For those who’re following AI Brokers, then you definitely might need seen that LangChain has created a pleasant ecosystem with LangChain, LangGraph, LangSmith & LangServe. Leveraging these, we will construct, deploy, consider, and monitor Agentic AI programs. Whereas constructing an AI Agent, I simply thought to myself, “Why not present a easy demo to point out the intertwined working of LangGraph & LangSmith?”. That is gonna be useful as AI Brokers typically want a number of LLM calls and now have larger prices related to them. This combo will assist monitor the bills and likewise consider the system utilizing customized datasets. With none additional ado, let’s dive in.
LangGraph for AI Brokers
Merely put, AI Brokers are LLMs with the potential to suppose/cause and will entry instruments to deal with their shortcomings or acquire entry to real-time data. LangGraph is an Agentic AI framework based mostly on LangChain to construct these AI Brokers. LangGraph helps construct graph-based Brokers; additionally, the creation of Agentic workflows is simplified with many inbuilt capabilities already current within the LangGraph/LangChain libraries.
Learn extra: What’s LangGraph?
What’s LangSmith?
LangSmith is a monitoring and analysis platform by LangChain. It’s framework-agnostic, designed to work with any Agentic framework, resembling LangGraph, and even with Brokers constructed utterly from scratch. LangSmith will be simply configured to hint the runs and likewise monitor the bills of the Agentic system. It additionally helps operating experiments on the system, like altering the immediate and fashions within the system, and evaluating the outcomes. It has predefined evaluators like helpfulness, correctness, and hallucinations. You too can select to outline your individual evaluators. Let’s take a look at the LangSmith platform to get a greater thought of it.
Learn extra: Final Information to LangSmith
The LangSmith Platform
Let’s first enroll/register to take a look at the platform: https://www.langchain.com/langsmith

That is how the platform seems with a number of tabs:
- Tracing Initiatives: Retains a monitor of a number of initiatives together with their traces or units of runs. Right here, the prices, errors, latency, and plenty of different issues are tracked.
- Monitoring: Right here you possibly can set alerts to warn you, as an example, if the system fails or the latency is above the set threshold.
- Dataset & Experiments: Right here, you possibly can run experiments utilizing human-crafted datasets or use the platform to create AI-generated datasets for testing your system. You too can change your mannequin to see how the efficiency varies.
- Prompts: Right here you possibly can retailer a number of prompts and later change the wording or sequence of directions to see how your outcomes are altering.
LangSmith in Motion
Notice: We’ll solely construct easy brokers for this tutorial to concentrate on the LangSmith facet of issues.
Let’s construct a basic math expression-solving agent that makes use of a easy instrument after which allow traceability. After which we’ll verify the LangSmith dashboard to see what will be tracked utilizing the platform.
Getting the API keys:
- Go to the Langsmith dashboard and click on on the ‘Setup Observability’ Button. You then’ll see this display screen. https://www.langchain.com/langsmith

Now, click on on the ‘Generate API Key’ possibility and preserve the LangSmith key helpful.
- Now go to Google AI Studio to get your palms on the Gemini API key: https://aistudio.google.com/api-keys

Click on on ‘Create API key’ on the right-top and create a mission if it doesn’t exist already, and preserve the important thing helpful.
Python Code
Notice: I’ll be utilizing Google Colab for operating the code.
Installations
!pip set up -q langgraph langsmith langchain !pip set up -q langchain-google-genai
Notice: Ensure that to restart the session earlier than persevering with from right here.
Setting the atmosphere
Move the API keys when prompted.
from getpass import getpass LANGCHAIN_API_KEY=getpass('Enter LangSmith API Key: ') GOOGLE_API_KEY=getpass('Enter Gemini API Key: ') import os os.environ['LANGCHAIN_TRACING_V2'] = 'true' os.environ['LANGCHAIN_API_KEY'] = LANGCHAIN_API_KEY os.environ['LANGCHAIN_PROJECT'] = 'Testing'
Notice: It’s really helpful to trace totally different initiatives with totally different mission names; right here, I’m naming it ‘Testing’.
Establishing and operating the agent
- Right here, we’re utilizing a easy instrument that the agent can use to unravel math expressions
- We’re utilizing the in-built
create_react_agent
from LangGraph, the place we have now to outline the mannequin, give entry to instruments, and we’re good to go.
from langgraph.prebuilt import create_react_agent from langchain_google_genai import ChatGoogleGenerativeAI def solve_math_problem(expression: str) -> str: """Remedy a math drawback.""" strive: # Consider the mathematical expression outcome = eval(expression, {"__builtins__": {}}) return f"The reply is {outcome}." besides Exception: return "I could not resolve that expression." # Initialize the Gemini mannequin with API key mannequin = ChatGoogleGenerativeAI( mannequin="gemini-2.5-flash", google_api_key=GOOGLE_API_KEY ) # Create the agent agent = create_react_agent( mannequin=mannequin, instruments=[solve_math_problem], immediate=( "You're a Math Tutor AI. " "When a person asks a math query, cause by means of the steps clearly " "and use the instrument `solve_math_problem` for numeric calculations. " "At all times clarify your reasoning earlier than giving the ultimate reply." ), ) # Run the agent response = agent.invoke( {"messages": [{"role": "user", "content": "What is (12 + 8) * 3?"}]} ) print(response)
Output:

