亚洲国产日韩欧美一区二区三区,精品亚洲国产成人av在线,国产99视频精品免视看7,99国产精品久久久久久久成人热,欧美日韩亚洲国产综合乱

Home Backend Development Python Tutorial Prompt Engineering (For Lazy Programmers): Getting Exactly the Code You Want (and Even More, Out of ChatGPT)

Prompt Engineering (For Lazy Programmers): Getting Exactly the Code You Want (and Even More, Out of ChatGPT)

Oct 31, 2024 pm 12:03 PM

Prompt Engineering (For Lazy Programmers): Getting Exactly the Code You Want (and Even More, Out of ChatGPT)

Bill Gates has said it all... be a lazy programmer!.

As a programmer, there’s nothing better than code that works right off the bat—no bugs, no endless debugging. by following certain prompt techniques, you can get ChatGPT to write not just code, but optimised, fully functional, and documented code, complete with edge cases, tests, and even performance optimisations.

But first...

What is Prompt Engineering?

Artificial Intelligence, particularly ChatGPT, has become a powerful tool for content creation, coding assistance, and answering complex questions. Yet, many people don’t tap into its full potential. The magic lies in how you phrase your requests—what we call prompt engineering. In this article, we'll explore techniques that can make your ChatGPT experience more fruitful, highlighting some tricks that can take your prompts from average to brilliant, as a software programmer.

Why Does Prompt Engineering Matter?

ChatGPT is trained on vast amounts of data, but its responses are shaped by the quality of the prompt you give it. Poorly worded or vague prompts can lead to irrelevant or generic answers. Conversely, well-structured prompts can generate thoughtful, accurate, and creative responses.

This guide will help lazy programmers (like myself ?) get high-quality, optimised, and even more functional code from ChatGPT using prompt engineering. These will exclusively make ChatGPT do the heavy lifting—automating code generation, improving it, and even suggesting optimisations and tests. Below, I’ve also included examples that compare the normal prompts versus optimised prompts and the results they generate.

So let's get started!.

Triggering Auto-Refinements for Better Code

Ask ChatGPT to automatically refine its responses by embedding triggers to spot inefficiencies, suggest optimisations, or add features.

Basic prompt: "Write a Python function to reverse a string."

def reverse_string(s):
    return s[::-1]

# Example usage:
print(reverse_string("hello"))  # Output: "olleh"

Optimised prompt: "Write a Python function to reverse a string. If the input is too large or inefficient, suggest a better way to handle large strings efficiently."

def reverse_string(s):
    return s[::-1]

# Trigger: Refining for large strings
def reverse_large_string(s):
    # Handle large strings in chunks for efficiency
    chunk_size = 100000  # Process in 100k chunks
    return ''.join(s[i:i+chunk_size][::-1] for i in range(0, len(s), chunk_size))

# Example usage:
large_string = "a" * 1000000  # 1 million characters
print(reverse_large_string(large_string))
  • The basic function is simple and works for small inputs.

  • The optimised, introduces an efficient chunk-based solution for reversing large strings without consuming too much memory.

Contextual Memory for Multi-Step Projects

When you need code for multi-step projects, ChatGPT can remember earlier steps. This is ideal for more complex workflows where you build one layer on top of another.

Basic prompt: "Write a Python function to create a user profile."

def reverse_string(s):
    return s[::-1]

# Example usage:
print(reverse_string("hello"))  # Output: "olleh"

Optimised prompt: "Write a Python function to create a user profile. Now, extend this to also store user preferences and connect it with a database to save the profiles."

def reverse_string(s):
    return s[::-1]

# Trigger: Refining for large strings
def reverse_large_string(s):
    # Handle large strings in chunks for efficiency
    chunk_size = 100000  # Process in 100k chunks
    return ''.join(s[i:i+chunk_size][::-1] for i in range(0, len(s), chunk_size))

# Example usage:
large_string = "a" * 1000000  # 1 million characters
print(reverse_large_string(large_string))
  • The first function from the basic prompt creates a simple user profile.

  • The second prompt creates a database-connected user profile manager with extended functionality for saving data.

Request Debug Mode for Error-Free Code

You can ask ChatGPT to act as if it’s running in debug mode, where it checks and corrects potential issues in the code before delivering the final output.

