config.py 45.9 KB
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# SPDX-FileCopyrightText: Copyright (c) 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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import json
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import logging
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import math
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import re
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import shlex
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from typing import Literal, Optional, Protocol
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import yaml
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from pydantic import BaseModel
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from benchmarks.profiler.utils.defaults import (
    DEFAULT_MODEL_NAME,
    DYNAMO_RUN_DEFAULT_PORT,
)
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from benchmarks.profiler.utils.planner_utils import build_planner_args_from_namespace
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from dynamo.planner.defaults import WORKER_COMPONENT_NAMES, SubComponentType
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logger = logging.getLogger(__name__)
logger.setLevel(logging.INFO)
console_handler = logging.StreamHandler()
console_handler.setLevel(logging.INFO)
formatter = logging.Formatter(
    "%(asctime)s - %(name)s - %(levelname)s - %(message)s", "%Y-%m-%d %H:%M:%S"
)
console_handler.setFormatter(formatter)
logger.addHandler(console_handler)


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class VolumeMount(BaseModel):
    name: str = "dynamo-pvc"
    mountPoint: str = "/data"


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class Container(BaseModel):
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    image: Optional[str] = None
    workingDir: Optional[str] = None
    command: Optional[list[str]] = None
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    args: Optional[list[str]] = None
    model_config = {"extra": "allow"}
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class PodSpec(BaseModel):
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    mainContainer: Optional[Container] = None
    model_config = {"extra": "allow"}
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class ServiceResources(BaseModel):
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    requests: Optional[dict[str, str]] = None
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    limits: Optional[dict[str, str]] = None


class Service(BaseModel):
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    replicas: Optional[int] = None
    resources: Optional[ServiceResources] = None
    extraPodSpec: Optional[PodSpec] = None
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    subComponentType: Optional[str] = None
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    model_config = {"extra": "allow"}
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class Services(BaseModel):
    Frontend: Service
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    model_config = {"extra": "allow"}
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class PVCConfig(BaseModel):
    name: str = "dynamo-pvc"
    create: Optional[bool] = False
    model_config = {"extra": "allow"}


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class Spec(BaseModel):
    services: dict[str, Service]
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    pvcs: Optional[list[PVCConfig]] = None
    model_config = {"extra": "allow"}
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class Metadata(BaseModel):
    name: str
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    model_config = {"extra": "allow"}
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class Config(BaseModel):
    metadata: Metadata
    spec: Spec
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    model_config = {"extra": "allow"}
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class MultinodeConfig(BaseModel):
    nodeCount: int


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class DgdPlannerServiceConfig(BaseModel):
    dynamoNamespace: str = "dynamo"  # placeholder
    componentType: str = "planner"
    replicas: int = 1
    volumeMounts: list[VolumeMount] = [VolumeMount()]
    extraPodSpec: PodSpec = PodSpec(
        mainContainer=Container(
            image="my-registry/dynamo-runtime:my-tag",  # placeholder
            workingDir="/workspace/components/src/dynamo/planner",
            command=["python3", "-m", "planner_sla"],
            args=[],
        )
    )
    model_config = {"extra": "allow"}


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def break_arguments(args: list[str] | None) -> list[str]:
    ans: list[str] = []
    if args is None:
        return ans
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    if isinstance(args, str):
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        # Use shlex.split to properly handle quoted arguments and JSON values
        ans = shlex.split(args)
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    else:
        for arg in args:
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            if arg is not None:
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                # Use shlex.split to properly handle quoted arguments
                ans.extend(shlex.split(arg))
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    return ans
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def remove_valued_arguments(args: list[str], key: str) -> list[str]:
    """Remove a valued argument (e.g., --key value) from the arguments list if exists."""
    if key in args:
        idx = args.index(key)
        if idx + 1 < len(args):
            del args[idx : idx + 2]

    return args


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def join_arguments(args: list[str]) -> list[str]:
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    # Use shlex.join to properly quote arguments that contain spaces or special characters
    return [shlex.join(args)]
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def append_argument(args: list[str], to_append) -> list[str]:
    idx = find_arg_index(args)
    if isinstance(to_append, list):
        args[idx:idx] = to_append
    else:
        args.insert(idx, to_append)
    return args
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def find_arg_index(args: list[str]) -> int:
    # find the correct index to insert an argument
    idx = len(args)
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    try:
        new_idx = args.index("|")
        idx = min(idx, new_idx)
    except ValueError:
        pass
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    try:
        new_idx = args.index("2>&1")
        idx = min(idx, new_idx)
    except ValueError:
        pass
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    return idx
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def parse_override_engine_args(args: list[str]) -> tuple[dict, list[str]]:
    """
    Parse and extract --override-engine-args from argument list.

