This is the Windows app named Flow Matching whose latest release can be downloaded as flow_matchingsourcecode.tar.gz. It can be run online in the free hosting provider OnWorks for workstations.
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ເຫຼົ້າແວງເປັນວິທີການແລ່ນຊອບແວ Windows ໃນ Linux, ແຕ່ບໍ່ມີ Windows ທີ່ຕ້ອງການ. ເຫຼົ້າແວງແມ່ນຊັ້ນຄວາມເຂົ້າກັນໄດ້ຂອງ Windows ແຫຼ່ງເປີດທີ່ສາມາດເອີ້ນໃຊ້ໂຄງການ Windows ໂດຍກົງໃນ desktop Linux ໃດກໍໄດ້. ໂດຍພື້ນຖານແລ້ວ, Wine ກໍາລັງພະຍາຍາມປະຕິບັດໃຫມ່ຢ່າງພຽງພໍຂອງ Windows ຕັ້ງແຕ່ເລີ່ມຕົ້ນເພື່ອໃຫ້ມັນສາມາດດໍາເນີນການຄໍາຮ້ອງສະຫມັກ Windows ທັງຫມົດໄດ້ໂດຍບໍ່ຕ້ອງໃຊ້ Windows.
ພາບຫນ້າຈໍ:
ການຈັບຄູ່ກະແສ
DESCRIPTION:
flow_matching is a PyTorch library implementing flow matching algorithms in both continuous and discrete settings, enabling generative modeling via matching vector fields rather than diffusion. The underlying idea is to parameterize a flow (a time-dependent vector field) that transports samples from a simple base distribution to a target distribution, and train via matching of flows without requiring score estimation or noisy corruption—this can lead to more efficient or stable generative training. The library supports both continuous-time flows (via differential equations) and discrete-time analogues, giving flexibility in design and tradeoffs. It provides examples across modalities (images, toy 2D distributions) to help users understand how to apply flow matching in practice. The codebase includes notebooks illustrating 2D flow matching, discrete flows, and Riemannian flow matching on curved manifolds (e.g. flat torus) for non-Euclidean support.
ຄຸນລັກສະນະ
- Continuous-time flow matching for generative modeling
- Discrete flow matching methods for alternate tradeoffs
- Support for Riemannian manifold flow matching (non-Euclidean geometries)
- Example notebooks illustrating 2D flows, discrete flows, and manifold flows
- PyTorch implementation with utilities and integration ready
- Setup scripts, environment specification, and easy installation via setup.py
ພາສາການຂຽນໂປຣແກຣມ
Python
ປະເພດ
This is an application that can also be fetched from https://sourceforge.net/projects/flow-matching.mirror/. It has been hosted in OnWorks in order to be run online in an easiest way from one of our free Operative Systems.