Best Oxen.ai Alternatives in 2026
Find the top alternatives to Oxen.ai currently available. Compare ratings, reviews, pricing, and features of Oxen.ai alternatives in 2026. Slashdot lists the best Oxen.ai alternatives on the market that offer competing products that are similar to Oxen.ai. Sort through Oxen.ai alternatives below to make the best choice for your needs
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Vertex AI
Google
827 RatingsFully managed ML tools allow you to build, deploy and scale machine-learning (ML) models quickly, for any use case. Vertex AI Workbench is natively integrated with BigQuery Dataproc and Spark. You can use BigQuery to create and execute machine-learning models in BigQuery by using standard SQL queries and spreadsheets or you can export datasets directly from BigQuery into Vertex AI Workbench to run your models there. Vertex Data Labeling can be used to create highly accurate labels for data collection. Vertex AI Agent Builder empowers developers to design and deploy advanced generative AI applications for enterprise use. It supports both no-code and code-driven development, enabling users to create AI agents through natural language prompts or by integrating with frameworks like LangChain and LlamaIndex. -
2
Bakery
Bakery
FreeEasily tweak and profit from your AI models with just a single click. Designed for AI startups, machine learning engineers, and researchers, Bakery is an innovative platform that simplifies the process of fine-tuning and monetizing AI models. Users can either create new datasets or upload existing ones, modify model parameters, and share their models on a dedicated marketplace. The platform accommodates a broad range of model types and offers access to community-curated datasets to aid in project creation. Bakery’s fine-tuning process is optimized for efficiency, allowing users to construct, evaluate, and deploy models seamlessly. Additionally, the platform integrates with tools such as Hugging Face and supports decentralized storage options, promoting adaptability and growth for various AI initiatives. Bakery also fosters a collaborative environment where contributors can work together on AI models while keeping their model parameters and data confidential. This approach guarantees accurate attribution and equitable revenue sharing among all participants, enhancing the overall collaborative experience in AI development. The platform's user-friendly interface further ensures that even those new to AI can navigate the complexities of model fine-tuning and monetization with ease. -
3
FinetuneDB
FinetuneDB
Capture production data. Evaluate outputs together and fine-tune the performance of your LLM. A detailed log overview will help you understand what is happening in production. Work with domain experts, product managers and engineers to create reliable model outputs. Track AI metrics, such as speed, token usage, and quality scores. Copilot automates model evaluations and improvements for your use cases. Create, manage, or optimize prompts for precise and relevant interactions between AI models and users. Compare fine-tuned models and foundation models to improve prompt performance. Build a fine-tuning dataset with your team. Create custom fine-tuning data to optimize model performance. -
4
OpenPipe
OpenPipe
$1.20 per 1M tokensOpenPipe offers an efficient platform for developers to fine-tune their models. It allows you to keep your datasets, models, and evaluations organized in a single location. You can train new models effortlessly with just a click. The system automatically logs all LLM requests and responses for easy reference. You can create datasets from the data you've captured, and even train multiple base models using the same dataset simultaneously. Our managed endpoints are designed to handle millions of requests seamlessly. Additionally, you can write evaluations and compare the outputs of different models side by side for better insights. A few simple lines of code can get you started; just swap out your Python or Javascript OpenAI SDK with an OpenPipe API key. Enhance the searchability of your data by using custom tags. Notably, smaller specialized models are significantly cheaper to operate compared to large multipurpose LLMs. Transitioning from prompts to models can be achieved in minutes instead of weeks. Our fine-tuned Mistral and Llama 2 models routinely exceed the performance of GPT-4-1106-Turbo, while also being more cost-effective. With a commitment to open-source, we provide access to many of the base models we utilize. When you fine-tune Mistral and Llama 2, you maintain ownership of your weights and can download them whenever needed. Embrace the future of model training and deployment with OpenPipe's comprehensive tools and features. -
5
Amazon Nova Forge
Amazon
1 RatingAmazon Nova Forge gives enterprises unprecedented control to build highly specialized frontier models using Nova’s early checkpoints and curated training foundations. By blending proprietary data with Amazon’s trusted datasets, organizations can shape models with deep domain understanding and long-term adaptability. The platform covers every phase of development, enabling teams to start with continued pre-training, refine capabilities with supervised fine-tuning, and optimize performance with reinforcement learning in their own environments. Nova Forge also includes built-in responsible AI guardrails that help ensure safer deployments across industries like pharmaceuticals, finance, and manufacturing. Its seamless integration with SageMaker AI makes setup, training, and hosting effortless, even for companies managing large-scale model development. Customer testimonials highlight dramatic improvements in accuracy, latency, and workflow consolidation, often outperforming larger general-purpose models. With early access to new Nova architectures, teams can stay ahead of the frontier without maintaining expensive infrastructure. Nova Forge ultimately gives organizations a practical, fast, and scalable way to create powerful AI tailored to their unique needs. -
6
Deep Lake
activeloop
$995 per monthWhile generative AI is a relatively recent development, our efforts over the last five years have paved the way for this moment. Deep Lake merges the strengths of data lakes and vector databases to craft and enhance enterprise-level solutions powered by large language models, allowing for continual refinement. However, vector search alone does not address retrieval challenges; a serverless query system is necessary for handling multi-modal data that includes embeddings and metadata. You can perform filtering, searching, and much more from either the cloud or your local machine. This platform enables you to visualize and comprehend your data alongside its embeddings, while also allowing you to monitor and compare different versions over time to enhance both your dataset and model. Successful enterprises are not solely reliant on OpenAI APIs, as it is essential to fine-tune your large language models using your own data. Streamlining data efficiently from remote storage to GPUs during model training is crucial. Additionally, Deep Lake datasets can be visualized directly in your web browser or within a Jupyter Notebook interface. You can quickly access various versions of your data, create new datasets through on-the-fly queries, and seamlessly stream them into frameworks like PyTorch or TensorFlow, thus enriching your data processing capabilities. This ensures that users have the flexibility and tools needed to optimize their AI-driven projects effectively. -
