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Data

docs/Data.md

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Data

Data file nameSize
llava_instruct_150k.json229 MB
llava_instruct_80k.json229 MB
conversation_58k.json126 MB
detail_23k.json20.5 MB
complex_reasoning_77k.json79.6 MB

Pretraining Dataset

The pretraining dataset used in this release is a subset of CC-3M dataset, filtered with a more balanced concept coverage distribution. Please see here for a detailed description of the dataset structure and how to download the images.

If you already have CC-3M dataset on your disk, the image names follow this format: GCC_train_000000000.jpg. You may edit the image field correspondingly if necessary.

DataChat FileMeta DataSize
CC-3M Concept-balanced 595Kchat.jsonmetadata.json211 MB
LAION/CC/SBU BLIP-Caption Concept-balanced 558Kblip_laion_cc_sbu_558k.jsonmetadata.json181 MB

Important notice: Upon the request from the community, as ~15% images of the original CC-3M dataset are no longer accessible, we upload images.zip for better reproducing our work in research community. It must not be used for any other purposes. The use of these images must comply with the CC-3M license. This may be taken down at any time when requested by the original CC-3M dataset owner or owners of the referenced images.

GPT-4 Prompts

We provide our prompts and few-shot samples for GPT-4 queries, to better facilitate research in this domain. Please check out the prompts folder for three kinds of questions: conversation, detail description, and complex reasoning.

They are organized in a format of system_message.txt for system message, pairs of abc_caps.txt for few-shot sample user input, and abc_conv.txt for few-shot sample reference output.

Note that you may find them in different format. For example, conversation is in jsonl, and detail description is answer-only. The selected format in our preliminary experiments works slightly better than a limited set of alternatives that we tried: jsonl, more natural format, answer-only. If interested, you may try other variants or conduct more careful study in this. Contributions are welcomed!