Vertex AI
Completely managed machine learning tools facilitate the rapid construction, deployment, and scaling of ML models tailored for various applications.
Vertex AI Workbench seamlessly integrates with BigQuery Dataproc and Spark, enabling users to create and execute ML models directly within BigQuery using standard SQL queries or spreadsheets; alternatively, datasets can be exported from BigQuery to Vertex AI Workbench for model execution. Additionally, Vertex Data Labeling offers a solution for generating precise labels that enhance data collection accuracy.
Furthermore, the Vertex AI Agent Builder allows developers to craft and launch sophisticated generative AI applications suitable for enterprise needs, supporting both no-code and code-based development. This versatility enables users to build AI agents by using natural language prompts or by connecting to frameworks like LangChain and LlamaIndex, thereby broadening the scope of AI application development.
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Modius OpenData
Modius provides innovative solutions for overseeing the availability, capacity, efficiency, and operational readiness of essential facilities. Our leading product, OpenData, encompasses a comprehensive suite of tools, including Data Center Infrastructure Management (DCIM), designed to optimize the performance of mission-critical infrastructure while facilitating seamless integration with various devices. OpenData combines analytics, dashboards, and visual representations into a unified interface for enhanced user experience. In partnership with the ESTCP, Modius showcased a Middleware solution that simplifies the use of utility and facility data, ultimately enhancing facility management, operational efficiency, and maintenance practices. This collaboration not only demonstrates our commitment to advancing facility management but also highlights the transformative potential of integrated data solutions in the industry.
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MLflow
MLflow is a comprehensive open-source platform aimed at managing the entire machine learning lifecycle, which includes experimentation, reproducibility, deployment, and a centralized model registry. This suite consists of four core components that streamline various functions: tracking and analyzing experiments related to code, data, configurations, and results; packaging data science code to maintain consistency across different environments; deploying machine learning models in diverse serving scenarios; and maintaining a centralized repository for storing, annotating, discovering, and managing models. Notably, the MLflow Tracking component offers both an API and a user interface for recording critical elements such as parameters, code versions, metrics, and output files generated during machine learning execution, which facilitates subsequent result visualization. It supports logging and querying experiments through multiple interfaces, including Python, REST, R API, and Java API. In addition, an MLflow Project provides a systematic approach to organizing data science code, ensuring it can be effortlessly reused and reproduced while adhering to established conventions. The Projects component is further enhanced with an API and command-line tools tailored for the efficient execution of these projects. As a whole, MLflow significantly simplifies the management of machine learning workflows, fostering enhanced collaboration and iteration among teams working on their models. This streamlined approach not only boosts productivity but also encourages innovation in machine learning practices.
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Baseten
The deployment process for models can often feel frustratingly slow, frequently necessitating advanced development expertise or specific resources, which results in numerous models failing to reach their intended users. However, with Baseten, the ability to launch comprehensive applications is achievable in mere minutes. You can deploy models instantly, with automatic generation of API endpoints, and you can create user interfaces seamlessly through a drag-and-drop feature. There's no need to master DevOps to transition your models into a live environment. Baseten empowers you to serve, manage, and monitor your models using just a few lines of Python code, allowing for straightforward integration of business logic and data source synchronization without the typical infrastructure headaches. You can start with practical defaults while retaining the capability to scale as required with precise controls. The platform offers the flexibility to connect with your existing data repositories or take advantage of an integrated Postgres database. Furthermore, you can craft user-friendly and attractive interfaces for business users, incorporating elements like headings, callouts, dividers, and a variety of other components to elevate the user experience. Ultimately, this platform not only streamlines the model deployment process but also broadens accessibility for a diverse range of users. By making these powerful tools available, Baseten opens up new possibilities for innovation in model application.
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