Boston, MA
Boston University offers striking PhD students 12-month stipends if they work summers – The Boston Globe
In its latest efforts to help end a nearly two-month strike by graduate student workers, Boston University proposed granting all PhD students access to a 12-month stipend, a university leader said Tuesday.
The proposal came during the 25th bargaining session between the university and the graduate worker’s union, said university provost Kenneth Lutchen in an email to BU community members. The strike by graduate workers, who teach classes, grade student work, and conduct research, has impacted classes and university life since late March.
The new 12-month stipend policy would enable all PhD students who were previously on eight-month stipends to work or conduct research over the summer to receive a minimum of $42,159 annually, Lutchen said.
“Students have repeatedly spoken of the challenges of living with an eight-month stipend and how it affects their financial security,” Lutchen said, adding: “We hope that this move at the bargaining table signals our goodwill and seriousness of purpose in moving toward resolution with [Boston University Graduate Workers Union] and reaching an agreement that supports our students.”
The union, which formed in 2022, represents about 3,000 masters, professional, and PhD students and is part of Service Employees International Union Local 509. Its strike calls for stronger health care coverage, pay, and benefits.
David Foley, president of SEIU 509, told the Globe that while the proposal is a “step in the right direction,” it’s a long overdue effort to address the economic insecurity experienced by graduate workers. It excludes hourly workers and does not address the needs of the many graduate workers already struggling to live in Boston on 12-month stipends, Foley said.
“Forty-two thousand dollars is still far from a living wage for any of our members, and we remain committed to fighting for a meaningful end to rent burden and financial insecurity,” Foley said in a statement. “The university has the means — and the obligation — to do better.”
The union said it expects to see more movement from the BU administration now that it has acknowledged graduate workers’ complaints about underpayment.
Jessica Rinaldi/Globe Staff
Currently about 560 grad students remain on strike, according to Rachel Lapal Cavallario, a BU spokesperson. That makes up 20 percent of salaried grad students and 10 percent of hourly ones, she said, according to student and faculty attestation data and hours submitted for hourly students.
As of May 8, about 80 percent of bargaining unit members that receive stipends have been working each week throughout the strike, according to BU’s negotiations team.
Graduate students are currently paid stipends between $27,000 to $40,000, according to the union. The university said these wages are for 20 hours of work per week, while grad workers claim to work more than that.
When the students began striking in March, they asked the school for about a $62,000 stipend, the union said, to which BU said it offered about $42,000. The union declined to counteroffer, BU said. The students are still advocating for the $62,000 stipend, according to the union.
In March, the school also offered to raise the minimum wage to $18 from $15 for hourly workers, and add children under age 6 to the health insurance plan for full-time PhD students.
Graduate workers help grade quizzes and teach lab sessions and supplementary class meetings known as discussion sections. Their absence throughout the strike caused classes and labs to be canceled throughout the semester, several students told the Globe. BU’s spring semester concluded earlier this month, with the summer term beginning on May 21, according to Lapal Cavallario.
The proposal for 12-month stipends came about in part because faculty cited difficulties recruiting PhD students in humanities and social sciences, Lutchen said.
“We appreciate the dedication and patience of everyone involved and are hopeful these efforts will produce significant progress as we head into the summer,” said Lutchen.
Another bargaining session is set to occur in coming weeks.
Material from prior Globe coverage was used in this report.
Esha Walia can be reached at esha.walia@globe.com.
Boston, MA
Former BYU star Clayton Young crushes lifetime best in Boston — on short notice
SALT LAKE CITY — Up until the past month or so, Clayton Young wasn’t sure if he’d make it to the starting line of the 130th Boston Marathon.
By Monday afternoon, he was walking away from the course with a stunning new personal best.
Young finished the 26.2-mile point-to-point course in a personal-record time of 2 hours, 5 minutes and 41 seconds Monday, good for 11th place in an all-time year. Zouhair Talbi ran the fastest time ever by an American, finishing fifth overall in 2:03:45 and Jess McClain broken the American women’s record in 2:20:49.
In all, seven American men and 12 American women finished in the top 20 of the prestigious marathon — including Young, whose streak of six consecutive top-10 finishes dating back to 2023 (including the Paris Olympics) ended, albeit barely.
