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The 12 best no-code tools

no-code tools

Estimated reading time: 12 minutes

Have you ever had contact with No Code tools? If you've never heard of it, know that this article could change the way you work!

Surely you know what apps are, right? Have you ever thought about having one made exclusively for you and even made by you? Well, this is possible with no-code technologies

Perhaps you are doubting this information because you have no affinity with programming languages, but the truth is that there is no need to know how to program or write a line of code. You will understand everything better right now! 

No Code Tools: what they are 

Before knowing the best No Code tools available on the market, it is necessary to better understand the actual what is No Code.

The translation of the term already says a lot, as No Code means “without code”, which is exactly what it is about.

No Code technology allows anyone to achieve program, but without needing lines of code. In other words, you don't need to know languages like Javascript, C, C++, Python or any other coding language. 

And how does it happen? There are the No Code tools, where you will be able to create apps and softwares from a visual programming, through blocks and development of action flows in a simple way. 

The tools use very visual methods so that you can perform complex operations by dragging some blocks, for example. 

What are the 12 Best no-code Tools 

Now, finally, let's get to know some of the No Code tools🇧🇷 There are specific tools for each area of development and here we will segment them into:

  1. website creation
  2. Web application development
  3. Mobile application development
  4. Database Development
  5. Automations

Website Creation no-code

webflow

tool in code Webflow
The 12 best tools in code 13

Webflow is one of the most intuitive platforms, being ideal for those who want to create websites with a high-level design and professional structure. 

O webflow it's a platform no-code that allows the creation of websites, allowing its developer to create his website in the smallest details and easily. 

The tool webflow allows its user to modify and customize their website in the easiest possible way, almost like “click and drag”, leaving it with their personality without any difficulty.

The tool has been gaining a lot of space in the market, being very well evaluated by professional designers.

wordpress

tool in WordPress code
The 12 best tools in code 14

One of the oldest and most used no-code tools is WordPress. Suitable for those who want to go beyond static pages, creating complete projects such as an e-commerce site or a booking site.

To create websites with this tool, you can use various plugins that will support you throughout the development. However, you may be limited to existing plugins for your projects.

Web Application Development

Bubble

tool in code bubble
The 12 best tools in code 15

Bubble is one of the most well-known tools in the no-code universe. With her domain, it is possible to create robust and customized applications and softwares.

A big differential of Bubble is that in addition to enabling complex functions and powerful API integrations, the tool has an integrated database for building projects. 

Although bubble creates responsive systems to be used in the mobile browser, the tool is not suitable for creating native applications  

Bubble is recommended in the development of management systems, marketplaces and SaaS. Meet our free bubble course and start creating apps right now with these tools

Bildr

tool in Bildr code
The 12 best tools in code 16

This tool, like Bubble, is ideal for creating robust systems, with complete logic, which will be responsive on mobile phones.

However, BildR's focus is on creating projects in the web3 and blockchain world, such as creating e-commerces for NFTs, dApps and crypto games. 

Soft

tool in code software
The 12 best tools in code 17

Also a powerful tool that has been gaining more and more space in the no-code ecosystem.

Because it is simpler than Bubble, it gains fans due to the lower learning curve to create simpler applications. 

However, with simplicity, there may also be some limitations that you should be aware of for your projects.

No Code App Development

AppGyver

tool in AppGyver code
The 12 best tools in code 18

We can say that it is the pioneer in professional technology platform no code. Its biggest differential is the simplicity when building, in addition to a very professional format. 

With its focus on mobile development, it allows the creation of native apps for the Play Store and App Store, with offline functionality.

No-Code Start-Up has a free AppGyver course and very complete, so you can take your first steps with this powerful tool.

FlutterFlow

tool in FlutterFlow code
The 12 best tools in code 19

With a slightly higher learning curve, FlutterFlow allows the creation of complex molile apps and with a great differential in giving access to the code.

Flutter FlowFlutterFlow is aimed at iOS and Android development and has recently released its version for web applications as well. 

