#MusicTech
#MusicTech
Experimenting with Data Science and Recommender Systems
About the Book
Music services (Spotify, iTunes radio, Pandora, etc.) need to stand out; yet, this is getting harder since most catalogs overlap, besides a few exclusives. And, as online music becomes be a commodity, they need to find incentives for users to use them versus competitors.
One way to do so is to invest more time -- both on product and R&D -- on the technology front, especially on personalisation and discovery, in order to be ahead of the pack and own the space. This is an obvious strategy, and a win-win-win for all parties involved:
- For consumers, delighted when they discover new artists they will love -- based on their past listening habits or the ones of their friends --; and satisfied as they figure out that streaming services really understand what they like;
- For artists, escaping the long-tail and hence generating more streams, and a little revenue, but most importantly: having the opportunity to convert casual listeners into super-fans who follow them on tour, buy merch and exclusive records, and more;
- For streaming services, keeping existing users active with more listening hours and growing their audiences; consequently gathering more data and analytics (plays, thumbs-up, social interactions, etc.), which can be re-invested into product features.
This e-book, #MusicTech, is an evolving summary of various hacks and experiments on data-science, recommender systems - with a focus on online streaming, and more globally analytics and music discovery.
Using tools such as Semantic Web technologies, Big Data infrastructures, Machine Learning, Collaborative Filtering and more, you will learn different techniques to make sense of music streaming data, featuring use-cases which aim to be fun and entertaining, and cover well-known platforms, such as Twitter, Spotify, or YouTube.
Table of Contents
-
Preface
- Disclaimer
- Foreword
-
-
Knowledge graphs, discovery, and personalization on the Web
- From knowledge graphs to content recommendations
- From knowledge graphs to taste graphs, and to personalization
-
Sex and drugs and Rock’n’roll: Analytics of the Rolling Stone’s 500 greatest songs of all time
- Come together
- Baby love
- I wanna be anarchy
- Hotel California
- Good vibrations
-
Back in Black: A focus on the loudness and tempo of the Rolling Stone top 500 songs
- Black leather, knee-hole pants, can’t play no high school dance
- But you don’t really care for music, do you?
- Please could you stop the noise, I’m trying to get some rest
- I’m waiting for that final moment you say the words that I can’t say
-
The role of mood and tempo for music discovery?
- You Can’t, You Won’t And You Don’t Stop
- Fear of the Dark
- Mood, tempo, and personalization
-
Driving music recommendations through Wikipedia edits
- Wikipedia edits as a data source
- The dataset
- Querying for similarity using pages edits
- Towards long tail discovery
- Going further
-
Gathering insights from 500,000 Deezer playlists
- Setting up the stage
- Content recommendations
- Top artists and tracks, popularity, and more
- Trends, influencers and targeted recommendations
-
How YouTube music is shared on Twitter
- Popular videos: Super fans or spammers?
- Entities: Better than tags
- Twitter, personalization and music
-
Knowledge graphs, discovery, and personalization on the Web
-
Perspectives
-
An open stack for music personalization on the Web
- The growth of dynamic and structured data
- Personalizing content from multiple sources
- Privacy matters
-
Context: The future of music streaming and personalization?
- How context and wearables will enhance music discovery
- Building the future of context-based music personalization
-
An open stack for music personalization on the Web
The Leanpub 60 Day 100% Happiness Guarantee
Within 60 days of purchase you can get a 100% refund on any Leanpub purchase, in two clicks.
Now, this is technically risky for us, since you'll have the book or course files either way. But we're so confident in our products and services, and in our authors and readers, that we're happy to offer a full money back guarantee for everything we sell.
You can only find out how good something is by trying it, and because of our 100% money back guarantee there's literally no risk to do so!
So, there's no reason not to click the Add to Cart button, is there?
See full terms...
Earn $8 on a $10 Purchase, and $16 on a $20 Purchase
We pay 80% royalties on purchases of $7.99 or more, and 80% royalties minus a 50 cent flat fee on purchases between $0.99 and $7.98. You earn $8 on a $10 sale, and $16 on a $20 sale. So, if we sell 5000 non-refunded copies of your book for $20, you'll earn $80,000.
(Yes, some authors have already earned much more than that on Leanpub.)
In fact, authors have earnedover $13 millionwriting, publishing and selling on Leanpub.
Learn more about writing on Leanpub
Free Updates. DRM Free.
If you buy a Leanpub book, you get free updates for as long as the author updates the book! Many authors use Leanpub to publish their books in-progress, while they are writing them. All readers get free updates, regardless of when they bought the book or how much they paid (including free).
Most Leanpub books are available in PDF (for computers) and EPUB (for phones, tablets and Kindle). The formats that a book includes are shown at the top right corner of this page.
Finally, Leanpub books don't have any DRM copy-protection nonsense, so you can easily read them on any supported device.
Learn more about Leanpub's ebook formats and where to read them