Project overview
In this project, you’ll take on the role of a data analyst at a startup considering launching a Kickstarter campaign to test product viability. Using SQL, you’ll analyze a database of Kickstarter projects to identify factors that influence the success or failure of campaigns.
This hands-on project allows you to apply fundamental SQL skills like querying, filtering, sorting, and conditional logic to derive insights from real-world data. You’ll uncover trends in project categories, funding goals, and backer engagement to guide your team’s campaign strategy.
Objective: Analyze Kickstarter data using SQL to identify key factors contributing to campaign success and inform product launch decisions.
Key skill required
To complete this project, it's recommended to build these foundational skills in SQL
- Extracting data from database tables using SELECT queries
- Filtering data using WHERE clauses with operators
- Sorting query results using ORDER BY
- Transforming data using SQL functions
Projects steps
Step 1: Retrieving Column Data Types
Step 2: Initial Selection of Rows and Columns
Step 3: Filtering by Category
Step 4: Filtering by Quantity
Step 5: Ordering Results
Step 6: Applying Conditional Logic
Step 7: Your Turn
Step 8: Next Steps
Master skills faster with Dataquest
Go from zero to job-ready
Learn exactly what you need to achieve your goal. Don’t waste time on unrelated lessons.
Build your project portfolio
Build confidence with our in-depth projects, and show off your data skills.
Challenge yourself with exercises
Work with real data from day one with interactive lessons and hands-on exercises.
Showcase your path certification
Share the evidence of your hard work with your network and potential employers.
The Dataquest guarantee
Dataquest has helped thousands of people start new careers in data. If you put in the work and follow our path, you’ll master data skills and grow your career.
We believe so strongly in our paths that we offer a full satisfaction guarantee. If you complete a career path on Dataquest and aren’t satisfied with your outcome, we’ll give you a refund.
Recommended projects
Investigative Statistical Analysis – Analyzing Accuracy in Data Presentation
Practice using R to analyze movie ratings data, compare 2015 vs 2016 ratings, and apply sampling and distributions to investigate bias.
Predicting Listing Gains in the Indian IPO Market Using PyTorch
Practice building a regularized deep learning model in PyTorch to predict IPO profitability using real Indian stock market data with advanced evaluation techniques.
Exploring Financial Data using Nasdaq Data Link API
Practice retrieving financial data from APIs, manipulating it with Pandas, and visualizing trends using Python.
NYC Schools Perceptions
Practice data cleaning, analysis, and visualization in R to explore survey data and showcase your skills with R Notebooks.
Investigative Statistical Analysis – Analyzing Accuracy in Data Presentation
Practice statistical analysis in Python to investigate movie rating bias and determine if Fandango inflated ratings.
Building Fast Queries on a CSV
Practice implementing an inventory system for a laptop store using Python classes, dictionaries, and binary search.
Garden Simulator Text Based Game
Practice using OOP, error handling, and randomness in Python to create an interactive gardening game simulator.
Predicting Heart Disease
Practice building a K Nearest Neighbors classifier in Python to predict heart disease risk from patient data.
Word Raider
Practice using Python variables, lists, loops, conditionals, and file handling to build an interactive word-guessing game.
Grow your career with
Dataquest.