Due to the high range of templates, it allows starting projects already with an advanced UI. 

glide

tool in code glide
The 12 best tools in code 20

Glide is a platform integrated with Google spreadsheets, so you can create a app from the data in your spreadsheet in a very simple way.

It is perfect for simple apps, which will have the spreadsheet itself as a database, but it may have its limitations for more complex applications.

Database and backend development in code

Xano

tool in Xano code
The 12 best tools in code 21

Xano is a no-code backend made to scale your applications, uniting the simplicity of the no-code with the power of a traditional backend.

A darling of no-code developers for advanced projects, Xano allows integration via API with several platforms and the performance of heavy searches with speed.

air table

tool in code Airtable
The 12 best tools in code 22

Airtable is affectionately referred to as a Google spreadsheet on steroids, due to its ease of use, but without losing the power of a robust database. 

Through it you will be able to organize information in a simple and agile way and integrate with several other no-code tools

Automations

Zapier

tool in code zapier
The 12 best tools in code 23

Zapier will automate the workflow when integrating apps into your routine. 

Leaving the premise of the platforms already listed, the Zapier is a tool no-code which is suitable for automation.

through the Zapier it is possible to connect with other applications and other tools making them perform specific tasks, speeding up and optimizing time. 

make up

tool in code Make
The 12 best tools on code24

Formerly known as Integromat, Make, like zapier, allows the creation of automations and integration between hundreds of applications.

Compared to Zapier, Make has a smaller amount of ready-made applications, but it delivers more features for more complex automations and a slightly lower price.

Benefits of no-code

Is it worth using No Code tools🇧🇷 In fact, this technology brings many benefits that, without a doubt, brought a revolution in the area of software development. apps and websites. 

Check out some of the main benefits of using such tools on a daily basis (both professional and personal): 

Democratization 

The first of the benefits is the democratization regarding the development of platforms and applications.

In fact, it's a very specific area where only programmers could develop programs and the like.

Coding language is not easy, but no-code technology has given everyone the opportunity to develop their own applications. Because you don't need college, course or know any kind of code language. 

development speed

Another benefit of No Code tools is the agility in the development of these applications or websites.

This is easy to visualize: what do you think is easier, producing a app from scratch and through lines of code or use something whose production is more visual than purely technical? 

Well, all this makes it easier for those who are developing, making the process much faster. 

Cost reduction

In addition to saving a lot of time, the No Code tools they also reduce the cost by a matter of professional hours. Obviously, a specific programmer charges much more to produce a app or website. 

Autonomy

Aligned with democratization, these tools bring more autonomy to the company, as they allow the development of applications without a lot of bureaucracy and in the way that suits you best. 

specificity

We also have the advantage of specificity, so from the moment you have the opportunity to develop your own app or website, you will solve exactly the “pains that hurt the most”. 

Through no code technology, it is possible to create fully customizable solutions that address several problems at the same time.

Conclusion

no code is really amazing and opens many doors for companies and also for all those who want to invest in the applications market, even if they don't know anything about codes.

The digital market is on the rise and there is no prospect of slowing down, so it is essential to stay on top of these technologies if you live in the corporate world.

Be sure to learn a little more about these tools, as most likely they will optimize some stagnant process in your company or even something you need to do in your day to day.

Explore a little more No Code tools mentioned in this article and choose the one that makes the most sense for your need at the moment. We also recommend our article on the steps of how to create an app.

What are the best tools in code?

1. Webflow
2. WordPress
3. Bubble
4. Bildr
5. Softer
6. AppGyver
7. FlutterFlow
8. glide
9. Xano
10. Airtable
11. Zapier
12. Make up

org

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Artificial intelligence has advanced rapidly and AI agents are at the heart of this transformation. Unlike simple algorithms or traditional chatbots, intelligent agents are able to perceive the environment, process information based on defined objectives and act autonomously, connecting data, logic and action.

This advancement has driven profound changes in the way we interact with digital systems and carry out everyday tasks.

From automating routine processes to supporting strategic decisions, AI agents have been playing fundamental roles in the digital transformation of companies, careers and digital products.

What is an AI agent?

