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WWW.BEHANCE.NETFragments of LightFragments of Light is a series of abstract photos by Rus Khasanov in which light becomes a central metaphor for memory and transformation. The project emerges at the intersection of digital and analog, chaos and control, matter and ephemerality.0 Kommentare 0 Anteile 84 Ansichten
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WWW.GADGETS360.COMNothing Phone 3 Launch Timeline Revealed by CEO Carl PeiNothing Phone 3 will be launched in the coming months, according to the founder and CEO of the UK-based technology firm. The successor to the Nothing Phone 2 from 2023 was previously expected to arrive last year, while the company launched the mid-range Phone 2a and Phone 2a Plus models. Like its predecessor, the company's next high-end phone is expected to feature a transparent rear panel with Glyph lighting. The upcoming phone is also expected to arrive with some AI-powered features.Nothing Phone 3 Launch TimelineThe Nothing Phone 3 launch timeline was announced by Nothing CEO Carl Pei in response to a question from a user on X (formerly Twitter) on Friday, during a 10-minute ask me anything (AMA) session. The Nothing Phone 3 will be launched in Q3 2025, which means that we can expect it to arrive between July and September.That launch window aligns with the arrival of the company's previous smartphones. The Nothing Phone 2 arrived on July 11. 2023, while the first-generation Nothing Phone 1 went on sale on July 21, 2022. The UK firm was rumoured to launch the Nothing Phone 3 last year, but was delayed as Pei said the company was focusing on personalised AI.We don't know much about the Nothing Phone 3, as the smartphone's specifications are yet to surface online. It's predecessor, the Nothing Phone 2, is equipped with a Snapdragon 8+ Gen 1 chip along with up to 12GB of RAM and up to 512GB of storage. The handset sports a 6.7-inch LTPO AMOLED screen with a 120Hz refresh rate. The Nothing Phone 2 features a dual rear camera setup that comprises a 50-megapixel primary camera and a 50-megapixel ultrawide camera. It has a 32-megapixel selfie camera. The handset packs a 4,700mAh battery that supports 47W wired and 15W wireless charging.0 Kommentare 0 Anteile 81 Ansichten
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MEDIUM.COMPersonalized AI Research Assistant: Let AI Read & Explain Research Papers for You🧠 Personalized AI Research Assistant: Let AI Read & Explain Research Papers for You12 min read·Just now--Imagine never having to struggle through 20-page academic papers again. What if you had an AI assistant that could read, summarize, and answer your questions — instantly?In today’s world of information overload, the ability to process academic research quickly and effectively is more valuable than ever. As part of my Kaggle Capstone Project, I created the Personalized AI Research Assistant, a smart tool designed to help users interact with research papers effortlessly.Whether you’re a student, researcher, or just someone curious about AI, this project brings together the power of LLMs (Large Language Models), semantic search, and PDF parsing to deliver concise answers from complex papers — just like a personal research buddy.🔍 Problem StatementReading academic papers can be overwhelming. They’re often long, filled with domain-specific jargon, and not beginner-friendly. Manually summarizing and understanding their content takes hours.So I asked myself:Can I build an AI that reads and explains research papers — just like a human assistant would?The rapid growth of academic literature and the increasing complexity of research processes pose significant challenges for researchers, students, and interdisciplinary scholars. These challenges include:Inefficient Literature Discovery: Traditional keyword-based search methods often fail to identify contextually relevant papers, missing nuanced or semantically related content. Navigating multiple academic databases (e.g., Semantic Scholar, arXiv) is time-consuming and fragmented, hindering comprehensive literature reviews.Labor-Intensive Paper Analysis: Manually summarizing, evaluating, and extracting insights from research papers is a resource-intensive task. Researchers struggle to quickly assess a paper’s relevance, quality, or methodological