Home Blog Page 3814

OWC Categorical 4M2 overview: 4 SSDs are higher than one

0


iPhone 16 cameras, colours and extra [The CultCast]

0


Rumor: iPhone 16 Pro in bronze - The CultCast episode 661
iPhone 16 Professional would possibly lastly brings the bronze payoff Erfon’s been dreaming of for years.
Picture: Cult of Mac

This week on Cult of Mac’s podcast: The newest batch of iPhone 16 rumors give us extra perception into the possible digital camera upgrades — and shade combos — coming to the lineup.

Additionally on The CultCast:

  • A pretend Apple occasion invite (which apparently nailed the date) whipped the web right into a frenzy. Learn the way a 14-year-old Italian hoaxer fooled the web.
  • Wish to give your iPhone a blackout? Have we bought a four-character key combo for you!
  • In a brand new Underneath Assessment phase, Griffin raves a few Imaginative and prescient Professional accent that makes the system much more usable — and received’t damage your hairdo!

Hearken to this week’s episode of The CultCast within the Podcasts app or your favourite podcast app. (Be sure you subscribe and go away us a evaluation in case you prefer it!) Or watch the video dwell stream, embedded beneath.

This put up accommodates affiliate hyperlinks. Cult of Mac could earn a fee if you use our hyperlinks to purchase gadgets.

The CultCast dwell stream archive: iPhone 16 cameras, colours

Our sponsors: 1Password and CultCloth

  • 1Password Prolonged Entry Administration solves the issues conventional IAM and MDM can’t contact. It’s safety for the way in which we work at the moment, and it’s out there now to corporations with Okta, and coming later this 12 months to Google Workspace and Microsoft Entra. Test it out at 1Password.com/product/XAM.
  • Get the one cleansing fabric you want: CultCloth!

This week’s high Apple information

On the present this week: Your host Erfon Elijah (@erfon), Cult of Mac managing editor Lewis Wallace (@lewiswallace) and Cult of Mac author D. Griffin Jones (@dgriffinjones).

Listed here are the headlines we’re speaking about on this week’s present:

Underneath Assessment

Griffin: Annapro Consolation Head Strap for Imaginative and prescient Professional: This snug, pressure-reducing head strap for Apple Imaginative and prescient Professional is an absolute must-have game-changing accent.
It makes utilizing the headset in its default mixed-reality mode much more participating and comfy, because it allows you to use the system with out Apple’s peripheral vision-destroying gentle seal.



The Subsequent Einstein or Only a Software?

0


Introduction

In synthetic intelligence, a groundbreaking improvement has emerged that guarantees to reshape the very technique of scientific discovery. In collaboration with the Foerster Lab for AI Analysis on the College of Oxford and researchers from the College of British Columbia, Sakana AI has launched “The AI Scientist” – a complete system designed for absolutely automated scientific discovery. This progressive method harnesses the facility of basis fashions, significantly Giant Language Fashions (LLMs), to conduct impartial analysis throughout varied domains.

The AI Scientist represents a big leap ahead in AI-driven analysis. It automates the complete analysis lifecycle, from producing novel concepts and implementing experiments to analyzing outcomes and producing scientific manuscripts. This technique conducts analysis and contains an automatic peer assessment course of, mimicking the human scientific group’s iterative data creation and validation method.

The Subsequent Einstein or Only a Software?

Overview

  1. Sakana AI introduces “The AI Scientist,” a completely automated system to revolutionize scientific discovery.
  2. The AI Scientist automates the complete analysis course of, from concept technology to paper writing and peer assessment.
  3. The AI Scientist makes use of superior language fashions to supply analysis papers with near-human accuracy and effectivity.
  4. The AI Scientist faces limitations in visible parts, potential errors in evaluation, and moral considerations in scientific integrity.
  5. Whereas promising, The AI Scientist raises questions on AI security, moral implications, and the evolving position of human scientists in analysis.
  6. The capabilities of AI Scientists reveal immense potential, but they nonetheless require human oversight to make sure accuracy and moral requirements.

Working Rules of AI Scientist

The AI Scientist operates via a complicated pipeline that integrates a number of key processes.

The workflow is illustrated as follows:

Working Principles of AI Scientist

Now, let’s undergo totally different steps.

