SlideShare ist ein Scribd-Unternehmen logo
1 von 65
Downloaden Sie, um offline zu lesen
June 27, 2014
Music
Recommendations at
Scale with Spark
Chris Johnson
@MrChrisJohnson
Who am I??
•Chris Johnson
– Machine Learning guy from NYC
– Focused on music recommendations
– Formerly a PhD student at UT Austin
3
Recommendations at Spotify
!
• Discover (personalized recommendations)
• Radio
• Related Artists
• Now Playing
How can we find good
recommendations?
!
• Manual Curation
!
!
!
• Manually Tag Attributes
!
!
• Audio Content,
Metadata, Text Analysis
!
!
• Collaborative Filtering
4
How can we find good
recommendations?
!
• Manual Curation
!
!
!
• Manually Tag Attributes
!
!
• Audio Content,
Metadata, Text Analysis
!
!
• Collaborative Filtering
5
Collaborative Filtering - “The Netflix Prize” 6
Collaborative Filtering
7
Hey,
I like tracks P, Q, R, S!
Well,
I like tracks Q, R, S, T!
Then you should check out
track P!
Nice! Btw try track T!
Image via Erik Bernhardsson
Section name 8
Explicit Matrix Factorization 9
Movies
Users
Chris
Inception
•Users explicitly rate a subset of the movie catalog
•Goal: predict how users will rate new movies
• = bias for user
• = bias for item
• = regularization parameter
Explicit Matrix Factorization 10
Chris
Inception
? 3 5 ?
1 ? ? 1
2 ? 3 2
? ? ? 5
5 2 ? 4
•Approximate ratings matrix by the product of low-
dimensional user and movie matrices
•Minimize RMSE (root mean squared error)
• = user rating for movie 
• = user latent factor vector
• = item latent factor vector
X YUsers
Movies
Implicit Matrix Factorization 11
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Alternating Least Squares (ALS) 12
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Fix songs
Alternating Least Squares (ALS) 13
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Fix songs
Solve for users
Alternating Least Squares (ALS) 14
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs Fix users
Alternating Least Squares (ALS) 15
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Solve for songs
Fix users
Alternating Least Squares (ALS) 16
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Solve for songs
Fix users
Repeat until convergence…
Alternating Least Squares (ALS) 17
1 0 0 0 1 0 0 1
0 0 1 0 0 1 0 0 
1 0 1 0 0 0 1 1
0 1 0 0 0 1 0 0 
0 0 1 0 0 1 0 0 
1 0 0 0 1 0 0 1
•Instead of explicit ratings use binary labels
– 1 = streamed, 0 = never streamed
•Minimize weighted RMSE (root mean squared error) using a
function of total streams as weights
• = bias for user
• = bias for item
• = regularization parameter
• = 1 if user streamed track else 0
• 
• = user latent factor vector
• =i tem latent factor vector
X YUsers
Songs
Solve for songs
Fix users
Repeat until convergence…
18
Alternating Least Squares
code: https://github.com/MrChrisJohnson/implicitMF
Section name 19
Scaling up Implicit Matrix Factorization
with Hadoop
20
Hadoop at Spotify 2009
21
Hadoop at Spotify 2014
22
700 Nodes in our London data center
Implicit Matrix Factorization with Hadoop
23
Reduce stepMap step
u % K = 0
i % L = 0
u % K = 0
i % L = 1
...
u % K = 0
i % L = L-1
u % K = 1
i % L = 0
u % K = 1
i % L = 1
... ...
... ... ... ...
u % K = K-1
i % L = 0
... ...
u % K = K-1
i % L = L-1
item vectors
item%L=0
item vectors
item%L=1
item vectors
i % L = L-1
user vectors
u % K = 0
user vectors
u % K = 1
user vectors
u % K = K-1
all log entries
u % K = 1
i % L = 1
u % K = 0
u % K = 1
u % K = K-1
Figure via Erik Bernhardsson
Implicit Matrix Factorization with Hadoop
24
One map task
Distributed
cache:
All user vectors
where u % K = x
Distributed
cache:
All item vectors
where i % L = y
Mapper Emit contributions
Map input:
tuples (u, i, count)
where
u % K = x
and
i % L = y
Reducer New vector!
Figure via Erik Bernhardsson
Hadoop suffers from I/O overhead
25
IO Bottleneck
Spark to the rescue!!
26
Vs
http://www.slideshare.net/Hadoop_Summit/spark-and-shark
Spark
Hadoop
Section name 27
28
ratings user vectors item vectors
First Attempt (broadcast everything)
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
• For each iteration:
1. Compute YtY over item vectors and broadcast 
2. Broadcast item vectors
3. Group ratings by user
4. Solve for optimal user vector
29
ratings user vectors item vectors
First Attempt (broadcast everything)
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
• For each iteration:
1. Compute YtY over item vectors and broadcast 
2. Broadcast item vectors
3. Group ratings by user
4. Solve for optimal user vector
First Attempt (broadcast everything)
30
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
• For each iteration:
1. Compute YtY over item vectors and broadcast 
2. Broadcast item vectors
