Data naturally plays a crucial role for companies undergoing digitalization. However, while the demand for high-quality and large quantities of data increases, we often encounter challenges such as privacy restrictions and a lack of sufficient data for specialized tasks. This is where the concept of synthetic data emerges as a groundbreaking solution.
Example: A synthetically generated room
While it offers many advantages, there are also challenges. Ensuring the quality and accuracy of this data is crucial. Inaccurate synthetic datasets can lead to misleading results and decisions. Additionally, it is important to find a balance between using synthetic data and real data to get a complete and accurate picture. Furthermore, additional data can be used to reduce imbalances (BIAS) in a dataset. Large language models use generated data because they have already read the internet and need more training data to improve.
Synthetic data is a promising development in the world of data analysis and machine learning. It offers a solution to privacy issues and improves data availability. They are also invaluable for training advanced algorithms. As we further develop and integrate this technology, it is essential to ensure the quality and integrity of the data so that we can harness the full potential of synthetic data.
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