Difference between revisions of "Energy"
m |
m (Text replacement - "http:" to "https:") |
||
Line 5: | Line 5: | ||
|description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools | |description=Helpful resources for your journey with artificial intelligence; videos, articles, techniques, courses, profiles, and tools | ||
}} | }} | ||
− | [ | + | [https://www.youtube.com/results?search_query=energy+consumption+policy+considerations+Efficient+Deep+Learning+ YouTube search...] |
− | [ | + | [https://www.google.com/search?q=energy+consumption+policy+considerations+Efficient+deep+machine+learning+ML+artificial+intelligence ...Google search] |
* [[Case Studies]] | * [[Case Studies]] | ||
Line 13: | Line 13: | ||
** [[Chemistry]] | ** [[Chemistry]] | ||
* [[Other Challenges]] in Artificial Intelligence | * [[Other Challenges]] in Artificial Intelligence | ||
− | * [ | + | * [https://drive.google.com/file/d/1v3TxkqPuzvRfiV_RVyRTTFbHl1pZq7Ab/view Energy and Policy Considerations for Deep Learning in NLP | E. Strubell, A. Ganesh, and A. McCallum - College of Information and Computer Sciences & University of Massachusetts Amherst] |
− | * [ | + | * [https://www.google.com/search?q=Energy+Efficient+Machine+Learning+and+Cognitive+Computing Energy Efficient Machine Learning and Cognitive Computing] |
− | * [ | + | * [https://www.wired.com/story/ai-is-throwing-battery-development-into-overdrive/ AI Is Throwing Battery Development Into Overdrive | Daniel Oberhaus - Wired] ... Improving batteries has always been hampered by slow experimentation and discovery processes. Machine learning is speeding it up by orders of magnitude. |
− | * [ | + | * [https://www.jhunewsletter.com/article/2021/11/spiral-center-uses-artificial-intelligence-to-make-solar-energy-cheaper SPIRAL Center uses artificial intelligence to make solar energy cheaper | Zachary Bahar - Johns Hopkins News-Letter] |
− | * [ | + | * [https://www.livescience.com/ai-controls-hydrogen-plasmas-nuclear-fusion Nuclear fusion is one step closer with new AI breakthrough | Tom Metcalfe - Livescience] |
* [https://techxplore.com/news/2023-03-deep-efficiently-electric-grids.html Using deep learning to develop a forecasting model for efficiently managing electric grids | Chung-Ang University] | * [https://techxplore.com/news/2023-03-deep-efficiently-electric-grids.html Using deep learning to develop a forecasting model for efficiently managing electric grids | Chung-Ang University] | ||
Line 28: | Line 28: | ||
<youtube>8Qa0E1jdkrE</youtube> | <youtube>8Qa0E1jdkrE</youtube> | ||
<b>Energy-Efficient Deep Learning: Challenges and Opportunities | <b>Energy-Efficient Deep Learning: Challenges and Opportunities | ||
− | </b><br>This talk will describe methods to enable energy-efficient processing for deep learning, specifically convolutional neural networks (CNN), which is the cornerstone of many deep-learning algorithms. Deep 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). We will give a short overview of the key concepts in CNNs, discuss its challenges particularly in the embedded space, and highlight various opportunities that can help to address these challenges at various levels of design ranging from architecture, implementation-friendly algorithms, and advanced technologies (including memories and sensors). [ | + | </b><br>This talk will describe methods to enable energy-efficient processing for deep learning, specifically convolutional neural networks (CNN), which is the cornerstone of many deep-learning algorithms. Deep 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). We will give a short overview of the key concepts in CNNs, discuss its challenges particularly in the embedded space, and highlight various opportunities that can help to address these challenges at various levels of design ranging from architecture, implementation-friendly algorithms, and advanced technologies (including memories and sensors). [https://www.rle.mit.edu/eems/wp-content/uploads/2018/04/Energy-Efficient-Deep-Learning-SSCS-DL-Sze.pdf Slides] |
|} | |} | ||
|<!-- M --> | |<!-- M --> | ||
Line 53: | Line 53: | ||
<youtube>ePCT9d8HI0Y</youtube> | <youtube>ePCT9d8HI0Y</youtube> | ||
<b>Deep Learning Montréal @ Autodesk – Deeplite Faster, smaller, energy-efficient Deep Neural Networks | <b>Deep Learning Montréal @ Autodesk – Deeplite Faster, smaller, energy-efficient Deep Neural Networks | ||
− | </b><br>Ehsan Saboori, Technical Co-founder, Deeplite | + | </b><br>Ehsan Saboori, Technical Co-founder, Deeplite https://www.deeplite.ai/ [https://www.meetup.com/Deep-Learning-Montreal/events/248338612/ Full details here] |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
Line 87: | Line 87: | ||
<youtube>qIZOhK2Ywz0</youtube> | <youtube>qIZOhK2Ywz0</youtube> | ||
<b>AI Is Helping Supply 1 Billion People in India with Renewable Energy | <b>AI Is Helping Supply 1 Billion People in India with Renewable Energy | ||
− | </b><br>World Economic Forum India is changing the way energy happens by bringing together the power of hardware with software. Watch to see how. | + | </b><br>World Economic Forum India is changing the way energy happens by bringing together the power of hardware with software. Watch to see how. https://www.weforum.org/ |
|} | |} | ||
|}<!-- B --> | |}<!-- B --> | ||
Line 118: | Line 118: | ||
<youtube>VzyzKv_LBRw</youtube> | <youtube>VzyzKv_LBRw</youtube> | ||
<b>Saving Energy Consumption With Deep Learning | <b>Saving Energy Consumption With Deep Learning | ||
− | </b><br>Discover how big data, GPUs, and deep learning, can enable smarter decisions on making your building more energy-efficient with AI startup, Verdigris. Explore more about AI & Deep Learning: | + | </b><br>Discover how big data, GPUs, and deep learning, can enable smarter decisions on making your building more energy-efficient with AI startup, Verdigris. Explore more about AI & Deep Learning: https://nvda.ws/2sbWvNm |
|} | |} | ||
|<!-- M --> | |<!-- M --> |
Revision as of 11:05, 28 March 2023
YouTube search... ...Google search
- Case Studies
- Other Challenges in Artificial Intelligence
- Energy and Policy Considerations for Deep Learning in NLP | E. Strubell, A. Ganesh, and A. McCallum - College of Information and Computer Sciences & University of Massachusetts Amherst
- Energy Efficient Machine Learning and Cognitive Computing
- AI Is Throwing Battery Development Into Overdrive | Daniel Oberhaus - Wired ... Improving batteries has always been hampered by slow experimentation and discovery processes. Machine learning is speeding it up by orders of magnitude.
- SPIRAL Center uses artificial intelligence to make solar energy cheaper | Zachary Bahar - Johns Hopkins News-Letter
- Nuclear fusion is one step closer with new AI breakthrough | Tom Metcalfe - Livescience
- Using deep learning to develop a forecasting model for efficiently managing electric grids | Chung-Ang University
|
|
|
|
|
|
|
|
Solar Energy
|
|
Reducing Energy Consumption of AI
|
|
|
|