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Novus Voices

Thinking in Tokens: A Practical Guide to Context Engineering

A practical guide to context engineering: design smarter LLM prompts for better quality, speed, and cost-efficiency.

July 2, 2025
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TL;DR

Shipping a great LLM-powered product has less to do with writing a clever one-line prompt and much more to do with curating the whole block of tokens the model receives. The craft, call it context engineering, means deciding what to include (task hints, in-domain examples, freshly retrieved facts, tool output, compressed history) and what to leave out, so that answers stay accurate, fast, and affordable. Below is a practical tour of the ideas, techniques, and tooling that make this possible, written in a conversational style you can drop straight into a tech blog.

If this blog post were an image, what would it look like?”— here’s what OpenAI’s o3 model saw
''If this blog post were an image, what would it look like?” - Here’s what OpenAI’s o3 model saw.

Prompt Engineering Is Only The Surface

When you chat with an LLM, a “prompt” feels like a single instruction: “Summarise this article in three bullet points.” In production, that prompt sits inside a much larger context window that may also carry:

  1. A short rationale explaining why the task matters to the business
  2. A handful of well-chosen examples that show the expected format
  3. Passages fetched on the fly from a knowledge base (the Retrieval-Augmented Generation pattern)
  4. Outputs from previous tool calls, think database rows, CSV snippets, or code blocks
  5. A running memory of earlier turns, collapsed into a tight summary to stay under the token limit

Get the balance wrong and quality suffers in surprising ways: leave out a key fact and the model hallucinates; stuff in too much noise and both latency and invoice spike.

Own The Window: Pack It Yourself

A simple way to tighten output is to abandon multi-message chat schemas and speak to the model in a single, dense block, YAML, JSON, or plain text with clear section markers. That gives you:

  1. Higher information density. Tokens you save on boilerplate can carry domain facts instead.
  2. Deterministic parsing. The model sees explicit field names, easier to extract structured answers.
  3. Safer handling of sensitive data. You can redact or mask at the very edge before anything hits the API.
  4. Rapid A/B testing. With one block, swapping a field or reordering sections is trivial.

Techniques That Pay For Themselves

Window packing

If your app handles many short requests, concatenate them into one long prompt and let a small routing layer split the responses. Benchmarks from hardware vendors show throughput gains of up to sixfold when you do this.

Chunk-size tuning for RAG

Longer retrieved passages give coherence; shorter ones improve recall. Treat passage length as a hyper-parameter and test it like you would batch size or learning rate.

Hierarchical summarization

Every few turns, collapse the running chat history into “meeting minutes.” Keep those minutes in context instead of the verbatim exchange. You preserve memory without paying full price in tokens.

Structured tags

Embed intent flags or record IDs right inside the prompt. The model no longer has to guess which part of the text is a SQL query or an error log, it’s labeled.

Prompt-size heuristics

General rules of thumb:

  1. Defer expensive retrieval until you’re sure you need it
  2. Squeeze boilerplate into variables
  3. Compress long numeric or ID lists with range notation {1-100}.

Why A Wrapper Isn’t Enough

A real LLM application is an orchestration layer full of moving parts:

Supporting layers that make context engineering work at scale
Supporting layers that make context engineering work at scale

All of these components manipulate or depend on the context window, so treating it as a first-class resource pays dividends across the stack.

Cost, Latency, And The Token Ledger

API pricing is linear in input + output tokens. Reclaiming 10 % of the prompt often yields a direct 10% saving. Window packing, caching repeated RAG hits, and speculative decoding each claw back more margin or headroom for new features.

Quality And Safety On A Loop

It’s no longer enough to run an offline eval once a quarter. Modern teams wire up automatic A/B runs every day: tweak the context format, push to staging, score on a standing test set, and roll forward or back depending on the graph. Meanwhile, guardrails stream-scan responses so a risky completion can be cut mid-sentence rather than flagged after the fact.

From Prompt Engineer To Context Engineer

The short boom in “prompt engineering” job ads is already giving way to roles that sound more familiar, LLM platform engineer, AI infra engineer, conversational AI architect. These people design retrieval pipelines, optimise token economics, add observability hooks, and yes, still tweak prompts, but as one part of a broader context-engineering toolkit.

Key Takeaways

  1. Think in windows. The model only sees what fits; choose wisely.
  2. Custom, single-block prompts beat verbose chat schemas on density, cost, and safety.
  3. Context engineering links directly to routing choices, guardrails, and eval dashboards.
  4. Tooling is catching up fast; human judgment still separates a usable product from a demo.
  5. Career growth now lies in orchestrating the whole pipeline, not just word-smithing instructions.

Further reading

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Novus Meetups

Novus Meetups: Startup 101

''Novus Meetups: Startup 101'' gathered aspiring founders and students for real conversations on startup life and shared lessons.

July 1, 2025
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We are proud to have organized the second edition of our community event: "Novus Meetups: Startup 101."

At Novus, we've always believed that sharing experiences is just as important as developing technology which is why these meetups mean so much to us. They create space not only to learn but also to connect.

Our co-founders Rıza Egehan Asad and Vorga Can talk about their entrepreneurial journey.

This event brought together early-stage founders, aspiring entrepreneurs, university students, and anyone curious about what it really takes to build something from scratch. The energy in the room was honest, full of stories, questions, and the kind of community exchange that reminds us why we do what we do.

