Forsidebilde av showet The Superagentic AI Show

The Superagentic AI Show

Podkast av Shashi Jagtap

engelsk

Teknologi og vitenskap

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Les mer The Superagentic AI Show

Welcome to The Superagentic AI Show — a podcast at the edge of Agentic AI, where we explore the rise of intelligent agents and the future of Agent Experience (AgentEx). Hosted by Shashi Jagtap, founder of Superagentic AI and ex-Apple engineer, this show dives into the tools, frameworks, and real-world shifts that are transforming how software is built — not for users, but for agents. Exploring the rise of intelligent agents, AgentEx, and co-intelligent systems. Build the future with agents. 🚀 It’s time to stop watching the future happen — and start building it with agents.

Alle episoder

19 Episoder

episode SpecMem: Unified Pragmatic Memory for Every Coding Agent cover

SpecMem: Unified Pragmatic Memory for Every Coding Agent

SpecMem [https://super-agentic.ai/specmem/] is an innovative Agent Experience (AgentEx) platform designed to provide a unified cognitive memory layer for AI coding agents. It addresses common industry challenges like context loss, proprietary format lock-in, and disorganized project documentation by creating an agent-agnostic framework. By utilizing vector-based semantic search and a specialized impact graph, the system ensures that AI assistants retain project-specific knowledge across different sessions and tools. Key functionalities include multi-framework adapters for platforms like Cursor and Claude, along with a Model Context Protocol (MCP) server for seamless integration. Ultimately, the software transforms static markdown files into living documentation that helps agents understand code relationships, track requirement changes, and optimize testing workflows.

16. jan. 2026 - 16 min
episode CodeOptiX: Agentic Code Optimization & Deep Evaluation cover

CodeOptiX: Agentic Code Optimization & Deep Evaluation

CodeOptiX [https://super-agentic.ai/code-optix], developed by Superagentic AI, is a universal optimization and evaluation engine designed to enhance the reliability of AI coding agents. The platform addresses common risks such as security vulnerabilities, poor test quality, and requirements drift by providing a structured framework for deep behavioral analysis. It utilizes advanced technologies like GEPA for prompt optimization and Bloom for intelligent test scenario generation. Developers can integrate the tool directly into their CI/CD pipelines, use it locally via Ollama for privacy, or connect it to editors through the Agent Client Protocol. By following a workflow of observation, evaluation, reflection, and evolution, the software ensures that generated code meets high standards of maintainability and safety. Overall, these sources describe a comprehensive ecosystem for making autonomous coding systems more trustworthy and efficient.

15. jan. 2026 - 13 min
episode Agentic Context Engineering: Prompting Strikes Back cover

Agentic Context Engineering: Prompting Strikes Back

This pod is all about the Agent Context Engineering and discusses the evolution of prompt engineering into Context Engineering and the new discipline of Agentic Context Engineering (ACE), introduced by Stanford, which views context as an evolving, living playbook. ACE utilizes a structured feedback loop involving a Generator, Reflector, and Curator to refine context dynamically based on performance and failure analysis, moving beyond static instructions. The text contrasts ACE with other prompt optimization methods like GEPA, noting that ACE focuses on accumulating knowledge within the context while GEPA often refines the prompt text itself. Finally, the source advocates for a Staged Agent Optimizationapproach to integrate these methods safely, asserting that while context evolves, sophisticated prompting remains essential as the control layer guiding the agent's learning and adaptation process. It also related how DSPy can be supportive here

11. okt. 2025 - 17 min
episode GEPA DSPy Optimizer in SuperOptiX cover

GEPA DSPy Optimizer in SuperOptiX

ntroduces GEPA, a novel DSPy optimizer integrated into the SuperOptiX AI agent framework, which enables AI agents to self-improve through reflective prompt evolution. Unlike traditional methods requiring extensive data, GEPA leverages a reflection language model (LM) to analyze its own errors and generate insights, leading to more accurate, interpretable, and domain-adaptable AI agents with minimal training examples. The source highlights GEPA's technical architecture, emphasizing its ability to achieve significant performance gains in specialized domains like mathematics and healthcare, while offering various configurations for different computational resources within SuperOptiX. This reflective approach signifies a shift towards more intelligent and adaptable AI optimization. GEPA: https://arxiv.org/abs/2507.19457 SeuperOptiX Docs:https://superagenticai.github.io/superoptix-ai/guides/gepa-optimization/ SuperOptiX: https://superoptix.ai/ DSPy GEPA Optimizer: https://dspy.ai/tutorials/gepa_ai_program/

18. aug. 2025 - 13 min
episode Optimas + SuperOptiX: Global‑Reward Optimization for DSPy, CrewAI, AutoGen, and OpenAI Agents cover

Optimas + SuperOptiX: Global‑Reward Optimization for DSPy, CrewAI, AutoGen, and OpenAI Agents

This episode describes SuperOptiX, an optimization platform for AI systems, and its integration with Optimas, a unified optimization framework. SuperOptiX leverages Optimas to extend its optimization capabilities beyond just prompts to encompass hyperparameters, model parameters, and routing within complex "compound" AI systems. This integration allows users to optimize AI agents developed in various frameworks like OpenAI Agent SDK, CrewAI, AutoGen, and DSPy, all through a consistent command-line interface. Optimas uniquely employs globally aligned local rewards, enabling efficient, component-level optimization that reliably improves overall system performance, as demonstrated by an average 11.92% improvement across diverse systems in its associated research. The synergy between SuperOptiX and Optimas offers a robust solution for enhancing the efficiency and quality of multi-component AI pipelines. Links Docs: https://superagenticai.github.io/superoptix-ai/guides/optimas-integration/ Optimas: https://optimas.stanford.edu SuperOptiX: https://superoptix.ai

14. aug. 2025 - 13 min
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