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Opinion: During uncertain times we must keep our focus on God instead of our circumstances – Spartanburg Herald Journal

Seth Buckley| Special to the Spartanburg Herald-Journal

As I stood on the edge of the diving board, my mind raced back to just a few years earlier when I had a near-drowning incident when I was swept down river before my uncle L.T. saved me at the last minute.

I was an ok swimmer at the time and my daddy was trying to encourage me to jump into the deep end and swim to the side. As he saw the fear welling up in my face, he began to make his way into the deep water and he said, Son, jump, I will be right here to help you if you need it.

As comforting as that was, I continued to see the water and my mind continued to race. He then said, Son, look straight at me and jump towards me. Ive got you! OK, that was a different level. I looked at him and he said again, Come on, Ive got you!! I jumped into the water, and sure enough, daddy was there to help and he turned me towardthe side and said, Now swim on to the side, youre good. That one moment helped me to overcome a fear that was so real to me.

The fear that I had was so real. I wasnt sure I could face the unknown of deep water again. But my focus was in the wrong place. I was focusing on the circumstances. This story is very similar to the story from Matthew 14 where Jesus invited Peter to walk towardhim on the water. Peter was successful until he took his eyes off of Jesus and focused on the winds and waves (14:30). He then cried out to Jesus who rescued him and then challenged all of the disciples in the boat to examine the depth of their faith.

We are facing uncertain times, which could actually be a theme that each of us could probably state over our entire lives. But isnt that what life is? If you read through the chronicles of history, every generation faced moments, even years, that were filled with worldwide uncertainty.

The question we have to ask ourselves is if we are going to allow the fear we have overwhelm us and keep us from experiencing the life that God has ordained for us to live. I think that it all depends on where our focus is. The more we focus on the circumstances, it will be as if they are growing before our very eyes and seem insurmountable. I heard an old country preacher say one time, Dont tell God how big your circumstances and trials are, tell your circumstances and trials how big your God is! It is all about your perspective!

That statement is easier said than done, but I do believe that when Joshua was faced with the seemingly insurmountable task of leading the children of Israel into the Promised Land, Joshua could hear the voice of God saying in Joshua 1:9, 9Have I not commanded you? Be strong and courageous. Do not be afraid;do not be discouraged,for theLordyour God will be with you wherever you go. Modern day translation for me? Come on Son, Look at me! Ive got you! And I believe that He is saying that to us today.

The Rev. Seth Buckley is minister of students, First Baptist Spartanburg. Reach him at sbuckley@fbs.org.

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App Annie Sets New Bar for Mobile Analytics with Data Science Innovations – PRNewswire

For busy executives, time is of the essence. To keep pace with the ever-changing app economy, it's important to access critical information about trends, markets and the competition in real time. With over USD 143 billion spent on mobile and 218 billion new app downloads in 2020, unlocking mobile insights and capitalizing quickly on opportunities is more important than ever.

Now available on the Apple App Store, App Annie Pulse provides one touch access to mobile market data. This is the industry's only answer to benchmark competition, track market movers, and identify insights that are powered by the industry's best estimates and data science.

This is the first mobile app to fully leverage AI-driven features:

"We are unmatched in our data science capabilities the only market data provider that derives all estimates and insights from a pure AI model," said Ted Krantz, CEO, App Annie. "App Annie Pulse marks the introduction of the industry's first Mobile Performance Score and ability to track your own custom metrics."

The company is also announcing the appointment of Ketaki Rao as Chief Product Officer. Ketaki will lead the way on innovation and continue to deliver the most advanced products on the market. Ketaki joins with over 20 years of experience in product development at technology companies including Salesforce, Amazon, and Sun Microsystems.

"App Annie's best-in-class intelligence for mobile, recent breakthroughs in AI technology, privacy-forward approach, and a bold product vision are primed to meet the new needs of a rapidly changing digital landscape. I am thrilled to join the talented and energetic App Annie team as the Chief Product Officer." Ketaki Rao, Chief Product Officer, App Annie.

Look for the company to continue to unveil more intuitive and streamlined user experience redesigns for all its products. App Annie Intelligence redesign beta launches today and will become generally available in H2 2021. App Annie Pulse will be available on Android at the end of Q2.

To learn more about App Annie's latest product innovations visit: https://www.appannie.com/en/insights/product-announcements/app-annie-pulse/

About App AnnieApp Annie is the industry's most trusted mobile data and analytics platform. App Annie's mission is to help customers create winning mobile experiences and achieve excellence.

