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langchain_nvidia_ai_endpoints | ||
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LICENSE | ||
Makefile | ||
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pyproject.toml | ||
README.md |
langchain-nvidia-ai-endpoints
The langchain-nvidia-ai-endpoints
package contains LangChain integrations for chat models and embeddings powered by the NVIDIA AI Foundation Model playground environment.
NVIDIA AI Foundation Endpoints give users easy access to hosted endpoints for generative AI models like Llama-2, SteerLM, Mistral, etc. Using the API, you can query live endpoints available on the NVIDIA GPU Cloud (NGC) to get quick results from a DGX-hosted cloud compute environment. All models are source-accessible and can be deployed on your own compute cluster.
Below is an example on how to use some common functionality surrounding text-generative and embedding models
Installation
%pip install -U --quiet langchain-nvidia-ai-endpoints
Setup
To get started:
- Create a free account with the NVIDIA GPU Cloud service, which hosts AI solution catalogs, containers, models, etc.
- Navigate to
Catalog > AI Foundation Models > (Model with API endpoint)
. - Select the
API
option and clickGenerate Key
. - Save the generated key as
NVIDIA_API_KEY
. From there, you should have access to the endpoints.
import getpass
import os
if not os.environ.get("NVIDIA_API_KEY", "").startswith("nvapi-"):
nvidia_api_key = getpass.getpass("Enter your NVIDIA AIPLAY API key: ")
assert nvidia_api_key.startswith("nvapi-"), f"{nvidia_api_key[:5]}... is not a valid key"
os.environ["NVIDIA_API_KEY"] = nvidia_api_key
## Core LC Chat Interface
from langchain_nvidia_ai_endpoints import ChatNVIDIA
llm = ChatNVIDIA(model="mixtral_8x7b")
result = llm.invoke("Write a ballad about LangChain.")
print(result.content)
Stream, Batch, and Async
These models natively support streaming, and as is the case with all LangChain LLMs they expose a batch method to handle concurrent requests, as well as async methods for invoke, stream, and batch. Below are a few examples.
print(llm.batch(["What's 2*3?", "What's 2*6?"]))
# Or via the async API
# await llm.abatch(["What's 2*3?", "What's 2*6?"])
for chunk in llm.stream("How far can a seagull fly in one day?"):
# Show the token separations
print(chunk.content, end="|")
async for chunk in llm.astream("How long does it take for monarch butterflies to migrate?"):
print(chunk.content, end="|")
Supported models
Querying available_models
will still give you all of the other models offered by your API credentials.
The playground_
prefix is optional.
list(llm.available_models)
# ['playground_llama2_13b',
# 'playground_llama2_code_13b',
# 'playground_clip',
# 'playground_fuyu_8b',
# 'playground_mistral_7b',
# 'playground_nvolveqa_40k',
# 'playground_yi_34b',
# 'playground_nemotron_steerlm_8b',
# 'playground_nv_llama2_rlhf_70b',
# 'playground_llama2_code_34b',
# 'playground_mixtral_8x7b',
# 'playground_neva_22b',
# 'playground_steerlm_llama_70b',
# 'playground_nemotron_qa_8b',
# 'playground_sdxl']
Model types
All of these models above are supported and can be accessed via ChatNVIDIA
.
Some model types support unique prompting techniques and chat messages. We will review a few important ones below.
To find out more about a specific model, please navigate to the API section of an AI Foundation Model as linked here.
General Chat
Models such as llama2_13b
and mixtral_8x7b
are good all-around models that you can use for with any LangChain chat messages. Example below.
from langchain_nvidia_ai_endpoints import ChatNVIDIA
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.output_parsers import StrOutputParser
prompt = ChatPromptTemplate.from_messages(
[
("system", "You are a helpful AI assistant named Fred."),
("user", "{input}")
]
)
chain = (
prompt
| ChatNVIDIA(model="llama2_13b")
| StrOutputParser()
)
for txt in chain.stream({"input": "What's your name?"}):
print(txt, end="")
Code Generation
These models accept the same arguments and input structure as regular chat models, but they tend to perform better on code-genreation and structured code tasks. An example of this is llama2_code_13b
.
prompt = ChatPromptTemplate.from_messages(
[
("system", "You are an expert coding AI. Respond only in valid python; no narration whatsoever."),
("user", "{input}")
]
)
chain = (
prompt
| ChatNVIDIA(model="llama2_code_13b")
| StrOutputParser()
)
for txt in chain.stream({"input": "How do I solve this fizz buzz problem?"}):
print(txt, end="")
Steering LLMs
SteerLM-optimized models supports "dynamic steering" of model outputs at inference time.
This lets you "control" the complexity, verbosity, and creativity of the model via integer labels on a scale from 0 to 9. Under the hood, these are passed as a special type of assistant message to the model.