But donning the No. 24 bib and a brand-new kit for new sponsor Brooks, the former BYU national champion who prepped at American Fork High jumped into the lead pack from the start and never looked back as he broke his previous lifetime best set from the 2023 Chicago marathon and the Olympic trials nearly a year later by close to 3 seconds.
“With only nine weeks of training. … I was really happy to be a 2:05 guy,” Young told FloTrack after the race. “Obviously, falling outside the top 10 is a little disappointing, but I’m really happy with the time.”
The final finish was only the faintest disappointment in the incredibly fast field.
Young’s finish as the third fastest American on Monday marks the fifth-fastest time by an American man all-time in Boston. Charles Hicks finished 50 seconds behind Talbi in 2:04:35, with Young coming in just over a minute later to cheers of friends and family.
His former BYU teammate, Canadian international Rory Linkletter, finished 14th with a personal-best time of 2:06:04. Former BYU runner Michael Ottesen finished 52nd in 2:16:06, and Utah resident Todd Garner finished his 11th running of the Boston Marathon all-time in 3:14:35.
“I think we’re in an era in distance running, on the men and women’s sides, but especially the women’s side, where we’re all making each other so much better every time we line up with one another,” McClain told the Associated Press. “And I think it’s just going to get stronger and stronger.”
Former Utah Valley and BYU runner Kodi Kleven finished 14th in the women’s race with a personal-best time of 2:24:48. The three-time St. George marathon course record holder from Mount Pleasant led for large portions of the race en route to her qualifying time for the 2026 U.S. Olympic marathon trials.
Former BYU standout and Utah State coach Madey Dickson, who also runs trains locally with Run Elite Program, beat her previous personal record in 2:28:12 — good for 18th in the women’s race.
The Key Takeaways for this article were generated with the assistance of large language models and reviewed by our editorial team. The article, itself, is solely human-written.
Boston, MA
Tools for Your To Do List with Spot and Gemini Robotics | Boston Dynamics
For an industrial robot built for the rigors of factories and power plants, tidying up a living room may seem like a light day at the office for Spot. Yet, a recent video of the robot picking up shoes and soda cans in a residential home represents the promise of AI models in robotics. In this case, Google’s visual-language model (VLM) Gemini Robotics-ER 1.5 was empowering Spot with embodied reasoning.
This particular demo grew out of a 2025 hackathon at Boston Dynamics that built on prior projects using Large Language Models (LLMs) and Visual Foundation Models (VFMs) to enable Spot to contextualize its environment and engage in more complex autonomous actions than a typical Autowalk mission. Rather than write formal software logic or a “state machine” program that defines each step of a given task, we interacted with Gemini Robotics using conversational language. In turn, it communicated with Spot on our behalf.
A Robust SDK and Natural Language Prompts Save Time
Using Spot’s SDK, we developed a layer that facilitated interaction between Gemini Robotics and Spot’s application programming interface (API). The API normally gives developers access to the robot’s capabilities to create custom applications or behaviors. For example, researchers at Meta have used Spot to test how an AI system could locate and retrieve objects it had never seen before.
Our ability to engage Gemini Robotics using natural language prompts was a huge timesaver, compared to traditional programming. We told Gemini Robotics it had access to a mobile robot equipped with cameras and a robotic arm. It also had a finite set of tools it could use to control the robot. A tool is a lightweight script that performs some internal logic and translates inputs from Gemini Robotics to actual API calls. We limited the actions to navigating between locations, capturing images, identifying objects, grasping them, and placing them somewhere else.
The extent of our SDK means there are great examples one could leverage to add more access to the API with minimal development.
Giving Gemini Robotics a Baseline
To start we needed to explain to Gemini Robotics what we wanted it to do. We did experience a learning curve when writing these baseline prompts. Simple instructions like “put down an object” or “take a picture” weren’t detailed enough to produce expected behavior. We had to add context in our descriptions as we refined each tool.
A good example is the detailed prompt for the “TakePicture” tool:
This command will cause the robot to take a picture with the specified camera. There is some nuance to choosing the correct camera. Once arriving at a location using GoTo, you should always start by taking a picture with the gripper camera, because it's the most informative.