    Returns:
        tuple: (override_dict, modified_args) where override_dict is the parsed JSON
               and modified_args is the args list with --override-engine-args removed
    """
    override_dict = {}
    try:
        idx = args.index("--override-engine-args")
        if idx + 1 < len(args):
            # Parse existing override
            override_dict = json.loads(args[idx + 1])
            # Remove the old override args
            del args[idx : idx + 2]
    except (ValueError, json.JSONDecodeError):
        pass  # No existing override or invalid JSON

    return override_dict, args


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def set_multinode_config(worker_service, gpu_count: int, num_gpus_per_node: int):
    """Helper function to set multinode configuration based on GPU count and GPUs per node."""
    if gpu_count <= num_gpus_per_node:
        # Single node: remove multinode configuration if present
        if (
            hasattr(worker_service, "multinode")
            and worker_service.multinode is not None
        ):
            worker_service.multinode = None
    else:
        # Multi-node: set nodeCount = math.ceil(gpu_count / num_gpus_per_node)
        node_count = math.ceil(gpu_count / num_gpus_per_node)
        if not hasattr(worker_service, "multinode") or worker_service.multinode is None:
            # Create multinode configuration if it doesn't exist
            worker_service.multinode = MultinodeConfig(nodeCount=node_count)
        else:
            # Handle both dict (from YAML) and MultinodeConfig object cases
            if isinstance(worker_service.multinode, dict):
                worker_service.multinode["nodeCount"] = node_count
            else:
                worker_service.multinode.nodeCount = node_count


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def get_service_name_by_type(
    config: dict, backend: str, sub_component_type: SubComponentType
) -> str:
    """Helper function to get service name by subComponentType.

    First tries to find service by subComponentType, then falls back to component name.

    Args:
        config: Configuration dictionary (with spec.services structure)
        backend: Backend name (e.g., "sglang", "vllm", "trtllm")
        sub_component_type: The type of sub-component to look for (PREFILL or DECODE)

    Returns:
        The service name
    """
    # Check if config has the expected structure
    if (
        not isinstance(config, dict)
        or "spec" not in config
        or "services" not in config.get("spec", {})
    ):
        # Fall back to default name if structure is unexpected
        if sub_component_type == SubComponentType.DECODE:
            return WORKER_COMPONENT_NAMES[backend].decode_worker_k8s_name
        else:
            return WORKER_COMPONENT_NAMES[backend].prefill_worker_k8s_name

    # Look through services to find one with matching subComponentType
    services = config["spec"]["services"]
    for service_name, service_config in services.items():
        if (
            isinstance(service_config, dict)
            and service_config.get("subComponentType") == sub_component_type.value
        ):
            return service_name

    # Fall back to default component names
    if sub_component_type == SubComponentType.DECODE:
        default_name = WORKER_COMPONENT_NAMES[backend].decode_worker_k8s_name
    else:
        default_name = WORKER_COMPONENT_NAMES[backend].prefill_worker_k8s_name

    # Check if the default name exists in services
    if default_name in services:
        return default_name

    # Last resort: return the default name anyway
    return default_name


def get_worker_service_from_config(
    config: dict,
    backend: str = "sglang",
    sub_component_type: SubComponentType = SubComponentType.DECODE,
):
    """Helper function to get a worker service from config.

    First tries to find service by subComponentType, then falls back to component name.

    Args:
        config: Configuration dictionary
        backend: Backend name (e.g., "sglang", "vllm", "trtllm"). Defaults to "sglang".
        sub_component_type: The type of sub-component to look for (PREFILL or DECODE). Defaults to DECODE.

    Returns:
        The worker service from the configuration
    """
    if backend not in WORKER_COMPONENT_NAMES:
        raise ValueError(
            f"Unsupported backend: {backend}. Supported backends: {list(WORKER_COMPONENT_NAMES.keys())}"
        )

    # Get the service name using the type-aware logic
    service_name = get_service_name_by_type(config, backend, sub_component_type)

    # Get the actual service from the config
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    cfg = Config.model_validate(config)
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    return cfg.spec.services[service_name]
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def setup_worker_service_resources(
    worker_service, gpu_count: int, num_gpus_per_node: Optional[int] = None
):
    """Helper function to set up worker service resources (requests and limits)."""
    # Handle multinode configuration if num_gpus_per_node is provided
    if num_gpus_per_node is not None:
        set_multinode_config(worker_service, gpu_count, num_gpus_per_node)

    # Ensure resources exists
    if worker_service.resources is None:
        worker_service.resources = ServiceResources()

    # Ensure requests exists
    if worker_service.resources.requests is None:
        worker_service.resources.requests = {}

    # Set GPU requests
    gpu_value = (
        min(gpu_count, num_gpus_per_node)
        if num_gpus_per_node is not None
        else gpu_count
    )
    worker_service.resources.requests["gpu"] = str(gpu_value)

    # Update limits if they exist
    if worker_service.resources.limits is not None:
        worker_service.resources.limits["gpu"] = str(gpu_value)


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def validate_and_get_worker_args(worker_service, backend):
    """Helper function to validate worker service and get its arguments.

    Args:
        worker_service: Worker service object to validate
        backend: Backend name (e.g., "sglang", "vllm", "trtllm"). Defaults to "sglang".

