Rewriting the MT Playbook with Marco Trombetti
Introduction to AI Agents and Localization
- Eddie Arta introduces Marco Tereti, CEO of Translated, discussing AI agents and their impact on the localization industry.
- Marco expresses gratitude for being invited back and mentions the importance of industry events.
- They discuss a recent release from Translated, highlighting its significance in the localization field.
Lara: Next Generation Machine Translation Technology
- Marco explains that Lara combines large language models with translation models for improved fluency and accuracy.
- The technology aims to reduce hallucination while maintaining flexibility in translations.
- Lara was first introduced on November 4th, with updates following in February and April.
Expansion of Language Support
- Translated has expanded support from 10 to 32 languages, enhancing capabilities significantly.
- The new model allows real-time adaptation without retraining when errors are found during production.
- Contextual understanding is improved, enabling better management of conversations between users.
Enhanced Features of Lara
- Users can provide specific instructions for tasks like SEO directly within the translation process.
- This integration reduces the need for multiple processing steps by centralizing functions within one model.
- Results are generated quickly (in about 500 milliseconds), improving efficiency over traditional methods.
Team Plan: API and AI Agent Discussion
- Marco introduces Team Plan as an API and AI agent, addressing confusion around these concepts in the industry.
- Eddie acknowledges his own struggles with understanding AI agents at a high level.
Team Functionality in Localization
- New team functionality allows centralized management of user accounts and terminology for enterprises.
- Ensures all employees use consistent terminology, enhancing translation quality and safety.
- Localization teams regain control over machine translation processes previously managed by tech departments.
Improving Internal Communication
- Localization departments can share data with all employees, promoting their work within the organization.
- Every professional translation enhances the internal model used for communication and understanding.
- Employees gain access to powerful translation tools, improving overall experience and visibility.
API Enhancements
- Introduction of a high-performance machine translation API designed for easy integration into workflows.
- Optimized for processing large amounts of user-generated content at competitive costs with low latency.
- Achieves average latencies around 500 milliseconds, suitable for real-time applications.
AI Agents Framework
- AI agents are defined as AIs that interact with each other to perform complex tasks beyond simple transactions.
- Recent developments have enabled protocols allowing AI agents to communicate effectively.
- The release of an open-source protocol (MCP) has sparked interest in building more interactive AI tools.
Building Tools with MCP Protocol
- MCP protocol enables developers to create tools that enhance AI capabilities through contextual information sharing.
- Initial focus was on adding context for better translations; however, developers shifted towards creating utility tools instead.
The Rise of AI Agents and Protocols
Introduction to AI Agents
- The speaker discusses executing codes for applications, leading to live projects that users engage with unexpectedly.
- OpenAI, Microsoft, and Google announce support for the NCP protocol, indicating a shift towards unified communication among AI agents.
Functionality of AI Agents
- Users can request tasks from AI agents, such as booking vacations without prior knowledge of details.
- Multiple agents can collaborate (e.g., LLM for queries and booking agents like Expedia or Sky Scanner).
Current Limitations
- There is no app store for these agents yet; visibility and availability are limited.
- The MCP protocol has design flaws due to its origins in another application.
Experimentation with Agents
- The speaker's team created an MCP agent named Lara to automate translation project management.
- Lara simplifies localization by translating spreadsheets automatically based on user input.
Advantages of Using Lara
- Lara provides automation in project management, reducing manual copy-pasting efforts.
- Teams gain visibility through a team plan that enhances global communication within organizations.
Challenges in Agent Development
- Limited number of high-quality agents exists despite many websites offering services.
Challenges in Digital Service Functionality
- Need for more agents to perform various digital tasks effectively, reflecting real-life complexities.
- Agents should communicate symmetrically; current limitations prevent full utilization of platforms like Entropic and Lara.
- Current internet phase is competitive, hindering collaboration and optimization among services.
Concerns About Market Dynamics
- Desire for open standards to allow broader access and usage of platforms like Entropic.
- Financial focus is crucial to avoid market dilution; unpredictability remains a challenge in the industry.
Future Engagement and Community Feedback
- Appreciation expressed for community support and updates on trends in localization.
- Upcoming release of Lara encourages user feedback; aim to engage with the localization industry actively.
Conclusion of Discussion
- Summary of insights shared about AI agents, protocols, and the technological landscape's evolution.