AutoML software

Auto Machine learning (AutoML) software enables data scientists and machine learning engineers as well as non-technical users, to automatically build scalable machine learning models

Automated Machine Learning (AutoML) software, also known as AutoML services/tools, enables data scientists and machine learning engineers as well as non-technical users, to automatically build scalable machine learning models.

Most AutoML software achieve this by auto-analyzing data and selecting algorithms models based on insights gained from data analysis. These models are trained, tested and refined (hyperparameter tuning) on a subset of the available data using various methodologies. Finally, models with the best performance are shared with the end-user.

 

Most AutoML software allow users to trade-off between complexity and performance. Therefore users have the chance to build complex models with high performance or less complex models, explainable models that offer slightly inferior performance.

To be categorized as autoML software, a product must be able to:

  • Build models with a wide range of algorithms (e.g. decision trees, neural nets)
  • Provide a refined model to the end user
If you’d like to learn about the ecosystem consisting of AutoML software and others, feel free to check AIMultiple Machine Learning.

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AutoML software Leaders

According to the weighted combination of 7 data sources

DataRobot

Dataiku

H2O

Google Cloud AutoML

Enhencer

What are AutoML software market leaders?

Taking into account the latest metrics outlined below, these are the current automl software market leaders. Market leaders are not the overall leaders since market leadership doesn’t take into account growth rate.

DataRobot

Dataiku

H2O

Google Cloud AutoML

Akkio

What are the most mature AutoML software?

Which automl software companies have the most employees?

37 employees work for a typical company in this solution category which is 14 more than the number of employees for a typical company in the average solution category.

In most cases, companies need at least 10 employees to serve other businesses with a proven tech product or service. 7 companies with >10 employees are offering automl software. Top 3 products are developed by companies with a total of 200k employees. The largest company building automl software is Google with more than 200,000 employees. Google provides the automl software: Google Cloud AutoML

Google
Dataiku
DataRobot
H2O.ai
dotData

What are the AutoML software growing their number of reviews fastest?


We have analyzed reviews published in the last months. These were published in 4 review platforms as well as vendor websites where the vendor had provided a testimonial from a client whom we could connect to a real person.

These solutions have the best combination of high ratings from reviews and number of reviews when we take into account all their recent reviews.

What is the average customer size?

According to customer reviews, most common company size for automl software customers is 1,001+ employees. Customers with 1,001+ employees make up 42% of automl software customers. For an average Machine Learning solution, customers with 1,001+ employees make up 29% of total customers.

Overall
Customer Service
Ease of Use
Likelihood to Recommend
Value For Money

Customer Evaluation

These scores are the average scores collected from customer reviews for all AutoML software. AutoML software is most positively evaluated in terms of "Overall" but falls behind in "Likelihood to Recommend".

AutoML is a subfield of machine learning concerned with the automation of repetitive tasks of ML processes. It offers pre-designed data analysis tools that allow businesses to obtain well-performing machine learning algorithms for accurate, low-cost, and quick predictions. Wikipedia defines AutoML as "the process of automating the end-to-end process of applying machine learning to real-world problems."

AutoML solutions aim to automate some or all steps of the machine learning process, which includes:

  • Data pre-processing: While real-world data likely contain errors and often incomplete, this process transforms raw data into an understandable format. Techniques like data cleaning, data integration, data transformation, and data reduction are included in this step.
  • Feature engineering: It is a method of using domain knowledge of the data to construct features that make machine learning algorithms work.
  • Feature extraction: This process combines or reduces variables in the raw data to obtain useful features and reduce the amount of data to be processed.
  • Feature selection: Within the raw data, there might be many features that contain irrelevant data. You can choose and use only useful features for analysis in this process.
  • Algorithm selection & hyperparameter optimization: A hyperparameter is a parameter whose value is used to control the learning process. AutoML tools can choose a set of optimal hyperparameters for a learning algorithm, and even select the algorithm that works best with the given conditions.

In a world where people generate increasing amounts of data, businesses require a wide range of data science techniques to conduct accurate analyses and make careful decisions. Without these methods, organizations might be unable to understand their customers clearly, notice sales trends, and can take actions that might result in huge losses. In this environment where data science is becoming more critical for businesses, data science talent is scarce, and projects take significant time. AutoML aims to solve both problems through automation and is, therefore, being adopted by global enterprises.