    Returns:
        List of arguments from the worker service
    """
    if backend not in WORKER_COMPONENT_NAMES:
        raise ValueError(
            f"Unsupported backend: {backend}. Supported backends: {list(WORKER_COMPONENT_NAMES.keys())}"
        )

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    if not worker_service.extraPodSpec or not worker_service.extraPodSpec.mainContainer:
        raise ValueError(
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            f"Missing extraPodSpec or mainContainer in {backend} decode worker service '{WORKER_COMPONENT_NAMES[backend].decode_worker_k8s_name}'"
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        )

    args = worker_service.extraPodSpec.mainContainer.args
    return break_arguments(args)


def set_argument_value(args: list, arg_name: str, value: str):
    """Helper function to set an argument value, adding it if not present."""
    try:
        idx = args.index(arg_name)
        args[idx + 1] = value
    except ValueError:
        args = append_argument(args, [arg_name, value])
    return args


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class ConfigModifierProtocol(Protocol):
    @classmethod
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    def convert_config(
        cls,
        config: dict,
        target: Literal["prefill", "decode"],
        is_moe_model: bool = False,
    ) -> dict:
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        ...

    @classmethod
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    def set_config_tp_size(
        cls,
        config: dict,
        tp_size: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ) -> dict:
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        ...

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    @classmethod
    def set_config_tep_size(
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        cls,
        config: dict,
        tep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
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    ) -> dict:
        ...

    @classmethod
    def set_config_dep_size(
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        cls,
        config: dict,
        dep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
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    ) -> dict:
        ...

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    @classmethod
    def get_model_name(cls, config: dict) -> str:
        ...

    @classmethod
    def get_port(cls, config: dict) -> int:
        ...

    @classmethod
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    def get_kv_cache_size_from_dynamo_log(
        cls, dynamo_log_fn: str, attention_dp_size: int = 1
    ) -> int:
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        ...


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class VllmV1ConfigModifier:
    @classmethod
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    def convert_config(
        cls,
        config: dict,
        target: Literal["prefill", "decode"],
        is_moe_model: bool = False,
    ) -> dict:
        if is_moe_model:
            raise NotImplementedError(
                "MoE model support is not implemented for VLLM backend"
            )

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        cfg = Config.model_validate(config)
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        # set metadata name
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        cfg.metadata.name = "vllm-agg"
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        # disable planner
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        if "Planner" in cfg.spec.services:
            del cfg.spec.services["Planner"]
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        if target == "prefill":
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            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "vllm", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "vllm", SubComponentType.DECODE
            )

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            # convert prefill worker into decode worker
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            cfg.spec.services[decode_service_name] = cfg.spec.services[
                prefill_service_name
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            ]
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            del cfg.spec.services[prefill_service_name]
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            # Set subComponentType for aggregated mode (using decode worker for prefill-only)
            cfg.spec.services[decode_service_name].subComponentType = "decode"
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            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="vllm",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="vllm")
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            args = break_arguments(args)

            # remove --is-prefill-worker flag
            args.remove("--is-prefill-worker")

            # disable prefix caching
            if "--enable-prefix-caching" in args:
                args.remove("--enable-prefix-caching")
            if "--no-enable-prefix-caching" not in args:
                args = append_argument(args, "--no-enable-prefix-caching")

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            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
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        elif target == "decode":
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            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "vllm", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "vllm", SubComponentType.DECODE
            )

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            # delete prefill worker
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            del cfg.spec.services[prefill_service_name]
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            # Set subComponentType for aggregated decode-only mode
            cfg.spec.services[decode_service_name].subComponentType = "decode"
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            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="vllm",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="vllm")
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            args = break_arguments(args)
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            # enable prefix caching
            if "--enable-prefix-caching" not in args:
                args = append_argument(args, "--enable-prefix-caching")
            if "--no-enable-prefix-caching" in args:
                args.remove("--no-enable-prefix-caching")

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            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
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        # set num workers to 1
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        # Use the inferred decode service name
        final_decode_service_name = get_service_name_by_type(
            cfg.model_dump(), "vllm", SubComponentType.DECODE
        )
        decode_worker_config = cfg.spec.services[final_decode_service_name]
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        decode_worker_config.replicas = 1
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        return cfg.model_dump()
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    @classmethod
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    def set_config_tp_size(
        cls,
        config: dict,
        tp_size: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
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        cfg = Config.model_validate(config)
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        worker_service = get_worker_service_from_config(
            config, backend="vllm", sub_component_type=component_type
        )
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        # Set up resources
        setup_worker_service_resources(worker_service, tp_size)
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        # Get and validate args
        args = validate_and_get_worker_args(worker_service, backend="vllm")
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        args = break_arguments(args)

        try:
            idx = args.index("--tensor-parallel-size")
            args[idx + 1] = str(tp_size)
        except ValueError:
            args = append_argument(args, ["--tensor-parallel-size", str(tp_size)])

