Crypto Industry Lays Off Hundreds in Weeks, Blaming Both AI and Bear Market

marsbitPublished on 2026-03-23Last updated on 2026-03-23

Abstract

The cryptocurrency industry has seen a wave of layoffs in recent weeks, with companies including Algorand, Gemini, Crypto.com, OP Labs, and Messari cutting hundreds of jobs. Official reasons cited range from poor macroeconomic conditions and declining token prices to increased integration of AI to improve efficiency. However, industry observers suggest these layoffs are less about AI replacing human labor and more a result of broader sector consolidation. Key areas like restaking, DePIN, and Layer 2 solutions have significantly contracted, forcing companies into cost-cutting mode. New job postings in crypto have dropped by about 80% compared to last year, indicating a wider market slowdown. The reported layoffs likely represent only a fraction of the actual reductions, reminiscent of the larger downturn seen during the 2022 crypto winter.

Author: CoinDesk

Compiled by: Deep Tide TechFlow

Deep Tide Guide: Algorand, Gemini, Crypto.com, and OP Labs have laid off employees successively within weeks, with official reasons half pointing to "poor macroeconomic conditions" and half to "AI replacing human labor."

However, the founder of a crypto recruitment agency directly pointed out: these layoffs have little to do with AI and are more like the result of the collective contraction of the entire sector—restaking, DePIN, L2.

A channel blogger reminded that the actual number of layoffs is much higher than the publicly disclosed figures.

Full Text Below:

Key Points

  • Algorand, Gemini, Block, Crypto.com, OP Labs, PIP Labs, and Messari have all recently laid off employees
  • Reasons given by companies range from low token prices to AI integration
  • Messari has completed three rounds of layoffs since 2023, reducing staff from a target of 1,000 to about 140 currently

The Algorand Foundation joined the ranks of crypto companies laying off staff on Wednesday, cutting 25% of its team of fewer than 200 people, citing "uncertain global macroeconomic conditions" and a broader crypto market downturn.

These layoffs come as a wave of job cuts spreads across the industry. In February, Gemini Space Station announced cutting about 200 positions, a quarter of its workforce, and by mid-March, this proportion had expanded to 30%. On Thursday, Crypto.com said it would cut 12%, about 180 positions.

Previously, OP Labs, which builds the L2 blockchain Optimism, cut 20 employees earlier this month; PIP Labs, behind Story Protocol, cut 5 full-time employees and 3 contractors, 10% of its workforce; and crypto data provider Messari, now positioning itself as an AI-first company, announced its third round of layoffs since 2023 alongside a CEO change, though it did not disclose specific numbers.

The official explanations from companies vary. Algorand directly pointed to macroeconomic conditions and low token prices, but many companies characterized the layoffs as a transition toward greater use of AI in workflows.

"AI is now so powerful that Gemini cannot afford not to use it," the company said in a letter to shareholders. "Not using AI at Gemini would soon be like bringing a typewriter to work instead of a laptop."

"We are joining the ranks of companies integrating AI across the enterprise," a Crypto.com spokesperson told CoinDesk on Thursday, noting that efficiency improvements have reduced the need for employees. CEO Kris Marszalek said on X that companies that do not transition to AI integration will fail.

Algorand's layoffs reportedly affected community management and business development roles, which are not obviously replaceable by AI. To be fair, the company blamed the broader crypto environment. Its ALGO token recently traded around $0.09, down 98% from its 2019 high. Bitcoin, the largest cryptocurrency by market cap, has fallen 20% this quarter.

Industry Consolidation

Industry observers point to broader consolidation dynamics. Entire crypto sectors that were once talent-rich—such as restaking, DePIN, and L2—have shrunk significantly, while merger and acquisition activity is also increasing redundancies, with employees from acquired companies replacing existing ones.

"I haven't seen any real signs that these layoffs are related to large-scale AI workforce replacement," said Dan Escow, founder of crypto recruitment agency Up Top. "Entire sectors that were once strong in talent—restaking, DePIN, and L2—are basically gone now. Companies are forced into cost-cutting mode, buying time to figure out how to execute next."

The broader hiring landscape supports this assessment. In January, new job postings on major crypto recruitment sites averaged about 6.5 per day, down about 80% from the same period a year ago.

Just the companies mentioned in this article—excluding Messari, which did not disclose numbers—have announced about 450 job cuts in weeks. This may only be the tip of the iceberg. During the crypto winter of 2022, CoinDesk tracked over 26,000 job losses throughout the year, a number that took months to fully emerge.

Related Questions

QWhat are the main reasons cited by companies like Gemini and Crypto.com for their recent layoffs?

ACompanies like Gemini and Crypto.com cited the integration of AI into their workflows as a primary reason, claiming that AI improves efficiency and reduces the need for human employees. Gemini stated that not using AI would be like 'bringing a typewriter to work instead of a laptop,' while Crypto.com's spokesperson mentioned that AI integration leads to needing fewer staff.

QAccording to the article, which specific sectors within the crypto industry have seen a significant decline, contributing to layoffs?

AThe article mentions that entire sectors within the crypto industry, such as restaking, DePIN, and L2 (Layer 2) blockchains, have significantly萎缩 (contracted or shrunk), leading to layoffs as companies are forced into cost-cutting modes.

QHow many job cuts have been announced by the companies mentioned in the article (excluding Messari) in recent weeks?

AThe companies mentioned in the article, excluding Messari, have announced approximately 450 job cuts in recent weeks.

QWhat does Dan Escow, founder of crypto recruitment agency Up Top, say about the real reason behind the layoffs?

ADan Escow states that there is no real evidence that these layoffs are due to large-scale AI replacement of the workforce. Instead, he attributes them to the contraction of entire crypto sectors like restaking, DePIN, and L2, forcing companies into cost-cutting mode to buy time and figure out their next steps.

QHow has the number of new job postings in the crypto industry changed compared to a year ago, according to the article?

AAccording to the article, the number of new job postings on major crypto recruitment sites in January was about 6.5 per day, which is approximately an 80% decrease compared to the same period a year ago.

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