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Artificial Intelligence: Smart Strategies for Investors

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How Investors Can Ride the Next Wave of AI Growth

NVIDIA (NSDQ: NVDA) has become the face of the artificial intelligence boom, riding a wave of explosive growth as companies pour hundreds of billions of dollars into building the infrastructure behind AI. But for retail investors, the story is bigger than just one stock. AI is no longer confined to research labs. It is already reshaping daily life in ways that are easy to miss until you step back and look at the numbers. Waymo is completing 150,000 autonomous rides each week.

The FDA has approved more than 220 AI-enabled medical devices, up from just six less than a decade ago. In 2024, private AI investment in the United States reached USD 109.1 billion, dwarfing China’s USD 9.3 billion, a clear signal of where innovation is accelerating fastest.

For investors, this raises an important question. How do you gain exposure to one of the most transformative megatrends of our time without getting swept up in the hype? The answer may lie in looking beyond the headlines to the companies and sectors quietly positioned to capture the next stage of AI-driven growth.

What are the Best  A.I. Tech ASX stocks to invest in right now?

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The Smart Way to Invest in the AI Boom

For growth-focused investors, incorporating an AI-themed ETF can be an effective way to gain exposure to one of the fastest-growing areas of the market. While every portfolio will differ based on individual objectives and risk tolerance, adding a dedicated allocation to artificial intelligence provides a direct link to the companies driving this technological shift. 

For investors seeking long-term growth, there are several ETF options that offer diversified access to global leaders in AI and related industries, creating an opportunity to participate in the sector’s continued expansion.

The BetaShares Global Robotics and Artificial Intelligence ETF

The BetaShares Global Robotics and Artificial Intelligence ETF (ASX: RBTZ) provides diversified exposure to companies leading advancements in robotics, automation, artificial intelligence, unmanned vehicles, and drone technologies. 

By tapping into these powerful megatrends, the ETF offers investors a simple and cost-effective way to access a high-growth sector through a single trade. 

The fund holds around 59 companies worldwide, with its largest positions including NVIDIA (NASDAQ: NVDA) at approximately 11 to 12 percent, ABB Ltd at around 9 percent, Fanuc Corp and Keyence Corp at about 7 percent each, and Intuitive Surgical Inc at 6 to 7 percent. 

This concentration in global leadership positions RBTZ to capture long-term value as robotics and AI continue to expand across industries.

iShares Future AI & Tech ETF (ARTY) 

ARTY is an exchange-traded fund from BlackRock that tracks the Morningstar Global Artificial Intelligence Select Index, providing investors with diversified exposure to companies at the forefront of artificial intelligence. 

The fund invests across both U.S. and international markets, capturing businesses involved in generative AI, data and infrastructure, AI software, and AI services. This broader approach contrasts with the BetaShares Global Robotics and Artificial Intelligence ETF (ASX: RBTZ), which is more concentrated in robotics and automation. 

ARTY’s portfolio includes leading technology names such as Arista Networks at approximately 5.7 percent, Advanced Micro Devices at 5.7 percent, NVIDIA at 5.3 percent, Broadcom at 5.1 percent, Vertiv Holdings at 4.7 percent, and Super Micro Computer at 4.3 percent. For investors seeking diversified access to the full AI value chain, ARTY provides an opportunity to participate in the sector’s long-term growth while spreading exposure across multiple drivers of innovation.



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Prediction: This Artificial Intelligence (AI) Player Could Be the Next Palantir in the 2030s

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Becoming the next Palantir is a tough job.

Palantir (NASDAQ: PLTR) has already shown what it takes to be a successful enterprise artificial intelligence (AI) player: Become the core platform for customers to build their AI applications on, rapidly turn pilot projects into production-level deployments, cross-sell and upsell to existing clients, and focus on new client acquisition across industries and new verticals.

Image source: Getty Images

Innodata (INOD 2.53%) is much smaller, but it seems to be on a similar growth trajectory. The company is moving beyond traditional data services and is now becoming an AI partner focused on the data and evaluation layer in the enterprise AI stack — something that Palantir is not focusing on.

