Loading...

vastorbit.VastFrame.select

VastFrame.select(columns: Annotated[str | list[str], 'STRING representing one column or a list of columns']) VastFrame

Returns a copy of the VastFrame with only the selected VastColumn.

Parameters:

columns (SQLColumns) – List of the VastColumn to select. You can also provide customized expressions.

Returns:

object with only the selected columns.

Return type:

VastFrame

Examples

For this example, we will use the Titanic dataset.

import vastorbit.datasets as vod

data = vod.load_titanic()
123
pclass
Integer
123
survived
Integer
Abc
name
Varchar(164)
Abc
sex
Varchar(20)
123
age
Double
123
sibsp
Integer
123
parch
Integer
Abc
ticket
Varchar(36)
123
fare
Double
Abc
cabin
Varchar(30)
Abc
embarked
Varchar(20)
Abc
boat
Varchar(100)
123
body
Integer
Abc
home.dest
Varchar(100)
131McCormack, Mr. Thomas Josephmale[null]003672287.75[null]Q[null][null][null]
231McCoy, Miss. Agnesfemale[null]2036722623.25[null]Q16[null][null]
331McCoy, Miss. Aliciafemale[null]2036722623.25[null]Q16[null][null]
431McCoy, Mr. Bernardmale[null]2036722623.25[null]Q16[null][null]
531McDermott, Miss. Brigdet Deliafemale[null]003309327.7875[null]Q13[null][null]
630McEvoy, Mr. Michaelmale[null]003656815.5[null]Q[null][null][null]
731McGovern, Miss. Maryfemale[null]003309317.8792[null]Q13[null][null]
831McGowan, Miss. Anna "Annie"female15.0003309238.0292[null]Q[null][null][null]
930McGowan, Miss. Katherinefemale35.00092327.75[null]Q[null][null][null]
1030McMahon, Mr. Martinmale[null]003703727.75[null]Q[null][null][null]
1130McNamee, Mr. Nealmale24.01037656616.1[null]S[null][null][null]
1230McNamee, Mrs. Neal (Eileen O'Leary)female19.01037656616.1[null]S[null]53[null]
1330McNeill, Miss. Bridgetfemale[null]003703687.75[null]Q[null][null][null]
1430Meanwell, Miss. (Marion Ogden)female[null]00SOTON/O.Q. 3920878.05[null]S[null][null][null]
1530Meek, Mrs. Thomas (Annie Louise Rowley)female[null]003430958.05[null]S[null][null][null]
1630Meo, Mr. Alfonzomale55.500A.5. 112068.05[null]S[null]201[null]
1730Mernagh, Mr. Robertmale[null]003687037.75[null]Q[null][null][null]
1831Midtsjo, Mr. Karl Albertmale21.0003455017.775[null]S15[null][null]
1930Miles, Mr. Frankmale[null]003593068.05[null]S[null][null][null]
2030Mineff, Mr. Ivanmale24.0003492337.8958[null]S[null][null][null]
2130Minkoff, Mr. Lazarmale21.0003492117.8958[null]S[null][null][null]
2230Mionoff, Mr. Stoytchomale28.0003492077.8958[null]S[null][null][null]
2330Mitkoff, Mr. Mitomale[null]003492217.8958[null]S[null][null][null]
2431Mockler, Miss. Helen Mary "Ellie"female[null]003309807.8792[null]Q16[null][null]
2530Moen, Mr. Sigurd Hansenmale25.0003481237.65F G73S[null]309[null]
2631Moor, Master. Meiermale6.00139209612.475E121S14[null][null]
2731Moor, Mrs. (Beila)female27.00139209612.475E121S14[null][null]
2830Moore, Mr. Leonard Charlesmale[null]00A4. 545108.05[null]S[null][null][null]
2931Moran, Miss. Berthafemale[null]1037111024.15[null]Q16[null][null]
3030Moran, Mr. Daniel Jmale[null]1037111024.15[null]Q[null][null][null]
3130Moran, Mr. Jamesmale[null]003308778.4583[null]Q[null][null][null]
3230Morley, Mr. Williammale34.0003645068.05[null]S[null][null][null]
3330Morrow, Mr. Thomas Rowanmale[null]003726227.75[null]Q[null][null][null]
3431Moss, Mr. Albert Johanmale[null]003129917.775[null]SB[null][null]
3531Moubarek, Master. Geriosmale[null]11266115.2458[null]CC[null][null]
3631Moubarek, Master. Halim Gonios ("William George")male[null]11266115.2458[null]CC[null][null]
3731Moubarek, Mrs. George (Omine "Amenia" Alexander)female[null]02266115.2458[null]CC[null][null]
3831Moussa, Mrs. (Mantoura Boulos)female[null]0026267.2292[null]C[null][null][null]
3930Moutal, Mr. Rahamin Haimmale[null]003747468.05[null]S[null][null][null]
4031Mullens, Miss. Katherine "Katie"female[null]00358527.7333[null]Q16[null][null]
4131Mulvihill, Miss. Bertha Efemale24.0003826537.75[null]Q15[null][null]
4230Murdlin, Mr. Josephmale[null]00A./5. 32358.05[null]S[null][null][null]
4331Murphy, Miss. Katherine "Kate"female[null]1036723015.5[null]Q16[null][null]
4431Murphy, Miss. Margaret Janefemale[null]1036723015.5[null]Q16[null][null]
4531Murphy, Miss. Norafemale[null]003656815.5[null]Q16[null][null]
