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Home Blog Page 2097

President Trump Announces US Crypto Strategic Reserve

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President Donald Trump has announced plans for a U.S. Crypto Strategic Reserve that includes Solana (SOL), Cardano (ADA), and Ripple (XRP). Referencing his January 23, 2025, executive order, “Strengthening American Leadership in Digital Financial Technology,” which directed the Presidential Working Group on Digital Asset Markets to move forward on this initiative. Trump described the reserve as a way to elevate the cryptocurrency industry after what he called “corrupt attacks” by the Biden Administration and pledged to make the U.S. the “Crypto Capital of the World.”

President Donald Trump has announced that Bitcoin (BTC) and Ethereum (ETH) will be included in the U.S. Crypto Strategic Reserve, in addition to the previously mentioned Solana (SOL), Cardano (ADA), and Ripple (XRP). This update came shortly after his initial announcement earlier today, where he specified SOL, ADA, and XRP as part of the reserve, sparking surprise and concern among some crypto enthusiasts, particularly Bitcoin and Ethereum supporters, due to the omission of BTC and ETH.

Trump clarified his position in a subsequent statement on X, stating, “And, obviously, BTC and ETH, as other valuable cryptocurrencies, will be at the heart of the Reserve. I also love Bitcoin and Ethereum!” This clarification aligns with his broader pro-crypto stance and addresses the disappointment expressed by some in the crypto community, as seen in posts on X where users speculated that BTC and ETH could not be excluded given their prominence and Trump’s personal and corporate investments in these assets.

This announcement marks a notable development in Trump’s pro-crypto agenda, which has evolved since his 2024 campaign. Previously, he had focused heavily on Bitcoin, promising a “strategic national Bitcoin stockpile” at events like the Bitcoin 2024 conference. However, this latest post omits Bitcoin and instead highlights SOL, ADA, and XRP—cryptocurrencies often associated with U.S.-based innovation or adoption, such as Solana’s high-performance blockchain, Cardano’s research-driven approach, and Ripple’s focus on cross-border payments with XRP.

The market response has been significant: following Trump’s post, SOL surged by about 12.5% to $158, ADA spiked 37% to $0.87 (its highest in nearly a month), and XRP climbed 21% to $2.61 (its highest in over a week). Even Bitcoin, though not mentioned, rose by more than 3% to around $87,445, reflecting broader market enthusiasm for Trump’s crypto-friendly policies.

However, the announcement raises questions. The executive order mentions using cryptocurrencies seized by law enforcement as a starting point, but it’s unclear how the reserve will acquire or manage SOL, ADA, and XRP, especially if the government doesn’t currently hold significant amounts of these assets. The Presidential Working Group, chaired by Trump’s Special Advisor for AI and Crypto, David Sacks, is expected to provide a detailed report by July 2025, which will likely outline the reserve’s structure, funding, and strategic purpose.

Critics, including some economists and former regulators, have expressed skepticism about the viability of a crypto reserve, citing the volatility of these assets and the risk of tying national strategy to speculative digital currencies. Others note that SOL, ADA, and XRP have faced regulatory scrutiny in the past—XRP, for instance, was involved in a long-running legal battle with the SEC over its status as a security, which was partially resolved in 2023 but remains contentious.

Trump’s focus on these specific cryptocurrencies may also reflect political or economic alliances, given his reported meetings with crypto leaders like Ripple’s Brad Garlinghouse and his administration’s emphasis on U.S.-based tech. The omission of Bitcoin, a globally dominant cryptocurrency, has puzzled some in the crypto community, though it could indicate a strategic pivot toward newer, U.S.-centric platforms.

DeepSeek Reveals Theoretical Cost-Profit Ratio Of Up To 545% Per Day

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Chinese artificial intelligence startup DeepSeek has once again jolted the global AI market by disclosing critical cost and revenue data about its popular V3 and R1 models, claiming a theoretical cost-profit ratio of up to 545% per day.

However, the Hangzhou-based company also cautioned that actual revenue is significantly lower due to several mitigating factors, including free services and variable pricing.

This is the first time DeepSeek has publicly shared any insight into its profit margins from “inference” tasks, a phase in AI deployment where trained models execute tasks such as predictions and chatbot interactions. The company revealed these figures through a GitHub post on Saturday, giving investors and analysts a closer look at the financial dynamics of its models, which have gained global popularity through web and app-based chatbots.

DeepSeek’s Rise As A Cost-Efficient Alternative

DeepSeek’s rise in the AI industry has been nothing short of disruptive. The company first turned heads earlier this year when it revealed that it had spent less than $6 million on chips used to train its models. This is a stark contrast to the billions of dollars that U.S. rivals like OpenAI have invested in cutting-edge hardware. Moreover, DeepSeek relies on Nvidia’s H800 chips, which are significantly less powerful than the hardware deployed by American AI firms.