Human error and bias can undermine the consistency of an organization's models and lead to less accurate predictions. AutoML allows companies to quickly adopt machine learning solutions and leverage the expertise of data scientists on human-level cognitive tasks that can not be easily automated. This increases the return on investment in data science projects and shortens the amount of time it takes to go live and generate business benefits.

AutoML solutions support companies to provide more efficient services. The main benefits can be summarized as below:

  • Cost Reductions: AutoML solutions save a significant amount of time by eliminating manual parts of the analyses and providing faster deployment. With that, the productivity of machine learning processes increases. Also, AutoML reduces the demand for data scientists by democratizing machine learning.
  • Improved Accuracy: As companies grow, the amount of data expands, and trends in the industry evolve. AutoML leads to better models by combining human expertise with machine precision on automatable tasks. As a consequence, all potential errors are removed, and continuously evolving algorithms increase accuracy. For this advantage, businesses can achieve a high degree of accuracy in their forecasts and increase their revenues and customer satisfaction with more accurate insights.

Businesses can automate their machine learning processes in a wide range of use cases. Mostly, companies want to boost the efficiency of their machine learning methods and reach automated insights for better data-driven decisions and forecasts. Typical use cases include:

  • Fraud Detection
  • Pricing
  • Sales Management
You can read our AutoML case studies guide to learn more about use cases.

Although we expect AutoML solutions to grow stronger, there are still limitations that restrain AutoML from its full capacity. Here are the primary pitfalls:

  • Still under development: AutoML is still a growing technology that hasn't reach its potential yet. While it mostly focuses on only supervised models, we can observe that humans beat models that are generated by AutoML solutions.
  • Requires high computational power: To run machine learning processes automatically, companies need to satisfy high computing and storage requirements. Most businesses might prefer more straightforward solutions, as they might not meet them.
  • Lack of explanability: Businesses look for models that are transparent and understandable. Thus, complex models wouldn't be preferred. However, AutoML models can be more complicated than manually configured models, as automated models tend to add complexity to improve results. However, there is a significant effort in this field to ensure that autoML models do not bring additional complexity.

While you can find AutoML solution providers above, we can collect them under three main categories:

  • Open Source: Even secretive tech giants like Apple have released their research findings on AutoML. However, open-source tools require a user to write at least a few lines of code in Python or R to initiate processes.
  • Startups: Many startups aim to provide AutoML tools that can be operated by a non-technical user. Many of these solutions also offer a visualization for greater transparency of the resulting models.
  • Tech Giants: Tech giants like Google start to offer AutoML solutions for businesses. While Google Cloud AutoML is one of the first AutoML tools to be introduced by a tech giant, IBM's SPSS is one of the most common analytics software providers and offers numerous tools, like auto-classifiers.
To learn more, feel free to read our AutoML software guide.

Data scientists predict that AutoML will get better every day and allow the data-driven industries to handle their core processes efficiently. No matter in which area you're doing business, AutoML is likely to become a powerful solution that can manage the manual parts of your machine learning processes. According to a recent ODSC West 2018 talk by Randal S. Olson, Ph.D., in the next five years, AutoML solutions will:

  • handle most of the data cleaning processes.
  • improve the performance of deep learning algorithms.
  • be more scalable, meaning that large datasets will be handled more efficiently.
  • become human competitive.
  • be a step towards a broader meta-learning movement.

Several best practices can be implemented to aid in AutoML processes. According to DataRobot, one of the leading vendors, the best practices of AutoML tools include the following:

  • Start by collecting data: Businesses should describe the tangible result that they intend to forecast, like revenue or consumer turnover. They also need to understand that paper-based data is challenging to obtain, and they have to invest in digitalization.
  • Focus on low-risk endeavors that can be completed in less than six months: Colin Priest, the vice president of DataRobot, states that any project that takes more than a year is "almost certainly doomed for failure," and ones that last longer than six months are also at high risk due to project drags. Thus, companies should seek ideas that can be delivered to the market in a shorter time.
  • Beware of team silos: One primary reason for abandoned projects is that IT teams aren't informed early enough in the project's life cycle. Companies should ensure that their services can be applied alongside with the new project.
  • Debunking the ‘replacement’ myth: The best types of problems to address are those that involve bringing in more customers, developing your product, boosting customer satisfaction, and optimizing production lines. At the same time, AutoML projects that are about reducing expenses or replacing staff tend to fail.