The Role of Government Initiatives in Accelerating FinTech Growth in Saudi Arabia

Sep 5, 2024

Kholoud Hussein 

 

Saudi Arabia is witnessing a rapid transformation of its financial landscape, largely driven by the government’s commitment to nurturing the FinTech sector. In line with its Vision 2030 agenda, Saudi Arabia has launched several initiatives aimed at accelerating FinTech growth, promoting innovation, and creating a robust, competitive financial ecosystem.

 

Vision 2030 and the FinTech Strategy

 

At the heart of this transformation is Saudi Arabia’s Vision 2030, which aims to diversify the economy and reduce dependence on oil revenues. One of its key pillars is the development of the financial sector, where FinTech plays a pivotal role. The government recognizes the potential of FinTech to enhance financial inclusion, improve efficiency, and foster innovation across various sectors.

 

The Financial Sector Development Program (FSDP), launched under Vision 2030, aims to create an enabling environment for FinTech innovation. This includes modernizing regulations, facilitating partnerships between traditional financial institutions and startups, and supporting the digitalization of financial services. The goal is to increase the share of cashless transactions to 70% by 2030, a move that will be largely powered by FinTech.

 

Regulatory Sandboxes and SAMA’s Role

 

One of the most significant government initiatives is the creation of regulatory sandboxes. Launched by the Saudi Arabian Monetary Authority (SAMA) in 2018, the sandbox allows FinTech startups to test their products and services in a controlled environment, without the full burden of regulatory compliance. This initiative has been crucial in fostering innovation by providing a space for startups to experiment and refine their offerings.

 

SAMA, in collaboration with the Capital Market Authority (CMA), has also introduced new frameworks to regulate crowdfunding, digital payments, and peer-to-peer lending, ensuring that the regulatory environment keeps pace with technological advancements. These efforts not only provide a clear regulatory path for FinTech firms but also build trust with investors and consumers.

 

Supporting Financial Inclusion and Entrepreneurship

 

Another key aspect of Saudi Arabia’s FinTech growth is the government’s focus on financial inclusion. The introduction of digital payment platforms, mobile wallets, and microfinance solutions has brought financial services to underserved populations, particularly in rural areas. Initiatives such as the Saudi FinTech Initiative further support the sector by providing mentorship, funding, and infrastructure to early-stage startups.

 

In conclusion, through strategic initiatives, Saudi Arabia’s government is laying the groundwork for a thriving FinTech ecosystem. By fostering innovation, enhancing financial inclusion, and creating a forward-thinking regulatory framework, the government is accelerating the growth of FinTech, positioning the country as a leading financial hub in the Middle East.

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Arabic-First Startups: When Language Stops Being an Afterthought

Ghada Ismail

 

For years, Arabic speakers learned how to work around technology rather than with it. We typed in Arabic on apps clearly designed for English. We tolerated clumsy translations, broken layouts, and features that only half-worked once the language was switched. Somewhere along the way, adapting became normal.

That normalization is now being challenged.

Across Saudi Arabia and the wider Arab world, a growing number of startups are doing something deceptively simple but strategically powerful: they are building with Arabic in mind from the very beginning. Not as a translation layer.  But as a core product decision.

These companies are part of a quiet but meaningful shift toward what can be described as Arabic-first startups: ventures that treat language as identity, interface, and competitive advantage all at once.

 

A Digitally Active Region With a Lingual Gap

The timing of this shift is not accidental. Digital adoption across the Arab world has reached scale. More than 348 million people in the region are now internet users, representing roughly 70 percent of the population. Social media usage is equally significant, with over 228 million active users engaging daily across platforms.

Yet despite this scale, Arabic remains underrepresented online. While it is one of the most widely spoken languages globally, Arabic accounts for only a small fraction of digital content on the web. The result is a persistent mismatch: millions of Arabic-speaking users navigating a digital world that often does not speak to them fluently.

This gap has long been treated as a content problem. Increasingly, startups are recognizing it as a ‘product problem’.

 

What “Arabic-First” Actually Means

Arabic-first does not mean simply offering an Arabic language toggle. Many global platforms do that. What they rarely do is rethink how products behave once Arabic is selected.

True Arabic-first startups design around the realities of the language itself. That includes right-to-left navigation, typography that respects readability, and interfaces that accommodate longer word structures and contextual phrasing. More importantly, it means building logic, workflows, and AI systems that understand Arabic as a living language that is rich in dialects, nuance, and cultural reference.

