Man i love last.fm even though it's been technically superseded (for most people) by Spotify's recommendation features. It just fit so well in the zeitgeist of 2000's indie scene, microblogs, early social media.
I don't think the recommendation engines behind Spotify, Youtube Music, etc compare to the recommendations I got from last.fm over the years. The algorithmic ones seem to have a bunch of issues that bug me as a long time music listener and someone with a large music library.
- their memory is short as hell so you can listen to something for a while, stop and then it'll suggest it to you later as something to "discover"
- they are way too biased towards recently listened music and will replay things over and over if you're not actively managing your queues.
- because they're so based on what you have listened to (recently) they suggest things that are extremely obvious music no one is "discovering"
- they suggest the "top" songs from artists, albums, etc, it's very hard to get it to play a "deep cut"
- if you have a large library you'll inevitably hit playlist song limits and other things silently. Each service handles this differently, Youtube Music seemingly kicks things out of my library or liked playlists each time I add something else.
I've literally just gotten in the habit of never using the autoplay features and just starting whole albums from start to finish again because the algorithms annoy me so much. Youtube Music has been getting worse about it too where now it often ignores the music you chose to start a playlist and starts playing things you've listened to recently regardless of it doesn't match the genre/vibe at all.
That's because the recommendation engine that Last.fm used back in the day was made the incredibly expensive way: the entire corpus was hand-tagged and cross-linked by humans atop an enormous CDDB. Last.fm, Audioscrobbler, and MusicBrainz (the association engine) were all linked together.
But Spotify has that as well. Tons of user curated playlists. And although user playback data is harder to parse through, it's also pretty straightforward to build some clustering algorithm where if you both like X then you might like Y as well.
I've tried to switch to Spotify from Apple Music a few times because the common wisdom seems to be that Spotify has better algorithmic recommendations. But Apple Music "knows" what I like already, and Spotify never grabs me so fast that I'm willing to stick around for weeks training it -- and I suspect part of that is all of Apple Music's human-made playlists. Apple Music has hired a lot of good editors/curators over the years, and I haven't found any service -- including audiophile darlings Qobuz and Tidal -- that beats it in that aspect.
For me curation was better but I was really missing the ability to quickly seed a playlist with a specific vibe and build from there for specific moods.
That, and the desktop app and confusion between library and Apple Music streaming was annoying to manage. They need to unify that experience or split it completely.
Cannot call lastfm algorithm advanced in any sense. Just opened Amon Tobin page: "similar artists: Kid Koala and DJ Kush", which is an impressively shallow understanding of the last 20 (!!) years of his life, and this happened with almost every artist on the platform, because the average sum of tastes of every listener does not exist in reality. E.g. in the case of Amon Tobin, Kid Koala is the average of similarities between early albums and recent releases, which is just not true, his music cannot be averaged throughout his career. I love my Web 2.0 youth, but the average similarity algorithm doesnt deserve praise. Its not better, its nostalgia and lack of faang-style unlimited greed which confused with better quality
Edit: of course spotify-style recommendations are much much worse, I just mean that lastfm doesnt have good algorithm either because artists are not consistent in releases. What is an average between electronic cult classic "The last resort" and every other Trentemoller album in strict indie rock style? This average does not exist
I'm 90% sure that music labels pay to "put their thumbs on the scales" with these recommendation algorithms in order to push their "hot" artists. I wonder how many of these problems are a result of that.
Personally I’m more suspicious of “classic” artists, where the royalty and songwriting picture might be very skewed behind the scenes. The corporate owners of Spotify favouring one catalog of, say, “70s music” versus another could lead to a long-term capture of that category with little reaction or awareness.
Hot artists, in my estimation, are more about bot campaigns to kick off and sweeten ‘hotness’ as they’re in an ongoing war against other talent of the moment (with shady labels on all sides).
We can never know for sure if this is or isn't the case, so our only hope for stuff we can be confident isn't this way is with foss / self host able solutions
The other frustration I’ve noticed is that they key in very heavily on artist and specific “genre” designation as what feeds the recommendation, which is actually quite bad for anyone who likes experimental work.
