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Data Science trainings

Order the best Data Science training courses online now. Data Science E-learning course online. Learn all about Data Science and start today. Want more information? Everything is explained under the products.

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Data Science 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
  • Data Science 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 Data Science?

Data Science is an interdisciplinary field that uses statistical and computational methods to extract insights and knowledge from data. It covers a range of techniques, including data mining, machine learning, statistical modeling and visualization, to help organizations make data-driven decisions. Data Science involves the collection, cleaning and preparation of large and complex data collections, followed by the application of statistical and computational methods to determine patterns and trends in the data.

Data Science emerged in the late 1990s and early 2000s when the amount of data generated began to increase exponentially. With the advent of big data, Data Science has become an increasingly important area as organizations try to make sense of the vast amounts of data now available to them. Data Science is used in a wide range of fields, including finance, healthcare, marketing and technology, and is increasingly being used to inform decision-making at all levels of an organization.

The main components of Data Science are data collection, data cleaning and preparation, statistical analysis and machine learning. Data collection involves gathering data from a variety of sources, including internal databases, external data sources and social media. Data cleaning and preparation involves ensuring that the data are accurate, complete, consistent, and in a format that can be used for analysis. Statistical analysis involves applying statistical methods to identify patterns and trends in the data, while machine learning uses algorithms and models to automatically extract insights from the data.

There are many tools and techniques used in Data Science, including programming languages such as Python and R, data visualization tools such as Tableau and D3.js, and machine learning libraries such as TensorFlow and scikit-learn. These tools and techniques are constantly evolving as new data sources and analysis methods emerge.

Data Science has become an increasingly important area as organizations look to leverage the vast amounts of data they now have at their disposal. It has the potential to change the way organizations operate by enabling them to make data-driven decisions based on a deep understanding of their customers, operations and markets. With the continued growth of Big Data, Data Science is likely to become even more important in the coming years.

Why Data Science?

Data science has become increasingly important in the modern world due to the abundance of data being generated every day. With the growth of the Internet and the proliferation of smart devices, we are generating more data than ever before, and this data can be used to derive valuable insights and make better decisions. Data science provides the tools and techniques needed to work with and extract useful information from these large and complex data sets.

As a result, data science has become critical in a wide range of fields, from business and finance to healthcare and science. By using data science, organizations can gain a competitive advantage and make better, more informed decisions that can lead to increased efficiency, profitability and success.

How does Data Science work?

Data Science is the process of using scientific and statistical methods, algorithms and systems to extract insights and knowledge from structured and unstructured data. The process begins by collecting data from various sources, such as customer transactions, social media platforms and machine-generated data, and storing it in a data warehouse. The data is then cleaned and transformed into a format that is easier to analyze.

Once transformed, the data is analyzed using various statistical and machine learning algorithms to uncover patterns, trends and relationships. This analysis is used to build models that can be used to make predictions or inform decision-making.

The models created can be used for a variety of applications, such as fraud detection, recommendation systems, risk assessment and more. In addition, data science can be used to identify new business opportunities and optimize business processes.

To work in data science, one must have a strong foundation in mathematics, statistics and computer science. Knowledge of programming languages, such as Python and R, is also essential. Other skills important for data scientists are data visualization, critical thinking and communication skills.

The field of data science is developing rapidly and new technologies and techniques are constantly being developed. Therefore, data scientists must stay abreast of the latest developments in the field to remain competitive and effective in their jobs.

10 Benefits of Data Science

  1. Better decision-making: Data Science provides companies with insights into their data that can help make better decisions.
  2. Better customer experience: With Data Science, companies can analyze customer behavior, preferences and feedback to improve their products and services.
  3. Increased efficiency: By automating manual processes, Data Science can help companies save time and resources.
  4. Better fraud detection: Data Science techniques can help companies identify fraudulent transactions and prevent losses.
  5. Better risk management: By analyzing data on past performance and market trends, companies can better manage risk and make more informed decisions.
  6. Improved personalization: With Data Science, companies can personalize their offerings for individual customers, improving the customer experience and driving sales.
  7. Better resource allocation: By analyzing resource utilization and performance data, companies can optimize their use of resources and improve efficiency.
  8. Improved marketing effectiveness: Data Science can help companies understand which marketing strategies work and optimize their marketing campaigns.
  9. Improved product development: By analyzing data on customer needs and preferences, companies can develop better products that are more likely to succeed in the marketplace.
  10. Increased competitiveness: By using Data Science to gain insights and make better decisions, companies can gain a competitive advantage in their marketplace.

Here's how Data Science can help your business

Data Science can help businesses in numerous ways, using advanced analytical tools and techniques to unlock insights and solve complex problems. Here are some ways Data Science can help businesses:

  • Better decision-making: With Data Science, companies can make better decisions based on thorough analysis of data. Data can be analyzed to identify patterns and trends and gain in-depth understanding of customers, market trends and industry trends.
  • Improved Customer Experience: Data Science can help companies personalize their offerings, create targeted marketing campaigns, and better understand their customers' needs and preferences. This can lead to a better customer experience and increased customer satisfaction and loyalty.
  • Increased efficiency: By using Data Science to automate processes and improve workflows, companies can increase efficiency, reduce costs and streamline operations.
  • Improved product development: Data Science can help companies identify areas for improvement in their products, and identify new product opportunities. This can lead to better product development and greater competitive advantage in the marketplace.
  • Risk mitigation: Data Science can be used to identify and mitigate risk in a wide range of areas, from fraud detection and credit risk analysis to supply chain management and predictive maintenance.
  • Better resource allocation: With Data Science, companies can make more informed resource allocation decisions by using data to identify the areas in which investments are most likely to yield results.
  • Competitive advantage: By using Data Science to gain insights that competitors do not have, companies can gain a significant competitive advantage in the marketplace.
  • Improved collaboration: Data Science can facilitate collaboration between teams by providing a common language and shared understanding of data.
  • Improved agility: With Data Science, companies can respond faster to changes in the marketplace by using data to anticipate trends and make proactive decisions.
  • Improved performance: By using Data Science to optimize processes and improve performance, companies can achieve better results and improve their bottom line.

