April 2024
Intermediate to advanced
602 pages
16h 37m
English
There is a wide range of machine learning (ML) and data science technologies available, encompassing both open-source and commercial products. Different organizations have adopted different approaches when it comes to building their ML platforms. Some have opted for in-house teams that leverage open-source technology stacks, allowing for greater flexibility and customization. Others have chosen commercial products to focus on addressing specific business and data challenges. Additionally, some organizations have adopted a hybrid architecture, combining open-source and commercial tools to harness the benefits of both. As a practitioner in ML solutions architecture, it is crucial to be knowledgeable about the ...
Read now
Unlock full access