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Snr Data Scientist - GenAI

Coca-Cola Europacific Partners
Croxley Green
1 month ago
Applications closed

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Are you looking for new challenges and personal growth within Coca-Cola Europacific Partners? Then we have a great opportunity for you! Do you have a personality with the power to influence and connect? Can you sustain the pace to keep on growing? Will you make an impact with your desire to win? Role Overview : The Data Scientist - GenAI Focus drives the development and implementation of Generative AI initiatives identified through the AI Incubator process. This role involves fine-tuning, deploying, and scaling GenAI models for commercial applications, such as knowledge base creation, recommendation systems, and retrieval-augmented generation (RAG). Key Responsibilities: · Develop and deploy GenAI models tailored for commercial applications. · Implement RAG techniques and other generative AI strategies to enhance business processes. · Ensure production-grade deployment using MLOps and LLMOps best practices. · Collaborate with cross-functional teams to align AI initiatives with business goals. · Stay updated on advancements in Generative AI and large language model frameworks. Qualifications: · Master’s degree in Artificial Intelligence, Computer Science, or a related field; a PhD is preferred. · Expertise in Generative AI and large language models (e.g., Hugging Face, OpenAI APIs). · Experience with MLOps and LLMOps for scalable model deployment. · Proficiency in Python and cloud-based data platforms (e.g., Databricks, Azure). · Excellent communication skills for engaging with technical and non-technical stakeholders. Application If this role is of interest to you please upload a recent copy of your CV and a member of the Talent Acquisition team will be in touch. We believe that equal opportunities means inclusion, diversity and fair treatment for all. As we have expanded recently into alcohol ready to drink Jack Daniel’s and Coca-Cola we recognise that some people prefer not to participate in alcohol related sales, interactions, or promotions. If that’s true for you – please raise this with your talent acquisition contact who will advise you on whether this role includes activities related to our alcohol portfolio. We aim to make our recruitment process as comfortable and accessible as possible and would appreciate it if you would advise us of any particular requirements, adjustments or requests you may have to help us ensure that your experience is enjoyable. Job Information: Hiring Manager: Muhammad Shakir Hussain Recruiter: Robin Meyer Grade: G3 Location: Pan EU : Spain:Cataluna : Barcelona || Pan EU : Spain:Madrid : Madrid || Pan EU : United Kingdom:CCEP Site Locations : Uxbridge We are Coca-Cola Europacific Partners (CCEP) – a dedicated team of 42,000 people, serving customers in 31 countries, who work together to make, move and sell some of the world’s most loved drinks. We are a global business and one of the leading consumer goods companies in the world.

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