SOURCE App Annie

http://www.appannie.com

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Data Science and Analytics Market 2021 to Showing Impressive Growth by 2028 | Industry Trends, Share, Size, Top Key Players Analysis and Forecast…

This research report will give readers a clear idea of the overall market scenario that can further determine this market project.The report analyzes key players in the Data Science and Analytics market by examining market share, recent developments, new product launches, partnerships, mergers or acquisitions, and target markets. The report also includes a thorough analysis of product profiles and explores products and applications focused on operations in the market. Data Science and Analytics is a thorough study of the competitive landscape of the marketplace provides insight into company profile, financial position, recent developments, mergers and acquisitions, and SWOT analysis.

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Key Strategic Manufacturers::TCS, Wipro, Genpact, Tech Mahindra, HCL Infosystems

(Market Size & Forecast, Different Demand Market by Region, Main Consumer Profile etc

In addition, the report provides two market forecasts, the producer perspective and the consumer perspective. It also provides useful recommendations for new users as well as existing players in the Data Science and Analytics market. It also provides valuable insights for both new and existing market players.

The research report provides a comprehensive assessment of the market and includes thoughtful insights, facts, historical data and statistically supported and industry-proven market data. It also includes predictions using appropriate assumptions and methodologies. Research reports provide analysis and information by category such as market segment, region, product type, and application.

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Get insightful analysis of the market and a comprehensive understanding of the market and the market environment.

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Learn what market strategies your competitors and key organizations are adopting.

Understand the future outlook and outlook for the market.

Avail 40% Discount on this report athttps://www.marketresearchinc.com/ask-for-discount.php?id=28425Table of Contents

GlobalData Science and Analytics Market Research Report

Chapter 1 Data Science and Analytics Market Overview

Chapter 2 Global Economic Impact on Industry

Chapter 3 Global Market Competition by Manufacturers

Chapter 4 Global Production, Revenue (Value) by Region

Chapter 5 Global Supply (Production), Consumption, Export, Import by Regions

Chapter 6 Global Production, Revenue (Value), Price Trend by Type

Chapter 7 Global Market Analysis by Application

Chapter 8 Manufacturing Cost Analysis

Chapter 9 Industrial Chain, Sourcing Strategy and Downstream Buyers

Chapter 10 Marketing Strategy Analysis, Distributors/Traders

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In the last section, the report provides information regarding the competitive landscape, along with a dashboard view of the market players and company analysis. This competitive intelligence is based on the providers categories across the value chain, and their presence in the Data Science and Analytics Market.

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Data Science Impacting the Pharmaceutical Industry, 2020 Report: Focus on Clinical Trials – Data Science-driven Patient Selection & FDA…

