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{"songs": [{"image": "https://images.genius.com/cf283fab548771170407004d03d1c928.1000x1000x1.png", "year": "2018-11-09", "lyrics": "[Intro]\nGather 'round boys and girls, uh-huh-huh-huh\nLet me tell you a story I know you ain't heard\nThis is the story about how the Mrs. saved Christmas\nMrs. Santa Claus that is\n\n[Verse]\nIt was the first Christmas\nIn all the Christmases ever in history\nWhen a reindeer bucked and Santa got stuck\nInside of a chimney\nThe reindeer flew the sleigh up north\nOn Santa Claus' request\nTo inform Mrs. Santa Claus\nThat she'd have to come deliver the gifts\nWhen Mrs. Claus heard the news\nShe called out to all of the elves\n\"Go grab the bags and fill them up\nWith every toy from the shelves\nThere is no time to waste, my friends\nPoor Santa needs our help\nAnd until he finds his way out the chimney\nWe'll have to do this by ourselves\"\nThey filled the sleigh from end to end\nWith more bags than could fit\nThere were so many toys for good girls and boys\nMrs. Claus had nowhere to sit\nShe climbed on the top of a heaping mound\nAnd yelled out down below\n\"Hey, Rudolph, I need the maximum speed\nYou gotta gimme that get up and go\"\nThe reindeer raced from place to place\nBetween the clouds and stars\nWhile Mrs. Claus shimmied down the chimneys\nThey elves squeezed through burglar bars\nWhen all the gifts were given out\nThere was one more thing to do\nBefore they returned to the North Pole\nSanta Claus needed a rescue\nHe was stuck so deep in the chimney\nHis feet were almost touching the ground\nMrs. Claus didn't know whether it was better\nTo pull him up or push him down\nShe lowered a rope for Santa to grab\nAnd told him to \"Hold on tight\"\nWith the other end tied up to the sleigh\nThe reindeer pulled with all their might\nWith a heave and a hoe, Santa didn't let go\nAs he busted out of the stack\nNow Santa was free but unfortunately\nThe chimney had a-cracked\nThe elves all helped to fix the broken bricks\nAnd no, it didn't take long\nAnd with Mr. and Mrs. Claus they headed home before the dawn\nOn Christmas day the children awoke\nWith eager hearts just to see\nA pleasant surprise before their eyes were presents right under the tree\n\n[Chorus]\nThat's how the Mrs. saved Christmas\nThe Mrs. saved Christmas, hey\nHurray for Mrs. Santa Claus\nShe ain't no regular dame, huh\nThe Mrs. saved Christmas, hey\nHurray for Mrs. Santa Claus\nShe ain't no regular dame, she got game\nThe Mrs. saved Christmas, hey\nHurray for Mrs. Santa Claus\nShe ain't no regular dame, huh\nThe Mrs. saved Christmas, hey\nHurray for Mrs. Santa Claus\nShe ain't no regular dame, she got game\n\n[Interlude]\nSo now you know how the story goes\nThe Mrs. saved Christmas\nMrs. Santa Claus that is\nAnd if anybody ever asked you, \"Is it true?\"\nYou tell 'em, \"Awww yeah!\"\n\n[Outro]\nThe Mrs. saved Christmas, hey\nMrs., ahh the Mrs., the Mrs. saved Christmas\nHurray for Mrs. Santa Claus\nMrs., ahh the Mrs., the Mrs. saved Christmas\nHurray for Mrs. Santa Claus\nMrs., ahh the Mrs., the Mrs. saved Christmas\nHurray for Mrs. Santa Claus, hey", "title": "The Mrs Saved Christmas", "album": "Christmas Funk"}], "artist": "Aloe Blacc"}
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{"pmid":32425463,"pmcid":"PMC7228719","title":"Personalizing Invasive Mechanical Ventilation Strategies in COVID-19-associated lung injury: the Utility of Lung Ultrasound.","text":["Personalizing Invasive Mechanical Ventilation Strategies in COVID-19-associated lung injury: the Utility of Lung Ultrasound.","J Cardiothorac Vasc Anesth","Conway, Hannah","Lau, Gary","Zochios, Vasileios","32425463"],"journal":"J Cardiothorac Vasc Anesth","authors":["Conway, Hannah","Lau, Gary","Zochios, Vasileios"],"date":"2020-05-20T11:00:00Z","year":2020,"_id":"32425463","source":"PubMed","week":"202021|May 18 - May 24","doi":"10.1053/j.jvca.2020.04.062","topics":["Diagnosis","Treatment"],"weight":1,"_version_":1667252837908742144,"score":9.490897,"similar":[{"pmid":32367169,"pmcid":"PMC7196717","title":"What's new in lung ultrasound during the COVID-19 pandemic.","text":["What's new in lung ultrasound during the COVID-19 pandemic.","Intensive Care Med","Volpicelli, Giovanni","Lamorte, Alessandro","Villen, Tomas","32367169"],"journal":"Intensive Care Med","authors":["Volpicelli, Giovanni","Lamorte, Alessandro","Villen, Tomas"],"date":"2020-05-06T11:00:00Z","year":2020,"_id":"32367169","source":"PubMed","week":"202019|May 04 - May 10","doi":"10.1007/s00134-020-06048-9","topics":["Treatment","Diagnosis"],"weight":1,"_version_":1666138496143720448,"score":50.58863},{"pmid":32317309,"title":"Lung Ultrasound in Children With COVID-19.","text":["Lung Ultrasound in Children With COVID-19.","Pediatrics","Denina, Marco","Scolfaro, Carlo","Silvestro, Erika","Pruccoli, Giulia","Mignone, Federica","Zoppo, Marisa","Ramenghi, Ugo","Garazzino, Silvia","32317309"],"journal":"Pediatrics","authors":["Denina, Marco","Scolfaro, Carlo","Silvestro, Erika","Pruccoli, Giulia","Mignone, Federica","Zoppo, Marisa","Ramenghi, Ugo","Garazzino, Silvia"],"date":"2020-04-23T11:00:00Z","year":2020,"_id":"32317309","source":"PubMed","week":"202017|Apr 20 - Apr 26","doi":"10.1542/peds.2020-1157","topics":["Diagnosis"],"weight":1,"_version_":1666138493627138049,"score":49.52278},{"pmid":32366774,"title":"Application of Lung Ultrasound during the COVID-19 Pandemic: A Narrative Review.","text":["Application of Lung Ultrasound during the COVID-19 Pandemic: A Narrative Review.","This review highlights the ultrasound findings reported from a number of studies and case reports and discusses the unifying findings from COVID-19 patients as well as from the avian (H7N9) and H1N1 influenza epidemics. We discuss the potential role for portable point-of-care ultrasound (PPOCUS) as a safe and effective bedside option in the initial evaluation, management, and monitoring of disease progression in patients with confirmed or suspected COVID-19 infection.","Anesth Analg","Convissar, David","Gibson, Lauren E","Berra, Lorenzo","Bittner, Edward A","Chang, Marvin G","32366774"],"abstract":["This review highlights the ultrasound findings reported from a number of studies and case reports and discusses the unifying findings from COVID-19 patients as well as from the avian (H7N9) and H1N1 influenza epidemics. We discuss the potential role for portable point-of-care ultrasound (PPOCUS) as a safe and effective bedside option in the initial evaluation, management, and monitoring of disease progression in patients with confirmed or suspected COVID-19 infection."],"journal":"Anesth Analg","authors":["Convissar, David","Gibson, Lauren E","Berra, Lorenzo","Bittner, Edward A","Chang, Marvin G"],"date":"2020-05-06T11:00:00Z","year":2020,"_id":"32366774","source":"PubMed","week":"202019|May 04 - May 10","doi":"10.1213/ANE.0000000000004929","locations":["avian"],"topics":["Diagnosis","Treatment"],"weight":1,"_version_":1666138496218169345,"score":48.686172},{"pmid":32198775,"title":"Is There a Role for Lung Ultrasound During the COVID-19 Pandemic?","text":["Is There a Role for Lung Ultrasound During the COVID-19 Pandemic?","J Ultrasound Med","Soldati, Gino","Smargiassi, Andrea","Inchingolo, Riccardo","Buonsenso, Danilo","Perrone, Tiziano","Briganti, Domenica Federica","Perlini, Stefano","Torri, Elena","Mariani, Alberto","Mossolani, Elisa Eleonora","Tursi, Francesco","Mento, Federico","Demi, Libertario","32198775"],"journal":"J Ultrasound Med","authors":["Soldati, Gino","Smargiassi, Andrea","Inchingolo, Riccardo","Buonsenso, Danilo","Perrone, Tiziano","Briganti, Domenica Federica","Perlini, Stefano","Torri, Elena","Mariani, Alberto","Mossolani, Elisa Eleonora","Tursi, Francesco","Mento, Federico","Demi, Libertario"],"date":"2020-03-22T11:00:00Z","year":2020,"_id":"32198775","source":"PubMed","week":"202012|Mar 16 - Mar 22","doi":"10.1002/jum.15284","topics":["Diagnosis"],"weight":1,"_version_":1666138490101825537,"score":47.143436},{"pmid":32386264,"title":"CLUE: COVID-19 Lung Ultrasound in Emergency Department.","text":["CLUE: COVID-19 Lung Ultrasound in Emergency Department.","Emerg Med Australas","Manivel, Vijay","Lesnewski, Andrew","Shamim, Simin","Carbonatto, Genevieve","Govindan, Thiru","32386264"],"journal":"Emerg Med Australas","authors":["Manivel, Vijay","Lesnewski, Andrew","Shamim, Simin","Carbonatto, Genevieve","Govindan, Thiru"],"date":"2020-05-10T11:00:00Z","year":2020,"_id":"32386264","source":"PubMed","week":"202019|May 04 - May 10","doi":"10.1111/1742-6723.13546","topics":["Prevention","Diagnosis"],"weight":1,"_version_":1666340102033375232,"score":47.143436}]}
{ "directions": [ "Place ground beef in a large, deep skillet. Cook over medium high heat until evenly brown. Drain and set aside.", "Place processed American cheese and milk in a large, heavy saucepan over medium heat. Stirring frequently, cook until cheese is melted. One at a time, mix in ground beef, salsa, black olives and refried beans. Keep the mixture warm over low heat while serving." ], "ingredients": [ "1 pound ground beef", "2 pounds processed American cheese, cubed", "1/2 cup milk", "1 (8 ounce) jar salsa", "1 (2 ounce) can chopped black olives, drained", "1 (16 ounce) can refried beans" ], "language": "en-US", "source": "allrecipes.com", "tags": [], "title": "Junk Dip", "url": "http://allrecipes.com/recipe/24919/junk-dip/" }
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{"poster":"Goroh","date":"2017-03-15T21:48:39.011+0000","title":"Riot SERIOUSLY needs to crack down on accounts that are boosted","subforum":"Player Behavior","up_votes":6,"down_votes":1,"body":"It is not hard at all to discover if an account is boosted or not, and it absolutely fucking DESTROYS the game for players that have worked hard to climb where they are or are stuck in a certain spot because they keep getting unlucky teammates (and no this isn&#039;t an &quot;i keep getting shit teams&quot; rant) . I&#039;m talking about the actual players up in D5 who are legitimately boosted and its not hard to tell whatsoever. Having a boosted player on your team is like playing a 4v5, because the player that is boosted is basically a bot on intermediate difficulty, and the players that do know what they&#039;re doing will abuse them to get uncontrollably fed, making it essentially a 4v6. 7 or 8 games almost in a row i&#039;ve played now where a lot of the teammates i get are incredibly questionable, if not you CAN tell their boosted, one person even admitted to being boosted. All in all its really not hard at all to weed out the players who have been boosted and remove them from the ladder so the players that actually take the climb seriously can start having fun again, and for me right now games feel decided on 50/50 luck, either you have the adc that dies 10 times pre 6 or the enemy team has it. It just ruins the game.","replies":[{"poster":"Magical Player","date":"2017-03-15T22:58:15.886+0000","up_votes":1,"down_votes":2,"body":"Explain your method to discovering a boosted account","replies":[{"poster":"Goroh","date":"2017-03-15T23:26:40.060+0000","up_votes":1,"down_votes":0,"body":"You can start off by looking at no-brainer giveaways, such as having the key flash is used on switched around, insane kda's on commonly used boosting champs while sinking in MMR as MsBehave showed, and riot can always just check which ip you're playing from like all other games can, start at the obvious.. Not rocket science at all\n\nEdit: an example of how easy it is to tell when someone in your game is boosted that i like to use is its like telling a black belt you're a black belt, people might not realize it but boosted players are entirely lost","replies":[{"poster":"Magical Player","date":"2017-03-16T00:05:59.554+0000","up_votes":1,"down_votes":2,"body":"So switching summoners= boosting\n100% of the time\n\nBoosting champs= who?\n\nVPN I can appear anywhere I want ip wise, so I'm boosted.....\n\nInsane KDA's, could be a good game/good set of games\nconsistent kda improvement= they're climbing and winning\n\nSinking in mmr, You can lose 45 games a day if you lose them every 20 mins giving time for breaks and to stretch\nmmr is maybe not a good example of boosting\nJust saying your system may not be 100% accurate","replies":[{"poster":"Goroh","date":"2017-03-16T02:25:20.646+0000","up_votes":2,"down_votes":1,"body":"The switching of flash is actually a great way of determining whether or not someone is being boosted, and by exceptionally high kda i don't mean 15/5/5 i mean 32/0/*, if those two match up, along with a wall of games where they've gone 0/12/0 after the fact and haven't hard carried since they've reached 'X' rank, that's a very good indication. As for the ip.. wouldn't it be rather suspicious if your ip switched to another country while you climb abnormally hard then flatline or decrease in rank when it shows your ip from your actual computer?","replies":[{"poster":"Magical Player","date":"2017-03-16T02:38:38.949+0000","up_votes":1,"down_votes":2,"body":"VPN\nMaybe they've peaked at some elo and are unable to climb and don't care anymore","replies":[{"poster":"Goroh","date":"2017-03-16T03:03:27.314+0000","up_votes":1,"down_votes":0,"body":"Which brings me all the way back to my original statement, riot needs to crack down","replies":[{"poster":"Magical Player","date":"2017-03-16T04:12:11.867+0000","up_votes":1,"down_votes":2,"body":"> [{quoted}](name=Scurvy Wretch,realm=NA,application-id=ZGEFLEUQ,discussion-id=VgmqNGEh,comment-id=000100000000000000000001,timestamp=2017-03-16T03:03:27.314+0000)\n>\n> Which brings me all the way back to my original statement, riot needs to crack down\n\nOn people who've peaked and can no longer win games?\nor \nthose who use vpns\nbecause we don't like prying eyes?","replies":[{"poster":"Goroh","date":"2017-03-22T02:49:30.693+0000","up_votes":1,"down_votes":0,"body":"On said boosted accounts","replies":[{"poster":"Magical Player","date":"2017-03-22T06:00:10.520+0000","up_votes":1,"down_votes":1,"body":"Yep I'm 100% boosted\nthrow me in chains \nthrow away the key\n\nIts so easy to point the he's boosted finger :D","replies":[{"poster":"Goroh","date":"2017-03-23T00:01:56.257+0000","up_votes":1,"down_votes":0,"body":"or just ban them..? And its easy to point the \"he's boosted\" finger when they admit to it in game","replies":[]}]}]}]}]}]}]}]}]}]},{"poster":"Lil Lewd Witch","date":"2017-03-15T22:19:37.740+0000","up_votes":1,"down_votes":0,"body":"http://i.imgur.com/t1JOC2P.jpg\n\nHad this guy last night. Flamed everyone for not being plat, when his MMR was sinking into low Gold while he was \"plat 5\" technically. Unfortunately its really hard to prove if accounts are boosted or not.","replies":[{"poster":"Wiggle Dat Butt","date":"2017-03-16T22:37:04.976+0000","up_votes":1,"down_votes":1,"body":"> [{quoted}](name=MsBehave,realm=NA,application-id=ZGEFLEUQ,discussion-id=VgmqNGEh,comment-id=0000,timestamp=2017-03-15T22:19:37.740+0000)\n>\n> http://i.imgur.com/t1JOC2P.jpg\n> \n> Had this guy last night. Flamed everyone for not being plat, when his MMR was sinking into low Gold while he was &quot;plat 5&quot; technically. Unfortunately its really hard to prove if accounts are boosted or not.\n\nHe's still got a 54% win rate, will eventually climb if consistent. It always baffles me to see lower elo ppl act like they are better than the higher elo people when they can never get there.","replies":[{"poster":"Goroh","date":"2017-03-23T00:07:21.681+0000","up_votes":1,"down_votes":0,"body":"The booster had to win so many games in order to get that person there though right? Gold 3 is pretty far to drop for someone who has 'peaked' at plat 5 with 54% winrate (even more before he dropped to Gold 3 MMR)","replies":[]}]}]},{"poster":"Limmie","date":"2017-03-16T08:13:26.073+0000","up_votes":1,"down_votes":0,"body":"Accounting boosting of the type you give your password for somebody else to play your games is already cracked down upon and they have automated systems in place to detect that with almost complete accuracy. \n\nBoosting nowadays is almost 100% done by duo-queueing with smurfs. And that's completely legitimate. If Riot didn't want people to be boosted they'd have made Solo Queue solo, which they didn't.\n\n","replies":[]}]}
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[ { "activityType":"quiz", "title":"Last activity you solved few questions. There are few more questions in this activity for you to answer", "quizDescription":"For each of the following expressions, indicate the value returned, or if the evaluation would lead to an error, write the word 'error' (note this is a word, not a string, no quotes). While you could simply type these expressions into an IDE, we encourage you to answer them directly since this will help reinforce your understanding of basic Python expressions.<br><br>For decimal answers, give the full result, or four decimal places of accuracy (whichever is shortest).<br><br><b>Floating point Errors:</b><br>Decimal numbers cannot be stored exactly in the computer because the computer does not have an infinite amount of memory. So decimal numbers are rounded when stored. When you do calculations with these numbers, your final result will be different than the actual result. For example, you may get something like 5.0000000044 instead of 5.0. This is called floating-point rounding error.", "questions": [ { "questionType":"fillintheblank", "questionText":"<code>6 + 12 -3</code>", "points":"1", "answer":"15" }, { "questionType":"fillintheblank", "questionText":"<code>2 * 3.0</code>", "points":"1", "answer":"6.0" }, { "questionType":"fillintheblank", "questionText":"<code>- - 4</code>", "points":"1", "answer":"4" }, { "questionType":"fillintheblank", "questionText":"<code>10/3</code>", "points":"1", "answer":"3.3333" }, { "questionType":"fillintheblank", "questionText":"<code>10.0/3.0</code>", "points":"1", "answer":"3.3333" }, { "questionType":"fillintheblank", "questionText":"<code>(2 + 3) * 4</code>", "points":"1", "answer":"20" }, { "questionType":"fillintheblank", "questionText":"<code>2 + 3 * 4</code>", "points":"1", "answer":"14" }, { "questionType":"fillintheblank", "questionText":"<code>2**3 + 1</code>", "points":"1", "answer":"9" }, { "questionType":"fillintheblank", "questionText":"<code>2.1 ** 2.0</code>", "points":"1", "answer":"4.41" }, { "questionType":"fillintheblank", "questionText":"<code>2.2 * 3.0</code>", "points":"1", "answer":"6.6" } ] } ]
{"notes": [{"id": "HygaikBKvS", "original": "HJl7F1yFwS", "number": 1932, "cdate": 1569439653119, "ddate": null, "tcdate": 1569439653119, "tmdate": 1577168286882, "tddate": null, "forum": "HygaikBKvS", "replyto": null, "invitation": "ICLR.cc/2020/Conference/-/Blind_Submission", "content": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "signatures": ["ICLR.cc/2020/Conference"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference"], "details": {"replyCount": 10, "writable": false, "overwriting": [], "revisions": true, "tags": [], "invitation": {"reply": {"readers": {"values-regex": ".*"}, "writers": {"values": ["ICLR.cc/2020/Conference"]}, "signatures": {"values": ["ICLR.cc/2020/Conference"]}, "content": {"spotlight_video": {"value-regex": ".*"}, "full_presentation_video": {"value-regex": ".*"}, "original_pdf": {"required": false, "description": "Upload a PDF file that ends with .pdf", "value-regex": ".*"}, "appendix": {"value-regex": ".*"}, "authorids": {"values-regex": ".*"}, "poster": {"value-regex": ".*"}, "authors": {"values": ["Anonymous"]}, "slides": {"value-regex": ".*"}}}, "final": [], "signatures": ["ICLR.cc/2020/Conference"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference"], "noninvitees": [], "tcdate": 1569271260237, "tmdate": 1593459412141, "id": "ICLR.cc/2020/Conference/-/Blind_Submission"}}, "tauthor": "OpenReview.net"}, {"id": "NuU2F5wTFJ", "original": null, "number": 6, "cdate": 1577054620799, "ddate": null, "tcdate": 1577054620799, "tmdate": 1577054620799, "tddate": null, "forum": "HygaikBKvS", "replyto": "2QWpDiQ0b", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment", "content": {"title": "Re: Paper Decision", "comment": "We presented two experiments on atari - in both LASER obtains state-of-the-art results: \n * single agent vs. single agent on (LASER is 15x better than R2D2 at the 400% mark) \n * population training vs. population training (LASER is 4x better than IMPALA at the 400% mark)\n\nOur state-of-the-art claims are *not* based on a single-agent training vs. population training experiment. The comparisons (see above) are indeed like-for-like and fair."}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values-dropdown": ["everyone", "ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/AnonReviewer.*", "ICLR.cc/2020/Conference/Paper1932/Reviewers/Submitted", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response"}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+|ICLR.cc/2020/Conference/Paper1932/Authors|ICLR.cc/2020/Conference/Paper1932/Area_Chair[0-9]+|ICLR.cc/2020/Conference/Program_Chairs"}}, "readers": ["everyone"], "tcdate": 1569504148784, "tmdate": 1576860532632, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment"}}}, {"id": "2QWpDiQ0b", "original": null, "number": 1, "cdate": 1576798736220, "ddate": null, "tcdate": 1576798736220, "tmdate": 1576800900152, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Decision", "content": {"decision": "Reject", "comment": "The paper presents an off-policy actor-critic scheme where i) a buffer storing the trajectories from several agents is used (off-policy replay) and mixed with the on-line data from the current agent; ii) a trust-region estimator is used to select trajectories that are sufficiently close to the current policy (e.g. in the sense of a KL divergence).\n\nAs noted by the reviews, the results are impressive. \n\nQuite a few concerns still remain:\n* After Fig. 1 (revised version), what matters is the shared replay, where the agent actually benefits from the experience of 9 other different agents; this implies that the population based training observes 9x more frames than the no-shared version, and the question whether the comparison is fair is raised;\n* the trust-region estimator might reduce the data seen by the agent, leading it to overfit the past (Fig. 3, left);\n* the influence of the $b$ hyper-parameter (the trust threshold) is not discussed. In standard trust region-based optimization methods, the trust region is gradually narrowed, suggesting that parameter $b$ here should evolve along time. \n\n", "title": "Paper Decision"}, "signatures": ["ICLR.cc/2020/Conference/Program_Chairs"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Program_Chairs"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"writers": {"description": "How your identity will be displayed.", "values-regex": ["ICLR.cc/2020/Conference/Program_Chairs"]}, "signatures": {"values": ["ICLR.cc/2020/Conference/Program_Chairs"], "description": "How your identity will be displayed."}, "content": {"decision": {"value-radio": ["Accept (Spotlight)", "Accept (Talk)", "Accept (Poster)", "Reject"], "description": "Decision", "required": true, "order": 2}, "title": {"value": "Paper Decision", "required": true, "order": 1}, "comment": {"value-regex": "[\\S\\s]{0,5000}", "description": "", "required": false, "order": 3}}, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "readers": {"values": ["everyone"], "description": "Select all user groups that should be able to read this comment."}, "nonreaders": {"values": []}}, "expdate": 1576854540000, "duedate": 1576853940000, "multiReply": false, "readers": ["everyone"], "invitees": ["ICLR.cc/2020/Conference/Program_Chairs"], "tcdate": 1576795719361, "tmdate": 1576800269999, "super": "ICLR.cc/2020/Conference/-/Decision", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Decision"}}}, {"id": "SyeIzEp_iH", "original": null, "number": 4, "cdate": 1573602318475, "ddate": null, "tcdate": 1573602318475, "tmdate": 1573602318475, "tddate": null, "forum": "HygaikBKvS", "replyto": "SylTACkgjH", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment", "content": {"title": "Re: Sample efficiency of shared replay agents", "comment": "Thank you for the question. We have addressed it in the updated version of the paper. In Figure 1 we now also present a single agent that uses the same hyper-parameter schedule that was published by Espeholt et al. (2018). This agent obtains a score of 431% human normalized median across the 57 atari games, achieving a new state of the art in the single agent regime. The fastest prior agent to reach 400% is presented by Kapturowski et al. (2019) requiring more than 3,000M steps. This constitutes a 15x improvement in data-efficiency like-for-like.