
Data Scientist
Posted May 25

Posted May 25
This is a fully remote position, open to applicants in Portugal.
• Create and enhance cutting-edge machine learning algorithms for image, text, audio, and tabular datasets.
• Design and refine Azure pipelines to facilitate model training across diverse domains.
• Develop comprehensive applications in Python, incorporating both unit and integration testing.
• Regularly assess system performance and address any issues that arise.
• Work collaboratively with cross-functional teams to deliver solutions for intricate challenges.
• A Bachelor's or Master's degree in Computer Science, Engineering, or a related discipline.
• High-level proficiency in Python, with expertise in PyTorch and TensorFlow.
• Demonstrated experience in managing and analyzing extensive datasets.
• Strong grasp of fundamental deep learning algorithms.
• Proficient in unit and integration testing (using Pytest) and continuous integration/continuous deployment (CICD) pipelines.
• Familiarity with data versioning, model management, experiment tracking, key evaluation metrics, and optimization methodologies.
• Comprehensive knowledge and practical experience with Docker.
• Good understanding of traditional Computer Vision and classical machine learning techniques.
• Significant experience with computer vision models, including those for object detection, image classification, and segmentation.
• Proficient with Azure services (ML Studio, Data Factory, Functions, Blob Storage) or equivalent services from other cloud providers.
• Awareness of AWS (Amazon Web Services) offerings, particularly EC2 and S3.
• Experience with Huggingface Transformers, Elastic Stack, and Gitlab CI pipelines.
• Familiarity with Prompt Engineering, Retrieval Augmented Generation (RAG), LLM frameworks (such as LangChain, LlamaIndex, Haystack, etc.), and fine-tuning large language models (LLMs).
• Flexible working hours.
• Opportunities for professional development.
AVENCORE
Smadex
ShipBob, Inc.
Get handpicked remote jobs straight to your inbox weekly.