We are able to see that the agent used the instrument’s response ‘The reply is 60’ and didn’t hallucinate whereas answering the query. Now let’s verify the LangSmith dashboard.
LangSmith Dashboard
Tracing Initiatives tab

We are able to see that the mission has been created with the identify ‘testing’; you possibly can click on on it to see detailed logs.


Right here it exhibits the run-wise:
- Complete Tokens
- Complete Value
- Latency
- Enter
- Output
- Time when the code was executed
Notice: I’m utilizing the free tier of Gemini right here, so I can use the important thing freed from price in line with the each day limits.
Monitoring tab
- Right here you possibly can see a dashboard with the initiatives, runs, and whole prices.

LLM as a decide
LangSmith permits the creation of a dataset utilizing a easy dictionary with enter and output keys. This dataset with the anticipated output can be utilized to judge an AI system’s generated outputs on metrics like helpfulness, correctness, and hallucinations.
We’ll use an identical math agent, create the dataset, and consider our agentic system.
Notice: I’ll be utilizing OpenAI API (gpt-4o-mini) for the demo right here, that is to keep away from API Restrict points with the free-tier Gemini API.
Installations
!pip set up -q openevals langchain-openai
Surroundings Setup
import os from google.colab import userdata os.environ['OPENAI_API_KEY']=userdata.get('OPENAI_API_KEY')
Defining the Agent
from langsmith import Consumer, wrappers from openevals.llm import create_llm_as_judge from openevals.prompts import CORRECTNESS_PROMPT from langchain_openai import ChatOpenAI from langgraph.prebuilt import create_react_agent from langchain_core.instruments import instrument from typing import Dict, Record import requests # STEP 1: Outline Instruments for the Agent ===== @instrument def solve_math_problem(expression: str) -> str: """Remedy a math drawback.""" strive: # Consider the mathematical expression outcome = eval(expression, {"__builtins__": {}}) return f"The reply is {outcome}." besides Exception: return "I could not resolve that expression." # STEP 2: Create the LangGraph ReAct Agent ===== def create_math_agent(): """Create a ReAct agent with instruments.""" # Initialize the LLM mannequin = ChatOpenAI(mannequin="gpt-4o-mini", temperature=0) # Outline the instruments instruments = [solve_math_problem] # Create the ReAct agent utilizing LangGraph's prebuilt operate agent = create_react_agent( mannequin=mannequin, instruments=[solve_math_problem], immediate=( "You're a Math Tutor AI. " "When a person asks a math query, cause by means of the steps clearly " "and use the instrument `solve_math_problem` for numeric calculations. " "At all times clarify your reasoning earlier than giving the ultimate reply." ), ) return agent
Creating the dataset
- Let’s create a dataset with easy and exhausting math expressions that we will later use to run experiments.
shopper = Consumer() dataset = shopper.create_dataset( dataset_name="Math Dataset", description="Arduous numeric + blended arithmetic expressions to judge the solver agent." ) examples = [ # Simple check { "inputs": {"question": "12 + 7"}, "outputs": {"answer": "The answer is 19."}, }, { "inputs": {"question": "100 - 37"}, "outputs": {"answer": "The answer is 63."}, }, # Mixed operators and parentheses { "inputs": {"question": "(3 + 5) * 2 - 4 / 2"}, "outputs": {"answer": "The answer is 14.0."}, }, { "inputs": {"question": "2 * (3 + (4 - 1)*5) / 3"}, "outputs": {"answer": "The answer is 14.0."}, }, # Large numbers & multiplication { "inputs": {"question": "98765 * 4321"}, "outputs": {"answer": "The answer is 426,373,565."}, }, { "inputs": {"question": "123456789 * 987654321"}, "outputs": {"answer": "The answer is 121,932,631,112,635,269."}, }, # Division, decimals, rounding { "inputs": {"question": "22 / 7"}, "outputs": {"answer": "The answer is approximately 3.142857142857143."}, }, { "inputs": {"question": "5 / 3"}, "outputs": {"answer": "The answer is 1.6666666666666667."}, }, # Exponents, roots { "inputs": {"question": "2 ** 10 + 3 ** 5"}, "outputs": {"answer": "The answer is 1128."}, }, { "inputs": {"question": "sqrt(2) * sqrt(8)"}, "outputs": {"answer": "The answer is 4.0."}, }, # Edge / error / “unanswerable” cases { "inputs": {"question": "5 / 0"}, "outputs": {"answer": "I couldn’t solve that expression."}, }, { "inputs": {"question": "abc + 5"}, "outputs": {"answer": "I couldn’t solve that expression."}, }, { "inputs": {"question": ""}, "outputs": {"answer": "I couldn’t solve that expression."}, }, ] shopper.create_examples( dataset_id=dataset.id, examples=examples)
Nice! We created a dataset with 13 data:

