Welcome to insideBIGDATAs Heard on the Street round-up column! In this new regular feature, we highlight thought-leadership commentaries from members of the big data ecosystem. Each edition covers the trends of the day with compelling perspectives that can provide important insights to give you a competitive advantage in the marketplace. We invite submissions with a focus on our favored technology topics areas: big data, data science, machine learning, AI and deep learning. Enjoy!
Paradigm shifts needed to establish greater harmony between artificial intelligence (AI) and human intelligence (HI). Commentary by Kevin Scott, CTO, Microsoft.
Comparing AI to HI is a long history of people assuming things that are easy for them will be easy for machines and vice versa, but its more the opposite. Humans find becoming a Grand Master of chess, or performing very complicated and repetitive data work, difficult, whereas machines are easily able to do those things. But on things we take for granted, like common sense reasoning, machines still have long way to go. AI is a tool to help humans do cognitive work. Its not about whether AI is becoming the exact equivalent of HIthats not even a goal Im working toward.
Importance of utilizing the objectivity of data to discover areas of opportunity within organizations. Commentary by Eric Mader, Principal Consultant, AHEAD.
During this era of accelerated tech adoption and digital transformation, more and more companies are turning to data collection and storage to fuel business decisions. This is, in part, because 2020 lacked the stability to serve as a functional baseline for business decisions in 2021. With this surge of organizations leaning on data and analytics, its essential to have a clear understanding of how this information can be helpful, but also harmful. These companies may inherently understand the importance of analyzing their data, but their biggest problem lies in their approach to preventing data bias. Accepting the natural appetite within organizations to lead their data to some degree is an important first step in capitalizing on the true objectivity of data. Luckily, there is one piece of advice that organizations must remember to avoid falling prey to confirmation bias in data analytics: Be careful how you communicate your findings. Its a simple practice that can make all the difference. While the researchers analyzing the data should be aware of common statistical mistakes and their own biases towards a specific answer, careful attention should also be paid to how data is presented. Data teams have to avoid communicating their findings in ways that might be misleading or misinterpreted. By upholding a level of meticulousness within your data strategy, organizations can ensure that their data approach is working with them and not against them.
Delivering Better Patient Experiences with AI. Commentary by Joe Hagan, Chief Product Officer at LumenVox.
Call management is critical in the healthcare industry to support patient needs such as scheduling, care questions and prescription refills. However, data suggests that more than 50% of contact agents time is spent on resetting passwords for patient applications and portals each password taking three or more minutes to reset. How can healthcare call centers overcome this time suck and better serve patients? AI-enabled technologies such as speech recognition and voice biometrics. According to a survey from LumenVox and SpinSci, nearly 40% of healthcare providers want to invest in AI for their contact centers in the next one to three years. The great digital disruption in healthcare that prioritizes the patient experience is here. As healthcare contact centers take advantage of technologies such as AI, they will be better equipped to deliver high quality service to patients.
AI is the Future of Video Surveillance. Commentary by Rick Bentley, CEO of Cloudastructure.
Not long ago, if you wanted a computer to recognize a car then it was up to you to explain to it what a car looks like: Its got these black round things called wheels at the bottom, the windows kind of go around the top half-ish part, theyre kind of rounded on top and shiny, the lights on the back are sometimes red, the ones up front are sometimes white, the ones on the side are sometimes yellowAs you can imagine, it doesnt work very well.Today you just take 10,000 pictures of cars and 50,000 pictures of close-but-not cars (motorcycles, jet skis, airplanes) and your AI/ML platform will do a better job of detecting cars than you ever could.Intelligent AI and ML powered video solutions are the way of the future, and if businesses dont keep up, they could be putting themselves and their employees at risk. Two years ago, more than 90% of enterprises were still stuck on outdated on-premises security methods, many with limited if no AI intelligence. The industry is under rapid transformation as they take advantage of this technology and move their systems to the cloud.Enhanced AI functionality and cloud adoption in video surveillance have allowed business owners and IT departments to monitor the security of their businesses from the safety of their homes. The AI surveillance solution can be accessed from any authorized mobile device and the video is stored safely off premises so that it cannot be hacked, and it is safe from environmental hazards. Additionally, powerful AI analytics allow intelligent surveillance systems to sort through large volumes of footage to identify interesting activity more than 10x faster and more accurately than manual, on-premises solutions. In the upcoming years, AI functionality will continue to get more and more advanced allowing businesses to generate real-time insight and enable a rapid response to incidents resulting in a more efficient and safer society.
