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People 🚀 Unleash the Power of Large Language Models and Foundation Models - Read our insights and expertise on these trends in AI! Discover more Services Navigate intelligence Activate intelligence Build intelligence AI Solutions Custom solutions Solutions catalogue Domains of expertise References Client cases Customer testimonials Resources Resource library Blog Video & demo Press Events Open Source Our DNA How we work Mission & ambition Responsible AI Partners ML6 For Good Careers Jobs Team Working at ML6 Taal NLEN Contact us en defrNL Contact us # Matthew Fite People Visit my LinkedIn profile Our know-how ## Related posts No results found. There are no results with this criteria. Try changing your search. Large Language Model Foundation Models Corporate People Structured Data Chat GPT Sustainability Voice & Sound Front-End Development Data Protection & Security Responsible/ Ethical AI Infrastructure Hardware & sensors MLOps
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Corporate People Structured Data Chat GPT Sustainability Voice & Sound Front-End Development Data Protection & Security Responsible/ Ethical AI Infrastructure Hardware & sensors MLOps Generative AI Natural language processing Computer vision Accelerating businesses with AI technology & experts Contact: info@ml6.eu +32 9 265 95 50 Contact us Join our newsletter By subscribing you agree to with our Privacy Policy Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Services Navigate Intelligence Activate IntelligenceBuild Intelligence Solutions Custom AI solutionsSolutions catalogueDomains of expertise References Client casesCustomer testimonials Resources Resource libraryBlogpostsVideo & DemoEventsOpen Source About Mission How we workResponsible AICareers Copyright 2024 Privacy Notice
scraping/output/2221413558556643221.txt
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MLOps Natural language processing 🚀 Unleash the Power of Large Language Models and Foundation Models - Read our insights and expertise on these trends in AI! Discover more Services Navigate intelligence Activate intelligence Build intelligence AI Solutions Custom solutions Solutions catalogue Domains of expertise References Client cases Customer testimonials Resources Resource library Blog Video & demo Press Events Open Source Our DNA How we work Mission & ambition Responsible AI Partners ML6 For Good Careers Jobs Team Working at ML6 Taal NLEN Contact us en defrNL Contact us Blogposts All Posts October 17, 2022 # Webinar | Hybrid AI: successfully combining expert knowledge with ML models Contributors Matthias Feys Q / CTO No items found. Subscribe to newsletter Sign up By clicking Sign Up you're confirming that you agree with our Terms and Conditions. Thank you! Your submission has been received!
scraping/output/7371013274892921836.txt
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Q / CTO No items found. Subscribe to newsletter Sign up By clicking Sign Up you're confirming that you agree with our Terms and Conditions. Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Share this post Machine learning opened up new ways of solving technical challenges by training models on data instead of directly implementing rules & logic. This offers a lot of new opportunities for solving difficult problems. However, sometimes it can also be useful to combine these machine learning models with (expert) rules, to get the best possible outcome and leverage the benefits of both expert knowledge as well as machine learning models. Hybrid AI is the name of this field, and focuses on combining non-symbolic AI (eg. machine learning), with symbolic AI (eg. expert rules). Our speakers, Prof. Sofie Van Hoecke (PreDiCT) and Matthias Feys (ML6), will give you an overview of this field by tackling the following topics:
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* Why and when Hybrid AI is relevant for your situation. * An overview of different ways to combine rules with machine learning models. * Concrete examples where hybrid AI was implemented. ‍ #### Get access to the webinar by filling in the form below. ‍ ## Related posts View all No results found. There are no results with this criteria. Try changing your search. Large Language Model Large Language Model Foundation Models Foundation Models Corporate Corporate People People Structured Data Structured Data Chat GPT Chat GPT Sustainability Sustainability Voice & Sound Voice & Sound Front-End Development Front-End Development Data Protection & Security Data Protection & Security Responsible/ Ethical AI Responsible/ Ethical AI Infrastructure Infrastructure Hardware & sensors Hardware & sensors MLOps MLOps Generative AI Generative AI Natural language processing Natural language processing Computer vision Computer vision
scraping/output/7371013274892921836.txt
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Infrastructure Hardware & sensors Hardware & sensors MLOps MLOps Generative AI Generative AI Natural language processing Natural language processing Computer vision Computer vision Accelerating businesses with AI technology & experts Contact: info@ml6.eu +32 9 265 95 50 Contact us Join our newsletter By subscribing you agree to with our Privacy Policy Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Services Navigate Intelligence Activate IntelligenceBuild Intelligence Solutions Custom AI solutionsSolutions catalogueDomains of expertise References Client casesCustomer testimonials Resources Resource libraryBlogpostsVideo & DemoEventsOpen Source About Mission How we workResponsible AICareers Copyright 2024 Privacy Notice
scraping/output/7371013274892921836.txt
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🚀 Unleash the Power of Large Language Models and Foundation Models - Read our insights and expertise on these trends in AI! Discover more Services Navigate intelligence Activate intelligence Build intelligence AI Solutions Custom solutions Solutions catalogue Domains of expertise References Client cases Customer testimonials Resources Resource library Blog Video & demo Press Events Open Source Our DNA How we work Mission & ambition Responsible AI Partners ML6 For Good Careers Jobs Team Working at ML6 Taal NLEN Contact us en defrNL Contact us # Structured Data Keep your knowledge in safe hands Learn moreContact us ## Driven by data Many business processes are recorded in tabular datasets like Excel sheets, relational databases, and time series. Thanks to our Machine Learning expertise, we turn your structured data into valuable insights that help you solve a variety of problems. ### Regression & forecasting
