llama-stack-mirror/llama_stack/templates/starter/starter.py

265 lines
9.6 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 typing import Any
from llama_stack.distribution.datatypes import (
BuildProvider,
Provider,
ProviderSpec,
ShieldInput,
ToolGroupInput,
)
from llama_stack.distribution.utils.dynamic import instantiate_class_type
from llama_stack.providers.datatypes import RemoteProviderSpec
from llama_stack.providers.inline.files.localfs.config import LocalfsFilesImplConfig
from llama_stack.providers.inline.inference.sentence_transformers import (
SentenceTransformersInferenceConfig,
)
from llama_stack.providers.inline.vector_io.faiss.config import FaissVectorIOConfig
from llama_stack.providers.inline.vector_io.milvus.config import (
MilvusVectorIOConfig,
)
from llama_stack.providers.inline.vector_io.sqlite_vec.config import (
SQLiteVectorIOConfig,
)
from llama_stack.providers.registry.inference import available_providers
from llama_stack.providers.remote.vector_io.chroma.config import ChromaVectorIOConfig
from llama_stack.providers.remote.vector_io.pgvector.config import (
PGVectorVectorIOConfig,
)
from llama_stack.providers.utils.sqlstore.sqlstore import PostgresSqlStoreConfig
from llama_stack.templates.template import (
DistributionTemplate,
RunConfigSettings,
)
def _get_config_for_provider(provider_spec: ProviderSpec) -> dict[str, Any]:
"""Get configuration for a provider using its adapter's config class."""
config_class = instantiate_class_type(provider_spec.config_class)
if hasattr(config_class, "sample_run_config"):
config: dict[str, Any] = config_class.sample_run_config()
return config
return {}
ENABLED_INFERENCE_PROVIDERS = [
"ollama",
"vllm",
"tgi",
"fireworks",
"together",
"gemini",
"groq",
"sambanova",
"anthropic",
"openai",
"cerebras",
"nvidia",
"bedrock",
]
INFERENCE_PROVIDER_IDS = {
"vllm": "${env.VLLM_URL:+vllm}",
"tgi": "${env.TGI_URL:+tgi}",
"cerebras": "${env.CEREBRAS_API_KEY:+cerebras}",
"nvidia": "${env.NVIDIA_API_KEY:+nvidia}",
}
def get_remote_inference_providers() -> list[Provider]:
# Filter out inline providers and some others - the starter distro only exposes remote providers
remote_providers = [
provider
for provider in available_providers()
if isinstance(provider, RemoteProviderSpec) and provider.adapter.adapter_type in ENABLED_INFERENCE_PROVIDERS
]
inference_providers = []
for provider_spec in remote_providers:
provider_type = provider_spec.adapter.adapter_type
if provider_type in INFERENCE_PROVIDER_IDS:
provider_id = INFERENCE_PROVIDER_IDS[provider_type]
else:
provider_id = provider_type.replace("-", "_").replace("::", "_")
config = _get_config_for_provider(provider_spec)
inference_providers.append(
Provider(
provider_id=provider_id,
provider_type=f"remote::{provider_type}",
config=config,
)
)
return inference_providers
def get_distribution_template() -> DistributionTemplate:
remote_inference_providers = get_remote_inference_providers()
name = "starter"
providers = {
"inference": [BuildProvider(provider_type=p.provider_type, module=p.module) for p in remote_inference_providers]
+ [BuildProvider(provider_type="inline::sentence-transformers")],
"vector_io": [
BuildProvider(provider_type="inline::faiss"),
BuildProvider(provider_type="inline::sqlite-vec"),
BuildProvider(provider_type="inline::milvus"),
BuildProvider(provider_type="remote::chromadb"),
BuildProvider(provider_type="remote::pgvector"),
],
"files": [BuildProvider(provider_type="inline::localfs")],
"safety": [BuildProvider(provider_type="inline::llama-guard")],
"agents": [BuildProvider(provider_type="inline::meta-reference")],