4630Myhrman, Mr. Pehr Fabian Oliver Malkolmmale18.0003470787.75[null]S[null][null][null]
4730Naidenoff, Mr. Penkomale22.0003492067.8958[null]S[null][null][null]
4831Najib, Miss. Adele Kiamie "Jane"female15.00026677.225[null]CC[null][null]
4931Nakid, Miss. Maria ("Mary")female1.002265315.7417[null]CC[null][null]
5031Nakid, Mr. Sahidmale20.011265315.7417[null]CC[null][null]
5131Nakid, Mrs. Said (Waika "Mary" Mowad)female19.011265315.7417[null]CC[null][null]
5230Nancarrow, Mr. William Henrymale33.000A./5. 33388.05[null]S[null][null][null]
5330Nankoff, Mr. Minkomale[null]003492187.8958[null]S[null][null][null]
5430Nasr, Mr. Mustafamale[null]0026527.2292[null]C[null][null][null]
5530Naughton, Miss. Hannahfemale[null]003652377.75[null]Q[null][null][null]
5630Nenkoff, Mr. Christomale[null]003492347.8958[null]S[null][null][null]
5731Nicola-Yarred, Master. Eliasmale12.010265111.2417[null]CC[null][null]
5831Nicola-Yarred, Miss. Jamilafemale14.010265111.2417[null]CC[null][null]
5930Nieminen, Miss. Manta Josefinafemale29.00031012977.925[null]S[null][null][null]
6030Niklasson, Mr. Samuelmale28.0003636118.05[null]S[null][null][null]
6131Nilsson, Miss. Berta Oliviafemale18.0003470667.775[null]SD[null][null]
6231Nilsson, Miss. Helmina Josefinafemale26.0003474707.8542[null]S13[null][null]
6330Nilsson, Mr. August Ferdinandmale21.0003504107.8542[null]S[null][null][null]
6430Nirva, Mr. Iisakki Antino Aijomale41.000SOTON/O2 31012727.125[null]S[null][null]Finland Sudbury, ON
6531Niskanen, Mr. Juhamale39.000STON/O 2. 31012897.925[null]S9[null][null]
6630Nosworthy, Mr. Richard Catermale21.000A/4. 398867.8[null]S[null][null][null]
6730Novel, Mr. Mansouermale28.50026977.2292[null]C[null]181[null]
6831Nysten, Miss. Anna Sofiafemale22.0003470817.75[null]S13[null][null]
6930Nysveen, Mr. Johan Hansenmale61.0003453646.2375[null]S[null][null][null]
7030O'Brien, Mr. Thomasmale[null]1037036515.5[null]Q[null][null][null]
7130O'Brien, Mr. Timothymale[null]003309797.8292[null]Q[null][null][null]
7231O'Brien, Mrs. Thomas (Johanna "Hannah" Godfrey)female[null]1037036515.5[null]Q[null][null][null]
7330O'Connell, Mr. Patrick Dmale[null]003349127.7333[null]Q[null][null][null]
7430O'Connor, Mr. Mauricemale[null]003710607.75[null]Q[null][null][null]
7530O'Connor, Mr. Patrickmale[null]003667137.75[null]Q[null][null][null]
7630Odahl, Mr. Nils Martinmale23.00072679.225[null]S[null][null][null]
7730O'Donoghue, Ms. Bridgetfemale[null]003648567.75[null]Q[null][null][null]
7831O'Driscoll, Miss. Bridgetfemale[null]00143117.75[null]QD[null][null]
7931O'Dwyer, Miss. Ellen "Nellie"female[null]003309597.8792[null]Q[null][null][null]
8031Ohman, Miss. Velinfemale22.0003470857.775[null]SC[null][null]
8131O'Keefe, Mr. Patrickmale[null]003684027.75[null]QB[null][null]
8231O'Leary, Miss. Hanora "Norah"female[null]003309197.8292[null]Q13[null][null]
8331Olsen, Master. Artur Karlmale9.001C 173683.1708[null]S13[null][null]
8430Olsen, Mr. Henry Margidomale28.000C 400122.525[null]S[null]173[null]
8530Olsen, Mr. Karl Siegwart Andreasmale42.00145798.4042[null]S[null][null][null]
8630Olsen, Mr. Ole Martinmale[null]00Fa 2653027.3125[null]S[null][null][null]
8730Olsson, Miss. Elinafemale31.0003504077.8542[null]S[null][null][null]
8830Olsson, Mr. Nils Johan Goranssonmale28.0003474647.8542[null]S[null][null][null]
8931Olsson, Mr. Oscar Wilhelmmale32.0003470797.775[null]SA[null][null]
9030Olsvigen, Mr. Thor Andersonmale20.00065639.225[null]S[null]89Oslo, Norway Cameron, WI
9130Oreskovic, Miss. Jelkafemale23.0003150858.6625[null]S[null][null][null]
9230Oreskovic, Miss. Marijafemale20.0003150968.6625[null]S[null][null][null]
9330Oreskovic, Mr. Lukamale20.0003150948.6625[null]S[null][null][null]
9430Osen, Mr. Olaf Elonmale16.00075349.2167[null]S[null][null][null]
9531Osman, Mrs. Marafemale31.0003492448.6833[null]S[null][null][null]
9630O'Sullivan, Miss. Bridget Maryfemale[null]003309097.6292[null]Q[null][null][null]
9730Palsson, Master. Gosta Leonardmale2.03134990921.075[null]S[null]4[null]
9830Palsson, Master. Paul Folkemale6.03134990921.075[null]S[null][null][null]
9930Palsson, Miss. Stina Violafemale3.03134990921.075[null]S[null][null][null]
10030Palsson, Miss. Torborg Danirafemale8.03134990921.075[null]S[null][null][null]
Rows: 1-100 | Columns: 14

