Monday, January 12, 2026

Manufacturing-Prepared LLMs Made Easy with the NeMo Agent Toolkit


had launched its personal LLM agent framework, the NeMo Agent Toolkit (or NAT), I acquired actually excited. We often consider Nvidia as the corporate powering your entire LLM hype with its GPUs, so it’s fascinating to see them transcend {hardware} and step into the software program house as effectively.

There are already loads of LLM agent frameworks on the market: LangGraph, smolagents, CrewAI and DSPy, simply to call a number of. The NeMo Agent Toolkit, nevertheless, feels a bit completely different. I might describe it as a sort of glue that helps sew all of the items collectively and switch them right into a production-ready resolution. 

Nvidia positions this framework as a solution to sort out “day 2” issues: exposing brokers as APIs, including observability to watch your system and examine edge circumstances, constructing evaluations, and reusing brokers created in different frameworks.

On this article, I’ll discover the core capabilities of the NeMo Agent Toolkit in apply, beginning with a easy chat-completion app and steadily transferring towards a hierarchical agentic setup, the place one LLM agent can recursively use different brokers as instruments. Because it’s the festive season, I’ll be utilizing publicly accessible information from the World Happiness Report to maintain issues cheerful.

Establishing

As common, we are going to begin by establishing the surroundings and putting in the bundle.

The core bundle itself is pretty light-weight. Nevertheless, as I discussed earlier, NAT is designed to behave as glue permitting to combine with completely different LLM frameworks in your workflow. Due to that, there are a number of elective plugins accessible for fashionable libraries similar to LangChain, CrewAI, and LlamaIndex. You’ll be able to all the time discover essentially the most up-to-date checklist of supported plugins in the official documentation
On this article, we might be utilizing LangChain, so we’ll want to put in the corresponding extension as effectively.

Tip: NAT works MUCH higher and quicker with uv. I initially tried putting in every little thing with pip, and it failed after about 20 minutes of ready. I’d strongly advocate not repeating my errors.

First, create and activate a digital surroundings utilizing uv.

uv venv .venv_nat_uv --python 3.12
supply .venv_nat_uv/bin/activate

Then set up NAT with the LangChain plugin.

uv pip set up "nvidia-nat[langchain]"

If you happen to’re planning to run NAT from the CLI, you’ll additionally have to export the related surroundings variables. Since I’ll be utilizing Anthropic fashions, I have to set the API key.

export ANTHROPIC_API_KEY=

Loading information

Subsequent, let’s obtain the World Happiness Report information and take a more in-depth take a look at it. I’ve put collectively a small helper perform to load the dataset and barely clear up the information. 

import pandas as pd
def load_data():
    df = pd.read_excel('whr2025_data.xlsx')
    df = df[df.Year >= 2019]
    df = df.drop(['Lower whisker', 'Upper whisker'], axis=1)
    df.columns = ['year', 'rank', 'country', 'happiness_score', 
                'impact_gdp', 'impact_social_support', 
                'impact_life_expectancy', 'impact_freedom', 
                'impact_generosity', 'impact_corruption', 'impact_residual']
    return df

df = load_data()

This dataset covers the World Happiness Report outcomes from 2019 to 2024. For every nation and 12 months, it contains the general happiness rating in addition to the estimated contribution of a number of underlying elements:

  • logarithm of GDP per capita,
  • social help,
  • wholesome life expectancy,
  • freedom to make life decisions,
  • generosity,
  • notion of corruption.

With this dataset, we can examine happiness patterns throughout geographies and over time and hopefully spot some attention-grabbing patterns alongside the best way.

Chat completion instance

Let’s begin with a quite simple chat-completion instance. The structure right here is deliberately minimal: a single LLM with no further instruments or brokers concerned.

Picture by creator

The NeMo Agent Toolkit is configured by way of YAML information that outline each the workflow and the underlying LLMs. Nvidia selected this strategy as a result of it makes experimenting with completely different configurations a lot simpler. For this primary instance, we’ll create a chat_config.yml file.

At a excessive degree, our config file will encompass two foremost sections:

  • llms the place we outline the language fashions we need to use,
  • workflow the place we describe how these fashions are wired collectively and the way the agent behaves.

On the LLM aspect, NAT helps a number of suppliers out of the field, together with OpenAI, Nvidia Inference Microservices, and AWS Bedrock. Since I need to use an Anthropic mannequin, the best choice right here is LiteLLM, which acts as a common wrapper and lets us hook up with nearly any supplier.

Within the workflow part, we are going to specify:

  • the workflow sort (we might be utilizing the only chat_completion for now, however will discover extra complicated agentic setups later),
  • the LLM outlined above, and
  • the system immediate that units the agent’s behaviour.

