This presentation, by big data guru Bernard Marr, outlines in simple terms what Big Data is and how it is used today. It covers the 5 V's of Big Data as well as a number of high value use cases.
This document provides an overview of big data. It defines big data as large volumes of diverse data that are growing rapidly and require new techniques to capture, store, distribute, manage, and analyze. The key characteristics of big data are volume, velocity, and variety. Common sources of big data include sensors, mobile devices, social media, and business transactions. Tools like Hadoop and MapReduce are used to store and process big data across distributed systems. Applications of big data include smarter healthcare, traffic control, and personalized marketing. The future of big data is promising with the market expected to grow substantially in the coming years.
Applications of Big Data Analytics in BusinessesT.S. Lim
The document discusses big data and big data analytics. It begins with definitions of big data from various sources that emphasize the large volumes of structured and unstructured data. It then discusses key aspects of big data including the three Vs of volume, variety, and velocity. The document also provides examples of big data applications in various industries. It explains common analytical methods used in big data including linear regression, decision trees, and neural networks. Finally, it discusses popular tools and frameworks for big data analytics.
This document provides an overview of key concepts related to data and big data. It defines data, digital data, and the different types of digital data including unstructured, semi-structured, and structured data. Big data is introduced as the collection of large and complex data sets that are difficult to process using traditional tools. The importance of big data is discussed along with common sources of data and characteristics. Popular tools and technologies for storing, analyzing, and visualizing big data are also outlined.
Big data Analytics is a process to extract meaningful insight from big such as hidden patterns, unknown correlations, market trends and customer preferences
Tools and techniques adopted for big data analyticsJOSEPH FRANCIS
This document discusses tools and techniques for big data analytics. It begins by defining big data and explaining why big data analysis is important for businesses. It then outlines the characteristics and history of big data, as well as the challenges and phases of big data analysis. The document proceeds to describe several tools and techniques used for big data analytics, including machine learning, natural language processing, and visualization. It provides examples of how these tools and techniques have been applied through case studies of Indian elections, AirBnB, and Shoppers Stop.
Big Data may well be the Next Big Thing in the IT world. The first organizations to embrace it were online and startup firms. Firms like Google, eBay, LinkedIn, and Facebook were built around big data from the beginning.
Big data is large amounts of unstructured data that require new techniques and tools to analyze. Key drivers of big data growth are increased storage capacity, processing power, and data availability. Big data analytics can uncover hidden patterns to provide competitive advantages and better business decisions. Applications include healthcare, homeland security, finance, manufacturing, and retail. The global big data market is expected to grow significantly, with India's market projected to reach $1 billion by 2015. This growth will increase demand for data scientists and analysts to support big data solutions and technologies like Hadoop and NoSQL databases.
A Seminar Presentation on Big Data for Students.
Big data refers to a process that is used when traditional data mining and handling techniques cannot uncover the insights and meaning of the underlying data. Data that is unstructured or time sensitive or simply very large cannot be processed by relational database engines. This type of data requires a different processing approach called big data, which uses massive parallelism on readily-available hardware.
This document provides an overview of big data, including its definition, characteristics, sources, tools, applications, risks and benefits. It defines big data as large volumes of diverse data that can be analyzed to reveal patterns and trends. The three key characteristics are volume, velocity and variety. Examples of big data sources include social media, sensors and user data. Tools used for big data include Hadoop, MongoDB and analytics programs. Big data has many applications and benefits but also risks regarding privacy and regulation. The future of big data is strong with the market expected to grow significantly in coming years.
This document contains information about a group project on big data. It lists the group members and their student IDs. It then provides a table of contents and summaries various topics related to big data, including what big data is, data sources, characteristics of big data like volume, variety and velocity, storing and processing big data using Hadoop, where big data is used, risks and benefits of big data, and the future of big data.
This document provides an overview of big data and Hadoop. It defines big data as large volumes of diverse data that cannot be processed by traditional systems. Key characteristics are volume, velocity, variety, and veracity. Popular sources of big data include social media, emails, videos, and sensor data. Hadoop is presented as an open-source framework for distributed storage and processing of large datasets across clusters of computers. It uses HDFS for storage and MapReduce as a programming model. Major tech companies like Google, Facebook, and Amazon are discussed as big players in big data.
The document discusses big data, providing definitions and facts about the volume of data being created. It describes the characteristics of big data using the 5 V's model (volume, velocity, variety, veracity, value). Different types of data are mentioned, from unstructured to structured. Hadoop is introduced as an open source software framework for distributed processing and analyzing large datasets using MapReduce and HDFS. Hardware and software requirements for working with big data and Hadoop are listed.
Big data is large and complex data that cannot be processed by traditional data management tools. It is characterized by high volume, velocity, and variety. Big data comes from many sources and in many formats, including structured, unstructured, and semi-structured data. Storing and processing big data requires specialized systems like Hadoop and NoSQL databases. Big data analytics can provide benefits like improved business decisions and customer satisfaction when applied to areas such as healthcare, security, and manufacturing. However, big data also presents risks regarding privacy, costs, and being overwhelmed by the volume of data.
