Most communications and interactions with customers nowadays are done in Text format. There are multiple situations when finding the category a text belongs could increase the performance of a process drastically. At ILO they analyze thousands of news per year and categorize those to perform analytics on it. Know if a newspaper article is talking about labor initiatives, if these initiatives are an expansion of a plan are some of the more than 15 categories they are capturing.
This process takes considerable work for them, that is possible to automatize and scan much more news per year.
Create several AI models based on the historical classification they have
Scrap the indicated web pages to find the news
Integration of the process with their current way to work
Create retrain pipelines to guarantee a continuous improvement of the models
Reduce the time a newspaper article takes to be analyzed
Increase the news analysis capacity on the team
Save time from the team to spend onmore interesting tasks