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DeepSeek-R1 now obtainable as a completely managed serverless mannequin in Amazon Bedrock


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As of January 30, DeepSeek-R1 fashions turned obtainable in Amazon Bedrock by the Amazon Bedrock Market and Amazon Bedrock Customized Mannequin Import. Since then, hundreds of shoppers have deployed these fashions in Amazon Bedrock. Clients worth the sturdy guardrails and complete tooling for protected AI deployment. Right this moment, we’re making it even simpler to make use of DeepSeek in Amazon Bedrock by an expanded vary of choices, together with a brand new serverless answer.

The absolutely managed DeepSeek-R1 mannequin is now usually obtainable in Amazon Bedrock. Amazon Net Providers (AWS) is the primary cloud service supplier (CSP) to ship DeepSeek-R1 as a completely managed, usually obtainable mannequin. You’ll be able to speed up innovation and ship tangible enterprise worth with DeepSeek on AWS with out having to handle infrastructure complexities. You’ll be able to energy your generative AI purposes with DeepSeek-R1’s capabilities utilizing a single API within the Amazon Bedrock’s absolutely managed service and get the advantage of its in depth options and tooling.

In accordance with DeepSeek, their mannequin is publicly obtainable below MIT license and affords sturdy capabilities in reasoning, coding, and pure language understanding. These capabilities energy clever resolution help, software program improvement, mathematical problem-solving, scientific evaluation, information insights, and complete information administration methods.

As is the case for all AI options, give cautious consideration to information privateness necessities when implementing in your manufacturing environments, examine for bias in output, and monitor your outcomes. When implementing publicly obtainable fashions like DeepSeek-R1, think about the next:

  • Information safety – You’ll be able to entry the enterprise-grade safety, monitoring, and price management options of Amazon Bedrock which might be important for deploying AI responsibly at scale, all whereas retaining full management over your information. Customers’ inputs and mannequin outputs aren’t shared with any mannequin suppliers. You need to use these key security measures by default, together with information encryption at relaxation and in transit, fine-grained entry controls, safe connectivity choices, and obtain varied compliance certifications whereas speaking with the DeepSeek-R1 mannequin in Amazon Bedrock.
  • Accountable AI – You’ll be able to implement safeguards custom-made to your software necessities and accountable AI insurance policies with Amazon Bedrock Guardrails. This consists of key options of content material filtering, delicate data filtering, and customizable safety controls to stop hallucinations utilizing contextual grounding and Automated Reasoning checks. This implies you’ll be able to management the interplay between customers and the DeepSeek-R1 mannequin in Bedrock along with your outlined set of insurance policies by filtering undesirable and dangerous content material in your generative AI purposes.
  • Mannequin analysis – You’ll be able to consider and examine fashions to establish the optimum mannequin to your use case, together with DeepSeek-R1, in a number of steps by both computerized or human evaluations by utilizing Amazon Bedrock mannequin analysis instruments. You’ll be able to select computerized analysis with predefined metrics equivalent to accuracy, robustness, and toxicity. Alternatively, you’ll be able to select human analysis workflows for subjective or customized metrics equivalent to relevance, model, and alignment to model voice. Mannequin analysis offers built-in curated datasets, or you’ll be able to usher in your personal datasets.

We strongly advocate integrating Amazon Bedrock Guardrails and utilizing Amazon Bedrock mannequin analysis options along with your DeepSeek-R1 mannequin so as to add sturdy safety to your generative AI purposes. To be taught extra, go to Shield your DeepSeek mannequin deployments with Amazon Bedrock Guardrails and Consider the efficiency of Amazon Bedrock assets.

Get began with the DeepSeek-R1 mannequin in Amazon Bedrock
If you happen to’re new to utilizing DeepSeek-R1 fashions, go to the Amazon Bedrock console, select Mannequin entry below Bedrock configurations within the left navigation pane. To entry the absolutely managed DeepSeek-R1 mannequin, request entry for DeepSeek-R1 in DeepSeek. You’ll then be granted entry to the mannequin in Amazon Bedrock.

1. Access DeepSeek-R1 model

Subsequent, to check the DeepSeek-R1 mannequin in Amazon Bedrock, select Chat/Textual content below Playgrounds within the left menu pane. Then select Choose mannequin within the higher left, and choose DeepSeek because the class and DeepSeek-R1 because the mannequin. Then select Apply.

