Programming Language Is Important For Data Science
WHAT IS
PROGRAMMING LANGUAGE AND DATA SCIENCE?
Before defining
importance of programming language in data science, it’s important to
understand meaning of programming language and data science.
Programming
Language is set of
instructions or commands use to either write code or to create software
program. In simple words, programming language is language to give command to
computer to perform certain task. It can be in form of command, code, syntax
etc. It is broadly classified into 3 types:
·
Machine Level Language
·
Assembly Level Language
·
High Level Language
A
programming language is an artificial language that is used to control computer
system. There are various types of programming language like Python, C, C++,
Java, JavaScript, R etc.
Data
Science: Data
science is a field of study that deals with data. Data Science extracts meaningful result from
unstructured data. It combines domain expertise, programming, knowledge of
mathematics & statistics, algorithms, data structure etc.
INTRODUCTION:
As, Data is
multiplying everyday, which has become challenge for companies to manage huge
amount of data collected from ample sources and convert it to asset that
empowers better business decision making. So to understand and manage data
effectively, both programming language and data science are essential elements.
As data science convert raw data into useful information easily accessible by
all stakeholders for implementing better decision. To convert data, certain
steps are followed by computer system. To give instructions to computer,
programming language is required.
People who
perform all functions like analyzing, interpreting, organizing etc related to
data are called Data Scientists, Data Analyst, Business Analyst, Web Developer
etc. Data Science has become one of the most highly paid careers, with passage
of time. To pursue career in data science, you should acquire knowledge of its
important concepts like:
·
Data
Structures & Algorithms
·
Machine
Learning
·
Coding
·
Mathematics
and Statistics Computation
·
Business
Intelligence
Four
Components of Data Science:
1. Data Strategy: Data Strategy means determining what
data need to be collected and why? In other words, Data Strategy makes
connection between data need to be collected and business goals. Every data
collected can’t be useful, so strategy should be to gather data which fulfill
business goal. It is important to explicate business goal and data gathering.
2. Data Engineering: Data Engineer transforms data into
useful format for analysis. Data Engineering is the practice to design and
build systems for collecting, storing, analyzing data. It is complex task of
converting raw data into usable information for data scientists and other
employees within organization.
3. Data Analysis and Models: To extract insights or make
predications, data analysis and mathematical models plays vital role. To
determine predications algorithms, computations, statistics analysis etc. are
required. Data models organize data elements and regulate how data elements are
related to each other.
4. Visualization and Operationalization:
Presenting data is
not sufficient to solve business problems, but to bring the right data, at the
right time, for the right users. So, both data visualization and data
operationalization plays crucial role in handling data. Visualization is broader
in term; it is not limited to presenting data but includes looking raw data
again, and presenting it in such a way to convert it into useful information.
Along with
above mention concepts, it’s important to know about data science
process. What steps are followed to
solve problems in data science?
Data
Science Process: To understand what data scientists do, let’s understand the
data science process:
·
Frame the problem and setting the research goal
·
Collect raw data : Internal data
and External data
·
Process the data for analysis : Data Cleaning, Data Transforming,
Combining Data
·
Data Exploration (Explore the data)
·
Data Modeling (Perform analysis)
·
Communicate results : Presentation and Automation
PROGRAMMING
LANGUAGE IS IMPORTANT IN DATA SCIENCE
Programming
Language is crucial
for all direction in data science. Languages like Python, R etc act as base for
data science and analytics, others like C, C++, Java, and JavaScript etc are
useful for data systems development.
Data Science requires programming languages to help information extract
the value of data.
All
programming languages are important in data science, depends on domain and
industry. Most commonly used languages are Python, R, SQL and Java etc.
WHO CAN
BECOME DATA SCIENTISTS?
Data
Scientist is required in every job sector. People from any background can learn
data science, even if you are from non-technical stream. You can choose data science career by gaining
knowledge from certified courses. There are ample of resources though which any
aspirants can masters data science skills, available on internet. You can
choose any source which is suitable as per your requirement. Here are few best
data science institutes, which offer best data science course:
1. Upgrad:
Upgrad offers professional certified program to learn problem solving
skills in data science. Upgrad courses are designed mainly for technical
background people. You can attain knowledge of machine learning, data
engineering, business analytics, natural language processing etc. You can
choose any program as per your goal, Upgrad provides degree like Master in Data
Science, Executive PG program etc.
2. Coursera: Courses are designed very well as per
your level for both beginner as well as intermediate. You can learn courses
from beginning, you don’t need prior experience. You get exposure to real life
industry projects and can learn Python, SQL, Cloud databases, Machine Learning,
Algorithms etc. Fresher can also opt for these courses but if you are looking
for advancement in career, will suggest opting for its alternatives.