7
prompteasy.ai
prompteasy.ai
FreeNow you have the opportunity to fine-tune GPT without any technical expertise required. By customizing AI models to suit your individual requirements, you can enhance their capabilities effortlessly. With Prompteasy.ai, fine-tuning AI models takes just seconds, streamlining the process of creating personalized AI solutions. The best part is that you don't need to possess any knowledge of AI fine-tuning; our sophisticated models handle everything for you. As we launch Prompteasy, we are excited to offer it completely free of charge initially, with plans to introduce pricing options later this year. Our mission is to democratize AI, making it intelligent and accessible to everyone. We firmly believe that the real potential of AI is unlocked through the way we train and manage foundational models, rather than merely utilizing them as they come. You can set aside the hassle of generating extensive datasets; simply upload your relevant materials and engage with our AI using natural language. We will take care of constructing the dataset needed for fine-tuning, allowing you to simply converse with the AI, download the tailored dataset, and enhance GPT at your convenience. This innovative approach empowers users to harness the full capabilities of AI like never before. -
8
Tune Studio
NimbleBox
$10/user/ month Tune Studio is a highly accessible and adaptable platform that facilitates the effortless fine-tuning of AI models. It enables users to modify pre-trained machine learning models to meet their individual requirements, all without the need for deep technical knowledge. Featuring a user-friendly design, Tune Studio makes it easy to upload datasets, adjust settings, and deploy refined models quickly and effectively. Regardless of whether your focus is on natural language processing, computer vision, or various other AI applications, Tune Studio provides powerful tools to enhance performance, shorten training durations, and speed up AI development. This makes it an excellent choice for both novices and experienced practitioners in the AI field, ensuring that everyone can harness the power of AI effectively. The platform's versatility positions it as a critical asset in the ever-evolving landscape of artificial intelligence. -
9
Axolotl
Axolotl
FreeAxolotl is an innovative open-source tool crafted to enhance the fine-tuning process of a variety of AI models, accommodating numerous configurations and architectures. This platform empowers users to train models using diverse methods such as full fine-tuning, LoRA, QLoRA, ReLoRA, and GPTQ. Additionally, users have the flexibility to customize their configurations through straightforward YAML files or by employing command-line interface overrides, while also being able to load datasets in various formats, whether custom or pre-tokenized. Axolotl seamlessly integrates with cutting-edge technologies, including xFormers, Flash Attention, Liger kernel, RoPE scaling, and multipacking, and it is capable of operating on single or multiple GPUs using Fully Sharded Data Parallel (FSDP) or DeepSpeed. Whether run locally or in the cloud via Docker, it offers robust support for logging results and saving checkpoints to multiple platforms, ensuring users can easily track their progress. Ultimately, Axolotl aims to make the fine-tuning of AI models not only efficient but also enjoyable, all while maintaining a high level of functionality and scalability. With its user-friendly design, it invites both novices and experienced practitioners to explore the depths of AI model training. -
10
SuperAnnotate
SuperAnnotate
1 RatingSuperAnnotate is the best platform to build high-quality training datasets for NLP and computer vision. We enable machine learning teams to create highly accurate datasets and successful pipelines of ML faster with advanced tooling, QA, ML, and automation features, data curation and robust SDK, offline accessibility, and integrated annotation services. We have created a unified annotation environment by bringing together professional annotators and our annotation tool. This allows us to provide integrated software and services that will lead to better quality data and more efficient data processing. -
11
Entry Point AI
Entry Point AI
$49 per monthEntry Point AI serves as a cutting-edge platform for optimizing both proprietary and open-source language models. It allows users to manage prompts, fine-tune models, and evaluate their performance all from a single interface. Once you hit the ceiling of what prompt engineering can achieve, transitioning to model fine-tuning becomes essential, and our platform simplifies this process. Rather than instructing a model on how to act, fine-tuning teaches it desired behaviors. This process works in tandem with prompt engineering and retrieval-augmented generation (RAG), enabling users to fully harness the capabilities of AI models. Through fine-tuning, you can enhance the quality of your prompts significantly. Consider it an advanced version of few-shot learning where key examples are integrated directly into the model. For more straightforward tasks, you have the option to train a lighter model that can match or exceed the performance of a more complex one, leading to reduced latency and cost. Additionally, you can configure your model to avoid certain responses for safety reasons, which helps safeguard your brand and ensures proper formatting. By incorporating examples into your dataset, you can also address edge cases and guide the behavior of the model, ensuring it meets your specific requirements effectively. This comprehensive approach ensures that you not only optimize performance but also maintain control over the model's responses. -
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Azure Open Datasets
Microsoft
