If with Python for information, you might have most likely skilled the frustration of ready minutes for a Pandas operation to complete.
At first, every thing appears positive, however as your dataset grows and your workflows grow to be extra advanced, your laptop computer instantly feels prefer it’s getting ready for lift-off.
A few months in the past, I labored on a challenge analyzing e-commerce transactions with over 3 million rows of knowledge.
It was a reasonably attention-grabbing expertise, however more often than not, I watched easy groupby operations that usually ran in seconds instantly stretch into minutes.
At that time, I noticed Pandas is wonderful, however it’s not all the time sufficient.
This text explores fashionable options to Pandas, together with Polars and DuckDB, and examines how they’ll simplify and enhance the dealing with of huge datasets.
For readability, let me be upfront about a couple of issues earlier than we start.
This text just isn’t a deep dive into Rust reminiscence administration or a proclamation that Pandas is out of date.
As an alternative, it’s a sensible, hands-on information. You will notice actual examples, private experiences, and actionable insights into workflows that may prevent time and sanity.
Why Pandas Can Really feel Gradual
Again after I was on the e-commerce challenge, I bear in mind working with CSV recordsdata over two gigabytes, and each filter or aggregation in Pandas usually took a number of minutes to finish.
Throughout that point, I might stare on the display, wishing I may simply seize a espresso or binge a couple of episodes of a present whereas the code ran.
The primary ache factors I encountered had been pace, reminiscence, and workflow complexity.
Everyone knows how giant CSV recordsdata devour monumental quantities of RAM, generally greater than what my laptop computer may comfortably deal with. On high of that, chaining a number of transformations additionally made code more durable to take care of and slower to execute.
Polars and DuckDB handle these challenges in several methods.
Polars, in-built Rust, makes use of multi-threaded execution to course of giant datasets effectively.
DuckDB, then again, is designed for analytics and executes SQL queries while not having you to load every thing into reminiscence.
Mainly, every of them has its personal superpower. Polars is the speedster, and DuckDB is sort of just like the reminiscence magician.
And the very best half? Each combine seamlessly with Python, permitting you to boost your workflows with no full rewrite.
Setting Up Your Atmosphere
Earlier than we begin coding, ensure your atmosphere is prepared. For consistency, I used Pandas 2.2.0, Polars 0.20.0, and DuckDB 1.9.0.
Pinning variations can prevent complications when following tutorials or sharing code.
pip set up pandas==2.2.0 polars==0.20.0 duckdb==1.9.0
In Python, import the libraries:
import pandas as pd
import polars as pl
import duckdb
import warnings
warnings.filterwarnings("ignore")
For instance, I’ll use an e-commerce gross sales dataset with columns reminiscent of order ID, product ID, area, nation, income, and date. You may obtain related datasets from Kaggle or generate artificial information.
Loading Knowledge
Loading information effectively units the tone for the remainder of your workflow. I bear in mind a challenge the place the CSV file had almost 5 million rows.
Pandas dealt with it, however the load instances had been lengthy, and the repeated reloads throughout testing had been painful.
It was a kind of moments the place you would like your laptop computer had a “quick ahead” button.
Switching to Polars and DuckDB utterly improved every thing, and instantly, I may entry and manipulate the info nearly immediately, which truthfully made the testing and iteration processes way more pleasing.
With Pandas:
df_pd = pd.read_csv("gross sales.csv")
print(df_pd.head(3))
With Polars:
df_pl = pl.read_csv("gross sales.csv")
print(df_pl.head(3))
With DuckDB:
con = duckdb.join()
df_duck = con.execute("SELECT * FROM 'gross sales.csv'").df()
print(df_duck.head(3))
DuckDB can question CSVs immediately with out loading the whole datasets into reminiscence, making it a lot simpler to work with giant recordsdata.
Filtering Knowledge
The issue right here is that filtering in Pandas may be sluggish when coping with thousands and thousands of rows. I as soon as wanted to investigate European transactions in an enormous gross sales dataset. Pandas took minutes, which slowed down my evaluation.
With Pandas:
filtered_pd = df_pd[df_pd.region == "Europe"]
Polars is quicker and might course of a number of filters effectively:
filtered_pl = df_pl.filter(pl.col("area") == "Europe")
DuckDB makes use of SQL syntax:
filtered_duck = con.execute("""
SELECT *
FROM 'gross sales.csv'
WHERE area = 'Europe'
""").df()
Now you may filter by giant datasets in seconds as an alternative of minutes, leaving you extra time to concentrate on the insights that actually matter.