Big Data Analytics Powerpoint Presentation SlideSlideTeam
If it’s that time to make analysis for the predicament of the management system or simply to present deafening data in front of your qualified team then you have reached the right match. SlideTeam presents you classy and eternally approaching PowerPoint slides for big data analytics. Data analysis agendas and big data plans are shown through captivating icons and subheadings for a precise and interesting approach. This unique PPT slide is useful for studying business and marketing related topics, approaching the correct conclusions and keeping a track on business growth. Make an outstanding presentation for your viewers with this unique PPT slide and deliver your message in an effective manner using Big data analytics Powerpoint Presentation slide and make your pathways more defining. Most of the elements of the slide are highly customizable. The text boxes help you in adding more information about the point mentioned and its associated icon. Every detail in our Big Data Analytics Powerpoint Presentation Slide is doubly cross checked. You can be certain of it's authenticity. https://bit.ly/3fvnRVK
This document discusses various applications of big data across different domains. It begins by defining big data and its key characteristics of volume, variety and velocity. It then discusses how big data is being used in social media for recommendation systems, marketing, electioneering and influence analysis. Applications in healthcare discussed include personalized medicine, clinical trials, electronic health records, and genomics. Uses of big data in smart cities are also summarized, such as for smart transport, traffic management, smart energy, and smart governance. Specific examples and case studies are provided to illustrate the benefits and savings achieved from leveraging big data across these various sectors.
This document discusses big data, including its definition as large volumes of structured and unstructured data from various sources that represents an ongoing source for discovery and analysis. It describes the 3 V's of big data - volume, velocity and variety. Volume refers to the large amount of data stored, velocity is the speed at which the data is generated and processed, and variety means the different data formats. The document also outlines some advantages and disadvantages of big data, challenges in capturing, storing, sharing and analyzing large datasets, and examples of big data applications.
Content:
Introduction
What is Big Data?
Big Data facts
Three Characteristics of Big Data
Storing Big Data
THE STRUCTURE OF BIG DATA
WHY BIG DATA
HOW IS BIG DATA DIFFERENT?
BIG DATA SOURCES
BIG DATA ANALYTICS
TYPES OF TOOLS USED IN BIG-DATA
Application Of Big Data analytics
HOW BIG DATA IMPACTS ON IT
RISKS OF BIG DATA
BENEFITS OF BIG DATA
Future of big data
Big Data - The 5 Vs Everyone Must KnowBernard Marr
This slide deck, by Big Data guru Bernard Marr, outlines the 5 Vs of big data. It describes in simple language what big data is, in terms of Volume, Velocity, Variety, Veracity and Value.
Vikas Samant is a big data and data science engineer who works with Entrench Electronics and Pentaho. He provides an overview of big data, defining it as large volumes of structured, semi-structured, and unstructured data that businesses must process daily. He describes the key characteristics of big data using the 3Vs - volume, variety, and velocity, and sometimes a fourth V of veracity. The document then discusses data structures, data science, the data science process, and provides examples of big data use cases like optimizing funnel conversion, behavioral analytics, customer segmentation, and fraud detection. It concludes with an overview of big data technologies, vendors, what Hadoop is, and why Hadoop is widely adopted.
This document introduces big data concepts and Microsoft's solutions for big data. It defines big data as large, complex datasets that are difficult to process using traditional systems. It also describes the 3Vs of big data: volume, velocity, and variety. The document then outlines Microsoft's offerings for big data including HDInsight, .NET SDK for Hadoop, ODBC driver for Hive, and integrations with Excel, SharePoint, and SQL Server. It provides overviews of Hadoop, HDFS, MapReduce, and the Hadoop ecosystem.
This document defines big data and discusses techniques for integrating large and complex datasets. It describes big data as collections that are too large for traditional database tools to handle. It outlines the "3Vs" of big data: volume, velocity, and variety. It also discusses challenges like heterogeneous structures, dynamic and continuous changes to data sources. The document summarizes techniques for big data integration including schema mapping, record linkage, data fusion, MapReduce, and adaptive blocking that help address these challenges at scale.
The document discusses big data analytics. It begins by defining big data as large datasets that are difficult to capture, store, manage and analyze using traditional database management tools. It notes that big data is characterized by the three V's - volume, variety and velocity. The document then covers topics such as unstructured data, trends in data storage, and examples of big data in industries like digital marketing, finance and healthcare.
It is a brief overview of Big Data. It contains History, Applications and Characteristics on BIg Data.
It also includes some concepts on Hadoop.
It also gives the statistics of big data and impact of it all over the world.
The document provides an overview of key concepts in data science including data types, the data value chain, and big data. It defines data science as extracting insights from large, diverse datasets using tools like machine learning. The data value chain involves acquiring, processing, analyzing and using data. Big data is characterized by its volume, velocity and variety. Common techniques for big data analytics include data mining, machine learning and visualization.
