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Multicache-Based Content Management for Web Caching

Multicache-Based Content Management for Web Caching. Kai Cheng and Yahiko Kambayashi Graduate School of Informatics, Kyoto University Kyoto JAPAN. Outline of the Presentation. Introduction Localizing Web Contents Why Content Management Contributions of Our Work

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Multicache-Based Content Management for Web Caching

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  1. Multicache-Based Content Management for Web Caching Kai Cheng and Yahiko Kambayashi Graduate School of Informatics, Kyoto University Kyoto JAPAN

  2. Outline of the Presentation • Introduction • Localizing Web Contents • Why Content Management • Contributions of Our Work • Multicache-Based Content Management • Content Management Scheme for LRU-SP • Experimental Evaluation • Concluding Remarks (C)chengk@kuis.kyoto-u.ac.jp

  3. Web Caching For Localizing Web Contents • World Wide Content Access/Delivery • Bandwidth Constraints • “Hot-Spot” Servers • Inherent Latency (200300ms) • Web Caching For Localizing Web Contents • Reduce Network Traffic • Distribute Server Load • Reduce Response Times • Can We Expect More ? (C)chengk@kuis.kyoto-u.ac.jp

  4. Characteristics and Implications (C)chengk@kuis.kyoto-u.ac.jp

  5. Beyond Simple Priority Queues, Towards Sophisticated Content Management Limitations of Current Caching Schemes • Document Managed As Physical Unit, Not Semantic Unit. • Only Physical Properties Being Used • Less Organized, Less Structured • Only Support Simple Control Logic (C)chengk@kuis.kyoto-u.ac.jp

  6. Content Management • Basic Features • Larger Cache Space • Sophisticated Control Logic • More Challenging • Sophisticated Replacement Policies With • User-Oriented Performance Metrics • Document Managed as Semantic Unit (C)chengk@kuis.kyoto-u.ac.jp

  7. Contributions of This Work • A Multicache Architecture for Implementing Sophisticated Content Management • A Study of Content Management for LRU-SP • Simulations to Compare LRU-SP Against Others (C)chengk@kuis.kyoto-u.ac.jp

  8. Previous Work • Classifications (Cache Data ) • LRV, LNC-W3-U, etc. • Segmentation (Cache Space) • Segmented FIFO, FBR, 2Q etc. • Features • Differentiating Data With Different Properties • Shortages: • No Sophisticated Category • No Semantic-Based Classification (C)chengk@kuis.kyoto-u.ac.jp

  9. >2 B(8) C(6) D(3) Hit Outs D(3) F(1) G(1) B(8) C(6) E(2) F(2) H(1) A(10) 2 References A(10) E(2) F(2) Hit Outs F(1) G(1) H(1) 1 First In First Out Order Managing LFU Contents in Multiple Priority Queues (C)chengk@kuis.kyoto-u.ac.jp

  10. Basics of Cache • Space • Limit Storage Space • Contents • Objects Selected for Caching • Policies • Replacement Policies • Constraints • Special Conditions Space Space Constraints Policies Contents (C)chengk@kuis.kyoto-u.ac.jp

  11. Constraints for Cache • Admission Constraints • Define Conditions for Objects Eligible For Caching e.g. (size < 2MB) && !(Source = local) • Freshness Constraints • Define Conditions for Objects Fresh Enough For Re-Use e.g. (Type = news) && (Last-Modified < 1week) • Miscellaneous Constraints e.g. (Time= end-of-day) (Total-Size< 95%*Cache-Size) (C)chengk@kuis.kyoto-u.ac.jp

  12. Cache Knowledge Base Multicache Architecture Web Cache With Multiple Subcaches IN-CACHE CONSTRAINTS CENTRAL ROUTER Request/Response CKB Client WWW SUBCACHE SUBCACHE SUBCACHE JUDGE (C)chengk@kuis.kyoto-u.ac.jp