"telemetry": [BuildProvider(provider_type="inline::meta-reference")],
"post_training": [BuildProvider(provider_type="inline::huggingface")],
"eval": [BuildProvider(provider_type="inline::meta-reference")],
"datasetio": [
BuildProvider(provider_type="remote::huggingface"),
BuildProvider(provider_type="inline::localfs"),
],
"scoring": [
BuildProvider(provider_type="inline::basic"),
BuildProvider(provider_type="inline::llm-as-judge"),
BuildProvider(provider_type="inline::braintrust"),
],
"tool_runtime": [
BuildProvider(provider_type="remote::brave-search"),
BuildProvider(provider_type="remote::tavily-search"),
BuildProvider(provider_type="inline::rag-runtime"),
BuildProvider(provider_type="remote::model-context-protocol"),
],
}
files_provider = Provider(
provider_id="meta-reference-files",
provider_type="inline::localfs",
config=LocalfsFilesImplConfig.sample_run_config(f"~/.llama/distributions/{name}"),
)
embedding_provider = Provider(
provider_id="sentence-transformers",
provider_type="inline::sentence-transformers",
config=SentenceTransformersInferenceConfig.sample_run_config(),
)
default_tool_groups = [
ToolGroupInput(
toolgroup_id="builtin::websearch",
provider_id="tavily-search",
),
ToolGroupInput(
toolgroup_id="builtin::rag",
provider_id="rag-runtime",
),
]
default_shields = [
# if the
ShieldInput(
shield_id="llama-guard",
provider_id="${env.SAFETY_MODEL:+llama-guard}",
provider_shield_id="${env.SAFETY_MODEL:=}",
),
]
return DistributionTemplate(
name=name,
distro_type="self_hosted",
description="Quick start template for running Llama Stack with several popular providers",
container_image=None,
template_path=None,
providers=providers,
additional_pip_packages=PostgresSqlStoreConfig.pip_packages(),
run_configs={
"run.yaml": RunConfigSettings(
provider_overrides={
"inference": remote_inference_providers + [embedding_provider],
"vector_io": [
Provider(
provider_id="faiss",
provider_type="inline::faiss",
config=FaissVectorIOConfig.sample_run_config(f"~/.llama/distributions/{name}"),
),
Provider(
provider_id="sqlite-vec",
provider_type="inline::sqlite-vec",
config=SQLiteVectorIOConfig.sample_run_config(f"~/.llama/distributions/{name}"),
),
Provider(
provider_id="${env.MILVUS_URL:+milvus}",
provider_type="inline::milvus",
config=MilvusVectorIOConfig.sample_run_config(f"~/.llama/distributions/{name}"),
),
Provider(
provider_id="${env.CHROMADB_URL:+chromadb}",
provider_type="remote::chromadb",
config=ChromaVectorIOConfig.sample_run_config(
f"~/.llama/distributions/{name}/",
url="${env.CHROMADB_URL:=}",
),
),
Provider(
provider_id="${env.PGVECTOR_DB:+pgvector}",
provider_type="remote::pgvector",
config=PGVectorVectorIOConfig.sample_run_config(
f"~/.llama/distributions/{name}",
db="${env.PGVECTOR_DB:=}",
user="${env.PGVECTOR_USER:=}",
password="${env.PGVECTOR_PASSWORD:=}",
),
),
],
"files": [files_provider],
},
default_models=[],
default_tool_groups=default_tool_groups,
default_shields=default_shields,
),
},
run_config_env_vars={
"LLAMA_STACK_PORT": (
"8321",
"Port for the Llama Stack distribution server",
),
"FIREWORKS_API_KEY": (
"",
"Fireworks API Key",
),
"OPENAI_API_KEY": (
"",
"OpenAI API Key",
),
"GROQ_API_KEY": (
"",
"Groq API Key",
),
"ANTHROPIC_API_KEY": (
"",
"Anthropic API Key",
),
"GEMINI_API_KEY": (
"",
"Gemini API Key",
),
"SAMBANOVA_API_KEY": (
"",
"SambaNova API Key",
),
"VLLM_URL": (
"http://localhost:8000/v1",
"vLLM URL",
),
"VLLM_INFERENCE_MODEL": (
"",
"Optional vLLM Inference Model to register on startup",
),
"OLLAMA_URL": (
"http://localhost:11434",
"Ollama URL",
),
},
)