For an even more practical introduction, check out the AI Agent and Automation Manager Training from NoCode StartUp, which teaches step by step how to structure, deploy and optimize autonomous agents connected with tools such as N8N, Make and GPT.

One AI agent is a software system that receives data from the environment, interprets this information according to previously defined objectives and executes actions autonomously to achieve these objectives.

It is designed to act intelligently, adapting to context, learning from past interactions, and connecting to different tools and platforms to perform different tasks.

How Generative AI Agents Work

According to IBM, generative AI-based agents use advanced machine learning algorithms to generate contextualized responses and decisions — this makes them extremely efficient in personalized and dynamic flows.

Generative AI agents use large-scale language models (LLMs), such as those from OpenAI, to interpret natural language, maintain context between interactions, and produce complex, personalized responses.

This type of agent goes beyond simple reactive response, as it integrates historical data, decision rules and access to external APIs to perform tasks autonomously.

They operate on an architecture that combines natural language processing, contextual memory and logical reasoning engines.

This allows the agent to understand user intent, learn from previous feedback, and optimize its actions based on defined goals.

Therefore, they are ideal for applications that require deeper conversations, continuous personalization and autonomy for practical decisions.

Watch the free video from NoCode StartUp and understand from scratch how a conversational and automated AI agent works in practice:

Difference between chatbot with and without AI agent technology

While the terms “chatbot” and “AI agent” are often used interchangeably, there is a clear distinction between the two. The main difference lies in autonomy, decision-making capabilities, and integration with external data and systems.

While traditional chatbots follow fixed scripts and predefined responses, AI agents apply contextual intelligence, memory, and automated flows to perform real actions beyond conversation.

Traditional chatbot

A conventional chatbot operates on specific triggers, keywords, or simple question-and-answer flows. It usually relies on a static knowledge base and lacks the ability to adapt or customize continuously.

Its usefulness is limited to conducting basic dialogues, such as answering frequently asked questions or forwarding requests to human support.

Conversational AI Agent

An AI agent is built on a foundation of artificial intelligence capable of understanding the context of the conversation, retrieving previous memories, connecting to external APIs, and even making decisions based on conditional logic.

In addition to chatting, it can perform practical tasks — such as searching for information in documents, generating reports or triggering flows in platforms such as Slack, Make, N8N or CRMs.

This makes it ideal for enterprise applications, custom services, and scalable automations.

For an in-depth analysis of the concepts that differentiate rule-based automations and intelligent agents, it is also worth checking out the official MIT documentation on intelligent agents.

Comparison: AI agent, chatbot and traditional automation

To delve deeper into the theory behind these agents, concepts such as “rational agent” and “partially observable environments” are addressed in classic AI works, such as the book Artificial Intelligence: A Modern Approach, by Stuart Russell and Peter Norvig.

Types of AI Agents

AI agents can be classified based on their complexity, degree of autonomy, and adaptability. Knowing these types is essential to choosing the best approach for each application and to implementing more efficient and context-appropriate solutions.

Simple reflex agents

These agents are the most basic, reacting to immediate stimuli from the environment based on predefined rules. They have no memory and do not evaluate the history of the interaction, which makes them useful only in situations with completely predictable conditions.

Example: a home automation system that turns on the light when it detects movement in the room, regardless of time or user preferences.

Model-based agents

Unlike simple reflex agents, these maintain an internal model of the environment and use short-term memory. This allows for more informed decisions, even when the scenario is not fully observable, as they consider the current state and recent history to act.

Example: a robot vacuum cleaner that recognizes obstacles, remembers areas already cleaned and adjusts its route to avoid repeating unnecessary tasks.

Goal-based agents

These agents work with clear goals and structure their actions to achieve these objectives. They evaluate different possibilities and plan the necessary steps based on desired results, which makes them ideal for more complex tasks.

Example: a logistics system that organizes deliveries based on the lowest cost, time and most efficient route, adapting to external changes, such as traffic or emergencies.

Utility-based agents

This type of agent goes beyond objectives: it evaluates which action will generate the greatest value or utility among several options. It is indicated when there are multiple possible paths and the ideal is the one that generates the greatest benefit considering different criteria.

