Generate synthetic data to mimic real-world or targeted scenarios using predefined rules and constraints
Lorem ipsum dolor sit amet, consectetur adipiscing elit, sed do eiusmod tempor incididunt ut labore et dolore magna aliqua.
Generate Data fromscratch
In cases where data is either limited or where you do not have data at all, the need for representative data becomes crucial when developing new functionalities. Rule-based synthetic data enables the generation of data from scratch, providing essential test data for testers and developers.
Enrich data
Rule based synthetic data could enrich data by generating extended rows and/or columns. It can be used to produce extra rows to create larger datasets easy and efficiently. Additionally, Rule based synthetic data can be used to extend data and generate additional new columns potentially dependent on existing columns.
Flexibility and customization
The rule-based approach provides flexibility and customization to adapt to diverse data formats and structures, enabling the full tailoring of synthetic data according to specific needs. One can design rules to simulate various scenarios, making it a flexible method for generating data.
Explore the Syntho user documentation
Examples of synthetic data you can generate withCalculated Column functions:
Effortlessly clean and reformat data, such as trimming whitespace, changing text casing, or converting date formats.
Perform statistical calculations like averages, variances, or standard deviations to derive insights from numerical data sets.
Apply logical tests to data to create flags, indicators, or to filter and categorize data based on specific criteria.
Execute a variety of mathematical operations, enabling complex calculations like financial modeling or engineering calculations.
Extract or transform portions of text and date fields, which is particularly useful in data preparation for reporting or further analysis.
Generate data following a certain distribution, minimum, maximum, data format and many more.
Our platform supports for Rule Based Synthetic Data generation via our Calculated Column function. Calculated Column functions can be used to perform a wide range of operations on data and other columns, from simple arithmetic to complex logical and statistical computations.
Whether you are rounding numbers, extracting portions of dates, calculating averages, or transforming text, these functions provide the versatility to create exactly the data you need.
Users can generate tailored data by applying business logic using tools like mockers and calculated columns.
Users can maintain consistent mapped values across tables, ensuring that data relationships are preserved and reliable.
Users can expand datasets while maintaining statistical consistency, enhancing the value of data for testing and analytics purposes.
Mimic (sensitive) data with AI to generate synthetic data twins
Synthetic data for the National Statistical Office, Statistics Netherlands (CBS)
Empower CBS’s statistical excellence with secure synthetic data solutions and learn how they are shaping the future of statistical
Synthetic test and development data with a leading EMR and healthcare solutions
Case Study About the client The company specializes in developing and supporting a proprietary electronic medical record (EMR) software
Synthetic data for academic research at the Erasmus University
Revolutionize academic research at Erasmus University with synthetic data. Explore its power by reading our case study.
Synthetic data for the The Netherlands Chamber of Commerce (KVK)
Discover how synthetic data for a Dutch governmental organization enables fast, secure, and actionable initiatives.
Synthetic data for advanced analytics and testing with a leading international bank
Unlock the potential of synthetic data for AI/ML modeling, advanced analytics, and testing with a renowned International Dutch Bank.
Synthetic test and development data with a leading Dutch insurance company
Explore the innovative world of synthetic test and development data in collaboration with a prominent Dutch insurance company.
Synthetic data for software development and testing with a leading Dutch Bank
Check out how synthetic data for software development and testing can help solving privacy issues of a leading Dutch Bank.
Synthetic patient EHR data for advanced analytics with Erasmus MC
The company specializes in developing and supporting a proprietary electronic medical record (EMR) software application widely recognized
Synthetic data generation for data sharing with Lifelines
Are you curious how realistic are synthetic biobank data generation for data sharing? Learn more about it from our case study with a
Synthetic healthcare data for a leading US hospital
Are you curious how works synthetic healthcare data with a leading US hospital? Learn more about it from our case study
Rule-based generated synthetic data refers to the process of creating artificial or simulated synthetic data that follows predefined (business) rules and constraints. This approach involves defining specific guidelines, conditions, and relationships to generate synthetic data.
Unlock data access, accelerate development, and enhance data privacy.
Keep up to date with synthetic data news