Project description
Click here for more information
Introduction
PAttern MIning (PAMI) is a Python library containing several algorithms to discover user interest-based patterns in a wide-spectrum of datasets across multiple computing platforms. Useful links to utilize the services of this library were provided below:
User manual https://udaylab.github.io/PAMI/manuals/index.html
Coders manual https://udaylab.github.io/PAMI/codersManual/index.html
Code documentation https://pami-1.readthedocs.io
Datasets https://u-aizu.ac.jp/~udayrage/datasets.html
Discussions on PAMI usage https://github.com/UdayLab/PAMI/discussions
Report issues https://github.com/UdayLab/PAMI/issues
Features
✅ Well-tested and production-ready
🔋 Highly optimized to our best effort, light-weight, and energy efficient
👀 Proper code documentation
🍼 Ample examples of using various algorithms at ./notebooks folder
🤖 Works with AI libraries such as TensorFlow, PyTorch, and sklearn.
⚡️ Supports Cuda and PySpark
🖥️ Operating System Independence
🔬 Knowledge discovery in static data and streams
🐎 Snappy
🐻 Ease of use
Recent versions
Version 2023.07.07: New algorithms: cuApriroi, cuAprioriBit, cuEclat, cuEclatBit, gPPMiner, cuGPFMiner, FPStream, HUPMS, SHUPGrowth New codes to generate synthetic databases
Version 2023.06.20: Fuzzy Partial Periodic, Periodic Patterns in High Utility, Code Documentation, help() function Update
Version 2023.03.01: prefixSpan and SPADE
Total number of algorithms: 83
Maintenance
Installation
pip install pami
pip install 'pami[gpu]'
pip install 'pami[spark]'
Updation
pip install --upgrade pami
Uninstallation
pip uninstall pami
Tutorials
1. Mining interesting patterns from transactional databases
Frequent pattern mining: Sample
Basic
Closed
Maximal
Top-k
CUDA
pyspark
Apriori
CHARM
maxFP-growth
FAE
cudaAprioriGCT
parallelApriori
FP-growth
cudaAprioriTID
parallelFPGrowth
ECLAT
cudaEclatGCT
parallelECLAT
ECLAT-bitSet
ECLAT-diffset
Relative frequent pattern mining: Sample
Basic
RSFP-growth
Frequent pattern with multiple minimum support: Sample
Basic
CFPGrowth
CFPGrowth++
Correlated pattern mining: Sample
Basic
CoMine
CoMine++
Fault-tolerant frequent pattern mining (under development)
Basic
FTApriori
FTFPGrowth (under development)
Coverage pattern mining (under development)
Basic
CMine
CMine++
2. Mining interesting patterns from temporal databases
Periodic-frequent pattern mining: Sample
Basic
Closed
Maximal
Top-K
PFP-growth
CPFP
maxPF-growth
kPFPMiner
PFP-growth++
Topk-PFP
PS-growth
PFP-ECLAT
PFPM-Compliments
Local periodic pattern mining: Sample
Basic
LPPGrowth (under development)
LPPMBreadth (under development)
LPPMDepth (under development)
Partial periodic-frequent pattern mining: Sample
Basic
GPF-growth
PPF-DFS
GPPF-DFS
Partial periodic pattern mining: Sample
Basic
Closed
Maximal
topK
CUDA
3P-growth
3P-close
max3P-growth
topK-3P growth
cuGPPMiner (under development)
3P-ECLAT
gPPMiner (under development)
G3P-Growth
Periodic correlated pattern mining: Sample
Basic
EPCP-growth
Stable periodic pattern mining: Sample
Basic
TopK
SPP-growth
TSPIN
SPP-ECLAT
Recurring pattern mining: Sample
Basic
RPgrowth
3. Mining interesting patterns from Geo-referenced (or spatiotemporal) databases
Geo-referenced frequent pattern mining: Sample
Basic
spatialECLAT
FSP-growth
Geo-referenced periodic frequent pattern mining: Sample
Basic
GPFPMiner
PFS-ECLAT
ST-ECLAT
Geo-referenced partial periodic pattern mining:Sample
Basic
STECLAT
4. Mining interesting patterns from Utility (or non-binary) databases
