logo
Google expected to report $94bn in revenue after AI fuels second quarter

Google expected to report $94bn in revenue after AI fuels second quarter

The Guardian23-07-2025
Google is expected to report earnings following the bell on Wednesday after closing out a quarter of AI-related momentum that has given investors reasons to be optimistic. Wall Street is expecting the search giant to report $2.18 in earnings per share (EPS) on $94bn in revenue.
All eyes will be on how the company's various AI efforts and investments are faring as Google closes a quarter of considerable growth in the crowded space. Most recently, OpenAI announced it would add Google Cloud to its suite of cloud storage providers for ChatGPT. Analysts are also expecting a favorable outlook on general growing demand for Google's cloud services.
'The cloud business continues to benefit from robust enterprise demand, and the recent decision by OpenAI to run ChatGPT on Google Cloud – after relying primarily on Microsoft – is both symbolic and strategic,' Scott Acheychek, COO of Rex Financial, said in a statement. 'It speaks to scale. It speaks to speed. And it underscores how Alphabet's in-house AI stack is quietly turning into a competitive asset, winning business from names like Apple and Anthropic.'
While analysts still expect the company to report positive results for the second quarter of the year, some are concerned about its recent series of antitrust losses. A judge in April found that the firm acted illegally to build a monopoly of some of its advertising technology. That follows an August ruling that found Google engaged in anticompetitive behavior to protect its search monopoly. They're also looking for updates on recent analyses and remarks that indicate Google searches have declined for the first time in 22 years. During Google's recent antitrust trial, for instance, the Apple senior vice-president of services Eddy Cue said Google searches in Safari had fallen for the first time in 22 years. He attributed that to the rise in the use of AI chatbots like ChatGPT, Perplexity, Gemini and Microsoft Copilot for searches.
Sign up to TechScape
A weekly dive in to how technology is shaping our lives
after newsletter promotion
'Search remains the dominant cash engine – and a tension point,' Acheychek said. 'While OpenAI's ChatGPT is arguably a threat to Google's search business, it's also a customer. That duality sums up the moment. This isn't necessarily a winner-take-all race; it's a scramble to serve the exploding demand for generative tools, wherever they may live.'
Google is also expected to give updates on its planned $75bn investment in building out its data center capacity to support its AI features such as its expansion of AI search results.
'It seems this is a necessary investment as the only factor limiting Google's growth is the constraints on computing that AI and cloud solutions need to run on,' said Brian Mulberry, senior portfolio manager at Zacks Investment Management.
Orange background

Try Our AI Features

Explore what Daily8 AI can do for you:

Comments

No comments yet...

Related Articles

Elevenlabs Music Review : Create Studio-Grade Songs & Music Easily
Elevenlabs Music Review : Create Studio-Grade Songs & Music Easily