If the robot has arrived at location and is already holding an object, you can do one of two things:
1. Immediately call PutDown
2. Search the area with either of the front cameras. The front cameras are low to the ground, so if you're trying to put things on an elevated surface, they won't give you useful information.
In this example, we gave Gemini Robotics no detailed description of the robot’s chassis or arm. Instead, we simply explained that Spot’s front cameras would be too low to photograph objects on elevated surfaces. We were able to iterate rapidly, as small changes in wording produced noticeably better results. Once it had this set of basic tools through the API, Gemini Robotics could sequence Spot’s actions and follow the handwritten instructions on a whiteboard on the day of the demonstration.
How Gemini Robotics and Spot Collaborate
Until the robot powers on, Gemini Robotics has no context for what specific tasks we might ask it to perform in a given demo. We only provided simple written instructions, such as, “Make sure all of the shoes at the front door are on the shoe rack.” Gemini Robotics evaluated images from Spot’s cameras and identified objects in the scene that matched the instructions. These objects became the reference points for Spot’s navigational and manipulation systems.
In many respects, Gemini Robotics was identical to an operator manually driving Spot using its tablet controller. For example, to pick up an object with Spot, an operator positions the robot near the object and then uses a grasp wizard to identify the target object. The operator provides high-level direction and Spot figures out the exact details. In this demonstration, Gemini Robotics functioned as both the operator and the tablet sending commands to the robot. This freed us up to act more like a team lead, providing a high-level to-do list and trusting Spot and Gemini Robotics do the rest.
Call and Response
When Gemini Robotics engages a given tool, the tool responds with results and context, such as, “I picked up the object,” or “I can’t pick up something while my hand is full.” Gemini Robotics then makes adjustments on the fly based on this feedback from Spot. For example, to pick up shoes, Gemini Robotics requests an image, identifies the shoes in that image, and calls the “pickup” command. By creating fundamental tools that semantically flow in conversation, Gemini Robotics can manage the sequence of tasks required to clean up the room. Spot’s existing software stack manages the locomotion, navigation, and manipulation of the robot itself.
It’s important to note Gemini Robotics has strict boundaries in this scenario. It can’t invent new capabilities or control Spot beyond what is available through the API. This keeps Spot’s behavior predictable, while still allowing Gemini Robotics to adapt to different situations.
A Force Multiplier for Developers
For developers already working with Spot, this research has tremendous potential. Through Spot’s SDK, they have access to a robust toolkit of capabilities. Companies use these tools today to build applications for inspection, research, and industrial data analysis, among others.
An AI model like Gemini Robotics offers a way to expand those applications more rapidly. Rather than write extensive task logic on top of Spot’s APIs, developers can experiment with having AI systems interpret natural language instructions and dynamically choose to engage the robot. As a result, models like Gemini Robotics can act as force multipliers, amplifying the reliable toolkit and robust performance that is already delivering value for Boston Dynamics customers.
Our Next-Token Prediction for Spot and Gemini Robotics
Although this is still an experimental step and not a hardened application, it illustrates a compelling direction for robotics and physical AI. Robots like Spot are already extremely capable of navigating complex and changeable environments, collecting data and sensor readings, and manipulating objects. Rather than reinventing the wheel, AI foundation models offer a new way to expand these capabilities in new settings and to new applications.
Physical AI is a rapidly evolving field and our team is leading the way in the lab and in real applications of AI empowered robots. While we are early in our formal partnership with Google Deepmind, we’re excited for what the future holds with Atlas and we’ve already rolled out practical enhancements for Spot and Orbit, with AIVI-Learning powered by Google Gemini Robotics ER 1.6. This next evolution of our AI Visual Inspection tool unlocks a new level of visual intelligence, as users benefit from shared expertise bringing a deeper level of contextual intelligence to Spot and Orbit. Model improvements automatically happen behind the scenes, adding more capabilities to the same software and hardware.
Today, this demo points to a future where users can rely more on natural language to guide Spot’s actions, rather than complex code. The engineer’s role shifts toward setting goals and objectives. The multi-modal robot foundation model interprets the instructions to form complex and adaptive plans and Spot executes the action.
This article was contributed by Issac Ross and Nikhil Devraj, engineers on the Spot team.