Defining the goal operate
- This operate invokes the agent and returns the response
def goal(inputs: Dict) -> Dict: agent = create_math_agent() agent_input = { "messages": [{"role": "user", "content": inputs["question"]}] } outcome = agent.invoke(agent_input) final_message = outcome["messages"][-1] reply = final_message.content material if hasattr(final_message, 'content material') else str(final_message) return {"reply": reply}
Defining the Evaluator
- We use the pre-built
llm_as_judge
operate and likewise import the immediate from the openevals library. - We’re utilizing 4o-mini for now to maintain the prices low, however a reasoning mannequin will be higher fitted to this process.
def correctness_evaluator(inputs: Dict, outputs: Dict, reference_outputs: Dict) -> Dict: evaluator = create_llm_as_judge( immediate=CORRECTNESS_PROMPT, mannequin="openai:gpt-4o-mini", feedback_key="correctness", ) eval_result = evaluator( inputs=inputs, outputs=outputs, reference_outputs=reference_outputs ) return eval_result
Working the analysis
experiment_results = shopper.consider( goal, knowledge="Math Dataset", evaluators=[correctness_evaluator], experiment_prefix="langgraph-math-agent", max_concurrency=2, )
Output:
A hyperlink will probably be generated after the run. On click on, you’ll be redirected to LangSmith’s ‘Datasets & Experiments’ tab, the place you possibly can see the outcomes of the experiment.

Now we have efficiently experimented with utilizing LLM as a Decide. That is insightful when it comes to discovering edge instances, prices, and token utilization.
The errors listed here are principally mismatched because of the usage of commas or the presence of lengthy decimals. This may be solved by altering the analysis immediate or attempting a reasoning mannequin. Or simplify including commas and guaranteeing decimal formatting on the instrument degree itself.
Conclusion
And there you’ve got it! We’ve efficiently proven the intertwined working of LangGraph for constructing our agent and LangSmith for tracing and evaluating it. This combo is extremely highly effective for monitoring bills and guaranteeing your agent performs as anticipated with customized datasets. Whereas we targeted on tracing and experiments, LangSmith’s capabilities don’t cease there. You too can discover highly effective options like A/B testing totally different prompts in manufacturing, including human-in-the-loop suggestions on to traces, and creating automations to streamline your debugging workflow.
Incessantly Requested Questions
A. The -q (or –quiet) flag tells pip to be “quiet” throughout set up. It reduces the log output, making your pocket book cleaner by solely exhibiting vital warnings or errors.
A. LangChain is greatest for creating sequential chains of actions. LangGraph extends this by letting you outline complicated, cyclical flows with conditional logic, which is important for constructing refined brokers.
A. No, LangSmith is framework-agnostic. You may combine it into any LLM software to get tracing and analysis, even when it’s constructed from scratch utilizing libraries like OpenAI’s straight.
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