Bloomberg

(Bloomberg) -- Stefan Qin was just 19 when he claimed to have the secret to cryptocurrency trading.Buoyed with youthful confidence, Qin, a self-proclaimed math prodigy from Australia, dropped out of college in 2016 to start a hedge fund in New York he called Virgil Capital. He told potential clients he had developed an algorithm called Tenjin to monitor cryptocurrency exchanges around the world to seize on price fluctuations. A little more than a year after it started, he bragged the fund had returned 500%, a claim that produced a flurry of new money from investors.He became so flush with cash, Qin signed a lease in September 2019 for a $23,000-a-month apartment in 50 West, a 64-story luxury condo building in the financial district with expansive views of lower Manhattan as well as a pool, sauna, steam room, hot tub and golf simulator.In reality, federal prosecutors said, the operation was a lie, essentially a Ponzi scheme that stole about $90 million from more than 100 investors to help pay for Qins lavish lifestyle and personal investments in such high-risk bets as initial coin offerings. At one point, facing client demands for their money, he variously blamed poor cash flow management and loan sharks in China for his troubles. Last week, Qin, now 24 and expressing remorse, pleaded guilty in federal court in Manhattan to a single count of securities fraud.I knew that what I was doing was wrong and illegal, he told U.S. District Judge Valerie E. Caproni, who could sentence him to more than 15 years in prison. I deeply regret my actions and will spend the rest of my life atoning for what I did. I am profoundly sorry for the harm my selfish behavior has caused to my investors who trusted in me, my employees and my family.Eager InvestorsThe case echoes similar cryptocurrency frauds, such as that of BitConnect, promising people double-and triple-digit returns and costing investors billions. Ponzi schemes like that show how investors eager to cash in on a hot market can easily be led astray by promises of large returns. Canadian exchange QuadrigaCX collapsed in 2019 as a result of fraud, causing at least $125 million in losses for 76,000 investors.While regulatory oversight of the cryptocurrency industry is tightening, the sector is littered with inexperienced participants. A number of the 800 or so crypto funds worldwide are run by people with no knowledge of Wall Street or finance, including some college students and recent graduates who launched funds a few years ago.Qins path started in college, too. He had been a math whiz who planned on becoming a physicist, he told a website, DigFin, in a profile published in December, just a week before regulators closed in on him. He described himself on his LinkedIn page as a quant with a deep interest and understanding in blockchain technology.In 2016, he won acceptance into a program for high-potential entrepreneurs at the University of New South Wales in Sydney with a proposal to use blockchain technology to speed up foreign exchange transactions. He also attended the Minerva Schools, a mostly online college based in San Francisco, from August 2016 through December 2017, the school confirmed.Crypto BugHe got the crypto bug after an internship with a firm in China, he told DigFin. His task had been to build a platform between two venues, one in China and the other in the U.S., to allow the firm to arbitrage cryptocurrencies.Convinced he had happened upon a business, Qin moved to New York to found Virgil Capital. His strategy, he told investors, would be to exploit the tendency of cryptocurrencies to trade at different prices at various exchanges. He would be market-neutral, meaning that the firms funds wouldnt be exposed to price movements.And unlike other hedge funds, he told DigFin, Virgil wouldnt charge management fees, taking only fees based on the firms performance. We never try to make easy money, Qin said.By his telling, Virgil got off to a fast start, claiming 500% returns in 2017, which brought in more investors eager to participate. A marketing brochure boasted of 10% monthly returns -- or 2,811% over a three-year period ending in August 2019, legal filings show.His assets got an extra jolt after the Wall Street Journal profiled him in a February 2018 story that touted his skill at arbitraging cryptocurrency. Virgil experienced substantial growth as new investors flocked to the fund, prosecutors said.Missing AssetsThe first cracks appeared last summer. Some investors were becoming increasingly upset about missing assets and incomplete transfers, the former head of investor relations, Melissa Fox Murphy, said in a court declaration. (She left the firm in December.) The complaints grew.It is now MID DECEMBER and my MILLION DOLLARS IS NOWHERE TO BE SEEN, wrote one investor, whose name was blacked out in court documents. Its a disgrace the way you guys are treating one of your earliest and largest investors.Around the same time, nine investors with $3.5 million in funds asked for redemptions from the firms flagship Virgil Sigma Fund LP, according to prosecutors. But there was no money to transfer. Qin had drained the Sigma Fund of its assets. The funds balances were fabricated.Instead of trading at 39 exchanges around the world, as he had claimed, Qin spent investor money on personal expenses and to invest in other undisclosed high-risk investments, including initial coin offerings, prosecutors said.So Qin tried to stall. He convinced investors instead to transfer their interests into his VQR Multistrategy Fund, another cryptocurrency fund he started in February 2020 that used a variety of trading strategies -- and still had assets.Loan SharksHe also sought to withdraw $1.7 million from the VQR fund, but that aroused suspicions from the head trader, Antonio Hallak. In a phone call Hallak recorded in December, Qin said he needed the money to repay loan sharks in China that he had borrowed from to start his business, according to court filings in a lawsuit filed by the Securities and Exchange Commission. He said the loan sharks might do anything to collect on the debt and that he had a liquidity issue that prevented him from repaying them.I just had such poor cash flow management to be honest with you, Qin told Hallak. I dont have money right now dude. Its so sad.When the trader balked at the withdrawal, Qin attempted to take over the reins of VQRs accounts. But by now the SEC was involved. It got cryptocurrency exchanges to put a hold on VQRs remaining assets and, a week later, filed suit.Asset RecoveryBy the end, Qin had drained virtually all of the money that was in the Sigma Fund. A court-appointed receiver who is overseeing the fund is looking to recover assets for investors, said Nicholas Biase, a spokesman for Manhattan U.S. Attorney Audrey Strauss. About $24 million in assets in the VQR fund was frozen and should be available to disperse, he said.Stefan He Qin drained almost all of the assets from the $90 million cryptocurrency fund he owned, stealing investors money, spending it on indulgences and speculative personal investments, and lying to investors about the performance of the fund and what he had done with their money, Strauss said in a statement.In South Korea when he learned of the probe, Qin agreed to fly back to the U.S., prosecutors said. He surrendered to authorities on Feb. 4, pleaded guilty the same day before Caproni, and was freed on a $50,000 bond pending his sentencing, scheduled for May 20. While the maximum statutory penalty calls for 20 years in prison, as part of a plea deal, prosecutors agreed that he should get 151 to 188 months behind bars under federal sentencing guidelines and a fine of up to $350,000.That fate is a far cry from the career his parents had envisioned for him -- a physicist, he had told DigFin. They werent too happy when I told them I had quit uni to do this crypto thing. Who knows, maybe someday Ill complete my degree. But what I really want to do is trade crypto.The case is U.S. v Qin, 21-cr-75, U.S. District Court, Southern District of New York (Manhattan)(Updates with comment from prosecutor and case caption)For more articles like this, please visit us at bloomberg.comSubscribe now to stay ahead with the most trusted business news source.2021 Bloomberg L.P.

