
Deconstructing The DeepSeek Story
Deconstructing The DeepSeek Story https://www.visualstorytell.com/wp-content/uploads/2025/02/DeepSeek-Story.png 824 500 Shlomi Ron Shlomi Ron https://secure.gravatar.com/avatar/906bcce31d9695cb030087534b5f0f6e?s=96&d=mm&r=g- Shlomi Ron
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Is your head still spinning from the recent whirlwind drama around DeepSeek?
Well, no worries, I’m here for you to deconstruct the whole story to its basic parts and focus only on the key aspects of what happened.
Baseline Information
Let’s start with labeling the key characters.
A foundation AI model – like OpenAI’s ChatGPT or Anthropic’s Claude chatbot – powers many applications like search engines and image generators.
To create such a chatbot, you need three ingredients:
1. Compute – Powerful computers, often using expensive NVIDIA chips, to run AI models.
2. Data – The information AI learns from.
3. Training & Algorithms – The rules and methods AI follows to learn and make decisions.
Now, let’s break down the story into its 3 acts:
Act 1: Setting
The Dominant Narrative
Since OpenAI released ChatGPT in September 2022, the common narrative has been that these foundation models are expensive because they need a lot of computing power for training.
In support of this narrative, PitchBook reports a funding frenzy pouring more than $155 billion into AI startups between 2023 and 2024.
AI startups – OpenAI and Anthropic – are raising $24 billion and $16 billion to build AI that aims to be as intelligent as humans.
To enable this massive compute power startups relied on Nvidia’s expensive chips that catapulted the company to fame and untold fortune.
Act 2: Conflict
Early last week, a Chinese startup called DeepSeek rocked the global markets by introducing a powerful AI model with far less money and less compute power to train than the common narrative earlier suggested.
How less?
$6 million compared to $100 million to $1 billion other AI startups spend on training their models.
Huge difference, right?
Over a few days, the DeepSeek app surpassed OpenAI’s ChatGPT as the top downloaded app in the Apple App Store in the U.S.
What’s more, the app’s ascend in popularity also wiped $1 trillion from the leading U.S. tech index, including $600 billion from Nvidia – a leading maker of those expensive computer chips that power AI models.
Act 3: Resolution
The ricochets from what the media calls a ‘Sputnik moment’ are still percolating, yet a few lessons start to surface.
DeepSeek used an open-source model, partly from Meta’s open-source Llama model, which vindicates Meta’s narrative for using open-source vs. proprietary models like OpenAI’s.
Investors are now scratching their heads why invest so much money in AI startups if you can get the same quality at a minuscule fraction of the cost?
Some investors now say the current AI foundation model market is unstable and too risky.
DeepSeek’s rise to the top comes in the face of the U.S. government’s attempts to keep advanced chips out of the hands of Chinese companies to avoid risks they’ll use them for military purposes.
Some speculate that’s exactly what forced DeepSeek to innovate by finding a workaround.
Another emerging moral that started to gel from DeepSeek’s overnight success – is that, hey, this is proof that the game is now open to healthier competition even from smaller AI startups.
As evidence of this, the Hugging Face website where people post their open-source projects, now has more than 600 versions of the DeepSeek model!
At the heels of the TikTok debacle, we also witness another emerging truth: consumers prefer quality over the origin country of the product, considering DeepSeek’s overnight popularity.
And that, yes we’re still in the early days of AI evolution with more surprising plot twists ahead.
There is still a lot of fog surrounding the validity of DeepSeek’s claims, yet no matter how you explain it, in just a few days, this startup generated seismic changes:
- Stock market havoc
- Toppling down ChatGPT as the most downloaded app
- Rocking 3 narratives:
- It’s expensive to train foundation models
- Proprietary models are better than open-source
- Consumers care about products’ country of origin
Stay tuned to the next episode as the AI landscape continues to evolve.
It should be exciting 🙂
See you next time!
- Post Tags:
- AI
- ai chatbots
- brand storytelling
- Posted In:
- AI
- Case studies
- Story Telling
- Story Visualizing
- Uncategorized
Shlomi Ron
Shlomi Ron is the founder and CEO of the Visual Storytelling Institute, a Miami-based think tank with a mission to bring the gospel of visual storytelling from the world of art to more human-centric and purpose-driven marketing. A digital marketing veteran with over 20 years of experience working both on the agency and brand sides for Fortune 100/500 brands such as Nokia, IBM, and American Express. He started VSI to combine his marketing expertise with his passion for visual stories stemming from his interests in classic Italian cinema and managing the estate of video art pioneer, Buky Schwartz. At VSI, he helps brands rise above the communication noise through visual storytelling consulting, training, and thought leadership. Select clients include Estée Lauder, Microsoft, and Cable & Wireless – to name a few. He currently teaches Brand Storytelling at the University of Miami’s Business School. Thought leader and speaker at key marketing conferences. He is also the host of the Visual Storytelling Today podcast, which ranks in the top 10 best business storytelling podcasts on the Web. His book: Total Acuity: Tales with Marketing Morals to Help You Create Richer Visual Brand Stories. Outside work, he is a nascent bread baker, The Moth fan, and longtime fedora wearer likely to jive with his classic Italian cinema interest.
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