How I AI - How Microsoft's AI VP automates everything with Warp | Marco Casalaina
Episode Date: March 23, 2026Marco Casalaina, VP of Core AI Products and AI Futurist at Microsoft, demonstrates how he uses AI tools to automate administrative tasks that typically consume valuable time. Rather than using Warp as... a coding assistant (its primary marketed purpose), Marco leverages it to manage Azure resources, scan documents, compress videos, and more. He shows how these “micro-agents” can reduce friction in everyday workflows, allowing him to focus on higher-value activities. Marco also demonstrates how Microsoft 365 Copilot and ChatGPT can create triggered workflows that respond to emails or check for information on a schedule, highlighting how the line between consuming and building AI agents is blurring.What you’ll learn:How to use Warp to manage Azure resources and assign permissions without navigating complex web interfacesTechniques for automating document scanning and processing directly from the terminalMethods for analyzing and compressing video files using AI-generated FFmpeg commandsHow to create simple rules that dramatically improve AI performance for specialized tasksWays to build triggered workflows in Microsoft 365 Copilot that automatically respond to emailsHow to configure ChatGPT to perform scheduled tasks like checking for new contentStrategies for creating consistent AI interactions using AutoHotkey shortcuts—Brought to you by:Rovo—AI that knows your businessLovable—Build apps by simply chatting with AI—In this episode, we cover:(00:00) Introduction to Marco Casalaina(02:14) Why Marco chose Warp for administrative tasks(03:57) Demo: Using Warp to manage Azure resources and permissions(06:00) How CLI tools eliminate GUI friction for complex tasks(07:18) Creating rules to improve AI performance for specialized tasks(10:28) Demo: Document scanning automation(13:00) Combining odd and even pages using a Python automation(15:04) The value of ephemeral AI solutions vs. permanent tools(17:12) Video compression using FFmpeg commands(20:22) The concept of “ad hoc agents” for specific tasks(22:31) Demo: Creating triggered workflows in Microsoft 365 Copilot(25:51) Demo: Setting up scheduled tasks in ChatGPT(27:17) How AI automation changes time management(29:14) Teaching AI skills to the next generation(30:30) Strategies for improving AI performance with AutoHotkey—Detailed workflow walkthroughs from this episode:• How Microsoft's AI VP Automates Everything with 5 Micro-Agent Workflows: https://www.chatprd.ai/how-i-ai/microsofts-ai-vp-automates-everything-with-5-micro-agent-workflowsHow to Create an Automated Meeting Scheduler with Microsoft • 365 Copilot: https://www.chatprd.ai/how-i-ai/workflows/how-to-create-an-automated-meeting-scheduler-with-microsoft-365-copilot• How to Scan and Merge Two-Sided Documents into a Single PDF with AI: https://www.chatprd.ai/how-i-ai/workflows/how-to-scan-and-merge-two-sided-documents-into-a-single-pdf-with-ai• How to Automate Azure User Role Management with AI in the Terminal: https://www.chatprd.ai/how-i-ai/workflows/how-to-automate-azure-user-role-management-with-ai-in-the-terminal—Tools referenced:• Warp: https://www.warp.dev/• Microsoft Azure: https://azure.microsoft.com/en-us• Azure CLI: https://learn.microsoft.com/en-us/cli/azure/• Microsoft 365 Copilot: https://www.microsoft.com/en-us/microsoft-365/copilot• ChatGPT: https://chat.openai.com/—Other references:• NAPS2: https://www.naps2.com/• PyPDF2: https://pypdf2.readthedocs.io/• FFmpeg: https://ffmpeg.org/—Where to find Marco Casalaina:LinkedIn: https://www.linkedin.com/in/marcocasalaina/—Where to find Claire Vo:ChatPRD: https://www.chatprd.ai/Website: https://clairevo.com/LinkedIn: https://www.linkedin.com/in/clairevo/X: https://x.com/clairevo—Production and marketing by https://penname.co/. For inquiries about sponsoring the podcast, email jordan@penname.co.
Transcript
Discussion (0)
Warp is pretty magical, but you can add to the magic and make it work more smoothly.
