llama-stack/llama_stack/templates/nvidia/nvidia.py
Rashmi Pawar e6bbf8d20b
feat: Add NVIDIA NeMo datastore (#1852)
# What does this PR do?
Implemetation of NeMO Datastore register, unregister API.

Open Issues: 
- provider_id gets set to `localfs` in client.datasets.register() as it
is specified in routing_tables.py: DatasetsRoutingTable
see: #1860

Currently I have passed `"provider_id":"nvidia"` in metadata and have
parsed that in `DatasetsRoutingTable`
(Not the best approach, but just a quick workaround to make it work for
now.)

## Test Plan
- Unit test cases: `pytest
tests/unit/providers/nvidia/test_datastore.py`
```bash
========================================================== test session starts ===========================================================
platform linux -- Python 3.10.0, pytest-8.3.5, pluggy-1.5.0
rootdir: /home/ubuntu/llama-stack
configfile: pyproject.toml
plugins: anyio-4.9.0, asyncio-0.26.0, nbval-0.11.0, metadata-3.1.1, html-4.1.1, cov-6.1.0
asyncio: mode=strict, asyncio_default_fixture_loop_scope=None, asyncio_default_test_loop_scope=function
collected 2 items                                                                                                                        

tests/unit/providers/nvidia/test_datastore.py ..                                                                                   [100%]

============================================================ warnings summary ============================================================

====================================================== 2 passed, 1 warning in 0.84s ======================================================
```

cc: @dglogo, @mattf, @yanxi0830
2025-04-28 09:41:59 -07:00

146 lines
5.1 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
from pathlib import Path
from llama_stack.distribution.datatypes import ModelInput, Provider, ShieldInput, ToolGroupInput
from llama_stack.providers.remote.datasetio.nvidia import NvidiaDatasetIOConfig
from llama_stack.providers.remote.eval.nvidia import NVIDIAEvalConfig
from llama_stack.providers.remote.inference.nvidia import NVIDIAConfig
from llama_stack.providers.remote.inference.nvidia.models import MODEL_ENTRIES
from llama_stack.providers.remote.safety.nvidia import NVIDIASafetyConfig
from llama_stack.templates.template import DistributionTemplate, RunConfigSettings, get_model_registry
def get_distribution_template() -> DistributionTemplate:
providers = {
"inference": ["remote::nvidia"],
"vector_io": ["inline::faiss"],
"safety": ["remote::nvidia"],
"agents": ["inline::meta-reference"],
"telemetry": ["inline::meta-reference"],
"eval": ["remote::nvidia"],
"post_training": ["remote::nvidia"],
"datasetio": ["inline::localfs", "remote::nvidia"],
"scoring": ["inline::basic"],
"tool_runtime": ["inline::rag-runtime"],
}
inference_provider = Provider(
provider_id="nvidia",
provider_type="remote::nvidia",
config=NVIDIAConfig.sample_run_config(),
)
safety_provider = Provider(
provider_id="nvidia",
provider_type="remote::nvidia",
config=NVIDIASafetyConfig.sample_run_config(),
)
datasetio_provider = Provider(
provider_id="nvidia",
provider_type="remote::nvidia",
config=NvidiaDatasetIOConfig.sample_run_config(),
)
eval_provider = Provider(
provider_id="nvidia",
provider_type="remote::nvidia",
config=NVIDIAEvalConfig.sample_run_config(),
)
inference_model = ModelInput(
model_id="${env.INFERENCE_MODEL}",
provider_id="nvidia",
)
safety_model = ModelInput(
model_id="${env.SAFETY_MODEL}",
provider_id="nvidia",
)
available_models = {
"nvidia": MODEL_ENTRIES,
}
default_tool_groups = [
ToolGroupInput(
toolgroup_id="builtin::rag",
provider_id="rag-runtime",
),
]
default_models = get_model_registry(available_models)
return DistributionTemplate(
name="nvidia",
distro_type="self_hosted",
description="Use NVIDIA NIM for running LLM inference, evaluation and safety",
container_image=None,
template_path=Path(__file__).parent / "doc_template.md",
providers=providers,
available_models_by_provider=available_models,
run_configs={
"run.yaml": RunConfigSettings(
provider_overrides={
"inference": [inference_provider],
"datasetio": [datasetio_provider],
"eval": [eval_provider],
},
default_models=default_models,
default_tool_groups=default_tool_groups,
),
"run-with-safety.yaml": RunConfigSettings(
provider_overrides={
"inference": [
inference_provider,
safety_provider,
],
"eval": [eval_provider],
},
default_models=[inference_model, safety_model],
default_shields=[ShieldInput(shield_id="${env.SAFETY_MODEL}", provider_id="nvidia")],
default_tool_groups=default_tool_groups,
),
},
run_config_env_vars={
"NVIDIA_API_KEY": (
"",
"NVIDIA API Key",
),
"NVIDIA_APPEND_API_VERSION": (
"True",
"Whether to append the API version to the base_url",
),
## Nemo Customizer related variables
"NVIDIA_DATASET_NAMESPACE": (
"default",
"NVIDIA Dataset Namespace",
),
"NVIDIA_PROJECT_ID": (
"test-project",
"NVIDIA Project ID",
),
"NVIDIA_CUSTOMIZER_URL": (
"https://customizer.api.nvidia.com",
"NVIDIA Customizer URL",
),
"NVIDIA_OUTPUT_MODEL_DIR": (
"test-example-model@v1",
"NVIDIA Output Model Directory",
),
"GUARDRAILS_SERVICE_URL": (
"http://0.0.0.0:7331",
"URL for the NeMo Guardrails Service",
),
"NVIDIA_EVALUATOR_URL": (
"http://0.0.0.0:7331",
"URL for the NeMo Evaluator Service",
),
"INFERENCE_MODEL": (
"Llama3.1-8B-Instruct",
"Inference model",
),
"SAFETY_MODEL": (
"meta/llama-3.1-8b-instruct",
"Name of the model to use for safety",
),
},
)