Big Data Archives - Tricky Enough https://www.trickyenough.com/category/big-data/ Explore and Share the Tech Thu, 15 May 2025 23:52:47 +0000 en-US hourly 1 https://www.trickyenough.com/wp-content/uploads/2021/05/favicon-32x32-1.png Big Data Archives - Tricky Enough https://www.trickyenough.com/category/big-data/ 32 32 100835972 The Influence of Big Data on Your Business Development https://www.trickyenough.com/the-influence-of-big-data-on-your-business-development/?utm_source=rss&utm_medium=rss&utm_campaign=the-influence-of-big-data-on-your-business-development https://www.trickyenough.com/the-influence-of-big-data-on-your-business-development/#respond Wed, 19 Oct 2022 12:33:49 +0000 https://www.trickyenough.com/?p=66655 Big data is crucial when it comes to understanding your target audience and their preferences. You may even use it to foresee some of their requirements. The data must be accurately processed and handled effectively. In this article, we will discuss the role of big data analytics services in the business. What is Big Data...

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Big data is crucial when it comes to understanding your target audience and their preferences. You may even use it to foresee some of their requirements. The data must be accurately processed and handled effectively. In this article, we will discuss the role of big data analytics services in the business.

What is Big Data and why is it useful?

Big Data is a body of information that is enormous in volume and is always expanding rapidly. No typical data management systems can effectively store or analyze this data because of its volume and complexity.  Business enterprises may utilize analytics to identify their most valued clients thanks to big data. Additionally, it may assist enterprises in developing customers` experiences, finding new business solutions, helping in decision-making, and developing new goods. 

A New Competitive Advantage for Your Organization

Big Data can improve trial analysis and aid in result prediction. This aids industries in figuring out how customers utilize their products. Big Data may generate several new prospects for growth, according to experts. It may even lead to the emergence of a brand-new class of companies, such as those that study and gather market data. 

New development prospects and whole new business categories, such as those that gather and analyze industry data, will be made possible thanks to big data. Many of them will be businesses that are situated in the heart of significant information flows, allowing for the collection and analysis of information about goods and services, customers and suppliers, consumer preferences, and intent. Leaders in all industries who are thinking ahead should start working quickly to develop their companies’ Big Data capabilities.

The real-time and high-frequency nature of the data is particularly crucial, in addition to the sheer size of big data. For instance, “nowcasting”—the capacity to estimate measures like consumer confidence immediately—is increasingly employed, giving a significant amount of power to prediction. Previously, this could only be done retroactively. Similar to this, the high frequency of data enables users to test hypotheses at a level never previously achievable in real-time.

Have a dialogue with customers

Consumers nowadays are wise and aware of their priorities. Consumers shop around and weigh their alternatives before making a decision. They even communicate with companies via social media and demand preferential treatment. In reality, the majority of customers like being acknowledged for using a company’s products. A commercial organization may fully profile these clients thanks to big data. This enables a company to have a direct, ongoing dialogue with customers. Big Data is crucial for covering the gap between traditional and online buying. For example, a deal may be simply closed in a chat of a certain internet store. This might be done on the assumption that the customer is prone to use social media more frequently.

Analyze all the possible risks

Your success is heavily influenced by economic and social events. Big Data enables predictive analytics, which enables you to evaluate and scan news articles and social media feeds. As a result, you can always be trendy with market tendencies and advancements.

Re-develop your goods and services

Big data aids in your comprehension of how clients view your offerings. You may therefore update your items and make the required modifications. Unstructured social media text analysis enables you to discover broad client comments. Additionally, Big Data enables you to quickly test a large number of iterations of sophisticated computer-aided designs. You may learn details regarding performance, lead times, material impact prices, and more. Thus, you will increase the productivity and effectiveness of your organization.

Conclusion

You may gain insights from big data by studying the market and your customers. However, this information is relevant to other parties in addition to you. You can provide big businesses operating in the same industry the non-personalized trend data. There is little question that Big Data will keep playing a significant role in a variety of global sectors. It can undoubtedly work wonders for a company. It’s crucial to teach your staff how to manage Big Data if you want to see additional advantages. Big Data management done right will increase the productivity and efficiency of your company.

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Highest Paid Programming Languages You Should Learn https://www.trickyenough.com/highest-paid-programming-languages/?utm_source=rss&utm_medium=rss&utm_campaign=highest-paid-programming-languages https://www.trickyenough.com/highest-paid-programming-languages/#respond Tue, 29 Mar 2022 06:31:10 +0000 https://www.trickyenough.com/?p=50055 Programmers and coders are some of the highest-salary-taking persons in the world. They earn a minimum of six-figure salary packages annually in countries like Canada, India, China, Germany, Denmark, etc. While this profession is very good with the highest paid salaries. Some programming languages are related to higher salary packages than other languages. In this...

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Programmers and coders are some of the highest-salary-taking persons in the world. They earn a minimum of six-figure salary packages annually in countries like Canada, India, China, Germany, Denmark, etc. While this profession is very good with the highest paid salaries. Some programming languages are related to higher salary packages than other languages. In this article, I am telling you about the Highest programming languages in the world.

In 2020 Stack Overflow will survey the programming languages and their best salaries. With the help of this survey, Stack Overflow collected programmers’ wages across the world and then made a list of the Highest paid programming languages based on the survey responses.

Today’s article is all about the highest-paid programming languages that can make your career more successful and to the next level. So if you want to know more about the highest-paid programming languages in the market, keep reading the article.

List Of Various Highly Paid Programming languages Are: 

1. Scala Programming language

It is a type of JVM language which combines object-oriented and functional programming features in a uniquely high-level language. Scala features eliminate huge bugs in complex applications while JVM and JavaScript facilitate the development of high-performance systems. It boasts an ecosystem of the programming industry BID Mac is one of the most popular ML libraries.

Highest Paid Programming Languages You Should Learn
Image Credits: Screenshot taken from the Scala Programming language

Scala enables parallel processing at a very high speed. It is becoming popular in the programming industry as it is used for Big Data, Data Science, and ML use cases.

The average salary for Scala is $115 in the US region whereas in India it is Rs. 1,007,850.

2. Go

Go is a general open-source language designed and developed by Google in 2009. It is based on the C programming language to improve programming productivity in a modern era of machines and codes. Go programming language is a user-friendly language and is best for building reliable software products.

