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@@ -5,11 +5,11 @@ language_creators:
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  - found
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  language:
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  - en
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- license: cc-by-4.0
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  multilinguality:
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  - monolingual
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  size_categories:
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- - n<1K
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  source_datasets:
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  - original
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  task_categories:
@@ -22,505 +22,47 @@ tags:
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  - humanitarian
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  - hdx
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  - electric-sheep-africa
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- - conflict-violence
 
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  - food-security
 
 
 
 
 
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  - cmr
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- - cod
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- - irq
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- - lbn
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- - mli
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- pretty_name: Conflict-Related Incidents Affecting Water Systems
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  dataset_info:
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- features:
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- - name: objectid
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- dtype: int64
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- - name: adm0_name
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- dtype: string
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- - name: adm0_iso3
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- dtype: int64
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- dtype: timestamp[ns]
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- - name: hh_gender_1
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- - name: hh_maritalstat_4
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- dtype: float64
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- - name: hh_maritalstat_5
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- dtype: float64
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- - name: hh_residencetype_1
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- dtype: float64
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- - name: hh_residencetype_2
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- dtype: float64
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- - name: hh_residencetype_3
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- dtype: float64
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- - name: hh_residencetype_4
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- dtype: float64
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- - name: resp_isfishproducer_1
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- dtype: float64
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- - name: resp_iscropproducer_1
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- - name: income_main_7
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- dtype: float64
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- - name: income_main_12
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- dtype: float64
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- dtype: float64
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- - name: income_main_14
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- dtype: float64
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- dtype: float64
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- - name: income_main_16
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- dtype: float64
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- - name: income_main_17
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- dtype: float64
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- - name: income_main_18
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- dtype: float64
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- - name: income_main_19
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- dtype: float64
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- - name: income_main_gender_1
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- dtype: float64
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- - name: income_main_gender_2
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- dtype: float64
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- - name: income_main_gender_3
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- dtype: float64
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- - name: income_main_control_1
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- dtype: float64
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- - name: income_main_control_2
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- dtype: float64
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- - name: income_main_control_3
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- dtype: float64
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- - name: income_main_comp_1
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- dtype: float64
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- - name: income_main_comp_2
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- dtype: float64
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- - name: income_main_comp_3
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- dtype: float64
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- - name: income_main_comp_4
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- dtype: float64
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- - name: income_main_comp_5
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- dtype: float64
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- - name: income_main_comp_888
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- dtype: float64
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- - name: income_sec_1
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- dtype: float64
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- - name: income_sec_2
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- dtype: float64
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- - name: income_sec_3
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- dtype: float64
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- - name: income_sec_4
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- dtype: float64
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- - name: income_sec_6
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- dtype: float64
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- - name: income_sec_7
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- dtype: float64
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- - name: income_sec_8
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- dtype: float64
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- - name: income_sec_9
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- dtype: float64
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- - name: income_sec_10
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- dtype: float64
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- - name: income_sec_11
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- dtype: float64
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- - name: income_sec_12
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- dtype: float64
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- - name: income_sec_13
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- dtype: float64
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- - name: income_sec_14
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- dtype: float64
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- - name: income_sec_15
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- dtype: float64
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- - name: income_sec_16
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- dtype: float64
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- - name: income_sec_17
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- dtype: float64
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- - name: income_sec_18
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- dtype: float64
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- - name: income_sec_19
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- dtype: float64
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- - name: income_sec_gender_1
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- dtype: float64
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- - name: income_sec_gender_2
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- dtype: float64
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- - name: income_sec_gender_3
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- dtype: float64
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- - name: income_sec_control_1
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- dtype: float64
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- - name: income_sec_control_2
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- dtype: float64
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- - name: income_sec_comp_1
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- dtype: float64
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- - name: income_sec_comp_2
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- dtype: float64
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- - name: income_sec_comp_3
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- dtype: float64
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- - name: income_sec_comp_4
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- dtype: float64
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- - name: income_sec_comp_5
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- dtype: float64
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- - name: income_sec_comp_888
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- dtype: float64
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- - name: income_third_1
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- dtype: float64
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- - name: income_third_2
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- dtype: float64
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- - name: income_third_3
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- dtype: float64
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- - name: income_third_4
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- dtype: float64
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- - name: income_third_9
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- dtype: float64
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- - name: income_third_11
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- dtype: float64
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- - name: income_third_12
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- dtype: float64
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- - name: income_third_13
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- dtype: float64
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- - name: income_third_16
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- dtype: float64
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- - name: income_third_19
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- dtype: float64
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- - name: income_third_gender_1
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- dtype: float64
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- - name: income_third_comp_2
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- dtype: float64
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- - name: income_third_comp_3
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- dtype: float64
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- - name: income_third_comp_4
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- dtype: float64
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- - name: income_third_comp_5
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- dtype: float64
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- - name: hh_wealth_light_1
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- dtype: float64
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- - name: hh_wealth_light_2
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- dtype: float64
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- - name: hh_wealth_light_3
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- dtype: float64
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- - name: hh_wealth_light_4
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- dtype: float64
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- - name: hh_wealth_light_5
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- dtype: float64
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- - name: hh_wealth_light_666
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- dtype: float64
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- - name: hh_wealth_toilet_1
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- dtype: float64
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- - name: hh_wealth_toilet_2
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- dtype: float64
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- - name: hh_wealth_toilet_3
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- dtype: float64
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- - name: hh_wealth_toilet_4
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- dtype: float64
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- - name: hh_wealth_toilet_777
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- dtype: float64
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- - name: hh_wealth_water_1
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- dtype: float64
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- - name: hh_wealth_water_2
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- dtype: float64
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- - name: hh_wealth_water_3
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- dtype: float64
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- - name: hh_wealth_water_4
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- dtype: float64
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- - name: hh_wealth_water_5
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- dtype: float64
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- - name: hh_wealth_water_6
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- dtype: float64
