logo
Indian tech company TCS to cut workforce by 2%, affecting more than 12,000 jobs

Indian tech company TCS to cut workforce by 2%, affecting more than 12,000 jobs

Reutersa day ago
BENGALURU, July 27 (Reuters) - India's largest IT services provider Tata Consultancy Services (TCS.NS), opens new tab will reduce its workforce by 2% in its 2026 financial year, primarily affecting middle and senior management, the company said on Sunday.
The company is retraining and redeploying staff as it enters new markets, invests in new technology and deploys AI, but about 12,200 jobs will be cut as part of the process, it said.
"This transition is being planned with due care to ensure there is no impact on service delivery to our clients," the company added.
India's $283 billion IT sector has had to contend with clients holding back non-essential technology spending because of weak demand, persistent inflation and lingering uncertainty over U.S. trade policies.
TCS Chief Executive K Krithivasan said this month that there were delays in client decision-making and project starts.
Orange background

Try Our AI Features

Explore what Daily8 AI can do for you:

Comments

No comments yet...

Related Articles

How to Make AI Follow Your Creative Vision Flawlessly
How to Make AI Follow Your Creative Vision Flawlessly

Geeky Gadgets

timea minute ago

  • Geeky Gadgets

How to Make AI Follow Your Creative Vision Flawlessly

Have you ever felt the frustration of seeing your carefully crafted design ideas lost in translation when working with AI tools? Despite their incredible potential, many AI systems struggle to fully capture the nuances of your creative vision. In fact, studies show that AI-generated designs often achieve only around 60% fidelity to the original concept. Whether it's a misaligned layout, a distorted element, or an off-color palette, these imperfections can leave you wondering if AI is truly ready to collaborate with human creativity. But what if there was a way to guide these tools more effectively, turning them into a reliable partner rather than a source of frustration? Chris Raroque dives into the art of getting AI to truly follow your design ideas and images, offering actionable strategies to bridge the gap between your vision and the machine's output. You'll discover how techniques like iterative prompting and breaking down complex tasks can transform AI from a clumsy assistant into a precise collaborator. Along the way, we'll explore how to refine outputs, navigate the limitations of current tools, and even use AI to spark unexpected creative breakthroughs. By the end, you'll not only understand how to align AI with your design goals but also gain insights into its potential to expand your creative boundaries. After all, the magic lies in learning how to work with the machine, not against it. Improving AI Design Accuracy Why AI Struggles with Design Fidelity AI tools, while advanced, are not without limitations. They often struggle to replicate intricate design details, leading to common issues such as: Misaligned layouts that disrupt the overall structure of your design. that disrupt the overall structure of your design. Incorrect color schemes that fail to match your intended palette. that fail to match your intended palette. Missing or distorted elements that compromise the design's integrity. For instance, a design requiring precise padding and alignment may be rendered inaccurately, necessitating manual adjustments. These challenges highlight the importance of a hands-on, iterative process to guide AI tools toward producing outputs that meet your expectations. Refining AI Outputs: The Power of Iterative Prompting To address the limitations of AI in design, an iterative prompting approach proves highly effective. This method involves breaking the process into smaller, manageable steps and refining the AI's outputs incrementally. Here's how to implement it: Start with a reference image , such as a screenshot of your design, to provide the AI with a clear visual guide. , such as a screenshot of your design, to provide the AI with a clear visual guide. Focus on specific elements , like layout, spacing, or color accuracy, and address them one at a time. , like layout, spacing, or color accuracy, and address them one at a time. Provide detailed prompts to correct errors section by section, making sure clarity in your instructions. to correct errors section by section, making sure clarity in your instructions. Revise and refine repeatedly to address discrepancies and improve the final output. This approach not only enhances the quality of the results but also helps set realistic expectations, reducing frustration when the AI doesn't deliver perfection on the first attempt. Getting AI To Follow Your Design Ideas Exactly Watch this video on YouTube. Find more information on AI design implementation by browsing our extensive range of articles, guides and tutorials. Techniques to Maximize AI's Potential To fully use the capabilities of AI tools, consider adopting these strategies: Use advanced commands in AI tools, such as 'ultra think' in Claude Code, to encourage deeper processing and more accurate outputs. in AI tools, such as 'ultra think' in Claude Code, to encourage deeper processing and more accurate outputs. Break complex tasks into smaller steps , simplifying the process for the AI and improving its performance. , simplifying the process for the AI and improving its performance. View AI as a collaborative partner, not a flawless solution, to harness its creative potential for generating unexpected ideas and innovative solutions. By treating AI as a tool to complement your skills rather than replace them, you can effectively balance its strengths and weaknesses, achieving better results in your design projects. Prototyping Animations with AI AI tools excel at prototyping animations, offering a quick way to visualize dynamic elements such as transitions or effects. For example, creating a book-opening animation or a smooth page transition can be initiated with AI-generated prototypes. However, these outputs often require significant refinement to align with your vision. By testing and adjusting the AI's results iteratively, you can achieve animations that meet your standards. This process emphasizes the importance of patience and persistence when working with AI on complex design elements. Exploring Design Variations One of the most valuable aspects of AI in design is its ability to generate diverse variations. Whether you're experimenting with minimalist aesthetics or bold, high-contrast themes, AI can provide a wide range of options to inspire your creativity. Iteratively exploring these variations allows you to uncover innovative solutions that might not have been immediately apparent. This capability makes AI an excellent tool for brainstorming and pushing the boundaries of your creative process. Choosing the Right AI Tool for Your Needs The performance of AI tools varies significantly, and selecting the right one for your specific needs is crucial. Comparative tests of tools like Claude Code, Cursor, and Warp reveal distinct strengths: Claude Code excels in replicating designs with high accuracy, making it ideal for tasks requiring layout fidelity. excels in replicating designs with high accuracy, making it ideal for tasks requiring layout fidelity. Cursor and similar tools are better suited for generating placeholder assets, such as icons or images. Understanding the strengths and limitations of each tool allows you to choose the one that best aligns with your design requirements and workflow. Benefits of AI in Design Workflows AI tools bring several advantages to the design process, particularly in the early stages of implementation: Accelerated creation of initial drafts , saving time for more detailed work later. , saving time for more detailed work later. Encouragement of creative exploration by generating unexpected ideas and variations. by generating unexpected ideas and variations. Production of placeholder assets, such as icons or images, which can be refined or replaced as needed. These benefits make AI a powerful addition to your design toolkit, allowing you to focus on refining and perfecting your ideas rather than starting from scratch. Understanding AI's Limitations Despite its advantages, AI is not a one-size-fits-all solution. Complex tasks, such as intricate layouts or animations, often require significant manual intervention to achieve high-quality results. Recognizing these limitations and setting realistic expectations is essential for effectively integrating AI into your workflow. By understanding what AI can and cannot do, you can better use its capabilities while compensating for its shortcomings. Bridging the Gap Between AI and Your Vision AI tools have the potential to transform how you implement design ideas and images, but they require a collaborative and iterative approach to deliver optimal results. By selecting the right tool, such as Claude Code, and employing techniques like iterative prompting and creative exploration, you can maximize the value AI brings to your design process. While challenges remain, a structured workflow and a willingness to experiment can help you bridge the gap between AI-generated outputs and your creative vision, allowing you to achieve designs that truly reflect your ideas. Media Credit: Chris Raroque 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.