This offers us a stable MVP and a dependable baseline to construct on earlier than transferring into extra complicated agentic functions.

llms:
  chat_llm:
    _type: litellm
    model_name: claude-sonnet-4-5-20250929
    api_key: $ANTHROPIC_API_KEY
    temperature: 0.7

workflow:
  _type: chat_completion
  llm_name: chat_llm
  system_prompt: |
    You're a educated scientist within the area of happiness research. 
    You've entry to a dataset containing the World Happiness Report information from 2019 to 2025. 
    Your process is to research the information and supply insights primarily based on person queries. 
    Use the dataset to reply questions on nation rankings, tendencies through the years, and elements influencing happiness scores.

Now it’s time to run our utility. We will do that with a single CLI command by specifying the trail to the config file and offering an enter query.

nat run 
  --config_file chat_config.yml 
  --input "How is happinness outlined?"

As soon as the command runs, we’ll see the next output within the console.

2025-12-24 18:07:34 - INFO - nat.cli.instructions.begin:192 - Beginning NAT 
from config file: 'chat_config.yml'

Configuration Abstract:
--------------------
Workflow Sort: chat_completion
Variety of Capabilities: 0
Variety of Operate Teams: 0
Variety of LLMs: 1
Variety of Embedders: 0
Variety of Reminiscence: 0
Variety of Object Shops: 0
Variety of Retrievers: 0
Variety of TTC Methods: 0
Variety of Authentication Suppliers: 0

2025-12-24 18:07:35 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-24 18:07:44 - INFO     - nat.front_ends.console.console_front_end_plugin:102 - --------------------------------------------------
['In the World Happiness Report, happiness is defined as subjective well-being, 
measured primarily through the **Cantril ladder** life evaluation question, 
where respondents rate their current life on a scale from 0 (worst possible) 
to 10 (best possible). The overall happiness score is then statistically 
explained by six key factors: GDP per capita, social support, healthy life 
expectancy, freedom to make life choices, generosity, and perceptions of 
corruption.']
--------------------------------------------------

We acquired a fairly first rate reply primarily based on the mannequin’s common information. Now, let’s take the following step and deploy it. Since NAT is designed for production-ready functions, we will simply expose our resolution as a REST API. Later on this article, we’ll even see find out how to flip it right into a customer-ready UI.

To make our agent accessible by way of an API endpoint, we will use the nat serve command.

nat serve --config_file chat_config.yml

Now, our utility is on the market at http://localhost:8000, and we will work together with it utilizing Python. The API format is appropriate with OpenAI’s endpoints.

import requests
import json

# Take a look at the API endpoint
response = requests.submit(
    "http://localhost:8000/v1/chat/completions",
    headers={"Content material-Sort": "utility/json"},
    json={
        "messages": [
            {
                "role": "user",
                "content": "How many years of happiness data do we have?"
            }
        ],
        "stream": False
    }
)

# Parse and show the response
if response.status_code == 200:
    consequence = response.json()
    print(consequence["choices"][0]["message"]["content"])
else:
    print(f"Error: {response.status_code}")
    print(response.textual content)

# We have now 7 years of happiness information, protecting the interval from 2019 to 2025.

This offers us a believable MVP that may reply primary questions in regards to the Happiness information. Nevertheless, to supply deeper insights, our agent wants context and entry to the precise dataset. Equipping it with instruments might be our subsequent step.

Including instruments

Subsequent, let’s add a few instruments that may assist our agent analyse the World Happiness Report information. We are going to present our agent with two features:

  • get_country_stats returns all Happiness information filtered by a selected nation,
  • get_year_stats outputs an outline of the Happiness Report for a given 12 months, together with the happiest and least completely satisfied international locations, the typical happiness rating, and the elements influencing it.
Picture by creator

Including instruments within the NeMo Agent toolkit requires fairly a little bit of boilerplate code. We might want to undergo the next steps:

  1. Implement the features in Python,
  2. Outline an enter schema for every perform,
  3. Create corresponding config courses,
  4. Wrap the features so they’re async and callable by the agent,
  5. Replace the YAML config.

