Remedial Algebra I
Offered By: Study.com
Course Description
Overview
For students who are struggling with Algebra I, our self-paced course can help. Informative video lessons explain challenging topics in a way that's easy to understand, while self-assessment quizzes help students identify what areas they need to focus on ahead of a big test.
Syllabus
- Ch 1. High School Algebra: Basic Arithmetic
- Ch 2. High School Algebra: Solving Math Word Problems
- Ch 3. High School Algebra: Decimals and Fractions
- Ch 4. High School Algebra: Percent Notation
- Ch 5. High School Algebra: Real Numbers
- Ch 6. High School Algebra: Exponents and Exponential Expressions
- Ch 7. High School Algebra: Radical Expressions
- Ch 8. High School Algebra: Algebraic Expressions and Equations
- Ch 9. High School Algebra: Properties of Functions
- Ch 10. High School Algebra: Matrices and Absolute Value
- Ch 11. High School Algebra: Working With Inequalities
- Ch 12. High School Algebra: Properties of Exponents
- Ch 13. High School Algebra: Complex and Imaginary Numbers
- Ch 14. High School Algebra: Algebraic Distribution
- Ch 15. High School Algebra: Linear Equations
- Ch 16. High School Algebra: Factoring
- Ch 17. High School Algebra: Graphing and Factoring Quadratic Equations
- Ch 18. High School Algebra: Properties of Polynomial Functions
- Ch 19. High School Algebra: Rational Expressions
- Ch 20. High School Algebra: Cubic Equations
- Ch 21. High School Algebra: Quadratic Equations
- Ch 22. High School Algebra: Measurement and Geometry
- Ch 23. High School Algebra: Calculations, Ratios, Percent & Proportions
- Ch 24. High School Algebra: Data, Statistics, and Probability
- Ch 25. High School Algebra: Well-Known Equations
Related Courses
Coding the Matrix: Linear Algebra through Computer Science ApplicationsBrown University via Coursera Massively Multivariable Open Online Calculus Course
Ohio State University via Coursera Линейная алгебра (Linear Algebra)
Higher School of Economics via Coursera Bases Matemáticas: Álgebra
Universitat Politècnica de València via edX Introduction to R for Data Science
Microsoft via edX