00:00:00
so you want to learn artificial
00:00:01
intelligence then this video is for you
00:00:04
I'm going to provide you with a complete
00:00:06
roadmap that I would follow if I had to
00:00:08
start over today on my artificial
00:00:10
intelligence journey and now for context
00:00:12
I started studying artificial
00:00:14
intelligence back in 2013 10 years ago
00:00:17
and over the past years I've been
00:00:18
working as a freelance data scientist
00:00:20
helping my clients with various
00:00:22
end-to-end data science and artificial
00:00:25
intelligence Solutions and applications
00:00:28
I also share all of this knowledge and
00:00:30
my journey on this YouTube channel which
00:00:31
as of today has over 25 000 subscribers
00:00:34
and at the end of this video I will also
00:00:36
provide you with a resource completely
00:00:37
for free where you can follow all of
00:00:39
these steps to complete roadmap even
00:00:41
with training videos and instructions so
00:00:43
make sure to stick around for that and
00:00:45
now before we dive into the seven steps
00:00:47
that I would take today to go from
00:00:49
beginner all the way to monetizing my
00:00:51
data and AI skills it's important to
00:00:53
provide some context on what is
00:00:55
currently going on with the AI hype
00:00:57
because I see a lot of new people
00:00:59
entering the field and for a good reason
00:01:01
because the AI Market size is expected
00:01:03
to grow up to 20 volt by the year 2030
00:01:07
bringing it all the way to nearly 2
00:01:09
trillion US dollars so it's really one
00:01:12
of the best opportunities I would say
00:01:14
right now to get into because we're
00:01:16
still early we're still at the beginning
00:01:18
of this AI Revolution and also with the
00:01:22
release of these pre-trained models from
00:01:24
open AI it's now also easier than ever
00:01:26
to enter the field but that said that is
00:01:29
also where a lot of the misunderstanding
00:01:32
and just wrong expectations arise from
00:01:35
because I see a lot of people online as
00:01:37
well as on YouTube explaining like how
00:01:39
you can quickly start for example your
00:01:40
own AI automation agency and while there
00:01:44
are great tools already online out there
00:01:46
like both press and stack Ai and
00:01:48
flowwise which I also made a video on
00:01:50
where you can quickly spin up prototypes
00:01:53
and and simple Bots and even can get a
00:01:55
little bit more advanced don't get me
00:01:57
wrong you can definitely build some
00:01:58
great Solutions with that but if you
00:02:01
really want to learn artificial
00:02:02
intelligence and build applications that
00:02:05
companies can count on and build upon
00:02:08
then you really have to understand the
00:02:10
coding part the technical part really of
00:02:12
it so that's really where our starting
00:02:14
point should be for you and for your
00:02:17
learning path figuring out hey do I want
00:02:19
to just learn how to use these no code
00:02:22
Loco tools already available or do I
00:02:25
really want to learn artificial
00:02:26
intelligence and with that said there is
00:02:29
also just a general misunderstanding I
00:02:31
believe of what really AI is because AIS
00:02:34
is such a large umbrella term and it's
00:02:37
also nothing new it's been around since
00:02:39
the 1950s but right now with the chat
00:02:42
GPT hype and the open AI models people
00:02:45
think AI is that really if we look at
00:02:49
what artificial intelligence really is
00:02:51
it's like I've said a real big umbrella
00:02:54
term with various subfields so for
00:02:57
example within artificial intelligence
00:02:59
which is here explained as programs with
00:03:01
the ability to learn and reason like
00:03:02
humans machine learning then we have
00:03:04
deep learning which is another subset
00:03:06
focusing on neural networks and then we
00:03:08
have the field of data science but in my
00:03:11
work as a data scientist I use
00:03:13
artificial intelligence I use machine
00:03:14
learning and I also use deep learning
00:03:17
it's a lot more than what people think
00:03:19
the first real question that you gotta
00:03:21
ask yourself is do you want to be a
00:03:24
coder and now there's no right or wrong
00:03:27
answer here there are plenty of