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- - name: hh_wealth_water_7
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- dtype: float64
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- - name: hh_wealth_water_8
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- dtype: float64
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- - name: hh_wealth_water_9
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- dtype: float64
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- - name: hh_wealth_water_10
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- dtype: float64
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- - name: shock_animaldisease_1
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- dtype: float64
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- - name: shock_coldtemporhail_1
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- dtype: float64
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- - name: shock_drought_1
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- dtype: float64
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- - name: shock_firemanmade_1
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- dtype: float64
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- - name: shock_firenatural_1
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- dtype: float64
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- - name: shock_flood_1
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- dtype: float64
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- - name: shock_higherfoodprices_1
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- dtype: float64
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- - name: shock_higherfuelprices_1
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- dtype: float64
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- - name: shock_hurricane_1
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- dtype: float64
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- - name: shock_landslides_1
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- dtype: float64
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- - name: shock_lostemplorwork_1
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- dtype: float64
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- - name: shock_mvtrestrict_1
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- dtype: float64
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- - name: shock_napasture_1
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- dtype: float64
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- - name: shock_noshock_1
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- dtype: float64
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- - name: shock_othercropandlivests_1
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- dtype: float64
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- - name: shock_othereconomicshock_1
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- dtype: float64
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- - name: shock_otherintrahhshock_1
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- dtype: float64
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- - name: shock_othermanmadehazard_1
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- dtype: float64
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- - name: shock_othernathazard_1
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- dtype: float64
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- - name: shock_pestoutbreak_1
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- dtype: float64
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- - name: shock_plantdisease_1
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- dtype: float64
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- - name: shock_sicknessordeathofhh_1
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- dtype: float64
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- - name: shock_theftofprodassets_1
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- dtype: float64
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- - name: shock_violenceinsecconf_1
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- dtype: float64
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- - name: need_0
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- dtype: float64
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- - name: need_1
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- dtype: float64
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- - name: need_cash_1
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- dtype: float64
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- - name: need_cold_storage_1
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- dtype: float64
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- - name: need_crop_infrastructure_1
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- dtype: float64
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- - name: need_crop_inputs_1
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- dtype: float64
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- - name: need_crop_knowledge_1
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- dtype: float64
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- - name: need_env_infra_rehab_1
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- dtype: float64
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- - name: need_fish_infrastructure_1
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- dtype: float64
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- - name: need_fish_inputs_1
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- dtype: float64
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- - name: need_fish_knowledge_1
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- dtype: float64
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- - name: need_food_1
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- dtype: float64
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- - name: need_ls_feed_1
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- dtype: float64
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- - name: need_ls_infrastructure_1
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- dtype: float64
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- - name: need_ls_knowledge_1
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- dtype: float64
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- - name: need_ls_vet_service_1
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- dtype: float64
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- - name: need_marketing_supp_1
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- dtype: float64
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- - name: need_other_1
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- dtype: float64
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- - name: need_received_cash_1
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- dtype: float64
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- - name: need_received_crop_assist_1
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- dtype: float64
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- - name: need_received_food_1
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- dtype: float64
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- - name: need_received_ls_assist_1
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- dtype: float64
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- - name: need_received_none_1
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- dtype: float64
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- - name: need_received_other_1
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- dtype: float64
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- - name: need_received_vouchers_fair_1
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- dtype: float64
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- - name: need_vouchers_fair_1
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- dtype: float64
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- - name: assistance_quality_1
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- dtype: float64
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- - name: assistance_quality_2
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- dtype: float64
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- - name: assistance_quality_3
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- dtype: float64
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- - name: assistance_quality_4
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- dtype: float64
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- - name: assistance_dk_1
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- dtype: float64
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- - name: assistance_fao_1
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- dtype: float64
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- - name: assistance_gov_1
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- dtype: float64
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- - name: assistance_ngo_1
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- dtype: float64
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- - name: assistance_otherun_1
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- dtype: float64
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- - name: assistance_wfp_1
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- dtype: float64
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- - name: hh_age_median
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- dtype: float64
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- - name: hh_age_wmean
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- dtype: float64
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- - name: hh_age_stddev
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- dtype: float64
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- - name: hh_age_ci_low
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- dtype: float64
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- - name: hh_age_ci_high
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- dtype: float64
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- - name: hh_size_median
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- dtype: float64
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- - name: hh_size_wmean
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- dtype: float64
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- - name: hh_size_stddev
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- dtype: float64
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- - name: hh_size_ci_low
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- dtype: float64
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- - name: hh_size_ci_high
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- dtype: float64
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- - name: tot_income_median
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- dtype: float64
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- - name: tot_income_wmean
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- dtype: float64
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- - name: tot_income_stddev
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- dtype: float64
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- - name: tot_income_ci_low
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- dtype: float64
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- - name: tot_income_ci_high
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- dtype: float64
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- - name: income_main_amount_median
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- dtype: float64
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- - name: income_main_amount_wmean
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- dtype: float64
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- - name: income_main_amount_stddev
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- dtype: float64
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- - name: income_main_amount_ci_low
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- dtype: float64
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- - name: income_main_amount_ci_high
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- dtype: float64
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- - name: income_sec_amount_median
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- dtype: float64
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- - name: income_sec_amount_wmean
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- dtype: float64
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- - name: income_sec_amount_stddev
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- dtype: float64
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- - name: income_sec_amount_ci_low
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- dtype: float64
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- - name: income_sec_amount_ci_high
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- dtype: float64
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- - name: income_third_amount_median
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- dtype: float64
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- - name: income_third_amount_wmean
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- dtype: float64
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- - name: income_third_amount_stddev
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- dtype: float64
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- - name: income_third_amount_ci_low
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- dtype: float64
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- - name: income_third_amount_ci_high
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- dtype: float64
491
- - name: esa_source
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- dtype: string
493
- - name: esa_processed
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- dtype: string
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  splits:
496
- - name: train
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- num_bytes: 3777934
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- num_examples: 2008
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- - name: test
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- num_bytes: 947100
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- num_examples: 503
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- download_size: 2816818
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- dataset_size: 4725034
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- configs:
505
- - config_name: default
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- data_files:
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- - split: train
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- path: data/train-*
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- - split: test
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- path: data/test-*
511
  ---
512
 
