Selecting tools to fight complexity in large Python projects - Maxim Danilov
An overcomplicated project increases development and maintenance time. If a complete redesign is not possible, we can try to distribute the complexity across the existing codebase. The AI assistants cannot help us with this task yet, and we should discuss manual methods and tools that can help us. The effectiveness of the proposed ideas will be demonstrated by applying them to large projects from different business areas. https://2024.pycon.sk/sk/speakers/max...

▶︎
Large Language Models Across Languages - Pavel Král

▶︎
Claude Architect: Multi-Agent Orchestration

▶︎
Keynote: After the AI Hype – What’s Real, and What’s Next - Richard Campbell - 2026

▶︎
Zig 2026: No-AI Policy, $670K Foundation, Left GitHub & Why Zig Isn’t 1.0 - Andrew Kelley Explains

▶︎
Using Large Language Models | Build Your Own LLM Workshop #1

▶︎
The different types of API authentications - Sara Jakša

▶︎
Andrej Karpathy: From Vibe Coding to Agentic Engineering w/ Stephanie Zhan

▶︎
Turing Award Winner: Disagreeing with Google, Postgres, Future Problems | Mike Stonebraker

▶︎
Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

▶︎
AI Agents for Beginners – Part 1 (Free Labs)

▶︎
Skill Issue: Andrej Karpathy on Code Agents, AutoResearch, and the Loopy Era of AI

▶︎
Build and Deploy Claude Skills and MCP Servers | The Complete 2026 Guide

▶︎
System Design Explained: APIs, Databases, Caching, CDNs, Load Balancing & Production Infra

▶︎
Creator of uv, ty, Ruff: How Software Engineering Is Changing | Charlie Marsh

▶︎
Full AI Prompting Course with Andrew Ng

▶︎
Complete GitHub Actions Course - From BEGINNER to PRO

▶︎
Gemini CLI Essentials – Full Course

▶︎
Creator of C++: Bell Labs, Negative Overhead Abstraction, Mistakes | Bjarne Stroustrup

▶︎
Full App Building Course with Cursor (3+ Hours)

▶︎