A big thank you to Yapay Zeka Fabrikası and Workup İş Bankası for supporting this event and helping make it happen!

At our event, our Co-Founders Rıza Egehan Asad and Vorga Can shared the founding story of Novus, from how they first met to the early pivots that shaped the company. More importantly, they opened the floor to participants, answering questions directly. We have to say, this part was especially meaningful, there’s nothing quite like having one-on-one conversations with attendees. It’s moments like these that make the whole experience so rewarding for us.

As always, we wrapped things up with what we love most: networking over coffee.

Thank you to everyone who joined us, you made this day truly meaningful.

Networking session of the event!

We're now taking a short summer break from our meetups, but we’ll be back soon with new topics and exciting guests.

Follow us on Luma to stay informed about our next meetup!

You can also stay connected via LinkedIn, Instagram, X, or our newsletter!

Novus Team!
Novus Team!

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All About Dot

Dot vs. CrewAI: Multi Agent AI Systems for Business

Compare multi agent AI systems for business and find the right platform to scale, automate, and integrate.

June 23, 2025
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Choosing an AI tool is not just a matter of convenience. It shapes how a company handles tasks, workflows, and long-term growth. Many teams explore CrewAI because it is a well-known open source framework for multi agent ai systems, offering flexibility for developers.

However, enterprises that need more than a DIY solution often look for deeper functionality and support.

Dot is designed for teams that want to move beyond assembling basic AI agents on their own. With advanced agent orchestration, full data control, and robust integrations, Dot gives businesses a platform that grows with their needs.

This post compares Dot and CrewAI side by side to help operations teams and enterprise developers find the best fit for their goals among modern multi agent ai systems.

Model Options: One Path or Multiple Choices

Flexibility in model choice can make the difference between a good AI experience and an outstanding one.

  • CrewAI: Built as a model-agnostic platform, CrewAI lets you plug in any large language model (LLM) of your choice. Whether you prefer OpenAI’s GPT series or other models, CrewAI supports it. In fact, you can “use any LLM or cloud provider” with CrewAI. This freedom is powerful, but it relies on you bringing and managing those model APIs.
  • Dot: Dot allows businesses to choose from multiple AI models out-of-the-box. It supports OpenAI’s models and also includes Cohere, Anthropic, Mistral, Gemini, and more. Dot can even intelligently select the best model for a given task, let you pick one based on your needs or bring your own LLMs.

Having multiple model options means teams can fine-tune cost and performance for each project. When comparing multi agent ai systems, model flexibility is no longer a nice-to-have – it’s a must-have.

Data Control: Managing Your Own Information

Data security and control are top priorities for businesses handling sensitive information.

  • CrewAI: Because CrewAI is open source and on-premises capable, companies can deploy it within their own infrastructure for full control and compliance. This allows sensitive data to stay in-house.
  • Dot: Dot offers full data control by letting businesses choose between cloud hosting, on-premise deployment, or a hybrid setup. In industries that require strict compliance or data residency, Dot provides the flexibility to keep all sensitive information on your own servers, meeting regulatory standards or internal policies with ease.

Both Dot and CrewAI recognize that enterprises need this level of control in their multi agent ai systems. Allowing self-hosting or private cloud deployment ensures that businesses maintain ownership of their data. Both platforms recognize this need, but Dot’s approach makes enterprise data management especially straightforward and customizable.

Functionality: More Than Basic Automation

For real business needs, multi agent ai systems must do more than chat, they should orchestrate complex workflows and actively assist your team.

  • CrewAI: CrewAI functions as a framework for building automated agents and workflows. It enables developers to create “crews” of AI agents that can collaborate on tasks. You start by defining custom agents with specific roles and goals. Essentially, CrewAI gives you the building blocks to assemble multi-step automations using code or its studio. This provides a lot of power, but achieving a full solution might require significant setup and technical effort.
  • Dot: Dot operates as a complete AI platform where multiple AI agents can collaborate, handle tasks, and automate full workflows right out of the box. With Dot’s library of over 100 pre-built agents for common business processes, you can orchestrate complete workflows with minimal setup – agents automatically pull data, analyze results, and complete tasks in sequence.

Both Dot and CrewAI enable multi-agent automation, but Dot’s platform approach means your team spends less time building basic functionality and more time leveraging AI to get results.

If you want to learn more about enterprise level multi-agent AI platforms, check out our blog post “Dot vs Sana AI: What Businesses Really Need from AI for Enterprise” for more comparisons.

Customization: Tailor AI to Your Needs

Customization determines how well an AI platform fits your workflows. This is especially true for multi agent ai systems, which often need to adapt to complex processes and diverse team requirements.

  • CrewAI: As an open-source platform, CrewAI allows developers to modify its codebase for deep customization. However, because most modifications require coding, non-technical team members will likely need developer support to make significant changes.
  • Dot: Dot provides a no-code environment where teams can visually build and adjust AI workflows without writing code. Non-technical users can configure and chain AI agents easily, while developers have the option to fine-tune agents under the hood and integrate Dot with internal systems.

In this way, Dot serves as both an easy-to-use platform and a flexible framework for multi agent ai systems that technical teams can extend without starting from scratch. This dual approach makes Dot highly adaptable to both business users and developers alike.