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Mapping wage theft with data science – The Mandarin

What started as a few underpayment cases revealed by Australian media in 2015 has turned into an epidemic of wage theft.

Wage theft is the popular term that has come to describe under-or non-payment of minimum wages and entitlements that are rightfully owed to a worker.

Wage theft broke into the public consciousness at large in 2015 with a joint investigation by Fairfax Media and ABCs Four Corners into underpayment of 7-Eleven workers.

The underpayment of 7-Eleven workers brought wage theft to pubic attention. Picture: Getty Images

Many cases of underpayment by major businesses have come to light since the initial investigation, and the limited evidence available points to an increasing prevalence of wage theft over the last several years.

A 2019 report by the McKell Institute, which collated evidence from several surveys, found that on average 60 per cent of survey respondents had experienced wage theft. However, in surveys specific to young people, this number could be as high as 76 per cent.

This is more than just a few rogue employers not complying with the correct payment awards. Researchers and campaigners have described wage theft as a norm across several industries, while the Australian Council of Trade Unions has described it as a business model for many employers.

Since 2015, Victoria has criminalised wage theft with some other states following and the federal government has recently proposed jail time and large fines for deliberate underpayment of workers.

But the problem is that detecting wage theft is difficult, relying largely on employees reporting a case to their union or the regulator, the Fair Work Ombudsman. And neither the regulator or unions have sufficient resources to combat it.

One answer is to give workers and regulators better tools to uncover wage theft. Our Fair Days Work project, backed by the Paul Ramsay Foundation, is developing software that will use predictive algorithms to help regulators identify the high-risk areas and businesses they need to focus resources on.

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At the same time we are developing an online portal to support working people to keep track of their workplace rights. It will be particularly aimed at young workers who are among the most vulnerable to wage theft.

Employees in industries at high-risk of wage theft such as the hospitality and retail industries are predominantly young people aged 15 to 24 years old. Australian Bureau of Statistics data shows that 66 per cent of retail workers and 70 per cent of accommodation and food service workers are aged between 15 and 24.

These are also industries that employ large numbers of young migrant workers who are at an even greater risk of wage theft. A 2019 survey by Unions ACT found experiences of wage theft have increased every year since 2017, but only 25 per cent of young workers reported trying to address wage theft.

It suggests that many young workers chose not to act due to fears over losing their job, especially as these jobs are usually casual roles.

While wage theft obviously harms employees, the Australia Chamber of Commerce and Industry notes that business also faces negative social and economic consequences of wage theft.

For example, wage theft creates an anti-competitive effect, where businesses exploiting workers get a competitive edge over employers that do the right thing, which further normalises wage theft in certain industries.

As a result, good employers doing the right thing are being undercut by employers doing the wrong thing.

The economic downturn that has been caused by the restrictions put in place to counter the COVID-19 pandemic only increases the risks that employers may deny young workers their entitlements as they try to address shortfalls in revenue by intentionally or accidentally cutting wages and conditions.

This risk is further exacerbated by casualisation and other forms of precarious work which mean unscrupulous employs can easily fire workers who complain.

Similarly, in an economy where jobs are scarce, people may be less likely to report wage theft for fear of losing work.

Currently, strategies to address wage theft differ across jurisdictions. Many approaches are purely deterrent based, such as the criminal liability legislation we discussed above they focus on penalties for those who commit wage theft.

However, the available evidence shows that deterrent approaches involving penalties alone arent necessarily the most effective way to address wage theft.

This is in part due to the difficulty of detecting underpayment and other breaches, but there is also evidence to suggest that higher penalties are less of a deterrent compared to increasing the likelihood of detection.

One approach to improving the detection of wage theft is using data and predictive algorithms to support regulators and unions compliance checking and enforcement activities. Recent research work in the United States has seen predictive algorithms used to support the prioritisation of wage theft investigation.

Collecting and sharing data about wage theft is also important to raise public awareness of wage thefts systemic nature. These uses of data aim to increase the likelihood that wage theft will be detected either by the regulator, workers or unions.

The Fair Days Work project, recently launched by the Melbourne School of Government, will bring together business, government, academia, unions and NGOs to develop a set of data-driven tools to increase the likelihood of wage theft detection.

The project will involve developing an online portal, public dashboard, wage theft database and wage theft prediction tool.

The online portal will support young people to access tailored information about their employment rights, upload data about their employment and receive a tailored wage theft risk assessment and preventive measures.

