Think about sending your individual customized memes or cartoons as an alternative of those from the web. So, rework your selfies or pictures into enjoyable, stylized stickers utilizing OpenAI’s new GPT-Picture-1 mannequin. On this tutorial, we’ll construct a WhatsApp sticker generator in Python that applies numerous artwork types, together with caricature and Pixar-style filters, to your photos.
You’ll discover ways to arrange the OpenAI picture modifying API, seize or add photos in Colab, outline humorous and humorous textual content classes, or use your individual textual content and course of three stickers in parallel utilizing a number of API keys for velocity. By the top, you’ll have a working sticker maker powered by GPT-Picture-1 and customized textual content prompts.
Why GPT-Picture-1?
We evaluated a number of cutting-edge image-generation fashions, together with Gemini 2.0 Flash, Flux, and Phoenix, on the Leonardo.ai platform. Specifically, all these fashions struggled with rendering textual content and expressions appropriately. For example:
- Google’s Gemini 2.0 picture API usually produces misspelled or jumbled phrases even when given actual directions. For Instance, with Gemini, the precise textual content seems like ‘Large Sale At present!’ and we get outputs like “Large Sale Todai” or random gibberish.
- Flux delivers excessive picture high quality basically, however customers report that it “rapidly launched little errors” into any textual content it renders. Flux additionally makes tiny spelling errors or garbled letters, particularly because the textual content size will increase. Flux additionally defaults to very related face generations, i.e, “all faces are wanting the identical” until closely constrained.
- Phoenix is optimized for constancy and immediate adherence, however like most diffusion fashions, it nonetheless views textual content visually and may introduce errors. We discovered that Phoenix may generate a sticker with the right wording solely sporadically, and it tended to repeat the identical default face for a given immediate.
Collectively, these limitations led us to develop GPT-Picture-1. In contrast to the above fashions, GPT-Picture-1 incorporates a specialised immediate pipeline that explicitly enforces appropriate textual content and expression adjustments.
Learn extra: run the Flux mannequin?
How GPT-Picture-1 Powers Picture Modifying
GPT-Picture-1 is OpenAI’s flagship multimodal mannequin. It creates and edits photos from textual content and picture prompts to generate high-quality picture outputs. Primarily, we are able to instruct GPT-Picture-1 to use an edit to a supply picture based mostly on a textual content immediate. In our case, we use the photographs. Edit the API endpoint with GPT-Picture-1 to use enjoyable and humorous filtering, and overlay textual content to a photograph enter to create stickers.
The immediate is rigorously constructed to implement a sticker-friendly output (1024×1024 PNG). Then GPT-Picture-1 primarily turns into the AI-powered sticker creator, the place it’ll change the looks of the topic within the photograph and add hilarious textual content.
# Arrange OpenAI shoppers for every API key (to run parallel requests)
shoppers = [OpenAI(api_key=key) for key in API_KEYS]
So, for that, we create one OpenAI consumer per API key. With three keys, we are able to make three simultaneous API calls. This multi-key, multi-thread strategy makes use of ThreadPoolExecutor. It lets us generate 3 stickers in parallel for every run. Because the code prints, it makes use of “3 API keys for SIMULTANEOUS technology”, dramatically rushing up the sticker creation..
Step-by-Step Information
The thought of making your individual AI sticker generator might sound advanced, however this information will assist you to simplify the whole course of. You’ll start with the setting preparation in Google Colab, then we’ll evaluation the API, perceive classes of phrases, validate textual content, generate totally different inventive types, and at last generate stickers in parallel. Every half is accompanied by code snippets and explanations so you’ll be able to comply with alongside simply. Now, let’s proceed to code:
Putting in and Working on Colab
To generate stickers, we’ve obtained to have the appropriate setup! This undertaking will use Python libraries PIL and rembg for fundamental picture processing, and google-genai will probably be used to be used within the Colab occasion. Step one is the set up the dependencies straight in your Colab pocket book.
