I've Bought Every AI Correction Since 2018. Here's My List
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https://www.youtube.com/watch?v=aup7LG54YRg
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Analyzed
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May 20, 2026 at 06:00 AM
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+20,20%
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PLTR
BUY
""The trend forecasting lens is what earned its keep when I bought into Palantir two and a half years ago""
Contexto: [01:16:45:10] "The trend forecasting lens is what earned its keep when I bought into Palantir two and a half years ago..."
Preço na data de publicação: $135,26
Preço de fechamento do último dia: $129,04
(Jul 10, 2026)
Lucro/Perda:
$-6,22
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APLD
BUY
""Now let me walk you through six other names that are sitting at this same setup across this AI economy. We'll start off with Applied Digital""
Contexto: [01:02:38:03 - 01:06:06:12] "Now let me walk you through six other names... We'll start off with Applied Digital..."
Preço na data de publicação: $36,62
Preço de fechamento do último dia: $32,29
(Jul 10, 2026)
Lucro/Perda:
$-4,33
(-11,82%)
CRDO
BUY
""Next up is Credo Technology""
Contexto: [01:07:38:16 - 01:08:29:18] "Next up is Credo Technology..."
Preço na data de publicação: $168,99
Preço de fechamento do último dia: $265,65
(Jul 10, 2026)
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+$96,66
(+57,20%)
APH
BUY
""Now we move on to Amphenol Corporation""
Contexto: [01:08:30:18 - 01:16:45:10] "Now we move on to Amphenol Corporation..."
Preço na data de publicação: $119,20
Preço de fechamento do último dia: $162,24
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+$43,04
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META
BUY
""And now we'll move on to the next company on the list, which is Meta Platforms""
Contexto: [01:08:30:18 - 01:16:45:10] "And now we'll move on to the next company on the list, which is Meta Platforms..."
Preço na data de publicação: $602,61
Preço de fechamento do último dia: $631,48
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+$28,87
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ARM
BUY
""Next on the list is ARM Holdings""
Contexto: [01:08:30:18 - 01:16:45:10] "Next on the list is ARM Holdings..."
Preço na data de publicação: $223,15
Preço de fechamento do último dia: $327,87
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+$104,72
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TER
BUY
""And the next name on the list is Terradine""
Contexto: [01:08:30:18 - 01:16:45:10] "And the next name on the list is Terradine, a semiconductor equipment company..."
Preço na data de publicação: $321,52
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Transcrição Completa
[01:00:00:00 - 01:02:18:14]
I seem to keep getting the same question right now, and that is, is the market too expensive to
invest in right now? Let's just imagine that you were the worst investor alive. Every single month
from May of 2024 through November of 2025, let's say that you bought $1000 worth of Palantir at the
absolute highest price each month, at the absolute highest peak, and the worst possible price that
you could have paid for that month. No choice of cherry picking in the dips. Instead, you're just
buying the top 19 months in a row, making your investment at $19,000. That horrible investment
style would have been worth roughly $43,000 today, or a 126% return, on the absolute worst possible
timing strategy in the world. Over that same time period, the market would have only given you a
21% return. Palantir, even though it was bought at the absolute worst price every single month, it
returned six times what the S&P did. Now recently, Palantir released Q1 earnings where revenue grew
84.7%, beating expectation on every single line. But the stock dropped 6% the next day. Does
that even seem to make sense? What company can beat every expectation in front of it and then
drop the next day? So then it makes you wonder, has it reached its peak? And to answer that,
you have to zoom out. I mean, way out. Here's the bigger picture. Last year, in the first half
of 2025, US GDP grew at 0.1% annual rate once you strip out AI data center spending. That means
that data center investments drove 92% of all countries' growth in the first half. That means
this is an AI economy. Which means that the real question for investors isn't whether you're paying
too much for these names. It's whether sitting out of this growth cycle ends up being one of your
biggest regrets. And the reason that I've been able to see a lot of these trends coming from
way out is because this is exactly what I used to do for a living. Before I retired, I was an
executive at companies like Amazon and Target, where I managed categories like men's apparel
and toys. My team and I had to find the trends a year in advance. And that skill set translates
straight into my investing strategies to always look ahead. So today I'm going to walk you through
how I'm investing in this growth cycle right now to set myself up for the next several years. And
here's a perfect example about trends where the news dropped just a few weeks ago that Palantir
is bidding on the air traffic control program. And here's a video clip of mine from a year ago.
