Skip to content

Developed a predictive model to determine the success of Falcon 9 first-stage landings, essential for estimating launch costs. Leveraged machine learning techniques to analyze SpaceX data and make informed predictions.

Notifications You must be signed in to change notification settings

manishabarse/IBM--Capstone-project

Repository files navigation

IBM Capstone Project: Predictive Analysis of SpaceX Falcon 9 First-Stage Landings

Developed a predictive model to determine the success of Falcon 9 first-stage landings, essential for estimating launch costs. Leveraged machine learning techniques to analyze SpaceX data and make informed predictions.

  • Conducted comprehensive data collection using RESTful API and web scraping, followed by data wrangling and exploratory data analysis.
  • Built an interactive dashboard using Plotly Dash and analyzed launch site proximity with Folium.
  • Implemented ML models, including SVM and Classification Trees, optimizing hyperparameters for accurate predictions.
  • Utilized Python for data manipulation (Pandas), machine learning (Scikit-learn), and visualization (Plotly, Folium). -Employed SQL for data querying and exploration.
  • Identified key factors influencing successful first-stage landings, including launch site proximity and payload mass. Established the Tree Classifier Algorithm as the optimal model for predicting outcomes.

About

Developed a predictive model to determine the success of Falcon 9 first-stage landings, essential for estimating launch costs. Leveraged machine learning techniques to analyze SpaceX data and make informed predictions.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published