!pip set up --upgrade google-genai pillow rembg
!pip set up --upgrade onnxruntime
!pip set up python-dotenv
OpenAI Integration and API Keys
After set up, import the modules and arrange API keys. The script creates one OpenAI consumer per API key. This lets the code distribute image-edit requests throughout a number of keys in parallel. The consumer listing is then utilized by the sticker-generation capabilities.
API_KEYS = [ # 3 API keys
"API KEY 1",
"API KEY 2",
"API KEY 3"
]
"""# Stickerverse
"""
import os
import random
import base64
import threading
from concurrent.futures import ThreadPoolExecutor, as_completed
from openai import OpenAI
from PIL import Picture
from io import BytesIO
from rembg import take away
from google.colab import information
from IPython.show import show, Javascript
from google.colab.output import eval_js
import time
shoppers = [OpenAI(api_key=key) for key in API_KEYS]
Picture add & digital camera seize (logic)
Now the subsequent step is to entry the digital camera to seize a photograph or add a picture file. The capture_photo()
makes use of JavaScript injected into Colab to open the webcam and return a captured picture.upload_image()
makes use of Colab’s file add widget and verifies the uploaded file with PIL.
# Digital camera seize through JS
def capture_photo(filename="photograph.jpg", high quality=0.9):
js_code = """
async perform takePhoto(high quality) {
const div = doc.createElement('div');
const video = doc.createElement('video');
const btn = doc.createElement('button');
btn.textContent="📸 Seize";
div.appendChild(video);
div.appendChild(btn);
doc.physique.appendChild(div);
const stream = await navigator.mediaDevices.getUserMedia({video: true});
video.srcObject = stream;
await video.play();
await new Promise(resolve => btn.onclick = resolve);
const canvas = doc.createElement('canvas');
canvas.width = video.videoWidth;
canvas.top = video.videoHeight;
canvas.getContext('2nd').drawImage(video, 0, 0);
stream.getTracks().forEach(monitor => monitor.cease());
div.take away();
return canvas.toDataURL('picture/jpeg', high quality);
}
"""
show(Javascript(js_code))
information = eval_js("takePhoto(%f)" % high quality)
binary = base64.b64decode(information.cut up(',')[1])
with open(filename, 'wb') as f:
f.write(binary)
print(f"Saved: {filename}")
return filename
# Picture add perform
def upload_image():
print("Please add your picture file...")
uploaded = information.add()
if not uploaded:
print("No file uploaded!")
return None
filename = listing(uploaded.keys())[0]
print(f"Uploaded: {filename}")
# Validate if it is a picture
attempt:
img = Picture.open(filename)
img.confirm()
print(f"📸 Picture verified: {img.format} {img.measurement}")
return filename
besides Exception as e:
print(f"Invalid picture file: {str(e)}")
return None
# Interactive picture supply choice
def select_image_source():
print("Select picture supply:")
print("1. Seize from digital camera")
print("2. Add picture file")
whereas True:
attempt:
selection = enter("Choose possibility (1-2): ").strip()
if selection == "1":
return "digital camera"
elif selection == "2":
return "add"
else:
print("Invalid selection! Please enter 1 or 2.")
besides KeyboardInterrupt:
print("nGoodbye!")
return None
Output:
Examples of Classes and Phrases
Now we’ll create our totally different phrase classes to placed on our stickers. Due to this fact, we’ll use a PHRASE_CATEGORIES dictionary that accommodates many classes, corresponding to company, Bollywood, Hollywood, Tollywood, sports activities, memes, and others. When a class is chosen, the code randomly selects three distinctive phrases for the three sticker types.
PHRASE_CATEGORIES = {
"company": [
"Another meeting? May the force be with you!",
"Monday blues activated!",
"This could have been an email, boss!"
],
"bollywood": [
"Mogambo khush hua!",
"Kitne aadmi the?",
"Picture abhi baaki hai mere dost!"
],
"memes": [
"Bhagwan bharose!",
"Main thak gaya hoon!",
"Beta tumse na ho payega!"
