Skip to main content

In-process SDK runtime for agent-search

Project description

agent-search core SDK

In-process Python SDK for agent-search.

The PyPI package is intentionally narrow: consumers should call advanced_rag(...) and treat that as the supported entrypoint.

The SDK always requires both:

  • A chat model (for example langchain_openai.ChatOpenAI)
  • A vector store that implements similarity_search(query, k, filter=None)

It does not auto-build these dependencies for you.

Install (PyPI)

python3.11 -m venv .venv
source .venv/bin/activate
pip install --upgrade pip
pip install agent-search-core
python -c "import agent_search; print(agent_search.__file__)"

Quick start

from langchain_openai import ChatOpenAI
from agent_search import advanced_rag
from agent_search.vectorstore.langchain_adapter import LangChainVectorStoreAdapter

vector_store = LangChainVectorStoreAdapter(your_langchain_vector_store)
model = ChatOpenAI(model="gpt-4.1-mini", temperature=0.0)

response = advanced_rag(
    "What is pgvector?",
    vector_store=vector_store,
    model=model,
)
print(response.output)

Contract notes for 1.0.11

Use these canonical names in new config payloads:

  • custom_prompts
  • runtime_config

Compatibility notes:

  • custom-prompts is still accepted as an input alias, but new code should send custom_prompts.
  • advanced_rag(...) remains the supported sync entrypoint for agent-search-core.
  • For HITL flows, use the checkpointed runtime runner described below.
  • Langfuse tracing is no longer supported in the SDK/runtime.

Human-in-the-loop (HITL)

agent-search-core supports one opt-in review stage on advanced_rag(...):

  • hitl_subquestions=True pauses after decomposition so the caller can review or edit subquestions.
  • Subquestion review is the only HITL checkpoint in the SDK.
  • Query expansion no longer has a separate review checkpoint.

The SDK returns a normalized review object when a run pauses, and resume calls use SDK-owned decision helpers instead of raw backend payloads.

HITL does still require checkpoint persistence. The public API does not ask you to pass a checkpointer because advanced_rag(...) creates one internally with LangGraph's PostgresSaver and resumes from the stored checkpoint ID on the next call. In practice that means:

  • A reachable Postgres database must be configured.
  • The SDK uses DATABASE_URL and defaults to postgresql+psycopg://agent_user:agent_pass@db:5432/agent_search.
  • If you run outside Docker, set DATABASE_URL explicitly so the SDK can persist and resume paused runs.
  • You can override the checkpoint database per call with checkpoint_db_url="postgresql+psycopg://..." on advanced_rag(...).

Example paused result for subquestion review:

from agent_search import advanced_rag

outcome = advanced_rag(
    "Summarize the customer feedback themes.",
    vector_store=vector_store,
    model=model,
    hitl_subquestions=True,
)
print(outcome.status)  # "paused"
print(outcome.review.kind)  # "subquestion_review"
print(outcome.review.items[0].text)

Resume with SDK helpers:

resume = outcome.review.with_decisions(
    outcome.review.items[0].approve(),
    outcome.review.items[1].edit("Theme 2 (billing and invoices)"),
)

resumed = advanced_rag(
    "Summarize the customer feedback themes.",
    model=model,
    vector_store=vector_store,
    resume=resume,
)
print(resumed.response.output)

For simple approval flows:

resume = outcome.review.approve_all()

Detailed end-to-end example:

from langchain_openai import ChatOpenAI
from agent_search import advanced_rag
from agent_search.vectorstore.langchain_adapter import LangChainVectorStoreAdapter

vector_store = LangChainVectorStoreAdapter(your_langchain_vector_store)
model = ChatOpenAI(model="gpt-4.1-mini", temperature=0.0)
question = "Summarize the customer feedback themes from the support archive."

first = advanced_rag(
    question,
    vector_store=vector_store,
    model=model,
    hitl_subquestions=True,
)
assert first.status == "paused"
assert first.review.kind == "subquestion_review"

for item in first.review.items:
    print(item.item_id, item.text)

resume = first.review.with_decisions(
    first.review.items[0].approve(),
    first.review.items[1].edit("What billing and invoice complaints show up most often?"),
    first.review.items[2].reject(),
)

final = advanced_rag(
    question,
    vector_store=vector_store,
    model=model,
    resume=resume,
)
assert final.status == "completed"
print(final.response.output)

Decision semantics:

  • approve() keeps the item unchanged.
  • edit("...") replaces the item text before the run continues.
  • reject() removes the item from the next stage entirely.
  • approve_all() is the shortcut when you want to resume without per-item changes.

Advanced callers can still pass raw config["controls"]["hitl"], but the top-level HITL review toggles are now the preferred public API.

Prompt customization

Keep reusable prompt defaults in the existing config map, then override only the keys you need per run.

from copy import deepcopy

from langchain_openai import ChatOpenAI
from agent_search import advanced_rag
from agent_search.vectorstore.langchain_adapter import LangChainVectorStoreAdapter

vector_store = LangChainVectorStoreAdapter(your_langchain_vector_store)
model = ChatOpenAI(model="gpt-4.1-mini", temperature=0.0)

client_config = {
    "custom_prompts": {
        "subanswer": "Answer each sub-question with concise cited evidence only.",
        "synthesis": "Write a short final synthesis that preserves citation markers.",
    },
}

response = advanced_rag(
    "What changed in NATO maritime policy?",
    vector_store=vector_store,
    model=model,
    config=client_config,
)
print(response.output)

Per-run overrides should be merged into a fresh copy so one call does not mutate the reusable defaults for the next call.

run_config = deepcopy(client_config)
run_config["custom_prompts"] = {
    **run_config.get("custom_prompts", {}),
    "synthesis": "Return a two-paragraph answer and keep every citation marker.",
}

response = advanced_rag(
    "Summarize the policy shift for shipping operators.",
    vector_store=vector_store,
    model=model,
    config=run_config,
)

Merge and fallback behavior:

  • Built-in runtime defaults apply when custom_prompts is omitted.
  • Client-level config["custom_prompts"] replaces built-ins on a per-key basis.
  • Per-run merged values replace only the keys you override for that call.
  • Use custom_prompts in Python code; the supported keys are subanswer and synthesis.
  • Prompt overrides change generation instructions only. Citation validation and fallback behavior remain enforced in runtime code.

