Big Data Archives - Tech Research Online Knowledge Base for IT Pros Thu, 27 Jul 2023 14:09:28 +0000 en-US hourly 1 https://wordpress.org/?v=6.2.5 https://techresearchonline.com/wp-content/uploads/2019/09/full-black-d_favicon-70-70.png Big Data Archives - Tech Research Online 32 32 What is Big Data and what is its future ? https://techresearchonline.com/blog/what-is-big-data/ https://techresearchonline.com/blog/what-is-big-data/#respond Thu, 14 Jul 2022 13:21:42 +0000 https://techresearchonline.com/?p=149438 How big (or huge) big data is? Before you draw any definite conclusion, you need to have the answer to “what is big data?”  In this blog, we will discuss what big data is along with its other components. We will also discuss various examples and types of Big Data along with its future and applications. Before we learn what big data is, let us first understand the definition of Data.  Data is the amounts, characters, or symbols that a computer performs operations on; these can be recorded on magnetic, optical, or mechanical recording media and saved and transferred as electrical signals. What is Big Data? Oracle defines Big Data as:    “Data that contains greater variety, arriving in increasing volumes and with more velocity.”   In simple words, Big Data is larger, more complex data sets—particularly from new data sources. These data sets are voluminous which makes it difficult to process or deal with them using traditional data processing software. However, these massive volumes of data can be used to manage several business problems that were previously difficult to tackle.   The definition of Big Data can be: “Big Data is large and varied information sets expanding at an exponential rate.” It refers …

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How big (or huge) big data is?

Before you draw any definite conclusion, you need to have the answer to “what is big data? 

In this blog, we will discuss what big data is along with its other components. We will also discuss various examples and types of Big Data along with its future and applications. Before we learn what big data is, let us first understand the definition of Data. 

Data is the amounts, characters, or symbols that a computer performs operations on; these can be recorded on magnetic, optical, or mechanical recording media and saved and transferred as electrical signals.

What is Big Data?

Oracle defines Big Data as:  

 Data that contains greater variety, arriving in increasing volumes and with more velocity.” 

 In simple words, Big Data is larger, more complex data sets—particularly from new data sources. These data sets are voluminous which makes it difficult to process or deal with them using traditional data processing software. However, these massive volumes of data can be used to manage several business problems that were previously difficult to tackle.  

The definition of Big Data can be: “Big Data is large and varied information sets expanding at an exponential rate.” It refers to the enormous and difficult-to-manage volumes of both structured and unstructured data that daily engulf enterprises. Big Data analysis can produce insights to help with decision-making and provide assurance while undertaking important business actions. Volume, Velocity, and Variety are the three Vs of Big Data. Let us learn about them in detail.  

What are the 3 Vs of Big Data?

The volume of information, velocity or speed at which it is derived or generated and gathered, and variety or breadth of the cover data points are the ‘three Vs’ of Big Data.  

• Volume: The volume of data is important. So, when working with big data, you’ll need to process large amounts of low-density, unstructured data. This can be unvalued data from sources like Twitter data feeds, clickstreams from websites or mobile apps, or sensor-enabled hardware. This amount of data may reach tens of gigabytes for some organizations, while others might need several hundred petabytes. 

• Velocity: It refers to how quickly data is received and (perhaps) used. Generally, the highest velocity of data streams directly into memory versus being written to disk. Some internet-enabled smart goods function in real-time or almost real-time, necessitating real-time analysis and decision-making. 

• Variety: It refers to the wide range of data types that are accessible. In contrast to a relational database, traditional data kinds could be organized and easily suited. With the significant growth of big data, data now comes in new and unstructured data formats. However, semi-structured and unstructured data types, like text, audio, and video, require further processing to create meaning and enable metadata.  

Originally, Big Data was associated with volume, variety, and velocity. As the analysis of big data presents challenges in sampling, it previously allowed only for observations and sampling. Therefore, a fourth concept, Veracity, refers to the quality or insightfulness of the data. Without enough investment in big data knowledge, the volume and variety of data may result in costs and dangers that (can) surpass a company’s ability to utilize and benefit from big data. 

Why is Big Data important?

The importance of Big Data does not concern how much data you have but how you use it. By deriving data from any source and analyzing it, you can find solutions that streamline resource management, improve operational efficiencies, optimize product development, and drive new revenue and growth opportunities while allowing for smart decision-making.  

By combining Big Data with high-performance analytics, you can accomplish various business-related tasks like:  

  • Determine root causes of failures, issues, and defects in real-time 
  • Identify anomalies faster and more accurately than the human eye 
  • Improve patient outcomes by rapidly converting medical image data into insights 
  • Rearrange entire risk portfolios within less time 
  • Enhance the ability of deep learning models to accurately classify and react to changing variables 
  • Detect fraudulent behavior prior to its impact on your organization 

Examples of Big Data

Marketing and advertising are arguably big data’s most obvious applications. If you’ve ever seen an ad on Facebook or Instagram, you’ve seen the use of big data. Let us explore some real-world examples of Big Data.  

1. Netflix and Big Data

Yes, Netflix leverages Big Data to its truest form. With millions of subscribers worldwide, Netflix collects our data which is further stored and scrutinized. Whatever you watch, the device used to watch, if a show is paused, and how quickly a user finishes watching a series. Netflix tracks and records everything. In fact, the company also takes screenshots of scenes that people watch twice. Why? To feed all this information to their algorithms.  

2. Amazon and Big Data

Like Netflix, Amazon collects a considerable amount of user data and keeps a tab on its customers’ activities. The company can generate highly specialized segmented user profiles by gathering all this data from millions of consumers. They can then focus their marketing efforts using predictive analytics on customers’ surfing patterns. This is used to group similar products together to make shopping more accessible and advise what you might want to buy next.  

3. McDonald’s and Big Data

Mcdonald’s uses big data to influence important areas of its offering offline using its mobile app, drive-through, and digital menus. It gathers crucial data regarding customer habits using its own app and offers personalized loyalty prizes to promote repeat business. However, they also get information from each restaurant’s drive-thru, which enables them to make sure there are enough staff on duty to meet demand. Their digital menus also give several selections based on the time of day, whether any neighboring events are happening, and even the weather. 

 Other examples of how Big Data is used by various industries or organizations are listed below:  

  • Energy industry: Big Data helps oil and gas companies spot potential drilling locations and allows them to monitor pipeline operations. In fact, utilities use it to track electrical grids.  
  • Finance Industry: Financial services firms use big data systems for risk management as well as for real-time analysis of market data.  
  • Supply Chain Industry: Manufacturers and transportation companies use Big Data to manage their supply chains and optimize delivery routes.  
  • Government Agencies: National and government use Big Data for emergency response, crime prevention, smart city initiatives, and much more.  
  • Education: Until recently, education was mostly a one-size-fits-all venture. And that is no longer the case as businesses today leverage big data. It is used by universities, colleges, and tech giants to improve the learning process. 

Types of Big Data

 Big Data is classified in three ways:  

  1. Structured                         2. Semi-structured                                     3. Unstructured 

Structured data 

Structured data is easy to evaluate and sort as it has predefined organizational characteristics and is available in a structured or tabular schema. Each field is discrete and accessed separately or in addition to the data from other fields since it is predefined. As a result, structured data is significant because it enables the quick data collection from numerous database locations.  

