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TripleS
Shared Session System
Share

Session(Cookie)

Simple concept
먼저 우리가 Browser 를 이용하면서 만들어지는




        http


                Cookie
Browser Cookie Size?

Chrom (버전 21.0.1180.89) Test Results
10:44:5.413: Guessing Max Cookie Count Per Domain: 180
10:44:5.414: Guessing Max Cookie Size Per Cookie: 4096 bytes
10:44:5.414: Guessing Max Cookie Size Per Domain: NA

Fire Fox (15.0.1) Test Results
10:47:33.415: Guessing Max Cookie Count Per Domain: 150
10:47:33.415: Guessing Max Cookie Size Per Cookie: 4097 characters
10:47:33.416: Guessing Max Cookie Size Per Domain: NA

IE (8) Test Results
10:48:38.243: Guessing Max Cookie Count Per Domain: 50
10:48:38.244: Guessing Max Cookie Size Per Cookie: 5117 bytes
10:48:38.245: Guessing Max Cookie Size Per Domain: Between 10234 and 15350 bytes
Browser               Max Cookies    Max Size Per Cookie   Max Size Per Domain

                    Chrome 4
                    Chrome 5
                    Chrome 6
                                          70
                    Chrome 7
                    Chrome 8
                    Chrome 9
Chrome                                             4096 bytes
                Chrome 10
                Chrome 11               180
                Chrome 12
                Chrome 13
                                                                             NA
                Chrome 14
                Chrome 15

                    FireFox 2

                    FireFox 3

FireFox             FireFox 4             50     4097 characters

                    FireFox 5
                    FireFox 6
                    FireFox 7

                      IE 6                       4096 characters
                                                                       4096 characters
                      IE 7                       4095 characters
  IE                                      50
                      IE 8                       5117 characters
                                                                       10234 characters
                      IE 9                       5117 characters

                    Opera 8
                    Opera 9               30
Opera               Opera 10
                                                   4096 bytes            4096 bytes

                    Opera 11              60
                    Safari 3
Safari              Safari 4                       4096 bytes
                    Safari 5            600                              4096 bytes
Naver Cookie
                   mail.naver.com
                         2k           3K
                   cafe.naver.com
                         2k           3K

 naver.com       shopping.naver.com
Cookie size 1k           2k           3K
 cookie 크기는 예임

                   kin.naver.com
                         1k
                                      2K

                   blog.naver.com
                         3k
                                      4K
TripleS & Cookie
Cookie format

Set-Cookie: NAME=VALUE; expires=DATE; path=PATH; domain=DOMAIN_NAME;

TripleS Data format

UID(Session key)- Service Code - Key - Value - TTL




                      Cookie                          TripleS

                       path                          service code


                       name                              key


                       value                            value


                      expires                             ttl
Client Cookie

Server Cookie
Client Cookie
Server Cookie
Big Cookie

 Network
Mobile WEB

Mobile APP
Heavy data

Network Traffic
Network Traffic
                                                                                                                                               Heavy Data
단위
 :
 ms
                                                                                              KT 3G
    SKT 3G
            WiFi
    SKT LTE
 
12000.00
 
 
                                                                                                                                            평균 Response Time(ms)
    5300.52
     5529.89
    3178.72
          3127.11
 
10000.00
 
 