Enhance the precision of your machine learning models by leveraging publicly accessible datasets. Streamline the process of data discovery and preparation with curated datasets that are not only readily available for machine learning applications but also easily integrable through Azure services. It is essential to consider real-world factors that could influence business performance. By integrating features from these curated datasets into your machine learning models, you can significantly boost the accuracy of your predictions while minimizing the time spent on data preparation. Collaborate and share datasets with an expanding network of data scientists and developers. Utilize Azure Open Datasets alongside Azure’s machine learning and data analytics solutions to generate insights at an unprecedented scale. Most Open Datasets come at no extra cost, allowing you to pay solely for the Azure services utilized, including virtual machine instances, storage, networking, and machine learning resources. This curated open data is designed for seamless access on Azure, empowering users to focus on innovation and analysis. In this way, organizations can unlock new opportunities and drive informed decision-making. -
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Metatext
Metatext
$35 per monthCreate, assess, implement, and enhance tailored natural language processing models with ease. Equip your team to streamline workflows without the need for an AI expert team or expensive infrastructure. Metatext makes it straightforward to develop personalized AI/NLP models, even if you lack knowledge in machine learning, data science, or MLOps. By following a few simple steps, you can automate intricate workflows and rely on a user-friendly interface and APIs to manage the complex tasks. Introduce AI into your team with an easy-to-navigate UI, incorporate your domain knowledge, and let our APIs take care of the demanding work. Your custom AI can be trained and deployed automatically, ensuring that you harness the full potential of advanced deep learning algorithms. Experiment with the capabilities using a dedicated Playground, and seamlessly integrate our APIs with your existing systems, including Google Spreadsheets and other applications. Choose the AI engine that aligns best with your specific needs, as each option provides a range of tools to help in creating datasets and refining models. You can upload text data in multiple formats and utilize our AI-supported data labeling tool to annotate labels effectively, enhancing the overall quality of your projects. Ultimately, this approach empowers teams to innovate rapidly while minimizing reliance on external expertise. -
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Airtrain
Airtrain
FreeExplore and analyze a wide array of both open-source and proprietary AI models simultaneously. Replace expensive APIs with affordable custom AI solutions tailored for your needs. Adapt foundational models using your private data to ensure they meet your specific requirements. Smaller fine-tuned models can rival the performance of GPT-4 while being up to 90% more cost-effective. With Airtrain’s LLM-assisted scoring system, model assessment becomes straightforward by utilizing your task descriptions. You can deploy your personalized models through the Airtrain API, whether in the cloud or within your own secure environment. Assess and contrast both open-source and proprietary models throughout your complete dataset, focusing on custom attributes. Airtrain’s advanced AI evaluators enable you to score models based on various metrics for a completely tailored evaluation process. Discover which model produces outputs that comply with the JSON schema needed for your agents and applications. Your dataset will be evaluated against models using independent metrics that include length, compression, and coverage, ensuring a comprehensive analysis of performance. This way, you can make informed decisions based on your unique needs and operational context. -
15
LLaMA-Factory
hoshi-hiyouga
FreeLLaMA-Factory is an innovative open-source platform aimed at simplifying and improving the fine-tuning process for more than 100 Large Language Models (LLMs) and Vision-Language Models (VLMs). It accommodates a variety of fine-tuning methods such as Low-Rank Adaptation (LoRA), Quantized LoRA (QLoRA), and Prefix-Tuning, empowering users to personalize models with ease. The platform has shown remarkable performance enhancements; for example, its LoRA tuning achieves training speeds that are up to 3.7 times faster along with superior Rouge scores in advertising text generation tasks when compared to conventional techniques. Built with flexibility in mind, LLaMA-Factory's architecture supports an extensive array of model types and configurations. Users can seamlessly integrate their datasets and make use of the platform’s tools for optimized fine-tuning outcomes. Comprehensive documentation and a variety of examples are available to guide users through the fine-tuning process with confidence. Additionally, this platform encourages collaboration and sharing of techniques among the community, fostering an environment of continuous improvement and innovation. -
16
Tinker
Thinking Machines Lab
Tinker is an innovative training API tailored for researchers and developers, providing comprehensive control over model fine-tuning while simplifying the complexities of infrastructure management. It offers essential primitives that empower users to create bespoke training loops, supervision techniques, and reinforcement learning workflows. Currently, it facilitates LoRA fine-tuning on open-weight models from both the LLama and Qwen families, accommodating a range of model sizes from smaller variants to extensive mixture-of-experts configurations. Users can write Python scripts to manage data, loss functions, and algorithmic processes, while Tinker autonomously takes care of scheduling, resource distribution, distributed training, and recovery from failures. The platform allows users to download model weights at various checkpoints without the burden of managing the computational environment. Delivered as a managed service, Tinker executes training jobs on Thinking Machines’ proprietary GPU infrastructure, alleviating users from the challenges of cluster orchestration and enabling them to focus on building and optimizing their models. This seamless integration of capabilities makes Tinker a vital tool for advancing machine learning research and development. -
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Simplismart
Simplismart
Enhance and launch AI models using Simplismart's ultra-fast inference engine. Seamlessly connect with major cloud platforms like AWS, Azure, GCP, and others for straightforward, scalable, and budget-friendly deployment options. Easily import open-source models from widely-used online repositories or utilize your personalized custom model. You can opt to utilize your own cloud resources or allow Simplismart to manage your model hosting. With Simplismart, you can go beyond just deploying AI models; you have the capability to train, deploy, and monitor any machine learning model, achieving improved inference speeds while minimizing costs. Import any dataset for quick fine-tuning of both open-source and custom models. Efficiently conduct multiple training experiments in parallel to enhance your workflow, and deploy any model on our endpoints or within your own VPC or on-premises to experience superior performance at reduced costs. The process of streamlined and user-friendly deployment is now achievable. You can also track GPU usage and monitor all your node clusters from a single dashboard, enabling you to identify any resource limitations or model inefficiencies promptly. This comprehensive approach to AI model management ensures that you can maximize your operational efficiency and effectiveness. -
