How to improve AI for IT by focusing on data quality

0
289

Whether you're choosing a restaurant or deciding where to live, data lets you make better decisions in your everyday life. If you want to buy a new TV, for example, you might spend hours looking up ratings, reading expert reviews, scouring blogs and social media, researching the warranties and return policies of different stores and brands, and learning about different types of technologies. Ultimately, the decision you make is a reflection of the data you have. And if you don't have the data—or if your data is bad—you probably won't make the best possible choice.

In the workplace, a lack of quality data can lead to disastrous results. The darker side of AI is filled with bias, hallucinations, and untrustworthy results—often driven by poor-quality data.

The reality is that data fuels AI, so if we want to improve AI, we need to start with data. AI doesn't have emotion. It takes whatever data you feed it and uses it to provide results. One recent Enterprise Strategy Group research report noted, “Data is food for AI, and what's true for humans is also true for AI: You are what you eat. Or, in this case, the better the data, the better the AI.”

But AI doesn't know if its models are fed good or bad data— which is why it's crucial to focus on improving the data quality to get the best results from AI for IT use cases.

Quality is the leading challenge identified by business stakeholders

When asked about the obstacles their organization has faced while implementing AI, 31% of business stakeholders  involved with AI infrastructure purchases had a clear #1 answer: the lack of quality data. In fact, data quality is ranked as a higher concern than costs, data privacy, and other challenges.

Why does data quality matter so much? Consider OpenAI's GPT 4, which scored in the 92nd percentile and above on three medical exams, which failed two of the three tests. GPT 4 is trained on larger and more recent datasets, which makes a substantial difference.

An AI fueled by poor-quality data isn't accurate or trustworthy. Garbage in, garbage out, as the saying goes. And if you can't trust your AI, how can you expect your IT team to use it to complement and simplify their efforts?

The many downsides of using poor-quality data to train IT-related AI models

As you dig deeper into the trust issue, it's important to understand that many employees are inherently wary of AI, as with any new technology. In this case, however, the reluctance is often justified.

Anyone who spends five minutes playing around with a generative AI tool (and asking it to explain its answers) will likely see that hallucinations and bias in AI are commonplace. This is one reason why the top challenges of implementing AI include difficulty validating results and employee hesitancy to trust recommendations.

While price isn't typically the primary concern regarding data, there is still a significant price cost to training and fine-tuning AI on poor-quality data. The computational resources needed for modern AI aren't cheap, as any CIO will tell you. If you're using valuable server time to crunch low-quality data, you're wasting your budget on building an untrustworthy AI. So starting with well-structured data is imperative.

To Know More, Read Full Article @ https://ai-techpark.com/data-quality-fuels-ai/  

Related Articles -

Digital Technology to Drive Environmental Sustainability

Democratized Generative AI

Trending Category - Threat Intelligence & Incident Response

Sponsored
Search
Sponsored
Categories
Read More
Religion
White Biotechnology Market Estimated to Experience a Hike in Growth by 2032
The Winning Report [Growth Rate, Demands, Status, and Forecast 2032], published by Econ Market...
By Jonn Kediya 2024-05-24 17:49:51 0 621
Business
Anti-counterfeit Packaging Market 2023 Segmentation and Opportunities Forecast by 2030
Anti-counterfeit Packaging Market Scope & Overview Market research is a crucial tool for...
By Nick Tech 2023-07-18 09:25:04 0 998
Business
Oilseeds Market North America Size, Share, Trends, and Growth Analysis by Forecast (2023-2030)
Oilseeds Market Highlights The global oilseeds market has been segmented based on category,...
By James Thomas 2023-11-02 08:58:46 0 863
Wellness
Perfusion Market Trends Grows at a Robust Pace Driven by Increasing Demand
Perfusion Market Insights And Analysis, By Type, Application, Device Type And End User -...
By Yolanda Burns 2023-08-22 11:50:29 0 797
Business
High-Speed Engine Market 2023 Challenges and Opportunities Forecast by 2030
High-Speed Engine Market Analysis Scope & Overview Economic, international, and country-level...
By Nick Tech 2023-10-24 06:19:07 0 1K