How python is used for artificial intelligence
How python is used for artificial intelligence: 1. Master basic Python programming language knowledge; 2. Understand basic mathematics, statistics and machine learning basic knowledge; 3. Use Python scientific computing function libraries and suites; 4. , Use [scikit-learn] to learn Python machine learning applications.
【Related learning recommendations: python tutorial】
Python’s approach to artificial intelligence:
Why choose Python?
The two most important programming languages in the field of data science and machine learning are Python and R. Python is simple and easy to learn, has a wide range of applications (not limited to data analysis) and has a gentle learning curve, making it suitable for first-time users. It is an introductory programming language that can perform data analysis through pandas, SciPy/NumPy, sckikit-learn, matplotlib and statsmodels. It is suitable for engineering tasks and projects that require integration with network applications. As for R, since it is a programming language developed by statisticians, it is good at statistical analysis and chart drawing, and is often used in academic research fields. It is recommended that you have a certain degree of mastery. Generally speaking, Python and R are not mutually exclusive, but complementary. Many data engineers and scientists often switch between Python and R. They use R for a small amount of model verification, statistical analysis and chart drawing. When writing algorithms and databases , network service interaction and other situations when moving to Python. In order to reduce learning costs.
In addition, Python itself is a universal language. In addition to data science, it can also be widely used in network development, website construction, game development, web crawlers and other fields. When you need to integrate system products and services, it can serve as A one-stop development language, and more importantly, Python can also be used as a glue language to easily integrate with languages with better performance such as C/C. In short, Python is a programming language that is simple and easy to learn but powerful and worth investing in, so we will use Python for introduction here.
If you want to compare Python and R, here are two articles you can refer to: The Peak Showdown between R and Python, and Which is better for data analysis: R or Python?.
How to get started with machine learning?
In fact, data science is an interdisciplinary subject. In the process of learning how to use Python for machine learning, you usually must master the following knowledge:
Machine learning algorithm
Python programming language and data analysis function library
Linear algebra/statistics and other related subjects
Domain knowledge in professional fields
In order to master the above three Large domain knowledge (we will first focus on the core techniques of machine learning and temporarily ignore the mastery of domain knowledge in data science). Specifically, we can refer to the following steps:
1. Master Basic Python programming language knowledge
Online learning resources:
o Codecademy
o DataCamp (you can also learn R)
o Learn X in Y Minutes(X = Python)
o Learn Python theHard Way
2. Learn basic math/statistics and machine learning basics
o Khan Academy Linear Algebra
o Introto Deive Statistics
o Introto Inferential Statistics
o Andrew Ng Machine Learning Course
o Andrew Ng Machine Learning Notes
o CarnegieMellon University Machine Learning
o Machine Learning Foundations
3. Know how to use Python scientific computing libraries and packages
It is recommended to install Anaconda, which supports multiple versions of Python across platforms. By default, data analysis and scientific computing suites are installed. It comes with spyder editor and JupyterNotebook (IPythonNotebook), which can provide a web version interface so that users can Develop and maintain Julia, Python or R programs through the browser.
o numpy: scientific analysis, ScipyLecture Notes teaching files
o pandas: data analysis
o matplotlib: good at drawing
o scikit-learn: Machine Learning Tools
4. Use scikit-learn to learn Python Machine Learning Applications
o MachineLearning: Python Machine Learning: Using Python
5. Use Python to implement machine learning algorithms
o Perceptron
o Decision tree
o Linear regression
o k-means clustering
6. Implement advanced machine learning algorithms
o SVM
o KNN
o RandomForests
o Reduce dimensionality
o Verify model
7. Understand the implementation and application of deep learning (DeepLearning) in Python
o NTU Applied DeepLearning
o Stanford DeepLearning
o Deep Learning (Deep Learning) Self-Study Material Recommendation
o Deep Learning Deep Learning: Collection of Chinese Learning Resources
If you want to know more about related learning, please pay attention to the php training column!
The above is the detailed content of How python is used for artificial intelligence. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

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

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



VS Code can run on Windows 8, but the experience may not be great. First make sure the system has been updated to the latest patch, then download the VS Code installation package that matches the system architecture and install it as prompted. After installation, be aware that some extensions may be incompatible with Windows 8 and need to look for alternative extensions or use newer Windows systems in a virtual machine. Install the necessary extensions to check whether they work properly. Although VS Code is feasible on Windows 8, it is recommended to upgrade to a newer Windows system for a better development experience and security.

In VS Code, you can run the program in the terminal through the following steps: Prepare the code and open the integrated terminal to ensure that the code directory is consistent with the terminal working directory. Select the run command according to the programming language (such as Python's python your_file_name.py) to check whether it runs successfully and resolve errors. Use the debugger to improve debugging efficiency.

VS Code can be used to write Python and provides many features that make it an ideal tool for developing Python applications. It allows users to: install Python extensions to get functions such as code completion, syntax highlighting, and debugging. Use the debugger to track code step by step, find and fix errors. Integrate Git for version control. Use code formatting tools to maintain code consistency. Use the Linting tool to spot potential problems ahead of time.

VS Code extensions pose malicious risks, such as hiding malicious code, exploiting vulnerabilities, and masturbating as legitimate extensions. Methods to identify malicious extensions include: checking publishers, reading comments, checking code, and installing with caution. Security measures also include: security awareness, good habits, regular updates and antivirus software.

Python excels in automation, scripting, and task management. 1) Automation: File backup is realized through standard libraries such as os and shutil. 2) Script writing: Use the psutil library to monitor system resources. 3) Task management: Use the schedule library to schedule tasks. Python's ease of use and rich library support makes it the preferred tool in these areas.

VS Code is the full name Visual Studio Code, which is a free and open source cross-platform code editor and development environment developed by Microsoft. It supports a wide range of programming languages and provides syntax highlighting, code automatic completion, code snippets and smart prompts to improve development efficiency. Through a rich extension ecosystem, users can add extensions to specific needs and languages, such as debuggers, code formatting tools, and Git integrations. VS Code also includes an intuitive debugger that helps quickly find and resolve bugs in your code.

Python is more suitable for beginners, with a smooth learning curve and concise syntax; JavaScript is suitable for front-end development, with a steep learning curve and flexible syntax. 1. Python syntax is intuitive and suitable for data science and back-end development. 2. JavaScript is flexible and widely used in front-end and server-side programming.

Golang is more suitable for high concurrency tasks, while Python has more advantages in flexibility. 1.Golang efficiently handles concurrency through goroutine and channel. 2. Python relies on threading and asyncio, which is affected by GIL, but provides multiple concurrency methods. The choice should be based on specific needs.
