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Visual PDF Reader: ColPALI for RAG #ai
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My new video describes a novel document retrieval framework, ColPali, that leverages advancements in Vision Language Models (VLMs) to efficiently index and retrieve visually rich documents based solely on their image representations. Multi-modal retriever. Remember the R in RAG stands for Retrieval.
After SpreadsheetLLM and ChartGemma now a Vision-Language based Retriever, without OCR. ColPali can index complex visual information and data from figures, charts, tables and other visual objects.
This new architecture, developed to address the shortcomings of text-centric retrieval systems, utilizes the capabilities of VLMs to generate high-quality contextualized embeddings from document images. By adopting a late interaction matching mechanism, ColPali significantly outperforms traditional document retrieval systems in both speed and accuracy, providing a more holistic approach to understanding and retrieving document content that includes textual and visual information.
ColPali introduces a methodological shift in document retrieval by incorporating a bi-encoder setup where separate encoders process the visual and textual content of documents. This setup is particularly effective in handling the complexities of visually rich documents, such as those containing detailed diagrams, tables, or varying fonts, which are typically challenging for standard text-based retrieval systems. The ColPali model is end-to-end trainable, which optimizes the system's efficiency by allowing for direct learning from the visual features of document images without the need for extensive pre-processing or manual feature extraction. This training approach not only simplifies the retrieval process but also enhances the system's ability to make nuanced distinctions between documents based on visual cues.
Moreover, ColPali's performance is rigorously evaluated against a new benchmark, ViDoRe (Visual Document Retrieval Benchmark), which is specifically designed to test the effectiveness of document retrieval systems on a page-level across multiple domains and languages. The benchmark highlights the model's superior performance across diverse retrieval tasks, showcasing its ability to handle different document types and complexity levels effectively. This comprehensive evaluation not only demonstrates ColPali's practical applicability in various industrial settings but also sets a new standard for future developments in document retrieval technologies, emphasizing the importance of integrating visual features into retrieval systems to better mirror human document interaction and understanding.
All rights w/ authors:
ColPali: Efficient Document Retrieval with Vision Language Models
#airesearch
#newtechnology
#science
After SpreadsheetLLM and ChartGemma now a Vision-Language based Retriever, without OCR. ColPali can index complex visual information and data from figures, charts, tables and other visual objects.
This new architecture, developed to address the shortcomings of text-centric retrieval systems, utilizes the capabilities of VLMs to generate high-quality contextualized embeddings from document images. By adopting a late interaction matching mechanism, ColPali significantly outperforms traditional document retrieval systems in both speed and accuracy, providing a more holistic approach to understanding and retrieving document content that includes textual and visual information.
ColPali introduces a methodological shift in document retrieval by incorporating a bi-encoder setup where separate encoders process the visual and textual content of documents. This setup is particularly effective in handling the complexities of visually rich documents, such as those containing detailed diagrams, tables, or varying fonts, which are typically challenging for standard text-based retrieval systems. The ColPali model is end-to-end trainable, which optimizes the system's efficiency by allowing for direct learning from the visual features of document images without the need for extensive pre-processing or manual feature extraction. This training approach not only simplifies the retrieval process but also enhances the system's ability to make nuanced distinctions between documents based on visual cues.
Moreover, ColPali's performance is rigorously evaluated against a new benchmark, ViDoRe (Visual Document Retrieval Benchmark), which is specifically designed to test the effectiveness of document retrieval systems on a page-level across multiple domains and languages. The benchmark highlights the model's superior performance across diverse retrieval tasks, showcasing its ability to handle different document types and complexity levels effectively. This comprehensive evaluation not only demonstrates ColPali's practical applicability in various industrial settings but also sets a new standard for future developments in document retrieval technologies, emphasizing the importance of integrating visual features into retrieval systems to better mirror human document interaction and understanding.
All rights w/ authors:
ColPali: Efficient Document Retrieval with Vision Language Models
#airesearch
#newtechnology
#science
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