Demucs-hdemucs_mmi is a set of pretrained model weights for the Demucs music source separation framework. It allows developers and researchers to separate different sources from music tracks in the waveform domain. Below are 11 other ai apps with similar functionality to Demucs Hdemucs Mmi, matched by what each product actually does — not ranked or scored. Explore each to find the closest fit for your use case.
Demucs-mdx provides pretrained model weights for music source separation in the waveform domain. The resource consists of a collection of four models, with their outputs averaged as described in the mdx.yaml configuration. Each model's weights are stored in .safetensors files, which include the model class and initialization arguments in the metadata, and are accompanied by .json sidecar files containing the full training metadata. This set of weights is intended for use with the Demucs framework, as referenced in the documentation, and is suitable for tasks involving the separation of different sources within music audio. The files are distributed under the MIT license, allowing for open use and modification. Details on implementation and usage are available in the Demucs repository, as noted in the evidence. No additional information is provided about specific user roles, integration methods, or deployment platforms beyond the mention of Hugging Face as the hosting platform. Pricing is not specified, but the MIT license indicates that the models are available under open-source terms.
Demucs-repro_mdx_a provides pretrained weights for the repro_mdx_a model variant of Demucs, which is designed for music source separation in the waveform domain. The offering consists of a collection of four models, with their outputs averaged as described in the repro_mdx_a.yaml configuration. Each model's weights are distributed as .safetensors files, which include the model class and initialization arguments in their metadata, as well as associated training metadata provided in separate .json sidecar files. The resource is made available under the MIT license. Instructions for usage are referenced in the Demucs repository, indicating that these weights are intended for users who wish to perform music source separation tasks using the Demucs framework. No further details are provided about supported platforms, user interface, or specific integration requirements. Download metrics and deployment status with inference providers are not tracked or specified for this model. Demucs-repro_mdx_a is positioned as a tool for separating music sources directly from audio waveforms, and is distributed through the Hugging Face platform.
Demucs-mdx_extra provides pretrained model weights for the Demucs system, which is used for music source separation in the waveform domain. The model card indicates that this resource is a collection of four separate models, with their outputs averaged as described in the mdx_extra.yaml configuration. Each model's weights are stored in a .safetensors file, which includes metadata about the model class and initialization arguments in JSON format, and additional training metadata in an accompanying .json sidecar file. The tool is distributed under the MIT license, making it available for open source use. The evidence does not specify a particular target audience, but the context suggests it is intended for those working with music source separation, possibly including researchers and developers. Instructions for using these weights are referenced in the Demucs repository, though the evidence does not detail the usage process itself. Demucs-mdx_extra is hosted on Hugging Face, but there is no information about deployment via inference providers or tracked downloads. The evidence does not mention any pricing, so only the open source MIT license can be confirmed. No further details about integrations, supported platforms, or additional features are provided.
Demucs-mdx_q provides pretrained weights for the mdx_q model within the Demucs family, designed for music source separation in the waveform domain. The resource consists of a set of four models, with their outputs averaged as described in the mdx_q.yaml file. Each model's weights are distributed in .safetensors files, which include class and initialization arguments stored as JSON metadata, and are accompanied by a sidecar .json file containing full training metadata. The tool is made available under the MIT license. It is hosted on Hugging Face, and users are directed to consult the Demucs repository for instructions on how to utilize these weights. No information is provided regarding specific user roles, supported platforms, or additional features beyond the provision of model weights for music source separation tasks. There is no mention of pricing beyond the open MIT licensing, nor are download metrics or deployment details by inference providers included in the available information.
Demucs-repro_mdx_a_hybrid_only provides pretrained model weights for music source separation in the waveform domain. The resource is distributed as a collection of four models, with their outputs averaged for use, as specified in the repro_mdx_a_hybrid_only.yaml configuration. Each model's weights are stored in a .safetensors file, which includes the model's class and initialization arguments in the file's metadata, and the full training metadata is available in a corresponding .json sidecar file. This offering is intended for use with the Demucs framework, as referenced by the instructions to consult the Demucs repository for usage details. The tool is made available under the MIT license, indicating it is open source. There is no evidence in the provided material regarding specific user roles, pricing tiers, or deployment platforms beyond the distribution of model weights and metadata files. Demucs-repro_mdx_a_hybrid_only is positioned as a resource for music source separation tasks, but further details about its intended audience or integration specifics are not given.
Demucs-mdx_extra_q provides pretrained model weights for Demucs, a system designed for music source separation in the waveform domain. The resource consists of a collection of four models whose outputs are averaged, as described in the associated mdx_extra_q.yaml file. Each model is distributed as a .safetensors file, which includes the model's class and initialization arguments in its metadata. Additionally, full training metadata is provided in a corresponding .json sidecar file. The tool is available under the MIT license. Details on how to use these weights are referenced in the demucs repository, but no further usage instructions or platform requirements are specified in the provided evidence. The evidence does not specify the intended audience, supported platforms, or additional features beyond the structure and contents of the model files. Demucs-mdx_extra_q is positioned as a resource for music source separation models, but the evidence does not elaborate on specific use cases or user roles.
HTDemucs-ft provides pretrained weights for the htdemucs_ft model, which is designed for music source separation in the waveform domain. The resource is distributed as a collection of four separate models, with their outputs averaged to produce results. Each model's weights are stored in a .safetensors file, which includes the model's class and initialization arguments in its metadata. Additional training metadata is available in corresponding .json sidecar files. The files and their structure are intended for use with the Demucs framework, and further instructions for usage are referenced in the demucs repository, though not detailed here. The tool is classified under music source separation, specifically targeting audio and music tasks. It is released under the MIT license, allowing for broad use and modification. The evidence does not specify particular user roles or audiences, but the context suggests it is suitable for those working with music source separation models and requiring pretrained weights for such tasks. There is no mention of a graphical user interface, standalone application, or integration with specific platforms; the delivery consists of downloadable model files intended for use within compatible software environments. No information is provided about pricing beyond the open MIT license, and there are no details on deployment by inference providers or specific usage instructions beyond the reference to external documentation. The evidence does not mention any associated services, user support, or commercial offerings.
HTDemucs-6s is a set of pretrained model weights for the Demucs music source separation framework. It allows developers and researchers to separate different sources from music tracks in the waveform domain. The model is open source and intended for use in audio processing pipelines.
Demucs-repro_mdx_a_time_only is a set of pretrained model weights for the Demucs music source separation framework. It allows developers and researchers to separate different sources from music tracks in the waveform domain. The model is open source and intended for use in audio processing pipelines.
Demucs Music Source Separation allows users to upload music tracks and automatically split them into separate vocal and instrumental files. This tool is useful for musicians, DJs, and karaoke enthusiasts who need isolated audio components.
demucs-onnx is an open-source Python package that enables music source separation using ONNX and numpy, eliminating the need for PyTorch. It supports multiple Demucs models for extracting stems such as vocals, guitar, and piano, and provides both CLI and browser demo scaffolding. The tool is designed for audio developers seeking efficient, portable, and scriptable music separation workflows.