Reliable Machine Learning: Applying SRE Principles to ML in Production [Paperback] Chen, Cathy; Murphy, Niall Richard; Parisa, Kranti; Sculley, D. and Underwood, Todd Paperback - 2022
by Cathy Chen; Niall Richard Murphy; Kranti Parisa
- New
A$80.17
A$5.72
Delivery within USA
Standard delivery: 4 to 14 days
More delivery options
Standard delivery: 4 to 14 days
Dropship order
Ships from Mediaoutletdeal1 (Virginia, United States)
Details
- Title Reliable Machine Learning: Applying SRE Principles to ML in Production [Paperback] Chen, Cathy; Murphy, Niall Richard; Parisa, Kranti; Sculley, D. and Underwood, Todd
- Author Cathy Chen; Niall Richard Murphy; Kranti Parisa
- Binding Paperback
- Condition New
- Pages 408
- Volumes 1
- Language ENG
- Publisher O'Reilly Media
- Publication date 2022-10-25
- Illustrated Yes
- Features Illustrated, Index
- Bookseller's Inventory # 1098106229_new
- ISBN 9781098106225 / 1098106229
- Weight 1.5 lbs (0.68 kg)
- Dimensions 9.1 x 6.9 x 1 in (23.11 x 17.53 x 2.54 cm)
- Category Computers - Communications / Networking
- Library of Congress subjects Reliability (Engineering), Production engineering - Data processing
- Dewey Decimal Code 670.285
- Quantity available 5
About Mediaoutletdeal1 Virginia, United States
Biblio member since 2014
30 day return guarantee, with full refund including original shipping costs for up to 30 days after delivery if an item arrives misdescribed or damaged.
Reader reviews for Reliable Machine Learning: Applying SRE Principles to ML in Production [Paperback] Chen, Cathy; Murphy, Niall Richard; Parisa, Kranti; Sculley, D. and Underwood, Todd
Write a review for this book
Important Terms and Guidelines
- Please focus on the book’s content and context. Also, add any personal comments as to how you enjoyed the book. Substantiate your likes and dislikes. You may make comparisons to other books.
- Reviews must be at least 140 characters in length.
- Please do not reveal critical plot elements.
- This is not a help line. Contact customer support if you need help.
Your review must not include:
- Obscenities, discriminatory language, or other insulting language not suitable for public domain
- Advertisements, “spam” content, or references to other products, offers or websites.
- Email addresses, URLs, phone numbers, physical addresses or other contact information.
- Overly critical comments about other reviews or reviewers
- Time-sensitive material (i.e. promotional tours, seminars, lectures, etc.)
- Availability, price, or alternative ordering/shipping information