If you’re interested in machine learning, but don’t want to deal with all the expensive tools necessary to get it done, consider using one of these platforms that provide out-of-the-box functionality so you can build and train your own machine learning models. They’re excellent open-source machine learning platforms—some of the best there are—and they’ll give you lots of possibilities to work with when designing your next machine learning algorithm or deep learning system.

What Is Machine Learning?

Machine learning is a technology that uses algorithms to automatically extract patterns and trends from data. These algorithms are able to find insights into data that humans might not think to look for. Machine learning has many use cases such as marketing, fraud detection, and logistics. 

Machine Learning Platforms

1) Google Cloud Platform

Google Cloud provides machine learning platforms to help you make sense of your data, it is known as google machine learning platform. They offer a suite of machine learning services that allow you to interactively explore and analyze your data, build and train predictive models, and monitor model performance.

2) Amazon SageMaker

Amazon’s SageMaker is an open source machine learning platform with a focus on deep learning, leveraging popular frameworks such as TensorFlow and PyTorch. It has a rich set of tutorials and video lessons on its website to help get you started.

3) IBM Watson Studio

Machine learning and AI are some of the hottest technologies in Silicon Valley these days. There are dozens of cloud machine learning platforms out there to choose from, but if you’re looking for an enterprise-ready solution with a robust set of features and APIs, then look no further than IBM Watson Studio. Watson has a huge database on hand to help make predictions, a drag-and-drop interface for building models, and other tools for developing AI applications.

4) Azure ML

Azure ML is a machine learning cloud platform that provides predictive analysis, data mining, and modeling. It can be used to build predictive models using pre-built algorithms or custom ones.

5) TensorFlow 

TensorFlow from Google – TensorFlow is one of the most popular machine learning platforms around, with a lot of tutorials and documentation to help get you up to speed quickly. It has been used by many large companies such as Twitter and Uber to help power their machine learning algorithms.

6) Sherpa

Sherpa is a free and open-source toolkit for machine learning that supports many cloud machine learning platforms, including Apache Spark, Amazon Web Services, Google Cloud ML Engine, and Microsoft Azure. It provides a unified interface for data processing and model evaluation across these different platforms.

7) DataRobot

DataRobot is an A.I. platform that trains predictive models to automate data science tasks like finding insights in your data, predicting outcomes, finding relationships between variables, and more! DataRobot was created with machine learning cloud platforms in mind, making it easy for anyone to use these tools – even if they don’t know how to code.

Also Read : Web App Ideas For Machine Learning Niche

8) MinMeld

MindMeld is a lightweight and self-contained Python-based cloud machine-learning platform, built for analysts and data scientists who don’t have deep expertise in either machine learning or big data. MindMeld provides all the tools necessary to build, deploy, test, and evaluate your predictive models on a modern distributed hardware cluster, while still leveraging Python code to generate custom ML pipelines that can be tested with different hyperparameters or clustering algorithms.

9) Meya

Meya is an open-source machine learning platform that builds on top of PyTorch, a popular deep-learning library for Python. This makes it one of the easiest ways to use ML with TensorFlow or CNTK. Meya supports training and inference with CPUs, GPUs, and TPUs and has support for spatial data as well.

10) Premonition

In our view, Ayasdi is hands down one of the most powerful and sophisticated cloud machine-learning platforms on the market today. This environment allows companies to implement cutting-edge machine learning technology at a fraction of what it would cost in-house or through a SaaS provider.

 11) Ayasdi

Ayasdi is a machine learning cloud platform that specializes in data analytics and deep pattern discovery. Ayasdi’s technology was created to analyze large datasets in record time, such as those found in genomics, fraud detection, and security. The company has raised $130 million from investors including Insight Venture Partners and Kleiner Perkins Caufield & Byers.

Conclusion | Machine Learning Platforms

This list of machine learning cloud platforms should give you a good starting point if you’re interested in building your own machine learning applications. If you are looking for a more comprehensive list, there are many other resources available online that can help you find what you need. Moreover, you can connect with Moon Technolabs for further development needs and a path for execution.

FAQs

01

Which is the best machine learning platform?

One of the best machine learning platforms is Google Cloud Machine Learning. It has managed to democratize machine learning and make it available to everyone in a scalable, efficient, and cost-effective way. You can train your models on Google’s infrastructure without having to manage servers or other hardware. It also offers a wide variety of tools and APIs that allow you to build your own applications with machine-learning capabilities. Another great cloud machine learning platform is the Amazon Web Services Machine Learning platform.

02

How do I choose a machine learning platform?

Machine learning is a branch of artificial intelligence that teaches machines to learn. It is used in many industries, including marketing and finance, to analyze large amounts of data and make better decisions. In order to use machine learning, you need a platform, so you can choose one of the platforms from the above list as per the usability and your field of expertise.

03

I’ve chosen a machine learning platform, now what?

Cloud machine learning platform that can be used to run predictive analytics, build a production-scale machine learning model, and generate detailed training reports, so now you can analyze the data and use the platform as per your needs.
About Author

Jayanti Katariya is the CEO of Moon Technolabs, a fast-growing IT solutions provider, with 18+ years of experience in the industry. Passionate about developing creative apps from a young age, he pursued an engineering degree to further this interest. Under his leadership, Moon Technolabs has helped numerous brands establish their online presence and he has also launched an invoicing software that assists businesses to streamline their financial operations.