This development not only questioned the efficiency of U.S. AI firms’ spending strategies but also caused a sell-off in AI stocks outside China. Many investors began to rethink the sustainability of high-cost approaches, especially as DeepSeek’s models, despite using less advanced chips, managed to deliver competitive performance.

The company’s approach has exposed a potential vulnerability in the business models of Western AI firms, which are built on heavy investments in expensive technology. DeepSeek has proven that cost-efficiency can be a viable path to profitability, challenging the notion that only top-tier hardware can support successful AI deployments.

The Numbers Behind DeepSeek’s Model

DeepSeek’s financial snapshot offered a glimpse into its business model, with the rental cost of one Nvidia H800 chip estimated at $2 per hour. According to the company, the total daily inference cost for its V3 and R1 models is $87,072, while the theoretical daily revenue could reach $562,027. If this potential were fully realized, the models could generate just over $200 million in annual revenue, boasting a cost-profit ratio of 545%.

However, DeepSeek was quick to clarify that these numbers represent an ideal scenario. The real-world revenue is substantially lower due to several factors: the lower operational cost of the V3 model, the limited monetization of its services, and discounted pricing during off-peak hours. Furthermore, while some services generate income, many remain free on web and app platforms, limiting profitability.

Censorship Concerns: A Major Roadblock Outside China

Despite its impressive financial model and cost-efficiency, DeepSeek faces a significant barrier to international expansion—censorship. Unlike Western AI models, which are often built on open data sets and trained with a focus on free expression, DeepSeek’s models are required to adhere to strict Chinese censorship laws.

For instance, its chatbots and AI tools are programmed to filter out politically sensitive topics, avoiding discussions on issues like Tiananmen Square, Hong Kong protests, and Taiwan’s sovereignty. This built-in censorship has made the models less attractive to international developers and global enterprises that value unrestricted access to information.

In regions where freedom of speech and openness are crucial—such as the United States, Europe, and parts of Asia—DeepSeek’s censored outputs are seen as a liability, hindering its adoption. Industry analysts have pointed out that developers outside China might be reluctant to integrate DeepSeek’s models into their systems if it means compromising on data freedom.

This censorship issue could impact DeepSeek’s profitability, especially as international markets account for a significant share of AI companies’ revenue. However, DeepSeek has a potential safety net in the Chinese market, which is large and lucrative enough to support sustained growth.

China’s massive domestic market could serve as a buffer for DeepSeek as it navigates international challenges. The country’s booming AI ecosystem, combined with government support for local tech firms, provides a fertile ground for DeepSeek to thrive.

With the Chinese government actively encouraging the development of homegrown technologies, DeepSeek could focus on monetizing its services locally, potentially avoiding the pitfalls of global competition. Moreover, China’s tightly regulated internet space means that censorship compliance might not be as much of a hindrance domestically as it is abroad.

The Lesson from Ukraine for African Leaders

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I read comments on my piece on Trump and Zelensky’s show in the White House Oval Office. First, I am not interested if Trump was hard on the Ukraine leader or if the Ukrainian leader was bold, to speak truth to Trump. Those are irrelevant as Ukraine is losing citizens daily and parts of its land remain occupied by Russia.

But here is what I want to focus on: why did Ukraine even need help from the EU, UK and the United States to start with? It needs all the support because of what happened in 2014 when Ukraine toppled its democratically elected president with the support of outsiders. That episode crystallized to where the country is right now.

Go back to the 1990s, that was the scene in Africa. One crazy African would get support from foreigners, cause problems in his nation, and just like that, war begins. Understand that these countries cannot make kitchen knives but they can have supplies of ammunition to fight for years. Who gives them the weapons? Foreign players.

Every African leader or African rebel must learn from Ukraine: no one really cares, and do not allow your country to be used as a vehicle for superpowers to settle issues. Most of the Western leaders who supported the country in 2022 have been voted out of office. And today, it is Ukraine that is working to save its future. But without the signals it got from those world leaders, it would not have toppled its own leaders in 2014!

Finally, morality does not drive geopolitics; only interest does. And as Africans, we must ensure we do not allow those superpowers’ interests to shape our destinies, because when they finish, the victim is the agreeable fellow who accepted to be used!


The Ukraine Maidan 2014, also known as the Revolution of Dignity, was a significant event in Ukraine’s history. It began in November 2013 when then-President Viktor Yanukovych decided to suspend the signing of an association agreement with the European Union, opting instead for closer ties with Russia. This decision sparked widespread protests in Kyiv’s Maidan Nezalezhnosti (Independence Square), which escalated into a larger movement demanding political reform and an end to government corruption.

The protests continued into early 2014, with violent clashes between demonstrators and security forces. The situation reached a critical point in February 2014, when dozens of protesters were killed in confrontations with the police. The unrest ultimately led to the ousting of President Yanukovych, who fled to Russia, and the establishment of an interim government.

