AI that improves itself: what changes for B2B SMEs
In May 2026, Richard Socher—founder of Salesforce AI—announced a $650 million startup. The goal is to build an artificial intelligence system capable of researching and improving itself indefinitely. Furthermore, the project includes the concrete development of commercial products, not just academic research.
However, for Italian B2B SMEs, this scenario is not distant science fiction. Consequently, it's necessary to start thinking about the operational implications today. Self-improving systems could automate complex processes, reduce the marginal cost of automation, and accelerate product development cycles. Conversely, they introduce new risks: unpredictability of behaviors, audit difficulties, and technological dependence on a few major players.
In this article, we at SHM Studio Let's analyze the Socher project's timeline, the subjects who will benefit most, and the concrete implications for medium-sized Italian companies. Finally, we propose a strategic reading for those who want to position themselves correctly in the next phase of intelligent automation.
The Timeline: From Salesforce AI to $650 Million for Self-Building AI
Richard Socher is not a new name in the artificial intelligence landscape. In the past, he led Salesforce's AI division and founded you.com, a search engine based on language models. In May 2026, however, it took a significant leap in scale. Its new startup raised $650 million with a stated goal: to build an AI system capable of to self-research and self-improve indefinitely.
According to reports by TechCrunch, Socher insists on a crucial point. The project is not purely academic. Therefore, the company intends to release concrete commercial products, thus distinguishing itself from the foundational research of OpenAI or DeepMind in their early stages.
This detail is relevant. In fact, the gap between frontier research and business applications is rapidly narrowing. Consequently, B2B SMEs can no longer afford to observe these developments from a distance.
Who wins and who is at risk: a no-holds-barred look
Self-improving AI systems — also known as recursive self-improvement systems represent a distinct category compared to current generative models. Instead of being trained once and then deployed, these systems modify their parameters or architecture in response to new data and objectives.
Among the main beneficiaries of this technology are, first and foremost, large enterprises with mature data infrastructures. They can leverage self-optimizing systems to continuously reduce operating costs. Furthermore, technology vendors that integrate these capabilities into their SaaS products will gain a structural competitive advantage.
Conversely, SMEs that depend on single suppliers risk finding themselves in a position of technological dependence. In fact, if the system managing their processes evolves autonomously, operational control shifts progressively towards the vendor. This is a concrete, not hypothetical, risk.
Similarly, there are compliance risks. Self-modifying systems are difficult to audit. Therefore, in regulated contexts—such as finance, healthcare, or logistics—they could create friction with regulations like the European AI Act.
SHM Studio's Reading: Between Enthusiasm and Pragmatism
We of SHM Studio We have been following the evolution of AI systems applied to SMEs for several years. Our position on this news is nuanced.
On the one hand, Socher's announcement confirms a direction that was already visible. Current generative models show capabilities of in-context learning increasingly sophisticated. Therefore, the shift towards systems capable of structural self-improvement is a logical progression, not an abrupt quantum leap.
On the other hand, however, the distance between a 650 million announcement and a usable product for a manufacturing SME in Brescia or a B2B distributor in Turin remains considerable. Therefore, the operational advice is not to wait for this technology to start your digital transformation. On the contrary, it is exactly the opposite.
Companies that build a solid data foundation, digitized processes, and internal AI expertise today will be best positioned to adopt self-improving systems when they become available on the market. For this reason, investment in AI solutions applicable today it is not in contradiction with preparing for the future—it is its precondition.
Three concrete scenarios for Italian B2B SMEs
It is useful to translate this scenario into realistic use cases. Below are three contexts in which self-improving systems could impact Italian B2B SMEs in the next 24-36 months.
- Adaptive commercial automation CRM systems that autonomously optimize outreach sequences based on response rates, without human intervention. This continuously reduces the cost per qualified lead. LinkedIn campaign could benefit from self-calibrating AI layers.
- SEO and self-optimizing content: editorial platforms that rewrite content autonomously based on ranking signals. Therefore, the role of the Strategic copywriting moves towards editorial supervision and objective setting.
- Paid Campaign Management systems that reallocate budgets between channels in real-time, optimizing not only individual campaigns but the entire media architecture. This directly impacts the management of Google Ads campaigns and channel mixes.
In all three cases, the value is not in the automation itself. In fact, the real value lies in the company's ability to define clear objectives, monitor results, and correct course. Therefore, human skills do not disappear; they shift to more strategic levels.
The construction site is still open: what's missing before mass adoption
Despite investor enthusiasm, significant technical and regulatory hurdles exist. First and foremost, self-improving systems require enormous computational infrastructures. This makes them, at least initially, accessible only to large organizations or via specialized vendor APIs.
Secondly, the question of interpretability remains unresolved. As MIT Technology Review has documented, current models are already difficult to audit. A system that modifies itself adds another layer of opacity. Therefore, compliance with the European AI Act—which requires transparency and traceability—becomes a technical challenge even before it is a legal one.
Finally, there's the issue of organizational trust. Italian SMEs, historically, adopt new technologies cautiously. Therefore, even when these systems are technically available, the adoption cycle will be longer compared to Anglo-Saxon markets. This is not necessarily a disadvantage: it allows for observing others' failures before investing.
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