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metadata
language:
  - zh
  - ne
  - uk
  - ja
  - zu
  - ku
  - ig
  - mg
  - fi
  - si
  - id
  - sw
  - ar
  - sv
  - ru
  - yo
  - en
  - ht
  - kn
  - ta
  - te
  - sq
  - mr
  - am
  - wo
  - it
  - tr
  - ha
  - pl
  - el
  - lt
  - ms
  - jv
  - sn
  - ml
  - ps
  - ky
  - es
  - ga
  - gu
  - ko
  - vi
  - sd
  - fa
  - nl
  - hu
  - so
  - pa
  - bn
  - pt
  - da
  - hi
  - eu
  - de
  - ur
  - su
  - xh
  - fr
license: cc-by-nc-sa-4.0
task_categories:
  - text-generation
dataset_info:
  - config_name: seed_data
    splits:
      - name: train
        num_examples: 13686
  - config_name: seed_evol_data
    splits:
      - name: train
        num_examples: 102423
  - config_name: full_data
    splits:
      - name: train
        num_examples: 173672
configs:
  - config_name: seed_data
    data_files: seed_data.parquet
  - config_name: seed_evol_data
    data_files: seed_evol_data.parquet
  - config_name: full_data
    data_files: full_data.parquet

M2Lingual

A Multi-turn Multilingual dataset for Instruction Fine-tuning LLMs - Paper

Code: https://github.com/ServiceNow/M2Lingual

Dataset Summary

The M2Lingual dataset is a comprehensive multi-turn multilingual resource designed to facilitate research and development in conversational AI. It encompasses a wide range of conversation scenarios across multiple languages, making it an invaluable asset for training, evaluating, and benchmarking conversational models. The dataset includes diverse tasks such as question answering, task completion, summarization and more. Each entry is annotated with information about the conversation's evolution, including task Evol type, multi-turn Evol type, prompts, and the number of turns. The M2Lingual dataset aims to bridge the gap in multi-turn multilingual conversational data, providing a robust foundation for building more inclusive and effective AI systems that can understand and engage in human-like conversations across languages.

Here is a walkthrough example conversation, the first step involves selecting seeds, the second step evolves the seed sample, and the third step sets a multi-turn evolution which leads to a diverse multi-turn multilingual dataset: Walkthrough for dataset creation

Dataset Instances

Here is an example conversation:

{ 

    "id": 8605, 

    "conversation": [ 

        { 

            "role": "user", 

            "content": "Formulate an answer to this elaborate question: Identify the base location of the regional airline for which Jim French served as the former chairman and CEO, and explain the significance of this location in the context of the airline's regional operations." 

        }, 

        { 

            "role": "assistant", 

            "content": "Jim French served as the former chairman and CEO of Flybe, a British regional airline. The base location of Flybe was Exeter International Airport in Devon, England. 

The significance of Exeter International Airport as the base location for Flybe lies in its strategic positioning within the United Kingdom. Exeter is situated in the southwest region of England, which allowed Flybe to efficiently connect various regional destinations across the UK and Europe. This location provided a central hub for operations, facilitating shorter flight routes and quick turnaround times, which are essential for regional airlines aiming to offer frequent and reliable services. Additionally, having a base in Exeter helped Flybe tap into a market with fewer competing airlines, allowing it to establish a strong regional presence and foster economic growth within the southwest of England by improving connectivity and accessibility." 

        },