PA Illustrated | A Glimpse into Major Web3 Events in February 2026

marsbitPublicado em 2026-02-01Última atualização em 2026-02-01

Resumo

PANews presents its updated crypto calendar for February 2026, featuring comprehensive coverage, flexible filtering, and easy export options. Key events this month include high-impact macroeconomic and policy developments, major financial disclosures, and significant project updates. Highlights include a White House meeting between banks and crypto companies, the U.S. President’s State of the Union address, and the release of key economic indicators such as January non-farm payroll and CPI data. Companies like Coinbase, Robinhood, and MicroStrategy will report Q4 and full-year 2025 earnings. Several major token unlocks are scheduled, including those from Sui and EigenLayer, totaling over $700 million. Major industry conferences such as Consensus Hong Kong and ETHDenver will also take place. This calendar offers a concise overview of essential Web3 activities for February.

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In February, macro policies will be implemented, key financial reports will be disclosed, and core project developments will be intensively released:

  • The White House will convene a meeting between banks and crypto companies
  • U.S. President Trump will deliver the State of the Union address
  • U.S. January non-farm payrolls, unemployment rate data, and CPI will be released successively
  • Coinbase, Robinhood, Strategy4, and others will disclose Q4 and full-year financial reports for 2025
  • Major unlocks for Sui, EigenLayer, and others, with a total scale exceeding $700 million
  • Consensus HongKong, ETHDenver, and others will be held as scheduled

Global key events converge. Lock in the core trends of Web3 in February with just this one image!

Perguntas relacionadas

QWhat is the main purpose of the PANews new crypto calendar mentioned in the article?

AThe PANews new crypto calendar offers comprehensive coverage, flexible filtering options, and convenient export functionality.

QWhich significant macroeconomic events are scheduled for February 2026 according to the article?

AThe White House will convene a meeting with banks and crypto companies, President Trump will deliver the State of the Union address, and the US January non-farm payrolls, unemployment rate data, and CPI will be released.

QWhich companies are set to release their Q4 and full-year 2025 financial reports in February?

ACoinbase, Robinhood, and Strategy4 are among the companies that will disclose their Q4 and full-year 2025 financial reports.

QWhat major token unlocks are happening in February, and what is their total estimated value?

ASui and EigenLayer are undergoing significant token unlocks, with a total estimated value exceeding $700 million.

QName the two major Web3 conferences mentioned that are taking place in February.

AThe two major conferences are Consensus HongKong and ETHDenver.

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