跳至内容
首页

Master Artificial Intelligence and GenAI

AI is changing how we work. DataCamp’s interactive courses span Machine Learning and Generative AI, teaching LLMs, prompt engineering, workflow automation, and building intelligent systems with Python, R, and SQL. Whether you’re a non-coder or aspiring AI Engineer, find your path forward.

创建您的免费帐户

继续使用 Google显示更多选项


继续操作即表示您接受我们的《使用条款》和《隐私政策》,并同意您的数据存储在美国。
Group

培训 2 人或更多?

试用DataCamp for Business

Recommended for AI beginners

Build your AI skills with interactive courses, curated by real-world experts

课程

AI for Work 入门

基础技能水平
4.7+
11,360 条评价
2小时
了解 AI 是什么,以及如何负责任地使用它,以实现更智能、更高效的工作!
AI Tutor

学习路径

面向开发者的 AI 工程师助理

4.9+
23 条评价
26小时
了解如何使用 API 和开源库将 AI 集成到软件应用程序中。 今天就开始你的 AI 工程师之旅吧!

不确定从哪里开始?

参加评估

浏览 AI 课程和学习路径

课程

PyTorch 深度学习进阶

中级技能水平
4.8+
2,065 条评价
4小时
了解用于建模图像和序列数据的基础深度学习架构,如 CNN、RNN、LSTM 和 GRU。

课程

面向开发者的 AI 辅助编码

中级技能水平
4.8+
798 条评价
1 小时 30 分钟
用 AI 提升编码效率——引导你的编码助手高效编写、测试和记录代码。

课程

Artificial Intelligence (AI) Strategy

基础技能水平
4.8+
1,862 条评价
3小时
学习如何融合业务、数据和 AI,并设定目标,以通过高效可扩展的 AI 战略推动成功。

课程

使用生成式 AI 进行数据清洗

基础技能水平
4.7+
1,394 条评价
1小时
用生成式 AI 处理数据清洗,修复重复项、空值和格式问题,确保数据集一致且准确。

课程

Model Context Protocol (MCP) 入门

中级技能水平
4.8+
122 条评价
3小时
借助模型上下文协议(MCP),比以往更轻松地将 AI/LLM 应用与 API、数据库和文件系统集成。

课程

AI for Finance

基础技能水平
4.8+
253 条评价
3小时
在金融中应用 AI,分析数据、有效提示并自动化工作流,以做出更好的决策。

课程

Vibe Coding with Replit

基础技能水平
4.8+
820 条评价
2小时
Learn vibe coding with Replit. Build apps like a Typeform clone, and master securing and deploying Replit apps.

课程

Building AI Agents with Google ADK

中级技能水平
4.8+
531 条评价
1小时
Build a customer-support assistant step-by-step with Google’s Agent Development Kit (ADK).

课程

Microsoft Copilot in Excel

基础技能水平
4.7+
221 条评价
3小时
Stop fighting Excel and start talking to it! Use Copilot in Excel to clean data, build charts, and get answers faster.

课程

Transformer Models with PyTorch

高级技能水平
4.8+
842 条评价
2小时
What makes LLMs tick? Discover how transformers revolutionized text modeling and kickstarted the generative AI boom.

课程

AI Security and Risk Management

基础技能水平
4.8+
1,111 条评价
2小时
Learn the fundamentals of AI security to protect systems from threats, align security with business goals, and mitigate key risks.

课程

Deep Learning for Images with PyTorch

高级技能水平
4.7+
723 条评价
4小时
Apply PyTorch to images and use deep learning models for object detection with bounding boxes and image segmentation generation.

课程

Software Development with Cursor

中级技能水平
4.8+
392 条评价
1 小时 30 分钟
Build production-ready code with Cursor. Learn AI prompts, refactoring, testing, and advanced workflows.

课程

Multi-Agent Systems with LangGraph

高级技能水平
4.8+
486 条评价
2 小时 45 分钟
Build powerful multi-agent systems by applying emerging agentic design patterns in the LangGraph framework.

课程

Working with Llama 3

中级技能水平
4.8+
2,066 条评价
2小时
Explore the latest techniques for running the Llama LLM locally and integrating it within your stack.

课程

Monetizing Artificial Intelligence

基础技能水平
4.7+
867 条评价
1小时
Explore AI and data monetization strategies, build ethical infrastructures, and align products with business goals.

课程

Deep Learning for Text with PyTorch

高级技能水平
4.7+
739 条评价
4小时
Discover the exciting world of Deep Learning for Text with PyTorch and unlock new possibilities in natural language processing and text generation.

课程

Introduction to Agent Skills

中级技能水平
4.8+
126 条评价
2 小时 30 分钟
Learn how to build, configure, and share Skills in Claude Code — reusable markdown instructions that Claude automatically applies to tasks at the right time.

课程

Introduction to Google Workspace with Gemini

基础技能水平
4.8+
231 条评价
30分钟
You learn about the key features of Gemini and how they can be used to improve productivity and efficiency in Google Workspace.

课程

Responsible AI Data Management

中级技能水平
4.7+
996 条评价
1小时
Learn the theory behind responsibly managing your data for any AI project, from start to finish and beyond.

课程

Software Development with Windsurf

中级技能水平
4.8+
420 条评价
1 小时 30 分钟
Boost your coding with Windsurf, the AI-powered IDE that helps you build, debug, and deploy faster.

