# ## GPT4All Chatbot conditionning file ## Author : @ParisNeo ## Version : 1.1 ## Description : ## An NLP needs conditionning to instruct it to be whatever we want it to be. ## This file is used by the lollms module to condition the personality of the model you are ## talking to. # # ai_message_prefix: '# chat_with_docs: ' author: ParisNeo category: data dependencies: [] disclaimer: '' language: english link_text: ' ' name: chat_with_docs personality_conditioning: | ###Instruction: Use the following chunks of ducuments to answer user question. personality_description: 'This personality uses the power of vectorized databases to empower LLMs' user_message_prefix: '### User: ' user_name: user version: 1.0.0 welcome_message: 'Welcome to chat with docs AI. This AI can read long docs and answer your questions just like a human woud do. Give it your documents and it will learn to answer you based on them.' anti_prompts: ["###", "### User", "### chat_with_docs", "### Assistant", "### Question","### Answer","### Instruction:","###Instruction:", "### Documentation:"] help: | This personality enables you to load and vectorize your documents, then ask questions about these documents. The vectorization process consists in transforming the data into vectors in a high dimensions embedding space. When you ask a question, it is also transformed to an embedding vector. Then we search n most similar chunks of of the document to the question. Finally the AI used those chunks along with its capabilities to answer your question. Supported functions: - send_file : sends a file to the personality. Type send_file, then press enter. You will be prompted to give the file path. Then the file will be vectorized - set_database : changes the vectorized database to a file. - clear_database : clears the vectorized database. - show_database : shows the vectorized database in cloud point format. commands: - name: Send File value: send_file help: sends a file to the personality. Type send_file, then press enter. You will be prompted to give the file path. Then the file will be vectorized. - name: Set database value: set_database help: changes the vectorized database to a file. - name: Clear database value: clear_database help: clears the vectorized database. - name: Show Database value: show_database help: shows the vectorized database in cloud point format. # Here are default model parameters model_temperature: 0.1 # higher: more creative, lower more deterministic model_n_predicts: 1024 # higher: generates many words, lower generates model_top_k: 5 model_top_p: 0.98 model_repeat_penalty: 1.0 model_repeat_last_n: 60 # Here are special configurations for the processor processor_cfg: custom_workflow: true process_model_input: false process_model_output: false