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Mike Monegan saw the writing on the wall in January. For weeks, he’d had difficulty sleeping.

As vice president of product management for Australian artificial intelligence software vendor Appen, Monegan and many of his colleagues had been doing their best to keep things afloat as tech behemoths slashed their spending on the company’s AI training data.

Five customers — Microsoft, Apple, Meta, Google, and Amazon — accounted for 80% of Appen’s revenue, and this was supposed to be the company’s moment to shine. Across the industry, companies were committing to hefty investments in generative AI, trying to ensure they weren’t left behind in the sudden race to embed the latest large language models into all of their projects.

Appen has a platform of about one million freelance workers in more than 170 countries. In the past, it’s used that network of people to train some of the world’s leading AI systems, working for a star-studded list of tech companies, including the top consumer names as well as Adobe, Salesforce and Nvidia.

But just as AI’s big moment was arriving, Appen was losing business — and fast. Revenue declined 13% in 2022, a drop the company attributed in part to “challenging external operating and macro conditions.” Former employees, who asked not to be named for fear of retaliation, told CNBC that the company’s current struggle to pivot to generative AI reflects years of weak quality controls and a disjointed organizational structure.

In mid-December, Appen announced a change at the top. Armughan Ahmad, a 25-year veteran of the tech industry, would be taking over as CEO, replacing Mark Brayan, who had helmed the company for the prior seven years. Upon starting the following month, Ahmad called generative AI “one of the most exciting advancements” in the industry and noted that he “was happy to learn that our team has already put the technology to work on our marketing content.” 

Monegan wasn’t buying it. He told CNBC that after his first meeting with Ahmad he began looking for another job. Monegan had been watching Appen fall behind, and he didn’t see Ahmad, whose LinkedIn profile says he’s based in Seattle, presenting a realistic path out.

Monegan left in March to help start his own company.

The numbers seem to prove him right.

Despite Appen’s enviable client list and its nearly 30-year history, the company’s struggles have intensified this year. Revenue in the first half of 2023 tumbled 24% to $138.9 million, amid what it called a “broader technology slowdown.” The company said its underlying loss widened to $34.2 million from $3.8 million a year earlier.

“Our data and services power the world’s leading AI models,” Ahmad said on last week’s earnings call. “However, our results are far from satisfactory. They reflect the ongoing global macroeconomic pressures and continued slowdown in tech spending, particularly amongst our largest customers.” 

In August 2020, Appen’s shares peaked at AU$42.44 on the Australian Securities Exchange, sending its market cap to the equivalent of $4.3 billion. Now, the stock is trading at around AU$1.52, for a market cap of around $150 million.

‘Resetting the business’

Along with its troubled financials, the company is dealing with a string of executive departures. Helen Johnson, who was appointed finance chief in May, left after just seven weeks in the role. Marketing chief Fab Dolan, whose departure was announced on the earnings call, spent just over two months in the position. The departure of Chief Product Officer Sujatha Sagiraju was also just announced.

“In the environment of a turnaround, we anticipate changes,” a representative for Appen told CNBC.

Elena Sagunova, global human resources director, left in April, followed by Jen Cole, senior vice president of enterprise, in July and Jukka Korpi, senior manager of business development for the Europe, Middle East and Africa Region, in August.

Still, Ahmad said on the earnings call that the company remains “laser-focused on resetting the business” as it pivots to providing data for generative AI models. He added that “the benefits from our turnaround have yet to show meaningful results” and that “the revenue growth does not offset the declines we are experiencing in the remainder of the business.” 

Appen’s past work for tech companies has been on projects like evaluating the relevance of search results, helping AI assistants understand requests in different accents, categorizing e-commerce images using AI and building out map locations of electric vehicle charging stations, according to public information and interviews conducted by CNBC.

Appen has also touted its work on search relevance for Adobe and on translation services for Microsoft, as well as in providing training data for lidar companies, security applications and automotive manufacturers. 

Depending on the data that a customer requires, an Appen freelancer could be sitting at a laptop to label or categorize images or search results or using Appen’s mobile application to capture the sounds of glass breaking or background noise in a vehicle. 

Microsoft is 'naturally and legitimately' well-positioned for A.I.: Griffin Securities

During Appen’s growth years, that manual collection of data was key for the state of AI at the time. But LLMs of today have changed the game. The underlying models behind OpenAI’s ChatGPT and by Google’s Bard are scouring the digital universe to provide sophisticated answers and advanced images in response to simple text queries.