Big Data: Its Characteristics And Architecture CapabilitiesAshraf Uddin
This document discusses big data, including its definition, characteristics, and architecture capabilities. It defines big data as large datasets that are challenging to store, search, share, visualize, and analyze due to their scale, diversity and complexity. The key characteristics of big data are described as volume, velocity and variety. The document then outlines the architecture capabilities needed for big data, including storage and management, database, processing, data integration and statistical analysis capabilities. Hadoop and MapReduce are presented as core technologies for storage, processing and analyzing large datasets in parallel across clusters of computers.
A Seminar Presentation on Big Data for Students.
Big data refers to a process that is used when traditional data mining and handling techniques cannot uncover the insights and meaning of the underlying data. Data that is unstructured or time sensitive or simply very large cannot be processed by relational database engines. This type of data requires a different processing approach called big data, which uses massive parallelism on readily-available hardware.
This document provides an overview of big data, including its definition, characteristics, sources, tools, applications, risks and benefits. It defines big data as large volumes of diverse data that can be analyzed to reveal patterns and trends. The three key characteristics are volume, velocity and variety. Examples of big data sources include social media, sensors and user data. Tools used for big data include Hadoop, MongoDB and analytics programs. Big data has many applications and benefits but also risks regarding privacy and regulation. The future of big data is strong with the market expected to grow significantly in coming years.
This document contains information about a group project on big data. It lists the group members and their student IDs. It then provides a table of contents and summaries various topics related to big data, including what big data is, data sources, characteristics of big data like volume, variety and velocity, storing and processing big data using Hadoop, where big data is used, risks and benefits of big data, and the future of big data.
This document provides an overview of big data and Hadoop. It defines big data as large volumes of diverse data that cannot be processed by traditional systems. Key characteristics are volume, velocity, variety, and veracity. Popular sources of big data include social media, emails, videos, and sensor data. Hadoop is presented as an open-source framework for distributed storage and processing of large datasets across clusters of computers. It uses HDFS for storage and MapReduce as a programming model. Major tech companies like Google, Facebook, and Amazon are discussed as big players in big data.
The document discusses big data, providing definitions and facts about the volume of data being created. It describes the characteristics of big data using the 5 V's model (volume, velocity, variety, veracity, value). Different types of data are mentioned, from unstructured to structured. Hadoop is introduced as an open source software framework for distributed processing and analyzing large datasets using MapReduce and HDFS. Hardware and software requirements for working with big data and Hadoop are listed.
Big data is large and complex data that cannot be processed by traditional data management tools. It is characterized by high volume, velocity, and variety. Big data comes from many sources and in many formats, including structured, unstructured, and semi-structured data. Storing and processing big data requires specialized systems like Hadoop and NoSQL databases. Big data analytics can provide benefits like improved business decisions and customer satisfaction when applied to areas such as healthcare, security, and manufacturing. However, big data also presents risks regarding privacy, costs, and being overwhelmed by the volume of data.
Big Data Analytics Powerpoint Presentation SlideSlideTeam
If it’s that time to make analysis for the predicament of the management system or simply to present deafening data in front of your qualified team then you have reached the right match. SlideTeam presents you classy and eternally approaching PowerPoint slides for big data analytics. Data analysis agendas and big data plans are shown through captivating icons and subheadings for a precise and interesting approach. This unique PPT slide is useful for studying business and marketing related topics, approaching the correct conclusions and keeping a track on business growth. Make an outstanding presentation for your viewers with this unique PPT slide and deliver your message in an effective manner using Big data analytics Powerpoint Presentation slide and make your pathways more defining. Most of the elements of the slide are highly customizable. The text boxes help you in adding more information about the point mentioned and its associated icon. Every detail in our Big Data Analytics Powerpoint Presentation Slide is doubly cross checked. You can be certain of it's authenticity. https://bit.ly/3fvnRVK
This document discusses various applications of big data across different domains. It begins by defining big data and its key characteristics of volume, variety and velocity. It then discusses how big data is being used in social media for recommendation systems, marketing, electioneering and influence analysis. Applications in healthcare discussed include personalized medicine, clinical trials, electronic health records, and genomics. Uses of big data in smart cities are also summarized, such as for smart transport, traffic management, smart energy, and smart governance. Specific examples and case studies are provided to illustrate the benefits and savings achieved from leveraging big data across these various sectors.
This document discusses big data, including its definition as large volumes of structured and unstructured data from various sources that represents an ongoing source for discovery and analysis. It describes the 3 V's of big data - volume, velocity and variety. Volume refers to the large amount of data stored, velocity is the speed at which the data is generated and processed, and variety means the different data formats. The document also outlines some advantages and disadvantages of big data, challenges in capturing, storing, sharing and analyzing large datasets, and examples of big data applications.
Content:
Introduction
What is Big Data?
Big Data facts
Three Characteristics of Big Data
Storing Big Data
THE STRUCTURE OF BIG DATA
WHY BIG DATA
HOW IS BIG DATA DIFFERENT?
