--- language: - fr - bm multilinguality: - multilingual task_categories: - translation --- > [!NOTE] > Dataset origin: https://www.kaggle.com/datasets/ozaresearch1/bambara-french-parallel-dataset ## Introduction Bambara, also called Bamanankan or Bamana, is a language widely used as a vehicular and commercial language in West Africa and one of the national languages of Mali. Being member of the Mande language family, it is part of the main group in number of speakers, namely the Mandingo language group. This group includes, in addition to Bambara, Dioula in Côte d’Ivoire and Burkina Faso, Mandinka in Senegal and Gambia, as well as the Maninka from Guinea. According to Worlddata, Bambara is not an official language in any of these countries, however is spoken as mother tongue by a minor part of the population. It is most widespread in Mali with a share of around 46% among citizens. For instance, a total of about 15.0 million people worldwide speak Bambara as their mother tongue. ## Overview The Bambara-French Parallel Dataset is a comprehensive resource designed for a wide array of machine learning projects that require parallel text data, including but not limited to translation, text-to-text generation, and linguistic analysis. This dataset features a collection of 46,976 aligned sentences, making it an invaluable tool for researchers and developers working on language models, especially those focusing on Bambara and French language pairings. ## Data Sources The sentences in this dataset have been meticulously compiled from the Corpus Bambara de Reference, encompassing a diverse array of sources including periodicals, books, short stories, blog posts, and select passages from religious texts such as the Bible and the Quran. The texts cover a broad range of topics, offering rich linguistic diversity for training and testing machine learning models. ## Source Repository The source files for the dataset, including text.bam and text.fr, were obtained from the following GitHub repository: [RobotsMali-AI Datasets](https://github.com/RobotsMali-AI/datasets/tree/master). These files were instrumental in constructing the parallel dataset by meticulously mapping each line to its corresponding translation.