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Big Data trainings

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Big Data Training

  • Training type: E-learning (online)
  • Language: English
  • Online access: 24/7, 365 days after activation
  • Interactive multimedia lessons with video, audio and subtitles
  • Videos of up to 3-10 minutes, watchable at your own pace
  • Practical exercises with real-time analysis of actions and results
  • Flexible management with progress reporting
  • View lessons by specific topic
  • Your answers are immediately evaluated
  • The software tells you exactly where your possible mistakes lie
  • Possibility to repeat an assignment (unlimited)
  • View solution videos
  • Big Data Certifications
  • Tips & Tricks
  • Exam Quiz
  • MeasureUp Exam Simulation (150+ questions)
  • LiveLabs (if available)
  • Award Winning E-learning
  • Full training for the official Exam
  • User-friendly environment
  • Includes Online Tutor (via email and chat)
  • Certificate of Participation included

What is Big Data?

Big data refers to extremely large and complex data sets that require specialized tools and techniques to process and analyze. This data can come from a variety of sources, including social media, sensors, mobile devices and more.

The term "big data" is used to describe data that is so large, fast and diverse that it cannot be processed and analyzed with traditional data processing technologies. This is where specialized tools and techniques such as Hadoop, Spark and NoSQL databases come in handy.

The goal of analyzing big data is to gain insights and make informed decisions based on the data. This can include identifying patterns and trends, detecting anomalies and predicting future behavior. Big data is used in a variety of industries, from healthcare and finance to marketing and retail.

To truly harness the power of big data, organizations must also have a strong data management strategy to ensure data accuracy and reliability. This includes proper data storage, security and privacy measures.

Why Big Data?

Big data is becoming increasingly important in today's data-driven world as it enables businesses and organizations to process and analyze large amounts of data in real time, leading to more informed decision-making, improved operational efficiency and better customer insights. With increasing amounts of data generated by the Internet, social media and other sources, the ability to manage and analyze that data has become a critical factor for companies to gain a competitive advantage.

Big data can help companies improve their marketing strategies by providing insights into customer behavior, preferences and trends, and identifying areas where the company can improve its products and services. It can also help companies optimize their supply chain by identifying inefficiencies and bottlenecks and help them make more accurate sales forecasts.

Beyond business applications, Big Data also has the potential to be used in areas such as health care, scientific research and public policy, where large amounts of data can be analyzed to identify patterns and trends that can help improve outcomes and make better-informed decisions. Consequently, Big Data is expected to continue to play an increasing role in a wide range of industries in the coming years.

How does Big Data work?

Big Data is the term used to describe large, complex data sets that are difficult to manage and process with traditional data processing tools. These data sets can come from a wide variety of sources, including social media platforms, financial transactions, website visits and even sensors in Internet of Things (IoT) devices.

Working with Big Data typically involves a number of steps, including data ingestion, storage, processing, analysis and visualization. Capture involves collecting data from various sources and preparing it for storage. Storage can be done in various ways, such as using distributed file systems like Hadoop or cloud storage services like Amazon S3.

Once the data is stored, it must be processed and analyzed. This is usually done with tools such as Hadoop, Spark or Apache Flink, which are designed to process large amounts of data. Data analysis can include tasks such as data mining, machine learning and natural language processing.

Finally, the insights gained from data analysis must be visualized in a way that makes them easy to understand and use. This can mean creating dashboards or reports that provide a visual representation of the data, or even building custom applications that provide real-time insights.

Working with Big Data can be complex and require specialized knowledge and tools. However, the insights gained from analyzing these large data sets can provide valuable insights that can guide business decisions and help organizations gain a competitive advantage.

10 Benefits of Big Data

  1. Better insights: Using Big Data, companies can gain better insights into their customers, competitors and the marketplace. This information can be used to create better products and services and make more informed business decisions.
  2. Improved efficiency: Big Data can help companies identify inefficiencies and bottlenecks in their operations, allowing them to streamline processes and improve productivity.
  3. Cost savings: By identifying areas of waste and inefficiency, companies can save money and reduce costs.
  4. Improved customer experience: Big data can be used to create a more personalized and engaging customer experience, leading to increased customer satisfaction and loyalty.
  5. Better risk management: By analyzing big data, companies can identify potential risks and take steps to mitigate them before they become big problems.
  6. Better marketing: Big Data can help companies build more effective marketing campaigns by identifying target audiences and tailoring messages to specific groups.
  7. Better forecasting: Big Data can help companies make more accurate predictions about future trends, allowing them to better plan and prepare.
  8. Improved decision-making: Big Data can provide companies with the information they need to make better decisions, based on real-time data and insights.
  9. Increased innovation: Big Data can provide companies with the insights they need to develop new products and services that meet the needs of their customers.
  10. Competitive advantage: By harnessing the power of Big Data, companies can gain a competitive advantage over their competitors by improving efficiency, reducing costs and providing a better customer experience.