How Businesses Can Properly Apply and Maximize AIs Impact. Commentary by Bren Briggs, VP of DevSpecOpsatHypergiant.
Businesses that do not utilize AI and ML solutions will become increasingly irrelevant. This is not because AI or ML are magic bullets, but rather because utilizing them is a hallmark of innovative, resilience-first thinking. For businessesto maximize the impact of AI, they must first pose critical business questions and then seek solutions that streamline data management as well as improve and strengthen business processes. AI, when utilized well, helps companies predict problems and then act to swiftly respond to those challenges.I always encourage companies tofocuson the basics:hire the experts, set up the models for success, and pick the AI solutions that will most benefit their organization. In doing that, companies should ramp up their data scienceand MLOps teams, which can help assess which AI problems are most likely to be successful and have a strong ROI.A cost/benefit analysis will help you determine if an AI integration is actually the best use of your companys resources at any given time.
AIas aSoftwareDeveloperin theContext ofProductDevelopment. Commentary by Jonathan Grandperrin, CEO,Mindee.
As artificial intelligencecontinues to take great stridesandmoremachine learningbased products for engineering teams emerge,a challenge arises, apressing need for software developers to skill up and understand how AI functionsand how to appropriately leverage them.AIs capabilities to automate tasks and optimize multiple if not all processes have revolutionized the world. To reach the promised efficiency, AI must be integrated into all day-to-day products, such as websites, mobile applications, even products like smart TVs. However, a problemcomes upfor developers in this context: AI does not rely on the same principles as software development. Different from software development, which relies on deterministic functions, most of the time, AI is based on a statistical approximation, which changes the whole paradigm from the point of view of a software developer.It is also the reason behind the rise of data science positions in software companies.To succeed, developers must hold the capacity to create AI models from scratch and provide technical teams with ML features that they can understand andutilize.Fortunately, itsbecomingincreasinglycommon to see ML libraries for developers. In fact,those looking to ramp up on their ML skills can participate in intro courses thatcan easilyextend their skillset.
How to Solve MLs Long Tail Problem. Commentary by Russell Kaplan, Scale AIs Head of Nucleus.
The most common problem in machine learningtodayis uncommon data. With ML deployed in ever more production environments, challenging edge cases have become the norm instead of the exception. Best practices for ML model development are shifting as a result. In the old world, ML engineers would collect a dataset, make a train/test split, and then go to town on training experiments: tuning hyperparameters, model architectures, data augmentation, and more. When the test set accuracy was high enough, it was time to ship. Training experiments still help, but are no longer highest leverage. Increasingly, teams hold their models fixed while iterating on their datasets, rather than the other way round. Not only does this lead to larger improvements, its also the only way to make targeted fixes to specific ML issues seen in production. In ML, you cannot if-statement your way out of a failing edge case. To solve long tail challenges in this way, its not enough to make dataset changesyou have to make the right dataset changes. This means knowing where in the data distribution your model is failing. The concept of one test set no longer fits. Instead, high performing ML teams curate collections of many hard tests sets covering a diversity of settings, and measure accuracy on each. Beyond helping inform what data to collect and label next to drive the greatest model improvement, the many-test-sets approach also helps catch regressions. If aggregate accuracy goes up but performance in critical edge cases goes down, your model may need another turn before you ship.
Top Data Privacy Considerations for M&As. Commentary by Matthew Carroll, CEO, Immuta.
M&A deals continue to soar globally, with the technology and financial services and insurance and industries leading the pack. However, with the increase in deals comes an increase in deals that fall through. Research shows that one of the primary reasons M&A deals fall through at a surprisingly high rate between 70% and 90% is data privacy and regulatory concerns as more companies move their data to the cloud. M&A transactions lead to an instantaneous growth in the number of data users,but the scope of data used is often complex and risky especially when it involves highly-sensitive personal, financial or health-related data. With two companies combining their separate vast data sets, its imperative to find an efficient way to ensure that data protection methods and standards are consistent, that only authorized users can access data for approved uses, and privacy regulations are adhered to across jurisdictions and the globe. Merging data is just the beginning. Once mergers are completed, the joint entities must be able to provide comprehensive auditing to prove compliance. Without a strong data governance framework, stakeholder buy-in, and automated tools that work across both companies data ecosystems, this can lead to unmanageable and risk-prone processes that inhibit the value of the combined data and could lead to data vulnerabilities.
