We have Join. We have LeftJoin. We have RightJoin. But somehow we still don't have a proper full outer join in LINQ. That might come soon!
We have Join. We have LeftJoin. We have RightJoin. But somehow we still don't have a proper full outer join in LINQ. That might come soon!
In 2021, being a good software engineer felt great. The world was full of software, with more companies arriving every year who needed to employ engineers to write their code and run their systems. I knew I was good at it, and I knew I could keep doing it for as long as I wanted to. The work I loved would not run out.
In 2026, I’m not sure the software engineering industry will survive another decade. If it does, I’m certain it’s going to change far more than it did in the last two decades. Maybe I’ll figure out a way to carve out a lucrative niche supervising AI agents, or maybe I’ll have to leave the industry entirely. Either way, the work I loved is going away.
It’s unseemly to grieve too much over it, for two reasons. First, the whole point of being a good software engineer in the 2010s was that code provided enough leverage to automate away other jobs. That’s why programming was (and still is) such a lucrative profession. The fact that we’re automating away our own industry is probably some kind of cosmic justice. But I think any working software engineer today is worrying about this question: what will be left for me to do, once AI agents have fully diffused into the industry?
The other reason it’s unseemly is that I’m probably going to be one of the last to go. As a staff engineer, my work has looked kind of like supervising AI agents since before AI agents were a thing: I spend much of my job communicating in human language to other engineers, making sure they’re on the right track, and so on. Junior and mid-level engineers will suffer before I do. Why hire a group of engineers to “be the hands” of a handful of very senior folks when you can rent instances of Claude Opus 4.6 for a fraction of the price?
I think my next ten years are going to be dominated by one question: will the tech industry overshoot or undershoot the capabilities of AI agents?
If tech companies undershoot - continuing to hire engineers long after AI agents are capable of replacing them - then at least I’ll hold onto my job for longer. Still, “my job” will increasingly mean “supervising groups of AI agents”. I’ll spend more time reviewing code than I do writing it, and more time reading model outputs than my actual codebase.
If tech companies tend to overshoot, it’s going to get a lot weirder, but I might actually have a better position in the medium term. In this world, tech companies collectively realize that they’ve stopped hiring too soon, and must scramble to get enough technical talent to manage their sprawling AI-generated codebases. As the market for juniors dries up, the total number of experienced senior and staff engineers will stagnate, driving up the demand for my labor (until the models get good enough to replace me entirely).
Of course, the software engineering industry has looked like it was dying in the past. High-level programming languages were supposed to let non-technical people write computer code. Outsourcing was supposed to kill demand for software engineers in high-cost-of-living countries. None of those prophecies of doom came true. However, I don’t think that’s much comfort. Industries do die when they’re made obsolete by technology. Eventually a crisis will come along that the industry can’t just ride out.
The most optimistic position is probably that somehow demand for software engineers increases, because the total amount of software rises so rapidly, even though you now need fewer engineers per line of software. This is widely referred to as the Jevons effect. Along these lines, I see some engineers saying things like “I’ll always have a job cleaning up this AI-generated code”.
I just don’t think that’s likely. AI agents can fix bugs and clean up code as well as they can write new code: that is, better than many engineers, and improving each month. Why would companies hire engineers to manage their AI-generated code instead of just throwing more and better AI at it?
If the Jevons effect is true, I think we would have to be hitting some kind of AI programming plateau where the tools are good enough to produce lots of code (we’re here already), but not quite good enough to maintain it. This is prima facie plausible. Every software engineer knows that maintaining code is harder than writing it. But unfortunately, I don’t think it’s true.
My personal experience of using AI tools is that they’re getting better and better at maintaining code. I’ve spent the last year or so asking almost every question I have about a codebase to an AI agent in parallel while I look for the answer myself, and I’ve seen them go from hopeless to “sometimes faster than me” to “usually faster than me and sometimes more insightful”.
Right now, there’s still plenty of room for a competent software engineer in the loop. But that room is shrinking. I don’t think there are any genuinely new capabilities that AI agents would need in order to take my job. They’d just have to get better and more reliable at doing the things they can already do. So it’s hard for me to believe that demand for software engineers is going to increase over time instead of decrease.
It sucks. I miss feeling like my job was secure, and that my biggest career problems would be grappling with things like burnout: internal struggles, not external ones. That said, it’s a bit silly for software engineers to complain when the automation train finally catches up to them.
At least I’m happy that I recognized that the good times were good while I was still in them. Even when the end of zero-interest rates made the industry less cosy, I still felt very lucky to be a software engineer. Even now I’m in a better position than many of my peers, particularly those who are very junior to the industry.
And hey, maybe I’m wrong! At this point, I hope I’m wrong, and that there really is some je ne sais quoi human element required to deliver good software. But if not, I and my colleagues are going to have to find something else to do.

