The Week in Ransomware – September 16th 2022 – Iranian Sanctions – BleepingComputer

It has been a fairly quiet week on the ransomware front, with the biggest news being US sanctions on Iranians linked to ransomware attacks.

On Wednesday, the US Treasury Department announced sanctions against Iranians affiliated with Iran's Islamic Revolutionary Guard Corps (IRGC) for their breaching of US networks and encrypting devices with DiskCryptor and BitLocker.

Researchers also released some interesting reports this week:

In ransomware attack-related news, the Yanluowang ransomware gang began leaking data stolen during a cyberattack on Cisco and the Hive ransomware claimed an attack on Bell Technical Solutions (BTS).

Contributors and those who provided new ransomware information and stories this week include: @jorntvdw, @demonslay335, @serghei, @malwareforme, @malwrhunterteam, @BleepinComputer, @LawrenceAbrams, @Seifreed, @DanielGallagher, @VK_Intel, @FourOctets, @billtoulas, @struppigel, @PolarToffee, @fwosar, @Ionut_Ilascu, @Bitdefender, @AlvieriD, @AWNetworks, @LabsSentinel, @pcrisk, @CISAgov, and @security_score, @censysio, and @juanbrodersen.

A growing number of ransomware groups are adopting a new tactic that helps them encrypt their victims' systems faster while reducing the chances of being detected and stopped.

But recently, Censys has observed a massive uptick in Deadbolt-infected QNAP devices. The Deadbolt crew is ramping up their operations, and the victim count is growing daily.

Cisco has confirmed that the data leaked yesterday by the Yanluowang ransomware gang was stolen from the company network during a cyberattack in May.

The Lorenz ransomware gang now uses a critical vulnerability in Mitel MiVoice VOIP appliances to breach enterprises, using their phone systems for initial access to their corporate networks.

PCrisk found new STOP ransomware variants that append the .eemv and .eewt extensions to encrypted files.

PCrisk found the new Scam Ransomware that appends the .scam extension to encrypted files and drops a ransom note named read_it.txt.

PCrisk found the new Babuk ransomware variant that appends the .demon extension to encrypted files and drops a ransom note named How To Recover Your Files.txt.

The Treasury Department's Office of Foreign Assets Control (OFAC) announced sanctions today against ten individuals and two entities affiliated with Iran's Islamic Revolutionary Guard Corps (IRGC) for their involvement in ransomware attacks.

The Legislature of the City of Buenos Aires is slowly recovering from the cyberattack it suffered last Sunday : after changing passwords and disconnecting infected computers, they re-enabled WiFi , recovered one computer per area and continued with parliamentary work. However, they do not disclose what information was compromised or what type of attack it was.

This advisory updates joint CSA Iranian Government-Sponsored APT Cyber Actors Exploiting Microsoft Exchange and Fortinet Vulnerabilities in Furtherance of Malicious Activities, which provides information on these Iranian government-sponsored APT actors exploiting known Fortinet and Microsoft Exchange vulnerabilities to gain initial access to a broad range of targeted entities in furtherance of malicious activities, including ransom operations. The authoring agencies now judge these actors are an APT group affiliated with the IRGC.

PCrisk found a new Dharma ransomware variant that appends the .gnik extension to encrypted files.

PCrisk found a new STOP ransomware variant that appends the .eeyu extension to encrypted files.

PCrisk found a new Snatch ransomware variant that appends the .winxvykljw extension to encrypted files.

The Hive ransomware gang claimed responsibility for an attack that hit the systems of Bell Canada subsidiary Bell Technical Solutions (BTS).

Quantum ransomware, a rebrand of the MountLocker ransomware, was discovered in August 2021. The malware stops a list of processes and services, and can encrypt the machines found in the Windows domain or the local network, as well as the network shared resources. It logs all of its activities in a file called .log and computes a Client Id that is the XOR-encryption of the computer name.

PCrisk found a new STOP ransomware variant that appends the .eebn extension to encrypted files.

PCrisk found the BISAMWARE Ransomware that appends the .BISAMWARE and drops a ransom note named SYSTEM=RANSOMWARE=INFECTED.TXT.

Romanian cybersecurity firm Bitdefender has released a free decryptor to help LockerGoga ransomware victims recover their files without paying a ransom.

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The Week in Ransomware - September 16th 2022 - Iranian Sanctions - BleepingComputer

Wanted: artificial intelligence (AI) and machine learning to help humans and computers work together – Military & Aerospace Electronics

ARLINGTON, Va. U.S. military researchers are asking industry to develop computers able not only to analyze large amounts of data automatically, but also communicate and cooperate with humans to resolve ambiguities and improve performance over time.

Officials of the U.S. Defense Advanced Research Projects Agency (DARPA) in Arlington, Va., issued a broad agency announcement (HR001122S0052) on Thursday for the Environment-driven Conceptual Learning (ECOLE) project.

From industry, the DARPA ECOLE project seeks proposals in five areas: human language technology; computer vision; artificial intelligence (AI); reasoning; and human-computer interaction.

