• Stars
    star
    224
  • Rank 177,792 (Top 4 %)
  • Language
    Scala
  • License
    Other
  • Created over 5 years ago
  • Updated 3 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

A Spark/Scala implementation of the isolation forest unsupervised outlier detection algorithm with support for exporting in ONNX format.

isolation-forest

Build Status Release License

Introduction

This is a Scala/Spark implementation of the Isolation Forest unsupervised outlier detection algorithm. This library was created by James Verbus from the LinkedIn Anti-Abuse AI team.

This library supports distributed training and scoring using Spark data structures. It inherits from the Estimator and Model classes in Spark's ML library in order to take advantage of machinery such as Pipelines. Model persistence on HDFS is supported.

Copyright

Copyright 2019 LinkedIn Corporation All Rights Reserved.

Licensed under the BSD 2-Clause License (the "License"). See License in the project root for license information.

How to use

Building the library

To build using the default of Scala 2.11.8 and Spark 2.3.0, run the following:

./gradlew build

This will produce a jar file in the ./isolation-forest/build/libs/ directory.

If you want to use the library with arbitrary Spark and Scala versions, you can specify this when running the build command.

./gradlew build -PsparkVersion=3.2.0 -PscalaVersion=2.13.10

To force a rebuild of the library, you can use:

./gradlew clean build --no-build-cache

Add an isolation-forest dependency to your project

Please check Maven Central for the latest artifact versions.

Gradle example

The artifacts are available in Maven Central, so you can specify the Maven Central repository in the top-level build.gradle file.

repositories {
    mavenCentral()
}

Add the isolation-forest dependency to the module-level build.gradle file. Here is an example for a recent spark scala version combination.

dependencies {
    compile 'com.linkedin.isolation-forest:isolation-forest_3.2.0_2.13:3.0.1'
}

Maven example

If you are using the Maven Central repository, declare the isolation-forest dependency in your project's pom.xml file. Here is an example for a recent Spark/Scala version combination.

<dependency>
  <groupId>com.linkedin.isolation-forest</groupId>
  <artifactId>isolation-forest_3.2.0_2.13</artifactId>
  <version>3.0.1</version>
</dependency>

Model parameters

Parameter Default Value Description
numEstimators 100 The number of trees in the ensemble.
maxSamples 256 The number of samples used to train each tree. If this value is between 0.0 and 1.0, then it is treated as a fraction. If it is >1.0, then it is treated as a count.
contamination 0.0 The fraction of outliers in the training data set. If this is set to 0.0, it speeds up the training and all predicted labels will be false. The model and outlier scores are otherwise unaffected by this parameter.
contaminationError 0.0 The error allowed when calculating the threshold required to achieve the specified contamination fraction. The default is 0.0, which forces an exact calculation of the threshold. The exact calculation is slow and can fail for large datasets. If there are issues with the exact calculation, a good choice for this parameter is often 1% of the specified contamination value.
maxFeatures 1.0 The number of features used to train each tree. If this value is between 0.0 and 1.0, then it is treated as a fraction. If it is >1.0, then it is treated as a count.
bootstrap false If true, draw sample for each tree with replacement. If false, do not sample with replacement.
randomSeed 1 The seed used for the random number generator.
featuresCol "features" The feature vector. This column must exist in the input DataFrame for training and scoring.
predictionCol "predictedLabel" The predicted label. This column is appended to the input DataFrame upon scoring.
scoreCol "outlierScore" The outlier score. This column is appended to the input DataFrame upon scoring.

Training and scoring

Here is an example demonstrating how to import the library, create a new IsolationForest instance, set the model hyperparameters, train the model, and then score the training data. data is a Spark DataFrame with a column named features that contains a org.apache.spark.ml.linalg.Vector of the attributes to use for training. In this example, the DataFrame data also has a labels column; it is not used in the training process, but could be useful for model evaluation.

import com.linkedin.relevance.isolationforest._
import org.apache.spark.ml.feature.VectorAssembler

/**
  * Load and prepare data
  */

// Dataset from http://odds.cs.stonybrook.edu/shuttle-dataset/
val rawData = spark.read
  .format("csv")
  .option("comment", "#")
  .option("header", "false")
  .option("inferSchema", "true")
  .load("isolation-forest/src/test/resources/shuttle.csv")

val cols = rawData.columns
val labelCol = cols.last
 
val assembler = new VectorAssembler()
  .setInputCols(cols.slice(0, cols.length - 1))
  .setOutputCol("features")
val data = assembler
  .transform(rawData)
  .select(col("features"), col(labelCol).as("label"))

// scala> data.printSchema
// root
//  |-- features: vector (nullable = true)
//  |-- label: integer (nullable = true)

