Anthropic launched the following era of Claude fashions as we speak—Opus 4 and Sonnet 4—designed for coding, superior reasoning, and the help of the following era of succesful, autonomous AI brokers. Each fashions at the moment are typically accessible in Amazon Bedrock, giving builders instant entry to each the mannequin’s superior reasoning and agentic capabilities.
Amazon Bedrock expands your AI selections with Anthropic’s most superior fashions, providing you with the liberty to construct transformative functions with enterprise-grade safety and accountable AI controls. Each fashions lengthen what’s doable with AI programs by enhancing process planning, device use, and agent steerability.
With Opus 4’s superior intelligence, you’ll be able to construct brokers that deal with long-running, high-context duties like refactoring giant codebases, synthesizing analysis, or coordinating cross-functional enterprise operations. Sonnet 4 is optimized for effectivity at scale, making it a powerful match as a subagent or for high-volume duties like code critiques, bug fixes, and production-grade content material era.
When constructing with generative AI, many builders work on long-horizon duties. These workflows require deep, sustained reasoning, usually involving multistep processes, planning throughout giant contexts, and synthesizing various inputs over prolonged timeframes. Good examples of those workflows are developer AI brokers that allow you to to refactor or remodel giant initiatives. Current fashions could reply rapidly and fluently, however sustaining coherence and context over time—particularly in areas like coding, analysis, or enterprise workflows—can nonetheless be difficult.
Claude Opus 4
Claude Opus 4 is essentially the most superior mannequin up to now from Anthropic, designed for constructing subtle AI brokers that may cause, plan, and execute advanced duties with minimal oversight. Anthropic benchmarks present it’s the finest coding mannequin accessible in the marketplace as we speak. It excels in software program growth situations the place prolonged context, deep reasoning, and adaptive execution are crucial. Builders can use Opus 4 to jot down and refactor code throughout total initiatives, handle full-stack architectures, or design agentic programs that break down high-level targets into executable steps. It demonstrates sturdy efficiency on coding and agent-focused benchmarks like SWE-bench and TAU-bench, making it a pure selection for constructing brokers that deal with multistep growth workflows. For instance, Opus 4 can analyze technical documentation, plan a software program implementation, write the required code, and iteratively refine it—whereas monitoring necessities and architectural context all through the method.
Claude Sonnet 4
Claude Sonnet 4 enhances Opus 4 by balancing efficiency, responsiveness, and value, making it well-suited for high-volume manufacturing workloads. It’s optimized for on a regular basis growth duties with enhanced efficiency, comparable to powering code critiques, implementing bug fixes, and new characteristic growth with instant suggestions loops. It could actually additionally energy production-ready AI assistants for close to real-time functions. Sonnet 4 is a drop-in alternative from Claude Sonnet 3.7. In multi-agent programs, Sonnet 4 performs effectively as a task-specific subagent—dealing with tasks like focused code critiques, search and retrieval, or remoted characteristic growth inside a broader pipeline. You can too use Sonnet 4 to handle steady integration and supply (CI/CD) pipelines, carry out bug triage, or combine APIs, all whereas sustaining excessive throughput and developer-aligned output.
Opus 4 and Sonnet 4 are hybrid reasoning fashions providing two modes: near-instant responses and prolonged pondering for deeper reasoning. You possibly can select near-instant responses for interactive functions, or allow prolonged pondering when a request advantages from deeper evaluation and planning. Considering is very helpful for long-context reasoning duties in areas like software program engineering, math, or scientific analysis. By configuring the mannequin’s pondering funds—for instance, by setting a most token depend—you’ll be able to tune the tradeoff between latency and reply depth to suit your workload.
Learn how to get began
To see Opus 4 or Sonnet 4 in motion, allow the brand new mannequin in your AWS account. Then, you can begin coding utilizing the Bedrock Converse API with mannequin IDanthropic.claude-opus-4-20250514-v1:0
for Opus 4 and anthropic.claude-sonnet-4-20250514-v1:0
for Sonnet 4. We advocate utilizing the Converse API, as a result of it supplies a constant API that works with all Amazon Bedrock fashions that help messages. This implies you’ll be able to write code one time and use it with totally different fashions.
