
Mojtaba Valipour
low-rank
dynamic
adaptation
inference acceleration
llms
search-free
sortednet
2
presentations
1
number of views
SHORT BIO
Mojtaba Valipour is a Ph.D. candidate studying computer science at the University of Waterloo. He is passionate about Artificial General Intelligence, Machine Learning, and Causal Inference. His research focuses on devising novel approaches to make large language models more efficient and controllable. In addition, he views the current scholarly publication system as outdated and inefficient. He aims to develop a platform that removes barriers for researchers, allowing them to focus on their research and publish scientific results without hassles.
Presentations

Sorted LLaMA: Unlocking the Potential of Intermediate Layers of Large Language Models for Dynamic Inference
Parsa Kavehzadeh and 6 other authors

DyLoRA: Parameter-Efficient Tuning of Pre-trained Models using Dynamic Search-Free Low-Rank Adaptation
Mojtaba Valipour and 3 other authors