flags.rs 9.53 KB
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// SPDX-FileCopyrightText: Copyright (c) 2024-2025 NVIDIA CORPORATION & AFFILIATES. All rights reserved.
// SPDX-License-Identifier: Apache-2.0
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.

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use std::collections::HashMap;
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use std::path::PathBuf;

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use clap::ValueEnum;
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use dynamo_llm::entrypoint::RouterConfig;
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use dynamo_llm::kv_router::KvRouterConfig;
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use dynamo_llm::local_model::LocalModel;
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use dynamo_runtime::pipeline::RouterMode as RuntimeRouterMode;
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use crate::Output;

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/// Required options depend on the in and out choices
#[derive(clap::Parser, Debug, Clone)]
#[command(version, about, long_about = None)]
pub struct Flags {
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    /// The model. The options depend on the engine.
    ///
    /// The full list - only mistralrs supports all three currently:
    /// - Full path to a GGUF file
    /// - Full path of a checked out Hugging Face repository containing safetensor files
    /// - Name of a Hugging Face repository, e.g 'google/flan-t5-small'. The model will be
    ///   downloaded and cached.
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    #[arg(index = 1)]
    pub model_path_pos: Option<PathBuf>,

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    // `--model-path`. The one above is `dynamo-run <positional-model-path>`
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    #[arg(long = "model-path")]
    pub model_path_flag: Option<PathBuf>,

    /// HTTP port. `in=http` only
    #[arg(long, default_value = "8080")]
    pub http_port: u16,

    /// The name of the model we are serving
    #[arg(long)]
    pub model_name: Option<String>,

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    /// Verbose output (-v for debug, -vv for trace)
    #[arg(short = 'v', action = clap::ArgAction::Count, default_value_t = 0)]
    pub verbosity: u8,

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    /// llamacpp only
    ///
    /// The path to the tokenizer and model config because:
    /// - llama_cpp only runs GGUF files
    /// - our engine is a 'core' engine in that we do the tokenization, so we need the vocab
    /// - TODO: we don't yet extract that from the GGUF. Once we do we can remove this flag.
    #[arg(long)]
    pub model_config: Option<PathBuf>,

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    /// sglang, vllm
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    ///
    /// How many GPUs to use at once, total across all nodes.
    /// This must divide by num_nodes, and each node must use the same number of GPUs.
    #[arg(long, default_value = "1", value_parser = clap::value_parser!(u32).range(1..256))]
    pub tensor_parallel_size: u32,

    /// sglang only
    /// vllm uses CUDA_VISIBLE_DEVICES env var
    ///
    /// Use GPUs from this ID upwards.
    /// If your machine has four GPUs but the first two (0 and 1) are in use,
    /// pass --base-gpu-id 2 to use the third GPU (and up, if tensor_parallel_size > 1)
    #[arg(long, default_value = "0", value_parser = clap::value_parser!(u32).range(0..256))]
    pub base_gpu_id: u32,

    /// vllm and sglang only
    ///
    /// How many nodes/hosts to use
    #[arg(long, default_value = "1", value_parser = clap::value_parser!(u32).range(1..256))]
    pub num_nodes: u32,

    /// vllm and sglang only
    ///
    /// This nodes' unique ID, running from 0 to num_nodes.
    #[arg(long, default_value = "0", value_parser = clap::value_parser!(u32).range(0..255))]
    pub node_rank: u32,

    /// For multi-node / pipeline parallel this is the <host>:<port> of the first node.
    ///
    /// - vllm: The address/port of the Ray head node.
    ///
    /// - sglang: The Torch Distributed init method address, in format <host>:<port>.
    ///   It becomes "tcp://<host>:<port>" when given to torch.distributed.init_process_group.
    ///   This expects to use the nccl backend (transparently to us here).
    ///   All nodes must use the same address here, which is node_rank == 0's address.
    ///
    #[arg(long)]
    pub leader_addr: Option<String>,

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    /// If using `out=dyn` with multiple instances, this says how to route the requests.
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    ///
    /// Mostly interesting for KV-aware routing.
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    /// Defaults to RouterMode::RoundRobin
    #[arg(long, default_value = "round-robin")]
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    pub router_mode: RouterMode,

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    /// KV Router: Weight for overlap score in worker selection.
    /// Higher values prioritize KV cache reuse. Default: 2.0
    #[arg(long)]
    pub kv_overlap_score_weight: Option<f64>,

    /// KV Router: Weight for GPU cache usage in worker selection.
    /// Higher values avoid workers with nearly full KV caches. Default: 1.0
    #[arg(long)]
    pub kv_gpu_cache_usage_weight: Option<f64>,

