Data Scientist (Computer Vision Scientist) (Remote)

Corvid consulting
Croydon
1 month ago
Applications closed

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We’re looking for a talented and experienced engineer with background in computer graphics to join our Product development team in Weaveroo. You'll be working along side with a team from various engineering fields, so you must be a productive and collaborative member working towards the goal of pushing R&D technologies to production.


  • Be thorough in the theory of image processing and computer vision: Image processing, Image annotation and transformations, optimization and estimation, significant point detection and image descriptors.
  • Build and deploy computer vision solutions either on the edge or cloud.
  • Experiment with new machine learning algorithms suitable for the business use cases.
  • Analyze the performance of models and related business metrics and provide insights.
  • Understand client’s business to be able to articulate the business problem, create relevant solutions using technical knowledge and deploy the solutions to drive revenue.
  • Optimize and tune the solutions/models for the client context.
  • Communicate with end clients on solutions, recommendations and performance.
  • Collaborate and work closely with several key stakeholders (account, engineering, and product and R&D managers) to drive revenue.

Educational Qualifications

Bachelors or Master’s degree from reputed institutes with relevant R&D experience in one of the following fields:


  • Computer Vision
  • Image processing
  • Machine Learning and Artificial intelligence
  • Video processing

Desired Hard Skills
  • 1 to 2 years’ experience in using computer vision & toolkits e.g., OpenCV etc.
  • Experience with general purpose programming languages e.g., C/C++, Java, Python.
  • Experience in Deep Learning (Tensorflow, Torch)
  • Experience working with Databases and SQL Queries (optional).
  • Experience in Amazon SageMaker(Optional) or similar

Desired Soft Skills
  • Excellent communication skills
  • Analytical skills
  • Good presentation skills
  • Attention to details
  • Willingness to learn new technologies


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