Artificial Intelligence

Five Emerging Trends in Technology Support Services

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In recent years, the field of technology support has evolved rapidly to catch up with disruptive services technologies. In the meantime, technology innovation has led to fundamental changes in how support services are delivered. We highlight the following five technology trends expected to drive the evolution of the technology support services industry, and to shape new paradigms of support services, in the next three to five years.

AI and Virtual Agents

Chatbots have been under the spotlight and have seen some success in the consumer space. It has yet to deliver the promise in the domain of customer support in enterprise environments. With new breakthroughs like AI-powered conversation platforms, addressing critical challenges in natural language understanding, context resolution, and knowledge graph-guided question answering, we will be able to create more sophisticated virtual agents that possess deep knowledge about supported products. We now are able to provide end users with a new way of interacting with support services beyond the help desk. This will also allow a support organization to scale to new product domains, without having to scale its workforce proportionally.

Augmented Reality and Virtual Reality

Tech support is about expertise and knowledge sharing. With AR/VR technologies reaching a greater level of maturity, we expect to see these technologies used more in tech support scenarios, especially for hardware support. For example, a remote expert can visually guide a field agent who uses a mobile device or AR glasses to fix a problem, a novice agent could be trained on complex procedures in a VR-based, game-like setting, and a customer could be guided to a specific AR-enabled procedure to fix a problem himself after interacting with a virtual agent. The creation and curation of AR/VR capabilities will further scale support expertise beyond geographical, time, and even organizational boundaries. This technology trend can also foster a wider ecosystem of knowledge sharing, in which a problem can be solved by someone who can provide expertise and time, and gets rewarded for offering those as a service.

Support for Intelligent Devices

The devices being supported are increasingly embedded with sensors and monitoring capabilities to gather information about themselves and about the environment surrounding them. As a result, support service will increasingly rely on platforms to collect sensor and monitoring data from such devices, and use the data to proactively conduct maintenance, repair, or replacement tasks. For example, future intelligent ATM machines can be equipped with sensors that not only collect system events and logs, but also monitor cash levels, user access, temperature, noise, etc. Supporting such intelligent devices will involve processing streaming data in real time, and performing support actions intelligently. To facilitate intelligent support, the industry will push for more standardization of data format, data collection protocols, as well as APIs for providing such data as service.

Blockchain

Technology support involves many canonical applications of blockchain, such as parts and logistics, supply chain, transaction and billing, etc. Blockchain offers a shared, distributed, and decentralized ledger that serves as a foundation for trusted collaboration among multiple parties throughout the tech support processes. As industry practitioners gain more experience with the technology, the next wave of innovations will be focusing on standardizing blockchain solutions that can be seamlessly integrated with organizations’ IT systems to jointly drive the tech support ecosystem.

Cloud

Cloud provides the ubiquitous computing, storage and network infrastructure much needed in the future tech support paradigm. The AI and conversational platforms have been born and developed on the cloud; the content generated by AR/VR support applications will be stored, managed, and delivered through the cloud; the platform for supporting intelligent devices will be built on the cloud, leveraging big data and machine learning technologies. Cloud-based, managed blockchain networks (such as the IBM Blockchain Platform) will underpin the various blockchain solutions emerging in the tech support domain. The main advantage of cloud – its scalability – is key to solving the scalability problem in tech support as well.

In today’s digital age where cloud and AI are driving the way technology is designed, managed, and delivered, the traditional “break-fix” support models are no longer practical. Technology support services professionals at IBM are working hard to transform their own practices to align with ongoing hardware and software innovations, mindful of the fact that without a modern approach and support structure in place, support services would fail to keep up with the evolution of technologies. At the current pace of innovation, the technology trends described above will play a vital role in accelerating the transformation of technology support services into the future.
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To learn more about these emerging trends in technology support services through my new webinar, please visit http://ibm.biz/ITsuptrd.

Cognitive Platform for Support Services, IBM Research

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