Integrations: Connecting with the Tools You Already Use

A great AI platform connects with the tools your business relies on every day. Integrations are therefore a key factor when evaluating multi agent ai systems.

  • CrewAI: In practice, this means you can connect CrewAI agents to many popular apps (via connectors or APIs) to automate actions like sending emails or creating tickets. This breadth of options is powerful, though some integrations may require extra configuration or coding.
  • Dot: Dot includes native integrations with major enterprise platforms such as Slack, HubSpot, Salesforce, Zendesk, and many others. These built-in integrations make it simple to plug Dot into your existing tech stack without custom development. For example, a Dot agent can automatically post an update to Slack or create a new entry in your CRM as part of a workflow.

CrewAI’s 1,200+ app integrations are impressive for breadth, but Dot focuses on deep, ready-made connections that enterprises can deploy instantly for real productivity gains.

Pricing: What Are You Really Paying For?

When comparing enterprise multi agent ai systems, cost isn’t just about a subscription fee – it’s about the value each platform provides.

  • CrewAI: The core CrewAI platform is open source and free to use. However, for managed cloud services and enterprise support, CrewAI offers custom pricing (businesses need to contact their team for a quote). In short, you can experiment with CrewAI for free, but large-scale production deployments will involve paid plans for hosting, support, and advanced features.
  • Dot: Dot offers a transparent, scalable pricing model. You can start with a 3 day free trial (including basic model access and agents) and then upgrade on a pay-as-you-go basis as your usage grows. Higher tiers unlock multi-model access, dedicated enterprise support, on-premise deployment options, and more. This flexible approach ensures you only pay for what you need, when you need it.

Quick Overview: Dot vs. CrewAI

Dot vs CrewAI
Dot vs CrewAI

Conclusion: Why Dot Is Built for Business Success

While CrewAI provides one of the more flexible, developer-focused options among multi agent ai systems, enterprises often need more. They require flexibility, control, deep integrations, and real workflow automation across the organization.

Dot is designed from the ground up to meet these needs. It gives businesses the power to:

  • Work across multiple AI models
  • Maintain full control over data and deployments
  • Build no-code or custom-coded workflows
  • Integrate easily with existing tools and systems
  • Scale efficiently with flexible pricing

If your goal is to deploy the best AI platform for your team – one that helps you work smarter and grow faster – Dot stands out as the platform of choice among multi agent ai systems.

Frequently Asked Questions

What makes Dot better for enterprises than CrewAI?
Dot offers built-in AI models, no-code workflows, native integrations, and flexible deployment, so teams can scale faster with less setup.

Does Dot require coding to set up workflows?

No. Dot lets you build and adjust workflows visually, while still allowing code-level customization if needed.

Is Dot more expensive than CrewAI?
Not always. CrewAI’s core is free, but production use often needs paid hosting and support. Dot’s pricing is clear and scalable.

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AI Academy

From Text to Screen: AI Music Video Generators

AI music video generator tools turn text and audio into stunning visuals. See how they work and what’s next for this tech.

June 22, 2025
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Imagine typing a few words and watching them transform into a vibrant music video in seconds. No camera. No editing software. Just AI turning your ideas into visuals that move with the beat. This is no longer science fiction. It is what today’s AI music video generator technology makes possible.

These tools are changing the way artists, marketers, and content creators bring music to life. Let’s break down how they work, what powers them, and why they are gaining attention.

What Is an AI Music Video Generator?

An AI music video generator is a system that creates video content based on inputs like text prompts, audio files, or style references. It analyzes your direction and generates visuals that align with the music’s mood, rhythm, and energy.

At its core, this type of tool combines several AI technologies:

  • Text-to-video generation to create scenes from descriptions
  • Audio analysis that detects tempo, mood, and structure
  • Motion alignment to synchronize visuals with the beat
  • Generative image models that craft unique frames

Unlike traditional video editing, it removes the need for manual sequencing or heavy post-production work. The AI handles the assembly and synchronization.

How the Technology Works

A modern AI music video generator operates using multimodal AI. This means it processes and combines multiple types of input (text, audio, and sometimes image references) into one output. Here is a simplified look at the flow:

  1. The AI processes the text prompt and generates a visual storyboard.
  2. It analyzes the music file to understand tempo, key transitions, and emotional tone.
  3. Scenes are created and animated in sync with the beat and mood.
  4. The system applies styles or effects that match user preferences or genre.

These systems rely on massive training datasets of video, audio, and text to learn what works. The better the training data, the more realistic and cohesive the final output from an AI music video generator will be.

This process is becoming more advanced as AI models evolve. If you are curious about how these multimodal systems are reshaping creative industries, check out our blog on ''How Multimodal Used in Generative AI Is Changing Content Creation''.

Examples of Leading AI Music Video Generators

Several platforms and models are pushing the boundaries of this technology:

  • Google’s Veo: A cutting-edge text-to-video model designed for high-quality, cinematic video generation. Veo produces realistic camera movements, detailed environments, and consistent style across frames. You can read more about its capabilities in Google’s official announcement.
  • Runway Gen-2: Known for its ability to generate short video clips from text prompts, Runway’s system allows creators to blend styles, add motion, and produce looping music visuals with ease.
  • Pika Labs: Pika focuses on accessible, easy-to-use video generation tools that help users craft AI-powered music videos by entering simple prompts combined with audio uploads.

