Mishimoto Subaru Oil FIller Cap - Gold
SKU: 2348748362

Mishimoto Subaru Oil FIller Cap - Gold

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Mishimoto Subaru Oil FIller Cap - Gold2013 2014 Scion FR S 2. 0 Liter TL70, 2013 2014 Scion FR S 2. 0 Liter TX6A, 2006 2007 Subaru B9 Tribeca 3. 0 Liter TG5C7, 2006 Subaru Baja 2. 5 Liter TV1B4, 2003 2006 Subaru Baja 2. 5 Liter TY754, 2006 Subaru Baja 2. 5 Liter TZ1A2, 2003 2005 Subaru Baja 2. 5 Liter TZ1A4, 2013 2014 Subaru BRZ 2. 0 Liter TL70, 2013 2014 Subaru BRZ 2. 0 Liter TX6A, 2005 2006 Subaru Forester 2. 5 Liter TV1B5, 2008 Subaru Forester 2. 5 Liter TV1B5, 1998 Subaru Forester 2.

2013-2014 Scion FR-S 2.0 Liter TL70, 2013-2014 Scion FR-S 2.0 Liter TX6A, 2006-2007 Subaru B9 Tribeca 3.0 Liter TG5C7, 2006 Subaru Baja 2.5 Liter TV1B4, 2003-2006 Subaru Baja 2.5 Liter TY754, 2006 Subaru Baja 2.5 Liter TZ1A2, 2003-2005 Subaru Baja 2.5 Liter TZ1A4, 2013-2014 Subaru BRZ 2.0 Liter TL70, 2013-2014 Subaru BRZ 2.0 Liter TX6A, 2005-2006 Subaru Forester 2.5 Liter TV1B5, 2008 Subaru Forester 2.5 Liter TV1B5, 1998 Subaru Forester 2.5 Liter TY752, 1999-2002 Subaru Forester 2.5 Liter TY754, 2003-2008 Subaru Forester 2.5 Liter TY755, 2009-2013 Subaru Forester 2.5 Liter TY758, 2009-2013 Subaru Forester 2.5 Liter TY758, 1998 Subaru Forester 2.5 Liter TZ102, 1999-2002 Subaru Forester 2.5 Liter TZ1A2, 2003-2004 Subaru Forester 2.5 Liter TZ1A3, 2004-2008 Subaru Forester 2.5 Liter TZ1B5, 2009-2013 Subaru Forester 2.5 Liter TZ1B8, 2009-2013 Subaru Forester 2.5 Liter TZ1B8, 1993-1995 Subaru Impreza 1.8 Liter TA102, 1993-1995 Subaru Impreza 1.8 Liter TM702, 1993-1997 Subaru Impreza 1.8 Liter TY752, 1993-1997 Subaru Impreza 1.8 Liter TZ102, 2012-2014 Subaru Impreza 2.0 Liter TR580, 2002-2005 Subaru Impreza 2.0 Liter TV1A4, 2002-2005 Subaru Impreza 2.0 Liter TY754, 2012-2014 Subaru Impreza 2.0 Liter TY758, 1995 Subaru Impreza 2.2 Liter TA102, 1995 Subaru Impreza 2.2 Liter TM702, 1995-1998 Subaru Impreza 2.2 Liter TY752, 1999-2001 Subaru Impreza 2.2 Liter TY754, 1995-1998 Subaru Impreza 2.2 Liter TZ102, 1999-2001 Subaru Impreza 2.2 Liter TZ1A2, 2006-2007 Subaru Impreza 2.5 Liter TV1B4, 1998 Subaru Impreza 2.5 Liter TY752, 1999-2007 Subaru Impreza 2.5 Liter TY754, 2008-2014 Subaru Impreza 2.5 Liter TY758, 2004-2014 Subaru Impreza 2.5 Liter TY856, 1998 Subaru Impreza 2.5 Liter TZ102, 1999-2004 Subaru Impreza 2.5 Liter TZ1A2, 2005-2007 Subaru Impreza 2.5 Liter TZ1B4, 2008-2011 Subaru Impreza 2.5 Liter TZ1B8, 1989-1994 Subaru Justy 1.2 Liter TB40, 1989-1994 Subaru Justy 1.2 Liter TM64F, 1989-1994 Subaru Justy 1.2 Liter TS40 ...See Application Guide for Additional Fitments
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SKU: 2348748362

