Knygos.lt klubas Knygos.lt nariams
67,05 €
-30%
Įprastai
95,79 €
Data Quality Fundamentals
Data Quality Fundamentals
Knygos.lt klubas Knygos.lt nariams
67,05 €
-30%
Įprastai
95,79 €
  • Išsiųsime per 12–18 d.d.
Do your product dashboards look funky? Are your quarterly reports stale? Is the data set you're using broken or just plain wrong? These problems affect almost every team, yet they're usually addressed on an ad hoc basis and in a reactive manner. If you answered yes to these questions, this book is for you. Many data engineering teams today face the "good pipelines, bad data" problem. It doesn't matter how advanced your data infrastructure is if the data you're piping is bad. In this book, Barr…
  • Leidėjas:
  • Metai: 2022
  • Puslapiai: 288
  • ISBN-10: 1098112040
  • ISBN-13: 9781098112042
  • Formatas: 17.5 x 23.1 x 2 cm, minkšti viršeliai
  • Kalba: Anglų

Data Quality Fundamentals (el. knyga) (skaityta knyga) | Barr Moses | knygos.lt

Atsiliepimai

(3.70 Goodreads įvertinimas)

Aprašymas

Do your product dashboards look funky? Are your quarterly reports stale? Is the data set you're using broken or just plain wrong? These problems affect almost every team, yet they're usually addressed on an ad hoc basis and in a reactive manner. If you answered yes to these questions, this book is for you.

Many data engineering teams today face the "good pipelines, bad data" problem. It doesn't matter how advanced your data infrastructure is if the data you're piping is bad. In this book, Barr Moses, Lior Gavish, and Molly Vorwerck, from the data observability company Monte Carlo, explain how to tackle data quality and trust at scale by leveraging best practices and technologies used by some of the world's most innovative companies.

  • Build more trustworthy and reliable data pipelines
  • Write scripts to make data checks and identify broken pipelines with data observability
  • Learn how to set and maintain data SLAs, SLIs, and SLOs
  • Develop and lead data quality initiatives at your company
  • Learn how to treat data services and systems with the diligence of production software
  • Automate data lineage graphs across your data ecosystem
  • Build anomaly detectors for your critical data assets
Knygos.lt klubas
Knygos.lt nariams
67,05 €
-30%
Įprastai
95,79 €
Kaina registruotiems pirkėjams
Prisijunkite ir už šią prekę
gausite 0,96 Knygų Eurų!?
Išsiųsime per 12–18 d.d.
Įsigykite dovanų kuponą
Daugiau
  • Autorius: Barr Moses
  • Leidėjas:
  • Metai: 2022
  • Puslapiai: 288
  • ISBN-10: 1098112040
  • ISBN-13: 9781098112042
  • Formatas: 17.5 x 23.1 x 2 cm, minkšti viršeliai
  • Kalba: Anglų

Do your product dashboards look funky? Are your quarterly reports stale? Is the data set you're using broken or just plain wrong? These problems affect almost every team, yet they're usually addressed on an ad hoc basis and in a reactive manner. If you answered yes to these questions, this book is for you.

Many data engineering teams today face the "good pipelines, bad data" problem. It doesn't matter how advanced your data infrastructure is if the data you're piping is bad. In this book, Barr Moses, Lior Gavish, and Molly Vorwerck, from the data observability company Monte Carlo, explain how to tackle data quality and trust at scale by leveraging best practices and technologies used by some of the world's most innovative companies.

  • Build more trustworthy and reliable data pipelines
  • Write scripts to make data checks and identify broken pipelines with data observability
  • Learn how to set and maintain data SLAs, SLIs, and SLOs
  • Develop and lead data quality initiatives at your company
  • Learn how to treat data services and systems with the diligence of production software
  • Automate data lineage graphs across your data ecosystem
  • Build anomaly detectors for your critical data assets

Atsiliepimai

  • Atsiliepimų nėra
0 pirkėjai įvertino šią prekę.
5
0%
4
0%
3
0%
2
0%
1
0%
(rodomas nebus)
[{"option":"222","probability":1,"style":{"backgroundColor":"#ffffff"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba631ba76d1782294065.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"221","probability":1.3,"style":{"backgroundColor":"#e1032e"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba61ea9f381782294046.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"220","probability":1.6,"style":{"backgroundColor":"#ffffff"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba60167d251782294017.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"219","probability":1.5,"style":{"backgroundColor":"#e2022e"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba5ea1c47d1782293994.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"218","probability":1.5,"style":{"backgroundColor":"#ffffff"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba5d38b4a21782293971.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"217","probability":1.6,"style":{"backgroundColor":"#e3022e"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba5b981b7a1782293945.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"216","probability":1.4,"style":{"backgroundColor":"#ffffff"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba58b535551782293899.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}},{"option":"215","probability":0.1,"style":{"backgroundColor":"#ffe01a"},"image":{"uri":"\/uploads\/images\/wheel_of_fortune\/6a3ba53a6496f1782293818.png","sizeMultiplier":0.6,"landscape":true,"offsetX":-50}}]