Each AI music video generator has its strengths, but all are working toward making music video creation faster and more inclusive.

Key Features to Look For

Choosing the right AI music video generator means knowing what really matters for your goals. Not every tool offers the same level of creative control, quality, or ease of use.

Essential Features

  • Ability to interpret detailed text prompts
  • Music rhythm and mood detection
  • Scene transitions that match audio structure
  • High-resolution video output

Bonus Features

  • Style presets for specific music genres
  • Editable outputs for further customization
  • Export options for different platforms

These features help ensure that the generated videos are not just experimental, but ready for practical use.

Popular Use Cases for AI Music Video Generators

The demand for AI music video generator tools is growing across different fields. Here are some common applications:

  1. Independent Musicians
    Artists use AI to create affordable and unique music videos without hiring a full production team.
  2. Content Creators
    Social media influencers generate quick, eye-catching clips that match trending audio.
  3. Marketing Teams
    Brands develop dynamic campaign assets that align with theme music or jingles.
  4. Educators and Researchers
    These tools support experiments in audiovisual storytelling and learning.

The ability to produce professional-quality content with minimal resources makes an AI music video generator a valuable tool for creators at all levels.

Opportunities and Challenges

While the progress is exciting, today’s AI music video generator tools are not without challenges:

  • Videos may still need human editing for polish or creative adjustments.
  • Fine-grained control over visuals can be limited compared to manual editing tools.
  • Generating high-quality results often requires significant processing power.

There is also an ongoing conversation about copyright and ownership, especially when AI-generated visuals resemble existing artistic styles. Creators will need to balance automation with originality to stand out.

However, models like Veo and Runway are closing these gaps quickly, offering increasingly polished outputs with more user control.

Where This Technology Is Headed

The future of AI music video generator tools looks bright. In the coming years, we can expect:

  • Real-time video generation for live music performances
  • Even greater creative control over camera angles, effects, and transitions
  • Deeper integration with music production software
  • Support for more languages, cultures, and artistic styles

We will also likely see more collaborative AI tools, where creators can guide and edit videos interactively as they are being generated. As accessibility improves, these generators could become as common as video editing apps are today.

As these tools advance, they will further democratize video production, allowing more people to tell their stories visually.

Conclusion: A New Canvas for Music Creators

An AI music video generator is more than just a tool for automation. It represents a new way for musicians, brands, and creators to visualize sound. What once took weeks of work and large budgets can now begin with a prompt and a track.

As models like Google Veo, Runway, and Pika continue to improve, the gap between idea and finished product gets smaller. Whether you are an indie artist or part of a creative agency, this technology opens new possibilities for expression.

For anyone who has imagined turning music into moving pictures, now is the time to experiment with an AI music video generator and see where it can take your vision.

Frequently Asked Questions

Do AI music video generators work with any type of music?
Yes. Most systems can process any audio file, although results may vary based on how well the AI matches the mood and rhythm.

Is technical knowledge required to use AI music video generator tools?
No. Most platforms are designed for non-technical users and require only prompts and audio files.

Are AI-generated music videos ready for commercial release?
Some are, particularly when using advanced tools like Google Veo, but most benefit from light human editing before publishing.

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AI Dictionary

How Multimodal Used in Generative AI Is Changing Content Creation

See how multimodal in generative AI combines text, audio, and visuals to transform content creation.

June 21, 2025
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Content creation is evolving faster than ever. At the heart of this transformation is a powerful shift in how AI models work. Instead of focusing on one type of data at a time, we now see how multimodal used in generative AI combines text, images, audio, and even video to produce richer, more flexible outputs.

In this post, we break down what multimodal generative AI means, how it works, and why it is reshaping industries from music to marketing.

What Does Multimodal Mean in Generative AI?

To understand the importance of how multimodal used in generative AI is changing content creation, it helps to first explain what multimodal means. Multimodal AI describes systems that can work with more than one type of input at the same time. Instead of focusing only on text or only on images, these systems can take in text, pictures, audio, video, and even data tables together.

This approach allows the AI to connect different types of information.

For example, it can match the feeling of a song to the scene described in a script or create camera movements that follow the rhythm of music. The result is content that looks and feels more natural because it reflects how these different parts work together.

These AI systems are trained using large collections of data where the inputs are linked. A single training example might have a caption, a photo, and a sound clip so the AI learns how they relate. This helps the system produce results where text, sound, and images fit together in a way that makes sense.

By blending these inputs, the AI can create outputs that are more complex and aligned with human creative workflows.

This approach powers a new generation of content tools. For example, we explored in our blog on ''From Text to Screen: AI Music Video Generators'' how text and audio are combined to produce synchronized visuals.

How Multimodal Used in Generative AI Works

Let’s break down how multimodal used in generative AI operates behind the scenes:

  1. Input Layer
    The model ingests different types of data at once. A prompt might include a paragraph of text, an image reference, and a music file.
  2. Encoding and Fusion
    The AI encodes each input type into representations that can be merged. This fusion layer allows it to “understand” how different inputs relate.
  3. Output Generation
    Based on the fused data, the AI generates outputs that reflect all the inputs. This could be an image with text-aligned elements or a video that matches a soundtrack’s rhythm.

This fusion of data types is exactly how multimodal used in generative AI creates content that feels cohesive and intentional.