Unstructured data

Unstructured data is defined as data that lacks predetermined conceptual definitions and is difficult for traditional databases or data models to interpret or analyze. The majority of huge data is made up of unstructured data, which includes facts, dates, and numbers. Examples of this kind of big data include, but are not limited to, satellite imaging, mobile activity, audio and video files, and NoSQL databases.   

Semi-structured data

Semi-structured data is a hybrid of structured and unstructured data. Here, although it inherits a few traits of structured data, it also contains information that lacks a clear structure and does not follow relational databases’ or data models’ official forms. For example, it is frequently identified in JSON and XML.  

Characteristics of Big Data

Big Data is often described with 5 characteristics. These are namely:  

• Volume—size, and amounts of big data that companies manage and analyze 

• Value—comes from insight discovery and pattern recognition that leads to more effective operations and fosters stronger customer relationships including other clear and quantifiable business benefits 

• Variety—diversity, and range of different data types, unstructured data, semi-structured data and raw data 

• Velocity—the speed at which companies receive, store and manage data such as the number of social media posts or search queries received within a day or specific period in time 

• Veracity—truth or accuracy of data and information assets that often determines executive-level confidence 

• Variability—changing nature of data companies seek to capture, manage and analyze such as in sentiment or text analytics, changes in the meaning of keywords or phrases 

Future of Big Data 

We live in a digitally shrouded world where technology and its advancements have become the likes of the future. Therefore, many experts predict Big Data as a sort of new energy that will embrace the willpower of human lives and will enhance the likes of the business world. The more data a company collects and processes through it, the better the chances of completing it.  

Big Data has been useful in various sectors and industries like education, healthcare, stock marketing, aviation, marketing, machine learning, and many more. This further provides an idea that Big Data helps users or the lead to get the proper amount of information in no time.  

For sectors like eCommerce, there is no future without big data as we are getting habituated to artificial intelligence, social media, and other digital trends. In such cases, Big Data plays an important role where it easily helps gain information that is rich and readily available.   

Although Big Data’s popularity is currently at its peak, its requirement will be further boosted in the future. From IT to finance, every industry and business is leveraging the aspects of Big Data to make their mark in their respective industry.   

Applications of Big Data

Today, Big Data defines the modernity of the 21st century. It is considered the most valuable and powerful fuel that can empower several industries as the most widespread form of technology. Some of the prominent applications of Big Data are: 

• One of the industries that use big data technology the most is travel and tourism. It has made it possible for us to anticipate demand for travel-related facilities worldwide, improve business through dynamic pricing, and do much more. 

• Big Data technology is extensively used in the financial and banking sectors. Big data analytics can help banks better understand consumer behavior based on information about their purchasing habits, investing motivations, and personal or financial histories. 

• Big Data has already begun to significantly alter the healthcare industry. Medical professionals and healthcare workers can now offer customized healthcare services to distinct people thanks to predictive analytics.  

• One of the main industries using big data is the telecommunications and multimedia business. Zettabytes of data are being produced every day, and Big Data Technologies is the only way to manage such enormous amounts of data. 

• Big Data technology is also used more frequently by the government and the military. You can think about how much data the government produces for its records and how a typical fighter jet plane in the military needs to process petabytes of data while it is in flight. 

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5 Real-time Applications of Big Data in 2022 https://techresearchonline.com/blog/applications-of-big-data/ https://techresearchonline.com/blog/applications-of-big-data/#comments Sun, 19 Jun 2022 12:28:54 +0000 https://techresearchonline.com/?p=145945 Introduction Today, big data has become a game changer for enterprises and industry influencers likewise. Over the last few years, applications of big data have greatly increased. Did you know that the Big Data market size is projected to grow from $162.6 Billion in 2021 to $273.4 Billion in 2026? In fact, the market size is estimated to grow at a CAGR of 11.0% during the forecast period. The above stats only emphasize the increasing adoption and application of big data in all types of modern industries. With its growing implementation in our daily lives, industries have shifted their focus towards finding the real value of big data instead of focusing on the hype around it. In this blog, we will take a look at the applications of big data in major industries like healthcare, finance, cyber security, social media as well as government agencies. Applications of Big Data The main purpose of big data is to analyze large amounts of data and help businesses make better decisions accordingly. Here are some of the notable fields where you can find the maximum application of big data: 1. Application of Big Data in Healthcare Recent data from the Office of the …

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Introduction

Today, big data has become a game changer for enterprises and industry influencers likewise. Over the last few years, applications of big data have greatly increased. Did you know that the Big Data market size is projected to grow from $162.6 Billion in 2021 to $273.4 Billion in 2026? In fact, the market size is estimated to grow at a CAGR of 11.0% during the forecast period.

The above stats only emphasize the increasing adoption and application of big data in all types of modern industries. With its growing implementation in our daily lives, industries have shifted their focus towards finding the real value of big data instead of focusing on the hype around it.

In this blog, we will take a look at the applications of big data in major industries like healthcare, finance, cyber security, social media as well as government agencies.

Applications of Big Data

The main purpose of big data is to analyze large amounts of data and help businesses make better decisions accordingly. Here are some of the notable fields where you can find the maximum application of big data:

1. Application of Big Data in Healthcare

Recent data from the Office of the National Coordinator for Health Information Technology revealed that 97% of children’s hospitals, 96% of general acute care facilities, and 92% of acute long-term care use electronic health records (EHRs).

The application of big data in healthcare has changed the way of managing, analyzing and leveraging data. Before the use of big data analytics, it was impossible to study and segregate the large amount of data generated in the healthcare industry. However, today, healthcare analytics has simplified various things. In fact, it has the potential to reduce the costs of treatment, predict outbreaks of epidemics, avoid preventable diseases and improve the quality of life in general.

Big Data in Healthcare

Source – MaximizeMarketResearch

Moreover, healthcare professionals are capable of collecting massive amounts of data and finding the best strategies to deliver the best treatment methods

2. Application of Big Data in Finance

Big data is no longer confined to technology—it has now become a business imperative as well. In fact, big data is revolutionizing the functioning of stock markets worldwide including the investment decisions of investors across the world.

big-data-Finance

Source – Gartner

Today, financial organizations are leveraging big data to mitigate operational risk and combat fraud. Let us take the example of Alibaba. In order to effectively tackle fraud, Alibaba built a fraud risk monitoring and management system based on real-time big data processing. This system identifies bad transactions. Above all, it captures fraud signals by analyzing large amounts of data of user behaviors in real-time through ML.

3. Application of Big Data in Cyber Security

In 2021, the State of Email Security Report, Mimecast found that 61% of organizations experienced a ransomware attack leading to at least a partial disruption of business operations. This concluded that business-disrupting ransomware attacks are increasing.

Big Data in Cyber Security

Source: Comparitech

That being said, cyber security analytics are heavily reliant on big data analytics. This is because big data analytics employs qualitative as well as quantitative methods. As a result, it further aids in the extension of productivity and enterprise gain. In fact, big data allows companies to analyze and predict cyber hacking based on the awareness of the dangerous state of affairs.

4. Application of Big Data in Government Agencies

According to market researchers at IDC, worldwide spending on big data and business analytics solutions grew 10.1% in 2021 to total an estimated $215.7 billion.

Surprisingly, government agencies were among the earliest adopters of big data analytics technology. In fact, they have harnessed some of the biggest benefits of big data applications.

