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langchain/docs/docs/integrations/retrievers/activeloop.ipynb

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{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Activeloop Deep Memory"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
">[Activeloop Deep Memory](https://docs.activeloop.ai/performance-features/deep-memory) is a suite of tools that enables you to optimize your Vector Store for your use-case and achieve higher accuracy in your LLM apps.\n",
"\n",
"`Retrieval-Augmented Generatation` (`RAG`) has recently gained significant attention. As advanced RAG techniques and agents emerge, they expand the potential of what RAGs can accomplish. However, several challenges may limit the integration of RAGs into production. The primary factors to consider when implementing RAGs in production settings are accuracy (recall), cost, and latency. For basic use cases, OpenAI's Ada model paired with a naive similarity search can produce satisfactory results. Yet, for higher accuracy or recall during searches, one might need to employ advanced retrieval techniques. These methods might involve varying data chunk sizes, rewriting queries multiple times, and more, potentially increasing latency and costs. Activeloop's [Deep Memory](https://www.activeloop.ai/resources/use-deep-memory-to-boost-rag-apps-accuracy-by-up-to-22/) a feature available to `Activeloop Deep Lake` users, addresses these issuea by introducing a tiny neural network layer trained to match user queries with relevant data from a corpus. While this addition incurs minimal latency during search, it can boost retrieval accuracy by up to 27\n",
"% and remains cost-effective and simple to use, without requiring any additional advanced rag techniques.\n"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"For this tutorial we will parse `DeepLake` documentation, and create a RAG system that could answer the question from the docs. \n"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## 1. Dataset Creation"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"We will parse activeloop's docs for this tutorial using `BeautifulSoup` library and LangChain's document parsers like `Html2TextTransformer`, `AsyncHtmlLoader`. So we will need to install the following libraries:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"%pip install --upgrade --quiet tiktoken langchain-openai python-dotenv datasets langchain deeplake beautifulsoup4 html2text ragas"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Also you'll need to create a [Activeloop](https://activeloop.ai) account."
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"ORG_ID = \"...\""
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"import getpass\n",
"import os\n",
"\n",
"from langchain.chains import RetrievalQA\n",
"from langchain.vectorstores.deeplake import DeepLake\n",
"from langchain_openai import OpenAIChat, OpenAIEmbeddings\n",
"\n",
"os.environ[\"OPENAI_API_KEY\"] = getpass.getpass(\"Enter your OpenAI API token: \")\n",
"# # activeloop token is needed if you are not signed in using CLI: `activeloop login -u <USERNAME> -p <PASSWORD>`\n",
"os.environ[\"ACTIVELOOP_TOKEN\"] = getpass.getpass(\n",
" \"Enter your ActiveLoop API token: \"\n",
") # Get your API token from https://app.activeloop.ai, click on your profile picture in the top right corner, and select \"API Tokens\"\n",
"\n",
"token = os.getenv(\"ACTIVELOOP_TOKEN\")\n",
"openai_embeddings = OpenAIEmbeddings()"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"db = DeepLake(\n",
" dataset_path=f\"hub://{ORG_ID}/deeplake-docs-deepmemory\", # org_id stands for your username or organization from activeloop\n",
" embedding=openai_embeddings,\n",
" runtime={\"tensor_db\": True},\n",
" token=token,\n",
" # overwrite=True, # user overwrite flag if you want to overwrite the full dataset\n",
" read_only=False,\n",
")"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"parsing all links in the webpage using `BeautifulSoup`"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from urllib.parse import urljoin\n",
"\n",
"import requests\n",
"from bs4 import BeautifulSoup\n",
"\n",
"\n",
"def get_all_links(url):\n",
" response = requests.get(url)\n",
" if response.status_code != 200:\n",
" print(f\"Failed to retrieve the page: {url}\")\n",
" return []\n",
"\n",
" soup = BeautifulSoup(response.content, \"html.parser\")\n",
"\n",
" # Finding all 'a' tags which typically contain href attribute for links\n",
" links = [\n",
" urljoin(url, a[\"href\"]) for a in soup.find_all(\"a\", href=True) if a[\"href\"]\n",
