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Research Manuscript: Where Analog, Digital, and ML/AI Meet!
DescriptionThis interdisciplinary session showcases advances in low-power, high-performance architecture and circuit design for AI/ML and imaging applications, and the use of AI/ML in analog and digital circuit design. It starts with a low-power architecture for high-resolution image sensing. The second paper optimizes memory, power, and security for hyperdimensional computing. The third paper improves performance prediction of circuit topologies within learning-based analog circuit optimization. The fourth paper introduces ChatCPU, an LLM-based hardware design and verification platform. The next two papers aim to accelerate model training and inference with reduced-circuit-size and low-power architecture designs. The seventh paper proposes a Generative AI and ML-based framework to drive automated analog layout synthesis. The session concludes with a hardware accelerator design to handle the unique computational requirements of neural volume rendering.
Event TypeResearch Manuscript
TimeTuesday, June 253:30pm - 5:30pm PDT
Location3004, 3rd Floor
Topics
AI
Design
Keywords
AI/ML, Digital, and Analog Circuits
Presentations
3:30pm - 3:45pm PDTCEDAR: Computing-in-pixel Edge-aware Detection and Reconstruction Architecture for High-resolution 3D Imaging
3:45pm - 4:00pm PDTVAE-HDC: Efficient and Secure Hyper-dimensional Encoder Leveraging Variation Analog Entropy
4:00pm - 4:15pm PDTGraph-Transformer-based Surrogate Model for Accelerated Converter Circuit Topology Design
4:15pm - 4:30pm PDTChatCPU: An Agile CPU Design and Verification Platform with LLM
4:30pm - 4:45pm PDTEnergy-efficient SNN Architecture using 3nm FinFET Multiport SRAM-based CIM with Online Learning
4:45pm - 5:00pm PDTAdderNet 2.0: Optimal FPGA Acceleration of AdderNet with Activation-Oriented Quantization and Fused Bias Removal based Memory Optimization
5:00pm - 5:15pm PDTCDLS: Constraint Driven Generative AI Framework for Analog Layout Synthesis
5:15pm - 5:30pm PDTZeroTetris: A Spacial Feature Similarity-based Sparse MLP Engine for Neural Volume Rendering