X4 Technology | Machine Learning Engineer

X4 Technology
London
1 year ago
Applications closed

Job Title: Machine Learning EngineerLocation: Fully Remote UKJob Type: 6 Month Contract + chance for extensionInterview Process: Video Interviews held remotelyRate: DOE Outside IR35A Leading London based IT consultancy are seeking a Machine Learning Engineer.Machine Learning Engineer Key Responsibilities:Designing and building software and infrastructure to support and leverage Machine Learning systems.Developing reusable, scalable tools to streamline the deployment and delivery of ML systems.Collaborating with customers to understand their requirements and deliver tailored solutions.Partnering with data scientists and engineers to establish best practices and advance ML technologies.Defining and implementing our client’s approach to operationalizing ML software for real-world applications.Machine Learning Engineer Key Skills Required:Comprehensive understanding of the full machine learning lifecycle, from development to production.Experience deploying machine learning models using frameworks like Scikit-learn, TensorFlow, or PyTorch.Proficiency in Python and adherence to software engineering best practices.Strong technical expertise in cloud architecture, security, and deployment, with experience in AWS, GCP, or Azure.Hands-on experience with containers, particularly Docker and Kubernetes.Solid foundation in probability, statistics, and common supervised and unsupervised learning techniques.If you think this could be an exciting opportunity for you then please apply now!

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