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Top laptops and tablets for school at 70% off during Amazon’s ‘Back to School’ Days: Brands include HP and Samsung

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Top laptops and tablets for school at 70% off during Amazon’s ‘Back to School’ Days: Brands include HP and Samsung


HP 15s, 12th Gen Intel Core i5-1235U, 8GB DDR4, 512GB SSD, (Win 11, Office 21, Silver, 1.69kg), FY5008TU Anti-Glare, 15.6-inch(39.6cm), FHD Laptop, Intel UHD Graphics, Backlit KB, HD Camera, fq5329tu View Details
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Apple iPad (10th Generation): with A14 Bionic chip, 27.69 cm (10.9″) Liquid Retina Display, 64GB, Wi-Fi 6, 12MP front/12MP Back Camera, Touch ID, All-Day Battery Life – Blue View Details checkDetails
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Apple iPad (10th Generation): with A14 Bionic chip, 27.69 cm (10.9″) Liquid Retina Display, 64GB, Wi-Fi 6, 12MP front/12MP Back Camera, Touch ID, All-Day Battery Life – Silver View Details checkDetails
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HP 15s, 12th Gen Intel Core i5-1235U, 8GB DDR4, 512GB SSD, (Win 11, Office 21, Silver, 1.69kg), FY5008TU Anti-Glare, 15.6-inch(39.6cm), FHD Laptop, Intel UHD Graphics, Backlit KB, HD Camera, fq5329tu View Details checkDetails
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HP 15s,12th Gen Intel Core i3-1215U, 8GB DDR4, 512 GB SSD(Win 11, Office 21, Silver, 1.69kg), Anti-Glare, 15.6inch(39.6Cm), FHD Laptop, Intel UHD Graphics, Dual Speakers, HD Camera, fy5006tu View Details checkDetails
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HP 15, AMD Ryzen 3 7320U, 8GB LPDDR5, 512GB SSD, Anti-Glare, Micro-Edge, 15.6-inch (39.6 cm), FHD, AMD Radeon Graphics, 1080p HD Camera, (Win 11, Silver, 1.59 kg), fc0154AU View Details checkDetails
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HP 15s, 12th Gen Intel Core i3-1215U Laptop(8GB DDR4, 512GB SSD), Anti Glare, Micro Edge, 15.6/39.6cm, FHD,Win 11, Microsoft 365*, Natural Silver,1.69kg, Intel UHD Graphics, fy5011tu View Details checkDetails
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HP 15, 13th Gen Intel Core i3-1315U, 8GB DDR4, 512GB SSD, (Win 11, Office 21, Grey, 1.59kg), Anti-Glare, Micro-Edge,15.6-inch(39.6cm), FHD Laptop, Intel UHD Graphics, 1080p FHD Camera, fd0006TU View Details checkDetails
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HP 15s,12th Gen Intel Core i3-1215U, 8GB DDR4, 256GB SSD, Anti-Glare, Micro-Edge, 15.6-inch(39.6cm) FHD Laptop, Intel UHD Graphics, Full-Size KB (Win 11, Office 21, Silver, 1.69kg) fy5010tu View Details checkDetails
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HP 15, 12th Gen Intel Core i5-1235U, 16GB DDR4, 512GB SSD, (Win 11, Office 21, Silver, 1.69kg), Anti-Glare, 15.6-inch(39.6cm) FHD Laptop, Intel Iris Xe Graphics, HD Camera, Backlit Keyboard, fy5009tu View Details checkDetails
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HP 15, 13th Gen Intel Core i5-1334U (16GB DDR4, 512GB SSD) Microsoft365* Office2024, Win11, 15.6inch(39.6cm) FHD Laptop, Intel Iris Xe, FHD Camera w/Privacy Shutter, Backlit, Silver, 1.59kg, fd0467tu View Details checkDetails
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HP Laptop 245 G9 AMD Ryzen 3 3250U Dual Core – (8GB/512GB SSD/AMD Radeon Graphics) Thin and Light Business Laptop/14 (35.56cm)/Silver/1.47 kg View Details checkDetails
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HP Laptop 250R G9 (2024), Intel Core i3 13th Gen 1315U – (8GB/512GB SSD/Intel UHD Graphics/Windows 11 Home) Thin and Light Business Laptop/15.6 (39.62cm)/Ash Grey/1.57 kg View Details checkDetails
