{"id":442745,"date":"2026-05-06T01:37:15","date_gmt":"2026-05-06T08:37:15","guid":{"rendered":"https:\/\/climatescience.press\/?p=442745"},"modified":"2026-05-06T01:37:17","modified_gmt":"2026-05-06T08:37:17","slug":"physics-based-models-outperform-ai-in-predicting-record-breaking-extreme-weather","status":"publish","type":"post","link":"https:\/\/climatescience.press\/?p=442745","title":{"rendered":"Physics-Based Models Outperform AI in Predicting Record-Breaking Extreme Weather"},"content":{"rendered":"\n<figure class=\"wp-block-image size-large\"><img data-recalc-dims=\"1\" loading=\"lazy\" decoding=\"async\" width=\"723\" height=\"485\" data-attachment-id=\"442746\" data-permalink=\"https:\/\/climatescience.press\/?attachment_id=442746\" data-orig-file=\"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?fit=1168%2C784&amp;ssl=1\" data-orig-size=\"1168,784\" data-comments-opened=\"1\" data-image-meta=\"{&quot;aperture&quot;:&quot;0&quot;,&quot;credit&quot;:&quot;&quot;,&quot;camera&quot;:&quot;&quot;,&quot;caption&quot;:&quot;&quot;,&quot;created_timestamp&quot;:&quot;0&quot;,&quot;copyright&quot;:&quot;&quot;,&quot;focal_length&quot;:&quot;0&quot;,&quot;iso&quot;:&quot;0&quot;,&quot;shutter_speed&quot;:&quot;0&quot;,&quot;title&quot;:&quot;&quot;,&quot;orientation&quot;:&quot;0&quot;}\" data-image-title=\"0 Physics-Based Models Outperform AI in Predicting Record-Breaking Extreme Weather\" data-image-description=\"\" data-image-caption=\"\" data-large-file=\"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?fit=723%2C485&amp;ssl=1\" src=\"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?resize=723%2C485&#038;ssl=1\" alt=\"\" class=\"wp-image-442746\" srcset=\"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?resize=1024%2C687&amp;ssl=1 1024w, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?resize=300%2C201&amp;ssl=1 300w, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?resize=768%2C516&amp;ssl=1 768w, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?resize=640%2C430&amp;ssl=1 640w, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?w=1168&amp;ssl=1 1168w\" sizes=\"auto, (max-width: 723px) 100vw, 723px\" \/><\/figure>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>Weather forecasting <\/strong>is the process of predicting atmospheric conditions (temperature, precipitation, wind, humidity, etc.) over short to medium time scales, from hours to about two weeks ahead. It has evolved dramatically from rule-of-thumb methods to highly sophisticated computer models.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">Modern forecasting relies primarily on <strong>Numerical Weather Prediction (NWP)<\/strong> \u2014 physics-based models that solve the fundamental equations of fluid dynamics, thermodynamics, and conservation laws on a global 3D grid. These models ingest vast amounts of real-time data from satellites, radars, weather stations, buoys, aircraft, and balloons.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">AI models like <strong>GraphCast<\/strong> (Google DeepMind), <strong>Pangu-Weather<\/strong>, <strong>Fuxi<\/strong>, and <strong>ECMWF AIFS<\/strong> have transformed the field:<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">They are trained on decades of reanalysis data (e.g., ERA5).<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">Extremely fast and computationally cheap (often 1,000x faster than traditional NWP).<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">They match or outperform physics models on many average metrics, especially for large-scale patterns and routine forecasts.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>Limitation:<\/strong> Pure AI models tend to underestimate <strong>record-breaking extremes<\/strong> (intense heatwaves, cold snaps, strong winds) because these events lie in the tails of the training data.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">Weather forecasting remains a blend of science, data, and human expertise. While AI has accelerated progress, the most reliable systems in 2026 integrate physics foundations with machine learning. This hybrid era is delivering faster, more accurate, and more actionable forecasts \u2014 ultimately helping save lives and property.