Big-Data-in-Government-Agencies

 Source: Medium

Moreover, a recent IBM analysis states that 34% of chief data officers in the US government now use predictive modeling. In fact, Harvard recently listed several success stories related to the use of data and analytics across the US government. Another recent Gartner survey states that 43% of government CIOs across 89 countries plan to increase their business intelligence and data analytics investments.

5. Application of Big Data in social media

The application of big data on social media platforms is quite visible from the overflowing posts, comments, likes and dislikes, followers, followings, etc. According to Statista, with 2.38 billion monthly active users in Q1 2019, Facebook is not going to lose ground and once again proves the effectiveness of big data analytical methods.

Today, social media marketers effectively use big data to monitor future buying patterns and trends. Big data improves the certainty of what consumers want when they want it and how they want it. This, as a result, provides insights into what their new products can be like.

Another important application of big data in social media is the prevention of cyberbullying. Cyberbullying and sharing of offensive content are becoming rampant on social media apps—especially on Instagram. In fact, statistics have shown that around 42% of young people experience cyberbullying on Instagram.

Big Data in social media

Source: Statista

In order to tackle the problem, Instagram uses AI and Big Data to tackle the increase of these vices. Using these, Instagram algorithms quickly identify inappropriate content. And as a result, they generate an instant notification for Instagram to block or delete the content.

Conclusion: How can Big Data Application Help Industries grow?

Today, big data allows businesses and organizations to accumulate and store huge amounts of information for easy analysis. This can be essentially useful for businesses in various industries. Moreover, whilst analysis of big data can be used in different ways to help different industries, some benefits of big data are universal

Big-data-trends

Source: FinancesOnline

Besides, there are numerous winners who leverage big data to clear cobwebs for businesses. One of them is Netflix which saves $1 Billion every year to retain customers by digging through its vast customer data.

To conclude, the increasing adoption of big data across various sectors will only boom in the future.

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Top 8 Benefits of Using Big Data & Analytics for Small Businesses https://techresearchonline.com/blog/big-data-analytics-for-small-businesses/ https://techresearchonline.com/blog/big-data-analytics-for-small-businesses/#respond Fri, 06 May 2022 10:10:50 +0000 https://techresearchonline.com/?p=138398 Before getting into the details of the benefits of big data analytics. Let’s have an understanding of Bigdata. Big data is a term that refers to vast amounts of organized and unstructured data, yet, handling such massive amounts of data using typical data management methods is inefficient or impractical. To comprehend big data, you must first understand the technologies that gather it today. They include bar code scanners, mobile cameras, CCTV cameras, and motion sensors. You should also know smoke alarms, online analytics tools, and customer relationship management systems. As seen by the examples, these devices capture a diverse range of data kinds; hence, the structured and unstructured parts of the term. The sheer pace with which you create the data makes it impossible to regulate and process using conventional techniques and tools. However, organizations may gain a competitive advantage from big data and incorporating big data analysis technologies. Small Businesses and Big Data It is no longer the case that words such as big data and business intelligence were only linked with huge organizations. Today’s small companies must harness the data they acquire to stay competitive. For years, pricing was the primary impediment to small firms adopting big data …

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Before getting into the details of the benefits of big data analytics. Let’s have an understanding of Bigdata. Big data is a term that refers to vast amounts of organized and unstructured data, yet, handling such massive amounts of data using typical data management methods is inefficient or impractical. To comprehend big data, you must first understand the technologies that gather it today. They include bar code scanners, mobile cameras, CCTV cameras, and motion sensors. You should also know smoke alarms, online analytics tools, and customer relationship management systems. As seen by the examples, these devices capture a diverse range of data kinds; hence, the structured and unstructured parts of the term. The sheer pace with which you create the data makes it impossible to regulate and process using conventional techniques and tools.

However, organizations may gain a competitive advantage from big data and incorporating big data analysis technologies.

benefits of big data processingSmall Businesses and Big Data

It is no longer the case that words such as big data and business intelligence were only linked with huge organizations. Today’s small companies must harness the data they acquire to stay competitive. For years, pricing was the primary impediment to small firms adopting big data analytical technology, but this has changed recently. There are cost-effective technologies available to help small companies make the most of the data they gather now. with the help of Big data, marketing industries had developed so far that it is helping small-scale projects.  According to some experts, small firms might benefit more from big data. It is because they can make critical adjustments much more rapidly than huge organizations, i.e., real-time reaction to data insights.

According to 2016 IDG research, 78 percent of major firms feel that a big data strategy has the potential to fundamentally alter how businesses function. This demonstrates the widespread use of big data technologies and techniques. It is possible by major firms and reinforces the idea that small businesses risk becoming obsolete if they do not embrace similar methods.

Some Unique Benefits Of Big Bata You Can’t Ignore

Large Data and Big Companies, research by IIA Director of Research Tom Davenport, finds that companies are reaping significant benefits from big data analytics. It is especially true in terms of faster decision-making, cost reduction, and product improvement. The following are some of the ways in which small firms might profit from big data. 

1. Savings on costs

While the initial cost of integrating massive data tools and methods is unquestionably considerable, the long-term rewards are unmatched. The healthcare sector is an excellent illustration of how the use of big data can help firms of any size cut their expenses. Medicare and Medicaid Services prevented almost $210 million in healthcare fraud in only two years by applying predictive analytics.

Along with combating fraud, small firms may save on expenses. They can do it by avoiding excess inventory, using better supply chain partners, and so on.

2. Enhancement of Decision Making

This is the primary advantage of big data. It enables organizations to make faster decisions by processing data quickly and providing insights in a timely way. Historically, business choices were made based on accessible data and observable patterns. Businesses now have a massive quantity of data, and as a result, more significant insights may be gleaned from it.

This enormous volume of data necessitates the adoption of cutting-edge big data hardware technology. Once both of these elements are in place, a firm may better understand its consumers, design goods that are a more accurate representation of what customers desire, and build a brand around the most revered values.

3. Impenetrable security

Businesses are more focused on using big data to enhance their core skills but are less concerned with more significant issues, such as cyber-attacks and security breaches. Today, almost every small, medium, and the big company has an internet connection. Additionally, the Internet of Things has expanded firms’ attackable security surface, making it simpler for cyber thieves to attack networks and enter corporate records.

The primary worry for contemporary firms is that they are forced to “react” to cyber assaults that have already happened rather than preventing them. The use of big data and big data analytical tools may be transformative in this field. They are enabling firms to detect and mitigate security assaults far in advance of their execution.

4. Critical Technologies Assisting Businesses in Making the Most of Big Data

As a small company, you’ll need to educate yourself with a variety of technologies that enable you to store, analyze, and act on large amounts of data. Here are a few noteworthy ones:

5. Utilize Software Such as Hadoop

It is an open-source system for storing enormous volumes of data. When you save the data, Hadoop allows the deployment of several applications via the use of clustered hardware. Due to the cluster of cheap hardware, organizations can handle large amounts of data despite their rising volume.

6. Exploration of Data

This is the technology that allows company owners to extract insights, patterns, and trends from large amounts of data that would be impossible to collect using a more conventional method. Data mining enables you to dive headfirst into a sea of organized and unstructured data and make sense of it all. Also, it provides analytical insights that assist organizations in making real-time and future choices.

7. Analytics Predictive

Predictive analytics and data mining coexist. Predictive analytics is powered by artificial intelligence. It enables company leaders to alter their current strategy. It is possible to make predictions about what will happen to the firm based on existing data.

