and best practices.Skills & Experience: * Minimum 2+ years of experience running AI models in production on Azure. * Expertise in AI deployment patterns and architectures on Azure, including self-hosted LLMs. * Strong knowledge of machine learning algorithms and data analytics. * Experience in designing and implementing Azure AI environments (e.g., Landing Zones, end-to-end Azure infrastructure). * Proven experience contributing to the architecture and design of scalable, reliable systems. * Degree (Master’s or Bachelor’s) in a relevant AI discipline.If this position is a match for your skillset, please apply and we will be in touch

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