Everyday AI Podcast – An AI and ChatGPT Podcast - Ep 710: Context Engineering: How to Get Expert-Level Outputs From AI Chatbots (Start Here Series Vol 7)
Episode Date: February 10, 2026How did prompt engineering die so quickly? ☠️And what the heck does context engineering even mean? One of the trickiest things about LLMs is they're changing daily, yet they're the engi...nes that drive business results. But if the engine is constantly changing, then you also have to change how you drive and the roads you take. That's why we're tackling context engineering in this installment of our Start Here Series, the essential beginners guide to understanding AI basics and growing your skills. Context Engineering: How to Get Expert-Level Outputs From AI Chatbots -- An Everyday AI Chat with Jordan WilsonNewsletter: Sign up for our free daily newsletterMore on this Episode: Episode PageJoin the discussion on LinkedIn: Thoughts on this? Join the convo on LinkedIn and connect with other AI leaders.Upcoming Episodes: Check out the upcoming Everyday AI Livestream lineupWebsite: YourEverydayAI.comEmail The Show: info@youreverydayai.comConnect with Jordan on LinkedInTopics Covered in This Episode:Evolution from Prompt to Context EngineeringWhy Prompt Engineering Is Now ObsoleteDefining Context Engineering in AI ChatbotsSix-Part Framework for Context EngineeringFour Layer System for Structuring AI ContextBuilding Reusable Context Vaults and SkillsConnecting Business Data to AI ModelsTechniques to Achieve Expert-Level AI OutputsImportance of Context Windows in Large Language ModelsContext Engineering Best Practices and ScalabilityTimestamps:00:00 "Access AI Community & Tools"03:08 "Mastering Context in AI"07:23 "Smart Models Require Less Precision"12:01 "Context Engineering Beats Prompt Engineering"15:49 "AI Context: Six Key Blocks"16:47 "Building Context for Better Results"19:53 "AI: Training, Not Easy Button"25:17 "Chain of Thought Prompting Decline"29:11 "Show, Don't Tell Techniques"32:13 "Context, Reuse, and Scalable Systems"33:19 "AI Chatbots: Memory and Skills"Keywords: context engineering, AI chatbots, expert level outputs, prompt engineering, large language models, business context, AI models, custom instructions, data access, context window, prime prompt polish, reusable context vaults, context vaults, skills file, memory enabled models, ChatGPT, Claude, Google Gemini, Microsoft Copilot, Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info) Start Here ▶️Not sure where to start when it comes to AI? Start with our Start Here Series. You can listen to the first drop -- Episode 691 -- or get free access to our Inner Cricle community and all episodes: StartHereSeries.com Also, here's a link to the entire series on a Spotify playlist.
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Why does no one talk about prompt engineering anymore?
I mean, if you rewind back like two years ago,
you would have sworn that prompt engineering would be the world's most popular future job title.
But that's obviously not the case.
And the essential disappearance of that term is twofold.
One, models are smarter and it doesn't always matter the exact way we talk to them
as long as we get the message across.
And two, an output that moves the needle is much more dependent on business context
versus just wording something a certain way.
Hence the research of the term context engineering.
But what does that even mean?
And how can you understand the required inputs of context engineering to get better outputs
out of a large language model?
Well, if that's one of the things that you are,
your business is grappling with, then you're in luck because on today's episode of our Start
Here series, we're tackling context engineering and how to get expert level outputs from
AI chatbots. All right, I am excited for today's show. I hope you are too. If you knew here,
welcome. This is the everyday AI start here series. So after 700 plus episodes, one of the most
common questions I get is where do I start? So that's why we started the start here series.
And this is actually volume seven of this exact series. So the start here series is the essential
podcast series to both learn the AI basics and to double down on your knowledge. So if that's
what you're trying to do, you're in luck. Make sure you go to start here series.com. That's going to
redirect you and give you free access to our inner circle community. So there,
You can not only go take our context engineering course called Prime Prom Polish for free,
but also network with a bunch of other people,
and you'll be redirected right to our Start Here series area,
where you can go and listen to every single episode in this series,
all right there at your fingertips.
