AI Engineer - UK (Remote)

Yeah! Global
London
11 months ago
Applications closed

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About the job AI Engineer - UK (Remote)

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Overview:

One of our clients based in California, USA is building a new team and looking for 7 highly skilled and motivated AI Engineers globally to join their dynamic team. As an AI Engineer, you will be pivotal in designing, developing, and deploying state-of-the-art AI solutions that enhance the capabilities of our products and services, driving efficiency and innovation.

Key Responsibilities:

Design and implement advanced machine learning algorithms to solve complex problems.Analyze large datasets to extract valuable insights and improve model performance.Train machine learning models and evaluate their performance using various metrics and methodologies.Integrate AI solutions into existing systems to enhance functionality and performance.Stay updated with the latest trends in AI and machine learning, applying this knowledge to drive innovation within the team.Work closely with cross-functional teams, including data scientists, software engineers, and product managers, to deliver high-quality AI solutions.Deploy AI models into production environments, ensuring their ongoing performance and reliability.Create comprehensive documentation for AI models, algorithms, and systems to facilitate knowledge sharing and maintenance.Qualifications:Bachelors or Masters degree in Computer Science, Engineering, or a related field.Proficiency in programming languages such as Python, R, or Java, and strong understanding of machine learning frameworks like TensorFlow, PyTorch, and scikit-learn.Demonstrated experience in developing and deploying AI models in a professional setting.Strong analytical and problem-solving skills with experience in working with large datasets.Excellent verbal and written communication skills to explain complex AI concepts to non-technical stakeholders.Ability to work collaboratively in a team environment and contribute to project success.Preferred Qualifications:Ph.D. in AI, Machine Learning, Data Science, or a related field.Experience in applying AI techniques in industries such as healthcare, finance, or e-commerce.Familiarity with big data platforms like Hadoop, Spark, and AWS.Published research in reputable AI or machine learning conferences or journals.

#J-18808-LjbffrRemote working/work at home options are available for this role.

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