Nine of out of ten CTOs recommend Agentic™. Use it or your company will be left behind! Side effects include cognitive atrophy, uncontrollable logorrhea, loss of context and purpose in life, and occasional torment nexus.
Allowing non-technical PMs to ship code is fine if they’re the one getting called up in the evenings and weekends when it breaks. Maybe it’s a good exercise to show how much has effort must be applied to each commit.
The SWEs get called too, particularly if SRE isn't able to untangle timely.
Don't want to be called? Don't make incidents. Healthy orgs, as a peer comment points out, avoid too much separation between the positions. Things like change review are supposed to avoid this, but often gets rubber-stamped for 'velocity' (into a wall).
When they "work" instead of "make a giant fucking mess" its because SWEs take shifts as SREs and the distinction is more about time in the mines and less about distinct job functions.
CTOs noticed it. When product pipeline is empty, because engineers finished all the outstanding tasks, the engineers are awarded with more work: "The new software engineer is a product leader. Someone thinking about what the product is, not just how it works", or, in other words, engineers are going to be tasked with putting more content "the what" into the product pipeline.
Has that not been what a senior SWE is? You’re making it sound like engineers need to be asked to implement features rather than contribute to design. At my company, if you are not coming up with new features or applications, your days are numbered.
Depends on the organization and on the SWEs. I do share your understanding, which is making me unfit for organizations, where the authority over "what" is firmly held by POs and the whole vertical on top of them.
Nobody wants to hear anyone's opinion but their own, we have a poverty of effective communications.
Nobody wants to communicate because it is pointless to communicate: what you say will be misunderstood, it will be repeated incorrectly and attributed to you, people will play games with your messaging and with you for trying to communicate.
The management bully game activates, and they all participate in keeping the engineer down.
This is normal at every engineering organization, it is lord of the flies.
And this is how we educate people, This situation is created. All because we refuse to recognize that learning how to debate controversy and learning how to manage disagreement is completely unrecognized as a valued skill.
So we avoid controversy and any disagreement is an opportunity to bully and force one's way. Which is completely avoidable, with basic effective communications training. Debate to understand, disagree to learn.
This sounds like dysfunction. As engineers, we're not necessarily any more correct than anyone else. But we do have a seat at the table, and good organizations at least listen.
Yup. This was a very useful precursor to the AI era: telling engineers they're worthless and they are there just to implement the specifications and ideas drawn up by more important people. Shutting them out of the earlier discussions and only informing of the project way down the road
Now they're just trying to reduce us to idiots shovelling coal (specs) into the furnace (LLMs)
Your average mid to senior SWE is too far from the actual use of the product to actually do that well though.
There are some smaller businesses and selectively structured ones where that's not the case but for the most part organizations keep engineers from interacting with the customers enough to really know what the customers need and want.
There are some cases where a savvy engineer can say "well if I unify X then it'll be trivial to make Y self service and that'll make redundant an entire category of support tickets" or "we've been getting a lot of requests for X, maybe Y should be extensible so that those can be trivially accommodated" but by and large engineering teams are not positioned to have the knowledge to identify these things. And this is mostly an intentional organizational architecture decision.
Copyright issues don't seem to be addressed by any large language model provider.
If an LLM is trained on GPL code then that code has become an intrinsic part of the model (because if it hasn't then what was the value of training on it). So shouldn't that model now also be licensed GPL?
And how do I know the LLM output is not reproducing substantial chunks of GPL'd code, making my code GPL?
Or alternatively. LLM is not human. Non human generated content has no copy right protection. Meaning all generative model output is automatically public domain.
They should think about what happens when expectations are so high that a single dev must deliver and maintain multiple products. What stops that single dev from leaving and offering the same product on his own.
Yep there is the grind em to be so efficient they may as well start on their own. And now the sales and marketing side of things can ne assisted with AI, albeit not as good as pros but better than a dev and no AI to help.
Moats for software/web companies that are entirely "we've built it, it would be too expensive for you to replicate it" are getting much weaker. It's now quick to produce something that at least looks close to an existing product. You can't clone the backend, the know-how to handle some weird interactions etc, but still, you can get fairly far mimicking the frontend, and LLMs can write you the fancy marketing buzzwords too.
