Part 2: Statistikklubben LAB - Sales Prediction with XGBoost
Education

Part 2: Statistikklubben LAB - Sales Prediction with XGBoost

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Datum

tis 2 juni

Tid

15:30 - 17:00

Pris

Gratis

Bli påmind

Välj när du vill bli påmind via e-post.

Om evenemanget

NOTE 1: This is part 2 of the lab. If you haven't attended the first lab, please
read the "New to the Lab" section below on how to prepare.
NOTE 2: Spots are limited. If something comes up, please give up your spot
so others can attend ❤️

LAB:
In this hands-on lab, we will work with the same basic setup, built around
two core components:
Model: XGBoost
Task: Predicting sales outcomes

Level
Basic knowledge of Python and some familiarity with machine learning or
statistical modeling is recommended.

XGBoost
XGBoost is a natural choice for this kind of project. It's powerful, flexible, well-documented and widely used in real-world forecasting tasks, yet still
accessible enough that you don't need deep domain expertise to get
started. The sales-prediction problem itself strikes a nice balance: realistic,
but not so specialized that it requires industry knowledge. We'll go through
the notebook and experiment with different settings to understand how
they affect the model. The code covers:

Data preprocessing Exploratory analysis
Feature engineering Handling missing values and outliers
Fine-tuning Evaluation

Comparing results across different approaches can help us see how different settings affect model performance. The goal is not just to build
a model, but to learn from each other, compare methodologies, and deepen
our understanding of predictive modeling as a whole.


New to the Lab?
Once you've signed up, I'll send you code + data + a list of core concepts.

Make sure you can run the notebook without errors before the lab. If
you get errors, check that all required tools, libraries/packages are
installed.
Try to get an overview of the concepts and terms (read, google, or ask an AI). You don't need to have a solid grasp of the concepts and
terms but be aware that we won't be going through these during the
lab. Full focus on the code and optimizing the model.

  • The notebook is in Python, but an R draft is also avai

OBS! Vi reserverar oss för eventuella felskrivningar i informationen som vi ger om det här evenemanget. Besök evenemangets hemsida för att säkerställa exempelvis datum, öppettider, priser och plats.

Plats

Bottom floor of Kulturhuset, Sergels Torg, meetup1, Stockholm

Bottom floor of Kulturhuset, Sergels Torg, meetup1, StockholmÖppna i Google Maps

Den här veckan i Stockholm