> ## Documentation Index
> Fetch the complete documentation index at: https://aitutorial.dev/llms.txt
> Use this file to discover all available pages before exploring further.

# Agent Memory

> Working memory with MemorySaver and long-term memory for cross-session persistence

export const QuizQuestion = ({question, options, answer, explanation}) => {
  const [selected, setSelected] = useState(null);
  const [revealed, setRevealed] = useState(false);
  const handleSelect = index => {
    if (revealed) return;
    setSelected(index);
    setRevealed(true);
  };
  const isCorrect = selected === answer;
  const getOptionClass = i => {
    const classes = ['quiz-option'];
    if (revealed) {
      classes.push('quiz-option-disabled');
      if (i === answer) classes.push('quiz-option-correct'); else if (i === selected && !isCorrect) classes.push('quiz-option-wrong');
    }
    return classes.join(' ');
  };
  return <div className="quiz-card">
      <p className="quiz-question">{question}</p>
      <div className="quiz-options">
        {options.map((option, i) => <button key={i} onClick={() => handleSelect(i)} className={getOptionClass(i)}>
            <span className="quiz-letter">{String.fromCharCode(65 + i)}</span>
            {option}
          </button>)}
      </div>
      {revealed && <div className={`quiz-feedback ${isCorrect ? 'quiz-feedback-correct' : 'quiz-feedback-wrong'}`}>
          <strong>{isCorrect ? 'Correct!' : 'Incorrect.'}</strong> {explanation}
        </div>}
    </div>;
};

export const Quiz = ({title = "Check Your Understanding", children}) => {
  return <div style={{
    marginTop: '24px'
  }}>
      <div className="quiz-title">{title}</div>
      {children}
    </div>;
};

