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How do LLMs work? It’s a question that sits at the heart of modern AI innovation. From writing assistants and chatbots to code generators and search engines, large language models (LLMs) are transforming the way machines interact with human language. Every time you type a prompt into ChatGPT or any other LLM-based tool, you’re initiating a complex pipeline of mathematical and neural processes that unfold within milliseconds.

In this post, we’ll break down exactly how LLMs work, exploring every critical stage, tokenization, embedding, transformer architecture, attention mechanisms, inference, and output generation. Whether you’re an AI engineer, data scientist, or tech-savvy reader, this guide is your comprehensive roadmap to the inner workings of LLMs.

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What Is a Large Language Model?

A large language model (LLM) is a deep neural network trained on vast amounts of text data to understand and generate human-like language. These models are the engine behind AI applications such as ChatGPT, Claude, LLaMA, and Gemini. But to truly grasp how LLMs work, you need to understand the architecture that powers them: the transformer model.

Key Characteristics of LLMs:

  • Built on transformer architecture
  • Trained on large corpora using self-supervised learning
  • Capable of understanding context, semantics, grammar, and even logic
  • Scalable and general-purpose, making them adaptable across tasks and industries

Learn more about LLMs and their applications.

Why It’s Important to Understand How LLMs Work

LLMs are no longer just research experiments, they’re tools being deployed in real-world settings across finance, healthcare, customer service, education, and software development. Knowing how LLMs work helps you:

  • Design better prompts
  • Choose the right models for your use case
  • Understand their limitations
  • Mitigate risks like hallucinations or bias
  • Fine-tune or integrate LLMs more effectively into your workflow

Now, let’s explore the full pipeline of how LLMs work, from input to output.

7 Best Large Language Models (LLMs) You Must Know About

Step-by-Step: How Do LLMs Work?

Step 1: Tokenization – How do LLMs work at the input stage?

The first step in how LLMs work is tokenization. This is the process of breaking raw input text into smaller units called tokens. Tokens may represent entire words, parts of words (subwords), or even individual characters.

Tokenization serves two purposes:

  1. It standardizes inputs for the model.
  2. It allows the model to operate on a manageable vocabulary size.

Different models use different tokenization schemes (Byte Pair Encoding, SentencePiece, etc.), and understanding them is key to understanding how LLMs work effectively on multilingual and domain-specific text.

Tokenization

Explore a hands-on curriculum that helps you build custom LLM applications!

Step 2: Embedding – How do LLMs work with tokens?

Once the input is tokenized, each token is mapped to a high-dimensional vector through an embedding layer. These embeddings capture the semantic and syntactic meaning of the token in a numerical format that neural networks can process.

However, since transformers (the architecture behind LLMs) don’t have any inherent understanding of sequence or order, positional encodings are added to each token embedding. These encodings inject information about the position of each token in the sequence, allowing the model to differentiate between “the cat sat on the mat” and “the mat sat on the cat.”

This combined representation—token embedding + positional encoding—is what the model uses to begin making sense of language structure and meaning. During training, the model learns to adjust these embeddings so that semantically related tokens (like “king” and “queen”) end up with similar vector representations, while unrelated tokens remain distant in the embedding space.

How embeddings work

Step 3: Transformer Architecture – How do LLMs work internally?

At the heart of how LLMs work is the transformer architecture, introduced in the 2017 paper Attention Is All You Need. The transformer is a sequence-to-sequence model that processes entire input sequences in parallel—unlike RNNs, which work sequentially.

Key Components:
  • Multi-head self-attention: Enables the model to focus on relevant parts of the input.
  • Feedforward neural networks: Process attention outputs into meaningful transformations.
  • Layer normalization and residual connections: Improve training stability and gradient flow.

The transformer’s layered structure, often with dozens or hundreds of layers—is one of the reasons LLMs can model complex patterns and long-range dependencies in text.

Transformer architecture

Step 4: Attention Mechanisms – How do LLMs work to understand context?

If you want to understand how LLMs work, you must understand attention mechanisms.

Attention allows the model to determine how much focus to place on each token in the sequence, relative to others. In self-attention, each token looks at all other tokens to decide what to pay attention to.

For example, in the sentence “The cat sat on the mat because it was tired,” the word “it” likely refers to “cat.” Attention mechanisms help the model resolve this ambiguity.

Types of Attention in LLMs:
  • Self-attention: Token-to-token relationships within a single sequence.
  • Cross-attention (in encoder-decoder models): Linking input and output sequences.
  • Multi-head attention: Several attention layers run in parallel to capture multiple relationships.

Attention is arguably the most critical component in how LLMs work, enabling them to capture complex, hierarchical meaning in language.

 

LLM Finance: The Impact of Large Language Models in Finance

Step 5: Inference – How do LLMs work during prediction?

During inference, the model applies the patterns it learned during training to generate predictions. This is the decision-making phase of how LLMs work.

Here’s how inference unfolds:

  1. The model takes the embedded input sequence and processes it through all transformer layers.

  2. At each step, it outputs a probability distribution over the vocabulary.

  3. The most likely token is selected using a decoding strategy:

    • Greedy search (pick the top token)

    • Top-k sampling (pick from top-k tokens)

    • Nucleus sampling (top-p)

  4. The selected token is fed back into the model to predict the next one.

This token-by-token generation continues until an end-of-sequence token or maximum length is reached.

Token prediction

Step 6: Output Generation – From Vectors Back to Text

Once the model has predicted the entire token sequence, the final step in how LLMs work is detokenization—converting tokens back into human-readable text.

Output generation can be fine-tuned through temperature and top-p values, which control randomness and creativity. Lower temperature values make outputs more deterministic; higher values increase diversity.

How to Tune LLM Parameters for Optimal Performance

Prompt Engineering: A Critical Factor in How LLMs Work

Knowing how LLMs work is incomplete without discussing prompt engineering—the practice of crafting input prompts that guide the model toward better outputs.

Because LLMs are highly context-dependent, the structure, tone, and even punctuation of your prompt can significantly influence results.

Effective Prompting Techniques:

  1. Use examples (few-shot or zero-shot learning)
  2. Give explicit instructions
  3. Set role-based context (“You are a legal expert…”)
  4. Add delimiters to structure content clearly

Mastering prompt engineering is a powerful way to control how LLMs work for your specific use case.

Learn more about prompt engineering strategies.

How Do LLMs Work Across Modalities?

While LLMs started in text, the principles of how LLMs work are now being applied across other data types—images, audio, video, and even robotic actions.

Examples:

  • Code generation: GitHub Copilot uses LLMs to autocomplete code.
  • Vision-language models: Combine image inputs with text outputs (e.g., GPT-4V).
  • Tool-using agents: Agentic AI systems use LLMs to decide when to call tools like search engines or APIs.

Understanding how LLMs work across modalities allows us to envision their role in fully autonomous systems.

Explore top LLM use cases across industries.

Summary Table: How Do LLMs Work?

How do LLMs work?

Frequently Asked Questions

Q1: How do LLMs work differently from traditional NLP models?

Traditional models like RNNs process inputs sequentially, which limits their ability to retain long-range context. LLMs use transformers and attention to process sequences in parallel, greatly improving performance.

Q2: How do embeddings contribute to how LLMs work?

Embeddings turn tokens into mathematical vectors, enabling the model to recognize semantic relationships and perform operations like similarity comparisons or analogy reasoning.

Q3: How do LLMs work to generate long responses?

They generate one token at a time, feeding each predicted token back as input, continuing until a stopping condition is met.

Q4: Can LLMs be fine-tuned?

Yes. Developers can fine-tune pretrained LLMs on specific datasets to specialize them for tasks like legal document analysis, customer support, or financial forecasting. Learn more in Fine-Tuning LLMs 101

Q5: What are the limitations of how LLMs work?

LLMs may hallucinate facts, lack true reasoning, and can be sensitive to prompt structure. Their outputs reflect patterns in training data, not grounded understanding. Learn more in Cracks in the Facade: Flaws of LLMs in Human-Computer Interactions

Conclusion: Why You Should Understand How LLMs Work

Understanding how LLMs work helps you unlock their full potential, from building smarter AI systems to designing better prompts. Each stage—tokenization, embedding, attention, inference, and output generation—plays a unique role in shaping the model’s behavior.

Whether you’re just getting started with AI or deploying LLMs in production, knowing how LLMs work equips you to innovate responsibly and effectively.

Ready to dive deeper?

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July 23, 2025

In many enterprise scenarios, SharePoint-hosted Excel files serve as the bridge between raw data and business operations. But keeping them up to date, especially when your data lives in Azure Synapse, can be surprisingly difficult due to limitations in native connectors. 

In this guide, you’ll learn a step-by-step method to build a no-code/low-code Azure Synapse to SharePoint Excel automation using Power BI and Power Automate. This method ensures your data is always up-to-date, with zero manual refreshes.

Automate Data Output to Sharepoint Excel Using Azure Synapse, Power BI and Power Automate

The Business Problem 

Recently, I faced a real-world challenge:

A client needed a solution that automatically updates an Excel workbook on SharePoint with data from an Azure Synapse pipeline, as the Excel file was being used as a data source for Smartsheet reports.

The critical requirement? 

End-to-end automation with no manual intervention ever. 

That meant the Excel workbook needed to be continuously and reliably updated with data from an Azure Synapse view, without anyone having to open or refresh the file manually. 

Key Challenges 

While the problem sounded simple, setting up direct integration between Azure Synapse and Excel on SharePoint revealed several roadblocks:

  • No SharePoint Excel connector in Azure Synapse.

    Synapse lacks a native way to push or refresh data directly into an Excel file on SharePoint. 

  • SharePoint Excel doesn’t support direct refresh from SQL Server or Synapse.

    You can’t natively connect an Excel file on SharePoint to a SQL-based backend and have it auto-refresh. 

  • Even if connected to a Power BI semantic model, Excel doesn’t auto-refresh.

    SharePoint Excel can connect to a Power BI dataset (semantic model), but it won’t pull the latest data unless manually refreshed, a blocker for our automation goal. 

To understand the data layer better, check out this guide on SQL pools in Azure Synapse.