Highest Paid Programming Languages You Should Learn
Image Credits: Screenshot taken from the Go

The Go language has become very popular among programmers and coders for simple syntax. While it has features and efficiency like the C++ language, its readability functions work similarly to JavaScript and Python. With the help of God, you can do high-performance networking and multitasking. This language also comes on the list of the fastest-growing programming languages.

The Average Salary for Go is $115 in the US country whereas in India it is Rs.1,154,800.

3. Objective-C’s language

The C language arose and was developed in 1980, it is used to build and design apps in the Apple system like macOS and Apple OS. It is based on object-oriented programming built and designed on the Objective-C language by elements of style messaging to make this a pure object-oriented programming language. It also supports Oop’s main aspects like data hiding and inheritance.

Objective-C is the primary programming language for the Apple ecosystem and its operating systems like macOS and IOS and their other APIs, Cocoa and Touch until the launch of the Swift language and was developed in the year 2014. Objective-C comes in the list of most used programming languages for developing applications on different platforms. It is a stable, most popular, and mature programming language.

The average salary for C language is $101,000 in the United States, and in India, it is Rs.574,286.

4. Kotlin

This language was developed to solve the general purpose and was developed by JetBrains. Kotlin is created with Java. And the Java virtual machine version of Kotlin depends on the Java library. With the help of JVM, Kotlin is the main target, it is also used with JavaScript or with LLVM.

Highest paid programming languages
Image Credits: Screenshot taken from the Kotlin

Google declared Kotlin as the most reliable and best for app development. Kotlin is the most popular and most demanded programming language. The syntax of Kotlin is readable and compatible with Java and Kotlin has the full support of the Google community.

The average salary for Kotlin is 98,000 available in the United States and India, it is Rs.466,000.

5. Ruby

Ruby on Rails is a server web application based on Ruby. It is an MVC mobile view controller containing all the default structures on a database for a web service or pages. The main motive of Ruby’s programming language is to make robust and easy programs. Ruby promotes the usage of JSON and XML for data transfer and HTML and user interface.

Web developers use Ruby for its unique features which work perfectly with the databases, used for table creations and views to enable fast application development along with the development principles like (COC) and don’t repeat this step. Large community developers make Ruby an awesome programming language for web development and programs.

The salary for Ruby is $91,000 in the United States and in India, it is Rs.799,000.

6. Perl

It is a high-level and dynamic programming language developed by Larry in 1987. Perl arises as a Script language for text manipulation and makes the process simpler and easier. You can use Perl for other tasks like administration, development, network programming, and GUI to name a few tasks.

Image Credits: Screenshot taken from the Perl

Perl features different programming languages like C, Shell, AWK, and sed. Perl’s syntax is very similar to the C language. Perl is the most expressive language. It is compatible with HTML XML and other languages which support Unicode. It also supports third-party databases like Oracle, Postgres, MySQL, etc.

The average salary for Perl is $93,000 in the United States and in India, it is Rs.850,000.

7. C#

C# is a general open-source, programming language developed and designed by Microsoft. It is generic object-oriented programming, functional, typing, scoped, declarative and oriented programming principles. C# is used for network development and software development for environment developers and programmers. Coders use C# to build and design applications for embedded systems, from complex and best-operating systems with main features and functions. 

C# language is very versatile, and it is ideal for developing applications like mobile or web apps and back-end systems. It has a dedicated core machine platform, ML.NET is a cross and open-source network and developers can use this to build applications.

The salary for C# is $81,000 in the United States whereas in India it is Rs.646,000.

8. Python

When there is any kind of talk regarding programming languages. Python appears to cut. With the help of Python language, you can do software development and it also offers data science. It is a very popular programming language and a high-level open-source language that supports OOP, functional, and procedure development.

Image Credits: Screenshot taken from the Python

Python comes in the list of all-rounder languages. You can do mathematical calculations, web development, learning, analysis, automation of tasks, and other things with the Python programming language. This makes this language very popular and has a neat Syntax. Python comes with resourceful libraries and tools like Keras, NumPy, Chatterbot are some tools.

The average salary for Python is $79,000 in the United States and in India, it is 755,000.

9. Java

Like other languages in the list, Java is also a very popular programming language in the developers and programmers community across the world. Java has general object-oriented language features and is used to build software, mobile and web applications, games, and web servers and in creating Big Data. Many large companies maintain a high-end database and codebase with the help of Java virtual machines. With the help of the Java language, you can develop applications for the Android platform. 

Highest Paid Programming Languages You Should Learn
Image Credits: Screenshot taken from the Java

Writing once run anywhere is the main motive of the Java programming language. This means that you have to compile the code once, and you can run the code on all platforms that support Java without compiling it any further time. It also supports ML libraries like Java ML, ADAMS, Rapider, and STAT.

The average salary for Java programming language is $85,000 in the United States and in India, it is Rs.708,000.

10. Swift

Swift is a general paradigm and compiled programming language. Apple developed the Swift language for macOS, IOS, etc. It is a user-friendly language that is very expressive and fast. Since Apple developed Swift we can say that it combines the best elements of the modern era language which makes software development very easy and interesting.

Image Credits: Screenshot taken from the Swift

You have not compromised on the performance or development while you are using the Swift programming language. While in the Swift language, you can do app development and programs at a very fast speed and the compiler works on max performance. Swift syntax allows all programmers and developers to express their ideas easily.

The average salary for Swift is $97,000 in the United States and India which is Rs.585,000.

Conclusion

These all are the highest-paying programming languages in the market currently. You can also upgrade your knowledge to include one of the highest-paying languages.

Suggested:

Programming Languages Used For Mobile Game Development.

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Making Research Useful Data Visualization to Create Reports https://www.trickyenough.com/making-research-useful-data-visualization-to-create-reports/?utm_source=rss&utm_medium=rss&utm_campaign=making-research-useful-data-visualization-to-create-reports https://www.trickyenough.com/making-research-useful-data-visualization-to-create-reports/#comments Thu, 18 Nov 2021 06:40:00 +0000 https://www.trickyenough.com/?p=42783 Data Visualization is a powerful tool for qualitative reporting. Visual elements, like graphics, not only break up the monotony of long text pages in the reports, but they also communicate the information in an interesting way. This helps readers understand things quickly and makes the data more memorable. However, it is helpful only if done...

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Data Visualization is a powerful tool for qualitative reporting. Visual elements, like graphics, not only break up the monotony of long text pages in the reports, but they also communicate the information in an interesting way. This helps readers understand things quickly and makes the data more memorable. However, it is helpful only if done right.