Examples of Multimodal AI in Action

We can see how multimodal used in generative AI is transforming real-world applications across industries:

  • Marketing: Generate social ads that match product images with custom captions and background music.
  • Education: Create interactive learning materials that combine text explanations with diagrams and narration.
  • Entertainment: Produce video clips where visuals match lyrics and beats, as seen in AI music video generators.

These tools are helping teams create content that feels more thoughtful and well-matched across formats. The result is a more engaging experience for audiences.

Why Multimodal AI Is a Game Changer for Creators

Here’s what makes how multimodal used in generative AI so impactful for content creators:

  • Faster workflows
    You can produce complex assets in a fraction of the time it would take manually.
  • Richer outputs
    The AI’s ability to blend text, audio, and visuals means content feels more complete.
  • Lower barriers
    Even creators without technical skills can produce sophisticated multimedia content.

This means more people can bring their creative ideas to life with less effort. It also encourages new types of storytelling that were harder to achieve before.

Challenges and Considerations

Of course, while how multimodal used in generative AI opens exciting doors, it also brings challenges:

  • Models can still produce outputs that need human refinement.
  • Large multimodal models require significant compute resources.
  • Ethical concerns arise about originality and content ownership.

It is important to balance the benefits of automation with thoughtful human input. Responsible use will help ensure these tools support creativity rather than replace it.

Features to Look For in Multimodal AI Tools

If you want to explore how multimodal used in generative AI for your work, here are features that matter:

  • Seamless input fusion across text, image, and audio
  • Real-time generation or previews
  • Support for editing and refinement
  • High-resolution output compatible with your platforms

Choosing tools with these features makes it easier to create content that meets professional standards. It also helps teams work faster without sacrificing quality.

Where Multimodal AI Is Headed

The rise of multimodal AI is only the beginning of a larger shift in how technology supports creativity. As these tools improve, they will not just make content creation faster, they will make it more flexible and inclusive. Understanding where this technology is going can help creators and businesses prepare for what is next.

Looking ahead, we can expect how multimodal used in generative AI to:

  • Offer more control over each input type’s influence on the output
  • Enable real-time collaborative creation with AI
  • Integrate into mainstream creative software
  • Expand support for diverse cultural contexts and languages

These advances will open the door to new creative possibilities that were out of reach before. They will also help make content tools more accessible to people around the world.

Conclusion: Creativity Without Limits

What excites people about how multimodal used in generative AI is not just the technology itself. It is the freedom it gives creators to combine ideas across mediums. This technology makes the creative process more accessible, more flexible, and more powerful.

Whether you are a musician, marketer, educator, or entrepreneur, understanding how multimodal used in generative AI will help you stay ahead in the evolving world of content creation.

Frequently Asked Questions

How does multimodal AI differ from single-modal AI?
Multimodal AI combines multiple input types like text, image, and audio, while single-modal AI focuses on just one input type.

Do I need special hardware to use multimodal AI tools?
Some advanced tools require powerful hardware, but many are now cloud-based and accessible through a browser.

Is content generated by multimodal AI ready for commercial use?
Often yes, though light editing is usually recommended to align with brand standards and ensure originality.

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All About Dot

Dot vs Sana AI: What Businesses Really Need from AI for Enterprise

Which platform delivers the most for enterprise teams? We compare features to help you choose smarter.

June 19, 2025
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Choosing the right AI platform is about more than convenience. It defines how your company handles operations, workflows, and growth. For businesses seeking serious results with AI for enterprise, both Dot and Sana AI offer powerful platforms. But only one of them is built from the ground up to orchestrate real business outcomes.

This comparison explores Dot and Sana AI across six essential areas: model options, data control, functionality, customization, integrations, and pricing. We’ll end with a summary table and a final take on why Dot stands out.

Model Options: Choose What Works Best

In enterprise environments, flexibility in model choice is essential when choosing an AI for enterprise tasks.

Sana AI allows model-agnostic deployments. Enterprise customers can connect the platform to various providers like OpenAI, Cohere, and Anthropic. However, this capability is reserved for enterprise-level contracts. Users on the free plan are limited to a default model with no ability to switch or optimize.

Dot offers multi-model access out of the box. Teams can choose the best model for each task, whether it is OpenAI, Gemini, Mistral, Anthropic, or Cohere. This gives every user, not just enterprise clients, the freedom to optimize for speed, accuracy, or cost.

Why it matters: Choosing right AI for enterprise is important because enterprise level use cases vary greatly. From summarizing contracts to generating product copy, teams need the right model for the right job. Dot makes that possible for everyone, not just those with a custom agreement.

Data Control: Keep It Where It Belongs

When comparing AI for enterprise operations, one thing to always consider is that company data must remain protected and compliant at all times.

Sana AI provides enterprise-ready security features. Data is encrypted in transit and at rest, and customer data is not used to train models. Enterprise customers can request a single-tenant setup within their own cloud environments.

Dot takes control a step further. It lets companies host their entire AI platform in the cloud, on-premise, or in a hybrid setup. Dot ensures complete data ownership, flexible compliance options, and the ability to deploy behind your own firewall when necessary.

Why it matters: Enterprises in regulated industries such as healthcare and finance cannot compromise on control. With Dot, your data stays in your environment under your terms.

Functionality: More Than a Chatbot

AI should do more than answer questions. It should act, decide, and drive work forward.

