The four companies will work out of the Ion's coworking space. Rendering courtesy of Common Desk

A new program has tapped four Houston startups and invited them to work out of the Ion surrounded and supported by fellow tech entrepreneurs.

The Ion's Onramp program, launched in July of this year, selects a handful of startups to operate out of the innovation hub's coworking space operated by Common Desk. Patenteer, Sensytec, Bridge Energy Solutions, and Stratos Perception will begin the program in January, according to a release from the Ion.

"These startups were selected due to the strength of their focus on leading digital transformation and leveraging technology to solve challenges that affect numerous industries in Houston," says Jan E. Odegard, executive director of the Ion, in the release. "Solving these challenges—which include commercializing research from Houston's academic institutions, developing resilient and robust infrastructure, leading the clean and sustainable energy transition, and propelling future aerospace advancements—is integral to Houston's success."

It's the second round of the program, and these four companies will be joining the first cohort, which includes Roxie Health, SpeakHaus, SUNN, and Justli. While not an accelerator, the eight companies receive up to 18 months of discounted shared desk membership, pitch practice, access to weekly programming, and one-on-one mentorship from Christine Galib, senior director of entrepreneurship and innovation.

"Selected startups in the first and second cohorts not only feature amazing startups but also represent Houston's diversity," says Odegard in the release. "We still have work to do, but we are making strides as we add the startups in the second cohort to the program.

"In the first six months, Cohort One startups have achieved notable accomplishments, including acquiring new clients and driving business development, designing revamped dashboards and prototypes, raising five-figure sums, taking first place at a national pitch competition, and securing selection into DivInc's first Women in Tech Accelerator," he continues.

The program intends to have a new cohort every six months and is looking for startups currently or planning to raise a pre-seed, seed, or series round of funding.

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Houston food giant Sysco to acquire competitor in $29 billion deal

Mergers & Acquisitions

Sysco, the nation's largest food distributor, will acquire supplier Restaurant Depot in a deal worth more than $29 billion.

The acquisition would create a closer link between Sysco and its customers that right now turn to Restaurant Depot for supplies needed quickly in an industry segment known as “cash-and-carry wholesale.”

Sysco, based in Houston, serves more than 700,000 restaurants, hospitals, schools, and hotels, supplying them with everything from butter and eggs to napkins. Those goods are typically acquired ahead of time based on how much traffic that restaurants typically see.

Restaurant Depot offers memberships to mom-and-pop restaurants and other businesses, giving them access to warehouses stocked with supplies for when they run short of what they've purchased from suppliers like Sysco.

It is a fast growing and high-margin segment that will likely mean thousands of restaurants will rely increasingly on Sysco for day-to-day needs.

Restaurant Depot shareholders will receive $21.6 billion in cash and 91.5 million Sysco shares. Based on Sysco’s closing share price of $81.80 as of March 27, 2026, the deal has an enterprise value of about $29.1 billion.

Restaurant Depot was founded in Brooklyn in 1976. The family-run business then known as Jetro Restaurant Depot, has become the nation's largest cash-and-carry wholesaler.

The boards of both companies have approved the acquisition, but it would still need regulatory approval.

Shares of Sysco Corp. tumbled 13% Monday to $71.26, an initial decline some industry analysts expected given the cost of the deal.

Houston researcher builds radar to make self-driving cars safer

eyes on the road

A Rice University researcher is giving autonomous vehicles an “extra set of eyes.”

Current autonomous vehicles (AVs) can have an incomplete view of their surroundings, and challenges like pedestrian movement, low-light conditions and adverse weather only compound these visibility limitations.

Kun Woo Cho, a postdoctoral researcher in the lab of Rice professor of electrical and computer engineering Ashutosh Sabharwal, has developed EyeDAR to help address such issues and enhance the vehicles’ sensing accuracy. Her research was supported in part by the National Science Foundation.

The EyeDAR is an orange-sized, low-power, millimeter-wave radar that could be placed at streetlights and intersections. Its design was inspired by that of the human eye. Researchers envision that the low-cost sensors could help ensure that AVs always pick up on emergent obstacles, even when the vehicles are not within proper range for their onboard sensors and when visibility is limited.

“Current automotive sensor systems like cameras and lidar struggle with poor visibility such as you would encounter due to rain or fog or in low-lighting conditions,” Cho said in a news release. “Radar, on the other hand, operates reliably in all weather and lighting conditions and can even see through obstacles.”

Signals from a typical radar system scatter when they encounter an obstacle. Some of the signal is reflected back to the source, but most of it is often lost. In the case of AVs, this means that "pedestrians emerging from behind large vehicles, cars creeping forward at intersections or cyclists approaching at odd angles can easily go unnoticed," according to Rice.

EyeDAR, however, works to capture lost radar reflections, determine their direction and report them back to the AV in a sequence of 0s and 1s.

“Like blinking Morse code,” Cho added. “EyeDAR is a talking sensor⎯it is a first instance of integrating radar sensing and communication functionality in a single design.”

After testing, EyeDAR was able to resolve target directions 200 times faster than conventional radar designs.

While EyeDAR currently targets risks associated with AVs, particularly in high-traffic urban areas, researchers also believe the technology behind it could complement artificial intelligence efforts and be integrated into robots, drones and wearable platforms.

“EyeDAR is an example of what I like to call ‘analog computing,’” Cho added in the release. “Over the past two decades, people have been focusing on the digital and software side of computation, and the analog, hardware side has been lagging behind. I want to explore this overlooked analog design space.”