If you go through the trouble to create a report, but no one finds it interesting or don’t want to read it, will it do anything good? Certainly not! Therefore, it is necessary to research useful data visualization for creating reports. Whether you want to provide your team with better insights, or get your team’s support for a new initiative, read on to know how to make data visualization to create qualitative reports.

Know The Basics Of Data Visualization

Before you create graphics for your report, it is necessary to check the data for accuracy. Incorrect data in the reports may lead to an incorrect decision. So, make sure to deliver the right, valuable information. Below are the three basic principles of creating data visualization for a report-

— Pick the right graphics based on your goals.

— Ensure that the message in your graphics is relevant to the audience.

— Choose the right design for the graphic.

You also need to consider:

Purpose: Data analytics basically creates and analyzes the raw and unused Dara by transforming it into actionable data. These reports contain insights and also present data metrics, analysis, and conclusions in a visual format. This makes it easy for everyone in the organization to access and read data to make data-driven decisions.

Accessibility: Previously, creating reports with lots of data was a resource-driven and time-consuming task. Also, data pull requests were the most important thing for IT professionals, with lots of time analyzing, formatting, and representing data. However, with real-time, cloud-based reporting has changed the reporting game. The modern data visualization tools allow businesses to collaborate on various subject matter experts (SME). You can also export stunning reports that can be shared via automating emails.

Data types: Business data reports cover lots of topics and hold various organizational functions. These data reports are of varied length, format, and content. So, identify which data types you are using in your organization. Whether you want to present annual reports or accounting reports, you can use these reports by offering predictive and real-time insights to show in your organization.

If the message is right, but the graphic is dull, or there is a wrong insight, you won’t get the desired results.

Choose The Right Type Of Graph

Choose the wrong graph type, and the viewers will get confused. Therefore, it is important to know the data you want to visualize and the purpose behind it. Do you want to compare data points? Or, do you want to show the structure of something using data? Here are the popular chart types you can choose to achieve your goals-

Sankey Diagram (used to show the flow in the system)

Line chart (used for comparing changes within data sets)

Bar chart (when you want to compare several data sets)

Pie chart (shows the shares of each component in the data set)

Histogram (shows the distribution of data sets across a definite period of time)

Bubble chart (used for comparing two parameters via the means of the third)

5 point Likert scale (used for getting responses from respondents in survey analysis)

Adding the right design principles and choosing elements, like ordering, comparison, shape, size, color, etc., make a big difference in how people perceive the data.

Make The Correct Use Of Visuals

Another important thing you need to consider while making research useful data visualization is to choose the right message. The readers should be familiar with the data you include in the report. Also, make sure that the parameters you are going to visualize can be combined.

Besides, take into account the scale and scope. For example, most viewers are used to reading the measurement from the bottom or left of the axes. If you happen to change this direction, the audience may get confused. However, if you must reverse the order, you need to use some tactics so that it is clear and easy to understand.

Keep It Simple And Compelling

The simpler the chart, the easier it is to understand. You don’t have to use extra elements, different colors, structures, etc., to a standard report. Avoid displaying all the charts on the same dashboard by reducing the size of the visualizations. Ideally, don’t use more than three charts on one page. Furthermore, if it is a non-standard task, don’t hesitate to experiment with different visuals.

Compare And Pick The Right Visualization Tool

There are several data visualization tools available on the market. Some of these tools work online, while others need to be installed on the desktop. Many tools are free to use, whereas you need to pay for some. The best visualization tool is the one that caters to your needs and helps you create visuals with great insights. Some of the popular tools are Tableau, Databox, Google Charts, etc.

Conclusion

These are some of the ways to make data visualization and create engaging reports and communicate the key findings more effectively. If your report contains valuable information and compelling visuals, the in-house team, as well as the readers outside the company, will find it interesting. However, creating catchy and useful data visualizations is the first step to creating high-quality reports. You can use a good data visualization tool and solution to create visuals that create the most impact. These tools will help you create the most insightful visuals for your report effortlessly.

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Easy Guide to Business Report Writing.

Top 7 Data Visualization market trends to watch for in 2021.

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What’s New In Power BI? – Know How Will This Improve Data Visualization Further https://www.trickyenough.com/whats-new-in-power-bi-know-how-will-this-improve-data-visualization/?utm_source=rss&utm_medium=rss&utm_campaign=whats-new-in-power-bi-know-how-will-this-improve-data-visualization https://www.trickyenough.com/whats-new-in-power-bi-know-how-will-this-improve-data-visualization/#comments Thu, 29 Jul 2021 06:52:07 +0000 https://www.trickyenough.com/?p=36517 Power BI from Microsoft is one popular and leading Data analytics and BI solution used by companies from various domains worldwide. Microsoft keeps adding new features to Power BI from time to time. It has finally released the June 2021 update with the addition of many interesting features. Along with features, some previews have also...

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Power BI from Microsoft is one popular and leading Data analytics and BI solution used by companies from various domains worldwide. Microsoft keeps adding new features to Power BI from time to time. It has finally released the June 2021 update with the addition of many interesting features. Along with features, some previews have also been launched for trial purposes. If the users receive them well, these features will be implemented in Power BI too.

When it comes to business intelligence, Microsoft Power BI from Microsoft Cloud is a good option for Data Visualization. With this, you can have complete and transparent access to your company data from any place and at any time. This makes working with data convenient even when you are on the move. To ensure you maximize the benefits of Power BI’s mobile capabilities and other features, it’s essential to have a solid understanding of the platform. For guidance on best practices and leveraging the full potential of Power BI, you can visit here for more information. By engaging with experienced consultants, you can learn how to optimize your data visualization and analytics processes, enabling your organization to make data-driven decisions even while on the go. Enlisted below are the new previews and features of Power BI, which Microsoft has brought forward in the June update:

Transparency slider feature for area charts 

With the new feature of the transparency slider, it is now possible to set the transparency of colored areas in your stacked area and area charts. This transparency was set to 60% by default in the previous versions, and this could not be modified as per user needs. You can adjust this transparency from the Formatting Pane by using the Data Colors Card. This can be useful for most power BI developers.

Visuals for paginated reports

This is a preview feature, which has been highly anticipated. Microsoft has announced a paginated report visual for Power BI reports, and this is now available on the Power BI desktop in the form of a public preview. With the help of this native Power BI visual, you will be able to extract any kind of paginated report, which has been uploaded to the Service in Power BI Report. This has been made possible for the first time. The power bi report developers will appreciate this feature.