Example: a content recommendation platform that evaluates user preferences, schedule, available time and context to recommend the most relevant content.

Learning agents

They are the most advanced and have the ability to learn from past experiences through machine learning algorithms. These agents adjust their logic based on previous interactions, becoming progressively more effective over time.

Example: a virtual customer service agent who, throughout conversations, improves their responses, adapts the tone and anticipates doubts based on the most frequently asked questions.

To understand how the use of AI is becoming a key factor in global digital transformation, McKinsey & Company published a detailed analysis on trends, use cases and economic impact of AI in business.

AI Agent Use Cases
What are AI Agents? Everything You Need to Know 31

AI Agent Use Cases

Companies like OpenAI have been demonstrating in practice how agents based on LLMs are capable of executing complete workflows autonomously, especially when integrated with platforms such as Zapier, Slack or Google Workspace.

The application of artificial intelligence agents is rapidly expanding across various sectors and market niches.

With the evolution of no-code tools and platforms such as N8N, make up, Dify and Bubble, the creation of autonomous agents is no longer restricted to advanced developers and has become part of the reality of professionals, companies and creators of digital solutions.

These agents are especially effective when combined with automation tools, enabling complex workflows without the need for code. Below, we explore how different industries are already benefiting from these intelligent solutions.

Marketing and Sales

In the commercial sector, AI agents can automate everything from the first contact with leads to the generation of personalized proposals.

Through platforms like N8N, it is possible to create flows that collect data from forms, feed CRMs, send personalized emails and track the customer journey.

Additionally, these agents can analyze user behavior and adapt nurturing approaches based on previous interactions.

Service and Support

Companies that handle high volumes of interactions benefit from AI agents trained based on internal documents, FAQs, or databases.

With Dify and Make, for example, you can build assistants that answer questions in real time, automatically open tickets, and notify teams via Slack, email, or other integrations.

Education and Training

In the educational field, agents can be used to guide students, suggest content based on individual progress and even correct tasks in an automated way.

This automation illustrated below shows how AI agents can be practically implemented using N8N. In the flow, we have a financial agent personalized that converses with the user, accesses a Google Sheets spreadsheet to view or record expenses, and responds based on defined logic, allowed categories, and contextual validations.

The agent receives commands like “Show me my expenses for the week” or “Record an expense of R$120 on studies called 'Excel Course'”, and performs all actions automatically, without human intervention.

AI Agent FAQs

What can I automate with an AI agent?

AI agents are extremely versatile and can be used to automate everything from simple tasks — such as responding to emails and organizing information — to more complex processes such as reporting, customer service, lead qualification, and integration between different tools.

It all depends on how it is configured and what tools it accesses.

What is the difference between an AI agent and a customer service bot?

While a traditional bot answers questions based on keywords and fixed flows, an AI agent is trained to understand context, maintain memory, and make autonomous decisions based on logic and data. This allows it to take practical actions and go beyond conversation.

Do I need to know how to program to create an AI agent?

No. With no-code tools like N8N, Make, and Dify, you can create sophisticated agents using visual flows. These platforms allow you to connect APIs, build conditional logic, and integrate AI without having to write a line of code.

Is it possible to use AI agents with WhatsApp?

Yes. With platforms like Make or N8N, you can integrate AI agents into WhatsApp using third-party services like Twilio or Z-API. This way, the agent can interact with users, answer questions, send notifications, or capture data directly from the messaging app.

Why Learn to Build AI Agents Now

AI Agent Manager Training
AI Agent Manager Training

Mastering the creation of AI agents represents a competitive advantage for any professional who wants to stand out in the current market and prepare for the future of work.

By combining no-code tools with the power of artificial intelligence, it becomes possible to develop intelligent solutions that transform operational routines into automated and strategic flows.

These agents are applicable in different contexts, from simple tasks such as organizing emails, to more advanced processes such as generating reports, analyzing data or providing automated service with natural language.

And the best part: all of this can be done without relying on programmers, using accessible and flexible platforms.