               8000.00

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[E4]triple s deview

  • 3. 먼저 우리가 Browser 를 이용하면서 만들어지는 http Cookie
  • 4.
  • 5. Browser Cookie Size? Chrom (버전 21.0.1180.89) Test Results 10:44:5.413: Guessing Max Cookie Count Per Domain: 180 10:44:5.414: Guessing Max Cookie Size Per Cookie: 4096 bytes 10:44:5.414: Guessing Max Cookie Size Per Domain: NA Fire Fox (15.0.1) Test Results 10:47:33.415: Guessing Max Cookie Count Per Domain: 150 10:47:33.415: Guessing Max Cookie Size Per Cookie: 4097 characters 10:47:33.416: Guessing Max Cookie Size Per Domain: NA IE (8) Test Results 10:48:38.243: Guessing Max Cookie Count Per Domain: 50 10:48:38.244: Guessing Max Cookie Size Per Cookie: 5117 bytes 10:48:38.245: Guessing Max Cookie Size Per Domain: Between 10234 and 15350 bytes
  • 6. Browser Max Cookies Max Size Per Cookie Max Size Per Domain Chrome 4 Chrome 5 Chrome 6 70 Chrome 7 Chrome 8 Chrome 9 Chrome 4096 bytes Chrome 10 Chrome 11 180 Chrome 12 Chrome 13 NA Chrome 14 Chrome 15 FireFox 2 FireFox 3 FireFox FireFox 4 50 4097 characters FireFox 5 FireFox 6 FireFox 7 IE 6 4096 characters 4096 characters IE 7 4095 characters IE 50 IE 8 5117 characters 10234 characters IE 9 5117 characters Opera 8 Opera 9 30 Opera Opera 10 4096 bytes 4096 bytes Opera 11 60 Safari 3 Safari Safari 4 4096 bytes Safari 5 600 4096 bytes
  • 7. Naver Cookie mail.naver.com 2k 3K cafe.naver.com 2k 3K naver.com shopping.naver.com Cookie size 1k 2k 3K cookie 크기는 예임 kin.naver.com 1k 2K blog.naver.com 3k 4K
  • 9. Cookie format Set-Cookie: NAME=VALUE; expires=DATE; path=PATH; domain=DOMAIN_NAME; TripleS Data format UID(Session key)- Service Code - Key - Value - TTL Cookie TripleS path service code name key value value expires ttl
  • 15. Network Traffic Heavy Data 단위
  • 16.  :
  • 17.  ms
  • 18.   KT 3G
  • 19.   SKT 3G
  • 20.   WiFi
  • 21.   SKT LTE
  • 23.  
  • 24.   평균 Response Time(ms)
  • 25.   5300.52
  • 26.   5529.89
  • 27.   3178.72
  • 28.   3127.11
  • 30.  
  • 31.   8000.00
  • 32.  
  • 33.   KT
  • 34.  3G
  • 35.   6000.00
  • 36.  
  • 37.   SKT
  • 38.  3G
  • 39.   4000.00
  • 40.  
  • 41.   WiFi
  • 42.   2000.00
  • 43.  
  • 44.   SKT
  • 45.  LTE
  • 47.   0.00
  • 48.  
  • 49.  
  • 50. Heavy Data Network Traffic 데이터 전송시 interv al time(s)
  • 52. focus Client Cookie down sizing Server Cookie Limited range
  • 53. Concept of TripleS Server Cookie Limited range INTERNET
  • 54. Concept of TripleS A(30B), B(1K), C(2K) Client Cookie A,B,C, down sizing D(2K) A(30B), B(1K), A(30B) C(2K) INTERNET A(30B) A,B,C, D(2K) A(30B), B(1K), C(2K) A,B,C, D(2K)
  • 55. Naver Cookie Client Cookie Server Cookie mail.naver.com 2k 30B 3K cafe.naver.com 2k 30B 3K naver.com shopping.naver.com Cookie size 1k 2k 30B 3K cookie 크기는 예임 kin.naver.com 1k 30B 2K blog.naver.com 3k 30B 4K
  • 56. TripleS Architecture 서비스 서버 구성 TripleS Librar y INTERNET TripleS Library TripleS Library TripleS TripleS ZK TripleS Storage
  • 57. TripleS Cli TripleS St TripleS Zo ent Library orage oKeeper
  • 59. nBase 18000 Node Scalability (20M rec) 16000 Data 분산저장 (3copy) 14000 Scale out 가용성 12000 TOTAL TPS Container Server 10000 3nodes 8000 6nodes 6000 9nodes 4000 Container Server Container Server 2000 0 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 management server Real Scalability Container Server 16000 14000 12000 10000 TOTAL TPS Distribution Layer 20M/3node 8000 40M/6node Storage(RDB) 6000 60M/9node 4000 2000 0 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29
  • 60. focus Client Cookie down sizing Server Cookie Limited range Share Data
  • 61. TripleS Architecture A 서비스 서버 구성 TripleS Library TripleS Library TripleS Library B 서비스 서버 구성 TripleS Library INTERNET TripleS Library TripleS Library TripleS TripleS ZK TripleS Storage
  • 63. PC 통합검색 (최근/내 검색어) TripleS Mobile 웹/앱 내검색어 검색어 하이라이팅