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### Regression & forecasting Predicting the future is hard, but with the right tools, we can forecast trends in e.g. energy consumption or sales volume with precision. We do this by using external data sources and taking advantage of the latest model improvements. ### Classification & clustering Labeling data records adds value to large data sets and automates actions. It involves creating different labels (clustering) and assigning them to new data (classification). This technique can be used for detecting machine failures, sales abandonment, and clustering e-commerce users. ### Anomaly detection We are experts in detecting anomalies in machine and process behavior. Our strategy is to separate "abnormal" events from "normal" behavior to gain insights into causality and explainability and use them to optimize your systems. ### Operational research & optimization
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### Operational research & optimization Even if a process works well, it can always be improved. This is where our expertise comes in. We specialize in tackling complex problems such as production planning, job scheduling, vehicle routing, box packing and more. ## Client cases Discover how our expertise in Hardware & Sensors leads businesses to success Placeholder tag The AI-Driven NGO : A data-driven approach to creating a better future for children By gaining insights into the donor journey, efficiency and effectiveness of fundraising could be enhanced. November 19, 2021 By This is some text inside of a div block. Public & Professional Services This is some text inside of a div block. Placeholder tag Building a recommendation engine for March Real Estate Ml6 built a proactive recommendation tool resulting in a 7x boost in the number of leads from the matching engine. May 28, 2021 By This is some text inside of a div block. Public & Professional Services
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May 28, 2021 By This is some text inside of a div block. Public & Professional Services This is some text inside of a div block. Previous 3 / 3 Large Language Model Foundation Models Corporate People Structured Data Chat GPT Sustainability Voice & Sound Front-End Development Data Protection & Security Responsible/ Ethical AI Infrastructure Hardware & sensors MLOps Generative AI Natural language processing Computer vision ## Typical challenges With our expertise, we can help you overcome structured data challenges in AI. ## Aligning the technical problem formulation with business problem
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Computer vision ## Typical challenges With our expertise, we can help you overcome structured data challenges in AI. ## Aligning the technical problem formulation with business problem Before starting machine learning (ML) model training, you need to understand the business requirements and available data. This includes deciding whether the problem should be approached as a regression or classification task, or whether ranking or recommendation is required. The success of the technical implementation is ultimately determined by meeting business expectations, which we always strive to achieve. ## Validation is hard
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## Validation is hard Unsupervised learning uses tools like clustering to identify data patterns, but the results can be difficult to interpret. That’s why domain experts during development need to make sure that the outcome is accurate. It’s also tough to identify causal relationships between variables and labels may not be available in situations like fraud or predicting machine failures. However, once you overcome these challenges with our help, unsupervised learning is a powerful tool for uncovering hidden patterns and gaining insights from data. ## Data engineering and change management
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## Data engineering and change management Building a successful solution for structured data requires a lot of data engineering and change management effort. Moreover, machine learning system development can lead to hidden technical problems such as poor data quality, model complexity and deployment challenges. To create long-term value, it’s not enough to simply train an ML model. Validation, integration into existing systems, ongoing monitoring and updating are essential to deliver real value over time. We help you do just that. ## High level outline of the solution Data collection The first step in any structured data solution is data collection. This can be done from a variety of sources, including internal databases, APIs, and third- party data providers. Data cleaning and preprocessing
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Data cleaning and preprocessing Once data has been collected, it must be cleaned and preprocessed to make sure that it is of high quality. This includes tasks like removing missing values, handling outliers, and converting data types. Exploratory Data Science (EDA) is essential. Feature engineering Feature engineering involves selecting and transforming the features in the data that are most relevant to the problem at hand. This can include creating new features, selecting important features, and scaling or normalizing features. Model training and selection A machine learning model can be trained after data has been preprocessed and features have been engineered. The selection of a specific model is based on how well it performed on a holdout dataset. Deployment and monitoring Once the model has been trained and evaluated, it must be deployed into production. This involves integrating the model into existing systems and workflows and monitoring its performance over time.
