Period | Scrobble count | Comparison scrobble count |
---|---|---|
Jan | 843 | 464 |
Feb | 710 | 644 |
Mar | 605 | 1026 |
Apr | 806 | 698 |
May | 680 | 594 |
Jun | 586 | 834 |
Jul | 560 | 720 |
Aug | 469 | 1014 |
Sep | 629 | 1019 |
Oct | 543 | 1377 |
Nov | 296 | 1135 |
Dec | 196 | 934 |
Top Music


Did you know?
The first track thecodingwizard scrobbled this year was Cruel Summer by Taylor Swift.
Charts
Weekly scrobbles
- This year
- Last year
Weekday | Scrobble count | Previous scrobble count |
---|---|---|
Mon | 1,211 | 1,310 |
Tue | 1,136 | 1,293 |
Wed | 1,251 | 1,750 |
Thu | 787 | 1,965 |
Fri | 894 | 1,356 |
Sat | 846 | 1,344 |
Sun | 798 | 1,441 |
Listening clock
Hour | Scrobble count |
---|---|
0 | 160 |
1 | 63 |
2 | 12 |
3 | 10 |
4 | 6 |
5 | 28 |
6 | 31 |
7 | 119 |
8 | 152 |
9 | 153 |
10 | 220 |
11 | 402 |
12 | 653 |
13 | 802 |
14 | 674 |
15 | 318 |
16 | 306 |
17 | 369 |
18 | 544 |
19 | 467 |
20 | 421 |
21 | 382 |
22 | 338 |
23 | 293 |
Artist Map
Country | Top Artist | Scrobble Count |
---|---|---|
United States | Taylor Swift | 4031 |
United Kingdom | One Direction | 54 |
Korea, Republic of | IU | 13 |
Canada | Céline Dion | 32 |
China | 董冬冬 | 58 |
France | David Guetta | 2 |
Australia | 5 Seconds of Summer | 13 |
Germany | Johann Pachelbel | 9 |
Norway | boy pablo | 3 |
Russian Federation | Sergei Rachmaninoff | 1 |
Taiwan | 楊丞琳 | 2 |
Philippines | Eyedress | 2 |
Sweden | Avicii | 4 |
Austria | Gustav Mahler | 1 |
Colombia | Shakira | 1 |
Spain | Joaquín Rodrigo | 1 |
Finland | Jean Sibelius | 1 |
Hungary | Franz Liszt | 2 |
Indonesia | Niki | 8 |
Ireland | Hozier | 2 |
Iceland | Laufey | 20 |
Japan | Lisa | 2 |
Nigeria | Rema | 2 |
Netherlands | Martin Garrix | 3 |
New Zealand | Openside | 4 |
Poland | Frédéric Chopin | 1 |
Singapore | 林俊傑 | 11 |
None | Արամ Խաչատրյան | 1 |
Music by decade
Decade | Scrobbles | Top Album | Image | Top Decade |
---|---|---|---|---|
Pre-1960 | 0 | /static/images/listening-report/v3/default_album.c052a79f9ec6.svg | ||
1960s | 1 | Mahler: Symphony No. 5 by Gustav Mahler | https://lastfm.freetls.fastly.net/i/u/60x60/adbe6ca772abc523d0be18ae0ce3b03b.jpg | |
1970s | 8 | The Essential John Denver by John Denver | https://lastfm.freetls.fastly.net/i/u/60x60/ef7620b79ebb4e3c83220a2432dd0969.jpg | |
1980s | 2 | Impressions by Jacqueline du Pré | https://lastfm.freetls.fastly.net/i/u/60x60/a93a57775a9996cddcb12e9ced0d19ac.jpg | |
1990s | 52 | Middle of Nowhere by Hanson | https://lastfm.freetls.fastly.net/i/u/60x60/875d2ebd4c2b35c7436028777cb7e118.jpg | |
2000s | 191 | Taylor Swift by Taylor Swift | https://lastfm.freetls.fastly.net/i/u/60x60/0213873e015e36cfda289e7d77f96bdb.jpg | |
2010s | 1196 | Lover by Taylor Swift | https://lastfm.freetls.fastly.net/i/u/60x60/d3f083370c371a3ba1cddafaf193c27d.jpg | |
2020s | 3157 | Red (Taylor's Version) by Taylor Swift | https://lastfm.freetls.fastly.net/i/u/60x60/a758908e6e86dcecbb199c4b19acb799.jpg | true |
Music ratio
(2023)
(2023)
(2023)
Listening fingerprint
- thecodingwizard
- Global average
Category | Category Explanation | User Data | Global Data | Tooltip Value |
---|---|---|---|---|
Consistency | Describes how regular your music habits are. Higher percentages mean you scrobbled on more days throughout the year. | 63 | 58 | 63% Consistency |
Discovery Rate | How much new music you listened to this year. Higher percentages mean you discovered more new artists. | 43 | 48 | 43% Discovery Rate |
Variance | How diverse your listening was this year. Higher percentages mean you explored more tags. | 32 | 23 | 32% Variance |
Concentration | How long you spent listening to your favourite artists. Higher percentages mean you spent more time with your favourites. | 78 | 41 | 78% Concentration |
Replay rate | How often you returned to your favourite songs. | 81 | 70 | 81% Replay rate |
Quick facts
vs. 26 days, 21 hours (2023)
vs. 29 (2023)
vs. 41 (2023)


Did you know?
thecodingwizard's 2024 was LIT. They listened to 3 tracks with 'fire' in the title in 2024 🔥
Community
-
Your music stats, live
View your stats in real time, or receive weekly reports.
-
Find music you love
Recommendations based on your listening history.
-
Rediscover your music
Every song you've ever listened to, all in one place.
- …and much more!