Together AI Deploys Autonomous AI Agents to Revolutionize Complex Engineering Automation
AI agents just took over the engineering department—and they're not asking for vacation days.
Autonomous Workforce Rises
Together AI's new system cuts through multi-stage engineering workflows without human intervention. These agents bypass traditional development bottlenecks, executing complex tasks from code optimization to system architecture—all while Wall Street still tries to figure out if AI is a 'productivity play' or just another buzzword to pump tech stocks.
The self-directed systems operate on continuous learning loops, adapting to new engineering challenges in real-time. No coffee breaks, no meetings, just pure algorithmic execution that would make any project manager question their job security.
Human engineers? They're now supervising the supervisors—monitoring systems that monitor other systems. The ultimate meta-game in tech automation.

Together AI is pioneering the use of AI agents to automate complex engineering workflows, as detailed in a recent blog post. These agents are designed to handle intricate tasks such as configuring environments, launching jobs, and monitoring processes, which traditionally require substantial human oversight. By leveraging AI agents, Together AI aims to reduce manual intervention and increase efficiency in engineering tasks, particularly in the development of efficient Large Language Model (LLM) inference systems. [source]
AI Agents for Complex Workflow Automation
In the realm of coding agents, tools like Claude Code and OpenHands have demonstrated their ability to execute complex workflows. Together AI's approach focuses on embedding these agents within an architecture that allows them to operate effectively. This involves equipping the agents with tools that facilitate their interaction with and modification of the environment, enhancing their ability to perform multi-step engineering workflows.
Key to this process is selecting tasks that are verifiable, well-defined, and supported by existing tools. Automating repetitive tasks such as infrastructure configuration and job monitoring allows human teams to focus on strategic decision-making while leaving routine operations to AI agents.
Patterns for Building Automation Agents
Together AI identifies two sets of core patterns for developing effective autonomous agents: Infrastructure Patterns and Behavioral Patterns. Infrastructure Patterns focus on building a robust agentic system environment, emphasizing the importance of good tools, comprehensive documentation, and SAFE execution practices. Behavioral Patterns guide the agents on how to act, including managing parallel sessions and wait times, and ensuring effective progress monitoring.
A Case Study: Speculative Decoding
Speculative decoding serves as a case study in Together AI's approach to automation. This technique, which accelerates LLM inference by using smaller models to predict the output of larger models, exemplifies the potential of AI agents in handling complex, multi-day processes. The automation of this training pipeline has minimized human oversight and accelerated the development process.
Despite the successes, challenges remain in context management, handling novel failure modes, and optimizing resources. Together AI continues to refine its approach, aiming to expand the applications of automation to other domains such as DevOps and scientific research.
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- automation
- engineering
- llm inference