主頁 >  其他 > 使用prcomp對R中的面板資料進行主成分分析(PCA)

使用prcomp對R中的面板資料進行主成分分析(PCA)

2022-03-09 00:48:18 其他

我正在處理一個大型的跨國面板資料集。我想對樣本中的每個國家/地區應用主成分分析。據我了解, prcomp 函式不能直接在面板資料幀上作業。我可以為每個國家/地區創建一個子集,然后使用 prcomp 函式,如下所示:

df <- df %>%   filter(country=="Argentina")  
df <- na.omit(df) 
PCA <- prcomp(df[-1], scale=TRUE) #PCA
df2 <- cbind(df, PC1=PCA$x[,1]) #combine data 

這種方法的問題是我正在與一大群國家合作。我想找到一種將 PCA 應用于每個國家/地區的有效方法(使用回圈、dplyr、apply 或其他東西)。任何線索將不勝感激!這是我的資料的快照:

structure(list(year = c(1993, 1994, 1995, 1996, 1997, 1998, 1999, 
2000, 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 
2011, 2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 1989, 1990, 
1991, 1992, 1993, 1994, 1995, 1996, 1997, 1998, 1999, 2000, 2001, 
2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012, 
2013, 2014, 2015, 2016, 2017, 2018, 2019), C1 = c(5.13682648211779, 
5.08266800031075, 5.351464616273, 5.61086611323361, 5.22197210944516, 
5.25272256987622, 4.45782610229152, 4.67991094417297, 4.56858960891786, 
10.2066467144411, 10.328166939117, 8.36248661002826, 7.93875427420938, 
6.93557229126392, 7.45235394606923, 7.3189545972436, 5.2736234689014, 
7.13216745078964, 6.99873377022519, 5.7817442068501, 6.05291843670451, 
6.71270351428559, 5.1566859021408, 6.26456582010254, 5.23162237725058, 
4.53787889681146, 5.11101651115706, 16.5859815004054, 17.4762288321229, 
15.2470755823245, 14.9836651520805, 15.4160185614868, 15.4628347718716, 
15.6932030829778, 16.8545560944976, 14.4611526932527, 12.4503166318037, 
10.4578259441456, 10.0328526543258, 8.78803796915921, 10.1907585574088, 
9.79514977798378, 9.32742275784367, 9.16534055228687, 8.09488128822859, 
7.45702743708227, 7.42466846883692, 8.07198879989725, 8.9669281343332, 
8.17395626522538, 7.69487759202317, 6.67610812297851, 6.55723547339657, 
6.86837534505832, 6.14229206403875, 6.03862979568919, 5.77601222087928, 
6.40077492846908), C2 = c(18.2399115325496, 17.8190917106899, 
17.2467521148076, 17.5357232920479, 18.227905749866, 17.8379584760908, 
16.9615250614589, 16.4942719439838, 16.0932258763829, 20.347773913878, 
22.4867505875749, 18.9370136214371, 18.340415936715, 17.8777938558849, 
17.0474154518997, 16.5383660984547, 15.5837772738051, 15.8448608064195, 
15.8506983942663, 15.2168009115954, 15.0110542553443, 14.7727785491821, 
14.1815854549835, 13.4880259708051, 12.8351683415363, 14.0601434041581, 
14.469857210653, 23.1218538833796, 21.9578069720618, 22.1719176235394, 
21.6370883362235, 20.8090845243861, 22.0629117902148, 22.5660651401301, 
21.1414222999772, 21.5655846462854, 22.2716554368656, 19.9963040675879, 
18.7056269713129, 17.7146298488846, 16.9326153021282, 17.1114469831801, 
16.9482350609586, 16.903863698293, 17.0593739972631, 16.8046678617533, 
16.2646010673369, 15.1576059052686, 15.0539685698439, 16.4486710311014, 
15.8337489004359, 16.2798557387916, 16.7716970232894, 16.6961854458277, 
16.5954578952398, 17.5918310459266, 19.0433777374516, 18.280976425027
), C3 = c(82.5125543268366, 88.4834748372495, 64.328775268034, 
67.295938371345, 77.7236906437735, 81.2531966123609, 73.903671516043, 