You're talking about setting up little micro agents that do little tasks for you,
either one-off ones like we saw in warp or recurring and triggered ones.
And then this is making your life just easier.
As soon as I started using it for certain things like managing Azure,
giving Azure subscriptions and stuff like that, then I was hooked.
I was like, man alive, this is a really capable tool.
Until you start working with these agents, you don't really discover all the things that you can do with command lines.
But I think once you start to test those, then it kind of opens up your mind to what is really possible.
Welcome back to How IAI.
I'm Clairevout, product leader and AI obsessive here on a mission to help you build better with these due tools.
Today I have Marco Casillania, VP of Core AI Products and AI Futurist at Microsoft.
Marco is going to speed run through five.
Five AI use cases where microagents can reduce the friction of getting little tasks done,
whether they're technical or not so technical.
Let's get to it.
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Marco, thanks for joining How I-A-I.
I am excited because we're going to see a tool warp that we haven't yet seen on the podcast.
And we're going to see you use it for maybe not a.
its primary pitched use case, which is kind of agenetic coding, but for some sort of more
ancillary support use cases that you found to be really useful. So before we get into them,
why have you hooked so deeply into Warp in particular? I started using Warp, ironically,
because one of our own teams here at Microsoft tuned me into it. It was our PowerShell team.
And they were like, you should try this warp thing. It automates PowerShell really well.
And so I tried it.
And as soon as I started using it for certain things like managing Azure and, you know,
giving Azure subscriptions and stuff like that, then I was hooked.
I was like, man alive, this is a really capable tool.
And if you're looking for the sexiest episode of How I AI, it is this because we are going to
show you how to manage Azure resources with AI, which actually I'm making a joke because
I think it's so funny, but these are the kinds of things that if you are a software engineer
or an engineering leader or just building something, you are spending so much time on DevOps,
admin, configuration, IAM, all that kind of stuff takes all your time and you don't actually
get to the fun part of coding with AI. So, you know, show us maybe that specific use case and why
you think Warp was such a good fit for that and what the pain was before you had a tool like this.
Yeah, let's do this. So I was working with my colleague Govind the other day, and I needed to assign him access to a number of Azure resources. And, you know, you give them granular role. So here I needed to give him Azure AI user and Azure AI project manager. And this was part of a big project that Govind and I are working on. Now, to do this, it's actually not that easy, to be honest, to do this in Azure, you know, and especially if I do it with the web interface. There is a web point.
portal where I can go in there. And for each individual role, I can go find the role and assign it to
Govan and then the next role and assign it to Govan. It's not very efficient. If I were, for all
the roles I needed to give Govind, I mean, this would have taken me in an hour. So instead,
I do stuff like this. This is my prompt. I say, you know, I found Govin's email address in here to
begin with. And then I'm like, okay, now give him Azure AI user and Azure AI project manager on this
subscription that I'm looking at. And here it does it, right? So it will call AZ. AZ is this command
line interface. And this is Warp's superpower. Aside from being a coding agent, which as I know,
you know, a lot of people use it for, and I mostly don't actually. I actually use it more like this.
Whenever there's a command line interface, a CLI that can do something, Warp is freaking great at that.
And so it will call AZ repeatedly until it runs at the ground. Now here, I think it made a mistake
somehow, whatever it was doing, an A-Z-roll, this one, it kind of made a mistake here,
and then it got right back to it. And it did it, and it's like, okay, I'm done. And then I say,
okay, actually, I needed to give him contributor to roll on a whole subscription. And it does that,
too. No problem. And so I use this for all kinds of stuff here. But, you know,
for Azure administration and close your ears, Microsoft people, I have also used this to administer
your GCP, worked just as well with GCloud, the GCloud CLI.
So it's great at this stuff.
I was going to say if you have been victimized by AWS, Azure or GCP, admin interfaces
for assigning roles.
This is exactly the kind of workful you want to see.
And a meta thing I want to call out for people because I've worked in DevTools for quite
some time.
And one of the challenges as a product person and an engineer working on DevTools is
exposing a
GUI on these
very complex,
very interactive
sets of permissions,
capabilities, configurations.
