Category: Model Training & Tuning

Dynamic Prompt Tuning

Dynamic prompt tuning is a technique used to improve the responses of artificial intelligence language models by adjusting the instructions or prompts given to them. Instead of using a fixed prompt, the system can automatically modify or optimise the prompt based on context, user feedback, or previous interactions. This helps the AI generate more accurate…

Parameter-Efficient Fine-Tuning

Parameter-efficient fine-tuning is a machine learning technique that adapts large pre-trained models to new tasks or data by modifying only a small portion of their internal parameters. Instead of retraining the entire model, this approach updates selected components, which makes the process faster and less resource-intensive. This method is especially useful when working with very…

Hyperparameter Optimisation

Hyperparameter optimisation is the process of finding the best settings for a machine learning model to improve its performance. These settings, called hyperparameters, are not learned from the data but chosen before training begins. By carefully selecting these values, the model can make more accurate predictions and avoid problems like overfitting or underfitting.