[01:02:18:14 - 01:02:38:03]
Now I am going to drop a speculation bomb
on this video. But I find it intriguing that Palantir recently partnered with Archer
Aviation. What if, and I realize it's a big if, Palantir uses this as a test bed for something
much bigger. What if this is just an opportunity to upgrade the US air traffic control
systems with their foundry capabilities?
[01:02:38:03 - 01:06:06:12]
12 months later, almost to the day, the FAA shortlisted Palantir to build the AI
tool that's going to modernize US air traffic. And it's a $32 billion program. My off-the-cuff
speculation became the shortlist. And that's my trend forecasting in action on the exact type of
stocks that we're going to be digging into today. For those new to the name, Palantir builds
software that takes massive amounts of data and turns it into real-time decisions. They
have foundry on the commercial side and Gotham for Defense and Intelligence. I first covered them
back in 2023 at $15 a share. And I've kept coming back ever since. Two years ago, US commercial
revenue was $150 million in a quarter. Today it just printed $595 million. That's growing 133%
year over year. A four-fold increase in two years, with commercial now growing 1.6 times faster
than the government segment. And that's the accelerator that you're going to need to pay
attention to. And here's the margin machine. Since Palantir is inside an enterprise, ripping
it out is essentially impossible. Foundry takes months to deploy across financial systems, supply
chain, manufacturing, and government databases. Once it's running, customers renew and they buy
more modules. The technical term in software is net dollar retention. In plain English, that
means existing customers buy about 50% more from them every year. In November 2025, the stock
pulled back about 30%. But over the same window, operating margins expanded over 1500 basis points.
And the commercial customers count grew 31%. So let me get this straight. The price came down,
the fundamentals kept compounding, and the gap closes a little bit more every single quarter.
Eventually, one of two things is going to happen. The price catches back up to the fundamentals,
or the next earnings print makes the math obvious enough that institutional money has to chase it.
Regardless, both outcomes are going to end the same way. In a nutshell, that's Palantir. Now
let me walk you through six other names that are sitting at this same setup across this AI
economy. We'll start off with Applied Digital, a specialty data center developer purpose-built
for AI workloads. Most data center companies aren't diversified across cloud, enterprise,
and AI. Applied Digital builds just one thing. AI factory campuses engineered for the densest,
most power-hungry compute in the world. In April, they announced their biggest lease yet, a 15-year
deal with an investment-grade hyperscaler worth $7.5 billion. It pushed their total contracted
lease backlog past $23 billion. They also just spun off their cloud computing business as a
separate company called Chronoscale. Applied Digital still owns about 97% of it, and the split
lets the AI cloud business and the AI real estate business scale on their own terms with different
capital structures. So Chronoscale might be worth putting on your watch list. Getting back to
Applied Digital, the primary tenet has been CoreWeave at Polaris Forge One in North Dakota,
and the April lease adds a second investment-grade hyperscaler at a new campus. This campus design
is liquid-cooled with ultra-high-density compute racks built next to standard natural gas where
power is cheap and the grid has a lot of capacity. The push is to scale this AI factory model from
600 megawatts of contracted capacity to over 1,000 megawatts in the pipeline. Applied Digital's
market cap sits at roughly $13 billion, but their contracted lease backlog tops $23 billion. The
company is priced at less than half the value of the contracts that are already signed.
[01:06:06:12 - 01:07:38:16]
Every company tied to AI infrastructure, the data
centers, the power plants, the chip fabs, they all depend on precious metals. And that brings us
to today's sponsor, Canadian Goldfields Discovery Corp., a pure-play gold exploration company
in northwestern Ontario's Miminiska Fort Hope Greenstone Belt. This region has produced over
200 million ounces of historic gold from Red Lake, Timmins, and Hemlo. The Miminiska Gold Project sat
through two different gold cycles untouched, while every other neighbor got developed. Mineralization
is confirmed at both ends of a 14-kilometer system. The gold sits in Banded Iron Formation,
or BIF, ancient layered rock where gold runs in continuous, predictable bands instead of scattered
veins. This BIF runs through the 12-kilometer corridor between those zones, never drilled with
modern systematic methods. BIF is one of the most reliable gold hosting formations worldwide, same
setting as Muscle White at 6 million ounces and Homestake at 44. With no debt, 4.5 million
in cash, permits in hand, and a 10,000-meter drill program set to launch. Canadian Goldfields
Discovery is ready for business. The team brings pedigree from K92 Mining, Ivanhoe Mines, and BHP.