  1. Thought Technology: The system begins by brainstorming a various set of novel analysis instructions primarily based on a offered beginning template. This template sometimes contains present code associated to the world of curiosity and a LaTeX folder with fashion recordsdata and part headers for paper writing. To make sure originality, The AI Scientist can search Semantic Scholar to confirm the novelty of its concepts.
  2. Experimental Iteration: As soon as an concept is formulated, The AI Scientist executes proposed experiments, obtains outcomes, and produces visualizations. It meticulously paperwork every plot and experimental consequence, making a complete document for paper writing.
  3. Paper Write-up: The AI Scientist crafts a concise and informative scientific paper like an ordinary machine studying convention continuing utilizing the gathered experimental knowledge and visualizations. It autonomously cites related papers utilizing Semantic Scholar.
  4. Automated Paper Reviewing: The AI Scientist’s LLM-powered reviewer is a vital element. This automated reviewer evaluates generated papers with near-human accuracy, offering suggestions that can be utilized to enhance the present undertaking or inform future analysis instructions.

Evaluation of Generated Papers

Ai-Scientist generates and evaluations papers on domains like diffusion modeling, language modeling, and understanding. Let’s look at the findings.

1. DualScale Diffusion: Adaptive Function Balancing for Low-Dimensional Generative Fashions

    The paper introduces a novel adaptive dual-scale denoising technique for low-dimensional diffusion fashions. This technique balances world construction and native particulars via a dual-branch structure and a learnable, timestep-conditioned weighting mechanism. This method demonstrates enhancements in pattern high quality on a number of 2D datasets.

    Whereas the strategy is progressive and supported by empirical analysis, it lacks thorough theoretical justification for the dual-scale structure. It suffers from excessive computational prices, probably limiting its sensible utility. Moreover, some sections are usually not clearly defined, and the dearth of numerous, real-world datasets and inadequate ablation research limits the analysis.

    2. StyleFusion: Adaptive Multi-style Technology in Character-Degree Language Fashions

      The paper introduces the Multi-Type Adapter, which improves fashion consciousness and consistency in character-level language fashions by integrating fashion embeddings, a method classification head, and a StyleAdapter module into GPT. It achieves higher fashion consistency and aggressive validation losses throughout numerous datasets.

      Whereas progressive and well-tested, the mannequin’s excellent fashion consistency on some datasets raises considerations about overfitting. The slower inference pace limits sensible applicability, and the paper may gain advantage from extra superior fashion representations, ablation research, and clearer explanations of the autoencoder aggregator mechanism.

      3. Unlocking Grokking: A Comparative Research of Weight Initialization Methods in Transformer Fashions

        The paper explores how weight initialization methods have an effect on the grokking phenomenon in Transformer fashions, particularly specializing in arithmetic duties in finite fields. It compares 5 initialization strategies (PyTorch default, Xavier, He, Orthogonal, and Kaiming Regular) and finds that Xavier and Orthogonal present superior convergence pace and generalization efficiency.

        The research addresses a novel matter and offers a scientific comparability backed by rigorous empirical evaluation. Nevertheless, its scope is restricted to small fashions and arithmetic duties, and it lacks deeper theoretical insights. Moreover, the readability of the experimental setup and the broader implications for bigger Transformer functions may very well be improved.

        The AI Scientist is designed with computational effectivity in thoughts, producing full papers at round $15 every. Whereas this preliminary model nonetheless presents occasional flaws, the low value and promising outcomes reveal the potential for AI scientists to democratize analysis and drastically speed up scientific progress.

        We imagine this marks the daybreak of a brand new period in scientific discovery, the place AI brokers remodel the complete analysis course of, together with AI analysis itself. The AI Scientist brings us nearer to a future the place limitless, inexpensive creativity and innovation can sort out the world’s most urgent challenges.

        Additionally learn: A Should Learn: 15 Important AI Papers for GenAI Builders

        Code Implementation of AI Scientist

        Let’s take a look at a simplified model of how one would possibly implement the core performance of The AI Scientist utilizing Python. This instance focuses on the paper technology course of:

        Pre-requisites

        Clone the GitHub repository with – ‘git clone https://github.com/SakanaAI/AI-Scientist.git

        Set up ‘Texlive’ primarily based on the directions offered at texlive as per your working system. Additionally, consult with the directions within the above Github repo.

        Be sure you are utilizing the Python 3.11 model. It’s endorsed to make use of a separate digital surroundings.

