Unlock the Next Wave of Machine Learning with the Hybrid Cloud – The New Stack
Machine learning is no longer about experiments. Most industry-leading enterprises have already seen dramatic successes from their investments in machine learning (ML), and there is near-universal agreement among business executives that building data science capabilities is vital to maintaining and extending their competitive advantage.
The bullish outlook is evident in the U.S. Bureau of Labor Statistics predictions regarding growth of the data science career field: Employment of data scientists is projected to grow 36% from 2021 to 2031, much faster than the average for all occupations.
The aim now is to grow these initial successes beyond the specific parts of the business where they had initially emerged. Companies are looking to scale their data science capabilities to support their entire suite of business goals and embed ML-based processes and solutions everywhere the company does business.
Vanguards within the most data-centric industries, including pharmaceuticals, finance, insurance, aerospace and others, are investing heavily. They are assembling formidable teams of data scientists with varied backgrounds and expertise to develop and place ML models at the core of as many business processes as possible.
More often than not, they are running headlong into the challenges of executing data science projects across the regional, organizational, and technological divisions that abound in every organization. Data is worthless without the tools and infrastructure to use it, and both are fragmented across regions and business units, as well as in cloud and on-premises environments.
Even when analysts and data scientists overcome the hurdle of getting access to data in other parts of the business, they quickly find that they lack effective tools and hardware to leverage the data. At best, this results in low productivity, weeks of delays, and significantly higher costs due to suboptimal hardware, expensive data storage, and unnecessary data transfers. At worst, it results in project failure, or not being able to initiate the project to begin with.
Successful enterprises are learning to overcome these challenges by embracing hybrid-cloud strategies. Hybrid cloud the integrated use of on-premises and cloud environments also encompasses multicloud, the use of cloud offerings from multiple cloud providers. A hybrid-cloud approach enables companies to leverage the best of all worlds.
They can take advantage of the flexibility of cloud environments, the cost benefits of on-premises infrastructure, and the ability to select best-of-breed tools and services from any cloud vendor and machine learning operations tooling. More importantly for data science, hybrid cloud enables teams to leverage the end-to-end set of tools and infrastructure necessary to unlock data-driven value everywhere their data resides.
It allows them to arbitrage the inherent advantages of different environments while preserving data sovereignty and providing the flexibility to evolve as business and organizational conditions change.
While many organizations try to cope with disconnected platforms spread across different on-premises and cloud environments, today the most successful organizations understand that their data science operations must be hybrid cloud by design. That is, to implement end-to-end ML platforms that support hybrid cloud natively and provide integrated capabilities that work seamlessly and consistently across environments.
In a recent Forrester survey of AI infrastructure decision-makers, 71% of IT decision-makers say hybrid cloud support by their AI platform is important for executing their AI strategy, and 29% say its already critical. Further, 91% said they will be investing in hybrid cloud within two years, and 66% said they already had invested in hybrid support for AI workloads.
In addition to the overarching benefit of a hybrid-cloud strategy for data science the ability to execute data science projects and implement ML solutions anywhere in your business there are three key drivers that are accelerating the trend:
Data sovereignty: Regulatory requirements like GDPR are forcing companies to process data locally with the threat of heavy fines in more and more parts of the world. The EU Artificial Intelligence Act, which triages AI applications across three risk categories and calls for outright bans on applications deemed to be the riskiest, will go a step further than fines. Gartner predicts that 65% of the worlds population will soon be covered by similar regulations.
Cost optimization: The size of ML workloads grows as companies scale data science because of the increasing number of use cases, larger volumes of data and the use of computationally intensive, deep learning models. Hybrid-cloud platforms enable companies to direct workloads to the most cost-effective infrastructure; e.g., optimize utilization of an on-premise GPU cluster, and mitigate rising cloud costs.
Flexibility: Taking a hybrid-cloud approach allows for future-proofing to address the inevitable changes in business operations and IT strategy, such as a merger or acquisition involving a company that has a different tech stack, expansion to a new geography where your default cloud vendor does not operate or even a cloud vendor becoming a significant competitor.
