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Majid Jordan Teams Up with Naomi Sharon for Their Latest Single “Waiting For You

Majid Jordan Teams Up with Naomi Sharon for Their Latest Single “Waiting For You

In the burgeoning landscape of contemporary music, the dynamic duo of Majid Jordan has emerged as a force to reckon with. Their recent collaboration with the newly signed artist of their label, Naomi Sharon, for the single “Waiting For You” has been making waves in the music industry.

Majid Jordan: A Brief Overview

Majid Jordan, the Canadian R&B duo, has been consistently delivering hits that resonate with their fans and followers. Comprising Majid Al Maskati and Jordan Ullman, the duo was first signed to OVO Sound, the label co-founded by the renowned rapper, Drake, in 2012. Since then, they have been a powerhouse of creativity, blending their unique sound with masterful lyricism.

Naomi Sharon: The New Entrant

Naomi Sharon, the latest signee of OVO Sound, has been quickly gaining recognition for her soulful voice and captivating performances. With a sound that’s reminiscent of the legendary Sade, Sharon’s inclusion in “Waiting For You” has only amplified the track’s appeal.

“Waiting for You”: A Closer Look

The latest single, “Waiting For You”, has been critically acclaimed for its fall vibes and the strong Sade influence. This combination has further enhanced the smoothness of the track. However, fans are eagerly awaiting the announcement of their follow-up to the 2021 album “Wildest Dreams”.

As per Majid Jordan’s Twitter account, they have created something special with someone special, a reference to Naomi Sharon. However, they have kept the details under wraps, further heightening the anticipation among their fans.

The Music Industry: Majid Jordan’s Impact

Majid Jordan has been a game-changer in the music industry, introducing fresh sounds and innovative music styles. Their collaboration with Naomi Sharon is a testament to their commitment to creating unique music experiences.

The Future of Majid Jordan

While the duo’s future plans remain a closely guarded secret, it is clear that they will continue to push the boundaries of music. Their collaboration with Naomi Sharon could well be the beginning of a series of musical partnerships.

Conclusion

In conclusion, Majid Jordan’s latest single “Waiting For You”, featuring Naomi Sharon, is a testament to their innovative approach to music. The fall vibes of the track, coupled with the strong Sade influence, make it a must-listen for all music enthusiasts. It will be interesting to see what the duo has in store for their fans in the future.

Unveiling the Truth: Former British Officers Confess to Racist Remarks Against the Royal Couple

Unveiling the Truth: Former British Officers Confess to Racist Remarks Against the Royal Couple

Image Credit: lev radin / Shutterstock.com


In a shocking revelation, five former officers of the British police force have publicly admitted to circulating racist messages about Prince Harry and Meghan Markle, the Duke and Duchess of Sussex. This unsettling news has once again brought to the forefront the issue of racism that has been a longstanding concern within the British establishment.

The Guilty Officers and Their Charges

The five officers – Robert Lewis, Peter Booth, Anthony Elsom, Alan Hall, and Trevor Lewton – confessed their guilt at London’s Westminster Magistrates’ Court. Their charges included sending grossly offensive racist messages via public communication.

A sixth officer, Michael Chadwell, declined the identical charge and is expected to return to court on November 6. The rest are scheduled for sentencing on the same day.

These officers were previously part of London’s Metropolitan Police Force, serving in the Parliamentary and Diplomatic Protection branch, responsible for safeguarding politicians and diplomats.

The Incriminating Messages

The officers were arrested and charged following a BBC investigation last year that uncovered their clandestine activities. These included the circulation of offensive and racist messages in a closed WhatsApp group. Their derogatory comments targeted not only the Duke and Duchess of Sussex but also other members of the royal family, such as Prince William, Kate, the late Queen Elizabeth II, and her late husband, Prince Philip. High-profile political figures like U.K. Prime Minister Rishi Sunak, former interior minister Priti Patel, and former Health Secretary Sajid Javid were also victims of their contemptuous remarks.

The messages were circulated between 2020 and 2022, a period during which none of the accused were serving as officers. According to Newsweek, their conversations also included discussions about the U.K. government’s plans to deport asylum seekers to Rwanda and the floods in Pakistan.

A Not-So-Isolated Incident

This incident is not an isolated one. In 2022, two active officers were discharged from service when their racist conversations on WhatsApp were revealed publicly. Shockingly, one of these messages was even circulated during the royal wedding of Prince Harry and Meghan Markle in 2018.