ECOLE will create AI agents able to learn from linguistic and visual input to enable humans and computers to work together to analyze image, video, and multimedia documents quickly in missions where reliability and robustness are essential.

Related: Military researchers to apply artificial intelligence (AI) and machine learning to combat medical triage

ECOLE will develop algorithms that can identify, represent, and ground the attributes that form the symbolic and contextual model for a particular object or activity through interactive machine learning with a human analyst. Knowledge of attributes and affordances, learned dynamically from data encountered within an analytic workflow, will enable joint reasoning with a human partner.

This acquired knowledge also will enable the machine to recognize never-before-seen objects and activities without misclassifying them as a member of a previously learned class, detect changes in known objects, and report these changes when they are significant.

System interaction with human intelligence analysts is expected to be symbiotic, with the systems augmenting human cognitive capabilities while simultaneously seeking instruction and correction to achieve accuracy.

Industry proposals should specify how symbolic knowledge representations will be acquired from unlabeled data, including the specifics of the learning mechanism; how these representations will be associated and reasoned within a growing body of knowledge; how the representations will be applied to human-interpretable object and activity recognition; and how the framework will permit collaboration with several analysts to resolve ambiguity, extend the set of known representations, and provide greater recognitional accuracy and coverage.

Related: Artificial intelligence (AI) to enable manned and unmanned vehicles adapt to unforeseen events like damage

The four-year ECOLE project with three phases; this solicitation concerns only the first and second phases. The first phase will create prototype agents that can pull relevant information out of unlabeled multimedia data, supplemented with human interaction.

These prototypes will demonstrate not only the ability to learn new concepts, but also to recombine previously learned attributes to recognize never-before-seen objects and activities. Systems also will be able to reason over similarities and differences in objects and activities.

The second phase of the ECOLE project will scale-up the framework to include several AI agents and human analysts to help deal with uncertain or contradictory information.

Computer interaction with human analysts will enable the system to learn to name and describe objects, actions, and properties to verify and augment their representations, and to acquire complex knowledge quickly and accurately from potentially sparse observations.

Related: Wanted: artificial intelligence (AI) and machine autonomy algorithms for military command and control

Humans and computers will work together primarily through the English language -- including words with several different meanings -- in a way that is readily understandable. The ECOLE project also will have two technical areas: distributed curriculum learning; and human-machine collaborative analysis.

Distributed curriculum learning involves multimedia data, and will use human partners provide feedback on the learning process. human-machine collaborative analysis will involve a human-machine interface (HMI) to improve ECOLE representations and analyze data such as multimedia and social media.

Companies interested should upload abstracts no later than 29 Sept. 2022, and full proposals by 14 Nov. 2022 to the DARPA BAA website at https://baa.darpa.mil.

Email questions or concerns to DARPA at ECOLE@darpa.mil. More information is online at https://sam.gov/opp/fd50cb65daf5493d886fa1ddc2c0dd77/view.

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Wanted: artificial intelligence (AI) and machine learning to help humans and computers work together - Military & Aerospace Electronics

Machine Learning Isnt Magic It Needs Strategy And A Human Touch – AdExchanger

By AdExchanger Guest Columnist

Data-Driven Thinking is written by members of the media community and contains fresh ideas on the digital revolution in media.

Todays column is written by Jasmine Jia, associate director of data science at Blockthrough.

The term machine learning seems to have a magical effect as a sales buzzword. Couple that with the term data science, and lots of companies think they have a winning formula for attracting new clients.

Is it smoke and mirrors? Often, the answer is yes.

What is quite real though is the need for best practices in data science and for companies to invest in and fully support talent that can apply those principles effectively.

Laying the foundation for machine learning

Machine learning success starts with hiring talent that can harness machine learning a team of skilled data scientists which is very expensive. Adding to the cost is time. It takes a lot of it to build a data science team and integrate them with other teams across operations.

A successful machine learning pipeline requires data cleaning, data exploration, feature extraction, model building, model validation and more. You also need to keep maintaining and evolving that pipeline. And not only is the cost high, but companies also rarely have the patience and time to manage this process and still meet their ROI objectives.

Defining best practices

With the right talent and pipeline in place, the next step is establishing best practices. This is vital. Machine learning depends on how you implement it, what problem you use it to solve, and how you deeply integrate it with your company.

To paint a picture of how things can go wrong just think about the times that imbalanced data sets led to what the media called racist robots and automated racism. Or, on a lighter note, how about those memes showing machine learning confusing blueberry muffins with Chihuahuas. Or mixing up images of bagels with pics of curled-up puppies?

Best practices can prevent some of these common pitfalls, but its essential to define them for the entirety of the data analysis process: before decisioning, during decisioning and after decisioning.

Lets take this step by step.

Before: It is all too common for companies to update an offering by adding a feature. But often they do so before completing meaningful data collection and analysis. Nobody has taken the time and resources to answer, Why are we adding this feature?

Before answering that all-important question, other questions need to be addressed. Are you seeing users doing this behavior naturally, already? What will the potential lift be? Is it worth the expense and time to tap into your engineering resources? What is the expected impact? What would this new feature ultimately mean to the future success of this product?

