razorback

MT processor

Provides robust processing methods for magnetotelluric data

An open source python library for magnetotelluric robust processing.

GitHub

41 stars
9 watching
16 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list

magnetotelluricmtrobust

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
mtgeophysics/mtpy A Python toolbox for analyzing and visualizing magnetotelluric data 147
vchahun/teny Tools and techniques for improving machine translation in resource-constrained environments. 3
cornell-brg/lizard A modular RISC-V processor design built with Python 84
robmarkcole/bme680-mqtt-micropython Publishes sensor data over MQTT using Micropython 15
mrpt/mrpt A comprehensive C++ toolkit for mobile robotics and computer vision applications, providing algorithms and data structures for SLAM, motion estimation, image processing, and more. 1,955
localminimum/qanet An implementation of Google's QANet for machine reading comprehension using TensorFlow. 983
m6c7l/pymmw A Pythonic toolbox for interacting with TI's mmWave radar sensors 285
mhkit-software/mhkit-python Provides tools and functionality for data processing and visualization in marine renewable energy applications. 51
bloodaxe/pytorch-toolbelt A comprehensive Python library with PyTorch extensions for rapid prototyping and machine learning model development. 1,520
jgm/texmath A Haskell library for converting between various markup formats used to represent mathematics. 322
xtra-computing/thundergbm Accelerates machine learning algorithms on GPUs to improve performance and efficiency 693
gentlegiantjgc/pymctranslate Enables data translation between Minecraft versions and platforms via an intermediate format. 27
neulab/compare-mt A tool for comparing the performance of different language generation systems. 467
sinanozaydin/mate An interpretive software tool that analyzes magnetotelluric models of the mantle 24
mstksg/backprop A Haskell library providing automatic heterogeneous back-propagation for differentiable programming and deep learning applications. 181