Knowledge Center

We've compiled a collection of resources to help you navigate the complex world of AI implementation. From technical guides to strategic insights, these materials reflect our practical approach to delivering business value through AI.

Fully Agentic AI Is Not Viable Today
Startups, Technology

Fully Agentic AI Is Not Viable Today

The evidence is overwhelming across domains. As a model takes more steps, its reliability falls. As we grant it more autonomy, it fails more often. Agent demos may look intelligent, but real evaluations paint a harsher picture.

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Stop Just Watching. Start Building AI
Technology, Strategy

Stop Just Watching. Start Building AI

In his book from 2008, Lawrence Lessig famously described two types of culture. He called them “Read-Only” and “Read-Write”. Radio is a perfect example of Read-Only culture. A few professionals broadcast the signal and you listen. You cannot change the show nor can you talk back. The flow of information goes one way. Lawrence Lessig argues that this cha…

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The Right to Be Let Alone
Marketing, Technology

The Right to Be Let Alone

Privacy is the moral space individuals need to think, choose, and become themselves. It is not simply a legal checklist or a mechanism for compliance. It is a fundamental moral right that protects our capacity for autonomy. Without a private sphere, we cannot freely form beliefs or pursue our own conception of a good life. This understanding of privacy …

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The Internet Is Drowning in Slop
Marketing, Technology

The Internet Is Drowning in Slop

The internet has a problem. There’s a flood of low-quality, machine-generated text that now fills search results. It is grammatically correct. It is also boring, repetitive, and obviously fake. Users are learning to spot it instantly. They hate it and when they see it on your website, they leave.

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The Hype vs. The Reality
FutureOfWork , ArtificialIntelligence

The Hype vs. The Reality

We are deep in an AI Hype Cycle. The potential for AI to automate human labour is a subject of profound societal interest and concern. We constantly hear claims about AI’s rapid progress on complex reasoning benchmarks, which has fuelled a narrative that a new wave of “agentic AI” is ready to automate large parts of the workforce.

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You x You i
Marketing, WebDesign

You x You i

We built a tool that tells you exactly why your website visitors are leaving. We’ve built lots of different reports that use AI and different kind of heuristics, and a detailed dashboard that shows you problems and recommendations. Now, we need your help to test it.

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Why Open-Source LLMs are the Future of Enterprise AI
llms, openai

Why Open-Source LLMs are the Future of Enterprise AI

ChatGPT has been a turning point in technological innovation. Even though other commercial providers have been catching up and overtaken OpenAI in a few areas, it was when ChatGPT entered the scene was when people took notice of the potential of AI. While the initial phase of AI adoption was characterized by renting generic capabilities from a handful o…

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sam altman, openai

Reality Check for AI

GPT-5 Is Here, and My Clients Are... Underwhelmed

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The Kasparov Principle
MachineLearning, llms

The Kasparov Principle

The "AI Efficiency" Smokescreen

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ArtificialIntelligence, business strategy

AI's Reality Check: Where the Revolution Isn't Happening

According to analysts at Morgan Stanley, Goldman Sachs, and McKinsey & Company AI was going to massively redefine more than the work force within a few years automating tasks and replacing a number of jobs. The predicted ranges of displacement or disruption still vary widely.

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How to Build AI-First Systems with Human Guidance
HITL, HumanInTheLoop

How to Build AI-First Systems with Human Guidance

Today, AI is no longer just an “assistant” to humans—it’s rapidly becoming the core executor within systems. Cosimo Spera and Garima Agrawal propose flipping the traditional “human-led, AI-assisted” paradigm; build AI-First systems, where AI leads and humans provide strategy, ethics, and oversight in the loop.

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Why 42% of companies are abandoning their AI projects
llms, ArtificialIntelligence

Why 42% of companies are abandoning their AI projects

Remember when everyone was getting fired because of AI? Plot twist: the robots are still figuring out how to fill out expense reports.

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Can LLMs think?
ArtificialIntelligence, Prompt

Can LLMs think?

Introduction

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Human in the Loop
llms, HITL

Human in the Loop

Imagine you’ve asked an AI model to draft a critical business proposal, and it generates a complete—but subtly off—document. Without a human reviewing it, that small misalignment could lead to missed opportunities or misunderstandings. This is where Human in the Loop (HITL) becomes not just helpful, but essential.