export const CodeEditor = ({file = 'src/hello_world.ts', lines, title = 'Code Example', repo = 'ai-tutorial/typescript-examples', height = '650px', functionName, theme: userTheme}) => {
  const STORAGE_KEY = 'openai_api_key';
  const GEMINI_STORAGE_KEY = 'gemini_api_key';
  const ANTHROPIC_STORAGE_KEY = 'anthropic_api_key';
  const PROVIDER_STORAGE_KEY = 'llm_playground_provider';
  if (!functionName) {
    console.warn('CodeEditor: functionName parameter is required');
  }
  const hasCreatedEnvRef = useRef(false);
  const vmRef = useRef(null);
  const [isMaximized, setIsMaximized] = useState(false);
  const [isCollapsed, setIsCollapsed] = useState(false);
  const [isStuck, setIsStuck] = useState(false);
  const [iframeKey, setIframeKey] = useState(0);
  const [showApiKeyDialog, setShowApiKeyDialog] = useState(false);
  const [apiKey, setApiKey] = useState('');
  const [error, setError] = useState('');
  const [success, setSuccess] = useState(false);
  const [isSubmitting, setIsSubmitting] = useState(false);
  const [isValidating, setIsValidating] = useState(false);
  const [detectedTheme, setDetectedTheme] = useState('dark');
  useEffect(() => {
    if (typeof window === 'undefined') return;
    const checkTheme = () => {
      const isDark = document.documentElement.classList.contains('dark');
      setDetectedTheme(isDark ? 'dark' : 'light');
    };
    checkTheme();
    const observer = new MutationObserver(checkTheme);
    observer.observe(document.documentElement, {
      attributes: true,
      attributeFilter: ['class']
    });
    return () => observer.disconnect();
  }, []);
  const theme = userTheme || detectedTheme;
  const [selectedProvider, setSelectedProvider] = useState(() => {
    if (typeof window === 'undefined') return 'gemini';
    return localStorage.getItem(PROVIDER_STORAGE_KEY) || 'gemini';
  });
  const isApiKeyConfigured = () => {
    const openaiKey = localStorage.getItem(STORAGE_KEY);
    const geminiKey = localStorage.getItem(GEMINI_STORAGE_KEY);
    const anthropicKey = localStorage.getItem(ANTHROPIC_STORAGE_KEY);
    return openaiKey !== null && openaiKey.trim().length > 0 || geminiKey !== null && geminiKey.trim().length > 0 || anthropicKey !== null && anthropicKey.trim().length > 0;
  };
  const dispatchApiKeyChanged = () => {
    if (typeof window !== 'undefined' && window.dispatchEvent) {
      window.dispatchEvent(new CustomEvent('apiKeyChanged', {
        detail: {
          configured: isApiKeyConfigured()
        }
      }));
    }
  };
  const saveApiKey = apiKey => {
    if (apiKey && apiKey.trim()) {
      const trimmedKey = apiKey.trim();
      localStorage.setItem(STORAGE_KEY, trimmedKey);
      dispatchApiKeyChanged();
      return true;
    }
    return false;
  };
  const buildEnvContent = () => {
    const openaiKey = localStorage.getItem(STORAGE_KEY)?.trim();
    const geminiKey = localStorage.getItem(GEMINI_STORAGE_KEY)?.trim();
    const anthropicKey = localStorage.getItem(ANTHROPIC_STORAGE_KEY)?.trim();
    if (!openaiKey && !geminiKey && !anthropicKey) {
      return `OPENAI_MODEL=gpt-4.1-nano
OPENAI_API_KEY=sk-mock-key-1234567890abcdef
GEMINI_MODEL=gemini-2.5-flash-lite
GOOGLE_GENERATIVE_AI_API_KEY=
GOOGLE_API_KEY=
ANTHROPIC_API_KEY=
AI_PROVIDER=openai
# API key not found in browser storage
# To configure your API key:
# 1. For Gemini (free): Go to https://aistudio.google.com/apikey
# 2. For OpenAI: Go to https://platform.openai.com/api-keys
# 3. For Claude: Go to https://console.anthropic.com/settings/keys
# 4. Enter it in the configuration form above this editor
# 5. The .env file will be automatically updated with your key`;
    }
    const envLines = ['# Using the API key(s) you configured. This file will be created when the dialog is loaded.'];
    if (openaiKey) {
      envLines.push(`OPENAI_MODEL=gpt-4.1-nano`);
      envLines.push(`OPENAI_API_KEY=${openaiKey}`);
    }
    if (geminiKey) {
      envLines.push(`GEMINI_MODEL=gemini-2.5-flash-lite`);
      envLines.push(`# Vercel AI SDK uses GOOGLE_GENERATIVE_AI_API_KEY, LangChain uses GOOGLE_API_KEY`);
      envLines.push(`GOOGLE_GENERATIVE_AI_API_KEY=${geminiKey}`);
      envLines.push(`GOOGLE_API_KEY=${geminiKey}`);
    }
    if (anthropicKey) {
      envLines.push(`ANTHROPIC_API_KEY=${anthropicKey}`);
    }
    const provider = anthropicKey ? 'anthropic' : geminiKey ? 'gemini' : 'openai';
    envLines.push(`AI_PROVIDER=${provider}`);
    return envLines.join('\n');
  };
  const updateEnvFile = async vm => {
    if (!vm) return;
    try {
      await vm.applyFsDiff({
        create: {
          'env/.env': buildEnvContent(),
          'env/run.conf': `file=${file}`
        },
        destroy: []
      });
      hasCreatedEnvRef.current = true;
    } catch (error) {
