macOS
brew install dvclocal Homebrew formula metadata
brew
dvc のインストール経路、実行ファイル、メタデータ、AI エージェント向けセキュリティノートを確認します。
インストール
brew install dvclocal Homebrew formula metadata
nix profile install nixpkgs#dvcnixpkgs package indexes · dvc · ソース: raw.githubusercontent.com
choco install dvcChocolatey community package catalog · dvc · ソース: community.chocolatey.org
scoop install main/dvcScoop official bucket manifest trees · bucket/dvc.json · ソース: api.github.com
winget install --id Iterative.DVC -eWindows Package Manager source index · Iterative.DVC · ソース: cdn.winget.microsoft.com
概要
Git for data science projects
履歴
DVC, Data Version Control, is a Git-adjacent command-line system for versioning datasets, models, pipelines, and machine-learning experiments. Its package history matters because it made the everyday Git workflow feel usable for large data artifacts that do not belong directly inside a Git repository.
The public GitHub repository was created in March 2017, and the oldest release metadata exposed by GitHub shows a beta release, 0.8.1, in May 2017. The project developed around the idea that code, data, model files, metrics, and pipeline stages should be reproducible from a repository without forcing large binary artifacts into Git itself.
DVC 2.0.0 was released on 2021-03-03, reflecting a period when the tool had broadened from data-file tracking into experiment and pipeline workflows. The 3.x release line was active through 2026, with release metadata showing frequent 3.x updates and a 3.67.1 release on 2026-03-31.
DVC became common in machine-learning engineering because it mapped data-science needs onto a familiar developer mental model: Git commits track code and lightweight metadata, while DVC remotes hold larger artifacts. Package-manager coverage across Homebrew, Chocolatey, Scoop, winget, Nix, and Python packaging reflects that it is used by both local workstation users and CI-oriented teams.
Its adoption also followed the rise of reproducible ML pipelines and experiment tracking. Instead of being only a storage helper, DVC became a CLI layer for project structure: `dvc init`, `dvc add`, `dvc push`, `dvc pull`, `dvc repro`, and experiment commands give data-science repos repeatable operational verbs.
Typical users initialize DVC inside an existing Git project, add datasets or model files to DVC tracking, configure a remote object store, and commit the generated metadata files to Git. Pipelines are then described so stages can be reproduced and cached, while results and metrics can be compared across experiments.
DVC is especially useful when teams need a Git-like review and checkout workflow for data without storing gigabytes in Git history. It is also used in CI to fetch exact data/model versions and run reproducible training or evaluation jobs.
DVC is package-nerd significant because it is one of the clearest examples of a developer-tool CLI crossing into data science without abandoning Unix and Git habits. It treats datasets as content-addressed artifacts, keeps metadata text-friendly, and lets package managers install the same `dvc` command across macOS, Linux, and Windows.
It also sits in a crowded but important lineage that includes Git LFS, lakeFS, MLflow, Pachyderm, and experiment trackers. DVC's distinction is that it keeps a repo-centered workflow rather than forcing every team into a hosted platform first.
セキュリティ状態
dvc に一致するローカルシークレット処理マニフェストは見つかりませんでした。将来の対応で安定したパッケージ URL を使えるよう、Nucleus パッケージメタデータはここに公開されています。
エージェントに無人実行させる前に、このツールが平文の認証情報を読むか、リモート状態を書き込むか、成果物を公開するか、プラグインを起動するかを確認してください。
local files
These source-backed paths show where this package keeps local settings or durable credentials. Automic Vault can use them as review targets for secret scanning, migration, and command approval.
Config paths the tool may read or write during local use.
~/.config/dvc/config/etc/xdg/dvc/config~/Library/Application Support/dvc/config/Library/Application Support/dvc/config.dvc/config.local.dvc/config.dvc\config.local.dvc\config%LocalAppData%\iterative\dvc\config%AllUsersProfile%\Application Data\iterative\dvc\configCredential-bearing paths to review before unattended agent runs.
.dvc/config.local実行可能ファイル
| コマンド | 種類 | 公開範囲 | メモ |
|---|---|---|---|
dvc | cli | グローバル実行可能ファイル |
鮮度
これらの信号は、ページ生成時期、パッケージマネージャの活動、上流リリース比較を分けて示します。バージョン遅れは、証拠 URL と比較可能なバージョンがある場合だけ警告されます。
インストールメタデータ
| パッケージキー | brew:dvc |
|---|---|
| バージョン | 3.67.1 |
| パッケージマネージャ | Homebrew |
| パッケージマネージャページ | https://formulae.brew.sh/formula/dvc |
| ホームページ | https://dvc.org |
| リポジトリ | https://github.com/treeverse/dvc |
| 上流ドキュメント | https://doc.dvc.org |
| ライセンス | Apache-2.0 |
| ソースアーカイブ | https://files.pythonhosted.org/packages/13/1e/957a50eab8af18a5837bf47f148b90dac36650150faca840d5c020272098/dvc-3.67.1.tar.gz |
| 最終更新 | 2026-06-29T11:57:26Z |
| Pulse | updated |
| 依存関係 | apache-arrow, certifi, cryptography, libyaml, numpy, pydantic, pygit2, python@3.14 |
| ビルド依存関係 | cmake, ninja, openjdk, pkgconf, rust |
| Bottle | 利用可能 (対象 arm64_linux, arm64_sequoia, arm64_sonoma, arm64_tahoe, sonoma, x86_64_linux) |
| Homebrew post-install | 未定義 |
| サービス | 宣言なし |
レジストリ情報
| Source Database | Homebrew formula API |
|---|---|
| Tap | homebrew/core |
| Full Name | dvc |
| Version Scheme | 0 |
| Revision | 8 |
| Bottle Stable Root URL | https://ghcr.io/v2/homebrew/core |
| Deprecated | no |
| Disabled | no |
| Keg Only | no |
| URL Keys |
|
ソースデータベース一致
一致は外部パッケージマネージャインデックスから取得され、ローカルの Automic Vault パッケージリンクとは分けて表示されます。
dvc
nix profile install nixpkgs#dvcdvc
choco install dvcmain/dvc
scoop install main/dvcIterative.DVC
winget install --id Iterative.DVC -eソース経路
このページは scripts/generate-pkg-sqlite.py が生成した非公開のパッケージ SQLite アーティファクトから av-web によって提供されます。
View the package source record on GitHub.