Documentation Index
Fetch the complete documentation index at: https://spacesail.mintlify.app/llms.txt
Use this file to discover all available pages before exploring further.
Reasoning models are a new class of large language models pre-trained to think before they answer. They produce a long internal chain of thought before responding. Examples of reasoning models include:
- OpenAI o1-pro and gpt-5-mini
- Claude 3.7 sonnet in extended-thinking mode
- Gemini 2.0 flash thinking
- DeepSeek-R1
Reasoning models deeply consider and think through a plan before taking action. Its all about what the model does before it starts generating a response. Reasoning models excel at single-shot use-cases. They’re perfect for solving hard problems (coding, math, physics) that don’t require multiple turns, or calling tools sequentially.
Examples
gpt-5-mini
from agno.agent import Agent
from agno.models.openai import OpenAIChat
# Setup your Agent using a reasoning model
agent = Agent(model=OpenAIChat(id="gpt-5-mini"))
# Run the Agent
agent.print_response(
"Solve the trolley problem. Evaluate multiple ethical frameworks. Include an ASCII diagram of your solution.",
stream=True,
show_full_reasoning=True,
)
from agno.agent import Agent
from agno.models.openai import OpenAIChat
from agno.tools.duckduckgo import DuckDuckGoTools
# Setup your Agent using a reasoning model
agent = Agent(
model=OpenAIChat(id="gpt-5-mini"),
tools=[DuckDuckGoTools()],
markdown=True,
)
# Run the Agent
agent.print_response("What is the best basketball team in the NBA this year?", stream=True)
gpt-5-mini with reasoning effort
o3_mini_with_reasoning_effort.py
from agno.agent import Agent
from agno.models.openai import OpenAIChat
from agno.tools.duckduckgo import DuckDuckGoTools
# Setup your Agent using a reasoning model with high reasoning effort
agent = Agent(
model=OpenAIChat(id="gpt-5-mini", reasoning_effort="high"),
tools=[DuckDuckGoTools()],
markdown=True,
)
# Run the Agent
agent.print_response("What is the best basketball team in the NBA this year?", stream=True)
DeepSeek-R1 using Groq
deepseek_r1_using_groq.py
from agno.agent import Agent
from agno.models.groq import Groq
# Setup your Agent using a reasoning model
agent = Agent(
model=Groq(
id="deepseek-r1-distill-llama-70b", temperature=0.6, max_tokens=1024, top_p=0.95
),
markdown=True,
)
# Run the Agent
agent.print_response("9.11 and 9.9 -- which is bigger?", stream=True)
Reasoning Model + Response Model
When you run the DeepSeek-R1 Agent above, you’ll notice that the response is not that great. This is because DeepSeek-R1 is great at solving problems but not that great at responding in a natural way (like claude sonnet or gpt-4.5).
What if we wanted to use a Reasoning Model to reason but a different model to generate the response?
Great news! Agno allows you to use a Reasoning Model and a different Response Model together. By using a separate model for reasoning and a different model for responding, we can have the best of both worlds.
DeepSeek-R1 + Claude Sonnet
from agno.agent import Agent
from agno.models.anthropic import Claude
from agno.models.groq import Groq
# Setup your Agent using an extra reasoning model
deepseek_plus_claude = Agent(
model=Claude(id="claude-3-7-sonnet-20250219"),
reasoning_model=Groq(
id="deepseek-r1-distill-llama-70b", temperature=0.6, max_tokens=1024, top_p=0.95
),
)
# Run the Agent
deepseek_plus_claude.print_response("9.11 and 9.9 -- which is bigger?", stream=True)
Developer Resources