Saturday, June 28, 2025

Construct an AI Journal with LlamaIndex


will share the right way to construct an AI journal with the LlamaIndex. We’ll cowl one important operate of this AI journal: asking for recommendation. We’ll begin with probably the most fundamental implementation and iterate from there. We are able to see vital enhancements for this operate after we apply design patterns like Agentic Rag and multi-agent workflow.

Yow will discover the supply code of this AI Journal in my GitHub repo right here. And about who I’m.

Overview of AI Journal

I wish to construct my ideas by following Ray Dalio’s apply. An AI journal will assist me to self-reflect, observe my enchancment, and even give me recommendation. The general operate of such an AI journal seems to be like this:

AI Journal Overview. Picture by Creator.

Right this moment, we’ll solely cowl the implementation of the seek-advise movement, which is represented by a number of purple cycles within the above diagram.

Easiest Type: LLM with Giant Context

In probably the most easy implementation, we will cross all of the related content material into the context and fasten the query we wish to ask. We are able to do this in Llamaindex with just a few strains of code.

import pymupdf
from llama_index.llms.openai import OpenAI

path_to_pdf_book = './path/to/pdf/ebook.pdf'
def load_book_content():
    textual content = ""
    with pymupdf.open(path_to_pdf_book) as pdf:
        for web page in pdf:
            textual content += str(web page.get_text().encode("utf8", errors='ignore'))
    return textual content

system_prompt_template = """You're an AI assistant that gives considerate, sensible, and *deeply customized* ideas by combining:
- The consumer's private profile and ideas
- Insights retrieved from *Ideas* by Ray Dalio
E-book Content material: 
```
{book_content}
```
Consumer profile:
```
{user_profile}
```
Consumer's query:
```
{user_question}
```
"""

def get_system_prompt(book_content: str, user_profile: str, user_question: str):
    system_prompt = system_prompt_template.format(
        book_content=book_content,
        user_profile=user_profile,
        user_question=user_question
    )
    return system_prompt

def chat():
    llm = get_openai_llm()
    user_profile = enter(">>Inform me about your self: ")
    user_question = enter(">>What do you wish to ask: ")
    user_profile = user_profile.strip()
    book_content = load_book_summary()
    response = llm.full(immediate=get_system_prompt(book_content, user_profile, user_question))
    return response

This method has downsides:

  • Low Precision: Loading all of the ebook context may immediate LLM to lose concentrate on the consumer’s query.
  • Excessive Value: Sending over significant-sized content material in each LLM name means excessive price and poor efficiency.

With this method, for those who cross the entire content material of Ray Dalio’s Ideas ebook, responses to questions like “ deal with stress?” grow to be very common. Such responses with out referring to my query made me really feel that the AI was not listening to me. Despite the fact that it covers many essential ideas like embracing actuality, the 5-step course of to get what you need, and being radically open-minded. I like the recommendation I received to be extra focused to the query I raised. Let’s see how we will enhance it with RAG.

Enhanced Type: Agentic RAG

So, what’s Agentic RAG? Agentic RAG is combining dynamic decision-making and knowledge retrieval. In our AI journal, the Agentic RAG movement seems to be like this:

Phases of Agentic Rag. Picture by Creator
  • Query Analysis: Poorly framed questions result in poor question outcomes. The agent will consider the consumer’s question and make clear the questions if the Agent believes it’s mandatory.
  • Query Re-write: Rewrite the consumer enquiry to mission it to the listed content material within the semantic area. I discovered these steps important for bettering the precision through the retrieval. Let’s say in case your information base is Q/A pair and you might be indexing the questions half to seek for solutions. Rewriting the consumer’s question assertion to a correct query will allow you to discover probably the most related content material.
  • Question Vector Index: Many parameters might be tuned when constructing such an index, together with chunk dimension, overlap, or a unique index kind. For simplicity, we’re utilizing VectorStoreIndex right here, which has a default chunking technique.
  • Filter & Artificial: As an alternative of a fancy re-ranking course of, I explicitly instruct LLM to filter and discover related content material within the immediate. I see LLM choosing up probably the most related content material, though typically it has a decrease similarity rating than others.