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HP 255 G9 Ryzen 3 Dual Core AMD Ryzen™ 3 Processor 3250U – (8 GB/512 GB SSD/AMD Radeon Graphics) 9H237PT Thin and Light Laptop (15.6 inch, Black, 1.47 kg) View Details checkDetails
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HP Victus, AMD Ryzen 5 8645HS, 6GB RTX 3050 AI Gaming Laptop, 31 Tops (Upgradable 16GB DDR5, 512GB SSD), 144Hz, IPS, 300 nits, 15.6/39.6cm, FHD, Win11,Office24,Microsoft365*, Blue, 2.29kg, fb3009AX View Details checkDetails
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Lenovo V15 AMD Ryzen 3 7320U 15.6 (39.62cm) FHD 250 Nits Antiglare Thin and Light Laptop (8GB/512GB SSD/Windows 11 Home/Arctic Grey/1.63 Kg), 83CQ000XIN View Details checkDetails
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Lenovo V15 G4 AMD Ryzen 5 7520U 15.6 inch FHD Thin & Lite Laptop, AMD Graphics, 16GB DDR5 5500Mhz Ram, 512GB SSD NVMe, Windows 11, Dolby Audio, Arctic Grey, 1 Year Onsite Brand Warranty View Details checkDetails
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Lenovo V15 AMD Ryzen 7 7730U 15.6 (39.62cm) FHD 250 Nits Antiglare Thin and Light Laptop (Free MS Office) Lifetime (16GB/512GB SSD/Windows 11/Iron Grey/1.65 Kg) 1 Year Brand Warranty, 83CRA01SIN View Details checkDetails
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Lenovo IdeaPad Slim 3 12th Gen Intel Core i3-1215U 15.6 (39.62cm) FHD Thin & Light Laptop (8GB/512GB SSD/Intel UHD Graphics/Windows 11/Office Home 2024/1Yr ADP Free/Arctic Grey/1.63Kg), 82RK01ABIN View Details checkDetails
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Lenovo V15 12th Gen Intel Core i7-1255U 15.6 FHD Thin and Light Laptop (16GB RAM/512GB SSD/Windows 11 Home/MS Office Home & Student 2021/Iron Grey/1.70 kg), 82TTA073IN View Details checkDetails
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Lenovo IdeaPad Slim 1 AMD Ryzen 5 5500U 15.6 HD Thin and Light Laptop (16GB/512GB SSD/Integrated AMD Graphics/Windows 11 Home/MSO 21/1Yr ADP Free/Cloud Grey/1.61Kg), 82R400ERIN View Details checkDetails
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Lenovo V15 Intel Celeron N4500 15.6 (39.62 cm) FHD (1920×1080) Antiglare 250 Nits Thin and Light Laptop (8GB RAM/256GB SSD/Windows 11 Home/Black/1Y Onsite/1.7 kg), 82QYA00MIN View Details checkDetails
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Lenovo V15 Gen 4 Laptop, 15.6 FHD Display, AMD Ryzen 3 7320U Processor, RJ-45, USB-C, HDMI, Windows 11 /MS Office (8GB LPDDR5 RAM 5500 MHz | 512GB PCIe SSD), Silver, 1 Year Brand Warranty View Details checkDetails
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Lenovo V15 15.6 FHD Laptop, 12th Gen Intel Core i5-1235U, 16GB RAM, 512GB SSD, Intel Iris Xe Graphics, Windows 11, MS Office, 1YR On-site Warranty + 1 Year Accidental Damage Protection, Iron Grey View Details checkDetails
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Lenovo IdeaPad Slim 3, Intel Core i5-12450H, 12th Gen, 16GB RAM, 512GB SSD, FHD, 14/35.5cm, Windows 11, MS Office Home 2024, Grey, 1.37Kg, 83EQ0072IN, Alexa Built-in, 3 mon. Game Pass Laptop View Details checkDetails
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Lenovo V15 G4 (2024), AMD Ryzen 3 7320U Quad Core – (8GB/512GB SSD/AMD Radeon Graphics/Windows 11 Home) Thin and Light Business Laptop/15.6 FHD Display/Arctic Grey/1.57 kg/MS Office 2021 View Details checkDetails
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Samsung Galaxy Book4 (Gray, 16GB RAM, 512GB SSD) | 15.6 Full HD Screen | Intel Core i5 1335U Processor | Windows 11 Home | MS Office 2021 | Fingerprint Reader | Intel Iris XE Graphics | RJ45 LAN Port View Details checkDetails
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Samsung Galaxy Book4 (Silver, 16GB RAM, 512GB SSD) | 15.6 Full HD Screen | Intel Core 5 120U Processor | Windows 11 Home | MS Office 2021 | Fingerprint Reader | Intel Iris XE Graphics | RJ45 LAN Port View Details checkDetails
