AI Research
Meta’s AI lab scoops up more Chinese experts from Apple, OpenAI in aggressive talent grab

The social media giant has recruited Pang Ruoming, who held the title of distinguished software engineer at Apple and was leading its foundation models team, according to a Bloomberg News report on Tuesday that was confirmed by Meta.
Neither Apple nor Pang immediately responded to requests for comment on Tuesday.
Pang is a veteran AI researcher who spent 15 years at Google before joining Apple in 2021, where he worked on diverse projects, including search and speech recognition, according to his LinkedIn profile.
He earned his doctorate in computer science from Princeton University, following a master’s degree and a bachelor’s degree in the same field from the University of Southern California and Shanghai Jiao Tong University, respectively.
After Pang’s departure, Apple’s foundation models team will be led by another Chinese engineer, Chen Zhifeng, according to Bloomberg’s report.
AI Research
Artificial intelligence (AI)-powered anti-ship missile with double the range

Questions and answers:
- What is the primary feature of the LRASM C-3 missile compared to earlier variants? It has nearly double the range of previous versions, with a range of about 1,000 miles, compared to 200 to 300 miles for the C-1 and 580 miles for the C-2.
- How does artificial intelligence enhance the LRASM C-3’s capabilities? AI helps the missile with autonomous mission planning, target discrimination, and attack coordination, adjust flight paths based on real-time data, identify and track moving targets, and adapt to changing conditions like jamming and interference.
- What can launch the LRASM C-3 missile? U.S. Air Force B-1B bombers, Navy F/A-18E/F Super Hornets, and F-35 Lightning II jets, with possible future launches from Navy ships and attack submarines.
PATUXENT RIVER NAS, Md. – U.S. Navy surface warfare experts are asking Lockheed Martin Corp. to move forward with developing the new LRASM C-3 anti-ship missile with double the range of previous versions.
Officials of the Naval Air Systems Command at Patuxent River Naval Air Station, Md., announced a $48.1 million order last month to the Lockheed Martin Missiles and Fire Control segment in Orlando, Fla., for engineering to establish the Long Range Anti-Ship Missile (LRASM) C-3 variant.
The subsonic LRASM is for attacking high-priority enemy surface warships like aircraft carriers, troop transport ships, and guided-missile cruisers from Navy, U.S. Air Force, and allied aircraft.
LRASM is designed to detect and destroy high-priority targets within groups of ships from extended ranges in electronic warfare jamming environments. It is a precision-guided, standoff anti-ship missile based on the Lockheed Martin Joint Air-to-Surface Standoff Missile-Extended Range (JASSM-ER).
1,000-mile range
The LRASM C-3 variant has a range of nearly 1,000 miles, compared to the 200-to-300-mile C-1 variant, and 580-mile range of the LRASM C-2 variant.
LRASM C-3 also introduces machine learning and advanced artificial intelligence (AI) algorithms to enhance autonomous mission planning, target discrimination, and attack coordination, even amid intense electronic warfare (EW) jamming.
The C-3 also can exchange information from military satellites, and has an enhanced imaging infrared and RF seeker for survivability and target identification.
The C-3 also can be launched form the Air Force from B-1B strategic jet bomber, as well as the Navy F/A-18E/F Super Hornet jet fighter-bomber and the F-35 Lightning II attack jet. Navy leaders also envision using the Navy MK 41 shipboard vertical launch system with the LRASM C-3, and are considering options to launch the missile from attack submarines.
Tell me more about applying artificial intelligence to missile guidance …
- Applying artificial intelligence to missile guidance will enhance precision, adapt to dynamic environments, and improve decision-making in real-time. AI can help missiles navigate autonomously by using real-time data from radar, infrared sensors, and GPS to adjust flight paths. AI also can help missiles visually identify targets from images or video feeds, and not only enhance the missile’s ability to recognize and track moving targets, but also to predict and follow moving targets even if they change direction or speed. Using AI, missile guidance systems can make real-time adjustments to their trajectory based on changing conditions like wind, RF interference, and jamming. Missiles also may use AI to other weapons in swarm tactics, and operate effectively against countermeasures.
Helping to extend the LRASM C-3’s range are an advanced multi-mode sensor suite; enhanced data exchange and communications; digital anti-jam GPS and navigation; and AI and machine learning capabilities.
The missile’s multi-mode sensor suite is expected to blend imaging infrared and RF sensors to help the weapon identify and attack targets. Its communications will have data links for secure real-time communication with satellites, drones, and strike aircraft.
Digital anti-jam GPS and navigation will provide midcourse guidance to target areas far beyond the effective range of traditional systems. AI and machine learning, meanwhile, should help the missile identify targets and plan its routes autonomously. The LRASM C-3 version should enter service next year.
On this order, Lockheed Martin will do the work in Orlando and Ocala, Fla.; and in Troy, Ala., and should be finished in November 2026. For more information contact Lockheed Martin Missiles and Fire Control online at https://www.lockheedmartin.com/en-us/products/long-range-anti-ship-missile.html, or Naval Air Systems Command at www.navair.navy.mil.
AI Research
Human-Machine Understanding in AI | Machine Precision Meets Human Intuition

