The Seismology Benchmark collection (SeisBench) is an open-source python toolbox for machine learning in seismology. It provides a unified API for accessing seismic datasets and both training and applying machine learning algorithms to seismic data. SeisBench has been built to reduce the overhead when applying or developing machine learning techniques for seismological tasks.
SeisBench offers three core modules, data
, models
, and generate
.
data
provides access to benchmark datasets and offers functionality for loading datasets.
models
offers a collection of machine learning models for seismology.
You can easily create models, load pretrained models or train models on any dataset.
generate
contains tools for building data generation pipelines.
They bridge the gap between data
and models
.
The easiest way of getting started is through our colab notebooks.
Alternatively, you can clone the repository and run the same examples locally.
For more detailed information on Seisbench check out the SeisBench documentation.
SeisBench can be installed in two ways. In both cases, you might consider installing SeisBench in a virtual environment, for example using conda.
The recommended way is installation through pip. Simply run:
pip install seisbench
Alternatively, you can install the latest version from source. For this approach, clone the repository, switch to the repository root and run:
pip install .
which will install SeisBench in your current python environment.
SeisBench is built on pytorch, which in turn runs on CUDA for GPU acceleration. Sometimes, it might be preferable to install pytorch without CUDA, for example, because CUDA will not be used and the CUDA binaries are rather large. To install such a pure CPU version, the easiest way is to follow a two-step installation. First, install pytorch in a pure CPU version as explained here. Second, install SeisBench the regular way through pip. Example instructions would be:
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cpu
pip install seisbench
There are many ways to contribute to SeisBench and we are always looking forward to your contributions. Check out the contribution guidelines for details on how to contribute.
- Some institutions and internet providers are blocking access to our data and model repository, as it is running on a non-standard port (2880).
This usually manifests in timeouts when trying to download data or model weights.
To verify the issue, try accessing https://hifis-storage.desy.de:2880/ directly from the same machine.
As a mitigation, you can use our backup repository. Just run
seisbench.use_backup_repository()
. Please note that the backup repository will usually show lower download speeds. We recommend contacting your network administrator to allow outgoing access to TCP port 2880 on our server as a higher performance solution. - We've recently changed the URL of the SeisBench repository. To use the new URL update to SeisBench 0.4.1.
It this is not possible, you can use the following commands within your runtime to update the URL manually:
import seisbench from urllib.parse import urljoin seisbench.remote_root = "https://hifis-storage.desy.de:2880/Helmholtz/HelmholtzAI/SeisBench/" seisbench.remote_data_root = urljoin(seisbench.remote_root, "datasets/") seisbench.remote_model_root = urljoin(seisbench.remote_root, "models/v3/")
- On the Apple M1 and M2 chips, pytorch seems to not always work when installed directly within
pip install seisbench
. As a workaround, follow the instructions at (https://pytorch.org/) to install pytorch and then install SeisBench as usual through pip. - EQTransformer model weights "original" in version 1 and 2 are incompatible with SeisBench >=0.2.3. Simply use
from_pretrained("original", version="3")
orfrom_pretrained("original", update=True)
. The weights will not differ in their predictions.
Reference publications for SeisBench:
-
SeisBench - A Toolbox for Machine Learning in Seismology
Reference publication for software.
-
Which picker fits my data? A quantitative evaluation of deep learning based seismic pickers
Example of in-depth bencharking study of deep learning-based picking routines using the SeisBench framework.
The initial version of SeisBench has been developed at GFZ Potsdam and KIT with funding from Helmholtz AI. The SeisBench repository is hosted by HIFIS - Helmholtz Federated IT Services.