\n\nComparing our single-agent and population (9 agents) results, we would like to point out that:\n1) population training achieves higher performance (448% vs 431%) but indeed observes 9x more frames;\n2) the single agent result used an optimised hyper-parameter schedule from Espeholt et al. (2018), while the population set up reflects the setting where a good hyper-parameter schedule is not known;\n3) Like-for-like comparing population training with and without shared replay, we observe that sharing the replay leads to more efficient training (370% vs 233% at 50M steps per-agent).\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values-dropdown": ["everyone", "ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/AnonReviewer.*", "ICLR.cc/2020/Conference/Paper1932/Reviewers/Submitted", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response"}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+|ICLR.cc/2020/Conference/Paper1932/Authors|ICLR.cc/2020/Conference/Paper1932/Area_Chair[0-9]+|ICLR.cc/2020/Conference/Program_Chairs"}}, "readers": ["everyone"], "tcdate": 1569504148784, "tmdate": 1576860532632, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment"}}}, {"id": "SkgcOXT_iH", "original": null, "number": 3, "cdate": 1573602161608, "ddate": null, "tcdate": 1573602161608, "tmdate": 1573602161608, "tddate": null, "forum": "HygaikBKvS", "replyto": "ryxo9N4wKH", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment", "content": {"title": "Response to Official Blind Review #2", "comment": "\nThank you for your review.\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values-dropdown": ["everyone", "ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/AnonReviewer.*", "ICLR.cc/2020/Conference/Paper1932/Reviewers/Submitted", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response"}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+|ICLR.cc/2020/Conference/Paper1932/Authors|ICLR.cc/2020/Conference/Paper1932/Area_Chair[0-9]+|ICLR.cc/2020/Conference/Program_Chairs"}}, "readers": ["everyone"], "tcdate": 1569504148784, "tmdate": 1576860532632, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment"}}}, {"id": "SJxs4m6doS", "original": null, "number": 2, "cdate": 1573602098912, "ddate": null, "tcdate": 1573602098912, "tmdate": 1573602098912, "tddate": null, "forum": "HygaikBKvS", "replyto": "rJget8QTtH", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment", "content": {"title": "Response to Official Blind Review #1", "comment": "\nThanks for your review.\n\n\nRe 1: Proposition 2 emphasizes that the V-trace policy gradient with clipped importance sampling optimizes a wrong objective. In particular the policy gradient implicitly optimizes the target policy for a wrong Q function. We can compute how wrong this Q-function is in expectation. We provide a formula for a state action dependent distortion factor w(s, a) <= 1 in propositions 2 and 3. The factor distorts the Q functions in multiplicative way. When w(s, a)=1 there is no distortion at all.\n\nThe question of how biased the resulting policy will be depends on whether the distortion changes the argmax of the Q function. Little distortions that don\u2019t change the argmax will result in the same local fixpoint of the policy improvement. The policy will continue to select the optimal action and it will not be biased at this state.\nThe policy will however be biased if the Q function is distorted too much. For example consider a w(s, a) that swaps the argmax for the 2nd largest value, the regret will then be the difference between the maximum and the 2nd largest value. Intuitively speaking the more distorted the Q, the larger will be the regret compared to the optimal policy.\n\nMore precisely, the regret of learning a policy that follows a distorted Q is:\nRegret = Q(s, a_best) - Q(s, a_actual) = max_b Q(s, b) - Q(s, a_actual)\nwhere \n * a_best = argmax_a (Q, a) is the optimal action according to the real Q\n * a_actual = argmax_a(Q(s, a) * w(s, a)), is the optimal action according to the distorted Q\n\n\nIn proposition 3 we recall that mixing online data leads to a linear interpolation between real Q function and the implied Q function. In practice this moves each w(s, a) closer to 1.0. Given sufficient online data the argmax can be preserved. \n\nWe have expanded section 2.3 in the paper and added further derivations to the appendix after Proposition 3. \n\nIn particular consider the added equation 13 which provides interpretation on how to choose alpha such that the learnt policy will correctly choose the best action. One of the insights is that alpha may be small if there is a large action value gap between a_best and b.\n\nThe provided conditions can be computed and checked if an accurate Q function and state distribution is accessible. Using imperfect Q function estimates to adaptively choose such an alpha remains a question for future research. \n\nIn this paper we investigate different constant alpha values for their practical performance. We empirically show in Figure 2 that alpha as small as 1/8 results in stable learning performance. \n\n\nRe 2: We have clarified that V is the bootstrap value -- the previously estimated state value function.\n\nRe 3: Propositions 4 and 5 show that the trust-region value estimation operator is a sound operator that really obtains an improved estimate in expectation. We consider this as an essential condition and present it here for reference to show the correctness of our method.\n\nRe 4: We have added a derivation. In related matters we reference Degris (2012) around equation 1.\n\nRe 5: We present in Figure 2 that running a hyper-parameter sweep of 9 agents with shared experience replay is better than running a sweep with 9 separate agents.\n\nPage 8 states: \u201cOn Atari sweeps contain 9 agents with different learning rate and entropy cost combinations {3 \u00b7 10\u22124 , 6 \u00b7 10\u22124 , 1.2 \u00b7 10\u22123} \u00d7 {5 \u00b7 10\u22123 , 1 \u00b7 10\u22122 , 2 \u00b7 10\u22122} (distributed by factors {1/2, 1, 2} around the parameters reported in Espeholt et al. (2018)).\u201d\n\nThe \u201cb\u201d parameter in the trust region was investigated by considering the values {1, 2, 4} on DMLab-30. The differences were minor such that we excluded them from the figure to improve readability.\n\nRe 6: Thank you very much for pointing this out. We have fixed this in the revision.\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values-dropdown": ["everyone", "ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/AnonReviewer.*", "ICLR.cc/2020/Conference/Paper1932/Reviewers/Submitted", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response"}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+|ICLR.cc/2020/Conference/Paper1932/Authors|ICLR.cc/2020/Conference/Paper1932/Area_Chair[0-9]+|ICLR.cc/2020/Conference/Program_Chairs"}}, "readers": ["everyone"], "tcdate": 1569504148784, "tmdate": 1576860532632, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment"}}}, {"id": "rkgGtMTdiH", "original": null, "number": 1, "cdate": 1573601914295, "ddate": null, "tcdate": 1573601914295, "tmdate": 1573601914295, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygTpk4Z9S", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment", "content": {"title": "Response to Official Blind Review #3", "comment": "Thanks for your review. \n\nWe have provided pseudocode in the appendix and made the paper more self-contained.\n\nRe 1: The random variable z indexes the set of policies for which we have saved sampled episodes in the experience replay: Consider uniform sampling of experiences from replay -- in that case, the random variable z indexes the previous policies mu_z=pi_t that saved data to the replay. Here pi_t is the target policy at training step t. In this case the distribution of z (equal to t) would be uniform as the experience replay is uniform.\n\nWe also consider the case where experience is sampled uniformly from both agents id (in a parameter sweep) and training time (episode id).\n\nRe 2: We have reworded this term in the updated version. By \u201cvery off-policy\u201d in the abstract we meant learning from replay generated by other agent instances. This stands in comparison to classic experience replay where agents learn from data that they have generated themselves and saved into a replay buffer.\n\nRe 3: We present an actor-critic algorithm that is robust to off-policy data. We have shown that off-policy data from other agents may have an adverse effect (left green curve in Figure 3) and deteriorate performance significantly. The proposed trust region is able to discard harmful data. This avoids negative interference. However the harmful data still occupies space in the replay and in the training batch (where the loss is zeroed out). This can be a slight disadvantage in certain circumstances if computational resources are limited. Note that the trust region agent trained with population based training (red curve in the right plot) obtains the best results of all considered experiments.\n\nRe 4: Thanks for the suggestion. We have added this.\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/Authors"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values-dropdown": ["everyone", "ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/AnonReviewer.*", "ICLR.cc/2020/Conference/Paper1932/Reviewers/Submitted", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "description": "Who your comment will be visible to. If replying to a specific person make sure to add the group they are a member of so that they are able to see your response"}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+|ICLR.cc/2020/Conference/Paper1932/Authors|ICLR.cc/2020/Conference/Paper1932/Area_Chair[0-9]+|ICLR.cc/2020/Conference/Program_Chairs"}}, "readers": ["everyone"], "tcdate": 1569504148784, "tmdate": 1576860532632, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Comment"}}}, {"id": "SylTACkgjH", "original": null, "number": 1, "cdate": 1573023444997, "ddate": null, "tcdate": 1573023444997, "tmdate": 1573023444997, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Public_Comment", "content": {"title": "Sample efficiency of shared replay agents", "comment": "Hi there,\n\nOne aspect of this paper that I was unclear on is how much experience the shared replay agents have access to. Does the sharing of experience between 9 agents mean that they are effectively exposed to 1.8B frames by the 200M frame mark? If so, is it entirely fair to compare against agents like Rainbow that strictly learn from 200M frames? Either way, your results are impressive, but since they\u2019re likely to become the new benchmark for sample efficiency in Atari (at least in the 200M frame setting) I think it\u2019s important to have clarity on this."}, "signatures": ["~Michael_Dann1"], "readers": ["everyone"], "nonreaders": [], "writers": ["~Michael_Dann1", "ICLR.cc/2020/Conference"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"title": {"required": true, "description": "Brief summary of your comment.", "order": 0, "value-regex": ".{1,500}"}, "comment": {"required": true, "description": "Your comment or reply (max 5000 characters). Add TeX formulas using the following formats: $In-line Formula$ or $$Block Formula$$", "order": 1, "value-regex": "[\\S\\s]{1,5000}"}}, "forum": "HygaikBKvS", "readers": {"values": ["everyone"], "description": "User groups that will be able to read this comment."}, "writers": {"values-copied": ["ICLR.cc/2020/Conference", "{signatures}"]}, "signatures": {"description": "How your identity will be displayed.", "values-regex": "~.*"}}, "readers": ["everyone"], "tcdate": 1569504187584, "tmdate": 1576860566288, "super": "ICLR.cc/2020/Conference/-/Comment", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "invitees": ["everyone"], "noninvitees": ["ICLR.cc/2020/Conference/Paper1932/Authors", "ICLR.cc/2020/Conference/Paper1932/Reviewers", "ICLR.cc/2020/Conference/Paper1932/Area_Chairs", "ICLR.cc/2020/Conference/Program_Chairs"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Public_Comment"}}}, {"id": "ryxo9N4wKH", "original": null, "number": 1, "cdate": 1571402899088, "ddate": null, "tcdate": 1571402899088, "tmdate": 1572972405037, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review", "content": {"rating": "6: Weak Accept", "experience_assessment": "I do not know much about this area.", "review_assessment:_checking_correctness_of_derivations_and_theory": "I assessed the sensibility of the derivations and theory.", "review_assessment:_checking_correctness_of_experiments": "I assessed the sensibility of the experiments.", "title": "Official Blind Review #2", "review_assessment:_thoroughness_in_paper_reading": "I read the paper at least twice and used my best judgement in assessing the paper.", "review": "The authors investigate off-policy actor-critic reinforcement learning where they want to make use of shared experience replay. Two approaches were suggested and compared. One was to mix replayed experience with on-policy data and the other was to create trust regions that only selects well-behaved behavioral distributions for state value estimation.\nAccording to the authors the several experiments provide evidence that their algorithm achieves competitive or even state-of-the-art results in data efficiency. They underpin this with some theoretical analysis.\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer2"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer2"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"experience_assessment": {"required": true, "order": 4, "description": "Please make a selection that represents your experience correctly", "value-radio": ["I have published in this field for several years.", "I have published one or two papers in this area.", "I have read many papers in this area.", "I do not know much about this area."]}, "rating": {"value-dropdown": ["1: Reject", "3: Weak Reject", "6: Weak Accept", "8: Accept"], "order": 3, "required": true}, "review_assessment:_checking_correctness_of_experiments": {"required": true, "order": 7, "description": "If no experiments, please select N/A", "value-radio": ["I carefully checked the experiments.", "I assessed the sensibility of the experiments.", "I did not assess the experiments.", "N/A"]}, "review_assessment:_thoroughness_in_paper_reading": {"required": true, "order": 5, "description": "If this is not applicable, please select N/A", "value-radio": ["I read the paper thoroughly.", "I read the paper at least twice and used my best judgement in assessing the paper.", "I made a quick assessment of this paper.", "N/A"]}, "title": {"value-regex": "Official Blind Review #[0-9]+", "order": 1, "required": true, "description": "Please replace NUM with your AnonReviewer number (it is the number following \"AnonReviewer\" in your signatures below)", "default": "Official Blind Review #NUM"}, "review": {"value-regex": "[\\S\\s]{500,200000}", "order": 2, "description": "Provide your complete review here (500 - 200000 characters). For guidance in writing a good review, see this brief reviewer guide (https://iclr.cc/Conferences/2020/ReviewerGuide) with three key bullet points.", "required": true}, "review_assessment:_checking_correctness_of_derivations_and_theory": {"required": true, "order": 6, "description": "If no derivations or theory, please select N/A", "value-radio": ["I carefully checked the derivations and theory.", "I assessed the sensibility of the derivations and theory.", "I did not assess the derivations or theory.", "N/A"]}}, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "readers": {"values": ["everyone"], "description": "Select all user groups that should be able to read this comment."}, "nonreaders": {"values": []}, "writers": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1575841984906, "duedate": 1572706740000, "multiReply": false, "readers": ["everyone"], "nonreaders": [], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Reviewers"], "noninvitees": [], "tcdate": 1570237730201, "tmdate": 1575841984919, "super": "ICLR.cc/2020/Conference/-/Official_Review", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review"}}}, {"id": "rJget8QTtH", "original": null, "number": 2, "cdate": 1571792504128, "ddate": null, "tcdate": 1571792504128, "tmdate": 1572972405002, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review", "content": {"experience_assessment": "I have published in this field for several years.", "rating": "6: Weak Accept", "review_assessment:_thoroughness_in_paper_reading": "I read the paper thoroughly.", "review_assessment:_checking_correctness_of_experiments": "I carefully checked the experiments.", "title": "Official Blind Review #1", "review_assessment:_checking_correctness_of_derivations_and_theory": "I assessed the sensibility of the derivations and theory.", "review": "This paper aims to improve the efficiency of the actor-critic method. The authors first analyzed the cause of instability in the prior work, from the perspective of bias and variance. Two remedies were then presented: (i) mixing the experience replay with online learning; (ii) proposing a trust region scheme to select the behavior policies. The authors finally tested the proposed method on Atari games, and showed the better results, compared with the state-of-the-art methods.\n\nIn my opinion, the empirical results are impressive, and the authors also provided some insights for the motivation. Given the results on Atari games, this paper could be a great contribution on the actor critic methods. The propositions are presented to support relevant claims, while their significance seems a bit limited, and some further clarification is necessary. The authors also need to address a few confusing statements and missing details.\n\n1. In Proposition 3, the authors claimed that mixing with on-policy data can reduce the bias. I checked the proof but did not find anything relevant. Also, what is the amount of bias reduced?\n2. In Equation (1), could you provide a formal definition for \"V\"? \n3. The authors claimed at the beginning of Section 4 that the trust region method was proposed to mitigate the bias and variance problem of V-trace. However, I did not see how this is reflected in Propositions 4 and 5. Is this statement only based on empirical results?\n4. It was mentioned right below Equation (4) that \"Observe how this inner expectation ... matches the on-policy return...\". Could you provide a formal proof?\n5. What are the hyperparameters for the 9 agents used in Figure 1? Also, how did you choose \"b\" in trust region?\n6. A few notation issues / typo:\n(1) it's -> its\n(2) In Equation (5), should \"z \\in M_{\\beta, \\pi} (s_t)\" be \"\\mu_z \\in M_{\\beta, \\pi} (s_t)\"?\n(3) At the 2nd line of Page 7, should the content for the indicator function be \"\\beta (\\pi, \\mu, s_t) < b\"?\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer1"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer1"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"experience_assessment": {"required": true, "order": 4, "description": "Please make a selection that represents your experience correctly", "value-radio": ["I have published in this field for several years.", "I have published one or two papers in this area.", "I have read many papers in this area.", "I do not know much about this area."]}, "rating": {"value-dropdown": ["1: Reject", "3: Weak Reject", "6: Weak Accept", "8: Accept"], "order": 3, "required": true}, "review_assessment:_checking_correctness_of_experiments": {"required": true, "order": 7, "description": "If no experiments, please select N/A", "value-radio": ["I carefully checked the experiments.", "I assessed the sensibility of the experiments.", "I did not assess the experiments.", "N/A"]}, "review_assessment:_thoroughness_in_paper_reading": {"required": true, "order": 5, "description": "If this is not applicable, please select N/A", "value-radio": ["I read the paper thoroughly.", "I read the paper at least twice and used my best judgement in assessing the paper.", "I made a quick assessment of this paper.", "N/A"]}, "title": {"value-regex": "Official Blind Review #[0-9]+", "order": 1, "required": true, "description": "Please replace NUM with your AnonReviewer number (it is the number following \"AnonReviewer\" in your signatures below)", "default": "Official Blind Review #NUM"}, "review": {"value-regex": "[\\S\\s]{500,200000}", "order": 2, "description": "Provide your complete review here (500 - 200000 characters). For guidance in writing a good review, see this brief reviewer guide (https://iclr.cc/Conferences/2020/ReviewerGuide) with three key bullet points.", "required": true}, "review_assessment:_checking_correctness_of_derivations_and_theory": {"required": true, "order": 6, "description": "If no derivations or theory, please select N/A", "value-radio": ["I carefully checked the derivations and theory.", "I assessed the sensibility of the derivations and theory.", "I did not assess the derivations or theory.", "N/A"]}}, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "readers": {"values": ["everyone"], "description": "Select all user groups that should be able to read this comment."}, "nonreaders": {"values": []}, "writers": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1575841984906, "duedate": 1572706740000, "multiReply": false, "readers": ["everyone"], "nonreaders": [], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Reviewers"], "noninvitees": [], "tcdate": 1570237730201, "tmdate": 1575841984919, "super": "ICLR.cc/2020/Conference/-/Official_Review", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review"}}}, {"id": "HygTpk4Z9S", "original": null, "number": 3, "cdate": 1572057029305, "ddate": null, "tcdate": 1572057029305, "tmdate": 1572972404956, "tddate": null, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "invitation": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review", "content": {"experience_assessment": "I have published in this field for several years.", "rating": "6: Weak Accept", "review_assessment:_thoroughness_in_paper_reading": "I read the paper at least twice and used my best judgement in assessing the paper.", "review_assessment:_checking_correctness_of_experiments": "I assessed the sensibility of the experiments.", "title": "Official Blind Review #3", "review_assessment:_checking_correctness_of_derivations_and_theory": "I assessed the sensibility of the derivations and theory.", "review": "This paper investigates off-policy actor critic (AC) learning with experience replay using V-trace. It shows that V-trace policy gradient is not guaranteed to converge to a local optimal solution. To mitigate the bias and variance problem of V-trace and importance sampling, a trust region approach is proposed to adaptively selects only suitable behavior distributions when estimating the state-value of a policy. To this end, a behavior relevance function (KL divergence) is introduced to classify behavior as relevant. The proposed learning method LASER demonstrates the state-of-the-art data efficiency in Atari among agents trained up until 200M frames. In all, this paper is well motivated and technically sound. The draft can be improved by making it more self-contained by providing a sketch of the proof rather than refer everything to the appendix. Also it might be helpful to provide a pseudocode of LASER to help readers better understand the technical details. \n\nOther comments and questions:\n\n1) When talking about the selection process, z is treated as a random variable. What is its distribution?\n2) what does \u201cvery off-policy learning\u201d mean?\n3) In figure 3(left), why \u201cLASER: shared + trust region\u201d performs worse than \u201cLASER: not shared\u201d? \n4) In proposition 3. Q^w should be explained in the main text.\n"}, "signatures": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer3"], "readers": ["everyone"], "nonreaders": [], "writers": ["ICLR.cc/2020/Conference/Paper1932/AnonReviewer3"], "details": {"replyCount": 0, "writable": false, "overwriting": [], "revisions": false, "forumContent": {"title": "Off-Policy Actor-Critic with Shared Experience Replay", "authors": ["Simon Schmitt", "Matteo Hessel", "Karen Simonyan"], "authorids": ["suschmitt@google.com", "mtthss@google.com", "simonyan@google.com"], "keywords": ["Reinforcement Learning", "Off-Policy Learning", "Experience Replay"], "TL;DR": "We investigate and propose solutions for two challenges in reinforcement learning: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning.", "abstract": "We investigate the combination of actor-critic reinforcement learning algorithms with uniform large-scale experience replay and propose solutions for two challenges: (a) efficient actor-critic learning with experience replay (b) stability of very off-policy learning. We employ those insights to accelerate hyper-parameter sweeps in which all participating agents run concurrently and share their experience via a common replay module.