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Clustta simplifies file management, collaboration and version control for creative workflows | Create, manage and publish 3D content at scale. Generate realistic synthetic datasets, train, test and deploy your visual AI agents as a service. |
Version Control, Collaboration, Backup/Recovery, Asset Management, Tracker/Kanban | AI-powered 3D content creation, visual data platform, 3D workflow management, digital asset management (DAM), 3D asset version control, collaborative reviews and approvals, scalable 3D production, AI-assisted 3D model generation, synthetic data generation, synthetic datasets for AI training, computer vision dataset creation, computer vision as a service, automatic data annotation, labeled 3D datasets, multi-modal data generation (RGB, depth, LiDAR, point clouds), privacy-safe AI data, EU AI Act–ready datasets, AI training data management, AI model validation datasets, AI simulation environments, digital twin creation, product configuration engine, real-time 3D configurators, CPQ-ready product configuration, interactive 3D product visualization, 3D product personalization, web-based 3D player, AR-ready 3D content, 3D streaming, GPU-powered cloud rendering, real-time rendering, batch rendering at scale, virtual photography, lifestyle image generation, exploded views, measurements and dimensions visualization, 360-degree product views, augmented reality visualization, smart product catalogs, AI-guided product discovery, guided selling experiences, immersive eCommerce experiences, visual commerce platform, headless API-first architecture, REST API integration, MLOps integration, CAD-to-3D pipeline support, Unreal Engine rendering backend, WebGL visualization, asset reuse and optimization, scalable artist network, content-as-a-service model, no platform license fees, enterprise-ready infrastructure, multi-industry support, gaming asset pipelines, architecture and real estate visualization, manufacturing visualization, aftermarket parts identification, spare parts matching via computer vision, quality assurance visualization, automated defect detection datasets, spatial AI enablement, visual intelligence platform |
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Git is a free and open source distributed version control system designed to handle everything from small to very large projects with speed and efficiency.

Mercurial is dedicated to speed and efficiency with a sane user interface. It is written in Python. Mercurial's implementation and data structures are designed to be fast. You can generate diffs between revisions, or jump back in time within seconds.

Subversion exists to be universally recognized and adopted as an open-source, centralized version control system characterized by its reliability as a safe haven for valuable data; the simplicity of its model and usage; and its ability to support the needs of a wide variety of users and projects, from individuals to large-scale enterprise operations.

Standup automatically processes data from your source control and project managment software to deliver daily engineering progress reports.

Keep your team up to date — without another meeting.

Build a custom machine learning model without expertise or large amount of data. Just go to nanonets, upload images, wait for few minutes and integrate nanonets API to your application.

Plastic SCM is a distributed version control designed for big projects. It excels on branching and merging, graphical user interfaces, and can also deal with large files and even file-locking (great for game devs). It includes "semantic" features like refactor detection to ease diffing complex refactors.

Pijul is a free and open source (AGPL 3) distributed version control system. Its distinctive feature is to be based on a sound theory of patches, which makes it easy to learn and use, and really distributed.

A daily email reminder requests a quick update from you and your team. You reply with a list of your accomplishments, todos and problems. The next day, get a digest email with what your team got accomplished.

It is the easiest way to deploy Machine Learning models. Start deploying Tensorflow, Scikit, Keras and spaCy straight from your notebook with just one extra line.