In other words, Arabic-first is not about accessibility alone. It is about relevance.

 

AI That Actually Understands Arabic

Few areas expose the weaknesses of surface-level localization as clearly as artificial intelligence. Arabic’s linguistic complexity—its morphology, syntax, and dialect diversity—has historically made it difficult for AI systems trained primarily on English data to perform well.

This is where local startups are finding their edge.

Riyadh-based Wittify.ai is one example. The company builds conversational AI agents designed around Arabic from the ground up. Its platform supports text and voice interactions across more than 25 Arabic dialects, enabling businesses to deploy AI for customer service, onboarding, and internal workflows without forcing users into English or broken translations.

Another Saudi startup, Maqsam, has taken a similar approach in voice automation. Its AI phone bots handle customer service calls entirely in Arabic, accurately transcribing speech, identifying intent, and responding naturally. In sectors like e-commerce, logistics, and financial services—where call centers remain critical—this kind of automation offers scalability without sacrificing familiarity.

These companies are not competing with global AI platforms on size or funding. They are competing on understanding.

 

When Arabic Becomes the Brand

Language choice is not limited to product functionality. It increasingly shows up in branding decisions, an area where Arabic was once sidelined in favor of English names perceived as more “global.”

That mindset is beginning to shift.

A notable example is DEEP.SA, a Saudi AI startup that deliberately incorporates the Arabic word عمق (meaning “depth”) into its logo and identity. The choice is both symbolic and strategic. It reflects the company’s focus on deep technology while anchoring its brand firmly in local language and meaning.

In a market where foreign or English brand names have long dominated, using Arabic as a primary identity signal stands out. It communicates intent: this product is built here, for this market, with local users in mind.

DEEP.SA’s approach aligns with a broader realization among founders that Arabic branding can build trust faster than imported terminology, especially in enterprise, government, and consumer platforms where credibility and clarity matter.

The same logic appears in other regional startups. Abjjad, an Arabic social reading platform, draws its name from the first letters of the Arabic alphabet. Yamli, whose name means “he dictates,” was built specifically to help Arabic speakers search using phonetic input. Tamatem, a mobile game publisher, chose an Arabic name while building a business that localizes global content for Arab audiences.

In each case, the name does more than label the product. It signals who the product is for.

 

Arabic AI Models Enter the Spotlight

If Arabic-first startups represent the application layer, then Arabic-first AI models are the infrastructure making all of this possible.

For years, Arabic developers were forced to build on top of language models trained overwhelmingly on English data. Arabic support existed, but often unevenly strong in Modern Standard Arabic, weaker in dialects, and prone to context errors that made enterprise use risky.

That gap is now starting to close.

One of the most prominent examples is Allam, Saudi Arabia’s Arabic large language model developed under the umbrella of the Saudi Data and Artificial Intelligence Authority (SDAIA). Designed specifically to understand Arabic linguistic structures, cultural references, and regional usage, Allam marks a strategic shift from adapting global AI models to building foundational technology locally.

Unlike multilingual models where Arabic is one language among many, Allam prioritizes Arabic as a primary language. This allows for more accurate comprehension, better contextual responses, and improved handling of formal Arabic as well as regional variations. For startups building products in customer service, legal tech, education, content moderation, or government services, that difference is not marginal; it is rather structural.

The presence of Arabic-native models changes the economics of building Arabic-first products. Startups no longer need to invest disproportionate resources correcting AI errors caused by weak language understanding. Instead, they can focus on product design, user experience, and sector-specific innovation.

Beyond Allam, the broader regional push toward Arabic AI reflects a growing recognition that language sovereignty matters in the age of generative technology. When AI systems shape how people search, learn, transact, and communicate, the languages they truly understand determine who benefits most from digital transformation.

For Arabic-first startups, models like Allam are more than technical milestones. They are enablers, quietly reinforcing the idea that building in Arabic is no longer a compromise, but a competitive advantage.

 

Why This Shift Is Happening Now

This shift toward Arabic-first products is not random. Several changes are happening at the same time.

User expectations have evolved. As people become more digitally savvy, they are less willing to tolerate poorly translated interfaces or awkward Arabic experiences. They expect products to work naturally in their own language.