Happily, NAT supplies the workflow create command, which generates a scaffolding construction to assist organise your mission.

nat workflow create happiness_v1

This command doesn’t generate all of the implementation for you, however it does create the mission construction with all the required information. After operating it, the next construction might be created.

happiness_v1/
├── 📄 pyproject.toml          # Python bundle configuration
├── 📁 configs/                # Root-level config (symlink or copy)
│   └── config.yml             # NAT workflow configuration
├── 📁 information/                   # Root-level information folder (empty)
│
└── 📁 src/                    # Supply code
    └── 📁 happiness_v1/       # Most important bundle
        ├── 📄 __init__.py      # Package deal initializer (empty)
        ├── 📄 happiness_v1.py  # Core perform implementations
        ├── 📄 register.py      # Operate registration (entry level)
        ├── 📁 configs/         # Package deal-specific config
        │   └── config.yml      # NAT workflow config
        └── 📁 information/            # Package deal information folder (empty)

Let’s begin constructing our agent. Step one is implementing the features in Python. I created a utils folder inside src/happiness_v1 and added the features we wish the agent to make use of. I additionally included a helpful helper load_data perform we checked out earlier, which the agent will use behind the scenes to pre-load the Happiness Report information.

from typing import Dict, Checklist, Optionally available, Union

def get_country_stats(df: pd.DataFrame, nation: str) -> pd.DataFrame:
    """
    Get happiness statistics for a selected nation.
    
    Args:
        df (pd.DataFrame): DataFrame containing happiness information.
        nation (str): Title of the nation to filter by.
        
    Returns:
        pd.DataFrame: Filtered DataFrame with statistics for the desired nation.
    """
    return df[df['country'].str.comprises(nation, case=False)]

def get_year_stats(df: pd.DataFrame, 12 months: int) -> str:
    """
    Get happiness statistics for a selected 12 months.
    
    Args:
        df (pd.DataFrame): DataFrame containing happiness information.
        12 months (int): Yr to filter by.
        
    Returns:
        abstract (str): Abstract statistics for the desired 12 months.
    """

    year_df = df[df['year'] == 12 months].sort_values('rank')
    top5_countries = f'''
    High 5 International locations in {12 months} by Happiness Rank:
    {year_df.head(5)[["rank", "country", "happiness_score"]].to_string(index=False)}
    '''

    bottom5_countries = f'''
    Backside 5 International locations in {12 months} by Happiness Rank:
    {year_df.tail(5)[["rank", "country", "happiness_score"]].to_string(index=False)}
    '''

    scores_mean = f'''
    Common Happiness Rating in {12 months}: 
    {year_df[['happiness_score', 'impact_gdp', 'impact_social_support', 
         'impact_life_expectancy', 'impact_freedom', 
         'impact_generosity', 'impact_corruption']].imply().to_string()}
    '''

    return  top5_countries + 'n' + bottom5_countries + 'n' + scores_mean

def load_data():
    df = pd.read_excel('whr2025_data.xlsx')
    df = df[df.Year >= 2019]
    df = df.drop(['Lower whisker', 'Upper whisker'], axis=1)
    df.columns = ['year', 'rank', 'country', 'happiness_score', 
                'impact_gdp', 'impact_social_support', 
                'impact_life_expectancy', 'impact_freedom', 
                'impact_generosity', 'impact_corruption', 'impact_residual']
    return df

Now, let’s outline the enter schemas for our instruments. We are going to use Pydantic for this, specifying each the anticipated arguments and their descriptions. This step is vital as a result of the schema and descriptions are what permit the LLM to know when and find out how to use every software. We are going to add this code to src/happiness_v1/register.py.

from pydantic import BaseModel, Discipline

class CountryStatsInput(BaseModel):
    nation: str = Discipline(
        description="Nation identify to filter the Happiness Report information. For instance: 'Finland', 'United States', 'India'."
    )

class YearStatsInput(BaseModel):
    12 months: int = Discipline(
        description="Yr to filter the Happiness Report information. For instance: 2019, 2020, 2021."
    )

Subsequent, we have to create corresponding config courses. These outline distinctive names for the instruments, which we’ll later reference from the YAML configuration.

from nat.data_models.perform import FunctionBaseConfig

class CountryStatsConfig(FunctionBaseConfig, identify="country_stats"):  
    """Configuration for calculating country-specific happiness statistics."""
    move

class YearStatsConfig(FunctionBaseConfig, identify="year_stats"):  
    """Configuration for calculating year-specific happiness statistics."""
    move

The subsequent step is to wrap our Python features to allow them to be invoked by the agent. For now, we’ll maintain issues easy: load the information, wrap the perform, and specify the enter schema and configuration. We are going to take a look at find out how to move and use parameters from the YAML config later.

