Learn Data Science in 14 days
Data wrangling, visualization, and foundational statistics.
- Daily plan, 45-60 min a day
- 6 lessons + 18 exercises
- AI tutor included
- No prior coding experience required
- Practice tasks every day
- Build impressive portfolio project
What you will learn
A powered by mentors Beginner plan with structured subtopics, quizzes, and practice tasks.
Data science workflow overview
Understand the end-to-end data science process.
Data cleaning and preprocessing
Prepare data with cleaning and normalization.
Exploratory data analysis
Explore patterns and anomalies in datasets.
Statistics and probability basics
Use statistics to interpret results correctly.
Visualization and storytelling
Present findings with clear visuals and narratives.
Mini project: insights report
Deliver a short report with actionable insights.
See the quiz + practice flow
Three answered questions and a filled code task so you know exactly what to expect.
Quiz preview
2/3 correct1. How long is the Data Science plan?
Correct2. What level is this Data Science plan?
Incorrect3. Which of these appears in the Data Science outline?
CorrectCode practice preview
SubmittedFormat a lesson title
Build a helper that formats a lesson label with a padded index and title.
Loved by Lifelong Learners
See how students, professionals, and forward-thinkers are upgrading their minds with Kavka.
“I came from marketing with zero data background. This plan gave me a framework I use every single week.”
“The practice tasks felt like real work, so the lessons actually stuck.”
“Thirty minutes a day and I was shipping again. The structure keeps me honest.”
Turn data into real decisions
14 days of cleaning, exploration, statistics, and visualization — deliver insights that actually move teams.
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