Kavita Ganesan 2024年11月26日
GPT-3: What is GPT-3 and what can it do for your business?
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GPT-3是Open AI开发的大型语言模型,本文探讨了其概念、功能、商业益处、风险等方面。它能完成多种任务,但也存在一些问题,如偏差传播、潜在抄袭、不可预测的性能等。

GPT-3是大型语言模型,能从提示生成多种数据

具有多种能力,如预测文本类别、生成代码等

对商业应用有益,可使AI开发更易、耗时更少

存在风险,如偏差传播、潜在抄袭等

There’s been a lot of talk about GPT-3 and generative AI in the news, social media, and probably from every AI practitioner or vendor whom you’ve been speaking with lately.

Everyone is super excited about the future that such AI tools hold.

But what exactly is this AI technology specifically and what does it mean for your business and your AI problems? Let’s explore!

What is GPT-3?

GPT-3 is a large language model developed by Open AI. It’s the successor of Open AI’s older language model, GPT-2 which was much smaller in comparison.

So, what’s a language model? A language model is a probability distribution over sequences of words learned from data. This probability distribution can then be used to complete sentences, validate sentence correctness, validate speech recognition predictions, translate one language to another, and much more.

As you can see, language models are pretty powerful, and in concept, this is not new. Language models have been around for decades.

Here’s an example of how a language model completes a sentence:

The car is about to ______crash => probability 0.08 stop => probability 0.92 Predicted answer: stop

Leveraging this general language model concept, GPT-3 is a gigantic language model capable of generating sequences of words, code, translations, summaries, or other types of data, starting from a source input, called the prompt.

Traditionally, language models have been trained on small datasets as it’s computationally expensive to train large language models. However, GPT-3, is trained on much of the Web, books, and Wikipedia data, which boils down to it being trained on billions of words. Further, GPT-3 is trained using a very deep and sophisticated neural network, helping it learn complex relationships between words.

This sort of training is not something we can easily replicate as it can cost millions of dollars for every training iteration.  In fact, it cost approximately 4.6 million dollars to train GPT-3 using a Tesla V100 cloud instance over 9 days. But what this level of sophistication means is that GPT-3 can answer all sorts of questions and complete sophisticated tasks with little hand-holding. You can think of GPT-3 as a super-intelligent Q&A machine.

What Can GPT-3 Do?

Some of the capabilities of GPT-3 include:

The Business Benefits of GPT-3

So, what is the benefit of GPT-3 for business applications?

In short: one model that can complete multiple tasks. Years ago, we had to develop a single specialized model for every task that we were looking to solve with AI. We needed the training data, the appropriate ML algorithm, and a data scientist.

But with large language models like GPT-3, for many tasks, you can leverage this single model by briefly teaching the model with examples of what types of output to produce. For certain tasks, you don’t even need that. You can just describe the task and provide the input and GPT-3 will generate relevant output. So, almost anyone can perform the AI “development”. 

For example, if you’re performing a classification task, you can prime the model on the types of expected categories. If you’re wanting generated content, you can tell what type of content you’re expecting. So it essentially democratizes AI development and makes it less time-consuming. 

Imagine developing a sentiment classifier with just 5 prompts. Is this too good to be true? The only way to know if it holds water on your data is to evaluate, evaluate, and evaluate. You will never run away from evaluation no matter how sophisticated the model as I repeatedly talk about in my book.

Is traditional ML going away because of GPT-3?

No. Task-specific models, smaller language models and classical ML is not going anywhere anytime soon. GPT-3 only works on tasks that it understands well or tasks that you can make it understand (see examples below). If you have highly domain-specific tasks, you’ll still have to build specialized models that are fine-tuned solely for those tasks.  

This only means that it’s going to get much easier to develop ML solutions for certain well-understood tasks. Or these models can be used to generate supplementary input for your specialized ML tasks.

What are the risks of GPT-3? 

Now let’s talk about the hard stuff. While GPT-3 has great potential, we still need to consider its broader implications for your AI applications and business.  Some of the risks of GPT-3 include:

These risks are real and people are already raising these issues in various formats.

GPT-3 Examples

Here are two examples of GPT-3 in action. 

Sentence Correction

In this example, GPT-3 is asked to edit English sentences.

GPT-3: Sentence correction

Sentiment Classification

In this example, GPT-3 is given examples of how to classify sentences, and then it does it on the last task. 

GPT-3: Sentiment orientation prediction

GPT-3 Key Takeaways

That’s all for this article!

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GPT-3 语言模型 商业益处 风险
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