datasets and are on the lookout for fast insights with out an excessive amount of guide grind, you’ve come to the proper place.
In 2025, datasets usually comprise hundreds of thousands of rows and a whole bunch of columns, which makes guide evaluation subsequent to unattainable. Native Giant Language Fashions can rework your uncooked DataFrame statistics into polished, readable studies in seconds — minutes at worst. This strategy eliminates the tedious strategy of analyzing information by hand and writing government studies, particularly if the info construction doesn’t change.
Pandas handles the heavy lifting of knowledge extraction whereas LLMs convert your technical outputs into presentable studies. You’ll nonetheless want to write down capabilities that pull key statistics out of your datasets, nevertheless it’s a one-time effort.
This information assumes you may have Ollama put in domestically. In the event you don’t, you possibly can nonetheless use third-party LLM distributors, however I received’t clarify how to connect with their APIs.
Desk of contents:
- Dataset Introduction and Exploration
- The Boring Half: Extracting Abstract Statistics
- The Cool Half: Working with LLMs
- What You May Enhance
Dataset Introduction and Exploration
For this information, I’m utilizing the MBA admissions dataset from Kaggle. Obtain it if you wish to observe alongside.
The dataset is licensed below the Apache 2.0 license, which suggests you should use it freely for each private and industrial initiatives.
To get began, you’ll want just a few Python libraries put in in your system.
After you have every thing put in, import the required libraries in a brand new script or a pocket book:
import pandas as pd
from langchain_ollama import ChatOllama
from typing import Literal
Dataset loading and preprocessing
Begin by loading the dataset with Pandas. This snippet hundreds the CSV file, prints fundamental details about the dataset form, and reveals what number of lacking values exist in every column:
df = pd.read_csv("information/MBA.csv")
# Primary dataset information
print(f"Dataset form: {df.form}n")
print("Lacking worth stats:")
print(df.isnull().sum())
print("-" * 25)
df.pattern(5)

Since information cleansing isn’t the principle focus of this text, I’ll maintain the preprocessing minimal. The dataset solely has a few lacking values that want consideration:
df["race"] = df["race"].fillna("Unknown")
df["admission"] = df["admission"].fillna("Deny")
That’s it! Let’s see how you can go from this to a significant report subsequent.
The Boring Half: Extracting Abstract Statistics
Even with all of the advances in AI functionality and availability, you in all probability don’t need to ship your complete dataset to an LLM supplier. There are a few good the reason why.
It may eat method too many tokens, which interprets on to greater prices. Processing giant datasets can take a very long time, particularly while you’re working fashions domestically by yourself {hardware}. You may additionally be coping with delicate information that shouldn’t go away your group.
Some guide work remains to be the way in which to go.
This strategy requires you to write down a operate that extracts key parts and statistics out of your Pandas DataFrame. You’ll have to write down this operate from scratch for various datasets, however the core concept transfers simply between initiatives.
The get_summary_context_message()
operate takes in a DataFrame and returns a formatted multi-line string with an in depth abstract. Right here’s what it contains:
- Complete software depend and gender distribution
- Worldwide vs home applicant breakdown
- GPA and GMAT rating quartile statistics
- Admission charges by educational main (sorted by fee)
- Admission charges by work trade (prime 8 industries)
- Work expertise evaluation with categorical breakdowns
- Key insights highlighting top-performing classes
Right here’s the whole supply code for the operate:
def get_summary_context_message(df: pd.DataFrame) -> str:
"""
Generate a complete abstract report of MBA admissions dataset statistics.
This operate analyzes MBA software information to offer detailed statistics on
applicant demographics, educational efficiency, skilled backgrounds, and
admission charges throughout numerous classes. The abstract contains gender and
worldwide standing distributions, GPA and GMAT rating statistics, admission
charges by educational main and work trade, and work expertise influence evaluation.
