polars

Fast in-memory DataFrame library for datasets that fit in RAM. Use when pandas is too slow but data still fits in memory. Lazy evaluation, parallel execution, Apache Arrow backend. Best for 1-100GB datasets, ETL pipelines, faster pandas replacement. For larger-than-RAM data use dask or vaex.

1,802 stars

Best use case

polars is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Fast in-memory DataFrame library for datasets that fit in RAM. Use when pandas is too slow but data still fits in memory. Lazy evaluation, parallel execution, Apache Arrow backend. Best for 1-100GB datasets, ETL pipelines, faster pandas replacement. For larger-than-RAM data use dask or vaex.

Teams using polars should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/polars/SKILL.md --create-dirs "https://raw.githubusercontent.com/FreedomIntelligence/OpenClaw-Medical-Skills/main/skills/polars/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/polars/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How polars Compares

Feature / AgentpolarsStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Fast in-memory DataFrame library for datasets that fit in RAM. Use when pandas is too slow but data still fits in memory. Lazy evaluation, parallel execution, Apache Arrow backend. Best for 1-100GB datasets, ETL pipelines, faster pandas replacement. For larger-than-RAM data use dask or vaex.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# Polars

## Overview

Polars is a lightning-fast DataFrame library for Python and Rust built on Apache Arrow. Work with Polars' expression-based API, lazy evaluation framework, and high-performance data manipulation capabilities for efficient data processing, pandas migration, and data pipeline optimization.

## Quick Start

### Installation and Basic Usage

Install Polars:
```python
uv pip install polars
```

Basic DataFrame creation and operations:
```python
import polars as pl

# Create DataFrame
df = pl.DataFrame({
    "name": ["Alice", "Bob", "Charlie"],
    "age": [25, 30, 35],
    "city": ["NY", "LA", "SF"]
})

# Select columns
df.select("name", "age")

# Filter rows
df.filter(pl.col("age") > 25)

# Add computed columns
df.with_columns(
    age_plus_10=pl.col("age") + 10
)
```

## Core Concepts

### Expressions

Expressions are the fundamental building blocks of Polars operations. They describe transformations on data and can be composed, reused, and optimized.

**Key principles:**
- Use `pl.col("column_name")` to reference columns
- Chain methods to build complex transformations
- Expressions are lazy and only execute within contexts (select, with_columns, filter, group_by)

**Example:**
```python
# Expression-based computation
df.select(
    pl.col("name"),
    (pl.col("age") * 12).alias("age_in_months")
)
```

### Lazy vs Eager Evaluation

**Eager (DataFrame):** Operations execute immediately
```python
df = pl.read_csv("file.csv")  # Reads immediately
result = df.filter(pl.col("age") > 25)  # Executes immediately
```

**Lazy (LazyFrame):** Operations build a query plan, optimized before execution
```python
lf = pl.scan_csv("file.csv")  # Doesn't read yet
result = lf.filter(pl.col("age") > 25).select("name", "age")
df = result.collect()  # Now executes optimized query
```

**When to use lazy:**
- Working with large datasets
- Complex query pipelines
- When only some columns/rows are needed
- Performance is critical

**Benefits of lazy evaluation:**
- Automatic query optimization
- Predicate pushdown
- Projection pushdown
- Parallel execution

For detailed concepts, load `references/core_concepts.md`.

## Common Operations

### Select
Select and manipulate columns:
```python
# Select specific columns
df.select("name", "age")

# Select with expressions
df.select(
    pl.col("name"),
    (pl.col("age") * 2).alias("double_age")
)

# Select all columns matching a pattern
df.select(pl.col("^.*_id$"))
```

### Filter
Filter rows by conditions:
```python
# Single condition
df.filter(pl.col("age") > 25)

# Multiple conditions (cleaner than using &)
df.filter(
    pl.col("age") > 25,
    pl.col("city") == "NY"
)

# Complex conditions
df.filter(
    (pl.col("age") > 25) | (pl.col("city") == "LA")
)
```

### With Columns
Add or modify columns while preserving existing ones:
```python
# Add new columns
df.with_columns(
    age_plus_10=pl.col("age") + 10,
    name_upper=pl.col("name").str.to_uppercase()
)

# Parallel computation (all columns computed in parallel)
df.with_columns(
    pl.col("value") * 10,
    pl.col("value") * 100,
)
```

### Group By and Aggregations
Group data and compute aggregations:
```python
# Basic grouping
df.group_by("city").agg(
    pl.col("age").mean().alias("avg_age"),
    pl.len().alias("count")
)

# Multiple group keys
df.group_by("city", "department").agg(
    pl.col("salary").sum()
)

# Conditional aggregations
df.group_by("city").agg(
    (pl.col("age") > 30).sum().alias("over_30")
)
```

For detailed operation patterns, load `references/operations.md`.