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From idea to pull request: A practical guide to building with GitHub Copilot CLI - The GitHub Blog by Ari LiVigni
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Vector Data in .NET - Building Blocks for AI Part 2 by Jeremy Likness
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Turns out Generative AI was a scam by Gary Marcus
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This is kind of a funny page to look at.
The next page has more detail. This is the text from the facing page:
What we do is very difficult, the current situation is hard to understand ,and the future is uncertain. Mistakes are an inevitable consequence of attempting to get the right stuff done. Unless we can make mistakes visible both individually and collectively ,we will be doomed to mediocrity.
One of the things that I’ve enjoyed about being at Redgate is that we try stuff and we sometimes fail. We talk about those issues in engineering and we do a decent job of an RCA and retrospective that we publish publicly (internally). I like that. Not every group does this, but many do, and lots of groups have influenced others to start or get better.
We’re not perfect, and we know it. However, we are striving to accept those imperfections in others, even as we try to improve.
I have a copy of the Book of Redgate from 2010. This was a book we produced internally about the company after 10 years in existence. At that time, I’d been there for about 3 years, and it was interesting to learn a some things about the company. This series of posts looks back at the Book of Redgate 15 years later.
The post The Book of Redgate: Mistakes appeared first on SQLServerCentral.
I am fascinated by tech marketing but would be lousy at it.
A common practice is to admit nothing -- my product, project, company, idea is perfect. And I get it because admitting something isn't perfect just provides fodder for marketing done by the other side, and that marketing is often done in bad faith.
But it is harder to fix things when you don't acknowledge the problems.
In the MySQL community we did a good job of acknowledging problems -- sometimes too good. For a long time as an external contributor I filed many bug reports, fixed some bugs myself and then spent much time marketing open bugs that I hoped would be fixed by upstream. Upstream wasn't always happy about my marketing, sometimes there was much snark, but snark was required because there was a large wall between upstream and the community. I amplified the message to be heard.
My take is that the MySQL community was more willing than the Postgres community to acknowledge problems. I have theories about that and I think several help to explain this:
In this video, I delve into the limitations of vector index preview in SQL Server 2025, sharing insights from my course “Get AI Ready with Erik.” I highlight key constraints such as read-only tables, restrictions on inserts and updates, and the necessity for an integer primary key. Additionally, I discuss practical strategies for managing data across multiple tables to accommodate these limitations, emphasizing the importance of planning ahead to ensure smooth operations when using vector indexes in your database environment.
`SQL Server 2025`, `Vector Indexes`, `Preview Feature`, `Limitations`, `AI in SQL Server`, `Data Modification`, `Read-Only Tables`, `Partitioning`, `Replication`, `Integer Primary Key`, `Clustered Index`, `Embeddings`, `Azure SQL Database`, `Stale Vector Index`, `Disabling Vector Indexes`, `Table Management`, `Vector Search`, `Vector Distance`, `Roadmap`, `SQL Server 2025 Features`
Erik Darling here with Darling Data. Here to try to continue to educate you about AI and the vector stuff in SQL Server 2025. This is all, you know, small snippets of material from my course, Get AI Ready with Erik. You can buy that for a hundred bucks off with the coupon code up here. And when you do, you support me doing menial things in life, paying rent, cable bills, cell phone bills, nothing fun, right? No joy, no joy, just AI. But we’re going to talk about vector index preview feature limitations in this one. And because they are significant, and it’s hard to imagine, like, it’s hard to imagine releasing them in the current state as generally available. Like, these are just, this is just the stuff that we know about. This is not all the stuff behind the scenes that, you know, probably still needs tidying up, fixing all the other stuff. But just to sort of zoom in on some other things. When you create a vector index on a table, there are no inserts, updates, or deletes allowed. This is probably the number one reason that vector indexes are preview only. You know, like, we didn’t have the preview feature switch when columnstore indexes came out and like, you know, they were like, oh, these make the table read only two. And we didn’t have that. So if we did, maybe that would have been something. But if you try to do anything, you will get this funny error data modification statement failed, because table post embeddings has a vector index on it. So no inserts, updates or deletes from you. So just from the Microsoft docs, you know, obviously, tables read only, so that stinks. You can’t, like you can’t partition tables at vector indexes on. I don’t know if I care so much about this, right? Like, partitioning is a data management feature that everyone seems to confuse for a performance feature. And yeah, I just I just don’t care. You know, if it honestly, if that kept happening, and people were just stopped asking questions about partitioning their tables, I’d be I’d be thrilled. Another one that I kind of don’t care about no replication to subscribers, replication. This is like capital R replication, not like availability group, like, you know, log shipping, mirroring, stuff. This is like, you know, merge or transactional replication, you can’t replicate vector indexes to subscribers. Again, if this gets people away from replication, all in favor of it, right? Yeah, what a nightmare.
