这篇文章主要围绕TimeMachine备份系统步骤和timemachine备份展开,旨在为您提供一份详细的参考资料。我们将全面介绍TimeMachine备份系统步骤的优缺点,解答timemachine
这篇文章主要围绕Time Machine备份系统步骤和time machine 备份展开,旨在为您提供一份详细的参考资料。我们将全面介绍Time Machine备份系统步骤的优缺点,解答time machine 备份的相关问题,同时也会为您带来175+ Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab、Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab、Easy ImageX备份系统教程、linux下简单time machine实现,可选择快速备份恢复脚本的实用方法。
本文目录一览:- Time Machine备份系统步骤(time machine 备份)
- 175+ Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab
- Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab
- Easy ImageX备份系统教程
- linux下简单time machine实现,可选择快速备份恢复脚本
Time Machine备份系统步骤(time machine 备份)
【导读】Time Machine怎么备份系统相关系统问题,下面小编小编为大家详细解答。
Mac Time Machine备份系统教程:
1、您需要准备一个16G以上的U盘或者更大的移动硬盘,强烈推荐用现在速度更快的USB3.0接口的产品,注意备份操作需要格式化硬盘,所以请事先备份移动硬盘里的数据。
2、打开Mac系统偏好 -> TimeMachine
3、确保Time Machine按钮已经打开
4、点击【选择磁盘】
5、在可用磁盘里面选择我们准备好的移动硬盘(即图中的新加卷)
6、选择【抹掉】格式化硬盘。
7、等待格式化硬盘完成,需要一定时间。
8、接着在Time Machine里会看到“正在等待进行备份”字样,我们就可以点击该【硬盘图标】
9、等待备份进度条走完,此时我们可以回到桌面,让备份后台进行,直到看到如下提示。
总结:以上就是小编整理的Time Machine怎么备份系统相关教程内容,希望能帮助到大家。
总结
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175+ Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab
https://amazonaws-china.com/blogs/machine-learning/175-customers-achieve-machine-learning-success-with-awss-machine-learning-solutions-lab/
AWS introduced the Machine Learning (ML) Solutions Lab a little over two years ago to connect our machine learning experts and data scientists with AWS customers. Our goal was to help our customers solve their most pressing business problems using ML. We’ve helped our customers increase fraud detection rates, improved forecasting and predictions for more efficient operations, drive additional revenues through personalization, and even help organizations scale their response to crisis like human trafficking.
Since we began, we’ve successfully assisted over 175 customers across a diverse spectrum of industries including retail, healthcare, energy, public sector and sports to create new machine learning-powered solutions. And we’ve increased our capacity more than 5x and expanded from North America to Asia, Australia and Europe to meet the growing ML needs of our customers around the world.
In our partnership with the National Football League (NFL), we’ve identified and built an entirely new way for fans to engage with the sport through Next Gen Stats, which features stats such as Completion Probability, 3rd Down Conversion Probability, Expected Yards After Catch, Win Probability, and Catch Prediction. Today, Next Gen Stats are an important part of how fans experience the game. And recently we’ve kicked off a new initiative with the NFL to tackle the next challenge—predicting and limiting player injury. As part of this initiative we’re working with the NFL to develop the “Digital Athlete”, a virtual representation of a composite NFL player which will enable us to eventually predict injury and recovery trajectories
In healthcare, we’re working with Cerner, the world’s largest publicly traded healthcare IT company, to apply machine learning-driven solutions to its mission of improving the health of individuals and populations while reducing costs and increasing clinician satisfaction. One important area of this project is using health prediction capabilities to uncover important and potentially life-saving insights within trusted-source, digital health data. For example, using Amazon SageMaker we built a solution to enable researchers to query anonymized patient data to build complex models and algorithms that predicts congestive heart failure up to 15 months before clinical manifestation. And Cerner will also be using AWS AI services such as the newly introduced Amazon Transcribe Medical to free up physicians from tasks such as writing down notes through a virtual scribe.
In the public sector, we collaborated with the NASA Heliophysics Lab to better understand solar super storms. We brought together the expert scientists at NASA with the machine learning experts in the ML Solutions Lab and the AWS Professional Services organizations to improve the ability to predict and categorize solar super storms. With Amazon SageMaker, NASA is using unsupervised learning and anomaly detection to explore the extreme conditions associated with super storms. Such space weather can create radiation hazards for astronauts, cause upsets in satellite electronics, interfere with airplane and shipping radio communications, and damage electric power grids on the ground – making prediction and early warnings critical.
