133 books
—
121 voters
Data Analytics Books
Showing 1-50 of 771
Storytelling with Data: A Data Visualization Guide for Business Professionals (Paperback)
by (shelved 39 times as data-analytics)
avg rating 4.38 — 8,396 ratings — published 2015
Data Science for Business: What You Need to Know about Data Mining and Data-Analytic Thinking (Paperback)
by (shelved 36 times as data-analytics)
avg rating 4.13 — 2,673 ratings — published 2013
Lean Analytics: Use Data to Build a Better Startup Faster (Hardcover)
by (shelved 21 times as data-analytics)
avg rating 4.11 — 8,238 ratings — published 2013
The Art of Statistics: How to Learn from Data (Hardcover)
by (shelved 20 times as data-analytics)
avg rating 4.15 — 5,831 ratings — published 2019
Python for Data Analysis (Paperback)
by (shelved 20 times as data-analytics)
avg rating 4.17 — 2,467 ratings — published 2011
Naked Statistics: Stripping the Dread from the Data (Paperback)
by (shelved 20 times as data-analytics)
avg rating 3.95 — 15,332 ratings — published 2012
The Signal and the Noise: Why So Many Predictions Fail—But Some Don't (Hardcover)
by (shelved 14 times as data-analytics)
avg rating 3.97 — 52,794 ratings — published 2012
Invisible Women: Data Bias in a World Designed for Men (Hardcover)
by (shelved 13 times as data-analytics)
avg rating 4.33 — 176,117 ratings — published 2019
Weapons of Math Destruction: How Big Data Increases Inequality and Threatens Democracy (Hardcover)
by (shelved 12 times as data-analytics)
avg rating 3.87 — 30,590 ratings — published 2016
Data Analytics Made Accessible (Kindle Edition)
by (shelved 11 times as data-analytics)
avg rating 3.76 — 324 ratings — published 2014
Everybody Lies: Big Data, New Data, and What the Internet Can Tell Us About Who We Really Are (Hardcover)
by (shelved 11 times as data-analytics)
avg rating 3.90 — 42,970 ratings — published 2017
Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die (Paperback)
by (shelved 11 times as data-analytics)
avg rating 3.66 — 2,125 ratings — published 2013
An Introduction to Statistical Learning: with Applications in R (Springer Texts in Statistics)
by (shelved 10 times as data-analytics)
avg rating 4.58 — 2,357 ratings — published 2013
The Visual Display of Quantitative Information (Hardcover)
by (shelved 9 times as data-analytics)
avg rating 4.39 — 8,729 ratings — published 1983
Visualize This: The FlowingData Guide to Design, Visualization, and Statistics (Paperback)
by (shelved 8 times as data-analytics)
avg rating 3.89 — 1,186 ratings — published 2011
The Big Book of Dashboards: Visualizing Your Data Using Real-World Business Scenarios (Paperback)
by (shelved 8 times as data-analytics)
avg rating 4.20 — 466 ratings — published
Data Smart: Using Data Science to Transform Information into Insight (Paperback)
by (shelved 8 times as data-analytics)
avg rating 4.12 — 1,021 ratings — published 2013
Trustworthy Online Controlled Experiments: A Practical Guide to A/B Testing (Paperback)
by (shelved 6 times as data-analytics)
avg rating 4.39 — 671 ratings — published
R for Data Science: Import, Tidy, Transform, Visualize, and Model Data (Kindle Edition)
by (shelved 6 times as data-analytics)
avg rating 4.53 — 1,236 ratings — published 2016
The Wall Street Journal Guide to Information Graphics: The Dos and Don'ts of Presenting Data, Facts, and Figures (Hardcover)
by (shelved 6 times as data-analytics)
avg rating 4.08 — 876 ratings — published 2009
Show Me the Numbers: Designing Tables and Graphs to Enlighten (Hardcover)
by (shelved 6 times as data-analytics)
avg rating 3.92 — 4,537 ratings — published 2004
Algorithms to Live By: The Computer Science of Human Decisions (Hardcover)
by (shelved 6 times as data-analytics)
avg rating 4.12 — 35,563 ratings — published 2016
Big Data: A Revolution That Will Transform How We Live, Work, and Think (Hardcover)
by (shelved 6 times as data-analytics)
avg rating 3.69 — 8,686 ratings — published 2013
Moneyball (Paperback)
by (shelved 6 times as data-analytics)
avg rating 4.27 — 146,881 ratings — published 2003
Better Data Visualizations: A Guide for Scholars, Researchers, and Wonks (Paperback)
by (shelved 5 times as data-analytics)
avg rating 4.36 — 205 ratings — published
