Scaling Major Language Models for Real-World Impact
Deploying large language models (LLMs) efficiently to address real-world challenges requires careful consideration of scaling strategies. While increasing model size and training data can often lead to performance improvements, it's crucial to also fine-tune model architectures for specific tasks and domains. Furthermore, exploiting the power of di