learn-temporal-python-SDK
TS-TCC
learn-temporal-python-SDK | TS-TCC | |
---|---|---|
1 | 1 | |
2 | 391 | |
- | 4.3% | |
3.5 | 3.2 | |
almost 2 years ago | 10 months ago | |
Python | Python | |
Apache License 2.0 | MIT License |
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learn-temporal-python-SDK
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Python SDK: Your First Application
I hope this helps you get started with the Temporal Python SDK but if not, I’ll see you on the forum and if you’re keen to look at version 1.0 of my own poker application, feel free. For me, the next steps in learning Temporal are to dive into child workflows, signals, and queries to the poker application.
TS-TCC
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[R] Time-Series Representation Learning via Temporal and Contextual Contrasting
Abstract: Learning decent representations from unlabeled time-series data with temporal dynamics is a very challenging task. In this paper, we propose an unsupervised Time-Series representation learning framework via Temporal and Contextual Contrasting (TS-TCC), to learn time-series representation from unlabeled data. First, the raw time-series data are transformed into two different yet correlated views by using weak and strong augmentations. Second, we propose a novel temporal contrasting module to learn robust temporal representations by designing a tough cross-view prediction task. Last, to further learn discriminative representations, we propose a contextual contrasting module built upon the contexts from the temporal contrasting module. It attempts to maximize the similarity among different contexts of the same sample while minimizing similarity among contexts of different samples. Experiments have been carried out on three real-world time-series datasets. The results manifest that training a linear classifier on top of the features learned by our proposed TS-TCC performs comparably with the supervised training. Additionally, our proposed TS-TCC shows high efficiency in few- labeled data and transfer learning scenarios. The code is publicly available at this https URL.
What are some alternatives?
samples-python - Samples for working with the Temporal Python SDK
Revisiting-Contrastive-SSL - Revisiting Contrastive Methods for Unsupervised Learning of Visual Representations. [NeurIPS 2021]
pytorch-forecasting - Time series forecasting with PyTorch
eval_ssl_ssc - [TNSRE 2023] Self-supervised Learning for Label-Efficient Sleep Stage Classification: A Comprehensive Evaluation
documentation - Temporal documentation
fooof - Parameterizing neural power spectra into periodic & aperiodic components.
add-thin - This is the reference implementation of our NeurIPS 2023 paper "Add and Thin: Diffusion for Temporal Point Processes"
Awesome-SSL4TS - A professionally curated list of awesome resources (paper, code, data, etc.) on Self-Supervised Learning for Time Series (SSL4TS).
golfdb - GolfDB is a video database for Golf Swing Sequencing, which involves detecting 8 golf swing events in trimmed golf swing videos. This repo demos the baseline model, SwingNet.
transferlearning - Transfer learning / domain adaptation / domain generalization / multi-task learning etc. Papers, codes, datasets, applications, tutorials.-迁移学习
AdaTime - [TKDD 2023] AdaTime: A Benchmarking Suite for Domain Adaptation on Time Series Data
thesis - MSc thesis on: Classifying brain activity using EEG and automated time tracking of computer use (using ActivityWatch)