3 Impacts of AI in the Machine Translation IndustryRecent advances have proven superb results that can provide multiple opportunities for entrepreneurs.

ByPritom Das

Opinions expressed by Entrepreneur contributors are their own.

Throughout history,communicationhas been a crucial component of all aspects of human endeavor. From business and diplomacy to technology in more recent times, the ability to express and understand ideas continues to be a major factor in progress across all sectors. This has become even more important due to globalization and the advent of instant translation technologies via API, not only for trade but also for news, legal issues, etc.

Given that there are over 7,000 languages, content creation and its translation have predictably become an essential role. However, the exponential data deluge has long rendered human services incapable of servicing the incremental needs of publishers and users of translation services. Although the role has historically seen less impact from technology than other spheres due to the inability of automated translation tools to pick up language nuances as well as humans, the advent of advanced artificial intelligence and machine learning software has advanced the state-of-the-art to near human parity.

Big data processing

One of the key drivers of the advanced AI software being deployed for translation services is the access to huge datasets and computers that can process them much more efficiently than was ever possible in the past. Using both, Google, for instance, has been able to drasticallyimprove its translation service, translating 300 trillion words compared to an estimated 200 billion words translated by the professional translation industry in 2019. Although the accuracy of the translations can often be off the mark, the improvement has been significant. This has changed the lives of many businesses and users who had not been able to afford translation services in the past. But it has also raised concerns about privacy and customization of those generic engines to specific needs for industrial and commercial settings.

ge companies can access and mine big data to own or improve their machine translation systems, nothing could be further from the truth. The underlying machine learning required for the development of machine translation, although advanced, is often open-source, enabling a wide range of companies of all sizes to access it and customize it to suit their specific needs. The key points, then, are how these companies build pre- and post-processes and how much data they amass in order to build their own systems.

Related:6 AI Business Tools for Entrepreneurs on a Budget

Specialization

The sheer number of languages used globally has opened an opportunity for businesses to specialize in specific languages as well as specific sectors, such that while the everyday person might use Google to translate tweets, businesspeople who need highlyaccurate translations of a legal documentmight typically consider to continue to hire service providers who specialize in that field. But even in these cases, the amount of data gathered (sometimes many hard disks) make machine translation an ally of the legal profession, defense and law enforcement as they transfer information from one language to another.

将专业翻译人员去ext的图吗inct soon? That has been a frequent question in many professions that have been affected by AI and near human-parity deep automation. Savvy companies are building on the concept of human-in-the-loop so that humans review machine-translated output, make stylistic changes and improvements and it is their own feedback that improves the quality of the translation software. Hardly any language company proposes to translate a document from scratch. In this way, more efficient processes are being implemented, running files and documents through a local or cloud machine translation software and then having people review it for accuracy. That way, the work can be done faster without compromising the high level of accuracy that is required.

Related:What Translators Do, Others Learn

Increasing adoption

Although globalization has led to an increase in the demand for translation services, recent events like the Covid pandemic have accelerated that demand exponentially. Currently, there is a focus on distributed work and the minimization of inter-personal contact to essential occasions. The effect of those trends has been to make companies rely on AI tools to facilitate communication across language barriers.

That increase in demand has in turn accelerated todevelopment of machine translation technology. Looking back to only five years ago, technologies have moved from rule-based and statistical models for translation to Neural Machine Translation (NMT) based on neural networks that seek to deeply mimic the way a human translator would handle and translate documents. As more focus is placed on the sector, the pace of development and involvement ofhumans-in-the-loopwill continue to increase and so the efficiency and accuracy of the machine translation software.

The old method of having human translators pore through documents and translate them line by line has long become outdated and practically extinct, except in a few specialized cases. Twenty-first century enterprises look for high-quality and immediate language deliveries as they handle big data. Advanced artificial intelligence has now made it possible for companies of all sizes to compete on content publishing using specialist machine translation, particularly when they focus on specific languages and use cases. That has also had the effect of opening up opportunities for innovators and entrepreneurs to provide specialized solutions to meet the increasing, globalization-driven demand.

Related:This New Translation Tech Will Smash the Language Barrier to ...

Wavy Line
Pritom Das

Entrepreneur Leadership Network Contributor

Founder/CEO of TravelerPlus

Pritom Das is a tech entrepreneur, business development consultant and freelance writer. He is the founder of travel-based networking site TravelerPlus.

Editor's Pick

Related Topics

Money & Finance

Want to Become a Millionaire? Follow Warren Buffett's 4 Rules.

企业家是不能过度指狗万官方望太多a company exit for their eventual 'win.' Do this instead.

Business Solutions

Learn to Program an AI Chatbot for Your Business in This $30 Course

Get back-to-school savings on this AI coding course.

Growing a Business

We're Now Finding Out The Damaging Results of The Mandated Return to Office — And It's Worse Than We Thought.

Companies knew the mandated return to the office would cause some attrition, however, they were not prepared for the serious problems that would present.

Business Ideas

55 Small Business Ideas to Start in 2023

We put together a list of the best, most profitable small business ideas for entrepreneurs to pursue in 2023.

Business News

Netflix is Hiring an AI-Focused Role—and the Starting Salary is up to $900,000

The streaming giant is looking for a leader in its machine learning department.

Data & Recovery

Get 1TB of Cloud Storage for Life for $119.97 With This Back-to-School Sale

This 1TB Cloud Storage Solution Is Only $119.97 for Back to School