      console.error('Failed to write env files:', error);
      hasCreatedEnvRef.current = false;
    }
  };
  useEffect(() => {
    if (!isApiKeyConfigured()) {
      setShowApiKeyDialog(true);
    }
    const handleApiKeyChanged = () => {
      if (isApiKeyConfigured()) {
        setShowApiKeyDialog(false);
      }
    };
    if (typeof window !== 'undefined') {
      window.addEventListener('apiKeyChanged', handleApiKeyChanged);
      return () => {
        window.removeEventListener('apiKeyChanged', handleApiKeyChanged);
      };
    }
  }, []);
  const validateApiKey = async (key, provider) => {
    try {
      const urls = {
        gemini: 'https://generativelanguage.googleapis.com/v1beta/models?key=' + encodeURIComponent(key.trim()),
        openai: 'https://api.openai.com/v1/models',
        anthropic: 'https://api.anthropic.com/v1/models'
      };
      const headerMap = {
        gemini: {
          'Content-Type': 'application/json'
        },
        openai: {
          'Authorization': `Bearer ${key.trim()}`,
          'Content-Type': 'application/json'
        },
        anthropic: {
          'x-api-key': key.trim(),
          'anthropic-version': '2023-06-01',
          'Content-Type': 'application/json'
        }
      };
      const url = urls[provider];
      const headers = headerMap[provider];
      const response = await fetch(url, {
        method: 'GET',
        headers
      });
      if (response.ok) {
        return {
          valid: true
        };
      } else if (response.status === 401 || response.status === 403) {
        return {
          valid: false,
          error: 'Invalid API key. Please check your key and try again.'
        };
      } else if (response.status === 429) {
        return {
          valid: false,
          error: 'Rate limit exceeded. Please try again later.'
        };
      } else {
        const errorData = await response.json().catch(() => ({}));
        return {
          valid: false,
          error: errorData.error?.message || `API request failed with status ${response.status}`
        };
      }
    } catch (err) {
      if (err.name === 'TypeError' && err.message.includes('fetch')) {
        return {
          valid: false,
          error: 'Network error. Please check your connection and try again.'
        };
      }
      return {
        valid: false,
        error: err.message || 'Failed to validate API key. Please try again.'
      };
    }
  };
  const handleSkipConfiguration = () => {
    const skipKey = 'sk-<configure-your-key>';
    saveApiKey(skipKey);
    setShowApiKeyDialog(false);
  };
  const handleApiKeySubmit = async e => {
    e.preventDefault();
    setError('');
    setSuccess(false);
    setIsSubmitting(true);
    const providerNames = {
      gemini: 'Gemini',
      openai: 'OpenAI',
      anthropic: 'Claude'
    };
    if (!apiKey || !apiKey.trim()) {
      setError(`Please enter your ${providerNames[selectedProvider]} API key`);
      setIsSubmitting(false);
      return;
    }
    const trimmedKey = apiKey.trim();
    if (selectedProvider === 'openai' && !trimmedKey.startsWith('sk-')) {
      setError('Invalid API key format. OpenAI API keys should start with "sk-"');
      setIsSubmitting(false);
      return;
    }
    if (selectedProvider === 'anthropic' && !trimmedKey.startsWith('sk-ant-')) {
      setError('Invalid API key format. Anthropic API keys should start with "sk-ant-"');
      setIsSubmitting(false);
      return;
    }
    setIsValidating(true);
    setError('');
    const validation = await validateApiKey(trimmedKey, selectedProvider);
    setIsValidating(false);
    if (!validation.valid) {
      setError(validation.error || 'Invalid API key. Please check your key and try again.');
      setIsSubmitting(false);
      return;
    }
    try {
      const storageKeys = {
        gemini: GEMINI_STORAGE_KEY,
        openai: STORAGE_KEY,
        anthropic: ANTHROPIC_STORAGE_KEY
      };
      localStorage.setItem(storageKeys[selectedProvider], trimmedKey);
      localStorage.setItem(PROVIDER_STORAGE_KEY, selectedProvider);
      dispatchApiKeyChanged();
      setSuccess(true);
      setApiKey('');
      setTimeout(() => {
        window.location.reload();
      }, 1000);
    } catch (err) {
      setError(err.message || 'Failed to save API key. Please try again.');
      setIsSubmitting(false);
    }
  };
  const baseFilePath = file || 'src/hello_world.ts';
  let filePath = baseFilePath;
  if (typeof lines === 'string' && lines.trim()) {
    const lineParts = lines.split('-');
    if (lineParts.length === 2) {
      filePath = `${filePath}:L${lineParts[0].trim()}-L${lineParts[1].trim()}`;
    } else {
      filePath = `${filePath}:L${lineParts[0].trim()}`;
    }
