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AI-driven internal systems: Klarna’s bold strategy: Swedish fintech giant Klarna is challenging conventional wisdom by ditching industry-standard software like Salesforce and Workday in favor of building its own AI-powered internal systems.

  • Klarna’s success with AI customer support automation, which now handles two-thirds of customer inquiries, has encouraged the company to expand this approach to other areas of its operations.
  • The company believes that AI-enabled software represents the future of internal tools, potentially offering a lower overall cost compared to off-the-shelf solutions.

The financial calculus: Klarna’s bet on in-house AI systems raises questions about the break-even point for such decisions, with potential implications for the broader software industry.

  • A hypothetical example using MongoDB’s sales team illustrates the significant costs associated with industry-standard software: an estimated $12-15 million annually, potentially exceeding $100 million over a decade.
  • Declining costs in software production and data storage may be lowering the threshold for companies to consider building their own internal systems.

Potential advantages of bespoke software: Klarna’s approach could yield several benefits beyond cost savings, potentially reshaping how companies approach their internal tools and processes.

  • Building a custom CRM with a $10 million annual budget and AI capabilities could rival the development of a well-funded startup, potentially offering superior functionality tailored to the company’s specific needs.
  • This strategy could provide Klarna with a sustainable competitive advantage over time, similar to the impact of their AI-driven customer support system.
  • The process of developing bespoke software forces the organization to rethink and optimize workflows in the context of AI, potentially driving innovation throughout the company.

Risks and challenges: While Klarna’s strategy is bold, it comes with significant potential pitfalls that must be carefully managed.

  • Developing and maintaining complex internal systems requires substantial engineering talent and ongoing investment, which could prove costly if not managed effectively.
  • Many companies have previously attempted to build internal systems, only to revert to commercial offerings later after incurring significant expenses.

Broader implications for the enterprise software market: If successful, Klarna’s approach could have far-reaching consequences for the software industry.

  • A new architecture for enterprise software could emerge, centered around data lakes, AI, and bespoke software, potentially disrupting established players in the market.
  • This shift could accelerate the trend of AI-driven productivity gains in software development, with major tech companies already reporting significant improvements in this area.

The evolving data landscape: Changes in the cloud computing and data storage markets are creating a more favorable environment for companies considering Klarna’s approach.

  • Major cloud providers have eliminated data egress fees, while the adoption of standard formats like Iceberg on S3 is contributing to a deflationary environment for data costs.
  • Large-scale users of cloud infrastructure can benefit from significant discounts, further reducing the financial barriers to building and maintaining custom systems.

A paradigm shift in enterprise software: Klarna’s strategy represents a potential turning point in how companies approach their internal software needs, with implications that extend far beyond the fintech sector.

  • If successful, this approach could inspire other companies to reconsider their reliance on off-the-shelf solutions and explore the possibilities of AI-driven custom software.
  • The long-term impact on established enterprise software vendors could be significant, potentially forcing them to adapt their business models and offerings to compete with in-house solutions.
  • However, the success of this strategy will likely depend on factors such as a company’s size, available resources, and specific needs, making it unclear whether this approach will become widespread or remain limited to certain types of organizations.
A Challenge to SaaS Orthodoxy by @ttunguz

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