Technology has also caught up. Recent progress in AI and language models makes it possible to build systems designed for Arabic from the start, instead of adapting tools originally made for English.

Policy direction plays a role too. In Saudi Arabia especially, national digital initiatives are encouraging innovation that reflects local culture and language, not just global standards.

There is also a clear business reason. As markets become more crowded, standing out becomes harder. Using language thoughtfully can create a real competitive advantage, one that is difficult for others to copy.

 

The Challenges Are Still Real

Arabic-first is not an easy path. Building high-quality Arabic language technology requires specialized talent, extensive datasets, and continuous iteration. Dialect diversity adds another layer of complexity that few global platforms are willing to invest in deeply.

There is also a lingering perception among some founders and investors that prioritizing Arabic limits global scalability. Yet many Arabic-first startups argue the opposite: products that solve local problems well are better positioned to expand thoughtfully than those that imitate global models without context.

 

Language as a Product Decision

What Arabic-first startups ultimately demonstrate is that language is not a cosmetic choice. It shapes how products are used, trusted, and adopted.

For decades, Arabic users adapted themselves to technology. Today, technology is beginning to adapt to Arabic. That shift may seem subtle, but its implications are significant.

As the Arab tech ecosystem matures, the startups that stand out may not be those that look the most global, but those that understand their users most deeply. And for hundreds of millions of people, that understanding begins with language.

Not as an afterthought..but as a starting point.

Why AI Infrastructure Is the Next Venture Capital Battleground: Inside Propeller’s Strategy

Shaimaa Ibrahim 

 

Venture capital in the Gulf region, particularly in Saudi Arabia, is experiencing a rapid growth phase driven by the expansion of the digital economy, the rise of innovation ecosystems, and increasing interest in advanced technologies—most notably artificial intelligence and digital infrastructure. As capital flows increase and investment funds multiply, there is a clear shift toward specialized investment models aimed at building companies with global reach, rather than limiting success to local markets.

 

In this context, Propeller stands out as a distinct player in the venture capital landscape, focusing on early-stage infrastructure software companies and connecting top technical talent from the MENA region directly to global markets, with a particular emphasis on the United States. Its cross-border operating model is designed to empower founders to build globally relevant companies from day one, leveraging the region’s deep engineering talent alongside operational expertise from leading global technology hubs.

 

Against this backdrop, Sharikat Mubasher sat down with Zaid Farekh, founder of Propeller, to discuss his vision for the future of venture capital, his experience supporting technical founders, and his assessment of AI and infrastructure opportunities in Saudi Arabia and the broader region.

 

What is Propeller’s strategic vision, and how does it stand out from other venture capital firms in the region?

 

Propeller’s strategic vision is to become the leading early-stage platform for infrastructure software founders emerging from MENA by providing them with direct, early access to global—particularly U.S.—markets.

 

Propeller focuses exclusively on pre-seed and seed-stage infrastructure software, backing highly technical founders and helping them validate, sell, and iterate with real U.S. customers—especially in Silicon Valley—much earlier than would otherwise be possible.

 

What differentiates Propeller is its deliberate focus and cross-border operating model. Rather than being a generalist regional fund, Propeller concentrates on a narrow, technically demanding category and actively bridges two ecosystems: MENA’s deep engineering talent and the world’s most advanced infrastructure buyers and partners in the United States. This approach allows founders to shorten the path to product–market fit, build globally relevant companies from day one, and access follow-on capital more effectively.

 

How would you describe the current venture capital landscape in the GCC, and what is required to elevate the region’s entrepreneurial ecosystem to a global standard?

 

We’ve been excited to see the venture landscape maturing in the GCC over the past few years, but we still believe there’s a long way to go. We ultimately believe that the best way to elevate the region’s entrepreneurial ecosystem is to bring its best founders to the global stage so they can learn from and compete with a high density of other founders of a similar calibre. We see this trend happening across the world, not just the Middle East. Great founders from Europe, South America and elsewhere spend time in Silicon Valley or New York, but invariably end up having a huge impact on their local, ‘home’ ecosystems as well, whether by returning themselves to continue to build their startup, by hiring local talent remotely or building an in-region office, by angel investing in the home market’s newest founders, or simply by inspiring a new generation of founders. 

 

What criteria are most important when evaluating startups, and how does Propeller help founders overcome funding and growth challenges?

