Monday, October 2, 2017
RudraAI VOICE BOT
#VoiceBOT #VoiceAI #VoiceOverShoppingAssistant #VoiceRecognition #MachineLearning #AI #DeepLearning
Sunday, October 1, 2017
VOICE AI BOT
Created a Voice over Shopping BOT which can place
order over Voice command .
In the 1st level, Rudra could :
1) Understand voice and take appropriate action
e.g.
i) Shows
the current time when asked the time
ii) Opens up Google Map when asked for a place (
e.g. Where is Taj Mahal? )
iii) Opens
up the appropriate Shopping Platform ( e.g. #Amazon or #Myntra or #Jabong etc ) when asked to find the item - like find me a red
shirt from Jabong .
iv) Can scan images among multiple images in a
folder ( think from a UI perspective that you are uploading an image ) and find
the appropriate item from the shopping platform.
In the 2nd Level, I had tried to make Rudra
reaching towards the Goal like buying me an item . For example, if I say -Buy
me a white Shirt from Myntra , it first opens up the appropriate search , then
selects the item , then selects the appropriate size , adding it to shopping
bag and placing the order .
Due to security reasons, Myntra couldn't let me
move to the final level after multiple testing , which is understandable
but Goal accomplished !
Labels:
AI,
bot,
chatbot,
deep learning,
ShoppingAsssitant,
VoiceAI,
VoiceRecognition
Thursday, September 28, 2017
How to : Your VOICE Based AI
#SpeechRecognition #VoiceBasedAI #DeepLearning #SpeechToText #Abzooba
Created a simple Voice based AI Assistant using speech recognition library in python.
It does the following :
1) Understands voice
2) Can convert speech to text ( My starting point , as wanted an Assistant who can help me write my stories )
3) Perform simple actions ,Like ?
3A) You ask for the current time and get's it instantly. 3B) Understands the intent or context in the speech and can perform specific action e.g. When I ask Rudra ( Have named my AI after Lord Shiva ) to find the location of a place , it automatically opens Google Map with the particular location , or when I ask to find a similar kind of shirt by providing the picture of a blue shirt , it scans the image and then find similar looking shirt in #Amazon or #Myntra.
Interesting, isn't it?
Pray to Lord Rudra and get started !
Let's look into how I did it.
Some Important Stuff FIRST -
For Speech Recognition, you need Speech Recognition library.
Do a pip install and get it installed.
pyaudio will also be required.
I am using Keras ( which using tensorflow backend) here for further processing .
Google has a great Speech Recognition API. This API converts spoken text (microphone) into written text (Python strings), briefly Speech to Text.
A text-to-speech (TTS) system converts normal language text into speech.
Let's Look into the WorkFlow :
A) I say what TIME is it ....
Good, let's move to more complex stuff !
B) I say to find me a Location like let's say I ask - Where is Abzooba ?
Great , now let's move to more Complex things .
C) I show an Image to Rudra - I have kept the image in a folder as for now but once you create a simple UI along with it you can just upload the image .
I ask Rudra to search for similar item in #Myntra
Rudra scans the image and then automatically opens up Myntra for the possible choices.
3) Perform simple actions ,Like ?
3A) You ask for the current time and get's it instantly. 3B) Understands the intent or context in the speech and can perform specific action e.g. When I ask Rudra ( Have named my AI after Lord Shiva ) to find the location of a place , it automatically opens Google Map with the particular location , or when I ask to find a similar kind of shirt by providing the picture of a blue shirt , it scans the image and then find similar looking shirt in #Amazon or #Myntra.
Interesting, isn't it?
Pray to Lord Rudra and get started !
Let's look into how I did it.
Some Important Stuff FIRST -
For Speech Recognition, you need Speech Recognition library.
Do a pip install and get it installed.
pyaudio will also be required.
I am using Keras ( which using tensorflow backend) here for further processing .
Google has a great Speech Recognition API. This API converts spoken text (microphone) into written text (Python strings), briefly Speech to Text.
A text-to-speech (TTS) system converts normal language text into speech.
Let's Look into the WorkFlow :
Let's see how it works :
A) I say what TIME is it ....
Good, let's move to more complex stuff !
B) I say to find me a Location like let's say I ask - Where is Abzooba ?
Automatically opens up Chrome browser with Goggle Map location the particular address.
Great , now let's move to more Complex things .
C) I show an Image to Rudra - I have kept the image in a folder as for now but once you create a simple UI along with it you can just upload the image .
I ask Rudra to search for similar item in #Myntra
Rudra scans the image and then automatically opens up Myntra for the possible choices.
Tuesday, September 26, 2017
Image Classification - Deep Learning
#github project - how to loop through a folder containing multiple images and classifying them using Keras and Pre-trained Networks.
#tensorflow #keras #CNN #Neuralnet #INCEPTIONV3 #Machinelearning #DeepLearning
How it helps ?
