Principal Data Scientist

Intelmatix
London
8 months ago
Applications closed

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Principal Data Scientist

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Principal Data Scientist - Remote

Principal Data Scientist / AI Engineer

Principal Data Scientist About Intelmatix: Intelmatix is a pioneering deep-tech AI company, established by a cohort of MIT technologists. We have a robust global presence with offices strategically located in Riyadh, London, and Boston, facilitating international operations and diverse collaborations with businesses worldwide. Our mission is to transform enterprises into cognitive powerhouses by making our Decision Intelligence technology both accessible and straightforward to integrate. Job Overview: Join us as a Principal Data Scientist at Intelmatix, where you will spearhead our data science initiatives. This pivotal leadership role demands not only profound expertise in data science and technical mastery but also the acumen to guide a team toward delivering innovative solutions. Key Responsibilities: Strong ability to translate technical insights into actionable business strategies, magnifying the impact of data science on business outcomes. Propel advancements in data science methodologies and best practices. Deliver compelling insights and strategic recommendations to executive leadership, influencing key decision-making processes. Direct the design and implementation of sophisticated predictive models using Python’s ecosystem, including advanced frameworks such as TensorFlow, Keras, and PyTorch. Engage with executive leadership and cross-functional teams to craft and execute data science strategies that bolster business objectives. Stay at the forefront of machine learning and data science trends, promoting a culture of continuous learning and experimentation within the team. Manage multiple projects and provide mentorship to data scientists and machine learning scientists throughout the company. Ensure the seamless transition of solutions into production, adhering to the highest quality standards and checks Required Qualifications: Advanced degree (PhD or Masters) in a quantitative field such as Computer Science, Statistics, Mathematics, or Engineering. 7 years of experience in quantitative analytics or data modeling, with a profound expertise in machine learning, predictive modeling, and algorithm development. Strong proficiency in Python and SQL. Proficiency in Python and libraries such as Pandas, NumPy, and machine learning tools (Scikit-Learn, TensorFlow, PyTorch). Proven experience working with cross-functional and cross-cultural teams Demonstrated leadership capabilities with excellent communication skills and the ability to motivate and inspire a team. Strong technical skills to improve, enhance, monitor and review machine learning models Preferred Qualifications: Specialized knowledge in domains like retail, logistics, urban planning, finance, healthcare, or retail. Comprehensive knowledge of AWS cloud services and architecture pertinent to data science projects. Employee Benefits: At Intelmatix, our benefits package is designed to meet the diverse needs of our employees, reflecting our dedication to their well-being and professional growth. Depending on your office location and specific needs, our benefits may include: Medical insurance for you and your dependents Salary advance for housing costs Role-related training support Children's school allowance Relocation support Travel tickets Wellness programs Pension contributions In-office snacks pantry We are committed to continuously enhancing our benefits package to adapt to the unique needs and circumstances of our valued team members, ensuring a supportive and enriching environment for everyone at Intelmatix.

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