Datasets:
state stringclasses 37
values | lga stringclasses 518
values | crop stringclasses 8
values | season stringclasses 7
values | area_ha float64 100 50k | yield_t_ha float64 0.1 20 | production_t float64 10 794k | quality_grade stringclasses 3
values |
|---|---|---|---|---|---|---|---|
Rivers | Rivers-LGA-13 | yam | 2025_wet | 306.5 | 12.41 | 3,802.8 | Grade A |
Kwara | Kwara-LGA-10 | cassava | 2022_dry | 100.1 | 10.93 | 1,093.3 | Grade A |
Taraba | Taraba-LGA-13 | sorghum | 2023_wet | 624.2 | 0.97 | 608 | Grade A |
Katsina | Katsina-LGA-02 | yam | 2023_wet | 545 | 6.43 | 3,503.9 | Grade A |
Enugu | Enugu-LGA-07 | rice | 2024_wet | 2,591.8 | 3.03 | 7,855.6 | Grade A |
Imo | Imo-LGA-03 | oil_palm | 2024_dry | 165.5 | 3.04 | 503.9 | Grade A |
Borno | Borno-LGA-13 | yam | 2022_dry | 100 | 5 | 500 | Grade B |
Delta | Delta-LGA-09 | cassava | 2023_dry | 777.6 | 12.3 | 9,564.8 | Grade B |
FCT | FCT-LGA-02 | cassava | 2023_wet | 100 | 10.35 | 1,034.7 | Grade B |
Cross River | Cross River-LGA-03 | cassava | 2022_dry | 2,253.2 | 9.22 | 20,778.7 | Grade B |
Ogun | Ogun-LGA-10 | yam | 2022_dry | 1,622.1 | 9 | 14,600.1 | Grade A |
Kogi | Kogi-LGA-07 | cocoa | 2022_dry | 100 | 0.52 | 52 | Grade A |
Abia | Abia-LGA-02 | cocoa | 2022_dry | 439 | 0.45 | 197.1 | Grade B |
Cross River | Cross River-LGA-07 | sorghum | 2022_wet | 105.3 | 2.01 | 211.2 | Grade B |
Adamawa | Adamawa-LGA-13 | rice | 2025_wet | 681.4 | 1.88 | 1,280.9 | Grade B |
Kogi | Kogi-LGA-09 | rice | 2025_wet | 211.8 | 2.57 | 544.8 | Grade B |
Bauchi | Bauchi-LGA-01 | millet | 2024_wet | 156.5 | 1.54 | 241.8 | Grade B |
Abia | Abia-LGA-08 | sorghum | 2025_wet | 100 | 1.82 | 181.6 | Grade B |
Taraba | Taraba-LGA-08 | rice | 2025_wet | 1,322.5 | 4.05 | 5,350 | Grade B |
Kaduna | Kaduna-LGA-08 | maize | 2022_dry | 484.7 | 2.1 | 1,016.6 | Grade B |
Edo | Edo-LGA-04 | millet | 2022_dry | 100 | 0.98 | 98.4 | Grade A |
Kebbi | Kebbi-LGA-02 | rice | 2024_dry | 1,530.1 | 3.21 | 4,917.5 | Grade B |
Katsina | Katsina-LGA-08 | cocoa | 2025_wet | 524.7 | 0.33 | 171.2 | Grade C |
Ogun | Ogun-LGA-01 | millet | 2022_dry | 505.5 | 1.03 | 518.6 | Grade A |
Oyo | Oyo-LGA-08 | yam | 2023_wet | 944.2 | 10.82 | 10,212.6 | Grade B |
Ebonyi | Ebonyi-LGA-11 | cassava | 2022_wet | 196.8 | 11.81 | 2,323.6 | Grade B |
Kogi | Kogi-LGA-14 | millet | 2025_wet | 883.2 | 0.83 | 730.1 | Grade C |
Sokoto | Sokoto-LGA-11 | yam | 2022_dry | 419 | 10.43 | 4,370.3 | Grade B |
Abia | Abia-LGA-07 | cassava | 2024_dry | 1,047.1 | 12.13 | 12,696.7 | Grade B |
Imo | Imo-LGA-04 | yam | 2022_wet | 1,227.8 | 12.57 | 15,433.5 | Grade C |
Yobe | Yobe-LGA-14 | cassava | 2023_wet | 101.7 | 7.67 | 780.1 | Grade B |
Sokoto | Sokoto-LGA-04 | cocoa | 2024_dry | 1,455.9 | 0.35 | 505.2 | Grade B |
