AI-powered
podcast player
Listen to all your favourite podcasts with AI-powered features
On today's show, the team discusses a recent post from Ali K. Miller emphasizing that the AI skills gap isn't about coding or prompt engineering, but rather about systems thinking. Companies focusing only on hiring large language model (LLM) experts may be missing the larger picture. What they really need are people who understand both the business process and how AI can strategically transform these processes through holistic thinking.
Key Points Discussed
๐ด Systems Thinking vs. LLM Expertise:
There's a rising demand for roles combining business process knowledge and AI expertise.
LLM skills alone won't close the enterprise AI skills gap; organizations need individuals who think in interconnected systems.
๐ก Enterprise Implementation Challenges:
Companies often focus on hiring technical AI talent without ensuring alignment to real business problems.
Successful AI adoption requires both systems thinking and change management.
๐ด Architects vs. Builders:
Organizations need AI architects, not just AI developers. Architects understand and visualize entire business processes and their interactions.
A systems thinker helps integrate AI solutions into the broader operational structure rather than focusing solely on AI technologies themselves.
๐ก Business Analyst Role:
The business analyst role, as exemplified by Salesforce certifications, bridges the gap between technical teams and business teams.
These analysts interpret the system and ensure that technical implementations solve actual business challenges.
๐ด SaaS Impact on Systems Thinking:
SaaS products may have unintentionally sidelined internal system analysts, as companies rely more on externally managed solutions.
With AI, organizations again need to consider the broader implications of technology integration, reviving the need for robust internal analysis.
๐ก Holistic Implementation:
Successful AI projects require understanding both the human and technological components of business processes.
Consultants or internal experts must diagnose problems thoroughly rather than forcing AI solutions onto existing processes.
๐ด Real-world Challenges:
Consultants frequently encounter resistance due to internal silos and fears about job security when identifying areas needing improvement.
Effective communication and trust-building by leadership are critical for successful AI adoption.
#SystemsThinking #AI #EnterpriseAI #AIArchitect #ArtificialIntelligence #AIadoption #FutureOfWork #BusinessAnalyst #ChangeManagement #LLM #TechLeadership
Timestamps & Topics
00:00:00 ๐๏ธ Introduction: Systems Thinking vs. LLM Expertise
00:02:20 ๐ ๏ธ Why both technical AI skills and systems thinking are essential
00:05:42 ๐ Importance of diagnosing real business problems first
00:13:10 ๐ Business analysts as critical interpreters in enterprise AI projects
00:16:14 ๐ฏ Understanding systems thinking from a COOโs perspective
00:20:58 โก Practical steps for successful AI implementation
00:26:14 ๐๏ธ The difference between selling AI solutions and solving business problems
00:32:15 ๐ Why SaaS reduced the role of internal systems analystsโand why AI is changing that again
00:36:19 ๐ AI isn't traditional software: Why business leaders need to understand its nuances
00:44:35 ๐ง Can systems thinking be learned, or is it inherent?
00:50:10 ๐ข Closing thoughts and upcoming topics
The Daily AI Show Co-Hosts: Andy Halliday, Beth Lyons, Brian Maucere, Jyunmi Hatcher, and Karl Yeh