    /// KV Router: Weight for waiting requests in worker selection.
    /// Higher values avoid workers with queued requests. Default: 1.0
    #[arg(long)]
    pub kv_waiting_requests_weight: Option<f64>,

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    /// Max model context length. Reduce this if you don't have enough VRAM for the full model
    /// context length (e.g. Llama 4).
    /// Defaults to the model's max, which is usually model_max_length in tokenizer_config.json.
    #[arg(long)]
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    pub context_length: Option<u32>,
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    /// KV cache block size (vllm only)
    #[arg(long)]
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    pub kv_cache_block_size: Option<u32>,
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    /// Additional engine-specific arguments from a JSON file.
    /// Contains a mapping of parameter names to values.
    #[arg(long)]
    pub extra_engine_args: Option<PathBuf>,

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    /// Path to a JSON file containing default request fields.
    /// These fields will be merged with each request, but can be overridden by the request.
    /// Example file contents:
    /// {
    ///     "model": "Qwen2.5-3B-Instruct",
    ///     "temperature": 0.7,
    ///     "max_completion_tokens": 4096
    /// }
    #[arg(long)]
    pub request_template: Option<PathBuf>,

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    /// Everything after a `--`.
    /// These are the command line arguments to the python engine when using `pystr` or `pytok`.
    #[arg(index = 2, last = true, hide = true, allow_hyphen_values = true)]
    pub last: Vec<String>,
}

impl Flags {
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    /// For each Output variant, check if it would be able to run.
    /// This takes validation out of the main engine creation path.
    pub fn validate(&self, local_model: &LocalModel, out_opt: &Output) -> anyhow::Result<()> {
        match out_opt {
            Output::Dynamic => {
                if self.context_length.is_some() {
                    anyhow::bail!("'--context-length' flag should only be used on the worker node, not on the ingress");
                }
                if self.kv_cache_block_size.is_some() {
                    anyhow::bail!("'--kv-cache-block-size' flag should only be used on the worker node, not on the ingress");
                }
            }
            Output::EchoFull => {}
            Output::EchoCore => {
                if !local_model.card().has_tokenizer() {
                    anyhow::bail!(
                        "out=echo_core need to find the tokenizer. Pass flag --model-path <path>"
                    );
                };
            }
            #[cfg(feature = "mistralrs")]
            Output::MistralRs => {}
            Output::SgLang => {
                if !local_model.path().is_dir() {
                    // TODO GGUF support for sglang: https://github.com/ai-dynamo/dynamo/issues/572
                    anyhow::bail!("`--model-path should point at a HuggingFace repo checkout");
                }
            }
            Output::Vllm => {
                if self.base_gpu_id != 0 {
                    anyhow::bail!("vllm does not support base_gpu_id. Set environment variable CUDA_VISIBLE_DEVICES instead.");
                }
            }
            Output::Trtllm => {
                if self.base_gpu_id != 0 {
                    anyhow::bail!("TRTLLM does not support base_gpu_id. Set environment variable CUDA_VISIBLE_DEVICES instead.");
                }
            }
            #[cfg(feature = "llamacpp")]
            Output::LlamaCpp => {
                if !local_model.path().is_file() {
                    anyhow::bail!("--model-path should refer to a GGUF file. llama_cpp does not support safetensors.");
                }
            }
        }
        Ok(())
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    }

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    pub fn router_config(&self) -> RouterConfig {
        RouterConfig::new(
            self.router_mode.into(),
            KvRouterConfig::new(
                self.kv_overlap_score_weight,
                self.kv_gpu_cache_usage_weight,
                self.kv_waiting_requests_weight,
            ),
        )
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    }
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    /// Load extra engine arguments from a JSON file
    /// Returns a HashMap of parameter names to values
    pub fn load_extra_engine_args(
        &self,
    ) -> anyhow::Result<Option<HashMap<String, serde_json::Value>>> {
        if let Some(path) = &self.extra_engine_args {
            let file_content = std::fs::read_to_string(path)?;
            let args: HashMap<String, serde_json::Value> = serde_json::from_str(&file_content)?;
            Ok(Some(args))
        } else {
            Ok(None)
        }
    }
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}

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#[derive(Default, PartialEq, Eq, ValueEnum, Clone, Debug, Copy)]
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pub enum RouterMode {
    #[default]
    #[value(name = "round-robin")]
    RoundRobin,
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    Random,
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    #[value(name = "kv")]
    KV,
}

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impl From<RouterMode> for RuntimeRouterMode {
    fn from(r: RouterMode) -> RuntimeRouterMode {
        match r {
            RouterMode::RoundRobin => RuntimeRouterMode::RoundRobin,
            RouterMode::Random => RuntimeRouterMode::Random,
            RouterMode::KV => RuntimeRouterMode::KV,
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        }
    }
}