Skip to main content

ISCC - Core Algorithms

Project description

ISCC - Codec & Algorithms

Build Version Coverage Quality Downloads

iscc-core is a Python library that implements the core algorithms of the ISCC (International Standard Content Code)

What is an ISCC

The ISCC is a similarity preserving identifier for digital media assets.

ISCCs are generated algorithmically from digital content, just like cryptographic hashes. However, instead of using a single cryptographic hash function to identify data only, the ISCC uses various algorithms to create a composite identifier that exhibits similarity-preserving properties (soft hash).

The component-based structure of the ISCC identifies content at multiple levels of abstraction. Each component is self-describing, modular, and can be used separately or with others to aid in various content identification tasks. The algorithmic design supports content deduplication, database synchronization, indexing, integrity verification, timestamping, versioning, data provenance, similarity clustering, anomaly detection, usage tracking, allocation of royalties, fact-checking and general digital asset management use-cases.

What is iscc-core

iscc-core is the python based library of the core algorithms to create standard-compliant ISCC codes. It also serves as a reference for porting ISCC to other programming languages.

!!! tip This is a low level reference implementation. iscc-core does not support mediatype detection, metadata extraction or file format specific content extraction. For easy generation of ISCC codes see: iscc-cli

ISCC Architecture

ISCC Architecture

ISCC MainTypes

Idx Slug Bits Purpose
0 META 0000 Match on metadata similarity
1 SEMANTIC 0001 Match on semantic content similarity
2 CONTENT 0010 Match on perceptual content similarity
3 DATA 0011 Match on data similarity
4 INSTANCE 0100 Match on data identity
5 ISCC 0101 Composite of two or more components with common header
6 ID 0110 Short unique identifier bound to ISCC, timestamp, pubkey
7 FLAKE 0111 Unique time, randomness and counter based distributed ID

Installation

Use the package manager pip to install iscc-core.

pip install iscc-core

Quick Start

import iscc_core as ic


meta_code = ic.gen_meta_code(name="ISCC Test Document!")

print(f"Meta-Code:     {meta_code['iscc']}")
print(f"Structure:     {ic.iscc_explain(meta_code['iscc'])}\n")

# Extract text from file
with open("demo.txt", "rt", encoding="utf-8") as stream:
    text = stream.read()
    text_code = ic.gen_text_code_v0(text)
    print(f"Text-Code:     {text_code['iscc']}")
    print(f"Structure:     {ic.iscc_explain(text_code['iscc'])}\n")

# Process raw bytes of textfile
with open("demo.txt", "rb") as stream:
    data_code = ic.gen_data_code(stream)
    print(f"Data-Code:     {data_code['iscc']}")
    print(f"Structure:     {ic.iscc_explain(data_code['iscc'])}\n")

    stream.seek(0)
    instance_code = ic.gen_instance_code(stream)
    print(f"Instance-Code: {instance_code['iscc']}")
    print(f"Structure:     {ic.iscc_explain(instance_code['iscc'])}\n")

iscc_code = ic.gen_iscc_code(
    (meta_code["iscc"], text_code["iscc"], data_code["iscc"], instance_code["iscc"])
)

iscc_obj = ic.Code(iscc_code["iscc"])
print(f"ISCC-CODE:     {iscc_obj.code}")
print(f"Structure:     {iscc_obj.explain}")
print(f"Multiformat:   {iscc_obj.mf_base32}\n")

iscc_id = ic.gen_iscc_id(iscc_obj.code, chain_id=1, wallet="1Bq568oLhi5HvdgC6rcBSGmu4G3FeAntCz")
iscc_id_obj = ic.Code(iscc_id["iscc"])
print(f"ISCC-ID:       {iscc_id_obj.code}")
print(f"Structure:     {iscc_id_obj.explain}")
print(f"Multiformat:   {iscc_id_obj.mf_base32}")

The output of this example is as follows:

Meta-Code:     ISCC:AAAT4EBWK27737D2
Structure:     META-NONE-V0-64-3e103656bffdfc7a

Text-Code:     ISCC:EAAQMBEYQF6457DP
Structure:     CONTENT-TEXT-V0-64-060498817dcefc6f