3. Group ratings by user
4. Solve for optimal user vector
31
ratings user vectors item vectors
First Attempt (broadcast everything)
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
• For each iteration:
1. Compute YtY over item vectors and broadcast 
2. Broadcast item vectors
3. Group ratings by user
4. Solve for optimal user vector
First Attempt (broadcast everything)
32
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
• For each iteration:
1. Compute YtY over item vectors and broadcast 
2. Broadcast item vectors
3. Group ratings by user
4. Solve for optimal user vector
First Attempt (broadcast everything)
33
First Attempt (broadcast everything)
34
•Cons: 
– Unnecessarily shuffling all data across wire each iteration.
– Not caching ratings data
– Unnecessarily sending a full copy of user/item vectors to all workers.
Second Attempt (full gridify)
35
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
36
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
37
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
38
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
39
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
40
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt (full gridify)
41
ratings user vectors item vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
•Group ratings matrix into K x L, partition, and cache 
•For each iteration:
1. Compute YtY over item vectors and broadcast 
2. For each item vector send a copy to each rating block in the item % L column
3. Compute intermediate terms for each block (partition)
4. Group by user, aggregate intermediate terms, and solve for optimal user vector
Second Attempt
42
Second Attempt
43
•Pros
– Ratings get cached and never shuffled
– Each partition only requires a subset of item (or user) vectors in memory each iteration
– Potentially requires less local memory than a “half gridify” scheme
•Cons
- Sending lots of intermediate data over wire each iteration in order to aggregate and solve for optimal vectors
- More IO overhead than a “half gridify” scheme
Third Attempt (half gridify)
44
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
Third Attempt (half gridify)
45
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
Third Attempt (half gridify)
46
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
Third Attempt (half gridify)
47
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
Third Attempt (half gridify)
48
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
Third Attempt (half gridify)
49
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
Third Attempt (half gridify)
50
ratings user vectors item vectors
•Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache
•For each iteration:
1. Compute YtY over item vectors and broadcast
2. For each item vector, send a copy to each user rating partition that requires it (potentially
all partitions) 
3. Each partition aggregates intermediate terms and solves for optimal user vectors
worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
YtY YtY YtY YtY YtY YtY
Note that we removed the extra
shuffle from the full gridify
approach.
51
Third Attempt (half gridify)
•Pros
– Ratings get cached and never shuffled
– Once item vectors are joined with ratings partitions each partition has enough information to solve optimal user
vectors without any additional shuffling/aggregation (which occurs with the “full gridify” scheme)
•Cons
- Each partition could potentially require a copy of each item vector (which may not all fit in memory)
- Potentially requires more local memory than “full gridify” scheme
Actual MLlib code!
ALS Running Times
52
Hadoop
Spark (full
gridify)
Spark (half
gridify)
10 hours 3.5 hours 1.5 hours
•Dataset consisting of Spotify streaming data for 4 Million users and 500k artists
-Note: full dataset consists of 40M users and 20M songs but we haven’t yet successfully run with Spark
•All jobs run using 40 latent factors
•Spark jobs used 200 executors with 20G containers
•Hadoop job used 1k mappers, 300 reducers
ALS Running Times
53
ALS runtime numbers via @evansparks using Spark version 0.8.0
Section name 54
Random Learnings
55
•PairRDDFunctions are your friend!
Random Learnings
56
•Kryo serialization faster than java serialization but may require you to
write and/or register your own serializers
Random Learnings
57
•Kryo serialization faster than java serialization but may require you to
write and/or register your own serializers
Random Learnings
58
•Running with larger datasets often results in failed executors and job
never fully recovers
Section name 59
Fin
Section name 60
Section name 61
Section name 62
Section name 63
Section name 64
Section name 65

