Visual TL;DR. LLM Data Bottleneck leads to Inadequate Refinement. Inadequate Refinement solves with UltraX Framework. UltraX Framework uses Function-Calling Editing. Function-Calling Editing enables Superior Performance. UltraX Framework drives Data Efficiency. UltraX Framework ensures Unmatched Reliability. Superior Performance results in Accelerated Progress. Data Efficiency contributes to Accelerated Progress.
- LLM Data Bottleneck: diminishing returns from scaling laws forcing re-evaluation of LLM building
- Inadequate Refinement: existing methods rigid rule-based or resource-intensive, lacking scale and precision
- UltraX Framework: redefines editing function space with 'insertion' for instance-level editing
- Function-Calling Editing: introduces function-calling for fine-grained editing, moving beyond simple deletion
- Superior Performance: achieves superior performance with fewer training tokens for LLMs
- Data Efficiency: leverages higher-quality data more effectively for future LLM gains
- Unmatched Reliability: designed for large-scale pre-training data, offering unparalleled consistency
- Accelerated Progress: improves pre-training efficiency and raises the ceiling of model performance
Visual TL;DR