It's actually a really hard design
problem. It's like a very hard
front-end design problem.
And what I love about
AI having access to
CLI tools,
APIs, MCPs, all these ways
to more programmatically access these
capabilities is you can actually
abstract away all of that front-end stuff and just let a user kind of query the system and get what
needs to get done. And so if you're on the other side of this, you're not the user, but you're
the builder of something like Azure. This makes it so much simpler to expose a quote-unquote
user interface to someone like you who needs to get a job done. And then I have to call out a second
thing, which is you're also doing what I would, I used to, sorry, RIP stack overflow a little bit,
but you know, I used to like Google, how do I kill all processes for Adobe? And then like find
the command line, you know, the command and then paste it in. And then, you know, you get the error and
you paste it back into search and you try to find it. And what I love about these more agentic
processes that have access to the terminal in the command line is you can just do that all in one
all in one interface totally yeah exactly now i will tell you though that there's a trick to making
this stuff work i mean warp is pretty magical to be honest but you can add to the magic and make
it work more smoothly and there's a couple of ways you could do that i mean if you think about what i did
with a z really uh if you look at my mcp servers well this one's it's off right now but i do connect this to
the Microsoft Docs MCP server when I'm doing like Azure administration because sometimes
you know in this case I knew exactly what roles I wanted to give Govan but there are times
when I have no idea what role somebody needs to do something like I'll be like give this person
whatever role they need to use Azure Document Intelligence and like you figure it out right
rather than leaving it to its own devices I can do as I'm doing here I can connect it to the Microsoft
documentation MCP server which is a pretty good MCP
server and then it'll go look it up and that makes it work much better. Another piece of this,
and we'll see it again in a moment, is the rules. So now, originally, like, out of the box,
when I tell it, so I give it these rules. And so, like, if I'm giving rules on a resource group,
roles on a resource group, I should say, I do need to activate my owner access first. So this is one of the
common problems that I have is that I have not activated my owner
access, which is like a hurdle I have to go through. And so I make Warp remind me. And Warp will be like,
so hey, did you activate your owner access before I start doing this? Because otherwise it's going
to fail. So you can give it these rules and MCP servers that kind of help it along and help it use
this stuff. Of course, that's useful for coding as well. But, you know, I find it super useful for
these kinds of things that I use it for. Well, and what I will call out, and this is no shade, but
this is not the most sophisticated prompting. I've never seen in my life. It's just like, hey,
when you're trying to do this, remind me to do that. If you're waiting on me, like,
pop open a browser, like wait for me to do the thing. And then you always use the CLI tool. And so I
actually love looking at your prompting here because it's very conversational. And I think people
get like wrapped around the axle on like my prompts have to be in the specific format and have to be
these like very gracefully designed things. And honestly, for most stuff, just taking the step of
writing like two or three steps that you need a system to follow are what makes things more,
more effective. And then speaking of kind of like step by step processes, one of the other things
I love about what you're doing with warp is you're just taking, again, I think these things that
you could do in a UI. And they would be annoying.
to do and not fun and just having a, you know, smart technical agent do them on your behalf. So you
want to walk us through how you did, how you did that with your daughter's homework?
Yeah. Let's talk about that. My daughter is studying for a math test right now. And it's tomorrow.
And her teacher gave her a practice test. And I decided to scan that in because sometimes what
I'll do is she'll take the test, but I'll take the practice test. I'll scan it in. And then I feed
to chat to PT and I'm like, make me variance of these problems. And it will do it, like
inequalities and things like that. It'll make other inequalities that are similar, but different so that
she gets a little bit more practice on these things. So I needed to scan this in. Now, my scanner has
a feeder and so it sucks in the pages, but this was a two-sided practice test. And so I needed to
scan the odd pages, and then I needed to scan the even pages, and then I needed to put it together.
So what do I do? I go to Warp here and I say it at exactly.
Exactly, scan the documents from the feeder and save it to this directory as this file name.
And it does.
It totally does do that.
And so it figures that out and done.
It's done.
Wait, can I pause you really quickly?
Did this activate the scanner?
Absolutely it does.
