跳至内容
首页Python

课程

Scaling and Optimizing Data Pipelines with Polars

中级技能水平
更新时间 2026年6月
Learn to optimize, scale, and test Polars data pipelines for production-ready performance.
免费开始课程
PythonData Manipulation
4小时
15 视频
56 道练习
4,800 XP
成就证明

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。

深受数千家公司学习者的喜爱

Group

需要团队培训?

企业版试用

课程描述

Take your Polars skills to production scale. Learn to read query plans and unlock the optimizer's full potential, work efficiently with Parquet, CSV, and database sources, and exploit advanced dtypes like List, Struct, Categorical, and Enum. You'll also stream large queries to disk, process data in batches, and build testable pipelines with built-in assertions. By the end, you'll be equipped to build high-performing data workflows that handle datasets of any size.

先决条件

Data Transformation with Polars
1

Query Optimization Deep Dive

Learn how to keep queries lazy for maximum optimization, read and interpret query plans, and unlock fast paths with profiling and sorted data.
开始章节
2

Efficient Data Input and Output

Learn how to read and write Parquet files, parse messy CSVs, scan multifile and hive-partitioned datasets, and query databases from Polars.
开始章节
Scaling and Optimizing Data Pipelines with Polars
课程完成

获得成就证明

将此证书添加到您的 LinkedIn 档案、简历或履历中
在社交媒体和绩效评估中分享
立即注册

加入超过19百万学习者,今天就开始Scaling and Optimizing Data Pipelines with Polars!

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。

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。