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ClearMeshVersion your terabytes like you version your code

Version control for AI datasets, ML models, and large files. Deduplicated storage, encryption, and mountable repos for seamless team collaboration.

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More About ClearMesh

ClearMesh

ClearMesh brings Git-style version control to datasets, model checkpoints, media assets, and CAD files that are too large for traditional Git. Technical teams can encrypt sensitive data, store it as Vault chunks, then clone or mount files on demand without bloating local storage.

Product Highlights

  • Git-like version control: Commit history and branching for binary-heavy files that break standard Git workflows
  • Client-side encryption: Sensitive repos keep keys, plaintext, and decrypted chunks local—never exposed to servers
  • Vault chunk storage: Files split into encrypted chunks with direct-to-storage transfers using short-lived URLs
  • Clone or mount flexibility: Full clone for local editing or read-only mount for instant access without full download
  • Secure browser preview: Inspect files in-browser with client-side decryption when repo keys are supplied

Use Cases

  • AI/ML datasets and checkpoints: Version training data, embeddings, and model weights without forcing binaries into Git LFS
  • VFX and media production: Track plates, renders, and texture caches with encrypted storage and reproducible asset history
  • CAD and engineering files: Manage binary project folders, assembly revisions, and simulation outputs with full audit trails
  • Private research data: Keep sensitive datasets auditable across collaborators while maintaining strict access controls
  • Game development assets: Move large art libraries and builds through a workflow that both artists and engineers can share

Target Audience

ClearMesh serves technical teams in AI/ML, media production, engineering, and research who need version control for files too large or sensitive for Git—data scientists, ML engineers, VFX artists, CAD designers, and research scientists managing collaborative datasets.