This application relates generally to monitoring events relative to a service contract to gage a customer satisfaction level. The application relates more particularly to an artificial intelligence system that predicts when a low customer satisfaction level may lead to contract termination and implements or suggests remedial actions to raise the customer's satisfaction level.
Document processing devices include printers, copiers, scanners and e-mail gateways. More recently, devices employing two or more of these functions are found in office environments. These devices are referred to as multifunction peripherals (MFPs) or multifunction devices (MFDs). As used herein, MFPs are understood to comprise printers, alone or in combination with other of the afore-noted functions. It is further understood that any suitable document processing device can be used.
Businesses having one or more MFPs often enter into service contracts with a dealer or other service entity. Customer churn (or attrition) is a rate at which customers abandon a brand or servicing business. It more expensive and difficult to acquire a new customer than to retain an existing one. Companies may use customer feedback and surveys to collect data that may help to provide insights into customer satisfaction and causes of dissatisfaction and attrition. However, resulting data is limited and reveals only obvious causes of customer dissatisfaction.
Various embodiments will become better understood with regard to the following description, appended claims and accompanying drawings wherein:
correlation;
The systems and methods disclosed herein are described in detail by way of examples and with reference to the figures. It will be appreciated that modifications to disclosed and described examples, arrangements, configurations, components, elements, apparatuses, devices methods, systems, etc. can suitably be made and may be desired for a specific application. In this disclosure, any identification of specific techniques, arrangements, etc. are either related to a specific example presented or are merely a general description of such a technique, arrangement, etc. Identifications of specific details or examples are not intended to be, and should not be, construed as mandatory or limiting unless specifically designated as such.
Example embodiments herein predict when a customer will leave so an associated servicing company can make additional efforts to retain the customer and also change the current business practices and processes to preemptively maintain customer satisfaction. Big data and artificial intelligence (AI), which may comprise machine learning (ML), is used to systematically collect analytics from a large array of aspects of an MFP servicing business, beginning with contract commencement, to find corollary relationships and patterns between events and attrition, as well as events and retention, over an entire course of the customer-servicing business relationship. Analytics are employed to gather data from a variety of sources to find correlations between events and attrition/retention.
Machine learning is applied to stored customer service information to gage a customer's satisfaction level. When a customer's satisfaction level falls below a preselected threshold 136, a customer churn warning 140 is generated and displayed to administrator 142, suitably generating a notification or alarm 149 on a display 148 of an administrator workstation 152. Possible remedial actions associated with customer events are stored in server 108 and suitably displayed for each contract subject to a customer churn warning. An alarm is any suitable audible, visual or haptic notification, and may also comprise an e-mail to an administrator.
Server 108 includes any suitable AI/ML system, such as TensorFlow, Google Cloud ML Engine, Amazon Machine Learning (AML), Accord.net, Apache Mahout, or any other suitable platform.
Turning now to
Processor 202 is also in data communication with a storage interface 208 for reading or writing to a storage 216, suitably comprised of a hard disk, optical disk, solid-state disk, cloud-based storage, or any other suitable data storage as will be appreciated by one of ordinary skill in the art.
Processor 202 is also in data communication with a network interface 210 which provides an interface to a network interface controller (NIC) 214, which in turn provides a data path to any suitable wired interface or physical network connection 220, or to a wireless data connection via wireless network interface 218. Processor 202 is also in data communication with hardware monitor 219, suitably comprised of counters, toner, paper or ink level sensors, temperature sensors, error condition sensors, paper jam sensors or the like. Example wireless data connections include cellular, Wi-Fi, Bluetooth, NFC, wireless universal serial bus (wireless USB), satellite, and the like. Example wired interfaces include Ethernet, USB, IEEE 1394 (FireWire), Lightning, telephone line, or the like. Processor 202 is also in data communication with user interface 221 for interfacing with displays, keyboards, touchscreens, mice, trackballs and the like.
Also in data communication with data bus 212 is a document processor interface 222 suitable for data communication with the document rendering system 200, including MFP functional units. In the illustrated example, these units include copy hardware 240, scan hardware 242, print hardware 244 and fax hardware 246 which together comprise MFP functional hardware 250. It will be understood that functional units are suitably comprised of intelligent units, including any suitable hardware or software platform.
Turning now to
Referring next to
Contract Events Analytics 404:
Service Events Analytics collected 408:
Personnel events 410:
MFP/Customer Usage Analytics collected 412:
Environmental Events 420:
Multivariate analysis, and pattern recognition is used on collected data such that those factors that alone, or in combination, are correlated to predict churn in existing customers. This allows a company to determine whether a current/future customer is likely to discontinue services. When the prediction threshold is reached, service and sales employees can intervene to save a customer.
Data, such as that detailed above, can serve to change current processes and areas of focus. For example, if the frequency of error code for paper jams correlates highly with churn, it will allow a manufacturer to invest in technology to minimize the occurrence in paper jams over another error that is not correlated with attrition.
If a contract was not terminated as determined at block 632, the process returns to block 612. If terminated, event data for the terminated contract is gathered at block 636 and provides for updated AUML at block 640. The process then ends at block 644.
In certain situations, such as when a distributor maintains fleets of MFPs for multiple customers, it can be problematic to manually address concurrent or frequent alerts. This can be time consuming and may result in setting an alert threshold higher to lessen alerts that are to be remediated. Further example embodiments automate some or all of remedial actions.
Cloud server 804 functions as a print management server running a suitable device management system. An example is provided with Toshiba TEC's e-Bridge Cloud Connect system (ECC). ECC is implemented as a web-based device management system that facilitates real-time monitoring of technical alerts and warnings, remote device configuration and software changes, and accumulation of service data for problem diagnosis and problem resolution.
Devices 820 communicate with cloud server 804 via network cloud 132 and report state information such as installed applications 824, firmware or firmware version 828, and user interface information 832. Cloud server 804 determines whether new or updated software, configurations or firmware may work to improve customer satisfaction. This is suitably accomplished by comparing device state information for devices 820 with device state information associated with comparable devices with different state information. Once cloud server determines what updates or modifications are of possible assistance, these are pushed to, and installed in devices 820. These include new applications 836, updated applications 840, modified user interfaces 844 and updated firmware 848.
Next, the system determines whether level 2 automated remediation 952 is needed. Updated customer churn information is reevaluated at block 956. If it is determined at block 964 that this falls below an applied threshold, the system terminates at block 960. If not, updated device state information is obtained at block 968 device state information is obtained for comparable devices associated with satisfied customers at block 968. The devices for the at risk customer are then reconfigured in accordance with devices for satisfied customers at block 972. Updated customer churn information is reevaluated at block 976. If it falls below the threshold as determined at block 980, the system terminates at block 960. If it is above the threshold, an alarm is sent to an administrator at block 984 before ending at block 960.
While certain embodiments have been described, these embodiments have been presented by way of example only, and are not intended to limit the scope of the inventions. Indeed, the novel embodiments described herein may be embodied in a variety of other forms; furthermore, various omissions, substitutions and changes in the form of the embodiments described herein may be made without departing from the spirit of the inventions. The accompanying claims and their equivalents are intended to cover such forms or modifications as would fall within the spirit and scope of the inventions.
This application is a continuation-in-part from U.S. application Ser. No. 17/378,121, filed on Jul. 16, 2021.
Number | Date | Country | |
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Parent | 17378121 | Jul 2021 | US |
Child | 18125549 | US |