  } else if (typeof lines === 'object' && lines.start !== undefined) {
    filePath = lines.end !== undefined ? `${filePath}:L${lines.start}-L${lines.end}` : `${filePath}:L${lines.start}`;
  }
  const stackblitzUrl = `https://stackblitz.com/github/${repo}?file=${encodeURIComponent(filePath)}&embed=1&view=editor&theme=${theme}`;
  const loadSDK = () => {
    return new Promise((resolve, reject) => {
      if (window.StackBlitzSDK || window.stackblitzSDK) {
        resolve(window.StackBlitzSDK || window.stackblitzSDK);
        return;
      }
      if (document.querySelector('script[data-stackblitz-sdk]')) {
        const checkInterval = setInterval(() => {
          if (window.StackBlitzSDK || window.stackblitzSDK) {
            clearInterval(checkInterval);
            resolve(window.StackBlitzSDK || window.stackblitzSDK);
          }
        }, 100);
        setTimeout(() => {
          clearInterval(checkInterval);
          reject(new Error('SDK loading timeout'));
        }, 10000);
        return;
      }
      const script = document.createElement('script');
      script.src = 'https://unpkg.com/@stackblitz/sdk/bundles/sdk.umd.js';
      script.async = true;
      script.setAttribute('data-stackblitz-sdk', 'true');
      script.onload = () => {
        const sdk = window.StackBlitzSDK || window.stackblitzSDK;
        if (sdk) {
          resolve(sdk);
        } else {
          reject(new Error('SDK loaded but not available on window'));
        }
      };
      script.onerror = () => {
        reject(new Error('Failed to load StackBlitz SDK'));
      };
      document.head.appendChild(script);
    });
  };
  const LOAD_TIMEOUT_MS = 10000;
  const iframeElRef = useRef(null);
  const reloadCountRef = useRef(0);
  const handleRetry = () => {
    vmRef.current = null;
    hasCreatedEnvRef.current = false;
    reloadCountRef.current = 0;
    setIsStuck(false);
    setIframeKey(prev => prev + 1);
  };
  const iframeRef = iframe => {
    iframeElRef.current = iframe;
  };
  const connectToVM = async iframe => {
    const sdk = await loadSDK();
    return sdk.connect(iframe);
  };
  const handleIframeLoad = async () => {
    const iframe = iframeElRef.current;
    if (!iframe) return;
    if (reloadCountRef.current > 0) {
      try {
        const vm = await connectToVM(iframe);
        vmRef.current = vm;
        await updateEnvFile(vm);
      } catch (_) {}
      return;
    }
    try {
      if (vmRef.current) return;
      const vm = await Promise.race([connectToVM(iframe), new Promise((_, reject) => setTimeout(() => reject(new Error('connect timeout')), LOAD_TIMEOUT_MS))]);
      vmRef.current = vm;
      await updateEnvFile(vm);
    } catch (error) {
      console.error('Failed to connect to StackBlitz VM:', error);
      if (typeof window !== 'undefined' && window.gtag) {
        window.gtag('event', 'load_refresh_error', {
          event_category: 'stackblitz',
          event_label: file,
          error_message: error.message
        });
      }
      reloadCountRef.current = 1;
      setTimeout(() => {
        setIframeKey(prev => prev + 1);
      }, 2000);
    }
  };
  const isSafari = typeof navigator !== 'undefined' && (/^((?!chrome|android).)*safari/i).test(navigator.userAgent);
  if (isSafari) {
    return <div className="code-editor-dialog-container" style={{
      height: height
    }}>
        <div className="code-editor-dialog-box">
          <h2 className="code-editor-dialog-title">
            <svg width="20" height="20" viewBox="0 0 24 24" fill="none" stroke="#f59e0b" strokeWidth="2">
              <path d="M10.29 3.86L1.82 18a2 2 0 0 0 1.71 3h16.94a2 2 0 0 0 1.71-3L13.71 3.86a2 2 0 0 0-3.42 0z"></path>
              <line x1="12" y1="9" x2="12" y2="13"></line>
              <line x1="12" y1="17" x2="12.01" y2="17"></line>
            </svg>
            Browser Not Supported
          </h2>
          <p className="code-editor-dialog-description">
            The interactive code editor is not supported on Safari. Please use <strong>Chrome</strong>, <strong>Edge</strong>, or <strong>Firefox</strong> to run the examples.
          </p>
        </div>
      </div>;
  }
  if (showApiKeyDialog) {
    return <div className="code-editor-dialog-container" style={{
      height: height
    }}>
        <div className="code-editor-dialog-box">
          <h2 className="code-editor-dialog-title">
            <svg width="20" height="20" viewBox="0 0 24 24" fill="none" stroke="#f59e0b" strokeWidth="2">
              <path d="M10.29 3.86L1.82 18a2 2 0 0 0 1.71 3h16.94a2 2 0 0 0 1.71-3L13.71 3.86a2 2 0 0 0-3.42 0z"></path>
              <line x1="12" y1="9" x2="12" y2="13"></line>
              <line x1="12" y1="17" x2="12.01" y2="17"></line>
            </svg>
            Configure API Key
          </h2>

