14:40
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15:00
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15:00
Day 1
Supercharging LLM serving with Dynamo
<p>The explosive growth of Large Language Models (LLMs) requires massively efficient and scalable inference systems. This talk will share key innovations NVIDIA Dynamo (https://github.com/ai-dynamo/dynamo) adds to enable system-level optimizations while leveraging performance from inference engines such as vLLM, SGLang, and TRT-LLM:</p>
<ul>
<li>Smart Scheduling that routes requests based on the KV cache hit rate and load, intelligently autoscales, and disaggregates the prefill and decode phases.</li>
<li>Hierarchical Memory Management that utilizes HBM, host memory, local disk, and remote storage.</li>
<li>Low-Latency Transfer of the KV cache across nodes and the memory hierarchy.</li>
</ul>
<p>This talk will also introduce production-grade LLM serving features of Dynamo that enable users to:
- Find the best configuration for disaggregated serving offline.
- Tune performance automatically based on real-time traffic.
- Dynamically scale prefill and decode workers via topology-aware gang scheduling.
- Leverage LLM-specific fault tolerance.</p>