10 AI Platforms to Build Your Modern Application

AI platforms have fully modified how companies create and scale the deployment of recent functions. The difficulties of making and operating AI techniques efficiently and shortly whereas minimizing overhead prices are addressed by a brand new class of enterprise software program – AI platforms.

AI platforms make it potential for corporations to construct and preserve machine studying fashions at scale, making the know-how extra inexpensive than ever. For enterprises, this new prospect has wider ramifications to enterprise out to a number of industries.

So on this article, we have a look at the advantages of AI platforms and clarify why they’re so vital for corporations who need to stay aggressive within the digital period.


Advantages of AI Platforms for Companies

AI platforms make scalable machine studying and deep studying mannequin design, growth, deployment, and administration potential. AI platforms decrease the price of enterprise software program growth by minimizing software-specific duties like knowledge manipulation, administration, and deployment for various use instances.

Primarily based on the type of content material that AI know-how produces —visuals, audio, textual content, or codes —use instances could also be divided into many classes. Here’s a fast abstract of utility instances for AI know-how throughout a number of industries:

  • Design neural networks to carry out business-specific duties
  • Code technology: Code technology, compilation, and bug fixing
  • Textual content technology: Translation companies, chatbots, content material manufacturing
  • Audio technology: Music composition, Textual content-To-Speech (TTS), Voiceover technology
  • Visible output technology: Picture technology, 3D-shape technology, video manufacturing

AI Platform Structure

Notion, reasoning, and studying that qualify and quantify to be human intelligence traits are challenged by AI know-how. Striving to succeed in human intelligence capabilities, fixing duties historically dealt with by people is carried out by AI platforms utilizing machine studying fashions.

Engineers engaged on AI platforms can alter the mannequin to coach it on quite a lot of specializations. Layers in AI platforms enable for the deployment of those fashions by companies utilizing quite a lot of frameworks, languages, and instruments. Normally, there are three classes:

  • Information and integration layer: This layer gathers knowledge from a number of sources to feed the AI algorithms. It gathers knowledge from many techniques, processes it, and shops it in an information repository for coaching and testing AI fashions. This will get completed utilizing knowledge integration instruments.
  • Mannequin growth layer: Provides instruments and frameworks for creating and testing machine studying fashions. Together with libraries and frameworks for constructing and coaching fashions, it additionally comprises instruments for finetuning and optimizing the fashions for larger accuracy.
  • Deployment and administration layer: This layer makes it potential to deploy the educated fashions to manufacturing and handle them. In an effort to be sure that these fashions perform as predicted in the actual world, there are administration instruments built-in for mannequin scaling, upkeep, monitoring, and versioning.

Variations between AI platforms and conventional enterprise software program platforms


AI platforms are totally different from common industrial software program platforms in a lot of methods, together with their concentrate on AI-specific applied sciences, pre-built fashions and frameworks, and the requirement for specialised talent units. Right here, we have a look at a number of the key differentiators between commonplace enterprise software program and an AI platform.

  • Conventional enterprise software program is extra adaptable, whereas AI platforms are created for the event, implementation, and administration of AI functions.
  • Clever applied sciences like NLP are sometimes deployed on AI platforms that aren’t obtainable in common enterprise software program platforms.
  • AI platforms require specialists to construct and deploy AI functions, whereas typical enterprise software program platforms could be designed and executed by extra generalist software program builders.
  • AI platforms require huge knowledge units to coach their fashions to be able to be efficient, whereas abnormal industrial software program platforms could be produced with much less knowledge.

Common Know-how Stacks

Now allow us to check out a number of the in style and extensively used know-how stacks utilized in AI know-how to develop AI platforms.


The know-how stack for AI platform growth varies relying on the particular necessities and use instances. Nonetheless, a number of the generally used applied sciences and frameworks embody:

  • Programming languages: Python, Java, C++, and R
  • Machine studying frameworks: TensorFlow, Keras, PyTorch, Scikit-learn, and Apache MXNet
  • Data processing and administration: Apache Spark, Apache Hadoop, and Apache Kafka
  • Cloud platforms: Amazon Net Companies (AWS), Microsoft Azure, and Google Cloud Platform (GCP)
  • Database administration: MySQL, PostgreSQL, MongoDB, and Cassandra
  • Containerization: Docker and Kubernetes

It’s value noting that the selection of the know-how stack for AI platform growth depends upon components equivalent to scalability, efficiency, price, and person necessities. Allow us to now take a complete have a look at every of them:

Amazon AI Companies


Amazon Net Companies (AWS) has made great developments within the fields of synthetic intelligence (AI) and machine studying (ML), offering a full vary of companies, infrastructure, and assets to assist purchasers at each stage of their ML adoption journey.

