
Google invests $13 million to upskill Canadian workers
Getting your Trinity Audio player ready...
Google Canada (NASDAQ: GOOGL) has unveiled an ambitious plan to deepen the talent pool for emerging technologies in Canada, investing $13 million in various initiatives.
According to a report, the Canadian arm of the Big Tech company will deploy the funds to support organizations spearheading the upskilling of Canadians. Dubbed the AI Opportunity Fund, Google Canada says it will focus on artificial intelligence (AI) skills acquisition projects nationwide.
While Canadian enterprises are embracing AI integration into their existing processes, the AI talent pool does not match the pace of adoption. Google is turning to mass upskilling with emerging technologies to provide a steady stream of talent and prevent redundancy for the current workforce.
'Canada is uniquely positioned to capture the immense AI opportunity by putting this technology to work,' said Sabrina Geremia, Country Managing Director for Google Canada. 'The AI Opportunity Fund will help upskill Canadians nationwide, strengthen our workforce, and prepare Canadians for an AI-powered economy.'
Google's $13 million fund will support the Alberta Machine Intelligence Institute (AMII) and will directly impact post-secondary school students with the prerequisite foundational AI skills. Furthermore, a chunk of the fund will be deployed toward training indigenous students via the First Nations Technology Council.
Google Canada will provide AI skills training to individuals from communities with high unemployment rates through an endowment in Skills For Change. The Toronto Public Library will receive funding from Google Canada to democratize access to AI training for residents in the megacity.
Google's plan is intended to support a raft of initiatives from the Canadian government to ramp up AI adoption. The City of Manitoba has recently invested $2 million to train small and medium-sized businesses on AI adoption to lower barriers to adoption.
Currently, the generative AI is forecast to add $230 billion to the Canadian economy before the end of the decade, saving thousands of man-hours annually.
AI in workplaces threatens job security
Several reports have highlighted the risks of increasing AI adoption in the workplace. As companies leverage emerging technologies to improve productivity and efficiency, entry-level roles are in danger of being replaced by AI.
Furthermore, using AI-based recruiters in the hiring process brings fear of discrimination to job seekers. One study revealed that the training data employed by one AI recruiter failed to cater to a wide demographic, making it unsuitable for global application. Australian researchers unveil AI capability for understanding human emotions
Meanwhile, researchers at Edith Cowan University (ECU) in Western Australia have made significant strides in developing an AI system capable of understanding human emotions.
The researchers have reached a new milestone in developing an advanced AI-based chatbot with heightened emotional awareness. The latest development brings AI one step closer to improving 'human-machine interactions' while expanding the potential use cases.
The team achieved the feat by ditching conventional training methods using single facial pictures. ECU researchers trained the AI model on several related facial expressions, providing greater context and allowing the model to judge emotions like humans.
'Just like we don't judge how someone feels from one glance, our method uses multiple expressions to make more informed predictions,' said lead researcher Sharjeel Tahir.
The lead researcher notes that the new training system pushes the frontier for AI interactions with humans, allowing them to show greater empathy. Furthermore, a wide dataset within the same group is tipped to improve the model's accuracy from different angles and lighting conditions.
The researchers say the new model can be deployed in diverse industries, including education, customer support, mental health, and AI-based therapy sessions.
For now, the ECU researchers confirm that the next milestone in the research is to achieve artificial empathy. Going forward, the team will explore solutions around supporting AI models to provide empathetic responses to human queries beyond routine machine-generated answers.
However, the team must navigate challenges, including the ambiguity of human facial expressions across individuals and cultures. Furthermore, there is the risk of manipulation from bad actors using emotionally persuasive bots for nefarious reasons.
AI research increasing
AI research is progressing, matching the speed of global adoption and new use cases. One study has highlighted the use case of AI recruiters in hiring, identifying the upsides and the risks of discrimination to job seekers.
Another study is probing the use of AI, distributed ledger technology (DLT), and Big Data in advancing planetary health amid global ecological challenges. Several countries, including the U.K., are investing large sums to support AI research to provide consumer guardrails ahead of mainstream adoption.
In order for artificial intelligence (AI) to work right within the law and thrive in the face of growing challenges, it needs to integrate an enterprise blockchain system that ensures data input quality and ownership—allowing it to keep data safe while also guaranteeing the immutability of data. Check out CoinGeek's coverage on this emerging tech to learn more why Enterprise blockchain will be the backbone of AI.