High utility pattern mining: Sample
Basic
EFIM
HMiner
UPGrowth
High utility frequent pattern mining: Sample
Basic
HUFIM
High utility geo-referenced frequent pattern mining: Sample
Basic
SHUFIM
High utility spatial pattern mining: Sample
Basic
topk
HDSHIM
TKSHUIM
SHUIM
Relative High utility pattern mining: Sample
Basic
RHUIM
Weighted frequent pattern mining: Sample
Basic
WFIM
Weighted frequent regular pattern mining: Sample
Basic
WFRIMiner
Weighted frequent neighbourhood pattern mining: Sample
5. Mining interesting patterns from fuzzy transactional/temporal/geo-referenced databases
Fuzzy Frequent pattern mining: Sample
Basic
FFI-Miner
Fuzzy correlated pattern mining: Sample
Basic
FCP-growth
Fuzzy geo-referenced frequent pattern mining: Sample
Basic
FFSP-Miner
Fuzzy periodic frequent pattern mining: Sample
Basic
FPFP-Miner
Fuzzy geo-referenced periodic frequent pattern mining: Sample
Basic
FGPFP-Miner (under development)
6. Mining interesting patterns from uncertain transactional/temporal/geo-referenced databases
Uncertain frequent pattern mining: Sample
Basic
top-k
PUF
TUFP
TubeP
TubeS
UVEclat
Uncertain periodic frequent pattern mining: Sample
Basic
UPFP-growth
UPFP-growth++
Uncertain Weighted frequent pattern mining: Sample
Basic
WUFIM
7. Mining interesting patterns from sequence databases
Sequence frequent pattern mining: Sample
Basic
SPADE
PrefixSpan
Geo-referenced Frequent Sequence Pattern mining
Basic
GFSP-Miner (under development)
8. Mining interesting patterns from multiple timeseries databases
Partial periodic pattern mining (under development)
Basic
PP-Growth (under development)
9. Mining interesting patterns from Streams
Frequent pattern mining
High utility pattern mining
10. Mining interesting patterns from contiguous character sequences (E.g., DNA, Genome, and Game sequences)
Contiguous Frequent Patterns
Basic
PositionMining
4. Mining Graphs
coming soon
11. sequentialPatternMining
Basic
1. SPADE
to be written
2. SPAM
to be written
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages .
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names .
The dropdown lists show the available interpreters, ABIs, and platforms.
Enable javascript to be able to filter the list of wheel files.
Copy a direct link to the current filters
Copy
File name
Interpreter
Interpreter
py3
ABI
ABI
none
Platform
Platform
any
File details
Details for the file pami-2023.10.20.2.tar.gz.
File metadata
Download URL: pami-2023.10.20.2.tar.gz
Upload date:
Oct 20, 2023
Size: 501.4 kB
Tags: Source
Uploaded using Trusted Publishing? No
Uploaded via: twine/4.0.2 CPython/3.8.18
File hashes
Hashes for pami-2023.10.20.2.tar.gz
Algorithm
Hash digest
SHA256
46fbab2ebd7f7c0c44fe7639c3deefbd2f91d594dd4c96c43a6b8f918559231b
Copy
MD5
a8c3ef1e767a32ecff3de7e2f16e37e5
Copy
BLAKE2b-256
86431ed37503710837230591cc6fae52af3e1fa8e1f42081d54fc6e513e43d42
Copy
See more details on using hashes here.
File details
Details for the file pami-2023.10.20.2-py3-none-any.whl.
File metadata
Download URL: pami-2023.10.20.2-py3-none-any.whl
Upload date:
Oct 20, 2023
Size: 873.8 kB
Tags: Python 3
Uploaded using Trusted Publishing? No
Uploaded via: twine/4.0.2 CPython/3.8.18
File hashes
Hashes for pami-2023.10.20.2-py3-none-any.whl
Algorithm
Hash digest
SHA256
5c27247ad9d609f142338a92bd97d50ad9a72496f564a9d3d8c0572a36f9a812
Copy
MD5
a5c3d94bb63db21bb9371a653e9f85e0
Copy
BLAKE2b-256
ba785cdb256e0070ce04f737c9e620160dd7e5f00b24a440dace21bb7eb7665d
Copy
See more details on using hashes here.