Motivational quotes were quite the rage back in the day when MMS & email forwarding were popular. I remember my parents forwarding me at the start of every morning. Fast forward to today, if you are lucky, you are part of some forward group on your messaging app of choice (Whatsapp, Telegram, etc.).
Inspired by the same idea, today we are going to build a service that sends our friends and family an AI-generated motivational quote of the day. Rather than hardcoding a list of motivational quotes, we are going to use a machine learning model to generate a quote on demand so that we never run out of quotes to share!
OpenAI GPT-2 model was proposed in Language Models are Unsupervised Multitask Learners by Alec Radford, Jeffrey Wu, Rewon Child, David Luan, Dario Amodei and Ilya Sutskever. It’s a causal transformer pre-trained using language modeling on a very large corpus of ~40 GB of text data.
To simplify this, at a high-level OpenAI GPT2 is a large language model that has been trained on massive amounts of data. This model can be used to predict the next token in a given sequence.
If that sounds too complicated, don't worry, you don't need to know any Machine Learning or AI to follow along with this project. Libraries such as
We'll use the
Luckily, in our case there’s a fine-tuned model that has been trained on the 500k quotes dataset -
With Hugging Face, using this model is as easy as as creating a tokenizer
from transformers import AutoTokenizer, AutoModelWithLMHead, pipeline
tokenizer = AutoTokenizer.from_pretrained("nandinib1999/quote-generator")
then constructing a model from the pre-trained model
model = AutoModelWithLMHead.from_pretrained("nandinib1999/quote-generator")
and finally, constructing the generator which we can use to generate the quote
generator = pipeline("text-generation", model=model, tokenizer=tokenizer)
# use a starting prompt
generator("Keep an open mind and")
[{'generated_text': 'Keep an open mind and a deep love for others'}]
Now that we have a way to generate quotes for us, we have to think about how we can use this in our app. There are multiple ways to go about building this.
A key plus point of the second option is that once the model is loaded the API can respond to us quickly and can be used in other applications as well. FWIW, the first option is a totally valid approach as well.
We can use __Fast API__to build a quick serving API. Here's what that looks like
# in file api.py
from pydantic import BaseModel
from fastapi import FastAPI, HTTPException
from transformers import AutoTokenizer, AutoModelWithLMHead, pipeline
## create the pipeline
tokenizer = AutoTokenizer.from_pretrained("nandinib1999/quote-generator")
model = AutoModelWithLMHead.from_pretrained("nandinib1999/quote-generator")
generator = pipeline("text-generation", model=model, tokenizer=tokenizer)
app = FastAPI()
class QuoteRequest(BaseModel):
text: str
class QuoteResponse(BaseModel):
text: str
### Serves the Model API to generate quote
@app.post("/generate", response_model=QuoteResponse)
async def generate(request: QuoteRequest):
resp = generator(request.text)
if not resp[0] and not resp[0]["generated_text"]:
raise HTTPException(status_code=500, detail='Error in generation')
return QuoteResponse(text=resp[0]["generated_text"])
Let's test it out
$ uvicorn api:app
INFO: Started server process [40767]
INFO: Waiting for application startup.
INFO: Application startup complete.
INFO: Uvicorn running on http://127.0.0.1:8000 (Press CTRL+C to quit)
Now we can start sending requests to the/generate
endpoint that will generate a quote for us.
Now that we have a way to generate quotes on demand, we can stop here and start working on sending this via
Given our API, we can now do the following to generate a quote
from random import choice
# feel free to add more starting prompts for more variety
canned_seeds = ["Always remember to", "Start today with", "It is okay to"]
seed = choice(canned_seeds)
resp = requests.post('http://127.0.0.1:8000/generate', data=json.dumps({"text": seed}))
return resp.json()["text"]
The first challenge is getting a beautiful background image for our quote. For that, we'll use the Unsplash API which provides a nice endpoint to return a random image matching a query. Opening
To keep things interesting, we can use different query terms such as stars, etc. Here's the how the code for downloading our background image looks like -
from random import choice
image_backgdrops = ['nature', 'stars', 'mountains', 'landscape']
backdrop = choice(image_backdrops)
response = requests.get("https://source.unsplash.com/random/800×800/?"+ backdrop, stream=True)
# write the output the img.png on our filesystem
with open('img.png', 'wb') as out_file:
shutil.copyfileobj(response.raw, out_file)
del response
Ok, now we have our background image and a quote which means we can work on assembling the final image that will be sent to the recipients. At a high level we want to place some text on an image but even this simple task can be challenging. For starters, there are a number of questions for us to answer
The answers to some of these questions are more complicated than others. To keep it simple, we'll put the text in the center, and do some wrapping so that it looks good. Finally, we'll use a light color text for now. For all image manipulation, we'll use Python Image Library (PIL) to make this easy for us.
# use the image we downloaded in the above step
img = Image.open("img.png")
width, height = img.size
image_editable = ImageDraw.Draw(img)
# wrap text
lines = textwrap.wrap(text, width=40)
# get the line count and generate a starting offset on y-axis
line_count = len(lines)
y_offset = height/2 - (line_count/2 * title_font.getbbox(lines[0])[3])
# for each line of text, we generate a (x,y) to calculate the positioning
for line in lines:
(_, _, line_w, line_h) = title_font.getbbox(line)
x = (width - line_w)/2
image_editable.text((x,y_offset), line, (237, 230, 211), font=title_font)
y_offset += line_h
img.save("result.jpg")
print("generated " + filename)
return filename
This generates the final image called result.jpg
For the penultimate step, we need to upload the image so that we can use that with Courier. In this case, I'm using Firebase Storage but you can feel free to use whatever you like.
import firebase_admin
from firebase_admin import credentials
from firebase_admin import storage
cred = credentials.Certificate('serviceaccount.json')
firebase_admin.initialize_app(cred, {...})
bucket = storage.bucket()
blob = bucket.blob(filename)
blob.upload_from_filename(filename)
blob.make_public()
return blob.public_url
Finally, we have everything we need to start sending our awesome quotes to our friends and family. We can use Courier to create a good-looking email template.
Sending a message with Courier is as easy as it gets. While Courier has its own SDKs that can make integration easy, I prefer using its API endpoint to keep things simple. With my AUTH_TOKEN
and TEMPLATE_ID
in hand, we can use the following piece of code to send our image
import requests
headers = {
"Accept": "application/json",
"Content-Type": "application/json",
"Authorization": "Bearer {}".format(os.environ['COURIER_AUTH_TOKEN'])
}
message={
"to": { "email": os.environ["COURIER_RECIPIENT"] },
"data": {
"date": datetime.today().strftime("%B %d, %Y"),
"img": image_url ## this is image url we generated earlier
},
"routing": {
"method": "single",
"channels": [
"email"
]
},
"template": os.environ["COURIER_TEMPLATE"]
}
requests.post("https://api.courier.com/send", json={"message": message}, headers=headers)
The API key can be found in
This tutorial demonstrated how easy it is to get started with machine learning & Courier.
If you want to go ahead and improve this project, here are some interesting ideas to try
🔗