Need for the efficient processing of neural networks has given rise to the development of hardware accelerators. The increased adoption of specialized hardware has highlighted the need for more agile design flows for hardware-software co-design and domain-specific optimizations. We present CFU Playground, a full-stack open-source framework that enables rapid and iterative design of machine learning (ML) accelerators for embedded ML systems. Our toolchain integrates open-source software, open-source RTL generators, and open-source FPGA tools for synthesis, place, and route. This full-stack framework gives the users access to explore bespoke architectures that are customized and co-optimized for embedded ML. The rapid, deploy-profile-optimiza...
With the surge of inexpensive computational and memory resources, neural networks (NNs) have experie...
International audienceConvolutional Neural Networks (CNNs) have emerged as an answer to next-generat...
There has been an explosion of growth in the field of Machine Learning (ML) enabled by the widesprea...
The forum provides a comprehensive full-stack (hardware and software) view of ML acceleration from c...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
This thesis introduces novel frameworks for automated customization of two classes of machine learni...
Low latency inferencing is of paramount importance to a wide range of real time and userfacing Machi...
Many emerging applications require hardware acceleration due to their growing computational intensit...
Machine learning (ML) accelerators have been studied and used extensively to compute ML models with ...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
Research areas: Heterogeneous Computing, Statistical Machine Learning, Accelerator DesignA growing n...
International audienceThe wide landscape of memory-hungry and compute-intensive Convolutional Neural...
Machine learning algorithms continue to receive significant attention from industry and research. As...
In Internet of Things (IoT) scenarios, it is challenging to deploy Machine Learning (ML) algorithms ...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
With the surge of inexpensive computational and memory resources, neural networks (NNs) have experie...
International audienceConvolutional Neural Networks (CNNs) have emerged as an answer to next-generat...
There has been an explosion of growth in the field of Machine Learning (ML) enabled by the widesprea...
The forum provides a comprehensive full-stack (hardware and software) view of ML acceleration from c...
In recent years, the need for the efficient deployment of Neural Networks (NN) on edge devices has b...
This thesis introduces novel frameworks for automated customization of two classes of machine learni...
Low latency inferencing is of paramount importance to a wide range of real time and userfacing Machi...
Many emerging applications require hardware acceleration due to their growing computational intensit...
Machine learning (ML) accelerators have been studied and used extensively to compute ML models with ...
Recent years have seen an explosion of machine learning applications implemented on Field-Programmab...
Research areas: Heterogeneous Computing, Statistical Machine Learning, Accelerator DesignA growing n...
International audienceThe wide landscape of memory-hungry and compute-intensive Convolutional Neural...
Machine learning algorithms continue to receive significant attention from industry and research. As...
In Internet of Things (IoT) scenarios, it is challenging to deploy Machine Learning (ML) algorithms ...
Machine learning (ML) has been extensively employed for strategy optimization, decision making, data...
With the surge of inexpensive computational and memory resources, neural networks (NNs) have experie...
International audienceConvolutional Neural Networks (CNNs) have emerged as an answer to next-generat...
There has been an explosion of growth in the field of Machine Learning (ML) enabled by the widesprea...