8. Analyses and Mining of Text

One of the primary concerns of contemporary businesses is analyzing the noise on different online platforms such as forums, blogs, and social media in order to determine what buyers anticipate from a certain brand. Discovering brand mentions and gaining a better knowledge of your customer’s perceptions of your brand might help you alter your marketing strategy to increase consumer loyalty. Text mining enables small to medium-sized organizations to sift through text data from emails, blog posts, and social networks in order to hear the “voice” of their consumers.

It has become more and more obvious that businesses will have to manage mountains of data and use big data technologies to stay competitive in the age of smartphones, artificial intelligence, and the Internet of things (IoT).

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Future of Big Data: 5 Predictions for 2022-25 by Experts! https://techresearchonline.com/blog/the-future-of-big-data/ https://techresearchonline.com/blog/the-future-of-big-data/#comments Wed, 30 Mar 2022 15:11:41 +0000 https://techresearchonline.com/?p=133266 What is big data? And why do we need it? Big Data is defined as a huge and complex amount of data sets having different types of valuable information. but this massive amount of data can’t be stored, processed, and analyzed using traditional database management tools. Research has shown that every single day there are millions of data sources generating around 2.5 quintillion bytes of data which are either structured [information that can easily categorize and search] or unstructured [not well organized assume video content, blog posts, written emails, and other sources of information that don’t have relevance] For this purpose, Big data experts can use this information to improve business decisions across industries, including Lead generation, healthcare, government, and finance. To sum up, it’s used to assume the needs of the customer, and to fulfill them by all means. How big is data important in the digital world? It is well said that knowledge is power and in IT companies informational Data is power, without a systematic arrangement, nothing in a business works it’s like wasting time and effort. Big Data provides precise information about what users are searching for. Big Data analyses the need of users in real-time. …

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What is big data? And why do we need it?

Big Data is defined as a huge and complex amount of data sets having different types of valuable information. but this massive amount of data can’t be stored, processed, and analyzed using traditional database management tools. Research has shown that every single day there are millions of data sources generating around 2.5 quintillion bytes of data which are either structured [information that can easily categorize and search] or unstructured [not well organized assume video content, blog posts, written emails, and other sources of information that don’t have relevance] For this purpose, Big data experts can use this information to improve business decisions across industries, including Lead generation, healthcare, government, and finance. To sum up, it’s used to assume the needs of the customer, and to fulfill them by all means.

How big is data important in the digital world?

It is well said that knowledge is power and in IT companies informational Data is power, without a systematic arrangement, nothing in a business works it’s like wasting time and effort. Big Data provides precise information about what users are searching for. Big Data analyses the need of users in real-time. It is well said that having a complete plan of what to do and what not allows companies to beat their competitors and achieve their desired goals.

Future of big data in the business universe.

We are surrounded by the digital world, and we can’t do anything about it but instead of just being in the unimaginable past we can explore our view of the future. Many experts assume that big data is a sort of new energy that will embrace the willpower of human lives and will make the business world a better place. Big Data works like the more data a company collects and processes through it, gets the better its chances to compete. It’s not a secret you can easily see Big Data provides education, health care, stock marketing, aviation, marketing, machine learning, and much more. This gives you an idea that big data helps the user or the lead to get the proper amount of information in no time.

Future of big data in e-commerce.

There is no future without big data because if we observe properly human lives are getting used to artificial intelligence, social media, trends. big data plays an important role in eCommerce. It makes it easy to gain information that is rich and readily available but this is just the beginning. it’s more important to be well aware of commercial insights that help the company grow in the proper direction.

If we talk about a particular country let’s take an example of India research has shown that the Indian analytical industry will eliminate approximately US$16 billion by 2025. A recent study shows that from 2021 to 2026 the industry will grow at a CAGR of 35.1% which is an impressive outcome. One more thing which is good news 95% of IT companies are planning to hire new staff who have significant knowledge of Big Data in the future. It is well said that following the trend helps us to sustain our lifestyle but it is more important to be wise enough to understand the trend first. Big Data is a spectacular field to move into in the future because it’s going to last for so many years.

Big data predictions

We all have this question will big data lose its fame???

Big Data’s popularity is at its peak but in the future, its popularity won’t fade that easily because its need is increasing day by day and the salary offered is often very high. there are so many opportunities across the world in several domains. thus, it is inevitable that big data will lose its popularity the only thing that’s going to increase is the demand for growth and learning in new fields. To be honest, is no longer a future thing, it is being used globally, but yes, we will explore different types of big data technologies or tools and will surely see the positive effects on business. In the modern era, the current demand for big data is increased in several fields like the automotive industry, software development, and eCommerce, among many other spheres.

Every single person from the IT field is talking about Big Data about 48% of companies have invested in Big Data in 2016 and three-quarters have planned to invest in Big Data. These days every single company uses data-driven decisions. Ultimately it seems to look like Big data is going to increase and increase.

Top 5 Big Data technologies in the Modern era.

1. AI

The major difference between Ai and Big Data is that big data is raw information that needs to be well structured, differentiate properly, and integrated before implementation, while artificial intelligence is the intelligence that results from the processed data and has a structure. AI enables smarter decision-making by considering all important aspects of the business. big data also has a crucial role in modern-day enterprises. The combination of AI and big data is like proper management for securing Business.

2. SQL-based Technologies

The structured query language is a computer language that is used to create structured data or manage the stored data. A wider range of technologies is present that can be used for designing and developing modern applications. You can represent specific methods for accumulating and retrieving data, which would be further deployed in future web apps and Big Data analytics tools.  MongoDB, Redis, and Cassandra are some of the most popular NoSQL databases in the market.

3. R-programing

R Programing is open-source software for statistical computing and graphics supported by the R Core Team and the R Foundation for Statistical Computing Gentleman, R is used among data miners and statisticians for data analysis and development of statistical software. To be precise you can add languages like C, C++, java, python, etc.

4. Data lakes

Big Data is just a large amount of data that’s it. DATA LAKE A data lake is a storehouse for Big Data. It stores data of all types i.e., structured, unstructured, and semi-structured, that has been collected from various sources. Organizations that take advantage of these big data technologies can better respond to opportunities and advance their growth through active involvement and informed decisions.

5. Predictive Analytics

Predictive analytics is a sub-category of big data analytics which assumes future events or behaviors based on past information

It includes :

  1. Machine learning
  2. Data modeling
  3. Statistical and mathematical modeling

How to enhance our skills in big data?

Taking advantage of Big data is the most important aspect of any IT company. Studying the previous information and arranging then in a proper manner is an art and can be beneficial in the future for the next generation. You can easily get interview questions from top recruiters, including Amazon, Google, and Microsoft. You can also earn additional certifications in Data Science, Data Structures, and Algorithms. This proves that you are good enough to work in any desired organization.

It is well said that knowledge is power and in IT companies informational Data is power, without a systematic arrangement, nothing in a business works it’s like wasting time and effort. Big Data provides precise information about what users are searching for. Check how best big data companies can benefit your business by providing various solutions for the usage of big data. Big Data analyses the need of users in real-time. It is well said that having a complete plan of what to do and what not allows companies to beat their competitors and achieve their desired goals.