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Riku
Riku
$29 per monthFine-tuning involves utilizing a dataset to develop a model compatible with AI applications. Achieving this can be challenging without programming skills, which is why we've integrated a straightforward solution into RIku that simplifies the entire process. By leveraging fine-tuning, you can tap into an enhanced level of AI capabilities, and we are thrilled to support you in this journey. Additionally, Public Share Links serve as unique landing pages that can be created for any prompts you design. These pages can be customized to reflect your brand identity, featuring your choice of colors, logo, and personalized welcome messages. You can share these links publicly, allowing others to access them and generate content if they possess the necessary password. This feature acts as a micro-scale, no-code writing assistant tailored for your audience! One notable challenge we've encountered in projects utilizing various large language models is the subtle variations in their output, which can sometimes lead to inconsistencies. By addressing these discrepancies, we aim to streamline the user experience and enhance the coherence of generated content. -
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DataChain
iterative.ai
FreeDataChain serves as a bridge between unstructured data found in cloud storage and AI models alongside APIs, facilitating immediate data insights by utilizing foundational models and API interactions to swiftly analyze unstructured files stored in various locations. Its Python-centric framework significantly enhances development speed, enabling a tenfold increase in productivity by eliminating SQL data silos and facilitating seamless data manipulation in Python. Furthermore, DataChain prioritizes dataset versioning, ensuring traceability and complete reproducibility for every dataset, which fosters effective collaboration among team members while maintaining data integrity. The platform empowers users to conduct analyses right where their data resides, keeping raw data intact in storage solutions like S3, GCP, Azure, or local environments, while metadata can be stored in less efficient data warehouses. DataChain provides versatile tools and integrations that are agnostic to cloud environments for both data storage and computation. Additionally, users can efficiently query their unstructured multi-modal data, implement smart AI filters to refine datasets for training, and capture snapshots of their unstructured data along with the code used for data selection and any associated metadata. This capability enhances user control over data management, making it an invaluable asset for data-intensive projects. -
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Maxim
Maxim
$29/seat/ month Maxim is a enterprise-grade stack that enables AI teams to build applications with speed, reliability, and quality. Bring the best practices from traditional software development to your non-deterministic AI work flows. Playground for your rapid engineering needs. Iterate quickly and systematically with your team. Organise and version prompts away from the codebase. Test, iterate and deploy prompts with no code changes. Connect to your data, RAG Pipelines, and prompt tools. Chain prompts, other components and workflows together to create and test workflows. Unified framework for machine- and human-evaluation. Quantify improvements and regressions to deploy with confidence. Visualize the evaluation of large test suites and multiple versions. Simplify and scale human assessment pipelines. Integrate seamlessly into your CI/CD workflows. Monitor AI system usage in real-time and optimize it with speed. -
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Cleanlab
Cleanlab
Cleanlab Studio offers a comprehensive solution for managing data quality and executing data-centric AI processes within a unified framework designed for both analytics and machine learning endeavors. Its automated pipeline simplifies the machine learning workflow by handling essential tasks such as data preprocessing, fine-tuning foundation models, optimizing hyperparameters, and selecting the best models for your needs. Utilizing machine learning models, it identifies data-related problems, allowing you to retrain on your refined dataset with a single click. You can view a complete heatmap that illustrates recommended corrections for every class in your dataset. All this valuable information is accessible for free as soon as you upload your data. Additionally, Cleanlab Studio comes equipped with a variety of demo datasets and projects, enabling you to explore these examples in your account right after logging in. Moreover, this user-friendly platform makes it easy for anyone to enhance their data management skills and improve their machine learning outcomes. -
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Twine AI
Twine AI
Twine AI provides customized services for the collection and annotation of speech, image, and video data, catering to the creation of both standard and bespoke datasets aimed at enhancing AI/ML model training and fine-tuning. The range of offerings includes audio services like voice recordings and transcriptions available in over 163 languages and dialects, alongside image and video capabilities focused on biometrics, object and scene detection, and drone or satellite imagery. By utilizing a carefully selected global community of 400,000 to 500,000 contributors, Twine emphasizes ethical data gathering, ensuring consent and minimizing bias while adhering to ISO 27001-level security standards and GDPR regulations. Each project is comprehensively managed, encompassing technical scoping, proof of concept development, and complete delivery, with the support of dedicated project managers, version control systems, quality assurance workflows, and secure payment options that extend to more than 190 countries. Additionally, their service incorporates human-in-the-loop annotation, reinforcement learning from human feedback (RLHF) strategies, dataset versioning, audit trails, and comprehensive dataset management, thereby facilitating scalable training data that is rich in context for sophisticated computer vision applications. This holistic approach not only accelerates the data preparation process but also ensures that the resulting datasets are robust and highly relevant for various AI initiatives. -
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Label Studio
Label Studio
