Model Type | |
Use Cases |
Areas: | chatbots, virtual assistants, customer service applications |
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Applications: | text-based and voice-based interfaces |
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Primary Use Cases: | Generating Conversational Responses |
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Limitations: | Limited training time on a weak computer, Produces irrelevant or nonsensical responses, Not fine-tuned to remember chat history, Unable to provide follow-up responses, Does not know the answer to many questions |
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Additional Notes | Model is deprecated; a better performing version is available. |
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Supported Languages | |
Training Details |
Data Sources: | Locutusque/ColumnedChatCombined, crumb/Clean-Instruct-440k |
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Data Volume: | |
Methodology: | Fine-tuned using maximum likelihood estimation |
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Training Time: | |
Hardware Used: | |
Model Architecture: | Transformer-based, multi-layered decoder-only with self-attention mechanisms. |
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Input Output |
Input Format: | <|USER|> {user prompt} <|ASSISTANT|> |
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Accepted Modalities: | |
Output Format: | <|USER|> {dataset prompt} <|ASSISTANT|> {dataset output} |
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