Sana AI provides assistants that handle enterprise search and basic task execution. For example, it can pull files, summarize documents, and trigger actions in connected tools. These assistants work well for internal queries and knowledge support.

Dot enables teams to build multiple AI agents that can work together to manage entire workflows. These agents can retrieve data, make decisions, coordinate with other systems, and complete sequences of actions automatically. This orchestration capability is what makes Dot not just a productivity booster, but a true process accelerator.

Why it matters: Knowledge access is helpful, but execution is what changes business outcomes. Dot moves from helping people do tasks to having AI agents complete them end-to-end.

If you’re looking for agentic AI platforms but can’t decide between Dot and Microsoft Copilot, check our blog post ''Dot vs. Microsoft Copilot: Which AI Tools for Product Management Truly Scale?”.

Customization: No Code or Full Code. You Choose

Every enterprise has different teams, processes, and goals. Customization is not a luxury. It is a requirement.

Sana AI offers a simple way to set up assistants without code. You can select their tone, assign them to specific knowledge sources, and configure their behavior with a point-and-click interface. For companies that want speed and ease, this is useful. Sana also provides API access for building custom integrations, but its backend logic remains mostly fixed.

Dot is built to serve both business users and developers. Teams can use the no-code interface to create agents, design workflows, and link tools together. Each agent’s behavior can be visually adjusted based on rules, triggers, or other agents’ outputs. Business teams can launch full workflows without writing a single line of code.

But the real depth comes for technical teams. Developers can script complex logic, customize agent behaviors with code, and integrate Dot into any internal system. Whether you want a lightweight integration with your CRM or a highly specific agent for legal review, Dot supports both. It acts more like a development framework than just a tool, allowing every enterprise to tailor their own AI infrastructure to match their internal goals.

Why it matters: Customization means long-term scalability. With Dot, your AI grows as your processes evolve. You can start fast, iterate quickly, and expand confidently across teams.

Integrations: Connect Everything

AI for enterprise only works when it is embedded into the tools your teams already use.

Sana AI connects to over 100 tools including Google Drive, SharePoint, Outlook, and Teams. It mirrors user permissions, ensuring secure access to shared data sources. Enterprises can also build custom actions using Sana’s developer API.

Dot offers native integrations with business-critical platforms like Salesforce, Slack, HubSpot, and Zendesk. Each integration becomes a building block for your AI for enterprise workflows. You can create agents that update CRM records, send messages, or trigger alerts as part of a larger process. For more custom scenarios, Dot’s API allows direct integration with databases, internal apps, and cloud functions.

Why it matters: AI for enterprise operations must connect with real systems and do real work. Dot ensures that every integration serves a purpose in automation, not just data access.

Pricing: Transparent and Scalable

Pricing should be aligned with usage and value.

Sana AI has a free plan with limited usage caps. To unlock AI for enterprise grade features like custom models and unlimited usage, companies must upgrade to a custom-priced enterprise contract.

Dot offers a free signup and usage-based pricing. Businesses pay only for what they use and can scale up as they grow. Enterprise features like custom models, support, and deployment options are available in higher tiers without forcing early commitments to offer AI for enterprise level to companies of every sizes..

Why it matters: Dot lets businesses get started quickly and expand naturally. You can experiment without pressure and grow your AI usage when the results speak for themselves.

Comparison Table

Dot vs Sana AI

Conclusion: Why Dot Wins for Enterprise Use

Sana AI is a capable tool for enterprise knowledge support. It helps teams access and use company information more effectively. For organizations focused on knowledge management, it is a meaningful upgrade from traditional search.

Dot, however, is designed to run operations. It offers the model flexibility, workflow automation, deep customization, and real integrations that modern enterprises need.

If your company is serious about scaling productivity, accelerating operations, and building long-term automation, Dot is the AI platform that delivers.

Start your free Dot trial today and start building the AI-driven foundation your enterprise deserves.

Frequently Asked Questions

What is the main difference between Dot and Sana AI?
Dot is built for operational automation using multiple AI agents, while Sana AI focuses more on enterprise search and assistant tasks.

Can I use Dot for complex workflows without coding skills?
Yes. Dot offers a no-code interface for building workflows and AI agents, with full-code options available for developers when needed.

Which is better for enterprise automation: Dot or Sana AI?
Dot is better suited for automation across teams, offering deeper customization, broader integrations, and flexible deployment options.

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Industries

Generative AI In Media And Marketing: Smarter Content, Less Burnout

How is generative AI changing media and marketing? Find out how teams create smarter content with less stress.

June 18, 2025
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Generative AI is no longer a future trend. It is now a practical tool reshaping media and marketing teams around the world. From creating ad copy and visuals to drafting newsletters and social posts, AI tools are reducing workloads and helping teams focus on strategy. But how can media and marketing professionals use AI without losing their unique voice or creative edge?

In this blog, we explore how generative AI is changing media and marketing. We also look at how to use these tools effectively to produce smarter content without burning out.

Why Media And Marketing Teams Are Turning To Generative AI

The demand for content has increased dramatically, and media and marketing teams must produce more material faster while keeping quality high. Audiences expect fresh, relevant, and personalized content, but meeting these expectations manually is hard to scale. Generative AI helps by allowing teams to generate drafts, ideas, and visuals that save hours of work. These tools reduce repetitive tasks so professionals can focus on strategy, storytelling, and analysis. Rather than replacing creative teams, generative AI gives them more time and space to do what they do best.

