Welcome. This repository contains the data and scripts which comprise the Numenta Anomaly Benchmark (NAB) v1.1. NAB is a novel benchmark for evaluating algorithms for anomaly detection in streaming, real-time applications. It is composed of over 50 labeled real-world and artificial timeseries data files plus a novel scoring mechanism designed for real-time applications.
Included are the tools to allow you to run NAB on your own anomaly detection algorithms; see the NAB entry points info. Competitive results tied to open source code will be posted on the Scoreboard. Let us know about your work by emailing us at [email protected] or submitting a pull request.
This readme is a brief overview and contains details for setting up NAB. Please refer to the following for more details about NAB scoring, data, and motivation:
- Unsupervised real-time anomaly detection for streaming data - The main paper, covering NAB and Numenta's HTM-based anomaly detection algorithm
- NAB Whitepaper
- Evaluating Real-time Anomaly Detection Algorithms - Original publication of NAB
We encourage you to publish your results on running NAB, and share them with us at [email protected]. Please cite the following publication when referring to NAB:
Ahmad, S., Lavin, A., Purdy, S., & Agha, Z. (2017). Unsupervised real-time anomaly detection for streaming data. Neurocomputing, Available online 2 June 2017, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2017.04.070
The NAB scores are normalized such that the maximum possible is 100.0 (i.e. the perfect detector), and a baseline of 0.0 is determined by the "null" detector (which makes no detections).
Detector | Standard Profile | Reward Low FP | Reward Low FN |
---|---|---|---|
Perfect | 100.0 | 100.0 | 100.0 |
ARTime | 74.9 | 65.1 | 80.4 |
Numenta HTM* | 70.5-69.7 | 62.6-61.7 | 75.2-74.2 |
CAD OSE† | 69.9 | 67.0 | 73.2 |
earthgecko Skyline | 58.2 | 46.2 | 63.9 |
KNN CAD† | 58.0 | 43.4 | 64.8 |
Relative Entropy | 54.6 | 47.6 | 58.8 |
Random Cut Forest **** | 51.7 | 38.4 | 59.7 |
Twitter ADVec v1.0.0 | 47.1 | 33.6 | 53.5 |
Windowed Gaussian | 39.6 | 20.9 | 47.4 |
Etsy Skyline | 35.7 | 27.1 | 44.5 |
Bayesian Changepoint** | 17.7 | 3.2 | 32.2 |
EXPoSE | 16.4 | 3.2 | 26.9 |
Random*** | 11.0 | 1.2 | 19.5 |
Null | 0.0 | 0.0 | 0.0 |
As of NAB v1.0
* From NuPIC version 1.0 (available on PyPI); the range in scores represents runs using different random seeds.
** The original algorithm was modified for anomaly detection. Implementation details are in the detector's code.
*** Scores reflect the mean across a range of random seeds. The spread of scores for each profile are 7.95 to 16.83 for Standard, -1.56 to 2.14 for Reward Low FP, and 11.34 to 23.68 for Reward Low FN.
**** We have included the results for RCF using an AWS proprietary implementation; even though the algorithm code is not open source, the algorithm description is public and the code we used to run NAB on RCF is open source.
† Algorithm was an entry to the 2016 NAB Competition.
Please see the wiki section on contributing algorithms for discussion on posting algorithms to the scoreboard.
The NAB corpus of 58 timeseries data files is designed to provide data for research in streaming anomaly detection. It is comprised of both real-world and artifical timeseries data containing labeled anomalous periods of behavior.
The majority of the data is real-world from a variety of sources such as AWS server metrics, Twitter volume, advertisement clicking metrics, traffic data, and more. All data is included in the repository, with more details in the data readme. Please contact us at [email protected] if you have similar data (ideally with known anomalies) that you would like to see incorporated into NAB.
The NAB version will be updated whenever new data (and corresponding labels) is added to the corpus or other significant changes are made.
For comparison, here are the NAB V1.0 scores for some additional flavors of HTM.
- Numenta HTM using NuPIC v.0.5.6: This version of NuPIC was used to generate the data for the paper mentioned above (Unsupervised real-time anomaly detection for streaming data. Neurocomputing, ISSN 0925-2312, https://doi.org/10.1016/j.neucom.2017.04.070). If you are interested in replicating the results shown in the paper, use this version.
- HTM Java is a Community-Driven Java port of HTM.