Example simple prompt: "Write a Python function to calculate the square root of a number."

def create_user_profile(name, age, email):
    return {"name": name, "age": age, "email": email}

# Example usage:
user_profile = create_user_profile("Alice", 30, "alice@example.com")
print(user_profile)

The Trick: "Write a Python function to calculate the square root of a number. Activate debug mode to check for errors like negative inputs, and rewrite the function if necessary."

def create_user_profile(name, age, email, preferences):
    return {"name": name, "age": age, "email": email, "preferences": preferences}

# Extend with a database connection
import sqlite3

def save_user_profile(profile):
    conn = sqlite3.connect('users.db')
    cursor = conn.cursor()
    cursor.execute('''CREATE TABLE IF NOT EXISTS users
                      (name TEXT, age INTEGER, email TEXT, preferences TEXT)''')
    cursor.execute('''INSERT INTO users (name, age, email, preferences)
                      VALUES (?, ?, ?, ?)''', 
                   (profile['name'], profile['age'], profile['email'], str(profile['preferences'])))
    conn.commit()
    conn.close()

# Example usage:
user_profile = create_user_profile("Alice", 30, "alice@example.com", {"theme": "dark"})
save_user_profile(user_profile)

  • The basic function works fine for valid inputs but crashes with negative numbers.

  • The optimised prompt ensures error handling for negative inputs, returning a custom message instead of breaking the code.

Role-Playing: Act as a Code Reviewer

You can ask ChatGPT to role-play as a senior code reviewer to provide feedback and suggest best practices for your code.

Example prompt: "Act as a senior developer and review my Python function that checks if a number is prime. Suggest improvements for performance and readability."

import math

def square_root(n):
    return math.sqrt(n)

# Example usage:
print(square_root(16))  # Output: 4.0

The prompt delivers a more optimised version, only checking odd numbers up to the square root, which dramatically improves performance.

Use Layered Prompting for Multi-Function Outputs

You can stack layers of functionality in a single prompt, asking ChatGPT to handle multiple related tasks in one go.

Basic Prompt: "Write a Python function to generate a random password."

import math

def square_root(n):
    if n < 0:
        return "Error: Cannot calculate square root of a negative number"
    return math.sqrt(n)

# Debugged version handles errors properly.
# Example usage:
print(square_root(16))   # Output: 4.0
print(square_root(-16))  # Output: "Error: Cannot calculate square root of a negative number"

Optimised version : "Write a Python function to generate a random password. The password must meet the following criteria: at least 12 characters, contains uppercase, lowercase, numbers, and special characters. Also, write a validation function to check if the password is strong."

def is_prime(n):
    if n <= 1:
        return False
    if n == 2:
        return True
    if n % 2 == 0:
        return False
    # Only check odd numbers up to the square root of n for efficiency
    for i in range(3, int(n**0.5) + 1, 2):
        if n % i == 0:
            return False
    return True

# Review:
# - Optimised the loop to check divisibility only up to the square root of n.
# - Reduced checks for even numbers to improve performance for large inputs.

# Example usage:
print(is_prime(5))  # Output: True
print(is_prime(4))  # Output: False
  • The basic prompt generates a random password.

  • The optimised gives a complex password generator and includes a validation function to check password strength.

Test-Driven Development: Generate a Complete Test Suite

You can ask ChatGPT to write the code along with a full test suite in one go, ensuring your code is ready for production with minimal effort. (If you must ask for help, make sure to ask for a lot ?).

Basic Prompt: "Write a Python function to check if a string is a palindrome."

def reverse_string(s):
    return s[::-1]

# Example usage:
print(reverse_string("hello"))  # Output: "olleh"

Getting more: "Write a Python function to check if a string is a palindrome. Also, write a full test suite using pytest with edge cases like empty strings and spaces."

def reverse_string(s):
    return s[::-1]

# Trigger: Refining for large strings
def reverse_large_string(s):
    # Handle large strings in chunks for efficiency
    chunk_size = 100000  # Process in 100k chunks
    return ''.join(s[i:i+chunk_size][::-1] for i in range(0, len(s), chunk_size))

# Example usage:
large_string = "a" * 1000000  # 1 million characters
print(reverse_large_string(large_string))
  • The basic version checks for palindromes but misses edge cases.

  • The hidden trick not only refines the function by ignoring spaces and punctuation but also provides a comprehensive test suite using pytest.

By mastering these techniques, you can extract high-performance, error-free, and production-ready code from ChatGPT, all while doing less work. With auto-refinements, memory triggers, error handling, and complete test suites, you’ll code smarter, not harder.

