Full-Time Data Scientist
QAD, Inc. is hiring a remote Full-Time Data Scientist. The career level for this job opening is Experienced and is accepting Paris, France based applicants remotely. Read complete job description before applying.
QAD, Inc.
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As a Data Scientist, you will work on advanced AI/ML models, focusing on RAG, LLMs, prompt engineering, and AI Agents. You will collaborate with cross-functional teams to enhance AI capabilities, develop innovative solutions, and optimize machine learning models.
Being part of the Engineering team, based in the US and Europe, this role brings great opportunities to work on various projects, technologies, with a diverse range of teams.
The Engineering team is responsible for the design, development, and deployment of the organization's core products, with a focus on efficiency and speed. We architect and implement comprehensive solutions, including tools and platforms, to address key business requirements. These solutions encompass critical areas such as provisioning, configuration, CI/CD, monitoring, SLAs, performance optimization, and system uptime.
This is a fully remote role from France with openness to travel to the office from time to time.
What you will do:
- Develop, fine-tune, and optimize Large Language Models (LLMs) and Retrieval-Augmented Generation (RAG) systems.
- Implement AI Agents capable of decision-making and interactive learning.
- Research and experiment with various prompt engineering techniques to improve model performance and accuracy.
- Build and maintain machine learning pipelines for AI/ML models in production environments.
- Work with structured and unstructured data, including text, images, and multimodal datasets.
- Collaborate with software engineers and data engineers to integrate AI models into scalable applications.
- Analyze and interpret model outputs to refine algorithms and improve performance.
- Stay updated on the latest AI and ML research and contribute to internal knowledge-sharing initiatives.