Bangla_Datasets_ABSA

Bangla dataset collections

A collection of pre-processed datasets in Bangla language for natural language processing tasks

GitHub

0 stars
2 watching
0 forks
last commit: over 6 years ago

Related projects:

Repository Description Stars
karthikncode/nlp-datasets A curated list of Natural Language Processing datasets used to train and evaluate NLP models. 919
mirfan899/urdu A collection of Urdu language datasets for various NLP tasks and applications 71
louisowen6/nlp_bahasa_resources A curated collection of NLP datasets and resources for Bahasa Indonesia 489
lantip/baku-tidak-baku A repository of linguistic data for Indonesian words categorized as either standard or non-standard 29
aitutorials/datasets A comprehensive collection of datasets from various AI-related sources worldwide. 46
anbani/anbani.db A collection of datasets and tools for working with the Georgian language 12
matbahasa/talpco A parallel corpus of Asian languages with linguistic annotations and data formats for natural language processing research. 49
famrashel/idn-tagged-corpus A manually tagged Indonesian language corpus in tab-separated file format 88
athul/athul Personal blog and professional projects about programming languages, development workflows, and personal experiences. 72
eaglew/acl_titles_abstracts_dataset A dataset of title and abstract pairs from the ACL Anthology Network, used to train language generation models. 19
devikabhapkar/uses A personal repository documenting daily usage software, hardware, tools and technologies. 0
dayyass/dayyass A collection of libraries and tools for natural language processing and reinforcement learning. 39
famrashel/idn-treebank A manually tagged Indonesian corpus consisting of parse-trees from sentences. 36
acl2017submission/event-data An annotated dataset of event instances and their corresponding arguments for natural language processing tasks. 45
bikash/documentunderstanding Research and development of tools and techniques for extracting information from images and PDFs using deep learning and graph neural networks. 96