Introducing the ultimate data annotation tool that offers unparalleled flexibility and ease of installation. Users can create customized user interfaces or opt for ready-made labeling templates tailored to their specific needs. The adaptable layouts and templates seamlessly integrate with your dataset and workflow requirements. It supports various object detection methods in images, including boxes, polygons, circles, and key points, and allows for the segmentation of images into numerous parts. Additionally, machine learning models can be utilized to pre-label data and enhance efficiency throughout the annotation process. Features such as webhooks, a Python SDK, and an API enable users to authenticate, initiate projects, import tasks, and manage model predictions effortlessly. Save valuable time by leveraging predictions to streamline your labeling tasks, thanks to the integration with ML backends. Furthermore, users can connect to cloud object storage solutions like S3 and GCP to label data directly in the cloud. The Data Manager equips you with advanced filtering options to effectively prepare and oversee your dataset. This platform accommodates multiple projects, diverse use cases, and various data types, all in one convenient space. By simply typing in the configuration, you can instantly preview the labeling interface. Live serialization updates at the bottom of the page provide a real-time view of what Label Studio anticipates as input, ensuring a smooth user experience. This tool not only improves annotation accuracy but also fosters collaboration among teams working on similar projects. -
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Replicate
Replicate
FreeReplicate is a comprehensive platform designed to help developers and businesses seamlessly run, fine-tune, and deploy machine learning models with just a few lines of code. It hosts thousands of community-contributed models that support diverse use cases such as image and video generation, speech synthesis, music creation, and text generation. Users can enhance model performance by fine-tuning models with their own datasets, enabling highly specialized AI applications. The platform supports custom model deployment through Cog, an open-source tool that automates packaging and deployment on cloud infrastructure while managing scaling transparently. Replicate’s pricing model is usage-based, ensuring customers pay only for the compute time they consume, with support for a variety of GPU and CPU options. The system provides built-in monitoring and logging capabilities to track model performance and troubleshoot predictions. Major companies like Buzzfeed, Unsplash, and Character.ai use Replicate to power their AI features. Replicate’s goal is to democratize access to scalable, production-ready machine learning infrastructure, making AI deployment accessible even to non-experts. -
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thinkdeeply
Think Deeply
Explore a diverse array of resources to kickstart your AI initiative. The AI hub offers an extensive selection of essential tools, such as industry-specific AI starter kits, datasets, coding notebooks, pre-trained models, and ready-to-deploy solutions and pipelines. Gain access to top-notch resources from external sources or those developed internally by your organization. Efficiently prepare and manage your data for model training by collecting, organizing, tagging, or selecting features, with a user-friendly drag-and-drop interface. Collaborate seamlessly with team members to tag extensive datasets and implement a robust quality control process to maintain high dataset standards. Easily build models with just a few clicks using intuitive model wizards, requiring no prior data science expertise. The system intelligently identifies the most suitable models for your specific challenges while optimizing their training parameters. For those with advanced skills, there's the option to fine-tune models and adjust hyper-parameters. Furthermore, enjoy the convenience of one-click deployment into production environments for inference. With this comprehensive framework, your AI project can flourish with minimal hassle. -
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Labellerr
Labellerr
Labellerr is a data annotation platform aimed at streamlining the creation of top-notch labeled datasets essential for AI and machine learning applications. It accommodates a wide array of data formats, such as images, videos, text, PDFs, and audio, addressing various annotation requirements. This platform enhances the labeling workflow with automated features, including model-assisted labeling and active learning, which help speed up the process significantly. Furthermore, Labellerr includes sophisticated analytics and intelligent quality assurance tools to maintain the precision and dependability of annotations. For projects that demand specialized expertise, Labellerr also provides expert-in-the-loop services, granting access to professionals in specialized domains like healthcare and automotive, thereby ensuring high-quality results. This comprehensive approach not only facilitates efficient data preparation but also builds trust in the reliability of the labeled datasets produced. -
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Google Earth Engine
Google
$500 per monthGoogle Earth Engine serves as a cloud-centric platform designed for the scientific examination and visualization of geospatial data, granting users access to an extensive public archive containing over 90 petabytes of analysis-ready satellite imagery alongside more than 1,000 carefully curated geospatial datasets. This rich collection boasts over five decades of historical imagery that is refreshed daily, with pixel resolutions reaching as fine as one meter, showcasing datasets from sources such as Landsat, MODIS, Sentinel, and the National Agriculture Imagery Program (NAIP). Through its web-based JavaScript Code Editor and Python API, Earth Engine empowers users to perform analyses on Earth observation data while employing machine learning techniques, thereby enabling the creation of sophisticated geospatial workflows. The platform's seamless integration with Google Cloud facilitates large-scale parallel processing, allowing for thorough analyses and efficient visualization of Earth data. Furthermore, Earth Engine's compatibility with BigQuery enhances its capabilities, making it a versatile tool for users in various fields. This unique combination of features positions Google Earth Engine as an essential resource for researchers and professionals working with geospatial information. -
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Datature
Datature
