> For the complete documentation index, see [llms.txt](https://krjaeh0.gitbook.io/j-log/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://krjaeh0.gitbook.io/j-log/programming/practice-problems/programmers/lv1/flexiblework.md).

# FlexibleWork

## Code Block

```cpp
#include <string>
#include <vector>

using namespace std;

int solution(vector<int> schedules, vector<vector<int>> timelogs, int startday) {
    int answer = 0;
    
    int hour = 0;
    int minute = 0;
    int limitTime = 0;

    bool isFail = false;

    for (int i = 0; i < schedules.size(); i++)
    {
        isFail = false;
        
        hour = schedules[i] / 100;
        minute = schedules[i] % 100 + 10;
        if (minute >= 60)
        {
            hour += 1;
            minute -= 60;
        }
        limitTime = hour * 100 + minute;

        for (int j = 0; j < 7 && !isFail; j++)
        {
            int day = (j + startday - 1) % 7;  // 0~6
            if (day == 5 || day == 6) continue;  // 5: 토, 6: 일
            
            if ( limitTime < timelogs[i][j] )  // 지각인지 점검
                isFail = true;
        }

        if (!isFail)
            answer++;
    }

    return answer;
}
```

## Excalidraw Data

### Text Elements

프로그래머스 사이트를 운영하는 그렙에서는 재택근무와 함께 출근 희망 시각을 자유롭게 정하는 유연근무제를 시행하고 있습니다. 제도 정착을 위해 오늘부터 일주일 동안 각자 설정한 출근 희망 시각에 늦지 않고 출근한 직원들에게 상품을 주는 이벤트를 진행하려고 합니다. ^3NYEAgEh

직원들은 일주일동안 자신이 설정한 출근 희망 시각 + 10분까지 어플로 출근해야 합니다. 예를 들어 출근 희망 시각이 9시 58분인 직원은 10시 8분까지 출근해야 합니다. 단, 토요일, 일요일의 출근 시각은 이벤트에 영향을 끼치지 않습니다. 직원들은 매일 한 번씩만 어플로 출근하고, 모든 시각은 시에 100을 곱하고 분을 더한 정수로 표현됩니다. 예를 들어 10시 13분은 1013이 되고 9시 58분은 958이 됩니다. ^cm3Uiynj

당신은 직원들이 설정한 출근 희망 시각과 실제로 출근한 기록을 바탕으로 상품을 받을 직원이 몇 명인지 알고 싶습니다. ^PL187szZ

직원 n명이 설정한 출근 희망 시각을 담은 1차원 정수 배열 schedules, 직원들이 일주일 동안 출근한 시각을 담은 2차원 정수 배열 timelogs, 이벤트를 시작한 요일을 의미하는 정수 startday가 매개변수로 주어집니다. 이때 상품을 받을 직원의 수를 return 하도록 solution 함수를 완성해주세요. ^Kfa6D2BP

schedules : 직원 n명이 설정한 출근 희망 시간 timelogs : 직원들이 실제 1주 동안 출근한 시각 startday : 이벤트 시작 요일 (월 \~ 일) ^lEMHcrEP

1주 동안 설정한 시각에 늦지 않고 출근한 직원의 수?

지각: 출근 시간 + 10 분을 초과

단, 주말(토,일)의 출근 시각은 이벤트에 반영 x ^FTFtnopm

int solution(vector schedules, vector\<vector> timelogs, int startday) { ^kQf6ndZl

\#include ^vooafjby

\#include ^Y0TvqeHw

using namespace std; ^Q3JVRleX

int answer = 0; ^BEPsnlEV

return answer; ^3ni3kuen

} ^Za5ZYYYn

// Code's ^21udXByk

직원의 출근 기한 = schedules\[i] + 10; for ( int j = 0; j < timelogs\[i].size(); j++) { ^Sd6zOQBO

for (int i = 0; i < schedules.size(); i ++) { ^2ZZxibNq

if ( (j + startday) % 6 == 0 || (j + startday) % 7 == 0 ) continue;

직원의 실제 출근시간 = timelogs\[i]\[j];

if ( 직원의 출근 기한 < 직원의 실제 출근시간 ) { isFail = true; break; } ^n6V1AlDD

} ^2QyAT7SN

bool isFail = false; // 실패여부 ^wxvJ7XPm

if (!isFail) answer++; ^3wa5f5Kn

} ^JJ5aZ52l

시간의 성질을 반영한 덧셈을 구현해야 한다. ^8chS5Z14

9시 50분에 출근하기로한 직원은 ^kqLt6mJe

+10 > 즉, 10시 까지 출근해야 한다. ^LdLaE2Vw

950 + 10 ^clo7vdKK

960 ^SfrvKLVM

1000 ^yqA7kadN

10의 자리 수가 6이되면 60을 빼고 100을 더한다. ^uE83mWrZ

schedules\[i] + 10 = 960 = dump ^VRAJwjqj

dump % 100 = 60 = x ^UndvnadW

if ( x >= 60 ) dump - 60 + 100 ; ^Hmyx7prs

dump + 40 ^U16Ge5HL

schedules\[i] + 10 + 40; ^nTrTZ651

schedules\[i] + 50; ^jsannSdR

직원의 출근 기한 = (schedules\[i] + 10) % 100 >= 60 ? schedules\[i] + 50 : schedules\[i] + 10; ^1u4auDZw

일부 테스트는 통과하지 못했는데 이유가 뭘까? 어떤 입력 값을 처리하지 못한 것인지 경우의 수를 다시 고려해야 겠다. ^jzwAoJeY

startday = 2: 화요일 ^Kp7qhPMi

0 1 2 3 4 5 6 ^2b2iwaWU

2 3 4 5 6 7 8 ^ybROsfge

2 3 4 5 0 1 2 ^T86PcwKG

6으로 나눔 ^R0VY2vhG

2 3 4 5 6 0 1 ^xA8FEgVc

7으로 나눔 ^3JaqhWqG

j = ^FNDhUHI0

### Element Links

KXxlAGPx: [2025/Programmers/LV1/유연근무제.md#Code Block](broken://pages/0e9970d04734844b1a63637ecc5b23f2b282a7ab)

### Embedded Files

efec49892dc1edcc3699a7d7effdc449b914a2bb: \[\[topics/assets/images/스크린샷 2025-06-06 오전 11.56.54.png]]

8b98212b714fcf7327512df78ef62467e1c6c82c: \[\[topics/assets/images/스크린샷 2025-06-06 오전 11.57.24.png]]

3832833f466a91e0b076a3db5428d2beefe820b3: \[\[topics/assets/images/스크린샷 2025-06-06 오후 4.16.53.png]]

