Python Developer

ADLIB Recruitment
Bristol
1 year ago
Applications closed

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Unique opportunity to help protect biodiversities.Python, PostgreSQL/NoSQL, AWS, Restful API’s, CI/CD.Fully remote (UK) opportunity, exciting ClimateTech leader.Python Developer required to join a scaling ClimateTech organisation developing cutting-edge solutions for the ecology space.  This forward-thinking start-up help people to better understand changes to biodiversity using machine learning and are looking for someone who is passionate about nature/the environment to have a positive impact on the planet and join their team.What skills you'll be needingExtensive experience in python backend development and frameworks (FastAPI, Flask, SQLAlchemy, etc).Solid experience with database design, management, and optimization (e.g. PostgreSQL, NoSQL, solutions).Proficiency in building RESTful APIs and working with cloud services (e.g. AWS, GCP, or Azure).Familiarity with containerization technologies (e.g. Docker) and CI/CD pipelines.Understanding of security best practices for backend development.Experience working in an agile development environment.Passion for environmental impact and building technology that drives positive change.Nice to HavesExperience with Machine Learning, Data Science and Data analytics platformsKnowledge of modern data processing tools or real-time data systems.Experience managing a Backend Development TeamFamiliarity with ecology, environmental science, or related industries.What you'll be doingAs...

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