Pioneering the Future: The Evolution of Data Science and Machine Learning
Over the last millennia, technology has witnessed
substantial evolution that has not only transformed the human way of living but
has also led to human evolution. Starting from roadways and railways in the
past to Artificial Intelligence in the present, technological evolution has
only benefitted humans with an improvement in their standard of living. Even
with the various technology surrounding us now, there is constant research and
development going on to make human life more efficient and better.
In this blog, readers will be taken on a journey of machine
learning and data science’s evolution from its inception to its present state.
Data
Science and its evolution:
The term data science was first coined in the 1960s mainly
to describe and interpret large data collected over time. With time data
science has evolved with the use of computer science and statistics and now
encompasses various fields. Data science is used to gain insight, understand
trends, and make future predictions.
Data science and its roots can be traced back to statistics,
but over time, data science came to include concepts such as machine learning,
artificial intelligence, etc. With an increase in population and globalization,
people are getting more dependent on the use of technology for everyday things.
This surge in use has amassed huge data and data science is helping scientists
find answers to human behaviour through this data. This new information has
paved way for businesses to find a way to increase profit but making better consumer
decisions and data science has also helped in the field of medicine and
engineering.
Around 1962, an American mathematician J.W Tukey
first coined the term as he saw the origin of data study way before computers
came into the picture. After Tukey, another scientist came to believe in the
potential of data science and defined it as the science of dealing with
established data and the meaning behind this data is delegated to other
branches of science.
Then around 1977, the International Association of
Statistical Computing was formed and had the principal agenda to link
traditional statistics to computer technology with individual domain experts
who would help decode the data into information and knowledge.
In the 1990s data science started to take a more
significant form with the formation of Knowledge Discovery in Database (KDD)
and the International Federation of Classification Societies (IFCS). With time
these two societies were focused on the education and training of individuals
in the theory of data science and methodology. Data science also started to
gain more attention with professionals starting to monetize data and
statistics.
Finally, around 1994, a newspaper published the first
article related to data science named “Database Marketing”, which essentially
explained the process of how some businesses were collecting large data to
study consumer behaviour. Their competition and how to advertise to the right
audience.
In the early 2000s, data science was recognised and
specialised as its own field. Data science journals started getting published
and circulated and scientists continued developing and improving the potential
of data science. By the late 2000s, technology evolved to provide universal
access to internet connectivity and communication along with data collection.
Worth mentioning that in 2005 it was the scene for
big data. Technology giants like Google and Facebook entered the market and
started collecting massive data, uncovering them and developing technologies
that were capable of processing them. Technologies like Hadoop, Spark and
Cassandra started developing.
Leaping to 2014, the increasing importance of data
science made organizations interested in finding patterns that would help them
make better business decisions and demand for data scientists went on growth in
various parts of the world.
Now, in 2015, machine
learning, deep learning and finally artificial intelligence entered the
field of data science. Highly different from the past technologies, they were
an innovation on their own. Right from the personalised shopping experience to
self-driving vehicles, real-life applications of AI started to be used on a
daily basis.
Coming to 2018, the dangers of these evolutions were
realised, and new regulations came to place. As we enter the 2020s, big
data and its study have become more relevant than ever. Now coming to the
specific year 2022, Artificial Intelligence and Data Science have
advanced to include the following things:
Objects and faces can be identified by machine learning
algorithms with 100% accuracy.
Natural Language processing software responds to human
questions with complete accuracy.
Data science is used to develop medicines and treat
diseases.
With AI, humans are able to drive cars, fly planes and other
complex tasks.
These listed advancements are only the tip of evolutions
that have propelled the world in the era of new technology. The basis of this
evolution is far and outreaching than comprehensible by ordinary humans.
With a given text, algorithms can write articles.
Identifying people by their face shape, skin tone and other
characteristics is made easy with a facial recognition program.
Music can be automatically generated by advanced neural
systems as they are able to interpret the emotions behind the songs.
Electronic chatbots can communicate with humans.
Computer programs are able to beat professional players in
various online strategy games.
The evolution of data science and machine learning has
evolved, and these advancements can be listed as:
According to Karun E S, Analyst at Quadrant Knowledge
Solutions, “The Data Science and Machine Learning (DSML) Platform vendors
continue to strengthen their capabilities by leveraging interoperability and
integration to design, develop, deploy, monitor, and manage all the models in a
unified platform. The industry is focusing on extending support for various use
cases such as image processing, signal processing, optimization, anomaly
detection, and more along with offering multiple deployment options like
deployment on edge devices, cloud platforms, on-premises, and embedded systems.
Trends to look out for in Data Science and Artificial
Intelligence in 2023:
There will be an increase in the use of machine learning and
artificial intelligence in businesses and industries.
Businesses are taking advantage of artificial intelligence
for decision-making.
Data science is getting extensively used in finance, banking
and the healthcare sector.
With more use of data science and big data, more jobs are
getting opened in this field.
Conclusion:
With further technology advancements, the collected data
will enable more interaction and decision-making in the future. Human lifestyle
will get more intertwined with technology and with the help of artificial
intelligence, predictive algorithms and data analytics, not only humans but
organizations also, will have ease in decision-making.

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