And really, ownership tells the rest. Roughly 30% with board and management, 30% with institutions.
That's 60% of the float is in strong hands. So let's see, they have a pure gold play, a tier
1 jurisdiction, a BIF system with 12 untested kilometers, and 10,000 meters of drilling starting
right now. That's the setup that early stage investors really look for. If you'd like to learn
more about Canadian Goldfields Discovery, please check out the link down in the description.
[01:07:38:16 - 01:08:29:18]
Next up is Credo Technology, a semiconductor
company specializing in moving data inside AI data centers. This semiconductor news focuses
on the chips themselves, like NVIDIA's GPUs or AMD's processors. But Credo doesn't make those.
They make the connections between the chips. Active electrical cables, optical digital signal
processors, and the high-speed interconnect that lets thousands of GPUs in a data center talk to
each other fast enough to actually work. In April, they announced a $750 million acquisition of a
silicon photonics company called Dust Photonics. The deal vertically integrates Credo's high-speed
signaling expertise with silicon photonics, and management is now guiding optical revenue
alone to exceed $500 million in fiscal 2027. Their customer base is the hyperscalers,
Microsoft, Amazon, Google, and others.
[01:08:30:18 - 01:16:45:10]
Microsoft used to be 86% of revenue. That number is down to 42% as the rest of the hyperscaler base
ramped up, which is meaningful diversification of customer concentration. That's good. The
technology is power efficiency. Credo's optical signal processors run at 30 to 50% lower power
than competitors at the same speed, which matters when you have hundreds of thousands of GPUs in a
single building all needing to talk to each other. The push is the Dust Photonics integration, the
move into co-packaged optics and ramping their 1.6 terabit optical platform, the highest bandwidth
interconnect commercially shipping today. The revenue grew 201% year over year with a
peg ratio of 0.9. That's the highest growth rate of this list at the lowest growth adjusted
price. Now we move on to Amphenol Corporation, the picks and shovels layer of the AI build-out.
Amphenol doesn't make chips or run the cloud. They make the physical connectors and the high-speed
cables that link everything together inside a data center. With the same products serving
autos, aerospace, and mobile, but the AI side of the business is really what's accelerating.
In April, they reported record Q1 results, with the IT data comp segment generating virtually all
its organic growth from AI applications. Orders hit a record $9.4 billion, up 78% year over year.
The book to bill of $1.24 means orders are coming in faster than they can ship. In January, they
closed a $10 billion acquisition of Comscope's connectivity and cable solutions business,
which gives Amphenol coverage across the full data center signal path. High-speed copper, power,
active copper, passive fiber, and active optics. They're no longer just connecting chips, they're
connecting everything that moves data inside of an AI factory. The technology is custom
engineering at scale, which is why they keep winning sole source contracts on these next-gen
GPU racks for specific hyperscalers. For them, the push is owning the entire data center signal
path and capturing the growth in AI-driven cabling density. A typical GPU rack now uses two to three
times the interconnect length of a 2024 rack, and that ratio just keeps climbing. And now we'll
move on to the next company on the list, which is Meta Platforms, the parent company of Facebook,
Instagram, WhatsApp, and Threads. For investors, what matters is they're the second largest
digital advertising business in the world, sitting in front of roughly 3 billion daily users.
Meta is on the list because the stock is down 23% from its recent high of $796 back in March. While
the price was getting cut, the business was doing the opposite. Revenue grew 33% year over year, and
operating margins expanded over 800 basis points in that same window. The technology behind it is
the AI-powered ad targeting layer that they had to completely rebuild after Apple's privacy changes
completely broke their original tracking model. But they figured out how to predict ad relevance
using their own first-party data and on-device machine learning, which is why advertising
revenue has accelerated, not decelerated. Meta had pretty much cut the Reality Lab's budget
and delayed the next mixed reality headset, pivoting hard into those Ray-Ban AI glasses. And
that bet sold more than 7 million frames in 2025. AI glasses are the actual wedge into the next
consumer device category, and they're betting hard on it. Other size, Meta's peg ratio sits
at 0.93. So for context, at the end of the day, the stock pulled back 23% while every fundamental
is just getting better. Next on the list is ARM Holdings, the company whose chip architecture
powers virtually every smartphone in the world. As a reminder, ARM doesn't manufacture any chips.