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6 Best Big Data Analytics Tools for Marketers https://techresearchonline.com/blog/6-best-big-data-analytics-tools-for-marketers/ https://techresearchonline.com/blog/6-best-big-data-analytics-tools-for-marketers/#comments Tue, 15 Sep 2020 17:46:14 +0000 https://techresearchonline.com/?p=12632 Introduction Data is every marketer’s best friend. Today, data has become an important asset to every marketer. We require data to identify what’s working well in our campaigns and what’s not, to diagnose potential problems, and so much more. However, many marketers fail to understand that some data simply holds more valuable than others. so, knowing which data can help you excel can be key. Extracting data at scale can be overwhelming; however, web scraping using Python, and other coding languages, can simplify that process. Marketers must know metrics to monitor as they can mean the difference between success and failure. And to make your task a little simple, there are hundreds) of marketing analysis tools available on the internet just a click away. Some of these tools are free while others are not. Some tools are specifically good at one thing whereas others offer a broad range of functionality. Most importantly all of them hold one promise, to provide you the sweet data that can help with run campaigns more effectively as packaging printers pledge to make you marketing campaign proactive What to look for before selecting big data analytics tools? Analytic Capabilities: Different tools have different types of analytics …

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Introduction

Data is every marketer’s best friend. Today, data has become an important asset to every marketer. We require data to identify what’s working well in our campaigns and what’s not, to diagnose potential problems, and so much more.

However, many marketers fail to understand that some data simply holds more valuable than others. so, knowing which data can help you excel can be key. Extracting data at scale can be overwhelming; however, web scraping using Python, and other coding languages, can simplify that process.

Marketers must know metrics to monitor as they can mean the difference between success and failure.

And to make your task a little simple, there are hundreds) of marketing analysis tools available on the internet just a click away. Some of these tools are free while others are not. Some tools are specifically good at one thing whereas others offer a broad range of functionality.

Most importantly all of them hold one promise, to provide you the sweet data that can help with run campaigns more effectively as packaging printers pledge to make you marketing campaign proactive

What to look for before selecting big data analytics tools?

Analytic Capabilities: Different tools have different types of analytics capabilities. Different models for various types of analysis include Predictive mining, Decision trees, Time series, Neural networks, Path analysis, Market basket analysis, and Link analysis.

Integration: Statistical tools and programming languages are also needed by businesses for other forms of custom analysis.

Data Import and Export: This is a key consideration as inputting data in and out tools is a vital feature. It helps understand the level of difficulty with which you can connect the analytics tool to the big data repository.

Visualization: Data that is displayed in a graphical format often becomes more use-able and appealing to the users.

Scalability: Big Data tends to grow bigger over time. Hence, businesses need to consider scalability as an option for the analytics tools they choose.

In today’s blog post, we will provide you with the best big data analytics tools and help you see what they do and what they hold for you.

#1. SkytreeSkytree - Big Data Analytics Tools

Source: Butleranalytics

Skytree is one of the best big data analytical tools out there. It has highly scalable algorithms to even help data scientists build more accurate models faster.

It offers accurate predictive machine learning models that are easy to use as it is designed to solve robust problems with data preparation capabilities. It can provide users with important analytics on customer segmentation, churn prediction, fraud detection, and others.

It is an excellent data analytics solution for small and mid-sized companies. The platform is designed to equip smaller teams with all-encompassing ML mechanisms. It makes data science a simple process; hence even first-time users easily comprehend it.

Its features include:

  • Highly Scalable Algorithms
  • Easy to adopt GUI or programmatically in Java
  • Model Interpretability
  • Data accumulation and filtering
  • Simple data visualization
  • Customizable sets of algorithms
  • AI-based predictive analytics
  • Extensive data interpretation models

Besides, it analyzes data streams for everything be it relational databases to machine learning libraries. And last but equally important is to mention the customer service team behind the software. You can reach out to their agents around o’clock and they will be ready to help you with your inquiries.

#2. Mixpanel

Mixpanel is a powerful analytical tool that can offer any business invaluable insights on its audience’s behavior.

The designers of Mixpanel along with the 33 percent of marketers agree that having the right technologies for data collection and analysis can immensely help in understanding customers.

Businesses need to constantly track user behavior on their websites. This tool can help track comprehensive user behavior to help them see what potential customers are doing on their websites.

It organizes the data and allows you to see patterns in web usage which then help you make informed future marketing strategies.

Its features include:

  • Advanced analysis
  • Send targeted messages
  • Analytics infrastructure for global scale
  • Data governance
  • A/B testing
  • Annotations
  • Data visualization
  • Retention features
  • Auto track customer engagement

It provides a wide range of functionality without even requiring a single line of code. This means that even non-technical personnel can easily access data about your site.

#3. Apache Spark

Apache Spark - Big Data Analytics Tools

Source: Prweb

Apache Spark is another very powerful and massive open-source big data analytics tool. It offers more than 80 high-level operators to easily build parallel apps. This tool can help you figure out datasets and design the analytics reports.

Based on cutting-edge technologies such as a query optimizer and DAG scheduler it is used by large businesses to process large datasets. It helps in running applications in the Hadoop cluster, up to 100 times faster in memory, and ten times faster on disk.

The platform can work with all the major programming languages including the likes of Java, SQL, R, Python, and Scala.

Its features include:

  • Run application in Hadoop cluster
  • 100 times faster in-memory
  • Ten times faster on disk
  • Lighting fast processing
  • Sophisticated analytics
  • Built-in APIs in Java, Scala, or Python
  • In-memory data processing capabilities
  • Works with HDFS, OpenStack and Apache Cassandra
  • Enable superior data processing
  • Seamless integration with external apps and software solutions

Another crucial advantage of the tool is that it supports all sorts of devices, apps, and operating systems.

Apache Spark contributors list has over 1.2 thousand names. So, you can either contact their expert community via email or use Jira for tracking issues.

#4. Tableau

Tableau - Big Data Analytics ToolsSource: Tableau

Tableau is a great data visualization tool that makes it quite different from other platforms. It is a very powerful big data analytical tool as it communicates insights in the form of visual data.

The platform offers a drag-and-drop function that enables users to customize and rearrange visual elements of data. In the analytics process, its visuals allow quick investigations and an easy way to explore data.

However, the tool goes beyond this to offer a whole set of additional functionalities to make it such an important data analytics tool.

Its features include:

  • End-to-end analytics
  • Advanced Visualizations
  • Live and In-memory Data
  • Collaboration and Sharing
  • Responsive user interface
  • Pre-installed information maps
  • Advanced data calculations
  • Simple content discoveries
  • Fully protected system
  • Reduced security risks
  • Improved activity feed, Ask data, SAP HANA connectors

The tool is available in multiple formats including individual and team-focused platforms.

Tableau is considered one of the best Business Intelligence and data visualization tools. Its most important quality includes organizing, visualizing, managing, and understanding data for its users.

#5. Talend

Talend - Big Data Analytics ToolsSource: sysbus.eu

Talend is a great tool for integrating enormous real-time data libraries while making sure that it remains of high quality. The big open-source data analytical tool makes the process of automating data integration, filtering, and management easy.

Gartner says that poor data quality costs U.S. businesses anywhere between $9.7 million and $14.2 million annually. So, Talent helps you take necessary preventative measures with its data-cleaning services and saves you from trouble.

The developers of this platform say, “Talend uses native code generation that lets you run your data pipelines seamlessly across all cloud providers and get optimized performance on all platforms.”

