Datasets:
example_id string | subdataset string | variant string | language string | modality string | chart_type string | chart_id string | category string | question_type string | question string | answer string | answer_numeric float64 | answer_type string | image_path string | text_description string |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
chartbasic_000_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_000 | cities | lookup | Какое значение для категории «Москва»? | 136 | 136 | numeric | images/chartbasic_000_ru.png | null |
chartbasic_000_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_000 | cities | lookup | Какое значение для категории «Москва»? | 136 | 136 | numeric | null | Продажи по городам.
Данные:
- Москва: 136
- Казань: 243
- Екатеринбург: 374
- Ростов-на-Дону: 317
- Новосибирск: 107 |
chartbasic_000_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_000 | cities | lookup | What is the value for 'Moscow'? | 136 | 136 | numeric | images/chartbasic_000_en.png | null |
chartbasic_000_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_000 | cities | lookup | What is the value for 'Moscow'? | 136 | 136 | numeric | null | Sales by City.
Data:
- Moscow: 136
- Kazan: 243
- Yekaterinburg: 374
- Rostov-on-Don: 317
- Novosibirsk: 107 |
chartbasic_000_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_000 | cities | max | Какая категория имеет наибольшее значение? | Екатеринбург | null | categorical | images/chartbasic_000_ru.png | null |
chartbasic_000_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_000 | cities | max | Какая категория имеет наибольшее значение? | Екатеринбург | null | categorical | null | Продажи по городам.
Данные:
- Москва: 136
- Казань: 243
- Екатеринбург: 374
- Ростов-на-Дону: 317
- Новосибирск: 107 |
chartbasic_000_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_000 | cities | max | Which category has the highest value? | Yekaterinburg | null | categorical | images/chartbasic_000_en.png | null |
chartbasic_000_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_000 | cities | max | Which category has the highest value? | Yekaterinburg | null | categorical | null | Sales by City.
Data:
- Moscow: 136
- Kazan: 243
- Yekaterinburg: 374
- Rostov-on-Don: 317
- Novosibirsk: 107 |
chartbasic_000_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_000 | cities | min | Какая категория имеет наименьшее значение? | Новосибирск | null | categorical | images/chartbasic_000_ru.png | null |
chartbasic_000_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_000 | cities | min | Какая категория имеет наименьшее значение? | Новосибирск | null | categorical | null | Продажи по городам.
Данные:
- Москва: 136
- Казань: 243
- Екатеринбург: 374
- Ростов-на-Дону: 317
- Новосибирск: 107 |
chartbasic_000_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_000 | cities | min | Which category has the lowest value? | Novosibirsk | null | categorical | images/chartbasic_000_en.png | null |
chartbasic_000_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_000 | cities | min | Which category has the lowest value? | Novosibirsk | null | categorical | null | Sales by City.
Data:
- Moscow: 136
- Kazan: 243
- Yekaterinburg: 374
- Rostov-on-Don: 317
- Novosibirsk: 107 |
chartbasic_001_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_001 | quarters | lookup | Какое значение для категории «3 квартал»? | 259 | 259 | numeric | images/chartbasic_001_ru.png | null |
chartbasic_001_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_001 | quarters | lookup | Какое значение для категории «3 квартал»? | 259 | 259 | numeric | null | Выручка по кварталам.
Данные:
- 1 квартал: 580
- 2 квартал: 336
- 3 квартал: 259
- 4 квартал: 869 |
chartbasic_001_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_001 | quarters | lookup | What is the value for 'Q3'? | 259 | 259 | numeric | images/chartbasic_001_en.png | null |
chartbasic_001_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_001 | quarters | lookup | What is the value for 'Q3'? | 259 | 259 | numeric | null | Revenue by Quarter.
Data:
- Q1: 580
- Q2: 336
- Q3: 259
- Q4: 869 |
chartbasic_001_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_001 | quarters | max | Какая категория имеет наибольшее значение? | 4 квартал | null | categorical | images/chartbasic_001_ru.png | null |
chartbasic_001_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_001 | quarters | max | Какая категория имеет наибольшее значение? | 4 квартал | null | categorical | null | Выручка по кварталам.
