Full Stack Software Engineer - AI Team

Foundever
1 year ago
Applications closed

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About Us

Foundever™ is a global leader in the customer experience (CX) industry. With 170,000 associates across the globe, we are the team behind the best experiences for +750 of the world’s leading and digital-first brands. Our innovative CX solutions, technology, and expertise are designed to support operational needs for our clients and deliver a seamless experience to customers in the moments that matter.  

We are looking for a Fullstack software engineer to join our team and drive the development of our AI-driven applications.

Job Summary

We are seeking an experienced Fullstack software engineer with expertise in backend and frontend technologies to join our AI team. You will be responsible for designing, implementing, and deploying state-of-the-art web applications and software. Working closely with data, machine learning engineers, and product managers, you will create AI-driven applications that have a direct impact on our business.

This role requires a very agile mindset, programming skills in Python (Fast API) for the backend, Vue.JS framework for the frontend, and extensive knowledge of development tools and cycles. You should be comfortable working in a fast-paced environment where priorities may shift, and be willing to own problems end-to-end.

Primary Job Responsibilities
  • Collaborating with data, ML, and DevOps engineers
  • Collaborating with UX/UI designers in Figma
  • Writing clean, efficient, tested, and scalable code
  • Creating visually appealing and responsive web pages, great attention to details
  • Ensuring cross-browser compatibility
  • Optimizing website performance for speed and efficiency
  • Creating and maintaining database models 
  • Ensuring the security and performance of the application’s server-side logic
  • Troubleshooting and debugging issues to optimize the application's functionality
  • Developing APIs for seamless front-end–back-end communication
Experience
  • Minimum of 5 years of experience in software development, with a focus on JavaScript frameworks and web applications
  • Proven expertise in scalable web application with modern frameworks
  • Used to work in an Agile environment
Skills/Abilities/Knowledge
  • Strong programming skills in Python
  • Proficiency in one or more back-end frameworks: Fast API, Nest.JS
  • Proficient in Vue.JS (preferred) or React
  • Proficiency in HTML, CSS, or JavaScript
  • Experience with Git and its CI/CD tools
  • A continuous learning mindset to stay up-to-date with evolving web technologies
  • Strong knowledge of database management systems (e.g., MySQL, PostgreSQL, and MongoDB)
  • Understanding of server-side architecture and RESTful APIs
  • Familiarity with cloud computing platforms (e.g., AWS and Azure)
Education
Bachelors in Computer Science or a related field
Tools and Applications
  • Backend framework: Fast API
  • Front end framework: Vue.JS
  • Version control and CI/CD: Gitlab
  • IDE: VS Code
Our Offer
  • Impactful work. Opportunity to work on cutting-edge AI-driven products that will be game-changers for our business.
  • Professional growth. Continuous learning and development opportunities in a dynamic, remote work environment.
  • Competitive compensation. Attractive salary and benefits package.
  • Collaborative environment.A supportive team culture with opportunities for occasional travel for training and industry events.
    #LI-TS1 #LI-Remote

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