Ada lebih banyak AWS SDK contoh yang tersedia di GitHub repo SDKContoh AWS Dokumen
Terjemahan disediakan oleh mesin penerjemah. Jika konten terjemahan yang diberikan bertentangan dengan versi bahasa Inggris aslinya, utamakan versi bahasa Inggris.
Amazon Bedrock Agents contoh menggunakan SDK untuk Python (Boto3)
Contoh kode berikut menunjukkan kepada Anda cara melakukan tindakan dan mengimplementasikan skenario umum AWS SDK for Python (Boto3) dengan menggunakan Agen Bedrock Amazon.
Tindakan adalah kutipan kode dari program yang lebih besar dan harus dijalankan dalam konteks. Sementara tindakan menunjukkan cara memanggil fungsi layanan individual, Anda dapat melihat tindakan dalam konteks dalam skenario terkait.
Skenario adalah contoh kode yang menunjukkan kepada Anda bagaimana menyelesaikan tugas tertentu dengan memanggil beberapa fungsi dalam layanan atau dikombinasikan dengan yang lain Layanan AWS.
Setiap contoh menyertakan tautan ke kode sumber lengkap, di mana Anda dapat menemukan instruksi tentang cara mengatur dan menjalankan kode dalam konteks.
Tindakan
Contoh kode berikut menunjukkan cara menggunakanCreateAgent
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat agen.
def create_agent(self, agent_name, foundation_model, role_arn, instruction): """ Creates an agent that orchestrates interactions between foundation models, data sources, software applications, user conversations, and APIs to carry out tasks to help customers. :param agent_name: A name for the agent. :param foundation_model: The foundation model to be used for orchestration by the agent. :param role_arn: The ARN of the IAM role with permissions needed by the agent. :param instruction: Instructions that tell the agent what it should do and how it should interact with users. :return: The response from Amazon Bedrock Agents if successful, otherwise raises an exception. """ try: response = self.client.create_agent( agentName=agent_name, foundationModel=foundation_model, agentResourceRoleArn=role_arn, instruction=instruction, ) except ClientError as e: logger.error(f"Error: Couldn't create agent. Here's why: {e}") raise else: return response["agent"]
-
Untuk API detailnya, lihat CreateAgent AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanCreateAgentActionGroup
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat grup aksi agen.
def create_agent_action_group( self, name, description, agent_id, agent_version, function_arn, api_schema ): """ Creates an action group for an agent. An action group defines a set of actions that an agent should carry out for the customer. :param name: The name to give the action group. :param description: The description of the action group. :param agent_id: The unique identifier of the agent for which to create the action group. :param agent_version: The version of the agent for which to create the action group. :param function_arn: The ARN of the Lambda function containing the business logic that is carried out upon invoking the action. :param api_schema: Contains the OpenAPI schema for the action group. :return: Details about the action group that was created. """ try: response = self.client.create_agent_action_group( actionGroupName=name, description=description, agentId=agent_id, agentVersion=agent_version, actionGroupExecutor={"lambda": function_arn}, apiSchema={"payload": api_schema}, ) agent_action_group = response["agentActionGroup"] except ClientError as e: logger.error(f"Error: Couldn't create agent action group. Here's why: {e}") raise else: return agent_action_group
-
Untuk API detailnya, lihat CreateAgentActionGroup AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanCreateAgentAlias
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat alias agen.
def create_agent_alias(self, name, agent_id): """ Creates an alias of an agent that can be used to deploy the agent. :param name: The name of the alias. :param agent_id: The unique identifier of the agent. :return: Details about the alias that was created. """ try: response = self.client.create_agent_alias( agentAliasName=name, agentId=agent_id ) agent_alias = response["agentAlias"] except ClientError as e: logger.error(f"Couldn't create agent alias. {e}") raise else: return agent_alias
-
Untuk API detailnya, lihat CreateAgentAlias AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanDeleteAgent
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Hapus agen.
