Archive for the ‘Machine Learning’ Category

Microsoft unveils Azure Machine Learning courses and scholarships on Udacity – Neowin

In September, Microsoft launched a free beginners' Python course, and unveiled a new AI Business School course in the following month. Today, the firm has announced new Azure Machine Learning courses and scholarships in collaboration with Udacity. The Redmond giant aims to address the growing need for AI and data science positions through the availability of these courses, especially given how the COVID-19 pandemic has increased the demand of remote resources.

The digital education platform will host one introductory course, dubbed "Introduction to machine learning on Azure" for free. With the availability of 10,000 spots, the course will offer students the opportunity to learn through a minimal coding-based experience, with focus on machine learning basics powered by Azure's automated ML and drag-and-drop features, and further assistance through hands-on labs.

The top 300 performers in this course will then be given scholarships for the more advanced Nanodegree Program with Microsoft Azure, which is paid. This program will provide open source tools and frameworks that include PyTorch, TensorFlow, scikit-learn, and ONNX for students to deploy more complex ML solutions.

In a talk with Udacity CEO Gabe Dalporto, Azure CVP Julia White commented on the collaboration, noting that, "It's a wonderful moment, to go and think about retraining and getting skilled in a really important area that will continue to be highly relevant as we move forward".

The application window for the foundations course will be open from June 10 to June 30. The course will then begin on July 8 and will be available until September 10. You can find out more details and register for the course on its page.

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Microsoft unveils Azure Machine Learning courses and scholarships on Udacity - Neowin

Source of Madness is a roguelite that uses machine learning to make new monsters for each run – PCGamesN

One of the tricks H.P. Lovecraft used to make his tales scarier was to avoid actually describing the horrible monsters his characters encountered. Hed tee them up with the suggestion of afish person or tentacle, but then have his narrator conveniently pass out from sheer terror. The idea was that these creatures were so awful as to defy comprehension by the human mind. And so, Source of Madness might be on to getting Lovecraft right by removing humans from its monster design entirely.

Instead, in this roguelite platformer, youll be facing off against a different array of monsters each time you begin a new run. The game uses a machine learning AI to generate new creatures each time, although they all seem to fall broadly under the motif of The Very Hungry Caterpillar Goes to Innsmouth.

Youll explore a wide variety of locales in a world that changes for each run, and the art that forms each area is similarly generated by AI neural networks. Your job is to travel across the Loam Lands from the Tower of Knowledge to the twin Tower of Madness, and everything seems to be going pretty badly in the areas between them.

Heres a trailer:

Source of Madness also features a realistic physics model, nine separate biomes, and four bosses to defeat. Youll use your enemies blood at special altars to make permanent progression by unlocking new magic to use in combat and hone your playstyle.

Theres no specific release date set yet, but look for the game on Steam sometime next year. Be sure to check out our list of demos to try during the SteamGame Festival there are more than 900 to try for free right now.

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Source of Madness is a roguelite that uses machine learning to make new monsters for each run - PCGamesN

Drones for Utilities: How AI is Redefining Utility Inspections – DroneLife

How AI and machine learning algorithms redefine utility inspections as society faces this pandemic.

The following is a guest post by Jaro Uljanovs, Lead AI Developer and Data Scientist at Sharper Shape, specialists in automated industrial inspections.

Artificial intelligence (AI) boasts a wide range of potential applications, across nearly every industry imaginable healthcare, automotive, retail, even fast food. But it is the utility industry where AI and machine learning (ML) are beginning to demonstrate some of their most impactful effects on many aspects of the business. Power companies are increasingly leaning on AI to improve their electricity delivery an in places like the Amazon and California prevent potential wildfires through drone management software and vegetation management. In a post-COVID world where a reduced on-site workforce is quickly becoming the norm, AI is actually enhancing human jobs.

From data collection and analysis to the presentation of actionable insights, AI and ML algorithms are quickly redefining how utility companies manage their electric infrastructure.

Utility companies oversee massive infrastructure networks, comprising poles, conductors, substations. Transmission and distribution lines which contain these crucial components, span thousands of miles. Vegetation management around this key infrastructure must also be monitored, as it presents a danger of fire or outage.

Taking a comprehensive snapshot of these assets means utilizing a variety of different sensors for powerline inspections. These sensors include light detection and ranging (LiDAR), color (RGB), hyperspectral and thermal imagery.

This allows the drone mapping software to capture everything from vegetation proximity, to infrastructure assets, to individual components (such as insulators on transformers) and their operational integrity, to hot spots indicating potential fire risks.

That is a lot of data to capture, catalog and process. And there are a lot of individual elements within that data even in just one image to pinpoint and classify, let alone do so accurately. Classifying billions of data points across all those sensors is an impossibly time-consuming task to do manually.

AI and ML tools can accomplish that same work scanning thousands of images collected across thousands of miles of utility infrastructure in seconds. LiDAR point cloud segmentation can detect conductors (quite a difficult component-type to segment) with an accuracy of over 95% for each individual point, while hyperspectral image segmentation can identify vegetation species with an accuracy of up to 99%.

More than that, when paired with drone sensors, these algorithms can also improve the upfront data collection. AI and ML tools help to adjust the sensor systems positioning in real time. In the event a signal is lost or the drone veers slightly away from its inspection flight path, an EDGE AI algorithm running on the professional drone or pilot hardware, can help the drone to readjust its focus through object detection, or avoid collision through on-board collision avoidance

By helping to readjust the sensors bearings while in flight, AI not only ensures more accurate data collection, but guarantees that the flight doesnt need to be repeated or prematurely ended because of inaccurate data collection, saving valuable time and resources. ML techniques can spot any faults in the sensors or the drones flight path while in the air, recalibrating as needed and identifying individual elements within the data as it comes through the sensors video feed.