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        worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
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        return cfg.model_dump()
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    @classmethod
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    def set_config_tep_size(
        cls,
        config: dict,
        tep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
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        raise NotImplementedError(
            "TEP (Tensor Expert Parallelism) is not implemented for VLLM backend"
        )

    @classmethod
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    def set_config_dep_size(
        cls,
        config: dict,
        dep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
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        raise NotImplementedError(
            "DEP (Data Expert Parallelism) is not implemented for VLLM backend"
        )

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    @classmethod
    def get_model_name(cls, config: dict) -> str:
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        try:
            worker_service = get_worker_service_from_config(config, backend="vllm")
            args = validate_and_get_worker_args(worker_service, backend="vllm")
        except (ValueError, KeyError):
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            logger.warning(
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                f"Worker service missing or invalid, using default model name: {DEFAULT_MODEL_NAME}"
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            )
            return DEFAULT_MODEL_NAME
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        args = break_arguments(args)
        for i, arg in enumerate(args):
            if arg == "--model" and i + 1 < len(args):
                return args[i + 1]

        logger.warning(
            f"Model name not found in configuration args, using default model name: {DEFAULT_MODEL_NAME}"
        )
        return DEFAULT_MODEL_NAME
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    @classmethod
    def get_port(cls, config: dict) -> int:
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        cfg = Config.model_validate(config)
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        frontend_service = cfg.spec.services.get("Frontend")
        if (
            not frontend_service
            or not frontend_service.extraPodSpec
            or not frontend_service.extraPodSpec.mainContainer
        ):
            logger.warning(
                f"Frontend service or container not found, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

        args = frontend_service.extraPodSpec.mainContainer.args
        if not args:
            logger.warning(
                f"No args found in Frontend configuration, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

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        args = break_arguments(args)
        try:
            idx = args.index("--http-port")
            return int(args[idx + 1])
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        except (ValueError, IndexError):
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            logger.warning(
                f"Port not found in configuration args, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT
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    @classmethod
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    def get_kv_cache_size_from_dynamo_log(
        cls, dynamo_log_fn: str, attention_dp_size: int = 1
    ) -> int:
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        try:
            with open(dynamo_log_fn, "r") as f:
                for line in f:
                    if "Maximum concurrency for" in line:
                        line = line.strip().split("Maximum concurrency for ")[1]
                        token_count = int(
                            line.split(" tokens per request: ")[0].replace(",", "")
                        )
                        concurrency = float(line.split(" tokens per request: ")[1][:-1])

                        logger.info(
                            f"Found KV cache info: {token_count} x {concurrency} = {int(token_count * concurrency)}"
                        )
                        return int(token_count * concurrency)
        except Exception as e:
            logger.warning(
                f"Failed to parse KV cache size from line: {line}. Error: {e}"
            )
        return 0


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654
class SGLangConfigModifier:
    @classmethod
655
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    def convert_config(
        cls,
        config: dict,
        target: Literal["prefill", "decode"],
        is_moe_model: bool = False,
    ) -> dict:
661
        cfg = Config.model_validate(config)
662
663

        # set metadata name
664
        cfg.metadata.name = "sglang-agg"
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666

        # disable planner
667
668
        if "Planner" in cfg.spec.services:
            del cfg.spec.services["Planner"]
669
670

        if target == "prefill":
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            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "sglang", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "sglang", SubComponentType.DECODE
            )

679
            # convert prefill worker into decode worker
680
681
            cfg.spec.services[decode_service_name] = cfg.spec.services[
                prefill_service_name
682
            ]
683
            del cfg.spec.services[prefill_service_name]
684

685
686
            # Set subComponentType for aggregated mode (using decode worker for prefill-only)
            cfg.spec.services[decode_service_name].subComponentType = "decode"
687

688
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            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="sglang",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="sglang")
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            args = break_arguments(args)

696
            # remove disagg flags
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            args = remove_valued_arguments(args, "--disaggregation-mode")
            args = remove_valued_arguments(args, "--disaggregation-transfer-backend")
699
            args = remove_valued_arguments(args, "--disaggregation-bootstrap-port")
700
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            # disable prefix caching
            if "--disable-radix-cache" not in args:
                args = append_argument(args, "--disable-radix-cache")

705
            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
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        elif target == "decode":
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            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "sglang", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "sglang", SubComponentType.DECODE
            )

716
            # delete prefill worker
717
            del cfg.spec.services[prefill_service_name]
718

719
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            # Set subComponentType for aggregated decode-only mode
            cfg.spec.services[decode_service_name].subComponentType = "decode"
721

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            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="sglang",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="sglang")
728
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            args = break_arguments(args)

730
            # remove disagg flags
731
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            args = remove_valued_arguments(args, "--disaggregation-mode")
            args = remove_valued_arguments(args, "--disaggregation-transfer-backend")
733
            args = remove_valued_arguments(args, "--disaggregation-bootstrap-port")
734
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            # enable prefix caching
            if "--disable-radix-cache" in args:
                args.remove("--disable-radix-cache")

