Applied AI Engineer, Fullstack
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What the team is looking for.
Mistral AI is seeking an Applied AI Engineer to facilitate the adoption of its products among customers and collaborate with them to address complex technical challenges.
The Applied AI Engineer - Software Engineer will be an integral part of our Applied AI Engineering team, which is dedicated to driving the successful deployment of Mistral AI products. They will work hand-in-hand with customers from the pre-sale stage to post-implementation, ensuring our solutions meet and exceed client expectations.
Responsibilities:
- Collaborate closely with researchers, AI engineers, and product engineers on complex customer projects, integrating cutting-edge AI models into clients’ software products.
- Design, develop, and maintain scalable and robust full-stack applications, ensuring seamless integration between front-end and back-end systems.
- Develop complex use cases with our customers, providing guidance and ensuring the best production integration with back-end and front-end interfaces.
- Collaborate with our product and science team to continuously improve our product and model capabilities based on customers’ feedback.
Requirements:
- Fluent in English and Korean
- Degree in Computer Science, Software Engineering, or a related field
- 2+ years as a technical individual contributor on cutting-edge technologies
- Strong technical coding skills in Python and TypeScript
- Experience with front-end frameworks such as React, NextJS, or VueJS
- Experience with back-end technologies such as NodeJS
- Solid understanding of software development principles, including design patterns, data structures, and algorithms
- Strong communication skills with an ability to explain complex technical concepts in simple terms with technical and non-technical audiences
Ideally:
- Experience with LLM/GenAI models
- Contributed to open-source projects or libraries
- Experience as a Customer Engineer, Forward Deployed Engineer, Sales Engineer, Solutions Architect or Technical Product Manager
- Python
- TypeScript
- React
- NextJS
- VueJS
- NodeJS
- Computer Science
- Software Engineering
- LLM/GenAI models
- open-source projects
- Customer Engineer
- Forward Deployed Engineer
- Sales Engineer
- Solutions Architect
- Technical Product Manager
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