Workshop
Efficient Large Vision Models
Amirhossein Habibian · Fatih Porikli · Auke Wiggers · Yung-Hsiang Lu · Vincent Tao Hu · Lanqing Guo · Qinghao Hu
106 C
Thu 12 Jun, 8 a.m. PDT
Keywords: Efficient Large / Edge Models
This workshop focuses on the core principles of efficiency in large-scale vision models. How do we minimize redundant operations in generative models without compromising quality? Can autoregressive decoding and diffusion sampling be accelerated through parallelization? What are the trade-offs between compression, quantization, and expressivity? We seek to advance new directions in compact model representations, adaptive computation, parallel decoding, and structured sparsity—approaches that go beyond incremental optimizations and redefine how LVMs operate.
We invite researchers working on fast and scalable vision architectures, low-cost inference, and efficient generative models to share their insights. Whether through sampling acceleration, efficient transformers, new architectural paradigms, or theoretical limits of model compression, this workshop provides a platform to discuss how LVMs can be optimized for both performance and practicality.
Join us in shaping the next generation of vision models—where efficiency is not just a constraint, but a driving force for innovation.
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