llm-d is a Kubernetes-native high-performance distributed LLM inference framework that provides the fastest time-to-value and competitive performance per dollar. Built on vLLM, Kubernetes, and Inference Gateway, llm-d offers modular solutions for distributed inference with features like KV-cache aware routing and disaggregated serving.
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License: Apache 2.0
A lightweight, configurable, and real-time simulator designed to mimic the behavior of vLLM without the need for GPUs or running actual heavy models.
Variant optimization autoscaler for distributed inference workloads
llm-d-batch-gateway is a standalone, backend-agnostic, OpenAI-compatible batch API and processing engine
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