Graph Algorithms with Rust teaches you to model real datasets as graphs and run the classical algorithms — BFS, DFS, Dijkstra, PageRank, and Kosaraju strongly-connected components — in cache-friendly Rust. Across five modules you walk through the same problems data engineers actually solve: loading edge lists into a graph, finding the shortest walking route between Lisbon landmarks, ranking sports websites by PageRank, scoring UFC fighters by centrality, and detecting communities in a Twitter-style follower graph. You use both the textbook petgraph crate and the benchmarked aprender-graph crate, so you see two production-tested ways to model the same problem. Every algorithm comes with a runtime contract — provable assertions like “PageRank scores must sum to 1.0” — so the demos catch silent regressions, not just compile errors. The course closes with a working clap-based CLI tool that wires every algorithm together behind subcommands and emits machine-readable JSON, ready to ship as a single static binary. By the end you can pick the right algorithm for a real graph problem and ship it as a tested Rust binary.
Graph Algorithms with Rust
Ready to explore this tool?
Graph Algorithms with Rust teaches you to model real datasets as graphs and run the classical algorithms —…
USD 49.00
View Deal