513
- # Conflict-Related Incidents Affecting Water Systems
514
 
515
- **Publisher:** Insecurity Insight · **Source:** [HDX](https://data.humdata.org/dataset/conflict-related-incidents-affecting-water-systems) · **License:** `cc-by-igo` · **Updated:** 2026-05-04
516
 
517
  ---
518
 
519
  ## Abstract
520
 
521
- This page contains data on conflict events with clearly foreseeable impacts on or links to water systems based on agency-and open source events. Categorized by country. Covers Cameroon, DRC, Lebanon, Mali, Myanmar, Niger, oPt, Somalia, Sudan, Syria and Yemen. Please get in touch if you are interested in curated datasets: info@insecurityinsight.org
522
-
523
- Each row in this dataset represents discrete events or incidents. Temporal coverage is indicated by the `date`, `date_event_entered` column(s). Geographic scope: **CMR, COD, IRQ, LBN, MLI, NER, SSD, PSE, and 4 others**.
 
 
 
 
 
 
 
 
 
 
 
 
524
 
525
  *Curated into ML-ready Parquet format by [Electric Sheep Africa](https://huggingface.co/electricsheepafrica).*
526
 
@@ -531,26 +73,30 @@ Each row in this dataset represents discrete events or incidents. Temporal cover
531
  | | |
532
  |---|---|
533
  | **Domain** | Food security and nutrition |
534
- | **Unit of observation** | Discrete events or incidents |
535
- | **Rows (total)** | 426 |
536
- | **Columns** | 15 (2 numeric, 10 categorical, 3 datetime) |
537
- | **Train split** | 340 rows |
538
- | **Test split** | 85 rows |
539
- | **Geographic scope** | CMR, COD, IRQ, LBN, MLI, NER, SSD, PSE, and 4 others |
540
- | **Publisher** | Insecurity Insight |
541
- | **HDX last updated** | 2026-05-04 |
542
 
543
  ---
544
 
545
  ## Variables
546
 
547
- **Geographic** — `country` (OPT, Syria, Ukraine), `country_iso` (PSE, SYR, UKR), `admin_1` (West Bank, Gaza Strip, South Governorate), `water_infrastructure_category_affected` (Water Distribution, Multi Purpose/Function Infrastructure, Water Storage), `number_of_attacks_damaging_destroying_water_infrastructure` (range 1.0–7.0).
 
 
 
 
548
 
549
- **Temporal** — `date`, `date_event_entered`, `date_event_modified`.
550
 
551
- **Identifier / Metadata** — `reported_perpetrator_name` (Israeli Defence Forces, Armed Forces of the Russian Federation, Unidentified Armed Actor), `sind_event_id` (range 4537.0–126962.0), `esa_source` (HDX), `esa_processed` (2026-05-04).
552
 
553
- **Other** — `geo_precision` (censored), `reported_perpetrator` (Government: Military, Foreign Forces: Military, NSA), `weapon_carried_used` (Firearms, Aerial Bomb: Plane, Aerial Bomb: Drone).
554
 
555
  ---
556
 
@@ -573,21 +119,236 @@ train.head()
573
 
574
  | Column | Type | Null % | Range / Sample Values |
575
  |---|---|---|---|
576
- | `date` | datetime64[ns] | 0.0% | |
577
- | `country` | object | 0.0% | OPT, Syria, Ukraine |
578
- | `country_iso` | object | 0.0% | PSE, SYR, UKR |
579
- | `admin_1` | object | 0.0% | West Bank, Gaza Strip, South Governorate |
580
- | `geo_precision` | object | 0.0% | censored |
581
- | `reported_perpetrator` | object | 0.0% | Government: Military, Foreign Forces: Military, NSA |
582
- | `reported_perpetrator_name` | object | 0.0% | Israeli Defence Forces, Armed Forces of the Russian Federation, Unidentified Armed Actor |
583
- | `weapon_carried_used` | object | 0.0% | Firearms, Aerial Bomb: Plane, Aerial Bomb: Drone |
584
- | `water_infrastructure_category_affected` | object | 8.9% | Water Distribution, Multi Purpose/Function Infrastructure, Water Storage |
585
- | `number_of_attacks_damaging_destroying_water_infrastructure` | float64 | 36.4% | 1.0 7.0 (mean 1.0554) |
586
- | `sind_event_id` | int64 | 0.0% | 4537.0 – 126962.0 (mean 105978.0587) |
587
- | `date_event_entered` | datetime64[ns] | 0.0% | |
588
- | `date_event_modified` | datetime64[ns] | 0.0% | |
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
589
  | `esa_source` | object | 0.0% | HDX |
590
- | `esa_processed` | object | 0.0% | 2026-05-04 |
591
 
592
  ---
593
 
@@ -595,24 +356,37 @@ train.head()
595
 
596
  | Column | Min | Max | Mean | Median |
597
  |---|---|---|---|---|
598
- | `number_of_attacks_damaging_destroying_water_infrastructure` | 1.0 | 7.0 | 1.0554 | 1.0 |
599
- | `sind_event_id` | 4537.0 | 126962.0 | 105978.0587 | 100152.5 |
 
 
 
 
 
 
 
 
 
 
 
 
 