63.2796145278544, 49.6590053859052, 24.2929772699524, 32.0464542409784, 
45.2763649379163, 49.6805395163102, 50.4269078500422, 54.2479902089021, 
53.48675458569, 45.3830010270168, 53.7777258133156, 54.2717733344258, 
51.8017865791584, 56.0976840936343, 57.6821855247763, 68.0551439256991, 
60.7549295505373, 70.3450187781642, 61.7863847377178, 47.0046920548502, 
80.7115299677774, 98.9037032210514, 97.3968931160828, 98.6684502902615, 
125.766186334077, 82.7073657385639, 109.094641464308, 116.082201273435, 
117.630112854441, 113.089104828361, 97.6533515496685, 118.083087499274, 
79.487572866742, 87.5239813988531, 87.5860747310278, 94.906199990454, 
94.7033145531204, 94.5718715539841, 91.6814234437438, 81.2978732632131, 
74.034860714713, 87.6101498446379, 94.5147405516283, 80.1097244213394, 
91.3450549864493, 82.8358949845043, 81.6674625026796, 85.0041947243795, 
89.2649309430369, 75.407517473589, 65.7686639087196)), row.names = c(NA, 
-58L), class = c("tbl_df", "tbl", "data.frame"), na.action = structure(c(`1` = 1L, 
`2` = 2L, `3` = 3L, `4` = 4L, `5` = 5L, `6` = 6L, `7` = 7L, `8` = 8L, 
`9` = 9L, `10` = 10L, `11` = 11L, `12` = 12L, `13` = 13L, `14` = 14L, 
`15` = 15L, `16` = 16L, `17` = 17L, `18` = 18L, `19` = 19L, `20` = 20L, 
`21` = 21L, `22` = 22L, `23` = 23L, `24` = 24L, `25` = 25L, `26` = 26L, 
`27` = 27L, `28` = 28L, `29` = 29L, `30` = 30L, `31` = 31L, `32` = 32L, 
`33` = 33L, `34` = 34L, `35` = 35L, `36` = 36L, `37` = 37L, `38` = 38L, 
`39` = 39L, `40` = 40L, `41` = 41L, `42` = 42L, `43` = 43L, `71` = 71L, 
`72` = 72L, `73` = 73L, `74` = 74L, `75` = 75L, `76` = 76L, `77` = 77L, 
`78` = 78L, `79` = 79L, `80` = 80L, `81` = 81L, `82` = 82L, `83` = 83L, 
`84` = 84L, `85` = 85L, `86` = 86L, `87` = 87L, `88` = 88L, `89` = 89L, 
`90` = 90L, `91` = 91L, `92` = 92L, `93` = 93L, `94` = 94L, `95` = 95L, 
`96` = 96L, `97` = 97L, `98` = 98L, `99` = 99L, `100` = 100L, 
`101` = 101L, `102` = 102L, `103` = 103L, `104` = 104L, `105` = 105L, 
`106` = 106L, `107` = 107L, `108` = 108L, `109` = 109L, `110` = 110L, 
`142` = 142L), class = "omit"))
> df <- datasetALL%>%   filter(country=="Argentina" | country=="Turkey") %>% 
    filter(year>=2008 | year <2010) %>% 
    select(year, C1=agr_GDP, C2=manu_GDP, C3=intcapimp_X) 
> dput(df)
structure(list(year = c(1950, 1951, 1952, 1953, 1954, 1955, 1956, 
1957, 1958, 1959, 1960, 1961, 1962, 1963, 1964, 1965, 1966, 1967, 
1968, 1969, 1970, 1971, 1972, 1973, 1974, 1975, 1976, 1977, 1978, 
1979, 1980, 1981, 1982, 1983, 1984, 1985, 1986, 1987, 1988, 1989, 
1990, 1991, 1992, 1993, 1994, 1995, 1996, 1997, 1998, 1999, 2000, 
2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 
2012, 2013, 2014, 2015, 2016, 2017, 2018, 2019, 2020, 1950, 1951, 
1952, 1953, 1954, 1955, 1956, 1957, 1958, 1959, 1960, 1961, 1962, 
1963, 1964, 1965, 1966, 1967, 1968, 1969, 1970, 1971, 1972, 1973, 
1974, 1975, 1976, 1977, 1978, 1979, 1980, 1981, 1982, 1983, 1984, 
1985, 1986, 1987, 1988, 1989, 1990, 1991, 1992, 1993, 1994, 1995, 
1996, 1997, 1998, 1999, 2000, 2001, 2002, 2003, 2004, 2005, 2006, 