Watch: AI is for 'augmenting' not replacing the workforce
title="YouTube video player" frameborder="0" allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share" referrerpolicy="strict-origin-when-cross-origin" allowfullscreen="">
Hashtags

Try Our AI Features
Explore what Daily8 AI can do for you:
Comments
No comments yet...
Related Articles


FF News
11 minutes ago
- FF News
GTreasury Launches GSmart AI, an Agentic AI FinTech Solution Built for CFOs and Complex Treasury Environments
GTreasury has introduced GSmart AI, a cutting-edge tool in the realm of AI-powered treasury solutions, aimed at revolutionizing how CFOs and finance teams manage complex treasury operations. Leveraging best-in-class AI enterprise infrastructure, governance, and agent-driven workflows, GSmart AI empowers CFOs and treasurers to confidently navigate the increasingly complex treasury landscape by providing secure, actionable insights and agentic actions to amplify the value of GTreasury's solutions, spanning connectivity, liquidity management, cash forecasting, payments, risk, netting, and other core treasury functions. CFOs and treasury teams face an evolving mix of complex data, unpredictable market conditions, and increasing regulatory pressure. Reliable AI support is a strategic necessity, and GTreasury's GSmart AI addresses these demands with powerful capabilities, built-in compliance, and full transparency into every action it takes. 'For AI to create real value for CFOs, it has to be based on clear design principles of security, removing inefficiencies, fast problem solving, and quick delivery,' said Renaat Ver Eecke, Chief Executive Officer, GTreasury. 'GSmart AI, born from our recent investment in our Development Hub in Dublin, Ireland , amplifies our solutions, empowering CFOs and treasury teams to confidently take advantage of powerful insights and value without sacrificing compliance or oversight. We're proud of our recent investment and expansion in development, which advances our vision of adaptable solutions that provide financial leaders with the clarity to act.' The value of GSmart AI lies in its adaptable and scalable capabilities, where AI actively reduces manual effort by performing routine-but-time-consuming treasury tasks, proactively identifying risks and variances, and recommending strategic actions to support more informed decision-making. Its flexible architecture empowers treasury teams to deploy and schedule AI agents tailored to specific operational needs, ensuring maximum adaptability and relevance. As CFOs face growing complexity in financial ecosystems, AI-powered treasury solutions like gSmart AI offer real-time insights and automated recommendations. 'With GSmart AI, we've built an enterprise-class AI platform that not only analyzes data but actively infers, reasons, and acts on behalf of treasury professionals, amplifying the value of our solutions,' said Mark Johnson, Chief Product Officer, GTreasury. 'GSmart AI provides CFOs and treasurers full visibility and control, with clear traceability of every AI-generated output back to its source data. The depth of governance and explainability embedded into GSmart AI distinctly set our platform apart from generalized AI solutions or any other treasury technology.' GSmart AI's differentiated value includes full alignment with ISO/IEC 42001 and ISO/IEC 27001 standards, readiness for the upcoming EU AI Act, and stringent data sovereignty practices. The platform strictly isolates client data, ensures no client data is used in AI model training, and maintains complete transparency through comprehensive audit logs and observability tools. This innovation marks a significant leap in the evolution of AI-powered treasury solutions, offering real-time forecasting and adaptive decision-making tools. Among the key features and benefits of GSmart AI: Enterprise-class infrastructure: A scalable, API-driven agentic platform designed specifically for the complex needs of treasury and finance. Security and compliance: Comprehensive encryption, zero-trust architecture, data residency controls, and rigorous global regulatory compliance including GDPR and CCPA. Complete transparency and auditability: Full visibility into AI operations with explainable outputs linked directly to source documentation, backed by automated security monitoring and audit logging. Client control and data sovereignty: Full user control over AI features through feature flags, explicit opt-in workflows, and strict client-specific data isolation. GSmart AI integrates seamlessly within GTreasury's adaptable treasury management platform, providing flexible and intuitive interaction with existing solutions and workflows. With the rise of AI-powered treasury solutions, finance leaders now have access to tools that adapt and evolve alongside their needs. To learn more about GSmart AI and request a demo, visit .


