Cloud computing is one of the most popular technology solutions today owing to the multiple benefits it brings to businesses that choose to adopt it. Google Cloud Platform, or GCP, and Amazon Web Services, or AWS, are two of the best on the market.
According to their published documentation, Google Cloud Platform "is made up of physical assets like computers and hard drives, as well as virtual resources like virtual machines (VMs) that are housed in Google data centers. Worldwide. Each data center is located in an area. Asia, Australia, Europe, North America, and South America are offered as regions. Each area is made up of zones that are separated from one another inside the region."
For its part, AWS “is the world's most comprehensive and widely adopted cloud, offering more than 200 full-featured services from data centers around the world. “Millions of customers – including the fastest-growing startups, largest enterprises, and leading government agencies – use AWS to reduce costs, be more agile, and innovate faster.”
What exactly is the Google Cloud AI Platform?
"AI Platform enables machine learning developers, data scientists, and data engineers to quickly and cost-effectively move their machine learning projects from ideation to production and deployment. From data engineering to "lock-free" flexibility, AI Platform's integrated toolchain helps you build and run your own machine learning applications," Google adds in the technology's official website.
In brief, the AI platform provides a set of technological tools for developers to use in order to create machine learning apps that streamline numerous business activities and increase productivity, which is why it is likened to the tools supplied by AWS.
But which is superior?
Key distinctions between AI Platform and AWS
Google Cloud Platform (GCP) AI Platform and Amazon Web Services (AWS) both provide cloud-based artificial intelligence and machine learning services, but they differ in terms of capabilities, offerings, and structure. The following is a comparison of GCP AI Platform with AWS in terms of AI and machine learning services:
Ecosystem of services
- Google Cloud AI Platform (GCP AI Platform): Google's AI platform is intended to provide a comprehensive collection of tools and services for developing, training, and deploying machine learning models. AI Platform Training for model training, AI Platform Prediction for model deployment, and AI Platform Pipelines for constructing and maintaining ML pipelines are among the services available.
- AWS: AWS provides a diverse range of AI and machine learning services. Amazon SageMaker for model construction and training, Amazon Comprehend for natural language processing, and Amazon Recognition for computer vision are all important services.
Simple to use
- Google Cloud AI Platform: Google is well-known for its user-friendly interfaces and documentation. AI Platform is intended for data scientists and developers, and it includes built-in support for major machine learning frameworks such as TensorFlow and scikit-learn.
- AWS: While AWS has made significant progress in enhancing the usability of its AI/ML services, some users find the interface and configuration to be less intuitive than GCP's offerings.
Models of machine learning
- GCP AI Platform: Google places a major emphasis on machine learning and makes pre-trained models available via TensorFlow Hub. It also includes AutoML, which simplifies the creation of bespoke machine learning models.
- AWS: AWS offers a number of pre-built models as well as deep learning tools for model construction. Amazon SageMaker is a strong tool for building custom models, and AWS also offers a variety of specialist AI services, such Amazon Polly for text-to-speech and Amazon Translate for translation.
Data services
- GCP AI Platform: GCP offers BigQuery for data analytics and Bigtable for NoSQL database needs, which can be integrated with AI workloads.
- AWS: AWS provides services such as Amazon Redshift for data storage and Amazon DynamoDB for NoSQL databases, which can be used in conjunction with AI applications.
Prices
- Google Cloud AI Platform price is competitive and frequently based on a pay-as-you-go model. They also provide free tiers and discounts for long-term use.
- AWS pricing might be complicated, and prices can quickly pile up, but they provide a variety of pricing options and savings for long-term commitments.
Connection to other services
- GCP AI Platform: Because GCP integrates easily with other Google Cloud services, it is an excellent choice if you already use Google Cloud for other workloads.
- AWS: Because AWS provides a wide range of services, it is a versatile alternative for enterprises with a variety of cloud computing needs.
Finally, deciding between GCP AI Platform and AWS for AI and ML depends on your individual needs, existing infrastructure, and platform familiarity. Both cloud providers have excellent AI and machine learning offerings, so it's critical to assess your requirements and compare services accordingly.
We recommend you on video