Данные:
- 1 квартал: 580
- 2 квартал: 336
- 3 квартал: 259
- 4 квартал: 869 |
chartbasic_001_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_001 | quarters | max | Which category has the highest value? | Q4 | null | categorical | images/chartbasic_001_en.png | null |
chartbasic_001_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_001 | quarters | max | Which category has the highest value? | Q4 | null | categorical | null | Revenue by Quarter.
Data:
- Q1: 580
- Q2: 336
- Q3: 259
- Q4: 869 |
chartbasic_001_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_001 | quarters | min | Какая категория имеет наименьшее значение? | 3 квартал | null | categorical | images/chartbasic_001_ru.png | null |
chartbasic_001_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_001 | quarters | min | Какая категория имеет наименьшее значение? | 3 квартал | null | categorical | null | Выручка по кварталам.
Данные:
- 1 квартал: 580
- 2 квартал: 336
- 3 квартал: 259
- 4 квартал: 869 |
chartbasic_001_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_001 | quarters | min | Which category has the lowest value? | Q3 | null | categorical | images/chartbasic_001_en.png | null |
chartbasic_001_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_001 | quarters | min | Which category has the lowest value? | Q3 | null | categorical | null | Revenue by Quarter.
Data:
- Q1: 580
- Q2: 336
- Q3: 259
- Q4: 869 |
chartbasic_002_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_002 | months | lookup | Какое значение для категории «Январь»? | 270 | 270 | numeric | images/chartbasic_002_ru.png | null |
chartbasic_002_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_002 | months | lookup | Какое значение для категории «Январь»? | 270 | 270 | numeric | null | Продажи по месяцам.
Данные:
- Январь: 270
- Февраль: 128
- Март: 216
- Апрель: 84
- Май: 174 |
chartbasic_002_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_002 | months | lookup | What is the value for 'January'? | 270 | 270 | numeric | images/chartbasic_002_en.png | null |
chartbasic_002_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_002 | months | lookup | What is the value for 'January'? | 270 | 270 | numeric | null | Sales by Month.
Data:
- January: 270
- February: 128
- March: 216
- April: 84
- May: 174 |
chartbasic_002_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_002 | months | max | Какая категория имеет наибольшее значение? | Январь | null | categorical | images/chartbasic_002_ru.png | null |
chartbasic_002_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_002 | months | max | Какая категория имеет наибольшее значение? | Январь | null | categorical | null | Продажи по месяцам.
Данные:
- Январь: 270
- Февраль: 128
- Март: 216
- Апрель: 84
- Май: 174 |
chartbasic_002_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_002 | months | max | Which category has the highest value? | January | null | categorical | images/chartbasic_002_en.png | null |
chartbasic_002_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_002 | months | max | Which category has the highest value? | January | null | categorical | null | Sales by Month.
Data:
- January: 270
- February: 128
- March: 216
- April: 84
- May: 174 |
chartbasic_002_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_002 | months | min | Какая категория имеет наименьшее значение? | Апрель | null | categorical | images/chartbasic_002_ru.png | null |
chartbasic_002_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_002 | months | min | Какая категория имеет наименьшее значение? | Апрель | null | categorical | null | Продажи по месяцам.
Данные:
- Январь: 270
- Февраль: 128
- Март: 216
- Апрель: 84
- Май: 174 |
chartbasic_002_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_002 | months | min | Which category has the lowest value? | April | null | categorical | images/chartbasic_002_en.png | null |
chartbasic_002_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_002 | months | min | Which category has the lowest value? | April | null | categorical | null | Sales by Month.
Data:
- January: 270
- February: 128
- March: 216
- April: 84
- May: 174 |
chartbasic_003_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_003 | products | lookup | Какое значение для категории «Колонки»? | 325 | 325 | numeric | images/chartbasic_003_ru.png | null |
chartbasic_003_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_003 | products | lookup | Какое значение для категории «Колонки»? | 325 | 325 | numeric | null | Продажи по категориям продуктов.