2007, 2008, 2009, 2010, 2011, 2012, 2013, 2014, 2015, 2016, 2017, 
2018, 2019, 2020), country = c("Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Argentina", "Argentina", 
"Argentina", "Argentina", "Argentina", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", "Turkey", 
"Turkey", "Turkey", "Turkey", "Turkey", "Turkey"), C1 = c(NA, 
NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 12.9041629886915, 
10.2787574725073, 9.98038631665412, 9.72127698537181, 9.18580964838541, 
9.6375609641048, 10.8658823843399, 10.984869871837, 11.9525224881086, 
10.2308377488651, 6.5839104917193, 8.15217071220236, 8.08714211405919, 
7.50442747786782, 7.79627735903041, 6.35350500480657, 6.47552296064522, 
9.59615604621897, 8.65832496118367, 8.3459768371011, 7.63430725730443, 
7.80040264019792, 8.09435846444628, 8.97786821775225, 9.61606509643166, 
8.12367620787488, 6.71649176009431, 5.99078709147934, 5.13682648211779, 
5.08266800031075, 5.351464616273, 5.61086611323361, 5.22197210944516, 
5.25272256987622, 4.45782610229152, 4.67991094417297, 4.56858960891786, 
10.2066467144411, 10.328166939117, 8.36248661002826, 7.93875427420938, 
6.93557229126392, 7.45235394606923, 7.3189545972436, 5.2736234689014, 
7.13216745078964, 6.99873377022519, 5.7817442068501, 6.05291843670451, 
6.71270351428559, 5.1566859021408, 6.26456582010254, 5.23162237725058, 
4.53787889681146, 5.11101651115706, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, 54.9192364170338, 51.7385257301808, 52.8019925280199, 
53.3261802575107, 50.4970178926441, 46.1467038068709, 47.2025216706068, 
44.53125, 41.5873015873016, 40.8675799086758, 39.0839694656489, 
37.360824742268, 34.3133863714977, 33.956043956044, 36.0024203307785, 
35.3707725721378, 32.519436345967, 31.4399318375462, 31.803527403755, 
27.9075627227242, 26.1461400221772, 24.1627642070624, 22.3537484988849, 
20.9150138791008, 21.2014310977356, 19.6905586186263, 19.5126009949236, 
17.8184708900603, 17.258956312464, 16.5859815004054, 17.4762288321229, 
15.2470755823245, 14.9836651520805, 15.4160185614868, 15.4628347718716, 
15.6932030829778, 16.8545560944976, 14.4611526932527, 12.4503166318037, 
10.4578259441456, 10.0328526543258, 8.78803796915921, 10.1907585574088, 
9.79514977798378, 9.32742275784367, 9.16534055228687, 8.09488128822859, 
7.45702743708227, 7.42466846883692, 8.07198879989725, 8.9669281343332, 
8.17395626522538, 7.69487759202317, 6.67610812297851, 6.55723547339657, 
6.86837534505832, 6.14229206403875, 6.03862979568919, 5.77601222087928, 
6.40077492846908, NA), C2 = c(NA, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, NA, 41.184160179361, 41.0085848893582, 
37.8240272440343, 36.1962188354532, 36.6454303394205, 31.5447436578601, 
35.762858969727, 36.358073530149, 34.3339746673214, 34.0368852105037, 
38.2151082839456, 39.1167603278579, 36.5949867349342, 34.1276092101854, 
32.6851576731524, 29.4760969895125, 28.7652362921224, 31.3602562635854, 
30.6694675312814, 29.7084408031154, 29.6418473138549, 27.4195971594836, 
