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Green data centers

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Green Data Center Market to Reach $146B by 2027

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The global green data center market and IT infrastructure segment are expected to grow due to the operators’ preference for cost-effective, low-OPEX infrastructures.

The green data center market size is forecast to increase by $146.95 billion between 2022 and 2027, accelerating at a CAGR of 24.63%. In 2017, the US held the largest market share, projecting an annual revenue of $14.6 billion, according to market research firm Technovia.

Trends:

The increasing electricity consumption and cost notably drive market growth.

The energy consumption of data centers is very high and could increase many times over with the growing demand for heavy applications, like streaming autonomous vehicles, and use cases enabled by 5G.

Despite technological advancements data center operators still face challenges in developing strategies to enhance their operations, energy efficiency, and promote sustainability.

In certain places, the local and federal governments have raised the cost of commercial and industrial electricity due to the cumulative power consumption of data centers. As a result of increased electricity costs in the world’s largest data center, cities have raised awareness of the need to operate green. Rising electricity costs and consumption are expected to propel the expansion of the global green data center market, Technovia said.

Strategic partnerships and investments are driving growth in the data center power solutions market. Companies like Eaton and Lubrizol are collaborating to develop sustainable solutions, generating revenue and increasing demand for data center power solutions.

Tech-enabled:

The market’s dominant segment is IT infrastructure.

In recent years, virtualization has played a major role in facilitating the growing use of IT infrastructure in data centers. Energy-efficient infrastructures, also known as density-optimized infrastructures in the market, are provided by vendors in the IT infrastructure space. These include Dell, HPE, Cisco, Huawei, Lenovo, and IBM. Vendors will keep coming up with innovative ways to provide infrastructure that is more capable while using less energy throughout the projection period, which will help run green data center environments.

Data center consolidation, Infrastructure-as-a-service (Iaas), and virtualization are some technologies that can boost green data centers. These technologies reduce operational costs and could lead to significant electricity cost reductions.


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Technology, Open source, Climate change, IBM, NASA

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How are IBM and NASA leveraging AI to fight climate change?

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IBM that had developed AI-based geospatial foundation model from NASA’s satellite model has decided to share the code on open-source AI platform, Hugging Face.

The initiative is an effort from both: IBM and NASA to widen access to NASA’s earth science data for geospatial intelligence and accelerate climate-related discoveries and innovations in Earth science.

It must be noted that early 2023, IBM and NASA collaborated for a project to build an AI model to understand and clearly how Earth’s landscape, and speed up the analysis of satellite images and boost scientific discovery. Another motivator was the desire to make nearly 250,000 terabytes of NASA mission data accessible to more people.

Access to the latest data remains a significant challenge in climate science where environmental conditions change almost daily. And, despite growing amounts of data — estimates from NASA suggest that by 2024, scientists will have 250,000 terabytes of data from new missions — scientists and researchers still face obstacles in analyzing these large datasets, IBM said in a press release.

The project coincides with NASA’s Year of Open Science, a series of events to promote data and AI model sharing. It’s also part of NASA’s decade-long Open-Source Science Initiative to build a more accessible, inclusive, and collaborative scientific community.

Sriram Raghavan, Vice President, IBM Research AI, said, “By combining IBM’s foundation model efforts aimed at creating flexible, reusable AI systems with NASA’s repository of Earth-satellite data, and making it available on the leading open-source AI platform, Hugging Face, we can leverage the power of collaboration to implement faster and more impactful solutions that will improve our planet.”

“AI foundation models for Earth observations present enormous potential to address intricate scientific problems and expedite the broader deployment of AI across diverse applications,” IBM quoted Rahul Ramachandran, IMPACT Manager and a senior research scientist at Marshall, in a company blog. “We call on the Earth science and applications communities to evaluate this initial HLS foundation model for a variety of uses and share feedback.”

“We believe that foundation models have the potential to change the way observational data is analyzed and help us to better understand our planet,” said Kevin Murphy, Chief Science Data Officer, NASA. “And by open sourcing such models and making them available to the world, we hope to multiply their impact.”

The model – trained jointly by IBM and NASA on Harmonized Landsat Sentinel-2 satellite data (HLS) over one year across the continental United States and fine-tuned on labeled data for flood and burn scar mapping — has demonstrated to date a 15 percent improvement over state-of-the-art techniques using half as much labeled data. With additional fine tuning, the base model can be redeployed for tasks like tracking deforestation, predicting crop yields, or detecting and monitoring greenhouse gasses. IBM and NASA researchers are also working with Clark University to adapt the model for applications such as time-series segmentation and similarity research, IBM said in a blog.


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Technology, Cloud Computing, Carbon emissions, Sustainability

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CXOs can now track GHG emissions with new IBM tool

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IBM has launched a new tool to help enterprises track greenhouse gas (GHG) emissions across cloud services

The tool:
Now generally available, the AI-informed tool is designed to give clients access to standards-based greenhouse gas emissions data and help manage cloud carbon footprint across IBM cloud workloads.

A result of collaboration between IBM Research and Intel—the tool uses machine learning and advanced algorithms to help organizations identify emissions hot spots in their IT workload and provide insights for emissions mitigation strategy.

Key features:
Emission tracking: Customers can use filters to see and track GHG emissions associated with individual cloud services and locations, in accordance with the Greenhouse Gas Protocol.

Identifying GHG emissions hot-spots: Through monthly/quarterly or annual access to emission trends and patterns, customers can optimize workloads across locations to reduce emissions.

Leverage data for GHG emission reports: Clients can access the output and audit trails to help meet their reporting needs. The data can be integrated with IBM Envizi ESG suite3 for further analysis and reporting.

CEO perspective:
A recent market study by IBM highlights some key points:
1. 42% of CEOs said environmental sustainability is their top challenge over the next three years.
2. Organizations must balance high-performance workloads with sustainability, as 43% of CEOs use generative AI for strategic decision-making.

GM states:
“As part of any AI transformation roadmap, businesses must consider how to manage the growth of data across cloud and on-premise environments. This is especially critical today as we see organizations face increasing pressure from investors, regulators, and clients to reduce their carbon emissions,” said Alan Peacock, General Manager, IBM Cloud.


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