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- ⚙️ Duolingo and Klarna's "AI-first" bet backfires
⚙️ Duolingo and Klarna's "AI-first" bet backfires

Good morning. The U.S. and China have agreed to slash tariffs from 125% to 10% for 90 days, sending markets soaring and Treasury Secretary Scott Bessent gushing about "the equanimity" of Swiss scenery.
In today’s newsletter:
🌿 AI for Good: Filling the gaps in biodiversity knowledge

Source: McGill University
AI could close five of the seven largest blind spots in global biodiversity knowledge, a review led by Laura Pollock, a biologist at McGill University, and computer scientist David Rolnick finds. Existing tools tackle only two gaps, leaving questions on species traits, interactions and evolution mostly unanswered. “It was also surprising to see just how narrowly AI is being applied when it has so much potential to address many of these shortfalls,” Rolnick notes.
Key findings
Scope – Fewer than one in 10 biodiversity papers that cite AI go beyond distribution mapping or trait detection.
Potential – Models blending remote sensing and eDNA can map ranges, infer food webs and flag extinction risk in near real time.
Equity risk – Temperate-region data dominate, so bias-correction methods must accompany model rollout.
Next steps – Open data standards, algorithm transparency and safeguards for Indigenous knowledge can keep new tools from widening research gaps.
Why it matters:
Without baseline data on where species live and how they interact, conservation strategies remain guesswork. AI can sift satellite imagery, camera-trap photos and environmental-DNA records at scales fieldwork cannot match, accelerating risk assessments for the world’s most threatened ecosystems. Most of these capabilities are underused. Pollock and Rolnick emphasize the need for better data-sharing, algorithmic transparency and ethical safeguards to avoid reinforcing scientific and geographic inequities.

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🧱 LegoGPT brings endless designs to the forefront

Source: Arvix
A new generative-AI model called LegoGPT can create LEGO structures that you can build at home from natural language prompts. It goes beyond generating creative designs by making sure each structure is physically stable through physics-aware modeling.
Trained on a dataset of over 47,000 human-designed LEGO builds, LegoGPT produces realistic constructions that pass stability checks before being rendered. Unlike previous models that generate visually appealing but unstable results, LegoGPT prioritizes functional, buildable outputs.
How it works:
Prompt-to-Design Generation: Transformer-based architecture to generate 3D LEGO models from natural language descriptions.
Layer-by-Layer Placement: It builds models one layer at a time, mirroring how humans construct physical LEGO sets.
Stability Simulation: Generated structures are run through a physics simulator that tests for mechanical stability. Unstable outputs are discarded.
Token-Level Brick Planning: Each “token” in the model corresponds to a brick’s position, color, and type, ensuring fine-grained control and coherence.
Why it matters:
Models and assistants are starting to crop up in CAD software like Autodesk’s Fusion, Zoo and many others. LegoGPT is an early example of physics-aware AI design. Rather than relying on rules of thumb or human intervention, it embeds stability checks into the generation loop itself. If software can learn the laws of motion, tomorrow’s design tools won’t just imagine what’s possible, they’ll help get those designs into your hands.

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Saudi crown prince launches new company to develop AI technologies.
Abu Dhabi’s Mubadala pours $10B into TWG Global.
Why an AI data center on the Prairie is sitting empty.
Argentina hopes to attract Big Tech with nuclear-powered AI data centers.


🦜 Klarna and Duolingo learn the limits of going AI first

Source: ChatGPT 4o
Klarna’s gamble on replacing customer support staff with AI is being walked back. CEO Sebastian Siemiatkowski said the Stockholm fintech will start hiring again so customers can “always have the option to speak to a live representative.” He did not give head-count targets but told Bloomberg Klarna will recruit students and rural talent to rebuild its support ranks after boasting last year that AI handled the work of 700 agents.
Duolingo, which shifted to an AI-first model last month, is facing a social media revolt rather than a staffing crunch. TikTok users have flooded the language app’s comment section with complaints such as “Mama, may I have real people running the company” after jumping on the “Mama, may I have a cookie” trend. Critics accuse the firm of firing contractors to pad margins while undermining education quality.
A Duolingo spokesperson said the Pittsburgh company is not replacing learning experts, calling AI “a tool they use to make Duolingo better.” Shares remain near record highs after the company raised its 2025 sales forecast, but the backlash underscores consumer unease. A World Economic Forum survey found 40% of employers plan to cut jobs as automation spreads, while nearly half of Gen Z job seekers fear AI is devaluing their degrees.
The big picture: Klarna’s retreat and Duolingo’s blowback show that moving too quickly to an AI-first model can bruise customer trust and brand image, even when the technology promises lower costs.
🔮 Google enters the competition for equity in AI startups