With this feature in place, it is possible to wire up various fields from the Power BI dataset for being used as parameter values. Therefore, you will have a completely interactive experience with paginated reports, similar to any other kind of visual. This will be quite beneficial for power bi development.

Improvement of Q&A for inferred results

There are many questions from the end users which are incomplete or ambiguous. In such a situation, Q&A has to make some assumptions for producing visuals for such queries. In such scenarios, Q&A returns a natural language restatement or a visual depending on the interpretation of the queries of the end-user. However, it may be difficult for users to understand which part of the results was inferred.

In the new update that is released, this experience is improved significantly with the addition of the Showing Results for restatement with bolding of the inferences made by Q&A.

Small multiples: conditional formatting and responsiveness

In the June 2021 update, there are two new updates in the small multiples preview feature. Firstly, support is enabled for a responsive toggle in the General Card of Formatting pane. Various chart elements will gradually drop with responsive visuals as their size reduces. There will be more space for the plot area. For small multiples, adjustments have been made in responsive breakpoints to accommodate the potential presence of more than one plot area in the visual. Therefore, small multiple visuals will start dropping chart elements to make room for multiple plot areas.

Along with this, conditional formatting is also added to background colors and multiple small titles. You have to click the fx button adjacent to the corresponding choices in the formatting pane for launching the conditional formatting dialog. It is possible to set rules with which chart elements will be colored. With the help of this function, the background and multiple small titles will help in better communication of major data attributes.

Data Connectivity 

Innumerable updates, as well as new connectors, are made available with Power BI June 2021 update. Mentioned below is the full list of such connectors:

  1. BQE Core- The new connector
  2. SumTotal- The new connector
  3. Assemble Views- The new connector
  4. Azure Consumption Insights- The connector deprecated
  5. FactSet Analytics The updated connector
  6. Anaplan- The updated connector
  7. Azure Databricks- The updated connector
  8. Starburst Enterprise – The updated connector
  9. Vessel Insight- The updated connector
  10. Cognitive Data Fusion- The updated connector
  11. Dynamics 365 Business Central The updated connector
  12. Adobe Analytics – The updated connector
  13. Google BigQuery- The updated connector
  14. Snowflake The updated connector
  15. Workplace Analytics The updated connector

DirectQuery support for Dataflows

Microsoft has unveiled DirectQuery Support for Power BI Dataflows. This feature is generally available for users. So, there is no need to import data into a dataset. Now the direct connection to a data flow can be established. This proves to be very useful in many situations and scenarios:

  1. Serving data to customers in a well-managed manner.
  2. Working easily and conveniently with big dataflows.
  3. Minimization of orchestration needs.
  4. Non-duplication of data between dataset and dataflow.

Using this capability, you have to explicitly toggle the compute engine after going into data flow settings. You will have to refresh the data flow before it can be used in DirectQuery mode.

Optimizations are being done constantly to underlying connectors for supporting import scenarios like folding query support for the dataset. There are also attempts to make connections to dataflow easy by bringing unified Power Bi dataflows and Power Platform connectors. Besides, plans of bringing a Dataflows connector to Excel are there.

New appearance for Power BI Windows App

This is a preview feature, which Microsoft released in the June 2021 update. In this, you will get to see the preview of the new appearance of the Power BI Windows App. It is highly impressive that the home page has been given an overhaul. You will find a centralized hub where all the Power BI content is located. You can access all the content quickly in a single place which makes working easy.

For enabling the new look and appearance of the Windows app, use the current version of the app from the store and open it. Right at the top of the screen, you will be able to see the New Look. If you want to experience the new look immediately, just toggle it on. There is no need to restart the app.

Wrapping up

Many more interesting features have been augmented in Power BI through the June update. The company will likely introduce some more features and enhance the preview features in future updates. To use these new features and meet your business data analytics goals, pick from the veteran power bi consulting services.

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Big Data vs Business Intelligence: Know How These Technologies Are Different From Each Other? https://www.trickyenough.com/big-data-vs-business-intelligence-technologies/?utm_source=rss&utm_medium=rss&utm_campaign=big-data-vs-business-intelligence-technologies https://www.trickyenough.com/big-data-vs-business-intelligence-technologies/#comments Thu, 29 Apr 2021 09:50:20 +0000 https://www.trickyenough.com/?p=29873 Business Intelligence (BI) and Big Data are both key players in the world of data processing. But both of these have different processes and strategies that occupy unique roles in the market. Well, it’s really easy to get lost in business-related terminology, but knowing the exact difference between Big Data vs Business Intelligence is very...

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Business Intelligence (BI) and Big Data are both key players in the world of data processing. But both of these have different processes and strategies that occupy unique roles in the market.

Well, it’s really easy to get lost in business-related terminology, but knowing the exact difference between Big Data vs Business Intelligence is very crucial as this will only help you make adequate use of and get benefit from both technologies.

Let’s move further and know how Big data and Big Intelligence are different from each other. To know this thing in a better way, it’s really important to first understand what exactly Business Intelligence and Big Data are.

What Is Business Intelligence (BI)?

                                                                   Image Source: lera blog

Business Intelligence (BI) includes strategies and technologies that help enterprises analyze business data. Using BI, you can import massive data streams and utilize them to produce meaningful information focusing on specific use-case or scenarios. 

Moreover, data visualization, data quality management, and self-power BI services are the top Business Intelligence trends. If you want to make effective use of BI in your business, then I will recommend getting connected with Business Intelligence consultants. This will benefit you to get solutions and know about Big Data services meeting your business demands and needs. 

Image Source: FinancesOnline 

-Worldwide, the Business Intelligence market may hit $29.48 billion by 2022. (tech jury)

82% of Power BI adopters pick Microsoft Azure to get reliable and top-level cloud-based BI services.

51% of enterprises are gaining better financial performance with the introduction of BI. (ValueCoders)

HelloFresh, REI, Coca-Cola Bottling Company, and Chipotle are few popular organizations using Business Intelligence.

Benefits of using Business Intelligence

  • Fast & accurate reporting
  • Helpful business insights
  • Competitive analysis
  • Improved customer satisfaction
  • Recognizing market trends
  • Improved operational efficiency
  • Making accurate decisions

What is Big Data?