The Revolution of Dignity had far-reaching consequences, including the annexation of Crimea by Russia and the ongoing conflict in eastern Ukraine. It also marked a significant shift in Ukraine’s political landscape, with a renewed focus on European integration and democratic reforms.

Google’s Sergey Brin Demands 60 Hours A Week From Engineers To Build AI That Will Replace Them

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Google co-founder Sergey Brin has made a rare public move, asking engineers at the tech giant to return to the office five days a week to help improve AI models that could ultimately replicate their own jobs.

The reclusive billionaire, whose net worth is estimated at $144 billion, has personally returned to Google’s Mountain View headquarters, demonstrating his call for a heightened sense of urgency.

The catalyst for this renewed focus on AI is ChatGPT’s launch, which left Google scrambling to regain its footing in a field where it was once a pioneer. Although Google had been at the forefront of AI development, it was OpenAI and its strategic alliance with Microsoft that seized the commercial advantage, putting Google on the defensive.

In a memo seen by The New York Times, Brin wrote to engineers working on Google’s Gemini AI models, stressing that the “final race to AGI (Artificial General Intelligence) is afoot”. He expressed confidence that Google had “all the ingredients to win this race”, but emphasized the need to “turbocharge” efforts. His prescription for success: “60 hours a week is the sweet spot of productivity.”

Brin also encouraged engineers to use Google’s own AI models to write their code, arguing that doing so would make them “the most efficient coders and A.I. scientists in the world.” This directive aligns with a broader trend where tech leaders are promoting AI tools as a means to enhance productivity, but it also exposes a deeper irony: Brin is effectively asking engineers to use the same technology that might eventually make their roles redundant.

The Irony of AI-Driven Efficiency

Generative AI, such as Google’s Gemini, works by ingesting large amounts of data and recognizing patterns to generate new content, including code. In theory, this technology could automate a significant portion of coding tasks, leading to higher efficiency. Other tech leaders, like Salesforce CEO Marc Benioff, have already indicated that AI agents have advanced to a point where they are reducing the need for human engineers. Benioff stated during an earnings call that Salesforce would not be hiring more engineers this year, attributing this decision to the success of AI in handling tasks previously managed by human staff.

However, it is important to view such statements with skepticism. While AI advocates highlight its potential to cut costs and improve productivity, many believe that company leaders might be using the hype around AI as a pretext to reduce headcounts, save on labor costs, and appease investors. For instance, Salesforce had earlier cut 10% of its workforce—about 7,000 employees—under pressure from activist investors to improve profit margins.

AI’s Limitations: Code is Not Just Code

Though AI tools can automate boilerplate coding, they struggle with complex, large-scale codebases due to memory constraints. Additionally, while AI can generate code snippets, engineers need to understand the underlying logic to fix bugs and implement improvements. Ironically, companies like Anthropic, a prominent player in AI safety research, explicitly ask job applicants to certify that they will not use AI during the application process, highlighting the limitations of AI-generated work.

The fear among engineers is not just that AI might replace them, but that companies may choose to use AI even if it performs worse than humans, purely as a cost-saving measure. This dynamic is reminiscent of a scenario where a manager asks a senior employee to train their younger, cheaper replacement.

Proponents vs. Skeptics: Two Sides of the AI Debate

Proponents of AI argue that the technology will lead to more work, not less, by freeing up engineers to focus on more complex projects. By automating mundane coding tasks, engineers could theoretically build more products and achieve greater innovation. However, skeptics believe the push for AI adoption is less about empowering engineers and more about reducing costs and streamlining operations.

The debate extends beyond productivity to the broader dynamics of workplace control. The return-to-office mandate is not just a Google phenomenon but part of a wider trend among corporate executives seeking to reassert authority over workers who gained greater flexibility during the COVID-19 pandemic.

Power Shift in Silicon Valley

The tech industry, particularly Silicon Valley, has seen a power shift. Engineers once highly sought after and empowered by remote work opportunities, now face reduced leverage as companies like Google reverse their remote work policies. This shift comes amid a backdrop of mass layoffs and a tightening job market, which has allowed companies to demand more from remaining staff.

Tech giants, including Google, are also incentivized to bring employees back to the office to justify the billions of dollars spent on lavish headquarters. For example, Google’s Mountain View campus, with its futuristic architecture and state-of-the-art amenities, represents a significant investment that the company would prefer not to waste.

Brin’s memo adds an ember to the AI debate. On one hand, his call to arms reflects a genuine urgency in a high-stakes competition with OpenAI and Microsoft. On the other, it highlights a paradox in the AI industry: engineers are being asked to build the very tools that might render them obsolete.

