Sunday, June 15, 2025

Deploy Qwen fashions with Amazon Bedrock Customized Mannequin Import

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We’re excited to announce that Amazon Bedrock Custom Model Import now helps Qwen fashions. Now you can import customized weights for Qwen2, Qwen2_VL, and Qwen2_5_VL architectures, together with fashions like Qwen 2, 2.5 Coder, Qwen 2.5 VL, and QwQ 32B. You may carry your personal personalized Qwen fashions into Amazon Bedrock and deploy them in a completely managed, serverless setting—with out having to handle infrastructure or mannequin serving.

On this submit, we cowl how you can deploy Qwen 2.5 fashions with Amazon Bedrock Customized Mannequin Import, making them accessible to organizations wanting to make use of state-of-the-art AI capabilities throughout the AWS infrastructure at an efficient price.

Overview of Qwen fashions

Qwen 2 and a couple of.5 are households of enormous language fashions, obtainable in a variety of sizes and specialised variants to go well with various wants:

  • Common language fashions: Fashions starting from 0.5B to 72B parameters, with each base and instruct variations for general-purpose duties
  • Qwen 2.5-Coder: Specialised for code era and completion
  • Qwen 2.5-Math: Targeted on superior mathematical reasoning
  • Qwen 2.5-VL (vision-language): Picture and video processing capabilities, enabling multimodal purposes

Overview of Amazon Bedrock Customized Mannequin Import

Amazon Bedrock Customized Mannequin Import permits the import and use of your personalized fashions alongside current basis fashions (FMs) by means of a single serverless, unified API. You may entry your imported customized fashions on-demand and with out the necessity to handle the underlying infrastructure. Speed up your generative AI utility improvement by integrating your supported customized fashions with native Amazon Bedrock instruments and options like Amazon Bedrock Data Bases, Amazon Bedrock Guardrails, and Amazon Bedrock Brokers. Amazon Bedrock Customized Mannequin Import is usually obtainable within the US-East (N. Virginia), US-West (Oregon), and Europe (Frankfurt) AWS Areas. Now, we’ll discover how you should use Qwen 2.5 fashions for 2 frequent use instances: as a coding assistant and for picture understanding. Qwen2.5-Coder is a state-of-the-art code mannequin, matching capabilities of proprietary fashions like GPT-4o. It helps over 90 programming languages and excels at code era, debugging, and reasoning. Qwen 2.5-VL brings superior multimodal capabilities. In accordance with Qwen, Qwen 2.5-VL isn’t solely proficient at recognizing objects corresponding to flowers and animals, but additionally at analyzing charts, extracting textual content from photos, decoding doc layouts, and processing lengthy movies.

Conditions

Earlier than importing the Qwen mannequin with Amazon Bedrock Customized Mannequin Import, just be sure you have the next in place:

  1. An energetic AWS account
  2. An Amazon Simple Storage Service (Amazon S3) bucket to retailer the Qwen mannequin information
  3. Sufficient permissions to create Amazon Bedrock mannequin import jobs
  4. Verified that your Region supports Amazon Bedrock Custom Model Import

Use case 1: Qwen coding assistant

On this instance, we are going to reveal how you can construct a coding assistant utilizing the Qwen2.5-Coder-7B-Instruct mannequin

  1. Go to to Hugging Face and seek for and duplicate the Mannequin ID Qwen/Qwen2.5-Coder-7B-Instruct:

You’ll use Qwen/Qwen2.5-Coder-7B-Instruct for the remainder of the walkthrough. We don’t reveal fine-tuning steps, however you can even fine-tune earlier than importing.

  1. Use the next command to obtain a snapshot of the mannequin regionally. The Python library for Hugging Face supplies a utility referred to as snapshot obtain for this:
from huggingface_hub import snapshot_download

snapshot_download(repo_id=" Qwen/Qwen2.5-Coder-7B-Instruct", 
                local_dir=f"./extractedmodel/")

Relying in your mannequin dimension, this might take a couple of minutes. When accomplished, your Qwen Coder 7B mannequin folder will comprise the next information.

  • Configuration information: Together with config.json, generation_config.json, tokenizer_config.json, tokenizer.json, and vocab.json
  • Mannequin information: 4 safetensor information and mannequin.safetensors.index.json
  • Documentation: LICENSE, README.md, and merges.txt

  1. Add the mannequin to Amazon S3, utilizing boto3 or the command line:

aws s3 cp ./extractedfolder s3://yourbucket/path/ --recursive

  1. Begin the import mannequin job utilizing the next API name:
response = self.bedrock_client.create_model_import_job(
                jobName="uniquejobname",
                importedModelName="uniquemodelname",
                roleArn="fullrolearn",
                modelDataSource={
                    's3DataSource': {
                        's3Uri': "s3://yourbucket/path/"
                    }
                }
            )
            

It’s also possible to do that utilizing the AWS Administration Console for Amazon Bedrock.

