(LSJ) What are Cloud infrastucture and platform services (CISP)?

(LSJ) What are Cloud infrastucture and platform services (CISP)?

Gartner’s new Magic Quadrant for Cloud infrastructure and platform services (ID G00441742. Gartner Report) updates the definition of cloud computing.

Cloud computing is a style of computing in which scalable and elastic IT-enabled capabilities are delivered as a service using internet technologies. Cloud infrastructure and platform services (CIPS) are defined as standardized, highly automated offerings, in which infrastructure resources (e.g., compute, networking and storage) are complemented by integrated platform services.

The scope of the Magic Quadrant for CIPS includes IaaS and integrated platform as a service (PaaS) platforms. These include (* are additions of editor *)

  • application PaaS (aPaaS),

  • functions as a service (FaaS),

  • database PaaS (dbPaaS),

  • Datawarehouse as a Service*

  • application developer PaaS (adPaaS) and industrialized private cloud offerings that are often deployed in enterprise data centers.

  • Cloud Integration / Cloud Deployment IaC as a Service*

  • Multi cloud management as a Service*

  • Security as a Service*

Read More

(LSJ) Seven critical capabilities for success of Cloud management Platform (CMP)

According Gartner, Cloud management platform (CMP) solutions are advisable to support the management of multi cloud deployments and avoid under management.

By 2021, 75% of organizations without Cloud Management tooling to manage their multicloud environments will spend more than they would have had they stayed on-premises, and will also lack needed policy and governance capabilities, increasing the likelihood of security and/or compliance exposures.

Gartner has identified seven capabilities critical to the success of the use cases commonly involved in this endeavor (see Note 1):

  • Provisioning and orchestration

  • Inventory and classification

  • Service requests

  • Monitoring and analytics

  • Manage costs and optimize resources

  • Cloud migration, disaster recovery (DR) and backup

  • Identity, security and compliance

The common use cases are:

  • Agile applications

  • Reliable applications

  • Lift-and-shift data center

  • Strategic DevOps transformation

(LSJ) What is Data Science Platform?

When building teams

Market Definition/Description

Data Science Platform definition

A cohesive software application that offers a mixture of basic building blocks essential for creating all kinds of data science solution, and for incorporating those solutions into business processes, surrounding infrastructure and products.

Artificial intelligence (AI) is hyped:

Hype about AI is at its peak, but AI must be distinguished from data science and ML. Of course, data science is the core discipline for the development of AI, and ML is a core development of AI, but this is not the whole story. ML is about creating and training models; AI is about using those models to infer conclusions under certain conditions. AI is on a different level of aggregation to data science and ML. AI is at the application level.

Data Science and ML models must be combined to work together with other capabilities, such as a UI and workflow management, to constitute an AI Application.

The Report finds variety of audiences to data science and ML platforms (modified):

  • Citizen data scientists who are accessing (open) data and building data science and ML models. They come from roles such as business analyst, line of business (LOB) analyst, data engineer, and application developer.

  • LOB data science teams who address initiatives in areas such as digital marketing, risk management, Customer Engagement Management.

  • Corporate data science teams who have strong executive sponsorship, and can take a cross-functional approach. They do model building and end-to-end process for building and deploying data science and ML models.

  • Star (Mavericks) Data Scientists. The Python, R, Apache Spark Gurus.

(Gartner Report Magic Quadrant for Data Science and Machine Learning Platforms, published 28 January 2019 ; by Analysts Carlie Idoine, Peter Krensky, Erick Bretheneoux, Alexander Linden).

(LSJ) Everyone wants to just focus on business logic

AWS re:invent Keynote with Werner Vogels, CTO, Amazon.com

AWS re:invent Keynote with Werner Vogels, CTO, Amazon.com

API Gateway gets Websocket Support

ALB Support for Lambda