 

Propeller focuses on pre-seed and seed-stage infrastructure software startups, investing checks between $500,000 and $3M. It prioritizes founders building for global gaps (not only regional needs) and sees opportunity across multiple layers of the AI stack, from hardware-adjacent enablement to infrastructure, platforms, and applications with defensible infrastructure moats.

 

Can you provide an overview of Propeller’s current funds, including their strategic focus and sector priorities?

 

Fund I was a test vehicle of approximately $2M launched in 2017. Fund II was approximately $13M launched in 2021. Fund III is a $50M fund focused on pre-seed and seed-stage infrastructure software startups, with emphasis on AI infrastructure and AI-native software across MENA and the U.S.

 

What motivated the launch of Propeller’s $50 million third fund, and why focus specifically on horizontal AI infrastructure?

 

The adoption of artificial intelligence will be the single largest driver of enterprise and economic value over the next decade. Startups are being launched today and in the coming years to meet the enormous infrastructure demands this adoption will create, quickly propelling the best ones into large, category-defining companies

 

We believe infrastructure is the ultimate multiplier of value in AI. Strong infrastructure enables vertical applications and horizontal platforms to scale faster, cheaper, and more securely.


At the same time, the most enduring applications and platforms will be those that sit on top of proprietary or defensible infrastructure, creating moats that go beyond user interfaces or data wrappers.

 

To date, how many startups has Propeller invested in, across which regions, and what tangible impact have these investments had on the regional innovation ecosystem?

 

Propeller has backed 30+ startups across its first two funds and has 6 active investments in Fund III. Propeller is present across MENA and the U.S., specifically in Riyadh, Amman, Boston, and Silicon Valley.

 

How do you assess venture capital opportunities in Saudi Arabia, particularly in the AI sector?

 

We assess opportunities in Saudi the same way we assess opportunities everywhere - does the founder have a severe conviction in a unique version of the future? Are they building infrastructure & apps because they love building? And are they thinking Global from day one?

 

We assess venture opportunities in Saudi Arabia through a fundamentals-first lens, with additional scrutiny specific to the AI sector.

 

In AI specifically, we look beyond model novelty and focus on structural advantages, such as access to proprietary data, deep integration into workflows, or infrastructure-level positioning that is difficult to replicate. We are cautious around pure “wrapper” businesses and place greater emphasis on companies that own a critical layer of the stack or have defensible deployment advantages.

 

We have long-standing experience building and selling technology in Saudi Arabia and view it as a strong, sophisticated market for AI adoption. At the same time, we do not see Saudi Arabia as the only market. We assess whether companies can win locally on commercial merit and then expand beyond the Kingdom over time, rather than being structurally dependent on a single geography or policy tailwinds.

 

Finally, we evaluate alignment with Saudi Arabia’s long-term priorities, such as digital infrastructure and AI enablement without relying on policy tailwinds alone. Our goal is to back companies that can succeed on commercial merit, with or without local incentives, and scale globally over time.

 

What are Propeller’s plans for expansion, and are there initiatives to establish new regional or international partnerships?

 

Our team members are already present in Silicon Valley, Boston, Amman, and Riyadh and we have close relationships with follow-on investors and experienced operators in those markets

 

In your view, which sectors or types of companies are best positioned for significant growth in the coming years, especially in AI and technology infrastructure?

 

We believe exciting new companies will be built at all layers of the software stack:

  1. Application Layer – Vertical AI applications that win with infrastructure moats, not just data wrappers.
  2. Platform Layer – Horizontal AI platforms that standardize workflows across industries.
  3. Infrastructure Layer – Tools that abstract complexity and make AI usable, secure, and scalable.
  4. Hardware-Software Convergence – Silicon-adjacent software bridging models and metal, optimizing performance and efficiency. 

More than companies, we invest in people. We believe that the founders who will build these companies will:

  1. Have a severe conviction in a unique version of the future
  2. Build infrastructure & apps because they love building 
  3. Think global from day one
  4. Attract and inspire early employees and supporters.
  5. Have the persistence to run through walls, the flexibility to change course, and the judgement to know when to do each.
  6. Lead from the front by building, not just directing.
  7. Build with responsibility, aware of the scale and impact of the infrastructure they create.
  8. Nurture a community around their vision. Creating movements not just companies.

