Machine Learning Engineer (Remote)

Tribal Tech - The Digital, Data & AI Specialists
1 year ago
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Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineer

Machine Learning Engineering Fully Remote $My client is at the forefront of revolutionizing financial data extraction and analysis. Their cutting-edge AI solutions transform complex documents into actionable insights, empowering businesses to make informed decisions faster than ever before. We're seeking a visionary Machine Learning Engineer to spearhead document extraction AI initiatives. In this role, you'll push the boundaries of natural language processing (NLP), Computer Vision, and document understanding technologies. As an ML Engineer you'll: - Multi-modal Information extraction: extracting key insights from vast amounts of data in different formats (like tables, text, and charts), both structured and unstructured. Term disambiguation: detect which financial terms are equivalent, but written differently. Machine translation: bridging the gap of language for financial statements. -Collaborate closely with software engineers, and domain experts to define project scope, analyze data, and integrate models into production environments. -Conduct and document rigorous experiments to evaluate and improve model performance. -Build and maintain efficient and scalable data pipelines for data pre-processing, model training, and deployment. -Monitor and maintain deployed models, ensuring optimal performance and addressing any issues with stakeholders proactively. -Stay at the forefront of AI, actively contributing to knowledge sharing and innovation within the team. Master's in Computer Science, Data Science, or related field - 5+ years of ML experience, with a focus on NLP, computer vision and document understanding - Expertise in Python -Experience with machine learning libraries and frameworks (Numpy, PyTorch, HuggingFace, OpenCV, scikit-learn, spaCy, NLTK, etc.). - Proficiency with cloud platforms and ML pipeline tools - Strong software engineering fundamentals Bonus Points - Experience with financial data extraction and SEC filings - Familiarity with large language models and generative AI - Innovation: Be at the forefront of AI-driven document processing - Transform how businesses extract value from unstructured data - Enjoy the benefits of remote work with a global team Join in Shaping the Future of Data Extraction If you're passionate about leading AI innovation and building solutions that matter, we want to hear from you. They celebrate diversity and are committed to creating an inclusive environment for all employees.

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