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Home Machine Learning

Enhancing RAG: Past Vanilla Approaches

Md Sazzad Hossain by Md Sazzad Hossain
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Enhancing RAG: Past Vanilla Approaches
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Retrieval-Augmented Technology (RAG) is a robust method that enhances language fashions by incorporating exterior info retrieval mechanisms. Whereas commonplace RAG implementations enhance response relevance, they usually wrestle in advanced retrieval situations. This text explores the constraints of a vanilla RAG setup and introduces superior methods to boost its accuracy and effectivity.

The Problem with Vanilla RAG

As an example RAG’s limitations, take into account a easy experiment the place we try and retrieve related info from a set of paperwork. Our dataset contains:

  • A major doc discussing finest practices for staying wholesome, productive, and in fine condition.
  • Two extra paperwork on unrelated subjects, however include some related phrases utilized in totally different contexts.
main_document_text = """
Morning Routine (5:30 AM - 9:00 AM)
✅ Wake Up Early - Goal for 6-8 hours of sleep to really feel well-rested.
✅ Hydrate First - Drink a glass of water to rehydrate your physique.
✅ Morning Stretch or Mild Train - Do 5-10 minutes of stretching or a brief exercise to activate your physique.
✅ Mindfulness or Meditation - Spend 5-10 minutes practising mindfulness or deep respiration.
✅ Wholesome Breakfast - Eat a balanced meal with protein, wholesome fat, and fiber.
✅ Plan Your Day - Set targets, assessment your schedule, and prioritize duties.
...
"""

Utilizing a regular RAG setup, we question the system with:

  1. What ought to I do to remain wholesome and productive?
  2. What are the very best practices to remain wholesome and productive?

Helper Features

To reinforce retrieval accuracy and streamline question processing, we implement a set of important helper capabilities. These capabilities serve numerous functions, from querying the ChatGPT API to computing doc embeddings and similarity scores. By leveraging these capabilities, we create a extra environment friendly RAG pipeline that successfully retrieves essentially the most related info for consumer queries.

To assist our RAG enhancements, we outline the next helper capabilities:

# **Imports**
import os
import json
import openai
import numpy as np
from scipy.spatial.distance import cosine
from google.colab import userdata

# Arrange OpenAI API key
os.environ["OPENAI_API_KEY"] = userdata.get('AiTeam')
def query_chatgpt(immediate, mannequin="gpt-4o", response_format=openai.NOT_GIVEN):
    attempt:
        response = consumer.chat.completions.create(
            mannequin=mannequin,
            messages=[{"role": "user", "content": prompt}],
            temperature=0.0 , # Regulate for roughly creativity
            response_format=response_format
        )
        return response.selections[0].message.content material.strip()
    besides Exception as e:
        return f"Error: {e}"
def get_embedding(textual content, mannequin="text-embedding-3-large"): #"text-embedding-ada-002"
    """Fetches the embedding for a given textual content utilizing OpenAI's API."""
    response = consumer.embeddings.create(
        enter=[text],
        mannequin=mannequin
    )
    return response.knowledge[0].embedding
def compute_similarity_metrics(embed1, embed2):
    """Computes totally different similarity/distance metrics between two embeddings."""
    cosine_sim = 1- cosine(embed1, embed2)  # Cosine similarity

    return cosine_sim
def fetch_similar_docs(question, docs, threshold = .55, high=1):
  query_em = get_embedding(question)
  knowledge = []
  for d in docs:
    # Compute and print similarity metrics
    similarity_results = compute_similarity_metrics(d["embedding"], query_em)
    if(similarity_results >= threshold):
      knowledge.append({"id":d["id"], "ref_doc":d.get("ref_doc", ""), "rating":similarity_results})

  # Sorting by worth (second ingredient in every tuple)
  sorted_data = sorted(knowledge, key=lambda x: x["score"], reverse=True)  # Ascending order
  sorted_data = sorted_data[:min(top, len(sorted_data))]
  return sorted_data

Evaluating the Vanilla RAG

To guage the effectiveness of a vanilla RAG setup, we conduct a easy check utilizing predefined queries. Our aim is to find out whether or not the system retrieves essentially the most related doc primarily based on semantic similarity. We then analyze the constraints and discover attainable enhancements.

"""# **Testing Vanilla RAG**"""

question = "what ought to I do to remain wholesome and productive?"
r = fetch_similar_docs(question, docs)
print("question = ", question)
print("paperwork = ", r)

question = "what are the very best practices to remain wholesome and productive ?"
r = fetch_similar_docs(question, docs)
print("question = ", question)
print("paperwork = ", r)

Superior Methods for Improved RAG

To additional refine the retrieval course of, we introduce superior capabilities that improve the capabilities of our RAG system. These capabilities generate structured info that aids in doc retrieval and question processing, making our system extra strong and context-aware.