The Impact of Racism on the Royal Couple

These racist incidents significantly contributed to the decision of the royal couple to relocate to America in 2020. They stepped away from the monarchy, citing the high tension between members of the royal family, the royal institution, and the British tabloid press.

In the 2021 documentary series, The Me You Can’t See, Prince Harry revealed to Oprah Winfrey that the media played a significant role in fostering racial hatred against his wife. He expressed regret over not taking a firm stand against racism earlier in his relationship with Meghan.

AI: The Reality of Hallucination in Large Language Models

AI: The Reality of Hallucination in Large Language Models

Image Credit: Photo by julien Tromeur on Unsplash

Artificial Intelligence (AI) has been instrumental in transforming various sectors of industry and society. However, with great power comes great responsibility, and AI is no exception. There’s a peculiar phenomenon associated with AI, particularly Large Language Models (LLMs) like OpenAI’s ChatGPT, that has been causing quite a stir in the tech and business spheres. This phenomenon is often referred to as ‘hallucination’.

The Hallucination Phenomenon

Despite the enormous capabilities of AI, it has a peculiar tendency to generate information that doesn’t exist, or in simple words, to ‘hallucinate’. These hallucinations range from benignly odd to seriously problematic. For instance, ChatGPT once erroneously asserted that the Golden Gate Bridge was transported across Egypt in 2016. This is a simple mistake, and while it may be humorous, it’s indicative of an issue at the core of these models.

In a more serious instance, an Australian mayor threatened legal action against OpenAI when ChatGPT falsely claimed he had pleaded guilty in a high-profile bribery scandal. This misinformation not only has the potential to tarnish reputations but also raises legal and ethical concerns.

Researchers have also discovered that these AI-induced hallucinations can be exploited maliciously. Hackers can manipulate LLMs to disseminate harmful code packages to unknowing software developers. Furthermore, these models have been found to provide incorrect medical and mental health advice, such as falsely suggesting that wine consumption can prevent cancer.

Understanding the Training Process of Models

To comprehend why hallucinations occur, we must delve into how AI models are developed and trained. Generative AI models, including LLMs, essentially function as complex statistical systems that predict data, be it words, images, music, or speech. They lack genuine intelligence, learning from countless examples typically sourced from the public web.

For instance, if an AI model is presented with the phrase “Looking forward…” from an email, the AI might complete it with “… to hearing back” based on the pattern it has learned from countless similar emails. However, it’s important to remember that the AI doesn’t truly understand the sentiment of ‘looking forward’ to something.

Sebastian Berns, a PhD researcher at Queen Mary University of London, explains that the current LLM training framework involves ‘masking’ previous words for context and then predicting which words should replace the concealed ones. This concept is similar to predictive text in iOS, where we continually press one of the suggested next words.

While this probability-based approach generally works well, it’s not flawless. Due to the vast range of words and their probabilities, LLMs can generate grammatically correct but nonsensical text. They can spread inaccuracies present in their training data or mix different information sources, even those that contradict each other.

The Inherent Challenges with AI Models

The issue with hallucination in AI models is not borne from malicious intent. These models don’t possess the capability for malice, and concepts of truth and falsehood are meaningless to them. They’ve learned to associate certain words or phrases with certain concepts, even if those associations aren’t accurate.

“Hallucinations are tied to an LLM’s inability to estimate the uncertainty of its own prediction,” Berns explains. “An LLM is typically trained to always produce an output, even when the input significantly deviates from the training data. A standard LLM doesn’t have a method to determine if it’s capable of reliably answering a query or making a prediction.”

The Quest to Tackle Hallucinations

The challenge that lies ahead is whether hallucinations in AI models can be ‘solved’, and the answer to this is dependent on our understanding of ‘solved’.

Vu Ha, an applied researcher and engineer at the Allen Institute for Artificial Intelligence, maintains that LLMs “do and will always hallucinate”. However, he also believes that there are tangible ways to reduce hallucinations, depending on how an LLM is trained and deployed.

For instance, a question-answering system can be engineered to have high accuracy by curating a high-quality knowledge base of questions and answers, and connecting this knowledge base with an LLM to provide accurate answers via a retrieval-like process.

Ha uses the example of running the question “Who are the authors of the Toolformer paper?” (Toolformer is an AI model trained by Meta) through Microsoft’s LLM-powered Bing Chat and Google’s Bard. Bing Chat correctly listed all eight Meta co-authors, while Bard incorrectly attributed the paper to researchers at Google and Hugging Face.