Kebbi | Kebbi-LGA-14 | rice | 2024_wet | 152.2 | 3.85 | 586.3 | Grade A |
Plateau | Plateau-LGA-13 | sorghum | 2025_wet | 6,763.1 | 1.98 | 13,398.1 | Grade B |
Bauchi | Bauchi-LGA-14 | cassava | 2022_dry | 275.2 | 11.62 | 3,198.9 | Grade A |
Bauchi | Bauchi-LGA-07 | rice | 2023_dry | 100 | 2.4 | 240.1 | Grade A |
FCT | FCT-LGA-07 | sorghum | 2025_wet | 176.6 | 0.52 | 92.3 | Grade C |
Cross River | Cross River-LGA-12 | yam | 2022_dry | 138.1 | 12.27 | 1,693.5 | Grade C |
Ebonyi | Ebonyi-LGA-14 | cassava | 2024_dry | 172.6 | 12.04 | 2,078.3 | Grade A |
Benue | Benue-LGA-12 | yam | 2022_dry | 1,900 | 15.32 | 29,109.9 | Grade C |
Kwara | Kwara-LGA-12 | maize | 2022_dry | 265.2 | 1.71 | 452.3 | Grade A |
Rivers | Rivers-LGA-02 | yam | 2022_dry | 100 | 13.74 | 1,373.7 | Grade B |
Imo | Imo-LGA-10 | oil_palm | 2023_wet | 100 | 3.59 | 359 | Grade B |
Edo | Edo-LGA-08 | oil_palm | 2022_wet | 353.8 | 3.47 | 1,225.9 | Grade C |
Oyo | Oyo-LGA-01 | sorghum | 2024_wet | 100 | 1.18 | 118.1 | Grade B |
Oyo | Oyo-LGA-06 | millet | 2024_wet | 246.1 | 0.68 | 166.9 | Grade B |
Bauchi | Bauchi-LGA-08 | yam | 2024_dry | 393.3 | 10.91 | 4,289.5 | Grade A |
Yobe | Yobe-LGA-11 | yam | 2024_dry | 1,338 | 5 | 6,689.9 | Grade B |
Niger | Niger-LGA-10 | millet | 2025_wet | 100 | 0.48 | 48 | Grade B |
Lagos | Lagos-LGA-02 | oil_palm | 2023_wet | 100 | 2.82 | 282.4 | Grade B |
Rivers | Rivers-LGA-09 | maize | 2023_dry | 600.1 | 2.11 | 1,267.3 | Grade B |
Nasarawa | Nasarawa-LGA-14 | cocoa | 2022_wet | 1,443.1 | 0.55 | 793.1 | Grade A |
Kogi | Kogi-LGA-04 | cassava | 2023_wet | 919.9 | 8.12 | 7,468.3 | Grade B |
Gombe | Gombe-LGA-05 | maize | 2024_wet | 492.6 | 1.98 | 974.7 | Grade A |
Kano | Kano-LGA-11 | maize | 2024_wet | 759.9 | 1.94 | 1,474.7 | Grade A |
Borno | Borno-LGA-14 | sorghum | 2022_wet | 353.7 | 0.87 | 307.7 | Grade A |
Sokoto | Sokoto-LGA-14 | millet | 2024_dry | 100 | 1.37 | 137.1 | Grade A |
Ogun | Ogun-LGA-12 | cassava | 2025_wet | 1,142.2 | 11.83 | 13,516.8 | Grade A |
Oyo | Oyo-LGA-06 | yam | 2024_wet | 755.4 | 13.41 | 10,129.5 | Grade B |
Benue | Benue-LGA-07 | cassava | 2024_wet | 227.2 | 10.55 | 2,395.9 | Grade C |
Akwa Ibom | Akwa Ibom-LGA-07 | sorghum | 2022_dry | 335.1 | 1.8 | 604.7 | Grade B |
Cross River | Cross River-LGA-10 | cocoa | 2025_wet | 194.5 | 0.55 | 106.8 | Grade C |
Ogun | Ogun-LGA-11 | oil_palm | 2022_dry | 171.9 | 4.32 | 742.6 | Grade B |
Ebonyi | Ebonyi-LGA-08 | cocoa | 2025_wet | 201.5 | 0.38 | 76.4 | Grade B |
Zamfara | Zamfara-LGA-12 | sorghum | 2024_wet | 100 | 1.36 | 135.7 | Grade A |
Bayelsa | Bayelsa-LGA-01 | cocoa | 2025_wet | 295.9 | 0.21 | 62.1 | Grade A |
Kano | Kano-LGA-12 | oil_palm | 2023_dry | 100 | 1.04 | 104.4 | Grade C |
