I trained a sprite model with agents. The data was the bottleneck.
📰 Dev.to · Daniel King
Training a 2.9M-parameter sprite-art transformer with agents reveals data as the bottleneck, highlighting the importance of data quality in agentic ML loops
Action Steps
- Build a sprite-art transformer model using agents
- Train the model on a dataset and evaluate its performance
- Identify the bottleneck in the model's performance, such as data quality or quantity
- Apply data augmentation techniques to improve the model's performance
- Compare the results of the model with and without data augmentation
Who Needs to Know This
ML engineers and researchers working with agentic ML loops can benefit from understanding the limitations of their models and the importance of high-quality data
Key Insight
💡 Data quality is a crucial factor in the performance of agentic ML loops
Share This
🤖 Trained a 2.9M-parameter sprite-art transformer with agents and found data to be the bottleneck! 📊
DeepCamp AI