To fuel their LLMs, which are powered largely by state-of-the-art processors from Nvidia, companies are spending less on Appen and a lot more on competitive services that already specialize in generative AI.

Ahmad told CNBC in a statement that, while the company’s financials are being hurt by the economy and a reduction in spending by top customers, “I’m confident that our disciplined focus and the early progress we are making to turn around the business will enable us to capture value from the growing generative AI market and return Appen to growth.”

Cash-strapped

Ahmad said on the earnings call that there’s customer interest in niche types of data that’s more difficult to acquire. For Appen, that would mean finding specialists in particular types of information that can bolster generative AI systems. That also means it needs to expand its base of workers while simultaneously finding ways to preserve cash.

Appen’s cash on hand was $55 million as of June 30, thanks to proceeds from a $38 million equity raise. Prior to the new infusion, cash had been dwindling, from $48 million at the end of 2021 to $23.4 million a year later.

Even before the generative AI transition, wages for Appen’s data labelers were a sticking point. In 2019, Google said its contractors would need to pay their workers $15 an hour. Appen didn’t meet that requirement, according to public letters written by some workers.

In January, after months of organizing, raises went into effect for Appen freelancers working on the Bard chatbot and other Google products. The rates went up to between $14 and 14.50 per hour.

That wasn’t the end of the story. In May, Appen was accused of squeezing freelancers focused on generative AI, allotting strict time limits for time-consuming tasks such as evaluating a complex answer for accuracy. One worker, Ed Stackhouse, wrote a letter to two senators stating his concerns about the dangers of such constrained working conditions. 

“The fact that raters are exploited leads to a faulty, and ultimately more dangerous product,” he wrote. “Raters are not given the time to deliver and test a perfect AI model under the Average Estimated Time (AET) model they are paid for,” a practice that “leads raters to spot check only a handful of facts before the task must be submitted,” he added. 

In June, Appen faced charges from the U.S. National Labor Relations Board after allegedly firing six freelancers who spoke out publicly about frustrations with workplace conditions. The workers were later reinstated

Appen employees who spoke to CNBC on behalf of the company in recent months said the rapidly changing AI environment poses challenges. Erik Vogt, vice president of solutions at Appen, told CNBC in May that the sector was in a state of flux. 

“There’s a lot of uncertainty, a lot of tentativeness for experimentation, and new startups trying out new things,” Vogt said. “How to make new use cases a reality usually means acquiring unusual data – sometimes astronomical volumes of data, or highly rare resource types. There’s a need for specialists in a wide range of different capabilities.”

For recent projects, Vogt said Appen needed to enlist the help of doctors, lawyers and people with experience using project-tracking software Jira.

“People you wouldn’t necessarily think of as being gig workers, we had to engage with these specialists for these expert systems in a way there hadn’t been a huge demand for before,” Vogt said. 

Kim Stagg, Appen’s vice president of product, said the work required for generative AI services was different than what the company has needed in the past. 

“A lot of work we’ve done has been around the relevance of search for big engines – a lot of those are more, ‘Is this a hot dog or not,’ ‘Is this a good search or not,'” Stagg said. “With generative AI, we see a different demand.”

One focus Stagg highlighted was the need to find “what we would call really good quality creative people,” or those who are particularly good with language. “And another is domain experts: sports, hobbies, medical.” 

However, former employees expressed deep skepticism of Appen’s ability to succeed given its tumultuous position and the executive shuffling taking place. Part of the problem, they say, is the organizational structure.

Appen was divided into a global business unit and an enterprise business unit, which were at one time made up of about five clients and more than 250 clients, respectively. Each had a separate team and communication between them was limited, creating inefficiencies internally, ex-employees said. One former manager said it felt like two separate companies. Appen said that in the last quarter, the company has integrated the global and enterprise business units.

The company’s plunging stock price suggests that investors don’t see the company’s business offerings transferring to the generative AI space.

Lisa Braden-Harder, who served as CEO of Appen until 2015, echoed that sentiment, telling CNBC that “data-labeling is completely different” than how data collection works in a ChatGPT world.

“I am not clear that their past experience of data labeling is a competitive advantage now,” she said. 

Former Appen employees say the company has in recent years been dealing with quality control problems, hurting its ability to provide valuable training data for AI models. For example, one former department manager said people would annotate rows of data using automated tools instead of the manual data labeling required for accuracy, which is what clients thought they were buying.