The Low-Code Solution 

To build a robust Azure Synapse to SharePoint Excel automation, I developed a no-code/low-code automation using a combination of: 

  • Azure Synapse Analytics (as the data source) 
  • Power BI Semantic Model (as the bridge) 
  • Power Automate (to refresh Excel connections on SharePoint) 

This approach keeps the SharePoint Excel workbook continuously in sync with Synapse, enabling downstream use in Smartsheet. 

Step-by-Step Implementation 

Here’s how you can replicate this approach:

Create a Power BI Semantic Model

  • In Power BI Desktop, create a dataset that pulls data from your Azure Synapse or SQL Server view/table. 

Creating a dataset in ower bi that pulls data from Azure Synapse or SQL Server view/table.

  • This model will act as the source for the Excel file. 

Publish the Model to Power BI Service

  • Publish the semantic model to your workspace in the Power BI Service. 

Set Up Power BI Semantic Model Refresh

  • Configure a Power BI Service to refresh the semantic model on a schedule (e.g., hourly/daily). 
  • This ensures the model always reflects the latest data from Synapse. 

Setting up power bi semantic model refresh

Create the Excel File in SharePoint

  • In the target SharePoint location, create or upload a new Excel workbook. 
  • Inside the workbook, go to Data > Data from Power BI and connect to your semantic model. 

Connecting excel file in sharepoint to Power Bi

Add an Office Script to Refresh Connections

  • In Excel Online, go to Auomate Tab and create a new Office Script with the following code: 
  • Name the script something like Refresh All. 

Adding an office script to refresh connections

Automate It with Power Automate

  • Create a new Power Automate flow.
  • Add a Recurrence trigger to define how often it should run. 
  • Add the “Run Script” action. 
  • Specify the SharePoint file location and the Refresh All script you created. 

Adding a recurrence trigger in power automate

Coordinating Refresh Timings and Triggers 

Timing and synchronization are critical to avoid partial or stale data. Here’s how each component should be aligned: 

Azure Synapse: Scheduled View/ETL Triggers 

  • Use Azure Synapse Pipelines with scheduled triggers to refresh your views or underlying datasets. 
  • If you’re using serverless SQL views, ensure the logic behind them is updated and ready before the Power BI gateway refresh runs. 

Power BI Gateway: Semantic Model Refresh 

  • Schedule your Power BI gateway refresh to run after your Synapse views have completed refreshing. 
  • This ensures that the semantic model reflects the latest data before Excel attempts to pull it. 

Power Automate: Excel Workbook Refresh 

  • Schedule the Power Automate recurrence trigger to run after the Power BI semantic model refresh completes. 
  • Important: Always provide a safe buffer time (e.g., 5–10 minutes) between Power BI refresh and the Excel refresh via Power Automate to avoid syncing stale or partially updated data. 

Example Timing Setup: 

  • Azure Synapse pipeline runs at 2:00 AM 
  • Power BI semantic model refreshes at 2:15 AM 
  • Power Automate script runs at 2:45 AM 

This sequencing ensures data consistency across all layers. 

What Happens End to End 

  1. Synapse updates or refreshes the data in the SQL views. 
  2. Power BI semantic model (connected to Azure Synapse) is refreshed via scheduled refresh. 
  3. SharePoint Excel workbook, connected to that semantic model, is refreshed by a scheduled Power Automate flow running an Office Script. 
  4. Smartsheet, connected to the Excel workbook, always sees the most up-to-date data, fully automated. 

Example Use Case: Automating Sales Reporting for Smartsheet Dashboards 

Scenario:

A sales operations team needs daily reports in Smartsheet, which relies on data pulled from an Excel workbook stored in SharePoint. This Excel file should reflect the latest sales transaction data from Azure Synapse Analytics. 

Solution Implementation: 

  • Sales data is stored in Synapse view, updated nightly via a Synapse pipeline. 
  • A Power BI semantic model is created on top of this view and refreshed every morning. 
  • The Excel workbook in SharePoint connects to the Power BI model. 
  • A Power Automate flow runs an Office Script daily to refresh all data connections in Excel. 
  • The updated Excel file feeds into Smartsheet automatically, keeping dashboards current, no manual work required. 

This use case demonstrates how the automation flow ensures accurate, up-to-date reporting without any manual intervention, even though Synapse cannot natively write to SharePoint Excel. 

Conclusion 

If you’re trying to output Azure Synapse data into an Excel file stored in SharePoint, and need that file to stay in sync automatically, this is your workaround. While there’s no direct connector from Synapse to SharePoint Excel, Power BI + Power Automate fill the gap with a reliable and reusable pattern. 

July 21, 2025

Retrieval-augmented generation (RAG) has already reshaped how large language models (LLMs) interact with knowledge. But now, we’re witnessing a new evolution: the rise of RAG agents—autonomous systems that don’t just retrieve information, but plan, reason, and act.

In this guide, we’ll walk through what a rag agent actually is, how it differs from standard RAG setups, and why this new paradigm is redefining intelligent problem-solving.

Want to dive deeper into agentic AI? Explore our full breakdown in this blog.

What is Agentic RAG?

At its core, agentic rag (short for agentic retrieval-augmented generation) combines traditional RAG methods with the decision-making and autonomy of AI agents.

While classic RAG systems retrieve relevant knowledge to improve the responses of LLMs, they remain largely reactive, they answer what you ask but don’t think ahead. A rag agent pushes beyond this. It autonomously breaks down tasks, plans multiple reasoning steps, and dynamically interacts with tools, APIs, and multiple data sources—all with minimal human oversight.

In short: agentic rag isn’t just answering questions; it’s solving problems.

RAG vs Self RAG vs Agentic RAG
source: Medium

Discover how retrieval-augmented generation supercharges large language models, improving response accuracy and contextual relevance without retraining.

Standard RAG vs. Agentic RAG: What’s the Real Difference?

How Standard RAG Works

Standard RAG pairs an LLM with a retrieval system, usually a vector database, to ground its responses in real-world, up-to-date information. Here’s what typically happens:

  1. Retrieval: Query embeddings are matched against a vector store to pull in relevant documents.

  2. Augmentation: These documents are added to the prompt context.

  3. Generation: The LLM uses the combined context to generate a more accurate, grounded answer.

This flow works well, especially for answering straightforward questions or summarizing known facts. But it’s fundamentally single-shot—there’s no planning, no iteration, no reasoning loop.

Curious about whether to finetune or use RAG for your AI applications? This breakdown compares both strategies to help you choose the best path forward.

How Agentic RAG Steps It Up

Agentic RAG injects autonomy into the process. Now, you’re not just retrieving information, you’re orchestrating an intelligent agent to:

  • Break down queries into logical sub-tasks.

  • Strategize which tools or APIs to invoke.

  • Pull data from multiple knowledge bases.

  • Iterate on outputs, validating them step-by-step.

  • Incorporate multimodal data when needed (text, images, even structured tables).

Here’s how the two stack up:

Standard RAg vs RAG agent

Technical Architecture of Rag Agents

Let’s break down the tech stack that powers rag agents.

Core Components

  • AI Agent Framework: The backbone that handles planning, memory, task decomposition, and action sequencing. Common tools: LangChain, LlamaIndex, LangGraph.

  • Retriever Module: Connects to vector stores or hybrid search systems (dense + sparse) to fetch relevant content.

  • Generator Model: A large language model like GPT-4, Claude, or T5, used to synthesize and articulate final responses.

  • Tool Calling Engine: Interfaces with APIs, databases, webhooks, or code execution environments.

  • Feedback Loop: Incorporates user feedback and internal evaluation to improve future performance.

How It All Comes Together

  1. User submits a query say, “Compare recent trends in GenAI investments across Asia and Europe.”

  2. The rag agent plans its approach: decompose the request, decide on sources (news APIs, financial reports), and select retrieval strategy.

  3. It retrieves data from multiple sources—maybe some from a vector DB, others from structured APIs.

  4. It iterates, verifying facts, checking for inconsistencies, and possibly calling a summarization tool.

  5. It returns a comprehensive, validated answer—possibly with charts, structured data, or follow-up recommendations.

RAG Agent

Learn about the common pitfalls and technical hurdles of deploying RAG pipelines—and how to overcome them in real-world systems.

Benefits of Agentic RAG

Why go through the added complexity of building rag agents? Because they unlock next-level capabilities:

  • Flexibility: Handle multi-step, non-linear workflows that mimic human problem-solving.

  • Accuracy: Validate intermediate outputs, reducing hallucinations and misinterpretations.

  • Scalability: Multiple agents can collaborate in parallel—ideal for enterprise-scale workflows.

  • Multimodality: Support for image, text, code, and tabular data.

  • Continuous Learning: Through memory and feedback loops, agents improve with time and use.

Challenges and Considerations

Of course, this power comes with trade-offs:

  • System Complexity: Orchestrating agents, tools, retrievers, and LLMs can introduce fragility.

  • Compute Costs: More retrieval steps and more tool calls mean higher resource use.

  • Latency: Multi-step processes can be slower than simple RAG flows.

  • Reliability: Agents may fail, loop indefinitely, or return conflicting results.

  • Data Dependency: Poor-quality data or sparse knowledge bases degrade agent performance.

Rag agents are incredibly capable, but they require careful engineering and observability.

Real-World Use Cases

1. Enterprise Knowledge Retrieval

Employees can use rag agents to pull data from CRMs, internal wikis, reports, and dashboards—then get a synthesized answer or auto-generated summary.

2. Customer Support Automation

Instead of simple chatbots, imagine agents that retrieve past support tickets, call refund APIs, and escalate intelligently based on sentiment.

3. Healthcare Intelligence

Rag agents can combine patient history, treatment guidelines, and the latest research to suggest evidence-based interventions.

4. Business Intelligence

From competitor benchmarking to KPI tracking, rag agents can dynamically build reports across multiple structured and unstructured data sources.

5. Adaptive Learning Tools

Tutoring agents can adjust difficulty levels, retrieve learning material, and provide instant feedback based on a student’s knowledge gaps.

RAG Agent workflow
Langchain

Explore how context engineering is reshaping prompt design, retrieval quality, and system reliability in next-gen RAG and agentic systems.

Future Trends in Agentic RAG Technology

Here’s where the field is heading:

  • Multi-Agent Collaboration: Agents that pass tasks to each other—like departments in a company.

  • Open Source Growth: Community-backed frameworks like LangGraph and LlamaIndex are becoming more powerful and modular.