BIG DATA SOURCES
BIG DATA ANALYTICS
TYPES OF TOOLS USED IN BIG-DATA
Application Of Big Data analytics
HOW BIG DATA IMPACTS ON IT
RISKS OF BIG DATA
BENEFITS OF BIG DATA
Future of big data
Big Data - The 5 Vs Everyone Must KnowBernard Marr
This slide deck, by Big Data guru Bernard Marr, outlines the 5 Vs of big data. It describes in simple language what big data is, in terms of Volume, Velocity, Variety, Veracity and Value.
Vikas Samant is a big data and data science engineer who works with Entrench Electronics and Pentaho. He provides an overview of big data, defining it as large volumes of structured, semi-structured, and unstructured data that businesses must process daily. He describes the key characteristics of big data using the 3Vs - volume, variety, and velocity, and sometimes a fourth V of veracity. The document then discusses data structures, data science, the data science process, and provides examples of big data use cases like optimizing funnel conversion, behavioral analytics, customer segmentation, and fraud detection. It concludes with an overview of big data technologies, vendors, what Hadoop is, and why Hadoop is widely adopted.
This document introduces big data concepts and Microsoft's solutions for big data. It defines big data as large, complex datasets that are difficult to process using traditional systems. It also describes the 3Vs of big data: volume, velocity, and variety. The document then outlines Microsoft's offerings for big data including HDInsight, .NET SDK for Hadoop, ODBC driver for Hive, and integrations with Excel, SharePoint, and SQL Server. It provides overviews of Hadoop, HDFS, MapReduce, and the Hadoop ecosystem.
This document defines big data and discusses techniques for integrating large and complex datasets. It describes big data as collections that are too large for traditional database tools to handle. It outlines the "3Vs" of big data: volume, velocity, and variety. It also discusses challenges like heterogeneous structures, dynamic and continuous changes to data sources. The document summarizes techniques for big data integration including schema mapping, record linkage, data fusion, MapReduce, and adaptive blocking that help address these challenges at scale.
The document discusses big data analytics. It begins by defining big data as large datasets that are difficult to capture, store, manage and analyze using traditional database management tools. It notes that big data is characterized by the three V's - volume, variety and velocity. The document then covers topics such as unstructured data, trends in data storage, and examples of big data in industries like digital marketing, finance and healthcare.
It is a brief overview of Big Data. It contains History, Applications and Characteristics on BIg Data.
It also includes some concepts on Hadoop.
It also gives the statistics of big data and impact of it all over the world.
The document provides an overview of key concepts in data science including data types, the data value chain, and big data. It defines data science as extracting insights from large, diverse datasets using tools like machine learning. The data value chain involves acquiring, processing, analyzing and using data. Big data is characterized by its volume, velocity and variety. Common techniques for big data analytics include data mining, machine learning and visualization.
Big Data: Its Characteristics And Architecture CapabilitiesAshraf Uddin
This document discusses big data, including its definition, characteristics, and architecture capabilities. It defines big data as large datasets that are challenging to store, search, share, visualize, and analyze due to their scale, diversity and complexity. The key characteristics of big data are described as volume, velocity and variety. The document then outlines the architecture capabilities needed for big data, including storage and management, database, processing, data integration and statistical analysis capabilities. Hadoop and MapReduce are presented as core technologies for storage, processing and analyzing large datasets in parallel across clusters of computers.
Big data refers to the massive amounts of unstructured data that are growing exponentially. Hadoop is an open-source framework that allows processing and storing large data sets across clusters of commodity hardware. It provides reliability and scalability through its distributed file system HDFS and MapReduce programming model. The Hadoop ecosystem includes components like Hive, Pig, HBase, Flume, Oozie, and Mahout that provide SQL-like queries, data flows, NoSQL capabilities, data ingestion, workflows, and machine learning. Microsoft integrates Hadoop with its BI and analytics tools to enable insights from diverse data sources.
This document provides an introduction to a course on big data analytics. It discusses the characteristics of big data, including large scale, variety of data types and formats, and fast data generation speeds. It defines big data as data that requires new techniques to manage and analyze due to its scale, diversity and complexity. The document outlines some of the key challenges in handling big data and introduces Hadoop and MapReduce as technologies for managing large datasets in a scalable way. It provides an overview of what topics will be covered in the course, including programming models for Hadoop, analytics tools, and state-of-the-art research on big data technologies and optimizations.
Many believe Big Data is a brand new phenomenon. It isn't, it is part of an evolution that reaches far back history. Here are some of the key milestones in this development.
This document provides an overview of big data and how it can be used to forecast and predict outcomes. It discusses how large amounts of data are now being collected from various sources like the internet, sensors, and real-world transactions. This data is stored and processed using technologies like MapReduce, Hadoop, stream processing, and complex event processing to discover patterns, build models, and make predictions. Examples of current predictions include weather forecasts, traffic patterns, and targeted marketing recommendations. The document outlines challenges in big data like processing speed, security, and privacy, but argues that with the right techniques big data can help further human goals of understanding, explaining, and anticipating what will happen in the future.