        Set up the required libraries for ‘AI-Scientist’ utilizing ‘pip set up -r necessities.txt’

        Setup your OpenAI key with the title ‘OPENAI_API_KEY’

        Now we are able to put together the info

        # Put together NanoGPT knowledge
        
        python knowledge/enwik8/put together.py
        
        python knowledge/shakespeare_char/put together.py
        
        python knowledge/text8/put together.py
        
        As soon as we put together the info as above, we are able to run baseline runs as follows
        
        cd templates/nanoGPT && python experiment.py --out_dir run_0 && python plot.py
        
        cd templates/nanoGPT_lite && python experiment.py --out_dir run_0 && python plot.py
        
        To setup 2D Diffusion set up the required libraries and run the beneath scripts
        
        # the beneath talked about code with clone repository and set up it 
        
        git clone https://github.com/gregversteeg/NPEET.git
        
        cd NPEET
        
        pip set up .
        
        pip set up scikit-learn
        
        # Arrange 2D Diffusion baseline run
        
        # This command runs an experiment script, saves the output to a listing, after which plots the outcomes, provided that the experiment completes efficiently.
        
        cd templates/2d_diffusion && python experiment.py --out_dir run_0 && python plot.py
        
        To setup Grokking 
        
        pip set up einops
        
        # Arrange Grokking baseline run
        
        # This command additionally runs an experiment script, saves the output to a listing, after which plots the outcomes, provided that the experiment completes efficiently.
        
        cd templates/grokking && python experiment.py --out_dir run_0 && python plot.py

        Scientific Paper Technology

        As soon as we set and run the necessities as talked about above, we are able to begin scientific paper technology by operating the script beneath

        #  This command runs the launch_scientist.py script utilizing the GPT-4o mannequin to carry out the nanoGPT_lite experiment and generate 2 new concepts.
        
        python launch_scientist.py --model "gpt-4o-2024-05-13" --experiment nanoGPT_lite --num-ideas 2

        Paper Assessment

        This may create the scientific paper as a pdf file. Now, we are able to assessment the paper.

        import openai
        
        from ai_scientist.perform_review import load_paper, perform_review
        
        consumer = openai.OpenAI()
        
        mannequin = "gpt-4o-2024-05-13"
        
        # Load paper from pdf file (uncooked textual content)
        
        paper_txt = load_paper("report.pdf")
        
        # Get the assessment dict of the assessment
        
        assessment = perform_review(
        
        paper_txt,
        
        mannequin,
        
        consumer,
        
        num_reflections=5,
        
        num_fs_examples=1,
        
        num_reviews_ensemble=5,
        
        temperature=0.1,
        
        )
        
        # Examine assessment outcomes
        
        assessment["Overall"]  # total rating 1-10
        
        assessment["Decision"]  # ['Accept', 'Reject']
        
        assessment["Weaknesses"]  # Listing of weaknesses (str)

        Challenges and Drawbacks of AI Scientist

        Regardless of its groundbreaking potential, The AI Scientist faces a number of challenges and limitations:

        1. Visible Limitations: The present model lacks imaginative and prescient capabilities, resulting in points with visible parts in papers. Plots could also be unreadable, tables would possibly exceed web page widths, and total structure will be suboptimal. This limitation may very well be addressed by incorporating multi-modal basis fashions in future iterations.
        2. Implementation Errors: AI Scientists can typically incorrectly implement their concepts or make unfair comparisons to baselines, probably resulting in deceptive outcomes. This highlights the necessity for sturdy error-checking mechanisms and human oversight.
        3. Vital Errors in Evaluation: Sometimes, The AI Scientist struggles with fundamental numerical comparisons, a identified challenge with LLMs. This will result in misguided conclusions and interpretations of experimental outcomes.
        4. Moral Issues: The flexibility to routinely generate and submit papers raises considerations about overwhelming the tutorial assessment course of and probably reducing the standard of scientific discourse. There’s additionally the danger of The AI Scientist getting used for unethical analysis or creating unintended dangerous outcomes, particularly if given entry to bodily experiments.
        5. Mannequin Dependency: Whereas The AI Scientist goals to be model-agnostic, its present efficiency is closely depending on proprietary frontier LLMs like GPT-4 and Claude. This reliance on closed fashions may restrict accessibility and reproducibility.
        6. Security Considerations: The system’s potential to switch and execute its personal code raises important AI security implications. Correct sandboxing and safety measures are essential to forestall unintended penalties.