  • Verticalized Agents: Domain-specific rag agents for law, finance, medicine, and more.

  • Improved Observability: Tools for debugging reasoning chains and understanding agent behavior.

  • Responsible AI: Built-in mechanisms to ensure fairness, interpretability, and compliance.

Conclusion & Next Steps

Rag agents are more than an upgrade to RAG—they’re a new class of intelligent systems. By merging retrieval, reasoning, and tool execution into one autonomous workflow, they bridge the gap between passive Q&A and active problem-solving.

If you’re looking to build AI systems that don’t just answer but truly act—this is the direction to explore.

Next steps:

Frequently Asked Questions (FAQ)

Q1: What is a agentic rag?

Agentic rag combines retrieval-augmented generation with multi-step planning, memory, and tool usage—allowing it to autonomously tackle complex tasks.

Q2: How does agentic RAG differ from standard RAG?

Standard RAG retrieves documents and augments the LLM prompt. Agentic RAG adds reasoning, planning, memory, and tool calling—making the system autonomous and iterative.

Q3: What are the benefits of rag agents?

Greater adaptability, higher accuracy, multi-step reasoning, and the ability to operate across modalities and APIs.

Q4: What challenges should I be aware of?

Increased complexity, higher compute costs, and the need for strong observability and quality data.

Q5: Where can I learn more?

Start with open-source tools like LangChain and LlamaIndex, and explore educational content from Data Science Dojo and beyond.

July 21, 2025

If you’ve been following developments in open-source LLMs, you’ve probably heard the name Kimi K2 pop up a lot lately. Released by Moonshot AI, this new model is making a strong case as one of the most capable open-source LLMs ever released.

From coding and multi-step reasoning to tool use and agentic workflows, Kimi K2 delivers a level of performance and flexibility that puts it in serious competition with proprietary giants like GPT-4.1 and Claude Opus 4. And unlike those closed systems, Kimi K2 is fully open source, giving researchers and developers full access to its internals.

In this post, we’ll break down what makes Kimi K2 so special, from its Mixture-of-Experts architecture to its benchmark results and practical use cases.

Learn more about our Large Language Models in our detailed guide!

What is Kimi K2?

Key features of Kimi k2
source: KimiK2

Kimi K2 is an open-source large language model developed by Moonshot AI, a rising Chinese AI company. It’s designed not just for natural language generation, but for agentic AI, the ability to take actions, use tools, and perform complex workflows autonomously.

At its core, Kimi K2 is built on a Mixture-of-Experts (MoE) architecture, with a total of 1 trillion parameters, of which 32 billion are active during any given inference. This design helps the model maintain efficiency while scaling performance on-demand.

Moonshot released two main variants:

  • Kimi-K2-Base: A foundational model ideal for customization and fine-tuning.

  • Kimi-K2-Instruct: Instruction-tuned for general chat and agentic tasks, ready to use out-of-the-box.

Under the Hood: Kimi K2’s Architecture

What sets Kimi K2 apart isn’t just its scale—it’s the smart architecture powering it.

1. Mixture-of-Experts (MoE)

Kimi K2 activates only a subset of its full parameter space during inference, allowing different “experts” in the model to specialize in different tasks. This makes it more efficient than dense models of a similar size, while still scaling to complex reasoning or coding tasks when needed.

Want a detailed understanding of how Mixture Of Experts works? Check out our blog!

2. Training at Scale

  • Token volume: Trained on a whopping 15.5 trillion tokens

  • Optimizer: Uses Moonshot’s proprietary MuonClip optimizer to ensure stable training and avoid parameter blow-ups.

  • Post-training: Fine-tuned with synthetic data, especially for agentic scenarios like tool use and multi-step problem solving.

Performance Benchmarks: Does It Really Beat GPT-4.1?

Early results suggest that Kimi K2 isn’t just impressive, it’s setting new standards in open-source LLM performance, especially in coding and reasoning tasks.

Here are some key benchmark results (as of July 2025):

Kimi k2 benchmark results

Key takeaway:

  • Kimi k2 outperforms GPT-4.1 and Claude Opus 4 in several coding and reasoning benchmarks.
  • Excels in agentic tasks, tool use, and complex STEM challenges.
  • Delivers top-tier results while remaining open-source and cost-effective.

Learn more about Benchmarks and Evaluation in LLMs

Distinguishing Features of Kimi K2

1. Agentic AI Capabilities

Kimi k2 is not just a chatbot, it’s an agentic AI capable of executing shell commands, editing and deploying code, building interactive websites, integrating with APIs and external tools, and orchestrating multi-step workflows. This makes kimi k2 a powerful tool for automation and complex problem-solving.

Want to dive deeper into agentic AI? Explore our full breakdown in this blog.

2. Tool Use Training

The model was post-trained on synthetic agentic data to simulate real-world scenarios like:

  • Booking a flight

  • Cleaning datasets

  • Building and deploying websites

  • Self-evaluation using simulated user feedback

3. Open Source + Cost Efficiency

  • Free access via Kimi’s web/app interface

  • Model weights available on Hugging Face and GitHub

  • Inference compatibility with popular engines like vLLM, TensorRT-LLM, and SGLang

  • API pricing: Much lower than OpenAI and Anthropic—about $0.15 per million input tokens and $2.50 per million output tokens

Real-World Use Cases

Here’s how developers and teams are putting Kimi K2 to work:

Software Development

  • Generate, refactor, and debug code

  • Build web apps via natural language

  • Automate documentation and code reviews

Data Science

  • Clean and analyze datasets

  • Generate reports and visualizations

  • Automate ML pipelines and SQL queries

Business Automation

  • Automate scheduling, research, and email

  • Integrate with CRMs and SaaS tools via APIs

Education

  • Tutor users on technical subjects

  • Generate quizzes and study plans

  • Power interactive learning assistants

Research

  • Conduct literature reviews

  • Auto-generate technical summaries

  • Fine-tune for scientific domains

Example: A fintech startup uses Kimi K2 to automate exploratory data analysis (EDA), generate SQL from English, and produce weekly business insights—reducing analyst workload by 30%.

How to Access and Fine-Tune Kimi K2

Getting started with Kimi K2 is surprisingly simple:

Access Options

  • Web/App: Use the model via Kimi’s chat interface

  • API: Integrate via Moonshot’s platform (supports agentic workflows and tool use)

  • Local: Download weights (via Hugging Face or GitHub) and run using:

    • vLLM

    • TensorRT-LLM

    • SGLang

    • KTransformers

Fine-Tuning

  • Use LoRA, QLoRA, or full fine-tuning techniques

  • Customize for your domain or integrate into larger systems

  • Moonshot and the community are developing open-source tools for production-grade deployment

What the Community Thinks

So far, Kimi K2 has received an overwhelmingly positive response—especially from developers and researchers in open-source AI.

  • Praise: Strong coding performance, ease of integration, solid benchmarks

  • Concerns: Like all LLMs, it’s not immune to hallucinations, and there’s still room to grow in reasoning consistency

The release has also stirred broader conversations about China’s growing AI influence, especially in the open-source space.

Final Thoughts

Kimi K2 isn’t just another large language model. It’s a statement—that open-source AI can be state-of-the-art. With powerful agentic capabilities, competitive benchmark performance, and full access to weights and APIs, it’s a compelling choice for developers looking to build serious AI applications.

If you care about performance, customization, and openness, Kimi K2 is worth exploring.

What’s Next?

FAQs

Q1: Is Kimi K2 really open-source?

Yes—weights and model card are available under a permissive license.

Q2: Can I run it locally?

Absolutely. You’ll need a modern inference engine like vLLM or TensorRT-LLM.

Q3: How does it compare to GPT-4.1 or Claude Opus 4?

In coding benchmarks, it performs on par or better. Full comparisons in reasoning and chat still evolving.

Q4: Is it good for tool use and agentic workflows?

Yes—Kimi K2 was explicitly post-trained on tool-use scenarios and supports multi-step workflows.

Q5: Where can I follow updates?

Moonshot AI’s GitHub and community forums are your best bets.

July 15, 2025

Generative AI research is rapidly transforming the landscape of artificial intelligence, driving innovation in large language models, AI agents, and multimodal systems. Staying current with the latest breakthroughs is essential for data scientists, AI engineers, and researchers who want to leverage the full potential of generative AI. In this comprehensive roundup, we highlight this week’s top 4 research papers in generative AI research, each representing a significant leap in technical sophistication, practical impact, and our understanding of what’s possible with modern AI systems.

The Pulse of Generative AI Research

Generative AI research is at the heart of the artificial intelligence revolution, fueling advances in large language models (LLMs), AI agents, multimodal AI, and domain-specific foundation models. This week’s top research papers in generative AI research exemplify the technical rigor, creativity, and ambition that define the field today. Whether you’re interested in machine learning automation, memory-augmented models, or medical AI, these papers offer deep insights and actionable takeaways for anyone invested in the future of generative AI.

For more on the latest in generative AI research, visit the Data Science Dojo blog.

Generative Ai Research Paper

AI Research Agents for Machine Learning: Search, Exploration, and Generalization in MLE-bench

Source: AI Research Agents for Machine Learning: Search, Exploration, and Generalization in MLE-bench

AI Research Agents for Machine Learning: Search, Exploration, and Generalization in MLE-bench - Generative Ai Research Paper
source: https://arxiv.org/abs/2507.02554

Overview

This paper introduces a systematic framework for designing, evaluating, and benchmarking AI research agents—autonomous systems that automate the design, implementation, and optimization of machine learning models. The focus is on the MLE-bench, a challenging benchmark where agents compete in Kaggle-style competitions to solve real-world ML problems. By formalizing research agents as search policies navigating a space of candidate solutions, the study disentangles the impact of search strategies (Greedy, MCTS, Evolutionary) and operator sets (DRAFT, DEBUG, IMPROVE, MEMORY, CROSSOVER) on agent performance.

Key Insights

  • Operator Design is Critical:

    Study finds that the choice and design of operators (the actions agents can take to modify solutions) are more influential than the search policy itself. Operators such as DRAFT, DEBUG, IMPROVE, MEMORY, and CROSSOVER allow agents to iteratively refine solutions, debug code, and recombine successful strategies.

