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Tsukuba.R#7 presentation see also: http://wiki.livedoor.jp/syou6162/d/Tsukuba.R%237
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Cio summit 20170223_v20
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Algerian R Users Group (Official Kick Off)
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Introduction To R
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Nepal sql saturday 2017 sqlsaturday#692 my presentation
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This project focuses on implementing real-time object detection using Raspberry Pi and OpenCV. Real-time object detection is a critical aspect of computer vision applications, allowing systems to identify and locate objects within a live video stream instantly.
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Beautiful woRld
1.
Tsukuba.R #7
2.
Beautiful woRld
Tsukuba.R #7 (2010-05-09)
3.
An introduction for
R beginners R
4.
plan
5.
R
R R R R 10
6.
7.
Impossible.
8.
What can I
do?
9.
Introduce URLs URL
10.
so,
11.
I’ll introduce R-related
web resources. R web resource
12.
What is R?
13.
What is R? →Just
google it.
14.
What is R? →Just
google it.
15.
http://www.r-project.org/
16.
http://www.r-project.org/
17.
R
18.
Data manipulation
Data visualization/ Statistical analysis Graphics
19.
Data manipulation
Data visualization/ Statistical analysis Graphics
20.
Data manipulation
Data visualization/ Statistical analysis Graphics
21.
Data manipulation
Data visualization/ Statistical analysis Graphics
22.
R
23.
http://dataspora.com/blog/predictive-analytics-using-r/
24.
The best thing
about R is that it was developed by statisticians.
25.
The worst thing
about R is that…
26.
The worst thing
about R is that… it was developed by statisticians.
27.
http://www.r-project.org/
28.
http://www.r-project.org/
29.
http://cran.r-project.org/mirrors.html
30.
http://cran.r-project.org/mirrors.html
31.
http://cran.md.tsukuba.ac.jp/
32.
http://cran.md.tsukuba.ac.jp/
33.
http://cran.md.tsukuba.ac.jp/
34.
http://www.okada.jp.org/RWiki/
35.
http://www.okada.jp.org/RWiki/
36.
http://www.okada.jp.org/RWiki/?R %A4%F2%C1%A6%A4%E1%A4%EB100%2B%A4%CE%CD
%FD%CD%B3
37.
http://www.okada.jp.org/RWiki/?R%CB%DC%A5%EA
%A5%B9%A5%C8
38.
http://cse.naro.affrc.go.jp/takezawa/r-tips/r.html
39.
http://cse.naro.affrc.go.jp/takezawa/r-tips/r.html
40.
http://aoki2.si.gunma-u.ac.jp/R/index.html
41.
http://aoki2.si.gunma-u.ac.jp/R/index.html
42.
43.
help()
44.
how to google
about R R
45.
http://www.rseek.org/
46.
http://seekr.plavox.info/
47.
http://seekr.plavox.info/
48.
http://d.hatena.ne.jp/syou6162/20100328/1269714652
49.
http://d.hatena.ne.jp/syou6162/20100328/1269714652
50.
http://www.agrocampus-ouest.fr/math/useR-2009/
51.
....
52.
R User Group
53.
Japan R User
Groups
54.
http://groups.google.co.jp/group/r-study-tokyo
55.
http://m884.jp/Osaka.R/
56.
http://twitter.com/nagoyar
57.
...
58.
web
59.
Use Twiiter
60.
61.
62.
63.
R
Twitter
64.
http://d.hatena.ne.jp/Rion778/
65.
Use weblog!
66.
→
Twitter
67.
→
Twitter
68.
→
Twitter
69.
→
Twitter
70.
71.
72.
LT
Download now