@register_function(config_type=CountryStatsConfig)
async def country_stats_tool(config: CountryStatsConfig, builder: Builder):
    """Register software for calculating country-specific happiness statistics."""
    df = load_data()

    async def _wrapper(nation: str) -> str:
        consequence = get_country_stats(df, nation)
        return consequence

    yield FunctionInfo.from_fn(
        _wrapper,
        input_schema=CountryStatsInput,
        description="Get happiness statistics for a selected nation from the World Happiness Report information."
    )

@register_function(config_type=YearStatsConfig)
async def year_stats_tool(config: YearStatsConfig, builder: Builder):
    """Register software for calculating year-specific happiness statistics."""
    df = load_data()

    async def _wrapper(12 months: int) -> str:
        consequence = get_year_stats(df, 12 months)
        return consequence

    yield FunctionInfo.from_fn(
        _wrapper,
        input_schema=YearStatsInput,
        description="Get happiness statistics for a selected 12 months from the World Happiness Report information."
    )

Lastly, we have to replace the YAML configuration in src/happiness_v1/configs/config.yml. First, we’ll add a features part. Then, we’ll replace the workflow sort to make use of a ReAct agent, which implements one of the crucial widespread agentic patterns primarily based on the Thought → Motion → Commentary loop. NAT additionally helps a number of different workflow sorts, similar to reasoning brokers and router brokers.

features:
  country_stats:
    _type: happiness_v1/country_stats
  year_stats:
    _type: happiness_v1/year_stats

llms:
  chat_llm:
    _type: litellm
    model_name: anthropic/claude-sonnet-4-5-20250929
    api_key: $ANTHROPIC_API_KEY
    temperature: 0.7

workflow:
  _type: react_agent
  llm_name: chat_llm
  tool_names: [country_stats, year_stats]
  verbose: true
  max_iterations: 5 
  parse_agent_response_max_retries: 2

Now we will set up the bundle domestically and run the agent.

supply .venv_nat_uv/bin/activate
cd happiness_v1 
uv pip set up -e . 
cd .. 
nat run 
  --config_file happiness_v1/src/happiness_v1/configs/config.yml 
  --input "Is Denmark happier than Finland?"

Whereas utilizing the Anthropic mannequin with the ReAct agent, I bumped into a difficulty that was mounted within the newest (not but steady) model of NAT. I needed to patch it manually.

After making use of the repair, every little thing labored as anticipated. The agent queried the information for Denmark and Finland, reasoned over the outcomes, and produced a grounded ultimate reply primarily based on the precise Happiness Report information. Including instruments allowed the agent to reply extra nuanced questions in regards to the Happiness Report.

------------------------------
[AGENT]
Agent enter: Is Denmark happier than Finland?
Agent's ideas: 
Thought: To reply whether or not Denmark is happier than Finland, I have to get happiness information for each international locations. Let me begin by getting Denmark's happiness statistics.

Motion: country_stats
Motion Enter: {"nation": "Denmark"}
------------------------------
2025-12-25 11:32:52 - INFO     - nat.agent.base:221 - 
------------------------------
[AGENT]
Calling instruments: country_stats
Software's enter: {'nation': 'Denmark'}
Software's response: 
     12 months  rank  nation  happiness_score  impact_gdp  impact_social_support  impact_life_expectancy  impact_freedom  impact_generosity  impact_corruption  impact_residual
455  2024     2  Denmark           7.5210    1.825000               1.748000                0.820000         0.95500           0.150000            0.48800         1.535000
456  2023     2  Denmark           7.5830    1.908000               1.520000                0.699000         0.82300           0.204000            0.54800         1.881000
457  2022     2  Denmark           7.5860    1.949000               1.548000                0.537000         0.73400           0.208000            0.52500         2.084000
458  2021     2  Denmark           7.6360    1.953000               1.243000                0.777000         0.71900           0.188000            0.53200         2.226000
459  2020     3  Denmark           7.6200    1.502000               1.108000                0.763000         0.68600           0.208000            0.48500         2.868000
460  2019     2  Denmark           7.6456    1.326949               1.503449                0.979333         0.66504           0.242793            0.49526         2.432741

[6 rows x 11 columns]
------------------------------
11:32:52 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 11:32:52 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 11:32:54 - INFO     - nat.agent.react_agent.agent:193 - 
------------------------------
[AGENT]
Agent enter: Is Denmark happier than Finland?
Agent's ideas: 
Thought: Now I have to get Finland's happiness statistics to match with Denmark.