### Drawing

```compressed-json
N4KAkARALgngDgUwgLgAQQQDwMYEMA2AlgCYBOuA7hADTgQBuCpAzoQPYB2KqATLZMzYBXUtiRoIACyhQ4zZAHoFAc0JRJQgEYA6bGwC2CgF7N6hbEcK4OCtptbErHALRY8RMpWdx8Q1TdIEfARcZgRmBShcZQUebQBGOJ4aOiCEfQQOKGZuAG1wMFAwYogSbggAZgA5AE0AUQBBZTrJFOLIWERyqCwoNpLMbmcADgA2AHZtYYAWUfjRgAZh5Yn4

gE5+Epgh6Z448fGK6YrxgFZNyAoSdW5xtdGpu+GeeIPD4+GLqQRCZWlb84FSDWZTBbgLL7MKCkNgAawQAGE2Pg2KRygBieIILFY/qQTS4bCw5QwoQcYhIlFoiTQ6zMOC4QJZPEQABmhHw+AAyrAwRJBB4WVCYfCAOrXVpoPhAiDCuEIHkwPnoAVlL6kv4ccI5NDxL5sBnYNTbXULCEyknCOAASWIOtQuQAul9WeQMrbygBxLnEIx1ACOAA0JqKGg

BpABiABlpqQw0YuXUAIoswjkrDlABaVHVwnJWuY9o4Qk5kIQCGI3B4C1Gw3Gdfiw0B7QYTFYnCrPA2MsYLHYHCqnDE3Aqa0b9wqwwqX0IzAAImkepW0KyCGEvpo88Q6sEMll7U6vkI4MRcEvuK9pmP66NRhUeKdmyUiBxYdxi6WZSiiRXuKv8OuMo9JgfQSIAIKuADodgAftYAGe2ABxdgAlQ6ggA1A4ALuOAB1LgA+naggAtY4AgGOABqrgApTa

gUGAJgdgALo4AOIMkYANeOALsLgA/tYALN2AAJjqCABargAbdaggA5s4xqCADbrgC7naggA7Q4AgDWACLjqCAAnjgAE44Ath2ADE1qCAKgTAA6HDEag8mAA+jLGADgT2FiYAkasEYABzWoIAEeOAK1DgATTYAJ03aKghmACPN6mAJQzMmACDjgAuq6ggAkY4AGU2AAG9gAMi6ggA+44APxNRaggCbzYAEqOoBJsmoIAJINqYAOqtafxQmiZJFGoI

AZU2AAOTqCAFKjVn8dlqCAIOTgALY4AJy0UapgCDA4AESsyTFJGoYAJT1YaggAjk+ZgAkHVZgCWq052gsuQFAACq9OUkGwYhKEYdh+E6eR1F0UxbGcTx+UieJ0lyUpqlqTp+lGSZ5lWXZM2uR5aneag/lBWFkWxfFyWpelWV1SdhUScV5VVTVjF1U1rUdd1qC9agA1DaNBETag03OSyrKcFAXKEEY4i8OaLa41kEa4PoHImqgT4dL0DREMoXASME

rJ9F8vZQOYBBM78rPoFABosnoWS4GmTAemgH74PqpC/GmBBLSBK3QfBSFoUN20kbtNGoAxLHsdxfECadkkyQpKnqTdBnMcZ4kPTZDnOS9Xm+QFIURdFcWJSlaWZTlpsFWd4MVdVpswy1bWoF1PV9YN2FoxjWOzV8uBCMLABK4SE8T/6AS2L4IAAEj8fygag8TaA+BQAL6bEUJRlBI2D6BUACqhAwBwABWLKdMT0DLV8gxoCMtYJPc8QLKcaynOMC

wVIkXy08496TAcRwnPTEBXMQNxoHckwL2s4zxOs8TTDWD5fJI5f/Lqt8yiCyqkyUcrwpSqIYji2JIBuQkxJSTkm/tSIW5AOD0kZJkTmMp2SckVMqWUyI1Qyk/ggcUB9JS8EhNCeUSCh6qkrLmPwkgCz2j1DKA0hJjQXjNF8S0x5bQHmdPAt0CBpboG9L6AMwZxihkjDGOMCZkypnTGPdAmZBikPzNqd8JY5boPLMuKu0x5gLHrKOLmbZ+ydm7C2X

s7YBxDmJrMGYTY5gznnIuX8K41wIA3FuHc6RYGsKPCeM8diq7jCvK8MYd4Hy7xfG+GWiivjfnhKogujigLLQkLDQAAuM+yiv9WSgADodQoHYGZtQaoAANRVwWIAEN7AAydRVQALaOABhViCps/KAB9RzGz1AAQY5hLSzUKnB3NhJLJawxJ02GMUwAHuMNUaskme/TBnlLqY01OqBAAXTdQVAgACxcACljUUllRVWVpKKgANceDpJZJKNip4UAKWr

MlAA+DYADTnw4uxckk1AgATzvinVQAET2AEpRwAM52oGqbU/iBEtIWSWYACq7AAHLWdZJYliozwWDJQAjzWWVQMUmSgAVZrqmpQAGEO1MADorgAQNcAJQtLTsIdKKf0+IFRimJK0jPclWTAAYLVZPpAzKWoHnsMLJhLsbqkoCrSuEAHm/TSZk7JXS8mFJnmUypNSZlNNdq01AJKQZnV6f004gyRlNXGQsSZkqZVzMWSs9Zmz1n7Pyoc5Gg0TnnNQ

Nc25z0HnPNQG8r5PzpX/KBagMFELxLQrNPCxFyLUBovUli1AeLOUuXlSSiZVcKVatpagBlrLVWDOSWyjlM0cZ4wJkTKs79IDkygJTam+Baa72AlAfmLNyjszgYYpgPN3BVsFtAEWXwxZRElqQLhst5aKw4MreJ6ABVxSFVkoGoqzoFKKbq35eqiUKs6UqySKrmUarGaS1AUyKr8QabKlyBq1kbOiiag5EkjmWtQGcy5Nyqp3NGc1ZJjrnXfLne6k

F4LzVQqKbC1ACKrKBuDZinFBKF3Ru1bGllNKKj0sZSmll6bUARpZBnbOudc32IArEouksy6/EflXGupx66NxlC3dAAAFKMjZxjMCMJmAe8Ah4VpZJIieDxpjjDmBUU4D5Rw31XkMRICwa7vB3l8feh9UB3GmAkUcBxZ6aOGIkXe998OV1OPmiAr9iZaYwWA3+/9cSAKJEw0ByIf40kgdApkdaSgIO5LyIhqCSHoPwWKCUVY8EigVE58oxC5rCE1P

I3U+pDR0NNFpphNo7R5DYWTDhXCIA8L9EGEM4ZoyxnjImFMM4JFZm2LI4gFCFGfhbGEbxF94inGmJxpsOi+wdilF2BrxjBwcGHE/W8NZazjGsQuYI55MOFxKJuMk25dxuLix408Q2fF+JvIEx8ES0yhNQL2r8bAfzRIcV8FjEhACfTek5JsNx1B2XRJQAPzWoEACdDhk/nQ1QIABjrAC6HTJQAKD2AFWFwAPOO1LjqgQA2D0ySalpLJgBwrtQIAU

K6hkVUADKjVlABvQ3cuaPKh0QCOydlqZ2ckh0ktdu7D26qvY+z9v7CMgejPB1DmHqB4eoCR5ml02a855qZxTKmNNuDlsZszFttaWTc15vgZt3Q20yg7RLLU3bVEbZbKiftg7VaHeOw+7Hk68e3fu5HZ7b3UBfd+7HcnwPGpU+h3DxHyP06ZzYDnVgGHUAxJW1qPDFcLxEZIwUJukByMQDDKuUYc4eAACEKOMa6DSEeMo2NjH2PcJY1Xdj3GWIJ8e

mnRPbzOBJzzR8xjaAOPcO8Sw57iZlGp13kX04cFBLp7z8oDMSExEZgBMoCSmZARSCz4DoDWYZLZnGHJHNKmc4KWvHnsFebcz5wh/mXOBbISV0L1DwuwHoVF0kMX3HsKppw1RyWfSpf4YIzLIicviOIBmCQmYjBz7kYWUrSjysqO4HeWsVW1gGJKEYvRzWP+QC/5wdrTrKuGYBYa+aePrMjGxQbbxR3FvZxSbfcabGUY8WbSrXxa8AJe8ZbL8Vbe/

CJLbKJP8XbOJJXYdRqdbSHNXC7GSQAF6bxlAAKGfIMxVQEAAYewAF9HUBmBsB75iASxwgllTsUlEotIUpaozpaDkkeBGCQ1WCOCeYMgURlBmAlkUYTJABE8bqnWRkl2UAA/unSTFLSKERkKAU8GAQAABqnlAAcGsAAGe0NGKCpQARcnnpUJAAZVsNxkgpyan2QxWwkCCgBEA4FQAIjche04OREzn7C0g4h8NQEABExwARkG/IYpAAOQdWTThlHml

5XKCagoKoNyXENQDoKrmkOYPYM4O4IrD4OUNVyEP+jEItkKMkJKIxVkNQHkKCDYCUJUMTnEg0NQC0NQF0P0JaKMNIBMNwHMKsNsNqXsKcNdlcPcMB2N28N8IQH8NIECOCNCIFAiM4E4hiISKSNSPSLJmZ3t2rDZyLQ51LS5z2x5wFhrQQA5gFwbSFxFxpDFxbAly7R7XCWoQVn8EVz5RyI4EoJFWoMaOKKYJaLKK4J4KqIEKx1qNEMewaKKKkOhN