An integer primary key is required. So this is this is like for us like a single column. So like I think this one is probably the funniest one to me. Because Microsoft is almost like self limiting you in this way. Like, like, like, like, you can’t use like a big int, right? Like anyone who’s table like tables like are they’re like, wow, this table is going to get big, we need a big int for this. Microsoft’s almost like 2 billion rule limit, pass this, I can’t make any promises, right? Like that’s, that’s, that’s a funny one, right? So it has to be an integer has to that has to have a cluster primary key on just the integer. You can’t have any composite keys. You can’t like, you know, have your cluster primary key on a GUID or something like that.
Or something like that has to be the integer. That’s an amusing one. I don’t know the story behind that. But you know, maybe maybe they’re trying to save you from yourself. And of course, if you drop the index and you insert data into the table, you have to rebuild it if you want to start using it again, that one’s fairly straightforward. Azure SQL database, at least in some regions, where the vector, the disk and vector indexes have rolled out to they, as of this, as of this date, not all Azure regions support this.
They do have a setting called allow stale vector index that allows rights, but the index will be stale until you rebuild it. This is not available in SQL Server 2025. You can’t currently disable a vector index, right? You have to drop it, right? If you try to disable the vector index, you will get this error that says one or more of the specified alter index options is unsupported for a vector index. So no disabling vector indexes. So if you have a system where you need to add data regularly, where like, you know, to a table, you’ll probably want to keep embeddings in a separate table from like, you know, your transactional stuff where people need to do things so that you may continue to make money off them.
You know, you might even set it up. So like, you have two tables. One of them is for, you know, like rows that you are actively, you know, like have like an active vector index on them. And another table that gets like new records that you have to like, you know, that you haven’t put into the vector search table yet, because you have to sort of like batch that, right? You would have to set up a process where, you know, like it’s some cadence that makes sense to you, you would have to drop the vector index.
You know, like either, you know, you’ve already either generate embeddings for new records or already have them like in like a second table in like put the new put the like newer embeddings into the vector into the table that you want to have the vector index on and then rebuild the vector index. Then you could, you know, you could combine searches like, like one, like, you know, like, so like a union all query where one of them does the vector search, the other one does the vector distance search on the unindexed data. So the downside for that is if you are like, if you have like sort of like hot vector data, you know, like new records wouldn’t be searchable with vector search until you, until you like batch them into the new table, you would have to continue to use like the vector distance to do that.
But the general pattern that you would want to follow is combine them. Right. So almost like, you know, like some people like some people will pretty commonly have like, like, like, like, not really like partitioned with capital P partitioned, but they’ll have like sort of like an archival table that has like much older stuff in it. And they’ll have a newer table for like newer data, maybe even like three tables where it’s like, you know, you have like archived and then like, you know, like lukewarm data and then like hot data.
And you’ll just like union all those together with like constraints on each so that like if there’s a date based search, SQL Server knows which one to go to. But you could you could do something sort of similar with your like, you know, not archived, but like indexed vector data and your new vector data where you just sort of union all two things. And just like, well, this I can vector search this I need to vector distance because I don’t have an index on that yet.
And I can’t use vector search without a vector index. And I can’t just put the data directly into the table with the vector index on it because the vector index makes a table read only. You would just have to sort of find a way to combine both of those, which, you know, right, right now is not a great story.
And that’s why vector indexes are in preview. They’re not, you know, they’re not in the generally available category because they’re sort of a nightmare, right? Like it makes a lot of processes not fun to use.
There’s a lot of feature interoperability that just isn’t great with stuff. So, like, I get it. I get why Microsoft made the choice.
But, you know, you know, vector indexes will probably be nice someday. But for now, like we’re looking at like the stone age of vector indexes in SQL Server. And, you know, I think what’s what’s really depressing about it, you know, from like someone who cares about the database product quite a bit is there’s like no roadmap.
There’s no timeline. There’s no like, you know, it’s just sort of like, oh, we’ll get to it when we get to it. Like, stay away.
It’s, you know, you can’t get an answer from anyone on anything. And, you know, you can’t help but feel that Microsoft’s priorities in other areas are taken away from what what was trotted out by all sorts of folks at the company to be like the flagship feature of SQL Server 2025. Whenever everything that we saw, like the word SQL Server was barely in like the marketing header.
It was like it’s like like, yeah, it’s like SQL Server 2025. But it was like fabric, AI, ground to cloud to whatever. And you’re like, OK, well, where’s where’s the database?
And then didn’t we? Isn’t that what we care about? Isn’t that what we’re here for? So I don’t know. It would be cool if, you know, we had people were a little bit more transparent about when these things might stop sucking. But for now, we must embrace the suck for the suck has embraced the warm embrace of suckiness is what we have.
Anyway, that’s probably enough here. Thank you for watching. I hope you enjoyed yourselves.
I hope you learned something and I will see you. Oh, I don’t know when I when I see you. Who knows? Maybe I’ll just quit. Maybe that’s enough of this. All right.
Thank you for watching.
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The post Get AI-Ready With Erik: Vector Index Preview Feature Limitations appeared first on Darling Data.