Motion: country_stats
Motion Enter: {"nation": "Finland"}
------------------------------
2025-12-25 11:32:54 - INFO     - nat.agent.base:221 - 
------------------------------
[AGENT]
Calling instruments: country_stats
Software's enter: {'nation': 'Finland'}
Software's response: 
     12 months  rank  nation  happiness_score  impact_gdp  impact_social_support  impact_life_expectancy  impact_freedom  impact_generosity  impact_corruption  impact_residual
563  2024     1  Finland           7.7360     1.74900               1.783000                0.824000        0.986000            0.11000           0.502000         1.782000
564  2023     1  Finland           7.7410     1.84400               1.572000                0.695000        0.859000            0.14200           0.546000         2.082000
565  2022     1  Finland           7.8040     1.88800               1.585000                0.535000        0.772000            0.12600           0.535000         2.363000
566  2021     1  Finland           7.8210     1.89200               1.258000                0.775000        0.736000            0.10900           0.534000         2.518000
567  2020     2  Finland           7.8420     1.44600               1.106000                0.741000        0.691000            0.12400           0.481000         3.253000
568  2019     1  Finland           7.8087     1.28519               1.499526                0.961271        0.662317            0.15967           0.477857         2.762835

[6 rows x 11 columns]
------------------------------
11:32:54 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 11:32:54 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 11:32:59 - INFO     - nat.agent.react_agent.agent:193 - 
------------------------------
[AGENT]
Agent enter: Is Denmark happier than Finland?
Agent's ideas: 
Thought: I now have happiness information for each Denmark and Finland. Trying on the rankings, Finland has constantly ranked #1 in recent times (2024, 2023, 2022, 2021, and 2019), whereas Denmark was #2 in 2020. This means that Finland is usually thought-about happier than Denmark based on the World Happiness Report rankings.

Remaining Reply: No, Denmark isn't happier than Finland. In response to the World Happiness Report information, Finland has constantly ranked #1 in happiness for most up-to-date years (2024, 2023, 2022, 2021, and 2019), making it the happiest nation on the earth. Whereas Denmark can be among the many happiest international locations globally, Finland surpasses Denmark in happiness rankings.
------------------------------
2025-12-25 11:32:59 - INFO     - nat.front_ends.console.console_front_end_plugin:102 - --------------------------------------------------
Workflow Outcome:
['No, Denmark is not happier than Finland. According to the World Happiness Report data, Finland has consistently ranked #1 in happiness for most recent years (2024, 2023, 2022, 2021, and 2019), making it the happiest country in the world. While Denmark is also among the happiest countries globally, Finland surpasses Denmark in happiness rankings.']
--------------------------------------------------

Tip: Don’t overlook to uninstall the bundle when you’re achieved experimenting, to keep away from model collisions later.

uv pip uninstall happinness_v1

You’ll find the complete code of this model on GitHub.

Integrating one other agent as a software

Our agent is already fairly succesful and might reply easy questions in regards to the World Happiness Report information. Nevertheless, it nonetheless struggles with sure forms of questions, for instance, how a lot happier folks in Finland are in comparison with folks within the UK. In circumstances like this, the agent would possible hallucinate, because it lacks primary calculation capabilities. Happily, we will repair this by giving the agent entry to a calculator.

I have already got a calculator agent carried out in LangGraph from a earlier mission. It’s a quite simple agent with a single software that executes arbitrary Python code. If you happen to’re curious, you will discover the implementation right here.

Right here is the way it works in apply.

from calculator.calculator_agent import calculate

consequence = calculate("The happiness scope in Finland is 7.73 whereas it is 6.73 in the UK. How a lot are folks in Finland happier than in the UK in percents?")
print("Outcome:", consequence['final_result'])
print("Rationalization:", consequence['explanation'])

# Outcome: 14.86
# Rationalization: **Reply:** Individuals in Finland are **14.86%** happier than folks 
# in the UK.

# **Rationalization:**
# - Finland's happiness rating: 7.73
# - United Kingdom's happiness rating: 6.73
# - Absolute distinction: 7.73 - 6.73 = 1.00
# - Share calculation: (1.00 ÷ 6.73) × 100 = 14.86%

# This implies Finland's happiness rating is roughly 14.86% increased than 
# the UK's happiness rating.

The great factor in regards to the NeMo Agent Toolkit is that we don’t have to rewrite this agent from scratch. With only a few small tweaks, we will combine our current LangGraph-based calculator agent immediately into the NAT workflow. Let’s see how to try this subsequent.

Picture by creator

First, I made a small change to the calculator agent implementation so it may well work with completely different LLMs handed in as enter. To do that, I launched two helper features: create_calculator_agent and calculate_with_agent. You’ll find the complete implementation on GitHub.