  • State-of-the-Art Results:

    The best combination of search strategy and operator set achieves a Kaggle medal success rate of 47.7% on MLE-bench lite, up from 39.6%. This is a significant improvement in benchmark evaluation for machine learning automation.

  • Generalization Gap:

    The paper highlights the risk of overfitting to validation metrics and the importance of robust evaluation protocols for scalable scientific discovery. The generalization gap between validation and test scores can mislead the search process, emphasizing the need for regularization and robust final-node selection strategies.

  • AIRA-dojo Framework:

    Introduction of AIRA-dojo, a scalable environment for benchmarking and developing AI research agents, supporting reproducible experiments and custom operator design. The framework allows for controlled experiments at scale, enabling systematic exploration of agentic policies and operator sets.

Main Takeaways

  • AI agents can automate and accelerate the scientific discovery process in machine learning, but their effectiveness hinges on the interplay between search strategies and operator design.
  • The research underscores the need for rigorous evaluation and regularization to ensure robust, generalizable results in generative AI research.
  • The AIRA-dojo framework is a valuable resource for the community, enabling systematic exploration of agentic policies and operator sets.

Why It’s Revolutionary

This work advances generative AI research by providing a principled methodology for building and evaluating AI agents that can autonomously explore, implement, and optimize machine learning solutions. It sets a new standard for transparency and reproducibility in agent-based generative AI systems, and the introduction of AIRA-dojo as a benchmarking environment accelerates progress by enabling the community to systematically test and improve AI agents.

GenSI MemAgent: Reshaping Long-Context LLM with Multi-Conv RL-based Memory Agent

Source: GenSI MemAgent: Reshaping Long-Context LLM with Multi-Conv RL-based Memory Agent

GenSI MemAgent: Reshaping Long-Context LLM with Multi-Conv RL-based Memory Agent - Generative AI Research Paper
source: https://arxiv.org/abs/2507.02259

Overview

This paper addresses one of the most pressing challenges in generative AI research: enabling large language models (LLMs) to process and reason over extremely long contexts efficiently. The authors introduce MEMAGENT, a novel agent workflow that reads text in segments and updates a fixed-length memory using an overwrite strategy, trained end-to-end with reinforcement learning (RL).

Key Insights

  • Linear Complexity for Long Contexts:

    MEMAGENT achieves nearly lossless performance extrapolation from 8K to 3.5M tokens, maintaining <5% performance loss and 95%+ accuracy on the 512K RULER test. This is a major breakthrough for long-context LLMs and memory-augmented models.

  • Human-Inspired Memory:

    The agent mimics human note-taking by selectively retaining critical information and discarding irrelevant details, enabling efficient long-context reasoning. The memory is a sequence of ordinary tokens inside the context window, allowing the model to flexibly handle arbitrary text lengths while maintaining a linear time complexity during processing.

  • Multi-Conversation RL Training:

    The paper extends the DAPO algorithm for multi-conversation RL, optimizing memory updates based on verifiable outcome rewards. This enables the model to learn what information to retain and what to discard dynamically.

  • Empirical Superiority:

    MEMAGENT outperforms state-of-the-art long-context LLMs in both in-domain and out-of-domain tasks, including QA, variable tracking, and information extraction. The architecture is compatible with existing transformer-based LLMs, making it a practical solution for real-world applications.

Main Takeaways

  • Memory-augmented models with RL-trained memory can scale to process arbitrarily long documents with linear computational cost, a major leap for generative AI research.
  • The approach generalizes across diverse tasks, demonstrating robust zero-shot learning and strong out-of-distribution performance.
  • MEMAGENT’s architecture is compatible with existing transformer-based LLMs, making it a practical solution for real-world applications.

W hy It’s Revolutionary

By solving the long-context bottleneck in generative AI, MEMAGENT paves the way for LLMs that can handle entire books, complex reasoning chains, and lifelong learning scenarios—key requirements for next-generation AI agents and foundation models. The integration of reinforcement learning for memory management is particularly innovative, enabling models to learn what information to retain and what to discard dynamically.

Dynamic Chunking for End-to-End Hierarchical Sequence Modeling

SourceDynamic Chunking for End-to-End Hierarchical Sequence Modeling

Dynamic Chunking for End-to-End Hierarchical Sequence Modeling - Generative Ai Research
source: https://arxiv.org/abs/2507.07955

Overview

This paper addresses a fundamental limitation in current generative AI research: the reliance on tokenization as a preprocessing step for language models. The authors propose H-Net, a dynamic chunking mechanism that learns content- and context-dependent segmentation strategies end-to-end, replacing the traditional tokenization-LM-detokenization pipeline with a single hierarchical model.

Key Insights
  • Tokenization-Free Modeling:

    H-Net learns to segment raw data into meaningful chunks, outperforming strong BPE-tokenized Transformers at equivalent compute budgets.

  • Hierarchical Abstraction:

    Iterating the hierarchy to multiple stages enables the model to capture multiple levels of abstraction, improving scaling with data and matching the performance of much larger token-based models.

  • Robustness and Interpretability:

    H-Nets show increased robustness to character-level noise and learn semantically coherent boundaries without explicit supervision.

  • Cross-Language and Modality Gains:

    The benefits are even greater for languages and modalities with weak tokenization heuristics (e.g., Chinese, code, DNA), achieving up to 4x improvement in data efficiency.

Main Takeaways

  • Dynamic chunking enables true end-to-end generative AI models that learn from unprocessed data, eliminating the biases and limitations of fixed-vocabulary tokenization.
  • H-Net’s architecture is modular and scalable, supporting hybrid and multi-stage designs for diverse data types.
  • The approach enhances both the efficiency and generalization of foundation models, making it a cornerstone for future generative AI research.

Why It’s Revolutionary

H-Net represents a paradigm shift in generative AI research, moving beyond handcrafted preprocessing to fully learnable, hierarchical sequence modeling. This unlocks new possibilities for multilingual, multimodal, and domain-agnostic AI systems.

MedGemma: Medical Vision-Language Foundation Models

Source: MedGemma Technical Report

Medgemma - Generative AI Research
source: https://www.alphaxiv.org/overview/2507.05201v2

Overview

MedGemma introduces a suite of medical vision-language foundation models based on the Gemma 3 architecture, optimized for advanced medical understanding and reasoning across images and text. The collection includes multimodal and text-only variants, as well as MedSigLIP, a specialized vision encoder.

Key Insights

  • Domain-Specific Foundation Models:

    MedGemma models outperform similar-sized generative models and approach the performance of task-specific models on medical benchmarks. The 4B variant accepts both text and images, excelling at vision question answering, chest X-ray classification, and histopathology analysis.

  • Fine-Tuning and Adaptability:

    MedGemma can be fine-tuned for subdomains, achieving state-of-the-art results in electronic health record retrieval, pneumothorax classification, and histopathology patch classification.

  • Zero-Shot and Data-Efficient Learning:

    MedSigLIP enables strong zero-shot and linear probe performance across multiple medical imaging domains.

  • Benchmark Evaluation:

    MedGemma demonstrates superior performance on medical multimodal question answering, chest X-ray finding classification, and agentic evaluations compared to the base models.

Main Takeaways

  • MedGemma demonstrates that specialized foundation models can deliver robust, efficient, and generalizable performance in medical AI, a critical area for real-world impact.
  • The models are openly released, supporting transparency, reproducibility, and community-driven innovation in generative AI research.
  • MedGemma’s architecture and training methodology set a new benchmark for multimodal AI in healthcare.

Why It’s Revolutionary

By bridging the gap between general-purpose and domain-specific generative AI, MedGemma accelerates the development of trustworthy, high-performance medical AI systems—showcasing the power of foundation models in specialized domains. The model’s ability to integrate multimodal data, support zero-shot and fine-tuned applications, and deliver state-of-the-art performance in specialized tasks demonstrates the versatility and impact of generative AI research.

Conclusion: The Road Ahead for Generative AI Research

Generative AI research is evolving at an extraordinary pace, with breakthroughs in large language models, multimodal AI, and foundation models redefining the boundaries of artificial intelligence. The four papers highlighted this week exemplify the field’s rapid progress toward more autonomous, scalable, and domain-adaptable AI systems.

From agentic search and memory-augmented models to medical foundation models, these advances are not just academic—they are shaping the future of AI in industry, healthcare, science, and beyond. As researchers continue to innovate, we can expect even more breakthroughs in generative AI research, driving the next wave of intelligent, adaptable, and impactful AI solutions.

For more insights and technical deep dives, explore the Data Science Dojo blog.

Frequently Asked Questions

Q1: What is the significance of memory-augmented models in generative AI research?

Memory-augmented models like MEMAGENT enable LLMs to process arbitrarily long contexts with linear computational cost, supporting complex reasoning and lifelong learning scenarios.

Q2: How do AI agents accelerate machine learning automation?

AI agents automate the design, implementation, and optimization of machine learning models, accelerating scientific discovery and enabling scalable, reproducible research.

Q3: Why are domain-specific foundation models important?

Domain-specific foundation models like MedGemma deliver superior performance in specialized tasks (e.g., medical AI) while retaining general capabilities, supporting both zero-shot and fine-tuned applications.

Q4: Where can I read more about generative AI research?

Visit the Data Science Dojo blog for the latest in generative AI research, technical deep dives, and expert analysis.

July 14, 2025

Artificial intelligence is evolving fast, and Grok 4, developed by xAI (Elon Musk’s AI company), is one of the most ambitious steps forward. Designed to compete with giants like OpenAI’s GPT-4, Google’s Gemini, and Anthropic’s Claude, Grok 4 brings a unique flavor to the large language model (LLM) space: deep reasoning, multimodal understanding, and real-time integration with live data.

But what exactly is Grok 4? How powerful is it, and what can it really do? In this post, we’ll walk you through Grok 4’s architecture, capabilities, benchmarks, and where it fits into the future of AI.

Grok 4 compute
source: xAi

What is Grok 4?

Grok 4 is the latest LLM from xAI, officially released in July 2025. At its core, Grok 4 is designed for advanced reasoning tasks—math, logic, code, and scientific thinking. Unlike earlier Grok versions, Grok 4 comes in two flavors:

  • Grok 4 (standard): A powerful single-agent language model.

  • Grok 4 Heavy: A multi-agent architecture for complex collaborative reasoning (think several AI minds working together on a task).