Datature serves as an all-encompassing, no-code platform for computer vision and MLOps, streamlining the deep-learning lifecycle by allowing users to handle data management, image and video annotation, model training, performance evaluation, and deployment of AI vision solutions, all within a cohesive environment that requires no coding skills. Its user-friendly visual interface, along with various workflow tools, facilitates dataset onboarding and annotation—covering aspects like bounding boxes, segmentation, and intricate labeling—while enabling the creation of automated training pipelines, monitoring of model training, and analysis of model accuracy through detailed performance metrics. Following the assessment phase, models can be conveniently deployed via API or for edge applications, ensuring their practical use in real-world scenarios. Aiming to make AI vision accessible to a broader audience, Datature not only accelerates the timeline of projects by minimizing the need for manual coding and debugging but also enhances collaboration among teams across different disciplines. Additionally, it effectively supports various tasks, including object detection, classification, semantic segmentation, and video analysis, further broadening its applicability in the field of computer vision. -
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neptune.ai
neptune.ai
$49 per monthNeptune.ai serves as a robust platform for machine learning operations (MLOps), aimed at simplifying the management of experiment tracking, organization, and sharing within the model-building process. It offers a thorough environment for data scientists and machine learning engineers to log data, visualize outcomes, and compare various model training sessions, datasets, hyperparameters, and performance metrics in real-time. Seamlessly integrating with widely-used machine learning libraries, Neptune.ai allows teams to effectively oversee both their research and production processes. Its features promote collaboration, version control, and reproducibility of experiments, ultimately boosting productivity and ensuring that machine learning initiatives are transparent and thoroughly documented throughout their entire lifecycle. This platform not only enhances team efficiency but also provides a structured approach to managing complex machine learning workflows. -
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Together AI
Together AI
$0.0001 per 1k tokensTogether AI offers a cloud platform purpose-built for developers creating AI-native applications, providing optimized GPU infrastructure for training, fine-tuning, and inference at unprecedented scale. Its environment is engineered to remain stable even as customers push workloads to trillions of tokens, ensuring seamless reliability in production. By continuously improving inference runtime performance and GPU utilization, Together AI delivers a cost-effective foundation for companies building frontier-level AI systems. The platform features a rich model library including open-source, specialized, and multimodal models for chat, image generation, video creation, and coding tasks. Developers can replace closed APIs effortlessly through OpenAI-compatible endpoints. Innovations such as ATLAS, FlashAttention, Flash Decoding, and Mixture of Agents highlight Together AI’s strong research contributions. Instant GPU clusters allow teams to scale from prototypes to distributed workloads in minutes. AI-native companies rely on Together AI to break performance barriers and accelerate time to market. -
31
StableVicuna
Stability AI
FreeStableVicuna represents the inaugural large-scale open-source chatbot developed through reinforced learning from human feedback (RLHF). It is an advanced version of the Vicuna v0 13b model, which has undergone further instruction fine-tuning and RLHF training. To attain the impressive capabilities of StableVicuna, we use Vicuna as the foundational model and adhere to the established three-stage RLHF framework proposed by Steinnon et al. and Ouyang et al. Specifically, we perform additional training on the base Vicuna model with supervised fine-tuning (SFT), utilizing a blend of three distinct datasets. The first is the OpenAssistant Conversations Dataset (OASST1), which consists of 161,443 human-generated messages across 66,497 conversation trees in 35 languages. The second dataset is GPT4All Prompt Generations, encompassing 437,605 prompts paired with responses created by GPT-3.5 Turbo. Lastly, the Alpaca dataset features 52,000 instructions and demonstrations that were produced using OpenAI's text-davinci-003 model. This collective approach to training enhances the chatbot's ability to engage effectively in diverse conversational contexts. -
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AI Verse
AI Verse
When capturing data in real-life situations is difficult, we create diverse, fully-labeled image datasets. Our procedural technology provides the highest-quality, unbiased, and labeled synthetic datasets to improve your computer vision model. AI Verse gives users full control over scene parameters. This allows you to fine-tune environments for unlimited image creation, giving you a competitive edge in computer vision development. -
33
Bitext
Bitext
FreeBitext specializes in creating multilingual hybrid synthetic training datasets tailored for intent recognition and the fine-tuning of language models. These datasets combine extensive synthetic text generation with careful expert curation and detailed linguistic annotation, which encompasses various aspects like lexical, syntactic, semantic, register, and stylistic diversity, all aimed at improving the understanding, precision, and adaptability of conversational models. For instance, their open-source customer support dataset includes approximately 27,000 question-and-answer pairs, totaling around 3.57 million tokens, 27 distinct intents across 10 categories, 30 types of entities, and 12 tags for language generation, all meticulously anonymized to meet privacy, bias reduction, and anti-hallucination criteria. Additionally, Bitext provides industry-specific datasets, such as those for travel and banking, and caters to over 20 sectors in various languages while achieving an impressive accuracy rate exceeding 95%. Their innovative hybrid methodology guarantees that the training data is not only scalable and multilingual but also compliant with privacy standards, effectively reduces bias, and is well-prepared for the enhancement and deployment of language models. This comprehensive approach positions Bitext as a leader in delivering high-quality training resources for advanced conversational AI systems. -
34
Sky-T1
NovaSky
FreeSky-T1-32B-Preview is an innovative open-source reasoning model crafted by the NovaSky team at UC Berkeley's Sky Computing Lab. It delivers performance comparable to proprietary models such as o1-preview on various reasoning and coding assessments, while being developed at a cost of less than $450, highlighting the potential for budget-friendly, advanced reasoning abilities. Fine-tuned from Qwen2.5-32B-Instruct, the model utilized a meticulously curated dataset comprising 17,000 examples spanning multiple fields, such as mathematics and programming. The entire training process was completed in just 19 hours using eight H100 GPUs with DeepSpeed Zero-3 offloading technology. Every component of this initiative—including the data, code, and model weights—is entirely open-source, allowing both academic and open-source communities to not only replicate but also improve upon the model's capabilities. This accessibility fosters collaboration and innovation in the realm of artificial intelligence research and development. -