27.4966462800495, 27.9996758567287, 30.9493718883737, 26.7897045521809, 
24.3864490932335, 21.8591315586603, 18.2399115325496, 17.8190917106899, 
17.2467521148076, 17.5357232920479, 18.227905749866, 17.8379584760908, 
16.9615250614589, 16.4942719439838, 16.0932258763829, 20.347773913878, 
22.4867505875749, 18.9370136214371, 18.340415936715, 17.8777938558849, 
17.0474154518997, 16.5383660984547, 15.5837772738051, 15.8448608064195, 
15.8506983942663, 15.2168009115954, 15.0110542553443, 14.7727785491821, 
14.1815854549835, 13.4880259708051, 12.8351683415363, 14.0601434041581, 
14.469857210653, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 
12.7753303964758, 13.2127955493741, 13.0759651307597, 12.8755364806867, 
13.3200795228628, 14.6703806870938, 14.736012608353, 14.9857954545455, 
15.7460317460317, 16.0958904109589, 16.0814249363868, 16.6185567010309, 
17.3642338291249, 17.5549450549451, 16.5994352561517, 16.568414520633, 
17.6384839650146, 17.286755656537, 17.0617611732726, 19.1605773730247, 
17.0859939586281, 19.4393114795595, 19.9996187644155, 19.1035395302679, 
18.0569256856586, 18.2547620065251, 22.2007740904828, 21.8391127634602, 
22.9555540938444, 23.1218538833796, 21.9578069720618, 22.1719176235394, 
21.6370883362235, 20.8090845243861, 22.0629117902148, 22.5660651401301, 
21.1414222999772, 21.5655846462854, 22.2716554368656, 19.9963040675879, 
18.7056269713129, 17.7146298488846, 16.9326153021282, 17.1114469831801, 
16.9482350609586, 16.903863698293, 17.0593739972631, 16.8046678617533, 
16.2646010673369, 15.1576059052686, 15.0539685698439, 16.4486710311014, 
15.8337489004359, 16.2798557387916, 16.7716970232894, 16.6961854458277, 
16.5954578952398, 17.5918310459266, 19.0433777374516, 18.280976425027, 
NA), C3 = c(NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 82.5125543268366, 
88.4834748372495, 64.328775268034, 67.295938371345, 77.7236906437735, 
81.2531966123609, 73.903671516043, 63.2796145278544, 49.6590053859052, 
24.2929772699524, 32.0464542409784, 45.2763649379163, 49.6805395163102, 
50.4269078500422, 54.2479902089021, 53.48675458569, 45.3830010270168, 
53.7777258133156, 54.2717733344258, 51.8017865791584, 56.0976840936343, 
57.6821855247763, 68.0551439256991, 60.7549295505373, 70.3450187781642, 
61.7863847377178, 47.0046920548502, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 
NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, NA, 
NA, 80.7115299677774, 98.9037032210514, 97.3968931160828, 98.6684502902615, 
125.766186334077, 82.7073657385639, 109.094641464308, 116.082201273435, 
117.630112854441, 113.089104828361, 97.6533515496685, 118.083087499274, 
79.487572866742, 87.5239813988531, 87.5860747310278, 94.906199990454, 
94.7033145531204, 94.5718715539841, 91.6814234437438, 81.2978732632131, 
74.034860714713, 87.6101498446379, 94.5147405516283, 80.1097244213394, 
91.3450549864493, 82.8358949845043, 81.6674625026796, 85.0041947243795, 
89.2649309430369, 75.407517473589, 65.7686639087196, NA)), row.names = c(NA, 
-142L), class = c("tbl_df", "tbl", "data.frame"))

