Python implementation of Gorilla time series compression

Overview

Gorilla Time Series Compression

This is an implementation (with some adaptations) of the compression algorithm described in section 4.1 (Time series compression) of [1] (read the paper here).

Gorilla compression is lossless.

This library can be used in three ways:

  • Timestamps only compression.
  • Values only compression (useful for regular time series compression).
  • Timestamp-Value pairs compression (useful for irregular time series compression).

In all three cases, the result of the encoding process is a dict with everything necessary for decoding (see Usage for examples). If you want to use this library for compressed message exchanges, you can serialize the result of the encoding process as you like (JSON, protobuf, etc.)

This implementation is based on section 4.1 of [1] and on the Facebook's open source implementation [2] (which have some differences).

Differences from the original paper

  • Timestamps or values can be encoded separately.
  • The header (with an aligned timestamp) at the beginning (64 bits) of the message is not encoded.
  • The float format can be specified (f64, f32, f16) to optimize the size of certain fields.

Installation

To install the latest release:

$ pip install gorillacompression

You can also build a local package and install it:

$ make build
$ pip install dist/*.whl

Usage

Import gorillacompression module.

>>> import gorillacompression as gc

Data to encode.

>>> timestamps = [1628164645, 1628164649, 1628164656, 1628164669]
>>> values = [18.95, 18.91, 17.01, 14.05]
>>> pairs = list(zip(timestamps, values))
>>> pairs
[(1628164645, 18.95), (1628164649, 18.91), (1628164656, 17.01), (1628164669, 14.05)]

In the three scenarios of compression (timestamps, values, pairs), you can use:

  • encode_all to encode all elements or encode_next to encode element by element.
  • decode_all to decode everything.

encode_next returns True if the element has been encoded correctly, False if the element has not been encoded accompanied by a warning explaining the reason.

Timestamps only compression

The expected input timestamp is a POSIX timestamp less than 2147483647 ('January 19, 2038 04:14:07'). The delta between two successive timestamps must be greater than or equal to 0.

You can use encode_all to encode all timestamps:

>>> content = gc.TimestampsEncoder.encode_all(timestamps)
>>> content
{'encoded': b'\xc2\x17\xa4K\x08\xa1Q@', 'nb_timestamps': 4}
>>> gc.TimestampsDecoder.decode_all(content)
[1628164645, 1628164649, 1628164656, 1628164669]

Or you can use encode_next to encode one by one:

>>> ts_encoder = gc.TimestampsEncoder()
>>> for ts in timestamps:
...     ts_encoder.encode_next(ts)
>>> content = ts_encoder.get_encoded()
>>> content
{'encoded': b'\xc2\x17\xa4K\x08\xa1Q@', 'nb_timestamps': 4}
>>> gc.TimestampsDecoder.decode_all(content)
[1628164645, 1628164649, 1628164656, 1628164669]

Values only compression

You can use encode_all to encode all values:

>>> content = gc.ValuesEncoder.encode_all(values)
>>> content
{'encoded': b'@2\xf333333\xe7f\xf1\xbco\x1b\xc6\xee\xc7\xeaz\x9e\xa7\xa9\xeb\xaf^\x8d\x8bb\xd8\xb6,\x80', 'nb_values': 4, 'float_format': 'f64'}
>>> gc.ValuesDecoder.decode_all(content)
[18.95, 18.91, 17.01, 14.05]

Or you can use encode_next to encode one by one:

>>> values_encoder = gc.ValuesEncoder()
>>> for v in values:
...     values_encoder.encode_next(v)
>>> content = values_encoder.get_encoded()
>>> content
{'encoded': b'@2\xf333333\xe7f\xf1\xbco\x1b\xc6\xee\xc7\xeaz\x9e\xa7\xa9\xeb\xaf^\x8d\x8bb\xd8\xb6,\x80', 'nb_values': 4, 'float_format': 'f64'}
>>> gc.ValuesDecoder.decode_all(content)
[18.95, 18.91, 17.01, 14.05]

Timestamp-Value pairs compression

You can use encode_all to encode all pairs:

>>> content = gc.PairsEncoder.encode_all(pairs)
>>> content
{'encoded': b'\xc2\x17\xa4J\x80e\xe6ffffg\x08\xe7f\xf1\xbco\x1b\xc6\xd0\xb7c\xf5=OS\xd4\xf5\xa2\xeb\xd7\xa3b\xd8\xb6-\x8b ', 'nb_pairs': 4, 'float_format': 'f64'}
>>> gc.PairsDecoder.decode_all(content)
[(1628164645, 18.95), (1628164649, 18.91), (1628164656, 17.01), (1628164669, 14.05)]

Or you can use encode_next to encode one by one:

