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Data Science and Artificial Intelligence in Malayalam


SKU: 6 Category:


Why data science is so important?

• Twitter Since 2015, the number of posts increased 45% to more than 850,000 tweets per minute.

• YouTube usage has more than tripled in the last two years with user uploading 400 hours of new video each minute of every day.

• Instagram users like 2.5 million posts every minute!

• Google Around 4 million Google searches are conducted worldwide each minute of everyday.

• Finally, data send and received by mobile internet users 1500 000TB.
So, with the above examples of how much data gets generated, now how much hidden insights and patterns for accurate future predictions that we can actually achieve by using data science.

According to Forbes, annual demand for Data Scientist jobs for United States itself will increase by 364 million by 2020.
The average salary for a Data Scientist is $113,436.

What are the career progression path for data science professionals?

• Data Scientist: with a vast knowledge of Data Science, with Machine Learning and Business Intelligence tools. Data Scientist stands high as the Everest.

• Data Analyst: in 2020, the world will generate data 50times more than now and with each day passes by the data generated is infinity and with that to analyze those data, data analyst jobs will never have to see the face of recession. In linkedin itself there are average 400 new jobs for every 12 hour.

• Data Science Trainer: in this present date with a lack of the knowledge of these advance data science techniques gives a vast opportunity to become the fountain of data science for others.

• Business analyst: with the role of defining and managing the business requirements, business analyst takes the lead in every business decision making process of organization.

Who this course is for:
  • Anyone looking for a career to machine learning and artificial intelligence.
  • Anyone looking for a career to Big Data Engineer
  • Anyone looking for a career to Data Scientist, Business analyst, Data Engineer, Analyst