The public dashboard will provide information for Australians regarding wage theft prevalence in their community. A core part of this project is assessing the availability of wage theft data in Australia and developing a wage theft database that can enable research, policymaking, and improved detection.

We already have a good understanding of the major risk factors for wage theft in terms of industry and employee characterises however there is other data, including macroeconomic and microeconomic data that could factor into the risk of wage theft.

The project was selected by the Paul Ramsay Foundation for support as part of the Inclusive Growth and Recovery Challenge led by data.org.

Launched in partnership with the Mastercard Center for Inclusive Growth and The Rockefeller Foundation, the data.org Challenge identified breakthrough projects that harness the power of data science to help people and communities thrive.

Unless we enhance the abilities of regulators to detect wage theft and empower workers with better knowledge of their rights, the risk is that wage theft will simply remain normal for many industries and businesses.

This article was first published onPursuit. Read theoriginal article.

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Mapping wage theft with data science - The Mandarin

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Women changing the face of science in the Middle East and North Africa – The Jerusalem Post

Despite making up a little more than half of the globes population, women remain underrepresented in the fields of science, technology, engineering and mathematics (STEM). In fact, a 2017 UNESCO report found that only 35 percent of STEM higher education students globally are women.For more stories from The Media Line go to themedialine.org However, those numbers are significantly better in many countries in the Middle East and North Africa, where women account for nearly 50% of the STEM student population.To mark International Day of Women and Girls in Science, held annually on February 11, The Media Line reached out to four inspiring women who are changing the face of science in the region.

Making Moroccos First Humanoid Robot

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Still, Mousannif has taken it upon herself to set an example for female students and encourage them to pursue scientific careers.

Solving the Mystery of Diabetes Prevalence in the UAE

Understanding Cancer Genetics in Saudi Arabia

Sometimes you need someone else that did it to tell you that this is right and that it is ok to do it, she said. It is ok to split yourself between career and home. You can find a balance between the two without giving up on one of them.

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Data Science Platform Market 2021 Analysis Report with Highest CAGR and Major Players like || Dataiku, Bridgei2i Analytics, Feature Labs and More KSU…

Data Bridge Market Research has recently published the Global research Report Titled Data Science Platform Market, The study provides an overview of current statistics and future predictions of the Data Science Platform Market. The study highlights a detailed assessment of the Market and displays market sizing trends by revenue & volume (if applicable), current growth factors, expert opinions, facts, and industry validated market development data.

A variety of financial terms such as shares, cost, revenue, and profit margin have been included in this Data Science Platform Market document to get a better understanding of different economic aspects of the businesses. This industry analysis report presents an actionable vision to key participants working on it. The report observes numerous in-depth, influential and inducing factors that outline the market and industry. Data Science Platform Market report states that the global market is anticipated to expand significantly and is projected to reach million USD$ by 2027, at a CAGR during the forecast period. The report has been prepared by using primary and secondary research methodologies.

Download Free Sample Report (including 350 Pages PDF, Charts, Info-graphics and Figures) @ https://www.databridgemarketresearch.com/request-a-sample/?dbmr=global-data-science-platform-market

Top key vendors and other prominent Players are: Google, Inc., Domino Data Lab, IBM Corporation, Datarobot, Inc., Microsoft Corporation, Wolfram, Continuum Analytics, Inc., Dataiku, Bridgei2i Analytics, Feature Labs, Datarpm, Rexer Analytics, Civis Analytics, Sense, Inc., Alteryx, Inc., Rapidminer, Inc., IBM, Snowflake, MeritDirect, Cazena, CBIG Consulting, Loggly, Clairvoyant, Arcadia, Experfy, Datatorrent, Jethro, Tableau, VMware, New Relic, Alation, Tera Data, SAP, Alpine Data Labs, SiSense, Thoughtworks, MuSigma, Cogito, Datameer among others.

This Data Science Platform Market Report Will Provide:

How will this Market Intelligence Report Benefit You?

Competitive Landscape The global data science platform market is fragmented and the major players have used various strategies such as new product launches, expansions, agreements, joint ventures, partnerships, acquisitions, and others to increase their footprints in this market in order to sustain in long run. The report includes market shares of data science platform market for global, Europe, North America, Asia Pacific and South America.

The market study includes Data Science Platform Market valuations and forecast for the upcoming years

Emerging Product Trends & Market Opportunities

The information and data gathered in this Data Science Platform Market research report for research and analysis is presented with diagrams, graphs or tables for the reasonable comprehension of clients. The market report is an honest wellspring of data which offers an adaptive perspective on the present market patterns, circumstances, openings and status. Moreover, enormous example sizes have been used for the information gathering in this Global Data Science Platform Market report which suits the necessities of little, medium just as huge size of organizations. This Data Science Platform Market report takes a shot at all the parts of market that are required to make the best and first-rate statistical surveying report.