Данные:
- Колонки: 325
- Наушники: 37
- Ноутбуки: 471
- Камеры: 147
- Смартфоны: 392
- Мониторы: 210 |
chartbasic_003_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_003 | products | lookup | What is the value for 'Speakers'? | 325 | 325 | numeric | images/chartbasic_003_en.png | null |
chartbasic_003_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_003 | products | lookup | What is the value for 'Speakers'? | 325 | 325 | numeric | null | Sales by Product Category.
Data:
- Speakers: 325
- Headphones: 37
- Laptops: 471
- Cameras: 147
- Smartphones: 392
- Monitors: 210 |
chartbasic_003_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_003 | products | max | Какая категория имеет наибольшее значение? | Ноутбуки | null | categorical | images/chartbasic_003_ru.png | null |
chartbasic_003_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_003 | products | max | Какая категория имеет наибольшее значение? | Ноутбуки | null | categorical | null | Продажи по категориям продуктов.
Данные:
- Колонки: 325
- Наушники: 37
- Ноутбуки: 471
- Камеры: 147
- Смартфоны: 392
- Мониторы: 210 |
chartbasic_003_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_003 | products | max | Which category has the highest value? | Laptops | null | categorical | images/chartbasic_003_en.png | null |
chartbasic_003_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_003 | products | max | Which category has the highest value? | Laptops | null | categorical | null | Sales by Product Category.
Data:
- Speakers: 325
- Headphones: 37
- Laptops: 471
- Cameras: 147
- Smartphones: 392
- Monitors: 210 |
chartbasic_003_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_003 | products | min | Какая категория имеет наименьшее значение? | Наушники | null | categorical | images/chartbasic_003_ru.png | null |
chartbasic_003_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_003 | products | min | Какая категория имеет наименьшее значение? | Наушники | null | categorical | null | Продажи по категориям продуктов.
Данные:
- Колонки: 325
- Наушники: 37
- Ноутбуки: 471
- Камеры: 147
- Смартфоны: 392
- Мониторы: 210 |
chartbasic_003_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_003 | products | min | Which category has the lowest value? | Headphones | null | categorical | images/chartbasic_003_en.png | null |
chartbasic_003_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_003 | products | min | Which category has the lowest value? | Headphones | null | categorical | null | Sales by Product Category.
Data:
- Speakers: 325
- Headphones: 37
- Laptops: 471
- Cameras: 147
- Smartphones: 392
- Monitors: 210 |
chartbasic_004_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_004 | cities | lookup | Какое значение для категории «Казань»? | 293 | 293 | numeric | images/chartbasic_004_ru.png | null |
chartbasic_004_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_004 | cities | lookup | Какое значение для категории «Казань»? | 293 | 293 | numeric | null | Продажи по городам.
Данные:
- Казань: 293
- Санкт-Петербург: 159
- Екатеринбург: 77
- Уфа: 350
- Челябинск: 240 |
chartbasic_004_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_004 | cities | lookup | What is the value for 'Kazan'? | 293 | 293 | numeric | images/chartbasic_004_en.png | null |
chartbasic_004_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_004 | cities | lookup | What is the value for 'Kazan'? | 293 | 293 | numeric | null | Sales by City.
Data:
- Kazan: 293
- Saint Petersburg: 159
- Yekaterinburg: 77
- Ufa: 350
- Chelyabinsk: 240 |
chartbasic_004_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_004 | cities | max | Какая категория имеет наибольшее значение? | Уфа | null | categorical | images/chartbasic_004_ru.png | null |
chartbasic_004_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_004 | cities | max | Какая категория имеет наибольшее значение? | Уфа | null | categorical | null | Продажи по городам.
Данные:
- Казань: 293
- Санкт-Петербург: 159
- Екатеринбург: 77
- Уфа: 350
- Челябинск: 240 |
chartbasic_004_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_004 | cities | max | Which category has the highest value? | Ufa | null | categorical | images/chartbasic_004_en.png | null |
chartbasic_004_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_004 | cities | max | Which category has the highest value? | Ufa | null | categorical | null | Sales by City.
