This grant supports the annual workshop for Women in Machine Learning (WiML). WiML brings together female researchers in industry and academia, postdoctoral fellows, and graduate students from the machine learning community to exchange research ideas and build mentoring and networking relationships. The one-day workshop is especially beneficial for junior graduate students, giving them a supportive environment in which to present their research (in many cases, for the first time) and enabling them to meet peers and more senior researchers in the field of machine learning. The networking opportunities provided by the workshop have also helped senior graduate students find jobs following graduation. This workshop will foster collaboration within the machine learning community. Established researchers will expose workshop participants about cutting-edge ideas from diverse areas of machine learning. Students will present their own research and receive valuable feedback from both senior researchers and their peers. By enabling women at all stages of their careers in machine learning to exchange research ideas and form new relationships, we expect that new connections and research collaborations will be established, thereby advancing the state-of-the-art of the field.

This workshop will provide a forum for female graduate students, postdoctoral fellows, junior and senior faculty, and industry and government research scientists to exchange research ideas and establish networking and mentoring relationships. Undergraduates, particularly those who are interested in pursuing graduate school or industry positions in machine learning, are also welcome to attend. Bringing together women from different stages of their careers gives established researchers the opportunity to act as mentors, and enables junior women to find female role models working in the field of machine learning. The workshop will also benefit the wider machine learning community: The WiML website includes a directory of over 400 women for organizations looking for female invited speakers. Co-locating with a major machine learning conference (a) enhances the visibility of the participants in he broader community and (b) facilitates travel for WiML attendees to stay on for the main conference.

Project Start
Project End
Budget Start
2016-11-01
Budget End
2019-10-31
Support Year
Fiscal Year
2016
Total Cost
$49,000
Indirect Cost
Name
Harvard University
Department
Type
DUNS #
City
Cambridge
State
MA
Country
United States
Zip Code
02138