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WQLN president and CEO speaks on potential loss of federal funds

WQLN president and CEO speaks on potential loss of federal funds

Yahoo15 hours ago

WQLN, a public media station in Erie County, faces a potential loss of $1.2 million in federal funding, which constitutes 40% of its operating budget, due to proposed cuts by Congress.
The proposed cuts would rescind funds already appropriated for fiscal years 2026 and 2027, significantly impacting WQLN's ability to deliver services to the community. This funding is crucial for the station's operations, which include educational programming and emergency communications.
Two-week dredging process begins on Erie's East Avenue Boat Launch
'That would greatly impact the operations that we do and the ability to deliver services to the community that we have been providing for close to 60 years,' said Alyson Amendola, Vice President of Advancement at WQLN.
WQLN is known for its children's programming and also provides in-person educational programs to communities in need. The station's education department operates a mobile classroom, the Stream Machine, to reach children who do not attend formal preschool.
Cindy Spizarny, president and CEO of WQLN, highlighted the station's role in providing critical communications during emergencies, such as Amber alerts and severe weather warnings, especially in rural areas lacking strong cell service.
Pulakos Chocolates marks sweet new addition to Colony Plaza
Alyson Amendola emphasized that the issue is not about bias or NPR and PBS, but about local broadcast stations delivering essential services to meet community needs.
The potential funding cuts threaten WQLN's ability to continue its educational and emergency services, which have been vital to the community for decades. Supporters are urged to contact legislators to prevent the rescission of funds.
All facts in this report were gathered by journalists employed by WJET/WFXP. Artificial intelligence tools were used to reformat from a broadcast script into a news article for our website. This report was edited and fact-checked by WJET/WFXP staff before being published.
Copyright 2025 Nexstar Media, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.

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WQLN president and CEO speaks on potential loss of federal funds
WQLN president and CEO speaks on potential loss of federal funds

Yahoo

time15 hours ago

  • Yahoo

WQLN president and CEO speaks on potential loss of federal funds

WQLN, a public media station in Erie County, faces a potential loss of $1.2 million in federal funding, which constitutes 40% of its operating budget, due to proposed cuts by Congress. The proposed cuts would rescind funds already appropriated for fiscal years 2026 and 2027, significantly impacting WQLN's ability to deliver services to the community. This funding is crucial for the station's operations, which include educational programming and emergency communications. Two-week dredging process begins on Erie's East Avenue Boat Launch 'That would greatly impact the operations that we do and the ability to deliver services to the community that we have been providing for close to 60 years,' said Alyson Amendola, Vice President of Advancement at WQLN. WQLN is known for its children's programming and also provides in-person educational programs to communities in need. The station's education department operates a mobile classroom, the Stream Machine, to reach children who do not attend formal preschool. Cindy Spizarny, president and CEO of WQLN, highlighted the station's role in providing critical communications during emergencies, such as Amber alerts and severe weather warnings, especially in rural areas lacking strong cell service. Pulakos Chocolates marks sweet new addition to Colony Plaza Alyson Amendola emphasized that the issue is not about bias or NPR and PBS, but about local broadcast stations delivering essential services to meet community needs. The potential funding cuts threaten WQLN's ability to continue its educational and emergency services, which have been vital to the community for decades. Supporters are urged to contact legislators to prevent the rescission of funds. All facts in this report were gathered by journalists employed by WJET/WFXP. Artificial intelligence tools were used to reformat from a broadcast script into a news article for our website. This report was edited and fact-checked by WJET/WFXP staff before being published. Copyright 2025 Nexstar Media, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.

Quantum Machine Learning Market Outlook 2026: Quantum ML's Potential in Finance, Pharma, and Cybersecurity from 2026 to 2040
Quantum Machine Learning Market Outlook 2026: Quantum ML's Potential in Finance, Pharma, and Cybersecurity from 2026 to 2040

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Quantum Machine Learning Market Outlook 2026: Quantum ML's Potential in Finance, Pharma, and Cybersecurity from 2026 to 2040

Discover the transformative potential of Quantum Machine Learning (QML), exploring how QML harnesses quantum mechanics to revolutionize computational intelligence and machine learning. Delve into cutting-edge technologies where qubits, unlike classical bits, promise exponential speed-ups in solving complex problems including optimization, pattern recognition, and data analysis. Explore key sectors like finance, healthcare, and manufacturing, where QML offers significant advantages. Detailed market forecasts, investment trends, and technology roadmaps provide industry insights vital for stakeholders. Navigate the competitive landscape and uncover opportunities within the QML ecosystem, supported by extensive profiles of 49 leading companies. Dublin, June 06, 2025 (GLOBE NEWSWIRE) -- The "Global Quantum Machine Learning Market 2026-2040" report has been added to offering. 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Orphan wells being plugged in Millcreek Twp. to reduce methane emissions
Orphan wells being plugged in Millcreek Twp. to reduce methane emissions

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time2 days ago

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Orphan wells being plugged in Millcreek Twp. to reduce methane emissions

A national environmental foundation has begun efforts to plug orphaned gas wells in Millcreek Township, Pennsylvania, to reduce methane emissions affecting local neighborhoods. Pennsylvania has the second highest number of orphaned wells in the United States, many of which are leaking methane into nearby communities. The Well Done Foundation is addressing this issue by sealing abandoned wells, including one in Millcreek Township, which is estimated to emit as much methane annually as 1,100 cars. Bill passes PA House incentivizing buying healthy food with SNAP 'Just in Erie County alone, there are literally hundreds and hundreds of these orphan wells,' said Curtis Shuck, Chairman of the Well Done Foundation. 'One of our top priorities, of course, is keeping our residents safe, and when we have contaminants that are floating in the air and getting into our water table, that is going to pose life-threatening problems,' said Kim Clear, Millcreek Township Supervisor. The Well Done Foundation has successfully sealed 57 abandoned wells across the country and is now working on its 58th in Millcreek Township. This particular well, located in the 2600 block of West 25th Street, is believed to have been used by farmers centuries ago but has since been neglected. The well is situated just 15 feet from housing and close to township stormwater drains, making it a priority for plugging. Township officials acknowledge the long-term health benefits that the project will bring to the community. Brig Niagara arrives in Maine to undergo $5 million worth of repairs Workers discovered high pressure inside the well, and crews will relieve this pressure by pumping cement into the well to ensure it is fully sealed. This process aims to eliminate any points for gas or fluids to leak to the surface. Curtis Shuck noted the challenge of dealing with undocumented orphan wells, stating, 'As we start to get into these wells, we work with the state of Pennsylvania to see if they have any records or any known history on the well. This was an undocumented orphan well before it was brought to their attention.' The Well Done Foundation's initiative in Millcreek Township represents a significant step in addressing environmental and public health concerns associated with orphaned wells. When work on this well finishes in about a week, they'll move over to work on another orphan well near the former Manor Motel on West 8th Street. All facts in this report were gathered by journalists employed by WJET/WFXP. Artificial intelligence tools were used to reformat from a broadcast script into a news article for our website. This report was edited and fact-checked by WJET/WFXP staff before being published. Copyright 2025 Nexstar Media, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.

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