
Mike Lewis
Research Scientist @ Meta AI
optimization
large language models
efficiency
prompt tuning
unsupervised passage retrieval
reparameterization
3
presentations
5
number of views
SHORT BIO
Mike Lewis is a research scientist at the FAIR team at Meta AI in Seattle, working representation learning and reasoning for language. Previously he was a postdoc at the University of Washington (working with Luke Zettlemoyer), developing search algorithms for neural structured prediction. He has a PhD from the University of Edinburgh (advised by Mark Steedman) on combining symbolic and distributed representations of meaning. He received an Outstanding Submission Award at the 2014 ACL Workshop on Semantic Parsing, Best Paper at EMNLP 2016, Best Resource Paper at ACL 2017, and Best Paper Honourable Mention at ACL 2018. His work has been extensively covered in the media, with varying levels of accuracy.
Presentations

Residual Prompt Tuning: improving prompt tuning with residual reparameterization
Anastasia Razdaibiedina and 6 other authors

Improving Passage Retrieval with Zero-Shot Question Generation
Mike Lewis

DEMix Layers: Disentangling Domains for Modular Language Modeling
Suchin Gururangan and 3 other authors