The document describes a probabilistic relational model called Pro Bic for identifying overlapping biclusters in gene expression data. Pro Bic models the relationships between genes, conditions, and expression levels using a probabilistic graphical model. It uses an expectation-maximization algorithm to estimate model parameters and assign genes and conditions to biclusters in an unsupervised manner. The model can handle noise, missing values, and identify multiple overlapping biclusters of various shapes without prior knowledge of their number or structure.
The document discusses big data, including what it is, sources of big data like social media and stock exchange data, and the three Vs of big data - volume, velocity, and variety. It then discusses Hadoop, the open-source framework for distributed storage and processing of large datasets across clusters of computers. Key components of Hadoop include HDFS for distributed storage, MapReduce for distributed computation, and YARN which manages computing resources. The document also provides overviews of Pig and Jaql, programming languages used for analyzing data in Hadoop.
آموزش مقدماتی تنسورفلو
– مقایسه چارچوبهای تحلیل با رویکرد یادگیری ژرف
– مفاهیم گراف محاسباتی
– مقدمات آشنایی با TensorFlow
– مفاهیم اولیه TensorFlow همچون placeholder،variable،session و operation
– بیان و تحلیل یک مسئله ساده با TensorFlow
Apache Spark is an open source big data processing framework that is faster than Hadoop, easier to use, and supports more types of analytics. It provides high-level APIs, can run computations directly in memory for faster performance, and supports a variety of data processing workloads including SQL queries, streaming data, machine learning, and graph processing. Spark also has a large ecosystem of additional libraries and tools that expand its capabilities.
This document discusses open source tools for big data analytics. It introduces Hadoop, HDFS, MapReduce, HBase, and Hive as common tools for working with large and diverse datasets. It provides overviews of what each tool is used for, its architecture and components. Examples are given around processing log and word count data using these tools. The document also discusses using Pentaho Kettle for ETL and business intelligence projects with big data.
This document provides an overview of big data concepts including definitions of big data, characteristics of big data using the 5Vs model, common big data technologies like Hadoop and MapReduce, and use cases. It discusses how big data has evolved over time through increased data volumes and varieties. Key frameworks like HDFS and MapReduce that enable distributed storage and processing of large datasets are explained. Examples of big data applications in areas such as banking are also provided.
This document provides an introduction to big data analytics and data science, covering topics such as the growth of data, what big data is, the emergence of big data tools, traditional and new data management architectures including data lakes, and big data analytics. It also discusses roles in data science including data scientists and data visualization.
Very basic Introduction to Big Data. Touches on what it is, characteristics, some examples of Big Data frameworks. Hadoop 2.0 example - Yarn, HDFS and Map-Reduce with Zookeeper.
Cheap data storage and high-performance analytics are going to change the face of retail sector. And big data is going to play pivotal role in this technological revolution. You can find other reports related to Big data at http://www.marketresearchreports.com/big-data
Test Life Cycle - Manual Testing Concept.guestf9bc
The document outlines the key steps in a software testing life cycle including test plan preparation, test case design, test execution and logging, defect tracking, and test reporting. It provides details on each step such as what a test plan and test case include, how defects are tracked and prioritized, and the roles and responsibilities of various testers.
The document highlights blog posts from seven IBM thinkers on their predictions for big data and analytics in 2015. The thinkers discuss utilizing big data to enhance customer service, embracing smart processes that ingest data, plugging into cognitive computing, focusing on big data practitioners, nurturing integration of talents and tools, and cultivating information professionals. The document encourages readers to follow the thinkers on Twitter and read their full blog posts linked at the end.
The document discusses big data and how it is generated from a variety of sources as more activities are digitally recorded. It describes big data using the four Vs - volume, velocity, variety and veracity. Volume refers to the vast amounts of data. Velocity refers to the speed at which data is generated and analyzed. Variety refers to the different data types that can now be analyzed. Veracity refers to the uncertainty of some data. Big data is leveraged through technologies like cloud computing and analyzed through techniques such as text analytics to provide value and insights. One example is how companies use big data to better understand customers and target them.
MBA-TU-Thailand:BigData for business startup.stelligence
This document provides an overview of big data presented by Santisook Limpeeticharoenchot. It begins with an introduction to big data, covering definitions, characteristics involving volume, velocity, variety and veracity. Examples of big data sources like machine data, sensor data, and internet of things data are described. The use of big data analytics in industries like manufacturing, healthcare, and transportation is discussed. Finally, the document touches on data visualization, different types of analytics, and how companies can use big data to better understand customers and optimize business processes.
