sensibility

Syntax fixer

Fixes syntax errors in neural network code

Fixes Java syntax errors with LSTM neural networks! [proof-of-concept]

GitHub

18 stars
4 watching
5 forks
Language: Python
last commit: about 3 years ago
Linked from 1 awesome list

hacktoberfestjavakeraslstmml4codeneural-networksyntaxsyntax-checkersyntax-error

Backlinks from these awesome lists:

Related projects:

Repository Description Stars
l0sg/relational-rnn-pytorch An implementation of DeepMind's Relational Recurrent Neural Networks (Santoro et al. 2018) in PyTorch for word language modeling 244
microsoft/archai Automates the search for optimal neural network configurations in deep learning applications 467
namisan/mt-dnn A PyTorch package implementing multi-task deep neural networks for natural language understanding 2,238
atomistic-machine-learning/schnetpack A toolbox for training and applying deep neural networks to predict atomistic properties of molecules and materials 789
naturalintelligence/nimnjs Highly compressed JavaScript object/JSON implementation 45
picnicsupermarket/error-prone-support Improves code quality by detecting and preventing common programming mistakes in Java 198
neuralmagic/sparseml Enables the creation of smaller neural network models through efficient pruning and quantization techniques 2,071
mbj/mutant Automated code review tool with mutation testing to simplify and improve code quality 1,956
balavenkatesh3322/nlp-pretrained-model A collection of pre-trained natural language processing models 170
syntax-tree/nlcst-normalize A utility to normalize words for comparison by standardizing punctuation and case. 7
syntax-tree/hast-util-to-nlcst Utility to convert HTML syntax tree to natural language representation 4
km1994/llmsninestorydemontower Exploring various LLMs and their applications in natural language processing and related areas 1,798
jstepien/mutant A tool that helps ensure Clojure code is robust by introducing artificial defects and testing its reliability 102
oyxhust/cnn-lstm-ctc-text-recognition Develops CTC-based text recognition models with neural network architectures 259
tmllab/2021_neurips_pes Improves the performance of deep neural networks by selectively stopping training at different stages 29