Archive for the ‘Machine Learning’ Category

Hardening AI: Is machine learning the next infosec imperative? – ITProPortal

As enterprise deployments of machine learning continue at a strong pace, including in mission-critical environments such as in contact centers, for fraud detection and in regulated sectors like healthcare and finance for example, they are doing so against a backdrop of rising and evermore ferocious cyberattacks.

Take, for example, the SolarWinds hack in December 2020, arguably one of the largest on record, or the recent exploits that hit Exchange servers and affected tens of thousands of customers. Alongside such attacks, we've seen new impetus behind the regulation of artificial intelligence (AI), with the world's first regulatory framework for the technology arriving in April 2021. The EU's landmark proposals build on GDPR legislation, carrying heavy penalties for enterprises that fail to consider the risks and ensure that trust goes hand in hand with success in AI.

Altogether, a climate is emerging in which the significance of securing machine learning can no longer be ignored. Although this is a burgeoning field with much more innovation to come, the market is already starting to take the threat seriously.

Our research surveys reveal a steep change in deployments of machine learning during the pandemic, with more than 80 percent of enterprises saying they are trialing the technology or have put it into production, up from just over half a year ago.

But the topic of securing those systems has received little fanfare by comparison, even though research into the security of machine learning models goes back to the early 2000s.

We've seen several high-profile incidents that highlight the risks stemming from greater use of the technology. In 2020, a misconfigured server at Clearview AI, the controversial facial recognition start-up, leaked the company's internal files, apps and source code. In 2019, hackers were able to trick the Autopilot system of a Tesla Model S by using adversarial approaches involving sticky notes. Both pale in comparison to more dangerous scenarios, including the autonomous car that killed a pedestrian in 2018 and a facial recognition system that caused the wrongful arrest of an innocent person in 2019.

The security community is becoming more alert to the dangers of real-world AI. The CERT Coordination Center, which tracks security vulnerabilities globally, published its first note on machine learning risks in late 2019, and in December 2020, The Partnership on AI introduced its AI Incident Database, the first to catalog events in which AI has caused "safety, fairness, or other real-world problems".

The challenges that organizations are facing with machine learning are also shifting in this direction.

Several years ago, problems with preparing data, gaining skills and applying AI to specific business problems were the dominant headaches, but new topics are now coming to the fore. Among them are governance, auditability, compliance and above all, security.

According to CCS Insight's latest survey of senior IT leaders, security is now the biggest hurdle companies face with AI, cited by over 30 percent of respondents. Many companies struggle with the most rudimentary areas of security at the moment, but machine learning is a new frontier, particularly as business leaders start to think more about the risks that arise as the technology is embedded into more business operations.

Missing until recently are tools that help customers improve the security of their machine learning systems. A recent Microsoft survey, for example, found that 90 percent of businesses said they lack tools to secure their AI systems and that security pros were looking for specific guidance in the field.

Responding to this need, the market is now stepping up. In October 2020, non-profit organization MITRE, in collaboration with 12 firms including Microsoft, Airbus, Bosch, IBM and Nvidia, released an Adversarial ML Threat Matrix, an industry-focused open framework to help security analysts detect and respond to threats against machine learning systems.

Additionally, in April 2021, Algorithmia, a supplier of an enterprise machine learning operations (MLOps) platform that specializes in the governance and security of the machine learning life cycle, released a host of new security features focused on the integration of machine learning into the core IT security environment. They include support for proxies, encryption, hardened images, API security and auditing and logging. The release is an important step, highlighting my view that security will become intrinsic to the development, deployment and use of machine learning applications.

Finally, just last week, Microsoft released Counterfit, an open-source automation tool for security testing AI systems. Counterfit helps organizations conduct AI security risk assessments to ensure that algorithms used in businesses are robust, reliable and trustworthy. The tool enables pen testing of AI systems, vulnerability scanning and logging to record attacks against a target model.

These are early but important first steps that indicate the market is starting to take security threats to AI seriously. I encourage machine learning engineers and security professionals to get going begin to familiarize yourselves with these tools and the kinds of threats your AI systems could face in the not-so-distant future.