## Aggregations and Window Functions

### Aggregation Functions
Common aggregations within `group_by` context:
- `pl.len()` - count rows
- `pl.col("x").sum()` - sum values
- `pl.col("x").mean()` - average
- `pl.col("x").min()` / `pl.col("x").max()` - extremes
- `pl.first()` / `pl.last()` - first/last values

### Window Functions with `over()`
Apply aggregations while preserving row count:
```python
# Add group statistics to each row
df.with_columns(
    avg_age_by_city=pl.col("age").mean().over("city"),
    rank_in_city=pl.col("salary").rank().over("city")
)

# Multiple grouping columns
df.with_columns(
    group_avg=pl.col("value").mean().over("category", "region")
)
```

**Mapping strategies:**
- `group_to_rows` (default): Preserves original row order
- `explode`: Faster but groups rows together
- `join`: Creates list columns

## Data I/O

### Supported Formats
Polars supports reading and writing:
- CSV, Parquet, JSON, Excel
- Databases (via connectors)
- Cloud storage (S3, Azure, GCS)
- Google BigQuery
- Multiple/partitioned files

### Common I/O Operations

**CSV:**
```python
# Eager
df = pl.read_csv("file.csv")
df.write_csv("output.csv")

# Lazy (preferred for large files)
lf = pl.scan_csv("file.csv")
result = lf.filter(...).select(...).collect()
```

**Parquet (recommended for performance):**
```python
df = pl.read_parquet("file.parquet")
df.write_parquet("output.parquet")
```

**JSON:**
```python
df = pl.read_json("file.json")
df.write_json("output.json")
```

For comprehensive I/O documentation, load `references/io_guide.md`.

## Transformations

### Joins
Combine DataFrames:
```python
# Inner join
df1.join(df2, on="id", how="inner")

# Left join
df1.join(df2, on="id", how="left")

# Join on different column names
df1.join(df2, left_on="user_id", right_on="id")
```

### Concatenation
Stack DataFrames:
```python
# Vertical (stack rows)
pl.concat([df1, df2], how="vertical")

# Horizontal (add columns)
pl.concat([df1, df2], how="horizontal")

# Diagonal (union with different schemas)
pl.concat([df1, df2], how="diagonal")
```

### Pivot and Unpivot
Reshape data:
```python
# Pivot (wide format)
df.pivot(values="sales", index="date", columns="product")

# Unpivot (long format)
df.unpivot(index="id", on=["col1", "col2"])
```

For detailed transformation examples, load `references/transformations.md`.

## Pandas Migration

Polars offers significant performance improvements over pandas with a cleaner API. Key differences:

### Conceptual Differences
- **No index**: Polars uses integer positions only
- **Strict typing**: No silent type conversions
- **Lazy evaluation**: Available via LazyFrame
- **Parallel by default**: Operations parallelized automatically

### Common Operation Mappings

| Operation | Pandas | Polars |
|-----------|--------|--------|
| Select column | `df["col"]` | `df.select("col")` |
| Filter | `df[df["col"] > 10]` | `df.filter(pl.col("col") > 10)` |
| Add column | `df.assign(x=...)` | `df.with_columns(x=...)` |
| Group by | `df.groupby("col").agg(...)` | `df.group_by("col").agg(...)` |
| Window | `df.groupby("col").transform(...)` | `df.with_columns(...).over("col")` |

### Key Syntax Patterns

**Pandas sequential (slow):**
```python
df.assign(
    col_a=lambda df_: df_.value * 10,
    col_b=lambda df_: df_.value * 100
)
```

**Polars parallel (fast):**
```python
df.with_columns(
    col_a=pl.col("value") * 10,
    col_b=pl.col("value") * 100,
)
```

For comprehensive migration guide, load `references/pandas_migration.md`.