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>A recent research confirms that physics-based (numerical weather prediction or NWP) models, such as ECMWF&#8217;s HRES, generally outperform current AI\/ML weather models for predicting record-breaking extreme weather events.<\/strong><\/p>\n\n\n\n<p class=\"wp-block-paragraph\">The May 2026 study published in Science Advances directly compared the physics-based <strong>High RESolution forecast (HRES)<\/strong> from the European Centre for Medium-Range Weather Forecasts against leading AI models (GraphCast, GraphCast operational, Pangu-Weather, Pangu-Weather operational, and Fuxi). It analyzed thousands of record-breaking heats, cold, and wind events from 2018 and 2020.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>For extremes:<\/strong> HRES showed consistently smaller forecast errors than the AI models across nearly all lead times for record-breaking events. AI models systematically underestimated the <strong>intensity and frequency <\/strong>of these extremes (the more extreme the record, the larger the underestimation).<\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>Overall\/average forecasts:<\/strong> AI models often match or exceed HRES in standard metrics (e.g., RMSE for temperature or wind) for typical conditions, and they are dramatically faster and cheaper to run.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">AI models (e.g., graph neural networks like GraphCast) are trained on historical data (often reanalysis like ERA5). They excel at interpolating common patterns but are less reliable when extrapolating to <strong>unprecedented extremes<\/strong> (&#8220;gray swans&#8221; or records far outside the training distribution). Physics-based models solve the governing equations of fluid dynamics, thermodynamics, etc., so they better handle novel conditions as long as the physics approximations hold.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">_____________________________________________________________________________________<\/p>\n\n\n\n<p class=\"has-large-font-size wp-block-paragraph\"><strong>Physics-based models outperform AI weather forecasts of record-breaking extremes<\/strong><\/p>\n\n\n\n<p class=\"wp-block-paragraph\">The recent peer-reviewed study published in Science Advances (April\/May 2026) confirms that physics-based numerical weather prediction (NWP) models, particularly ECMWF&#8217;s High RESolution forecast (HRES), consistently outperform leading AI models in forecasting <strong>record-breaking extreme weather events<\/strong>.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">Researchers analyzed thousands of record-breaking hot, cold, and high-wind events from 2018 and 2020. They compared HRES against state-of-the-art AI models including:<\/p>\n\n\n\n<ul class=\"wp-block-list\">\n<li>GraphCast (and its operational version)<\/li>\n\n\n\n<li>Pangu-Weather (operational)<\/li>\n\n\n\n<li>Fuxi<\/li>\n<\/ul>\n\n\n\n<p class=\"wp-block-paragraph\">For <strong>record-breaking extremes<\/strong>, HRES showed smaller forecast errors across nearly all lead times for temperature (heat\/cold) and wind speed records.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">AI models systematically <strong>underestimated the intensity and frequency of these extremes<\/strong>. The more extreme the record (larger deviation from past norms), the greater the underprediction, especially for hot records.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">On average\/typical conditions, AI models often match or beat HRES in standard metrics like RMSE, and they run orders of magnitude faster\/cheaper.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">AI models are trained primarily on historical reanalysis data (e.g., ERA5). They excel at interpolating common patterns but struggle with<strong> extrapolation<\/strong> to unprecedented &#8220;gray swan&#8221; or record events outside (or far in the tails of) their training distribution.