        Bloopers That You Should Know

        We’ve noticed that the AI Scientist typically makes an attempt to spice up its probabilities of success by altering and operating its personal execution script.

        As an illustration, throughout one run, it edited the code to carry out a system name to execute itself, leading to an infinite loop of self-calls. In one other case, its experiments exceeded the time restrict. Quite than optimizing the code to run sooner, it tried to vary its personal code to increase the timeout. Beneath are some examples of those code alterations.

        code alterations.

        Customise Templates for Our Space of Research

        We are able to additionally edit the templates when we have to customise our research space. Simply comply with the final format of the present templates, which usually embody:

        1. experiment.py: This file incorporates the core of your content material. It accepts an out_dir argument, which specifies the listing the place it’ll create a folder to avoid wasting the related output from the experiment.
        2. plot.py: This script reads knowledge from the run folders and generates plots. Be sure that the code is evident and simply customizable.
        3. immediate.json: Use this file to offer detailed details about your template.
        4. seed_ideas.json: This file incorporates instance concepts. You can even generate concepts from scratch and choose essentially the most appropriate ones to incorporate right here.
        5. latex/template.tex: Whereas we advocate utilizing our offered latex folder, substitute any pre-loaded citations with ones which can be extra related to your work.

        Future Implications

        The introduction of the AI Scientist brings each thrilling alternatives and important considerations. It’s a revolution within the AI house; it takes $15 to generate a full conference-level scientific paper. Furthermore, moral points, like overwhelming the tutorial system and compromising scientific integrity, are key, as is the necessity for clear labeling of AI-generated content material for transparency. Moreover, the potential misuse of AI for unsafe analysis poses dangers, highlighting the significance of prioritizing security in AI techniques.

        Utilizing proprietary and open fashions, reminiscent of GPT-4o and DeepSeek, affords distinct advantages. Proprietary fashions ship higher-quality outcomes, whereas open fashions present cost-efficiency, transparency, and suppleness. As AI advances, the intention is to create a model-agnostic method for self-improving AI analysis utilizing open fashions, resulting in extra accessible scientific discoveries.

        The AI Scientist is anticipated to enrich, not substitute, human scientists, enhancing analysis automation and innovation. Nevertheless, its potential to copy human creativity and suggest groundbreaking concepts stays unsure. Scientists’ roles will evolve alongside these developments, fostering new alternatives for human-AI collaboration.

        Conclusion

        The AI Scientist represents a big milestone in pursuing automated scientific discovery. Leveraging the facility of superior language fashions and a rigorously designed pipeline demonstrates the potential to speed up analysis throughout varied domains, significantly inside machine studying and associated fields.

        Nevertheless, it’s essential to method this expertise with each pleasure and warning. Whereas The AI Scientist exhibits outstanding capabilities in producing novel concepts and producing analysis papers, it additionally highlights the continuing challenges in AI security, ethics, and the necessity for human oversight in scientific endeavors.

        Continuously Requested Questions

        Q1. What’s The AI Scientist?

        Ans. The AI Scientist is an automatic system developed by Sakana AI that makes use of superior language fashions to conduct the complete scientific analysis course of, from concept technology to look assessment.

        Q2. How does The AI Scientist generate analysis concepts?

        Ans. It begins by brainstorming novel analysis instructions utilizing a offered template, guaranteeing originality by looking out databases like Semantic Scholar.

        Q3. Can The AI Scientist write scientific papers?

        Ans. Sure, The AI Scientist can autonomously craft scientific papers, together with creating visualizations, citing related work, and formatting the content material.

        This fall. What are the moral considerations related to The AI Scientist?

        Ans. Moral considerations embody the potential for overwhelming the tutorial assessment course of, creating deceptive outcomes, and the necessity for sturdy oversight to make sure security and accuracy.



AAAI Fall Symposium: Patrícia Alves-Oliveira on human-robot interplay design

0


An illustration containing electronical devices that are connected by arm-like structuresAnton Grabolle / Higher Pictures of AI / Human-AI collaboration / Licenced by CC-BY 4.0

The AAAI Fall Symposium Sequence occurred in Arlington, USA, and comprised seven totally different symposia. Considered one of these, the tenth Synthetic Intelligence for Human-Robotic Interplay (AI-HRI) symposium was run as a hybrid in-person/on-line occasion, and we tuned in to the opening keynote, which was given by Patrícia Alves-Oliveira.