Source: ChatGPT 4o
Google unveiled the AI Futures Fund on May 12, an always-open program that writes equity checks (size undisclosed) and gives startups early access to DeepMind’s latest large models, plus Google Cloud credits and direct collaboration with Google researchers and designers. There are no cohorts or deadlines; the team invests whenever a company fits its thesis. Here’s what startups part of the fund get: Early access to Gemini, Imagen and Veo; embedded Google Labs/DeepMind staff; six-figure Cloud credits; stage-agnostic equity.
Google Labs executive Jonathan Silber is listed as “Co-Founder and Director” and so far, 12 startups have been announced through the program. The full list can be found here. A few highlights:
Toonsutra – an Indian webtoon and comic platform using Gemini to auto-translate across multiple Indian languages.
Viggle – an AI-powered meme generator leveraging Gemini, Imagen and Veo to experiment with new video formats.
Rooms – a collaborative 3D space creation platform that’s prototyping richer avatar and content experiences using Gemini APIs.
Google has tried this approach before, but not with full model access. In 2017 Google launched Gradient Ventures, an in-house VC fund that took minority stakes and offered AI mentorship, but it didn’t bundle DeepMind models or cloud credits. The new fund fuses Gradient’s investing with an accelerator-style services stack, giving Google tighter product alignment with each company.
There’s a growing number of companies spinning up investment funds targeting these AI startups. A few examples:
Company | Program | Structure & size | Sweeteners |
$175 M evergreen VC vehicle (plus SPVs) | Equity + priority GPT-4/APIs | ||
Anthology Fund (with Menlo Ventures) | $100 M, Menlo-financed | Equity, $25 K Claude credits, safety mentorship | |
Founders Hub | Non-equity; up to $150 K Azure + $2.5 K GPT-4 credits | 1-on-1 Azure AI advisers | |
Generative AI Accelerator | 10-week, non-equity; up to $300 K AWS credits | Mentors, GTM with Bedrock & Trainium | |
AI Startup Program (Station F) | 5-startup European accelerator | FAIR mentoring, free Scaleway compute, open-source Llama stack |
The startup credit war is intensifying. AWS has issued >$6B in credits over a decade, while Microsoft pushes GPT-4 via Azure, and Google just earmarked an unspecified – but presumably large – sum for AI Futures Fund. The strategy is identical: subsidize compute today to secure long-term platform rents.
Go deeper: Equity + infra ties could leave tomorrow’s unicorns dependent on a handful of cloud providers. The U.S. FTC is already probing whether free credits create an unfair moat in AI infrastructure. Without a disclosed size or check-range, it’s unclear how many startups Google can realistically back. Google is also a major investor in Anthropic. How will conflicts be managed when both arms chase the same deal?

Big Tech has traded acquisition sprees for “capital plus models plus compute” bundles. The prize isn’t just financial return; it’s ecosystem capture. Whoever supplies the brains, GPUs and distribution rails for new AI companies will skim value from every downstream success. Google’s AI Futures Fund is a response to Microsoft-OpenAI’s head start – blending its world class research bench with a Google sized checkbook. If founders flock to Big-Model-as-a-Service deals, the next wave of AI unicorns may look less independent than the last: brilliant, well-funded, yet forever plugged into the cloud that raised them.
And the money keeps coming. Sovereign-wealth giants from Riyadh, Abu Dhabi and Singapore, plus multibillion-dollar VC megafunds, are chasing the same few generative-AI bets. With hundreds of billions in “dry powder” hunting unicorns, capital is plentiful – but differentiated access to compute and distribution is scarce. That imbalance only amplifies the leverage of platforms like Google.


Which image is real? |



🤔 Your thought process:
Selected Image 1 (Left):
“Always look at the hands. The monkey in the [other] image has an extra finger on his lower hand. ”
“In [the other] image the monkey's right arm seemed to be growing out of his rib cage!”
Selected Image 2 (Right):
“The monkey [in the other image] doesn't look like it is really taking a bit of the banana and didn't like it was truly in the environment it was shown in.”
“[The other image] is almost completely in focus throughout the frame which would not be the case in a photographic image with depth of field challenges ”
Would you like to see more AI or Not mediums? |
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