rigor, particularly when dealing with large volumes of literature.Difficulty in Refining Manuscripts: Identifying weaknesses in research drafts, such as unclear problem statements, weak methodologies, or poorly structured conclusions, requires significant expertise. Improving grammar, academic style, and technical depth is challenging, especially for novice researchers or non-native English speakersKeeping Up with Trends and Methods: Staying informed about current trends, emerging methodologies, and relevant models in a field is daunting, particularly for interdisciplinary researchers or those entering new domains. This knowledge gap limits the ability to align research with cutting-edge developments.These challenges create bottlenecks in the research process, reducing efficiency and accessibility for diverse users. The Personalized AI Research Assistant addresses these issues by leveraging Retrieval-Augmented Generation (RAG), generative AI (Google Gemini), and advanced text analysis to deliver an integrated solution. By automating literature discovery, paper analysis, manuscript refinement, and trend identification, the project streamlines the research workflow, empowers users to produce high-quality work, and fosters inclusivity across academic levels and disciplines.Introducing the Personalized AI Research Assistant — a smart, dual-phased tool designed to help you search, understand, analyze,rewrite & Visualize sections of academic papers using RAG (Retrieval-Augmented Generation), FAISS, and Google Gemini.InnovationsRAG-Powered Search: Uses FAISS and Gemini embeddings to retrieve and rank papers from multiple databases, generating context-aware summaries and explanations.Comprehensive PDF Analysis: Extracts sections, summarizes content, scores quality, and visualizes insights (word clouds, sentiment, readability).AI Agentic-Driven Rewriting: Rewrites sections to enhance academic style, a novel feature for draft improvement.Graphical Insights: Visualizes section lengths, sentiment, and readability, aiding manuscript evaluation.Interactive Q&A with RAG: Retrieves relevant chunks for uploaded papers and papers for external queries, generating tailored responses.Beginner-Friendly Design: Simplifies complex concepts and recommends accessible papers, supporting students and interdisciplinary scholars.Use CaseThe Personalized AI Research Assistant is a versatile tool designed to streamline academic research and manuscript preparation for a wide range of users, including students, researchers, professors, and interdisciplinary scholars. By leveraging Retrieval-Augmented Generation (RAG), generative AI (Google Gemini), and advanced text analysis, the assistant addresses diverse research needs through targeted functionalities. Below are the primary use cases for each user group:Students:Simplifying Literature Reviews: Students can input research topics to retrieve and rank relevant papers from multiple databases (e.g., Semantic Scholar, arXiv), with AI-generated summaries and beginner-friendly explanations, reducing the complexity of navigating academic literature.Understanding Papers: The assistant provides structured summaries and answers specific questions about uploaded papers, helping students grasp key concepts, methodologies, and findings.Improving Drafts: Students can upload their manuscripts to receive section-specific analyses, quality scores, and AI-rewritten sections, enhancing clarity, academic style, and technical depth for assignments or theses.2.Researchers:Discovering Papers: Researchers can explore cutting-edge literature by querying the assistant, which uses RAG to retrieve semantically relevant papers and highlight their relevance, saving time in literature searches.Analyzing Trends: The interactive Q&A mode identifies current trends and commonly used methods/models in a field, enabling researchers to align their work with the latest advancements.Refining Manuscripts: By analyzing uploaded papers, scoring quality (e.g., clarity, rigor), and rewriting sections, the assistant helps researchers polish drafts for publication, addressing weaknesses like unclear methodologies or redundant content.3.Professors:Evaluating Student Papers: Professors can upload student submissions to receive automated analyses, rubric-based scores, and graphical insights (e.g., section