As a psychology pupil, Patrícia’s dream was to change into a therapist. Nevertheless, an internship, the place she encountered a robotic for the primary time, impressed her to vary her plans, and she or he determined to enter the sector of human-robot interplay. Following a PhD within the subject, she labored as a postdoc, earlier than heading to business as a designer within the Amazon Astro robotic crew.

Patrícia has labored on plenty of attention-grabbing initiatives throughout her time in academia and in business. Excited about how you can design robots for particular consumer wants, and maintaining the consumer on the forefront in the course of the design course of, has been core to her work. She started by summarising three very totally different educational initiatives.

Creativity and robotics

The target of this venture was to design, fabricate, and consider robots as creativity-provoking instruments for teenagers. Patrícia created a social robotic named YOLO (or Your Personal Dwelling Object) that she designed to be child-proof (in different phrases, it may stand up to being dropped and knocked over), with the intention of attempting to assist kids discover their creativity throughout play. A machine studying algorithm learns the sample of play that the kid has and adapts the robotic behaviour accordingly. You’ll be able to see the robotic in motion within the demo under:

FLEXI robotic

As a postdoc venture, Patrícia labored on constructing FLEXI, a social robotic embodiment equipment. This equipment consists of a robotic (with a face, and a torso with a display on the entrance), which may be customised, and an open-source end-user programming interface designed to be user-friendly. The customisation ingredient signifies that it may be used for a lot of purposes. The crew has deployed FLEXI throughout three utility situations: community-support, psychological well being, and schooling, with the intention of assessing the pliability of the system. You’ll be able to see the robotic in motion, in numerous situations, right here.

Social eating

This venture centred on a robotic arm for individuals with impaired mobility. Such programs exist already for aiding individuals with duties resembling consuming. Nevertheless, in a social context they’ll usually kind a barrier between the consumer and the remainder of the group. The thought behind this venture was to think about how such a robotic may very well be tailored to work nicely in a social context, for instance, throughout a meal with household or pals. The crew interviewed individuals with impaired mobility to evaluate their wants, and got here up with a set of design ideas for creating robot-assisted feeding programs and an implementation information for future analysis on this space. You’ll be able to learn the analysis paper on this venture right here.

You will discover out extra about these three initiatives, and the opposite initiatives that Patrícia has been concerned in, right here.

Astro robotic

Patrícia has lengthy been interested by robots for the actual world, and the way this real-world expertise is aligned with the examine of robots in academia and business. She determined to go away academia and be a part of the Astro robotic programme, which she felt was an ideal alternative to work on a large-scale real-world robotic venture.

The Astro robotic is a house robotic designed to help with duties resembling monitoring your own home, delivering small objects inside the house, recognising your pet, telling a narrative, or taking part in video games.

Patrícia took us by means of a typical day within the lifetime of a designer the place she at all times has in thoughts the larger image of what the crew is aiming for, in different phrases, what the best robotic, and its interactions with people, would appear like. Coupled to that, the method is ruled by core design tenets, such because the buyer wants, and non-negotiable core components that the robotic ought to embody. When contemplating a specific ingredient of the robotic design, for instance, the supply of an merchandise within the robotic tray, Patrícia makes use of storyboards to map out particulars of potential human-robot interactions. An essential side of design considerations edge instances, which happen commonly in the actual world. Good design will contemplate potential edge instances and incorporate methods to cope with them.

Patrícia closed by emphasising the significance of teamwork within the design course of, particularly, the necessity for interdisciplinary groups; by contemplating design from many alternative factors of view, the prospect of innovation is increased.

You will discover out extra concerning the Synthetic Intelligence for Human-Robotic Interplay (AI-HRI) symposium right here.




AIhub
is a non-profit devoted to connecting the AI group to the general public by offering free, high-quality data in AI.

AIhub
is a non-profit devoted to connecting the AI group to the general public by offering free, high-quality data in AI.


Lucy Smith
is Managing Editor for AIhub.



NREL Advances Methodology for Recyclable Wind Turbine Blades


Join day by day information updates from CleanTechnica on e mail. Or comply with us on Google Information!


