Explore how AI-powered text analytics is revolutionising the automotive sector by unlocking insights from unstructured data and improving decision-making.
Understanding customer needs is a crucial aspect of the automotive industry. In fact, the industry has been quick to adopt these technologies in recent years, owing to its ability to deliver valuable insights into customer preferences and behavior.
According to a report by Capgemini, the share of automotive companies deploying AI at scale grew marginally to 10% compared to 7% in 2017. The number of selective AI implementations (at multiple sites in an organisation, but not at enterprise scale) has not moved significantly. It stood at 24% in January 2019, versus 27% in 2017. That being said, the global market for AI in the automotive industry is expected to grow at a CAGR of 55% from 2023 to 2032, with the market size expected to reach $600 billion by 2032.
The adoption of AI in the automotive industry has been driven by the need to improve safety, reduce costs, and enhance customer experience. AI has been used to develop advanced driver assistance systems (ADAS) that can detect and respond to potential hazards on the road. AI has also been used to optimise supply chain management, improve manufacturing processes, and enhance the overall quality of vehicles.
A Merit expert says, “The growth of AI in the automotive industry is expected to continue in the coming years, with the development of autonomous vehicles and the increasing demand for connected cars. In fact, it’s evident that the use of AI in the automotive industry is set to revolutionise the way we travel and interact with our vehicles in the future.”
There are many ways in which AI and text analytics technologies are being used in the automotive industry. Let’s look at what they are:
The automotive industry has been adopting AI and text analytics to improve the efficiency of their operations and provide better services to their customers. However, this adoption has not been without its challenges.
One of the biggest challenges is the complexity of the technology.
AI and text analytics require a significant amount of data to be effective, and automotive companies need to ensure that they have the necessary infrastructure in place to handle this data. For example, Tesla collects data from its vehicles to improve its self-driving technology. The company has a fleet of over 1 million vehicles, which generates a massive amount of data.
Another challenge is the lack of skilled talent in the field of AI and data science. Automotive companies need to invest in training their employees and hiring new talent to ensure that they have the necessary expertise to implement these technologies. For instance, General Motors has invested in training its employees in data science and AI to develop its autonomous vehicle technology.
The industry collects a significant amount of data from vehicles, and this data needs to be protected from cyber threats and other security risks. For example, in 2021, a hacker was able to access the source code of Tesla’s Autopilot system and demanded a ransom.
As AI and text analytics become more prevalent in the automotive industry, companies need to ensure that they are complying with all relevant regulations and standards. For example, the European Union has introduced the General Data Protection Regulation (GDPR), which regulates the collection and use of personal data.
Despite the challenges, the automotive industry is expected to continue to invest in AI and text analytics in the coming years. The use of AI and machine learning in the automotive industry is expected to grow by 39% between 2021 and 2026, with the global market for AI in the automotive industry expected to reach $10.8 billion by 2026.
The use of AI and text analytics in the automotive industry is expected to improve manufacturing processes, increase supply chain efficiency, and make driving safer, more comfortable, and more entertaining. With the increasing demand for connected cars, AI and text analytics will play a crucial role in providing better services to customers and improving the efficiency of operations.
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