I would suggest you can use the python code for machine learning algorithms, in this presentation to easily implement and explore code in your projects.
Read more https://www.slideshare.net/nexsoftsys/why-do-we-use-python-and-ml-ai
2. Introduction
The best subject of all the Artificial Intelligence domain is machine learning which has been in
the news for quite some time. This field has the potential to provide a better and necessary
opportunity. It is very easy to start a career even if you have zero in Mathematics or
Programming. Even if you have experience, there is no problem because it is the most
important element for your success, purely to help you learn those things. Data for which you
have your interest and inspiration.
If you are new then you do not know where to start studying and why you need machine
learning and why it is gaining the most popularity, then you have come to the right place to
get better knowledge from here. I have collected better information and useful resources to
help you complete all your projects.
3. If you aim to become a better and successful coder then you have to keep many things in mind but
it is better to master the coding language for machine learning and data science and to use it with
confidence then calm down, You don't have to be a programming genius.
4. And
If you need machine learning and data science, Python is a better option for those who want to
start and get started. It is a minimal and intuitive language that reduces the time to get all your
results and if you want then R language Can consider but all uses have been greatly influenced by
Python.
5. MACHINE LEARNING
UNSUPERVISED LEARNING
SUPERVISED LEARNING
Group and interpret data based
only on input data
Develop predictive model based
on both input and output data
CLUSTERING CLASSIFICATION REGRESSION
It is learning based on its own
experience. It is like a person who
learns through the observation of
seeing others, plays like a
computer that can be python
programmed through information.
They are trained. Has the ability to
recognize the characteristics of all
elements.
6. • Data collection
• Data sorting
• Data analysis
• Algorithm development
• Checking algorithm generated
• The use of an algorithm to further conclusions
14. In untrained learning, your machine receives a set of all input data that determines the
relationship between the machine's data and other imaginary data. Unsupervised learning means
that the python computer program itself will find new patterns and relationships between all the
different data sets. Unsupervised learning can be further divided into two parts.
15. It shows computer capability by identifying all the elements based on the samples of
supervised learning and the computer by identifying it improves the ability to send new
data based on the data.