Youll need a lot of data to answer those queries. But lets say you culled it all and decided it was worthwhile to move ahead.

During: Youve launched that feature. There should be an ongoing stream of data that demonstrates whether or not the new feature is driving impact at the network level, at the publisher level, and at the user level.

Are you seeing the same impact across the board? Sometimes benefits to one can hurt another. Attention must be paid. Factor analysis is key. What are the factors at play that impact the analysis? Once identified, you need to determine if they are physically significant or not.

After: At this point, there are even more questions to address. What exactly is the impact? If you use A/B testing, can those short-term experiments provide dependable long-term forecasts? What lessons can you learn? Whether its a failure or success, how can it keep evolving? What are the new opportunities? What are the new behavioral changes youre seeing.

Machine learning for the long haul

There is a lot of data and oversight required to make a machine learning program truly viable. Its no wonder that many dont have the wherewithal to properly execute it and reap the benefits.

Here is the kicker: the data team doesnt make the decisions. The machine learning algorithm doesnt make the decisions. People make decisions. You can hire a fantastic squad of data scientists, and they can build and refine a machine learning model based on gobs of data that is 100% accurate. But for it to make any sort of difference to your business, you need to develop a strong workflow around it.

The best way to do that? Make sure data science teams are deeply integrated with different teams throughout your organization.

Establish a well-grounded data science practice, and you will see that machine learning can make the magic happen.

Follow Blockthrough (@blockthrough) and AdExchanger (@adexchanger) on Twitter.

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Machine Learning Isnt Magic It Needs Strategy And A Human Touch - AdExchanger

Putting artificial intelligence and machine learning workloads in the cloud – ComputerWeekly.com

Artificial intelligence (AI) and machine learning (ML) are some of the most hyped enterprise technologies and have caught the imagination of boards, with the promise of efficiencies and lower costs, and the public, with developments such as self-driving cars and autonomous quadcopter air taxis.

Of course, the reality is rather more prosaic, with firms looking to AI to automate areas such as online product recommendations or spotting defects on production lines. Organisations are using AI in vertical industries, such as financial services, retail and energy, where applications include fraud prevention and analysing business performance for loans, demand prediction for seasonal products and crunching through vast amounts of data to optimise energy grids.

All this falls short of the idea of AI as an intelligent machine along the lines of 2001: A Space Odysseys HAL. But it is still a fast-growing market, driven by businesses trying to drive more value from their data, and automate business intelligence and analytics to improve decision-making.

Industry analyst firm Gartner, for example, predicts that the global market for AI software will reach US$62bn this year, with the fastest growth coming from knowledge management. According to the firm, 48% of the CIOs it surveyed have already deployed artificial intelligence and machine learning or plan to do so within the next 12 months.

Much of this growth is being driven by developments in cloud computing, as firms can take advantage of the low initial costs and scalability of cloud infrastructure. Gartner, for example, cites cloud computing as one of five factors driving AI and ML growth, as it allows firms to experiment and operationalise AI faster with lower complexity.

In addition, the large public cloud providers are developing their own AI modules, including image recognition, document processing and edge applications to support industrial and distribution processes.

Some of the fastest-growing applications for AI and ML are around e-commerce and advertising, as firms look to analyse spending patterns and make recommendations, and use automation to target advertising. This takes advantage of the growing volume of business data that already resides in the cloud, cutting out the costs and complexity associated with moving data.

The cloud also lets organisations make use of advanced analytics and compute facilities, which are often not cost-effective to build in-house. This includes the use of dedicated, graphics processing units (GPUs) and extremely large storage volumes made possible by cloud storage.

Such capabilities are beyond the reach of many organisations on-prem offerings, such as GPU processing. This demonstrates the importance of cloud capability in organisations digital strategies, says Lee Howells, head of AI at advisory firm PA Consulting.

Firms are also building up expertise in their use of AI through cloud-based services. One growth area is AIOps, where organisations use artificial intelligence to optimise their IT operations, especially in the cloud.

Another is MLOps, which Gartner says is the operationalisation of multiple AI models, creating composite AI environments. This allows firms to build up more comprehensive and functional models from smaller building blocks. These blocks can be hosted on on-premise systems, in-house, or in hybrid environments.

Just as cloud service providers offer the building blocks of IT compute, storage and networking so they are building up a range of artificial intelligence and machine learning models. They are also offering AI- and ML-based services which firms, or third-party technology companies, can build into their applications.

These AI offerings do not need to be end-to-end processes, and often they are not. Instead, they provide functionality that would be costly or complex for a firm to provide itself. But they are also functions that can be performed without compromising the firms security or regulatory requirements, or that involve large-scale migration of data.

Examples of these AI modules include image processing and image recognition, document processing and analysis, and translation.

We operate within an ecosystem. We buy bricks from people and then we build houses and other things out of those bricks. Then we deliver those houses to individual customers, says Mika Vainio-Mattila, CEO at Digital Workforce, a robotic process automation (RPA) company. The firm uses cloud technologies to scale up its delivery of automation services to its customers, including its robot as a service, which can run either on Microsoft Azure or a private cloud.

