Are you working on machine learning tasks such as sentiment analysis, named entity recognition, text classification, image classification or audio segmentation? If so, you need training data adapted for your particular domain and task. This webinar will explain the best practices and strategies for getting the training data you need. You can use it in natural language processing applications in finance, NLP for trading, and more. You can use it in natural language processing applications in finance, NLP for trading, and more. We will go over the setup of the annotation team, the workflows that need to be in place for guaranteeing high accuracy and labeler agreement, and the tools that will help you increase productivity and eliminate errors.
About the speaker
Dia Trambitas is a computer scientist with a rich background in Natural Language Processing. She has a Ph.D. in Semantic Web from the University of Grenoble, France, where she worked on ways of describing spatial and temporal data using OWL ontologies and reasoning based on semantic annotations. She then changed her interest to text processing and data extraction from unstructured documents, a subject she has been working on for the last 10 years. She has a rich experience working with different text annotation tools and leading document classification and NER extraction projects in verticals such as Finance, Investment, Banking, and Healthcare.