With this Agentic RAG, you may retrieve extremely related content material to the consumer’s questions, producing extra focused recommendation.

Let’s look at the implementation. With the LlamaIndex SDK, creating and persisting an index in your native listing is easy.

from llama_index.core import Doc, VectorStoreIndex, StorageContext, load_index_from_storage

Settings.embed_model = OpenAIEmbedding(api_key="ak-xxxx")
PERSISTED_INDEX_PATH = "/path/to/the/listing/persist/index/domestically"

def create_index(content material: str):
    paperwork = [Document(text=content)]
    vector_index = VectorStoreIndex.from_documents(paperwork)
    vector_index.storage_context.persist(persist_dir=PERSISTED_INDEX_PATH)

def load_index():
    storage_context = StorageContext.from_defaults(persist_dir=PERSISTED_INDEX_PATH)
    index = load_index_from_storage(storage_context)
    return index

As soon as we have now an index, we will create a question engine on high of that. The question engine is a strong abstraction that means that you can regulate the parameters through the question(e.g., TOP Okay) and the synthesis behaviour after the content material retrieval. In my implementation, I overwrite the response_mode NO_TEXT as a result of the agent will course of the ebook content material returned by the operate name and synthesize the ultimate outcome. Having the question engine to synthesize the outcome earlier than passing it to the agent can be redundant.

from llama_index.core.indices.vector_store import VectorIndexRetriever
from llama_index.core.query_engine import RetrieverQueryEngine
from llama_index.core.response_synthesizers import ResponseMode
from llama_index.core import  VectorStoreIndex, get_response_synthesizer

def _create_query_engine_from_index(index: VectorStoreIndex):
    # configure retriever
    retriever = VectorIndexRetriever(
        index=index,
        similarity_top_k=TOP_K,
    )
    # return the unique content material with out utilizing LLM to synthesizer. For later analysis.
    response_synthesizer = get_response_synthesizer(response_mode=ResponseMode.NO_TEXT)
    # assemble question engine
    query_engine = RetrieverQueryEngine(
        retriever=retriever,
        response_synthesizer=response_synthesizer
    )
    return query_engine

The immediate seems to be like the next:

You're an assistant that helps reframe consumer questions into clear, concept-driven statements that match 
the fashion and subjects of Ideas by Ray Dalio, and carry out lookup precept ebook for related content material. 

Background:
Ideas teaches structured excited about life and work choices.
The important thing concepts are:
* Radical fact and radical transparency
* Determination-making frameworks
* Embracing errors as studying

Job:
- Job 1: Make clear the consumer's query if wanted. Ask follow-up questions to make sure you perceive the consumer's intent.
- Job 2: Rewrite a consumer’s query into an announcement that will match how Ray Dalio frames concepts in Ideas. Use formal, logical, impartial tone.
- Job 3: Search for precept ebook with given re-wrote statements. It's best to present no less than {REWRITE_FACTOR} rewrote variations.
- Job 4: Discover probably the most related from the ebook content material as your fina solutions.

Lastly, we will construct the agent with these features outlined.

