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A place to imporove knowledge and learn.
A place to imporove knowledge and learn.
Data science is the study and analyzation of data. Data is in a very raw and unaligned format, and one has to extract it, store it and analyze it to gain useful information. Data science fieldwork's main goals rotate around obtaining essential knowledge from both structured and non-structured data.
Data science obtains meaningful insight from data, which are the top influencers of data science.
Data science maximizes the value of your data. They are perfectly fit under the category of a data analyst. They are trend-setter; they have excellent skillset in mathematics and computer science.
Data science basically analyzes, collects and interprets data, perform statistical analysis on that data to make inferences, and analyze buyers and current market trends. Also, predict business steps for the future. Data science covers several IT fields, such as mathematics, statistician, scientist, and computer professionals.
It only requires data and tools. Data science performs a hypothesis on a large amount of data, performs experiments on data. Data that is provided is very messy and super challenging to work with.
Companies consider data science as their problem-solving formula with expertise in data-driven efficiency. It's a fantastic time to excel in this career because there will be a massive requirement for data science soon.
If someone wants to initiate his career in the data science field, he must make a strong skillset of the following list,
Apart from this skillset, one must compulsorily have a degree in computer science and try to obtain as much data science certification as he can.
In this face passed work, new trends of data science are coming up quite frequently. And if someone wants to improve and stay up to date, they must absorb a lot of information online. It will be super awkward to read everything out there on the internet.
Instead, read this small blog, which can give you all insight into top data science influencers. Below are the lists of most influential people we are going to talk about,
He is famously known as a data scientist, but he is also co-founder and chief scientist at Cloudera. He, along with DJ Patil, earned a name in data science; they even coined the term “data scientist.”
He also worked at Facebook, and he managed the data team there.
He is a data scientist and computer scientist. He is also famously known as the co-founder of the KDD conference. His primary focus was data mining; it is a method where data scientist tries to discover patterns in massive data sets.
KDD is referred to as data mining when knowledge is discovered from databases. Gregory's work mainly surrounds data science and data mining.
Of course! MIT Technology Review, Forbes, Fast Company, Harvard Business Review, Bloomberg BusinessWeek, NY Times, and others have to feature him and his work in their magazines.
Kirk Borne used his knowledge to develop “Booz Allen” and empowers people to bring change in this world since 2005. Booz Allen is very prestigious, best in their work in digital solutions, consulting, and analytics.
Kirk Borne is an astrophysicist and data scientist. He worked at NASA for more than 20 years. He has expertise in
Carla Gentry is the most influential person in the data science list as she loves sharing info about data science.
She is a data scientist and a total data nerd. She even uses data nerd as her twitter bio. She works for data science for more than 16 years with famous companies like Hershey, Kraft, Johnson & Johnson, Kellogg’s, and Firestone. She also worked at the University of Chicago and the University of Tennessee as a data scientist. She has a data science blog for you all people who want to get motivation.
She is the most inspiring woman in AI, Big data, machine learning, and data science. She is addicted to sharing information and super good at it.
She is a data scientist at company Talent Analytics, Corp. This company mainly offers the best hiring solution and predictive data services.
He is a master of technology. He is a tech entrepreneur. He has expertise in fields of Big Data, Data Science, Big data Platform, Database Platform, Data Warehouse Platform, Data architecture, and Data Analytics as well as Data Science Subject matter.
He has a background in Enterprise Data Technologies, Data Science, Strategies, and Methodologies. He is good at leadership and project level management. He is the face of the IT industry, he advises to maximizes the use of original language and minimizes any kind of technical jargon. Craig Brown has completed his doctorate degree from the University of Pennsylvania and Cornell University. The success behind him leading in the IT field is, he earned 25 professional certifications in technology and business.
Dr. GP Pulipaka is famous for his research work in machine learning, computer science, and Big Data Analytics. He is a unique and different leader in technology. His primary focus is SAP business systems, design engineering management, application development of Enterprises, data sciences, management, machine learning, and deep learning, several IoT platforms, natural language, and processing and consulting delivery procedures in SAP.
He gave 20+ years of his life to the SAP industry. He has vast experience in project handling and integration of technology and design businesses.
He successfully collaborated with SAP and Artificial intelligence for his 30 projects. He has managed volume, scalability, and performance tuning of SAP application and SAP systems.
Data science changes your raw data into valuable knowledge and maximizes your business.
It increases the value of your data
Data science jobs are done by data scientist
Someone who wants to learn data sciences must have a computer science degree and must be proficient in programming, machine learning, statistics, maths, etc.
There are several influencers to follow in data sciences. Influencers include
Along with a computer science degree, one must have data science certification too.