Entries for July 2022

15369 Views
3 Likes
0 Comments

Having explored information system record concepts, the objective of this article is to examine one particular type of field — the record business identifier. Its purpose is to uniquely identify an instance of a record.  Users of an information system are expected to have knowledge of, or access to, this value. The value is used to start down, or stay on, the ‘happy path’ of any business process that deals with the specific record instance it identifies.

17087 Views
12 Likes
0 Comments

When engaging on projects we need to lead our clients to get the outcomes we need for analysis. If we act passively and don’t take charge then they’ll take things all over the place and create chaos. In this article we’ll explore how a problem statement acts as a powerful tool to keep control of our engagement and analysis right through the project lifecycle.

15815 Views
0 Likes
0 Comments

Taking a product from an abstract idea to an item that’s widely available in the marketplace demands a hands-on approach to prevent things from falling through the cracks. A technique that goes back nearly a century, product lifecycle management (PLM) has for decades been used to improve the efficiency of product development and design.

In recent years, however, a growing number of organizations are realizing the capability of cloud-based PLM software to drive fulfillment benefits. There is a recognition that you can strengthen your supply chain management by deploying PLM from product conception to multi-faceted fulfillment. As your product approaches maturity, it necessitates changes to workflow, supply chain, and fulfillment processes as a means of attaining sales objectives and driving overall business strategy.

But before we get into that and how PLM affects fulfillment, first a definition of PLM.

17473 Views
6 Likes
0 Comments

Does it make sense to merge Agile philosophies with data science? The short answer is yes, as long as the organization recognizes and accommodates the ambiguous, non-linear nature of the data science process rather than expecting data scientists to fit into the same mold they’ve adopted for “Agile software development”. The problem, in my experience, is that this rarely happens. Probably because the data science field is still new, many organizations are still trying to shoehorn data science into Agile software engineering practices that compromise the natural data science lifecycle.

15137 Views
1 Likes
0 Comments

Data has emerged as the sole driver of the digital transformation of the present world. It has turned into the most significant resource, and without it, one couldn't really expect to succeed in today's crowded market. Organizations should proficiently utilize their data since it very well may be a factor that can differentiate you in corporate development.  This requires the compelling combination of artificial intelligence with data analytics for enhancing business processes.  The automated direction along with data-driven decision-making is rapidly turning into the standard in this digital world. Since the assortment of data and its analysis is more reachable than any time in recent memory, organizations of all shapes and sizes are leveraging this innovation, hence, noticing noteworthy outcomes. Yet, luring those significant experiences out of your data can be challenging when you reach "big data" extents.

 



Upcoming Live Webinars

 




Copyright 2006-2024 by Modern Analyst Media LLC