课程
Scaling and Optimizing Data Pipelines with Polars
中级技能水平
更新时间 2026年6月
PythonData Manipulation4小时15 视频56 道练习4,800 XP成就证明
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企业版试用课程描述
先决条件
Data Transformation with Polars1
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.
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.
3
Advanced Dtypes for Optimal Analysis
This chapter covers working with List and Struct columns, encoding repeated strings as Categorical and Enum dtypes, and reducing memory use through numeric downcasting.
4
Working with Polars at Scale
Learn how to use the streaming and GPU engines, sink large query results directly to disk with partitioning, and test pipelines with Polars' built-in assertions.
Scaling and Optimizing Data Pipelines with Polars
课程完成 加入超过19百万学习者,今天就开始Scaling and Optimizing Data Pipelines with Polars!
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