600
 
601
  ---
602
 
603
  ## Curation
604
 
605
- Raw data was downloaded from HDX via the CKAN API and converted to Parquet. Column names were lowercased and standardised to snake_case. Common missing-value markers (`N/A`, `null`, `none`, `-`, `unknown`, `no data`, `#N/A`) were unified to `NaN`. 13 column(s) with >80% missing values were removed: `event_description`, `latitude`, `longitude`, `number_of_attacks_where_water_infrastructure_was_contaminated`, `number_of_attacks_where_water_infrastructure_was_looted`, `number_of_attacks_where_water_infrastructure_was_obstructed`.... The dataset was split 80/20 into train and test partitions using a fixed random seed (42) and saved as Snappy-compressed Parquet.
606
 
607
  ---
608
 
609
  ## Limitations
610
 
611
- - Data originates from Insecurity Insight and has not been independently validated by ESA.
612
  - Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection.
613
- - The following columns have >20% missing values and should be treated with caution in modelling: `number_of_attacks_damaging_destroying_water_infrastructure`.
614
- - This dataset spans 12 countries; geographic and methodological inconsistencies across national boundaries may affect cross-country comparability.
615
- - Refer to the [original HDX dataset page](https://data.humdata.org/dataset/conflict-related-incidents-affecting-water-systems) for the publisher's own methodology notes and caveats.
616
 
617
  ---
618
 
@@ -620,10 +394,10 @@ Raw data was downloaded from HDX via the CKAN API and converted to Parquet. Colu
620
 
621
  ```bibtex
622
  @dataset{hdx_asia_food_security_all,
623
- title = {Conflict-Related Incidents Affecting Water Systems},
624
- author = {Insecurity Insight},
625
  year = {2026},
626
- url = {https://data.humdata.org/dataset/conflict-related-incidents-affecting-water-systems},
627
  note = {Repackaged for machine learning by Electric Sheep Africa (https://huggingface.co/electricsheepafrica)}
628
  }
629
  ```
 
5
  - found
6
  language:
7
  - en
8
+ license: other
9
  multilinguality:
10
  - monolingual
11
  size_categories:
12
+ - 1K<n<10K
13
  source_datasets:
14
  - original
15
  task_categories:
 
22
  - humanitarian
23
  - hdx
24
  - electric-sheep-africa
25
+ - agriculture-livestock
26
+ - complex-emergency-conflict-security
27
  - food-security
28
+ - livelihoods
29
+ - afg
30
+ - bgd
31
+ - bfa
32
+ - khm
33
  - cmr
34
+ pretty_name: "FAO Data in Emergencies Monitoring System (DIEM)"
 
 
 
 
35
  dataset_info:
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
36
  splits:
37
+ - name: train
38
+ num_examples: 2008
39
+ - name: test
40
+ num_examples: 502
 
 
 
 
 
 
 
 
 
 
 
41
  ---
42
 
43
+ # FAO Data in Emergencies Monitoring System (DIEM)
44
 
45
+ **Publisher:** Food and Agriculture Organization (FAO) of the United Nations · **Source:** [HDX](https://data.humdata.org/dataset/fao-diem-monitoring-system-household-surveys-aggregated-data) · **License:** `hdx-other` · **Updated:** 2026-05-05
46
 
47
  ---
48
 
49
  ## Abstract
50
 
51
+ The Food and Agriculture Organization of the United Nations (FAO) has developed a monitoring system in 26 food crisis countries to better understand the impacts of various shocks on agricultural livelihoods, food security and local value chains.
52
+ The Monitoring System consists of primary data collected from households on a periodic basis (more or less every four months, depending on seasonality). Data are collected through Computer-Assisted Telephone Interviews (CATI) and in-person surveys where the circumstances allow for field access.
53
+ As the system is developed, the information collected and analyzed is being used to guide strategic decisions, to design programmes and to inform analytical processes such as the Integrated Phase Classification (IPC) and the Humanitarian Needs Overview (HNO).
54
+ At the core of the system is a standardized household questionnaire administered to around 150,000 households per year across the 26 countries. Standardization permits comparisons across time and space, considerably enhancing the utility of the data for decision makers. At minimum the household data are representative at Admin 1 level (e.g. province, or region) and in frequent cases at Admin 2 level (e.g. district).
55
+ In each aggregated field, the values indicate the frequencies of the different responses, expressed as a weighted percentage of the total sample.
56
+ The present datasets represents aggregated data referring to household interviews performed after December 2022. At every new survey data release, after cleaning and validation phases, aggregated data is appended to the present dataset.
57
+
58
+ For real-time updates, for accessing archived data or microdata and for additional survey-specific information, please visit the DIEM Hub: https://data-in-emergencies.fao.org/ or contact [DIEM](https://data-in-emergencies.fao.org/pages/contactus "DIEM")
59
+
60
+ View the column descriptions [here](https://hqfao.maps.arcgis.com/sharing/rest/content/items/04287fcadb994341b0b70d19c8a02035/data "here").
61
+ Metadata available [here](https://hqfao.maps.arcgis.com/sharing/rest/content/items/01595314154948719aca7325d88c782a/data "here").
62
+
63
+ Reference administrative boundaries (levels 0, 1 and 2) available [here](https://data-in-emergencies.fao.org/maps/3596c3ad318849068eda21517ade30be/about"here") in GIS format.
64
+
65
+ Each row in this dataset represents country-level aggregates. Temporal coverage is indicated by the `coll_start_date`, `coll_end_date` column(s). Geographic scope: **AFG, BGD, BFA, KHM, CMR, CAF, TCD, COL, and 25 others**.
66
 
67
  *Curated into ML-ready Parquet format by [Electric Sheep Africa](https://huggingface.co/electricsheepafrica).*
68
 
 
73
  | | |
74
  |---|---|
75
  | **Domain** | Food security and nutrition |
76
+ | **Unit of observation** | Country-level aggregates |
77
+ | **Rows (total)** | 2,511 |
78
+ | **Columns** | 230 (217 numeric, 10 categorical, 3 datetime) |
79
+ | **Train split** | 2,008 rows |
80
+ | **Test split** | 502 rows |
81
+ | **Geographic scope** | AFG, BGD, BFA, KHM, CMR, CAF, TCD, COL, and 25 others |
82
+ | **Publisher** | Food and Agriculture Organization (FAO) of the United Nations |
83
+ | **HDX last updated** | 2026-05-05 |
84
 