How Charts Lie: Getting Smarter about Visual Information (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.07 — 1,335 ratings — published 2019
Artificial Intelligence: A Guide for Thinking Humans (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.33 — 4,131 ratings — published 2019
Automating Inequality: How High-Tech Tools Profile, Police, and Punish the Poor (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.02 — 2,862 ratings — published 2018
How to Make the World Add Up: Ten Rules for Thinking Differently About Numbers (Paperback)
by (shelved 5 times as data-analytics)
avg rating 4.11 — 8,427 ratings — published 2020
Data Visualisation: A Handbook for Data Driven Design (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.08 — 188 ratings — published 2016
Data Feminism (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.30 — 1,562 ratings — published 2020
Statistics Done Wrong: The Woefully Complete Guide (Paperback)
by (shelved 5 times as data-analytics)
avg rating 4.19 — 1,097 ratings — published 2013
The Data Warehouse Toolkit: The Complete Guide to Dimensional Modeling (Paperback)
by (shelved 5 times as data-analytics)
avg rating 4.19 — 1,041 ratings — published 1996
Too Big to Ignore: The Business Case for Big Data (Wiley & SAS Business)
by (shelved 5 times as data-analytics)
avg rating 3.65 — 130 ratings — published 2013
The Elements of Statistical Learning: Data Mining, Inference, and Prediction (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.43 — 1,906 ratings — published 2001
Freakonomics: A Rogue Economist Explores the Hidden Side of Everything (Hardcover)
by (shelved 5 times as data-analytics)
avg rating 4.01 — 904,839 ratings — published 2005
Information Dashboard Design: The Effective Visual Commmunication of Data (Paperback)
by (shelved 5 times as data-analytics)
avg rating 4.01 — 1,803 ratings — published 2010
How to Lie with Statistics (Paperback)
by (shelved 5 times as data-analytics)
avg rating 3.84 — 18,363 ratings — published 1954
Filterworld: How Algorithms Flattened Culture (Kindle Edition)
by (shelved 4 times as data-analytics)
avg rating 3.63 — 5,239 ratings — published 2024
Becoming a Data Head: How to Think, Speak, and Understand Data Science, Statistics, and Machine Learning (ebook)
by (shelved 4 times as data-analytics)
avg rating 4.18 — 500 ratings — published
The Analytics Setup Guidebook (ebook)
by (shelved 4 times as data-analytics)
avg rating 4.60 — 121 ratings — published
Practical Statistics for Data Scientists: 50+ Essential Concepts Using R and Python (Paperback)
by (shelved 4 times as data-analytics)
avg rating 4.21 — 261 ratings — published
SQL QuickStart Guide: The Simplified Beginner's Guide to Managing, Analyzing, and Manipulating Data With SQL (Coding & Programming - QuickStart Guides)
by (shelved 4 times as data-analytics)
avg rating 4.31 — 152 ratings — published
The Hundred-Page Machine Learning Book (Paperback)
by (shelved 4 times as data-analytics)
avg rating 4.25 — 1,475 ratings — published
Product Analytics: Applied Data Science Techniques for Actionable Consumer Insights (Addison-Wesley Data & Analytics Series)
by (shelved 4 times as data-analytics)
avg rating 4.18 — 28 ratings — published
Effective Data Storytelling: How to Drive Change with Data, Narrative and Visuals (Hardcover)
by (shelved 4 times as data-analytics)
avg rating 4.19 — 314 ratings — published
Data Strategy: How to Profit from a World of Big Data, Analytics and the Internet of Things (Paperback)
by (shelved 4 times as data-analytics)
avg rating 3.77 — 418 ratings — published
Practical SQL: A Beginner's Guide to Storytelling with Data (Paperback)
by (shelved 4 times as data-analytics)
avg rating 4.25 — 242 ratings — published
A Field Guide to Lies: Critical Thinking in the Information Age (Hardcover)
by (shelved 4 times as data-analytics)
avg rating 3.76 — 4,757 ratings — published 2016
Hands-On Machine Learning with Scikit-Learn and TensorFlow (ebook)
by (shelved 4 times as data-analytics)
avg rating 4.55 — 2,839 ratings — published 2017
“Data is Power (Sonnet)
Coming from a childhood passion for
electronics, initially I fostered a
favorable outlook on Artificial Intelligence,
but as further implications are beginning to
unfold, I'm developing an ominous distaste.
