Almost Timely News: ChatGPT Turns 1. What Have We Learned?
Almost Timely News: ChatGPT Turns 1. What Have We Learned? (2023-11-26) :: View in Browser
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What’s On My Mind: ChatGPT Turns 1. What Have We Learned?
It’s the one year anniversary of ChatGPT; 2022 was a landmark year with Stable Diffusion for images and ChatGPT for text. Since then, the world as we know it has changed dramatically.
So, what have we learned from this whiplash rollercoaster ride that we now call generative AI in the last year?
The first and most important thing that generative AI really changed is that non-technical, non-coding people got an on-ramp to AI. We’ve had AI for decades, and we’ve had very sophisticated, capable, and powerful AI for the last 20 years. However, that power has largely been locked away behind very high technical restrictions; you had to know how to code in languages like Python, R, Scala, and Julia to make the most of it. Today, you code in plain language. Every time you give an instruction to Bing, Bard, Claude, or ChatGPT, you are coding. You are writing code to create what you hope is a reliable, reproducible result in the same way that a programmer who writes in Python hopes.
The implications of this change are absurdly large, almost too big to imagine, and we’re only at the very beginning of this change. Clay Shirky once said that a tool becomes societally interesting once it becomes technologically boring, but AI is defying that particular trend. It’s still technologically quite interesting, but its simplicity and ease of use make it societally interesting as well.
And those societal changes are only beginning to be felt. Recently, I was on a call with a colleague who said that their company’s management laid off 80% of their content marketing team, citing AI as the replacement for the human workers. Now, I suspect this is an edge case for the moment; unless that team’s content was so bad that AI was an improvement, I find it difficult to believe the management knew what AI was and was not capable of.
That raises the second major thing we’ve learned in the last year: the general public doesn’t really have a concept of what AI is and is not capable of. The transformers architecture that powers today’s language models is little more than a token guessing machine, a machine that can take in a series of arbitrary pieces of data called tokens (in language models, these tokens correspond to 4 letter pieces of words), and then they attempt to predict what the next set of tokens would be in any given sequence. That’s all they are; they are not sentient, not self-aware, have no agency, and are incapable of even basic things like math (just ask any of them to write a 250 word blog post and you’ll almost never get exactly 250 words).
The general public, however, appears to be under the impression that these tools are all-knowing, all-powerful magic wands that will either usher in a world like Star Trek or Skynet, and the various AI companies have done little to rein in those extremes. In fact, a substantial number of people have gone on at length about the existential threat AI poses.
Look, AI doesn’t pose world-ending threats in its current form. A word guessing machine isn’t going to do much else besides guess words. Now, can you take that and put it into an architecture with other components to create dangerous systems? Sure, in the same way that you can take a pressure cooker and do bad things with it to turn it into an explosives device. But the pressure cooker by itself isn’t going to be the cause of mass destruction.
To be clear, there are major threats AI poses - but not because the machines are suddenly sentient. Two of the major, serious, and very near future threats that very few people want to talk about are:
AI poses a structural unemployment risk. It’s capable of automating significant parts of jobs, especially entry-level jobs where tasks are highly repetitive. Any kind of automation thrives in a highly repetitive context, and today’s language models do really well with repetitive language tasks. We’ve previously not been able to automate those tasks because there’s variability in the language, even if there isn’t variability in the task. With language models’ abilities to adapt to language, those tasks are now up for automation - everything from call center jobs all the way up to the CEO delivering talks at a board meeting. (sit on any earnings call and the execs largely spout platitudes and read financial results, both tasks machines could do easily)
As a result, we will, planet-wide, need to deal with this risk of structural unemployment. Yes, a lot of jobs will be created, but many more jobs will be curtailed because that’s the nature of automation. The US economy, for example, used to be mostly agriculture, and today less than 1% of the population works in agriculture. What the new jobs look like, we don’t know, but they won’t look anything like the old jobs - and there will be a long, painful period of transition as we get to that.
The second risk is substantially worsened income inequality. Here’s why, and it’s pretty straightforward. When you have a company staffed with human workers, you have to take money from your revenues and pay wages with it. Those human workers then go out into the broader economy and spend it on things like housing, food, entertainment, etc. When you have a company staffed more and more with machines and a few human workers to attend to those machines, your company still earns revenues, but less of it gets disbursed as wages. More of it goes to your bottom line, which is part of the reason why every executive is scrambling to understand AI. The promise of dramatically increased profit margins is too good to pass up - but those profit margins come at a cost. That cost is paying wages to fewer people.
What happens then is a hyper-concentration of wealth. Company owners keep more money - which is great if you’re an owner or a shareholder, and not great if you are unemployed. That sets up an environment where hyper-concentrated wealth exists, and for most of human history, that tends to end in bloodshed. People who are hungry and poor eventually blame those in power for their woes, and the results aren’t pretty.
