<--- Back to Details
First PageDocument Content
Computing / Chemical engineering / 19-inch rack / Data center / Airflow / Fluid dynamics / Heating /  ventilating /  and air conditioning / Concurrent computing / Distributed computing
Date: 2012-07-06 13:35:10
Computing
Chemical engineering
19-inch rack
Data center
Airflow
Fluid dynamics
Heating
ventilating
and air conditioning
Concurrent computing
Distributed computing

Optimiz_Capacity_Whp_Formated

Add to Reading List

Source URL: www.tateglobal.com

Download Document from Source Website

File Size: 1,57 MB

Share Document on Facebook

Similar Documents

Cryptocurrencies / Computing / Economy / Concurrent computing / Blockchain / Proof-of-stake / Ethereum / Bitcoin / Decred / Cryptoeconomics

Distributed Computing Prof. R. Wattenhofer BA/MA/SA: A Hybrid Blockchain System

DocID: 1xVNV - View Document

Machine learning algorithms / Psychology / Neuroscience / Learning / Behaviorism / Belief revision / Reinforcement learning / Psychological manipulation / Reinforcement / Markov decision process / Intelligent agent

Distributed Computing Prof. R. Wattenhofer SA/MA: Byzantine Reinforcement Learning

DocID: 1xVKs - View Document

Technology / Education / Cybernetics / Human behavior / Learning / Online education / Open educational resources / Computational neuroscience / Andrew Ng / Smartwatch / Machine learning / Deep learning

Distributed Computing Prof. R. Wattenhofer Activity Recognition and Adversarial Learning with Smartwatches

DocID: 1xVFo - View Document

Food and drink / Desserts / Ice cream / World cuisine / Theoretical computer science / Algorithm

Distributed Computing Prof. R. Wattenhofer BA/SA/Group/Lab: Dynamic Directories

DocID: 1xVCB - View Document

Artificial neural networks / Computational neuroscience / Applied mathematics / Artificial intelligence / Cybernetics / Computational statistics / Autoencoder / Unsupervised learning / Deep learning / Vae / Convolutional neural network / Machine learning

Distributed Computing Prof. R. Wattenhofer Advanced Topics in Deep Learning - Disentangled Representations

DocID: 1xVwm - View Document