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4.8 ★★★★★
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O
Om S
West Palm Beach, US
★★★★★ 4
Title: Really Good Book for Learning LLMs
Format: Paperback, Format: Paperback
I picked up this book after struggling with LLM implementation at work. Ken Huang explains things clearly without too much technical jargon. The book covers everything from data preparation to building AI agents. I especially liked the chapters on RAG and prompting techniques - they helped me improve my current projects. The code examples actually work, which is nice. Some parts are pretty advanced, so you need basic Python knowledge. I had to read a few chapters twice to fully get it. The fairness and bias detection section was eye-opening. Good practical advice throughout. Not just theory - real solutions you can use. Worth the money if you're serious about LLM development. Recommended for anyone building AI systems professionally.
WAS THIS REVIEW HELPFUL?YesReportShare
Reviewed in the United States on July 25, 2025
J
Jiewen Wang
Port Orchard, US
★★★★★ 5
a comprehensive guide at the intersection of generative AI and cybersecurity
Format: Kindle
This book blends deep theoretical foundations with practical frameworks and forward-looking strategies. From adversarial risk models to actionable guidance using OWASP Top 10 for LLMs and the NIST AI RMF, it offers both technical depth and operational clarity. What makes it stand out is its balance of academic rigor and real-world CISO insights, providing a holistic perspective on securing GenAI systems. While it leans enterprise-focused, the content remains accessible to security engineers, risk managers, and policy leaders alike. Generative AI Security is a timely and essential read for anyone working to deploy GenAI responsibly—building systems with both power and integrity in today’s fast-evolving threat landscape.
WAS THIS REVIEW HELPFUL?YesReportShare
Reviewed in the United States on July 2, 2025
N
Nader
Belleville, US
★★★★★ 1
Light on substance and heavy on flaws
Format: Paperback
The book has a great list of topics, but fails to provide much substance any of them. Most of the provided code is just comments that avoid the actual crux of the issues being discussed. (e.g. #implement the logic to validate XYZ - while the whole point of this chapter is teach how the heck we validate XYZ!) Some parts are plain wrong, for example the part on Graph based RAG is fundamentally flawed as it assumes the text embedding and the graph embedding are in the same latent space. (This is one of many more examples). Seems like the book was rushed, and the author has limited hands on experience (if any). At least we know based on the amount of flaws that it was not written by an LLM
WAS THIS REVIEW HELPFUL?YesReportShare
Reviewed in the United States on December 31, 2025
N
noam barkay
Port Orchard, US
★★★★★ 5
Excellent book to truly understand LLM design patterns
Format: Paperback
I just finished reviewing Ken Huang's pocket book on LLM Design Patterns, and WOW what an amazing resource! This book is excellent if you want to truly understand how to create and enhance intelligent AI language models, all that in your pocket! Ken makes the difficult things seem surprisingly easy, and that's the real MAGIC. - How to prepare your data for training by making it extremely clean. Developing the brains: the practical aspects of training, optimizing, and maintaining your models. - Learn amazing prompting techniques (such as Chain-of-Thought and Tree-of-Thoughts) to improve your AI's reasoning and problem-solving abilities. Learn everything there is to know about RAGs so that your LLM can incorporate outside expertise. - It also delves into creating "agentic" AI that is capable of action and planning (not only simple plan and execute but also enhanced techniques like ReWoo!) Really, this feels like a useful toolkit, so Ken thank you for that resource Thanks, Idan Habler
WAS THIS REVIEW HELPFUL?YesReportShare
Reviewed in the United States on June 9, 2025
R
Ryan Meyer
Lexington, US
★★★★★ 3
A Broad Overview, But Light on Modern Fine-Tuning
Format: Paperback
I'm currently really interested in fine-tuning LLMs and recently completed my first LoRA-based fine-tuning on a quantized model. I came to this book looking for more detail on fine-tuning. While it touches on the topic, I found the content didn’t quite align with the current state of the field in 2025. Techniques like LoRA, QLoRA, and PEFT weren’t really covered, and the material leaned more toward what I think are older or lower level approaches. That made it harder to connect with what I’m actually working on. That said, when I shifted to other chapters — like the sections on prompt engineering techniques such as Chain of Thought (CoT) and Tree of Thought (ToT) — I found more value. These sections were clearer, and I picked up a few practical insights, like using few-shot examples that walk through the CoT reasoning process. That’s not something I’ve tried before, and I can see how it might help smaller models that struggle with any type of reasoning tasks. Overall, the book feels more like a broad overview of all LLM concepts. For someone exploring many topics across the LLM ecosystem, it offers a wide-ranging introduction. But for readers like me who are actively trying to learn and apply techniques like fine-tuning and quantization, it may leave you wanting up-to-date guidance.
WAS THIS REVIEW HELPFUL?YesReportShare
Reviewed in the United States on August 10, 2025

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