World Kinect Energy Services, a global leader in energy management, fuel supply, and sustainability, turned to the ML Solutions Lab to improve their ability to anticipate the impact of weather changes on energy prices. An important piece of their business model involves trading financial contracts derived from energy prices. This requires an accurate forecast of the energy price. To improve and automate the process of forecasting—historically done manually—we collaborated with them to develop a model using Amazon SageMaker to predict the upcoming weather trends and therefore the prices of future months’ electricity, enabling unprecedented long-range energy trading. By using a deep learning forecasting model to replace the old manual process, World Kinect Energy Services improves their hedging strategy. With the current results, the team is now adding additional signals focused on trend and volatility and is on its way to realizing an accuracy of greater than 60% over the manual process.
And in manufacturing, we worked with Formosa Plastics, one of Taiwan’s top petrochemical companies and a leading plastics manufacturers, to apply ML to more accurately detect defects and reduce manual labor costs. Formosa Plastics needed to ensure the highest Silicon Wafer quality, but the defect inspection process was time consuming and required time from a highly experienced engineers.
Together with the ML Solutions Lab, Fromosa Plastics created and deployed a model using Amazon SageMaker to automatically detect defects. The model reduced their employee time spent doing manual inspection in half and increased the accuracy of detection.
Energized by the progress our customers have made and listening closely to their needs, we continue to increase our capacity to support even more customers seeking Amazon’s expertise in ML. And we recently introduced a new program, AWS Machine Learning Embark program, which combines workshops, on-site training, an ML Solutions Lab engagement, and an AWS DeepRacer event to help organizations fast-track their adoption of ML.
We started the ML Solutions Lab because we believe machine learning has the ability to transform every industry, process, and business, but the path to machine learning success is not always straightforward. Many organizations need a partner to help them along their journey. Amazon has been investing in machine learning for more than 20 years, innovating in areas such as fulfilment and logistics, personalization and recommendations, forecasting, robotics and automation, fraud prevention, and supply chain optimization. We bring the learnings from this experience to every customer engagement. We’re excited to be a part of our customers’ adoption of this transformational technology, and we look forward to another year of working hand in hand with our customers to find the most impactful ML use cases for their organization. To learn more about the AWS Machine Learning Solutions Lab contact your account manager or visit us at https://aws.amazon.com/ml-solutions-lab/.
About the Author
Michelle K. Lee, Vice President of the Machine Learning Solutions Lab, AWS
Customers Achieve Machine Learning Success with AWS’s Machine Learning Solutions Lab
https://amazonaws-china.com/blogs/machine-learning/customers-achieve-machine-learning-success-with-awss-machine-learning-solutions-lab/
AWS introduced the Machine Learning (ML) Solutions Lab a little over two years ago to connect our machine learning experts and data scientists with AWS customers. Our goal was to help our customers solve their most pressing business problems using ML. We’ve helped our customers increase fraud detection rates, improved forecasting and predictions for more efficient operations, drive additional revenues through personalization, and even help organizations scale their response to crisis like human trafficking.
Since we began, we’ve successfully assisted a wide array of customers across a diverse spectrum of industries including retail, healthcare, energy, public sector and sports to create new machine learning-powered solutions. Due to the growing demand from customers eager to adopt machine learning around the world, we’ve significantly increased the capacity of the ML Solutions Lab program and expanded from North America to Asia, Australia and Europe.
In our partnership with the National Football League (NFL), we’ve identified and built an entirely new way for fans to engage with the sport through Next Gen Stats, which features stats such as Completion Probability, 3rd Down Conversion Probability, Expected Yards After Catch, Win Probability, and Catch Prediction. Today, Next Gen Stats are an important part of how fans experience the game. And recently we’ve kicked off a new initiative with the NFL to tackle the next challenge—predicting and limiting player injury. As part of this initiative we’re working with the NFL to develop the “Digital Athlete”, a virtual representation of a composite NFL player which will enable us to eventually predict injury and recovery trajectories
In healthcare, we’re working with Cerner, the world’s largest publicly traded healthcare IT company, to apply machine learning-driven solutions to its mission of improving the health of individuals and populations while reducing costs and increasing clinician satisfaction. One important area of this project is using health prediction capabilities to uncover important and potentially life-saving insights within trusted-source, digital health data. For example, using Amazon SageMaker we built a solution to enable researchers to query anonymized patient data to build complex models and algorithms that predicts congestive heart failure up to 15 months before clinical manifestation. And Cerner will also be using AWS AI services such as the newly introduced Amazon Transcribe Medical to free up physicians from tasks such as writing down notes through a virtual scribe.