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Samsung Galaxy Book4 (Gray, 16GB RAM, 512GB SSD) | 15.6 Full HD Screen | Intel Core i7 1355U Processor | Windows 11 Home | MS Office 2021 | Fingerprint Reader | Intel Iris XE Graphics | RJ45 LAN Port View Details checkDetails
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Samsung Galaxy Book3 (NP754) Intel Core i3 13th Gen 1315U 39.6cm (15.6-inch) FHD Thin & Light Laptop (8GB/512GB SSD/Windows 11 Pro (64bit)/Intel UHD Graphics/Silver/1.57 Kg), NP754XFG-KB3IN. View Details checkDetails
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Apple MacBook Air Laptop: Apple M1 chip, 13.3-inch/33.74 cm Retina Display, 8GB RAM, 256GB SSD Storage, Backlit Keyboard, FaceTime HD Camera, Touch ID. Works with iPhone/iPad; Space Grey View Details checkDetails
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Apple 2025 MacBook Air (13-inch, Apple M4 chip with 10-core CPU and 8-core GPU, 16GB Unified Memory, 256GB) – Midnight View Details checkDetails
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2022 Apple MacBook Air Laptop with M2 chip: 13.6-inch Liquid Retina Display, 16GB RAM, 256GB SSD Storage, Backlit Keyboard, 1080p FaceTime HD Camera. Works with iPhone and iPad; Midnight View Details checkDetails
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Samsung Galaxy Tab A9+ [Smartchoice], 27.94 cm (11.0 inch) Display, RAM 8 GB, ROM 128 GB Expandable, Wi-Fi Tablet, Gray View Details checkDetails
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Lenovo Tab M11|8 Gb Ram,128 Gb ROM|11 Inch,90 Hz,72% Ntsc,400 Nits Fhd Display|Wi-Fi Only|Micro Sd Support Upto 1 Tb|Quad Speakers with Dolby Atmos|Octa-Core Processor|13 Mp Rear Camera,Green View Details checkDetails
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Lenovo Tab Plus with Octa JBL Hi-Fi Speakers| 8 GB RAM, 128 GB ROM| 11.5 Inch, 2K, 90 Hz Refresh| Wi-Fi Tablet| Android 14| 45 W Fast Charger| Built-in Kickstand| Color: Luna Grey View Details checkDetails
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HONOR Pad X9 with Free Flip-Cover 11.5-inch (29.21 cm) 120Hz 2K Display, Snapdragon 685, 8GB (8GB+5GB RAM Turbo) 128GB ROM, 6 Speakers, Up-to 13 Hours Battery, Android, WiFi, Metal Body, Gray View Details checkDetails
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Samsung Galaxy Tab S9 FE [Smartchoice], RAM 6 GB, ROM 128 GB Expandable, S Pen in-Box, Wi-Fi, IP68 Tablet, Gray View Details checkDetails
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Samsung Galaxy Tab S9 FE [Smartchoice], RAM 6 GB, ROM 128 GB Expandable, S Pen in-Box, Wi-Fi, IP68 Tablet, Gray View Details checkDetails
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Lenovo {Smartchoice} Idea Tab Pro with Pen Plus|12.7 3K Display|144 Hz Refresh|12 GB RAM, 256 GB ROM| AI-Enabled| MediaTek Dimensity 8300|Quad JBL Speakers|10200 mAh Battery with 45 W Charger|WiFi 6e View Details checkDetails
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Xiaomi Pad 7 Nano Texture Display Sage Green 12GB RAM 256GB ROM View Details checkDetails
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Apple iPad 11″: A16 chip, 27.69 cm (11″) Model, Liquid Retina Display, 128GB, Wi-Fi 6, 12MP Front/12MP Back Camera, Touch ID, All-Day Battery Life — Silver View Details checkDetails
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Apple iPad (10th Generation): with A14 Bionic chip, 27.69 cm (10.9″) Liquid Retina Display, 64GB, Wi-Fi 6, 12MP front/12MP Back Camera, Touch ID, All-Day Battery Life – Blue View Details checkDetails
