Feedback details
Team feedback
The University of Toronto students investigated whether (and how) machine learning techniques could be used to extract meaningful climate change actions from existing content. While the project work was intended to be an exploration/feasibility study, the results are extremely promising.
During their research they explored many potential NLP, NLU, and other techniques and libraries. The high quality of their project deliverable testifies to the success of their research, teamwork, and problem solving approach.
Importantly for such a complicated domain, they were able to articulate the complex math and ML techniques and approaches in a relatively non-technical way. This allowed me to gain a (limited) understanding of what they were doing, and why. They asked for feedback to adjust and improve their algorithm and align it with project goals and objectives. They proposed some very practical approaches to identifying and extracting imperative actions. They also indicated many areas for future improvement or investigation.
Overall the team's result was of great insight and met my expectations. I recommend them and their work.
Data analytics, machine learning, deep learning, ai
Machine learning
Nlp
- Author
-
Founder & CEO, Deploy Solutions
- Experience
- Machine Learning
- Project
- Extract guidance and actions from Climate Change documents using Machine Learning
- Created At
- December 17, 2019
Data analytics, machine learning, deep learning, ai
Machine learning
Nlp