“Any deployed LLM-based system will hallucinate. The real question is if the benefits outweigh the negative outcome caused by hallucination,” Ha said. In other words, if there’s no obvious harm done by a model that occasionally gets a date or name wrong but is generally useful, it might be worth the trade-off.

Berns highlights another technique that has been used to reduce hallucinations in LLMs: reinforcement learning from human feedback (RLHF). Introduced by OpenAI in 2017, RLHF involves training an LLM, gathering additional information to train a “reward” model, and fine-tuning the LLM with the reward model via reinforcement learning.

Despite the effectiveness of RLHF, it has its limitations. “I believe the space of possibilities is too large to fully ‘align’ LLMs with RLHF,” warns Berns.

Exploring Alternate Philosophies

If hallucination in AI models can’t be fully solved with current technologies, is it necessarily a bad thing? Berns doesn’t think so. In fact, he suggests that hallucinating models could act as a “co-creative partner”, providing outputs that may not be entirely factual but contain useful threads to explore.

“Hallucinations are a problem if generated statements are factually incorrect or violate any general human, social or specific cultural values,” Berns explains. “But in creative or artistic tasks, the ability to come up with unexpected outputs can be valuable.”

Ha argues that we are holding LLMs to an unreasonable standard. After all, humans also “hallucinate” when we misremember or misrepresent the truth. However, with LLMs, we experience cognitive dissonance because the models produce outputs that look good on the surface but contain errors upon further inspection.

AI: The Unanticipated Solution to the Opioid Crisis?

AI: The Unanticipated Solution to the Opioid Crisis?

The opioid crisis has been a perplexing issue, baffling scientists for nearly two decades as they have strived to comprehend the ever-changing societal and systemic reasons that induce people to misuse opioids and to pinpoint prospective overdose danger zones.

These painstaking and frequently imperfect endeavors unfold as healthcare providers endeavor to deliver secure, efficient therapy, and other resources to those grappling with addiction.

As both scientists and healthcare providers scrutinize the expansive and enduring influence of the opioid crisis, they are now inquisitively investigating AI (Artificial Intelligence) and pondering, Could AI be the key to ending the opioid crisis?

Tech Adoption in Healthcare: A Slow Process

Healthcare is not a sector known for swiftly adopting new trends; it’s notoriously slow in testing and incorporating novel technology. This hesitance has its repercussions. One study implies that the industry forfeits over $8.3 billion annually because of its reluctance or failure to adopt technology such as sophisticated electronic health records.

Public health scientists and biomedical engineers have been discreetly fostering an AI-driven revolution in medicine, with addiction prevention and treatment being the latest beneficiaries.

However, the costs of the opioid crisis extend beyond financial losses. Since 1999, over 1 million people have perished due to drug-related overdoses. In 2021, 106,699 drug overdose deaths were recorded in America, marking one of the highest per capita volumes in the nation’s history. Approximately 75% of all these overdoses were linked to opioid use, which includes prescribed analgesics such as Vicodin and Percocet, along with illicit drugs like heroin.

Despite the Centers for Disease Control and Prevention and the National Institutes of Health investing billions of dollars into outreach, education, and prescription monitoring programs, the crisis has stubbornly persisted.

The Opioid Crisis: The Human Cost

For the past decade, I have been conducting research on the opioid crisis in rural and urban communities across America, including New York City and rural southern Illinois.

Most of my peers concur, albeit reluctantly, that there’s a considerable amount of speculation involved in pinpointing the complex risks faced by drug users. Which drugs will they acquire? Will they inject, snort, or smoke them? Who, if anyone, will they use around, in case they overdose and require assistance?

But that’s not all. Practitioners also regularly grapple with inconsistent federal and state guidelines on effective treatments for opioid use disorder, like suboxone. They also find themselves playing catch-up with increasingly unpredictable drug supplies contaminated with affordable, synthetic opioids like fentanyl, which is largely responsible for recent surges in opioid-related overdose deaths.

While AI advancements like ChatGPT have captured most of the public’s imagination, public health researchers and biomedical engineers have been quietly brewing an AI-infused revolution in medicine, with addiction prevention and treatment being the newest recipients.

AI Innovations in Opioid Crisis Management

Innovations in this space primarily utilize machine learning to identify individuals who may be at risk of developing opioid use disorder, disengaging from treatment, and relapse. For instance, researchers from the Georgia Institute of Technology recently developed machine-learning techniques to effectively identify individuals on Reddit who were at risk of fentanyl misuse, while other researchers developed a tool for locating misinformation about treatments for opioid use disorder, both of which could allow peers and advocates to intervene with education.

