Skip to content

DariusTheGeek/Flood-Prediction-in-Malawi--Zindi-Competition

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

17 Commits
 
 
 
 
 
 

Repository files navigation

Flood-Prediction-in-Malawi--Zindi-Competition

Starter Code for Flood Prediction in Malawi


  • This is a simple starter code to get you going for the Zindi flood prediction competition
  • As this is just a basic machine learning pipeline, the following aspects haven't been covered:
    • Exploratory Data Analysis
    • Feature Engineering
    • Feature Selection
    • Hyperparameter Tuning
    • Model Evaluation
    • Model interpretation
    • Sourcing for more data
    • Documentation and Presentation

Despite its basic approach, this starter code yieldied a satisfacatory RMSE of 0.11866 and a top 15 ranking (as at the time of writing) in the public leaderboard

Context

On 14 March 2019, tropical Cyclone Idai made landfall at the port of Beira, Mozambique, before moving across the region. Millions of people in Malawi, Mozambique and Zimbabwe have been affected by what is the worst natural disaster to hit southern Africa in at least two decades.

In recent decades, countries across Africa have experienced an increase in the frequency and severity of floods. Malawi has been hit with major floods in 2015 and again in 2019. In fact, between 1946 and 2013, floods accounted for 48% of major disasters in Malawi. The Lower Shire Valley in southern Malawi, bordering Mozambique, composed of Chikwawa and Nsanje Districts is the area most prone to flooding.

The objective of this challenge is to build a machine learning model that helps predict the location and extent of floods in southern Malawi.

Data

The training data for this competion can be found here and a sample of the submission file can be found here

Evaluation

The error metric for this competition is the Root Mean Squared Error

About

Simple starter code

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published