Kavita Ganesan 2024年11月26日
4 Business AI Predictions for 2022-2023
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随着AI技术的快速发展和疫情的推动,AI在商业应用中的地位日益重要。本文预测了未来几年商业AI领域的四个趋势:更多AI模型投入实际应用、AI从业者更加关注解决实际问题、负责任的AI发展将受到重视、以及更多行业开始应用AI。这些趋势将推动AI技术在各行各业的普及,并带来深远的影响。例如,更多低代码/无代码AI开发平台和AI解决方案的出现将加速AI模型的部署;数据科学家将更加注重解决实际问题,而非追求复杂的技术;企业将更加重视AI的伦理和社会影响,并采取措施确保AI的负责任使用;疫情带来的挑战也促使更多传统行业开始考虑使用AI技术来优化业务流程和提高效率。

🤔 **更多AI模型投入实际应用:** 过去,许多AI项目难以从原型阶段转化为生产环境,但随着ML部署平台、低代码/无代码AI开发服务以及AI供应商提供的开箱即用型解决方案(如语音识别、情感分析和工单路由)的兴起,越来越多的AI模型将被部署到实际应用中,推动AI技术在各行各业的落地。

💡 **AI从业者更加关注解决实际问题:** 过去,AI领域的研究重点更多地集中在技术本身,但现在,越来越多的商业从业者认识到,最新的技术不一定适用于所有实际应用场景。数据科学家开始更加关注解决实际问题,采用更简单、更可靠的技术来提高AI项目的成功率。

⚖️ **负责任的AI发展将受到重视:** 随着AI算法可能带来的负面影响逐渐引起关注,企业开始意识到算法的伦理和社会影响。未来,更多企业将成立专门的委员会来审查AI系统,并评估其潜在的社会影响,以确保AI技术的负责任使用。

🏭 **更多行业开始应用AI:** 疫情带来的挑战迫使许多传统行业重新思考其业务模式,AI技术将成为这些行业转型升级的关键驱动力。例如,医院、制造商和连锁餐厅等行业都将面临着技术转型的机遇和挑战,AI将帮助他们提高效率、降低成本并改善服务。

AI as a field, especially in the context of real-world applications, has been progressing at a rapid pace. This has been further accelerated by the onset of the COVID-19 pandemic. In fact, AI was found to be the most discussed technology in 2021. Having worked with numerous clients, big and small, in the integration of AI, here are 4 Business AI predictions in 2022 and beyond.

#1 Many more “deployed” models

In the recent past, businesses have had trouble operationalizing models and have not seen the value in many of their AI initiatives. In fact, Gartner’s research shows that only 53% of AI initiatives make it from prototype to production.

However, with the recent growth in the number of ML deployment platforms, low-code and no-code AI development services, and AI vendors providing out-of-the-box AI solutions, such as speech recognition, sentiment analysis, and ticket routing, we will start witnessing many more real-world applications of AI.

#2 The rise of problem-focused practitioners

While the focus of AI as a field has been strongly techniques-focused, business practitioners are slowly beginning to realize that the latest and greatest techniques may not necessarily work from a practical standpoint for many use cases. There is a fundamental difference between techniques that are still in “research mode” versus those that have been tried and tested.

Even though in the past, data scientists have taken pride in using the most sophisticated techniques to demonstrate expertise, data scientists are becoming more problem-focused. They’re adopting simpler techniques that will have a higher chance of success for real-world use cases. This change in thinking will improve the outcomes of many AI initiatives.

#3 Accountable AI will gain steam

With all the Facebook drama and regulations around AI still being limited and “in the talks”, more and more businesses are becoming aware of the problems with algorithms. Unless algorithms are used responsibly with downstream and long-term impact in mind, it’s clear that they can do significant damage. To that end, I’m seeing many data scientists and leaders talk about the ethics and implications of algorithms.

I believe that informal conversations around AI ethics are just the beginning. Some of these discussions will turn into action where businesses will start having their own committees to vet AI systems rigorously. Some will even study potential societal impact before the release of specific technologies—regardless of regulations. Regulations will only add another layer of oversight, especially for companies that have yet to take AI ethics and accountability seriously.

#4 Underserved industries will start adopting AI

AI has largely been a winning tool for large tech companies. But the stress caused by the COVID-19 pandemic, such as the shrinking labor force participation, workers not wanting to work on the front lines, social distancing requirements and others have forced many companies that used to rely heavily on the availability of workers to rethink their business models.

From allowing employees to work remotely, to automating away jobs that no human worker wants to do, are all options on the table for serious consideration. As part of this, AI will be a critical player in changing businesses forever.  Hospitals, manufacturers, and restaurant chains will all be at the crossroads of technology transformations.

Summary

While AI within business applications was a new concept several years ago, as you can see from these predictions that it’s becoming more mainstream and achievable. The growth of AI deployment and development platforms, mindset changes, and stress caused by the COVID-19 pandemic will all be true catalysts in making AI a reality for businesses.

The post 4 Business AI Predictions for 2022-2023 appeared first on Opinosis Analytics.

4 Business AI Predictions for 2022-2023

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