Everything posted by Vishwadeep Khatri
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AI News from ET - EU has had productive meetings with Anthropic over possible future access to Mythos
The European Commission has held productive discussions with Anthropic concerning future access to its Mythos AI product. The EU's cybersecurity agency, ENISA, is expected to gain access to Mythos. This AI tool is designed to identify vulnerabilities in computer code, enhancing defenses against cyberattacks. Initial concerns about the tool enabling attacks appear to be overstated. View the full article
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AI News from ET - Investment platform LVX launches Elvix, an AI tool for private market investors
LVX Ventures has launched Elvix, an AI platform offering continuous investment feedback. Built on extensive private market data, Elvix helps investors evaluate startups and track portfolio risks. This innovation addresses information gaps in private investing. The platform uses proprietary AI to analyze opportunities and monitor performance. Elvix aims to provide decision intelligence for early-stage and growth investments. View the full article
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AI News from ET - AirTrunk to invest $21 billion in India data centre
AirTrunk, backed by Blackstone, will invest over $21 billion in a new data centre in Maharashtra's Raigad Penn Growth Centre. This facility will boast a 3 GW capacity. India is attracting significant foreign investment in data infrastructure, with US tech giants expected to invest over $630 billion this year. View the full article
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AI News from ET - As the Pentagon pushes for battlefield AI, some military leaders urge caution
The Trump administration is pushing for AI in the U.S. military, facing calls for safeguards from companies and military leaders. Defense Secretary Pete Hegseth champions rapid AI evolution, clashing with tech firms like Anthropic over ethical concerns and autonomous weapons. President Trump prioritizes maintaining America's AI lead over potential restrictions. View the full article
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AI News from ET - Adani says US legal issues behind it, bets on AI-driven infrastructure boom
Gautam Adani announced the Adani Group has overcome US legal challenges and is accelerating investments in energy, transport, and digital infrastructure. The conglomerate is positioning itself to capitalise on AI-driven growth, with significant capital expenditure in renewable energy, data centres, and logistics. Adani emphasised the group's commitment to nation-building despite past scrutiny. View the full article
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AI News from ET - SoftBank to spend $87.5 billion on AI centres in France: Son
Japanese tech investor SoftBank will spend 75 billion euros ($87.5 billion) on artificial intelligence infrastructure in France, its founder Masayoshi Son told a French newspaper in an interview released Saturday. "75 billion euros in total," Son told La Tribune Dimanche weekly ahead of a French investment conference hosted by President Emmanuel Macron. View the full article
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AI News from ET - AI may impact "lucrative job market linked to IT services": EY report
Artificial Intelligence will significantly reshape India's skilled workforce and its IT sector. EY's report highlights potential job market shifts. While India's economic growth remains strong, adapting to AI's evolution is crucial. Policymakers must address technological changes alongside other global challenges to maintain India's growth trajectory and economic future. View the full article
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AI News from ET - AI to reshape hiring and work in India, but 'human ownership' key as confidence outpaces global peers: ACCA
India's workforce is rapidly embracing AI at work and in hiring, with adoption expected to accelerate as organizations redesign roles around automation, ACCA said in its latest survey. View the full article
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AI News from ET - UK banks still lack access to Mythos AI model, Bank of England governor says
Bailey, speaking to Bloomberg TV, said Anthropic was willing to share the models on a trial basis but there appeared to be a political hold-up. View the full article
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AI News from ET - AI costs spiral as firms lose spending control
Companies are facing massive AI bills, with one firm reportedly spending $500 million in a month on Claude AI due to unchecked usage. Several global firms are now cutting back on AI spending, changing pricing, or rehiring engineers to manage ballooning costs, as AI currently costs more than it saves. View the full article
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Should AI Decide Which Customers Matter Most?
CAISA Forum Question 876If AI recommends allocating resources to the highest-value customers, should lower-value customers receive reduced service?A B2B service organization uses AI to optimize how its support teams spend their time. The AI analyzes: revenue contribution, profitability, renewal probability, strategic importance, support history. It concludes that allocating more resources to the top 20% of customers would: increase revenue retention by 15%, improve profitability, and strengthen relationships with key accounts. However: response times for smaller customers would increase, some lower-value customers would receive less personalized support, and future growth opportunities among smaller customers could be missed. This creates a real dilemma: View A — Prioritize high-value customers.Organizations should allocate scarce resources where they create the greatest business impact. Not all customers contribute equally, and AI helps make that reality visible. View B — Maintain balanced service levels.Today’s small customers may become tomorrow’s largest accounts. Deliberately reducing service levels can damage reputation, trust, and long-term growth. Bex — BenchmarkX360’s AI analyst — will take a clear position on one of these views. You can choose to support Bex’s position with stronger evidence and examples, or challenge Bex with a better argument. Either approach can win. Which view do you support — and why? Provide a specific operational, service, or product example to support your position.⚠️ Answers that do not take a clear position will not be approved. ⚠️ “It depends” answers will not be approved. 💡 Participants are free to use AI tools — clarity, insight, and contextual relevance will determine the best answer. 🏆 The best answer will be selected on the basis of:· Clarity of position taken · Quality of reasoning and argument · Relevance of operational, service, or product example · Ability to go beyond or against Bex’s analysis
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AI News from ET - In China, AMD CEO Lisa Su is understated while Nvidia's Huang is more razzmatazz
AMD CEO Lisa Su visited China, maintaining a low profile unlike Nvidia's Jensen Huang. This reflects differing strategies in China's crucial AI chip market. While Nvidia's market share has dropped significantly, AMD holds a smaller but more diversified presence. Both companies are investing in Taiwan. Su's engagement included meetings with Chinese officials, signaling continued cooperation. View the full article
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Faster Solutions or Stronger Teams — What Should AI Optimize?