Note

vastorbit offers a wide range of sample datasets that are ideal for training and testing purposes. You can explore the full list of available datasets in the Datasets, which provides detailed information on each dataset and how to use them effectively. These datasets are invaluable resources for honing your data analysis and machine learning skills within the vastorbit environment.

In order to get the custom rows we can use the iloc function. In order to get 3 rows starting from the 10th row, we can use the following:

data.select(["pclass", "age"])
123
pclass
Integer
123
age
Double
13[null]
23[null]
33[null]
43[null]
53[null]
63[null]
73[null]
8315.0
9335.0
103[null]
11324.0
12319.0
133[null]
143[null]
153[null]
16355.5
173[null]
18321.0
193[null]
20324.0
21321.0
22328.0
233[null]
243[null]
25325.0
2636.0
27327.0
283[null]
293[null]
303[null]
313[null]
32334.0
333[null]
343[null]
353[null]
363[null]
373[null]
383[null]
393[null]
403[null]
41324.0
423[null]
433[null]
443[null]
453[null]
46318.0
47322.0
48315.0
4931.0
50320.0
51319.0
52333.0
533[null]
543[null]
553[null]
563[null]
57312.0
58314.0
59329.0
60328.0
61318.0
62326.0
63321.0
64341.0
65339.0
66321.0
67328.5
68322.0
69361.0
703[null]
713[null]
723[null]
733[null]
743[null]
753[null]
76323.0
773[null]
783[null]
793[null]
80322.0
813[null]
823[null]
8339.0
84328.0
85342.0
863[null]
87331.0
88328.0
89332.0
90320.0
91323.0
92320.0
93320.0
94316.0
95331.0
963[null]
9732.0
9836.0
9933.0
10038.0
Rows: 1-100 | Columns: 2

Note

The same can be achieved by using square brackets directly.

data[["pclass", "age"]]

See also

VastFrame.iloc() : Get custom rows from a VastFrame.