3. Simplilearn : It is one of the best platform to
gain proficiency in data science and programming language. Courses are well
structured; fulfill all requirements to become data scientist. Simplilearn
offers 10+ courses in data science from micro degree to PGP programs etc,. In
this you get access to online boot camp, Machine Learning, Python, SQL, Big
Data etc. Although, sessions conducted are interactive mentor but batches are huge,
which make difficult to accessibility to clear doubts.
4. Learnbay: It is one of the best institutes in
data science, which also provide domain specialization. Learnbay offers various
courses as per industry’s need. You can learn Domain training, Google cloud,
Deep Learning, Power BI, Computer Vision, AI/ML project management, Machine
learning, NLP, Python, SQL, R programming etc. Learnbay data science certification
courses are designed for all working professionals from any stream, as you can
start from scratch. By opting learnbay, you can specialize data science in one
or multiple domain like HR, Finance, Marketing, Telecom, Banking etc., To
become data scientist, you should be specialized in one domain. You get
experience of real life projects, lifetime access etc.
Apart from
above mention courses or institutes of data science, you can also gain
programming skills and data science knowledge by YouTube Videos, Books, etc, but
as to become master of any skills, both practical and theoretical aspects are
required, which can be gain from such platform where you are taught all
important concepts and get exposure of real life industry projects. So,
Courses, programs, or institutes are one of the best sources to attain fully
fledged knowledge with expert understanding of practical application.
At Last, I
would like to add that Data Science is the study of data. Data has become
expensive assets which is difficult to manage now days if you don’t have proper
skills to convert chaos of data. To handle data, you should attain skills to represent
it into useful information, for which programming language is base. To learn
programming skills and managing data, you are required to attain certified
knowledge. For this, you can opt any institute as per your requirement or any
source whatever is suitable. All sources are good mode of imparting education
but it depends on individual learning capability and goals. So, choose as per your
own suitability, it’s not necessary that if one course is good for individual,
it will be good for other individual also.
As, data science suggest to produce useful outcome from plethora of
information, same way, you can analysis each source and can initiate your
learning by choosing right source.
Corrected
form
WHAT IS PROGRAMMING LANGUAGE AND DATA SCIENCE?
Before defining the importance of programming language in data
science, it’s important to understand the meaning of programming language and data
science.
Programming Language is a set of instructions or commands used to either write code or
to create software programs. In simple words, a programming language is a
language that gives commands to computers to perform certain tasks. It can be
in the form of command, code, syntax etc. It is broadly classified into 3
types:
· Machine Level Language
· Assembly Level Language
· High Level Language
A programming language is an artificial language that is used to
control computer systems. There are various types of programming languages like
Python, C, C++, Java, JavaScript, R etc.
Data Science: Data
science is a field of study that deals with data. Data Science extracts
meaningful results from unstructured data. It combines domain expertise,
programming, knowledge of mathematics & statistics, algorithms, data
structure etc.
INTRODUCTION:
Data is multiplying everyday, which has become a challenge for
companies to manage huge amounts of data collected from ample sources and
convert it to assets that empower better business decision making. So to
understand and manage data effectively, both programming language and data
science are essential elements. As data science converts raw data into useful
information easily accessible by all stakeholders for implementing better
decisions. To convert data, certain steps are followed by the computer system.
To give instructions to a computer, a programming language is required.
People who perform all functions like analyzing, interpreting,
organizing etc related to data are called Data Scientists, Data Analyst,
Business Analyst, Web Developer etc. Data Science has become one of the most
highly paid careers, with passage of time. To pursue career in data science,
you should acquire knowledge of its important concepts like:
· Data Structures & Algorithms
· Machine Learning
· Coding
· Mathematics and Statistics
Computation
· Business Intelligence
Four Components of Data Science:
1. Data Strategy: Data Strategy means determining what data needs
to be collected and why? In other words, Data Strategy makes connections
between data that need to be collected and business goals. Every data collected
can’t be useful, so strategy should be to gather data which fulfill business
goals. It is important to explicate business goals and data gathering.
2. Data Engineering: Data Engineer transforms data into useful
format for analysis. Data Engineering is the practice to design and build
systems for collecting, storing, analyzing data. It is a complex task of
converting raw data into usable information for data scientists and other
employees within the organization.