What?
Okay.
Yeah.
If I were home right now, which I'm in the office right now, but if I were home right now, I would do this again and you would see my scanner would wake right up and start scanning.
So you didn't even have to press the little button and pop open the thing and you just, okay.
It's not a thing. All I had to do was put the sheets in the feeder, and as soon as I typed this thing in, boom, there it goes.
So for the youths listening and watching this show, as a parent, you spend a lot of time with a scanner and a printer.
I don't even know if you all know what that is. But this is, this is a peak peak efficiency.
If efficiency for me is being able to just remotely start the scanner from, from my AI coding tool.
And I'm not going to lie. Like, I scan like her birthday.
cards and like the Valentine's Day cards and things like that.
Like I am deathly afraid that one day there will be a fire and all of these historical documents that she's made will be destroyed.
And so I scan those into it because it's easy, right?
It only takes me a second.
Then I type this in here and now there it is.
Okay.
So you scanned one side.
I scanned one side.
Now, warp is kind of bimodal.
So it works both as an agent as a not agent.
So then I just pressed the up key.
So you see the second time I did this.
It had generated this command line here.
Oh.
When I pressed up, it just will go straight to this command line.
And so I'm like, well, I'm basically doing the same thing again, but now I'm doing the even pages.
So I just changed odd to even over here.
And it just did that.
So it didn't even need to call the large language model to do this.
But then I wanted to put it together.
So I said, now put together the odd pages and the even pages and just make the math practice test out of it.
And so now it wrote some Python to do this, actually.
I guess it installed PiPdF2, and it wrote a little Python file and ran it, and then it removed it.
So, I mean, in a sense, I am using here, Warp as a coding agent, ironically, sideways.
But, you know, it did it.
I mean, in the end, absolutely, it most certainly did create a unified thing.
Now, I have to give these AI coding tools and IDEs, et cetera, a little product feedback.
which is I want like a time to task little timer here.
And I want it to say, hey, you did this in 112 seconds and give me like confetti.
Because again, this is one of those things.
I just think about how you would have done it before, which is you had walked over to your scanner, which I have one right here.
I would have pulled up the terrible native scanner software.
You know, if you know it, if you know, you know, and I would have like scan the thing and
download of the PDF and then flipped it and scanned it and scan the.
the thing and download the PDF and then like found some PDF opener and then like dragged and dropped
the pages in the right the right order and then saved that file and it would have been so so so
annoying and instead you get to sit where we all want to live right now which is in the terminal
in the terminal in dark mode and just ask it to do this thing and I think something that you know
maybe less technical people don't appreciate is if you look at this and you look at these commands
warp or generating, a lot of stuff on your computer you're able to do programmatically.
Right.
And until you start working with these agents, you don't really discover all the things that
you can do with command lines.
But I think once you start to test those, then it kind of opens up your mind to what is
really possible.
Well, what's interesting is it caused me to look for ways that I could do things for the
command line.
So this scanner thing, this wasn't magical.
There is, as far as I know, not a way in Windows to CLI invoke a scanner unless you install NAPS 2.
So if you look at my rule for this, and what I said is, when you're in Windows and I tell you to scan something, use NAPS 2 to do it.
And I gave it the location of where I installed this thing called NAPS 2, which is this scanner CLI.
It's an open source scanner CLI for Windows.
So I installed this.
I made a rule for it.
knowing that I scan things so frequently that this would save me a vast amount of time.
So, you know, again, like it's magic, but it's not entirely magic.
You do have to do a little preparation for this trick to work.
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I am just laughing because, again, I think my pitch at the beginning of this podcast, which
is this is the most glamorous episode of How AI, which is we're going to do Azure role,
role assignment.
We're going to do drivers for your scanner that can be run via the CLI.
And then you have one more use case, which is, as somebody who does a podcast and works
with a lot of videos, is really useful that I thought maybe you could walk us through.
This one is for you.
So I record a lot of videos myself, actually, and I have my little YouTube channel, although I can't say I have a podcast.
It's not as regular as yours.
But yesterday, I used the Game Bar thing, the Xbox Game Bar thing, to record a video off my screen.
