INFERRING APP DEMAND FROM PUBLICLY AVAILABLE DATA Rajiv Garg‚ Rahul Telang {rgarg‚ rtelang}@andrew.cmu.edu School of Information Systems & Management‚ Heinz College Carnegie Mellon University‚ Pittsburgh‚ PA August 2012 ABSTRACT With an abundance of products available online‚ many online retailers provide sales rankings to make it easier for consumers to find the bestselling products. Successfully implementing product rankings online was done a decade ago by Amazon‚ and more recently by Apple’s App Store
Premium App Store
Diabetes Mellitus Type 1 Etiology Genetic Autoimmune Disease Pancreas stops producing insulin -Insulin: hormone that enables people to get energy from food Beta cells destroyed by immune system -Beta cells: insulin-producing cells in pancreas Who is at risk? Children and Adults at any age Family history of Diabetes Genetics Geography: incidence increases the farther away from equator Normal Ranges of Blood Glucose 70-100 mg/dL Hyperglycemia Blood Glucose Level:
Premium Diabetes mellitus Insulin
the sample. In determining the volume‚ four techniques can be used – measuring through graduated cylinder (direct measurement)‚ measuring the length‚ width and height‚ measuring the circumference‚ and lastly‚ water displacement. All except the first method for
Premium Volume Density Liquid
Concept Care Map Nursing Practicum PNUR 1375 Conestoga College Huong Giang Pham March 23‚ 2012 Professor: Natalie Tidd Activity intolerance Related to: Bedrest‚ generalized weakness‚ pain As evidence by: Patient complains of fatigue; walked short distance with 4 wheel walkers and 2 people assisted. Patient had pain at the shoulders‚ hardly moved himself or transfer from bed to wheelchair. Increases the risk for Impaired skin integrity Related to: Bedrest As evidence by: Redness on coccyx
Premium Goal Nursing care plan Nursing
H010: Adjustment of Emotional Score of English Boys and Hindi Girls 1 – Boys‚ 2 - Girls and 1 - English and 2 – Hindi Group Statistics | | Gender | N | Mean | Std. Deviation | Std. Error Mean | Emotional Score | Boys | 175 | 10.9829 | 3.97329 | .30035 | | Girls | 120 | 13.9750 | 5.18152 | .47301 | Independent Samples Test | | Levene’s Test for Equality of Variances | t-test for Equality of Means | | F | Sig. | t | df | Sig. (2-tailed) | Mean Difference | Std. Error Difference
Premium Student's t-test Statistics Normal distribution
The Woodspurge The poem woodspurge uses different tools of poetry that are common in very good ways which makes a poem what is it gives it a back bone‚ a structure some might say its format or foundation but to me it is to enhance and to impasses a poem and to make it as relatable and as descriptive as possible. One of the tools used was a meter In poetry‚ meter is the basic rhythmic structure of a verse or lines in verse. Many traditional verse forms prescribe a specific verse metre‚ or a certain
Premium Poetry
Data Warehouses and Data Marts: A Dynamic View file:///E|/FrontPage Webs/Content/EISWEB/DWDMDV.html Data Warehouses and Data Marts: A Dynamic View By Joseph M. Firestone‚ Ph.D. White Paper No. Three March 27‚ 1997 Patterns of Data Mart Development In the beginning‚ there were only the islands of information: the operational data stores and legacy systems that needed enterprise-wide integration; and the data warehouse: the solution to the problem of integration of diverse and often redundant
Premium Data warehouse
insight into the usage of data warehousing and data mining techniques to enhance the productivity of the business. The study of the processes is analysed so as to get the need of adaptation according to inherent demands of these industries in near future. The main topics we are discussing here are: a) Data warehousing b) Data Mining c) ETL d) Data Mart An attempt has been made to analyse different ways of using these for the enhancement in the different field. Data warehousing and current
Premium Data warehouse Data mining Decision support system
"Data Compression and Data Processing” Please respond to the following: * Explain whether or not you believe there is a discernible difference in efficiency between compressing and decompressing audio data and compressing and decompressing image data. Provide at least three reasons for your argument. There are efficiency differences between a given compressions for audio or image‚ this is due to: 1. The difference in data‚ example bmp‚ jpg‚ gif of the same image‚ mp3‚ wav‚ ogg for
Premium Data compression Computer Data type
Systems In an article written By Suqing Wang‚ eHow Contributor SQL Server Vs. Oracle Data Types Database While designing and defining tables in databases‚ it is important to find out the data type for each column in the data tables. A data type is an attribute which defines the type of data an object can retain: integer‚ string‚ data and time‚ etc. There are basically three main types: text‚ numbers and date/times. The data types are different‚ depending on the database management system (DBMS)‚ the various
Premium SQL Database Relational model