Computer science professionals have partnered with digital marketers in order to deploy newly developed technologies in order to drive transactions. Both for-profit organizations and charities are beginning to adopt them, due to the fact that they offer users substantial features without requiring them to invest in a great deal of additional physical infrastructure. In many cases, it’s possible to adapt them without a significant amount of retraining as well.
That’s largely due to the fact that these systems utilize the latest research in generative adversarial networks and reinforcement learning. GAN technology examines a database filled with training examples and attempts to calculate the overall probabilistic distribution of specific elements in said data. Mainstream media coverage has largely focused on the way artists can use these networks to generate large numbers of images, but there’s a number of advantages they offer to marketers.
Deploying an Adversarial Communication Network
Business managers who want to learn more about the reasons that their clients get in touch with them can collect timestamp and related metadata about all incoming messages and use this as a numerical seed for adversarial subroutines. Computer scientists have found that JSON worksheets and other standard data structures are more than capable of maintaining this information. Machine learning subroutines attached to these can eventually start to identify patterns, which may help sales managers spot situations where they might be able to move more of their goods than usual.
Customer service improvements are often an important part of increasing sales, which is why AI in contact center is the latest gamechanger. Predictive algorithms can help to spot potential trouble spots and ensure that a sufficient number of agents are on staff at the times most likely to require their services. Over time, this can help to boost sales by helping customers have a higher opinion of the businesses they work with.
Mimicry in an Artificial Ecosystem
Various types of plants and animals will mimic other organisms in order to protect themselves against predators. This concept has largely been confined to the biological world, and it might be common among certain types of parasites in nature. Generative database architectures are increasingly incorporating this same concept by utilizing replicas of training sets in ways that would not stand out to a majority of human users of a particular sales channel.
Perhaps no other example demonstrates this as well as top-down financial forecasting, which involves taking a numerical snapshot of the historical direction of a financial network and attempting to draw future graphs based on previous data. Shareholders have long cautioned investors to avoid using past performance as an indication of future gains or losses. Top-down forecasters work somewhat differently than previous models, however, by examining specific economic indicators at various points in time in order to get a better handle on when and where certain price points can be expected.
No single model should ever be trusted wholeheartedly, especially when markets become particularly volatile. These are quickly becoming one more tool for stockholders who want to be certain that they have as much information as possible when making financial decisions as well as individual business owners who want to be certain of the right time to put certain products up for sale on the open market. They’re also becoming an important part of the biomedical landscape, where they’re being used to process the molecular structures of certain solids.
Utilizing Neural Networks for Pure Research
Though it doesn’t necessarily generate sales directly, a number of research organizations are turning their networks over to protein folding and other pure scientific pursuits. Advances that came around as a result of this work are being applied to customer engagement workflows and other big data processing chores associated with running a business. Many teams are claiming that they’ve solved certain queries that have caused problems for other data scientists for many years.
To some extent these claims are controversial, and it’s possible that current models simply haven’t been tested with every possible data point. Over time, it’s likely that at least some of the results of these studies are going to be called into question. By that point, however, there’s a good chance that many of the spin-offs of this research will have already passed into the hands of small business owners where it’s going to be used to help make sales.
Customers will end up enjoying the biggest benefits of this research, since they’ll enjoy better service as a result of it.