Below is a list of AI Development platforms that integrates with Azure Blob Storage. Use the filters above to refine your search for AI Development platforms that is compatible with Azure Blob Storage. The list below displays AI Development platforms products that have a native integration with Azure Blob Storage.
-
1
Stack AI
Stack AI
Empower your workflows with customizable AI-driven agents.
AI agents are designed to engage with users, answer inquiries, and accomplish tasks by leveraging data and APIs. These intelligent systems can provide responses, condense information, and derive insights from extensive documents. They also facilitate the transfer of styles, formats, tags, and summaries between various documents and data sources. Developer teams utilize Stack AI to streamline customer support, manage document workflows, qualify potential leads, and navigate extensive data libraries. With just one click, users can experiment with various LLM architectures and prompts, allowing for a tailored experience. Additionally, you can gather data, conduct fine-tuning tasks, and create the most suitable LLM tailored for your specific product needs. Our platform hosts your workflows through APIs, ensuring that your users have immediate access to AI capabilities. Furthermore, you can evaluate the fine-tuning services provided by different LLM vendors, helping you make informed decisions about your AI solutions. This flexibility enhances the overall efficiency and effectiveness of integrating AI into diverse applications.
-
2
Intel® Tiber™ AI Studio is a comprehensive machine learning operating system that aims to simplify and integrate the development process for artificial intelligence. This powerful platform supports a wide variety of AI applications and includes a hybrid multi-cloud architecture that accelerates the creation of ML pipelines, as well as model training and deployment. Featuring built-in Kubernetes orchestration and a meta-scheduler, Tiber™ AI Studio offers exceptional adaptability for managing resources in both cloud and on-premises settings. Additionally, its scalable MLOps framework enables data scientists to experiment, collaborate, and automate their machine learning workflows effectively, all while ensuring optimal and economical resource usage. This cutting-edge methodology not only enhances productivity but also cultivates a synergistic environment for teams engaged in AI initiatives. With Tiber™ AI Studio, users can expect to leverage advanced tools that facilitate innovation and streamline their AI project development.
-
3
Create, assess, and enhance Generative AI applications that reveal the potential within your data.
With our top-tier machine learning expertise, innovative testing and evaluation framework, and sophisticated retrieval augmented-generation (RAG) systems, we enable you to fine-tune large language model performance tailored to your specific industry requirements.
Our comprehensive solution oversees the complete machine learning lifecycle, merging advanced technology with exceptional operational practices to assist teams in producing superior datasets, as the quality of data directly influences the efficacy of AI solutions.
By prioritizing data quality, we empower organizations to harness AI's full capabilities and drive impactful results.
-
4
Neum AI
Neum AI
Empower your AI with real-time, relevant data solutions.
No company wants to engage with customers using information that is no longer relevant. Neum AI empowers businesses to keep their AI solutions informed with precise and up-to-date context. Thanks to its pre-built connectors compatible with various data sources, including Amazon S3 and Azure Blob Storage, as well as vector databases like Pinecone and Weaviate, you can set up your data pipelines in a matter of minutes. You can further enhance your data processing by transforming and embedding it through integrated connectors for popular embedding models such as OpenAI and Replicate, in addition to leveraging serverless functions like Azure Functions and AWS Lambda. Additionally, implementing role-based access controls ensures that only authorized users can access particular vectors, thereby securing sensitive information. Moreover, you have the option to integrate your own embedding models, vector databases, and data sources for a tailored experience. It is also beneficial to explore how Neum AI can be deployed within your own cloud infrastructure, offering you greater customization and control. Ultimately, with these advanced features at your disposal, you can significantly elevate your AI applications to facilitate outstanding customer interactions and drive business success.
-
5
Ikigai
Ikigai
Transform data into insights with seamless integration and automation.
Improving model effectiveness and performing scenario evaluations through simulations using historical data is crucial for advancement. Collaboration is efficiently coordinated across areas like data governance, access controls, and version management. With Ikigai's pre-built integrations, you can easily incorporate a diverse array of tools that align perfectly with your current workflows. Ikigai provides an extensive library of over 200 connectors, enabling connections to almost any data source imaginable. If your goal is to implement your machine learning pipeline on a website or dashboard, Ikigai’s web integrations simplify that task significantly. You can use triggers to start data synchronization processes and receive updates whenever you run a data automation flow. Additionally, the ability to connect to your own APIs or create new ones for your data ecosystem guarantees seamless integration with Ikigai. This adaptability allows teams to respond swiftly to evolving data environments and capitalize on insights more effectively, ultimately driving better decision-making and innovation.