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Monday, September 13, 2021

Amazing Applications / Uses of Data Science Today

 

Introduction


One of the questions people ask me commonly is:

Is Big Data /  Data Science really a buzz or a once-in-a-lifetime opportunity?

Different people have different answers and viewpoints to the question above. 

I don’t want to get into this debate here. I am rather taking a safer approach here. 

I would tell you a few applications which are already impacting a layman’s life. 

You can read them for yourself and decide whether this is a buzz or an opportunity.


we discussed one by one 


 1.Image Recognition

(Using data science, companies have become intelligent enough to push & sell products as per customers purchasing power & interest. Here’s how they are ruling our hearts and minds)

You upload your image with friends on Facebook and you start getting suggestions to tag your friends. This automatic tag suggestion feature uses a face recognition algorithm. Similarly, 

while using WhatsApp web, you scan a barcode in your web browser using your mobile phone. In addition, 

Google provides you the option to search for images by uploading them. It uses image recognition and provides related search results. 

To know more about image recognition.

check out this amazing (1:31) mins video: 

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Thursday, September 9, 2021

Why is Data Science Important in 2021?

 


When we talk about data science, it is not about making complicated models, exquisite visualizations,   or writing code. Data science is about using data to create as much impact as possible for a company. 

Now, the impact can be in the form of multiple things like insights, data products or product recommendations for a company. Data science is used across various industries already. With the advancements in predictive modeling, data scientists can help predict the outcomes of a particular disease given the historical data of the patients. 

With data science, financial organizations can manage their resources and make smarter decisions through fraud detection.

Stages involved in Data Science?

1.Defining the Problem

2.Obtaining the Data      

3.Scrubbing/Cleaning the Data

4.Exploratory Data Analytics

5.Data Modeling

6.Data Visualisation

This section discussed with following aspects 

 


A)
  ? Why is Data Science important for businesses

       ? What makes a data science job so desirable

       ? What is the future scope for Data Science

       ? Why is Data Science Important in 2021

B) examples of Data Science- centric Industries

Finally, How do I Become A Data Scientist?







please visit: 

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Saturday, September 4, 2021

Fascinating Data Analytics Real Life Applications in 2021





To gain such important insight into data as a whole, it is important to analyze data and draw specific information that can be used to improve certain aspects of a market or the business as a whole. There are several applications of data analytics and business are actively using such data analytics applications to keep themselves in the competition. Not only businesses but even civic bodies are using data analysis for several reasons, like monitoring crime.   

Top Data Analytics Applications

1. Security

2. Transportation

3. Risk detection

4. Risk Management

5. Delivery

6. Fast internet allocation

7. Reasonable Expenditure

8. Interaction with customers

9. Planning of cities

10. Healthcare

11. For Travelling

12. Managing Energy

13. Internet searching

14. Digital advertisement

Wrapping Up

It is clear that data analytics applications are taking great strides in almost all avenues across the globe. If we are able to understand data and analyze it, it can help in increasing our overall job efficiency a lot. However, misuse or inefficient use of data can cause several problems and lead to the lowering of overall productivity.

So, it is important that data scientists know how to make use of data efficiently and engage in the right applications of data analytics. If used in the right way, data analytics can bring about a major positive impact on our society and world at large and increase the overall productivity of specific sectors.

for more info : 

www.dprg.co.in

Tuesday, August 31, 2021

smart-farming-powered-by-analytic

 Fascinating Data Analytics Real Life                     Applications in 2021.

In today’s world, data rules the most modern companies. Numerous packets of data are circulating all around the world due to increasing access to the internet. Businesses are aware that this data translates to information which they can use to improve their customer service, understand trends, or even find market loopholes.

To gain such important insight into data as a whole, it is important to analyze data and draw specific information that can be used to improve certain aspects of a market or the business as a whole. There are several applications of data analytics,

1smart-farming-powered-by-analytic

Topics covered :

1. Indian Agricultural Sector

1.1 Key problems faced by the Indian Agricultural Sector

2. Smart Farming

2.1. Role of Analytics in Smart Farming

2.2 Use cases of Analytics in Smart Farming

2.3 Analytics in every step of the farming cycle


3. Putting it all together – ‘Smart Farm Operating Model’

4. Global implementations of Smart Farming solutions

5. Key challenges in Smart Farming adoption

6. Addressing key challenges







A key area to be worked upon is the strategy to ensure economic feasibility and ease of adoption. Taking cues from implementations across the world, a prudent approach would be to start small– with pilots in small farming districts. Even though every market is unique, there are learnings from every implementation that can be taken forward. Once, a robust framework is developed, the solution can then be scaled across regions.

more info :

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Monday, August 30, 2021

The Top Email Spam Filtering Solutions (Discover the top email filtering solutions to filter spam, phishing and malicious email)

 Discover the top email filtering solutions to filter spam, phishing and malicious email

spam emails have evolved from being a nuisance to being a security threat, that can put individuals and businesses at risk of malware. Dealing with spam is frustrating, expensive, and time-consuming. For businesses, spam can be potentially harmful, with cyber attackers using spam email to spread malware to business users. For these reasons, it’s hugely important that anyone relying on emails has a strong anti-spam filter in place.

 




For these each one details  please visit : 


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Friday, August 27, 2021

7 Tips for Detecting Online Fraud

 Running an eCommerce business comes with its own unique set of challenges. One of the biggest is trying to figure out which of your customers are who they say they are and which are trying to commit fraud using stolen payment information.








Table of Content

  1.     Fight fraud with Address Verification Service (AVS)
  2.    Check location information for fraud indicators
  3.    Google your customers
  4.    Check for suspicious email addresses
  5.     Detect fraud by noticing unusual account activity
  6.     What are the best ways to stop fraud?
  7.    How do I spot the fraud?
  8.     How do I spot friendly fraud?
  9. .  How is fraud most commonly detected?




Monday, August 23, 2021

IT Careers: How AI is Driving the Next-Gen of IT Professions

 The growth of the Information Technology sector in the past two decades has been nothing short of phenomenal. IT, as it is commonly known, has become so commonplace among all sorts of organizations, irrespective of the type or size, that not using it is considered unwise and rather foolish. IT has established itself as indispensable to the modern economy and IT professionals are the backbone of it


.

AI-driven Occupations:

 A)Data Scientists:

With the amount of data that is being generated every second, it becomes imperative to sort this data and make something meaningful out of the data gathered.

B)Big Data Engineer:

A Big Data Engineer is concerned with one organization’s data ecosystem. They build an environment/ecosystem for interaction between business systems.

C)Machine Learning Engineer:

Machine Learning Engineers are responsible for building and maintaining self-learning software to facilitate machine learning projects.

D)Business Intelligence Developer:

A professional is someone who can offer the best of both worlds. One world being the world of business and the other being the world of data and IT.

E)Robotics Scientist:

AI and Robotics are the two things that are synonymous with the layman. However, robotics is a field that is being supported and improved with the emergence and improvement in AI.


For more info : 


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