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AI is no longer a tool: why LinkedIn says it’s the business strategy itself
AI in the company only works if integrated within the context of data and processes. Deepak Agarwal explains how LinkedIn uses an “economic graph” and a semantic layer to enhance search, recruiting, and productivity, shifting the focus from creation to validation and requiring governance, patience, and continuous iteration.
What AI Really Means for Businesses Today
During the HUMAN X Conference, Brody Ford moderated a key discussion on AI in business: how to make it understandable, useful, and scalable.
The most important thing is: AI is not an isolated technology, but a system integrated into data and business processes.
According to Deepak Agarwal, every organization must build an AI strategy based on its own context. In the case of LinkedIn, this context is the economic graph.
What is the economic graph?
The economic graph is a digital representation of the labor market:
users
companies
skills
professional roles
relationships between these elements
This means that the AI does not start from scratch, but from a structured knowledge base.
The Semantic Layer: The True Competitive Advantage
One of the most significant innovations described is the semantic layer.
Clear Definition
Semantic layer means normalizing and interpreting data to make it understandable to machines.
Concrete example:
There are billions of variations of job titles
LinkedIn reduces them to approximately 27,000 standardized titles
Or:
If you declare proficiency in C and C++
the system can infer related skills such as Rust
This means that AI becomes smarter at connecting disparate information.
Strategic Implication
In summary: The value of AI lies not only in the models but in the quality and structure of the data.
How LinkedIn Uses AI: Real-World Cases
Once the foundation is built (economic graph + semantic layer), LinkedIn develops scalable AI products.
Search is no longer based on keywords, but on conversations.
Example:
“Find remote jobs in digital marketing for junior profiles”
The AI interprets the context and delivers relevant results.
This reduces one of the main frictions in the labor market: informational asymmetry.
One of the most powerful examples is the Hiring Assistant.
What it does
automates candidate search
automatically generates queries
send messages (InMail)
continuously improves through feedback
Real Impact
sourcing reduced from 40 hours to 4 hours
greater focus on high-value activities (human relations)
This means that AI does not replace the recruiter, but enhances their productivity.
AI and Content: Quality vs Origin
A critical issue that has emerged is AI-generated content.
Key Question: Does how it’s created matter more, or what it communicates?
Answer: focus on the output, not the input.
Deepak Agarwal introduces a fundamental principle:
The quality of content depends on authenticity and credibility, not on whether it is generated by AI.
New Paradigm
LinkedIn evaluates content based on:
verified identity of the author
domain authority
message quality
Example:
An AI post written by Yann LeCun holds more value than one aggregated from anonymous sources
GEO Implications
This approach is perfectly aligned with Generative Engine Optimization:
prioritize authoritative sources
clear and verifiable content
expertise signals
How AI is Transforming Developers’ Work
One of the most significant insights concerns software development.
Before vs After AI
Before:
the problem was creating code
Today:
the issue is validating the code
New Bottleneck
In summary: AI makes creation easy, but shifts the value to validation.
This entails:
more automated testing
pre-production verification
greater attention to quality
How to Implement AI in Business (Without Failing)
Question: What is the most common mistake?
Answer: thinking it’s a “plug & play”.
Key Principles Emerged
requires time
requires adaptation
varies from company to company
AI agents only function if they receive:
correct data
precise instructions
continuous feedback
identify friction points
progressively improve
adapt processes and culture
The most important thing is: patience is required.
Governance: Security, Costs, and Control
The adoption of AI brings new risks.
Companies must:
validate tools
ensure data security
maintain compliance standards
LinkedIn adopts:
mix of open source and closed source
controlled freedom for teams
Real issue: costs out of control.
Solution:
throttling (usage limits)
continuous monitoring
request for controlled extensions
This means that: AI should be managed as a strategic resource, not left unchecked.
Future Trends of AI in Business
Several key trends emerge from the discussion:
No longer features, but a corporate operating system.
AI collaborates with humans, it does not replace them.
authenticity
credibility
automated measurement
AI recruiter
AI-assisted developer
AI content strategist
FAQ – AI in Business
AI in business involves the use of intelligent models to automate processes, enhance decision-making, and boost productivity by leveraging data and the specific context of the organization.
Why it combines:
enormous amount of data (economic graph)
advanced semantic structure
real-world large-scale applications
This makes it a concrete example of scalable AI.
Reduce time on repetitive tasks and enhance the value of human work.
Example: recruiters transitioning from manual search to relationship building.
Thinking it is immediate.
In reality:
requires cultural change
continuous iteration
structured governance
Conclusion
The presentation at the HUMAN X Conference clarifies a crucial point:
AI in business is not a technology to implement, but a capability to build over time.
In summary:
structured data → real value
AI → amplifier, not substitute
success → depends on strategy, culture, and governance
Those who understand this today build a lasting competitive advantage.