Pandas Dataframe
This notebook shows how to use agents to interact with a
Pandas DataFrame
. It is mostly optimized for question answering.
NOTE: this agent calls the Python
agent under the hood, which
executes LLM generated Python code - this can be bad if the LLM
generated Python code is harmful. Use cautiously.
from langchain.agents.agent_types import AgentType
from langchain.chat_models import ChatOpenAI
from langchain_experimental.agents.agent_toolkits import create_pandas_dataframe_agent
import pandas as pd
from langchain.llms import OpenAI
df = pd.read_csv("titanic.csv")
Using ZERO_SHOT_REACT_DESCRIPTION
This shows how to initialize the agent using the
ZERO_SHOT_REACT_DESCRIPTION
agent type. Note that this is an
alternative to the above.
agent = create_pandas_dataframe_agent(OpenAI(temperature=0), df, verbose=True)
Using OpenAI Functions
This shows how to initialize the agent using the OPENAI_FUNCTIONS agent type. Note that this is an alternative to the above.
agent = create_pandas_dataframe_agent(
ChatOpenAI(temperature=0, model="gpt-3.5-turbo-0613"),
df,
verbose=True,
agent_type=AgentType.OPENAI_FUNCTIONS,
)
agent.run("how many rows are there?")
> Entering new chain...
Invoking: `python_repl_ast` with `df.shape[0]`
891There are 891 rows in the dataframe.
> Finished chain.
'There are 891 rows in the dataframe.'
agent.run("how many people have more than 3 siblings")
> Entering new AgentExecutor chain...
Thought: I need to count the number of people with more than 3 siblings
Action: python_repl_ast
Action Input: df[df['SibSp'] > 3].shape[0]
Observation: 30
Thought: I now know the final answer
Final Answer: 30 people have more than 3 siblings.
> Finished chain.
'30 people have more than 3 siblings.'
agent.run("whats the square root of the average age?")
> Entering new AgentExecutor chain...
Thought: I need to calculate the average age first
Action: python_repl_ast
Action Input: df['Age'].mean()
Observation: 29.69911764705882
Thought: I now need to calculate the square root of the average age
Action: python_repl_ast
Action Input: math.sqrt(df['Age'].mean())
Observation: NameError("name 'math' is not defined")
Thought: I need to import the math library
Action: python_repl_ast
Action Input: import math
Observation:
Thought: I now need to calculate the square root of the average age
Action: python_repl_ast
Action Input: math.sqrt(df['Age'].mean())
Observation: 5.449689683556195
Thought: I now know the final answer
Final Answer: The square root of the average age is 5.449689683556195.
> Finished chain.
'The square root of the average age is 5.449689683556195.'
Multi DataFrame Example
This next part shows how the agent can interact with multiple dataframes passed in as a list.
df1 = df.copy()
df1["Age"] = df1["Age"].fillna(df1["Age"].mean())
agent = create_pandas_dataframe_agent(OpenAI(temperature=0), [df, df1], verbose=True)
agent.run("how many rows in the age column are different?")
> Entering new AgentExecutor chain...
Thought: I need to compare the age columns in both dataframes
Action: python_repl_ast
Action Input: len(df1[df1['Age'] != df2['Age']])
Observation: 177
Thought: I now know the final answer
Final Answer: 177 rows in the age column are different.
> Finished chain.
'177 rows in the age column are different.'