Implementing a hybrid-cloud strategy for ML is easier said than done. For example, no public cloud vendor offers more than token support for on-premises workloads, let alone support for a competitors cloud, and the range of tools and infrastructure your data science teams need scales as you grow your data science rosters and undertake more ML projects. Here are the three essential capabilities for which every business must provide hybrid-cloud support in order to scale data science across the organization:
Full data science life cycle coverage: From model development to deployment to monitoring, enterprises need data science tooling and operations to manage every aspect of data science at scale.
Agnostic support for data science tooling: Given the variety of ML and AI projects and the differing skills and backgrounds of the data scientists across your distributed enterprise, your strategy needs to provide hybrid cloud support for the major open-source data science languages and frameworks and likely a few proprietary tools not to mention the extensibility to support the host of new tools and methods that are constantly being developed.
Scalable compute infrastructure: More data, more use cases and more advanced methods require the ability to scale up and scale out with distributed compute and GPU support, but this also requires an ability to support multiple distributed compute frameworks since no single framework is optimal for all workloads. Spark may work perfectly for data engineering, but you should expect that youll need a data-science-focused framework like Ray or Dask (or even OpenMPI) for your ML model training at scale.
Embedding ML models throughout your core business functions lies in the heart of AI-based digital transformation. Organizations must adopt a hybrid-cloud or equivalent multicloud strategy to expand beyond initial successes and deploy impactful ML solutions everywhere.
Data science teams need end-to-end, extensible and scalable hybrid-cloud ML platforms to access the tools, infrastructure and data they need to develop and deploy ML solutions across the business. Organizations need these platforms for the regulatory, cost and flexibility benefits they provide.
The Forrester survey notes that organizations that adopt hybrid cloud approaches to AI development are already seeing the benefits across the entire AI/ML life cycle, experiencing 48% fewer challenges in deploying and scaling their models than companies relying on a single cloud strategy. All evidence suggests that the vanguard of companies who have already invested in their data science teams and platforms are pulling even further ahead using hybrid cloud.
See original here:
Unlock the Next Wave of Machine Learning with the Hybrid Cloud - The New Stack
- A longitudinal machine-learning approach to predicting nursing home closures in the U.S. - Nature - January 11th, 2026 [January 11th, 2026]
- Occams Razor in Machine Learning. The Power of Simplicity in a Complex World - DataDrivenInvestor - January 11th, 2026 [January 11th, 2026]
- Study Explores Use of Automated Machine Learning to Compare Frailty Indices in Predicting Spinal Surgery Outcomes - geneonline.com - January 11th, 2026 [January 11th, 2026]
- Hunting for "Oddballs" With Machine Learning: Detecting Anomalous Exoplanets Using a Deep-Learned Low-Dimensional Representation of Transit... - January 9th, 2026 [January 9th, 2026]
- A Machine Learning-Driven Electrophysiological Platform for Real-Time Tumor-Neural Interaction Analysis and Modulation - Nature - January 9th, 2026 [January 9th, 2026]
- Machine learning elucidates associations between oral microbiota and the decline of sweet taste perception during aging - Nature - January 9th, 2026 [January 9th, 2026]
- Prognostic model for pancreatic cancer based on machine learning of routine slides and transcriptomic tumor analysis - Nature - January 9th, 2026 [January 9th, 2026]
- Bidgely Redefines Energy AI in 2025: From Machine Learning to Agentic AI - galvnews.com - January 9th, 2026 [January 9th, 2026]