And yes, it’s big—Grok 4 boasts around 1.7 trillion parameters and was trained with 100× more compute than Grok 2, including heavy reinforcement learning, placing it firmly in the top tier of today’s models.

Technical Architecture and Capabilities

Let’s unpack what makes Grok 4 different from other LLMs.

1. Hybrid Neural Design

Grok 4 uses a modular architecture. That means it has specialized subsystems for tasks like code generation, language understanding, and mathematical reasoning. These modules are deeply integrated but operate with some autonomy—especially in the “Heavy” version, which simulates multi-agent collaboration.

2. Large Context Window

Context windows matter—especially for reasoning over long documents. Grok 4 supports up to 128,000 tokens in-app, and 256,000 tokens via API, allowing for detailed, multi-turn interactions and extended memory.

3. Multimodal AI

Grok 4 isn’t just about text. It can understand and reason over text and images, with voice capabilities as well (it features a British-accented voice assistant called Eve). Future updates are expected to add image generation and deeper visual reasoning.

5. Powered by Colossus

xAI trained Grok 4 using its Colossus supercomputer, which reportedly runs on 200,000 Nvidia GPUs—a serious investment in compute infrastructure.

Key Features That Stand Out

Reasoning & Scientific Intelligence

Grok 4 is built for deep thinking. It performs strongly in multi-step math, logic problems, and graduate-level scientific questions. On internal benchmarks like GPQA, AIME, and ARC-AGI, Grok 4 matches or surpasses other frontier models.

Code Generation with Grok 4 Code

The specialized Grok 4 Code variant targets developers. It delivers smart code suggestions, debugging help, and even software design ideas. It scores ~72–75% on SWE-Bench, a benchmark for real-world coding tasks—placing it among the best models for software engineering.

Real-Time Data via X

Here’s something unique: Grok 4 can access real-time data from X (formerly Twitter). That gives it a dynamic edge for tasks like market analysis, news summarization, and live sentiment tracking.

(Note: Despite some speculation, there’s no confirmed integration with live Tesla or SpaceX data.)

Benchmark Performance: Where Grok 4 Shines

Here’s how Grok 4 compares on key LLM benchmarks:

Compared to competitors like GPT-4 and Gemini, Grok 4 is especially strong in math, logic, and coding. The most notable result was from Humanit’s Last Exam, a benchmark comprising of 2500 hand-curated PhD level questions spanning math, physics, chemistry, linguistics and engineering. Grok 4 was able to solve about 38.6% of thw problems

Grok 4 on Humanity's Last exam
source: xAI

Real-World Use Cases

Whether you’re a data scientist, developer, or researcher, Grok 4 opens up a wide range of possibilities:

  • Exploratory Data Analysis: Grok 4 can automate EDA, identify patterns, and suggest hypotheses.

  • Software Development: Generate, review, and optimize code with the Grok 4 Code variant.

  • Document Understanding: Summarize long documents, extract key insights, and answer questions in context.

  • Real-Time Analytics: Leverage live data from X for trend analysis, event monitoring, and anomaly detection.

  • Collaborative Research: In its “Heavy” form, Grok 4 supports multi-agent collaboration on scientific tasks like literature reviews and data synthesis.

Developer Tools and API Access

Developers can tap into Grok 4’s capabilities via APIs. It supports:

  • Structured outputs (like JSON)

  • Function calling

  • Multimodal inputs (text + image)

  • Voice interaction via integrated assistant (in Grok 4 web app)

The API is accessible via a “SuperGrok” plan ($30/month) for Grok 4 and $300/month for Grok 4 Heavy (SuperGrok Heavy).

Ethics, Bias, and Environmental Impact

No powerful model is without trade-offs. Here’s what to watch:

  • Bias and Content Moderation: Earlier versions of Grok generated problematic or politically charged content. xAI has since added filters, but content safety remains an active concern.

  • Accessibility: The price point may limit access for independent researchers and small teams.

  • Environmental Footprint: Training Grok 4 required massive compute power. xAI’s Colossus supercomputer raises valid questions about energy efficiency and sustainability.

Challenges and Limitations

While Grok 4 is impressive, it’s not without challenges:

  • Speed: Especially for the multi-agent “Heavy” model, latency can be noticeable.

  • Visual Reasoning: While it supports images, Grok 4’s vision capabilities still trail behind dedicated models like Gemini or Claude Opus.

  • Scalability: Managing collaborative agents at scale (in Grok 4 Heavy) is complex and still evolving.

What’s Next for Grok?

xAI has big plans:

  • Specialized Models: Expect focused versions for coding, multimodal generation, and even video reasoning.

  • Open-Source Releases: Smaller Grok variants may be open-sourced to support research and transparency.

  • Human-AI Collaboration: Musk envisions Grok as a step toward AGI, capable of teaming with humans to solve tough scientific and societal problems.

FAQ

Q1: What makes Grok 4 different from previous large language models?

Grok 4’s hybrid, multi-agent architecture and advanced reasoning capabilities set it apart, enabling superior performance in mathematical, coding, and multimodal tasks.

Q2: How does Grok 4 handle real-time data?

Grok 4 integrates live data from platforms like X, supporting real-time analytics and decision-making.

Q3: What are the main ethical concerns with Grok 4?

Unfiltered outputs and potential bias require robust content moderation and ethical oversight.

Q4: Can developers integrate Grok 4 into their applications?

Yes, Grok 4 offers comprehensive API access and documentation for seamless integration.

Q5: What’s next for Grok 4?

xAI plans to release specialized models, enhance multimodal capabilities, and introduce open-source variants to foster community research.

For more in-depth AI guides and technical resources, visit Data Science Dojo’s blog.

Final Thoughts

Grok 4 is more than just another LLM—it’s xAI’s bold bet on the future of reasoning-first AI. With cutting-edge performance in math, code, and scientific domains, Grok 4 is carving out a unique space in the AI ecosystem.

Yes, it has limitations. But if you’re building advanced AI applications or exploring the frontiers of human-machine collaboration, Grok 4 is a model to watch—and maybe even build with.

July 11, 2025

Model Context Protocol (MCP) is rapidly emerging as the foundational layer for intelligent, tool-using AI systems, especially as organizations shift from prompt engineering to context engineering. Developed by Anthropic and now adopted by major players like OpenAI and Microsoft, MCP provides a standardized, secure way for large language models (LLMs) and agentic systems to interface with external APIs, databases, applications, and tools. It is revolutionizing how developers scale, govern, and deploy context-aware AI applications at the enterprise level.

As the world embraces agentic AI, where models don’t just generate text but interact with tools and act autonomously, MCP ensures those actions are interoperable, auditable, and secure, forming the glue that binds agents to the real world.

What Is Agentic AI? Master 6 Steps to Build Smart Agents

What is Model Context Protocol?

What is Model Context Protocol (MCP)

Model Context Protocol is an open specification that standardizes the way LLMs and AI agents connect with external systems like REST APIs, code repositories, knowledge bases, cloud applications, or internal databases. It acts as a universal interface layer, allowing models to ground their outputs in real-world context and execute tool calls safely.

Key Objectives of MCP:

  • Standardize interactions between models and external tools

  • Enable secure, observable, and auditable tool usage

  • Reduce integration complexity and duplication

  • Promote interoperability across AI vendors and ecosystems

Unlike proprietary plugin systems or vendor-specific APIs, MCP is model-agnostic and language-independent, supporting multiple SDKs including Python, TypeScript, Java, Swift, Rust, Kotlin, and more.

Learn more about Agentic AI Communication Protocols 

Why MCP Matters: Solving the M×N Integration Problem

Before MCP, integrating each of M models (agents, chatbots, RAG pipelines) with N tools (like GitHub, Notion, Postgres, etc.) required M × N custom connections—leading to enormous technical debt.

MCP collapses this to M + N:

  • Each AI agent integrates one MCP client

  • Each tool or data system provides one MCP server

  • All components communicate using a shared schema and protocol

This pattern is similar to USB-C in hardware: a unified protocol for any model to plug into any tool, regardless of vendor.

Architecture: Clients, Servers, and Hosts

Blog | Data Science Dojo
source: dida.do

MCP is built around a structured host–client–server architecture:

1. Host

The interface a user interacts with—e.g., an IDE, a chatbot UI, a voice assistant.

2. Client

The embedded logic within the host that manages communication with MCP servers. It mediates requests from the model and sends them to the right tools.

3. Server

An independent interface that exposes tools, resources, and prompt templates through the MCP API.

Supported Transports:

  • stdio: For local tool execution (high trust, low latency)

  • HTTP/SSE: For cloud-native or remote server integration

Example Use Case:

An AI coding assistant (host) uses an MCP client to connect with:

  • A GitHub MCP server to manage issues or PRs

  • A CI/CD MCP server to trigger test pipelines

  • A local file system server to read/write code

All these interactions happen via a standard protocol, with complete traceability.

Key Features and Technical Innovations

A. Unified Tool and Resource Interfaces

  • Tools: Executable functions (e.g., API calls, deployments)

  • Resources: Read-only data (e.g., support tickets, product specs)

  • Prompts: Model-guided instructions on how to use tools or retrieve data effectively

This separation makes AI behavior predictable, modular, and controllable.

B. Structured Messaging Format

MCP defines strict message types:

  • user, assistant, tool, system, resource

Each message is tied to a role, enabling:

  • Explicit context control

  • Deterministic tool invocation

  • Preventing prompt injection and role leakage

C. Context Management

MCP clients handle context windows efficiently:

  • Trimming token history

  • Prioritizing relevant threads

  • Integrating summarization or vector embeddings

This allows agents to operate over long sessions, even with token-limited models.

D. Security and Governance

MCP includes:

  • OAuth 2.1, mTLS for secure authentication

  • Role-based access control (RBAC)

  • Tool-level permission scopes

  • Signed, versioned components for supply chain security

E. Open Extensibility

  • Dozens of public MCP servers now exist for GitHub, Slack, Postgres, Notion, and more.

  • SDKs available in all major programming languages

  • Supports custom toolchains and internal infrastructure

Model Context Protocol in Practice: Enterprise Use Cases

Example Usecases for MCP
source: Instructa.ai

1. AI Assistants

LLMs access user history, CRM data, and company knowledge via MCP-integrated resources—enabling dynamic, contextual assistance.