Data-Code:     ISCC:GAA7UJMLDXHPPENG
Structure:     DATA-NONE-V0-64-fa258b1dcef791a6

Instance-Code: ISCC:IAA3Y7HR2FEZCU4N
Structure:     INSTANCE-NONE-V0-64-bc7cf1d14991538d

ISCC-CODE:     KACT4EBWK27737D2AYCJRAL5Z36G76RFRMO4554RU26HZ4ORJGIVHDI
Structure:     ISCC-TEXT-V0-MCDI-3e103656bffdfc7a060498817dcefc6ffa258b1dcef791a6bc7cf1d14991538d
Multiformat:   bzqavabj6ca3fnp757r5ambeyqf6457dp7isywhoo66i2npd46hiutektru

ISCC-ID:       MEAJU5AXCPOIOYFL
Structure:     ID-BITCOIN-V0-64-9a741713dc8760ab
Multiformat:   bzqawcae2oqlrhxehmcvq

Documentation

https://core.iscc.codes

Project Status

The ISCC has been accepted by ISO as full work item ISO/AWI 24138 - International Standard Content Code and is currently being standardized at TC 46/SC 9/WG 18. https://www.iso.org/standard/77899.html

!!! attention

The iscc-core library and the accompanying documentation is under development. API changes and
other backward incompatible changes are to be expected until the upcoming v1.5 stable release.

Maintainers

@titusz

Contributing

Pull requests are welcome. For significant changes, please open an issue first to discuss your plans. Please make sure to update tests as appropriate.

You may also want join our developer chat on Telegram at https://t.me/iscc_dev.

Changelog

0.2.0 - 2022-02-24

  • Complete API refactoring
  • Use Data-URL as input for Meta-Code
  • Use wallet address for ISCC-ID creation
  • Added new Flake-Code (distributed time/random ID)
  • Replaced assertions with exeptions
  • Use secure random functions
  • Retired Python 3.6 support (EOL)
  • Return simple dict objects from generator functions
  • Added ISCC string validation
  • Added multiple helper functions

0.1.9 - 2021-12-17

  • Added warning on non-standard options
  • Added multiformats support
  • Added uri representation
  • Removed redundant cdc_avg_chunk_size option
  • Updated codec format documentation

0.1.8 - 2021-12-12

  • Added conformance tests for all top level functions
  • Added conformance tests to source dir
  • Added conformance module with selftest function
  • Changed gen_image_code to accept normalized pixels instead of stream
  • Changed opts to core_opts
  • Removed image pre-processing and Pillow dependency
  • Fixed readability of conformance tests
  • Fixed soft_hash_video_v0 to accept non-tuple sequences
  • Updated example code

0.1.7 - 2021-12-09

  • Add dotenv for enviroment based configuration
  • Cleanup package toplevel imports
  • Return schema objects for iscc_code and iscc_id
  • Exclude unset and none values from result dicts
  • Add support for multiple code combinations for ISCC-CODE
  • Add support for ISCC-ID based on singular Instance-Code
  • Add initial conformance test system

0.1.6 - 2021-11-29

  • Show counter for ISCC-ID in Code.explain

0.1.5 - 2021-11-28

  • Fix documentation
  • Change metahash creation logic
  • Refactor models
  • Add Content-Code-Mixed
  • Add ISCC-ID
  • Refactor compose to gen_iscc_code
  • Refactor models to schema

0.1.4 - 2021-11-17

  • Simplified options
  • Optimize video WTA-hash for use with 64-bit granular features

0.1.3 - 2021-11-15

  • Try to compile Cython/C accelerator modules when installing via pip
  • Simplify soft_hash api return values
  • Add .code() method to InstanceHasher, DataHasher
  • Remove granular fingerprint calculation
  • Add more top-level imports

0.1.2 - 2021-11-14

  • Export more functions to toplevel
  • Return schema driven objects from ISCC code generators.

0.1.1 - 2021-11-14

  • Fix packaging problems

0.1.0 - 2021-11-13

  • Initial release

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

iscc-core-0.2.0.tar.gz (57.2 kB view hashes)

Uploaded Source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page