]
}
Phrase Classes and Customized Textual content
The generator makes use of a dictionary of phrase classes. The consumer can both choose a class for random phrase choice or enter their very own customized phrase. There are additionally helper capabilities for interactive choice, in addition to a easy perform to validate the size of a customized phrase.
def select_category_or_custom():
print("nChoose your sticker textual content possibility:")
print("1. Decide from phrase class (random choice)")
print("2. Enter my very own customized phrase")
whereas True:
attempt:
selection = enter("Select possibility (1 or 2): ").strip()
if selection == "1":
return "class"
elif selection == "2":
return "customized"
else:
print("Invalid selection! Please enter 1 or 2.")
besides KeyboardInterrupt:
print("nGoodbye!")
return None
# NEW: Perform to get customized phrase from consumer
def get_custom_phrase():
whereas True:
phrase = enter("nEnter your customized sticker textual content (2-50 characters): ").strip()
if len(phrase) < 2:
print("Too brief! Please enter at the very least 2 characters.")
proceed
elif len(phrase) > 50:
print("Too lengthy! Please hold it below 50 characters.")
proceed
else:
print(f"Customized phrase accepted: '{phrase}'")
return phrase
For customized phrases, enter size is checked (2–50 characters) earlier than acceptance.
Phrase Validation and Spelling Guardrails
def validate_and_correct_spelling(textual content):
spelling_prompt = f"""
Please test the spelling and grammar of the next textual content and return ONLY the corrected model.
Don't add explanations, feedback, or change the that means.
Textual content to test: "{textual content}"
"""
response = shoppers[0].chat.completions.create(
mannequin="gpt-4o-mini",
messages=[{"role": "user", "content": spelling_prompt}],
max_tokens=100,
temperature=0.1
)
corrected_text = response.selections[0].message.content material.strip()
return corrected_text
Now we’ll create a pattern build_prompt
perform to arrange some basic-level directions for the agent. Additionally notice build_prompt()
calls the spelling validator, after which embeds the corrected textual content into the strict sticker immediate:
# Concise Immediate Builder with Spelling Validation
def build_prompt(textual content, style_variant):
corrected_text = validate_and_correct_spelling(textual content)
base_prompt = f"""
Create a HIGH-QUALITY WhatsApp sticker in {style_variant} fashion.
OUTPUT:
- 1024x1024 clear PNG with 8px white border
- Topic centered, balanced composition, sharp particulars
- Protect authentic facial id and proportions
- Match expression to sentiment of textual content: '{corrected_text}'
TEXT:
- Use EXACT textual content: '{corrected_text}' (no adjustments, no emojis)
- Daring comedian font with black define, high-contrast colours
- Place textual content in empty area (high/backside), by no means masking the face
RULES:
- No hallucinated components or ornamental glyphs
- No cropping of head/face or textual content
- Preserve lifelike however expressive look
- Guarantee consistency throughout stickers
"""
return base_prompt.strip()
Model Variants: Caricature vs Pixar
The three fashion templates reside in STYLE_VARIANTS. The primary two are caricature transformations and the final is a Pixar-esque 3D look. These strings will get despatched straight into the immediate builder and dictate the visible fashion.
STYLE_VARIANTS = ["Transform into detailed caricature with slightly exaggerated facial features...",
"Transform into expressive caricature with enhanced personality features...",
"Transform into high-quality Pixar-style 3D animated character..."
]
Producing Stickers in Parallel
The true energy of the undertaking is the parallel sticker technology. The sticker technology is completed in parallel with threading all three on the similar time, utilizing separate API keys, so wait instances are dramatically diminished.