85
  ---
86
 
87
  ## Variables
88
 
89
+ **Geographic** — `adm0_iso3` (YEM, BGD, AFG), `surveys` (range 1.0–2682.0), `hh_agricactivity_1` (range 0.0204–99.994), `hh_agricactivity_2` (range 0.0573–81.8609), `hh_agricactivity_3` (range 0.1326100.0098) and 9 others.
90
+
91
+ **Temporal** — `coll_start_date`, `coll_end_date`, `coll_mid_date`.
92
+
93
+ **Demographic** — `hh_gender_1` (range 19.0595–100.0124), `hh_gender_2` (range 0.0692–80.9522), `hh_education_1` (range 0.0364–99.9996), `hh_education_2` (range 0.3676–69.8138), `hh_education_3` (range 0.067–67.2747) and 49 others.
94
 
95
+ **Outcome / Measurement** — `income_main_1`, `income_main_2`, `income_main_3`, `income_main_4`, `income_main_6` and 84 others.
96
 
97
+ **Identifier / Metadata** — `objectid` (range 736.0–7697.0), `adm0_name` (Yemen, Bangladesh, Afghanistan), `adm1_name` (Dhaka, Chattogram, Balochistan), `adm1_pcode` (BD30, BD20, PK22022), `adm2_pcode` (BD6091, BD6090, BD6058) and 6 others.
98
 
99
+ **Other** — `adm0_m49` (range 4.0–887.0), `adm_level` (range 1.0–2.0), `round` (range 1.0–30.0), `tot_crop_producers` (range 0.0–2523.0), `tot_ls_producers` (range 0.0–1542.0) and 54 others.
100
 