Here's how Big Data can help your business

Big data can help companies in several ways. By analyzing large and complex data sets, companies can gain valuable insights into customer behavior, market trends and operational performance. This information can help companies make informed decisions and improve their products and services. With Big Data, companies can also optimize their supply chain management, reduce waste and improve operational efficiency.

In addition, Big Data can help companies improve their marketing efforts by identifying new target markets, improving customer engagement and creating more personalized marketing campaigns. Big Data can also be used to improve cybersecurity by identifying potential security risks and taking proactive measures to protect against them.

Big Data can help companies stay competitive in a rapidly changing market by enabling them to make data-driven decisions that lead to increased revenue and customer satisfaction.

5 reasons for businesses to use big data:

  • Better decision-making: Big Data provides companies with access to a wealth of information that can be analyzed to reveal valuable insights. This can lead to better decision-making based on data-driven insights rather than intuition or assumptions.
  • Increased efficiency: By analyzing data across business processes, organizations can identify inefficiencies and opportunities for improvement. This can lead to cost savings and increased productivity.
  • Improved customer experiences: Big data analytics can help companies understand customer behavior, preferences and needs. This can be used to develop more targeted marketing strategies, personalized customer experiences and more effective customer service.
  • Competitive advantage: Big Data can give companies a competitive advantage by allowing them to quickly adapt to changing market conditions and customer preferences. Companies that are able to use Big Data effectively can stay ahead of the competition and drive innovation.
  • New revenue streams: By analyzing data on customer behavior and preferences, companies can identify new revenue streams and product offerings. Big Data can help organizations identify untapped markets, opportunities for cross-selling and up-selling, and other ways to grow their business.

Big Data training

Courses for Big Data are suitable for any IT professional, whether private or business. According to your already acquired training and knowledge, you choose which Big Data training course you start with, or continue with. Do you need advice? Then we are at your service via phone, chat and email.

For each online training course purchased, you have 1 year of access. 24 hours a day, 7 days a week for up to 365 days. So you decide when and how long you learn for the training. Is the daytime not convenient? The evening and night are available to you. Even if you go on vacation for a few weeks, this is no problem and you simply pick it up again after your well-deserved vacation.

Big Data certifications

There are several Big Data certifications available from different organizations that can help people validate their expertise in various aspects of Big Data technologies, tools and techniques. Here are some of the most popular Big Data certifications:

  • Cloudera Certified Professional (CCP): The CCP certification program is designed to validate the skills of data professionals working with Cloudera's Hadoop-based platforms, such as Hadoop Developer, Hadoop Administrator and Data Engineer.
  • Hortonworks Data Platform (HDP) Certified Developer: The HDP certification program validates the expertise of developers working with Hortonworks Data Platform, an open-source distribution of Hadoop that provides an integrated platform for big data processing and analysis.
  • IBM Certified Data Engineer - Big Data: This IBM certification program validates the skills of data engineers who use IBM's BigInsights platform to build and manage big data solutions.
  • EMC Data Science Associate (EMCDSA): The EMCDSA certification program is designed to validate the skills of data professionals working with big data analytics and data science using EMC's tools and technologies.
  • Microsoft Certified Solutions Expert (MCSE): This Microsoft certification program is designed to validate the skills of IT professionals working with Microsoft's big data solutions, including Azure HDInsight and SQL Server.
  • SAS Certified Big Data Professional: This SAS certification program validates the skills of data professionals who use SAS tools and technologies to analyze and manage big data.
  • Hortonworks Data Platform Certified Administrator (HDPCA): The HDPCA certification validates an administrator's ability to install, configure and manage a Hortonworks Data Platform cluster. It covers topics such as cluster planning, installation and configuration, data management, monitoring and troubleshooting.
  • Microsoft Certified: Azure Data Engineer Associate: This Microsoft certification validates the skills and knowledge needed to design and implement the management, monitoring, security and privacy of data using Azure data services. It covers topics such as data ingestion, transformation, storage and processing.
  • Google Cloud Certified - Professional Data Engineer: This Google certification validates the skills and knowledge required to design, build, operationalize, secure and monitor data processing systems using Google Cloud technologies. It covers topics such as data processing, data storage, data analytics and machine learning.
  • Cloudera Certified Data Analyst (CCA Data Analyst): This Cloudera certification validates one's ability to work with big data using Cloudera's tools and technologies. It covers topics such as data ingestion, data transformation and data analysis.
  • MapR Certified Hadoop Developer: This ICT certification validates one's ability to develop, deploy and maintain MapR Hadoop clusters. It includes topics such as Hadoop architecture, MapR file system and MapReduce programming.
  • AWS Certified Big Data - Specialty: This AWS certification validates one's ability to design, implement and maintain big data solutions on the AWS platform. It covers topics such as data collection, storage, processing and analysis.
  • Oracle Certified Professional, Oracle Big Data 2020: This Oracle certification validates an individual's ability to implement and manage big data solutions using Oracle's tools and technologies. It includes topics such as big data fundamentals, Hadoop and NoSQL databases.