" ]\n",
"\n",
" return links\n",
"\n",
"\n",
"base_url = \"https://docs.deeplake.ai/en/latest/\"\n",
"all_links = get_all_links(base_url)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Loading data:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from langchain.document_loaders import AsyncHtmlLoader\n",
"\n",
"loader = AsyncHtmlLoader(all_links)\n",
"docs = loader.load()"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Converting data into user readable format:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from langchain.document_transformers import Html2TextTransformer\n",
"\n",
"html2text = Html2TextTransformer()\n",
"docs_transformed = html2text.transform_documents(docs)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Now, let us chunk further the documents as some of the contain too much text:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from langchain.text_splitter import RecursiveCharacterTextSplitter\n",
"\n",
"chunk_size = 4096\n",
"docs_new = []\n",
"\n",
"text_splitter = RecursiveCharacterTextSplitter(\n",
" chunk_size=chunk_size,\n",
")\n",
"\n",
"for doc in docs_transformed:\n",
" if len(doc.page_content) < chunk_size:\n",
" docs_new.append(doc)\n",
" else:\n",
" docs = text_splitter.create_documents([doc.page_content])\n",
" docs_new.extend(docs)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Populating VectorStore:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"docs = db.add_documents(docs_new)"
]
},
{
"cell_type": "markdown",
"metadata": {
"jp-MarkdownHeadingCollapsed": true
},
"source": [
"## 2. Generating synthetic queries and training Deep Memory "
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Next step would be to train a deep_memory model that will align your users queries with the dataset that you already have. If you don't have any user queries yet, no worries, we will generate them using LLM!"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"![Alt 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)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Here above we showed the overall schema how deep_memory works. So as you can see, in order to train it you need relevance, queries together with corpus data (data that we want to query). Corpus data was already populated in the previous section, here we will be generating questions and relevance. \n",
"\n",
"1. `questions` - is a text of strings, where each string represents a query\n",
"2. `relevance` - contains links to the ground truth for each question. There might be several docs that contain answer to the given question. Because of this relevenve is `List[List[tuple[str, float]]]`, where outer list represents queries and inner list relevant documents. Tuple contains str, float pair where string represent the id of the source doc (corresponds to the `id` tensor in the dataset), while float corresponds to how much current document is related to the question. "
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Now, let us generate synthetic questions and relevance:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from typing import List\n",
"\n",
"from langchain.chains.openai_functions import (\n",
" create_structured_output_chain,\n",
")\n",
"from langchain_core.messages import HumanMessage, SystemMessage\n",
"from langchain_core.prompts import ChatPromptTemplate, HumanMessagePromptTemplate\n",
"from langchain_openai import ChatOpenAI\n",
"from pydantic import BaseModel, Field"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"# fetch dataset docs and ids if they exist (optional you can also ingest)\n",
"docs = db.vectorstore.dataset.text.data(fetch_chunks=True, aslist=True)[\"value\"]\n",
"ids = db.vectorstore.dataset.id.data(fetch_chunks=True, aslist=True)[\"value\"]"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"# If we pass in a model explicitly, we need to make sure it supports the OpenAI function-calling API.\n",
"llm = ChatOpenAI(model=\"gpt-3.5-turbo\", temperature=0)\n",
"\n",
"\n",
"class Questions(BaseModel):\n",
" \"\"\"Identifying information about a person.\"\"\"\n",
"\n",
" question: str = Field(..., description=\"Questions about text\")\n",
"\n",
"\n",
"prompt_msgs = [\n",
" SystemMessage(\n",
" content=\"You are a world class expert for generating questions based on provided context. \\\n",
" You make sure the question can be answered by the text.\"\n",
" ),\n",
" HumanMessagePromptTemplate.from_template(\n",
" \"Use the given text to generate a question from the following input: {input}\"\n",
" ),\n",