\n\nTo this end we analyze the bias-variance tradeoffs in V-trace, a form of importance sampling for actor-critic methods. Based on our analysis, we then argue for mixing experience sampled from replay with on-policy experience, and propose a new trust region scheme that scales effectively to data distributions where V-trace becomes unstable.\n\nWe provide extensive empirical validation of the proposed solution. We further show the benefits of this setup by demonstrating state-of-the-art data efficiency on Atari among agents trained up until 200M environment frames.", "pdf": "/pdf/5136fa07d34aa4201c27a59ac871c3adf632d1f8.pdf", "paperhash": "schmitt|offpolicy_actorcritic_with_shared_experience_replay", "original_pdf": "/attachment/eea0866511270e2b730706da2b996a890b1ed007.pdf", "_bibtex": "@misc{\nschmitt2020offpolicy,\ntitle={Off-Policy Actor-Critic with Shared Experience Replay},\nauthor={Simon Schmitt and Matteo Hessel and Karen Simonyan},\nyear={2020},\nurl={https://openreview.net/forum?id=HygaikBKvS}\n}"}, "tags": [], "invitation": {"reply": {"content": {"experience_assessment": {"required": true, "order": 4, "description": "Please make a selection that represents your experience correctly", "value-radio": ["I have published in this field for several years.", "I have published one or two papers in this area.", "I have read many papers in this area.", "I do not know much about this area."]}, "rating": {"value-dropdown": ["1: Reject", "3: Weak Reject", "6: Weak Accept", "8: Accept"], "order": 3, "required": true}, "review_assessment:_checking_correctness_of_experiments": {"required": true, "order": 7, "description": "If no experiments, please select N/A", "value-radio": ["I carefully checked the experiments.", "I assessed the sensibility of the experiments.", "I did not assess the experiments.", "N/A"]}, "review_assessment:_thoroughness_in_paper_reading": {"required": true, "order": 5, "description": "If this is not applicable, please select N/A", "value-radio": ["I read the paper thoroughly.", "I read the paper at least twice and used my best judgement in assessing the paper.", "I made a quick assessment of this paper.", "N/A"]}, "title": {"value-regex": "Official Blind Review #[0-9]+", "order": 1, "required": true, "description": "Please replace NUM with your AnonReviewer number (it is the number following \"AnonReviewer\" in your signatures below)", "default": "Official Blind Review #NUM"}, "review": {"value-regex": "[\\S\\s]{500,200000}", "order": 2, "description": "Provide your complete review here (500 - 200000 characters). For guidance in writing a good review, see this brief reviewer guide (https://iclr.cc/Conferences/2020/ReviewerGuide) with three key bullet points.", "required": true}, "review_assessment:_checking_correctness_of_derivations_and_theory": {"required": true, "order": 6, "description": "If no derivations or theory, please select N/A", "value-radio": ["I carefully checked the derivations and theory.", "I assessed the sensibility of the derivations and theory.", "I did not assess the derivations or theory.", "N/A"]}}, "forum": "HygaikBKvS", "replyto": "HygaikBKvS", "readers": {"values": ["everyone"], "description": "Select all user groups that should be able to read this comment."}, "nonreaders": {"values": []}, "writers": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}, "signatures": {"values-regex": "ICLR.cc/2020/Conference/Paper1932/AnonReviewer[0-9]+", "description": "How your identity will be displayed."}}, "expdate": 1575841984906, "duedate": 1572706740000, "multiReply": false, "readers": ["everyone"], "nonreaders": [], "invitees": ["ICLR.cc/2020/Conference/Paper1932/Reviewers"], "noninvitees": [], "tcdate": 1570237730201, "tmdate": 1575841984919, "super": "ICLR.cc/2020/Conference/-/Official_Review", "signatures": ["ICLR.cc/2020/Conference"], "writers": ["ICLR.cc/2020/Conference"], "id": "ICLR.cc/2020/Conference/Paper1932/-/Official_Review"}}}], "count": 11}
{"Author": "Brian Santo\u00a0", "Date": "03.17.2021", "Keywords": "CPU, DRAM, foundry services, Semiconductor Design & Manufacturing, Semiconductor production equipment, SoC", "Article": " The last few generations of ICs incorporate incredibly small, physically complicated structures that are exceedingly difficult to manufacture, and now production processes have become so complex that inspection equipment cannot keep up. Applied Materials is remedying that by pairing its new Enlight optical inspection system with its SEMVision e-beam monitoring tool, and by supplementing the combination with a new AI-based system called ExtractAI that helps direct the inspection process. Applied Materials\u2019 Enlight optical inspection system. Production yield has always been a critical factor in semiconductor manufacturing, and that\u00e2\u0080\u0099s why IC manufacturers have always monitored wafers as often as they practically could throughout the production process. But producing integrated circuits has become so complex, the legacy approach to wafer inspection is no longer viable, according to Rafael (Rafi) Benami, vice president of Applied Materials\u00e2\u0080\u0099 process diagnostics and control products group. IC structures \u00e2\u0080\u0094 and the defects that can kill ICs \u00e2\u0080\u0094 are now so infinitesimally small that they\u00e2\u0080\u0099re nearing not only the physical limits of silicon, but also nearing the resolution limits of optical inspection systems. That\u00e2\u0080\u0099s a problem because having increasingly smaller features means that the most miniscule mis-formations and ever-tinier particles create problems. E-beam inspection systems, meanwhile, have superior resolution to optical systems, and are therefore more accurate, but they\u00e2\u0080\u0099re significantly slower. Production in the most recent nodes relies on multi-patterning (which is to say: far more steps), which translates into more points of possible failure, more possibilities for contamination, and therefore more potential inspection points. It is possible to increase the number of inspection points, but the cost goes up in a linear way, Benami said. As a practical matter, something has to give, and what gives is often inspection. That\u00e2\u0080\u0099s dangerous. Anything that could lead to lower yields is bad in several different ways. The longer a problem goes undiscovered, the more expensive it gets to fix. The cost of finding and a fixing a problem during R&D is bad enough, but the cost of finding and fixing a problem once into production can cost dearly; with a logic device at the 3nm node, a single week of downtime translates into $25 million in unamortized depreciation, Benami said. Similarly, a week of downtime producing DRAM costs 2% of annual revenue, plus price erosion. Applied\u00e2\u0080\u0099s response is to combine an improved optical system with an e-beam system, and use the combination in as efficient a way as possible, hence the artificial intelligence (AI). First, the company is pushing the speed limits and the resolution of optical systems with its new Enlight product. The system has both lightfield and greyfield (the common industry term is \u00e2\u0080\u009cdarkfield\u00e2\u0080\u009d) detectors; the former collects light directly reflected from flat surfaces, while the latter picks up light that scatters from angled surfaces. The new system can collect more yield-critical data per scan, Applied said, \u00e2\u0080\u009cresulting in a 3x reduction in the cost of capturing critical defects as compared to competing approaches.\u00e2\u0080\u009d The cost of inspection has been scaling too quickly to remain economically viable. (Source: Applied Materials. Click on the image for a larger view.) This allows chipmakers to insert many more inspection points in the process flow, according to the company. The greater volume of data improves the system\u00e2\u0080\u0099s ability to predict yield excursions before they occur, and enables root-cause traceback to accelerate corrective actions, the company added. Applied pairs its new Enlight optical system with the latest version of its SEMVision e-beam inspection system, the G7. Getting the two to work together well is one of the key places where the new ExtractAI technology comes in. The company explained that high-end optical scanners generate millions of nuisance signals \u00e2\u0080\u0094 noise. Sifting out actual defects from the noise is an ongoing problem. Applied says that its AI can learn to classify \u00e2\u0080\u009cspecific yield signals so that by inference, the Enlight system resolves all of the signals on the wafer map, differentiating yield killers from noise. ExtractAI technology is incredibly efficient; it characterizes all of the potential defects on the wafer map after reviewing only 0.001% of the samples. The result is an actionable map of classified defects that accelerates semiconductor node development, ramp and yield.\u00e2\u0080\u009d The system relies on the fast optical component for first-pass scans. It analyzes the data in real-time, and then directs the e-beam system to more precisely scrutinize those sites most likely to be actual defects, Benami explained. The company said its installed base of SEMVision G7 systems is already compatible with the new Enlight system and ExtractAI technology. Applied says it has been developing Enlight and ExtractAI since 2016, and that the new inspection system is in use in dozens of fabs all around the world. Asked about the price, Benami responded: \u00e2\u0080\u009cIt costs a lot of money. Relative to our competitor, though, it\u00e2\u0080\u0099s much more economical due to the speed and sensitivity.\u00e2\u0080\u009d The challenges that keep making inspection more difficult. (Source: Applied Materials. Click on the image for a larger view.) Share this:TwitterFacebookLinkedIn "}
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{"title":"Celeste and Jesse Forever 2012 BRRiP XViD-sC0rp","uid":8037019,"size":744743575,"categoryP":"video","categoryS":"movies","magnet":"?xt=urn:btih:47074d68383d1ca289dcd2370de15c6252b22134&amp;dn=Celeste+and+Jesse+Forever+2012+BRRiP+XViD-sC0rp&amp;tr=udp%3A%2F%2Ftracker.openbittorrent.com%3A80&amp;tr=udp%3A%2F%2Fopen.demonii.com%3A1337&amp;tr=udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969&amp;tr=udp%3A%2F%2Fexodus.desync.com%3A6969","seeders":0,"leechers":1,"uploader":"sC0rp-ET","files":5,"time":1358538330,"description":"A divorcing couple tries to maintain their friendship while they both pursue other people.\n\nGenre: Comedy | Drama | Romance\nIMDB rating: 6.5/10 from 2,352 users\nDirector: Lee Toland Krieger\nStars: Rashida Jones, Andy Samberg and Elijah Wood\nRelease Name: Celeste and Jesse Forever 2012 BRRiP XViD-sC0rp\nSize: 700 MiB\nVideo: XviD | 640 × 272 | 924 Kbps | 23.976 fps\nAudio: MP3 48.0 KHz stereo 128kbps | English\nSubs: English\nRuntime: 1h 32mn\nIMDB link: http://www.imdb.com/title/tt1405365/\nSource: sparks (Thanks)\n\nScreenshots: &lt;a href=&quot;\nhttp://imgr.us/images/s9neixyjyfkbyu1c1p4n.png&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://imgr.us/images/s9neixyjyfkbyu1c1p4n.png&lt;/a&gt;\n &lt;a href=&quot;\nhttp://imgr.us/images/wba0qb3wioxxr4ycv0f7.png&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://imgr.us/images/wba0qb3wioxxr4ycv0f7.png&lt;/a&gt;\n &lt;a href=&quot;\nhttp://imgr.us/images/z4of2mrwxfidh4znkiox.png&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://imgr.us/images/z4of2mrwxfidh4znkiox.png&lt;/a&gt;\n\nGreets:\noziman | BONE | HP | ETRG | neon | 4PlayHD | Horrorspoke | SaM | MYSTiC...","torrent":{"xt":"urn:btih:47074d68383d1ca289dcd2370de15c6252b22134","amp;dn":"Celeste+and+Jesse+Forever+2012+BRRiP+XViD-sC0rp","amp;tr":["udp%3A%2F%2Ftracker.openbittorrent.com%3A80","udp%3A%2F%2Fopen.demonii.com%3A1337","udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969","udp%3A%2F%2Fexodus.desync.com%3A6969"],"infoHash":"47074d68383d1ca289dcd2370de15c6252b22134","infoHashBuffer":{"type":"Buffer","data":[71,7,77,104,56,61,28,162,137,220,210,55,13,225,92,98,82,178,33,52]},"announce":[],"urlList":[]}}
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{ "name": "Ranjitha", "company": "Wipro" }
{"poster":"Zleazy","date":"2017-05-07T13:05:59.619+0000","title":"Diamond ADC Main sucht Supporter zum climben","subforum":"Clans & Teams","up_votes":1,"down_votes":0,"body":"Hey Leute,\r\nich bin momentan auf der Suche nach einem Supporter, der mit mir climben will.\r\nBin momentan Platin 1, war aber schon Diamond, und mein Supporter sollte auch Platin 1 - Low Diamond sein.\r\nSpiele Jhin Lucian Sivir Ashe (Hab momentan nicht mehr Adc xD habe in November letzten Jahr angeffangen und vor 3 Wochen mit Rankeds und bin nach 9 Tagen Diamond 5 geworden dann bin ich rum gestuckt, weil ich keine Motivation mehr hatte ^^).\r\n\r\nWer will kann mich einfach adden :D","replies":[]}
{"poster":"VoiD Apollo","date":"2017-01-22T20:51:21.128+0000","title":"Jungler sucht Team Gold Bereich","subforum":"Clans & Teams","up_votes":1,"down_votes":1,"body":"Heey,\r\n\r\nIch hei&szlig;e Sebastian (Sebi) bin 18 Jahre alt.\r\nZu mir:\r\n-- konzentriert\r\n-- viel zeit f&uuml;rs team\r\n-- bringe wissen &uuml;ber LOL mit\r\n-- kritikf&auml;hig\r\n-- ernsthaftigkeit und spa&szlig;\r\n-- Silber 2 (Season 6) momentan Flex Gold I\r\n-- TS-3 und Discord\r\n\r\nbei Interesse einfach In-Game adden G&eacute;tGank&eacute;dByM&eacute;","replies":[]}
{"poster":"Spotify","date":"2016-04-29T13:07:54.630+0000","title":"PBE?","subforum":"Discussioni generali","up_votes":2,"down_votes":1,"body":"Salve , volevo sapere come funziona la pbe . Una volta installato il client si hanno tutti i pg sbloccati ? E si pu&ograve; aiutare la riot a capire eventuali bug ecc...? Sono stato scelto e volevo capire come funzionasse . Grazie in anticipo.","replies":[{"poster":"Whommy","date":"2016-04-29T13:43:45.494+0000","up_votes":2,"down_votes":0,"body":"io lo aspetto da 2 anni...sigh","replies":[{"poster":"XIII Vanitas","date":"2016-04-29T23:47:15.955+0000","up_votes":1,"down_votes":0,"body":"Non ti perdi nulla.\nQuando va bene ci sono tra i 180 e i 220 di ping.\nIl PBE è praticamente ingiocabile se vivi in Italia o ancora più ad est.","replies":[]},{"poster":"Hell88","date":"2016-04-29T14:33:24.610+0000","up_votes":1,"down_votes":0,"body":"è più un terno al lotto che trovare una skin decente nei bauli!","replies":[]}]},{"poster":"Spotify","date":"2016-05-16T16:55:38.824+0000","up_votes":1,"down_votes":0,"body":"grazie mille per le risposte, ho risolto =)","replies":[]},{"poster":"ilsimptico","date":"2016-04-29T15:32:14.106+0000","up_votes":1,"down_votes":0,"body":"Io l'ho mandata tempo fa la richiesta e non me l'hanno accettata perchè ero di lvl inferiore al 30 :(( ora penso di non avere + chance di entrarci :(((((","replies":[]},{"poster":"Floppyz","date":"2016-04-29T13:15:42.196+0000","up_votes":1,"down_votes":0,"body":"Qui trovi tutte le info a riguardo: https://support.riotgames.com/hc/it/articles/201751904-FAQ-Public-Beta-Environment","replies":[]},{"poster":"LightIsMyPath","date":"2016-04-29T17:16:04.435+0000","up_votes":1,"down_votes":2,"body":"Ciao :) probabilmente dovrai fare una partita con un champ in prova per sbloccare i pi e gli rp, che poi potrai spendere come vuoi. Calcola che quasi tutto costa 1 pi quindi puoi comprare a iosa :D Per segnalare i bug c'e' un'apposita schermata nella home del client e per dire la tua sui contenuti che provi vai sul forum del Pbe ( basta che googli \"pbe boards\" e lo trovi subito ).","replies":[]}]}
{"title":"The Boy In The Striped Pajamas: Motion Picture Soundtrack, James","uid":5470887,"size":38834379,"categoryP":"audio","categoryS":"music","magnet":"?xt=urn:btih:f78a7f49bd5d3c08e423fa43a605114644babf06&amp;dn=The+Boy+In+The+Striped+Pajamas%3A+Motion+Picture+Soundtrack%2C+James&amp;tr=udp%3A%2F%2Ftracker.openbittorrent.com%3A80&amp;tr=udp%3A%2F%2Fopen.demonii.com%3A1337&amp;tr=udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969&amp;tr=udp%3A%2F%2Fexodus.desync.com%3A6969","seeders":0,"leechers":1,"uploader":"BlueZeus5","files":-1,"time":1269881636,"description":"◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘\nMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM\n********************************MMMMMMMMMMMMMMMMMMM********************************\n**********************************◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘**********************************\nMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM◘************* *◘MMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM\nBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS ◘* BLUEZEUS *◘ BLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS\nLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSB ◘*-------------*◘ SBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEU\nUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSBL ◘* *◘ USBLUEZEUSBLUEZEUSBLUEZEUSBLUEZE\nEZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLU ◘* *◘ EUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZ\nZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUE ◘* A *◘ ZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUE\nEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZ ◘* BLUEZEUS *◘ EZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLU\nUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZE ◘* EXCLUSIVE *◘ UEZEUSBLUEZEUSBLUEZEUSBLUEZEUSBL\nSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEU ◘* -TORRENT- *◘ LUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSB\nBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS ◘* *◘ BLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS\nBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS ◘* ♦2010♦ *◘ BLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUS\nSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEU ◘* *◘ LUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSB\nUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZE ◘* *◘ UEZEUSBLUEZEUSBLUEZEUSBLUEZEUSBL\nEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZ ◘* MUSIC *◘ EZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLU\nZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUE ◘* *◘ ZEUSBLUEZEUSBLUEZEUSBLUEZEUSBLUE\nEZEUSBLUEZEUsBLUEZEUSBLUEZEUSBLU ◘* *◘ EUSBLUEZEUSBLUEZEUSBLUEZEUSBLUEZ\nUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSBL ◘*-------------*◘ USBLUEZEUSBLUEZEUSBLUEZEUSBLUEZE\nLUEZEUSBLUEZEUSBLUEZEUSBLUEZEUSB ◘* BLUEZEUS *◘ SBLUEZEUSBLUEZEUSBLUEZEUSBLUEZEU\nMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM◘***************◘MMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM\n**********************************◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘**********************************\n*********************************MMMMMMMMMMMMMMMMM*********************************\nMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMMM\n◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘◘\n\n\n\n The Boy In The Striped Pajamas Soundtrack\n Original Motion Picture Score \n By James Horner\n-----------------------------------------------------------------------------------\nOriginal Release Date: November 4, 2008\n\nAudio: 160kbps/Stereo\n\n\nTracks+Credits:\n\nTrack #01 - Boys Playing Airplanes\n Composed by James Horner \n Performed by James Horner\n\nTrack #02 - Exploring The Forest\n Composed by James Horner\n Performed by James Horner\n\nTrack #03 - The Train Ride To A New Home\n Composed by James Horner\n Performed by James Horner\n\nTrack #04 - The Winds Gently Blow Through The Garden\n Composed by James Horner\n Performed by James Horner\n\nTrack #05 - Dolls Are Not For Big Girls, Propaganda Is\n Composed by James Horner\n Performed by James Horner\n\nTrack #06 - An Odd Discovery Beyond The Trees\n Composed by James Horner\n Performed by James Horner\n\nTrack #07 - Black Smoke\n Composed by James Horner\n Performed by James Horner\n\nTrack #08 - Evening Supper - A Family Slowly Crumbles\n Composed by James Horner\n Performed by James Horner\n\nTrack #09 - The Funeral\n Composed by James Horner\n Performed by James Horner\n\nTrack #10 - The Boys' Plans, From Night To Day\n Composed by James Horner\n Performed by James Horner\n\nTrack #11 - Strange New Clothes\n Composed by James Horner\n Performed by James Horner\n\nTrack #12 - Remembrance, Remembrance\n Composed by James Horner\n Performed by James Horner\n\n\n\n-----------------------------------------------------------------------------------\nEditorial Reviews (Amazon):\n\nThe music to this soundtrack is beautiful, and is as haunting to the soul as the \nmovie was. --DC\n\nThis is a great soundtrack - the music is amazing. I would recommend this to ANYONE \nand everyone. --Eli Houston \n\n-----------------------------------------------------------------------------------\nWhat's In This Torrent?:\n\n1. 12 Enhanced Tracks Ripped from the Original Audio CD \n 1. 01 - Boys Playing Airplanes.mp3\n 2. 02 - Exploring The Forest.mp3\n 3. 03 - The Train Ride To A New Home.mp3\n 4. 04 - The Winds Gently Blow Through The Garden.mp3\n 5. 05 - Dolls Are Not For Big Girls, Propaganda Is.mp3\n 6. 06 - An Odd Discovery Beyond The Trees.mp3\n 7. 07 - Black Smoke.mp3\n 8. 08 - Evening Supper - A Family Slowly Crumbles.mp3\n 9. 09 - The Funeral.mp3\n 10. 10 - The Boys' Plans, From Night To Day.mp3\n 11. 11 - Strange New Clothes.mp3\n 12. 12 - Remembrance, Remembrance.mp3\n 13. 00 - The Boy In The Striped Pajamas.m3u\n \n2. The Original Album Cover at 500x500-Pixels\n 1. The Boy In The Striped Pajamas [Music From The Motion Picture].jpg\n\n-----------------------------------------------------------------------------------\nBe Sure to leave comments and reviews once you download and analyze the torrent...\nThanx Guyz, be sure to also have a wonderful &amp; fulfilling life, BlueZeusTorrentz!!\n\nNow SEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEEED!!!!!!!!!!\n","torrent":{"xt":"urn:btih:f78a7f49bd5d3c08e423fa43a605114644babf06","amp;dn":"The+Boy+In+The+Striped+Pajamas%3A+Motion+Picture+Soundtrack%2C+James","amp;tr":["udp%3A%2F%2Ftracker.openbittorrent.com%3A80","udp%3A%2F%2Fopen.demonii.com%3A1337","udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969","udp%3A%2F%2Fexodus.desync.com%3A6969"],"infoHash":"f78a7f49bd5d3c08e423fa43a605114644babf06","infoHashBuffer":{"type":"Buffer","data":[247,138,127,73,189,93,60,8,228,35,250,67,166,5,17,70,68,186,191,6]},"announce":[],"urlList":[]}}
{"poster":"FXV Kazakh","date":"2018-08-02T11:54:59.755+0000","title":"FroZen Gaming baut ein Platin / Diamond Team auf","subforum":"Clans & Teams","up_votes":1,"down_votes":0,"body":"Hi Mein Name ist ATH FluffyNeko und unser Clan hat sich dazu entschlossen\nein LoL Team aufzubauen\nUnsere ziele werden sein\n- Bei Turnieren Teilzunehmen und als Sieger raus zugehen\n{{sticker:sg-miss-fortune}} \nWas erwartet Wird\n{{sticker:sg-lux-2}} \n- Nicht leicht Tilt bar sein\n- sich als Team gut verstehen\n- Ts3 zu besitzen\n- In flex Diamond oder High Platin\n\nAlso wenn ihr lust und zeit habt addet mich Alle Personen die in der liste\nsind sind noch nicht save Drinne das ist ein Tryout \n\n\nTop - I Freier Platz \njngl - I Inscribed [Dia III]\nMid - I Der Zerst&ouml;rer0 [Dia V]\nAdc - I TR Ximon [Dia IV]\nSupp - I DOC Bulletinh0 [Dia II]\n\nMit freundlichen gr&uuml;&szlig;en Waldi\n{{sticker:sg-ezreal}}\n\nTrainings Zeiten :\n\nWird mit den Teampartnern ausgemacht ^^\n\n{{sticker:sg-jinx}}\n\naddet Inscribed\n","replies":[]}
{"poster":"Romanium","date":"2015-03-02T17:09:38.873+0000","title":"Banes Tournament's Vol. 5 - \"Asassinate the King\"","subforum":"Turniere & Veranstaltungen","embed":{"description":"Moin, Hier findet ihr die Informationen zu meinem Turnier! Zulassung: -Jeder Spieler jedes Elo's- Spielbeginn ist am 07.03., das gesamte Turnier wird in Spieltagen eingeteilt, für bessere Zeiteinteilung. Ein Spieltag beginnt Samstags um 20:00 Uhr. Zu jedem Spieltag sind 10 Teilnehmer zugelassen. Meldet euch also an und ihr werdet erfahren an welchem Spieltag ihr dran seid!","url":"http://banestournaments.jimdo.com/asassinate-the-king/","image":"http://u.jimdo.com/www63/o/s007d905c50c909f4/img/i684a855b39b40962/1425231580/std/image.jpg"},"up_votes":1,"down_votes":1,"body":"Morgen, Mein Name ist Bane und ich veranstalte seit ca. 3 Jahren bereits Turniere in League of Legends. Meine Tournaments zeichnen sich meist durch die \"speziellen\" verschiedenen Spielmodi aus. Mal werden sie von Riot gesponsert, mal wieder auch nicht eben wegen starken Regelabweichungen aber bisher konnte ich viele Teilnehmer zufriedenstellen und habe generell eine Anzahl von 30-40 Mitspielern. So wird auch dieses Turnier nicht von Riot gesponsert, aber der Gewinner bekommt eine kleine AUfmerksamkeit von 20 EUro, verpackt in eine Paysafe Card. Wollt ihr mehr über das Event erfahren, so geht nun auf meine Homepage \" Banestournaments.jimdo.com \" oder klickt auf den hier beigefügtem Link. Ich freue mich auf viele Mitspieler!","replies":[{"poster":"Termii TFT","date":"2015-03-03T06:20:59.451+0000","up_votes":1,"down_votes":0,"body":"das ist... quatsch.","replies":[]}]}