Weitere ähnliche Inhalte

Was ist angesagt?

Artwork Personalization at Netflix
Artwork Personalization at NetflixArtwork Personalization at Netflix
Artwork Personalization at Netflix
Justin Basilico
 

Was ist angesagt? (20)

DataEngConf: Building a Music Recommender System from Scratch with Spotify Da...
DataEngConf: Building a Music Recommender System from Scratch with Spotify Da...DataEngConf: Building a Music Recommender System from Scratch with Spotify Da...
DataEngConf: Building a Music Recommender System from Scratch with Spotify Da...
 
Music recommendations @ MLConf 2014
Music recommendations @ MLConf 2014Music recommendations @ MLConf 2014
Music recommendations @ MLConf 2014
 
Collaborative Filtering with Spark
Collaborative Filtering with SparkCollaborative Filtering with Spark
Collaborative Filtering with Spark
 
Scala Data Pipelines @ Spotify
Scala Data Pipelines @ SpotifyScala Data Pipelines @ Spotify
Scala Data Pipelines @ Spotify
 
Approximate nearest neighbor methods and vector models – NYC ML meetup
Approximate nearest neighbor methods and vector models – NYC ML meetupApproximate nearest neighbor methods and vector models – NYC ML meetup
Approximate nearest neighbor methods and vector models – NYC ML meetup
 
Recent advances in deep recommender systems
Recent advances in deep recommender systemsRecent advances in deep recommender systems
Recent advances in deep recommender systems
 
Deeper Things: How Netflix Leverages Deep Learning in Recommendations and Se...
 Deeper Things: How Netflix Leverages Deep Learning in Recommendations and Se... Deeper Things: How Netflix Leverages Deep Learning in Recommendations and Se...
Deeper Things: How Netflix Leverages Deep Learning in Recommendations and Se...
 
An introduction to Recommender Systems
An introduction to Recommender SystemsAn introduction to Recommender Systems
An introduction to Recommender Systems
 
Homepage Personalization at Spotify
Homepage Personalization at SpotifyHomepage Personalization at Spotify
Homepage Personalization at Spotify
 
Tutorial: Context In Recommender Systems
Tutorial: Context In Recommender SystemsTutorial: Context In Recommender Systems
Tutorial: Context In Recommender Systems
 
Crafting Recommenders: the Shallow and the Deep of it!
Crafting Recommenders: the Shallow and the Deep of it! Crafting Recommenders: the Shallow and the Deep of it!
Crafting Recommenders: the Shallow and the Deep of it!
 
Calibrated Recommendations
Calibrated RecommendationsCalibrated Recommendations
Calibrated Recommendations
 
Deep Learning for Recommender Systems RecSys2017 Tutorial
Deep Learning for Recommender Systems RecSys2017 Tutorial Deep Learning for Recommender Systems RecSys2017 Tutorial
Deep Learning for Recommender Systems RecSys2017 Tutorial
 
Personalized Page Generation for Browsing Recommendations
Personalized Page Generation for Browsing RecommendationsPersonalized Page Generation for Browsing Recommendations
Personalized Page Generation for Browsing Recommendations
 