As machine learning becomes part of standard software development and core IT and business operations in the future, vulnerabilities and new methods of attack are inevitable. The immature and open nature of machine learning makes it particularly susceptible to hacking and that's why I predicted last year that we would see security become the top priority for enterprises' investment in machine learning by 2022.

A new category of specialism will emerge devoted to AI security and posture management. It will include core security areas applied to machine learning, like vulnerability assessments, pen testing, auditing and compliance and ongoing threat monitoring. In future, it will track emerging security vectors such as data poisoning, model inversions and adversarial attacks. Innovations like homomorphic encryption, confidential machine learning and privacy protection solutions such as federated learning and differential privacy will all help enterprises navigate the critical intersection of innovation and trust.

Above all, it's great to see the industry beginning to tackle this imminent problem now. Matilda Rhode, Senior Cybersecurity Researcher at Airbus, perhaps captures this best when she states, "AI is increasingly used in industry; it is vital to look ahead to securing this technology, particularly to understand where feature space attacks can be realized in the problem space. The release of open-source tools for security practitioners to evaluate the security of AI systems is both welcome and a clear indication that the industry is taking this problem seriously".

I look forward to tracking how enterprises progress in this critical field in the months ahead.

Nick McQuire, Chief of Enterprise Research, CCS Insight

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Hardening AI: Is machine learning the next infosec imperative? - ITProPortal

AI is learning how to create itself – MIT Technology Review

But theres another crucial observation here. Intelligence was never an endpoint for evolution, something to aim for. Instead, it emerged in many different forms from countless tiny solutions to challenges that allowed living things to survive and take on future challenges. Intelligence is the current high point in an ongoing and open-ended process. In this sense, evolution is quite different from algorithms the way people typically think of themas means to an end.

Its this open-endedness, glimpsed in the apparently aimless sequence of challenges generated by POET, that Clune and others believe could lead to new kinds of AI. For decades AI researchers have tried to build algorithms to mimic human intelligence, but the real breakthrough may come from building algorithms that try to mimic the open-ended problem-solving of evolutionand sitting back to watch what emerges.

Researchers are already using machine learning on itself, training it to find solutions to some of the fields hardest problems, such as how to make machines that can learn more than one task at a time or cope with situations they have not encountered before. Some now think that taking this approach and running with it might be the best path to artificial general intelligence.We could start an algorithm that initially does not have much intelligence inside it, and watch it bootstrap itself all the way up potentially to AGI, Clune says.

The truth is that for now, AGI remains a fantasy. But thats largely because nobody knows how to makeit.Advances in AI are piecemeal and carried out by humans, with progress typically involving tweaks to existing techniques or algorithms, yielding incremental leaps in performance or accuracy. Clune characterizes these efforts as attempts to discover the building blocks for artificial intelligence without knowing what youre looking for or how many blocks youll need. And thats just the start. At some point, we have to take on the Herculean task of putting them all together, he says.

Asking AI to find andassemble those building blocks for usis a paradigm shift. Its saying we want to create an intelligent machine, but we dont care what it might look likejust give us whatever works.

Even if AGI is never achieved, the self-teaching approach may still change what sorts of AI are created. The world needsmore than a very good Go player, says Clune. For him, creating a supersmart machine means building a system that invents its own challenges, solves them, and then invents new ones. POET is a tiny glimpse of this in action. Clune imagines a machine that teaches a bot to walk, then to play hopscotch, then maybe to play Go. Then maybe it learns math puzzles and starts inventing its own challenges, he says. The system continuously innovates, and the skys the limit in terms of where it might go.

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AI is learning how to create itself - MIT Technology Review

[PDF] Machine Learning as a Service (MLaaS) Market : Some Ridiculously Simple Ways To Improve. The Courier – The Courier

IT equipment consists of products such as Personal computers (PCs), servers, monitors, storage devices etc. Software comprises of computer programs, firmware and applications. The IT & business services segment is further classified into consulting, custom solutions development, outsourcing services etc. The telecommunication equipment segment consists of telecom equipments such as switches, routers etc. The carrier services segment comprises of operations related revenue spent by telecom service provider on acquiring telecom capacity, primarily from overseas carrier.