Parameters
----------
df : pd.DataFrame
DataFrame containing MBA admissions information with the next anticipated columns:
- 'gender', 'worldwide', 'gpa', 'gmat', 'main', 'work_industry', 'work_exp', 'admission'
Returns
-------
str
A formatted multi-line string containing complete MBA admissions
statistics.
"""
# Primary software statistics
total_applications = len(df)
# Gender distribution
gender_counts = df["gender"].value_counts()
male_count = gender_counts.get("Male", 0)
female_count = gender_counts.get("Feminine", 0)
# Worldwide standing
international_count = (
df["international"].sum()
if df["international"].dtype == bool
else (df["international"] == True).sum()
)
# GPA statistics
gpa_data = df["gpa"].dropna()
gpa_avg = gpa_data.imply()
gpa_25th = gpa_data.quantile(0.25)
gpa_50th = gpa_data.quantile(0.50)
gpa_75th = gpa_data.quantile(0.75)
# GMAT statistics
gmat_data = df["gmat"].dropna()
gmat_avg = gmat_data.imply()
gmat_25th = gmat_data.quantile(0.25)
gmat_50th = gmat_data.quantile(0.50)
gmat_75th = gmat_data.quantile(0.75)
# Main evaluation - admission charges by main
major_stats = []
for main in df["major"].distinctive():
major_data = df[df["major"] == main]
admitted = len(major_data[major_data["admission"] == "Admit"])
complete = len(major_data)
fee = (admitted / complete) * 100
major_stats.append((main, admitted, complete, fee))
# Kind by admission fee (descending)
major_stats.kind(key=lambda x: x[3], reverse=True)
# Work trade evaluation - admission charges by trade
industry_stats = []
for trade in df["work_industry"].distinctive():
if pd.isna(trade):
proceed
industry_data = df[df["work_industry"] == trade]
admitted = len(industry_data[industry_data["admission"] == "Admit"])
complete = len(industry_data)
fee = (admitted / complete) * 100
industry_stats.append((trade, admitted, complete, fee))
# Kind by admission fee (descending)
industry_stats.kind(key=lambda x: x[3], reverse=True)
# Work expertise evaluation
work_exp_data = df["work_exp"].dropna()
avg_work_exp_all = work_exp_data.imply()
# Work expertise for admitted college students
admitted_students = df[df["admission"] == "Admit"]
admitted_work_exp = admitted_students["work_exp"].dropna()
avg_work_exp_admitted = admitted_work_exp.imply()
# Work expertise ranges evaluation
def categorize_work_exp(exp):
if pd.isna(exp):
return "Unknown"
elif exp < 2:
return "0-1 years"
elif exp < 4:
return "2-3 years"
elif exp < 6:
return "4-5 years"
elif exp < 8:
return "6-7 years"
else:
return "8+ years"
df["work_exp_category"] = df["work_exp"].apply(categorize_work_exp)
work_exp_category_stats = []
for class in ["0-1 years", "2-3 years", "4-5 years", "6-7 years", "8+ years"]:
category_data = df[df["work_exp_category"] == class]
if len(category_data) > 0:
admitted = len(category_data[category_data["admission"] == "Admit"])
complete = len(category_data)
fee = (admitted / complete) * 100
work_exp_category_stats.append((class, admitted, complete, fee))
# Construct the abstract message
abstract = f"""MBA Admissions Dataset Abstract (2025)
Complete Functions: {total_applications:,} individuals utilized to the MBA program.