Geeky Gadgets

time19 minutes ago

  • Geeky Gadgets

Elevenlabs Music Review : Create Studio-Grade Songs & Music Easily

What if creating music wasn't limited to the musically gifted or those with access to expensive studios? Imagine a tool that could take your ideas—no matter how unpolished—and transform them into high-quality songs with just a few clicks. Enter Elevenlabs, an AI-powered music generation platform that promises to transform how we approach music creation. With features like customizable lyrics, modular song editing, and exceptional audio quality, it's easy to see why this platform has captured the attention of creators and producers alike. But does it truly deliver on its bold ambitions, or is it another overhyped tech experiment? In this analysis, we'll explore whether Elevenlabs is a fantastic option or just another contender in the crowded world of AI music tools. In this review by MattVidPro, learn more about the platform's most impressive strengths, such as its ability to produce studio-grade audio and its innovative approach to song customization. At the same time, we'll address its shortcomings, including challenges with usability and creative flexibility, which may leave some users frustrated. By comparing Elevenlabs to competitors like Suno AI and Udio, we'll give you a clear picture of where it stands in the rapidly evolving landscape of AI music generation. Whether you're a seasoned producer or someone curious about the future of music technology, this exploration will help you decide if Elevenlabs is worth your time—and your investment. After all, the intersection of creativity and technology is rarely without its surprises. Elevenlabs AI Music Overview Platform Features and Functionality Elevenlabs' music generation tool is designed for users who want to create songs tailored to their unique preferences. The platform allows you to adjust song durations, experiment with various musical styles, and customize lyrics to suit your vision. A particularly noteworthy feature is its modular design, which enables you to edit and regenerate specific sections of a song, such as verses or choruses. This granular level of control is especially appealing for users who enjoy fine-tuning their compositions and exploring diverse creative possibilities. Eleven Music Demo Watch this video on YouTube. The platform also integrates a built-in lyric editor, allowing you to seamlessly combine text and music. This feature is aimed at enhancing the creative process by making it easier to align lyrical content with musical elements. However, while these tools are innovative, their execution leaves room for improvement, particularly in terms of user accessibility and intuitive design. Strengths and Advantages Elevenlabs excels in several areas, particularly in delivering high-quality audio output. The platform's AI model generates clear, coherent audio that rivals or even surpasses many of its competitors. Its strengths include: Exceptional audio quality that enhances the overall listening experience and sets a high standard for AI-generated music. that enhances the overall listening experience and sets a high standard for AI-generated music. A lyric editor that assists the integration of text and music, streamlining the creative process. that assists the integration of text and music, streamlining the creative process. Flexibility in song structure and style, encouraging users to experiment and push creative boundaries. For users who value innovation and high-quality sound in music production, these features make Elevenlabs a compelling option. Its modular approach to song editing also provides a level of creative freedom that is particularly attractive to experienced musicians and producers. Elevenlabs Music Review Watch this video on YouTube. Below are more guides on AI music generation from our extensive range of articles. Challenges and Limitations Despite its strengths, Elevenlabs faces several challenges that may impact your overall experience. One of the most significant issues is the platform's difficulty in generating engaging and creative lyrics. The outputs often feel generic, which can detract from the originality of your compositions. Additionally, the user interface presents several obstacles, including: Complexity in inputting custom lyrics and managing song sections, which can disrupt your workflow. and managing song sections, which can disrupt your workflow. Limited flexibility in adjusting song timing and structure , leading to potential mismatches between lyrics and music. , leading to potential mismatches between lyrics and music. Slower generation speeds compared to competitors, which may frustrate users who prioritize efficiency and quick turnarounds. These limitations can make the platform less appealing, particularly for beginners or users seeking a seamless and intuitive music creation process. Addressing these issues would significantly enhance the platform's usability and broaden its appeal. Comparison with Leading Competitors When compared to other platforms like Suno AI and Udio, Elevenlabs stands out for its audio quality but falls short in other critical areas. Here's how it measures up: Suno AI: Known for its user-friendly interface and greater creative flexibility, Suno AI is particularly well-suited for beginners and those seeking a straightforward music creation experience. Known for its user-friendly interface and greater creative flexibility, Suno AI is particularly well-suited for beginners and those seeking a straightforward music creation experience. Udio: Offers a more extensive range of tools for refining song structures and experimenting with different musical styles, making it a versatile choice for advanced users. While Elevenlabs has the potential to compete with these platforms, its current limitations in usability and customization make it less attractive for users who prioritize a smooth and efficient workflow. Pricing Structure and Accessibility Elevenlabs operates on a subscription-based pricing model, with tiers ranging from $22 per month for the Creator plan to $100 per month for the Pro plan. While these options cater to different levels of usage, the platform's high credit consumption for song generation can make it costly for users who require extensive use. This pricing structure may deter casual users or those new to AI music generation, as the costs may outweigh the benefits for less frequent usage. For potential users, it's essential to carefully evaluate whether the platform's strengths align with your specific needs and whether the pricing fits within your budget. The high-quality audio output may justify the cost for some, but others may find more value in exploring alternative platforms with lower barriers to entry. Recommendations for Different User Groups Elevenlabs is best suited for experienced users who prioritize high-quality audio output and are comfortable navigating a less polished interface. If you're willing to invest time and effort into overcoming its challenges, the platform can serve as a valuable tool for creative experimentation and music production. However, for beginners or those seeking a more intuitive experience, starting with alternatives like Suno AI or Udio may be a more practical choice. For users who are intrigued by the potential of AI-driven music creation but are hesitant to commit to a subscription, exploring free trials or lower-cost plans on competing platforms could provide a better introduction to the technology. This approach allows you to assess your needs and preferences before investing in a more advanced tool like Elevenlabs. Future Prospects and Areas for Improvement With targeted improvements, Elevenlabs has the potential to become a leading player in the AI music generation space. Enhancing its user interface to make it more intuitive and user-friendly would significantly improve accessibility. Additionally, refining its lyric generation capabilities to produce more engaging and creative outputs would address one of its most significant shortcomings. Expanding customization options for song timing and structure would also make the platform more versatile and appealing to a broader audience. By addressing these areas, Eleven Music could not only attract a wider range of users but also establish itself as a frontrunner in the rapidly evolving field of AI-driven music production. For now, it remains a platform with considerable potential, but one that requires substantial updates to fully meet user expectations. Media Credit: MattVidPro AI Filed Under: AI, Guides Latest Geeky Gadgets Deals Disclosure: Some of our articles include affiliate links. If you buy something through one of these links, Geeky Gadgets may earn an affiliate commission. Learn about our Disclosure Policy.