uj5u.com熱心網友回復:

您的資料集有點不完整,因為它缺少國家列。但我會嘗試提供一些偽代碼:

library(dplyr)
library(purrr)
# First split the data frame so each country becomes one df
split_df <- split.data.frame(df, df$country)
# Next, define a function that runs prcomp on each df
prcomp_wrapper <- function(df){
df %>%
  na.omit() %>%
  select(-c(year, country)) %>%
  prcomp(scale=TRUE)
}
# Run the wrapper for each country with purrr::map
PCA <- map(split_df, prcomp_wrapper)
# PCA will be a list with the PCA results for each country

轉載請註明出處,本文鏈接:https://www.uj5u.com/qita/439914.html

標籤:r 循环 主成分分析 prcomp

上一篇:JWT和身份驗證安全/模式

下一篇:使用回圈時如何進行平滑的顏色過渡?

標籤雲
其他(157675) Python(38076) JavaScript(25376) Java(17977) C(15215) 區塊鏈(8255) C#(7972) AI(7469) 爪哇(7425) MySQL(7132) html(6777) 基礎類(6313) sql(6102) 熊猫(6058) PHP(5869) 数组(5741) R(5409) Linux(5327) 反应(5209) 腳本語言(PerlPython)(5129) 非技術區(4971) Android(4554) 数据框(4311) css(4259) 节点.js(4032) C語言(3288) json(3245) 列表(3129) 扑(3119) C++語言(3117) 安卓(2998) 打字稿(2995) VBA(2789) Java相關(2746) 疑難問題(2699) 细绳(2522) 單片機工控(2479) iOS(2429) ASP.NET(2402) MongoDB(2323) 麻木的(2285) 正则表达式(2254) 字典(2211) 循环(2198) 迅速(2185) 擅长(2169) 镖(2155) 功能(1967) .NET技术(1958) Web開發(1951) python-3.x(1918) HtmlCss(1915) 弹簧靴(1913) C++(1909) xml(1889) PostgreSQL(1872) .NETCore(1853) 谷歌表格(1846) Unity3D(1843) for循环(1842)

熱門瀏覽
  • 網閘典型架構簡述

    網閘架構一般分為兩種:三主機的三系統架構網閘和雙主機的2+1架構網閘。 三主機架構分別為內端機、外端機和仲裁機。三機無論從軟體和硬體上均各自獨立。首先從硬體上來看,三機都用各自獨立的主板、記憶體及存盤設備。從軟體上來看,三機有各自獨立的作業系統。這樣能達到完全的三機獨立。對于“2+1”系統,“2”分為 ......

    uj5u.com 2020-09-10 02:00:44 more
  • 如何從xshell上傳檔案到centos linux虛擬機里

    如何從xshell上傳檔案到centos linux虛擬機里及:虛擬機CentOs下執行 yum -y install lrzsz命令,出現錯誤:鏡像無法找到軟體包 前言 一、安裝lrzsz步驟 二、上傳檔案 三、遇到的問題及解決方案 總結 前言 提示:其實很簡單,往虛擬機上安裝一個上傳檔案的工具 ......

    uj5u.com 2020-09-10 02:00:47 more
  • 一、SQLMAP入門

    一、SQLMAP入門 1、判斷是否存在注入 sqlmap.py -u 網址/id=1 id=1不可缺少。當注入點后面的引數大于兩個時。需要加雙引號, sqlmap.py -u "網址/id=1&uid=1" 2、判斷文本中的請求是否存在注入 從文本中加載http請求,SQLMAP可以從一個文本檔案中 ......

    uj5u.com 2020-09-10 02:00:50 more
  • Metasploit 簡單使用教程

    metasploit 簡單使用教程 浩先生, 2020-08-28 16:18:25 分類專欄: kail 網路安全 linux 文章標簽: linux資訊安全 編輯 著作權 metasploit 使用教程 前言 一、Metasploit是什么? 二、準備作業 三、具體步驟 前言 Msfconsole ......