You can keep reusable prompt defaults at the top level and place per-run overrides in runtime_config.custom_prompts:

response = advanced_rag(
    "Which runtime controls stay default-off?",
    vector_store=vector_store,
    model=model,
    config={
        "custom_prompts": {
            "subanswer": "Answer each sub-question with concise cited evidence only.",
            "synthesis": "Write a short synthesis with citations.",
        },
        "runtime_config": {
            "custom_prompts": {
                "synthesis": "Return a two-paragraph answer and keep every citation marker."
            }
        },
    },
)

runtime_config is additive. Omit it to preserve the prior prompt behavior.

Requirements

  • Python >=3.11,<3.14
  • A compatible vector store and chat model as shown above.

Build

cd sdk/core
python -m build

Example script

A self-contained HITL walkthrough that imports the SDK and simulates pause/resume decisions lives at examples/hitl_walkthrough.py.

Run it from the package root:

cd sdk/core
python examples/hitl_walkthrough.py

Supported API

The supported callable exported by agent_search is:

  • advanced_rag

Notes about advanced_rag(...):

  • It is a synchronous call that runs the full retrieval-and-answer workflow and returns a RuntimeAgentRunResponse.
  • You supply the model and vector store; the SDK orchestrates the LangGraph-based runtime around them.
  • Optional hitl_subquestions=True opts into subquestion review checkpoints.
  • Optional config={"custom_prompts": {...}} lets you override prompt instructions per run.

advanced_rag(...) output schema:

RuntimeAgentRunResponse(
  main_question: str,
  sub_answers: list[SubQuestionAnswer],
  sub_qa: list[SubQuestionAnswer],
  output: str,
  final_citations: list[CitationSourceRow],
)

sub_answers and sub_qa are answer rows. Each item contains both the sub-question text and the corresponding sub-answer text.

Read additive sub-answer fields like this:

for item in response.sub_answers:
    print(item.sub_question, item.sub_answer)

sub_answers is the canonical additive field for new reads. sub_qa remains available as the compatibility alias, and the SDK backfills whichever one is omitted so both fields resolve to the same answer rows.

If you need the plain decomposed question list without answers, read decomposition_sub_questions from the async status payload instead of RuntimeAgentRunResponse:

status = client.get_run_status(job_id)

for sub_question in status.decomposition_sub_questions:
    print(sub_question)

for item in status.sub_answers:
    print(item.sub_question, item.sub_answer)

Those fields are intentionally separate:

  • decomposition_sub_questions: list[str] of generated sub-questions only.
  • sub_answers: list[SubQuestionAnswer] with question-and-answer pairs.
  • sub_qa: compatibility alias for sub_answers.

Vector store compatibility

Runtime SDK expects similarity_search(query, k, filter=None). For LangChain-backed stores, use:

  • agent_search.vectorstore.langchain_adapter.LangChainVectorStoreAdapter

Notes

  • This package is the SDK surface only. For the full app experience, run the repository with Docker Compose.
  • The PyPI package is intentionally narrower than the backend internals; consumer integrations should rely on advanced_rag(...) only.
  • For SDK-only use, install from PyPI and supply your own model + vector store.

Release guidance

Use the repository release script from project root:

./scripts/release_sdk.sh

The release script verifies the built wheel includes the agent_search package before upload.

Publish flow (requires TWINE_API_TOKEN):

PUBLISH=1 TWINE_API_TOKEN=*** ./scripts/release_sdk.sh

Tag format used by CI release workflow:

  • agent-search-core-v<version>

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

agent_search_core-1.0.11.tar.gz (69.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

agent_search_core-1.0.11-py3-none-any.whl (95.5 kB view details)

Uploaded Python 3

File details

Details for the file agent_search_core-1.0.11.tar.gz.

File metadata

  • Download URL: agent_search_core-1.0.11.tar.gz
  • Upload date:
  • Size: 69.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.9.13

File hashes

Hashes for agent_search_core-1.0.11.tar.gz
Algorithm Hash digest
SHA256 414589375cc4ce405b618eccd142630c7b6ddb9630250e50fdf9f8b7e538cfc1
MD5 2dfc9019a9fc7be1a4c7ca497c4963c5
BLAKE2b-256 69fedba15b44e10af56c46d666525124533ac2964fa9c59c921f9ab9bed95766

See more details on using hashes here.

File details

Details for the file agent_search_core-1.0.11-py3-none-any.whl.

File metadata

File hashes

Hashes for agent_search_core-1.0.11-py3-none-any.whl
Algorithm Hash digest
SHA256 7692b14fe07b0dfc6a52724a16db8a73129df1c5e8b39eb864bc925521a619ac
MD5 467d8cf628415fea4fe9212b10b672dc
BLAKE2b-256 9aac3c9ba523eaa462df338df9701b86983cd3b09358c1c49716654bb2cb84dc

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page