          <p className="code-editor-dialog-description">
            All interactive examples execute entirely within your browser environment, ensuring complete security and privacy.
            Your API key is stored locally in your browser's storage and is never transmitted to external servers.
          </p>

          <div className="llm-provider-tabs" style={{
      marginBottom: '16px'
    }}>
            <button type="button" onClick={() => {
      setSelectedProvider('gemini');
      setError('');
      setApiKey('');
    }} className={`llm-provider-tab ${selectedProvider === 'gemini' ? 'llm-provider-tab-active' : ''}`}>
              Gemini <span className="llm-provider-tab-badge">Free</span>
            </button>
            <button type="button" onClick={() => {
      setSelectedProvider('openai');
      setError('');
      setApiKey('');
    }} className={`llm-provider-tab ${selectedProvider === 'openai' ? 'llm-provider-tab-active' : ''}`}>
              OpenAI
            </button>
            <button type="button" onClick={() => {
      setSelectedProvider('anthropic');
      setError('');
      setApiKey('');
    }} className={`llm-provider-tab ${selectedProvider === 'anthropic' ? 'llm-provider-tab-active' : ''}`}>
              Claude
            </button>
          </div>

          {selectedProvider === 'gemini' && <div className="llm-gemini-recommendation" style={{
      marginBottom: '16px'
    }}>
              Gemini offers a generous free tier — great for learning! Get your free API key at{' '}
              <a href="https://aistudio.google.com/apikey" target="_blank" rel="noopener noreferrer" className="code-editor-link">
                aistudio.google.com/apikey
              </a>
            </div>}

          {selectedProvider === 'openai' && <div className="code-editor-info-box">
              <p className="code-editor-info-box-title">
                Don't have an API key?
              </p>
              <p className="code-editor-info-box-text">
                Get one at{' '}
                <a href="https://platform.openai.com/api-keys" target="_blank" rel="noopener noreferrer" className="code-editor-link">
                  platform.openai.com/api-keys
                </a>
              </p>
            </div>}

          {selectedProvider === 'anthropic' && <div className="code-editor-info-box">
              <p className="code-editor-info-box-title">
                Don't have an API key?
              </p>
              <p className="code-editor-info-box-text">
                Get one at{' '}
                <a href="https://console.anthropic.com/settings/keys" target="_blank" rel="noopener noreferrer" className="code-editor-link">
                  console.anthropic.com/settings/keys
                </a>
              </p>
            </div>}

          <form onSubmit={handleApiKeySubmit}>
            <div className="code-editor-form-group">
              <label htmlFor="api-key-input" className="code-editor-label">
                {selectedProvider === 'gemini' ? 'Gemini' : 'OpenAI'} API Key
              </label>
              <input id="api-key-input" type="password" value={apiKey} onChange={e => {
      setApiKey(e.target.value);
      setError('');
      setSuccess(false);
    }} placeholder={selectedProvider === 'openai' ? 'sk-...' : 'Gemini API Key'} disabled={isSubmitting} className={`code-editor-input ${error ? 'code-editor-input-error' : ''}`} />
            </div>

            {isValidating && <div className="code-editor-message code-editor-message-info">
                <span className="code-editor-message-icon">⏳</span>
                <span>Validating API key...</span>
              </div>}

            {error && !isValidating && <div className="code-editor-message code-editor-message-error">
                <span className="code-editor-message-icon">⚠️</span>
                <span>{error}</span>
              </div>}

