metadata
license: apache-2.0
language:
- en
base_model:
- FlameF0X/i3-BERT
pipeline_tag: fill-mask
i3-BERT: Hybrid RWKV-Transformer for Efficient Pre-training
A novel hybrid language model architecture combining the efficiency of RWKV's linear attention with the global reasoning capabilities of standard transformers, designed for BERT-style masked language modeling tasks.
Architecture Overview
i3-BERT implements a two-tier architecture:
- Bottom Layers (Bi-RWKV): Process local context efficiently using bidirectional RWKV blocks with O(T) complexity
- Top Layers (Full Attention): Perform global reasoning and long-range dependencies with O(T²) multi-head attention
This design philosophy leverages the strengths of both approaches: RWKV handles syntactic structure and local patterns efficiently, while attention layers enable global information retrieval and complex reasoning.
Key Features
- Bidirectional RWKV: Novel implementation running RWKV in both forward and backward directions for non-causal tasks
- JIT-Optimized WKV Kernel: Compiled linear attention mechanism for faster training
- Hybrid Layer Stack: Configurable ratio of 4 Bi-RWKV to 4 Attention layers
- Standard BERT Pre-training: MLM (Masked Language Modeling) + NSP (Next Sentence Prediction)
- Streaming Data Pipeline: Handles large datasets without memory issues
- 116M Parameters: Educational-scale model suitable for consumer GPUs
Iter 0 | Loss: 11.2089 | MLM: 10.4452 | NSP: 0.7637 ... Iter 4990 | Loss: 0.1881 | MLM: 0.1489 | NSP: 0.0392