Financial performance

Palantir’s second-quarter fiscal 2025 (ending June 30) earnings performance underscores the success of this business model. Revenues grew 48% year over year to over $1 billion, with U.S. commercial and U.S. government revenues soaring year over year by 93% and 53%, respectively. The company’s Rule of 40 score increased 11 percentage points sequentially to 94. Management raised its fiscal 2025 revenue guidance and ended Q2 with total contract value (TCV) of $2.3 billion.

Innodata’s Q2 of fiscal 2025 (ending June 30) performance was also stellar. Revenues grew 79% year over year to $58.4 million, while adjusted EBITDA increased 375% to $13.2 million. Management raised full-year organic growth guidance to 45% or more, driven by a robust project pipeline, with several projects from large customers.

Data vendor to AI partner

Palantir differs from other AI giants by focusing not on large language models, but on its ability to leverage AI capabilities to resolve real-world problems. The company’s focus on ontology — a framework relating the company’s real assets to digital assets — helps its software properly understand context to deliver effective results.

Innodata also seems to be implementing a similar strategy. Instead of focusing on traditional data and workflows, it is providing “smart data,” or high-quality complex training data, to improve accuracy, safety, coherence, and reasoning in AI models of enterprise clients. It is also working closely with big technology customers to test models, find performance gaps, and deliver the data and evaluation needed to raise model performance. That shift will help Innodata’s offerings become entrenched in their clients’ ecosystems, thereby strengthening pricing power and creating a sticky customer base.

Vendor neutrality

Palantir has not built any proprietary foundational model. Plus, its Foundry and artificial intelligence platform (AIP) can run on any cloud and can be integrated with multiple large language models. By giving its clients the flexibility to choose their preferred cloud infrastructure and AI models, the company prevents vendor lock-in. This vendor neutrality has helped build trust among both government and commercial clients.

Innodata’s vendor-neutral stance is also becoming a competitive advantage. In its Q2 earnings call, an analyst noted that several big technology companies have said they would no longer work with Innodata’s largest competitor, Scale AI, after Meta Platforms’ large investment in the company. This is creating new opportunities for Innodata. Because it isn’t tied to any single platform, there is no conflict of interest involved in working with Innodata. This gives enterprises and hyperscalers confidence that their proprietary data and model development efforts will not be compromised.

Scaling efforts

Palantir’s business is seeing rapid traction, driven primarily by high-value clients. The company closed 157 deals worth $1 million or more, of which 42 deals were worth $10 million or more.

Innodata is scaling up revenues while also focusing on profitability. Management highlighted that it has won several new projects from its largest customer. The company has also expanded revenues from another big technology client, from $200,000 over the past year to an expected $10 million in the second half of 2025. Innodata’s adjusted EBITDA margins were 23% in the second quarter, up from 9% the same quarter of the prior year.

Agentic AI

Palantir has been focusing on the agentic AI opportunity by investing in AI Function-Driven Engineering (FDE) capability within its AIP platform. AI FDE is expected to solve bigger and more complex problems for clients by autonomously executing a wide array of tasks, including building and changing ontology, building data flows, writing functions, fixing errors, and building applications. It also works in collaboration with humans and can help clients get results faster. Palantir is thus progressing toward developing AI systems that can plan, act, and improve inside enterprise setups.

Innodata is also advancing its agentic AI capabilities by helping enterprises build and manage AI that can act autonomously. The company aims to provide simulation training data to show how humans solve complex problems, and advanced trust and safety monitoring to guide these systems. Agentic AI is also expected to help the robotics field progress rapidly, and AI systems will run on edge devices used in daily life. Hence, Innodata plans to invest more in building data and evaluation services for these agentic AI and robotics projects, which it expects could become a market even larger than today’s post-training data work.

Valuation

Despite its many strengths, Innodata is still very much in the early stages of its AI journey. Shares have gained by over 315% in the last year. Yet, with a market cap of about $1.9 billion and trading at nearly 8.2 times sales, Innodata is priced like a data services company making inroads in the AI market, and not like an AI platform company with a significant competitive moat. On the other hand, Palantir stock is expensive and trades closer to 114 times sales. This shows how Wall Street rewards a category leader like Palantir, whose offerings act as an operating layer for enterprise AI companies.

Innodata also needs to dominate the AI performance market to reach such sky-high valuations. The company will need to expand its customer base, cross-sell and upsell to existing clients, and make it difficult to switch to the competition.

While this involves significant execution risk, there is definitely a chance — albeit a small one — that Innodata can become the next Palantir in the 2030s.



