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Fixed README
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README.md
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# New data model
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The new model is constructed by taking individual json files in data/new_eval, combining them together into
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a simple format, and from the combined df, we create individual files for each models.
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For the new eval runs which has to be appended, we first analyze the model associated with the json file
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produced from eval harness, select the corresponding model file to append, find the unique rows (unique configuration
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of model name, language, task group and few shot) in the json file, append if unique rows are not 0.
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---
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title: Leaderboard
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emoji: π
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license: unknown
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# Introduction
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This is the OpenGPT-X mutlilingual leaderboard source code repository.
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The leaderboard aims to provied an overview of LLM performance over various languages.
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The basic task set consists of MMLU, ARC, HellaSwag, GSM8k, TruthfulQA and belebele.
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To make the results comparable to the Open LLM leaderboard (https://huggingface.co/open-llm-leaderboard) we selected the former five tasks based on our internal machine translations of the English base tasks, in addition to the high-quality multilingual benchmark belebele by Meta.
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# Usage
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The actually hosted leaderboard can be found under https://huggingface.co/spaces/openGPT-X/leaderboard.
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In order to extend its functionality please create a PR.
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# Adding new tasks
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In order to add new evaluation tasks proceed as follows:
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1. Add task information to `TASK_INFO` in `src/data.py`. It should be a dict mapping the task display name to the metric to be shown, as well as a dict containing mappings from two-letter language codes to the corresponding lm-eval-harness task selection string. See existing task information for reference.
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2. Add evaluation results as detailed below.
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# Adding new models
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It is possible to change the display name of a particular model.
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Simply add an entry to `_MODEL_NAMES` in `src/data.py`.
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# Adding evaluation results
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Copy the `.json`-output generated by the lm-eval-harness into `data`.
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---
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title: Leaderboard
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emoji: π
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license: unknown
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---
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This is the OpenGPT-X mutlilingual leaderboard source code repository.
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The leaderboard aims to provied an overview of LLM performance over various languages.
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The basic task set consists of MMLU, ARC, HellaSwag, GSM8k, TruthfulQA and belebele.
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To make the results comparable to the Open LLM leaderboard (https://huggingface.co/open-llm-leaderboard) we selected the former five tasks based on our internal machine translations of the English base tasks, in addition to the high-quality multilingual benchmark belebele by Meta.
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