--- license: cc-by-4.0 language: - en task_categories: - tabular-classification - tabular-regression - time-series-forecasting multilinguality: monolingual size_categories: - n<1K tags: - tabular - asia - ilostat - employment - ilo - labour pretty_name: "SDG indicator 5.5.2 - Proportion of women in senior and middle management positions -- 19t | Asia (ILOSTAT)" --- # SDG indicator 5.5.2 - Proportion of women in senior and middle management positions -- 19t | Asia (ILOSTAT) 🌏 **88 observations** · **19 Asia countries** · **2013–2025** · *Repackaged by [Electric Sheep Asia](https://huggingface.co/electricsheepasia)* ![rows](https://img.shields.io/badge/rows-88-blue) ![countries](https://img.shields.io/badge/countries-19-green) ![years](https://img.shields.io/badge/years-2013–2025-orange) ![indicators](https://img.shields.io/badge/indicators-1-purple) ![license](https://img.shields.io/badge/license-cc-by-4.0-lightgrey) ## TL;DR This dataset contains **88 observations** of `Employment` data across **19 Asia countries**, spanning **2013–2025**, covering **1 distinct indicators**. ## About the source **ILOSTAT** is the ILO's central statistics database, the leading global source for labour statistics. It compiles indicators across employment, unemployment, wages, working time, child labour, informal economy, social protection, occupational injuries, and SDG decent work targets — drawing on national labour force surveys, household income surveys, establishment surveys, and administrative records. Coverage spans 200+ economies, with the ILO's Department of Statistics responsible for harmonisation. - **Source:** [ILOSTAT](https://www.ilo.org/shinyapps/bulkexplorer/?id=SDG_B552_NOC_RT) - **Publisher:** International Labour Organization (ILO) - **License:** [cc-by-4.0](https://creativecommons.org/licenses/by/4.0/) - **Topic:** Employment ## Methodology Data pulled directly from the ILOSTAT REST API at `https://rplumber.ilo.org/data/indicator?id=SDG_B552_NOC_RT` and filtered to Asia ISO3 country codes. ILOSTAT harmonises raw survey microdata using ICLS (International Conference of Labour Statisticians) definitions; sources are flagged in the `source.label` column for traceability. ## Geographic coverage 19 Asia countries · top rows shown below, sorted by row count: | Country | Rows | First year | Last year | |---------|-----:|-----------:|----------:| | `CYP` | 11 | 2014 | 2024 | | `ISR` | 11 | 2014 | 2024 | | `JPN` | 10 | 2014 | 2023 | | `MNG` | 6 | 2019 | 2024 | | `JOR` | 6 | 2017 | 2023 | | `ARE` | 5 | 2017 | 2022 | | `GEO` | 5 | 2020 | 2024 | | `VNM` | 5 | 2020 | 2024 | | `BRN` | 4 | 2014 | 2024 | | `SGP` | 4 | 2021 | 2024 | | `KHM` | 4 | 2019 | 2023 | | `MMR` | 4 | 2017 | 2020 | | `BGD` | 3 | 2022 | 2024 | | `TLS` | 3 | 2013 | 2022 | | `LAO` | 2 | 2017 | 2022 | | ... | _4 more countries_ | | | ## Indicators (sample) - `SDG_B552_NOC_RT` — SDG indicator 5.5.2 - Proportion of women in senior and middle management positions -- 19th ICLS (%) ## Schema | Column | Type | Description | Example | |--------|------|-------------|---------| | `ref_area` | `string` | ISO 3166-1 alpha-3 country code | `ARE` | | `ref_area.label` | `string` | Country name in English | `United Arab Emirates` | | `source` | `string` | ILOSTAT source code (e.g. labour force survey) | `BA:716` | | `source.label` | `string` | Source name in English | `LFS - Labour Force Survey` | | `indicator` | `string` | ILOSTAT indicator code | `SDG_B552_NOC_RT` | | `indicator.label` | `string` | Indicator name in English | `SDG indicator 5.5.2 - Proportion of w…` | | `time` | `int64` | Observation year | `2022` | | `obs_value` | `float64` | Observed indicator value (unit varies — see indicator definition) | `23.464` | | `obs_status` | `string` | Observation status flag (e.g. provisional, unreliable) | `B` | | `obs_status.label` | `string` | — | `Break in series` | | `note_indicator` | `string` | — | `I11:264` | | `note_indicator.label` | `string` | — | `Break in series: Methodology revised` | | `note_source` | `string` | — | `R1:3513` | | `note_source.label` | `string` | — | `Repository: ILO-STATISTICS - Micro da…` | ## Data quality & caveats - Data is annual frequency. Some indicators also publish monthly or quarterly series — those are not included here. - When an indicator has multiple sources for the same country×year, the ILO-selected 'best source' is used. - Disaggregation columns (`sex`, `classif1`, `classif2`) are non-null only when the indicator publishes that breakdown. ## Usage ```python from datasets import load_dataset ds = load_dataset("electricsheepasia/asia-ilo-sdg-b552-noc-rt-sdg-indicator-5-5-2-proportion-of-women-in-senior") df = ds["train"].to_pandas() print(df.head()) ``` ### Filter to one country ```python indonesia = df[df["ref_area"] == "IDN"] ``` ### Time-series for a single indicator ```python sample = (df[df["indicator"] == "SDG_B552_NOC_RT"] .sort_values("time")) sample.plot(x="time", y="obs_value", title="SDG_B552_NOC_RT") ``` ### Pivot to country × year matrix ```python matrix = (df[df["indicator"] == "SDG_B552_NOC_RT"] .pivot_table(index="time", columns="ref_area", values="obs_value")) print(matrix.tail()) ``` ## Citation ```bibtex @misc{asia_ilo_sdg_b552_noc_rt_sdg_indicator_5_5_2_proportion_of_women_in_senior_2025, title = {SDG indicator 5.5.2 - Proportion of women in senior and middle management positions -- 19t | Asia (ILOSTAT)}, author = {International Labour Organization (ILO)}, year = {2025}, url = {https://www.ilo.org/shinyapps/bulkexplorer/?id=SDG_B552_NOC_RT}, publisher = {HuggingFace Datasets, repackaged by Electric Sheep Asia}, howpublished = {\url{https://huggingface.co/datasets/electricsheepasia/asia-ilo-sdg-b552-noc-rt-sdg-indicator-5-5-2-proportion-of-women-in-senior}} } ``` ## License Released under [cc-by-4.0](https://creativecommons.org/licenses/by/4.0/). Original data © International Labour Organization (ILO). When using this dataset, please cite both the original source above and the Electric Sheep Asia repackaging. ## About Electric Sheep Electric Sheep Asia is part of the Electric Sheep mission: a unified, ML-ready data layer for Asia on HuggingFace. We pull data from authoritative open sources, normalize the schemas, package as Parquet, and publish with consistent dataset cards so researchers and developers can use `load_dataset()` to start working in seconds. Browse the full collection: [huggingface.co/electricsheepasia](https://huggingface.co/electricsheepasia) --- _Provenance: ingested 2026-05-25 via the Electric Sheep pipeline. Source URL: https://www.ilo.org/shinyapps/bulkexplorer/?id=SDG_B552_NOC_RT_