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Source channel @githubtrending · Post #15049 · Aug 12

#java#distributed_systems#durable_execution#grpc#java#javascript#microservice_orchestration#orchestration_engine#orchestrator#reactjs#spring_boot#workflow_automation#workflow_engine#workflow_management#workflows Conductor is an open-source tool that helps you manage and automate complex workflows involving many microservices and systems. It makes your workflows flexible, reliable, and scalable by handling retries, errors, and monitoring automatically. You can define workflows as code in JSON, use various task types, and manage workflows dynamically without tightly coupling services. It offers an easy-to-use web interface and supports multiple databases like Redis and MySQL. This helps you build, run, and monitor workflows efficiently, saving time and reducing errors in managing distributed applications. It also has SDKs for Java, Python, JavaScript, Go, and C# to integrate easily with your projects. https://github.com/conductor-oss/conductor

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Crypto M - Crypto News

@CryptoM · Post #65291 · 04/12/2026, 02:56 PM

🚀 Security Concerns Raised Over AI Model API Proxy Services A security research team has identified malicious code injections in 26 out of over 400 unofficial AI model API proxy services examined. According to NS3.AI, the report highlights the potential risks associated with these intermediary services, which can modify AI-generated code and compromise sensitive data, including AWS keys. #security#AI#API#maliciouscode#dataprivacy#NS3AI#AWS

Crypto M - Crypto News

@CryptoM · Post #65378 · 04/13/2026, 03:10 AM

🚀 AI TRENDS | University of California Study Reveals Security Risks in Third-Party LLM Routers Researchers at the University of California have identified security vulnerabilities in 26 third-party large language model (LLM) routers, which can potentially inject malicious code or steal credentials from AI agent traffic. According to NS3.AI, the study highlighted that one of these routers was able to drain Ether from a decoy wallet, although the reported financial loss remained under $50. The research paper cautioned developers who utilize AI coding agents for smart contracts or wallets, noting that private keys or seed phrases could be exposed when requests are routed through unscreened routers. #AI#securityrisks#thirdpartyLLM#maliciouscode#credentials#AIagents#UCstudy#smartcontracts#wallets#privatekeys#seedphrases#cybersecurity#ETH