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This week on Newsroom Robots, host Nikita Roy is joined by Tav Klitgaard, the CEO of the Danish newsroom Zetland, to unpack the origin story of GoodTape — an AI transcription tool that began as an internal newsroom solution and evolved into a profitable, global product used far beyond journalism.
Zetland is an audio-first newsroom in Denmark. But GoodTape wasn’t born from an AI strategy or a product roadmap. It emerged from a familiar newsroom pain point of journalists spending hours transcribing interviews, with existing tools falling short, especially in non-English languages like Danish.
In this conversation, Tav breaks down how GoodTape went from an internal experiment to a standalone, subscription-based product that quickly became profitable, generated millions in revenue and was eventually divested. He also shares what building GoodTape taught Zetland about AI adoption, organizational learning, and where newsrooms should, and shouldn’t, use generative AI.
This episode covers:
05:50 – How a prototype using OpenAI’s Whisper sparked GoodTape
08:36 – The moment Zetland realized GoodTape could be a real product
12:34 – How journalism’s trust and privacy standards became a product advantage
13:59 – What actually improves transcription quality beyond the model itself
15:27 – How GoodTape became profitable and contributed to Zetland’s revenue
16:29 – Why Zetland eventually divested GoodTape instead of scaling it internally
17:36 – What building an AI product taught Zetland about newsroom AI adoption
19:08 – Why Zetland uses AI for productivity, not editorial output
28:14 – A real-world example of AI use that forced Zetland to rethink its own guidelines
30:34 – Why principles matter more than rigid AI rules in newsrooms
🎧 Listen to the full conversation with Tav Klitgaard on Apple Podcasts, Spotify, or your favorite podcast platform.
Hosted on Acast. See acast.com/privacy for more information.
By Nikita Roy5
1515 ratings
This week on Newsroom Robots, host Nikita Roy is joined by Tav Klitgaard, the CEO of the Danish newsroom Zetland, to unpack the origin story of GoodTape — an AI transcription tool that began as an internal newsroom solution and evolved into a profitable, global product used far beyond journalism.
Zetland is an audio-first newsroom in Denmark. But GoodTape wasn’t born from an AI strategy or a product roadmap. It emerged from a familiar newsroom pain point of journalists spending hours transcribing interviews, with existing tools falling short, especially in non-English languages like Danish.
In this conversation, Tav breaks down how GoodTape went from an internal experiment to a standalone, subscription-based product that quickly became profitable, generated millions in revenue and was eventually divested. He also shares what building GoodTape taught Zetland about AI adoption, organizational learning, and where newsrooms should, and shouldn’t, use generative AI.
This episode covers:
05:50 – How a prototype using OpenAI’s Whisper sparked GoodTape
08:36 – The moment Zetland realized GoodTape could be a real product
12:34 – How journalism’s trust and privacy standards became a product advantage
13:59 – What actually improves transcription quality beyond the model itself
15:27 – How GoodTape became profitable and contributed to Zetland’s revenue
16:29 – Why Zetland eventually divested GoodTape instead of scaling it internally
17:36 – What building an AI product taught Zetland about newsroom AI adoption
19:08 – Why Zetland uses AI for productivity, not editorial output
28:14 – A real-world example of AI use that forced Zetland to rethink its own guidelines
30:34 – Why principles matter more than rigid AI rules in newsrooms
🎧 Listen to the full conversation with Tav Klitgaard on Apple Podcasts, Spotify, or your favorite podcast platform.
Hosted on Acast. See acast.com/privacy for more information.

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