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Apple iPad (10th Generation): with A14 Bionic chip, 27.69 cm (10.9″) Liquid Retina Display, 64GB, Wi-Fi 6, 12MP front/12MP Back Camera, Touch ID, All-Day Battery Life – Silver View Details checkDetails
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Apple iPad 11″: A16 chip, 27.69 cm (11″) Model, Liquid Retina Display, 128GB, Wi-Fi 6, 12MP Front/12MP Back Camera, Touch ID, All-Day Battery Life — Pink View Details checkDetails
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Apple iPad 11″: A16 chip, 27.69 cm (11″) Model, Liquid Retina Display, 256GB, Wi-Fi 6, 12MP Front/12MP Back Camera, Touch ID, All-Day Battery Life — Silver View Details checkDetails
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Apple iPad Air (5th Generation): with M1 chip, 27.69 cm (10.9″) Liquid Retina Display, 64GB, Wi-Fi 6 + 5G Cellular, 12MP front/12MP Back Camera, Touch ID, All-Day Battery Life – Pink View Details checkDetails
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Apple iPad 11″: A16 chip, 27.69 cm (11″) Model, Liquid Retina Display, 128GB, Wi-Fi 6, 12MP Front/12MP Back Camera, Touch ID, All-Day Battery Life — Blue View Details checkDetails
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Apple iPad 11″: A16 chip, 27.69 cm (11″) Model, Liquid Retina Display, 256GB, Wi-Fi 6, 12MP Front/12MP Back Camera, Touch ID, All-Day Battery Life — Blue View Details checkDetails
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ASUS Vivobook Go 15 (2023), AMD Ryzen 5 7520U, 16GB RAM, 512GB SSD, FHD, 15.6/39.62cm, Windows 11, MS Office 2021, Mixed Black, 1.63KG, E1504FA-NJ542WS, Alexa Built-in, Thin & Light Laptop View Details checkDetails
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ASUS TUF Gaming A15, AMD Ryzen 7 7435HS Gaming Laptop(NVIDIA RTX 3050-4GB/60W TGP/16GB RAM/512GB SSD/FHD/15.6/144Hz/RGB KB/48WHr/Windows 11//Graphite Black/2.30 Kg) FA506NCR-HN054W View Details checkDetails
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ASUS Vivobook Go 14, AMD Ryzen 3 7320U, 8GB RAM, 512GB SSD, FHD, 14/35.56cm, Windows 11, Office 2021, Black, 1.38KG, E1404FA-NK325WS, 42WHr, Thin and Light Laptop View Details checkDetails
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ASUS Vivobook 15, Intel Core i3-1315U, 13th Gen, 8GB RAM, 512GB SSD, FHD, 15.6/39.62cm, Windows 11, MS Office, Silver, 1.7KG, X1504VA-NJ320WS, Backlit Keyboard, Thin and Light Laptop View Details checkDetails
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ASUS Vivobook 15, Intel Core i3-1215U, 8GB RAM, 512GB SSD, FHD 16:9 60Hz 250nits, 15.6/39.6cm, Windows 11 Home, Office 2021, Cool Silver, 1.7KG, X1504ZA-NJ320WS, Intel UHD Graphics, Backlit Laptop View Details checkDetails
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ASUS Vivobook 16X 12th Gen,Intel Core i5-12500H Creator/Gaming Laptop(NVIDIA RTX 2050-4GB/16GB/512GB/FHD+/16.0/144Hz/Backlit KB/50WHr/Windows 11/Office 2021/Cool Silver/1.67 kg) K3605ZF-RP258WS View Details checkDetails
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ASUS Vivobook 15, Intel Core i3-1215U, 1.2 GHz, 16GB RAM, 512GB SSD, FHD 1920×1080, 15.6, Windows 11, MS Office Home, Quiet Blue, 1.7KG, X1504ZA-NJ341WS, Integrated Graphics, Thin & Light Laptop View Details checkDetails
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ASUS VivoBook 15 (2022), Intel Core i3-1215U, 12th Gen, 8GB RAM, 512GB SSD, FHD, 15.6/39.62cm, Windows 11, MS Office 2021, Icelight Silver, 1.7KG, X1502ZA-EJ322WS, Backlit KB Laptop View Details checkDetails
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ASUS Vivobook 15,13th Gen,Intel Core i5-1335U,Thin & Light (Intel Iris Xᵉ iGPU/16GB RAM/512GB SSD/FHD/15.6/60Hz/Backlit Keyboard/42WHrs/Windows 11/Office 2021/Cool Silver/1.70 kg) X1504VA-NJ540WS View Details checkDetails
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Technology

