Tech
Even GoPro is pivoting to defense
Want to make money? Start building data centers. Or build batteries to power data centers. Or … pivot to defense.
This is not financial advice, but it’s certainly what seems to be winning over public markets and private investors lately. Ford’s nascent energy-storage business — a fraction in size to Tesla’s and won’t be ready until next year — helped its stock jump more than it has in years. Redwood Materials raised $425 million from blue chip companies like Google and Nvidia by pivoting to data center energy storage. Cerebras just pulled off one of the hottest IPOs of 2026.
Investment in defense startups continues to pour in, with Anduril raising another $5 billion this week. It seems that any company with a remote chance at nabbing government contracts is trying to do just that.
Which brings us to GoPro.
The action camera company has survived a lot over the years. For a while during the 2010s, the term “GoPro killer” was almost as common as “Tesla killer” or “iPhone killer,” with people claiming everything from a TomTom action camera to Google’s Clips (remember that?) would dethrone the California company that invented the category.
Survival does not necessarily mean success, though, and GoPro has struggled of late. Sales are down, losses are up, and its stock price essentially flatlined at about $1 two years ago. So, surprise, last month GoPro announced a plan to “explore defense and aerospace market opportunities.”
It makes a certain amount of sense for a company that combines top-tier image quality with enough durability to withstand a motorcycle crash, or a fall from space. And the pivot was enough to nearly double the company’s stock price for a few days. But that, too, has fallen back to Earth. It seems the “pivot to defense” idea is not as bulletproof as GoPro’s cameras, after all.
You can maybe guess where this is going. On Thursday, GoPro announced it hired investment bank Houlihan Lokey to help evaluate a “potential sale and other strategic alternatives.” The company’s board of directors said it recently received “several unsolicited inbound strategic inquiries from parties across various sectors including defense, consumer and financial,” which is a lot of words to effectively say: “Uh-oh.”
It’s not the first time GoPro has considered a sale; founder and CEO Nick Woodman said it was briefly on the table back in 2018.
But things are certainly now more dire for the company. Not only are its financials deteriorating, but also the company announced last month that it’s laying off a quarter of its workforce, which has already shrunk to fewer than 600 workers after once employing as many as 1,500.
GoPro was a tech darling 15 years ago. But like so many of us, it now finds itself navigating a more volatile world. It’s no surprise that a massively ballooning Pentagon budget looks like a viable path through the churn.
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Tech
Indian Uber rival Rapido raises $240M at $3B valuation
Indian ride-hailing company Rapido said on Friday it had raised $240 million in fresh funding at a $3 billion valuation to compete better in the country’s growing but challenging mobility market.
Led by Prosus, the equity round saw participation from existing investors, including WestBridge Capital and Accel. The round was part of a larger $730 million primary and secondary financing. Rapido was previously valued at $2.3 billion during a secondary transaction last year.
Rapido said the fresh capital would be used to increase its footprint in high-growth markets, strengthen its driver network, and invest in technology and platform efficiency.
“We are going deeper into markets where demand exists, but supply remains fragmented,” Rapido co-founder Aravind Sanka said in a statement. “We will sharpen our focus on strengthening supply, building technologies, and expanding our multimodal footprint, with far greater speed and intent.”
The funding round underlines continuing investor interest in India’s mobility sector despite persistent concerns about pricing pressures, regulation, and profitability.
Founded in 2015, Rapido operates in more than 400 cities and has spurred its growth by enabling ride-hailing for lower-cost and more flexible modes of transport such as motorbikes and auto-rickshaws in India’s congested, price-sensitive cities. The Bengaluru-based startup has been expanding to smaller towns, too.
The funding comes in the wake of Uber CEO Dara Khosrowshahi’s visit to India, where the ride-hailing giant this week unveiled plans to expand its engineering and infrastructure operations via two new technology campuses and a local data center partnership. Uber earlier this year infused $330 million into its India subsidiary as it sought to strengthen its presence amid growing competition from local rivals like Ola, Rapido, and Namma Yatri.
Khosrowshahi said last year that Rapido had overtaken Ola as Uber’s biggest competitor in the country.
India is currently one of the world’s most challenging ride-hailing markets because of intense price competition, supply issues, high driver incentive costs, and evolving local regulations. Nevertheless, Rapido has rapidly expanded its market share, even entering the food delivery business through its subsidiary Ownly last year.
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Tech
Osaurus brings both local and cloud AI models to your Mac
As AI models increasingly become commoditized, startups are racing to build the software layer that sits on top of them. One interesting entrant into this space is Osaurus, an open source, Apple-only LLM server that lets users move between different local AI models, either locally or in the cloud, while keeping their files and tools all on their own hardware.
Osaurus evolved out of the idea for a desktop AI companion, Dinoki, which Osaurus co-founder Terence Pae described as a sort of “AI-powered Clippy.” Dinoki’s customers had asked him why they should buy the app if they still had to pay for tokens — the usage units AI companies charge for processing prompts and generating responses.
That got Pae thinking more deeply about running AI locally.
“That’s how Osaurus started,” Pae, previously a software engineer at Tesla and Netflix, told TechCrunch over a call. The idea, he explained, was to try to run an AI assistant locally. “You can do pretty much everything on your Mac locally, like browsing your files, accessing your browser, accessing your system configurations. I figured this would be a great way to position Osaurus as a personal AI for individuals.”
Pae began building the tool in public as an open source project, adding features and fixing bugs along the way.