2. RAG Pipelines

Instead of static embedding retrieval, RAG agents use MCP to query live APIs or internal data systems before generating responses.

3. Multi-Agent Workflows

Agents delegate tasks to other agents, tools, or humans, all via standardized MCP messages—enabling team-like behavior.

4. Developer Productivity

LLMs in IDEs use MCP to:

  • Review pull requests

  • Run tests

  • Retrieve changelogs

  • Deploy applications

5. AI Model Evaluation

Testing frameworks use MCP to pull logs, test cases, and user interactions—enabling automated accuracy and safety checks.

Learn how to build enterprise level LLM Applications in our LLM Bootcamp

Security, Governance, and Best Practices

Key Protections:

  • OAuth 2.1 for remote authentication

  • RBAC and scopes for granular control

  • Logging at every tool/resource boundary

  • Prompt/tool injection protection via strict message typing

Emerging Risks (From Security Audits):

  • Model-generated tool calls without human approval

  • Overly broad access scopes (e.g., root-level API tokens)

  • Unsandboxed execution leading to code injection or file overwrite

Recommended Best Practices:

  • Use MCPSafetyScanner or static analyzers

  • Limit tool capabilities to least privilege

  • Audit all calls via logging and change monitoring

  • Use vector databases for scalable context summarization

Learn More About LLM Observability and Monitoring

MCP vs. Legacy Protocols

What is the difference between MCP and Legacy Protocols

Enterprise Implementation Roadmap

Phase 1: Assessment

  • Inventory internal tools, APIs, and data sources

  • Identify existing agent use cases or gaps

Phase 2: Pilot

  • Choose a high-impact use case (e.g., customer support, devops)

  • Set up MCP client + one or two MCP servers

Phase 3: Secure and Monitor

  • Apply auth, sandboxing, and audit logging

  • Integrate with security tools (SIEM, IAM)

Phase 4: Scale and Institutionalize

  • Develop internal patterns and SDK wrappers

  • Train teams to build and maintain MCP servers

  • Codify MCP use in your architecture governance

Want to learn how to build production ready Agentic Applications? Check out our Agentic AI Bootcamp

Challenges, Limitations, and the Future of Model Context Protocol

Known Challenges:

  • Managing long context histories and token limits

  • Multi-agent state synchronization

  • Server lifecycle/versioning and compatibility

Future Innovations:

  • Embedding-based context retrieval

  • Real-time agent collaboration protocols

  • Cloud-native standards for multi-vendor compatibility

  • Secure agent sandboxing for tool execution

As agentic systems mature, MCP will likely evolve into the default interface layer for enterprise-grade LLM deployment, much like REST or GraphQL for web apps.

FAQ

Q: What is the main benefit of MCP for enterprises?

A: MCP standardizes how AI models connect to tools and data, reducing integration complexity, improving security, and enabling scalable, context-aware AI solutions.

Q: How does MCP improve security?

A: MCP enforces authentication, authorization, and boundary controls, protecting against prompt/tool injection and unauthorized access.

Q: Can MCP be used with any LLM or agentic AI system?

A: Yes, MCP is model-agnostic and supported by major vendors (Anthropic, OpenAI), with SDKs for multiple languages.

Q: What are the best practices for deploying MCP?

A: Use vector databases, optimize context windows, sandbox local servers, and regularly audit/update components for security.

Conclusion: 

Model Context Protocol isn’t just another spec, it’s the API standard for agentic intelligence. It abstracts away complexity, enforces governance, and empowers AI systems to operate effectively across real-world tools and systems.

Want to build secure, interoperable, and production-grade AI agents?

July 8, 2025

Context engineering is quickly becoming the new foundation of modern AI system design, marking a shift away from the narrow focus on prompt engineering. While prompt engineering captured early attention by helping users coax better outputs from large language models (LLMs), it is no longer sufficient for building robust, scalable, and intelligent applications. Today’s most advanced AI systems—especially those leveraging Retrieval-Augmented Generation (RAG) and agentic architectures—demand more than clever prompts. They require the deliberate design and orchestration of context: the full set of information, memory, and external tools that shape how an AI model reasons and responds.

This blog explores why context engineering is now the core discipline for AI engineers and architects. You’ll learn what it is, how it differs from prompt engineering, where it fits in modern AI workflows, and how to implement best practices—whether you’re building chatbots, enterprise assistants, or autonomous AI agents.

Context Engineering - What it encapsulates
source: Philschmid

What is Context Engineering?

Context engineering is the systematic design, construction, and management of all information—both static and dynamic—that surrounds an AI model during inference. While prompt engineering optimizes what you say to the model, context engineering governs what the model knows when it generates a response.

In practical terms, context engineering involves:

  • Assembling system instructions, user preferences, and conversation history
  • Dynamically retrieving and integrating external documents or data
  • Managing tool schemas and API outputs
  • Structuring and compressing information to fit within the model’s context window

In short, context engineering expands the scope of model interaction to include everything the model needs to reason accurately and perform autonomously.

Why Context Engineering Matters in Modern AI

The rise of large language models and agentic AI has shifted the focus from model-centric optimization to context-centric architecture. Even the most advanced LLMs are only as good as the context they receive. Without robust context engineering, AI systems are prone to hallucinations, outdated answers, and inconsistent performance.

Context engineering solves foundational AI problems:

  • Hallucinations → Reduced via grounding in real, external data

  • Statelessness → Replaced by memory buffers and stateful user modelling

  • Stale knowledge → Solved via retrieval pipelines and dynamic knowledge injection

  • Weak personalization → Addressed by user state tracking and contextual preference modeling

  • Security and compliance risks → Mitigated via context sanitization and access controls

As Sundeep Teki notes, “The most capable models underperform not due to inherent flaws, but because they are provided with an incomplete, ‘half-baked view of the world’.” Context engineering fixes this by ensuring AI models have the right knowledge, memory, and tools to deliver meaningful results.

Context Engineering vs. Prompt Engineering

While prompt engineering is about crafting the right question, context engineering is about ensuring the AI has the right environment and information to answer that question. Every time, in every scenario.

Prompt Engineering:

  • Focuses on single-turn instructions
  • Optimizes for immediate output quality
  • Limited by the information in the prompt

For a full guide on prompt engineering, check out Master Prompt Engineering Strategies

Context Engineering:

  • Dynamically assembles all relevant background- the prompt, retrieved docs, conversation history, tool metadata, internal memory, and more
  • Supports multi-turn, stateful, and agentic workflows
  • Enables retrieval of external knowledge and integration with APIs

In short, prompt engineering is a subset of context engineering. As AI systems become more complex, context engineering becomes the primary differentiator for robust, production-grade solutions.

Prompt Engineering vs Context Engineering

The Pillars of Context Engineering

To build effective context engineering pipelines, focus on these core pillars:

1. Dynamic Context Assembly

Context is built on the fly, evolving as conversations or tasks progress. This includes retrieving relevant documents, maintaining memory, and updating user state.

2. Comprehensive Context Injection

The model should receive:

  • Instructions (system + role-based)

  • User input (raw + refined)

  • Retrieved documents

  • Tool output / API results

  • Prior conversation turns

  • Memory embeddings

3. Context Sharing

In multi-agent systems, context must be passed across agents to maintain task continuity and semantic alignment. This requires structured message formats, memory synchronization, and agent protocols (e.g., A2A protocol).

4. Context Window Management

With fixed-size token limits (e.g., 32K, 100K, 1M), engineers must compress and prioritize information intelligently using:

  • Scoring functions (e.g., TF-IDF, embeddings, attention heuristics)

  • Summarization and saliency extraction

  • Chunking strategies and overlap tuning

Learn more about the context window paradox in The LLM Context Window Paradox: Is Bigger Always Better?

5. Quality and Relevance

Only the most relevant, high-quality context should be included. Irrelevant or noisy data leads to confusion and degraded performance.

6. Memory Systems

Build both:

  • Short-term memory (conversation buffers)

  • Long-term memory (vector stores, session logs)

Memory recall enables continuity and learning across sessions, tasks, or users.

7. Integration of Knowledge Sources

Context engineering connects LLMs to external databases, APIs, and tools, often via RAG pipelines.

8. Security and Consistency

Apply principles like:

  • Prompt injection detection and mitigation

  • Context sanitization (PII redaction, policy checks)

  • Role-based context access control

  • Logging and auditability for compliance

RAG: The Foundation of Context Engineering

Retrieval-Augmented Generation (RAG) is the foundational pattern of context engineering. RAG combines the static knowledge of LLMs with dynamic retrieval from external knowledge bases, enabling AI to “look up” relevant information before generating a response.

Get the ultimate RAG walk through in RAG in LLM – Elevate Your Large Language Models Experience

How RAG Works

  1. Indexing:

    Documents are chunked and embedded into a vector database.

  2. Retrieval:

    At query time, the system finds the most semantically relevant chunks.

  3. Augmentation:

    Retrieved context is concatenated with the prompt and fed to the LLM.

  4. Generation:

    The model produces a grounded, context-aware response.

Benefits of RAG in Context Engineering:

  • Reduces hallucinations
  • Enables up-to-date, domain-specific answers
  • Provides source attribution
  • Scales to enterprise knowledge needs

Advanced Context Engineering Techniques

1. Agentic RAG

Embed RAG into multi-step agent loops with planning, tool use, and reflection. Agents can:

  • Search documents

  • Summarize or transform data

  • Plan workflows

  • Execute via tools or APIs
    This is the architecture behind assistant platforms like AutoGPT, BabyAGI, and Ejento.

2. Context Compression

With million-token context windows, simply stuffing more data is inefficient. Use proxy models or scoring functions (e.g., Sentinel, ContextRank) to:

  • Prune irrelevant context

  • Generate summaries

  • Optimize token usage

3. Graph RAG

For structured enterprise data, Graph RAG retrieves interconnected entities and relationships from knowledge graphs, enabling multi-hop reasoning and richer, more accurate responses.

Learn Advanced RAG Techniques in Large Language Models Bootcamp

Context Engineering in Practice: Enterprise

Enterprise Knowledge Federation

Enterprises often struggle with knowledge fragmented across countless silos: Confluence, Jira, SharePoint, Slack, CRMs, and various databases. Context engineering provides the architecture to unify these disparate sources. An enterprise AI assistant can use a multi-agent RAG system to query a Confluence page, pull a ticket status from Jira, and retrieve customer data from a CRM to answer a complex query, presenting a single, unified, and trustworthy response.

