PinnedWhen to Apply RAG vs Fine-TuningLeveraging the full potential of LLMs requires choosing the right technique between retrieval-augmented generation (RAG) and fine-tuning.Feb 25, 2024Feb 25, 2024
PinnedWhy You Need Synthetic Data for Machine LearningData is the lifeblood of AI. Without quality, representative training data, our machine learning models would be useless. But as the…Mar 3, 20245Mar 3, 20245
PinnedDesigning high-performing RAG systemsDesigning high-performing Retrieval Augmented Generation (RAG) systems, structured across the 5 main pillars :Mar 31, 20241Mar 31, 20241
PinnedAI Bill of Materials (AI BOM)The AI BOM encompasses everything from the data that feeds the models to the infrastructure that powers them, and the processes that bring…Jul 7, 2024Jul 7, 2024
From Prompting to Thinking -The Cognitive EngineThe future of AI lies not in clever prompts, but in building systems that can think for themselves11h ago11h ago
The Dawn of Autonomous AI AgentsThe future is agentic. The most valuable business asset in the AI age won’t be data or algorithms — it will be well-architected AI agents…Feb 1Feb 1
AI Agents Are Redefining SaaSAI agents are reshaping SaaS across business models, technical infrastructure, and product innovation.Jan 271Jan 271
Deep Reinforcement Learning in Continuous LearningDeep Reinforcement Learning’s leap into the limitless world of continuous learningJan 14Jan 14