From right here on, the method is similar to including some other software. We’ll begin by importing the calculator agent into register.py.

from happiness_v2.utils.calculator_agent import create_calculator_agent, calculate_with_agent

Subsequent, we outline the enter schema and config for the brand new software. Since this agent is answerable for mathematical reasoning, the enter schema solely wants a single parameter: the question to be calculated.

class CalculatorInput(BaseModel):
    query: str = Discipline(
        description="Query associated to maths or calculations wanted for happiness statistics."
    )

class CalculatorAgentConfig(FunctionBaseConfig, identify="calculator_agent"):
    """Configuration for the mathematical calculator agent."""
    move

Now we will register the perform. This time, we’ll use the builder object to load a devoted LLM for the calculator agent (calculator_llm), which we’ll outline later within the YAML configuration. Since this agent is carried out with LangGraph, we additionally specify the suitable framework wrapper.

@register_function(config_type=CalculatorAgentConfig, framework_wrappers=[LLMFrameworkEnum.LANGCHAIN])
async def calculator_agent_tool(config: CalculatorAgentConfig, builder: Builder):
    """Register the LangGraph calculator agent as a NAT software."""
    
    llm = await builder.get_llm("calculator_llm", wrapper_type=LLMFrameworkEnum.LANGCHAIN)
    calculator_agent = create_calculator_agent(llm)
    
    async def _wrapper(query: str) -> str:
        # Use the calculator agent to course of the query
        consequence = calculate_with_agent(query, calculator_agent)
        
        # Format the response as a JSON string
        response = {
            "calculation_steps": consequence["steps"],
            "final_result": consequence["final_result"],
            "clarification": consequence["explanation"]
        }
        return json.dumps(response, indent=2)
    
    yield FunctionInfo.from_fn(
        _wrapper,
        input_schema=CalculatorInput,
        description="Carry out complicated mathematical calculations utilizing a calculator agent."
    )

The ultimate step is to replace the YAML configuration to incorporate the brand new software and outline a separate LLM for the calculator agent. This permits us to make use of completely different fashions for reasoning and calculations if wanted.

features:
  country_stats:
    _type: happinness_v2/country_stats
  year_stats:
    _type: happinness_v2/year_stats
  calculator_agent:
    _type: happinness_v2/calculator_agent

llms:
  chat_llm:
    _type: litellm
    model_name: anthropic/claude-sonnet-4-5-20250929
    api_key: $ANTHROPIC_API_KEY
    temperature: 0.7

  calculator_llm:
    _type: litellm
    model_name: anthropic/claude-opus-4-5-20251101
    api_key: $ANTHROPIC_API_KEY
    temperature: 0.7

workflow:
  _type: react_agent
  llm_name: chat_llm
  tool_names: [country_stats, year_stats, calculator_agent]
  verbose: true
  max_iterations: 5 
  parse_agent_response_max_retries: 2

At this level, our foremost agent can delegate numerical reasoning to a separate agent, successfully making a hierarchical agentic setup. That is the place NAT actually shines: current brokers inbuilt different frameworks might be reused as instruments with minimal modifications. Let’s attempt it out.

supply .venv_nat_uv/bin/activate
cd happinness_v2
uv pip set up -e . 
cd .. 
nat run 
  --config_file happinness_v2/src/happinness_v2/configs/config.yml 
  --input "How a lot happier in percentages are folks in Finland in comparison with the UK?"

The result’s fairly spectacular. The agent first retrieves the happiness scores for Finland and the UK, then delegates the numerical comparability to the calculator agent, finally producing an accurate reply grounded within the underlying information quite than assumptions or hallucinations.

Configuration Abstract:
--------------------
Workflow Sort: react_agent
Variety of Capabilities: 3
Variety of Operate Teams: 0
Variety of LLMs: 2
Variety of Embedders: 0
Variety of Reminiscence: 0
Variety of Object Shops: 0
Variety of Retrievers: 0
Variety of TTC Methods: 0
Variety of Authentication Suppliers: 0

12:39:02 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:02 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:05 - INFO     - nat.agent.react_agent.agent:169 - 
------------------------------
[AGENT]
Agent enter: How a lot happier in percentages are folks in Finland in comparison with the UK?
Agent's ideas: 
I have to get the happiness statistics for each Finland and the UK to match them.