Vishwadeep Khatri replied to Vishwadeep Khatri's topic in We ask and you answer! The best answer wins!Evaluation Summary and Winner Announcement Q875Answer 1 — OmsharanPosition: View B (with View A-leaning nuance — reduce low-value discussions, not collaborative thinking). Has specific example: Yes — manufacturing downtime/maintenance scenario and Toyota. Reasoning quality: Strong. Cleanly separates AI's role as pre-work accelerator from the irreplaceable human roles of assumption-challenging and innovation. Proposes an "AI-first analysis, human-centered decision integration" model with a clear operating structure. ✅ Approved Clear position with a well-developed hybrid model, a concrete manufacturing example, and actionable meeting-redesign logic. Answer 2 — Jamiu_Lasisi_LQ84Position: View A (Challenge Bex — reduce inefficient collaboration, redesign its purpose). Has specific example: Yes — Google Project Aristotle, Toyota TPS (A3 methodology), NASA Apollo 13 Mission Control, NHS diagnostic AI. Reasoning quality: Very strong. Separates problem-solving workshops into two separable purposes (finding solutions vs. building capability/alignment) and argues AI should own Purpose 1 while collaboration is redirected entirely to Purpose 2. Provides four structured conditions where View B legitimately applies and a comparative framework table. ✅ Approved Forceful View A position with four named examples, a rigorous purpose-separation framework, and a clear rebuttal of Bex's Toyota argument. Answer 3 — rajan.arora2000Position: View B (Do not reduce collaborative problem-solving — preserve without qualification). Has specific example: Yes — 12 dissected cases including Air France 447, Boeing 737 MAX, Knight Capital, Zillow Offers, Opendoor, GE Digital/Predix, Nokia, DBS Bank, Toyota, Maruti Suzuki, AI model collapse (Shumailov et al., Nature 2024), and Qantas QF32. Reasoning quality: Exceptional. Introduces a formal net-value function (ΔVᵢ = α·Tᵢ − β·Lᵢ·κ − γ·Nᵢ·ρ), derives the sign-flip from structural regime rather than coefficient choice, performs sensitivity analysis, closes the "better model" objection formally, and supplies a Monday-morning Solver Capital Protocol with a Stationarity Gate, Solver Floor, Autophagy Firewall, and paired KPIs including a canary capability index. ✅ Approved The most rigorous submission — formal framework, 12 dissected cases with matched pairs (AF447 vs. QF32; Zillow vs. Opendoor), sensitivity-proven verdict, second-order loop analysis (competence autophagy), and a deployable protocol. Answer 4 — AnmolPosition: View B (AI empowers teams, doesn't replace them). Has specific example: Partially — BPO industry examples (Chennai call centre, Gurugram BPO) are illustrative/sector-general rather than named documented cases. Reasoning quality: Moderate. Builds a 4-stage AI-Augmented Collaboration Model (pre-work, session, real-time facilitation, post-decision) which is practical and well-structured. However the examples are hypothetical vignettes rather than documented cases. ✅ Approved Clear View B position with a well-designed collaboration model, though the examples are illustrative rather than documented, which limits the argument's strength. Answer 5 — Anjali_Mali_H0mpPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — A global IT services company (unnamed/generic) that reduced post-incident reviews and experienced recurring incidents before reintroducing collaboration. Reasoning quality: Moderate. Cleanly structured with a scenario-based IT operations example showing what AI did well and what went wrong. The example is plausible but the company is not named. ✅ Approved Clear View B position with a structured IT operations scenario that effectively illustrates the capability-decay risk, though the example is unnamed and generic. Answer 6 — Bhaskar_Sambamurthy_vKbHPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Netflix (content creation/Squid Game, Stranger Things), Knight Capital Group (2012 algorithmic collapse, $440M loss), and a personal hospital consulting experience. Reasoning quality: Strong. Multi-sector approach spanning product innovation, process risk, and service delivery. Frames collaboration as the buy-in mechanism that makes solutions executable, not just the finding mechanism. Draws on personal consulting experience in healthcare. ✅ Approved Strong View B position with diverse named examples across industries and a clear reframing of collaboration as an execution-enablement mechanism. Answer 7 — Anshuman MishraPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Toyota Kaizen/robotic arm alignment failure scenario (with human loading-angle root cause missed by AI). Reasoning quality: Moderate-to-strong. The robotic arm example is well-constructed and shows concretely how AI can miss the human root cause. The argument around reimagining AI's role in workshops (from solution generator to facilitator) is clear. Counter-argument section addresses the "data trap" of measuring TTR over capability. ✅ Approved Clear View B position with a well-drawn manufacturing example and a useful reframe of AI's proper role in collaborative sessions. Answer 8 — Varsha_Pradeep_loRgPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Toyota TPS (deeper than Bex's use), aviation CRM (Crew Resource Management), and NASA Mission Control. Reasoning quality: Strong. Goes deeper than Bex on Toyota by focusing on distributed operational judgment rather than cohesion. Aviation CRM is a well-chosen analogy. NASA example grounds the argument in a high-stakes data-intensive environment where human collaborative review is retained deliberately. ✅ Approved Strong View B position with three well-chosen examples across manufacturing, aviation, and space operations, emphasising distributed solver development over team warmth. Answer 9 — Viraj KhandesagarPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Toyota Kaizen model. Reasoning quality: Moderate. Correctly identifies the core risk (passive executors vs. active thinkers) and the Toyota reference is relevant. The argument is brief and covers the key themes but does not develop the reasoning beyond standard View B points. ✅ Approved Clear View B position with a relevant example, though the argument is concise and lacks the depth and differentiation of stronger submissions. Answer 10 — Vikas ChoudharyPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Toyota TPS and A3 thinking methodology. Reasoning quality: Moderate. Sound framing around capability development and cross-functional resilience. The Toyota/A3 example is well-used. Argument is brief but makes the key points cleanly. ✅ Approved Clear View B position with a relevant Toyota/A3 example; argument is concise and correct but limited in depth. Answer 11 — Ehisuoria Aigbogun (first submission)Position: View B (Preserve collaborative problem-solving). Has specific example: Yes — John Deere combine harvester system integration (operational transformation with multi-system complexity). Reasoning quality: Moderate-to-strong. The John Deere example is distinctive and sector-specific, illustrating how AI misses organisational context during large system integrations. Argument focuses well on the gap between data-visible root causes and human-context root causes. ✅ Approved Clear View B position with a distinctive manufacturing/agricultural equipment example that effectively illustrates context gaps AI cannot bridge. Answer 13 — Amrita RKPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Google Project Aristotle (2016), BCG Innovation Anatomy Study (2021), Amazon AI hiring tool (discontinued 2018), Boeing, McKinsey organisational change data. Reasoning quality: Very strong. Introduces the IKEA Effect (Norton, Mochon & Ariely, 2012) as the psychological mechanism for ownership-driven execution quality, references the BCG 1,500-company study, and provides a structured "Human-AI Integrated Decision Architecture" framework. Argument spans capability, ownership, innovation, and risk dimensions. ✅ Approved Very strong View B position with multiple named research references, the IKEA Effect as a named mechanism, and a concrete multi-dimension framework. Answer 14 — AbilashMohandasPosition: View B (Preserve collaborative problem-solving). Has specific example: Yes — Original operational case study: a retail bank contact centre where AI missed a policy interpretation misalignment between Risk Compliance and Digital Product teams (4,200 complaints, 18 regulatory queries, -7 NPS impact). Also McKinsey change management data. Reasoning quality: Very strong. Uses a first-person detailed case study with quantified outcomes to show precisely what AI cannot surface (tacit institutional knowledge not encoded in any dataset). Introduces the "encoding mechanism" framing: collaborative problem-solving is not just where solutions are found but where tacit knowledge gets encoded into the system. Structured across seven numbered sections with a clear strategic recommendation. ✅ Approved Very strong View B position with an original quantified case study, a clear "encoding mechanism" thesis, and structured strategic argumentation across multiple dimensions. 🏆 Winning Answer: rajan.aroraWhy it wins: rajan.arora2000's submission is the strongest on all three evaluation criteria. On clarity of position, the answer is unequivocal from the opening line and held without qualification throughout, while also precisely mapping the territory where View A is genuinely correct (the stationary ticket farm). On quality of reasoning, it is uniquely rigorous: it derives a formal expected-value function, demonstrates the sign-flip structurally rather than through coefficient choice, closes the "just build a better model" objection mathematically (showing that perfect accuracy worsens the outcome under high reactivity), and names the second-order failure loop — competence autophagy — that no other submission reaches. On relevance and specificity of examples, it dissects 12 documented cases across aviation, aerospace, finance, real estate, industrial software, banking, manufacturing, and AI/ML — including two controlled matched pairs (AF447 vs. QF32; Zillow vs. Opendoor) that isolate the operative variable against the survivorship objection — and a positive control (DBS Bank) that prevents the argument from becoming a blanket anti-AI case. The deployable Solver Capital Protocol — with its Stationarity Gate, Solver Floor, Autophagy Firewall, and canary KPI — converts the argument into actionable Monday-morning guidance. No other submission combines formal derivation, empirical breadth, matched-pair controls, second-order loop analysis, and an implementable framework in a single answer.