aPaMUOqNUN6M0Kim0L0JImYNGPGMmMeRsLsMcOcLcP+08MahWNQD8ICKCJCLCN8B5j2OiOwkOJSLSJQ2t1txZ2G2w2fFwwfkrmrlrmKAbk9zI13wWh4A7kDE0AaGYDWE4waE9CD0wDLnGCTB4CTARDDyHmLlYyGB4AqAqG0HnlGEfGvlrDmFq2lBbDXnuBrgfDWBvgXlOAqFGGmCz3H11GmGGFtI0VALGFqyvlU0lPBEr2r3jMnzr07wxAQCXnJX

iBZFb2AS3HrwgTpF71gX70QT835Fn1H0wWz1wWTPhGn3LJHwyKC3IRCyrjC1oRXwrwtHXxYSQIS23ySxSz4XSyESy1EVyzI3y0vyMAADUb9itWyvcOgmMqwgQ5TH9KtqslgJguMqF61GtBY1VWt+xADiZ5hqt7wFgz4ICWxZwBs1iYDiCWwxtyQXE9xsg+ySgUCvFVFLwxxvTXh/y9zxTXw8DNttsiCsMvg4A2A0wPy0B8h2gwBEKkL81igFggQw

B4t2gUL2gr4wyxxFhIyAz1Fph6Z0LMLHQgRsLIB8BQgoAkR9BqYZAKwKNYLmQwkysP4ogxig80xHAq8wKWxMhiA+LyQ0xlAhLuLjCGhSAYQKB75cAZc/jhLyRZL5LFLlKuLIAYLS1lAmsHcHEPdigvdShd8AB9LEQgcyqoAAWSzipmYHMqDwqHoE9FGE9CEFhGtFNJrUlgtPHijO0FAP/KeBqyWE+BlDXnPm0DVQTyvKnDNEWF3kkxwRnhtNeAqA

WEbDIvtNODmEipbDLwIy0x0yTPK3c0RFTIb3TOXmXmzKATMw7ypG6B7xgWZBdAH3rJVArNrKrODJrIqqnzLJ6sbJbA1BbLv0Xzl2X1phhUYR7NiwQporZES13yHLSwEQy2EWyzETy3P0kQgCv3wHnIX1QCXOgBXKlDXLLG8StIDJjJvM/10QMuTx7BepMQ6zPNGHnnyteHJX61sR2ygrgPGzfKm2Wpmx/IvHQPWGyqnE1NdJArW1l2fAIMfJBpbB

grgoPEwtwvQouAoqQpouQswrAHSoSEOHhtysfAKsJrAAwuJuooiXosYuYqXDYrgqkoEB4qgDEoEsks4ofxKBEv5oku5tlF5vUrYAUpCC0uFsgBEultlqUolt0pgH0sFhiWMsKAVPKDqDDAQCjAoAjDDDYAaBqCME9GwFcuaGmDnFsoAHlfK2Z/LR4hgY9tBRgXgyLqwryz5AyorLSCLr4zgeBAkax55M8ZRUqucz4Ehvbvb6wHwHxDg744y0BSqq

835Kz8yIB0RarMyGq288zqqCyoEiyOr4EuqRqUExruKfMsEpMkaebhqh8Z967IAJqzqtMaEjROyf0FqrRezIat93R1r99hytrRyT89rJyDqswjA7Mu6twzqLrB5Vz2h1yP4n80BdgNFrSxxjyDLw6tN/9PqgCXhNEFgeADgWtID7y5tYDnz4DXFEDR6Wxvy5s/y4aeBErn4cNQKhb8CILRToL2L4KHQ8aya0KGbKLCb8awA55Jh5hw7b7nheMF5p

wYHKLmavxWaDB2bWKIGJaySxbBLgGZRRb+LxbKGKqZK5KZbNKJalbGGVb5bwG9KDLtbZTSNbzd9Tg4BbLRhNAAApfAZwMMZwegWEDuOAIPfAOR/ADyl29Ac0928eFOhOjMzBmrPjFPVAZwP+7Qa0xsRYAvTROrFK6s6rSYG+uK9YCYP0zjUYdO9TcqkoMqzO3Osu/Owu+qkzXM8bPO2kCu9q5etkGu9uhstBIa+UJunBFuyWtu5BALUhYLKa1AXu

2a1fIe5hJah0Fa10Acie3hTao/Ha8cs/C/KRIwa/IrNezCy68PXgG65RbxYYRTF4e4X/VsA87gNYbB/ctrUxZ/LsGrMii+QG6A4GkbfEV+98zfT+zxb+2G70rK2+/0p3FGlStG0BwyzGkobG9+qBpCxB2Bxm9oEmxB2x4Kh8ZTRxs4I4Ljemy54oKiq5lmqENmtQDmkhuh6S3imhih9bXZxW8kchwW0F7SyWhhjSuWlhtSth5hgFnS5EDW7hoy3h

+U/h/zTQbAGoYYQMJMNYKoeIDuGofKwgVkTQSQUYcUVRiAdRqPD2uYGuJsfK2YMcUAheAx5wWTTKpeY4Hlq+a+ABkoWOvengWTWYBeLsWeXxMYYCyAYqyuLOxM7xvqvOgujMgJlvRq9vEJtqvvTq0s6J0a2Jhu+J6spJjBbquuy1le+fVs7Jjsuahhbs4egpw8MenfL0Se8p7asc0/fampo6upuchpxcppje66re261RO8O4b0q8Xec+qsTjY+i+

4mYYM+G+2ra06Zh82ZsU+ZsGhAyBn15Z1A38tZpeK8/03pkJCWyJDGuZiAY5yt6BpChm15+B7tpC3YGV+08YeVheUMqxHBpmz5/B75wh354hrm1F2FoF8SkF1G8F0S4FqFjdldytZFhF5d1h+F1W5d9WzWyCsIHW0yn3Daw/IN2eiclsWN9AYpjIAKwx3Nh4S85ecVyANeMisM/08+OsTTM0cD1xmO6ssYU4PPDPWM9x00PYGuH6v0xIK8d/NYQq

zx7OmvLV3x9ETQIj4uoJ8zFqqzQs8JkswfVJ3quJsfZuys+1tJps51zJ11/u91tfL1pZ+zNaiW/isN3ABYU61s3dirVRXxJeH6o+96/ptABeJ6v/D6085/XYM4ZOoZ5uKA4ty90tiAF8ibN+ytlar+tAhbTAgTHAoB6FhWpl9Gkt9tIQKEAwOcM8XAbgC6t9qq8j86sm5J+UDEOce2kLvEezAfDEBoOcKLqLsLyAAdDIbV8YBoZL5LiATCuuNpls

BLoeQADm7DJ0vsWTK9aJBHbpgZziBZHBK9srr0BCB9Bohm8Wxo8frYrbxHS/2IBaYDgphqxf3rGBrOnZMeNBno6iqM6q4Z4p5ONasEquxR2Eyc78PfPu9KOTX9WS7gnfHQmbNizTWaOh5JBCQNBAghRKqEmLwmPa6WPxrmyzrlWIA+6ItB7WPb8iwwXZRd7UBZhOMlO+njERxOvz7VPdQsrvTz5fEtPIAzPa2LPbwsDd47yga9O8mN9Pyy3XyK3e

PaLcDl3W3HPq7ggksniEBsArxc2eBiBsAsQqebaZPcBxhiBxgnjWQqfas1hNAxxphcAeBiPIR3BiZ8blXya8Hbypz0BcAsyXR+OJA72Rzj9dqn3pL/D7QO2RLxb20YQ4B79r2Sv0A2A1gagEA4AhA5xAxGX6vGuP2J41g5M/6VMDH1hJhlMAyfSgypMhuvaNPlNOvVWRwTg7n7wz538Z5z5atFu8P6OfPLNy7duq7nyDXS6VudvK6ImHN7WjvuCR

AmurWGO0qrvzWHXXNbu2PKF2zOPcnXuFzMnxOvv6wL4z6Pqqwass2Qfvuo67x54oeIAYeYa4eltEedOn6nyShosR7CmnFy3jPsemXcfbOQHCCwHCe/WJBhhOfnhEhNAw/WRsBWRDhb7ThEhiA9/hgnjvbZhmf4hsBRhsBnhsAhQBe8hMLhf4hRfm5xftNkhpeSn/Wyn72Z7FeZ3M8M53KCIA12klTXiLCFq69cWbMOoLZRLjYBSAdQUPDVxabDxV

YGjOmA8EsQYctEywC+L0zXhXxbe3pZYEcC7COlDg3fSVt91AK2k54ubd/DfXg5uNy80mXeF4yyY+MVujeP+CRyapGs1ue3Qngdw7qOsAuefCfFH2Y50cSg3dF1uX2e7zVPW+TGft51+IwtBOh1XABUFE418PuEnC8AXl4xdgpmcnAHmgGtJJNgeozXUHcFnjzBD+D3JHjMxR6g1Me0/dHj3xWbmd/ymiBeHeG77Ns8eDndwc+zRxwlKiwQZgKgDQ

AgkwSE6ZdIABAarSNiU6KxD4hSJO7FXBih+xtckkQwrzVMJxCLU6EXov0XigAAKQACtjqAAAH7RQAAlCjkWiRCKivBGIaUISF5FccqQrIPVw6JKFuh2QwyLkPyH1EJIRQ4wiULQAowKh6yVALUIaHNCs0WQHNMTAuLwI8YxaTnApzuIgR3iajJ4hE0FxNpecoubXu2jxiS4pYHDf4grnwBZF+QHQqoiMNyLgl8iYkfoekOGFZDmoWSHIfEDyF1FU