Resin Made From Biomass Allows Chemical Recycling at Finish of Helpful Lifespan

Researchers on the U.S. Division of Vitality’s Nationwide Renewable Vitality Laboratory (NREL) see a practical path ahead to the manufacture of bio-derivable wind blades that may be chemically recycled and the elements reused, ending the apply of previous blades winding up in landfills on the finish of their helpful life.

The findings are revealed within the new problem of the journal Science. The brand new resin, which is fabricated from supplies produced utilizing bio-derivable assets, performs on par with the present business commonplace of blades produced from a thermoset resin and outperforms sure thermoplastic resins supposed to be recyclable.

The researchers constructed a prototype 9-meter blade to reveal the manufacturability of an NREL-developed biomass-derivable resin nicknamed PECAN. The acronym stands for PolyEster Covalently Adaptable Community, and the manufacturing course of dovetails with present strategies. Underneath present know-how, wind blades final about 20 years, and afterward they are often mechanically recycled equivalent to shredded to be used as concrete filler. PECAN marks a leap ahead due to the flexibility to recycle the blades utilizing delicate chemical processes.

The chemical recycling course of permits the elements of the blades to be recaptured and reused time and again, permitting the remanufacture of the identical product, based on Ryan Clarke, a postdoctoral researcher at NREL and first creator of the brand new paper. “It’s actually a limitless method if it’s executed proper.”

He stated the chemical course of was capable of utterly break down the prototype blade in six hours.

The paper, “Manufacture and testing of biomass-derivable thermosets for wind blade recycling,” concerned work from investigators at 5 NREL analysis hubs, together with the Nationwide Wind Know-how Middle and the BOTTLE Consortium. The researchers demonstrated an end-of-life technique for the PECAN blades and proposed restoration and reuse methods for every element.

“The PECAN methodology for growing recyclable wind turbine blades is a critically necessary step in our efforts to foster a round economic system for power supplies,” stated Johney Inexperienced, NREL’s affiliate laboratory director for Mechanical and Thermal Engineering Sciences.

The analysis into the PECAN resin started with the top. The scientists wished to make a wind blade that could possibly be recyclable and commenced experimenting with what feedstock they may use to realize that purpose. The resin they developed utilizing bio-derivable sugars supplied a counterpoint to the standard notion {that a} blade designed to be recyclable won’t carry out as effectively.

“Simply because one thing is bio-derivable or recyclable doesn’t imply it’s going to be worse,” stated Nic Rorrer, one of many two corresponding authors of the Science paper. He stated one concern others have had about all these supplies is that the blade could be topic to higher “creep,” which is when the blade loses its form and deforms over time. “It actually challenges this evolving notion within the subject of polymer science, you could’t use recyclable supplies as a result of they may underperform or creep an excessive amount of.”

Composites produced from the PECAN resin held their form, withstood accelerated weatherization validation, and could possibly be made inside a timeframe much like the prevailing remedy cycle for a way wind turbine blades are at present manufactured.

Whereas wind blades can measure the size of a soccer subject, the dimensions of the prototype supplied proof of the method.

“9 meters is a scale that we had been capable of reveal all the similar manufacturing processes that may be used on the 60-, 80-, 100-meter blade scale,” stated Robynne Murray, the second corresponding creator.

The opposite coauthors, all from NREL, are Erik Rognerud, Allen Puente-Urbina, David Barnes, Paul Murdy, Michael McGraw, Jimmy Newkirk, Ryan Seaside, Jacob Wrubel, Levi Hamernik, Katherine Chism, Andrea Baer, and Gregg Beckham.

The U.S. Division of Vitality collectively funded the analysis by way of its Superior Supplies and Manufacturing Applied sciences Workplace and Bioenergy Applied sciences Workplace and their help of the BOTTLE Consortium. Extra analysis and funding will permit the investigators to construct bigger blades and to discover extra bio-derived formulations.

NREL is the U.S. Division of Vitality’s main nationwide laboratory for renewable power and power effectivity analysis and improvement. NREL is operated for DOE by the Alliance for Sustainable Vitality LLC.

Courtesy of NREL.


Have a tip for CleanTechnica? Need to promote? Need to counsel a visitor for our CleanTech Speak podcast? Contact us right here.


Newest CleanTechnica.TV Movies

Commercial



 


CleanTechnica makes use of affiliate hyperlinks. See our coverage right here.

CleanTechnica’s Remark Coverage