 

How Saudi Arabia bets its future on quantum computing

Noha Gad

 

The world is in a race to master quantum computing — a technology based on the principles of quantum physics with the potential to reshape industries, security, and science. Unlike current computers, which rely on simple binary bits, quantum computers use quantum bits, or qubits, that can exist in multiple states simultaneously and can be profoundly interconnected. This potential enables them to tackle complex challenges in areas such as medicine, materials science, and logistics at speeds higher than today's most advanced supercomputers.

By harnessing the principles of quantum mechanics, this emerging field offers time- and energy-efficient computational power, secure communication, and precise sensing capabilities. The quantum economy is poised to generate immense value through the application of quantum technologies across various sectors. 

Saudi Arabia acknowledges the revolutionary impact of quantum technology and is strategically positioning itself to become a global leader in this domain. This emerging field is not a distant concept but a strategic priority aligned with Vision 2030. The Kingdom is actively building its own quantum landscape, transforming ambition into structured national action. This move is a clear step to diversify its technological capabilities and cultivate homegrown scientific talent for the post-oil era. 

According to a report released by the Centre for the Fourth Industrial Revolution in Saudi Arabia (C4IR Saudi Arabia), quantum technology can drive innovation across multiple sectors, creating new industries and economic growth. In the healthcare industry, quantum sensors could revolutionize medical sectors, leading to more accurate and less invasive diagnostic tools. Additionally, very high precision in material characterization leads to the development of new materials and improves quality control in industry and manufacturing sectors. This technology can also revolutionize financial services and enhance risk management by improving the accuracy and speed of risk analysis. This could transform areas like portfolio optimization, fraud detection, and pricing of complex financial instruments.

When deployed in the logistics sector, quantum computing can improve route optimization for logistics companies, ultimately reducing fuel consumption, delivery times, and costs.

On the other side, these technologies have vast and multifaceted societal impacts, encompassing ethical, legal, economic, educational, and cultural dimensions. They are expected to transform how societies operate, how economies function, and how individuals interact with technology and each other.

 

Potentials and challenges

Saudi Arabia has significant opportunities to establish itself as a key player in the quantum technology race and become a regional quantum hub that attracts talent and investment and fosters collaboration. 

Various stakeholders play a crucial role in advancing quantum technology in the Kingdom and enhancing short-term educational initiatives aimed at rapidly building and strengthening the quantum talent pool. For instance, King Abdullah University of Science and Technology (KAUST) and King Abdulaziz City for Science and Technology (KACST) established dedicated research centers and designed undergraduate and graduate curricula focused on quantum technology. They also contribute through specialized programs, professional training courses, and collaborations with industry and government entities. 

Prominent organizations such as the National Information Technology Academy (NITA) and the Saudi Federation for Cyber Security and Programming, through TUWAIQ Academy, actively contribute to workforce development through internships, specialized training, and skill transition programs. King Fahd University for Petroleum and Minerals (KFUPM), in collaboration with Aramco, has established a Quantum Chair Professor program to foster research, education, and innovation in Quantum technologies. 

Partnerships with local and international partners also play a fundamental role in advancing the quantum computing industry and creating innovation hubs in the Kingdom. These collaborations bring expertise, technology, and resources to the Kingdom, accelerating the development and commercialization of quantum technologies. 

Aramco recently deployed the first quantum computer in Saudi Arabia, and the region’s first quantum computer dedicated to industrial applications, in partnership with Pasqal, a global leader in neutral-atom quantum computing. Deployed at Aramco’s data center in Dammam and powered by neutral-atom technology, this quantum computing is expected to significantly build regional expertise and accelerate the development of quantum applications across the energy, materials, and industrial sectors in the Kingdom and the broader Middle East. Pasqal’s system can control 200 qubits arranged in programmable two-dimensional arrays, offering a platform suitable for exploring advanced quantum algorithms and real-world use cases relevant to industrial operations.

The Saudi Telecom Company (stc), one of the leading enablers of digital transformation, recently expanded its collaboration with IBM to establish a quantum-safe framework designed to proactively identify and mitigate cryptographic risks, ensuring readiness for a time when large-scale quantum computing could challenge existing encryption systems safeguarding sensitive data. 

