From Analysis to Production
Analytics has transitioned from standalone analysis to
production-grade decision systems.
Internal hiring data across US and EU markets shows that
over 78% of analytics roles now expect production deployment exposure,
compared to just 41% a decade ago.
Collapse of Analyst–Engineer Divide
The historical split between statisticians and software engineers has eroded.
Python’s rise reflects this shift, with
Python appearing in 82% of data science job postings,
while R appears in 38%, primarily as a complementary skill.
AI Acceleration Effect
The expansion of machine learning and AI tooling has disproportionately favoured
ecosystems that integrate easily with cloud, APIs, and MLOps pipelines.
Python dominates AI-related roles, accounting for
over 90% of LLM and ML engineering postings.
R’s Strategic Repositioning
R has not declined, but repositioned.
It increasingly functions as a
high-precision analytical layer used for
statistical modelling, experimentation, and validation,
particularly in research-heavy and regulated environments.