Python SDK for BrowseAI Dev — reliable research infrastructure for AI agents
Project description
browseai
Reliable research infrastructure for AI agents. Python SDK for BrowseAI Dev — the research layer for LangChain, CrewAI, and custom agent pipelines.
Install
pip install browseai
Quick Start
from browseai import BrowseAI
client = BrowseAI(api_key="bai_xxx")
# Research with citations
result = client.ask("What is quantum computing?")
print(result.answer)
print(f"Confidence: {result.confidence:.0%}")
for source in result.sources:
print(f" - {source.title}: {source.url}")
# Thorough mode — auto-retries if confidence < 60%
thorough = client.ask("What is quantum computing?", depth="thorough")
# Deep mode — multi-step reasoning with gap analysis (requires BAI key)
deep = client.ask("Compare CRISPR approaches", depth="deep")
for step in deep.reasoning_steps or []:
print(f" Step {step.step}: {step.query} ({step.confidence:.0%})")
# Web search
results = client.search("latest AI news", limit=5)
# Page extraction
page = client.open("https://example.com")
# Structured extraction from a URL
extract = client.extract("https://example.com", query="pricing info")
# Compare raw LLM vs evidence-backed
compare = client.compare("Is Python faster than Rust?")
# Submit feedback to improve accuracy
client.feedback(result_id=result.share_id, rating="good")
Async
from browseai import AsyncBrowseAI
async with AsyncBrowseAI(api_key="bai_xxx") as client:
result = await client.ask("What is quantum computing?")
# Thorough mode works with async too
thorough = await client.ask("What is quantum computing?", depth="thorough")
# Deep mode — multi-step agentic reasoning (requires BAI key)
deep = await client.ask("Complex research question", depth="deep")
Streaming (REST API)
For real-time progress events, use the streaming endpoint directly:
import httpx
with httpx.stream("POST", "https://browseai.dev/api/browse/answer/stream",
json={"query": "What is quantum computing?"},
headers={"X-Tavily-Key": "tvly-xxx", "X-OpenRouter-Key": "sk-or-xxx"}
) as response:
for line in response.iter_lines():
if line.startswith("data: "):
print(line[6:])
Events: trace (progress), sources (discovered early), token (streamed answer text), result (final answer), done.
Research Memory (Sessions)
Persistent research sessions that accumulate knowledge across multiple queries. Later queries recall prior knowledge — faster, cheaper, more coherent.
Sessions require a BrowseAI Dev API key (
api_key="bai_xxx") for identity and ownership. BYOK clients (tavily_key/openrouter_keyonly) can use search/answer but cannot create or access sessions. Get a free API key at browseai.dev/dashboard.
from browseai import BrowseAI
client = BrowseAI(api_key="bai_xxx")
# Create a session
session = client.session("wasm-research")
# Each query builds on previous knowledge
r1 = session.ask("What is WebAssembly?")
r2 = session.ask("How does WASM compare to JavaScript performance?")
# ^ r2 recalls WASM knowledge from r1, only searches for JS perf
# Query accumulated knowledge without new searches
recalled = session.recall("WASM")
for entry in recalled.entries:
print(f" {entry.claim} (from: {entry.origin_query})")
# Export all knowledge
knowledge = session.knowledge()
# Delete a session
session.delete()
# List all your sessions
sessions = client.list_sessions()
# Resume an existing session by ID
session = client.get_session("session-id-here")
# Share with other agents
share = session.share()
print(share.url) # https://browseai.dev/session/share/abc123def456
# Another agent forks and continues the research
forked = client.fork_session(share.share_id)
Async sessions work the same way:
async with AsyncBrowseAI(api_key="bai_xxx") as client:
session = await client.session("my-project")
r1 = await session.ask("What is WASM?")
r2 = await session.ask("WASM vs JS?")
# Share and fork work async too
share = await session.share()
forked = await client.fork_session(share.share_id)
Premium Features (with API Key)
Users with a BrowseAI Dev API key (bai_xxx) get enhanced verification:
- Neural cross-encoder re-ranking — search results re-scored by semantic query-document relevance
- NLI semantic reranking — evidence matched by meaning, not just keywords
- Multi-provider search — parallel search across multiple sources for broader coverage
- Multi-pass consistency — claims cross-checked across independent extraction passes (in thorough mode)
- Deep reasoning mode — multi-step agentic research with iterative gap analysis (up to 4 steps)
- Token streaming — per-token answer delivery via SSE for real-time UI
- Research Sessions — persistent memory across queries
Free BAI key users get a generous daily quota (50 premium queries/day). When exceeded, queries gracefully fall back to BM25 keyword verification — still works, just basic matching. Quota resets every 24 hours. Check client.last_quota after any API call for current usage.
No account needed — BYOK works out of the box with no signup, no limits, and BM25 keyword verification. Sign in at browseai.dev for a free BAI key to unlock premium features.
BYOK (Bring Your Own Keys)
No signup required — just pass your own keys:
client = BrowseAI(tavily_key="tvly-xxx", openrouter_key="sk-or-xxx")
LangChain
pip install browseai[langchain]
from browseai.integrations.langchain import BrowseAIAskTool
tools = [BrowseAIAskTool(api_key="bai_xxx")]
CrewAI
pip install browseai[crewai]
from browseai.integrations.crewai import BrowseAITool
researcher = Agent(tools=[BrowseAITool(api_key="bai_xxx")])
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Filter files by name, interpreter, ABI, and platform.
If you're not sure about the file name format, learn more about wheel file names.
Copy a direct link to the current filters
File details
Details for the file browseai-0.1.5.tar.gz.
File metadata
- Download URL: browseai-0.1.5.tar.gz
- Upload date:
- Size: 11.0 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.12.12
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
a6a279a96c1d30052da6a78da003fe7c4bc9af9f0805dc069aba2cd29bcd9970
|
|
| MD5 |
6e498da22a19954aebd87360a288bb03
|
|
| BLAKE2b-256 |
123a4b45d3234624320c9f2b979149ae536d29a19c55ddf19fb879c88bd24b99
|
File details
Details for the file browseai-0.1.5-py3-none-any.whl.
File metadata
- Download URL: browseai-0.1.5-py3-none-any.whl
- Upload date:
- Size: 13.5 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/6.2.0 CPython/3.12.12
File hashes
| Algorithm | Hash digest | |
|---|---|---|
| SHA256 |
f718e10718496459eb2687c2bc013953f1e6f8d43c18eed7f05205feb6f0ae73
|
|
| MD5 |
8614c78e5e80238fcfcf154d7a118c00
|
|
| BLAKE2b-256 |
ee5982e4888c80550e7bbb044a42a844a6e440192dbf720eae43f1ca91a8535d
|