SUwqBMUImKlD5hYkNQpUKWF1DGhUUFoVbjQx25iY0IIQPp2Lgu4CM0pYjEV11qwD0AEYBaBGCgAcADQ+gRlixiwH5UpgnLd/PgIeZEChgWVG0ksFqwX8zQi8XxO7xwS1YgOTwF4G8FYGl4JuDvF+Lhw8at0UyvAv+MZg26kdmqMfVbmE3W5kwomtHTupIP6qMc+qsgnUQoPY5KCB6KglsGP29ZFMZe8/eekJ2mD6D3uMLIwbqALxBIl4WbDNg91s

FfV/enTM0Lxl6auDdOS/F+lP0WbeDe+9gvxN6QdJLxsOOPGzru3x7hCSg+2dAMCPyEToiopUcOFDCjjeEAA/FpC0hlQJIaAM1MkOnQzwkUMkQABCzl2EsRwANQxRAAC51VDlk1AZEaagEjmpjkqAQABg9eEVADIgyKo5SCEATMf9GzFgxcxkMbXF4VQAYpixHAUseWIORVjxUCwWsagAbFNiWx7Yzsd2LPQXp0IxUIcSOLWH4wRSJMS4rsJuL7CS

ClaC4WzBOEvExibxF8ULE+IlBviUuTQXZ3lyAknhaOKcSlBnFhx5xYhRccuKbFliKxvYzcUUh3F7jVxzYpZG2I7FdimhPY71P2IvGjiWwqGG3OhgxGkAsRTuUuBKPdyEib2u+egGwDYC4BWQvcTQIViAi1cMBETSRIsG0CJ57S1pF3lhy2ZB1x45KW0pqTGA8ZLwUZe0vyIvC3g+J7+GPBMCWBYdw+4oxDrwE4HSjNWUfbVgqJz74hE+W3ZPsaxE

GaizW2oiQRggu5SgC+1k4vvILu6KCl8brSvhaMWq40kKpQeINaEwA8AYAooNgPQH9D3hMAMABaAfGcBVB8AVAN/gWhtG7ttB5QXAKcEdGkM6+h9TTHWF6bpsrB5g4ZieTsFVxeMLje8MpiLbD9DmGPIzhGI/pflfBsPfwXeAnYPcQhtoouGENDFpi0c6INMNgF8Dn5UAAAHmFASUAAfK0OeHoB+pHWIaQgFGnjSq8U0y4hsNZzbD2cJaMtAcOfEP

FXxzxBrI2j5hfjW0Vw8XDcJ+L3C5cAJJWCBInFzTBpQgYaWNOhCTTBSaIm8ZiOxESktJ+ImAc3F3w1AFgC0UKaXBzAcT0BtIllmgF4n8S/Sk4eYMJMg5ukqw1cAMeSgDIYNyUfpAblJleBxBZ4WHcHpxmvrd8/eUoHSRq24HLdVRfA/+AIMNbbdzJ8fcLlZOHw2TzuNrByRzKclOsMm9oDjsoI9aeSeOT/HyYQD8kBSgpIUsKTwAilRSoAMUuKYV

3ebf9x6AnD/rgFGAZTl2Lo0qY4NHAXlPRBU70SpxKmdNg+wfbvsGOqnttDO4NE5lW0ak1s++LUo4Eq22YttupBzdtumPzoDSFpo0xgNgGFikBVpY4toQ9MDnPTFpI0kOWHIjmnF1hN4rYcnKuLbTbiT4o4UyzfFHTPx+078edK+KXT/x10koEBLukzSA5802OcHNJ6JyPpJE9EdwG+mUTcRUpGiWAG3p0TygSYCoKIxnJZxgg5vNAcxkjzNdn8Im

eGYJKRlTgUZWwAZujMNlYyHwOMwOi2FoHVhZMt9LDtVgmCTh7eSTCmdpIj4yjdRBkpvIzKT6qiU+VHfboaM5mN1uZBo67nIP5mTVBZporjqj3H741fJ/kwKcFNCnhTIp0U2KfFJnb9kNZy7FKRIAZ66zOpO9bxLGIP4bwTZqAZeGbIPJt97ScwUAtlT+62y22+nB2Vj0jFNS3ZcNVqZ7Os47MYWKYnqQzAnHOcJK62bfNAjECcETCAAbmmlo5WFV

edhRkE4WLSoQxAPhWtNTlaZC094nadnNOn85855wwuWdNFily7hEtSuQOnul8pBFygYReEENBiLeFTc4UvbjbnWcqJf0ruT3L14QBYQSYVkKMHJCZgTqY87oBPIGBTy+JXYASYjJ+rzzHebLDGf6VDJryeMG8iVtWS4y28zgmpRYOzxeBvVxuWkzTGfL0m59o+XeemYqIT6bcyOt8lmWny1G8yzuz8gara0qqPy+ZEAY0V/LckV8uyostQeLNvJS

ygFss0BYrOVmQK1ZvrACaGx0HDBEFtfSrDViG7ZUAaFg7/JgumVFSACJU2+tKzWBekbZQ/EhZP08H1SJ+yBShdGPdltSvZoQ/Zs/V6kTi4KHJXYhwCqEJzUQI0uChNPKLwkYhSyO5aQHjkNz7ljyp5b8OqKXKySphJoVpGAD8KLlWQK5VyRuXvKHlWQJ5VEM6H8FUAMKmFT8raKDCcSSyAFZCJgDAqOAoKqRecRkU7Dri8iiIYcMUV5y5Ox04XKd

OFjFzfxGi6XFotuk6Lq5AK8IlCtuVfKPljy55dEKRUoqeVsKqABNN+UYqMhWKiFYComJ4qCVL8IUqRNbnkSfpzuaiTKW7l8NAZ5QIPCgOYAcB8AdQSNpDPHmYCYZsaMMnfWyq8YXeRwBef+zRmkD6wN9aVgcE6b2kkmtAq+BxlHC5t8qXYZYH/TYEEZOuXAvTJVUvn8DAmgg5mcINZkFpSl4g2pbZJfkyC35RolySaMaXCzuOrShCk00lmAKZZIC

+WWAqVkQLVZWFdWSvyQXe4tZawUZYYK+4H10GymNNk3z3pzxW+FsrDnWEnBp0H6yPJhQZwWYQ1dl1baGgcuoUezJ2gDehXZ0YW+z9O/sy5XSAoBMBUAAAXiyaSLI57KiFWuo3XbqFgu69OetKlDEqtpewumLtJzlKLqVBc6tB8QZWQA/xmi5dtoqBLlBV1UCddaQC3U7qzFSqtAJYsAbWL2B/02ifYoqAcBCAFQWEFiK4AeKI8ZqyeaD0tWjtrV9

vVqfaq65Vh54wVQZjVjnghVngnqmxqOGCqMCzgoZZ4D7wQ7sDQ1ukmmfpII6GTr5pkopXGpKXsyk15S61pUp5l8b0mn88+U9zNEizR+XktpVsBqBpTlA0wGAOZTDCnAg8noItKMBnIlxmA/oDuEHjC4ALpZwCuWQrPAUqyEpq1H/rAq1kNBG1zor7hyzPh7B1EGC5wd2t9FoBNSReG1S4I2UE8wx2ysdc7Oh77L5shy2hXOu9mnKR+zCvlCyQ2Ko

BD1pAU9fIPHFxa1irJJLSloLRnFNhl6jOdeu5wUrVF96/cjSpzn0r1F4sK6SyseHVz4tgRLLUBpbkgaVV7c9VQSM1U4ttVl+NKZmBqADakNJqzxahu8Wwzp5fihGUJKCWiTMFXYW0g8wPknAk28k00I8GUn3BpWLAj4MGsrhMbqZ4anzJGoZnRqmZZk7jdRxqX8apB9k1+YXxu7OTS+YmnJs0qk1iz81PkmAHJtOAKalNKmtTRpq006a9NBmwtUZ

q6WlqelFaizRoPLl1qF68C/TVGwMH2bKsimEdncGwWWDvuxwdzUAS4ydNb6akqqZso8F1SgtpnULT/W9I0LZ1yNKLYvyXW7TygdcMFXylZ2Eq8td40lVnPJV7Sn1xww6Q+pUUC61F1w6rWXNq3ATq5HOhVZ9IsVtarFHct3BqrsXEiIALwZ6YGCDwwA3wyGoWF4sgCSJyUBFaVoXkWxjAxui8ymUB0SCxjvaS8E4DWFW1bowynGZgeokVagEfqu2

5vhkpY1ZLjteS0bCZMKVd475GotmWIJibJquZgmu7Y5LnwCznt7k17ZAEtHeT2lRa4zd0rM19Kq1AyuHaUC1kmlkdTouzvrLtXs8g+rmn3TMsWUebeAV8HjE7oHW3k/NqY2qY7JM5Q1VmMYmsDOvalz9kxPss5bFvKBKBUASIc/AAHIcg3KKOXykn3T6EAc+q8eetvGbSCtD4m9QopK1Uqytj6ltJVvF2dpJdH61lV+okDL62As++fXLublfTFdY

G5XbqFsVarvcu+MMOMCMDWhHa2YQMM4F7hCA2AtlBEHAEzCihrQ1oCjP6EZbMs0NrKXYLaRdLqIL4d4TBny1HC28k258McMB1zY0DqyWmE+V5qmDKYsqvtXGVfH92Ha5RdM9jadpvnh7ill29NU/IE36i01929+XUszUNKZqqel7i0rR4NTEpVm2tcXoR0S85wiC9erVx4BZdkFv5ScJ0xni8Y/u+U3gFaTx15aTgXGaTkGI73DqyFXgsQz4NdlT