Recommender Systems: Advances in Collaborative Filtering
Recommender Systems: Advances in Collaborative FilteringRecommender Systems: Advances in Collaborative Filtering
Recommender Systems: Advances in Collaborative Filtering
 
Bpr bayesian personalized ranking from implicit feedback
Bpr bayesian personalized ranking from implicit feedbackBpr bayesian personalized ranking from implicit feedback
Bpr bayesian personalized ranking from implicit feedback
 
Introduction to Recommendation Systems
Introduction to Recommendation SystemsIntroduction to Recommendation Systems
Introduction to Recommendation Systems
 
Netflix talk at ML Platform meetup Sep 2019
Netflix talk at ML Platform meetup Sep 2019Netflix talk at ML Platform meetup Sep 2019
Netflix talk at ML Platform meetup Sep 2019
 
Learning to Rank for Recommender Systems - ACM RecSys 2013 tutorial
Learning to Rank for Recommender Systems -  ACM RecSys 2013 tutorialLearning to Rank for Recommender Systems -  ACM RecSys 2013 tutorial
Learning to Rank for Recommender Systems - ACM RecSys 2013 tutorial
 
Artwork Personalization at Netflix
Artwork Personalization at NetflixArtwork Personalization at Netflix
Artwork Personalization at Netflix
 

Ähnlich wie Music Recommendations at Scale with Spark

Recommendations with hadoop streaming and python
Recommendations with hadoop streaming and pythonRecommendations with hadoop streaming and python
Recommendations with hadoop streaming and python
Andrew Look
 

Ähnlich wie Music Recommendations at Scale with Spark (20)

Data Mining Lecture_9.pptx
Data Mining Lecture_9.pptxData Mining Lecture_9.pptx
Data Mining Lecture_9.pptx
 
Scalable Recommendation Algorithms with LSH
Scalable Recommendation Algorithms with LSHScalable Recommendation Algorithms with LSH
Scalable Recommendation Algorithms with LSH
 
SVD.ppt
SVD.pptSVD.ppt
SVD.ppt
 
From Idea to Execution: Spotify's Discover Weekly
From Idea to Execution: Spotify's Discover WeeklyFrom Idea to Execution: Spotify's Discover Weekly
From Idea to Execution: Spotify's Discover Weekly
 
A new similarity measurement based on hellinger distance for collaborating fi...
A new similarity measurement based on hellinger distance for collaborating fi...A new similarity measurement based on hellinger distance for collaborating fi...
A new similarity measurement based on hellinger distance for collaborating fi...
 
ML+Hadoop at NYC Predictive Analytics
ML+Hadoop at NYC Predictive AnalyticsML+Hadoop at NYC Predictive Analytics
ML+Hadoop at NYC Predictive Analytics
 
R meetup lm
R meetup lmR meetup lm
R meetup lm
 
Practical Deep Learning Using Tensor Flow - Sandeep Kath
Practical Deep Learning Using Tensor Flow - Sandeep KathPractical Deep Learning Using Tensor Flow - Sandeep Kath
Practical Deep Learning Using Tensor Flow - Sandeep Kath
 
Recommender systems
Recommender systemsRecommender systems
Recommender systems
 
Random Walk with Restart for Automatic Playlist Continuation and Query-specif...
Random Walk with Restart for Automatic Playlist Continuation and Query-specif...Random Walk with Restart for Automatic Playlist Continuation and Query-specif...
Random Walk with Restart for Automatic Playlist Continuation and Query-specif...
 