For instance, let’s think about I write an agent to assessment code earlier than merging adjustments in a code repository. I write the next code that makes use of the Bedrock Converse API to ship a system and person prompts. Then, the agent consumes the streamed consequence.
personal let modelId = "us.anthropic.claude-sonnet-4-20250514-v1:0"
// Outline the system immediate that instructs Claude the right way to reply
let systemPrompt = """
You're a senior iOS developer with deep experience in Swift, particularly Swift 6 concurrency. Your job is to carry out a code assessment targeted on figuring out concurrency-related edge circumstances, potential race circumstances, and misuse of Swift concurrency primitives comparable to Job, TaskGroup, Sendable, @MainActor, and @preconcurrency.
It is best to assessment the code fastidiously and flag any patterns or logic that will trigger surprising habits in concurrent environments, comparable to accessing shared mutable state with out correct isolation, incorrect actor utilization, or non-Sendable varieties crossing concurrency boundaries.
Clarify your reasoning in exact technical phrases, and supply suggestions to enhance security, predictability, and correctness. When applicable, recommend concrete code adjustments or refactorings utilizing idiomatic Swift 6
"""
let system: BedrockRuntimeClientTypes.SystemContentBlock = .textual content(systemPrompt)
// Create the person message with textual content immediate and picture
let userPrompt = """
Are you able to assessment the next Swift code for concurrency points? Let me know what may go unsuitable and the right way to repair it.
"""
let immediate: BedrockRuntimeClientTypes.ContentBlock = .textual content(userPrompt)
// Create the person message with each textual content and picture content material
let userMessage = BedrockRuntimeClientTypes.Message(
content material: [prompt],
function: .person
)
// Initialize the messages array with the person message
var messages: [BedrockRuntimeClientTypes.Message] = []
messages.append(userMessage)
// Configure the inference parameters
let inferenceConfig: BedrockRuntimeClientTypes.InferenceConfiguration = .init(maxTokens: 4096, temperature: 0.0)
// Create the enter for the Converse API with streaming
let enter = ConverseStreamInput(inferenceConfig: inferenceConfig, messages: messages, modelId: modelId, system: [system])
// Make the streaming request
do {
// Course of the stream
let response = strive await bedrockClient.converseStream(enter: enter)
// Iterate by means of the stream occasions
for strive await occasion in stream {
change occasion {
case .messagestart:
print("AI-assistant began to stream"")
case let .contentblockdelta(deltaEvent):
// Deal with textual content content material because it arrives
if case let .textual content(textual content) = deltaEvent.delta {
self.streamedResponse + = textual content
print(textual content, termination: "")
}
case .messagestop:
print("nnStream ended")
// Create an entire assistant message from the streamed response
let assistantMessage = BedrockRuntimeClientTypes.Message(
content material: [.text(self.streamedResponse)],
function: .assistant
)
messages.append(assistantMessage)
default:
break
}
}
That can assist you get began, my colleague Dennis maintains a broad vary of code examples for a number of use circumstances and a wide range of programming languages.
Obtainable as we speak in Amazon Bedrock
This launch offers builders instant entry in Amazon Bedrock, a totally managed, serverless service, to the following era of Claude fashions developed by Anthropic. Whether or not you’re already constructing with Claude in Amazon Bedrock or simply getting began, this seamless entry makes it sooner to experiment, prototype, and scale with cutting-edge basis fashions—with out managing infrastructure or advanced integrations.
Claude Opus 4 is obtainable within the following AWS Areas in North America: US East (Ohio, N. Virginia) and US West (Oregon). Claude Sonnet 4 is obtainable not solely in AWS Areas in North America but in addition in APAC, and Europe: US East (Ohio, N. Virginia), US West (Oregon), Asia Pacific (Hyderabad, Mumbai, Osaka, Seoul, Singapore, Sydney, Tokyo), and Europe (Spain). You possibly can entry the 2 fashions by means of cross-Area inference. Cross-Area inference helps to mechanically choose the optimum AWS Area inside your geography to course of your inference request.
Opus 4 tackles your most difficult growth duties, whereas Sonnet 4 excels at routine work with its optimum stability of velocity and functionality.
Be taught extra in regards to the pricing and the right way to use these new fashions in Amazon Bedrock as we speak!