00:03:28
opportunities right now and also in the
00:03:31
future for both Pathways for both local
00:03:33
NOCO tools and building custom
00:03:35
applications but you just gotta be aware
00:03:38
of the pros and cons to both of the
00:03:41
sides and not to be totally clear this
00:03:43
roadmap is for people that really want
00:03:45
to learn AI with the depth of
00:03:46
understanding really learn the technical
00:03:49
side of things and now if you've decided
00:03:51
that that is not for you that's of
00:03:52
course totally fine like I said there's
00:03:54
no right or wrong but then if you want
00:03:55
to still want to do things with AI then
00:03:58
I recommend starting out by checking out
00:04:00
both press like I've set or stack AI
00:04:02
which are excellent resources or you
00:04:04
could check out my video on flowwise
00:04:06
here on YouTube where I show you how you
00:04:08
can get started with a local NOCO 2 as
00:04:10
well completely for free but if you do
00:04:13
decide that you want to join the Dark
00:04:15
Side and become a coder then let's
00:04:18
proceed with the next steps my Approach
00:04:20
is quite different from anything else
00:04:23
you will find online and now why is that
00:04:25
and what I typically see online is you
00:04:28
have two ends of the the Spectrum
00:04:30
basically where on the one hand you have
00:04:32
the people talking about these low code
00:04:34
and no code tools not really getting
00:04:37
into the specific the theoretical part
00:04:39
and then on the other hand you have the
00:04:42
more classical approaches towards
00:04:44
artificial intelligence and machine
00:04:45
learning where people really get into
00:04:47
the mathematics and the statistics
00:04:49
giving you road maps where you really
00:04:51
have to get theoretical first I'm a firm
00:04:54
believer of learning by doing reverse
00:04:57
engineering things that people have
00:04:59
already done putting in practice and
00:05:01
then trying to fill in the gaps now the
00:05:04
technical roadmap that I'm going to
00:05:05
provide to you will really focus on the
00:05:09
fundamentals that you need in order to
00:05:11
get started in either artificial
00:05:13
intelligence data science or anything in
00:05:16
between like I've said I've worked in
00:05:18
all of these fields over the past 10
00:05:20
years and I've really identified the
00:05:23
core techniques workflows and tools that
00:05:26
you need in order to get started
00:05:28
regardless of what you want to do so
00:05:30
this will work for you if you just want
00:05:31
to build applications with large
00:05:33
language models and Lang chain for
00:05:35
example but it will also work if you
00:05:37
aspire to become a data scientist or a
00:05:40
machine learning engineer now the actual
00:05:43
first step that I would focus on on my
00:05:46
AI Journey would be to set up my work
00:05:48
environment now what does this mean so
00:05:51
python is the go-to language that we
00:05:54
have to learn if you want to get started
00:05:56
in AI or in data science but the thing
00:05:58
is
00:06:00
Titan if you start to follow these
00:06:02
tutorials online videos training videos
00:06:04
courses even you can quite quickly
00:06:06
understand Python and how it works
00:06:08
because it's one of the easiest
00:06:10
languages to get started with but I
00:06:14
found in my personal Journey that
00:06:15
there's this initial bump where you see
00:06:18
things online and you see people run
00:06:20
some code but then you are missing some
00:06:22
information on okay but how do I now
00:06:24
actually do this on my laptop on my
00:06:27
computer
00:06:28
and I would really focus on this first
00:06:31
setting up an environment on your laptop
00:06:33
on your computer where you have an
00:06:35
application a program and a python
00:06:37
installation that you are confident with
00:06:40
and now I have a specific approach that
00:06:43
I take over here within fias code and a
00:06:46
lot of people seem to like that so make
00:06:49
sure to check that out in the resources
00:06:50
but this really is step one they're
00:06:53
getting accustomed with that and that
00:06:55
brings us then to step two which is
00:06:57
actually getting started with python
00:07:00
it's like I said the most important