The AI platform from AWS has been important for making predictions based mostly on new knowledge, internet hosting educated fashions within the cloud, and coaching machine studying fashions at scale.

Customers of AWS’ AI platform coaching service could select from quite a lot of machine sorts for coaching duties, allow distributed coaching, use hyperparameter tweaking, and speed up operations utilizing GPUs and TPUs, amongst different customization potentialities.

Nonetheless, no matter whether or not the mannequin was educated on the AWS AI platform, the prediction service supplied by the AWS AI platform allows customers to ship predictions which can be based mostly on the educated fashions.

The newest information from Amazon included the debut of “Bedrock,” a set of generative AI instruments. Bedrock is a group of generative AI instruments that will help AWS customers in creating chatbots, creating and classifying footage based mostly on prompts, and producing and summarizing textual content.

AI companies obtainable on AWS:

  • Amazon Bedrock
  • AWS Trainium
  • AWS Inferentia
  • Amazon CodeWhisperer
  • Amazon SageMaker



TensorFlow has grow to be an exhaustive framework for machine studying that may deal with every stage of the workflow. Along with pre-trained fashions and instruments to simplify mannequin development and produce scalable options, TensorFlow additionally affords machine-learning fashions which can be prepared for manufacturing.

The newest model, TensorFlow 2, contains help for distributed coaching and Python 3.7 whereas streamlining a number of APIs from TensorFlow 1.

TensorFlow Enterprise affords superior efficiency and dependability for AI functions, in addition to managed companies {and professional} help for companies.

Quite a lot of file techniques and file sorts are additionally added to the platform’s built-in performance by TensorFlow I/O. For machine studying issues using Dataset, streaming, and file system extensions that aren’t coated by TensorFlow’s built-in help, the gathering is a useful complement.

AI companies which can be obtainable on TensorFlow could be accessed by way of TensorFlow Hub, which acts because the repository for lots of of ready-to-deploy machine studying fashions.

Google AI Companies

Google Cloud Platform affords Google AI Companies, an entire set of instruments for machine studying actions. Customers could create predictions utilizing hosted fashions on Google Cloud and handle duties, fashions, and variations utilizing the AI platform REST API.


The AI platform coaching service affords custom-made choices for coaching fashions, together with machine kind choice, distributed coaching help, and GPU and TPU accelerated coaching.

On the Google Cloud console, which affords a user-friendly interface for interacting with machine studying assets, customers could handle their fashions, variations, and duties. Assets from the AI platform are linked to Google Cloud’s Cloud Logging and Cloud Monitoring instruments, amongst others.

Moreover, prospects could make the most of the command-line program Gcloud CLI to take care of their fashions and variations, submit jobs, and perform further AI platform features. Google AI is dedicated to bringing the benefits of AI to everybody, from cutting-edge analysis to product integrations that make routine actions simpler.

AI companies obtainable on Google Cloud:

  • Vertex AI
  • AutoML
  • Dialogflow
  • Speech-to-Textual content
  • Textual content-to-Speech
  • VisionAI


Software program supplier H2O.ai provides companies entry to a variety of machine-learning platforms and options. For machine studying and predictive analytics, H2O is a fast, scalable, in-memory, and open-source platform. Customers could merely deploy machine studying fashions in company settings after growing them on Huge Information.

The sturdy and efficient strategies present in H2O, equivalent to generalized linear fashions, deep studying, and gradient-boosted machines, are properly acknowledged. Mannequin coaching and inference could be accomplished shortly due to the optimized, fast, and distributed computing capabilities of the H2O platforms.

H2O is a superb possibility for enterprise-level functions due to its scalability, which allows it to handle huge datasets and tough modeling jobs. To create the best supermodel potential, H2O’s AutoML perform automates all hyperparameters and algorithms.

Over 18,000 consortiums worldwide use H2O, which is well-liked in each the R and Python communities. H2O has three totally different value tiers: Lite (free), Plus (starting at $140/month), and Enterprise (customized).

AI companies obtainable on H2o.ai:

  • H2O AI Cloud
  • H2O Driverless AI
  • H2O Characteristic Retailer
  • H2O Doc AI
  • H2O Wave
  • H2O Glowing Water


Petuum is an AI platform that gives cutting-edge AI options and permits next-generation AI automation for enterprises. The composable, open, and versatile company MLOps platform from Petuum is made to make it easy for AI/ML groups to scale and operationalize their machine-learning pipelines.

The platform, which is the primary composable MLOps platform on the planet, allows anyone to automate processes utilizing the latest Massive Language Fashions (LLMs) with out figuring out any programming or AI. Prospects of Petuum have seen will increase in velocity to worth and productiveness of ML groups and assets of greater than 50%.