101
  ---
102
 
 
119
 
120
  | Column | Type | Null % | Range / Sample Values |
121
  |---|---|---|---|
122
+ | `objectid` | int64 | 0.0% | 736.0 – 7697.0 (mean 4051.5094) |
123
+ | `adm0_name` | object | 0.0% | Yemen, Bangladesh, Afghanistan |
124
+ | `adm0_iso3` | object | 0.0% | YEM, BGD, AFG |
125
+ | `adm0_m49` | int64 | 0.0% | 4.0 887.0 (mean 439.0315) |
126
+ | `adm1_name` | object | 0.0% | Dhaka, Chattogram, Balochistan |
127
+ | `adm1_pcode` | object | 0.0% | BD30, BD20, PK22022 |
128
+ | `adm2_pcode` | object | 59.8% | BD6091, BD6090, BD6058 |
129
+ | `adm2_name` | object | 59.8% | Sunamganj, Falaba, Maulvibazar |
130
+ | `adm_name` | object | 0.0% | Abyan, Al Maharah, Al Mahwit |
131
+ | `adm_pcode` | object | 0.0% | YE23, YE22, YE15 |
132
+ | `adm_level` | int64 | 0.0% | 1.0 – 2.0 (mean 1.4022) |
133
+ | `round` | int64 | 0.0% | 1.0 – 30.0 (mean 9.6623) |
134
+ | `coll_start_date` | datetime64[ns] | 0.0% | |
135
+ | `coll_end_date` | datetime64[ns] | 0.0% | |
136
+ | `coll_mid_date` | datetime64[ns] | 0.0% | |
137
+ | `surveys` | int64 | 0.0% | 1.0 – 2682.0 (mean 187.2736) |
138
+ | `tot_crop_producers` | float64 | 18.4% | 0.0 – 2523.0 (mean 124.7988) |
139
+ | `tot_ls_producers` | float64 | 18.4% | 0.0 – 1542.0 (mean 85.5669) |
140
+ | `tot_fish_producers` | float64 | 17.5% | 0.0 – 286.0 (mean 10.3866) |
141
+ | `hh_agricactivity_1` | float64 | 4.7% | 0.0204 – 99.994 (mean 27.1802) |
142
+ | `hh_agricactivity_2` | float64 | 6.6% | 0.0573 – 81.8609 (mean 13.5993) |
143
+ | `hh_agricactivity_3` | float64 | 4.1% | 0.1326 – 100.0098 (mean 30.8245) |
144
+ | `hh_agricactivity_4` | float64 | 11.5% | 0.0217 – 97.6869 (mean 31.9715) |
145
+ | `hh_gender_1` | float64 | 4.9% | 19.0595 – 100.0124 (mean 83.0519) |
146
+ | `hh_gender_2` | float64 | 6.5% | 0.0692 – 80.9522 (mean 17.2139) |
147
+ | `hh_education_1` | float64 | 15.4% | 0.0364 – 99.9996 (mean 37.3058) |
148
+ | `hh_education_2` | float64 | 15.8% | 0.3676 – 69.8138 (mean 26.6322) |
149
+ | `hh_education_3` | float64 | 16.8% | 0.067 – 67.2747 (mean 18.7961) |
150
+ | `hh_education_4` | float64 | 21.4% | 0.02 – 64.7391 (mean 12.0769) |
151
+ | `hh_education_5` | float64 | 42.5% | 0.0287 – 76.8284 (mean 8.8851) |
152
+ | `hh_education_888` | float64 | 76.8% | 0.0209 – 30.5547 (mean 1.4988) |
153
+ | `hh_maritalstat_1` | float64 | 63.8% | |
154
+ | `hh_maritalstat_2` | float64 | 60.7% | |
155
+ | `hh_maritalstat_3` | float64 | 76.6% | |
156
+ | `hh_maritalstat_4` | float64 | 77.5% | |
157
+ | `hh_maritalstat_5` | float64 | 61.8% | |
158
+ | `hh_residencetype_1` | float64 | 37.9% | |
159
+ | `hh_residencetype_2` | float64 | 60.0% | |
160
+ | `hh_residencetype_3` | float64 | 74.2% | |
161
+ | `hh_residencetype_4` | float64 | 57.9% | |
162
+ | `resp_isfishproducer_1` | float64 | 47.7% | |
163
+ | `resp_iscropproducer_1` | float64 | 18.4% | |
164
+ | `resp_islsproducer_1` | float64 | 18.5% | |
165
+ | `income_main_1` | float64 | 18.0% | |
166
+ | `income_main_2` | float64 | 32.9% | |
167
+ | `income_main_3` | float64 | 43.9% | |
168
+ | `income_main_4` | float64 | 20.7% | |
169
+ | `income_main_6` | float64 | 62.5% | |
170
+ | `income_main_7` | float64 | 66.9% | |
171
+ | `income_main_8` | float64 | 35.8% | |
172
+ | `income_main_9` | float64 | 25.2% | |
173
+ | `income_main_10` | float64 | 55.3% | |
174
+ | `income_main_11` | float64 | 25.3% | |
175
+ | `income_main_12` | float64 | 20.0% | |
176
+ | `income_main_13` | float64 | 26.4% | |
177
+ | `income_main_14` | float64 | 25.9% | |
178
+ | `income_main_15` | float64 | 56.7% | |
179
+ | `income_main_16` | float64 | 42.3% | |
180
+ | `income_main_17` | float64 | 45.9% | |
181
+ | `income_main_18` | float64 | 62.2% | |
182
+ | `income_main_19` | float64 | 34.0% | |
183
+ | `income_main_gender_1` | float64 | 39.1% | |
184
+ | `income_main_gender_2` | float64 | 41.8% | |
185
+ | `income_main_gender_3` | float64 | 40.9% | |
186
+ | `income_main_control_1` | float64 | 48.9% | |
187
+ | `income_main_control_2` | float64 | 50.1% | |
188
+ | `income_main_control_3` | float64 | 50.3% | |
189
+ | `income_main_comp_1` | float64 | 36.3% | |
190
+ | `income_main_comp_2` | float64 | 3.2% | |
191
+ | `income_main_comp_3` | float64 | 1.1% | |
192
+ | `income_main_comp_4` | float64 | 1.0% | |
193
+ | `income_main_comp_5` | float64 | 7.3% | |
194
+ | `income_main_comp_888` | float64 | 67.7% | |
195
+ | `income_sec_1` | float64 | 29.3% | |
196
+ | `income_sec_2` | float64 | 40.6% | |
197
+ | `income_sec_3` | float64 | 50.7% | |
198
+ | `income_sec_4` | float64 | 24.5% | |
199
+ | `income_sec_6` | float64 | 71.6% | |
200
+ | `income_sec_7` | float64 | 75.7% | |
201
+ | `income_sec_8` | float64 | 64.0% | |
202
+ | `income_sec_9` | float64 | 37.5% | |
203
+ | `income_sec_10` | float64 | 74.2% | |
204
+ | `income_sec_11` | float64 | 31.7% | |
205
+ | `income_sec_12` | float64 | 24.1% | |
206
+ | `income_sec_13` | float64 | 33.9% | |
207
+ | `income_sec_14` | float64 | 45.1% | |
208
+ | `income_sec_15` | float64 | 69.7% | |
209
+ | `income_sec_16` | float64 | 48.9% | |
210
+ | `income_sec_17` | float64 | 56.2% | |
211
+ | `income_sec_18` | float64 | 62.4% | |
212
+ | `income_sec_19` | float64 | 21.1% | |
213
+ | `income_sec_gender_1` | float64 | 66.1% | |
214
+ | `income_sec_gender_2` | float64 | 68.7% | |
215
+ | `income_sec_gender_3` | float64 | 68.3% | |
216
+ | `income_sec_control_1` | float64 | 79.4% | |
217
+ | `income_sec_control_2` | float64 | 79.7% | |
218
+ | `income_sec_comp_1` | float64 | 59.2% | |
219
+ | `income_sec_comp_2` | float64 | 25.5% | |
220
+ | `income_sec_comp_3` | float64 | 21.3% | |
221
+ | `income_sec_comp_4` | float64 | 20.9% | |
222
+ | `income_sec_comp_5` | float64 | 37.6% | |
223
+ | `income_sec_comp_888` | float64 | 76.1% | |
224
+ | `income_third_1` | float64 | 64.3% | |
225
+ | `income_third_2` | float64 | 71.8% | |
226
+ | `income_third_3` | float64 | 78.4% | |
227
+ | `income_third_4` | float64 | 48.3% | |
228
+ | `income_third_9` | float64 | 75.1% | |
229
+ | `income_third_11` | float64 | 67.3% | |
230
+ | `income_third_12` | float64 | 58.1% | |
231
+ | `income_third_13` | float64 | 70.8% | |
232
+ | `income_third_16` | float64 | 71.6% | |
233