00:07:02
language this is going to be your tool
00:07:05
that you're going to build these
00:07:06
applications in now if you're new to
00:07:08
programming at all I would first focus
00:07:10
on the fundamentals of programming which
00:07:13
I will have resources to but then
00:07:15
quickly transition into learning the
00:07:17
basics of python and then specifically
00:07:19
some libraries that are very useful for
00:07:23
AI and data science in particular so
00:07:26
these would be for example the numpy AI
00:07:28
Library the pandas library and the matte
00:07:31
plus lib library now these are all
00:07:33
libraries that you can use to do data
00:07:35
manipulation data cleaning creating
00:07:37
visualizations this is really your
00:07:39
starting point for starting to work with
00:07:41
data because in the end all AI
00:07:44
applications all AI tools are created
00:07:47
from data with data so being able to
00:07:50
work with data and turn raw and
00:07:52
unstructured data into information into
00:07:56
valuable insights that you can actually
00:07:57
do something with is is really at the
00:08:00
core of of artificial intelligence and
00:08:02
now step three would be to learn the
00:08:05
very basics of git and GitHub now why is
00:08:08
that some would argue that that would be
00:08:11
a little bit more advanced and it's not
00:08:13
required in the beginning but what I've
00:08:15
found especially with artificial
00:08:16
intelligence and also the video
00:08:18
tutorials that I make is that a lot of
00:08:21
examples online people will make that
00:08:23
code available via GitHub but you have
00:08:26
to understand kind of at the very base
00:08:28
sick how these tools work because that
00:08:30
allows you to easily copy and clone is
00:08:33
what they call it tutorials that brings
00:08:35
us to step 4 which is working on
00:08:38
projects and building a portfolio and
00:08:40
for this it's convenient if you already
00:08:43
know how to use git so you can download
00:08:45
some projects download some code from
00:08:47
from other people and then try to
00:08:49
reverse engineer it to me that really is
00:08:51
the best way to to Learn Python to get
00:08:54
good to actually understand holistically
00:08:57
what a project looks like how people are
00:09:00
structuring their code and trying to run
00:09:01
it and then you don't understand what's
00:09:04
going on but then trying to reverse
00:09:06
engineer so it's really like beginning
00:09:08
with the end in mind and then trying to
00:09:11
change things and see how that affects
00:09:13
the different outcomes and this also
00:09:15
provides you with an opportunity to
00:09:18
explore what it is specifically that you
00:09:21
like about artificial intelligence all
00:09:24
the areas we've discussed computer
00:09:25
vision natural language processing
00:09:27
machine learning he here you really find
00:09:29
out okay these are all the kinds of
00:09:31
things that I can do and this is really
00:09:32
what I like to do and then as you're
00:09:35
working on these projects selecting them
00:09:37
picking them you there will be a lot of
00:09:39
gaps and and things you don't understand
00:09:40
and that would be a good point if you're
00:09:43
interested in that to find specific
00:09:45
pieces of information or courses to help
00:09:48
you with just that and now when it comes
00:09:50
to projects probably the best place to
00:09:53
start if you want to learn more about
00:09:55
data science and machine learning is
00:09:57
kaggle so kaggle is an excellent
00:10:00
resource that you can go through and
00:10:03
they host machine learning competitions
00:10:05
here so you can see all kinds of
00:10:07
requests and you can even win prizes so
00:10:09
this is one from Google and the cool
00:10:11
thing here is if you click on the actual
00:10:14
competition you can also actually have a
00:10:17
look at submissions that people have
00:10:19
made so here you can see an entire
00:10:21
notebook from someone
00:10:23
that is trying to solve this problem for
00:10:26
Google all with documentation and and
00:10:29
even the code so this is such an
00:10:32
excellent learning resources source that
00:10:34
you can go through like I said there are
00:10:36
plenty plenty of resources available on
00:10:40
