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255 lines
7.2 KiB
Markdown
255 lines
7.2 KiB
Markdown
# Checkpoint Engine Integration
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The SGLang checkpoint engine integration provides an efficient way to load model weights using a distributed checkpoint loading system. This feature significantly reduces model loading time, especially for large models and multi-node setups, by parallelizing the weight loading process across multiple processes and nodes.
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## Overview
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The checkpoint engine integration allows SGLang to:
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- Load model weights in parallel using multiple processes
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- Distribute weight loading across multiple nodes to increase effective disk bandwidth
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- Overlap weight loading with other initialization tasks like CUDA graph capture
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- Support both single-node and multi-node deployments
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## Installation
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First, install the checkpoint engine package:
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```bash
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pip install 'checkpoint-engine[p2p]'
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```
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## Architecture
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The system consists of two main components:
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1. **SGLang Server**: Runs with `--wait-for-initial-weights` flag to wait for weights before becoming ready
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2. **Checkpoint Engine Workers**: Separate processes (managed by torchrun) that load and distribute model weights
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The checkpoint engine uses a parameter server architecture with support for:
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- **Broadcast mode**: Weights are broadcast from loading processes to inference processes
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- **P2P mode**: Direct peer-to-peer weight transfer between processes
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- **All mode**: Combination of both broadcast and P2P methods
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## Usage Examples
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### Single Node Setup
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**Terminal 1 - Launch SGLang Server:**
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```bash
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python -m sglang.launch_server \
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--model-path Qwen/Qwen3-8B \
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--tp 8 \
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--load-format dummy \
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--wait-for-initial-weights
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```
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**Terminal 2 - Run Checkpoint Engine:**
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Using sglang entrypoint:
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```bash
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python -m sglang.srt.checkpoint_engine.update \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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Using torchrun directly:
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```bash
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torchrun --nproc-per-node 8 \
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examples/checkpoint_engine/update.py \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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### Multi-Node Setup (2 Nodes)
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**Node 0:**
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Launch SGLang server:
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```bash
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python -m sglang.launch_server \
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--model-path Qwen/Qwen3-8B \
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--tp 8 \
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--load-format dummy \
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--wait-for-initial-weights \
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--host [IP]
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```
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Run checkpoint engine:
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Using sglang entrypoint (recommended):
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```bash
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python -m sglang.srt.checkpoint_engine.update \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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Using torchrun directly:
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```bash
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torchrun --nproc-per-node 8 \
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--nnodes 2 \
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--node-rank 0 \
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--master-addr [IP] \
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--master-port 29500 \
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examples/checkpoint_engine/update.py \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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**Node 1:**
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Launch SGLang server:
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```bash
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python -m sglang.launch_server \
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--model-path Qwen/Qwen3-8B \
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--tp 8 \
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--load-format dummy \
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--wait-for-initial-weights \
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--host [IP]
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```
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Run checkpoint engine:
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Using sglang entrypoint (recommended):
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```bash
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python -m sglang.srt.checkpoint_engine.update \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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Using torchrun directly:
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```bash
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torchrun --nproc-per-node 8 \
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--nnodes 2 \
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--node-rank 1 \
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--master-addr [IP] \
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--master-port 29500 \
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examples/checkpoint_engine/update.py \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 8
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```
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### Multi-Node Setup with Tensor Parallelism (TP=16)
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**Node 0:**
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Launch SGLang server:
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```bash
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python -m sglang.launch_server \
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--model-path Qwen/Qwen3-8B \
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--tp 8 \
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--load-format dummy \
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--wait-for-initial-weights \
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--host [IP] \
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--dist-init-addr [IP]:9120 \
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--nnodes 2 \
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--node-rank 0
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```
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Run checkpoint engine:
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Using sglang entrypoint (recommended):
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```bash
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python -m sglang.srt.checkpoint_engine.update \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 16
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```
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Using torchrun directly:
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```bash
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torchrun --nproc-per-node 8 \
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--nnodes 2 \
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--node-rank 0 \
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--master-addr [IP] \
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--master-port 29500 \
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examples/checkpoint_engine/update.py \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 16
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```
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**Node 1:**
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Launch SGLang server:
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```bash
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python -m sglang.launch_server \
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--model-path Qwen/Qwen3-8B \
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--tp 8 \
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--load-format dummy \
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--wait-for-initial-weights \
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--host [IP] \
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--dist-init-addr [IP]:9120 \
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--nnodes 2 \
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--node-rank 1
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```
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Run checkpoint engine:
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Using sglang entrypoint (recommended):
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```bash
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python -m sglang.srt.checkpoint_engine.update \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 16
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```
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Using torchrun directly:
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```bash
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torchrun --nproc-per-node 8 \
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--nnodes 2 \
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--node-rank 1 \
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--master-addr [IP] \
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--master-port 29500 \
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examples/checkpoint_engine/update.py \
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--update-method broadcast \
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--checkpoint-path /path/to/Qwen/Qwen3-8B/ \
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--inference-parallel-size 16
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```
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## Configuration Options
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### SGLang Server Options
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- `--load-format dummy`: Use dummy format for initial loading (allows overlapping with other tasks)
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- `--wait-for-initial-weights`: Wait for checkpoint engine to provide weights before becoming ready
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- `--host`: Host address for multi-node setups
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- `--dist-init-addr`: Distributed initialization address for tensor parallelism
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### Checkpoint Engine Options
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- `--update-method`: Weight update method (`broadcast`, `p2p`, or `all`)
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- `--checkpoint-path`: Path to model checkpoint directory
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- `--inference-parallel-size`: Number of inference parallel processes
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- `--endpoint`: SGLang server endpoint (default: `http://localhost:19730`)
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- `--checkpoint-name`: Name for the checkpoint (default: `my-checkpoint-iter-0`)
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- `--save-metas-file`: File to save checkpoint metadata
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- `--load-metas-file`: File to load checkpoint metadata from
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- `--uds`: Unix domain socket path for communication
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- `--weight-version`: Version identifier for weights
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## Performance Benefits
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The checkpoint engine provides significant time savings in two main aspects:
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1. **Multi-node Loading**: Each node only loads a portion of weights from disk, effectively increasing disk bandwidth. More participating nodes provide greater acceleration. Preliminary tests show 20-second acceleration when loading DeepSeek-R1 on H20-3e with two nodes.
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2. **Single Process Optimization**: Using dummy format allows overlapping disk-to-CPU transfer with CUDA graph capture and other initialization tasks, providing additional time savings.
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## Troubleshooting
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- Ensure checkpoint engine package is installed: `pip install 'checkpoint-engine[p2p]'`
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- Verify network connectivity between nodes in multi-node setups
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- Check that the checkpoint path contains valid model files
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- Monitor logs for connection errors between SGLang server and checkpoint engine
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- Use `--sleep-time` parameter to add delays if needed for debugging
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## References
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- [Checkpoint Engine Repository](https://github.com/MoonshotAI/checkpoint-engine)
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