Monday, September 23, 2024

Jamba 1.5 household of fashions by AI21 Labs is now accessible in Amazon Bedrock

Voiced by Polly

At this time, we’re saying the provision of AI21 Labs’ highly effective new Jamba 1.5 household of enormous language fashions (LLMs) in Amazon Bedrock. These fashions symbolize a big development in long-context language capabilities, delivering pace, effectivity, and efficiency throughout a variety of functions. The Jamba 1.5 household of fashions contains Jamba 1.5 Mini and Jamba 1.5 Massive. Each fashions help a 256K token context window, structured JSON output, operate calling, and are able to digesting doc objects.

AI21 Labs is a frontrunner in constructing basis fashions and synthetic intelligence (AI) methods for the enterprise. Collectively, AI21 Labs and AWS are empowering clients throughout industries to construct, deploy, and scale generative AI functions that clear up real-world challenges and spark innovation by means of a strategic collaboration. With AI21 Labs’ superior, production-ready fashions along with Amazon’s devoted companies and highly effective infrastructure, clients can leverage LLMs in a safe surroundings to form the way forward for how we course of info, talk, and be taught.

What’s Jamba 1.5?
Jamba 1.5 fashions leverage a singular hybrid structure that mixes the transformer mannequin structure with Structured State House mannequin (SSM) know-how. This modern strategy permits Jamba 1.5 fashions to deal with lengthy context home windows as much as 256K tokens, whereas sustaining the high-performance traits of conventional transformer fashions. You possibly can be taught extra about this hybrid SSM/transformer structure within the Jamba: A Hybrid Transformer-Mamba Language Mannequin whitepaper.

Now you can use two new Jamba 1.5 fashions from AI21 in Amazon Bedrock:

  • Jamba 1.5 Massive excels at advanced reasoning duties throughout all immediate lengths, making it best for functions that require prime quality outputs on each lengthy and brief inputs.
  • Jamba 1.5 Mini is optimized for low-latency processing of lengthy prompts, enabling quick evaluation of prolonged paperwork and knowledge.

Key strengths of the Jamba 1.5 fashions embrace:

  • Lengthy context dealing with – With 256K token context size, Jamba 1.5 fashions can enhance the standard of enterprise functions, equivalent to prolonged doc summarization and evaluation, in addition to agentic and RAG workflows.
  • Multilingual – Assist for English, Spanish, French, Portuguese, Italian, Dutch, German, Arabic, and Hebrew.
  • Developer-friendly – Native help for structured JSON output, operate calling, and able to digesting doc objects.
  • Pace and effectivity – AI21 measured the efficiency of Jamba 1.5 fashions and shared that the fashions reveal as much as 2.5X sooner inference on lengthy contexts than different fashions of comparable sizes. For detailed efficiency outcomes, go to the Jamba mannequin household announcement on the AI21 web site.

Get began with Jamba 1.5 fashions in Amazon Bedrock
To get began with the brand new Jamba 1.5 fashions, go to the Amazon Bedrock console, select Mannequin entry on the underside left pane, and request entry to Jamba 1.5 Mini or Jamba 1.5 Massive.

Amazon Bedrock - Model access to AI21 Jamba 1.5 models

To check the Jamba 1.5 fashions within the Amazon Bedrock console, select the Textual content or Chat playground within the left menu pane. Then, select Choose mannequin and choose AI21 because the class and Jamba 1.5 Mini or Jamba 1.5 Massive because the mannequin.

Jamba 1.5 in the Amazon Bedrock text playground

By selecting View API request, you will get a code instance of the best way to invoke the mannequin utilizing the AWS Command Line Interface (AWS CLI) with the present instance immediate.

You possibly can observe the code examples within the Amazon Bedrock documentation to entry accessible fashions utilizing AWS SDKs and to construct your functions utilizing numerous programming languages.

The next Python code instance exhibits the best way to ship a textual content message to Jamba 1.5 fashions utilizing the Amazon Bedrock Converse API for textual content era.

import boto3
from botocore.exceptions import ClientError

# Create a Bedrock Runtime shopper.
bedrock_runtime = boto3.shopper("bedrock-runtime", region_name="us-east-1")

# Set the mannequin ID.
# modelId = "ai21.jamba-1-5-mini-v1:0"
model_id = "ai21.jamba-1-5-large-v1:0"

# Begin a dialog with the person message.
user_message = "What are 3 enjoyable details about mambas?"
dialog = [
    {
        "role": "user",
        "content": [{"text": user_message}],
    }
]

strive:
    # Ship the message to the mannequin, utilizing a fundamental inference configuration.
    response = bedrock_runtime.converse(
        modelId=model_id,
        messages=dialog,
        inferenceConfig={"maxTokens": 256, "temperature": 0.7, "topP": 0.8},
    )

    # 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)

The Jamba 1.5 fashions are excellent to be used circumstances like paired doc evaluation, compliance evaluation, and query answering for lengthy paperwork. They will simply examine info throughout a number of sources, verify if passages meet particular tips, and deal with very lengthy or advanced paperwork. You could find instance code within the AI21-on-AWS GitHub repo. To be taught extra about the best way to immediate Jamba fashions successfully, try AI21’s documentation.

Now accessible
AI21 Labs’ Jamba 1.5 household of fashions is usually accessible immediately in Amazon Bedrock within the US East (N. Virginia) AWS Area. Examine the full Area checklist for future updates. To be taught extra, try the AI21 Labs in Amazon Bedrock product web page and pricing web page.

Give Jamba 1.5 fashions a strive within the Amazon Bedrock console immediately and ship suggestions to AWS re:Submit for Amazon Bedrock or by means of your common AWS Assist contacts.

Go to our neighborhood.aws web site to seek out deep-dive technical content material and to find how our Builder communities are utilizing Amazon Bedrock of their options.

— Antje

Related Articles

LEAVE A REPLY

Please enter your comment!
Please enter your name here

Latest Articles