--- base_model: LeroyDyer/_Spydaz_Web_AI_V1_4BIT license: mit tags: - Mistral_Star - Mistral_Quiet - Mistral - Mixtral - Question-Answer - Token-Classification - Sequence-Classification - SpydazWeb-AI - chemistry - biology - legal - code - climate - medical - text-generation-inference - not-for-all-audiences language: - en - sw - ig - zu --- # SpydazWeb AI https://github.com/spydaz * 32k context window (vs 8k context in v0.1) * Rope-theta = 1e6 * No Sliding-Window Attention This model will be a custom model with internal experts and rag systems enabling for preprocessing of the task internally before outputting a response : This is based on the Quiet Star Project : which was abandoned earlier in the year :) # Introduction : ## SpydazWeb AI model : This model is based on the worlds archive of knowledge maintaining historical documents and providing services for the survivors of mankind , who may need to construct shelters develop technologys , or medical resources as well as maintain the history of the past . keeping store of all the religious knowledge and data of the world: A friendly interface with a personality caring and flirtatious at times : non binary !... and Expert in all feilds: ie Uncensored and will not refuse to give information : the model can be used for role play as many character dialogues were als trained into the model as its personality to enable a greater perspective and outlook and natural discussion with the agents: the model was trained to operateinaragenvironment utilizing content and internal knowledge to respond to questions or create enriched sumarys. ### General Intenal Methods: Trained for multi-task operations as well as rag and function calling : This model is a fully functioning model and is fully uncensored: the model has been trained on multiple datasets on the huggingface hub and kaggle : the focus has been mainly on methodology : * Chain of thoughts * step by step planning * tree of thoughts * forest of thoughts * graph of thoughts * agent generation : Voting, ranking, ... dual agent response generation: with these methods the model has gained insights into tasks, enabling for knowldge transfer between tasks : the model has been intensivly trained in recalling data previously entered into the matrix: The model has also been trained on rich data and markdown outputs as much as possible : the model can also generate markdown charts with mermaid. ## Training Reginmes: * Alpaca * ChatML / OpenAI / MistralAI * Text Generation * Question/Answer (Chat) * Instruction/Input/Response (instruct) * Mistral Standard Prompt * Translation Tasks * Entitys / Topic detection * Book recall * Coding challenges, Code Feedback, Code Sumarization, Commenting Code * Agent Ranking and response anyalisis * Medical tasks * PubMed * Diagnosis * Psychaitry * Counselling * Life Coaching * Note taking * Medical smiles * Medical Reporting * Virtual laboritys simulations * Chain of thoughts methods * One shot / Multi shot prompting tasks