The "steer" models support this type of input, such as steerlm_llama_70b
from langchain_nvidia_ai_endpoints import ChatNVIDIA
llm = ChatNVIDIA(model="steerlm_llama_70b")
# Try making it uncreative and not verbose
complex_result = llm.invoke(
"What's a PB&J?",
labels={"creativity": 0, "complexity": 3, "verbosity": 0}
)
print("Un-creative\n")
print(complex_result.content)
# Try making it very creative and verbose
print("\n\nCreative\n")
creative_result = llm.invoke(
"What's a PB&J?",
labels={"creativity": 9, "complexity": 3, "verbosity": 9}
)
print(creative_result.content)
Use within LCEL
The labels are passed as invocation params. You can bind
these to the LLM using the bind
method on the LLM to include it within a declarative, functional chain. Below is an example.
from langchain_nvidia_ai_endpoints import ChatNVIDIA
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.output_parsers import StrOutputParser
prompt = ChatPromptTemplate.from_messages(
[
("system", "You are a helpful AI assistant named Fred."),
("user", "{input}")
]
)
chain = (
prompt
| ChatNVIDIA(model="steerlm_llama_70b").bind(labels={"creativity": 9, "complexity": 0, "verbosity": 9})
| StrOutputParser()
)
for txt in chain.stream({"input": "Why is a PB&J?"}):
print(txt, end="")
Multimodal
NVIDIA also supports multimodal inputs, meaning you can provide both images and text for the model to reason over.
These models also accept labels
, similar to the Steering LLMs above. In addition to creativity
, complexity
, and verbosity
, these models support a quality
toggle.
An example model supporting multimodal inputs is playground_neva_22b
.
These models accept LangChain's standard image formats. Below are examples.
import requests
image_url = "https://picsum.photos/seed/kitten/300/200"
image_content = requests.get(image_url).content
Initialize the model like so:
from langchain_nvidia_ai_endpoints import ChatNVIDIA
llm = ChatNVIDIA(model="playground_neva_22b")
Passing an image as a URL
from langchain_core.messages import HumanMessage
llm.invoke(
[
HumanMessage(content=[
{"type": "text", "text": "Describe this image:"},
{"type": "image_url", "image_url": {"url": image_url}},
])
])
### You can specify the labels for steering here as well. You can try setting a low verbosity, for instance
from langchain_core.messages import HumanMessage
llm.invoke(
[
HumanMessage(content=[
{"type": "text", "text": "Describe this image:"},
{"type": "image_url", "image_url": {"url": image_url}},
])
],
labels={
"creativity": 0,
"quality": 9,
"complexity": 0,
"verbosity": 0
}
)
Passing an image as a base64 encoded string
import base64
b64_string = base64.b64encode(image_content).decode('utf-8')
llm.invoke(
[
HumanMessage(content=[
{"type": "text", "text": "Describe this image:"},
{"type": "image_url", "image_url": {"url": f"data:image/png;base64,{b64_string}"}},
])
])
Directly within the string
The NVIDIA API uniquely accepts images as base64 images inlined within HTML tags. While this isn't interoperable with other LLMs, you can directly prompt the model accordingly.
base64_with_mime_type = f"data:image/png;base64,{b64_string}"
llm.invoke(
f'What\'s in this image?\n<img src="{base64_with_mime_type}" />'
)
RAG: Context models
NVIDIA also has Q&A models that support a special "context" chat message containing retrieved context (such as documents within a RAG chain). This is useful to avoid prompt-injecting the model.
Note: Only "user" (human) and "context" chat messages are supported for these models, not system or AI messages useful in conversational flows.
The _qa_
models like nemotron_qa_8b
support this.
from langchain_nvidia_ai_endpoints import ChatNVIDIA
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.output_parsers import StrOutputParser
from langchain_core.messages import ChatMessage
prompt = ChatPromptTemplate.from_messages(
[
ChatMessage(role="context", content="Parrots and Cats have signed the peace accord."),
("user", "{input}")
]
)
llm = ChatNVIDIA(model="nemotron_qa_8b")
chain = (
prompt
| llm
| StrOutputParser()
)
chain.invoke({"input": "What was signed?"})
Embeddings
You can also connect to embeddings models through this package. Below is an example:
from langchain_nvidia_ai_endpoints import NVIDIAEmbeddings
embedder = NVIDIAEmbeddings(model="nvolveqa_40k")
embedder.embed_query("What's the temperature today?")
embedder.embed_documents([
"The temperature is 42 degrees.",
"Class is dismissed at 9 PM."
])
By default the embedding model will use the "passage" type for documents and "query" type for queries, but you can fix this on the instance.
query_embedder = NVIDIAEmbeddings(model="nvolveqa_40k", model_type="query")
doc_embeddder = NVIDIAEmbeddings(model="nvolveqa_40k", model_type="passage")