I understand that if your recommendations are based on “people who like this also tend to like that” then you’re right in the strike zone. But that approach is basically agnostic to any property of the music itself. Suppose there’s a rock band that released a specific song where they’re experimenting with a new style that has an atypically (for them) funky/jazzy influence. If I say I want more songs like that I mean songs that fuse rock/jazz/funk, not more songs that fans of [rock band] are into.
I still think for new music discovery Pandora’s approach remains the best if you really curate a station for yourself. Apple Music has been good for creating very listenable playlists though, and their new AI playlist generator has been very fun. Surprisingly, YouTube also seems to have some secret sauce where they recommend a lot of interesting stuff that I’ve genuinely never encountered before. I suspect this is because there’s a lot more amateur and experimental artists on there doing weirder stuff and it’s able to find audiences for those in ways that the music-focused services have less visibility into since their catalog is so focused on stuff from the recording industry.
> If I say I want more songs like that I mean songs that fuse rock/jazz/funk, not more songs that fans of [rock band] are into.
I agree. There are bands where I'm not into their usual stuff but they have one or two songs that I really like. It'd be nice to drill down even father into specifics like "this one section of this one song" or even just songs that feature certain instruments or similar sounding vocals.
I just think it's beautiful that I can see all the music I've listened to since 2005 (back when it was still called Audioscrobbler, before the Last.fm rename). And I never stopped scrobbling in all that time!
I love these kinds of stats and being able to see how my taste has changed across more than 20 years, since I was a teenager.
I do miss the old community forums they had integrated back in the day, though.
I second this. I started as an Audioscrobbler user before the Last.fm merger. I have tracked nearly every track I've listened to for 21 years. It's awesome seeing how my habits have changed over the years.
As a long-time user, I do enjoy seeing how my tastes have changed over the years and which artists and albums I play the most. I also tend to agree that the Last.fm recommendation engine was perfectly fine for my use case compared to the algo that Spotify uses now. https://www.last.fm/user/wyclif
Same. I have one or more gaps in there which I wish I could go back and correct. I feel like integration with the service is a must for any music thing I pick up, the most recent being this year, resurrecting my old iTunes library via Navidrome.
I loved how easy it was to scrobble from different music services. Haven't used it in years though so I have no idea if that's still the case. Stuff like that usually rots because it's not making someone money.
One problem for me with Spotify and similar is that I don't use them. I want to be able to track what I've listened to but I only use my own, personal library via iTunes, not Apple Music.
Perhaps I'm wrong and some of these other services will track that but I don't have any desire to use the full on streaming services.
I’ve completely given up on recommendation engines from streaming services. It feels like they’re only good for creating background noise, not for helping me find music I actually want to listen to.
I’ve gone back to a very 90s approach. If I like a song from an artist, I check out the album. If I hear about an artist or album from someone, I listen to do. I’m also currently making my way through a list of the top 500 albums of all time to find some gems that I missed along the way. A streaming service is helpful for this to avoid spending a fortune or collecting a lot of music I don’t end up liking, but I treat the service more like a store. Apple Music works great for this, while Spotify and YouTube Music were a bit of a mess.
Pretty much all the machine learning recommendation engines that emerged in the Netflix era were doomed to collapse under their own weight over time for non-mainstream users because the some limited number of mainstream modes dominate as most statistically "optimal" across the total user pool. These algorithms are best in the early days, when they're still exploring the content space for good novel fits but eventually get trapped into deep, boring grooves that work really well for tons of non-discriminating users with similar tastes.
Separately, in real commercial terms, they're all fundamentally poisoned by business model objectives of highlighting cheap content or servicing partnership/advertising deals, etc. And that problem also becomes more and more prominent as the companies running them grow and become more influential and as they need to squeeze harder and harder for revenue growth.
It was basically just a long, winding, wildly expensive road back to broadcast radio programming.
It was a good run for a while, but we're long due for a new model.
> over time for non-mainstream users because the some limited number of mainstream modes dominate as most statistically "optimal" across the total user pool
This isn’t true, YouTube recommendations when it chooses music are amazing (no idea if YouTube Music is good I mean the video site).