qadQ3TpscskOLqx9HbCBpnuKDnM+2xNBBjA3ppkGCBlBzBtJOmC4MoFz4AhkxQXbEBOaHFSQ2Q23aIst24A0hlLQPantJDx7Jhoe0kPntMWWGAGZ/vKA+hRgRgR2kmCDzO19dXEj9qHxtKjsZgYBYTOSiSZrwidwVAJD9USBPNNMuG2gfJhrhMjjgHqsUakvYFW7gQzGug1/DY1XymDnGlgxdofnsHY9FSrg1kqu0iae638jyW9rzXjq+OEh5KVr

LqB2aK9X3R8NVjVQaGMFRO3Q9wC5YD7R2Rhx+qToC3k6nZlOyw2FsvgerMqdhkfdFpqkVGEkjJYOE9jqjbqEVVRXIIQEdDViT1WkXGP+qqGoBLlvcADSetQAomRp6KhQhkMhOOhtA6IqoU0J4Xon8k+SOVWzuyJAn8oIJgDeCZiG4mYTPCuE6iCWFImIVKJ49cSYxNYmhhzAXE/ibziEmuTpJ8k5zo2npy5FvO85fzr5wH7nqH4kXcfp/GvqmVgy

h4dLrRyLjqToJ/lYir5NQnGTzJhE2yagDonUTXJ0aTyZxL8mCTRJkk2SZBXNan9FEpXR1tyNmVygPATMNIkICaAqgcB8o9DMQPpUMqM8WYBMADJtHcNa8Q+V71Hb+kHGVpMii7sRl55j40rRIDPFG4MaCM6SqUQdp4EMGpjSomNedvVEWSo9qxvqnZMGorGFjSe0TZksgDiaf5qg0QzsfEMwLJDcCiXhGCOMJs++rwU+HXoWWCxQ+1xtAJ02UyJV

eWg6twSYdHWvHe9fgy+Dar9o/GPuDhmLQCdfYsmqhlywgOaaROWm6T4QAU0TCFPHmRTjphfdXPhNLCDzR5w85idPPMBzzCAS84eevP4r190i7nZnMfF8671cp5TgqZOmqKT9F0iXe+skOfrdF5Qe8/uYhWHnOTx5l868JiHvnPzBSB0z+dRGP6FdLpl/W6ag3q6OAmm+IEzDnCyHAzhuiAMbsSA2lHS05+YDYejNCYuMvRk3eFUsbbkXdj4SYJ30

XialR2eC4+RNwfDqslurG+UcWfyXKihB5Z+NZE140x7rteoxJkJrUtrHXJghppcIa2Ptngtlmrs/sekPaYS4/Z9pr+VrD+kvS6wDBc8wnNVwRL5KJYIWznMhimdZO7vTPyjEfHCKodcOhuYYWj7tzK61kKyaqEonCkMq3FagAACkqAUYFuuPWoAAAPulaWExXuFMw2VYlekypWsmqAPFagDKuoAO0aYLEUybQmLich/Eb4QBr+W4ncgvcR0DVa0j

UtWTWpgSDScxN1WxhDVqsXKq0jlWkTzASmByCasqqarY1zQIEFwCwgarsu8amlu/WRXET0V6dHFaaEFWUrm6tK5leyvbWcVu1pK+MCKvbjSr5Vyq8WAQAdWOAA102I1e3XNWoTrV9q02K6uImerz2OqP1aBP1XGIjVka4EXKuzhJr+Aaa9VdGvlX5rIQJa1pBWv2Zct4plG1ep31FaZTjxIXYfsVOXCqtZ+mC7uzgvsqNrx12K6db2uXWMrWVra5

TbyvxXzrNN662Vdusw3argNwa8DarGvWJVShFq21YevfXRkuEvq6Lc1zPXhrIK2G2VYhsSwobr1ma7LdQDw3Fry1p04RdVXga8R7+7rXkYkBGkYADQBaOMC5BVAaRdF43ZomqN/1ZuY4asA0YMarLYq8Y4SafQRlEGBqU3XKcTPP7bbJwvuymbQcLM5LGDJZs7VxqUs8bo9FrRY5wc0sJ6ylOlrNXpZzW/yrR1atU2L3Mu4AfKZezKZVkSVNglgd

wDBZofNmN75418RsPeF82PH/No2Rcz3r2XvHqdTgkUcEOH2bmwr/x/2cja7prWJAA9tkKjYvX/nCtt6ylbjflPla6VypiAG+uZUX66taOEe8RPMVkSiLIFHW53NV0f6PTEgCgJgHoCiNxggYCjNSNoujajd9CQ4Hnjtt1HHb94LA+JIIHzw/6NWIPsFag6VKZgtpX1esGtLF4Rj3wLSftukuB7JjUaiO8wdapzHRBVZqPjWaqUpNk7rHZPU2ce4v

aDL6e6TeYdh2azc7ojKyxuUTaRkB9PGDBVeGcv/U7b3pK8iTsbtd7yF5h/y+3YDJkCkmHU344zscP+zNwyIca5DYA0xJiTk+m7IAAplwADejoUCkxIEEdQ35bU17dWI9QASOZHcjsU+Pa32SnAL0p4CzPdAtz2ILC9pe9nYrmX74LCjxiUo4msK3RHDicRwoFuyaPNbW97W6/sIz739bh99ABUAoBpTWQpwMMENufacSgzY2opPfZqP236jL92bZ

jN6Njhngs8O208xd0qYvamHasPaX4kpKSgJ8vM0RLGOh3DMMD+S6Wajtx8Y7SDrJSg60tx2Gz6x7NRJtzVGXrRexj7j2e0xhhSHyhgZppivCF5218nZKwmP+7FTG944WeLeDt1MPO9I68MRTuXPNTPjvGb43QoZ1PHpT61pYQAEJlH+AVm4lt/VMBST2WupUPbq4bXDn9jjkCc6S0XPfzRKie5janv76jHfTEx6LsgslzoLy92C1Y7JsHOjnjzs5

6QGef4XN7yq7e4mN3sq7OtaunregFEaiNTguATMLxncXDaUN3E+hNaQSBhnbwXGLlvMAMbVhYOV5WrBjvuCe7yN3tkTL7a/ZbakzgdzSYxqpmQPZREx2SxU5D0FKVRsx6O2wZ4M6iU18e7g4npTsCGK5OD80YZb/mdPTL3TrWVGH6cCBm14daSR6Pr2CxcNPooApeE913ATgCzhc8s6XOt3J1AV+YLlVeAhWF1vdv2WvfkfoAR7haDfWnPRvb6yV

Bj6e6cNeL43n1hN24YC5JvAvXX0L4DW0Wf072vHkGrrcV3V2igeAkvURrZXMpRhRQUAOcFGCEABPlAC0VkJmH9AjLyjCBqJ5eAeAzwfqWVIc4B274AdxJvWC+NWEOD5VbwLukgxNxqMLaz4garjPlXPgh3aZYduSwK4UuxqRX8xsVxwZu21meXvmOd7UvqUp79LCrvB+9o7MmWa1ZloTrZTkMxsFDShzV5Vj/o/U5gBwDBeodoenHnGZweu0Ou8v

PHfLFCtu2swJmzxc2jrhfjs7RY40ZNpNHthc37ZnMvDZNPt8TPrDPAh3qwII/0qLihGiGER/5tEd5qQs4jmHvWUkZPZF60j7DNWuiwvail3TPuYYNwS5CnBMwV8S2zffosw1ngCdRsD1hUx+kJnMZu4AkAsRPNNtd4CZ90c4uDNe1S8c+A21AcnyIHkfKB3y5O2wOZj8Dmd4g/rOVkGnSd4TRg8bMB7mz8ryTVu+2PGXCH1m3OxbYLt6zm1jYeec

6W75aH0DtD+PB1067ELmHSzwLVa4nV96gKBwWu13aTE92/jLricd8P2TxFAAE5MyQhxdUQAObNgACUGZIgAG1rcUe6bKFyj3Vo5gvqAMLxF7wjRe4vqARL8l9S9nq/zujnnfo9i2GPA3YF2laY5fWL3VTRe0m+l+SEhfwvg4nL6gFi8JekvjSFLycU8aKqWtsbuF7PzVU2KfHyblFxAHMrIhRQSYXuA0H0B1AowuAEuM4HMoRhmAXIMMMwFFBS9c

X6AQIKHLKpYDa3J8f0mMEGaJBkqrIzRkJ78WtSAh5KL21Jh4yTBJmWVVYOomA64aT5hLusFjKHdytRwuGsNWU5qq6t9vlTyO8K5qeivpX1Z1NXWZXfNPdLcroQ5u4gAZ7vBRn7s1rLKNV8zqYylQ7fXeDTwb3iwZy74kSC5OnPxhl903ctddskKS5A2+gCTBwBzKgjUYKyDgALAKMJcBEI7QWjWhMwQeEuNaFhANr6azTIeIyHkqVru5Fm9h5+59

5mgoliY+dX+5LZkfd8HPrn3AB598+BfQvkX2L4l9S/GW8vmWpUeODoymwy8TpgJcP58tw61cNVMvCdJ+kuwn3lM/aTzxDt6NAY8/kHe0/aZSnY7tMpD441h7FPcP2dwj+QdI+l3dTj+S07TttOM76gpKaq9zuoDCf0bHyS+0UPxtrLNxhGg9S7V6uLwDrvV23xY/CfHws8c1wz5YdmGd3KvmMY2GEygFf34FPh9uc7YuHgPqFdw8EdcNk0EzAf6V