I think the part you can't easily clone will turn out to be the institutional processes that allow you to run at scale, onboard new people, deal with common requests that AI cannot on its own (e.g. legal compliance), the relationships you have with partners and vendors, the legal setups you have in place etc.
I'd assume that plenty of developers feel capable to building a better jira, and some try, and few/none succeed despite atlassian doing everything in their power to drive clients away, because cloning the project isn't the hard part with that type of product.
> AI makes it cheap to write code. That is not the same as it being cheap to ship it, or to maintain it. One participant put it cleanly: cognitive debt is the new technical debt.
It being expensive to ship or maintain software still sounds like technical debt, no?
For cognitive debt, I'd expect something like context switching and reviewing large amounts of code being exhausting.
My worry is that AI will make these companies product-obsessed, the public will mistake the output for AGI, and the real engineering underneath will keep getting overlooked.
Decoded: it's next to useless, it's damaged pace, and it isn't value for money. It's boiling the ocean.
Implicitly they've woken up to the value proposition which was latent in their tech hires: detailed knowledge of their code and systems. They've just tossed that away, and even worse they've smooged it into unfathomable information systems which probably share aspects of it with their competitors.
CTOs / CEOs have demonstrated how completely useless they are pretty much across the board over the last few years. Groupthink and bandwagons, zero innovation or use of brain.
CTOs were told that the companies shares will be sold off if they can't produce AI results, and that the CEO will be deposed for "not having an AI strategy", so they should kindly shut up and go along with the flow.
There were some good insights in there. I like the idea of changing the hiring interview process to focus on testing code review ability. I feel like this would have been useful even before AI.
A candidate who can identify tradeoffs present in some code and make insightful comments is likely good at systems thinking. It's a highly effective way to test someone's knowledge, intelligence and taste.
It's actually brilliant because it provides the company with a way to actually improve their engineering posture since the company could land on a candidate who is more skilled than the engineers doing the interviewing. Many times in my career, I met engineers who seemed mediocre at first because they didn't know a fraction of what I knew, but I later found out they also knew a fair amount that I didn't know.
I've even had an extreme experience in the past year where a colleague seemed to struggle with basic code constructs and for the first month I was thinking to myself "this guy doesn't know how to code". He asked really basic questions and said he didn't know because his background was Python and not Typescript... But I know both of these languages and I just couldn't make sense of this explanation given the kinds of questions he asked and mistakes he made. If I had been asked to review him at the time, I would probably have given him a pretty bad review but after about 1 month and a half, this guy accelerated and literally became the most productive engineer on the team. No leetcode coding test could have predicted this.
Most leetcode tech interviews are a series of puzzles which most company insiders can solve but they never include problems that the candidate could solve but which the interviewer could not.
Leetcode interviews are horrible because they test a tiny subset of moderately difficult questions under time constraints and ignore a much larger set of problems that are much more complex. There is an incorrect assumption that someone who can solve extremely complex problems can also solve moderately complex problems under time constraints. This is absolutely not the case. It's almost mutually exclusive in fact since people who work on complex problems don't have the time or interest to practice solving simpler problems so they can never solve those fast enough to compete with fresh university grads who have been practicing those for years and don't know anything else.
On a different topic, I was sceptical of this comment:
"I honestly think you can have a fifteen thousand line PR and say, I need a human to review these three lines."
15k lines is a lot of code. I could destroy any software project, irreparably with 15k lines of code and not one engineer out of hundreds would recognize it unless they read carefully. You can absolutely destroy a codebase with 15k lines of code, without any obvious backdoors or malicious code. How would I do it? I would invent counter-productive abstractions and write a lot of unit tests for them to lock down the design... Then I would watch other engineers build on top to further lock it down... Let the flawed design accumulate debt for a few years until the entire codebase becomes slow, insecure and totally unmaintable. Nobody would ever remember that I'm the one who set the project on a bad course. Nobody ever suspects the person who invents the complex abstractions and who everyone comes to with questions... Also most engineers are afraid to ask why we need a SocketContextManager or a TaskContextSwitcherMediator or the TaskOrchestrator and TaskOrchestratorFactory that comes with it... Nobody will ask why we need 10 different Helm charts to split things up into microservices... Nobody will ask why we need 1000 top level dependencies with a total of 10k nested dependencies. Nobody will question those decisions because they're afraid they will look dumb for questioning complexity.