Data:
- Kazan: 293
- Saint Petersburg: 159
- Yekaterinburg: 77
- Ufa: 350
- Chelyabinsk: 240 |
chartbasic_004_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_004 | cities | min | Какая категория имеет наименьшее значение? | Екатеринбург | null | categorical | images/chartbasic_004_ru.png | null |
chartbasic_004_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_004 | cities | min | Какая категория имеет наименьшее значение? | Екатеринбург | null | categorical | null | Продажи по городам.
Данные:
- Казань: 293
- Санкт-Петербург: 159
- Екатеринбург: 77
- Уфа: 350
- Челябинск: 240 |
chartbasic_004_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_004 | cities | min | Which category has the lowest value? | Yekaterinburg | null | categorical | images/chartbasic_004_en.png | null |
chartbasic_004_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_004 | cities | min | Which category has the lowest value? | Yekaterinburg | null | categorical | null | Sales by City.
Data:
- Kazan: 293
- Saint Petersburg: 159
- Yekaterinburg: 77
- Ufa: 350
- Chelyabinsk: 240 |
chartbasic_005_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_005 | departments | lookup | Какое значение для категории «ИТ»? | 55 | 55 | numeric | images/chartbasic_005_ru.png | null |
chartbasic_005_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_005 | departments | lookup | Какое значение для категории «ИТ»? | 55 | 55 | numeric | null | Численность по отделам.
Данные:
- Поддержка: 32
- Финансы: 77
- ИТ: 55
- R&D: 11
- Операции: 45 |
chartbasic_005_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_005 | departments | lookup | What is the value for 'IT'? | 55 | 55 | numeric | images/chartbasic_005_en.png | null |
chartbasic_005_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_005 | departments | lookup | What is the value for 'IT'? | 55 | 55 | numeric | null | Headcount by Department.
Data:
- Support: 32
- Finance: 77
- IT: 55
- R&D: 11
- Operations: 45 |
chartbasic_005_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_005 | departments | max | Какая категория имеет наибольшее значение? | Финансы | null | categorical | images/chartbasic_005_ru.png | null |
chartbasic_005_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_005 | departments | max | Какая категория имеет наибольшее значение? | Финансы | null | categorical | null | Численность по отделам.
Данные:
- Поддержка: 32
- Финансы: 77
- ИТ: 55
- R&D: 11
- Операции: 45 |
chartbasic_005_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_005 | departments | max | Which category has the highest value? | Finance | null | categorical | images/chartbasic_005_en.png | null |
chartbasic_005_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_005 | departments | max | Which category has the highest value? | Finance | null | categorical | null | Headcount by Department.
Data:
- Support: 32
- Finance: 77
- IT: 55
- R&D: 11
- Operations: 45 |
chartbasic_005_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_005 | departments | min | Какая категория имеет наименьшее значение? | R&D | null | categorical | images/chartbasic_005_ru.png | null |
chartbasic_005_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_005 | departments | min | Какая категория имеет наименьшее значение? | R&D | null | categorical | null | Численность по отделам.
Данные:
- Поддержка: 32
- Финансы: 77
- ИТ: 55
- R&D: 11
- Операции: 45 |
chartbasic_005_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_005 | departments | min | Which category has the lowest value? | R&D | null | categorical | images/chartbasic_005_en.png | null |
chartbasic_005_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_005 | departments | min | Which category has the lowest value? | R&D | null | categorical | null | Headcount by Department.
Data:
- Support: 32
- Finance: 77
- IT: 55
- R&D: 11
- Operations: 45 |
chartbasic_006_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_006 | regions | lookup | Какое значение для категории «Урал»? | 249 | 249 | numeric | images/chartbasic_006_ru.png | null |
chartbasic_006_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_006 | regions | lookup | Какое значение для категории «Урал»? | 249 | 249 | numeric | null | Продажи по регионам.
Данные:
- Юг: 158
- Запад: 425
- Сибирь: 361
- Северо-Запад: 544
- Урал: 249 |
chartbasic_006_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_006 | regions | lookup | What is the value for 'Urals'? | 249 | 249 | numeric | images/chartbasic_006_en.png | null |
chartbasic_006_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_006 | regions | lookup | What is the value for 'Urals'? | 249 | 249 | numeric | null | Sales by Region.