Why Training Your AI Systems Is More Complex Than You Think. Commentary by Doug Gilbert, CIO and Chief Digital Officer,Sutherland.
Fewenterprises, if any, areready to deploy AI systemsor ML models thatare completely freefrom any formofhuman intervention oroversight. Whentrainingalgorithms,its important to first understand the inherent risks of bias from the training environment, the selection training data and algorithms based upon human expertise in that particular field, and the application of AI against the very specific problem it was trained to solve. The avoidance of any or all of these can lead to unpredictable or negative outcomes. Human oversight using methods such asHuman-in-the-Loop (HitL), Reinforcement Learning, Bias Detection, andContinuous Regression TestinghelpsensureAI systems are trained adequately and effectivelytodeal with real-life interactions, work and use cases and create positive outcomes.
Scientific vs. Data Science Use Cases. Commentary by Graham A. McGibbon, Director of Partnerships, ACD/Labs.
Current scientific informatics systems support electronic representations of data obtained from experiments and tests which are often confirmatory analyses with interpretations. Data science is more often exploratory and the supporting systems typically rely on data pipelines and large amounts of clean and comprehensive data required for appropriate statistical treatments. Data science systems are founded on large volumes of data being well-identified via metadata, which is needed for the critical capability of machines to self-interpret these large datasets, and subsequently derives correlations and predictions that are otherwise not obvious. Ultimately, some of these systems could cycle continuously and autonomously given sufficient coupling with automated data generation technologies. However, scientists want the ability to judge the output of their analyses and view and explore unanticipated features in their data along with any machine-derived interpretations. Consequently, these scientific consumers need representations of results that they can easily evaluate. When comparing the current output capabilities of data science systems to contemporary or historical scientific systems, they lack some of the semiotics that domain-specific scientists expect. As such, there remains a need to bridge data science and domain-specific science, particularly if changes are desired in the latter to make it machine-interpretable for further adoption. Its important to understand that data science and domain-specific science will likely have to make adjustments for accommodating the other to ultimately reap the full benefit of generating human-interpretable knowledge outputs.
Why Predictive Analytics are Increasingly Important for Smart, Sustainable Operations. Commentary by Steve Carlini, Vice President of Innovation and Data Center at Schneider Electric.
In the data center world, predictive analytics are used mainly for critical components in the power and cooling architecture to prevent unplanned downtime. For example, a DCIM solution can look at UPS system batteries and collect data on a number of discharges, temperatures,and overall ageto come up with recommendations for battery replacement. These recommendations are based on different risk tolerances, for example, the software will say something like,Battery System 4 has a 20% chance of failure next week and a 50% chance of failure with 2 months.Facility operators can then manage risk and make informed decisions regarding battery replacement. When using analytics on larger data centers, it is important that facility-level systems are included because they are the backbone of IT rooms.Power system software must cover the medium voltage switchgear, the busway, the low voltage switchgear, all the transformers, all the power panels, and the power distribution units. Cooling system software must cover the cooling towers, the chillers, the pumps, the variable speed drives, and the Computer Room Air Conditioners (CRACs).Due to the scale and level of machinery in larger data centers, its necessary that all systems are included for comprehensive predictive analytics. As edge data centers become a critical part of the data center architecture and are deployed at scale, DCIM software benefits from unlimited cloud storage and data lakes.Predictive analytics become highly valuable as almost none of these sites are manned with service technicians. The DCIM system can leverage predictive analytics with a certain degree of linkage and automation to dispatch service personnel and replacement parts.As more data is collected, the accuracy of these analytics leveraging machine learning models will become trusted.This is already in process, as even todayoperators of mission critical facilities have the ability to plan ordesign systems with less physical redundancy and rely on the software for advanced notifications regarding battery health.
Sign up for the free insideBIGDATAnewsletter.