Cross River | Cross River-LGA-08 | maize | 2023_wet | 1,291.6 | 4.44 | 5,732.1 | Grade A |
Plateau | Plateau-LGA-11 | cassava | 2024_dry | 2,209.9 | 7.04 | 15,552.9 | Grade B |
Bayelsa | Bayelsa-LGA-08 | yam | 2022_wet | 1,893.3 | 9.5 | 17,991.3 | Grade C |
Rivers | Rivers-LGA-13 | maize | 2023_dry | 189.4 | 2.93 | 555.3 | Grade B |
Delta | Delta-LGA-10 | oil_palm | 2022_wet | 100 | 4.31 | 430.6 | Grade C |
Ogun | Ogun-LGA-01 | cassava | 2024_dry | 265.2 | 7.39 | 1,961.1 | Grade C |
FCT | FCT-LGA-07 | maize | 2022_dry | 489.2 | 1.34 | 656.7 | Grade B |
Kano | Kano-LGA-06 | cassava | 2025_wet | 100 | 8.6 | 859.9 | Grade B |
Bauchi | Bauchi-LGA-06 | oil_palm | 2023_dry | 721.5 | 4.11 | 2,968.3 | Grade B |
Anambra | Anambra-LGA-14 | yam | 2024_wet | 531.5 | 10.52 | 5,593.9 | Grade C |
Osun | Osun-LGA-06 | cassava | 2023_dry | 343 | 12.04 | 4,129.1 | Grade A |
Abia | Abia-LGA-11 | oil_palm | 2023_wet | 2,545.7 | 5.94 | 15,122.5 | Grade B |
Borno | Borno-LGA-03 | sorghum | 2023_wet | 456.8 | 1.02 | 465 | Grade B |
Rivers | Rivers-LGA-14 | cassava | 2024_wet | 356.8 | 12.55 | 4,479 | Grade B |
Gombe | Gombe-LGA-05 | cocoa | 2023_wet | 100 | 0.29 | 28.5 | Grade B |
Lagos | Lagos-LGA-08 | maize | 2023_dry | 371.6 | 1.52 | 564.9 | Grade B |
Abia | Abia-LGA-05 | yam | 2023_dry | 678.6 | 9.18 | 6,233.2 | Grade B |
Nasarawa | Nasarawa-LGA-14 | maize | 2025_wet | 5,263.7 | 2.66 | 14,009.3 | Grade A |
Plateau | Plateau-LGA-10 | rice | 2024_wet | 222.4 | 3.55 | 790.3 | Grade B |
Yobe | Yobe-LGA-04 | millet | 2022_wet | 1,932.8 | 0.79 | 1,528.2 | Grade B |
Ogun | Ogun-LGA-09 | oil_palm | 2023_dry | 1,011.5 | 3.82 | 3,862.7 | Grade C |
Osun | Osun-LGA-13 | maize | 2024_wet | 3,892.9 | 2.28 | 8,890.3 | Grade B |
Ondo | Ondo-LGA-03 | yam | 2024_wet | 100 | 10.42 | 1,042.4 | Grade A |
Bayelsa | Bayelsa-LGA-01 | yam | 2023_wet | 333.9 | 10.65 | 3,555.8 | Grade C |
Sokoto | Sokoto-LGA-08 | maize | 2022_wet | 110.6 | 1.7 | 188.3 | Grade B |
Ondo | Ondo-LGA-03 | maize | 2022_dry | 1,574.4 | 1.93 | 3,038.4 | Grade B |
Rivers | Rivers-LGA-06 | maize | 2024_dry | 831 | 1.64 | 1,363.2 | Grade B |
Osun | Osun-LGA-14 | sorghum | 2024_dry | 31,196.5 | 1.86 | 58,159.4 | Grade C |
Zamfara | Zamfara-LGA-11 | maize | 2023_wet | 1,031.4 | 2.22 | 2,289.4 | Grade A |
Edo | Edo-LGA-10 | cocoa | 2022_wet | 1,855.3 | 0.34 | 627.9 | Grade B |
Ogun | Ogun-LGA-11 | millet | 2025_wet | 106.9 | 1.8 | 192.8 | Grade A |
Rivers | Rivers-LGA-08 | cassava | 2023_dry | 100 | 12.3 | 1,229.8 | Grade C |
Ebonyi | Ebonyi-LGA-04 | oil_palm | 2024_wet | 100 | 2.86 | 285.5 | Grade A |
End of preview. Expand in Data Studio
Nigeria Agriculture – Seasonal Crop Yields
Dataset Description
State/LGA-level yields by crop, season, area, production, and quality grade.