lengths, readability), streamlining grading and feedback processes.Curating Teaching Materials: The assistant retrieves and summarizes recent papers on a topic, helping professors compile relevant, up-to-date resources for lectures or course readings.4.Interdisciplinary Scholars:Exploring Unfamiliar Fields: Scholars entering new domains can query the assistant to retrieve accessible papers, with summaries and visualizations (e.g., word clouds, sentiment analysis) that clarify key themes and terminology.Cross-Disciplinary Insights: The assistant’s ability to analyze trends and methods across fields supports scholars in identifying connections and integrating diverse perspectives into their research.Phase 1: Discover and Understand Research EffortlesslyIn the first phase, the assistant works like your personal research librarian, enabling:✅ Vector-based search across scientific databases ✅ RAG-powered explanations of top-ranked papers ✅ Conversational Q&A about paper content🔍 How it Works:Enter a query like “Generative AI in medical imaging.”The assistant fetches scholarly articles using APIs like Semantic Scholar and CORE.FAISS is used to semantically rank these papers.Google Gemini is prompted to explain key concepts in simplified, academic tone.You can interact with the bot and ask detailed questions.💬 Sample question:“Summarize the methods used in the paper on Federated Learning for Healthcare.”Interactive Main Function for Paper SearchThis section explains the main function, which drives the External Paper Search mode of the Personalized AI Research Assistant.def main(): print("👋 Hey, hi there! I'm your friendly Research Assistant! 📚✨") while True: user_query = input("\n💬 Please enter your research topic or question (or type 'exit' to quit): ") if user_query.lower() == 'exit': print("👋 Goodbye! Happy researching!") break print("\n🔎 Searching for the best matching research papers across multiple databases...\n") ranked_papers = get_ranked_papers(user_query) if not ranked_papers: print("❌ Sorry, no papers found. Try a different topic!") continue for idx, (paper, similarity) in enumerate(ranked_papers, 1): title = paper.get('title', 'No Title') authors = ', '.join([author.get('name', '') for author in paper.get('authors', [])]) or "Unknown Authors" year = paper.get('year', 'Unknown Year') url = paper.get('url', '#') print(f"\n📄 Paper {idx}: {title}") print(f"👨🔬 Authors: {authors}") print(f"📅 Year: {year}") print(f"🔗 Link: {url}") print(f"📈 Match Score: {similarity:.2f}%\n") # Explain and display in Markdown abstract = paper.get('abstract', '') explanation = explain_relevance(title, abstract, user_query) display(Markdown(explanation)) interactive_qna_session(ranked_papers, user_query) # -----------------------------------# Run the Assistant# -----------------------------------if __name__ == "__main__": main()📄 Phase 2: Upload Your Own PDFs for Deep AnalysisNow comes the powerful second phase — Upload your own research paper, and the AI takes it from there.Once uploaded, the assistant:📑 Extracts text by section (abstract, intro, methodology, etc.)🧠 Performs AI-powered summarization with formal academic tone🧾 Analyzes sentiment, readability, and structure✍️ Suggests section-wise rewrites💬 Enables question-answering based on your uploaded contentMain Driver Code for Uploaded Paper AnalysisThis section explains the main driver code for analyzing and rewriting an uploaded research paper PDF, including example questions for interactive Q&A.Code Explanation :Purpose:This code drives the Uploaded Paper Analysis mode, processing a research paper PDF to extract text, analyze content, score quality, and rewrite sections. It uses RAG for interactive Q&A, retrieving relevant chunks with FAISS and generating answers with Google Gemini, while offering AI-driven rewriting to enhance the manuscript.Implementation:Extracts and chunks PDF text, embeds chunks with Gemini, and builds a FAISS index for RAG-based Q&A. Analyzes the full paper with analyze_uploaded_paper, scores it via score_paper_rubric, and displays results in Markdown. Lists example questions to guide Q&A, then enters a loop for user questions using chat_about_paper. Splits text into sections, analyzes each with analyze_section, and allows iterative rewriting with rewrite_section, updating sections if desired.Role in the Project:Central to the project’s goal of aiding manuscript refinement, it complements the external paper search mode by providing deep analysis and rewriting for uploaded papers. The RAG-powered Q&A and Gemini-driven analyses/rewrites enhance user productivity, making it invaluable for students and researchers improving their drafts.example_questions = [ """ 🔹 Critique the clarity and focus of my research problem statement. 