Recsys 2018 overview and highlights
Recsys 2018 overview and highlightsRecsys 2018 overview and highlights
Recsys 2018 overview and highlights
 
Present eval
Present evalPresent eval
Present eval
 
User Based Recommendation Systems (1).pdf
User Based Recommendation Systems (1).pdfUser Based Recommendation Systems (1).pdf
User Based Recommendation Systems (1).pdf
 
Self-Attention with Linear Complexity
Self-Attention with Linear ComplexitySelf-Attention with Linear Complexity
Self-Attention with Linear Complexity
 
Recommendations with hadoop streaming and python
Recommendations with hadoop streaming and pythonRecommendations with hadoop streaming and python
Recommendations with hadoop streaming and python
 
Fast ALS-based matrix factorization for explicit and implicit feedback datasets
Fast ALS-based matrix factorization for explicit and implicit feedback datasetsFast ALS-based matrix factorization for explicit and implicit feedback datasets
Fast ALS-based matrix factorization for explicit and implicit feedback datasets
 
Recommendation Systems
Recommendation SystemsRecommendation Systems
Recommendation Systems
 
Approximate Nearest Neighbors and Vector Models by Erik Bernhardsson
Approximate Nearest Neighbors and Vector Models by Erik BernhardssonApproximate Nearest Neighbors and Vector Models by Erik Bernhardsson
Approximate Nearest Neighbors and Vector Models by Erik Bernhardsson
 
Unit 4
Unit 4Unit 4
Unit 4
 
Unit 4
Unit 4Unit 4
Unit 4
 

Kürzlich hochgeladen

%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
masabamasaba
 
The title is not connected to what is inside
The title is not connected to what is insideThe title is not connected to what is inside
The title is not connected to what is inside
shinachiaurasa2
 
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
masabamasaba
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 

Kürzlich hochgeladen (20)

WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
 
%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
%+27788225528 love spells in Colorado Springs Psychic Readings, Attraction sp...
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
 
%in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park %in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park
 
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
 
The title is not connected to what is inside
The title is not connected to what is insideThe title is not connected to what is inside
The title is not connected to what is inside
 
Right Money Management App For Your Financial Goals
Right Money Management App For Your Financial GoalsRight Money Management App For Your Financial Goals
Right Money Management App For Your Financial Goals
 
Software Quality Assurance Interview Questions
Software Quality Assurance Interview QuestionsSoftware Quality Assurance Interview Questions
Software Quality Assurance Interview Questions
 
Announcing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK SoftwareAnnouncing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK Software
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students
 
Introducing Microsoft’s new Enterprise Work Management (EWM) Solution
Introducing Microsoft’s new Enterprise Work Management (EWM) SolutionIntroducing Microsoft’s new Enterprise Work Management (EWM) Solution
Introducing Microsoft’s new Enterprise Work Management (EWM) Solution
 
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
%+27788225528 love spells in Huntington Beach Psychic Readings, Attraction sp...
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
%in Bahrain+277-882-255-28 abortion pills for sale in Bahrain
 
%in Midrand+277-882-255-28 abortion pills for sale in midrand
%in Midrand+277-882-255-28 abortion pills for sale in midrand%in Midrand+277-882-255-28 abortion pills for sale in midrand
%in Midrand+277-882-255-28 abortion pills for sale in midrand
 
WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?
 
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
Define the academic and professional writing..pdf
Define the academic and professional writing..pdfDefine the academic and professional writing..pdf
Define the academic and professional writing..pdf
 