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{"poster":"LucaFore","date":"2020-03-01T21:06:18.104+0000","title":"Non mi arrivano le casse","subforum":"Aiuto e supporto","up_votes":1,"down_votes":0,"body":"Salve a tutti,\r\nè da un pò di tempo che ho un problema riguardante le casse, dunque nonostante io in varie modalità di game (ranked/draft/aram) ho preso S-/S/S+ una volta tornato nell recap partita non mi da le casse non so cosa fare \r\naiuti?","replies":[{"poster":"The Fluffy Lamb","date":"2020-03-02T08:11:02.380+0000","up_votes":2,"down_votes":0,"body":"https://drive.google.com/file/d/1uvMGJKp4rg1Mm7HR6L35MkBWl7KMDTAc/view?usp=sharing\n\nin basso a sinistra ci sta l'indicatore delle casse.\nil massimo è 4\nUna cassa ci mette una settimana a ricaricarsi (penso)\nSe ne hai zero non le droppi neanche se prendi S+","replies":[]}]}
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{"title":"Pasta All Uovo 06 - How to make it","uid":5525047,"size":463470592,"categoryP":"video","categoryS":"movies","magnet":"?xt=urn:btih:2c15faa1ccfcd09f48dd2f47df4bc3127638c7ed&amp;dn=Pasta+All+Uovo+06+-+How+to+make+it&amp;tr=udp%3A%2F%2Ftracker.openbittorrent.com%3A80&amp;tr=udp%3A%2F%2Fopen.demonii.com%3A1337&amp;tr=udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969&amp;tr=udp%3A%2F%2Fexodus.desync.com%3A6969","seeders":0,"leechers":1,"uploader":"susiccu","files":1,"time":1272746723,"description":"How to make it - Pasta all'uovo 06\nItaly, Sardinia Dec 2009 - Duration Min. 06.27)\n\n\nSig.ra Maria, 85 yo\nPaolo, her son\n\nHow to prepare a &quot;hand made pasta&quot;, &quot;Ravioli vegetali&quot; - a traditional dish, following the Sardinian Tradition of our ancestors.\n\nThank you for downloading it. Please, share it to continue the Tradition.\n\n1. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5524946/Pasta_All_Uovo_01_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5524946/Pasta_All_Uovo_01_-_How_to_make_it&lt;/a&gt;\n\n2. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5524958/Pasta_All_Uovo_02_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5524958/Pasta_All_Uovo_02_-_How_to_make_it&lt;/a&gt;\n\n3. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5524966/Pasta_All_Uovo_03_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5524966/Pasta_All_Uovo_03_-_How_to_make_it&lt;/a&gt;\n\n4. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5524975/Pasta_All_Uovo_04_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5524975/Pasta_All_Uovo_04_-_How_to_make_it&lt;/a&gt;\n\n5. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5525017/Pasta_All_Uovo_05_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5525017/Pasta_All_Uovo_05_-_How_to_make_it&lt;/a&gt;\n\n6. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5525047/Pasta_All_Uovo_06_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5525047/Pasta_All_Uovo_06_-_How_to_make_it&lt;/a&gt;\n \n7. &lt;a href=&quot;\nhttp://thepiratebay.se/torrent/5525059/Pasta_All_Uovo_07_-_How_to_make_it&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/torrent/5525059/Pasta_All_Uovo_07_-_How_to_make_it&lt;/a&gt;","torrent":{"xt":"urn:btih:2c15faa1ccfcd09f48dd2f47df4bc3127638c7ed","amp;dn":"Pasta+All+Uovo+06+-+How+to+make+it","amp;tr":["udp%3A%2F%2Ftracker.openbittorrent.com%3A80","udp%3A%2F%2Fopen.demonii.com%3A1337","udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969","udp%3A%2F%2Fexodus.desync.com%3A6969"],"infoHash":"2c15faa1ccfcd09f48dd2f47df4bc3127638c7ed","infoHashBuffer":{"type":"Buffer","data":[44,21,250,161,204,252,208,159,72,221,47,71,223,75,195,18,118,56,199,237]},"announce":[],"urlList":[]}}
{"poster":"Carry White","date":"2015-04-11T12:26:37.878+0000","title":"Jungler sucht Team","subforum":"Battlegrounds-Turniere","up_votes":1,"down_votes":0,"body":"Hallo\r\nTeamspeak und Headset vorhanden.\r\nSpiele seit Season 2 und bin zurzeit Gold 5, sch&auml;tze mich aber weiter oben ein.\r\n(K&ouml;nnt euch ja selbst &uuml;berzeugen)\r\nBin 18\r\nBei Interesse adde: Carry White","replies":[]}
{"poster":"Sir Crucifix ","date":"2019-10-26T21:16:53.368+0000","title":"me estafaron , me dieron ese twister farter legendario un asco","subforum":"Charlas Generales","up_votes":8,"down_votes":3,"body":"yo se que a caballo regalado no se le miran los dientes , pero me dieron ese twister fate magnifico que solo es ropa , eso vale 975 que flashan ?","replies":[{"poster":"Joaquìn Phoenix","date":"2019-10-26T21:20:17.403+0000","up_votes":4,"down_votes":0,"body":"Esta echo a proposito yo no me como el verso de que a la mayorìa por casualidad nos toque ese skin de TF y el que me tocò a mi corki trineo de hielo. Seguramente lo tienen programado para que la mayorìa salgan esos skin ya que a esos nadie los comprarìa jamàs.","replies":[{"poster":"Tea with Tibbers","date":"2019-10-26T22:06:08.190+0000","up_votes":2,"down_votes":0,"body":"> [{quoted}](name=Joaquìn Phoenix,realm=LAS,application-id=v7qsfXsE,discussion-id=HuU9dhVr,comment-id=0000,timestamp=2019-10-26T21:20:17.403+0000)\n>\n> Esta echo a proposito yo no me como el verso de que a la mayorìa por casualidad nos toque ese skin de TF y el que me tocò a mi corki trineo de hielo. Seguramente lo tienen programado para que la mayorìa salgan esos skin ya que a esos nadie los comprarìa jamàs.\n\nA mi en esta semana me regalaron un garen rey divino, fiora proyecto, malphite odisea, jinx guardiana estelar, camille aquelarre, unas skins menores de esas q no valen nada y la joya de la corona, ezreal academia de combate (que esta casi a la altura de ezreal pulso de fuego)\ndeja de inventar, es una loteria, por ahi te tocan 3 cajas con campeones, como te tocan 3 cajas con skins epicas.","replies":[{"poster":"Gine4YourLIVE","date":"2019-10-26T23:50:44.571+0000","up_votes":1,"down_votes":0,"body":"Exacto, no entiendo como la gente se enoja tanto si es aleatoriedad \nOsea si vas a la lotería y tu numero no es el ganador vas a ir a la tienda y decirles ¿porque no mi numero no fue el ganador?\nno se como hace riot para manejar una empresa y soportar los llantos de adolescentes \n{{sticker:sg-lux-2}}","replies":[]}]},{"poster":"Mazinga","date":"2019-10-26T21:52:51.991+0000","up_votes":2,"down_votes":0,"body":"> [{quoted}](name=Joaquìn Phoenix,realm=LAS,application-id=v7qsfXsE,discussion-id=HuU9dhVr,comment-id=0000,timestamp=2019-10-26T21:20:17.403+0000)\n>\n> Esta echo a proposito yo no me como el verso de que a la mayorìa por casualidad nos toque ese skin de TF y el que me tocò a mi corki trineo de hielo. Seguramente lo tienen programado para que la mayorìa salgan esos skin ya que a esos nadie los comprarìa jamàs.\n\na mi me salió lee sin puño de dios{{sticker:slayer-pantheon-thumbs}}","replies":[{"poster":"Mµstang","date":"2019-10-26T22:40:44.024+0000","up_votes":2,"down_votes":1,"body":"Esa tambien la queria como segunda opcion, pero por suerte me salio la primera, Garen rey divino {{sticker:sg-jinx}}","replies":[]}]}]},{"poster":"Mµstang","date":"2019-10-26T22:39:45.691+0000","up_votes":3,"down_votes":0,"body":"Si apretas CTRL + 5, activa los efectos de la skin.","replies":[]},{"poster":"Zerø Cool","date":"2019-10-26T21:30:21.695+0000","up_votes":2,"down_votes":0,"body":"a mi garen rey divino me toco {{sticker:slayer-jinx-wink}}","replies":[]},{"poster":"Ysera","date":"2019-10-26T21:29:09.451+0000","up_votes":2,"down_votes":0,"body":"aca igual me salio\nlastima que su regalo sea un burla para muchos que nos toco","replies":[]},{"poster":"Hell Darking","date":"2019-10-26T21:28:56.244+0000","up_votes":2,"down_votes":0,"body":"a mi me dieron la de heimer con los dragones.. gg supongo","replies":[]},{"poster":"DARKBOW923","date":"2019-10-26T23:44:54.280+0000","up_votes":1,"down_votes":0,"body":"A mi me dieron Annie en wonderland... {{sticker:sg-ahri-1}}","replies":[{"poster":"Tea with Tibbers","date":"2019-10-27T00:16:57.425+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=DARKBOW923,realm=LAS,application-id=v7qsfXsE,discussion-id=HuU9dhVr,comment-id=0006,timestamp=2019-10-26T23:44:54.280+0000)\n>\n> A mi me dieron Annie en wonderland... {{sticker:sg-ahri-1}}\n\nque envidia.. yo la tengo en \"Tu tienda\" con 50% de descuento, habra q desempolvar la billetera","replies":[{"poster":"DARKBOW923","date":"2019-10-27T20:10:58.295+0000","up_votes":1,"down_votes":0,"body":"No tiene partículas nuevas ni animaciones.. no se de donde se sacaron lo de que esa skin es legendaria.. pero bueno.","replies":[{"poster":"Tea with Tibbers","date":"2019-10-28T06:46:55.399+0000","up_votes":1,"down_votes":0,"body":"> [{quoted}](name=DARKBOW923,realm=LAS,application-id=v7qsfXsE,discussion-id=HuU9dhVr,comment-id=000600000000,timestamp=2019-10-27T20:10:58.295+0000)\n>\n> No tiene partículas nuevas ni animaciones.. no se de donde se sacaron lo de que esa skin es legendaria.. pero bueno.\n\ncoincido, me parece una skin que no tiene nada de legendaria pero bueno, siendo un OTP Annie..","replies":[]}]}]}]},{"poster":"Metals349","date":"2019-10-26T23:54:06.148+0000","up_votes":1,"down_votes":0,"body":"A mi me dieron a heimerdinger alien {{sticker:sg-lulu}}","replies":[]},{"poster":"Tankyras","date":"2019-10-26T22:59:38.722+0000","up_votes":1,"down_votes":2,"body":"me toco pyke proyecto horrible ni lo uso lo hice esencia naranja, debería tocarte las que usas con mas frecuencia algunos les toco ashe forajida, etc\n\n{{sticker:slayer-jinx-unamused}}","replies":[]}]}
{ "fadeOut": 1.5, "fadein": 1.5, "scripts": [ { "mode": 1, "sequence": [ [ "速科夫的一天\n\n<size=45>五 午後的速科夫·上</size>", 1 ] ], "stopbgm": true }, { "side": 2, "dir": 1, "flashout": { "alpha": [ 0, 1 ], "dur": 1, "black": true }, "flashin": { "alpha": [ 1, 0 ], "black": true, "delay": 1, "dur": 1 }, "say": "港區·指揮室", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "bgm": "story-1", "bgmDelay": 2, "bgName": "bg_story_task" }, { "say": "嗯~~~哈~~~", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "say": "吃飽喝足,是時候午睡了呢。", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "options": [ { "content": "打哈欠", "flag": 1 } ], "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "say": "指揮官也想午睡了嗎?", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "say": "嘻嘻,工作了一上午,不好好休息可沒辦法應付下午的工作哦?", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "say": "所以指揮官去午睡吧,我會在午休結束時喊你起來的!", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "options": [ { "content": "點頭", "flag": 1 }, { "content": "懷疑她也會睡著", "flag": 2 } ], "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "optionFlag": 2, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "雖然想這麼做,不過一產生午睡的念頭,睏意就滾滾襲來,眼皮一下子就撐不住了。", "bgName": "bg_story_task" }, { "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "……稍微睡會兒吧。", "bgName": "bg_story_task" }, { "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "side": 2, "dir": 1, "flashout": { "alpha": [ 0, 1 ], "dur": 1, "black": true }, "flashin": { "alpha": [ 1, 0 ], "black": true, "delay": 1, "dur": 1 }, "blackBg": true, "say": "…………" }, { "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "side": 2, "dir": 1, "flashout": { "alpha": [ 0, 1 ], "dur": 1, "black": true }, "flashin": { "alpha": [ 1, 0 ], "black": true, "delay": 1, "dur": 1 }, "say": "朦朧中似乎聽到了什麼……", "bgName": "bg_story_task" }, { "say": "啊,指揮官還真是,說睡就睡著了呢。", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "say": "不過平時要做那麼多的事,會累也是沒有辦法的事呢,指揮官辛苦啦~", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "頭上似乎被輕輕摸了一下。", "bgName": "bg_story_task" }, { "say": "近距離觀察指揮官的臉還是頭一次,讓我好好看看……", "actor": 808010, "side": 2, "dir": 1, "nameColor": "#a9f548", "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "嗯……仔細一看,指揮官果然……", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "還是很普通嘛~完全沒有我可愛,或者巴爾那種帥氣感。", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "不過…願意陪我一起玩,不會嫌我煩,而且總是知道我喜歡什麼,我想要什麼。", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "明明要管理這麼大的艦隊,卻從來不會冷落我,甚至會抽時間陪我午睡。", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "真是的…這樣不是讓人家根本離不開你了嘛…", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "臉上傳來了柔軟的觸感和熟悉的香氣……是什麼呢……", "bgName": "bg_story_task" }, { "actor": 808010, "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "我最……你了哦,指揮官~", "painting": { "alpha": 0.3, "time": 1 }, "bgName": "bg_story_task" }, { "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "速科夫好像說了什麼很重要的話。不過,已經撐不住睏意了……", "bgName": "bg_story_task" }, { "side": 2, "dir": 1, "typewriter": { "speed": 0.05, "speedUp": 0.01 }, "say": "…………", "blackBg": true, "bgName": "bg_story_task" } ], "fadeType": 2, "mode": 2, "id": "XUKUFU5", "once": true }
{ "first_name": "Zhen", "href": "http://data.globalchange.gov/person/4148.json", "id": 4148, "last_name": "Zhang", "middle_name": null, "orcid": null, "uri": "/person/4148", "url": null }
{"poster":"Cocain evo cigo","date":"2016-11-06T20:59:32.548+0000","title":"Elfelejtett Email","subforum":"Segítség és támogatás","up_votes":1,"down_votes":0,"body":"Van egy eunes accountom de sajnos meghalt az emailom , &eacute;s m&aacute;s emailre se engedi &aacute;trakni amig neml&eacute;ptem be az eredetibe. de eredetibe m&aacute;r nem enged be... mit tudok tenni?","replies":[{"poster":"Cocain evo cigo","date":"2016-11-07T12:50:09.633+0000","up_votes":1,"down_votes":0,"body":"hát nagyon remélem. eléggé fontos lenne.. emailon amit kaptam levelet hogy elküldtem nekik ezt az izét, rámegyek a levelemre amit irtam nekik és hibát ir.. nemtudom h megkapták e egyáltalán:(","replies":[{"poster":"Shikaichi","date":"2016-11-07T22:27:26.291+0000","up_votes":1,"down_votes":0,"body":"Ha nagyon sokáig nem kapsz választ, akkor szerintem próbáld meg még egyszer. De ugye ez annak a kockázatát is vonja maga után, hogyha újra írsz, akkor hátra kerül a sorban a leveled.","replies":[]}]},{"poster":"Cocain evo cigo","date":"2016-11-06T21:24:01.440+0000","up_votes":1,"down_votes":0,"body":"irtam. szerinted helyre tudják állitani? és kb mennyi idö?","replies":[{"poster":"Shikaichi","date":"2016-11-06T22:10:19.696+0000","up_votes":1,"down_votes":0,"body":"Ők azért vannak, hogy segítsenek az ilyesmikben, szóval szerintem igen. :)\nAmúgy általában egy napon belül válaszolnak, de hogy pontosan meddig tart egy ilyet helyrehozni, nem tudom.","replies":[]}]},{"poster":"Shikaichi","date":"2016-11-06T21:01:17.691+0000","up_votes":1,"down_votes":0,"body":"Írj a [Játékostámogatásnak](https://support.riotgames.com/hc/hu)!","replies":[]}]}
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{ "forum_title": "Golf", "user": "JARL", "user_id": "35787", "date": "2003-04-08 16:28:43", "title": "Nýir tímar, ný klúbbhús?", "text": "Mörgum sem ferðast hafa erlendis í golf hafa tekið eftir hve klúbbhúsin þar eru mjög svo vegleg og bjóða klúbbfélögum oft athvarf frá hinu daglega amstri hversdagslífsins. Þeir bjóða upp á góða veitingasölu ásamt góðum sal með sófum þar sem hægt að horfa á golfdagskrá meðan borðað er, vegleg búningsaðstaða með gufubaði og heitum potti er ekki óalgeng.\nÉg hef ferðast nokkuð út fyrir landsteinana til að spila golf og hefur mér þótt þetta til mikilla prýði að geta boðið golfurum upp á smá afþreyingu, þetta kemur í veg fyrir það að maður komi 10 mín fyrir teig og spili í fjóra tíma og hlaupi svo á bílastæðið og keyri í burtu.\nÞessi íslenska hefð þykir mér ekki til fyrirmyndar og þykir mér það klúbbanna að tryggja að aðstaða fyrir klúbbamenningu sé til staðar.\nG.R. tók grafarholtsskála til gagngera breytinga og gerði klúbbhúsið nánast fokhelt áður en þeir byggðu innviði þess upp á nýtt. Þessar endurbætur hefðu mátt vera meira útpældar, m.a. var dýrindis parket sett á salinn þannig að maður getur ekki gengið inn á golfskónum og fengið sér að borða og kannski einn kaldann eftir golfhring nema að fara úr skónum. Það vita allir golfarar að það telst til ofbeldis að fara úr skónum eftir 18 holur fyrir framan ókunnuga. Það hefði auðveldlega verið hægt að setja náttúrustein á salinn og leyst þetta leiðindavesen og hefði verið mikil prýði af.\nBúningsaðstaðan í grafarholtsskála er mjög glæsileg en frekar vannýtt að mér finnst. Þarna hefði verið sniðugt að koma fyrir heitum potti eða gufubaði þar sem hægt hefði verið að koma saman og skeggræða síðustu holur.\nÝmis smáatriði sem þessi koma að gagni til að fá golfara til að tengjast betur og eyða tíma í sínum klúbbi. Þetta myndi með tímanum koma af stað smá klúbbastemningu sem oft vantar hér á Íslandi. Klúbbar ættu að leggja höfuð vel í bleyti áður en ráðist er í byggingu golfskála og pæla aðeins hvernig þeir geti aukið viðveru klúbbfélaga sem og boðið þeim upp á þá afþreyingu sem golfarar meta mest.\nkv,\nIngi Jarl", "url": "https://www.hugi.is/golf/greinar/134781/nyir-timar-ny-klubbhus/", "url_id": "134781", "id": "1013126", "replies": [ { "user": "ornsolvi", "user_id": "25311", "date": "2003-04-10 19:20:03", "id": "1013127", "reply_to_id": "1013126", "text": "Sammála þessu heitur pottur hljómar helv….vel og gufa líka. Málið er hins vegar að hér á íslandi eru töluvert meira af sundstöðum sem bjóða uppá þetta heldur en erlendis og einnig stutt að fara. Þessvegna er spurning hversu mikið þetta yrði notað. Ég myndi samt pottþétt nota þetta." }, { "user": "teigur", "user_id": "29027", "date": "2003-04-11 08:44:16", "id": "1013128", "reply_to_id": "1013126", "text": "Þetta með að fara úr skónum.. það er sjálfsagður hlutur og kurteisi að fara úr skónum. Persónulega fyndist mér það taka allan fínleika af því að koma inn í nýparketlagðan og fínan matsal ef allir myndu æða þar um á skónum. það verður ekki lengi fínt.. og með þessa fínu búningsaðstöðu held ég að það sé engin fyrirstaða að skipta um sokka… margir koma með alveg hrein föt til að fara í eftir hring." }, { "user": "goosen", "user_id": "34099", "date": "2003-04-11 15:04:27", "id": "1013129", "reply_to_id": "1013128", "text": "Sæll Teigur.\nLestu greinina betur áður en þú skrifar eitthvað um málið. Það er ekki verið að tala um að fara beint inn á parketlagt gólfið, ég treysti alveg JARLI að virða reglur. Hann er að tala um að hentugra hefði verið að flísaleggja gólfið í staðinn að parketleggja, og tek ég undir með honum.\nÁ öllum gólvöllum erlendis þar sem ég hef komið hefur enginn beðið mig að fara úr skónum og myndi ég taka að sem dónaskap að fara fram á það.\nHugsaðuþér 4 félagar búnir með 18 og ætla að fá sér einn kaldann, allir úr skónum og setjast niður við borð, flott lykt það, eitt orð OFBELDI.\nÞú með þína sokka, gott mál en ég hef það sem vana að baða mig áður en ég fer í eitthvað hreint enn öll erum við misjöfn.\nMeð það að margir komi með önnur föt til skiptanna hef ég ekki orðið þess var í þau 5 ár sem ég hef verið félagsáður í GR.\nGoosen." }, { "user": "hinni", "user_id": "26762", "date": "2003-04-11 15:59:14", "id": "1013130", "reply_to_id": "1013129", "text": "Það er með ólíkindum ef þú hefur fengið að fara inn í klúbbhús í útlöndum á golfskónum - hvaða golfvelli varstu eiginlega að spila? mini golfvelli? það bara hlýtur að vera - það er sjálfsögð kurteisi að kylfingar fari úr skónum eða öllu heldur skipti um skó áður en farið er inn til þess að borða og fá sér einn eftir hring. Nákvæmlega þetta er það sem tíðkast á flestum golfvöllum þessa heims. Og talandi um Grafarholtið þá er það þannig að flestir setja settið í bílinn, skipta um skó og fara síðan inn til þess að næra sig, enda ekki um langan veg að fara!" }, { "user": "JARL", "user_id": "35787", "date": "2003-04-12 01:41:43", "id": "1013131", "reply_to_id": "1013130", "text": "Sæll Hinni,\nHeldur þú að ég fari erlendis að spila minigolf?? skemmtileg hugsun. Ef þú lest greinina þá segi ég þar að það hefði verið mun hentugra að setja fallegan stein á salinn, sem er t.d. frammi í veitingasölu. Það hefði einfaldlega auðveldað mörgum kylfingnum sporið. Heimsborgarinn, þú, ættir einnig að vita að golfarar í heitu löndunum fara oft inn í veitingasal og fá sér öl og rist eftir fyrri 9, ekki eru þeir reknir úr skónum. Þó ég sé kannski ekkert ósáttur við salinn, en hann er glæsilegur að mínu mati, þá hefði verið hentugra að setja stein á golfið.\nkv" }, { "user": "gallbladra", "user_id": "20317", "date": "2003-04-12 11:25:38", "id": "1013132", "reply_to_id": "1013126", "text": "Þetta er ekki alveg rétt hjá ykkur en nálægt …. ég fór um jólin til USA og spilaðí á 3 völlum og til skotlands í haust og spilaðu þar á 5-6 völlum og allir þessara valla eru með sérstakan bar fyrir þá sem eru bara rétt að stoppa og annan fyrir þá sem vilja fá sér eitthvað af matseðlinum og kíkja aðeins á imbann. Svona er þetta, parket í fínni matsalnum og flísar eða steinlagt gólf fyrir þá sem stopa stutt." }, { "user": "hinni", "user_id": "26762", "date": "2003-04-14 12:58:53", "id": "1013133", "reply_to_id": "1013132", "text": "Jú,mikið rétt þá er þetta víða þannig að til staðar er bar sem oft er kallaður “spike bar” og þannig er það einnig í Grafarholtinu, flísalögð kaffitería þar sem kylfingar geta sest inn í golfskónum áður og eftir hring." } ] }
{"id":43408,"title":"Timișoara ar putea semna o declarație simbolică de unire a României cu Republica Moldova","content":"„Românii în proporție de 80 la sută își doresc unirea cu Republica Moldova”, a declarat Roxana Iliescu, vicepreședintele CJ, Timiș.\nDocumentul a fost depus deja la secretariatul Consiliului Județean Timiș.  Acesta nu va avea niciun impact, în afară de cel declarativ. Roxana Iliescu, vicepreședintele instituției, le cere consilierilor județeni din Timiș să susțină declarația și, implicit, unirea României cu Republica Moldova.\n„Consider că cum, în 2018 în an de sărbătoare când celebrăm 100 de ani pe 27 martie 1918 un gest mai potrivit din partea noastră n-ar fi decât semnarea acestei declarații de reunire”, a declarat Roxana Iliescu.\nMai mult de 100 de consilii locale din Republica Moldova și-au exprimat deja dorința de unire cu România.\n„Partidul Național Liberal și reprezentanții Partidului Național liberal au susținut de la începutul anilor 90 această reunificare cu RM și cred că suntem obligați așa cum spuneam și mai devreme moral ca să susținem orice de mers sau al oricărui cetățean privind reunificare cu Republica Moldova”, a declarat Nicolae Bitea, consilier județean, PNL Timiș\nDeclarația simbolică a fost semnată și de Consiliile județene din Prahova, Constanța și Iași."}
{"poster":"ElGansoVerde","date":"2019-02-24T01:35:09.726+0000","title":"0 fps de nuevo","subforum":"Problemas Técnicos","up_votes":6,"down_votes":3,"body":"Comienzo la partida con 110 fps fijos luego me baja a 0 de un tirón y queda ahí. Perdí un torneo 1 vs 1 y un ranked. Si alguien del soporte lee esto (si es que el soporte realmente existe), por favor ayudéme.","replies":[{"poster":"Shíru","date":"2019-02-24T02:05:45.163+0000","up_votes":2,"down_votes":0,"body":"No crees que sería mejor mandar un ticket al soporte en vez de rezar porque alguien de ahí lo lea?","replies":[]}]}
