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CLI
The CLI (data-designer) provides an interactive command-line interface for configuring models, providers, MCP providers, and tools, downloading managed persona datasets, discovering, installing, and uninstalling plugin packages from catalogs, and running dataset generation. It uses a layered architecture for setup workflows and delegates generation to the public DataDesigner API.
Source: packages/data-designer/src/data_designer/cli/
Overview
The CLI is built on Typer with lazy command loading to keep startup fast. Config management and plugin catalog commands follow a command → controller → service → repository layering pattern. Generation commands bypass this stack and use the public DataDesigner class directly.
Key Components
Entry Point
data-designer is registered as a console script pointing to data_designer.cli.main:main. On startup:
ensure_cli_default_model_settings()initializes default model/provider configsapp()launches the Typer application
Lazy Command Loading
create_lazy_typer_group and _LazyCommand stubs defer importing command modules until a command is actually invoked. This keeps data-designer --help fast — only the command names and descriptions are loaded eagerly; the full module (and its dependencies) loads on first use.
Layering Pattern (Setup Workflows)
Config management commands (models, providers, MCP providers, tools) follow a consistent four-layer pattern:
| Layer | Role | Example |
|---|---|---|
| Command | Thin Typer entry, wires DATA_DESIGNER_HOME |
models_command → ModelController(DATA_DESIGNER_HOME).run() |
| Controller | UX flow: menus, forms, success/error display | ModelController composes repos + services + ModelFormBuilder |
| Service | Domain rules: uniqueness, merge, delete-all | ModelService.add/update/delete over ModelRepository |
| Repository | File I/O for typed config registries | ModelRepository extends ConfigRepository[ModelConfigRegistry] |
Repositories: ModelRepository, ProviderRepository, MCPProviderRepository, and ToolRepository.
PersonaRepository provides read-only locale metadata for managed persona dataset downloads.
Services mirror the repository domains with business logic (validation, conflict resolution).
Plugin catalog commands use the same layering shape:
| Layer | Role | Example |
|---|---|---|
| Command | Thin Typer entry, wires DATA_DESIGNER_HOME and command options |
plugin subcommands (list, search, info, install, uninstall, installed, catalog) → PluginCatalogController(DATA_DESIGNER_HOME) |
| Controller | UX flow: catalog tables, package metadata, compatibility display, install/uninstall confirmations | PluginCatalogController composes catalog + install services |
| Service | Domain rules: package listing, compatibility checks, uv/pip install and uninstall commands, runtime entry-point checks | PluginCatalogService, PluginInstallService |
| Repository | File/cache I/O for catalog aliases and catalog documents | PluginCatalogRepository |
The built-in nvidia catalog points at https://nvidia-nemo.github.io/DataDesignerPlugins/catalog/plugins.json. NVIDIA-NeMo/DataDesignerPlugins defines the catalog format. Each catalog entry is an installable package with docs, install metadata, compatibility constraints, and one or more runtime plugins. Users install and uninstall packages, not individual runtime plugins. Commands that take a package name also accept the package alias from the data-designer-{alias} package-name pattern; for example, data-designer-calculator can be addressed as calculator. If a user passes a runtime plugin name where a package is required, the CLI reports the package that owns that runtime plugin.
Generation Commands
preview, create, and validate commands use GenerationController, which:
- Loads config via
load_config_builder - Calls
DataDesigner.preview(),DataDesigner.create(), orDataDesigner.validate()directly - Handles output display and error formatting
This keeps generation aligned with the public Python API — the CLI is a thin wrapper, not a separate code path.
UI Utilities
cli/ui.py— Rich console helpers for formatted outputcli/forms/— interactive form builders for config creation/editingcli/utils/config_loader.py— config file resolution and loadingsample_records_pager.py— paginated display of generated records
Data Flow
Config Management
User invokes command (e.g., `data-designer config models`)
→ Command function wires DATA_DESIGNER_HOME
→ Controller presents interactive menu
→ Service validates and applies changes
→ Repository reads/writes config files
Plugin Catalog Discovery
User invokes command (e.g., `data-designer plugin list`)
→ Command function wires DATA_DESIGNER_HOME and catalog options
→ PluginCatalogController resolves the catalog alias and chooses table or narrow-terminal layout
→ PluginCatalogService loads packages and filters out incompatible packages by default
→ PluginCatalogRepository reads local config and cached/remote catalog JSON
Plugin Install/Uninstall
User invokes command (e.g., `data-designer plugin install calculator`)
→ PluginCatalogController resolves the plugin package name or package alias
→ PluginCatalogService evaluates Python and Data Designer compatibility
→ PluginInstallService chooses uv or pip and builds the command.
In active uv projects it uses `uv add` so the package is recorded in
`pyproject.toml`; otherwise it installs into the current Python environment.
Data Designer itself is already installed, so its packages are not reinstalled
or replaced while installing plugin dependencies.
→ PluginInstallService verifies the package's runtime plugin entry points can load
User invokes command (e.g., `data-designer plugin uninstall calculator`)
→ PluginCatalogController resolves the plugin package name or package alias
→ PluginInstallService chooses uv or pip and builds the uninstall command.
Active uv projects remove the dependency from project metadata and uninstall
the package from the current environment.
→ PluginInstallService verifies the package's runtime plugin entry-point metadata is removed
Generation
User invokes command (e.g., `data-designer create config.yaml`)
→ GenerationController loads config
→ DataDesigner.create() runs the full pipeline
→ Results displayed via Rich console
Design Decisions
- Lazy command loading keeps
data-designer --helpresponsive: command modules (and their heavy dependencies, such as the engine and model stacks) load only when a command is invoked, not at process startup. - Controller/service/repo for setup workflows, direct API for generation — config and plugin catalog workflows benefit from the layered pattern (testable services, swappable repositories). Generation doesn't need this indirection; it delegates to the same
DataDesignerclass that Python users call directly. DATA_DESIGNER_HOMEcentralizes CLI-managed state (model configs, provider configs, MCP provider configs, tool configs, managed assets, plugin catalog aliases, and catalog caches) in a single directory, defaulting to~/.data-designer/.- Package-first plugin catalogs match how users install plugins: one package can provide one or more runtime plugins, but install and uninstall commands always target the package.
- Rich-based UI provides formatted tables, progress bars, and interactive prompts without requiring a web interface.
Cross-References
- System Architecture — where the CLI fits
- Agent Introspection — the
agentcommand group - Config Layer — config objects the CLI manages
- Models — model/provider configuration