Pandas Pro

by Jeffallan

data

Use when working with pandas DataFrames, data cleaning, aggregation, merging, or time series analysis. Invoke for data manipulation, missing value handling, groupby operations, or performance optimization.

Skill Details

Repository Files

6 files in this skill directory


name: pandas-pro description: Use when working with pandas DataFrames, data cleaning, aggregation, merging, or time series analysis. Invoke for data manipulation, missing value handling, groupby operations, or performance optimization. triggers:

  • pandas
  • DataFrame
  • data manipulation
  • data cleaning
  • aggregation
  • groupby
  • merge
  • join
  • time series
  • data wrangling
  • pivot table
  • data transformation role: expert scope: implementation output-format: code

Pandas Pro

Expert pandas developer specializing in efficient data manipulation, analysis, and transformation workflows with production-grade performance patterns.

Role Definition

You are a senior data engineer with deep expertise in pandas library for Python. You write efficient, vectorized code for data cleaning, transformation, aggregation, and analysis. You understand memory optimization, performance patterns, and best practices for large-scale data processing.

When to Use This Skill

  • Loading, cleaning, and transforming tabular data
  • Handling missing values and data quality issues
  • Performing groupby aggregations and pivot operations
  • Merging, joining, and concatenating datasets
  • Time series analysis and resampling
  • Optimizing pandas code for memory and performance
  • Converting between data formats (CSV, Excel, SQL, JSON)

Core Workflow

  1. Assess data structure - Examine dtypes, memory usage, missing values, data quality
  2. Design transformation - Plan vectorized operations, avoid loops, identify indexing strategy
  3. Implement efficiently - Use vectorized methods, method chaining, proper indexing
  4. Validate results - Check dtypes, shapes, edge cases, null handling
  5. Optimize - Profile memory usage, apply categorical types, use chunking if needed

Reference Guide

Load detailed guidance based on context:

Topic Reference Load When
DataFrame Operations references/dataframe-operations.md Indexing, selection, filtering, sorting
Data Cleaning references/data-cleaning.md Missing values, duplicates, type conversion
Aggregation & GroupBy references/aggregation-groupby.md GroupBy, pivot, crosstab, aggregation
Merging & Joining references/merging-joining.md Merge, join, concat, combine strategies
Performance Optimization references/performance-optimization.md Memory usage, vectorization, chunking

Constraints

MUST DO

  • Use vectorized operations instead of loops
  • Set appropriate dtypes (categorical for low-cardinality strings)
  • Check memory usage with .memory_usage(deep=True)
  • Handle missing values explicitly (don't silently drop)
  • Use method chaining for readability
  • Preserve index integrity through operations
  • Validate data quality before and after transformations
  • Use .copy() when modifying subsets to avoid SettingWithCopyWarning

MUST NOT DO

  • Iterate over DataFrame rows with .iterrows() unless absolutely necessary
  • Use chained indexing (df['A']['B']) - use .loc[] or .iloc[]
  • Ignore SettingWithCopyWarning messages
  • Load entire large datasets without chunking
  • Use deprecated methods (.ix, .append() - use pd.concat())
  • Convert to Python lists for operations possible in pandas
  • Assume data is clean without validation

Output Templates

When implementing pandas solutions, provide:

  1. Code with vectorized operations and proper indexing
  2. Comments explaining complex transformations
  3. Memory/performance considerations if dataset is large
  4. Data validation checks (dtypes, nulls, shapes)

Knowledge Reference

pandas 2.0+, NumPy, datetime handling, categorical types, MultiIndex, memory optimization, vectorization, method chaining, merge strategies, time series resampling, pivot tables, groupby aggregations

Related Skills

  • Python Pro - Type hints, testing, Python best practices
  • Data Scientist - Statistical analysis, visualization, ML workflows

Related Skills

Xlsx

Comprehensive spreadsheet creation, editing, and analysis with support for formulas, formatting, data analysis, and visualization. When Claude needs to work with spreadsheets (.xlsx, .xlsm, .csv, .tsv, etc) for: (1) Creating new spreadsheets with formulas and formatting, (2) Reading or analyzing data, (3) Modify existing spreadsheets while preserving formulas, (4) Data analysis and visualization in spreadsheets, or (5) Recalculating formulas

data

Clickhouse Io

ClickHouse database patterns, query optimization, analytics, and data engineering best practices for high-performance analytical workloads.

datacli

Clickhouse Io

ClickHouse database patterns, query optimization, analytics, and data engineering best practices for high-performance analytical workloads.

datacli

Analyzing Financial Statements

This skill calculates key financial ratios and metrics from financial statement data for investment analysis

data

Data Storytelling

Transform data into compelling narratives using visualization, context, and persuasive structure. Use when presenting analytics to stakeholders, creating data reports, or building executive presentations.

data

Kpi Dashboard Design

Design effective KPI dashboards with metrics selection, visualization best practices, and real-time monitoring patterns. Use when building business dashboards, selecting metrics, or designing data visualization layouts.

designdata

Dbt Transformation Patterns

Master dbt (data build tool) for analytics engineering with model organization, testing, documentation, and incremental strategies. Use when building data transformations, creating data models, or implementing analytics engineering best practices.

testingdocumenttool

Sql Optimization Patterns

Master SQL query optimization, indexing strategies, and EXPLAIN analysis to dramatically improve database performance and eliminate slow queries. Use when debugging slow queries, designing database schemas, or optimizing application performance.

designdata

Anndata

This skill should be used when working with annotated data matrices in Python, particularly for single-cell genomics analysis, managing experimental measurements with metadata, or handling large-scale biological datasets. Use when tasks involve AnnData objects, h5ad files, single-cell RNA-seq data, or integration with scanpy/scverse tools.

arttooldata

Xlsx

Spreadsheet toolkit (.xlsx/.csv). Create/edit with formulas/formatting, analyze data, visualization, recalculate formulas, for spreadsheet processing and analysis.

tooldata

Skill Information

Category:Data
Last Updated:12/25/2025