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Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis
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Description

This lesson provides a complete foundation in Orders of Growth within Algorithm Analysis and Design, covering relative rates of growth, logarithmic, polynomial, exponential and factorial functions, limits-based comparisons, L’Hôpital’s Rule, Stirling’s Formula, and Big-O classifications.

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What’s Included

💡 Full Orders of Growth Slide Deck (PPT + PDF)
💡 Growth comparison graphs and figures
💡 Worked mathematical examples using limits
💡 Algorithm runtime estimation examples
💡 Ready for in-person, online, or hybrid classrooms

────────── ⋆⋅☆⋅⋆ ──────────

WHAT STUDENTS WILL LEARN

✏️ Orders of Growth
✏️ Relative rates of growth
✏️ Logarithmic functions
✏️ Polynomial functions
✏️ Exponential functions
✏️ Factorial functions
✏️ Comparing orders of growth using limits
✏️ L’Hôpital’s Rule
✏️ Stirling’s Formula
✏️ Growth comparison graphs
✏️ O(1)
✏️ O(log n)
✏️ O(n)
✏️ O(n log n)
✏️ O(n²)
✏️ O(n³)
✏️ O(2ⁿ)
✏️ O(n!)
✏️ Same, lower, and higher order of growth
✏️ Summation notation (Σ)
✏️ Useful summation formulas
✏️ Runtime analysis of for loops
✏️ Runtime analysis of nested loops
✏️ Runtime analysis of while loops
✏️ Tracing loop execution
✏️ Runtime estimation of non-recursive algorithms
✏️ Best-case and worst-case growth comparison

────────── ⋆⋅☆⋅⋆ ──────────

⌘ YOUR FEEDBACK MATTERS

✯✯✯ Please leave a review after using this product — Reviews support my store and earn you TPT credits!

────────── ⋆⋅☆⋅⋆ ──────────

⌘ STAY CONNECTED

✯✯✯ Follow my store for more Algorithm Analysis and Design resources.

────────── ⋆⋅☆⋅⋆ ──────────

❤️ Thank you for supporting my work! ❤️

© Networking Study Room – Single-classroom use only.

────────── ⋆⋅☆⋅⋆ ──────────

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Algorithm Analysis & Design: Limits, Growth Rates & Runtime Analysis

Networking Study Room
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Grades
9th - 12th, Adult Education, Higher Education
Pages
26 Pages + 26 PowerPoint Slides
Answer Key
Included
Teaching Duration
Other

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This Curriculum covers algorithm design strategies, mathematical analysis, time and space complexity, growth rates, searching, sorting, graph algorithms, and pattern algorithms, with each unit standing as a complete, self-contained lesson while also fitting into a cohesive full course.────────── ⋆⋅☆
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Description

This lesson provides a complete foundation in Orders of Growth within Algorithm Analysis and Design, covering relative rates of growth, logarithmic, polynomial, exponential and factorial functions, limits-based comparisons, L’Hôpital’s Rule, Stirling’s Formula, and Big-O classifications.

────────── ⋆⋅☆⋅⋆ ──────────

What’s Included

💡 Full Orders of Growth Slide Deck (PPT + PDF)
💡 Growth comparison graphs and figures
💡 Worked mathematical examples using limits
💡 Algorithm runtime estimation examples
💡 Ready for in-person, online, or hybrid classrooms

────────── ⋆⋅☆⋅⋆ ──────────

WHAT STUDENTS WILL LEARN

✏️ Orders of Growth
✏️ Relative rates of growth
✏️ Logarithmic functions
✏️ Polynomial functions
✏️ Exponential functions
✏️ Factorial functions
✏️ Comparing orders of growth using limits
✏️ L’Hôpital’s Rule
✏️ Stirling’s Formula
✏️ Growth comparison graphs
✏️ O(1)
✏️ O(log n)
✏️ O(n)
✏️ O(n log n)
✏️ O(n²)
✏️ O(n³)
✏️ O(2ⁿ)
✏️ O(n!)
✏️ Same, lower, and higher order of growth
✏️ Summation notation (Σ)
✏️ Useful summation formulas
✏️ Runtime analysis of for loops
✏️ Runtime analysis of nested loops
✏️ Runtime analysis of while loops
✏️ Tracing loop execution
✏️ Runtime estimation of non-recursive algorithms
✏️ Best-case and worst-case growth comparison

────────── ⋆⋅☆⋅⋆ ──────────

⌘ YOUR FEEDBACK MATTERS

✯✯✯ Please leave a review after using this product — Reviews support my store and earn you TPT credits!

────────── ⋆⋅☆⋅⋆ ──────────

⌘ STAY CONNECTED

✯✯✯ Follow my store for more Algorithm Analysis and Design resources.

────────── ⋆⋅☆⋅⋆ ──────────

❤️ Thank you for supporting my work! ❤️

© Networking Study Room – Single-classroom use only.

────────── ⋆⋅☆⋅⋆ ──────────

Report this resource to TPT
Reported resources will be reviewed by our team. Report this resource to let us know if this resource violates TPT's content guidelines.

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