Image Source: Analytic Steps

Big data is the hottest topic running in the business world. Most people ponder that Big Data is just nothing but a massive amount of data. But it’s not a reality as Big data is also about the structure of the data, processing the data with the intention of abandoning valuable information to the enterprises.

-Worldwide, the Big Data analytics market is valued to reach $103 billion by 2023.

97.2% of companies are spending on big data and AI. (FinancesOnline)

Utilizing Big data, Netflix saves around $1 billion/year on customer retention.

American Express, BDO, Capital One, Miniclip, Netflix, Next Big Sound are few famous companies using Big Data.

Big Data vs Business Intelligence

 
Image Source: FinancesOnline 

Benefits of using Big Data

  • Cost optimization
  • Better efficiency
  • Foster competitive pricing
  • Boost sales and retain customer loyalty
  • Focus on the local environment
  • Control and monitor online reputation

Business Intelligence vs Big Data: Similarities in Business Intelligence and Big Data

Both Big Data and Big Intelligence are involved in analyzing the information for generating valuable insights for various industry verticals such as healthcare, retail, eCommerce, travel & tourism, finance, and more. Moreover, using these two technologies, you can support your firm in making an adequate business decision within a short time frame.  

Big Data vs Business Intelligence: Major Difference Between Both Platforms

Big Data vs Business Intelligence

                                                                             Image Source: IEBS

Here I have mentioned the various pointers which will help you know how Power Business Intelligence (BI) is different from Big Data. Well, if you are having any kind of query related to BI, you can get connected with Microsoft Power BI consultant; this will get you to get the correct answer to the query.

1. Based On Fundamental

BI helps in making decisions by finding an answer to a question posed by the “known” company, whereas Big Data employs the MPP approach and can reveal questions, answers, and as well perspectives that may not be available unsuspected until then.

Additionally, Business Intelligence technology is more interested in questions including “what and where” type words. On the other hand, Big Data analytics provides the answer to the “why and how” sort of queries.

2. Talking About Data Storage

If I talk about BI, information storage, then it is stored on a central server (data warehouse), whereas Big Data includes a shared file system, which improves operations, makes it more flexible, and also safely stores data.  

Moreover, BI uses historical data to make future judgments, where Big Data solutions can look at both past data and real-time data sources.

3. Dealing With Data

Big Data deals with both structured and unstructured data originated from various sources, including external to the company like social networks; this thing is not possible with Business Intelligence as it just analyzes structured or semi-structured data for the organization’s internal. The formats are mechanically less varied.

4. Components

Business Intelligence (BI) involves various components; some of them are data warehouse, EPR databases, operating system, and dashboards, where Big Data includes hive, spark, R, Hadoop, and HDFC components.

BI makes better decisions and abandons highly authentic reports after extracting the accurate data from the direct source, whereas Big Data benefits in enhancing customer outcomes by capturing, processing, and examining the data.

5. Features

Big Intelligence and Big Data both include different features and also have different functionalities. Let’s view what sort of features Big Intelligence and Big Data include.

Executive dashboards, location intelligence, ranking reports, and interactive reports are the key features of BI.

Whereas; raw data processing, identity management, fraud management, version control are some of the Big Data features.

Big Data vs Business Intelligence: Popular Big Data and Power BI Tools

BI and Big Data tools help in sorting the processes; moreover, both support in completing analytics, examining, and other tasks faster. Let’s move further to know the names of famous Big Data and Business Intelligence tools.

Top 10 Business Intelligence Tools

 Image Source: eduCBA

  • MicroStrategy
  • Oracle Analytics Cloud
  • SAS
  • Tableau
  • Microsoft Power BI
  • Tableau Desktop
  • Dundas BI
  • Sisense
  • Zoho Analytics
  • Datapine

Top 10 Big Data Tools

 

Big Data vs Business Intelligence

Image Source: TechFunnel

  • Xplenty
  • Apache Hadoop.
  • CDH (Cloudera Distribution for Hadoop)
  • Cassandra
  • Knime
  • Datawrapper
  • HPCC
  • Storm
  • MongoDB
  • Lumify

Conclusion

After going through the Big Data vs Business Intelligence comparison, I hope you understood the exact difference between Business Intelligence and Big Data. If you need to know more about Power BI and Big Data and want to make correct use of both technologies in the business processes, then I will recommend you to connect with Big Data and Business Intelligence consultants working in the best Power BI and Big Data development company.

Doing so will help you know the various more interesting things about both technologies and get innovative solutions to boost up your business growth. 

Suggested:

How to Choose Between Business Intelligence and Analytics Software?

5 Ways Big Data will Boost Your E-commerce Business.

Data Science vs Big Data vs Data Analytics.

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Top Tips for Data Preparation Using Python https://www.trickyenough.com/top-tips-for-data-preparation-using-python/?utm_source=rss&utm_medium=rss&utm_campaign=top-tips-for-data-preparation-using-python https://www.trickyenough.com/top-tips-for-data-preparation-using-python/#comments Wed, 31 Mar 2021 06:15:02 +0000 https://www.trickyenough.com/?p=27845 Your Data Preparation Using the Python AI model is just pretty much as great as the information you feed into it. That makes information groundwork for AI (or cleaning, fighting, purifying, pre-preparing, or some other term you use for this stage) extraordinarily imperative to get right. It will probably take up an extensive piece of...

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Your Data Preparation Using the Python AI model is just pretty much as great as the information you feed into it. That makes information groundwork for AI (or cleaning, fighting, purifying, pre-preparing, or some other term you use for this stage) extraordinarily imperative to get right. It will probably take up an extensive piece of your time and energy.

Information groundwork for examination or, almost certain, AI includes changing over information into a structure. That is prepared for quick, precise, proficient demonstration and investigation. So, you should learn Data Science Certification. It includes stripping out errors and different issues that sprung up during information gathering, improving the quality, and diminishing the danger of information inclination.

On the off chance that you use Data Preparation Using Python for information science, you’ll be working with the Pandas library. In this article, we’ll take a gander at a portion of the key advances you should go through before you begin demonstrating information.

Why this information?

Before you make a plunge, it’s critical that you have an unmistakable comprehension of why this specific dataset has been chosen, just as correctly as what it implies. For what reason is this dataset so critical? Would you like to gain from it and precisely how might you use what it contains? (These choices are established in space information and cautious coordinated effort with your business partners – you can study this here)

Speedy cleans

Whenever you’ve stacked your information into Pandas, there are a couple of straightforward things you can do promptly to tidy it up. For instance, you could:

You may Eliminate any segments with over half missing qualities (if your dataset is sufficiently enormous – more on that in the following area)

These Eliminate lines of superfluous content that keep the Pandas library from parsing information appropriately.

