
Title

Data Science For Business: What You Need To Know About Data Mining And Dataanalytic Thinking
Delivery time: 8-12 business days (International)
Written By Renowned Data Science Experts Foster Provost And Tom Fawcett, Data Science For Business Introduces The Fundamental Principles Of Data Science, And Walks You Through The Dataanalytic Thinking Necessary For Extracting Useful Knowledge And Business Value From The Data You Collect. This Guide Also Helps You Understand The Many Datamining Techniques In Use Today.Based On An Mba Course Provost Has Taught At New York University Over The Past Ten Years, Data Science For Business Provides Examples Of Realworld Business Problems To Illustrate These Principles. You?Ll Not Only Learn How To Improve Communication Between Business Stakeholders And Data Scientists, But Also How Participate Intelligently In Your Company?S Data Science Projects. You?Ll Also Discover How To Think Dataanalytically, And Fully Appreciate How Data Science Methods Can Support Business Decisionmaking. Understand How Data Science Fits In Your Organizationand How You Can Use It For Competitive Advantage Treat Data As A Business Asset That Requires Careful Investment If You?Re To Gain Real Value Approach Business Problems Dataanalytically, Using The Datamining Process To Gather Good Data In The Most Appropriate Way Learn General Concepts For Actually Extracting Knowledge From Data Apply Data Science Principles When Interviewing Data Science Job Candidates
By changing our most important processes and
products, we have already made a big leap forward. This ranges from the
increased use of more sustainable fibers to the use of more
environmentally friendly printing processes to the development of
efficient waste management in our value chain.
⚠️ WARNING (California Proposition 65):
This product may contain chemicals known to the State of California to cause cancer, birth defects, or other reproductive harm.
For more information, please visit www.P65Warnings.ca.gov.
Shipping & Returns
Shipping
We ship your order within 2–3 business days for USA deliveries and 5–8 business days for international shipments. Once your package has been dispatched from our warehouse, you'll receive an email confirmation with a tracking number, allowing you to track the status of your delivery.
Returns
To facilitate a smooth return process, a Return Authorization (RA) Number is required for all returns. Returns without a valid RA number will be declined and may incur additional fees. You can request an RA number within 15 days of the original delivery date. For more details, please refer to our Return & Refund Policy page.
Shipping & Returns
Shipping
We ship your order within 2–3 business days for USA deliveries and 5–8 business days for international shipments. Once your package has been dispatched from our warehouse, you'll receive an email confirmation with a tracking number, allowing you to track the status of your delivery.
Returns
To facilitate a smooth return process, a Return Authorization (RA) Number is required for all returns. Returns without a valid RA number will be declined and may incur additional fees. You can request an RA number within 15 days of the original delivery date. For more details, please refer to our Return & Refund Policy page.
Warranty
We provide a 2-year limited warranty, from the date of purchase for all our products.
If you believe you have received a defective product, or are experiencing any problems with your product, please contact us.
This warranty strictly does not cover damages that arose from negligence, misuse, wear and tear, or not in accordance with product instructions (dropping the product, etc.).
Warranty
We provide a 2-year limited warranty, from the date of purchase for all our products.
If you believe you have received a defective product, or are experiencing any problems with your product, please contact us.
This warranty strictly does not cover damages that arose from negligence, misuse, wear and tear, or not in accordance with product instructions (dropping the product, etc.).
Secure Payment
Your payment information is processed securely. We do not store credit card details nor have access to your credit card information.
We accept payments with :
Visa, MasterCard, American Express, Paypal, Shopify Payments, Shop Pay and more.
Secure Payment
Your payment information is processed securely. We do not store credit card details nor have access to your credit card information.
We accept payments with :
Visa, MasterCard, American Express, Paypal, Shopify Payments, Shop Pay and more.
Related Products
You may also like
Frequently Asked Questions
- Q: What is the primary focus of 'Data Science for Business'? A: The book primarily focuses on the principles of data science and how to apply data-analytic thinking to solve business problems.
- Q: Who are the authors of this book? A: The book is authored by Foster Provost and Tom Fawcett, both of whom are recognized experts in the field of data science.
- Q: Is this book suitable for beginners in data science? A: Yes, the book is designed to introduce fundamental concepts of data science, making it accessible for beginners as well as those looking to enhance their understanding.
- Q: What type of examples are included in the book? A: The book includes real-world business problems to illustrate data science principles and the application of data-analytic thinking.
- Q: How many pages does 'Data Science for Business' have? A: The book has a total of 413 pages.
- Q: What is the publication date of this book? A: The book was published on September 17, 2013.
- Q: What is the binding type of the book? A: The book is available in paperback binding.
- Q: Can I use this book to improve communication with data scientists? A: Yes, the book provides insights on how to improve communication between business stakeholders and data scientists.
- Q: What is the edition of 'Data Science for Business'? A: This is the first edition of the book.
- Q: Does this book cover job interview preparation for data science roles? A: Yes, it includes principles that can be applied when interviewing data science job candidates.