- nab-comportex is a twist on HTM anomaly detection using Comportex, a community-driven HTM implementation in Clojure. Please see Felix Andrew's blog post on experiments with this algorithm.
- NumentaTM HTM detector uses the implementation of temporal memory found here.
- Numenta HTM detector with no likelihood uses the raw anomaly scores directly. To
run without likelihood, set the variable
self.useLikelihood
in numenta_detector.py toFalse
.
Detector | Standard Profile | Reward Low FP | Reward Low FN |
---|---|---|---|
Numenta HTMusing NuPIC v0.5.6* | 70.1 | 63.1 | 74.3 |
nab-comportex† | 64.6 | 58.8 | 69.6 |
NumentaTM HTM* | 64.6 | 56.7 | 69.2 |
HTM Java | 56.8 | 50.7 | 61.4 |
Numenta HTM*, no likelihood | 53.62 | 34.15 | 61.89 |
* From NuPIC version 0.5.6 (available on PyPI).
† Algorithm was an entry to the 2016 NAB Competition.
- OSX 10.9 and higher
- Amazon Linux (via AMI)
Other platforms may work. NAB has been tested on Windows 10 but is not officially supported.
You need to manually install the following:
Use the Github links provided in the right sidebar.
From inside the checkout directory:
pip install -r requirements.txt
pip install . --user
If you want to manage dependency versions yourself, you can skip dependencies with:
pip install . --user --no-deps
If you are actively working on the code and are familiar with manual PYTHONPATH setup:
pip install -e . --install-option="--prefix=/some/other/path/"
conda env create
There are several different use cases for NAB:
-
If you want to look at all the results we reported in the paper, there is no need to run anything. All the data files are in the data subdirectory and all individual detections for reported algorithms are checked in to the results subdirectory. Please see the README files in those locations.
-
If you want to plot some of the results, please see the README in the
scripts
directory forscripts/plot.py
-
If you have your own algorithm and want to run the NAB benchmark, please see the NAB Entry Points section in the wiki. (The easiest option is often to simply run your algorithm on the data and output results in the CSV format we specify. Then run the NAB scoring algorithm to compute the final scores. This is how we scored the Twitter algorithm, which is written in R.)
-
If you are a NuPIC user and want to run the Numenta HTM detector follow the directions below to "Run HTM with NAB".
-
If you want to run everything including the bundled Skyline detector follow the directions below to "Run full NAB". Note that this will take hours as the Skyline code is quite slow.
-
If you want to run NAB on one or more data files (e.g. for debugging) follow the directions below to "Run a subset of NAB".
cd /path/to/nab
python run.py -d expose --detect --optimize --score --normalize
This will run the EXPoSE detector only and produce normalized scores. Note that by default it tries to use all the cores on your machine. The above command should take about 20-30 minutes on a current powerful laptop with 4-8 cores. For debugging you can run subsets of the data files by modifying and specifying specific label files (see section below). Please type:
python run.py --help
to see all the options.
NAB is a Python 3 framework, and can only integrate Python 3 detectors. The following detectors must be run outside the NAB runtime and integrated for scoring in a later step. These detectors include:
numenta (Python 2)
numentaTM (Python 2)
htmjava (Python 2 / Java)
twitterADVec (R)
random_cut_forest (AWS Kinesis Analytics)
Instructions on how to run the each detector in their native environment can be found in the nab/detectors/${name}
directory. The Python 2 HTM detectors are also provided within a docker image, available with docker pull numenta/nab:py2.7
.
cd /path/to/nab
python run.py
This will run all detectors available in this repository and produce results files. To run non-Python3 detectors see "Running non-Python3 detectors" above.
Note: this option may take many many hours to run.
For debugging it is sometimes useful to be able to run your algorithm on a
subset of the NAB data files or on your own set of data files. You can do that
by creating a custom combined_windows.json
file that only contains labels for
the files you want to run. This new file should be in exactly the same format as
combined_windows.json
except it would only contain windows for the files you
are interested in.
Example: an example file containing two files is in
labels/combined_windows_tiny.json
. The following command shows you how to run
NAB on a subset of labels:
cd /path/to/nab
python run.py -d expose --detect --windowsFile labels/combined_windows_tiny.json
This will run the detect
phase of NAB on the data files specified in the above
JSON file. Note that scoring and normalization are not supported with this
option. Note also that you may see warning messages regarding the lack of labels
for other files. You can ignore these warnings.