Data Science training

Courses for Data Science are suitable for any IT professional, whether private or business. According to your already acquired training and knowledge, you choose which Data Science 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.

Data Science certifications

Data Science is a rapidly growing field that requires a variety of skills and knowledge. Certifications in Data Science can help individuals gain the skills necessary to succeed in this field and demonstrate their expertise to potential employers.

Data Science certifications cover a wide range of topics, including statistical analysis, machine learning, programming, data visualization and data management. These certifications can be obtained through a variety of sources, including universities, professional organizations and online learning platforms.

The benefits of obtaining a Data Science certificate include greater job opportunities, higher salaries and the ability to work on more complex and challenging projects. In addition, a Data Science certification can help people stand out from other candidates in a competitive job market.

Here are 10 popular Data Science certifications:

  • Certified Analytics Professional (CAP): CAP, offered by INFORMS, is a vendor-neutral certification that validates one's expertise in analytical concepts, tools and techniques.
  • Cloudera Certified Data Scientist: This Cloudera certification validates one's knowledge and expertise in data science and machine learning with Apache Hadoop.
  • Google Cloud Certified - Professional Data Engineer: This Google certification demonstrates one's ability to design, build and maintain data processing systems on the Google Cloud Platform.
  • Microsoft Certified: Azure Data Scientist Associate: This Azure certification validates one's knowledge and expertise in using Azure technologies to design and implement data science solutions.
  • Certified Data Scientist (CDS): Offered by the Data Science Council of America (DASCA), CDS is a globally recognized ICT certification that validates one's expertise in data science concepts, methodologies and tools.
  • IBM Data Science Professional Certificate: This IBM certification program, offered through Coursera, provides individuals with a comprehensive understanding of data science and its applications.
  • SAS Certified Data Scientist: This SAS certification validates an individual's knowledge and expertise in data science and machine learning using SAS software.
  • Amazon Web Services (AWS) Certified Machine Learning - Specialty: This AWS certification demonstrates one's ability to design, build and deploy machine learning models on the AWS cloud platform.
  • Data Science Council of America (DASCA) Senior Data Scientist (SDS): This ICT certification is designed for experienced data scientists and validates one's expertise in data science leadership, strategy and innovation.
  • DataCamp Data Scientist with Python: This IT certification program provides individuals with a comprehensive understanding of data science using the Python programming language.

Obtaining a Data Science certification can help individuals gain the skills and knowledge needed to succeed in this rapidly growing field. With a wide range of certifications available, individuals can choose the certification that best suits their needs and career goals.

Jobs and careers related Data Science certifications

Data Science is a growing field with a wide range of career opportunities. Professionals in this field work with large data sets and use statistical and operational methods to gain insights and make data-driven decisions. With the rise of Big Data, Machine Learning and Artificial Intelligence, the demand for skilled Data Scientists is only increasing. Here are some common jobs and career paths in Data Science:

  • Data Scientist: A Data Scientist is responsible for analyzing complex data and using statistical methods to create predictive models and drive business decisions.
  • Data Analyst: A Data Analyst works with large data sets to identify trends and patterns and create reports that can be used to inform business decisions.
  • Machine Learning Engineer: A Machine Learning Engineer builds and maintains systems that use algorithms to analyze data and make predictions.
  • Business Intelligence Analyst: A Business Intelligence Analyst uses data to help businesses make informed decisions about their operations, customers and markets.
  • Data Engineer: A Data Engineer designs and builds the systems used to collect, store and analyze large data sets.
  • Data Architect: A Data Architect is responsible for designing the overall structure of a company's data systems and ensuring that they are optimized for performance and scalability.
  • Statistician: A Statistician uses statistical methods to analyze data and create models that can be used to make predictions.
  • Database Administrator: A Database Administrator is responsible for managing and maintaining a company's databases, ensuring that they are secure and performing optimally.
  • Data Visualization Specialist: A Data Visualization Specialist is responsible for creating compelling visualizations that can help communicate complex data to stakeholders.
  • Predictive Analyst: A Predictive Analyst uses statistical methods to create models that can be used to predict future events and outcomes.

History of Data Science

Data science has its roots in statistics, computer science and data analysis. It originated in the 1960s when statisticians began applying computer algorithms to large data sets to extract insights and make predictions. In subsequent decades, the field of data science has undergone significant changes with the growth of computing power and the emergence of new data sources.

One of the most significant milestones in the development of data science was the advent of the Internet and the resulting explosion of digital data. As the amount of data increased exponentially, companies began to realize the potential of data analysis for business insights and decision-making. This led to the development of new data analysis techniques and tools, and the field of data science continued to evolve.

In the 2000s, the rise of big data and the need for data-driven decision making led to the development of new technologies, such as Hadoop and Spark, that can process and analyze massive data sets. At the same time, machine learning emerged as a way to automatically gain insights and make predictions from large data sets.

Today, data science is a rapidly growing field used in almost every industry. With the rise of artificial intelligence and the Internet of Things, the amount of data generated is only increasing, and the need for skilled data scientists is greater than ever. The field is constantly evolving, and new techniques and tools are being developed to meet the growing demand for data-driven insights and decision-making.

In general, the history of data science is characterized by constant evolution in response to changing technologies, data sources and business needs. As data continues to play an increasingly important role in modern society, it is likely that data science will continue to play a vital role in gaining insights and driving innovation.

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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