文/phylips@bmy
分布式领域论文译序
sql&nosql年代记
SMAQ:海量数据的存储计算和查询
一.google论文系列
1. google系列论文译序
2. The anatomy of a large-scale hypertextual Web search engine (译 zz)
3. web search for a planet :the google cluster architecture(译)
4. GFS:google文件系统 (译)
5. MapReduce: Simplied Data Processing on Large Clusters (译)
6. Bigtable: A Distributed Storage System for Structured Data (译)
7. Chubby: The Chubby lock service for loosely-coupled distributed systems (译)
8. Sawzall:Interpreting the Data--Parallel Analysis with Sawzall (译 zz)
9. Pregel: A System for Large-Scale Graph Processing (译)
10. Dremel: Interactive Analysis of WebScale Datasets(译zz)
11. Percolator: Large-scale Incremental Processing Using Distributed Transactions and Notifications(译zz)
12. MegaStore: Providing Scalable, Highly Available Storage for Interactive Services(译zz)
13. Case Study GFS: Evolution on Fast-forward (译)
14. Google File System II: Dawn of the Multiplying Master Nodes
15. Tenzing - A SQL Implementation on the MapReduce Framework (译)
16. F1-The Fault-Tolerant Distributed RDBMS Supporting Google's Ad Business
17. Elmo: Building a Globally Distributed, Highly Available Database
18. PowerDrill:Processing a Trillion Cells per Mouse Click
19. Google-Wide Profiling:A Continuous Profiling Infrastructure for Data Centers
20. Spanner: Google’s Globally-Distributed Database(译zz)
21. Dapper, a Large-Scale Distributed Systems Tracing Infrastructure(笔记)
22. Omega: flexible, scalable schedulers for large compute clusters
23. CPI2: CPU performance isolation for shared compute clusters
24. Photon: Fault-tolerant and Scalable Joining of Continuous Data Streams(译)
25. F1: A Distributed SQL Database That Scales
26. MillWheel: Fault-Tolerant Stream Processing at Internet Scale(译)
27. B4: Experience with a Globally-Deployed Software Defined WAN
28. The Datacenter as a Computer
29. Google brain-Building High-level Features Using Large Scale Unsupervised Learning
google系列论文翻译集(合集)
二.分布式理论系列
00. Appraising Two Decades of Distributed Computing Theory Research
0. 分布式理论系列译序1. A brief history of Consensus_ 2PC and Transaction Commit (译)
2. 拜占庭将军问题 (译) --Leslie Lamport
3. Impossibility of distributed consensus with one faulty process (译)
4. Leases:租约机制 (译)
5. Time Clocks and the Ordering of Events in a Distributed System(译) --Leslie Lamport
6. 关于Paxos的历史
7. The Part Time Parliament (译 zz) --Leslie Lamport
8. How to Build a Highly Available System Using Consensus(译)9. Paxos Made Simple (译) --Leslie Lamport
10. Paxos Made Live - An Engineering Perspective(译)
11. 2 Phase Commit(译)三.数据库理论系列
0. A Relational Model of Data for Large Shared Data Banks --E.F.Codd 1970
1. SEQUEL:A Structured English Query Language 1974
2. Implentation of a Structured English Query Language 1975
3. A System R: Relational Approach to Database Management 1976
4. Granularity of Locks and Degrees of Consistency in a Shared DataBase --Jim Gray 1976
5. Access Path Selection in a RDBMS 1979
6. The Transaction Concept:Virtues and Limitations --Jim Gray7. 2pc-2阶段提交:Notes on Data Base Operating Systems --Jim Gray
8. 3pc-3阶段提交:NONBLOCKING COMMIT PROTOCOLS
9. MVCC:Multiversion Concurrency Control-Theory and Algorithms --1983
10. ARIES: A Transaction Recovery Method Supporting Fine-Granularity Locking and Partial Rollbacks Using Write-Ahead Logging-1992四.大规模存储与计算(NoSql理论系列)
0. Towards Robust Distributed Systems:Brewer's 2000 PODC key notes
1. CAP理论
2. Harvest, Yield, and Scalable Tolerant Systems
3. 关于CAP
4. BASE模型:BASE an Acid Alternative
5. 最终一致性
6. 可扩展性设计模式
7. 可伸缩性原则
8. NoSql生态系统
9. scalability-availability-stability-patterns
10. The 5 Minute Rule and the 5 Byte Rule (译)
11. The Five-Minute Rule Ten Years Later and Other Computer Storage Rules of Thumb12. The Five-Minute Rule 20 Years Later(and How Flash Memory Changes the Rules)
13. 关于MapReduce的争论