Get started today with AI Agent Manager Training, or deepen your automation expertise with the N8N Course  to create agents with greater integration and data structure and take the first step towards building more autonomous, productive and intelligent solutions for your routine or business.

Further reading

Large Language Models (LLMs) have become one of the most talked-about technologies in recent years. Since the meteoric rise of ChatGPT, generative AI-based tools are being explored by entrepreneurs, freelancers, CLT professionals, and tech-curious individuals.

But why is understanding how LLMs work so important in 2025? Even if you don't know how to program, mastering this type of technology can open doors to automation, the creation of digital products, and innovative solutions in various areas.

In this article, we will explain in an accessible way the concept, operation and real applications of LLMs, focusing on those who want to use AI to generate value without relying on code.


What is an LLM

What is an LLM?

LLM stands for Large Language Model. It is a type of artificial intelligence model trained on huge volumes of textual data, capable of understanding, generating and interacting with human language in a natural way. Famous examples include:

  • GPT-4 (OpenAI)
  • Claude (Anthropic)
  • Gemini (Google)
  • Mistral
  • Perplexity IA

These models function as “artificial brains” capable of performing tasks such as:

  • Text generation
  • Automatic translation
  • Sentiment classification
  • Automatic summaries
  • Image generation
  • Automated service

How do LLMs work?

In simple terms, LLMs are built on Transformer neural networks. They are trained to predict the next word in a sentence, based on large contexts.

The more data and parameters (millions or billions), the more powerful and versatile the model becomes.

Read more: Transformers Explained – Hugging Face

Own LLMs vs. API usage: what do you really need?

Building your own LLM requires robust infrastructure, such as vector storage, high-performance GPUs, and data engineering. That's why most professionals opt for use ready-made LLMs via APIs, like those of OpenAI, Anthropic (Claude), Cohere or Google Gemini.

For those who don't program, tools like Make, Bubble, N8N and LangChain allow you to connect these models to workflows, databases, and visual interfaces, all without writing a line of code.

Additionally, technologies such as Weaviate and Pinecone help organize data into vector bases that improve LLM responses in projects that require memory or customization.

The secret is to combine the capabilities of LLMs with good practices in prompt design, automation and orchestration tools — something you learn step by step in AI Agent Manager Training.

Difference between LLM and Generative AI

Although they are related, not all generative AI is an LLM. Generative AI encompasses many different types of models, such as those that create images (e.g. DALL·E), sounds (e.g. OpenAI Jukebox), or code (e.g. GitHub Copilot).

LLMs are specialized in understanding and generating natural language.

For example, while DALL·E can create an image from a text command, such as “a cat surfing on Mars,” ChatGPT, an LLM — can write a story about that same scenario with coherence and creativity.

Examples of practical applications with NoCode

The real revolution in LLMs is the possibility of using them with visual tools, without the need for programming. Here are some examples:

Create a chatbot with Dify

As Dify Course, it is possible to set up an intelligent chatbot connected to an LLM for customer service or user onboarding.

Automate tasks with Make + OpenAI

Node Makeup Course You learn how to connect services like spreadsheets, email, and CRMs to an LLM, automating responses, data entry, and classifications.

Building AI Agents with N8N and OpenAI

O Agents with OpenAI Course teaches how to structure agents that make decisions based on prompts and context, without coding.

Advantages of LLMs for non-technical people

Advantages of LLMs for non-technical people

  • Access cutting-edge AI without having to code
  • Rapid testing of product ideas (MVPs)
  • Personalization of services with high perception of value
  • Optimization of internal processes with automations

LLMs and AI Agents: The Future of Interaction

The next evolutionary step is the combination of LLMs and AI agents. Agents are like “digital employees” that interpret contexts, talk to APIs and make decisions autonomously. If you want to learn how to build your agents with generative AI, the ideal path is AI Agent Manager Training.

We are living in an era where texts, images and videos can now be created by artificial intelligence. But there is one element that is gaining strength as a competitive advantage: the voice.

Whether in podcasts, institutional videos, tutorials or even automated service, the ability to create realistic artificial voice is changing how companies and creators communicate. And in this scenario, the ElevenLabs AI emerges as one of the global protagonists.