Petuum is at present determining the best way to generate profits off the platform, however one potential income stream is a licensing scheme the place purchasers pay based mostly on the variety of machines getting used on a sure AI system.

Petuum has obtained beneficiant funding from traders, together with SoftBank, Tencent, Advantech Capital, Northern Gentle Enterprise Capital, and Oriza, totaling $108 million. AI companies supplied by Petuum could be accessed by clicking the hyperlink.


In an effort to deal with deep studying and different machine studying fashions at scale, customers can use the open-source Polyaxon platform. In an effort to handle deep studying and different machine studying fashions, Polyaxon affords a platform that permits customers to mechanically observe vital mannequin metrics, hyperparameters, visualizations, artifacts, and assets, in addition to model management code and knowledge.


Along with a workflow engine for scheduling and managing intricate interdependencies between processes, Polyaxon affords an optimization engine for automating mannequin tuning. Moreover, Polyaxon affords a registry with role-based entry management, safety, analytics, and governance for storing and versioning elements.

Reproducibility and pipelines are based mostly on enter and output recordsdata, and Polyaxon is language‘ and framework-agnostic, supporting a broad vary of programming languages and libraries.

Run your distributed fashions and concurrent experiments utilizing Polyaxon, which is obtainable for on-premises or cloud deployment, to benefit from cluster assets. For enterprises wishing to deal with deep studying and different machine studying fashions at scale, Polyaxon affords a powerful and adaptable machine studying platform that’s value exploring.

AI companies obtainable on Polyaxon:

  • Polyaxon Cloud
  • Polyaxon Enterprise Version
  • Polyaxon Agent on Kubernetes


DataRobot is an entire AI platform that provides a variety of system interoperability and a workforce of AI specialists to help companies in maximizing the advantages of AI.


With an open and complete AI lifecycle platform, the platform’s capabilities, equivalent to production-scale worth, knowledge platforms, and deployment infrastructure, enable enterprises to get probably the most out of their present technological investments.

Customers could create, deploy, and handle machine studying fashions on the cloud utilizing DataRobot AI Cloud, the corporate’s cloud-based model of its platform. With DataRobot, it’s possible you’ll automate quite a lot of actions with out the necessity for specialised data.

Neural Designer

Neural Designer is a user-friendly knowledge science and machine studying software that focuses on neural networks, a complicated approach within the subject. Customers don’t want to jot down code or create block diagrams to create AI-driven apps because of Neural Designer.

A broad vary of capabilities is obtainable on the platform, equivalent to automated machine studying, mannequin upkeep and deployment, and seamless connections with different applications and platforms.


Neural Designer has a number of advantages, probably the most notable of which is that it makes use of the least vitality than any competing machine studying platforms on the market. When coaching neural networks, this may save some huge cash.

The amount of knowledge utilized, the utilization of GPUs, the form of technical help, and the size of the subscription interval are factored into how a lot Neural Designer prices for the enterprise. Neural Designer affords thorough help, damaged down by license kind, with all the benefits of an inside technical division.

IBM Watson

Watson is a supercomputer developed by IBM that gives clever responses to queries by combining analytical software program and AI, generally known as “cognitive intelligence,” combining state-of-the-art know-how and software program with compute charges of as much as 80 teraflops.

IBM Watson makes use of NLP to grasp the syntax and which means of human language. Watson responds to questions from people in a matter of seconds by digesting and analyzing huge volumes of knowledge.


Many companies now have a aggressive benefit in predictive analytics and problem-solving due because of IBM Watson’s know-how, which raises stakeholder and shopper worth. Attributable to its cloud-based accessibility, IBM Watson has grow to be a preferred selection for small and midsize companies in quite a lot of industries.

IBM Watson has developed right into a reliable and formidable AI system that may present insightful evaluation and sensible options throughout numerous sectors.

AI merchandise obtainable on IBM Watson:

  • IBM Watson Discovery
  • IBM Watson Orchestrate
  • IBM Watson Data Catalog
  • IBM Watson Studio
  • IBM Instana Observability
  • IBM Turbonomic


To wrap up, the utilization of AI platforms has dramatically revolutionized how companies method AI-powered functions. Machine studying fashions can now be constructed and maintained at scale, making the know-how extra economical than ever earlier than.

The AI platform design permits builders to change the mannequin to coach it on a variety of specializations, and AI platform layers enable corporations to deploy these fashions utilizing quite a lot of frameworks, languages, and instruments.

Though AI platforms want specialised talent units and huge knowledge units to coach their fashions, they’re crucial for companies competing for an edge within the digital economic system. As AI know-how advances, we could anticipate extra developments in AI platforms that remodel the best way we method machine studying and deep studying fashions and their impression on society.

Rate this post
Leave a Comment