/**
  * Train the model
  */

val contamination = 0.1
val isolationForest = new IsolationForest()
  .setNumEstimators(100)
  .setBootstrap(false)
  .setMaxSamples(256)
  .setMaxFeatures(1.0)
  .setFeaturesCol("features")
  .setPredictionCol("predictedLabel")
  .setScoreCol("outlierScore")
  .setContamination(contamination)
  .setContaminationError(0.01 * contamination)
  .setRandomSeed(1)

val isolationForestModel = isolationForest.fit(data)
 
/**
  * Score the training data
  */

val dataWithScores = isolationForestModel.transform(data)

// scala> dataWithScores.printSchema
// root
//  |-- features: vector (nullable = true)
//  |-- label: integer (nullable = true)
//  |-- outlierScore: double (nullable = false)
//  |-- predictedLabel: double (nullable = false)

The output DataFrame, dataWithScores, is identical to the input data DataFrame but has two additional result columns appended with their names set via model parameters; in this case, these are named predictedLabel and outlierScore.

Saving and loading a trained model

Once you've trained an isolationForestModel instance as per the instructions above, you can use the following commands to save the model to HDFS and reload it as needed.

val path = "/user/testuser/isolationForestWriteTest"

/**
  * Persist the trained model on disk
  */

// You can ensure you don't overwrite an existing model by removing .overwrite from this command
isolationForestModel.write.overwrite.save(path)

/**
  * Load the saved model from disk
  */

val isolationForestModel2 = IsolationForestModel.load(path)

Validation

The original 2008 "Isolation forest" paper by Liu et al. published the AUROC results obtained by applying the algorithm to 12 benchmark outlier detection datasets. We applied our implementation of the isolation forest algorithm to the same 12 datasets using the same model parameter values used in the original paper. We used 10 trials per dataset each with a unique random seed and averaged the result. The quoted uncertainty is the one-sigma error on the mean.

Dataset Expected mean AUROC (from Liu et al.) Observed mean AUROC (from this implementation)
Http (KDDCUP99) 1.00 0.99973 ± 0.00007
ForestCover 0.88 0.903 ± 0.005
Mulcross 0.97 0.9926 ± 0.0006
Smtp (KDDCUP99) 0.88 0.907 ± 0.001
Shuttle 1.00 0.9974 ± 0.0014
Mammography 0.86 0.8636 ± 0.0015
Annthyroid 0.82 0.815 ± 0.006
Satellite 0.71 0.709 ± 0.004
Pima 0.67 0.651 ± 0.003
Breastw 0.99 0.9862 ± 0.0003
Arrhythmia 0.80 0.804 ± 0.002
Ionosphere 0.85 0.8481 ± 0.0002

Our implementation provides AUROC values that are in very good agreement the results in the original Liu et al. publication. There are a few very small discrepancies that are likely due the limited precision of the AUROC values reported in Liu et al.

Contributions

If you would like to contribute to this project, please review the instructions here.

References

  • F. T. Liu, K. M. Ting, and Z.-H. Zhou, “Isolation forest,” in 2008 Eighth IEEE International Conference on Data Mining, 2008, pp. 413–422.
  • F. T. Liu, K. M. Ting, and Z.-H. Zhou, “Isolation-based anomaly detection,” ACM Transactions on Knowledge Discovery from Data (TKDD), vol. 6, no. 1, p. 3, 2012.
  • Shebuti Rayana (2016). ODDS Library [http://odds.cs.stonybrook.edu]. Stony Brook, NY: Stony Brook University, Department of Computer Science.

More Repositories

1

school-of-sre

At LinkedIn, we are using this curriculum for onboarding our entry-level talents into the SRE role.
HTML
7,821
star
2

css-blocks

High performance, maintainable stylesheets.
TypeScript
6,335
star
3

Burrow

Kafka Consumer Lag Checking
Go
3,725
star
4

databus

Source-agnostic distributed change data capture system
Java
3,636
star
5

Liger-Kernel

Efficient Triton Kernels for LLM Training
Python
3,312
star
6

qark

Tool to look for several security related Android application vulnerabilities
Python
3,183
star
7

dustjs

Asynchronous Javascript templating for the browser and server
JavaScript
2,911
star
8

cruise-control

Cruise-control is the first of its kind to fully automate the dynamic workload rebalance and self-healing of a Kafka cluster. It provides great value to Kafka users by simplifying the operation of Kafka clusters.
Java
2,734
star
9

rest.li

Rest.li is a REST+JSON framework for building robust, scalable service architectures using dynamic discovery and simple asynchronous APIs.
Java
2,500
star
10