They license the design to companies like Apple, Qualcomm, Samsung, and Nvidia, who pay ARM a
royalty on every chip that's shipped. And that's exactly why their gross margins look more like a
software company than a semiconductor. Well, quite honestly, their margins are probably better than
anybody's. In March, ARM announced something that breaks their 35-year-old business model. They're
going to sell chips directly to customers for the very first time. The product is called ARM AGI
CPU, and Meta and OpenAI are committed customers, with production expected by the end of 2026. To
me, the bigger story is underneath this in the data centers. Because we have AWS Graviton, Google
Axion, Microsoft Cobalt, and Nvidia Grace all run on the ARM's Neoverse architecture. ARM has
effectively become the standard for hyperscaler compute. The best part of their technology
is power efficiency. ARM designed chips run cooler and use less electricity than competing
architectures, which matters as much in your phone as it does in a data center running hundreds
of thousands of AI accelerators. The main drive for them is to move into AI-specific compute. ARM
split the company into three new business units. Edge, PhysicalAI, and CloudAI, and it's launching
their first proprietary chip alongside the legacy royalty business. They're going from licensing the
design to actually selling the product. And ARM's data center royalties just doubled year over year
with a 97% growth margin. I mean, they're the true definition of printing money because it's just a
royalty business and they're growing just as fast as everyone else. And the next name on the list is
Terradine, a semiconductor equipment company built directly into the AI chip production line. Once
again, now Terradine doesn't make chips. They make the test platforms that every chip has to pass
through before it ships. They make the equipment that determines whether the Nvidia GPUs or the
AMD CPUs actually work before they ship them. In April, Terradine reported Q1 results that beat
expectations on every metric. earnings per share grew 241% year over year with AI-related demand
making up nearly 70% of their total revenue. And their reward for this? The stock fell 19% on the
news. It's the same pattern as Palantir, Meta, and the rest of them that are on this list. But
of course, since then, the stocks have gone up and down multiple times. As for their customer base?
They happen to be the entire AI ecosystem. TSMC, Samsung, Nvidia, AMD, all of the hyperscalers
and all of the memory companies. And their CEO describes the demand in three different stacking
AI waves. They've got general purpose data center build out, inference optimized silicon, and edge
AI. And they just so happen to be positioned for all three of those. The technology is test
platforms specifically designed for high bandwidth memory, the kind of memory that sits right next to
every AI accelerator. Their Magnum memory tester gives them a lead in HBM testing that competitors
are still trying to catch up to. Their drive is to expand into AI data center connectivity and test
software. They just invested $157 million in a joint venture called Multilane Test Products and
acquired a software company called Test Insight, adding capabilities for testing AI infrastructure
from end to end. So that's seven names across different layers of the AI economy. You've
got software, real estate, semiconductors, connectors, chip design, and test equipment. They
all happen to be completely different businesses, but they all work towards the same setup. Each
one beat expectations on their last earnings report. Each one has a multi-year strategic growth
sitting right in front of it. And on most of them, the stock either dropped after the beat or pulled
back from a recent high, even while the underlying fundamentals just kept improving. And that's the
gap that I keep talking about. The gap between what the market sees in the moment and what the
math says about the next five to ten years. If you go back to the question that we started with, is
the market too expensive to invest in right now? My answer is the same answer that I gave
you 12 months before the FAA shortlisted Palantir for air traffic control. Look at what
these companies are going to own in five years, not necessarily what all the pricing action
is doing today. The trend forecasting lens is what earned its keep when I bought into
Palantir two and a half years ago because I was trying to look at what it was going to be
in five years. And it's the same lens that I'm using on these seven names today. But even then,
I try to find pullbacks for every single entry. Where dollar cost averaging for a long-term
investor like me is just the same boring game plan I go to every week. As always, thanks so
much for watching and we'll see you next time.