Scikit-Learn and More for Synthetic Dataset Generation for Machine Learning - DZone AI
It is becoming increasingly clear that the big tech giants such as Google, Facebook, and Microsoft are extremely generous with their latest machine learning algorithms and packages (they give those away freely) because the entry barrier to the world of algorithms is pretty low right now. The open source community and tools (such as scikit-earn) have come a long way, and plenty of open source initiatives are propelling the vehicles of data science, digital analytics, and machine learning. Standing in 2019, we can safely say that algorithms, programming frameworks, and machine learning packages (or even tutorials and courses how to learn these techniques) are not the scarce resource but high-quality data is. This often becomes a thorny issue on the side of the practitioners in data science (DS) and machine learning (ML) when it comes to tweaking and fine-tuning those algorithms. It will also be wise to point out, at the very beginning, that the current article pertains to the scarcity of data for algorithmic investigation, pedagogical learning, and model prototyping.
Sep-11-2019, 23:04:09 GMT