Vainio-Mattila says AI is already an important part of business automation. The one that is probably the most prevalent is intelligent document processing, which is basically making sense of unstructured documents, he says.

The objective is to make those documents meaningful to robots, or automated digital agents, that then do things with the data in those documents. That is the space where we have seen most use of AI tools and technologies, and where we have applied AI ourselves most.

He sees a growing push from the large public cloud companies to provide AI tools and models. Initially, that is to third-party software suppliers or service providers such as his company, but he expects the cloud solution providers (CSPs) to offer more AI technology directly to user businesses too.

Its an interesting space because the big cloud providers spearheaded by Google obviously, but very closely followed by Microsoft and Amazon, and others, IBM as well have implemented services around ML- and AI-based services for deciphering unstructured information. That includes recognising or classifying photographs or, or translation.

These are general-purpose technologies designed so that others can reuse them. The business applications are frequently very use-case specific and need experts to tailor them to a companys business needs. And the focus is more on back-office operations than applications such as driverless cars.

Cloud providers also offer domain-specific modules, according to PA Consultings Howells. These have already evolved in financial services, manufacturing and healthcare, he says.

In fact, the range of AI services offered in the cloud is wide, and growing. The big [cloud] players now have models that everyone can take and run, says Tim Bowes, associate director for data engineering at consultancy Dufrain. Two to three years ago, it was all third-party technology, but they are now building proprietary tools.

Azure, for example, offers Azure AI, with vision, speech, language and decision-making AI models that users can access via AI calls. Microsoft breaks its offerings down into Applied AI Services, Cognitive Services, machine learning and AI infrastructure.

Google offers AI infrastructure, Vertex AI, an ML platform, data science services, media translation and speech to text, to name a few. Its Cloud Inference API lets firms work with large datasets stored in Googles cloud. The firm, unsurprisingly, provides cloud GPUs.

Amazon Web Services (AWS) also provides a wide range of AI-based services, including image recognition and video analysis, translation, conversational AI for chatbots, natural language processing, and a suite of services aimed at developers. AWS also promotes its health and industrial modules.

The large enterprise software and software-as-a-service (SaaS) providers also have their own AI offerings. These include Salesforce (ML and predictive analytics), Oracle (ML tools including pre-trained models, computer vision and NLP) and IBM (Watson Studio and Watson Services). IBM has even developed a specific set of AI-based tools to help organisations understand their environmental risks.

Specialist firms include H2O.ai, UIPath, Blue Prism and Snaplogic, although the latter three could be better described as intelligent automation or RPA companies than pure-play AI providers.

It is, however, a fine line. According to Jeremiah Stone, chief technology officer (CTO) at Snaplogic, enterprises are often turning to AI on an experimental basis, even where more mature technology can be more appropriate.

Probably 60% or 70% of the efforts Ive seen are, at least initially, starting out exploring AI and ML as a way to solve problems that may be better solved with more well-understood approaches, he says. But that is forgivable because, as people, we continually have extreme optimism for what software and technology can do for us if we didnt, we wouldnt move forward.

Experimentation with AI will, he says, bring longer-term benefits.

There are other limitations to AI in the cloud. First and foremost, cloud-based services are best suited to generic data or generic processes. This allows organisations to overcome the security, privacy and regulatory hurdles involved in sharing data with third parties.

AI tools counter this by not moving data they stay in the local business application or database. And security in the cloud is improving, to the point where more businesses are willing to make use of it.

Some organisations prefer to keep their most sensitive data on-prem. However, with cloud providers offering industry-leading security capabilities, the reason for doing this is rapidly reducing, says PA Consultings Howells.

Nonetheless, some firms prefer to build their own AI models and do their own training, despite the cost. If AI is the product and driverless cars are a prime example the business will want to own the intellectual property in the models.

But even then, organisations stand to benefit from areas where they can use generic data and models. The weather is one example, image recognition is potentially another.

Even firms with very specific demands for their AI systems might benefit from the expansive data resources in the cloud for model training. Potentially, they might also want to use cloud providers synthetic data, which allows model training without the security and privacy concerns of data sharing.

And few in the industry would bet against those services coming, first and foremost, from the cloud service providers.

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Putting artificial intelligence and machine learning workloads in the cloud - ComputerWeekly.com

Using AI, machine learning and advanced analytics to protect and optimize business – Security Magazine

Using AI, machine learning and advanced analytics to protect and optimize business | Security Magazine This website requires certain cookies to work and uses other cookies to help you have the best experience. By visiting this website, certain cookies have already been set, which you may delete and block. By closing this message or continuing to use our site, you agree to the use of cookies. Visit our updated privacy and cookie policy to learn more. This Website Uses CookiesBy closing this message or continuing to use our site, you agree to our cookie policy. Learn MoreThis website requires certain cookies to work and uses other cookies to help you have the best experience. By visiting this website, certain cookies have already been set, which you may delete and block. By closing this message or continuing to use our site, you agree to the use of cookies. Visit our updated privacy and cookie policy to learn more.

