

Low-code platforms are transforming how businesses implement machine learning (ML). By simplifying complex processes, they make it easier to create real-time workflows that process data streams and deliver actionable insights. With IT skill shortages expected to affect 90% of organizations by 2026, tools like Latenode, OutSystems, and Microsoft Power Automate are helping teams save time and cut costs - by as much as 70% - while reducing development timelines by up to 90%. These platforms enable organizations to connect ML models with business systems, offering practical solutions for fraud detection, customer sentiment analysis, and more. Let’s explore how they work and which one fits your needs.
Latenode is a platform that blends visual design with machine learning (ML) capabilities, granting users access to more than 200 AI models within a unified environment. Below, we’ll explore how Latenode addresses real-time ML requirements through its standout features.
Latenode simplifies real-time data processing through its visual workflow builder, which also supports JavaScript for custom logic. By integrating directly with top AI models, developers can create intricate ML workflows without the hassle of juggling multiple tools.
Instead of charging per task, Latenode uses an execution-based pricing model. This approach starts with 300 execution credits per month on the free tier, helping organizations manage and predict ML costs more effectively. Additionally, Latenode supports over one million NPM packages, allowing developers to integrate specialized ML libraries or custom algorithms. This flexibility is especially useful for combining pre-trained models with tailored data processing workflows.
With connections to over 300 applications and services, Latenode offers extensive possibilities for constructing ML data pipelines. Its integrations cover tools for data management, documentation, and payments, ensuring smooth connectivity. Webhook triggers make it possible to respond instantly to external events, which is ideal for real-time scenarios like fraud detection, recommendation systems, or automated content moderation.
The platform also includes a built-in database, enabling teams to store and query structured data directly. This feature is particularly handy for managing training datasets, tracking model performance, or maintaining interaction logs.
Latenode is designed to scale for enterprise-level demands. Self-hosting options ensure organizations retain full control over their data, meeting compliance needs in fields like healthcare, finance, and government. Self-hosted setups maintain all platform functionalities while safeguarding data sovereignty.
For enterprises, Latenode supports up to 150 parallel executions, allowing for high-volume ML processing in real-time applications. Unlimited scenario time limits on enterprise plans make it possible to execute complex, long-running ML workflows. Moreover, the platform provides tools like execution history and scenario re-run functionality, which are crucial for debugging and workflow optimization. Enterprise users also gain access to execution logs, retained for up to 60 days, to track data flows, identify bottlenecks, and improve model performance.
Latenode’s pricing emphasizes efficiency, focusing on execution credits rather than user count or task volume. The Start plan, priced at $19 per month, includes 5,000 execution credits and supports up to 10 active workflows. For teams handling moderate ML workloads, the Team plan offers 25,000 credits and 40 workflows for $59 per month.
For larger needs, the Enterprise plan starts at $299 per month and comes with custom credit allocations, unlimited scenario time limits, and priority support. This plan also reduces the minimum execution charge for short tasks - executions under three seconds cost just 0.1 credit - making it cost-effective for high-frequency ML operations. Predictable overage charges, such as the ability to add up to 150,000 extra credits on the Team plan, ensure flexibility during peak periods or unexpected workload surges without service disruptions.
OutSystems is a low-code platform designed for enterprise use, now enhanced with machine learning capabilities. It integrates ML models using REST APIs and custom code, offering visual tools to manage basic ML tasks. However, setting up real-time workflows often requires additional configuration.
The platform connects seamlessly with a variety of enterprise systems and databases. For machine learning applications, it typically uses web service connections to external AI providers. While this approach provides flexibility, it often requires more development effort to implement effectively.
OutSystems offers both cloud and on-premises deployment options, accommodating data sovereignty and compliance requirements. However, its scalability and licensing structure necessitate careful planning, especially when handling intensive real-time ML workloads. The next section will explore the strengths and limitations of these platforms in greater detail.
Microsoft Power Automate combines workflow automation with machine learning through its AI Builder, making it possible to implement intelligent processes without requiring deep expertise in data science.
Power Automate enables workflows to make immediate, data-driven decisions through real-time prediction capabilities. The AI Builder offers both prebuilt and customizable models, supporting tasks like predictive analytics, sentiment analysis, image and text recognition, and automated decision-making. These features allow workflows to adapt dynamically as new data becomes available.
For example, users can leverage AI Builder to analyze customer sentiment, classify text into specific categories, detect languages automatically, or extract key details from documents. It even supports GPT-powered text generation, enabling workflows to create dynamic content based on user-defined prompts. These machine learning tools are seamlessly integrated into Power Automate's broader automation ecosystem, enhancing its usability and flexibility.
Power Automate’s document processing capabilities are tailored for various use cases, such as extracting data from business cards, invoices, receipts, and identity documents. Each document type has a specialized extraction model to ensure accuracy. Additionally, text processing tasks like language detection, entity extraction, and text classification can be achieved using either built-in models or custom-trained ones. These features make Power Automate suitable for both small-scale tasks and enterprise-level implementations.
Built on Microsoft's enterprise-grade infrastructure, Power Automate is designed to handle large-scale machine learning workflows. Its integration with Microsoft's compliance framework ensures that workflows meet regulatory standards, providing a secure environment for managing sensitive data.
