AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
Fine-Tuning: A Tool for Specific Needs
Fine-tuning machine learning models is not universally necessary, particularly for beginners. Most users should initially utilize off-the-shelf models like those offered by OpenAI or Anthropic to avoid getting distracted by fine-tuning processes. Fine-tuning should only be pursued when there is a clear necessity, such as when an existing model does not meet specific demands or performance expectations within a given domain. It's essential to have a defined failure mode that fine-tuning is intended to address, ensuring that the effort is justified and leads to meaningful improvements.