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Using AI, machine learning and advanced analytics to protect and optimize business - Security Magazine

7 Machine Learning Portfolio Projects to Boost the Resume – KDnuggets

There is a high demand for machine learning engineer jobs, but the hiring process is tough to crack. Companies want to hire professionals with experience in dealing with various machine learning problems.

For a newbie or fresh graduate, there are only a few ways to showcase skills and experience. They can either get an internship, work on open source projects, volunteer in NGO projects, or work on portfolio projects.

In this post, we will be focusing on machine learning portfolio projects that will boost your resume and help you during the recruitment process. Working solo on the project also makes you better at problem-solving.

mRNA Degradation project is a complex regression problem. The challenge in this project is to predict degradation rates that can help scientists design more stable vaccines in the future.

The project is 2 years old, but you will learn a lot about solving regression problems using complex 3D data manipulation and deep learning GRU models. Furthermore, we will be predicting 5 targets: reactivity, deg_Mg_pH10, deg_Mg_50C, deg_pH10, deg_50C.

Automatic Image Captioning is the must-have project in your resume. You will learn about computer vision, CNN pre-trained models, and LSTM for natural language processing.

In the end, you will build the application on Streamlit or Gradio to showcase your results. The image caption generator will generate a simple text describing the image.

You can find multiple similar projects online and even create your deep learning architecture to predict captions in different languages.

The primary purpose of the portfolio project is to work on a unique problem. It can be the same model architecture but a different dataset. Working with various data types will improve your chance of getting hired.

Forecasting using Deep Learning is a popular project idea, and you will learn many things about time series data analysis, data handling, pre-processing, and neural networks for time-series problems.

The time series forecasting is not simple. You need to understand seasonality, holiday seasons, trends, and daily fluctuation. Most of the time, you dont even require neural networks, and simple linear regression can provide you with the best-performing model. But in the stock market, where the risk is high, even a one percent difference means millions of dollars in profit for the company.

Having a Reinforcement Learning project on your resume gives you an edge during the hiring process. The recruiter will assume that you are good at problem-solving and you are eager to expand your boundaries to learn about complex machine learning tasks.

In the Self-Driving car project, you will train the Proximal Policy Optimization (PPO) model in the OpenAI Gym environment (CarRacing-v0).

Before you start the project, you need to learn the fundamentals of Reinforcement Learning as it is quite different from other machine learning tasks. During the project, you will experiment with various types of models and methodologies to improve agent performance.

Conversational AI is a fun project. You will learn about Hugging Face Transformers, Facebook Blender Bot, handling conversational data, and creating chatbot interfaces (API or Web App).

Due to the huge library of datasets and pre-trained models available on Hugging Face, you can basically finetune the model on a new dataset. It can be Rick and Morty conversation, your favorite film character, or any celebrity that you love.

Apart from that you can improve the chatbot for your specific use case. In case of medical application. The chatbot needs technical knowledge and understands the patient's sentiment.

Automatic Speech Recognition is my favorite project ever. I have learned everything about transformers, handling audio data, and improving the model performance. It took me 2 months to understand the fundamentals and another two to create the architecture that will work on top of the Wave2Vec2 model.

You can improve the model performance by boosting Wav2Vec2 with n-grams and text pre-processing. I have even pre-processed the audio data to improve the sound quality.

The fun part is that you can fine-tune the Wav2Vec2 model on any type of language.

End-to-end machine learning project experience is a must. Without it, your chance of getting hired is pretty slim.

You will learn:

The main purpose of this project is not about building the best model or learning new deep learning architecture. The main goal is to familiarize the industry standards and techniques for building, deploying, and monitoring machine learning applications. You will learn a lot about development operations and how you can create a fully automated system.

After working on a few projects, I will highly recommend you create a profile on GitHub or any code-sharing site where you can share your project findings and documentation.

The principal purpose of working on a project is to improve your odds of getting hired. Showcasing the projects and presenting yourself in front of a potential recruiter is a skill.

So, after working on a project, start promoting it on social media, create a fun web app using Gradio or Streamlit, and write an engaging blog. Dont think about what people are going to say. Just keep working on a project and keep sharing. And I am sure in no time multiple recruiters will approach you for the job.

Abid Ali Awan (@1abidaliawan) is a certified data scientist professional who loves building machine learning models. Currently, he is focusing on content creation and writing technical blogs on machine learning and data science technologies. Abid holds a Master's degree in Technology Management and a bachelor's degree in Telecommunication Engineering. His vision is to build an AI product using a graph neural network for students struggling with mental illness.

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7 Machine Learning Portfolio Projects to Boost the Resume - KDnuggets

Astera Labs to Host Mayor of Burnaby at Grand Opening Of New Vancouver Design Center and Lab Dedicated to Purpose-Built Connectivity Solutions for…

--(BUSINESS WIRE)--Astera Labs Inc. :

WHEN:

Wednesday, September 21, 2022, from 9:30 a.m.-11:30 a.m. PDT

WHERE:

Astera Labs Vancouver4370 Dominion StreetBurnaby, BC V5G 4L7Canada

WHO:

WHAT:

Astera Labs welcomes the Mayor of Burnaby and the Burnaby Board of Trade President and CEO to celebrate the grand opening of its new state-of-the-art design center and lab in the Greater Vancouver Area.

