Learn Agentic AI in the most entertaining and disciplined way
Checklist of Common mistakes coding AI Agents make

1. Invented Functions or APIs
pandas.read_excel_fast()
Looks real.
Does not exist.
2. Security Vulnerabilities
AI often ignores security unless explicitly asked.
query = “SELECT * FROM users WHERE name = ‘” + username + “‘”
Very dangerous.
3. Code that looks correct but is wrong
# supposed to return even numbers
if num % 2 == 1:
return True
Looks clean.
Completely wrong.
4. Inefficient Code
AI usually optimises for readability, not scalability
So it may generate nested loops, repeated database calls
Works for:
- 10 records
Breaks for:
- 10 lakh records
5. Outdated Syntax or Deprecated Methods
Training data may contain older code.
So AI may generate code that:
- gives warnings
- is no longer recommended
6. Overengineering Simple Problems
Sometimes AI creates:
- 5 classes
- design patterns
- abstraction layers
for a 20-line problem.
Especially common in:
- Java
7. Inconsistent Codebase Style
Example:
- camelCase
- snake_case
- PascalCase
all in same file.
8. Broken Multi-File Integration
AI may generate files independently that:
- donāt connect properly
- mismatch interfaces
Frontend expects:
{ “username”: “Nik” }
Backend returns:
{ “user_name”: “Nik” }
What other common mistakes have you experienced?
Learn AI Agents through entertaining web series, and not a lecture-style video
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