Customers’ expectations of a “clean data set” were often not met, the person said, leading them to leave Appen for competitors such as Labelbox and Scale AI. When the manager started at the company, there were more than 250 clients in the enterprise business unit. Within 18 months, he said, that number had dwindled to less than 100.

Appen told CNBC that in the first half of the year it “secured 89 new client wins.”

Monegan recalled that many customer relationships were “hanging on by a thread.”

Following the earnings report, Canaccord Genuity analysts cut their price target on Appen by more than half to AU$1.56. One concern the analysts referenced was a 34% reduction in spending by Appen’s top customer, a number that Appen wouldn’t confirm or deny.

The more existential problem, the analysts note, revolves around Appen’s effort to win business while also looking to cut costs by 31% in fiscal 2023.

“That seems like a brutal level of cost reduction,” they wrote, as the company tries to stabilize its “core revenue base while growing a business around Generative AI.”

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How TikTok’s rise sparked a short-form video race

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How TikTok’s rise sparked a short-form video race

TikTok’s grip on the short-form video market is tightening, and the world’s biggest tech platforms are racing to catch up.

Since launching globally in 2016, ByteDance-owned TikTok has amassed over 1.12 billion monthly active users worldwide, according to Backlinko. American users spend an average of 108 minutes per day on the app, according to Apptoptia.

TikTok’s success has reshaped the social media landscape, forcing competitors like Meta and Google to pivot their strategies around short-form video. But so far, experts say that none have matched TikTok’s algorithmic precision.

“It is the center of the internet for young people,” said Jasmine Enberg, vice president and principal analyst at Emarketer. “It’s where they go for entertainment, news, trends, even shopping. TikTok sets the tone for everyone else.”

Platforms like Meta‘s Instagram Reels and Google’s YouTube Shorts have expanded aggressively, launching new features, creator tools and even considering separate apps just to compete. Microsoft-owned LinkedIn, traditionally a professional networking site, is the latest to experiment with TikTok-style feeds. But with TikTok continuing to evolve, adding features like e-commerce integrations and longer videos, the question remains whether rivals can keep up.

“I’m scrolling every single day. I doom scroll all the time,” said TikTok content creator Alyssa McKay.

But there may a dark side to this growth.

As short-form content consumption soars, experts warn about shrinking attention spans and rising mental-health concerns, particularly among younger users. Researchers like Dr. Yann Poncin, associate professor at the Child Study Center at Yale University, point to disrupted sleep patterns and increased anxiety levels tied to endless scrolling habits.

“Infinite scrolling and short-form video are designed to capture your attention in short bursts,” Dr. Poncin said. “In the past, entertainment was about taking you on a journey through a show or story. Now, it’s about locking you in for just a few seconds, just enough to feed you the next thing the algorithm knows you’ll like.”

Despite sky-high engagement, monetizing short videos remains an uphill battle. Unlike long-form YouTube content, where ads can be inserted throughout, short clips offer limited space for advertisers. Creators, too, are feeling the squeeze.

“It’s never been easier to go viral,” said Enberg. “But it’s never been harder to turn that virality into a sustainable business.”

Last year, TikTok generated an estimated $23.6 billion in ad revenues, according to Oberlo, but even with this growth, many creators still make just a few dollars per million views. YouTube Shorts pays roughly four cents per 1,000 views, which is less than its long-form counterpart. Meanwhile, Instagram has leaned into brand partnerships and emerging tools like “Trial Reels,” which allow creators to experiment with content by initially sharing videos only with non-followers, giving them a low-risk way to test new formats or ideas before deciding whether to share with their full audience. But Meta told CNBC that monetizing Reels remains a work in progress.

While lawmakers scrutinize TikTok’s Chinese ownership and explore potential bans, competitors see a window of opportunity. Meta and YouTube are poised to capture up to 50% of reallocated ad dollars if TikTok faces restrictions in the U.S., according to eMarketer.

Watch the video to understand how TikTok’s rise sparked a short form video race.

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Elon Musk’s xAI Holdings in talks to raise $20 billion, Bloomberg News reports

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Elon Musk's xAI Holdings in talks to raise  billion, Bloomberg News reports

The X logo appears on a phone, and the xAI logo is displayed on a laptop in Krakow, Poland, on April 1, 2025. (Photo by Klaudia Radecka/NurPhoto via Getty Images)

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Elon Musk‘s xAI Holdings is in discussions with investors to raise about $20 billion, Bloomberg News reported Friday, citing people familiar with the matter.