3. Data Analysis and Models: To extract insights or make predictions, data
analysis and mathematical models play a vital role. To determine predictions
algorithms, computations, statistics analysis etc. are required. Data models
organize data elements and regulate how data elements are related to each
other.
4. Visualization and Operationalization: Presenting data is not sufficient to solve
business problems, but to bring the right data, at the right time, for the
right users. So, both data visualization and data operationalization plays a
crucial role in handling data. Visualization is broader in term; it is not
limited to presenting data but includes looking at raw data again, and
presenting it in such a way to convert it into useful information.
Along with above mentioned concepts, it’s important
to know about the data science process. What steps are followed to solve
problems in data science?
Data Science Process: To understand what data scientists do, let’s
understand the data science process:
· Frame the problem and setting the
research goal
· Collect raw data : Internal
data and External data
· Process the data for analysis :
Data Cleaning, Data Transforming, Combining Data
· Data Exploration (Explore the
data)
· Data Modeling (Perform analysis)
· Communicate results :
Presentation and Automation
PROGRAMMING LANGUAGE IS IMPORTANT IN DATA SCIENCE
Programming Language is crucial for all directions in data science. Languages like
Python, R etc act as a base for data science and analytics, others like C, C++,
Java, and JavaScript etc are useful for data systems development. Data
Science requires programming languages to help information extract the value of
data.
All programming languages are important in data science, depending
on the domain and industry. Most commonly used languages are Python, R, SQL and
Java etc.
WHO CAN BECOME DATA SCIENTISTS?
Data Scientist is required in every job sector. People from any
background can learn data science, even if you are from a non-technical
stream. You can choose a data science career by gaining knowledge from
certified courses. There are ample resources through which any aspirants can
master data science skills, available on the internet. You can choose any
source which is suitable as per your requirement. Here are few best data
science institutes, which offer best data science course:
1. Upgrad: Upgrad offers a
professional certified program to learn problem solving skills in data science.
Upgrad courses are designed mainly for technical background people. You can
attain knowledge of machine learning, data engineering, business analytics,
natural language processing etc. You can choose any program as per your goal,
Upgrad provides a degree like Master in Data Science, Executive PG program etc.
2. Coursera: Courses are designed very well as per your level
for both beginner as well as intermediate. You can learn courses from the
beginning, you don’t need prior experience. You get exposure to real life
industry projects and can learn Python, SQL, Cloud databases, Machine Learning,
Algorithms etc. Freshers can also opt for these courses but if you are looking
for advancement in career, will suggest opting for its alternatives.
3. Simplilearn : It is one of the
best platforms to gain proficiency in data science and programming language.
Courses are well structured; fulfill all requirements to become a data
scientist. Simplilearn offers 10+ courses in data science from micro degree to
PGP programs etc,. In this you get access to online boot camp, Machine
Learning, Python, SQL, Big Data etc. Although sessions conducted are
interactive mentors but batches are huge, which make it difficult to
accessibility to clear doubts.
4. Learnbay: It is one of the best institutes in data
science, which also provides domain specialization. Learnbay offers various
courses as per industry’s need. You can learn Domain training, Google cloud,
Deep Learning, Power BI, Computer Vision, AI/ML project management, Machine
learning, NLP, Python, SQL, R programming etc. Learnbay data science
certification courses are designed for all working professionals from any
stream, as you can start from scratch. By opting learnbay, you can specialize
in data science in one or multiple domains like HR, Finance, Marketing,
Telecom, Banking etc., To become data scientist, you should be specialized in
one domain. You get experience of real life projects, lifetime access etc.
Apart from above mention courses or institutes of data science,
you can also gain programming skills and data science knowledge by YouTube
Videos, Books, etc, but as to become master of any skills, both practical and
theoretical aspects are required, which can be gain from such platform where
you are taught all important concepts and get exposure of real life industry
projects. So, Courses, programs, or institutes are one of the best sources to
attain fully fledged knowledge with expert understanding of practical
application.
Lastly, I would like to add that Data Science is the study of
data. Data has become an expensive asset which is difficult to manage nowadays
if you don’t have proper skills to convert chaos of data. To handle data, you
should attain skills to represent it into useful information, for which
programming language is the base. To learn programming skills and managing
data, you are required to attain certified knowledge. For this, you can opt any
institute as per your requirement or any source whatever is suitable. All
sources are a good mode of imparting education but it depends on individual
learning capability and goals. So, choose as per your own suitability, it’s not
necessary that if one course is good for an individual, it will be good for
other individuals also. As data science suggests to produce useful
outcomes from a plethora of information, the same way, you can analyze each
source and can initiate your learning by choosing the right source.
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