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Dealing with Data – Especially Big Data INFO-GB-2346.30 Spring 2016 Very Rough Draft Subject to Change Professor Norman White Background: Most courses spend their time on the concepts and techniques of analyzing data, but virtually no time on how to handle the data and store it in form to be analyzed. This course is focused on how one deals with data, from its initial acquisition to its final analysis. Topics include data acquisition, data cleaning and formatting, common data formats, data representation and storage, data transformations, data base management systems, “big data” or nosql solutions for storing and analyzing data, common analysis tools including excel, sas and matlab, data mining and data visualization. The course will be taught in an interactive lab learning environment where after the first few classes, some of the class time will be spent working as teams on small assignments. Students should have notebook computers that are powerful, have adequate ram and disk space and wifi. Most recent notebooks should be sufficient. In addition to students personal systems, the class will have access to several servers and a ”big data” cluster to use in assignments and projects. Ipython will be used for some of the examples and homeworks. This course should be valuable background for students in information systems, business analytics, market research, operations, finance, marketing and accounting. Textbook: None Requirements: There will numerous small homeworks, a mid-term and a team project. Grading: Homeworks will count 20%, the midterm 35% , the final project 35% , class participation 5% and team member ratings 5%. Lecture Outline Week Topic 1) Course introduction - Introduction to data, formats, representation. Binary, character, …, Files, Records and fields, Sequential processing, sorting and merging data, look forward to the future. What if we can sort and process very large data sets efficiently. 2) Handling unstructured data, data acquisition, converting text data to common formats like csv, tab delimited, fixed format, xml. Inputting data into Excel. Common problems. Homework. Load text file into Excel and analyze 3) Common preprocessing tools, unix tools sed,grep, cut, awk, perl, python etc.. Concept of pipeline processing. Introduction to regular expressions. In class lab on converting textual data to a CSV file. Homework. Use unix tools to convert unstructured text file to a csv format file suitable for loading into Excel, SAS or a data base. 4) Introduction to relational data bases. Conceptual background, Overview of features and functions. Using E/R diagrams to generate “good” data base designs. Simple queries using SQL. Homework. E/R diagram of business case 5) Query languages, advanced SQL, including joins and aggregation. Homework. Use SQL on multitable data base to answer questions. 6) Mid –term (First half of class) Business Analytics tools, Excel, SAS, matlab, Python, Tableau, Datameer (Second half of class) 7) Advanced SQL, introduction to Non-Relational Databases, NoSQl, Object Oriented, Mongodb, HBase, … Homework: Final project proposal due 8) “Big Data”. How do we handle terabytes and petabytes of unstructured data? Why don’t traditional data base systems scale? Remember sort/merge? Overview of Hadoop, HDFS and Map-Reduce. Problems of handling web and social network data. Overview of HIVE. New processing models, Spark, Tez. Demonstration of sorting a very large file. Wordcount example. Techniques for analyzing textual data, TF-IDF transformation for textual data. 9) “Big Data” analytics. How do we scale data base systems, data mining and other analytical techniques to handle massive data bases. Overview of massively distributed systems like Pig, Mahout, Pegasus, Hive, HBASE. (Discuss the pagerank problem) Homework: Run Map-Reduce job to develop a word count of trigrams in a large textual data set. Or run Mahout to develop a recommender system 10) Data Visualization. A picture is worth a thousand words. Show how large amounts of data can be displayed using graphical techniques. Give examples of some standard techniques. Treemap, Tufte … Topological Data Analysis. Tableau example on Hive. 11) In class team meetings on projects. 12) Final Project presentations. What did we learn?