Skip to content

issues Search Results · language:Dune language:Python language:JavaScript language:Java language:JavaScript language:Python

Filter by

54.7M results  (665 ms)

54.7M results

Start: 2026-06-07 00:34 BST (2026-06-06 23:34 UTC)\n\nLane: Lane 18 -- Toolchain and action-path cleanup.\n\nBounded objective: advance existing PR #17762 in place by making scripts/zigux/install_zig_urllib_resume_contract_build.zig ...

Parent Task Task 1 — Solution Architecture Agent Layer (#2) Description Build the agent that translates a SolutionArchitectureDecision (output of the Decision Engine) into human-readable and machine-parseable ...
feature

Goal: Show runtime tuning flags and JFR observability. Docs: Reference: Configuration Dataset: a GZIP-compressed variant (to exercise libdeflate) What Main does - Toggle libdeflate (-Dhardwood.uselibdeflate, ...
documentation
enhancement

Goal: A scripted walkthrough of the hardwood CLI over the taxi file. Docs: Reference: CLI Dataset: NYC Yellow Taxi 2026-01 What it does - Run hardwood info / schema / print / convert / footer / dive ...
documentation
enhancement

Goal: Show the drop-in org.apache.parquet.* compatibility layer (experimental) side-by-side with the native API. Docs: How-to: Read with the parquet-java API Dataset: NYC Yellow Taxi 2026-01 What Main ...
documentation
enhancement

Goal: Read GEOMETRY/GEOGRAPHY columns and push a bounding-box filter down to the row-group level. Docs: How-to: Read Geospatial Columns Dataset: a small GeoParquet file (e.g. Natural Earth / Overture ...
documentation
enhancement

Goal: Read Parquet from an in-memory ByteBuffer — the I already have the bytes path (HTTP body, blob store, byte[] in a service). Docs: InputFile abstraction (Reference: Configuration / Packages) Dataset: ...
documentation
enhancement
good first issue
help wanted

Parent Task Task 1 — Solution Architecture Agent Layer (#2) Description Implement the core decision engine that evaluates structured architecture requirements (output of the Parser Agent) and selects ...
feature

Goal: Read semi-structured, JSON-like VARIANT columns. Docs: How-to: Read Variant Columns Dataset: a file with a VARIANT column (Spark/Iceberg-written or generated) What Main does - getVariant(...) ...
documentation
enhancement
Issue origami icon

Learn how you can use GitHub Issues to plan and track your work.

Save views for sprints, backlogs, teams, or releases. Rank, sort, and filter issues to suit the occasion. The possibilities are endless.Learn more about GitHub Issues
ProTip! Restrict your search to the title by using the in:title qualifier.
Issue origami icon

Learn how you can use GitHub Issues to plan and track your work.

Save views for sprints, backlogs, teams, or releases. Rank, sort, and filter issues to suit the occasion. The possibilities are endless.Learn more about GitHub Issues
ProTip! Restrict your search to the title by using the in:title qualifier.