Today, Osaurus can flexibly connect with locally hosted AI models or cloud providers like OpenAI and Anthropic. Users can freely choose which AI models they’re using and keep other aspects of the AI experience on their own hardware, like the models’ own memory, or their files and tools.
Given that different AI models have different strengths, the advantage of this system is that users can switch to the AI model that best fits their needs.
Such a structure makes Osaurus what’s called a “harness” — a control layer that connects different AI models, tools, and workflows through a single interface, similar to tools like OpenClaw or Hermes. However, the difference is that such tools are often aimed at developers who know their way around a terminal. And sometimes, like in the case of OpenClaw, they may pose security issues and holes to worry about.
Osaurus, meanwhile, presents an easy-to-use interface that consumers can use and addresses security concerns by running things in a hardware-isolated, virtual sandbox. This limits the AI to a certain scope, keeping your computer and data safe.

Of course, the practice of running AI models on your machine is still in its early days, given that it’s heavily resource-intensive and hardware-dependent. To run local models, your system will need at least 64GB of RAM. For running larger models, like DeepSeek v4, Pae recommends systems with about 128GB of RAM.
But Pae believes local AI’s needs will come down in time.
“I can see the potential of it, because the intelligence per wattage — which is like the metric for local AI — has been going up significantly. It’s on its own curve of innovation. Last year, local AI could barely finish sentences, but today it can actually run tools, write code, access your browser, and order stuff from Amazon … It’s just getting better and better,” he said.

Osaurus today can run MiniMax M2.5, Gemma 4, Qwen3.6, GPT-OSS, Llama, DeepSeek V4, and other models. It also supports Apple’s on-device foundation models, Liquid AI’s LFM family of on-device models, and in the cloud, it can connect to OpenAI, Anthropic, Gemini, xAI/Grok, Venice AI, OpenRouter, Ollama, and LM Studio.
As a full MCP (Model Context Protocol) server, you can give any MCP-compatible client access to your tools as well. Plus, it ships with over 20 native plug-ins for Mail, Calendar, Vision, macOS Use, XLSX, PPTX, Browser, Music, Git, Filesystem, Search, Fetch, and more.
More recently, Osaurus was updated to include voice capabilities as well.
Since the project went live nearly a year ago, it has been downloaded north of 112,000 times, according to its website. The app competes with other tools that let you run models locally, like Ollama, Msty, LM Studio, and others, but offers a differentiated feature set and presents itself as a more user-friendly option for non-developers, too.
Currently, Osaurus’ founders (who include co-founder Sam Yoo) are participating in the New York-based startup accelerator Alliance. They’re also thinking about next steps, which could see Osaurus being offered to businesses, like those in the legal space or in healthcare, where running local LLMs could address privacy concerns.
As the power of local AI models grows, the team believes it could lower the demand for AI data centers.
“We’re seeing this explosive growth in the AI space where [cloud AI providers] have to scale up using data centers and infrastructure, but we feel like people haven’t really seen the value of the local AI yet,” Pae said. “Instead of relying on the cloud, they can actually deploy a Mac Studio on-prem, and it should use substantially less power. You still have the capabilities of the cloud, but you will not be dependent on a data center to be able to run that AI,” he added.
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Tech
Meridian Ventures launched a $35M fund with a focus on MBA-deferred founders
Meridian Ventures was born out of a shared experience: deferred MBAs. Now, founders Devon Gethers and Karlton Haney have raised a $35 million fund to back pre-seed and seed-stage companies started by people like them.
Gethers, 29, told TechCrunch the idea for a firm arose after he met Haney in Harvard’s MBA deferred admission program in 2020.
Gethers grew up in poverty in Washington State, studied behavioral science and finance at the University of Utah, then moved into private equity before launching a company of his own (which he later exited). Haney, meanwhile, grew up on a farm in Arkansas, raising chickens, birds, and “anything that flew,” Gethers said about his business partner.
Haney, 28, went on to study industrial engineering at the University of Arkansas and worked as an investor at the family office, the Stephens Group. The two came together in 2023 with the idea of launching a firm that backed people with MBAs, with a tilt toward those who had deferred.
“Our thesis is going against a bit of the grain, the rhetoric you hear in Silicon Valley that MBAs don’t make good founders,” Gethers said, referring to the belief that an MBA prepares students for corporate culture, not the flexible, free-wheeling world of Silicon Valley.
To prove their thesis, Gethers and Haney went out and cold-called prospective limited partners and knocked on doors until they raised $2.5 million as a proof-of-concept fund to back 45 companies.
The two headed off to Harvard Business School in summer 2023 and about a year into it, decided to try and raise their first institutional fund. The funding environment was tough, but the pair ended up raising an oversubscribed $35 million fund from LPs, including publicly traded banks, family offices, and Fortune 500 executives, Gethers said. They graduated from Harvard Business School in 2025.
This new fund will back founders building enterprise technology in the United States. Meridian is agnostic, Gethers said, noting that the firm has already invested in companies in fintech, logistics, healthcare, and of course, AI. The average check size will be $500,000 for pre-seed and $750,000 for seed, and the capital hopes to be deployed over the next three years.
“We saw an expanding gap between ambitious founders building frontier technologies and the capital required to help carry those ambitions forward,” Gethers said. “With this $35 million fund, our goal is to seal that gap.”
This piece was updated to clarify that the firm also backs those who have not deferred.
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