AI Research
AI, Data Science and Machine Learning: a Dstl biscuit book – Introduction – Guidance

Here are some examples of daily activities that you might be doing and that rely on AI, data science and ML.
Search engines
Google, Bing, and other search engines use sophisticated ML methods to find and rank webpages that match your search criteria. These engines not only use ML to provide relevant results for you, they also combine data science and ML so every time you search for something, the algorithms at the backend will monitor your responses:
This way, these engines can tailor the search results to you.
Virtual personal assistants
Have you used Alexa, Siri or Google Home? All of these virtual personal assistants apply data science to complete tasks such as answering simple questions, telling you the news or weather, or playing music or podcasts. To do this they collect information about what you are saying, and also about when, where and how you are saying things. These assistants then use this information to produce results that are tailored to your preferences. They also use ML to:
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understand you (speech processing and understanding)
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improve their performance based on your previous interactions
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communicate back to you (dialogue management)
Traffic status
Ever wondered how a traffic or map app can tell you which section of your commute will have heavy traffic? That is because they are using the GPS location and speed of their users, then adding it to a central server managing traffic. Data science methods are then used to build maps of current traffic and to estimate the density of the traffic. For areas in which GPS information might not be available, ML can be used to predict regions with heavy traffic using historical data.
Loan approvals
Banks and other financial entities collect extensive information about customers who are applying for loans. Data science is used to find relevant data, while ML is used to classify the customer as eligible or not for a loan depending on their history and the history of people with a similar profile.
Activity trackers
Physical activity trackers, such as Fitbit, collect a vast array of information about their users. Data collected includes:
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steps covered
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floors climbed
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calories burned
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sleep stages
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heart rate per minute
Data science is then used to create health stats which, if the user allows, may be shared with external partners (such as health professionals and insurance companies) so they can provide a better and more personalised service.
Chatbots (online customer support)
More and more websites now provide customer support using chats, but quite often the person you are chatting to is a chatbot not a person. Businesses like IKEA, Hotels.com, and E.ON use bots to filter any customers who might need to contact them. These bots use ML to identify relevant information in your text and provide possible answers to your queries. If the bots are not able to provide the information customers need, then they are transferred to a human representative. Duolingo, an app for learning new languages, uses chatbots to help users practice their newly-learned language skills via text messages. They also use data science to collect information about their users and apply ML to classify their personalities and learning styles, with the idea of allocating them to a chatbot that best matches them.
Recommendation systems
Have you ever received an email from Amazon with products that could interest you? Or have you ever seen the ‘Recommended for You’ section on Netflix? These are 2 examples of recommendation systems. These systems collect and pre-process data from your activity within their site, for example:
This data produces recommendations based on how your behaviour compares to the rest of users on the site. Using data science, they are able to group customers according to behaviour and share recommendations amongst each group. So, if several people with behaviours similar to yours have watched a movie that you have not, Netflix will recommend it to you.
And of course there are plenty of applications in a professional context including:
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Classification: for example, classifying images as containing vehicles, people etc
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Recognition: a common application is facial recognition
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Filtering: taking large volumes of images, video or documents and selecting those that contain certain images, objects or references
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Anomaly detection: for example, analysing large quantities of engine performance data and identifying possible anomalies that could indicate a fault
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Prediction: for example, where we may want to predict when the food is likely to go bad
And so on, the range of applications is growing so fast this list could go on and on.
AI Research
Will artificial intelligence fuel moral chaos or positive change?

Artificial intelligence is transforming our world at an unprecedented rate, but what does this mean for Christians, morality and human flourishing?
In this episode of “The Inside Story,” Billy Hallowell sits down with The Christian Post’s Brandon Showalter to unpack the promises and perils of AI.
From positives like Bible translation to fears over what’s to come, they explore how believers can apply a biblical worldview to emerging technology, the dangers of becoming “subjects” of machines, and why keeping Christ at the center is the only true safeguard.
Plus, learn about The Christian Post’s upcoming “AI for Humanity” event at Colorado Christian University and how you can join the conversation in person or via livestream:
“The Inside Story” takes you behind the headlines of the biggest faith, culture and political headlines of the week. In 15 minutes or less, Christian Post staff writers and editors will help you navigate and understand what’s driving each story, the issues at play — and why it all matters.
Listen to more Christian podcasts today on the Edifi app — and be sure to subscribe to The Inside Story on your favorite platforms:
AI Research
Intrinsic Dimension Estimating Autoencoder (IDEA) Using CancelOut Layer and a Projected Loss

arXiv:2509.10011v1 Announce Type: cross
Abstract: This paper introduces the Intrinsic Dimension Estimating Autoencoder (IDEA), which identifies the underlying intrinsic dimension of a wide range of datasets whose samples lie on either linear or nonlinear manifolds. Beyond estimating the intrinsic dimension, IDEA is also able to reconstruct the original dataset after projecting it onto the corresponding latent space, which is structured using re-weighted double CancelOut layers. Our key contribution is the introduction of the projected reconstruction loss term, guiding the training of the model by continuously assessing the reconstruction quality under the removal of an additional latent dimension. We first assess the performance of IDEA on a series of theoretical benchmarks to validate its robustness. These experiments allow us to test its reconstruction ability and compare its performance with state-of-the-art intrinsic dimension estimators. The benchmarks show good accuracy and high versatility of our approach. Subsequently, we apply our model to data generated from the numerical solution of a vertically resolved one-dimensional free-surface flow, following a pointwise discretization of the vertical velocity profile in the horizontal direction, vertical direction, and time. IDEA succeeds in estimating the dataset’s intrinsic dimension and then reconstructs the original solution by working directly within the projection space identified by the network.
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AI Research
Realism Control One-step Diffusion for Real-World Image Super-Resolution

arXiv:2509.10122v1 Announce Type: cross
Abstract: Pre-trained diffusion models have shown great potential in real-world image super-resolution (Real-ISR) tasks by enabling high-resolution reconstructions. While one-step diffusion (OSD) methods significantly improve efficiency compared to traditional multi-step approaches, they still have limitations in balancing fidelity and realism across diverse scenarios. Since the OSDs for SR are usually trained or distilled by a single timestep, they lack flexible control mechanisms to adaptively prioritize these competing objectives, which are inherently manageable in multi-step methods through adjusting sampling steps. To address this challenge, we propose a Realism Controlled One-step Diffusion (RCOD) framework for Real-ISR. RCOD provides a latent domain grouping strategy that enables explicit control over fidelity-realism trade-offs during the noise prediction phase with minimal training paradigm modifications and original training data. A degradation-aware sampling strategy is also introduced to align distillation regularization with the grouping strategy and enhance the controlling of trade-offs. Moreover, a visual prompt injection module is used to replace conventional text prompts with degradation-aware visual tokens, enhancing both restoration accuracy and semantic consistency. Our method achieves superior fidelity and perceptual quality while maintaining computational efficiency. Extensive experiments demonstrate that RCOD outperforms state-of-the-art OSD methods in both quantitative metrics and visual qualities, with flexible realism control capabilities in the inference stage. The code will be released.
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