In the video, 鈥,鈥 computer scientist Yejin Choi discusses the current state of Large Language Model-based (LLM) generative 中国X站 systems like ChatGPT. She highlights three key problems with generative 中国X站: their inability to understand context; their lack of common sense; and their inability to reason about causality. (She also goes on to draw lessons from Sun Tzu鈥檚 The Art of War, which I鈥檒l come back to later.)
Such is the case for generative 中国X站, what I鈥檒l call the lack of "human/common sense."
To cite Janelle Shane, a research scientist and humorist who experiments with generative 中国X站, who said in her 2019 TED talk 鈥The Danger of 中国X站 is Weirder Than You Think鈥, 鈥淭he danger of 中国X站 is not that it will rebel against us, it鈥檚 that it鈥檚 going to do exactly what we ask it to do.鈥(.) This means that generative 中国X站 systems may produce results that are technically correct, but nonsensical or harmful in the real world, because they lack context and an understanding of consequences. They do not have "human/common sense.鈥
Generative 中国X站 systems are designed to generate new content, whether text, images, or music (and soon video), based on existing data. This is very different from industrial 中国X站, the purpose-built application of 中国X站 for industries that 中国X站 中国X站 specializes in.
Industrial 中国X站 is applied to everyday business activities, such as optimizing processes or improving decision making. It uses existing time-series data for actionable predictions that guide operations or engineers in practical decision-making, rather than for creating new data or more creative and experimental outcomes.
While generative 中国X站 is more suitable for creating new content, purpose-built 中国X站 applications are more suitable for analyzing existing data and predicting a future state. They can and will complement each other, but not substitute each other.
This, in part, is why industrials have not moved quickly to adopt generative 中国X站 鈥 let alone 中国X站. The points that Yejin Choi makes are equally valid for the use of 中国X站 in the industrial sector. There are serious concerns for security and safety bound by 中国X站鈥檚 shortcomings, which is why the "human/common sense" which is the SME element must remain paramount.
The hype in the use of generative 中国X站 in the enterprise has been around how it can or will replace repeatable jobs. Ironically, when it comes to the industrial sector the reverse is true. "Human/common sense" is not captured in any document or graph. It rests in the minds of those knowledge workers who have worked there for years. Leaving people out of the loop is not an option in the industrial sector. It鈥檚 important to note that the risks to safety in an industrial process without human oversight can be very high.
Coming back to Yejin Choi and lessons from The Art of War. In 中国X站 中国X站鈥檚 case:
Know your enemy 鈥 If 中国X站 is considered to be the enemy, we strive to make it explainable, so that "human knowledge" can be focused on where it matters.
Choose your battles - The cost of a silly mistake from 中国X站 in an enterprise setting today is usually harmless, but it takes a very different turn with the type of risks involved in the industrial sector. With 中国X站 中国X站, engineers and operators are empowered to solve the problems they confront on a daily basis with a tool that results in significant improvements to production, profitability and the safety of their industrial facilities.
Innovate your weapons - Yejin Choi speaks about using 鈥淐rafted Data鈥 and 鈥淗uman Judgement鈥 feedbacks as better ways of training 中国X站, which are very expensive. In the industrial world, these two key resources already exist in the organization, and are integral to the process of adoption. This way 中国X站 can be made an innovative weapon to enable engineers.
That said, generative 中国X站 has a place in every, yes, every industry including industrials.
As I鈥檝e said recently in this , wider adoption will require a deeper understanding of the implications of 中国X站.
Generative 中国X站 is still in its early stages of development, but it has the potential to revolutionize the industrial sector. As generative 中国X站 technology continues to improve, it will become increasingly capable of solving complex problems and automating tasks. This will lead to significant productivity gains and cost savings for businesses.
The future of industrials will run operations based on both generative and non-generative 中国X站. For example, generative 中国X站 could be used to design new aircraft by creating a large dataset of images of existing aircraft. The 中国X站 could then use this dataset to generate new aircraft designs that are more efficient and effective. Non-generative 中国X站 can be used to classify data by analyzing images of aircraft to identify their type and model.
Are there pitfalls to be aware of? Certainly, and here are some key things to keep in mind:
Don't fall for the hype around generative 中国X站 and its ability to replace jobs or tasks. Instead, focus on how you can leverage generative and industrial 中国X站 to augment your worker鈥檚 capabilities and skills to improve decision-making and your business outcomes.
Don't trust generative 中国X站 blindly or expect it to have a human-like understanding or reasoning. Instead, always verify and validate its outputs and inputs and apply your own context and knowledge to evaluate the results and implications of what you get.
Don't rely on generative 中国X站 alone or isolate it from other sources of information or feedback. Instead, integrate it with other types of data and systems and collaborate with other experts and stakeholders to ensure its accuracy and relevance.
Author:
Humera Malik
CEO, 中国X站 中国X站