Power Automate uses a usage-based pricing model, with specific rates detailed in the Microsoft Power Platform Licensing Guide. This transparent approach allows organizations to plan their machine learning automation investments effectively, paying only for the features they need. By eliminating the need for extensive technical expertise, Microsoft Power Automate opens the door for non-technical users to create advanced machine learning workflows with ease.
When choosing a platform, it's essential to weigh their strengths and limitations against your team's specific needs. This comparison highlights how well each platform supports real-time machine learning (ML) processing and integrates AI capabilities seamlessly. Here's a closer look at the core features of Latenode, OutSystems, and Microsoft Power Automate.
Latenode stands out with its adaptable workflows that combine visual tools and coding options. It offers over 300 integrations, support for NPM packages, and execution-based pricing starting at $19/month. However, its advanced functionality may require users to have a stronger technical background to fully leverage its potential.
OutSystems caters to large-scale enterprise applications, offering a robust visual development environment and extensive tools for complex needs. That said, its pricing model and focus on full-scale app development might not be the best match for teams that are solely focused on real-time ML workflow automation.
Microsoft Power Automate is deeply integrated with the Microsoft ecosystem, featuring tools like AI Builder, which includes prebuilt models for tasks such as document processing and sentiment analysis. This makes it particularly appealing for teams already using Microsoft services. However, its emphasis on visual workflows may limit flexibility for highly technical or custom implementations.
Feature | Latenode | OutSystems | Microsoft Power Automate |
---|---|---|---|
Real-Time ML | Strong ML and code support | ML integration available | AI Builder with prebuilt models |
Integration Options | 300+ integrations, NPM support | Robust API integrations | Microsoft ecosystem connectors |
Scalability | Self-hosting available | Enterprise scalability | Microsoft cloud infrastructure |
Pricing Model | Execution-based ($19/month) | Enterprise pricing | Usage-based |
Technical Flexibility | High (visual & code) | High for enterprises | Medium, focused on visuals |
Learning Curve | Moderate | Steeper | Low to moderate |
The ideal platform depends on your team's technical expertise, existing tools, and budget. For those already invested in Microsoft's ecosystem, Microsoft Power Automate offers seamless integration. However, if you're looking for a balance of coding flexibility and visual simplicity, Latenode could be the better choice, especially for real-time ML workflows. Meanwhile, OutSystems is well-suited for enterprises tackling large-scale, complex projects.
Examining low-code platforms for real-time machine learning workflows reveals distinct strengths and target audiences for each option. Latenode distinguishes itself with its user-friendly visual interface, coding flexibility, and AI-focused design. Its execution-based pricing and self-hosting capabilities make it a strong choice for growing teams that need advanced automation while maintaining full control over their data.
For small teams and startups, Latenode offers an affordable way to achieve sophisticated ML automation. Its scalable pricing and wide range of integrations allow teams with limited resources to build production-ready solutions efficiently. The platform’s combination of drag-and-drop workflows and custom JavaScript support ensures flexibility without overwhelming complexity. On the other hand, other platforms cater to specific enterprise needs and ecosystems.
OutSystems is ideal for large enterprises that prioritize governance, compliance, and robust security features.
Microsoft Power Automate is well-suited for organizations already embedded in the Microsoft ecosystem, offering seamless compatibility with existing tools.
Ultimately, the right platform depends on your team’s technical expertise, tools, and organizational goals. Teams prioritizing data ownership may lean toward self-hosting options, while those looking for rapid deployment could benefit from cloud-native platforms with extensive prebuilt connectors.
The key to success lies in selecting a platform that aligns with your current needs while offering the flexibility to adapt as your requirements grow.
Low-code platforms such as Latenode address the challenges posed by IT skill shortages by streamlining the creation of sophisticated workflows and automations. Through user-friendly, visual drag-and-drop interfaces and ready-made components, these tools empower team members without advanced coding expertise to actively participate in development processes.
This approach opens up development opportunities to a broader range of users, speeding up digital transformation efforts and lessening the dependency on highly specialized developers. As a result, businesses can complete projects more quickly and allocate resources more efficiently, effectively bridging the gap in IT talent.
Execution-based pricing on Latenode offers a straightforward way to manage costs by charging based on actual usage, such as the number of workflow executions or their duration. This approach eliminates the risk of paying for unused capacity, making it a practical and cost-conscious alternative to fixed pricing models.
Additionally, this pricing structure supports scalable adaptability, enabling your operations to adjust effortlessly to real-time demands. Whether your workload surges or slows down, you’ll only pay for the resources you actively use, ensuring your organization remains agile and prepared for shifting needs.
Latenode places a strong emphasis on data security and privacy, employing advanced encryption techniques, stringent access controls, and reliable authentication protocols. The platform is fully aligned with major regulations like GDPR, ensuring that your data is handled with the utmost care and confidentiality.
For businesses with specialized requirements, Latenode provides options like self-hosting, allowing complete control over data storage and management. Additionally, its scalable security features are tailored to safeguard sensitive information, making it an excellent solution for creating secure, enterprise-level machine learning workflows.