Gender Distribution:
- Male candidates: {male_count:,} ({male_count/total_applications*100:.1f}%)
- Feminine candidates: {female_count:,} ({female_count/total_applications*100:.1f}%)
Worldwide Standing:
- Worldwide candidates: {international_count:,} ({international_count/total_applications*100:.1f}%)
- Home candidates: {total_applications-international_count:,} ({(total_applications-international_count)/total_applications*100:.1f}%)
Tutorial Efficiency Statistics:
GPA Statistics:
- Common GPA: {gpa_avg:.2f}
- twenty fifth percentile: {gpa_25th:.2f}
- fiftieth percentile (median): {gpa_50th:.2f}
- seventy fifth percentile: {gpa_75th:.2f}
GMAT Statistics:
- Common GMAT: {gmat_avg:.0f}
- twenty fifth percentile: {gmat_25th:.0f}
- fiftieth percentile (median): {gmat_50th:.0f}
- seventy fifth percentile: {gmat_75th:.0f}
Main Evaluation - Admission Charges by Tutorial Background:"""
for main, admitted, complete, fee in major_stats:
abstract += (
f"n- {main}: {admitted}/{complete} admitted ({fee:.1f}% admission fee)"
)
abstract += (
"nnWork Trade Evaluation - Admission Charges by Skilled Background:"
)
# Present prime 8 industries by admission fee
for trade, admitted, complete, fee in industry_stats[:8]:
abstract += (
f"n- {trade}: {admitted}/{complete} admitted ({fee:.1f}% admission fee)"
)
abstract += "nnWork Expertise Affect on Admissions:nnOverall Work Expertise Comparability:"
abstract += (
f"n- Common work expertise (all candidates): {avg_work_exp_all:.1f} years"
)
abstract += f"n- Common work expertise (admitted college students): {avg_work_exp_admitted:.1f} years"
abstract += "nnAdmission Charges by Work Expertise Vary:"
for class, admitted, complete, fee in work_exp_category_stats:
abstract += (
f"n- {class}: {admitted}/{complete} admitted ({fee:.1f}% admission fee)"
)
# Key insights
best_major = major_stats[0]
best_industry = industry_stats[0]
abstract += "nnKey Insights:"
abstract += (
f"n- Highest admission fee by main: {best_major[0]} at {best_major[3]:.1f}%"
)
abstract += f"n- Highest admission fee by trade: {best_industry[0]} at {best_industry[3]:.1f}%"
if avg_work_exp_admitted > avg_work_exp_all:
abstract += f"n- Admitted college students have barely extra work expertise on common ({avg_work_exp_admitted:.1f} vs {avg_work_exp_all:.1f} years)"
else:
abstract += "n- Work expertise reveals minimal distinction between admitted and all candidates"
return abstract
When you’ve outlined the operate, merely name it and print the outcomes:
print(get_summary_context_message(df))

Now let’s transfer on to the enjoyable half.
The Cool Half: Working with LLMs
That is the place issues get fascinating and your guide information extraction work pays off.
Python helper operate for working with LLMs
If in case you have respectable {hardware}, I strongly suggest utilizing native LLMs for easy duties like this. I take advantage of Ollama and the newest model of the Mistral mannequin for the precise LLM processing.

If you wish to use one thing like ChatGPT via OpenAI API, you possibly can nonetheless do this. You’ll simply want to switch the operate under to arrange your API key and return the suitable occasion from Langchain.
Whatever the choice you select, a name to get_llm()
with a take a look at message shouldn’t return an error:
def get_llm(model_name: str = "mistral:newest") -> ChatOllama:
"""
Create and configure a ChatOllama occasion for native LLM inference.
This operate initializes a ChatOllama consumer configured to connect with a
native Ollama server. The consumer is ready up with deterministic output
(temperature=0) for constant responses throughout a number of calls with the
similar enter.
Parameters
----------
model_name : str, optionally available
The identify of the Ollama mannequin to make use of for chat completions.
Should be a sound mannequin identify that's obtainable on the native Ollama
set up. Default is "mistral:newest".
Returns
-------
ChatOllama
A configured ChatOllama occasion prepared for chat completions.
"""
return ChatOllama(
mannequin=model_name, base_url="http://localhost:11434", temperature=0
)
print(get_llm().invoke("take a look at").content material)

Summarization immediate
That is the place you may get inventive and write ultra-specific directions in your LLM. I’ve determined to maintain issues mild for demonstration functions, however be at liberty to experiment right here.
There isn’t a single proper or flawed immediate.