Astera Labs Vancouver will support the companys development of cutting-edge interconnect technologies for Artificial Intelligence and Machine Learning architectures in the Cloud. The rapidly growing semiconductor company chose the Vancouver area to tap into the regions rich technology talent base to drive product development, customer support and marketing. The Vancouver location increases the companys operations in Canada, which already includes the new Research and Development Design Center in Toronto, and adds to its global footprint with headquarters in Santa Clara, California and offices around the globe.

Astera Labs is actively hiring across multiple engineering and marketing disciplines to support end-to-end product and application development and overall go-to-market operations. Open positions can be found at http://www.AsteraLabs.com/Careers/.

The ribbon cutting and photo opportunity with Burnaby Officials and Astera Labs Executives will be held outdoors. Below is an overview of the event agenda:

Event Schedule

Formal Remarks

9:30 a.m. 10:00 a.m. PDT

Ribbon Cutting / Photo Op / Media Q&A

10:00 a.m. 10:30 a.m. PDT

Indoor Reception

10:30 a.m. 11:30 a.m. PDT

For onsite assistance, contact Dave Nelson at (604) 418-9930.

About Astera Labs

Astera Labs Inc. is a leader in purpose-built data and memory connectivity solutions to remove performance bottlenecks throughout the data center. With locations worldwide, the companys silicon, software, and system-level connectivity solutions help realize the vision of Artificial Intelligence and Machine Learning in the Cloud through CXL, PCIe, and Ethernet technologies. For more information about Astera Labs including open positions, visit http://www.AsteraLabs.com.

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Astera Labs to Host Mayor of Burnaby at Grand Opening Of New Vancouver Design Center and Lab Dedicated to Purpose-Built Connectivity Solutions for...

What are the best courses to learn machine learning? – Rebellion Research

What are the best courses to learn machine learning?

Artificial Intelligence & Machine Learning

Software programs can increase their propensity to anticipate outcomes without being explicitly designed, thanks to artificial intelligence (AI) and machine learning (ML). Machine learning algorithms use previous data as input to anticipate new output values.

Machine learning courses online are a modern invention that has benefited many workplace and company processes and students daily lives. In this area of artificial intelligence (AI), statistical techniques are used to build smart computer systems that can pick up new information from readily available databases.

The fields of computer science known as artificial intelligence (AI) and machine learning (ML) concentrate on analyzing and interpreting patterns and structures in data to allow understanding, reasoning, and decision-making independent of human involvement. In the world of technology, everyone is utilizing academic services to help with online classes.

Now different colleges and universities are introducing the best machine learning courses online and on their campuses so students can use these new skills and upgrade their learning. In this article, you can go through different courses from different educational institutions.

The Stanford University course is the most popular online machine learning course. Its a great introduction to the field that anyone can take, whether you have no background in machine learning or are just looking for a refresher.

The course has been taught by Andrew Ng since 2012 and has over 200,000 students enrolled. There are also many other courses offered on Coursera which are focused on more specialized topics such as computer vision and natural language processing (NLP).

You may enroll in fundamental machine learning classes online at coursera.org, where you can build and train supervised machine learning models for prediction and binary classification problems, such as logistic regression and linear regression.

Machine Learning Foundations is a free online course taught by the same people who led the machine learning course at Stanford University. Its designed for students with no prior knowledge of machine learning and covers all the basics you need to understand what makes machine learning work.

The course starts with an introduction to how computers learn from data, then moves on to algorithms like supervised classification and unsupervised clustering (which are used in many real-world applications). You will also learn about topic modeling, deep neural networks (DNNs), feature selection algorithms like random forest classifiers, dimensionality reduction techniques such as principal components analysis (PCA), feature extraction using linear regression models, and this list goes on.

All this information should give you enough background information on which topics would be useful in your career as a data scientist or analyst. However, theres still more left out for machine learning. It might seem like an oversight considering theyre often more advanced than other approaches. Theres still hope since we live in an era where big data has begun generating mountains upon mountains worth analyzing, so why not use them?

This course is designed for students with machine learning backgrounds who want to learn the fundamentals of building successful systems. The course focuses on the practical aspects of implementing machine learning applications with Python, R, and Hadoop.

The course includes lectures and exercises to help you understand how machine learning works. Alongside this material, you will also receive access to an online homework assignment where you can practice what has been covered during lectures.

EIT Digital Master School is a one-year online program that combines the best of both worlds, offering the flexibility to study whenever you have time and an intuitive interface that makes it easy to understand whats going on. This course is also recommended for business professionals who want to learn machine learning but have little experience with it. It enables you to do machine learning courses online in an efficient way.

It is not the best option if you are looking for a career as a data scientist since this course is focused solely on machine learning techniques and not on building products or services using these methods (though there are plenty of opportunities outside of academia), This course is not recommended if your goal is getting into the industry after graduation.

