Introduction to Data in Machine Learning Last Updated : 12 Apr, 2025 Comments Improve Suggest changes Like Article Like Report Data refers to the set of observations or measurements to train a machine learning models. The performance of such models is heavily influenced by both the quality and quantity of data available for training and testing. Machine learning algorithms cannot be trained without data. Cutting-edge development in Artificial Intelligence, automation, and data analysis is powered mostly by vast sets of data.Data in Machine LearningFor example, Facebook acquired WhatsApp for $19 billion primarily to access user data, which is critical for enhancing services.Properties of Data Volume: The scale of data generated every millisecond.Variety: Different data types like healthcare, images, videos, and audio.Velocity: The speed of data generation and streaming.Value: The meaningful insights data provides.Veracity: The accuracy and reliability of data.Viability: Data's adaptability for integration into systems.Security: Preventing tampering and unwanted access.Accessibility: Simple access for decision-making.Integrity: Accuracy and consistency throughout its lifecycle.Usability: Simplicity and interpretability for end-users.Types of Data in Machine Learning Types of Data in MLBased on Structure1. Structured Data: Tabular data, such as rows and columns, is used to organize and store structured data. Spreadsheets and databases frequently contain this type of data.Examples: Sales records, customer details, financial transactions.Usage: Useful in supervised learning tasks like regression and classification.2. Unstructured Data: Processing unstructured data is more challenging because it lacks a preset structure.Examples: Text files, pictures, videos, and audio files are a few examples.Usage: Found in speech-to-text systems, image recognition, and natural language processing (NLP) applications.3. Semi-Structured Data: This type of data falls somewhere between unstructured and structured data. It has organizational elements but does not fit nicely into a tabular format.Examples: JSON files, XML files, and NoSQL databases.Usage: Often used in web scraping, API responses, and social media analysisBased on RepresentationNumerical Data: Features measured in numbers (e.g., age, income).Categorical Data: Represents Categories or labels (e.g., gender, fruit type).Ordinal Data: Categorical data with an essential order (e.g., clothing sizes: Small, Medium, Large).Based on LabelingLabeled Data: Includes input variables and corresponding target outputs. Example: Features like "age" and "income" with a label like "loan approval status."Unlabeled Data: Contains only input variables without any target labels. Example: Images without annotations.From Data to KnowledgeData: Data is raw, unprocessed facts, values, text, sounds or images that have not been interpreted or analyzed. Without data, training models and driving modern research or automation would be impossible. Information: As data gets processed, interpreted and organized, it turn into information. It gives users meaningful insights which can be understood easily and utilized.Knowledge: Knowledge is the product of combining experience, learning, Information and insights. It allows individuals or businesses to construct awareness, create ideas and make well-informed decisions.Example:A store collects customer feedback (raw data). Analyzing this data for common themes (e.g., product quality, pricing) creates information. Applying these insights to improve product offerings results in knowledge.Real-World Examples of ML DataDomainData ExampleHealthcarePatient records, lab results, imagingFinanceTransaction logs, credit historyE-commerceUser reviews, purchase historyTransportationGPS data, traffic reportsSocial MediaText, images, user engagement metricsHow do we split data in Machine Learning?Effective ML model development involves splitting data into different sets:1. Training DataUsed to train the model.Model learns the patterns from this labeled data.2. Validation DataHelps fine-tune the model by evaluating it during training.Useful for hyperparameter tuning and early stopping.3. Testing DataUsed after training is complete.Evaluates how well the model generalizes to unseen dataIn machine learning, data is king. Algorithms and models may be the engines, but data is the fuel. A deep understanding of data—not just its structure, but also how to prepare and use it effectively—sets the foundation for building powerful, reliable, and ethical machine learning systems.Facts About the Growing World of DataThe value of data can be demonstrated with actual-world statistics:Massive Growth: From 2005 to 2020, data generation increased 300x to 40 zettabytes.Medical Boom: The medical sector generated 161 billion GB of data in 2011 alone.Social Media Surge: 200 million users send 400 million tweets every day.Streaming Era: More than 4 billion hours of video are viewed in a month.Content Flood: Users post approximately 30 billion items of content per month.Data Reliability Problems: Close to 27% of organizational data is not correct, creating distrust in decision-making.Advantages of Using Data in Machine LearningImproved accuracy: Machine learning algorithms can detect more intricate connections between inputs and outputs when given large amounts of data, which improves prediction and classification accuracy.Automation: Compared to humans, machine learning models can complete repetitive tasks more quickly and accurately while also automating decision-making processes.Personalization: By using data to tailor experiences for individual users, machine learning algorithms can increase user.Cost savings: Businesses can save costs using automation with machine learning by minimizing the effort required by humans and maximizing efficiency.Challenges in Using Data for Machine LearningData Quality: Incomplete, noisy, or irrelevant data can lead to poor model performance.Data Quantity: Insufficient data limits the model’s ability to generalize.Bias and Fairness: Datasets with bias can reinforce discrimination and unjust results.Overfitting: Model memorizes training data but does not perform on novel inputs.Underfitting: Model too simple and unable to identify patterns.Concerns Regarding Privacy: Sensitive information, when exploited, may result in violations of privacy and legal problems. Data in Machine Learning Comment More infoAdvertise with us Next Article Introduction to Machine Learning M mohit gupta_omg :) Follow Improve Article Tags : Machine Learning AI-ML-DS Practice Tags : Machine Learning Similar Reads Machine Learning Tutorial Machine learning is a branch of Artificial Intelligence that focuses on developing models and algorithms that let computers learn from data without being explicitly programmed for every task. In simple words, ML teaches the systems to think and understand like humans by learning from the data.Do you 5 min read Introduction to Machine LearningIntroduction to Machine LearningMachine learning (ML) allows computers to learn and make decisions without being explicitly programmed. It involves feeding data into algorithms to identify patterns and make predictions on new data. 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Machine Learning is one of the booming careers in the present-day scenario.If you are preparing for machine learning interview, this intervie 15+ min read 100+ Machine Learning Projects with Source Code [2025]This article provides over 100 Machine Learning projects and ideas to provide hands-on experience for both beginners and professionals. Whether you're a student enhancing your resume or a professional advancing your career these projects offer practical insights into the world of Machine Learning an 5 min read Like