def get_principle_rag_agent():
    index = load_persisted_index()
    query_engine = _create_query_engine_from_index(index)

    def look_up_principle_book(original_question: str, rewrote_statement: Record[str]) -> Record[str]:
        outcome = []
        for q in rewrote_statement:
            response = query_engine.question(q)
            content material = [n.get_content() for n in response.source_nodes]
            outcome.prolong(content material)
        return outcome

    def clarify_question(original_question: str, your_questions_to_user: Record[str]) -> str:
        """
        Make clear the consumer's query if wanted. Ask follow-up questions to make sure you perceive the consumer's intent.
        """
        response = ""
        for q in your_questions_to_user:
            print(f"Query: {q}")
            r = enter("Response:")
            response += f"Query: {q}nResponse: {r}n"
        return response

    instruments = [
        FunctionTool.from_defaults(
            fn=look_up_principle_book,
            name="look_up_principle_book",
            description="Look up principle book with re-wrote queries. Getting the suggestions from the Principle book by Ray Dalio"),
        FunctionTool.from_defaults(
            fn=clarify_question,
            name="clarify_question",
            description="Clarify the user's question if needed. Ask follow-up questions to ensure you understand the user's intent.",
        )
    ]

    agent = FunctionAgent(
        identify="principle_reference_loader",
        description="You're a useful agent will primarily based on consumer's query and lookup probably the most related content material in precept ebook.n",
        system_prompt=QUESTION_REWRITE_PROMPT,
        instruments=instruments,
    )
    return agent

rag_agent = get_principle_rag_agent()
response = await agent.run(chat_history=chat_history)

There are just a few observations I had through the implementations:

  • One attention-grabbing truth I discovered is that offering a non-used parameter, original_question , within the operate signature helps. I discovered that after I would not have such a parameter, LLM typically doesn’t comply with the rewrite instruction and passes the unique query in rewrote_statement the parameter. Having original_question parameters someway emphasizes the rewriting mission to LLM.
  • Completely different LLMs behave fairly otherwise given the identical immediate. I discovered DeepSeek V3 far more reluctant to set off operate calls than different mannequin suppliers. This doesn’t essentially imply it isn’t usable. If a purposeful name needs to be initiated 90% of the time, it needs to be a part of the workflow as a substitute of being registered as a operate name. Additionally, in comparison with OpenAI’s fashions, I discovered Gemini good at citing the supply of the ebook when it synthesizes the outcomes.
  • The extra content material you load into the context window, the extra inference functionality the mannequin wants. A smaller mannequin with much less inference energy is extra more likely to get misplaced within the giant context offered.

Nevertheless, to finish the seek-advice operate, you’ll want a number of Brokers working collectively as a substitute of a single Agent. Let’s speak about the right way to chain your Brokers collectively into workflows.

Closing Type: Agent Workflow

Earlier than we begin, I like to recommend this text by Anthropic, Constructing Efficient Brokers. The one-liner abstract of the articles is that it’s best to all the time prioritise constructing a workflow as a substitute of a dynamic agent when potential. In LlamaIndex, you are able to do each. It means that you can create an agent workflow with extra computerized routing or a personalized workflow with extra express management of the transition of steps. I’ll present an instance of each implementations.

Workflow Clarify. Picture by Creator.

Let’s check out how one can construct a dynamic workflow. Here’s a code instance.

interviewer = FunctionAgent(
        identify="interviewer",
        description="Helpful agent to make clear consumer's questions",
        system_prompt=_intervierw_prompt,
        can_handoff_to = ["retriver"]
        instruments=instruments
)
interviewer = FunctionAgent(
        identify="retriever",
        description="Helpful agent to retrive precept ebook's content material.",
        system_prompt=_retriver_prompt,
        can_handoff_to = ["advisor"]
        instruments=instruments
)
advisor = FunctionAgent(
        identify="advisor",
        description="Helpful agent to advise consumer.",
        system_prompt=_advisor_prompt,
        can_handoff_to = []
        instruments=instruments
)
workflow = AgentWorkflow(
        brokers=[interviewer, advisor, retriever],
        root_agent="interviewer",
    )
handler = await workflow.run(user_msg=" deal with stress?")

