tinyML Talks: Processing-In-Memory for Efficient AI Inference at the Edge
"Processing-In-Memory for Efficient AI Inference at the Edge" Kaiyuan Yang Assistant Professor Rice University Weier Wan Head of Software-Hardware Co-design Aizip Performing ever-demanding AI tasks in battery powered edge devices requires continuous improvement in AI hardware energy and cost-efficiency. Processing-In-Memory (PIM) is an emerging computing paradigm for memory-centric computations like deep learning. It promises significant energy efficiency and computation density improvements over conventional digital architectures, by alleviating the data movement costs and exploiting ultra-efficient low-precision computation in the analog domain. In this talk, Dr. Kaiyuan Yang will share his research group’s recent silicon-proven SRAM-based PIM circuit and system designs, CAP-RAM and MC2-RAM. Next, Dr. Weier Wan will introduce his recent RRAM-based PIM chip, NeuRRAM. Through full-stack algorithm-hardware co-design, these demonstrated PIM systems attempt to alleviate the critical inference accuracy loss associated with PIM hardware while retaining the desired energy, memory, and chip area benefits of PIM computing.

AI’s Hardware Problem

CICC ES4-3 - "Introduction to Compute-in-Memory" - Dr. Dave Fick and Dr. Laura Fick

tinyML Talks UK: Bio Photo Voltaics (BPV): from fundamental principles to practical applications

PF-LLM: Large Language Model Hinted Hardware Prefetching | Deconstructing the Research Paper

Lecture 7 In memory computing

Scott Aaronson - The TRUTH About Quantum Computing

Future Computers Will Be Radically Different (Analog Computing)

tinyML Talks Boon Logic: "Amber: A Complete, ML-Based, Anomaly Detection Pipeline for...

HOLY ROSARY TODAY THURSDAY, JUNE 11, 2026 ST. JUDE THADDEUS & LUMINOUS MYSTERIES | DAILY HOLY ROSARY

tinyML Talks: SRAM based In-Memory Computing for Energy-Efficient AI Inference

Bill Dally | Directions in Deep Learning Hardware

Resistive RAM (memristor) Modeling and In-memory Computing using Majority Logic

tinyML Talks Eben Upton: Inference with Raspberry Pi Pico and RP2040

EMPIEZA EL JUEVES CON FE | HOY DIOS TE DA PROTECCIÓN Y PAZ PARA TU FAMILIA | PADRE FREDDY BUSTAMANTE

In-Memory Computing

How AI Discovered a Faster Matrix Multiplication Algorithm

Mastering LLM Inference Optimization From Theory to Cost Effective Deployment: Mark Moyou

The Coming AI Chip Boom

Comp. Arch. - Guest Lec.: In-Memory Computing: Memory Devices & Applications (ETH Zürich, Fall 2020)

