# import gradio as gr # import pandas as pd # df = pd.read_csv('FuseReviews_leaderboard.csv') # headline = """# FuseReviews Leaderboard # When submitting your results to the leaderboard, please make sure it is in a csv file with a single column "predictions". Make sure the predictions align to the testset order. Please send your predictions to [this mail](mailto:lovodkin93@gmail.com). # Please include in your email 1) a name for your model, 2) your team name (including your affiliation), and optionally, 3) a github repo or paper link. # """ # demo = gr.Blocks() # with demo: # with gr.Row(): # gr.Markdown(headline) # with gr.Column(): # leaderboard_df = gr.components.DataFrame( # value=df, # datatype=["markdown", "number", "number", "number"] # ) # demo.launch() import gradio as gr import pandas as pd # df = pd.read_table("visit_bench_leaderboard.tsv") df = pd.read_table('visitbench_leaderboard_Single~Image_Nov072023.tsv') headline = """# VisIT-Bench Leaderboard To submit your results to the leaderboard, you can run our auto-evaluation code, following the instructions [here](https://github.com/Hritikbansal/visit_bench_sandbox). Once you are happy with the results, you can send to [this mail](mailto:yonatanbitton1@gmail.com). Please include in your email 1) a name for your model, 2) your team name (including your affiliation), and optionally, 3) a github repo or paper link. Please also attach your predictions: you can add a "predictions" column to [this csv](https://huggingface.co/datasets/mlfoundations/VisIT-Bench/raw/main/test/metadata.csv). """ demo = gr.Blocks() with demo: with gr.Row(): gr.Markdown(headline) with gr.Column(): leaderboard_df = gr.components.DataFrame( value=df, datatype=["markdown", "markdown", "number", "number", "number"] ) demo.launch()