Eliminate any segments of URLs that you can’t get to or that aren’t helpful.

After looking into it further what every section means and whether it’s applicable to your motivations, you could then dispose of any that:

Are severely designed.

Contain unessential or repetitive data.

Would require substantially more pre-preparing work or extra information to deliver help (in spite of the fact that you might need to consider simple approaches to fill in the holes utilizing outside information)

Release future data which could subvert the prescient components of your model.

Data Preparation Using Python Managing missing information

In the event that you are managing an exceptionally huge dataset, eliminating sections with a high extent of missing qualities will speed things up without harming or changing the general significance. This is pretty much as simple as utilizing Pandas’ .dropna() work on your information outline. For example, the accompanying content could get the job done:

df[‘column_1’] = df[‘column_1’].dropna(axis=0)

In any case, it’s additionally important the issue so you can recognize potential outside information sources to consolidate with this dataset, fill any holes and improve your model later on.

On the off chance that you are utilizing a more modest dataset, or are usually stressed that dropping the occurrence/property with the missing qualities could debilitate or contort your model, there are a few different techniques you can utilize. These include:

Ascribing the mean/middle/mode property for every single missing worth (you can utilize df[‘column’].fillna() and pick .mean(), .middle(), or .mode() capacities to rapidly take care of the issue)

Utilizing straight relapse to credit the quality’s missing qualities

In the event that there is sufficient information that invalid or zero qualities will not affect your information, you can basically utilize df.fillna(0) to supplant NaN esteems with 0 to take into consideration calculation.

Bunching your dataset into known classes and ascertaining missing qualities utilizing between-group relapse

Joining any of the above with dropping cases or properties dependent upon the situation

Contemplate which of these methodologies will work best with the AI model you are setting up the information for. Choice trees don’t take excessively benevolent to missing qualities, for instance.

Note that, when utilizing Data Preparation Using Python, Pandas marks missing mathematical information with the coasting esteem point NaN (not a number). You can track down this exceptional worth characterized under the NumPy library, which you will likewise have to import. The way that you have this default marker makes it much simpler to rapidly spot missing qualities and do an underlying visual appraisal of how broad the issue is.

What idea for you to eliminate anomalies?

Before you can settle on this choice, you need to have a genuinely clear thought of why you have anomalies. Is this the result of slip-ups made during information assortment? Or then again is it a genuine irregularity, a valuable piece of information that can add something to your arrangement?

One snappy approach to check is parting your dataset into quantiles with straightforward content that will return Boolean estimations of True for anomalies and False for ordinary qualities:

import pandas as pd

df = pd.read_csv(“dataset.csv”)

Q1 = df.quantile(0.25)

Q3 = df.quantile(0.75)

IQR = Q3 – Q1

print(IQR)

print(df < (Q1 – 1.5*IQR))| (df > (Q3 + 1.5*IQR))

You can likewise place your information into a crate plot to all the more effectively picture anomaly esteems:

df = pd.read_csv(‘dataset.csv’)

plt.boxplot(df[“column”])

plt.show()

This will limit the effect on the model if the anomaly is a free factor while assisting your suppositions with working better if it’s a needy variable.

All things considered, the main thing is to think about cautiously your thinking for including or eliminating the exception (and how you handle it on the off chance that you leave it in). Rather than attempting a one-size-fits-all methodology and afterward disregarding it, this will assist you with staying aware of likely difficulties and issues in the model to examine with your partners and refine your methodology.

Change

Having fixed the issues above, you can start to part your dataset into information and yield factors for AI and to apply a preprocessing change to your information factors.

Exactly what sort of changes you make will, obviously, rely upon what you plan to do with the information in your AI model. A couple of alternatives are:

Data Preparation Using Python Normalize the information

Best for: calculated relapse, straight relapse, direct segregate examination

In the event that any ascribes in your info factors have a Gaussian conveyance where the standard deviation or mean changes, you can utilize these strategies to normalize the intention to 0 and the standard deviation to 1. You can import the sklearn.preprocessing library to utilize its StandardScaler normalization device:

from sklearn import preprocessing

names = df.columns

scaler = preprocessing.StandardScaler()

scaled_df = scaler.fit_transform(df)

scaled_df = pd.DataFrame(scaled_df, segments = names)

Rescale the information

Best for slope drop (and other streamlining calculations), relapse, neural organizations, calculations that utilization distance measures, for example, K-Nearest Neighbors

This additionally includes normalizing information ascribes with various scales so that they’re all on a similar scale, ordinarily going from 0-1. (You can perceive how the scaling capacity functions in the model underneath.)

Standardize the information

Best for: calculations that weight input esteems, for example, neural organizations, calculations that utilization distance measures, for example, K-Nearest Neighbors

In the event that your dataset is inadequate and contains a lot of 0s, however, the ascribes you do have to utilize shifting scales, you may have to rescale each column/perception so it has a unit standard/length of 1. It’s important, nonetheless, that to run standardization contents, you’ll likewise require the scikit-learn library (sklearn):

from sklearn import preprocessing

df = pd.read_csv(‘dataset.csv’)

min_max_scaler = preprocessing.MinMaxScaler()

df_scaled = min_max_scaler.fit_transform(df)

df = pd.DataFrame(df_scaled)

The outcome is a table that has values standardized so you can run them without getting extraordinary outcomes.

Data Preparation Using Python: Make the Data Binary

Best for: highlight designing, changing probabilities into clear qualities

This implies applying a parallel edge to information so that all qualities underneath the edge become 0 and each one of those above it becomes 1. By and by, we can utilize a scikit-learn instrument (Binarizer) to assist us with taking care of the issue (here we’ll be utilizing an example table of expected enlisted people’s ages and GPAs to embody):

from sklearn.preprocessing import Binarizer

df = pd.read_csv(‘testset.csv’)

#we’re choosing the colums to binarize

age = df.iloc[:, 1].values

gpa = df.iloc[: ,4].values

#now we transform them into values we can work with

x = age

x = x.reshape (1, – 1)

y = gpa

y =y.reshape (1, – 1)

#we need to set a limit to characterize as 1 or 0

binarizer_1 = Binarizer(35)

binarizer_2 = Binarizer(3)

#finally we run the Binarizer work

binarizer_1.fit_transform(x)

binarizer_2.fit_transform(y)

Your yield will go from something like this:

Unique age information esteems :

[25 21 45 … 29 30 57]

Unique gpa information esteems :

[1.9 2.68 3.49 … 2.91 3.01 2.15]

To this:

Binarized age :

[[0 0 1 … 0 1]]

Binarized gpa :

[[0 0 1 … 0 1 0]]

… Don’t neglect to sum up your information to feature the progressions before you proceed onward.