课程

Explainable AI in Python

中级技能水平
4.8+
1,070 条评价
4小时
Gain the essential skills using Scikit-learn, SHAP, and LIME to test and build transparent, trustworthy, and accountable AI systems.

AI 相关资源

博客

How to Learn AI From Scratch in 2026: A Complete Guide From the Experts

Find out everything you need to know about learning AI in 2026, from tips to get you started, helpful resources, and insights from industry experts.
Adel Nehme's photo

Adel Nehme

15分钟

博客

12 Exciting AI Projects for All Levels in 2026

Develop your portfolio and improve your skills in creating innovative solutions for complex problems by working on AI projects.
Abid Ali Awan's photo

Abid Ali Awan

8分钟

博客

The Top AI Certifications for 2026: A Guide to Advancing Your Tech Career

Explore the best AI certifications for 2026 with our comprehensive guide. Understand the difference between AI certifications and certificates, identify top courses for various career paths, and learn how to choose the right program.
Matt Crabtree's photo

Matt Crabtree

8分钟


Ready to apply your skills?

Projects allow you to apply your knowledge to a wide range of datasets to solve real-world problems in your browser

Frequently asked questions

What is Artificial Intelligence (AI), and why is it important?

Artificial Intelligence (AI) is a subfield of computer science aimed at creating intelligent agents capable of performing tasks that typically require human intelligence. This includes activities like problem-solving, speech recognition, and decision-making. AI is important because it can improve efficiency, automate repetitive tasks, and solve complex problems more effectively than humans in some cases.

What skills do I need to learn AI?

You'll need a mix of technical and soft skills to learn AI. Key technical skills include programming (Python is widely used in AI for its simplicity and robust libraries like TensorFlow and PyTorch), statistics and probability (to understand models and algorithms), and machine learning concepts. Knowledge in data structures, algorithms, and computational thinking is also beneficial. Soft skills, such as critical thinking, problem-solving, and effective communication, are important for working in teams and understanding project requirements.

How will learning AI benefit my career?

Learning AI now is timely due to its growing relevance in various industries and the proliferation of generative AI, leading to significant job growth and high demand for AI expertise. This field is recognized for offering high-paying roles, reflecting the value and impact of AI skills in the market. Moreover, AI provides an intellectually stimulating career, challenging professionals to solve complex problems, innovate, and continuously learn.

Are DataCamp’s AI courses suitable for anyone?

DataCamp offers AI courses designed for learners at every level. Whether you're looking to grasp the fundamental concepts behind AI, understand how to utilize tools like ChatGPT more effectively, or you're an experienced professional aiming to tackle advanced projects like building deep learning models, DataCamp has courses tailored to meet your needs. This makes DataCamp an ideal platform for anyone interested in AI, from beginners to those with well-established proficiency seeking to advance their skills further.

What careers are there in AI?

Careers in AI span a wide range, from AI research scientists and machine learning engineers to data scientists and AI software developers. These roles involve developing AI models, analyzing data, and applying AI technologies to solve real-world problems.

What’s the difference between AI and machine learning courses?

AI courses cover a broad spectrum of topics including the theory behind artificial intelligence, its applications, and ethical considerations, providing a foundational understanding of AI. Machine learning courses, on the other hand, focus specifically on algorithms and statistical models that computers use to perform tasks without explicit instructions, emphasizing the technical skills needed to implement AI.

Can I learn AI without coding?

While a background in programming can be highly beneficial, it's not strictly necessary to start learning AI. Many of our courses and resources are designed for those without coding knowledge who are looking to start upskilling in AI from scratch or simply better understand AI and how to use AI tools.

However, as you progress, a strong understanding of programming, especially in languages like Python, will be crucial for implementing AI models and algorithms effectively.

How long does it take to learn AI?

It depends on your goals. You can grasp the AI Fundamentals and Prompt Engineering in as little as 4-10 hours of interactive learning. To become job-ready as a Data Scientist or AI Engineer, expect 3-6 months of consistent study to master Python, SQL, and Machine Learning algorithms through our structured career tracks.

What is the difference between Generative AI and traditional AI?

Traditional AI analyzes data to make predictions, such as recommending movies or detecting fraud. Generative AI creates new content, including text, images, and code. DataCamp covers both, teaching you to build Machine Learning models and leverage Generative AI tools like the OpenAI API.

What popular AI tools and frameworks should I learn?

For technical roles, you will master Python and R using libraries like PyTorch, TensorFlow, and scikit-learn. For non-coding and business roles, we cover productivity tools like ChatGPT, Microsoft Copilot, and Claude to help you automate tasks.

What is Prompt Engineering?

Prompt Engineering is the skill of crafting precise inputs to get the best output from AI models like ChatGPT. It is a critical skill for the future of work. Our courses teach you how to write effective prompts to speed up research, coding, and content creation.

Do DataCamp AI courses offer certificates?

Yes. Upon finishing any course or career track, such as AI Fundamentals or Data Scientist, you earn a Statement of Accomplishment. You can display these certificates on your resume and LinkedIn profile to showcase your proficiency to employers. There are also industry-accredited AI certifications you can earn for certain courses and tracks.

Do I need a strong math background to learn AI?

Not for most courses. Generative AI and Applied AI concepts require no advanced math. For technical Machine Learning tracks, a basic grasp of statistics is helpful, but we provide built-in refresher courses to teach you the necessary math alongside the code.

其他技术和主题

技术

通过 DataCamp for Mobile 提升您的数据技能

随时随地通过我们的移动课程和每日 5 分钟编程挑战提升技能。