Spotify recs are intentionally recommending you things cheap to stream or that have been paid for. It’s not a raw rec engine and it’s not bad cos it’s collapsing under normies, YouTube is proof of that.
The sad thing is that before Spotify bought the Echo Nest[1], they had hosted some of the coolest discovery demos for non-mainstream (in my case ambient/IDM) where you would feed it a youtube video URL and it would make a really compelling radio playlist based off it. i found so many artists i still listen to today by just sticking a video in there in the morning and coming back to the tab when something incredible popped up.
When Spotify bought TEN i considered moving my listening over, but the radio button we ended up with in Spotify and Youtube Music are huge disappointments in comparison, so corporatist and flattened to 1.5 dimensions, I always wondered how the magic was lost.
Bandcamp's feed (especially once you trick the UI in to showing you how to follow tags) is usually interesting to leave running but limited in its own way by the artist pool lacking mainstream tentpoles to jump off of.
Absolutely, you're hitting the same conclusions I've reached. The algorithms are optimized for the lowest friction users that just replay the same music they like over and over again and accept whatever the popular music is. If you're a user that likes music discovery you're fighting against the system to get what you want.
Spotify recommendations are biased because user incentive and theirs don't align. They pay different royalties to different artists, they optimize earnings. Also, they take money to promote music and shove it down your throat.
Yep, member since May 21 2005 here, still scrobbling with Spotify. Don't think I've ever used any of the radio features on the site, really; even back in the 00s all I used were the WinAmp/Foobar plug-ins.
last.fm is one of my very favorite services. It's rough around the edges in some parts, but I've gotten incredible value from it. A couple of websites built on it that I check out from time to time:
- https://lastfmviz.netlify.app/ - shows what you've been listening to as a grid of album covers. You can scroll down as long as you want. It's cool to look back and remember where I was when listening to specific music.
- https://lastfmstats.com/ - generates tons of rankings, line charts, racing bar charts, etc. A couple I like: "Artist streaks" (I listened to Pavement tracks 122 times in a row in August 2023), "Unique artists in a single month" (225 in July 2025) and "Unique weeks per artist/album/track" (good to identify what you're always listening to vs. what you listened to heavily in a specific time)
- https://pmcdonough8133.github.io/last.timer/ - shows your listening rankings by hours, minutes instead of just scrobble count. This really should be a default feature in the site, as some artists have average track length 2-3x times of others.
The middle one is fascinating. The first track I ever scrobbled is by an artist I have yet to listen to again in 22 years. Much of the longest gaps is taken up by bands I found or started to like due to Rock Band which came out around that time. Man I miss that too, we had 30 or 40 people over right after it came out and turned the house into a karaoke dive, right down to having to kick them off the couch the next morning.
If you're a Spotify user, you can get even more precise data by downloading your listening data. The website I linked gets data from MusicBrainz and tries to fill in the gaps with an average, but even then it gets some things wrong.
E.g. Fishmans - Long Season is a 40 minute song, but the website's considers it as divided into 4-5 parts. And you don't have to listen to the full song to get a scrobble.
In the Spotify data you get the exact number of seconds you listened to it. And it is surprisingly complete and easy to use too. With LLMs I bet you can load it into pandas and construct queries for any insight you want in seconds.
This is great news! I worked on the redesign and replatform with last.fm when they were part CBS Interactive. They were a lovely team of engineers and designers who cared about their product, and I appreciated their culture. Fun memories spending time in London with the team. Glad to hear they found a new home!
Congratulations (I guess), but what does “independent” mean here? Who bought it from whom (and why)? Is it employee owned now? Is it transitioning to a foundation?
Last.fm used to be special, but this was a long time ago. Just tried to login, recovered the password and seems that its just a tracker nowadays. In the past I could listen to music and drop a comment, meet new people, etc.
It still has comments on albums/songs/artists, but most of the conversations are a bit dead.
I've still been using it since it's the best service (in my opinion) for simply tracking everything you listen to. Spotify does track the same thing but they don't really let you view the information the same way. For example, there's no way to view the list of your top artists ever like there is with last.fm (I just checked mine, it's: https://www.last.fm/user/[your username]/library/artists).
