Citation and Milestones ======================= Citing PyPOTS ^^^^^^^^^^^^^ **[Updates in Jun 2023]** πŸŽ‰A short version of the PyPOTS paper is accepted by the 9th SIGKDD international workshop on Mining and Learning from Time Series (`MiLeTS'23 `_). Besides, PyPOTS has been included as a `PyTorch Ecosystem `_ project. PyPOTS paper is available on arXiv at `this URL `_., and we are pursuing to publish it in prestigious academic venues, e.g. JMLR (track for `Machine Learning Open Source Software `_). If you use PyPOTS in your work, please cite it as below and 🌟star `PyPOTS repository `_ to make others notice this library. πŸ€— .. code-block:: bibtex :linenos: @article{du2023pypots, title={{PyPOTS: a Python toolbox for data mining on Partially-Observed Time Series}}, author={Wenjie Du}, journal={arXiv preprint arXiv:2305.18811}, year={2023}, } or Wenjie Du. (2023). PyPOTS: A Python Toolbox for Data Mining on Partially-Observed Time Series. arXiv, abs/2305.18811. https://doi.org/10.48550/arXiv.2305.18811 Research Projects Using PyPOTS """""""""""""""""""""""""""""" There are scientific research projects using PyPOTS and referencing in their papers. Here is `an incomplete list of them `_. Project Milestones ^^^^^^^^^^^^^^^^^^ - 2022-03: `PyPOTS project `_ is initiated; - 2022-04: PyPOTS v0.0.1 is released; - 2022-09: PyPOTS achieves its first 100 stars ⭐️ on GitHub; - 2023-03: PyPOTS is `published on Conda-Forge `_, and users can install it via Anaconda; - 2023-04: `PyPOTS website `_ is launched, and PyPOTS achieves its first 10K downloads on PyPI; - 2023-05: PyPOTS v0.1 is released, and `the preprint paper `_ is published on arXiv; - 2023-06: A short version of PyPOTS paper is accepted by the 9th SIGKDD International Workshop on Mining and Learning from Time Series (`MiLeTS'23 `_); - 2023-07: PyPOTS has been accepted as a `PyTorch Ecosystem `_ project; - 2023-12: PyPOTS achieves its first 500 stars 🌟; - 2024-02: PyPOTS Research releases its imputation survey paper `Deep Learning for Multivariate Time Series Imputation: A Survey `_; - 2024-06: PyPOTS Research releases the 1st comprehensive time-series imputation benchmark paper `TSI-Bench: Benchmarking Time Series Imputation `_; - 2024-07: PyPOTS achieves its first 300,000 downloads in total; - 2024-08: We present the keynote "Learning from Partially Observed Time Series: Towards Reality-Centric AI4TS" `IJCAI'24 AI4TS workshop `_;