AI Research
How to Scale Up AI in Government

State and local governments are experimenting with artificial intelligence but lack systematic approaches to scale these efforts effectively and integrate AI into government operations. Instead, efforts have been piecemeal and slow, leaving many practitioners struggling to keep up with the ever-evolving uses of AI for transforming governance and policy implementation.
While some state and local governments are leading in implementing the technology, AI adoption remains fragmented. Last year, some 150 state bills were considered relating to the government use of AI, governors in 10 states issued executive orders supporting the study of AI for use in government operations, and 10 legislatures tasked agencies with capturing comprehensive inventories.
Taking advantage of the opportunity presented by AI is critical as decision-makers face an increasing slate of challenging implementation problems and as technology quickly evolves and develops new capabilities. The use of AI is not without risks. Developing and adapting the necessary checks and guidance is critical but can be challenging for such dynamic technologies. Shifting from seeing AI as merely a technical capability to considering what AI technology should be asked to do can help state and local governments think more creatively and strategically. Here are some of the benefits governments are already exploring:
Administrative efficiency: Half of all states are using AI chatbots to reduce administrative burden and free staff for substantive and creative work. The Indiana General Assembly uses chatbots to answer questions about regulations and statutes. Austin, Texas, streamlines residential construction permitting with AI, while Vermont’s transportation agency inventories road signs and assesses pavement quality.
Research synthesis: AI tools help policymakers quickly access evolving best practices and evidence-based approaches. Overton’s AI platform, for example, allows policymakers to identify how existing evidence aligns with priority areas, compare policy approaches across states and nations, and match with relevant researchers and projects.
Implementation monitoring: AI fills critical gaps in program evaluation without major new investments. California’s transportation department analyzes traffic patterns to optimize highway safety and inform infrastructure investments.
Predictive modeling: AI-enabled models help test assumptions about which interventions will succeed. These models use features such as organizational characteristics, physical and contextual factors, and historical implementation data to predict success of policy interventions, and their outputs can help tailor interventions and improve outcomes and success. Applications include targeting health interventions to patients with modifiable risk factors, identifying lead service lines in municipal water systems, predicting flood response needs and flagging households at eviction risk.
Scaling up to wider adoption in policy and practice requires proactive steps by state and local governments and attendant guidance, monitoring and evaluation:
Adaptive policy framework: AI adoption often outpaces planning, and the definition of AI is often specific to its application. States need to define AI applications by sector (health, transportation, etc.) and develop adaptive operating strategies to guide and assess its impact. Thirty states have some guidance, but comprehensive approaches require clear definitions and inventories of current use.
Funding strategies: Policymakers must identify and leverage funding streams to cover the costs of procurement and training. Federal grants like the State and Local Cybersecurity Grant Program offer potential, though current authorization expires this Sept. 30. Massachusetts’ FutureTech Act exemplifies direct state investment, authorizing $1.23 billion for IT capital projects including AI.
Smart procurement: Effective AI procurement requires partnerships with vendors and suppliers and between chief information officers and procurement specialists. Contracts must ensure ethical use, performance monitoring and continuous improvement, but few states have procurement language related to AI. Speed matters — AI purchases risk obsolescence during lengthy procurement cycles.
Training and workforce development: Both current and future state and local government workforces need AI skills. Solutions include AI training academies and literacy programs for government workers, joint training programs between professional associations, and the General Services Administration’s AI Community of Practice‘s events and training. The Partnership for Public Service has recently opened up its AI Government Leadership program to state and local policymakers. Universities including Stanford and Michigan offer specialized programs for policymakers. Graduate programs in public policy, administration and law should incorporate AI governance tracks.
State AI policy development involves governor’s offices, chief information offices, security offices and legislatures. But success requires moving beyond pilot projects to systematic implementation. Governments that embrace this transition will be best positioned for future challenges. The opportunity exists now to set standards for AI-enabled governance, but it requires proactive steps in policy development, funding, procurement, workforce development and safeguards.
Joie Acosta is a senior behavioral scientist and the Global Scholar in Translation at RAND, a nonprofit, nonpartisan research institute. Sara Hughes is a senior policy researcher and the Global Scholar of Implementation at RAND and a professor of policy analysis at the RAND School of Public Policy.
Governing’s opinion columns reflect the views of their authors and not necessarily those of Governing’s editors or management.
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