No matter you do, be certain that to incorporate the format arguments utilizing curly brackets – these values will likely be stuffed dynamically later:
SUMMARIZE_DATAFRAME_PROMPT = """
You're an knowledgeable information analyst and information summarizer. Your job is to soak up complicated datasets
and return user-friendly descriptions and findings.
You got this dataset:
- Identify: {dataset_name}
- Supply: {dataset_source}
This dataset was analyzed in a pipeline earlier than it was given to you.
These are the findings returned by the evaluation pipeline:
<context>
{context}
</context>
Primarily based on these findings, write an in depth report in {report_format} format.
Give the report a significant title and separate findings into sections with headings and subheadings.
Output solely the report in {report_format} and nothing else.
Report:
"""
Summarization Python operate
With the immediate and the get_llm()
capabilities declared, the one factor left is to attach the dots. The get_report_summary()
operate takes in arguments that may fill the format placeholders within the immediate, then invokes the LLM with that immediate to generate a report.
You’ll be able to select between Markdown or HTML codecs:
def get_report_summary(
dataset: pd.DataFrame,
dataset_name: str,
dataset_source: str,
report_format: Literal["markdown", "html"] = "markdown",
) -> str:
"""
Generate an AI-powered abstract report from a pandas DataFrame.
This operate analyzes a dataset and generates a complete abstract report
utilizing a big language mannequin (LLM). It first extracts statistical context
from the dataset, then makes use of an LLM to create a human-readable report within the
specified format.
Parameters
----------
dataset : pd.DataFrame
The pandas DataFrame to investigate and summarize.
dataset_name : str
A descriptive identify for the dataset that will likely be included within the
generated report for context and identification.
dataset_source : str
Details about the supply or origin of the dataset.
report_format : {"markdown", "html"}, optionally available
The specified output format for the generated report. Choices are:
- "markdown" : Generate report in Markdown format (default)
- "html" : Generate report in HTML format
Returns
-------
str
A formatted abstract report.
"""
context_message = get_summary_context_message(df=dataset)
immediate = SUMMARIZE_DATAFRAME_PROMPT.format(
dataset_name=dataset_name,
dataset_source=dataset_source,
context=context_message,
report_format=report_format,
)
return get_llm().invoke(enter=immediate).content material
Utilizing the operate is easy – simply go within the dataset, its identify, and supply. The report format defaults to Markdown:
md_report = get_report_summary(
dataset=df,
dataset_name="MBA Admissions (2025)",
dataset_source="https://www.kaggle.com/datasets/taweilo/mba-admission-dataset"
)
print(md_report)

The HTML report is simply as detailed, however may use some styling. Perhaps you would ask the LLM to deal with that as effectively!

What You May Enhance
I may have simply turned this right into a 30-minute learn by optimizing each element of the pipeline, however I saved it easy for demonstration functions. You don’t must (and shouldn’t) cease right here although.
Listed below are the issues you possibly can enhance to make this pipeline much more highly effective:
- Write a operate that saves the report (Markdown or HTML) on to disk. This fashion you possibly can automate your complete course of and generate studies on a schedule with out guide intervention.
- Within the immediate, ask the LLM so as to add CSS styling to the HTML report to make it look extra presentable. You may even present your organization’s model colours and fonts to keep up consistency throughout all of your information studies.
- Develop the immediate to observe extra particular directions. You may want studies that target particular enterprise metrics, observe a selected template, or embrace suggestions based mostly on the findings.
- Develop the
get_llm()
operate so it will probably join each to Ollama and different distributors like OpenAI, Anthropic, or Google. This offers you flexibility to change between native and cloud-based fashions relying in your wants. - Do actually something within the get_summary_context_message() operate because it serves as the inspiration for all context information supplied to the LLM. That is the place you may get inventive with characteristic engineering, statistical evaluation, and information insights that matter to your particular use case.
I hope this minimal instance has set you heading in the right direction to automate your personal information reporting workflows.