Aggregating Massive Datasets Rapidly
Aggregation is commonly the place Pandas begins to really feel sluggish. Think about calculating whole income per nation for a advertising report.
In Pandas:
agg_pd = df_pd.groupby("nation")["revenue"].sum().reset_index()
In Polars:
agg_pl = df_pl.groupby("nation").agg(pl.col("income").sum())
In DuckDB:
agg_duck = con.execute("""
SELECT nation, SUM(income) AS total_revenue
FROM 'gross sales.csv'
GROUP BY nation
""").df()
I bear in mind operating this aggregation on a ten million-row dataset. In Pandas, it took almost half an hour. Polars accomplished the identical operation in underneath a minute.
The sense of reduction was nearly like ending a marathon and realizing your legs nonetheless work.
Becoming a member of Datasets at Scale
Becoming a member of datasets is a kind of issues that sounds easy till you’re truly knee-deep within the information.
In actual initiatives, your information normally lives in a number of sources, so it’s a must to mix them utilizing shared columns like buyer IDs.
I realized this the exhausting means whereas engaged on a challenge that required combining thousands and thousands of buyer orders with an equally giant demographic dataset.
Every file was large enough by itself, however merging them felt like attempting to pressure two puzzle items collectively whereas your laptop computer begged for mercy.
Pandas took so lengthy that I started timing the joins the identical means individuals time how lengthy it takes their microwave popcorn to complete.
Spoiler: the popcorn received each time.
Polars and DuckDB gave me a means out.
With Pandas:
merged_pd = df_pd.merge(pop_df_pd, on="nation", how="left")
Polars:
merged_pl = df_pl.be part of(pop_df_pl, on="nation", how="left")
DuckDB:
merged_duck = con.execute("""
SELECT *
FROM 'gross sales.csv' s
LEFT JOIN 'pop.csv' p
USING (nation)
""").df()
Joins on giant datasets that used to freeze your workflow now run easily and effectively.
Lazy Analysis in Polars
One factor I didn’t respect early in my information science journey was how a lot time will get wasted whereas operating transformations line by line.
Polars approaches this in another way.
It makes use of a method referred to as lazy analysis, which basically waits till you might have accomplished defining your transformations earlier than executing any operations.
It examines the whole pipeline, determines probably the most environment friendly path, and executes every thing concurrently.
It’s like having a buddy who listens to your whole order earlier than strolling to the kitchen, as an alternative of 1 who takes every instruction individually and retains going backwards and forwards.
This TDS article indepthly explains lazy analysis.
Right here’s what the circulate seems to be like:
Pandas:
df = df[df["amount"] > 100]
df = df.groupby("section").agg({"quantity": "imply"})
df = df.sort_values("quantity")
Polars Lazy Mode:
import polars as pl
df_lazy = (
pl.scan_csv("gross sales.csv")
.filter(pl.col("quantity") > 100)
.groupby("section")
.agg(pl.col("quantity").imply())
.type("quantity")
)
end result = df_lazy.accumulate()
The primary time I used lazy mode, it felt unusual not seeing prompt outcomes. However as soon as I ran the ultimate .accumulate(), the pace distinction was apparent.
Lazy analysis received’t magically remedy each efficiency challenge, however it brings a degree of effectivity that Pandas wasn’t designed for.
Conclusion and takeaways
Working with giant datasets doesn’t should really feel like wrestling along with your instruments.
Utilizing Polars and DuckDB confirmed me that the issue wasn’t all the time the info. Generally, it was the software I used to be utilizing to deal with it.
If there’s one factor you are taking away from this tutorial, let or not it’s this: you don’t should abandon Pandas, however you may attain for one thing higher when your datasets begin pushing their limits.
Polars provides you pace in addition to smarter execution, then DuckDB enables you to question big recordsdata like they’re tiny. Collectively, they make working with giant information really feel extra manageable and fewer tiring.
If you wish to go deeper into the concepts explored on this tutorial, the official documentation of Polars and DuckDB are good locations to start out.
