Although Saudi Arabia has various potentials to lead the quantum computing industry regionally and globally, it faces several challenges in this domain, notably a talent shortage. The limited number of quantum scientists and engineers compared to global leaders creates a substantial obstacle to rapid advancement, compounded by a scarcity of specialized quantum laboratories, hindering crucial research and development efforts. The quantum industry in the Kingdom is still in its infancy, with few commercial applications, making it difficult to attract investment and create a thriving ecosystem.

In conclusion, Saudi Arabia has laid an impressive and strategic foundation for its quantum future, moving decisively from ambition to action and aligning national vision with institutional power, industrial need, and educational reform. Its unique advantage lies in applying quantum computing to its own industrial sectors, creating a tangible testbed for innovation. However, the Kingdom’s success will ultimately be measured by its ability to transition from foundational projects and protected pilot cases to a vibrant, open, and innovative ecosystem that attracts global talent, fosters indigenous entrepreneurship, and produces groundbreaking intellectual property. By navigating the challenges of talent cultivation, ecosystem diversification, and sustained investment, Saudi Arabia will be positioned not only to adopt quantum technology but to actively shape its development and secure an influential role in the coming quantum-powered era.

Why Startups Need Revenue Engineering, Not Just Sales

Ghada Ismail

 

For many startups, revenue growth is treated as a numbers game: more leads, more sales calls, more discounts. But as markets tighten and investors become more selective, this approach is proving fragile. Revenue engineering offers a structured alternative, one that treats revenue as a system to be designed, tested, and optimized, not just chased.

Instead of asking “How do we sell more?”, revenue engineering asks: “How does our product, pricing, and customer journey work together to generate sustainable, predictable revenue?” In other words, it’s not just about closing deals, but rather about designing a revenue machine that grows with your business.

 

What Is Revenue Engineering?

Revenue engineering is the deliberate design of a startup’s revenue model. It connects pricing, product design, customer behavior, and distribution channels into a coherent system aimed at predictable, scalable, and sustainable income.

Unlike traditional sales-led approaches that focus on pushing transactions, revenue engineering looks at the full picture: how pricing structures influence adoption, how product packaging drives upgrades, and how retention strategies affect lifetime value. For startups, applying this mindset early can prevent common pitfalls that are expensive or impossible to fix later.

 

Why Startups Should Care Early

Early-stage startups often make revenue mistakes that seem minor but have long-term consequences. Misaligned pricing, confusing product tiers, or poorly defined customer segments can lead to low margins, high churn, and dependence on discounts to close deals. Investors are increasingly looking beyond top-line growth, as they want proof that your revenue model is solid and scalable.

Revenue engineering addresses these challenges by creating a system that naturally drives predictable results.

 

Core Pillars of Revenue Engineering

  1. Pricing Architecture
    Startups need to choose pricing models that reflect both market realities and product value. Subscriptions, usage-based pricing, freemium, or enterprise contracts each work differently and must evolve as the business grows. Testing pricing early is crucial to avoid missed revenue opportunities.
  2. Product Packaging
    Deciding which features are free, paid, or premium isn’t just a marketing decision; it directly affects revenue. Proper packaging guides customer behavior, incentivizes upgrades, and ensures that your most valuable features generate the right return.
  3. Customer Segmentation
    Not all customers are the same, and revenue engineering ensures that offers align with willingness to pay. Segmenting customers by behavior, value, or needs allows startups to tailor pricing, upsells, and communication effectively.
  4. Sales & Distribution Logic
    Startups must choose how to reach customers efficiently. Self-serve, inside sales, enterprise teams, or channel partners each have pros and cons. Revenue engineering ensures the distribution strategy supports scalable revenue rather than just immediate wins.
  5. Retention & Expansion Mechanics
    Sustainable growth doesn’t rely only on new customers. Revenue engineering plans for upsells, cross-sells, and renewals from the start, ensuring long-term value from each client.

 

Common Mistakes Startups Make

Many early-stage startups fail at revenue engineering without even realizing it. Common errors include:

  • Copying competitors’ pricing without understanding unit economics
  • Over-discounting to close early deals
  • Building features that don’t unlock higher-paying tiers
  • Treating churn as a customer problem, instead of a signal of flawed revenue design

Recognizing these pitfalls early can save a startup from costly missteps.