How Context Engineering Can Make Any AI 100x Smarter
How Context Engineering Can Make Any AI 100x Smarter

Geeky Gadgets

time19 minutes ago

  • Geeky Gadgets

How Context Engineering Can Make Any AI 100x Smarter

What if the AI tools you rely on could become not just smarter, but exponentially more effective? Imagine an AI assistant that doesn't just follow instructions but intuitively understands your needs, pulling in the right data at the right time to deliver results that feel almost human. Bold claim? Perhaps. But the secret lies in a innovative approach called context engineering—a method that goes beyond traditional prompt engineering to create dynamic, context-rich environments where AI thrives. This isn't just a tweak; it's a paradigm shift that can make any AI system 100x more useful in your daily workflows. Rick Mulready explores how context engineering transforms AI from a tool that merely responds to commands into a proactive, personalized assistant. You'll discover how integrating dynamic data sources, APIs, and real-time feedback can elevate your AI's performance, whether it's crafting tailored customer emails, analyzing complex datasets, or automating tedious tasks. More than just a technical guide, this is your roadmap to unlocking the full potential of artificial intelligence—one that promises not just efficiency but genuine innovation. The possibilities are vast, and the key to unlocking them might be simpler than you think. Understanding Context Engineering What is Context Engineering? Context engineering involves creating workflows that provide AI systems with the right information at the right time. Unlike prompt engineering, which focuses on crafting specific instructions, context engineering integrates dynamic data sources, APIs, and knowledge bases into the AI's operational framework. This ensures that the AI can access and process relevant information, resulting in outputs that are more accurate, personalized, and actionable. For instance, consider an AI tasked with drafting customer emails. By integrating data from a CRM tool like HubSpot, the AI can access details about past interactions, customer preferences, and pain points. This dynamic approach enables the AI to produce tailored responses that go beyond generic templates, improving customer engagement and satisfaction. How Context Engineering Differs from Prompt Engineering While prompt engineering focuses on crafting precise instructions for an AI model, context engineering takes a broader and more holistic approach. It establishes an ecosystem where the AI operates, making sure that all necessary data and tools are readily available. Prompt engineering remains an essential component within this framework, as well-crafted prompts guide the AI within the context you establish. For example, if you're using an AI tool like MindPal to summarize reports, prompt engineering might involve asking the AI to 'summarize the key points of this document.' Context engineering, however, ensures the AI has access to related documents, historical data, and user preferences. This enables the AI to produce summaries that are not only concise but also nuanced and comprehensive, reflecting a deeper understanding of the task. How Context Engineering Transforms AI into Smarter Assistants Watch this video on YouTube. Learn more about Context Engineering with the help of our in-depth articles and helpful guides. Applications in Business Workflows Context engineering offers practical benefits across a wide range of business processes. By integrating AI with tools such as Google Sheets, Airtable, or N8N, you can automate workflows, enhance decision-making, and improve overall productivity. Here are some key applications: Customer Relationship Management (CRM): AI can analyze CRM data to craft personalized marketing campaigns, customer support responses, or sales strategies. AI can analyze CRM data to craft personalized marketing campaigns, customer support responses, or sales strategies. Data Analysis: By connecting to dynamic data sources like spreadsheets or databases, AI can provide real-time insights, trend analyses, and actionable recommendations. By connecting to dynamic data sources like spreadsheets or databases, AI can provide real-time insights, trend analyses, and actionable recommendations. Content Creation: AI tools can generate tailored content by accessing relevant knowledge bases, user feedback, and contextual data. For example, using you can create workflows where AI agents automatically update Google Docs with real-time data from Airtable or other sources. This streamlines collaboration, reduces manual effort, and ensures that team members always have access to the most up-to-date information. Balancing Context for Optimal Results Providing the right amount of context is critical for achieving optimal AI performance. Too much context can overwhelm the AI, increasing processing costs and leading to irrelevant or redundant outputs. Conversely, insufficient context