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            if is_moe_model:
                # need to use round_robin dp attention routing for MoE models to ensure kv reuse can skip prefill
                if "--load-balance-method" in args:
                    idx = args.index("--load-balance-method")
                    args[idx + 1] = "round_robin"
                else:
                    args = append_argument(
                        args, ["--load-balance-method", "round_robin"]
                    )

749
            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
750
751

        # set num workers to 1
752
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        # Use the inferred decode service name
        final_decode_service_name = get_service_name_by_type(
            cfg.model_dump(), "sglang", SubComponentType.DECODE
        )
        decode_worker_config = cfg.spec.services[final_decode_service_name]
        decode_worker_config.replicas = 1
758

759
        return cfg.model_dump()
760
761

    @classmethod
762
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767
    def set_config_tp_size(
        cls,
        config: dict,
        tp_size: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
768
        cfg = Config.model_validate(config)
769
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        worker_service = get_worker_service_from_config(
            config, backend="sglang", sub_component_type=component_type
        )
772

773
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        # Set up resources
        setup_worker_service_resources(worker_service, tp_size)
775

776
        # Get and validate args
777
        args = validate_and_get_worker_args(worker_service, backend="sglang")
778

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780
        # Set --tp argument
        args = set_argument_value(args, "--tp", str(tp_size))
781

782
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        worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
        return cfg.model_dump()
784

785
    @classmethod
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    def set_config_tep_size(
        cls,
        config: dict,
        tep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
793
        cfg = Config.model_validate(config)
794
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        worker_service = get_worker_service_from_config(
            config, backend="sglang", sub_component_type=component_type
        )
797

798
799
        # Set up resources with multinode configuration
        setup_worker_service_resources(worker_service, tep_size, num_gpus_per_node)
800

801
        # Get and validate args
802
        args = validate_and_get_worker_args(worker_service, backend="sglang")
803

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815
        # 1. Set --tp=tep_size, if not present add it
        args = set_argument_value(args, "--tp", str(tep_size))

        # 2. Set --ep-size=tep_size, if not present add it
        args = set_argument_value(args, "--ep-size", str(tep_size))

        # 3. Remove --dp if present
        args = remove_valued_arguments(args, "--dp")

        # 4. Remove --enable-dp-attention if present
        if "--enable-dp-attention" in args:
            args.remove("--enable-dp-attention")
816

817
        worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
818
819
820
        return cfg.model_dump()

    @classmethod
821
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826
827
    def set_config_dep_size(
        cls,
        config: dict,
        dep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
828
        cfg = Config.model_validate(config)
829
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        worker_service = get_worker_service_from_config(
            config, backend="sglang", sub_component_type=component_type
        )
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834
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836

        # Set up resources with multinode configuration
        setup_worker_service_resources(worker_service, dep_size, num_gpus_per_node)

        # Get and validate args
837
        args = validate_and_get_worker_args(worker_service, backend="sglang")
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845
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847

        # 1. Set --tp=dep_size
        args = set_argument_value(args, "--tp", str(dep_size))

        # 2. Set --dp=dep_size (data parallelism across experts)
        args = set_argument_value(args, "--dp", str(dep_size))

        # 3. Enable --enable-dp-attention
        if "--enable-dp-attention" not in args:
            args = append_argument(args, "--enable-dp-attention")
848

849
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852
        # 4. Set --ep-size=dep_size (expert parallelism size)
        args = set_argument_value(args, "--ep-size", str(dep_size))

        worker_service.extraPodSpec.mainContainer.args = join_arguments(args)
853
        return cfg.model_dump()
854
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856

    @classmethod
    def get_model_name(cls, config: dict) -> str:
857
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860
        try:
            worker_service = get_worker_service_from_config(config, backend="sglang")
            args = validate_and_get_worker_args(worker_service, backend="sglang")
        except (ValueError, KeyError):
861
            logger.warning(
862
                f"Worker service missing or invalid, using default model name: {DEFAULT_MODEL_NAME}"
863
864
            )
            return DEFAULT_MODEL_NAME
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        args = break_arguments(args)
        for i, arg in enumerate(args):
            if arg == "--served-model-name" and i + 1 < len(args):
                return args[i + 1]

        logger.warning(
            f"Model name not found in configuration args, using default model name: {DEFAULT_MODEL_NAME}"
        )
        return DEFAULT_MODEL_NAME

    @classmethod
    def get_port(cls, config: dict) -> int:
878
        cfg = Config.model_validate(config)
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        frontend_service = cfg.spec.services.get("Frontend")
        if (
            not frontend_service
            or not frontend_service.extraPodSpec
            or not frontend_service.extraPodSpec.mainContainer
        ):
            logger.warning(
                f"Frontend service or container not found, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

        args = frontend_service.extraPodSpec.mainContainer.args
        if not args:
            logger.warning(
                f"No args found in Frontend configuration, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

