AI

Toolkit

Model Debbugging and Visualization

Gain insights into model behavior, identify issues, and improve model performance. These tools offer advanced debugging and visualization capabilities, helping you understand and optimize your models for better predictions and outcomes.

Other Model Debbugging and Visualization Apps and Tools
TensorFlow is an open-source machine learning library that supports multiple programming languages including Python and Javascript. TensorFlow provides various tools for building and bringing deep learning models to production. The library became more popular in its second version(TensorFlow 2.x) because of integrating Keras as its high-level API. Keras is an open-source library that provides a simple to use Python interface for neural networks.

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Amazon SageMaker is a cloud machine-learning platform that enables developers to create, train, and deploy machine-learning models in the cloud. It also enables developers to deploy ML models on embedded systems and edge-devices.

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Netron is is a tool that visualizes deep learning, and machine learning models. It supports the most popular formats such as Keras, TensorFlow, ONNX, TensorFlow Lite, and Caffe just to mention a few.

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Neptune is an experiment tracking hub bringing organization and collaboration to data science projects. Neptune records your entire experimentation process – exploratory notebooks, model training runs, code, hyperparameters, metrics, data versions, results, exploration visualizations, and more. Everything is stored and backed-up in an organized knowledge repository, ready to be accessed, analyzed, shared, and discussed with your team. No matter what type of problems you are working on, Neptune fits them all, from evaluating credit risk to finding the nuclei in divergent images.

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MLflow is an open-source platform for managing the machine learning lifecycle, including experimentation, reproducibility, deployment, and a central model registry

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Weights and biases is a platform for tracking and visualizing machine learning experiments as well as team collaboration

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It helps you build ai you can trust and accelerate deep learning development with explainable AI.

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Comet is a platform for managing the machine learning lifecycle. Comet users are able to track, compare, explain and reproduce machine learning experiments.

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Test & Debug Machine Learning Models & Data

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TruEra’s enterprise-class AI explainability enables data scientists to explain model predictions and gain new insights into model behavior that can improve the development, governance, and operationalization of models

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Simplify your development process while showcasing the practicality of your AI projects. With our recommended tools you can create, test, and deploy proof-of-concept applications
Optimize collaboration among your team members, ensure code integrity, and simplify the deployment process. These tools provide efficient code version control, making it easier to manage complex AI and Machine Learning projects.
Visualize and analyze your datasets, identify patterns, and make informed decisions. These tools offer a range of features, from data visualization to statistical analysis, empowering you to explore and understand your data in-depth.
Accelerate the training of your machine learning models by providing high-quality labeled datasets. These tools offer intuitive interfaces, annotation options, and collaboration features, ensuring accurate and consistent data labeling for your AI projects.
Keep track of changes made to your datasets, improve reproducibility, and simplify collaboration. These tools enable you to manage and version your data effectively, enhancing the reliability and accuracy of your AI and Machine Learning workflows.
Improve your productivity, streamline your coding process, and leverage advanced debugging and testing features. These IDEs offer a seamless development experience, providing the necessary tools for building and deploying AI applications.
Stay organized, monitor model performance, and reproduce results easily. These tools offer experiment-tracking features, allowing you to record, compare, and analyze your experiments, improving the efficiency and effectiveness of your AI workflows.
Extract, transform, and select features to enhance the performance of your machine learning models. These tools offer a range of feature engineering techniques, empowering you to create meaningful and predictive features from your data.
Simplify feature reuse, ensure consistency, and accelerate model development. These tools provide centralized repositories for storing and accessing features, enabling easy collaboration and improving the productivity of your AI projects.
Gain insights into model behavior, identify issues, and improve model performance. These tools offer advanced debugging and visualization capabilities, helping you understand and optimize your models for better predictions and outcomes.
Detect anomalies, ensure model reliability, and take proactive actions. These tools offer real-time monitoring features, allowing you to track model performance and make data-driven decisions to maintain optimal model performance.
Simplify model deployment, ensure consistency, and enable seamless integration into your applications. These tools offer comprehensive model packaging features, making it easier to share and distribute your trained models.
Simplify model versioning, track model lineage, and facilitate collaboration. These tools provide centralized repositories for storing and managing your models, enhancing reproducibility and enabling efficient model sharing.
Deploy models as scalable APIs and enable seamless integration into your applications. These tools offer high-performance model-serving capabilities, ensuring fast and reliable predictions for your AI-driven applications.
Streamline the training and optimization of your machine learning models. These tools offer advanced training algorithms, distributed computing capabilities, and efficient resource utilization, empowering you to train models faster and more effectively.
Automate the search for optimal hyperparameters, improve model accuracy, and save time and resources. These tools offer intelligent algorithms and efficient search strategies, enabling you to fine-tune your models for optimal performance.
Automate complex workflows, ensure reproducibility, and optimize resource utilization. These tools offer intuitive interfaces, workflow scheduling, and dependency management features, empowering you to streamline and scale your AI projects.

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