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">Physics-based models solve the underlying equations of atmospheric dynamics, thermodynamics, and conservation laws. They remain more robust for novel or extreme conditions, as long as the physical approximations and resolution are adequate.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\">This study serves as a timely caution against over-relying on AI alone for critical early warnings of disasters, where underestimating record events can have severe consequences. AI weather forecasting is advancing quickly, but physics-based foundations still provide superior reliability for the most impactful extremes as of 2026.<\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>Published:<\/strong> &nbsp;<a href=\"https:\/\/phys.org\/journals\/science-advances\/\">Science Advances<\/a> Vol&nbsp;12,&nbsp;Issue&nbsp;18<br><br><strong>DOI:<\/strong> <a href=\"https:\/\/dx.doi.org\/10.1126\/sciadv.aec1433\" target=\"_blank\" rel=\"noreferrer noopener\">10.1126\/sciadv.aec1433<\/a><\/p>\n\n\n\n<p class=\"wp-block-paragraph\"><strong>Authors:<\/strong> <a href=\"https:\/\/www.science.org\/doi\/10.1126\/sciadv.aec1433#con1\">Zhongwei&nbsp;Zhang<\/a><a href=\"https:\/\/orcid.org\/0000-0002-2070-1993,&nbsp;Erich&nbsp;Fischer\">, Erich Fischer<\/a><a href=\"https:\/\/orcid.org\/0000-0003-1931-6737,&nbsp;Jakob&nbsp;Zscheischler\">, Jakob Zscheischler<\/a><a href=\"https:\/\/orcid.org\/0000-0001-6045-1629, and&nbsp;Sebastian&nbsp;Engelke\">, and Sebastian Engelke <\/a><\/p>\n\n\n\n<h2 class=\"wp-block-heading\"><strong>Abstract<\/strong><\/h2>\n\n\n\n<p class=\"wp-block-paragraph\">Artificial intelligence (AI)\u2013based models are revolutionizing weather forecasting and have surpassed leading numerical weather prediction systems on various benchmark tasks. However, their ability to extrapolate and reliably forecast unprecedented extreme events remains unclear. Here, we show that for record-breaking weather extremes, the physics-based numerical model High RESolution forecast (HRES) from the European Centre for Medium-Range Weather Forecasts still consistently outperforms state-of-the-art AI models GraphCast, GraphCast operational, Pangu-Weather, Pangu-Weather operational, and Fuxi. We demonstrate that forecast errors in AI models are consistently larger for record-breaking heat, cold, and wind than in HRES across nearly all lead times. We further find that the examined AI models tend to underestimate both the frequency and intensity of record-breaking events, and they underpredict hot records and overestimate cold records with growing errors for larger record exceedance. Our findings underscore the current limitations of AI weather models in extrapolating beyond their training domain and in forecasting the potentially most impactful record-breaking weather events that are particularly frequent in a rapidly warming climate. Further rigorous verification and model development is needed before these models can be solely relied upon for high-stakes applications such as early warning systems and disaster management.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Modern forecasting relies primarily on Numerical Weather Prediction (NWP) \u2014 physics-based models that solve the fundamental equations of fluid dynamics, thermodynamics, and conservation laws on a global 3D grid. These models ingest vast amounts of real-time data from satellites, radars, weather stations, buoys, aircraft, and balloons.