I said, maybe I'll try this, see how it goes.
Well, for 10 minutes of video, this thing recorded a 1.7 gigabyte file.
I don't know what it was doing.
but I mean it was insane
and I was recording this new tool
that we're working on called Opal anyway
so I was like what is up with this to warp
as you can see in my prompt here I say
why is this file so big
use FFMPEG to re-encode it still keeping it at
1080P because I didn't want it to like
nestify the resolution
and make it more normal size
FFMPEG is a CLI that you can use
to edit videos and I use this all the time
I use it to strip audio off of videos
one day my coworker sent me a video where like from seven seconds to 17 seconds it suddenly went really quiet and then it went back to normal so I said to work I'm like use ffmpeg to like make the sound 300% from seven seconds to 17 seconds and it totally does but here it looks at the file and it's like okay the video is 1.7 gigs because it has a huge bit rate and it's at a huge resolution for some reason and then it followed my instructions it ran ffm pfm pfm pfm.
peg with whatever the switches were to re-encode this thing. And it did re-encode this down to 13
megabytes, which is what you would expect for like a 10-minute video of a screen share. Thank you.
Yeah. And so again, like, I think this is one of those things that in an alternative world,
somebody would have like gone to search and say like video compression software, tried to open
something and like export and compress and figure this out. And instead in just a couple seconds,
you can use this more technical tool and get a lot of stuff done and also sort of understand the root cause.
You know, another thing that I think people don't really appreciate about AI enough.
And we had an episode with a producer from Ken Burns documentary production agency is files are very rich with information.
And giving an agent access to a file, you can tell a lot about that file.
And then if you layer on an LLM, you can tell a whole lot about that file.
And so I do think file manipulation is a real underappreciated use.
Like we do so much file generation, but I actually think file manipulation is a really underappreciated use case of AI.
Right.
Now, if you think about what I'm really doing with Warp, the way that I'm using Warp, I characterize it in a certain way.
I call this an ad hoc agent.
because effectively each one of these things that I'm doing,
you know, when I'm assigning the Azure rolls
or when I'm scanning the stuff or when I'm doing stuff with the videos,
I'm kind of creating a little mini agent,
an unnamed agent on the fly, to do something for me.
And that's becoming a trend.
Like, this is a thing that's starting to happen,
not just in warp, but in lots of different types of general purpose agents.
Yeah.
And what I would say is also what I love about AI
and what I would recommend to people with AI is like,
just get used to ephemeral stuff.
Like, just toss it.
Like, if you ever need to compress a video again, don't save this script.
Don't, like, just come back and do it again, probably with a better model at some point.
And it's going to be just as cheap and just as easy.
And so I think a lot of people get stuck in their head about, like, oh, how do I make this a product?
Or how do I get this production?
It's like, don't get it to production.
Just next time, do it over again.
Maybe save a rule so you're not rediscovering the steps.
Right.
But, like, you don't need to build a whole thing here.
And that's exactly the right idea, right?
So, you know, for example, like, it happened once that it tried to call NAPS 2, the scanner thingy, and failed because it couldn't figure out what the path to NAPS 2 was.
And so that's why I made that rule that's like, when I tell you to scan, here's where Naps 2 is.
When I tell you to scan from the feeder, this is the switch to scan from the feeder instead of the flatbed scanner thing.
And now that it has that rule, it has never done it wrong since then.
It does it right every single time.
Even though I'm scanning to a different directory, a different file, maybe a different format, it does it write every single time.
You know, I'm not saying I love AI more than humans, but sometimes it would be really nice to be able to get that consistency.
The people around me, you know, perhaps my children who are not loaded with rules in context all the time and consistent.
Well, let's switch over to maybe some less technical use cases, but ones I think are really interesting.
Again, thinking about ad hoc agents and workflows, how you're using sort of more administrative, task-based workflow-based things to kind of be prepped for the work you need to do in a day.
Yeah, well, I mean, here I am in M365 co-pilot.
So this is Microsoft's general purpose agent for business.
And a lot of people think of it like this.
It's like I can ask it a question, when am I doing how IAI?