If it can weather some challenges, AI can supercharge forecasting

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If it can weather some challenges, AI can supercharge forecasting


Like it or not, it’s clear: every year, India must face down intense heat waves and erratic but also often intense bursts of rainfall. In a bid to find as many ways out of the consequences — or at least their ability to surprise governments — as possible, the country has turned to artificial intelligence (AI) for help with modelling and early warnings.

Traditional weather forecasting uses numerical weather prediction (NWP) models. Such models begin with physics equations that simulate atmospheric behaviour using the principles of fluid dynamics and thermodynamics. They process observational data from weather stations and satellites, including temperature and wind speed, and perform their complex and time-consuming calculations on supercomputers.

AI-based models start with the data instead. AI algorithms can ‘learn’ the relationships between some inputs and an output — e.g. a given set of wind, temperature, and humidity conditions on one hand and the formation of a cyclone on the other — or extract spatial and temporal patterns from large datasets. And they do this without prior knowledge of the underlying earth system processes. This makes AI particularly useful for applications that lack a complete theory.

For example, an AI model can explore hidden links between various earth system variables, such as air temperature, pressure and humidity or ocean temperature, salinity, and currents, to uncover cause-effect relationships existing physics-based models don’t capture. AI models can also factor in a wider range of input variables, whereas physics-based models use input variables that experts have traditionally considered to be relevant.

The Indian government joined the new international race to build such models when it announced ‘Mission Mausam’ in September 2024 with an allocation of ₹2,000 crore over two years. Its stated goals are to exponentially enhance the country’s weather and climate observations and to better understand modelling and forecasting for more accurate and timely services.

The Mission aims to do this by, inter alia, developing better earth system models and data-driven methods using AI. The Ministry of Earth Sciences has set up a dedicated AI and machine-learning (ML) centre to develop and test different techniques and models AI to improve short-range rain forecasts, develop high-resolution urban meteorological datasets, and explore these technologies for nowcasting rainfall and snow using data from Doppler radars.

Indian researchers are also making forays in the use of AI for weather prediction. For example, groups at the DST Centre of Excellence in Climate Modelling (CECM) at IIT-Delhi; the Indraprastha Institute of Information Technology, New Delhi; the Massachusetts Institute of Technology in the US; and the Japan Agency for Marine Earth Science and Technology have together developed a ML model to predict monsoon rainfall. The model uses data from 1901 to 2001 related to the Indian summer monsoon, and accounts for the influences of systems like the El Nino (a climate pattern that emerges due to unusual warming of surface waters in the eastern Pacific Ocean) and the Indian Ocean Dipole (IOD).

According to the team, this model performs better than current physical models to predict monsoon in the country, with a forecast success rate of 61.9% for the test period of 2002-2022. The team said it can also predict rains months in advance subject to the availability of El Nino and IOD data; can be updated based on how the El Nino and IOD data evolve; can better capture nonlinear relationships in the monsoon drivers’ data; and is less computationally intensive.

Challenges are only beginning

That said, these are early years and the path ahead is challenging, both in India and abroad.

Weather systems are inherently nonlinear and chaotic, so sophisticated models are required to capture their dynamic nature, IIT-Delhi associate professor Tanmoy Chakraborty said. AI models in particular require large, high-quality datasets for the models to train on first. But these datasets are hampered by problems like sensor error, inconsistent formats, and the data being spatially and temporally inconsistent.

Satish Regonda, associate professor in the departments of civil engineering and climate studies at IIT-Hyderabad, said AI/ML models typically require large amounts of data — especially at finer spatial and temporal resolutions — because as weather processes are dominated by randomness. The more data there is, the better it is to find signs of order in the chaos.

Moreover, neither AI models nor the experts that built them are generally able to explain how they were able to make certain predictions. This is why in a February 2025 paper in NatureCommunications, researchers from institutes in France, Germany, Greece, Italy, the Netherlands, and Spain wrote that operational challenges in using AI/ML for weather and climate prediction include “the complexity of AI outputs, which hinder interpretation by non-experts.”

The scepticism stems from “the near impossibility of explaining the reasons for good or bad performance,” Regonda added. Traditional weather models provide an intuitive understanding of the underlying processes through their equations, and the framework allows the analysis of model errors and corrections. Nonetheless, efforts are now in place to develop hybrid approaches by combining AI/ML with physics-based modelling for weather forecasting, according to Regonda.

The two bigger problems

In India, many weather forecasters don’t use or run weather models that require high computing power and high-quality data; instead they use the information thus generated from other agencies, including the India Meteorological Department (IMD), the US National Oceanic and Atmospheric Administration (NOAA), the European Center for Medium Weather-range Forecasting (ECMWF), and private firms — or a combination of data produced by multiple models. Then they overlay their local knowledge, including movement of clouds and past scenarios. Regonda said these forecasters competed with each other although, “given the growing interest in AI/ML and as finer resolution data becomes increasingly [better] available, and because of high-intensity and short-duration rainfall events, I think AI/ML models will be used extensively in the near future in India.”

The two principal challenges with the use of AI/ML for predicting what is also increasingly erratic weather are (i) the availability of sufficient data and (ii) the right human resources, and experts differ on which of the two is a bigger hurdle.