  1. Within the Amazon Bedrock console, select Imported fashions within the navigation pane.
  2. Select Import a mannequin.

  1. Enter the small print, together with a Mannequin identify, Import job identify, and mannequin S3 location.

  1. Create a brand new service position or use an current service position. Then select Import mannequin

  1. After you select Import on the console, it is best to see standing as importing when mannequin is being imported:

In case you’re utilizing your personal position, ensure you add the next belief relationship as describes in  Create a service role for model import.

After your mannequin is imported, look forward to mannequin inference to be prepared, after which chat with the mannequin on the playground or by means of the API. Within the following instance, we append Python to immediate the mannequin to immediately output Python code to checklist objects in an S3 bucket. Bear in mind to make use of the precise chat template to enter prompts within the format required. For instance, you may get the precise chat template for any suitable mannequin on Hugging Face utilizing beneath code:

from transformers import AutoTokenizer
tokenizer = AutoTokenizer.from_pretrained("Qwen/Qwen2.5-Coder-7B-Instruct")

# As an alternative of utilizing mannequin.chat(), we immediately use mannequin.generate()
# However it's good to use tokenizer.apply_chat_template() to format your inputs as proven beneath
immediate = "Write pattern boto3 python code to checklist information in a bucket saved within the variable `my_bucket`"
messages = [
    {"role": "system", "content": "You are a helpful coding assistant."},
    {"role": "user", "content": prompt}
]
textual content = tokenizer.apply_chat_template(
    messages,
    tokenize=False,
    add_generation_prompt=True
)

Be aware that when utilizing the invoke_model APIs, you should use the total Amazon Useful resource Title (ARN) for the imported mannequin. Yow will discover the Mannequin ARN within the Bedrock console, by navigating to the Imported fashions part after which viewing the Mannequin particulars web page, as proven within the following determine

After the mannequin is prepared for inference, you should use Chat Playground in Bedrock console or APIs to invoke the mannequin.

Use case 2: Qwen 2.5 VL picture understanding

Qwen2.5-VL-* presents multimodal capabilities, combining imaginative and prescient and language understanding in a single mannequin. This part demonstrates how you can deploy Qwen2.5-VL utilizing Amazon Bedrock Customized Mannequin Import and check its picture understanding capabilities.

Import Qwen2.5-VL-7B to Amazon Bedrock

Obtain the mannequin from Huggingface Face and add it to Amazon S3:

from huggingface_hub import snapshot_download

hf_model_id = "Qwen/Qwen2.5-VL-7B-Instruct"

# Allow sooner downloads
os.environ["HF_HUB_ENABLE_HF_TRANSFER"] = "1"

# Obtain mannequin regionally
snapshot_download(repo_id=hf_model_id, local_dir=f"./{local_directory}")

Subsequent, import the mannequin to Amazon Bedrock (both by way of Console or API):

response = bedrock.create_model_import_job(
    jobName=job_name,
    importedModelName=imported_model_name,
    roleArn=role_arn,
    modelDataSource={
        's3DataSource': {
            's3Uri': s3_uri
        }
    }
)

Check the imaginative and prescient capabilities

After the import is full, check the mannequin with a picture enter. The Qwen2.5-VL-* mannequin requires correct formatting of multimodal inputs:

def generate_vl(messages, image_base64, temperature=0.3, max_tokens=4096, top_p=0.9):
    processor = AutoProcessor.from_pretrained("Qwen/QVQ-72B-Preview")
    immediate = processor.apply_chat_template(messages, tokenize=False, add_generation_prompt=True)
    
    response = shopper.invoke_model(
        modelId=model_id,
        physique=json.dumps({
            'immediate': immediate,
            'temperature': temperature,
            'max_gen_len': max_tokens,
            'top_p': top_p,
            'photos': [image_base64]
        }),
        settle for="utility/json",
        contentType="utility/json"
    )
    
    return json.masses(response['body'].learn().decode('utf-8'))

# Utilizing the mannequin with a picture
file_path = "cat_image.jpg"
base64_data = image_to_base64(file_path)

messages = [
    {
        "role": "user",
        "content": [
            {"image": base64_data},
            {"text": "Describe this image."}
        ]
    }
]

response = generate_vl(messages, base64_data)

# Print response
print("Mannequin Response:")
if 'decisions' in response:
    print(response['choices'][0]['text'])
elif 'outputs' in response:
    print(response['outputs'][0]['text'])
else:
    print(response)
    

When supplied with an instance picture of a cat (such the next picture), the mannequin precisely describes key options such because the cat’s place, fur coloration, eye coloration, and normal look. This demonstrates Qwen2.5-VL-* mannequin’s skill to course of visible data and generate related textual content descriptions.

The mannequin’s response:

This picture includes a close-up of a cat mendacity down on a smooth, textured floor, probably a sofa or a mattress. The cat has a tabby coat with a mixture of darkish and lightweight brown fur, and its eyes are a putting inexperienced with vertical pupils, giving it a fascinating look. The cat's whiskers are distinguished and prolong outward from its face, including to the detailed texture of the picture. The background is softly blurred, suggesting a comfy indoor setting with some furnishings and probably a window letting in pure gentle. The general ambiance of the picture is heat and serene, highlighting the cat's relaxed and content material demeanor. 

