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tags: |
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- RUDOLPH |
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- text-image |
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- image-text |
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- decoder |
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--- |
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# RUDOLPH-1.3B (Large) |
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RUDOLPH: One Hyper-Tasking Transformer Can be Creative as DALL-E and GPT-3 and Smart as CLIP |
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<img src="https://raw.githubusercontent.com/sberbank-ai/ru-dolph/master/pics/RUDOLPH.png" width=60% border="2"/> |
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Model was trained by [Sber AI](https://github.com/sberbank-ai) team. |
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# Model Description |
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**RU**ssian **D**ecoder **O**n **L**anguage **P**icture **H**yper-tasking (**RUDOLPH**) **1.3B** is a large text-image-text transformer designed for an easy fine-tuning for a range of tasks: from generating images by text description and image classification to visual question answering and more. This model demonstrates the power of Hyper-tasking Transformers. |
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*Hyper-tasking model is a generalized multi-tasking model, i.e., the model that can solve almost all tasks within supported modalities, mandatory including mutual pairwise translations between modalities (two modalities in case of RUDOLPH: images and Russian texts).* |
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* Tasks: ` text2image generation, self reranking, text ranking, image ranking, image2text generation, zero-shot image classification, text2text generation, text-qa, math-qa, image captioning, image generation, text-in-the-wild, vqa, and so on` |
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* Language: ` Russian` |
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* Type: ` decoder` |
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* Num Parameters: ` 1.3B` |
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* Training Data Volume: ` 119 million text-image pairs, 60 million text paragraphs` |
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# Details of architecture |
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<img src=https://raw.githubusercontent.com/ai-forever/ru-dolph/master/pics/scheme-rudolph_13b.jpg height="20" border="2"/> |
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The maximum sequence length that this model may be used with depends on the modality and stands for 128 - 1024 - 128 for the left text tokens, image tokens, and right text tokens, respectively. |
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RUDOLPH 1.3B is a Transformer-based decoder model with the following parameters: |
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* num\_layers (24) β Number of hidden layers in the Transformer decoder. |
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* hidden\_size (2048) β Dimensionality of the hidden layers. |
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* num\_attention\_heads (16) β Number of attention heads for each attention layer. |
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# Sparse Attention Mask |
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The primary proposed method is to modify the sparse transformer's attention mask to better control multi-modalities and up to the next level with "hyper-modality". It allows us to calculate the transitions of modalities in both directions, unlike another similar work DALL-E Transformer, which used only one direction, "text to image". The proposed "image to right text" direction is achieved by extension sparse attention mask to the right for auto-repressively text generation with both image and left text condition. |
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<img src="https://raw.githubusercontent.com/lizagonch/ru-dolph/develop_v1/pics/attention_masks_1300m.png" height="20" border="2"/> |
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# Authors |
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+ Alex Shonenkov: [Github](https://github.com/shonenkov), [Kaggle GM](https://www.kaggle.com/shonenkov) |