Hi
user
Admin Login:
Username:
Password:
Name:
Jupyter Notebooks for Data Science
--client
pyconza
--show
pyconza2018
--room baobab 14346 --force
Next: 11 Teach kids (7-17) to code with python & CoderDojo
show more...
Marks
Author(s):
Ari Ramkilowan
Location
Baobab
Date
oct Thu 11
Days Raw Files
Start
13:55
First Raw Start
13:30
Duration
00:45:00
Offset
0:24:23
End
14:40
Last Raw End
15:00
Chapters
00:00
0:06:47
0:36:46
Total cuts_time
38 min.
https://za.pycon.org/talks/12-jupyter-notebooks-for-data-science/
raw-playlist
raw-mp4-playlist
encoded-files-playlist
host
archive
tweet
mp4
svg
png
assets
release.pdf
Python_as_a_tool_for_ehealth_systems.json
logs
Admin:
episode
episode list
cut list
raw files day
marks day
marks day
image_files
State:
---------
borked
edit
encode
push to queue
post
richard
review 1
email
review 2
make public
tweet
to-miror
conf
done
Locked:
clear this to unlock
Locked by:
user/process that locked.
Start:
initially scheduled time from master, adjusted to match reality
Duration:
length in hh:mm:ss
Name:
Video Title (shows in video search results)
Emails:
email(s) of the presenter(s)
Released:
has someone authorised pubication
Unknown
Yes
No
Normalise:
Channelcopy:
m=mono, 01=copy left to right, 10=right to left, 00=ignore.
Thumbnail:
filename.png
Description:
markdown
This talk is intended for beginner and intermediate data scientists/ analysts/ engineers, although I hope that even experienced data scientists can gain something from the talk. The talk will focus on using Jupyter notebooks in data science applications. I will discuss the basics of how to get it up and running and the common features like using markup and code in the same notebook, I will highlight the advantages of working in a notebook rather than a traditional IDE. I will also discuss other features like using code snippets, autocomplete, linting and creating a table of contents. Inserting images and videos into a notebook along side your code can be a handy way of learning something new. I will end the talk with a look into jupyterlab. Attendees of this course will gain an understanding and appreciation of the quick prototyping that is afforded to you when using Jupyter notebooks in your data science pipeline. Especially when it comes to exploratory data analysis. I want to be able to showcase all the common features of Jupyter notebooks but also some less known ones, so that there everyone attending the talk will learn something.
Comment:
production notes
lots of microphone crackle. Right channel could be better.
2018-10-11/13_30_37.ts
Apply:
13:30:37 - 13:53:19 ( 00:22:42 )
S:
13:30:37 -
E:
14:00:37
D:
00:30:00
(
End:
1362.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/13_30_37.ts :start-time=00.0 --audio-desync=0
Raw File
Cut List
13:30:37
seconds: 0.0
Wall: 13:30:37
Duration
00:30:00
14:00:37
seconds: 1362.0
Wall: 13:53:19
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/13_30_37.ts
Apply:
13:53:19 - 13:53:50 ( 00:00:31 )
S:
13:30:37 -
E:
14:00:37
D:
00:30:00
(
Start:
1362.0) (
End:
1393.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/13_30_37.ts :start-time=01362.0 --audio-desync=0
Raw File
Cut List
13:30:37
seconds: 1362.0
Wall: 13:53:19
Duration
00:30:00
14:00:37
seconds: 1393.0
Wall: 13:53:50
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/13_30_37.ts
Apply:
13:53:49 - 14:00:37 ( 00:06:47 )
S:
13:30:37 -
E:
14:00:37
D:
00:30:00
(
Start:
1392.288582)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/13_30_37.ts :start-time=01392.288582 --audio-desync=0
Raw File
Cut List
13:30:37
seconds: 1392.288582
Wall: 13:53:49
Duration
00:30:00
14:00:37
seconds: 0.0
Wall: 13:30:37
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_00_37.ts
Apply:
14:00:37 - 14:30:36 ( 00:29:59 )
S:
14:00:37 -
E:
14:30:36
D:
00:29:59
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_00_37.ts :start-time=00.0 --audio-desync=0
Raw File
Cut List
14:00:37
seconds: 0.0
Wall: 14:00:37
Duration
00:29:59
14:30:36
seconds: 0.0
Wall: 14:00:37
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:30:37 - 14:32:16 ( 00:01:39 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
End:
99.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=00.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 0.0
Wall: 14:30:37
Duration
00:29:59
15:00:36
seconds: 99.0
Wall: 14:32:16
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:32:16 - 14:33:31 ( 00:01:15 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
99.0) (
End:
174.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=099.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 99.0
Wall: 14:32:16
Duration
00:29:59
15:00:36
seconds: 174.0
Wall: 14:33:31
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:33:31 - 14:33:55 ( 00:00:24 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
174.0) (
End:
198.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0174.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 174.0
Wall: 14:33:31
Duration
00:29:59
15:00:36
seconds: 198.0
Wall: 14:33:55
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:33:55 - 14:34:06 ( 00:00:11 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
198.0) (
End:
209.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0198.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 198.0
Wall: 14:33:55
Duration
00:29:59
15:00:36
seconds: 209.0
Wall: 14:34:06
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:34:06 - 14:34:37 ( 00:00:31 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
209.0) (
End:
240.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0209.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 209.0
Wall: 14:34:06
Duration
00:29:59
15:00:36
seconds: 240.0
Wall: 14:34:37
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:34:37 - 14:36:44 ( 00:02:07 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
240.0) (
End:
367.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0240.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 240.0
Wall: 14:34:37
Duration
00:29:59
15:00:36
seconds: 367.0
Wall: 14:36:44
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:36:44 - 14:42:03 ( 00:05:19 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
367.0) (
End:
686.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0367.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 367.0
Wall: 14:36:44
Duration
00:29:59
15:00:36
seconds: 686.0
Wall: 14:42:03
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2018-10-11/14_30_37.ts
Apply:
14:42:03 - 15:00:36 ( 00:18:33 )
S:
14:30:37 -
E:
15:00:36
D:
00:29:59
(
Start:
686.0)
show more...
vlc ~/Videos/veyepar/pyconza/pyconza2018/dv/baobab/2018-10-11/14_30_37.ts :start-time=0686.0 --audio-desync=0
Raw File
Cut List
14:30:37
seconds: 686.0
Wall: 14:42:03
Duration
00:29:59
15:00:36
seconds: 0.0
Wall: 14:30:37
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
Rf filename:
root is .../show/dv/location/, example: 2013-03-13/13:13:30.dv
Sequence:
get this:
check and save to add this
2018-10-11/13_30_37.ts
2018-10-11/14_00_37.ts
2018-10-11/14_30_37.ts
Veyepar
Video Eyeball Processor and Review