def delete_agent(self, agent_id): """ Deletes an Amazon Bedrock agent. :param agent_id: The unique identifier of the agent to delete. :return: The response from Amazon Bedrock Agents if successful, otherwise raises an exception. """ try: response = self.client.delete_agent( agentId=agent_id, skipResourceInUseCheck=False ) except ClientError as e: logger.error(f"Couldn't delete agent. {e}") raise else: return response
-
Untuk API detailnya, lihat DeleteAgent AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanDeleteAgentAlias
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Hapus alias agen.
def delete_agent_alias(self, agent_id, agent_alias_id): """ Deletes an alias of an Amazon Bedrock agent. :param agent_id: The unique identifier of the agent that the alias belongs to. :param agent_alias_id: The unique identifier of the alias to delete. :return: The response from Amazon Bedrock Agents if successful, otherwise raises an exception. """ try: response = self.client.delete_agent_alias( agentId=agent_id, agentAliasId=agent_alias_id ) except ClientError as e: logger.error(f"Couldn't delete agent alias. {e}") raise else: return response
-
Untuk API detailnya, lihat DeleteAgentAlias AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanGetAgent
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Dapatkan agen.
def get_agent(self, agent_id, log_error=True): """ Gets information about an agent. :param agent_id: The unique identifier of the agent. :param log_error: Whether to log any errors that occur when getting the agent. If True, errors will be logged to the logger. If False, errors will still be raised, but not logged. :return: The information about the requested agent. """ try: response = self.client.get_agent(agentId=agent_id) agent = response["agent"] except ClientError as e: if log_error: logger.error(f"Couldn't get agent {agent_id}. {e}") raise else: return agent
-
Untuk API detailnya, lihat GetAgent AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanListAgentActionGroups
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat daftar grup aksi untuk agen.
def list_agent_action_groups(self, agent_id, agent_version): """ List the action groups for a version of an Amazon Bedrock Agent. :param agent_id: The unique identifier of the agent. :param agent_version: The version of the agent. :return: The list of action group summaries for the version of the agent. """ try: action_groups = [] paginator = self.client.get_paginator("list_agent_action_groups") for page in paginator.paginate( agentId=agent_id, agentVersion=agent_version, PaginationConfig={"PageSize": 10}, ): action_groups.extend(page["actionGroupSummaries"]) except ClientError as e: logger.error(f"Couldn't list action groups. {e}") raise else: return action_groups
-
Untuk API detailnya, lihat ListAgentActionGroups AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanListAgentKnowledgeBases
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat daftar basis pengetahuan yang terkait dengan agen.
def list_agent_knowledge_bases(self, agent_id, agent_version): """ List the knowledge bases associated with a version of an Amazon Bedrock Agent. :param agent_id: The unique identifier of the agent. :param agent_version: The version of the agent. :return: The list of knowledge base summaries for the version of the agent. """ try: knowledge_bases = [] paginator = self.client.get_paginator("list_agent_knowledge_bases") for page in paginator.paginate( agentId=agent_id, agentVersion=agent_version, PaginationConfig={"PageSize": 10}, ): knowledge_bases.extend(page["agentKnowledgeBaseSummaries"]) except ClientError as e: logger.error(f"Couldn't list knowledge bases. {e}") raise else: return knowledge_bases
-
Untuk API detailnya, lihat ListAgentKnowledgeBases AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanListAgents
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat daftar agen milik akun.
def list_agents(self): """ List the available Amazon Bedrock Agents. :return: The list of available bedrock agents. """ try: all_agents = [] paginator = self.client.get_paginator("list_agents") for page in paginator.paginate(PaginationConfig={"PageSize": 10}): all_agents.extend(page["agentSummaries"]) except ClientError as e: logger.error(f"Couldn't list agents. {e}") raise else: return all_agents
-
Untuk API detailnya, lihat ListAgents AWSSDKReferensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara menggunakanPrepareAgent
.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Siapkan agen untuk pengujian internal.