## Best Practices

### Performance Optimization

1. **Use lazy evaluation for large datasets:**
   ```python
   lf = pl.scan_csv("large.csv")  # Don't use read_csv
   result = lf.filter(...).select(...).collect()
   ```

2. **Avoid Python functions in hot paths:**
   - Stay within expression API for parallelization
   - Use `.map_elements()` only when necessary
   - Prefer native Polars operations

3. **Use streaming for very large data:**
   ```python
   lf.collect(streaming=True)
   ```

4. **Select only needed columns early:**
   ```python
   # Good: Select columns early
   lf.select("col1", "col2").filter(...)

   # Bad: Filter on all columns first
   lf.filter(...).select("col1", "col2")
   ```

5. **Use appropriate data types:**
   - Categorical for low-cardinality strings
   - Appropriate integer sizes (i32 vs i64)
   - Date types for temporal data

### Expression Patterns

**Conditional operations:**
```python
pl.when(condition).then(value).otherwise(other_value)
```

**Column operations across multiple columns:**
```python
df.select(pl.col("^.*_value$") * 2)  # Regex pattern
```

**Null handling:**
```python
pl.col("x").fill_null(0)
pl.col("x").is_null()
pl.col("x").drop_nulls()
```

For additional best practices and patterns, load `references/best_practices.md`.

## Resources

This skill includes comprehensive reference documentation:

### references/
- `core_concepts.md` - Detailed explanations of expressions, lazy evaluation, and type system
- `operations.md` - Comprehensive guide to all common operations with examples
- `pandas_migration.md` - Complete migration guide from pandas to Polars
- `io_guide.md` - Data I/O operations for all supported formats
- `transformations.md` - Joins, concatenation, pivots, and reshaping operations
- `best_practices.md` - Performance optimization tips and common patterns

Load these references as needed when users require detailed information about specific topics.

Related Skills

zinc-database

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Access ZINC (230M+ purchasable compounds). Search by ZINC ID/SMILES, similarity searches, 3D-ready structures for docking, analog discovery, for virtual screening and drug discovery.

zarr-python

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Chunked N-D arrays for cloud storage. Compressed arrays, parallel I/O, S3/GCS integration, NumPy/Dask/Xarray compatible, for large-scale scientific computing pipelines.

xlsx

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Use this skill any time a spreadsheet file is the primary input or output. This means any task where the user wants to: open, read, edit, or fix an existing .xlsx, .xlsm, .csv, or .tsv file (e.g., adding columns, computing formulas, formatting, charting, cleaning messy data); create a new spreadsheet from scratch or from other data sources; or convert between tabular file formats. Trigger especially when the user references a spreadsheet file by name or path — even casually (like "the xlsx in my downloads") — and wants something done to it or produced from it. Also trigger for cleaning or restructuring messy tabular data files (malformed rows, misplaced headers, junk data) into proper spreadsheets. The deliverable must be a spreadsheet file. Do NOT trigger when the primary deliverable is a Word document, HTML report, standalone Python script, database pipeline, or Google Sheets API integration, even if tabular data is involved.

writing-skills

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Use when creating new skills, editing existing skills, or verifying skills work before deployment

writing-plans

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Use when you have a spec or requirements for a multi-step task, before touching code

wikipedia-search

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Search and fetch structured content from Wikipedia using the MediaWiki API for reliable, encyclopedic information

wellally-tech

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Integrate digital health data sources (Apple Health, Fitbit, Oura Ring) and connect to WellAlly.tech knowledge base. Import external health device data, standardize to local format, and recommend relevant WellAlly.tech knowledge base articles based on health data. Support generic CSV/JSON import, provide intelligent article recommendations, and help users better manage personal health data.

weightloss-analyzer

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

分析减肥数据、计算代谢率、追踪能量缺口、管理减肥阶段

<!--

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

# COPYRIGHT NOTICE

verification-before-completion

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Use when about to claim work is complete, fixed, or passing, before committing or creating PRs - requires running verification commands and confirming output before making any success claims; evidence before assertions always

vcf-annotator

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Annotate VCF variants with VEP, ClinVar, gnomAD frequencies, and ancestry-aware context. Generates prioritised variant reports.

vaex

1802
from FreedomIntelligence/OpenClaw-Medical-Skills

Use this skill for processing and analyzing large tabular datasets (billions of rows) that exceed available RAM. Vaex excels at out-of-core DataFrame operations, lazy evaluation, fast aggregations, efficient visualization of big data, and machine learning on large datasets. Apply when users need to work with large CSV/HDF5/Arrow/Parquet files, perform fast statistics on massive datasets, create visualizations of big data, or build ML pipelines that do not fit in memory.