- Machine Learning in Pharmaceutical Industry Market Size Reach USD 26.2 Billion by 2031 - openPR.com - January 9th, 2026 [January 9th, 2026]
- Noise-resistant Qubit Control With Machine Learning Delivers Over 90% Fidelity - Quantum Zeitgeist - January 9th, 2026 [January 9th, 2026]
- Machine Learning Models Forecast Parshwanath Corporation Limited Uptick - Real-Time Stock Alerts & High Return Trading Ideas -... - January 9th, 2026 [January 9th, 2026]
- Machine Learning Models Forecast Imagicaaworld Entertainment Limited Uptick - Technical Resistance Breaks & Outstanding Capital Returns -... - January 2nd, 2026 [January 2nd, 2026]
- Cognitive visual strategies are associated with delivery accuracy in elite wheelchair curling: insights from eye-tracking and machine learning -... - January 2nd, 2026 [January 2nd, 2026]
- Machine Learning Models Forecast Covidh Technologies Limited Uptick - Earnings Forecast Updates & Small Investment Trading Plans -... - January 2nd, 2026 [January 2nd, 2026]
- Machine Learning Models Forecast Sri Adhikari Brothers Television Network Limited Uptick - Stock Split Announcements & Rapid Wealth Accumulation -... - January 2nd, 2026 [January 2nd, 2026]
- Army to ring in new year with new AI and machine learning career path for officers - Stars and Stripes - December 31st, 2025 [December 31st, 2025]
- Army launches AI and machine-learning career path for officers - Federal News Network - December 31st, 2025 [December 31st, 2025]
- AI and Machine Learning Transforming Business Operations, Strategy, and Growth AI - openPR.com - December 31st, 2025 [December 31st, 2025]
- New at Mouser: Infineon Technologies PSOC Edge Machine Learning MCUs for Robotics, Industrial, and Smart Home Applications - Business Wire - December 31st, 2025 [December 31st, 2025]
- Machine Learning Models Forecast The Federal Bank Limited Uptick - Double Top/Bottom Patterns & Affordable Growth Trading - bollywoodhelpline.com - December 31st, 2025 [December 31st, 2025]
- Machine Learning Models Forecast Future Consumer Limited Uptick - Stock Valuation Metrics & Free Stock Market Beginner Guides - earlytimes.in - December 31st, 2025 [December 31st, 2025]
- Machine learning identifies statin and phenothiazine combo for neuroblastoma treatment - Medical Xpress - December 29th, 2025 [December 29th, 2025]
- Machine Learning Framework Developed to Align Educational Curricula with Workforce Needs - geneonline.com - December 29th, 2025 [December 29th, 2025]
- Study Develops Multimodal Machine Learning System to Evaluate Physical Education Effectiveness - geneonline.com - December 29th, 2025 [December 29th, 2025]
- AI Indicators Detect Buy Opportunity in Everest Organics Limited - Healthcare Stock Analysis & Smarter Trades Backed by Machine Learning -... - December 29th, 2025 [December 29th, 2025]
- Automated Fractal Analysis of Right and Left Condyles on Digital Panoramic Images Among Patients With Temporomandibular Disorder (TMD) and Use of... - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Gayatri Highways Limited Uptick - Inflation Impact on Stocks & Fast Profit Trading Ideas - bollywoodhelpline.com - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Punjab Chemicals and Crop Protection Limited Uptick - Blue Chip Stock Analysis & Double Or Triple Investment -... - December 29th, 2025 [December 29th, 2025]
- Machine Learning Models Forecast Walchand PeopleFirst Limited Uptick - Risk Adjusted Returns & Investment Recommendations You Can Trust -... - December 27th, 2025 [December 27th, 2025]
- Machine learning helps robots see clearly in total darkness using infrared - Tech Xplore - December 27th, 2025 [December 27th, 2025]
- Momentum Traders Eye Manas Properties Limited for Quick Bounce - Market Sentiment Report & Smarter Trades Backed by Machine Learning -... - December 27th, 2025 [December 27th, 2025]