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Global Data Science Platform Market Analysis: The global data science platform market accounted for USD 20.2 billion in 2017 and is projected to grow at a CAGR of 39.7% the forecast period to 2026.

Strategic Points Covered in Table of Content of Global Data Science Platform Market:

Chapter 1: Introduction, market driving force product Objective of Study and Research Scope Data Science Platform Market

Chapter 2: Exclusive Summary the basic information of Data Science Platform Market.

Chapter 3: Displaying the Market Dynamics- Drivers, Trends and Challenges of Geotextile Tube

Chapter 4: Presenting Data Science Platform Market Factor Analysis Porters Five Forces, Supply/Value Chain, PESTEL analysis, Market Entropy, Patent/Trademark Analysis.

Chapter 5: Displaying the by Type, End User and Region

Chapter 6: Evaluating the leading manufacturers of Data Science Platform Market which consists of its Competitive Landscape, Peer Group Analysis, BCG Matrix & Company Profile

Chapter 7: To evaluate the market by segments, by countries and by manufacturers with revenue share and sales by key countries in these various regions.

Chapter 8 & 9: Displaying the Appendix, Methodology and Data Source

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Data Science Platform Market 2021 Analysis Report with Highest CAGR and Major Players like || Dataiku, Bridgei2i Analytics, Feature Labs and More KSU...

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Ready to start coding? What you need to know about Python – TechRepublic

We detail some of the key considerations to bear in mind when considering coding with Python such as salary estimates, potential applications, courses to consider, and more.

Image: iStock/AndreySuslov

Python is an increasingly popular programming language that is used in a vast suite of fields ranging from artificial intelligence (AI) to machine learning. Needless to say, the ability to design these applications is in high demand in the age of accelerated digital transformation. Below, we've highlighted some of the key information related to a career with Python such as salary expectations, programming applications, courses to consider, developer sentiments, and more.

TIOBE releases its top programming languages rankings each month. These regularly updated rankings display long-term trends across the ever-evolving programming language landscape. In TIOBE's January rankings, Python was deemed the top programming language of the year; this was the fourth time Python had received these honors.

SEE:Linux commands for user management(TechRepublic Premium)

In 2020, Python gained 2.01% just ahead of other popular programming languages C++ and C, which jumped 1.99% and 1.66%, respectively, according to TIOBE. In TIOBE's February rankings, Python maintained a rating of 10.86% placing third in the overall rankings behind runner-up Java and top-rated C.

Python garnered similarly high marks in Stack Overflow's 2020 Annual Developer Survey. Based on the responses of more than 60,000 developers around the globe, Python was listed as the third "most loved" programming language. This was determined based on the percentage of developers "who are developing with the language or technology and have expressed interest in continuing to develop with it," according to Stack Overflow.

"[Python is] a language with brains and brawn. It has a beautifully simple syntax and is super powerful to boot. Unlike Java or C, there's not a lot of extra syntax. Which means you can spend more time writing logic rather than looking for missing semicolons," said Angela Yu, a developer and Udemy instructor.

SEE:The 4 most hated programming languages: Experts pile on Javascript, C++, and more(TechRepublic)

Interestingly, Python was also listed as Stack Overflow's most "wanted" programming language, and this metric is determined by the percentage of developers who are not currently using a particular language but "have expressed interest in developing with it." In this regard, 30% of developers "wanted" Python; leading runner-up JavaScript and third-place Go by 11.5% and 12.1%, respectively.

"The language is super readable, with keywords that make your code read more like English rather than some foreign computer language. But hidden behind the simplicity there are a lot of the features you would expect from a modern programming language: Object-oriented programming, dynamic typing and a powerful interpreter," Yu continued.

In Stack Overflow's roundup of most dreaded programming languages, Python sat near the bottom of the list ahead of TypeScript and Rust. There's also plenty of employer demand for Python programmers and the programming language made Indeed's list of the "Best Programming Languages to Learn."

Digital transformation efforts have accelerated during the coronavirus pandemic as companies incorporate automation, machine learning, AI, and more to streamline workflows and enhance operations. Python is central to many of these efforts further boosting the language's appeal.

"The language gained a lot of popularity thanks to piggybacking on the rise of AI, Machine learning and data science. The vast number of libraries that are written in or support Python means that if you are creating anything related to Data Science or Machine Learning, you can code it in Python," Yu said.