14. MapReduce:一个巨大的倒退
15. MapReduce:一个巨大的倒退(II)
16. MapReduce和并行数据库,朋友还是敌人?(zz)
17. MapReduce and Parallel DBMSs-Friends or Foes (译)
18. MapReduce:A Flexible Data Processing Tool (译)
19. A Comparision of Approaches to Large-Scale Data Analysis (译)
20. MapReduce Hold不住?(zz)
21. Beyond MapReduce:图计算概览
22. Map-Reduce-Merge: simplified relational data processing on large clusters
23. MapReduce Online
24. Graph Twiddling in a MapReduce World
25. Spark: Cluster Computing with Working Sets
26. Resilient Distributed Datasets: A Fault-Tolerant Abstraction for In-Memory Cluster Computing
27. Big Data Lambda Architecture
28. The 8 Requirements of Real-Time Stream Processing
29. The Log: What every software engineer should know about real-time data's unifying abstraction
30. Lessons from Giant-Scale Services
五.基本算法和数据结构
1. 大数据量,海量数据处理方法总结
2. 大数据量,海量数据处理方法总结(续)
3. Consistent Hashing And Random Trees
4. Merkle Trees
5. Scalable Bloom Filters
6. Introduction to Distributed Hash Tables
7. B-Trees and Relational Database Systems
8. The log-structured merge-tree (译)
9. lock free data structure
10. Data Structures for Spatial Database
11. Gossip
12. lock free algorithm
13. The Graph Traversal Pattern
六.基本系统和实践经验
1. MySQL索引背后的数据结构及算法原理
2. Dynamo: Amazon’s Highly Available Key-value Store (译zz)
3. Cassandra - A Decentralized Structured Storage System (译zz)
4. PNUTS: Yahoo!’s Hosted Data Serving Platform (译zz)
5. Yahoo!的分布式数据平台PNUTS简介及感悟(zz)
6. LevelDB:一个快速轻量级的key-value存储库(译)
7. LevelDB理论基础
8. LevelDB:实现(译)
9. LevelDB SSTable格式详解
10. LevelDB Bloom Filter实现
11. Sawzall原理与应用
12. Storm原理与实现
13. Designs, Lessons and Advice from Building Large Distributed Systems --Jeff Dean
14. Challenges in Building Large-Scale Information Retrieval Systems --Jeff Dean
15. Experiences with MapReduce, an Abstraction for Large-Scale Computation --Jeff Dean
16. Taming Service Variability,Building Worldwide Systems,and Scaling Deep Learning --Jeff Dean
17. Large-Scale Data and Computation:Challenges and Opportunitis --Jeff Dean
18. Achieving Rapid Response Times in Large Online Services --Jeff Dean
19. The Tail at Scale(译) --Jeff Dean & Luiz André Barroso
20. How To Design A Good API and Why it Matters
21. Event-Based Systems:Architect's Dream or Developer's Nightmare?
22. Autopilot: Automatic Data Center Management
七.其他辅助系统
1. The ganglia distributed monitoring system:design, implementation, and experience
2. Chukwa: A large-scale monitoring system
3. Scribe : a way to aggregate data and why not, to directly fill the HDFS?
4. Benchmarking Cloud Serving Systems with YCSB
5. Dynamo Dremel ZooKeeper Hive 简述
八. Hadoop相关
0. Hadoop Reading List
1. The Hadoop Distributed File System(译)
2. HDFS scalability:the limits to growth(译)
3. Name-node memory size estimates and optimization proposal.
4. HBase Architecture(译)
5. HFile:A Block-Indexed File Format to Store Sorted Key-Value Pairs
6. HFile V2
7. Hive - A Warehousing Solution Over a Map-Reduce Framework
8. Hive – A Petabyte Scale Data Warehouse Using Hadoop
9. HIVE RCFile高效存储结构
10. ZooKeeper: Wait-free coordination for Internet-scale systems
11. The life and times of a zookeeper
12. Avro: 大数据的数据格式(zz)
13. Apache Hadoop Goes Realtime at Facebook (译)
14. Hadoop平台优化综述(zz)
15. The Anatomy of Hadoop I/O Pipeline (译)
16. Hadoop公平调度器指南(zz)
17. 下一代Apache Hadoop MapReduce
18. Apache Hadoop 0.23
九.深入理解计算机系统
十.其他
On Computable Numbers with an Application to the Entscheidungsproblem-1936.5.28-A.M.Turing
The First Draft Report on the EDVAC-1945.6.30-John von Neumann
Reflections on Trusting Trust --Ken Thompson
Who Needs an Architect?
Go To statements considered harmfull --Edsger W.Dijkstra
No Silver Bullet Essence and Accidents of Software Engineering --Frederick P. Brooks
出处:http://duanple.blog.163.com/blog/static/709717672011330101333271/