With the rise in artificial intelligence (AI), computing systems are facing new challenges related to the large amount of data and the increasing burden of communication between the memory and the processing unit. In‐memory computing (IMC) appears as a promising approach to suppress the memory bottleneck and enable higher parallelism of data processing, thanks to the memory array architecture. As a result, IMC shows a better throughput and lower energy consumption with respect to the conventional digital approach, not only for typical AI tasks, but also for general‐purpose problems such as constraint satisfaction problems (CSPs) and linear algebra. Herein, an overview of IMC is provided in terms of memory devices and circuit architectures. ...
For decades, innovations to surmount the processor versus memory gap and move beyond conventional vo...
By reaching to the CMOS scaling limitation based on the Moore’s law and due to the increasing dispar...
There is much interest in embedding data analytics into sensor-rich platforms such as wearables, bio...
Today's computing architectures and device technologies are unable to meet the increasingly stringen...
In-memory computing (IMC) has emerged as a promising concept for neural accelerators. While the ener...
This dissertation presents the first on-chip demonstration of a Multiply-and-Accumulate (MAC) functi...
In-memory computing is a promising computing paradigm due to its capability to alleviate the memory ...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
Traditional von Neumann computing systems involve separate processing and memory units. However, dat...
Technological advances in microelectronics envisioned through Moore’s law have led to powerful proce...
Developing energy-efficient parallel information processing systems beyond von Neumann architecture ...
We have come a long way since Alan Tuning first proposed the Artificial Intelligence (AI) in modern ...
In-Memory Acceleration (IMA) promises major efficiency improvements in deep neural network (DNN) inf...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
This book considers the design and development of nanoelectronic computing circuits, systems and arc...
For decades, innovations to surmount the processor versus memory gap and move beyond conventional vo...
By reaching to the CMOS scaling limitation based on the Moore’s law and due to the increasing dispar...
There is much interest in embedding data analytics into sensor-rich platforms such as wearables, bio...
Today's computing architectures and device technologies are unable to meet the increasingly stringen...
In-memory computing (IMC) has emerged as a promising concept for neural accelerators. While the ener...
This dissertation presents the first on-chip demonstration of a Multiply-and-Accumulate (MAC) functi...
In-memory computing is a promising computing paradigm due to its capability to alleviate the memory ...
The ongoing revolution in Deep Learning is redefining the nature of computing that is driven by the ...
Traditional von Neumann computing systems involve separate processing and memory units. However, dat...
Technological advances in microelectronics envisioned through Moore’s law have led to powerful proce...
Developing energy-efficient parallel information processing systems beyond von Neumann architecture ...
We have come a long way since Alan Tuning first proposed the Artificial Intelligence (AI) in modern ...
In-Memory Acceleration (IMA) promises major efficiency improvements in deep neural network (DNN) inf...
New computing applications, e.g., deep neural network (DNN) training and inference, have been a driv...
This book considers the design and development of nanoelectronic computing circuits, systems and arc...
For decades, innovations to surmount the processor versus memory gap and move beyond conventional vo...
By reaching to the CMOS scaling limitation based on the Moore’s law and due to the increasing dispar...
There is much interest in embedding data analytics into sensor-rich platforms such as wearables, bio...