There is no question about the computational
capacities of AI, but humans are not equipped
to fathom, how to apply such power positively.
Then there is the question of instant garbage
generated by lazy prompts, passed as creativity.
It took 3 years of sweat and vision
for Michelangelo to sculpt David,
today AGI can do that in mere hours.
Does such instant cosmetic art have
any value! AI art is just fancy knockoff.
Human mind seeks understanding,
AI seeks data - lots and lots of data.
AI's hunger for data is matched only
by the billionaire's hunger for power.
How much power is enough power,
particularly now when data is power!
What's the point of power and data,
if they just empower criminal behavior!”
― Azad Earth Army: When The World Cries Blood
Coming from a childhood passion for
electronics, initially I fostered a
favorable outlook on Artificial Intelligence,
but as further implications are beginning to
unfold, I'm developing an ominous distaste.
There is no question about the computational
capacities of AI, but humans are not equipped
to fathom, how to apply such power positively.
Then there is the question of instant garbage
generated by lazy prompts, passed as creativity.
It took 3 years of sweat and vision
for Michelangelo to sculpt David,
today AGI can do that in mere hours.
Does such instant cosmetic art have
any value! AI art is just fancy knockoff.
Human mind seeks understanding,
AI seeks data - lots and lots of data.
AI's hunger for data is matched only
by the billionaire's hunger for power.
How much power is enough power,
particularly now when data is power!
What's the point of power and data,
if they just empower criminal behavior!”
― Azad Earth Army: When The World Cries Blood
“Using this technique, Baum et al constructed a forest that contained 1,000 decision trees and looked at 84 co-variates that may have been influencing patients' response or lack of response to the intensive lifestyle modifications program. These variables included a family history of diabetes, muscle cramps in legs and feet, a history of emphysema, kidney disease, amputation, dry skin, loud snoring, marital status, social functioning, hemoglobin A1c, self-reported health, and numerous other characteristics that researchers rarely if ever consider when doing a subgroup analysis. The random forest analysis also allowed the investigators to look at how numerous variables *interact* in multiple combinations to impact clinical outcomes. The Look AHEAD subgroup analyses looked at only 3 possible variables and only one at a time.
In the final analysis, Baum et al. discovered that intensive lifestyle modification averted cardiovascular events for two subgroups, patients with HbA1c 6.8% or higher (poorly managed diabetes) and patients with well-controlled diabetes (Hba1c < 6.8%) and good self-reported health. That finding applied to 85% of the entire patient population studied. On the other hand, the remaining 15% who had controlled diabetes but poor self-reported general health responded negatively to the lifestyle modification regimen. The negative and positive responders cancelled each other out in the initial statistical analysis, falsely concluding that lifestyle modification was useless. The Baum et al. re-analysis lends further support to the belief that a one-size-fits-all approach to medicine is inadequate to address all the individualistic responses that patients have to treatment. ”
― Reinventing Clinical Decision Support: Data Analytics, Artificial Intelligence, and Diagnostic Reasoning
In the final analysis, Baum et al. discovered that intensive lifestyle modification averted cardiovascular events for two subgroups, patients with HbA1c 6.8% or higher (poorly managed diabetes) and patients with well-controlled diabetes (Hba1c < 6.8%) and good self-reported health. That finding applied to 85% of the entire patient population studied. On the other hand, the remaining 15% who had controlled diabetes but poor self-reported general health responded negatively to the lifestyle modification regimen. The negative and positive responders cancelled each other out in the initial statistical analysis, falsely concluding that lifestyle modification was useless. The Baum et al. re-analysis lends further support to the belief that a one-size-fits-all approach to medicine is inadequate to address all the individualistic responses that patients have to treatment. ”
― Reinventing Clinical Decision Support: Data Analytics, Artificial Intelligence, and Diagnostic Reasoning












