Part 2: Statistikklubben LAB - Sales Prediction with XGBoost
Education

Part 2: Statistikklubben LAB - Sales Prediction with XGBoost

SomoEventFinder

Fecha

mar, 2 jun

Hora

15:30 - 17:00

Precio

Gratis

Sitio web

Visitar sitio

Este evento ya pasó — encuentra los próximos en Somo

  • Recibe un recordatorio antes de que empiece el evento
  • Guarda y comparte con amigos
  • Descubre eventos similares según tus gustos

Recibir recordatorio

Elige cuándo recibir un recordatorio por email.

Sobre el evento

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

NOTA: No podemos garantizar la exactitud de la información que proporcionamos sobre este evento. Visite la página web del evento para verificar detalles como fecha, horarios, precios y ubicación.

Ubicación

Bottom floor of Kulturhuset, Sergels Torg, meetup1, Stockholm

Bottom floor of Kulturhuset, Sergels Torg, meetup1, StockholmAbrir en Google Maps

Esta semana en Stockholm