AI Cloud Platform Engineer

Vodafone
London
1 month ago
Applications closed

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Role Purpose

Role purpose:

At Vodafone, our strategy revolves around three core pillars: Customer, Simplicity, and Growth. As we focus on enhancing our internal capabilities in AI, Machine Learning, and Generative AI, the role of an AI Cloud Engineer becomes pivotal. This role will support our technology department in driving innovation, improving customer experiences, and simplifying our operations through advanced AI solutions.

The AI Cloud Engineer will be responsible for designing, developing, and deploying AI solutions on cloud platforms. This role involves collaborating with cross-functional teams to integrate AI capabilities into existing systems, creating scalable, efficient, and secure AI infrastructure. The AI Cloud Engineer will play a crucial role in driving innovation and enhancing Vodafone's data-driven decision-making processes.

What you’ll do

Design and implement AI models and algorithms on cloud platforms. Develop and maintain cloud-based AI infrastructure, ensuring scalability and security. Collaborate with data scientists, software engineers, and other stakeholders to integrate AI solutions into existing systems. Monitor and optimize the performance of AI models and infrastructure. Stay updated with the latest advancements in AI and cloud technologies and apply them to improve existing solutions.

Who you are

Strong experience with cloud platforms such as AWS, Azure, or Google Cloud. Proficiency in programming languages such as Python, Java, or C++. In-depth knowledge of AI and machine learning algorithms and frameworks (, TensorFlow, PyTorch). Experience with data processing and storage technologies (, Hadoop, Spark, SQL). Understanding of DevOps practices and tools for continuous integration and deployment.

Strong understanding of data security, privacy, and compliance standards.

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