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ESA-ECMWF Report on recent progress and research directions in machine learning for Earth System observation and prediction | npj Climate and…

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ESA-ECMWF Report on recent progress and research directions in machine learning for Earth System observation and prediction | npj Climate and...

6 courses to help you get to grips with automation and machine learning – Siliconrepublic.com

These online automation courses can prepare you for a role as an RPA developer, tester, solution architect and more.

Learning about some of the core competencies involved in automative technologies will stand to you in your career. A good grounding in automation and machine learning is beneficial for developers, tech entrepreneurs and anyone with an interest in solving problems.

Some of the most in-demand jobs in the automation sector at the moment include RPA developers, solution architects, RPA controllers, testers and process mining consultants.

These roles require people who are willing to upskill and keep on top of the fast developments in the sector. Many businesses have embraced automation and machine learning to make their operations more efficient. Therefore, automation roles require a mix of technical skills and soft skills.

Doing a short course is a great way of ensuring your technical skills are up to industry standards. Whether youre a beginner or you have some experience, theres a course out there for you. Many on this list are free, and all are relatively inexpensive compared to college degrees.

Heres our pick of some of the best automation courses out there

Intelligent process automation (IPA) is a nascent aspect of the already widely used robotic process automation (RPA).

Both courses offer quick video tutorials that you can watch in your own time. Theyre run by Automation Anywhere and aimed at business users and developers.

The course provider recommends that you do the RPA course before the IPA course if you dont already have a good grounding in the former.

Despite its no frills title, this course actually offers a lot. It includes more than nine hours of on-demand video and 95 downloadable resources designed to help you in your quest to automate the boring stuff.

Aimed at office workers, administrators and academics who want to improve their productivity, its a good fit for beginners. It takes you through the process of downloading and installing Python.

Google offers a fast-paced practical introduction to machine learning. The 15-hour course features 25 lessons and around 30 exercises.

You can learn from Googles ML researchers using real-world examples and interactive visualisations of the algorithms at work.

Its recommended that you have some experience with programming and Python prior to doing the course.

This course is run by Google on Coursera as part of the tech giants Google Career Certificates training scheme. It is free to enrol.

At the end of the course, youll get a certificate which is shareable on LinkedIn. The programme can be completed in around six months if you put in around 10 hours a week as suggested. The course work can be completed in your own time and deadlines can be set based on your schedule.

Youll learn how to automate tasks by writing Python scripts, Use Git and GitHub for version control and solve IT problems.

Developed by lecturers from the University of Minnesota, this course is aimed at beginner to intermediate software developers.

It is free and takes around four months to complete. You will learn about black-box and white-box testing, automated testing, web and mobile testing, as well as formal testing theory and techniques.

By the end of the course, you will be able to plan and perform effective testing of your software.

For those looking for a longer course on automation, this Level 7 Springboard courses next intake is in January 2023.

Run by South East TU, it is Government subsidised for unemployed people. It lasts one year and delivery is a mix of online classes and in-person lectures on campus.

The course was developed in consultation with several automation and manufacturing companies in the south east region.

Learners will graduate with the skills to work in an in demand sector.

10 things you need to know direct to your inbox every weekday. Sign up for the Daily Brief, Silicon Republics digest of essential sci-tech news.

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6 courses to help you get to grips with automation and machine learning - Siliconrepublic.com

The role of machine learning and artificial intelligence in transforming residential real estate market – The Financial Express

By Rohit Malik

The housing market has developed dramatically in recent years, given changes in the ways people are buying, selling, and financing their homes. One of the primary reasons for this change is the revolutionary use of machine learning and artificial intelligence in the real estate market. While their contributions may not be evident, changes are apparent when comparing the present-day residential real estate market to that of the 20th century.

Thanks to machine learning, algorithms can now rapidly organize large quantities of data, sorting through property values, debt information, key home factors, and even consumer information. By simply providing their home preferences (such as number of beds, baths, amenities, and location), as well as their personal budget, homebuyers have the ability to create personalized options that save consumers time, effort, and money.

While personalization is definitely a plus, it is not the only benefit of AIs incorporation into the real estate market. While it is vital to know the value of a home before buying or selling, AI has revolutionized home value estimation. Given todays competitive real estate market, companies that can utilize AI to predict changes in rent and sales prices have a competitive advantage, as consumers rely on this data to buy and sell property.

As a consumer, buying or selling a home can be both complicated and overwhelming. By incorporating AI into the real estate market, however, it reduces the hassle, specifically in regards to communication. Because buying a home is a life-changing decision, each aspect of the home-buying process must be suitable for the buyer.