Hopefully the developers being unchained from CBS/Paramount can only mean good changes are coming to last.fm in the near future.
I tried to log in, and I remembered my password, but it forced me to do an email reset anyway. I no longer have that domain/email, so I guess my data and access are lost also. Shame.
Came here to say the same. I don't even know what this product is anymore. The website makes it sound like its about music but there is no music? I'm lost.
The last time I paid for LastFM was some time in 2009...but the home page just isn't clearly telling me what the service offers.
Among the people I know still using Last.FM, it's somewhere between having statistics about your music, and a recommendation engine. It isn't about playing the music, you can do that elsewhere. But by having data on every single piece of music you've listened to, it can recommend music you will like, and potentially recommend people with shared musical tastes as well. There's a feature to compare your musical compatibility with others.
For me, many years ago Last.FM recommended this weird electronic band that I'd never heard of, with the strange name "Boards Of Canada". That Last.FM recommendation was responsible for introducing me to my 2nd most listened to band of all time (just behind NIN). 2026 is many hexagons, dandelions and an inferno later.
Originally, it kind of worked like radio; it curated music for you, you could like, comment or skip tracks. It'd reinforce the algorithm, and you'd start finding great artists. I liked the Blues catalogue a lot, even though I was listening to reggae, ska, punk, etc. It just seemed they had the best music catalogue. I remember checking how big the catalogue was, comparatively with others, which was much smaller, but much, much better!
Today, we have Generative AI, generating an incomprehensible number of songs that no one will ever listen to.
I don't remember if I had to pay for Last.fm or not back then, but I'd definitely pay to have access to that old system.
Congratulations to last.fm on this, although I'm not sure what I can do that actually "scrobbles" at this point. I went to their download page for the Mac desktop app, which somewhat forebodingly referred to "what you've been playing in iTunes" rather than Apple Music, and downloaded it anyway. It's an Intel-only app, not universal, and it doesn't appear to be signed, so macOS Tahoe screams about it being possible malware.
After going through the hula dance to open it anyway, it looks like it's working, but it sure doesn't look like it's received a lot of love recently.
Spotify scrobbles to Last.FM (it's built-in to Spotify as a setting somewhere, from memory). On Windows, MusicBee will scrobble everything you play through it. On Android, the Last.FM app can watch playback notifications of Android music apps that you select and scrobble those - the app itself doesn't have to have Last.FM support.
I still use last.fm via Spotify. It is wild to see my entire listening history from 11th grade to present (20 years!). Always fun to poke through and see changes from one year or life phase to the next.
I love Last.fm, I've been scrobbling for over 20 years now.
It's amazing to me that they have managed to stick around like they have. They're very much an "old internet" site, and I hope they can stick around for many many more years.
No idea what last.fm is. Clicked the logo at the top of the forum, but that's one of those prank links that takes you to the page you're already on. Typed in last.fm manually and got
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one of the very first programming projects I took on was to figure out how to scrobble the records that I was playing. It was my first exposure to so many things: Ruby, FFIs, audio processing, audio fingerprinting (I think I used echo nest ?). Ended up going to local meetups to ask for advice.
last.fm is one of those services that is from the pinnacle of the open web.
Another alternative is listenbrainz [0], which is also self-hostable [1]. A smaller, lightweight, single user selfhostable alternative, and more about just the stats is Koito [2], and finally because obviously you want to scrobble everywhere at once, you can self-host Multi Scrobbler to scrobble to and from multiple sources at once. Yes, I like scrobbling ;)
There's still a ton of value in the historical recommendations on last.fm's site. What its future looks like, I'm not sure. I'd love to know who is going to operate it now that it is independent.
I'd recommend ListenBrainz for folks interested in similar tracking and some recommendations with clearer ownership.
For my own historical interests, I have a Navidrome plugin writing to my own API and surface charts across time periods by querying the postgres database it writes to.
I'm mostly unfamiliar with the current offering of last.fm, but the name is familiar from way back. Glad to see something well-liked reclaim some independence.
At a glance, they're providing an interface to YT sourced content with some value adds around tracking or categorizing listening.
