Ethereum price could reach $11,340 if Bitcoin rallies past $378K, pushing Satoshi’s net worth above Elon Musk. Ethereum (ETH) Stagnates at $,2500 as Bitcoin Tops $109K Ethereum (ETH) traded at $2,511.11 on May 21, 2025, recording a modest 0.4% daily gain and 3.4% weekly growth. Despite Bitcoin reaching a new all-time high above $110,000, Ethereum lagged behind in momentum relative to prior bull cycles. ETH’s current price represents a 59.3% rise over the past 30 days, driven largely by macro tailwinds including rising Bitcoin ETF inflows and increased institutional interest in Layer-1 blockchains. Ethereum Price Action (ETHUSDT) | Coingecko ETH price traded in a 24-hour range between $2,473.89 and $2,600.00, underperforming Bitcoin’s 7.5% gain over the same period. Ethereum’s market capitalization remains firmly second at $307 billion, while its BTC pair sits at 0.02312, up 1.7% on the day, signaling a slight recovery in ETH/BTC momentum. Notably, trading activity in… Read More at Coingape.com
Fartcoin price has become one of the best-performing cryptocurrencies this month. It has surged by over 170% in the last 30 days, outperforming the stock market and top coins like Bitcoin and Ethereum. Fartcoin is still showing bullish signs, a trend that may be boosted if Solana price surges to $200.
Fartcoin Price Would Benefit if Solana Surges to $200
The ongoing Fartcoin surge has triggered more upside for some popular Solana meme coins. Dogwifhat has jumped by 37% in the last seven days, while Popcat, Cat in a dogs world, and Gigachad have soared by 20% and 50%, respectively.
The rally has also sparked a substantial Solana price comeback. After bottoming at $94.5 earlier this month, SOL has soared by 40% to $135, outperforming comparable tokens like Cronos and Avalanche.
This Solana rally has excited some crypto investors, some whom expect it to rebound to $200 eventually. Such a move would signal a 50% surge from the current level. Such a rebound is possible since the coin has a history of dropping and rising over time.
For example, Solana price crashed to $168 on January 13 and then recovered by 75% to $295 a few days later. Also, as shown below, Solana plunged to $109 in August last year and then soared by 140% to $265 a few months later.
A renewed Solana surge would be highly bullish for meme coins in its ecosystem like Fartcoin, Bonk, and Dogwifhat.
Solana Price Chart
Fartcoin Technical Analysis and Key Targets
Fartcoin price has soared after bottoming at $0.19 in March. It has soared by over 300%, making it the best-performing major coins in the market, and pushing its market cap close to the $1 billion mark.
The token moved above the key resistance point at $0.6345 on April 9. This was a notable level since it was the upper side of the cup and handle pattern, a highly accurate continuation sign.
This C&H pattern had a depth of 71%. The coin has now moved above the 25-day Exponential Moving Average (EMA), which is a bullish sign.
Therefore, measuring 71% from the upper side of the cup brings the target price at $1.0730, which also coincides with the 61.8% Fibonacci Retracement level. That target would be a 20% above the current level. A move above that target would point to an increase to the 50% retracement point at $1.3732. A recent CoinGape article quoted an analyst who predicted that Fartcoin would soar to $1.29.
Fartcoin Price
The bullish Fartcoin price forecast will be canceled if the price drops below the crucial support at $0.6345, the upper side of the cup. It would signal a potential drop to the lower side of the cup at $0.2125.
The US CPI inflation data is the next macro fundamental that crypto market participants have their eyes on, following the release of a strong US jobs data on June 6. The CPI figures could provide insights into whether the Fed is likely to cut interest rates later this year, even as hopes for a rate
The metrics used to measure outcomes can be misleading when evaluating blockchain performance. As more blockchain networks emerge, the public needs clear, efficiency-focused metrics, rather than exaggerated claims, to differentiate between them.
In a conversation with BeInCrypto, Taraxa Co-Founder Steven Pu explained that it’s becoming increasingly difficult to compare blockchain performance accurately because many reported metrics rely on overly optimistic assumptions rather than evidence-based results. To combat this wave of misrepresentation, Pu proposes a new metric, which he calls TPS/$.
