favs <- read.table("favorites.txt", sep=",", header=TRUE)

# perguntando o arquivo a ser aberto
favs <- read.table(file.choose(), sep=",", header=TRUE) 

# de outra forma (abreviada)
favs <- read.csv("favorites.txt")

#mostrando primeiras linhas do quadro
head(favs)

#lidando com tipos de dados
class(favs)
class(favs$flavor)
class(favs$number)

favs$flavor


head(mtcars) # cabeçalho dos dados 'mtcars
unique(mtcars$carb) # lista de valores distintos
table(mtcars$carb) #contagem de valores simples

cut(airquality$Temp, 9)
table(cut(airquality$Temp, 9))

teste <- table(cut(airquality$Temp, 9))

sals = c(41.000 , 40.300 , 38.000 , 500.000 , 41.500 , 37.000 , 39.600 , 42.000 , 39.900 , 39.500)
median(sals) # média
mean(sals) #mediana

summary(sals)

Este artigo foi útil ?
SimNão

9 Replies to “Base Carregamento de Dados em R”

  1. c54111 disse:

    Curious about c54111… What’s the deal? Going to give it a whirl. Anything interesting happen for you there? Check it out for yourself: c54111

  2. mig8app disse:

    Just downloaded the mig8app! Seems pretty smooth and easy to use on my phone. Handy for placing bets on the go. Wish they had more live streaming options, but overall, a pretty decent app for mobile betting.

  3. kingfunapk disse:

    Kingfunapk is my new jam. The app is super easy to use and has all my favorite games. If you are looking for a quality gaming app, give kingfunapk a download!

  4. casinuucasino disse:

    Casinuucasino, nice! Found some of my favorite games here. The signup process was easy, and I’ve had a smooth overall experience. Might stick around for a while. Worth checking out casinuucasino if you are a regular casino player.

  5. good88moe disse:

    Thinking of trying out good88moe. Anyone had any decent wins there? Keen to hear your experiences before I dive in. Learn more at: good88moe

  6. ok365app disse:

    Yo, ok365app is pretty slick! Downloaded it last week and already hooked. Easy to use and the games are actually fun. Check it out ok365app

  7. jljl77 disse:

    Great overview of R’s data handling essentials! These fundamentals form the backbone of efficient analysis workflows. For professionals juggling multiple data streams daily, mastering these basics saves countless hours. Similar to how jljl77 download platforms optimize user experience, clean data management transforms raw information into actionable insights efficiently.

  8. taya365 disse:

    The flow feels solid; that layered experience is key for engagement. Remember how seamless UI drives retention. Check out taya 365 app casino for design parallels. Keep optimizing those touchpoints!

  9. bunnygaming disse:

    Excellent foundational guide on data structures. The ability to clean and categorize data, as shown with table() and cut(), is critical. This analytical rigor applies everywhere, from market trends to optimizing user engagement models, like those seen when exploring a bunnygaming slot download. Keep mastering these tools!

Deixe um comentário

O seu endereço de e-mail não será publicado. Campos obrigatórios são marcados com *

Close Search Window