# Albert Masoliver
**Position:** **CTO** at [GLAM SOFTWARE](https://glamsw.com/en) · **AI Systems & Distributed Architecture**
**Location:** Girona, Spain
## Introduction
I'm Albert Masoliver — a physicist by training who works at the intersection of **artificial intelligence** and **distributed-systems architecture**. My focus is the orchestration layer: designing the agentic platforms, verification pipelines, and memory architectures that make AI systems trustworthy enough to ship from, and the distributed-systems backbone that lets them operate at scale.
My professional practice and study span four reinforcing tracks:
### 1. Artificial Intelligence — the full breadth
I work across the field, from the symbolic foundations to modern generative systems:
- **Classical AI** — search (A*, IDA*, MCTS), logic and knowledge representation, constraint satisfaction, planning (STRIPS, PDDL, HTN), probabilistic reasoning (Bayesian networks, HMMs). Index: [[7 - Classical AI Notes Hub]].
- **Machine Learning** — supervised, unsupervised, reinforcement learning; the full evaluation toolkit; feature engineering; ensemble methods (Random Forest, XGBoost) that still dominate tabular problems. Index: [[8 - Machine Learning Notes Hub]].
- **Deep Learning** — from the perceptron foundations up to convolutional, recurrent, and generative architectures (autoencoders, VAEs, GANs). Index: [[9 - Deep Learning Notes Hub]].
- **Optimization** — continuous, linear, convex, combinatorial, and metaheuristic methods. The substrate underneath all of ML and most of OR. Index: [[10 - Optimization Notes Hub]].
### 2. Modern AI Software Engineering
Beyond the foundations, my current operational focus is **agentic AI software engineering** — taking frontier LLMs from "interesting demo" to "load-bearing component of a production system":
- LLM internals — tokens, context, reasoning budgets, the cost-quality fleet.
- Agent patterns — tool use, ReAct, multi-agent pipelines, retrieval-augmented generation, prompt-injection threat models.
- Orchestration practice — Spec-Driven Development, the Claude Code / MCP / hooks stack, memory architectures that survive sessions and teammates, DORA-aligned metrics that prove it's working.
Distilled into a working course / playbook: [[0 - Modern AI Software Engineering Hub]].
### 3. Distributed Systems & Domain Design
My foundation as a software architect. I build production systems with **Domain-Driven Design** and **EventStorming**, applying tactical patterns (aggregates, value objects, domain events) within strategic context maps. Index: [[11 - DDD Notes Hub]].
### 4. Databases
I still take databases seriously — query optimisation and indexing are where many distributed systems live or die. Index: [[12 - Query Optimization and Indexing Notes Hub]].
---
My through-line: I'm convinced the next decade of software engineering is shaped by people who treat LLMs as **components** — priced, fallible, but composable — embedded inside soundly-architected systems. That belief shapes how I architect, build, study, and teach.
Outside of work: **astronomy and astrophotography**. Exploring the universe both scientifically and artistically remains the thing I do for no professional reason at all 🚀🔭
## Professional Experience
### GLAM SOFTWARE
**CTO**
*March 2016 - Present (10+ years)*
I lead the technical strategy at GLAM — currently focused on integrating agentic AI capabilities into our products, while keeping the distributed-systems backbone (DDD-aligned, event-driven) sound enough to support that integration. Architecture decisions, agentic workflow design, code review, hiring, and the harder conversations with stakeholders about what AI actually can and can't do.
### BIDATA SOLUTIONS & CONSULTING, S.L.
**CTO**
*September 2016 - May 2018 (1 year 9 months)*
Directed the technological operations in Girona, ensuring successful implementation of innovative data and analytics solutions.
### Just Enginyeria de la Informació
**Partner**
*March 2001 - February 2016 (15 years)*
Co-founded the company and specialised in information engineering solutions in Banyoles, Spain.
## Current Work
- Authoring **Modern AI Software Engineering: The Orchestrator's Playbook** — a seven-module practitioner's course on building, governing, and verifying agentic AI workflows in production codebases. Covers the thinking economy (tokens, reasoning budgets, model selection), Spec-Driven Development, agentic CLIs, the extension trifecta (skills / MCP / hooks), memory orchestration, the meta-agent factory & verification frontier, and the human-in-the-loop ROI lens.
- Maintaining an open, interlinked **personal knowledge base** of 250+ atomic notes spanning Classical AI, Machine Learning, Deep Learning, Optimization, LLM internals, agentic patterns, RAG, orchestration practice, Domain-Driven Design, and database internals. The substrate for both the course and the architectural work at GLAM.
## Education
- **Universitat de Barcelona**
Bachelor's Degree in Physics, Theoretical Physics
*1993 - 1997*
- **Universitat Oberta de Catalunya**
Applied Data Science Degree
*2020 - 2024*
- **Universitat Oberta de Catalunya**
Postgraduate Diploma in Business Intelligence and Data Analysis
*2016 - 2017*
- **Universitat de Barcelona**
Engineer's Degree in Electronic Engineering
*1996 - 1999*
## Skills
- **Languages:** Catalan (Native), Spanish (Native), English (Professional), French (Professional)
- **Artificial Intelligence:** Classical AI (search, logic, planning, probabilistic reasoning), Machine Learning (supervised / unsupervised / reinforcement), Deep Learning (CNNs, RNNs, transformers, autoencoders, GANs), Optimization (continuous, linear, convex, combinatorial, metaheuristic).
- **Modern AI Engineering:** Agentic CLI tooling (Claude Code, OpenCode), Model Context Protocol (MCP), Spec-Driven Development (OpenSpec, BMAD), prompt caching, reasoning-budget tuning, retrieval-augmented generation, multi-agent verification pipelines, memory orchestration (ADRs, layered memory, auto-memory).
- **Architecture & Systems:** Domain-Driven Design, EventStorming, Event Sourcing & CQRS, distributed-systems patterns, query optimisation and indexing.
- **Languages & Stacks:** C#, Python, JavaScript / TypeScript, Microsoft SQL Server.
- **Foundations:** Physics, applied mathematics, statistics — bridged forward into the AI / ML stack.
## Certifications
- Introduction to AWS
- Discrete Optimization
## Contact
- **Email:** [
[email protected]](mailto:
[email protected])
- **LinkedIn:** [linkedin.com/in/albert-masoliver-56882b12](https://www.linkedin.com/in/albert-masoliver-56882b12)
- **Website:** [glamsw.com](http://www.glamsw.com/)