            {success && <div className="code-editor-message code-editor-message-success">
                <span className="code-editor-message-icon">✓</span>
                <span>API key saved successfully! Loading editor...</span>
              </div>}

            <button type="submit" disabled={isSubmitting || isValidating || !apiKey.trim()} className="code-editor-button">
              {isValidating ? 'Validating...' : isSubmitting ? 'Saving...' : 'Save API Key'}
            </button>
          </form>

          <button type="button" onClick={handleSkipConfiguration} disabled={isSubmitting || isValidating} className="code-editor-button-secondary">
            Skip Configuration
          </button>

          <div className="code-editor-footer">
            <p className="code-editor-footer-text">
              Alternatively, you may checkout the source code from{' '}
              <a href="https://github.com/ai-tutorial/typescript-examples" target="_blank" rel="noopener noreferrer" className="code-editor-link code-editor-link-break">
                https://github.com/ai-tutorial/typescript-examples
              </a>
              {' '}and run the examples locally.
            </p>
          </div>
        </div>
      </div>;
  }
  const toggleMaximize = () => setIsMaximized(!isMaximized);
  const toggleCollapse = () => setIsCollapsed(!isCollapsed);
  return <div className={`code-editor-wrapper ${isMaximized ? 'maximized' : ''} ${isCollapsed ? 'collapsed' : ''}`} data-theme={theme}>
      <div className="code-editor-header">
        <div className="code-editor-title">
          <svg width="14" height="14" viewBox="0 0 24 24" fill="none" stroke="currentColor" strokeWidth="2" strokeLinecap="round" strokeLinejoin="round">
            <path d="M11 4H4a2 2 0 0 0-2 2v14a2 2 0 0 0 2 2h14a2 2 0 0 0 2-2v-7"></path>
            <path d="M18.5 2.5a2.121 2.121 0 0 1 3 3L12 15l-4 1 1-4 9.5-9.5z"></path>
          </svg>
          {title}
        </div>
        <div className="code-editor-controls">
          {!isMaximized && <button className="code-editor-collapse-button" onClick={toggleCollapse} title={isCollapsed ? "Expand" : "Collapse"} type="button">
              <svg xmlns="http://www.w3.org/2000/svg" width="24" height="24" viewBox="0 0 24 24" fill="none" stroke="currentColor" strokeWidth="2" strokeLinecap="round" strokeLinejoin="round">
                {isCollapsed ? <polyline points="6 9 12 15 18 9" /> : <polyline points="6 15 12 9 18 15" />}
              </svg>
            </button>}
          <button className="code-editor-maximize-button" onClick={toggleMaximize} title={isMaximized ? "Minimize" : "Maximize (Focus Mode)"} type="button">
            <svg xmlns="http://www.w3.org/2000/svg" width="24" height="24" viewBox="0 0 24 24" fill="none" stroke="currentColor" strokeWidth="2" strokeLinecap="round" strokeLinejoin="round">
              {isMaximized ? <><path d="M4 14h6v6" /><path d="M20 10h-6V4" /><path d="M14 10l7-7" /><path d="M3 21l7-7" /></> : <><path d="M15 3h6v6" /><path d="M9 21H3v-6" /><path d="M21 3l-7 7" /><path d="M3 21l7-7" /></>}
            </svg>
          </button>
        </div>
      </div>

      {!isCollapsed && <div style={{
    position: 'relative',
    height: isMaximized ? 'auto' : height,
    flex: isMaximized ? 1 : 'none'
  }}>
          <iframe key={iframeKey} ref={iframeRef} onLoad={handleIframeLoad} src={stackblitzUrl} className="code-editor-iframe" style={{
    height: '100%',
    flex: isMaximized ? 1 : 'none'
  }} title={title || 'Code Example'} allow="accelerometer; camera; encrypted-media; geolocation; gyroscope; hid; microphone; midi; payment; usb; xr-spatial-tracking" sandbox="allow-forms allow-modals allow-popups allow-presentation allow-same-origin allow-scripts" />