- Machine Learning Models Forecast Bigbloc Construction Limited Uptick - MACD Trading Signals & Minimal Risk High Reward - bollywoodhelpline.com - December 27th, 2025 [December 27th, 2025]
- Avoid These 10 Machine Learning Project Mistakes - Analytics Insight - December 27th, 2025 [December 27th, 2025]
- Infleqtion Secures $2M U.S. Army Contract to Advance Contextual Machine Learning for Assured Navigation and Timing - Yahoo Finance - December 12th, 2025 [December 12th, 2025]
- A county-level machine learning model for bottled water consumption in the United States - ESS Open Archive - December 12th, 2025 [December 12th, 2025]
- Grainge AI: Solving the ingredient testing blind spot with machine learning - foodingredientsfirst.com - December 12th, 2025 [December 12th, 2025]
- Improved herbicide stewardship with remote sensing and machine learning decision-making tools - Open Access Government - December 12th, 2025 [December 12th, 2025]
- Hero Medical Technologies Awarded OTA by MTEC to Advance Machine Learning and Wearable Sensing for Field Triage - PRWeb - December 12th, 2025 [December 12th, 2025]
- Lieprune Achieves over Compression of Quantum Neural Networks with Negligible Performance Loss for Machine Learning Tasks - Quantum Zeitgeist - December 12th, 2025 [December 12th, 2025]
- WFS Leverages Machine Learning to Accurately Forecast Air Cargo Volumes and Align Workforce Resources - Metropolitan Airport News - December 12th, 2025 [December 12th, 2025]
- "Emerging AI and Machine Learning Technologies Revolutionize Diagnostic Accuracy in Endoscope Imaging" - GlobeNewswire - December 12th, 2025 [December 12th, 2025]
- Study Uses Multi-Scale Machine Learning to Classify Cognitive Status in Parkinsons Disease Patients - geneonline.com - December 12th, 2025 [December 12th, 2025]
- WFS uses machine learning to forecast cargo volumes and staffing - STAT Times - December 12th, 2025 [December 12th, 2025]
- Portfolio Management with Machine Learning and AI Integration - The AI Journal - December 12th, 2025 [December 12th, 2025]
- AI, Machine Learning to drive power sector transformation: Manohar Lal - DD News - December 7th, 2025 [December 7th, 2025]
- AI WebTracker and Machine-Learning Compliance Tools Help Law Firms Acquire High-Value Personal Injury Cases While Reducing Fake Leads and TCPA Risk -... - December 7th, 2025 [December 7th, 2025]
- AI AND MACHINE LEARNING BASED APPLICATIONS TO PLAY PIVOTAL ROLE IN TRANSFORMING INDIAS POWER SECTOR, SAYS SHRI MANOHAR LAL - pib.gov.in - December 7th, 2025 [December 7th, 2025]
- AI and Machine Learning to Transform Indias Power Sector, Says Manohar Lal - The Impressive Times - December 7th, 2025 [December 7th, 2025]
- Exploring LLMs with MLX and the Neural Accelerators in the M5 GPU - Apple Machine Learning Research - November 23rd, 2025 [November 23rd, 2025]
- Machine learning model for HBsAg seroclearance after 48-week pegylated interferon therapy in inactive HBsAg carriers: a retrospective study - Virology... - November 23rd, 2025 [November 23rd, 2025]
- IIT Madras Free Machine Learning Course 2026: What to know - Times of India - November 23rd, 2025 [November 23rd, 2025]
- Towards a Better Evaluation of 3D CVML Algorithms: Immersive Debugging of a Localization Model - Apple Machine Learning Research - November 23rd, 2025 [November 23rd, 2025]
- A machine-learning powered liquid biopsy predicts response to paclitaxel plus ramucirumab in advanced gastric cancer: results from the prospective IVY... - November 23rd, 2025 [November 23rd, 2025]
- Monitoring for early prediction of gram-negative bacteremia using machine learning and hematological data in the emergency department - Nature - November 23rd, 2025 [November 23rd, 2025]
- Development and validation of an interpretable machine learning model for osteoporosis prediction using routine blood tests: a retrospective cohort... - November 23rd, 2025 [November 23rd, 2025]
- Snowflake Supercharges Machine Learning for Enterprises with Native Integration of NVIDIA CUDA-X Libraries - Snowflake - November 23rd, 2025 [November 23rd, 2025]