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Once the model has been trained and evaluated, it must be deployed into production. This involves integrating the model into existing systems and workflows and monitoring its performance over time. ## Related posts No results found. There are no results with this criteria. Try changing your search. Large Language Model Foundation Models Corporate People Structured Data Chat GPT Sustainability Voice & Sound Front-End Development Data Protection & Security Responsible/ Ethical AI Infrastructure Hardware & sensors MLOps Generative AI Natural language processing Computer vision contact us ## Connect with our AI experts in Structured Data Contact us to turn your structured data into valuable insights that help you solve a variety of problems Name * Company * Email * How did you hear about us?
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Contact us to turn your structured data into valuable insights that help you solve a variety of problems Name * Company * Email * How did you hear about us? How can we help you?Select one...I'm interested in getting strategic adviceI'm looking to build a solutionI want to build strategic AI assets I'm trying to understand how my company can get started with AI Message We need your details to contact you. Your data will be processed according to the provisions of our privacy policy. Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Accelerating businesses with AI technology & experts Contact: info@ml6.eu +32 9 265 95 50 Contact us Join our newsletter By subscribing you agree to with our Privacy Policy Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Services Navigate Intelligence Activate IntelligenceBuild Intelligence Solutions
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Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Services Navigate Intelligence Activate IntelligenceBuild Intelligence Solutions Custom AI solutionsSolutions catalogueDomains of expertise References Client casesCustomer testimonials Resources Resource libraryBlogpostsVideo & DemoEventsOpen Source About Mission How we workResponsible AICareers Copyright 2024 Privacy Notice
scraping/output/-4005684865848025300.txt
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Structured Data MLOps Computer vision 🚀 Unleash the Power of Large Language Models and Foundation Models - Read our insights and expertise on these trends in AI! Discover more Services Navigate intelligence Activate intelligence Build intelligence AI Solutions Custom solutions Solutions catalogue Domains of expertise References Client cases Customer testimonials Resources Resource library Blog Video & demo Press Events Open Source Our DNA How we work Mission & ambition Responsible AI Partners ML6 For Good Careers Jobs Team Working at ML6 Taal NLEN Contact us en defrNL Contact us Blogposts All Posts Life Sciences & Healthcare April 28, 2021 # Pharma 4.0 : Impact drug manufacturing with AI in Life Science Industries Contributors No items found. Subscribe to newsletter Sign up By clicking Sign Up you're confirming that you agree with our Terms and Conditions. Thank you! Your submission has been received!
scraping/output/-4422453358527678687.txt
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Contributors No items found. Subscribe to newsletter Sign up By clicking Sign Up you're confirming that you agree with our Terms and Conditions. Thank you! Your submission has been received! Oops! Something went wrong while submitting the form. Share this post In this blog, we will uncover some pressing challenges within the Life Science manufacturing industry and how breakthroughs in Machine Learning techniques offer measurable returns. ### From batch to continuous manufacturing and pharma 4.0
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Pharmaceutical companies are often in a race against time. Although patents protect companies intellectual property, most of this time is spent turning an idea into a marketable product. Traditionally medicines are produced in the old-fashioned way by a batch process [3]. This traditional batch process has proven to have high lead times, because after each process step the production is stopped to test for quality assurance. Sometimes these materials are stored in containers or shipped to other facilities before they continue in the process [5]. Each stop increases the lead time and can cause defects and scrap [6]. As an indication, lead times can be up to 365 days of which 228 are dedicated to drug substance production, 75 to drug product formulation and 41 to packaging. Inventories including raw-material storage can last 250 days [1]. Reducing these times is essential to recover the billions spent in drug
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to packaging. Inventories including raw-material storage can last 250 days [1]. Reducing these times is essential to recover the billions spent in drug development given the fact that there only a few years left before the patents are expired.
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The pharmaceutical industry is often compared to the semiconductor industry due to the high costs and the need for high throughput, volume and yield in a clean environment with high consistency [2]. The semiconductor industry is already quite matured when it comes to implementing industry 4.0 and this has resulted in major advancement in technology (i.e. smaller chips with greater capabilities in computers, phones, etc.). But what is the state of Pharma 4.0? How is this industry moving towards the future? When compared to the semiconductor industry there is a difference in the demanding regulations enforced by authorities like the US FDA and the EU Commission to ensure the quality. Changes to production in the form of digitization can result in changes to machines, processes and even the product itself. It is these strict regulations which are a possible cause of the conservative character of the industry when compared to the semiconductor industry.
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