This is the Windows app named ELF (Extensive Lightweight Framework) whose latest release can be downloaded as ELFsourcecode.tar.gz. It can be run online in the free hosting provider OnWorks for workstations.
Download and run online this app named ELF (Extensive Lightweight Framework) with OnWorks for free.
Ikut arahan ini untuk menjalankan apl ini:
- 1. Memuat turun aplikasi ini dalam PC anda.
- 2. Masukkan dalam pengurus fail kami https://www.onworks.net/myfiles.php?username=XXXXX dengan nama pengguna yang anda mahukan.
- 3. Muat naik aplikasi ini dalam pengurus filem tersebut.
- 4. Mulakan mana-mana emulator dalam talian OS OnWorks daripada tapak web ini, tetapi emulator dalam talian Windows yang lebih baik.
- 5. Daripada OS Windows OnWorks yang baru anda mulakan, pergi ke pengurus fail kami https://www.onworks.net/myfiles.php?username=XXXX dengan nama pengguna yang anda mahukan.
- 6. Muat turun aplikasi dan pasangnya.
- 7. Muat turun Wine dari repositori perisian pengedaran Linux anda. Setelah dipasang, anda kemudian boleh mengklik dua kali aplikasi untuk menjalankannya dengan Wine. Anda juga boleh mencuba PlayOnLinux, antara muka mewah melalui Wine yang akan membantu anda memasang program dan permainan Windows yang popular.
Wain ialah cara untuk menjalankan perisian Windows pada Linux, tetapi tanpa Windows diperlukan. Wain ialah lapisan keserasian Windows sumber terbuka yang boleh menjalankan program Windows secara langsung pada mana-mana desktop Linux. Pada asasnya, Wine cuba untuk melaksanakan semula Windows yang mencukupi dari awal supaya ia boleh menjalankan semua aplikasi Windows tersebut tanpa memerlukan Windows.
SKRIN
Ad
ELF (Rangka Kerja Ringan Ekstensif)
DESCRIPTION
ELF (Extensive, Lightweight, and Flexible) is a high-performance platform for reinforcement learning research that unifies simulation, data collection, and distributed training. A C++ core provides fast environments and concurrent actors, while Python bindings expose simple APIs for agents, replay, and optimization loops. It supports both single-agent and multi-agent settings, with batched stepping and shared-memory queues that keep GPUs saturated during training. ELF introduced widely used reference systems, most notably ELF OpenGo, demonstrating at-scale self-play with strong analysis tooling and public checkpoints. Its design emphasizes reproducibility: deterministic seeds, logging, and evaluation harnesses make large-scale experiments trackable and comparable. Because the platform is modular—envs, samplers, learners, and collectors—researchers can drop in new environments or algorithms without re-architecting the pipeline.
Ciri-ciri
- C++ simulation core with Python bindings for fast RL loops
- Distributed actor–learner architecture with shared-memory queues
- Support for single- and multi-agent environments and batched stepping
- Reproducible training with logging, evaluation, and checkpointing
- Reference implementations including the ELF OpenGo self-play system
- Pluggable envs, replay buffers, and learners for rapid experimentation
Bahasa Pengaturcaraan
C + +
Kategori
This is an application that can also be fetched from https://sourceforge.net/projects/elf.mirror/. It has been hosted in OnWorks in order to be run online in an easiest way from one of our free Operative Systems.