dotmotif
stumpy
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dotmotif | stumpy | |
---|---|---|
2 | 6 | |
80 | 2,984 | |
- | 1.9% | |
4.0 | 7.9 | |
7 months ago | 23 days ago | |
Python | Python | |
Apache License 2.0 | GNU General Public License v3.0 or later |
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dotmotif
stumpy
- Stumpy: Matrix profile time series analysis
-
Time Series Analysis for air pollution data not aligned [R] [P]
Have you tried using STUMPY (https://github.com/TDAmeritrade/stumpy)?
- [D] STUMPY v1.11.0 Released for Modern Time Series Analysis
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[D][R] Clustering techniques for time series - MSc thesis
Haven't used it before, but I've seen a few powerpoints on https://github.com/TDAmeritrade/stumpy.
- Looking for a simple Time Series model for predicting stock prices
What are some alternatives?
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luminol - Anomaly Detection and Correlation library
grand-cypher - Implementation of the Cypher language for searching NetworkX graphs
pyvtreat - vtreat is a data frame processor/conditioner that prepares real-world data for predictive modeling in a statistically sound manner. Distributed under a BSD-3-Clause license.