results in generic and less effective responses. The REAL framework—Relevant, Efficient, Accessible, Logical—offers a practical guideline for striking the right balance: Relevant: Include only information directly related to the task at hand to avoid unnecessary complexity. Include only information directly related to the task at hand to avoid unnecessary complexity. Efficient: Ensure the context is concise and easy for the AI to process without overloading its capabilities. Ensure the context is concise and easy for the AI to process without overloading its capabilities. Accessible: Make data readily available through APIs, integrations, or structured workflows. Make data readily available through APIs, integrations, or structured workflows. Logical: Structure the context in a way that aligns with the AI's processing logic, making sure clarity and coherence. By adhering to these principles, you can ensure that your AI systems deliver precise, actionable, and meaningful results, regardless of the complexity of the task. Advanced Concepts in Context Engineering As workflows and business needs evolve, the context provided to AI systems must also adapt. This concept, known as context evolution, ensures that AI systems become smarter and more specific with each iteration. Learning systems play a pivotal role in this process, incorporating feedback to refine the context over time. For example, an AI feedback loop can analyze errors or inefficiencies in its outputs and adjust the context accordingly. This iterative process not only minimizes issues such as hallucinations or inaccuracies but also enhances the overall relevance and accuracy of the AI's outputs. Over time, this continuous refinement allows the AI to align more closely with your specific goals and requirements. Limitations of Context Engineering Despite its many advantages, context engineering is not without limitations. Issues such as hallucinations or factual inaccuracies can still occur, particularly if the underlying data is flawed or incomplete. Additionally, well-crafted prompts remain essential for guiding the AI within the context you provide. For instance, even with advanced tools like N8N or MindPal, ambiguous or poorly defined instructions can lead to misinterpretation. This highlights the importance of combining strong prompt engineering with robust context engineering to achieve reliable and effective results. A balanced approach ensures that the AI operates within a well-defined framework while maintaining the flexibility to adapt to dynamic inputs. Practical Tools for Context Engineering Several tools can help you implement context engineering effectively in your workflows. These include: Automates workflows by connecting AI systems to various apps and data sources, allowing seamless data integration. Automates workflows by connecting AI systems to various apps and data sources, allowing seamless data integration. MindPal: Enhances AI personalization by integrating dynamic knowledge bases and user-specific data. Enhances AI personalization by integrating dynamic knowledge bases and user-specific data. N8N: Assists workflow automation with customizable integrations, allowing for tailored solutions. Assists workflow automation with customizable integrations, allowing for tailored solutions. HubSpot: Provides CRM data for personalized customer interactions and marketing strategies. Provides CRM data for personalized customer interactions and marketing strategies. Airtable: Serves as a dynamic database for real-time AI updates and collaborative data management. Serves as a dynamic database for real-time AI updates and collaborative data management. Google Docs: Enables collaborative content creation with AI-generated inputs, streamlining team workflows. By using these tools, you can build a robust context engineering framework that enhances the capabilities of your AI systems, making sure they deliver high-quality, actionable outputs. Why Context Engineering Matters Incorporating context engineering into your AI workflows is essential for unlocking the full potential of artificial intelligence. By providing dynamic, relevant, and efficient context, you can improve the quality, personalization, and reliability of AI outputs. This approach not only enhances productivity but also gives your business a competitive edge in an increasingly AI-driven world. Whether you're automating routine tasks, analyzing complex data, or crafting personalized customer experiences, context engineering ensures that your AI tools deliver meaningful and impactful results. By adopting the right strategies and tools, you can transform your workflows and fully harness the power of artificial intelligence to drive innovation and success. Media Credit: Rick Mulready Filed Under: AI, Top News Latest Geeky Gadgets Deals Disclosure: Some of our articles include affiliate links. If you buy something through one of these links, Geeky Gadgets may earn an affiliate commission. Learn about our Disclosure Policy.