You cannot question system complexity without acknowledging that you find something to be complex... And this can be turned against you; "Oh so this is too complex for you?"
So my view is that every single one of these 15k lines needs thorough analysis. Each of those 15k lines represent the branches from which the next generation of twigs will sprout. If that branch isn't pointing in the right direction, better just cut it off as soon as possible before it becomes a central part of the codebase.
Counterpoint: you're doing a 15k line concrete implementation of a spec, or a module with fixed integration points.
There could still be a lot subtly wrong, but there are going to be stress points and high leverage validation methods you can use to avoid reading the whole 15k.
Considering all the possible levels of abstraction software can represent, I'm imagining it as a fractal. The worst case - a mistake can be introduced by generative AI at any of the abstraction levels at any moment. Meaning, at worst case the whole thing has to be in the head of at least one person to validate the result against. The moment a project is growing beyond a single person capacity to hold it in one head possibility of plausibly looking error introduced at any abstraction level is added to the usual multi-engineer coordination costs.
As a former CTO, nothing is less likely to make me believe a claim than prefixing it with "CTOs agree..."
Nine of out of ten CTOs recommend Agentic™. Use it or your company will be left behind! Side effects include cognitive atrophy, uncontrollable logorrhea, loss of context and purpose in life, and occasional torment nexus.
I'm willing to wager most CTOs would agree with you.
Exactly, this is an advertisement for their CTO dinner clubs.
I hear the dentist that doesn’t agree with the other nine is more interesting at parties.
Most of the time that dentist is more alike JFK Jr than Alfred Wegener, unfortunately.
On the other hand, basically every beat lines up with our experience, so :man-shrugging:
Also when you add: "at other companies. We at ACME Corp. have got everything under control."?
> The counterargument wasn’t a dismissal. It was a reframe: this is a management problem, not a technology problem.
oh wow, what a trustworthy source of information this human written article is.
Allowing non-technical PMs to ship code is fine if they’re the one getting called up in the evenings and weekends when it breaks. Maybe it’s a good exercise to show how much has effort must be applied to each commit.
Interesting comment because there are some companies that have a different model where SREs take on call for code that SWEs write. How do they work?
The SWEs get called too, particularly if SRE isn't able to untangle timely.
Don't want to be called? Don't make incidents. Healthy orgs, as a peer comment points out, avoid too much separation between the positions. Things like change review are supposed to avoid this, but often gets rubber-stamped for 'velocity' (into a wall).
When they "work" instead of "make a giant fucking mess" its because SWEs take shifts as SREs and the distinction is more about time in the mines and less about distinct job functions.
What CTOs did not notice yet is that cheap code exposes inefficiencies elsewhere.
Migrating Spring Boot apps from 3.x t 4.x is now easy given all the tooling available.
But the administrative load can't be reduced by faster code delivery and that's the new bottleneck.
CTOs noticed it. When product pipeline is empty, because engineers finished all the outstanding tasks, the engineers are awarded with more work: "The new software engineer is a product leader. Someone thinking about what the product is, not just how it works", or, in other words, engineers are going to be tasked with putting more content "the what" into the product pipeline.
Has that not been what a senior SWE is? You’re making it sound like engineers need to be asked to implement features rather than contribute to design. At my company, if you are not coming up with new features or applications, your days are numbered.
Depends on the organization and on the SWEs. I do share your understanding, which is making me unfit for organizations, where the authority over "what" is firmly held by POs and the whole vertical on top of them.
It has been my experience that nobody wants to hear the software engineer's opinion as to what will improve the product however.
Nobody wants to hear anyone's opinion but their own, we have a poverty of effective communications.
Nobody wants to communicate because it is pointless to communicate: what you say will be misunderstood, it will be repeated incorrectly and attributed to you, people will play games with your messaging and with you for trying to communicate.
The management bully game activates, and they all participate in keeping the engineer down.
This is normal at every engineering organization, it is lord of the flies.
And this is how we educate people, This situation is created. All because we refuse to recognize that learning how to debate controversy and learning how to manage disagreement is completely unrecognized as a valued skill.
So we avoid controversy and any disagreement is an opportunity to bully and force one's way. Which is completely avoidable, with basic effective communications training. Debate to understand, disagree to learn.