To deal with these challenges, we implement three key enhancements:

1. Producing FAQs

By robotically creating a listing of steadily requested questions associated to a doc, we broaden the vary of potential queries the mannequin can match. These FAQs are generated as soon as and saved alongside the doc, offering a richer search house with out incurring ongoing prices.

def generate_faq(textual content):
  immediate = f'''
  given the next textual content: """{textual content}"""
  Ask related easy atomic questions ONLY (do not reply them) to cowl all topics coated by the textual content. Return the end result as a json record instance [q1, q2, q3...]
  '''
  return query_chatgpt(immediate, response_format={ "sort": "json_object" })

2. Creating an Overview

A high-level abstract of the doc helps seize its core concepts, making retrieval simpler. By embedding the overview alongside the doc, we offer extra entry factors for related queries, enhancing match charges.

def generate_overview(textual content):
  immediate = f'''
  given the next textual content: """{textual content}"""
  Generate an summary for it that tells in most 3 traces what's it about and use excessive degree phrases that can seize the details,
  Use phrases and phrases that will likely be most probably utilized by common individual.
  '''
  return query_chatgpt(immediate)

3. Question Decomposition

As a substitute of looking out with broad consumer queries, we break them down into smaller, extra exact sub-queries. Every sub-query is then in contrast in opposition to our enhanced doc assortment, which now contains:

  • The unique doc
  • The generated FAQs
  • The generated overview

By merging the retrieval outcomes from these a number of sources, we considerably enhance the chance of discovering related info.

def decompose_query(question):
  immediate = f'''
  Given the consumer question: """{question}"""
break it down into smaller, related subqueries
that may retrieve the very best info for answering the unique question.
Return them as a ranked json record instance [q1, q2, q3...].
'''
  return query_chatgpt(immediate, response_format={ "sort": "json_object" })

Evaluating the Improved RAG

Implementing these methods, we re-run our preliminary queries. This time, question decomposition generates a number of sub-queries, every specializing in totally different features of the unique query. In consequence, our system efficiently retrieves related info from each the FAQ and the unique doc, demonstrating a considerable enchancment over the vanilla RAG strategy.

"""# **Testing Superior Features**"""

## Generate overview of the doc
overview_text = generate_overview(main_document_text)
print(overview_text)
# generate embedding
docs.append({"id":"overview_text", "ref_doc": "main_document_text", "embedding":get_embedding(overview_text)})


## Generate FAQ for the doc
main_doc_faq_arr = generate_faq(main_document_text)
print(main_doc_faq_arr)
faq =json.hundreds(main_doc_faq_arr)["questions"]

for f, i in zip(faq, vary(len(faq))):
  docs.append({"id": f"main_doc_faq_{i}", "ref_doc": "main_document_text", "embedding":  get_embedding(f)})


## Decompose the first question
question = "what ought to I do to remain healty and productive?"
subqueries = decompose_query(question)
print(subqueries)




subqueries_list = json.hundreds(subqueries)['subqueries']


## compute the similarities between the subqueries and paperwork, together with FAQ
for subq in subqueries_list:
  print("question = ", subq)
  r = fetch_similar_docs(subq, docs, threshold=.55, high=2)
  print(r)
  print('=================================n')


## Decompose the 2nd question
question = "what the very best practices to remain healty and productive?"
subqueries = decompose_query(question)
print(subqueries)

subqueries_list = json.hundreds(subqueries)['subqueries']


## compute the similarities between the subqueries and paperwork, together with FAQ
for subq in subqueries_list:
  print("question = ", subq)
  r = fetch_similar_docs(subq, docs, threshold=.55, high=2)
  print(r)
  print('=================================n')

Listed below are a few of the FAQ that have been generated:

{
  "questions": [
    "How many hours of sleep are recommended to feel well-rested?",
    "How long should you spend on morning stretching or light exercise?",
    "What is the recommended duration for mindfulness or meditation in the morning?",
    "What should a healthy breakfast include?",
    "What should you do to plan your day effectively?",
    "How can you minimize distractions during work?",
    "How often should you take breaks during work/study productivity time?",
    "What should a healthy lunch consist of?",
    "What activities are recommended for afternoon productivity?",
    "Why is it important to move around every hour in the afternoon?",
    "What types of physical activities are suggested for the evening routine?",
    "What should a nutritious dinner include?",
    "What activities can help you reflect and unwind in the evening?",
    "What should you do to prepare for sleep?",
    …
  ]
}

Value-Profit Evaluation

Whereas these enhancements introduce an upfront processing price—producing FAQs, overviews, and embeddings—it is a one-time price per doc. In distinction, a poorly optimized RAG system would result in two main inefficiencies:

  1. Annoyed customers attributable to low-quality retrieval.
  2. Elevated question prices from retrieving extreme, loosely associated paperwork.

For methods dealing with excessive question volumes, these inefficiencies compound rapidly, making preprocessing a worthwhile funding.

Conclusion

By integrating doc preprocessing (FAQs and overviews) with question decomposition, we create a extra clever RAG system that balances accuracy and cost-effectiveness. This strategy enhances retrieval high quality, reduces irrelevant outcomes, and ensures a greater consumer expertise.

As RAG continues to evolve, these methods will likely be instrumental in refining AI-driven retrieval methods. Future analysis might discover additional optimizations, together with dynamic thresholding and reinforcement studying for question refinement.


Tags: ApproachesEnhancingRAGVanilla
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