Music Recommendations at Scale with Spark

  • 1. June 27, 2014 Music Recommendations at Scale with Spark Chris Johnson @MrChrisJohnson
  • 2. Who am I?? •Chris Johnson – Machine Learning guy from NYC – Focused on music recommendations – Formerly a PhD student at UT Austin
  • 3. 3 Recommendations at Spotify ! • Discover (personalized recommendations) • Radio • Related Artists • Now Playing
  • 4. How can we find good recommendations? ! • Manual Curation ! ! ! • Manually Tag Attributes ! ! • Audio Content, Metadata, Text Analysis ! ! • Collaborative Filtering 4
  • 5. How can we find good recommendations? ! • Manual Curation ! ! ! • Manually Tag Attributes ! ! • Audio Content, Metadata, Text Analysis ! ! • Collaborative Filtering 5
  • 6. Collaborative Filtering - “The Netflix Prize” 6
  • 7. Collaborative Filtering 7 Hey, I like tracks P, Q, R, S! Well, I like tracks Q, R, S, T! Then you should check out track P! Nice! Btw try track T! Image via Erik Bernhardsson
  • 9. Explicit Matrix Factorization 9 Movies Users Chris Inception •Users explicitly rate a subset of the movie catalog •Goal: predict how users will rate new movies
  • 10. • = bias for user • = bias for item • = regularization parameter Explicit Matrix Factorization 10 Chris Inception ? 3 5 ? 1 ? ? 1 2 ? 3 2 ? ? ? 5 5 2 ? 4 •Approximate ratings matrix by the product of low- dimensional user and movie matrices •Minimize RMSE (root mean squared error) • = user rating for movie • = user latent factor vector • = item latent factor vector X YUsers Movies
  • 11. Implicit Matrix Factorization 11 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs
  • 12. Alternating Least Squares (ALS) 12 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Fix songs
  • 13. Alternating Least Squares (ALS) 13 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Fix songs Solve for users
  • 14. Alternating Least Squares (ALS) 14 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Fix users
  • 15. Alternating Least Squares (ALS) 15 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Solve for songs Fix users
  • 16. Alternating Least Squares (ALS) 16 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Solve for songs Fix users Repeat until convergence…
  • 17. Alternating Least Squares (ALS) 17 1 0 0 0 1 0 0 1 0 0 1 0 0 1 0 0 1 0 1 0 0 0 1 1 0 1 0 0 0 1 0 0 0 0 1 0 0 1 0 0 1 0 0 0 1 0 0 1 •Instead of explicit ratings use binary labels – 1 = streamed, 0 = never streamed •Minimize weighted RMSE (root mean squared error) using a function of total streams as weights • = bias for user • = bias for item • = regularization parameter • = 1 if user streamed track else 0 • • = user latent factor vector • =i tem latent factor vector X YUsers Songs Solve for songs Fix users Repeat until convergence…
  • 18. 18 Alternating Least Squares code: https://github.com/MrChrisJohnson/implicitMF
  • 20. Scaling up Implicit Matrix Factorization with Hadoop 20
  • 21. Hadoop at Spotify 2009 21
  • 22. Hadoop at Spotify 2014 22 700 Nodes in our London data center
  • 23. Implicit Matrix Factorization with Hadoop 23 Reduce stepMap step u % K = 0 i % L = 0 u % K = 0 i % L = 1 ... u % K = 0 i % L = L-1 u % K = 1 i % L = 0 u % K = 1 i % L = 1 ... ... ... ... ... ... u % K = K-1 i % L = 0 ... ... u % K = K-1 i % L = L-1 item vectors item%L=0 item vectors item%L=1 item vectors i % L = L-1 user vectors u % K = 0 user vectors u % K = 1 user vectors u % K = K-1 all log entries u % K = 1 i % L = 1 u % K = 0 u % K = 1 u % K = K-1 Figure via Erik Bernhardsson
  • 24. Implicit Matrix Factorization with Hadoop 24 One map task Distributed cache: All user vectors where u % K = x Distributed cache: All item vectors where i % L = y Mapper Emit contributions Map input: tuples (u, i, count) where u % K = x and i % L = y Reducer New vector! Figure via Erik Bernhardsson
  • 25. Hadoop suffers from I/O overhead 25 IO Bottleneck
  • 26. Spark to the rescue!! 26 Vs http://www.slideshare.net/Hadoop_Summit/spark-and-shark Spark Hadoop
  • 28. 28 ratings user vectors item vectors First Attempt (broadcast everything) worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 • For each iteration: 1. Compute YtY over item vectors and broadcast 2. Broadcast item vectors 3. Group ratings by user 4. Solve for optimal user vector
  • 29. 29 ratings user vectors item vectors First Attempt (broadcast everything) worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY • For each iteration: 1. Compute YtY over item vectors and broadcast 2. Broadcast item vectors 3. Group ratings by user 4. Solve for optimal user vector
  • 30. First Attempt (broadcast everything) 30 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY • For each iteration: 1. Compute YtY over item vectors and broadcast 2. Broadcast item vectors 3. Group ratings by user 4. Solve for optimal user vector