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DVIDS – News – Air Force Test Pilot School Collaborates with DAF-MIT AI Accelerator for Advanced AI Training

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In August, the Department of the Air Force–Massachusetts Institute of Technology Artificial Intelligence Accelerator (DAF-MIT AIA) brought cutting-edge AI training to the U.S. Air Force Test Pilot School (TPS), preparing pilots and engineers to tackle the future of aerospace testing.

From Aug. 4–15, 40 highly trained students, TPS pilots, and technicians from the MQ-9, B-52, and F-35 communities came together for the workshop, highlighting the depth and diversity of experience.

“This workshop prepares our testers to lead the integration of AI and machine learning into Air Force operations,” said Maj. Morgan Mitchell, DAF-MIT AIA workshop manager. “Test pilots and engineers need to understand how to design, evaluate, and apply these technologies in real-world scenarios.”

Hosted at MIT’s Computer Science and Artificial Intelligence Laboratory (CSAIL) and MIT Lincoln Laboratory Beaver Works, participants gained hands-on experience with AI-enabled systems. They programmed and tested MIT’s RACECAR platform, applied AI/ML to flight test scenarios such as autonomy and anomaly detection, and explored cutting-edge labs like the CSAIL Robot Apartment Living Lab.

“The workshop curriculum incorporated a broad range of aerospace and space-domain applications to reflect the diverse roles of TPS graduates,” Mitchell added.

Following a successful inaugural course at Stanford University in February 2025, TPS plans to rotate AI/ML training between the DAF-MIT AIA in the summer and Stanford in the winter. This rotation ensures each incoming TPS class continually gains exposure to cutting-edge research and hands-on applications, keeping their skills aligned with the latest advancements in aerospace testing. This marks a significant shift in how TPS prepares its students for the rapidly evolving landscape of aerospace technology and testing.

“This collaboration with the DAF-MIT AI Accelerator is a game-changer for how we train our testers,” said Col. Scott Ruppel, Department of the Air Force Director of the DAF-MIT AIA. “By combining MIT’s world-class expertise with our operational focus, we’re preparing TPS students to tackle the challenges of testing AI-enabled systems in both air and space domains.”

For more information, visit https://www.aiaccelerator.af.mil and https://aia.mit.edu







Date Taken: 09.12.2025
Date Posted: 09.12.2025 19:22
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Location: CAMBRIDGE, MASSACHUSETTS, US






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One of the most common reasons that AI products fail? Bad data

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When Salesforce recently rolled out an AI agent on its website, the agent started to hallucinate and wasn’t giving consistent results.

Salesforce ended up temporarily turning it off, Shibani Ahuja, senior vice president of enterprise IT strategy, said during a roundtable discussion at Fortune’s Brainstorm Tech conference in Park City, Utah. 

But the agent, it turned out, wasn’t the problem. “What we had noticed was there was an underlying problem with our data,” Ahuja said. When her team investigated what had happened, they found that Salesforce had published contradictory “knowledge articles” on its website.

“It wasn’t actually the agent. It was the agent that helped us identify a problem that always existed,” Ahuja said. “We turned it into an auditor agent that actually checked our content across our public site for anomalies. Once we’d cleaned up our underlying data, we pointed it back out, and it’s been functional.”

New AI products will only be as good as the underlying data, according to Ahuja and other speakers who took part in the discussion. Ashok Srivastava, senior vice president and Chief AI Officer at Intuit, said he wasn’t surprised about the results of a recent MIT study that found that 95% of AI pilots at large corporations had failed, because of the archaic systems at large companies.

“The fact is that the foundation of AI—which is data—people don’t invest in it,” Srivastava said. “So you’ve got 1990s data sitting in a super-expensive, unnamed database over here, you’ve got AI here, you’ve got the CEO telling you to do something, and it’s just not going to work.”

Sean Bruich, senior vice president of artificial intelligence and data at Amgen, added that it’s also difficult for larger corporations to move from a pilot to enterprise-wide adoption.

“Pilots in large companies never deliver ROI,” he said. “They might deliver learnings, they might deliver proof points, they might deliver inspiration. But the path to scale—that is where you get the return on investment in any large technology program.”

In order for companies to see a return on investment from new AI tools, they will have to sort through both the data and the scaling issue.

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