The above is the detailed content of Prompt Engineering (For Lazy Programmers): Getting Exactly the Code You Want (and Even More, Out of ChatGPT). For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undress AI Tool

Undress AI Tool

Undress images for free

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

Hot Topics

PHP Tutorial
1488
72
How to handle API authentication in Python How to handle API authentication in Python Jul 13, 2025 am 02:22 AM

The key to dealing with API authentication is to understand and use the authentication method correctly. 1. APIKey is the simplest authentication method, usually placed in the request header or URL parameters; 2. BasicAuth uses username and password for Base64 encoding transmission, which is suitable for internal systems; 3. OAuth2 needs to obtain the token first through client_id and client_secret, and then bring the BearerToken in the request header; 4. In order to deal with the token expiration, the token management class can be encapsulated and automatically refreshed the token; in short, selecting the appropriate method according to the document and safely storing the key information is the key.

Explain Python assertions. Explain Python assertions. Jul 07, 2025 am 12:14 AM

Assert is an assertion tool used in Python for debugging, and throws an AssertionError when the condition is not met. Its syntax is assert condition plus optional error information, which is suitable for internal logic verification such as parameter checking, status confirmation, etc., but cannot be used for security or user input checking, and should be used in conjunction with clear prompt information. It is only available for auxiliary debugging in the development stage rather than substituting exception handling.

What are python iterators? What are python iterators? Jul 08, 2025 am 02:56 AM

InPython,iteratorsareobjectsthatallowloopingthroughcollectionsbyimplementing__iter__()and__next__().1)Iteratorsworkviatheiteratorprotocol,using__iter__()toreturntheiteratorand__next__()toretrievethenextitemuntilStopIterationisraised.2)Aniterable(like

What are Python type hints? What are Python type hints? Jul 07, 2025 am 02:55 AM

TypehintsinPythonsolvetheproblemofambiguityandpotentialbugsindynamicallytypedcodebyallowingdeveloperstospecifyexpectedtypes.Theyenhancereadability,enableearlybugdetection,andimprovetoolingsupport.Typehintsareaddedusingacolon(:)forvariablesandparamete

How to iterate over two lists at once Python How to iterate over two lists at once Python Jul 09, 2025 am 01:13 AM

A common method to traverse two lists simultaneously in Python is to use the zip() function, which will pair multiple lists in order and be the shortest; if the list length is inconsistent, you can use itertools.zip_longest() to be the longest and fill in the missing values; combined with enumerate(), you can get the index at the same time. 1.zip() is concise and practical, suitable for paired data iteration; 2.zip_longest() can fill in the default value when dealing with inconsistent lengths; 3.enumerate(zip()) can obtain indexes during traversal, meeting the needs of a variety of complex scenarios.

Python FastAPI tutorial Python FastAPI tutorial Jul 12, 2025 am 02:42 AM

To create modern and efficient APIs using Python, FastAPI is recommended; it is based on standard Python type prompts and can automatically generate documents, with excellent performance. After installing FastAPI and ASGI server uvicorn, you can write interface code. By defining routes, writing processing functions, and returning data, APIs can be quickly built. FastAPI supports a variety of HTTP methods and provides automatically generated SwaggerUI and ReDoc documentation systems. URL parameters can be captured through path definition, while query parameters can be implemented by setting default values ??for function parameters. The rational use of Pydantic models can help improve development efficiency and accuracy.

How to test an API with Python How to test an API with Python Jul 12, 2025 am 02:47 AM

To test the API, you need to use Python's Requests library. The steps are to install the library, send requests, verify responses, set timeouts and retry. First, install the library through pipinstallrequests; then use requests.get() or requests.post() and other methods to send GET or POST requests; then check response.status_code and response.json() to ensure that the return result is in compliance with expectations; finally, add timeout parameters to set the timeout time, and combine the retrying library to achieve automatic retry to enhance stability.

Setting Up and Using Python Virtual Environments Setting Up and Using Python Virtual Environments Jul 06, 2025 am 02:56 AM

A virtual environment can isolate the dependencies of different projects. Created using Python's own venv module, the command is python-mvenvenv; activation method: Windows uses env\Scripts\activate, macOS/Linux uses sourceenv/bin/activate; installation package uses pipinstall, use pipfreeze>requirements.txt to generate requirements files, and use pipinstall-rrequirements.txt to restore the environment; precautions include not submitting to Git, reactivate each time the new terminal is opened, and automatic identification and switching can be used by IDE.

See all articles