The funding would value the company at over $120 billion, according to the report.

Musk was looking to assign “proper value” to xAI, sources told CNBC’s David Faber earlier this month. The remarks were made during a call with xAI investors, sources familiar with the matter told Faber. The Tesla CEO at that time didn’t explicitly mention any upcoming funding round, but the sources suggested xAI was preparing for a substantial capital raise in the near future.

The funding amount could be more than $20 billion as the exact figure had not been decided, the Bloomberg report added.

Artificial intelligence startup xAI didn’t immediately respond to a CNBC request for comment outside of U.S. business hours.

Faber Report: Elon Musk held call with current xAI investors, sources say

The AI firm last month acquired X in an all-stock deal that valued xAI at $80 billion and the social media platform at $33 billion.

“xAI and X’s futures are intertwined. Today, we officially take the step to combine the data, models, compute, distribution and talent,” Musk said on X, announcing the deal. “This combination will unlock immense potential by blending xAI’s advanced AI capability and expertise with X’s massive reach.”

Read the full Bloomberg story here.

— CNBC’s Samantha Subin contributed to this report.

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Alphabet jumps 3% as search, advertising units show resilient growth

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Alphabet jumps 3% as search, advertising units show resilient growth

Alphabet CEO Sundar Pichai during the Google I/O developers conference in Mountain View, California, on May 10, 2023.

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Alphabet‘s stock gained 3% Friday after signaling strong growth in its search and advertising businesses amid a competitive artificial intelligence environment and uncertain macro backdrop.

GOOGL‘s pace of GenAI product roll-out is accelerating with multiple encouraging signals,” wrote Morgan Stanley‘s Brian Nowak. “Macro uncertainty still exists but we remain [overweight] given GOOGL’s still strong relative position and improving pace of GenAI enabled product roll-out.”

The search giant posted earnings of $2.81 per share on $90.23 billion in revenues. That topped the $89.12 billion in sales and $2.01 in EPS expected by LSEG analysts. Revenues grew 12% year-over-year and ahead of the 10% anticipated by Wall Street.

Net income rose 46% to $34.54 billion, or $2.81 per share. That’s up from $23.66 billion, or $1.89 per share, in the year-ago period. Alphabet said the figure included $8 billion in unrealized gains on its nonmarketable equity securities connected to its investment in a private company.

Adjusted earnings, excluding that gain, were $2.27 per share, according to LSEG, and topped analyst expectations.

Read more CNBC tech news

Alphabet shares have pulled back about 16% this year as it battles volatility spurred by mounting trade war fears and worries that President Donald Trump‘s tariffs could crush the global economy. That would make it more difficult for Alphabet to potentially acquire infrastructure for data centers powering AI models as it faces off against competitors such as OpenAI and Anthropic to develop largely language models.

During Thursday’s call with investors, Alphabet suggested that it’s too soon to tally the total impact of tariffs. However, Google’s business chief Philipp Schindler said that ending the de minimis trade exemption in May, which created a loophole benefitting many Chinese e-commerce retailers, could create a “slight headwind” for the company’s ads business, specifically in the Asia-Pacific region. The loophole allows shipments under $800 to come into the U.S. duty-free.

Despite this backdrop, Alphabet showed steady growth in its advertising and search business, reporting $66.89 billion in revenues for its advertising unit. That reflected 8.5% growth from the year-ago period. The company reported $8.93 billion in advertising revenue for its YouTube business, shy of an $8.97 billion estimate from StreetAccount.

Alphabet’s “Search and other” unit rose 9.8% to $50.7 billion, up from $46.16 billion last year. The company said that its AI Overviews tool used in its Google search results page has accumulated 1.5 billion monthly users from a billion in October.

Bank of America analyst Justin Post said that Wall Street is underestimating the upside potential and “monetization ramp” from this tool and cloud demand fueled by AI.

“The strong 1Q search performance, along with constructive comments on Gemini [large language model] performance and [AI Overviews] adoption could help alleviate some investor concerns on AI competition,” Post wrote in a note.

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Gemini delivering well for Google, says Check Capital's Chris Ballard

CNBC’s Jennifer Elias contributed to this report.

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