Saroj Kanta Mishra, a professor at CECM in IIT Delhi and the leader of the team that built the monsoon model, said it was human resources, especially at the interface between AI and predicting weather and climate. “Climate science is not fundamentally an independent discipline and draws scientists from physics, mathematics, certain engineering branches such as mechanical and civil engineering, and computer science,” according to Mishra. “It is, however, not common for many scientists from these disciplines to come into climate science as it falls somewhere between core natural sciences or core engineering disciplines.”

“For scientists working on climate science, when one does not have the AI/ML expertise required for climate science, it is like a black box, and very superficial in nature,” he continued. “Similarly, for hardcore data, core AI/ML scientists don’t have an adequate background in climate science. So the scope of doing deep research and making groundbreaking progress is highly unlikely in the present situation.”

Chakraborty agreed. “Many powerful AI models, specifically generative AI models, operate as black boxes, hindering the understanding of prediction mechanisms and limiting trust in their outputs,” he said.

“Black box” here refers to the inscrutability of the relationships between an AI model’s inputs and outputs. That is, when an AI model accepts certain inputs and produces a particular output, how the inputs and output are connected is not clear.

Critical mass

Climate is a very complex phenomenon and its prediction in India has been a challenge for decades, Mishra added. “The physical systems driving India’s climate are challenging, and AI/ML could solve problems that humans find difficult.”

According to Chakraborty, “India’s diverse topography and climate zones demand regionally tailored models, increasing development complexity.” This is further compounded by inadequate sensor networks and gaps in the meteorological infrastructure, particularly in remote regions. The end result is sparse and inconsistent data, leading to subpar model accuracy.

Further, the Indian monsoon’s complex dynamics and interannual variability present a significant challenge for long-range and short-range forecasting, Chakraborty added.

However, Mishra didn’t agree that the paucity of data for use in AI/ML models is a major problem “as there has been a 10-fold increase in observational data in India over the years.” The need for more data and more computing power ”is a never-satiable demand” that can’t be achieved overnight, he added.

Instead, he said India needs — and can attain — is the development of a sophisticated model tailored to solve the country’s problems. “If we get the right talent together, it can be done in very less time,” Mishra said. “For this, active collaborations between the climate scientists and AI/ML scientists are essential, and that will happen if we can keep them under one roof, for example setting up an institute exclusively for applications of AI/ML with a mission to solve the pressing issues the country is facing today. Such an initiative could bind these experts together and groundbreaking research could be done.”

Chakraborty echoed him and said: “A critical shortage of professionals with expertise in both meteorology and machine learning hinders the development and deployment of advanced models.” This includes data scientists with a good understanding of the physics of the atmosphere. While more data is being collected and better, there are still challenges in data accessibility, standardisation, and integration from diverse sources, he said, especially of historical data and real-time data.

Modelling a changing future

However, Madhavan Nair Rajeevan, former Secretary of the Ministry of Earth Sciences, expressed belief in the reverse: that human resources and expertise in working on ML-based weather modelling are not challenges per se in India whereas the availability of long-term data of high quality is.

“We should ensure we compile good, reliable data sets for ML-based applications. But we will need a lot of computing resources with graphics processing unit (GPU)-based computers,” he said. While conventional home computers use central processing units (CPUs), computers that use GPUs instead are adept at performing multiple computations in parallel, and thus more powerful. “In India, we have enough expertise to work with ML for weather-modelling.”

In his tenure at the Ministry, Nair had initiated a centre for excellence in AI/ML at the Indian Institute for Tropical Meteorology (IITM), Pune, and supported several research projects for weather and climate modelling. “Hopefully in the next one to two years, some good results will come out,” he added.

Worldwide as well, scientists are trying to overcome challenges in using ML for climate science. At the 2024 Heidelberg Laureate Forum in Germany, scientists pointed out that while they have been able to apply ML in weather forecasting with good success, they haven’t been able to do so so readily to problems in climate science.

“An ML model trained to predict good weather today is not very useful in a much warmer future world with a different state of the atmosphere,” the forum heard. The atmosphere is also chaotic and the resulting random fluctuations interfere with the average climate change signal. Thus, it is easier to predict the mean future climate but modelling its full variability is very difficult.

One notable emerging enterprise in this regard is hybrid climate modelling, in which scientists combine the physics-based climate models that solve differential equations with the tools of ML.

AI/ML and extreme weather

For all these challenges, some scientists believe AI/ML models can be particularly useful to predict extreme weather events such as heat waves, droughts, torrential rainfall, and floods. “AI has emerged as a transformative tool for the detection, forecasting, analysis of extreme events, and generation of worst-case events, and promises advances in attribution studies, explanation, and communication of risk,” the February 2025 paper in Nature Communications read. It added that the abilities of ML, and deep learning in particular, together with computer vision techniques are advancing the detection and localisation of events.