Data:
- South: 158
- West: 425
- Siberia: 361
- Northwest: 544
- Urals: 249 |
chartbasic_006_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_006 | regions | max | Какая категория имеет наибольшее значение? | Северо-Запад | null | categorical | images/chartbasic_006_ru.png | null |
chartbasic_006_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_006 | regions | max | Какая категория имеет наибольшее значение? | Северо-Запад | null | categorical | null | Продажи по регионам.
Данные:
- Юг: 158
- Запад: 425
- Сибирь: 361
- Северо-Запад: 544
- Урал: 249 |
chartbasic_006_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_006 | regions | max | Which category has the highest value? | Northwest | null | categorical | images/chartbasic_006_en.png | null |
chartbasic_006_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_006 | regions | max | Which category has the highest value? | Northwest | null | categorical | null | Sales by Region.
Data:
- South: 158
- West: 425
- Siberia: 361
- Northwest: 544
- Urals: 249 |
chartbasic_006_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_006 | regions | min | Какая категория имеет наименьшее значение? | Юг | null | categorical | images/chartbasic_006_ru.png | null |
chartbasic_006_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_006 | regions | min | Какая категория имеет наименьшее значение? | Юг | null | categorical | null | Продажи по регионам.
Данные:
- Юг: 158
- Запад: 425
- Сибирь: 361
- Северо-Запад: 544
- Урал: 249 |
chartbasic_006_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_006 | regions | min | Which category has the lowest value? | South | null | categorical | images/chartbasic_006_en.png | null |
chartbasic_006_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_006 | regions | min | Which category has the lowest value? | South | null | categorical | null | Sales by Region.
Data:
- South: 158
- West: 425
- Siberia: 361
- Northwest: 544
- Urals: 249 |
chartbasic_007_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_007 | regions | lookup | Какое значение для категории «Юго-Запад»? | 426 | 426 | numeric | images/chartbasic_007_ru.png | null |
chartbasic_007_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_007 | regions | lookup | Какое значение для категории «Юго-Запад»? | 426 | 426 | numeric | null | Продажи по регионам.
Данные:
- Северо-Запад: 531
- Запад: 317
- Восток: 205
- Юго-Восток: 106
- Юго-Запад: 426 |
chartbasic_007_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_007 | regions | lookup | What is the value for 'Southwest'? | 426 | 426 | numeric | images/chartbasic_007_en.png | null |
chartbasic_007_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_007 | regions | lookup | What is the value for 'Southwest'? | 426 | 426 | numeric | null | Sales by Region.
Data:
- Northwest: 531
- West: 317
- East: 205
- Southeast: 106
- Southwest: 426 |
chartbasic_007_q2_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_007 | regions | max | Какая категория имеет наибольшее значение? | Северо-Запад | null | categorical | images/chartbasic_007_ru.png | null |
chartbasic_007_q2_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_007 | regions | max | Какая категория имеет наибольшее значение? | Северо-Запад | null | categorical | null | Продажи по регионам.
Данные:
- Северо-Запад: 531
- Запад: 317
- Восток: 205
- Юго-Восток: 106
- Юго-Запад: 426 |
chartbasic_007_q2_en_image | ChartBasic | en_image | en | image | bar | chartbasic_007 | regions | max | Which category has the highest value? | Northwest | null | categorical | images/chartbasic_007_en.png | null |
chartbasic_007_q2_en_text | ChartBasic | en_text | en | text | bar | chartbasic_007 | regions | max | Which category has the highest value? | Northwest | null | categorical | null | Sales by Region.
Data:
- Northwest: 531
- West: 317
- East: 205
- Southeast: 106
- Southwest: 426 |
chartbasic_007_q3_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_007 | regions | min | Какая категория имеет наименьшее значение? | Юго-Восток | null | categorical | images/chartbasic_007_ru.png | null |
chartbasic_007_q3_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_007 | regions | min | Какая категория имеет наименьшее значение? | Юго-Восток | null | categorical | null | Продажи по регионам.
