Feb 11th 2025
We have been "Stopped out" of Chargepoint shares.
O U C H !!! Speculation can hurt, even if it is only 1% of your portfolio!
Feb 11th 2025
We have been "Stopped out" of Chargepoint shares.
O U C H !!! Speculation can hurt, even if it is only 1% of your portfolio!
Sector: EV Charging Infrastructure
Why it could be acquired:
Potential roadblocks:
Still, ChargePoint stands out as one of the more “obvious” names if a big fish wants immediate scale in EV charging at a bargain basement price!
Sector: Next‐Gen Battery Technology
Why it could be acquired:
Potential roadblocks:
Given the wave of EV/battery investments worldwide, Enovix is a prime candidate for a strategic purchase.
Sector: Quantum Computing
Why it could be acquired:
Potential roadblocks:
Still, among public quantum players, IonQ is often cited as the top near‐term takeover possibility.
Sector: Robotic Process Automation (RPA)
Why it could be acquired:
Potential roadblocks:
Overall, UiPath is one of the more established, brand‐name midcaps in enterprise software—very plausible as an acquisition target.
Sector: Gene Editing (CRISPR)
Why it could be acquired:
Potential roadblocks:
Nonetheless, Editas sits in that sweet spot—recognizable IP, possible proof‐of‐concept data, and not too large for a big pharma to swallow.
Sector: Gene Editing (Base Editing)
Why it could be acquired:
Potential roadblocks:
If big pharma wants to corner advanced gene editing, Beam is near the top of the conversation.
Sector: Synthetic Biology / Bioengineering
Why it could be acquired:
Potential roadblocks:
Despite that, Ginkgo consistently comes up in speculation about platform biotech acquisitions, especially if valuations become more attractive.
Sector: LiDAR / Sensing for Autonomous Vehicles
Why it could be acquired:
Potential roadblocks:
Given the wave of LiDAR M&A, Aeva is squarely in the conversation—especially if it can prove superior sensor performance.
Sector: Biotech (metabolic and endocrine disorders)
Why it could be acquired:
Potential roadblocks:
Still, Viking is a prime candidate for a typical biotech “pipeline buy” scenario if data is compelling.
(Q: What do Piper Sandler, Raymond James and Wainwright's analysts know that you don't know? Viking is trading today at $32 and they have a combined price target over $100 as recently as Feb 6th!)
Sector: Biotech (cell therapy for autoimmune diseases)
Why it could be acquired:
Potential roadblocks:
If Cabaletta can show strong early data, it could be a logical bolt‐on for a big immunology player.
(Assuming “QBTS” is indeed D‐Wave; they re‐listed on the NYSE under “QBTS.”)
Sector: Quantum Computing (annealing‐based + gate‐model in development)
Why it could be acquired:
Potential roadblocks:
A takeover could happen, but D‐Wave may be overshadowed by gate‐based quantum leaders unless an acquirer has a specific interest in annealing.
Sector: Laser Communications for Aerospace
Why it could be acquired:
Potential roadblocks:
If the sector consolidates or a prime defense contractor wants to lock in that IP, Mynaric is definitely a candidate, but less “top of mind” than more mainstream tech.
Sector: High‐Performance Computing / Data Center Services
Why it could be acquired:
Potential roadblocks:
An acquisition isn’t out of the question, but Applied Digital is probably lower on the “imminent M&A” list relative to more mainstream tech or biotech names.
Everyone’s criteria differ, but if forced to line these up from “most likely” to “least likely” (in terms of near‐ to mid‐term M&A buzz), here’s a sample ordering:
Again, the above is inherently speculative. Biotech M&A can happen very fast if clinical data shines (which might catapult something like VKTX or CABA up the list). Meanwhile, quantum deals could accelerate if a big platform player decides it’s time to “buy rather than build.” And of course, macro conditions—interest rates, regulatory climate, or shifts in capital availability—can greatly impact who acquires whom, and when.
This overview is for general information only. It is not financial or investment advice, and it is not a guarantee that any acquisition will occur. Always do your own due diligence or consult a licensed financial professional before making investment decisions.
Spiking Input Costs
Widespread Inflationary Pressure
Potential “Price Shocks”
Energy Sector
Metals and Minerals
Agriculture and Food
Fertilizer (Potash)
Lumber and Forestry Products
Fresh Water Exports (in bulk) Canada has 9% of worlds fresh water supply
Search for Alternative Suppliers
Retooling and Capital Investment
Trade and Policy Uncertainty
Immediate Cost Pass-Through
Potential Job Losses
Inflationary Pressure and Reduced Purchasing Power
Severe Strain on Bilateral Relations
Undermining USMCA (Formerly NAFTA)
Acceleration of Resource Self-Sufficiency or Alternate Sourcing
A 25%–50% export tax on all Canadian natural resources would pose a significant economic shock to the United States:
In short, while a few domestic resource producers in the U.S. might see short-term gains, the vast majority of the U.S. economy would feel pain from such a sweeping Canadian export tax—a drastic measure that signals a major breakdown in the traditionally cooperative Canada-U.S. trade relationship.
GOT GOLD?
The United States imposes:
In response, Canada levies:
Mexico also retaliates with significant tariffs on U.S. exports.
By applying broad, unilateral tariffs on Canada, the U.S. is in clear violation of the Canada-U.S. Free Trade Agreement (and subsequent NAFTA/USMCA protocols). These treaties were designed to eliminate tariffs and encourage frictionless trade in North America. Imposing tariffs (and extra taxes in retaliation) specifically contradicts the very basis of these agreements—especially when such measures are not part of a sanctioned dispute-resolution process.
