Bitcoin Analyst Reveals How Long It Usually Takes For Altcoin Season To Happen

bitcoinistОпубликовано 2026-01-20Обновлено 2026-01-20

Введение

A Bitcoin analyst highlights that altcoin seasons historically occur rapidly, typically within one to two months, once Bitcoin dominance (BTC.D) begins to decline significantly. Currently, Bitcoin’s dominance stands near 60%, suppressing major altcoin breakouts. However, past cycles—like those in 2017 and 2021—show that when BTC.D drops, capital quickly rotates into altcoins, triggering explosive rallies. For a sustained altcoin season, Bitcoin must first reach a new all-time high to boost market confidence and attract retail investors. Macroeconomic conditions, such as strength in risk-on assets, may also contribute to the shift.

Bitcoin’s dominance over the broader crypto market has become the main reference point for traders trying to determine when an altcoin season will finally take shape. At the moment, Bitcoin still controls close to 60% of the total market, and this has so far kept any meaningful altcoin breakout at bay.

However, according to a Bitcoin analyst, history suggests that once this balance begins to shift, the transition into altcoin season tends to happen quickly, often playing out within a tight one-to-two-month timeframe.

Why Bitcoin Dominance Matters For Altcoin Season

In his analysis, the analyst explained that Bitcoin dominance, also known as BTC.D, is an important factor in determining when capital begins rotating into altcoins. BTC dominance measures Bitcoin’s share of the total crypto market capitalization, and declines in this metric have historically coincided with explosive altcoin rallies. At the time of writing, CoinMarketCap puts the Bitcoin dominance at 59%.

Looking back at 2017, the BTC.D chart shows Bitcoin’s dominance falling very quickly from around 96% in early March to about 60% by mid-May. That drop was the playout of one of the most aggressive altcoin rallies the market has ever seen.

Source: Chart from Waterman on X

A similar pattern played out in 2021, when BTC dominance fell from about 60% in early April to near 40% by mid-May. That move coincided with another powerful altcoin expansion, pushing Ethereum and several other major altcoins to new all-time highs. Many of those peaks, particularly among meme coins such as Dogecoin and Shiba Inu, are unbroken to this day.

The most important takeaway from both cycles, according to the analyst, is the speed of the move. In each case, it took just one to two months for a full-blown altcoin season to unfold once Bitcoin dominance began rolling over decisively.

BTC’s Next Move Could Decide Everything

The analyst notes that many investors underestimate how quickly this transition can happen. After waiting through multiple years of accumulation and consolidation, market participants often grow impatient just before the final stage. Historically, however, altcoin season has tended to play out very quickly once conditions align, not gradually over many months. Therefore, investors waiting for an altcoin season can still hold on for that move and not lose focus.

He also pointed to macro signals supporting a risk-on environment, referencing strength in assets such as small-cap equities, gold, and silver hitting all-time highs. These conditions are lining up for capital flowing into higher-beta assets once confidence returns.

Nonetheless, altcoins cannot sustain a true breakout without BTC first making a convincing move. If Bitcoin fails to push to a new all-time high, altcoins may see only short-lived relief rallies. On the other hand, a new Bitcoin all-time high could act as the deciding factor that brings retail traders back into the market and eventually leads to FOMO plus a breakout altcoin season.

BTC trading at $90,971 on the 1D chart | Source: BTCUSDT on Tradingview.com

Связанные с этим вопросы

QWhat is the main reference point traders use to determine when an altcoin season might occur, according to the article?

ABitcoin's dominance (BTC.D) over the broader crypto market is the main reference point.

QHow long does the analyst say it usually takes for a full-blown altcoin season to unfold once Bitcoin dominance begins to decline?

AIt tends to happen very quickly, often playing out within a tight one-to-two-month timeframe.

QWhat happened to Bitcoin's dominance in 2017 that signaled a major altcoin rally?

AIt fell very quickly from around 96% in early March to about 60% by mid-May.

QAccording to the analyst, what is a prerequisite for altcoins to sustain a true breakout and not just have short-lived rallies?

ABitcoin first needs to make a convincing move, ideally pushing to a new all-time high.

QWhat macro signals does the analyst point to that support a 'risk-on' environment favorable for altcoins?

AStrength in assets such as small-cap equities, and gold and silver hitting all-time highs.

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