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Hardware for Machine Learning: Challenges and Opportunities

机译:机器学习硬件:挑战与机遇

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摘要

Machine learning plays a critical role in extracting meaningful information out of the zetabytes of sensor data collected every day. For some applications, the goal is to analyze and understand the data to identify trends (e.g., surveillance, portable/wearable electronics); in other applications, the goal is to take immediate action based the data (e.g., robotics/drones, self-driving cars, smart Internet of Things). For many of these applications, local embedded processing near the sensor is preferred over the cloud due to privacy or latency concerns, or limitations in the communication bandwidth. However, at the sensor there are often stringent constraints on energy consumption and cost in addition to throughput and accuracy requirements. Furthermore, flexibility is often required such that the processing can be adapted for different applications or environments (e.g., update the weights and model in the classifier). In many applications, machine learning often involves transforming the input data into a higher dimensional space, which, along with programmable weights, increases data movement and consequently energy consumption. In this paper, we will discuss how these challenges can be addressed at various levels of hardware design ranging from architecture, hardware-friendly algorithms, mixed-signal circuits, and advanced technologies (including memories and sensors).
机译:机器学习在每天收集的传感器数据zeta字节中提取有意义的信息方面起着至关重要的作用。对于某些应用,目标是分析和理解数据以识别趋势(例如,监视,便携式/可穿戴电子设备);在其他应用中,目标是根据数据(例如机器人/无人机,自动驾驶汽车,智能物联网)立即采取行动。对于这些应用中的许多应用,由于隐私或延迟问题或通信带宽的限制,与云相比,传感器附近的本地嵌入式处理更为可取。但是,在传感器上,除了吞吐量和精度要求外,通常在能耗和成本方面都有严格的限制。此外,经常需要灵活性,使得处理可以适合于不同的应用或环境(例如,更新分类器中的权重和模型)。在许多应用中,机器学习通常涉及将输入数据转换成更高维度的空间,再加上可编程的权重,这会增加数据移动并因此增加能耗。在本文中,我们将讨论如何在各种硬件设计级别(包括体系结构,硬件友好算法,混合信号电路和先进技术(包括存储器和传感器))解决这些挑战。

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