A quick question for users: can the site itself be configured as a listener without streaming / displaying the video? In general, YT has a lot of music, but the perf hit of streaming typically high-quality video as well is a blocker when doing dev work on my main machine.
I hope that means it will improve now. There's such a rich space of features that they could do. Had some hope with their experimental Labs but I remember being underwhelmed and not seeing anything about it recently.
Me too. I tried loggin in, and after a forced password reset I am back, though back to 2018 it turns out.
On Spotify I made a playlist with over 4,000 songs from Last FM. I remember doing it but I couldn't say how I did it now. And also a "loved" playlist which I am revisiting now. First track Whitest Boy Alive: Golden Cage, a stonker.
I have a history going back to 2012, which is great. I've always worried Spotify would stop working with last.fm, I wonder if this makes it more or less likely.
This is very exciting. The music landscape is just as chaotic as it was back in 2007 (when CBS acquired Last.fm) if not even more complex these days. Can't wait to see what's next. <3
So lastfm become relevant again because slop will not appear statistically in user scrobblings because of vast amount of "musicians" required to be profitable: if I listen to 1000 AI artists with one track produced and Linkin Park then my average will be Linkin Park
Downside of it is like all Metabrainz projects they seem to intentionally go and make everything as utterly ugly as possible. It feels like someone there intentionally thinks up ways to make the worst UX possible.
I really only ever used it so that a girl I liked would be able to see what I was listening to. She commented on my page. We ended up getting together for a few years. I miss my youth.
Sitting at 239,447, next to no scrobbling from 2017-2022, and I deleted my old account because of a piracy panic, so nothing before 2008. https://www.last.fm/user/YoshiSlen
I think Last.fm might have been a better friend finding and dating app than any of its contemporaries or anything that came after. Seems like everyone in this thread or anyone I know IRL has a story of making a good connection with someone via it. I know I'll always cherish the people I got to know on there.
I remember Last.fm's value proposition was 1) discovery and 2) community. (1) is (mostly, for most people) covered by "feed" algorithms of Spotify and YouTube.
I wonder how they're going to position themselves now.
As someone who used to hang out on various music forums...a human recommendation based on careful analysis of your last.fm scrobbles was infinitely more useful and accurate than anything Pandora/YouTube/Spotify/Tidal ever recommended me. Humans can infer not just what you like, but what you don't like.
Community largely died out already by 2012. Originally Last.fm enabled a lot of IRL socializing, connecting hipsters who lived in the same town and listened to the same music. Changes in music-listening habits, the atomization of tastes in a world where so much was available, and CBS not having a clue what to do with the site -- that killed Last.fm except for just a way to track one's own plays.
Last.fm & in particular audioscrobbling has been such an amazing joy to have in the world. Music is so important to me, and it's amazing having this system to help see over time what friends and I myself enjoy.
These days, for auduiscrobbling, I recommend folks use either teal.fm (which alas is somewhat DIY or find-a-friend for their API service) or rocksky.app. There's a better credible exit, as it's based on atproto/Bluesky protocols, and a richer world of apps & interconnectivitiws emerging.
"The company has generated an operating loss for the year to 31 December 2024 of £690,252 (2023: profit of £1,509,544) and revenue of £2,215,381 (2023: £1,960,340). As at 31 December 2024, net liabilities were £45,506,488 (2023: £44,855,202)."
"The financial statements have been prepared on a going concern basis on the grounds that Paramount Global has confirmed that it will continue to provide financial and other support to Last. FM Limited at least for the next twelve months and thereafter for the foreseeable future to enable Last.FM Limited to continue to meet all its liabilities as they fall due."
I wonder what their financing plan is, and what shape this independence will take, whether Paramount is retaining a minority ownership take? Seems like they might just be able to scrape break even based on current revenue.
Anyone else music listening habits change in the past six months to listening to one owns AI Slop? My slop (been a real hobby songwriter of melodies & lyrics since a kid..decades ago) has the most meaning to me it’s just not me singing. Now it sounds pro and some ppl when I’m playing it actually like it vs. my own rough demos (guitar, vocal and added drums/bass via GarageBand). I actually don’t care if others hear my slop as it’s all my own ideas…words and melodies which have way more meaning then Listening to another’s music/songs.