here but if that's not for you machine
00:10:42
learning data science if you want to
00:10:43
just explore large language models in
00:10:46
open AI for example right now then I
00:10:48
recommend to check out my GitHub
00:10:50
repository on Lang chain experiments so
00:10:53
I also have videos on my YouTube channel
00:10:55
for that but here on the repository
00:10:56
that's why it's good that you at least
00:10:58
understand the basics of git and GitHub
00:11:00
so you can take this code know how to
00:11:02
work with it so here are some cool
00:11:04
examples of how you connect can create a
00:11:06
YouTube bot that can summarize a video
00:11:08
or even a slack bolt or a Ponders agent
00:11:11
that can ask questions and answer
00:11:12
questions about large data tables and
00:11:15
now if you're really serious about
00:11:16
learning artificial intelligence and
00:11:18
data science and another great resource
00:11:20
that you can check out is Project Pro
00:11:22
which I've recently discovered so
00:11:25
project Pro is a curated library of
00:11:28
verified and solved end-to-end project
00:11:30
Solutions in data science machine
00:11:32
learning and big data so overall this is
00:11:35
just an excellent resource with with so
00:11:37
much information and all the projects on
00:11:40
here that you can pick from all from the
00:11:42
various fields are all created by top
00:11:45
industry experts from leading tech
00:11:47
companies so what I really like about
00:11:49
this is first of all you have about 3
00:11:52
000 free recipes that like anyone can
00:11:54
check out but if you get to the
00:11:55
subscription and that is why it really
00:11:57
gets interesting you have access to 250
00:11:59
plus end-to-end projects so you can
00:12:02
really like go in here and see okay what
00:12:04
is it that you're working on so maybe
00:12:05
it's data science and you want to
00:12:07
specialize in machine learning and you
00:12:09
go in here you literally have all kinds
00:12:12
of projects and this is not only a great
00:12:15
resource for you to learn from because
00:12:17
you will have complete video
00:12:19
walkthroughs 24 7 support and you can
00:12:22
ask questions and and you can even
00:12:24
download all of the code so literally
00:12:26
the entire project will be made
00:12:27
available to you so it's a excellent
00:12:30
Learning Resource but also for me
00:12:32
personally working as a freelance data
00:12:34
scientist this can also like really help
00:12:36
me in my professional work that the
00:12:38
projects that I take on so for you that
00:12:40
could either be in your job or in future
00:12:43
jobs freelancing whatever you really
00:12:45
have a library that you can pick from
00:12:47
that can really give you that extra kind
00:12:49
of confidence you need for example to
00:12:51
take on a project now like I've said
00:12:53
really you see video instructions you
00:12:56
can go through everything and then also
00:12:58
download the code so this really is a
00:13:00
great resource that you can check out
00:13:02
and if you want to learn more about this
00:13:03
I will leave a link down in the
00:13:06
description and project Pro also has a
00:13:08
YouTube channel which you can subscribe
00:13:09
to if you want to stay in the loop learn
00:13:11
more on that and that brings us to step
00:13:14
five which is picking your
00:13:16
specialization and sharing your
00:13:18
knowledge so right now you understand
00:13:21
the fundamentals of python you have a
00:13:23
work environment and some some efficient
00:13:25
workflows that you can follow you also
00:13:28
have some project experience so now you
00:13:30
get a little bit more clarity of what it
00:13:33
is that you want to do within the world
00:13:35
of AI or data science or machine
00:13:37
learning so this would be the point
00:13:39
where you pick a focus area you
00:13:41
specialize you try to learn more and
00:13:44
also what I really would recommend and
00:13:45
what I would do is to start sharing your
00:13:48
knowledge so you could do this through a
00:13:50
personal blog you could do this through
00:13:51
writing articles on medium or towards
00:13:53
data science or you could even
00:13:55
potentially like I'm doing share your
00:13:57
your knowledge on YouTube and by doing
