Last updated on Jul 13, 2024

Struggling to bridge the gap between machine learning and data engineers?

Powered by AI and the LinkedIn community

In the rapidly evolving field of machine learning (ML), the collaboration between ML professionals and data engineers is crucial. However, bridging the gap between these two disciplines can be challenging. Data engineers are tasked with designing, building, and maintaining the infrastructure that allows for data collection, storage, and retrieval. On the other hand, machine learning professionals develop algorithms that can learn from and make predictions on data. The disconnect often arises due to differences in focus and tools used by each group. Addressing this gap is essential for the seamless integration of ML models into production systems.

Rate this article

We created this article with the help of AI. What do you think of it?
Report this article

More relevant reading