Other AI-powered programs, such as Sobergrid, are developing the capacity to detect when individuals are at risk of relapsing — for example, based on their proximity to bars — then connecting them to a recovery counselor.

The most impactful advancements relate to the reduction of overdoses, often triggered by drug mixing. At Purdue University, researchers have developed and piloted a wearable device that can detect signs of overdose and automatically inject an individual with naloxone, an overdose-reversing agent. Another significant development has been the creation of tools to detect hazardous contaminants in drug supplies, which could drastically reduce fentanyl-driven overdoses.

The Potential Pitfalls of AI in Opioid Crisis Management

Despite the immense potential, there are concerns — could facial recognition technology be used to locate people who appear intoxicated, leading to discrimination and abuse? Uber has already taken a step in developing this kind of capacity in 2008, attempting to patent a technology that would detect a drunk passenger.

And what about dis/misinformation, a problem already plaguing chatbots? Might malicious parties embed incorrect information into chatbots to mislead drug users about risks?

The Fine Balance

Since Fritz Lang’s seminal silent film “Metropolis” in 1927, the public has been fascinated by the idea of new, humanlike technology making lives easier and richer. From Stanley Kubrick’s “2001: A Space Odyssey” in 1968 to films like “I, Robot” and “Minority Report” in the early 2000s, though, these hopeful visions have slowly morphed into a kind of existential dread.

It will be up to not just researchers and clinicians, but also patients and the broader public to keep AI honest and prevent humanity’s biggest challenges, like the opioid crisis, from becoming insurmountable ones.

The Grammy Controversy: Drake and The Weeknd’s AI Track Eligibility

The Grammy Controversy: Drake and The Weeknd’s AI Track Eligibility

Image credit: lev radin / Shutterstock.com

The world of music has been abuzz with the recent controversy surrounding the eligibility of “Heart On My Sleeve,” an Artificial Intelligence (AI) generated track featuring vocals of Drake and The Weeknd, for the upcoming Grammy Awards.

The Track: A Remarkable Feat of AI

The song, which surfaced on YouTube in April, later migrated to streaming platforms, amassing over 630,000 streams on Spotify before being taken down by Universal Music Group. It caused a stir due to its accurate replication of the artists’ vocals and lyricism, despite them not having any direct involvement in its composition.

Grammy Eligibility: A New Precedent

This week, the track was deemed eligible for Grammy consideration by Recording Academy CEO Harvey Mason Jr., who stated that “it’s absolutely eligible because it was written by a human.” This statement has sparked discussion among industry professionals, as it opens the door for AI-generated music to be considered for prestigious awards.

The Controversy: Universal’s Stand Against AI Music

While the tech world celebrates this as a victory for AI, Universal Music Group has taken a stand against the use of AI-generated music. In a statement released in April, they called AI music a “fraud,” and requested its ban from streaming platforms.

Universal Music Group calls AI music a “fraud,” and wants it banned from streaming platforms. Experts say it’s not that easy. https://t.co/g8CHWp3eH0 pic.twitter.com/DESVr3755Y

— CNN International (@cnni) April 19, 2023

The Dilemma: Embrace AI or Protect Artists?

Universal has always embraced new technology for the benefit of its artists, including having their own innovation around AI. However, they took issue with the use of their artists’ music to create AI-generated tracks, labeling it as a violation of their agreements and copyright law.

The Choice: Artists and Fans or Deep Fakes and Fraud?

Universal’s statement presents music industry stakeholders with a critical choice: to side with artists, fans, and human creative expression, or to support deep fakes and fraud, denying artists their due compensation.

The Responsibility: Platforms Must Act

Universal believes that platforms have a fundamental legal and ethical responsibility to prevent the use of their services in ways that harm artists. They are encouraged by the engagement of their platform partners on these issues, as they recognize the need to be part of the solution.

The Future: Uncertain Times Ahead

This controversy has ignited a debate that could redefine the music industry. As AI continues to advance and blur the lines between human and machine creativity, industry stakeholders will have to grapple with complex ethical and legal issues. It remains to be seen how this will play out, but one thing is certain: the music industry is in for a shakeup.

Conclusion: A Call to Action

The debate surrounding AI music and its eligibility for awards like the Grammy is more than just a legal issue. It’s a call to action for the music industry to define its stance on AI and to create norms that protect artists while also embracing innovation. As the saga of “Heart On My Sleeve” continues, it will undoubtedly shape the future of music.