def prepare_agent(self, agent_id): """ Creates a DRAFT version of the agent that can be used for internal testing. :param agent_id: The unique identifier of the agent to prepare. :return: The response from Amazon Bedrock Agents if successful, otherwise raises an exception. """ try: prepared_agent_details = self.client.prepare_agent(agentId=agent_id) except ClientError as e: logger.error(f"Couldn't prepare agent. {e}") raise else: return prepared_agent_details
-
Untuk API detailnya, lihat PrepareAgent AWSSDKReferensi Python (Boto3). API
-
Skenario
Contoh kode berikut ini menunjukkan cara:
Buat peran eksekusi untuk agen.
Buat agen dan terapkan DRAFT versi.
Buat fungsi Lambda yang mengimplementasikan kemampuan agen.
Buat grup tindakan yang menghubungkan agen ke fungsi Lambda.
Menyebarkan agen yang sepenuhnya dikonfigurasi.
Panggil agen dengan petunjuk yang disediakan pengguna.
Hapus semua sumber daya yang dibuat.
- SDKuntuk Python (Boto3)
-
catatan
Ada lebih banyak tentang GitHub. Temukan contoh lengkapnya dan pelajari cara pengaturan dan menjalankannya di Repositori Contoh Kode AWS
. Buat dan panggil agen.
REGION = "us-east-1" ROLE_POLICY_NAME = "agent_permissions" class BedrockAgentScenarioWrapper: """Runs a scenario that shows how to get started using Amazon Bedrock Agents.""" def __init__( self, bedrock_agent_client, runtime_client, lambda_client, iam_resource, postfix ): self.iam_resource = iam_resource self.lambda_client = lambda_client self.bedrock_agent_runtime_client = runtime_client self.postfix = postfix self.bedrock_wrapper = BedrockAgentWrapper(bedrock_agent_client) self.agent = None self.agent_alias = None self.agent_role = None self.prepared_agent_details = None self.lambda_role = None self.lambda_function = None def run_scenario(self): print("=" * 88) print("Welcome to the Amazon Bedrock Agents demo.") print("=" * 88) # Query input from user print("Let's start with creating an agent:") print("-" * 40) name, foundation_model = self._request_name_and_model_from_user() print("-" * 40) # Create an execution role for the agent self.agent_role = self._create_agent_role(foundation_model) # Create the agent self.agent = self._create_agent(name, foundation_model) # Prepare a DRAFT version of the agent self.prepared_agent_details = self._prepare_agent() # Create the agent's Lambda function self.lambda_function = self._create_lambda_function() # Configure permissions for the agent to invoke the Lambda function self._allow_agent_to_invoke_function() self._let_function_accept_invocations_from_agent() # Create an action group to connect the agent with the Lambda function self._create_agent_action_group() # If the agent has been modified or any components have been added, prepare the agent again components = [self._get_agent()] components += self._get_agent_action_groups() components += self._get_agent_knowledge_bases() latest_update = max(component["updatedAt"] for component in components) if latest_update > self.prepared_agent_details["preparedAt"]: self.prepared_agent_details = self._prepare_agent() # Create an agent alias self.agent_alias = self._create_agent_alias() # Test the agent self._chat_with_agent(self.agent_alias) print("=" * 88) print("Thanks for running the demo!