Back to List
The Manual Coding Retreat: Why One AI Engineer is Coding Without LLMs for Three Months
Industry NewsSoftware EngineeringAI AgentsDeveloper Experience

The Manual Coding Retreat: Why One AI Engineer is Coding Without LLMs for Three Months

Miguel Conner, an experienced AI engineer from Aily Labs, has embarked on a three-month coding retreat in Brooklyn, New York, to focus on programming without the heavy reliance on AI tools. Despite his background in building AI agents and knowledge graphs, Conner argues that manual coding serves two critical functions: expressing intent and deeply learning a codebase. Having spent six weeks on this retreat as of March 2026, he reflects on the transition from using state-of-the-art models like DeepSeek R1 and Llama 3 to the traditional 'hand-coded' approach. This experiment comes at a time when many in the industry suggest that programming is a 'solved problem' due to the rise of AI agents and automated workflows.

Hacker News

Key Takeaways

  • Intentional Disconnection: Miguel Conner is spending three months coding 'the old way' to rediscover the nuances of the craft.
  • Deep Industry Experience: The author previously led projects at Aily Labs, building web search agents and knowledge graphs long before major industry releases from Anthropic and OpenAI.
  • The Dual Nature of Coding: Manual coding is identified as a process of both writing desired logic and actively learning the underlying codebase.
  • Contrarian Timing: This retreat occurs in early 2026, a period where many successful programmers claim that AI has effectively solved the problem of programming.

In-Depth Analysis

From AI Pioneer to Manual Practitioner

Miguel Conner’s decision to step away from AI-assisted development is particularly notable given his professional pedigree. At Aily Labs in Barcelona, he was at the forefront of the AI revolution, developing internal web search agents in early 2024—months before Anthropic published its influential 'Building Effective AI Agents' article and a full year before OpenAI’s DeepResearch. His work involved leading journal clubs to dissect the architectures of open-source models like DeepSeek R1, Ai2’s Olmo 3, and Meta’s Llama 3. This deep technical understanding of how LLMs are built and trained provides a unique perspective on why one might choose to temporarily abandon them.

The Hidden Costs of AI Agents

While using coding agents like Cursor and various LLMs, Conner identified a significant shift in the development process. He posits that traditional coding 'by hand' involves two simultaneous actions: the expression of what the programmer wants to create and the cognitive process of learning the codebase. The analysis suggests that while AI agents can handle the 'writing' aspect efficiently, they may disrupt the 'learning' aspect. By spending three months in Brooklyn focusing on manual input, Conner aims to reclaim the element of the craft that requires a deep, unmediated connection with the code, challenging the contemporary narrative that programming is a solved problem.

Industry Impact

This narrative highlights a growing tension within the software engineering industry as of 2026. As AI agents become more sophisticated, there is an emerging debate regarding the loss of 'codebase intimacy' and the long-term effects on developer expertise. Conner’s retreat serves as a case study for the 'craftsmanship' movement in software, suggesting that even as SOTA (State-of-the-Art) models become more capable, the human element of understanding and learning through manual labor remains a vital component of high-level engineering. It raises questions about whether the efficiency gained by AI comes at the cost of deep architectural comprehension.

Frequently Asked Questions

Question: Why did Miguel Conner decide to start a coding retreat in Brooklyn?

Conner moved to Brooklyn for a mix of personal reasons and a professional desire to focus on coding without AI for three months. He wanted to explore the 'old way' of programming at a time when the industry increasingly views coding as a solved problem.

Question: What was Conner's experience with AI prior to this retreat?

He spent two years at Aily Labs building AI agents, including early web search tools and knowledge graphs. He also led a journal club focused on the training and tradeoffs of models like Llama 3 and DeepSeek R1.

Question: What does Conner believe is lost when using a coding agent?

He suggests that manual coding allows a developer to learn the codebase while writing. Using an agent often focuses only on the output, potentially bypassing the deep learning process that occurs when writing code by hand.

Related News

Managing AI Coding with Agent Evaluation Thinking: A 310,000-Line Refactoring Case Study
Industry News

Managing AI Coding with Agent Evaluation Thinking: A 310,000-Line Refactoring Case Study

Meituan's technical team has shared a groundbreaking approach to managing AI-driven software development, centered on the successful refactoring of 310,000 lines of code. As AI-generated code now accounts for over 90% of development in specific contexts, the primary challenge has shifted from increasing coding speed to establishing effective constraints. Without unified standards, AI risks amplifying technical chaos and debt. To mitigate this, Meituan implemented 'Agent Evaluation Thinking,' a framework that includes technical debt sorting, rule construction, a standardized refactoring SOP, and a Pre-PR mechanism. This strategy successfully transforms high-cost, specialized refactoring projects into continuous, daily iterative actions, ensuring long-term system stability and maintainability in an AI-dominant coding environment.

LG Innotek Forecasts Growth Through AI-Driven iPhone Demand and Expanded FC-BGA Substrate Production at Gumi Plant
Industry News

LG Innotek Forecasts Growth Through AI-Driven iPhone Demand and Expanded FC-BGA Substrate Production at Gumi Plant

LG Innotek is strategically positioning itself to capitalize on the burgeoning demand for artificial intelligence within the smartphone sector, specifically focusing on AI-driven iPhone growth. A central element of this strategy is the company's Gumi manufacturing facility, which reached a significant milestone by commencing the mass production of Flip Chip Ball Grid Array (FC-BGA) substrates in February 2024. This move represents a critical shift in the company's production capabilities, aligning its output with the high-performance requirements of modern AI hardware. By integrating advanced substrate manufacturing with the anticipated rise in AI-capable mobile devices, LG Innotek aims to strengthen its position within the global electronics supply chain. The commencement of operations at the Gumi plant serves as a foundational step in meeting the evolving technological needs of the industry.

European Commission Allocates 10 Billion Euros to Bolster AI Factories and Infrastructure Through 2027
Industry News

European Commission Allocates 10 Billion Euros to Bolster AI Factories and Infrastructure Through 2027

The European Commission has announced a significant financial commitment to the artificial intelligence sector, earmarking 10 billion euros (approximately US$11.6 billion) to support the development of AI Factories. This investment initiative is designed to span a seven-year period, beginning in 2021 and concluding in 2027. The funding aims to strengthen the European Union's technological infrastructure and foster a competitive environment for AI innovation. Alongside this investment, the Commission is actively reviewing the impact of regulatory measures, specifically focusing on the implications of curbs related to Anthropic. This strategic move highlights the EU's dual approach of providing substantial financial backing while simultaneously evaluating the regulatory landscape to ensure sustainable growth within the industry.