35
Scale Data Engine
Scale AI
Scale Data Engine empowers machine learning teams to enhance their datasets effectively. By consolidating your data, authenticating it with ground truth, and incorporating model predictions, you can seamlessly address model shortcomings and data quality challenges. Optimize your labeling budget by detecting class imbalances, errors, and edge cases within your dataset using the Scale Data Engine. This platform can lead to substantial improvements in model performance by identifying and resolving failures. Utilize active learning and edge case mining to discover and label high-value data efficiently. By collaborating with machine learning engineers, labelers, and data operations on a single platform, you can curate the most effective datasets. Moreover, the platform allows for easy visualization and exploration of your data, enabling quick identification of edge cases that require labeling. You can monitor your models' performance closely and ensure that you consistently deploy the best version. The rich overlays in our powerful interface provide a comprehensive view of your data, metadata, and aggregate statistics, allowing for insightful analysis. Additionally, Scale Data Engine facilitates visualization of various formats, including images, videos, and lidar scenes, all enhanced with relevant labels, predictions, and metadata for a thorough understanding of your datasets. This makes it an indispensable tool for any data-driven project. -
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Dynamiq
Dynamiq
$125/month Dynamiq serves as a comprehensive platform tailored for engineers and data scientists, enabling them to construct, deploy, evaluate, monitor, and refine Large Language Models for various enterprise applications. Notable characteristics include: 🛠️ Workflows: Utilize a low-code interface to design GenAI workflows that streamline tasks on a large scale. 🧠 Knowledge & RAG: Develop personalized RAG knowledge bases and swiftly implement vector databases. 🤖 Agents Ops: Design specialized LLM agents capable of addressing intricate tasks while linking them to your internal APIs. 📈 Observability: Track all interactions and conduct extensive evaluations of LLM quality. 🦺 Guardrails: Ensure accurate and dependable LLM outputs through pre-existing validators, detection of sensitive information, and safeguards against data breaches. 📻 Fine-tuning: Tailor proprietary LLM models to align with your organization's specific needs and preferences. With these features, Dynamiq empowers users to harness the full potential of language models for innovative solutions. -
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Cerbrec Graphbook
Cerbrec
Create your model in real-time as an interactive graph, enabling you to observe the data traversing through the visualized structure of your model. You can also modify the architecture at its most fundamental level. Graphbook offers complete transparency without hidden complexities, allowing you to see everything clearly. It performs live checks on data types and shapes, providing clear and comprehensible error messages that facilitate quick and efficient debugging. By eliminating the need to manage software dependencies and environmental setups, Graphbook enables you to concentrate on the architecture of your model and the flow of data while providing the essential computing resources. Cerbrec Graphbook serves as a visual integrated development environment (IDE) for AI modeling, simplifying what can often be a tedious development process into a more approachable experience. With an expanding community of machine learning practitioners and data scientists, Graphbook supports developers in fine-tuning language models like BERT and GPT, whether working with text or tabular data. Everything is seamlessly managed from the start, allowing you to visualize your model's behavior just as it will operate in practice, ensuring a smoother development journey. Additionally, the platform promotes collaboration by allowing users to share insights and techniques within the community. -
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Fusion Data Cloud
Finastra
Finastra’s Fusion Data Cloud is designed to turn complex financial data into clear, actionable insights that fuel growth, efficiency, and customer satisfaction. It connects banks, credit unions, and fintechs in a secure ecosystem, enabling the seamless sharing of structured, cleansed, and curated data. The platform’s AI and machine learning capabilities power predictive and prescriptive analytics, helping institutions anticipate customer needs, mitigate risks, and identify new revenue opportunities. Its pre-integration with Finastra’s core solutions ensures rapid deployment and eliminates messy integration projects. Financial institutions benefit from a 360-degree customer view, real-time decision-making tools, and customizable dashboards for performance benchmarking. Developers can quickly build, test, and launch innovative applications using sample datasets, reducing time-to-market and expanding reach through the FusionStore. Supported by Microsoft Azure technology, Fusion Data Cloud offers flexibility, scalability, and compliance across retail and corporate banking, lending, treasury, and payments. Ultimately, it helps organizations stay competitive in an evolving financial landscape. -
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DataGen
DataGen
DataGen delivers cutting-edge AI synthetic data and generative AI solutions designed to accelerate machine learning initiatives with privacy-compliant training data. Their core platform, SynthEngyne, enables the creation of custom datasets in multiple formats—text, images, tabular, and time-series—with fast, scalable real-time processing. The platform emphasizes data quality through rigorous validation and deduplication, ensuring reliable training inputs. Beyond synthetic data, DataGen offers end-to-end AI development services including full-stack model deployment, custom fine-tuning aligned with business goals, and advanced intelligent automation systems to streamline complex workflows. Flexible subscription plans range from a free tier for small projects to pro and enterprise tiers that include API access, priority support, and unlimited data spaces. DataGen’s synthetic data benefits sectors such as healthcare, automotive, finance, and retail by enabling safer, compliant, and efficient AI model training. Their platform supports domain-specific custom dataset creation while maintaining strict confidentiality. DataGen combines innovation, reliability, and scalability to help businesses maximize the impact of AI. -
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Edge Impulse
