Agent engineering
Python
The core language for our agent pipelines, evaluation harnesses and data engineering work.
Why Python is our default for agent work
Python wins on three fronts where agents live:
- The AI ecosystem — every library you would reach for exists and is actively maintained.
- Data engineering fluency — Pandas, DuckDB, Polars, SQLAlchemy keep the data side honest.
- Readability — agent pipelines are easier to reason about when the code is legible.
Where we use Python at QwertyBit
- Agent orchestration. LangChain, CrewAI, custom harnesses — all Python.
- ETL and data readiness. Phase 1 and Phase 4 work (business analysis and feasibility) usually includes a pile of Python.
- Evaluation harnesses. The discipline that separates production agents from demos.
- Fine-tuning pipelines when we are running on-prem with LLM Studio.
Where we pair Python with Node.js
Our production systems often have Python on the agent/data side and Node.js on the product/API side. The boundary is a queue or a typed HTTP API. Both languages do what they are best at without stepping on each other.
The engineering standards we apply
Every Python agent repo we ship has:
- Type hints and
mypyon CI. rufffor linting,pytestfor tests,uvfor dependency management.- Isolated evaluation runs that do not require a developer's laptop.
- Observability instrumentation from the first commit.
Further reading
- The role of software architecture in building high-performance applications — how language choice interacts with architecture.
- Monitoring analytics and KPIs: a beginner's guide — where Python shines in observability.
- Python's own documentation and the Astral ecosystem (uv, ruff).
If you are choosing a stack for your AI product, we are happy to sit down and sketch the trade-offs with you.
Lectura adicional
Frontier LLMs
Anthropic
Claude as the default model for high-reasoning, long-context agent workflows — especially where safety and steerability matter.
Multi-agent orchestration
CrewAI
When a single prompt is not enough, CrewAI lets us build teams of specialised agents that plan, act and review.
Version control & CI
GitHub
Every line we write lives in your GitHub. Transparent delivery, PR reviews, and continuous integration on day one.
¿Listo para ver dónde los agentes pueden reducir tus costes?
Cuéntanos sobre el proceso que quieres optimizar. Vlad revisa personalmente cada brief y responde en un día laborable.