メインコンテンツへスキップ

Artificial intelligence for call centers

Three people working simultaneously on laptops
Contents

このページを共有

Mike McNamara
Mike McNamara
59 閲覧

Call centers are an important part of enterprise operations in many industries, and the importance of call center agents has grown significantly as a result of the Covid-19 pandemic. Customer call centers are now a primary point of contact between many businesses and their customers. Today’s agents are not just problem solvers and order takers but also contributors to sales.

AI and sentiment analysis

Because of the number of calls these centers process, meaningful assessment of performance may be next to impossible without automation. Artificial intelligence (AI) is emerging as an innovative new tool in tracking the success of call center interactions. NetApp and SFL Scientific have combined their expertise to help enterprises address the implementation of a state-of-the-art deep learning model to detect sentiment in near-real-time during call center interactions, providing insight into the customer’s state of mind, employee performance, and more.

Sentiment analysis uses natural language processing (NLP) to determine whether the sentiment expressed during a customer call is positive, negative, or neutral. Using this approach, your call center can take advantage of vast amounts of previously untapped data. For instance, you could use sentiment analysis to correlate customer sentiment with regard to specific brands or products, track overall customer satisfaction, or monitor the sentiment of individual customers.

NetApp AI: accelerate innovation

NetApp and SFL Scientific have developed an easy-to-implement AI pipeline that captures and displays the sentiment of call center conversations in real time. The joint solution can be quickly deployed on premises, trained, and tailored to your specific requirements to provide a better customer experience and to gain greater insight from every call center interaction. The general methodology implemented is applicable to a broad range of NLP and other AI challenges. For example, the combination of transfer learning, experimentation, iterative fine tuning, intelligent data management, and production deployment with regular retraining can be applied to a wide range of NLP and other AI use cases in your business.

Learn more

Read this white paper titled “Using AI technology to optimize call center outcomes” to learn how NetApp and SFL Scientific can help you get your AI project to production more quickly with fewer missteps. NetApp and SFL Scientific have combined their expertise on other important AI use cases, like deep learning to identify COVID-19 lesions in lung CT scans, and monitoring face mask usage in healthcare settings. For information on NetApp AI solutions, visit www.netapp.com/ai.

Mike McNamara

Mike McNamara

Mike McNamaraは、NetAppの製品およびソリューション マーケティング担当シニア リーダーであり、25年以上にわたってデータ管理とクラウド ストレージ マーケティングに携わってきました。10年以上前にNetAppに入社する前は、Adaptec、Dell EMC、HPEで勤務していました。また、主要なチーム リーダーとして、ファーストパーティのクラウド ストレージ サービスや、業界初のクラウド対応AI/MLソリューション(NetApp)、ユニファイド スケールアウトおよびハイブリッド クラウド ストレージ システムおよびソフトウェア(NetApp)、iSCSIおよびSASストレージ システムおよびソフトウェア(Adaptec)、ファイバチャネル ストレージ システム(EMC CLARiX)の発売を推進しました。過去には、Fibre Channel Industry Associationのマーケティング分野の議長を務めたこともあり、Ethernet Technology Summitの諮問会議や、Ethernet Allianceの現役メンバーとして、業界誌に頻繁に寄稿しているほか、各種イベントにスピーカーとして数多く登壇しています。さらに、FriesenPressより『Scale-Out Storage - The Next Frontier in Enterprise Data Management』というタイトルの書籍を発行しているほか、KaposによりB2B製品マーケティング担当トップ50に選出されたこともあります。Mike McNamaraのすべての投稿を見る

次のステップ

Artificial intelligence for call centers