Upgrade & Secure Your Future with DevOps, SRE, DevSecOps, MLOps!

We spend hours on Instagram and YouTube and waste money on coffee and fast food, but won’t spend 30 minutes a day learning skills to boost our careers.
Master in DevOps, SRE, DevSecOps & MLOps!

Learn from Guru Rajesh Kumar and double your salary in just one year.

Get Started Now!

DEMOCRATIZING DATA-DRIVEN PROCESSES THROUGH AUTOML FOR BETTER BUSINESS PROSPECTS

Source: analyticsinsight.net

Data Science and Machine Learning are among the most deployed and useful technologies of the current marketplace. And as the utility increases, the new wave of advancements hit the industry with more innovations in its tides. Similarly, to add an extra edge to what Data Science and ML could achieve, we now have AutoML (Automated Machine Learning) platforms. It is among the top trends of contemporary data-market with most of the big techs investing in its successful incorporation. Companies including Google, Amazon, Microsoft have already embraced AutoML in their business processes to accelerate the effectiveness of their operations and products. Considered as a quiet revolution in AI, the technology has transformed the entire data science landscape while offering a great deal to modern-day businesses.

Let’s know what AutoML actually is?

Automated machine learning (AutoML) is the process to automate an end-to-end process of leveraging machine learning algorithms to real-world problems. One of the most peculiar features of the technology is that even people with no data science or ML expertise can work with this platform to carry out desired outcomes.

But why do we need AutoML?

According to Gartner’s survey, it takes around 4 years to make an AI project go live which doesn’t cope-up with the rising demand and transforming market dynamics. And, according to statistics, huge investments in data and AI projects are only successful 15% of the time. However, with the rise in current trends and the AutoML platform, small AI projects can be produced in a short period of time.

Moreover, the soaring demands for machine learning systems don’t imply the successful deployment of ML models across a wide range of applications. Its success requires a proficient team of seasoned data scientists and a team that decides which model is the best for a particular business problem. But the shortage of data science talents has doesn’t quite fulfilled the scenario. Here enters the AutoML platform which tends to automate the maximum number of steps in an ML pipeline while reducing the human effort without compromising on the quality of performance.

So how is it changing the landscape of modern businesses?

Have you heard of Mercari? Mercari is a popular online shopping app in Japan. The company uses Google’s AutoML tool in order to better process the image classification. Using a UI for uploading photos, Mercari’s app can identify and suggest brand names from over 12 major brands through customized AutoML pipeline technology.

Leveraging Google’s AutoML platform enabled the company to customize ML models in successfully identifying over 50,000 images with an accuracy of 91.3%.

Moreover, the implementation of automated machine learning across physical retail stores is redefining their future with rich business benefits including better sales forecasting and significant others. Analyzing the available current customer data and purchasing season, the AutoML platform can help retail industry businesses with better sales prospects. This can subsequently reduce the unused inventory costs and waste in unnecessary promotions.

While leveraging the AutoML to enhance business effectiveness and productivity, brands can also improve customer personalization through customization.

For any business across any industry, AutoML is bound to make cost reductions and increase productivity for data scientists while the democratization of machine learning reduces demand for them. The technology also helps accelerate revenues and customer satisfaction. AutoML models with enhanced accuracy possess the capability to improve other, less tangible business results too.

Related Posts

What is Data Pipelining Tools and that are the Different Types of Data Pipelining Tools?

Introduction to Data Pipelining Tools Data pipelining tools are an essential part of modern data management processes. As companies collect more and more data, they need to Read More

Read More

What are Data Engineering Tools?

Introduction to Data Engineering Tools Data engineering is a crucial component of the data lifecycle that involves collecting, transforming, storing, and managing large datasets. With the increase Read More

Read More

What is a data science platform?

Introduction to Data Science Platforms Data Science Platforms have revolutionized the way businesses operate by providing a comprehensive suite of tools for managing and analyzing large volumes Read More

Read More

What are Data Analytics Tools and Why are Data Analytics Tools Important?

Introduction to Data Analytics Tools Data analytics tools are software solutions designed to collect, process, and analyze large sets of data to extract valuable insights. With data Read More

Read More

What is Data Science Platform and Why Data Science Platform is important?

Introduction to Data Science Platforms In today’s data-driven world, businesses are collecting and processing vast amounts of information to gain insights, make informed decisions, and stay ahead Read More

Read More

GET RECRUITED: TOP DATA SCIENCE JOBS TO APPLY THIS WEEKEND

Source – https://www.analyticsinsight.net/ Data science is an essential part of any industry today, given the massive amounts of data that are produced. Data science is one of Read More

Read More
Subscribe
Notify of
guest
0 Comments
Oldest
Newest Most Voted
Inline Feedbacks
View all comments
0
Would love your thoughts, please comment.x
()
x