\n") if q.ask("Do you want to delete the created resources? [y/N] ", q.is_yesno): self._delete_resources() print("=" * 88) print( "All demo resources have been deleted. Thanks again for running the demo!" ) else: self._list_resources() print("=" * 88) print("Thanks again for running the demo!") def _request_name_and_model_from_user(self): existing_agent_names = [ agent["agentName"] for agent in self.bedrock_wrapper.list_agents() ] while True: name = q.ask("Enter an agent name: ", self.is_valid_agent_name) if name.lower() not in [n.lower() for n in existing_agent_names]: break print( f"Agent {name} conflicts with an existing agent. Please use a different name." ) models = ["anthropic.claude-instant-v1", "anthropic.claude-v2"] model_id = models[ q.choose("Which foundation model would you like to use? ", models) ] return name, model_id def _create_agent_role(self, model_id): role_name = f"AmazonBedrockExecutionRoleForAgents_{self.postfix}" model_arn = f"arn:aws:bedrock:{REGION}::foundation-model/{model_id}*" print("Creating an an execution role for the agent...") try: role = self.iam_resource.create_role( RoleName=role_name, AssumeRolePolicyDocument=json.dumps( { "Version": "2012-10-17", "Statement": [ { "Effect": "Allow", "Principal": {"Service": "bedrock.amazonaws.com"}, "Action": "sts:AssumeRole", } ], } ), ) role.Policy(ROLE_POLICY_NAME).put( PolicyDocument=json.dumps( { "Version": "2012-10-17", "Statement": [ { "Effect": "Allow", "Action": "bedrock:InvokeModel", "Resource": model_arn, } ], } ) ) except ClientError as e: logger.error(f"Couldn't create role {role_name}. Here's why: {e}") raise return role def _create_agent(self, name, model_id): print("Creating the agent...") instruction = """ You are a friendly chat bot. You have access to a function called that returns information about the current date and time. When responding with date or time, please make sure to add the timezone UTC. """ agent = self.bedrock_wrapper.create_agent( agent_name=name, foundation_model=model_id, instruction=instruction, role_arn=self.agent_role.arn, ) self._wait_for_agent_status(agent["agentId"], "NOT_PREPARED") return agent def _prepare_agent(self): print("Preparing the agent...") agent_id = self.agent["agentId"] prepared_agent_details = self.bedrock_wrapper.prepare_agent(agent_id) self._wait_for_agent_status(agent_id, "PREPARED") return prepared_agent_details def _create_lambda_function(self): print("Creating the Lambda function...") function_name = f"AmazonBedrockExampleFunction_{self.postfix}" self.lambda_role = self._create_lambda_role() try: deployment_package = self._create_deployment_package(function_name) lambda_function = self.lambda_client.create_function( FunctionName=function_name, Description="Lambda function for Amazon Bedrock example", Runtime="python3.11", Role=self.lambda_role.arn, Handler=f"{function_name}.lambda_handler", Code={"ZipFile": deployment_package}, Publish=True, ) waiter = self.lambda_client.get_waiter("function_active_v2") waiter.wait(FunctionName=function_name) except ClientError as e: logger.error( f"Couldn't create Lambda function {function_name}. Here's why: {e}" ) raise return lambda_function def _create_lambda_role(self): print("Creating an execution role for the Lambda function...") role_name = f"AmazonBedrockExecutionRoleForLambda_{self.postfix}" try: role = self.iam_resource.create_role( RoleName=role_name, AssumeRolePolicyDocument=json.dumps( { "Version": "2012-10-17", "Statement": [ { "Effect": "Allow", "Principal": {"Service": "lambda.amazonaws.com"}, "Action": "sts:AssumeRole", } ], } ), ) role.attach_policy( PolicyArn="arn:aws:iam::aws:policy/service-role/AWSLambdaBasicExecutionRole" ) print(f"Created role {role_name}") except ClientError as e: logger.error(f"Couldn't create role {role_name}. Here's why: {e}") raise print("Waiting for the execution role to be fully propagated...") wait(10) return role def _allow_agent_to_invoke_function(self): policy = self.iam_resource.RolePolicy( self.agent_role.role_name, ROLE_POLICY_NAME ) doc = policy.policy_document doc["Statement"].append( { "Effect": "Allow", "Action": "lambda:InvokeFunction", "Resource": self.lambda_function["FunctionArn"], } ) self.agent_role.Policy(ROLE_POLICY_NAME).put(PolicyDocument=json.dumps(doc)) def _let_function_accept_invocations_from_agent(self): try: self.lambda_client.add_permission( FunctionName=self.lambda_function["FunctionName"], SourceArn=self.agent["agentArn"], StatementId="BedrockAccess", Action="lambda:InvokeFunction", Principal="bedrock.amazonaws.com", ) except ClientError as e: logger.error( f"Couldn't grant Bedrock permission to invoke the Lambda function. Here's why: {e}" ) raise def _create_agent_action_group(self): print("Creating an action group for the agent...") try: with open("./scenario_resources/api_schema.yaml") as file: self.bedrock_wrapper.create_agent_action_group( name="current_date_and_time", description="Gets the current date and time.", agent_id=self.agent["agentId"], agent_version=self.prepared_agent_details["agentVersion"], function_arn=self.lambda_function["FunctionArn"], api_schema=json.dumps(yaml.safe_load(file)), ) except ClientError as e: logger.error(f"Couldn't create agent action group. Here's why: {e}") raise def _get_agent(self): return self.bedrock_wrapper.get_agent(self.agent["agentId"]) def _get_agent_action_groups(self): return self.bedrock_wrapper.list_agent_action_groups( self.agent["agentId"], self.prepared_agent_details["agentVersion"] ) def _get_agent_knowledge_bases(self): return self.bedrock_wrapper.list_agent_knowledge_bases( self.agent["agentId"], self.prepared_agent_details["agentVersion"] ) def _create_agent_alias(self): print("Creating an agent alias...") agent_alias_name = "test_agent_alias" agent_alias = self.bedrock_wrapper.create_agent_alias( agent_alias_name, self.agent["agentId"] ) self._wait_for_agent_status(self.agent["agentId"], "PREPARED") return agent_alias def _wait_for_agent_status(self, agent_id, status): while self.bedrock_wrapper.get_agent(agent_id)["agentStatus"] != status: wait(2) def _chat_with_agent(self, agent_alias): print("-" * 88) print("The agent is ready to chat.") print("Try asking for the date or time. Type 'exit' to quit.") # Create a unique session ID for the conversation session_id = uuid.uuid4().hex while True: prompt = q.ask("Prompt: ", q.non_empty) if prompt == "exit": break response = asyncio.run(self._invoke_agent(agent_alias, prompt, session_id)) print(f"Agent: {response}") async def _invoke_agent(self, agent_alias, prompt, session_id): response = self.bedrock_agent_runtime_client.invoke_agent( agentId=self.agent["agentId"], agentAliasId=agent_alias["agentAliasId"], sessionId=session_id, inputText=prompt, ) completion = "" for event in response.get("completion"): chunk = event["chunk"] completion += chunk["bytes"].decode() return completion def _delete_resources(self): if self.agent: agent_id = self.agent["agentId"] if self.agent_alias: agent_alias_id = self.agent_alias["agentAliasId"] print("Deleting agent alias...") self.bedrock_wrapper.delete_agent_alias(agent_id, agent_alias_id) print("Deleting agent...") agent_status = self.bedrock_wrapper.delete_agent(agent_id)["agentStatus"] while agent_status == "DELETING": wait(5) try: agent_status = self.bedrock_wrapper.get_agent( agent_id, log_error=False )["agentStatus"] except ClientError as err: if err.response["Error"]["Code"] == "ResourceNotFoundException": agent_status = "DELETED" if self.lambda_function: name = self.lambda_function["FunctionName"] print(f"Deleting function '{name}'...") self.lambda_client.delete_function(FunctionName=name) if self.agent_role: print(f"Deleting role '{self.agent_role.role_name}'...") self.agent_role.Policy(ROLE_POLICY_NAME).delete() self.agent_role.delete() if self.lambda_role: print(f"Deleting role '{self.lambda_role.role_name}'...") for policy in