    uj5u.com 2020-09-10 02:00:53 more
  • 游戲逆向之驅動層與用戶層通訊

    驅動層代碼: #pragma once #include <ntifs.h> #define add_code CTL_CODE(FILE_DEVICE_UNKNOWN,0x800,METHOD_BUFFERED,FILE_ANY_ACCESS) /* 更多游戲逆向視頻www.yxfzedu.com ......

    uj5u.com 2020-09-10 02:00:56 more
  • 北斗電力時鐘(北斗授時服務器)讓網路資料更精準

    北斗電力時鐘(北斗授時服務器)讓網路資料更精準 北斗電力時鐘(北斗授時服務器)讓網路資料更精準 京準電子科技官微——ahjzsz 近幾年,資訊技術的得了快速發展,互聯網在逐漸普及,其在人們生活和生產中都得到了廣泛應用,并且取得了不錯的應用效果。計算機網路資訊在電力系統中的應用,一方面使電力系統的運行 ......

    uj5u.com 2020-09-10 02:01:03 more
  • 【CTF】CTFHub 技能樹 彩蛋 writeup

    ?碎碎念 CTFHub:https://www.ctfhub.com/ 筆者入門CTF時時剛開始刷的是bugku的舊平臺,后來才有了CTFHub。 感覺不論是網頁UI設計,還是題目質量,賽事跟蹤,工具軟體都做得很不錯。 而且因為獨到的金幣制度的確讓人有一種想去刷題賺金幣的感覺。 個人還是非常喜歡這個 ......

    uj5u.com 2020-09-10 02:04:05 more
  • 02windows基礎操作

    我學到了一下幾點 Windows系統目錄結構與滲透的作用 常見Windows的服務詳解 Windows埠詳解 常用的Windows注冊表詳解 hacker DOS命令詳解(net user / type /md /rd/ dir /cd /net use copy、批處理 等) 利用dos命令制作 ......

    uj5u.com 2020-09-10 02:04:18 more
  • 03.Linux基礎操作

    我學到了以下幾點 01Linux系統介紹02系統安裝,密碼啊破解03Linux常用命令04LAMP 01LINUX windows: win03 8 12 16 19 配置不繁瑣 Linux:redhat,centos(紅帽社區版),Ubuntu server,suse unix:金融機構,證券,銀 ......

    uj5u.com 2020-09-10 02:04:30 more
  • 05HTML

    01HTML介紹 02頭部標簽講解03基礎標簽講解04表單標簽講解 HTML前段語言 js1.了解代碼2.根據代碼 懂得挖掘漏洞 (POST注入/XSS漏洞上傳)3.黑帽seo 白帽seo 客戶網站被黑帽植入劫持代碼如何處理4.熟悉html表單 <html><head><title>TDK標題,描述 ......

    uj5u.com 2020-09-10 02:04:36 more
最新发布
  • 2023年最新微信小程式抓包教程

    01 開門見山 隔一個月發一篇文章,不過分。 首先回顧一下《微信系結手機號資料庫被脫庫事件》,我也是第一時間得知了這個訊息,然后跟蹤了整件事情的經過。下面是這起事件的相關截圖以及近日流出的一萬條資料樣本: 個人認為這件事也沒什么,還不如關注一下之前45億快遞資料查詢渠道疑似在近日復活的訊息。 訊息是 ......

    uj5u.com 2023-04-20 08:48:24 more
  • web3 產品介紹:metamask 錢包 使用最多的瀏覽器插件錢包

    Metamask錢包是一種基于區塊鏈技術的數字貨幣錢包,它允許用戶在安全、便捷的環境下管理自己的加密資產。Metamask錢包是以太坊生態系統中最流行的錢包之一,它具有易于使用、安全性高和功能強大等優點。 本文將詳細介紹Metamask錢包的功能和使用方法。 一、 Metamask錢包的功能 數字資 ......

