Synthetic Data Generator
AI-powered customer feedback so you can take action now
Native AI turns insight into impact
Introducing Native AI, the always-on market intelligence platform that helps you understand, innovate, and create ideal experiences for your customers.
A better way to find the answers you need
Create impact through measurable improvements to products, customer experience, and marketing.
Analyze millions of qualitative and quantitative data points
Automate product and keyword tracking across the web
- Converse with digital clones of your customers in real-time
Customize and export reports with full choice of visualizations. Set up alerts for specific products and keywords, and monitor trends over time in order to predict future consumer behaviors and identify white-space opportunities.
Bring Your Own Data
Upload your first party data in any structured or unstructured format. Our platform is compliant with international data processing regulations to eliminate unnecessary risk.
Converse with digital clones of your customers or your competitors' customers. Filter by demographic, purchase channel, behavior, and more. Create visualizations and export your results.
Expert White-Glove Service
Our platform is designed for you to be successful independently, but we're here to make sure you’re able to take full advantage of the value Native AI provides.
The Native AI Difference
We're not like other all-in-one insights platforms. Get a peek under the hood.
Data Safety & Privacy
Synthetic Output Controls
Synthetic Data Generator
Diving deep into the realm of artificial intelligence (AI) and machine learning (ML), one's certain to stumble upon the concept of a synthetic data generator. A synthetic data generator helps companies and data scientists amplify their existing data sets, thereby enhancing the effectiveness of their algorithms and robustness of customer understanding. It achieves this by matching attributes across multiple data sets, and using pattern recognition to fill in the gaps.
Significantly, the synthetic data generator has surged in popularity due to its potential in training machine learning algorithms and enhancing customer datasets. As a consequence of the increasing demands for privacy and anonymity, generating synthetic data for machine learning has provided an innovative workaround for data access issues. It's able to emulate real-world complexity in a data set, whilst ensuring individual privacy by creating entirely new, artificial entries.
Delving into some synthetic data examples, usage scenarios can span multiple domains. Entirely human-created, these data units are beneficial in healthcare where they can simulate patient data, in finance to forge imaginary yet statistically accurate transactions or in transportation to fabricate vehicle telemetry. Each instance demonstrates unique and specific data scenarios for ML models to learn and predict from, without the hindrance of data privacy issues.
Synthetic data generation tools make this entire process seamless and efficient. For instance, synthetic data generation tools in Python are widely sought due to the language's versatility and user-friendliness. Packages such as Faker or Mimesis offer a range of pre-set categories to choose from, regulating the creation of synthetic data as per users' necessity. It is the amalgamation of such tools with the overarching concept of synthetic data generation, that has empowered AI and ML processes to embark upon remarkable, exploratory ventures in the realm of predictive analytics.
Synthetic Data Generation Using Generative AI
Synthetic data generation using generative AI is an emerging field. By using artificial intelligence, it's now possible to create online data generators that can simulate a wide range of real-world scenarios. You might be wondering, what is synthetic data? It's a type of data that is generated artificially, rather than collected from real-world events. Although it's artificial, it mirrors real data in terms of essential characteristics.
Generative AI, which uses algorithms to generate new data based on existing datasets, plays a pivotal role in this process. But what is the role of data in generative AI? The answer lies in the way AI learns. Just like humans, AI learns from experience - in this case, data. The more data it has, the better it is at predicting and generating similar data. And that's where synthetic data comes into play. It helps streamline the learning process by multiplying the 'experiences' AI can learn from.
The application of this technology is particularly exciting in the field of Natural Language Processing (NLP). Synthetic data generation for NLP has the potential to supercharge advances in machine learning, making AI more sophisticated in understanding and replicating human language.
Python, known for its simplicity and robustness, is often the language of choice for implementing these tasks. Synthetic data generation using generative AI Python libraries and APIs, such as Faker and mimesis, makes the process easier and more efficient. These libraries come pre-equipped with functions to generate artificial data for a wide array of purposes.
Native AI harnesses the power of millions of consumer feedback touch points to enhance existing customer datasets. By creating more robust consumer profiles with the help of AI, market research firms and adtech/martech firms can achieve significantly better outcomes without risking personally identifiable information and consumer privacy.