NVIDIA AI Foundation Endpoints
NVIDIA AI Foundation Endpoints give users easy access to NVIDIA hosted API endpoints for NVIDIA AI Foundation Models like Mixtral 8x7B, Llama 2, Stable Diffusion, etc. These models, hosted on the NVIDIA API catalog, are optimized, tested, and hosted on the NVIDIA AI platform, making them fast and easy to evaluate, further customize, and seamlessly run at peak performance on any accelerated stack.
With NVIDIA AI Foundation Endpoints, you can get quick results from a fully accelerated stack running on NVIDIA DGX Cloud. Once customized, these models can be deployed anywhere with enterprise-grade security, stability, and support using NVIDIA AI Enterprise.
These models can be easily accessed via the
langchain-nvidia-ai-endpoints
package, as shown below.
This example goes over how to use LangChain to interact with the supported NVIDIA Retrieval QA Embedding Model for retrieval-augmented generation via the NVIDIAEmbeddings
class.
For more information on accessing the chat models through this api, check out the ChatNVIDIA documentation.
Installationโ
%pip install --upgrade --quiet langchain-nvidia-ai-endpoints
Note: you may need to restart the kernel to use updated packages.
Setupโ
To get started:
Create a free account with NVIDIA, which hosts NVIDIA AI Foundation models
Select the
Retrieval
tab, then select your model of choiceUnder
Input
select thePython
tab, and clickGet API Key
. Then clickGenerate Key
.Copy and save the generated key as
NVIDIA_API_KEY
. From there, you should have access to the endpoints.
import getpass
import os
# del os.environ['NVIDIA_API_KEY'] ## delete key and reset
if os.environ.get("NVIDIA_API_KEY", "").startswith("nvapi-"):
print("Valid NVIDIA_API_KEY already in environment. Delete to reset")
else:
nvapi_key = getpass.getpass("NVAPI Key (starts with nvapi-): ")
assert nvapi_key.startswith("nvapi-"), f"{nvapi_key[:5]}... is not a valid key"
os.environ["NVIDIA_API_KEY"] = nvapi_key
Valid NVIDIA_API_KEY already in environment. Delete to reset
We should be able to see an embedding model among that list which can be used in conjunction with an LLM for effective RAG solutions. We can interface with this model pretty easily with the help of the NVIDIAEmbeddings
model.
Initializationโ
When initializing an embedding model you can select a model by passing it, e.g. ai-embed-qa-4
below, or use the default by not passing any arguments.
from langchain_nvidia_ai_endpoints import NVIDIAEmbeddings
embedder = NVIDIAEmbeddings(model="ai-embed-qa-4")
API Reference:
This model is a fine-tuned E5-large model which supports the expected Embeddings
methods including:
embed_query
: Generate query embedding for a query sample.embed_documents
: Generate passage embeddings for a list of documents which you would like to search over.aembed_quey
/embed_documents
: Asynchronous versions of the above.
Similarityโ
The following is a quick test of the methods in terms of usage, format, and speed for the use case of embedding the following data points:
Queries:
What's the weather like in Komchatka?
What kinds of food is Italy known for?
What's my name? I bet you don't remember...
What's the point of life anyways?
The point of life is to have fun :D
Documents:
Komchatka's weather is cold, with long, severe winters.
Italy is famous for pasta, pizza, gelato, and espresso.
I can't recall personal names, only provide information.
Life's purpose varies, often seen as personal fulfillment.
Enjoying life's moments is indeed a wonderful approach.
Embedding Runtimesโ
import time
print("Single Query Embedding: ")
s = time.perf_counter()
q_embedding = embedder.embed_query("What's the weather like in Komchatka?")
elapsed = time.perf_counter() - s
print("\033[1m" + f"Executed in {elapsed:0.2f} seconds." + "\033[0m")
print("Shape:", (len(q_embedding),))
print("\nSequential Embedding: ")
s = time.perf_counter()
q_embeddings = [
embedder.embed_query("What's the weather like in Komchatka?"),
embedder.embed_query("What kinds of food is Italy known for?"),
embedder.embed_query("What's my name? I bet you don't remember..."),
embedder.embed_query("What's the point of life anyways?"),
embedder.embed_query("The point of life is to have fun :D"),
]
elapsed = time.perf_counter() - s
print("\033[1m" + f"Executed in {elapsed:0.2f} seconds." + "\033[0m")
print("Shape:", (len(q_embeddings), len(q_embeddings[0])))
print("\nBatch Query Embedding: ")
s = time.perf_counter()
# To use the "query" mode, we have to add it as an instance arg
q_embeddings = NVIDIAEmbeddings(
model="ai-embed-qa-4", model_type="query"
).embed_documents(
[
"What's the weather like in Komchatka?",
"What kinds of food is Italy known for?",
"What's my name? I bet you don't remember...",
"What's the point of life anyways?",
"The point of life is to have fun :D",
]
)
elapsed = time.perf_counter() - s
print("\033[1m" + f"Executed in {elapsed:0.2f} seconds." + "\033[0m")
print("Shape:", (len(q_embeddings), len(q_embeddings[0])))
Single Query Embedding:
[1mExecuted in 2.19 seconds.[0m
Shape: (1024,)
Sequential Embedding:
[1mExecuted in 3.16 seconds.[0m
Shape: (5, 1024)
Batch Query Embedding:
[1mExecuted in 1.23 seconds.[0m
Shape: (5, 1024)
Document Embeddingโ
import time
print("Single Document Embedding: ")
s = time.perf_counter()
d_embeddings = embedder.embed_documents(
[
"Komchatka's weather is cold, with long, severe winters.",
]
)
elapsed = time.perf_counter() - s
print("\033[1m" + f"Executed in {elapsed:0.2f} seconds." + "\033[0m")
print("Shape:", (len(q_embedding),))
print("\nBatch Document Embedding: ")
s = time.perf_counter()
d_embeddings = embedder.embed_documents(
[
"Komchatka's weather is cold, with long, severe winters.",
"Italy is famous for pasta, pizza, gelato, and espresso.",
"I can't recall personal names, only provide information.",
"Life's purpose varies, often seen as personal fulfillment.",
"Enjoying life's moments is indeed a wonderful approach.",
]
)
elapsed = time.perf_counter() - s
print("\033[1m" + f"Executed in {elapsed:0.2f} seconds." + "\033[0m")
print("Shape:", (len(q_embeddings), len(q_embeddings[0])))
Single Document Embedding:
[1mExecuted in 0.52 seconds.[0m
Shape: (1024,)
Batch Document Embedding:
[1mExecuted in 0.89 seconds.[0m
Shape: (5, 1024)
Now that we've generated our embeddings, we can do a simple similarity check on the results to see which documents would have triggered as reasonable answers in a retrieval task:
%pip install --upgrade --quiet matplotlib scikit-learn
Note: you may need to restart the kernel to use updated packages.
import matplotlib.pyplot as plt
import numpy as np
from sklearn.metrics.pairwise import cosine_similarity
# Assuming embeddings1 and embeddings2 are your two sets of vectors
# Compute the similarity matrix between embeddings1 and embeddings2
cross_similarity_matrix = cosine_similarity(
np.array(q_embeddings),
np.array(d_embeddings),
)
# Plotting the cross-similarity matrix
plt.figure(figsize=(8, 6))
plt.imshow(cross_similarity_matrix, cmap="Greens", interpolation="nearest")
plt.colorbar()
plt.title("Cross-Similarity Matrix")
plt.xlabel("Query Embeddings")
plt.ylabel("Document Embeddings")
plt.grid(True)
plt.show()
As a reminder, the queries and documents sent to our system were:
Queries:
What's the weather like in Komchatka?
What kinds of food is Italy known for?
What's my name? I bet you don't remember...
What's the point of life anyways?
The point of life is to have fun :D
Documents:
Komchatka's weather is cold, with long, severe winters.
Italy is famous for pasta, pizza, gelato, and espresso.
I can't recall personal names, only provide information.
Life's purpose varies, often seen as personal fulfillment.
Enjoying life's moments is indeed a wonderful approach.
RAG Retrieval:โ
The following is a repurposing of the initial example of the LangChain Expression Language Retrieval Cookbook entry, but executed with the AI Foundation Models' Mixtral 8x7B Instruct and NVIDIA Retrieval QA Embedding models available in their playground environments. The subsequent examples in the cookbook also run as expected, and we encourage you to explore with these options.
TIP: We would recommend using Mixtral for internal reasoning (i.e. instruction following for data extraction, tool selection, etc.) and Llama-Chat for a single final "wrap-up by making a simple response that works for this user based on the history and context" response.
%pip install --upgrade --quiet langchain faiss-cpu tiktoken
from operator import itemgetter
from langchain_community.vectorstores import FAISS
from langchain_core.output_parsers import StrOutputParser
from langchain_core.prompts import ChatPromptTemplate
from langchain_core.runnables import RunnablePassthrough
from langchain_nvidia_ai_endpoints import ChatNVIDIA
Note: you may need to restart the kernel to use updated packages.
vectorstore = FAISS.from_texts(
["harrison worked at kensho"],
embedding=NVIDIAEmbeddings(model="ai-embed-qa-4"),
)
retriever = vectorstore.as_retriever()
prompt = ChatPromptTemplate.from_messages(
[
(
"system",
"Answer solely based on the following context:\n<Documents>\n{context}\n</Documents>",
),
("user", "{question}"),
]
)
model = ChatNVIDIA(model="ai-mixtral-8x7b-instruct")
chain = (
{"context": retriever, "question": RunnablePassthrough()}
| prompt
| model
| StrOutputParser()
)
chain.invoke("where did harrison work?")
'Based on the document provided, Harrison worked at Kensho.'
prompt = ChatPromptTemplate.from_messages(
[
(
"system",
"Answer using information solely based on the following context:\n<Documents>\n{context}\n</Documents>"
"\nSpeak only in the following language: {language}",
),
("user", "{question}"),
]
)
chain = (
{
"context": itemgetter("question") | retriever,
"question": itemgetter("question"),
"language": itemgetter("language"),
}
| prompt
| model
| StrOutputParser()
)
chain.invoke({"question": "where did harrison work", "language": "italian"})
'Harrison ha lavorato presso Kensho.\n\n(In English: Harrison worked at Kensho.)'