Boston, MA
A crowd scientist is helping the Boston Marathon manage a growing field of 30,000-plus runners
BOSTON (AP) — Running the Boston Marathon is tough enough without having to jostle your way from Hopkinton to Copley Square.
So race organizers this year turned to an expert in crowd science to help them manage the field of more than 32,000 as it travels the 26.2 miles (42.195 kilometers) through eight Massachusetts cities and towns — some of it on narrow streets laid out during Colonial times.
“There are certain things that we can’t change — that we don’t want to change — because they make the Boston Marathon,” said Marcel Altenburg, a senior lecturer of crowd science at Manchester Metropolitan University in Britain. “Like, I’m a scientist, but I can’t be too science-y about the race. It should stay what it is because that’s what I love. That’s what the runners love.”
The world’s oldest and most prestigious annual marathon, the Boston race was inspired by the endurance test that made its debut at the inaugural modern Olympics in 1896 — itself a tribute to the route covered by the messenger Pheidippides, who ran to Athens with news of the Greek victory over the Persians in Marathon.
After sharing the news — “Rejoice, we conquer!” — Pheidippides dropped dead.
Organizers of the Boston race would prefer a more pleasant experience for their runners, even as the field has ballooned from 15 in 1897 to as many as 38,000 to meet demand for the 100th edition in 1996. It has settled at around 30,000 since 2015.
As the race grew, it tested the limits of the narrow New England roads and the host cities and towns, which are eager to reopen their streets for regular commutes and commerce as quickly as possible.
“It would be kind of great someday to be able to grow the race a little bit more,” race director Dave McGillivray said. “The problem with this race is that it’s about two things: time and space. We don’t have either. … So, we’re trying to be innovative.”
That’s where Altenburg comes in.
A former German army captain who runs ultra marathons himself, Altenburg has worked with all of the major races, other large sporting events, and airports and exhibitions that tend to attract large crowds on ways to keep things safe and flowing smoothly.
For the Boston Marathon, which draws hundreds of thousands of spectators in addition to the runners, his models allow him to run simulations that help him see how the race might play out under different conditions.
“We have simulated the Boston Marathon more than 100 times to run it once for real. That is the one that counts,” Altenburg said in a telephone interview. “They gave me, pretty much, all creative freedom to simulate more waves, simulate more runners and — within the existing time window — they allowed me to change pretty much anything for the betterment of the running experience.
“And then we checked every aid station, every mile, the finish, every important point, (asking): Is the result better for the runner? Is that something that we should explore further?”
The most noticeable difference on Monday will be that the runners are starting in six waves — groups organized by qualifying time — instead of three. The waves, which were first used in Boston in 2011, help spread things out so that runners don’t have to walk after the start, when Main Street in Hopkinton squeezes to just 39 feet wide.
Other, less obvious changes involve the unloading of the buses at the start, the placement of the water and aid stations, and the finish line chutes, where runners get their medals, perhaps a mylar blanket or a banana, and any medical treatment they might need.
“For an event that’s as old as ours, 130 years, it allowed us to be a startup all over again,” said Lauren Proshan, the chief of race operations and production for the Boston Athletic Association.
“The change isn’t meant to be earth-shattering. It’s to be a smooth experience from start to finish,” she said. “It’s one of those things that you work really, really hard behind the scenes and hope that no one notices — a behind-the-curtain change that makes you feel as if you’re just floating and having a great day.”
Shorter porta potty lines would also be nice.
“What I loved about working with the BAA was how aware they are of what the Boston Marathon is. And they won’t change anything lightly,” Altenburg said. “So it was very detailed work from literally the moment the race last year ended to now. That we check every single option. That we really make sure that if we change something about this historic race, then we know what we’re doing.”
The BAA will look at the feedback over the next three years before deciding about expansion or other changes.
“Fingers crossed, hope for the best, but we’ll get feedback from the participants,” McGillivray said. “And they’ll let us know whether or not it worked or not.”
But keeping the course open longer isn’t an option. And the route isn’t going to change. So there’s only so much that crowd science can help with at one of the toughest tests in sports.
“I can talk. I’m a scientist. I just press a button and it’s going to be,” Altenburg said. “But the runners still have to do it.”
___
AP sports: https://apnews.com/hub/sports
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