Данные:
- Северо-Запад: 531
- Запад: 317
- Восток: 205
- Юго-Восток: 106
- Юго-Запад: 426 |
chartbasic_007_q3_en_image | ChartBasic | en_image | en | image | bar | chartbasic_007 | regions | min | Which category has the lowest value? | Southeast | null | categorical | images/chartbasic_007_en.png | null |
chartbasic_007_q3_en_text | ChartBasic | en_text | en | text | bar | chartbasic_007 | regions | min | Which category has the lowest value? | Southeast | null | categorical | null | Sales by Region.
Data:
- Northwest: 531
- West: 317
- East: 205
- Southeast: 106
- Southwest: 426 |
chartbasic_008_q1_ru_image | ChartBasic | ru_image | ru | image | bar | chartbasic_008 | regions | lookup | Какое значение для категории «Центр»? | 462 | 462 | numeric | images/chartbasic_008_ru.png | null |
chartbasic_008_q1_ru_text | ChartBasic | ru_text | ru | text | bar | chartbasic_008 | regions | lookup | Какое значение для категории «Центр»? | 462 | 462 | numeric | null | Продажи по регионам.
Данные:
- Юго-Восток: 531
- Север: 213
- Юг: 340
- Поволжье: 138
- Центр: 462 |
chartbasic_008_q1_en_image | ChartBasic | en_image | en | image | bar | chartbasic_008 | regions | lookup | What is the value for 'Central'? | 462 | 462 | numeric | images/chartbasic_008_en.png | null |
chartbasic_008_q1_en_text | ChartBasic | en_text | en | text | bar | chartbasic_008 | regions | lookup | What is the value for 'Central'? | 462 | 462 | numeric | null | Sales by Region.
Data:
- Southeast: 531
- North: 213
- South: 340
- Volga: 138
- Central: 462 |
RuChartQA
A Russian-language chart question answering benchmark for evaluating Vision-Language Models, with both synthetic and real-world evaluation sets.
Dataset summary
| Split | Examples | Charts | Source |
|---|---|---|---|
| Synthetic ChartBasic | 360 | 90 (×4 variants) | Generated |
| Synthetic ChartReasoning | 480 | 120 (×4 variants) | Generated |
| Synthetic ChartPerception | 360 | 90 (×4 variants) | Generated |
| ChartReal | 242 QA | 96 charts | Rosstat, Bank of Russia (PDF) |
| Total | 1442 QA | 396 unique charts |
The synthetic split has 4 variants per chart: ru_image, en_image, ru_text (text description instead of image), en_text — enabling controlled language and modality ablations. ChartReal is ru_image only.
Why this benchmark
Most chart-QA benchmarks (ChartQA, PlotQA, FigureQA) are English-only. Existing Russian-language chart evaluation has been limited to translated subsets. This benchmark addresses two gaps:
- Language coverage. Native Russian questions, Russian-language axis labels, captions, and currencies (₽).
- Real-world distribution shift. Synthetic-only benchmarks systematically overestimate VLM performance on real-world graphs from government statistics and central bank publications. Our analysis (see
results/leaderboard.csvand the [accompanying paper]) shows performance gaps of +11 to +41 percentage points between synthetic and real-world splits across three modern VLMs.
Loading
from datasets import load_dataset
# Real-world split (the one with the bigger story)
chartreal = load_dataset("romath/RuChartQA", "chartreal")
# Synthetic splits
chartbasic = load_dataset("romath/RuChartQA", "chartbasic")
chartreasoning = load_dataset("romath/RuChartQA", "chartreasoning")
chartperception = load_dataset("romath/RuChartQA", "chartperception")
Schema
Each row has:
| Field | Type | Description |
|---|---|---|
example_id |
string | Unique identifier (e.g. chartreal_007_q2_ru_image) |
subdataset |
string | ChartBasic, ChartReasoning, ChartPerception, or ChartReal |
variant |
string | ru_image, en_image, ru_text, en_text |
language |
string | ru or en |
modality |
string | image or text |
chart_type |
string | bar, line, mixed, pie |
chart_id |
string | Chart identifier (multiple QA may share one chart) |
question_type |
string | lookup, comparison, min, max, difference, conditional |
question |
string | Natural-language question |
answer |
string | Gold answer |
answer_numeric |
float | null | Numeric form if applicable (for tolerance scoring) |
answer_type |
string | numeric or categorical |
image_path |
string | null | Relative path to PNG (for image variants) |
text_description |
string | null | Text description of the chart (for text variants) |
Evaluation
We provide a normalizer (eval/normalize.py) that handles:
- Numeric tolerance (5%, the ChartQA standard) with a year-as-numeric exception requiring exact match (1900–2100)
- Bidirectional substring matching for categorical answers (
gold ⊆ predorpred ⊆ gold), disabled when gold contains compound markers (и,or,,) - Lower/strip/punctuation normalization
Minimal example:
python3 eval/eval_example.py predictions.jsonl chartreal/data.jsonl
A prediction file is JSONL with {"example_id": ..., "prediction_raw": "..."} per line.
