Leading Automated Machine Learning Platforms to Look Out for in 2024

0
2χλμ.

With the rapid growth in the digital world, organizations are implementing Automated Machine Learning (AutoML) that helps data scientists and MLOps teams automate the training, tuning, and deployment of machine learning (ML) models. This technology will save time and resources for the data scientists and MLOps teams, which will accelerate research on ML and solve specific problems related to ML models.

For instance, some AutoML tools focus on optimizing ML models for a given dataset, while others focus on finding the best model for specific tasks, such as picking the appropriate ML algorithm for a given situation, preprocessing the data, and optimizing the model’s hyperparameters, aiding different industries to predict customer behavior, detect fraud, and improve supply chain efficiency.

Therefore, AutoML is a powerful mechanism that makes ML models more accessible and efficient; however, to create a model, execute stratified cross-validation, and evaluate classification metrics, data scientists and MLOps teams need the right set of AutoML tools or platforms.

In today’s AI TechPark article, we will introduce you to the top four AutoML tools and platforms that simplify using ML algorithms.

Auto-Keras

Auto-Keras is an open-source software library for AutoML developed by DATA Lab and helps data scientists create a deep learning (DL) framework. The platform provides processes to automatically search for the architecture and hyper-parameters of DL models. Auto-Keras offers superior-level APIs such as TextClassifier and ImageClassifier that solve any ML problem with just a few codes. For instance, Auto-Keras simplifies the ML models by using automatic Neural Architecture Search (NAS) algorithms; these NAS algorithms automatically adjust models to replace DL engineers.

TransmogrifAI

The most famous open-source library in AutoML is TransmogrifAI, which is built on Scala and SparkML, aiding data scientists to rapidly produce data-efficient models for heterogeneous structured data on a large scale. With a few codes, data professionals could easily automate the data cleansing process, use feature engineering in designing new ML models, and select the right model to further explore and iterate the datasets.

In this competitive economy, organizations are looking for AI, ML, and DL solutions that will help them transform big data into actionable insights, reach a target audience, improve decision-making, and streamline business processes. However, the whole process of implementing these solutions can be automated with the help of the above AutoML platforms. These AutoML platforms can automate repetitive tasks for data scientists and MLops teams, allowing them to spend more time-solving other business problems.

To Know More, Read Full Article @ https://ai-techpark.com/automl-platforms-for-2024/ 

Related Articles -

Cloud Computing Chronicles

CIOs to Enhance the Customer Experience

Trending Category - Threat Intelligence & Incident Response

Αναζήτηση
Κατηγορίες
Διαβάζω περισσότερα
Sports
csk squad 2025
How Will CSK Squad 2025 Shape Up Tactically? Chennai Super Kings Squad 2025: Tactical Analysis,...
από khlhjhk22 2025-04-29 08:35:12 0 662
άλλο
Aluminum Forging Market, Size, Trends, Share, Methodology Approach by Forecast to 2032
Aluminum Forging Market Overview The Aluminum Forging Market Size was estimated at...
από davidblogs30 2025-01-22 07:30:03 0 922
Health
Choosing the Right IVF Clinic in Mumbai: A Guide for Aspiring Parents
In recent years, fertility issues have become increasingly common among couples due to changing...
από Namit11 2025-06-07 07:26:26 0 328
άλλο
Bloom with Beauty Discover Floral Jewellery by Vaidaan
Jewellery is not just an Accessories, but a reflection of the personality, tradition, taste...
από vaidaan02 2025-05-09 10:33:47 0 692
άλλο
Brewery Inventory Software Market: Growth Trends and Forecast (2024-2034)
Market Overview The Brewery Inventory Software Market is expected to expand from USD...
από ruchika 2025-02-18 05:08:08 0 1χλμ.