All right.
And if you missed our last episode of this series,
we talked about how to train your team on AI
and the seven steps to educate your organization on large language models.
And the last step in there was, well, making that step to go from operator to orchestrator.
So that's where we kind of left you with the last step in our series.
And that's where we're going to pick up because actually, one of the biggest things that you can do from going from an operator or essentially someone pushing all the buttons to an orchestrator, right, which is when AI starts to do the work for you, is having the right data and providing that data to the model in the
right way. And that is the backbone of what context engineering is. It is the process a human
goes through to make sure a large language model has the right context about not just you,
your role, what you're trying to accomplish, but maybe most importantly, your business and
the competitive market. So this is the big differentiator because the same two people.
They can use the same prompt, right? Going back to prompting and
prompt engineering.
And you can get wildly different answers, right?
Because if one person, whether it's in custom instructions, a GPT, a project, et cetera,
or using chat GPT apps or, you know, quad connectors, whatever you may be using Google Gemini
apps, right?
You can put in the exact same prompt as someone's sitting next to you.
And if you have your context engineering 101 ducks in a row, your output will be light
years better than that person who does not.
And the difference isn't necessarily as difficult as it may sound.
Because the skill separating average AI users from expert level ones is just providing
the model the needed context and understanding how it works in different scenarios.
So that's what we're going to cover today.
We're going to, we'll first talk about why the AI industry as a whole and really just the
business landscape has shifted away from.
prompt engineering and really just more focusing on context engineering.
And I will say that that shift kind of happened and popularized in late 2025.
Then I'm going to lay out for you a six-part framework and also a four-layer system
for structuring what your AI sees.
And then I'm going to walk you through how to build reusable context vaults or kind of
skills, one and the same and use platform features that are already at your fingertips.
All right.
Let's get into it.
So RIP prompt engineering, right?
Kind of, but here's the thing.
If you think back to the early days of chat GPT or even technically before chat
GPT, right, when the GPT technology was available to dozens and eventually hundreds of other
platforms before chat GPT even came out, right?
So much of what you were able to get out of a model was how you talked to it.
And that was for a couple of reasons.
Number one, the AI models themselves were a little more old school, right?
And I'll talk about that here in a little bit.
You couldn't always upload documents, right?
And you couldn't always paste in a bunch of information either because the model's context
windows were smaller.
So essentially, it would always forget things very quickly.
You couldn't, for the most part, upload documents, at least not very easily.
Right.
So this really changed.
that differentiator of if you were going to get a good output versus a bad output.
And it was really just how you talk to the model.
If you use certain prompting techniques, you could kind of pull the best out of a model's training data.
Right.
Because even if you think back to the way earlier days of large language models, they weren't
connected to the internet.
Right.
So they weren't connected to the internet.
They didn't have tool calling.
Right.
And for the most part, you couldn't even upload file.
which is why in the earlier days, prompt engineering was actually really important.
Because even in that data set, right, and if you go back and listen to the earlier episodes of our
start here series, we talk about training data and everything that goes into it.
But for the most part, in the earlier days of Chad GBT and, you know, when Gemini was barred and,
you know, early co-pilot days, et cetera, it was really how you talk to the model because the model had
so fewer capabilities.
Yet, there was still a lot of information there.
Right?
Even the early models like GPT3 or GPT35 or, you know, the first, you know, version of Google Gemini.
Even though we look back at those models now, we think, oh, they weren't very good.
They were.
You just really had to learn how to talk to it.
Right.
So now you can go talk to any of today's smartest models.
