Gate Launches TradFi API and Multi-Leverage Mechanism to Build an Integrated Smart Trading Infrastructure

marsbitPubblicato 2026-03-03Pubblicato ultima volta 2026-03-03

Introduzione

Gate has officially launched its TradFi trading API and upgraded its TradFi product leverage mechanism, enhancing its multi-asset trading ecosystem. The newly introduced API supports automated trading across metals, forex, indices, commodities, and other major global asset classes. It enables users to deploy strategies, manage orders, and monitor assets programmatically, providing an efficient execution environment for quantitative teams, institutional traders, and professional investors. The API offers functionalities such as programmatic order submission and management, real-time market data, order book depth, and access to account and position information, improving operational and risk management efficiency. Additionally, Gate introduced an adjustable multi-tier leverage system, offering up to 500x leverage with multiple options to support diverse trading strategies and improve capital flexibility. The platform maintains a unified account structure, allowing users to trade both digital and traditional financial assets under a single account using USDT as the unified margin asset. This integration enhances cross-market capital efficiency and risk management. The combination of API-driven trading and multi-leverage mechanisms strengthens Gate’s position as a comprehensive trading platform, catering to growing demand for cross-asset strategies amid global market volatility. Gate, founded in 2013 by Dr. Han, is a leading global cryptocurrency exchange serving over 50 milli...

Gate has officially launched the TradFi Trading API and simultaneously upgraded the TradFi product leverage mechanism, further enhancing the maturity of its multi-asset trading ecosystem. This move not only expands the platform's technical depth in traditional financial assets but also highlights its comprehensive competitive advantages in the context of multi-market integration.

It is reported that the newly launched TradFi Trading API supports automated trading for metals, foreign exchange (FX), indices, commodities, and other mainstream global asset classes. Users can directly connect to the Gate TradFi trading system via the API to achieve integrated operations such as strategy deployment, order management, and asset monitoring, providing a more efficient execution environment for quantitative teams, institutional traders, and professional investors.

In terms of functionality, this API supports programmatic order submission and management, meeting the needs of algorithmic trading and systematic strategy execution; it also provides real-time market data and order book depth information, offering data support for quantitative analysis and strategy optimization. Furthermore, account and position information can be retrieved in real-time through the interface, including balance inquiries, position details, and historical order records, improving overall operational and risk management efficiency.

At the product mechanism level, Gate's TradFi section has pioneered an adjustable leverage mechanism, adding multiple leverage options on top of the maximum 500x leverage to meet different strategy needs and enhance the flexibility of position and fund management. The multi-leverage structure, while maintaining the advantages of high-efficiency trading, also provides a more flexible parameter space for the operation of diversified strategies.

At the same time, the platform continues to adopt a unified account system, allowing users to trade digital assets and traditional financial products such as metals, foreign exchange, and indices under the same account, with USDT as the unified margin asset, enabling cross-market fund sharing and flexible allocation. The combination of the leverage mechanism and the unified margin structure makes multi-asset strategy execution more efficient, further strengthening the platform's overall fund utilization and risk management capabilities.

The launch of the TradFi Trading API creates a tighter synergistic effect between programmatic trading capabilities and the multi-leverage mechanism. The automated interface significantly improves strategy execution efficiency and systematic management levels, while the multi-leverage structure provides a more refined selection space for strategies with different risk preferences and trading cycles. Against the backdrop of increasing global market volatility and rising demand for cross-asset allocation, a trading system that combines flexible leverage and multi-market coverage capabilities is becoming an important indicator of a platform's comprehensive strength.

Currently, Gate has formed a multi-asset trading system covering digital asset spot, derivatives, and traditional financial products. With the launch of the TradFi API and the implementation of the multi-leverage mechanism, the platform's synergistic capabilities in unified accounts, unified margins, and trading tools have been further enhanced, providing institutions and professional users with more efficient cross-market solutions. Looking ahead, Gate will continue to improve interface capabilities and product structures, deepen multi-asset integration and technological upgrades, and accelerate the construction of an integrated smart trading infrastructure, expanding broader development space in the global comprehensive trading platform competitive landscape.

About Gate

Gate was founded in 2013 by its founder and CEO, Dr. Han, and is one of the world's leading cryptocurrency trading platforms. The platform serves over 50 million users and supports the trading of 4,400+ crypto assets. As an industry benchmark, Gate was the first to achieve 100% Proof of Reserves, and its ecosystem includes diverse services such as Gate Wallet and Gate Ventures.

Disclaimer:

This content does not constitute any invitation, solicitation, or recommendation. You should always seek independent professional advice before making any investment decision. Please note that Gate may restrict or prohibit all or part of its services from restricted regions. Please read the User Agreement for more information.

Domande pertinenti

QWhat is the main purpose of Gate's newly launched TradFi API?

AThe main purpose of Gate's TradFi API is to support automated trading for traditional financial assets like metals, forex, indices, and commodities, providing an efficient execution environment for quantitative teams, institutional traders, and professional investors.

QWhich asset classes are supported by the new TradFi trading API?

AThe TradFi trading API supports metals, foreign exchange (FX), indices, commodities, and other mainstream global asset classes.

QWhat is the maximum leverage offered in Gate's TradFi section, and what new feature was added?

AGate's TradFi section offers up to 500x leverage and has newly introduced an adjustable multi-level leverage mechanism to provide more flexibility for different trading strategies.

QHow does Gate's unified account system benefit users trading both crypto and traditional assets?

AGate's unified account system allows users to trade both digital assets and traditional financial products under a single account, using USDT as a unified margin asset. This enables cross-market capital sharing and flexible allocation, improving overall capital efficiency.

QWhat year was Gate founded, and who is its current CEO?

AGate was founded in 2013, and its current CEO is Dr. Han.

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