🔹 Identify gaps or weaknesses in my literature review section. 🔹 Analyze the strength of my methodology — any flaws or improvements? 🔹 Evaluate if my results and analysis are convincing and well-supported. 🔹 Suggest improvements for the conclusion to make it more powerful. 🔹 Recommend recent papers or citations I should add. 🔹 Check if my paper aligns with current trends in the field. 🔹 Advise on making my abstract more concise and engaging. 🔹 Point out any redundancy, irrelevant sections, or off-topic parts. 🔹 Detect possible ethical concerns or biases in my study. 🔹 Suggest formatting or structure improvements for better flow. 🔹 Help me prepare potential reviewer questions for peer-review. 🔹 Check if my research contributions are stated clearly enough. 🔹 Critique the originality and innovation level of my work. """]# -----------------------------------# Step 9: Main Driver Code# -----------------------------------# Example Usageuploaded_pdf_path = "/kaggle/input/research-papers/pdf4.pdf" # <-- Change this!# Extract + Chunkfull_text = extract_text_from_pdf(uploaded_pdf_path)chunks = chunk_text(full_text)# Embed Chunkschunk_embeddings = np.vstack([get_gemini_embedding(chunk) for chunk in chunks])# Build FAISSindex = build_faiss_index(chunk_embeddings)# Analyzefull_analysis = analyze_uploaded_paper(full_text)print("📄 Full Analysis:\n")display(Markdown(full_analysis))rubric = score_paper_rubric(full_text)print("Paper Score:\n")display(Markdown(rubric))# Show example questionsprint("\n💬 Example Questions You Can Ask About Your Paper:")for q in example_questions: print(f"- {q}")# QnA Modeprint("\n🚀 Entering Chat Mode: Discuss Your Paper")while True: user_question = input("\nAsk a question (or type 'exit' to stop): ") if user_question.lower() == 'exit': break answer = chat_about_paper(user_question, chunks, chunk_embeddings, index) print("\n🤖 Bot's Answer:\n") display(Markdown(answer))uploaded_text = extract_text_from_pdf(uploaded_pdf_path)# Step 2: Split the full text into sectionssections = split_into_sections(uploaded_text)# Step 3: Ask user if they want to enter AI Rewriter Modeuser_choice = input("\n🤖 Would you like to enter AI Rewriter Mode to enhance your paper? (yes/no): ").strip().lower()if user_choice == "yes": # Step 4: Analyze each section first print("\n📊 Analyzing sections of your paper...\n") for section_name, section_content in sections.items(): if section_content.strip(): analysis = analyze_section(section_name, section_content) print(f"\n--- 📚 Analysis for {section_name} ---") print(analysis) print("\n--------------------------------------\n") else: print(f"\n⚠️ {section_name} section appears empty. Skipping analysis.\n") # Step 5: Allow user to interactively choose and rewrite sections while True: print("\n📚 Sections found in your paper:") for idx, section_name in enumerate(sections.keys(), start=1): print(f"{idx}. {section_name}") selected_section = input("\n✍️ Which section would you like to rewrite? (Type section name exactly or type 'exit' to quit): ").strip() if selected_section.lower() == "exit": print("\n👋 Ending AI Rewriter Session. Happy Writing!") break if selected_section in sections: original_content = sections[selected_section] if not original_content.strip(): print(f"\n⚠️ The {selected_section} section is empty. Please choose another section.") continue rewritten = rewrite_section(selected_section, original_content) print(f"\n📝 Here is the rewritten {selected_section} section:\n") print(rewritten) # Optionally update the section with rewritten text update_choice = input("\n✅ Do you want to update this section with the rewritten version? (yes/no): ").strip().lower() if update_choice == "yes": sections[selected_section] = rewritten print(f"\n💾 {selected_section} section updated successfully!") else: print("\n⚠️ Invalid section name. Please type the section exactly as shown.")else: print("\n👋 Okay! Ending session. You can always come back for rewriting later!")