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As I had the same problem recently in R, I am attaching a link to a very useful website. This is a new multidplyr package, which enables parallel processing in R. It definitely works in Windows 10. :)

http://blog.aicry.com/multidplyr-dplyr-meets-parallel-processing/index.htmlhttp://www.business-science.io/code-tools/2016/12/18/multidplyr.html

To help you with your code this would be the solution I would propose (did not test, but should work as I used it on another example)

#Install the packages
install.packages("devtools")
devtools::install_github("hadley/multidplyr")
require(multidplyr)
library(parallel)
cl <- detectCores()
cluster <- create_cluster(cores = cl)
cluster %>%
    # Assign libraries
    cluster_library("igraph") %>%
    cluster_library("tidyverse") %>%
    cluster_library("magrittr") %>%
    cluster_library("dplyr") %>%
    cluster_library("RColorBrewer") %>%
    # Assign values (use this to load functions or data to each core)
    cluster_assign_value("anyfunction", anyfunction)

result <- clusterMap(cluster, function1, int1=1:8, int2=c(1, rep(0, 7)),
            MoreArgs=list(df1=df1, df2=df2, char1="someString"))

As I had the same problem recently in R, I am attaching a link to a very useful website. This is a new multidplyr package, which enables parallel processing in R. It definitely works in Windows 10. :)

http://blog.aicry.com/multidplyr-dplyr-meets-parallel-processing/index.html

To help you with your code this would be the solution I would propose (did not test, but should work as I used it on another example)

#Install the packages
install.packages("devtools")
devtools::install_github("hadley/multidplyr")
require(multidplyr)
library(parallel)
cl <- detectCores()
cluster <- create_cluster(cores = cl)
cluster %>%
    # Assign libraries
    cluster_library("igraph") %>%
    cluster_library("tidyverse") %>%
    cluster_library("magrittr") %>%
    cluster_library("dplyr") %>%
    cluster_library("RColorBrewer") %>%
    # Assign values (use this to load functions or data to each core)
    cluster_assign_value("anyfunction", anyfunction)

result <- clusterMap(cluster, function1, int1=1:8, int2=c(1, rep(0, 7)),
            MoreArgs=list(df1=df1, df2=df2, char1="someString"))

As I had the same problem recently in R, I am attaching a link to a very useful website. This is a new multidplyr package, which enables parallel processing in R. It definitely works in Windows 10. :)

http://www.business-science.io/code-tools/2016/12/18/multidplyr.html

To help you with your code this would be the solution I would propose (did not test, but should work as I used it on another example)

#Install the packages
install.packages("devtools")
devtools::install_github("hadley/multidplyr")
require(multidplyr)
library(parallel)
cl <- detectCores()
cluster <- create_cluster(cores = cl)
cluster %>%
    # Assign libraries
    cluster_library("igraph") %>%
    cluster_library("tidyverse") %>%
    cluster_library("magrittr") %>%
    cluster_library("dplyr") %>%
    cluster_library("RColorBrewer") %>%
    # Assign values (use this to load functions or data to each core)
    cluster_assign_value("anyfunction", anyfunction)

result <- clusterMap(cluster, function1, int1=1:8, int2=c(1, rep(0, 7)),
            MoreArgs=list(df1=df1, df2=df2, char1="someString"))
1
source | link

As I had the same problem recently in R, I am attaching a link to a very useful website. This is a new multidplyr package, which enables parallel processing in R. It definitely works in Windows 10. :)

http://blog.aicry.com/multidplyr-dplyr-meets-parallel-processing/index.html

To help you with your code this would be the solution I would propose (did not test, but should work as I used it on another example)

#Install the packages
install.packages("devtools")
devtools::install_github("hadley/multidplyr")
require(multidplyr)
library(parallel)
cl <- detectCores()
cluster <- create_cluster(cores = cl)
cluster %>%
    # Assign libraries
    cluster_library("igraph") %>%
    cluster_library("tidyverse") %>%
    cluster_library("magrittr") %>%
    cluster_library("dplyr") %>%
    cluster_library("RColorBrewer") %>%
    # Assign values (use this to load functions or data to each core)
    cluster_assign_value("anyfunction", anyfunction)

result <- clusterMap(cluster, function1, int1=1:8, int2=c(1, rep(0, 7)),
            MoreArgs=list(df1=df1, df2=df2, char1="someString"))