It’s dynamic as a result of the Agent transition is predicated on the operate name of the LLM mannequin. Underlying, LlamaIndex workflow gives agent descriptions as features for LLM fashions. When the LLM mannequin triggers such “Agent Operate Name”, LlamaIndex will path to your subsequent corresponding agent for the next step processing. Your earlier agent’s output has been added to the workflow inner state, and your following agent will choose up the state as a part of the context of their name to the LLM mannequin. You additionally leverage state and reminiscence elements to handle the workflow’s inner state or load exterior knowledge(reference the doc right here).

Nevertheless, as I’ve instructed, you may explicitly management the steps in your workflow to realize extra management. With LlamaIndex, it may be executed by extending the workflow object. For instance:

class ReferenceRetrivalEvent(Occasion):
    query: str

class Recommendation(Occasion):
    ideas: Record[str]
    profile: dict
    query: str
    book_content: str

class AdviceWorkFlow(Workflow):
    def __init__(self, verbose: bool = False, session_id: str = None):
        state = get_workflow_state(session_id)
        self.ideas = state.load_principle_from_cases()
        self.profile = state.load_profile()
        self.verbose = verbose
        tremendous().__init__(timeout=None, verbose=verbose)

    @step
    async def interview(self, ctx: Context,
                        ev: StartEvent) -> ReferenceRetrivalEvent:
        # Step 1: Interviewer agent asks inquiries to the consumer
        interviewer = get_interviewer_agent()
        query = await _run_agent(interviewer, query=ev.user_msg, verbose=self.verbose)

        return ReferenceRetrivalEvent(query=query)

    @step
    async def retrieve(self, ctx: Context, ev: ReferenceRetrivalEvent) -> Recommendation:
        # Step 2: RAG agent retrieves related content material from the ebook
        rag_agent = get_principle_rag_agent()
        book_content = await _run_agent(rag_agent, query=ev.query, verbose=self.verbose)
        return Recommendation(ideas=self.ideas, profile=self.profile,
                      query=ev.query, book_content=book_content)

    @step
    async def recommendation(self, ctx: Context, ev: Recommendation) -> StopEvent:
        # Step 3: Adviser agent gives recommendation primarily based on the consumer's profile, ideas, and ebook content material
        advisor = get_adviser_agent(ev.profile, ev.ideas, ev.book_content)
        advise = await _run_agent(advisor, query=ev.query, verbose=self.verbose)
        return StopEvent(outcome=advise)

The precise occasion kind’s return controls the workflow’s step transition. As an illustration, retrieve step returns an Recommendation occasion that may set off the execution of the recommendation step. You can even leverage the Recommendation occasion to cross the mandatory info you want.

Throughout the implementation, if you’re irritated by having to start out over the workflow to debug some steps within the center, the context object is important while you wish to failover the workflow execution. You possibly can retailer your state in a serialised format and get well your workflow by unserialising it to a context object. Your workflow will proceed executing primarily based on the state as a substitute of beginning over.

workflow = AgentWorkflow(
    brokers=[interviewer, advisor, retriever],
    root_agent="interviewer",
)
attempt:
    handler = w.run()
    outcome = await handler
besides Exception as e:
    print(f"Error throughout preliminary run: {e}")
    await fail_over()
    # Elective, serialised and save the contexct for debugging 
    ctx_dict = ctx.to_dict(serializer=JsonSerializer())
    json_dump_and_save(ctx_dict)
    # Resume from the identical context
    ctx_dict = load_failed_dict()
    restored_ctx = Context.from_dict(workflow, ctx_dict,serializer=JsonSerializer())
    handler = w.run(ctx=handler.ctx)
    outcome = await handler

Abstract

On this submit, we have now mentioned the right way to use LlamaIndex to implement an AI journal’s core operate. The important thing studying contains:

  • Utilizing Agentic RAG to leverage LLM functionality to dynamically rewrite the unique question and synthesis outcome.
  • Use a Personalized Workflow to realize extra express management over step transitions. Construct dynamic brokers when mandatory.

The bitterce code of this AI journal is in my GitHub repo right here. I hope you take pleasure in this text and this small app I constructed. Cheers!

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