📉 1616 Participants all Week
1616 Participants all Week 📉 3600 Entries all Week
3600 Entries all WeekNumber of Posts and Participants per Tag
| Number of Posts | Number of Participants | Weekly Changes, % | |
|---|---|---|---|
| #foodphotography | +7.1 % | ||
| #animalphotography | +12.7% | ||
| #landscapephotography | +0.7 % | ||
| #cityscapephotography | |||
| #architecturalphotography | +1.6 % | ||
| #vehiclephotography | +7.3 % | ||
| #macrophotography | +124.2 % | ||
| #colourfulphotography | +160.5 % | ||
| #streetphotography | |||
| #portraitphotography | |||
| #sportsphotography | |||
| #smartphonephotography | |||
| #goldenhourphotography | +10.9 % | ||
| #longexposurephotography |
Number taking part in both Contests of the Day
| Participants in both contests | |
|---|---|
Number of Participants each Day
| Participants for the day | Weekly Changes, % | |
|---|---|---|
+9.0 % | ||
+3.7 % | ||
+114.2 % | ||
Authors with the Most Posts
Authors Participated in All PhotoContests this Week
Histogram of Number of Posts every 15 minutes
The data represents the CET (UTC+1), which is the official time for !
Background Info
I have extracted the data using api.steemit.com and the following api call:
payload = '{"id":4,"jsonrpc":"2.0","method":"call","params":["database_api","get_discussions_by_created", [{"tag":"' + tag + '","limit":100}]]}'
I am using pandas library. Pandas is an open source and is designed for Python users for data analysis and manipulation.
Monday: foodphotography and animalphotography
Tuesday: landscapephotography and cityscapephotography
Wednesday: architecturalphotography and vehiclephotography
Thursday: macrophotography and colourfulphotography
Friday: streetphotography and portraitphotography
Saturday: sportsphotography and smartphonephotography
Sunday: goldenhourphotography and longexposurephotography