>>> pairs_encoder = gc.PairsEncoder()
>>> for (ts, v) in pairs:
...     pairs_encoder.encode_next(ts, v)
>>> content = pairs_encoder.get_encoded()
>>> content
{'encoded': b'\xc2\x17\xa4J\x80e\xe6ffffg\x08\xe7f\xf1\xbco\x1b\xc6\xd0\xb7c\xf5=OS\xd4\xf5\xa2\xeb\xd7\xa3b\xd8\xb6-\x8b ', 'nb_pairs': 4, 'float_format': 'f64'}
>>> gc.PairsDecoder.decode_all(content)
[(1628164645, 18.95), (1628164649, 18.91), (1628164656, 17.01), (1628164669, 14.05)]

Gorilla compression algorithm explanation

Below is a brief explanation of the implemented method. (Refer to [1] section 4.1 (read the paper here) for the original explanation)

Timestamps compression

  • The first timestamp is encoded in a fixed number of bits.
  • The following timestamps are encoded as follows:
  (a) Calculate the delta of delta
          D = (t_n − t_(n−1)) − (t_(n−1) − t_(n−2))
  (b) If D is zero, then store a single ‘0’ bit
  (c) If D is between [-63, 64], store ‘10’ followed by the value (7 bits)
  (d) If D is between [-255, 256], store ‘110’ followed by the value (9 bits)
  (e) if D is between [-2047, 2048], store ‘1110’ followed by the value (12 bits)
  (f) Otherwise store ‘1111’ followed by D using 32 bits

Values compression

Notation

    n bits:
    +---- n ----+
    |           |
    +---- n' ---+

    n bytes:
    +==== n ====+
    |           |
    +==== n' ===+

    `~` in place of `n` means a variable number of bytes or bits.

    When it makes sense, n refers to the default value, and n' to the variable containing the value.

This explanation corresponds to the case of float format f64, for the other formats (f32, f16), the size of some fields is different (refer to the code for more details).

  1. The first value is stored with no compression.
    +======================= 8 =======================+
    |  First value (IEEE 754, binary64, Big Endian)   |
    +======================= 8 =======================+
  1. If XOR with the previous is zero (same value), store single ‘0’ bit.
    +-- 1 --+
    |   0   |
    +-- 1 --+
  1. When XOR is non-zero, calculate the number of leading and trailing zeros in the XOR, store bit ‘1’ followed by either a) or b):
  • (a) (Control bit ‘0’) If the block of meaningful bits falls within the block of previous meaningful bits*, i.e., there are at least as many leading zeros and as many trailing zeros as with the previous value, use that information for the block position and just store the meaningful XORed value*.
    +--- 2 ---+--- length of the meaningful XORed value ---+
    |   10    |         [meaningful XORed value]           |
    +--- 2 ---+--- length of the meaningful XORed value ---+
  • (b) (Control bit ‘1’) Store the length of the number of leading zeros in the next 5 bits, then store the length of the meaningful XORed value in the next 6 bits. Finally store the meaningful bits of the XORed value.
    +--- 2 ---+------------- 5 -------------+------------------- 6 ------------------+--- length of the meaningful XORed value ---+
    |   11    |   number of leading zeros   |   length of the meaningful XORed value |         [meaningful XORed value]           |
    +--- 2 ---+------------- 5 -------------+------------------- 6 ------------------+--- length of the meaningful XORed value ---+
  1. After the compression of the last value, if the length of the bitarray is not a multiple of 8, the few remaining bits are padded with zero.
    +---- n ----+
    |   0...0   |
    +---- n ----+

    n < 8

(*) The terms "meaningful bits" and "meaningful XORed value" used in the original paper may be confusing.

  • In case (b), "meaningful XORed value" is a value with absolutely no leading and trailing zero.
  • In case (a), "meaningful XORed value" is the XORed value striped off same amount of leading and trailing zeroes as previous value delta. The meaningful bits in this case may still contain some leading and trailing zeroes.

Timestamp-Value pairs compression

The encoding of a pair is the encoding of the timestmap followed by the encoding of the value.

Contribute

Please, open issues. PR are very welcome!

$ git clone https://github.com/ghilesmeddour/gorilla-time-series-compression.git
$ cd gorilla-time-series-compression
make format
make dead-code-check
make test
make type-check
make coverage
make build

TODOs

  • Add more unit tests (f32 and f16 float formats are currently not tested).
  • Add profiling, benchmarks, etc.
  • Improve doc, docstring, etc.

Other implementations

References

[1] Pelkonen, T., Franklin, S., Teller, J., Cavallaro, P., Huang, Q., Meza, J., & Veeraraghavan, K. (2015). Gorilla: A fast, scalable, in-memory time series database. Proceedings of the VLDB Endowment, 8(12), 1816-1827.