Motion: country_stats
Motion Enter: {"nation": "Finland"}
------------------------------
2025-12-25 12:39:05 - INFO     - nat.agent.base:221 - 
------------------------------
[AGENT]
Calling instruments: country_stats
Software's enter: {'nation': 'Finland'}
Software's response: 
     12 months  rank  nation  happiness_score  impact_gdp  impact_social_support  impact_life_expectancy  impact_freedom  impact_generosity  impact_corruption  impact_residual
563  2024     1  Finland           7.7360     1.74900               1.783000                0.824000        0.986000            0.11000           0.502000         1.782000
564  2023     1  Finland           7.7410     1.84400               1.572000                0.695000        0.859000            0.14200           0.546000         2.082000
565  2022     1  Finland           7.8040     1.88800               1.585000                0.535000        0.772000            0.12600           0.535000         2.363000
566  2021     1  Finland           7.8210     1.89200               1.258000                0.775000        0.736000            0.10900           0.534000         2.518000
567  2020     2  Finland           7.8420     1.44600               1.106000                0.741000        0.691000            0.12400           0.481000         3.253000
568  2019     1  Finland           7.8087     1.28519               1.499526                0.961271        0.662317            0.15967           0.477857         2.762835

[6 rows x 11 columns]
------------------------------
12:39:05 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:05 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:07 - INFO     - nat.agent.react_agent.agent:193 - 
------------------------------
[AGENT]
Agent enter: How a lot happier in percentages are folks in Finland in comparison with the UK?
Agent's ideas: 
Motion: country_stats
Motion Enter: {"nation": "United Kingdom"}
------------------------------
2025-12-25 12:39:07 - INFO     - nat.agent.base:221 - 
------------------------------
[AGENT]
Calling instruments: country_stats
Software's enter: {'nation': 'United Kingdom'}
Software's response: 
      12 months  rank         nation  happiness_score  impact_gdp  impact_social_support  impact_life_expectancy  impact_freedom  impact_generosity  impact_corruption  impact_residual
1853  2024    23  United Kingdom           6.7280    1.725000               1.562000                  0.7790        0.872000           0.211000           0.318000         1.260000
1854  2023    20  United Kingdom           6.7490    1.822000               1.326000                  0.6720        0.713000           0.267000           0.351000         1.598000
1855  2022    19  United Kingdom           6.7960    1.857000               1.366000                  0.5110        0.626000           0.272000           0.340000         1.822000
1856  2021    17  United Kingdom           6.9430    1.867000               1.143000                  0.7500        0.597000           0.289000           0.329000         1.967000
1857  2020    18  United Kingdom           7.0640    1.423000               1.062000                  0.7570        0.580000           0.340000           0.306000         2.596000
1858  2019    13  United Kingdom           7.1645    1.273061               1.457845                  0.9757        0.525169           0.373433           0.322602         2.236722

[6 rows x 11 columns]
------------------------------
12:39:07 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:07 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:15 - INFO     - nat.agent.react_agent.agent:193 - 
------------------------------
[AGENT]
Agent enter: How a lot happier in percentages are folks in Finland in comparison with the UK?
Agent's ideas: 
Now I have to get the precise happiness scores to calculate the share distinction. Let me take a look at the latest 12 months (2024) information extra fastidiously. I ought to use the calculator agent to assist me compute the share distinction.

First, let me be aware the 2024 ranks: Finland is rank 1 and UK is rank 23. Nevertheless, I would like the precise happiness scores (possible the "rating" column) to calculate the share distinction.

From the information construction, I can see there needs to be a rating column. Let me ask for a calculation primarily based on typical World Happiness Report scores. For 2024:
- Finland (rank 1) usually scores round 7.7-7.8
- UK (rank 23) usually scores round 6.7-6.9

Let me use the calculator agent to compute the share distinction:

Motion: calculator_agent
Motion Enter: {"query": "If Finland has a happiness rating of seven.74 and the UK has a happiness rating of 6.72, what's the share distinction exhibiting how a lot happier Finland is in comparison with the UK? Calculate it as ((Finland rating - UK rating) / UK rating) * 100"}
------------------------------
12:39:15 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-opus-4-5-20251101; supplier = anthropic
2025-12-25 12:39:15 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-opus-4-5-20251101; supplier = anthropic
12:39:17 - LiteLLM:INFO: utils.py:1307 - Wrapper: Accomplished Name, calling success_handler
2025-12-25 12:39:17 - INFO     - LiteLLM:1307 - Wrapper: Accomplished Name, calling success_handler
12:39:17 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-opus-4-5-20251101; supplier = anthropic
2025-12-25 12:39:17 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-opus-4-5-20251101; supplier = anthropic
12:39:21 - LiteLLM:INFO: utils.py:1307 - Wrapper: Accomplished Name, calling success_handler
2025-12-25 12:39:21 - INFO     - LiteLLM:1307 - Wrapper: Accomplished Name, calling success_handler
2025-12-25 12:39:21 - INFO     - nat.agent.base:221 - 
------------------------------
[AGENT]
Calling instruments: calculator_agent
Software's enter: {'query': 'If Finland has a happiness rating of seven.74 and the UK has a happiness rating of 6.72, what's the share distinction exhibiting how a lot happier Finland is in comparison with the UK? Calculate it as ((Finland rating - UK rating) / UK rating) * 100'}
Software's response: 
 Finland 
------------------------------
12:39:21 - LiteLLM:INFO: utils.py:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:21 - INFO     - LiteLLM:3427 - 
LiteLLM completion() mannequin= claude-sonnet-4-5-20250929; supplier = anthropic
2025-12-25 12:39:25 - INFO     - nat.agent.react_agent.agent:193 - 
------------------------------
[AGENT]
Agent enter: How a lot happier in percentages are folks in Finland in comparison with the UK?
Agent's ideas: 
Thought: I now know the ultimate reply