How Important Is Machine Learning as a Service (MLaaS) ?

Market Dynamics

In 20th century data is considered as new oil. Due to this many technology companies are heavily investing in data. These data may be structured and unstructured forms. It has become extremely crucial for these organizations to get a better insight into their data, in order to enhance efficiency and competitiveness. Moreover, many organizations are increasingly adopting machine learning as a service to analyze both structured and unstructured data for future predictions and also use it for further marketing purposes.

The research is derived through primary and secondary statistics sources and it comprises both qualitative and quantitative detailing.

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Some of the key players profiled in the study areH2O.ai, Google Inc., Predictron Labs Ltd, IBM Corporation, Ersatz Labs Inc., Microsoft Corporation, Yottamine Analytics, Amazon Web Services Inc., FICO, and BigML Inc.

Market Trends

Advent of new intelligent application is expected to be major trendMachine learning capabilities are expected to be integrated into more platforms and software in the years to come, enabling organizations to take advantage of them. A number of companies are focused on becoming a data company irrespective of what an organization does. Previously, organizations have been dependent on structured data to make appropriate decisions or estimate future outcomes. However, upsurge of big data and machine learning capabilities has allowed analysis of unstructured data to make more informed decisions. Moreover, rapid speed of data generation and the availability of a huge amount of computing power are expected to facilitate advent of more and more applications that generate real-time predictions and get better constantly over time.

Machine Learning as a Service (MLaaS) Market Taxonomy:

Global Machine Learning as a Service (MLaaS) Market, By Deployment:

Global Machine Learning as a Service (MLaaS) Market, By End-use Application:

Global Machine Learning as a Service (MLaaS) Market, By Region:

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Yes, The global Machine Learning as a Service (MLaaS) market is estimated to account for US$ 38,063.0 million by 2027

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Companies Covered as part of this study include: H2O.ai, Google Inc., Predictron Labs Ltd, IBM Corporation, Ersatz Labs Inc., Microsoft Corporation, Yottamine Analytics, Amazon Web Services Inc., FICO, and BigML Inc.,

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[PDF] Machine Learning as a Service (MLaaS) Market : Some Ridiculously Simple Ways To Improve. The Courier - The Courier

Machine Learning Data Catalog Software Market is Anticipated to Rise at a Considerable Growth Rate During 2021-2027 | IBM, Alation, Oracle, Cloudera,…

This Has Brought Along Several Changes In This Report Also Covers The Impact Of Covid-19 On The Global Market

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Competitive Landscape:

The report covers key players of theMachine Learning Data Catalog Software market and their market position as well as performance over the years. It offers a detailed insight into the latest business strategies such as mergers, partnerships, product launches, acquisitions, expansion of production units, and collaborations, adopted by some major global players. In this chapter, the report explains the key investment in R&D activities from key players to help expand their existing business operations and geographical reach. Additionally, the report evaluates the scope of growth and market opportunities of new entrants or players in the market.

Key Players Covered in GlobalMachine Learning Data Catalog Software Market Report AreIBM, Alation, Oracle, Cloudera, Unifi, Anzo Smart Data Lake (ASDL), Collibra, Informatica, Hortonworks, Reltio, Talend.

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Chapter 1:Overview, Product Overview, Market Segmentation, Market Overview of Regions, Market Dynamics, Limitations, Opportunities, and Industry News and Policies.Chapter 2:Machine Learning Data Catalog Software Industry Chain Analysis, Upstream Raw Material Suppliers, Major Players, Production Process Analysis, Cost Analysis, Market Channels, and Major Downstream Buyers.Chapter 3: Value Analysis, Production, Growth Rate, and Price Analysis by Type.Chapter 4: Downstream Characteristics, Consumption, and Market Share by Application ofMachine Learning Data Catalog Software.Chapter 5: Production Volume, Price, Gross Margin, and Revenue ($) ofMachine Learning Data Catalog Software by Regions.Chapter 6:Machine Learning Data Catalog Software Production, Consumption, Export, and Import by Regions.Chapter 7:Status and SWOT Analysis by Regions.Chapter 8: Competitive Landscape, Product Introduction, Company Profiles, Market Distribution Status by Players ofMachine Learning Data Catalog Software.Chapter 9:Analysis and Forecast by Type and Application.Chapter 10: Analysis and Forecast by Regions.Chapter 11: Characteristics, Key Factors, New Entrants SWOT Analysis, Investment Feasibility Analysis.Chapter 12: Conclusion of the Whole Report.Continue

