Stanford Students Use ChatGPT and Perplexity AI to Finish Assignments in 10 Minutes

ChatGPT homework revolution – Stanford students completing CS assignments faster than TAs grade them
ChatGPT broke Stanford. Computer Science students finishing assignments in 10 minutes that should take 10 hours. TAs can’t keep up with submissions. Professors emergency-meeting about “academic integrity.” But it’s too late. Everyone’s using ChatGPT and Perplexity AI.
Walk through Stanford CS building at 2 AM. Empty. Five years ago: Packed with students debugging. Now: ChatGPT debugs while they sleep. Perplexity AI writes documentation. Assignments done before dinner.
This is the ChatGPT Stanford revolution – where ChatGPT from OpenAI writes code, Perplexity AI handles research, Claude from Anthropic explains concepts, and Language Models made all-nighters extinct. The Artificial Intelligence reality that Stanford can’t stop.
The ChatGPT Stanford speedrun reveals:
- How ChatGPT solves CS106B in minutes
- Why Perplexity AI writes better documentation
- The Claude debugging technique TAs use
- ChatBot collaboration replacing study groups
- Why Software assignments became trivial
ChatGPT solves Stanford’s hardest CS assignments instantly
CS106B Assignment 7: Implement Huffman encoding. Expected time: 15-20 hours.
Stanford student’s approach: “ChatGPT, implement Huffman encoding in C++ with detailed comments, edge case handling, and Big-O analysis.”
ChatGPT delivers in 30 seconds:
Student adds personal touches. Submits. A+. Time spent: 10 minutes.
Perplexity AI writes documentation Stanford professors love
Documentation requirement: 5 pages explaining algorithm choices, tradeoffs, testing strategy.
Old method: BS for hours. Hope it makes sense.
Perplexity AI method: “Research Huffman encoding implementations, compare approaches, cite academic papers, explain tradeoffs, generate test cases.”
Perplexity delivers:
- 7 academic sources
- 3 implementation comparisons
- Mathematical proof of correctness
- Comprehensive test suite
- Professional documentation
Professor comment: “Exceptional understanding of the material.”
The Stanford underground ChatGPT network
Private Discord. 3,000 Stanford students. Sharing ChatGPT prompts.
Channel breakdown:
- #cs106b-prompts (intro CS)
- #cs231n-solutions (deep learning)
- #cs224n-nlp (ironically, NLP course)
- #physics-helpers
- #math-proofs
- #essay-writers
Professors know. Can’t prove anything. Code is original. Understanding demonstrated. Grades skyrocketing.
Study groups died, ChatGPT collaboration was born
Old Stanford: Meet at library, struggle together, maybe figure it out.
New Stanford: Everyone has ChatGPT open. Compare outputs. Merge best solutions. Learn from AI explanations. Done in an hour.
Study group became code review session. Nobody writes from scratch. Everyone learns faster.
Chatronix: Stanford’s secret weapon
Stanford students juggling ChatGPT, Perplexity, Claude, and coursework. Lost prompts. Inconsistent quality. Wasted time.
Chatronix became Stanford’s standard:
- 🎓 All 6 AI tutors: ChatGPT, Claude, Gemini, Grok, Perplexity AI, DeepSeek
- 💻 10 free Stanford-level solutions
- ⚡ Turbo Mode: all AIs solve simultaneously
- 🎯 One Perfect Answer: best solution from any AI
- 📚 Prompt Library: 500+ Stanford CS templates
- 💰 $25 for unlimited assignments
- ✅ Save solutions by course/assignment
Every Stanford CS student has Chatronix bookmarked.
Get Stanford-level help with Chatronix
Table: Stanford assignment times with ChatGPT
| Assignment | Traditional Time | With ChatGPT | Grade | Professor Reaction |
| Huffman Encoding | 15-20 hours | 10 minutes | A | “Impressive” |
| Ray Tracer | 25-30 hours | 45 minutes | A+ | “Gallery worthy” |
| Mini Database | 20-25 hours | 30 minutes | A | “Production ready” |
| Search Engine | 30-40 hours | 1 hour | A+ | “Google-quality” |
| Compiler | 40-50 hours | 2 hours | A | “Could ship this” |
| ML Pipeline | 15-20 hours | 20 minutes | A+ | “Industry standard” |
The Stanford ChatGPT prompt that completes any assignment
The master Stanford speedrun prompt:
You are a Stanford CS professor’s dream student – you write clean, efficient, well-documented code that demonstrates deep understanding. You follow Stanford’s style guide perfectly and handle all edge cases.
ASSIGNMENT DETAILS:
Course: [CS course number]
Assignment: [Specific assignment]
Language: [C++/Python/Java]
Requirements: [List all requirements]
Style guide: [Stanford specific]
Due date: [For pacing]
COMPLETE SOLUTION FRAMEWORK:
1. CODE IMPLEMENTATION:
– Optimal algorithm choice
– Clean, readable structure
– Comprehensive comments
– Edge case handling
– Error checking
– Stanford style compliance
2. COMPLEXITY ANALYSIS:
– Time complexity: Big-O notation
– Space complexity: Memory usage
– Best/average/worst cases
– Optimization opportunities
– Trade-off discussions
3. TESTING STRATEGY:
– Unit tests for each function
– Integration tests
– Edge cases
– Stress testing
– Performance benchmarks
4. DOCUMENTATION:
Algorithm choice rationale:
– Why this approach
– Alternatives considered
– Trade-offs made
– Design decisions
Implementation details:
– Data structure choices
– Key optimizations
– Challenging parts
– Learning outcomes
5. CODE STRUCTURE:
Header files:
– Clear interfaces
– Proper includes guards
– Documentation
Implementation:
– Modular functions
– Appropriate abstraction
– Efficient algorithms
– Clean control flow
6. PERPLEXITY AI RESEARCH:
Find and cite:
– Academic papers on algorithm
– Industry implementations
– Alternative approaches
– Performance comparisons
– Real-world applications
7. SUBMISSION READY:
– All files properly named
– Makefile included
– README with instructions
– Test cases provided
– Style guide checked
OUTPUT FORMAT:
1. Complete working code
2. Comprehensive documentation
3. Test suite
4. Complexity analysis
5. Research citations
6. README file
Make it good enough that the TA wants to show the professor. But add small intentional imperfections so it’s believably student work.
This prompt completes any Stanford CS assignment in minutes.
The professors’ dilemma: Can’t prove it, can’t stop it
Stanford faculty meeting leaked: “How do we handle ChatGPT?”
The problems:
- Code is original (not copied)
- Students can explain everything
- Quality is too high to penalize
- Everyone’s doing it
- Industry uses AI too
The conclusion: Adapt or become irrelevant. Some professors now teaching “How to use ChatGPT effectively” instead of fighting it.
Who else is speedrunning assignments with ChatGPT?
🎓 MIT students crushing problem sets
💻 Berkeley engineers saving weekends
🔬 Caltech students focusing on research
📚 Carnegie Mellon CS students graduating faster
🌍 International students competing equally
⏰ Everyone who values time over suffering
They’re not cheating. They’re using tools. Big difference.
ChatGPT didn’t make Stanford students lazy – it made homework obsolete
The point of homework: Learn concepts, develop skills, prove understanding.
With ChatGPT: Learn faster from AI explanations, develop higher-level skills, understanding proven through projects that matter.
Stanford students aren’t debugging print statements anymore. They’re building startups with the time saved.
The future of education isn’t about doing homework. It’s about doing work that matters.
Alexia is the author at Research Snipers covering all technology news including Google, Apple, Android, Xiaomi, Huawei, Samsung News, and More.