Developer Platforms

The next evolution of coding assistants is moving beyond simple autocomplete. Systems are being built that have full context of an entire codebase, integrating with Language Server Protocols (LSP) to understand type errors, parsing production logs to identify bugs, and reading recent commits to maintain coding style. These agentic systems can autonomously write code, create pull requests, and even debug issues based on a rich, real-time understanding of the development environment.

Hyper-Personalization

In sectors like e-commerce, healthcare, and finance, deep context is enabling unprecedented levels of personalization. A financial advisor bot can provide tailored advice by accessing a user’s entire portfolio, their stated risk tolerance, and real-time market data. A healthcare assistant can offer more accurate guidance by considering a patient’s full medical history, recent lab results, and even data from wearable devices.

Best Practices for Context Engineering

What Context Engineers do
source: Langchain
  • Treat Context as a Product:

    Version control, quality checks, and continuous improvement.

  • Start with RAG:

    Use RAG for external knowledge; fine-tune only when necessary.

  • Structure Prompts Clearly:

    Separate instructions, context, and queries for clarity.

  • Leverage In-Context Learning:

    Provide high-quality examples in the prompt.

  • Iterate Relentlessly:

    Experiment with chunking, retrieval, and prompt formats.

  • Monitor and Benchmark:

    Use hybrid scorecards to track both AI quality and engineering velocity.

If you’re a beginner, start with this comprehensive guide What is Prompt Engineering? Master GenAI Techniques

Challenges and Future Directions

  • Context Quality Paradox:

    More context isn’t always better—balance breadth and relevance.

  • Context Consistency:

    Dynamic updates and user corrections require robust context refresh logic.

  • Security:

    Guard against prompt injection, data leakage, and unauthorized tool use.

  • Scaling Context:

    As context windows grow, efficient compression and navigation become critical.

  • Ethics and Privacy:

    Context engineering must address data privacy, bias, and responsible AI use.

Emerging Trends:

  • Context learning systems that adapt context strategies automatically
  • Context-as-a-service platforms
  • Multimodal context (text, audio, video)
  • Contextual AI ethics frameworks

Frequently Asked Questions (FAQ)

Q: How is context engineering different from prompt engineering?

A: Prompt engineering is about crafting the immediate instruction for an AI model. Context engineering is about assembling all the relevant background, memory, and tools so the AI can respond effectively—across multiple turns and tasks.

Q: Why is RAG important in context engineering?

A: RAG enables LLMs to access up-to-date, domain-specific knowledge by retrieving relevant documents at inference time, reducing hallucinations and improving accuracy.

Q: What are the biggest challenges in context engineering?

A: Managing context window limits, ensuring context quality, maintaining security, and scaling context across multimodal and multi-agent systems.

Q: What tools and frameworks support context engineering?

A: Popular frameworks include LangChain, LlamaIndex, which offer orchestration, memory management, and integration with vector databases.

Conclusion: The Future is Context-Aware

Context engineering is the new foundation for building intelligent, reliable, and enterprise-ready AI systems. By moving beyond prompt engineering and embracing dynamic, holistic context management, organizations can unlock the full potential of LLMs and agentic AI.

Ready to elevate your AI strategy?

  • Explore Data Science Dojo’s LLM Bootcamp for hands-on training.
  • Stay updated with the latest in context engineering by subscribing to leading AI newsletters and blogs.

The future of AI belongs to those who master context engineering. Start engineering yours today.

July 7, 2025

Open source tools for agentic AI are transforming how organizations and developers build intelligent, autonomous agents. At the forefront of the AI revolution, open source tools for agentic AI development enable rapid prototyping, transparent collaboration, and scalable deployment of agentic systems across industries. In this comprehensive guide, we’ll explore the most current and trending open source tools for agentic AI development, how they work, why they matter, and how you can leverage them to build the next generation of autonomous AI solutions.

What Are Open Source Tools for Agentic AI Development?

Open source tools for agentic AI are frameworks, libraries, and platforms that allow anyone to design, build, test, and deploy intelligent agents—software entities that can reason, plan, act, and collaborate autonomously. These tools are freely available, community-driven, and often integrate with popular machine learning, LLM, and orchestration ecosystems.

Key features:

  • Modularity:

    Build agents with interchangeable components (memory, planning, tool use, communication).

  • Interoperability:

    Integrate with APIs, databases, vector stores, and other agents.

  • Transparency:

    Access source code for customization, auditing, and security.

  • Community Support:

    Benefit from active development, documentation, and shared best practices.

Why Open Source Tools for Agentic AI Development Matter

  1. Accelerated Innovation:

    Lower the barrier to entry, enabling rapid experimentation and iteration.

  2. Cost-Effectiveness:

    No licensing fees or vendor lock-in—open source tools for agentic AI development are free to use, modify, and deploy at scale.

  3. Security and Trust:

    Inspect the code, implement custom guardrails, and ensure compliance with industry standards.

  4. Scalability:

    Many open source tools for agentic AI development are designed for distributed, multi-agent systems, supporting everything from research prototypes to enterprise-grade deployments.

  5. Ecosystem Integration:

    Seamlessly connect with popular LLMs, vector databases, cloud platforms, and MLOps pipelines.

The Most Trending Open Source Tools for Agentic AI Development

Below is a curated list of the most impactful open source tools for agentic AI development in 2025, with actionable insights and real-world examples.

1. LangChain

Open source tools for AI
source: ProjectPro
  • What it is:

    The foundational Python/JS framework for building LLM-powered applications and agentic workflows.

  • Key features:

    Modular chains, memory, tool integration, agent orchestration, support for vector databases, and prompt engineering.

  • Use case:

    Build custom agents that can reason, retrieve context, and interact with APIs.

Learn more: Mastering LangChain

2. LangGraph

Blog | Data Science Dojo

  • What it is:

    A graph-based extension of LangChain for orchestrating complex, stateful, multi-agent workflows.

  • Key features:

    Node-based execution, cyclic graphs, memory passing, async/sync flows, and human-in-the-loop support.

  • Use case:

    Design multi-agent systems for research, customer support, or workflow automation.

Learn more: Decode How to Build Agentic Applications using LangGraph

3. AutoGen (Microsoft)

Blog | Data Science Dojo

  • What it is:

    A multi-agent conversation framework for orchestrating collaborative, event-driven agentic systems.

  • Key features:

    Role-based agents, dialogue loops, tool integration, and support for distributed environments.

  • Use case:

    Automate complex workflows (e.g., MLOps pipelines, IT automation) with multiple specialized agents.

GitHub: AutoGen

4. CrewAI

Blog | Data Science Dojo

  • What it is:

    A role-based orchestration framework for building collaborative agent “crews.”

  • Key features:

    Assign roles (researcher, planner, executor), manage agent collaboration, and simulate real-world team dynamics.

  • Use case:

    Content generation, research automation, and multi-step business processes.

GitHub: CrewAI

5. LlamaIndex

Blog | Data Science Dojo
source: Leewayhertz
  • What it is:

    A data framework for connecting LLMs to structured and unstructured data sources.

  • Key features:

    Data connectors, retrieval-augmented generation (RAG), knowledge graphs, and agent toolkits.

  • Use case:

    Build context-aware agents that can search, summarize, and reason over enterprise data.

Learn more: LLamaIndex

6. SuperAGI

Blog | Data Science Dojo

  • What it is:

    A full-stack agent infrastructure with GUI, toolkits, and vector database integration.

  • Key features:

    Visual interface, multi-agent orche     stration, extensibility, and enterprise readiness.

  • Use case:

    Prototype and scale autonomous agents for business, research, or automation.

GitHub: SuperAGI

7. MetaGPT

Blog | Data Science Dojo

  • What it is:

    A multi-agent framework simulating software development teams (CEO, PM, Dev).

  • Key features:

    Role orchestration, collaborative planning, and autonomous software engineering.

  • Use case:

    Automate software project management and development pipelines.

GitHub: MetaGPT

8. BabyAGI

  • What it is:

    A lightweight, open source agentic AI system for autonomous task management.

  • Key features:

    Task planning, prioritization, execution, and memory loop.

  • Use case:

    Automate research, data collection, and repetitive workflows.

GitHub: BabyAGI

9. AgentBench & AgentOps

  • What they are:

    Open source frameworks for benchmarking, evaluating, and monitoring agentic AI systems.

  • Key features:

    Standardized evaluation, observability, debugging, and performance analytics.

  • Use case:

    Test, debug, and optimize agentic AI workflows for reliability and safety.

Learn more: LLM Observability and Monitoring

10. OpenDevin, Devika, and Aider

  • What they are:

    Open source AI software engineers for autonomous coding, debugging, and codebase management.

  • Key features:

    Code generation, task planning, and integration with developer tools.

  • Use case:

    Automate software engineering tasks, from bug fixes to feature development.

GitHub: OpenDevinDevikaAider

How to Choose the Right Open Source Tools for Agentic AI Development

Consider these factors:

  • Project Scope:

    Are you building a single-agent app or a multi-agent system?

  • Technical Skill Level:

    Some tools (e.g., LangChain, LangGraph) require Python/JS proficiency; others (e.g., N8N, LangFlow) offer no-code/low-code interfaces.

  • Ecosystem Integration:

    Ensure compatibility with your preferred LLMs, vector stores, and APIs.

  • Community and Documentation:

    Look for active projects with robust documentation and support.

  • Security and Compliance:

    Open source means you can audit and customize for your organization’s needs.

Real-World Examples: Open Source Tools for Agentic AI Development in Action

  • Healthcare:

    Use LlamaIndex and LangChain to build agents that retrieve and summarize patient records for clinical decision support.

  • Finance:

    Deploy CrewAI and AutoGen for fraud detection, compliance monitoring, and risk assessment.

  • Customer Service:

    Integrate SuperAGI and LangFlow to automate multi-channel support with context-aware agents.

Frequently Asked Questions (FAQ)

Q1: What are the advantages of using open source tools for agentic AI development?

A: Open source tools for agentic AI development offer transparency, flexibility, cost savings, and rapid innovation. They allow you to customize, audit, and scale agentic systems without vendor lock-in.

