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Senior Data Scientist

Posted 9 days agoViewed

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💎 Seniority level: Senior, 4+ years

🔍 Industry: Software Development

🏢 Company: Cambridge Mobile Telematics👥 251-500💰 $500,000,000 Private over 6 years agoTransportationInsuranceMobilePublic Safety

⏳ Experience: 4+ years

Requirements:
  • Bachelor’s degree or equivalent years of experience and/or certification in Data Science, Computer Science, Statistics, Mathematics or Engineering
  • 4+ years of relevant working experience in Data Science
  • Must possess a deep understanding of data science principles, algorithms and practices, such as machine learning, deep learning, statistics and probability
  • Must possess a thorough knowledge of software development process, and proven coding skills using scripting languages e.g. Python, Pandas, NumPy, scikit-learn and SQL
  • Ability to write and navigate code, request data from data sources and code from scratch
  • Experience with deep learning frameworks (TensorFlow, Keras, Torch, Caffe, etc.) and knowledge of Big Data infrastructure (Hadoop, Spark, etc.) will be a plus
Responsibilities:
  • Develop ML / DL models which pattern driving behaviors and vehicle kinematics in data collected via smartphone sensors
  • Leads projects and solutions through the full development stages, from data pre-processing, modeling, testing, through roll-out with minimum management oversight
  • Write code for debugging complex issues and creating new solutions that will run as part of production systems
  • Support customers’ requests regarding the production ML models and derive deep insights from data
  • Communicate and present the data science work within the data science team as well as to stakeholders across the org and to collaborate across different teams
  • Complete any additional tasks that may arise
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