The dictionary definition of “reinvent the wheel” is to waste time trying to create something that someone else has already created. AI is a much newer technology than the wheel. However, its impact on our lives is comparable.
Because AI solves many different problems, people often think they need to start from scratch, but in many cases, this ends up being a modern-day equivalent of reinventing the proverbial wheel. The fundamentals of many AI solutions are based on similar algorithms and reusing what has gone before is usually a faster and smarter approach when it comes to building AI algorithms.
Cloudera, with its Enterprise Data Cloud platform, has made this possible through an “AI factory” approach. Turning data into decisions, you can make the process of building, scaling and deploying enterprise ML and AI solutions automated, repeatable and predictable.
Cloudera aims to accelerate the industrialisation of enterprise ML and AI. By using an AI factory approach through Cloudera Data Platform’s various tools such as Cloudera Enterprise Data Hub and Data Science Workbench, building repeatable AI models and ML algorithms is now made easier. This technique enables businesses to gain more insights from their data, detect unwanted activities and predict events anywhere at any scale – repeatedly, securely and effectively.
For enterprises that need to deploy custom AI and ML at their desired scale, Cloudera enables them to:
- Break down data and workflow silos with Cloudera Shared Data Experience (SDX) for secure, shared data access with consistent context.
- Deploy new machine learning workspaces for teams in a few clicks.
- Use their favourite tools while preserving security, efficiency and scalability without administrative overhead.
It is also important for organisations to distinguish the lineages of its ML models and data to trace and explain how the models were generated. This helps businesses to understand the impact of the data on their system and plan an appropriate approach in changing its management.
Through Cloudera Machine Learning with new MLOps features and Cloudera SDX for models, organisations can enjoy the benefits of unique model cataloguing and lineage capabilities and full end-to-end machine learning lifecycle management.
To learn more about how you can apply the AI factory approach for your business, click here.
Archive
- October 2024(44)
- September 2024(94)
- August 2024(100)
- July 2024(99)
- June 2024(126)
- May 2024(155)
- April 2024(123)
- March 2024(112)
- February 2024(109)
- January 2024(95)
- December 2023(56)
- November 2023(86)
- October 2023(97)
- September 2023(89)
- August 2023(101)
- July 2023(104)
- June 2023(113)
- May 2023(103)
- April 2023(93)
- March 2023(129)
- February 2023(77)
- January 2023(91)
- December 2022(90)
- November 2022(125)
- October 2022(117)
- September 2022(137)
- August 2022(119)
- July 2022(99)
- June 2022(128)
- May 2022(112)
- April 2022(108)
- March 2022(121)
- February 2022(93)
- January 2022(110)
- December 2021(92)
- November 2021(107)
- October 2021(101)
- September 2021(81)
- August 2021(74)
- July 2021(78)
- June 2021(92)
- May 2021(67)
- April 2021(79)
- March 2021(79)
- February 2021(58)
- January 2021(55)
- December 2020(56)
- November 2020(59)
- October 2020(78)
- September 2020(72)
- August 2020(64)
- July 2020(71)
- June 2020(74)
- May 2020(50)
- April 2020(71)
- March 2020(71)
- February 2020(58)
- January 2020(62)
- December 2019(57)
- November 2019(64)
- October 2019(25)
- September 2019(24)
- August 2019(14)
- July 2019(23)
- June 2019(54)
- May 2019(82)
- April 2019(76)
- March 2019(71)
- February 2019(67)
- January 2019(75)
- December 2018(44)
- November 2018(47)
- October 2018(74)
- September 2018(54)
- August 2018(61)
- July 2018(72)
- June 2018(62)
- May 2018(62)
- April 2018(73)
- March 2018(76)
- February 2018(8)
- January 2018(7)
- December 2017(6)
- November 2017(8)
- October 2017(3)
- September 2017(4)
- August 2017(4)
- July 2017(2)
- June 2017(5)
- May 2017(6)
- April 2017(11)
- March 2017(8)
- February 2017(16)
- January 2017(10)
- December 2016(12)
- November 2016(20)
- October 2016(7)
- September 2016(102)
- August 2016(168)
- July 2016(141)
- June 2016(149)
- May 2016(117)
- April 2016(59)
- March 2016(85)
- February 2016(153)
- December 2015(150)