As with most tariff wars, there is no clear winner. All three nations experience higher costs, supply chain complications, and inflationary pressures. Below is an expanded breakdown:
U.S. Tariffs on Canadian Goods (Non-Oil)
U.S. Tariffs on Canadian Oil (10%)
Canada’s Retaliation and Potential Extra Tax on Oil/Gas Exports
U.S. Tariffs on Mexican Goods (25%)
Mexican Retaliation
Tri-National Supply Chain Disruptions
Winners
Losers
Higher Energy Costs
Broader Consumer Price Increases
Limited Substitution Options
Energy Sector Employment
Manufacturing and Agriculture
Short-Term Gains vs. Long-Term Losses
Direct Violation of Tariff Elimination Provisions
Legal Challenges and Uncertainty
Undermining North American Economic Integration
Strains on Established Trade Relationships
Increased Consumer and Producer Prices
Geopolitical Tensions
No Clear Winners
By imposing 25% tariffs on Canadian and Mexican goods, 10% on Canadian oil, and considering a Canadian export tax on oil/gas bound for the U.S., the United States not only instigates a damaging tariff war—it also breaches the Canada-U.S. Free Trade Agreement (and USMCA/NAFTA commitments). Canada and Mexico respond with retaliatory tariffs, deepening the trade rift:
Ultimately, this scenario underscores that no one truly “wins” in a tariff war.
The cross-border economic integration painstakingly developed over 50 years, through the Canada-U.S. Free Trade Agreement and subsequent accords is jeopardized, curbing growth, raising prices, and straining once-stable partnerships.
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Introduction
Artificial General Intelligence (AGI)—the theoretical point at which machines reach or surpass human-level cognitive abilities—has long been a futuristic concept. Yet, over the past several years, research breakthroughs in machine learning and deep learning have led many experts to assert that AGI is becoming more plausible. Key figures in the field stress that the “road to AGI is not linear,” implying that we will experience a series of qualitative jumps and new paradigms rather than a simple, steady progression.
This report provides:
Where AGI Stands Today
Narrow to Broader AI: Current AI systems, such as GPT-4, are highly capable within specific domains (language processing, image generation, coding assistance, etc.). While these models can demonstrate remarkable performance on standardized tests and reasoning tasks, they remain “narrow” in the sense that they do not exhibit full autonomy or conscious decision-making outside prescribed parameters.
Emergence of Multimodal Models: The latest trend is multimodal AI, capable of processing and understanding text, images, audio, and video. These models represent a step toward more general capabilities—yet they still lack robust “understanding” of the world that would be necessary for true AGI.
Research on New Architectures and Approaches: Beyond large-scale transformers (the architecture behind GPT-like models), researchers are exploring techniques from reinforcement learning, robotics, neuroscience-inspired models, and hybrid symbolic-connectionist systems. These experimental paths may yield the “non-linear” leaps experts believe are crucial to AGI.
Insiders have compared levels of Ai in this way: “OpenAI 01 has PhD-level intelligence, while GPT-4 is a ‘smart high schooler.’”
- There is some buzz that certain, perhaps more experimental, large-scale models or prototypes have advanced reasoning abilities beyond what is generally available in mainstream products.
Where AGI Could Be in One Year (2026)
Where AGI Could Be by 2030
Companies at the Cutting Edge of AGI
OpenAI
DeepMind (Google / Alphabet)
Meta (Facebook)
Microsoft
Anthropic
Other Emerging Players
Who Holds the Advantage Now
Conclusion
The path to AGI is undeniably complex and “non-linear.” We are witnessing rapid progress in large-scale models, multimodal integration, and improved reasoning—but true AGI remains an unconfirmed horizon rather than a guaranteed near-term milestone. Over the next year, expect iterative improvements in language models, better multimodality, and more widespread integration of AI in everyday tools. By 2030, the possibility of near-human or even superhuman AI intelligence in certain domains is becoming a serious research and policy question.
Companies like OpenAI, DeepMind (Google), and Microsoft remain at the forefront, fueled by massive research budgets, cutting-edge talent, and extensive compute resources. Meanwhile, Meta, Anthropic, and a growing list of startups are also pushing boundaries, and the competitive landscape will likely intensify as AGI becomes a key objective in AI R&D.
In sum, we are at a critical moment in AI history. While experts caution that significant breakthroughs are required to reach AGI, the current velocity of research and innovation suggests that the concept is moving from science fiction toward a tangible, if still uncertain, reality.------------------------------------------------------------------------------------------------------------------------
Below is an overview of how emerging quantum AI (QAI) might shape the trajectory toward AGI, along with a look at the key players driving developments in quantum computing and quantum machine learning.
Speed and Computational Power
New Model Architectures
Potential for Non-Linear Breakthroughs
Challenges to Overcome
IBM
Google (Alphabet)
Microsoft
D-Wave Systems
IonQ
Rigetti Computing
Smaller Startups & Research Labs
Acceleration of Research
Emergence of Novel Algorithms
Synergy with Large AI Labs
Potential for Non-Linear AGI Jumps
Challenges to Real-World Impact
Quantum AI stands at the intersection of two transformative technologies. If quantum computing achieves the robust scaling and error correction required for complex tasks, it could provide a new toolbox of algorithms that accelerate or even redefine the path to AGI. While some claims about “quantum supremacy” and near-term quantum AI breakthroughs may be optimistic, the long-term implications are significant.
Leading tech giants like IBM, Google, and Microsoft, as well as specialized firms like D-Wave, Rigetti, IonQ, and numerous startups, are all actively pushing boundaries in quantum hardware and quantum machine learning. As quantum computers evolve from experimental labs to more widely accessible cloud platforms, the potential for quantum-driven advances in AI—moving us another step closer to AGI—becomes increasingly tangible.