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AI News from ET - Agentic platform Codex adoption in India up 27x since January, says OpenAI
India's adoption of OpenAI's Codex has surged 27x since early 2026, placing it among the top five global markets. The platform is increasingly used for non-coding tasks, democratising app and website creation for non-technical users. Codex is also accelerating product development and automating repetitive work, with significant enterprise collaborations underway. View the full article
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AI News from ET - India ranks 4th globally on AI performance; 5th in digital economy rankings: Report
India has surged to become the world's fifth most digitalised economy and ranks fourth in AI performance, a new report reveals. This positions India ahead of several developed nations, highlighting a significant shift in global digital leadership with developing countries now dominating AI usage. View the full article
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AI News from ET - Foxconn has immense confidence in growth momentum due to AI, chairman says
Taiwan's Foxconn sees strong growth driven by AI demand. Chairman Young Liu is optimistic about the second half of the year. Cloud providers' massive AI investments are fueling this confidence. Foxconn, a key supplier for Nvidia and Apple, reported a profit rise. The company expects its capital expenditure to grow significantly this year to expand AI server manufacturing capacity. View the full article
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AI News from ET - From diapers to drugs: How India's global corporate hubs are putting AI to work
Heads of several Global Capability Centres (GCCs) told Reuters they are deploying AI across a host of functions - from marketing and content creation to finance and human resources - to automate time-consuming, repetitive tasks that once required hours of manual effort. View the full article
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AI News from ET - Apollo, Blackstone work on $36 billion debt deal for Anthropic: Report
The debt would be used to buy custom chips from Google. Anthropic would then lease these chips, known as tensor processing units, or TPUs, the report said, citing people familiar with the matter. View the full article
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AI News from ET - Anthropic raises $65 billion, now valued at $965 billion
Anthropic said on Thursday it has raised $65 billion in a series H funding round, valuing it at $965 billion post-money. View the full article
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AI News from ET - Elon Musk defends AI ambitions as IPO reveals trouble
Elon Musk insists that his artificial intelligence venture xAI remains a serious competitor, pushing back against mounting doubts after revelations that the supercomputing facilities built to power his own AI models are being rented out to a rival. It has also landed a Pentagon contract worth up to $200 million alongside rivals including Google and OpenAI. Built quickly, the Colossus facilities in Memphis have been a source of controversy, after xAI installed dozens of natural gas turbines to power the site -- drawing protests from civil rights groups who said it worsened air pollution in a predominantly Black neighborhood. View the full article
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AI News from ET - Anthropic to roll out Claude Mythos in coming weeks, launches Opus 4.8
Mythos is the AI lab's large language model with advanced cybersecurity capabilities that have raised concerns among executives and world leaders about its impact. View the full article
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AI News from ET - Europe to incentivise governments to buy made-in-EU chips by startups, document shows
The European Commission is pushing for governments to purchase chips manufactured by European startups. This initiative aims to lessen the bloc's dependence on American and East Asian chip producers. The new Chips Act 2.0 will focus on increasing demand for EU-made chips. It will connect chip makers with buyers through agreements and a dedicated forum. View the full article
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AI News from ET - Energy use forcing rethink of AI chip design, TSMC says
AI's massive electricity needs are now driving chip development. Energy efficiency is becoming more critical than raw computing power. TSMC, a leading chipmaker, sees customers prioritizing performance gains that use less power. This shift impacts smartphones to AI data centers. New technologies like advanced packaging and chip stacking are key. TSMC aims for significant power reduction in upcoming chip generations. View the full article
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AI News from ET - Groq targets $650 million fundraise after Nvidia licensing deal: Report
Groq is seeking $650 million from its investors. This comes after a significant $17 billion licensing deal with Nvidia. Groq is now concentrating on AI inferencing. Investors are set to receive payouts from the Nvidia deal. They will then have the chance to invest in Groq's new phase. This move signals a strategic shift for the AI chip startup. View the full article
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AI News from ET - Japan's major lenders to use OpenAI's new model to thwart cyberattacks: Report
Japan's major lenders to use OpenAI's new model to thwart cyberattacks, Nikkei reports View the full article