Why Does the Industry Lack Reliable Benchmarks?
The need for clear differentiation is growing with the increasing number of Layer-1 blockchain networks. As various developers promote the speed and efficiency of their blockchains, relying on metrics that distinguish their performance becomes indispensable.
However, the industry still lacks reliable benchmarks for real-world efficiency, instead relying on sporadic sentimental waves of hype-driven popularity. According to Pu, misleading performance figures currently saturate the market, obscuring true capabilities.
“It’s easy for opportunists to take advantage by driving up over-simplified and exaggerated narratives to profit themselves. Every single conceivable technical concept and metric has at one time or another been used to hype up many projects that don’t really deserve them: TPS, finality latency, modularity, network node count, execution speed, parallelization, bandwidth utilization, EVM-compatibility, EVM-incompatibility, etc.,” Pu told BeInCrypto.
Pu focused on how some projects exploit TPS metrics, using them as marketing tactics to make blockchain performance sound more appealing than it might be under real-world conditions.
Examining the Misleading Nature of TPS
Transactions per second, more commonly known as TPS, is a metric that refers to the average or sustained number of transactions that a blockchain network can process and finalize per second under normal operating conditions.
However, it often misleadingly hypes projects, offering a skewed view of overall performance.
“Decentralized networks are complex systems that need to be considered as a whole, and in the context of their use cases. But the market has this horrible habit of over-simplifying and over-selling one specific metric or aspect of a project, while ignoring the whole. Perhaps a highly centralized, high-TPS network does have its uses in the right scenarios with specific trust models, but the market really has no appetite for such nuanced descriptions,” Pu explained.
Pu indicates that blockchain projects with extreme claims on single metrics like TPS may have compromised decentralization, security, and accuracy.
“Take TPS, for example. This one metric masks numerous other aspects of the network, for example, how was the TPS achieved? What was sacrificed in the process? If I have 1 node, running a WASM JIT VM, call that a network, that gets you a few hundred thousand TPS right off the bat. I then make 1000 copies of that machine and call it sharding, now you start to get into the hundreds of millions of ‘TPS’. Add in unrealistic assumptions such as non-conflict, and you assume you can parallelize all transactions, then you can get “TPS” into the billions. It’s not that TPS is a bad metric, you just can’t look at any metric in isolation because there’s so much hidden information behind the numbers,” he added.
The Taraxa Co-founder revealed the extent of these inflated metrics in a recent report.
The Significant Discrepancy Between Theoretical and Real-World TPS
Pu sought to prove his point by determining the difference between the maximum historical TPS realized on a blockchain’s mainnet and the maximum theoretical TPS.
Of the 22 permissionless and single-shard networks observed, Pu found that, on average, there was a 20-fold gap between theory and reality. In other words, the theoretical metric was 20 times higher than the maximum observed mainnet TPS.
Taraxa Co-founder finds 20x difference between the Theoretical TPS and the Max Observed Mainnet TPS. Source: Taraxa.
“Metric overestimations (such as in the case of TPS) are a response to the highly speculative and narrative-driven crypto market. Everyone wants to position their project and technologies in the best possible light, so they come up with theoretical estimates, or conduct tests with wildly unrealistic assumptions, to arrive at inflated metrics. It’s dishonest advertising. Nothing more, nothing less,” Pu told BeInCrypto.
Looking to counter these exaggerated metrics, Pu developed his own performance measure.
Introducing TPS/$: A More Balanced Metric?
Pu and his team developed the following: TPS realized on mainnet / monthly $ cost of a single validator node, or TPS/$ for short, to fulfill the need for better performance metrics.
This metric assesses performance based on verifiable TPS achieved on a network’s live mainnet while also considering hardware efficiency.
The significant 20-fold gap between theoretical and actual throughput convinced Pu to exclude metrics based solely on assumptions or lab conditions. He also aimed to illustrate how some blockchain projects inflate performance metrics by relying on costly infrastructure.
“Published network performance claims are often inflated by extremely expensive hardware. This is especially true for networks with highly centralized consensus mechanisms, where the throughput bottleneck shifts away from networking latency and into single-machine hardware performance. Requiring extremely expensive hardware for validators not only betrays a centralized consensus algorithm and inefficient engineering, it also prevents the vast majority of the world from potentially participating in consensus by pricing them out,” Pu explained.