In the public sector, we collaborated with the NASA Heliophysics Lab to better understand solar super storms. We brought together the expert scientists at NASA with the machine learning experts in the ML Solutions Lab and the AWS Professional Services organizations to improve the ability to predict and categorize solar super storms. With Amazon SageMaker, NASA is using unsupervised learning and anomaly detection to explore the extreme conditions associated with super storms. Such space weather can create radiation hazards for astronauts, cause upsets in satellite electronics, interfere with airplane and shipping radio communications, and damage electric power grids on the ground – making prediction and early warnings critical.
World Kinect Energy Services, a global leader in energy management, fuel supply, and sustainability, turned to the ML Solutions Lab to improve their ability to anticipate the impact of weather changes on energy prices. An important piece of their business model involves trading financial contracts derived from energy prices. This requires an accurate forecast of the energy price. To improve and automate the process of forecasting—historically done manually—we collaborated with them to develop a model using Amazon SageMaker to predict the upcoming weather trends and therefore the prices of future months’ electricity, enabling unprecedented long-range energy trading. By using a deep learning forecasting model to replace the old manual process, World Kinect Energy Services improves their hedging strategy. With the current results, the team is now adding additional signals focused on trend and volatility and is on its way to realizing an accuracy of greater than 60% over the manual process.
And in manufacturing, we worked with Formosa Plastics, one of Taiwan’s top petrochemical companies and a leading plastics manufacturers, to apply ML to more accurately detect defects and reduce manual labor costs. Formosa Plastics needed to ensure the highest Silicon Wafer quality, but the defect inspection process was time consuming and required time from a highly experienced engineers.
Together with the ML Solutions Lab, Fromosa Plastics created and deployed a model using Amazon SageMaker to automatically detect defects. The model reduced their employee time spent doing manual inspection in half and increased the accuracy of detection.
Energized by the progress our customers have made and listening closely to their needs, we continue to increase our capacity to support even more customers seeking Amazon’s expertise in ML. And we recently introduced a new program, AWS Machine Learning Embark program, which combines workshops, on-site training, an ML Solutions Lab engagement, and an AWS DeepRacer event to help organizations fast-track their adoption of ML.
We started the ML Solutions Lab because we believe machine learning has the ability to transform every industry, process, and business, but the path to machine learning success is not always straightforward. Many organizations need a partner to help them along their journey. Amazon has been investing in machine learning for more than 20 years, innovating in areas such as fulfilment and logistics, personalization and recommendations, forecasting, robotics and automation, fraud prevention, and supply chain optimization. We bring the learnings from this experience to every customer engagement. We’re excited to be a part of our customers’ adoption of this transformational technology, and we look forward to another year of working hand in hand with our customers to find the most impactful ML use cases for their organization. To learn more about the AWS Machine Learning Solutions Lab contact your account manager or visit us at https://aws.amazon.com/ml-solutions-lab/.
About the Author
Michelle K. Lee, Vice President of the Machine Learning Solutions Lab, AWS
Easy ImageX备份系统教程
【导读】Easy ImageX备份系统操作方法相关系统问题,下面小编小编为大家详细解答。
一直以来很多朋友都在使用Ghost来管理映像文件,也有一些善于探索的朋友开始使用ImageX来执行映像备份恢 复操作。但,一来操作繁琐,二来参数复杂,难于操作和记忆,易出现操作失误。有没有人想过,我们何不把传统的Ghost和流行的ImageX合二为一?再 配以清晰明了的图形界面?那会是怎样一种景象?
我们的想法,在Easy Image X(系统映像管理)中得以实现!