How Media And Marketing Teams Use Generative AI Today

Media and marketing professionals apply generative AI in many parts of their workflow. Some of the most common uses include:

  1. Writing first drafts for blogs, ads, and emails
  2. Generating headline variations for A/B testing
  3. Creating social media captions that align with brand tone
  4. Producing simple graphic designs or image concepts
  5. Summarizing reports or analytics for stakeholders

The result is faster turnaround and more consistent content across platforms.

Where Generative AI Delivers The Most Value

Generative AI supports media and marketing teams by improving both speed and output. Here are some examples of where it helps the most:

  • Drafting long-form content that teams can refine and customize
  • Producing basic graphics or video elements to support campaigns
  • Suggesting SEO-friendly keywords or headline ideas
  • Repurposing content for different channels without starting from scratch
  • Personalizing messages based on audience segments

Generative AI helps teams meet high-volume content needs while reducing stress.

Examples Of Generative AI At Work In Media And Marketing

Let’s look at realistic scenarios where teams use AI effectively:

  • A marketing team uses AI to draft ad copy, then fine-tunes the tone before launching a campaign.
  • A media company generates newsletter summaries with AI, saving hours of manual work each week.
  • A small business creates social media posts with AI support, ensuring consistency while focusing on customer engagement.

These examples show how media and marketing teams use AI as a partner rather than a replacement.

Best Practices For Using Generative AI In Media And Marketing

  • Always review AI-generated content for accuracy, tone, and brand alignment.
  • Use AI for drafts and ideas but rely on human expertise for final approval.
  • Build clear style guides and templates that guide AI outputs.
  • Train teams on how to use AI responsibly and effectively.
  • Combine AI tools with analytics to measure what works and improve over time.

If your team is interested in understanding the differences between generative AI and other types of AI, see ‘’What Is Generative AI vs AI? You Might Be Using Both Already’’. Knowing how these tools work helps you apply them more effectively.

Challenges Media And Marketing Teams Should Watch For

Generative AI brings many benefits, but there are also risks if used without care. AI can produce generic content if it is not guided well, and teams risk over-relying on it, which can lead to a loss of brand voice or authenticity. Tools may sometimes generate inaccurate or off-message material, and there are always data privacy and intellectual property concerns to consider. This is why media and marketing teams should combine the speed of AI with human insight to ensure they deliver high-quality, trusted content.

Future Trends For Generative AI In Media And Marketing

Generative AI will continue to evolve, offering even more support for creative teams. Here are some trends to expect:

  • AI that better understands and adapts to individual brand voices
  • More advanced tools that produce text, images, and audio together for multimedia campaigns
  • Systems that personalize content at scale across customer touch points
  • Stronger controls for style, tone, and compliance in generated material

Media and marketing professionals who learn how to guide and refine AI outputs will have a competitive edge.

How To Get Started With Generative AI In Media And Marketing

If your team is exploring AI, here’s a simple path to begin:

  1. Identify tasks where you spend the most time on drafting or formatting.
  2. Test a generative AI tool on a small, low-risk project.
  3. Review and adjust outputs carefully.
  4. Gather feedback from team members and audiences.
  5. Scale AI use where it adds clear value.

Generative AI should feel like a supportive tool that helps your team work smarter.

Conclusion: Generative AI Helps Media And Marketing Teams Do More With Less Stress

Generative AI is transforming how media and marketing professionals create, share, and manage content. Used thoughtfully, it reduces repetitive work and helps teams focus on strategy, storytelling, and connection.

The goal is not to let AI take over but to let it handle the mechanics so your team can focus on what truly matters. Media and marketing teams that master these tools will be able to deliver more value with less burnout and more impact.

Frequently Asked Questions

How is generative AI used in media and marketing today?
Teams use AI to draft content, create visuals, generate headlines, and personalize messages across channels.

Does generative AI replace creative professionals in media and marketing?
No. AI supports professionals by speeding up repetitive tasks, but human creativity and judgment are still essential.

What is the best way to start using generative AI in media and marketing?
Begin with simple tasks like drafting or summarizing. Review outputs carefully and scale use where it adds value.

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AI Academy

Can You Automate Content Creation with AI and Still Sound Human?

Can you automate content creation with ai and still sound natural? Find out how to blend AI with a human touch.

June 17, 2025
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Artificial intelligence has changed how we think about content creation. Tasks that used to take hours can now be done in minutes. Drafts, outlines, headlines, and even entire articles can be generated with a few clicks. But this shift has left many creators, marketers, and freelancers wondering,  can you automate content creation with ai and still sound human?

The truth is that AI can help you create faster and at greater scale. The challenge is making sure that speed does not come at the cost of quality or authenticity. In this blog, we explore what it takes to automate content creation with ai while keeping your unique voice intact.

Why So Many Creators Are Turning to AI

Content demands have exploded. Brands need more blog posts, more social updates, more email sequences, and more videos than ever. At the same time, audiences expect quality. They can spot robotic writing and generic ideas instantly.

This is why many creators are trying to automate content creation with ai. The right AI systems help by:

  • Speeding up draft creation
  • Suggesting structures and headlines
  • Rewriting sections for clarity
  • Generating ideas from data or prompts

The challenge is using these benefits without producing content that feels empty or soulless.