Last musings: what occurs straightaway?

As we’ve seen, information groundwork for AI is indispensable, however, can be a fiddly task. The more kinds of datasets you use, the more you may be stressed over what amount of time it will require to blend this information, apply distinctive cleaning, pre-handling, and change errands with the goal that everything cooperates consistently.

On the off chance that you intend to go down the (fitting) course of fusing outer information to improve your AI models, remember that you will save a ton of time by going through a stage that computerizes a lot of this information cleaning for you. Toward the day’s end, information groundwork for AI is adequately significant to require some serious energy and care getting right, however, that doesn’t mean you ought to mislead your energies into handily computerized undertakings.

Suggested:

Tips for finding the best Python Development Company.

Why Is The Need For Python Developers Increasing In The Industry?

Common Issues in Python Development Affecting Your Efficiency and How You Can Fix Them.

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Top 7 Data Visualization market trends to watch for in 2025 https://www.trickyenough.com/data-visualization-market-trends-to-watch-for-in-2025/?utm_source=rss&utm_medium=rss&utm_campaign=data-visualization-market-trends-to-watch-for-in-2025 https://www.trickyenough.com/data-visualization-market-trends-to-watch-for-in-2025/#respond Fri, 29 Jan 2021 05:40:45 +0000 https://www.trickyenough.com/?p=23987 Ever since the advent of technology in businesses, the volume of information and knowledge has become mountainous. These vast pools of data are the most integral decision making parameters of every business across the world. This is the reason that the most valuable companies in the world are all technology businesses with billions of data...

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Ever since the advent of technology in businesses, the volume of information and knowledge has become mountainous. These vast pools of data are the most integral decision making parameters of every business across the world.

This is the reason that the most valuable companies in the world are all technology businesses with billions of data points to map audiences – Apple, Amazon, Alphabet, Microsoft & Facebook.

Hence, the modern problem isn’t collecting data, which pours in easily with the right funnel, but the real challenge is making sense of it all. Data visualization, also known as information graphics/visualization simplifies bulked data sets to speak directly to decision-makers.

Importance of Information Visualization

The human mind is tuned to understand and store visual information more prominently than numbers & figures.

Our genetic markup is programmed to see, process, act, and store. This fundamental principle of psychology is the reason visual data is still integral in boardroom presentations, advertisements, and any form of customer conversion.

“It can communicate years of information in seconds with an increased impact”.

Broadly put, the following are some benefits of Data visualization:

  • Predictive Sales 
  • Finding areas of improvement
  • Forecast trends & market shifts
  • Knowing the factors affecting user behavior

The combination of these points leads to more data-backed decision making which helps in measuring business success and revising strategies for continued returns.

These technology inspired trends are making waves across industries and motivating people to use information graphics to attract consumers.

1- Social media marries visual data

The power of social media has turned individuals into brands and pushed companies to engage with customers through their social media platforms

Social channels capture the attention of users with images & visuals. Playing on the same visual bias of human psychology.

Data authenticates an idea or a point of view, this is where data visualization and social media meet.

350 million photos are uploaded on Facebook every day and 95 million on Instagram.

Twitter, a very text focussed social media network also couldn’t escape the pull of images. Tweets with images get 18% more clicks, 89% more likes, and 150% more retweets than just text tweets.

Data visualization has become integral for a successful social media presence.

2- Drag & drop for amazing visuals

The ability to visualize data isn’t just in the hands of designers or developers anymore.

Smart data visualization tools make it easy to bring attractive visuals to life by simply entering information and dragging attractive elements onto the image.

This democratization of data is the reason for the mainstream fame of data-inspired visuals. Easy accessibility is what’s making it popular throughout industries.

3- Beyond traditional graphs

Conventional design and graphs are not the only way to display information effectively.

Beyond standard visuals lies the scope of displaying brilliant images that appeal to audiences emotionally & through the displayed statistic.

2025 is showing creative ways to give shape and form to information. 

4- Customized for mobile

The future is mobile and it has been heading in that direction for the past 10 years. The approach isn’t to duplicate the desktop format of visualization but to create an entirely new way of presenting data that is comfortable and relevant for smaller screens.

By nature, small businesses are more experimental and flexible in integrating market trends.  Many startups realize the benefits of apps and the power of displaying customized data shaped specifically for smartphones & tablets.

This data-visualization trend isn’t new but it is gaining more and more popularity with each passing year. It hasn’t settled in yet, new methods are constantly tested by different companies to provide impactful data-backed visuals.

5- Data now has a story to tell

Interactive & real-time dashboards now communicate a story with cause and solutions. This summarised visual chunk of information is a lot more relevant, time-saving, and useful for people than going through tons of information & trying to make sense of things.

A good example of a visually rich dashboard is the one that you see throughout the Google Analytics site for your business website.

6- Media makes it mainstream

From sports analysis to political success and pole campaigns. Journalism is adopting information visualization in all aspects.

Integrating visuals in News reports makes a strong impression on the viewer and authenticates claims made by news reporters.

Although this does invite a world of questions about the legitimacy of the sources often quoted by media houses in their data reports it is irrefutable that this trend is here to stay.

7- Augmented Analytics

The use of powerful AI & ML for making sense of big data and presenting it visually is a trend that is attracting many eyeballs.

This entire process can also be automated for added convenience. This could become a major tool for predictive analytics & more data-fueled decision making.

According to  IDC, the spending on Artificial intelligence systems will peak to $77.6 billion by 2025. An astounding figure that validates the importance of smart technologies in shaping data visualization for business use.

5 Tips for impactful data visualization

The following design & text dips will help in making a big impact and create better recall amongst viewers.

1) Keep the widgets simple ~ Uncomplicated and easy to understand design elements make images more understandable.