  • 31. 31 ratings user vectors item vectors First Attempt (broadcast everything) worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY • For each iteration: 1. Compute YtY over item vectors and broadcast 2. Broadcast item vectors 3. Group ratings by user 4. Solve for optimal user vector
  • 32. First Attempt (broadcast everything) 32 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 • For each iteration: 1. Compute YtY over item vectors and broadcast 2. Broadcast item vectors 3. Group ratings by user 4. Solve for optimal user vector
  • 33. First Attempt (broadcast everything) 33
  • 34. First Attempt (broadcast everything) 34 •Cons: – Unnecessarily shuffling all data across wire each iteration. – Not caching ratings data – Unnecessarily sending a full copy of user/item vectors to all workers.
  • 35. Second Attempt (full gridify) 35 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 36. Second Attempt (full gridify) 36 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 37. Second Attempt (full gridify) 37 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 38. Second Attempt (full gridify) 38 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 39. Second Attempt (full gridify) 39 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 40. Second Attempt (full gridify) 40 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 41. Second Attempt (full gridify) 41 ratings user vectors item vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 •Group ratings matrix into K x L, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector send a copy to each rating block in the item % L column 3. Compute intermediate terms for each block (partition) 4. Group by user, aggregate intermediate terms, and solve for optimal user vector
  • 43. Second Attempt 43 •Pros – Ratings get cached and never shuffled – Each partition only requires a subset of item (or user) vectors in memory each iteration – Potentially requires less local memory than a “half gridify” scheme •Cons - Sending lots of intermediate data over wire each iteration in order to aggregate and solve for optimal vectors - More IO overhead than a “half gridify” scheme
  • 44. Third Attempt (half gridify) 44 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
  • 45. Third Attempt (half gridify) 45 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
  • 46. Third Attempt (half gridify) 46 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6
  • 47. Third Attempt (half gridify) 47 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY
  • 48. Third Attempt (half gridify) 48 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY
  • 49. Third Attempt (half gridify) 49 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY
  • 50. Third Attempt (half gridify) 50 ratings user vectors item vectors •Partition ratings matrix into K user (row) and item (column) blocks, partition, and cache •For each iteration: 1. Compute YtY over item vectors and broadcast 2. For each item vector, send a copy to each user rating partition that requires it (potentially all partitions) 3. Each partition aggregates intermediate terms and solves for optimal user vectors worker 1 worker 2 worker 3 worker 4 worker 5 worker 6 YtY YtY YtY YtY YtY YtY Note that we removed the extra shuffle from the full gridify approach.
  • 51. 51 Third Attempt (half gridify) •Pros – Ratings get cached and never shuffled – Once item vectors are joined with ratings partitions each partition has enough information to solve optimal user vectors without any additional shuffling/aggregation (which occurs with the “full gridify” scheme) •Cons - Each partition could potentially require a copy of each item vector (which may not all fit in memory) - Potentially requires more local memory than “full gridify” scheme Actual MLlib code!
  • 52. ALS Running Times 52 Hadoop Spark (full gridify) Spark (half gridify) 10 hours 3.5 hours 1.5 hours •Dataset consisting of Spotify streaming data for 4 Million users and 500k artists -Note: full dataset consists of 40M users and 20M songs but we haven’t yet successfully run with Spark •All jobs run using 40 latent factors •Spark jobs used 200 executors with 20G containers •Hadoop job used 1k mappers, 300 reducers
  • 53. ALS Running Times 53 ALS runtime numbers via @evansparks using Spark version 0.8.0
  • 56. Random Learnings 56 •Kryo serialization faster than java serialization but may require you to write and/or register your own serializers
  • 57. Random Learnings 57 •Kryo serialization faster than java serialization but may require you to write and/or register your own serializers
  • 58. Random Learnings 58 •Running with larger datasets often results in failed executors and job never fully recovers