Shape your future
Explore exciting opportunities at Xtedder and join our dynamic team!
Machine Learning Engineer
< Hybrid_2x >
JOB REF NO:
JOBX-66C86312
Job Description:
We are looking for a highly skilled Machine Learning Engineer with strong experience in Natural Language Processing and MLOps. The ideal candidate will play a key role in designing, implementing, and deploying ML models in production environments, particularly in NLP tasks. This role requires hands-on expertise with leading ML frameworks and cloud platforms, and a mindset focused on innovation and continuous improvement.
Responsibilities:
Develop and optimize Machine Learning models with a focus on NLP. Implement MLOps pipelines for model automation and scalability. Work with cloud platforms such as Vertex AI and Azure ML for solution development and deployment. Collaborate with multidisciplinary teams to integrate models into real-world products. Continuously monitor and improve the performance of models in production.
Requirements:
Minimum of 5 years of experience with Python and libraries such as: - TensorFlow - PyTorch - Transformers (Hugging Face) Proven experience in NLP, including tasks such as text classification, sentiment analysis, language generation, among others. Strong knowledge of MLOps and the full lifecycle of ML models. Hands-on experience with Vertex AI (Google Cloud) and Azure ML (Microsoft Azure). 🎯 Ideal Profile: Analytical thinking and critical mindset. Good communication skills and team spirit. Proactivity and a passion for solving technical challenges. Continuous interest in new technologies and AI trends. Experience in Governmental projects
Shape your future with us @Xtedder
Job Application
Join
Us
This file is already ready for upload!
Drag your files here or click here
Max file size: 2 MB per file, max 3 files
Your application has been submitted successfully.
We will be in touch shortly!
Thank you!
Get Started with Xtedder
Contact / WhatsApp:
+351 213 861 550
E-mail:
getintouch@xtedder.com
Av. Engenheiro Duarte Pacheco Amoreiras
Torre 1, Piso 3 S9
1070-101
Lisbon, Portugal