Ango Hub
Ango Hub serves as a comprehensive and quality-focused data annotation platform tailored for AI teams. Accessible both on-premise and via the cloud, it enables efficient and swift data annotation without sacrificing quality.
What sets Ango Hub apart is its unwavering commitment to high-quality annotations, showcasing features designed to enhance this aspect. These include a centralized labeling system, a real-time issue tracking interface, structured review workflows, and sample label libraries, alongside the ability to achieve consensus among up to 30 users on the same asset.
Additionally, Ango Hub's versatility is evident in its support for a wide range of data types, encompassing image, audio, text, and native PDF formats. With nearly twenty distinct labeling tools at your disposal, users can annotate data effectively. Notably, some tools—such as rotated bounding boxes, unlimited conditional questions, label relations, and table-based labels—are unique to Ango Hub, making it a valuable resource for tackling more complex labeling challenges. By integrating these innovative features, Ango Hub ensures that your data annotation process is as efficient and high-quality as possible.
Learn more
Pipedrive
Pipedrive is an advanced customer relationship management (CRM) and sales pipeline management tool aimed at assisting companies in monitoring and enhancing their sales workflows. It features automation capabilities, AI-driven sales analytics, and up-to-the-minute reporting to enable businesses to finalize deals more quickly and efficiently. Additionally, with its adaptable workflows, compatibility with numerous applications, and user-friendly design, Pipedrive empowers sales teams of various scales to handle leads, streamline repetitive activities, and assess performance for more informed, data-oriented decisions. This comprehensive platform not only simplifies the sales process but also enhances collaboration among team members, ensuring that everyone is aligned towards achieving common goals.
Learn more
Axolotl
Axolotl is a highly adaptable open-source platform designed to streamline the fine-tuning of various AI models, accommodating a wide range of configurations and architectures. This innovative tool enhances model training by offering support for multiple techniques, including full fine-tuning, LoRA, QLoRA, ReLoRA, and GPTQ. Users can easily customize their settings with simple YAML files or adjustments via the command-line interface, while also having the option to load datasets in numerous formats, whether they are custom-made or pre-tokenized. Axolotl integrates effortlessly with cutting-edge technologies like xFormers, Flash Attention, Liger kernel, RoPE scaling, and multipacking, and it supports both single and multi-GPU setups, utilizing Fully Sharded Data Parallel (FSDP) or DeepSpeed for optimal efficiency. It can function in local environments or cloud setups via Docker, with the added capability to log outcomes and checkpoints across various platforms. Crafted with the end user in mind, Axolotl aims to make the fine-tuning process for AI models not only accessible but also enjoyable and efficient, thereby ensuring that it upholds strong functionality and scalability. Moreover, its focus on user experience cultivates an inviting atmosphere for both developers and researchers, encouraging collaboration and innovation within the community.
Learn more
Tinker
Tinker is a groundbreaking training API designed specifically for researchers and developers, granting them extensive control over model fine-tuning while alleviating the intricacies associated with infrastructure management. It provides fundamental building blocks that enable users to construct custom training loops, implement various supervision methods, and develop reinforcement learning workflows. At present, Tinker supports LoRA fine-tuning on open-weight models from the LLama and Qwen families, catering to a spectrum of model sizes that range from compact versions to large mixture-of-experts setups. Users have the flexibility to craft Python scripts for data handling, loss function management, and algorithmic execution, while Tinker efficiently manages scheduling, resource allocation, distributed training, and failure recovery independently. The platform empowers users to download model weights at different checkpoints, freeing them from the responsibility of overseeing the computational environment. Offered as a managed service, Tinker runs training jobs on Thinking Machines’ proprietary GPU infrastructure, relieving users of the burdens associated with cluster orchestration and allowing them to concentrate on refining and enhancing their models. This harmonious combination of features positions Tinker as an indispensable resource for propelling advancements in machine learning research and development, ultimately fostering greater innovation within the field.
Learn more