Fast.ai is a popular online course offering students free and affordable courses. The course is taught by Jeremy Howard, who has been teaching machine learning for years. He knows exactly what it takes to master this field, so if you are looking for an instructor who can help you build a strong foundation in the basics of linear algebra and calculus, this might be the best choice for your needs.

In addition to being taught by one of the best instructors in this field (and therefore having access to some of the best resources), fast.ai also has many other benefits, like free. There are no hidden fees or charges like many other online courses. If anything goes wrong while using their services, they will fix it without question, which means less stress when trying something new. And finally, the community around them is amazing because they are so friendly towards others who want help learning how to get better at programming languages like Python.

It can seem overwhelming if you are interested in machine learning courses online and dont have a computer science background, still, there are plenty of courses available to you that will help you get started. Machine learning is a very broad field, and it can be difficult to know where to start. Many courses are available for students who want to learn about machine learning but arent sure where their path should begin.

Some courses are better suited for beginners than others; if youre starting with this subject, then you should consider taking one of the following:

If you have some experience with programming, especially algorithms, but not necessarily computer science or maths, then another option might become better suited for you:

Takeaway #1 While taking machine learning courses online, students should not expect to be able to create a functioning model after the first few hours of study. You will probably spend much more time getting to that point than you ever thought possible. These courses take more time and practice to get pro in it. Machine learning follows protocol and step-by-step learning. If you are taking these classes, you must be patient and do the best practice.

Takeaway #2 There is no substitute for experience, and lots of it! If you have never worked with any machine learning system before, dont expect to get up to speed quickly or without practice. The best course material mimics this reality and gives you enough material to understand the basics and then leaves it up to you as much as possible for you to keep practicing on your own until things become second nature, which means becoming familiar with the tools that are available and developing a critical eye which allows you to know what data is real and what data is false.

Artificial Intelligence & Machine Learning

The rest is here:
What are the best courses to learn machine learning? - Rebellion Research

Explore and master machine learning and data science with this eight-course bundle – TechRepublic

With this eight-course certification training bundle, youll get to master machine learning and data science concepts. Grab it for $35 today.

Even in cutting-edge fields like machine learning, technology is constantly evolving and innovating. Thats why, if you want to future-proof your skills and make strides up the career ladder, its important to commit to learning todays most important technologies. Today, that means delving into machine learning and data science. You can take a deep dive into both in the Machine Learning & Data Science Certification Training Bundle.

This eight-course bundle is taught by Minerva Singh, a Cambridge University Ph.D. graduate who has extensive experience in data science. She has expertise in tools like R, QGIS, Python and more.

Across the courses, youll focus primarily on Python, R, and TensorFlow. Starting out, youll get a full introduction to Python Data Science, learn how to install TensorFlow and Keras, and begin covering the basics of syntax and TensorFlows graphing environment. From there, youll begin creating artificial neural networks and deep learning structures and explore statistical modeling in TensorFlow.

As you progress, youll get more focused training in Python Data Science, learn how to classify and cluster data in Python, and understand how to use statistics in machine learning. Finally, in a couple of deep dives into R programming, youll learn commonly used techniques, visualization methods and deep learning techniques and how to apply them to real-life temporal data.

Youll also explore deep neural networks, convolution neural networks and recurrent neural networks. By the end of the courses, youll have a comprehensive understanding of some of the most important tools in machine learning and data science.

Get caught up to the future. Grab the Machine Learning & Data Science Certification Training Bundle for just $35 today.

Prices and availability are subject to change.

Excerpt from:
Explore and master machine learning and data science with this eight-course bundle - TechRepublic

The Increased Use Of Machine Learning And Artificial Intelligence Is Expected To Fuel The Digital Transformation Market As Per The Business Research…

LONDON, Sept. 14, 2022 (GLOBE NEWSWIRE) -- According to The Business Research Companys research report on the digital transformation market, the increasing adoption of machine learning and artificial intelligence is expected to drive the growth of the digital transformation market going forward. Digital transformation provides traditional businesses with solutions like cloud computing, big data & analytics, data management, and other advanced features such as artificial intelligence and machine learning, which help in the optimization of business operations, leading to reduced efforts in operations and increased efficiency. Thus, their usage increased in various sectors such as healthcare, banking, transportation, manufacturing, and others, increasing the demand in the digital transformation market.

For instance, according to the report published by Cloudmantra, an India-based technology services company, the usage of machine learning in the Indian manufacturing industry has increased manufacturing capacity by up to 20% while reducing material usage by 4% in 2021. It also gives manufacturers the ability to control Overall Equipment Effectiveness (OEE) at the plant level, increasing OEE performance from 65% to 85%. Furthermore, according to the MIT Technology Review Insights report in 2022, approximately 60% of manufacturers are using artificial intelligence to improve daily operations, design products, and plan their future operations. Therefore, the rising adoption of machine learning and AI drives the digital transformation market.