self.lambda_role.attached_policies.all(): policy.detach_role(RoleName=self.lambda_role.role_name) self.lambda_role.delete() def _list_resources(self): print("-" * 40) print(f"Here is the list of created resources in '{REGION}'.") print("Make sure you delete them once you're done to avoid unnecessary costs.") if self.agent: print(f"Bedrock Agent: {self.agent['agentName']}") if self.lambda_function: print(f"Lambda function: {self.lambda_function['FunctionName']}") if self.agent_role: print(f"IAM role: {self.agent_role.role_name}") if self.lambda_role: print(f"IAM role: {self.lambda_role.role_name}") @staticmethod def is_valid_agent_name(answer): valid_regex = r"^[a-zA-Z0-9_-]{1,100}$" return ( answer if answer and len(answer) <= 100 and re.match(valid_regex, answer) else None, "I need a name for the agent, please. Valid characters are a-z, A-Z, 0-9, _ (underscore) and - (hyphen).", ) @staticmethod def _create_deployment_package(function_name): buffer = io.BytesIO() with zipfile.ZipFile(buffer, "w") as zipped: zipped.write( "./scenario_resources/lambda_function.py", f"{function_name}.py" ) buffer.seek(0) return buffer.read() if __name__ == "__main__": logging.basicConfig(level=logging.INFO, format="%(levelname)s: %(message)s") postfix = "".join( random.choice(string.ascii_lowercase + "0123456789") for _ in range(8) ) scenario = BedrockAgentScenarioWrapper( bedrock_agent_client=boto3.client( service_name="bedrock-agent", region_name=REGION ), runtime_client=boto3.client( service_name="bedrock-agent-runtime", region_name=REGION ), lambda_client=boto3.client(service_name="lambda", region_name=REGION), iam_resource=boto3.resource("iam"), postfix=postfix, ) try: scenario.run_scenario() except Exception as e: logging.exception(f"Something went wrong with the demo. Here's what: {e}")
-
Untuk API detailnya, lihat topik berikut AWS SDKuntuk Referensi Python (Boto3). API
-
Contoh kode berikut menunjukkan cara membangun dan mengatur aplikasi AI generatif dengan Amazon Bedrock dan Step Functions.
- SDKuntuk Python (Boto3)
-
Skenario Amazon Bedrock Serverless Prompt Chaining menunjukkan bagaimana AWS Step Functions, Amazon Bedrock, https://docs.aws.amazon.com/bedrock/latest/userguide/agents.html dan dapat digunakan untuk membangun dan mengatur aplikasi AI generatif yang kompleks, tanpa server, dan sangat skalabel. Ini berisi contoh kerja berikut:
-
Tulis analisis novel yang diberikan untuk blog sastra. Contoh ini menggambarkan rantai petunjuk yang sederhana dan berurutan.
-
Hasilkan cerita pendek tentang topik tertentu. Contoh ini menggambarkan bagaimana AI dapat secara iteratif memproses daftar item yang dihasilkan sebelumnya.
-
Buat rencana perjalanan untuk liburan akhir pekan ke tujuan tertentu. Contoh ini menggambarkan cara memparalelkan beberapa prompt yang berbeda.
-
Pitch ide film untuk pengguna manusia yang bertindak sebagai produser film. Contoh ini menggambarkan cara memparalelkan prompt yang sama dengan parameter inferensi yang berbeda, cara mundur ke langkah sebelumnya dalam rantai, dan cara memasukkan input manusia sebagai bagian dari alur kerja.
-
Rencanakan makanan berdasarkan bahan-bahan yang dimiliki pengguna. Contoh ini menggambarkan bagaimana rantai cepat dapat menggabungkan dua percakapan AI yang berbeda, dengan dua persona AI terlibat dalam debat satu sama lain untuk meningkatkan hasil akhir.
-
Temukan dan rangkum repositori tren GitHub tertinggi hari ini. Contoh ini menggambarkan rantai beberapa agen AI yang berinteraksi dengan eksternal. APIs
Untuk kode sumber lengkap dan instruksi untuk menyiapkan dan menjalankan, lihat proyek lengkap di GitHub
. Layanan yang digunakan dalam contoh ini
Amazon Bedrock
Runtime Amazon Bedrock
Agen Bedrock Amazon
Runtime Agen Batuan Dasar Amazon
Step Functions
-