📝 📚 Generate High-Quality Paper SummariesThis feature transforms your entire paper into a professional summary between 250–350 words with an academic tone, structured logically:✅ Summary Covers:Research objective and backgroundMethodologies usedMajor resultsDiscussions and implicationsConclusion and future workimport os# 📚 Paper Summary Generatordef generate_summary(full_text): prompt = f"""You are a professional academic editor and scientific writer.Your task is to generate a high-quality structured summary of the following research paper. The summary should be:- Precise, clear, and highly professional- Formal academic tone (no casual language)- Between 250 and 350 words- Well-organized into logical flow- Emphasizing key points without unnecessary detailFocus on summarizing:1. The research objective and background2. Methodologies and techniques used3. Major findings and results4. Important discussions and implications5. Final conclusions and potential future workStrictly avoid personal opinions or assumptions not grounded in the text.Here is the paper content:{full_text}""" model = genai.GenerativeModel('gemini-2.0-flash') response = model.generate_content(prompt) return response.text# 📥 Save Summary Functiondef save_summary(summary_text, filename="summary1.txt"): with open(filename, "w", encoding="utf-8") as f: f.write(summary_text) print(f"\n✅ Summary saved as '{filename}' successfully!")uploaded_text = extract_text_from_pdf(uploaded_pdf_path)# Ask user if they want a summarysummarize_choice = input("\n🧠 Would you like to generate a summary of your paper? (yes/no): ").strip().lower()if summarize_choice == "yes": summary = generate_summary(uploaded_text) print("\n📄 Here is the summary of your paper:\n") display(Markdown(summary)) # Ask user if they want to download it download_choice = input("\n💾 Would you like to download the summary? (yes/no): ").strip().lower() if download_choice == "yes": save_summary(summary) else: print("\n👍 No problem! Summary not downloaded.")else: print("\n👍 Skipping summary generation!")📊 Analyze, Visualize & Score Your ResearchThis Python script is designed to analyze the structure and content of a research paper in PDF format. It provides various graphical insights to help visualize key aspects of the paper, making it easier to understand its readability, sentiment, and word distribution. The process is broken down into the following key functions:Word Cloud Generation (plot_word_cloud): This function creates a visual representation of the most frequent words in the entire text. It uses the WordCloud library to generate a word cloud, where the size of each word is proportional to its frequency in the document.Section Lengths Distribution (plot_section_lengths): This function calculates and plots the word count of each section in the paper. It helps in understanding the length distribution across various sections, such as Introduction, Methodology, Results, etc.Sentiment Analysis (plot_sentiment_analysis): By using TextBlob, this function performs sentiment analysis on each section and plots the sentiment polarity score. The sentiment score ranges from -1 (negative) to 1 (positive), providing insights into the tone of the sections.Readability Scores (plot_readability_scores): This function evaluates the readability of each section using the Flesch Reading Ease score, which indicates how easy or difficult the text is to read. A higher score suggests easier readability.Graphical Analysis (perform_graphical_analysis): This function orchestrates the entire graphical analysis process, calling all the above functions to generate the corresponding plots.The main function, ai_research_paper_helper_with_graphics, serves as the entry point. It extracts the text from a given PDF, splits it into sections, and then prompts the user to perform the graphical analysis. If the user agrees, it displays the word cloud, section lengths, sentiment analysis, and readability scores of the paper.This script is a helpful tool for anyone looking to analyze the structure and quality of a research paper, offering visual insights into the content’s distribution, sentiment, and readability.word frequency analysis in a research paperSentiment Analysis in a research paperDemo Video🎥 Add a short screen recording of:1.User typing a query and getting relevant papers from the external sources using Vector search/RAG2.Uploading a paper and generating summary/analytics.3.Asking the AI a question based on the paper.