Hi
user
Admin Login:
Username:
Password:
Name:
Untangling Twisted: How We Scaled a Python Service for Online Publishers
--client
big_apple_py
--show
pygotham_2015
--room room701 10026 --force
Next: 11 Voice programming: a how-to
show more...
Marks
Author(s):
Brian Muller
Location
Room 701
Date
aug Sun 16
Days Raw Files
Start
11:15
First Raw Start
11:14
Duration
00:55:00
Offset
0:00:45
End
12:10
Last Raw End
12:10
Chapters
00:00
Total cuts_time
53 min.
https://pygotham.org/2015/talks/116/untangling-twisted-how-we-scaled-a-python-service-for-online-publishers
raw-playlist
raw-mp4-playlist
encoded-files-playlist
host
public
tweet
mp4
svg
png
assets
release.pdf
Untangling_Twisted_How_We_Scaled_a_Python_Service_for_Online_Publishers.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
At OpBandit, we built a Python Twisted service that renders different versions of news content for rendering on top publishers across six countries. At a high level, whenever a reader requests a page on a publisher's website, our service selects from various versions of headlines and photos to deliver the collection of versions that we think a user is most likely to click. This requires decision making on the fly for each request with hard requirements for speed and reliability. This talk will cover how we used Twisted to scale our service to provide hundreds of millions of optimized pages / month for readers, as well as what it's like to attempt to scale real-time data science recommendation algorithms within Python.
Comment:
production notes
2015-08-16/11_14_15.dv
Apply:
11:14:15 - 12:07:57 ( 00:53:42 )
S:
11:14:15 -
E:
12:07:57
D:
00:53:42
show more...
vlc ~/Videos/veyepar/big_apple_py/pygotham_2015/dv/room701/2015-08-16/11_14_15.dv :start-time=00.0 --audio-desync=0
Raw File
Cut List
11:14:15
seconds: 0.0
Wall: 11:14:15
Duration
00:53:42
12:07:57
seconds: 0.0
Wall: 11:14:15
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2015-08-16/12_07_57.dv
Apply:
12:07:57 - 12:08:07 ( 00:00:10 )
S:
12:07:57 -
E:
12:08:07
D:
00:00:10
show more...
vlc ~/Videos/veyepar/big_apple_py/pygotham_2015/dv/room701/2015-08-16/12_07_57.dv :start-time=00.0 --audio-desync=0
Raw File
Cut List
12:07:57
seconds: 0.0
Wall: 12:07:57
Duration
00:00:10
12:08:07
seconds: 0.0
Wall: 12:07:57
Comments:
mp4
mp4.m3u
dv.m3u
Split:
Sequence:
:
delete
2015-08-16/12_08_37.dv
Apply:
12:08:37 - 12:10:52 ( 00:02:15 )
S:
12:08:37 -
E:
12:10:52
D:
00:02:15
show more...
vlc ~/Videos/veyepar/big_apple_py/pygotham_2015/dv/room701/2015-08-16/12_08_37.dv :start-time=00.0 --audio-desync=0
Raw File
Cut List
12:08:37
seconds: 0.0
Wall: 12:08:37
Duration
00:02:15
12:10:52
seconds: 0.0
Wall: 12:08:37
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
2015-08-16/11_14_15.dv
2015-08-16/12_07_57.dv
2015-08-16/12_08_37.dv
Veyepar
Video Eyeball Processor and Review