And you don't even have to really put a.
sentence that makes sense. Sometimes I find myself, you know, if I'm not using voice dictation
with models and I'm just typing, right, I've become and I probably program myself to know
the models are so smart, you know, it's misspellings and I say the wrong thing and all these things,
but I know in the end it doesn't matter because today's models are so incredibly smart at
understanding what I'm trying to say, right, especially when I have personalization enabled,
memory enabled, all of these other things. The actual words that I'm,
telling a model don't mean a ton now right that's how it is but it isn't how it used to be
because the prompt engineering used to focus on you had to say things the exact right way right
but if you did what you could get was just a step change different than what you could get if you
didn't word something the direct way it was like you almost had a password that no one else had
at the time, right? Proper prompt engineering, it was an amazing skill to have. But right now,
it doesn't matter as much, right? You can have the best prompt engineering skills in the world,
but if you don't have the context, it doesn't matter. And I think the industry really realized
that the bottleneck was never about how we talked to the model. It was the information behind it.
And I think that this shift really started to happen in probably mid-June of 12th,
So, you know, two of the people that are kind of credited with popularizing this concept of context engineering were Shopify CEO Toby Lutki, who just kind of called for the move from prompts to context.
And then in the same month, former OpenAI co-founder, Andreik Pathy, kind of endorsed that term publicly.
And then in September, Anthropic even published a dedicated blog talking about moving away from this concept of prompt engineering.
And I will just go ahead and say this, right?
Not one of those I told you so.
But we've been teaching this concept of context engineering, even though I didn't call it that.
I believe we started teaching it in late 2023.
So yeah, I've done more than, you know, 200, probably like 210 now live trainings on, you know, essentially prompting models.
Right.
So even early on, right, I was teaching prompt engineering.
But that really shifted in late 2023 and early 2024.
You know, we kind of, you know, we have our prime prompt polish course.
But if you have taken it in the last two and a half, three years, you know that we started to teach this concept called refine Q.
And essentially that is context engineering at its core.
So, you know, it's it's not a new concept, right?
Because I've been teaching people this for a long time.
But the term, the terminology around context engineering and it has really snowballed into more of a movement.
has really picked up in the last year or so.
And that's because it's about designing the environment and not just the question.
So an easy way to think about this is to think of the AI, right,
think of that whatever large language model that you're using as a processor
and the context window is its working memory.
Okay, so context window without getting too technical, that's like a hard drive, right?
So in the same way, maybe you have a one terabyte hard drive, let's just say, right?
If you're hard drive full and if you try to put more information, maybe fortunately, a computer
will stop you from doing that.
A large language model will not.
So once it's quote unquote hard drive gets full, it's just going to delete the first
file that you ever uploaded.
So that's how a context window works with large language models, except you never really
know when you are hitting that context window.
Right.
So what this means is, well, your context becomes very important.
and understanding that working memory and how the large language models work specifically with your data, right?
That's grasping the basics of context engineering.
Right.
And it's a little different, right?
So it's different depending, uh, it does get a little convoluted depending on what large language model you're using.
Right.
As an example, if you're using GBT 52 versus GPt 52 thinking versus if you're using GPt 52 pro via the API.
So it is, it is a little bit different.
But essentially,
The concept of prompt engineering, it ends once you enter.
And context engineering is an ongoing battle to make sure that your model or your session with a model has access to and can understand your business data.
And there was a study from Intuition Labs last year that said that 40% of AI projects fail.
And one of the reasons or the main reasons why is, well, it comes from poor context.
And it's not actually the model.
It's the model either, number one, not understanding.
what you want out of it, or number two, it just doesn't have that data that can be the differentiator.
So here's why it matters, more than ever.
Well, if you talk about the big three or the big four, right, so Chad GPT, Anthropics,
Claude, Google Gemini, and Microsoft copilot, they, it used to be fairly hard.
Aside from copilot, it's always been more straightforward if you understand the, uh, the tech
and the permissions landscape inside Microsoft Windows.
That's a whole other story.
But let's look at the other three with just chat GPT,
Claude and Gemini.
I would say in early 2025,
it was actually kind of difficult to use your company's data.
Right?
You could even say, oh, well, Jordan, you know,
there's been these things like GPTs where, you know,
you could upload, you know, documents and have a specialized version of chat
GPT that had access to those documents.
Yeah, but have you ever tested it?
