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微处理器开发 Flex chip implementation File: UP2FLEX JTAG jumper settings: down, down, up, up Input: Reset -

Flex chip implementation File: UP2FLEX JTAG jumper settings: down, down, up, up Input: Reset - FLEX_PB1 Input n - FLEX_SW switches 1 to 8 Output: Countdown - two 7-segment LEDs. Done light - decimal point on Digit1. Operation: Setup the binary input n number. Press the Reset switch. See the count ...
https://www.eeworm.com/dl/655/375113.html
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matlab例程 This function calculates Akaike s final prediction error % estimate of the average generalization e

This function calculates Akaike s final prediction error % estimate of the average generalization error. % % [FPE,deff,varest,H] = fpe(NetDef,W1,W2,PHI,Y,trparms) produces the % final prediction error estimate (fpe), the effective number of % weights in the network if the network has been train ...
https://www.eeworm.com/dl/665/384088.html
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人工智能/神经网络 % Train a two layer neural network with the Levenberg-Marquardt % method. % % If desired, it is p

% Train a two layer neural network with the Levenberg-Marquardt % method. % % If desired, it is possible to use regularization by % weight decay. Also pruned (ie. not fully connected) networks can % be trained. % % Given a set of corresponding input-output pairs and an initial % network, % ...
https://www.eeworm.com/dl/650/384092.html
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人工智能/神经网络 This function calculates Akaike s final prediction error % estimate of the average generalization e

This function calculates Akaike s final prediction error % estimate of the average generalization error for network % models generated by NNARX, NNOE, NNARMAX1+2, or their recursive % counterparts. % % [FPE,deff,varest,H] = nnfpe(method,NetDef,W1,W2,U,Y,NN,trparms,skip,Chat) % produces the fin ...
https://www.eeworm.com/dl/650/384094.html
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JavaScript XML+ASP 强大的自动生成静态产品目录网页实例,可完全代替数据库+服务端程序的网站设计模式.优点在于: 1.它只需在自己的配置有IIS或其它ASP执行软件的电脑上执行一次便自动生成大量(上传的示

XML+ASP 强大的自动生成静态产品目录网页实例,可完全代替数据库+服务端程序的网站设计模式.优点在于: 1.它只需在自己的配置有IIS或其它ASP执行软件的电脑上执行一次便自动生成大量(上传的示例会生成两千多页)静态html网页,你只需将这些静态网页和图片发布到网站服务器上去就行了,因此,在服务器不支持数据库或 ...
https://www.eeworm.com/dl/685/407470.html
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技术管理 learning English The following appeared in a memorandum written by the vice president of Nature s Wa

learning English The following appeared in a memorandum written by the vice president of Nature s Way, a chain of stores selling health food and other health-related products. "Previous experience has shown that our stores are most profitable in areas where residents are highly concerned with leadin ...
https://www.eeworm.com/dl/642/412046.html
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VC书籍 C:Documents and SettingsAdministrator桌面VC++多媒体特效制作百例CHAR12Light

C:\Documents and Settings\Administrator\桌面\VC++多媒体特效制作百例\CHAR12\Light
https://www.eeworm.com/dl/686/412386.html
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通讯/手机编程 In this project we analyze and design the minimum mean-square error (MMSE) multiuser receiver for un

In this project we analyze and design the minimum mean-square error (MMSE) multiuser receiver for uniformly quantized synchronous code division multiple access (CDMA) signals in additive white Gaussian noise (AWGN) channels.This project is mainly based on the representation of uniform quantizer by ...
https://www.eeworm.com/dl/527/413138.html
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Linux/Unix编程 awesome is a highly configurable, next generation framework window manager for X. It is very fast, l

awesome is a highly configurable, next generation framework window manager for X. It is very fast, light, and extensible. It is primarily targeted at the power user, developer, and anyone dealing with everyday computing tasks who wants to have fine-grained control over a graphical environment.
https://www.eeworm.com/dl/619/429788.html
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行业发展研究 This thesis presents a comprehensive overview of the problem of facial recognition. A survey of avai

This thesis presents a comprehensive overview of the problem of facial recognition. A survey of available facial detection algorithms as well as implementation and tests of di铿€erent feature extraction and dimensionality reduction methods and light normalization methods are presented.
https://www.eeworm.com/dl/692/436098.html
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