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Model Description

This model is a fine-tuned version of the Stable Diffusion model, specifically designed to generate images of "Happy," the representative character of Simbolo, an IT class in Myanmar. This project, collaboratively developed by four team members, aims to assist Simbolo's graphic designers in creating content. By using our model, designers can brainstorm ideas and work alongside AI to generate attractive designs for Simbolo's content, enhancing creativity and efficiency.

Bias, Risks, and Limitations

The model has been fine-tuned specifically for generating the "Happy" character. There may be biases related to the specific data used for training, and the model may not perform well for symbols outside its trained scope.

Recommendations

Users should be aware of the cultural significance of the character and ensure it is used respectfully. It's also important to understand the limitations of the model and verify the generated images for accuracy and appropriateness.

Training Details

Training Data

The model was trained on a dataset containing various representations of the "Happy" character. The data was preprocessed to ensure high-quality training samples.

Training Procedure

Preprocessing

Data was cleaned and standardized to maintain consistency across training samples.

Training Hyperparameters

  • Training regime: [fp32, fp16 mixed precision, etc.]
  • Batch size: [Batch size]
  • Learning rate: [Learning rate]
  • Epochs: [Number of epochs]

Speeds, Sizes, Times

  • Training time: [Training time]
  • Model size: [Model size]

Evaluation

Testing Data, Factors & Metrics Testing Data The model was evaluated on a separate dataset containing different representations of the "Happy" character.

Factors The evaluation considered factors such as accuracy, cultural relevance, and visual quality.

Metrics Accuracy: How accurately the generated images represent the intended character. Cultural relevance: Ensuring the generated images are culturally appropriate. Visual quality: The aesthetic quality of the generated images

Results

The model demonstrated high accuracy and visual quality in generating the "Happy" character, with a strong adherence to cultural relevance.

Summary

The fine-tuned model effectively generates high-quality images of the "Happy" character, making it a valuable tool for cultural preservation and creative applications.

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