2

Estoy intentando ocupar un csv, pero me detecta unicamente una columna, el csv pertenece a este link por si alguien puede ayudarme c_: https://datos.bancomundial.org/indicador/EN.ATM.CO2E.KT?view=chart (Es el ultimo archivo del rar)


import pandas as pd 

df = pd.read_csv("EmisionesCO2.csv")

print(df.shape)
print(df.columns)
Salida: 
    (264, 1)
Index(['Country Name,Country Code,"Indicator Name","Indicator Code","1960","1961","1962","1963","1964","1965","1966","1967","1968","1969","1970","1971","1972","1973","1974","1975","1976","1977","1978","1979","1980","1981","1982","1983","1984","1985","1986","1987","1988","1989","1990","1991","1992","1993","1994","1995","1996","1997","1998","1999","2000","2001","2002","2003","2004","2005","2006","2007","2008","2009","2010","2011","2012","2013","2014","2015","2016","2017","2018","2019","2020",'], dtype='object')

1 respuesta 1

1

Si revisas las primeras filas del CSV:

Data Source","Indicadores del desarrollo mundial",

"Last Updated Date","2020-12-16",

"Country Name","Country Code","Indicator Name","Indicator Code","1960","1961","1962","1963","1964","1965","1966","1967","1968","1969","1970","1971","1972","1973","1974","1975","1976","1977","1978","1979","1980","1981","1982","1983","1984","1985","1986","1987","1988","1989","1990","1991","1992","1993","1994","1995","1996","1997","1998","1999","2000","2001","2002","2003","2004","2005","2006","2007","2008","2009","2010","2011","2012","2013","2014","2015","2016","2017","2018","2019","2020",
"Aruba","ABW","Emisiones de CO2 (kt)","EN.ATM.CO2E.KT","11092.675","11576.719","12713.489","12178.107","11840.743","10623.299","9933.903","12236.779","11378.701","14891.687","16655.514","14495.651","14055.611","15592.084","14132.618","10234.597","21862.654","11419.038","9724.884","10201.594","10498.621","9999.909","11180.683","5746.189","14348.971","16794.86","179.683","447.374","612.389","649.059","487.711","531.715","539.049","649.059","660.06","707.731","726.066","759.069","806.74","810.407","2379.883","2409.219","2438.555","2563.233","2618.238","2720.914","2717.247","2823.59","2658.575","2629.239","2508.228","2500.894","1349.456","861.745","872.746","898.415","883.747","","","","",
"Afganistán","AFG","Emisiones de CO2 (kt)","EN.ATM.CO2E.KT","414.371","491.378","689.396","707.731","839.743","1008.425","1092.766","1283.45","1224.778","942.419","1672.152","1895.839","1532.806","1639.149","1917.841","2126.86","1987.514","2390.884","2159.863","2240.537","1760.16","1983.847","2101.191","2522.896","2830.924","3509.319","3142.619","3124.284","2867.594","2775.919","2614.571","2438.555","1393.46","1345.789","1294.451","1243.113","1177.107","1096.433","1041.428","821.408","773.737","817.741","1070.764","1213.777","916.75","1327.454","1650.15","2273.54","4206.049","6769.282","8463.436","12240.446","10755.311","9050.156","8467.103","9035.488","8672.455","","","","",
"Angola","AGO","Emisiones de CO2 (kt)","EN.ATM.CO2E.KT","550.05","454.708","1180.774","1151.438","1224.778","1188.108","1554.808","993.757","1672.152","2786.92","3582.659","3410.31","4506.743","4880.777","4873.443","4415.068","3285.632","3534.988","5412.492","5504.167","5346.486","5280.48","4649.756","5115.465","5009.122","4701.094","4660.757","5815.862","5130.133","5009.122","5115.465","5089.796","5196.139","5775.525","3890.687","10975.331","10458.284","7381.671","7308.331","9156.499","9541.534","9732.218","12665.818","9064.824","18793.375","19156.408","22266.024","25151.953","25709.337","27792.193","29057.308","30586.447","34176.44","33692.396","44851.077","34583.477","34693.487","","","","",
"Albania","ALB","Emisiones de CO2 (kt)","EN.ATM.CO2E.KT","2024.184","2280.874","2464.224","2082.856","2016.85","2174.531","2552.232","2680.577","3072.946","3245.295","3744.007","4352.729","5643.513","5291.481","4345.395","4594.751","4950.45","5720.52","6494.257","7587.023","5170.47","7341.334","7308.331","7631.027","7825.378","7880.383","8056.399","7444.01","7326.666","8984.15","5515.168","4286.723","2515.562","2335.879","1925.175","2086.523","2016.85","1543.807","1752.826","2984.938","3021.608","3223.293","3751.341","4294.057","4165.712","4253.72","3898.021","3927.357","4374.731","4378.398","4598.418","5240.143","4924.781","4913.78","5489.499","4616.753","4536.079","","","","",

Se puede notar que hay 4 filas que representan títulos, los datos recién comienzan en la 5 fila. Para solucionar esto, puedes usar el parámetro skiprows para ignorar un número determinado de filas al comienzo del archivo:

df = pd.read_csv("EmisionesCO2.csv", sep=",", skiprows=4)

Tu Respuesta

By clicking “Publica tu respuesta”, you agree to our terms of service and acknowledge you have read our privacy policy.

¿No es la respuesta que buscas? Examina otras preguntas con la etiqueta o formula tu propia pregunta.