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GitHub Repo https://github.com/ManishSahu53/Vector-Map-Generation-from-Aerial-Imagery-using-Deep-Learning-GeoSpatial-UNET

ManishSahu53/Vector-Map-Generation-from-Aerial-Imagery-using-Deep-Learning-GeoSpatial-UNET

We propose a simple yet efficient technique to leverage semantic segmentation model to extract and separate individual buildings in densely compacted areas using medium resolution satellite/UAV orthoimages. We adopted standard UNET architecture, additionally added batch normalization layer after every convolution, to label every pixel in the image.
GitHub Repo https://github.com/khive-ai/pydapter

khive-ai/pydapter

adapt data to and from every format
GitHub Repo https://github.com/IntroCSCI/VectorsEverywhere

IntroCSCI/VectorsEverywhere

No repository description available.
GitHub Repo https://github.com/lucasgelfond/search-whole-earth

lucasgelfond/search-whole-earth

A searchable (vector + FTS) index of every issue of the Whole Earth Catalog
GitHub Repo https://github.com/bhanusdet/CaseVector-AI-effortless-test-case-generation

bhanusdet/CaseVector-AI-effortless-test-case-generation

🤖 Intelligent AI-powered test case generator with continuous learning capabilities. Generates comprehensive manual test cases from user stories using advanced RAG and learns from every interaction to improve accuracy over time.
GitHub Repo https://github.com/minogin/vector

minogin/vector

2D-vector algebra. Vectors are immutable - every operation returns new instance.
GitHub Repo https://github.com/Netflix/vector

Netflix/vector

Vector is an on-host performance monitoring framework which exposes hand picked high resolution metrics to every engineer’s browser.
GitHub Repo https://github.com/TotalKrill/every_variant

TotalKrill/every_variant

Macro and trait to provide all variants in a vector for easy comprehensive unit testing
GitHub Repo https://github.com/ruvnet/FACT

ruvnet/FACT

FACT – Fast Augmented Context Tools: FACT is a lean retrieval pattern that skips vector search. We cache every static token inside Claude Sonnet‑4 and fetch live facts only through authenticated tools hosted on Arcade.dev. The result is deterministic answers, fresh data, and sub‑100 ms latency.
GitHub Repo https://github.com/Mdx2025/BrainX-The-First-Brain-for-OpenClaw

Mdx2025/BrainX-The-First-Brain-for-OpenClaw

🧠 The First Brain for OpenClaw — Persistent vector memory for AI agents. PostgreSQL + pgvector + OpenAI embeddings. One brain, every agent, shared intelligence.