

The federal government is breaking down data silos to collect and aggregate information on virtually everyone in the U.S.

By Nicole M. Bennett
Ph.D. Candidate in Geography
Assistant Director, Center for Refugee Studies
Indiana University
Introduction
A whistleblower at the National Labor Relations Board reported an unusualย spike in potentially sensitive data flowing outย of the agencyโs network in early March 2025 when staffers from the Department of Government Efficiency, which goes by DOGE, were granted access to the agencyโs databases. On April 7, the Department of Homeland Securityย gained accessย to Internal Revenue Service tax data.
These seemingly unrelated events are examples of recent developments in the transformation of the structure and purpose of federal government data repositories. I am a researcherย who studiesย the intersection of migration, data governance and digital technologies. Iโm tracking how data that people provide to U.S. government agencies for public services such as tax filing, health care enrollment, unemployment assistance and education support is increasingly being redirected toward surveillance and law enforcement.
Originally collected to facilitate health care, eligibility for services and the administration of public services, this information is now shared across government agencies and with private companies, reshaping the infrastructure of public services into a mechanism of control. Once confined to separate bureaucracies,ย data now flows freely through a networkย of interagency agreements, outsourcing contracts and commercial partnerships built up in recent decades.
These data-sharing arrangements often take place outside public scrutiny, driven byย national security justifications,ย fraud prevention initiativesย andย digital modernization efforts. The result is that the structure of government is quietly transforming into an integrated surveillance apparatus, capable of monitoring, predicting and flagging behavior at an unprecedented scale.
Executive orders signed by President Donald Trump aim to remove remaining institutional and legal barriers to completing this massive surveillance system.
DOGE and the Private Sector
Central to this transformation is DOGE, which is tasked via anย executive orderย to โpromote inter-operability between agency networks and systems, ensure data integrity, and facilitate responsible data collection and synchronization.โ An additionalย executive orderย calls for the federal government to eliminate its information silos.
By building interoperable systems, DOGE can enable real-time, cross-agency access to sensitive information and create aย centralized database on people within the U.S. These developments are framed as administrative streamlining but lay the groundwork for mass surveillance.
Key to this data repurposing are public-private partnerships. The DHS and other agencies haveย turned to third-party contractors and data brokersย to bypass direct restrictions. These intermediaries also consolidate data fromย social media, utility companies, supermarkets and many other sources, enabling enforcement agencies to construct detailed digital profiles of people without explicit consent or judicial oversight.
Palantir, a private data firm and prominent federal contractor, supplies investigative platforms to agencies such asย Immigration and Customs Enforcement, theย Department of Defense,ย the Centers for Disease Control and Preventionย and theย Internal Revenue Service. These platforms aggregate data from various sources โย driverโs license photos,ย social services,ย financial information,ย educational dataย โ and present it in centralized dashboards designed for predictive policing and algorithmic profiling. These tools extend government reach in ways that challenge existing norms of privacy and consent.
The Role of AI
Artificial intelligenceย has further accelerated this shift.
Predictive algorithms nowย scan vast amounts of dataย to generate risk scores, detect anomalies and flag potential threats.
These systemsย ingest dataย from school enrollment records, housing applications, utility usage and even social media, all made available throughย contracts with data brokers and tech companies. Because these systems rely on machine learning, their inner workings are often proprietary, unexplainable and beyond meaningful public accountability.
Sometimes the results are inaccurate, generated byย AI hallucinationsย โ responses AI systems produce that sound convincing but areย incorrect, made up or irrelevant. Minor data discrepancies can lead to major consequences:ย job loss, denial of benefits and wrongful targetingย in law enforcement operations. Once flagged, individuals rarely have a clear pathway to contest the systemโs conclusions.
Digital Profiling
Participation in civic life, applying for a loan, seeking disaster relief and requesting student aid now contribute to a personโs digital footprint. Government entities could later interpret that data in ways that allow them to deny access to assistance. Data collected under the banner of care could be mined for evidence to justify placing someone under surveillance. And with growing dependence on private contractors, the boundaries between public governance and corporate surveillance continue to erode.
Artificial intelligence,ย facial recognition systemsย and predictive profiling systemsย lack oversight. They alsoย disproportionately affectย low-income individuals, immigrants andย people of color, who areย more frequently flagged as risks.
Initially built for benefits verification or crisis response, these data systems now feed into broader surveillance networks. The implications are profound. What began as a system targeting noncitizens and fraud suspects could easily be generalized to everyone in the country.
Eyes on Everyone
This is not merely a question of data privacy. It is a broader transformation in the logic of governance. Systems once designed for administration have become tools for tracking and predicting peopleโs behavior. In this new paradigm, oversight is sparse and accountability is minimal.
AI allows for the interpretation of behavioral patterns at scale without direct interrogation or verification. Inferences replace facts. Correlations replace testimony.
The risk extends to everyone. While these technologies are often first deployed at theย margins of societyย โ against migrants, welfare recipients or those deemed โhigh riskโ โ thereโs little to limit their scope. As the infrastructure expands, so does its reach into the lives of all citizens.
With every form submitted, interaction logged and device used, a digital profile deepens, often out of sight. The infrastructure for pervasive surveillance is in place. What remains uncertain is how far it will be allowed to go.
Originally published by The Conversation, 04.23.2025, under the terms of a Creative Commons Attribution/No derivatives license.


