Bradley Merrill Thompson, Member of the Firm, will present, "Machine Learning for Regulatory Attorneys and English Majors," part of the Summer Learning Series, hosted by the Food and Drug Law Institute. 

This webinar is intended for regulatory attorneys advising clients developing algorithms for regulated or nearly regulated uses. It will provide a broad understanding of the machine learning models including supervised, unsupervised, and deep learning. The webinar will also cover the importance of and challenges in mitigating explicit and implicit racial bias negatively impacting Blacks and ethnic minority groups in algorithmic design. The webinar will include a case study using machine learning on data from FDA on 510(k) summaries and include the use of natural language processing (i.e., how Alexa understands humans).

For more information, please visit FDLI.org.

Event Detail

2:00 pm - 3:30 pm ET
Live Webinar (ET)
Jump to Page

Privacy Preference Center

When you visit any website, it may store or retrieve information on your browser, mostly in the form of cookies. This information might be about you, your preferences or your device and is mostly used to make the site work as you expect it to. The information does not usually directly identify you, but it can give you a more personalized web experience. Because we respect your right to privacy, you can choose not to allow some types of cookies. Click on the different category headings to find out more and change our default settings. However, blocking some types of cookies may impact your experience of the site and the services we are able to offer.

Strictly Necessary Cookies

These cookies are necessary for the website to function and cannot be switched off in our systems. They are usually only set in response to actions made by you which amount to a request for services, such as setting your privacy preferences, logging in or filling in forms. You can set your browser to block or alert you about these cookies, but some parts of the site will not then work. These cookies do not store any personally identifiable information.

Performance Cookies

These cookies allow us to count visits and traffic sources so we can measure and improve the performance of our site. They help us to know which pages are the most and least popular and see how visitors move around the site. All information these cookies collect is aggregated and therefore anonymous. If you do not allow these cookies we will not know when you have visited our site, and will not be able to monitor its performance.