India's Adani Total Gas posts lower quarterly profit as input costs rise
India's Adani Total Gas posts lower quarterly profit as input costs rise

Reuters

time2 minutes ago

  • Reuters

India's Adani Total Gas posts lower quarterly profit as input costs rise

July 28 (Reuters) - India's Adani Total Gas ( opens new tab reported a drop in quarterly profit on Monday, as gas purchases became costlier after the government cut cheap supply. The company, a joint venture of Adani Group and French oil major TotalEnergies SE ( opens new tab, said its consolidated net profit fell about 3.8% from a year earlier to 1.65 billion rupees ($19 million) in the June quarter. The Indian government in April reduced the allocation of low-cost natural gas to city gas distributors such as Adani Total Gas, citing a decline in domestic output by gas producers. India's natural gas production fell 0.9% year-on-year in April, and 3.6% and 2.8% in May and June, respectively. To maintain uninterrupted supply, the company had to bridge the shortfall by sourcing more expensive natural gas. The company's natural gas costs rose 30.6%, leading to a 27% rise in its total expenses to 12.88 billion rupees. Its CNG volumes, which account for more than half of its total sales, grew 21% during the quarter, as the company expanded its network. Adani Total Gas added 3 new CNG stations during the quarter, taking its total to 650 as of June 30. Sales volume in its piped natural gas segment grew by 6%. Total revenue from operations rose 20.9% to 14.98 billion rupees. Its shares closed nearly flat ahead of the results announcement. ($1 = 86.6630 Indian rupees)

Qwen 3 Coder Agentic Coder Performance Tested
Qwen 3 Coder Agentic Coder Performance Tested