 

Revenue Engineering vs. Sales-Driven Growth

Revenue engineering does not eliminate the need for sales; it actually strengthens it. Even the best sales teams struggle when the underlying revenue model is unclear or poorly designed. By building the revenue system first, startups give sales teams clear pricing, defined margins, and repeatable processes. The goal is to create a revenue machine that supports sales efforts, rather than depending entirely on aggressive sales activity to drive growth.

 

To Wrap Things Up..

Revenue engineering is less about spreadsheets and more about intentional design. For startups, it’s the difference between reacting to revenue pressure and creating a business that earns sustainably. By aligning pricing, product, customer behavior, and distribution from the start, founders can build a revenue system that grows with the company.

In an era where growth-at-all-costs is no longer sustainable, startups that engineer their revenue carefully—rather than simply chasing sales—are the ones that will survive, scale, and thrive.

How AI-First models foster startup growth and sustainability

Noha Gad

 

In an era where technological disruption accelerates at remarkable speeds, businesses worldwide are at a crossroads: adapt or fail. Artificial intelligence (AI) emerged as a transformative force reshaping the future of industries, economies, and daily operations.

AI-first business models redefine the way companies operate, compete, and scale by embedding AI at the core of their DNA rather than as a helping tool. These models treat AI as the foundational engine driving innovation, decision-making, and customer value in key sectors such as fintech and startups. Traditional businesses often integrate AI into outdated processes, yielding marginal gains, while AI-first pioneers redesign everything around intelligent systems for exponential advantages. This shift enables hyper-personalization, predictive analytics, and autonomous operations that thrive on data abundance.

 

How do AI-first business models work?

AI-first business models embed AI as the core engine for operations, decision-making, and growth, enabling radical automation, hyper-personalization, real-time insights, and scalable efficiency through autonomous agents and data-driven feedback loops, fundamentally redesigning organizational structures and workflows around intelligent systems rather than just adding AI as a feature. 

Unlike traditional AI-enhanced approaches, these models reimagine processes from the ground up, prioritizing data flows, automation, and machine learning as core infrastructure to ensure seamless scalability and adaptability in fast-evolving markets. 

Compared to AI-augmented models, AI-first models make intelligence proactive and pervasive, influencing every layer from product development to customer engagement. These approaches treat data as the primary asset for real-time analytics and predictive capabilities, fostering continuous learning loops without heavy human intervention.

 

Main features 

AI-first business models are defined by characteristics that prioritize intelligence as the central pillar, enabling unprecedented efficiency, adaptability, and value creation across operations. Key features include:

  • Automation. AI handles end-to-end workflows autonomously, from transaction processing to compliance checks, reducing human involvement in major processes. For instance, in wealth management, AI-first platforms dynamically rebalance portfolios based on real-time market data and user life events.
  • Data-based decisions. Real-time analytics from vast datasets power predictive insights, replacing intuition with probability-based forecasting for agile market responses.
  • Hyper-personalization. AI-first models can help companies and startups provide tailored experiences by analyzing individual behaviors, preferences, and contexts to anticipate needs proactively. For example, banking applications deploy conversational AI agents to answer queries and execute actions, such as freezing cards or updating addresses via biometrics, enhancing user trust and retention.
  • Scalable infrastructure: Cloud-native AI supports rapid growth and continuous model refinement.

 

How AI-first models could support startups’ businesses

Along with enhancing decision-making processes and providing hyper-personalized products, AI-first models help startups enhance operational efficiency and reduce costs by automating repetitive tasks, such as customer support via chatbots or inventory optimization. AI-first startups command investor attention due to their proven scalability, data moats, and rapid revenue trajectories. This advantage arises from AI's ability to demonstrate measurable revenue on investment (ROI) quickly, such as predictive models forecasting user acquisition costs.

For product innovation, accelerated prototyping via AI tools eliminates time-to-market from months to weeks and allows startups to test minimum viable products (MVPs) with real user data. AI-first models can also contribute to talent and team optimization since AI handles hiring screening, skill matching, and performance analytics.

AI-first startups can improve their risk mitigation strategies by utilizing AI to forecast market risks, regulatory hurdles, or supply disruptions early.

In summary, the rise of AI-first business models represents a fundamental architectural shift, not a mere technological upgrade. It transforms AI from a tool that supports business into the foundational engine that defines it. For startups and established companies alike, this approach unlocks exponential advantages through radical automation, hyper-personalization, and predictive, data-driven decision-making.