For any company, building a trust-based relationship with customers is of the highest concern. With the adoption of AI into the real estate market, it is evident that machine learning helps improve this relationship by making the home buying process as effortless as possible. Given the ever competitive real estate market, AI and machine learning continue to prove necessary to help more consumers effortlessly buy, sell, and finance their homes.

(Rohit Malik is the founder & CEO of online real estate marketplace, Clicbrics)

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The role of machine learning and artificial intelligence in transforming residential real estate market - The Financial Express

European Union puts Ukraine on a path toward EU membership – PBS NewsHour

BRUSSELS (AP) The European Union agreed Thursday to put Ukraine on a path toward EU membership, acting with uncharacteristic speed and unity to pull the embattled country further away from Russias influence and bind it more closely to the West.

Meeting at a summit in Brussels, leaders of the EUs 27 nations mustered the required unanimous approval to grant Ukraine candidate status. That sets in motion a process that could take years or even decades.

The EU also granted candidate status to the tiny country of Moldova, another former Soviet state that borders Ukraine.

European Commission President Ursula von der Leyen pronounced it a good day for Europe.

WATCH: What European Union membership would mean for war-torn Ukraine

Ukrainian President Volodymyr Zelenskyy tweeted his gratitude and declared: Ukraines future is within the EU.

Ukraine applied for membership less than a week after Moscow invaded on Feb. 24. Thursdays decision was unusually rapid for the EU. But the war and Ukraines request for fast-track consideration lent urgency to its cause.

To gain EU membership, countries must meet a detailed host of economic and political conditions, including a commitment to the rule of law and other democratic principles. Ukraine, among other things, will also have to curb entrenched government corruption and adopt other reforms.

The European Parliament endorsed Ukraines bid hours before the summit started, passing a resolution that called on EU governments to move without delay and live up to their historical responsibility.

It will strengthen Ukraine, it will strengthen Europe. It is a decision for freedom and democracy and puts us on the right side of history, European Parliament President Roberta Metsola said ahead of the final announcement.

The EUs nations have been united in backing Ukraine in its fight against Russias invasion with money and weapons, adopting unprecedented economic sanctions against the Kremlin.

EU candidate status doesnt give an automatic right to join the bloc and doesnt provide any immediate security guarantees.

Once a country gains membership, however, it is covered under an EU treaty clause that says if a member falls victim to armed aggression, the other EU countries are obligated to assist it by all the means in their power.

The main benefits of EU membership, though, are economic, since it gives access to a market of 450 million consumers with free movement of labor, goods, services and capital.

Ukraine has long aspired to join NATO, too, but the military alliance is not about to offer an invitation, in part because of governmental corruption, shortcomings in the countrys defense establishment, and its contested borders.

READ MORE: German Chancellor Scholz says G-7 will support Ukraine for as long as necessary

Before the war, Russian President Vladimir Putin demanded that Ukraine never be allowed to join NATO, which he has condemned for its eastward spread toward Russias flank. But earlier this month, he did not seem bothered by Ukraines determination to get closer to the EU, saying it is not a military pact and thus we have no objections.

The membership process can be long and tortuous.

Turkey, for example, applied for membership in 1987, received candidate status in 1999, and had to wait until 2005 to start talks for actual entry. Only one of more than 30 negotiating chapters has been completed in the years since, and the whole process is at a standstill as a result of various disputes between the EU and Turkey.

Similarly, several Balkan countries have been seeking without success for many years to join the EU.

European officials have said that Ukraine has already adopted about 70% of the EU rules and standards, but they also have pointed to corruption and the need for deep political and economic reforms in the country.

Considerable efforts will be needed, especially in the fight against corruption and the establishment of an effective rule of law, Belgian Prime Minister Alexander De Croo said. But I am convinced that it is precisely the (postwar) reconstruction of Ukraine that will provide opportunities to take important steps forward.

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European Union puts Ukraine on a path toward EU membership - PBS NewsHour

Ukraine Has Soured the European Union on China – Foreign Policy

Russias invasion of Ukraine has driven a wedge between the European Union and China, and for the first time in the history of their relationship, Brussels is ready to go on the offensive.

The worlds second and third-largest economies have been at loggerheads since March 2021, when the European Parliament halted ratification of the Comprehensive Agreement on Investment over human rights concerns. But since Russian forces entered Ukraine on Feb. 24, relations have cratered, and there seems to be little prospect of any reconciliation.

