Replies: 1 comment
-
From PR #328§2.4.4 Apache Sedona (p31–32)The section describes Sedona's layered architecture (Figure 2.4.4) with two user-facing APIs (SQL/DataFrame and SRDD) sitting above the Catalyst optimizer with Sedona's extensions registered. Add a note that Databricks Photon replaces the classic Spark execution engine with a C++ vectorized pipeline that bypasses §2.4.5 Databricks as a Sedona run-time (p33)The section describes four platform properties (cluster startup, autoscaling, separation of compute from storage, per-second billing) but does not mention Photon. Add a paragraph noting that Databricks clusters run the Photon engine by default, a proprietary C++ vectorized execution engine that replaces Spark's classic JVM-based execution for supported operations. Photon accelerates common SQL workloads but does not honour |
Beta Was this translation helpful? Give feedback.
Uh oh!
There was an error while loading. Please reload this page.
-
Purpose
Working notes for Chapter 2: Background of the master thesis
"Benchmarking Cloud-Native and Traditional Geospatial Technologies."
Sections covered
Key topics to document
How to use this thread
Post notes, draft paragraphs, open questions, and revision requests as comments.
Beta Was this translation helpful? Give feedback.
All reactions