" HumanMessage(content=\"Tips: Make sure to answer in the correct format\"),\n",
"]\n",
"prompt = ChatPromptTemplate(messages=prompt_msgs)\n",
"chain = create_structured_output_chain(Questions, llm, prompt, verbose=True)\n",
"\n",
"text = \"# Understanding Hallucinations and Bias ## **Introduction** In this lesson, we'll cover the concept of **hallucinations** in LLMs, highlighting their influence on AI applications and demonstrating how to mitigate them using techniques like the retriever's architectures. We'll also explore **bias** within LLMs with examples.\"\n",
"questions = chain.run(input=text)\n",
"print(questions)"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"import random\n",
"\n",
"from langchain_openai import OpenAIEmbeddings\n",
"from tqdm import tqdm\n",
"\n",
"\n",
"def generate_queries(docs: List[str], ids: List[str], n: int = 100):\n",
" questions = []\n",
" relevances = []\n",
" pbar = tqdm(total=n)\n",
" while len(questions) < n:\n",
" # 1. randomly draw a piece of text and relevance id\n",
" r = random.randint(0, len(docs) - 1)\n",
" text, label = docs[r], ids[r]\n",
"\n",
" # 2. generate queries and assign and relevance id\n",
" generated_qs = [chain.run(input=text).question]\n",
" questions.extend(generated_qs)\n",
" relevances.extend([[(label, 1)] for _ in generated_qs])\n",
" pbar.update(len(generated_qs))\n",
" if len(questions) % 10 == 0:\n",
" print(f\"q: {len(questions)}\")\n",
" return questions[:n], relevances[:n]\n",
"\n",
"\n",
"chain = create_structured_output_chain(Questions, llm, prompt, verbose=False)\n",
"questions, relevances = generate_queries(docs, ids, n=200)\n",
"\n",
"train_questions, train_relevances = questions[:100], relevances[:100]\n",
"test_questions, test_relevances = questions[100:], relevances[100:]"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Now we created 100 training queries as well as 100 queries for testing. Now let us train the deep_memory:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"job_id = db.vectorstore.deep_memory.train(\n",
" queries=train_questions,\n",
" relevance=train_relevances,\n",
")"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Let us track the training progress:"
]
},
{
"cell_type": "code",
"execution_count": 1,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"\n",
"--------------------------------------------------------------\n",
"| 6538e02ecda4691033a51c5b |\n",
"--------------------------------------------------------------\n",
"| status | completed |\n",
"--------------------------------------------------------------\n",
"| progress | eta: 1.4 seconds |\n",
"| | recall@10: 79.00% (+34.00%) |\n",
"--------------------------------------------------------------\n",
"| results | recall@10: 79.00% (+34.00%) |\n",
"--------------------------------------------------------------\n",
"\n"
]
}
],
"source": [
"db.vectorstore.deep_memory.status(\"6538939ca0b69a9ca45c528c\")"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## 3. Evaluating Deep Memory performance"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Great we've trained the model! It's showing some substantial improvement in recall, but how can we use it now and evaluate on unseen new data? In this section we will delve into model evaluation and inference part and see how it can be used with LangChain in order to increase retrieval accuracy"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### 3.1 Deep Memory evaluation"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"For the beginning we can use deep_memory's builtin evaluation method. \n",
"It calculates several `recall` metrics.\n",
"It can be done easily in a few lines of code."
]
},
{
"cell_type": "code",
"execution_count": 2,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"\n",
"Embedding queries took 0.81 seconds\n",
"---- Evaluating without model ---- \n",
"Recall@1:\t 9.0%\n",
"Recall@3:\t 19.0%\n",
"Recall@5:\t 24.0%\n",
"Recall@10:\t 42.0%\n",
"Recall@50:\t 93.0%\n",
"Recall@100:\t 98.0%\n",
"---- Evaluating with model ---- \n",
"Recall@1:\t 19.0%\n",
"Recall@3:\t 42.0%\n",
"Recall@5:\t 49.0%\n",
"Recall@10:\t 69.0%\n",
"Recall@50:\t 97.0%\n",
"Recall@100:\t 97.0%\n",
"\n"
]
}
],
"source": [
"recall = db.vectorstore.deep_memory.evaluate(\n",
" queries=test_questions,\n",
" relevance=test_relevances,\n",
")"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"It is showing quite substatntial improvement on an unseen test dataset too!!!"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### 3.2 Deep Memory + RAGas"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"from ragas.langchain import RagasEvaluatorChain\n",
