| name | deeplearning-ai-agentic-research |
| description | FastAPI research agent service with multi-step planning, Tavily/arXiv/Wikipedia tools, and Postgres task tracking |
| triggers | ["set up the agentic research agent service","how do I run the research agent with FastAPI","create a research workflow with planning agent","integrate Tavily and arXiv search tools","build a multi-step research task with progress tracking","deploy the reflective research agent API","use the research agent to generate reports","configure the agentic AI research service"] |
DeepLearning.AI Agentic Research Agent
Skill by ara.so — AI Agent Skills collection.
A FastAPI-based research agent service that orchestrates multi-step research workflows using planning agents, tool-using agents (Tavily, arXiv, Wikipedia), and Postgres for task state management. The system breaks down research queries into planned steps, executes them with specialized agents (researcher, writer, editor), and tracks progress in real-time.
What This Project Does
- Multi-Agent Research Pipeline: Planner agent creates workflow → Research agent gathers data → Writer agent drafts → Editor agent refines
- Tool Integration: Tavily web search, arXiv academic papers, Wikipedia knowledge base
- Task Management: Postgres-backed task tracking with live progress updates
- REST API: FastAPI endpoints for kicking off research, polling progress, retrieving results
- Single-Container Deploy: Runs Postgres + FastAPI in one Docker container for local development
Installation
Prerequisites
- Docker (Desktop or Engine)
- API keys for OpenAI and Tavily
Environment Setup
Create a .env file in the project root:
OPENAI_API_KEY=sk-your-openai-key
TAVILY_API_KEY=tvly-your-tavily-key
Build and Run
docker build -t fastapi-postgres-service .
docker run --rm -it \
-p 8000:8000 \
-p 5432:5432 \
--name fpsvc \
--env-file .env \
fastapi-postgres-service
The container's entrypoint automatically:
- Starts Postgres cluster
- Creates application user and database
- Runs database migrations
- Launches FastAPI with Uvicorn
Key API Endpoints
Generate Research Report
import requests
response = requests.post(
"http://localhost:8000/generate_report",
json={
"prompt": "Large Language Models for scientific discovery",
"model": "openai:gpt-4o"
}
)
task_id = response.json()["task_id"]
print(f"Task started: {task_id}")
Poll Task Progress
progress = requests.get(f"http://localhost:8000/task_progress/{task_id}")
print(progress.json())
Get Final Report
status = requests.get(f"http://localhost:8000/task_status/{task_id}")
result = status.json()
if result["status"] == "completed":
print(result["report"])
UI Access
- Web Interface:
http://localhost:8000/
- API Docs (Swagger):
http://localhost:8000/docs
Project Structure
.
├── main.py # FastAPI app, endpoints, DB models
├── src/
│ ├── planning_agent.py # planner_agent(), executor_agent_step()
│ ├── agents.py # research_agent, writer_agent, editor_agent
│ └── research_tools.py # tavily_search_tool, arxiv_search_tool, wikipedia_search_tool
├── templates/
│ └── index.html # Web UI
├── static/ # CSS/JS assets
├── docker/
│ └── entrypoint.sh # Container startup script
├── requirements.txt
├── Dockerfile
└── .env # API keys (not committed)
Core Patterns
Creating a Research Tool
import os
from typing import Dict, Any
def tavily_search_tool(query: str, max_results: int = 5) -> Dict[str, Any]:
"""Search the web using Tavily API"""
import requests
api_key = os.getenv("TAVILY_API_KEY")
if not api_key:
return {"error": "TAVILY_API_KEY not set"}
response = requests.post(
"https://api.tavily.com/search",
json={
"api_key": api_key,
"query": query,
"max_results": max_results
}
)
return response.json()
def arxiv_search_tool(query: str, max_results: int = 5) -> list:
"""Search arXiv for academic papers"""
import requests
from xml.etree import ElementTree as ET
url = f"http://export.arxiv.org/api/query?search_query=all:{query}&max_results={max_results}"
response = requests.get(url)
root = ET.fromstring(response.content)
papers = []
for entry in root.findall("{http://www.w3.org/2005/Atom}entry"):
papers.append({
"title": entry.find("{http://www.w3.org/2005/Atom}title").text,
"summary": entry.find("{http://www.w3.org/2005/Atom}summary").text,
"link": entry.find("{http://www.w3.org/2005/Atom}id").text
})
return papers
Building a Planning Agent
import os
import aisuite as ai
def planner_agent(prompt: str, model: str = "openai:gpt-4o") -> dict:
"""Create a multi-step research plan"""
client = ai.Client()
planning_prompt = f"""
You are a research planning agent. Break down this research task into steps:
"{prompt}"
Provide a JSON plan with steps like:
{{"steps": [