What is ElevenLabs
What is ElevenLabs AI? The AI-Powered Voice Revolution 35

What is ElevenLabs?

O ElevenLabs is one of the neural speech synthesizers most advanced on the market. With its technology AI voice cloning and AI-powered text to speech, allows you to create realistic voices in multiple languages, with natural intonation, dynamic pauses and surprising emotional nuances.

Key Features:

  • Human-quality Text to Speech
  • Conversational AI with support for interactive agents
  • Studio for longform audio editing
  • Speech to Text with high accuracy
  • Voice Cloning (Instant or Professional)
  • Sound Effects Generation (Text to Sound Effects)
  • Voice Design and Noise Isolation
  • Voice Library
  • Automatic dubbing in 29 languages
  • Robust API for automations with tools like N8N, Make, Zapier and custom integrations
ElevenLabs FAQ
What is ElevenLabs AI? The AI-Powered Voice Revolution 36

ElevenLabs FAQ

Find out more about the company and news from ElevenLabs directly at official website of ElevenLabs and see the API documentation.

Does ElevenLabs have an API?

Yes, ElevenLabs has a complete API that allows you to integrate speech generation with automated workflows.

With this, it is possible to create applications, service bots, or content tools with automated audio.

Discover the Make Course from NoCode Start Up to learn how to connect the ElevenLabs API with other tools.

Are ElevenLabs voices copyright free?

AI-generated voices can be used commercially, as long as you respect the platform's Terms of Use and do not violate third-party rights by cloning real voices without authorization.

Is it possible to use ElevenLabs for free?

Yes. ElevenLabs offers a free plan with 10,000 credits per month, which can be used to generate up to 10 minutes of premium quality audio or 15 minutes of conversation

This plan includes access to features like Text to Speech, Speech to Text, Studio, Automated Dubbing, API, and even Conversational AI with interactive agents.

Ideal for those who want to test the platform before investing in paid plans.

What is the best alternative to ElevenLabs?

Other options include Descript, Murf.ai and Play.ht. However, ElevenLabs has stood out for its natural voice, advanced audio editing features with AI, API integration and support for multiple languages.

Their paid plans start from US$ 5/month (Starter) with 30 thousand monthly credits, and go up to scalable corporate versions with multiple users and millions of credits.

See all available plans on the ElevenLabs website. However, ElevenLabs has stood out for the naturalness of its voice and the quality of its API.

How does ElevenLabs work?

You submit a text, choose a voice (or clone one), and AI converts that text into realistic audio in seconds. It can be used via the web dashboard or via API for automated workflows.

Examples of using ElevenLabs AI in practice

1. Video and podcast narration

Ideal for creators who want to save time or avoid the costs of professional voiceovers.

2. Automated service with human voice

Turn cold bots into realistic, empathetic voice assistants.

3. Generating tutorials and training with audio

Companies and CLT professionals can create more engaging internal materials.

4. Applications that “talk” to the user

With tools like Bubble, FlutterFlow or WebWeb, it is possible to integrate AI voice into apps.

How to integrate ElevenLabs with NoCode tools

NoCode tools
What is ElevenLabs AI? The AI-Powered Voice Revolution 37

N8N + ElevenLabs API

Allows you to automate voice generation based on dynamic data using visual workflows in N8N. It is ideal for creating processes such as audio customer service responses, automated voice updates, and more.

Discover the N8N Course from NoCode Start Up

OpenAI Agents + ElevenLabs

With the use of AI agents, it is possible to create voice-responsive systems, such as a virtual attendant that speaks to the customer based on a dynamic prompt.

See the Agents with OpenAI Course

Bubble/FlutterFlow + ElevenLabs

Use the API to insert audio into your apps with interaction triggers or dynamic events.

ElevenLabs and NoCode: Open the door to creating experiences with voice AI

AI-generated voice is already a powerful, accessible and potential-rich reality. ElevenLabs is not just a tool, but an engine for creating immersive, automated and more human experiences.

If you want to learn how to integrate these possibilities with NoCode and AI tools, NoCode Start Up has the ideal paths:

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