The antidote to these two problems is universal basic income funded with what many call a robot tax - essentially, an additional set of corporate taxes. Where that will play out will depend very much on individual nations and their cultures; societies which tend to be collectivist such as Korea, Japan, China, and other East Asian nations will probably get there quickly, as will democratic socialist economies like the Scandinavian nations. Cultures which are hyper-individualistic, like the USA, may never get there, especially with corporations’ lobbying strength to keep business taxes low.
The third thing we’ve learned in this last year is how absurdly fast the AI space moves. Back in March of 2022, there were only a handful of large language models - GPT 3.5 from OpenAI, Google’s BERT and T5, XLNet, and a few others. Fast forward a year and a half, and we now have tens of thousands of language models. Take a look at all that’s happened for just the biggest players since the release of GPT-3.5:
When you look at this timeline, it becomes clear that the power of these models and the speed at which they are evolving is breathtaking. The fact that you have major iterations of models like LLaMa and the OpenAI GPT models within 6 months of the previous version - with a double of capabilities each time - is unheard of. We are hurtling into the future at warp speed, and in a recent talk by Andrej Karpathy (one of OpenAI’s top technologists), he said there was so far no indication that we’re running into any kind of architectural limits for what language models can do, other than raw compute limits. The gains we get from models continue to scale well with the resources we put into them - so expect this blistering pace to continue or even accelerate.
That’s quite a tour of the last year and change. What lessons should we take from it?
First, AI is everywhere and its adoption is increasing at a crazy rate thanks to the promises it offers and its ability to fulfill them in ways that previous generations of AI have not. The bottom line is this: AI will be an expected skill set of every knowledge worker in the very near future. Today, knowledge and skill with AI is a differentiator. In the near future, it will be table minimum. This harkens back to a refrain I’ve been saying in my keynotes for years: AI won’t take your job. A person skilled with AI will take the JOBS (plural) of people who are not. One skilled worker with AI can do the tasks of 2, 3, 5, or even 10 people. You owe it to yourself to get skilled up quickly.
Second, the pace of change isn’t slowing down. That means you need to stick close to foundational models like GPT-4-V, Claude 2.1, LLaMA 2, etc. - models that have strong capabilities and are adapting and changing quickly. Avoid using vendors who build their companies on top of someone else’s AI model unless there’s no other viable alternative, because as you can see from the list earlier, that rate of change is roughly 6-9 months between major updates. Any vendor who builds on a specific model runs the risk of being obsolete in half a year. In general, try to use foundational models for as many tasks as you can.
Third, everyone who has any role in the deployment of AI needs to be thinking about the ethical and even moral implications of the technology. Profit alone cannot be the only factor we optimize our companies for, or we’re going to create a lot of misery in the world that will, without question, end in bloodshed. That’s been the tale of history for millennia - make people miserable enough, and eventually they rise up against those in power. How do you do this? One of the first lessons you learn when you start a business is to do things that don’t scale. Do things that surprise and delight customers, do things that make plenty of human sense but not necessarily business sense. As your business grows, you do less and less of that because you’re stretched for time and resources. Well, if AI frees up a whole bunch of people and increases your profits, guess what you can do? That’s right - keep the humans around and have them do more of those things that don’t scale.
Here’s a practical example. Today, humans who work in call centers have strict metrics they must operate by. My friend Jay worked in one for years, and she said she was held to a strict 5 minute call time. She had to get the customer off the phone in 5 minutes or less, or she’d be penalized for it. What’s the net effect? Customers get transferred or just hung up on because the metric employees are measured on is time, not outcome - almost no one ever stays on the line to complete the survey.
Now, suppose AI tackles 85% of the call volume. It handles all the easy stuff, leaving only the difficult stuff for the humans. You cut your human staff some, but then you remove the time limits for the humans, and instead measure them solely on survey outcomes. Customers will actually make it to the end of the call to complete the survey, and if an employee is empowered to actually take the time to help solve their problems, then your customer satisfaction scores will likely skyrocket.
This would be contingent on you accepting that you won’t maximize your profits - doing so would require you to get rid of almost all your human employees. If you kept the majority of them, you’d have somewhat lower costs, but re-tasking those humans to solve the really thorny problems would let you scale your business even bigger. The easy stuff would be solved by AI, and the harder stuff solved by the majority of humans you kept around for that purpose.
Will companies do this? Some will. Some won’t. However, in a world where AI is the de facto standard for handling customer interactions because of its low cost, your ability to differentiate with that uniquely human touch may become a competitive advantage, so give that some thought.
Happy first birthday, ChatGPT, and let’s see what the world of generative AI has in store for us in the year to come.
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