{{"type": "research", "query": "...", "tools": ["tavily", "arxiv"]}},
{{"type": "write", "instruction": "..."}},
{{"type": "edit", "focus": "..."}}
]}}
"""
response = client.chat.completions.create(
model=model,
messages=[{"role": "user", "content": planning_prompt}],
response_format={"type": "json_object"}
)
import json
return json.loads(response.choices[0].message.content)
def executor_agent_step(step: dict, context: dict) -> dict:
"""Execute a single planned step"""
from src.research_tools import tavily_search_tool, arxiv_search_tool
if step["type"] == "research":
results = {}
for tool in step["tools"]:
if tool == "tavily":
results["tavily"] = tavily_search_tool(step["query"])
elif tool == "arxiv":
results["arxiv"] = arxiv_search_tool(step["query"])
return {"type": "research", "results": results}
elif step["type"] == "write":
from src.agents import writer_agent
return writer_agent(step["instruction"], context)
elif step["type"] == "edit":
from src.agents import editor_agent
return editor_agent(context["draft"], step["focus"])
Database Models (SQLAlchemy)
from sqlalchemy import Column, String, Text, DateTime, create_engine
from sqlalchemy.ext.declarative import declarative_base
from sqlalchemy.orm import sessionmaker
import os
from datetime import datetime
DATABASE_URL = os.getenv("DATABASE_URL", "postgresql://app:local@127.0.0.1:5432/appdb")
engine = create_engine(DATABASE_URL)
SessionLocal = sessionmaker(bind=engine)
Base = declarative_base()
class Task(Base):
__tablename__ = "tasks"
task_id = Column(String, primary_key=True)
prompt = Column(Text)
model = Column(String)
status = Column(String)
current_step = Column(String)
report = Column(Text, nullable=True)
created_at = Column(DateTime, default=datetime.utcnow)
updated_at = Column(DateTime, default=datetime.utcnow, onupdate=datetime.utcnow)
Base.metadata.create_all(bind=engine)
FastAPI Endpoint Implementation
from fastapi import FastAPI, BackgroundTasks
from pydantic import BaseModel
import uuid
import threading
app = FastAPI()
class ResearchRequest(BaseModel):
prompt: str
model: str = "openai:gpt-4o"
def run_research_workflow(task_id: str, prompt: str, model: str):
"""Background task that runs the full research workflow"""
from src.planning_agent import planner_agent, executor_agent_step
db = SessionLocal()
task = db.query(Task).filter(Task.task_id == task_id).first()
try:
task.status = "running"
task.current_step = "planning"
db.commit()
plan = planner_agent(prompt, model)
context = {}
for i, step in enumerate(plan["steps"]):
task.current_step = f"step_{i}_{step['type']}"
db.commit()
result = executor_agent_step(step, context)
context[f"step_{i}"] = result
task.report = context.get("final_report", "Research completed")
task.status = "completed"
task.current_step = "done"
except Exception as e:
task.status = "failed"
task.report = f"Error: {str(e)}"
finally:
db.commit()
db.close()
@app.post("/generate_report")
def generate_report(request: ResearchRequest, background_tasks: BackgroundTasks):
"""Start a research task"""
task_id = str(uuid.uuid4())
db = SessionLocal()
task = Task(
task_id=task_id,
prompt=request.prompt,
model=request.model,
status="pending"
)
db.add(task)
db.commit()
db.close()
thread = threading.Thread(
target=run_research_workflow,
args=(task_id, request.prompt, request.model)
)
thread.start()
return {"task_id": task_id}
@app.get("/task_progress/{task_id}")
def task_progress(task_id: str):
"""Get live progress of a task"""
db = SessionLocal()
task = db.query(Task).filter(Task.task_id == task_id).first()
db.close()
if not task:
return {"error": "Task not found"}
return {
"task_id": task.task_id,
"status": task.status,
"current_step": task.current_step,
"created_at": task.created_at.isoformat()
}
@app.get("/task_status/{task_id}")
def task_status(task_id: str):
"""Get final status and report"""
db = SessionLocal()
task = db.query(Task).filter(Task.task_id == task_id).first()
db.close()
if not task:
return {"error": "Task not found"}
return {
"task_id": task.task_id,
"status": task.status,
"report": task.report,
"prompt": task.prompt,
"model": task.model
}
Configuration
Database Connection
Override the default DATABASE_URL:
docker run --rm -it \
-p 8000:8000 \
-e DATABASE_URL="postgresql://user:pass@host:5432/db" \
--env-file .env \
fastapi-postgres-service
Postgres Credentials
Set custom database credentials:
POSTGRES_USER=myuser
POSTGRES_PASSWORD=mypassword
POSTGRES_DB=research_db
Disable DB Reset on Startup
By default, main.py may drop tables on startup (dev mode):
import os
if os.getenv("RESET_DB_ON_STARTUP") == "1":
Base.metadata.drop_all(bind=engine)
Base.metadata.create_all(bind=engine)
Set RESET_DB_ON_STARTUP=0 to preserve data between restarts.