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{"pmid":32354369,"pmcid":"PMC7191555","title":"The novel coronavirus (COVID-19) pneumonia with negative detection of viral ribonucleic acid from nasopharyngeal swabs: a case report.","text":["The novel coronavirus (COVID-19) pneumonia with negative detection of viral ribonucleic acid from nasopharyngeal swabs: a case report.","BACKGROUND: The novel coronavirus disease 2019 (COVID-19) outbreak started in Wuhan, Hubei, China since Dec 2019 and cases of infection have been continuously reported in various countries. It is now clear that the SARS-COV-2 coronavirus is transmissible from human to human. Nucleic acid detection is considered as the gold standard for the diagnosis of COVID-19. In this case report, we describe our experience in detection of SARS-COV-2 from a confirmed patient using nucleic acid test of bronchoalveolar-lavage fluid (BALF) samples but not nasopharyngeal swabs. CASE PRESENTATION: We present a case of severely ill SARS-COV-2 infected 46-year-old man with fever, coughing and chest tightness. We performed viral detection using his BALF samples and imaging method (CT) for confirmation. The patient received combination of interferonalfa-1b and ribavirin, lopinavir and ritonavir for antiviral treatment at different stages. Other medication was also given to him in combination for anti-inflammation, intestinal microbial regulation, phlegm elimination, liver protection and pulmonary fibrosis prevention purposes. We provided oxygen supply to him using BIPAP ventilator and high-flow humidification oxygen therapy instrument to facilitate respiration. The patient was cured and discharged. CONCLUSION: This case report described an effective supportive medication scheme to treat SARS-COV-2 infected patient and emphasized the necessity of detection of the viral genome using BALF samples and its significance in the diagnosis and prognosis of the disease.","BMC Infect Dis","Zhang, Peiyan","Cai, Zhao","Wu, Weibo","Peng, Ling","Li, Yinfeng","Chen, Chuming","Chen, Li","Li, Jianming","Cao, Mengli","Feng, Shiyan","Jiang, Xiao","Yuan, Jing","Liu, Yingxia","Yang, Liang","Wang, Fuxiang","32354369"],"abstract":["BACKGROUND: The novel coronavirus disease 2019 (COVID-19) outbreak started in Wuhan, Hubei, China since Dec 2019 and cases of infection have been continuously reported in various countries. It is now clear that the SARS-COV-2 coronavirus is transmissible from human to human. Nucleic acid detection is considered as the gold standard for the diagnosis of COVID-19. In this case report, we describe our experience in detection of SARS-COV-2 from a confirmed patient using nucleic acid test of bronchoalveolar-lavage fluid (BALF) samples but not nasopharyngeal swabs. CASE PRESENTATION: We present a case of severely ill SARS-COV-2 infected 46-year-old man with fever, coughing and chest tightness. We performed viral detection using his BALF samples and imaging method (CT) for confirmation. The patient received combination of interferonalfa-1b and ribavirin, lopinavir and ritonavir for antiviral treatment at different stages. Other medication was also given to him in combination for anti-inflammation, intestinal microbial regulation, phlegm elimination, liver protection and pulmonary fibrosis prevention purposes. We provided oxygen supply to him using BIPAP ventilator and high-flow humidification oxygen therapy instrument to facilitate respiration. The patient was cured and discharged. CONCLUSION: This case report described an effective supportive medication scheme to treat SARS-COV-2 infected patient and emphasized the necessity of detection of the viral genome using BALF samples and its significance in the diagnosis and prognosis of the disease."],"journal":"BMC Infect Dis","authors":["Zhang, Peiyan","Cai, Zhao","Wu, Weibo","Peng, Ling","Li, Yinfeng","Chen, Chuming","Chen, Li","Li, Jianming","Cao, Mengli","Feng, Shiyan","Jiang, Xiao","Yuan, Jing","Liu, Yingxia","Yang, Liang","Wang, Fuxiang"],"date":"2020-05-02T11:00:00Z","year":2020,"_id":"32354369","source":"PubMed","week":"202018|Apr 27 - May 03","doi":"10.1186/s12879-020-05045-z","keywords":["bronchoalveolar-lavage fluid","covid-19","coronavirus","pneumonia","tracheoscopy"],"locations":["Wuhan","Hubei","China"],"countries":["China"],"countries_codes":["CHN|China"],"e_drugs":["Ritonavir","Ribavirin","Lopinavir"],"topics":["Case Report"],"weight":1,"_version_":1666138495155961856,"score":9.490897,"similar":[{"pmid":32294816,"title":"[Bronchoalveolar lavage fluid was used to diagnose two cases of 2019-nCoV infection].","text":["[Bronchoalveolar lavage fluid was used to diagnose two cases of 2019-nCoV infection].","The case reports 2 cases of novel coronavirus pneumonia diagnosed by concurrent bronchoalveolar lavage in our hospital, 1 case had a history of epidemiology, clinical symptoms and high imaging suspicion, but repeated negative throat swabs. One patient was diagnosed 2019-nCoV. Before the patient was discharged, the clinical symptoms disappeared, the chest CT showed significant improvement, and the pharynx swab was twice negative, reaching the discharge standard.We detected the ORF 1ab gene, the N gene and the nucleic acid of the new coronavirus in the broncho-alveolar lavage fluid of 2 patients. The results showed that the positive rate of bronchoalveolar lavage for detection of new coronavirus nucleic acid was high, and bronchoalveolar lavage for suspected or confirmed new coronavirus pneumonia patients with negative detection of nucleic acid in pharynx swabs but still residual lung lesions was helpful for early diagnosis, treatment and prognosis.","Zhonghua Jie He He Hu Xi Za Zhi","Tan, F R","Qiu, Y L","Xu, Z","32294816"],"abstract":["The case reports 2 cases of novel coronavirus pneumonia diagnosed by concurrent bronchoalveolar lavage in our hospital, 1 case had a history of epidemiology, clinical symptoms and high imaging suspicion, but repeated negative throat swabs. One patient was diagnosed 2019-nCoV. Before the patient was discharged, the clinical symptoms disappeared, the chest CT showed significant improvement, and the pharynx swab was twice negative, reaching the discharge standard.We detected the ORF 1ab gene, the N gene and the nucleic acid of the new coronavirus in the broncho-alveolar lavage fluid of 2 patients. The results showed that the positive rate of bronchoalveolar lavage for detection of new coronavirus nucleic acid was high, and bronchoalveolar lavage for suspected or confirmed new coronavirus pneumonia patients with negative detection of nucleic acid in pharynx swabs but still residual lung lesions was helpful for early diagnosis, treatment and prognosis."],"journal":"Zhonghua Jie He He Hu Xi Za Zhi","authors":["Tan, F R","Qiu, Y L","Xu, Z"],"date":"2020-04-17T11:00:00Z","year":2020,"_id":"32294816","source":"PubMed","week":"202016|Apr 13 - Apr 19","doi":"10.3760/cma.j.cn112147-20200224-00167","keywords":["2019-ncov","bronchoalveolar lavage fluid","throat swab","viral nucleic acid testing"],"topics":["Case Report"],"weight":1,"_version_":1666138493220290560,"score":243.9321},{"pmid":32476607,"title":"Delayed specific IgM antibody responses observed among COVID-19 patients with severe progression.","text":["Delayed specific IgM antibody responses observed among COVID-19 patients with severe progression.","Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has spread rapidly worldwide since it was confirmed as the causative agent of COVID-19. Molecular diagnosis of the disease is typically performed via nucleic acid-based detection of the virus from swabs, sputum or bronchoalveolar lavage fluid (BALF). However, the positive rate from the commonly used specimens (swabs or sputum) was less than 75%. Immunological assays for SARS-CoV-2 are needed to accurately diagnose COVID-19. Sera were collected from patients or healthy people in a local hospital in Xiangyang, Hubei Province, China. The SARS-CoV-2 specific IgM antibodies were then detected using a SARS-CoV-2 IgM colloidal gold immunochromatographic assay (GICA). Results were analysed in combination with sera collection date and clinical information. The GICA was found to be positive with the detected 82.2% (37/45) of RT-qPCR confirmed COVID-19 cases, as well as 32.0% (8/25) of clinically confirmed, RT-qPCR negative patients (4-14 days after symptom onset). Investigation of IgM-negative, RT-qPCR-positive COVID-19 patients showed that half of them developed severe disease. The GICA was found to be a useful test to complement existing PCR-based assays for confirmation of COVID-19, and a delayed specific IgM antibody response was observed among COVID-19 patients with severe progression.","Emerg Microbes Infect","Shen, Liang","Wang, Chunhua","Zhao, Jianzhong","Tang, Xiaoyong","Shen, Ying","Lu, Mingqing","Ding, Zhe","Huang, Canping","Zhang, Ji","Li, Shichao","Lan, Jiaming","Wong, Gary","Zhu, Yufang","32476607"],"abstract":["Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has spread rapidly worldwide since it was confirmed as the causative agent of COVID-19. Molecular diagnosis of the disease is typically performed via nucleic acid-based detection of the virus from swabs, sputum or bronchoalveolar lavage fluid (BALF). However, the positive rate from the commonly used specimens (swabs or sputum) was less than 75%. Immunological assays for SARS-CoV-2 are needed to accurately diagnose COVID-19. Sera were collected from patients or healthy people in a local hospital in Xiangyang, Hubei Province, China. The SARS-CoV-2 specific IgM antibodies were then detected using a SARS-CoV-2 IgM colloidal gold immunochromatographic assay (GICA). Results were analysed in combination with sera collection date and clinical information. The GICA was found to be positive with the detected 82.2% (37/45) of RT-qPCR confirmed COVID-19 cases, as well as 32.0% (8/25) of clinically confirmed, RT-qPCR negative patients (4-14 days after symptom onset). Investigation of IgM-negative, RT-qPCR-positive COVID-19 patients showed that half of them developed severe disease. The GICA was found to be a useful test to complement existing PCR-based assays for confirmation of COVID-19, and a delayed specific IgM antibody response was observed among COVID-19 patients with severe progression."],"journal":"Emerg Microbes Infect","authors":["Shen, Liang","Wang, Chunhua","Zhao, Jianzhong","Tang, Xiaoyong","Shen, Ying","Lu, Mingqing","Ding, Zhe","Huang, Canping","Zhang, Ji","Li, Shichao","Lan, Jiaming","Wong, Gary","Zhu, Yufang"],"date":"2020-06-02T11:00:00Z","year":2020,"_id":"32476607","source":"PubMed","week":"202023|Jun 01 - Jun 07","doi":"10.1080/22221751.2020.1766382","keywords":["covid-19","gica","igm antibody","delayed","severity"],"locations":["swabs","Xiangyang","Hubei","China"],"countries":["China"],"countries_codes":["CHN|China"],"topics":["Diagnosis"],"weight":1,"_version_":1668532089498107904,"score":243.86398},{"pmid":32321530,"pmcid":"PMC7176025","title":"The unsynchronized changes of CT image and nucleic acid detection in COVID-19: reports the two cases from Gansu, China.","text":["The unsynchronized changes of CT image and nucleic acid detection in COVID-19: reports the two cases from Gansu, China.","The novel coronavirus disease (COVID-19) outbreak started in December 2019 in Wuhan, China, caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The CT image is used to assess the disease progress, whereas the continued two times of negative results from SARS-CoV-2 nucleic acid detection had been considered as a criterion for ending antiviral treatment. We compared the two COVID-19 cases with similar backgrounds and CT image repeated intervals under treatment. Our report highlighted the unsynchronized expression in the changes of CT image and nucleic acid detection in COVID-19, and lasting positive nucleic acid test result in patients recovered from pneumonia. It may be contributed to recognize the disease and improve prevention.","Respir Res","Gao, Jing","Liu, Jun-Qiang","Wen, Heng-Jun","Liu, Hua","Hu, Wei-Dong","Han, Xia","Li, Chuan-Xing","Wang, Xiao-Jun","32321530"],"abstract":["The novel coronavirus disease (COVID-19) outbreak started in December 2019 in Wuhan, China, caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The CT image is used to assess the disease progress, whereas the continued two times of negative results from SARS-CoV-2 nucleic acid detection had been considered as a criterion for ending antiviral treatment. We compared the two COVID-19 cases with similar backgrounds and CT image repeated intervals under treatment. Our report highlighted the unsynchronized expression in the changes of CT image and nucleic acid detection in COVID-19, and lasting positive nucleic acid test result in patients recovered from pneumonia. It may be contributed to recognize the disease and improve prevention."],"journal":"Respir Res","authors":["Gao, Jing","Liu, Jun-Qiang","Wen, Heng-Jun","Liu, Hua","Hu, Wei-Dong","Han, Xia","Li, Chuan-Xing","Wang, Xiao-Jun"],"date":"2020-04-24T11:00:00Z","year":2020,"_id":"32321530","source":"PubMed","week":"202017|Apr 20 - Apr 26","doi":"10.1186/s12931-020-01363-7","keywords":["covid-19","ct image","nucleic acid detection","sars-cov-2"],"locations":["Wuhan","China","Gansu","China"],"countries":["China"],"countries_codes":["CHN|China"],"topics":["Case Report"],"weight":1,"_version_":1666138493764501504,"score":225.0434},{"pmid":32311437,"pmcid":"PMC7165102","title":"Detection and analysis of nucleic acid in various biological samples of COVID-19 patients.","text":["Detection and analysis of nucleic acid in various biological samples of COVID-19 patients.","COVID-19 (corona virus disease 2019) is a kind of acute severe pneumonia caused by 2019-nCoV (2019-nCoV) infection. Since December 2019, it has been found in Wuhan, Hubei Province, and then spread to the whole country. Some parts of the world also showed an outbreak trend [1-3]. Real-time fluorescence quantitative reverse transcriptase polymerase chain reaction (reverse transcriptase-polymerase chain reaction,RT-PCR) and viral gene sequencing are the gold standard for the diagnosis of COVID-19. At present, upper respiratory tract nasopharyngeal swabs are mostly used as nucleic acid detection samples in China, but the positive rate is low. However, there are few reports on clinical application of 2019-nCoV nucleic acid detection in other biological samples. METHODS: | The East Section of Renmin Hospital of Wuhan University is a designated COVID-19 hospital in Wuhan City, Hubei Province, China. This observation study included 132 patients diagnosed with COVID-19 in the infectious disease areas of the East Section of Renmin Hospital of Wuhan University from 2020.1.31 to 2020.2.29. COVID-19 diagnostic criteria: according to China's left angle bracket, doublepneumonia diagnosis and treatment Program of novel coronavirus infection (trial version 7) right angle bracket, double, in accordance with the relevant epidemiological and clinical manifestations, nasopharyngeal swabs real-time fluorescence RT-PCR detection of 2019-nCoV nucleic acid positive, COVID-19 cases were divided into mild, ordinary, severe and severe [4]. The nasopharyngeal swabs of 132 cases of COVID-19 were positive for 2019-nCoV nucleic acid on admission, including 72 males and 60 females, with an average age of 66.7+/-9.1 years, including 80 cases of common type, 44 cases of severe type and 8 cases of critical type. During the period of admission, under the condition of tertiary protection, nasopharyngeal swabs, sputum, blood, feces and anal swabs of COVID-19 cases were collected many times in the isolation ward for 2019-nCoV nucleic acid detection. All biological samples are sealed and transferred to the laboratory in strict accordance with the standard process. The RT-PCR test kits (BioGerm) were recommended by the Chinese Center for Disease Control and Prevention. The same technician and brand of test kit was used for all RT-PCR testing reported; both internal controls and negative controls were routinely performed with each batch of tests. RESULTS: | 132 the results of 2019-nCoV nucleic acid test of various biological samples during the treatment of confirmed COVID-19 cases are as follows: the positive rate of 2019-nCoV nucleic acid test of nasopharyngeal swab is 38.13% (180/472 times), the positive rate of 2019-nCoV nucleic acid test of sputum is 48.68% (148/304 times), the positive rate of blood 2019-nCoV nucleic acid test is 3.03% (4/132 times), and the positive rate of 2019-nCoV nucleic acid test of feces is 9.83% (24/244 times). The positive rate of 2019-nCoV nucleic acid detection in anal swabs is 10.00% (12/120 times). DISCUSSION|: In this study, it was found that the positive rate of 2019-nCoV nucleic acid in sputum of 132 patients with COVID-19 was higher than that of nasopharyngeal swabs, and viral nucleic acids were also detected in blood and digestive tract (fecal/anal swabs). Simple detection of nasopharyngeal swab 2019-nCoV nucleic acid detection positive rate is not high, multi-sample 2019-nCoV nucleic acid detection can improve the accuracy, reduce the false negative rate, better guide clinical treatment and evaluate the therapeutic effect.","Travel Med Infect Dis","Wu, Jianguo","Liu, Jiasheng","Li, Shijun","Peng, Zhiyang","Xiao, Zhe","Wang, Xufeng","Yan, Ruicheng","Luo, Jianfei","32311437"],"abstract":["COVID-19 (corona virus disease 2019) is a kind of acute severe pneumonia caused by 2019-nCoV (2019-nCoV) infection. Since December 2019, it has been found in Wuhan, Hubei Province, and then spread to the whole country. Some parts of the world also showed an outbreak trend [1-3]. Real-time fluorescence quantitative reverse transcriptase polymerase chain reaction (reverse transcriptase-polymerase chain reaction,RT-PCR) and viral gene sequencing are the gold standard for the diagnosis of COVID-19. At present, upper respiratory tract nasopharyngeal swabs are mostly used as nucleic acid detection samples in China, but the positive rate is low. However, there are few reports on clinical application of 2019-nCoV nucleic acid detection in other biological samples. METHODS: | The East Section of Renmin Hospital of Wuhan University is a designated COVID-19 hospital in Wuhan City, Hubei Province, China. This observation study included 132 patients diagnosed with COVID-19 in the infectious disease areas of the East Section of Renmin Hospital of Wuhan University from 2020.1.31 to 2020.2.29. COVID-19 diagnostic criteria: according to China's left angle bracket, doublepneumonia diagnosis and treatment Program of novel coronavirus infection (trial version 7) right angle bracket, double, in accordance with the relevant epidemiological and clinical manifestations, nasopharyngeal swabs real-time fluorescence RT-PCR detection of 2019-nCoV nucleic acid positive, COVID-19 cases were divided into mild, ordinary, severe and severe [4]. The nasopharyngeal swabs of 132 cases of COVID-19 were positive for 2019-nCoV nucleic acid on admission, including 72 males and 60 females, with an average age of 66.7+/-9.1 years, including 80 cases of common type, 44 cases of severe type and 8 cases of critical type. During the period of admission, under the condition of tertiary protection, nasopharyngeal swabs, sputum, blood, feces and anal swabs of COVID-19 cases were collected many times in the isolation ward for 2019-nCoV nucleic acid detection. All biological samples are sealed and transferred to the laboratory in strict accordance with the standard process. The RT-PCR test kits (BioGerm) were recommended by the Chinese Center for Disease Control and Prevention. The same technician and brand of test kit was used for all RT-PCR testing reported; both internal controls and negative controls were routinely performed with each batch of tests. RESULTS: | 132 the results of 2019-nCoV nucleic acid test of various biological samples during the treatment of confirmed COVID-19 cases are as follows: the positive rate of 2019-nCoV nucleic acid test of nasopharyngeal swab is 38.13% (180/472 times), the positive rate of 2019-nCoV nucleic acid test of sputum is 48.68% (148/304 times), the positive rate of blood 2019-nCoV nucleic acid test is 3.03% (4/132 times), and the positive rate of 2019-nCoV nucleic acid test of feces is 9.83% (24/244 times). The positive rate of 2019-nCoV nucleic acid detection in anal swabs is 10.00% (12/120 times). DISCUSSION|: In this study, it was found that the positive rate of 2019-nCoV nucleic acid in sputum of 132 patients with COVID-19 was higher than that of nasopharyngeal swabs, and viral nucleic acids were also detected in blood and digestive tract (fecal/anal swabs). Simple detection of nasopharyngeal swab 2019-nCoV nucleic acid detection positive rate is not high, multi-sample 2019-nCoV nucleic acid detection can improve the accuracy, reduce the false negative rate, better guide clinical treatment and evaluate the therapeutic effect."],"journal":"Travel Med Infect Dis","authors":["Wu, Jianguo","Liu, Jiasheng","Li, Shijun","Peng, Zhiyang","Xiao, Zhe","Wang, Xufeng","Yan, Ruicheng","Luo, Jianfei"],"date":"2020-04-21T11:00:00Z","year":2020,"_id":"32311437","source":"PubMed","week":"202017|Apr 20 - Apr 26","doi":"10.1016/j.tmaid.2020.101673","locations":["Wuhan","Hubei","China","Wuhan","Hubei","China","China","anal swabs"],"countries":["China"],"countries_codes":["CHN|China"],"topics":["Diagnosis"],"weight":1,"_version_":1666138491164033024,"score":224.0464},{"pmid":32268456,"title":"[Clinical application effect of modified nasopharyngeal swab sampling for 2019 novel coronavirus nucleic acid detection].","text":["[Clinical application effect of modified nasopharyngeal swab sampling for 2019 novel coronavirus nucleic acid detection].","Objective: To study the clinical application effect of modified nasopharyngeal swab sampling for 2019 novel coronavirus nucleic acid detection. Methods: This study covered the period from January 14 to March 1, 2020. From February 24 on, the supine position method and the protective face screen were used to collect nasopharyngeal swabs, before which, the nasopharyngeal swabs were collected by sitting position method. All the patients were diagnosed with suspected/confirmed 2019 novel coronavirus infection, who were admitted from February 19 on, before which, the nasopharyngeal swabs were collected outside the hospital. (1) Thirty-four operators meeting the inclusion criteria of the study were recruited in this retrospective cohort study. They were grouped according to the collection method of nasopharyngeal swabs. Sixteen operators of Wuhan Taikang Tongji Hospital who used the supine position method and the protective face screen were included in supine position method+protective face screen group (15 males and 1 female, aged 34-49 years); 18 operators (12 from the First Affiliated Hospital of Army Medical University (the Third Military Medical University), 1 from Wuhan Jiangxia Mobile Cabin Hospital, 5 from the East District of People's Hospital of Wuhan University) who used the traditional sitting position method were included in sitting position method group (2 males and 16 females, aged 25-49 years). In supine position method+protective face screen group, when collecting sample, the patient lay flat and wore a special protective face screen for nasopharyngeal swab sampling, with neck slightly extending and face turning to the opposite side of the operator about 10 degrees . The self-designed questionnaire was used to investigate the cooperation, the incidence of nausea, coughing, sneezing, and struggling of patients evaluated by the operators, the operation time of single sampling, the fear of operation and the perceived exposure risk of operators of the two groups. (2) Sixty-five patients (22 males and 43 females, aged 25-91 years) admitted to Wuhan Taikang Tongji Hospital who successively received the sitting position method and supine position method+protective face screen for nasopharyngeal swabs sampling and with complete nucleic acid detection results were included. The positive rates of nucleic acid detection by the two sampling methods of nasopharyngeal swabs of the patients were statistically analyzed. (3) Forty-one patients who could express their feelings accurately were selected from the above 65 patients (12 males and 29 females, aged 27-83 years). The comfort of patients in the process of sampling by the two methods was investigated. (4) Thirty-four patients (10 males and 24 females, aged 25-83 years) with two or more consecutive negative results of nucleic acid detection of nasopharyngeal swabs by sitting position method were selected from the above 65 patients. The positive rate of nucleic acid detection of nasopharyngeal swab of patients by supine position method+protective face screen, i.e. negative to positive rate was statistically analyzed. Data were statistically analyzed with Wilcoxon's sign rank test, t test, and chi-square test. Results: (1) The cooperation score of patients evaluated by the operators in supine position method+protective face screen group was significantly higher than that in sitting position method group (Z=-4.928, P<0.01), the incidence of nausea, choking cough, sneezing, and struggling of patients evaluated by the operators, and the fear of operation score and the perceived exposure risk score of operators were significantly lower than those of sitting position method group (Z=-5.071, -5.046, -4.095, -4.397, -4.174, -5.049, P<0.01), and the operation time of single sampling was significantly longer than that of sitting position method group (t=23.17, P<0.01). (2) The positive rate of nucleic acid detection of nasopharyngeal swabs by supine position method+protective face screen was 60.00% (39/65), which was obviously higher than 41.54% (27/65) by sitting position method (chi(2)=4.432, P<0.05). (3) The comfort score of the 41 patients during nasopharyngeal swabs sampling by supine position method+protective face screen was significantly higher than that by sitting position method (Z=-5.319, P<0.01). (4) Of the 34 patients with two or more consecutive