Its features include:

  • Faster completion of big data projects
  • Handles multiple data sources
  • Simpler and more accurate ETL and ELT processes
  • Easier to use Spark thanks to the native code generation
  • Powerful natural language processing and machine learning
  • Smarter data quality with NLP and ML
  • Provides numerous connectors
  • Simplifies using MapReduce and Spark
  • Agile DevOps to speed up big data projects
  • Streamline DevOps processes

The platform’s important ability is to allow big data integration which helps master data management to check data quality by accelerating time.

#6. Splice Machine

Splice Machine - Big Data Analytics Tools

Splice Machine is an open-source big data analytics tool. Its architecture has been designed to be portable across public clouds such as AWS, Azure, and Google. The seamlessly custom packaging of these compute engines help you save time and money to duct tape systems yourself.

The tool can scale dynamically from a few to thousands of nodes to enable applications at every scale.

Its optimizer can automatically evaluate queries to the distributed HBase regions for faster deployment, reduce management, and reduce risk.

Its features include:

  • Scale-out SQL RDBMS
  • ACID transactions
  • In-memory analytics
  • In-database machine learning
  • Low latency OLTP reads and writes
  • Auto-shards row-based storage across region servers
  • Secondary indexes to support many access keys
  • Dynamically scale from a few to thousands of nodes
  • Automatically evaluates the query
  • Consume fast streaming data

Platform’s dual model leverages columnar external tables. It provides cost-effective storage on cloud block storage, HDFS, or local files as Parquet, ORC, or Avro files. For hybrid computation, first-class tables also be joined with low-latency row-based storage.

Final Thoughts:

In this blog post, I have tried to cover the most popular big data analysis tools used for marketers. These tools can help you with all your big data issues so that you can concentrate on improving your campaign results.

 

Author Bio: 

Shreeya Chourasia, Writing is food to my soul and the quote that inspires me to keep learning is “Learning never exhausts the mind” by Leonardo da Vinci. Tech Research Online has given me a platform to do just that, I learn and I write and then I learn a little more.

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How Businesses Can Utilize Big Data For Social Media Marketing? https://techresearchonline.com/blog/how-businesses-can-utilize-big-data-for-social-media-marketing/ https://techresearchonline.com/blog/how-businesses-can-utilize-big-data-for-social-media-marketing/#respond Wed, 06 May 2020 18:53:19 +0000 https://techresearchonline.com/?p=7350 Businesses are growing rapidly and so is big data. It has significantly transformed the way businesses operate. It has the potential to save both time and money for the business as analytics allows for improved ad targeting. It has changed the way people work and impacted multiple sectors including retail, healthcare, marketing, and others. Today, social media marketing agencies are developing media strategies based on the insights found with the help of big data analytics. Previously, social media start with the purpose of connecting with friends, however, it has taken a whole new direction, to become one of the biggest marketing platforms. Now, these platforms are being utilized by brands to expand their customer base through advertising and paid promotion. It has become an output for marketing campaigns and input for future social media strategies. A company can learn about their consumers and behaviors from likes, comments, shares, following, and followers. Social media platforms can provide an enormous amount of data to brands and marketers to get actionable insights. Every two years, the data doubles and is estimated to reach more than 44 trillion gigabytes by the end of 2020. The rising amount of data is opening up new opportunities …

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Businesses are growing rapidly and so is big data. It has significantly transformed the way businesses operate. It has the potential to save both time and money for the business as analytics allows for improved ad targeting. It has changed the way people work and impacted multiple sectors including retail, healthcare, marketing, and others. Today, social media marketing agencies are developing media strategies based on the insights found with the help of big data analytics.

Previously, social media start with the purpose of connecting with friends, however, it has taken a whole new direction, to become one of the biggest marketing platforms. Now, these platforms are being utilized by brands to expand their customer base through advertising and paid promotion. It has become an output for marketing campaigns and input for future social media strategies.

A company can learn about their consumers and behaviors from likes, comments, shares, following, and followers. Social media platforms can provide an enormous amount of data to brands and marketers to get actionable insights. Every two years, the data doubles and is estimated to reach more than 44 trillion gigabytes by the end of 2020. The rising amount of data is opening up new opportunities for businesses both small and large for innovations on social media platforms.

Businesses that are utilizing big data for social media marketing are at a huge advantage as they enable the marketer to closely understand their customer base and purchasing decisions which and encourage consumers to pull the trigger. Social media has become the best medium to get an edge with your competitors.

So let’s find out some of the interesting ways to use big data for your advantage and boost social medial:

1)  Omni-channel Sources

Marketed can use AI strategy to process data across several channels. This can be simply implemented by using synchronization and log-in technology. They can gather information about customers from numerous business websites as they require sign-ups via Google or Facebook accounts. This can help you understand the social media activity, desktop, and mobile applications, browser history, cloud storage, and other information about the target customer base.

2)  Algorithms

One of the most crucial parts of social media is the algorithm. Algorithms are crucial as they determine if the content is worthy to be seen by potential customers or not. To determine this they factor quality of content, followers count, engagement of your previous posts, and others. Sometimes they snub some of the posts and promote others. To understand how they work it is important for managers to study analytics.

The analytics also provides useful insights that can help determine factors such as customer engagement of each post, post-performance, content that resonated with customers, the best time for customer engagement, and others.

3) Customers Base

Marketers can improve all social media campaigns just by understanding their target audience. Once a marketer understands its target audience it becomes easy to develop content according to their preferences. Here, big data can help enormously as it is designed to provide pivotal customer insights on social media platforms. It can provide information such as trending topics, demographics, and other details about the targeted customer base.

4) Personalize Social Media

Once a marketer understands its consumers it becomes very easy to personalize the social media profiles to answers the questions they might have. A marketer can obtain all the information from analytics provided by social media. After implementing this strategy customers will start following your page for unique and valuable information. They will also be increasingly interested in products and services offered by them.

5) Customer Acquisition and Retention

Social media has become of the most important platform to improve customer acquisition and influence their decision making.  Big data can make both acquiring and retaining customers simply. By helping marketers apprehend new trends that were effecting to encourage purchases in the past to target them through email marketing and create a sense of impulse purchases.

If a brand wants to retain its customers they can maximize its social media presence. This is as customers like to engage with brands that offer them real values. Using post insights in such cases is more helpful as they can help in curating content that is entertaining, educational, and useful for the customer base.

6) Social Media Advertising

Advertisement is the backbone of marketing strategies; however, knowing it yields no result is painful. There is a lot of work required to create successful advertisements but the most crucial element above all is proper research. Being the most important part of an advertisement there is an immense need for good quality research. Nevertheless, as brands have very minimum time to work on a successful as implementing big data for the research can prove to be effective. It can save time and give you insights about customer behaviors and targeting and retargeting advertisements.

7) Real-time interaction

Marketers can also engage with their audiences in real times as social medial platforms offer updates of user activity on social media such as pages visited and followed, ads clicked, links saved, comments posted, friends added, and other details that can help with a market study. Marketers can also plan their product placement as big data provide an updated and precise picture of market demand such as performance, popularity, and customer satisfaction.