Have you ever run the needle in the haystack test on that GPT that has, right?
People would just assume, oh, I'm going to, you know, upload a, you know, 500 page PDF into a GPT and then it knows everything about me and my company.
No, absolutely not, right?
That means you didn't really understand, you know, how these models tokenize that information or access that information.
But now it's much easier, right, because these models by default can create searchable indexes of your files.
So think of it like this way.
In the same way, let's say you have a Mac, right?
And you can go to your Mac finder and your search bar there.
And you can search for maybe a word that is within a PDF.
And it's going to know because it's indexed that file and it understands it.
Right.
That obviously requires a certain level of compute, right?
That two years ago, these models just didn't have.
But now they do.
So within ChadGPT as an example, they have things like projects.
They have things that were previously called connectors.
Now they're called apps.
Claude, same thing.
You can have project-specific memory.
You can have these reusable skills that can take advantage of your business context.
Same thing with Google Gemini.
You can have these gems that connect live to your Google Drive, to your Gmail, to your calendar, right?
So at various levels and in different ways, the three main players within a couple of clicks only can connect.
to your, in many cases, your dynamic business data.
It's not always dynamic, right?
In some cases it is.
And it will create a searchable and live indexed of everything that you connect to it.
All right.
Again, I have to throw out that same asterisk as I always do.
You know, always make sure you have permission to connect your company's data to a large language model, blah, blah, blah, right?
But once you do, that is the first step in context engineering is making sure, number one,
the model has access to the context or the data that it needs,
but you also, more importantly, need to understand how it works in each scenario, right?
Like as an example, I would say most people, even if you listen to the show often,
you might not know that chat GPT had these things called connectors, but oh, wait,
actually in December, they changed them right before the holiday season.
They changed them all to apps.
And a lot of people miss that.
And with that comes, depending on what app,
talking about now, well, it maybe handles your data a little bit differently than it did before.
So you do have to, depending on the platform that you use, if you really want to understand
context engineering, well, you have to understand how each of these different platforms
connects to different data sources because it's not, it's not uniform, right?
It's really not, right?
Even if you look at chat, GPT, there are apps.
There's four different ways that it can look at your data in four different ways that it can
understand your data, right? In the same way, right, if you think of cloud storage and there's
these different permissions and different way to access data, you know, that does trickle down
to large language models as well. So let's talk about kind of what I'm calling these six
building blocks of effective AI context because the step one is, well, what I just covered,
you have to make sure, depending on what large language model you're using, it has access to your
data. But it's not just about data. It's not just about telling a large language model.
Here's something about me. Right. That's providing context, right? Context clues. Tell me more about
yourself what you're trying to accomplish, right? I'd like to break it down into these six
different building blocks for building context within a context window. Okay. Once you're out of the context window,
again, depending on how you're connected, connecting your data. You might start to get poor results.
So keep this in mind and keep these six building blocks.
in the context window of any given conversation.
So goal, that's what you need the AI to produce and for whom.
Constraints, understanding the boundaries, rules, things to avoids, and format requirements.
Reference material, that's the approved fax, data, and source documents to draw from.
Examples, those are representative samples of the output you want, plus context and examples.
Then, procedures, those are set by step instructions for how the AI model should approach the tax.
task and then the evaluation rubric.
So that's grading criteria so the AI can assess its own outputs quality.
So this isn't a perfect formula and it is ever changing, right?
But I think this is for the most part, number one, you should just go take our
our free prime prompt polish course and go through the whole thing.
I think RefineQ is another version of building this essential building blocks of
context, but this is another kind of framework that I think works really well.
Okay.
Now, you don't just think of those six building blocks of, okay, uh, I'm good, right?
Let me get those things because you have to actually apply them in different layers.
So the first layer is, well, personal.
That's your own personal context.
The second layer is your team, right?
If you're on a small team, might be a little,
less difference between that first layer and the second layer.
If you're on a large team,
could be a huge difference.
Then the third layer is obviously your company or your business.
Right.
So those are things like your brand voice,
your policies, your product details, et cetera.