negative results of nucleic acid detection of nasopharyngeal swabs by sitting position method, the rate of negative to positive of nucleic acid detection was 26.47% (9/34) after sampling by supine position method+protective face screen. Conclusions: Compared with the traditional sitting position method, detection of 2019 novel coronavirus nucleic acids of nasopharyngeal swabs collected by supine method combined with protective face screen is worth promoting, because of its better comfort of patients, low exposure risk for operators, in addition to reducing in the false negative result to some extent, which may help reduce false recurrence of discharged patients.","Zhonghua Shao Shang Za Zhi","Ma, S Y","Luo, Y M","Hu, T Y","You, Z C","Sun, J G","Yu, S Y","Yuan, Z Q","Peng, Y Z","Luo, G X","Xu, Z","32268456"],"journal":"Zhonghua Shao Shang Za Zhi","authors":["Ma, S Y","Luo, Y M","Hu, T Y","You, Z C","Sun, J G","Yu, S Y","Yuan, Z Q","Peng, Y Z","Luo, G X","Xu, Z"],"date":"2020-04-09T11:00:00Z","year":2020,"_id":"32268456","source":"PubMed","week":"202015|Apr 06 - Apr 12","doi":"10.3760/cma.j.cn501120-20200312-00153","keywords":["2019 novel coronavirus","comfort","nasopharyngeal swab","positive rate","protective face screen","safety","sitting position method","supine position method"],"locations":["Wuhan","Wuhan","Wuhan"],"countries":["China"],"countries_codes":["CHN|China"],"topics":["Diagnosis"],"weight":1,"abstract":["Objective: To study the clinical application effect of modified nasopharyngeal swab sampling for 2019 novel coronavirus nucleic acid detection. Methods: This study covered the period from January 14 to March 1, 2020. From February 24 on, the supine position method and the protective face screen were used to collect nasopharyngeal swabs, before which, the nasopharyngeal swabs were collected by sitting position method. All the patients were diagnosed with suspected/confirmed 2019 novel coronavirus infection, who were admitted from February 19 on, before which, the nasopharyngeal swabs were collected outside the hospital. (1) Thirty-four operators meeting the inclusion criteria of the study were recruited in this retrospective cohort study. They were grouped according to the collection method of nasopharyngeal swabs. Sixteen operators of Wuhan Taikang Tongji Hospital who used the supine position method and the protective face screen were included in supine position method+protective face screen group (15 males and 1 female, aged 34-49 years); 18 operators (12 from the First Affiliated Hospital of Army Medical University (the Third Military Medical University), 1 from Wuhan Jiangxia Mobile Cabin Hospital, 5 from the East District of People's Hospital of Wuhan University) who used the traditional sitting position method were included in sitting position method group (2 males and 16 females, aged 25-49 years). In supine position method+protective face screen group, when collecting sample, the patient lay flat and wore a special protective face screen for nasopharyngeal swab sampling, with neck slightly extending and face turning to the opposite side of the operator about 10 degrees . The self-designed questionnaire was used to investigate the cooperation, the incidence of nausea, coughing, sneezing, and struggling of patients evaluated by the operators, the operation time of single sampling, the fear of operation and the perceived exposure risk of operators of the two groups. (2) Sixty-five patients (22 males and 43 females, aged 25-91 years) admitted to Wuhan Taikang Tongji Hospital who successively received the sitting position method and supine position method+protective face screen for nasopharyngeal swabs sampling and with complete nucleic acid detection results were included. The positive rates of nucleic acid detection by the two sampling methods of nasopharyngeal swabs of the patients were statistically analyzed. (3) Forty-one patients who could express their feelings accurately were selected from the above 65 patients (12 males and 29 females, aged 27-83 years). The comfort of patients in the process of sampling by the two methods was investigated. (4) Thirty-four patients (10 males and 24 females, aged 25-83 years) with two or more consecutive negative results of nucleic acid detection of nasopharyngeal swabs by sitting position method were selected from the above 65 patients. The positive rate of nucleic acid detection of nasopharyngeal swab of patients by supine position method+protective face screen, i.e. negative to positive rate was statistically analyzed. Data were statistically analyzed with Wilcoxon's sign rank test, t test, and chi-square test. Results: (1) The cooperation score of patients evaluated by the operators in supine position method+protective face screen group was significantly higher than that in sitting position method group (Z=-4.928, P<0.01), the incidence of nausea, choking cough, sneezing, and struggling of patients evaluated by the operators, and the fear of operation score and the perceived exposure risk score of operators were significantly lower than those of sitting position method group (Z=-5.071, -5.046, -4.095, -4.397, -4.174, -5.049, P<0.01), and the operation time of single sampling was significantly longer than that of sitting position method group (t=23.17, P<0.01). (2) The positive rate of nucleic acid detection of nasopharyngeal swabs by supine position method+protective face screen was 60.00% (39/65), which was obviously higher than 41.54% (27/65) by sitting position method (chi(2)=4.432, P<0.05). (3) The comfort score of the 41 patients during nasopharyngeal swabs sampling by supine position method+protective face screen was significantly higher than that by sitting position method (Z=-5.319, P<0.01). (4) Of the 34 patients with two or more consecutive negative results of nucleic acid detection of nasopharyngeal swabs by sitting position method, the rate of negative to positive of nucleic acid detection was 26.47% (9/34) after sampling by supine position method+protective face screen. Conclusions: Compared with the traditional sitting position method, detection of 2019 novel coronavirus nucleic acids of nasopharyngeal swabs collected by supine method combined with protective face screen is worth promoting, because of its better comfort of patients, low exposure risk for operators, in addition to reducing in the false negative result to some extent, which may help reduce false recurrence of discharged patients."],"_version_":1666138491971436545,"score":211.49982}]}
{"poster":"CerKalandor","date":"2015-05-08T10:14:11.363+0000","title":"Server down 12:00","subforum":"Általános beszélgetés","up_votes":1,"down_votes":1,"body":"Jnanna 2-0-27 h&uacute;z&oacute;s meccs baronozunk &eacute;s le&aacute;llt a szerver!!!!!!","replies":[{"poster":"panzergodx","date":"2015-05-08T10:26:15.848+0000","up_votes":2,"down_votes":0,"body":"sad story of your life","replies":[]}]}
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{ "directions": [ "Preheat oven to 350 degrees F (175 degrees C).", "In a large bowl, cream together the butter, brown sugar and white sugar until smooth. Stir in the egg and vanilla. Sift together the flour, baking soda, salt and baking powder; stir into the creamed mixture. Add the oatmeal, crushed cereal and coconut and mix until combined.", "Drop dough by teaspoonfuls onto a cookie sheet. Cookies should be about 2 inches apart. Bake for 10 to 12 minutes in the preheated oven. Cookies should be light brown at the edges and on the bottom. Remove from baking sheets to cool on wire racks." ], "ingredients": [ "1/2 cup butter", "1/2 cup packed brown sugar", "1/2 cup white sugar", "1 egg", "1 teaspoon vanilla extract", "1 cup all-purpose flour", "1 cup crushed cornflakes cereal", "1 cup rolled oats", "1 teaspoon baking soda", "1/2 teaspoon salt", "1/2 teaspoon baking powder", "1 1/3 cups flaked coconut" ], "language": "en-US", "source": "allrecipes.com", "tags": [], "title": "Chewy Crispy Coconut Cookies", "url": "http://allrecipes.com/recipe/15311/chewy-crispy-coconut-cookies/" }
{"poster":"iSiuoli","date":"2017-05-11T20:26:39.960+0000","title":"Sollte Fiora aus dem spiel entfernt werden ? einfach viel zu op","subforum":"Champions & Gameplay","up_votes":1,"down_votes":12,"body":"Liebe league of legends community , \r\n\r\nMeiner meinung nach ist Fiora einfach kacke und ich finde der sollte aus dem ganzen spiel entfernt werden. \r\njeder noob kann damit krass spielen und denkt er hat skill. einfach weg mit dem champ . \r\nBittle liken, Teilen und abonnieren. \r\n\r\n#deletefiora","replies":[{"poster":"Alekra","date":"2017-05-11T21:13:15.296+0000","up_votes":3,"down_votes":0,"body":"Und er so:\n\n> [{quoted}](name=iSiuoli,realm=EUW,application-id=Wj1wcocU,discussion-id=A0MMMfwu,comment-id=,timestamp=2017-05-11T20:26:39.960+0000)\n>\n> Liebe league of legends community , \n> \n> Meiner meinung nach ist Fiora einfach kacke und ich finde der sollte aus dem ganzen spiel entfernt werden. \n> jeder noob kann damit krass spielen und denkt er hat skill. einfach weg mit dem champ . \n> Bittle liken, Teilen und abonnieren. \n> \n> #deletefiora\n\nUnd ich so:\n\nWat laaaaaaaaberst du?","replies":[]},{"poster":"RAG Ryve","date":"2017-05-11T21:36:05.239+0000","up_votes":2,"down_votes":1,"body":"Und wieder mal kommt eine OP Beitrag von jemand der Elo technisch nicht unbedingt weit oben ist.\nIch habe ja nicht gegen Bronze/Silver, da waren die meisten mal, ich auch. \nAber was mich dezent an den meisten von euch stört ist das ihr es nur darauf schiebt das irgendwas OP ist.\n\nFiora ist absolut nicht OP, sie ist nur ein Champ der dich für Skill auch belohnt so wie viele anderen Champs auch.","replies":[{"poster":"CCG Inu XIII","date":"2017-05-11T21:59:24.621+0000","up_votes":2,"down_votes":2,"body":"> [{quoted}](name=RAG Ryve,realm=EUW,application-id=Wj1wcocU,discussion-id=A0MMMfwu,comment-id=0004,timestamp=2017-05-11T21:36:05.239+0000)\n>\n> Und wieder mal kommt eine OP Beitrag von jemand der Elo technisch nicht unbedingt weit oben ist.\n> Ich habe ja nicht gegen Bronze/Silver, da waren die meisten mal, ich auch. \n> Aber was mich dezent an den meisten von euch stört ist das ihr es nur darauf schiebt das irgendwas OP ist.\n> \n> Fiora ist absolut nicht OP, sie ist nur ein Champ der dich für Skill auch belohnt so wie viele anderen Champs auch.\n\nWas wäre wenn dir nen Mid-Diamond sagt, dass Fiora viel zu overtuned ist? Fiora hat wie Maxim da in dem Video schon angesprochen hat starke Powerspikes und der Schaden den sie drückt ist auch berechtigt und mir auch vollkommen wurst. Was an ihr zu krass ist ist ihre W-Duration und das Ult MS fürs in der Nähe stehen. \n\nWenn wir schon dabei sind wird irgendwann mal die Gragas E Hitbox angepasst? Die ist ja nicht erst seit gestern komplett hirntot.","replies":[{"poster":"RAG Ryve","date":"2017-05-11T22:45:13.906+0000","up_votes":2,"down_votes":1,"body":"Zwischen overtuned und OP liegt aber eine riesiger Unterschied.\nCamille ist auch verdammt overtuned aber inzwischen extrem genervt.\nDas Kit mag stark sein aber wenn CD´s erhöht und Dmg reduziert werden, wird der Champ schwächer.\nDas sie nicht OP ist sage ich aus dem einfachen Grund das sie letzte Season verdammt oft in der LCS, MSI und in den Worlds gespielt wurde aber inzwischen nurnoch selten vertreten ist.\nWir wissen dadurch das sie also ein Champ ist der geeignet ist für Profi-Cups usw und trotzdem wird sie nicht mehr gespielt.\nIhre Abschwächung im Early Game durch die Passive damals nahmen Ihr verdammt viel Potenzial. \nNatürlich ist sie immer noch ein abartig starker Late-game Champ aber da wäre sie nicht die einzige, siehe Azir, Kog, Kindred, usw.\nDiese Champs glänzen ebenfalls auf verschiedenen Lanes im Lategame und sind dort richtige Monster die ebenfalls Mechaniken besitzen die nicht jeder hat.\n\nAber ein Beispiel wäre folgendes, wenn sie so OP ist, warum hat sie dann massive Probleme, selbst im Lategame, gegen AA lastige Atkspeed/Crit Champs wie Tryndamere und Yi. Ebenso ist sie Counterbar durch Assassinen welche ihr die Möglichkeit nehmen Ihre R durchzubekommen und Schwachstellen nur selten offen zeigen.\nFiora ist für mich nicht mehr als ein High Risk - High Reward Champ welcher diese Spielweise auch gut umsetzt.","replies":[{"poster":"HeartÔfGold","date":"2017-05-12T00:25:32.491+0000","up_votes":1,"down_votes":2,"body":"_Das sie nicht OP ist sage ich aus dem einfachen Grund das sie letzte Season verdammt oft in der LCS, MSI und in den Worlds gespielt wurde aber inzwischen nurnoch selten vertreten ist._\n\nDie Pick- oder Bannrate eines Champs, ob selten oder häufig, im kompetitiven Bereich ist schwer mit der in der SoloQ vergleichbar. Ich denke, das weisst du auch. Wie oft siehst du einen Shen in der SoloQ gebannt, wie oft bei professionellen Spielen?\n\n_Ihre Abschwächung im Early Game durch die Passive damals nahmen Ihr verdammt viel Potenzial._\n\nIn meiner Elo wissen der Großteil der Jungler es nicht eine gegnerische Fioralane im frühen Spielverlauf zu missbrauchen. Sprich: Wenn Flash raus ist, mehr als einmal ganken. Ab dem Mid und Lategame brauchste es im 2v1 gar nicht mehr probieren. Denn geht ein Towerdive schief oder kommt ein countergank und sie bekommt ein oder gar ein double, wirds spaßig für den Toplaner.\n\nDie einzige Taktik, die gegen Fiora funktioniert, sobald sie ein paar Items hat, ists sie zu beschäftigen. Gewinnen wirst du das 1v1 eh nicht, außer die Fiora spielt wesentlich schlechter. Ansonsten lass sie pushen. Musst halt schauen, dass flott Vorteile aus der 5v4 Situation geholt werden oder dein inhibitor istschneller weg als du denkst. Das passiert in der SoloQ jedoch nicht. Fehlt dann noch hardengage/waveclear, tänzelt man Minute um Minute in der Midlane oder am Baron rum während auf der Top oder Botlane alles abgerissen wird.\nFiora profitiert einfach ungemein von der nicht vorhandenen Koordination und Absprache in der SoloQ im Bereich unter vlt. Diamon 1. Das gibt vielen Spielern eben das Gefühl, Fiora sei zu stark.","replies":[]}]}]}]},{"poster":"TerrorRaven","date":"2017-05-11T20:29:59.977+0000","up_votes":2,"down_votes":1,"body":"{{champion:48}} 0/10","replies":[]},{"poster":"MrWoscht","date":"2017-05-18T18:32:39.046+0000","up_votes":1,"down_votes":0,"body":"Fiora ist schwer zu spielen","replies":[]},{"poster":"Nohgolgh","date":"2017-05-13T03:28:53.669+0000","up_votes":1,"down_votes":0,"body":">jeder noob kann damit krass spielen und denkt er hat skill.\n\nFiora ist mechanisch kein einfacher Champion, Teamfighttechnisch nicht besonders stark und Splitpush erfordert gutes Decisionmaking. Dazu ist Fioras early nicht sonderlich stark, dafür hat sie eines der heftigsten Scalings auf Bonus-Ad im Spiel. Ihre Skills sind allesamt entweder Buffs von Autoangriffen oder Single-Target Skills, was sie zu einem der Besten 1v1-Champs macht (ich würde schätzen Platz 2 nach Jax bzw. Platz 3 nach 500 Stack Nasus und Jax). \n\nMechanisch ist Fiora recht anspruchsvoll, selbst wenn man nur den Mindeststandard ansetzt. Ein schlechter Einsatz einer Fähigkeit oder das verfehlen eines Schwachpunktes, kann bedeuten, dass man einen all-in verliert. Und das mechnische Skillcap für ihre Maximalleistung ist enorm. Du musst aber nicht nur genau wissen, was du tun musst (das ist der mechanische Teil) sondern auch, wie, wann und warum, da du mit einem recht weichen Champion splitpushen gehst. Splitpush ist eine der Stärksten Taktiken der SoloQ, insbesondere für Toplaner, weil die Koordination der Gegner nicht gut ist. Das kann aber genau so schiefgehen, weil der Splitpush selbst wieder koordination erfordert, die auch in deinem Team tendenziell nicht vorhanden ist. Dies bedeutet, dass du dich stets auf dein Team einstellen musst und deine Entscheidungen daran optimierst. Dazu kommt, dass dein Team dich oftmals zu den falschen Entscheidungen zwingen will (wie einen Inhibitorturm gegen fünf Angreifer zu verteidigen, weil dein Team gestorben ist- diesen kannst du nicht verteidigen, also musst du einen Turm pushen-das wird dein Team dir aber meist nicht pingen). Fiora muss aber nicht nur um ihr eigenes Team spielen sondern auch massiv um das gegnerische. Selbst für Maßstäbe eines Splitpushers. Wenn in einer Situation mehrere gegner mit mehreren Schwachstellen sind, dann muss Fiora das richtige Ziel auswählen, um erfolgreich zu sein, was sowohl vom Champion als auch vom Schwachpunkt abhängt. Und sieht man mal von Orianna mit ihrer Kugel ab, fällt mir gerade kein Champion ein, wo man derart, um die Gegner herumspielen muss. \n\nFällt Fiora zurück, dann hat sie Schwierigkeiten, relevant zu bleiben. Dafür kann man Fiora vermutlich gegen jedes Toplanematchup picken, wenn man nur gut genug ist und es wird ein Skillmatchup (die ist dadurch bedingt, dass Fiora eben ein so hohes Skillcap hat, das andere Champs einfach nicht vorweisen können). \n\nMüsste ich Fiora eine Spielschwierigkeit geben, dann würde ich sagen, dass diese neun oder zehn ist. Als echt schwerer würde ich nur noch Lee Sin und Orianna einschätzen. Als etwa gleich schwer würde ich Azir, Gangplank und Riven einschätzen.","replies":[]},{"poster":"Oriius","date":"2017-05-13T02:45:05.263+0000","up_votes":1,"down_votes":0,"body":"fiora naja ..... kiteopfer des todes .... wer weiß wie fiora gespielt wird weiß auch wie man sie ganz einfach countert. War ne zeitlang mal meta of doom aber danach immer mehr verschwunden also definitiv kein wirklicher op champ , man muss nur wissen wie .","replies":[]},{"poster":"Enderized","date":"2017-05-11T20:53:09.649+0000","up_votes":1,"down_votes":0,"body":"Liebe/-r iSiuoli,\n\nDeiner Meinung nach ist das so? Dann gib doch bitte eine Begründung was genau an ihr OP sein soll?\nSie hat ein miserables Early (nicht das schlechteste, aber es gibt deutlich bessere) und ihre Stärken liegen im Duel 1v1 vor allem im Lategame.\n\nhttps://www.youtube.com/watch?v=dv5xo7wf8jo\n\nMaxim (LRSB) hat dazu ein wunderbares Video gemacht um Unwissende wie dich aufzuklären.\n\nGrüße\nEnderised","replies":[]},{"poster":"xBest Lee sinx","date":"2017-05-11T20:38:32.736+0000","up_votes":1,"down_votes":0,"body":"Not sure if troll or dumb","replies":[{"poster":"Enderized","date":"2017-05-11T20:50:28.743+0000","up_votes":1,"down_votes":0,"body":"both","replies":[]}]}]}
{ "directions": [ "Preheat the oven to 375 degrees F.", "In large bowl, stir together the apples, brown sugar, granulated sugar, flour, salt and lemon juice. Set aside and see how long you can keep from sneaking a slice of apple.", "With a rolling pin, begin rolling out the Perfect Pie Crusts into large circles. Roll the dough from the center outward. Be gentle and patient, it'll take a little time to get the dough completely rolled out.", "If you think the bottom is really sticking to the surface below, use a nice, sharp spatula to loosen the dough and sprinkle some extra flour on top. Then flip it over to finish rolling. Remember to roll from the center in single, outward strokes, no back-and-forth rolling.", "Again with a spatula, loosen and lift the dough and carefully place the circles on large baking sheets.", "Place half the apple mixture on one crust and the other half on the other crust. Fold over the edges of each crust so that it covers 2 to 3 inches of the apple mixture. No need to be artistic - the more rustic the better. Dot the tops of the pies with chunks of the butter.", "Bake until the filling is golden and bubbly, 30 to 40 minutes. If the crust appears to brown too quickly, cover the edges with aluminum foil for the remaining baking time.", "Allow to cool slightly, then slice into wedges with a pizza cutter. Eat 'em on the go!", "Combine the flour and salt in a large bowl. Add in the butter and shortening. Using a pastry cutter, gradually work the butter and shortening into the flour until the mixture resembles tiny pebbles. This step should take 3 or 4 minutes.", "Lightly beat the egg with a fork, and then add it to the mixture. Next, add in the cold water and vinegar. Stir the mixture together until it's just combined, and then remove half the dough from the bowl." ], "ingredients": [ "5 Granny Smith apples, peeled and sliced", "1/2 cup firmly packed brown sugar", "1/2 cup granulated sugar", "2 tablespoons all-purpose flour", "1/4 teaspoon salt", "Juice of 1/2 lemon", "1 recipe Perfect Pie Crust, recipe follows", "6 tablespoons butter", "3 cups all-purpose flour, plus more for dusting", "1 teaspoon salt", "1 1/2 sticks cold butter", "3/4 cup vegetable shortening", "1 egg", "5 tablespoons cold water", "1 tablespoon distilled white vinegar" ], "language": "en-US", "source": "www.foodnetwork.com", "tags": [ "Easy Dessert Recipes", "Dessert", "Easy Recipes", "Easy Baking", "Apple Pie", "Apple", "Fruit", "Pie Recipes", "Apple Dessert", "Fruit Dessert Recipes", "Baking", "Healthy", "Low Sodium" ], "title": "Flat Apple Pie with Perfect Pie Crust", "url": "http://www.foodnetwork.com/recipes/ree-drummond/flat-apple-pie-with-perfect-pie-crust-recipe" }
{ "company_id": "C 71941", "involved_parties": {}, "address": "HELEN FLATS, NO 195, FLAT 2, NAXXAR ROAD,", "status": "", "name": "RE IT CONSULTING EUROPE LTD.", "registration_date": "unknown", "locality": "SAN GWANN" }
{"poster":"Slaid","date":"2016-03-16T00:24:32.897+0000","title":"Skins de SKT T1","subforum":"Charlas Generales","embed":{"description":null,"url":"https://i.ytimg.com/vi/n-c2_12ADw0/maxresdefault.jpg","image":null},"up_votes":1,"down_votes":0,"body":"querias preguntarles si este a&ntilde;o van a sacar otras skins de skt t1 ya que ellos ganaron el mundial 2015, si alguien sabe que campeones van a recibir la skin y si va a tener el mismo dise&ntilde;o que las anteriores de skt o va a ser nuevo. \r\n Bueno eso :P comenten si saben\r\n\r\n{{sticker:slayer-pantheon-thumbs}}","replies":[{"poster":"RICARDO FORT FAN","date":"2016-03-16T00:32:12.944+0000","up_votes":1,"down_votes":0,"body":"A mitad de año papu","replies":[{"poster":"Slaid","date":"2016-03-16T01:19:29.025+0000","up_votes":1,"down_votes":0,"body":"gracias hijo :)","replies":[]}]},{"poster":"xDogui","date":"2016-03-16T01:00:48.876+0000","up_votes":1,"down_votes":0,"body":"Hi men!! van a sacar skin de SKT, eso seguro. El otro dia vi en una pagina una entrevista que les habian hecho a los jugadores dias despues de haber ganado el mundial, una de las preguntas que les hicieron fue que campeones querian para las skins y ellos dijeron:\nMaRin : Renekton.\nBengi: Elise.\nFaker: Ryze.\nBang: Kalista.\nWolf: Alistar.\nYo eso lo lei en una pagina, eso si, no te aseguro nada que sea verdad xD\nY sobre la fecha en la que puede salir, yo creo que puede ser en mayo, cuando sea el MSI. El año pasado las de SSW las sacaron para esa fecha.","replies":[{"poster":"Slaid","date":"2016-03-16T01:18:56.214+0000","up_votes":1,"down_votes":0,"body":"dale gracias man!! un saludo","replies":[]}]},{"poster":"l LIL UZI VERT l","date":"2016-03-16T01:06:06.001+0000","up_votes":1,"down_votes":0,"body":"ese ka te te uno","replies":[]},{"poster":"kasres400","date":"2016-03-16T00:31:39.038+0000","up_votes":1,"down_votes":0,"body":"Yo creo que habia una de kalista, la sigo esperando :'v","replies":[]}]}
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{"title": "Susil, Anura expelled from SLFP", "content": ["Susil Premajayantha and Anura Priyadarshana Yapa, who were removed from their respective general secretary posts of the SLFP and UPFA, had also been expelled from the membership of the SLFP."], "link": "https://www.onlanka.com/news/susil-anura-expelled-from-slfp.html", "date_published": "August 14, 2015", "category": "Local News"}
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{"poster":"Tré Cool","date":"2016-07-04T13:31:34.918+0000","title":"/Remake 2 veces seguidas -.-","subforum":"Charlas Generales","up_votes":1,"down_votes":1,"body":"^","replies":[{"poster":"KevinRomano","date":"2016-07-04T13:32:51.496+0000","up_votes":2,"down_votes":0,"body":"te quejas del remake peor seria afk 2 seguidas","replies":[{"poster":"KevinRomano2","date":"2016-07-04T13:50:44.048+0000","up_votes":2,"down_votes":0,"body":"toda la razon el tipo este!","replies":[]},{"poster":"rokushoger","date":"2016-07-04T16:03:26.357+0000","up_votes":1,"down_votes":0,"body":"+1 al +1 del +1 que te dio el de abajo.","replies":[]}]},{"poster":"Lince Salvaje","date":"2016-07-04T13:49:14.998+0000","up_votes":1,"down_votes":0,"body":"se salvaron de 2 afk... cual seria el problema ? :)","replies":[]}]}