+ | `income_third_19` | float64 | 21.1% | |
234
+ | `income_third_gender_1` | float64 | 79.8% | |
235
+ | `income_third_comp_2` | float64 | 46.2% | |
236
+ | `income_third_comp_3` | float64 | 38.4% | |
237
+ | `income_third_comp_4` | float64 | 44.7% | |
238
+ | `income_third_comp_5` | float64 | 68.5% | |
239
+ | `hh_wealth_light_1` | float64 | 60.3% | |
240
+ | `hh_wealth_light_2` | float64 | 78.5% | |
241
+ | `hh_wealth_light_3` | float64 | 73.8% | |
242
+ | `hh_wealth_light_4` | float64 | 61.7% | |
243
+ | `hh_wealth_light_5` | float64 | 57.4% | |
244
+ | `hh_wealth_light_666` | float64 | 72.7% | |
245
+ | `hh_wealth_toilet_1` | float64 | 46.9% | |
246
+ | `hh_wealth_toilet_2` | float64 | 40.9% | |
247
+ | `hh_wealth_toilet_3` | float64 | 58.7% | |
248
+ | `hh_wealth_toilet_4` | float64 | 64.5% | |
249
+ | `hh_wealth_toilet_777` | float64 | 74.1% | |
250
+ | `hh_wealth_water_1` | float64 | 55.3% | |
251
+ | `hh_wealth_water_2` | float64 | 49.1% | |
252
+ | `hh_wealth_water_3` | float64 | 49.8% | |
253
+ | `hh_wealth_water_4` | float64 | 70.9% | |
254
+ | `hh_wealth_water_5` | float64 | 56.8% | |
255
+ | `hh_wealth_water_6` | float64 | 64.6% | |
256
+ | `hh_wealth_water_7` | float64 | 55.7% | |
257
+ | `hh_wealth_water_8` | float64 | 59.2% | |
258
+ | `hh_wealth_water_9` | float64 | 61.8% | |
259
+ | `hh_wealth_water_10` | float64 | 74.2% | |
260
+ | `shock_animaldisease_1` | float64 | 13.7% | |
261
+ | `shock_coldtemporhail_1` | float64 | 60.6% | |
262
+ | `shock_drought_1` | float64 | 23.6% | |
263
+ | `shock_firemanmade_1` | float64 | 78.1% | |
264
+ | `shock_firenatural_1` | float64 | 79.2% | |
265
+ | `shock_flood_1` | float64 | 33.0% | |
266
+ | `shock_higherfoodprices_1` | float64 | 1.3% | |
267
+ | `shock_higherfuelprices_1` | float64 | 8.4% | |
268
+ | `shock_hurricane_1` | float64 | 63.5% | |
269
+ | `shock_landslides_1` | float64 | 77.2% | |
270
+ | `shock_lostemplorwork_1` | float64 | 4.1% | |
271
+ | `shock_mvtrestrict_1` | float64 | 55.1% | |
272
+ | `shock_napasture_1` | float64 | 54.0% | |
273
+ | `shock_noshock_1` | float64 | 4.0% | |
274
+ | `shock_othercropandlivests_1` | float64 | 29.0% | |
275
+ | `shock_othereconomicshock_1` | float64 | 8.5% | |
276
+ | `shock_otherintrahhshock_1` | float64 | 9.4% | |
277
+ | `shock_othermanmadehazard_1` | float64 | 49.3% | |
278
+ | `shock_othernathazard_1` | float64 | 46.2% | |
279
+ | `shock_pestoutbreak_1` | float64 | 30.3% | |
280
+ | `shock_plantdisease_1` | float64 | 25.4% | |
281
+ | `shock_sicknessordeathofhh_1` | float64 | 4.9% | |
282
+ | `shock_theftofprodassets_1` | float64 | 63.0% | |
283
+ | `shock_violenceinsecconf_1` | float64 | 41.9% | |
284
+ | `need_0` | float64 | 25.7% | |
285
+ | `need_1` | float64 | 18.4% | |
286
+ | `need_cash_1` | float64 | 18.2% | |
287
+ | `need_cold_storage_1` | float64 | 73.2% | |
288
+ | `need_crop_infrastructure_1` | float64 | 22.1% | |
289
+ | `need_crop_inputs_1` | float64 | 19.9% | |
290
+ | `need_crop_knowledge_1` | float64 | 26.2% | |
291
+ | `need_env_infra_rehab_1` | float64 | 50.7% | |
292
+ | `need_fish_infrastructure_1` | float64 | 56.8% | |
293
+ | `need_fish_inputs_1` | float64 | 52.3% | |
294
+ | `need_fish_knowledge_1` | float64 | 60.4% | |
295
+ | `need_food_1` | float64 | 21.1% | |
296
+ | `need_ls_feed_1` | float64 | 21.2% | |
297
+ | `need_ls_infrastructure_1` | float64 | 25.7% | |
298
+ | `need_ls_knowledge_1` | float64 | 33.3% | |
299
+ | `need_ls_vet_service_1` | float64 | 23.1% | |
300
+ | `need_marketing_supp_1` | float64 | 48.1% | |
301
+ | `need_other_1` | float64 | 50.5% | |
302
+ | `need_received_cash_1` | float64 | 39.9% | |
303
+ | `need_received_crop_assist_1` | float64 | 54.6% | |
304
+ | `need_received_food_1` | float64 | 36.6% | |
305
+ | `need_received_ls_assist_1` | float64 | 76.6% | |
306
+ | `need_received_none_1` | float64 | 18.8% | |
307
+ | `need_received_other_1` | float64 | 71.0% | |
308
+ | `need_received_vouchers_fair_1` | float64 | 77.4% | |
309
+ | `need_vouchers_fair_1` | float64 | 38.4% | |
310
+ | `assistance_quality_1` | float64 | 31.9% | |
311
+ | `assistance_quality_2` | float64 | 76.9% | |
312
+ | `assistance_quality_3` | float64 | 68.9% | |
313
+ | `assistance_quality_4` | float64 | 63.0% | |
314
+ | `assistance_dk_1` | float64 | 79.7% | |
315
+ | `assistance_fao_1` | float64 | 78.8% | |
316
+ | `assistance_gov_1` | float64 | 58.3% | |
317
+ | `assistance_ngo_1` | float64 | 59.3% | |
318
+ | `assistance_otherun_1` | float64 | 73.0% | |
319
+ | `assistance_wfp_1` | float64 | 70.8% | |
320
+ | `hh_age_median` | float64 | 38.9% | |
321
+ | `hh_age_wmean` | float64 | 38.9% | |
322
+ | `hh_age_stddev` | float64 | 0.0% | |
323
+ | `hh_age_ci_low` | float64 | 38.9% | |
324
+ | `hh_age_ci_high` | float64 | 38.9% | |
325
+ | `hh_size_median` | float64 | 23.3% | |
326
+ | `hh_size_wmean` | float64 | 23.3% | |
327
+ | `hh_size_stddev` | float64 | 0.0% | |
328
+ | `hh_size_ci_low` | float64 | 23.3% | |
329
+ | `hh_size_ci_high` | float64 | 23.3% | |
330
+ | `tot_income_median` | float64 | 62.0% | |
331
+ | `tot_income_wmean` | float64 | 62.0% | |
332
+ | `tot_income_stddev` | float64 | 0.0% | |
333
+ | `tot_income_ci_low` | float64 | 62.0% | |
334
+ | `tot_income_ci_high` | float64 | 62.0% | |
335
+ | `income_main_amount_median` | float64 | 61.8% | |
336
+ | `income_main_amount_wmean` | float64 | 61.8% | |
337
+ | `income_main_amount_stddev` | float64 | 0.0% | |
338
+ | `income_main_amount_ci_low` | float64 | 61.8% | |
339
+ | `income_main_amount_ci_high` | float64 | 61.8% | |
340
+ | `income_sec_amount_median` | float64 | 68.1% | |
341
+ | `income_sec_amount_wmean` | float64 | 68.1% | |
342
+ | `income_sec_amount_stddev` | float64 | 0.0% | |
343
+ | `income_sec_amount_ci_low` | float64 | 68.1% | |
344
+ | `income_sec_amount_ci_high` | float64 | 68.1% | |
345
+ | `income_third_amount_median` | float64 | 74.0% | |
346
+ | `income_third_amount_wmean` | float64 | 74.0% | |
347
+ | `income_third_amount_stddev` | float64 | 0.0% | |
348
+ | `income_third_amount_ci_low` | float64 | 74.0% | |
349
+ | `income_third_amount_ci_high` | float64 | 74.0% | |
350
  | `esa_source` | object | 0.0% | HDX |
351
+ | `esa_processed` | object | 0.0% | 2026-05-05 |
352
 