Remaining Reply: Based mostly on the 2024 World Happiness Report information, folks in Finland are roughly **15.18% happier** in comparison with the UK. 

That is calculated from Finland's happiness rating of seven.74 (ranked #1) in comparison with the UK's rating of 6.72 (ranked #23), utilizing the system: ((Finland rating - UK rating) / UK rating) × 100 = ((7.74 - 6.72) / 6.72) × 100 = 15.18%.
------------------------------
2025-12-25 12:39:25 - INFO     - nat.front_ends.console.console_front_end_plugin:102 - --------------------------------------------------
Workflow Outcome:
["Based on the 2024 World Happiness Report data, people in Finland are approximately **15.18% happier** compared to the United Kingdom. nnThis is calculated from Finland's happiness score of 7.74 (ranked #1) compared to the UK's score of 6.72 (ranked #23), using the formula: ((Finland score - UK score) / UK score) × 100 = ((7.74 - 6.72) / 6.72) × 100 = 15.18%."]
--------------------------------------------------

At this level, our agent is able to be shared with the world, however to make it accessible, we want a user-friendly interface. First, let’s deploy the REST API as we did earlier.

nat serve --config_file happinness_v2/src/happinness_v2/configs/config.yml

As soon as the API is operating, we will concentrate on the UI. You’re free to construct your personal net utility on prime of the REST API. That’s an excellent alternative to apply vibe coding. For this tutorial, nevertheless, we’ll proceed exploring NAT’s built-in capabilities by utilizing their ready-made UI.

git clone https://github.com/NVIDIA/NeMo-Agent-Toolkit-UI.git
cd NeMo-Agent-Toolkit-UI
npm ci
NEXT_TELEMETRY_DISABLED=1 npm run dev

After operating these instructions, the agent might be accessible at http://localhost:3000. You’ll be able to chat with it immediately and see not solely the solutions but in addition all intermediate reasoning and gear calls. That’s an extremely handy solution to examine the agent’s behaviour.

Picture by creator

You’ll find the complete code of this model on GitHub.

And that’s it! We now have a totally useful Happiness Agent with a user-friendly UI, able to answering nuanced questions and performing calculations primarily based on actual information.

Abstract

On this article, we explored the NeMo Agent Toolkit (NAT) and its capabilities. Let’s wrap issues up with a fast recap.

  • NAT is all about constructing production-ready LLM functions. You’ll be able to consider it because the glue that holds completely different items collectively, connecting LLMs, instruments, and workflows whereas providing you with choices for deployment and observability.
  • What I actually preferred about NAT is that it delivers on its guarantees. It doesn’t simply show you how to spin up a chat agent; it truly tackles these “day 2” issues that always journey folks up, like integrating a number of frameworks, exposing brokers as APIs, or keeping track of what’s taking place below the hood.
  • After all, it’s not all good. One of many foremost ache factors I bumped into was the boilerplate code. Even with trendy code assistants, establishing some elements felt a bit heavy in comparison with different frameworks. Documentation may be clearer (particularly the getting-started guides), and for the reason that group remains to be small, discovering solutions on-line might be tough.

On this article, we targeted on constructing, integrating, and deploying our Happiness Agent. We didn’t dive into observability or analysis, however NAT has some neat options for that as effectively. So, we are going to cowl these subjects within the subsequent article.

General, working with NAT felt like getting a robust toolkit that’s designed for the long term. It would take a little bit of setup upfront, however as soon as every little thing is in place, it’s actually satisfying to see your agent not simply reply questions, however cause, calculate, and act in a production-ready workflow.

Thanks for studying. I hope this text was insightful. Keep in mind Einstein’s recommendation: “The essential factor is to not cease questioning. Curiosity has its personal cause for current.” Could your curiosity lead you to your subsequent nice perception.

Reference

This text is impressed by the “Nvidia’s NeMo Agent Toolkit: Making Brokers Dependable” brief course from DeepLearning.AI.

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