00:13:59
so you're not only contributing to the
00:14:02
collective knowledge on AI and data
00:14:04
science but it's also an essential
00:14:07
method for you to strengthen your own
00:14:10
learning because in doing so in
00:14:12
explaining Concepts that you're working
00:14:15
on that you're learning to to someone
00:14:16
else you really start to identify the
00:14:19
gaps within your understanding and this
00:14:21
again allows you to fill in those gaps
00:14:24
accordingly and really focus on some
00:14:26
specialized learning versus just going
00:14:29
through course after course after course
00:14:31
and then step six would be continue to
00:14:34
learn and upskill because now that you
00:14:37
have Clarity on your specialization and
00:14:39
kind of the direction that you want to
00:14:40
go and you also start to identify these
00:14:42
gaps within your own understanding
00:14:45
it might be time for you to for example
00:14:47
focus on math focus on statistics if you
00:14:51
want to become a better machine learning
00:14:53
engineer or a data scientist but if
00:14:56
you've decided to go with the large
00:14:57
language model and generative AI route
00:14:59
you might identify that you need some
00:15:03
software engineering skills actually
00:15:05
really start to understand how you can
00:15:07
work with with apis and create
00:15:09
applications and that's like I think the
00:15:12
main main message that I wanna want to
00:15:14
provide you with with regards to this
00:15:16
roadmap and and my Approach is that it's
00:15:20
everyone's journey is is unique and
00:15:23
depending on what you want to do with AI
00:15:24
there's a specialized learning path for
00:15:27
you specifically so my goal is to really
00:15:29
provide you with the tools and
00:15:30
techniques to quickly get going
00:15:33
get your hands dirty identify problems
00:15:36
work on projects and then fill in those
00:15:39
gaps and then finally step 7 would be to
00:15:42
monetize your skills now this could
00:15:45
either be through a job this could be
00:15:47
through freelancing or this could be
00:15:49
through building a product but where the
00:15:52
real Learning Happens is is when there
00:15:55
really is some pressure onto it so it's
00:15:57
all fun and games when you're trying to
00:15:59
explore this within your free time
00:16:01
following some courses following some
00:16:03
tutorials but when it's your boss or
00:16:06
when it's a client that's that's
00:16:08
breathing down your neck for the
00:16:10
deadline that is where you really push
00:16:13
yourself that is where you really get
00:16:15
creative get resourceful and try to
00:16:18
absorb and learn as much information as
00:16:21
possible to just get the job done and
00:16:25
that's it those are the seven steps that
00:16:27
I would take today if I had to start
00:16:29
over completely from scratch on my AI
00:16:32
Journey and now another bonus tip that I
00:16:35
can provide you which will make a great
00:16:38
difference is surround yourself with
00:16:40
like-minded individuals who are on the
00:16:43
same track the same path as you who
00:16:45
share the same interest where you can
00:16:47
bounce ideas off where you can share the
00:16:49
latest news and tips with and in order
00:16:52
to facilitate that for you as well I
00:16:55
have an exciting announcement because
00:16:57
today I will officially be releasing my
00:17:01
free group called Data alchemy that I
00:17:04
would like you all to invite you this
00:17:07
will be a group where I not only share
00:17:09
the complete and entire roadmap that I
00:17:12
just shared with you with all the links
00:17:14
resources tools it will also be a hub
00:17:16
your go-to place to navigate the world
00:17:19
of data science and artificial
00:17:21
intelligence and everything that's going
00:17:23
on and happening right now within this
00:17:26
rapidly changing field so if you're
00:17:29
serious about learning artificial
00:17:31
intelligence and data science and you
00:17:32
also also want access to not only this
00:17:35
entire roadmap but additional courses
00:17:37
and resources then make sure to check
00:17:40
out the first link in the pinned comment
00:17:42
below this video and then I look forward
00:17:45
to seeing you in the group
00:17:50
foreign