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Machine Learning Data Catalog Software Market is Anticipated to Rise at a Considerable Growth Rate During 2021-2027 | IBM, Alation, Oracle, Cloudera,...

APIs: The Real ML Pipeline Everyone Should Be Talking About – insideBIGDATA

In this special guest feature, Rob Dickinson, CTO, Resurface Labs, suggests that to achieve greater success with AI/ML models, through accurate business understanding, clear data understanding, and high data quality, todays API-first organizations must shift towards real-time data collection. Robs built all kinds of databases and data pipelines. Keeping the end result in mind, Rob builds data architectures that focus on the consumption of data, whether its blazing fast queries against very large datasets or finding the needle in a haystack. Ultimately delivering better data access across all purposes and teams. Years at Intel, Dell, and Quest Software, framed his passion for customer input, and to find elegant ways to architect and build scalable software.

Whether data scientist or CEO, everyone hungers for more data. Its not just a matter of volume, and not simply an exercise in data viz, todays algorithm-driven organizations want insights as fast as possible those business markers that AI and machine learning teams strive to deliver on.

You cant do effective machine learning without having the Big Data, so organizations must learn to harness the millions (billions?) of daily interactions they have inside and outside their walls. APIs offer an existing and logical pipeline to get data into modelling and analytics processes.

To achieve success with AI and ML models, here are a few API-driven principles around business understanding, data comprehension, and data quality.

Machine learning begins with data access

Did Amazon raise the bar too high? The e-commerce giant blazed the path towards making services visible to everyone through APIs and now, every CEO, CFO, and CMO wants to rule them all. But without the scale and resources of Big Tech, data scientists are forever told the data is coming by IT teams, leading to C-suite executives boxed in by assumptions and guesswork rather than empowered by real-world patterns.

This is especially painful for organizations building out their API strategy at the same time as their AI and ML expertise. Its often a lose-lose race between the teams responsible for infrastructure and the data scientists needing more information now.

For non-Amazon organizations, three principles are fundamental to the success of data analytics:

Additionally, with a greater focus on data access, come the safeguards that all organizations must face, such as implementing privacy and security standards. These processes will only get more complex over time, and restrict how the ML pipeline operates, incurring significant change and compliance overhead the longer a company waits to get it right.

The chances of success in these areas are higher when the barriers to collecting data are lowered, and when the data accurately represents the real-world scenarios being modeled. APIs contain this information already, its just a matter of knowing how to capture, store, and secure it.

Fueling the ML pipeline with the right data

Real-time behavioral data is the pathway towards better business understanding and comprehension. It cannot be overstated that any biases or errors in models are not overcome by looking at the model itself; they can only be mitigated by looking at the original source data.

For example, the success or failure of AI-based personalization engines can only be determined by understanding how customers behave and by adjusting the recommender model with those observations. With a higher level of observability in the business, using current and complete API data raises the ability to bootstrap AI systems more effectively and improve the accuracy of predictions.

To achieve success in real-time API data collection, organizations must:

Ultimately, shifting to real-time API data collection to train, validate, and iterate AI and ML models leads to more timely results and fewer gaps filled by assumptions and guesswork. By arming teams with the skills and tools that connect APIs to data science and DevOps, models will be better able to deliver on the promises of accurate business knowledge, clear data understanding, and high data quality.

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APIs: The Real ML Pipeline Everyone Should Be Talking About - insideBIGDATA