You might also like...
Compute the fair market value (FMV) of staking rewards at time of receipt.

tendermint-tax A tool to help calculate the tax liability of staking rewards on Tendermint chains. Specifically, this tool calculates the fair market

This is a python table of data implementation with styles, colors
This is a python table of data implementation with styles, colors

Table This is a python table of data implementation with styles, colors Example Table adapts to the lack of data Lambda color features Full power of l

A simple python implementation of Decision Tree.

DecisionTree A simple python implementation of Decision Tree, using Gini index. Usage: import DecisionTree node = DecisionTree.trainDecisionTree(lab

A fast Python implementation of Ac Auto Mechine

A fast Python implementation of Ac Auto Mechine

✨ Voici un code en Python par moi, et en français qui permet d'exécuter du Javascript en Python.
✨ Voici un code en Python par moi, et en français qui permet d'exécuter du Javascript en Python.

JavaScript In Python ❗ Voici un code en Python par moi, et en français qui permet d'exécuter du Javascript en Python. 🔮 Une vidéo pour vous expliquer

Simple python module to get the information regarding battery in python.
Simple python module to get the information regarding battery in python.

Battery Stats A python3 module created for easily reading the current parameters of Battery in realtime. It reads battery stats from /sys/class/power_

Python @deprecat decorator to deprecate old python classes, functions or methods.

deprecat Decorator Python @deprecat decorator to deprecate old python classes, functions or methods. Installation pip install deprecat Usage To use th

A python package containing all the basic functions and classes for python. From simple addition to advanced file encryption.
A python package containing all the basic functions and classes for python. From simple addition to advanced file encryption.

A python package containing all the basic functions and classes for python. From simple addition to advanced file encryption.

Find dependent python scripts of a python script in a project directory.

Find dependent python scripts of a python script in a project directory.

Comments
  • OverflowError: unsigned integer not in range(0, 64), got 64

    OverflowError: unsigned integer not in range(0, 64), got 64

    I got this message when trying to encode values :

    
    values = [-0.39263690585168304, -0.39263690585168304, -0.39263690585168304, 0.450762617155903, 0.450762617155903, 0.450762617155903, -0.284155454538896]
    values_encoder = gc.ValuesEncoder()
    for v in values:
        print(v)
        values_encoder.encode_next(v)
    

    This output :

    -0.39263690585168304
    -0.39263690585168304
    -0.39263690585168304
    0.450762617155903
    0.450762617155903
    0.450762617155903
    -0.284155454538896
    
    ---------------------------------------------------------------------------
    OverflowError                             Traceback (most recent call last)
    /tmp/ipykernel_9713/2845470605.py in <module>
         10 for v in values:
         11     print(v)
    ---> 12     values_encoder.encode_next(v)
    
    ~/.local/lib/python3.8/site-packages/gorillacompression/values/encode.py in encode_next(self, value)
        118             # Encode length of the meaningful XORed value.
        119             length_of_the_meaningful_xored_value = self.n_bits_value - n_leading_zeros - n_trailing_zeros
    --> 120             self.bit_array += util.int2ba(
        121                 length_of_the_meaningful_xored_value,
        122                 length=self.n_bits_length_of_the_meaningful_xored_value)
    
    ~/.local/lib/python3.8/site-packages/bitarray/util.py in int2ba(__i, length, endian, signed)
        267             raise OverflowError("unsigned integer not positive, got %d" % __i)
        268         if length and __i >= (1 << length):
    --> 269             raise OverflowError("unsigned integer not in range(0, %d), "
        270                                 "got %d" % (1 << length, __i))
        271 
    
    OverflowError: unsigned integer not in range(0, 64), got 64
    
    

    Version 0.0.1

    same problem with encode_all

    opened by Jeanbouvatt 3
  • Make encode_all a class method, or add a float_format parameter to the method

    Make encode_all a class method, or add a float_format parameter to the method

    Currently, encode_all is a static method of the ValuesEncoder class. Its usage can be misleading when a float format different from f64 is used:

    content = gc.ValuesEncoder(float_format='f16').encode_all(sequence) content['float_format']

    The result is 'f64', since the method does not take into account the parameters of the instance of ValuesEncoder used to invoke the method.

    I would suggest to make encode_all a class method, and/or add a float_format parameter to the static method to avoid this potential trouble.

    opened by mgoeminne 2
  • Encode all unable to use 'f32' or 'f16' formats

    Encode all unable to use 'f32' or 'f16' formats

    Hi,

    In line 148 of the file encode.py, you seem to have made a small error in the sense that you initialize a default ValuesEncoder. This means that if you are trying to do encoding in a different format (say 'f32') this will be superceded by the default. In other words, this means that in the current pip implementation of gorillacompression it is impossible to do anything but 'f64' compression unless you use encode_next manually.