  13. Components of the Architecture • Central Router • Control and Mediate the Cache • Cache Knowledge Base (CKB) • A Set of Rule Based To Allocate Objects R1. Allocate(X, 1):-url(X, U), match(U, *.jp),content(X, baseball) • Subcaches • Keep Objects With Special Characteristics • Cache Judge • Make Final Decisions From A Set of Eviction Candidates (C)chengk@kuis.kyoto-u.ac.jp

  14. The Procedural Description Central Router services each request. Suppose current request is for document p; • Locating p by In-cache Index • If p is not in cache, download p; • Validate Constraints, if false, loop; • Fire rules in CKB, let subcache ID = K; • While no enough space in subcache K for p • Subcache K selects an eviction ; • If space sharing, other subcaches do same; • Judge assesses the eviction candidates; • Purge the victim; • Cache p in subcache K • If p is in subcache , do i) - iv) re-cache p. (C)chengk@kuis.kyoto-u.ac.jp

  15. Content Management for LRU-SP • LRU (Least Recently Used) • Primarily Designed for Equal Sized Objects, and Only Recency of Reference In Use • Extended LRUs • Size-Adjusted LRU (SzLRU) • Segmented LRU (SgLRU) • LRU-SP(Size-Adjusted and Popularity-Aware LRU) • Make SzLRU Aware of Popularity Degree (C)chengk@kuis.kyoto-u.ac.jp

  16. Probability of Re-ReferenceAs a Function of Current Reference Times (C)chengk@kuis.kyoto-u.ac.jp

  17. Cost -To-Size Ratio Model • An Object A In Cache Saves Cost nref * (1/atime) • nref is the frequency of reference • atime is the time since last access, (1/atime) is the dynamic frequency of A • When Put In Cache, It Takes Up Space size • Cost-to-size ratio = nref /(size*atime) • The Object With Least Ratio Is Least Beneficial One (C)chengk@kuis.kyoto-u.ac.jp

  18. Content Management of LRU-SP • CKB Rule: • Allocate(X, log(size/nref)):-Size(X, size), Freq(X, nref) • Subcaches • Least Recently Used (LRU) • Judge • Find the One With Largest (size*atime)/nref • The Larger and Older and Colder, the Fast An Object Will Be Purged (C)chengk@kuis.kyoto-u.ac.jp

  19. Multicache Architecture for LRU-SP A a LRU Subcache ① B b Judge LRU Subcache ② CKB a C C c Hits A, B LRU Subcache ③ Computational Complexity O(1) (C)chengk@kuis.kyoto-u.ac.jp

  20. Predicted Results • A higher Hit Rate is expectable for LRU-SP, because it utilizes three indicators to document popularity. • However, higher Hit Rates are usually at the cost of lower Byte Hit Rates, given a similar popularity, because smaller documents contribute less to bytes of hit data. (C)chengk@kuis.kyoto-u.ac.jp

  21. Experiment Results Better Than Expected * * (C)chengk@kuis.kyoto-u.ac.jp

  22. Results & Explanations • LRU-SP really obtained a much higher Hit Rate than SzLRU, SgLRU and LRV. • LRU-SP also obtained a high Byte Hit Rate, especially when cache space exceeds 3% of total required space. • Really Popular Objects Are Saved, So Both Hit Rate and Byte Hit Rate are Improved. • LRU-SP only incurs O(1) time complexity in content management. (C)chengk@kuis.kyoto-u.ac.jp

  23. Concluding Remarks • Multicahe-Based Architecture Has Proved Well-Performed In Balancing High Performance and Low Overhead • Possible To Incorporate Semantic Information as Well as User Preference In Caching • It Can Work With General Database Systems to Support Web Information Integration. (Future Work) (C)chengk@kuis.kyoto-u.ac.jp

  24. Thank You ! And Welcome To http://www.isse.kuis.kyoto-u.ac.jp

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