Join us on Twitter:@InsideBigData1 https://twitter.com/InsideBigData1
View post:
Heard on the Street 10/28/2021 - insideBIGDATA
- Global Data Science Platform Market Report 2020 Industry Trends, Share and Size, Complete Data Analysis across the Region and Globe, Opportunities and... [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Data Science and Machine-Learning Platforms Market Size, Drivers, Potential Growth Opportunities, Competitive Landscape, Trends And Forecast To 2027 -... [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Industrial Access Control Market 2020-28 use of data science in agriculture to maximize yields and efficiency with top key players - TechnoWeekly [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- IPG Unveils New-And-Improved Copy For Data: It's Not Your Father's 'Targeting' 11/11/2020 - MediaPost Communications [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Risks and benefits of an AI revolution in medicine - Harvard Gazette [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- UTSA to break ground on $90 million School of Data Science and National Security Collaboration Center - Construction Review [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Addressing the skills shortage in data science and analytics - IT-Online [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Data Science Platform Market Research Growth by Manufacturers, Regions, Type and Application, Forecast Analysis to 2026 - Eurowire [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- 2020 AI and Data Science in Retail Industry Ongoing Market Situation with Manufacturing Opportunities: Amazon Web Services, Baidu Inc., BloomReach... [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Endowed Chair of Data Science job with Baylor University | 299439 - The Chronicle of Higher Education [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- Data scientists gather 'chaos into something organized' - University of Miami [Last Updated On: November 11th, 2020] [Originally Added On: November 11th, 2020]
- AI Update: Provisions in the National Defense Authorization Act Signal the Importance of AI to American Competitiveness - Lexology [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Healthcare Innovations: Predictions for 2021 Based on the Viewpoints of Analytics Thought Leaders and Industry Experts | Quantzig - Business Wire [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Poor data flows hampered governments Covid-19 response, says the Science and Technology Committee - ComputerWeekly.com [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Ilia Dub and Jasper Yip join Oliver Wyman's Asia partnership - Consultancy.asia [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Save 98% off the Complete Excel, VBA, and Data Science Certification Training Bundle - Neowin [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Data Science for Social Good Programme helps Ofsted and World Bank - India Education Diary [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Associate Professor of Fisheries Oceanography named a Cooperative Institute for the North Atlantic Region (CINAR) Fellow - UMass Dartmouth [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Rapid Insight To Host Free Webinar, Building on Data: From Raw Piles to Data Science - PR Web [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- This Is the Best Place to Buy Groceries, New Data Finds | Eat This Not That - Eat This, Not That [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Which Technology Jobs Will Require AI and Machine Learning Skills? - Dice Insights [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Companies hiring data scientists in NYC and how much they pay - Business Insider [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Calling all rock stars: hire the right data scientist talent for your business - IDG Connect [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- How Professors Can Use AI to Improve Their Teaching In Real Time - EdSurge [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- BCG GAMMA, in Collaboration with Scikit-Learn, Launches FACET, Its New Open-Source Library for Human-Explainable Artificial Intelligence - PRNewswire [Last Updated On: January 12th, 2021] [Originally Added On: January 12th, 2021]
- Data Science Platform Market Insights, Industry Outlook, Growing Trends and Demands 2020 to 2025 The Courier - The Courier [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- UBIX and ORS GROUP announce partnership to democratize advanced analytics and AI for small and midmarket organizations - PR Web [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Praxis Business School is launching its Post Graduate Program in Data Engineering in association with Knowledge Partners - Genpact and LatentView... [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- What's So Trendy about Knowledge Management Solutions Market That Everyone Went Crazy over It? | Bloomfire, CSC (American Productivity & Quality... [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Want to work in data? Here are 6 skills you'll need Just now - Siliconrepublic.com [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Data, AI and babies - BusinessLine [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Here's how much Amazon pays its Boston-based employees - Business Insider [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Datavant and Kythera Increase the Value Of Healthcare Data Through Expanded Data Science Platform Partnership - GlobeNewswire [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- O'Reilly Analysis Unveils Python's Growing Demand as Searches for Data Science, Cloud, and ITOps Topics Accelerate - Business Wire [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Book Review: Hands-On Exploratory Data Analysis with Python - insideBIGDATA [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- The 12 Best R Courses and Online Training to Consider for 2021 - Solutions Review [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Software AG's TrendMiner 2021.R1 Release Puts Data Science in the Hands of Operational Experts - Yahoo Finance [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- The chief data scientist: Who they are and what they do - Siliconrepublic.com [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Berkeley's data science leader dedicated to advancing diversity in computing - UC Berkeley [Last Updated On: January 31st, 2021] [Originally Added On: January 31st, 2021]