Geeky Gadgets
14 minutes ago
- Geeky Gadgets
Self-Evolving AI : New MIT AI Rewrites its Own Code and it's Changing Everything
What if artificial intelligence could not only learn but also rewrite its own code to become smarter over time? This is no longer a futuristic fantasy—MIT's new 'self-adapting language models' (SEAL) framework has made it a reality. Unlike traditional AI systems that rely on external datasets and human intervention to improve, SEAL takes a bold leap forward by autonomously generating its own training data and refining its internal processes. In essence, this AI doesn't just evolve—it rewires itself, mirroring the way humans adapt through trial, error, and self-reflection. The implications are staggering: a system that can independently enhance its capabilities could redefine the boundaries of what AI can achieve, from solving complex problems to adapting in real time to unforeseen challenges. In this exploration by Wes Roth of MIT's innovative SEAL framework, you'll uncover how this self-improving AI works and why it's a fantastic option for the field of artificial intelligence. From its ability to overcome the 'data wall' that limits many current systems to its use of reinforcement learning as a feedback mechanism, SEAL introduces a level of autonomy and adaptability that was previously unimaginable. Imagine AI systems that can retain knowledge over time, dynamically adjust to new tasks, and operate with minimal human oversight. Whether you're intrigued by its potential for autonomous robotics, personalized education, or advanced problem-solving, SEAL's ability to rewrite its own rules promises to reshape the future of technology. Could this be the first step toward truly independent, self-evolving AI? SEAL: Self-Adapting AI What Sets SEAL Apart? The SEAL framework introduces a novel concept of self-adaptation, distinguishing it from traditional AI models. Unlike conventional systems that depend on external datasets for updates, SEAL enables AI to generate synthetic training data independently. This self-generated data is then used to iteratively refine the model, making sure continuous improvement. By persistently updating its internal parameters, SEAL enables AI systems to dynamically adapt to new tasks and inputs. To better illustrate this, consider how humans learn. When faced with a new concept, you might take notes, revisit them, and refine your understanding as you gather more information. SEAL mirrors this process by continuously refining its internal knowledge and performance through iterative self-improvement. This capability allows SEAL to evolve in real time, making it uniquely suited for tasks requiring adaptability and long-term learning. The Role of Reinforcement Learning in SEAL Reinforcement learning plays a critical role in the SEAL framework, acting as a feedback mechanism that evaluates the effectiveness of the model's self-edits. It rewards changes that enhance performance, creating a cycle of continuous improvement. Over time, this feedback loop optimizes the system's ability to generate and apply edits, making sure sustained progress. This process is analogous to how humans learn through trial and error. By rewarding effective changes, SEAL aligns its self-generated data and edits with desired outcomes. The integration of reinforcement learning not only enhances the system's adaptability but also ensures it remains focused on achieving specific goals. This structured feedback mechanism is a cornerstone of SEAL's ability to refine itself autonomously and efficiently. MIT's New Self Adapting AI Model Watch this video on YouTube. Unlock more potential in self-adapting language models by reading previous articles we have written. Real-World Applications and Testing SEAL has demonstrated remarkable performance across various applications, particularly in tasks requiring the integration of factual knowledge and advanced question-answering capabilities. For instance, when tested on benchmarks like the ARC AGI, SEAL outperformed other models by effectively generating and using synthetic data. This ability to create its own training material addresses a significant limitation of current AI systems: their reliance on pre-existing datasets. SEAL's capacity for long-term task retention and dynamic adaptation further enhances its utility. It excels in scenarios that demand sustained focus and coherence, such as answering complex questions or adapting to evolving objectives. By using its iterative learning process, SEAL is equipped to handle these challenges with exceptional efficiency, making it a valuable tool for a wide range of real-world applications. Overcoming AI's Data Limitations One of SEAL's most promising features is its ability to overcome the 'data wall' that constrains many AI systems today. By generating synthetic data, SEAL ensures a continuous supply of training material, allowing sustained development without relying on external datasets. This capability is particularly valuable for autonomous AI systems that must operate independently over extended periods. Additionally, SEAL addresses a critical weakness in many current AI models: their struggle with coherence and task retention over long durations. By emulating human learning processes, SEAL enables AI systems to manage complex, long-term tasks with minimal human intervention. This ability to retain and apply knowledge over time positions SEAL as a fantastic tool for advancing AI capabilities. Potential Applications and Future Impact The introduction of SEAL marks a significant milestone in AI research, opening new possibilities for self-improving systems. Its ability to dynamically adapt, retain knowledge, and generate its own training data has far-reaching implications for the future of AI development. Potential applications include: Autonomous robotics: Systems that can adapt to changing environments and perform tasks with minimal human oversight. Systems that can adapt to changing environments and perform tasks with minimal human oversight. Personalized education: AI-driven platforms that tailor learning experiences to individual needs and preferences. AI-driven platforms that tailor learning experiences to individual needs and preferences. Advanced problem-solving: Applications in fields such as healthcare, logistics, and scientific research, where adaptability and precision are critical. As AI systems become increasingly autonomous and capable of executing complex tasks, frameworks like SEAL will play a crucial role in their evolution. By allowing AI to learn and improve independently, SEAL represents a significant step toward realizing the full potential of artificial intelligence. Its innovative approach to self-adaptation and continuous improvement sets the stage for a new era of AI development, where systems can operate with greater intelligence, flexibility, and autonomy. Media Credit: Wes Roth 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.