897
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899
900
        args = break_arguments(args)
        try:
            idx = args.index("--http-port")
            return int(args[idx + 1])
901
        except (ValueError, IndexError):
902
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904
905
906
907
            logger.warning(
                f"Port not found in configuration args, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

    @classmethod
908
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910
    def get_kv_cache_size_from_dynamo_log(
        cls, dynamo_log_fn: str, attention_dp_size: int = 1
    ) -> int:
911
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913
914
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916
917
        try:
            with open(dynamo_log_fn, "r") as f:
                for line in f:
                    if "KV Cache is allocated" in line and "#tokens:" in line:
                        # Extract the number after "#tokens:"
                        match = re.search(r"#tokens:\s*(\d+)", line)
                        if match:
918
                            return int(match.group(1)) * attention_dp_size
919
920
921
922
923
        except Exception as e:
            logger.warning(f"Failed to parse KV cache size from log file. Error: {e}")
        return 0


924
925
class TrtllmConfigModifier:
    @classmethod
926
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930
931
932
933
934
935
936
    def convert_config(
        cls,
        config: dict,
        target: Literal["prefill", "decode"],
        is_moe_model: bool = False,
    ) -> dict:
        if is_moe_model:
            raise NotImplementedError(
                "MoE model support is not implemented for TrtLLM backend"
            )

937
938
939
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941
942
943
944
945
946
        cfg = Config.model_validate(config)

        # set metadata name
        cfg.metadata.name = "trtllm-agg"

        # disable planner
        if "Planner" in cfg.spec.services:
            del cfg.spec.services["Planner"]

        if target == "prefill":
947
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949
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953
954
            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "trtllm", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "trtllm", SubComponentType.DECODE
            )

955
            # Convert to prefill-only aggregated setup
956
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958
959
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961
962
963
            # Rename prefill worker to decode worker name
            cfg.spec.services[decode_service_name] = cfg.spec.services[
                prefill_service_name
            ]
            del cfg.spec.services[prefill_service_name]

            # Set subComponentType for aggregated mode (using decode worker for prefill-only)
            cfg.spec.services[decode_service_name].subComponentType = "decode"
964

965
966
967
968
969
970
            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="trtllm",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="trtllm")
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996
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999
1000
            args = break_arguments(args)

            # Remove disaggregation args
            args = remove_valued_arguments(args, "--disaggregation-mode")
            args = remove_valued_arguments(args, "--disaggregation-strategy")

            # Keep the original extra-engine-args (prefill.yaml) which may contain user settings
            # Check if user already has override-engine-args and merge with our changes
            override_dict, args = parse_override_engine_args(args)

            # Merge our overrides for converting prefill-only disagg to aggregated:
            # - Disable enable_block_reuse (no KV reuse for prefill-only)
            # - Enable overlap scheduler (disabled in prefill.yaml but needed for agg)
            # - Remove cache_transceiver_config (not needed in agg mode)
            if "kv_cache_config" not in override_dict:
                override_dict["kv_cache_config"] = {}
            override_dict["kv_cache_config"]["enable_block_reuse"] = False
            override_dict[
                "disable_overlap_scheduler"
            ] = False  # Enable overlap scheduler for agg
            override_dict[
                "cache_transceiver_config"
            ] = None  # Remove cache transceiver for agg

            override_str = json.dumps(override_dict)
            args = append_argument(args, ["--override-engine-args", override_str])

            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)

        elif target == "decode":
1001
1002
1003
1004
1005
1006
1007
            # Get service names by inferring from subComponentType first
            prefill_service_name = get_service_name_by_type(
                config, "trtllm", SubComponentType.PREFILL
            )
            decode_service_name = get_service_name_by_type(
                config, "trtllm", SubComponentType.DECODE
            )
1008

1009
            # Convert to decode-only aggregated setup
1010
            # Remove prefill worker if exists
1011
            del cfg.spec.services[prefill_service_name]
1012

1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
            # Set subComponentType for aggregated decode-only mode
            cfg.spec.services[decode_service_name].subComponentType = "decode"

            # Decode worker already has the correct name
            worker_service = get_worker_service_from_config(
                cfg.model_dump(),
                backend="trtllm",
                sub_component_type=SubComponentType.DECODE,
            )
            args = validate_and_get_worker_args(worker_service, backend="trtllm")
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
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1035
1036
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
            args = break_arguments(args)

            # Remove disaggregation args
            args = remove_valued_arguments(args, "--disaggregation-mode")
            args = remove_valued_arguments(args, "--disaggregation-strategy")

            # Keep the original extra-engine-args (decode.yaml) which may contain user settings
            # Check if user already has override-engine-args and merge with our changes
            override_dict, args = parse_override_engine_args(args)

            # Merge our overrides for converting decode-only disagg to aggregated:
            # - Enable enable_block_reuse (to skip prefill in decode-only)
            # - Remove cache_transceiver_config (not needed in agg mode)
            if "kv_cache_config" not in override_dict:
                override_dict["kv_cache_config"] = {}
            override_dict["kv_cache_config"]["enable_block_reuse"] = True
            override_dict[
                "cache_transceiver_config"
            ] = None  # Remove cache transceiver for agg

            override_str = json.dumps(override_dict)
            args = append_argument(args, ["--override-engine-args", override_str])

            worker_service.extraPodSpec.mainContainer.args = join_arguments(args)