Key to all of this is eliminating the silos that tend to naturally build up between different data segments. In the utility inspection space, asset management, and vegetation management, different sensors and so on all produce their own disparate, walled-off sets of data.

When data is kept siloed like this, it becomes unnecessarily difficult, for teams to derive company-wide insights or conclusions from the information being collected. And what good is all that data if it cant be used to check against itself and compliment other sets of data?

Good data management cannot exist in a piecemeal approach. It needs to be holistic, and AI provides the impetus to make that happen. AI provides a central resource for pooling all these data sources together, making it easier for data analysis for potential problems like wildfire-prone vegetation or damaged components. When these issues are collected in one system, it becomes much easier to identify faults and resolve them and do so far faster than it would be to manually sift through countless images of poles or vegetation maps.

In spite of all the common concerns about AI eliminating work for human beings, at utility companies AI actually enhances the role that people have to play in the network and powerline inspection process. Because the AI is the tool that carries out the data analysis, it is not something that is dependent on the potentially biased expertise of a professional human inspector, nor is it prone to fatigue and the anomalous results that can come from that, rather the drone inspection software. But at the same time, AI cannot do everything itself. It is a method for presenting clearer, more accurate and more actionable information for people to then act on with their own judgment.

There are a lot of easy-to-make assumptions, both good and bad, about AI. With communities beginning to emerge from lockdown and social distancing heralding a marked shift in day to day life, what AI really means for the utility industry is less reliance on manual inspections and a more efficient and effective tool for providing the right information about a power companys infrastructure its transmission and distributions lines, its poles, and its nearby vegetation into the hands of its key decision makers.

Jaro Uljanovs is a Machine Learning expert and a Data specialist with experience in a variety of fields. He completed his masters degree in physics at the University of York, UK where he applied Machine Learning techniques disruption prediction in Nuclear Fusion reactors. Having worked with the Joint-European Torus (JET) in Oxfordshire in collaboration with Aalto University, hes no stranger to big data analysis, large scale collaborative efforts and problem solving. His current focus lies in Artificial Intelligence and its applications to automated data analysis. Non-standard applications of Neural Networks are his main interest; Graph Neural Networks, Few Shot Learning, Spatial-Spectral Convolutions. These areas are what has helped SharperShape excel at key AI application areas such as automated LiDAR segmentation, automated component detection & assessment, and deep hyperspectral data analysis.

Miriam McNabb is the Editor-in-Chief of DRONELIFE and CEO of JobForDrones, a professional drone services marketplace, and a fascinated observer of the emerging drone industry and the regulatory environment for drones. Miriam has penned over 3,000 articles focused on the commercial drone space and is an international speaker and recognized figure in the industry. Miriam has a degree from the University of Chicago and over 20 years of experience in high tech sales and marketing for new technologies.For drone industry consulting or writing,Email Miriam.

TWITTER:@spaldingbarker

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Drones for Utilities: How AI is Redefining Utility Inspections - DroneLife

Global Machine Learning as a Service Market Projected to Reach USD XX.XX billion by 2025- Amazon, Oracle Corporation, IBM, Microsoft Corporation,…

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Research Associate / Postdoc – Machine Learning for Computer Vision job with TECHNISCHE UNIVERSITAT DRESDEN (TU DRESDEN) | 210323 – Times Higher…

At TU Dresden, Faculty of Computer Science, Institute of Artificial Intelligence, the Chair of Machine Learning for Computer Vision offers a position as

Research Associate / Postdoc

Machine Learning for Computer Vision

(subject to personal qualification employees are remunerated according to salary group E 14 TV-L)

starting at the next possible date. The position is limited for three years with the option of an extension. The period of employment is governed by the Fixed Term Research Contracts Act (Wissenschaftszeitvertragsgesetz - WissZeitVG). The position aims at obtaining further academic qualification. Balancing family and career is an important issue. The post is basically suitable for candidates seeking part-time employment. Please note this in your application.

Tasks:

Requirements:

Applications from women are particularly welcome. The same applies to people with disabilities.

Please submit your comprehensive application including the usual documents (CV, degree certificates, transcript of records, etc.) by 31.07.2020 (stamped arrival date of the university central mail service applies) preferably via the TU Dresden SecureMail Portal https://securemail.tu-dresden.de/ by sending it as a single PDF document to mlcv@tu-dresden.de or to: TU Dresden, Fakultt Informatik, Institut fr Knstliche Intelligenz, Professur fr Maschinelles Lernen fr Computer Vision, Herrn Prof. Dr. rer. nat. Bjrn Andres, Helmholtzstr. 10, 01069 Dresden. Please submit copies only, as your application will not be returned to you. Expenses incurred in attending interviews cannot be reimbursed.

Reference to data protection: Your data protection rights, the purpose for which your data will be processed, as well as further information about data protection is available to you on the website: https: //tu-dresden.de/karriere/datenschutzhinweis

Please find the german version under: https://tu-dresden.de/stellenausschreibung/7713.

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Research Associate / Postdoc - Machine Learning for Computer Vision job with TECHNISCHE UNIVERSITAT DRESDEN (TU DRESDEN) | 210323 - Times Higher...