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Rerun 0.22 is out! 🔎🟡🔜🔵 The release brings long-requested entity filtering for finding data faster in the Viewer, significantly simplified APIs for partial & columnar updates, and many other enhancements. At Rerun we’re building the multimodal data stack for physical AI. Our open-source visualization tools help you model and...

14,994 Aufrufe • vor 1 Jahr •via X (Twitter)

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Rerunvor 1 Jahr

Check out the release blog post

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Rerunvor 1 Jahr

We've made updating only the parts of your data that change much easier. With this release, partial updates of archetypes are now significantly simpler across Python, Rust, and C++.

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Rerunvor 1 Jahr

We're also giving you more fine-grained time control. You can now dynamically adjust the playback time, pause, and resume recordings via code. This means it is possible to synchronize the Viewer timeline with external tools. For now, this is for Web Viewer only (including Jupyter notebooks).

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Rerunvor 1 Jahr

We've introduced a new panel for notifications. Instead of only having a short time to read a notification before it disappears, they are now stored until you dismiss them, so important errors and warnings no longer get lost.

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Rerunvor 1 Jahr

The blueprint and stream panels support range selection using shift-click, which speeds up bulk operations like adding entities to views.

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Rerunvor 1 Jahr

Full release notes

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Matt Figdorevor 2 Jahren

This is the biggest productivity cheat code right now. Kiss reading documents goodbye. You can get an instant summary of any document with this tool.

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Most people think Rerun is a visualization tool. In reality, it's a database masquerading as a visualizer. I wanted to showcase this functionality by building a full data pipeline consisting of: ingestion → baseline method → eval → finetuning for SLAM on egocentric data. I'll eventually extend this to the rest of my ego/exo datasets, but I wanted to start with a smaller bunch of datasets first. Rerun allows you to expose your saved .rrd files to a catalog where you store datasets. You can query, filter, and join them like any database using DataFusion under the hood. These are the same .rrd files that are automatically generated whenever you visualize anything in Rerun and decide to save it to disk. I brought in 109 VSLAM-LAB sequences across 14 datasets into the Rerun catalog as an example. These include 7Scenes, Euroc, eth3d, and others. Now I can query them with segment_table, filter_segments, and filter_contents instead of parsing CSVs and YAML files. With a strong set of ground-truth datasets for SLAM, baseline additions become nearly automatic with agents like Opus/Codex. This unification of data and visualization is imo the largest missing part for Physical AI. Visualization becomes a natural byproduct of having your data properly structured and queryable. The catalog API is what makes it a database, not just a viewer. I initially focused on VSLAM-LAB data, but I'll migrate all the egoexo data to this format in the coming days to really show just how useful this is.

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