And it shows it here.
Here you go.
It knows my calendar.
And that's cool.
But what's happening now is that this and many general purpose agents like it are becoming agent builders.
The line between consuming an agent and building an agent is blurring.
So this is the new workflows agent.
And this is an agent that builds an agent.
So I'm going to kick this thing off.
And what I said here is,
When I get an email from Clairvaux, requesting a meeting at a certain time, check my calendar.
If that time is free, send her a 30-minute meeting invite for that time.
And it will start to build this agent.
Now, for the sake of time, I actually ran this in advance here, so I can show you what it will build in a second here.
And what it has built is an agent.
It's a triggered agent.
It's an email triggered agent.
And so an email comes from you, and it will extract the...
time from it, it knows enough to extract it in ISO 8601 format, which is the format that the API
takes with the Outlook API, it will check my calendar and it'll create the meeting invite.
And if I save this thing, this becomes a triggered agent that is now associated with my
outlook. So if you send me an email and you're requesting a meeting, you're going to get an invite
for me if I'm free. I'm not going to abuse it, but I do, I do love it. What I would say is really
interesting here is the ability to set up synchronous response to asynchronous request, meaning,
you know, probably when I email you, you are busy. You are in a meeting. You do not have,
I mean, I'm, I'm projecting now, but like you don't have the time to look at your calendar,
say, does this time work for me or not? But you know,
when you have five minutes, you know, like, oh, I'm supposed to meet with Claire.
And she needs to be at the top of my queue because we want to get this podcast done.
And so I'm going to set up the system.
So as soon as she's ready, I'm ready.
And I think that's a really nice flow.
Again, I call this like burning down your anti-to-do list, which is if you can get yourself out of the critical path of doing a task and get AI into that path instead, you can be highly responsive and not drop stuff.
which I think is really useful.
And I will say we got this thing scheduled quite well.
So if you ran this on me, it was really good.
Well, you know, you're a priority, Claire.
So, you know, he knows how to flatter the ghost or flat, flatter the ghost.
Oh my God.
You know how to flatter the host.
It's that Halloween podcast we did.
That's right.
That was a fun podcast that you're still feeling the ghosts of it today.
I am.
Okay.
And then so this is sort of a more kind of.
reactive style
agent that you built.
What about a
sort of like more
chron-based, like, timeline-based one?
Because you showed me how to do this in Chad GPT as well.
Let's do this. Yeah. So like, what if you don't have
M365 copilot? Now, this same kind of function is showing up
in the consumer general purpose agents also.
So let's say that, again,
you are a priority, Claire. And so if you have a new podcast, I really,
really want to know. So I can actually set
chat GPT now to do this. I can say every day, look to see if there's a new podcast by Clairvaux
and notify me if there's a new one. And lo and behold, it absolutely does do it. It will daily at 9 a.m.
I didn't actually even say what time to do it, but it decided on 9 a.m. Every day at 9 a.m., it's going to check for
new podcast episodes by you. And if I want, I can actually turn on desktop notification, so it will notify me
on my desktop, like boom, new Clairvote podcast.
But once again, I have effectively built a little ad hoc agent here.
This is an ad hoc agent that's triggered in this case on recurrence.
It's like, as you say, a cron job.
It runs every day and it will do whatever it needs to do to check to see if there's a new podcast by you.
I love it.
And so, you know, just looking back at, you know, the theme of this show, you're talking about
setting up like these basically these little micro agents that do little tasks for you either one-off
ones like we saw in warp or recurring and triggered ones like we saw in Microsoft and chat gbt and then this
is making your life just easier so let's jump into lightning round questions i have a couple of
questions for you which is one you know now that you have this uh kind of army or constellation of
agents working for you. How has it changed how you spend your time? This saves me many minutes a day.
