Why PIPPIN’s 50% rally isn’t over yet – Is $0.32 next?

ambcryptoPublished on 2026-02-09Last updated on 2026-02-09

Abstract

Pippin (PIPPIN), an AI agent and Solana-based memecoin, has demonstrated significant bullish momentum, rallying 50.4% on February 8th from a key support level at $0.157. Despite reports of profit-taking by larger holders, the overall trend remains positive. On-chain data supports this outlook, with strong new address growth indicating steady demand and user influx. The Coin Days Destroyed metric shows only minor profit-taking, not a major reversal signal. After a correction from overheated conditions, the current rally has room to advance. Key support levels are at $0.133 and $0.107, while a move above $0.32 could signal a push toward $0.48-$0.50.

AI agent and Solana [SOL] based memecoin Pippin [PIPPIN] was one of the few altcoins with a bullish structure on the weekly chart. It had made considerable gains in November and December, when Bitcoin [BTC] fell below $100k and reached as low as $80.6k.

The relative strength against Bitcoin and the large-cap altcoins showed itself once again. On the 8th of February, PIPPIN rallied a massive 50.40%, with high trading volume. The rally started from the early December support level at $0.157.

A recent AMBCrypto report highlighted that smart money was offloading PIPPIN. The strong gains while the rest of the market experienced pain meant bigger holders were realizing profits. This selling pressure brought about a correction, but the trend remained bullish.

On-chain metrics support a bullish PIPPIN view

Glassnode data showed that the new address growth has been strong since November. Even during the recent price setback, address growth continued apace. This growth signaled steady on-chain activity, and the influx of new users represented demand.

The Coin Days Destroyed metric helps track whether long-term holders’ tokens which were previously dormant have begun to wake up. The metric has been relatively quiet since December, with small spikes in the second half of January.

This signaled some profit-taking, but not a large wave of profit-taking that warned of a potential trend reversal.

The MVRV pricing bands showed that the memecoin had been in overheated territory toward the end of 2025. The subsequent correction pulled prices back toward the realized price. At the time of writing, the current rally has room to grow.

The $0.133 and $0.107 were strong support levels that, if breached, could lead to a deeper correction. Meanwhile, a move beyond the upper bands at $0.32 and $0.48 would signal overheating PIPPIN market conditions.


Final Thoughts

  • Pippin has been one of the altcoins to show longer-term strength against Bitcoin and the wider market.
  • The overheated market conditions were followed by a healthy correction, and the current short-term rally could take prices as high as $0.48-$0.50.

Related Questions

QWhat is PIPPIN and on which blockchain is it based?

APIPPIN is an AI agent and memecoin based on the Solana (SOL) blockchain.

QHow much did PIPPIN rally on February 8th, and from what key support level did the rally begin?

APIPPIN rallied 50.40% on February 8th, starting from the early December support level at $0.157.

QAccording to the article, what on-chain metric indicates an influx of new users and steady demand for PIPPIN?

AThe New Address Growth metric from Glassnode indicates an influx of new users and steady on-chain demand.

QWhat does the Coin Days Destroyed metric being 'relatively quiet' signal about the behavior of long-term holders?

AIt signals that there has been some profit-taking, but not a large wave of selling from long-term holders that would warn of a potential trend reversal.

QWhat price levels does the article identify as potential upper targets that would signal an overheating market?

AThe article identifies moves beyond $0.32 and $0.48 as levels that would signal overheating market conditions.

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