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Forecasting the Future: BPO Trends of 2024

Execs In The Know

Hyper-Automation is Revolutionizing BPO Operations Hyper-automation takes automation a step further by integrating multiple advanced technologies and platforms, such as artificial intelligence (AI), machine learning (ML), and robotic process automation (RPA), to optimize as many business processes as possible across a company.

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Nowhere to Go But Up: Bold AI Predictions for 2022

Uniphore

As we’ve seen with other innovations, the more familiar people become with the technology, the more they expect to see it. We’ve seen big tech like Apple, Amazon and Microsoft enter the healthcare market , even becoming worthy competitors to major healthcare players. And it’s a two-way street. This isn’t a new phenomenon.

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Top Conversational AI Statistics and Trends to Follow in 2022

Ameyo Callversations

Given below are some research-based statistics providing valuable insights related to the trends in the chatbot industry: Adoption of advanced chatbots across banking, retail, and healthcare sectors is expected to result in cost savings of $11 billion in a year by 2023, with over 70% of chatbots being retail-based.

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How Customer Experience is shaping during COVID-19 with ‘New Normal’

SurveySensum

To survive this pandemic, marketing managers need to adapt to resilience, innovation, agility, empathy and emotion and position themselves at the forefront of the longer-term shifts in consumer behavior resulting from this crisis. From buying groceries, banking, healthcare to learning every essential-have moved to mobile App.

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Wootric’s Deepa Subramanian on measuring the voice of the customer

Intercom, Inc.

Deepa joined me for a chat about everything from ways to prioritize customer experience to going all-in on machine learning. When building machine learning , large generic training models aren’t always the best. Lessons on building machine learning. Short on time? and “Why are they doing it?”