<\/p>\n","protected":false},"author":121246920,"featured_media":442746,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"_coblocks_attr":"","_coblocks_dimensions":"","_coblocks_responsive_height":"","_coblocks_accordion_ie_support":"","_crdt_document":"","advanced_seo_description":"","jetpack_seo_html_title":"","jetpack_seo_noindex":false,"_jetpack_newsletter_access":"","_jetpack_dont_email_post_to_subs":false,"_jetpack_newsletter_tier_id":0,"_jetpack_memberships_contains_paywalled_content":false,"_jetpack_memberships_contains_paid_content":false,"footnotes":"","jetpack_publicize_message":"","jetpack_publicize_feature_enabled":true,"jetpack_social_post_already_shared":true,"jetpack_social_options":{"image_generator_settings":{"template":"highway","default_image_id":0,"font":"","enabled":false},"version":2},"jetpack_post_was_ever_published":false},"categories":[1],"tags":[691823433,691842805,691818514,691842808,691842806,691842807,691842804],"class_list":{"0":"post-442745","1":"post","2":"type-post","3":"status-publish","4":"format-standard","5":"has-post-thumbnail","6":"hentry","7":"category-uncategorized","8":"tag-ai-artificial-intelligence-2","9":"tag-extrapolation","10":"tag-extreme-weather","11":"tag-high-resolution-forecast-hres","12":"tag-intensity-and-frequency","13":"tag-unprecedented-extremes","14":"tag-zhongwei-zhang","16":"fallback-thumbnail"},"jetpack_publicize_connections":[],"jetpack_featured_media_url":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2026\/05\/0-Physics-Based-Models-Outperform-AI-in-Predicting-Record-Breaking-Extreme-Weather.jpg?fit=1168%2C784&ssl=1","jetpack_likes_enabled":true,"jetpack_sharing_enabled":true,"jetpack_shortlink":"https:\/\/wp.me\/paxLW1-1Rb3","jetpack-related-posts":[{"id":418046,"url":"https:\/\/climatescience.press\/?p=418046","url_meta":{"origin":442745,"position":0},"title":"NOAA deploys new generation of AI-driven global weather models\u00a0","author":"uwe.roland.gross","date":"12\/21\/2025","format":false,"excerpt":"NOAA has launched a groundbreaking new suite of operational, artificial intelligence (AI)-driven global weather prediction models, marking a significant advancement in forecast speed, efficiency, and accuracy. The models will provide forecasters with faster delivery of more accurate guidance, while using a fraction of computational resources.","rel":"","context":"In \"AIGEFS (Artificial Intelligence Global Ensemble Forecast System)\"","block_context":{"text":"AIGEFS (Artificial Intelligence Global Ensemble Forecast System)","link":"https:\/\/climatescience.press\/?tag=aigefs-artificial-intelligence-global-ensemble-forecast-system"},"img":{"alt_text":"","src":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/12\/AQO6K46xuENC17Rg4g1OXBaskwTJhHjNzIc_o6kDDOH5agHhLlIimiDaZfe0QtUtLYUfdMLbR5Grvz3XLpNGqCmlZErCwBDd2s8vHCT3eRDiMKReMBPt6C9ulMIp7t_QYAMeaHYksOr7gp5ckHWUhjQzC174DA.jpeg?fit=1200%2C1200&ssl=1&resize=350%2C200","width":350,"height":200,"srcset":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/12\/AQO6K46xuENC17Rg4g1OXBaskwTJhHjNzIc_o6kDDOH5agHhLlIimiDaZfe0QtUtLYUfdMLbR5Grvz3XLpNGqCmlZErCwBDd2s8vHCT3eRDiMKReMBPt6C9ulMIp7t_QYAMeaHYksOr7gp5ckHWUhjQzC174DA.jpeg?fit=1200%2C1200&ssl=1&resize=350%2C200 1x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/12\/AQO6K46xuENC17Rg4g1OXBaskwTJhHjNzIc_o6kDDOH5agHhLlIimiDaZfe0QtUtLYUfdMLbR5Grvz3XLpNGqCmlZErCwBDd2s8vHCT3eRDiMKReMBPt6C9ulMIp7t_QYAMeaHYksOr7gp5ckHWUhjQzC174DA.jpeg?fit=1200%2C1200&ssl=1&resize=525%2C300 1.5x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/12\/AQO6K46xuENC17Rg4g1OXBaskwTJhHjNzIc_o6kDDOH5agHhLlIimiDaZfe0QtUtLYUfdMLbR5Grvz3XLpNGqCmlZErCwBDd2s8vHCT3eRDiMKReMBPt6C9ulMIp7t_QYAMeaHYksOr7gp5ckHWUhjQzC174DA.jpeg?fit=1200%2C1200&ssl=1&resize=700%2C400 2x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/12\/AQO6K46xuENC17Rg4g1OXBaskwTJhHjNzIc_o6kDDOH5agHhLlIimiDaZfe0QtUtLYUfdMLbR5Grvz3XLpNGqCmlZErCwBDd2s8vHCT3eRDiMKReMBPt6C9ulMIp7t_QYAMeaHYksOr7gp5ckHWUhjQzC174DA.jpeg?fit=1200%2C1200&ssl=1&resize=1050%2C600 3x"},"classes":[]},{"id":293843,"url":"https:\/\/climatescience.press\/?p=293843","url_meta":{"origin":442745,"position":1},"title":"Cyclone Jasper &amp; BOM Forecasting \u2013 Getting to the Truth","author":"uwe.roland.gross","date":"01\/05\/2024","format":false,"excerpt":"For sure, it is difficult to forecast weather and climate, but the skill of new systems based on artificial intelligence (AI) show great improvement, while the Australian Bureau of Meteorology remains wedded to its General Circulation Models.","rel":"","context":"In \"Artificial Intelligence (AI)\"","block_context":{"text":"Artificial Intelligence (AI)","link":"https:\/\/climatescience.press\/?tag=artificial-intelligence-ai"},"img":{"alt_text":"","src":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/01\/0IMG_2292.jpeg?fit=1200%2C648&ssl=1&resize=350%2C200","width":350,"height":200,"srcset":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/01\/0IMG_2292.jpeg?fit=1200%2C648&ssl=1&resize=350%2C200 1x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/01\/0IMG_2292.jpeg?fit=1200%2C648&ssl=1&resize=525%2C300 1.5x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/01\/0IMG_2292.jpeg?fit=1200%2C648&ssl=1&resize=700%2C400 2x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/01\/0IMG_2292.jpeg?fit=1200%2C648&ssl=1&resize=1050%2C600 3x"},"classes":[]},{"id":371240,"url":"https:\/\/climatescience.press\/?p=371240","url_meta":{"origin":442745,"position":2},"title":"How to stop being surprised by extreme weather? Stop making it about climate.","author":"uwe.roland.gross","date":"03\/21\/2025","format":false,"excerpt":"From the\u00a0Weather is Not Climate unless we say it is\u00a0department and the University of Reading, comes this\u00a0press release\u00a0about an inane study that tries to link tree rings and severe weather, while ignoring\u00a0warning fatigue.","rel":"","context":"In \"Climate\"","block_context":{"text":"Climate","link":"https:\/\/climatescience.press\/?tag=climate"},"img":{"alt_text":"","src":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/03\/00-extreme-weather.jpeg?fit=1200%2C695&ssl=1&resize=350%2C200","width":350,"height":200,"srcset":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/03\/00-extreme-weather.jpeg?fit=1200%2C695&ssl=1&resize=350%2C200 1x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/03\/00-extreme-weather.jpeg?fit=1200%2C695&ssl=1&resize=525%2C300 1.5x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/03\/00-extreme-weather.jpeg?fit=1200%2C695&ssl=1&resize=700%2C400 2x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2025\/03\/00-extreme-weather.jpeg?fit=1200%2C695&ssl=1&resize=1050%2C600 3x"},"classes":[]},{"id":313481,"url":"https:\/\/climatescience.press\/?p=313481","url_meta":{"origin":442745,"position":3},"title":"Artificial intelligence and weather forecasting\u2026a quiet revolution is taking place in numerical weather prediction","author":"uwe.roland.gross","date":"03\/27\/2024","format":false,"excerpt":"Weather forecasts have improved in accuracy over the years with today\u2019s\u00a06-day\u00a0forecasts about as good as the\u00a03-day\u00a0forecast from 30 years ago. This improvement in overall accuracy has come about for numerous reasons one of which has to do with the much better computing power in today\u2019s world compared to three decades\u2026","rel":"","context":"In \"Artificial Intelligence\"","block_context":{"text":"Artificial Intelligence","link":"https:\/\/climatescience.press\/?tag=artificial-intelligence"},"img":{"alt_text":"","src":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/03\/01699876088723.jpeg?fit=1200%2C675&ssl=1&resize=350%2C200","width":350,"height":200,"srcset":"https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/03\/01699876088723.jpeg?fit=1200%2C675&ssl=1&resize=350%2C200 1x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/03\/01699876088723.jpeg?fit=1200%2C675&ssl=1&resize=525%2C300 1.5x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/03\/01699876088723.jpeg?fit=1200%2C675&ssl=1&resize=700%2C400 2x, https:\/\/i0.wp.com\/climatescience.press\/wp-content\/uploads\/2024\/03\/01699876088723.jpeg?fit=1200%2C675&ssl=1&resize=1050%2C600 3x"},"classes":[]},{"id":395617,"url":"https:\/\/climatescience.press\/?p=395617","url_meta":{"origin":442745,"position":4},"title":"No, Tribune, Short Term AI Weather Analysis Provides No Insight Concerning Climate Change","author":"uwe.roland.gross","date":"08\/16\/2025","format":false,"excerpt":"The Tribune News Service article, \u201cAI is fast-tracking climate research,\u201d embraces a misleading central premise. Although AI can speed up certain\u00a0weather\u00a0data processing tasks, it is unable to magically make long-term climate forecasts more accurate. 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