Lead Data Scientist

Indotronix Avani UK, Ltd.
Bristol
1 year ago
Applications closed

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Location: Bristol-UKWork Model: Hybrid - 2 Days Onsite in a WeekPermanent /Fulltime Job Client is Hiring for 3 different Positions like Lead Data Scientist / Senior Data Scientist /Data Scientist and Annual Salaries are different depending on the experience level and the positions hiring for the Client. Job Description:We and #39;re seeking an innovative Senior Data Scientist who excels in problem-solving, leadership, and the application of machine learning to complex datasets. As a Senior Data Scientist, you and #39;ll lead the way in data exploration, visualization, and integrating algorithms into client solutions, with opportunities to expand your skill set.Ideal candidates will bring expertise in Python, data science methodologies, and stakeholder management. Bring your passion for data science to a team focused on impactful client projects, where prior experience in defense is an advantage but not a requirement Senior Data Scientists play a pivotal role in comprehending intricate business challenges and formulating them into testable hypotheses for comprehensive analysis. As a senior member of the data science capability team, you will collaborate within a diverse, multi-disciplinary team, engaging in an array of client projects. Leveraging cutting-edge machine learning techniques and an astute analytical mindset, you will deliver profound insights to our clients. Your responsibilities span from intricate data exploration and visualization to seamlessly...

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