Baselines
Predictions on ChartReal from four systems are included in baselines/:
| System | ChartReal Accuracy | Synthetic ru_image |
|---|---|---|
| Qwen3-VL 32B Instruct | 75.2% | 86.3% |
| Gemini 2.5 Flash | 71.1% | 92.7% |
| Nemotron Nano 12B v2 VL | 45.9% | 86.7% |
| OCR + Llama 3.3 70B (text-only baseline) | 34.7% | n/a |
All gaps between systems on ChartReal are statistically significant (95% bootstrap CI) except Qwen vs Gemini (Δ=+4.1pp, CI [−1.2, +9.5], p=0.16). See results/leaderboard.csv.
Construction
Synthetic
Generated from category templates (cities, products, demographics, etc.) with controlled distributions over chart types (bar) and question types. Each chart was rendered in Russian and English; for each language, both an image and a text-description variant exist. This 4-way structure allows clean ablations of language and modality effects.
ChartReal
Charts were extracted from public PDF reports of:
- Rosstat (Russian Federal State Statistics Service) — annual and monthly statistical bulletins
- Bank of Russia (CBR) — financial stability reports, monetary policy commentary
Each chart received 1–4 questions covering different reasoning types. Charts span four types (bar, line, mixed, pie) with realistic noise: small fonts, dense legends, multi-axis scales, and stylistic conventions specific to Russian government publications.
Licenses
This dataset uses mixed licensing:
- Code (
eval/normalize.py,eval/eval_example.py): Apache 2.0 - Synthetic QA + images (
synthetic/): CC-BY 4.0 — author's original work - ChartReal QA annotations (
chartreal/data.jsonl): CC-BY 4.0 — author's original annotations - ChartReal images (
chartreal/images/): research use only, original copyright preserved. These are derivative works (PNG renderings of pages from public-domain government PDFs). Original publishers (Rosstat, Bank of Russia) retain copyright on the visual material. Re-use beyond academic research may require permission from the original publishers.
By using the chartreal/images/ portion, you agree to:
- Use it only for academic / non-commercial research
- Cite both this dataset and the original publisher
- Not redistribute the images independently of the QA annotations
Citation
@dataset{ruchartqa_2026,
title = {RuChartQA: A Russian-Language Chart Question Answering Benchmark with Synthetic and Real-World Splits},
author = {Roman <last name>},
year = {2026},
url = {https://huggingface.co/datasets/romath/RuChartQA},
note = {HSE Bachelor's thesis}
}
Limitations
- ChartReal is image-only. A
text_descriptionvariant for real-world charts is not provided — automatic transcription of complex line/mixed charts to faithful text without losing information turned out to be infeasible in practice. - Bar-bias in synthetic. All synthetic charts are bar-type. Comparison fairness across chart types should use the bar-only subset of ChartReal (n=67) — see
results/leaderboard.csv. - Answer normalizer judgement calls. A small number of answers (≤2pp of total) are influenced by language-drift conventions: yes/no in English vs Russian, Roman vs Cyrillic month numerals. We chose conservative scoring (mismatch counted as wrong); reasonable alternatives exist.
Contact
Questions, errata, or contributions: [your email or GitHub username].
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