    uj5u.com 2023-04-20 08:47:46 more
  • vulnhub_Earth

    前言 靶機地址->>>vulnhub_Earth 攻擊機ip:192.168.20.121 靶機ip:192.168.20.122 參考文章 https://www.cnblogs.com/Jing-X/archive/2022/04/03/16097695.html https://www.cnb ......

    uj5u.com 2023-04-20 07:46:20 more
  • 從4k到42k,軟體測驗工程師的漲薪史,給我看哭了

    清明節一過,盲猜大家已經無心上班,在數著日子準備過五一,但一想到銀行卡里的余額……瞬間心情就不美麗了。最近,2023年高校畢業生就業調查顯示,本科畢業月平均起薪為5825元。調查一出,便有很多同學表示自己又被平均了。看著這一資料,不免讓人想到前不久中國青年報的一項調查:近六成大學生認為畢業10年內會 ......

    uj5u.com 2023-04-20 07:44:00 more
  • 最新版本 Stable Diffusion 開源 AI 繪畫工具之中文自動提詞篇

    🎈 標簽生成器 由于輸入正向提示詞 prompt 和反向提示詞 negative prompt 都是使用英文,所以對學習母語的我們非常不友好 使用網址:https://tinygeeker.github.io/p/ai-prompt-generator 這個網址是為了讓大家在使用 AI 繪畫的時候 ......

    uj5u.com 2023-04-20 07:43:36 more
  • 漫談前端自動化測驗演進之路及測驗工具分析

    隨著前端技術的不斷發展和應用程式的日益復雜,前端自動化測驗也在不斷演進。隨著 Web 應用程式變得越來越復雜,自動化測驗的需求也越來越高。如今,自動化測驗已經成為 Web 應用程式開發程序中不可或缺的一部分,它們可以幫助開發人員更快地發現和修復錯誤,提高應用程式的性能和可靠性。 ......

    uj5u.com 2023-04-20 07:43:16 more
  • CANN開發實踐:4個DVPP記憶體問題的典型案例解讀

    摘要:由于DVPP媒體資料處理功能對存放輸入、輸出資料的記憶體有更高的要求(例如,記憶體首地址128位元組對齊),因此需呼叫專用的記憶體申請介面,那么本期就分享幾個關于DVPP記憶體問題的典型案例,并給出原因分析及解決方法。 本文分享自華為云社區《FAQ_DVPP記憶體問題案例》,作者:昇騰CANN。 DVPP ......

    uj5u.com 2023-04-20 07:43:03 more
  • msf學習

    msf學習 以kali自帶的msf為例 一、msf核心模塊與功能 msf模塊都放在/usr/share/metasploit-framework/modules目錄下 1、auxiliary 輔助模塊,輔助滲透(埠掃描、登錄密碼爆破、漏洞驗證等) 2、encoders 編碼器模塊,主要包含各種編碼 ......

    uj5u.com 2023-04-20 07:42:59 more
  • Halcon軟體安裝與界面簡介

    1. 下載Halcon17版本到到本地 2. 雙擊安裝包后 3. 步驟如下 1.2 Halcon軟體安裝 界面分為四大塊 1. Halcon的五個助手 1) 影像采集助手:與相機連接,設定相機引數,采集影像 2) 標定助手:九點標定或是其它的標定,生成標定檔案及內參外參,可以將像素單位轉換為長度單位 ......

    uj5u.com 2023-04-20 07:42:17 more
  • 在MacOS下使用Unity3D開發游戲

    第一次發博客,先發一下我的游戲開發環境吧。 去年2月份買了一臺MacBookPro2021 M1pro(以下簡稱mbp),這一年來一直在用mbp開發游戲。我大致分享一下我的開發工具以及使用體驗。 1、Unity 官網鏈接: https://unity.cn/releases 我一般使用的Apple ......

    uj5u.com 2023-04-20 07:40:19 more