Cohere
This notebook covers how to get started with Cohere chat models.
Head to the API reference for detailed documentation of all attributes and methods.
Setupβ
The integration lives in the langchain-cohere
package. We can install these with:
pip install -U langchain-cohere
We'll also need to get a Cohere API key and set the COHERE_API_KEY
environment variable:
import getpass
import os
os.environ["COHERE_API_KEY"] = getpass.getpass()
It's also helpful (but not needed) to set up LangSmith for best-in-class observability
# os.environ["LANGCHAIN_TRACING_V2"] = "true"
# os.environ["LANGCHAIN_API_KEY"] = getpass.getpass()
Usageβ
ChatCohere supports all ChatModel functionality:
from langchain_cohere import ChatCohere
from langchain_core.messages import HumanMessage
API Reference:ChatCohere | HumanMessage
chat = ChatCohere()
messages = [HumanMessage(content="1"), HumanMessage(content="2 3")]
chat.invoke(messages)
AIMessage(content='4 && 5 \n6 || 7 \n\nWould you like to play a game of odds and evens?', additional_kwargs={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '2076b614-52b3-4082-a259-cc92cd3d9fea', 'token_count': {'prompt_tokens': 68, 'response_tokens': 23, 'total_tokens': 91, 'billed_tokens': 77}}, response_metadata={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '2076b614-52b3-4082-a259-cc92cd3d9fea', 'token_count': {'prompt_tokens': 68, 'response_tokens': 23, 'total_tokens': 91, 'billed_tokens': 77}}, id='run-3475e0c8-c89b-4937-9300-e07d652455e1-0')
await chat.ainvoke(messages)
AIMessage(content='4 && 5', additional_kwargs={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': 'f0708a92-f874-46ee-9b93-334d616ad92e', 'token_count': {'prompt_tokens': 68, 'response_tokens': 3, 'total_tokens': 71, 'billed_tokens': 57}}, response_metadata={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': 'f0708a92-f874-46ee-9b93-334d616ad92e', 'token_count': {'prompt_tokens': 68, 'response_tokens': 3, 'total_tokens': 71, 'billed_tokens': 57}}, id='run-1635e63e-2994-4e7f-986e-152ddfc95777-0')
for chunk in chat.stream(messages):
print(chunk.content, end="", flush=True)
4 && 5
chat.batch([messages])
[AIMessage(content='4 && 5', additional_kwargs={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '6770ca86-f6c3-4ba3-a285-c4772160612f', 'token_count': {'prompt_tokens': 68, 'response_tokens': 3, 'total_tokens': 71, 'billed_tokens': 57}}, response_metadata={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '6770ca86-f6c3-4ba3-a285-c4772160612f', 'token_count': {'prompt_tokens': 68, 'response_tokens': 3, 'total_tokens': 71, 'billed_tokens': 57}}, id='run-8d6fade2-1b39-4e31-ab23-4be622dd0027-0')]
Chainingβ
You can also easily combine with a prompt template for easy structuring of user input. We can do this using LCEL
from langchain_core.prompts import ChatPromptTemplate
prompt = ChatPromptTemplate.from_template("Tell me a joke about {topic}")
chain = prompt | chat
API Reference:ChatPromptTemplate
chain.invoke({"topic": "bears"})
AIMessage(content='What color socks do bears wear?\n\nThey donβt wear socks, they have bear feet. \n\nHope you laughed! If not, maybe this will help: laughter is the best medicine, and a good sense of humor is infectious!', additional_kwargs={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '6edccf44-9bc8-4139-b30e-13b368f3563c', 'token_count': {'prompt_tokens': 68, 'response_tokens': 51, 'total_tokens': 119, 'billed_tokens': 108}}, response_metadata={'documents': None, 'citations': None, 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '6edccf44-9bc8-4139-b30e-13b368f3563c', 'token_count': {'prompt_tokens': 68, 'response_tokens': 51, 'total_tokens': 119, 'billed_tokens': 108}}, id='run-ef7f9789-0d4d-43bf-a4f7-f2a0e27a5320-0')
Tool callingβ
Cohere supports tool calling functionalities!
from langchain_core.messages import (
HumanMessage,
ToolMessage,
)
from langchain_core.tools import tool
@tool
def magic_function(number: int) -> int:
"""Applies a magic operation to an integer
Args:
number: Number to have magic operation performed on
"""
return number + 10
def invoke_tools(tool_calls, messages):
for tool_call in tool_calls:
selected_tool = {"magic_function": magic_function}[tool_call["name"].lower()]
tool_output = selected_tool.invoke(tool_call["args"])
messages.append(ToolMessage(tool_output, tool_call_id=tool_call["id"]))
return messages
tools = [magic_function]
llm_with_tools = chat.bind_tools(tools=tools)
messages = [HumanMessage(content="What is the value of magic_function(2)?")]
res = llm_with_tools.invoke(messages)
while res.tool_calls:
messages.append(res)
messages = invoke_tools(res.tool_calls, messages)
res = llm_with_tools.invoke(messages)
res
AIMessage(content='The value of magic_function(2) is 12.', additional_kwargs={'documents': [{'id': 'magic_function:0:2:0', 'output': '12', 'tool_name': 'magic_function'}], 'citations': [ChatCitation(start=34, end=36, text='12', document_ids=['magic_function:0:2:0'])], 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '96a55791-0c58-4e2e-bc2a-8550e137c46d', 'token_count': {'input_tokens': 998, 'output_tokens': 59}}, response_metadata={'documents': [{'id': 'magic_function:0:2:0', 'output': '12', 'tool_name': 'magic_function'}], 'citations': [ChatCitation(start=34, end=36, text='12', document_ids=['magic_function:0:2:0'])], 'search_results': None, 'search_queries': None, 'is_search_required': None, 'generation_id': '96a55791-0c58-4e2e-bc2a-8550e137c46d', 'token_count': {'input_tokens': 998, 'output_tokens': 59}}, id='run-f318a9cf-55c8-44f4-91d1-27cf46c6a465-0')
Relatedβ
- Chat model conceptual guide
- Chat model how-to guides