Right.
When we talk about layer one, that's your own personal role,
your expertise, right?
Layer two, that's kind of shared definitions,
your project goals, conversations.
Like I said, layer three, that's at the company level,
brand voice, policies, et cetera.
And then number four, that's your market.
That's your position in a competitive market, industry, insights, trends, et cetera.
So it's not just about bringing the right folder in via a chat, GPT app.
It's not just about those building blocks.
It's also making sure that you apply those at the different layers that a large language model needs.
And then when you do that, you can probably imagine by now, oh my gosh, this sounds extremely time-consuming.
Yeah, it is.
I always tell people, if you're thinking about AI as if it's an easy button, you're looking at it all the wrong way, right?
The best thing, the best analogy that I've probably ever taught.
And it's from the very first, right, in early 20, 23, when I did my very first, you know, chat GPT prompting course back when prompt engineering actually was a thing.
And it still holds true to today.
When you are working with a large language model, you have to think of it as you are.
are training a new employee, right?
A new college grad or someone that just transferred in.
And they're a capable person, right?
But their output is going to largely be dependent on how much context you share with them.
Right.
Because if you just throw down a giant prompt, right, if you throw down a giant training manual
and then say, all right, first assignments do in an hour, they're going to fail.
Right.
You have to go through and give them the context and the conversation.
in the iteration that they need.
Right.
And one of the ways that you can think about this,
because what I just laid out in terms of, you know,
applying the context.
Okay, those six different building blocks across four different layers,
that's a lot.
Well, you have to think in the same way that you would invest in an employee.
You do it.
So in the long run,
it is scalable, repeatable, reusable, reusable.
Right.
So you can think of this as creating a context vault or maybe a skill,
right?
That's another term, another term, you know,
kind of created.
by anthropic, but skills have been picked up by, you know, all the main players in the AI space.
So think of a vault or a skill as kind of this folder of reusable context, right?
So these different procedures, rubrics, key facts that you might be able to reuse or to modularly
use within each other.
So you can build a skill or a vault per role to start, then expand that as your team
standardizes whatever process you're working on.
And the most important content to the vault first is how you do things, right?
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So here's another thing.
People are always wondering, okay, do I just paste this in?
Do I upload this, you know, in a Google Doc?
should I save this as an example if you're using
clause, should I save this as a skills,
markdown file, right?
And then use it throughout.
And I'd hate to use an SEO answer,
but it depends.
Right.
It depends on a lot of things.
It depends on what model you're using.
It depends on the context window.
It depends on are you using something ultimately
inside of a project, inside of a GPT,
inside of a gem?
Are you using it in a,
kind of quote unquote naked chat where it's not connected to one of those three things.
And the answer, it does depend.
But I think it's important to know, well, you can kind of make it work anyway, right?
As long as you have the right understanding of how all these models work.
So an easy example of that is to go back to GPTs, right?
Because a lot of people were under the assumption that you could just throw in
a large PDF in a GPT and then at any point, well, okay, it has all my knowledge, right?
But people didn't understand that, hey, you would probably have to, number one, in the custom
instructions, you would have to kind of provide a, especially for larger and longer documents.
You would have to provide kind of like an index, right, for how the model should treat that
really long document.
Or if you uploaded a handful of documents, you would have to have some simple rule.
Like, hey, if this happens, then do that, right?
If the user asks about marketing guidelines, you should check in, you know, page five of document A and page nine of document B.
Right.
So sometimes you can just upload static context.
Sometimes you can just do the copy and paste method.
Sometimes if a certain, you know, app or connector sinks dynamically, that can solve.
a lot of your issues, right? You always still have to do the good old human in the loop stuff,
right? And make sure that you're always testing these things and scoping them and measuring them
and, you know, making sure the models are properly connecting and pulling out the context that's
needed because the other thing is, well, models are always changing. Behavior can be extremely
finicky in a large language model, right? Taken from someone that's done dozens, if not more
than 100 live demos on this podcast. Things can go terribly awry, right? You can run the exact same,
quote unquote, prompt, even if you have your context near context engineering, all the exact same and
it can go in a different direction. That is the source of generative AI. It is generative. It is
non-deterministic. So you do have to still understand the different ways that you can bring that context in,
whether it's pasted, you know, pasted context as long as you understand the context window.
