Showing posts with label email. Show all posts
Showing posts with label email. Show all posts

Computer respond to this email



Machine Intelligence for You

What I love about working at Google is the opportunity to harness cutting-edge machine intelligence for users’ benefit. Two recent Research Blog posts talked about how we’ve used machine learning in the form of deep neural networks to improve voice search and YouTube thumbnails. Today we can share something even wilder -- Smart Reply, a deep neural network that writes email.

I get a lot of email, and I often peek at it on the go with my phone. But replying to email on mobile is a real pain, even for short replies. What if there were a system that could automatically determine if an email was answerable with a short reply, and compose a few suitable responses that I could edit or send with just a tap?
Some months ago, Bálint Miklós from the Gmail team asked me if such a thing might be possible. I said it sounded too much like passing the Turing Test to get our hopes up... but having collaborated before on machine learning improvements to spam detection and email categorization, we thought we’d give it a try.

There’s a long history of research on both understanding and generating natural language for applications like machine translation. Last year, Google researchers Oriol Vinyals, Ilya Sutskever, and Quoc Le proposed fusing these two tasks in what they called sequence-to-sequence learning. This end-to-end approach has many possible applications, but one of the most unexpected that we’ve experimented with is conversational synthesis. Early results showed that we could use sequence-to-sequence learning to power a chatbot that was remarkably fun to play with, despite having included no explicit knowledge of language in the program.

Obviously, there’s a huge gap between a cute research chatbot and a system that I want helping me draft email. It was still an open question if we could build something that was actually useful to our users. But one engineer on our team, Anjuli Kannan, was willing to take on the challenge. Working closely with both Machine Intelligence researchers and Gmail engineers, she elaborated and experimented with the sequence-to-sequence research ideas. The result is the industrial strength neural network that runs at the core of the Smart Reply feature we’re launching this week.

How it works

A naive attempt to build a response generation system might depend on hand-crafted rules for common reply scenarios. But in practice, any engineer’s ability to invent “rules” would be quickly outstripped by the tremendous diversity with which real people communicate. A machine-learned system, by contrast, implicitly captures diverse situations, writing styles, and tones. These systems generalize better, and handle completely new inputs more gracefully than brittle, rule-based systems ever could.
Diagram by Chris Olah
Like other sequence-to-sequence models, the Smart Reply System is built on a pair of recurrent neural networks, one used to encode the incoming email and one to predict possible responses. The encoding network consumes the words of the incoming email one at a time, and produces a vector (a list of numbers). This vector, which Geoff Hinton calls a “thought vector,” captures the gist of what is being said without getting hung up on diction -- for example, the vector for "Are you free tomorrow?" should be similar to the vector for "Does tomorrow work for you?" The second network starts from this thought vector and synthesizes a grammatically correct reply one word at a time, like it’s typing it out. Amazingly, the detailed operation of each network is entirely learned, just by training the model to predict likely responses.

One challenge of working with emails is that the inputs and outputs of the model can be hundreds of words long. This is where the particular choice of recurrent neural network type really matters. We used a variant of a "long short-term-memory" network (or LSTM for short), which is particularly good at preserving long-term dependencies, and can home in on the part of the incoming email that is most useful in predicting a response, without being distracted by less relevant sentences before and after.

Of course, theres another very important factor in working with email, which is privacy. In developing Smart Reply we adhered to the same rigorous user privacy standards we’ve always held -- in other words, no humans reading your email. This means researchers have to get machine learning to work on a data set that they themselves cannot read, which is a little like trying to solve a puzzle while blindfolded -- but a challenge makes it more interesting!

Getting it right

Our first prototype of the system had a few unexpected quirks. We wanted to generate a few candidate replies, but when we asked our neural network for the three most likely responses, it’d cough up triplets like “How about tomorrow?” “Wanna get together tomorrow?” “I suggest we meet tomorrow.” That’s not really much of a choice for users. The solution was provided by Sujith Ravi, whose team developed a great machine learning system for mapping natural language responses to semantic intents. This was instrumental in several phases of the project, and was critical to solving the "response diversity problem": by knowing how semantically similar two responses are, we can suggest responses that are different not only in wording, but in their underlying meaning.

Another bizarre feature of our early prototype was its propensity to respond with “I love you” to seemingly anything. As adorable as this sounds, it wasn’t really what we were hoping for. Some analysis revealed that the system was doing exactly what we’d trained it to do, generate likely responses -- and it turns out that responses like “Thanks", "Sounds good", and “I love you” are super common -- so the system would lean on them as a safe bet if it was unsure. Normalizing the likelihood of a candidate reply by some measure of that responses prior probability forced the model to predict responses that were not just highly likely, but also had high affinity to the original message. This made for a less lovey, but far more useful, email assistant.

Give it a try

We’re actually pretty amazed at how well this works. We’ll be rolling this feature out on Inbox for Android and iOS later this week, and we hope you’ll try it for yourself! Tap on a Smart Reply suggestion to start editing it. If it’s perfect as is, just tap send. Two-tap email on the go -- just like Bálint envisioned.



* This blog post may or may not have actually been written by a neural network.?
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Email Is Still the Best Thing on the Internet

We keep being told that email is unproductive and there are better ways to communicate productively. For example Justin Rosenstein , the co-founder of Asana a productivity software startup says: "Email has become a counter-productivity tool." However, an interesting article in the Atlantic Monthly puts all these sales pitches in their place. Email is a great tool, possible the best thing about the Internet!

from The Universal Machine http://universal-machine.blogspot.com/

IFTTT

Put the internet to work for you.