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11 Big Data Trends In 2022 That Will Revolutionize Future  https://techresearchonline.com/blog/11-big-data-trends-in-2022-that-will-revolutionize-future/ https://techresearchonline.com/blog/11-big-data-trends-in-2022-that-will-revolutionize-future/#respond Mon, 20 Apr 2020 15:58:35 +0000 https://techresearchonline.com/?p=6963 In 2019, the world saw massive upticks in Big Data with companies flocking to embrace the importance of data operations. It was predicted that the big data industry, in 2019 was worth around $189 billion from it $20 billion in its previous years 2018. The industry is set to continue its rapid growth and is expected to ready around $247 Billion by 2022. In 2022, the industry is predicted to observe some of the trends that will change the future of big data. Let’s see some of those trends: Augmented Analysis In the year 2017, augmented analysis was named the future of data and analytics in research published by Gartner. Augmented analysis can provide clear results and present solutions in a simple format. The process of augmented analysis can automate the process of data analysis with the help of Machine Learning and Natural Language Processing (NLP). In this process, the data is prepared through a streamlined automation process from various sources like external portals, internal data, cloud data, and any other locations. Analysts can prepare data for analysis by combining all the data, its process, and checking them for errors. These clarified data be used in real-time analysis with sophisticated …

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In 2019, the world saw massive upticks in Big Data with companies flocking to embrace the importance of data operations. It was predicted that the big data industry, in 2019 was worth around $189 billion from it $20 billion in its previous years 2018. The industry is set to continue its rapid growth and is expected to ready around $247 Billion by 2022. In 2022, the industry is predicted to observe some of the trends that will change the future of big data. Let’s see some of those trends:

Augmented Analysis

In the year 2017, augmented analysis was named the future of data and analytics in research published by Gartner. Augmented analysis can provide clear results and present solutions in a simple format. The process of augmented analysis can automate the process of data analysis with the help of Machine Learning and Natural Language Processing (NLP). In this process, the data is prepared through a streamlined automation process from various sources like external portals, internal data, cloud data, and any other locations.

Analysts can prepare data for analysis by combining all the data, its process, and checking them for errors. These clarified data be used in real-time analysis with sophisticated tools and then the data analysis is automated with algorithms. This helps incorrectly identify trends and patterns to provide accurate results. Augmented analysis can be greatly beneficial for businesses for collecting and formatting data from different sources, managing tons of data simultaneously, improving daily functions in a business, prepare and analyze data on time-sensitive requirements, and providing analysts time to work on special projects.

Data-Backed Tools

Technology is pushing all of its tools to rise and the Internet of Things (IoT) is one of them. According to a Gartner forecast, by the end of the year 2022, IoT is expected to reach around 8.4 billion. IoT devices are being used for refrigerators, parking meters, ovens, and several other home appliances.

In 2022, these devices are expected to play a major role in healthcare equipment, security apparatus, and home and retail devices. These devices will be increasingly used for their benefits of data and assistance in running big data analytics. For example, edge computing allows data storage in a local storage devices near the IoT device. This reduces the dependency of the devices on the cloud platform which in turn helps them to work faster as they do not require any wait time for accessing the data from the cloud.

In-memory Processing

The rising demand for real-time analytics requires fast CPUs and in-memory processing. Also, decreasing in-memory costs are expected to drive more and more analytics to real-time environments. Companies are looking for machines that can instantaneously respond to online sales activities, important alerts regarding their production infrastructures, and sudden changes in financial markets and others.

Natural-Language Processing

Over the past few years, voice-based applications and analytics have not observed any improvements due to the challenges of capturing voice in different intonations and accents with accurate NLR. However, today, NLR, interpretation, and mechanics technologies have evolved to a point where analytics queries can be posed by voice command. This has created fast-paced environments that do not require employees to work hands-free including warehouse yards, logistics, and others.

Graph Analytics

Graph analytics is expected to gain traction in 2022. This can be attributed to the fact that spreadsheets are instrumental and have kept companies engaged in analytics. However, companies are experiencing the problem that their data and complexity of analytics queries have increased beyond the point the common spreadsheet can handle.

Graph analytics have the potential to help these companies determine the connections between different data points. These data points even include those that at first do not appear to be connected. This technology can amplify the task of connecting people, times, places, and things, to speed up the market for business insights.

Augmented analytics

Corporate IT and data science departments have begun to integrate different pieces of analytics into a whole. Artificial intelligence and Machine Learning will learn from data analytics by observing repetitive patterns of processing their outcomes and then posing derivative queries. The developments in AI and ML will not only augment human creativity. This will be possible as they can rapidly perceive repetitive patterns and deliver faster times to market for business insights.

Data Automation

Scientists are spending as much as 80% of their time cleaning and preparing data. Businesses are looking forwards to data automation which can eliminate human involvement in such operations. By automating data automation, scientists can save more time and speed it to market for analytics. These analytics can obtain prepared and vetted data sooner.

Predictive Analytics

Predictive analytics has helped companies to gain a crucial understanding of historical and current situations. Now, it is expected to grow a step further and shift toward assessing future economic conditions, infrastructure maintenance, climate trends, risk areas, and investment needs.

Analytics Life-cycle Development

The usage of analytics apps is becoming more and more common and very soon IT departments will start to look at them similar to traditional transactional apps. This is will encourage them to develop life-cycle management policies and procedures for analytics. The development will begin with application development and testing and then extend to launch, support, backup, and disaster recovery.

Healthcare Services

Big data is expected to create a proper central body that connects all medical records and medical data available can identify the cure, preventive measures, and other disease management solutions. It is expected to make a difference in healthcare services for various purposes as it has already played a crucial role during the times of pandemic in managing hospital equipment and other departments.

By the end of 2022, there will be a major revolution in the healthcare system backed by big data analytics and IoT. Researchers are working on discovering the applications of IoT devices in patient tracking and monitoring of different conditions. They are even working on robot designs with the help of big data to attend patients and perform operations.

R&D in Various Industries

Big data analytics has to improve the traditional ways businesses manage their operations daily. It has changed businesses from marketing to supply chain management by helping them gather customer preferences, and behavioral insights, forecast industry trends, and customer expectations to create better products for customers.

Major industries are relying on their R&D department which in turn depends on big data analytics in various aspects such as simple social media analytics and management, improving product quality, manufacturing automation, location-based service decisions, providing better customer support, innovative tools to automate sales pipeline, and so much more.

The year 2022, is expected to mark the release of new applications of big data as the futuristic needs of big data are enormous. The year will also witness new research including big data for the development of automated physical products. It will open up several more options and tools to help businesses innovate and discover their audience. Additionally, these developments will give way to the fast pace development of other technologies supported by data analytics.

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How Big Data is Changing Marketing Industry? https://techresearchonline.com/blog/how-big-data-is-changing-marketing-industry/ https://techresearchonline.com/blog/how-big-data-is-changing-marketing-industry/#respond Sat, 18 Apr 2020 11:14:46 +0000 https://techresearchonline.com/?p=6822 Introduction Big data has opened up several opportunities since the invention of the phone or the internet going mainstream. It is being used by several marketing organizations for decisions –making, analyzing, and understanding challenges, capabilities, and competencies. This overwhelming amount of data is increasing complexity, competitive pressures, and customer behaviors. Big data can help within creating better marketing if used properly. Big data works as a secret ingredient, an essential element, and raw material. However, data itself is not so important but the insights derived are. Application of data can improve customer loyalty and engagement, help make pricing decisions, optimize your performance, and prove to be an indispensable tool. Three types of big data are crucial for marketing: #1. Customer Data:  The most crucial data required for marketing is customer data that includes names, email addresses, purchase histories, and web searches. This can provide marketers with customer’s insights such as their behavioral, attitude, and transactional metrics. The data is collected from several sources such as marketing campaigns, websites, social media, online communities, customer surveys, and loyalty programs. Customer data helps marketers understand their target audience. #2. Operational Data:  Operational data includes is data of different business processes such as shipping …

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Introduction

Big data has opened up several opportunities since the invention of the phone or the internet going mainstream. It is being used by several marketing organizations for decisions –making, analyzing, and understanding challenges, capabilities, and competencies. This overwhelming amount of data is increasing complexity, competitive pressures, and customer behaviors. Big data can help within creating better marketing if used properly. Big data works as a secret ingredient, an essential element, and raw material. However, data itself is not so important but the insights derived are.