Salary estimates are central to career decisions and Python is critical in a wide range of industries. The average annual base salary for a Python developer in the US is more than $111,000 with cash bonuses totaling $5,000 each year, according to Indeed tools and data.

It's important to note that salaries are not uniform across the country and US Python developers earn the most money in Washington, D.C., with an annual salary of $136,506, followed by New York City ($130,921), San Ramon, CA ($123,914), and Austin, Texas ($122,275), according to Indeed data.

"Python dominates Machine Learning, AI and Data Science. If you look on Indeed, almost every machine learning/data science job requires proficiency in Python," Yu said. "But it's also popular among web developers using Flask and Django. Python web frameworks are used by everybody from Reddit to Netflix. Other areas include autonomous vehicles, robotics and meteorology."

SEE:Python programming language: A cheat sheet(TechRepublic)

To start coding with Python, individuals will first need to master the basics before accomplishing more complex undertakings. TechRepublic Academy touts a number of courses, boot camps, and more to help seasoned Python pros and newcomers alike. These offerings include introductory Python courses and exercises for beginners as well as more advanced courses such as creating machine learning projects with Python and masterclass bundles.

Yu teaches app development on Udemy and founded The App Brewery code academy in London. She also provided some insights for individuals considering a career in Python.

"Consistency is key. People often overestimate what they can achieve in a day but underestimate what they can do in a year. Learning programming requires consistent application and practice," Yu said.

From the hottest programming languages to the jobs with the highest salaries, get the developer news and tips you need to know. Weekly

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How researchers are using data science to map wage theft – SmartCompany.com.au

What started as a few underpayment cases revealed by the Australian media in 2015 has turned into an epidemic of wage theft.

Wage theft is the popular term that has come to describe under-or non-payment of minimum wages and entitlements that are rightfully owed to a worker.

Wage theft broke into the public consciousness at large in 2015 with a joint investigation by Fairfax Media and ABCs Four Corners into underpayment of 7-Eleven workers.

Many cases of underpayment by major businesses have come to light since the initial investigation, and the limited evidence available points to an increasing prevalence of wage theft over the last several years.

A 2019 report by the McKell Institute, which collated evidence from several surveys, found that, on average, 60% of survey respondents had experienced wage theft.

However, in surveys specific to young people, this number could be as high as 76%.

This is more than just a few rogue employers not complying with the correct payment awards.

Researchers and campaigners have described wage theft as a norm across several industries, while the Australian Council of Trade Unions has described it as a business model for many employers.

Since 2015, Victoria has criminalised wage theft, with some other states following, and the federal government has recently proposed jail time and large fines for deliberate underpayment of workers.

But the problem is that detecting wage theft is difficult, relying largely on employees reporting a case to their union or the Fair Work Ombudsman. And neither the regulator nor unions have sufficient resources to combat it.

One answer is to give workers and regulators better tools to uncover wage theft. Our Fair Days Work project, backed by the Paul Ramsay Foundation, is developing software that will use predictive algorithms to help regulators identify the high-risk areas and businesses they need to focus resources on.

At the same time, we are developing an online portal to support working people to keep track of their workplace rights. It will be particularly aimed at young workers who are among the most vulnerable to wage theft.

Employees in industries at high-risk of wage theft such as the hospitality and retail industries are predominantly young people aged 15 to 24 years old.

Australian Bureau of Statistics data shows that 66% of retail workers and 70% of accommodation and food service workers are aged between 15 and 24.

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These are also industries that employ large numbers of young migrant workers who are at an even greater risk of wage theft.

A 2019 survey by Unions ACT found experiences of wage theft have increased every year since 2017, but only 25% of young workers reported trying to address wage theft.

It suggests that many young workers chose not to act due to fears over losing their job, especially as these jobs are usually casual roles.

While wage theft obviously harms employees, the Australia Chamber of Commerce and Industry notes that business also faces negative social and economic consequences of wage theft.

For example, wage theft creates an anti-competitive effect, where businesses exploiting workers get a competitive edge over employers that do the right thing, which further normalises wage theft in certain industries.

As a result, good employers doing the right thing are being undercut by employers doing the wrong thing.

The economic downturn that has been caused by the restrictions put in place to counter the COVID-19 pandemic only increases the risks that employers may deny young workers their entitlements as they try to address shortfalls in revenue by intentionally or accidentally cutting wages and conditions.

This risk is further exacerbated by casualisation and other forms of precarious work which mean unscrupulous employs can easily fire workers who complain.

Similarly, in an economy where jobs are scarce, people may be less likely to report wage theft for fear of losing work.

Currently, strategies to address wage theft differ across jurisdictions. Many approaches are purely deterrent based, such as the criminal liability legislation we discussed above they focus on penalties for those who commit wage theft.