Geeky Gadgets
14 minutes ago
- Geeky Gadgets
Android 16 QPR1 Beta 2: Game-Changing Features Revealed!
The Android 16 QPR1 Beta 2 update introduces a variety of new features, visual refinements, and system improvements aimed at enhancing your overall experience. Among the most notable additions is the desktop mode, which transforms your Pixel 8 or newer device into a desktop-like interface when connected to an external display. This update also brings user interface (UI) enhancements, expanded customization options, and critical bug fixes, ensuring a smoother and more intuitive experience for users. The video below gives us detailed look at the update. Watch this video on YouTube. Desktop Mode: A Leap in Productivity Desktop mode is a standout feature in this update, offering a desktop-like experience when your Pixel 8 or newer device is connected to an external display. This functionality is designed to improve productivity and multitasking, supporting features such as: App docking for quick access to frequently used applications Window resizing to optimize multitasking Floating apps and multiple desktops for enhanced flexibility To enable desktop mode, you will need a compatible USB-C cable, a display with USB-C input (or an adapter), and activation of the feature in developer settings. This addition is particularly beneficial for users who require greater versatility for work or entertainment, bridging the gap between mobile and desktop environments. Visual and UI Improvements The update introduces several visual and interface refinements that enhance both usability and aesthetic appeal. These changes aim to make everyday interactions more seamless while maintaining a cohesive design language. Key updates include: A revamped 'At a Glance' widget with clearer pagination dots for better navigation Smoother animations for quick settings, notifications, and media controls Repositioned volume controls featuring updated Material You design elements Enhanced wallpaper customization with quicker access to effects and new categories like 'Wallpaper Studio' Redesigned settings menus for sound, vibration, and display options to improve navigation These improvements not only enhance the visual consistency of the interface but also contribute to a more intuitive user experience. Expanded Customization Options Personalization is a key focus of Android 16 QPR1 Beta 2, with several new customization options introduced to make your device feel uniquely yours. These include: Enhanced wallpaper customization tools, offering faster access to effects and new categories Additional lock screen clock customization options, allowing you to tailor its appearance to your preferences These features align with Android's commitment to user-centric design, making sure that your device reflects your personal style and needs. Bug Fixes and System Stability The update addresses a range of persistent issues, improving overall system stability and reliability. Key fixes include: Resolved issues with auto dark theme activation Fixes for app shortcut glitches and camera crashes Improvements to the Now Playing feature for better music recognition Unified font colors in the status bar and quick settings for a more consistent appearance These fixes aim to eliminate common pain points, making sure a smoother and more dependable user experience. Known Issues While the update brings significant improvements, a few unresolved issues remain. These include: The 'screen off fingerprint unlock' feature remains non-functional Occasional crashes or delays when setting new wallpapers Although these issues are relatively minor, they highlight areas for further refinement in future updates. Additional Changes Several smaller but impactful changes have also been introduced, further refining the overall user experience. These include: Collapsible categories for app notifications, making it easier to organize alerts The 'Cast' option renamed to 'Google Cast' under connected devices, reflecting its broader functionality A redesigned battery percentage bar with a thicker appearance and larger font for estimated time, improving readability Minor tweaks to location settings, the lock screen clock, and the system rules page These subtle adjustments enhance usability and clarity, addressing practical aspects of the Android experience. Looking Ahead Android 16 QPR1 Beta 2 delivers a comprehensive mix of innovative features, polished design updates, and essential bug fixes. The introduction of desktop mode stands out as a significant addition, offering new possibilities for productivity and entertainment. Meanwhile, the visual and customization enhancements ensure a more intuitive and personalized experience. Although a few minor issues persist, this update represents a meaningful step forward for Android, setting the stage for future advancements. Whether you are a power user or a casual one, these updates are designed to make your device more versatile, user-friendly, and enjoyable to use. Below are more guides on Android 16 QPR1 Beta 2 from our extensive range of articles. Source & Image Credit: In Depth Tech Reviews Filed Under: Android News, Mobile Phone News, 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.