Application of data can improve customer loyalty and engagement, help make pricing decisions, optimize your performance, and prove to be an indispensable tool. Three types of big data are crucial for marketing:

#1. Customer Data: 

The most crucial data required for marketing is customer data that includes names, email addresses, purchase histories, and web searches. This can provide marketers with customer’s insights such as their behavioral, attitude, and transactional metrics. The data is collected from several sources such as marketing campaigns, websites, social media, online communities, customer surveys, and loyalty programs. Customer data helps marketers understand their target audience.

#2. Operational Data: 

Operational data includes is data of different business processes such as shipping and logistics, customer relationship management systems, marketing operations, resource allocation, asset management, budgetary controls, feedback from hardware sensors and other sources. It includes objective metrics that help measure the quality of marketing processes. This data can lead to improved performance and reduced costs. 

#3. Financial Data:

Financial data is crucial for measuring performance for effective operations. This category covers an organization’s sales and marketing statistics, margins, revenue, profits, and other objective data. This data also includes competitors’ financial data such as pricing.

In marketing, the big data comprised by gathering, analyzing, and applications of digital information to improve business operations, such as:

    • Understanding Audiences:

The concept of “know your customer” was coined many years ago to large financial institutions. Now, the benefits of knowing the target customer are available to even small and medium-sized businesses due to accessibility to big data and cloud computing.

    • Customer Engagement:

A business must know how their customers perceive there brand and interact with it. Big data analytics can help businesses by providing business intelligence such as improving existing products, increasing revenue, and others.

    • Brand Awareness:

Data can play a major role in significantly impacting marketing by increasing brand awareness. Data-driven retailers can annual gain brand awareness by 2.7 times than others.

    • Unique Content: 

Data helps marketed understand their specific audience and simultaneously present them with specific content according to the best time and place. This is the most effective to improve online and in-store customer recall and brand recognition along with valuable tips on building a personal brand as a  real estate agent.

    • Customer Acquisition:

Data can improve customer acquisition. According to a survey by McKinsey, users of customer analytics are 23 times likely to outperform their competitors in terms of new customer acquisition.

    • Real-Time Data:

Big data can be used to leverage real-time data in cloud computing environments. It can acquire, process, and analyze real-time data accurately. This data can help take immediate and effective action, especially when analyzing data from IoT sensors, GPS, clicks on a webpage, and other real-time data.

The following are the ways Big Data is revolutionizing marketing and sales:

  • Companies attaining greater customer responsiveness and customer insights by using big data and analytics to improve responsiveness and to plan more relationship-driven strategies.
  • Big Data along with its technologies have made it possible to use this intelligence into contextual marketing. Many companies are experiencing exponential growth due to evolving customer, service, sales, and channel and many marketing stacks aren’t integrated at the data process levels. Big data analytics have the potential to create a foundation for scalable Systems of Insight, helping alleviate this problem.
  • Big data analytics is also increasing the marketer’s capabilities to go beyond campaign execution to connect with the customer on a personal level. Big data analytics guide customer development by helping marketers create greater customer loyalty and improving customer lifetime.
  • Big data is having the largest impact on the marketing programs, as according to the CMOs it is helping with SEOs, email marketing, and mobile marketing.
  • Big Data and advanced analytics are also helping market leaders gain greater customer engagement and customer loyalty.

Conclusion:

Big data is playing a crucial role in changing how marketing traditionally worked. It is creating new opportunities for them to not only understand their target audience but also to connect with them on a personal level. Further, big data has also opened an ocean of information about competitors. This new information can be leveraged by marketers for increasing their efficiency and improving there operations.

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How Insurance Industry Will Transform With The Help of AI? https://techresearchonline.com/blog/how-insurance-industry-will-transform-with-the-help-of-ai/ https://techresearchonline.com/blog/how-insurance-industry-will-transform-with-the-help-of-ai/#respond Wed, 15 Apr 2020 14:54:55 +0000 https://techresearchonline.com/?p=6689 In the insurance industry everything thrives on outcomes that are predictable and can generate value for customers. Read more on How Insurance Industry will transform with the Help of AI?

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Introduction

In the insurance industry, everything thrives on outcomes that are predictable and can generate value for customers. As AI, has started to penetrate in every aspect of our lives it has become very crucial for industries such as insurance to adopt new trends. Many people believe that AI has both potential and tools to transform the industry and simultaneously enhance the customer experience. In the coming years, the industry will be equipped with automated personalized services for faster claims handling and underwriting processes.

The industry is expected to report exponential transformation due to AI for enhancing customer experience and decreasing time for insurance claims. So here are some of the trends which are reshaping the insurance companies and will transform the sector over the next decade:

Big Data and IoT

Accelerated development in cloud technology and IoT has opened up a world of information. Data can be sourced from new gadgets such as wearable, telematics, and smart home sensors. Such gadgets can help insurers collect detailed information in real-time data which can be utilized to monitor and understand the behavior of the customer. This information has the potential to make a huge difference for the insurance industry as they can leverage this data to understand customers more deeply. This will result in more personalized pricing, personalized products, and real-time service delivery.

For example, health insurance service providers can use machine learning to help patients with health coverage options from the collected data. They can also track and monitor fitness and heart rate to reward healthy habits. A large amount of data will also help companies prevent fraud as data and machine learning algorithms are trained on the customers can glean patterns.

Natural Language Processing

Natural language processing can help insurance leverage language models which can help find relevant information during claims settlement. This will enable companies to drastically reduce the time required to respond to a customer query, improving customer service. The researchers have been developing more and more complicated models for language-related tasks. It is becoming easier for companies to use AI for gathering import data and highlighting trends which makes it easier and inexpensive for insurers to address their need of their customers by piecing together that information.

Computer Vision

The development of computer vision is helping insurance companies advance by automating tasks. These tasks are being automated with the help of image recognition algorithms that enable machines to extract meaning from visual data. This can help companies reduce the time required for damage assessment for different claims. They can also cross-check the data by tracking camera feeds to detect unsafe behavior during vehicle settlement claims. Along with the speed and efficiency, AI is paving the way for real-time visual data analysis that provides faster and more accurate solutions.

Cognitive Technologies 

Cognitive technologies are expected to advance leaps and bound and are expected to experience the maximum demand from the industry. This can be attributed to the fact that cognitive technologies are able to learn through decomposition and inference. This will enable insurance companies to process a large number of complex data streams generating from insurance products tied to an individual.

Open Source and Data Ecosystems

AI will be creating transparency between industries and making data omnipresent will lead to the emergence of open source and data ecosystems. This will enable data sharing across different industries and public entities. The wearable data can be directly used by insurance carriers under certain regulatory and cybercrime frames to share data for multiple use cases.

These technologies are the future of the insurance industry and are continuously experience transformation. There is no certainty where the technology will take us but companies across the world are slowly adapting to the change.

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