Transitioning from Sharded Blockchain to Sharded Smart Contracts

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Bowen Wang, Head of Protocol at Pagoda (a key contributor to NEAR Protocol), likely discussed the transition from a sharded blockchain to sharded smart contracts during his ETHDenver 2025 talk on February 28, titled “From Sharded Blockchain to Sharded Smart Contracts.” As a central figure in NEAR’s development, Wang has deep insight into its Nightshade sharding model, which he’s articulated in talks and white papers.

Sharding is a scalability solution that divides a blockchain into smaller, parallel pieces called “shards.” In an unsharded blockchain (e.g., Bitcoin, early Ethereum), every node processes every transaction and stores the entire state—account balances, smart contracts, and transaction history. This creates a bottleneck as the network grows, capping throughput (e.g., Ethereum’s ~15 transactions per second). Sharding fixes this by splitting the workload.

NEAR’s Nightshade model, launched in 2021 and refined since, shards the network into manageable chunks. Each shard handles its own subset of transactions and state, processed by a subset of validators. Think of it like splitting a library into sections—each librarian (validator) manages only their section (shard), not the whole collection. This parallelism boosts capacity; NEAR aims for thousands of transactions per second versus Ethereum’s dozens.

Wang has emphasized NEAR’s “fully sharded” design, rolled out in August 2023 (version 9.2.0). Here’s how it works at the blockchain level:
Division: The network splits into shards (e.g., six in early 2025, expanding to eight per Wang’s ETHDenver remarks). Each shard has its own state—think accounts A-M on Shard 1, N-Z on Shard 2.

Validators: Validators are randomly assigned to shards each block via an on-chain randomness beacon. This prevents collusion and ensures security. Each validator tracks at most one shard at a time. Parallel Processing: Shards process transactions independently. Chunk producers (a subset of validators) bundle transactions into “chunks” per shard, while validators verify them. These chunks update the shard’s state, and a main chain (the “Beacon” in Ethereum’s terms, or NEAR’s core) coordinates.

By 2025, NEAR’s sharding includes “stateless validation” (highlighted in a January 2024 X post by NEAR Protocol). Traditionally, validators store a shard’s full state in memory, which balloons as usage grows, slowing reads. Stateless validation offloads state storage to chunk producers, who distribute “state witnesses” (proofs of state changes) to validators. Validators check these proofs without holding the full state, slashing hardware demands and enabling more nodes to participate—crucial for decentralization.

From Sharded Blockchain to Sharded Smart Contracts
Sharding the blockchain alone isn’t enough if smart contracts—self-executing programs driving DeFi, NFTs, etc.—can’t leverage it. Wang’s talk likely focused on this leap: sharding smart contracts to match the blockchain’s parallelism. Here’s how NEAR does it, and what Wang probably explained:

State Sharding: In NEAR, each shard owns a slice of the global state (e.g., specific account ranges). Smart contracts live in this state—say, a DeFi contract on Shard 1 controls accounts A-M. When a transaction calls that contract, it’s routed to Shard 1, processed locally, and updates only that shard’s state. This avoids cross-shard chatter for simple calls.

Execution Sharding: Smart contracts execute within their shard. NEAR’s runtime (like Ethereum’s EVM) runs contract code on the assigned shard’s validators. Since shards operate in parallel, multiple contracts across shards execute simultaneously—e.g., a swap on Shard 1 and an NFT mint on Shard 2 happen at once.

Cross-Shard Challenges: Real-world apps often span shards. If a user on Shard 1 swaps tokens with a contract on Shard 2, cross-shard communication kicks in. NEAR uses a “receipt” system: Shard 1 sends a message (receipt) to Shard 2, which processes it in the next block. Wang likely stressed NEAR’s one-block split capability—shards can subdivide in a single block, dynamically balancing load without halting the network.

Scalability Payoff: Sharded contracts unlock massive throughput. A single shard might handle 100 TPS, but with eight shards, NEAR could hit 800 TPS or more, all while keeping smart contracts functional. Wang’s X posts (e.g., February 2024) note latency dropping to 400 milliseconds, a boon for contract-heavy apps.

Wang likely underscored NEAR’s edge over Ethereum, which pivoted from full sharding to rollups (Layer 2s) plus danksharding for data availability. NEAR’s base-layer sharding, he’d argue, aligns incentives better—L2s like Arbitrum have their own tokens, diluting Ethereum’s ETH value, while NEAR’s shards unify under one protocol. Posts on X (e.g., NEAR’s February 2025 ETHDenver recap) suggest he demoed this with real metrics—eight shards live, latency slashed, and smart contracts humming in parallel.

In short, sharding works by splitting the blockchain’s state and workload into parallel shards, then extending that parallelism to smart contracts. NEAR’s Nightshade, per Wang, makes this practical with stateless validation, fast splits, and cross-shard receipts, aiming for a scalable, contract-ready future. Want me to drill into a specific part—like stateless validation or cross-shard mechanics?