Geeky Gadgets

timean hour ago

  • Geeky Gadgets

Qwen 3 Coder Agentic Coder Performance Tested

What if coding wasn't just a skill but a conversation—one where your tools truly understood your intent and worked alongside you? Enter the Qwen 3 Coder, a new model that's reshaping how developers approach software creation. With a staggering 480 billion parameters and a innovative mixture-of-experts architecture, this innovation promises not just speed, but intelligence. Imagine a tool that can autonomously refactor sprawling codebases, generate SaaS prototypes, or even optimize workflows—all while you focus on solving the bigger problems. It's not just another coding assistant; it's a redefinition of what's possible in agentic coding. In this exploration, World of AI uncover how the Qwen 3 Coder and its companion, the Qwen Code CLI, are transforming development workflows. From outperforming industry giants like GPT-4.1 to automating repetitive tasks with natural language commands, this duo offers a glimpse into the future of coding. But how does it achieve such efficiency without sacrificing precision? And what does its open source flexibility mean for developers looking to tailor solutions to their unique needs? By the end, you might find yourself rethinking not just how you code, but how you innovate. Alibaba's Qwen 3 Coder Unveiled Enhancing Agentic Coding Capabilities The Qwen 3 Coder distinguishes itself with its ability to handle agentic coding tasks, tool utilization, and browser-based interactions. It has demonstrated superior performance in industry-standard benchmarks such as SwayBench and Spider Ader, outperforming leading models like Claude Sonnet 4 and OpenAI GPT-4.1. As an open source solution, it not only rivals proprietary models but also offers developers transparency and the flexibility to adapt the model to their specific needs. At the core of the Qwen 3 Coder is its mixture-of-experts architecture, which activates 35 billion parameters during inference to optimize efficiency. This design enables the model to address intricate coding challenges, such as generating complex simulations or refactoring extensive codebases. For instance, the Qwen 3 Coder can autonomously create a SaaS landing page or optimize a large-scale project with minimal user input, significantly reducing the time and effort required for such tasks. By using its advanced architecture, the model enables developers to focus on high-level problem-solving while automating routine processes. This combination of efficiency and adaptability makes it a valuable tool for modern software development. Optimizing Workflows with Qwen Code CLI The Qwen Code CLI is a powerful command-line interface tool that unlocks the full potential of the Qwen 3 Coder. By allowing natural language commands, it simplifies tasks such as code optimization, refactoring, and documentation generation. This tool is particularly effective for automating repetitive workflows, allowing developers to focus on more strategic aspects of their projects. Key features of the Qwen Code CLI include: Support for natural language commands to execute coding tasks with ease. Automation of repetitive workflows, minimizing manual effort and saving time. Advanced analysis and understanding of complex codebases for improved insights. Tools for automated testing and comprehensive documentation generation. The CLI integrates seamlessly with APIs such as Alibaba's ModelScope and OpenRouter, making sure compatibility with existing development environments. Additionally, it supports customization through a ' configuration file, allowing developers to tailor its functionality to meet specific project requirements. This flexibility ensures that the tool can adapt to a wide range of use cases, from small-scale projects to enterprise-level applications. Watch this video on YouTube. Expand your understanding of Qwen 3 Coder with additional resources from our extensive library of articles. Technical Features and Integration Designed with developers in mind, the Qwen 3 Coder and its CLI tool are straightforward to set up and integrate into existing workflows. To begin, developers need to have installed on their systems. Once configured, these tools can handle large codebases, connect to APIs, and provide enhanced functionality for a variety of tasks. The model's open source framework ensures that it remains flexible and adaptable to evolving development needs. Its ability to autonomously create prototypes and simulations further reduces development time, allowing teams to accelerate project timelines without compromising on quality. For example, the Qwen 3 Coder can generate a fully functional prototype or refactor an existing codebase with minimal manual intervention, making sure consistent and high-quality results. By integrating seamlessly into existing workflows, the Qwen 3 Coder enhances productivity and enables developers to achieve their objectives more efficiently. Its technical capabilities make it a versatile tool for addressing a wide range of coding challenges. Real-World Applications and Impact The Qwen 3 Coder has the potential to transform software development workflows by automating complex tasks and enhancing overall efficiency. Its ability to autonomously manage tasks such as creating prototypes, optimizing code, and generating documentation allows developers to focus on higher-level problem-solving and innovation. In practical applications, the Qwen 3 Coder has been used to: Generate functional prototypes for SaaS applications and other software projects. Streamline workflows by automating repetitive coding tasks. Improve code quality through advanced analysis and refactoring capabilities. Produce comprehensive documentation and automated testing frameworks. These capabilities make the Qwen 3 Coder an invaluable tool for developers working on diverse projects, from small-scale applications to large enterprise systems. By automating routine processes and enhancing productivity, it ensures consistent results and reduces the time required to complete complex tasks. Whether you are developing a SaaS application, automating testing, or generating detailed documentation, the Qwen 3 Coder provides the tools and functionality needed to achieve your goals efficiently. Its open source design and advanced architecture make it a versatile solution for addressing the challenges of modern software development. Media Credit: WorldofAI 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.

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