353
  ---
354
 
 
356
 
357
  | Column | Min | Max | Mean | Median |
358
  |---|---|---|---|---|
359
+ | `objectid` | 736.0 | 7697.0 | 4051.5094 | 3871.0 |
360
+ | `adm0_m49` | 4.0 | 887.0 | 439.0315 | 422.0 |
361
+ | `adm_level` | 1.0 | 2.0 | 1.4022 | 1.0 |
362
+ | `round` | 1.0 | 30.0 | 9.6623 | 8.0 |
363
+ | `surveys` | 1.0 | 2682.0 | 187.2736 | 150.0 |
364
+ | `tot_crop_producers` | 0.0 | 2523.0 | 124.7988 | 106.5 |
365
+ | `tot_ls_producers` | 0.0 | 1542.0 | 85.5669 | 67.0 |
366
+ | `tot_fish_producers` | 0.0 | 286.0 | 10.3866 | 3.0 |
367
+ | `hh_agricactivity_1` | 0.0204 | 99.994 | 27.1802 | 18.2415 |
368
+ | `hh_agricactivity_2` | 0.0573 | 81.8609 | 13.5993 | 11.433 |
369
+ | `hh_agricactivity_3` | 0.1326 | 100.0098 | 30.8245 | 28.9347 |
370
+ | `hh_agricactivity_4` | 0.0217 | 97.6869 | 31.9715 | 29.5684 |
371
+ | `hh_gender_1` | 19.0595 | 100.0124 | 83.0519 | 87.1382 |
372
+ | `hh_gender_2` | 0.0692 | 80.9522 | 17.2139 | 13.0639 |
373
+ | `hh_education_1` | 0.0364 | 99.9996 | 37.3058 | 33.4 |
374
 
375
  ---
376
 
377
  ## Curation
378
 
379
+ Raw data was downloaded from HDX via the CKAN API and converted to Parquet. Column names were lowercased and standardised to snake_case. Common missing-value markers (`N/A`, `null`, `none`, `-`, `unknown`, `no data`, `#N/A`) were unified to `NaN`. 84 column(s) with >80% missing values were removed: `hh_agricactivity_888`, `hh_agricactivity_999`, `hh_gender_888`, `hh_gender_999`, `hh_education_999`, `hh_maritalstat_888`.... 3 column(s) were cast from string to numeric or datetime based on parse-success rate (>85% threshold). The dataset was split 80/20 into train and test partitions using a fixed random seed (42) and saved as Snappy-compressed Parquet.
380
 
381
  ---
382
 
383
  ## Limitations
384
 
385
+ - Data originates from Food and Agriculture Organization (FAO) of the United Nations and has not been independently validated by ESA.
386
  - Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection.
387
+ - The following columns have >20% missing values and should be treated with caution in modelling: `adm2_pcode`, `adm2_name`, `hh_education_4`, `hh_education_5`, `hh_education_888`, `hh_maritalstat_1`, `hh_maritalstat_2`, `hh_maritalstat_3`....
388
+ - This dataset spans 33 countries; geographic and methodological inconsistencies across national boundaries may affect cross-country comparability.
389
+ - Refer to the [original HDX dataset page](https://data.humdata.org/dataset/fao-diem-monitoring-system-household-surveys-aggregated-data) for the publisher's own methodology notes and caveats.
390
 
391
  ---
392
 
 
394
 
395
  ```bibtex
396
  @dataset{hdx_asia_food_security_all,
397
+ title = {FAO Data in Emergencies Monitoring System (DIEM)},
398
+ author = {Food and Agriculture Organization (FAO) of the United Nations},
399
  year = {2026},
400
+ url = {https://data.humdata.org/dataset/fao-diem-monitoring-system-household-surveys-aggregated-data},
401
  note = {Repackaged for machine learning by Electric Sheep Africa (https://huggingface.co/electricsheepafrica)}
402
  }
403
  ```