Explore >> Select a destination


You are here

josephm.dev
| | electric-sql.com
3.0 parsecs away

Travel
| | Local AI with Postgres, pgvector and llama2, running inside a Tauri app with realtime sync powered by ElectricSQL ?? This is the architecture of the future!
| | blog.val.town
2.4 parsecs away

Travel
| | How to build semantic search with embeddings for Val Town within Val Town itself
| | simonwillison.net
3.2 parsecs away

Travel
| | Embeddings are a really neat trick that often come wrapped in a pile of intimidating jargon. If you can make it through that jargon, they unlock powerful and exciting techniques ...
| | neuralnetworksanddeeplearning.com
16.4 parsecs away

Travel
| [AI summary] The text provides an in-depth explanation of the backpropagation algorithm in neural networks. It starts by discussing the concept of how small changes in weights propagate through the network to affect the final cost, leading to the derivation of the partial derivatives required for gradient descent. The explanation includes a heuristic argument based on tracking the perturbation of weights through the network, resulting in a chain of partial derivatives. The text also touches on the historical context of how backpropagation was discovered, emphasizing the process of simplifying complex proofs and the role of using weighted inputs (z-values) as intermediate variables to streamline the derivation. Finally, it concludes with a citation and licens...