Top 10 Tools for AI Engineers

Here are the top 10 tools for AI engineers:

TensorFlow is a popular open-source machine learning framework developed by Google. It is used by researchers and engineers to build and train machine learning models.

TensorFlow

PyTorch is another popular open-source machine learning framework. It is similar to TensorFlow, but it is known for its flexibility and ease of use.

PyTorch

Scikit-learn is a Python library for machine learning. It provides a variety of algorithms for classification, regression, clustering, and dimensionality reduction.

Scikit-learn

Apache Spark is a distributed computing framework that can be used to train and deploy machine learning models. It is particularly well-suited for large-scale machine learning tasks.

Apache Spark

Jupyter Notebook is a web-based interactive development environment (IDE) that is popular among data scientists and machine learning engineers. It allows users to write and execute code, as well as visualize data.

Jupyter Notebook

GitHub is a code hosting platform that is used by millions of developers around the world. It is a great place to share code, collaborate on projects, and find open source projects to contribute to.

GitHub

MLflow is a platform for managing the machine learning lifecycle. It provides tools for tracking experiments, managing model versions, and deploying models to production.

MLflow

Weights & Biases is a platform for tracking and sharing machine learning experiments. It provides a variety of features, such as experiment tracking, model monitoring, and collaboration tools.

Weights & Biases

Cloud ML Engine is a managed machine learning service from Google Cloud Platform. It provides a variety of tools for training and deploying machine learning models.

Cloud ML Engine

Amazon SageMaker is a managed machine learning service from Amazon Web Services. It provides a variety of tools for training and deploying machine learning models.

Amazon SageMaker

AI continues to advance in mechanical engineering, offering opportunities for innovation and efficiency across various domains within the field. Its integration can lead to more reliable, cost-effective, and sustainable mechanical systems and products.

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