🧠 Final ThoughtsThis project represents a leap in making research intelligent, accessible, and interactive. Whether you’re diving into a new field or polishing your own manuscript, the Personalized AI Research Assistant is designed to empower you.✨ It’s not just an assistant — it’s your AI-powered research companion.KAGGLE NOTEBOOK & THE APP LINKHere i have given the links for the project’s kaggle notebook & it’s demo UI app for the project feel free to run and test out the appKaggle Notebook : Personalized AI Research AssistantStreamlit UI App: Personalized AI Research Assistant0 Kommentare 0 Anteile 77 Ansichten
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GAMINGBOLT.COMRematch Open Beta Surpasses 118,000 Concurrent Players on SteamNews Rematch Open Beta Surpasses 118,000 Concurrent Players on Steam Sifu dev Sloclap's multiplayer football action game will be available for PlayStation 5, Xbox Series X/S, and PC on June 19. Posted By Shubhankar Parijat | On 19th, Apr. 2025 Sifu developer Sloclap’s upcoming football mutltplayer action title Rematch has generated plenty of buzz since its announcement in December, and that’s being reflected in the player numbers it is attracing. An open beta of the multiplayer title recently went live on Steam, and players are flocking to it in droves. According to SteamDB, on Friday, the day the open beta went live, it saw a peak of 118,739 concurrent players on Steam. Clearly, the promise of its Rocket League-style football multiplayer action has turned heads, and the fact that it’s coming from the studio behind fan favourite title Sifu only serves to help as well. It should be interesting to see how it performs over the remainder of its open beta period. Rematch is launching for PS5, Xbox Series X/S, and PC on June 19, and will also be available via Game Pass day and date. The game will be priced at $29.99. Head on over here for creative director Pierre Tarno’s words on why Sloclap didn’t consider a free-to-play model. Tagged With: Atomfall Publisher:Rebellion Developments Developer:Rebellion Developments Platforms:PS5, Xbox Series X, PS4, Xbox One, PCView More Monster Hunter Wilds Publisher:Capcom Developer:Capcom Platforms:PS5, Xbox Series X, PCView More South of Midnight Publisher:Microsoft Developer:Compulsion Games Platforms:Xbox Series X, PCView More Amazing Articles You Might Want To Check Out! Rematch Open Beta Surpasses 118,000 Concurrent Players on Steam Sifu dev Sloclap's multiplayer football action game will be available for PlayStation 5, Xbox Series X/S, and ... PowerWash Simulator 2 Trailer Details Modes, Improvements, and More FuturLab's simulation sequel is set to launch sometime this year for PlayStation 5, Xbox Series X/S, and PC vi... Atomfall Has “Been a Huge Success” on Game Pass – Rebellion "Microsoft has been a fantastic partner to work with, they've really leaned in to helping us," says Rebellion'... World of Goo 2 Launches for PS5 and Steam on April 25 2D Boy's puzzle platforming sequel is currently available on Nintendo Switch and PC via the Epic Games Store. Days Gone’s Upcoming Remaster Seems Like it Might be Worth a Look For newcomers in particular, it's looking like a solid package. This is the Perfect Time for an Elder Scrolls 4: Oblivion Remake Bethesda's classic 2006 RPG has picked a great time to return to the limelight.View More0 Kommentare 0 Anteile 94 Ansichten
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WWW.RESETERA.COMAnthony Howell seems to becoming *the* Souls-like English voice actor.Kalentan Member Oct 25, 2017 50,200 While there is no doubt other voice actors who have also been in multiple of these games, I find Anthony Howell's voice very distinct, and so when I picked up Mandragora, a brand new Souls-like of the Side-View variety, and his was the first voice you hear... It was very recognizable. I knew him as Margit (Elden Ring) and Geppetto (Lies of P), but he was also in the recently released Khazan, he was in Wukong, Steelrising, he also played Yurt the Silent Chief in the Demon's Souls remake. Granted, I haven't played Khazan, Wukong, or Steelrising, so I can't speak to the size of his roles in those, but him appearing as the "King Priest" (Likely Villain? Not