        # Set num workers to 1
1049
1050
1051
1052
1053
        # Use the inferred decode service name
        final_decode_service_name = get_service_name_by_type(
            cfg.model_dump(), "trtllm", SubComponentType.DECODE
        )
        worker_config = cfg.spec.services[final_decode_service_name]
1054
1055
1056
1057
1058
        worker_config.replicas = 1

        return cfg.model_dump()

    @classmethod
1059
1060
1061
1062
1063
1064
    def set_config_tp_size(
        cls,
        config: dict,
        tp_size: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
1065
1066
        cfg = Config.model_validate(config)

1067
1068
        # Get the worker service using helper function
        # This assumes convert_config has been called, so the service is named decode_worker_k8s_name
1069
1070
1071
        worker_service = get_worker_service_from_config(
            config, backend="trtllm", sub_component_type=component_type
        )
1072

1073
1074
        # Set up resources
        setup_worker_service_resources(worker_service, tp_size)
1075

1076
1077
        # Validate and get args
        args = validate_and_get_worker_args(worker_service, backend="trtllm")
1078
1079
1080
1081
1082
1083
1084
1085
1086
1087
1088
1089
1090
1091
1092
1093
1094

        # Break arguments to handle both joined strings and lists
        args = break_arguments(args)

        # For TRT-LLM, we need to update the override-engine-args
        # to set the tensor_parallel_size
        override_dict, args = parse_override_engine_args(args)

        # Add/update tensor_parallel_size in the override
        override_dict["tensor_parallel_size"] = tp_size
        override_str = json.dumps(override_dict)
        args = append_argument(args, ["--override-engine-args", override_str])

        worker_service.extraPodSpec.mainContainer.args = join_arguments(args)

        return cfg.model_dump()

1095
    @classmethod
1096
1097
1098
1099
1100
1101
1102
    def set_config_tep_size(
        cls,
        config: dict,
        tep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
1103
1104
1105
1106
1107
        raise NotImplementedError(
            "TEP (Tensor Expert Parallelism) is not implemented for TrtLLM backend"
        )

    @classmethod
1108
1109
1110
1111
1112
1113
1114
    def set_config_dep_size(
        cls,
        config: dict,
        dep_size: int,
        num_gpus_per_node: int,
        component_type: SubComponentType = SubComponentType.DECODE,
    ):
1115
1116
1117
1118
        raise NotImplementedError(
            "DEP (Data Expert Parallelism) is not implemented for TrtLLM backend"
        )

1119
1120
    @classmethod
    def get_model_name(cls, config: dict) -> str:
1121
1122
1123
1124
        try:
            worker_service = get_worker_service_from_config(config, backend="trtllm")
            args = validate_and_get_worker_args(worker_service, backend="trtllm")
        except (ValueError, KeyError):
1125
            logger.warning(
1126
                f"Worker service missing or invalid, using default model name: {DEFAULT_MODEL_NAME}"
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
            )
            return DEFAULT_MODEL_NAME

        args = break_arguments(args)
        for i, arg in enumerate(args):
            if arg == "--served-model-name" and i + 1 < len(args):
                return args[i + 1]

        logger.warning(
            f"Model name not found in configuration args, using default model name: {DEFAULT_MODEL_NAME}"
        )
        return DEFAULT_MODEL_NAME

    @classmethod
    def get_port(cls, config: dict) -> int:
        cfg = Config.model_validate(config)
        frontend_service = cfg.spec.services.get("Frontend")
        if (
            not frontend_service
            or not frontend_service.extraPodSpec
            or not frontend_service.extraPodSpec.mainContainer
        ):
            logger.warning(
                f"Frontend service or container not found, using default port: {DYNAMO_RUN_DEFAULT_PORT}"
            )
            return DYNAMO_RUN_DEFAULT_PORT

        # TRT-LLM frontend doesn't have args, it uses the default port
        return DYNAMO_RUN_DEFAULT_PORT

    @classmethod
1158
1159
1160
    def get_kv_cache_size_from_dynamo_log(
        cls, dynamo_log_fn: str, attention_dp_size: int = 1
    ) -> int:
1161
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1163
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1165
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1169
1170
1171
1172
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1174
1175
1176
1177
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1188
        # TRT-LLM log parsing for KV cache size
        # Format: [TensorRT-LLM][INFO] [MemUsageChange] Allocated XX GiB for max tokens in paged KV cache (XXXXXX).
        try:
            with open(dynamo_log_fn, "r") as f:
                for line in f:
                    # Look for the specific TRT-LLM KV cache allocation log
                    if (
                        "Allocated" in line
                        and "for max tokens in paged KV cache" in line
                    ):
                        # Extract the number in parentheses at the end
                        match = re.search(r"paged KV cache \((\d+)\)", line)
                        if match:
                            max_tokens = int(match.group(1))
                            logger.info(
                                f"Found TRT-LLM KV cache max tokens: {max_tokens}"
                            )
                            return max_tokens
        except Exception as e:
            logger.warning(f"Failed to parse KV cache size from log file. Error: {e}")

