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andikarachman
GitHub creator profile

andikarachman

Repository-level view of 19 collected skills across 1 GitHub repositories, including approximate occupation coverage.

skills collected
19
repositories
1
occupation fields
1
updated
2026-02-25
occupation focus
Major fields detected across this creator.
repository map

Where the skills live

Top repositories by collected skill count, with their share of this creator catalog and occupation spread.

repository explorer

Repositories and representative skills

#001
data-science-plugin
19 skills121updated 2026-02-25
100% of creator
scikit-learn
데이터 과학자

Scikit-learn API patterns for preprocessing, pipelines, model selection, and evaluation. Use when /ds:experiment needs to build sklearn pipelines, tune hyperparameters, or evaluate models.

2026-02-25
setup
데이터 과학자

Check Python environment for required DS/ML libraries and report versions or missing packages. Use when setting up a new project or debugging import errors.

2026-02-25
tuning-hyperparameters
데이터 과학자

Hyperparameter tuning workflow reference -- strategy selection, Bayesian optimization with Optuna, search space design, and result analysis. Use when /ds:experiment needs to choose a tuning strategy, design search spaces, or analyze tuning runs.

2026-02-25
data-preprocessing
데이터 과학자

Pre-model data preparation pipelines for cleaning, validation, transformation, and ETL orchestration. Use when raw data needs deduplication, schema validation, format conversion, or quality assurance before EDA or modeling.

2026-02-25
pandas-pro
데이터 과학자

Pandas API patterns for DataFrame operations, data cleaning, aggregation, merging, and performance optimization. Use when generating pandas code for data loading, manipulation, or profiling in /ds:eda, /ds:preprocess, or /ds:experiment.

2026-02-25
polars
데이터 과학자

Polars expression API for high-performance DataFrame operations, lazy evaluation, joins, aggregations, and I/O. Use as a parallel alternative to pandas-pro when working with large datasets or generating Polars code for data loading, manipulation, or profiling in /ds:eda, /ds:preprocess, or /ds:experiment.

2026-02-25
data-quality-frameworks
데이터 과학자

Data quality validation with Great Expectations, dbt tests, and data contracts. Use when building formal validation rules, expectation suites, or data contracts for repeatable quality gates.

2026-02-25
exploratory-data-analysis
데이터 과학자

Detect file types and perform format-specific EDA across 200+ scientific data formats. Use when /ds:eda encounters non-tabular or unfamiliar data files, or when format-specific analysis guidance is needed.

2026-02-24
Showing top 8 of 19 collected skills in this repository.
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