- Rethinking Revenue: How AI and Machine Learning Are Unlocking Hidden Value in the Post-Booking Space - Aviation Week Network - November 23rd, 2025 [November 23rd, 2025]
- Machine Learning Prediction of Material Properties Improves with Phonon-Informed Datasets - Quantum Zeitgeist - November 23rd, 2025 [November 23rd, 2025]
- A predictive model for the treatment outcomes of patients with secondary mitral regurgitation based on machine learning and model interpretation - BMC... - November 23rd, 2025 [November 23rd, 2025]
- Mobvista (1860.HK) Delivers Solid Revenue Growth in Q3 2025 as Mintegral Strengthens Its AI and Machine Learning Technology - Business Wire - November 23rd, 2025 [November 23rd, 2025]
- Machine learning beats classical method in predicting cosmic ray radiation near Earth - Phys.org - November 23rd, 2025 [November 23rd, 2025]
- Top Ways AI and Machine Learning Are Revolutionizing Industries in 2025 - nerdbot - November 23rd, 2025 [November 23rd, 2025]
- Snowflake Supercharges Machine Learning for Enterprises with Native Integration of NVIDIA CUDA-X Libraries - Yahoo Finance - November 18th, 2025 [November 18th, 2025]
- An interpretable machine learning model for predicting 5year survival in breast cancer based on integration of proteomics and clinical data -... - November 18th, 2025 [November 18th, 2025]
- scMFF: a machine learning framework with multiple feature fusion strategies for cell type identification - BMC Bioinformatics - November 18th, 2025 [November 18th, 2025]
- URI professor examines how machine learning can help with depression diagnosis Rhody Today - The University of Rhode Island - November 18th, 2025 [November 18th, 2025]
- Predicting drug solubility in supercritical carbon dioxide green solvent using machine learning models based on thermodynamic properties - Nature - November 18th, 2025 [November 18th, 2025]
- Relationship between C-reactive protein triglyceride glucose index and cardiovascular disease risk: a cross-sectional analysis with machine learning -... - November 18th, 2025 [November 18th, 2025]
- Using machine learning to predict student outcomes for early intervention and formative assessment - Nature - November 18th, 2025 [November 18th, 2025]
- Prevalence, associated factors, and machine learning-based prediction of probable depression among individuals with chronic diseases in Bangladesh -... - November 18th, 2025 [November 18th, 2025]
- Snowflake supercharges machine learning for enterprises with native integration of Nvidia CUDA-X libraries - MarketScreener - November 18th, 2025 [November 18th, 2025]
- Unlocking Cardiovascular Disease Insights Through Machine Learning - BIOENGINEER.ORG - November 18th, 2025 [November 18th, 2025]
- Machine learning boosts solar forecasts in diverse climates of India - researchmatters.in - November 18th, 2025 [November 18th, 2025]
- Big Data Machine Learning In Telecom Market by Type and Application Set for 14.8% CAGR Growth Through 2033 - openPR.com - November 18th, 2025 [November 18th, 2025]
- How Humans Could Soon Understand and Talk to Animals, Thanks to Machine Learning - SYFY - November 10th, 2025 [November 10th, 2025]
- Machine learning based analysis of diesel engine performance using FeO nanoadditive in sterculia foetida biodiesel blend - Nature - November 10th, 2025 [November 10th, 2025]
- Machine Learning in Maternal Care - Johns Hopkins Bloomberg School of Public Health - November 10th, 2025 [November 10th, 2025]
- Machine learning-based differentiation of benign and malignant adrenal lesions using 18F-FDG PET/CT: a two-stage classification and SHAP... - November 10th, 2025 [November 10th, 2025]
- How to Better Use AI and Machine Learning in Dermatology, With Renata Block, MMS, PA-C - HCPLive - November 10th, 2025 [November 10th, 2025]
- Avoiding Catastrophe: The Importance of Privacy when Leveraging AI and Machine Learning for Disaster Management - CSIS | Center for Strategic and... - November 10th, 2025 [November 10th, 2025]