KeepFlying Onboards Play Airlines as a customer
Revolutionizing aviation data with

Generative AI & Large Language Models

Using Generative AI and Large Language Models, we have significantly streamlined data wrangling and analytics in aviation, traditionally characterized by disorganized and uncatalogued information. Our innovative approach has successfully transformed unstructured data, including descriptive texts and scanned images, into valuable, structured data, marking key milestones in this field.


You will have your very own Digital FinTwin® mirroring your Engines and Maintenance facilities on our cutting-edge platform between 8 and 12 weeks from commencing a data implementation exercise.

KeepFlying® has specialized staff for delivering our services. Each customer will have their own dedicated implementation manager. They handle the entire lifecycle of the implementation from data profiling, data preparation & quality control to tailoring the models towards your specific needs.

Data Profiling &

1 - 2 Weeks


2 - 4 Weeks

Model Tuning & 

1 - 2 Weeks

Evaluation &
User Training

2 Weeks

Acceptance & Release

2 Weeks


Harness the power of Data Science to maximise profits and minimise TAT of Engine Shop Visits
AI Driven Capacity Planning
Experience the accuracy of custom Machine Learning models that help balance fluctuating demand forecasts with capacity.
Work Scope & TAT Risk Profiling
Fuse historic shop visit data with dynamic visit feeds to predict upgrades in work scopes, highlight risks and identify critical paths that  impact TAT.
Shop Visit Profitability Forecasting
Simulate shop visit costs, risks and profitability dynamically to visualise commercial impact of decision before and during an Engine shop visit

Key Value Extraction

Transforming Aviation Data Management with Large Language Models (LLMs)
Advanced Data Extraction
LLMs employ artificial intelligence to deeply analyze vast text datasets, efficiently extracting critical information such as Engine Serial Numbers, Total Time, and Cycles from complex aviation maintenance reports.
Handling Disorganized Data
Even when faced with scattered or poorly formatted information, LLMs adeptly restructure and clarify these data sets, turning what was once noisy and unstructured into valuable, organized key-value pairs.
Revolutionizing Industry Standards
This capability is not just an improvement but a revolution in data extraction and management, significantly enhancing accuracy and efficiency in the aviation sector.

LLMs in Aviation Information Trackers

In the fast-paced world of aviation, data updates occur almost in real-time. Efficiently managing this data is crucial for accurate analytics. This is where Large Language Models (LLMs) play a transformative role.
Real-Time Data Updates
Aviation data is dynamic, requiring continuous updates. Traditional web scraping methods struggle to keep pace, but LLMs provide a more efficient solution for capturing these rapid changes.
Adapting to Website Changes
Traditional data sourcing methods are often rigid, demanding specific logic tailored to each website's unique design. LLMs, however, introduce flexibility, allowing for a more generalized approach that adapts to varying website architectures and designs.
Robust Data Extraction
The use of LLMs in data extraction ensures resilience against frequent changes in website structures. This results in more stable and reliable data sourcing for aviation analytics, ensuring continuity and accuracy in a field where information is constantly evolving.

Key Use cases

Fine Tuning LLMs for Performance
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Low Rank Adaptation (LoRA) provides an efficient algorithm to fine tune large language models for specific purposes. LoRA algorithm is based on matrix decomposition; it reduces the matrix of billion parameters into smaller ones which reduces the size and computations required by the model.

LLM Tracing and Observability
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Large Language Models (LLMs) can exhibit unpredictable behavior, posing risks to business performance and trust. At KeepFlying®, we mitigate these challenges with advanced monitoring tools, ensuring reliable, secure, and compliant use of LLMs in our cutting-edge applications.

Aviation Documents Classification and Identification
Publish & Achieve

Our leading-edge LLM Document Classification system, powered by OpenAI's GPT-3.5, employs Few-shot Learning and Prompt Engineering for rapid, accurate categorization of aviation documents. This precise system effectively sorts Technical Logs, Statements, and more, enhancing classification accuracy through finely-tuned LLM interactions.

Information Extraction from Event Descriptions
Publish & Achieve

Our innovative hybrid system merges Machine Learning and Large Language Models to efficiently extract Non-Incident Statements from Engine Minipacks, enhancing aviation safety. It features a two-layer approach: the first layer uses ML for initial extraction, while the second layer employs LLMs for advanced language comprehension and clear summarization of data.

Aviation Domain LLM for Question Answering
Publish & Achieve

Our specialized Aviation Question Answering System for Engine Minipacks rapidly delivers precise information from engine documents. Utilizing a Retrieval-Augmented Generation (RAG) framework with Large Language Models and a vector database, it intelligently interprets queries and sources contextually relevant documents, ensuring detailed and accurate responses.

Interactive Generative (LLM) Agents
Publish & Achieve

We've introduced Aviation LLM Agents, a revolutionary approach to managing Engine Minipacks. These agents do more than generate text; they interactively respond to user queries, perform tasks, and access a wealth of information through OCR and a Vector Database, significantly enhancing the way aviation professionals handle critical data.

Need a pilot?

Understand how your Engine MRO's lines and capabilities can be setup using the engine FinTwin® MRO edition to build your FinTwin®.

Drop a note and our team will get back to you with a data and powerplant expert to help setup an environment for you.
We never share you details with third parties.
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