These ICT certifications typically require passing an exam or series of exams on various topics related to big data technologies, tools and techniques. The exam may consist of multiple-choice questions, performance-based tasks and other types of questions that test the candidate's knowledge and practical skills.

Earning a Big Data certificate can help individuals demonstrate their expertise in this field, improve their job prospects and increase their earning potential. It can also help organizations identify and hire qualified candidates who can help them build and manage effective Big Data solutions.

Jobs and careers related Big Data certifications

Big Data certifications can open up a wide range of jobs in the field of data analysis, as they demonstrate that a candidate is skilled in working with large and complex data sets. Some of the most common jobs requiring Big Data skills include:

  • Data Analyst: Responsible for collecting, processing and performing statistical analysis on data to identify trends and patterns, and then creating reports and visualizations to present the findings to stakeholders.
  • Big Data Engineer: Responsible for designing and implementing data infrastructure, including data storage, processing and integration solutions, to efficiently manage large data sets.
  • Data Scientist: Responsible for using statistical and machine learning algorithms to build predictive models and provide insights from data.
  • Data Architect: Responsible for designing and developing data architecture and ensuring the accuracy, completeness and consistency of data.
  • Business Intelligence Analyst: Responsible for analyzing and interpreting data to provide insights and recommendations for business decision-making.

Some of the industries that require Big Data skills include healthcare, finance, retail, manufacturing, technology and government.

History of Big Data

Big data refers to the vast amounts of structured and unstructured data that organizations collect and analyze to derive insights and make better decisions. The term "big data" has been in use since the early 2000s, but the history of big data goes back further than that.

In the early days of computing, data was relatively simple and small in volume. As computers became more powerful, the volume and complexity of data increased. In the 1990s, companies began using data warehousing to collect and store large amounts of data, but analyzing the data was still a challenge.

The rise of the Internet in the late 1990s and early 2000s brought a huge influx of data, including social media, mobile devices and e-commerce. The term "big data" was coined in the early 2000s to describe the explosion of data that became available.

Today, big data is an integral part of many businesses and industries, from healthcare and finance to retail and transportation. With the right tools and skills, organizations can use big data to gain insights and make informed decisions that can lead to better outcomes.

The history of big data continues to be written as new technologies and applications emerge. With the continued growth of data and the increasing importance of data-driven decision-making, big data is sure to play an even larger role in the future of business and society.

Why OEM Office Elearning Menu?

OEM Office Elearning Menu has years of experience in providing online courses and training. From Excel, Word and Outlook to high professional ICT training for Cisco, AWS, CompTIA and more. 

OEM is an official Microsoft Partner, CertiPort Partner and EC-Council Partner. With over 1000 courses from more than 200 brands, our offer is suitable for every PC user. Whether you are a first time PC user starting up Word for the first time, or an ICT professional wanting to know more about Data Security; OEM has the right course or training for you. Missing a training? Let us know and we will gladly look at the options together.

Each completed course provides you with an official certificate of participation. This is personal and specifically addressed to the student. Every Incompany training course automatically delivers a certificate of participation. For each E-learning course you need to have completed at least 70% of the practical assignments to receive a certificate of participation.

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