Category: Crop Production & Yields
Rows: 140,000
Format: CSV, Parquet
License: MIT
Synthetic: Yes (generated using reference data from FAO, NBS, NiMet, FMARD)
Dataset Structure
Schema
- state: string
- lga: string
- crop: string
- season: string
- area_ha: float
- yield_t_ha: float
- production_t: float
- quality_grade: string
Sample Data
| state | lga | crop | season | area_ha | yield_t_ha | production_t | quality_grade |
|:--------|:---------------|:--------|:---------|----------:|-------------:|---------------:|:----------------|
| Rivers | Rivers-LGA-13 | yam | 2025_wet | 306.5 | 12.41 | 3802.8 | Grade A |
| Kwara | Kwara-LGA-10 | cassava | 2022_dry | 100.1 | 10.93 | 1093.3 | Grade A |
| Taraba | Taraba-LGA-13 | sorghum | 2023_wet | 624.2 | 0.97 | 608 | Grade A |
| Katsina | Katsina-LGA-02 | yam | 2023_wet | 545 | 6.43 | 3503.9 | Grade A |
| Enugu | Enugu-LGA-07 | rice | 2024_wet | 2591.8 | 3.03 | 7855.6 | Grade A |
Data Generation Methodology
This dataset was synthetically generated using:
Reference Sources:
- FAO (Food and Agriculture Organization) - crop yields, production data
- NBS (National Bureau of Statistics, Nigeria) - farm characteristics, surveys
- NiMet (Nigerian Meteorological Agency) - weather patterns
- FMARD (Federal Ministry of Agriculture and Rural Development) - extension guides
- IITA (International Institute of Tropical Agriculture) - agronomic research
Domain Constraints:
- Crop calendars and phenology (planting/harvest windows)
- Agro-ecological zone characteristics (Sahel, Sudan Savanna, Guinea Savanna, Rainforest)
- Nigeria-specific realities (smallholder dominance, market dynamics, conflict zones)
- Statistical distributions matching national agricultural patterns
Quality Assurance:
- Distribution testing (KS test, chi-square)
- Correlation validation (rainfall-yield, fertilizer-yield, yield-price)
- Causal consistency (DAG-based generation)
- Multi-scale coherence (farm → state aggregations)
- Ethical considerations (representative, unbiased)
See QUALITY_ASSURANCE.md in the repository for full methodology.
Use Cases
- Machine Learning: Yield prediction, price forecasting, pest detection, supply chain optimization
- Policy Analysis: Agricultural program evaluation, subsidy impact assessment, food security planning
- Research: Climate-agriculture interactions, market dynamics, technology adoption patterns
- Education: Teaching agricultural economics, data science applications in agriculture
Limitations
- Synthetic data: While grounded in real distributions, individual records are not real observations
- Simplified dynamics: Some complex interactions (e.g., multi-generational pest populations) are simplified
- Temporal scope: Covers 2022-2025; may not reflect longer-term trends or future climate scenarios
- Spatial resolution: State/LGA level; does not capture micro-level heterogeneity within localities
Citation
If you use this dataset, please cite:
@dataset{nigeria_agriculture_2025,
title = {Nigeria Agriculture – Seasonal Crop Yields},
author = {Electric Sheep Africa},
year = {2025},
publisher = {Hugging Face},
url = {https://huggingface.co/datasets/electricsheepafrica/nigerian_agriculture_seasonal_crop_yields}
}
Related Datasets
This dataset is part of the Nigeria Agriculture & Food Systems collection:
Contact
For questions, feedback, or collaboration:
- Organization: Electric Sheep Africa
- Collection: Nigeria Agriculture & Food Systems
- Repository: https://github.com/electricsheepafrica/nigerian-datasets
Changelog
Version 1.0.0 (October 2025)
- Initial release
- 140,000 synthetic records
- Quality-assured using FAO/NBS/NiMet reference data
- Downloads last month
- 9