    Simple fix would be to initialize that value encoder in that function using the values from "self.". (Alternatively, I can make a pull request).

    Regards, Zack

    opened by HeatPhoenix 2
Releases(v0.2.1)
Owner
Ghiles Meddour
Data Analyst at Munic
Ghiles Meddour
Tool to produce system call tables from Linux source code.

Syscalls Tool to generate system call tables from the linux source tree. Example The following will produce a markdown (.md) file containing the table

7 Jul 30, 2022
✨ Un bot Twitter totalement fait en Python par moi, et en français.

Twitter Bot ❗ Un bot Twitter totalement fait en Python par moi, et en français. Il faut remplacer auth = tweepy.OAuthHandler(consumer_key, consumer_se

MrGabin 3 Jun 06, 2021
Script to rename and resize folders of images

script to rename and resize folders of images

Tega Brain 2 Oct 29, 2021
This repository contains some utilities for playing with PKINIT and certificates.

PKINIT tools This repository contains some utilities for playing with PKINIT and certificates. The tools are built on minikerberos and impacket. Accom

Dirk-jan 395 Dec 27, 2022
A collection of utility functions to prototype geometry processing research in python

gpytoolbox This repo is a work in progress and contains general utility functions I have needed to code while trying to work on geometry process resea

Silvia Sellán 73 Jan 06, 2023
Raganarok X: Next Generation Data Dump

Raganarok X Data Dump Raganarok X: Next Generation Data Dump More interesting Files File Name Contains en_langs All the variables you need in English

14 Jul 15, 2022
Dependency Injector is a dependency injection framework for Python.

What is Dependency Injector? Dependency Injector is a dependency injection framework for Python. It helps implementing the dependency injection princi

ETS Labs 2.6k Jan 04, 2023
Genart - Generate random art to sell as nfts

Genart - Generate random art to sell as nfts Usage git clone

Will 13 Mar 17, 2022
Extract XML from the OS X dictionaries.

Extract XML from the OS X dictionaries.

Joshua Olson 13 Dec 11, 2022
A sys-botbase client for remote control automation of Nintendo Switch consoles. Based on SysBot.NET, written in python.

SysBot.py A sys-botbase client for remote control automation of Nintendo Switch consoles. Based on SysBot.NET, written in python. Setup: Download the

7 Dec 16, 2022
Keval allows you to call arbitrary Windows kernel-mode functions from user mode, even (and primarily) on another machine.

Keval Keval allows you to call arbitrary Windows kernel-mode functions from user mode, even (and primarily) on another machine. The user mode portion

42 Dec 17, 2022
Minimal Windows system information tool written in Python

wfetch wfetch is a Minimal Windows system information tool written in Python (Only works on Windows) Installation First of all have python installed.

zJairO 3 Jan 24, 2022
Fuzzy box is a quick program I wrote to fuzz a URL that is in the format https:// url 20characterstring.

What is this? Fuzzy box is a quick program I wrote to fuzz a URL that is in the format https://url/20characterstring.extension. I have redacted th

Graham Helton 1 Oct 19, 2021
Conveniently measures the time of your loops, contexts and functions.

Conveniently measures the time of your loops, contexts and functions.

Maciej J Mikulski 79 Nov 15, 2022
Pampy: The Pattern Matching for Python you always dreamed of.

Pampy: Pattern Matching for Python Pampy is pretty small (150 lines), reasonably fast, and often makes your code more readable and hence easier to rea

Claudio Santini 3.5k Jan 06, 2023
Personal Toolbox Package

Jammy (Jam) A personal toolbox by Qsh.zh. Usage setup For core package, run pip install jammy To access functions in bin git clone https://gitlab.com/

5 Sep 16, 2022
PyHook is an offensive API hooking tool written in python designed to catch various credentials within the API call.

PyHook is the python implementation of my SharpHook project, It uses various API hooks in order to give us the desired credentials. PyHook Uses

Ilan Kalendarov 158 Dec 22, 2022
A simple and easy to use collection of random python functions.

A simple and easy to use collection of random python functions.

Diwan Mohamed Faheer 1 Nov 17, 2021
Aggregating gridded data (xarray) to polygons

A package to aggregate gridded data in xarray to polygons in geopandas using area-weighting from the relative area overlaps between pixels and polygons.

Kevin Schwarzwald 42 Nov 09, 2022
RapidFuzz is a fast string matching library for Python and C++

RapidFuzz is a fast string matching library for Python and C++, which is using the string similarity calculations from FuzzyWuzzy

Max Bachmann 1.7k Jan 04, 2023