Common Patterns
Custom Agent Implementation
import os
import aisuite as ai
def research_agent(query: str, context: dict, tools: list) -> dict:
"""Gather information using specified tools"""
from src.research_tools import tavily_search_tool, arxiv_search_tool, wikipedia_search_tool
results = []
if "tavily" in tools:
web_results = tavily_search_tool(query)
results.append({"source": "tavily", "data": web_results})
if "arxiv" in tools:
papers = arxiv_search_tool(query)
results.append({"source": "arxiv", "data": papers})
if "wikipedia" in tools:
wiki_results = wikipedia_search_tool(query)
results.append({"source": "wikipedia", "data": wiki_results})
return {"query": query, "results": results}
def writer_agent(instruction: str, context: dict, model: str = "openai:gpt-4o") -> dict:
"""Draft content based on research"""
client = ai.Client()
research_data = context.get("research", {})
prompt = f"""
{instruction}
Based on this research:
{research_data}
Write a comprehensive draft.
"""
response = client.chat.completions.create(
model=model,
messages=[{"role": "user", "content": prompt}]
)
return {"draft": response.choices[0].message.content}
def editor_agent(draft: str, focus: str, model: str = "openai:gpt-4o") -> dict:
"""Refine and edit the draft"""
client = ai.Client()
prompt = f"""
Edit this draft with focus on: {focus}
Draft:
{draft}
Provide an improved version.
"""
response = client.chat.completions.create(
model=model,
messages=[{"role": "user", "content": prompt}]
)
return {"final_report": response.choices[0].message.content}
Connecting to Postgres from Host
psql "postgresql://app:local@localhost:5432/appdb"
SELECT task_id, status, current_step FROM tasks ORDER BY created_at DESC;
Hot Reload for Development
docker run --rm -it \
-p 8000:8000 -p 5432:5432 \
-v "$PWD":/app \
--env-file .env \
--name fpsvc \
fastapi-postgres-service \
bash -lc "pg_ctlcluster 17 main start && sleep 2 && uvicorn main:app --host 0.0.0.0 --port 8000 --reload"
Troubleshooting
Container Fails to Start Postgres
Symptom: Logs show permission errors or cluster not found
Solution: Ensure the entrypoint script has correct permissions:
COPY docker/entrypoint.sh /entrypoint.sh
RUN chmod +x /entrypoint.sh
API Returns "DATABASE_URL not set"
Symptom: App crashes on startup with database connection error
Solution: Verify the entrypoint exports DATABASE_URL:
export DATABASE_URL="postgresql://app:local@127.0.0.1:5432/appdb"
Tavily Search Fails
Symptom: Research agent returns {"error": "TAVILY_API_KEY not set"}
Solution: Ensure .env file is passed to container:
docker exec -it fpsvc env | grep TAVILY
docker run --env-file .env ...
arXiv Rate Limiting
Symptom: HTTP 429 errors from arXiv API
Solution: Add exponential backoff in arxiv_search_tool:
import time
import requests
def arxiv_search_tool(query: str, max_results: int = 5, retry: int = 3):
for attempt in range(retry):
try:
response = requests.get(url, timeout=10)
if response.status_code == 200:
return parse_results(response)
except:
pass
time.sleep(2 ** attempt)
return {"error": "arXiv request failed after retries"}
Tasks Stuck in "running" Status
Symptom: Task never completes, current_step doesn't update
Solution: Add exception handling and timeouts:
import signal
def timeout_handler(signum, frame):
raise TimeoutError("Step exceeded time limit")
def executor_agent_step(step: dict, context: dict):
signal.signal(signal.SIGALRM, timeout_handler)
signal.alarm(300)
try:
pass
except TimeoutError:
return {"error": "Step timeout"}
finally:
signal.alarm(0)
Web UI Not Loading
Symptom: http://localhost:8000/ returns 404 or template error
Solution: Verify templates are copied in Dockerfile:
# Dockerfile
COPY templates/ /app/templates/
COPY static/ /app/static/
Check inside container:
docker exec -it fpsvc ls -la /app/templates
Postgres Data Persistence
Symptom: Tasks disappear after container restart
Solution: Use Docker volumes:
docker run --rm -it \
-p 8000:8000 -p 5432:5432 \
-v postgres-data:/var/lib/postgresql \
--env-file .env \
fastapi-postgres-service
Or disable table drops (see Configuration section).