        # Return a reasonable default if we couldn't find the KV cache size in logs
        logger.warning(
            "Could not find KV cache size in TRT-LLM logs, using default value of 100000"
        )
        return 100000  # Default fallback value for TRT-LLM


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CONFIG_MODIFIERS: dict[str, type[ConfigModifierProtocol]] = {
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    "vllm": VllmV1ConfigModifier,
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    "sglang": SGLangConfigModifier,
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    "trtllm": TrtllmConfigModifier,
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}
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def generate_dgd_config_with_planner(
    config_path: str,
    config_modifier,
    best_prefill_gpus: int,
    best_decode_gpus: int,
    output_dir: str,
    args,
    is_moe_model: bool = False,
    num_gpus_per_node: int = 8,
):
    """Generate DGD config with planner based on profiling results.

    Args:
        config_path: Path to the YAML config file
        config_modifier: Config modifier instance (e.g., SGLangConfigModifier)
        best_prefill_gpus: Number of GPUs for prefill engine
        best_decode_gpus: Number of GPUs for decode engine
        output_dir: Output directory for profile results
        args: Parsed arguments namespace from profile_sla
        is_moe_model: Whether this is an MoE model
        num_gpus_per_node: Number of GPUs per node (for MoE models)

    Returns:
        dict: Final DGD config with planner service configured
    """

    # Load config from file
    with open(config_path, "r") as f:
        config = yaml.safe_load(f)

    if not is_moe_model:
        # dense model, use TP for both prefill and decode
        config = config_modifier.set_config_tp_size(
            config, best_prefill_gpus, SubComponentType.PREFILL
        )
        config = config_modifier.set_config_tp_size(
            config, best_decode_gpus, SubComponentType.DECODE
        )
    else:
        # MoE model, use TEP for prefill and DEP for decode
        config = config_modifier.set_config_tep_size(
            config,
            best_prefill_gpus,
            num_gpus_per_node,
            SubComponentType.PREFILL,
        )
        config = config_modifier.set_config_dep_size(
            config,
            best_decode_gpus,
            num_gpus_per_node,
            SubComponentType.DECODE,
        )
    config = Config.model_validate(config)

    # add PVC config if not present
    if not config.spec.pvcs:
        config.spec.pvcs = [PVCConfig()]

    # add the planner service
    planner_config = DgdPlannerServiceConfig()
    frontend_service = config.spec.services["Frontend"]
    planner_config.dynamoNamespace = getattr(frontend_service, "dynamoNamespace", "dynamo")  # type: ignore[attr-defined]
    if frontend_service.extraPodSpec and frontend_service.extraPodSpec.mainContainer:
        frontend_image = frontend_service.extraPodSpec.mainContainer.image
        if frontend_image and planner_config.extraPodSpec.mainContainer:
            planner_config.extraPodSpec.mainContainer.image = frontend_image

    # Build planner args dynamically from parsed arguments
    # This includes shared args (ttft, itl, backend, namespace) from profile_sla
    # and planner-specific args (with planner_ prefix)
    planner_args = build_planner_args_from_namespace(args, prefix="planner_")

    # Override profiling-specific arguments with results from profiling
    # Remove and re-add to ensure correct values from profiling context
    planner_args = [
        arg
        for arg in planner_args
        if not any(
            arg.startswith(f"--{key}=")
            for key in [
                "namespace",
                "prefill-engine-num-gpu",
                "decode-engine-num-gpu",
                "profile-results-dir",
            ]
        )
    ]

    # Add arguments determined by profiling results
    frontend_namespace = getattr(config.spec.services["Frontend"], "dynamoNamespace", "dynamo")  # type: ignore[attr-defined]
    planner_args.extend(
        [
            f"--namespace={frontend_namespace}",
            f"--prefill-engine-num-gpu={best_prefill_gpus}",
            f"--decode-engine-num-gpu={best_decode_gpus}",
            f"--profile-results-dir={output_dir}",
        ]
    )

    if (
        planner_config.extraPodSpec.mainContainer
        and planner_config.extraPodSpec.mainContainer.args is not None
    ):
        planner_config.extraPodSpec.mainContainer.args.extend(planner_args)
    # Convert planner config to dict first, then the entire config to dict
    planner_dict = planner_config.model_dump(exclude_unset=False)
    config_dict = config.model_dump(exclude_unset=False)
    config_dict["spec"]["services"]["Planner"] = planner_dict

    return config_dict


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# Re-export WORKER_COMPONENT_NAMES for profile_sla.py
__all__ = ["CONFIG_MODIFIERS", "WORKER_COMPONENT_NAMES"]