Again, you should always be looking at the chain of thought as well.
And that's another big thing, too.
When we talk about why prompt engineering is all but dead, right?
Well, chain of thought was a very popular prompting technique, right?
And this was essentially a way that you could kind of go through this, this process of walking the model through how a human would think.
This is the chain of thought or how a smart human would go about, you know, getting this proper answer.
And you would kind of think of, okay, here's how a smart expert would go about getting an answer.
And then you would have to deconstruct that and kind of reverse engineer that to a large language.
model, and that would be called a chain of thought prompting technique.
But that was kind of when we just had these quote unquote old school transformer models,
right?
That scenario that I painted for you earlier when the models weren't connected to the internet,
when you couldn't upload files, when they weren't dynamically connected to your data, right?
When they didn't have tool calling and all of these different functions, right?
That's when this kind of chain of thought, uh, really prompt engineering mattered, right?
But now this is the default of how today's thinking or hybrid models work, right?
If you ever read the summarized chain of thought, you'll see, oh, this is essentially,
they're doing this prompt engineering stuff that was popular in 2023 by default.
They're doing this under the hood, right?
Which is why how you talk to a model is way less important now than having the correct context.
So here's three techniques that I think can help you turn good context into expertise.
into expert level outputs.
All right.
And these are technically still going back to prompt engineering basics.
So yes, prompt engineering stacked with proper context is obviously going to give you the best
results.
So it's not that prompt engineering is dead.
You know, still some of its, you know, core, you know, core foundations live on.
So few shot examples, number one, you should still, even with all that context,
give it the examples of what's good, what's best.
Right. That's what we teach in our prime prop polish. That is the polish portion is giving it kind of that
multi shot kind of work. Right. In the same way, I think you're training, you're training that
employee, go back to that analogy that still works so well. The very first time they hand in their first
project, their first assignment, their first deliverable, you're probably going to go through
and sit with them and say, hey, this is great because blank. Hey, this is incorrect because blank. Right.
So same thing, that's the, you know, few shot examples.
The second one, the second technique is rubric first.
So give, you know, whatever large language model that you're working with a grading criteria in the context window before you even start working.
Right.
This is something, again, that we use to teach in our older PPP Pro course.
We don't teach it as much anymore because I don't think it's as useful as it once was.
But I think it's still, right?
I called it, you know, temperature.
I think I called it, no, gauges, right?
You need to give the model something it can gauge or give it a temperature, right?
And give it examples too.
So say, hey, let's just talk about creative writing, right?
Write a sentence as, you know, plainly as possible, as boring as possible.
And you say, this is a one, right, on the creative scale.
You write a sentence that's kind of creative, this is a five.
Write the world's most creative sentence ever.
That's a 10.
But tell the model that.
it why, right? And then there you go. You've just kind of created a rubric. Right. So then at any point,
you can say, hey, let's do this as a three. Hey, let's do this as an eight. Right. And that can help
you think of not just creative writing. That's just an easy one to think about. But there's so many
different gauges or temperatures that you can put into a model. And then last but not least,
show, don't tell. So sometimes you just need to paste the exact format you want instead of
describing it. I think the combination of describing what you want and then also giving it examples,
you know, that's just another, you know, kind of piling on here or doubling up here on our first
technique, which is few shot examples. But if you combine that with the kind of the show,
don't tell. I think that's a great way, especially if you want outputs formatted in a certain way,
or if you want outputs to always include, you know, XYZ, just giving it examples of that. And
is helpful, but then also giving it the exact formula.
So I would always do multiple versions of this, but the show don't tell is extremely important.
All right.
So we've covered a lot in this start here series, but let me wrap by saying this.
Context is everything, right?
