GoMate
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Gomate
Overview :
GoMate is a model based on the Retrieval-Augmented Generation (RAG) framework, focused on delivering reliable input and trustworthy output. By combining retrieval and generation technologies, it enhances the accuracy and reliability of information retrieval and text generation. GoMate is suitable for fields requiring efficient and accurate information processing, such as natural language processing and question answering.
Target Users :
GoMate is suitable for developers, data scientists, and organizations, particularly those dealing with large volumes of text data and requiring reliable output. It saves time and improves efficiency by providing powerful text processing capabilities.
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Use Cases
In a question-answering system, utilize GoMate to provide fast and accurate answers to user questions.
In a content recommendation system, leverage GoMate to analyze user interests and recommend relevant documents.
In enterprise knowledge management, utilize GoMate's retrieval and generation capabilities to quickly find required information.
Features
Document Parsing: Utilize the TextParser module to parse documents and extract key information.
Vector Storage: Store document content as vectors using the VectorStore module.
Embedding Models: Employ embedding models such as BgeEmbedding to convert text into vector representations.
Question Answering: Based on user queries, use embedding models for vector search to find the most relevant documents.
Text Generation: Combine retrieved document content with generation models like GLMChat to generate answers.
Document Update: Support dynamically adding documents to update the model's retrieval and generation capabilities.
How to Use
1. Install the required Python environment and dependencies for GoMate.
2. Prepare text data and parse documents using the TextParser module.
3. Store parsed documents as vectors using the VectorStore module.
4. Select or train a suitable embedding model, such as BgeEmbedding.
5. Use the embedding model for vector search based on user-input questions.
6. Combine retrieved document content with a generation model to produce answers or output.
7. Adjust model parameters based on feedback to optimize output results.
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