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Beyond the Algorithm
llms, internship

Beyond the Algorithm

As a Maths student at Imperial working through problem sheets, coding labs, and club activities, I’ve noticed AI assistants becoming part of my daily routine. Within minutes, the AI suggested a corrected loop structure, recommended vectorised NumPy operations, and even drafted clear comments.

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How to make AI perform better?
llms, ArtificialIntelligence

How to make AI perform better?

Why Prompt Precision Matters

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Why should you be careful with AI?
llms, embeddings

Why should you be careful with AI?

Have you come across this experience? Reading through social media, found most of the posts are obviously LLM-produced. This seems to be the trend: social media platforms like ‘LinkedIn’ and ‘X’ have AI integrated for writing posts.

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Do you need 700 engineers to make money with AI?
llms, embeddings

Do you need 700 engineers to make money with AI?

Recently, Builder.ai, a company founded in London and backed by Microsoft whose valuation relied on their revolutionary coding AI Natasha, was discovered to use 700 Indian engineers instead of an AI. Moreover, these engineers, it seems, often churned out rather buggy code. They are also accused of having inflated their revenue figures.

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Beyond Basic RAG
llms, embeddings

Beyond Basic RAG

Retrieval-Augmented Generation (RAG) has evolved dramatically since its introduction in 2020. While simple implementations can deliver impressive results, today's most challenging use cases demand more sophisticated approaches. In this article, I'll show you how to leverage LangGraph—a powerful extension to the LangChain ecosystem—to build advanced RAG …

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Beyond ChatGPT: Enterprise LLM Integration Best Practices
LLM Implementation

Beyond ChatGPT: Enterprise LLM Integration Best Practices

Practical strategies for moving beyond simple ChatGPT usage to sophisticated enterprise LLM applications. Learn how to address common challenges like context management, security, and evaluating outputs at scale.

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Unlocking Deeper Reasoning in LLMs: Introducing Atom of Thought (AoT)
LLM Research

Unlocking Deeper Reasoning in LLMs: Introducing Atom of Thought (AoT)

Large Language Models (LLMs) have made impressive strides in understanding and generating text. Yet, when it comes to tackling complex, multi-step problems, traditional prompting methods like Chain-of-Thought (CoT) can fall short.

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Books by Our Team

Our comprehensive training programs are built on practical implementation experience featured in bestselling books authored by our team

Generative AI with LangChain (2nd edition)

Published: May 2025 | Amazon Bestseller in Programming

Build production ready LLM applications and advanced agents using Python and LangGraph

A practical guide to leveraging LangChain and LangGraph for GenAI implementation, with real-world examples ranging from customer support to data analysis. The 2025 edition features updated code examples and improved GitHub repository.

Focus areas include:

Enterprise-grade LLM application architecture Prompt engineering best practices RAG implementation for knowledge augmentation Custom agent development Production deployment strategies

Machine Learning for Time Series

Published: October 2021 | Industry Standard Reference

Forecast, predict, and detect anomalies with state-of-the-art machine learning methods

Use Python to forecast, predict, and detect anomalies with state-of-the-art machine learning methods. This comprehensive guide covers everything from data preprocessing to advanced models for time-dependent data. The included tutorials range from simple forecasting to complex deep learning architectures for time series analysis.

Focus areas include:

Anomaly detection systems Forecasting methodologies Feature engineering for time-series Deep learning approaches Production deployment patterns Time series preprocessing techniques LSTM and RNN architectures

Artificial Intelligence with Python Cookbook

Published: October 2020 | BookAuthority Best-Seller

Proven recipes for applying AI algorithms and deep learning techniques

Proven recipes for applying AI algorithms and deep learning techniques using TensorFlow and PyTorch. The practical cookbook approach provides ready-to-use solutions for common AI challenges, from computer vision to natural language processing, with complete code examples and detailed explanations of implementation considerations.

Focus areas include:

Deep learning fundamentals Computer vision applications NLP implementation techniques Reinforcement learning Model optimization strategies Transfer learning approaches Hyperparameter tuning

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