# Generate single sticker utilizing OpenAI GPT-image-1 with particular consumer (WITH TIMING)
def generate_single_sticker(input_path, output_path, textual content, style_variant, client_idx):
attempt:
start_time = time.time()
thread_id = threading.current_thread().identify
print(f"[START] Thread-{thread_id}: API-{client_idx+1} producing {style_variant[:30]}... at {time.strftime('%H:%M:%S', time.localtime(start_time))}")
immediate = build_prompt(textual content, style_variant)
outcome = shoppers[client_idx].photos.edit(
mannequin="gpt-image-1",
picture=[open(input_path, "rb")],
immediate=immediate,
# input_fidelity="excessive"
high quality = 'medium'
)
image_base64 = outcome.information[0].b64_json
image_bytes = base64.b64decode(image_base64)
with open(output_path, "wb") as f:
f.write(image_bytes)
end_time = time.time()
period = end_time - start_time
style_type = "Caricature" if "caricature" in style_variant.decrease() else "Pixar"
print(f"[DONE] Thread-{thread_id}: {style_type} saved as {output_path} | Period: {period:.2f}s | Textual content: '{textual content[:30]}...'")
return True
besides Exception as e:
print(f"[ERROR] API-{client_idx+1} failed: {str(e)}")
return False
# NEW: Create stickers with customized phrase (all 3 types use the identical customized textual content)
def create_custom_stickers_parallel(photo_file, custom_text):
print(f"nCreating 3 stickers along with your customized phrase: '{custom_text}'")
print(" • Model 1: Caricature #1")
print(" • Model 2: Caricature #2")
print(" • Model 3: Pixar Animation")
# Map futures to their information
tasks_info = {}
with ThreadPoolExecutor(max_workers=3, thread_name_prefix="CustomSticker") as executor:
start_time = time.time()
print(f"n[PARALLEL START] Submitting 3 API calls SIMULTANEOUSLY at {time.strftime('%H:%M:%S', time.localtime(start_time))}")
# Submit ALL duties without delay (non-blocking) - all utilizing the identical customized textual content
for idx, style_variant in enumerate(STYLE_VARIANTS):
output_name = f"custom_sticker_{idx+1}.png"
future = executor.submit(generate_single_sticker, photo_file, output_name, custom_text, style_variant, idx)
tasks_info[future] = {
'output_name': output_name,
'textual content': custom_text,
'style_variant': style_variant,
'client_idx': idx,
'submit_time': time.time()
}
print("All 3 API requests submitted! Processing as they full...")
accomplished = 0
completion_times = []
# Course of outcomes as they full
for future in as_completed(tasks_info.keys(), timeout=180):
attempt:
success = future.outcome()
task_info = tasks_info[future]
if success:
accomplished += 1
completion_time = time.time()
completion_times.append(completion_time)
period = completion_time - task_info['submit_time']
style_type = "Caricature" if "caricature" in task_info['style_variant'].decrease() else "Pixar"
print(f"[{completed}/3] {style_type} accomplished: {task_info['output_name']} "
f"(API-{task_info['client_idx']+1}, {period:.1f}s)")
else:
print(f"Failed: {task_info['output_name']}")
besides Exception as e:
task_info = tasks_info[future]
print(f"Error with {task_info['output_name']} (API-{task_info['client_idx']+1}): {str(e)}")
total_time = time.time() - start_time
print(f"n [FINAL RESULT] {accomplished}/3 customized stickers accomplished in {total_time:.1f} seconds!")
# UPDATED: Create 3 stickers in PARALLEL (utilizing as_completed)
def create_category_stickers_parallel(photo_file, class):
if class not in PHRASE_CATEGORIES:
print(f" Class '{class}' not discovered! Accessible: {listing(PHRASE_CATEGORIES.keys())}")
return
# Select 3 distinctive phrases for 3 stickers
chosen_phrases = random.pattern(PHRASE_CATEGORIESBeginner, 3)
print(f" Chosen phrases for {class.title()} class:")
for i, phrase in enumerate(chosen_phrases, 1):
style_type = "Caricature" if i <= 2 else "Pixar Animation"
print(f" {i}. [{style_type}] '{phrase}' → API Key {i}")
# Map futures to their information
tasks_info = {}
with ThreadPoolExecutor(max_workers=3, thread_name_prefix="StickerGen") as executor:
start_time = time.time()
print(f"n [PARALLEL START] Submitting 3 API calls SIMULTANEOUSLY at {time.strftime('%H:%M:%S', time.localtime(start_time))}")
# Submit ALL duties without delay (non-blocking)
for idx, (style_variant, textual content) in enumerate(zip(STYLE_VARIANTS, chosen_phrases)):
output_name = f"{class}_sticker_{idx+1}.png"
future = executor.submit(generate_single_sticker, photo_file, output_name, textual content, style_variant, idx)
tasks_info[future] = {
'output_name': output_name,
'textual content': textual content,
'style_variant': style_variant,
'client_idx': idx,
'submit_time': time.time()
}
print("All 3 API requests submitted! Processing as they full...")