kH9mfSsx/7zCzXRTnZhGWKqHpduh+MLYe/OPktIO+SSwzf8Ac3hb0t5W9reNvW3nb3t4M24xsAIA8eCJgbZnwCD5KaMug0JpY/cA2vWGYRrD7Vh5WnIq/yl+qlPEYC0iRnCzpGKRruwEeKLBLxsMLIEECbg66jr6kWU3rCD+gUYFACjA+gKIxGSsviNr4uuoFOCTAewFarOCV4M7qzaRjJxY1gzeu1w8i1pBr57wNrEx5zwvatfDWCGZKH5Se58v

pgEc/jFD6TuVTrD6p88Pug5J+krsj6J+j2pg5h+LZpsb6eHTlnZF6PTrgBK8TrG9yF2qiFyzv4h/PVjV+R8DYKV2QBIfzXwzgn6Qt+jhqYY7K+NKz5+OEAMMCkAFQHAAdwowOZRwAnoAPJCAnoAsAsAc4BIzjA/cDL4vs2mPAEZcyvlTqq+olnp6jeWvv37/uO5hABMommMUjFQ/yE9gQQUcIkhuuSQaqglIaQYxAEQGQVkEvOXOqV4AWu+kBYBu

74j85KmdXuY6NekbhOLJB+QabBFBmQaMjZB0bkN6ga8biRZJuRIlN5RgxACt51APADOQQy4TlDJW2xgn6QmMJLpOCEUGzkwFNGhLmaDMCo4A6Tk8L3jghZUYZI+DMCRFOcaak3AVy7SeS7tqwCBMfkK5x+ogQn7iB9Tsn66iqfnwZPaWDvIFp6WPvg47uuPvu46CWcBq6fcHTOsBWkewHWCuaWOlM5AE7+OHSaYLepYHbm1gUFqYUdgT7iig4wNa

A1AEYDUAcAFGEHivA9AAiD4A9AMQA8AUYKyDDAh7sEGcS1vvnoDBk3uroRgOpNaC9wxAPECeg5LHUCYAmgAtD5u9ACXAwAoQHFz4B8CmEFIUmXOP4WGNru3ZXeN9H9w8O/ngP592aOPkg1iTyoACRk0sgxo0yLui9eRXqlqL65QKqHbiGoVqEQYOoYxCFe/XjlopyrzuUGT2e+qLqlas9kfoE2p+mG4WOzZk0F8oxoagCmhm6BaFWh7jrC6eO/Qc

i5s+EAM4Ceg1oKyAlwl9it48ANQPEAzkNQPQALQFABME4B8Bm7TmqtdifDHwoBNaRzA99KjKaMnGMFQ/Ui8GCHXwv3EwG0Co7AkDs8h/A+C3gNWLX5DGJVKO4yWdMlcHTGsfhRxKelkrHZF86lmp5SuDwWn5o+Onhj4xB2PgQ45+WglrJcggIZXq3g5jLjKOWEzoa7EwwfGgYTADxs+5WBzdn5aRBXfgEicYwSN3ahWAXvpxD+QHm4ZTs4/iP7tA

DYaKzzwKmK2Ge6C/lhRL+yHuEaRGlcOJwYesRkewQsIEZv5jEytLAHQBSLHh5EeXDFrRYsAwb3Kr8TgS4FuBHgV4E+BfgQEFBBB3qEEK+p3pbq2knDuOCcYvqq75kUEkspjX0MwMXjzwLujgKdMbwCQLAc3vqH4XwBFGRp5UySuMy9MYPpH4Q+dVIIHGSgropbx+ynij6qeTwXawqemnun7o+G7rOHfBhnguF2cqgQtBHuRfie7ABAziGTMRi8Af

I3uN9LQ6hk8YlaQHh85q36ueLxi3YeeK5i1JNgTAQqHXhSoe2x3hH2jhQQeIHmB5eRPbExGaI3nleBsRCTj2ycRC2nsA8RjYHxEIeBekh4r+KHgBHgBq7GAFoAF1Hv6wISWOgGYB2AbgE3+W2Pf5ZMeeFJIZmV8IFF00TTMoBf+XOBWHWCv1DVimu+VKe4YAYEQkZpRTTBlFZASWINJsA4wCSFhgfTh/63+hUc4AiYaHKOxDuPtCJYjmFotVFPwK

HOYhLAewJqQ5SQAYSI80EAYR6gRxAFBEZGBETb5fAiATLQkKuvuUA9RfUcQADRdHoQHAE9IpJYUBXGIqwLcVARfCyYj7hoiHAe8qsoCe0HHYzYGSdLWAOkM0SqwSWZwbwERq/AdH59hNwQOESRQ4S8ESuyxin5yRJfLIFCymfm2ZKuygUQ5CcHcCuHNqNYP6qO6lxpCEN6l9CFRu+tdgiH/GSIU7Ioh/nOR5oRrge4GeBojN4G+B84LhHChIQbSG

K+EoYh4uy0oZ+7g8H9n35dSN4czoSA88NuJbiOQdLEwmpQWjY2hvrlKYVe1QcorgWvzmY4NeUulXJo48sbLHdBzpqGHjeSLgfY+4tlEIC2UXIKIz6AwwAiDTAQeD9qaAHcORa2UpwJoA1AX/PhGVut9q6I1YXtPa7PMo3EcCu+S8CYxXg18I7qUxBTpcDVklGreBNgCmMByJAQ3KH5SW5wRfKQxwkdcHiRdwZJHSBS7mOFSBE4a8FoxGxp8FzhPw

WpFDKqUqKD4x4yj75zA1WKTGCw7LqOZt8tWPWDB8Lvp5Z2ypCseHvuQsWeEzAnvmLF7MbkbeHOG94d5GoUvkRP49sCcYDHJxqwH/S9+j4Yv6Shy/gxTzsa/klE4eW/uBEwRoAbQwQR+7HBHbRu0VAEfcWRohE5GqARGHohmIdiG4h+IX1FEhJIWSEUhVIfhG8xp3mfAPAySsvD+0iVKHFUBjtl7QHBqkvxLqIXRtWTIG2ZoDH9ca8qH6+IJjIvBd

MqbO/iZs+Zty5ZxvAr2Hye/YbHz5x8MSjGPBkgcjFSR8kVOHYOM4e05YxhejjE6Co8gX6ZM8hi0wl+60UCG1sA7qGR/UGCpVJ1+SyvKx2q2BO3oN2izrTF2RgsZ56XwubCx7cOV4U64SxMoB5GnMfkaP4bxcUZontA/LHECIJDvipgoJkHsNwYJmmCspsBnGLFErU28T8x7xaHkBGHxbUTv7CUFbEljDBoweMGTBpxHf6CyAfg9TtGpAaoZLAH/l

VHf+yViYx+kgzG0Yz+nbp1r0hLUSfHrshgrh6QB+HrBHpJqUvAGHR+AEgEnRD8fYFcgroPQBhgUYDOQ/xUwaao3RftBNqfeCMqspXgf3MQJv2EwPKxm6CNHsAu6swJAlMiy8LVhocvvKDFdhMnj2FQxRCTDEkJ98gXGlxiMYnbjhGnqjFae6Ma2YiGjCdAp7uufkJw1ADcb+T8Jh/Gyg2eHalui0OubGcnLADEX3EJB0icP6ohu+CQCSA5lPgDeU

CwCt5VAFQGGDxAYvswD+mc4KZ7+cPMWKFb0EQR+5d+15EZFbOJypPGSx6AHHjoAt5vrGLA8KVvpeu+Wno6VB/rp85VetQW6FQWRNuG4fcTXs0FIpwYa1ojeOImGHmxu+LgCUh9APZT4AM5J6BhgMALZQ1AmgEYC4ACINgDWgRgDrIVuOYYgbbyGVFvBtJk4N7ShR1uoYz/+RGKAQXur/q7x/ctAuoi2kLwJsymBIPs9EdharCMkXB2cUXTQxecdM

lkJ1CRIFIxzweQmThqdopHp2mMZnZMJxnkJwMYZntEZfc0rFHFDmeUsclZUd7upySW4idpySJFrm54yJIWqClAUqyjCjyhyidr6LO6ifjQPhPkR4YDs7QMqkRpaqc3r3AmqXPHTsAsbRR/hDiRv5OJKUafHHx2/kWnnxWSZfHJGRerfF6cp0RIAwA/oClywgSlP8lVJBAR+yUuTFjBzPAjbK/5NuQmP76rKceMsD70A7oqnwJQohtr+2SZkwGSeY

MVg58BBCeMnQ+cDrDGkJlZham6ixcVQmFxZccskVxuDl8HbuqkV06Lhudh5zOpxPheCLBMwLyKtxAzFT5Xk+FPPCWRXlkeFM+tyQzG74TIUHgshbIRyEdwXITyF8hAoUKHUh6ArzEZchNHcnfqxAI8nPJ1oK8m4A7yZ8nfJvyW2naRkGUCmykIKcPHhpBwBCmRaUKQkH+yMKCJwIpE4uRmKxOjhKZleGKWrFYpNQa6Ehu7oTVor2GplRngcpKcN4

mxEGnrYMh9gb+n/p7IZyHchvIUID8hgoffrtpooYRHmquTrbygJkZuHTDOzSZaTZU03L9zko1dmfB4yOCHYykyFUqsqY6hGdwGAJyknelYcOUpQElOBZoJGzShCaukKe66UambpJqRQlmpskR5mWpsrtOFKRDCXakbJnoVIZCcmgFpGyZrTLpFnuqiLk6aYSMsmYGByVkck4KJUtaQacZUW+n9xWyrZEnhYaZfCyht9OPG0UzrlPGAenkQvFaJia

