Python Developer

Yolk Recruitment
Grangetown
6 months ago
Applications closed

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Python Developer

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Senior Python Developer

Senior Python Developer

Senior Python Developer for Computer Vision

Software Engineer - £100k - £120k - Fully Remote Are you ready to transform the landscape of business solutions for freelancers and SMEs in the UK? Join one of the fastest-growing fintech companies and be a part of a revolution. If you're a passionate software engineer, this is your chance to make a real impact while working fully remotely About the Company Our client is at the cutting edge of fintech innovation,that simplifies the lives of freelancers and small business owners. By integrating advanced AI technology with exceptional customer service, they empower users to focus on growing their businesses. Why Join? Innovative Environment: Be part of a team that's at the forefront of fintech innovation. Impactful Work: Help automate and simplify the tedious tasks small business owners face daily. Tech-Forward: Work with the latest tech and methodologies, deploying code to production up to 750 times a month. Diverse Team: Join a talented group of around 150 professionals, including software developers and data scientists. Trusted by Many: Over 100,000 customers rely on this service for their banking and administrative needs.The Tech Stack Infrastructure: Google Cloud Databases: Postgres (Cloud SQL, AlloyDB), MongoDB (Atlas) Messaging: RabbitMQ (CloudAMQP) Microservices: Kubernetes (GKE), mainly developed using modern async PythonWhat We're Looking For Bachelor's or Master's degree in Computer Science, Software Engineering, or a related field. Minimum of 5 years of professional software development experience, with a focus on building complex back-end systems. Technical Skills: Proven experience of building complex distributed backends in Python, or in one of the following programming languages and be ready to switch to Python: C#, C/C++, Go, Rust or Java. Knowledge of basic data structures and algorithms. Strong understanding of event-driven architecture: design/implementation of event-driven systems, addressing the challenges it brings. Solid concurrent programming experience. In-depth experience with Postgres (or with any other database): indexing issues resolution, concurrency control, fail-over mechanics, etc. Being a top individual contributor while effectively collaborating with teammates and fellow software engineers from other teams

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