Big data comes from a variety of sources such as sensors, social media, digital pictures, purchase transactions, and cell phone GPS signals. The volume of data created each day is vast, with over 2.5 quintillion bytes created in the last two years alone. Big data has four characteristics - volume, variety, velocity and value. It refers to both the large amount of data and the different types of structured and unstructured data. This data is generated and moves around at high speeds. While big data brings value, it can be difficult to analyze and extract useful insights from due to its scale and complexity. Technologies like Hadoop, HDFS, and MapReduce help process and analyze big data across large clusters of servers in a
Big data comes from a variety of sources such as sensors, social media, digital pictures, purchase transactions, and cell phone GPS signals. The volume of data created each day is vast, with 2.5 quintillion bytes created daily, 90% of which has been created in just the last two years. Big data is characterized by its volume, variety, velocity and value. It requires new tools like Hadoop and MapReduce to store and analyze data across distributed systems. When dealing with big data, once complex modeling can sometimes be replaced by simple counting techniques due to the large amount of data available. Companies are beginning to generate value from big data through new insights and business models.
The document discusses big data, its history, technologies, and uses. It begins with an introduction to big data and defines it using the 3Vs/4Vs model, describing the volume, velocity, variety and increasingly veracity of data. It then discusses big data technologies like Hadoop, databases, reporting, dashboards and real-time analytics. Examples are given of how big data is used, such as understanding customers, optimizing business processes, improving health outcomes, and improving security and law enforcement. Requirements for big data analytics are also mentioned, including data management, analytics applications, and business interpretation.
Big data refers to the massive amounts of data being generated from various sources that can be analyzed to reveal patterns and trends. It encompasses the volume, velocity, variety, and veracity of data. Examples include social media posts, photos, videos, sensor data from devices and machines. Big data is growing exponentially and being generated more quickly. While it provides opportunities to improve operations and decision making, it also poses challenges around privacy, security, and managing such large, complex datasets. Real-world examples demonstrate how companies are leveraging big data to boost sales, optimize processes, and enhance customer service.
Introduction to big data – convergences.saranya270513
Big data is high-volume, high-velocity, and high-variety data that is too large for traditional databases to handle. The volume of data is growing exponentially due to more data sources like social media, sensors, and customer transactions. Data now streams in continuously in real-time rather than in batches. Data also comes in more varieties of structured and unstructured formats. Companies use big data to gain deeper insights into customers and optimize business processes like supply chains through predictive analytics.
The document discusses big data, defining it as extremely large data sets that can be analyzed computationally to reveal patterns. It notes that advances in storage, processing power, and data availability have enabled the rise of big data. The key aspects of big data are described as the four V's: volume, velocity, variety, and veracity. Examples of how big data is used include optimizing business processes by analyzing social media, web search, and sensor data, and better understanding customers by combining traditional data sets with social media, browser, and sensor information to create predictive models.
This document discusses the future of big data and new approaches for processing large and complex datasets. It defines big data as collections of data that are too large for traditional database systems to handle due to volume, velocity and variety. The document outlines sources of big data like social media, mobile devices, and networked sensors. It also describes frameworks like Hadoop and NoSQL databases that can analyze petabytes of distributed data in parallel. The conclusions state that new big data systems will extend and possibly replace traditional databases as more data becomes available from various sources.
top 10 Digital transformation Technologies in 2022.docxAdvance Tech
It's no secret that the world is becoming more and more digitized every day. With technology advancing at breakneck speeds, it's hard to keep up with all the new changes and how they might impact our lives - both personally and professionally.
In this article, we'll take a look at 10 digital transformation technologies that are set to change the game in 2022 and beyond.
https://advancetech.info/digital-transformation-technologies/
The objective of this module is to provide an overview of the basic information on big data.
Upon completion of this module you will:
-Comprehend the emerging role of big data
-Understand the key terms regarding big and smart data
- Know how big data can be turned into smart data
- Be able to apply the key terms regarding big data
Duration of the module: approximately 1 – 2 hours
This document provides an overview of big data, including definitions of key terms like data, big data, and examples of big data. It describes why big data is important, how big data analytics works, and the benefits it provides. It outlines different types of big data like structured, unstructured, and semi-structured data. It also discusses characteristics of big data like volume, velocity, variety, and veracity. Additionally, it identifies primary sources of big data and examples of big data tools and software. Finally, it briefly discusses how big data and machine learning are related and how AI can be used to enhance big data analytics.
Notes from the Observation Deck // A Data Revolution gngeorge
Notes from the Observation Deck will provide you with an examined look at the interesting phenomena and trends taking place around us today. We present them to you with the hope of sparking broader conversations, debates and ideas. Please use this as a resource for knowledge, inspiration and enjoyment.
How Is Big Data Transforming Business, Healthcare, Marketing, and Technology.pdfDina G
Introduction: Why Big Data Matters Today
Let’s face it: we live in a world drowning in data. From the notifications on your phone to your smartwatch tracking your heartbeat, data is everywhere. But have you ever wondered what happens with all that information? It’s not just floating around in cyberspace—this is where Big Data comes in, transforming industries, businesses, and even our personal lives. So, buckle up, because we’re diving deep into how Big Data is revolutionizing everything from business to healthcare and marketing, and why it matters to you (yes, even if you're in middle school).
Big Data is more than just a tech buzzword—it’s an evolving trend shaping the future. It's like the secret sauce behind many of today’s coolest innovations, like personalized Netflix recommendations or faster medical diagnoses. In this blog, we’ll break down the major ways Big Data is transforming industries, give you real-world examples, and even crack a few jokes to keep things light. Ready? Let’s get started!