Turn off or edit this Recipe

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How to extract or get email id from orkut

This is a very simple trick to extract email ID of any orkut user. This Works even if the target is not your friend. Below are the steps to do this:

Steps:-
  • Navigate to the profile page of the member you wish to know the email address.
  • Add that person as a friend.
  • Now navigate to your friends page.
  • On the right hand side, you will find a option to export contacts.
  • Choose Export Contacts Option.

extract or get email id from orkut

  • Fill in the Word Verification on the Next Page.
  • You will be prompted to download the contacts.csv file.
  • Once you have downloaded the file, open it in Microsoft Excel or any other compatible software.
  • You will see all the email addresses including those which have not yet accepted your friend requests but have recieved your friend request.
Read the comment portion for Sudhirs contribution
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Another Spam email won the sum of £860 000 00 GBP UK NATIONAL LOTTERY INC

Once i replied to the Damba Barous email now i got a second spam email which i would like to share with you all.
The email was as follows :-


Congratulation!!!You have won £860,000.00 GBP?
From: Telecap Stewart (info@lottery.co.uk)
Sent: March 2009 17:16PM
To:
------------------------------------
This electronic mail is to inform you that you have won the sum of £860,000.00 GBP [EIGHT HUNDRED AND SIXTY THOUSAND POUNDS STERLING] in the just concluded UK National Lottery Official On-Line Draw held on the first of January 2009 in London.The result of our mputer draw (#078) selected your email address attached to:

E -ticket Number: 50075611546 109
Batch Number: 074/05/ZY369
Reference Number: UK/9420X/68

Which subsequently won you the lottery as the 2nd prize winner in the 2nd category i.e. match 5 plus bonus. You have therefore been approved to claim a total sum of £860,000.00 GBP [EIGHT HUNDRED AND SIXTY THOUSAND POUNDS STERLING] in cash credited to file KTU/0023118308/08.
Contact your claims officer below to process/forward your prize to you.
***************************************
Name: Mr. Mark Gerald
Contact E-mail: mak_gerald00@yahoo.com.hk
Telephone: +44-704-573-1869
***************************************

Please provide him with the below information for Verification:
E -ticket Number: 50075611546 109
=========================
Full Names:
Address:
Date of Birth:
Telephone/Fax number:
Nationality:
Marital Status:
Age:
Occupation:
CONGRATULATIONS!!!

Mrs. Telecap Stewart,
Online Co-ordinator,
UK NATIONAL LOTTERY INC.
Copyright © 2009 UK National Lottery Award.

--

This message has been scanned for viruses and dangerous content by MailScanner, and is believed to be clean.
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Spam email watch How to protect yourself from spam emails

What is a spam (junk mail) offer?

Spam is an unsolicited (or junk) email. Spam emails usually offer free goods or ‘prizes’, very cheap products (including pharmaceuticals), promises of wealth or other offers that could result in you taking part in a scam. You might be asked to pay a joining fee, to buy something to win a prize or some other benefit, or to call a 190 telephone or fax number (calls made to these numbers are charged at premium rates). Spam emails can basically offer you anything and everything—from fake college degrees to pirated software and counterfeit designer watches—so it pays to be suspicious and delete unsolicited emails.

Spam emails differ from regular printed junk mail in one major way—responding to a scam email can cause you many problems. You may find that malicious software like spyware or key-loggers has been downloaded onto your computer. Your credit card or other personal details may be stolen. You may send away money for something that never arrives or is not what you thought it would be.


Warning signs
You receive an unsolicited email that contains:
  • an invitation to participate in any type of lottery or sweepstake
  • an offer of uninvited gifts or goods from any source
  • an offer from overseas
  • a request to pay a fee to receive more benefits from the same provider
  • an offer from an unregistered lottery
  • an offer of special benefits (eg, wealth, love, health) from someone claiming psychic powers
  • an offer of a gambling system that guarantees winners.

Protect yourself against spam (junk mail) offers
  • Do not open suspicious or unsolicited emails (spam): delete them.
  • Do not click on any links in a spam email, or open any files attached to them.
  • Never call a telephone number that you see in a spam email.
  • NEVER reply to a spam email (even to unsubscribe).
  • Never enter your personal, credit card or online account information on a website that you are not certain is genuine.
  • Never send your personal, credit card or online account details through an email.
  • Use your common sense: the offer may be a scam.
  • Read all the terms and conditions of any offer very carefully: claims of free or very cheap offers often have hidden costs.
  • Do not send any money or pay any fee to claim a prize or lottery winnings.

Do your homework
Remember that letters, emails and other approaches offering you something that looks too good to be true are almost always scams.

If you are interested in what the email is offering, contact your local office of fair trading to see if they can tell you more about the offer.

If you are interested in an offer, use a search engine to locate the firm’s website address. Be sure that you know what the offer is actually for, what the total cost will be and what to do if something goes wrong (e.g. the product is not delivered or does not work).

Seek independent advice from an accountant or solicitor if a significant amount of money is involved. Don’t provide your credit card or bank account details to ANYBODY you are not completely sure about.


Decide
If you receive a spam offer, the best thing to do is delete the email. Do NOT respond. Do not email back, do not call any telephone number listed in the email and do not send any money, credit card details or other personal details to the scammers. Responding only indicates youre interested and you could end up with lots more fake offers in the future.

If you are interested in what the spam email is offering, it is still best not to follow any link contained in the email. Internet links do not always lead where their name says they do. Sometimes, clicking on a link will download a program to your computer. Make sure you have done your homework before doing anything to take up an offer from a spam email.

Source:- http://www.scamwatch.gov.au/
There is a website dedicated to spam. You can read lots more. Visit
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