Data Science vs. Data Mining
When you hear the terms data science and data mining, what do you think
of? If you are like most people, you might believe that these two terms are
interchangeable, but there are quite a lot of differences between the two domains.
Here we will learn about data mining and data science, we will explore the
differences between data science and data mining, how each concept came to
be, and why it matters to understand their similarities.
Table of
content
· Data science vs. Data mining: Introduction
· Data science vs. Data mining: Skills
· Data science vs. Data mining: Differences
· Where to Use: Data Science / Data Mining?
· Frequently Ask Questions
· Conclusion
Data science
vs. Data mining: Introduction
Data science is a popular buzzword thrown around by tech giants, health
care, banks, and even governments. It's important to understand that data
science is a multi-disciplinary field; it covers big data processing, business
intelligence reporting tools, predictive modeling, and more.
Data science is a discipline that extracts usable insights from data by
combining technical knowledge, programming skills, math, and statistical
ability. Numbers, text, images, video, audio, and other data are utilized to
develop artificial intelligence (AI) systems that can perform tasks that would
generally need intellectual ability.
Data mining is a technique for extracting useful information from a vast
amount of data. It entails utilizing one or more software to analyze data
patterns in big batches of data. Data mining is used in a variety of sectors,
including science and research.
Data science
vs. Data mining: Skills
Now let's discuss skills that require both to become an expert in
these fields.
Data Mining Skills
· Programming languages (R, Python, Java, C++, Matlab,
SAS, SQL)
· Knowledge of big data frameworks (Hadoop, Spark,
Apache, Flink)
· Operating system (Linux)
· Database knowledge (Relational and non-Relational
Databases)
· Basic Statics Knowledge
· Machine Learning
· NLP
Data Science
Skills
If you're looking for a way to get into data science, these are the
skills that you need to learn.
· Programming languages (R, Python, Java, Matlab, SQL)
· Machine learning
· Deep learning
· NLP
· Knowledge of Databases
· Statistics
· Knowledge of analytical tools(Tableau, Power BI,
SAS, Hadoop, Spark, Hive)
· Knowledge of unstructured data
Where to Use:
Data Science / Data Mining?
Data science is engaged in many aspects of our lives and can assist
businesses in dealing with the following scenarios:
· Predictive analytics for fraud prevention
· Machine learning is being used to streamline
marketing procedures.
· Using data analytics to make actuarial operations
more efficient
Data mining is now widely employed in a variety of fields, including
business, science, technology, medical, and telecommunications.
· Data mining applications include credit card
transaction analysis.
· Housing and communal services data analysis, loyalty
card programs in retailers based on consumer preferences.
· National security (intrusion detection), and human
genome research.
When it comes to data mining and data science, what's the
difference?
The majority of data mining study focuses on structured data. Structured,
semi-structured, and unstructured data can all be used for data science. Data
mining uses mathematical and scientific methods to find patterns and trends,
whereas Data science employs business problems, and health problems analytics
models short in prediction.
Utilization Areas: Data science can be primarily utilized for business
purposes such as assessing business decisions, predictive analytics to predict
outcomes, and managing businesses efficiently whereas
Data mining can be primarily utilized for scientific purposes such as
discovering patterns and relationships in the data to help make better business
decisions. Data mining can help spot sales trends, develop smarter marketing
campaigns, and accurately predict customer loyalty.
Scope:
While discussing both of them we should keep it in mind that data science
is a field and data mining is just a technique that can be used by data science
experts so if you are focusing on any one of these it is better to focus on
data science as it teaches you more efficient techniques to use which will be
far better than data mining technique
Frequently Ask
Questions:
Let's discuss some questions which are frequently come to mind when
anybody sees these terminologies.
1.
Is data mining a viable career option?
This is a fantastic opportunity for people to learn data mining skills
and take advantage of the industry's predicted expansion in the coming years.
Analysts that specialize in data mining can be found almost anywhere. Different
types of businesses in various industries must better utilize their data.
2.
Data Science and Data Mining are both
the same?
The concept of data science is becoming more popular by the day, but a
lot of people use it interchangeably with terms like data mining. While there
are some similarities among them both, both are not the same.
Data mining refers to processes and tools used for identifying patterns
in large amounts of data that are stored within databases. On the other hand,
Data science is used for prediction.
3.
Is data mining a type of artificial
intelligence?
Data mining is a crucial component of Artificial Intelligence (AI).
Predictive algorithms derived from data mining will serve as the foundation for
the AI application.
4.
Is Excel a tool for data mining?
The majority of data mining software programs cost thousands of dollars,
but there is one program on your desktop that is ideal for beginners: Excel is
an excellent one. Data mining, also known as knowledge discovery, is a useful
method for identifying patterns or connections in relational data.
5.
Is data mining considered a skill?
Data mining experts examine data and produce commercial solutions using
statistical software. As a result, data mining experts must be proficient in
technical abilities, particularly programming software, and business
intelligence.
Conclusion:
A common misconception is that data mining and data science are
synonymous. They are not, although they are frequently used interchangeably.
While both fields involve gathering and analyzing large amounts of data, they
approach it from a different perspectives. Data mining uses automated techniques
to retrieve useful information from a set of data. The goal is to discover
hidden patterns or trends that could help improve decision-making processes.
Data science doesn't use these techniques; instead, it deals with interpreting
massive sets of data for other purposes, such as scientific research or even
marketing campaigns.
Hope that by reading this blog you will get a clear idea about Data
mining and Data science and after this you can differentiate between data
science and Data mining projects as well.
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