"from ragas.metrics import (\n",
" context_recall,\n",
")"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Let us convert recall into ground truths:"
]
},
{
"cell_type": "code",
"execution_count": null,
"metadata": {},
"outputs": [],
"source": [
"def convert_relevance_to_ground_truth(docs, relevance):\n",
" ground_truths = []\n",
"\n",
" for rel in relevance:\n",
" ground_truth = []\n",
" for doc_id, _ in rel:\n",
" ground_truth.append(docs[doc_id])\n",
" ground_truths.append(ground_truth)\n",
" return ground_truths"
]
},
{
"cell_type": "code",
"execution_count": 3,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"\n",
"Evaluating with deep_memory = False\n",
"===================================\n",
"context_recall_score = 0.3763423145\n",
"===================================\n",
"\n",
"Evaluating with deep_memory = True\n",
"===================================\n",
"context_recall_score = 0.5634545323\n",
"===================================\n",
"\n"
]
}
],
"source": [
"ground_truths = convert_relevance_to_ground_truth(docs, test_relevances)\n",
"\n",
"for deep_memory in [False, True]:\n",
" print(\"\\nEvaluating with deep_memory =\", deep_memory)\n",
" print(\"===================================\")\n",
"\n",
" retriever = db.as_retriever()\n",
" retriever.search_kwargs[\"deep_memory\"] = deep_memory\n",
"\n",
" qa_chain = RetrievalQA.from_chain_type(\n",
" llm=OpenAIChat(model=\"gpt-3.5-turbo\"),\n",
" chain_type=\"stuff\",\n",
" retriever=retriever,\n",
" return_source_documents=True,\n",
" )\n",
"\n",
" metrics = {\n",
" \"context_recall_score\": 0,\n",
" }\n",
"\n",
" eval_chains = {m.name: RagasEvaluatorChain(metric=m) for m in [context_recall]}\n",
"\n",
" for question, ground_truth in zip(test_questions, ground_truths):\n",
" result = qa_chain({\"query\": question})\n",
" result[\"ground_truths\"] = ground_truth\n",
" for name, eval_chain in eval_chains.items():\n",
" score_name = f\"{name}_score\"\n",
" metrics[score_name] += eval_chain(result)[score_name]\n",
"\n",
" for metric in metrics:\n",
" metrics[metric] /= len(test_questions)\n",
" print(f\"{metric}: {metrics[metric]}\")\n",
" print(\"===================================\")"
]
},
{
"cell_type": "markdown",
"metadata": {
"jp-MarkdownHeadingCollapsed": true
},
"source": [
"### 3.3 Deep Memory Inference"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"![Alt text](data:image/png;base64,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)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"with deep_memory"
]
},
{
"cell_type": "code",
"execution_count": 4,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"The base htype of the 'video_seq' tensor is 'video'.\n"
]
}
],
"source": [
"retriever = db.as_retriever()\n",
"retriever.search_kwargs[\"deep_memory\"] = True\n",
"retriever.search_kwargs[\"k\"] = 10\n",
"\n",
"query = \"Deamination of cytidine to uridine on the minus strand of viral DNA results in catastrophic G-to-A mutations in the viral genome.\"\n",
"qa = RetrievalQA.from_chain_type(\n",
" llm=OpenAIChat(model=\"gpt-4\"), chain_type=\"stuff\", retriever=retriever\n",
")\n",
"print(qa.run(query))"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"without deep_memory"
]
},
{
"cell_type": "code",
"execution_count": 5,
"metadata": {},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"The text does not provide information on the base htype of the 'video_seq' tensor.\n"
]
}
],
"source": [
"retriever = db.as_retriever()\n",
"retriever.search_kwargs[\"deep_memory\"] = False\n",
"retriever.search_kwargs[\"k\"] = 10\n",
"\n",
"query = \"Deamination of cytidine to uridine on the minus strand of viral DNA results in catastrophic G-to-A mutations in the viral genome.\"\n",
"qa = RetrievalQA.from_chain_type(\n",
" llm=OpenAIChat(model=\"gpt-4\"), chain_type=\"stuff\", retriever=retriever\n",
")\n",
"qa.run(query)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### 3.4 Deep Memory cost savings"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Deep Memory increases retrieval accuracy without altering your existing workflow. Additionally, by reducing the top_k input into the LLM, you can significantly cut inference costs via lower token usage."
]
}
],
"metadata": {
"kernelspec": {
"display_name": "Python 3 (ipykernel)",
"language": "python",
"name": "python3"
},
"language_info": {
"codemirror_mode": {
"name": "ipython",
"version": 3
},
"file_extension": ".py",
"mimetype": "text/x-python",
"name": "python",
"nbconvert_exporter": "python",
"pygments_lexer": "ipython3",
"version": "3.10.1"
}
},
"nbformat": 4,
"nbformat_minor": 4
}