ImageClassificationDeepLearning
Here I will show how to loop through a folder containing multiple images and classifying them using Keras and Pre-trained Networks.
#TENSORFLOW #KERAS #NN #NEURALNET #INCEPTIONV3 #MACHINELEARNING #DEEPLEARNING
Our brains make vision seem easy. It doesn't take any effort for humans to tell apart a lion and a jaguar, read a sign, or recognize a human's face. But these are actually hard problems to solve with a computer: they only seem easy because our brains are incredibly good at understanding images.
How it helps ?
Let’s say you have a folder wherein Multiple images get uploaded – best example will be like OLX or Quickr which are free Buy & Sell websites. Now, you need to determine if any harmful things ( e.g. Gun etc) are being bought and sold .
SEVERAL PRE-TRAINED NETWORKS :
- VGG16, VGG19, ResNet50, Inception V3, and Xception
State-of-the-art deep learning image classifiers in Keras
Keras ships out-of-the-box with five Convolutional Neural Networks that have been pre-trained on the ImageNet dataset: VGG16 VGG19 ResNet50 Inception V3 Xception
Inception V3
The goal of the inception module is to act as a “multi-level feature extractor” by computing 1×1, 3×3, and 5×5 convolutions within the same module of the network — the output of these filters are then stacked along the channel dimension and before being fed into the next layer in the network. The original incarnation of this architecture was called GoogLeNet, but subsequent manifestations have simply been called Inception vN where N refers to the version number put out by Google.
Saturday, September 23, 2017
Friday, September 22, 2017
Let’s first write a simple Image Recognition Model using Inception V3 and Keras
Image Recognition
#TENSORFLOW #KERAS #NN #NEURALNET #INCEPTIONV3 #MACHINELEARNING #DEEPLEARNING
Our brains make vision seem easy. It doesn't take any effort for humans to tell apart a lion and a jaguar, read a sign, or recognize a human's face. But these are actually hard problems to solve with a computer: they only seem easy because our brains are incredibly good at understanding images.
SEVERAL PRE-TRAINED NETWORKS :
- VGG16, VGG19, ResNet50, Inception V3, and Xception
State-of-the-art deep learning image classifiers in Keras
Keras ships out-of-the-box with five Convolutional Neural Networks that have been pre-trained on the ImageNet dataset:
- VGG16
- VGG19
- ResNet50
- Inception V3
- Xception
Inception V3
The goal of the inception module is to act as a “multi-level feature extractor” by computing 1×1, 3×3, and 5×5 convolutions within the same module of the network — the output of these filters are then stacked along the channel dimension and before being fed into the next layer in the network.
The original incarnation of this architecture was called GoogLeNet, but subsequent manifestations have simply been called Inception vN where N refers to the version number put out by Google.
LET'S WRITE A NICE LITTLE PROGRAM TO CLASSIFY IMAGES
What are we going to Detect?
What does this Image say to a Computer?
Let's check it out :
import
numpy as np
from
keras.preprocessing import image
from
keras.applications import inception_v3
#
Load pre-trained image recognition model
model
= inception_v3.InceptionV3()
#
Load the image file and convert it to a numpy array
img = image.load_img('../input/Huggies.jpg', target_size=(299, 299))
input_image = image.img_to_array(img)
#
Scale the image so all pixel intensities are between [-1, 1] as the model
expects
input_image /= 255.
input_image -= 0.5
input_image *= 2.
#
Add a 4th dimension for batch size (as Keras expects)
input_image = np.expand_dims(input_image, axis=0)
#
Run the image through the neural network
predictions
= model.predict(input_image)
#
Convert the predictions into text and print them
predicted_classes =
inception_v3.decode_predictions(predictions, top=1)
imagenet_id, name, confidence = predicted_classes[0][0]
#Let's print what the DL Program say
print("This
is a {} with {:.4}% confidence!".format(name, confidence * 100))
Output: This is a diaper
with 95.24% confidence!
Tuesday, September 19, 2017
HIT PROFIT BY MACHINE LEARNING BASED TRADING
I bought FRESHTROP Fruits at INR 94 on 08th AUGUST 2017 .
WHY ????– a very detailed study on prices across last 10 years or more, using logistic regression and it should that it’s at it lowest trading price.
Today it trades at 143 , today is 19th September , so in around a little more than a month.
Profit per share = 49 Rupees
If you have bought 1000 Shares, ( Investment INR 94000/- Less than a Lakh ) , you have gained around 50,000/- in just 1 month.
Tip – buy now, it will more to 250/- in a period of 1 years or little more .
It’s always make sense to invest with Machine Learning Statistics .
You can follow my blog on investment tips at http://saptak-firsttry.blogspot.in/
#StockTips #MachineLearning #LogisticRegression #AlgorithmicTrading
Saturday, September 16, 2017
Predictions and Suggestions from a machine learning based Algorithmic trading
#MachineLearning #AlgortihmicTrading #StockMarketAutomatedTrading #LogisticRegression #Boosting
Predictions and Suggestions from a machine learning
based Algorithmic trading
An algorithm is a specific set of clearly defined
instructions aimed to carry out a task or process.