kafka-monitor

Xinfra Monitor monitors the availability of Kafka clusters by producing synthetic workloads using end-to-end pipelines to obtain derived vital statistics - E2E latency, service produce/consume availability, offsets commit availability & latency, message loss rate and more.
Java
2,016
star
11

dexmaker

A utility for doing compile or runtime code generation targeting Android's Dalvik VM
Java
1,863
star
12

greykite

A flexible, intuitive and fast forecasting library
Python
1,813
star
13

ambry

Distributed object store
Java
1,740
star
14

shiv

shiv is a command line utility for building fully self contained Python zipapps as outlined in PEP 441, but with all their dependencies included.
Python
1,729
star
15

swift-style-guide

LinkedIn's Official Swift Style Guide
1,430
star
16

dr-elephant

Dr. Elephant is a job and flow-level performance monitoring and tuning tool for Apache Hadoop and Apache Spark
Java
1,353
star
17

detext

DeText: A Deep Neural Text Understanding Framework for Ranking and Classification Tasks
Python
1,263
star
18

luminol

Anomaly Detection and Correlation library
Python
1,182
star
19

parseq

Asynchronous Java made easier
Java
1,165
star
20

oncall

Oncall is a calendar tool designed for scheduling and managing on-call shifts. It can be used as source of dynamic ownership info for paging systems like http://iris.claims.
Python
1,137
star
21

test-butler

Reliable Android Testing, at your service
Java
1,046
star
22

goavro

Go
972
star
23

PalDB

An embeddable write-once key-value store written in Java
Java
937
star
24

brooklin

An extensible distributed system for reliable nearline data streaming at scale
Java
919
star
25

iris

Iris is a highly configurable and flexible service for paging and messaging.
Python
807
star
26

photon-ml

A scalable machine learning library on Apache Spark
Terra
793
star
27

URL-Detector

A Java library to detect and normalize URLs in text
Java
782
star
28

coral

Coral is a translation, analysis, and query rewrite engine for SQL and other relational languages.
Java
781
star
29

Hakawai

A powerful, extensible UITextView.
Objective-C
781
star
30

eyeglass

NPM Modules for Sass
TypeScript
741
star
31

opticss

A CSS Optimizer
TypeScript
715
star
32

LiTr

Lightweight hardware accelerated video/audio transcoder for Android.
Java
609
star
33

kafka-tools

A collection of tools for working with Apache Kafka.
Python
592
star
34

pygradle

Using Gradle to build Python projects
Java
587
star
35

flashback

mock the internet
Java
578
star
36

FeatureFu

Library and tools for advanced feature engineering
Java
568
star
37

LayoutTest-iOS

Write unit tests which test the layout of a view in multiple configurations
Objective-C
564
star
38

FastTreeSHAP

Fast SHAP value computation for interpreting tree-based models
Python
509
star
39

venice

Venice, Derived Data Platform for Planet-Scale Workloads.
Java
487
star
40

Spyglass

A library for mentions on Android
Java
386
star
41

dagli

Framework for defining machine learning models, including feature generation and transformations, as directed acyclic graphs (DAGs).
Java
353
star
42

cruise-control-ui

Cruise Control Frontend (CCFE): Single Page Web Application to Manage Large Scale of Kafka Clusters
Vue
337
star
43

ml-ease

ADMM based large scale logistic regression
Java
333
star
44

openhouse

Open Control Plane for Tables in Data Lakehouse
Java
304
star
45

dph-framework

HTML
298
star
46

transport

A framework for writing performant user-defined functions (UDFs) that are portable across a variety of engines including Apache Spark, Apache Hive, and Presto.
Java
296
star
47

spark-tfrecord

Read and write Tensorflow TFRecord data from Apache Spark.
Scala
288
star
48

LiFT

The LinkedIn Fairness Toolkit (LiFT) is a Scala/Spark library that enables the measurement of fairness in large scale machine learning workflows.
Scala
168
star
49

shaky-android

Shake to send feedback for Android.
Java
160
star
50

pyexchange

Python wrapper for Microsoft Exchange
Python
153
star
51

asciietch

A graphing library with the goal of making it simple to graphs using ascii characters.
Python
138
star
52

python-avro-json-serializer

Serializes data into a JSON format using AVRO schema.
Python
137
star
53

gdmix

A deep ranking personalization framework
Python
131
star
54

li-apache-kafka-clients

li-apache-kafka-clients is a wrapper library for the Apache Kafka vanilla clients. It provides additional features such as large message support and auditing to the Java producer and consumer in the open source Apache Kafka.
Java
131
star
55

dynamometer

A tool for scale and performance testing of HDFS with a specific focus on the NameNode.
Java
131
star
56