Pricing

You should use Amazon Bedrock Customized Mannequin Import to make use of your customized mannequin weights inside Amazon Bedrock for supported architectures, serving them alongside Amazon Bedrock hosted FMs in a completely managed means by means of On-Demand mode. Customized Mannequin Import doesn’t cost for mannequin import. You might be charged for inference based mostly on two components: the variety of energetic mannequin copies and their length of exercise. Billing happens in 5-minute increments, ranging from the primary profitable invocation of every mannequin copy. The pricing per mannequin copy per minute varies based mostly on components together with structure, context size, Area, and compute unit model, and is tiered by mannequin copy dimension. The customized mannequin unites required for internet hosting will depend on the mannequin’s structure, parameter depend, and context size. Amazon Bedrock robotically manages scaling based mostly in your utilization patterns. If there are not any invocations for five minutes, it scales to zero and scales up when wanted, although this would possibly contain cold-start latency of as much as a minute. Extra copies are added if inference quantity constantly exceeds single-copy concurrency limits. The utmost throughput and concurrency per copy is decided throughout import, based mostly on components corresponding to enter/output token combine, {hardware} kind, mannequin dimension, structure, and inference optimizations.

For extra data, see Amazon Bedrock pricing.

Clear up

To keep away from ongoing fees after finishing the experiments:

  1. Delete your imported Qwen fashions from Amazon Bedrock Customized Mannequin Import utilizing the console or the API.
  2. Optionally, delete the mannequin information out of your S3 bucket in case you not want them.

Keep in mind that whereas Amazon Bedrock Customized Mannequin Import doesn’t cost for the import course of itself, you’re billed for mannequin inference utilization and storage.

Conclusion

Amazon Bedrock Customized Mannequin Import empowers organizations to make use of highly effective publicly obtainable fashions like Qwen 2.5, amongst others, whereas benefiting from enterprise-grade infrastructure. The serverless nature of Amazon Bedrock eliminates the complexity of managing mannequin deployments and operations, permitting groups to deal with constructing purposes quite than infrastructure. With options like auto scaling, pay-per-use pricing, and seamless integration with AWS providers, Amazon Bedrock supplies a production-ready setting for AI workloads. The mix of Qwen 2.5’s superior AI capabilities and Amazon Bedrock managed infrastructure presents an optimum stability of efficiency, price, and operational effectivity. Organizations can begin with smaller fashions and scale up as wanted, whereas sustaining full management over their mannequin deployments and benefiting from AWS safety and compliance capabilities.

For extra data, consult with the Amazon Bedrock User Guide.


In regards to the Authors

Ajit Mahareddy is an skilled Product and Go-To-Market (GTM) chief with over 20 years of expertise in Product Administration, Engineering, and Go-To-Market. Previous to his present position, Ajit led product administration constructing AI/ML merchandise at main expertise firms, together with Uber, Turing, and eHealth. He’s obsessed with advancing Generative AI applied sciences and driving real-world impression with Generative AI.

Shreyas Subramanian is a Principal Information Scientist and helps prospects by utilizing generative AI and deep studying to unravel their enterprise challenges utilizing AWS providers. Shreyas has a background in large-scale optimization and ML and in using ML and reinforcement studying for accelerating optimization duties.

Yanyan Zhang is a Senior Generative AI Information Scientist at Amazon Internet Companies, the place she has been engaged on cutting-edge AI/ML applied sciences as a Generative AI Specialist, serving to prospects use generative AI to attain their desired outcomes. Yanyan graduated from Texas A&M College with a PhD in Electrical Engineering. Exterior of labor, she loves touring, figuring out, and exploring new issues.

Dharinee Gupta is an Engineering Supervisor at AWS Bedrock, the place she focuses on enabling prospects to seamlessly make the most of open supply fashions by means of serverless options. Her group makes a speciality of optimizing these fashions to ship the most effective cost-performance stability for patrons. Previous to her present position, she gained intensive expertise in authentication and authorization programs at Amazon, creating safe entry options for Amazon choices. Dharinee is obsessed with making superior AI applied sciences accessible and environment friendly for AWS prospects.

Lokeshwaran Ravi is a Senior Deep Studying Compiler Engineer at AWS, specializing in ML optimization, mannequin acceleration, and AI safety. He focuses on enhancing effectivity, lowering prices, and constructing safe ecosystems to democratize AI applied sciences, making cutting-edge ML accessible and impactful throughout industries.

June Won is a Principal Product Supervisor with Amazon SageMaker JumpStart. He focuses on making basis fashions simply discoverable and usable to assist prospects construct generative AI purposes. His expertise at Amazon additionally consists of cell purchasing purposes and final mile supply.



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