Beautician and dentist in 1.8m inheritance battle after both married same man in Las Vegas
Beautician and dentist in 1.8m inheritance battle after both married same man in Las Vegas

The Independent

time19 minutes ago

  • The Independent

Beautician and dentist in 1.8m inheritance battle after both married same man in Las Vegas

A beautician and a dentist are locked in an inheritance battle over a dead accountant's £1.8m fortune after he married both of them in Las Vegas five years apart - but failed to get a divorce from his first bride. Wealthy accountant James Dinsdale died of cancer, aged 55, in October 2020, leaving a £1.8million estate to be fought over by the two women who called themselves his wives. After his death, his most recent partner, beautician Margaret Dinsdale, 41, began sorting out his affairs on the assumption that she would inherit his fortune as his next of kin. But she was left reeling when she discovered James was still legally married to his first wife when he whisked her off for a Las Vegas wedding in 2017 - making their marriage "void" and leaving her with no automatic right to inherit. Just five years earlier, James had married cosmetic dentist, Victoria Fowell, 53, at a Vegas wedding chapel on the same street and only 600 metres from where he wed Margaret, but never got round to divorcing her - making her James' heir alongside his adult son under intestacy laws. However, the two women are now locked in a High Court clash after Margaret launched a claim to a share of James' money on the basis she should be treated as a "spouse" because she married him in "good faith." In a short preliminary hearing, High Court judge Master James Brightwell heard accountant and Second World War history expert James Dinsdale built a thriving property development business, based around central London, before he died and left an estate now valued at around £1.8m. He wed Dr Victoria Fowell - a St Albans-based dentist with an expertise in 'cosmetic smile makeovers' - in 2012, but the pair never got divorced and he went on to marry Margaret Dinsdale in 2017. Margaret's barrister Jonathan Davey KC said his client and James had met in 2008 and become friends, before beginning a 'romantic relationship' in 2014, setting up home together the following year. However, she had no idea whatsoever that he was still married, only learning of it after his death. And because he had not made a will, James' money would be divided between Dr Fowell and his son, William Dinsdale, 28, under intestacy rules. 'Margaret believed that she was validly married to James Dinsdale and there is no evidence that she knew that the deceased was married to Dr Fowell as at 2017," he said. 'She understood the marriage between the deceased and Dr Fowell to have ended some time prior to the relationship between the deceased and the claimant beginning. "We have no idea what James' state of mind was, perhaps he didn't realise he wasn't divorced. "Margaret's assertion is that she believed the deceased to be unmarried and already divorced when she married him in good faith." Touching on their 2017 wedding in Las Vegas, he noted: 'The ceremony which took place between James and my client took place in almost the same location, and appears to have been of the same nature, as the earlier ceremony which took place between the deceased and Victoria Fowell in June 2012. 'The marriage ceremony between him and Dr Fowell took place in the Little White Wedding Chapel, Las Vegas Boulevard. The marriage ceremony between James and Margaret took place in the Chapel of the Flowers, Las Vegas Boulevard. 'But for the deceased's prior marriage to Dr Fowell, the latter ceremony would have been a valid marriage ceremony." The case reached court for a preliminary hearing after Margaret made a claim for "reasonable provision" from James' estate under the 1975 Inheritance Act, amounting to at least half of his £1.8m. The case is being brought against Dr Fowell and James' adult son William, who are currently due to share his fortune as his next of kin under intestacy rules. Mr Davey said Margaret had looked after James "24 hours per day" during his final struggles with terminal cancer and was his "primary carer." 'The evidence of his close friends is that James and Margaret had a loving relationship, and that he was very grateful for her care," he told the judge. He said the couple had been together for six years and planned to have children, with Margaret giving up work and becoming a housewife while he provided for her. "She and James had a relatively lavish lifestyle, which was funded by his wealth and she was entirely financially dependent on the deceased," he said. 'Dr Fowell and William Dinsdale were not being financially maintained by the deceased at the time of his death." There was no evidence of 'financial need' on the part of Dr Fowell, claimed Mr Davey, highlighting claims by Margaret that James once told her he had transferred to her a property and a £2million lump sum after their relationship ended. The court heard it is alleged that Margaret has already received £375,000 "from the estate or in sums derived from James," but Mr Davey said that is denied and that she has only received £20,000 from his pension. After a brief court hearing in which he was told it was "not disputed" that Margaret should be considered a "spouse" under the 1975 Act, Master Brightwell made a declaration to that effect for the purposes of her claim against the estate. He directed that there should now be a future hearing focusing on how James' estate should be divided up between his two wives and son. Under the Inheritance Act, payouts to those treated as a spouse or civil partner are higher than to unmarried partners of a deceased person. The judge also allocated cash-strapped Margaret £50,000 from the estate to help cover her bills and contribute towards hefty lawyers' bills as the case progresses - with the projected costs on her side estimated at around £175,000.

DOWNLOAD THE APP

Get Started Now: Download the App

Ready to dive into a world of global content with local flavor? Download Daily8 app today from your preferred app store and start exploring.
app-storeplay-store