Exploring a Data Science Process \u2013 Real-World Examples

More from Alex Martin

  • Data Science In Automotive Sector \u2013 How Does It Impact the Industry?
    0 comments, 0 likes
  • Significant Machine Learning Stages in the Data Science Product Lifecycle
    1 comment, 0 likes
  • Understanding the Six Steps Of Data Science For Marketing
    0 comments, 0 likes

More in Politics

  • Norton antivirus account login
    31 comments, 143,912 views
  • Liquidity Locking Made Easy
    10 comments, 82,870 views
  • Ang jili178 login ay nagdudulot sa iyo ng mga laro ng slot at karanasan sa laro ng soccer
    2 comments, 46,399 views

Related Blogs

  • \u5e7e\u591a\u6b72\u53bb\u7b8d\u7259\u6700\u597d\uff1f
    0 comments, 0 likes
  • The Essential Guide to Choosing the Right CCTV Camera for Your Home Security
    0 comments, 0 likes
  • How to Stay Active at Work with a Compact Under Desk Treadmill
    0 comments, 0 likes

Archives

Social Share

Exploring a Data Science Process – Real-World Examples

Posted By Alex Martin     April 17, 2023    

Body

 


Data analysis becomes a critical component of current corporate operations. In the modern data-driven world, organizations acquire massive volumes of data from various sources, such as interactions with customers, sales transactions, networking sites, and so on. However, gathering data is merely the beginning of the data analysis procedure. Organizations must adhere to an established data science phase to extract important insights and drive relevant business decisions. You can find a detailed explanation of the data science process in an online data science course in Mumbai, covering industry-relevant training.


A data science process is a guide that explains the processes that must be taken to transform raw data into meaningful insights. Data collection, setup, analysis, model creation, and deployment are all part of the process. Understanding the data sciences life cycle is critical for good data analysis because it guarantees that all required processes are taken to obtain reliable and precise outcomes.


Each stage within the Data Science process is described briefly below:


  1. Data Collection: Data scientists find and collect appropriate information from multiple sources during this step. The data may be organized or unorganized, and pre-processing may be required to remove discrepancies and ensure accuracy.

  1. Data Preparation: After collecting the data, it must be cleaned, converted, and put away for analysis. Integration of information, data reduction, design of features, and data sampling are all part of this stage. 3. Data Analysis: Data scientists employ exploratory data evaluation, statistical analysis, and visualization approaches to find patterns and insights in the data at this stage.

  1. Model Development: Using machine learning methods, data scientists construct and train models based on the insights revealed in the previous stage. This stage entails selecting the best algorithm, fine-tuning its parameters, and assessing the model's performance.

  1. Deployment or Monitoring: After the model has been constructed and tested, it must be deployed in a production environment. This stage involves incorporating the model with the existing system.

Case Studies with Real-Life Data Science Process 

Case studies and real-world examples show how organizations have used the entire Data Science cycle to capture insights and achieve commercial success. 

  • Netflix

Netflix personalized recommendations for its consumers by utilizing the Data Science Career Cycle. By gathering data on their watching patterns and preferences, Netflix may employ machine learning systems to indicate material that users are likely to appreciate. As a result, user involvement and retention have grown.

  • Uber

Uber optimizes its pricing approach using the Data Science Career Cycle principles. Uber is able to alter its price in real-time to maximize income and rider happiness by gathering data on demand and availability, congestion, and other factors.

  • IBM

IBM uses the Data Science Process to enhance its interaction with consumer operations. IBM is able to find patterns and lessons that inform the creation of new goods and services by analyzing client data and feedback.


  • Walmart

Walmart optimizes its supply chain using the Data Science Career Cycle. Walmart has the capacity to optimize inventory management, eliminate waste, and enhance efficiency by analyzing data on revenue, stock, and logistics.

  • Airbnb

Airbnb improves its customer experience by utilizing the information available through the Data Science Career Cycle. Airbnb is able to personalize its search outcomes and recommendations by gathering data on user tastes, research behavior, and booking trends, resulting in enhanced satisfaction and loyalty.


These examples show ways the Data Science process can be used to gain helpful knowledge and drive company growth across an array of sectors and use cases. Organizations can obtain an edge over their competitors & stay ahead of them by using an organized strategy for data analysis. To become a data scientist, register for a comprehensive data science course in Pune, in accreditation with IBM. 

Comments

0 comments