briefly explain the challeges in using AI?
Answers
Answer:
Bias
Bias is one of the biggest challenges facing AI. Try as we might to have data that is an absolute fact, there is inevitable bias when you explore the depths to which AI might be used. Forbes India explains the inherent bias in data, “An inherent problem with AI systems is that they are only as good – or as bad – as the data they are trained on. Bad data is often laced with racial, gender, communal or ethnic biases. Proprietary algorithms are used to determine who’s called for a job interview, who’s granted bail, or whose loan is sanctioned. If the bias lurking in the algorithms that make vital decisions goes unrecognized, it could lead to unethical and unfair consequences…In the future, such biases will probably be more accentuated, as many AI recruiting systems will continue to be trained using bad data. Hence, the need of the hour is to train these systems with unbiased data and develop algorithms that can be easily explained. Microsoft is developing a tool that can automatically identify bias in a series of AI algorithms.”
Computing Power
The tech industry has faced computing power challenges in the past. But, the computing power necessary to process massive volumes of data to build an AI system, and utilizing techniques like deep learning, is unlike any other computing power challenge that has been previously faced in the tech industry. Obtaining and funding that level of computing power can be challenging for businesses, particularly startups.
Integrating AI
Seamlessly transitioning to AI is more complicated than adding plugins to a website or creating a Visual Basic for Applications (VBA) enhanced Excel Workbook. One must ensure that current programs are compatible with AI requirements, and that AI is implemented into these programs without stopping current output. The AI interface needs to be set up in a way that infrastructure, data storage, and data input are considered, and that the output is not negatively affected. Additionally, once this is completed, ensure that all personnel are trained on the new system.
Collecting and Utilizing Relevant Data
For an organization to successfully implement AI strategies and programs, they must have a base set of data and maintain a constant source of relevant data to ensure that AI can be useful in their selected industry. Data can be collected on various applications with a multitude of formats such as text, audio, images, and videos. The wide range of platforms to collect this data adds to the challenges of artificial intelligence. In order to be successful, all this data must be integrated in a manner that the AI can understand and transform into useful results.
Man Power
Because AI is an emerging technology, there are few who possess the skills or training necessary for artificial intelligence development. Because this is a significant problem in the software development industry, many companies will need to allocate additional budget towards artificial intelligence development training, or the hiring of artificial intelligence development specialists. McKinsey further explains the challenge of sourcing the skills necessary for artificial intelligence development, “With talent being one of the biggest challenges to AI, no matter how advanced a company’s digital program, it’s perhaps not surprising that companies are leaving no stone unturned when sourcing people and skills. Most commonly, respondents say their organizations are taking an “all of the above” approach: hiring external talent, building capabilities in-house, and buying or licensing capabilities from large technology firms.”
Implementation Strategies
Artificial intelligence can transform almost every industry, but one of the major challenges of artificial intelligence is the lack of a clear implementation strategy. In order to be successful a strategic approach needs to be established while implementing AI. This includes identifying areas that need improvement, setting objectives with clearly defined benefits, and ensuring a continuous process improvement feedback loop.
To compound the issue, managers will need to have a solid understanding of current AI technologies, their possibilities and limitations, as well as keeping up to date on the current challenges with AI. This will enable organizations to identify areas that can be improved by AI.
Legal Issues
One of the newest challenges of artificial intelligence include the recent legal concerns being raised that organizations need to be wary of AI. If AI is collecting sensitive data, it might be in violation of state or federal laws, even if the information is not harmless by itself but sensitive when collected together. Even if it’s not illegal, organizations need to be careful of any perceived impact that might negatively affect their organization. If the data collected is perceived by the public as violating their data privacy, the improvement for the organization might not be worth the potential public relations backlash.
Answer:
- Artificial Intelligence is a technology that even a layperson is interested in The reason for this is that it has a tremendous tendency to disturb every part of life.
- Artificial intelligence appears to be a mix of optimism and pessimism. Of course, in varying proportions.
- The most beneficial machine learning and deep learning approaches require a sequence of calculations to be performed very quickly in microseconds, nanoseconds, or even slower.
- It is evident that various AI techniques require a significant amount of
- For a longtime, AI has been a topic of discussion among experts. And it was always discovered that there was insufficient computing capacity to implement these AI techniques.
- For the time being, cloud computing and massively parallel processing systems have given promise to the application of these techniques, but as data quantities increase and deep learning proceeds toward automated construction of increasingly complex algorithms, cloud computing will become less useful.