- Awful Earnings Aside, the Dip in Alteryx Stock Is Worth Buying - InvestorPlace [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Why Artificial Intelligence May Not Offer The Business Value You Think - CMSWire [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Getting Prices Right in 2021 - Progressive Grocer [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Labelbox raises $40 million for its data labeling and annotation tools - VentureBeat [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- How researchers are using data science to map wage theft - SmartCompany.com.au [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Ready to start coding? What you need to know about Python - TechRepublic [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Women changing the face of science in the Middle East and North Africa - The Jerusalem Post [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Mapping wage theft with data science - The Mandarin [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Data Science Platform Market 2021 Analysis Report with Highest CAGR and Major Players like || Dataiku, Bridgei2i Analytics, Feature Labs and More KSU... [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Data Science Impacting the Pharmaceutical Industry, 2020 Report: Focus on Clinical Trials - Data Science-driven Patient Selection & FDA... [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- App Annie Sets New Bar for Mobile Analytics with Data Science Innovations - PRNewswire [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- Data Science and Analytics Market 2021 to Showing Impressive Growth by 2028 | Industry Trends, Share, Size, Top Key Players Analysis and Forecast... [Last Updated On: February 12th, 2021] [Originally Added On: February 12th, 2021]
- How Can We Fix the Data Science Talent Shortage? Machine Learning Times - The Predictive Analytics Times [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- Opinion: How to secure the best tech talent | Human Capital - Business Chief [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- Following the COVID science: what the data say about the vaccine, social gatherings and travel - Chicago Sun-Times [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- Automated Data Science and Machine Learning Platforms Market Technological Growth and Precise Outlook 2021- Microsoft, MathWorks, SAS, Databricks,... [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- 9 investors discuss hurdles, opportunities and the impact of cloud vendors in enterprise data lakes - TechCrunch [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- Rapid Insight to Present at Data Science Salon's Healthcare, Finance, and Technology Virtual Event - PR Web [Last Updated On: February 14th, 2021] [Originally Added On: February 14th, 2021]
- Aunalytics Acquires Naveego to Expand Capabilities of its End-to-End Cloud-Native Data Platform to Enable True Digital Transformation for Customers -... [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Tech Careers: In-demand Courses to watch out for a Lucrative Future - Big Easy Magazine [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Willis Towers Watson enhances its human capital data science capabilities globally with the addition of the Jobable team - GlobeNewswire [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Global Data Science Platform Market 2021 Industry Insights, Drivers, Top Trends, Global Analysis And Forecast to 2027 KSU | The Sentinel Newspaper -... [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- A Comprehensive Guide to Scikit-Learn - Built In [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Industry VoicesBuilding ethical algorithms to confront biases: Lessons from Aotearoa New Zealand - FierceHealthcare [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- How Intel Employees Volunteered Their Data Science Expertise To Help Costa Rica Save Lives During the Pandemic - CSRwire.com [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Learn About Innovations in Data Science and Analytic Automation on an Upcoming Episode of the Advancements Series - Yahoo Finance [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Symposium aimed at leveraging the power of data science for promoting diversity - Penn State News [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Rochester to advance research in biological imaging through new grant - University of Rochester [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- SoftBank Joins Initiative to Train Diverse Talent in Data Science and AI - Entrepreneur [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Participating in SoftBank/ Correlation One Initiative - Miami - City of Miami [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Increasing Access to Care with the Help of Big Data | Research Blog - Duke Today [Last Updated On: February 22nd, 2021] [Originally Added On: February 22nd, 2021]
- Heres how Data Science & Business Analytics expertise can put you on the career expressway - Times of India [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- Yelp data shows almost half a million new businesses opened during the pandemic - CNBC [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- Postdoctoral Position in Transient and Multi-messenger Astronomy Data Science in Greenbelt, MD for University of MD Baltimore County/CRESST II -... [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- DefinedCrowd CEO Daniela Braga on the future of AI, training data, and women in tech - GeekWire [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- Gartner: AI and data science to drive investment decisions rather than "gut feel" by mid-decade - TechRepublic [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- Jupyter has revolutionized data science, and it started with a chance meeting between two students - TechRepublic [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- Working at the intersection of data science and public policy | Penn Today - Penn Today [Last Updated On: March 14th, 2021] [Originally Added On: March 14th, 2021]
- The Future of AI: Careers in Machine Learning - Southern New Hampshire University [Last Updated On: April 4th, 2021] [Originally Added On: April 4th, 2021]
- SMU meets the opportunities of the data-driven world with cutting-edge research and data science programs - The Dallas Morning News [Last Updated On: April 4th, 2021] [Originally Added On: April 4th, 2021]
- Data, Science, and Journalism in the Age of COVID - Pulitzer Center on Crisis Reporting [Last Updated On: April 4th, 2021] [Originally Added On: April 4th, 2021]