Avro2TF

Avro2TF is designed to fill the gap of making users' training data ready to be consumed by deep learning training frameworks.
Scala
126
star
57

datahub-gma

General Metadata Architecture
Java
121
star
58

linkedin-gradle-plugin-for-apache-hadoop

Groovy
117
star
59

dex-test-parser

Find all test methods in an Android instrumentation APK
Kotlin
106
star
60

cassette

An efficient, file-based FIFO Queue for iOS and macOS.
Objective-C
95
star
61

spaniel

LinkedIn's JavaScript viewport tracking library and IntersectionObserver polyfill
JavaScript
92
star
62

Hoptimator

Multi-hop declarative data pipelines
Java
91
star
63

migz

Multithreaded, gzip-compatible compression and decompression, available as a platform-independent Java library and command-line utilities.
Java
79
star
64

avro-util

Collection of utilities to allow writing java code that operates across a wide range of avro versions.
Java
76
star
65

sysops-api

sysops-api is a framework designed to provide visability from tens of thousands of machines in seconds.
Python
74
star
66

iceberg

A temporary home for LinkedIn's changes to Apache Iceberg (incubating)
Java
62
star
67

DuaLip

DuaLip: Dual Decomposition based Linear Program Solver
Scala
59
star
68

kube2hadoop

Secure HDFS Access from Kubernetes
Java
59
star
69

dynoyarn

DynoYARN is a framework to run simulated YARN clusters and workloads for YARN scale testing.
Java
58
star
70

linkedin.github.com

Listing of all our public GitHub projects.
JavaScript
58
star
71

Tachyon

An Android library that provides a customizable calendar day view UI widget.
Java
57
star
72

Cytodynamics

Classloader isolation library.
Java
49
star
73

iris-relay

Stateless reverse proxy for thirdparty service integration with Iris API.
Python
48
star
74

concurrentli

Classes for multithreading that expand on java.util.concurrent, adding convenience, efficiency and new tools to multithreaded Java programs
Java
46
star
75

iris-mobile

A mobile interface for linkedin/iris, built for iOS and Android on the Ionic platform
TypeScript
42
star
76

lambda-learner

Lambda Learner is a library for iterative incremental training of a class of supervised machine learning models.
Python
41
star
77

TE2Rules

Python library to explain Tree Ensemble models (TE) like XGBoost, using a rule list.
Python
40
star
78

instantsearch-tutorial

Sample code for building an end-to-end instant search solution
JavaScript
39
star
79

PASS-GNN

Python
38
star
80

self-focused

Helps make a single page application more friendly to screen readers.
JavaScript
35
star
81

tracked-queue

An autotracked implementation of a ring-buffer-backed double-ended queue
TypeScript
35
star
82

QueryAnalyzerAgent

Analyze MySQL queries with negligible overhead
Go
35
star
83

performance-quality-models

Personalizing Performance model repository
Jupyter Notebook
31
star
84

data-integration-library

The Data Integration Library project provides a library of generic components based on a multi-stage architecture for data ingress and egress.
Java
28
star
85

Iris-message-processor

Iris-message-processor is a fully distributed Go application meant to replace the sender functionality of Iris and provide reliable, scalable, and extensible incident and out of band message processing and sending.
Go
27
star
86

smart-arg

Smart Arguments Suite (smart-arg) is a slim and handy python lib that helps one work safely and conveniently with command line arguments.
Python
23
star
87

linkedin-calcite

LinkedIn's version of Apache Calcite
Java
22
star
88

atscppapi

This library provides wrappers around the existing Apache Traffic Server API which will vastly simplify the process of writing Apache Traffic Server plugins.
C++
20
star
89

forthic

Python
18
star
90

high-school-trainee

LinkedIn Women in Tech High School Trainee Program
Python
18
star
91

play-parseq

Play-ParSeq is a Play module which seamlessly integrates ParSeq with Play Framework
Scala
17
star
92

icon-magic

Automated icon build system for iOS, Android and Web
TypeScript
17
star
93

QuantEase

QuantEase, a layer-wise quantization framework, frames the problem as discrete-structured non-convex optimization. Our work leverages Coordinate Descent techniques, offering high-quality solutions without the need for matrix inversion or decomposition.
Python
17
star
94

kafka-remote-storage-azure

Java
13
star
95

play-restli

A library that simplifies building restli services on top of the play server.
Java
12
star
96

spark-inequality-impact

Scala
12
star
97

Li-Airflow-Backfill-Plugin

Li-Airflow-Backfill-Plugin is a plugin to work with Apache Airflow to provide data backfill feature, ie. to rerun pipelines for a certain date range.
Python
10
star
98

AlerTiger

Jupyter Notebook
9
star
99

diderot

A fast and flexible implementation of the xDS protocol
Go
6
star
100

gobblin-elr

This is a read-only mirror of apache/gobblin
Java
5
star