Difference between revisions of "Course: Big Data Analysis"

From VistrailsWiki
Jump to navigation Jump to search
Line 32: Line 32:
* [http://www.vldb.org/pvldb/2/vldb09-938.pdf Hive - A Warehousing Solution Over a Map-Reduce Framework]
* [http://www.vldb.org/pvldb/2/vldb09-938.pdf Hive - A Warehousing Solution Over a Map-Reduce Framework]


== Week 3: Monday Sept. 24th - Statistics is easy - Invited Speaker: Dennis Shasha ==
== Week 3: Monday Sept. 24th - Databases and Big Data ==
 
* Databases and Big Data: Persistence, Querying, Indexing, Transactions
* BigTables and NoSQL stores. Tuple store vs. column stores: [http://hbase.apache.org/ HBase], [http://www.mongodb.org/ MongoDB], [http://cassandra.apache.org/ Cassandra]
* Transactions in NoSQL stores. Google's percolator.
* "NewSQL" stores: more on [http://hive.apache.org/ Hive], [http://voltdb.com/ VoltDB], [http://db.cs.yale.edu/hadoopdb/hadoopdb.html HadoopDB],
* Beyond MapReduce: [http://spark-project.org/ Berkeley's Spark], [http://asterix.ics.uci.edu/ UC Irvine's Asterix], Google's [http://code.google.com/p/dremel/ Dremel]
 
== Week 4:  Monday Oct. 1st - Statistics is easy - Invited Speaker: Dennis Shasha ==


* Guest lecture by [http://cs.nyu.edu/shasha/ Dennis Shasha]
* Guest lecture by [http://cs.nyu.edu/shasha/ Dennis Shasha]
Line 39: Line 47:
=== Readings ===
=== Readings ===
* http://www.morganclaypool.com/doi/abs/10.2200/S00142ED1V01Y200807MAS001 -- book is available for free for NYU students  
* http://www.morganclaypool.com/doi/abs/10.2200/S00142ED1V01Y200807MAS001 -- book is available for free for NYU students  
* JF: add references for issues related to stats and big data
* JF: add references for issues related to stats and big data  
 
== Week 4:  Monday Oct. 1st - Databases and Big Data ==
 
* Databases and Big Data: Persistence, Querying, Indexing, Transactions
* BigTables and NoSQL stores. Tuple store vs. column stores: [http://hbase.apache.org/ HBase], [http://www.mongodb.org/ MongoDB], [http://cassandra.apache.org/ Cassandra]
* Transactions in NoSQL stores. Google's percolator.
* "NewSQL" stores: more on [http://hive.apache.org/ Hive], [http://voltdb.com/ VoltDB], [http://db.cs.yale.edu/hadoopdb/hadoopdb.html HadoopDB],
* Beyond MapReduce: [http://spark-project.org/ Berkeley's Spark], [http://asterix.ics.uci.edu/ UC Irvine's Asterix], Google's [http://code.google.com/p/dremel/ Dremel]


=== Readings ===
=== Readings ===

Revision as of 20:47, 6 September 2012

Make sure to check my.poly.edu for course announcements

Week 1: Monday Sept. 10th - Course Overview

  • Course overview (First day of classes!)
  • Student survey
  • Introduction to Big Data

Readings

Week 2: Monday Sept. 17th - Map-Reduce

Readings

Week 3: Monday Sept. 24th - Databases and Big Data

Week 4: Monday Oct. 1st - Statistics is easy - Invited Speaker: Dennis Shasha

Readings

Readings

Week 5: Monday Oct. 8st - Finding Similar Items

  • Overview of information integration

Readings

Week 6: Monday Oct. 15st - Invited Speaker: Torsten Suel

  • Reading: inverted index and crawling (Lin chapter 4)
  • Ask Torsten (tentative, ask him for reading material)

Readings

Week 7: Monday Oct. 22st - Invited Speakers: Claudio Silva and Lauro Lins

  • Introduction to Visualization; Data stewardship and provenance
  • Guest lecture by Claudio Silva and Lauro Lins

Readings

  • Hellerstein (ask Claudio for additional references)
  • ADD: provenance and reproducibility

Week 8: Monday Oct. 29th - Graph Analysis

  • Graph algorithms, link analysis, social networks

Readings

  • Data-Intensive Text Processing with MapReduce, Chapter 4


Week 9: Monday Nov. 5th - Frequent Itemsets

Reading

  • Mining of Massive Datasets, Chapter 6


Week 10: Monday Nov. 12th - Mining Data Streams =

Readings

  • Mining of Massive Datasets, Chapter 4


Week 11: Monday Nov. 19th - Clustering

Readings

  • Mining of Massive Datasets, Chapter 7

Week 12: Monday Nov. 26th - Recommendation Systems

Readings

  • Mining of Massive Datasets, Chapter 9

Week 13 Monday Dec. 3rd - EM algorithms for text processing

  • Data-Intensive Text Processing with MapReduce, Chapter 6

Week 14: Monday Dec. 10th - Project presentation

Further Readings