This sounds like dysfunction. As engineers, we're not necessarily any more correct than anyone else. But we do have a seat at the table, and good organizations at least listen.
Yup. This was a very useful precursor to the AI era: telling engineers they're worthless and they are there just to implement the specifications and ideas drawn up by more important people. Shutting them out of the earlier discussions and only informing of the project way down the road
Now they're just trying to reduce us to idiots shovelling coal (specs) into the furnace (LLMs)
Your average mid to senior SWE is too far from the actual use of the product to actually do that well though.
There are some smaller businesses and selectively structured ones where that's not the case but for the most part organizations keep engineers from interacting with the customers enough to really know what the customers need and want.
There are some cases where a savvy engineer can say "well if I unify X then it'll be trivial to make Y self service and that'll make redundant an entire category of support tickets" or "we've been getting a lot of requests for X, maybe Y should be extensible so that those can be trivially accommodated" but by and large engineering teams are not positioned to have the knowledge to identify these things. And this is mostly an intentional organizational architecture decision.
Copyright issues don't seem to be addressed by any large language model provider.
If an LLM is trained on GPL code then that code has become an intrinsic part of the model (because if it hasn't then what was the value of training on it). So shouldn't that model now also be licensed GPL?
And how do I know the LLM output is not reproducing substantial chunks of GPL'd code, making my code GPL?
Or alternatively. LLM is not human. Non human generated content has no copy right protection. Meaning all generative model output is automatically public domain.
Github copilot has filters for enterprise that remove the GPL code before it gets returned. At least that’s how my company has been covering itself.
Maybe this, but multiply by N licenses. Any given output may have ideas from all of them.
Law is probably going to take a while to catch up here.
They should think about what happens when expectations are so high that a single dev must deliver and maintain multiple products. What stops that single dev from leaving and offering the same product on his own.
The engineer might not be good at sales or at raising money or at doing taxes or doesn’t have the appetite for risk.
Yep there is the grind em to be so efficient they may as well start on their own. And now the sales and marketing side of things can ne assisted with AI, albeit not as good as pros but better than a dev and no AI to help.
Moats for software/web companies that are entirely "we've built it, it would be too expensive for you to replicate it" are getting much weaker. It's now quick to produce something that at least looks close to an existing product. You can't clone the backend, the know-how to handle some weird interactions etc, but still, you can get fairly far mimicking the frontend, and LLMs can write you the fancy marketing buzzwords too.
I think the part you can't easily clone will turn out to be the institutional processes that allow you to run at scale, onboard new people, deal with common requests that AI cannot on its own (e.g. legal compliance), the relationships you have with partners and vendors, the legal setups you have in place etc.
I'd assume that plenty of developers feel capable to building a better jira, and some try, and few/none succeed despite atlassian doing everything in their power to drive clients away, because cloning the project isn't the hard part with that type of product.
> AI makes it cheap to write code. That is not the same as it being cheap to ship it, or to maintain it. One participant put it cleanly: cognitive debt is the new technical debt.
It being expensive to ship or maintain software still sounds like technical debt, no?
For cognitive debt, I'd expect something like context switching and reviewing large amounts of code being exhausting.
My worry is that AI will make these companies product-obsessed, the public will mistake the output for AGI, and the real engineering underneath will keep getting overlooked.
Isn’t engineering always overlooked? It’s like a means to and end to non-engineers.
The best case for engineering is always: nothing went horribly wrong in public.
Decoded: it's next to useless, it's damaged pace, and it isn't value for money. It's boiling the ocean.
Implicitly they've woken up to the value proposition which was latent in their tech hires: detailed knowledge of their code and systems. They've just tossed that away, and even worse they've smooged it into unfathomable information systems which probably share aspects of it with their competitors.
AI destroyed their value.
This makes it seem like one is replacing the other. It's not. It's multiplying it.
CTOs / CEOs have demonstrated how completely useless they are pretty much across the board over the last few years. Groupthink and bandwagons, zero innovation or use of brain.
CTOs were told that the companies shares will be sold off if they can't produce AI results, and that the CEO will be deposed for "not having an AI strategy", so they should kindly shut up and go along with the flow.
What’s the point of paying people a ton of money and giving them lots of power if they simply follow a script given to them by others?
Between companies we have competition and capitalism. Within companies we have command economies at best and absolute monarchies at worst
Sounds like they’re followers and not leaders. So what are they getting paid for?