However, the available evidence shows that deterrent approaches involving penalties alone arent necessarily the most effective way to address wage theft.

This is in part due to the difficulty of detecting underpayment and other breaches, but there is also evidence to suggest that higher penalties are less of a deterrent compared to increasing the likelihood of detection.

One approach to improving the detection of wage theft is using data and predictive algorithms to support regulators and unions compliance checking and enforcement activities. Recent research work in the United States has seen predictive algorithms used to support the prioritisation of wage theft investigation.

Collecting and sharing data about wage theft is also important to raise public awareness of wage thefts systemic nature. These uses of data aim to increase the likelihood that wage theft will be detected either by the regulator, workers or unions.

The Fair Days Work project, recently launched by the Melbourne School of Government, will bring together business, government, academia, unions and NGOs to develop a set of data-driven tools to increase the likelihood of wage theft detection.

The project will involve developing an online portal, public dashboard, wage theft database and wage theft prediction tool.

The online portal will support young people to access tailored information about their employment rights, upload data about their employment and receive a tailored wage theft risk assessment and preventive measures.

The public dashboard will provide information for Australians regarding wage theft prevalence in their community. A core part of this project is assessing the availability of wage theft data in Australia and developing a wage theft database that can enable research, policymaking, and improved detection.

We already have a good understanding of the major risk factors for wage theft in terms of industry and employee characterises. However, there is other data, including macroeconomic and microeconomic data, that could factor into the risk of wage theft.

The project was selected by the Paul Ramsay Foundation for support as part of the Inclusive Growth and Recovery Challenge led by data.org.

Launched in partnership with the Mastercard Center for Inclusive Growth and The Rockefeller Foundation, the data.org Challenge identified breakthrough projects that harness the power of data science to help people and communities thrive.

Unless we enhance the abilities of regulators to detect wage theft and empower workers with better knowledge of their rights, the risk is that wage theft will simply remain normal for many industries and businesses.

This article was first published on Pursuit. Read theoriginal article.

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Labelbox raises $40 million for its data labeling and annotation tools – VentureBeat

Labelbox, a startup developing a data annotation and labeling platform, today announced it has raised $40 million, bringing its total raised to $79 million. The company says the funds will be used to acquire new customers, expand its solutions, and grow its workforce around the globe.

Training AI and machine learning algorithms requires plenty of annotated data. But data rarely comes with annotations. The bulk of the work often falls to human labelers, whose efforts tend to be expensive, imperfect, and slow. Its estimated most enterprises that adopt machine learning spend over 80% of their time on data labeling and management.

Labelbox was founded in 2018 by Manu Sharma and Brian Rieger, who both worked in the aeronautics industry, designing and testing flight control systems and experimenting with machine learning models. The San Francisco-based company offers a web service and API that allows data science teams to work with annotation teams from a single dashboard. Users can customize the tools to support specific use cases, including instances, custom attributes, and more, and label directly on photos, text strings, conversations, paragraphs, documents, and videos.

Using Labelbox, admins can manage access to data and projects for team members, ensuring access controls when working with a labeling service. They also get labeler performance metrics and a catalog of available labeling services, in addition to feature counts and object analytics to improve model capabilities.

Labelbox is in a category adjacent to companies like Scale AI, which has raised over $100 million for its suite of data labeling services, and CloudFactory, which says it offers labelers growth opportunities and metric-driven bonuses. Thats not to mention Hive, Alegion, Appen, SuperAnnotate, Dataloop, and Cognizant.

But Labelbox, which has 150 customers and just over 100 employees, says it reduces the time and cost associated with annotation through pre-labeling, where unlabeled data is initially seeded with machine learning model predictions. The company also claims to employ active learning, which dynamically prioritizes data labeling queues. From Labelbox, customers can search, browse, and curate training data to investigate poor or inconsistent labels.

When these tools are leveraged in conjunction with each other, Labelbox asserts they enable customers to automate labeling where confidence is high and spotlight assets where performance remains low. This ostensibly lets labelers pre-label assets to confirm, reject, or edit annotations, rather than labeling from scratch.

While software is built with code, AI is built with data. Algorithms and compute power have now been commoditized, which means the way to differentiate your AI in the market is via your training data, Rieger told VentureBeat via email. But converting your proprietary data into revenue-generating AI has been a difficult process, full of delays and false starts. Our training data platform allows organizations to build their own AI data engine extremely quickly at significant cost savings.

B Capital Group led the series C investment Labelbox announced today. Previous investors Andreessen Horowitz, First Round Capital, Gradient Ventures (Googles AI venture fund), Kleiner Perkins, and ARK Invest CEO Catherine Wood also participated.

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