dbindel / sjtu-summer19
Public repository for "Numerical Methods for Data Science" (SJTU, May-June 2019)
☆18Updated 5 years ago
Related projects ⓘ
Alternatives and complementary repositories for sjtu-summer19
- Course material for "Numerical Methods for Data Science" (SJTU, summer 2018)☆40Updated 6 years ago
- Single file interpreter (or naive virtual machine) for my intermediate representation. SSA support has been added.☆14Updated 8 years ago
- An implementation of the Raft consensus protocol.☆14Updated 6 years ago
- Lecture notes of Probability Theory.☆48Updated 6 years ago
- ☆15Updated 5 years ago
- ☆23Updated 10 months ago
- My course project of compiler course.☆9Updated 6 years ago
- Fantasy Ptrace☆23Updated 6 years ago
- The offline version of acm-compiler-judge☆13Updated 5 years ago
- Official discussion site of compiler course☆7Updated 6 years ago
- Graphiler is a compiler stack built on top of DGL and TorchScript which compiles GNNs defined using user-defined functions (UDFs) into ef…☆60Updated 2 years ago
- A compiler for course Compiler 2019☆16Updated 4 years ago
- ☆44Updated last year
- Cavs: An Efficient Runtime System for Dynamic Neural Networks☆13Updated 4 years ago
- lecture notes of probability notes☆17Updated 4 years ago
- An Attention Superoptimizer☆20Updated 6 months ago
- ☆101Updated 4 years ago
- [NeurIPS 2022] "NSNet: A General Neural Probabilistic Framework for Satisfiability Problems"☆19Updated last year
- Machine Learning Course Materials, Tsinghua IIIS☆15Updated 6 years ago
- ☆140Updated last year
- A list of awesome neural symbolic papers.☆41Updated 2 years ago
- ☆14Updated 11 months ago
- RL-Scope: Cross-Stack Profiling for Deep Reinforcement Learning Workloads☆42Updated 3 years ago
- ☆90Updated 2 years ago
- Seminar on Selected Tools☆23Updated 6 years ago
- CS294-162; Machine Learning Systems Seminar☆31Updated last year
- Benchmark PyTorch Custom Operators☆13Updated last year
- Project resources for System(I) 2018 Fall☆6Updated 5 years ago
- Code for "Apparate: Rethinking Early Exits to Tame Latency-Throughput Tensions in ML Serving" [SOSP '24]☆16Updated last month