There were some good insights in there. I like the idea of changing the hiring interview process to focus on testing code review ability. I feel like this would have been useful even before AI.
A candidate who can identify tradeoffs present in some code and make insightful comments is likely good at systems thinking. It's a highly effective way to test someone's knowledge, intelligence and taste.
It's actually brilliant because it provides the company with a way to actually improve their engineering posture since the company could land on a candidate who is more skilled than the engineers doing the interviewing. Many times in my career, I met engineers who seemed mediocre at first because they didn't know a fraction of what I knew, but I later found out they also knew a fair amount that I didn't know.
I've even had an extreme experience in the past year where a colleague seemed to struggle with basic code constructs and for the first month I was thinking to myself "this guy doesn't know how to code". He asked really basic questions and said he didn't know because his background was Python and not Typescript... But I know both of these languages and I just couldn't make sense of this explanation given the kinds of questions he asked and mistakes he made. If I had been asked to review him at the time, I would probably have given him a pretty bad review but after about 1 month and a half, this guy accelerated and literally became the most productive engineer on the team. No leetcode coding test could have predicted this.
Most leetcode tech interviews are a series of puzzles which most company insiders can solve but they never include problems that the candidate could solve but which the interviewer could not.
Leetcode interviews are horrible because they test a tiny subset of moderately difficult questions under time constraints and ignore a much larger set of problems that are much more complex. There is an incorrect assumption that someone who can solve extremely complex problems can also solve moderately complex problems under time constraints. This is absolutely not the case. It's almost mutually exclusive in fact since people who work on complex problems don't have the time or interest to practice solving simpler problems so they can never solve those fast enough to compete with fresh university grads who have been practicing those for years and don't know anything else.
On a different topic, I was sceptical of this comment:
"I honestly think you can have a fifteen thousand line PR and say, I need a human to review these three lines."
15k lines is a lot of code. I could destroy any software project, irreparably with 15k lines of code and not one engineer out of hundreds would recognize it unless they read carefully. You can absolutely destroy a codebase with 15k lines of code, without any obvious backdoors or malicious code. How would I do it? I would invent counter-productive abstractions and write a lot of unit tests for them to lock down the design... Then I would watch other engineers build on top to further lock it down... Let the flawed design accumulate debt for a few years until the entire codebase becomes slow, insecure and totally unmaintable. Nobody would ever remember that I'm the one who set the project on a bad course. Nobody ever suspects the person who invents the complex abstractions and who everyone comes to with questions... Also most engineers are afraid to ask why we need a SocketContextManager or a TaskContextSwitcherMediator or the TaskOrchestrator and TaskOrchestratorFactory that comes with it... Nobody will ask why we need 10 different Helm charts to split things up into microservices... Nobody will ask why we need 1000 top level dependencies with a total of 10k nested dependencies. Nobody will question those decisions because they're afraid they will look dumb for questioning complexity.
You cannot question system complexity without acknowledging that you find something to be complex... And this can be turned against you; "Oh so this is too complex for you?"
So my view is that every single one of these 15k lines needs thorough analysis. Each of those 15k lines represent the branches from which the next generation of twigs will sprout. If that branch isn't pointing in the right direction, better just cut it off as soon as possible before it becomes a central part of the codebase.
Counterpoint: you're doing a 15k line concrete implementation of a spec, or a module with fixed integration points.
There could still be a lot subtly wrong, but there are going to be stress points and high leverage validation methods you can use to avoid reading the whole 15k.
Yeah, that didn’t make any sense. If it’s functional, it impacts the system. 15k lines sure sounds like a lot of bloat.
> Two years ago, the mandate was simple: spend on AI, no questions asked. That era is over.
2 years is an era now?
When it comes to AI, it really does seem so.
No it doesn't. Time still flows linearly. It's just bad writing.
Probably by AI
Considering all the possible levels of abstraction software can represent, I'm imagining it as a fractal. The worst case - a mistake can be introduced by generative AI at any of the abstraction levels at any moment. Meaning, at worst case the whole thing has to be in the head of at least one person to validate the result against. The moment a project is growing beyond a single person capacity to hold it in one head possibility of plausibly looking error introduced at any abstraction level is added to the usual multi-engineer coordination costs.