I mean, just think about last night, I was scanning, as I said, my daughter's homework,
my daughter's practice test, and I set warp to running that. You know, I say, okay, warp,
you know, go scan that for me. And while it did that, she and I worked on one of the math problems
themselves. So rather than me fumbling with the scanning software, the crappy thing that says now
feed this and its letter size and all that stuff, I just told Warp to do it. It did it. And I did
something else. While these agents are doing whatever it is, I need them to do. Well, and the only,
your only physical job was literally flipping the paper. So you still had, I mean, you still had a
role. Very important part of this system. Yeah. Yeah, I agree. And I think you would probably agree that
the tasks that you do end up spending your time on are higher leverage, more intellectually stimulating,
more strategic, all those things where we want to spend our time versus like digging through
roll docs trying to figure out, is it like project owner or project admin that has the right
permissions for this particular, you know, part of our stack? So I think, I think just spending your
time differently is such a high impact, high impact effect of AI. What about actually, you know,
My second question is, you know, what about your kids?
You and I have done, we did a little mini episode on Halloween about Halloween app you did.
You know, you've talked a lot about helping your daughter with homework.
Do your kids have any interest in this?
Are you teaching them how to do this?
Or is it still daddy, you know, facilitating the AI tooling in your house?
Well, I only have one daughter.
And she is not like me.
I mean, I'm a tinkerer.
So I will try these things over and over again.
And if I fail today, I'll try it again tomorrow.
Because in this world, AI changes every day.
And what didn't work yesterday may well work today.
So I will absolutely hammer away at this thing until it works.
She is more, I would say, a mainstream user.
She's certainly capable of using this stuff.
And in fact, she is a wizard at Canva, I tell you.
And like the Canva tool, the Canva, the agent that's built into that,
she's really good at that stuff.
She could design something up just like that, much better than I can,
But she's not a tinkerer like me, so she doesn't proactively try these AI things.
So I don't really need to teach it to her per se.
I feel like these are things that she is learning for herself and learning how it benefits her for herself.
Okay.
And then my last question for you is, and I'm really interested to see this, because again, I think you're a pretty casual prompter.
If I've put you on the spectrum, a formal to casual prompters, you are a casual prompter.
What is your tactic when AI is not listening, when it is not giving you the output you want?
What do you do?
I mean, I sort of am in which I will often be like, you boron.
I specifically told you not to check in my dot env file and you did it anyway.
Now again, in warp, there are rules.
You might have noticed in my warp rules, if you look closely, there's a rule there that says,
never check in the dot ENV file, you know, that environment file that's,
sometimes has keys and stuff in it.
Yeah.
This is my pet peeve with all coding agents everywhere is that sometimes they just check in your
dot env files without you asking them to do that.
But, you know, another one of the things that I do, though, you know, I make rules in
warp, but not all of the AI tools that I use have rules.
Now, sometimes, for example, I get these kinds of questions that I need to fill out,
And I want to limit them in terms of their characters.
So I also will pre-program certain types of prompts.
And so here, let's say M-B-R-5.
So I have all these shortcuts like this.
And I can say, answer from the perspective of Microsoft in 500 characters or less with no bullets or formatting,
if I just want to give a quick answer to some question.
And so I use this in a way that's repeatable to get this.
these AI tools to do what I want them to do. That is, by the way, auto hotkey that I have running
there. So I have all these kinds of shortcuts that I can use without a hotkey that expand to
repeatable prompts.
Question. Did Warp help you make all those auto hotkeys?
These I have, I think, made entirely myself. I have never... Artisanally crafted.
That is true. Artisanly crafted. Well tested.
I love it. So you're used, you've created a library of yourself of little snippets that you know
effective that you can hotkey into your AI tools that you know you're going to get exactly what you want.
Precisely.
I love it.
Marco, this has been so great.
I just, I love the idea of, again, just solving these minor, minor points of friction with our, you know, genius, large language models and supporting tools.
Where can we find you and how can we be helpful?
Well, find me on LinkedIn.
That's probably the easiest place.
So you'll see me on Marco Castellana, on LinkedIn.
I really do look like my picture.
Perfect.
And anything exciting coming up or YouTube channel, anything that we can do to be helpful to you?
Just follow my LinkedIn channel.
You see that I make blog posts and videos every few weeks or month.
And so you can see my new blog post and video there on my LinkedIn.
Amazing. Well, thanks for joining How IAI.
Thank you for having me.
Thanks so much for watching.
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