sure I just started, but likely lol) in Mandragora very much seems like banking on his voice being recognizable from Elden Ring and Lies of P to instanty give gravitas to the intro cinematic. Some examples of his voice acting, in case you haven't played any of the above, though obviously spoilers (for the Lies of P example) if you listen for too long. View: https://www.youtube.com/watch?v=_n9h-bSwqFo View: https://www.youtube.com/watch?v=FsUsM9tCirY Like sure, there is plenty of recognizable voice actors in gaming, but at least on the English side, I feel like in recent years, when it comes to Souls-likes in particular, his voice has become more common than some others. Kard8p3 Member Oct 25, 2017 7,678 dude is great and i love the work he does. he was also in vampyr and one of the cthulu games, and alien isolation OP OP Kalentan Member Oct 25, 2017 50,200 Kard8p3 said: dude is great and i love the work he does. he was also in vampyr and one of the cthulu games, and alien isolation Click to expand... Click to shrink... I really loved Vampyr! And it's funny cause while I won't classify it as a Souls-like, it still felt very much inspired by it in some regards. So I think it counts in a way lol MegaSackman Member Oct 27, 2017 20,362 Argentina Yep, I noticed him in Mandragora right away lol, guy's great. blueredandgold Member Oct 25, 2017 8,389 His more memorable performance is later in the game. I went from being quietly confident at that stage to trembling in my boots. SpellSwordFoxx Member Feb 27, 2025 143 he's knocking it out of the park in Mandragora Voicing the Godking, and voicing him damn well lol Becks' Member Dec 7, 2017 9,145 Canada He's also Fourchenault in FFXIV, great voice actor. OP OP Kalentan Member Oct 25, 2017 50,200 blueredandgold said: His more memorable performance is later in the game. I went from being quietly confident at that stage to trembling in my boots. Click to expand... Click to shrink... I assume your also talking about Mandragora? That makes me excited. SpellSwordFoxx said: he's knocking it out of the park in Mandragora Voicing the Godking, and voicing him damn well lol Click to expand... Click to shrink... Well, I am excited, the game seems really cool thus far (loving the art style too). blueredandgold Member Oct 25, 2017 8,389 Kalentan said: I assume your also talking about Mandragora? That makes me excited. Click to expand... Click to shrink... Nope, Leyndall. I scarpered. OP OP Kalentan Member Oct 25, 2017 50,200 blueredandgold said: Nope, Leyndall. I scarpered. Click to expand... Click to shrink... Ah... But you are indeed correct, his voices line during that part are fantastic! Kard8p3 Member Oct 25, 2017 7,678 blueredandgold said: Nope, Leyndall. I scarpered. Click to expand... Click to shrink... "I see thee, Little Tarnished..." Foolhardy Member May 4, 2024 3,107 Becks' said: He's also Fourchenault in FFXIV, great voice actor. Click to expand... Click to shrink... Salarians Knights of Favonius World Tour '21 Member Oct 25, 2017 23,069 momwife.club he will always be dr jonathan reid in vampyr first to me and to a lesser degree the evil french guy in dragon age inquisition Nocturne Member Oct 25, 2017 2,179 one of the roles people on this forum will least recognize from him but arknights grabbed him for its dub a while ago. it's still one of the absolute standouts among its' english voice performances and honestly a pretty different kind of performance than a lot of the characters he's been getting pegged as lately. 2CL4Mars Member Nov 9, 2018 2,390 Kalentan said: I really loved Vampyr! And it's funny cause while I won't classify it as a Souls-like, it still felt very much inspired by it in some regards. So I think it counts in a way lol Click to expand... Click to shrink... It's so strange we haven't gotten a sequel, it sold pretty well and I believe both parties were happy with the games sales. It's to bad, the game was solid and a sequel could have been really good. OP OP Kalentan Member Oct 25, 2017 50,200 2CL4Mars said: It's so strange we haven't gotten a sequel, it sold pretty well and I believe both parties were happy with the games sales. It's to bad, the game was solid and a sequel could have been really good. Click to expand... Click to shrink... There is Banishers: Ghosts of New Eden, which at the very least is confirmed to take place in the same universe as Vampyr.0 Kommentare 0 Anteile 90 Ansichten
