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Git Pre-Commit hook for PHPCS is giving me error in Windows for Laravel

I have installed PHPCS from composer.json

"require-dev": {
    "phpstan/phpstan": "^0.12.93",
    "squizlabs/php_codesniffer": "^3.6"
},

I am using laravel 8 so I have added below code for pre-commit file in .git/hooks/pre-commit file:

#!/bin/sh

# get bash colors and styles here: 
# http://misc.flogisoft.com/bash/tip_colors_and_formatting
C_RESET='\e[0m'
C_RED='\e[31m'
C_GREEN='\e[32m'
C_YELLOW='\e[33m'

function __run() #(step, name, cmd)
{
    local color output exitcode

    printf "${C_YELLOW}[%s]${C_RESET} %-20s" "$1" "$2"
    output=$(eval "$3" 2>&1)
    exitcode=$?

    if [[ 0 == $exitcode || 130 == $exitcode ]]; then
        echo -e "${C_GREEN}OK!${C_RESET}"
    else
        echo -e "${C_RED}NOK!${C_RESET}\n\n$output"
        exit 1
    fi
}

modified="git diff --diff-filter=M --name-only --cached  | grep \".php$\""
ignore="resources/lang,resources/views,bootstrap/helpers,database/migrations,bin"
phpcs="./vendor/bin/phpcs ./app --report=code --colors --report-width=80 --standard=PSR2 --ignore=${ignore}"

__run "1/3" "php lint" "${modified} | xargs -r php -l"
__run "2/3" "code sniffer" "${modified} | xargs -r ${phpcs}"
__run "3/3" "phpstan" "${modified} | xargs -r vendor/bin/phpstan analyse"

But this is giving me below error:

[2/3] code sniffer        NOK!

xargs: ./vendor/bin/phpcs: No such file or directory


source https://stackoverflow.com/questions/68570839/git-pre-commit-hook-for-phpcs-is-giving-me-error-in-windows-for-laravel

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