How to Automate Content Creation With AI Without Sounding Robotic

If you want to automate content creation with ai and still sound human, it helps to follow a process.

  1. Start with your own voice guidelines
    Teach your AI tools what tone, style, and structure you use
  2. Use AI for first drafts, not final outputs
    AI is great for getting over blank-page fear but needs human refinement
  3. Edit and personalize
    Add stories, data points, or details that only you can provide
  4. Run the content through a read-aloud or clarity tool
    Make sure it sounds like something you would actually say

In this way, AI works as a writing partner, not a replacement.

Where AI Shines In The Content Creation Workflow

When you automate content creation with ai, the most value often comes from speeding up repetitive or structure-heavy tasks. AI can quickly generate outlines, suggest SEO-friendly headlines, summarize source material, or create short-form snippets from long-form pieces. These are areas where human effort does not add much value but does take time. By letting AI handle these parts, you can focus on creativity and strategy.

This is particularly helpful for freelancers, who often balance multiple clients. You can see more examples of how freelancers use AI in ‘’AI x Freelancers: How AI for Freelancers Is Changing the Dynamics’’.

What AI struggles With In Content Creation

AI has limits. If you want to automate content creation with ai, you need to know where the risks are.

AI often struggles with:

  1. Injecting emotion or unique perspective
  2. Accurately citing complex sources
  3. Capturing cultural nuance or humor
  4. Creating content that builds genuine connection

That is why human review and input are so important at every stage.

How AI Fits Into Content Marketing Today

AI is no longer a tool of the future. It is already shaping content marketing in real ways. Teams that automate content creation with ai often see benefits like:

  • More consistent publishing schedules
  • Better SEO alignment
  • Reduced time spent on low-value tasks
  • Faster turnaround for client work

You can explore this further in Content Writing and Marketing, which covers how AI blends with modern marketing strategies.

Benefits of using AI in content creation carefully

Choosing to automate content creation with ai thoughtfully leads to meaningful gains. Creators who do this well find they publish more consistently, achieve better alignment with SEO goals, and reduce the stress of always feeling behind on deadlines. More importantly, they get to spend more time on creative thinking, strategy, and connecting with audiences in genuine ways. The secret is knowing where AI helps  and where human refinement still makes all the difference.

What To Look For In AI Tools For Content Creation

Not all AI tools are equally helpful when trying to automate content creation with ai. Choose ones that offer:

  • Clear options for tone and style adjustment
  • Ability to learn from your inputs over time
  • Strong privacy protections
  • Export formats that fit your workflow
  • Integrations with your CMS or marketing stack

A good AI tool should feel like a collaborator, not just a generator.

Tips For Keeping Content Human When Using AI

If your goal is to automate content creation with ai and stay authentic, keep these best practices in mind.

  1. Always add personal experience or stories
  2. Use AI to save time, not to replace your voice
  3. Review every output for accuracy and style
  4. Avoid over-relying on generic phrasing
  5. Think of AI as an assistant, not an author

The result will be content that feels both polished and personal.

What The Future Holds For AI And Content Creation

As AI evolves, creators will find even more ways to automate content creation with ai while staying authentic. Expect to see:

  • AI that learns individual voice and brand better
  • Tools that combine text, image, and audio generation
  • Systems that help with multilingual content
  • More human-AI collaboration platforms

The key will be choosing tools and workflows that amplify what makes your content unique rather than flattening it.

Conclusion: AI Is A Tool, Not A Substitute

It is entirely possible to automate content creation with ai and still produce work that feels human. But it takes intention. The best creators know when to let AI help and when to take the lead themselves.

If you are thoughtful about where and how you use AI, it becomes a powerful partner in scaling your voice, not replacing it.

Frequently Asked Questions

Can you really automate content creation with ai and sound natural?
Yes. When used as a tool rather than a crutch, AI can help create authentic, high-quality content at scale.

Where does AI fall short in content creation?
AI struggles with emotional depth, unique perspective, and cultural nuance. These are areas where human input is essential.

What is a safe first step to automate content creation with ai?
Start by using AI for outlines or drafts. Add your own stories, data, and voice as you refine the content.

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Newsroom

Novus Co-Founders Attend VivaTech 2025 in Paris

At VivaTech 2025, Novus Co-Founders shared Dot, explored AI trends, and connected with innovators from around the world.

June 16, 2025
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Novus had the pleasure of attending VivaTech 2025, one of Europe’s largest and most influential gatherings for tech innovation. Held in Paris, the event brought together entrepreneurs, investors, and industry leaders from around the world to explore the future of technology, including the growing impact of artificial intelligence.

Co-Founders Rıza Egehan Asad and Vorga Can were on the ground, joining global conversations, engaging with fellow innovators, and sharing what Novus is building with its all-in-one AI platform, Dot. While it wasn’t their first time at VivaTech, the event once again delivered with thought-provoking panels, meaningful exchanges, and new connections from across the tech ecosystem.

With insights into the latest industry trends and valuable discussions on where AI is headed, VivaTech 2025 left the Novus team inspired and energized for the road ahead.

A warm thank you to everyone who stopped by to connect, we’re already looking forward to the next edition.

Co-founders, Rıza Egehan Asad & Vorga Can
Co-founders, Rıza Egehan Asad & Vorga Can

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