Index

A

Abandoned basket statistics

Advanced analytics

analytic team responsibilities

core analytics compared to

Advertising results, assessment of

Analysis

analytic data set (ADS)

business importance of

“cherry picking” of findings

cloud computing

core versus advanced analytics

determination of

embedded scoring

enterprise analytic data set (EADS)

Enterprise Data Warehouse (EDW)

extract, transform, and load (ETL) process

framing the problem

G.R.E.A.T. criteria

grid computing

inferences versus computing statistics

MapReduce

massively parallel processing (MPP) database systems

processes

reporting compared to

samples versus population

sandbox environments

scalability

statistical significance

tools and methods for

Analytic data set (ADS). See also Enterprise analytic data set (EADS)

development

embedded scoring, inputs for

enterprise (EADS)

production

traditional

Analytic innovation center

commitment

failures, dealing with

guiding principles of

innovation council

scope of

sponsorship

team strength

technology platform

third-party products and services

Analytic methods

collaborative filtering

commodity models

ensemble models

page rank

text analysis

Analytic professionals

analytic teams of

business savvy and

business value of

certification of, need for

clean data and

commitment of

common misconceptions about

communication skills

creativity of

cross training

cultural awareness of

data scientists as

decisions, granularity of

education of

experience in industry

focus on importance of data by

information technology (IT) compared to

innovation and

intuition of ...

Get Taming The Big Data Tidal Wave: Finding Opportunities in Huge Data Streams with Advanced Analytics now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.