Share this guide

Speech recognition is a hot topic. Google just announced new features for its voice assistant like continued conversation and multiple actions. Amazon Alexa has been leading the way in voice-enabled shopping. Both companies are making vast improvements, but they're missing the big picture.

Voice assistants are not the future of voice.

Voice assistants will be a component for consumers, but the sleeping giant is speech recognition for businesses. By 2020, there will be more than 169 billion calls made to businesses per year. Businesses currently invest large amounts in software to track and personalize the customer journey, but they're blind when it comes to those calls with their customers. Why? Most speech recognition is terrible.

Much of speech recognition has been optimized for one-way, short-form conversations like those delivered to an assistant.

Speech recognition hasn't been trained to handle real-life use cases. So, when you're calling your insurance company from the side of a busy freeway, the resulting data may look something like this:

Actual result from leading speech recognition provider

Rather than:

Higher accuracy speech recognition allows for faster action and greater insight into your customer's wants and needs.

And, with nearly 90% of companies saying they compete on the basis of customer experience, an inability to act on the insights buried within speech means massive missed opportunity.

For example, the difference between a five minute wait for that tow versus a two hour one will probably cause you to switch insurance providers. Multiply that by the number of people that need roadside assistance every year and soon all those unhappy customers mean huge losses in revenue.

That's why companies like NVIDIA, a leader in AI Computing, has invested in Deepgram to revamp the way companies approach speech recognition.

"While many companies already implement accelerated speech recognition, true speech analytics has until recently been largely untouched by deep learning," said Jeff Herbst, vice president of business development at NVIDIA. "Deepgram has done an amazing job introducing deep learning to this field, and we look forward to working closely with them to advance deep learning-driven speech analytics to the next level."

Deepgram works with companies that facilitate these critical moments by building speech recognition models directly trained and tailored to deliver high accuracy on everyday audio. By pushing our models to perform under complex, real-life conditions with background-noise, multiple speakers, diverse accents, and more, our customers achieve accuracy rates miles above what they were seeing from competitor solutions. With Deepgram's speech recognition, they finally get visibility into a pivotal piece of the customer journey.

To learn more about Deepgram's speech recognition built for business, contact

If you have any feedback about this post, or anything else around Deepgram, we'd love to hear from you. Please let us know in our GitHub discussions .

Unlock language AI at scale with an API call.

Get conversational intelligence with transcription and understanding on the world's best speech AI platform.

Sign Up FreeBook a Demo