Request for a sample of the global digital transformation market report

The global digital transformation market size is expected to grow from $0.94 trillion in 2021 to $1.17 trillion in 2022 at a compound annual growth rate (CAGR) of 24.7%. The global digital transformation market share is expected to grow to $2.64 trillion in 2026 at a CAGR of 22.4%.

Technological advancement in digital solutions is gaining popularity among the digital transformation market trends. Major companies operating in the digital transformation market are focused on developing technologically advanced products to strengthen their market position. For instance, in April 2020, Oracle Corporation, a US-based computer technology corporation and software solutions provider, built a new cloud data storage service called GoldenGate, an oracles cloud infrastructure software that uses real-time data analytics for the analysis of data. Real-time data analysis provides a very quick analysis of data by using different logical and mathematical operations, which helps in understanding business requirements and implementing any decision instantly. GoldenGate provides clients with a highly automated and fully managed cloud service such as database replication, analyzing real-time data, and real-time data ingestion to the cloud, which will make daily business operations easy and analyzable.

Major players in the digital transformation market are Microsoft Corporation, IBM Corporation, Oracle Corporation, Google Inc., Cognizant, Accenture PLC, Dell EMC, Siemens AG, Hewlett-Packard Company, Adobe Systems Inc., Capgemini, Cognex Corporation, Deloitte, Marlabs Inc., Equinix Inc., PricewaterhouseCoopers, Apple Inc., Broadcom, CA Technologies, KELLTON TECH, International Business Machines Corporation, Hakuna Matata Solutions, ScienceSoft Inc., SumatoSoft, Space-O Technologies, HCL Technologies, and Tibco Software Inc.

The global digital transformation market analysis is segmented by technology into cloud computing, big data and analytics, artificial intelligence (AI), internet of things (IoT), blockchain; by deployment mode into cloud, on-premises; by organization size into large enterprises, small and medium-sized enterprises (SMEs); by end-user into BFSI, healthcare, telecom and IT, automotive, education, retail and consumer goods, media and entertainment manufacturing, government, others.

North America was the largest region in the digital transformation market in 2021. Asia-Pacific is expected to be the fastest-growing region in the global digital transformation market during the forecast period. The regions covered in the global digital transformation industry outlook are Asia-Pacific, Western Europe, Eastern Europe, North America, South America, the Middle East, and Africa.

Digital Transformation Global Market Report 2022 Market Size, Trends, And Global Forecast 2022-2026 is one of a series of new reports from The Business Research Company that provide digital transformation market overviews, analyze and forecast market size and growth for the whole market, digital transformation market segments and geographies, digital transformation market trends, digital transformation market drivers, digital transformation market restraints, digital transformation market leading competitors revenues, profiles and market shares in over 1,000 industry reports, covering over 2,500 market segments and 60 geographies.

The report also gives in-depth analysis of the impact of COVID-19 on the market. The reports draw on 150,000 datasets, extensive secondary research, and exclusive insights from interviews with industry leaders. A highly experienced and expert team of analysts and modelers provides market analysis and forecasts. The reports identify top countries and segments for opportunities and strategies based on market trends and leading competitors approaches.

Not the market you are looking for? Check out some similar market intelligence reports:

Artificial Intelligence Global Market Report 2022 By Offering (Hardware, Software, Services), By Technology (Machine Learning, Natural Language Processing, Context-Aware Computing, Computer Vision, Others (Image Processing, Speech Recognition)), By End-User Industry (Healthcare, Automotive, Agriculture, Retail, Marketing, Telecommunication, Defense, Aerospace, Media & Entertainment) Market Size, Trends, And Global Forecast 2022-2026

Cloud Orchestration Global Market Report 2022 By Service Type (Cloud Service Automation, Training, Consulting, And Integration, Support And Maintenance), By Deployment Mode (Private, Public, Hybrid), By Organization Size (Small And Medium Enterprises (SMEs), Large Enterprises), By End-User (Healthcare And Life Sciences, Transportation And Logistics, Government And Defense, IT And Telecom, Retail, Manufacturing, Other End-Users) Market Size, Trends, And Global Forecast 2022-2026

Internet Of Things (IoT) Global Market Report 2022 By Platform (Device Management, Application Management, Network Management), By End Use Industry (BFSI, Retail, Government, Healthcare, Manufacturing, Transportation, IT & Telecom), By Application (Building And Home Automation, Smart Energy And Utilities, Smart Manufacturing, Connected Logistics, Smart Retail, Smart Mobility And Transportation) Market Size, Trends, And Global Forecast 2022-2026

Interested to know more about The Business Research Company?

The Business Research Company is a market intelligence firm that excels in company, market, and consumer research. Located globally it has specialist consultants in a wide range of industries including manufacturing, healthcare, financial services, chemicals, and technology.

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The Business Research Companys flagship product, Global Market Model, is a market intelligence platform covering various macroeconomic indicators and metrics across 60 geographies and 27 industries. The Global Market Model covers multi-layered datasets which help its users assess supply-demand gaps.

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The Increased Use Of Machine Learning And Artificial Intelligence Is Expected To Fuel The Digital Transformation Market As Per The Business Research...