cs-foundations
CS Foundations teaches discrete mathematics, formal logic, and computational thinking through seven core topics: logic, proofs, sets, functions, combinatorics, number theory, and graphs. Use this skill when building foundational knowledge for computer science study, preparing for algorithm courses, or developing the mathematical reasoning required for advanced computational work over six to eight weeks.
git clone --depth 1 https://github.com/foryourhealth111-pixel/Vibe-Skills /tmp/cs-foundations && cp -r /tmp/cs-foundations/bundled/skills/cs-foundations ~/.claude/skills/cs-foundationsSKILL.md
# CS Foundations Skill
## Skill Metadata
```yaml
skill_config:
version: "1.0.0"
category: theoretical
prerequisites: []
estimated_time: "6-8 weeks"
difficulty: intermediate
parameter_validation:
topic:
type: string
enum: [logic, proofs, sets, functions, combinatorics, number-theory, graphs]
required: true
depth:
type: string
enum: [intro, standard, advanced]
default: standard
retry_config:
max_attempts: 3
backoff_strategy: exponential
initial_delay_ms: 500
observability:
log_level: INFO
metrics: [topic_usage, proof_verification_rate, exercise_completion]
```
---
## Quick Start
Computer science is built on mathematics. Master these fundamentals:
### Core Topics
**Discrete Mathematics**
- Set theory and operations
- Logic and proof techniques
- Combinatorics and counting
- Number theory basics
- Relations and functions
**Computational Thinking**
- Problem decomposition
- Abstraction and generalization
- Pattern recognition
- Algorithmic thinking
**Formal Logic**
- Propositional logic
- Predicate logic
- Proof by induction
- Truth tables and logical equivalence
---
## Learning Path
**Week 1: Logic Basics**
- Boolean algebra
- Truth tables
- Logical operators
- Inference rules
**Week 2: Proof Techniques**
- Direct proof
- Proof by contradiction
- Mathematical induction
- Strong induction
**Week 3: Set Theory**
- Set operations (∪, ∩, complement)
- Cartesian product
- Relations
- Equivalence relations
**Week 4: Functions**
- Function notation
- Domain, codomain, range
- One-to-one and onto
- Function composition
**Week 5: Combinatorics**
- Counting principles
- Permutations
- Combinations
- Pigeonhole principle
**Week 6: Number Theory**
- Modular arithmetic
- Prime numbers
- GCD and Euclidean algorithm
- Congruence
---
## Practice Problems
1. Prove by induction that 1+2+...+n = n(n+1)/2
2. Prove √2 is irrational
3. Show A ∪ (B ∩ C) = (A ∪ B) ∩ (A ∪ C)
4. Count functions from {1,2,3} to {a,b}
5. Solve: x ≡ 5 (mod 12) and x ≡ 3 (mod 8)
---
## Troubleshooting
| Issue | Root Cause | Resolution |
|-------|------------|------------|
| Proof stuck | Missing case or wrong direction | Check base case, verify induction step |
| Set operation confusion | ∪ vs ∩ mix-up | Draw Venn diagram |
| Counting error | Overcounting duplicates | Distinguish P(n,r) vs C(n,r) |
| Modular arithmetic error | Forgot wraparound | Work with remainders explicitly |
---
## Key Concepts
- **Axioms**: Statements we assume true
- **Theorems**: Statements we prove
- **Lemmas**: Helper theorems
- **Corollaries**: Results that follow easily
---
## Why It Matters
These foundations enable:
- Understanding algorithm correctness
- Analyzing computational complexity
- Designing new algorithms
- Proving algorithm properties
- Understanding what's computable
---
## Interview Prep
- Explain mathematical induction
- Prove that a function is injective
- Count permutations with constraints
- Solve modular equations
- Apply pigeonhole principleVibe Code Orchestrator (VCO) is a governed runtime entry that freezes requirements, plans XL-first execution, and enforces verification and phase cleanup.
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