Brussels is irate at Beijings refusal to condemn Russian aggression in Ukraine. In the early days of the war, EU officials hoped that China would try to broker a peace deal, but a frosty virtual summit between EU leaders and Chinese President Xi Jinping on April 1 dashed these expectations. More importantly though, the war in Ukraine has forced Europe to start thinking geopolitically for the first time since 1991. EU countries growth expectations for 2022 have been slashed amid spiking energy prices. The EUs long-standing assumption that economics can be a substitute for actual foreign policy in dealing with authoritarian states now looks like a bad bet.

Russias invasion of Ukraine has driven a wedge between the European Union and China, and for the first time in the history of their relationship, Brussels is ready to go on the offensive.

The worlds second and third-largest economies have been at loggerheads since March 2021, when the European Parliament halted ratification of the Comprehensive Agreement on Investment over human rights concerns. But since Russian forces entered Ukraine on Feb. 24, relations have cratered, and there seems to be little prospect of any reconciliation.

Brussels is irate at Beijings refusal to condemn Russian aggression in Ukraine. In the early days of the war, EU officials hoped that China would try to broker a peace deal, but a frosty virtual summit between EU leaders and Chinese President Xi Jinping on April 1 dashed these expectations. More importantly though, the war in Ukraine has forced Europe to start thinking geopolitically for the first time since 1991. EU countries growth expectations for 2022 have been slashed amid spiking energy prices. The EUs long-standing assumption that economics can be a substitute for actual foreign policy in dealing with authoritarian states now looks like a bad bet.

In the past few weeks, the European Commission has introduced an ambitious suite of policies to distance itself economically from China. Some predate the war: The proposed anti-coercion mechanism that would enable Brussels to impose trade retaliation measures on imports from countries that apply economic coercion to EU member states was put forward by the European Commission in December 2021. It clearly targets Beijing, which in 2021 put Lithuania under a de facto trade embargo after Vilnius allowed Taiwan to open a representative office in the country. But most of the European Commissions new, China-oriented policy initiatives were minted after Feb. 24.

In May, at the EU-Japan summit, Brussels and Tokyo pledged to deepen our exchanges on China, notably with regard to security dynamics. That same month, Brussels announced that it would conduct an upgraded trade dialogue with Taiwan in June, one ostensibly aimed at deepening EU-Taiwan cooperation in semiconductor manufacturing. In reality, it was a signal that the EU is willing to reopen discussions on boosting links with Taiwan irrespective of Chinas reaction: This proposal was previously floated in late 2021 but scrapped for fear of backlash from Beijing.

More initiatives are in the pipeline, not explicitly directed against China but offering tools for a drawn-out fight. EU institutions are negotiating a new mechanism that will allow the bloc to assess trading partners industrial subsidies and apply compensatory tariffs. Brussels could certainly use this against China, which has heavily subsidized many of its export-oriented domestic industries. This year, the European Commission will table another trade mechanism to prevent imports made using forced labor from entering the bloc. This, too, could create an open-ended instrument for trade regulators to dial up protectionist pressure on Beijing.

To become law, the European Commissions proposals need member states signoff. Before the war, this was the key sticking point. No longer. Central and Eastern Europe have turned particularly hawkish. Russias aggression has reminded them how much they depend on the U.S. security umbrella. Taiwan has stepped up its economic engagement with the region. And those Eastern European leaders with close ties to Beijing are increasingly isolated. Hungarian Prime Minister Viktor Orban can still hold Brussels hostage over foreign-policy votes, where EU rules require unanimity, but not these other initiatives, which require only a qualified majority

Western EU member states with decadeslong economic links to China are prevaricating, but the consensus there is shifting too. Germanys implicit policy toward authoritarian states, known as Wandel durch Handel or change through trade, lost all legitimacy on Feb. 24. During a recent tour in Asiawhich did not include ChinaGerman Chancellor Olaf Scholz called for reducing German dependency on individual countries, a barb aimed at Beijing. Italian Prime Minister Mario Draghi has invoked golden power rules to block Chinese corporate acquisitions. With 3 percent of Italian exports and nearly 8 percent of German exports bound for China every year, Rome and Berlin are not seeking full economic decoupling but will certainly be less hostile to the European Commissions initiatives on China than in the past.

European politics is diverse and complicated, with many veto points. This makes it hard for the blocs foreign-policy stance to change quickly. Brusselss initiatives to reduce the blocs economic and political exposure to China have more traction in some EU member states than in others, and business groups will keep working behind the scenes to prevent decoupling. Yet the trend lines are clearand probably irreversible. Before Ukraine, Brussels-Beijing relations were already cooling. The year 2022 will be remembered as the year the frost settled in.

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Ukraine Has Soured the European Union on China - Foreign Policy