Q2: Can I use open source tools for agentic AI development in production?

A: Yes. Many open source tools for agentic AI development (e.g., LangChain, LlamaIndex, SuperAGI) are production-ready and used by enterprises worldwide.

Q3: How do I get started with open source tools for agentic AI development?

A: Start by identifying your use case, exploring frameworks like LangChain or CrewAI, and leveraging community tutorials and documentation. Consider enrolling in the Agentic AI Bootcamp for hands-on learning.

 

Conclusion: Start Building with Open Source Tools for Agentic AI Development

Open source tools for agentic AI development are democratizing the future of intelligent automation. Whether you’re a developer, data scientist, or business leader, these tools empower you to build, orchestrate, and scale autonomous agents for real-world impact. Explore the frameworks, join the community, and start building the next generation of agentic AI today.

July 2, 2025

Agentic AI communication protocols are at the forefront of redefining intelligent automation. Unlike traditional AI, which often operates in isolation, agentic AI systems consist of multiple autonomous agents that interact, collaborate, and adapt to complex environments. These agents, whether orchestrating supply chains, powering smart homes, or automating enterprise workflows, must communicate seamlessly to achieve shared goals.

 

Explore more on how to build agents in What Is Agentic AI? Master 6 Steps to Build Smart Agents

 

But how do these agents “talk” to each other, coordinate actions, and access external tools or data? The answer lies in robust communication protocols. Just as the internet relies on TCP/IP to connect billions of devices, agentic AI depends on standardized protocols to ensure interoperability, security, and scalability.

In this blog, we will explore the leading agentic AI communication protocols, including MCP, A2A, and ACP, as well as emerging standards, protocol stacking strategies, implementation challenges, and real-world applications. Whether you’re a data scientist, AI engineer, or business leader, understanding these protocols is essential for building the next generation of intelligent systems.

 

What Are Agentic AI Communication Protocols?

Agentic AI communication protocols are standardized rules and message formats that enable autonomous agents to interact with each other, external tools, and data sources. These protocols ensure that agents, regardless of their underlying architecture or vendor, can:

  1. Discover and authenticate each other
  2. Exchange structured information
  3. Delegate and coordinate tasks
  4. Access real-time data and external APIs
  5. Maintain security, privacy, and observability

Without these protocols, agentic systems would be fragmented, insecure, and difficult to scale, much like the early days of computer networking.

 

Legacy Protocols That Paved the Way:

Before agentic ai communication protocols, there were legacy communication protocols, such as KQML and FIPA-ACL, which were developed to enable autonomous software agents to exchange information, coordinate actions, and collaborate within distributed systems. Their main purpose was to establish standardized message formats and interaction rules, ensuring that agents, often built by different developers or organizations, could interoperate effectively. These protocols played a foundational role in advancing multi-agent research and applications, setting the stage for today’s more sophisticated and scalable agentic AI communication standards. Now that we have a brief idea on what laid the foundation for the agentic ai communication protocols we see so much these days, let’s dive deep into some of the most used ones.

 

Deep Dive: MCP, A2A, and ACP Explained

MCP (Model Context Protocol)

Overview:

MCP, or Model Context Protocol, one of the most popular agentic ai communication protocol, is designed to standardize how AI models, especially large language models (LLMs), connect to external tools, APIs, and data sources. Developed by Anthropic, MCP acts as a universal “adapter,” allowing models to ground their responses in real-time context and perform actions beyond text generation.

Model Context Protocol - Interaction of client and server using MCP protocol

Key Features:
  1. Universal integration with APIs, databases, and tools
  2. Secure, permissioned access to external resources
  3. Context-aware responses for more accurate outputs
  4. Open specification for broad developer adoption
Use Cases:
  1. Real-time data retrieval (e.g., weather, stock prices)
  2. Enterprise knowledge base access
  3. Automated document analysis
  4. IoT device control
Comparison to Legacy Protocols:

Legacy agent communication protocols like FIPA-ACL and KQML focused on structured messaging but lacked the flexibility and scalability needed for today’s LLM-driven, cloud-native environments. MCP’s open, extensible design makes it ideal for modern multi-agent systems.

 

Learn more about context-aware agentic applications in our LangGraph tutorial.

A2A (Agent-to-Agent Protocol)

Overview:

A2A, or Agent-to-Agent Protocol, is an open standard (spearheaded by Google) for direct communication between autonomous agents. It enables agents to discover each other, advertise capabilities, negotiate tasks, and collaborate—regardless of platform or vendor.

Agent 2 Agent - Types of Agentic AI Communication Protocols

Key Features:
  1. Agent discovery via “agent cards”
  2. Standardized, secure messaging (JSON, HTTP/SSE)
  3. Capability negotiation and delegation
  4. Cross-platform, multi-vendor support
Use Cases:
  1. Multi-agent collaboration in enterprise workflows
  2. Cross-platform automation (e.g., integrating agents from different vendors)
  3. Federated agent ecosystems
Comparison to Legacy Protocols:

While legacy protocols provided basic messaging, A2A introduces dynamic discovery and negotiation, making it suitable for large-scale, heterogeneous agent networks.

ACP (Agent Communication Protocol)

Overview:

ACP, developed by IBM, focuses on orchestrating workflows, delegating tasks, and maintaining state across multiple agents. It acts as the “project manager” of agentic systems, ensuring agents work together efficiently and securely.

Agent Communication Protocol - Type of Agentic AI Communication Protocol
source: IBM
Key Features:
  1. Workflow orchestration and task delegation
  2. Stateful sessions and observability
  3. Structured, semantic messaging
  4. Enterprise integration and auditability
Use Cases:
  1. Enterprise automation (e.g., HR, finance, IT operations)
  2. Security incident response
  3. Research coordination
  4. Supply chain management
Comparison to Legacy Protocols:

Agent Communication Protocol builds on the foundations of FIPA-ACL and KQML but adds robust workflow management, state tracking, and enterprise-grade security.

 

Emerging Protocols in the Agentic AI Space

The agentic AI ecosystem is evolving rapidly, with new communication protocols emerging to address specialized needs:

  1. Vertical Protocols:Tailored for domains like healthcare, finance, and IoT, these protocols address industry-specific requirements for compliance, privacy, and interoperability.
  2. Open-Source Initiatives:Community-driven projects are pushing for broader standardization and interoperability, ensuring that agentic AI remains accessible and adaptable.
  3. Hybrid Protocols:Combining features from MCP, A2A, and ACP, hybrid protocols aim to offer “best of all worlds” solutions for complex, multi-domain environments.

As the field matures, expect to see increased convergence and cross-compatibility among protocols.

 

Protocol Stacking: Integrating Protocols in Agentic Architectures

What Is Protocol Stacking?

Illustration of Protocol stacking with agentic AI communication protocols

Protocol stacking refers to layering multiple communication protocols to address different aspects of agentic AI:

  1. MCP connects agents to tools and data sources.
  2. A2A enables agents to discover and communicate with each other.
  3. ACP orchestrates workflows and manages state across agents.

How Protocols Fit Together:

Imagine a smart home energy management system:

  1. MCP connects agents to weather APIs and device controls.
  2. A2A allows specialized agents (HVAC, solar, battery) to coordinate.
  3. ACP orchestrates the overall optimization workflow.

This modular approach enables organizations to build scalable, interoperable systems that can evolve as new protocols emerge.

 

For a hands-on guide to building agentic workflows, see our LangGraph tutorial.

Key Challenges in Implementing and Scaling Agentic AI Protocols

  1. Interoperability:Ensuring agents from different vendors can communicate seamlessly is a major hurdle. Open standards and rigorous testing are essential.
  2. Security & Authentication:Managing permissions, data privacy, and secure agent discovery across domains requires robust encryption, authentication, and access control mechanisms.
  3. Scalability:Supporting thousands of agents and real-time, cross-platform workflows demands efficient message routing, load balancing, and fault tolerance.
  4. Standardization:Aligning on schemas, ontologies, and message formats is critical to avoid fragmentation and ensure long-term compatibility.
  5. Observability & Debugging:Monitoring agent interactions, tracing errors, and ensuring accountability are vital for maintaining trust and reliability.

Explore more on evaluating AI agents and LLM observability.

Real-World Use Cases

Smart Home Energy Management

Agents optimize energy usage by coordinating with weather APIs, grid pricing, and user preferences using MCP, A2A, and ACP. For example, the HVAC agent communicates with the solar panel agent to balance comfort and cost.

Enterprise Document Processing

Agents ingest, analyze, and route documents across departments, leveraging MCP for tool access, A2A for agent collaboration, and ACP for workflow orchestration.

Supply Chain Automation

Agents representing procurement, logistics, and inventory negotiate and adapt to real-time changes using ACP and A2A, ensuring timely deliveries and cost optimization.

Customer Support Automation

Agents across CRM, ticketing, and communication platforms collaborate via A2A, with MCP providing access to knowledge bases and ACP managing escalation workflows.

 

For more on multi-agent applications, check out our Agentic AI Bootcamp.

Adoption Roadmap: Implementing Agentic AI Communication Protocols

Step 1: Assess Needs and Use Cases

Identify where agentic AI can drive value: automation, optimization, or cross-platform integration.

Step 2: Evaluate Protocols

Map requirements to protocol capabilities (MCP for tool access, A2A for agent collaboration, ACP for orchestration).

Step 3: Pilot Implementation

Start with a small-scale, well-defined use case. Leverage open-source SDKs and cloud-native platforms.

Step 4: Integrate and Stack Protocols

Combine protocols as needed for layered functionality and future-proofing.

Step 5: Address Security and Compliance

Implement robust authentication, authorization, and observability.

Step 6: Scale and Iterate

Expand to more agents, domains, and workflows. Monitor performance and adapt as standards evolve.

 

For a structured learning path, explore our Agentic AI Bootcamp and LLM Bootcamp.

Conclusion: Building the Future of Autonomous AI

Agentic AI communication protocols are the foundation for scalable, interoperable, and secure multi-agent systems. By understanding and adopting MCP, A2A, and ACP, organizations can unlock new levels of automation, collaboration, and innovation. As the ecosystem matures, protocol stacking and standardization will be key to building resilient, future-proof agentic architectures.

July 1, 2025
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