U+GIMhmYvDGZu8q8AvMZNOHTJOo6WFRLANYDYlfMO8av5/MhaaknOJqUa4ki07ibvieJuAGMETB+UX4nggomLfQcBbak0nbyYSXNGRJS2eHRtqDDktHNR1DC4npRY2eUCNpzaa2kzZhUSJiAUsHuswEC6vqtkRJBFJw5Tg5PKPFkazUWSRXxGSTtHVp2SfJluJ+SSgHIR9ig8lPJLyW8kfJXyUHg/J/oH8lW+OSQplqSD9pjJ2u7+IwF8sz3utq8

Y1nu27kuv9lJjKpPLM5qjpZjGcah+AfDNwTMgYoToOWuCZnFLpYyTnEGp07nDHuZe6XMnSCJcYskyBB6a06rJirkFm7GKruelCc9/M6kcJmwm9knGC2dlT/kN7qGTOWTmipjkoRCvT4fpwaXln4ZBWTMB22xWfZyqJWNNPEVZz4QTTaJ1zDAxTAsznoEeqzwKsot8k/u96+IFOQGo306wPPFG5YAPywiYFkVgzw06zDoaT+O8qnGk+EynsCH83Wb

Oy9ZiUY4mDZxaSCwHZxnEljHZ4wC2nEAmGSjazZD/nxJh0dbufBDOEwEIk+S4SbcBUaZoM8CBKzAryK7ZrUcNlx5+/rvjFJpAKUnlJlSb4kjRj/hZGu8RYeoj28W8HdlVgJjFhxnA2VJxgrKGzFwmJJ72d9lWYTgImSHRmSVtEQI0+WCC5J/2XWmFJIQa6AqI80O+LY69vLQ4Xwo7CHmJZEiYeHbmFsRRjmUxAI7RUwCIDZTKAYYCXCnA1oCXBEc

owCXCtA9weUCZ8J3HgFs501BznaWNCZkwPcHwUekCRgqTbaBxgShmbSsP9qWGGMWZrFRYctAepJjAtmaMk5K2AKso88l6RMnasq4Jgzexm8vHHVwQ3HPD2kmZOYgnBHLiGoPAQQl+z4UDursC4a+spS5UGw7ln5AeDAEmCnA6YdVj8sRjJoA8AsIDADjAUAOMDYAcgJWorUNyUPFyJ/5IMyAcOuVub/GcacmnG51Wbmlu5j/llRuqpgSmxMFbaq8

yEaXYDCFYc3tN6QvAC8K7mIMcQJ76XkKwCXbHAv+MUDVwXGMvCrK4qZjr3gt9NYVk0U3AQqTguwMAnbBCYsUAoMd9P6SRmV5Jsxj5OiZVl4UYZCAR8YkRZeD+peFAKx9qEygPqExV5L4U9sD4K7afR6VEtHXuLWSJhHA08LPKB+ZFHkVIUxjAAl2+IooQYuk9NFaR54WZpWH9qFyWqi1F7QMvBEum2RHTau2VParFABRUqzeko3HsBYKsRabmLx7

vvcALwb+LvKyc+Rd+wO2FAcEn3UvRcUD9Fwlppi7kywOOxKcYxQ8D+qSxX/RHA6huMA7FYAHsVTm94KGRUClBq0W0FgktPATs28uHS3F/RaQWLFFBbWBUFaxV7TvFzpDHiypowD8UkFPLP8X9JgJRr6nFXtFeTeef1E2CweUJeblkUsJd6q5sCJWACtZf1KYKqG1pKOAVAGJc6qcYIIfx7kR5FPiUcYCiZ8VDcviH/Tkl3haQE2qiwIEWvFfEvaT

5soBKnGY5GJbZbP+p8EWGMOLWRxjzABwBOyEZ0RcMBCljAqGQwhWDBYXclo4LCE30lsgPk3FSaeB7zFIJXKyzcDjG3p1F37IDEthiNJEU30QpRfBsBymCmxR0JxXSXzBTYBaVBF3WLMWeG+pWqi+IYdN4V1guwKEXOlRwLNwN8vpQWyQlupbom7F7vgGV+lYIcyVBlrWZeS30Hqpog0+CSXEVu5/RT6UXhoIX/SJlapf/6TR6ZSHlh58URHn/hUe

c6L1cJYF4gUYgQIWDZ8IYdBSNlzANnwz8qgbUq/BH3O3iNMWGeLnApa+ZxIb5FYFvmOW2VKZEYccIS8DUx7bD7hGA9QJbRZwM5MoBwARgKQBEswwJmDW08QP6DKaYgZ/nHczZdJHe2jTiOEyul3DzkKB4fvZngF9YBHF30CSm2HNZcBUvGNgwPlGRqockg5n50mBWm5puucQRz4FKdCyBbysmODw3wSpfYVdJ1BXtqwcJdjnmocReEcC7w+sueSz

AIVFX5rJ3rE0z0A3BbwWnA/BbzxCFIhWIUSFOQBZoyFbDqeHhpChUeSQp9hqVngM5WRonxFxQKNFEuSbIAH+impC5pk0zgOhzZOo7OGYYMjgp6VqF7uRdk1h1dp/aF4MIU6WCV0rMJVm6tYH6mJAtxRdnqGdqq1KTMR8vTRKVb0eqX5sHLJWE/FwVKODqIcoXCGrKPGKMXu57RpAnXw9pUKwO+txaQJ3g8wCS4LwzEXiWCVPGHnjbZUZHHgTstxd

VgWVd9OoYkUIBMLwOVyqY9nWkmiAkrMRYVe97BxoBGHTtG1WAZWisvihOw2qFRRMBhVQHA7pK5y0WgaNgOVVREt6SuUwX1uOpTVl+FlqiXk1gU4JtkGRVVbBxzwaDJmlm6hwMVVTARYfGb9qqqWMCdV2TiZlrx1WE2ADVDpU5pLwV3sbICVMZAH6ZVemVmb3gYVbbyvRhGd0wPgxwH5UrVDYL2rXe0nDNVRl7FeTS28nvq6VoGPGE2CrKVVQ8DZU

f9I0mUCV3vKUXVbuesB8S44AJZc89xvZWCVPSRFQachYYZGPgW1TyW8lLAkqykuT1QMUECheOYgNVmhTcy284ZmBxWkcNQGQI1SuUlQiiVpEphQ1mxe6qduV2S3QcV3qnJgYJ3tATI6Fn1Y1VhROBtfQbOMHjMDU5PbMDU1ur+K9Ul594NaS3F1YFRqh8X7OTwilCNRfwGGgYkDFC15RaYFWkpgWqg0uh1T0ltJAZJDybZgHHLWxUwDryJmgVpFl

S0l3Nb1xolhYXPDqGOtcXa/UeToniU1cVTgIaGXTOHQTROtYqzV2irHTWjpCNT0x0aZAgPrnVTNXUUiYxMqmwXJUkojRVVKDH4hMCczuQWM1aNS1nVwduvVlzOxwNvBR1vRoGXqSMIQnVZlNhdKTLwDgh6r+q0UZnVO6qDPaRSSaBkLXVw94ICXF4HvphqKVV8O967AfpA9QU8XWV9UF1USYTHv4pEbWChJy1eWHhmczsH50aElXqV1F1cK1Kdu/

pOsCwemdW6q5SO8I8W8YQtYTIe+6wE5pEaBxVVVhk0rPlTLatRmYxklPdS1m2FBOtgYBC83JVUj1+wROBX0GZEgWRlQde0DIcpxtFWpl6iAPkH1eeLZbyYHfHVSb1aZpfC7yJwHVQWBD9RJIVFA+TWHjsoDVw5tGHdfgZjVI9dtVg84lVw6BGF9fkUciIHJmm4CdqlVW28m2cAmBFhAuShC1NpALUFlxwAjLqcpDXxIsuIlTaoWJNDV7Sghf/iJW

V+zDWHwFsCeHWDd179WMU7yitVOCnwj0S3Vp4jtrB4G1OhVaRC1w7IMwcsDvvWDqIxtVuToJkxXKH2M3vso1e83qk1mKst9LFWCVaeLxiTg+hlw5PZhjcyWLYTBTbmDMOVZY3u6nhfEoZV9ja2GqSiwBpzxmrjWNHuNVpAcAka1iXg11Fb0T42GRAQhEWBNsVME36GYTajU/hW8fmn9ZURuJy1ldFD0ANl2oM2Vkpt4W2Udl3gqoF4BPZTCx9lhf

pFlj5/MeGH2BQgHUBTg+gKKCkATqfhGROfscAT++bvqmV55ewPP6zaO8tT6SWyyh8BTg3SfeAAOX0cA7ZmpwTqn4J9Ofqm4FTORukJqqlk06nlXmdUpbpa7u8G6egWdn5np6kVrKsguyReCdM2BnxEYKEwM5b9J/SfM5XJLntRUd+tFSCFlRV8Eol+erkaRmgSCwPsiyQgADWdS4hYSjAqEHSiAALl3JWv6IAA+fVZAwoqKH145BM8AC3AtGKKC3

gtULYsAyQcLT+iIt+ocrGopbzn66MZToSBbfOLGUXKhu7GUC6r2XGai0gtyVpi3QtOLfC1+oQaEi1GxWtu1qmx9aegBDyDQKIwUAvcP6B4RkWRUZYClhQRQXew+TximCzto/5qoVpGcZ6MLvCmb0CwfLB7LAReECWFOwyTTngxR2tA5yezmcQlqizOes3DhD2kXEyROzT5n7pCkf5k2pOFUc2C5JzbnZitj2poHmed1N+7KYXeZ6ljOpRR3ElShA