Pu’s team located each network’s minimum validator hardware requirements to determine the cost per validator node. They later estimated their monthly cost, paying particular attention to their relative sizing when used to compute the TPS per dollar ratios.
“So the TPS/$ metric tries to correct two of the perhaps most egregious categories of misinformation, by forcing the TPS performance to be on mainnet, and revealing the inherent tradeoffs of extremely expensive hardware,” Pu added.
Pu stressed considering two simple, identifiable characteristics: whether a network is permissionless and single-sharded.
Permissioned vs. Permissionless Networks: Which Fosters Decentralization?
A blockchain’s degree of security can be unveiled by whether it operates under a permissioned or permissionless network.
Permissioned blockchains refer to closed networks where access and participation are restricted to a predefined group of users, requiring permission from a central authority or trusted group to join. In permissionless blockchains, anyone is allowed to participate.
According to Pu, the former model is at odds with the philosophy of decentralization.
“A permissioned network, where network validation membership is controlled by a single entity, or if there is just a single entity (every Layer-2s), is another excellent metric. This tells you whether or not the network is indeed decentralized. A hallmark of decentralization is its ability to bridge trust gaps. Take decentralization away, then the network is nothing more than a cloud service,” Pu told BeInCrypto.
Attention to these metrics will prove vital over time, as networks with centralized authorities tend to be more vulnerable to certain weaknesses.
“In the long term, what we really need is a battery of standardized attack vectors for L1 infrastructure that can help to reveal weaknesses and tradeoffs for any given architectural design. Much of the problems in today’s mainstream L1 are that they make unreasonable sacrifices in security and decentralization. These characteristics are invisible and extremely hard to observe, until a disaster strikes. My hope is that as the industry matures, such a battery of tests will begin to organically emerge into an industry-wide standard,” Pu added.
Meanwhile, understanding whether a network employs state-sharding versus maintaining a single, sharded state reveals how unified its data management is.
State-Sharding vs. Single-State: Understanding Data Unity
In blockchain performance, latency refers to the time delay between submitting a transaction to the network, confirming it, and including it in a block on the blockchain. It measures how long it takes for a transaction to be processed and become a permanent part of the distributed ledger.
Identifying whether a network employs state-sharding or a single-sharded state can reveal much about its latency efficiency.
State-sharded networks divide the blockchain’s data into multiple independent parts called shards. Each shard operates somewhat independently and doesn’t have direct, real-time access to the complete state of the entire network.
By contrast, a non-state-sharded network has a single, shared state across the entire network. All nodes can access and process the same complete data set in this case.
Pu noted that state-sharded networks aim to increase storage and transaction capacity. However, they often face longer finality latencies due to a need to process transactions across multiple independent shards.
He added that many projects adopting a sharding approach inflate throughput by simply replicating their network rather than building a truly integrated and scalable architecture.
“A state-sharded network that doesn’t share state, is simply making unconnected copies of a network. If I take a L1 network and just make 1000 copies of it running independently, it’s clearly dishonest to claim that I can add up all the throughput across the copies together and represent it as a single network. There are architectures that actually synchronize the states as well as shuffle the validators across shards, but more often than not, projects making outlandish claims on throughput are just making independent copies,” Pu said.
Based on his research into the efficiency of blockchain metrics, Pu highlighted the need for fundamental shifts in how projects are evaluated, funded, and ultimately succeed.
What Fundamental Shifts Does Blockchain Evaluation Need?
Pu’s insights present a notable alternative in a Layer-1 blockchain space where misleading performance metrics increasingly compete for attention. Reliable and effective benchmarks are essential to counter these false representations.
“You only know what you can measure, and right now in crypto, the numbers look more like hype-narratives than objective measurements. Having standardized, transparent measurements allows simple comparisons across product options so developers and users understand what it is they’re using, and what tradeoffs they’re making. This is a hallmark of any mature industry, and we still have a long way to go in crypto,” Pu concluded.
Adopting standardized and transparent benchmarks will foster informed decision-making and drive genuine progress beyond merely promotional claims as the industry matures.