{"id":2591300,"date":"2023-12-01T15:40:02","date_gmt":"2023-12-01T20:40:02","guid":{"rendered":"https:\/\/platoai.gbaglobal.org\/platowire\/how-deloitte-utilizes-amazon-sagemaker-canvas-for-enhancing-developer-productivity-in-no-code-low-code-machine-learning\/"},"modified":"2023-12-01T15:40:02","modified_gmt":"2023-12-01T20:40:02","slug":"how-deloitte-utilizes-amazon-sagemaker-canvas-for-enhancing-developer-productivity-in-no-code-low-code-machine-learning","status":"publish","type":"platowire","link":"https:\/\/platoai.gbaglobal.org\/platowire\/how-deloitte-utilizes-amazon-sagemaker-canvas-for-enhancing-developer-productivity-in-no-code-low-code-machine-learning\/","title":{"rendered":"How Deloitte utilizes Amazon SageMaker Canvas for enhancing developer productivity in no-code\/low-code machine learning"},"content":{"rendered":"

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Deloitte, one of the world’s leading professional services firms, has been at the forefront of leveraging cutting-edge technologies to enhance its services and deliver innovative solutions to its clients. In recent years, Deloitte has recognized the potential of no-code\/low-code machine learning (ML) platforms in accelerating the development and deployment of ML models. To further enhance developer productivity in this domain, Deloitte has embraced Amazon SageMaker Canvas, a powerful tool that simplifies the ML development process.<\/p>\n

Amazon SageMaker Canvas is a visual interface within Amazon SageMaker, a fully managed service that enables developers to build, train, and deploy ML models at scale. It provides a no-code\/low-code environment where developers can easily create ML workflows using pre-built components and drag-and-drop functionality. This eliminates the need for extensive coding knowledge and allows developers to focus on the core aspects of ML model development.<\/p>\n

One of the key advantages of Amazon SageMaker Canvas is its ability to streamline the end-to-end ML development process. It offers a wide range of built-in components for data preprocessing, feature engineering, model training, and model evaluation. Developers can simply select the desired components and connect them together to create a complete ML workflow. This significantly reduces the time and effort required to build complex ML models from scratch.<\/p>\n

Deloitte has found that Amazon SageMaker Canvas greatly enhances developer productivity by providing a visual representation of the ML workflow. Developers can easily understand and modify the workflow by visually inspecting the connections between components. This eliminates the need to navigate through complex codebases, making it easier to collaborate with team members and iterate on ML models.<\/p>\n

Another notable feature of Amazon SageMaker Canvas is its support for automated machine learning (AutoML). AutoML enables developers to automatically search for the best ML model architecture and hyperparameters based on their dataset and evaluation metrics. Deloitte has leveraged this feature to accelerate the model selection process and improve the overall performance of ML models. By automating repetitive tasks, developers can focus on higher-level decision-making and problem-solving.<\/p>\n

Furthermore, Amazon SageMaker Canvas integrates seamlessly with other AWS services, such as Amazon S3 for data storage and Amazon Lambda for serverless computing. This allows Deloitte to leverage the full power of the AWS ecosystem and build end-to-end ML solutions without the need for complex integrations. The tight integration with AWS services also ensures scalability, security, and reliability for ML workflows developed using Amazon SageMaker Canvas.<\/p>\n

Deloitte has witnessed significant improvements in developer productivity since adopting Amazon SageMaker Canvas. The no-code\/low-code environment has empowered developers with varying levels of ML expertise to contribute to ML model development. This has resulted in faster time-to-market for ML solutions and increased collaboration among team members.<\/p>\n

In conclusion, Deloitte’s utilization of Amazon SageMaker Canvas has proven to be a game-changer in enhancing developer productivity in the realm of no-code\/low-code machine learning. By simplifying the ML development process, providing a visual interface, and integrating with other AWS services, Deloitte has been able to accelerate the creation and deployment of ML models. As the demand for ML solutions continues to grow, tools like Amazon SageMaker Canvas will play a crucial role in enabling organizations to leverage the power of ML without extensive coding knowledge.<\/p>\n