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WCCFTECH.COMHere’s Why The Delay Of A Cheaper Tesla Model Y Is A Good ThingMenu Home News Hardware Gaming Mobile Finance Deals Reviews How To Wccftech EVFinance Here’s Why The Delay Of A Cheaper Tesla Model Y Is A Good Thing Rohail Saleem • Apr 18, 2025 at 09:34pm EDT This is not investment advice. The author has no position in any of the stocks mentioned. Wccftech.com has a disclosure and ethics policy. Tesla's expansive supply chain is rapidly becoming its Achilles heel, as manufacturing synergies spread across the globe on the basis of competitive advantage buckle under President Trump's tariff-laden cudgel. It was just last week when Tesla canceled its plans to ship parts for the Cybercab and the Semi to the US from China. Now, add the much-anticipated cheaper version of the Model Y to the EV giant's growing list of disrupted products. For the benefit of those who might not be aware, Tesla has been working on a cheaper, sub-$35,000 model for a while now. Earlier this year, speculation was rife that the new model would take the shape of a hatchback and open a whole new TAM for the EV giant, while allowing it to better compete with BYD Dolphin and Volkswagen ID.3 in China. Now, however, we've just received two tantalizing tidbits on this front. First, the new model is not a hatchback, but merely a stripped down version of the Model Y, offering slower acceleration, smaller battery packs, smaller screens, etc. Second, that cheaper model has now been delayed. It appears that $TSLA will delay the launch of its more affordable vehicles until end of 3Q. Our bigger concern is the story appears to confirm our fear that the new cheaper vehicles will be stripped down versions of M-Y and M-3 (slower 0-60, smaller batteries, cloth seats,… https://t.co/oVlEsu3CHF — Gary Black (@garyblack00) April 19, 2025 Of course, according to Future Fund's Gary Black, the cheaper Model Y will simply cannibalize volume from Tesla's higher-margin vehicles, and will not meaningfully add to the overall sales momentum. It is for this reason that we feel the delay of the cheaper Model Y amid tariff-induced mayhem is probably a good thing for Tesla's bottom-line. Meanwhile, as mentioned earlier, Tesla has also rescinded its plans to ship parts for the Cybercab and the Semi from China, citing stratospheric tariffs on Chinese imports as the raison d'être. The EV giant was previously aiming to start trial production of the two models in October 2025, with mass production originally slated for 2026. The shipping halt, however, has complicated Tesla's production cadence at Texas and Nevada, home to the production lines for the Cybercab and the Semi, respectively. 1 minute before the close on Friday someone sold $2,500,000 worth of $TSLA calls This afternoon $TSLA delays its launch for its affordable Model Y until 2026 Its never been a better time to be an insider pic.twitter.com/FJYBE1zNRT — John Trades MBA (@JPATrades) April 18, 2025 Finally, we leave you with this delightful coincidence: someone is about to make a killing on Tesla's downward momentum come Monday. Subscribe to get an everyday digest of the latest technology news in your inbox Follow us on Topics Sections Company Some posts on wccftech.com may contain affiliate links. We are a participant in the Amazon Services LLC Associates Program, an affiliate advertising program designed to provide a means for sites to earn advertising fees by advertising and linking to amazon.com © 2025 WCCF TECH INC. 700 - 401 West Georgia Street, Vancouver, BC, Canada0 Kommentare 0 Anteile 99 Ansichten
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WWW.GAMESPOT.COMHow To Watch Fortnite's Star Wars CelebrationEpic Games has teased a special Fortnite announcement will be made at the Star Wars Celebration in Japan on Saturday, April 19. Fans can tune into a livestream to catch the Fortnite announcement, which is rumored to be a Star Wars-themed season of content. To watch this special reveal live, fans will want to visit the Star Wars Celebration livestream on April 19 beginning around 6 PM PT / 9 PM ET. This livestream can be viewed on either the official Star Wars homepage or YouTube channel.Continue Reading at GameSpot0 Kommentare 0 Anteile 56 Ansichten