Computer Vision Engineer
- San Sebastián, Guipúzcoa
- Permanente
- Tiempo completo
next-generation capabilities.Build and deploy solutions to interesting computer vision or machine learning
problems including document data extraction, fraud detection or biometric verification challenges. Design and implement efficient pre-processing steps around digital images or video files.Work alongside other machine learning and computer vision specialists in order to deliver on both short term objectives and long term goals.Support and guide other engineers in learning about, applying and delivering product features driven by machine learning techniques.
Desired skillsSpecific training in Computer Vision and Deep Learning.3+ years of experience in Computer Vision and Deep Learning, ideally around 5.Experience working in investigation or start-up environment.AWS knowledge (Lambda, Sagemaker, Rekognition...).Python development experience and good practices.Knowledge of libraries such as pytorch and opencv.Your benefitsCompetitive salary, commission and attractive benefitsGlobal career path for specialists and leadershipTailored trainings and development opportunitiesInternational and inspirational working environment with a dynamic work culture
Social Impact driven: enabling access to quality education through online learning, which is linked to the Sustainable Development Goals (SDG) 4. Access to Quality Education and 13. CO2 reduction. How do we measure it?Objective 1: Strengthen the quality of online training.
Indicator 1: number of online training users who have validated a professionaldegree or certification.Objective 2: Improve accessibility to higher education or corporate trainingIndicator 1: Number of users with disabilities who have been able to examine themselves remotely.Indicator 2: Number of users in areas far from the training centers who have been able to examine themselves remotely.Indicator 3: Number of users with time restrictions who have been able to examine themselves remotely.Indicator 4: Number of users with financial restrictions who have been able to examine themselves remotely.Objective 3: Reduce the environmental impact of trips to educational centers or corporates