          {isStuck && <div className="code-editor-stuck-overlay">
              <div className="code-editor-stuck-box">
                <svg width="20" height="20" viewBox="0 0 24 24" fill="none" stroke="#f59e0b" strokeWidth="2">
                  <path d="M10.29 3.86L1.82 18a2 2 0 0 0 1.71 3h16.94a2 2 0 0 0 1.71-3L13.71 3.86a2 2 0 0 0-3.42 0z"></path>
                  <line x1="12" y1="9" x2="12" y2="13"></line>
                  <line x1="12" y1="17" x2="12.01" y2="17"></line>
                </svg>
                <p>StackBlitz is taking too long to load. This can happen when the repository was recently updated.</p>
                <button type="button" className="code-editor-button" onClick={handleRetry} style={{
    marginTop: '8px'
  }}>
                  Retry
                </button>
              </div>
            </div>}
        </div>}
    </div>;
};

Without memory, agents make redundant tool calls and forget context between turns. This page covers working memory (MemorySaver) and long-term memory (cross-session persistence).

## The Memory Problem in Production Agents

Consider this real-world scenario from a customer support agent:

```
User: "I ordered a laptop last week"
Agent: [searches orders] "Found order #12345 for MacBook Pro"

User: "When will it arrive?"
Agent: [searches orders AGAIN] "Order #12345 ships tomorrow"

User: "Can I change the address?"
Agent: [searches orders AGAIN] "For order #12345, yes I can help"
```

**Problem:** The agent makes three redundant tool calls, wasting tokens, time, and money — costing roughly 3x what it should.

**Solution:** Memory that persists conversation state across turns so the agent doesn't re-discover what it already knows.

> Agent memory management is an advancing area with multiple approaches. We cover the foundational concepts here using LangGraph's built-in memory.
>
> For deeper coverage, see the O'Reilly report "Managing Memory for AI Agents" in the Assets folder.

## Memory Architecture: Two Tiers

| Memory Type          | Duration       | Purpose                   | Example                         |
| -------------------- | -------------- | ------------------------- | ------------------------------- |
| **Working Memory**   | Single session | Active conversation state | "User asked about order #12345" |
| **Long-Term Memory** | Cross-session  | Persistent knowledge      | "User prefers email contact"    |

Think of working memory as your L1 cache (fast, temporary) and long-term memory as your database (persistent, searchable).

## Working Memory with LangGraph

LangGraph provides built-in working memory via **MemorySaver** and **thread\_id**. Each thread maintains its own conversation history automatically — no manual message tracking needed.

The agent below looks up an order in turn 1. In turns 2 and 3, it answers follow-up questions using the cached tool results from the thread history — no redundant API calls:

<CodeEditor file="src/agents/memory_examples.ts" lines="50-101" functionName="demoWorkingMemory" title="Working Memory: MemorySaver Avoids Redundant Tool Calls" />

Notice: `[API call]` appears only once (turn 1). Turns 2 and 3 answer from the thread history. This is `MemorySaver` in action — it persists the full message chain including tool calls and results per `thread_id`.

**Key points:**

* `checkpointer: new MemorySaver()` enables automatic persistence
* `thread_id` in `configurable` scopes memory to a conversation
* The agent is **stateless** — all state lives in the checkpointer
* One agent instance serves multiple users (different `thread_id` = different conversations)

## Long-Term Memory: Cross-Session Knowledge

Working memory resets between sessions. But what about preferences, facts, and history that should persist across all conversations?

Long-term memory requires a separate store — in production, a vector DB or managed service. Here we use a simple in-memory store to demonstrate the pattern:

<CodeEditor file="src/agents/memory_examples.ts" lines="25-38" functionName="LongTermMemory" title="Long-Term Memory Store (In-Memory for Demo)" />

The agent gets `save_preference` and `recall_preferences` tools. In session 1, the user shares preferences. In session 2 (new thread), the agent recalls them from long-term memory:

<CodeEditor file="src/agents/memory_examples.ts" lines="115-186" functionName="demoLongTermMemory" title="Long-Term Memory: Preferences Persist Across Sessions" />

**What's happening:**

* **Session 1**: User says "I prefer email" → agent calls `save_preference` → stored in `LongTermMemory`
* **Session 2**: New `thread_id` (working memory is empty) → agent calls `recall_preferences` → retrieves preferences from long-term store

The working memory (`MemorySaver`) forgets between sessions. The long-term memory persists.