1. What is Big Data and Why Does it Matter?
Okay, first things first: what exactly is Big Data? The name itself might sound intimidating, like a giant digital monster looming over us, but it's not as scary as it seems. Big Data refers to large volumes of data—so large, in fact, that traditional databases can’t handle them. Think of Big Data as the digital equivalent of trying to pour an entire ocean into a bathtub. It’s a lot of information, and it’s coming in from multiple sources, like social media, sensors, online transactions, and even your GPS.
Now, why does this matter? Because data is valuable. Imagine a treasure chest, except instead of gold coins, it’s filled with data points that companies, governments, and researchers can use to make decisions. With Big Data, we can analyze patterns and trends to predict what might happen next. Ever wondered why YouTube always knows what video to recommend next? It’s because it’s using Big Data to analyze your past viewing habits, compare them with others, and deliver the content it thinks you’ll enjoy the most.
Why Should You Care About Big Data?
For businesses, Big Data is like having a crystal ball—except instead of magic, it’s science. It can help companies make smarter decisions, improve their customer service, and even launch new products based on consumer demand. On a personal level, Big Data is already affecting your life, whether you realize it or not. From the ads you see online to the traffic alerts on your GPS, there’s a good chance that Big Data is behind it.
But Big Data isn’t just about making our lives more convenient. It’s also about solving big problems. Scientists use Big Data to track climate change, doctors use it to predict outbreaks of diseases, and law enforcement uses it to detect criminal activity. In short, Big Data has the power to make the world a better, safer, and more efficient place.
A World of Possibilities
We’ve barely scratched the surface of what Big Data
This document provides a brief history of big data, from the earliest known uses of data storage thousands of years ago to modern applications of big data. It outlines key developments such as the creation of early data storage and analysis methods, the development of computerized data processing, and the growth of data collection and sharing through the internet and mobile technology. The document also discusses the increasing volume of data generated every day through online activities and defines some of the main challenges in working with big data today.
Big data refers to extremely large data sets that are too large to be processed using traditional data processing applications. It is characterized by high volume, variety, and velocity. Examples of big data sources include social media, jet engines, stock exchanges, and more. Big data can be structured, unstructured, or semi-structured. Key characteristics include volume, variety, velocity, and variability. Analyzing big data can provide benefits like improved customer service, better operational efficiency, and more informed decision making for organizations in various industries.
Big data is used by companies to better understand customer behavior by analyzing social media, web searches, and other online data. It also helps optimize business operations like retail stock levels and improves systems like traffic flows in cities. While big data has limitations in directly predicting the future, advances in machine learning are allowing organizations to derive more insights from big data to aid decision-making.
Index:
1) The Importance of Data
2) What is Big Data Concept
3) Big Data vs. Cloud Computing
4) The basic idea behind Big Data
5) Why do we use Big Data
6) Top 10 companies using Big Data
7) What kind of data is Big Data
8) Is Privacy a value
9) Future of Big Data by 2020
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- Links to various free online resource materials to provide a deeper dive into the QRG topic.
- Conclusion and a recommendation for at least two books available in the SJPL system on the QRG topic.
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Any questions or comments?
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100% human made.
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2. There are some things that are so
big that they have implications for
everyone, whether we want it or
not.
Big Data is one of those things,
and is completely transforming the
way we do business and is
impacting most other parts of our
lives.
3. The basic idea behind the phrase
'Big Data' is that everything we do
is increasingly leaving a digital
trace (or data), which we (and
others) can use and analyse.
Big Data therefore refers to our
ability to make use of the ever-
increasing volumes of data.
4. From the dawn of civilization until
2003, humankind generated five
exabytes of data. Now we produce
five exabytes every two days…and
the pace is accelerating.
Eric Schmidt,
Executive Chairman, Google
5. Activity Data
Simple activities like listening to music or
reading a book are now generating data.
Digital music players and eBooks collect data
on our activities. Your smart phone collects
data on how you use it and your web browser
collects information on what you are
searching for. Your credit card company
collects data on where you shop and your
shop collects data on what you buy. It is hard
to imagine any activity that does not
generate data.
6. Conversation Data
Our conversations are now digitally
recorded. It all started with emails but
nowadays most of our conversations
leave a digital trail. Just think of all the
conversations we have on social media
sites like Facebook or Twitter. Even many
of our phone conversations are now
digitally recorded.
7. Photo and Video Image
Data
Just think about all the pictures we take on
our smart phones or digital cameras. We
upload and share 100s of thousands of
them on social media sites every second.
The increasing amounts of CCTV cameras
take video images and we up-load
hundreds of hours of video images to
YouTube and other sites every minute .
8. Sensor Data
We are increasingly surrounded by sensors
that collect and share data. Take your smart
phone, it contains a global positioning
sensor to track exactly where you are every
second of the day, it includes an
accelometer to track the speed and
direction at which you are travelling. We
now have sensors in many devices and
products.
