Get in Touch

Course Outline

Introduction

  • Overview of Kaggle.
  • Kaggle categories and performance tiers.

Kaggle Competitions

  • Overview of Kaggle competitions.
  • Competition formats.
  • How to join a Kaggle competition.
  • Forming a team.

Kaggle Datasets

  • Types of datasets available on Kaggle.
  • Searching for and creating datasets.
  • Organizing and collaborating on datasets.

Kaggle Kernels

  • Types of kernels on Kaggle.
  • Searching for kernels.
  • Kernel editor and data sources.
  • Collaborating on kernels.

Kaggle Public API

  • Installation and authentication.
  • Using Kaggle API with competitions.
  • Using Kaggle with datasets.
  • Creating and maintaining datasets.
  • Using Kaggle API with kernels.
  • Pushing and pulling a kernel.
  • Checking the status and output of a kernel.
  • Creating and running a new kernel.
  • Kaggle configurations.

Summary and Next Steps

Requirements

  • Proficiency in Python programming.
  • Familiarity with machine learning concepts.
  • Understanding of statistical principles.

Target Audience

  • Data scientists.
  • Software developers.
  • Individuals interested in learning Data Science via Kaggle.
 14 Hours

Number of participants


Price per participant

Upcoming Courses

Related Categories