## Long-Term Memory in Production

For production, replace the in-memory store with a real backend:

| Tool                                                                                        | Approach                                        |
| ------------------------------------------------------------------------------------------- | ----------------------------------------------- |
| [Redis Agent Memory Server](https://redis.github.io/agent-memory-server/)                   | Working + long-term memory with semantic search |
| [Mem0](https://docs.mem0.ai/introduction)                                                   | Managed memory layer for agents                 |
| [Zep](https://help.getzep.com/overview)                                                     | Long-term memory with automatic extraction      |
| [LangChain Memory](https://docs.langchain.com/oss/python/langchain/long-term-memory)        | Built-in LangChain/LangSmith integration        |
| [Claude Memory Tool](https://docs.claude.com/en/docs/agents-and-tools/tool-use/memory-tool) | Anthropic's native memory                       |

The integration pattern is the same regardless of backend:

1. **Store** — save facts/preferences after conversations
2. **Search** — retrieve relevant memories before generating a response (semantic search in production)
3. **Inject** — add retrieved memories to the prompt or as tool results

## Integration Patterns

### Pattern 1: Code-Driven (Programmatic)

Your code decides when to store and retrieve. Predictable and efficient — you control exactly what gets remembered.

```ts Pseudocode theme={null}
// Before response: search for relevant context
const memories = await memoryStore.search(userId, userMessage);

// After response: store if it contains preferences
if (userMessage.includes("prefer")) {
    await memoryStore.save(userId, `User prefers: ${userMessage}`);
}
```

### Pattern 2: LLM-Driven (Tool-Based)

Give the LLM memory tools — it decides what's worth remembering. More natural but less predictable.

```ts Pseudocode theme={null}
const tools = [
    savePreference,      // LLM calls when user shares a preference
    recallPreferences,   // LLM calls at start of conversation
];
// The LLM autonomously decides when to store and retrieve
```

This is what our long-term memory demo uses — the LLM decides to call `save_preference` when the user says "I prefer email."

### Pattern 3: Background Extraction (Automatic)

Store every conversation, then a background process extracts important facts — preferences, events, decisions. Zero overhead during the conversation.

```ts Pseudocode theme={null}
// After each turn, store the full conversation
await memoryStore.saveConversation(sessionId, messages);

// Background process extracts:
// - Preferences ("prefers email notifications")
// - Facts ("subscription expires June 15")
// - Events ("reported billing issue on March 1")
```

**Production recommendation:** Start with code-driven for predictable behavior. Add background extraction for continuous learning. Use LLM-driven tools when conversational control matters.

## Key Takeaways

1. **Working memory** (within session) — use LangGraph's `MemorySaver` + `thread_id`
2. **Long-term memory** (across sessions) — requires external storage (Redis, vector DB, etc.)
3. **The agent is stateless** — all state lives in the checkpointer, not the agent instance
4. **Thread isolation** — different `thread_id` = different conversations, same agent
5. **Start simple** — `MemorySaver` covers most use cases; add long-term memory when you need cross-session persistence

***

<Quiz>
  <QuizQuestion question="Your agent forgets the user's name between turns in the same conversation. Is this a working memory or long-term memory problem?" options={["Long-term memory — the agent needs a database to store names", "Working memory — conversation context isn't being passed between turns", "Neither — the LLM should remember from training data"]} answer={1} explanation="Forgetting within a session is a working memory issue. The fix is using MemorySaver with thread_id which persists the full message chain automatically." />

  <QuizQuestion question="You add long-term memory so the agent remembers user preferences across sessions. After a month, the agent starts giving stale recommendations based on outdated preferences. What went wrong?" options={["Long-term memory is inherently unreliable", "There's no mechanism to update or expire old memories — preferences were stored but never refreshed", "The embedding model degraded over time"]} answer={1} explanation="Memory without a refresh strategy goes stale. Production systems need expiration policies, confidence decay, or explicit update triggers when user behavior changes." />
</Quiz>