9. The Internet of Things
Data
We now have smart TVs that are able to collect
and process data, we have smart watches,
smart fridges, and smart alarms. The Internet
of Things, or Internet of Everything connects
these devices so that e.g. the traffic sensors on
the road send data to your alarm clock which
will wake you up earlier than planned because
the blocked road means you have to leave
earlier to make your 9am meeting…
.
10. With the datafication comes
big data, which is often
described using the four Vs:
• Volume
• Velocity
• Variety
• Veracity
11. Volume…
…refers to the vast amounts of data generated
every second. We are not talking Terabytes but
Zettabytes or Brontobytes. If we take all the
data generated in the world between the
beginning of time and 2000, the same amount
of data will soon be generated every minute.
New big data tools use distributed systems so
that we can store and analyse data across
databases that are dotted around anywhere in
the world.
12. Velocity…
…refers to the speed at which new data is
generated and the speed at which data moves
around. Just think of social media messages
going viral in seconds. Technology allows us
now to analyse the data while it is being
generated (sometimes referred to as in-
memory analytics), without ever putting it into
databases.
13. Variety…
…refers to the different types of data we can
now use. In the past we only focused on
structured data that neatly fitted into tables or
relational databases, such as financial data. In
fact, 80% of the world’s data is unstructured
(text, images, video, voice, etc.) With big data
technology we can now analyse and bring
together data of different types such as
messages, social media conversations, photos,
sensor data, video or voice recordings.
14. Veracity…
…refers to the messiness or trustworthiness of
the data. With many forms of big data quality
and accuracy are less controllable (just think of
Twitter posts with hash tags, abbreviations,
typos and colloquial speech as well as the
reliability and accuracy of content) but
technology now allows us to work with this
type of data.
15. Turning Big Data into Value:
The datafication of our world gives us
unprecedented amounts of data in
terms of Volume, Velocity, Variety and
Veracity. The latest technology such as
cloud computing and distributed
systems together with the latest
software and analysis approaches allow
us to leverage all types of data to gain
insights and add value.
16. The ‘Datafication’
of our World;
• Activities
• Conversations
• Words
• Voice
• Social Media
• Browser logs
• Photos
• Videos
• Sensors
• Etc.
Volume
Veracity
Variety
Velocity
Analysing
Big Data:
• Text
analytics
• Sentiment
analysis
• Face
recognition
• Voice
analytics
• Movement
analytics
• Etc.
Value
Turning Big Data into Value:
17. How is Big Data actually used? Example 1
Better understand and target customers:
To better understand and target customers,
companies expand their traditional data sets with
social media data, browser, text analytics or sensor
data to get a more complete picture of their
customers. The big objective, in many cases, is to
create predictive models. Using big data, Telecom
companies can now better predict customer churn;
retailers can predict what products will sell, and car
insurance companies understand how well their
customers actually drive.
18. How is Big Data actually used? Example 2
Understand and Optimize Business
Processes:
Big data is also increasingly used to optimize
business processes. Retailers are able to optimize
their stock based on predictive models generated
from social media data, web search trends and
weather forecasts. Another example is supply chain
or delivery route optimization using data from
geographic positioning and radio frequency
identification sensors.
19. How is Big Data actually used? Example 3
Improving Health:
The computing power of big data analytics enables
us to find new cures and better understand and
predict disease patterns. We can use all the data
from smart watches and wearable devices to better
understand links between lifestyles and diseases.
Big data analytics also allow us to monitor and
predict epidemics and disease outbreaks, simply by
listening to what people are saying, i.e. “Feeling
rubbish today - in bed with a cold” or searching
for on the Internet, i.e. “cures for flu”.
20. How is Big Data actually used? Example 4
Improving Security and Law Enforcement:
Security services use big data analytics to foil
terrorist plots and detect cyber attacks. Police
forces use big data tools to catch criminals and
even predict criminal activity and credit card
companies use big data analytics it to detect
fraudulent transactions.
21. How is Big Data actually used? Example 5
Improving Sports Performance:
Most elite sports have now embraced big data
analytics. Many use video analytics to track the
performance of every player in a football or
baseball game, sensor technology is built into
sports equipment such as basket balls or golf clubs,
and many elite sports teams track athletes outside
of the sporting environment – using smart
technology to track nutrition and sleep, as well as
social media conversations to monitor emotional
wellbeing.
22. How is Big Data actually used? Example 6
Improving and Optimizing Cities and
Countries:
Big data is used to improve many aspects of our cities
and countries. For example, it allows cities to optimize
traffic flows based on real time traffic information as
well as social media and weather data. A number of
cities are currently using big data analytics with the aim
of turning themselves into Smart Cities, where the
transport infrastructure and utility processes are all
joined up. Where a bus would wait for a delayed train
and where traffic signals predict traffic volumes and
operate to minimize jams.
23. But the applications of Big
Data are endless!
Currently we are only seeing the
beginnings of a transformation into a big
data economy.
Any business that doesn’t seriously
consider the implications of Big Data runs
the risk of being left behind.
.