That said, “accurately predicting and modeling extreme weather events, e.g. cyclones, heat waves, and cloud bursts, is crucial but challenging due to their localised and rapid development,” Chakraborty said.

The Nature Communications paper also expressed caution about challenges in data management issues, such as handling dynamic datasets, biases, and high dimensionality, i.e. datasets with a large number of covariate variables, and which render computations as well as extracting useful information from the analysis very difficult. AI models also struggle with unclear statistical definitions of what is “extreme”, the paper noted.

Another challenge is “trustworthiness concerns” that arise from the complexity and interpretability of ML models, the difficulty of generalising across different contexts, and the quantification of uncertainty. Nair agreed, saying, “Though ML is a powerful tool, it should be used carefully, with stringent verification processes.”

T.V. Padma is a science journalist in New Delhi.



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Earth Day 2025: How Gaylord Nelson’s call for change sparked a worldwide movement | – The Times of India

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Earth Day 2025: How Gaylord Nelson’s call for change sparked a worldwide movement | – The Times of India


Celebrated annually on April 22, Earth Day has evolved into one of the most significant global observances dedicated to environmental awareness and action. First commemorated in 1970, Earth Day emerged in response to growing concerns about pollution, ecological degradation, and the unchecked industrialization that marked post-World War II America. What began as a national movement in the United States has since grown into an international phenomenon observed in more than 190 countries. Over the decades, Earth Day has inspired the creation of government agencies, landmark environmental legislation, and widespread grassroots mobilization.
As Earth Day marks its 55th anniversary in 2025, it remains a powerful reminder of the enduring need for environmental stewardship, policy change, and community-level activism.

Gaylord Nelson, the ‘founder’ of Earth Day and his vision

The inception of Earth Day is credited to Gaylord Nelson, a US senator and former governor from Wisconsin. Known for his deep commitment to conservation, Nelson’s political career was rooted in advocating for natural resource protection and sustainable policies. During his time as governor from 1959 to 1963, Nelson gained recognition for championing environmental reforms in Wisconsin.
Elected to the US Senate in 1962, Nelson found that environmental issues were not a priority in Washington. Frustrated by the lack of political will, he sought ways to bring ecological concerns to the forefront of national discourse. His defining moment came in 1969 after visiting the site of the Santa Barbara oil spill—then the largest in US history. On his return flight to Washington, he read about campus “teach-ins” being used to protest the Vietnam War. This sparked the idea to mobilize a similar approach for environmental education and advocacy.

First Earth Day – April 22, 1970: The day America mobilised for the planet

Nelson proposed April 22, 1970, as a national day of environmental education. The date was strategically chosen to avoid conflicts with college exams and spring breaks, ensuring maximum participation among students.
Instead of a top-down initiative, Nelson’s approach emphasized grassroots participation. Schools, colleges, and local communities were encouraged to organize events that reflected their unique concerns and contexts. This decentralized strategy led to a powerful and widespread response.
According to reports, approximately 20 million Americans participated in the first Earth Day—engaging in protests, cleanup drives, tree plantings, and educational activities. The diversity of events across the country illustrated the broad concern for the environment and marked one of the largest single-day public demonstrations in US history.

Legislative and institutional outcomes

The massive public turnout on Earth Day 1970 sent a clear message to lawmakers. It directly contributed to the establishment of the Environmental Protection Agency (EPA) in December 1970. Additionally, it laid the groundwork for foundational environmental legislation, including:

  • The Clean Air Act (1970)
  • The Clean Water Act (1972)
  • The Endangered Species Act (1973)

These laws institutionalized federal responsibility for environmental protection and set legal standards that still govern environmental policy in the United States.

Earth Day in the 21st Century

Over the past five decades, Earth Day has grown into a global environmental movement, with millions participating in events focused on climate change, plastic pollution, deforestation, and clean energy. As per reports, in 1990, Earth Day went international, with events held in 141 countries. Today, Earth Day is coordinated globally by the Earth Day Network (EDN), which supports thousands of organizations in advocating for a sustainable future.
Each year, Earth Day is organized around a specific theme. Recent themes have included:

  • 2020: Climate Action
  • 2021: Restore Our Earth
  • 2022: Invest in Our Planet
  • 2023: Planet vs. Plastics
  • 2024: Vote Earth

The themes reflect shifting global priorities and are designed to unite people under common goals while encouraging tangible action.