I've always said your data is the differentiator.
Using AI doesn't matter, right?
It doesn't.
People always think like, oh, we're using AI.
So we're ahead of the curve.
No, you're not.
Right.
And prompt engineering doesn't matter as much anymore, right?
Because now these models by default are doing a lot of that heavy lifting that really paid off in 2023 and early 2024.
So you have to stop thinking about talking to the model a certain way.
And actually, especially if you are non-technical, especially if you're not a, you know, heavy AI user, that's actually a good thing.
Because I think earlier on, right, in 2023 and 2024, a lot of non-technical people were kind of scared off of using, you know, large language models.
Because, you know, earlier on, you know, this prompt engineering, it's everything, it's everything, it's everything.
And people are like, oh, I'm not an engineer, right?
it doesn't matter anymore.
You don't have to, you know, understand, you know, chain of thought or, you know,
any of these other prompting techniques anymore.
You can talk to it just even like a lazy human because if you have the context side,
how you talk to the model is not as important.
But let me just give you three last pieces of advice to wrap up everything we've talked about.
So stop starting with a question.
Instead, start with a tiny contact.
pack. Extend on it from there. Next, reuse what works, right? Whether you want to create skills,
create GPTs, create projects, it doesn't matter, but you need to reuse what works because you do
need to put much more in on the front end on the context side than you think you might need
more and more in more context. As long as you understand and don't exceed the context window,
context will not bite you in the butt, right? It will bite you in the butt if you don't provide
enough context, but you need to be smart and think in a scalable faction, and you need to reuse
what works.
And then last but not least, remember that expert level results come from a system that you
can repeat every time, right?
It's all about if you want the expert level outputs, there's a good chance if you're doing
this the right way that you're wasting time by not reuse.
using it. Here's an extra pro tip, right? Especially if you're using as an example,
well, any of the models, if you have personalization and memory on, go through. Ask the model.
What are the things that I'm most that I'm using you for that is most repetitive?
You know, what are some systems that I can build that I can reuse, right? You'll probably be
surprised, especially, you know, there's been some recent updates in the last.
last, I'd say three to four months with the big three players there in improving how the memory,
how, you know, remembering your past chat conversations.
It's actually really good now, right?
When it first started to debut like 15, 18 months ago, it wasn't that good, right?
But I'll say the last three months, these AI chat bots, essentially their memory and what
they know about you is really good in being able to recall past conversations.
So just ask, what am I wasting the most time on, right?
doing every single day. What are some skills that I should be building? What are some projects that I
should be, you know, building? What are GBTs that I should be using, right? Don't never, never feel like
you're, you know, stupid or anything by just saying to a large language model. I'm not sure. Because guess what?
Large language models are smarter than us. They are. They can pick up those, uh, those little pieces that
humans tend to miss or even things that you may miss about yourself.
So actually a great way to fill in that context is just to ask a large language model, right?
There's kind of this more, you know, popular, you know, trend of creating like a skills
markdown file or a roll markdown file. Ask any of the models. Hey, based on everything you know about me,
help me build out some of these blocks that you can then use modularly and,
take them with you as well, right?
Because I can guarantee and I've gone through this process.
I actually did it like one or two months ago where I just went through that process in
all of the models because chances are I use them for different things because they
each have their different strengths and then I can bind them into one big, you know,
skills, uh, file, roll file, all these different things.
And now I have these building blocks that I can use whenever I need them.
All right.
So that is how you get.
those expert level results.
So I hope that this version of the Start Here series was helpful.
If it was, make sure if you haven't already, go to start here series.com.
That is going to give you free access to not just our context engineering course that's been
taken by more than 15,000 business leaders called Prime Prom Polish, but it is going to
give you free access to our inner circle community.
And then you can also go to the Start Here.
series space inside of our community and go listen to and catch up on all of our start here series
all in one easy place. All right. I hope this is helpful. Thank you for tuning in. I hope to see
back tomorrow and every day for more everyday AI. Thanks y'all. Meet Firefly AI assistant.
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