(一)映像恢复
1、快捷操作:(两点击、一回车)
(1)【选映像】 点击选中左侧映像列表中的映像(ImageX映像选中子映像名,Ghost映像选中映像文件);
(2)【设分区】 点击选中右侧驱动器分区列表中的分区(系统映像请恢复到具有“活动”属性的主分区);
(3)【点回车】 单击键盘回车键,映像恢复工作即将开始执行。
2、映像相关:
(1)映像备份功能支持ImageX映像(.wim)和Ghost映像(.gho),程序会自动判定映像类型;
(2)程序启动时,将自动搜索所有分区两层以内目录中所有的ImageX映像和Ghost映像;
(3)上条中的自动搜索功能将忽略小于100MB的映像,但可以通过手动添加的方式将映像添加到映像列表;
(4)ImageX映像中通常会包含多个子映像,恢复此类映像时务必选中其子映像;
(5)ImageX映像具有“检查映像完整性”的功能,即“/Check”参数,检查会减慢映像恢复速度;
(6)ImageX映像具有“校验文件正确性”的功能,即“/Verify”参数,校验会减慢映像恢复速度;
(7)备份操作无法针对当前系统分区进行。
3、分区相关:
(1)程序将读取系统所识别的分区,如果系统无法识别到分区,本程序也将无法识别;
(2)活动分区将以红色显示;
(3)驱动器编号、分区编号、分区盘符,在PE下可能与系统下有所不同,务必仔细观察选中目标分区。
4、引导相关:
(1)系统引导功能将根据系统类型和目标分区位置自动更改主引导记录(MBR)和分区引导记录(PBR);
(2)如需要特别设定MBR和PBR,可以选中系统引导选项中的“手动设置系统引导”选项;
(3)除了正确的MBR和PBR外,系统正常启动还需要“处于活动分区”和“具备系统引导文件”两个必要条件;
(4)Win7等NT6代系统,系统源映像 install.wim中不具备系统引导文件,此类映像恢复后需手动修复引导文件;
(5)程序不可能帮您解决所有引导方面的问题,更多问题需要根据实际情况灵活判定并解决。
5、格式化相关:
(1)Ghost映像是基于扇区的映像,Ghost映像恢复后与Ghost映像中的分区格式完全相同;
(2)ImageX映像是基于文件的映像,可以在恢复映像前决定目标分区的分区格式;
(3)NTFS格式下使用ImageX备份的映像,可以恢复到NTFS或fat32格式的磁盘分区上,但推荐使用NTFS分区格式;
(4)自动格式化功能需要%windir%system32format.com的支持,如果没有,则无法完成自动格式化;
(5)更多的格式化需求可选中分区格式中的“手动格式化”选项,或使用第三方工具完成。
6、密码相关:
(1)Ghost映像支持加密,而ImageX映像不支持;
(2)恢复Ghost映像时,会自动出现输入密码的输入框。
(二)映像备份
1、快捷操作:(两点击、一输入、一回车)
(1)【选分区】 点击选中左侧驱动器分区列表中的分区;
(2)【设映像】 点击选中右侧映像列表中的映像或点击“映像文件”右侧按钮设定映像保存位置;
(3)【写名字】 给映像写个便于记忆的名字;(不建议使用中文)
(4)【点回车】 单击键盘回车键,映像备份工作即将开始执行。
2、分区相关:
(1)程序将读取系统所识别的分区,如果系统无法识别到分区,本程序也将无法识别;
(2)活动分区将以红色显示;
(3)驱动器编号、分区编号、分区盘符,在PE下可能与系统下有所不同,务必仔细观察选中目标分区。
3、映像相关:
(1)映像备份功能支持ImageX映像(.wim)和Ghost映像(.gho),程序会自动根据后缀名判定映像类型;
(2)ImageX映像支持一个映像中包含多个子映像,Ghost映像不支持此功能;
(3)同一ImageX映像中,多个子映像如果包含相同文件,那么相同文件只占用一个文件的大小;
(4)采用ImageX备份映像时,如果目标映像不存在,则自动启用“捕获模式”,即全新创建映像;
(5)采用ImageX备份映像时,如果目标映像已存在,则自动启用“附加模式”,即在目标映像中创建子映像;
(6)ImageX映像具有“检查映像完整性”的功能,即“/Check”参数,检查会减慢映像备份速度;
(7)ImageX映像具有“校验文件正确性”的功能,即“/Verify”参数,校验会减慢映像备份速度;
(8)备份操作无法针对当前系统分区进行。
4、压缩相关:
(1)ImageX具有极限压缩(maximum)、快速压缩(fast)和不压缩三个等级;
(2)Ghost具有极限压缩(z9)、高压缩(z6)、快速压缩(z2)和不压缩四个等级;
(3)压缩率越高,则映像体积越小,但备份与恢复时间也会越长;
(4)ImageX中,子映像压缩率与第一个映像压缩率相同,设置压缩率无效。
5、映像描述:
(1)映像描述用于区别ImageX映像中不同的子映像;