2. Select DeepSeek-R1 model

Utilizing the chosen DeepSeek-R1 mannequin, I run the next immediate instance:

A household has $5,000 to avoid wasting for his or her trip subsequent yr. They will place the cash in a financial savings account incomes 2% curiosity yearly or in a certificates of deposit incomes 4% curiosity yearly however with no entry to the funds till the holiday. In the event that they want $1,000 for emergency bills in the course of the yr, how ought to they divide their cash between the 2 choices to maximise their trip fund?

This immediate requires a posh chain of thought and produces very exact reasoning outcomes.

3. Test DeepSeek-R1 in the Chat Playground

To be taught extra about utilization suggestions for prompts, seek advice from the README of the DeepSeek-R1 mannequin in its GitHub repository.

By selecting View API request, you may also entry the mannequin utilizing code examples within the AWS Command Line Interface (AWS CLI) and AWS SDK. You need to use us.deepseek.r1-v1:0 because the mannequin ID.

Here’s a pattern of the AWS CLI command:

aws bedrock-runtime invoke-model 
     --model-id us.deepseek-r1-v1:0 
     --body "{"messages":[{"role":"user","content":[{"type":"text","text":"[n"}]}],max_tokens":2000,"temperature":0.6,"top_k":250,"top_p":0.9,"stop_sequences":["nnHuman:"]}" 
     --cli-binary-format raw-in-base64-out 
     --region us-west-2 
     invoke-model-output.txt

The mannequin helps each the InvokeModel and Converse API. The next Python code examples present ship a textual content message to the DeepSeek-R1 mannequin utilizing the Amazon Bedrock Converse API for textual content technology.

import boto3
from botocore.exceptions import ClientError

# Create a Bedrock Runtime consumer within the AWS Area you need to use.
consumer = boto3.consumer("bedrock-runtime", region_name="us-west-2")

# Set the mannequin ID, e.g., Llama 3 8b Instruct.
model_id = "us.deepseek.r1-v1:0"

# Begin a dialog with the consumer message.
user_message = "Describe the aim of a 'hey world' program in a single line."
dialog = [
    {
        "role": "user",
        "content": [{"text": user_message}],
    }
]

strive:
    # Ship the message to the mannequin, utilizing a fundamental inference configuration.
    response = consumer.converse(
        modelId=model_id,
        messages=dialog,
        inferenceConfig={"maxTokens": 2000, "temperature": 0.6, "topP": 0.9},
    )

    # Extract and print the response textual content.
    response_text = response["output"]["message"]["content"][0]["text"]
    print(response_text)

besides (ClientError, Exception) as e:
    print(f"ERROR: Cannot invoke '{model_id}'. Motive: {e}")
    exit(1)

To allow Amazon Bedrock Guardrails on the DeepSeek-R1 mannequin, choose Guardrails below Safeguards within the left navigation pane, and create a guardrail by configuring as many filters as you want. For instance, for those who filter for “politics” phrase, your guardrails will acknowledge this phrase within the immediate and present you the blocked message.

You’ll be able to check the guardrail with totally different inputs to evaluate the guardrail’s efficiency. You’ll be able to refine the guardrail by setting denied subjects, phrase filters, delicate data filters, and blocked messaging till it matches your wants.

To be taught extra about Amazon Bedrock Guardrails, go to Cease dangerous content material in fashions utilizing Amazon Bedrock Guardrails within the AWS documentation or different deep dive weblog posts about Amazon Bedrock Guardrails on the AWS Machine Studying Weblog channel.

Right here’s a demo walkthrough highlighting how one can benefit from the absolutely managed DeepSeek-R1 mannequin in Amazon Bedrock:

Now obtainable
DeepSeek-R1 is now obtainable absolutely managed in Amazon Bedrock within the US East (N. Virginia), US East (Ohio), and US West (Oregon) AWS Areas by cross-Area inference. Test the full Area record for future updates. To be taught extra, try the DeepSeek in Amazon Bedrock product web page and the Amazon Bedrock pricing web page.

Give the DeepSeek-R1 mannequin a strive within the Amazon Bedrock console immediately and ship suggestions to AWS re:Put up for Amazon Bedrock or by your regular AWS Help contacts.

Channy

Up to date on March 10, 2025 — Fastened screenshots of mannequin choice and mannequin ID.



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