{"publisher": "NXB Kim \u0110\u1ed3ng", "isbn": "9786042003568", "description": " \u201cK\u00ednh v\u1ea1n hoa l\u00e0 t\u00e1c ph\u1ea9m c\u00f4ng phu c\u1ee7a nh\u00e0 v\u0103n Nguy\u1ec5n Nh\u1eadt \u00c1nh, tr\u01b0\u1edbc h\u1ebft l\u00e0 t\u00ecnh y\u00eau c\u1ee7a t\u00e1c gi\u1ea3, tr\u00e1ch nhi\u1ec7m c\u1ee7a t\u00e1c gi\u1ea3, t\u00e2m huy\u1ebft c\u1ee7a t\u00e1c gi\u1ea3 \u0111\u1ed1i v\u1edbi s\u1ef1 nghi\u1ec7p \u0111\u00e0o t\u1ea1o gi\u00e1o d\u1ee5c th\u1ebf h\u1ec7 tr\u1ebb. Ph\u1ea3i n\u00f3i t\u00e2m h\u1ed3n c\u1ee7a t\u00e1c gi\u1ea3 ph\u1ea3i tr\u1ebb h\u00f3a \u0111\u1ebfn m\u1ee9c n\u00e0o, ph\u1ea3i c\u00f3 v\u1ed1n s\u1ed1ng v\u00e0 t\u00ecnh y\u00eau tr\u1ebb em \u0111\u1ebfn m\u1ee9c n\u00e0o, th\u00e2m nh\u1eadp v\u00e0o th\u1ebf gi\u1edbi tr\u1ebb em \u0111\u1ebfn m\u1ee9c n\u00e0o m\u1edbi c\u00f3 th\u1ec3 vi\u1ebft \u0111\u01b0\u1ee3c m\u1ed9t b\u1ed9 s\u00e1ch d\u00e0y h\u01a1n 40 t\u1eadp nh\u01b0 v\u1eady. H\u00f4m nay c\u00f3 bi\u1ebft bao nhi\u00eau v\u1ea5n \u0111\u1ec1 v\u1ec1 \u0111\u1eddi s\u1ed1ng h\u1ecdc \u0111\u01b0\u1eddng, \u0111\u1eddi s\u1ed1ng gia \u0111\u00ecnh c\u1ee7a c\u00e1c em nh\u01b0ng c\u00f3 th\u1ec3 n\u00f3i m\u1ed9t s\u1ed1 t\u00e1c gi\u1ea3 ch\u1ec9 m\u1edbi ph\u1ea3n \u00e1nh m\u1ed9t s\u1ed1 kh\u00eda c\u1ea1nh, c\u00f2n K\u00ednh v\u1ea1n hoa ph\u1ea3n \u00e1nh t\u01b0\u01a1ng \u0111\u1ed1i to\u00e0n di\u1ec7n h\u01a1n, \u0111\u1ec1 c\u1eadp \u0111\u1ebfn t\u1ea5t c\u1ea3 c\u00e1c kh\u00eda c\u1ea1nh trong \u0111\u1eddi s\u1ed1ng t\u00e2m h\u1ed3n c\u1ee7a tr\u1ebb em v\u00e0 \u0111\u1eb7c bi\u1ec7t l\u00e0 tr\u00e1ch nhi\u1ec7m x\u00e3 h\u1ed9i c\u1ee7a nh\u00e0 v\u0103n \u0111\u1ed1i v\u1edbi vi\u1ec7c ho\u00e0n thi\u1ec7n nh\u00e2n c\u00e1ch c\u1ee7a c\u00e1c em\u201d. (Nh\u00e0 th\u01a1 H\u1eefu Th\u1ec9nh - Ch\u1ee7 t\u1ecbch H\u1ed9i nh\u00e0 v\u0103n Vi\u1ec7t Nam - \u0110\u00e0i Ti\u1ebfng n\u00f3i Vi\u1ec7t Nam, ng\u00e0y 24-1-2004) M\u1ee4C L\u1ee4C L\u1edbp ph\u00f3 tr\u1eadt t\u1ef1 M\u1eb9 v\u1eafng nh\u00e0. \u0110o\u00e0n k\u1ecbch t\u1ec9nh l\u1ebb Lang thang trong r\u1eebng Kho b\u00e1u d\u01b0\u1edbi h\u1ed3 Gia s\u01b0 Kh\u00e1ch s\u1ea1n hoa h\u1ed3ng Qu\u00e0 t\u1eb7ng ba l\u1ea7n K\u00ednh v\u1ea1n hoa C\u00f2n ch\u00fat g\u00ec \u0111\u1ec3 nh\u1edb. M\u1eddi b\u1ea1n \u0111\u00f3n \u0111\u1ecdc.", "img": "https://www.vinabook.com/images/thumbnails/product/240x/11221_p17575.jpg", "author": "Nguy\u1ec5n Nh\u1eadt \u00c1nh", "class": "vanhoc", "name": "K\u00ednh V\u1ea1n Hoa (T\u1eadp 5)"}
{"songs": [{"title": "Blood in Blood Out (feat. Rizin Sun)", "lyrics": "(feat. Rizin Sun)\n\n(Young Buck)\nDis for all dem niggas out dere jackin\nThis how we gon' put it down\nDem gangsta niggas from J.C. center court 12th\n3rd Avenue, my block\nNigga, murder murder mayne\n\nI come nake faceded, ain't no need for a ski-mask\nFrom neck down, I'm black down, eye to eye when I blast\n\n(Rizin Sun)\nNo question, I got the code\nNow how many bodies out there take out before I reload\nHit 'em below\n\n(Young Buck)\nHis fuckin knees\nBefore we leave, we gon' locate them ki's\nA nigga gotta eat, ya heard me?\n\n(Rizin Sun)\nYou know the player when we get there, kill e'rything in there\nLeavin no clues, like we never even been there\n\n(Young Buck)\nLife ain't fair, but fuck it it's a new year\nI'm grabbin my strap, cockin it back, and boo-yaa\nWe almost thay-urr\n\n(Rizin Sun)\nLock down the spot\nPut your vest on punk, we in the parking lot\n\n(Young Buck)\nOne of them all day killers, who's hard to spot\nJackin all y'all whether it's dark or not\n\n(Chorus: both 2X)\nIt's blood in - blood out - and you know what I'm about\nI'm ridin high - nigga I'm ridin high\nSo don't get in if you ain't about it spendin it big\nCause I'm clearin the block - oh I'm clearin the block\n\n(Rizin Sun)\nWe did our job, now we on the next mission\nThe next victim, go on see if the tec spittin\n\n(Young Buck)\nNo bullshittin, see they don't know just how we livin\nI'm goin all out, I ain't scared to go to prison\n\n(Rizin Sun)\nMake your own decision, it's gon' be a long ride\nI need the money, I can't wait a long time\n\n(Young Buck)\nKeep a strong mind, cause we done waited in a long line\nJust to get our shine on, now it's our time\n\n(Rizin Sun)\nBelieve that, it's our turn\nPull out your weapon to burn, get what you earned\n\n(Young Buck)\nWe all must learn, that money is the key to life\nAnd niggas gon' die if we ain't eatin right\n\n(Chorus w/ minor variations)\n(Young Buck)\nWho you know livin right, ain't nobody spreadin love\nNiggas snown off that white, goin out and sheddin blood\n\n(Rizin Sun)\nLife lookin like my momma said it would\nWhether or not I still ride for the hood, I'm on my block\n\n(Young Buck)\nMy niggas they slang rocks, shoot it out with cops\nFrom J.C. the center court life's hard knocks\n\n(Rizin Sun)\nHold on, grab your Glock, did you see the car stop?\n(Which one?) The black Benz with the top dropped\n\n(Young Buck)\nFuck 'em, the mac-10 with the infrared dot\nRepresent how I'm livin, keep on drivin down the block\n\n(Rizin Sun)\nOh it's on now, let's take the back route\nGet your mac out, it's blood in blood out\n\n(Chorus)\n(RS) Clear the block, shoot 'em up, shoot 'em up\n(YB) Nuttin but gangsta niggas - be clearin the block\n(RS) Ay man, Rizin Sun and Buck", "album": null, "year": null, "image": "https://images.genius.com/787eb0fed4a05aa802dee3238c64431a.792x792x1.jpg"}], "artist": "Young Buck"}
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{"poster":"Hnk Kenshiro","date":"2019-12-17T19:35:50.496+0000","title":"¿La Q de maestro Yi donde lo hace re aparecer?","subforum":"Charlas Generales","up_votes":2,"down_votes":0,"body":"Buenas, se que Zed se pone detrás de donde este mirando el campeón, kayn sale por donde quiere, pero yi?\r\n\r\nMe he fijado que al usar Q en campeones sale en posición entre el enemigo y su nexo, es decir, una posición favorable para los ganks principalmente, pero quisiera saber si es siempre asi o fue coincidencia, gracias.","replies":[{"poster":"jal243","date":"2019-12-18T01:35:37.261+0000","up_votes":2,"down_votes":0,"body":"*Teleports behind you*\n\nUna mente enfocada puede taladrar la piedra.","replies":[]},{"poster":"pandruu","date":"2019-12-17T21:11:57.179+0000","up_votes":1,"down_votes":0,"body":"Hola!\nSale detrás del primer campeón, minion o mob al cual le tira la Q. Funciona similar a la R antigua de Fiora, Saludos!","replies":[{"poster":"Lord Monmon","date":"2019-12-17T22:22:16.574+0000","up_votes":1,"down_votes":0,"body":"Hay alguna forma de saber a quien le tira la Q?","replies":[{"poster":"VenganceZ","date":"2019-12-18T01:23:04.277+0000","up_votes":1,"down_votes":0,"body":"Si, tenés que estar muy atento al primer hit de la q","replies":[]}]}]},{"poster":"BuffAkalipls","date":"2019-12-17T21:12:48.747+0000","up_votes":1,"down_votes":1,"body":"en el objetivo al que tiraste la q","replies":[]}]}
{"is_answered": true, "view_count": 52, "tags": ["python", "pandas"], "last_activity_date": 1473271327, "answer_count": 2, "creation_date": 1473265239, "score": 1, "link": "http://stackoverflow.com/questions/39374995/create-dataframe-from-specific-column", "accepted_answer_id": 39376419, "owner": {"user_id": 6464893, "profile_image": "https://www.gravatar.com/avatar/ea27dceecb0bd4d178259bf19ad5ef7e?s=128&d=identicon&r=PG&f=1", "user_type": "registered", "reputation": 1209, "link": "http://stackoverflow.com/users/6464893/harrison", "accept_rate": 97, "display_name": "Harrison"}, "title": "Create dataframe from specific column", "last_edit_date": 1473265763, "question_id": 39374995}
{"micrownet":["greater","greater_(vs._lesser)","greater_antilles","greater_burdock","greater_butterfly_orchid","greater_celandine","greater_knapweed","greater_kudu","greater_london","greater_masterwort","greater_new_orleans_bridge","greater_new_york","greater_omentum","greater_pectoral_muscle","greater_peritoneal_sac","greater_pichiciego","greater_prairie_chicken","greater_rhomboid_muscle","greater_scaup","greater_spearwort","greater_stitchwort","greater_sunda_islands","greater_swiss_mountain_dog","greater_water_parsnip","greater_whitethroat","greater_yellowlegs"],"duck":["\n<a href=\"http://duckduckgo.com/Greatness\">Greatness</a>, the state of being great","\nIn terms of <a href=\"http://duckduckgo.com/geography\">geography</a> and <a href=\"http://duckduckgo.com/?q=politics\">politics</a> it is used in referring to a region or place together with the surrounding area, therefore implying expansive area and/or influence","Greater","http://www.merriam-webster.com/dictionary/greater","greater definition: consisting of a central city together with adjacent areas that are naturally or administratively connected with it.","Merriam-Webster"],"common":{"milestones":["<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Greater_Manchester\" title=\"Greater Manchester\"><span class=\"searchmatch\">Greater</span> Manchester</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Greater_London\" title=\"Greater London\"><span class=\"searchmatch\">Greater</span> London</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Two_people_killed_in_fire_in_Greater_Manchester,_England\" title=\"Two people killed in fire in Greater Manchester, England\">Two people killed in fire in <span class=\"searchmatch\">Greater</span> Manchester, England</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Greater_Manchester_Police_Chief_found_dead\" title=\"Greater Manchester Police Chief found dead\"><span class=\"searchmatch\">Greater</span> Manchester Police Chief found dead</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Christmas_arrives_early_in_Rochdale,_Greater_Manchester\" title=\"Christmas arrives early in Rochdale, Greater Manchester\">Christmas arrives early in Rochdale, <span class=\"searchmatch\">Greater</span> Manchester</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/UK%27s_Greater_Manchester_Police_charge_man_with_drug_possession_after_trick-or-treating_children_allegedly_given_cocaine\" title=\"UK&#39;s Greater Manchester Police charge man with drug possession after trick-or-treating children allegedly given cocaine\">UK&#39;s <span class=\"searchmatch\">Greater</span> Manchester Police charge man with drug possession after trick-or-treating children allegedly given cocaine</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Two_teenagers_killed_in_Greater_Manchester\" title=\"Two teenagers killed in Greater Manchester\">Two teenagers killed in <span class=\"searchmatch\">Greater</span> Manchester</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Five_boys_charged_with_raping_girl_in_Greater_Manchester,_England\" title=\"Five boys charged with raping girl in Greater Manchester, England\">Five boys charged with raping girl in <span class=\"searchmatch\">Greater</span> Manchester, England</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Rain_in_Greater_Vancouver_area,_increased_turbidity_in_drinking_water\" title=\"Rain in Greater Vancouver area, increased turbidity in drinking water\">Rain in <span class=\"searchmatch\">Greater</span> Vancouver area, increased turbidity in drinking water</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Multiple_planes_perform_aerial_spraying_over_greater_Dallas,_Texas_in_effort_to_combat_mosquitoes\" title=\"Multiple planes perform aerial spraying over greater Dallas, Texas in effort to combat mosquitoes\">Multiple planes perform aerial spraying over <span class=\"searchmatch\">greater</span> Dallas, Texas in effort to combat mosquitoes</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Man_arrested_on_suspicion_of_family_murders_in_Greater_Manchester,_England\" title=\"Man arrested on suspicion of family murders in Greater Manchester, England\">Man arrested on suspicion of family murders in <span class=\"searchmatch\">Greater</span> Manchester, England</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Bomb_blast_in_Pakistan,_%22fighters_for_greater_autonomy%22_responsible,_police_claim\" title=\"Bomb blast in Pakistan, &quot;fighters for greater autonomy&quot; responsible, police claim\">Bomb blast in Pakistan, &quot;fighters for <span class=\"searchmatch\">greater</span> autonomy&quot; responsible, police claim</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/U.S._government_proposes_removing_Yellowstone_grizzlies_from_endangered_species_list\" title=\"U.S. government proposes removing Yellowstone grizzlies from endangered species list\">U.S. government proposes removing Yellowstone grizzlies from endangered species list</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/US_stocks_plummet\" title=\"US stocks plummet\">US stocks plummet</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Russia_estimates_larger_yield_for_N._Korea_nuclear_test\" title=\"Russia estimates larger yield for N. Korea nuclear test\">Russia estimates larger yield for N. Korea nuclear test</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Russia:_N._Korea_Test_Much_Greater_Than_Thought\" title=\"Russia: N. Korea Test Much Greater Than Thought\">Russia: N. Korea Test Much <span class=\"searchmatch\">Greater</span> Than Thought</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Metropolitan_Police_to_sell_New_Scotland_Yard\" title=\"Metropolitan Police to sell New Scotland Yard\">Metropolitan Police to sell New Scotland Yard</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Newly_discovered_extra-solar_planet_may_be_Earth-like\" title=\"Newly discovered extra-solar planet may be Earth-like\">Newly discovered extra-solar planet may be Earth-like</a>","<a target=\"_new\" href=\"http://en.wikinews.org/wiki/Four_Lotto_649_winners_share_jackpot\" title=\"Four Lotto 649 winners share jackpot\">Four Lotto 649 winners share jackpot</a>"],"image":[[],[]]},"Lists":[],"created":1373507605,"book":[],"micro-www":{"greater":["greater","Greater_curvature_of_the_stomach","Greater_Sudbury","Greater_Montreal","Greater_Manchester_Police","Greater_Manchester_Council","Greater_Manchester","Greater_Los_Angeles_Area","Greater_London","Greater_India","Greater_French_Empire",""]},"wiki":{"cat":[],"text":"\n'Greater' may refer to: *Greatness, the state of being great *Greater than, in\ninequality *In terms of geography and politics it is used in referring to a\nregion or place together with the surrounding area, therefore implying expansive\narea and/or influence\n\n\n<!-- Long comment to avoid being listed on short pages -->\n","title":"greater","headings":[]},"micro-relation":["1: Greatness","1: Geography","1: Politics"]}
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{"poster":"feelsbad1337","date":"2019-04-13T13:09:48.963+0000","title":"suche midlaner für duoQ (dia 3)","subforum":"Clans & Teams","up_votes":1,"down_votes":0,"body":"suche einen midlaner zum climben da ich jungler bin. elo bitte arround high dia 4\r\n\r\n-vaentix","replies":[]}
{"poster":"Farnow","date":"2019-04-15T00:12:35.091+0000","title":"Kill-Xp/ snowballing und wie man es nerven sollte um den Jungle zu schwächen","subforum":"Hilfe & Support","up_votes":1,"down_votes":0,"body":"Früher war es mal so, dass ich einen Laner zwar töten konnte aber nicht zwangsläufig musste. Ich konnte auch einfach gut farmen. In der Lane war wave managment wichtig und zudem ging es darum gut zu spielen. Ein Jungler konnte einer Lane zwar helfen hat sie aber nicht zwangsläufig in eine komplett andere Richtung gedrückt. Nun hat der Jungler mehr Einfluss den je. Dadurch das Kills scheinbar deutlich mehr xp geben als zuvor und es gleichzeitig noch die Turretplatings gibt ist der Einfluss der Jungler auf das Spiel und snowballing allgemein sehr stark. So wird der bessere Jungler im Schnitt mehr Spiele gewinnen als verlieren zumindest deutlicher als andere Rollen. Mir geht eines auf jeden Fall zu weit. Es ist klar das der Jungler sehr viel Einfluss auf das Spiel hat, aber aktuell ist es zu viel. Ich würde mir wünschen, dass die XP für einen Kill deutlich reduziert wird und shut down gold für farn noch langsamer aufgebaut wird. So wird snowballing reduziert und Spieler die gut farmen und ihre lane dominieren nicht durch einen Gank sofort in die Negativität geschoben. Ich weiß der Jungler soll etwas bewirken doch das gold eines Kills ist schon mehr als genug. Dann ist ein jungler der einige Kills hat auch nicht gleich auf dem Level der Sololaner. Desweiteren würde ich die Zeit in der die Turretplatings vorhanden sind etwas nach hinten verlegen, wenn ich sie nicht komplett entfernen würde oder das Gold reduzieren. Denn die Rolle den die Platings spielen sollte, erfüllen sie nur bedingt bis gar nicht. Sie stoppen extrem snowball nicht leicht ohne early game champs zu stark zu schwächen, sondern sie verstärken eben diese über das Maß hinweg. Was sind schon 14 Minuten Schutz? Die Platings werden mit dem Harold meist nur zu einer einfachen gold quelle. Auch werden sie durch Rotationen eigentlich nur zu einer zusätzlichen Goldquelle für das gewinnende Team.\r\nZusammenfassend wünsche ich mir eigentlich nur wieder mehr ein ruhigeres League of Legends mit mehr Laning und Planung. Klar mechanische Skills sind toll, aber sie sollen wenn möglich nur ein Teil sein und gerade im Lategame scheinen. Ich will die Möglichkeit haben durch zoning und weiteres gut ahead zukommen und gleich zeitig meine feedende Botlane zu carrien (in einem vernünftigen Ramen natürlich)\r\n\r\nIn der Hoffung in Zukunft wieder mehr Spaß an League haben zu können\r\nKai (Farnow)","replies":[{"poster":"MadoTV","date":"2019-04-15T13:43:50.242+0000","up_votes":1,"down_votes":0,"body":"Ich spiele jng jnd dieTurrets sind einfach schwach sie brauchen mehr schaden oder attack speed.\nzu der ersten Sache wir jungler wären ohne diesen Impakt nutzlos","replies":[]},{"poster":"Nack321","date":"2019-04-15T08:30:34.847+0000","up_votes":1,"down_votes":0,"body":"Meiner Meinung steckt das Hauptproblem bei den Türmen die einfach viel zu schwach sind und nicht wirklich Schutz gibt wie sie eigentlich sollten. Was zb eine verbesserung wäre wäre wenn der Tower mehr aushalten würde oder der Tower wie in 3vs3 viel schneller schießen würde damit es weniger möglich wäre unter dem eigenen Tower auch mal vor nem Asssinen mehr Schutz zu haben bzw gegen Juggernaut wie Darius oder Garen.","replies":[]},{"poster":"ObeyTheCode","date":"2019-04-15T04:16:57.161+0000","up_votes":1,"down_votes":0,"body":"Riot soll mal das Balancingteam austauschen, dann wir der Snowball schwächer. Einfach ekelhaft was mit der Botlane abgeht. Ich spiele Mundo als Support und stompe jede Lane.","replies":[]}]}
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{ "Sovetsk, Kaliningrad Oblast": "Горад Савецк, Калінінградская вобласць", "Saint Helena": "Востраў Святой Алены", "Charles de Gaulle": "Шарль дэ Голь", "Louisiana": "Штат Луізіяна", "Gunboat War": "Англа-дацкая вайна", "Ludwig van Beethoven": "Людвіг ван Бетховен", "Plato": "Платон", "Roman Empire": "Рымская імперыя", "Emmanuel de Grouchy, Marquis de Grouchy": "Эмануэль Грушы", "Charles François Dumouriez": "Шарль Франсуа Дзюмур'е", "Pyotr Bagration": "Пётр Іванавіч Баграціён", "Socrates": "Сакрат", "Champ de Mars Massacre": "Расстрэл на Марсавым полі", "Republic of Genoa": "Генуэзская рэспубліка", "Francis II of France": "Францыск II", "Hannibal": "Ганібал Барка", "Louis X of France": "Людовік X, кароль Францыі", "King of the Romans": "Рымскі кароль", "Papal States": "Папская вобласць", "Liberté, égalité, fraternité": "Свабода, роўнасць, братэрства", "Brigadier general": "Брыгадны генерал", "Antoine Lavoisier": "Антуан Ларан Лавуазье", "Napoleonic Wars": "Напалеонаўскія войны", "Cherbourg-Octeville": "Горад Шэрбур-Актэвіль", "Carniola": "Крайна", "Henry II of France": "Генрых II Валуа", "Louis XVII of France": "Людовік XVII", "Rochefort, Charente-Maritime": "Горад Рашфор", "Pope Pius VII": "Пій VII, Папа Рымскі", "Place de la Concorde": "Плошча Згоды", "Carlo Buonaparte": "Карла Буанапартэ", "Louis IV of France": "Людовік IV, кароль Францыі", "Hundred Days": "Сто дзён", "Grenoble": "Горад Грэнобль", "Ferdinand VII of Spain": "Фердынанд VII", "Tuscany": "Таскана", "Alfonso XIII of Spain": "Альфонса XIII", "German Confederation": "Германскі саюз", "Marie Antoinette": "Марыя Антуанета", "Louis the Stammerer": "Людовік II Заіка", "List of French monarchs": "Спіс манархаў Францыі", "House of Hohenzollern": "Дынастыя Гогенцолернаў", "Charles XIV John of Sweden": "Карл XIV Юхан", "United Kingdom of the Netherlands": "Аб'яднанае каралеўства Нідэрландаў", "Joseph Bonaparte": "Жазеф Банапарт", "Thomas Paine": "Томас Пейн", "Legion of Honour": "Ордэн Ганаровага легіёна", "Maria I of Portugal": "Марыя I, каралева Партугаліі", "Swabia": "Швабія", "Austrian Empire": "Аўстрыйская імперыя", "Eugène de Beauharnais": "Яўген Багарнэ", "Chlothar I": "Хлотар I", "Alfred Adler": "Альфрэд Адлер", "Nice": "Горад Ніца", "Holy Roman Empire": "Свяшчэнная Рымская імперыя", "Dagobert I": "Дагаберт I", "Ferdinand I of Austria": "Фердынанд I, імператар Аўстрыі", "Sultan": "Султан", "Toulon": "Горад Тулон", "North German Confederation": "Паўночнагерманскі саюз", "Kingdom of Saxony": "Каралеўства Саксонія", "Campaigns of 1796 in the French Revolutionary Wars": "Італьянскі паход Банапарта, 1796-1797", "Viceroy": "Віцэ-каралеўства", "Diocese": "Дыяцэзія", "Romanticism": "Рамантызм", "Joachim Murat": "Іаахім Мюрат", "Muhammad": "Магамет", "Napoleon III": "Напалеон III", "Milan Cathedral": "Міланскі сабор", "Po (river)": "Рака По", "Neman (river)": "Рака Нёман", "François Joseph Lefebvre": "Франсуа Жазеф Лефеўр", "Jacques-Louis David": "Жак-Луі Давід", "Kingdom of Prussia": "Каралеўства Прусія", "Jérôme Bonaparte": "Жэром Банапарт", "Frederick VI of Denmark": "Фрэдэрык VI", "Carloman II": "Карламан II", "Philip III of France": "Філіп III Смелы", "Georges Danton": "Жорж Жак Дантон", "Cannon": "Пушка", "François Mitterrand": "Франсуа Мітэран", "Satellite state": "Сатэліт, палітыка", "Carolingian dynasty": "Дынастыя Каралінгаў", "Nicolas Oudinot": "Нікаля Шарль Удзіно", "Philip VI of France": "Філіп VI Валуа", "English Channel": "Праліў Ла-Манш", "Officer (armed forces)": "Афіцэр", "Wilayah": "Вілает", "Pyrenees": "Пірэнеі", "Adolf Hitler": "Адольф Гітлер", "Syria": "Сірыя", "Congress of Vienna": "Венскі кангрэс", "François-Noël Babeuf": "Гракх Бабёф", "Danube": "Рака Дунай", "United Kingdom of Great Britain and Ireland": "Злучанае Каралеўства Вялікабрытаніі і Ірландыі", "Baden": "Бадэн", "War of the First Coalition": "Вайна першай кааліцыі", "La Marseillaise": "Марсельеза", "Realism (art movement)": "Рэалізм, жывапіс", "Treaty of Campo Formio": "Кампа-Фармійскі мір", "Robert II of France": "Роберт II Набожны", "Battle of Austerlitz": "Бітва пад Аўстэрліцам", "Middle East": "Сярэдні Усход", "Vistula": "Рака Вісла", "House of Bonaparte": "Дынастыя Банапартаў", "The Coronation of Napoleon": "Каранацыя Напалеона", "Liguria": "Лігурыя", "Digital object identifier": "Лічбавы ідэнтыфікатар аб'екта", "Ferdinand I of the Two Sicilies": "Фердынанд I, кароль Абедзвюх Сіцылій", "Marie François Sadi Carnot": "Мары Франсуа Садзі Карно", "Battle of Mir (1812)": "Мірскі бой 1812 года", "Legitimists": "Легітымізм", "Spain": "Іспанія", "Mikhail Kutuzov": "Міхаіл Іларыёнавіч Кутузаў", "John II of France": "Іаан II Добры", "Cádiz": "Горад Кадыс", "Karl Theodor Anton Maria von Dalberg": "Карл Тэадор Дальберг", "Childeric III": "Хільдэрык III", "Library of Congress Control Number": "Кантрольны нумар Бібліятэкі Кангрэса", "Feudalism": "Феадалізм", "Swedish–Norwegian War (1814)": "Шведска-нарвежская вайна", "Bon-Adrien Jeannot de Moncey": "Бон Адрыен Жано дэ Мансей", "Age of Enlightenment": "Асветніцтва", "Scorched earth": "Тактыка выпаленай зямлі", "Notre Dame de Paris": "Сабор Парыжскай Божай Маці", "International Standard Serial Number": "ISSN", "Znojmo": "Горад Знойма", "Rhine": "Рака Рэйн", "Internet Movie Database": "Internet Movie Database", "Patrice de MacMahon, Duke of Magenta": "Патрыс дэ Мак-Магон", "Italian Republic (Napoleonic)": "Італьянская рэспубліка, 1802—1805", "Authority control": "Нарматыўны кантроль", "House of Habsburg": "Род Габсбургаў", "Flag": "Сцяг", "Napoleon": "Напалеон I Банапарт", "Haifa": "Горад Хайфа", "Salzburg": "Горад Зальцбург", "Low Countries": "Гістарычныя Нідэрланды", "Henry III of France": "Генрых III Валуа", "Caroline Bonaparte": "Караліна Банапарт", "Brest, France": "Горад Брэст, Францыя", "Michel Ney": "Мішэль Ней", "Treaty of Schönbrunn": "Шонбрунскі мірны дагавор", "Virtual International Authority File": "Virtual International Authority File", "Madrid": "Горад Мадрыд", "Louis Philippe I": "Луі-Філіп I", "Auguste de Marmont": "Агюст Фрэдэрык Луі Мармон", "Iron Crown of Lombardy": "Жалезная карона", "Ebro": "Рака Эбра", "Les Invalides": "Дом інвалідаў", "Ormea": "Армеа", "Hugh Capet": "Гуга Капет", "Battle of Paris (1814)": "Узяцце Парыжа, 1814", "Feuillant (political group)": "Фельяны", "François-René de Chateaubriand": "Франсуа Рэнэ дэ Шатабрыян", "John I of France": "Іаан I Пасмяротны", "Louis XV of France": "Людовік XV", "Haiti": "Гаіці", "Jacques