(2)不推荐使用中文描述,个别时候可能会产生乱码,原因尚不明确。
6、密码相关:
(1)Ghost映像支持密码加密,而ImageX映像不支持;
(2)保存Ghost映像时,会自动出现输入密码的输入框。
(三)高级功能
1、ImageX目录备份:
(1)除了分区备份功能外,ImageX支持目录(文件夹)备份功能;
(2)目录备份功能与分区备份功能完全相同,只是目标从分区变为了目录;
(3)如果目标映像不存在,则自动启用“捕获模式”,即全新创建映像;
(4)如果目标映像已存在,则自动启用“附加模式”,即在目标映像中创建子映像;
(5)默认采用极限压缩(maximum)方式;
(6)“检查映像完整性”功能,即“/Check”参数,检查会减慢映像备份速度;
(7)“校验文件正确性”功能,即“/Verify”参数,校验会减慢映像备份速度;
(8)“可启动”功能,即“/Boot”参数,使映像具有可启动属性,一般用于WinPE映像;
(9)补充上一条,一个ImageX映像中只允许一个具有可启动属性的子映像。
2、ImageX目录还原:
(1)除了分区还原功能外,ImageX支持目录(文件夹)还原功能;
(2)目录还原功能与分区还原功能完全相同,只是目标从分区变为了目录;
(3)“检查映像完整性”功能,即“/Check”参数,检查会减慢映像恢复速度;
(4)“校验文件正确性”功能,即“/Verify”参数,校验会减慢映像恢复速度;
(5)目录还原不会清空目标目录内文件。
3、分割WIM映像:
(1)可将较大的.wim映像按照指定大小分割为数个较小映像;
四、其他说明
(一)命令行参数:
1、/ghost_1102,直接调用Ghost 11.0.2
2、/ghost_1102_z9,直接调用Ghost 11.0.2并启用最高压缩模式
3、/ghost_1151,直接调用Ghos t11.5.1
4、/ghost_1151_z9,直接调用Ghost 11.5.1并启用最高压缩模式
5、/imagex_60,直接调用ImageX 6.0
6、/imagex_61,直接调用ImageX 6.1
(2)分割映像的后缀名为“.swm”;
(3)若设定分割映像的名为:test.swm,则其他分割映像的名为:test2.swm、test3.swm、……、testN.swm;
(4)映像分割单位可以为M(MB),也可以为G(GB)。
4、程序文件自定义:
(1)本程序借助ImageX.exe、Ghost32.exe和Bootice.exe三个程序来完成所有恢复与备份操作;
(2)程序自带ImageX.exe,版本为:6.1.7600.16385;
(3)程序自带Ghost32.exe,版本为:11.5.1.2269;
(4)程序自带Bootice.exe,版本为:0.9.2011.0501;
(5)如有需要,可自定义这些程序文件,但因自定义产生的一切问题,本程序开发者及所属论坛无解释的义务。
5、ImageX参数设定
(1)配置文件(程序内全局生效),自定义ImageX的配置文件,配置文件写法详见Windows AIK帮助文档;
(2)临时目录(程序内全局生效),自定义ImageX的临时文件目录。
总结:以上就是小编整理的Easy ImageX备份系统操作方法相关教程内容,希望能帮助到大家。
总结
以上是小编为你收集整理的Easy ImageX备份系统教程全部内容。
如果觉得小编网站内容还不错,欢迎将小编网站推荐给好友。
linux下简单time machine实现,可选择快速备份恢复脚本
解决问题:对代码做重要改动时需要及时手动备份,在必要时选择进行恢复,手动操作比较麻烦并且选择恢复时间点容易混乱。
解决方案:提前设定一个备份路径之后,本脚支持3个命令,本能够完成下面操作。
backup 备份当前文件夹到当前时间点。
recover 显示当前文件夹中所有备份时间点,并根据选择恢复当前文件夹到指定时间点。
clean 保留最后一次备份时间点。
使用方式:
(1)到百度网盘 http://pan.baidu.com/s/1pKvScfp 下载脚本代码。
(2)按照readme.txt提示在环境配置中添加别名,即可。
举例:备份和恢复vsu_hdl
(1)cd 到vsu_hdl目录
(2)执行backup备份vsu_hdl文件夹到当前时间点。
(3)在vsu_hdl执行recover进行文件恢复。
执行recover后首先会列出所有历史备份时间点,下图中有19个备份。
选择你需要的备份进行恢复,恢复历史时间点并不会覆盖新的备份文件,
也就是你可以先选择2,之后再执行recover恢复18.
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