Crypto Analyst Points to the Bloody Monday Factor After Crypto Market Slips

TheNewsCryptoPublicado em 2026-01-19Última atualização em 2026-01-19

Resumo

A crypto analyst has attributed the recent market downturn to "Bloody Monday," noting that nearly $100 billion was wiped out in 12 hours. The global crypto market cap fell 2.82% to around $3.13 trillion, with BTC and ETH declining 2.33% and 3.01%, respectively. Key factors include US tariff threats against several European nations and a shift in investor sentiment toward gold and silver amid trade tensions. Other global markets, including European and Japanese indices, also saw declines.

The crypto market is down, and a crypto analyst has pinned this to a factor called “Bloody Monday.” He further underlined the extent to which the market has lost its value in just 12 hours. Many more factors are possibly influencing the downswing across the globe.

Crypto Analyst on Bloody Monday

Ted Pillows, a notable crypto market analyst, has referred to today’s decline as “Bloody Monday.” He said that the factor was back, hinting that it could be affecting the movement of the price. Ted further added that almost $100 billion has been wiped out in the last 12 hours.

Crypto enthusiasts have reacted to his post with some saying that the decline was expected and they were loaded on shorts. Another crypto enthusiast said that it was just liquidation, which was a normal market cleanup.

Decline in Crypto Market

The decline of the crypto market is more than evident, with several tokens losing momentum in just 24 hours. The market cap has shed almost 2.82% of its value and is now hovering around $3.13 trillion. The CMC20 Index has slipped to $195.57, down by 2.80%. The FGI, earlier moving above 50 points, has plunged to 45 points when the article is being written.

As for the price of top tokens, BTC and ETH are down by 2.33% and 3.01% over the last 24 hours, respectively. They are now exchanging hands at $92,793.11 and $3,206.69, applicable in the same order. Interestingly, the crypto market has retraced its steps at a time when investors are allocating funds to Gold and Silver amid rising international trade tensions.

Factors Behind this Bloody Monday

Several factors have influenced the price on Monday. The most talked about factor is the recent tariff threat by US President Donald Trump. He has vowed to impose tariffs on eight European countries till he is allowed to buy Greenland, which Trump says is for national security. An initial imposition could be of 10% effective February 01, likely to be hiked to 25% effective June 01, 2026, if both don’t reach a deal.

Eight countries facing the possible tariff rate are Norway, Denmark, France, Sweden, the Netherlands, Germany, Britain, and Finland. Not just crypto but most of the global markets recorded a decline. DAX Futures and EUROSTOXX 50 Futures plunged by around 1.1% while Japan’s Nikkei lost 1%.

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TagsCrypto AnalystCrypto Market

Perguntas relacionadas

QWhat is the 'Bloody Monday' factor mentioned by the crypto analyst?

AThe 'Bloody Monday' factor refers to the significant market decline that occurred on Monday, where nearly $100 billion was wiped out from the crypto market in just 12 hours, as highlighted by analyst Ted Pillows.

QHow much has the total crypto market cap decreased according to the article?

AThe crypto market cap has decreased by almost 2.82%, now hovering around $3.13 trillion.

QWhat are the current prices of BTC and ETH after the decline?

ABTC is currently priced at $92,793.11 (down 2.33%) and ETH is at $3,206.69 (down 3.01%) over the last 24 hours.

QWhat major event is cited as a key factor influencing the market decline?

AThe recent tariff threat by US President Donald Trump against eight European countries, with proposed tariffs starting at 10% effective February 01 and potentially rising to 25% by June 01, 2026, if no deal is reached.

QWhich countries are facing potential tariffs according to the article?

AThe eight countries facing potential tariffs are Norway, Denmark, France, Sweden, the Netherlands, Germany, Britain, and Finland.

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