print(" • API Key 1 → Caricature #1")
print(" • API Key 2 → Caricature #2")
print(" • API Key 3 → Pixar Animation")
accomplished = 0
completion_times = []
# Course of outcomes as they full (NOT in submission order)
for future in as_completed(tasks_info.keys(), timeout=180): # 3 minute complete timeout
attempt:
success = future.outcome() # This solely waits till ANY future completes
task_info = tasks_info[future]
if success:
accomplished += 1
completion_time = time.time()
completion_times.append(completion_time)
period = completion_time - task_info['submit_time']
style_type = "Caricature" if "caricature" in task_info['style_variant'].decrease() else "Pixar"
print(f"[{completed}/3] {style_type} accomplished: {task_info['output_name']} "
f"(API-{task_info['client_idx']+1}, {period:.1f}s) - '{task_info['text'][:30]}...'")
else:
print(f"Failed: {task_info['output_name']}")
besides Exception as e:
task_info = tasks_info[future]
print(f"Error with {task_info['output_name']} (API-{task_info['client_idx']+1}): {str(e)}")
total_time = time.time() - start_time
print(f"n[FINAL RESULT] {accomplished}/3 stickers accomplished in {total_time:.1f} seconds!")
if len(completion_times) > 1:
fastest_completion = min(completion_times) - start_time
print(f"Parallel effectivity: Quickest completion in {fastest_completion:.1f}s")
Right here, generate_single_sticker()
builds the immediate and calls the photographs. edit endpoint utilizing the required client_idx. The parallel capabilities create a ThreadPoolExecutor with max_workers=3, submit the three duties, and course of outcomes with as_completed. This lets the script log every completed sticker rapidly. Furthermore, we are able to additionally view the logs to see what is occurring for every thread (time, what was it caricature or Pixar fashion).
Fundamental execution block
On the backside of the script, the __main__
guard defaults to working sticker_from_camera()
. Nevertheless, you’ll be able to agree/uncomment as desired to run interactive_menu()
, create_all_category_stickers()
or different capabilities.
# Fundamental execution
if __name__ == "__main__":
sticker_from_camera()
Output:
Output Picture:

For the entire model of this WhatsApp sticker generator code, go to this GitHub repository.
Conclusion
On this tutorial, we now have walked by way of establishing GPT-Picture-1 calls, developing an prolonged immediate for stickers, capturing or importing photos, choosing amusing phrases or customized textual content, and working 3 fashion variants concurrently. In only a few hundred strains of code, this undertaking converts your photos into some comic-styled stickers.
By merely combining OpenAI’s imaginative and prescient mannequin with some inventive immediate engineering and multi-threading, you’ll be able to generate enjoyable, personalised stickers in seconds. And the outcome will probably be an AI-based WhatsApp sticker generator that may produce immediately shareable stickers with a single click on to any of your folks and teams. Now attempt it on your personal photograph and your favourite joke!
Continuously Requested Questions
A. It transforms your uploaded or captured pictures into enjoyable, stylized WhatsApp stickers with textual content utilizing OpenAI’s GPT-Picture-1 mannequin.
A. GPT-Picture-1 handles textual content accuracy and facial expressions higher than fashions like Gemini, Flux, or Phoenix, guaranteeing stickers have appropriate wording and expressive visuals.
A. It makes use of three OpenAI API keys and a ThreadPoolExecutor to generate three stickers in parallel, chopping down processing time.
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