Local action and community engagement

While national and international efforts remain crucial, much of the meaningful work occurs at the local level. According to Paul Robbins, Dean of the Nelson Institute for Environmental Studies at the University of Wisconsin–Madison, municipalities—especially smaller cities and school districts—are emerging as important agents of change.
One example is the Juda School District in Wisconsin, which installed solar panels on its buildings, reducing both energy costs and carbon emissions. Initiatives like these, replicated across communities, contribute to substantial environmental progress.
Local environmental education, waste reduction campaigns, community gardens, and renewable energy projects have become staples of Earth Day observances in towns and cities across the United States and beyond.

Corporate and private sector involvement

The business community has also become increasingly engaged in Earth Day. In contrast to 1970, when corporate interest in sustainability was virtually nonexistent, today many companies use Earth Day to announce green initiatives, launch eco-friendly products, or showcase sustainable practices.
From energy-efficient buildings to carbon offset programs and eco-conscious packaging, Earth Day serves as a platform for businesses to demonstrate environmental responsibility—often driven by consumer expectations and investor interest in ESG (Environmental, Social, and Governance) metrics.

The ongoing challenge of climate change

Despite notable progress, Earth Day in 2025 also serves as a stark reminder of unresolved challenges. Climate change continues to be one of the most urgent threats facing the planet. Rising temperatures, extreme weather events, biodiversity loss, and sea-level rise require sustained international cooperation and policy innovation.
Tia Nelson, daughter of Gaylord Nelson and an environmental advocate, acknowledges the progress while emphasising that “we’re not where we need to be.” She calls for expanding the environmental conversation beyond existing advocates to reach new audiences and political constituencies.
Her father’s original question remains relevant: “Are we able? Yes. Are we willing? That’s the unanswered question.”





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iPhone slowing down? 4 easy ways to clear cache, improve performance and more

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iPhone slowing down? 4 easy ways to clear cache, improve performance and more


An iPhone full of junk is far from ideal. It not only slows down your device but also occupies unnecessary storage and, most importantly, can be a constant annoyance, especially if cluttered spaces affect your peace of mind. Keeping this in mind, iOS offers several ways to declutter your device. So, here are four simple ways to clean up your iPhone, improve performance, and free up space.

Clearing Safari cache can help with various errors.(Aishwarya Panda-HT)

Also Read: Apple may launch sky blue colour option for iPhone 17 Pro in 2025: Report

1. Clear the cache on the Safari web browser

Clearing your cache can have multiple benefits. Firstly, it removes unnecessary storage data. Secondly, it can resolve errors your browser may be showing. Clearing the Safari cache can help make your phone feel faster and more responsive.

Here’s how to delete the cache and cookies in Safari:

  1. Head to your iPhone Settings, then go to Apps, and tap on Safari.
  2. Tap on Clear History and Website Data.
  3. Under the History and Website Data section, you will see multiple options including time frames and various profiles you might have.

2. Organise your apps on the Home Screen

iOS doesn’t have an app drawer like Android. It does have the App Library, but it’s not quite the same. That’s why it’s helpful to organise your apps directly on the Home Screen using folders.

On the first Home Screen page, we recommend placing the apps you use most frequently. These might include social media apps, your mail client such as Gmail, fitness apps, or even a weather widget, if you are likely to check the weather regularly.

On the second page, you can create folders for categories like utilities, finance apps, social media, and so on. We suggest keeping it to no more than two or three pages. This not only keeps your phone tidy but also makes it easier to find what you’re looking for.

Also Read: AirTag 2: Apple might launch the upgraded tracker by early summer 2025

3. Uninstall all unnecessary apps

We often install apps and then forget about them. This could be due to trying a new app you read about online, or downloading something you thought you’d use. You may also find yourself with duplicate apps, multiple apps to manage payments, to book flights, to book hotels, and so on.

Learn to identify the apps you actually use the most. Then, go to the App Library and look for those you don’t use at all. Simply uninstall them. This will simplify your life whenever you’re searching for a specific app and give you peace of mind knowing no app is sitting in your phone without use. Not to forget, you do save on space this way, too.

4. Go though the Photos and videos

There’s also another way to declutter your phone, and that involves your photos. There are likely to be multiple duplicates, along with images that are not needed at all, simply sitting there and taking up space on your phone.

Fortunately, there’s an option within the Photos app that makes identifying duplicates easier. It’s actually labelled Duplicates, and can be found under the Utilities tab in the Photos app. To access it, open the Photos app, scroll all the way down, and you’ll see the Utilities section. Tap on the Duplicates option, review all the duplicate images, and then delete them.

You can also manually search for images and videos that serve no real purpose, such as random screenshots and similar content. While this might be a time consuming process, it’s worth going through your photos and deleting anything unnecessary.

Mobile Finder: iPhone 16 LATEST price, specs and all details



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