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418 points speckx | 2 comments | | HN request time: 0.557s | source
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jawns ◴[] No.44974805[source]
Full disclosure: I'm currently in a leadership role on an AI engineering team, so it's in my best interest for AI to be perceived as driving value.

Here's a relatively straightforward application of AI that is set to save my company millions of dollars annually.

We operate large call centers, and agents were previously spending 3-5 minutes after each call writing manual summaries of the calls.

We recently switched to using AI to transcribe and write these summaries. Not only are the summaries better than those produced by our human agents, they also free up the human agents to do higher-value work.

It's not sexy. It's not going to replace anyone's job. But it's a huge, measurable efficiency gain.

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dsr_ ◴[] No.44974877[source]
Pro-tip: don't write the summary at all until you need it for evidence. Store the call audio at 24Kb/s Opus - that's 180KB per minute. After a year or whatever, delete the oldest audio.

There, I've saved you more millions.

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doorhammer ◴[] No.44975220[source]
Sentiment analysis, nuanced categorization by issue, detecting new issues, tracking trends, etc, are the bread and butter of any data team at a f500 call center.

I'm not going to say every project born out of that data makes good business sense (big enough companies have fluff everywhere), but ime anyway, projects grounded to that kind of data are typically some of the most straight-forward to concretely tie to a dollar value outcome.

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la_fayette ◴[] No.44975479[source]
Yes that sound like important and useful use cases. However, these are solved by boring old school ML models since years...
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1. esafak ◴[] No.44975626[source]
It's easier and simpler to use an LLM service than to maintain those ad hoc models. Many replaced their old NLP pipelines with LLMs.
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2. prashantsengar ◴[] No.44975881[source]
The place I work at, we replaced our old NLP pipelines with LLMs because they are easier to maintain and reach the same level of accuracy with much less work.

We are not running a call centre ourselves but we are a SaaS offering the services for call centre data analysis.