i/iPRc5QPGfpshQ5FoMmZFpguRKidClPi/mBhbhADJluIAacKduq8E+gHV6ZE7Qi8rptBppm3bq2bagC5tdXp64ledGRUFY2lXsxnBuVLWxnn6tLZxl8or5hm3ISZbUik5tQgHm08ZvQfC4JuAmYMERhrscQD0AA6MQD1x19jUmWFXtOfz5UUypyUrBF4GqiIFD1aa7rAfpBOmVKSwF7Q71RwEtEZkQyeA4LpYfnTnju/LqJFTuZZha0qWVrbwa/

5i7uan2tezXIEHNHBfOHHNtcfAp66bCeXoDme9N3GQ8tzUlnepwiY3ouMqyhmaRtOWW+40V+WSZmW6thoxW8OvzROKVtBVjCgAavbZeKUZfKNh1JWuHdur4dhEj65Et9oe86Ohspl85nCmsXUHUtrbRG50tRHf21wAOHWaB4d24tuoUdwIIN7GxPLfxkTeY7fYElw+gDACYA4wHAAsA10Z2lZUImIPmXeQ5qJYUu18HxLHAbvjViTFdlS7qUuv1T

CE0YOZhpgZxhrfQbXtJrUIEw+twW5mWtCMXHrbNaDpzm+Z67s6185rrZslC5OgmE5et1fEB1l+uoDGSZU8StQ6N8qWdM4YJGiCZnwdPlqw5sVY7VN5QAHcAtBZwzgMoCnAkgDABCA/oMwCBgyXfECiMFQHknGqPbCKFwBCvuEGShnfv+RmNxwKA6JtMacOoRWrJpgB+hZHVdYq22Hc4DQtMJtuKXOBbRcrk2bXRNIddJVl10cdhjL11bi/XTRmb6

tbQ6FVBTGRrE1eWsfUE6xHGXrFDdrXe129dJzt13TdP6KgCXOG9jG5Dto3gi5v6onShHoAHcPMCegCAKcAlw6rnO2dpPpb0YkUVWFKW7wtMNq6QJVNIwKp0Zdrjk4I7+BZUD1qZRyxcs8zQa2LpEMbJ7B6t7cIG2dkevZ1bpL7ag4EIuzfwZudGMS604+NcXaI6CbAOc26gmmIELXklxilkjMjeqqmSWCrIPyBp1kS822B36d0ApdaXRl1ZdOXXl

0FdRXSV3cxNIThlK+1XW80mZzeg13Rp8QS57+y2HYUjXwOQXL10Cc3d67Kx6KfW3qxwuox24p/zvikhZRKex15t06Ar1ctHjsJ26213fYrJdqXel2Zd2Xbl35dd3fz2aApXWmJC9v2VE5ryOAuohTgdrpOD5UP3VWBnADIk4x9qhOhpJEFA1GywQ833lUZ5sEzifJmdcPUa0I9eATmTI9rmaj2PtDnUsbzJ/+Zs2AFfmXQkBZ37dXG/tRPalL5tq

9NU1u9nCRLnjKs8JA0bhSWeB0ht0zgcXdM6zLF2vu8XcZY1dIIWHwl4xGUxV65RzAbkJdCadmmiNYANH2Xg8bZ9GLwQZW8ypNuaUyzpNi7Jk3R5fNOBE15mUbvgSdUnTJ1ydQ0QVH+JsCdEnLAZwMD6vAoxZ/4RJU3KsAEKxeG5YVSlecklQsu/V1G74d3R5SPdz3Wdn+JfJfV13AnLAtlsoveZOZwceBi/iypnzbU14Im0bAHd4i+XgEwBe0W9I

neVDHknHRAOfU0+4HAAtCkAC0JmDkF8nZK1B8tpFhqNJmZjQazaAtQnQ0RBOqXa6tccZUptFO9Q9VzAXPFZxapXOEn2Xt8PUWY3tBnKHqTJ5rWs3Z96PY5159u6aXEftKyTeVVxp6W61/tEvAGaAdWgQpK7kwUYVLym2Oh5Zt9RrvWD+NMuU81SJg8Uh0a5JmYsCXeShcxUptLwkW36m0Jpm3y9sJr52D2hoY4MCqzgzCbG97gyr1op9GRr3LdWv

at1MdLbcTaEp3oam1ODXbTWJuDNVoO1xuw7ZSm+OPuL3DMA1gBwA+gAIa92StZBcFREylldWAxJ7FlYKTg6CadVxZwjXu34ywfQtWOaC8Ke0mdfurD0CDKfUINWdSPTZ2Z9FZmj32tGPeeXWtDrbQkgFmPkoPKuXne61CcaIFelNqvrdPCoc7+Dc0GuxgWYighl3nTre4KuYiEWDrzch2k+ISXYOj94+t4N6mXbZpgDd1zrKBptvg4UhXDgQ8S2q

xXEg20rdFWtrEAu+vTEPnDEJiW10wJ6skPkpv0iJ1mx6Q7vjxAQgNzym82YGQMKZtdvMGieAtUEIDpe9EcBEYvpKk7X0AZPpncADYBJLvh/1KBww9dmXglXt5Tt0MiDYkas12dkg4MPSD7ObIMudow1alOtePR50E95fTnZCcMmX51E+Cw6oh0Rx7YGI3u99YYNnkGztJwD63fYz5q5MbWs7fRAdCWH06JGTL2amVJr1Y6mVQp23/DM8GdZHdo3b

12Fiupn8MuDAI6UI6jZozPDXDXg2QRi2Wo5aMwm+o7h2GjSKcaOOjDw9uJoAHo0UiXO1bXaELdNHUt1kt9HUG7a9rGXikehjQWx2Um9owBrajdw/EMLAzo9x2uj24u6OJj/w5pgWjmY1aOAjpvS2WumvLYUk+4YYIGCYAwuJ6AUY/HeV0YA+gJoAVgp4JoBL55qoJXO5CQAWUz+SVQfwGMOeSYwECDgk0kghLurZW61VxZhr8e2FXq1/S9bOyw1g

UnB7KHAEzmAXoFGIOBzcZjOfe0SD6fLXRf5J5Yj5nl6ngAVLJ93IemY+VTSjrHG3iLWDLAW4ccnvhd7hlXkZD3DV0/c5iA2AyjigesmyjuWd4IdSEALkC5A//qcAKADZZ0RugGQCwAKA5SfEAKAt0PbDaA+gMQDogK+qgAKMBBI6COgLIMoXtsXBAQCC8z/ITRrRcRYvbOcwsPoBucUQJ5xNMSE2BOSF7UWV3OcCAI7T2AJAE4ALgq4CWCQMY+tZ
```

(Compressed Excalidraw drawing JSON — kept as-is)


---

# Agent Instructions
This documentation is published with GitBook. GitBook is the documentation platform designed so that both humans and AI agents can read, navigate, and reason over technical content effectively. Learn more at gitbook.com.

## Querying This Documentation
If you need additional information that is not directly available in this page, you can query the documentation dynamically by asking a question.

Perform an HTTP GET request on the current page URL with the `ask` query parameter, and the optional `goal` query parameter:

```
GET https://krjaeh0.gitbook.io/j-log/programming/practice-problems/programmers/lv1/flexiblework.md?ask=<question>&goal=<endgoal>
```

`ask` is the immediate question: it should be specific, self-contained, and written in natural language.
`goal` is optional and describes the broader end goal you are ultimately trying to accomplish on behalf of the user. GitBook uses it to tailor the answer towards what is most useful for that goal.

The response will contain a direct answer to the question and relevant excerpts and sources from the documentation.

Use this mechanism when the answer is not explicitly present in the current page, you need clarification or additional context, or you want to retrieve related documentation sections.