2) Use contrasting colors ~ Black & White, White & Red, White & Green, these are a few examples of contrasting color combinations. Simply put, light & dark shades mixed together are more captivating and memorable.

3) Relevant facts only ~ Try not to add too much information. Less is more with image content.

4) Catchy headings ~ images speak for themselves but they go even better with catchy headlines.

5) Use Dashboards ~ If a fresh & accurate content display is the goal then a real-time dashboard can make it very easy to have all relevant information in one place.

Conclusion

Data Visualization makes use of our preference for images and combines it with researched data. It is the most ideal way to summarize & display data to form predictions, plan strategies, measure performance, and create a lasting impact on users. The practice of visualizing findings is gaining massive appeal in all walks of our lives. This is precisely why creating impactful visuals have become so easy in 2025. These 7 trends will push the ceiling of creativity even further until data visualization becomes a common practice across domains.

New trends & techniques are set by bold organizations that go for out of the box solutions and in the process re-invent existing ideas.

Suggested:

What Can Data Visualization Do for Your Sales and Marketing Department?

What is big data analytics? Beginner guide to the world of big data.

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5 Ways Big Data will Boost Your E-commerce Business https://www.trickyenough.com/big-data-will-boost-your-e-commerce-business/?utm_source=rss&utm_medium=rss&utm_campaign=big-data-will-boost-your-e-commerce-business https://www.trickyenough.com/big-data-will-boost-your-e-commerce-business/#comments Tue, 08 Dec 2020 11:25:23 +0000 https://www.trickyenough.com/?p=22120 This blog will highlight the 5 ways in which Big Data will help you boost your e-commerce business. But before reading about the various methods and the role of Big Data in the e-commerce industry, let’s get a basic understanding of what Big Data is.

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Big Data consists of large sets of structured and unstructured data that you can analyze using software and systems to reveal patterns and trends that focus on understanding human interactions and behavior.

Most organizations generate and receive large volumes of data on a regular basis. Not only do they have a huge volume but they are also complex. In addition, they come from numerous distinct data sources. Big has become a core part of almost every business sector including finance, banking, retail, manufacturing, media, and logistics.

The Grand View Research predicts that the Big Data market alone will reach US$12,323 billion by the year 2025.

Among the many industries that it has paved its way into, it has immensely impacted the e-commerce market.

Learn why Big Data Database is important for Business.

Big Data in E-commerce

E-commerce or electronic/internet commerce is one of the largest and most widely used industries today. It deals with purchasing and selling services and goods via the internet along with transferring data and money in order to execute and keep a track of these transactions.

The use of Big Data along with the Machine Learning technology in the e-commerce industry is gaining popularity day by day. Online vendors use e-commerce development services such as online stores, business-to-consumer (B2C) marketplaces, business-to-business (B2B) trade portals, bidding platforms, e-commerce aggregators, and booking and ticketing solutions in order to intertwine Big Data tools into their marketplaces and e-shops and avail the following benefits:

  • Back-office processes optimization.
  • Enhancement of the operations used by the customers.
  • Well-organized supply chain management.
  • Identification and prevention of fraud in customer transactions.

To learn Big Data and enhance your e-commerce company, you must register for an online Big Data course

Now, let’s check out the ways in which Big Data can boost the e-commerce business.

Impact of Big Data in the E-commerce Field

According to Statista, with the speed of growth of the E-commerce industry, it will hit US$4.5 trillion by 2021.

As per a research organization, BARC, Big Data have improved strategic decisions by 69 percent, increased control over operational processes by 54 percent, and reduced business costs by 47 percent.

Big Data has made a huge impact on e-commerce with advanced applications. These use cases of Big Data in e-commerce organizations can help you implement various operational changes and make noticeable improvements in your e-commerce business.

Pricing Optimization

Cost is one of the key features that drive the buying decisions among various online courses. It acts as a factor for the success of your organization. You can calculate the appropriate cost based on various analytical techniques like target strategy, market segmentation, and competitor analysis. For these methods to work and increase business efficiency, you must rely on the organization’s tangible data.

With the predicting abilities of Big Data, you can find the correct price of the service or the product in which people will purchase, and at the same time, you will gain profit. Big Data Analytics tools allow you to retrieve data from various consumers and sources to determine the best suitable price and offer a good deal to the customers and simultaneously maintain a high-profit margin. Moreover, you can work on these calculations in real-time with the help of defined parameters and algorithms, allowing you to make strategic and well-informed decisions.

Effective and Personalized Customer Experience

The success of any business is largely dependent on customer service. Organizations that meet or out-perform customer expectations show an increase in the conversion and retention scores while generating greater profit. The competition in this line of business is growing tremendously and also, encouraging more consumer demands.

Online companies and businesses that succeed in engaging their buyers and potential customers, understand the requirements of their consumers and offer them the necessary services quickly. In order for you to gain customers in a similar manner, you must also gather, analyze, and make sense of the relevant data.

With Big Data analytics, you can understand the needs of the customers and create offers on their basis. You can get detailed information on consumer preferences via various websites, social media pages, and browser searches. Further, you can use this data to learn the buying behavior of the customer, popular brands, products they generally look for, shopping trends, etc. to identify the pattern and generate or modify offers.

Learn about the difference between Data Science, Big Data, and Data Analytics on our blog on Data Science vs Big Data vs Data Analytics.

Easy and Secure Online Transactions

To offer a good shopping experience, you must ensure that the consumers realize that their payments are secure. With the help of Big Data Analytics, you can identify and track irregular spending patterns and alert the customers in such cases. Organizations generally set up notifications for possible fraudulent activities.

Today, most e-commerce websites integrate a number of payment methods under a centralized platform using Big Data. Big Data Analytics allows you to understand and determine the payment methods preferred by the customers by measuring their effectiveness and frequency of use.

Enhanced Analysis of the Shopping Pattern

You can use Big Data Analytics to understand the shopping behavior of the consumer and predict future patterns that will help you come up with improved business strategies. Further, with this, you can detect preferences of the customers, products that consumers search for the most but your company does not offer, brands they like, spikes in product demands, during which time of the year do they shop more often, etc. 

Regular Advances in Mobile Commerce

On a daily basis, there is an increase in the number of people who utilize smartphones. It has reached a point where scientists have predicted that desktop computer systems will become obsolete soon. Big Data makes it possible for brands and organizations to collect information from various sources and analyze the behavior of the customer via mobile technology.

Suggested:

What is big data analytics? Beginner guide to the world of big data.

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