Edge Impulse
Create sophisticated embedded machine learning applications without needing a doctorate. Gather data from sensors, audio sources, or cameras using devices, files, or cloud services to develop personalized datasets. Utilize automatic labeling tools that range from object detection to audio segmentation to streamline your workflow. Establish and execute reusable scripts that efficiently process extensive data sets in parallel through our cloud platform. Seamlessly integrate custom data sources, continuous integration and delivery tools, and deployment pipelines using open APIs to enhance your project’s capabilities. Speed up the development of custom ML pipelines with readily available DSP and ML algorithms that simplify the process. Make informed hardware choices by assessing device performance alongside flash and RAM specifications at every stage of development. Tailor DSP feature extraction algorithms and craft unique machine learning models using Keras APIs. Optimize your production model by analyzing visual insights related to datasets, model efficacy, and memory usage. Strive to achieve an ideal equilibrium between DSP configurations and model architecture, all while keeping memory and latency restrictions in mind. Furthermore, continually iterate on your models to ensure they evolve alongside your changing requirements and technological advancements. -
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PygmalionAI
PygmalionAI
FreePygmalionAI is a vibrant community focused on the development of open-source initiatives utilizing EleutherAI's GPT-J 6B and Meta's LLaMA models. Essentially, Pygmalion specializes in crafting AI tailored for engaging conversations and roleplaying. The actively maintained Pygmalion AI model currently features the 7B variant, derived from Meta AI's LLaMA model. Requiring a mere 18GB (or even less) of VRAM, Pygmalion demonstrates superior chat functionality compared to significantly larger language models, all while utilizing relatively limited resources. Our meticulously assembled dataset, rich in high-quality roleplaying content, guarantees that your AI companion will be the perfect partner for roleplaying scenarios. Both the model weights and the training code are entirely open-source, allowing you the freedom to modify and redistribute them for any purpose you desire. Generally, language models, such as Pygmalion, operate on GPUs, as they require swift memory access and substantial processing power to generate coherent text efficiently. As a result, users can expect a smooth and responsive interaction experience when employing Pygmalion's capabilities. -
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Amazon SageMaker HyperPod
Amazon
Amazon SageMaker HyperPod is a specialized and robust computing infrastructure designed to streamline and speed up the creation of extensive AI and machine learning models by managing distributed training, fine-tuning, and inference across numerous clusters equipped with hundreds or thousands of accelerators, such as GPUs and AWS Trainium chips. By alleviating the burdens associated with developing and overseeing machine learning infrastructure, it provides persistent clusters capable of automatically identifying and rectifying hardware malfunctions, resuming workloads seamlessly, and optimizing checkpointing to minimize the risk of interruptions — thus facilitating uninterrupted training sessions that can last for months. Furthermore, HyperPod features centralized resource governance, allowing administrators to establish priorities, quotas, and task-preemption rules to ensure that computing resources are allocated effectively among various tasks and teams, which maximizes utilization and decreases idle time. It also includes support for “recipes” and pre-configured settings, enabling rapid fine-tuning or customization of foundational models, such as Llama. This innovative infrastructure not only enhances efficiency but also empowers data scientists to focus more on developing their models rather than managing the underlying technology. -
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Humanloop
Humanloop
Relying solely on a few examples is insufficient for thorough evaluation. To gain actionable insights for enhancing your models, it’s essential to gather extensive end-user feedback. With the improvement engine designed for GPT, you can effortlessly conduct A/B tests on models and prompts. While prompts serve as a starting point, achieving superior results necessitates fine-tuning on your most valuable data—no coding expertise or data science knowledge is required. Integrate with just a single line of code and seamlessly experiment with various language model providers like Claude and ChatGPT without needing to revisit the setup. By leveraging robust APIs, you can create innovative and sustainable products, provided you have the right tools to tailor the models to your clients’ needs. Copy AI fine-tunes models using their best data, leading to cost efficiencies and a competitive edge. This approach fosters enchanting product experiences that captivate over 2 million active users, highlighting the importance of continuous improvement and adaptation in a rapidly evolving landscape. Additionally, the ability to iterate quickly on user feedback ensures that your offerings remain relevant and engaging. -
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Visual Layer
Visual Layer
$200/month Visual Layer is a production-grade platform built for teams handling image and video datasets at scale. It enables direct interaction with visual data—searching, filtering, labeling, and analyzing—without needing custom scripts or manual sorting. Originally developed by the creators of Fastdup, it extends the same deduplication capabilities into full dataset workflows. Designed to be infrastructure-agnostic, Visual Layer can run entirely on-premise, in the cloud, or embedded via API. It's model-agnostic too, making it useful for debugging, cleaning, or pretraining tasks in any ML pipeline. The system flags anomalies, catch mislabeled frames, and surfaces diverse subsets to improve generalization and reduce noise. It fits into existing pipelines without requiring migration or vendor lock-in, and supports engineers and ops teams alike. -
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Alactic AGI
Alactic Inc.
$99Alactic AGI is an AI platform designed for the cloud that streamlines the processes of ingesting, grounding, and transforming unstructured data—including URLs, images, PDFs, and various documents—into datasets that are ready for use with Large Language Models. By providing contextual precision, scalability, and robust enterprise-level security, it empowers teams to create, refine, and implement AI systems more rapidly and with increased assurance. This innovative platform significantly enhances the efficiency of AI workflows, making it easier for organizations to leverage advanced AI capabilities.