Hébert": "Жак-Рэнэ Эбер", "Charles Maurice de Talleyrand-Périgord": "Шарль Марыс дэ Талейран-Перыгор", "Polish Legions (Napoleonic period)": "Легіёны польскія", "Charles the Simple": "Карл III Прастак", "Francisco Goya": "Франсіска Гоя", "Adriatic Sea": "Адрыятычнае мора", "Moldavia": "Малдаўскае княства", "Arthur Wellesley, 1st Duke of Wellington": "Артур Уэлслі Велінгтан", "Russian Empire": "Расійская імперыя", "Berezina River": "Рака Бярэзіна", "Charles the Fat": "Карл III Тоўсты", "Caucasus": "Каўказ", "Louis XVIII of France": "Людовік XVIII", "Duchy of Warsaw": "Герцагства Варшаўскае", "Knights Hospitaller": "Гаспітальеры", "Henry IV of France": "Генрых IV, кароль Францыі", "Valence, Drôme": "Горад Валанс", "Philip V of France": "Філіп V Высокі", "Seine": "Рака Сена", "Galilee": "Галілея", "President of France": "Прэзідэнт Францыі", "Ghetto": "Гета", "Stock character": "Амплуа", "Usurper": "Узурпацыя", "Bibliothèque nationale de France": "Нацыянальная бібліятэка Францыі", "Bourgeoisie": "Буржуазія", "Alexander I of Russia": "Аляксандр I, імператар расійскі", "War of the Second Coalition": "Вайна другой кааліцыі", "Jacques Chirac": "Жак Шырак", "Flag of France": "Сцяг Францыі", "Józef Poniatowski": "Юзаф Панятоўскі", "National Constituent Assembly": "Устаноўчы сход, 1789—1791", "Chlothar IV": "Хлотар IV", "Dynasty": "Дынастыя", "Chlothar II": "Хлотар II", "Second lieutenant": "Малодшы лейтэнант", "Holy Roman Emperor": "Імператары Свяшчэннай Рымскай імперыі", "Quasi-War": "Квазі-вайна", "French Revolution": "Вялікая французская рэвалюцыя", "Clovis I": "Хлодвіг I", "Edmond Rostand": "Эдмон Растан", "Inn (river)": "Рака Ін", "Marie Walewska": "Марыя Валеўская", "Louis XVI of France": "Людовік XVI", "Battle of Borodino": "Барадзінская бітва", "Louis Bonaparte": "Людовік I Банапарт", "Louis XI of France": "Людовік XI", "Thomas Jefferson": "Томас Джэферсан", "Pierre Beaumarchais": "П'ер Агюстэн Карон дэ Бамаршэ", "Jacobin": "Якабінцы", "Rosetta Stone": "Разецкі камень", "Grand Duchy of Finland": "Вялікае Княства Фінляндскае", "Reign of Terror": "Эпоха тэрору", "Selim III": "Селім III", "Russo-Turkish War (1806–12)": "Руска-турэцкая вайна, 1806—1812", "Alexander Suvorov": "Аляксандр Васільевіч Сувораў", "Jean-Paul Marat": "Жан-Поль Марат", "Georges Pompidou": "Жорж Пампіду", "Battle of Berezina": "Бітва на Бярэзіне", "Charles X of France": "Карл X Бурбон", "Cavalry": "Кавалерыя", "The Third of May 1808": "Трэцяга мая 1808 года ў Мадрыдзе", "Bar Confederation": "Барская канфедэрацыя", "Charles-Augustin de Coulomb": "Шарль Агюстэн дэ Кулон", "France": "Францыя", "Charles VI of France": "Карл VI Валуа", "Charles V, Holy Roman Emperor": "Карл V Габсбург", "Francis II, Holy Roman Emperor": "Франц II", "Victor Emmanuel II of Italy": "Віктор Эмануіл II", "Philip I of France": "Філіп I, кароль Францыі", "Tuberculosis": "Туберкулёз", "Klemens von Metternich": "Клеменс Венцэль фон Метэрніх", "Dominican Republic": "Дамініканская Рэспубліка", "Boulogne-sur-Mer": "Горад Булонь-сюр-Мэр", "Sister Republic": "Даччыныя рэспублікі", "History of Germany": "Гісторыя Германіі", "Tuileries Palace": "Палац Цюільры", "Charlemagne": "Карл Вялікі", "Philippe Pétain": "Анры Філіп Петэн", "Louis Antoine de Saint-Just": "Луі Антуан Сен-Жуст", "Louis XIV of France": "Людовік XIV", "Louvre": "Луўр", "Geodesy": "Геадэзія", "Elisa Bonaparte": "Эліза Банапарт", "François Hollande": "Франсуа Аланд", "Louis III of France": "Людовік III, кароль Францыі", "Horses of Saint Mark": "Квадрыга Святога Марка", "PubMed": "PubMed", "Quebec": "Правінцыя Квебек", "Joséphine de Beauharnais": "Жазефіна Багарнэ", "Frederick Augustus I of Saxony": "Фрыдрых Аўгуст I, кароль Саксоніі", "Louis IX of France": "Людовік IX, кароль Францыі", "Louis the Pious": "Людовік I Набожны", "Voltaire": "Вальтэр", "Charles IV of France": "Карл IV Прыгожы", "Habsburg Monarchy": "Габсбургская манархія", "Champs-Élysées": "Елісейскія палі", "Louis XIII of France": "Людовік XIII", "House of Bourbon": "Род Бурбонаў", "Alexander the Great": "Аляксандр Македонскі", "Joseph Fouché": "Жазеф Фушэ", "Western Approaches": "Заходнія падыходы", "International Standard Book Number": "Міжнародны стандартны кніжны нумар", "Jean-Léon Gérôme": "Жан-Леон Жэром", "Philip II of France": "Філіп II Аўгуст", "Benjamin Franklin": "Бенджамін Франклін", "Division (military)": "Дывізія", "Michael Andreas Barclay de Tolly": "Міхаіл Багданавіч Барклай дэ Толі", "Guild": "Гільдыі", "Storming of the Bastille": "Узяцце Бастыліі", "Marie Louise, Duchess of Parma": "Марыя-Луіза Аўстрыйская", "Poland": "Польшча", "Schlieffen Plan": "План Шліфена", "Egyptian pyramids": "Егіпецкія піраміды", "King of Italy": "Спіс каралёў Італіі", "Bubonic plague": "Бубонная чума", "Laurent de Gouvion Saint-Cyr": "Ларан дэ Гувіён Сен-Сір", "Saale": "Рака Заале", "Brutus": "Брут", "Louis-Alexandre Berthier": "Луі Аляксандр Берцье", "Félix Faure": "Фелікс Фор", "Kingdom of Holland": "Каралеўства Галандыя", "Elba": "Востраў Эльба", "Louis Alphonse, Duke of Anjou": "Луіс Альфонса, герцаг Анжуйскі", "Adolphe Thiers": "Луі Адольф Цьер", "Panthéon": "Пантэон, Парыж", "Jean-Baptiste Bessières": "Жан-Батыст Бесьер", "John VI of Portugal": "Жуан VI", "André Masséna": "Андрэ Масена", "Henry I of France": "Генрых I, кароль Францыі", "Edmund Burke": "Эдмунд Бёрк", "Treaty of Kiel": "Кільскія мірныя дагаворы, 1814", "Franz Joseph I of Austria": "Франц Іосіф I", "Valéry Giscard d'Estaing": "Валеры Жыскар д'Эстэн", "Charles the Bald": "Карл II Лысы", "Theuderic IV": "Тэадорых IV", "Denmark–Norway": "Данія-Нарвегія", "Maximilian I Joseph of Bavaria": "Максіміліян I Іосіф Вітэльсбах", "United States House of Representatives": "Палата Прадстаўнікоў ЗША", "Jean-Auguste-Dominique Ingres": "Жан Агюст Дамінік Энгр", "Tipu Sultan": "Тыпу Султан", "War of the Third Coalition": "Вайна трэцяй кааліцыі", "Merovingian dynasty": "Дынастыя Меравінгаў", "Marquis de Sade": "Маркіз дэ Сад", "Ottoman Empire": "Асманская імперыя", "Guadeloupe": "Гвадэлупа", "War of the Sixth Coalition": "Вайна шостай кааліцыі", "Charles VII of France": "Карл VII, кароль Францыі", "House of Valois": "Дынастыя Валуа", "Thomas Carlyle": "Томас Карлайл", "Napoleon II": "Напалеон II", "Dutch Republic": "Рэспубліка Злучаных правінцый", "Tissue (biology)": "Тканка", "Galicia (Eastern Europe)": "Галічына", "Liberalism": "Лібералізм", "Denis Diderot": "Дэні Дзідро", "Maximilien Robespierre": "Максімільен Рабесп'ер", "Frederick William III of Prussia": "Фрыдрых Вільгельм III", "Louis VI of France": "Людовік VI Тоўсты", "Lucien Bonaparte": "Люсьен Банапарт", "Constantinople": "Горад Канстанцінопаль", "Montesquieu": "Шарль Луі дэ Мантэск'ё", "Charles VIII of France": "Карл VIII Валуа", "Wallachia": "Валахія", "French Guiana": "Французская Гвіяна", "Vassal state": "Васальная дзяржава", "Alexandre de Beauharnais": "Аляксандр дэ Багарнэ", "Alexandria": "Горад Александрыя", "Philip IV of France": "Філіп IV Прыгожы", "Kingdom of the Two Sicilies": "Каралеўства Абедзвюх Сіцылій", "Jean-Jacques Rousseau": "Жан-Жак Русо", "Artillery": "Артылерыя", "French invasion of Russia": "Вайна 1812 года", "Pierre-Simon Laplace": "П'ер-Сімон Лаплас", "Longwood, Saint Helena": "Пасёлак Лонгвуд, востраў Святой Алены", "Guerrilla warfare": "Партызанская вайна", "William I, German Emperor": "Вільгельм I Гогенцолерн", "Unification of Germany": "Аб'яднанне Германіі, 1871", "List of German monarchs": "Спіс манархаў Германіі", "Belle Époque": "Пекная эпоха", "Raymond Poincaré": "Раймон Пуанкарэ", "Declaration of the Rights of Man and of the Citizen": "Дэкларацыя правоў чалавека і грамадзяніна", "Nicolas Sarkozy": "Нікаля Сарказі", "William I of the Netherlands": "Вілем I", "Great Sphinx of Giza": "Вялікі Сфінкс", "Pauline Bonaparte": "Паліна Банапарт", "Bohemia": "Багемія", "Spanish Empire": "Іспанская імперыя", "Ajaccio": "Горад Аяча", "Egyptology": "Егіпталогія", "Louis VII of France": "Людовік VII Малады", "French Academy of Sciences": "Французская акадэмія навук", "Integrated Authority File": "Gemeinsame Normdatei", "Pope Pius VI": "Пій VI, Папа Рымскі", "Dagobert III": "Дагаберт III", "Gaston Doumergue": "Гастон Думерг", "Napoleon (disambiguation)": "Напалеон, значэнні", "Carloman I": "Карламан, кароль франкаў", "Sphere of influence": "Сфера ўплыву", "Sweden": "Швецыя", "Lazare Carnot": "Лазар Карно", "Charles IX of France": "Карл IX Валуа", "Deism": "Дэізм", "Charles V of France": "Карл V Мудры", "Édouard Mortier, duc de Trévise": "Адольф Эдуард Казімір Жазеф Марцье", "Jean-Mathieu-Philibert Sérurier": "Жан-Мацье-Філібер Серур'е", "Pepin the Short": "Піпін Кароткі", "Catherine-Dominique de Pérignon": "Катарын-Дамінік Перыньён", "Revolutionary Tribunal": "Рэвалюцыйны трыбунал, Францыя", "Kingdom of Portugal": "Каралеўства Партугалія", "Francis I of France": "Францыск I", "Materialism": "Матэрыялізм", "The Times": "The Times", "Republic of Venice": "Венецыянская рэспубліка", "National Convention": "Нацыянальны Канвент", "Ulm": "Горад Ульм", "Louis V of France": "Людовік V, кароль Францыі", "Louis XII of France": "Людовік XII", "Peace of Pressburg (1805)": "Прэсбургскі мір", "Topography": "Тапаграфія", "War of 1812": "Англа-амерыканская вайна 1812-1814", "Kingdom of Great Britain": "Каралеўства Вялікабрытанія", "Otto von Bismarck": "Ота фон Бісмарк", "Confederation of the Rhine": "Рэйнскі саюз", "Malta": "Мальта", "United Kingdom": "Вялікабрытанія", "Church of England": "Царква Англіі", "Central Europe": "Цэнтральная Еўропа", "Louis-Nicolas Davout": "Луі Даву", "Georges Ernest Boulanger": "Жорж Буланжэ", "Kingdom of Westphalia": "Каралеўства Вестфалія", "Lord Byron": "Джордж Байран", "Spanish Inquisition": "Іспанская інквізіцыя", "Annexation": "Анексія", "Metric system": "Метрычная сістэма мер", "Vienna": "Горад Вена", "Jean-Baptiste Jourdan": "Жан-Батыст Журдан", "Ionian Islands": "Іанічныя астравы", "National Diet Library": "Нацыянальная парламенцкая бібліятэка Японіі", "Operational level of war": "Аператыўнае мастацтва", "Vichy France": "Рэжым Вішы", "Louis VIII of France": "Людовік VIII Леў", "Bourbon Restoration": "Рэстаўрацыя Бурбонаў", "Kingdom of Bavaria": "Каралеўства Баварыя", "Catholic Church": "Рымска-Каталіцкая Царква", "Corps": "Корпус, ваенная справа", "Gustav IV Adolf of Sweden": "Густаў IV Адольф", "Hortense de Beauharnais": "Гартэнзія Багарнэ", "Letizia Ramolino": "Летыцыя Рамаліна", "Russian Orthodox Church": "Руская праваслаўная царква", "Corsica": "Корсіка" }
{"title":"The Hangover Part II (2011) 600mb 720p BRRip raul.raghav","uid":6824500,"size":631197536,"categoryP":"video","categoryS":"hd___movies","magnet":"?xt=urn:btih:c1fc4d178a00f02632e245c378af63af96f7150c&amp;dn=The+Hangover+Part+II+%282011%29+600mb+720p+BRRip+raul.raghav&amp;tr=udp%3A%2F%2Ftracker.openbittorrent.com%3A80&amp;tr=udp%3A%2F%2Fopen.demonii.com%3A1337&amp;tr=udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969&amp;tr=udp%3A%2F%2Fexodus.desync.com%3A6969","seeders":0,"leechers":0,"uploader":"Rcube.ind","files":-1,"time":1321525235,"description":"The Hangover Part II (2011) 720p BRRip x264\n\n\nRelease Notes:\n\n\niMDB Rating.......: 6.8/10\nGenre.............: Comedy\nRelease Runtime...: 1hr 41mn\nSize..............: 600 MB\nResolution........: 1280 x 536\nLanguage..........: English\nSubtitles.........: English (Softcoded-Can be turned off)\nVideo.............: Matroska (MKV)\nSource............: 720p BluRay x264-Felony\n\n\n\nScreenshots inside torrent.\n\nSay thanks if you enjoyed.\n\n\n\nCheck my other uploads:\n &lt;a href=&quot;\nhttp://thepiratebay.se/user/Rcube.ind/&quot; rel=&quot;nofollow&quot; target=&quot;_NEW&quot;&gt;\nhttp://thepiratebay.se/user/Rcube.ind/&lt;/a&gt;\n\n\n\n","torrent":{"xt":"urn:btih:c1fc4d178a00f02632e245c378af63af96f7150c","amp;dn":"The+Hangover+Part+II+%282011%29+600mb+720p+BRRip+raul.raghav","amp;tr":["udp%3A%2F%2Ftracker.openbittorrent.com%3A80","udp%3A%2F%2Fopen.demonii.com%3A1337","udp%3A%2F%2Ftracker.coppersurfer.tk%3A6969","udp%3A%2F%2Fexodus.desync.com%3A6969"],"infoHash":"c1fc4d178a00f02632e245c378af63af96f7150c","infoHashBuffer":{"type":"Buffer","data":[193,252,77,23,138,0,240,38,50,226,69,195,120,175,99,175,150,247,21,12]},"announce":[],"urlList":[]}}
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{"Reviews": [{"Author": "Sarah P.", "ReviewID": "7PeRzM57ZamprUrayUdigA", "Overall": "5.0", "Content": "One of a kind beers walking distance from the OKRA/Bad News block.Admittedly, I can only have wine, sangria!, or cider (curse the gluten) but there are beers on tap that were brewed right there. ALWAYS: _impresses my out of town guests_a gluten-free drink choice_unassuming (even back when Cafe Luz was there)_clean bathrooms_games available (but not like Kung Fu Saloon, think video games like Nintendo 64 or board games like Cards Against Humanity) USUALLY:_not SO crowded we have to yell over the music/hum_friendly strangers to have conversation with_a gluten-free menu option (asked if accommodation was available and haven't been disappointed)_not too hard to find parking", "Date": "2014-04-03", "Author_Location": "Houston, TX"}, {"Author": "Jonathan N.", "ReviewID": "-IT3f28ianPPYqTp6Ah2lg", "Overall": "4.0", "Content": "Best brewpub in Houston. Don't quite understand some of these other reviews. They seem a little unforgiving of what is obviously a small and new business.", "Date": "2014-03-21", "Author_Location": "Houston, TX"}, {"Author": "Steph C.", "ReviewID": "CRFlkGsCIQGqVN7l7vCeag", "Overall": "2.0", "Content": "I got the yelp deal ($15 for $20 worth of food) and was told it was taken off my bill, but it was not, and totally my bad, I did not check the bill until I left.An email to the owner letting her know my experience (before I yelped) produced a very friendly, sincere email of apologies and offers of a free cheese plate next time.The sangria was delicious. The beer is ok, but what do I know. \u00a0 \u00a0I came here for the food and was in SHOCK when I got it, and not in a good way.I paid $15 for a plate of charcuterie in which all of the ingredients literally could've fit into the palm of my tiny hands. \u00a0$11 for a pizza that was thin, small piece of phyllo dough with some bacon on top. \u00a0Thai Mac and Cheese was soft and bland.Apparently I was there when the chef as out of town, will update on food again if I go back!", "Date": "2014-03-17", "Author_Location": "Houston, TX"}, {"Author": "Paul D.", "ReviewID": "fA7PAXfCKIHZe5pZUumdkQ", "Overall": "2.0", "Content": "Third time coming here. \u00a0Third time being disappointed. \u00a0I know I am going to probably get another note from the owner, and maybe even the brewer (like my last review). \u00a0I am sorry, as much as I respect the place, I have been that let down. \u00a0OK, I said they had 8th Wonder last review. \u00a0Apparently I got that mistaken with another brewery. \u00a0The last few times around, I am still not impressed with the selection. \u00a0Two house brews this last visit, both Wits. \u00a0This time, Oskar Blues (nice), and Crazy Mountain (beyond mediocre) as guest taps. \u00a0Anyway, that is just my opinion. \u00a0Unless I miss read the tap handles, and did ask what else was available, that was it (which of coarse is possible I didn't remember/take note of everything). The wit they made was good, not great. \u00a0Though considering the Belgian Strong Dark Ale, among a few others I have had are very good, I know the brewer has talent. \u00a0The most recent not being my favorite. \u00a0No harm in that. \u00a0I still just can't believe this...All beer was being served in solo cups...really? is this a college party? \u00a0With plenty correct glassware, clean and in view behind the bar. \u00a0I am still not a fan of the set up. \u00a0The front room is just to small for more than a handful of people. \u00a0There are some seats in the back along the kitchen, and a lounge area to play video games. The service is very friendly, just slow. \u00a0The food takes forever to come out. \u00a0I don't know what kind of prep has to be done for grilled cheese, but after a wait, I saw the bartender put together cheese on three half sandwiches in a waffle press. \u00a0Which took all of a half minute. It obviously does not take over 15 minutes to put a few slices of cheese on bread. I don't mind waiting, and good simple pub grub is the best. \u00a0Though it seems like an unorganized mess to get food. \u00a0Which is not nearly as good as say D&T's Parmesan Crusted Grilled Cheese. \u00a0Like all negative reviews, I don't want to pile on. \u00a0Especially for a place that I want to love. \u00a0I am sorry to the owners/people involved. \u00a0I will continue to try the place out from time to time. \u00a0I just feel I can have a better beer bar experience at many places throughout the city. \u00a0I really want to love the only true brewpub in the city. \u00a0Just not doing it for me right now.", "Date": "2014-02-16", "Author_Location": "Houston, TX"}, {"Author": "Shaji K.", "ReviewID": "4g0fjuPR8NDCW0-WR6-dqQ", "Overall": "4.0", "Content": "A tiny little shop off of Main Street that looks like a living room more than a bar. It works though. A small selection of \u00a0interesting brews on tap with a very informative crew of beer enthusiasts. The food selection is minimal but sounded amazing - just wasn't hungry enough to try any.Would stop by again on a late weekday for a nice chat and a beer.", "Date": "2014-02-26", "Author_Location": "Manhattan, NY"}, {"Author": "George W.", "ReviewID": "tOb1-SqI7Jw2ttXjlMRFrw", "Overall": "5.0", "Content": "Fantastic brews. We had a flight and followed up with the Wizards pride and joy. Very tasty. Concept is interesting and has a lot of promise. Many young people playing games while we drank. Food was different but very good. Had the bacon beer pizza. Wife had pork Mac and cheese. Both were excellent. Wizard was chatty and nice. Hope this sticks around.", "Date": "2013-12-29", "Author_Location": "Georgetown, TX"}, {"Author": "Mark W.", "ReviewID": "jm76iayuVOx0mgEMVjsGAQ", "Overall": "5.0", "Content": "Like the history stated, this place used to be Kitchen Incubator, but the owner made this place a haven for beer brewers to make their own beer with professional equipment on site. The goal for this place is definitely a brew pub. Right now I have only tasted beers from one of the current member, Warlocks: Games and Beer. Jonny and his pal have created beers with unique taste. They also named those beers in the Fantasy D&D style names like Health Potion and Green Ogre.So far all of his beers are great and unique to what's out there in the market. Especially Green Ogre as it has green pepper flavor so the spicy really makes a difference. I haven't try Spillers' beer yet but hopefully I will get to one day. I've been here for special events only and those special events the owner would provide small food and the food have been pretty good so far, especially the amaretto cheesecake goes great with the Nuttier Tax Collector beer.In the back there's some old school gaming system up and running for people to use and play with each other. There's also lots of board games and people actually bring their own Magic cards to play. In fact, this is like a gaming store (not video gaming store) but that actually have beers to go with your gaming. There's definitely still a lot of works in process but I can't wait to see them on their grand opening.", "Date": "2013-10-07", "Author_Location": "Houston, TX"}, {"Author": "Naomi G.", "ReviewID": "cqlRld4K49lGii0V7kFWxQ", "Overall": "1.0", "Content": "So disappointed with this place. \u00a0Unlike Paul, I won't be coming back three times unless there's a really good explanation. \u00a0My BF and I were enjoying a weekend of exploring Houston (we had done all the local fun stuff, Hermann Park and the pedal boats, the museum of natural science/butterfly exhibit, OKRA lounge, habanero drinks at El Big Bad, etc.) and thought, based on the yelp reviews of this place and the YELP OFFER for a free brewery tour if you check in, that we would do a little tour. \u00a0I love brewing home brews, have a degree in chemical engineering (e.g. how to process oil or make beer hehe), so we both figured this would be a cool spot to see some pilot versions of some cool batches in action (and be able to impart my uber chemE nerdiness on him), but when we checked in, after we asked the guy at the front desk who had not greeted us \u00a0if he was \u00a0still doing tours for the evening, (and annotated that we had checked in), said, \"we don't really have a tour. \u00a0I'd just be showing you stuff we have in the back there (gesturing) and there's not much there. \u00a0Yeah, we're between brews\". \u00a0Dude! \u00a0Could you have hyped it up a little to say, \"yes, I can! \u00a0We are in a unique situation now where we are bewteen brewers, but let me tell you a little about this place and what we do for local brewers.....\" you would have had two really small wanna be brewers all interested in the next step up to production beyond a small superbowl crowd... but instead we were heartbroken. \u00a0We left head down, disappointed by the level of service and promises unmet.A simple hello from the guy at the front desk would have brought the score to two, as now I am finding that there's all this cool stuff in the back that we may have wanted to enjoy. \u00a0Thanks front dude for setting up the expectataion that we shouldn't expect much. \u00a0What a sad afternoon. Thank goodness for the redemption of Bombay Pizza.", "Date": "2014-02-17", "Author_Location": "Walnut Creek, CA"}, {"Author": "Antonio Z.", "ReviewID": "m4K6zAWMcf_BzOvmXhRi9A", "Overall": "2.0", "Content": "I had a blood orange pale ale that was pretty good and the place seems interesting when you walk in, but if you walk past the first two tables into the kitchen area, this place becomes weird as hell. It's like stepping into someone's dirty kitchen/living room area. Couches, box TVs, Nintendos, board games, a dirty floor and a mess of a kitchen. Menu looks creative, but I wasn't hungry and the food portions looked very small for the price. $9 for side serving of macaroni & cheese?", "Date": "2014-03-01", "Author_Location": "Clute, TX"}, {"Author": "Alexandra F.", "ReviewID": "HrhfNQGbdHMIswp-1-KH9w", "Overall": "5.0", "Content": "I love what they are doing with this place. It's new, so they are still working on the interior, and working out some other kinks, but so far I am in love. The gaming room in the back is an excellent idea, and allows for the crowds to spread out when it starts getting too crowded towards the front. There are a wide variety of beers on tap--there is something for everyone! I have tried quite a few, and am in love with everything so far! The staff is very friendly and genuinely want to please everyone.", "Date": "2013-10-27", "Author_Location": "Houston, TX"}, {"Author": "Hugh M.", "ReviewID": "gnFinlMl7ctrMDN4FLsA3Q", "Overall": "5.0", "Content": "I heard about this place through a conversation with some friends and decided to check it out during their Graphic Art & Beer Exhibition! Great crowd & I'm definitely looking forward to more events here. Open taps 4-8 in a cool developing space; great people.. And a delicious variety of beer from a variety of brewers!", "Date": "2013-10-01", "Author_Location": "Spring, TX"}, {"Author": "Adam B.", "ReviewID": "aJcgfVU7T42P9pLeH-snnA", "Overall": "1.0", "Content": "I would like to talk about the food and beer at this place but unfortunately I never got to try it. Me and a group walked in and were greeted by no one, there were a few people who appeared to work there but no one said a word they just carried on with what they were doing. After sitting at a table for about 15 minutes looking around for a sign that might tell us how this placed worked, a person who at first appeared to be a customer walked past and said \"hi\" and kept walking. After he walked behind the bar we found out he was the manager on duty. My buddy finally got up and asked for some assistance and the gentleman spoke just to him as opposed to all of us at the table so we had no idea what he was saying. I love the idea of this place and for that reason alone I'll try and give it another chance, but if they don't get a lesson in customer service fast, this place is doomed for failure.", "Date": "2014-02-10", "Author_Location": "West University, Houston, TX"}], "RestaurantInfo": {"RestaurantID": "dQPGC6xqsC6xcAtF3CZADw", "Name": "The League of Extraordinary Brewers", "Price": "$$", "RestaurantURL": "/biz/the-league-of-extraordinary-brewers-houston", "Longitude": " -95.36089800000000", "Address": "907 Franklin StHouston, TX 77002", "Latitude": " 29.763454100000001", "ImgURL": "//s3-media3.fl.yelpcdn.com/bphoto/vsFzzL1SCyxXD3lPfx-KEQ/90s.jpg"}}