Algorithmic trading (automated trading, black-box
trading, or simply algo-trading) is the process of using computers programmed
to follow a defined set of instructions for placing a trade in order to
generate profits at a speed and frequency that is impossible for a human
trader. The defined sets of rules are based on timing, price, quantity or any
mathematical model. Apart from profit opportunities for the trader,
algo-trading makes markets more liquid and makes trading more systematic by
ruling out emotional human impacts on trading activities.
We can create a Regression formula like below :
The dependent variable is the Return on capital invested and can be run across all stocks.
Error term ei can be boosted using Boosting Algos and thus increasing the prediction accuracy.
Now how to choose your Variables and what can be the
ideal STOCK Equation :
YOY Quarterly sales growth > 15 and
YOY Quarterly profit growth > 20 and
Net Profit latest quarter > 1 and
G Factor >= 7 and
Net Profit latest quarter > .33 AND
Other income latest quarter < Net Profit latest
quarter * .5 AND
Net Profit preceding year quarter <= 0 AND
Expected quarterly net profit > 0 AND
Sales latest quarter > Sales preceding year
quarter AND
Return on invested capital > 25 and
Earnings yield > 15 and
Book value > 0 AND
Market Capitalization > 15
AND
Graham Number > Current price AND
PB X PE <=22.50 AND
PEG Ratio >0 AND
PEG Ratio <1 .5="" and="" o:p="">1>
Altman Z Score >=2.5 AND
Sales growth 5Years >25 AND
Profit growth 5Years >15 AND
Current ratio >2 AND
Market Capitalization >250 AND
Sales >100
AND
Piotroski score > 7
AND
Dividend yield > 2 AND
Average 5years dividend > 0 AND
Dividend last year > Average 5years dividend AND
Profit after tax > Net Profit last year * .8 AND
Dividend last year > .35 AND
( Profit growth 3Years > 10 OR
Profit growth 5Years > 10 OR
Profit growth 7Years > 10 )
OR
(Market Capitalization > 3000) AND
(Average return on equity 10Years Years > 20) AND
(Debt to equity < 1.5) AND
(Interest Coverage Ratio > 2) AND
( PEG Ratio <= 1) AND
(Profit growth 5Years > 20)
AND
YOY Quarterly sales growth > 40 and
YOY Quarterly profit growth > 40 and
Average return on capital employed 3Years >30 and
Price to Earning <6 o:p="">6>
OR
Sales growth 10Years > 10 AND
Profit growth 10Years > 12 AND
OPM 10Year > 12 AND
Debt to equity < 0.5 AND
Current ratio > 1.5 AND
Altman Z Score > 3 AND
Average return on equity 10Years > 12 AND
Average return on capital employed 10Years >12 AND
Return on invested capital > 15 AND
Sales last year / Total Capital Employed > 2 AND
Average dividend payout 3years >15
AND
PEG Ratio <1 and="" o:p="">1>
Sales > 500 AND
Price to Earning < 40 AND
Profit growth > 20 AND
Debt to equity < 0.2 AND
Price to Cash Flow > 5
OR
EPS last year >20 AND
Debt to equity <.1 AND
Average return on capital employed 5Years >35 AND
Market Capitalization >500 AND
OPM 5Year >15
AND
Net Profit latest quarter > Net Profit preceding
quarter AND
Net Profit preceding quarter > Net profit 2quarters
back AND
Net profit 2quarters back > Net profit 3quarters
back
AND
EPS latest quarter > 1.2 * EPS preceding year
quarter AND
EPS latest quarter > 0 AND
YOY Quarterly sales growth > 25 AND
EPS last year > EPS preceding year AND
EPS > EPS last year AND
Profit growth 3Years > 25 AND
Return on equity > 17 AND
Down from 52w high < 15 AND
Market Capitalization > 100
AND
Price to Earning >0 and Price to Earning <10 5years="" and="" equity="" growth="" on="" return="">10 and Dividend yield >1 and Return on
capital employed >10 10>
AND
Profit growth 5Years > Sales growth 5Years AND
Sales growth 5Years > 3 AND
Return on equity > 15 AND
Working capital 5Years back < 0
AND
Price to Earning >0 and Return on equity 5years
growth > 5 and Dividend yield >0
Note : DEBT reacts inversely to the equation . Term period will be a spread over last 15 to 20 Years.
Now , applying boosting algorithm ( like XGBoost) you
can reduce the error coefficients.
Based on the above equation and a little variation
choosing a flattened NN( Neural Network ) below stocks can be looked upon for
Indian stock market.
1) RELIANCE
INDUSTRIES
2) DCB
BANK
3) KAJARIA
CERAMICS
4) INFOSYS
5) INDO
COUNT INDUSTRIES
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